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A Python package to integrate tensor network methods with quantum algorithms.

Project description

TN4QA

TN4QA (Tensor Networks for Quantum Algorithms) is a package designed to build workflows that use tensor network methods to assist quantum algorithms.

Installation

Install the dependencies using

pip install poetry
poetry install

Getting Started

From the top level of the repository you should be able to build the docs using the following

cd ./docs
make html
python3 -m http.server -d build/html 8080

so that the docs are accessible through http://localhost:8080. The documentation contains class information as well as tutorials on how to use TN4QA.

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