Covid-polygraph - a set of Machine Learning-driven fact-checking tools

Overview

Backend code for covid-polygraph.

ci Covid-polygraph, a set of Machine Learning-driven fact-checking tools that aim to address the issue of misleading information related to COVID-19.

Project is extended based on our CS3244 Team Project and more on code reference and reuse can be found in the Offline Training Pipeline Repository.

How to run the backend code

To run the code, use Docker:

docker build . -t covid-polygraph:latest

Afterwards, you can start the backend locally using the docker image built. For our team, we deploy this image onto our remote server for api access.

More about our project

Frontend code can be found here

Offline Training Pipeline code can be found here

More information about our project can be found on devpost

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