Udemy

Android Machine Learning with TensorFlow lite in Java/Kotlin

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  • 25,462 Students
  • Updated 2/2024
3.7
(254 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
7 Hour(s) 7 Minute(s)
Language
English
Taught by
Mobile ML Academy by Hamza Asif
Rating
3.7
(254 Ratings)
1 views

Course Overview

Android Machine Learning with TensorFlow lite in Java/Kotlin

Build 10+ Machine Learning Powered Android Apps | Train ML Models for Android | Use ML Models in Android App Development

Tired of traditional Android App Development courses? Now it's time to learn something new and trending for Android. Machine Learning is at its peak and Android App Development is also in demand so what is better than learning both?


This course is designed for Android developers who want to learn Machine Learning and deploy machine learning models in their Android apps using TensorFlow Lite. If you have very basic knowledge of Android App development and want to learn Machine Learning use in Android Applications this course is for you. This course will get you started in building your FIRST deep learning model and Android Application using both Java and Kotlin Tensorflow Lite, and Android Studio. We will learn about machine learning and deep learning and then train your first model and deploy it in an Android application using Android Studio. All the materials for this course are FREE.


You can follow this course using both Java and Kotlin. Separate Lectures are provided for both of these languages.

You don't need any prior knowledge of Machine Learning to start this course. We will start by learning

  • Python Programming Language

  • Data Science Libraries

  • Basics of Machine Learning and Deep Learning

  • Tensorflow and Tensorflow Lite


Then we will train our first Machine Learning model and Develop an Android Application using Android Studio.

The course includes examples from basic to advanced

  • A very simple Machine Learning example

  • Predicting fuel efficiency of automobiles (Regression Example)

  • Recognizing handwritten digits (Classification example)

  • Cats and Dogs classification

  • Rock Paper and Scissors Problem

  • Flowers Recognition Example

  • Stones Recognition Example

  • Fruits Recognition Example

  • Predicting the Fitness of a Person Practice Activity

  • Human and Horse Practice Activity

For each of these examples, we will first train the machine-learning model and then build an Android Application


We will start by learning about the basics of the Python programming language. Then we will learn about some famous Machine Learning libraries like Numpy, Matplotlib, and Pandas. After that, we will learn about Machine learning and its types. Then we look at Supervised learning in detail. We will try to understand classification and regression through examples. After we will start Deep learning. We start by looking and the basic structure of neural networks. Then we will understand the working of neural networks through an example.


Then we will learn about the Tensorflow 2.0 library and how we can use it to train Machine Learning models. After that, we will look at Tensorflow lite and how we can convert our Machine Learning models to tflite format which will be used inside Android Applications. There are three ways through which you can get a tflite file

  1. From Keras Model

  2. From Concrete Function

  3. From Saved Model

We will cover all these three methods in this course.

We will learn about Feed Forwarding, Back Propagation, and activation functions through a practical example. We also look at cost function, optimizer, learning rate, Overfitting, and Dropout. We will also learn about data preprocessing techniques like One hot encoding and Data normalization.


Next, we implement a neural network using Google's new TensorFlow library.


You should take this course If you are an Android Developer and want to learn the basics of machine learning(Deep Learning) and deploy ML models in your Android applications using Tensorflow lite and Android Studio.


This course provides you with many practical examples so that you can learn how you can train and deploy machine learning models in Android. We will use Android Studio to develop Android Applications for the models we trained.


Another section at the end of the course shows you how you can use datasets available in different formats for a number of practical purposes.


After getting your feet wet with the fundamentals, I provide a brief overview of how you can add your machine-learning model in Google's existing Android machine-learning project templates.



Who this course is for:

  • Beginner Android Developers want to make their Android applications smart

  • Android Developers want to use Machine Learning in their Android Applications

  • Developers interested in the practical implementation of Machine Learning and computer vision

  • Students interested in machine learning - you'll get all the tidbits you need to add machine learning models in Android using Android studio

  • Professionals who want to use machine learning models in Android Applications.

  • Machine Learning experts want to deploy their models in Android using Android Studio and Tensorflow Lite


Course Content

  • 15 section(s)
  • 90 lecture(s)
  • Section 1 Introduction
  • Section 2 Machine Learning & Deep Learning
  • Section 3 Python
  • Section 4 Data Science Libraries
  • Section 5 Tensorflow & Tensorflow Lite
  • Section 6 Basic Regression Example
  • Section 7 Training Fuel Efficiency Prediction Model and Building Android Application
  • Section 8 Concrete function and Saved model examples
  • Section 9 Handwritten digits recognition application
  • Section 10 Recognition Section
  • Section 11 Cats and Dogs Classification
  • Section 12 Rock Paper and Scissors Problem
  • Section 13 Practice Activity 1 Predict Fitness of a Person
  • Section 14 Practice Activity 2 Human and Horses
  • Section 15 Bonus

What You’ll Learn

  • Train machine learning models for Android Applications, Use of Tensorflow Lite Models inside Android Applications using both Java and Kotlin, Use Trained Machine Learning models inside Android Application using Android Studio, Train 10+ machine learning models and build Android Applications for those models, Train and deploy classification and regression models in Android, Generating Tensorflow lite model from Keras model, saved model, concrete function, Training image recognition models and creating Android Applications for those models, Build a Cats and Dogs classification Android Application, Rock Paper and Scissors Problem in Android, Flowers Recognition Android Application, Android Application to Recognize Precious Stones, Fruits Recognition Android Application, Android Application to Predict Fitness of a Person, Human & Horse Problem in Android


Reviews

  • M
    MJ Jacobs
    3.5

    Overall an excellent course. The beginning of the course is quite good, however the older videos really lack sound quality.

  • A
    Akhil Nadh Pullolikkal Chandran
    2.5

    Sound quality is not good. Could have included more on Andorid App development side.

  • A
    Ayala Kirana Irawan
    4.0

    The material is indeed very helpful in understanding how a Tensorflow model can be used in an Android application. However, it appears to be a little outdated because the programs are still using features that have been deprecated by Android Studio. Also, adding a caption would be very helpful. Nevertheless, the overall content is very good and useful. Thank you for sharing!

  • P
    Przemysław Antoszewski
    2.5

    - very often poor audio quality (noise, traffic) - some code not working anymore (e.g. fetching tensorflow examples in a colab, downloading data using keras, splitting dataset in colabs) - interesting topic, quite many examples

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