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Python tools for AI

Project description

aitk: Artificial Intelligence Toolkit

DOI

This collection contains two things: an open source set of Python tools, and a set of computational essays for exploring Artificial Intelligence, Machine Learning, and Robotics. This is a collaborative effort started by the authors, building on almost a century of collective experience in education and research.

The code and essays are designed to require as few computing resources as necessary, while still allowing readers to experience first-hand the topics covered.

Authors

  • Douglas Blank - Emeritus Professor of Computer Science, Bryn Mawr College; Head of Research at Comet.ml
  • Jim Marshall - Professor in the Computer Science Department at Sarah Lawrence College
  • Lisa Meeden - Professor in the Computer Science Department at Swarthmore College

Computational Essays

Each computational essay is described at Computational Essays. Our computational essays and a suggested sequencing through the notebooks can be found in the notebooks folder of this repo.

Artifical Intelligence Toolkit

aitk is a Python package containing the following modules.

AITK Community

For questions and comments, please use https://github.com/ArtificialIntelligenceToolkit/aitk/discussions/.

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