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arxiv:2410.20424

AutoKaggle: A Multi-Agent Framework for Autonomous Data Science Competitions

Published on Oct 27
ยท Submitted by zhangysk on Oct 30
#2 Paper of the day
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Abstract

Data science tasks involving tabular data present complex challenges that require sophisticated problem-solving approaches. We propose AutoKaggle, a powerful and user-centric framework that assists data scientists in completing daily data pipelines through a collaborative multi-agent system. AutoKaggle implements an iterative development process that combines code execution, debugging, and comprehensive unit testing to ensure code correctness and logic consistency. The framework offers highly customizable workflows, allowing users to intervene at each phase, thus integrating automated intelligence with human expertise. Our universal data science toolkit, comprising validated functions for data cleaning, feature engineering, and modeling, forms the foundation of this solution, enhancing productivity by streamlining common tasks. We selected 8 Kaggle competitions to simulate data processing workflows in real-world application scenarios. Evaluation results demonstrate that AutoKaggle achieves a validation submission rate of 0.85 and a comprehensive score of 0.82 in typical data science pipelines, fully proving its effectiveness and practicality in handling complex data science tasks.

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Discover AutoKaggle: Revolutionizing Data Science Competitions with Multi-Agent Collaboration! ๐Ÿš€

Introducing AutoKaggle โ€” a multi-agent framework designed to automate the full spectrum of data science competitions on Kaggle! From background understanding to model prediction, AutoKaggle takes on all phases, boosting efficiency and reducing manual overhead.

๐Ÿ’ก Highlights of AutoKaggle:
๐Ÿ› ๏ธ Phase-based workflow: Six key phases (Understanding, EDA, Cleaning, Feature Engineering, Model Building).
๐Ÿค– Five specialized agents: Reader, Planner, Developer, Reviewer, Summarizer.
๐Ÿ” Iterative debugging & unit testing for robust, correct code generation.
๐Ÿ“Š Built-in ML tools library to handle data cleaning, feature engineering, and modeling.

Join us on GitHub to explore, contribute, and watch AutoKaggle evolve!
๐ŸŒ [https://github.com/multimodal-art-projection/AutoKaggle]

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