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Machine Learning Projects with TensorFlow 2.0

  • Development
  • Jan 05, 2025
SynopsisMachine Learning Projects with TensorFlow 2.0, available at $...
Machine Learning Projects with TensorFlow 2.0  No.1

Machine Learning Projects with TensorFlow 2.0, available at $19.99, has an average rating of 4.15, with 36 lectures, 5 quizzes, based on 10 reviews, and has 103 subscribers.

You will learn about Strengthen your foundations to build TensorFlow 2.0 projects by exploring its new features Analyze the Titanic data set to obtain desired results with ease Implement and organize your Tensorflow projects in a professional manner Use Tensorboard to inspect various metrics and monitor your project’s performance Research and make the most of other peoples Kaggle solutions Use OpenAI Gym Environments for implementing state of the art reinforcement learning techniques using TF-Agents Apply the latest Transfer Learning techniques from Tensorflow This course is ideal for individuals who are This course is for developers, data scientists and ML engineers who now want to enhance their skill set in Machine Learning using TensorFlow by building real-world projects. It is particularly useful for This course is for developers, data scientists and ML engineers who now want to enhance their skill set in Machine Learning using TensorFlow by building real-world projects.

Enroll now: Machine Learning Projects with TensorFlow 2.0

Summary

Title: Machine Learning Projects with TensorFlow 2.0

Price: $19.99

Average Rating: 4.15

Number of Lectures: 36

Number of Quizzes: 5

Number of Published Lectures: 36

Number of Published Quizzes: 5

Number of Curriculum Items: 41

Number of Published Curriculum Objects: 41

Original Price: $109.99

Quality Status: approved

Status: Live

What You Will Learn

  • Strengthen your foundations to build TensorFlow 2.0 projects by exploring its new features
  • Analyze the Titanic data set to obtain desired results with ease
  • Implement and organize your Tensorflow projects in a professional manner
  • Use Tensorboard to inspect various metrics and monitor your project’s performance
  • Research and make the most of other peoples Kaggle solutions
  • Use OpenAI Gym Environments for implementing state of the art reinforcement learning techniques using TF-Agents
  • Apply the latest Transfer Learning techniques from Tensorflow
  • Who Should Attend

  • This course is for developers, data scientists and ML engineers who now want to enhance their skill set in Machine Learning using TensorFlow by building real-world projects.
  • Target Audiences

  • This course is for developers, data scientists and ML engineers who now want to enhance their skill set in Machine Learning using TensorFlow by building real-world projects.
  • TensorFlow is the world’s most widely adopted framework for Machine Learning and Deep Learning. TensorFlow 2.0 is a major milestone due to its inclusion of some major changes making TensorFlow easier to learn and use such as “Eager Execution”. It will support more platforms and languages, improved compatibility and remove deprecated APIs.

    This course will guide you to upgrade your skills in Machine Learning by practically applying them by building real-world Machine Learning projects.

    Each section should cover a specific project on a Machine Learning task and you will learn how to implement it into your system using TensorFlow 2. You will implement various Machine Learning techniques and algorithms using the TensorFlow 2 library. Each project will put your skills to test, help you understand and overcome the challenges you can face in a real-world scenario and provide some tips and tricks to help you become more efficient. Throughout the course, you will cover the new features of TensorFlow 2 such as Eager Execution. You will cover at least 3-4 projects. You will also cover some tasks such as Reinforcement Learning and Transfer Learning.

    By the end of the course, you will be confident to build your own Machine Learning Systems with TensorFlow 2 and will be able to add this valuable skill to your CV.

    About the Author

    Vlad Ionescu is a lecturer at Babes-Bolyai University. He has a PhD in machine learning, a field he is continuously researching and exploring every day with technologies such as Python, Keras, and TensorFlow.

    His philosophy is “If I can’t explain something well enough for most people to understand it, I need to go back and understand it better myself before trying again”. This philosophy helps him to give of his best in his lectures and tutorials.

    He started as a high school computer science teacher while he was doing his Masters over 5 years ago. Right now, he teaches various university-level courses and tutorials, covering languages, technologies, and concepts such as Python, Keras, machine learning, C#, Java, algorithms, and data structures.

    During his high school and college years, he participated in many computer science contests and Olympiads and was active on some online judge sites. He also owns a StackOverflow gold badge in the Algorithm tag.

    Course Curriculum

    Chapter 1: Regression Task Airbnb Prices in New York

    Lecture 1: Course Overview

    Lecture 2: Setting Up TensorFlow 2.0

    Lecture 3: Getting Started with TensorFlow 2.0

    Lecture 4: Analyzing the Airbnb Dataset and Making a Plan

    Lecture 5: Implementing a Simple Linear Regression Algorithm

    Lecture 6: Implementing a Multi Layer Perceptron (Artificial Neural Network)

    Lecture 7: Improving the Network with Better Activation Functions and Dropout

    Lecture 8: Adding More Metrics to Gain a Better Understanding

    Lecture 9: Putting It All Together in a Professional Way

    Chapter 2: Classification Task Build Real World Apps: Who Will Win the Next UFC?

    Lecture 1: Collecting Possible Kaggle Data

    Lecture 2: Analysis and Planning of the Dataset

    Lecture 3: Introduction to Google Colab and How It Benefits Us

    Lecture 4: Setting Up Training on Google Colab

    Lecture 5: Some Advanced Neural Network Approaches

    Lecture 6: Introducing a Deeper Network

    Lecture 7: Inspecting Metrics with TensorBoard

    Lecture 8: Inspecting the Existing Kaggle Solutions

    Chapter 3: Natural Language Processing Task: How to Generate Our Own Text

    Lecture 1: Introduction to Natural Language Processing

    Lecture 2: NLP and the Importance of Data Preprocessing

    Lecture 3: A Simple Text Classifier

    Lecture 4: Text Generation Methods

    Lecture 5: Text Generation with a Recurrent Neural Network

    Lecture 6: Refinements with Federated Learning

    Chapter 4: Reinforcement Learning Task: How to Become Best at Pacman

    Lecture 1: Introduction to Reinforcement Learning

    Lecture 2: OpenAI Gym Environments

    Lecture 3: The Pacman Gym Environment That We Are Going to Use

    Lecture 4: Reinforcement Learning Principles with TF-Agents

    Lecture 5: TF-Agents for Our Pacman Gym Environment

    Lecture 6: The Agents That We Are Going to Use

    Lecture 7: Selecting the Best Approaches and Real World Applications

    Chapter 5: Transfer Learning Task: How to Build a Powerful Image Classifier

    Lecture 1: Introduction to Transfer Learning in TensorFlow 2

    Lecture 2: Picking a Kaggle Dataset to Work On

    Lecture 3: Picking a Base Model Suitable for Transfer Learning with Our Dataset

    Lecture 4: Implementing our Transfer Learning approach

    Lecture 5: How Well Are We Doing and Can We Do Better

    Lecture 6: Conclusions and Future Work

    Instructors

  • Machine Learning Projects with TensorFlow 2.0  No.2
    Packt Publishing
    Tech Knowledge in Motion
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  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!