PyTensor offers Python tools to define, optimize, and evaluate complex math expressions with multi-dimensional arrays. Explore docs, guides, and examples.
Define and optimize math expressions in Python
PyTensor is a Python library designed to help you define, optimize, and evaluate complex mathematical expressions, especially those involving multi-dimensional arrays. Whether you're working on machine learning models, scientific computing, or other math-heavy projects, PyTensor streamlines your workflow with efficient computation tools.
On the site, you'll find comprehensive documentation, a user guide, API references, and practical examples to help you get started. There are also links to the community, GitHub, and discussion forums, making it easy to find support or contribute. If you're looking to build or optimize math-driven Python applications, PyTensor is a valuable resource.
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