This repository contains my machine learning models implementation code using streamlit in the Python programming language.
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Updated
Oct 5, 2024 - Jupyter Notebook
This repository contains my machine learning models implementation code using streamlit in the Python programming language.
Streamlit-based Python web scraper for text, images, and PDFs. User-friendly interface for quick data extraction from websites. Simplify your web scraping tasks effortlessly.
This recommendation system employs content-based filtering and NLP preprocessing to suggest similar movies based on user preferences and movie data. It fetches movie posters via APIs and is deployed on Streamlit for easy access.
AI_EDA_Assistant 🤖💻 is an automated web application which automatically collects 🗃️ the data and perform almost all basic tasks✅ for example checking duplicate values , null values , correlation between data and many other things within mili seconds 🕛 so get ready to understand the concepts of python and implement it 💻 and clone it. 📈
This repository contains my internship project that I made using Streamlit and Python programming language.
The objective of this project is to develop an end-to-end solution that predicts whether an employee will leave or stay in the company.
Website that helps recommend movies
In this repo I have done an end to end movie recommender system which a user can pass the movie he/she wants and the machine learning model will recommend related movies for the user.
Helps to find semantic similarity between sentences
This is a Time Series Forecasting project where aim is to predict the CO2 emission for next 10 years given the data for the period 1800-2014.
How to deploy a Streamlit web app on Heroku? You will find most of the steps here that can be used to deploy the web app
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