Think Bayes 2 is the companion repository for the second edition of Allen B. Downey’s introduction to Bayesian statistics. It teaches Bayesian reasoning through computational methods instead of relying mainly on symbolic mathematics. Each chapter is presented as a Jupyter notebook where readers can study the text, run examples, and complete exercises. Separate solution materials help learners check their work and explore alternative approaches. The lessons cover probability distributions, Bayesian updating, estimation, prediction, comparison, and decision-making. Notebooks can run in Google Colab or be downloaded for local use. The repository also contains book sources, supporting code, and environment files for reproducible study.

Features

  • Chapter-by-chapter Jupyter notebooks
  • Executable Bayesian examples and exercises
  • Separate notebooks with exercise solutions
  • Google Colab and local execution options
  • Downloadable notebook archive
  • Book sources and reproducible environment files

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License

MIT License

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Additional Project Details

Programming Language

Python

Related Categories

Python Libraries

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22 hours ago