ipex-llm/python/llm/dev/benchmark/harness
Wang, Jian4 9df70d95eb
Refactor bigdl.llm to ipex_llm (#24)
* Rename bigdl/llm to ipex_llm

* rm python/llm/src/bigdl

* from bigdl.llm to from ipex_llm
2024-03-22 15:41:21 +08:00
..
bigdl_llm.py Refactor bigdl.llm to ipex_llm (#24) 2024-03-22 15:41:21 +08:00
harness_to_leaderboard.py Enable fp8e5 harness (#9761) 2023-12-22 16:59:48 +08:00
make_csv.py separate make_csv from the file 2024-02-23 16:33:38 +08:00
make_table.py fall back to make_table.py 2024-02-23 16:33:38 +08:00
README.md fix readme 2024-02-24 00:38:08 +08:00
run_llb.py Add harness nightly (#9552) 2023-12-01 14:16:35 +08:00
run_multi_llb.py harness tests on pvc multiple xpus (#9908) 2024-01-23 13:20:37 +08:00

Harness Evaluation

Harness evaluation allows users to eaisly get accuracy on various datasets. Here we have enabled harness evaluation with BigDL-LLM under Open LLM Leaderboard settings. Before running, make sure to have bigdl-llm installed.

Install Harness

git clone https://github.com/EleutherAI/lm-evaluation-harness.git
cd lm-evaluation-harness
git checkout b281b09
pip install -e .

Run

run python run_llb.py. run_llb.py combines some arguments in main.py to make evaluations easier. The mapping of arguments is defined as a dict in llb.py.

Evaluation on CPU

python run_llb.py --model bigdl-llm --pretrained /path/to/model --precision nf3 sym_int4 nf4 --device cpu --tasks hellaswag arc mmlu truthfulqa --batch 1 --no_cache

Evaluation on Intel GPU

python run_llb.py --model bigdl-llm --pretrained /path/to/model --precision nf3 sym_int4 nf4 --device xpu --tasks hellaswag arc mmlu truthfulqa --batch 1 --no_cache

Evaluation using multiple Intel GPU

python run_multi_llb.py --model bigdl-llm --pretrained /path/to/model --precision nf3 sym_int4 nf4 --device xpu:0,2,3 --tasks hellaswag arc mmlu truthfulqa --batch 1 --no_cache

Taking example above, the script will fork 3 processes, each for one xpu, to execute the tasks.

Results

We follow Open LLM Leaderboard to record our metrics, acc_norm for hellaswag and arc_challenge, mc2 for truthful_qa and acc for mmlu. For mmlu, there are 57 subtasks which means users may need to average them manually to get final result.

Summarize the results

"""python python make_table.py <input_dir> """