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Library providing easy to use PyTorch compatible Quantum Neural Network Layers for both universal and photonic quantum computers.

Project description

QAILab

About project

QAILab is a high level library, which enables the user to integrate quantum neural networks of different configurations into their existing PyTorch neural networks.
The library aims to support a large amount of backends from different quantum computer manufacturers, such as IBM, AQT and Orca Computing, via its integration with Quantum Launcher.

Installation

You can install QAILab via pip:

pip install qailab

Examples and tutorials

Examples and tutorials are available in the QAILab documentation

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