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# ML.ENERGY Leaderboard | |
[![Leaderboard](https://custom-icon-badges.herokuapp.com/badge/ML.ENERGY-Leaderboard-blue.svg?logo=ml-energy)](https://ml.energy/leaderboard) | |
[![Deploy](https://github.com/ml-energy/leaderboard/actions/workflows/push_spaces.yaml/badge.svg?branch=web)](https://github.com/ml-energy/leaderboard/actions/workflows/push_spaces.yaml) | |
[![Apache-2.0 License](https://custom-icon-badges.herokuapp.com/github/license/ml-energy/leaderboard?logo=law)](/LICENSE) | |
How much energy do LLMs consume? | |
This README focuses on explaining how to run the benchmark yourself. | |
The actual leaderboard is here: https://ml.energy/leaderboard. | |
## Setup | |
### Model weights | |
- For models that are directly accessible in Hugging Face Hub, you don't need to do anything. | |
- For other models, convert them to Hugging Face format and put them in `/data/leaderboard/weights/lmsys/vicuna-13B`, for example. The last two path components (e.g., `lmsys/vicuna-13B`) are taken as the name of the model. | |
### Docker container | |
```console | |
$ git clone https://github.com/ml-energy/leaderboard.git | |
$ cd leaderboard | |
$ docker build -t ml-energy:latest . | |
# Replace /data/leaderboard with your data directory. | |
$ docker run -it \ | |
--name leaderboard \ | |
--gpus all \ | |
-v /data/leaderboard:/data/leaderboard \ | |
-v $(pwd):/workspace/leaderboard \ | |
ml-energy:latest bash | |
``` | |
## Running the benchmark | |
```console | |
# Inside the container | |
$ cd /workspace/leaderboard | |
$ python scripts/benchmark.py --model-path /data/leaderboard/weights/lmsys/vicuna-13B --input-file sharegpt/sg_90k_part1_html_cleaned_lang_first_sampled.json | |
$ python scripts/benchmark.py --model-path databricks/dolly-v2-12b --input-file sharegpt/sg_90k_part1_html_cleaned_lang_first_sampled.json | |
``` | |