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We are honored to have witnessed the tremendous progress of artificial general intelligence together with the community in the past year, and we are also very pleased that **OpenCompass** can help numerous developers and users.
We announce the launch of the **OpenCompass 2023 LLM Annual Leaderboard** plan. We expect to release the annual leaderboard of the LLMs in January 2024, systematically evaluating the performance of LLMs in various capabilities such as language, knowledge, reasoning, creation, long-text, and agents.
At that time, we will release rankings for both open-source models and commercial API models, aiming to provide a comprehensive, objective, and neutral reference for the industry and research community.
We sincerely invite various large models to join the OpenCompass to showcase their performance advantages in different fields. At the same time, we also welcome researchers and developers to provide valuable suggestions and contributions to jointly promote the development of the LLMs. If you have any questions or needs, please feel free to [contact us](mailto:opencompass@pjlab.org.cn). In addition, relevant evaluation contents, performance statistics, and evaluation methods will be open-source along with the leaderboard release.
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](mailto:zhangsongyang@pjlab.org.cn). 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](https://ai.meta.com/llama/get-started/#validation) of Llama for more information.
- **\[2024.01.17\]** We supported the evaluation of [InternLM2](https://github.com/open-compass/opencompass/blob/main/configs/eval_internlm2_keyset.py) and [InternLM2-Chat](https://github.com/open-compass/opencompass/blob/main/configs/eval_internlm2_chat_keyset.py), InternLM2 showed extremely strong performance in these tests, welcome to try! 🔥🔥🔥.
- **\[2024.01.17\]** We supported the needle in a haystack test with multiple needles, more information can be found [here](https://opencompass.readthedocs.io/en/latest/advanced_guides/needleinahaystack_eval.html#id8) 🔥🔥🔥.
- **\[2023.12.28\]** We have enabled seamless evaluation of all models developed using [LLaMA2-Accessory](https://github.com/Alpha-VLLM/LLaMA2-Accessory), a powerful toolkit for comprehensive LLM development. 🔥🔥🔥.
- **\[2023.12.22\]** We have released [T-Eval](https://github.com/open-compass/T-Eval), a step-by-step evaluation benchmark to gauge your LLMs on tool utilization. Welcome to our [Leaderboard](https://open-compass.github.io/T-Eval/leaderboard.html) for more details! 🔥🔥🔥.
- **\[2023.12.10\]** We have released [VLMEvalKit](https://github.com/open-compass/VLMEvalKit), a toolkit for evaluating vision-language models (VLMs), currently support 20+ VLMs and 7 multi-modal benchmarks (including MMBench series).
- **\[2023.12.10\]** We have supported Mistral AI's MoE LLM: **Mixtral-8x7B-32K**. Welcome to [MixtralKit](https://github.com/open-compass/MixtralKit) for more details about inference and evaluation.
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:
- **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.
- **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.
- **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.
- **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!
We provide [OpenCompass Leaderboard](https://rank.opencompass.org.cn/home) 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`.
Some third-party features, like Humaneval and Llama, may require additional steps to work properly, for detailed steps please refer to the [Installation Guide](https://opencompass.readthedocs.io/en/latest/get_started/installation.html).
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## 🏗️ ️Evaluation
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:
OpenCompass has predefined configurations for many models and datasets. You can list all available model and dataset configurations using the [tools](./docs/en/tools.md#list-configs).
```bash
# 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:
```bash
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
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](https://opencompass.readthedocs.io/en/latest/get_started/quick_start.html) to learn how to run an evaluation task.
We appreciate all contributions to improving OpenCompass. Please refer to the [contributing guideline](https://opencompass.readthedocs.io/en/latest/notes/contribution_guide.html) for the best practice.
Some datasets and prompt implementations are modified from [chain-of-thought-hub](https://github.com/FranxYao/chain-of-thought-hub) and [instruct-eval](https://github.com/declare-lab/instruct-eval).