December 2024
Intermediate to advanced
304 pages
8h 57m
English
Throughout the previous chapters, we’ve seen how generalized prompts that are lacking in hints toward how our products work or what rules and expectations are in place return less valuable prompts. Although slicing our tasks down to a sensible size is key, providing that vital information to set clear boundaries on an LLM’s output can make or break a response. That’s why we’ll conclude the final part of the book with an exploration on embedding context into our work.
In the following chapters, we’ll depart a little from the techniques we’ve learned so far and explore different ways in which context can be retrieved and added to LLMs and prompts alike. This means dipping our toes into more ...
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