Machine learning for Quantum Control and Quantum Computing, ML(QC)2
from
Monday 29 August 2022 (09:00)
to
Friday 2 September 2022 (18:00)
Monday 29 August 2022
09:00
Registration
Registration
09:00 - 10:00
10:00
Welcome
Welcome
10:00 - 10:10
Room: Conference center, room ...
10:10
New superconducting qubit and millikelvin electronics for it
-
Mikko Möttönen
(
Aalto
)
New superconducting qubit and millikelvin electronics for it
Mikko Möttönen
(
Aalto
)
10:10 - 11:05
Room: Conference center, room ...
We recently discovered a new kind of a superconducting qubit, the unimon, that can be fabricated using standard materials and techniques out of a single Josephson junction and a superconducting resonator, yet having higher anharmonicity than the transmon and resilience against charge and flux noise. Our first experiments on the unimon demonstrate single-qubit-gate fidelity of 99.9% stable for several hours without recalibration. In addition, we have developed qubit readout, reset, and control electronics that operates at millikelvin temperatures and can be integrated with the unimon in the future. These results have been obtained by the Quantum Computing and Devices (QCD) group in collaboration with several other groups. See https://www.aalto.fi/en/department-of-applied-physics/qcd-media for highlighted results.
11:05
Improving quantum computer performance with machine learning
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Andre Carvalho
(
Q-CTRL
)
Improving quantum computer performance with machine learning
Andre Carvalho
(
Q-CTRL
)
11:05 - 12:00
Room: Conference center, room ...
Quantum control provides a powerful framework for augmenting the performance of quantum devices, improving processes from gate design and calibration through to readout. In particular, measurement-based feedback control using machine learning techniques provides a path to control large systems, by allowing autonomous agents to determine the best control solutions even in the absence of a detailed model of the system. In this talk, we will show how this fully automated closed-loop approach can be used to design logical gates that are resilient to hardware noise and more stable over time, showing robustness to system drift up to a month. We will also show a protocol that allows for autonomous and parallel gate tune up across entire devices. Next, we present an automated hardware-informed compilation, crosstalk mitigation, and optimized gate replacement routine, as well as a highly scalable neural-network-based measurement-error-mitigation protocol in post-processing after the execution on the quantum device. We conclude by presenting the results of the implementation of these strategies in a 16-qubit superconducting quantum computer. We demonstrate benefits that increase with system size, reaching a 9000 times enhancement in quantum algorithm performance.
12:00
Lunch
Lunch
12:00 - 14:00
14:00
Machine-learning tools for rapid development of quantum technology
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Shai Machnes
(
Qruise
)
Machine-learning tools for rapid development of quantum technology
Shai Machnes
(
Qruise
)
14:00 - 14:55
Room: Conference center, room ...
Development of quantum technology devices, and quantum technology in particular, is an arduous process, as it requires both scale and extreme accuracy. Detailed and precise models of the devices are extremely rare, as characterization procedures of the numerous parameters comprising such models are often ad-hoc - requiring design of parameter-specific experiments and hand-coded scripts to execute and analyze the data. The most-often used alternative are much simplified models which fail to predict gate fidelities to high accuracy and are therefore of limited utility for optimal control. Subsequent closed-loop calibration of control pulses leave us with an equally unsatisfying situation of pulses whose precise operation we do not understand. Worst - they don't provide insight as to the causes of remaining infidelities. Novel algorithmic and machine-learning techniques can go a long to rectify the situation. In this talk I will describe the ongoing work to develop such tools, including highly detailed TensorFlow digital twins of quantum devices, generalized model learning, optimizations based on reinforcement-learning, and automated Bayesian experiment design. Together with more mundane quantum optimal control tools, they form a toolset which can help gain insight into the behavior of our systems, and significantly accelerate their development.
15:30
Break
Break
15:30 - 16:00
16:00
Machine learning optimization of Majorana hybrid nanowires
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Bernd Rosenow
(
Leipzig University
)
Machine learning optimization of Majorana hybrid nanowires
Bernd Rosenow
(
Leipzig University
)
16:00 - 16:55
Room: Conference center, room ...
As the complexity of quantum systems such as quantum bit arrays increases, efforts to automate expensive tuning become increasingly worthwhile. We study machine learning-based tuning of gate arrays using the CMA-ES algorithm for the case study of Majorana wires with strong disorder. We find that the algorithm is able to efficiently improve the topological signatures, learn intrinsic disorder profiles, and completely eliminate disorder effects. For example, with only 20 gates, it is possible to fully recover Majorana zero modes destroyed by disorder with optimized gate voltages.
17:30
Reception
Reception
17:30 - 18:30
Tuesday 30 August 2022
09:00
The vacuum provides quantum advantage to otherwise simulatable architectures
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Giulia Ferrini
The vacuum provides quantum advantage to otherwise simulatable architectures
Giulia Ferrini
09:00 - 09:55
Room: Conference center, room ...
Identifying the physical resources underlying quantum advantage — i.e., yielding the ability of quantum computers to solve computational problems faster than classical computers — is of crucial importance for the design of meaningful architectures for quantum computation. Often, the resource depends on the model. In the framework of infinite-dimensional continuous-variable (CV) systems, associated to bosonic fields, Gaussian circuits (where the input state, operations and measurements are all described by Gaussian functions) are classically efficiently simulatable. In other words, for these circuits a classical algorithm exists that can reproduce the outcome of the computation. To promote them to universal quantum computation specific non-Gaussian resources have to be provided, such as the so-called Gottesman-Kitaev-Preskill (GKP) state. The cost of producing these enabling resources with sufficient quality generally requires a significant overhead and their distinct features are typically complex and in stark contrast with respect to the elements of the corresponding simulatable architectures. It is a natural question to ask: are resources always complex and costly to produce? In this work we provide a specific example of a CV quantum computing architecture that is classically efficiently simulatable, and that becomes universal by adding the vacuum state. The latter state is widely regarded as the simplest quantum state of a bosonic field, and in particular it is a Gaussian state. The architecture considered is based on GKP states, Gaussian operations and measurement of the quadratures of the bosonic field. First we prove that this class of circuits is classically efficiently simulatable for most Gaussian operations. Then, we leverage on recent results where the same architecture combined with the vacuum (or a thermal) state was shown to be universal for quantum computation, to conclude that the vacuum provides quantum advantage.
10:00
Coffee
Coffee
10:00 - 10:30
10:30
Quantum Approximate Optimization Algorithm applied to the binary perceptron
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Pietro Torta
(
SISSA
)
Quantum Approximate Optimization Algorithm applied to the binary perceptron
Pietro Torta
(
SISSA
)
10:30 - 11:00
Room: Conference center, room ...
We apply digitized Quantum Annealing (QA) and Quantum Approximate Optimization Algorithm (QAOA) to a paradigmatic task of supervised learning in artificial neural networks: the optimization of synaptic weights for the binary perceptron. At variance with the usual QAOA applications to MaxCut, or to quantum spin-chains ground state preparation, the classical Hamiltonian is characterized by highly non-local multi-spin interactions. Yet, we provide evidence for the existence of optimal smooth solutions for the QAOA parameters, which are transferable among typical instances of the same problem, and we prove numerically an enhanced performance of QAOA over traditional QA. We also investigate on the role of the QAOA optimization landscape geometry in this problem, showing that the detrimental effect of a gap-closing transition encountered in QA is also negatively affecting the performance of our implementation of QAOA.
11:00
Optimising quantum circuits with machine learning
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David Fitzek
(
Chalmers University of Technology
)
Optimising quantum circuits with machine learning
David Fitzek
(
Chalmers University of Technology
)
11:00 - 11:30
Room: Conference center, room ...
tbd
12:00
Lunch
Lunch
12:00 - 14:00
14:00
Word from Nordita Director
Word from Nordita Director
14:00 - 14:05
Room: Conference center, room ...
14:05
RG using information bottlenecks - venturing into unsolved models.
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Zohar Ringel
(
Assistant Professor
)
RG using information bottlenecks - venturing into unsolved models.
Zohar Ringel
(
Assistant Professor
)
14:05 - 15:00
Room: Conference center, room ...
The information bottleneck (IB), an abstract mathematical framework for compressing relevant information, has attracted some attention recently due to newly discovered relations with deep learning. Specifically, state-of-the-art deep learning approaches now enable us to access IB quantities numerically. Having this new tool at our disposal, it is interesting to explore its relationship with the Renormalization Group (RG) where an apriori different notion of relevant information exists--- that of relevant operators. In a related manner, IB shows promise as an automated method of identifying relevant/slow degrees of freedom in complex interacting models. In this talk, I'll introduce the concept of IB and then report some of the progress we made on these theoretical and applicative fronts. I'll describe a concrete dictionary between relevant operators and bifurcation points in IB compression. In addition, I'll report some recent applications of this approach to self-dual criticality in 3 dimensions.
15:30
Break
Break
15:30 - 16:00
16:00
WACQT overview and airline logistics
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Göran Johansson
WACQT overview and airline logistics
Göran Johansson
16:00 - 16:55
Room: Conference center, room ...
16:55
Headed beyond Kohn-Sham DFT with deep learning
-
Isaac Tamblyn
Headed beyond Kohn-Sham DFT with deep learning
Isaac Tamblyn
16:55 - 17:30
Room: Conference center, room ...
Streamed talk
Wednesday 31 August 2022
09:00
Adaptive Bayesian learning for quantum sensing and characterisation
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Cristian Bonato
(
Heriot-Watt University
)
Adaptive Bayesian learning for quantum sensing and characterisation
Cristian Bonato
(
Heriot-Watt University
)
09:00 - 09:55
Room: Conference center, room ...
Sophisticated learning techniques, such as Bayesian inference, neural networks or reinforcement learning are becoming increasingly popular as powerful tools to characterise and optimise quantum systems. Here, I will report on our theoretical and experimental work to speed up the characterisation of quantum systems by exploiting online adaptive measurements and Bayesian inference. We have developed a system, comprising a hard-realtime microcontroller, that implements real-time adaptation of measurement settings, based on previous measurement outcomes (through Sequential MonteCarlo, with <100 microseconds update time). Such a system always operate near maximum sensitivity, even in cases where the optimal settings depend on the unknown parameter to be estimated. We have used this system to characterise decoherence timescales for a single spin qubit associated to a nitrogen-vacancy centre in diamond, showing an improvement in speed of one order of magnitude. We have also benchmarked different adaptive heuristics based on different Bayesian and frequentist statistical estimation bounds. These results offer opportunities in the characterisation of large-scale quantum systems, and in quantum sensing, by considerably increasing the measurement bandwidth. Time permitting, I will also discuss our on-going work on learning models for quantum emitters from photon arrival times, utilising a Markov-chain MonteCarlo approach.
10:00
Coffee
Coffee
10:00 - 10:30
10:30
Self-Correcting Quantum Many-Body Control using Reinforcement Learning with Tensor Networks
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Marin Bukov
(
MPI-PKS
)
Self-Correcting Quantum Many-Body Control using Reinforcement Learning with Tensor Networks
Marin Bukov
(
MPI-PKS
)
10:30 - 11:25
Room: Conference center, room ...
Quantum many-body control is a central milestone en route to harnessing quantum technologies. However, the exponential growth of the Hilbert space dimension with the number of qubits makes it challenging to classically simulate quantum many-body systems and consequently, to devise reliable and robust optimal control protocols. I will present a novel framework for efficiently controlling quantum many-body systems based on reinforcement learning (RL). We tackle the quantum control problem by leveraging matrix product states (i) for representing the many-body state and, (ii) as part of the trainable machine learning architecture for our RL agent. The framework is applied to prepare ground states of the quantum Ising chain, including critical states. It allows us to control systems far larger than neural-network-only architectures permit, while retaining the advantages of deep learning algorithms, such as generalizability and trainable robustness to noise. In particular, I will demonstrate that RL agents are capable of finding universal controls, of learning how to optimally steer previously unseen many-body states, and of adapting control protocols on the fly when the quantum dynamics are subject to stochastic perturbations.
11:30
Quantum Annealing for Neural Network optimization problems: a new approach via Tensor Network simulations
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Guglielmo Lami
(
SISSA
)
Quantum Annealing for Neural Network optimization problems: a new approach via Tensor Network simulations
Guglielmo Lami
(
SISSA
)
11:30 - 12:00
Room: Conference center, room ...
Quantum Annealing (QA) is one of the most promising frameworks for quantum opti-mization. In this work, we focus on the problem of minimizing complex classical cost functions associated with prototypical discrete neural networks, specifically the paradigmatic binary perceptron and the Hopfield model. We show that the adiabatic time evolution of QA can be efficiently represented as a suitable Tensor Network. This representation allows for simple classical simulations, well-beyond small sizes amenable to exact diagonalization techniques. We show that the optimized state, expressed as a Matrix Product State (MPS), can be recast into a Quantum Circuit, whose depth scales only linearly with the system size and quadratically with the MPS bond dimension. This may represent a valuable starting point allowing for further circuit optimization on near-term quantum devices.
12:00
Lunch
Lunch
12:00 - 14:00
14:00
Increasing the complexity of quantum devices in an algorithmic age
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Anasua Chatterjee
(
Niels Bohr Institute
)
Increasing the complexity of quantum devices in an algorithmic age
Anasua Chatterjee
(
Niels Bohr Institute
)
14:00 - 14:55
Room: Conference center, room ...
Advances in fabrication and quantum control methods are leading to gate-controlled nanoscale devices becoming progressively more complex, yet affording more and more exquisite local control over gate potentials. Automated solutions for tuning and characterisation are also advancing, as the parameter space of these complex devices are quickly becoming too large to manually investigate. In this talk, I will present our efforts to harness these two complementary advances, to impact the fields of quantum information as well as fundamental condensed matter physics. Hardware and software techniques working in concert assist us to find operation points in spin qubit arrays, as well as to read them out; subsequently, these techniques are also applied to mesoscopic regimes such as quantum Hall systems. Our results propose a path towards the application of algorithmic techniques to fundamental problems in the solid state.
14:55
Realizing a deep reinforcement learning agent for the discovery of real-time feedback control strategies for a quantum system
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Kevin Reuer
(
Deparment of Physics, ETH Zürich
)
Realizing a deep reinforcement learning agent for the discovery of real-time feedback control strategies for a quantum system
Kevin Reuer
(
Deparment of Physics, ETH Zürich
)
14:55 - 15:30
Room: Conference center, room ...
Finding strategies to control quantum information processing devices in real-time becomes increasingly demanding as they grow in size and complexity. Reinforcement learning promises to overcome this challenge by uncovering the underlying system dynamics without relying on a specific model. Here, we implement a deep neural network on a field-programmable gate array (FPGA) and demonstrate its use as a real-time reinforcement learning agent to efficiently initialize a superconducting qubit into its ground state. The agent repeatedly measures the state of the qubit and chooses on a sub-microsecond time scale whether to idle, to apply a bit-flip gate, or to terminate. After the agent chooses to terminate the initialization process, we perform a validation measurement to infer the probability of having successfully initialized the ground state. To train the agent, we use model-free reinforcement learning that is based solely on measurement data.
15:30
Break
Break
15:30 - 16:00
16:00
A tutorial on designing quantum gates with optimal control theory and automatic differentiation
-
Giacomo Torlai
A tutorial on designing quantum gates with optimal control theory and automatic differentiation
Giacomo Torlai
16:00 - 16:55
Room: Conference center, room ...
I will present a hands-on tutorial (with code) on optimal coherent control for quantum gate design, leveraging automatic differentiation and tensor networks.
18:00
Dinner
Dinner
18:00 - 20:00
Thursday 1 September 2022
10:00
Coffee
Coffee
10:00 - 10:30
10:50
Quantum variational learning for quantum error-correcting codes
-
Chenfeng Cao
(
The Hong Kong university of Science and Technology
)
Quantum variational learning for quantum error-correcting codes
Chenfeng Cao
(
The Hong Kong university of Science and Technology
)
10:50 - 11:20
Room: Conference center, room ...
Quantum error-correcting codes (QECCs) are believed to be a necessity for large-scale fault-tolerant quantum computation. In the past two decades, various methods of QECC constructions have been developed, leading to many good families of codes. However, the majority of these codes are not suitable for near-term quantum devices. Here we present VarQEC, a noise-resilient variational quantum algorithm to search for quantum codes with a hardware-efficient encoding circuit. The cost functions are inspired by the most general and fundamental requirements of a QECC, the Knill-Laflamme conditions. Given the target noise channel (or the target code parameters) and the hardware connectivity graph, we optimize a shallow variational quantum circuit to prepare the basis states of an eligible code. In principle, VarQEC can find quantum codes for any error model, whether additive or non-additive, degenerate or non-degenerate, pure or impure. We have verified its effectiveness by (re)discovering some symmetric and asymmetric codes, e.g., $((n,2^{n-6},3))_2$ for $n$ from 7 to 14. We also found new $((6,2,3))_2$ and $((7,2,3))_2$ codes that are not equivalent to any stabilizer code, and extensive numerical evidence with VarQEC suggests that a $((7,3,3))_2$ code does not exist. Furthermore, we found many new channel-adaptive codes for error models involving nearest-neighbor correlated errors. Our work sheds new light on the understanding of QECC in general, which may also help to enhance near-term device performance with channel-adaptive error-correcting codes.
11:20
Quantum simulation and Rydberg atom arrays
-
Roger Melko
Quantum simulation and Rydberg atom arrays
Roger Melko
11:20 - 12:00
Room: Conference center, room ...
12:00
Lunch
Lunch
12:00 - 14:00
14:00
Variational Neural Annealing
-
Juan Carrasquilla
(
Vector Institute
)
Variational Neural Annealing
Juan Carrasquilla
(
Vector Institute
)
14:00 - 14:55
Room: Conference center, room ...
(Streamed) Many important challenges in science and technology can be cast as optimization problems. When viewed in a statistical physics framework, these can be tackled by simulated annealing, where a gradual cooling procedure helps search for ground state solutions of a target Hamiltonian. While powerful, simulated annealing is known to have prohibitively slow sampling dynamics when the optimization landscape is rough or glassy. In this talk I will show that by generalizing the target distribution with a parameterized model, an analogous annealing framework based on the variational principle can be used to search for ground state solutions. Autoregressive models such as recurrent neural networks provide ideal parameterizations since they can be exactly sampled without slow dynamics even when the model encodes a rough landscape. We implement this procedure in the classical and quantum settings on several prototypical spin glass Hamiltonians, and find that it significantly outperforms traditional simulated annealing in the asymptotic limit, illustrating the potential power of this yet unexplored route to optimization.
14:55
Quantum process tomography with gradient descent
-
Shahnawaz Ahmed
(
Chalmers University of Technology
)
Quantum process tomography with gradient descent
Shahnawaz Ahmed
(
Chalmers University of Technology
)
14:55 - 15:30
Room: Conference center, room ...
Quantum process tomography (QPT) obtains the representation of a quantum process using experimentally obtained measurement data. We can cast the QPT problem into a learning task where machine learning methods have been recently successful in using generative models for QPT. In this talk, we show how simple gradient-based learning with appropriate constraints on the representation of process, along with restrictions on the gradients can solve QPT. We will demonstrate gradient-based learning of processes for 2- 5 qubits as well as single-mode bosonic systems. We compare our simple approach to existing techniques such as compressed sensing and projected least squares QPT. We also show that using neural networks rather than standard process representations provides no significant advantage which may indicate that good representations of process combined with gradient-based learning might be sufficient for QPT tasks.
15:30
Break
Break
15:30 - 16:00
16:00
Machine Learning Renormalization Group and Generative Modeling
-
Yizhuang You
Machine Learning Renormalization Group and Generative Modeling
Yizhuang You
16:00 - 16:55
Room: Conference center, room ...
In this talk, I will introduce the machine learning renormalization group method, a hierarchical flow-based generative model motivated by the idea of the renormalization group in physics. Given the action of a field theory, the algorithm learns the optimal renormalization group transformation and maps the field configuration from the holographic boundary to the bulk, which enables efficient sampling and error correction. Beyond physics applications, I will also demonstrate the application of this method in the image and language processing domain.
16:55
How to learn a quantum state (and how not to)
-
Yihui Quek
How to learn a quantum state (and how not to)
Yihui Quek
16:55 - 17:50
Room: Conference center, room ...
streamed Learning an unknown n-qubit quantum state is a fundamental challenge in quantum computing. Full tomography, however, requires exponential-in-n many copies of \rho for a good estimate. Is it possible to circumvent this exponential tax on resources? We consider two variants of this question: 1. “Pretty-good tomography” (based on https://arxiv.org/abs/2102.07171, NeurIPS 2021 (Spotlight)): Aaronson and others introduced several “reduced” models of learning quantum states which impose weaker requirements on the learner: PAC-learning, shadow tomography for learning ``shadows” of a quantum state, online learning, whose complexities scale only linearly in n. We show implications and reductions between the many models in this menagerie, and further introduce a combinatorial parameter that characterizes the complexity of learning. As an application, we improve shadow tomography (for classes of quantum states). 2. Probabilistic modelling (based on https://arxiv.org/abs/2110.05517 and https://arxiv.org/pdf/2207.03140.pdf): Deep generative models have recently empowered many impressive scientific feats, ranging from predicting protein structure to atomic accuracy (Alpha-Fold) to achieving human-level language comprehension (GPT-3). At the heart of these models is the question: by drawing very few samples from a probability distribution, can we learn an algorithm that generates more samples from the same distribution? Even more intriguingly: could there be a quantum advantage for such a task? We present both go and no-go results for this setting.
Friday 2 September 2022
10:00
Bandits and Bayesian Optimization for Quantum Circuits
-
Devdatt Dubhashi
Bandits and Bayesian Optimization for Quantum Circuits
Devdatt Dubhashi
10:00 - 10:55
Room: Conference center, room ...
We survey bandit and Bayesian optimization approaches for optimizing parameters for Quantum circuits.
10:55
Closing remarks
Closing remarks
10:55 - 11:00
Room: Conference center, room ...