Spaces:
Runtime error
Runtime error
Metadata-Version: 2.1 | |
Name: trlx | |
Version: 0.7.0 | |
Summary: A repo for distributed training of language models with Reinforcement Learning via Human Feedback (RLHF) | |
Home-page: https://github.com/CarperAI/trlx | |
Author: Alex Havrilla | |
License: MIT | |
Description-Content-Type: text/markdown | |
Provides-Extra: bnb | |
Provides-Extra: dev | |
License-File: LICENSE | |
[![DOI](https://zenodo.org/badge/545104023.svg)](https://zenodo.org/badge/latestdoi/545104023) | |
# Transformer Reinforcement Learning X | |
trlX is a distributed training framework designed from the ground up to focus on fine-tuning large language models with reinforcement learning using either a provided reward function or a reward-labeled dataset. | |
Training support for π€ Hugging Face models is provided by [Accelerate](https://huggingface.co/docs/accelerate/)-backed trainers, allowing users to fine-tune causal and T5-based language models of up to 20B parameters, such as `facebook/opt-6.7b`, `EleutherAI/gpt-neox-20b`, and `google/flan-t5-xxl`. For models beyond 20B parameters, trlX provides [NVIDIA NeMo](https://github.com/NVIDIA/NeMo)-backed trainers that leverage efficient parallelism techniques to scale effectively. | |
The following RL algorithms are currently implemented: | |
| Algorithm | Accelerate Trainer | NeMo Trainer | | |
|-------------------------------------------------------------------------------|:------------------:|:-------------:| | |
| [Proximal Policy Optimization (PPO)](https://arxiv.org/pdf/1909.08593.pdf) | β | β | | |
| [Implicit Language Q-Learning (ILQL)](https://sea-snell.github.io/ILQL_site/) | β | β | | |
π **[Documentation](https://trlX.readthedocs.io)** | |
π§ **[CHEESE](https://github.com/carperai/cheese)** Collect human annotations for your RL application with our human-in-the-loop data collection library. | |
## Installation | |
```bash | |
git clone https://github.com/CarperAI/trlx.git | |
cd trlx | |
pip install torch --extra-index-url https://download.pytorch.org/whl/cu118 | |
pip install -e . | |
``` | |
## Examples | |
For more usage see [examples](./examples). You can also try the colab notebooks below: | |
| Description | Link | | |
| ----------- | ----------- | | |
| Simulacra (GPT2, ILQL) | [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/CarperAI/trlx/blob/main/examples/notebooks/trlx_simulacra.ipynb)| | |
| Sentiment (GPT2, ILQL) | [![Open In Colab](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/CarperAI/trlx/blob/main/examples/notebooks/trlx_sentiments.ipynb)| | |
Latest runs of the examples are on our [Weights & Biases](https://wandb.ai/sorry/trlx-references/reportlist) | |
## How to Train | |
You can train a model using a reward function or a reward-labeled dataset. | |
#### Using a reward function | |
```python | |
trainer = trlx.train('gpt2', reward_fn=lambda samples, **kwargs: [sample.count('cats') for sample in samples]) | |
``` | |
For **reward model** training refer to our [autocrit](https://github.com/CarperAI/autocrit) library. | |
#### Using a reward-labeled dataset | |
```python | |
trainer = trlx.train('EleutherAI/gpt-j-6B', samples=['dolphins', 'geese'], rewards=[1.0, 100.0]) | |
``` | |
#### Using a prompt-completion dataset | |
```python | |
trainer = trlx.train('gpt2', samples=[['Question: 1 + 2 Answer:', '3'], ['Question: Solve this equation: βn>0, s=2, sum(n ** -s). Answer:', '(pi ** 2)/ 6']]) | |
``` | |
#### Trainers provide a wrapper over their underlying model | |
```python | |
trainer.generate(**tokenizer('Q: Who rules the world? A:', return_tensors='pt'), do_sample=True) | |
``` | |
#### Configure Hyperparameters | |
```python | |
from trlx.data.default_configs import default_ppo_config | |
config = default_ppo_config() | |
config.model.model_path = 'EleutherAI/gpt-neox-20b' | |
config.tokenizer.tokenizer_path = 'EleutherAI/gpt-neox-20b' | |
config.train.seq_length = 2048 | |
trainer = trlx.train(config=config, reward_fn=lambda samples, **kwargs: [len(sample) for sample in samples]) | |
``` | |
To reduce memory usage (if you're experiencing CUDA Out of Memory errors), first try the lowest setting for the following hyperparameters and eventually increase them: | |
```python | |
# micro batch size per gpu | |
config.train.batch_size = 1 | |
# freeze all transformer layers | |
config.model.num_layers_unfrozen = 0 | |
# maximum sample length, prompts or samples longer than that will be truncated | |
config.train.seq_length = 128 | |
# micro batch size for sampling (specific for PPO) | |
config.method.chunk_size = 1 | |
# use an additional Q-head (specific for ILQL) | |
config.method.two_qs = False | |
``` | |
#### Save the resulting model to a Hugging Face pretrained language model. (Ready to upload to the Hub!) | |
```python | |
trainer.save_pretrained('/path/to/output/folder/') | |
``` | |
#### Use π€ Accelerate to launch distributed training | |
```bash | |
accelerate config # choose DeepSpeed option | |
accelerate launch examples/simulacra.py | |
``` | |
#### Use NeMo-Megatron to launch distributed training | |
Follow the setup instructions in the [NeMo README](./trlx/models/). | |
```bash | |
python examples/nemo_ilql_sentiments.py | |
``` | |
For more usage see the [NeMo README](./trlx/models) | |
#### Use Ray Tune to launch hyperparameter sweep | |
```bash | |
ray start --head --port=6379 | |
python -m trlx.sweep --config configs/sweeps/ppo_sweep.yml --accelerate_config configs/accelerate/ddp.yaml --num_gpus 4 examples/ppo_sentiments.py | |
``` | |
#### Benchmark your trlX fork against trlX's `main` branch | |
```bash | |
python -m trlx.reference octocat/trlx-fork:fix-branch | |
``` | |
## Logging | |
trlX uses the standard Python `logging` library to log training information to the console. The default logger is set to the `INFO` level, which means that `INFO`, `WARNING`, `ERROR`, and `CRITICAL` level messages will be printed to standard output. | |
To change the log level directly, you can use the verbosity setter. For example, to set the log level to `WARNING` use: | |
```python | |
import trlx | |
trlx.logging.set_verbosity(trlx.logging.WARNING) | |
``` | |
This will suppress `INFO` level messages, but still print `WARNING`, `ERROR`, and `CRITICAL` level messages. | |
You can also control logging verbosity by setting the `TRLX_VERBOSITY` environment variable to one of the standard logging [level names](https://docs.python.org/3/library/logging.html#logging-levels): | |
- `CRITICAL` (`trlx.logging.CRITICAL`) | |
- `ERROR` (`trlx.logging.ERROR`) | |
- `WARNING` (`trlx.logging.WARNING`) | |
- `INFO` (`trlx.logging.INFO`) | |
- `DEBUG` (`trlx.logging.DEBUG`) | |
```sh | |
export TRLX_VERBOSITY=WARNING | |
``` | |
By default, [`tqdm`](https://tqdm.github.io/docs/tqdm/) progress bars are used to display training progress. You can disable them by calling `trlx.logging.disable_progress_bar()`, otherwise `trlx.logging.enable_progress_bar()` to enable. | |
Messages can be formatted with greater detail by setting `trlx.logging.enable_explicit_format()`. This will inject call-site information into each log which may be helpful for debugging. | |
```sh | |
[2023-01-01 05:00:00,000] [INFO] [ppo_orchestrator.py:63:make_experience] [RANK 0] Message... | |
``` | |
> π‘ Tip: To reduce the amount of logging output, you might find it helpful to change log levels of third-party libraries used by trlX. For example, try adding `transformers.logging.set_verbosity_error()` to the top of your trlX scripts to silence verbose messages from the `transformers` library (see their [logging docs](https://huggingface.co/docs/transformers/main_classes/logging#logging) for more details). | |
## Contributing | |
For development check out these [guidelines](./CONTRIBUTING.md) | |
and also read our [docs](https://trlX.readthedocs.io) | |
## Acknowledgements | |
Many thanks to Leandro von Werra for contributing with [trl](https://github.com/lvwerra/trl/), a library that initially inspired this repo. | |