Machine learning and Deep learning models, deploy on telegram (the best social media)

Overview

Semi Intelligent BOT

The project involves :

  1. Classifying fake news
  2. Classifying objects such as aeroplane, automobile, bird, cat, deer, dog, frog, horse, ship, truck
  3. Chatbot to run some errands, for instance, greeting, asking questions, etc

According to CRISP-DM methodology, the project was separated into three main steps

  • step 1 preprocess data, for example, tokenize words for a chatbot or standard scale for objects classify model
  • step 2 is to make a model
    in this project, I used 15 varieties of machine learning algorithms and also deep learning
  • step 3 deployment, I'd rather deploy on telegram

Demo

Project Demo

Telegram is the best social media app I've ever seen in my life.

I wouldn't like to write how many or which library I used in my project in the readme file. you can check pre-requirements in the requirements file. Take it easy

Owner
MohammadReza Norouzi
MohammadReza Norouzi
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