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  • Dual-rail superconducting qubits with Rob Schoelkopf
    2024/11/20

    Welcome to another episode of The New Quantum Era, hosted by Sebastian Hassinger and Kevin Rowney. Today, we have the privilege of speaking with Dr. Robert Schoelkopf, Sterling Professor of Applied Physics at Yale, Director of the Yale Quantum Institute, and CTO and co-founder at Quantum Circuits, Inc. Dr. Schoelkopf is a pioneering figure in the field of quantum computing, particularly known for his contributions to the development of the transmon qubit architecture. In this episode, we delve into the history and future of quantum computing, focusing on the latest advancements in error correction and the innovative dual rail qubit architecture.

    Key Highlights:

    • Historical Context and Contributions: Dr. Schoelkopf discusses the early days of quantum computing at Yale, including the development of the transmon qubit architecture, which has been foundational for superconducting qubits.
    • Introduction to Dual Rail Qubits: Explanation of the dual rail qubit architecture, which promises significant improvements in error detection and correction, potentially reducing the overhead required for fault-tolerant quantum computing.
    • Error Correction Strategies: Insights into how the dual rail qubit architecture simplifies the detection and correction of errors, making quantum error correction more efficient and scalable.
    • Modular Approach to Quantum Computing: Discussion on the modular design of quantum systems, which allows for easier scaling and maintenance, and the potential for interconnecting quantum modules via microwave photons.
    • Future Prospects and Real-World Applications: Dr. Schoelkopf shares his vision for the future of quantum computing, including the commercial deployment of Quantum Circuits, Inc's new quantum devices and the ongoing collaboration between theoretical and experimental approaches to advance the field.

    Mentioned in this Episode:

    • Yale Quantum Institute
    • Quantum Circuits Inc. announces Aqumen Seeker

    Join us as we explore these groundbreaking advancements and their implications for the future of quantum computing.

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    43 分
  • Integrating Quantum Computers and Classical Supercomputers with Martin Schultz
    2024/09/30

    In this episode of The New Quantum Era, Sebastian talks with Martin Schultz, Professor at TU Munich and board member of the Leibniz Supercomputing Center (LRZ) about the critical need to integrate quantum computers with classical supercomputing resources to build practical quantum solutions. They discuss the Munich Quantum Valley initiative, focusing on the challenges and advancements in merging quantum and classical computing.

    Main Topics Discussed:

    • The Genesis of Munich Quantum Valley: The Munich Quantum Valley is a collaborative project funded by the Bavarian government to advance quantum research and development. The project quickly realized the need for software infrastructure to bridge the gap between quantum hardware and real-world applications.
    • Building a Hybrid Quantum-Classical Computing Infrastructure: LRZ is developing a software stack and web portal to streamline the interaction between their HPC system and various quantum computers, including superconducting and ion trap systems. This approach enables researchers to leverage the strengths of both classical and quantum computing resources seamlessly.
    • Hierarchical Scheduling for Efficient Resource Allocation: LRZ is designing a multi-tiered scheduling system to optimize resource allocation in the hybrid environment. This system considers factors like job requirements, resource availability, and the specific characteristics of different quantum computing technologies to ensure efficient execution of quantum workloads.
    • Open-Source Collaboration and Standardization: LRZ aims to make its software stack open-source, recognizing the importance of collaboration and standardization in the quantum computing community. They are actively working with vendors to define standard interfaces for integrating quantum computers with HPC systems.
    • Addressing the Unknown in Quantum Computing: The field of quantum computing is evolving rapidly, and LRZ acknowledges the need for adaptable solutions. Their architectural design prioritizes flexibility, allowing for future pivots and the incorporation of new quantum computing models and intermediate representations as they emerge.

    Munich Quantum Valley
    IEEE Quantum

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    37 分
  • Innovative Near-Term Quantum Algorithms with Toby Cubitt
    2024/09/11

    Welcome to The New Quantum Era, a podcast hosted by Sebastian Hassinger and Kevin Rowney. In this episode, we have an insightful conversation with Dr. Toby Cubitt, a pioneer in quantum computing, a professor at UCL, and a co-founder of Phasecraft. Dr. Cubitt shares his deep understanding of the current state of quantum computing, the challenges it faces, and the promising future it holds. He also discusses the unique approach Phasecraft is taking to bridge the gap between theoretical algorithms and practical, commercially viable applications on near-term quantum hardware.


    Key Highlights:

    • The Dual Focus of Phasecraft: Dr. Cubitt explains how Phasecraft is dedicated to algorithms and applications, avoiding traditional consultancy to drive technology forward through deep partnerships and collaborative development.
    • Realistic Perspective on Quantum Computing: Despite the hype cycles, Dr. Cubitt maintains a consistent, cautiously optimistic outlook on the progress toward quantum advantage, emphasizing the complexity and long-term nature of the field.
    • Commercial Viability and Algorithm Development: The discussion covers Phasecraft’s strategic focus on material science and chemistry simulations as early applications of quantum computing, leveraging the unique strengths of quantum algorithms to tackle real-world problems.
    • Innovative Algorithmic Approaches: Dr. Cubitt details Phasecraft’s advancements in quantum algorithms, including new methods for time dynamics simulation and hybrid quantum-classical algorithms like Quantum enhanced DFT, which combine classical and quantum computing strengths.
    • Future Milestones: The conversation touches on the anticipated breakthroughs in the next few years, aiming for quantum advantage and the significant implications for both scientific research and commercial applications.


    Papers Mentioned in this episode:

    • Observing ground-state properties of the Fermi-Hubbard model using a scalable algorithm on a quantum computer
    • Towards near-term quantum simulation of materials
    • Enhancing density functional theory using the variational quantum eigensolver
    • Dissipative ground state preparation and the Dissipative Quantum Eigensolver

    Other sites:

    • Phasecraft
    • Dr. Toby Cubitt’s personal site
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    49 分
  • Quantum Machine Learning with Jessica Pointing
    2024/08/26

    In this episode of The New Quantum Era podcast, hosts Sebastian Hassinger and Kevin Roney interview Jessica Pointing, a PhD student at Oxford studying quantum machine learning.

    Classical Machine Learning Context

    • Deep learning has made significant progress, as evidenced by the rapid adoption of ChatGPT
    • Neural networks have a bias towards simple functions, which enables them to generalize well on unseen data despite being highly expressive
    • This “simplicity bias” may explain the success of deep learning, defying the traditional bias-variance tradeoff

    Quantum Neural Networks (QNNs)

    • QNNs are inspired by classical neural networks but have some key differences
    • The encoding method used to input classical data into a QNN significantly impacts its inductive bias
    • Basic encoding methods like basis encoding result in a QNN with no useful bias, essentially making it a random learner
    • Amplitude encoding can introduce a simplicity bias in QNNs, but at the cost of reduced expressivity
      • Amplitude encoding cannot express certain basic functions like XOR/parity
    • There appears to be a tradeoff between having a good inductive bias and having high expressivity in current QNN frameworks

    Implications and Future Directions

    • Current QNN frameworks are unlikely to serve as general purpose learning algorithms that outperform classical neural networks
    • Future research could explore:
      • Discovering new encoding methods that achieve both good inductive bias and high expressivity
      • Identifying specific high-value use cases and tailoring QNNs to those problems
      • Developing entirely new QNN architectures and strategies
    • Evaluating quantum advantage claims requires scrutiny, as current empirical results often rely on comparisons to weak classical baselines or very small-scale experiments

    In summary, this insightful interview with Jessica Pointing highlights the current challenges and open questions in quantum machine learning, providing a framework for critically evaluating progress in the field. While the path to quantum advantage in machine learning remains uncertain, ongoing research continues to expand our understanding of the possibilities and limitations of QNNs.

    Paper cited in the episode:
    Do Quantum Neural Networks have Simplicity Bias?

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    44 分
  • Quantum reservoir computing with Susanne Yelin
    2024/08/15

    Sebastian is joined by Susanne Yelin, Professor of Physics in Residence at Harvard University and the University of Connecticut.
    Susanne's Background:

    • Fellow at the American Physical Society and Optica (formerly the American Optics Society)
    • Background in theoretical AMO (Atomic, Molecular, and Optical) physics and quantum optics
    • Transition to quantum machine learning and quantum computing applications

    Quantum Machine Learning Challenges

    • Limited to simulating small systems (6-10 qubits) due to lack of working quantum computers
    • Barren plateau problem: the more quantum and entangled the system, the worse the problem
    • Moved towards analog systems and away from universal quantum computers

    Quantum Reservoir Computing

    • Subclass of recurrent neural networks where connections between nodes are fixed
    • Learning occurs through a filter function on the outputs
    • Suitable for analog quantum systems like ensembles of atoms with interactions
    • Advantages: redundancy in learning, quantum effects (interference, non-commuting bases, true randomness)
    • Potential for fault tolerance and automatic error correction

    Quantum Chemistry Application

    • Goal: leverage classical chemistry knowledge and identify problems hard for classical computers
    • Collaboration with quantum chemists Anna Krylov (USC) and Martin Head-Gordon (UC Berkeley)
    • Focused on effective input-output between classical and quantum computers
    • Simulating a biochemical catalyst molecule with high spin correlation using a combination of analog time evolution and logical gates
    • Demonstrating higher fidelity simulation at low energy scales compared to classical methods

    Future Directions

    • Exploring fault-tolerant and robust approaches as an alternative to full error correction
    • Optimizing pulses tailored for specific quantum chemistry calculations
    • Investigating dynamics of chemical reactions
    • Calculating potential energy surfaces for molecules
    • Implementing multi-qubit analog ideas on the Rydberg atom array machine at Harvard
    • Dr. Yelin's work combines the strengths of analog quantum systems and avoids some limitations of purely digital approaches, aiming to advance quantum chemistry simulations beyond current classical capabilities.
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    26 分
  • Bosonic quantum error correction with Julien Camirand Lemyre
    2024/08/05

    Welcome back to The New Quantum Era, the podcast where we explore the cutting-edge developments in quantum computing. In today’s episode, hosts Sebastian Hassinger and Kevin Rowe are joined by Dr. Julien Camirand Lemyre, the CEO and co-founder of Nord Quantique. Nord Quantique is a startup spun out from the University of Sherbrooke in Quebec, Canada, and is making significant strides in the field of quantum error correction using innovative superconducting qubit designs. In this conversation, Dr. Camirand Lemyre shares insights into their groundbreaking research and the innovative approaches they are taking to improve quantum computing systems.


    Listeners can expect to learn about:

    • Dr. Camirand Lemyre’s journey into quantum computing and the founding of Nord Quantique.
    • The unique approach Nord Quantique is taking with Bosonic code qubits and how they differ from traditional fermionic qubits.
    • The recent research paper by Nord Quantique that demonstrates autonomous quantum error correction, a significant step forward in the field.
    • The potential impact of these advancements on reducing the overhead of error correction in quantum systems.
    • Future directions and next steps for Nord Quantique, including further optimization and development of their quantum technology.


    Highlights:

    • Julien Camirand Lemyre’s Background: Dr. Camirand Lemyre shares his academic journey and how it led to the founding of Nord Quantique.
    • Bosonic Qubits: An exploration of how Nord Quantique is leveraging Bosonic qubits for better quantum error correction.
    • Autonomous Quantum Error Correction: Discussion on the recent research paper and its implications for the field of quantum computing.
    • Technological Innovations: Insights into the specific technological advancements and controls Nord Quantique is developing.
    • Future Plans: Dr. Camirand Lemyre shares what’s next for Nord Quantique and their ongoing research efforts.


    Mentioned in this episode:

    • Nord Quantique: Website
    • University of Sherbrooke: Website
    • Institut Quantique: Website
    • Q-Ctrl: Website


    Tune in to hear about these exciting developments and what they mean for the future of quantum computing!

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    35 分
  • Quantum Benchmarking with Jens Eisert
    2024/07/18

    Welcome to another episode of The New Quantum Era! Today, we have a fascinating conversation with Professor Jens Eisert, a veteran in the field of quantum information science. Jens takes us through his journey from his PhD days, delving into the role of entanglement in quantum computing and communication, to leading a team that bridges theoretical and practical aspects of quantum technology. In this episode, we explore the fine line between classical and quantum worlds, the potential and limitations of near-term quantum devices, and the role of theoretical frameworks in advancing quantum technologies. Here are some key highlights from our conversation:

    • Theoretical Limits and Practical Applications: Jens discusses his team's work on establishing theoretical limits and guidelines for what can be achieved with current quantum hardware, focusing on both long-term and near-term goals.
    • Benchmarking and Certification: The importance of randomized benchmarking techniques is highlighted, including their role in diagnosing and improving quantum devices. Jens elaborates on how these techniques can provide detailed diagnostic information and their limitations in scalability.
    • Error Mitigation and Non-Unit Noise: Insights into the impact of non-unit noise on quantum circuits and the limitations of error mitigation techniques, particularly concerning their scalability.
    • Quantum Simulation and Near-Term Devices: Jens shares his cautious optimism about the potential for near-term quantum devices to achieve practical applications, particularly in the field of quantum simulation.
    • Innovative and Foundational Research: The conversation touches on Jens' interest in both pioneering new fields and concluding existing ones. He shares intriguing research on the emergence of temperature in quantum systems and its potential implications for quantum algorithms.
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    34 分
  • Careers in Quantum with Anastasia Marchenkova
    2024/06/26

    Welcome to The New Quantum Era podcast! In today’s episode, we dive deep into the fascinating world of quantum computing and the broader tech landscape with Anastasia Marchenkova, who has a unique blend of experiences in startups, academia, and venture capital. Join us as we explore the intersections of technology, business, and education, and uncover the challenges and opportunities that lie ahead in the quantum era.

    Highlights from the Interview:

    • Journey into Quantum Computing: Learn how our Anastasia's early experiences in quantum telecommunications and a serendipitous encounter with a startup led to a pivotal role at Rigetti Computing.
    • Building and Scaling Startups: Insights into the startup ecosystem, including the importance of customer discovery, the challenges of scaling deep tech companies, and the role of non-dilutive funding from sources like DARPA.
    • Interdisciplinary Innovations: Discover how principles from quantum computing are being applied to other cutting-edge fields like thermodynamic computing and AI, and the potential for cross-disciplinary breakthroughs.
    • The Importance of Communication and Networking: Discussion on the critical role of communication skills in science and technology, and how building connections can drive innovation and collaboration.
    • Future Vision and Education: Our guest’s ambitious plans for bridging the gap between deep tech and the broader public through educational initiatives and media, aiming to inspire the next generation of technologists and entrepreneurs.

    Mentioned in This Episode:

    • Rigetti Computing: A pioneering quantum computing startup.
    • DARPA (Defense Advanced Research Projects Agency): A key source of non-dilutive funding for deep tech projects.
    • Quantum Benchmark: A company specializing in error characterization and mitigation for quantum computing, acquired by Keysight Technologies.
    • Thermodynamic Computing: An emerging field aimed at reducing energy consumption in AI, with notable contributions from researchers like Patrick Coles, who founded Normal Computing, and Guillaume Verdun, who recently founded Extropic.
    • VC Lab: An incubator program for training emerging venture capitalists.


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    46 分