• Stars
    star
    984
  • Rank 46,528 (Top 1.0 %)
  • Language
    Python
  • License
    Apache License 2.0
  • Created over 4 years ago
  • Updated over 1 year ago

Reviews

There are no reviews yet. Be the first to send feedback to the community and the maintainers!

Repository Details

📄 🤖 Semantic search and workflows for medical/scientific papers

Semantic search and workflows for medical/scientific papers

Version GitHub Release Date GitHub issues GitHub last commit Build Status Coverage Status


paperai is a semantic search and workflow application for medical/scientific papers.

demo

Applications range from semantic search indexes that find matches for medical/scientific queries to full-fledged reporting applications powered by machine learning.

architecture architecture

paperai and/or NeuML has been recognized in the following articles:

Installation

The easiest way to install is via pip and PyPI

pip install paperai

Python 3.7+ is supported. Using a Python virtual environment is recommended.

paperai can also be installed directly from GitHub to access the latest, unreleased features.

pip install git+https://github.com/neuml/paperai

See this link to help resolve environment-specific install issues.

Docker

Run the steps below to build a docker image with paperai and all dependencies.

wget https://raw.githubusercontent.com/neuml/paperai/master/docker/Dockerfile
docker build -t paperai .
docker run --name paperai --rm -it paperai

paperetl can be added in to have a single image to index and query content. Follow the instructions to build a paperetl docker image and then run the following.

docker build -t paperai --build-arg BASE_IMAGE=paperetl --build-arg START=/scripts/start.sh .
docker run --name paperai --rm -it paperai

Examples

The following notebooks and applications demonstrate the capabilities provided by paperai.

Notebooks

Notebook Description
Introducing paperai Overview of the functionality provided by paperai Open In Colab

Applications

Application Description
Search Search a paperai index. Set query parameters, execute searches and display results.

Building a model

paperai indexes databases previously built with paperetl. The following shows how to create a new paperai index.

  1. (Optional) Create an index.yml file

    paperai uses the default txtai embeddings configuration when not specified. Alternatively, an index.yml file can be specified that takes all the same options as a txtai embeddings instance. See the txtai documentation for more on the possible options. A simple example is shown below.

    path: sentence-transformers/all-MiniLM-L6-v2
    content: True
    
  2. Build embeddings index

    python -m paperai.index <path to input data> <optional index configuration>
    

The paperai.index process requires an input data path and optionally takes index configuration. This configuration can either be a vector model path or an index.yml configuration file.

Running queries

The fastest way to run queries is to start a paperai shell

paperai <path to model directory>

A prompt will come up. Queries can be typed directly into the console.

Building a report file

Reports support generating output in multiple formats. An example report call:

python -m paperai.report report.yml 50 md <path to model directory>

The following report formats are supported:

  • Markdown (Default) - Renders a Markdown report. Columns and answers are extracted from articles with the results stored in a Markdown file.
  • CSV - Renders a CSV report. Columns and answers are extracted from articles with the results stored in a CSV file.
  • Annotation - Columns and answers are extracted from articles with the results annotated over the original PDF files. Requires passing in a path with the original PDF files.

In the example above, a file named report.md will be created. Example report configuration files can be found here.

Tech Overview

paperai is a combination of a txtai embeddings index and a SQLite database with the articles. Each article is parsed into sentences and stored in SQLite along with the article metadata. Embeddings are built over the full corpus.

Multiple entry points exist to interact with the model.

  • paperai.report - Builds a report for a series of queries. For each query, the top scoring articles are shown along with matches from those articles. There is also a highlights section showing the most relevant results.
  • paperai.query - Runs a single query from the terminal
  • paperai.shell - Allows running multiple queries from the terminal