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Causal language modeling
There are two types of language modeling, causal and masked. This guide illustrates causal language modeling. Causal language models are frequently used for text generation. You can use these models for creative applications like choosing your own text adventure or an intelligent coding assistant like Copilot or CodeParrot.
Causal language modeling predicts the next token in a sequence of tokens, and the model can only attend to tokens on the left. This means the model cannot see future tokens. GPT-2 is an example of a causal language model.
This guide will show you how to:
Finetune DistilGPT2 on the r/askscience subset of the ELI5 dataset.
Use your finetuned model for inference.
BART, BERT, Bert Generation, BigBird, BigBird-Pegasus, BioGpt, Blenderbot, BlenderbotSmall, BLOOM, CamemBERT, CodeGen, CPM-Ant, CTRL, Data2VecText, ELECTRA, ERNIE, GIT, GPT-Sw3, OpenAI GPT-2, GPTBigCode, GPT Neo, GPT NeoX, GPT NeoX Japanese, GPT-J, LLaMA, Marian, mBART, MEGA, Megatron-BERT, MVP, OpenLlama, OpenAI GPT, OPT, Pegasus, PLBart, ProphetNet, QDQBert, Reformer, RemBERT, RoBERTa, RoBERTa-PreLayerNorm, RoCBert, RoFormer, RWKV, Speech2Text2, Transformer-XL, TrOCR, XGLM, XLM, XLM-ProphetNet, XLM-RoBERTa, XLM-RoBERTa-XL, XLNet, X-MOD
Before you begin, make sure you have all the necessary libraries installed:
We encourage you to log in to your Hugging Face account so you can upload and share your model with the community. When prompted, enter your token to log in:
Load ELI5 dataset
Start by loading a smaller subset of the r/askscience subset of the ELI5 dataset from the 🤗 Datasets library. This'll give you a chance to experiment and make sure everything works before spending more time training on the full dataset.
Split the dataset's train_asks
split into a train and test set with the train_test_split method:
Then take a look at an example:
While this may look like a lot, you're only really interested in the text
field. What's cool about language modeling tasks is you don't need labels (also known as an unsupervised task) because the next word is the label.
Preprocess
The next step is to load a DistilGPT2 tokenizer to process the text
subfield:
You'll notice from the example above, the text
field is actually nested inside answers
. This means you'll need to extract the text
subfield from its nested structure with the flatten
method:
Each subfield is now a separate column as indicated by the answers
prefix, and the text
field is a list now. Instead of tokenizing each sentence separately, convert the list to a string so you can jointly tokenize them.
Here is a first preprocessing function to join the list of strings for each example and tokenize the result:
To apply this preprocessing function over the entire dataset, use the 🤗 Datasets map method. You can speed up the map
function by setting batched=True
to process multiple elements of the dataset at once, and increasing the number of processes with num_proc
. Remove any columns you don't need:
This dataset contains the token sequences, but some of these are longer than the maximum input length for the model.
You can now use a second preprocessing function to
concatenate all the sequences
split the concatenated sequences into shorter chunks defined by
block_size
, which should be both shorter than the maximum input length and short enough for your GPU RAM.
Apply the group_texts
function over the entire dataset:
Now create a batch of examples using DataCollatorForLanguageModeling. It's more efficient to dynamically pad the sentences to the longest length in a batch during collation, instead of padding the whole dataset to the maximum length.
Use the end-of-sequence token as the padding token and set mlm=False
. This will use the inputs as labels shifted to the right by one element:
Use the end-of-sequence token as the padding token and set mlm=False
. This will use the inputs as labels shifted to the right by one element:
Train
If you aren't familiar with finetuning a model with the Trainer, take a look at the basic tutorial!
You're ready to start training your model now! Load DistilGPT2 with AutoModelForCausalLM:
At this point, only three steps remain:
Define your training hyperparameters in TrainingArguments. The only required parameter is
output_dir
which specifies where to save your model. You'll push this model to the Hub by settingpush_to_hub=True
(you need to be signed in to Hugging Face to upload your model).Pass the training arguments to Trainer along with the model, datasets, and data collator.
Call train() to finetune your model.
Once training is completed, use the evaluate() method to evaluate your model and get its perplexity:
Then share your model to the Hub with the push_to_hub() method so everyone can use your model:
If you aren't familiar with finetuning a model with Keras, take a look at the basic tutorial!
Then you can load DistilGPT2 with TFAutoModelForCausalLM:
Convert your datasets to the tf.data.Dataset
format with prepare_tf_dataset():
Configure the model for training with compile
. Note that Transformers models all have a default task-relevant loss function, so you don't need to specify one unless you want to:
This can be done by specifying where to push your model and tokenizer in the PushToHubCallback:
Finally, you're ready to start training your model! Call fit
with your training and validation datasets, the number of epochs, and your callback to finetune the model:
Once training is completed, your model is automatically uploaded to the Hub so everyone can use it!
For a more in-depth example of how to finetune a model for causal language modeling, take a look at the corresponding PyTorch notebook or TensorFlow notebook.
Inference
Great, now that you've finetuned a model, you can use it for inference!
Come up with a prompt you'd like to generate text from:
The simplest way to try out your finetuned model for inference is to use it in a pipeline(). Instantiate a pipeline
for text generation with your model, and pass your text to it:
Tokenize the text and return the input_ids
as PyTorch tensors:
Use the generate() method to generate text. For more details about the different text generation strategies and parameters for controlling generation, check out the Text generation strategies page.
Decode the generated token ids back into text:
Tokenize the text and return the input_ids
as TensorFlow tensors:
Use the generate() method to create the summarization. For more details about the different text generation strategies and parameters for controlling generation, check out the Text generation strategies page.
Decode the generated token ids back into text: