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Debanjum Singh Solanky 0ebfbb43ce Nest org, md results at level 2 on Emacs interface. Improve readability
- Makes it easier to fold/unfold, traverse and read results
- This 2 level nesting is already being used on the web interface

- Previously we were using the original nesting depth of the entry.
  This was aimed at providing more of the orginal context of the
  results. But currently this additional information does not provide
  as much, for the decreased legibility of the results
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src Nest org, md results at level 2 on Emacs interface. Improve readability 2022-08-01 04:01:18 +03:00
tests Remove tests that validate configuring org using commandline arguments 2022-07-31 23:42:00 +03:00
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.gitignore Create Basic Landing Page to Query Semantic Search and Render Results 2022-07-16 03:36:19 +04:00
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Khoj 🦅

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

Demo

https://user-images.githubusercontent.com/6413477/181664862-31565b0a-0e64-47e1-a79a-599dfc486c74.mp4

Description

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 is idle

Architecture

Setup

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 sample_config.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

Use

Upgrade

docker-compose build --pull

Troubleshoot

  • Symptom: Errors out with "Killed" in error message
  • Symptom: Errors out complaining about Tensors mismatch, null etc
    • Mitigation: Delete content-type > image section from docker_sample_config.yml

Miscellaneous

  • The experimental chat API endpoint uses the OpenAI API
    • It is disabled by default
    • To use it add your openai-api-key to config.yml

Development Setup

Setup on Local Machine

  1. Install Dependencies

    1. Install Python3 [Required]
    2. Install Conda [Required]
    3. Install Exiftool [Optional]
      sudo apt-get -y install libimage-exiftool-perl
      
  2. Install Khoj

    git clone https://github.com/debanjum/khoj && cd khoj
    conda env create -f config/environment.yml
    conda activate khoj
    
  3. Configure

    • Configure files/directories to search in content-type section of sample_config.yml
    • To run application on test data, update file paths containing /data/ to tests/data/ in sample_config.yml
      • Example replace /data/notes/*.org with tests/data/notes/*.org
  4. Run Load ML model, generate embeddings and expose API to query notes, images, transactions etc specified in config YAML

    python3 -m src.main -c=config/sample_config.yml -vv
    

Upgrade On Local Machine

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

Run Unit Tests

pytest

Performance

Query performance

  • Semantic search using the bi-encoder is fairly fast at <5 ms
  • Reranking using the cross-encoder is slower at <2s on 15 results. Tweak top_k to tradeoff speed for accuracy of results
  • Applying explicit filters is very slow currently at ~6s. This is because the filters are rudimentary. Considerable speed-ups can be achieved using indexes etc

Indexing performance

  • Indexing is more strongly impacted by the size of the source data
  • Indexing 100K+ line corpus of notes takes 6 minutes
  • Indexing 4000+ images takes about 15 minutes and more than 8Gb of RAM
  • Once https://github.com/debanjum/khoj/issues/36 is implemented, it should only take this long on first run

Miscellaneous

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

Credits