Debanjum Singh Solanky 41c328dae0 Batch encode images to keep memory consumption manageable
- Issue:
  Process would get killed while encoding images
  for consuming too much memory

- Fix:
  - Encode images in batches and append to image_embeddings
  - No need to use copy or deep_copy anymore with batch processing.
    It would earlier throw too many files open error

Other Changes:
  - Use tqdm to see progress even when using batch
  - See progress bar of encoding independent of verbosity (for now)
2021-09-16 10:15:54 -07:00
2021-08-15 22:52:37 -07:00

Semantic Search

Allow natural language search on user content like notes, images, transactions using transformer based models

All data is processed locally. User can interface with semantic-search app via Emacs, API or Commandline

Dependencies

Install

git clone https://github.com/debanjum/semantic-search && cd semantic-search
conda env create -f environment.yml
conda activate semantic-search

Run

Load ML model, generate embeddings and expose API to query specified org-mode files

python3 src/main.py -c=sample_config.yml --verbose

Use

Upgrade

  cd semantic-search
  git pull origin master
  conda env update -f environment.yml
  conda activate semantic-search

Acknowledgments

Description
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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%