Building LLM Applications with DSPy Framework - Moving Beyond Prompt Engineering
Offered By: Databricks via YouTube
Course Description
Overview
Discover a paradigm shift in LLM application development with this 42-minute conference talk from Databricks. Learn how to move beyond traditional prompt engineering by leveraging DSPy, an open-source framework that optimizes language model prompts, model tuning, and LLM applications through code. Explore the benefits of adopting DSPy for executives, including time and resource savings, and enhanced application performance. Gain practical knowledge on incorporating DSPy's "signatures, modules, and optimizers" functionality into your development process to create systems that empirically optimize LLM application performance. Presented by Matt Yates, Sr. Director AI, ML, & Data Science at Sephora, this talk equips developers with valuable insights for building more efficient and effective LLM applications.
Syllabus
Prompt Engineering is Dead; Build LLM Applications with DSPy Framework
Taught by
Databricks
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