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Optimizing LLM Workflows with DSPy
This chapter explores effective prompting techniques for large language models (LLMs) and introduces the innovative DSPI papers that frame inputs as functions with signatures. It emphasizes the importance of high-quality examples and breaking down tasks into simpler components to improve model performance and streamline workflows. The discussion also highlights the use of a tree structure of agents for complex reasoning, enhancing the overall efficiency of decision-making processes.