4 research outputs found
Noise-tolerant learnability of shallow quantum circuits from statistics and the cost of quantum pseudorandomness
This work studies the learnability of unknown quantum circuits in the near term. We prove the natural robustness of quantum statistical queries for learning quantum processes and provide an efficient way to benchmark various classes of noise from statistics, which gives us a powerful framework for developing noise-tolerant algorithms. We adapt a learning algorithm for constant-depth quantum circuits to the quantum statistical query setting with a small overhead in the query complexity. We prove average-case lower bounds for learning random quantum circuits of logarithmic and higher depths within diamond distance with statistical queries. Additionally, we show the hardness of the quantum threshold search problem from quantum statistical queries and discuss its implications for the learnability of shallow quantum circuits. Finally, we prove that pseudorandom unitaries (PRUs) cannot be constructed using circuits of constant depth by constructing an efficient distinguisher and proving a new variation of the quantum no-free lunch theorem
Agnostic process tomography
Characterizing a quantum system by learning its state or evolution is a fundamental problem in quantum physics and learning theory with a myriad of applications. Recently, as a new approach to this problem, the task of agnostic state tomography was defined, in which one aims to approximate an arbitrary quantum state by a simpler one in a given class. Generalizing this notion to quantum processes, we initiate the study of agnostic process tomography: given query access to an unknown quantum channel Φ and a known concept class C of channels, output a quantum channel that approximates Φ as well as any channel in the concept class C, up to some error. In this work, we propose several natural applications for this new task in quantum machine learning, quantum metrology, classical simulation, and error mitigation. In addition, we give efficient agnostic process tomography algorithms for a wide variety of concept classes, including Pauli strings, Pauli channels, quantum junta channels, low-degree channels, and a class of channels produced by QAC0 circuits. The main technical tool we use is Pauli spectrum analysis of operators and superoperators. We also prove that, using ancilla qubits, any agnostic state tomography algorithm can be extended to one solving agnostic process tomography for a compatible concept class of unitaries, immediately giving us efficient agnostic learning algorithms for Clifford circuits, Clifford circuits with few T gates, and circuits consisting of a tensor product of single-qubit gates. Together, our results provide insight into the conditions and new algorithms necessary to extend the learnability of a concept class from the standard tomographic setting to the agnostic one
Quantum Lock: A Provable Quantum Communication Advantage
Physical unclonable functions(PUFs) provide a unique fingerprint to a
physical entity by exploiting the inherent physical randomness. Gao et al.
discussed the vulnerability of most current-day PUFs to sophisticated machine
learning-based attacks. We address this problem by integrating classical PUFs
and existing quantum communication technology. Specifically, this paper
proposes a generic design of provably secure PUFs, called hybrid locked
PUFs(HLPUFs), providing a practical solution for securing classical PUFs. An
HLPUF uses a classical PUF(CPUF), and encodes the output into non-orthogonal
quantum states to hide the outcomes of the underlying CPUF from any adversary.
Here we introduce a quantum lock to protect the HLPUFs from any general
adversaries. The indistinguishability property of the non-orthogonal quantum
states, together with the quantum lockdown technique prevents the adversary
from accessing the outcome of the CPUFs. Moreover, we show that by exploiting
non-classical properties of quantum states, the HLPUF allows the server to
reuse the challenge-response pairs for further client authentication. This
result provides an efficient solution for running PUF-based client
authentication for an extended period while maintaining a small-sized
challenge-response pairs database on the server side. Later, we support our
theoretical contributions by instantiating the HLPUFs design using accessible
real-world CPUFs. We use the optimal classical machine-learning attacks to
forge both the CPUFs and HLPUFs, and we certify the security gap in our
numerical simulation for construction which is ready for implementation.Comment: Replacement of paper "Hybrid PUF: A Novel Way to Enhance the Security
of Classical PUFs" (arXiv:2110.09469