Curriculum of our Android Studio, Java and TensorFlow course

Enroll now in our mobile machine learning masterclass to get all of these topics and learn from the comfort of your couch. Now dirt cheap at https://training.mammothinteractive.com/p/mobilemachinelearning/?product_id=509994&coupon_code=SPECIALBLOGCOUPON

Introduction to Machine Learning + Software

  • An interview with your instructor
  • Intro to the Course (9:56)
  • Update! Resources Folder

Intro to Android Studio

  • Intro and Topics List (2:25)
  • Downloading and Installing Android Studio (6:44)
  • Exploring Interface (12:12)
  • Setting up an Emulator and Running Project (6:43)

Intro to Java

  • Intro to Language Basics (2:46)
  • Variable Types (14:00)
  • Operations on Variables (10:49)
  • Array and Lists (9:26)
  • Array and List Operations (7:59)
  • If and Switch Statements (11:34)
  • While Loops (10:09)
  • For Loops (8:51)
  • Functions Intro (8:39)
  • Parameters and Return Values (7:05)
  • Classes and Objects Intro (12:13)
  • Superclass and Subclasses (11:42)
  • Static Variables and Axis Modifiers (7:27)

Intro to App Development

  • Intro to Android App Development (1:57)
  • Building Basic User Interface (12:15)
  • Connecting UI to Backend (6:12)
  • Implementing Backend and Tidying UI (9:09)

Intro to Machine Learning Concepts

  • Introduction to ML Concepts
  • Downloading and Installing PyCharm and Python (6:55)
  • Exploring PyCharm (7:48)

Python Language Basics

  • Intro and Topics List (2:40)
  • Intro to Variables (13:17)
  • Variables Operations and Conversions (12:35)
  • Collection Types (12:47)
  • Collections Operations (8:42)
  • Control Flow If Statements (12:50)
  • While and For Loops (10:44)
  • Functions (11:23)
  • Classes and Objects (15:40)
  • Source Code

Intro to TensorFlow

  • TensorFlow Intro (2:53)
  • Topics List (6:09)
  • Importing TensorFlow to PyCharm (4:25)
  • Constant Nodes and Sessions (9:01)
  • Variable Nodes (10:45)
  • Placeholder Nodes (7:35)
  • Operation Nodes (12:47)
  • Loss, Optimizers, and Training (11:56)
  • Building a Linear Regression Model (20:30)
  • Source Code

Machine Learning in Android Studio Projects

  • Introduction to Level 2 (5:15)

Introduction to Tensorflow Estimator

  • Introduction (3:08)
  • Topics List (4:12)
  • Setting up Prebuilt Estimator Model (15:15)
  • Evaluating and Predicting with Prebuilt Model (7:42)
  • Building Custom Estimator Function (10:12)
  • Testing Custom Estimator Function (7:00)
  • Summary and Model Comparison (9:46)
  • Source Code

Intro to Android ML Model Import

  • Intro and Demo (4:09)
  • Topics List (4:22)
  • Formatting and Saving Model (8:25)
  • Saving Optimized Graph File (14:48)
  • Starting Android Project (9:01)
  • Building UI (14:56)
  • Implementing Inference Functionality (9:14)
  • Testing and Error Fixing (11:01)
  • Source Files

Simple MNIST

  • Intro and Demo (3:50)
  • Topics List and Intro to MNIST Data (10:24)
  • Building Computational Graph (14:20)
  • Training and Testing Model (14:24)
  • Saving and Freezing Graph for Android Import (12:33)
  • Setting up Android Studio Project (13:07)
  • Building User Interface (15:58)
  • Loading Digit Images (10:02)
  • Formatting Image Data (10:59)
  • Making Prediction Using Model (7:32)
  • Displaying Results and Summary (13:13)
  • Source Files

MNIST With Estimator

  • Introduction (3:08)
  • Topics List (2:38)
  • Building Custom Estimator Function (15:34)
  • Building Input Functions, Training, and Testing (13:38)
  • Predicting Using Model and Model Comparisons (9:37)
  • Source Files

Build Image Recognition Apps

  • Introduction to Building Image Recognition Apps (6:34)

Weather Prediction

  • Intro and Demo (3:49)
  • Tasks List (4:36)
  • Retrieving the Data (14:00)
  • Formatting Data Sets (14:02)
  • Building Computational Graph (11:47)
  • Writing, Training, Testing, and Evaluating Functions (12:24)
  • Training, Testing, and Freezing the Model (9:48)
  • Setting up Android Project (8:05)
  • Building the UI (15:29)
  • Build App Backend and Project Summary (13:46)
  • Source Code

Text Prediction

  • Intro and Demo (4:13)
  • Tasks List (3:17)
  • Processing Text Data (13:18)
  • Building Data Sets and Model Builder Function (16:16)
  • Building Computational Graph (8:37)
  • Writing, Training, and Testing Code (15:11)
  • Training, Testing, and Freezing Graph (12:27)
  • Setting up Android Project (7:41)
  • Setting up UI (5:19)
  • Setting up Vocab Dictionary (8:34)
  • Formatting Input and Running Through Model (7:55)
  • Source Code

Stock Market Prediction

  • Intro and Demo (3:47)
  • Task List (5:17)
  • Retrieving Data via RESTful API Call (16:30)
  • Parsing JSON Data Pycharm Style (6:37)
  • Formatting Data (15:45)
  • Building the Model (13:26)
  • Training and Testing the Model (9:54)
  • Freezing Graph (10:06)
  • Setting up Android Project (6:07)
  • Building UI (8:25)
  • Requesting Data Via AsyncTask (8:25)
  • Parsing JSON Data Android Style (12:04)
  • Running Inference and Displaying Results (17:42)
  • Source Code

Image Analysis with Keras

  • Introduction to Level 4 (9:44)

Simple CIFAR-10

  • Intro and Demo (4:47)
  • Topics List (3:47)
  • Exploring CIFAR-10 Dataset (10:48)
  • Update! CIFAR_10 Android Fix
  • Formatting Input Data (13:13)
  • Building the Model (16:24)
  • Freezing Graph and Training Model (16:56)
  • Setting up the Android Project (16:43)
  • Setting up UI (9:02)
  • Loading and Displaying Image (6:33)
  • Formatting Image Data for Model Input (13:55)
  • Predicting and Displaying Results (13:26)
  • Summary and Outro (6:39)
  • Source Code

Face Detection

  • Intro and Demo (3:20)
  • Tasks List (3:09)
  • Loading Face and Non Face Images (15:56)
  • Reformatting Input Data (11:12)
  • Build Model + Write, Train & Test Scripts (19:12)
  • Freeze Graph + Train & Test Model (14:38)
  • Setting up Android Project (11:49)
  • Setting up UI (7:52)
  • Loading and Display Images (10:11)
  • Formatting Data and Running Inference (12:47)
  • Displaying Results and Summary (8:51)
  • Source Code

Emotions Detection

  • Intro and Demo (3:39)
  • Tasks List (2:34)
  • Loading and Formatting Data (11:13)
  • Build Training and Testing Datasets (6:52)
  • Building the Model (9:57)
  • Build Functions to Train, Test, & Predict (11:58)
  • Training and Testing the Model (11:06)
  • Setting up Android Project (6:33)
  • Importing and Displaying Images (6:25)
  • Convert Images and Run Inference (8:17)
  • Displaying Results and Summary (7:48)
  • Source Code

Increase Efficiency of Machine Learning Models

  • Intro to Increasing ML Efficiency (5:47)
  • Source Code

Introduction to Tensorflow Lite

  • Tensorflow Lite (10:19)

Text Summarizer

  • Introduction (6:22)
  • How a Model Is Built (13:08)
  • Training and Summarizing Mechanisms (9:31)
  • Training and Summarizing Code (7:44)
  • Testing the Model (5:27)
  • Source Code

Object Localization

  • Introduction (4:13)
  • Examining Project Code (15:05)
  • Testing with a Mobile Device (7:30)

Object Recognition

  • Introduction (7:30)
  • Examining Code (22:29)
  • Testing on Mobile Device (5:36)

Intro to Tensorboard

  • Introduction (2:55)
  • Examining Computational Graph In Tensorboard (13:46)
  • Analyzing Scalars and Histograms (13:01)
  • Modifying Model Parameters Across Multiple Runs (10:32)
  • Source Code

Advanced ML Concepts

  • Introduction (18:49)
  • Source Code

Advanced MNIST

  • Intro and Demo (3:42)
  • Topics List (3:41)
  • Building Neuron Functions (11:18)
  • Building the Convolutional Layers (11:51)
  • Building Dense, Dropout, and Readout Layers (14:38)
  • Loss & Optimizer Functions, Training, & Testing (19:51)
  • Optimizing Saved Graph (10:57)
  • Setting up Android Project (12:30)
  • Setting Up UI (10:58)
  • Load and Display Digit Images (6:14)
  • Formatting Model Input (13:52)
  • Displaying Results and Summary (11:11)
  • Source Files

Advanced CIFAR-100

  • Intro and Demo (3:18)
  • Tasks List (3:11)
  • Inputting and Formatting Data (10:50)
  • Building the Model (10:19)
  • Training, Testing, and Freezing Model (10:57)
  • Setting up Android Project (10:24)
  • Building UI (8:09)
  • Loading and Displaying Images (7:03)
  • Converting Image Data & Running Inference (7:37)
  • Summary and Outro (9:29)
  • Source Code

Image Recognition in iOS

  • Introduction and Demo (3:20)
  • Project Setup (6:59)
  • Displaying and Resizing Images (9:42)
  • Converting Image to Pixel Buffer (14:06)
  • Summary and Outro (8:07)
  • Source Code

Intro to iOS

  • Introduction (2:15)
  • Source Code

Xcode Intro

  • Downloading and Installing (6:22)
  • Exploring XCode’s Interface (15:40)

Swift Language Basics

  • Variables Intro (7:57)
  • Variable Operations (10:43)
  • Collections (8:57)
  • Control Flow (10:18)
  • Functions (5:28)
  • Classes and Objects (9:55)

iOS App Development Intro

  • Building App From Start to Finish (12:46)

Intro to CoreML

  • Introduction to CoreML (9:08)

iOS Tensorflow Model Import

  • Introduction (4:35)
  • Converting pb to mlmodel
  • File & Setting up Project (7:34)
  • Running Inference Through Model (9:58)
  • Testing and Summary (3:55)

Learn now in our master course with app developer Nimish Narang! 90% off today with this coupon: https://training.mammothinteractive.com/p/mobilemachinelearning/?product_id=509994&coupon_code=SPECIALBLOGCOUPON

Deep Learning Bootcamp with Keras

Build models with Python, TensorFlow, PyCharm, API & CIFAR-10. Learn machine learning, neural networks, & convolutions!

Enroll in this course today – on sale for 93% off

The Deep Learning Masterclass: Make a Keras Image Classifier

Welcome to this epic masterclass on Keras (and so much more) with our #1 data scientist and app developer Nimish Narang, creator of over 20 Mammoth Interactive courses and webinars.

This course was funded by a wildly successful Kickstarter

Anyone can take this course. No experience is required. If you already have experience using PyCharm and running Python files and programs on the interface, you can simply skip ahead to whatever section best suits your needs. Or, you can follow the progression of this meticulously curated course especially designed to take any absolute beginner off the street and make them a data modeler.

This course is divided into days, but of course you can learn at your own pace. In Day 2 we teach you all the fundamentals of the Python programming language. If you already have experience coding in this popular language, brushing up on the fundamentals and fixing bad coding habits is a great exercise. If you are a beginner this section ensures you don’t get lost with the rest of the crowd.

At Day 3 we dive into machine learning and neural networks.

You also get an introduction to convolutions. These are hot topics that are in high demand in the market. If you can use this new technology to your advantage you are pretty much guaranteed a job! Everyone is desperate for employees with these skills.

In Day 4 we go headfirst into Keras and understanding the API and Syntax.

You also get to know TensorFlow, the open source machine learning framework for everyone.

At Day 5 we explore the CIFAR-10 image dataset. Then we are ready to build our very own image classifier model from scratch. You will learn how to classify images by training a model.

We’re going to have a lot of fun, and you’ll have complete projects to put on your resume immediately.

Who is the target audience?

  • People who want to learn machine learning concepts through practical projects with Keras, PyCharm, Python and TensorFlow
  • Anyone who wants to learn the technology that is shaping how we interact with the world around us

Requirements

  • No experience required!
  • We will show you how to get PyCharm, Python, Keras and TensorFlow
  • This course was recorded on a Mac, but you can use a PC

Join now in this NEW Mammoth Interactive bootcamp course