iML: Executable, Problem-Grounded, and Broadly Exploratory Code-Driven AutoML
Researchers have introduced iML, a new framework for code-driven Automated Machine Learning (AutoML). iML addresses limitations in current AutoML systems by focusing on generating executable, problem-grounded, and broadly exploratory code. The framework employs a multi-agent approach that analyzes tasks and data to create a structured blueprint for code generation across various ML approaches, ensuring reliability through interface checking and iterative debugging. AI
IMPACT This framework could improve the reliability and flexibility of AutoML systems, making advanced machine learning more accessible and robust for practitioners.