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Author

  • Aspuru-Guzik, Alán (4)
  • Degroote, Matthias (4)
  • Kottmann, Jakob S. (4)
  • Alperin-Lea, Sumner (3)
  • Anand, Abhinav (3)
  • Cervera-Lierta, Alba (2)
  • Izmaylov, Artur F. (2)
  • Kyaw, Thi Ha (2)
  • Schleich, Philipp (2)
  • Sim, Sukin (2)
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Year of publication

  • 2022 (2)
  • 2021 (2)

Document Type

  • Article (4)

Language

  • English (4)

Keywords

  • Atomic and Molecular Physics, and Optics (2)
  • Electrical and Electronic Engineering (2)
  • Materials Science (miscellaneous) (2)
  • Physics and Astronomy (miscellaneous) (2)
  • General Chemistry (1)
  • General Physics and Astronomy (1)

Institute

  • Fakultät für Angewandte Informatik (4)
  • Institut für Informatik (4)
  • Professur für Quantenalgorithmik (4)

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A quantum computing view on unitary coupled cluster theory (2022)
Anand, Abhinav ; Schleich, Philipp ; Alperin-Lea, Sumner ; Jensen, Phillip W. K. ; Sim, Sukin ; Díaz-Tinoco, Manuel ; Kottmann, Jakob S. ; Degroote, Matthias ; Izmaylov, Artur F. ; Aspuru-Guzik, Alán
Mutual information-assisted adaptive variational quantum eigensolver (2021)
Zhang, Zi-Jian ; Kyaw, Thi Ha ; Kottmann, Jakob S. ; Degroote, Matthias ; Aspuru-Guzik, Alán
Adaptive construction of ansatz circuits offers a promising route towards applicable variational quantum eigensolvers on near-term quantum hardware. Those algorithms aim to build up optimal circuits for a certain problem and ansatz circuits are adaptively constructed by selecting and adding entanglers from a predefined pool. In this work, we propose a way to construct entangler pools with reduced size by leveraging classical algorithms. Our method uses mutual information between the qubits in classically approximated ground state to rank and screen the entanglers. The density matrix renormalization group method is employed for classical precomputation in this work. We corroborate our method numerically on small molecules. Our numerical experiments show that a reduced entangler pool with a small portion of the original entangler pool can achieve same numerical accuracy. We believe that our method paves a new way for adaptive construction of ansatz circuits for variational quantum algorithms.
Noisy intermediate-scale quantum algorithms (2022)
Bharti, Kishor ; Cervera-Lierta, Alba ; Kyaw, Thi Ha ; Haug, Tobias ; Alperin-Lea, Sumner ; Anand, Abhinav ; Degroote, Matthias ; Heimonen, Hermanni ; Kottmann, Jakob S. ; Menke, Tim ; Mok, Wai-Keong ; Sim, Sukin ; Kwek, Leong-Chuan ; Aspuru-Guzik, Alán
A universal fault-tolerant quantum computer that can efficiently solve problems such as integer factorization and unstructured database search requires millions of qubits with low error rates and long coherence times. While the experimental advancement toward realizing such devices will potentially take decades of research, noisy intermediate-scale quantum (NISQ) computers already exist. These computers are composed of hundreds of noisy qubits, i.e., qubits that are not error corrected, and therefore perform imperfect operations within a limited coherence time. In the search for achieving quantum advantage with these devices, algorithms have been proposed for applications in various disciplines spanning physics, machine learning, quantum chemistry, and combinatorial optimization. The overarching goal of such algorithms is to leverage the limited available resources to perform classically challenging tasks. In this review, a thorough summary of NISQ computational paradigms and algorithms is provided. The key structure of these algorithms and their limitations and advantages are discussed. A comprehensive overview of various benchmarking and software tools useful for programming and testing NISQ devices is additionally provided.
TEQUILA: a platform for rapid development of quantum algorithms (2021)
Kottmann, Jakob S. ; Alperin-Lea, Sumner ; Tamayo-Mendoza, Teresa ; Cervera-Lierta, Alba ; Lavigne, Cyrille ; Yen, Tzu-Ching ; Verteletskyi, Vladyslav ; Schleich, Philipp ; Anand, Abhinav ; Degroote, Matthias ; Chaney, Skylar ; Kesibi, Maha ; Curnow, Naomi Grace ; Solo, Brandon ; Tsilimigkounakis, Georgios ; Zendejas-Morales, Claudia ; Izmaylov, Artur F. ; Aspuru-Guzik, Alán
Variational quantum algorithms are currently the most promising class of algorithms for deployment on near-term quantum computers. In contrast to classical algorithms, there are almost no standardized methods in quantum algorithmic development yet, and the field continues to evolve rapidly. As in classical computing, heuristics play a crucial role in the development of new quantum algorithms, resulting in a high demand for flexible and reliable ways to implement, test, and share new ideas. Inspired by this demand, we introduce tequila, a development package for quantum algorithms in python, designed for fast and flexible implementation, prototyping and deployment of novel quantum algorithms in electronic structure and other fields. tequila operates with abstract expectation values which can be combined, transformed, differentiated, and optimized. On evaluation, the abstract data structures are compiled to run on state of the art quantum simulators or interfaces.
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