This tutorial will walk you through setting up the RedPajama dataset and launching the pretraining script.
RedPajama is an open-source reproduction of the original LLaMA training dataset.
It contains a total of 1.2 trillion tokens, divided into
Name | Size |
---|---|
Commoncrawl | 878B |
C4 | 175B |
GitHub | 59B |
Books | 26B |
ArXiv | 28B |
Wikipedia | 24B |
StackExchange | 20B |
The RedPajama repo contains the source code for collecting and preparing the dataset, which is Apache 2.0 licensed.
The data itself is licensed according to the original licenses with which its individual parts were released. The GitHub datasets are limited to MIT, BSD, or Apache 2.0 repositories.
Along with the full RedPajama-1T dataset, the smaller RedPajama-1T-Sample 1B sample dataset is also available for development.
You can download the data using git lfs:
# Make sure you have git-lfs installed (https://git-lfs.com):
sudo apt install git-lfs
# The full 1 trillion token dataset:
git clone https://huggingface.co/datasets/togethercomputer/RedPajama-Data-1T data/RedPajama-Data-1T
# The 1 billion token subset
git clone https://huggingface.co/datasets/togethercomputer/RedPajama-Data-1T-Sample \
data/RedPajama-Data-1T-Sample
The full dataset consists of 2084 jsonl
files (the sample dataset contains 11). In order to start pretraining lit-gpt
on it, you need to read, tokenize, and write the data in binary chunks. This will leverage the PackedDataset
streaming dataset that comes with lit-gpt. You will need to have the tokenizer config available:
pip install 'huggingface_hub[hf_transfer] @ git+https://github.com/huggingface/huggingface_hub' sentencepiece
python scripts/download.py \
--repo_id meta-llama/Llama-2-7b-chat-hf \
--access_token your_hf_token \
--tokenizer_only true
Then, run
python scripts/prepare_redpajama.py \
--source_path data/RedPajama-Data-1T \
--checkpoint_dir checkpoints/meta-llama/Llama-2-7b-hf/ \
--destination_path data/lit-redpajama
or
python scripts/prepare_redpajama.py \
--source_path data/RedPajama-Data-1T-Sample \
--checkpoint_dir checkpoints/meta-llama/Llama-2-7b-hf/ \
--destination_path data/lit-redpajama-sample \
--sample True
for the sample dataset.
In the above we are assuming that you will be using the same tokenizer as used in LLaMA, but any trained SentencePiece tokenizer with a 32000 vocabulary size will do here.
The script will take a while to run, so time for 🍵 (The 1B sample script takes about 45 min for the data preparation.)
Running the pretraining script with its default settings requires at least 4 GPUs with 40GB+ each (A100).
python pretrain/redpajama.py \
--devices 4 \
--io.train_data_dir data/lit-redpajama
For running on the sample dataset:
python pretrain/redpajama.py \
--devices 4 \
--io.train_data_dir data/lit-redpajama-sample
The script will save checkpoints periodically to the folder out/
.
By default, the pretrain/redpajama.py
script will pretrain the Llama 2 7B model with FSDP in
bfloat16
precision and gradient accumulation.
You can easily change the size of the model by passing a different string to the model name variable
--model_name "Llama-2-7b-hf"
at the top of this script.
The currently supported model names are contained in the config.py file. You can
- either search this file for lines containing "name =",
- or run
python scripts/download.py
without additional command line arguments
Keep in mind that the original LLaMA training for the 7B model required 83k A100 80GB hours, so you'll need access to a cluster.
Once you're in a cluster, you can follow these instructions to launch the script across machines:
The exposes several hyperparameters you can tweak through the command line.
For instance, micro_batch_size
should be adjusted so the process will use the available
GPU memory. For more tips to avoid out-of-memory issues, please also see the more detailed
Dealing with out-of-memory (OOM) errors guide.
Last, logging is kept minimal in the script. In order to use a particular logger
please refer to https://lightning.ai/docs/fabric/stable/api/loggers.html or
call a logging client library like wandb
directly.