MISTIQS: An open-source software for performing quantum dynamics
simulations on quantum computers
- URL: http://arxiv.org/abs/2101.01817v1
- Date: Tue, 5 Jan 2021 22:37:01 GMT
- Title: MISTIQS: An open-source software for performing quantum dynamics
simulations on quantum computers
- Authors: Connor Powers, Lindsay Bassman, Thomas Linker, Ken-ichi Nomura, Sahil
Gulania, Rajiv K. Kalia, Aiichiro Nakano, Priya Vashishta
- Abstract summary: MISTIQS delivers end-to-end functionality for simulating the quantum many-body dynamics of systems governed by time-dependent Heisenberg Hamiltonians.
It provides high-level programming functionality for generating intermediate representations of quantum circuits.
- Score: 1.3192560874022086
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: We present MISTIQS, a Multiplatform Software for Time-dependent Quantum
Simulations. MISTIQS delivers end-to-end functionality for simulating the
quantum many-body dynamics of systems governed by time-dependent Heisenberg
Hamiltonians across multiple quantum computing platforms. It provides
high-level programming functionality for generating intermediate
representations of quantum circuits which can be translated into a variety of
industry-standard representations. Furthermore, it offers a selection of
circuit compilation and optimization methods and facilitates execution of the
quantum circuits on currently available cloud-based quantum computing backends.
MISTIQS serves as an accessible and highly flexible research and education
platform, allowing a broader community of scientists and students to perform
quantum many-body dynamics simulations on current quantum computers.
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