Artificial Intelligence in sextech Market Analysis | By Company Profiles | Size | Share | Growth | Trends and Forecast To 2026 – Cole of Duty

This report studies theArtificial Intelligence in sextechmarketwith many aspects of the industry like the market size, market status, market trends and forecast, the report also provides brief information of the competitors and the specific growth opportunities with key market drivers. Find the completeArtificial Intelligence in sextech marketanalysis segmented by companies, region, type and applications in the report.

The report focuses on global major leading industry players providing information such as company profiles, product specification, price, cost, revenue and contact information.

The major players covered in Artificial Intelligence in sextech Market:

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This report focuses on the global Artificial Intelligence in sextech status, future forecast, growth opportunity, key market and key players. The study objectives are to present the Artificial Intelligence in sextech development inUnitedStates, Europe, China, Japan, Southeast Asia, India, and Central & South America.

TheArtificial Intelligence in sextechmarket is a comprehensive report which offers a meticulous overview of the market share, size, trends, demand, product analysis, application analysis, regional outlook, competitive strategies, forecasts, and strategies impacting the Artificial Intelligence in sextech Industry. The report includes a detailed analysis of the market competitive landscape, with the help of detailed business profiles, SWOT analysis, project feasibility analysis, and several other details about the key companies operating in the market.

The study objectives of this report are:

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TheArtificial Intelligence in sextechmarket research report completely covers the vital statistics of the capacity, production, value, cost/profit, supply/demand import/export, further divided by company and country, and by application/type for best possible updated data representation in the figures, tables, pie chart, and graphs. These data representations provide predictive data regarding the future estimations for convincing market growth. The detailed and comprehensive knowledge about our publishers makes us out of the box in case of market analysis.

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Table of Contents

Chapter 1:GlobalArtificial Intelligence in sextechMarket Overview

Chapter 2:Artificial Intelligence in sextech Market Data Analysis

Chapter 3:Artificial Intelligence in sextech Technical Data Analysis

Chapter 4:Artificial Intelligence in sextech Government Policy and News

Chapter 5:Global Artificial Intelligence in sextech Market Manufacturing Process and Cost Structure

Chapter 6:Artificial Intelligence in sextech Productions Supply Sales Demand Market Status and Forecast

Chapter 7:Artificial Intelligence in sextech Key Manufacturers

Chapter 8:Up and Down Stream Industry Analysis

Chapter 9:Marketing Strategy -Artificial Intelligence in sextech Analysis

Chapter 10:Artificial Intelligence in sextech Development Trend Analysis

Chapter 11:Global Artificial Intelligence in sextech Market New Project Investment Feasibility Analysis

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Artificial Intelligence in sextech Market Analysis | By Company Profiles | Size | Share | Growth | Trends and Forecast To 2026 - Cole of Duty

Artificial Intelligence Robots Market with Report In Depth Industry Analysis on Trends, Growth, Opportunities and Forecast – Cole of Duty

Data Bridge Market Research report titledGlobal Artificial Intelligence Robots Marketprovides detailed information and overview about the key influential factors required to make well informed business decision. This is a latest report, covering the current COVID-19 impact on the market. The pandemic of Coronavirus (COVID-19) has affected every aspect of life globally. This has brought along several changes in market conditions. The rapidly changing market scenario and initial and future assessment of the impact is covered in the report. Our data has been culled out by our team of experts who have curated the report, considering market-relevant information. This report provides latest insights about the markets drivers, restraints, opportunities, and trends. It also discusses the growth and trends of various segments and the market in various regions.

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Our analysts monitoring the situation around the Globe explain that after COVID-19 crisis the market will generate remunerative prospects for producers. The goal of the report is to provide a further illustration of the current scenario, economic slowdown and effect of COVID-19 on the industry as a whole. This is the latest report, covering the current COVID-19 impact on the market. The pandemic of Coronavirus (COVID-19) has affected every aspect of life globally. This has brought along several changes in market conditions. The rapidly changing market scenario and initial and future assessment of the impact are covered in the report.

Important Features of the Global Artificial Intelligence Robots Market Report:

1) What all companies are currently profiled in the report?

2) What all regional segmentation covered? Can specific country of interest be added?

Currently, research report gives special attention and focus on following regions:

North America, Europe, Asia-Pacific etc.

** One country of specific interest can be included at no added cost. For inclusion of more regional segment quote may vary.

3) Can inclusion of additional Segmentation / Market breakdown is possible?

Yes, inclusion of additional segmentation / Market breakdown is possible subject to data availability and difficulty of survey. However, a detailed requirement needs to be shared with our research before giving final confirmation to client.

** Depending upon the requirement the deliverable time and quote will vary.

Our analysts drafted the report by gathering information through primary (through surveys and interviews) and secondary (included industry body databases, reputable paid sources, and trade journals) methods of data collection. The report encompasses an exhaustive qualitative and quantitative evaluation.

The study includes growth trends, micro- and macro-economic indicators, and regulations and governmental policies.

Some of the Major Highlights of TOC covers:

Chapter 1: Methodology & Scope

Chapter 2: Executive Summary

Chapter 3: Artificial Intelligence Robots Market Industry Insights

Chapter 4: Artificial Intelligence Robots Market, By Region

Chapter 5: Company Profile

Get Free Table of Contents with Charts, Figures & Tables @https://www.databridgemarketresearch.com/toc/?dbmr=global-artificial-intelligence-robots-market&skp

Region wise analysis of the top producers and consumers, focus on product capacity, production, value, consumption, market share and growth opportunity in below mentioned key regions:

North America U.S., Canada, Mexico

Europe: U.K, France, Italy, Germany, Russia, Spain, etc.

Asia-Pacific China, Japan, India, Southeast Asia etc.

South America Brazil, Argentina, etc.

Middle East & Africa Saudi Arabia, African countries etc.

The subject matter experts analysed various companies to understand the products and/services relevant to the market. The report includes information such as gross revenue, production and consumption, average product price, and market shares of key players. Other factors such as competitive analysis and trends, mergers & acquisitions, and expansion strategies have been included in the report. This will enable the existing competitors and new entrants understand the competitive scenario to plan future strategies.

The Report Provides:

In This Study, The Years Considered to Estimate the Market Size of the Artificial Intelligence Robots Market Are as Follows:

**Moreover, it will also include the opportunities available in micro markets for stakeholders to invest, detailed analysis of competitive landscape and product services of key players.

Important Key Questions Answered in The Artificial Intelligence Robots Market Report:

Thank you for reading this article. You can also get chapter-wise sections or region-wise report coverage for North America, Europe, Asia Pacific, Latin America, and Middle East & Africa.

About Data Bridge Market Research:

An absolute way to forecast what future holds is to comprehend the trend today!Data Bridge set forth itself as an unconventional and neoteric Market research and consulting firm with unparalleled level of resilience and integrated approaches. We are determined to unearth the best market opportunities and foster efficient information for your business to thrive in the market.

Contact:

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Artificial Intelligence Robots Market with Report In Depth Industry Analysis on Trends, Growth, Opportunities and Forecast - Cole of Duty

Artificial Intelligence In Aviation Market Overview with Detailed Analysis, Competitive landscape, Forecast – Cole of Duty

Data Bridge Market Research report titledGlobal Artificial Intelligence In Aviation Marketprovides detailed information and overview about the key influential factors required to make well informed business decision. This is a latest report, covering the current COVID-19 impact on the market. The pandemic of Coronavirus (COVID-19) has affected every aspect of life globally. This has brought along several changes in market conditions. The rapidly changing market scenario and initial and future assessment of the impact is covered in the report. Our data has been culled out by our team of experts who have curated the report, considering market-relevant information. This report provides latest insights about the markets drivers, restraints, opportunities, and trends. It also discusses the growth and trends of various segments and the market in various regions.

Get Free Sample Report + All Related Graphs & Charts of Artificial Intelligence In Aviation Market Report @https://www.databridgemarketresearch.com/request-a-sample/?dbmr=global-artificial-intelligence-in-aviation-market&skp

Our analysts monitoring the situation around the Globe explain that after COVID-19 crisis the market will generate remunerative prospects for producers. The goal of the report is to provide a further illustration of the current scenario, economic slowdown and effect of COVID-19 on the industry as a whole. This is the latest report, covering the current COVID-19 impact on the market. The pandemic of Coronavirus (COVID-19) has affected every aspect of life globally. This has brought along several changes in market conditions. The rapidly changing market scenario and initial and future assessment of the impact are covered in the report.

Important Features of the Global Artificial Intelligence In Aviation Market Report:

1) What all companies are currently profiled in the report?

2) What all regional segmentation covered? Can specific country of interest be added?

Currently, research report gives special attention and focus on following regions:

North America, Europe, Asia-Pacific etc.

** One country of specific interest can be included at no added cost. For inclusion of more regional segment quote may vary.

3) Can inclusion of additional Segmentation / Market breakdown is possible?

Yes, inclusion of additional segmentation / Market breakdown is possible subject to data availability and difficulty of survey. However, a detailed requirement needs to be shared with our research before giving final confirmation to client.

** Depending upon the requirement the deliverable time and quote will vary.

Our analysts drafted the report by gathering information through primary (through surveys and interviews) and secondary (included industry body databases, reputable paid sources, and trade journals) methods of data collection. The report encompasses an exhaustive qualitative and quantitative evaluation.

The study includes growth trends, micro- and macro-economic indicators, and regulations and governmental policies.

Some of the Major Highlights of TOC covers:

Chapter 1: Methodology & Scope

Chapter 2: Executive Summary

Chapter 3: Artificial Intelligence In Aviation Market Industry Insights

Chapter 4: Artificial Intelligence In Aviation Market, By Region

Chapter 5: Company Profile

Get Free Table of Contents with Charts, Figures & Tables @https://www.databridgemarketresearch.com/toc/?dbmr=global-artificial-intelligence-in-aviation-market&skp

Region wise analysis of the top producers and consumers, focus on product capacity, production, value, consumption, market share and growth opportunity in below mentioned key regions:

North America U.S., Canada, Mexico

Europe: U.K, France, Italy, Germany, Russia, Spain, etc.

Asia-Pacific China, Japan, India, Southeast Asia etc.

South America Brazil, Argentina, etc.

Middle East & Africa Saudi Arabia, African countries etc.

The subject matter experts analysed various companies to understand the products and/services relevant to the market. The report includes information such as gross revenue, production and consumption, average product price, and market shares of key players. Other factors such as competitive analysis and trends, mergers & acquisitions, and expansion strategies have been included in the report. This will enable the existing competitors and new entrants understand the competitive scenario to plan future strategies.

The Report Provides:

In This Study, The Years Considered to Estimate the Market Size of the Artificial Intelligence In Aviation Market Are as Follows:

**Moreover, it will also include the opportunities available in micro markets for stakeholders to invest, detailed analysis of competitive landscape and product services of key players.

Important Key Questions Answered in The Artificial Intelligence In Aviation Market Report:

Thank you for reading this article. You can also get chapter-wise sections or region-wise report coverage for North America, Europe, Asia Pacific, Latin America, and Middle East & Africa.

About Data Bridge Market Research:

An absolute way to forecast what future holds is to comprehend the trend today!Data Bridge set forth itself as an unconventional and neoteric Market research and consulting firm with unparalleled level of resilience and integrated approaches. We are determined to unearth the best market opportunities and foster efficient information for your business to thrive in the market.

Contact:

US: +1 888 387 2818

UK: +44 208 089 1725

Hong Kong: +852 8192 7475

[emailprotected]

The rest is here:

Artificial Intelligence In Aviation Market Overview with Detailed Analysis, Competitive landscape, Forecast - Cole of Duty

Artificial Intelligence: 3 Benefits for the Insurance Industry – www.contact-centres.com

As the insurance sector competes to win market share, Henry Jinman at EBI.AI discusses three ways companies can benefit from the power of Artificial Intelligence

The UK general insurance market continues to be fiercely competitive. While the battle for repeat business keeps downward pressure on pricing, a constantly changing regulatory agenda increases costs. Whatever the industry, successful companies know that building a business based on price alone is not sustainable. Customer service is what matters most. Its a sentiment that is reflected in the latest findings of multinational professional services company Ernst & Young (EY). It claims that non-life insurance companies in particular should invest to create innovative and satisfying end-to-end customer experiences with optimised technology that helps them become data-driven and insight-enabled in everything they do.[i]

Its time to consider the benefits of Artificial Intelligence (AI). Through its ability to capture, analyse and learn from massive amounts of data, AI should be at the centre of every enterprise serious about creating amazing customer experiences. AI tools should also support everyone, employees, managers and customers, to ask and receive the information they need, whenever and wherever they need it, quickly and using engaging, natural language.

In EBI.AIs experience, companies that introduce AI solutions such as AI assistants are rewarded with multiple benefits. By reducing the number of repetitive calls in the contact centre or customer service departments and frontline staff are better equipped to handle more complex and rewarding tasks. Meanwhile, scaling todays virtual AI solutions is easy, enabling managers to adapt to unexpected events and emergencies as they happen such as the Covid-19 pandemic. Data-driven AI solutions also make formidable weapons against the common problems facing insurance managers such as highlighting fraudulent claims and mitigating claims leakage.

Here are 3 ways AI can help the insurance industry in key areas:

1. Front-end sales train the latest AI tools to answer the most common questions quickly then maximise their ability to use critical customer data to offer personalised recommendations on policies and pricing. Integrate AI with sophisticated telematics in-car sensors or health analytics platforms to identify your most careful drivers or health-conscious clients to reward them with lower premiums so they keep coming back.

2. Product and marketing deliver customers an exceptional experience with AI tools that are welcoming, efficient and secure. Use AIs image, video and natural language capabilities to assess and analyse claims and issue fast, accurate pay-out decisions in seconds. Then build confidence and loyalty with AIs ability to flag up potential threats from scammers and hackers to keep customers sensitive details safe. Once these important foundations are in place, make AI an intrinsic part of your marketing toolkit. AI can propose personalised offerings based on customer needs and then swiftly identify opportunities for intelligent lead generation.

3. Customer management AI tools guarantee round-the-clock customer service they never sleep, go off sick or need a holiday! Virtual Customer Assistants (VCAs) for example, are a bonus to customer service departments through their ability to cross-sell, upsell and prevent agent churn. AI tools can match customers with the most qualified available agents to handle their queries or, when applied over large data sets, provide analysis of general customer sentiment over time. Maximise machine learning to add feedback functionality to insurance bots. That way, youll better understand client needs, improve services and deliver a highly personalised experience.

Dont rush in!

To make AI a success, follow a few golden rules. First of all, involve the right people in the company including budget holders, the IT department and everyday users from the very beginning. Set and manage expectations by educating your organisation about what AI can and cannot do. Be realistic when sharing timeframes for results machine-learning takes time to perfect! Also remember that AI tools thrive on good data so build a bank of reliable data that is up-to-date and above all, relevant. Finally, test AI in a real-world environment while maintaining business as usual.

Learn from real-life success stories

Follow the lead of Legal & General, General Insurance now part of LV=General Insurance, part of the Allianz Group, at the beginning of this year, EBI.AI worked with the company to create SmartHelp, an AI assistant designed to enhance the companys customer service. Since that time, nearly 11% of Legal & Generals customers use SmartHelp on the available web pages, on some of the pages usage is as high as 40% and the virtual AI assistant regularly provides over 300 answers to thousands of the most commonly asked questions.

To find out how, download the Case Study Click Here

Henry Jinman is Commercial Director at EBIAI

Established in 2014, EBI.AI is among the most advanced UK labs to create fully managed, Enterprise-grade AI Assistants. These assistants help clients to provide their customers with faster and better resolutions to their queries, and liberate front-line customer service agents from the dull, repetitive, and mundane.

EBI.AI selects the best AI and cloud services available from IBM, Amazon, Microsoft and others, combined with bespoke AI models to deliver its AI communication platform, called Lobster.

Combined with it over 19 years of experience working with big data, analytics and systems integration it has successfully implemented AI Assistants, that now handle hundreds of thousands of conversations a year across Transport & Travel, Property, Insurance, Public and Automotive industries.

For more information on EBI.AI visit their Website

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Artificial Intelligence: 3 Benefits for the Insurance Industry - http://www.contact-centres.com

Global Artificial Intelligence Service Market 2025 COVID-19 Spread Analysis With Top Key Players: International Business Machines, SAP, Google,…

This report is well documented to present crucial analytical review affecting the Global Artificial Intelligence Service market amidst COVID-19 outrage. In the light of the lingering COVID-19 pandemic, this mindfully drafted research offering is in complete sync with the current ongoing market developments as well as challenges that together render tangible influence upon the holistic growth trajectory of the Artificial Intelligence Service market. The aim of the report is to equip relevant players in deciphering essential cues about the various real-time market based developments, also drawing significant references from historical data, to eventually present a highly effective market forecast even amidst an unprecedented scenario such as the ongoing COVID-19 pandemic and its subsequent implications.

The report is a holistic, ready-to-use compilation of all major events and developments that replicate growth in the Artificial Intelligence Service market. The report is rightly designed to present multidimensional information about the current and past market occurrences that tend to have a direct implication on onward growth trajectory of the Artificial Intelligence Service market. The report also illustrates minute details in the Artificial Intelligence Service market governing micro and macroeconomic factors that seem to have a dominant and long-term impact, directing the course of popular trends in the global Artificial Intelligence Service market.

The following sections of this versatile report on Artificial Intelligence Service market specifically sheds light on popular industry trends encompassing both market drivers as well as dominant trends that systematically affect the growth trajectory visibly. Each of the market players profiled in the report have been analyzed on the basis of their company and product portfolios, to make logical deductions.

The study encompasses profiles of major companies operating in the Artificial Intelligence Service Market. Key players profiled in the report includes:International Business MachinesSAPGoogleAmazonSalesforceIntelBaiduFair Isaac Corporation(FICO)SAS Institute(US)

A thorough analytical review of the pertinent growth trends influencing the Artificial Intelligence Service market has been demonstrated in the report to affect unbiased and time-efficient business discretion amongst various leading players. The report also sheds substantial light on all major key producers dominant in the Artificial Intelligence Service market, encompassing versatile details on facets such as production and capacity deductions.

Access Complete Report @ https://www.orbismarketreports.com/global-artificial-intelligence-service-market-size-status-and-forecast-2019-2025-2

By the product type, the market is primarily split into Software ToolsServices

By the end-users/application, this report covers the following segments BFSITelecommunications and ITRetail and E-CommerceGovernment and DefenseHealthcareManufacturingEnergy and UtilitiesConstruction and EngineeringOthers

These details are indicated in the report to allow market players undertake a systematic analytical review of the Artificial Intelligence Service market to arrive at logical conclusions governing the growth trajectory of the Artificial Intelligence Service market and their subsequent implications on the growth of the aforementioned market.

Global Artificial Intelligence Service Geographical Segmentation Includes: North America (U.S., Canada, Mexico) Europe (U.K., France, Germany, Spain, Italy, Central & Eastern Europe, CIS) Asia Pacific (China, Japan, South Korea, ASEAN, India, Rest of Asia Pacific) Latin America (Brazil, Rest of L.A.) Middle East and Africa (Turkey, GCC, Rest of Middle East)

Details on product portfolios, user application as well as ongoing technical developments concerning the product line have also been touched upon, to derive accurate understanding about the market prognosis and their subsequent implications upon the Artificial Intelligence Service market. The report specifically focuses on market drivers, challenges, threats, and the like that closely manifest market revenue cycle to encourage optimum profit generation in the Artificial Intelligence Service market.

Some Major TOC Points: Chapter 1. Report Overview Chapter 2. Global Growth Trends Chapter 3. Market Share by Key Players Chapter 4. Breakdown Data by Type and Application Chapter 5. Market by End Users/Application Chapter 6. COVID-19 Outbreak: Artificial Intelligence Service Industry Impact Chapter 7. Opportunity Analysis in Covid-19 Crisis Chapter 9. Market Driving ForceAnd Many More

Research Methodology Includes:

The report systematically upholds the current state of dynamic segmentation of the Artificial Intelligence Service market, highlighting major and revenue efficient market segments comprising application, type, technology, and the like that together coin lucrative business returns in the Artificial Intelligence Service market.

Do You Have Any Query or Specific Requirement? Ask Our Industry [emailprotected] https://www.orbismarketreports.com/enquiry-before-buying/65154

Target Audience:* Artificial Intelligence Service Manufactures* Traders, Importers, and Exporters* Raw Material Suppliers and Distributors* Research and Consulting Firms* Government and Research Organizations* Associations and Industry Bodies

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Global Artificial Intelligence Service Market 2025 COVID-19 Spread Analysis With Top Key Players: International Business Machines, SAP, Google,...

Artificial Intelligence-Based App ‘Bullstop’ Developed to Combat Social Media Bullying-Trolling – India.com

Computer scientists have launched an app, Bullstop that uses novel artificial intelligence (AI) algorithms to combat trolling and bullying online. Also Read - How Twitter Has Miserably Failed to Tame Parody Accounts & Fake News in India

The downloadable app is the only anti-cyberbullying app that integrates directly to social media platforms to protect users from bullies and trolls messaging them directly, the scientists from Aston University in the UK, reported. Also Read - Salute! Mumbai Police Lauded For Busting International Racket of Fake Social Media Profiles, Arrest 1 Under IT Act

Bullstop is available for free and can now be downloaded on GooglePlay. Also Read - Sushant Singh Rajput Death Anniversary: Rumoured GF Rhea Chakraborty Shares Heartfelt Note, Says 'You Made Me Believe in Love'

This application differs from other apps because the use of artificial intelligence to detect cyberbullying is unique in itself, said Semiu Salawu, who designed Bullstop.

Other anti-cyberbullying apps, in comparison, use keywords to detect instances of bullying, inappropriate or threatening language, Salawu added.

According to the developer, the detection AI has been trained on over 60,000 tweets to recognise not only abusive and offensive language, but also the use of subtle means such as sarcasm and exclusion to bully, which are otherwise difficult to detect using keywords.

It uses a distributed cloud-based architecture that makes it possible for classifiers to be swapped in and out. Therefore, as better artificial intelligence algorithms become available, they can be easily integrated to improve the app, Salawu explained.

The team revealed that Bullstop is unique in that it monitors a users social media profile and scans for offensive incoming messages, to ensure the user is not subject to incoming abuse, as well as offensive outgoing messages.

This works via an algorithm which is designed to understand written languages. It analyses messages and flags offensive content, such as instances of cyberbullying, abusive, insulting or threatening language, pornography and spam.

Offensive messages can be immediately deleted from the users inbox.

A copy of deleted messages are, however, retained should the user wish to review them. The app can also automatically block contacts who continuously send offensive messages.

Bullstop is highly configurable, allowing the user to determine how comprehensively the app removes inappropriate messages.

The app currently supports Twitter with support for text messages planned in the next stage of the rollout.

It is hoped that, with continued usage of the app and good results, other social media platforms such as Facebook and Instagram will come on board, allowing their users to benefit from the application.

The app is currently in the beta testing stage which means the researchers invite users of the app to provide them with feedback to allow them to make improvements.

It has already been tested by a number of young people and professionals, including teachers, police officers and psychologists, the authors wrote.

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Artificial Intelligence-Based App 'Bullstop' Developed to Combat Social Media Bullying-Trolling - India.com

Artificial intelligence predicts which planetary systems will survive – Princeton University

Why dont planets collide more often? How do planetary systems like our solar system or multi-planet systems around other stars organize themselves? Of all of the possible ways planets could orbit, how many configurations will remain stable over the billions of years of a stars life cycle?

Rejecting the large range of unstable possibilities all the configurations that would lead to collisions would leave behind a sharper view of planetary systems around other stars, but its not as easy as it sounds.

Separating the stable from the unstable configurations turns out to be a fascinating and brutally hard problem, said Daniel Tamayo, a NASA Hubble Fellowship Program Sagan Fellowin astrophysical sciences at Princeton. To make sure a planetary system is stable, astronomers need to calculate the motions of multiple interacting planets over billions of years and check each possible configuration for stability a computationally prohibitive undertaking.

Astronomers since Isaac Newton have wrestled with the problem of orbital stability, but while the struggle contributed to many mathematical revolutions, including calculus and chaos theory, no one has found a way to predict stable configurations theoretically. Modern astronomers still have to brute-force the calculations, albeit with supercomputers instead of abaci or slide rules.

Tamayo realized that he could accelerate the process by combining simplified models of planets' dynamical interactions with machine learning methods. This allows the elimination of huge swaths of unstable orbital configurations quickly calculations that would have taken tens of thousands of hours can now be done in minutes. He is the lead author on a paper detailing the approach in the Proceedings of the National Academy of Sciences. Co-authors include graduate student Miles Cranmer and David Spergel, Princetons Charles A. Young Professor of Astronomy on the Class of 1897 Foundation, Emeritus.

For most multi-planet systems, there are many orbital configurations that are possible given current observational data, of which not all will be stable. Many configurations that are theoretically possible would "quickly" that is, in not too many millions of years destabilize into a tangle of crossing orbits. The goal was to rule out those so-called fast instabilities.

We can't categorically say This system will be OK, but that one will blow up soon, Tamayo said. The goal instead is, for a given system, to rule out all the unstable possibilities that would have already collided and couldn't exist at the present day.

Instead of simulating a given configuration for a billion orbits the traditional brute-force approach, which would take about 10 hours Tamayos model instead simulates for 10,000 orbits, which only takes a fraction of a second. From this short snippet, they calculate 10 summary metrics that capture the system's resonant dynamics. Finally, they train a machine learning algorithm to predict from these 10 features whether the configuration would remain stable if they let it keep going out to one billion orbits.

We called the model SPOCK Stability of Planetary Orbital Configurations Klassifier partly because the model determines whether systems will live long and prosper, Tamayo said.

SPOCK determines the long-term stability of planetary configurations about 100,000 times faster than the previous approach, breaking the computational bottleneck. Tamayo cautioned that while he and his colleagues havent solved the general problem of planetary stability, SPOCK does reliably identify fast instabilities in compact systems, which they argue are the most important in trying to do stability constrained characterization.

This new method will provide a clearer window into the orbital architectures of planetary systems beyond our own, Tamayo said.

In the past 25 years, astronomers have found more than 4,000 planets orbiting other stars, of which almost half are in multi-planet systems. But since small exoplanets are extremely challenging to detect, we still have an incomplete picture of their orbital configurations.

"More than 700 stars are now known to have two or more planets orbiting around them, said Professor Michael Strauss, chair of Princetons Department of Astrophysical Sciences. Dan and his colleagues have found a fundamentally new way to explore the dynamics of these multi-planet systems, speeding up the computer time needed to make models by factors of 100,000. With this, we can hope to understand in detail the full range of solar system architectures that nature allows.

SPOCK is especially helpful for making sense of some of the faint, far-distant planetary systems recently spotted by the Kepler telescope, said Jessie Christiansen, an astrophysicist with the NASA Exoplanet Archive who was not involved in this research. Its hard to constrain their properties with our current instruments, she said. Are they rocky planets, ice giants, or gas giants? Or something new? This new tool will allow us to rule out potential planet compositions and configurations that would be dynamically unstable and it lets us do it more precisely and on a substantially larger scale than was previously available.

Predicting the long-term stability of compact multi-planet systems by Daniel Tamayo, Miles Cranmer, Samuel Hadden, Hanno Rein, Peter Battaglia, Alysa Obertas, Philip J. Armitage, Shirley Ho, David Spergel, Christian Gilbertson, Naireen Hussain, Ari Silburt, Daniel Jontof-Hutter and Kristen Menou, appears in the current issue of the Proceedings of the National Academy of Sciences (DOI: 10.1073/pnas.2001258117).Tamayos research was supported by the NASA Hubble Fellowship (grant HST-HF2-51423.001-A) awarded by the Space Telescope Science Institute.

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Artificial intelligence predicts which planetary systems will survive - Princeton University

Global Automotive Artificial Intelligence Market and Forecast Analyzed in a New Research Report 2020 to 2026 – 3rd Watch News

The New Report Titled as Automotive Artificial Intelligence Market published by Global Marketers, covers the market landscape and its evolution predictions during the forecast period. The report objectives to provide an overview of global Automotive Artificial Intelligence Market with detailed market segmentation by solution, security type, application and geography. The Automotive Artificial Intelligence Market is anticipated to eyewitness high growth during the forecast period. The report delivers key statistics on the market status of the leading market players and deals key trends and opportunities in the market.

Request For Free Sample Report: @ https://www.globalmarketers.biz/report/consumer-goods-and-services/global-automotive-artificial-intelligence-market-report-2020-by-key-players,-types,-applications,-countries,-market-size,-forecast-to-2026-(based-on-2020-covid-19-worldwide-spread)/156880#request_sample

This research report also includes profiles of major companies operating in the global market. Some of the prominent players operating in the Global Automotive Artificial Intelligence Market are:

Hyundai Motor CompanyInternational Business Machines CorporationUber TechnologiesBayerische Motoren Werke AGTeslaDaimler AGHarman International IndustriesFord Motor CompanyToyota Motor CorporationVolvo Car CorporationMicrosoft CorporationStart-Up EcosystemDidi ChuxingAlphabetAudi AGGeneral Motors CompanyIntel CorporationHonda MotorXilinxQualcomm

The Automotive Artificial Intelligence Market for the regions covers North America, Europe, Asia-Pacific, Latin America, and Middle East & Africa. Regional breakdown has been done based on the current and forthcoming trends in the global Automotive Artificial Intelligence Market along with the discrete application segment across all the projecting region.

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The Type Coverage in the Market are:

HumanMachine InterfaceSemi-autonomous DrivingAutonomous Driving

Market Segment by Applications, covers:

Deep LearningMachine LearningContext AwarenessComputer VisionNatural Language Processing

Some Major TOC Points:

Chapter 1. Automotive Artificial Intelligence Market Report Overview

Chapter 2. Global Automotive Artificial Intelligence Market Growth Trends

Chapter 3. Market Share by Key Players

Chapter 4. Automotive Artificial Intelligence Market Breakdown Data by Type and Application

Chapter 5. Market by End Users/Application

Chapter 6. COVID-19 Outbreak: Automotive Artificial Intelligence Industry Impact

Chapter 7. Opportunity Analysis in Covid-19 Crisis

Chapter 9. Market Driving Force

Continue for TOC

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Key questions Answered in this Automotive Artificial Intelligence Market Report:

What will be the Automotive Artificial Intelligence Market growth rate and value in 2020?

What are the key market predictions?

What is the major factors of driving this sector?

What are the situations to market growth?

Major factors covered in the report:

Global Automotive Artificial Intelligence Market summary

Economic Impact on the Industry

Automotive Artificial Intelligence Market Competition in terms of Manufacturers

Automotive Artificial Intelligence Market Analysis by Application

Marketing Strategy comprehension, Distributors and Traders

Study on Market Research Factors

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Global Automotive Artificial Intelligence Market and Forecast Analyzed in a New Research Report 2020 to 2026 - 3rd Watch News

Artificial Intelligence in Security Market 2020 Break Down by Top Companies, Applications, Challenges, Opportunities and Forecast 2024 – Jewish Life…

Latest added Global Artificial Intelligence in Security Market research study by AMA Research offers detailed outlook and elaborates market review till 2024. The market Study is segmented by key regions that are accelerating the marketization. At present, the market players are strategizing and overcoming challenges of current scenario; some of the key players in the study are Acalvio (United States), Amazon (United States), Cylance (United States), NVIDIA (United States), Intel (United States), IBM (United States), Micron (United States), SparkCognition (United States), Securonix (United States) and ThreatMetrix (United States) etc. The study explored is a perfect mix of qualitative and quantitative Market data collected and validated majorly through primary data and secondary sources.

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The latest edition of this report you will be entitled to receive additional chapter / commentary on latest scenario, economic slowdown and COVID-19 impact on overall industry. Further it will also provide qualitative information about when industry could come back on track and what possible measures industry players are taking to deal with current situation. Each of the segment analysis table for forecast period also high % impact on growth.

Artificial Intelligence in the security market is expected to grow significantly owing to the increasing number of connected devices and the rising number of mobile malware attacks. High Usage of Internet and requirement to work online are contributing to rising in incidents of cyber-attacks as more than the number of computing devices and are being connected to the Internet of Things. Shortage of cybersecurity professionals is one of the major factor driving the demand for AI-based security solutions. Using AI-based solutions for cybersecurity covers much of the need for cybersecurity professionals. Growing adoption of the cloud-based application has given an opportunity to AI in the security market to rise in the forecasted period.

This research is categorized differently considering the various aspects of this market. It also evaluates the upcoming situation by considering project pipelines of company, long term agreements to derive growth estimates. The forecast is analyzed based on the volume and revenue of this market. The tools used for analyzing the Global Artificial Intelligence in Security Market research report include SWOT analysis.

The Global Artificial Intelligence in Security segments and Market Data Break Down are illuminated below:Study by Security Type (Network Security, Endpoint Security, Application Security, Cloud Security), Security Solution (Identity and Access Management (IAM), Risk and Compliance Management, Encryption, Data Loss Prevention (DLP), Unified Threat Management (UTM), Antivirus/Antimalware, Intrusion Detection/Prevention System (IDS/IPS), Others (Firewall, Security and Vulnerability Management, Disaster Recovery, DDOS Mitigation, Web Filtering, Application Whitelisting, and Patch Management)), Technology (Machine Learning, Context Awareness Computing, Natural Language Processing), End users (Government & Defense, BFSI, Enterprise, Infrastructure, Automotive & Transportation, Healthcare, Retail, Manufacturing, Others (Oil & Gas, Education, Energy)), Development (Cloud Deployment, On-Premise Deployment), Offering (Hardware, Software, Services)

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Market Drivers

Market Trend

Restraints

Opportunities

The regional analysis of Global Artificial Intelligence in Security Market is considered for the key regions such as Asia Pacific, North America, Europe, Latin America and Rest of the World. North America is the leading region across the world. Whereas, owing to rising no. of research activities in countries such as China, India, and Japan, Asia Pacific region is also expected to exhibit higher growth rate the forecast period 2020-2024.

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Strategic Points Covered in Table of Content of Global Artificial Intelligence in Security Market:

Chapter 1: Introduction, market driving force product Objective of Study and Research Scope the Artificial Intelligence in Security market

Chapter 2: Exclusive Summary the basic information of the Artificial Intelligence in Security Market.

Chapter 3: Displaying the Market Dynamics- Drivers, Trends and Challenges of the Artificial Intelligence in Security

Chapter 4: Presenting the Artificial Intelligence in Security Market Factor Analysis Porters Five Forces, Supply/Value Chain, PESTEL analysis, Market Entropy, Patent/Trademark Analysis.

Chapter 5: Displaying the by Type, End User and Region 2014-2019

Chapter 6: Evaluating the leading manufacturers of the Artificial Intelligence in Security market which consists of its Competitive Landscape, Peer Group Analysis, BCG Matrix & Company Profile

Chapter 7: To evaluate the market by segments, by countries and by manufacturers with revenue share and sales by key countries in these various regions.

Chapter 8 & 9: Displaying the Appendix, Methodology and Data Source

finally, Artificial Intelligence in Security Market is a valuable source of guidance for individuals and companies.

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Definitively, this report will give you an unmistakable perspective on every single reality of the market without a need to allude to some other research report or an information source. Our report will give all of you the realities about the past, present, and eventual fate of the concerned Market.

Thanks for reading this article, we can also provide customized report as per companys specific needs. You can also get separate chapter wise or region wise report versions including North America, Europe or Asia.

About Author:Advance Market Analytics is Global leaders of Market Research Industry provides the quantified B2B research to Fortune 500 companies on high growth emerging opportunities which will impact more than 80% of worldwide companies revenues.Our Analyst is tracking high growth study with detailed statistical and in-depth analysis of market trends & dynamics that provide a complete overview of the industry. We follow an extensive research methodology coupled with critical insights related industry factors and market forces to generate the best value for our clients. We Provides reliable primary and secondary data sources, our analysts and consultants derive informative and usable data suited for our clients business needs. The research study enable clients to meet varied market objectives a from global footprint expansion to supply chain optimization and from competitor profiling to M&As.

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Artificial Intelligence in Security Market 2020 Break Down by Top Companies, Applications, Challenges, Opportunities and Forecast 2024 - Jewish Life...

What’s driving the Artificial intelligence in healthcare Market Growth? See with Prominent Players and High CAGR rate – 3rd Watch News

According to a report published by Healthcare Intelligence Markets, titled Artificial intelligence in healthcare Size, Share & Industry Analysis, By Component (Hardware, Software, Content), By Application (Product Design and Development, Safety and Training, Maintenance and Repair, and Communication & Collaboration), and Regional Forecast, 2019-2026, Virtual reality is one such concept that has helped overcome several downfalls that were initially present in the manufacturing industry. The use of Artificial intelligence in healthcare performing repetitive tasks that initially required continuous manual labour has stood out among all.

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Key Market Players are:

IBM, NEC, Nuance, Microsoft Corp. , Ipsoft , Rocket Fuel Inc.

The worldwide geological [Latin America, North America, Asia Pacific, Middle & East Africa, and Europe] analysis of the Artificial intelligence in healthcare Market plan has furthermore been done cautiously in this report. The dynamic establishment of the overall Artificial intelligence in healthcare Market depends on the assessment of item circulated in various markets, limitations, general benefits made by every association, and future aspirations. The major application areas of Artificial intelligence in healthcare Market are also covered on the basis of their implementation. The report gives the ideology about different factors and inclinations affecting the development course of the worldwide Artificial intelligence in healthcare Market. A review of the impact of the administrative regulations and policies on the Artificial intelligence in healthcare Market operations is also included in this report. The Artificial intelligence in healthcare Market report offers a complete analysis of competitive dynamics that are modifying and places the patrons ahead of competitors.

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What's driving the Artificial intelligence in healthcare Market Growth? See with Prominent Players and High CAGR rate - 3rd Watch News

Artificial Intelligence in Marketing Market 2020: Key Players With Product Particulars, Applications, Market Size & Forecast Till 2026 – Jewish…

The recent research report titled Global Artificial Intelligence in Marketing Market Report 2020 by Key Players, Types, Applications, Countries, Market Size, Forecast to 2026 (Based on 2020 COVID-19 Worldwide Spread) has been added in the kandjmarketresearch.com database. The Global Artificial Intelligence in Marketing Market Perspective, Comprehensive Analysis along with Major Segments and Forecast, 2020-2026.

Artificial Intelligence in Marketing Market Overview

The global Artificial Intelligence in Marketing market has been studied by a set of researchers for a defined forecast period of 2020 to 2026. This study has provided insights to the stakeholders in the market landscape. It includes an in-depth analysis of various aspects of the market. These aspects include an overview section, with market segmentation, regional analysis, and competitive outlook of the global Artificial Intelligence in Marketing industry for the forecast period. All these sections of the report have been analyzed in detail to arrive at accurate and credible conclusion of the future trajectory. This also includes an overview section that mentions the definition, classification, and primary applications of the product/service to provide larger context to the audience to this report.

Artificial Intelligence in Marketing Market Dynamics

The report on the global Artificial Intelligence in Marketing market includes a section that discusses various market dynamics that provide higher insight in the relationship and the impact of change these dynamics hold on the market functioning. These dynamics include the factors that are providing impetus to the market over the forthcoming years for growth and expansion. Alternatively, it also includes factors that are poised to challenge the market growth over the forecast period. These factors are expected to reveal certain hidden trends that aid in the better understanding of the market over the forecast period. continue reading this report.

The Final Report Will Include the Impact of COVID -19 Analysis about the Artificial Intelligence in Marketing Industry.

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COVID-19 can affect the global market in 3 ways: by directly affecting the production and demand, by creating supply chain and market disturbance, and by its financial impact on enterprises and financial markets.

Key Players

The global Artificial Intelligence in Marketing market report has provided a profiling of significant players that are impacting the trajectory of the market with their strategies for expansion and retaining of market share.

Key Segments Studied in the Global Artificial Intelligence in Marketing Market:

Key Players in the Global Artificial Intelligence in Marketing Market Covered In Chapter 4:

In Chapter 11 and 13.3, On The Basis Of Types, The Artificial Intelligence in Marketing Market From 2015 To 2026 Is primarily split into:-

In Chapter 12 and 13.4, On The Basis Of Applications, the Artificial Intelligence in Marketing Market From 2015 to 2026 covers:-

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Geographically, the detailed analysis of consumption, revenue, market share and growth rate, historic and forecast (2015-2026) of the following regions are covered in Chapter 5, 6, 7, 8, 9, 10, 13:-

Market Segmentation

The global Artificial Intelligence in Marketing market has been studied for a detailed segmentation that is based on different aspects to provide insight into the functioning of the segmental market. This segmentation has enabled the researchers to study the relationship and impact of the growth chart witnessed by these singular segments on the comprehensive market growth rate. It has also enabled various stakeholders in the global Artificial Intelligence in Marketing market to gain insights and make accurate relevant decisions. A regional analysis of the market has been conducted that is studied for the segments of North America, Asia Pacific, Europe, Latin America, and the Middle East & Africa.

Research Methodology

The global Artificial Intelligence in Marketing market has been analyzed using Porters Five Force Model to gain precise insight in the true potential of the market growth. Further, a SWOT analysis of the market has aided in the revealing of different opportunities for expansion that are inculcated in the market environment.

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Artificial Intelligence in Marketing Market 2020: Key Players With Product Particulars, Applications, Market Size & Forecast Till 2026 - Jewish...

Commentary: Artificial intelligence and automation would actually benefit Singapore – CNA

SINGAPORE: Now that the General Election is over, it is time for Singapore to refocus on the big challenge of creating jobs to tide citizens over a pandemic and double down on digitalisation for the long term.

Much has been said about the concerns people have about livelihoods, with suggestions to safeguard and improve the prospects of jobs for Singaporeans.

Yet disruption is not new to Singapore. History has witnessed how Singapore has upskilled its workforce through computerisation and automation in the 1980s.

Singapore businesses and workers are no strangers to the need to adapt to new technological changes.

Now, Digital Ambassador Corps have been deployed to help small businesses and senior citizens learn and apply technology.

With every change comes hesitance, even resistance. In the push for a Smart Nation, this resistance may come from a fear of the unknown. Reports of artificial Intelligence (AI) and digital technologies cannibalising jobs do not help either.

However, Singapore is in a unique situation. With a small and ageing workforce, Singapore has to tap on AI and automation to preserve its competitive advantage over other economies.

A COUNTRY INCREASINGLY POWERED BY MORE ARTIFICIAL INTELLIGENCE

Digital technologies and AI (including machine learning, computer vision and natural language processing) can boost efficiencies, performance and productivity in various ways.

It is these advanced technologies that help e-commerce retailers like Lazada sell more by analysing massive amount of data, learning customer preferences and providing targeted products to be displayed online for the customers.

In engineering and aviation, AI has been used to increase the performance of gas turbine engines, such as finding an optimal way to increase thrust and decrease fuel consumptions.

In the long term, the savings on fuel could be passed to the passengers. Such performance improvements cannot usually be attained using traditional models.

In logistics in Singapore and around the world, AI has also been utilised to predict traffic patterns and route conditions. For companies like Grab, the use of AI has enabled drivers to complete as many jobs as possible in the shortest amount of time.

Grab also uses natural language processing methods to address customer feedback and enable users to find the services they need with greater ease.

AI is also extensively used in the development of autonomous vehicles like the National University of Singapore (NUS) autonomous shuttle at its Kent Ridge campus.

In healthcare, AI has been employed to optimise hospital management and processes like managing a large number of patient beds in the case of Tan Tock Seng Hospital. Predictive analytics can help optimise hospital bed assignment decisions by predicting when patients will be discharged to make more beds available.

AI will be an integral part of Singapores healthcare system to help doctors make better decisions and design early intervention programmes and improved care pathways for patients using predictive modelling.

One application of machine learning is precision medicine where AI can help predict what treatment protocols are most feasible and with higher success rate on a patient based on various patient characteristics and the treatment context.

Another example is robotic surgery (like the da Vinci Surgical System used in Gleneagles Hospital Singapore) which can help surgeons improve their ability to perform precise and minimally invasive incisions and surgeries. Important decisions are still made by human surgeons.

In educational applications and tools, AI has helped the development of skills and testing systems and allows the adjustment of learning based on differentiating students needs in Institutes of Higher Learning in Singapore.

Students can thus enjoy more customised testing and learning tailored to the specific needs and ability level of each student.

JOBS ARE CHANGING

In areas where AI and digital technologies improve businesses significantly, the nature of jobs has changed.

Certain jobs like routine clerical work may be reduced while the employment rates for professionals and those in the service sectors have increased. Understanding what tasks AI is suited or not suited for will be a business priority for firms. Singapores learning, retraining and upskilling efforts must take full advantage of the AI era.

Prior research has shown AI is suited to perform tasks that provide clear feedback with definable goals and metrics. AI is also efficient at recognising associations based on empirical and statistical data.

AI can help improve traffic volume and flow in metropolitan areas like Singapore, New York or London using pre-defined performance and congestion measures at the system level by analysing large amounts of traffic data.

On the other hand, AI is not so good at unstructured tasks and reasoning, especially based on background information that is previously unknown to the computer.

This is why AI (or machine learning) can be used to spot irregular heartbeat from scans and detect diseases from medical imaging, but it cannot explain as well as doctors how and why one is diagnosed with a certain disease.

In other words, the interpretation of the causes and severity of these diseases and their linkages to other diseases are much more difficult for AI to ascertain. AI also does not perform well when the tasks to be learned change quickly.

Humans do much better at interpreting data and drawing inferences even when the tasks evolve over time.

YOUR JOB MAY REMAIN BUT SOME TASKS COULD BE OUTSOURCED TO AI

In light of the above understanding, how we should we adjust, retrain or upskill the valuable human resource we have in Singapore to prepare for the new paradigm involving AI and digital technologies?

We understand that most jobs have many interrelated tasks. People say the jobs AI could likely replace include telemarketing, receptionists, computer support specialists (think chatbots used by banks like OCBC) and market research analysts.

However, it doesnt mean these jobs will disappear entirely. AI is weak on relatively unstructured, creative tasks and those involving emotional intelligence.

The focus of the training or upskilling of such roles should be on these areas. Upskilling courses can cover developing strategies in branding, designing and marketing.

Use AI to gather your data, but use humans to develop business and innovation strategies and design marketing campaigns based on understanding those data.

People and leadership skills will continue to be important, yet another area that AI currently does not fill the void. The expertise in asking interesting questions and looking for new and innovative solutions, which is required in researchers or entrepreneurs, will also be deemed more valuable.

The age of AI and digital technologies is already here. It is clear they can and probably should be applied to different industries and have the potential to significantly improve productivity.

In the process, they will transform our work and lives. While some jobs may be replaced, many other job and career opportunities will be created.

Singapore has the infrastructure, talents and resources to take advantage of the benefits brought about by the AI revolution.

With national emphasis on innovation and Industry 4.0, as well as additional resources and upskilling opportunities, this could yet be another pivotal point for Singapore to create and deliver value in a competitive global arena.

DrKenneth GHuang is an Associate Professor with the Department of Strategy & Policy at National University of Singapore (NUS) Business School and the Department of Industrial Systems Engineering & Management at NUS. The opinions expressed are those of the writer and do not represent the views and opinions of NUS.

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Commentary: Artificial intelligence and automation would actually benefit Singapore - CNA

How Artificial Intelligence is Influencing the Drone Industry For Improved Performance – PRNewswire

PALM BEACH, Florida, July 16, 2020 /PRNewswire/ -- The global Artificial Intelligence (AI) -based Drone Software market size is expected to continue its rapid growth through the next five years, according to several reports. A Research And Markets reportsaid that: "Digital industries are now implementing AI in their devices to improve in their fields across the globe. Application of AI in drone is one such advancement which has brought a revolutionary change in the operations of the industries. AI enables storing and managing the data in bulk which enables the drones to give better performance. The application of AI can enable the drones to function as per the user's command and with longer distance coverage. In addition, AI integrated drone enables the industries to keep a bird-eye view of the land for vigilance & mapping purpose. The increased income levels have brought up new demands that have resulted in increasing supply of goods. Manufacturers are bringing in new features by implementing AI in their devices such as mobiles so as to make more appeal for the consumers to buy. So, the adoption in smartphones and increasing demands in aerial and drone services has made manufacturers to implement AI in drones across the globe. The drones are being in use over various s sectors such as agriculture, military and defense, media and entertainment, and others. Hence it is expected that AI-integrated drones will have significant growth in the near future. Active tech companies in the markets this week include Plymouth Rock Technologies Inc. (CSE: PRT) (OTCQB: PLRTF), Draganfly Inc. (OTCQB: DFLYF) (CSE: DFLY), Drone Delivery Canada Corp. (OTCQX: TAKOF) (TSX-V: FLT.V), Kratos Defense & Security Solutions, Inc. (NASDAQ: KTOS), AgEagle Aerial Systems, Inc. (NYSE: UAVS).

The global AI in Drone market is geographically analyzed into North America, Europe, Asia-Pacific, and Rest of the World. Asia-Pacific is the hub of drone manufacturers due to which, the demand for advanced technologies is expected to increase in the region. North America leads the market due to the presence of numerous key players in the region followed by Europe which has a few key players to dominate the market.

Plymouth Rock Technologies Inc. (CSE: PRT) (OTCQB: PLRTF) BREAKING NEWS: PLYMOUTH ROCK TECHNOLOGIES FORMS STRATEGIC ALLIANCE WITH HUMMINGBIRD DRONES TO FIGHT WILDFIRE THREATS - Plymouth Rock Technologies ("Plymouth Rock", "PRT", or the "Company"), a leader in the development of cutting-edge threat detection technologies, is pleased to announce a strategic alliance with Hummingbird Drones ("Hummingbird") fire AI. (Artificial Intelligence) for wildfire analysis from PRT's fleet of drones.

Fire AI.is a division of Hummingbird Drones,an infrared service provider in Canada, and has been used as their in-house hotspot detection platform for wildfires for the past three years.

"Live actionable data is precisely what the PRT unmanned aviation platforms were designed to deliver," stated Carl Cagliarini, Chief Strategy Officer of PRT. "This partnership is a further step in our mission centric focus. To date, commercially adapted Drones have used Wi-Fi frequencies with a limited range, usually under 2-3 miles. The X1 has both short-range capabilities, along with an optional military-grade system that enables high bandwidth data feeds up to 60 miles. These capabilities combined with best in class artificial intelligence applications such as fire AI. will deliver essential data when moments matter".

In the pursuit of providing the highest quality of intelligence, Hummingbird developed a wildfire-focused, data analytics software known as fire AI.. Bringing fire AI. to the public provides the global community with the highest quality of wildfire data analytics. Maximizingthe potential of infrared data sets,fire AI.specializes inhigh resolution hotspot maps, providingpreciselocationaldatafor fire crews in pursuit of heat. These aerial maps provide fire managers with higher levels of confidence and fire crews with more effective,accurate data to extinguish and efficiently reallocate resources.

"We believe that the analytic capability of fire AI. combined with the overall capabilities of the Plymouth Rock UAS platform will prove itself as a formidable tool", stated Robert Atwood CEO and Founder at Hummingbird Drones Inc.

Due to the vast data analysis combined with data download constraints of almost all UAS platforms, fire AI. is currently a post-processing service, where the ground is scanned and footage data is removed from the drone and uploaded to the fire AI. portal, which after process delivers fast data analytics results, to the fire management authorities. This service has been an invaluable tool in helping incident commanders and fire crews tackle blazes more effectively. The incorporation of the fire AI. into the X1 and XV platform will involve using this tried and tested method, whilst also utilizing PRT's high speed VPN data capabilities that will enable a connection directly to fire AI. servers to get analytics to the fire fighters as close to real time as possible.

The fire AI. capability will be a standard configuration on all firefighting X1 and XV platforms for immediate benefit. This will include PRT assets deployed within the USA and Australia.Read this and more news for PRT at: https://www.plyrotech.com/news/

Other recent developments in the tech industry include:

Draganfly Inc. (OTCQB: DFLYF) (CSE: DFLY) an award-winning, industry-leading manufacturer within the commercial Unmanned Aerial Vehicle ("UAV"), Remotely Piloted Aircraft Systems ("RPAS"), and Unmanned Vehicle Systems ("UVS") sectors, recently announced that John M. Mitnick, former General Counsel of the U.S. Department of Homeland Security ("DHS") and Raytheon senior executive, was elected to the Board of Directors of Draganfly at the Company's annual general meeting on June 18, 2020. All of the matters submitted to shareholders for approval, as set out in the Company's management information circular, were approved by the requisite majority of votes cast at the annual general meeting of shareholders.

Drone Delivery Canada Corp. (OTCQX: TAKOF) (TSX-V: FLT.V) recently announcedthat on June 26th, 2020 it successfully completed Phase Two of its AED (Automated External Defibrillator) On The Fly project with Peel Region Paramedics and Sunnybrook Centre for Prehospital Medicine. Building on the success of Phase One of the study, the Company was able to demonstrate ease of use of its AED drone solution when provided to community responders in a simulated cardiac arrest scenario. The testing further validates that usingDDC's proprietary drone delivery platform with cargo drop functionality to deliver rapid first responder technology via drone may reduce response time to cardiac arrest patients in the field while being utilized by lay responders.

On June 26th, 2019, the Company had announced a 100% successful Phase One of the project. Phase Two utilized the Sparrow, with the new cargo drop capability and a new audio announcement system, to drop an AED where a designated lay bystander would then retrieve the AED and apply it to a simulated cardiac arrest patient in a rural environment. Multiple pairs of lay bystanders and simulated cardiac arrest patients in multiple locations were used to test the AED drone solution. Response time to drop, retrieve and apply an AED, and physiological and psychological human factors in a stressful situation were measured during the testing.

Kratos Defense & Security Solutions, Inc. (NASDAQ: KTOS) a leading National Security Solutions provider, recently announced that it has recently received approximately $30 million in contract awards for Command, Control, Computing, Communication, Combat, Intelligence, Surveillance and Reconnaissance (C5ISR) Systems, focused primarily on missile defense related combat systems. Kratos is an industry leader in the rapid development, demonstration and fielding of affordable leading technology products and solutions in support of the United States and its allies' national security missions. Kratos C5ISR Modular Systems Business is an industry leader in manufacturing, producing and delivering C5ISR Systems for Missile, Radar, High Power Directed Energy, Ballistic Missile Defense, Unmanned Aerial Vehicle, Chemical, Biological, Radiation, Nuclear and High Explosive (CBRNE) and other programs and applications. Work under these recent program awards will be performed at secure Kratos manufacturing and production facilities. The majority of the performance under these contract awards will be completed over the next 24 months. Due to customer, competitive and other considerations, no additional information will be provided related to these U.S. National Security related program awards.

AgEagle Aerial Systems, Inc. (NYSE: UAVS) J. Michael Drozd, new Chief Executive Officer ofthe company, an industry leading provider of unmanned aerial vehicles and advanced aerial imagery, data collection and analytics solutions, recently issued a letter to the Company's shareholders commenting on the Company's vision, defined growth strategy and key developments which have occurred since he assumed the helm of AgEagle on May 18, 2020. Drozd stated:

"I'd like to begin by sharing how pleased and privileged I am to have been selected by the Board to help lead AgEagle through its next critical phase of innovation and evolution. Since my first day on the job, I have immersed myself in meeting with our talented team; fully understanding the depth and capabilities of our software development and manufacturing operations; carefully evaluating our core strengths and many market opportunities; and attaining meaningful clarity into the dynamic, high growth company we are actively engaged in building. This has been and will undoubtedly remain an exciting and ongoing process.

"After an extensive evaluation process, I firmly believe that AgEagle has what it takes to become one of the leading, most trusted commercial drone technology, services and solutions providers globally. To achieve that aim, we are committing to a highly focused growth strategy centered on three primary industry sectors: U.S.-based drone hardware and subcomponent design, manufacturing, assembling and testing; Drone package delivery services; and Hemp cultivation registration, oversight, compliance, reporting and data analytics software solutions for government and commercial customers."

DISCLAIMER:FN Media Group LLC (FNM), which owns and operates FinancialNewsMedia.com and MarketNewsUpdates.com, is a third party publisher and news dissemination service provider, which disseminates electronic information through multiple online media channels. FNM is NOT affiliated in any manner with any company mentioned herein.FNM and its affiliated companies are a news dissemination solutions provider and are NOT a registered broker/dealer/analyst/adviser, holds no investment licenses and may NOT sell, offer to sell or offer to buy any security. FNM's market updates, news alerts and corporate profiles are NOT a solicitation or recommendation to buy, sell or hold securities.The material in this release is intended to be strictly informational and is NEVER to be construed or interpreted as research material. All readers are strongly urged to perform research and due diligence on their own and consult a licensed financial professional before considering any level of investing in stocks. All material included herein is republished content and details which were previously disseminated by the companies mentioned in this release. FNM is not liable for any investment decisions by its readers or subscribers. Investors are cautioned that they may lose all or a portion of their investment when investing in stocks.For current services performed FNM has been compensated twenty five hundred dollars for news coverage of the current press releases issued by Plymouth Rock Technologies Inc. by a non affiliated third party. FNM HOLDS NO SHARES OF ANY COMPANY NAMED IN THIS RELEASE.

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How Artificial Intelligence is Influencing the Drone Industry For Improved Performance - PRNewswire

The Advancements in Real World Artificial Intelligence – Analytics Insight

When you pick up a magazine, scroll through the tech blogs, or simply chat with your peers about technology, youll quickly notice that almost everything related to the technology world seems to have some element of artificial intelligence or machine learning to it. Computer power is developing, calculations and Artificial Intelligence (AI) models are getting increasingly advanced, and, maybe generally significant of all, the world is creating impossible volumes of data.

As a result, AI is being blended into almost every aspect of our lives, from our cars and medical devices to robots and entertainment. Its here to prevail. Artificial intelligence will likely revamp every aspect of society, business, and industry over the coming decade. AI could impact everything from customers to employees to operations, making it indispensable that organizations begin understanding their place in this era of AI.

Now that we are well immersed into the AI revolution, its important to look at how the concept of artificial intelligence has been absorbed, why, and what it will mean in the future. The AI of today is a continuation of advances accomplished over the recent decades. The change, the reasons we are seeing artificial intelligence show up in such a large number of more places, isnt such a great amount about the AI advancements themselves, yet the innovations that encompass them data generation and handling power.

Ongoing advances in artificial intelligence have come essentially in zones where information researchers can copy human recognition capabilities, for example, perceiving objects in pictures or words in acoustic signs. Figuring out how to perceive designs in complex signs, for example, sound streams or pictures, is amazingly incredibleground-breaking enough that numerous individuals wonder why we arent utilizing deep learning procedures everywhere.

Pushing ahead, as groups become adjusted in their objectives and techniques for utilizing AI to accomplish them, deep learning will turn out to be a piece of each data scientists tool box. Consider this thought. We will have the option to incorporate object recognition in a framework, utilizing a pre-prepared artificial reasoning framework. However, at long last, we will understand that profound learning is simply another tool to utilize when it makes sense.

Now lets explore how AI is benefitting the mankind and serving various fields like marketing, finance, banking and so on in the real world.

Marketing is a way to glorify your products to attract more customers. In the early 2000s, in the event that we looked through an online store to discover an item without knowing its precise name, it would turn into a nightmare to discover the item. In any case, presently when we scan for a thing on any e-commerce store, we get every single imaginable result identified with the item.

A classic case of this is finding the right movies on Netflix. It examines millions of records to recommend shows and films that you might like based on your previous choices of films. As the data deposit grows, this technology is getting smarter and smarter every day.

AI has expanded its reach in the world of banking as well. AI solutions can be used to strengthen security across a number of business sectors, including retail and finance. By tracking card usage and endpoint access, security experts are more effectively preventing fraud. Organizations rely on AI to trace those anomalies by reviewing the behaviour of transactions.

In recent times, ventures have been depending on computers and information researchers to decide future patterns in the market. Trading for the most part relies upon the capacity to foresee the future precisely. Machines are incredible at this since they can crunch a colossal measure of information in a limited time.

In the time of ultra-high-recurring trade, monetary associations are going to AI to improve their stock trading performance and boost profit.

However, there are certain barriers to the rapid growth of AI. These barriers demonstrate that the path to the advancement of AI can be tricky and somewhat challenging. The present artificial intelligence systems dont have that deep understanding. What we see presently is shallow intelligence; the ability to copy confined human recognition abilities and sometimes outperforms humans on those secluded tasks.

Apart from this, teaching computers to learn for themselves is an exceptional shortcut. Theres intelligence in AI systems, but its not organic intelligence, and it doesnt follow the same rules as humans do.

Intelligence is a rare and valuable commodity. Regardless of ongoing advances in Artificial Intelligence (AI) that empower it to win games and drive vehicles, there are innumerable undiscovered open doors for trend setting technology to have a noteworthy and gainful impact on the world. Driven by three major patterns, were as of now in the center of an incredible new wave of AI.

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The Advancements in Real World Artificial Intelligence - Analytics Insight

EU struggles to go from talk to action on artificial intelligence – Science Business

The EU is moving tentatively towards first-of-its-kind rules on the ways that companies can use artificial intelligence (AI), amid fears that the technology is galloping beyond regulators grasp.

Supporters of regulation say proper human oversight is needed for a rapidly developing technology that presents new risks to individual privacy and livelihoods. Others warn that the new rules could stifle innovation with lasting economic consequences.

We arent Big Brother China or Big Data US. We have to find our own way, said German MEP Axel Voss, who is about to take his seat on the European Parliaments new special committee on AI.

Having in mind that the AI tech is now of global strategic relevance, we have to be careful about over-regulating. Theres competition around the world. If we would like to play a role in the future, we need to do something thats not going to the extreme, said Voss, a member of the centre-right European People's Party.

In February, the European Commission presented its AI white paper, which states that new technologies in critical sectors should be subject to legislation. It likened the current situation to "the Wild West" and said it would focus on "high-risk" cases. The debate over the papers many elements will last through 2020 and into next year, when the EU executive will present its legislative proposal.

Researchers and industry are battling for influence over the AI policy.

Theres an incredible opportunity here to begin to tackle high-risk applications of AI. Theres also this real chance to set standards for the entire world, said Haydn Belfield, research associate and academic project manager at Cambridge Universitys Centre for the Study of Existential Risk.

Policymakers and the public are concerned about applications such as autonomous weapons and government social scoring systems similar to those under development in China. Facial scanning software is already creeping into use Europe, operating with little oversight.

You dont have to be an expert in AI to see theres a really high risk to peoples life and liberty from some of these new applications, said Belfield.

Big tech companies, which have made large investments in new AI applications, are wary of the EUs plans to regulate.

Google has criticised measures in the commission's AI white paper, which it says could harm the sector. Last year, the comoany issued its own guidance on the technology, arguing that although it comes with hazards, existing rules and self-regulationwill be sufficientin the vast majority of instances.

In its response to the commissions proposal, Microsoft similarly urged the EU to rely on existing laws and regulatory frameworks as much as possible. However, the US tech company added that developers should be transparent about limitations and risks inherent in the use of any AI system. If this is not done voluntarily, it should be mandated by law, at least for high-risk use cases.

Thomas Metzinger, professor of theoretical philosophy at the University of Mainz, and a member of the commission's 52-strong AI expert group says hes close to despondency because of how long its taking to regulate the field.

We can have clever discussions but what is actually being done? I have long given up on having an overview of the 160 or so ethics guidelines for AI out there in the world, he said.

Vague and non-committal guidelines

Metzinger has been strongly critical of the make-up of the commissions AI advisory group, which he says is tilted towards industry interests. Im disappointed by what weve produced. The guidelines are completely vague and non-committal. But its all relative. Compared to what China and US have produced, Europe has done better, he said.

Setting clear limits for AI is in step with Brussels more hands-on approach of recent years for the digital world. The commission is also setting red lines on privacy, antitrust and harmful internet content, which has inspired tougher rules elsewhere in the world.

Some argue that this prioritising of data protection, through the EUs flagship general data protection regulation (GDPR), has harmed AI growth in Europe.

The US and China account for almost all private AI investment in the world, according to Stanford Universitys AI index report. The European country with the most meaningful presence on AI is the UK, which has left the bloc and has hinted that it may detach itself from EU data protection laws in the future.

GDPR has slowed down AI development in Europe and potentially harmed it, says Sennay Ghebreab, associate professor of socially intelligent systems at the University of Amsterdam.

If you look at medical applications of AI, doctors are not able to use this technology yet [to the fullest]. This is an opportunity missed, he said. The dominating topics are ethics and privacy and this could lead us away from discussing the benefits that AI can bring.

GDPR is a very good piece of legislation, said Voss. But he agrees that it hasnt found the best balance between innovation and privacy. Because of its complexity, people are sometimes giving up, saying its easier to go abroad. We are finding our own way on digitisation in Europe but we shouldnt put up more bureaucratic obstacles.

Catching up

Those who support AI legislation are concerned it will take too long to regulate the sectors where it is deployed.

One highly-decorated legal expert told me it would be around nine years before a law was enforceable. Can you imagine where Google DeepMind will be in five years? said Metzinger, referring to the London lab owned by Google that is at the forefront of bringing AI to sectors like healthcare.

MEPs too are mindful of the need for speed, said Voss. Its very clear that we cant take the time we took with the GDPR. We wont catch up with the competition if it takes such a long time, he said. From the initial consultation, to implementation, GDPR took the best part of a decade to put together.

Regulation could be a fake, misleading solution, Ghebreab warned. Its the companies that use AI, rather than the technology itself, that need to be regulated. In general, top-down regulation is unlikely to lead to community-minded AI solutions. AI is in hands of big companies in US, in the hands of the government in China, and it should be in the hands of the people in Europe, Ghebreab said.

Ghebreab has been working on AI since the 1990s and has recently started a lab exploring socially minded applications, with backing from the city of Amsterdam.

As an example of how AI can help people, he points to an algorithm developed by the Swiss government and a team of researchers in the US that helps with the relocation of refugees. It aims to match refugees with regions that need their skills. Relocation today is based on capacity rather than taking into account refugees education or background, he said.

Interim solutions for AI oversight are not to everyones taste.

Self-regulation is fake and full of superficial promises that are hard to implement, said Metzinger.

The number one lesson Ive learned in Brussels is how contaminated the whole process is by industrial lobbying. Theres a lot of ethics-washing that is slowing down the path to regulation, he said.

Metzinger is aggrieved that, of the 52 experts picked to advise the commission on AI, only four were ethicists. Twenty-six are direct industry representatives, he said. There were conflicts, and people including myself did not sign off on all our work packages. Workshops organised with industry lacked transparency, said Metzinger.

In response, commission spokesman Charles Manoury said the expert panel was formed on the basis of an open selection process, following anopen call for expressions of interest.

Digital Europe, which represents tech companies such as Huawei, Google, Facebook and Amazon, was also contacted for comment.

Adhering to AI standards is ultimately in companies interests, argues Belfield. After the techlash weve been seeing, it will help to make companies seem more trustworthy again, he said.

Developing trustworthy AI is where the EU can find its niche, according to a recent report from the Carnegie Endowment for International Peace. Designed to alleviate potential harm as well as to permit accountability and oversight, this vision for AI-enabled technologies could set Europe apart from its global competitors, the report says.

The idea has particular thrust in France, where the government, alongside Canada, pushed for the creation of the new global forum on ethical AI development.

Public distrust is the fundamental brake on AI development, according to the UK governments Centre for Data Ethics and Innovation. In the absence of trust, consumers are unlikely to use new technologies or share the data needed to build them, while industry will be unwilling to engage in new innovation programmes for fear of meeting opposition and experiencing reputational damage, its AI Barometer report says.

Banning AI

One idea floated by the commission earlier this year was a temporary ban on the use of facial recognition in public areas for up to five years.

There are grave concerns about the technology, which uses surveillance cameras, computer vision, and predictive imaging to keep tabs on large groups of people.

Facial recognition is a genius technology for finding missing children but a heinous technology for profiling, propagating racism, or violating privacy, said Oren Etzioni, professor of computer science and CEO of the Allen Institute for Artificial Intelligence in Seattle.

Several state and local governments in the US have stopped law enforcement officers from using facial recognition databases. Trials of the technology in Europe have provoked a public backlash.

Privacy activists argue the technology is potentially authoritarian, because it captures images without consent. The technology can also have a racial bias. If a system is trained primarily on white male faces, but fewer women and people of colour, it will be less accurate for the latter groups.

Despite its flaws, facial recognition has potential for good, said Ghebreab, who doesnt support a moratorium. We have to be able to show how people can benefit from it; now the narrative is how people suffer from it, he said.

Voss doesnt back a ban for particular AI applications either. We should have some points in the law saying what you can and cant do with AI, otherwise youll face a ban. We should not think about an [outright] ban, he said.

Metzinger favours limiting facial recognition in some contexts, but he admits, its very difficult to tease this apart. You would still want to be able, for counter terrorism measures, to use the technology in public spaces, he said.

The Chinese government has controversially used the tool to identify pro-democracy protesters in Hong Kong, and for racial profiling and control of Uighur muslims. Face scans in China are used to pick out and fine jaywalkers and citizens in Shanghai will soon have to verify their identity in pharmacies by scanning their faces.

It comes back to whom you trust with your data, Metzinger said. I would basically still trust the German government I would never want to be in the hands of the Hungarian government though.

Defence is the other big, controversial area for AI applications. The EUs white paper mentions military AI just once, in a footnote.

Some would prefer if the EU banned the development of lethal autonomous weapons altogether, though few expect this to happen.

There is a lot we dont know. A lot is classified. But you can deduce from investment levels that theres much less happening in Europe [on military AI] than in the US and China, said Amy Ertan, cyber security researcher at the University of London.

Europe is not a player in military AI but it is making steps to change this. The European Defence Agency is running 30 projects that include AI aspects, with more in planning, said the agencys spokeswoman Elisabeth Schoeffmann.

The case for regulation

Author and programmer Brian Christian says regulating AI is a cat and mouse game.

It reminds me of financial regulation, which is very difficult to write because the techniques change so quickly. By the time you pass the law, the field has moved on, he said.

Christians new book looks at the urgent alignment problem, where AI systems dont do what we want or what we expect. A string of jaw-dropping breakthroughs have alternated with equally jaw-dropping disasters, he said.

Recent examples include Amazons AI-powered recruiting system, which filtered out applications that included womens colleges, and showed preference for CVs that included linguistic habits more prone to men, like use of the words executed and captured, said Christian. After several repairs failed, engineers quietly scuttled it entirely in 2018.

Then there was the recurring issue with Google Photos labelling pictures of black people as gorillas; after a series of fixes didnt work, engineers resorted to manually deleting the gorilla label altogether.

Stories like these illustrate why discussions on ethical responsibility have only grown more urgent, Christian said.

If you went to one of the major AI conferences, ethics and safety are now the most rapidly growing and dynamic subsets of the field. Thats either reassuring or worrying, depending on how you view these things.

Europes data privacy rules have helped ethics and safety move in from the fringes of AI, said Christian. One of the big questions for AI is transparency and explain-ability, he said. The GDPR introduces a right to know why an AI system denied you a mortgage or a credit card, for example.

The problem however is that AI decisions are not always intelligible to those who create these systems, let alone to ordinary people.

I heard about lawyers at AI companies who were complaining about the GDPR and how it demanded something that wasnt scientifically possible. Lawyers pleaded with regulators. The EU gave them two years notice on a major research problem, Christian said.

Were familiar with the idea that regulation can constrain, but here is a case where a lot of our interest in transparency and explanation was driven by a legal requirement no one knew how to meet.

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EU struggles to go from talk to action on artificial intelligence - Science Business

Navigating ‘information pollution’ with the help of artificial intelligence – Penn: Office of University Communications

Theres still a lot thats not known about the novel coronavirus SARS-CoV-2 and COVID-19, the disease it causes. What leads some people to have mild symptoms and others to end up in the hospital? Do masks help stop the spread? What are the economic and political implications of the pandemic?

As researchers try to address many of these questions, many of which will not have a simple yes or no answer, people are also trying to figure out how to keep themselves and their families safe. But between the 24-hour news cycle, hundreds of preprint research articles, and guidelines that vary between regional, state, and federal governments, how can people best navigate through such vast amounts of information?

Using insights from the field of natural language processing and artificial intelligence, computer scientist Dan Roth and the Cognitive Computation Group are developing an online platform to help users find relevant and trustworthy information about the novel coronavirus. As part of a broader effort by his group to develop tools for navigating information pollution, this platform is devoted to identifying the numerous perspectives that a single query might have, showing the evidence that supports each perspective and organizing results, along with each sources trustworthiness, so users can better understand what is known, by whom, and why.

Creating these types of automated platforms represents a huge challenge for researchers in the field of natural language processing and machine learning because of the complexity of human language and communication. Language is ambiguous. Every word, depending on context, could mean completely different things, says Roth. And language is variable. Everything you want to say, you can say in different ways. To automate this process, we have to get around these two key difficulties, and this is where the challenge is coming from.

Thanks to numerous conceptual and theoretical advances, the Cognitive Computational Groups fundamental research in natural language understanding has allowed them to apply their research insights and to develop automated systems that can better understand the contents of human language, such as what is being written about in a news article or scientific paper. Roth and his team have been working on issues related to information pollution for many years and are now applying what theyve learned to information about the novel coronavirus.

Information pollution comes in many forms, including biases, misinformation, and disinformation, and because of the sheer volume of information the process of sorting fact from fiction needs automated support. Its very easy to publish information, says Roth, adding that while organizations like FactCheck.org, a project of Penns Annenberg Public Policy Center, manually verify the validity of many claims, theres not enough human power to fact check every claim being posted on the Internet.

And fact checking alone isnt enough to address all of the problems of information pollution, says Ph.D. student Sihao Chen. Take the question of whether people should wear face masks: The answer to that question has changed dramatically in the past couple months, and the reason for that change is multi-faceted, he says. You couldnt find an objective truth attached to that specific question, and the answer to that question is context-dependent. Fact checking alone doesnt solve this problem because theres no single answer. This is why the team says that identifying various perspectives along with evidence that supports them is important.

To help address both of these hurdles, the COVID-19 search platform visualizes results that include a sources level of trustworthiness while also highlighting different perspectives. This is different from how online search engines display information, where top results are based on popularity and keyword match and where its not easy to see how the arguments in articles compare to one another. On this platform, however, instead of displaying articles on an individual basis, they are organized based on the claims they make.

Search engines make a point not to touch the information and not to give suggestions and organize this material, says Roth. The redundancy of information by itself is quite often misleading and leads to bias, since people tend to think that seeing something many times makes it more correct. Here, if there are 500 articles that are saying the same thing, we cluster them together and say, All these articles are quoting the same sources, so just focus on one of them. Then, these other articles are interviewing other people and making different claims, so you can sample from different clusters.

When visiting the website, users can enter a question, claim, or topic into the search bar, and results are grouped together based on the similarity of perspectives. Since everything is set up to be automated, the researchers are eager to share this first iteration of the platform with the community so they can improve the language-processing models. Its a community effort, says Roth, adding that their platform was designed to be transparent and open source so that they can easily collaborate with others.

Chen hopes that their efforts support both the users who are interested in sorting through COVID-19 information pollution as well as fellow researchers in the field of natural language processing. We want to help everyone whos interested in reading news like this, and at the same time we want to build better techniques to accommodate that need, says Chen.

Dan Roth is the Eduardo D. Glandt Distinguished Professor in the Department of Computer and Information Science in the School of Engineering and Applied Science at the University of Pennsylvania.

The online search platform is available on the Penn Information Pollution project website.

Additional information and resources on COVID-19 are available at https://coronavirus.upenn.edu/.

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Navigating 'information pollution' with the help of artificial intelligence - Penn: Office of University Communications

Artificial intelligence – Wikipedia

Intelligence demonstrated by machines

In computer science, artificial intelligence (AI), sometimes called machine intelligence, is intelligence demonstrated by machines, unlike the natural intelligence displayed by humans and animals. Leading AI textbooks define the field as the study of "intelligent agents": any device that perceives its environment and takes actions that maximize its chance of successfully achieving its goals.[1] Colloquially, the term "artificial intelligence" is often used to describe machines (or computers) that mimic "cognitive" functions that humans associate with the human mind, such as "learning" and "problem solving".

As machines become increasingly capable, tasks considered to require "intelligence" are often removed from the definition of AI, a phenomenon known as the AI effect.[3] A quip in Tesler's Theorem says "AI is whatever hasn't been done yet."[4] For instance, optical character recognition is frequently excluded from things considered to be AI,[5] having become a routine technology.[6] Modern machine capabilities generally classified as AI include successfully understanding human speech, competing at the highest level in strategic game systems (such as chess and Go),[8] autonomously operating cars, intelligent routing in content delivery networks, and military simulations.[9]

Artificial intelligence was founded as an academic discipline in 1955, and in the years since has experienced several waves of optimism,[10][11] followed by disappointment and the loss of funding (known as an "AI winter"),[12][13] followed by new approaches, success and renewed funding.[11][14] For most of its history, AI research has been divided into sub-fields that often fail to communicate with each other.[15] These sub-fields are based on technical considerations, such as particular goals (e.g. "robotics" or "machine learning"),[16] the use of particular tools ("logic" or artificial neural networks), or deep philosophical differences.[17][18][19] Sub-fields have also been based on social factors (particular institutions or the work of particular researchers).[15]

The traditional problems (or goals) of AI research include reasoning, knowledge representation, planning, learning, natural language processing, perception and the ability to move and manipulate objects.[16] General intelligence is among the field's long-term goals.[20] Approaches include statistical methods, computational intelligence, and traditional symbolic AI. Many tools are used in AI, including versions of search and mathematical optimization, artificial neural networks, and methods based on statistics, probability and economics. The AI field draws upon computer science, information engineering, mathematics, psychology, linguistics, philosophy, and many other fields.

The field was founded on the assumption that human intelligence "can be so precisely described that a machine can be made to simulate it".[21] This raises philosophical arguments about the mind and the ethics of creating artificial beings endowed with human-like intelligence. These issues have been explored by myth, fiction and philosophy since antiquity.[22] Some people also consider AI to be a danger to humanity if it progresses unabated.[23][24] Others believe that AI, unlike previous technological revolutions, will create a risk of mass unemployment.[25]

In the twenty-first century, AI techniques have experienced a resurgence following concurrent advances in computer power, large amounts of data, and theoretical understanding; and AI techniques have become an essential part of the technology industry, helping to solve many challenging problems in computer science, software engineering and operations research.[26][14]

Thought-capable artificial beings appeared as storytelling devices in antiquity,[27] and have been common in fiction, as in Mary Shelley's Frankenstein or Karel apek's R.U.R. (Rossum's Universal Robots).[28] These characters and their fates raised many of the same issues now discussed in the ethics of artificial intelligence.[22]

The study of mechanical or "formal" reasoning began with philosophers and mathematicians in antiquity. The study of mathematical logic led directly to Alan Turing's theory of computation, which suggested that a machine, by shuffling symbols as simple as "0" and "1", could simulate any conceivable act of mathematical deduction. This insight, that digital computers can simulate any process of formal reasoning, is known as the ChurchTuring thesis.[29] Along with concurrent discoveries in neurobiology, information theory and cybernetics, this led researchers to consider the possibility of building an electronic brain. Turing proposed changing the question from whether a machine was intelligent, to "whether or not it is possible for machinery to show intelligent behaviour".[30] The first work that is now generally recognized as AI was McCullouch and Pitts' 1943 formal design for Turing-complete "artificial neurons".

The field of AI research was born at a workshop at Dartmouth College in 1956,[32] where the term "Artificial Intelligence" was coined by John McCarthy to distinguish the field from cybernetics and escape the influence of the cyberneticist Norbert Wiener.[33] Attendees Allen Newell (CMU), Herbert Simon (CMU), John McCarthy (MIT), Marvin Minsky (MIT) and Arthur Samuel (IBM) became the founders and leaders of AI research.[34] They and their students produced programs that the press described as "astonishing": computers were learning checkers strategies (c. 1954)[36] (and by 1959 were reportedly playing better than the average human),[37] solving word problems in algebra, proving logical theorems (Logic Theorist, first run c. 1956) and speaking English.[38] By the middle of the 1960s, research in the U.S. was heavily funded by the Department of Defense[39] and laboratories had been established around the world.[40] AI's founders were optimistic about the future: Herbert Simon predicted, "machines will be capable, within twenty years, of doing any work a man can do". Marvin Minsky agreed, writing, "within a generation... the problem of creating 'artificial intelligence' will substantially be solved".[10]

They failed to recognize the difficulty of some of the remaining tasks. Progress slowed and in 1974, in response to the criticism of Sir James Lighthill and ongoing pressure from the US Congress to fund more productive projects, both the U.S. and British governments cut off exploratory research in AI. The next few years would later be called an "AI winter",[12] a period when obtaining funding for AI projects was difficult.

In the early 1980s, AI research was revived by the commercial success of expert systems,[42] a form of AI program that simulated the knowledge and analytical skills of human experts. By 1985, the market for AI had reached over a billion dollars. At the same time, Japan's fifth generation computer project inspired the U.S and British governments to restore funding for academic research.[11] However, beginning with the collapse of the Lisp Machine market in 1987, AI once again fell into disrepute, and a second, longer-lasting hiatus began.[13]

The development of metaloxidesemiconductor (MOS) very-large-scale integration (VLSI), in the form of complementary MOS (CMOS) transistor technology, enabled the development of practical artificial neural network (ANN) technology in the 1980s. A landmark publication in the field was the 1989 book Analog VLSI Implementation of Neural Systems by Carver A. Mead and Mohammed Ismail.[43]

In the late 1990s and early 21st century, AI began to be used for logistics, data mining, medical diagnosis and other areas.[26] The success was due to increasing computational power (see Moore's law and transistor count), greater emphasis on solving specific problems, new ties between AI and other fields (such as statistics, economics and mathematics), and a commitment by researchers to mathematical methods and scientific standards.[44] Deep Blue became the first computer chess-playing system to beat a reigning world chess champion, Garry Kasparov, on 11 May 1997.

In 2011, a Jeopardy! quiz show exhibition match, IBM's question answering system, Watson, defeated the two greatest Jeopardy! champions, Brad Rutter and Ken Jennings, by a significant margin. Faster computers, algorithmic improvements, and access to large amounts of data enabled advances in machine learning and perception; data-hungry deep learning methods started to dominate accuracy benchmarks around 2012.[47] The Kinect, which provides a 3D bodymotion interface for the Xbox 360 and the Xbox One, uses algorithms that emerged from lengthy AI research[48] as do intelligent personal assistants in smartphones.[49] In March 2016, AlphaGo won 4 out of 5 games of Go in a match with Go champion Lee Sedol, becoming the first computer Go-playing system to beat a professional Go player without handicaps.[8][50] In the 2017 Future of Go Summit, AlphaGo won a three-game match with Ke Jie,[51] who at the time continuously held the world No. 1 ranking for two years.[52][53] This marked the completion of a significant milestone in the development of Artificial Intelligence as Go is a relatively complex game, more so than Chess.

According to Bloomberg's Jack Clark, 2015 was a landmark year for artificial intelligence, with the number of software projects that use AI Google increased from a "sporadic usage" in 2012 to more than 2,700 projects. Clark also presents factual data indicating the improvements of AI since 2012 supported by lower error rates in image processing tasks.[54] He attributes this to an increase in affordable neural networks, due to a rise in cloud computing infrastructure and to an increase in research tools and datasets.[14] Other cited examples include Microsoft's development of a Skype system that can automatically translate from one language to another and Facebook's system that can describe images to blind people.[54] In a 2017 survey, one in five companies reported they had "incorporated AI in some offerings or processes".[55][56] Around 2016, China greatly accelerated its government funding; given its large supply of data and its rapidly increasing research output, some observers believe it may be on track to becoming an "AI superpower".[57][58] However, it has been acknowledged that reports regarding artificial intelligence have tended to be exaggerated.[59][60][61]

Computer science defines AI research as the study of "intelligent agents": any device that perceives its environment and takes actions that maximize its chance of successfully achieving its goals.[1] A more elaborate definition characterizes AI as "a system's ability to correctly interpret external data, to learn from such data, and to use those learnings to achieve specific goals and tasks through flexible adaptation."[62]

A typical AI analyzes its environment and takes actions that maximize its chance of success.[1] An AI's intended utility function (or goal) can be simple ("1 if the AI wins a game of Go, 0 otherwise") or complex ("Perform actions mathematically similar to ones that succeeded in the past"). Goals can be explicitly defined or induced. If the AI is programmed for "reinforcement learning", goals can be implicitly induced by rewarding some types of behavior or punishing others.[a] Alternatively, an evolutionary system can induce goals by using a "fitness function" to mutate and preferentially replicate high-scoring AI systems, similar to how animals evolved to innately desire certain goals such as finding food. Some AI systems, such as nearest-neighbor, instead of reason by analogy, these systems are not generally given goals, except to the degree that goals are implicit in their training data. Such systems can still be benchmarked if the non-goal system is framed as a system whose "goal" is to successfully accomplish its narrow classification task.[65]

AI often revolves around the use of algorithms. An algorithm is a set of unambiguous instructions that a mechanical computer can execute.[b] A complex algorithm is often built on top of other, simpler, algorithms. A simple example of an algorithm is the following (optimal for first player) recipe for play at tic-tac-toe:

Many AI algorithms are capable of learning from data; they can enhance themselves by learning new heuristics (strategies, or "rules of thumb", that have worked well in the past), or can themselves write other algorithms. Some of the "learners" described below, including Bayesian networks, decision trees, and nearest-neighbor, could theoretically, (given infinite data, time, and memory) learn to approximate any function, including which combination of mathematical functions would best describe the world[citation needed]. These learners could therefore derive all possible knowledge, by considering every possible hypothesis and matching them against the data. In practice, it is seldom possible to consider every possibility, because of the phenomenon of "combinatorial explosion", where the time needed to solve a problem grows exponentially. Much of AI research involves figuring out how to identify and avoid considering a broad range of possibilities unlikely to be beneficial.[67] For example, when viewing a map and looking for the shortest driving route from Denver to New York in the East, one can in most cases skip looking at any path through San Francisco or other areas far to the West; thus, an AI wielding a pathfinding algorithm like A* can avoid the combinatorial explosion that would ensue if every possible route had to be ponderously considered.[69]

The earliest (and easiest to understand) approach to AI was symbolism (such as formal logic): "If an otherwise healthy adult has a fever, then they may have influenza". A second, more general, approach is Bayesian inference: "If the current patient has a fever, adjust the probability they have influenza in such-and-such way". The third major approach, extremely popular in routine business AI applications, are analogizers such as SVM and nearest-neighbor: "After examining the records of known past patients whose temperature, symptoms, age, and other factors mostly match the current patient, X% of those patients turned out to have influenza". A fourth approach is harder to intuitively understand, but is inspired by how the brain's machinery works: the artificial neural network approach uses artificial "neurons" that can learn by comparing itself to the desired output and altering the strengths of the connections between its internal neurons to "reinforce" connections that seemed to be useful. These four main approaches can overlap with each other and with evolutionary systems; for example, neural nets can learn to make inferences, to generalize, and to make analogies. Some systems implicitly or explicitly use multiple of these approaches, alongside many other AI and non-AI algorithms; the best approach is often different depending on the problem.[71]

Learning algorithms work on the basis that strategies, algorithms, and inferences that worked well in the past are likely to continue working well in the future. These inferences can be obvious, such as "since the sun rose every morning for the last 10,000 days, it will probably rise tomorrow morning as well". They can be nuanced, such as "X% of families have geographically separate species with color variants, so there is a Y% chance that undiscovered black swans exist". Learners also work on the basis of "Occam's razor": The simplest theory that explains the data is the likeliest. Therefore, according to Occam's razor principle, a learner must be designed such that it prefers simpler theories to complex theories, except in cases where the complex theory is proven substantially better.

Settling on a bad, overly complex theory gerrymandered to fit all the past training data is known as overfitting. Many systems attempt to reduce overfitting by rewarding a theory in accordance with how well it fits the data, but penalizing the theory in accordance with how complex the theory is. Besides classic overfitting, learners can also disappoint by "learning the wrong lesson". A toy example is that an image classifier trained only on pictures of brown horses and black cats might conclude that all brown patches are likely to be horses. A real-world example is that, unlike humans, current image classifiers don't determine the spatial relationship between components of the picture; instead, they learn abstract patterns of pixels that humans are oblivious to, but that linearly correlate with images of certain types of real objects. Faintly superimposing such a pattern on a legitimate image results in an "adversarial" image that the system misclassifies.[c][74][75][76]

Compared with humans, existing AI lacks several features of human "commonsense reasoning"; most notably, humans have powerful mechanisms for reasoning about "nave physics" such as space, time, and physical interactions. This enables even young children to easily make inferences like "If I roll this pen off a table, it will fall on the floor". Humans also have a powerful mechanism of "folk psychology" that helps them to interpret natural-language sentences such as "The city councilmen refused the demonstrators a permit because they advocated violence". (A generic AI has difficulty discerning whether the ones alleged to be advocating violence are the councilmen or the demonstrators.)[79][80][81] This lack of "common knowledge" means that AI often makes different mistakes than humans make, in ways that can seem incomprehensible. For example, existing self-driving cars cannot reason about the location nor the intentions of pedestrians in the exact way that humans do, and instead must use non-human modes of reasoning to avoid accidents.[82][83][84]

The cognitive capabilities of current architectures are very limited, using only a simplified version of what intelligence is really capable of. For instance, the human mind has come up with ways to reason beyond measure and logical explanations to different occurrences in life. What would have been otherwise straightforward, an equivalently difficult problem may be challenging to solve computationally as opposed to using the human mind. This gives rise to two classes of models: structuralist and functionalist. The structural models aim to loosely mimic the basic intelligence operations of the mind such as reasoning and logic. The functional model refers to the correlating data to its computed counterpart.[85]

The overall research goal of artificial intelligence is to create technology that allows computers and machines to function in an intelligent manner. The general problem of simulating (or creating) intelligence has been broken down into sub-problems. These consist of particular traits or capabilities that researchers expect an intelligent system to display. The traits described below have received the most attention.[16]

Early researchers developed algorithms that imitated step-by-step reasoning that humans use when they solve puzzles or make logical deductions.[86] By the late 1980s and 1990s, AI research had developed methods for dealing with uncertain or incomplete information, employing concepts from probability and economics.[87]

These algorithms proved to be insufficient for solving large reasoning problems because they experienced a "combinatorial explosion": they became exponentially slower as the problems grew larger.[67] Even humans rarely use the step-by-step deduction that early AI research could model. They solve most of their problems using fast, intuitive judgments.[88]

Knowledge representation[89] and knowledge engineering[90] are central to classical AI research. Some "expert systems" attempt to gather explicit knowledge possessed by experts in some narrow domain. In addition, some projects attempt to gather the "commonsense knowledge" known to the average person into a database containing extensive knowledge about the world. Among the things a comprehensive commonsense knowledge base would contain are: objects, properties, categories and relations between objects;[91] situations, events, states and time;[92] causes and effects;[93] knowledge about knowledge (what we know about what other people know);[94] and many other, less well researched domains. A representation of "what exists" is an ontology: the set of objects, relations, concepts, and properties formally described so that software agents can interpret them. The semantics of these are captured as description logic concepts, roles, and individuals, and typically implemented as classes, properties, and individuals in the Web Ontology Language.[95] The most general ontologies are called upper ontologies, which attempt to provide a foundation for all other knowledge[96] by acting as mediators between domain ontologies that cover specific knowledge about a particular knowledge domain (field of interest or area of concern). Such formal knowledge representations can be used in content-based indexing and retrieval,[97] scene interpretation,[98] clinical decision support,[99] knowledge discovery (mining "interesting" and actionable inferences from large databases),[100] and other areas.[101]

Among the most difficult problems in knowledge representation are:

Intelligent agents must be able to set goals and achieve them.[108] They need a way to visualize the futurea representation of the state of the world and be able to make predictions about how their actions will change itand be able to make choices that maximize the utility (or "value") of available choices.[109]

In classical planning problems, the agent can assume that it is the only system acting in the world, allowing the agent to be certain of the consequences of its actions.[110] However, if the agent is not the only actor, then it requires that the agent can reason under uncertainty. This calls for an agent that can not only assess its environment and make predictions but also evaluate its predictions and adapt based on its assessment.[111]

Multi-agent planning uses the cooperation and competition of many agents to achieve a given goal. Emergent behavior such as this is used by evolutionary algorithms and swarm intelligence.[112]

Machine learning (ML), a fundamental concept of AI research since the field's inception,[113] is the study of computer algorithms that improve automatically through experience.[114][115]

Unsupervised learning is the ability to find patterns in a stream of input, without requiring a human to label the inputs first. Supervised learning includes both classification and numerical regression, which requires a human to label the input data first. Classification is used to determine what category something belongs in, and occurs after a program sees a number of examples of things from several categories. Regression is the attempt to produce a function that describes the relationship between inputs and outputs and predicts how the outputs should change as the inputs change.[115] Both classifiers and regression learners can be viewed as "function approximators" trying to learn an unknown (possibly implicit) function; for example, a spam classifier can be viewed as learning a function that maps from the text of an email to one of two categories, "spam" or "not spam". Computational learning theory can assess learners by computational complexity, by sample complexity (how much data is required), or by other notions of optimization.[116] In reinforcement learning[117] the agent is rewarded for good responses and punished for bad ones. The agent uses this sequence of rewards and punishments to form a strategy for operating in its problem space.

Natural language processing[118] (NLP) allows machines to read and understand human language. A sufficiently powerful natural language processing system would enable natural-language user interfaces and the acquisition of knowledge directly from human-written sources, such as newswire texts. Some straightforward applications of natural language processing include information retrieval, text mining, question answering[119] and machine translation.[120] Many current approaches use word co-occurrence frequencies to construct syntactic representations of text. "Keyword spotting" strategies for search are popular and scalable but dumb; a search query for "dog" might only match documents with the literal word "dog" and miss a document with the word "poodle". "Lexical affinity" strategies use the occurrence of words such as "accident" to assess the sentiment of a document. Modern statistical NLP approaches can combine all these strategies as well as others, and often achieve acceptable accuracy at the page or paragraph level. Beyond semantic NLP, the ultimate goal of "narrative" NLP is to embody a full understanding of commonsense reasoning.[121] By 2019, transformer-based deep learning architectures could generate coherent text.[122]

Machine perception[123] is the ability to use input from sensors (such as cameras (visible spectrum or infrared), microphones, wireless signals, and active lidar, sonar, radar, and tactile sensors) to deduce aspects of the world. Applications include speech recognition,[124] facial recognition, and object recognition.[125] Computer vision is the ability to analyze visual input. Such input is usually ambiguous; a giant, fifty-meter-tall pedestrian far away may produce the same pixels as a nearby normal-sized pedestrian, requiring the AI to judge the relative likelihood and reasonableness of different interpretations, for example by using its "object model" to assess that fifty-meter pedestrians do not exist.[126]

AI is heavily used in robotics.[127] Advanced robotic arms and other industrial robots, widely used in modern factories, can learn from experience how to move efficiently despite the presence of friction and gear slippage.[128] A modern mobile robot, when given a small, static, and visible environment, can easily determine its location and map its environment; however, dynamic environments, such as (in endoscopy) the interior of a patient's breathing body, pose a greater challenge. Motion planning is the process of breaking down a movement task into "primitives" such as individual joint movements. Such movement often involves compliant motion, a process where movement requires maintaining physical contact with an object.[130][131] Moravec's paradox generalizes that low-level sensorimotor skills that humans take for granted are, counterintuitively, difficult to program into a robot; the paradox is named after Hans Moravec, who stated in 1988 that "it is comparatively easy to make computers exhibit adult level performance on intelligence tests or playing checkers, and difficult or impossible to give them the skills of a one-year-old when it comes to perception and mobility".[132][133] This is attributed to the fact that, unlike checkers, physical dexterity has been a direct target of natural selection for millions of years.[134]

Moravec's paradox can be extended to many forms of social intelligence.[136][137] Distributed multi-agent coordination of autonomous vehicles remains a difficult problem.[138] Affective computing is an interdisciplinary umbrella that comprises systems which recognize, interpret, process, or simulate human affects. Moderate successes related to affective computing include textual sentiment analysis and, more recently, multimodal affect analysis (see multimodal sentiment analysis), wherein AI classifies the affects displayed by a videotaped subject.[142]

In the long run, social skills and an understanding of human emotion and game theory would be valuable to a social agent. The ability to predict the actions of others by understanding their motives and emotional states would allow an agent to make better decisions. Some computer systems mimic human emotion and expressions to appear more sensitive to the emotional dynamics of human interaction, or to otherwise facilitate humancomputer interaction.[143] Similarly, some virtual assistants are programmed to speak conversationally or even to banter humorously; this tends to give nave users an unrealistic conception of how intelligent existing computer agents actually are.[144]

Historically, projects such as the Cyc knowledge base (1984) and the massive Japanese Fifth Generation Computer Systems initiative (19821992) attempted to cover the breadth of human cognition. These early projects failed to escape the limitations of non-quantitative symbolic logic models and, in retrospect, greatly underestimated the difficulty of cross-domain AI. Nowadays, most current AI researchers work instead on tractable "narrow AI" applications (such as medical diagnosis or automobile navigation).[145] Many researchers predict that such "narrow AI" work in different individual domains will eventually be incorporated into a machine with artificial general intelligence (AGI), combining most of the narrow skills mentioned in this article and at some point even exceeding human ability in most or all these areas.[20][146] Many advances have general, cross-domain significance. One high-profile example is that DeepMind in the 2010s developed a "generalized artificial intelligence" that could learn many diverse Atari games on its own, and later developed a variant of the system which succeeds at sequential learning.[147][148][149] Besides transfer learning,[150] hypothetical AGI breakthroughs could include the development of reflective architectures that can engage in decision-theoretic metareasoning, and figuring out how to "slurp up" a comprehensive knowledge base from the entire unstructured Web. Some argue that some kind of (currently-undiscovered) conceptually straightforward, but mathematically difficult, "Master Algorithm" could lead to AGI. Finally, a few "emergent" approaches look to simulating human intelligence extremely closely, and believe that anthropomorphic features like an artificial brain or simulated child development may someday reach a critical point where general intelligence emerges.[152][153]

Many of the problems in this article may also require general intelligence, if machines are to solve the problems as well as people do. For example, even specific straightforward tasks, like machine translation, require that a machine read and write in both languages (NLP), follow the author's argument (reason), know what is being talked about (knowledge), and faithfully reproduce the author's original intent (social intelligence). A problem like machine translation is considered "AI-complete", because all of these problems need to be solved simultaneously in order to reach human-level machine performance.

No established unifying theory or paradigm guides AI research. Researchers disagree about many issues.[154] A few of the most long standing questions that have remained unanswered are these: should artificial intelligence simulate natural intelligence by studying psychology or neurobiology? Or is human biology as irrelevant to AI research as bird biology is to aeronautical engineering?[17]Can intelligent behavior be described using simple, elegant principles (such as logic or optimization)? Or does it necessarily require solving a large number of unrelated problems?[18]

In the 1940s and 1950s, a number of researchers explored the connection between neurobiology, information theory, and cybernetics. Some of them built machines that used electronic networks to exhibit rudimentary intelligence, such as W. Grey Walter's turtles and the Johns Hopkins Beast. Many of these researchers gathered for meetings of the Teleological Society at Princeton University and the Ratio Club in England.[155] By 1960, this approach was largely abandoned, although elements of it would be revived in the 1980s.

When access to digital computers became possible in the mid-1950s, AI research began to explore the possibility that human intelligence could be reduced to symbol manipulation. The research was centered in three institutions: Carnegie Mellon University, Stanford and MIT, and as described below, each one developed its own style of research. John Haugeland named these symbolic approaches to AI "good old fashioned AI" or "GOFAI".[156] During the 1960s, symbolic approaches had achieved great success at simulating high-level "thinking" in small demonstration programs. Approaches based on cybernetics or artificial neural networks were abandoned or pushed into the background.[157]Researchers in the 1960s and the 1970s were convinced that symbolic approaches would eventually succeed in creating a machine with artificial general intelligence and considered this the goal of their field.

Economist Herbert Simon and Allen Newell studied human problem-solving skills and attempted to formalize them, and their work laid the foundations of the field of artificial intelligence, as well as cognitive science, operations research and management science. Their research team used the results of psychological experiments to develop programs that simulated the techniques that people used to solve problems. This tradition, centered at Carnegie Mellon University would eventually culminate in the development of the Soar architecture in the middle 1980s.[158][159]

Unlike Simon and Newell, John McCarthy felt that machines did not need to simulate human thought, but should instead try to find the essence of abstract reasoning and problem-solving, regardless whether people used the same algorithms.[17] His laboratory at Stanford (SAIL) focused on using formal logic to solve a wide variety of problems, including knowledge representation, planning and learning.[160] Logic was also the focus of the work at the University of Edinburgh and elsewhere in Europe which led to the development of the programming language Prolog and the science of logic programming.[161]

Researchers at MIT (such as Marvin Minsky and Seymour Papert)[162] found that solving difficult problems in vision and natural language processing required ad-hoc solutionsthey argued that no simple and general principle (like logic) would capture all the aspects of intelligent behavior. Roger Schank described their "anti-logic" approaches as "scruffy" (as opposed to the "neat" paradigms at CMU and Stanford).[18] Commonsense knowledge bases (such as Doug Lenat's Cyc) are an example of "scruffy" AI, since they must be built by hand, one complicated concept at a time.[163]

When computers with large memories became available around 1970, researchers from all three traditions began to build knowledge into AI applications.[164] This "knowledge revolution" led to the development and deployment of expert systems (introduced by Edward Feigenbaum), the first truly successful form of AI software.[42] A key component of the system architecture for all expert systems is the knowledge base, which stores facts and rules that illustrate AI.[165] The knowledge revolution was also driven by the realization that enormous amounts of knowledge would be required by many simple AI applications.

By the 1980s, progress in symbolic AI seemed to stall and many believed that symbolic systems would never be able to imitate all the processes of human cognition, especially perception, robotics, learning and pattern recognition. A number of researchers began to look into "sub-symbolic" approaches to specific AI problems.[19] Sub-symbolic methods manage to approach intelligence without specific representations of knowledge.

This includes embodied, situated, behavior-based, and nouvelle AI. Researchers from the related field of robotics, such as Rodney Brooks, rejected symbolic AI and focused on the basic engineering problems that would allow robots to move and survive.[166] Their work revived the non-symbolic point of view of the early cybernetics researchers of the 1950s and reintroduced the use of control theory in AI. This coincided with the development of the embodied mind thesis in the related field of cognitive science: the idea that aspects of the body (such as movement, perception and visualization) are required for higher intelligence.

Within developmental robotics, developmental learning approaches are elaborated upon to allow robots to accumulate repertoires of novel skills through autonomous self-exploration, social interaction with human teachers, and the use of guidance mechanisms (active learning, maturation, motor synergies, etc.).[167][168]

Interest in neural networks and "connectionism" was revived by David Rumelhart and others in the middle of the 1980s.[171] Artificial neural networks are an example of soft computingthey are solutions to problems which cannot be solved with complete logical certainty, and where an approximate solution is often sufficient. Other soft computing approaches to AI include fuzzy systems, Grey system theory, evolutionary computation and many statistical tools. The application of soft computing to AI is studied collectively by the emerging discipline of computational intelligence.[172]

Much of traditional GOFAI got bogged down on ad hoc patches to symbolic computation that worked on their own toy models but failed to generalize to real-world results. However, around the 1990s, AI researchers adopted sophisticated mathematical tools, such as hidden Markov models (HMM), information theory, and normative Bayesian decision theory to compare or to unify competing architectures. The shared mathematical language permitted a high level of collaboration with more established fields (like mathematics, economics or operations research).[d] Compared with GOFAI, new "statistical learning" techniques such as HMM and neural networks were gaining higher levels of accuracy in many practical domains such as data mining, without necessarily acquiring a semantic understanding of the datasets. The increased successes with real-world data led to increasing emphasis on comparing different approaches against shared test data to see which approach performed best in a broader context than that provided by idiosyncratic toy models; AI research was becoming more scientific. Nowadays results of experiments are often rigorously measurable, and are sometimes (with difficulty) reproducible.[44][173] Different statistical learning techniques have different limitations; for example, basic HMM cannot model the infinite possible combinations of natural language. Critics note that the shift from GOFAI to statistical learning is often also a shift away from explainable AI. In AGI research, some scholars caution against over-reliance on statistical learning, and argue that continuing research into GOFAI will still be necessary to attain general intelligence.

AI has developed many tools to solve the most difficult problems in computer science. A few of the most general of these methods are discussed below.

Many problems in AI can be solved theoretically by intelligently searching through many possible solutions:[183] Reasoning can be reduced to performing a search. For example, logical proof can be viewed as searching for a path that leads from premises to conclusions, where each step is the application of an inference rule.[184] Planning algorithms search through trees of goals and subgoals, attempting to find a path to a target goal, a process called means-ends analysis.[185] Robotics algorithms for moving limbs and grasping objects use local searches in configuration space.[128] Many learning algorithms use search algorithms based on optimization.

Simple exhaustive searches[186] are rarely sufficient for most real-world problems: the search space (the number of places to search) quickly grows to astronomical numbers. The result is a search that is too slow or never completes. The solution, for many problems, is to use "heuristics" or "rules of thumb" that prioritize choices in favor of those more more likely to reach a goal and to do so in a shorter number of steps. In some search methodologies heuristics can also serve to entirely eliminate some choices unlikely to lead to a goal (called "pruning the search tree"). Heuristics supply the program with a "best guess" for the path on which the solution lies.[187] Heuristics limit the search for solutions into a smaller sample size.

A very different kind of search came to prominence in the 1990s, based on the mathematical theory of optimization. For many problems, it is possible to begin the search with some form of a guess and then refine the guess incrementally until no more refinements can be made. These algorithms can be visualized as blind hill climbing: we begin the search at a random point on the landscape, and then, by jumps or steps, we keep moving our guess uphill, until we reach the top. Other optimization algorithms are simulated annealing, beam search and random optimization.[188]

Evolutionary computation uses a form of optimization search. For example, they may begin with a population of organisms (the guesses) and then allow them to mutate and recombine, selecting only the fittest to survive each generation (refining the guesses). Classic evolutionary algorithms include genetic algorithms, gene expression programming, and genetic programming.[189] Alternatively, distributed search processes can coordinate via swarm intelligence algorithms. Two popular swarm algorithms used in search are particle swarm optimization (inspired by bird flocking) and ant colony optimization (inspired by ant trails).[190][191]

Logic[192] is used for knowledge representation and problem solving, but it can be applied to other problems as well. For example, the satplan algorithm uses logic for planning[193] and inductive logic programming is a method for learning.[194]

Several different forms of logic are used in AI research. Propositional logic[195] involves truth functions such as "or" and "not". First-order logic[196] adds quantifiers and predicates, and can express facts about objects, their properties, and their relations with each other. Fuzzy set theory assigns a "degree of truth" (between 0 and 1) to vague statements such as "Alice is old" (or rich, or tall, or hungry) that are too linguistically imprecise to be completely true or false. Fuzzy logic is successfully used in control systems to allow experts to contribute vague rules such as "if you are close to the destination station and moving fast, increase the train's brake pressure"; these vague rules can then be numerically refined within the system. Fuzzy logic fails to scale well in knowledge bases; many AI researchers question the validity of chaining fuzzy-logic inferences.[e][198][199]

Default logics, non-monotonic logics and circumscription[103] are forms of logic designed to help with default reasoning and the qualification problem. Several extensions of logic have been designed to handle specific domains of knowledge, such as: description logics;[91] situation calculus, event calculus and fluent calculus (for representing events and time);[92] causal calculus;[93] belief calculus (belief revision);[200] and modal logics.[94] Logics to model contradictory or inconsistent statements arising in multi-agent systems have also been designed, such as paraconsistent logics.

Many problems in AI (in reasoning, planning, learning, perception, and robotics) require the agent to operate with incomplete or uncertain information. AI researchers have devised a number of powerful tools to solve these problems using methods from probability theory and economics.[201]

Bayesian networks[202] are a very general tool that can be used for various problems: reasoning (using the Bayesian inference algorithm),[203] learning (using the expectation-maximization algorithm),[f][205] planning (using decision networks)[206] and perception (using dynamic Bayesian networks).[207] Probabilistic algorithms can also be used for filtering, prediction, smoothing and finding explanations for streams of data, helping perception systems to analyze processes that occur over time (e.g., hidden Markov models or Kalman filters).[207] Compared with symbolic logic, formal Bayesian inference is computationally expensive. For inference to be tractable, most observations must be conditionally independent of one another. Complicated graphs with diamonds or other "loops" (undirected cycles) can require a sophisticated method such as Markov chain Monte Carlo, which spreads an ensemble of random walkers throughout the Bayesian network and attempts to converge to an assessment of the conditional probabilities. Bayesian networks are used on Xbox Live to rate and match players; wins and losses are "evidence" of how good a player is[citation needed]. AdSense uses a Bayesian network with over 300 million edges to learn which ads to serve.

A key concept from the science of economics is "utility": a measure of how valuable something is to an intelligent agent. Precise mathematical tools have been developed that analyze how an agent can make choices and plan, using decision theory, decision analysis,[209] and information value theory.[109] These tools include models such as Markov decision processes,[210] dynamic decision networks,[207] game theory and mechanism design.[211]

The simplest AI applications can be divided into two types: classifiers ("if shiny then diamond") and controllers ("if shiny then pick up"). Controllers do, however, also classify conditions before inferring actions, and therefore classification forms a central part of many AI systems. Classifiers are functions that use pattern matching to determine a closest match. They can be tuned according to examples, making them very attractive for use in AI. These examples are known as observations or patterns. In supervised learning, each pattern belongs to a certain predefined class. A class is a decision that has to be made. All the observations combined with their class labels are known as a data set. When a new observation is received, that observation is classified based on previous experience.[212]

A classifier can be trained in various ways; there are many statistical and machine learning approaches. The decision tree[213] is perhaps the most widely used machine learning algorithm. Other widely used classifiers are the neural network,[215]k-nearest neighbor algorithm,[g][217]kernel methods such as the support vector machine (SVM),[h][219]Gaussian mixture model,[220] and the extremely popular naive Bayes classifier.[i][222] Classifier performance depends greatly on the characteristics of the data to be classified, such as the dataset size, distribution of samples across classes, the dimensionality, and the level of noise. Model-based classifiers perform well if the assumed model is an extremely good fit for the actual data. Otherwise, if no matching model is available, and if accuracy (rather than speed or scalability) is the sole concern, conventional wisdom is that discriminative classifiers (especially SVM) tend to be more accurate than model-based classifiers such as "naive Bayes" on most practical data sets.[223]

Neural networks were inspired by the architecture of neurons in the human brain. A simple "neuron" N accepts input from other neurons, each of which, when activated (or "fired"), casts a weighted "vote" for or against whether neuron N should itself activate. Learning requires an algorithm to adjust these weights based on the training data; one simple algorithm (dubbed "fire together, wire together") is to increase the weight between two connected neurons when the activation of one triggers the successful activation of another. The neural network forms "concepts" that are distributed among a subnetwork of shared[j] neurons that tend to fire together; a concept meaning "leg" might be coupled with a subnetwork meaning "foot" that includes the sound for "foot". Neurons have a continuous spectrum of activation; in addition, neurons can process inputs in a nonlinear way rather than weighing straightforward votes. Modern neural networks can learn both continuous functions and, surprisingly, digital logical operations. Neural networks' early successes included predicting the stock market and (in 1995) a mostly self-driving car.[k] In the 2010s, advances in neural networks using deep learning thrust AI into widespread public consciousness and contributed to an enormous upshift in corporate AI spending; for example, AI-related M&A in 2017 was over 25 times as large as in 2015.[226][227]

The study of non-learning artificial neural networks[215] began in the decade before the field of AI research was founded, in the work of Walter Pitts and Warren McCullouch. Frank Rosenblatt invented the perceptron, a learning network with a single layer, similar to the old concept of linear regression. Early pioneers also include Alexey Grigorevich Ivakhnenko, Teuvo Kohonen, Stephen Grossberg, Kunihiko Fukushima, Christoph von der Malsburg, David Willshaw, Shun-Ichi Amari, Bernard Widrow, John Hopfield, Eduardo R. Caianiello, and others[citation needed].

The main categories of networks are acyclic or feedforward neural networks (where the signal passes in only one direction) and recurrent neural networks (which allow feedback and short-term memories of previous input events). Among the most popular feedforward networks are perceptrons, multi-layer perceptrons and radial basis networks.[228] Neural networks can be applied to the problem of intelligent control (for robotics) or learning, using such techniques as Hebbian learning ("fire together, wire together"), GMDH or competitive learning.[229]

Today, neural networks are often trained by the backpropagation algorithm, which has been around since 1970 as the reverse mode of automatic differentiation published by Seppo Linnainmaa,[230][231] and was introduced to neural networks by Paul Werbos.[232][233][234]

Hierarchical temporal memory is an approach that models some of the structural and algorithmic properties of the neocortex.[235]

To summarize, most neural networks use some form of gradient descent on a hand-created neural topology. However, some research groups, such as Uber, argue that simple neuroevolution to mutate new neural network topologies and weights may be competitive with sophisticated gradient descent approaches[citation needed]. One advantage of neuroevolution is that it may be less prone to get caught in "dead ends".[236]

Deep learning is the use of artificial neural networks which have several layers of neurons between the network's inputs and outputs. Deep learning has transformed many important subfields of artificial intelligence[why?], including computer vision, speech recognition, natural language processing and others.[237][238][239]

According to one overview,[240] the expression "Deep Learning" was introduced to the machine learning community by Rina Dechter in 1986[241] and gained traction afterIgor Aizenberg and colleagues introduced it to artificial neural networks in 2000.[242] The first functional Deep Learning networks were published by Alexey Grigorevich Ivakhnenko and V. G. Lapa in 1965.[243][pageneeded] These networks are trained one layer at a time. Ivakhnenko's 1971 paper[244] describes the learning of a deep feedforward multilayer perceptron with eight layers, already much deeper than many later networks. In 2006, a publication by Geoffrey Hinton and Ruslan Salakhutdinov introduced another way of pre-training many-layered feedforward neural networks (FNNs) one layer at a time, treating each layer in turn as an unsupervised restricted Boltzmann machine, then using supervised backpropagation for fine-tuning. Similar to shallow artificial neural networks, deep neural networks can model complex non-linear relationships.

Deep learning often uses convolutional neural networks (CNNs), whose origins can be traced back to the Neocognitron introduced by Kunihiko Fukushima in 1980.[246] In 1989, Yann LeCun and colleagues applied backpropagation to such an architecture. In the early 2000s, in an industrial application, CNNs already processed an estimated 10% to 20% of all the checks written in the US.[247]Since 2011, fast implementations of CNNs on GPUs havewon many visual pattern recognition competitions.[239]

CNNs with 12 convolutional layers were used with reinforcement learning by Deepmind's "AlphaGo Lee", the program that beat a top Go champion in 2016.[248]

Early on, deep learning was also applied to sequence learning with recurrent neural networks (RNNs)[249] which are theoretically Turing complete[250] and can run arbitrary programs to process arbitrary sequences of inputs. The depth of an RNN is unlimited and depends on the length of its input sequence; thus, an RNN is an example of deep learning.[239] RNNs can be trained by gradient descent[251][252][253] but suffer from the vanishing gradient problem.[237][254] In 1992, it was shown that unsupervised pre-training of a stack of recurrent neural networks can speed up subsequent supervised learning of deep sequential problems.[255]

Numerous researchers now use variants of a deep learning recurrent NN called the long short-term memory (LSTM) network published by Hochreiter & Schmidhuber in 1997.[256] LSTM is often trained by Connectionist Temporal Classification (CTC).[257] At Google, Microsoft and Baidu this approach has revolutionized speech recognition.[258][259][260] For example, in 2015, Google's speech recognition experienced a dramatic performance jump of 49% through CTC-trained LSTM, which is now available through Google Voice to billions of smartphone users.[261] Google also used LSTM to improve machine translation,[262] Language Modeling[263] and Multilingual Language Processing.[264] LSTM combined with CNNs also improved automatic image captioning[265] and a plethora of other applications.

AI, like electricity or the steam engine, is a general purpose technology. There is no consensus on how to characterize which tasks AI tends to excel at.[266] While projects such as AlphaZero have succeeded in generating their own knowledge from scratch, many other machine learning projects require large training datasets.[267][268] Researcher Andrew Ng has suggested, as a "highly imperfect rule of thumb", that "almost anything a typical human can do with less than one second of mental thought, we can probably now or in the near future automate using AI."[269] Moravec's paradox suggests that AI lags humans at many tasks that the human brain has specifically evolved to perform well.[134]

Games provide a well-publicized benchmark for assessing rates of progress. AlphaGo around 2016 brought the era of classical board-game benchmarks to a close. Games of imperfect knowledge provide new challenges to AI in game theory.[270][271] E-sports such as StarCraft continue to provide additional public benchmarks.[272][273] Many competitions and prizes, such as the Imagenet Challenge, promote research in artificial intelligence. The most common areas of competition include general machine intelligence, conversational behavior, data-mining, robotic cars, and robot soccer as well as conventional games.[274]

The "imitation game" (an interpretation of the 1950 Turing test that assesses whether a computer can imitate a human) is nowadays considered too exploitable to be a meaningful benchmark.[275] A derivative of the Turing test is the Completely Automated Public Turing test to tell Computers and Humans Apart (CAPTCHA). As the name implies, this helps to determine that a user is an actual person and not a computer posing as a human. Unlike the standard Turing test, CAPTCHA is administered by a machine and targeted to a human as opposed to being administered by a human and targeted to a machine. A computer asks a user to complete a simple test then generates a grade for that test. Computers are unable to solve the problem, so correct solutions are deemed to be the result of a person taking the test. A common type of CAPTCHA is the test that requires the typing of distorted letters, numbers or symbols that appear in an image undecipherable by a computer.

Proposed "universal intelligence" tests aim to compare how well machines, humans, and even non-human animals perform on problem sets that are generic as possible. At an extreme, the test suite can contain every possible problem, weighted by Kolmogorov complexity; unfortunately, these problem sets tend to be dominated by impoverished pattern-matching exercises where a tuned AI can easily exceed human performance levels.[277][278]

Since the 2010s, advances in both machine learning algorithms and computer hardware have led to more efficient methods for training deep neural networks that contain many layers of non-linear hidden units and a very large output layer.[279] By 2019, graphic processing units (GPUs), often with AI-specific enhancements, had displaced CPUs as the dominant method of training large-scale commercial cloud AI.[280] OpenAI estimated the hardware compute used in the largest deep learning projects from AlexNet (2012) to AlphaZero (2017), and found a 300,000-fold increase in the amount of compute required, with a doubling-time trendline of 3.4 months.[281][282]

AI is relevant to any intellectual task. Modern artificial intelligence techniques are pervasive[284] and are too numerous to list here. Frequently, when a technique reaches mainstream use, it is no longer considered artificial intelligence; this phenomenon is described as the AI effect.

High-profile examples of AI include autonomous vehicles (such as drones and self-driving cars), medical diagnosis, creating art (such as poetry), proving mathematical theorems, playing games (such as Chess or Go), search engines (such as Google search), online assistants (such as Siri), image recognition in photographs, spam filtering, predicting flight delays,[286] prediction of judicial decisions,[287] targeting online advertisements, [288][289] and energy storage[290]

With social media sites overtaking TV as a source for news for young people and news organizations increasingly reliant on social media platforms for generating distribution,[291] major publishers now use artificial intelligence (AI) technology to post stories more effectively and generate higher volumes of traffic.[292]

AI can also produce Deepfakes, a content-altering technology. ZDNet reports, "It presents something that did not actually occur," Though 88% of Americans believe Deepfakes can cause more harm than good, only 47% of them believe they can be targeted. The boom of election year also opens public discourse to threats of videos of falsified politician media.[293]

AI in healthcare is often used for classification, whether to automate initial evaluation of a CT scan or EKG or to identify high-risk patients for population health. The breadth of applications is rapidly increasing.As an example, AI is being applied to the high-cost problem of dosage issueswhere findings suggested that AI could save $16 billion. In 2016, a groundbreaking study in California found that a mathematical formula developed with the help of AI correctly determined the accurate dose of immunosuppressant drugs to give to organ patients.[294]

Artificial intelligence is assisting doctors. According to Bloomberg Technology, Microsoft has developed AI to help doctors find the right treatments for cancer.[295] There is a great amount of research and drugs developed relating to cancer. In detail, there are more than 800 medicines and vaccines to treat cancer. This negatively affects the doctors, because there are too many options to choose from, making it more difficult to choose the right drugs for the patients. Microsoft is working on a project to develop a machine called "Hanover"[citation needed]. Its goal is to memorize all the papers necessary to cancer and help predict which combinations of drugs will be most effective for each patient. One project that is being worked on at the moment is fighting myeloid leukemia, a fatal cancer where the treatment has not improved in decades. Another study was reported to have found that artificial intelligence was as good as trained doctors in identifying skin cancers.[296] Another study is using artificial intelligence to try to monitor multiple high-risk patients, and this is done by asking each patient numerous questions based on data acquired from live doctor to patient interactions.[297] One study was done with transfer learning, the machine performed a diagnosis similarly to a well-trained ophthalmologist, and could generate a decision within 30 seconds on whether or not the patient should be referred for treatment, with more than 95% accuracy.[298]

According to CNN, a recent study by surgeons at the Children's National Medical Center in Washington successfully demonstrated surgery with an autonomous robot. The team supervised the robot while it performed soft-tissue surgery, stitching together a pig's bowel during open surgery, and doing so better than a human surgeon, the team claimed.[299] IBM has created its own artificial intelligence computer, the IBM Watson, which has beaten human intelligence (at some levels). Watson has struggled to achieve success and adoption in healthcare.[300]

Advancements in AI have contributed to the growth of the automotive industry through the creation and evolution of self-driving vehicles. As of 2016[update], there are over 30 companies utilizing AI into the creation of self-driving cars. A few companies involved with AI include Tesla, Google, and Apple.[301]

Many components contribute to the functioning of self-driving cars. These vehicles incorporate systems such as braking, lane changing, collision prevention, navigation and mapping. Together, these systems, as well as high-performance computers, are integrated into one complex vehicle.[302]

Recent developments in autonomous automobiles have made the innovation of self-driving trucks possible, though they are still in the testing phase. The UK government has passed legislation to begin testing of self-driving truck platoons in 2018.[303] Self-driving truck platoons are a fleet of self-driving trucks following the lead of one non-self-driving truck, so the truck platoons aren't entirely autonomous yet. Meanwhile, the Daimler, a German automobile corporation, is testing the Freightliner Inspiration which is a semi-autonomous truck that will only be used on the highway.[304]

One main factor that influences the ability for a driverless automobile to function is mapping. In general, the vehicle would be pre-programmed with a map of the area being driven. This map would include data on the approximations of street light and curb heights in order for the vehicle to be aware of its surroundings. However, Google has been working on an algorithm with the purpose of eliminating the need for pre-programmed maps and instead, creating a device that would be able to adjust to a variety of new surroundings.[305] Some self-driving cars are not equipped with steering wheels or brake pedals, so there has also been research focused on creating an algorithm that is capable of maintaining a safe environment for the passengers in the vehicle through awareness of speed and driving conditions.[306]

Another factor that is influencing the ability of a driverless automobile is the safety of the passenger. To make a driverless automobile, engineers must program it to handle high-risk situations. These situations could include a head-on collision with pedestrians. The car's main goal should be to make a decision that would avoid hitting the pedestrians and saving the passengers in the car. But there is a possibility the car would need to make a decision that would put someone in danger. In other words, the car would need to decide to save the pedestrians or the passengers.[307] The programming of the car in these situations is crucial to a successful driverless automobile.

Financial institutions have long used artificial neural network systems to detect charges or claims outside of the norm, flagging these for human investigation. The use of AI in banking can be traced back to 1987 when Security Pacific National Bank in the US set-up a Fraud Prevention Task force to counter the unauthorized use of debit cards.[308] Programs like Kasisto and Moneystream are using AI in financial services.

Banks use artificial intelligence systems today to organize operations, maintain book-keeping, invest in stocks, and manage properties. AI can react to changes overnight or when business is not taking place.[309] In August 2001, robots beat humans in a simulated financial trading competition.[310] AI has also reduced fraud and financial crimes by monitoring behavioral patterns of users for any abnormal changes or anomalies.[311][312][313]

AI is increasingly being used by corporations. Jack Ma has controversially predicted that AI CEO's are 30 years away.[314][315]

The use of AI machines in the market in applications such as online trading and decision making has changed major economic theories.[316] For example, AI-based buying and selling platforms have changed the law of supply and demand in that it is now possible to easily estimate individualized demand and supply curves and thus individualized pricing. Furthermore, AI machines reduce information asymmetry in the market and thus making markets more efficient while reducing the volume of trades[citation needed]. Furthermore, AI in the markets limits the consequences of behavior in the markets again making markets more efficient[citation needed]. Other theories where AI has had impact include in rational choice, rational expectations, game theory, Lewis turning point, portfolio optimization and counterfactual thinking[citation needed].. In August 2019, the AICPA introduced an AI training course for accounting professionals.[317]

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Artificial intelligence - Wikipedia

The Global Automotive Artificial Intelligence Market is expected to grow from USD 715.71 Million in 2019 to USD 3,967.57 Million by the end of 2025 at…

Market Segmentation & Coverage: This research report categorizes the Automotive Artificial Intelligence to forecast the revenues and analyze the trends in each of the following sub-markets:

New York, July 15, 2020 (GLOBE NEWSWIRE) -- Reportlinker.com announces the release of the report "Automotive Artificial Intelligence Market Research Report by Technology, by Process, by Offerings, by Application - Global Forecast to 2025 - Cumulative Impact of COVID-19" - https://www.reportlinker.com/p05913345/?utm_source=GNW

On the basis of Technology, the Automotive Artificial Intelligence Market is studied across Computer Vision, Context Awareness, Deep Learning, Machine Learning, and Natural Language Processing.

On the basis of Process, the Automotive Artificial Intelligence Market is studied across Data Mining, Image Recognition, and Signal Recognition.

On the basis of Offerings, the Automotive Artificial Intelligence Market is studied across Hardware and Software. The Hardware further studied across Neuromorphic Architecture and Von Neumann Architecture. The Software further studied across Platforms and Solutions.

On the basis of Application, the Automotive Artificial Intelligence Market is studied across Autonomous Vehicle, HumanMachine Interface, and Semi-Autonomous Driving.

On the basis of Geography, the Automotive Artificial Intelligence Market is studied across Americas, Asia-Pacific, and Europe, Middle East & Africa. The Americas region is studied across Argentina, Brazil, Canada, Mexico, and United States. The Asia-Pacific region is studied across Australia, China, India, Indonesia, Japan, Malaysia, Philippines, South Korea, and Thailand. The Europe, Middle East & Africa region is studied across France, Germany, Italy, Netherlands, Qatar, Russia, Saudi Arabia, South Africa, Spain, United Arab Emirates, and United Kingdom.

Company Usability Profiles:The report deeply explores the recent significant developments by the leading vendors and innovation profiles in the Global Automotive Artificial Intelligence Market including Alphabet Inc., Audi AG, Bayerische Motoren Werke AG, Ford Motor Company, General Motors Company, Harman International Industries, Inc., Intel Corporation, International Business Machines Corporation, Microsoft Corporation, NVIDIA Corporation, Qualcomm Inc., Tesla, Inc., Toyota Motor Corporation, Volvo Car Corporation, and Xilinx Inc..

FPNV Positioning Matrix:The FPNV Positioning Matrix evaluates and categorizes the vendors in the Automotive Artificial Intelligence Market on the basis of Business Strategy (Business Growth, Industry Coverage, Financial Viability, and Channel Support) and Product Satisfaction (Value for Money, Ease of Use, Product Features, and Customer Support) that aids businesses in better decision making and understanding the competitive landscape.

Competitive Strategic Window:The Competitive Strategic Window analyses the competitive landscape in terms of markets, applications, and geographies. The Competitive Strategic Window helps the vendor define an alignment or fit between their capabilities and opportunities for future growth prospects. During a forecast period, it defines the optimal or favorable fit for the vendors to adopt successive merger and acquisition strategies, geography expansion, research & development, and new product introduction strategies to execute further business expansion and growth.

Cumulative Impact of COVID-19:COVID-19 is an incomparable global public health emergency that has affected almost every industry, so for and, the long-term effects projected to impact the industry growth during the forecast period. Our ongoing research amplifies our research framework to ensure the inclusion of underlaying COVID-19 issues and potential paths forward. The report is delivering insights on COVID-19 considering the changes in consumer behavior and demand, purchasing patterns, re-routing of the supply chain, dynamics of current market forces, and the significant interventions of governments. The updated study provides insights, analysis, estimations, and forecast, considering the COVID-19 impact on the market.

The report provides insights on the following pointers:1. Market Penetration: Provides comprehensive information on sulfuric acid offered by the key players2. Market Development: Provides in-depth information about lucrative emerging markets and analyzes the markets3. Market Diversification: Provides detailed information about new product launches, untapped geographies, recent developments, and investments4. Competitive Assessment & Intelligence: Provides an exhaustive assessment of market shares, strategies, products, and manufacturing capabilities of the leading players5. Product Development & Innovation: Provides intelligent insights on future technologies, R&D activities, and new product developments

The report answers questions such as:1. What is the market size and forecast of the Global Automotive Artificial Intelligence Market?2. What are the inhibiting factors and impact of COVID-19 shaping the Global Automotive Artificial Intelligence Market during the forecast period?3. Which are the products/segments/applications/areas to invest in over the forecast period in the Global Automotive Artificial Intelligence Market?4. What is the competitive strategic window for opportunities in the Global Automotive Artificial Intelligence Market?5. What are the technology trends and regulatory frameworks in the Global Automotive Artificial Intelligence Market?6. What are the modes and strategic moves considered suitable for entering the Global Automotive Artificial Intelligence Market?Read the full report: https://www.reportlinker.com/p05913345/?utm_source=GNW

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The Global Automotive Artificial Intelligence Market is expected to grow from USD 715.71 Million in 2019 to USD 3,967.57 Million by the end of 2025 at...

Infographic: Artificial Intelligence From World Domination To Inclusive Education – Feminism in India

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Technology, in a short time, has transformed the relationship between human and their environment, with each other, and the society at large. Artificial Intelligence (hereby referred to as AI)has found its way in many spheres of our lives. AI finds itself in smartphones, entertainment platforms, hospitals, transportation and outer space, among a plethora of other spaces.

While fears of technology replacing human beings in various roles and occupations loom large, AI provides considerable scope for various domains.

Artificial intelligence isthe ability of computer systems of simulating human intelligence processes and do complex self-corrective tasks.The goal is to create machines and systems which when interacting with the given environment, act accordingly upon the received data in a way that can be considered intelligent.

AI is slowly finding its way everywhere in our lives such as personal assistants like Alexa, face ids, personalised social media feeds and ads, banking, and even Google Maps. AI plays a part in various things says Kshitij from Pixxel, like agriculture, space, everyday things like automatically adjusting your screen brightness, customising ads on Instagram and more.

It is often claimed that AI is still in its primary stage. On the other hand, many would state thatAI would in the near future, gain complete control over humanity. According to the variousprophecies and forecasts, Artificial Intelligence would control the reigns of intelligence, andoutsmart and outperform humans beings at most things considered important yet relativelysimpler tasks, like driving or generating sentences, and so forth.

However, human involvement would remain key in all tasks performed by the AI. The degree of human involvement is that of contestation, as to what tasks and duties are considered important or not important enough to be transferred to Artificial Intelligence.

It is important to see here that AI is performing primarily assistive functions to human beings in a variety of ways. At the same time, humans are always required and involved in creating such systems and ensuring their smooth functioning, so rising up against humanity wont happen in the near future!

AI can work remotely, anonymously and in a personalised fashion. The coronavirus pandemic has proven that working remotely is a possible reality, AI can aid these processes as people do not need to be physically present and can be reached out to even in areas which seem inaccessible. AI can protect the identities of individuals and does not hold the same prejudices that humans do to discriminate against them at the various process. Apps powered by AI have provided aid with mental health, help in translation, and aid accessibility for people with disabilities.

The personalised way in which AI can operate can help teachers track the individual progress of students. This can be done anonymously to avoid the possibility of biases. AI can create individualised ways according to personalised needs of the students. This would not only help the student with individual attention but also assist the teachers with their work. AI can also help with captioning, image description, and language comprehension according to the needs of the students. Since AI can work remotely, it can reach areas considered inaccessible or even those with conflict.

Also read: How Unbiased Is Artificial Intelligence?

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Infographic: Artificial Intelligence From World Domination To Inclusive Education - Feminism in India

The top 16 companies using artificial intelligence to revolutionize drug discovery, according to experts – Business Insider India

Business Insider

Artificial intelligence is poised to dramatically overhaul how pharmaceutical giants like Bayer, Pfizer, and GlaxoSmithKline pinpoint innovative and potentially lucrative new drugs.

The technology is under the spotlight now, as top companies and federal agencies try to use it to quickly find a vaccine or treatment for COVID-19. But the increase in partnerships between drug manufacturers and AI-powered startups could have much broader ramifications for the drug discovery process.

It currently takes upwards of a decade and billions of dollars to bring a new treatment to market including five or more years of testing just to discover promising leads. Artificial intelligence can help cut that initial research period by as much as 50%, according to some experts.

Industry titans are rushing to link-up with promising startups that can help shave time and money off of the process. Swiss drug-giant Roche, for example, has ongoing deals with French data-science firm Owkin, among others, and bought the cancer research startup Flatiron Health in 2018.

The AI drug discovery market is expected to swell to $1.4 billion by 2024 and the number of startups vying for their piece has grown too. In 2014, there were an estimated 89 AI-driven companies focused on drug discovery. Now, there are as many as 217.

"There's been quite good investment within this area," Amol Kotwal, senior director at consulting firm Frost & Sullivan, told Business Insider. "There's a lot of innovative partnerships with big pharma. And they're seeing the results, which is now reinforcing that you can really cut time."

Frost & Sullivan recently selected the top 16 firms revolutionizing research into new treatments, basing its selection on a number of factors, including ongoing deals with pharmaceutical giants, fundraising to-date, and how successful each has been in helping to advance promising drugs to human testing.

While the list doesn't include every hot AI health company for instance, Insitro, which has raised significant funding and scored multi-million partnerships, didn't make the cut Kotwal says the startups chosen were the ones with the most promising drugs in clinical development,

"They have the technology, they're generating data, but they still do not have any molecules with the partner companies or in their own pipeline," he said of Insitro.

Business Insider compiled the firm's choices including fundraising estimates from PitchBook when the company declined or did not respond to requests to provide to highlight the key players in the industry:

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The top 16 companies using artificial intelligence to revolutionize drug discovery, according to experts - Business Insider India