Udemy

Machine Learning and Deep Learning Using TensorFlow

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  • 626 Students
  • Updated 4/2022
  • Certificate Available
4.7
(50 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
10 Hour(s) 6 Minute(s)
Language
English
Taught by
Saikat Ghosh
Certificate
  • Available
  • *The delivery and distribution of the certificate are subject to the policies and arrangements of the course provider.
Rating
4.7
(50 Ratings)
5 views

Course Overview

Machine Learning and  Deep Learning Using TensorFlow

Artificial Intelligence (AI): Machine Learning, Deep Neural Networks (DNN), and Convolution Neural Networks (CNN)

If you are interested in Machine Learning, Neural Networks, Deep Learning, Deep Neural Networks (DNN), and Convolution Neural Networks (CNN) with an in-depth and clear understanding, then this course is for you.

Topics are explained in detail. Concepts are developed progressively in a step by step manner. I sometimes spent more than 10 minutes discussing a single slide instead of rushing through it. This should help you to be in sync with the material presented and help you better understand it.

The hands-on examples are selected primarily to make you familiar with some aspects of TensorFlow 2 or other skills that may be very useful if you need to run a large and complex neural network job of your own in the future.

Hand-on examples are available for you to download.

Please watch the first two videos to have a better understanding of the course.


TOPICS COVERED


  • What is Machine Learning?


  • Linear Regression

  • Steps to Calculate the Parameters

  • Linear Regression-Gradient Descent using Mean Squared Error (MSE) Cost Function


  • Logistic Regression: Classification

  • Decision Boundary

  • Sigmoid Function

  • Non-Linear Decision Boundary

  • Logistic Regression: Gradient Descent

  • Gradient Descent using Mean Squared Error Cost Function

  • Problems with MSE Cost Function for Logistic Regression

  • In Search for an Alternative Cost-Function

  • Entropy and Cross-Entropy

  • Cross-Entropy: Cost Function for Logistic Regression

  • Gradient Descent with Cross Entropy Cost Function

  • Logistic Regression: Multiclass Classification


  • Introduction to Neural Network

  • Logical Operators

  • Modeling Logical Operators using Perceptron(s)

  • Logical Operators using Combination of Perceptron

  • Neural Network: More Complex Decision Making

  • Biological Neuron

  • What is Neuron? Why Is It Called the Neural Network?

  • What Is An Image?

  • My “Math” CAT. Anatomy of an Image

  • Neural Network: Multiclass Classification

  • Calculation of Weights of Multilayer Neural Network Using Backpropagation Technique

  • How to Update the Weights of Hidden Layers using Cross Entropy Cost Function


  • Hands On

  • Google Colab. Setup and Mounting Google Drive (Colab)

  • Deep Neural Network (DNN) Based Image Classification Using Google Colab. & TensorFlow (Colab)


  • Introduction to Convolution Neural Networks (CNN)

  • CNN Architecture

  • Feature Extraction, Filters, Pooling Layer

  • Hands On

  • CNN Based Image Classification Using Google Colab & TensorFlow (Colab)


  • Methods to Address Overfitting and Underfitting Problems

  • Regularization, Data Augmentation, Dropout, Early Stopping

  • Hands On

  • Diabetes prediction model development (Colab)

  • Fixing problems using Regularization, Dropout, and Early Stopping (Colab)


  • Hands On: Various Topics

  • Saving Weights and Loading the Saved Weights (Colab)

  • How To Split a Long Run Into Multiple Smaller Runs

  • Functional API and Transfer Learning (Colab)

  • How to Extract the Output From an Intermediate Layer of an Existing Model (Colab), and add additional layers to it to build a new model.

Course Content

  • 11 section(s)
  • 40 lecture(s)
  • Section 1 Introduction
  • Section 2 What is Machine Learning?
  • Section 3 Linear Regression
  • Section 4 Logistic Regression: Classification
  • Section 5 In Search for an Alternative Cost-Function
  • Section 6 Introduction to Neural Network
  • Section 7 For download: All Colab files for hands-on
  • Section 8 Google Colab. Setup, Mounting Google Drive and Hands On
  • Section 9 Introduction to Convolution Neural Networks (CNN)
  • Section 10 Regularization, Dropout, and Early Stopping
  • Section 11 Hands On: Various Topics

What You’ll Learn

  • In depth understanding of Machine Learning.
  • In depth understanding of the Neural Network.
  • Detailed and step by step theoretical derivation and explanation of a majority of the topics to ensure clear understanding of the subject.
  • You will learn Linear Regression, Logistic Regression, Neural Network, Deep Neural Network (DNN), Convolution Neural Network etc.
  • Multiple hands-on projects using Tensorflow 2 and Python to expose you to some of the highly advanced topics of Tensorflow 2
  • Hands-on projects are selected to make you familiar with some of the expertise that may be very useful should you need to run a very long analysis in future.

Reviews

  • S
    Sushila M.
    5.0

    I thought it was a great course covering the basics of machine learning and I really enjoyed the presentation style!

  • M
    Muhammad Waseem
    5.0

    I find it very amazing. Looking forward to learn more and more from Mr. Saikat.

  • N
    Neel U
    5.0

    Pretty nice course. I particularly liked how the concept of entropy/cross-entropy explained, and also the detailed mathematical explanation of back propagation techniques. Hands-on examples are quite useful.

  • D
    David Koski
    5.0

    Wonderful and insightful course so far!

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