PennyLane is an open-source Python framework for quantum computing and machine learning, letting you build and test quantum algorithms easily.
Build and test quantum algorithms in Python
PennyLane is an open-source software platform designed to make quantum computing accessible to researchers, developers, and anyone curious about this emerging technology. With PennyLane, you can use Python to create, test, and experiment with quantum algorithms for machine learning, quantum chemistry, and more—all in one place.
Whether you're new to quantum programming or already experienced, PennyLane gives you the tools you need to bridge classical and quantum computing. You can integrate it with familiar machine learning libraries, explore quantum machine learning models, and dive into cutting-edge quantum research right from your own code editor. It's a friendly, research-driven platform that helps you bring quantum ideas to life.
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