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We are thrilled to introduce OpenCompass 2.0, an advanced suite featuring three key components: CompassKit, CompassHub, and CompassRank.
CompassRank has been significantly enhanced into the leaderboards that now incorporates both open-source benchmarks and proprietary benchmarks. This upgrade allows for a more comprehensive evaluation of models across the industry.
CompassHub presents a pioneering benchmark browser interface, designed to simplify and expedite the exploration and utilization of an extensive array of benchmarks for researchers and practitioners alike. To enhance the visibility of your own benchmark within the community, we warmly invite you to contribute it to CompassHub. You may initiate the submission process by clicking here.
CompassKit is a powerful collection of evaluation toolkits specifically tailored for Large Language Models and Large Vision-language Models. It provides an extensive set of tools to assess and measure the performance of these complex models effectively. Welcome to try our toolkits for in your research and products.
Star History
to OpenCompass!
Just like a compass guides us on our journey, OpenCompass will guide you through the complex landscape of evaluating large language models. With its powerful algorithms and intuitive interface, OpenCompass makes it easy to assess the quality and effectiveness of your NLP models.
🚩🚩🚩 Explore opportunities at OpenCompass! We're currently hiring full-time researchers/engineers and interns. If you're passionate about LLM and OpenCompass, don't hesitate to reach out to us via email. We'd love to hear from you!
🔥🔥🔥 We are delighted to announce that the OpenCompass has been recommended by the Meta AI, click Get Started of Llama for more information.
Attention
We launch the OpenCompass Collaboration project, welcome to support diverse evaluation benchmarks into OpenCompass! Clike Issue for more information. Let's work together to build a more powerful OpenCompass toolkit!
- [2024.04.29] We report the performance of several famous LLMs on the common benchmarks, welcome to documentation for more information! 🔥🔥🔥.
- [2024.04.26] We deprecated the multi-madality evaluating function from OpenCompass, related implement has moved to VLMEvalKit, welcome to use! 🔥🔥🔥.
- [2024.04.26] We supported the evaluation of ArenaHard welcome to try!🔥🔥🔥.
- [2024.04.22] We supported the evaluation of LLaMA3 和 LLaMA3-Instruct, welcome to try! 🔥🔥🔥
- [2024.02.29] We supported the MT-Bench, AlpacalEval and AlignBench, more information can be found here
- [2024.01.30] We release OpenCompass 2.0. Click CompassKit, CompassHub, and CompassRank for more information !
OpenCompass is a one-stop platform for large model evaluation, aiming to provide a fair, open, and reproducible benchmark for large model evaluation. Its main features include:
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Comprehensive support for models and datasets: Pre-support for 20+ HuggingFace and API models, a model evaluation scheme of 70+ datasets with about 400,000 questions, comprehensively evaluating the capabilities of the models in five dimensions.
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Efficient distributed evaluation: One line command to implement task division and distributed evaluation, completing the full evaluation of billion-scale models in just a few hours.
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Diversified evaluation paradigms: Support for zero-shot, few-shot, and chain-of-thought evaluations, combined with standard or dialogue-type prompt templates, to easily stimulate the maximum performance of various models.
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Modular design with high extensibility: Want to add new models or datasets, customize an advanced task division strategy, or even support a new cluster management system? Everything about OpenCompass can be easily expanded!
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Experiment management and reporting mechanism: Use config files to fully record each experiment, and support real-time reporting of results.
We provide OpenCompass Leaderboard for the community to rank all public models and API models. If you would like to join the evaluation, please provide the model repository URL or a standard API interface to the email address opencompass@pjlab.org.cn
.
Below are the steps for quick installation and datasets preparation.
conda create --name opencompass python=3.10 pytorch torchvision pytorch-cuda -c nvidia -c pytorch -y
conda activate opencompass
git clone https://github.com/open-compass/opencompass opencompass
cd opencompass
pip install -e .
conda create -n opencompass python=3.10 pytorch torchvision torchaudio cpuonly -c pytorch -y
conda activate opencompass
git clone https://github.com/open-compass/opencompass opencompass
cd opencompass
pip install -e .
# also please install requirements packages via `pip install -r requirements/api.txt` for API models if needed.
# Download dataset to data/ folder
wget https://github.com/open-compass/opencompass/releases/download/0.2.2.rc1/OpenCompassData-core-20240207.zip
unzip OpenCompassData-core-20240207.zip
Some third-party features, like Humaneval and Llama, may require additional steps to work properly, for detailed steps please refer to the Installation Guide.
After ensuring that OpenCompass is installed correctly according to the above steps and the datasets are prepared, you can evaluate the performance of the LLaMA-7b model on the MMLU and C-Eval datasets using the following command:
python run.py --models hf_llama_7b --datasets mmlu_ppl ceval_ppl
OpenCompass has predefined configurations for many models and datasets. You can list all available model and dataset configurations using the tools.
# List all configurations
python tools/list_configs.py
# List all configurations related to llama and mmlu
python tools/list_configs.py llama mmlu
You can also evaluate other HuggingFace models via command line. Taking LLaMA-7b as an example:
python run.py --datasets ceval_ppl mmlu_ppl \
--hf-path huggyllama/llama-7b \ # HuggingFace model path
--model-kwargs device_map='auto' \ # Arguments for model construction
--tokenizer-kwargs padding_side='left' truncation='left' use_fast=False \ # Arguments for tokenizer construction
--max-out-len 100 \ # Maximum number of tokens generated
--max-seq-len 2048 \ # Maximum sequence length the model can accept
--batch-size 8 \ # Batch size
--no-batch-padding \ # Don't enable batch padding, infer through for loop to avoid performance loss
--num-gpus 1 # Number of minimum required GPUs
Tip
To run the command above, you will need to remove the comments starting from #
first.
configuration with _ppl
is designed for base model typically.
configuration with _gen
can be used for both base model and chat model.
Through the command line or configuration files, OpenCompass also supports evaluating APIs or custom models, as well as more diversified evaluation strategies. Please read the Quick Start to learn how to run an evaluation task.
Language | Knowledge | Reasoning | Examination |
Word Definition
Idiom Learning
Semantic Similarity
Coreference Resolution
Translation
Multi-language Question Answering
Multi-language Summary
|
Knowledge Question Answering
|
Textual Entailment
Commonsense Reasoning
Mathematical Reasoning
Theorem Application
Comprehensive Reasoning
|
Junior High, High School, University, Professional Examinations
Medical Examinations
|
Understanding | Long Context | Safety | Code |
Reading Comprehension
Content Summary
Content Analysis
|
Long Context Understanding
|
Safety
Robustness
|
Code
|
Open-source Models | API Models |
|
- Subjective Evaluation
- Release CompassAreana
- Subjective evaluation.
- Long-context
- Long-context evaluation with extensive datasets.
- Long-context leaderboard.
- Coding
- Coding evaluation leaderboard.
- Non-python language evaluation service.
- Agent
- Support various agenet framework.
- Evaluation of tool use of the LLMs.
- Robustness
- Support various attack method
We appreciate all contributions to improving OpenCompass. Please refer to the contributing guideline for the best practice.
|
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Some code in this project is cited and modified from OpenICL.
Some datasets and prompt implementations are modified from chain-of-thought-hub and instruct-eval.
@misc{2023opencompass,
title={OpenCompass: A Universal Evaluation Platform for Foundation Models},
author={OpenCompass Contributors},
howpublished = {\url{https://github.com/open-compass/opencompass}},
year={2023}
}