Learn ML With Python Offline

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About this app

This FREE app will help you to understand ML With Python Tutorial properly and teach you about how to Start Coding using ML With Python. Here we are covering almost all Classes, Functions, Libraries, attributes, references. The sequential tutorial let you know from basic to advance level.

This "ML With Python Tutorial" is helpful for students to learn Coding step by step from basic to advance level.

***FEATURES***
* FREE of Cost
* Easy to Learn Programming
* ML With Python Basic
* ML With Python Advance
* ML With Python Object Oriented
* ML With Python Offline Tutorial



***LESSONS***
ML With Python Basic Tutorial

Python Ecosystem
Methods for Machine Learning
Data Loading for ML Projects
Understanding Data with Statistics
Understanding Data with Visualization

Preparing Data
Data Feature Selection
Introduction
Logistic Regression
Support Vector Machine(SVM)

Decision Tree
Naïve Bayes
Random Forest
Overview

Linear Regression
Overview
K-Means Algorithm
Mean Shift Algorithm
Hierarchical Clustering

Finding Nearest Neighbors
Performance Metrics
Automatic Workflows
Improving Performance of ML Models





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Updated on
6 Oct 2022

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What's new

Decision Tree
Naïve Bayes
Random Forest

Linear Regression
K-Means Algorithm
Mean Shift Algorithm
Hierarchical Clustering

Finding Nearest Neighbors
Performance Metrics
Automatic Workflows
Improving Performance of ML Models