rasbt-LLMs-from-scratch/ch05
2025-09-16 08:12:01 -05:00
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01_main-chapter-code Fix some wording issues in the notes (#695) 2025-06-22 13:46:16 -05:00
02_alternative_weight_loading Alt weight loading code via PyTorch (#585) 2025-03-27 20:10:23 -05:00
03_bonus_pretraining_on_gutenberg fixed plot_losses (#677) 2025-06-19 18:55:43 -05:00
04_learning_rate_schedulers Add and link bonus material (#84) 2024-03-23 07:27:43 -05:00
05_bonus_hparam_tuning Remove unused params for hparam script (#710) 2025-06-25 12:50:32 -05:00
06_user_interface Add PyPI package (#576) 2025-03-23 19:28:49 -05:00
07_gpt_to_llama More efficient angles computation in RoPE (#830) 2025-09-16 03:23:33 +00:00
08_memory_efficient_weight_loading get rid of redundant memory profiler import (#744) 2025-07-16 07:36:51 -05:00
09_extending-tokenizers Add PyPI package (#576) 2025-03-23 19:28:49 -05:00
10_llm-training-speed Fix issue 724: unused args (#726) 2025-07-08 06:37:39 -05:00
11_qwen3 use apply_chat_template 2025-09-16 08:12:01 -05:00
12_gemma3 More efficient angles computation in RoPE (#830) 2025-09-16 03:23:33 +00:00
README.md - added (missing) Gemma3 bullet point in parent folder's readme.md (#788) 2025-08-22 15:03:47 -05:00

Chapter 5: Pretraining on Unlabeled Data

 

Main Chapter Code

 

Bonus Materials

  • 02_alternative_weight_loading contains code to load the GPT model weights from alternative places in case the model weights become unavailable from OpenAI
  • 03_bonus_pretraining_on_gutenberg contains code to pretrain the LLM longer on the whole corpus of books from Project Gutenberg
  • 04_learning_rate_schedulers contains code implementing a more sophisticated training function including learning rate schedulers and gradient clipping
  • 05_bonus_hparam_tuning contains an optional hyperparameter tuning script
  • 06_user_interface implements an interactive user interface to interact with the pretrained LLM
  • 07_gpt_to_llama contains a step-by-step guide for converting a GPT architecture implementation to Llama 3.2 and loads pretrained weights from Meta AI
  • 08_memory_efficient_weight_loading contains a bonus notebook showing how to load model weights via PyTorch's load_state_dict method more efficiently
  • 09_extending-tokenizers contains a from-scratch implementation of the GPT-2 BPE tokenizer
  • 10_llm-training-speed shows PyTorch performance tips to improve the LLM training speed
  • 11_qwen3 A from-scratch implementation of Qwen3 0.6B and Qwen3 30B-A3B (Mixture-of-Experts) including code to load the pretrained weights of the base, reasoning, and coding model variants
  • 12_gemma3 A from-scratch implementation of Gemma 3 270M and alternative with KV cache, including code to load the pretrained weights


Link to the video