🤗 Transformers Notebooks¶
You can find here a list of the official notebooks provided by Hugging Face.
Also, we would like to list here interesting content created by the community. If you wrote some notebook(s) leveraging 🤗 Transformers and would like be listed here, please open a Pull Request so it can be included under the Community notebooks.
Hugging Face’s notebooks 🤗¶
Notebook | Description | |
---|---|---|
Getting Started Tokenizers | How to train and use your very own tokenizer | |
Getting Started Transformers | How to easily start using transformers | |
How to use Pipelines | Simple and efficient way to use State-of-the-Art models on downstream tasks through transformers | |
How to fine-tune a model on text classification | Show how to preprocess the data and fine-tune a pretrained model on any GLUE task. | |
How to fine-tune a model on language modeling | Show how to preprocess the data and fine-tune a pretrained model on a causal or masked LM task. | |
How to fine-tune a model on token classification | Show how to preprocess the data and fine-tune a pretrained model on a token classification task (NER, PoS). | |
How to fine-tune a model on question answering | Show how to preprocess the data and fine-tune a pretrained model on SQUAD. | |
How to train a language model from scratch | Highlight all the steps to effectively train Transformer model on custom data | |
How to generate text | How to use different decoding methods for language generation with transformers | |
How to export model to ONNX | Highlight how to export and run inference workloads through ONNX | |
How to use Benchmarks | How to benchmark models with transformers | |
Reformer | How Reformer pushes the limits of language modeling |
Community notebooks:¶
Notebook | Description | Author | |
---|---|---|---|
Train T5 in Tensorflow 2 | How to train T5 for any task using Tensorflow 2. This notebook demonstrates a Question & Answer task implemented in Tensorflow 2 using SQUAD | Muhammad Harris | |
Train T5 on TPU | How to train T5 on SQUAD with Transformers and Nlp | Suraj Patil | |
Fine-tune T5 for Classification and Multiple Choice | How to fine-tune T5 for classification and multiple choice tasks using a text-to-text format with PyTorch Lightning | Suraj Patil | |
Fine-tune DialoGPT on New Datasets and Languages | How to fine-tune the DialoGPT model on a new dataset for open-dialog conversational chatbots | Nathan Cooper | |
Long Sequence Modeling with Reformer | How to train on sequences as long as 500,000 tokens with Reformer | Patrick von Platen | |
Fine-tune BART for Summarization | How to fine-tune BART for summarization with fastai using blurr | Wayde Gilliam | |
Fine-tune a pre-trained Transformer on anyone's tweets | How to generate tweets in the style of your favorite Twitter account by fine-tune a GPT-2 model | Boris Dayma | |
A Step by Step Guide to Tracking Hugging Face Model Performance | A quick tutorial for training NLP models with HuggingFace and & visualizing their performance with Weights & Biases | Jack Morris | |
Pretrain Longformer | How to build a "long" version of existing pretrained models | Iz Beltagy | |
Fine-tune Longformer for QA | How to fine-tune longformer model for QA task | Suraj Patil | |
Evaluate Model with 🤗nlp | How to evaluate longformer on TriviaQA with nlp |
Patrick von Platen | |
Fine-tune T5 for Sentiment Span Extraction | How to fine-tune T5 for sentiment span extraction using a text-to-text format with PyTorch Lightning | Lorenzo Ampil | |
Fine-tune DistilBert for Multiclass Classification | How to fine-tune DistilBert for multiclass classification with PyTorch | Abhishek Kumar Mishra | |
Fine-tune BERT for Multi-label Classification | How to fine-tune BERT for multi-label classification using PyTorch | Abhishek Kumar Mishra | |
Fine-tune T5 for Summarization | How to fine-tune T5 for summarization in PyTorch and track experiments with WandB | Abhishek Kumar Mishra | |
Speed up Fine-Tuning in Transformers with Dynamic Padding / Bucketing | How to speed up fine-tuning by a factor of 2 using dynamic padding / bucketing | Michael Benesty | |
Pretrain Reformer for Masked Language Modeling | How to train a Reformer model with bi-directional self-attention layers | Patrick von Platen | |
Expand and Fine Tune Sci-BERT | How to increase vocabulary of a pretrained SciBERT model from AllenAI on the CORD dataset and pipeline it. | Tanmay Thakur | |
Fine-tune Electra and interpret with Integrated Gradients | How to fine-tune Electra for sentiment analysis and interpret predictions with Captum Integrated Gradients | Eliza Szczechla | |
fine-tune a non-English GPT-2 Model with Trainer class | How to fine-tune a non-English GPT-2 Model with Trainer class | Philipp Schmid | |
Fine-tune a DistilBERT Model for Multi Label Classification task | How to fine-tune a DistilBERT Model for Multi Label Classification task | Dhaval Taunk | |
Fine-tune ALBERT for sentence-pair classification | How to fine-tune an ALBERT model or another BERT-based model for the sentence-pair classification task | Nadir El Manouzi | |
Fine-tune Roberta for sentiment analysis | How to fine-tune an Roberta model for sentiment analysis | Dhaval Taunk | |
Evaluating Question Generation Models | How accurate are the answers to questions generated by your seq2seq transformer model? | Pascal Zoleko | |
Classify text with DistilBERT and Tensorflow | How to fine-tune DistilBERT for text classification in TensorFlow | Peter Bayerle | |
Leverage BERT for Encoder-Decoder Summarization on CNN/Dailymail | How to warm-start a EncoderDecoderModel with a bert-base-uncased checkpoint for summarization on CNN/Dailymail | Patrick von Platen | |
Leverage RoBERTa for Encoder-Decoder Summarization on BBC XSum | How to warm-start a shared EncoderDecoderModel with a roberta-base checkpoint for summarization on BBC/XSum | Patrick von Platen | |
Fine-tuning TAPAS on Sequential Question Answering (SQA) | How to fine-tune TapasForQuestionAnswering with a tapas-base checkpoint on the Sequential Question Answering (SQA) dataset | Niels Rogge | |
Evaluating TAPAS on Table Fact Checking (TabFact) | How to evaluate a fine-tuned TapasForSequenceClassification with a tapas-base-finetuned-tabfact checkpoint using a combination of the 🤗 datasets and 🤗 transformers libraries | Niels Rogge |