Buckets:

rtrm's picture
download
raw
7.05 kB
- title: 0. Setup
sections:
- local: chapter0/1
title: Introduction
- title: 1. Transformer models
sections:
- local: chapter1/1
title: Introduction
- local: chapter1/2
title: Natural Language Processing and Large Language Models
- local: chapter1/3
title: Transformers, what can they do?
- local: chapter1/4
title: How do Transformers work?
- local: chapter1/5
title: How 🤗 Transformers solve tasks
- local: chapter1/6
title: Transformer Architectures
- local: chapter1/7
title: Quick quiz
- local: chapter1/8
title: Inference with LLMs
- local: chapter1/9
title: Bias and limitations
- local: chapter1/10
title: Summary
- local: chapter1/11
title: Certification exam
quiz: 1
- title: 2. Using 🤗 Transformers
sections:
- local: chapter2/1
title: Introduction
- local: chapter2/2
title: Behind the pipeline
- local: chapter2/3
title: Models
- local: chapter2/4
title: Tokenizers
- local: chapter2/5
title: Handling multiple sequences
- local: chapter2/6
title: Putting it all together
- local: chapter2/7
title: Basic usage completed!
- local: chapter2/8
title: Optimized Inference Deployment
- local: chapter2/9
title: End-of-chapter quiz
quiz: 2
- title: 3. Fine-tuning a pretrained model
sections:
- local: chapter3/1
title: Introduction
- local: chapter3/2
title: Processing the data
- local: chapter3/3
title: Fine-tuning a model with the Trainer API
- local: chapter3/4
title: A full training loop
- local: chapter3/5
title: Understanding Learning Curves
- local: chapter3/6
title: Fine-tuning, Check!
- local: chapter3/7
title: End-of-chapter quiz
quiz: 3
- title: 4. Sharing models and tokenizers
sections:
- local: chapter4/1
title: The Hugging Face Hub
- local: chapter4/2
title: Using pretrained models
- local: chapter4/3
title: Sharing pretrained models
- local: chapter4/4
title: Building a model card
- local: chapter4/5
title: Part 1 completed!
- local: chapter4/6
title: End-of-chapter quiz
quiz: 4
- title: 5. The 🤗 Datasets library
sections:
- local: chapter5/1
title: Introduction
- local: chapter5/2
title: What if my dataset isn't on the Hub?
- local: chapter5/3
title: Time to slice and dice
- local: chapter5/4
title: Big data? 🤗 Datasets to the rescue!
- local: chapter5/5
title: Creating your own dataset
- local: chapter5/6
title: Semantic search with FAISS
- local: chapter5/7
title: 🤗 Datasets, check!
- local: chapter5/8
title: End-of-chapter quiz
quiz: 5
- title: 6. The 🤗 Tokenizers library
sections:
- local: chapter6/1
title: Introduction
- local: chapter6/2
title: Training a new tokenizer from an old one
- local: chapter6/3
title: Fast tokenizers' special powers
- local: chapter6/3b
title: Fast tokenizers in the QA pipeline
- local: chapter6/4
title: Normalization and pre-tokenization
- local: chapter6/5
title: Byte-Pair Encoding tokenization
- local: chapter6/6
title: WordPiece tokenization
- local: chapter6/7
title: Unigram tokenization
- local: chapter6/8
title: Building a tokenizer, block by block
- local: chapter6/9
title: Tokenizers, check!
- local: chapter6/10
title: End-of-chapter quiz
quiz: 6
- title: 7. Classical NLP tasks
sections:
- local: chapter7/1
title: Introduction
- local: chapter7/2
title: Token classification
- local: chapter7/3
title: Fine-tuning a masked language model
- local: chapter7/4
title: Translation
- local: chapter7/5
title: Summarization
- local: chapter7/6
title: Training a causal language model from scratch
- local: chapter7/7
title: Question answering
- local: chapter7/8
title: Mastering LLMs
- local: chapter7/9
title: End-of-chapter quiz
quiz: 7
- title: 8. How to ask for help
sections:
- local: chapter8/1
title: Introduction
- local: chapter8/2
title: What to do when you get an error
- local: chapter8/3
title: Asking for help on the forums
- local: chapter8/4
title: Debugging the training pipeline
local_fw: { pt: chapter8/4, tf: chapter8/4_tf }
- local: chapter8/5
title: How to write a good issue
- local: chapter8/6
title: Part 2 completed!
- local: chapter8/7
title: End-of-chapter quiz
quiz: 8
- title: 9. Building and sharing demos
subtitle: I trained a model, but how can I show it off?
sections:
- local: chapter9/1
title: Introduction to Gradio
- local: chapter9/2
title: Building your first demo
- local: chapter9/3
title: Understanding the Interface class
- local: chapter9/4
title: Sharing demos with others
- local: chapter9/5
title: Integrations with the Hugging Face Hub
- local: chapter9/6
title: Advanced Interface features
- local: chapter9/7
title: Introduction to Blocks
- local: chapter9/8
title: Gradio, check!
- local: chapter9/9
title: End-of-chapter quiz
quiz: 9
- title: 10. Curate high-quality datasets
subtitle: How to use Argilla to create amazing datasets
sections:
- local: chapter10/1
title: Introduction to Argilla
- local: chapter10/2
title: Set up your Argilla instance
- local: chapter10/3
title: Load your dataset to Argilla
- local: chapter10/4
title: Annotate your dataset
- local: chapter10/5
title: Use your annotated dataset
- local: chapter10/6
title: Argilla, check!
- local: chapter10/7
title: End-of-chapter quiz
quiz: 10
- title: 11. Fine-tune Large Language Models
subtitle: Use Supervised Fine-tuning and Low-Rank Adaptation to fine-tune a large language model
sections:
- local: chapter11/1
title: Introduction
- local: chapter11/2
title: Chat Templates
- local: chapter11/3
title: Fine-Tuning with SFTTrainer
- local: chapter11/4
title: LoRA (Low-Rank Adaptation)
- local: chapter11/5
title: Evaluation
- local: chapter11/6
title: Conclusion
- local: chapter11/7
title: Exam Time!
quiz: 11
- title: 12. Build Reasoning Models
subtitle: Learn how to build reasoning models like DeepSeek R1
new: true
sections:
- local: chapter12/1
title: Introduction
- local: chapter12/2
title: Reinforcement Learning on LLMs
- local: chapter12/3
title: The Aha Moment in the DeepSeek R1 Paper
- local: chapter12/3a
title: Advanced Understanding of GRPO in DeepSeekMath
- local: chapter12/4
title: Implementing GRPO in TRL
- local: chapter12/5
title: Practical Exercise to Fine-tune a model with GRPO
- local: chapter12/6
title: Practical Exercise with Unsloth
- local: chapter12/7
title: Coming soon...
- title: Course Events
sections:
- local: events/1
title: Live sessions and workshops
- local: events/2
title: Part 2 release event
- local: events/3
title: Gradio Blocks party

Xet Storage Details

Size:
7.05 kB
·
Xet hash:
4c2eb3931f188cd7563032388391c01bde9fdb3c8fc5b151b67a0a16d6d83dee

Xet efficiently stores files, intelligently splitting them into unique chunks and accelerating uploads and downloads. More info.