Machine Learning with Python

Machine Lerning with Python,Supervised,Unsupervised and Regression learning

3.80 (147 reviews)
Udemy
platform
English
language
Data Science
category
instructor
Machine Learning with Python
5,729
students
1 hour
content
Jun 2021
last update
FREE
regular price

What you will learn

Supervised learning

Unsupervised learning

Regression learning

SVM

Why take this course?

Machine Learning tutorial provides basic and advanced concepts of machine learning. Our machine learning tutorial is designed for students and working professionals.

Machine learning is a growing technology which enables computers to learn automatically from past data. Machine learning uses various algorithms for building mathematical models and making predictions using historical data or information. Currently, it is being used for various tasks such as image recognition, speech recognition, email filtering, Facebook auto-tagging, recommender system, and many more.

This machine learning tutorial gives you an introduction to machine learning along with the wide range of machine learning techniques such as Supervised, Unsupervised, and Reinforcement learning. You will learn about regression and classification models, clustering methods, hidden Markov models, and various sequential models.

When you tag a face in a Facebook photo, it is AI that is running behind the scenes and identifying faces in a picture. Face tagging is now omnipresent in several applications that display pictures with human faces. Why just human faces? There are several applications that detect objects such as cats, dogs, bottles, cars, etc. We have autonomous cars running on our roads that detect objects in real time to steer the car. When you travel, you use Google Directions to learn the real-time traffic situations and follow the best path suggested by Google at that point of time. This is yet another implementation of object detection technique in real time.

Let us consider the example of Google Translate application that we typically use while visiting foreign countries. Google’s online translator app on your mobile helps you communicate with the local people speaking a language that is foreign to you.

There are several applications of AI that we use practically today. In fact, each one of us use AI in many parts of our lives, even without our knowledge. Today’s AI can perform extremely complex jobs with a great accuracy and speed. Let us discuss an example of complex task to understand what capabilities are expected in an AI application that you would be developing today for your clients.

Example

We all use Google Directions during our trip anywhere in the city for a daily commute or even for inter-city travels. Google Directions application suggests the fastest path to our destination at that time instance. When we follow this path, we have observed that Google is almost 100% right in its suggestions and we save our valuable time on the trip.

You can imagine the complexity involved in developing this kind of application considering that there are multiple paths to your destination and the application has to judge the traffic situation in every possible path to give you a travel time estimate for each such path. Besides, consider the fact that Google Directions covers the entire globe. Undoubtedly, lots of AI and Machine Learning techniques are in-use under the hoods of such applications.

Considering the continuous demand for the development of such applications, you will now appreciate why there is a sudden demand for IT professionals with AI skills.

Content

Introduction

Introduction
ML Introduction
Classification of ML

Machine Learning Classifications

Applications
Life cycle
How Supervised and Unsupervised learning Works?
Regression Analysis and its Types

Numpy and Decision trees

Numpy overview in Colab

Screenshots

Machine Learning with Python - Screenshot_01Machine Learning with Python - Screenshot_02Machine Learning with Python - Screenshot_03Machine Learning with Python - Screenshot_04

Reviews

Muhammad
August 19, 2023
I recently had the opportunity to take the "Machine Learning with Python" course, and I must say it was an exceptional experience. This course managed to strike a perfect balance between theoretical concepts and hands-on practicality, making it an ideal choice for both beginners and intermediate learners in the field of machine learning.

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4111138
udemy ID
6/9/2021
course created date
6/11/2021
course indexed date
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