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Hello Swift Final
1.
Welcome to Swift iOS
Project with Swift
2.
•스위프트 프로젝트 만들기 •프로젝트
둘러보기(소스,어셋,환경설정,스토리보드) •시뮬레이터 •Remove Korean Comments for Auto Completion •UIApplicationDelegate •UIViewController •스토리보드에 View 추가하기 •@IBOutlet •@IBAction •NSTimer •NSDate •Final 다룰 내용
3.
스위프트 프로젝트 만들기
4.
스위프트 프로젝트 만들기
5.
프로젝트 둘러보기
6.
프로젝트 둘러보기
7.
프로젝트 둘러보기
8.
프로젝트 둘러보기
9.
스토리보드
10.
시뮬레이터
11.
시뮬레이터
12.
Remove Korean Comments
for Auto Completion
13.
UIApplicationDelegate
14.
UIViewController
15.
스토리보드에 View 추가하기
16.
스토리보드에 View 추가하기
17.
스토리보드에 View 추가하기
18.
@IBOutlet
19.
@IBOutlet
20.
@IBAction
21.
@IBAction
22.
NSTimer
23.
NSDate
24.
Final
25.
Final https://github.com/GoodMorningCody/Swift-Example-on-iOS
26.
감사합니다.
Download now