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Real World Data Science and Machine Learning Projects

Real World Data Science and Machine Learning Projects

English | 04:02:43 | Video 720p | Subtitles

Learn Machine Learning Algorithms in Python and Build 8 real world machine learning projects.


 

What you'll learn

Train machine learning algorithms to detect Heart Diesease.

Build a Music Recommendation system.

Train machine learning algorithms to detect Breast Cancer

Train machine learning algorithms to predict Diabetes

Automated Malaria detection using deep learning models like CNN

Bitcoin price prediction using machine learning

Time Series Prediction with LSTM Recurrent Neural Networks

 

Requirements

Basics of Machine Learning

Jupyter notebook

Installing Libraries

 A passion to learn data science

Description

In this course, we are going to provide students with knowledge of key aspects of state-of-the-art classification techniques. We are going to build 8 projects from scratch using real world dataset, here’s a sample of the projects we will be working on:

Build a Music Recommendation system.

Human activity recognition using smartphones

Time Series Prediction with LSTM Recurrent Neural Networks

Predicting presence of Heart Diseases using Machine Learning

Automated malaria detection using deep learning models like CNN

Predicting Prices of Bitcoin with Machine Learning

Breast Cancer Prediction using Machine Learning

Predicting Diabetes With Machine Learning Techniques

Who this course is for:

Beginner in machine learning

Want to build real world machine learning projects

 

 

Homepage:

https://www.udemy.com/course/machine-learning-projects/

 

Real World Data Science and Machine Learning Projects


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