Skip to main content

A natural language search engine for your personal notes, transactions and images

Project description

Khoj 🦅

build test publish

A natural language search engine for your personal notes, transactions and images

Table of Contents

Features

  • Natural: Advanced natural language understanding using Transformer based ML Models
  • Local: Your personal data stays local. All search, indexing is done on your machine*
  • Incremental: Incremental search for a fast, search-as-you-type experience
  • Pluggable: Modular architecture makes it easy to plug in new data sources, frontends and ML models
  • Multiple Sources: Search your Org-mode and Markdown notes, Beancount transactions and Photos
  • Multiple Interfaces: Search using a Web Browser, Emacs or the API

Demos

Khoj in Obsidian

https://user-images.githubusercontent.com/6413477/210486007-36ee3407-e6aa-4185-8a26-b0bfc0a4344f.mp4

Description
  • Install Khoj via pip and start Khoj backend in non-gui mode
  • Install Khoj plugin via Community Plugins settings pane on Obsidian app
  • Check the new Khoj plugin settings
  • Let Khoj backend index the markdown files in the current Vault
  • Open Khoj plugin on Obsidian via Search button on Left Pane
  • Search "Announce plugin to folks" in the Obsidian Plugin docs
  • Jump to the search result

Khoj in Emacs, Browser

https://user-images.githubusercontent.com/6413477/184735169-92c78bf1-d827-4663-9087-a1ea194b8f4b.mp4

Description
  • Install Khoj via pip
  • Start Khoj app
  • Add this readme and khoj.el readme as org-mode for Khoj to index
  • Search "Setup editor" on the Web and Emacs. Re-rank the results for better accuracy
  • Top result is what we are looking for, the section to Install Khoj.el on Emacs
Analysis
  • The results do not have any words used in the query
    • Based on the top result it seems the re-ranking model understands that Emacs is an editor?
  • The results incrementally update as the query is entered
  • The results are re-ranked, for better accuracy, once user hits enter

Interfaces

Architecture

Setup

These are the general setup instructions for Khoj.

1. Install

pip install khoj-assistant

2. Start App

khoj

3. Configure

  1. Enable content types and point to files to search in the First Run Screen that pops up on app start
  2. Click Configure and wait. The app will download ML models and index the content for search

Use

Interfaces

Query Filters

Use structured query syntax to filter the natural language search results

  • Word Filter: Get entries that include/exclude a specified term
    • Entries that contain term_to_include: +"term_to_include"
    • Entries that contain term_to_exclude: -"term_to_exclude"
  • Date Filter: Get entries containing dates in YYYY-MM-DD format from specified date (range)
    • Entries from April 1st 1984: dt:"1984-04-01"
    • Entries after March 31st 1984: dt>="1984-04-01"
    • Entries before April 2nd 1984 : dt<="1984-04-01"
  • File Filter: Get entries from a specified file
    • Entries from incoming.org file: file:"incoming.org"
  • Combined Example
    • what is the meaning of life? file:"1984.org" dt>="1984-01-01" dt<="1985-01-01" -"big" -"brother"
    • Adds all filters to the natural language query. It should return entries
      • from the file 1984.org
      • containing dates from the year 1984
      • excluding words "big" and "brother"
      • that best match the natural language query "what is the meaning of life?"

Upgrade

Upgrade Khoj Server

pip install --upgrade khoj-assistant

Upgrade Khoj on Emacs

  • Use your Emacs Package Manager to Upgrade
  • See khoj.el readme for details

Upgrade Khoj on Obsidian

  • Upgrade via the Community plugins tab on the settings pane in the Obsidian app
  • See the khoj plugin readme for details

Troubleshoot

Install fails while building Tokenizer dependency

  • Details: pip install khoj-assistant fails while building the tokenizers dependency. Complains about Rust.
  • Fix: Install Rust to build the tokenizers package. For example on Mac run:
    brew install rustup
    rustup-init
    source ~/.cargo/env
    
  • Refer: Issue with Fix for more details

Search starts giving wonky results

  • Fix: Open /api/update?force=true[^2] in browser to regenerate index from scratch
  • Note: This is a fix for when you percieve the search results have degraded. Not if you think they've always given wonky results

Khoj in Docker errors out with "Killed" in error message

Khoj errors out complaining about Tensors mismatch or null

  • Mitigation: Disable image search using the desktop GUI

Advanced Usage

Access Khoj on Mobile

  1. Setup Khoj on your personal server. This can be any always-on machine, i.e an old computer, RaspberryPi(?) etc
  2. Install Tailscale on your personal server and phone
  3. Open the Khoj web interface of the server from your phone browser.
    It should be http://tailscale-ip-of-server:8000 or http://name-of-server:8000 if you've setup MagicDNS
  4. Click the Add to Homescreen button
  5. Enjoy exploring your notes, transactions and images from your phone!

Chat with Notes

Overview

  • Provides a chat interface to inquire and engage with your notes
  • Chat Types:
    • Summarize: Pulls the most relevant note from your notes and summarizes it
    • Chat: Also does general chat. It guesses whether to give a general response or search, summarizes from your note.
      E.g "how was your day?" will give a general response. But When did I go surfing? should give a response from your notes
  • Note: Your query and top note from search result will be sent to OpenAI for processing

Use

  1. Setup your OpenAI API key in Khoj
  2. Open /chat?type=summarize[^2]
  3. Type your queries, see summarized response by Khoj from your notes

Demo

Use OpenAI Models for Search

Setup

  1. Set encoder-type, encoder and model-directory under asymmetric and/or symmetric search-type in your khoj.yml[^1]:
       asymmetric:
    -    encoder: "sentence-transformers/multi-qa-MiniLM-L6-cos-v1"
    +    encoder: text-embedding-ada-002
    +    encoder-type: src.utils.models.OpenAI
         cross-encoder: "cross-encoder/ms-marco-MiniLM-L-6-v2"
    -    encoder-type: sentence_transformers.SentenceTransformer
    -    model_directory: "~/.khoj/search/asymmetric/"
    +    model-directory: null
    
  2. Setup your OpenAI API key in Khoj
  3. Restart Khoj server to generate embeddings. It will take longer than with offline models.

Warnings

This configuration uses an online model

  • It will send all notes to OpenAI to generate embeddings
  • All queries will be sent to OpenAI when you search with Khoj
  • You will be charged by OpenAI based on the total tokens processed
  • It requires an active internet connection to search and index

Miscellaneous

Set your OpenAI API key in Khoj

If you want, Khoj can be configured to use OpenAI for search and chat.
Add your OpenAI API to Khoj by using either of the two options below:

  • Open the Khoj desktop GUI, add your OpenAI API key and click Configure Ensure khoj is started without the --no-gui flag. Check your system tray to see if Khoj 🦅 is minimized there.
  • Set openai-api-key field under processor.conversation section in your khoj.yml[^1] to your OpenAI API key and restart khoj:
    processor:
      conversation:
    -    openai-api-key: # "YOUR_OPENAI_API_KEY"
    +    openai-api-key: sk-aaaaaaaaaaaaaaaaaaaaaaaahhhhhhhhhhhhhhhhhhhhhhhh
        model: "text-davinci-003"
        conversation-logfile: "~/.khoj/processor/conversation/conversation_logs.json"
    

Warning: This will enable khoj to send your query and note(s) to OpenAI for processing

Beta API

Performance

Query performance

  • Semantic search using the bi-encoder is fairly fast at <50 ms
  • Reranking using the cross-encoder is slower at <2s on 15 results. Tweak top_k to tradeoff speed for accuracy of results
  • Filters in query (e.g by file, word or date) usually add <20ms to query latency

Indexing performance

  • Indexing is more strongly impacted by the size of the source data
  • Indexing 100K+ line corpus of notes takes about 10 minutes
  • Indexing 4000+ images takes about 15 minutes and more than 8Gb of RAM
  • Note: It should only take this long on the first run as the index is incrementally updated

Miscellaneous

  • Testing done on a Mac M1 and a >100K line corpus of notes
  • Search, indexing on a GPU has not been tested yet

Development

Visualize Codebase

Interactive Visualization

Setup

Using Pip

1. Install
git clone https://github.com/debanjum/khoj && cd khoj
python3 -m venv .venv && source .venv/bin/activate
pip install -e .
2. Configure
  • Copy the config/khoj_sample.yml to ~/.khoj/khoj.yml
  • Set input-files or input-filter in each relevant content-type section of ~/.khoj/khoj.yml
    • Set input-directories field in image content-type section
  • Delete content-type and processor sub-section(s) irrelevant for your use-case
3. Run
khoj -vv

Load ML model, generate embeddings and expose API to query notes, images, transactions etc specified in config YAML

4. Upgrade
# To Upgrade To Latest Stable Release
# Maps to the latest tagged version of khoj on master branch
pip install --upgrade khoj-assistant

# To Upgrade To Latest Pre-Release
# Maps to the latest commit on the master branch
pip install --upgrade --pre khoj-assistant

# To Upgrade To Specific Development Release.
# Useful to test, review a PR.
# Note: khoj-assistant is published to test PyPi on creating a PR
pip install -i https://test.pypi.org/simple/ khoj-assistant==0.1.5.dev57166025766

Using Docker

1. Clone
git clone https://github.com/debanjum/khoj && cd khoj
2. Configure
  • Required: Update docker-compose.yml to mount your images, (org-mode or markdown) notes and beancount directories
  • Optional: Edit application configuration in khoj_docker.yml
3. Run
docker-compose up -d

Note: The first run will take time. Let it run, it's mostly not hung, just generating embeddings

4. Upgrade
docker-compose build --pull

Using Conda

1. Install Dependencies
2. Install Khoj
git clone https://github.com/debanjum/khoj && cd khoj
conda env create -f config/environment.yml
conda activate khoj
python3 -m pip install pyqt6  # As conda does not support pyqt6 yet
3. Configure
  • Copy the config/khoj_sample.yml to ~/.khoj/khoj.yml
  • Set input-files or input-filter in each relevant content-type section of ~/.khoj/khoj.yml
    • Set input-directories field in image content-type section
  • Delete content-type, processor sub-sections irrelevant for your use-case
4. Run
python3 -m src.main -vv

Load ML model, generate embeddings and expose API to query notes, images, transactions etc specified in config YAML

5. Upgrade
cd khoj
git pull origin master
conda deactivate khoj
conda env update -f config/environment.yml
conda activate khoj

Test

pytest

Credits

[^1]: Default Khoj config file @ ~/.khoj/khoj.yml

[^2]: Default Khoj url @ http://localhost:8000

Project details


Release history Release notifications | RSS feed

Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

khoj-assistant-0.2.2a1673802220.tar.gz (1.1 MB view details)

Uploaded Source

Built Distribution

File details

Details for the file khoj-assistant-0.2.2a1673802220.tar.gz.

File metadata

File hashes

Hashes for khoj-assistant-0.2.2a1673802220.tar.gz
Algorithm Hash digest
SHA256 184c576e6c740646f5c9f0590fa439196ca50c230280978a88e36eedf07407db
MD5 d68fd720c99d242b2de1cfba0f7d8683
BLAKE2b-256 84627592fe2f415ce4d86dca0eaa1c6ff586ee9d6973ec99d2fc3bc4cbb149c2

See more details on using hashes here.

File details

Details for the file khoj_assistant-0.2.2a1673802220-py3-none-any.whl.

File metadata

File hashes

Hashes for khoj_assistant-0.2.2a1673802220-py3-none-any.whl
Algorithm Hash digest
SHA256 2ce342d4895e202379a1713f97583993d69e810cdc8dec1e6747be1f49432470
MD5 cd991c5f1c16b661493bef3ae9ed8a37
BLAKE2b-256 49947f50969af25b4bb6d4d6415d22124cee7642e2cdb7f11eb1230255fc903d

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page