Debanjum Singh Solanky f75606d7f5 Improve doc search actor performance on vague, random or meta questions
- Issue
  Previously the doc search actor wouldn't extract good search queries
  to run on user's documents for broad, vague questions.

- Fix
  The updated extract questions prompt shows and tells the doc search
  actor on how to deal with such questions

  The doc search actor's temperature was also increased to support more
  creative/random questions. The previous temp of 0 was meant to
  encourage structured json output. But now with json mode, a low temp is
  not necessary to get json output
2024-08-13 12:53:39 +05:30
2024-07-07 18:26:10 +05:30
2024-07-26 20:14:45 +05:30
2024-07-26 20:14:45 +05:30

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