[EMNLP2024] DA-Code: Agent Data Science Code Generation Benchmark for Large Language Models
DA-Code is a comprehensive evaluation dataset designed to assess the data analysis and code generation capabilities of LLM in agent-based data science tasks. Our papers and experiment reports have been published on Arxiv.
Dataset Overview
- 500 complex real-world data analysis tasks across Data Wrangling (DW), Machine Learning (ML), and Exploratory Data Analysis (EDA).
- Tasks cover the entire data analysis pipeline, from raw data handling to gaining insights using SQL and Python.
- Each example is meticulously designed to ensure high complexity and quality, with robust evaluation suites.
- An interactive sandbox environment allows LLMs/Agents to autonomously explore, reason, and complete tasks.
Usage
This dataset can be used to:
- Evaluate LLMs’ data analysis and code generation capabilities
- Benchmark autonomous reasoning in real-world tasks
- Develop and test multi-step data analysis strategies
Citation
If you use this dataset in your research, please cite our paper:
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