angzeli/from-pytorch-to-bayesian-optimisation
A concept-first repository of Jupyter notebooks tracing a path from PyTorch fundamentals to Bayesian Optimisation, designed both as a structured learning journey and as clear, self-contained tutorials for others.
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Jupyter Notebook
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MIT
Last pushed
Apr 09, 2026
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