--- title: SE-Arena emoji: 🛠️ colorFrom: blue colorTo: purple sdk: gradio sdk_version: 5.8.0 app_file: app.py hf_oauth: true pinned: false short_description: The chatbot arena for software engineering --- # SE Arena: Explore and Test the Best SE Chatbots with Long-Context Interactions Welcome to **SE Arena**, an open-source platform for evaluating software engineering-focused chatbots. SE Arena is designed to benchmark foundation models (FMs), including large language models (LLMs), in iterative and context-rich workflows characteristic of software engineering (SE) tasks. ## Key Features - **Interactive Evaluation**: Test chatbots in multi-round conversations tailored for debugging, code generation, and requirement refinement. - **Transparent Leaderboard**: View model rankings across diverse SE workflows, updated in real-time using advanced metrics. - **Advanced Pairwise Comparisons**: Evaluate chatbots using metrics like Elo score, PageRank, and Newman modularity to understand their global dominance and task-specific strengths. - **Open-Source**: Built on [Hugging Face Spaces](https://huggingface.co/spaces/SE-Arena/Software-Engineering-Arena), fostering transparency and community-driven innovation. ## Why SE Arena? Existing evaluation frameworks often fall short in addressing the complex, iterative nature of SE tasks. SE Arena fills this gap by: - Supporting long-context, multi-turn evaluations. - Allowing comparisons of anonymous models without bias. - Providing rich, multidimensional metrics for nuanced evaluations. ## How It Works 1. **Submit a Prompt**: Sign in and input your SE-related task (e.g., debugging, code reviews). 2. **Compare Responses**: Two chatbots respond to your query side-by-side. 3. **Vote**: Choose the better response, mark as tied, or select "Can't Decide." 4. **Iterative Testing**: Continue the conversation with follow-up prompts to test long-context understanding. ## Metrics Used SE Arena goes beyond traditional Elo scores by incorporating: - **Eigenvector Centrality**: Highlights models that perform well against high-quality competitors. - **PageRank**: Accounts for cyclic dependencies and emphasizes importance in dense sub-networks. - **Newman Modularity**: Groups models into clusters based on similar performance patterns, helping users identify task-specific expertise. ## Getting Started ### Prerequisites - A [Hugging Face](https://huggingface.co) account. - Basic knowledge of software engineering workflows. ### Usage 1. Navigate to the [SE Arena platform](https://huggingface.co/spaces/SE-Arena/Software-Engineering-Arena). 2. Sign in with your Hugging Face account. 3. Enter your SE task prompt and start evaluating model responses. 4. Vote on the better response or continue multi-round interactions to test contextual understanding. ## Contributing We welcome contributions from the community! Here's how you can help: 1. **Submit Prompts**: Share your SE-related tasks to enrich our evaluation dataset. 2. **Report Issues**: Found a bug or have a feature request? Open an issue in this repository. 3. **Enhance the Codebase**: Fork the repository, make your changes, and submit a pull request. ## Privacy Policy Your interactions are anonymized and used solely for improving SE Arena and foundation model benchmarking. By using SE Arena, you agree to our [Terms of Service](#). ## Future Plans - **Enhanced Metrics**: Add round-wise analysis and context-aware metrics. - **Domain-Specific Sub-Leaderboards**: Focused rankings for debugging, requirement refinement, etc. - **Integration of Advanced Context Compression**: Techniques like LongRope and SelfExtend for long-term memory. - **Support for Multimodal Models**: Evaluate models integrating text, code, and other modalities. ## Contact For inquiries or feedback, please [open an issue](https://github.com/zhimin-z/SE-Arena/issues/new) in this repository. We welcome your contributions and suggestions!