The AIquantum computing mash-up: will it revolutionize science? – Nature.com

Call it the Avengers of futuristic computing. Put together two of the buzziest terms in technology machine learning and quantum computers and you get quantum machine learning. Like the Avengers comic books and films, which bring together an all-star cast of superheroes to build a dream team, the result is likely to attract a lot of attention. But in technology, as in fiction, it is important to come up with a good plot.

If quantum computers can ever be built at large-enough scales, they promise to solve certain problems much more efficiently than can ordinary digital electronics, by harnessing the unique properties of the subatomic world. For years, researchers have wondered whether those problems might include machine learning, a form of artificial intelligence (AI) in which computers are used to spot patterns in data and learn rules that can be used to make inferences in unfamiliar situations.

Now, with the release of the high-profile AI system ChatGPT, which relies on machine learning to power its eerily human-like conversations by inferring relationships between words in text, and with the rapid growth in the size and power of quantum computers, both technologies are making big strides forwards. Will anything useful come of combining the two?

Many technology companies, including established corporations such as Google and IBM, as well as start-up firms such as Rigetti in Berkeley, California, and IonQ in College Park, Maryland, are investigating the potential of quantum machine learning. There is strong interest from academic scientists, too.

CERN, the European particle-physics laboratory outside Geneva, Switzerland, already uses machine learning to look for signs that certain subatomic particles have been produced in the data generated by the Large Hadron Collider. Scientists there are among the academics who are experimenting with quantum machine learning.

Our idea is to use quantum computers to speed up or improve classical machine-learning models, says physicist Sofia Vallecorsa, who leads a quantum-computing and machine-learning research group at CERN.

The big unanswered question is whether there are scenarios in which quantum machine learning offers an advantage over the classical variety. Theory shows that for specialized computing tasks, such as simulating molecules or finding the prime factors of large whole numbers, quantum computers will speed up calculations that could otherwise take longer than the age of the Universe. But researchers still lack sufficient evidence that this is the case for machine learning. Others say that quantum machine learning could spot patterns that classical computers miss even if it isnt faster.

Researchers attitudes towards quantum machine learning shift between two extremes, says Maria Schuld, a physicist based in Durban, South Africa. Interest in the approach is high, but researchers seem increasingly resigned about the lack of prospects for short-term applications, says Schuld, who works for quantum-computing firm Xanadu, headquartered in Toronto, Canada.

Some researchers are beginning to shift their focus to the idea of applying quantum machine-learning algorithms to phenomena that are inherently quantum. Of all the proposed applications of quantum machine learning, this is the area where theres been a pretty clear quantum advantage, says physicist Aram Harrow at the Massachusetts Institute of Technology (MIT) in Cambridge.

Over the past 20 years, quantum-computing researchers have developed a plethora of quantum algorithms that could, in theory, make machine learning more efficient. In a seminal result in 2008, Harrow, together with MIT physicists Seth Lloyd and Avinatan Hassidim (now at Bar-Ilan University in Ramat Gan, Israel) invented a quantum algorithm1 that is exponentially faster than a classical computer at solving large sets of linear equations, one of the challenges that lie at the heart of machine learning.

But in some cases, the promise of quantum algorithms has not panned out. One high-profile example occurred in 2018, when computer scientist Ewin Tang found a way to beat a quantum machine-learning algorithm2 devised in 2016. The quantum algorithm was designed to provide the type of suggestion that Internet shopping companies and services such as Netflix give to customers on the basis of their previous choices and it was exponentially faster at making such recommendations than any known classical algorithm.

Tang, who at the time was an 18-year-old undergraduate student at the University of Texas at Austin (UT), wrote an algorithm that was almost as fast, but could run on an ordinary computer. Quantum recommendation was a rare example of an algorithm that seemed to provide a significant speed boost in a practical problem, so her work put the goal of an exponential quantum speed-up for a practical machine-learning problem even further out of reach than it was before, says UT quantum-computing researcher Scott Aaronson, who was Tangs adviser. Tang, who is now at the University of California, Berkeley, says she continues to be pretty sceptical of any claims of a significant quantum speed-up in machine learning.

A potentially even bigger problem is that classical data and quantum computation dont always mix well. Roughly speaking, a typical quantum-computing application has three main steps. First, the quantum computer is initialized, which means that its individual memory units, called quantum bits or qubits, are placed in a collective entangled quantum state. Next, the computer performs a sequence of operations, the quantum analogue of the logical operations on classical bits. In the third step, the computer performs a read-out, for example by measuring the state of a single qubit that carries information about the result of the quantum operation. This could be whether a given electron inside the machine is spinning clockwise or anticlockwise, say.

Algorithms such as the one by Harrow, Hassidim and Lloyd promise to speed up the second step the quantum operations. But in many applications, the first and third steps could be extremely slow and negate those gains3. The initialization step requires loading classical data on to the quantum computer and translating it into a quantum state, often an inefficient process. And because quantum physics is inherently probabilistic, the read-out often has an element of randomness, in which case the computer has to repeat all three stages multiple times and average the results to get a final answer.

Once the quantumized data have been processed into a final quantum state, it could take a long time to get an answer out, too, according to Nathan Wiebe, a quantum-computing researcher at the University of Washington in Seattle. We only get to suck that information out of the thinnest of straws, Wiebe said at a quantum machine-learning workshop in October.

When you ask almost any researcher what applications quantum computers will be good at, the answer is, Probably, not classical data, says Schuld. So far, there is no real reason to believe that classical data needs quantum effects.

Vallecorsa and others say that speed is not the only metric by which a quantum algorithm should be judged. There are also hints that a quantum AI system powered by machine learning could learn to recognize patterns in the data that its classical counterparts would miss. That might be because quantum entanglement establishes correlations among quantum bits and therefore among data points, says Karl Jansen, a physicist at the DESY particle-physics lab in Zeuthen, Germany. The hope is that we can detect correlations in the data that would be very hard to detect with classical algorithms, he says.

Quantum machine learning could help to make sense of particle collisions at CERN, the European particle-physics laboratory near Geneva, Switzerland.Credit: CERN/CMS Collaboration; Thomas McCauley, Lucas Taylor (CC BY 4.0)

But Aaronson disagrees. Quantum computers follow well-known laws of physics, and therefore their workings and the outcome of a quantum algorithm are entirely predictable by an ordinary computer, given enough time. Thus, the only question of interest is whether the quantum computer is faster than a perfect classical simulation of it, says Aaronson.

Another possibility is to sidestep the hurdle of translating classical data altogether, by using quantum machine-learning algorithms on data that are already quantum.

Throughout the history of quantum physics, a measurement of a quantum phenomenon has been defined as taking a numerical reading using an instrument that lives in the macroscopic, classical world. But there is an emerging idea involving a nascent technique, known as quantum sensing, which allows the quantum properties of a system to be measured using purely quantum instrumentation. Load those quantum states on to a quantum computers qubits directly, and then quantum machine learning could be used to spot patterns without any interface with a classical system.

When it comes to machine learning, that could offer big advantages over systems that collect quantum measurements as classical data points, says Hsin-Yuan Huang, a physicist at MIT and a researcher at Google. Our world inherently is quantum-mechanical. If you want to have a quantum machine that can learn, it could be much more powerful, he says.

Huang and his collaborators have run a proof-of-principle experiment on one of Googles Sycamore quantum computers4. They devoted some of its qubits to simulating the behaviour of a kind of abstract material. Another section of the processor then took information from those qubits and analysed it using quantum machine learning. The researchers found the technique to be exponentially faster than classical measurement and data analysis.

Doing the collection and analysis of data fully in the quantum world could enable physicists to tackle questions that classical measurements can only answer indirectly, says Huang. One such question is whether a certain material is in a particular quantum state that makes it a superconductor able to conduct electricity with practically zero resistance. Classical experiments require physicists to prove superconductivity indirectly, for example by testing how the material responds to magnetic fields.

Particle physicists are also looking into using quantum sensing to handle data produced by future particle colliders, such as at LUXE, a DESY experiment that will smash electrons and photons together, says Jensen although the idea is still at least a decade away from being realized, he adds. Astronomical observatories far apart from each other might also use quantum sensors to collect data and transmit them by means of a future quantum internet to a central lab for processing on a quantum computer. The hope is that this could enable images to be captured with unparalleled sharpness.

If such quantum-sensing applications prove successful, quantum machine learning could then have a role in combining the measurements from these experiments and analysing the resulting quantum data.

Ultimately, whether quantum computers will offer advantages to machine learning will be decided by experimentation, rather than by giving mathematical proofs of their superiority or lack thereof. We cant expect everything to be proved in the way we do in theoretical computer science, says Harrow.

I certainly think quantum machine learning is still worth studying, says Aaronson, whether or not there ends up being a boost in efficiency. Schuld agrees. We need to do our research without the confinement of proving a speed-up, at least for a while.

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The AIquantum computing mash-up: will it revolutionize science? - Nature.com

The 3 Hottest Quantum Computing Stocks to Watch in 2024 – InvestorPlace

With the technology machinery running at full speed, forward-looking investors should consider the hottest quantum computing stocks for the prospect of robust profitability. To be sure, the pure-play ecosystem presents high risks. At the same time, the potential paradigm shift involved in quantum computers makes the bullish case incredibly enticing.

Essentially, the innovation empowers simultaneous multi-tiered data transmissions at a level that classical computers could never hope to achieve. Thats because the latter category is effectively a binary proposition. To solve a multi-tiered problem, it must first tackle the earlier iteration before resolving the subsequent challenges.

Quantum computers? They can address multiple problem sets, in part because the underlying qubit can exist in two physical states owing to the straight-up weird phenomenon of quantum mechanics at one time. Bottom line, it opens doors previously considered permanently closed, thus undergirding hot quantum stocks.

For full disclosure, the sector is very much young and there will almost certainly be growing pains. So, dont play in this sandbox if you cant handle volatility. Still, if you can accept the risk-reward profile, these hottest quantum computing stocks deserve a closer look.

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While internet and tech innovation juggernaut Alphabet (NASDAQ:GOOG, NASDAQ:GOOGL) may be a mature and thus boring idea, GOOG should help you on the road to the hottest quantum computing stocks that are proven viable. Analysts agree, rating shares a consensus strong buy with a $155.60 average price target. The high-side target lands at $160.

Through its Google Quantum AI team, Alphabet represents a major player in the research and development of superconducting quantum processors and software tools. So far, the company has achieved significant milestones in demonstrating its quantum supremacy. Enticingly, the quantum computing market could be worth $6.5 billion by 2028, representing a CAGR of 48.1% from 2023.

Although GOOG is unquestionably one of the hot quantum computing stocks, the main difference between parent Alphabet and the competition centers on the primary focus. Alphabet is more research oriented and it can afford to do so thanks to its robust financials.

In other words, its not one of the hottest quantum computing stocks based on upward mobility potential. However, you can trust Alphabet to be around in the next hundred years.

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Based in Canada, D-Wave Quantum (NYSE:QBTS) claims to be the worlds first company to sell computers that exploit quantum effects in their operation. It carries serious clout, with D-Waves early customers stemming from esteemed names like Alphabets Google and the University of Southern California. Analysts anticipate great things from QBTS, pegging it a unanimous strong buy with a $2.17 price target. That makes it one of the hottest quantum computing stocks based on implied growth.

Fundamentally, D-Wave is relevant to the discussion thanks to its specialty in building annealing quantum computers. These devices are specifically designed for solving so-called optimization problems, such as logistics, scheduling and financial modeling. Further, D-Waves processors are based on superconducting qubits arranged in a chimera topology. This distinct profile enables the company to tackle specific challenges at a much faster clip than classical computers.

Financially, the risk for QBTS is that its largely a narrative play. For example, shares trade at a trailing-year revenue multiple of 12.62X. Needless to say, thats sky high. However, with the projected growth of the underlying field, QBTS might be an opportunity based on where it might go.

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Headquartered in Berkeley, California, Rigetti Computing (NASDAQ:RGTI) develops quantum integrated circuits (ICs). An IC is basically a canvas of semiconductor wafers with millions of tiny resistors, capacitors and other components. Rigetti also develops a cloud platform called Forest that enables programmers to write with quantum algorithms. Analysts love RGTI, rating shares a unanimous strong buy with a $3. That also makes it one of the hottest quantum computing stocks based on implied shareholder profit.

As mentioned above, Rigetti lays a stake in the quantum field through its software platform. Beyond providing tools for algorithm design, Forest enables quantum circuit development and error correction. Therefore, it caters to both researchers and developers who may be working on different quantum applications. Further, the company aims to introduce practical applications in areas like materials science, chemistry and even financial modeling.

According to investment data aggregator Gurufocus, Rigettis projected future three-to-five-year revenue growth rate clocks in at 45.29%. That would be impressive if it comes true. However, investors should realize that right now, RGTI trades at 7.93X trailing-year sales, which is significantly overpriced. Still, if you anticipate a bright future, Rigetti could be one of the hot quantum computing stocks to consider.

On the date of publication, Josh Enomoto did not have (either directly or indirectly) any positions in the securities mentioned in this article.The opinions expressed in this article are those of the writer, subject to the InvestorPlace.comPublishing Guidelines.

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The 3 Hottest Quantum Computing Stocks to Watch in 2024 - InvestorPlace

What Is AI-quantum Computing And How Will It Change The World? – Dataconomy

AI and machine learning have undoubtedly captured the attention of the tech world and we are closer to AI-quantum computing than we thought.

The buzz around AI and machine learning isnt just hype anymore; its the soundtrack to a rapidly evolving landscape. From self-driving cars weaving through our streets to robots assisting in delicate surgeries, the applications are already changing our world. And amidst this exciting wave, another force is gathering momentum: the fusion of AI and quantum computing.

While the concept of AI-quantum computing might sound like science fiction, the reality is surprising. Were closer to achieving this groundbreaking synergy than many expected. Advancements in both fields are happening at a breakneck pace.

AI-quantum computing is the fusion of two of the buzziest terms in technology: machine learning and quantum computers.

In one corner, we have artificial intelligence (AI), the art of creating intelligent machines that can learn, reason, and understand the world around them. AI algorithms, powered by mountains of data, can decipher patterns, make predictions, and even generate creative content. Theyre behind the self-driving cars navigating our streets, the personalized recommendations filling our screens, and the medical insights revolutionizing healthcare.

In the other corner stands quantum computing, a technology that harnesses the counterintuitive principles of the quantum world. Unlike traditional computers that rely on bits (either 0 or 1), quantum computers employ qubits, which can exist in a superposition of both states simultaneously. This bizarre ability allows them to explore vast numbers of possibilities in parallel, tackling problems that would take classical computers eons to solve.

But what happens when these two giants collide? Thats where the excitement of AI-quantum computing takes center stage. This marriage of minds and mechanics holds the potential to:

Of course, this futuristic vision comes with its own set of challenges. Building and maintaining reliable AI-quantum computing is still a technological hurdle, and integrating them seamlessly with existing AI frameworks is no small feat. The very nature of quantum mechanics introduces noise and errors, demanding sophisticated error correction techniques.

Despite these obstacles, the field is progressing at breakneck speed. Advances in quantum hardware, software development, and AI algorithms are paving the way for practical applications. Research teams around the world are actively designing hybrid quantum-classical algorithms, testing them on real-world problems, and pushing the boundaries of whats possible.

While the success of AI-quantum computing remains to be seen, the potential rewards are undeniable. This collaborative venture could unleash a new era of scientific discovery, technological innovation, and human progress. Its a story still being written, but one that promises to rewrite the very notion of what computers can achieve.

So, the next time you hear about AI and quantum computing, remember this: its not just about bits and bytes, algorithms and circuits. Its about a powerful synergy, a fusion of minds and mechanics, with the potential to reshape the world we live in.

Its difficult to predict exactly when AI-quantum computing will become a reality, as its a complex field that requires significant advances in both AI and quantum computing. However, researchers are actively working on developing the necessary technologies and algorithms, and some experts believe that we could see the first practical applications of AI-quantum computing within the next 5-10 years.

There are several challenges that need to be overcome before AI-quantum computing can become a reality, including the development of reliable and scalable quantum computing hardware, the creation of quantum algorithms that can solve real-world problems, and the integration of quantum computing with classical AI systems.

Despite these challenges, many experts believe that AI-quantum computing has the potential to revolutionize many areas of research and industry, and there is significant investment and research being done in this field. For example, Google, IBM, and Microsoft are all actively working on developing quantum computing hardware and algorithms, NVIDIA has recently unveiled their superchips and there are several startups and research institutions working on AI-quantum computing applications.

The convergence of artificial intelligence (AI) and quantum computing holds immense potential to revolutionize industries and transform our lives. This potent combination could tackle previously intractable problems and drive unprecedented innovation across various fields.

Imagine personalized medicine tailoring treatments to individual genomes, materials science designing revolutionary substances with unheard-of properties, or finance predicting market fluctuations with uncanny accuracy. AI-quantum computing could unlock these possibilities, accelerating drug discovery, optimizing supply chains, and creating next-generation solar cells.

Education could be radically personalized, with AI-powered tutors adapting to each students needs and preferences. Climate change mitigation strategies could be vastly improved through accurate modeling and resource management. Even mundane tasks like traffic management and entertainment recommendations could be optimized, leading to smoother commutes and personalized content experiences.

This transformative potential comes with challenges. Automation through AI could lead to job losses, necessitating reskilling and adaptation programs. Ensuring fairness and mitigating bias in AI algorithms will be crucial to prevent discrimination in loan approvals or criminal justice. Robust data privacy and security regulations are needed to address potential breaches and protect individual information.

Achieving true AI-quantum computing will take time, significant research, and careful ethical considerations. But the potential benefits are immense, with the potential to solve some of humanitys most pressing challenges and improve our lives in unimaginable ways. Ultimately, the future of AI-quantum computing depends on how we choose to develop and utilize this powerful technology, ensuring it serves the betterment of humanity.

Who knows? Maybe Open AIs Q-star is the first small step we have taken for it.

Featured image credit: benzoix/Freepik.

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What Is AI-quantum Computing And How Will It Change The World? - Dataconomy

Quantum Computing Meets AI What Happens Next | by Anshul Kummar | Jan, 2024 – Medium

What will happen if we combine Quantum Computing with Artificial Intelligence?

What youre going to read in this blog might sound like the brainchild of a Sci-Fi novelist on a caffeine bench, but here is the kicker while these visions might seem farfetched to now, many leading experts are nodding along with the marriage of quantum computing and AI.

The lines between reality and fiction blur to the point where distinguishing one from the other could be our next big challenge.

Heres what will happen when we combine Quantum Computing with AI:

Tasks that take years will be done in seconds.

Think about the time it takes for your computer to start up. Remember dial-up internet that painful wait for a single web page to load?

Yep, that was top tech in its time.

Fast forward to todays supercomputers, which can process vast data in seconds. Impressive, right?

But what if I told you quantum computers scoff at these advanced machines? Classical computers work with bits. Think of them as light switches, either on or off.

Quantum computers, on the other hand, utilize qubits. Thanks to superposition, these qubits can be on, off, or both simultaneously.

A qubit, or quantum bit, is the basic unit of information in quantum computing. Its the quantum version of the classic binary bit, and its physically realized with a two-state device.

The power grows exponentially with each added qubit.

Nobel laureate Richard Feynman famously said,

If you think you understand quantum mechanics, you doesnt understand quantum mechanics.

True, its mind-boggling. But for a quick analogy, consider reading all the books in a library simultaneously instead of one by one.

Thats the potential speed of a quantum machine.

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Quantum Computing Meets AI What Happens Next | by Anshul Kummar | Jan, 2024 - Medium

New Year, New Gains: The 3 Best Quantum Computing Stocks to Buy in 2024 – InvestorPlace

Quantum computing is an exciting yet complex space with much promise. Recent projections estimate the global quantum computing market will grow to$7.6 billionin 2027. This forecast considers factors like the methodical pace of quantum hardware development, competition from other advanced computing technologies, and current economic uncertainties.

Analysts expect a gradual expansion as the market matures. Progress will likely come through enhancements in infrastructure, computing platforms, and a wider range of suitable applications. Experts predict investments will continue accelerating over the next five years, even with measured hardware breakthroughs.Quantum computing stocksare positioned to capitalize on this advancement. Lets take a look at the three most promising ones.

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The first quantum computing stock on our list is the global tech companyMicrosoft(NASDAQ:MSFT). It has been around for over48 yearsand is based in Redmond, Washington. Today, the company is valued at over $2.7 trillion, develops software and hardware, provides cloud computing, and now develops quantum computing technology. Main business segments include productivity, business processes, and LinkedIn; cloud computing platforms like Azure; Windows and other operating systems; and devices like Surface and Xbox.

While quantum computing may have a limited financial impact on Microsoft, like its investment in OpenAI, the companys innovative contributions solidify its role in shaping the future of computing technology.

MSFTrecently announceda partnership with the AFL-CIO to develop AI technology that benefits workers. Instead of treating labor as an input to be optimized by tech, they want workers themselves to guide the development process. The partnership allows workers on-the-ground expertise to shape how AI gets built and deployed. This collaboration can reduce burdens, enhance careers, unlock human potential, and increase company valuation.

Microsoft reported strong financial results in its recent quarter. Total revenue rose13%year-over-year to $56.5 billion, operating income jumped 25% to $26.9 billion, net income increased 27% to $22.3 billion, and diluted earnings per share was $2.99. The company saw double-digit growth across major financial metrics, and on top of that, analysts rated the stock aStrong Buy, citing over 60% upside potential with a high price target of $600. These factors show that Microsoft continues to fire on all cylinders and deliver shareholder value, making it one of the best quantum computing stocks to buy.

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Intel(NASDAQ:INTC) has been an innovative force since its founding over55 yearsago. The company develops and provides computing products and services, including quantum computing technologies. Intels market cap now exceeds $200 billion thanks to its multiple business segments, such as client computing platforms, data centers, and artificial intelligence solutions. The company is also known for driving progress in cloud infrastructure, networking, and vision capabilities.

Intelrecently announcedthe launch of AI products, including the Intel Core Ultra and 5th Gen Intel Xeon processors. The company can unlock operational value by deploying these solutions across its technology infrastructure to boost efficiency, reduce expenses, and open the door for modern applications.

Intel delivered third-quarter revenue of$14.2 billionwhich represents an 8% decline in revenue year-over-year. The company outlined fourth-quarter guidance indicating expected revenues between $14.6 billion and $15.6 billion and non-GAAP EPS of $0.44. Analysts are confident with the stock, giving it a Buy rating witha high estimate of $68, citing over 34% upside potential from its current prices, making it one of the great quantum computing stocks to pick up.

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Honeywell(NASDAQ:HON) is a diversified technology and manufacturing company. The company was founded in1885and headquartered in Charlotte, North Carolina. As of late, the company has an enterprise value of$150 billionand operates four main business segments: aerospace, building technologies, performance materials and technologies, and safety and productivity solutions. Besides these segments, Honeywell also explores quantum computing through its Honeywell Quantum Solutions division. The division focuses on developing and commercializing quantum devices.

Honeywell recently boosted its market presence by integratingquantum-computing-hardened encryptionkeys into its smart utility meters. This solution generates keys through quantum-computing-enhanced randomness, significantly increasing data security for gas, water, and electric utilities. This initiative fortifies Honeywells commitment to innovation and positions the company at the forefront of cybersecurity.

Honeywell reported strong third-quarter results, with sales of$9.2 billion, up 3% over the prior year. Orders were up by 10%, the companys backlog grew 8% to reach a record level of $31.4 billion. Operating margins also went up by 20.9%. The Aerospace division performed well this quarter, with 18% sales growth. Honeywell also exceeded earnings expectations by a modest2.25%and analysts rate the stock as a Strong Buy with over 20% upside potential. Considering these factors, Honeywell is set for continued growth and makes for an excellent quantum computing stock to buy.

On the date of publication, Rick Orford held long positions in MSFT. The opinions expressed in this article are those of the writer, subject to the InvestorPlace.comPublishing Guidelines.

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New Year, New Gains: The 3 Best Quantum Computing Stocks to Buy in 2024 - InvestorPlace

Quantum Computing Breakthrough: DARPA and Harvard Collaboration – Medriva

The future of computing as we know it is on the cusp of a monumental shift, thanks to a recent breakthrough in quantum computing technology. This advancement, brought about by a unique collaboration between the Defense Advanced Research Projects Agency (DARPA) and Harvard University, has the potential to accelerate the actualization of quantum computing by several years. The implications of this development are substantial, promising significant advancements in computing power and technological innovation.

The collaboration between DARPA and Harvard aims to address the fundamental challenges of scaling and error correction in quantum computing. These are crucial parameters for the practical implementation of this technology. A team led by Harvard and supported by DARPA has made significant strides in these areas. They have developed novel logical qubits that could enable the creation of scalable quantum computers.

In a first-of-its-kind achievement, the team created a quantum circuit with logical quantum bits (qubits), utilizing arrays of noisy physical Rydberg qubits. They developed techniques to create error-correcting logical qubits and built quantum circuits with around 48 Rydberg logical qubits in their laboratory. This advancement opens up the possibility of rapidly scaling the number of logical qubits.

Traditionally, it has been believed that millions of physical qubits are needed before a fault-tolerant quantum computer can be developed. However, this breakthrough has challenged this traditional view. By 2025, the QuEra team anticipates having between 10,000 to 100,000 physical qubits and 100 error-corrected qubits with very low error rates. This could potentially lead to commercially viable quantum error-corrected computer systems by 2028.

DARPA has selected Microsoft Corporation and PsiQuantum to advance to the next phase of the US2QC program. This program aims to ascertain whether an underexplored approach to quantum computing can achieve utility-scale operation. The goal is to develop and defend a system design for a fault-tolerant prototype, demonstrating that a utility-scale quantum computer can be constructed and operated as intended.

The breakthrough also underscores the urgent need for agencies and companies to transition from long-standing encryption protocols to Post Quantum Cryptography (PQC) to resist rapidly advancing quantum computers. PQC is designed to address the threat posed by quantum computers to existing encryption. Implementing the new cryptography algorithms in actual code and ensuring it works is a critical step in this process. Agencies and companies are urged to take proactive steps to address the issue, rather than waiting for cybersecurity vendors to come up with a PQC implementation.

The impact of quantum computing on digital devices and the urgency for the migration to PQC cannot be overstated. This breakthrough, along with the initiatives by DARPA and its partners, is reshaping the future of computing and technology. We are on the brink of a new era, and the potential advancements it promises are truly exciting.

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Quantum Computing Breakthrough: DARPA and Harvard Collaboration - Medriva

What Happens When Quantum Computers Run Generative AI: A Look into the Future – Medium

Introduction

Understanding Quantum Computing and Generative AI: The Basics Quantum computing represents a significant leap from traditional computing, harnessing the peculiar properties of quantum mechanics to process information in ways previously unimaginable. It operates on qubits, which, unlike classical bits, can be in multiple states simultaneously, enabling unprecedented processing speeds and capabilities.

Generative AI, on the other hand, refers to artificial intelligence algorithms capable of creating content, from art and music to text and simulations. It learns from vast datasets, identifying patterns, and generating new, original outputs that can mimic or even surpass human creativity.

When these two technological giants converge, the potential for innovation and progress is boundless. This synergy promises to catapult AIs capabilities into a realm where it can solve complex problems faster, generate more sophisticated and nuanced outputs, and unlock mysteries across various fields, from science to arts. But with great power comes great responsibility, and this union also raises important ethical and security concerns that must be addressed.

The Fusion of Quantum Computing and Generative AI

Synergy of Quantum Mechanics and Artificial Intelligence

The fusion of quantum computing and generative AI represents a paradigm shift in technology. Quantum mechanics, with its principles of superposition and entanglement, allows quantum computers to perform complex calculations at speeds unattainable by classical computers. This capability, when harnessed by AI, particularly generative models, unlocks new potentials. Algorithms that once took days to process can now be executed in mere moments, paving the way for more advanced, efficient, and accurate AI models. This synergy is not just about speed; its about enabling AI to tackle problems once thought unsolvable, opening doors to new discoveries and innovations.

Potential and Limitations: A Balanced View

While the potential of quantum-enhanced AI is enormous, its crucial to understand its limitations. Quantum computing is still in its infancy, with many technical challenges to overcome. Issues like qubit stability and error correction are significant hurdles. Similarly, AI, especially in its generative forms, faces challenges in bias, unpredictability, and ethical considerations. Its essential to approach this fusion with a balanced perspective, acknowledging both the incredible opportunities it offers and the hurdles that lie ahead.

Deep Dive into Quantum-Enhanced Generative AI

Revolutionizing Data Analysis and Processing

Quantum computings ability to process and analyze data at an unprecedented scale is a game-changer for generative AI. This technology can sift through colossal datasets, uncovering patterns and insights far beyond the reach of classical computers. For generative AI, this means more refined, accurate, and diverse outputs. The implications of this are vast, from developing more effective healthcare treatments to understanding complex environmental systems.

Quantum AI in Creative Industries

The impact of quantum-enhanced generative AI in the creative industries is particularly exciting. Imagine AI that can compose music, create art, or write stories with a depth and nuance that rivals human creativity. This isnt just about replicating existing styles; its about generating entirely new forms of art, pushing the boundaries of creativity. However, this also raises questions about the nature of creativity and the role of AI in artistic expression.

Impact on Scientific Research and Discovery

Quantum AIs contribution to scientific research and discovery is potentially transformative. In fields like drug discovery, it can analyze vast molecular structures and simulate interactions, speeding up the development of new medications. In space exploration, it can process vast amounts of astronomical data, helping us understand our universe in more detail than ever before.

Quantum AI in Business and Economy

Transforming Business Strategies and Economic Models

The integration of quantum computing with generative AI has the potential to revolutionize business strategies and economic models. This fusion enables businesses to analyze market trends and consumer behavior with unprecedented accuracy and speed. Predictive analytics becomes far more powerful, allowing companies to anticipate market changes and adapt swiftly. In finance, quantum AI can optimize portfolios, manage risks, and detect fraud more efficiently than ever before. This technological leap could lead to more dynamic, responsive, and efficient economic systems, though it also necessitates new approaches to data security and ethical business practices.

Ethical Considerations and Societal Impact As quantum AI begins to permeate various sectors, its ethical implications and societal impact become increasingly important. One of the primary concerns is data privacy and security. Quantum computing could potentially break traditional encryption methods, raising questions about data protection. Additionally, there are concerns about job displacement and the widening of the digital divide. Its crucial to address these issues proactively, ensuring that the benefits of quantum AI are accessible and equitable.

Quantum AI Applications and Case Studies

Real-World Applications of Quantum AI

Examining real-world applications of quantum AI provides concrete insights into its potential. Industries like healthcare, where quantum AI is used for drug discovery and personalized medicine, demonstrate its life-changing capabilities. In environmental science, its used for climate modeling and understanding ecological systems, offering new ways to tackle global challenges.

Challenges and Solutions in Quantum AI Deployment

Despite its potential, deploying quantum AI comes with significant challenges. Technical issues like qubit stability and error rates in quantum computers are ongoing concerns. There are also logistical and infrastructural challenges in integrating quantum computing with existing AI systems. However, continuous research and development are leading to innovative solutions, pushing the boundaries of whats possible in this field.

The Future of Quantum AI

Predicting the Future: Trends and Possibilities

The future of quantum AI is one of the most exciting aspects to consider. As research progresses, we can expect quantum computers to become more stable and powerful, which will, in turn, make AI even more capable. This could lead to breakthroughs in fields like material science, where quantum AI could be used to design new materials with specific properties, or in AI ethics, where it could help create more equitable and unbiased AI systems.

Quantum AI and the Evolution of Technology

The evolution of quantum AI will likely go hand-in-hand with other technological advancements. As quantum computing becomes more mainstream, it will interact with emerging technologies like 5G, the Internet of Things (IoT), and edge computing, creating a more interconnected and intelligent digital landscape. This convergence has the potential to not only enhance existing technologies but also give birth to entirely new ones, reshaping our world in the process.

FAQs

Frequently Asked Questions About Quantum AI

Conclusion

Final Thoughts: Embracing the Quantum AI Era

As we stand on the brink of a new era in technology, the fusion of quantum computing and generative AI presents both thrilling opportunities and significant challenges. This technology holds the promise of transforming every aspect of our lives, from the way we work and create to how we solve some of the worlds most pressing problems. While there are hurdles to overcome, particularly in terms of ethics, security, and accessibility, the potential benefits are too great to ignore. As we continue to explore and harness the power of quantum AI, we must do so with a sense of responsibility and a commitment to creating a better, more equitable world.

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What Happens When Quantum Computers Run Generative AI: A Look into the Future - Medium

Quantum Computing: Unraveling the Power of Qubits | by Amy Belluomini | Jan, 2024 – Medium

Photo by Manuel on Unsplash

Introduction:

In the realm of computing, quantum technology is poised to revolutionize our approach to information processing. At the heart of this revolution lies quantum computing, a paradigm that leverages the principles of quantum mechanics to usher in a new era of computational power. At the center of this transformation are qubits, the quantum counterparts to classical bits, unlocking unparalleled potential in solving complex problems and pushing the boundaries of what was once deemed impossible.

From Bits to Qubits: The Quantum Leap:

Classical computers operate on bits, the fundamental units of information that exist in either a 0 or 1 state. Quantum computers, on the other hand, harness qubits, which, thanks to the principles of superposition and entanglement, can exist in multiple states simultaneously. This property exponentially expands computational possibilities, allowing quantum computers to explore numerous solutions at once.

Superposition and Parallelism:

Superposition is a fundamental concept in quantum mechanics that allows qubits to exist in a combination of 0 and 1 states simultaneously. This unique characteristic enables quantum computers to perform parallel computations, significantly accelerating their processing power compared to classical counterparts when tackling complex problems.

Entanglement: The Quantum Connection:

Entanglement is another quantum phenomenon where qubits become interconnected, regardless of the physical distance between them. This intrinsic correlation enables quantum computers to share information instantaneously, facilitating collaborative problem-solving and enhancing the overall computational efficiency.

Quantum Gates and Circuits:

Quantum computers utilize quantum gates and circuits to manipulate qubits, enabling complex calculations. Unlike classical logic gates, quantum gates leverage superposition and entanglement to perform operations that go beyond the capabilities of classical computing. This unique architecture forms the foundation for quantum algorithms that excel in specific problem domains.

Quantum Supremacy: Pushing Computational Limits:

Quantum supremacy is the theoretical point at which quantum computers surpass the computational capabilities of the most powerful classical computers. Achieving quantum supremacy is not merely about raw speed but demonstrating the ability to solve problems that were previously deemed intractable. Googles 2019 experiment with their Sycamore processor marked a significant milestone in this pursuit.

Applications Across Industries:

Quantum computing holds the promise of transforming industries across the board. From cryptography and optimization problems to drug discovery and materials science, quantum computers have the potential to revolutionize how we approach complex challenges. As the technology matures, practical applications are emerging, showcasing the transformative power of quantum computation.

The Quantum Revolution and Challenges Ahead:

While the potential of quantum computing is immense, it is not without its challenges. Decoherence, error correction, and the need for stable quantum states are among the hurdles that researchers are actively addressing. Overcoming these challenges is critical for realizing the full potential of quantum computing and making it a practical tool for various applications.

Conclusion:

Quantum computing, with its qubit-driven capabilities, is on the cusp of reshaping the computational landscape. As researchers delve deeper into the quantum realm, the power of qubits is unraveling new possibilities that were once confined to the realm of science fiction. The journey ahead involves not only overcoming technical challenges but also harnessing the potential of quantum computing to address real-world problems and propel us into a future where the once unimaginable becomes an integral part of our technological reality.

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Quantum Computing: Unraveling the Power of Qubits | by Amy Belluomini | Jan, 2024 - Medium

Quantum Computing in the Cloud: Shaping the Future of Technology – Medium

In the rapidly evolving world of technology, quantum computing emerges as a beacon of revolutionary change, particularly in the realm of cloud computing. This post explores how quantum computing is not just a futuristic concept but is increasingly becoming an integral part of the cloud landscape.

Quantum computing differs significantly from traditional computing. While classical computers use bits (0s and 1s) for processing information, quantum computers use quantum bits or qubits. These qubits harness the principles of quantum mechanics, notably superposition and entanglement, enabling them to perform complex calculations at speeds unattainable by traditional computers.

The integration of quantum computing into cloud platforms is an emerging trend. Due to the high cost and specialized nature of quantum computers, making them widely available via the cloud is a game-changing strategy. This democratization of access allows researchers, developers, and businesses to experiment with quantum computing without the prohibitive costs of owning a quantum computer.

Quantum computing is not just a new way of computing, its a new way of thinking about what is possible. Its the bridge between the imaginable and the achievable

Quantum computing in the cloud has the potential to drive significant advancements in various fields. In pharmaceuticals, it can accelerate drug discovery by analyzing molecular structures in ways previously impossible. In finance, quantum algorithms can optimize portfolios and simulate economic models with unprecedented complexity and speed. Additionally, quantum computing can solve complex optimization problems in logistics, enhance machine learning models, and even contribute to advancements in climate change research by modeling large environmental systems.

Despite its promise, quantum computing in the cloud faces significant challenges. Quantum technology is still in its infancy, with issues related to qubit stability and error rates. Moreover, developing algorithms that can fully utilize quantum computings potential is an ongoing area of research. Ensuring data security in a quantum world also presents a new set of challenges, as quantum computers could potentially break traditional encryption methods.

Leading tech companies are investing heavily in quantum computing. Cloud platforms like AWS, Microsoft Azure, and Google Cloud are already offering quantum computing services, allowing users to run quantum algorithms and experiment with qubit technologies. The future of quantum computing in the cloud looks promising, with ongoing research focusing on making quantum computers more stable, reliable, and accessible.

I wrote an article about how the big 3 Cloud service providers and their differences. Head over here, if this interests you.

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Quantum Computing in the Cloud: Shaping the Future of Technology - Medium

Quantum AI Australia Redefining the Australian Crypto Market – Crypto Times

The cryptocurrency market in Australia is experiencing a groundbreaking shift with the introduction of Quantum AI technologies.

These advanced AI systems are reshaping the landscape of crypto trading, bringing with them a wave of innovative opportunities and complex challenges. As a result, theres a noticeable increase in the number of crypto traders nationally, signaling a new era in the digital currency space.

In this article, we will explore the transformative role of Quantum AI in the Australian crypto market, examining how its redefining trading strategies and influencing market dynamics.

Before delving into the intricacies of Quantum AI and its implications for the Australian crypto market, let us first gain a fundamental understanding of these domains individually.

Quantum computing is a groundbreaking technology that leverages the principles of quantum mechanics to perform complex computations at a massively accelerated pace.

It operates on quantum bits, or qubits, which can exist in multiple states simultaneously, enabling parallel processing and exponentially increasing computational power.

On the other hand, Artificial Intelligence (AI) is a branch of computer science that focuses on creating systems capable of performing tasks that would normally require human intelligence.

Through machine learning algorithms and neural networks, AI systems can analyze vast amounts of data, identify patterns, and make predictions or decisions independently.

Quantum computing harnesses the unique properties of quantum mechanics, such as superposition and entanglement, to revolutionize the computing landscape.

Traditional computers use binary digits, or bits, which can represent two states: 0 or 1. In contrast, qubits can be in a superposition of both states simultaneously, exponentially expanding computational possibilities.

By exploiting this superposition and parallelism, quantum computers can solve complex problems that are simply intractable for classical computers. This has vast implications for a range of industries, including finance.

Imagine a world where complex financial models can be simulated and analyzed in real time, enabling traders to make informed decisions with unprecedented accuracy.

Quantum computing has the potential to unlock this future, where algorithms can process vast amounts of financial data and identify subtle patterns that were previously invisible.

Furthermore, the ability of qubits to exist in multiple states simultaneously allows for the exploration of multiple potential outcomes simultaneously. This means that quantum computers can evaluate different scenarios and predict market trends with remarkable precision.

Traders can have access to insights that were once considered impossible, enabling them to stay ahead of the curve and make strategic investment decisions.

When AI and quantum computing converge, a powerful synergy emerges, capable of transforming the Crypto market landscape.

Quantum AI aims to leverage the immense processing power of quantum computers to enhance AI algorithms and improve decision-making processes in Crypto trading.

With the integration of quantum computing, AI algorithms can process and analyze exponentially larger datasets, enabling traders to gain a deeper understanding of market trends and make more accurate predictions.

This combination has the potential to revolutionize the way Crypto markets operate, as traders can leverage the power of quantum AI to make informed decisions in real time.

Moreover, the integration of quantum AI can lead to the development of advanced trading strategies that adapt and learn from market conditions. Machine learning algorithms can be enhanced by quantum computing, allowing them to continuously evolve and improve their performance based on real-time market data.

Imagine a scenario where AI-powered trading systems can analyze market data, news articles, social media sentiment, and even global events in real time.

By leveraging the power of quantum computing, these systems can process and analyze vast amounts of data with unparalleled speed and accuracy, enabling traders to make split-second decisions based on the most up-to-date information.

In conclusion, the convergence of AI and quantum computing holds immense potential for the Crypto market. The combination of these technologies can unlock new opportunities, enabling traders to analyze massive amounts of data, identify intricate patterns, and make predictions with unparalleled accuracy and speed.

As quantum AI continues to evolve, we can expect to see significant advancements in the field of Crypto trading, ultimately reshaping the way financial markets operate.

To fully grasp the influence of quantum AI trading strategies in Australia, it is essential to first develop a thorough understanding of the current state of the Australian crypto market.

This foundational knowledge will provide valuable context for evaluating how these advanced trading strategies are shaping market dynamics and investment approaches in the region.

The cryptocurrency market in Australia has experienced significant growth in recent years, mirroring global trends in the industry. Here are some key points about the cryptocurrency market in Australia:

Cryptocurrency adoption in Australia has been on the rise, with a growing number of individuals and businesses becoming aware of and using cryptocurrencies such as Bitcoin and Ethereum for various purposes, including investments and transactions.

The Australian government has taken a relatively proactive approach to cryptocurrency regulation, aiming to strike a balance between promoting innovation and ensuring consumer protection.

Cryptocurrency exchanges and businesses dealing with digital assets are required to comply with anti-money laundering (AML) and know-your-customer (KYC) regulations.

The amount of money made in the cryptocurrency market is predicted to reach $874.9 million in 2023. This money is expected to increase every year by about 13.53% from 2023 to 2028. So, by 2028, the total amount of money in this market is estimated to be around $1,650 million.

As Quantum AI gains momentum, its impact on the Australian crypto market is anticipated to be substantial. Let us explore the potential benefits and challenges associated with adopting Quantum AI in crypto trading.

By harnessing the power of quantum computing in crypto trading, traders and investors can potentially gain a competitive edge and enhance their decision-making processes. Some potential benefits of Quantum AI in crypto trading include:

Also Read: 9 Best Tips to Use AI For Fruitful Crypto Trading Experience

While the potential benefits of Quantum AI in crypto trading are enticing, there are significant challenges and risks associated with its implementation:

AI technology is in its early stages and is passing through different trial and testing phases. It is advisable to take precautions while using AI for crypto trading.

The integration of Quantum AI into the Australian crypto market promises to reshape the landscape and open up new avenues. Let us explore some predictions for the future of Quantum AI in crypto trading.

Experts anticipate the following developments as Quantum AI continues to mature:

As Quantum AI becomes integrated into the Australian crypto market, it is important for market participants to prepare for the paradigm shift it will bring:

In conclusion, Quantum AI is poised to redefine the Australian crypto market, offering unparalleled opportunities for traders and investors alike.

By combining the immense computational power of quantum computing with the intelligence of AI, Quantum AI holds the potential to revolutionize crypto trading strategies, optimize portfolio management, and reshape market dynamics.

Amidst the excitement, it is crucial to acknowledge the challenges and risks associated with implementing Quantum AI in the Crypto market and take appropriate measures to mitigate them. Embracing Quantum AI and staying ahead of the curve will be key for navigating the future landscape of the Australian Crypto market.

This article is for informational purposes only and not investment advice. The Crypto Times doesnt endorse any crypto investments without proper understanding. Sharing personal details with such platforms can be risky, as they might be scams. Use Quantum cautiously; The Crypto Times isnt liable for any investment returns.

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Quantum AI Australia Redefining the Australian Crypto Market - Crypto Times

Argonne to receive new funding to develop quantum networks – Argonne National Laboratory

Quantum networks hold enormous potential for groundbreaking advances in many areas of science and technology. Once this technology matures, it is expected to be an essential component of quantum computing. It could have the equivalent impact as the internet has had on digital communication.

The U.S. Department of Energy (DOE) has announced that three collaborative projects in quantum networking will receive $24 million for up to three years. The DOEs Argonne National Laboratory will be participating in two of the projects and leading one of them, InterQnet. Anticipated funding for InterQnet is $9 million over three years.

Quantum networks would lead to breakthroughs in quantum computing by linking multiple quantum computers to greatly boost computational power. This technology could also advance precision measurements based on quantum principles that would otherwise not be possible. And it could pave the way for new applications yet to be conceived.

Our results will serve as the bedrock for scaling up quantum networks to connect quantum devices around the nation. Rajkumar Kettimuthu, computer scientist

The InterQnet project will address multiple challenges with scaling up quantum networks from the current metropolitan scale to much longer distances and more complex architectures. To that end, Argonne is collaborating with DOEs Fermi National Accelerator Laboratory (Fermilab), Northwestern University, the University of Chicago and the University of Illinois Urbana-Champaign.

The quantum processes involved govern the behavior of elementary particles, such as photons, which are the fundamental constituents of light. The key process is called entanglement. Two entangled particles are interdependent even after they are separated over vast distances.

What fascinates me about quantum networks is that they can transport information in a fundamentally new way, said Rajkumar Kettimuthu, a computer scientist at Argonne and principal investigator for InterQnet. They allow you to communicate quantum information from one point to another in a network by leveraging quantum entanglement while also transmitting classical information; this is different from transmitting the quantum information over a communication medium, such as a fiber-optic cable, or free space.

He furtherexplained that because entanglement-based quantum communication requires transmittal of classical information from source to destination, you cannot communicate quantum information faster than light.

We have already demonstrated quantum communication with entangled photon pairs in a laboratory, between buildings at Argonne, and between Argonne and Fermilab, Kettimuthu said.

InterQnet will be showcasing quantum communication across five buildings on the Argonne campus with multiple distinct quantum platforms and an early-stage quantum repeater. Each platform will use a different type of quantum bit (qubit), the basic unit of information in quantum information. Unlike classical bits, which can only be either 0 or 1, a qubit can simultaneously represent a combination of both states. This characteristic is one reason quantum computers possess vastly superior computational capabilities for some applications.

Argonne researchers previously collaborated in the development of four types of qubits: electrons, ytterbium atoms, charged erbium atoms (ions) and microwave circuits. A significant milestone would be to demonstrate the Argonne quantum network connecting these distinct qubit platforms. One of them would serve as a quantum repeater, an essential network element to extend the communication distance.

Our results will serve as the bedrock for scaling up quantum networks to connect quantum devices around the nation, Kettimuthu said. The team will complement practical experiments with computer simulations to determine the optimal architecture for a futuristic quantum network scalable to great distances.

This new project grew out of work done in various earlier and ongoing projects. These include several Argonne Laboratory Directed Research and Development projects; the Illinois Express Quantum Network (IEQNET) led by Fermilab; and Q-NEXT, a DOE Office of Science national quantum information science (QIS) center led by Argonne.

InterQnet will also leverage various existing QIS hardware and software elements already in place. These include the fiber-optics connection between Argonne and partner institutions and a quantum network simulator developed at Argonne.

Fermilab has been awarded DOE funding for a separate project, Advanced Quantum Network for Scientific Discovery. This Fermilab-led project will leverage the expertise and capabilities developed by IEQNET. The objective is to improve the transmission of information over quantum networks. Collaboration between the two national labs will continue as Argonne will also participate in the project along with other partners.

Quantum networks are the foundation for distributed and scaled-up quantum computing, which has potential applications in banking, national security, energy delivery infrastructure, information security and many others, said Panagiotis Spentzouris, associate laboratory director for emerging technologies at Fermilab.

The DOE Advanced Scientific Computing Research program is funding this research.

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Argonne to receive new funding to develop quantum networks - Argonne National Laboratory

Can Bitcoin be hacked? Exploring quantum computing and other … – crypto.news

Bitcoin, lauded for security, isnt free from threats. This article dives deep into Bitcoins vulnerabilities, from Sybil attacks to the impending challenge of quantum computing.

Bitcoin (BTC), celebrated for its decentralized and secure design, has revolutionized the financial landscape. Yet, like all technological marvels, it isnt impervious to threats.

From manipulative Sybil attacks to the potential dominance of quantum computing, the question arises: can Bitcoin truly be hacked?

This article delves into the vulnerabilities of Bitcoins security architecture and the measures in place to counteract these risks.

When we think about Bitcoin, we often envision a secure, decentralized financial system. But like all systems, Bitcoin is not without its vulnerabilities. One notable weakness is its susceptibility to the Sybil attack.

A Sybil attack in the realm of peer-to-peer (P2P) networks refers to a situation where a single adversary creates multiple fake identities. This might sound harmless, but the ramifications can be severe.

By controlling numerous nodes on the network, an attacker can manipulate what the network sees and does. Imagine driving through a city where most of the traffic signals are controlled by a single malicious entity. This entity can isolate roads or even whole neighborhoods, causing chaos.

Similarly, in a Sybil attack, by outnumbering the honest nodes, an attacker can effectively isolate certain parts of the Bitcoin network. This isolation prevents these parts from sending or receiving any transactions or block information.

Another subset of this threat is the Eclipse Attack. Here, the attacker surrounds a particular node, monopolizing all its connections. Its similar to putting blinders on a horse. The affected node, thus eclipsed, only sees what the attacker wants it to see, which can be false data about transactions or block status.

The flood of fake nodes also brings another threat: resource exhaustion. Each node requires computational resources. By overwhelming the network with malicious nodes, the attacker can tire out the genuine nodes, causing them to slow down or even crash.

Thankfully, Bitcoin isnt a sitting duck. The proof of work (PoW) mechanism acts as a sentinel, demanding tangible computational proof from nodes wanting to participate. Its an entry barrier that makes it hard for malicious nodes to scale consistently.

Furthermore, Bitcoins reputation systems serve as its internal police, monitoring and flagging nodes exhibiting shady behavior. Also, nodes are equipped with validation techniques to cross-check the information they receive, ensuring authenticity.

And finally, just like how countries have defense satellites, Bitcoin has its network monitoring, always scouring for anomalies and potential threats.

In conclusion, while Bitcoin does face threats like the Sybil attack, its inherent security mechanisms work tirelessly to fend off such vulnerabilities.

Bitcoins other vulnerability is the 51% attack. A 51% attack is akin to a hostile takeover in the world of blockchains.

To break it down, every transaction made on Bitcoin is verified by computational work, a process we term the hash rate. Now, imagine if an entity gains control over more than half of this computational power. Suddenly, they have the majority say in what gets verified and what doesnt. This is the crux of the 51% attack.

With such dominance, an attacker isnt just verifying transactions; theyre effectively holding the reins of the network. They could, for instance, indulge in double-spending. Its the digital equivalent of using the same dollar bill in two different shops. By reversing transactions theyve already made, they can deceitfully spend the same Bitcoin multiple times.

Beyond that, theres the peril of blockchain reorganization. The attacker, using their computational might, can forge an alternative transaction history or even a shadow ledger. Upon releasing it to the network, the system, designed to trust the longer chain, may discard the genuine ledger, leading to financial chaos.

Furthermore, the attacker can play gatekeeper, cherry-picking which transactions get the green light. They could halt specific transactions, causing distress for businesses or individuals counting on these transfers.

With majority control, they can also hog the mining rewards, centralizing the coin distribution and betraying Bitcoins decentralized vision.

But Bitcoin isnt powerless against this threat. The very enormity of its network and hash rate makes executing such an attack a monumental challenge. By inviting more participants and thus more computational power, the fortress becomes even harder to breach.

Additionally, vigilant monitoring can flag any unusual network activity, hinting at an impending 51% attack. And from an economic standpoint, if the costs and penalties of launching such an attack outweigh the benefits, it acts as a potent deterrent.

In summary, while the 51% attack remains a theoretical concern, Bitcoins inherent design, combined with evolving defensive strategies, ensures its stature as a resilient and dynamic financial system.

Elliptic Curve Cryptography, commonly referred to as ECC, is a cryptographic cornerstone upon which Bitcoins security protocols stand. Think of it as a sophisticated lock protecting Bitcoins vault. While robust, like all locks, its not without potential weaknesses.

ECCs power lies in the intricate mathematics of elliptic curves, making it very difficult, but not impossible, to crack. Central to its strength is the Elliptic Curve Discrete Logarithm Problem (ECDLP), a puzzle thats notoriously hard to solve.

Then theres the matter of curve choice. Elliptic curves are diverse, and not all of them are strongholds. Some are inherently frail, and utilizing such weak curves in cryptography is similar to using a flimsy lock on a treasure chest.

Beyond theoretical vulnerabilities, practical concerns also lurk. A system is only as strong as its implementation. Think of it like building a fortress but leaving a backdoor unwittingly open. Factors like inadequate randomness in generating keys, software glitches, or errors in key management can offer hackers unexpected entry points.

Another method adversaries use is side-channel attacks. Rather than trying to crack the lock directly, they observe and analyze external information, like how long a system takes to perform an action or its power consumption. Using these insights, they might infer sensitive data, much like a burglar listening to the clicks of a combination lock. So, what does all this mean for Bitcoin? A lot. Bitcoins foundations intertwine with ECC. For example, Bitcoin employs ECC to craft the public and private key pairs crucial for transactions.

In a scenario where ECC is compromised, hackers could reverse-engineer private keys from their public counterparts, unlocking Bitcoin wallets at will.

Moreover, every Bitcoin transaction carries a unique signature, a seal of authenticity, crafted through the Elliptic Curve Digital Signature Algorithm (ECDSA). A hole in ECCs or ECDSAs armor could allow malicious actors to fake these signatures, paving the way for fraudulent transactions. The good news is that awareness of these vulnerabilities has spurred proactive defenses. By carefully selecting robust curves and ensuring impeccable implementation, many ECC-related risks can be curtailed.

Moreover, evolving cryptographic practices, such as the adoption of multi-signature schemes and threshold signatures, add layers of security. These measures ensure that compromising Bitcoin transactions or wallets isnt a straightforward task.

Bitcoins cryptographic backbone is formidable, but the dawn of quantum computing could pose unprecedented challenges to its integrity. What is so daunting about quantum computers?

These devices harness the peculiarities of quantum mechanics, enabling them to compute at astounding speeds, especially for specific mathematical problems. Traditional computers would pale in comparison.

At the heart of Bitcoins security is the ECDSA, as discussed above. Simply put, it ensures that only the rightful owner of a Bitcoin wallet can spend its funds.

However, a quantum computer, armed with Shors algorithm, could unravel the private key from its public counterpart. This capability would jeopardize Bitcoin, potentially allowing hackers to siphon off funds from exposed wallets.

But thats not all. Imagine a mining landscape where quantum machines reign supreme, solving Bitcoins intricate proof-of-work puzzles at lightning speed.This dominance could lead to a quantum miner monopolizing the network. Such centralization defies Bitcoins decentralized essence and leaves it vulnerable to manipulative 51% attacks.

Furthermore, these ultra-fast machines could exploit Bitcoins transactional loopholes. They could alter transaction details in the brief window between issuance and confirmation, thereby undermining network trust.Plus, if they churn out blocks faster than theyre disseminated across the network, it could result in frequent blockchain forks, sowing discord and instability.

Yet, hope is far from lost. Anticipating these quantum challenges, experts are exploring robust countermeasures. Transitioning to post-quantum cryptographic techniques, like lattice-based algorithms, or constructing quantum-resistant blockchain protocols from scratch, as with the Quantum Resistant Ledger, are promising avenues.

Theres also merit in blending traditional and quantum-resistant strategies, laying the groundwork for a seamless switch to a quantum-immune system.Additionally, frequent protocol revamps, discouraging repeated address use, and staying abreast of quantum advancements can fortify Bitcoins defenses.

As we march forward into an age dominated by quantum computing, Bitcoin and other cryptocurrencies find themselves at the crossroads of innovation and vulnerability.

The threats highlighted aboveSybil attacks, 51% takeover, and elliptic curve cryptography could shift from hypothetical concerns to tangible risks in the post-quantum era.

While Bitcoins existing mechanisms have held steadfast against many challenges, quantum computings advent could magnify these threats exponentially.

The silver lining? Crises often catalyze innovation. This impending quantum era could galvanize the cryptocurrency community not just to defend but to evolve, making blockchain technologies more robust, secure, and adaptable than ever before.

As the quantum wave looms, cryptos resilience will be tested, but with swift adaptation, its foundational ethos of decentralized, secure transactions can endure and thrive.

No, the core Bitcoin network itself has not been successfully hacked. That said, there have been instances where external platforms, wallets, and exchanges that handle Bitcoin have fallen victim to hacking attacks. In such cases, hackers targeted these platforms and managed to steal Bitcoins.

Bitcoin counters Sybil attacks mainly through its proof of work (PoW) consensus mechanism. In a Sybil attack, a malicious actor seeks to flood the network with fake identities to gain undue influence. Thanks to Bitcoins PoW, participants have to spend significant computational power to validate transactions and produce new blocks. As a result, attempting a Sybil attack becomes financially unfeasible, ensuring the network remains resilient against such threats.

Quantum computers present a potential challenge to Bitcoins cryptographic security due to their advanced computational prowess. Theoretically, a sufficiently powerful quantum computer could decrypt Bitcoins protective algorithms quickly. Estimatessuggestthat a quantum machine with roughly 1.9 billion qubits could decipher Bitcoins encryption within a mere 10 minutes. But, as of the current technological landscape, we dont have quantum computers of that magnitude.

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Can Bitcoin be hacked? Exploring quantum computing and other ... - crypto.news

UCalgary to provide hands-on quantum computing opportunities … – University of Calgary

The University of Calgary and Xanadu, a leading quantum computing company, announce a new partnership to provide educational materials and support for UCalgarys thriving quantum ecosystem. Through this partnership, UCalgary and Xanadu aim to help students become confident and quantum-ready professionals prepared to contribute to Canadas growing quantum workforce.

UCalgary stands out for its entrepreneurial approach to quantum research and development, fostering student empowerment through leadership and participation in initiatives like the Institute for Quantum Science and Technology (IQST), Quantum City, and the Quantum Horizons Alberta initiative.

Moreover, the Faculty of Science is set to launch the Professional Master of Quantum Computing program in January 2024. This program is designed to provide students with the skills to understand and support quantum computing systems in practical settings, as well as gain practical experience through use cases and experiential learning.

To ensure students enrolled in the Professional Master of Quantum Computing program have access to cutting-edge quantum hardware and software, UCalgary has selected Xanadu, a Toronto-based company, as its inaugural official partner for support. Together, UCalgary and Xanadu will advance quantum computing education by integrating hands-on learning resources developed by Xanadu into existing courses at UCalgary.

This collaboration aims to generate a pipeline of highly skilled professionals in quantum computing. An illustration of this collaborative partnership in action can be seen in Xanadus participation in the upcoming qConnect 2023, which is co-hosted by Quantum City in November and focuses on connecting quantum creators and users.

Xanadu (follow on X @XanaduAI) is on a mission to build quantum computers that are useful and available to people everywhere. Since 2016, they have been building cutting-edge photonic quantum computers and making remarkable progress in the field, such as being one of three teams worldwide to achieve quantum computational advantage.

In addition to their hardware success, Xanadu leads the development of multiple open-source software libraries that have been the core of several research projects. Most notable of these libraries is PennyLane,an open-source software framework for quantum machine learning, quantum chemistry, and quantum computing with the ability to run on all hardware. Check out the PennyLane demos,a gallery of hands-on quantum computing content.

Fariba Hosseinynejad Khaledy

Using Xanadus quantum computers and software libraries like PennyLane, UCalgary and Xanadu will enable students to conduct research and develop new software applications while receiving dedicated training and custom-built educational tools to support their quantum journeys.

Dr. David Feder, PhD, associate professor at IQST has been instrumental in initiating and facilitating this partnership and supervises students like Fariba Hosseinynejad Khaledy. Khaledy is a current graduate student involved in a collaborative project between Feder and researchers from Xanadu.

She explains how the access to these resources allow her to continue her science career: I am thrilled to be a part of a project that not only aligns with my research interests but also holds the potential to transform our work into real-world applications. The prospect of contributing to this initiative with the resources that Xanadu provides is undeniably exciting. I firmly believe it's crucial for graduate students to embrace this perspective early in their studies and consider aligning their projects with industry trends and demands.

The collaboration between UCalgary and Xanadu will enhance UCalgarys new Professional Masters of Quantum Computing program and is a testament to the ecosystem building the Quantum City initiative is generating at the university and, more broadly, in Alberta.

Its fantastic to be partnering with UCalgary in this initiative to make top-tier quantum computing education more accessible to students. Its exciting to see top universities like UCalgary put in the work to support their students in the exploration of this exciting and promising field, says Jen Dodd, quantum community team lead at Xanadu.

Dr. Rob Thompson, associate vice-president (research) and director of research services at UCalgary,says, The field of quantum computing is growing rapidly, and we are committed to delivering the best quantum computing education, while also building an ecosystem for quantum science and technology in Alberta, through Quantum City.

Xanadus achievements coupled with a team that is dedicated to sharing their knowledge and building a better quantum community made them a clear choice to partner with in this exciting initiative at UCalgary.

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UCalgary to provide hands-on quantum computing opportunities ... - University of Calgary

Imec reports on quantum computing progress – Electronics Weekly

Worldwide efforts are ongoing to scale up from hundreds to millions of qubits. Common challenges include well-controlled qubit integration in large-size wafer facilities and the need for electronics to interface with the growing number of qubits.

Superconducting quantum circuits have emerged as arguably the most developed platform. The energy states of superconducting qubits are relatively easy to control, and researchers have been able to couple more than a hundred qubits together.

This enables an ever-higher level of entanglement one of the pillars of quantum computing. Also, superconducting qubits with long coherence times (up to several 100s) and sufficiently high gate fidelities two important benchmarks for quantum computation have been demonstrated in lab environments worldwide.

In 2022, imec researchers achieved a significant milestone towards realizing a 300mm CMOS process for fabricating high-quality superconducting qubits. Showing that high-performing qubit fabrication is compatible with industrial processes addresses the first fundamental barrier to upscaling, i.e., improved variability and yield. Among the remaining challenges is the need to develop scalable instrumentation to interfacewith the growing number of noise-sensitive superconducting qubits.

In the longer term, much is expected from Si-spin-based qubits. Si spin qubits are more challenging to control than superconducting qubits, but they are significantly smaller (nm size vs. mm size) giving an advantage for upscaling.

Also, the technology is highly compatible with CMOS manufacturing technologies, offering wafer-scale uniformity with advanced back-end-of-line interconnection of the Si quantum dot structures.

However, Si-based quantum dot structures fabricated with industrial manufacturing techniques typically exhibit a higher charge noise. Their small physical size also makes the qubit-to-qubit and qubit-to-classical control interconnection more challenging.

The much-needed increase in qubits requires versatile and scalable solutions to control them and read out meaningful results. In early quantum processors today, external electronics circuits are used with at least one control line per qubit running from the room-temperature stage to the lowest temperature stage of the dilution refrigerator that holds the qubits.

This base temperature is as low as ten milliKelvin (mK) for superconducting quantum computing systems. Such an approach can be used for up to a few thousand qubits but cannot be sustained for large-scale quantum computers that require dynamic circuit operations such as quantum error correction.

Not only do the control and readout lines contribute to a massive I/O bottleneck at the level of the dilution refrigerator, but each wire also brings in heat to the cryogenic system with no budget left to cool them.

An attractive solution is to use CMOS-based cryo-electronics that hold RF (de-) multiplexing elements operating at the base temperature of the dilution refrigerator. Such a solution alleviates the I/O bottleneck as the number of wires that go from room to mK temperatures can be significantly reduced.

For the readout, for example, the multiplexers would allow multiple signals from a group of quantum devices to be switched to a common output line at the dilution refrigerator base temperature before leaving the fridge.

This approach has already been demonstrated for Si spin qubit quantum systems. However, thus far, the cryogenics electronics have not been interfaced with superconducting qubits due to their significantly lower tolerance to high-frequency electromagnetic noise. Be it in the form of dissipated heat or electromagnetic radiation, noise can easily disrupt fragile quantum superpositions and lead to errors.

Thats why the power consumption of the multiplexing circuits should be very low, well below the cooling budget of the dilution refrigerator. In addition, the multiplexers must have good RF performance, in terms of, for example, wideband operation and nanosecond scale switching.

Imec has demonstrated an ultralow power cryo-CMOS multiplexer for the first time that can operate at a record low temperature of 10mK. Being sufficiently low in noise and power dissipation, the multiplexer was successfully interfaced with high-coherence superconducting qubits to perform qubit control with single qubit gate fidelities above 99.9%.

This number quantifies the difference in operation between an ideal gate and the corresponding physical gate in quantum hardware. It is above the threshold for starting experiments like quantum error correction a prerequisite for realizing practical quantum computers that can provide fault-tolerant results. The results have been published in Nature Electronics [1].

The multiplexer chip is custom designed at imec and fabricated in a commercial foundry using a 28nm bulk CMOS fabrication technology. Record-low static power consumption of 0.6W (at a bias voltage (Vdd) of 0.7V) was achieved by eliminating or modifying the most power-hungry parts of a conventional multiplexer circuit as much as possible.

The easiest way to run the multiplexer is in static operation mode, which is very useful for performing single qubit characterizations. However, operations involving more than one qubit such as quantum error correction or large-scale qubit control will require a different approach allowing concurrent control of multiple qubits within a pulse sequence.

Imec researchers developed an innovative solution involving time division multiplexing of the control signals. This could provide an interesting basis for building future large-scale quantum computing system architectures.

Preliminary experiments show that the multiplexer can perform nanosecond-scale fast dynamic switching operations and is hence capable of doing active time division multiplexing while signal crosstalk is sufficiently suppressed. Currently, the team is working towards implementing a two-qubit gate based on the concept of time division multiplexing.

The experiments described in this work have been set up to contribute to developing large-scale quantum computers by reducing wiring resources. But they also bring innovations to the field of metrology.

Throughout the experiments, the ultralow noise performance of the multiplexing circuit at mK temperature was characterized for the first time using imecs superconducting qubits. In other words, the superconducting qubit can be used as a highly sensitive noise sensor, able to measure the performance of electronics that operate at ultralow temperatures and noise regimes that have never been explored before.

Figure 1 Routing microwave signals using cryo-multiplexers. a, Standard RF signal routing for measuring superconducting qubits in a dilution refrigerator. b, Scheme for multiplexing the control and readout signals at the base-temperature stage of a superconducting quantum computer. The required RF signals can be generated from either room-temperature electronics outside the dilution refrigerator or cryo-electronics operating inside. c, Schematic representation of the cryo-CMOS multiplexer. d, Optical image of the PCB onto which the cryo-CMOS multiplexer is wire bonded. e, Optical micrograph of the cryo-CMOS multiplexer chip (as published in Nature Electronics).

Si spin qubits are defined by semiconductor quantum dot structures that trap a single spin of an electron or hole. For optimal spin qubit control, the qubit environment must display low charge noise, the gate electrodes must be well-defined with small spacings for electrical tunability, and the spin control structure must be optimized for fast driving with lower dephasing.

High-fidelity Si spin qubits have been repeatedly demonstrated in lab environments in the few-qubit regime. Techniques for processing the qubit nanostructures, such as metal lift-off, are carefully chosen to achieve low noise around the qubit environment.

But these well-controlled fabrication techniques have a serious downside: they challenge a further upscaling towards larger numbers of qubits, as they cannot offer the required large-scale uniformity the very reason these methods were abandoned decades ago in the semiconductor industry at large.

Industrial manufacturing techniques like subtractive etch and lithography-based patterning, on the other hand, can offer wafer-scale uniformity, paving the way to technology upscaling. But they have been observed to degrade the qubit environment easily.

Additionally, qubit devices, like the closely spaced gate electrode and the spin control structures, arent regular transistor structures either and therefore deviate from the typical transistor roadmaps, requiring (costly) new development.

To make the device optimization more complex, the qubit performance depends largely on all these structures and on comprehensive optimizations of the full gate stack, metal electrode design, and spin control modules that are necessary for qubit performance.

Nevertheless, the overall device structure should still be compatible with the fabrication methods used for advanced, scaled transistors in commercial foundries to ensure a fair chance at upscaling.

At imec, researchers are tackling this conundrum through careful optimization and engineering of the fab qubit in a modular approach: different qubit elements are separately addressed and optimized as part of a state-of-the-art 300mm integration flow, ensuring forward compatibility with scaling requirements while satisfying the need for dedicated, non-standard device optimization as required by the challenging quantum environment.

Preliminary results on optimised structures look promising, highlighting 300mm fab integration as a compelling material platform for enabling high-quality Si-based spin qubits and upscaling studies.

The developments take advantage of the unrivalled uniformity offered by CMOS manufacturing techniques.

Figure 2 Si spin qubits manufactured with state-of-the-art 300mm integration flows.

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Imec reports on quantum computing progress - Electronics Weekly

CEE Is Getting Ready for the Future with Quantum Technology: 25+ … – The Recursive

Are you ready for the future? A future where calculation time drops from days to seconds, and information is processed in an entirely different way. A future where quantum computing, once a theoretical model for computing based on quantum phenomena, becomes a widespread technological reality and a commercial opportunity.

Unlike classical computers that use bits (0s and 1s) to process information, quantum computers use quantum bits or qubits, which can exist in multiple states simultaneously due to superposition. This allows quantum computers to handle vast amounts of data and perform computations in parallel.

As of now, innovators around the world are exploring various applications for these powerful machines. Quantum technology startups are multiplying and investors are taking notice:

What transistors did for the rapid advancement of electronic devices, quantum can do on a scale we cant fully grasp. With quantum, were on the cusp of tackling colossal challenges and playing in the same computational league as Mother Nature herself. Quantum computing holds the potential to revolutionize drug development, craft materials that dont yet have names, and conduct endless simulations without the constraints of reality. Its poised to rewrite the rules of learning by doing, from engineering new proteins to offering a Black Mirror-esque glimpse into the world of online dating, says Katerina Syslova, from Tensor Ventures, a Czech deep tech-focused fund investing in AI, IoT, blockchain, biotech, and quantum computing across the CEE and UK

Central and Eastern Europe, a bedrock to exceptional tech talent, is no stranger to quantum technology research and development, through its academic institutions, participation in European projects, and a sprouting startup scene.

Zooming back to Europe, VC investment in quantum tech startups concentrates on four main areas, according to The European Deep Tech Report 2023: quantum computers and processors ($362M), quantum cryptography ($156M), quantum computing software ($98M), and quantum chemistry and AI for chemical/biotech.

While the realization of quantum computing hasnt unfolded as swiftly as many anticipated, its adoption is undeniably making steady progress. Beyond companies pushing the boundaries of bare-metal hardware innovation, theres a notable surge in the quantum software realm. This includes not only software designed for quantum computers but also quantum-inspired algorithms that deliver remarkable results when run on conventional infrastructure, we are told by Enis Hulli, General Partner at 500 Emerging Europe, a venture capital fund investing in the region.

To experiment with quantum technology and achieve a minimum viable product requires substantial budgets. With budgets primarily allocated to testing purposes, companies are also limited in their ability to grow and scale.

Nevertheless, as the technology matures and demonstrates its worth, unlocking additional capital and larger budgets will become more attainable, similar to the growth trajectory observed in the field of AI, Enis Hulli believes.

Central and Eastern Europe is experiencing a notable upswing in interest and activity in the field of quantum technologies, says Hulli, further pointing to the participation of academic institutions and research centers in countries like Poland and Hungary in quantum research. Such projects in turn contribute to the growth of quantum knowledge and expertise within the region.

Hungary, for instance, has established a National Quantum Technology Programme (HunQuTech) to connect the country to the developing European quantum internet. Hungary is also the sole country from the region participating in the OpenSuperQplus European project, through the Faculty of Natural Sciences and the Wigner Research Centre for Physics at the Budapest University of Technology and Economics. The project aims to develop a 1000-qubit quantum computer.

It shouldnt be a surprise given CEEs access to a robust talent pool in mathematics and computer science, whose skills and expertise can be harnessed to drive innovation and advancement in quantum technologies.

A quantum technology startup scene is also emerging. As of October 2023, we tracked 18 Central and Eastern European quantum technology startups. Poland, in particular, sits among the countries with the highest number of startups working on quantum technologies (6 counted in the mapping below), behind only Switzerland, Spain, Netherlands, France, Germany, and the UK.

CEE innovators excel in one particular arena identifying technology gaps and challenges and then crafting tailor-made solutions. This may as well be the opportunity that CEE startups are uniquely poised to seize, observes Katerina Syslova from Tensor Ventures, who has invested in three quantum startups thus far, including Poland-based BeIT.

For investors, tapping into the opportunities presented by one of the most complex technologies out there is nothing short of a challenge.

We were smart enough to know we werent smart enough. So we partnered up with Michal Krelina, one of the best quantum experts there is. He is our guide and Vergiliuls in the landscape of technical due diligence. In our portfolio, were constructing interconnected stacks, and quantum is no exception, adds Katerina Syslova from Tensor Ventures.

All that said, building a comprehensive quantum ecosystem demands time, collaboration, and substantial funding.

However, its important to acknowledge that while CEE is making strides in quantum research and talent development, challenges remain in terms of securing the necessary infrastructure and funding, as well as competing on a global scale with quantum powerhouses like the United States, Canada, and China. To position itself effectively in the global quantum ecosystem, CEE must continue to foster academic and research collaborations, attract investment, and strengthen its overall quantum infrastructure, says Hulli.

Location: Ljubljana, Slovenia

Founders: Marjan Beltram, Peter Jegli

About: The company is designing cold neutral atoms QCs with a completely new and patented approach to preparing qubit arrays.

Stage & Funding: N/A

Location: Krakow, Poland

Founders: Wojtek Burkot, Paulina Mazurek, Witek Jarnicki

About: BEIT is a quantum computing software R&D company developing novel quantum algorithms and their implementations with the aim of pushing the boundary of what is possible on quantum hardware.

Stage & Funding: Seed, $4.1M

Location: Riga, Latvia

Founders: Girts Kronbergs, Maris Kronbergs, Girts Valdis Kristovskis

About: Entangle offers quantum-secure encryption for connecting mission-critical infrastructure and industrial IoT over public mobile networks.

Stage & Funding: Bootstrapped

Location: Zvodno, Slovenia

Founders: Andraz Bole, Nejc Lesek

About: Lightmass Dynamics provides Quantum Neural Models based-solution for simulation and visualization. The company offers an application framework that can be integrated into any existing physics or rendering software for real-time physics simulation and visualization.

Stage & Funding: Seed, $120,000

Location: Warsaw, Poland

Founders: Janusz Lewiski, Sebastian Gawlowski

About: Nanoxo is a chemical company designing and manufacturing various functional materials, including quantum dots.

Stage & Funding: Seed, $253,000

Location: Tallinn, Estonia

Founders: Guillermo Vidal

About: OpenQbit stands for the development of hardware and software easy to use with quantum technology. They provide anyone with the tools necessary to create devices that use quantum technology, machine learning, and neural networks.

Stage & Funding: N/A

Location: Patras, Archaia, Greece

Founders: Vasilis Armaos, Paraskevas Deligiannis, and Dimitris Badounas

About: The startups intention is to simulate drugs, chemicals, materials, and other quantum systems by utilizing quantum computing hardware that already exists. The team at PiDust is made up of quantum computing experts, physicists, software developers, and chemists.

Stage & Funding: N/A

Location: Bankya, Bulgaria

Founders: Boris Grozdanoff, Zdravko Popov, Svetoslav Sotirov

About: QAISEC foresees a future where AI technology serves humanity and does not endanger it. They believe that where human-made crypto algorithms fail physics never does. They are using quantum encryption solutions for finance, industry, state, entertainment, healthcare, critical infrastructure, and communications.

Stage & Funding: N/A

Location: Wroclaw, Poland

Founders: Artur Podhorodecki

About: They develop blue-light emitting, heavy metal-free quantum dots for advanced technology markets, and quantum dot-based inks, for printable optoelectronics.

Stage & Funding: early VC, $5.8M

Location: Prague, Czech Republic

Founders: Michal Krelina

About: Quantum.Phi provides consulting, analytics, and research services in quantum technologies (including quantum computing and simulation, quantum network and communication, quantum imaging, and quantum measurement). It specializes in applications for the space, security, and defense industry.

Stage & Funding: N/A

Location: Warsaw, Poland

Founders: Piotr Migda, Ph.D., Klem Jankiewicz

About: The company develops a no-code integrated development environment (IDE) for quantum computers to design, debug, unit-test, and deploy quantum algorithms for business.

Stage & Funding: Seed, $260,000

Location: Athens, Greece

Founders: Dr. Aggelos Tiskas, Dr. Takis Psarogiannakopoulos

About: The companys High-Performance Quantum Simulator (HPQS) is designed to specialize in Variational Quantum Algorithms (VQAs) and Machine Learning (ML) tasks. This will enable the automation of high-level, abstract quantum circuit generation and optimize it for efficient resource usage.

Stage & Funding: N/A

Location: Miercurea-Ciuc, Romania

Founders: Laureniu Ni

About: Quarks Interactive is the startup that developed Quantum Odyssey, the first game where you can learn the concepts of quantum computing. The startup also works with big IT companies, such as IBM, to create software that can power these unique computers.

Stage & Funding: Seed, 230,000

Location: Tallinn, Estonia

Founders: Petar Korponai

About: Quantastica builds software tools and solutions for hybrid quantum-classical computing.

Stage & Funding: $220,000

Location: d, Poland

Founders: Tomasz Szczeniak, Michal Andrzejczak,

About: They are building a cryptography accelerator through which any electronic device can be protected against quantum computer attacks. They use post-quantum standards recommended by the National Institute of Standards and Technology (NIST) for secure end-to-end encryption. One of the main features of the solution is crypto agility, enabling a wide area of application.

Stage & Funding: Seed, 450,000

Location: Zagreb, Croatia

Founders: Hrvoje Kukina

About: A Quantum AI startup working on quantum-enhanced machine learning (mostly deep reinforcement learning).

Stage & Funding: N/A

Location: Kepno, Wielkopolskie, Poland

Founders: Arkadii Romanenko, Igor Lykvovyi, Leszek Sawicki, Ruslana Dovzhyk

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CEE Is Getting Ready for the Future with Quantum Technology: 25+ ... - The Recursive

Quantum Computing Use Cases Are Getting Real: What You Need To Know – MobileAppDaily

More swiftly than ever, quantum computing is evolving, which is a powerful reminder that the technology is rapidly moving toward being commercially useful. For instance, a Japanese research institution recently disclosed progress in entangling qubits that could improve quantum error correction and possibly open the door for massively parallel quantum computers.

Quantum computing startups are booming as technology advances and investment surges. Major technological firms are also advancing their quantum capabilities; firms like Alibaba, Amazon, IBM, Google, and Microsoft have already started offering for-profit quantum computing services.

In the current tech world, quantum computing is fit for certain algorithms like optimization, machine learning, and simulation. With the advent of such algorithms in quantum engineering, several use cases can be applied in diverse fields. Starting from finance, fraud detection, healthcare, supply chain management, chemicals, petroleum, and researching new materials are the areas that can have a primary impact.

This article will go into the details of the use cases of quantum computing. But first, let us look at the quantum computing meaning and explore the market overview of quantum computing technology. Lets start learning!

In the cutting-edge science of quantum computing, data is processed uniquely using concepts from quantum physics. Unlike classical computers, which utilize bits as the basic unit of data (0 or 1), quantum computers use quantum bits, also called qubits. Superposition, a characteristic of qubits that allows them to exist in numerous states concurrently, will enable them to do complex calculations at exponentially quicker rates for specialized jobs.

Innumerable fields, including materials science, artificial intelligence, and encryption, benefit greatly from quantum computing. Researchers and businesses worldwide are attempting to harness its potential and surpass huge technological obstacles, but it is still in its infancy.

One of the latest technology trends that has become widely adopted is quantum computing. A standard processor cannot build effective models to solve complicated issues with regular processing capacity because of the volume of data that businesses collectfor example, finding the greatest prime number to use in encryption.

Lets move ahead to witness the growing quantum computing market before moving to understand the use cases of quantum computing.

Let us explore the transformative benefits and potential uses of quantum computing. Discover the remarkable benefits that quantum engineering offers across diverse fields, from revolutionizing cryptography and accelerating drug discovery to supercharging artificial intelligence and addressing complex optimization problems.

Quantum computing can dramatically improve the process and provide numerous benefits in chemical simulation.

Scientists could use this increased computational power to investigate larger and more complex molecular structures, allowing them to achieve more accurate and detailed simulations of chemical systems due to the exponential complexity of the quantum world, which classical computers have difficulty simulating accurately.

A variety of approaches with differing degrees of accuracy and computational expense are used in quantum chemical simulations. Here are three examples:

Route planning and logistics are also changing due to quantum technology. By providing global routing optimization and regular re-optimizations, the use of quantum computers might drastically lower the cost of freight transportation and increase customer satisfaction.

The Quantum Approximate Optimization Algorithm (QAOA) is one of the most well-known algorithms in quantum optimization. QAOA combines traditional optimization methods with quantum computing to approximate solutions to optimization issues.

Another method that uses quantum fluctuations to locate ideal solutions at low energy levels is known as quantum annealing (QA). Applications of QA that are particularly helpful include the Quadratic Unconstrained Binary Optimization (QUBO) issue and the well-known NP-hard Ising model.

The potential role of quantum computing and AI in developing next-generation artificial intelligence (AI) is also significant. At the same time, it is still debatable whether QML will have any advantages, especially in light of the release of ChatGPT late last year.

For the status quo machine learning (ML) evolving in 2021, which is frequently constrained by a limited scope, an inability to adapt to new scenarios, and a lack of generalization skills, the capacity to handle complexity and keep alternatives open is a clear advantage. Artificial general intelligence (AGI) development may be made possible by a quantum computer, while some consider this the greatest risk.

Now that we have understood the benefits, lets move to learn the quantum computing use cases.

While we anticipate quantum advantage to be a reality by 2025, we assist businesses in identifying immediate and longer-term opportunities. Additionally, it goes beyond the uses of quantum computing for business. We also find applications that have significant potential for societal impact.

Several of the more intriguing use cases of quantum computing applications include:

Quantum computers can bring in $2 to $5 billion in operating revenue for financial institutions over the next ten years, coupled with quantum-inspired algorithms running on classical computers. The ability to handle uncertainty in decision-making more effectively is one of the primary benefits of quantum technology for financial actors. Applications include, among others, asset pricing, risk analysis, portfolio optimization, fraud detection, and capital allocation.

The ability of quantum technologies to perform multiple calculations at once makes them particularly well suited to issues that call for simulating situations with various distinct variables or selecting the best course of action from among several possibilities. This applies to a variety of financial sector quantum computing uses.

For instance, Spanish bank BBVA and quantum company Multiverse Computing have teamed up to optimize investment portfolios. The need to account for the effects of numerous external factors on the performance of assets is a well-known issue in finance. The test demonstrated that Multiverse's quantum-inspired computing techniques accelerated the process and could maximize profitability while minimizing risk.

Options pricing is another use in finance. The Swiss startup TerraQuantum is collaborating with the financial services firm Cirdan Capital to price a difficult class of "exotic options" using quantum-inspired algorithms. Typically, this is done using mathematical operations based on market simulations. According to the business, the first data indicate a 75% boost in pricing speed compared to conventional approaches.

Financial organizations are also looking at quantum computing to improve credit risk analysis. French startup PASQAL and Multiverse are working on a quantum approach for French bank Crdit Agricole to anticipate better credit rating downgrades in borrowers. Classical methods already exist for this problem but can't process the particularities of individual situations. The bank expects factorization in quantum computing use cases and algorithms to improve the efficiency of the process.

Pharmaceutical companies can screen bigger and more complicated molecules with quantum computing, map interactions between a medicine and its target more accurately, and accelerate the development process at a lower cost. Better immunizations, treatments, and diagnostics will be available sooner and more effectively.

To create a medicine, one must first choose the appropriate drug targetthe protein, DNA, or RNA in the body responsible for a specific diseaseand then create the chemical that will safely and efficiently affect that target. Finding the perfect combination is an expensive, time-consuming procedure still largely based on trial and error due to the infinite number of potential targets and compounds.

Qubit Pharmaceuticals, a startup based in Paris, builds digital twins of medicinal compounds using hybrid quantum algorithms. These quantum-based models can simulate how molecules interact with other components and anticipate behavior accurately since they can represent many chemical features. This eliminates the need to synthesize molecules, allowing scientists to create and examine molecules digitally. According to the business, the technique may cut the time needed to screen and choose prospective medication candidates in half and reduce the required investment by 10.

Weather forecasts are notoriously inaccurate because they rely on simulations using data from current weather conditions. A model far too vast for a conventional computer would be needed to accurately represent hundreds of parameters and analyze how they interact to predict the weather more precisely.

The capacity of quantum computers to consider a wide range of parameters may change the game. For instance, the German chemical company BASF is implementing PASQAL's technology into its weather-modelling applications to gain a quantum edge over traditional methods.

Enhancing battery design entails creating a new generation of more reliable, secure, and affordable gadgets. The main challenge is identifying the precise factors resulting in an improved material, like medication design.

The construction of more effective batteries may be made possible by quantum computers' ability to precisely model chemical processes at the atomic level, according to Finnish quantum firm IQM, which raised 128 million last year for its climate-focused technology. Phasecraft claims that quantum computers could more quickly model battery materials than current technology.

Delivering electricity to the network is a difficult and time-consuming task that involves precise synchronization and coordination of a massive network of sensors, communication infrastructure, data management systems, and control mechanisms. To complete this operation more quickly, quantum computers are a good choice.

Iberdrola, a Spanish utility firm, and Multiverse have teamed up to examine how quantum algorithms might improve the operation of power networks. The project's diverse use cases call for assessing various possible combinations. For instance, the company expects using quantum algorithms to make choosing the best places for batteries within an electrical network easier.

Numerous variables can affect how long it takes to go from point A to point B. To find the best way, quantum algorithms are being created to calculate how every route and every factor might affect one another.

For instance, the French startup Quandela is collaborating with the global corporation Thales to develop a quantum algorithm that might improve drone traffic. Thales predicts that conventional computers won't be able to consider all the factors that affect trajectory shortly as the number of drones operating in populated areas rises. These range from the technical flight limitations of drones to avoiding drone-drone collisions, taking into account the locations where drones are prohibited, and preserving battery life. Quantum algorithms might model all of these elements to identify the best route for each drone.

Predicting and identifying defective parts in production lines has great economic value for manufacturing. Still, it is difficult due to the massive amount of data that must be accounted for to generate such predictions. Multiverse and Bosch are working together to create digital twins that simulate the industrial line, predict where supply chains may break, and optimize when and where maintenance is required.

Similarly, PASQAL and BMW have collaborated to deploy quantum algorithms that can replicate the production of metallic pieces to detect faults and ensure that parts meet standards.

Molecular modeling enables breakthroughs such as more efficient lithium batteries. Quantum computing will allow us to model atomic interactions at much finer and greater scales. New materials can be employed in several quantum applications, including consumer goods, automobiles, and batteries. Without approximations, quantum computing will enable molecular orbit calculations.

A greater knowledge of the interactions between atoms and molecules will allow for the development of novel medications. Detailed DNA sequence analysis will aid in detecting cancer at an early stage by establishing models that will determine how diseases evolve.

Quantum technology will have the benefit of allowing for a scale-dependent, in-depth analysis of molecular behavior. Chemical simulations will enable the development of novel drugs or improve protein structure predictions, scenario simulations can improve the ability to predict the likelihood that a disease will spread or its risks, the solution of optimization problems will improve drug distribution chains, and finally, the application of AI will hasten diagnosis and provide more accurate genetic data analysis.

New methods for combating climate change can be made possible by quantum computing. Modeling molecular interactions involving 50 to 150 atoms, which classical computers cannot handle, is one of the early uses. Better and more effective chemical catalysts may be created, leading to lower emissions and more effective carbon capture and storage techniques. In the future, quantum technology might aid in creating stronger and lighter building materials for automobiles and aircraft.

The field of artificial intelligence (AI), which fundamentally alters how businesses run, presents both fresh chances for advancement and difficulties. According to the artificial intelligence guide, the power of AI to interpret and analyze data has significantly improved. Due to the complexity of workflows and the increasing amount of data that needs to be processed, AI is also computationally demanding.

We may be able to solve complicated issues that were previously intractable thanks to machine learning and quantum computing, which can also speed up processes like model training and pattern recognition. The three types of computing that will predominate in the future are classical, biologically inspired, and quantum.

The development of quantum machine learning algorithms like the Quantum-enhanced Support Vector Machine (QSVM), QSVM multiclass classification, variational quantum classifier, or qGANs has received a lot of attention in recent years because of the intersection of quantum computing and machine learning.

Let us dive into the example of a use case in quantum computing.

These are some of the most popular software platforms, but many more software platforms and libraries are being developed and utilized in quantum computing.

Quantum computers, in some ways, are transforming the world right now. First, engineering breakthroughs are announced regularly. ColdQuanta, for example, uses lasers to ultracool atoms to nanoKelvins or degrees above absolute zero to use as qubits. And that's just one illustration of how the quantum computing industry's engineering discoveries will help the planet.

Second, quantum physics is moving from theory to experiment. Using ColdQuanta as an example, physicists worldwide can create and experiment with Bose-Einstein Condensates (BEC), often known as "quantum matter," through their cloud-accessible Albert system. While Albert is not a quantum computer, its younger relative Hilbert will also use ultracold atom technologies.

Furthermore, computer science is progressing rapidly. Since Ewin Tang set the bar with recommendation systems, scientists have been motivated to speed up conventional algorithms using quantum algorithms. This quantum-inspired technique provides immediate benefits because classical algorithms can be implemented today. As it was following Ewin Tang's breakthrough, the challenge now is to create even more powerful quantum algorithms.

Finally, quantum computers are significantly less harmful to the environment than supercomputers. That estimate, by the way, includes the adoption of extreme refrigeration and all of the associated power consumption. However, certain qubit technologies work at ambient temperature and can eliminate the need for a dilution chiller, lowering energy use even more.

Quantum computers will not replace personal computers. Since it is more efficient, numerous programs will continue functioning on current devices. However, quantum computing applications go far beyond number factoring and unstructured search. In reality, the future of quantum computing appears to be good for almost everyone.

Despite recent significant advancements in the development of quantum computing hardware and algorithms, the technology still has few practical applications. Nevertheless, the use cases presented are sufficient evidence of the potential that quantum computing (or quantum mechanics) can offer us.

But as quantum computing technologies develop, more real-world applications will probably follow. But for now, we can only monitor the market and wait for well-researched use cases from some of the world's top businesses, research organizations, and people. Only then will we witness how quantum computing applications may improve our lives.

Aparna is a growth specialist with handsful knowledge in business development. She values marketing as key a driver for sales, keeping up with the latest in the Mobile App industry. Her getting things done attitude makes her a magnet for the trickiest of tasks. In free times, which are few and far between, you can catch up with her at a game of Fussball.

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Quantum Computing Use Cases Are Getting Real: What You Need To Know - MobileAppDaily

Research leaders at Boise state are taking the science of quantum … – Boise State University The Arbiter Online

From humble beginnings of one small room in the RUCH Engineering Building, to now expansive multi-million dollar laboratories in the Micron Center for Material Research building, the world-class materials research at Boise State University exists no where else in the world according to Dr. Ryan Pensack, qDNAs Ultrafast Laser Spectroscopy Team Lead.

In the last six years, the Nanoscale Materials and Device group has developed its facilities in leaps and bounds. Researchers Bernie Yurke, Will Huges, Jeunghoon Lee and Elton Graugnard since 2000 have advanced the research progress.

Now, the Nanoscale Materials and Device Group branched off into research areas and fields of study to include nanophotonics, gate oxide studies, multi-dielectric dand diagram programs, magnetic shape memory alloys, 3-D tech for advanced sensor systems and DNA nanotechnology.

Under the DNA nanotechnology field, a research group has been established the Quantum DNA Research Group (qDNA). The collaboration of five science and engineering teams, one management team with over 30 faculty, staff and students ranging 10 academic disciplines resulted in what the university is known for: innovation.

Dr. Ryan D. Pensack was hired on as the lead for qDNAs Ultrafast Laser Spectroscopy Team after his position from 2015-2017 as a postdoctoral research associate in the research group of Prof. Gregory Scholes at Princeton University.

From 2012-2015, he was a postdoctoral fellow in Scholes group at the University of Toronto. Alongside Pensack, Dr. Paul H. Davis led the tour exhibiting the achievements of the research team.

The collaboration Id say is unique, it sets us up to be competitive nationally and internationally actually, said Pensack during The Arbiters tour of the laboratories, led by both Pensack and Dr. Paul H. Davis.

Funding from the Department of Energy, Idaho National Laboratory, Laboratory Directed Research and Development, Office of Naval Research and other supporters provided the equipment the teams work with. In 2021, the Department of Energy granted the qDNA Team $5 million to further their efforts into phase II of attempting quantum entanglement.

For those unfamiliar with the term, quantum entanglement is a phenomenon when two particles become strongly dependent on one another and the physical states of those particles cannot be recognized as separate from the other. Dr. Pensack and Dr. Davis use the metaphor of a spinning coin to create a visual for quantum entanglement.

Dr. Paul Davis serves as the surface science lab manager, co-lead and co-director on the Ultrafast Spectroscopy Team.

When its spinning, its neither heads nor tails, and thats what the cubit is a superposition state, both heads and tails, Davis said.

Later, Pensack explained this through a demonstration with coins. When spun, the blue side and the orange side of the coin are continually moving. Davis said how the number of revolutions of a coin (particle) relates to the speed of the spinning, and the speed of the spinning relates to the strength of coupling. The length of a spinning coin or particle is referred to as its lifetime.

The excited state of these particles give off energy as a resource, which can be a tool for development in quantum mechanics; therefore, quantum computing.

In quantum information science we think about a third state which is actually a combination of the two: its the spinning coin heads or tails, blue or orange, Pensack said.

On Sept. 20, Nanoscale Materials and Device Group published the High-sensitivity electronic Stark spectrometer featuring a laser-driven light source in the Review of Scientific Instruments. The Stark spectrometer was engineered by the Ultrafast Spectroscopy Team. Spectrometers are used to measure wavelengths of light in relation to matter.

The spectrometer measures the property of pigments that enables them to interact such that we can realize entanglement, Pensack said.

Dr. Katelyn Duncan, a postdoctoral research fellow, and Dr. Johnathan Huff, a graduate research assistant, offered their insight on the instrument, mentioning that the entire setup is custom made and built according to Duncan. She alongside Pensack and Huff finalized measurements together.

Huff walked The Arbiter through the samples they utilized on the instrument, such as dye solutions, and the process of how the Stark Spectrometer works.

The work the qDNA team has done has received national recognition. Two of the teams technical manuscripts were featured in National Nanotechnology Initiative (NNI), the National Nanotechnology Initiative Supplement to the Presidents 2023 Budget submitted to Congress March 8, 2022. The team has submitted over 30 technical manuscripts and academic articles, in 2023 the dDNA published 12 articles so far.

We are all very passionate about what we do, Pensack said. While our main mission is this notion of room temperature quantum computing, there will be spin-offs of what we do. The new knowledge we create could be used to help serve society.

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Research leaders at Boise state are taking the science of quantum ... - Boise State University The Arbiter Online

Q&A With Rob Hovsapian: The Engineer Who Solves Crises Before … – NREL

About a decade ago, Rob Hovsapian bought a sailboat. He named it Vger.

For non-Trekkies, Vger was a probe sent into space by 20th century Earthlings in the first Star Trek movie. The probes task was to collect as much knowledge as possible. And it does. After amassing two centuries worth of data, the probe becomes a sentient being and changes its name from Voyager 6 to Vger.

Hovsapian, a mechanical engineer at the National Renewable Energy Laboratory (NREL), donated his sailboat to the sailing club at his alma mater, Florida State University. But he will not entirely lose Vgerat least not in spirit.

At NREL, he is building another massive, knowledge-gobbling machine, one that could help solve future crisesmaybe not Star-Trek-level Earth-ending crises, but close. How can we build a reliable clean energy grid, for example? Or make it easier to evacuate from natural disasters? Or protect banks from quantum hackers?

As a national lab, we need to be looking at the big picture, Hovsapian said, things that we can address five to 10 years down the road.

Like the Star Trek crew, Hovsapian is an explorer, but his final frontier is the future. And his spaceship (Vger light) is something called Advanced Research on Integrated Energy Systems, or ARIES for short. This sophisticated, one-of-a-kind research platform can emulate how our future technologies, including power plants, batteries, smart phones, electric vehicles, smart buildings, and more, would communicate (or fail to communicate) during an emergency.

Now, Hovsapian is adding new features to his spaceship. He is connecting NREL to other labsincluding national laboratories and academic institutionsto build a SuperLab and study how the country could respond to a massive, national-scale crisis. And he is adding quantum computers to the ARIES platform to quickly identify patterns and improve emergency response.

Its our duty to start identifying these challenges and developing solutions, Hovsapian said. We dont want to wait until a problem happens before figuring out how to solve it.

In NREL's latest Manufacturing Masterminds Q&A,Hovsapian shares why he stopped building fighter jets and army radios; what his kids think he builds now; and what kind of rare, national events the SuperLab might help solve.

How did you end up becoming an engineer?

I always wanted to be an engineer. From elementary school all the way to college, there was no doubt.

Wow. How were you so sure?

I just knew. I was taking things apart. I always took my toys apart because I wanted to know how they worked, right? I took the television and VCRs apart.

Im sure your parents were thrilled with that. Then, why pick mechanical engineering as opposed to a different engineering niche?

I started my career as an aerospace engineer and then eventually, since I didn't know exactly what I wanted to do, I got into mechanical engineering. It was more diverse, and controls was always my passion.

What does that mean, controls?

In robotics, controls refers to how you drive, say, your robotic arm to a specific location and, in real time, control its position and speed to manufacture a product.

Oh, cool! So, I know you went to the University of Alabama for your undergraduate studies. What did you do after that?

I read a book by Professor Krishna Karamcheti, who had written a lot of fluid mechanics books that I studied during my undergraduate years. When I saw he was a faculty member at Florida State University, I reached out, and he invited me to come and visit. I not only ended up admitted into the graduate school; he also gave me a job. But he made me promise to finish my doctorate and support other students. So, ever since then, I always have two or three doctoral students that I advise. Thats me keeping that promise.

Sounds like a pretty good deal. What job did he get you?

My first job was with General Dynamics, an aerospace and defense company. That was 1989. I worked on building a next-generation army radio, using robotics and manufacturing lines. After that, I went to work for the U.S. Air Forces F-22 stealth fighter jet program. I automated the production of F-22 fighter jets, using an automotive manufacturing line, which was more cost-effective. Then, while I completed my doctorate, I worked as a program manager and board member for the United States Department of the Navys Office of Naval Research where I managed a research program focused on developing all-electric ships.

Wow!

Yeah. My kids asked me, What are you building now? and I tell them I build PowerPoint presentations. From F-22 to army radios to all electrical ships to PowerPoints. Thats not true. I mean, I do a lot of PowerPoint presentations, but I was also part of the strategic planning that helped build the ARIES research platform.

Before we get to ARIES, how did you go from the U.S. Navy to NREL?

I was also a faculty member at Florida State University at that time. When I left my defense job and took my first job in academia, my salary dropped by 30%. Most people told me that Im crazy doing that. But I dont want to leave my career having built 400 F-22s or 10,000 army radios. I want to leave a legacy of something and make a difference in the community.

I spent two years supporting the U.S. Department of Energys Water Power Technologies Office, and then I went to Idaho National Laboratory for five years. When I heard NREL was building ARIES, that was my passion, so I dropped everything, and here I am.

Perfect transition. Now, lets talk about ARIES. What is it?

ARIES integrates software and hardware to help us understand how clean energy technologieslike renewable energy devices, batteries, electric vehicles, hydrogen, and buildingswill work together in a future carbon-free grid. Nobody has done this before. Nobody has paired hundreds of devices. And here, we are talking about thousands of devices at scale.

Thousands! And what problems are you trying to solve with ARIES?

Were trying to understand next-generation problems that we cant solve through traditional classical computing or modeling.

For example, do we have enough power for electrical vehicles in case of an emergency? Today, we know where the gas stations are. Im in Tallahassee, Florida, right now. If a hurricane comes in and theres an evacuation mandate, people know how they are going to evacuate. If all of us are using electric vehicles, how is that going to work?

So, when rare events happen, how do we mitigate them? That requires a bit more integration between technologies, including cell phones, electrical vehicles, satellites, emergency response systems, and building management systems.

I also heard, to address even bigger, national-scale challenges, youre building a SuperLab that might need to emulate communication between thousands of different devices, right?

The challenges that were facing as a nation are going to be much, much bigger than one or two labs can tackle. The SuperLab ties academic and national laboratories together, integrating not only people but also resources to answer those big questions. We already demonstrated connecting two laboratoriesPacific Northwest National Laboratory and Idaho National Laboratory. Our goal is to connect seven laboratories and 10,000 devices to address a large national event. Thats called SuperLab 2.0.

Have you decided which national event you might address?

No. But it has to be a significant, rare event, like a Hurricane Katrina, the Maui wildfires, or the 2021 Texas freeze.

Our objective is to create a real-world event and environment, using actual hardware and various grid assetslike automation controls, energy storage systems, batteries, and wind turbineswhich lets us explore how we can address those rare events.

Interesting. But this is the Manufacturing Masterminds series, so how does all this relate to manufacturing?

All these technologies are next-generation devices that were building today. We need to think about how to make cell phones that can talk to weather stations and broadcast communications. 5G is a good example. People outside the United States are developing better 5G technologies than we are. Thats a sign that our advanced manufacturing is not on par with what we need today.

Gotcha. Are there other ways the United States manufacturing industry could outpace competitors?

Everybodys talking about quantum computing. Now, were tying quantum computing to our real-time simulation work that were doing at ARIES (called quantum in the loop). Hopefully, this will make it easier and faster for researchers to adopt quantum computing to solve next-generation power and energy system challenges.

So, would the quantum computers allow you to run faster simulations?

It would allow us to identify patterns much, much faster.

So, lets say you look at the state of charge of electric vehicles during a hurricane. With quantum computing, you can quickly find potential bottlenecks. That way, you can issue more effective evacuation notices. You could direct people to different routes and tell some to wait for an hour or two or charge at home X number of times before they go, so you dont have people stranded on the way with a hurricane coming in.

What advice would you give to those who might want to follow in your footsteps and help solve these future crises?

Absolutely do not follow in my footsteps. Just look at the big picture and see what you can do differently. Its OK to be wrong, learn from mistakes, and do something better the next time.

Interested in building a clean energy future? Read other Q&As from NREL researchers in advanced manufacturing, and browse open positions to see what it is like to work at NREL.

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Q&A With Rob Hovsapian: The Engineer Who Solves Crises Before ... - NREL

Quantum Computing Is Coming. What Can It Do? – Harvard Business Review

Digital computing has limitations in regards to an important category of calculation called combinatorics, in which the order of data is important to the optimal solution. These complex, iterative calculations can take even the fastest computers a long time to process. Computers and software that are predicated on the assumptions of quantum mechanics have the potential to perform combinatorics and other calculations much faster, and as a result many firms are already exploring the technology, whose known and probable applications already include cybersecurity, bio-engineering, AI, finance, and complex manufacturing.

Quantum technology is approaching the mainstream. Goldman Sachs recently announced that they could introduce quantum algorithms to price financial instruments in as soon as five years. Honeywell anticipates that quantum will form a $1 trillion industry in the decades ahead. But why are firms like Goldman taking this leap especially with commercial quantum computers being possibly years away?

To understand whats going on, its useful to take a step back and examine what exactly it is that computers do.

Lets start with todays digital technology. At its core, the digital computer is an arithmetic machine. It made performing mathematical calculations cheap and its impact on society has been immense. Advances in both hardware and software have made possible the application of all sorts of computing to products and services. Todays cars, dishwashers, and boilers all have some kind of computer embedded in them and thats before we even get to smartphones and the internet. Without computers we would never have reached the moon or put satellites in orbit.

These computers use binary signals (the famous 1s and 0s of code) that are measured in bits or bytes. The more complicated the code, the more processing power required and the longer the processing takes. What this means is that for all their advances from self-driving cars to beating grandmasters at Chess and Go there remain tasks that traditional computing devices struggle with, even when the task is dispersed across millions of machines.

A particular problem they struggle with is a category of calculation called combinatorics. These calculations involve finding an arrangement of items that optimizes some goal. As the number of items grows, the number of possible arrangements grows exponentially. To find the best arrangement, todays digital computers basically have to iterate through each permutation to find an outcome and then identify which does best at achieving the goal. In many cases this can require an enormous number of calculations (think about breaking passwords, for example). The challenge of combinatorics calculations, as well see in a minute, applies in many important fields, from finance to pharmaceuticals. It is also a critical bottleneck in the evolution of AI.

And this is where quantum computers come in. Just as classical computers reduced the cost of arithmetic, quantum presents a similar cost reduction to calculating daunting combinatoric problems.

Quantum computers (and quantum software) are based on a completely different model of how the world works. In classical physics, an object exists in a well-defined state. In the world of quantum mechanics, objects only occur in a well-defined state after we observe them. Prior to our observation, two objects states and how they are related are matters of probability.From a computing perspective, this means that data is recorded and stored in a different way through non-binary qubits of information rather than binary bits, reflecting the multiplicity of states in the quantum world. This multiplicity can enable faster and lower cost calculation for combinatoric arithmetic.

If that sounds mind-bending, its because it is. Even particle physicists struggle to get their minds around quantum mechanics and the many extraordinary properties of the subatomic world it describes, and this is not the place to attempt a full explanation. But what we can say is quantum mechanics does a better job of explaining many aspects of the natural world than classical physics does, and it accommodates nearly all of the theories that classical physics has produced.

Quantum translates, in the world of commercial computing, to machines and software that can, in principle, do many of the things that classical digital computers can and in addition do one big thing classical computers cant: perform combinatorics calculations quickly. As we describe in our paper, Commercial Applications of Quantum Computing, thats going to be a big deal in some important domains. In some cases, the importance of combinatorics is already known to be central to the domain.

As more people turn their attention to the potential of quantum computing, applications beyond quantum simulation and encryption are emerging:

The opportunity for quantum computing to solve large scale combinatorics problems faster and cheaper has encouraged billions of dollars of investment in recent years. The biggest opportunity may be in finding more new applications that benefit from the solutions offered through quantum. As professor and entrepreneur Alan Aspuru-Guzik said, there is a role for imagination, intuition, and adventure. Maybe its not about how many qubits we have; maybe its about how many hackers we have.

Excerpt from:
Quantum Computing Is Coming. What Can It Do? - Harvard Business Review

October: IoP Award Winners | News and features – University of Bristol

Two University of Bristol academics have been named among the winners at the prestigious Institute of Physics 2023 Awards for their pioneering scientific work.

Professor Belinda Wilkes has been awarded the Richard Glazebrook Medal and Prize for Leadership in Physics for her leadership of NASA Chandra X-Ray Centre, meanwhile Dr Nikolas Breuckmann was awarded a James Clerk Maxwell Bronze Medal for his work in helping to prove a famous open problem in quantum information theory.

The IoP awards celebrate physicists at every stage of their career; from those just starting out through to physicists at the peak of their careers, and those with a distinguished career behind them.

Professor Wilkes award is in recognition of her outstanding leadership over six years of the Chandra X-ray Center, during which the Chandra satellite provided the finest X-ray observing capabilities to international astronomers. Professor Wilkes was responsible for ensuring NASA gained optimal return from the mission, and managed a diverse staff of around 170 scientists and engineers.

During this time Professor Wilkes was the professional and public face of the Center, interfacing with NASA, giving talks and media interviews, and attending public events. She maintains her significant research on active galaxies, and has remained committed throughout her career to training the next generation of independent scientists. This work continues this work in her current position as a Royal Society Wolfson Visiting Professor at the University of Bristol.

Professor Wilkes said: "It is a distinct honour to be awarded the Institute of Physics Richard Glazebrook Medal and Prize for Leadership in Physics.Leading NASA's Chandra X-ray Observatory was an incredible privilege and, for me, the best job in the world. I am thrilled and deeply grateful to be recognised for this work by such a highly distinguished organisation as the IoP, which is respected around the world for its promotion and support of Physics, and for its ground-breaking advocation of diversity."

Dr Nikolas Breuckmanns award was in recognition of his outstanding contributions to the quantum error correction field. Working together with Anurag Anshu and Chinmay Nirkhe, Dr Breuckmann proved the no low-energy trivial state conjecture, a famous open problem in quantum information theory first formulated by Fields Medallist Michael Freedman and Matt Hastings in 2013.

Quanta Magazine described this achievement as one of the biggest developments in theoretical computer science this year.

Appointed Lecturer in Quantum Computing Theory at the University of Bristol in November 2022, Dr Breuckmann has worked on quantum information theory, which lies at the intersection of mathematics, physics and computer science.

Dr Breuckmann said: I am deeply honoured to receive this award and I feel fortunate to work in a field as rich and diverse as quantum information, which I have the privilege of exploring with my exceptional collaborators.

Congratulating this years Award winners, Institute of Physics President, Professor Sir Keith Burnett, said: On behalf of the Institute of Physics, I want to congratulate all of this years award winners. Each one has made a significant and positive impact in their profession, whether as a researcher, teacher, industrialist, technician or apprentice and I hope they are incredibly proud of their achievements.

There is so much focus today on the opportunities generated by a career in physics and the potential our science has to transform our society and economy and I hope the stories of our winners will help to inspire future generations of scientists.

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October: IoP Award Winners | News and features - University of Bristol