GeorgiosSmyrnis / open_lm

A repository for research on medium sized language models.

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OpenLM

OpenLM is a minimal but performative language modeling (LM) repository, aimed to facilitate research on medium sized LMs. We have verified the performance of OpenLM up to 7B parameters and 256 GPUs. In contrast with other repositories such as Megatron, we depend only on PyTorch, XFormers, or Triton for our core modeling code.

Contents

Release Notes

  • 09/26/23: Public release and featured on Laion Blog
  • 08/18/23: Updated README.md

Quickstart

Here we'll go over a basic example where we start from a fresh install, download and preprocess some training data, and train a model.

Setup

We require python >=3.9, and a current installation of pyTorch, as well as several other packages. The full list of requirements is contained in requirements.txt and can be installed in your python enviornment via >>> pip install -r requirements.txt Next, to access open_lm everywhere in your virtual environment, install it using pip (from within the top level github repo) >>> pip install --editable . Some considerations:

  • We like WandB and tensorboard for logging. We specify how to use these during training below.

Process Training Data

Next you must specify a collection of tokenized data. For the purposes of this example, we will use a recent dump of english Wikipedia, available on HuggingFace. To download this locally, we've included a script located at datapreprocess/wiki_download.py. All you have to do is specify an output directory for where the raw data should be stored:

python datapreprocess/wiki_download.py --output-dir path/to/raw_data

Next we process our training data by running it through a BPE tokenizer and chunk it into chunks of appropriate length. By default we use the tokenizer attached with GPT-NeoX-20B. To do this, use the script datapreprocess/make_2048.py:

>>> python datapreprocess/make_2048.py \
    --input-files path_to_raw_data/*.jsonl
    --output-dir preproc_data
    --num-workers 32
    --num-consumers 1

Where input-files passes all of its (possibly many) arguments through the python glob module, allowing for wildcards. Optionally, data can be stored in S3 by setting the environment variables: S3_BASE, and passing the flag --upload-to-s3 to the script. This saves sharded data to the given bucket with prefix of S3_BASE. E.g.

>>> export S3_BASE=preproc_data-v1/
>>> python datapreprocess/make2048.py --upload-to-s3 ... # same arguments as before

Run Training

Tokenized data can now be passed to the main training script, open_lm/main.py. Distributed computatation is handled via torchrun, and hyperparameters are specified by a variety of keyword arguments. We highlight several of the most important ones here:

  • train-data: location of the sharded tokenized training data. If locally generated and stored, this will point to a directory containing files like preproc_data/2048-v1/0/XXXXXXX.tar. Data are processed using the webdataset package where wildcards are supported like preproc_data/2048-v1/0/{0000000..0000099}.tar to select the first 100 .tar files.
  • model: Which model to use. See the table below to see valid options and parameter sizes for each.
  • train-num-samples: how many samples to use from the specified training dataset
  • name: name of this particular training run for logging purposes
  • report-to: if present, can be wandb, tensorboard, or all to stash logging information on WandB or Tensorboard.

Model choices are contained in the following table, where, for instance 11m indicates an 11 million parameter model and 1b indicates a 1 billion parameter model.

Model Name
open_lm_11m
open_lm_25m
open_lm_87m
open_lm_160m
open_lm_411m
open_lm_830m
open_lm_1b
open_lm_3b
open_lm_7b

An example training run can be called as follows:

>>> export CUDA_VISIBLE_DEVICES=0,1,2,3
>>> torchrun --nproc-per-node 4 -m open_lm.main   \
 --model open_lm_3b \
 --train-data /preproc_data/shard-{0000000..0000099}.tar \
 --train-num-samples 1000000000 \
 --workers 8 \
 --dataset-resampled \
 --precision amp_bfloat16 \
 --batch-size 8 \
 --grad-checkpointing \
 --log-every-n-steps 100 \
 --grad-clip-norm 1 \
 --data-key txt \
 --lr 3e-4 \
 --fsdp --fsdp-amp \
 --warmup 2000 \
 --wd 0.1 \
 --beta2 0.95 \
 --epochs 100 \
 --report-to wandb \
 --wandb-project-name open_lm_example \
 --name open_lm_ex_$RANDOM \
 --resume latest \
 --logs path/to/logging/dir/

Checkpoints and final model weights will be saved to the specified logs directory.

During training, the above command will pick shards to train on via sampling with replacement. Training can also be done by picking shards via sampling without replacement. To do this, the input dataset(s) must first be preprocessed using the following command:

python -m open_lm.utils.make_wds_manifest --data-dir /preproc_data/

This will create a file called manifest.jsonl under /preproc_data. Training can then be done by sampling wihout replacement via the following example commands:

>>> export CUDA_VISIBLE_DEVICES=0,1,2,3
>>> torchrun --nproc-per-node 4 -m open_lm.main   \
 --model open_lm_3b \
 --dataset-manifest /preproc_data/manifest.jsonl \
 --train-num-samples 1000000000 \
 --workers 8 \
 --precision amp_bfloat16 \
 --batch-size 8 \
 --grad-checkpointing \
 --log-every-n-steps 100 \
 --grad-clip-norm 1 \
 --data-key txt \
 --lr 3e-4 \
 --fsdp --fsdp-amp \
 --warmup 2000 \
 --wd 0.1 \
 --beta2 0.95 \
 --epochs 100 \
 --report-to wandb \
 --wandb-project-name open_lm_example \
 --name open_lm_ex_$RANDOM \
 --resume latest \
 --logs path/to/logging/dir/

Dataset manifest

The manifest created with open_lm/utils/make_wds_manifest.py is a jsonl file describing the dataset. Each line in this file corresponds to a shard of the dataset and is a json object containing two fields:

  • "shard": the name of a shard in the dataset.
  • "num_sequences": the number of sequences contained in the shards. Each sequence contains a set length of tokens.

This manifest file provides auxiliary information about the dataset, and is assumed to be found within the same directory as the shards.

Evaluate Model

Once trained, we can evaluate the model. This requires LLM Foundry, which can be installed via pip install llm-foundry. Next some configurations are required to pass to the evaluator: a skeleton of these parameters is located at eval/in_memory_hf_eval.yaml. Then just run the following script, making sure to point it at the checkpoint of your trained model (and it's correspending config .json file):

cd eval

python eval_openlm_ckpt.py \
--eval-yaml in_memory_hf_eval.yaml \
--model open_lm_1b  \
--checkpoint /path/to/openlm_checkpoint.pt
--positional_embedding_type head_rotary

Note that --positional-embedding-type head_rotary is only necessary if using the pretrained open_lm_1b model hosted below. See discussion in the next section about this.

Generate Text

One can also use a trained model to generate text. This is accessible via the script located at scripts/generate.py. The parameters are similar to those used in evaluation:

cd scripts

python generate.py \
--model open_lm_1b \
--checkpoint /path/to/openlm_checkpoint.pt \
--positional-embedding-type head_rotary \
--input-text "Please give me a recipe for chocolate chip cookies"

Again, note that --positional-embedding-type head_rotary is only necessary for the pretrained open_lm_1b model hosted below.

Pretrained Models

OpenLM 1B is a ~1Billion parameter model trained on a 1.6T token dataset which consists of a mix of RedPajama, Pile, S2ORC, The Pile of Law, Deepmind Math, and RealNews (the full mixture of training data is described in more detail here). The model checkpoint can be downloaded from HuggingFace here. The script used to train this model (for config-copying purposes) is located here. Once this checkpoint has been downloaded, you can evaluate it by following the directions in the Evaluate Model section above and passing --positional-embedding-type head_rotary or setting "positional_embedding_type": "head_rotary" in the model config (see note below).

Note: We trained this model with rotary embeddings applied to the head dimension, which is the default in xformers as of 09/01/2023. Since these models were trained, we have updated openlm to correctly apply the rotary embeddings to the sequence dimension (see this issue and this issue for details). To evaluate these models, ensure you use the "positional_embedding_type": "head_rotary" in the model config.

OpenLM-1B 250B Tokens 500B tokens 750B tokens 1T Tokens 1.25T Tokens 1.5T Tokens 1.6T Tokens
arc_challenge 0.27 0.28 0.29 0.28 0.29 0.31 0.31
arc_easy 0.49 0.50 0.51 0.53 0.54 0.56 0.56
boolq 0.60 0.61 0.62 0.62 0.65 0.64 0.65
copa 0.71 0.70 0.70 0.78 0.71 0.73 0.70
hellaswag 0.50 0.54 0.54 0.57 0.59 0.61 0.61
lambada_openai 0.56 0.57 0.61 0.61 0.65 0.65 0.66
piqa 0.70 0.70 0.71 0.72 0.73 0.74 0.74
triviaqa
winogrande 0.55 0.57 0.58 0.59 0.61 0.60 0.60
MMLU 0.24 0.24 0.24 0.23 0.26 0.24 0.25
Jeopardy 0.01 0.02 0.01 0.01 0.04 0.09 0.10
Winograd 0.75 0.77 0.77 0.79 0.81 0.80 0.79
Average 0.49 0.50 0.51 0.52 0.53 0.54 0.54
1B Baselines OPT-1.3B Pythia-1B Neox-1.3B OPT-IML-1.3B
arc_challenge 0.27 0.26 0.26 0.30
arc_easy 0.49 0.51 0.47 0.58
boolq 0.58 0.61 0.62 0.72
copa 0.75 0.68 0.72 0.73
hellaswag 0.54 0.49 0.48 0.54
lambada_openai 0.59 0.58 0.57 0.57
piqa 0.72 0.70 0.72 0.73
triviaqa
winogrande 0.59 0.53 0.55 0.59
MMLU 0.25 0.26 0.26 0.30
Jeopardy 0.01 0.00 0.00 0.12
Winograd 0.74 0.71 0.75 0.73
Average 0.50 0.48 0.49 0.54

OpenLM 7B is not yet done training, but we've released a checkpoint at 1.25T tokens. Information is the same as for OpenLM-1B above, including the information pertaining to rotary embeddings.

OpenLM-7B 275B Tokens 500B tokens 675B tokens 775B tokens 1T Tokens 1.25T Tokens 1.5T Tokens 1.6T Tokens LLAMA-7B MPT-7B
arc_challenge 0.35 0.35 0.36 0.37 0.39 0.39 0.41 0.39
arc_easy 0.60 0.61 0.62 0.62 0.63 0.66 0.65 0.67
boolq 0.67 0.66 0.69 0.69 0.70 0.70 0.77 0.75
copa 0.75 0.79 0.75 0.80 0.80 0.78 0.78 0.81
hellaswag 0.64 0.67 0.68 0.68 0.69 0.70 0.75 0.76
lambada_openai 0.67 0.68 0.69 0.70 0.70 0.70 0.74 0.70
piqa 0.75 0.76 0.76 0.76 0.77 0.77 0.79 0.80
triviaqa
winogrande 0.62 0.65 0.65 0.65 0.67 0.67 0.68 0.68
MMLU-0 shot 0.25 0.25 0.27 0.27 0.28 0.30 0.30 0.30
Jeopardy 0.15 0.18 0.23 0.22 0.16 0.21 0.33 0.31
Winograd 0.82 0.81 0.84 0.84 0.85 0.86 0.81 0.88
Average 0.57 0.58 0.60 0.60 0.60 0.61 0.64 0.64
MMLU-5 shot 0.34 0.34

Unit tests

For unit tests we use pytest. Either

pip install pytest

or create the open_lm_tests conda environment by running

conda env create --file environment-tests.yml

Tests live in the tests/ folder.

To run tests make sure you are on a machine with a GPU and run:

pytest tests/

Team and acknowledgements

Team (so-far, * = equal contrib): Suchin Gururangan*, Mitchell Wortsman*, Samir Yitzhak Gadre*, Achal Dave*, Maciej Kilian, Weijia Shi, Jean Mercat, Georgios Smyrnis, Gabriel Ilharco, Matt Jordan, Reinhard Heckel, Alex Dimakis, Ali Farhadi, Vaishaal Shankar*, Ludwig Schmidt.

Code is based heavily on open-clip developed by a team including Ross Wightman, Romain Beaumont, Cade Gordon, Mehdi Cherti, Jenia Jitsev, and open-flamingo, developed by a team including Anas Awadalla and Irena Gao. Additional inspiration is from lit-llama. We are greatful to stability.ai for resource support. OpenLM is developed by researchers from various affiliations including the RAIVN Lab at the University of Washington, UWNLP, Toyota Research Institute, Columbia University, and more.

Citation

If you use this model in your work, please use the following BibTeX citation:

@misc{open_lm,
  author = {Gururangan, Suchin and Wortsman, Mitchell and Gadre, Samir Yitzhak and Dave, Achal and Kilian, Maciej and Shi, Weijia and Mercat, Jean and Smyrnis, Georgios and Ilharco, Gabriel and Jordan, Matt and Heckel, Reinhard and Dimakis, Alex and Farhadi, Ali and Shankar, Vaishaal and Schmidt, Ludwig},
  title = {{open_lm}:  a minimal but performative language modeling (LM) repository},
  year = {2023},
  note = {GitHub repository},
  url = {https://github.com/mlfoundations/open_lm/}
}

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A repository for research on medium sized language models.

License:MIT License


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