Automated LLM-based Prompt Engineering for Structured Data Processing
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Updated
Oct 19, 2024 - Jupyter Notebook
Automated LLM-based Prompt Engineering for Structured Data Processing
Master’s Thesis at TU Vienna, assessing state-of-the-art LLMs for automating BPO tasks. Features a custom Action Research-Based Compliance Testing (ARCT) framework, exploring LLM capabilities, context impact, and limitations in optimizing complex workflows.
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