This repository collects clear, well-documented implementations of deep learning models and training utilities written by Sebastian Raschka. The code favors readability and pedagogy: components are organized so you can trace data flow through layers, losses, optimizers, and evaluation. Examples span fundamental architectures—MLPs, CNNs, RNN/Transformers—and practical tasks like image classification or text modeling. Reproducible training scripts and configuration files make it straightforward to rerun experiments or adapt them to your own datasets. The repo often pairs implementations with notes on design choices and trade-offs, turning it into both a toolbox and a learning resource. It’s suitable for students, researchers prototyping ideas, and practitioners who want clean baselines before adding complexity.

Features

  • Readable PyTorch implementations of classic and modern architectures
  • Training scripts with configs for reproducible experiments
  • Utility modules for data loading, metrics, logging, and checkpoints
  • Example notebooks that explain design choices and results
  • Baselines that are easy to extend for custom datasets and tasks
  • Consistent structure that supports rapid understanding and modification

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License

MIT License

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Registered

2025-10-23