Debanjum 306f7a2132 Show error in picking next tool to researcher llm in next iteration
Previously the whole research mode response would fail if the pick
next tool call to chat model failed. Now instead of it completely
failing, the researcher actor is told to try again in next iteration.

This allows for a more graceful degradation in answering a research
question even if a (few?) calls to the chat model fail.
2024-11-10 14:52:02 -08:00
2024-11-02 12:23:11 -07:00
2024-11-02 12:23:11 -07:00

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Your AI second brain

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Khoj is a personal AI app to extend your capabilities. It smoothly scales up from an on-device personal AI to a cloud-scale enterprise AI.

  • Chat with any local or online LLM (e.g llama3, qwen, gemma, mistral, gpt, claude, gemini).
  • Get answers from the internet and your docs (including image, pdf, markdown, org-mode, word, notion files).
  • Access it from your Browser, Obsidian, Emacs, Desktop, Phone or Whatsapp.
  • Create agents with custom knowledge, persona, chat model and tools to take on any role.
  • Automate away repetitive research. Get personal newsletters and smart notifications delivered to your inbox.
  • Find relevant docs quickly and easily using our advanced semantic search.
  • Generate images, talk out loud, play your messages.
  • Khoj is open-source, self-hostable. Always.
  • Run it privately on your computer or try it on our cloud app.

See it in action

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Go to https://app.khoj.dev to see Khoj live.

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You can see the full feature list here.

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