Learning Python For Data Engineering
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Updated
Oct 27, 2023 - Jupyter Notebook
Learning Python For Data Engineering
Olympics Data Analysis Web Application using Streamlit. For development, I will be using Python and Pandas. For plotting, I will be using Seaborn and Plotly libraries.
The "kidney-stones-Detector" is an advanced system delivering precise detection and classification of kidney conditions including stones, cysts, tumors, and normal states from medical imaging data. With an impressive accuracy of 98.87%, this machine learning-powered models offer reliable insights for medical professionals.
A case study on Weather Analysis during World War 2 by Machine Learning.
Prediction model for Insurance Cost dataset by Regression
This project is developed on python language, It scraps the data from a famous website BBC/Urdu and stores it in an CSV file. There are also other methods through them we read the csv file and manuplate its data
Fraud Check Analysis by Random Forest.
Prediction model for Salary Hike by Simple Linear Regression
Predict salary of new employee by Polynomial Regression.
Data Analysis of Bank by Logistic Regression.
Linea De Enfasis Ciencia de Datos y Machine Learning
Health Analysis Report based on money spent on health and its impact on life expectancy.
Bangalore House Price Prediction by KNN
Prediction model for Delivery Time by Simple Linear Regression
Data Analysis of iPhone Purchase Records by KNN.
Diwali-Sales-Analysis-Project
Prediction model for price prediction by Multiple Linear Regression
A Capstone Project on Makaan Property Analysis by Machine Learning.
Prediction model for profit of 50 startups dataset by Multiple Linear Regression
Company Data Analysis by Random Forest.
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