Quantum simulation with hybrid tensor networks
- URL: http://arxiv.org/abs/2007.00958v2
- Date: Wed, 1 Sep 2021 03:28:11 GMT
- Title: Quantum simulation with hybrid tensor networks
- Authors: Xiao Yuan, Jinzhao Sun, Junyu Liu, Qi Zhao, and You Zhou
- Abstract summary: We introduce the framework of hybrid tensor networks with building blocks consisting of measurable quantum states and classically contractable tensors.
We numerically benchmark our method for finding the ground state of 1D and 2D spin systems of up to $8times 8$ and $9times 8$ qubits with operations only acting on $8+1$ and $9+1$ qubits.
Our approach sheds light on simulation of large practical problems with intermediate-scale quantum computers, with potential applications in chemistry, quantum many-body physics, quantum field theory, and quantum gravity thought experiments.
- Score: 20.177464200362337
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Tensor network theory and quantum simulation are respectively the key
classical and quantum computing methods in understanding quantum many-body
physics. Here, we introduce the framework of hybrid tensor networks with
building blocks consisting of measurable quantum states and classically
contractable tensors, inheriting both their distinct features in efficient
representation of many-body wave functions. With the example of hybrid tree
tensor networks, we demonstrate efficient quantum simulation using a quantum
computer whose size is significantly smaller than the one of the target system.
We numerically benchmark our method for finding the ground state of 1D and 2D
spin systems of up to $8\times 8$ and $9\times 8$ qubits with operations only
acting on $8+1$ and $9+1$ qubits,~respectively. Our approach sheds light on
simulation of large practical problems with intermediate-scale quantum
computers, with potential applications in chemistry, quantum many-body physics,
quantum field theory, and quantum gravity thought experiments.
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