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Learn about an advanced ETL framework for document processing in this Berkeley research presentation. Explore how DocETL leverages large language models and specialized operators like Map, Reduce, Resolve, and Split-Gather to handle complex document transformations. Understand the framework's innovative use of rewrite directives and two types of LLM-driven agents - generation and validation - that work together to optimize document processing tasks. Discover how the "gleaning" approach allows for dynamic adaptation of transformations based on data characteristics, improving scalability and precision in document-specific contexts. Follow along as the presentation covers complex document challenges, operator implementations, optimization processes, key terminology, performance metrics, and access to the framework's GitHub repository.
DocETL: AI Agents for Complex Document Processing and Data Transformation