HomeTechnologyArtificial IntelligenceResearchers Enhance Quantum Computing for ML Algorithms

    Researchers Enhance Quantum Computing for ML Algorithms

    A Florida State University professor’s research could help Quantum Computing fulfil its promise as a powerful computational tool.

    William Oates, the Cummins Inc. Professor in Mechanical Engineering and chair of the Department of Mechanical Engineering at the FAMU-FSU College of Engineering, and postdoctoral researcher Guanglei Xu found a way to automatically infer parameters used in an important quantum Boltzmann machine algorithm for machine learning applications.

    The work could help build artificial neural networks that could be used for training computers to solve complicated, interconnected problems like image recognition, drug discovery and the creation of new materials.

    “There’s a belief that quantum computing, as it comes online and grows in computational power, can provide you with some new tools, but figuring out how to program it and how to apply it in certain applications is a big question,” Oates said.

    Quantum bits, unlike binary bits in a standard computer, can exist in more than one state at a time, a concept known as superposition. Measuring the state of a quantum bit—or qubit—causes it to lose that special state, so quantum computers work by calculating the probability of a qubit’s state before it is observed.

    Specialized quantum computers known as quantum annealers are one tool for doing this type of Quantum Computing. They work by representing each state of a qubit as an energy level. The lowest energy state among its qubits gives the solution to a problem. A result is a machine that could handle complicated, interconnected systems that would take a regular computer a very long time to calculate—like building a neural network.

    One way to build neural networks is by using a restricted Boltzmann machine, an algorithm that uses probability to learn based on inputs given to the network. Oates and Xu found a way to automatically calculate an important parameter associated with the effective temperature that is used in that algorithm. Restricted Boltzmann machines typically guess at that parameter instead, which requires testing to confirm and can change whenever the computer is asked to investigate a new problem.

    “That parameter in the model replicates what the quantum annealer is doing,” Oates said. “If you can accurately estimate it, you can train your neural network more effectively and use it for predicting things.”

    ELE Times Research Desk
    ELE Times Research Deskhttps://www.eletimes.ai
    ELE Times provides extensive global coverage of Electronics, Technology and the Market. In addition to providing in-depth articles, ELE Times attracts the industry’s largest, qualified and highly engaged audiences, who appreciate our timely, relevant content and popular formats. ELE Times helps you build experience, drive traffic, communicate your contributions to the right audience, generate leads and market your products favourably.

    Related News

    Must Read

    IEEE Wintechon 2025 Powering India’s Semiconductor Future through Data, Diversity and Collaboration

    The sixth edition of IEEE WINTECHCON 2025 convened over 800...

    Rohde & Schwarz collaborates with Broadcom to enable testing and validation of next-gen Wi-Fi 8 chipsets

    Rohde & Schwarz, deepened its collaboration with Broadcom Inc....

    Nuvoton Introduces High-Quality 24-bit Stereo DAC Solution NAU8421YG

    Nuvoton announced NAU8421YG, a new high quality DAC audio...

    STMicroelectronics introduces the industry’s largest MCU model zoo to accelerate Physical AI time to market

    STMicroelectronics has unveiled new models and enhanced project support...

    STMicroelectronics introduces the industry’s first 18nm microcontroller for high-performance applications

    STMicroelectronics has unveiled the STM32V8, a new generation of...

    Navigating urban roads with safety-focused, human-like automated driving experiences

    Courtesy: Qulacomm What you should know: ●        Dense urban traffic and...

    7 Challenges Facing Fab Operations and How Providers Can Solve Them

    Courtesy: Monikantan Ayyasamy, General Manager, Equipment Engineering & Supply...

    Rohde & Schwarz, together with Samsung, first to validate 3GPP NR-NTN conformance across RF, RRM and PCT

    Rohde & Schwarz and Samsung are collaborating to bring...