A smart Chat bot that can help to know about corona virus and Make prediction of corona using X-ray.

Overview

TRINIT_Hum_kuchh_nahi_karenge_ML01

Document Link

https://github.com/Jatin-Goyal-552/TRINIT_Hum_kuchh_nahi_karenge_ML01/blob/main/hum_kuchh_nahi_karenge_final_review.pdf

Video Link

https://drive.google.com/file/d/1TlKu_Z-ohH8_04IcBXVISaqjx4EsuR0T/view?usp=sharing

CoBot

A smart Chat bot that can help to know about corona virus and Make prediction of corona using X-ray.

Problem statement

The problem CoBot solves is now a days we have seen that in many doctor and frontline workers are busy so we are came up with an idea of chat bot such that people cna chat and understand better about corona virus such as precautions,checkup etc.

Our solution

  1. It can help to save doctor and frontline workers time in this pandemic time.
  2. Here people can chat with chat bot and ask their doubt regarding corona virus.
  3. Here people can check their x-ray report to check whether they have corona infections or not.

Technology - used

  • Backend:

    • Python
    • Django
  • Frontend:

    • HTML/CSS/JS
    • Bootstrap
    • Pytorch
  • Database:

    • Sqlite
  • Server:

    • localhost
  • Algorithm:

    • Machine learning algorithm

Dataset

Image

Owner
JatinGoyal
IIIT vadodara student
JatinGoyal
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