- Don't propagate max_tokens to the openai chat completion method. the max for the newer models is fixed at 4096 max output. The token limit is just used for input
* Add support for chatting with Anthropic's suite of models
- Had to use a custom class because there was enough nuance with how the anthropic SDK works that it would be better to simply separate out the logic. The extract questions flow needed modification of the system prompt in order to work as intended with the haiku model
- Pass file path of reference along with the compiled reference in
list of references returned by chat API converts
- Update the structure of references from list of strings to list of
dictionary (containing 'compiled' and 'file' keys)
- Pull out the compiled reference from the new references data struct
wherever it was is being used
Simplify, reuse, standardize code to render messages with references
in the obsidian, web and desktop clients. Specifically:
- Reuse function to create reference section, dedupe code
- Create reusable function to generate image markdown
- Simplify logic to render message with references
- Setup websocket using Khoj web app as reference.
- Moved the geolocating code to chat view out from the general pane
view
- Use loading spinner from web instead of the thinking emoji
It'll replace any highlighted text with the chat message or if not
text is highlighted, it'll insert the chat message at the last cursor
position in the active file
- Jump to chat, show similar actions from nav menu of Khoj side pane
- Add chat, search icons from web, desktop app
- Use lucide icon for find similar (for now)
- Match proportions of find similar icon to khoj other icons via css, js
- Use KhojPaneView abstract class to allow reuse of common functionality like
- Creating the nav bar header in side pane views
- Loading geo-location data for chat context
This should make creating new views easier
* Update suggested automations
* add a schedule picker when creating an automation
* Create a new conversation in flow of the automation scheduling in order to send a preview and deliver more consistent results
* Start adding in scaffolding to manually trigger a test job for an automation
* Add support for manually triggering automations for testing
* Schedule automation asynchronously
* Update styling of the preview button
* Improve admin lookup experience and prevent jobs from being scheduled to run every minute of everyday
* Ignore mypy issues on job info short description
### Description and Rationale for Changes
This feature includes thumbs up and thumbs down buttons on Khoj's chat responses that provide automated feedback. When a thumbs up/down button is clicked, the code sends an email to team@khoj.dev with the following:
* user query
* khoj's response
* whether the sentiment of the user was good or bad.
This is critical in improving Khoj's nondeterministic LLM model for a better user experience.
### List of Changes
* new endpoint in `api_chat.py` (/feedback) that can be used to trigger mail sending).
* thumbs up and thumbs down buttons implemented in `chat.html`
* new function in `routers/email.py` to handle feedback email sending via resend
* `feedback.html` template for a formatted email with the feedback.
---------
Co-authored-by: mythicalcow <mythicalcow@linux.myguest.virtualbox.org>
Co-authored-by: sabaimran <narmiabas@gmail.com>
* Improve the automations UX
- Add suggested jobs to elimiinate some of the cold start problem
- Make each of the tasks cards that are clickable/editable
* Hide suggested automations that have already been added
* Add a footer and reapply styling when a save action is taken on a card
- Allows having it open on the side as you traverse your Obsidian notes
- Allow faster time to response, having responses visible for context
- Enables ambient interactions
* Make conversations optionally shareable
- Shared conversations are viewable by anyone, without a login wall
- Can share a conversation from the three dot menu
- Add a new model for Public Conversation
- The rationale for a separate model is that public and private conversations have different assumptions. Separating them reduces some of the code specificity on our server-side code and allows us for easier interpretation and stricter security. Separating the data model makes it harder to accidentally view something that was meant to be private
- Add a new, read-only view for public conversations