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ML Notes
Home / Jurafsky

Speech & Language Processing

Notes from Jurafsky's NLP textbook covering language models and transformers

  • 01 Speech and Language Processing Notes →
  • 02 Regular Expressions and Text Processing →
  • 03 N-Grams and Language Models →
  • 04 Vector Semantics and Word Embeddings →
  • 05 Sequence Architectures: RNNs, LSTMs, and Attention →
  • 06 Encoder-Decoder Models →
  • 07 Transfer Learning and Pre-trained Models →