Predico Disease Prediction system based on symptoms provided by patient- using Python-Django & Machine Learning

Overview

Predico Disease Prediction system based on symptoms provided by patient- using Python-Django & Machine Learning

Author @FelixDaudi- Jomo Kenyatta University of Agriculture and Technology- Nairobi, Kenya.

How To Use This

First make sure PostgreSQL and pgadmin is install in your system. then you have to manually create a DB instance on PostgreSQL named "predico", better use PgAdmin for that. make a new environment(recommended) and run...

  • Run pip install -r requirements.txt to install dependencies
  • Run python manage.py makemigrations
  • Run python manage.py migrate
  • Run python manage.py runserver
  • Navigate to http://127.0.0.1:8000/ in your browser

Dataset used -

https://www.kaggle.com/neelima98/disease-prediction-using-machine-learning

If you like this project, do give it a "Star" Thank you..

Owner
Felix Daudi
Felix Daudi
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