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TensorFlow 101- Introduction to Deep Learning

  • Development
  • May 11, 2025
SynopsisTensorFlow 101: Introduction to Deep Learning, available at $...
TensorFlow 101- Introduction to Deep Learning  No.1

TensorFlow 101: Introduction to Deep Learning, available at $34.99, has an average rating of 4.1, with 23 lectures, based on 191 reviews, and has 5180 subscribers.

You will learn about You will be able to build deep learning models for different business domains in TensorFlow You can distinguish classification and regression problems, apply supervised learning, and can develop solutions You can also apply segmentation analysis through unsupervised learning and clustering You can consume TensorFlow via Keras in easier way. Informed about tuning machine learning models to produce more successful results Learn how face recognition works This course is ideal for individuals who are One who interested in Machine Learning, Data Science and AI or Anyone who would like to learn TensorFlow framework It is particularly useful for One who interested in Machine Learning, Data Science and AI or Anyone who would like to learn TensorFlow framework.

Enroll now: TensorFlow 101: Introduction to Deep Learning

Summary

Title: TensorFlow 101: Introduction to Deep Learning

Price: $34.99

Average Rating: 4.1

Number of Lectures: 23

Number of Published Lectures: 23

Number of Curriculum Items: 28

Number of Published Curriculum Objects: 28

Original Price: $89.99

Quality Status: approved

Status: Live

What You Will Learn

  • You will be able to build deep learning models for different business domains in TensorFlow
  • You can distinguish classification and regression problems, apply supervised learning, and can develop solutions
  • You can also apply segmentation analysis through unsupervised learning and clustering
  • You can consume TensorFlow via Keras in easier way.
  • Informed about tuning machine learning models to produce more successful results
  • Learn how face recognition works
  • Who Should Attend

  • One who interested in Machine Learning, Data Science and AI
  • Anyone who would like to learn TensorFlow framework
  • Target Audiences

  • One who interested in Machine Learning, Data Science and AI
  • Anyone who would like to learn TensorFlow framework
  • This course provides you to be able to build Deep Neural Networks models for different business domains with one of the most common machine learning library TensorFlow provided by Google AI team. The both concept of deep learning and its applications will be mentioned in this course. Also, we will focus on Keras. 

    We will also focus on the advanced topics in this lecture such as transfer learning, autoencoders, face recognition (including those models: VGG-Face, Google FaceNet, OpenFace and Facebook DeepFace).

    This course appeals to ones who interested in Machine Learning, Data Science and AI. Also, you don’t have to be attend any ML course before.

    Course Curriculum

    Chapter 1: Perceptrons

    Lecture 1: What is a Perceptron?

    Lecture 2: Hands-on Perceptron

    Chapter 2: Introduction

    Lecture 1: Installing Tensorflow and Prerequisites on Windows

    Lecture 2: Jupyter notebook

    Lecture 3: Hello, TensorFlow! Building Deep Neural Networks Classifier Model

    Chapter 3: Reusability in TensorFlow

    Lecture 1: Restoring and Working on Already Trained Deep Neural Networks In TensorFlow

    Lecture 2: Importing Saved TensorFlow DNN Classifier Model in Java

    Chapter 4: Monitoring and Evaluating

    Lecture 1: Monitoring Model Evaluation Metrics in TensorFlow and TensorBoard

    Chapter 5: Building regression and time series models

    Lecture 1: Building a DNN Regressor for Non-Linear Time Series in TensorFlow

    Lecture 2: Visualizing ML Results with matplotlib and Embedding in TensorBoard

    Chapter 6: Building Unsupervised Learning Models

    Lecture 1: Unsupervised learning and k-means clustering with TensorFlow

    Lecture 2: Applying k-means clustering to n-dimensional datasets in TensorFlow

    Chapter 7: Tuning Deep Neural Network Models

    Lecture 1: Optimization Algorithms in TensorFlow

    Lecture 2: Activation Functions in TensorFlow

    Chapter 8: Consuming TensorFlow via Keras

    Lecture 1: Installing Keras

    Lecture 2: Building DNN Classifier with Keras

    Lecture 3: Storing and restoring a trained neural networks model with Keras

    Chapter 9: Advanced applications

    Lecture 1: Handwritten Digit Recognition Using Neural Networks

    Lecture 2: Handwritten Digit Recognition Using Convolutional Neural Networks with Keras

    Lecture 3: Transfer Learning: Consuming InceptionV3 to Classify Cat and Dog Images in Keras

    Lecture 4: Tips and Tricks for Transfer Learning

    Lecture 5: Autoencoders

    Lecture 6: Face Recognition

    Instructors

  • TensorFlow 101- Introduction to Deep Learning  No.2
    Sefik Ilkin Serengil
    Software Engineer
  • Rating Distribution

  • 1 stars: 13 votes
  • 2 stars: 18 votes
  • 3 stars: 26 votes
  • 4 stars: 34 votes
  • 5 stars: 100 votes
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