Xingyao Wang 7270d21cf9 update documentation for evaluation tutorial 1 an în urmă
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EDA 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
agent_bench 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
biocoder 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
bird 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
browsing_delegation 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
gaia 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
gorilla 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
gpqa 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
humanevalfix 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
logic_reasoning 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
miniwob 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
mint 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
ml_bench 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
regression 275ea706cf Remove remaining global config (#3099) 1 an în urmă
static b2fdb963b6 Add detailed tutorial for adding new evaluation benchmarks (#1827) 1 an în urmă
swe_bench 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
toolqa 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
utils 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
webarena 31b244f95e [Refactor, Evaluation] Refactor and clean up evaluation harness to remove global config and use EventStreamRuntime (#3230) 1 an în urmă
README.md 7270d21cf9 update documentation for evaluation tutorial 1 an în urmă
__init__.py 2406b901df feat(SWE-Bench environment) integrate SWE-Bench sandbox (#1468) 1 an în urmă

README.md

Evaluation

This folder contains code and resources to run experiments and evaluations.

Logistics

To better organize the evaluation folder, we should follow the rules below:

  • Each subfolder contains a specific benchmark or experiment. For example, evaluation/swe_bench should contain all the preprocessing/evaluation/analysis scripts.
  • Raw data and experimental records should not be stored within this repo.
  • Important data files of manageable size and analysis scripts (e.g., jupyter notebooks) can be directly uploaded to this repo.

Supported Benchmarks

To learn more about how to integrate your benchmark into OpenDevin, check out tutorial here.

Software Engineering

Web Browsing

Misc. Assistance

Before everything begins: Setup Environment and LLM Configuration

Please follow instruction here to setup your local development environment and LLM.

OpenDevin in development mode uses config.toml to keep track of most configurations.

Here's an example configuration file you can use to define and use multiple LLMs:

[llm]
# IMPORTANT: add your API key here, and set the model to the one you want to evaluate
model = "gpt-4o-2024-05-13"
api_key = "sk-XXX"

[llm.eval_gpt4_1106_preview_llm]
model = "gpt-4-1106-preview"
api_key = "XXX"
temperature = 0.0

[llm.eval_some_openai_compatible_model_llm]
model = "openai/MODEL_NAME"
base_url = "https://OPENAI_COMPATIBLE_URL/v1"
api_key = "XXX"
temperature = 0.0

Result Visualization

Check this huggingface space for visualization of existing experimental results.

Upload your results

You can start your own fork of our huggingface evaluation outputs and submit a PR of your evaluation results to our hosted huggingface repo via PR following the guide here.