AI RESEARCH
ProfiliTable: Profiling-Driven Tabular Data Processing via Agentic Workflows
arXiv CS.AI
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ArXi:2605.12376v1 Announce Type: new Table processing-including cleaning, transformation, augmentation, and matching-is a foundational yet error-prone stage in real-world data pipelines. While recent LLM-based approaches show promise for automating such tasks, they often struggle in practice due to ambiguous instructions, complex task structures, and the lack of structured feedback, resulting in syntactically correct but semantically flawed code.