Autoplay
Autocomplete
Previous Lesson
Complete and Continue
Mobile Machine Learning with CoreML: Artificial Intelligence iOS 14 and Swift 5 Masterclass
00a (Prerequisite) Swift Language Basics
00. Language Basics Topics List (4:55)
(Prerequisite) 01. Variable and Constants
00. Learning Goals (3:59)
01. Intro To Variables And Constants (15:51)
02. Primitive Types (18:42)
03. Strings (18:45)
04. Nil Values (12:50)
05. Tuples (14:14)
06. Type Conversions (23:14)
07. Assignment Operators (11:18)
08. Conditional Operators (12:26)
Variables and Constants Text.playground
(Prerequisite) 02. Collection Types
00. Topics List And Learning Objectives (3:11)
01. Intro To Collection Types (10:32)
02. Creating Arrays (4:53)
03. Common Array Operations (25:01)
04. Multidimensional Arrays (7:38)
05. Ranges (9:34)
Collection Types Text.playground
(Prerequisite) 03. Control flow
00. Topics List And Learning Objectives (3:40)
01. Intro To If And Else Statements (9:41)
02. Else If Statements (8:47)
03. Multiple Simultaneous Tests (12:32)
04. Intro To Switch Statements (9:21)
05. Advanced Switch Statement Techniques (15:59)
06. Testing For Nil Values (11:49)
07. Intro To While Loops (14:25)
08a. Intro To For...in Loops (14:13)
08b Intro To For...in Loops (cont'd) (10:53)
09. Complex Loops And Loop Control Statements (19:39)
Control Flow Text.playground
(Prerequisite) 04. Functions
00. Topics List And Learning Objectives (3:50)
01. Intro To Functions (19:54)
02. Function Parameters (11:35)
03. Return Statements (14:00)
04a. Parameter Variations - Argument Labels (8:57)
04b. Parameter Variations - Default Values (5:24)
04c. Parameters Variations - Inout Parameters (8:37)
04d. Parameter Variations - Variadic Parameters (10:46)
05. Returning Multiple Values Simultaneously (7:21)
Functions Text.playground
(Prerequisite) 05. Classes, Struct and Enums
00. Topics List And Learning Objectives- (4:59)
01. Intro To Classes (15:58)
02A. Properties As Fields - Add To Class Implementation (13:17)
02B. Custom Getters And Setters (8:18)
02C. Calculated Properties (23:46)
02D. Variable Scope And Self (12:49)
02E. Lazy And Static Variables (14:09)
03A. Behaviour And Instance Methods (16:12)
03B. Class Type Methods (7:17)
04. Class Instances As Field Variables (8:26)
05A. Inheritance, Subclassing And Superclassing (23:41)
05B. Overriding Initializers (13:16)
05C. Overriding Properties (16:04)
05D. Overriding Methods (10:08)
06. Structs Overview (19:58)
07. Enumerations (16:05)
08. Comparisons Between Classes, Structs And Enums (14:14)
Classes, Structs, Enums Text.playground
00b (Prerequisite) Introduction to Xcode
00. Intro And Demo (6:28)
01. General Interface Intro (14:40)
02. File System Introduction (12:59)
03. Viewcontroller Intro (6:28)
04. Storyboard File Intro (17:03)
05. Connecting Outlets And Actions (13:47)
06. Running An Application (9:40)
07. Debugging An Application (11:15)
XCode Intro
00c CoreML Overview
01 What Is Coreml (6:46)
Source Files
01 Course Overview
01 What You'll Learn (5:24)
Source Files
02 Natural Language Framework
Source Files
01 Natural Language Framework (4:30)
03. Text Analysis with the Natural Language Framework
01 Project Setup (7:26)
02 Recognize Dominant Language Of A Text (7:51)
03 What Is String Tokenization (4:13)
04 Tokenize A String (7:22)
05 Identify Parts Of Speech (10:26)
06 Identify People, Places And Organizations (14:26)
Source Files
04 Find Similarities Between Pieces of Text
01 What Is Word Embedding (7:36)
02 Find Similar Words (6:18)
03 Find Word Neighbors (8:34)
04 Find Similar Sentences (9:00)
Source Files
05 Train Sentiment Analysis with CreateML
00 What Is Sentiment Analysis (4:38)
01 Gather Dataset (6:59)
02 Train A Model In CreateML (11:18)
03 Use The Model In An App (10:25)
Source Files
06a Build An Image Classifier With Create ML
01 Train Image Classification In Create Ml (10:33)
02 Evaluate And Save The Image Classification Model (2:30)
03 Set Up App For Image Classification (5:55)
04 Process Images For Image Classification (11:24)
05 Use The Image Classification Model In An App (8:41)
Source Files
06b Build A Linear Regressor from CSV Data
00 What Is Linear Regression (4:48)
01 Gather Data For Linear Regressor (11:48)
Source Files
06c Build A Classifier from CSV Data
01 Gather Data For Classifier (8:23)
02 Train The Classifier (16:02)
Source Files
07 Object Detection with MobileNetV2
01 Mobilenetv2 Project Setup (5:56)
02 Download And Import The Model (7:49)
03 Resize Images (5:00)
04 Make A Pixel Buffer (5:43)
05 Make Rgb Color Space (5:11)
06 Make A Prediction (14:11)
Source Files
08 Image Recognition with YOLOv3
01 Yolov3 Project Setup (3:23)
02 Download The Yolov3 Model (6:53)
03 Resize Images (3:38)
04 Make A Pixel Buffer (4:40)
05 Make Rgb Color Space (3:54)
06 Make A Prediction (13:39)
Source Files
01. Intro To If And Else Statements
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