Autoplay
Autocomplete
Previous Lesson
Complete and Continue
TensorFlow.js Neural Networks: Advanced Techniques and Applications
Mammoth Interactive Courses Introduction
Preface
01. About Mammoth Interactive (1:12)
02. How To Learn Online Effectively (13:46)
Source Files
(Prerequisite) Introduction to HTML
01. Course Requirements (2:55)
02. What Is JSbin (3:15)
03. Setting Up The HTML Document (2:41)
04. Header Tags And Paragraphs Tags (4:06)
05. Styles (3:32)
06. Bold Underline And Italic Tags (3:10)
07. Adding In A Link (1:38)
08. Adding In A Image (3:00)
09. Adding A Link To An Image (1:54)
10. Lists (4:03)
11. Tables (3:29)
12. Different Kinds Of Input (4:59)
13. Adding In A Submit Button (3:01)
14. Scripts And Style Tags (3:27)
(Prerequisite) Introduction to CSS
01. Course Requirements (3:41)
02. Html Styles Crash Course (4:45)
03. Adding Code To The CSS (4:46)
04. Adding In Ids To The CSS (5:16)
05. Classes In CSS (2:39)
06. Font Families (5:04)
07. Colors In CSS (5:44)
08. Padding In CSS (3:06)
09. Text Align And Transforms (3:14)
10. Margins And Width (5:33)
11. Changing The Body (4:11)
12. Latin Text Generator (1:57)
13. Adding In A Horizontal Menu With HTML And CSS (7:53)
14. Adding A Background Image (4:04)
15. Playing Around With Margins In CSS (2:20)
(Prerequisite) Introduction to JavaScript
01. Course Requirements (4:44)
02. HTML, CSS And Javascript Crash Course (4:53)
03. Adding In Functions (4:35)
04. Scaling Functions (4:27)
05. Changing The Text In Javascript (4:50)
06. Variables (5:40)
07. Arrays (5:30)
08. Objects (6:36)
09. Variable Scope (5:04)
10. Adding User Input Text (5:05)
11. Calling Functions (3:56)
12. If Statements (4:49)
13. Else If And Else Statements (4:05)
14. Changing The Style With Javascript (5:49)
TensorFlow JS Fundamentals
01. What Is Machine Learning (6:41)
02. What Is Tensorflow JS (4:29)
03. Load Tensorflow Object (5:08)
Source Files
01d Build Your First Tensors
01. Linear Algebra For Machine Learning (4:46)
02. Build Tensors (13:35)
03. Tensor Utility Methods (9:14)
04. Perform Math With Tensors (9:57)
Source Files
What is a Neural Network
01. What Is Deep Learning (6:10)
02. What Is A Neural Network (8:08)
Source Files
Build a Neural Network with One Hot Encoding
01. What Is One Hot Encoding (6:52)
02. Build Training Data (7:34)
03. Build The Neural Network (6:48)
04. Train The Neural Network (9:33)
05. Make A Prediction (10:11)
Source Files
Build a Neural Network to Detect Lines in Images
01. Build Training Data To Represent Images (12:15)
02. Build The Convolutional Neural Network (10:39)
03. Train The Convolutional Neural Network (9:06)
04. Make A Prediction Of Number Of Lines (15:05)
Source Files
Build an LSTM Recurrent Neural Network
01. What Is A Recurrent Neural Network (6:38)
02. Generate Sequence And Label (6:25)
03. Generate Dataset (6:02)
04. Build The LSTM Model (4:55)
05. Train The Model (11:25)
Source Files
Build a Model to Classify Iris Species
01. Process Iris Data (7:37)
02. Convert Data To Tensors (8:45)
03. Separate Training And Testing Data (8:54)
04. Create Training And Testing Datasets (4:42)
05. Build The Model (9:29)
06. Train The Model (4:10)
07. Make A Prediction (8:45)
Source Files
Build a Positive vs Negative Text Classifier
01. Load Model And Dataset (5:57)
02. Get User Input For Sentiment Analysis (10:59)
03. Make A Prediction (7:11)
Source Files
Build a Neural Network to Recognize Handwriting
01. What Is A Convolutional Neural Network (19:29)
02. Set Up Canvas To Load Image Data (10:35)
03. Load Mnist Dataset (6:47)
04. Separate Training And Testing Data (5:40)
05. Build The Model (6:48)
06. What Are The Network's Layers (14:14)
07. Train The Model (11:27)
08. Create Training Batches (6:14)
09. Create Testing Batches (11:31)
10. Fit Neural Network Through Data (8:54)
Source Files
04. Separate Training And Testing Data
Lesson content will be unlocked within 30 minutes.
Teachable is working on this bug.
No further action will be required on your part
.
Thank you for your patience