Debanjum Singh Solanky c11742f443 Add chat actor to schedule run query for user at specified times
- Detect when user intends to schedule a task, aka reminder
  Add new output mode: reminder. Add example of selecting the reminder
  output mode
- Extract schedule time (as cron timestring) and inferred query to run
  from user message
- Use APScheduler to call chat with inferred query at scheduled time
- Handle reminder scheduling from both websocket and http chat requests

- Support constructing scheduled task using chat history as context
  Pass chat history to scheduled query generator for improved context
  for scheduled task generation
2024-05-01 08:28:59 +05:30
2024-04-30 13:31:06 +05:30
2024-04-30 13:31:06 +05:30

Khoj Logo

test dockerize pypi Discord

The open-source, personal AI for your digital brain

🤖 Read Docs   •   🏮 Khoj Cloud   •   💬 Get Involved   •   📚 Read Blog


Khoj is an application that creates always-available, personal AI agents for you to extend your capabilities.

  • You can share your notes and documents to extend your digital brain.
  • Your AI agents have access to the internet, allowing you to incorporate realtime information.
  • Khoj is accessible on Desktop, Emacs, Obsidian, Web and Whatsapp.
  • You can share pdf, markdown, org-mode, notion files and github repositories.
  • You'll get fast, accurate semantic search on top of your docs.
  • Your agents can create deeply personal images and understand your speech.
  • Khoj is open-source, self-hostable. Always.

See it in action

Khoj Demo

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

Full feature list

You can see the full feature list here.

Self-Host

To get started with self-hosting Khoj, read the docs.

Contributors

Cheers to our awesome contributors! 🎉

Made with contrib.rocks.

Interested in Contributing?

We are always looking for contributors to help us build new features, improve the project documentation, or fix bugs. If you're interested, please see our Contributing Guidelines and check out our Contributors Project Board.

Sponsors

Shout out to our brilliant sponsors! 🌈

Description
No description provided
Readme AGPL-3.0 116 MiB
Languages
Python 51%
TypeScript 36.1%
CSS 4.1%
HTML 3.2%
Emacs Lisp 2.4%
Other 3.1%