Skip to content

In this repository, I have implemented Email Spam detection, Iris Flower Classification and Unemployment Analysis using Python using Machine Learning Algorithms where the expected proficiency percentage was ranging from 60-80%.

Notifications You must be signed in to change notification settings

Raging-coder/OIBSIP

Repository files navigation

Task 1: Iris Flower Classification: Iris flower has three species; setosa, versicolor, and virginica, which differs according to their measurements. Now assume that you have the measurements of the iris flowers according to their species, and here your task is to train a machine learning model that can learn from the measurements of the iris species and classify them. Although the Scikit-learn library provides a dataset for iris flower classification, you can also download the same dataset from here for the task of iris flower classification with Machine Learning.

Task 2: Unemployment Analysis with Python: The price of a car depends on a lot of factors like the goodwill of the brand of the car, features of the car, horsepower and the mileage it gives and many more. Car price prediction is one of the major research areas in machine learning. So if you want to learn how to train a car price prediction model then this project is for you.

Task 3: Email Spam Detection with Machine Learning: We’ve all been the recipient of spam emails before. Spam mail, or junk mail, is a type of email that is sent to a massive number of users at one time, frequently containing cryptic messages, scams, or most dangerously, phishing content. In this Project, use Python to build an email spam detector. Then, use machine learning to train the spam detector to recognize and classify emails into spam and non spam.

About

In this repository, I have implemented Email Spam detection, Iris Flower Classification and Unemployment Analysis using Python using Machine Learning Algorithms where the expected proficiency percentage was ranging from 60-80%.

Topics

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages