Waqas01CP/Applied-LLM-Workflow-Research
A practical portfolio and meta-analysis of advanced prompt engineering. This project not only demonstrates core techniques (ToT, CoD, Prompt Chaining) but also documents the development of a 'Master Workflow' designed to overcome inherent AI behavioral biases and limitations. Includes interactive Streamlit app with prompt playground.
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Python
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MIT
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Last pushed
Mar 05, 2026
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