leaderboard / pegasus /README.md
Jae-Won Chung
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# Running benchmarks on multiple GPU nodes with Pegasus
[Pegasus](https://github.com/jaywonchung/pegasus) is an SSH-based multi-node command runner.
Different models have different verbosity, and benchmarking takes vastly different amounts of time.
Therefore, we want an automated piece of software that drains a queue of benchmarking jobs (one job per model) on a set of GPUs.
## Setup
### Install Pegasus
Pegasus needs to keep SSH connections with all the nodes in order to queue up and run jobs over SSH.
So you should install and run Pegasus on a computer that you can keep awake.
If you already have Rust set up:
```console
$ cargo install pegasus-ssh
```
Otherwise, you can set up Rust [here](https://www.rust-lang.org/tools/install), or just download Pegasus release binaries [here](https://github.com/jaywonchung/pegasus/releases/latest).
### Necessary setup for each node
Every node must have two things:
1. This repository cloned under `~/workspace/leaderboard`.
- If you want a different path, search and replace in `spawn-containers.yaml`.
2. Model weights under `/data/leaderboard/weights`.
- If you want a different path, search and replace in `setupspawn-containers.yaml` and `benchmark.yaml`.
### Specify node names for Pegasus
Modify `hosts.yaml` with nodes. See the file for an example.
- `hostname`: List the hostnames you would use in order to `ssh` into the node, e.g. `jaywonchung@gpunode01`.
- `gpu`: We want to create one Docker container for each GPU. List the indices of the GPUs you would like to use for the hosts.
### Set up Docker containers on your nodes with Pegasus
This spawns one container per GPU (named `leaderboard%d`), for every node.
```console
$ cd pegasus
$ cp spawn-containers.yaml queue.yaml
$ pegasus b
```
`b` stands for broadcast. Every command is run once on all (`hostname`, `gpu`) combinations.
## System benchmark
This will benchmark each model and get you data for the columns `energy`, `throughput`, `latency`, and `response_length`.
Use Pegasus to run benchmarks for all the models across all nodes.
```console
$ cd pegasus
$ cp benchmark.yaml queue.yaml
$ pegasus q
```
`q` stands for queue. Each command is run once on the next available (`hostname`, `gpu`) combination.
After all the tasks finish, aggregate all the data into one node and run [`compute_system_metrics.py`](../scripts/compute_system_metrics.py) to generate CSV files that the leaderboard can display.
## NLP benchmark
We'll use [lm-evaluation-harness](https://github.com/EleutherAI/lm-evaluation-harness/tree/d1537059b515511801ae9b742f8e949f1bfcd010) to run models through three NLP datasets: ARC challenge (`arc`), HellaSwag (`hellaswag`), and TruthfulQA (`truthfulqa`).
Use Pegasus to run benchmarks for all the models across all nodes.
```console
$ cd pegasus
$ cp nlp-eval.yaml queue.yaml
$ pegasus q
```
After all the tasks finish, aggregate all the data into one node and run [`aggregate_nlp_metrics.py`](../scripts/aggregate_nlp_metrics.py) to generate a single `score.csv` that the leaderboard can display.
### Dealing with OOM
Some tasks might run out of memory, in which case you should create a container with more GPUs:
1. Create a container with two GPUs, for example:
```console
$ docker run -dit \
--name leaderboard01 \
--gpus '"device=0,1"' \
-v /data/leaderboard:/data/leaderboard \
-v $HOME/workspace/leaderboard:/workspace/leaderboard \
mlenergy/leaderboard:latest bash
```
2. Revise `nlp-eval.yaml` and run with Pegasus, or run directly like this on LLaMA 7B and ARC, for example:
```console
$ docker exec leaderboard01 \
python lm-evaluation-harness/main.py \
--device cuda \
--no_cache \
--model hf-causal-experimental \
--model_args pretrained=/data/leaderboard/weights/metaai/llama-7B,trust_remote_code=True,use_accelerate=True \
--tasks arc_challenge \
--num_fewshot 25
```