ios-learning-materials - 📚Curated list of articles, web-resources, tutorials and code repositories that may help you dig a little bit deeper into iOS

  •        74

Last Update: 10/October/2018. Curated list of articles, web-resources, tutorials, Stack Overflow and Quora Q&A, GitHubcode repositories and useful resources that may help you dig a little bit deeper into iOS. All the resources are split into sub-categories which simlifies navigation and management. Feel free to use and suggest something to learn (iOS related of course 😜).

https://github.com/jVirus/ios-learning-materials

Tags
Implementation
License
Platform

   




Related Projects

Awesome-CoreML-Models - Largest list of models for Core ML (for iOS 11+)

  •    HTML

We've put up the largest collection of machine learning models in Core ML format, to help iOS, macOS, tvOS, and watchOS developers experiment with machine learning techniques. We've created a site with better visualization of the models CoreML.Store, and are working on more advance features. If you've converted a Core ML model, feel free to submit an issue.

CoreML-in-ARKit - Simple project to detect objects and display 3D labels above them in AR

  •    Swift

This simple project detects objects in Augmented Reality and displays 3D labels on top of them. This serves as a basic template for an ARKit project to use CoreML. Note: SceneKit can achieve a 60 FPS on iPhone7+ - though when it gets hot, it'll drop to 30 FPS.

awesome-ios - A curated list of awesome iOS ecosystem, including Objective-C and Swift Projects

  •    Swift

A curated list of awesome iOS frameworks, libraries, tutorials, Xcode extensions and plugins, components and much more. The list is divided into categories such as Frameworks, Components, Testing and others, open source projects, free and paid services. There is no pre-established order of items in each category, the order is for contribution. If you want to contribute, please read the guide. Instabug has just released their visual repro steps feature to enable you to trace all the views that the user interacted with before a bug or a crash occured. This will help you reproduce bugs and fix them 10x faster. We highly recommend integrating Instabug’s framework as they compiled a lot of other great features like network logs and screen annotations, providing you with useful and rich data attached to each bug or crash report. Instabug is offering awesome-ios community an exclusive 15% discount on all paid plans. Go to 1 minute integration guide.

Gesture-Recognition-101-CoreML-ARKit - Simple project to recognize hands in realtime

  •    Swift

This simple sample project recognizes hands in realtime. 👋 It serves as a basic example for recognizing your own objects. Suitable for AR 🤓. Written for the tutorial “Create your own Object Recognizer”. This demonstrates basic Object Recognition (for spread hand 🖐, fist 👊, and no hands ❎). It serves as a building block for object detection, localization, gesture-recognition, and hand tracking.


Blog-Getting-Started-with-Vision - Blog: Getting Started with Vision on iOS 11

  •    Swift

Vision is a new framework from Apple for iOS 11 and other Apple platforms. Vision is a part of the Core ML framework. CoreML is the new framework that makes it really easy to take a machine learning model and run your data through it to get predictions. The Vision framework helps you feed machine learning models that expect images. Using the Vision framework, its really easy to process a live feed from the camera and extract information from each frame using both built in and external machine learning models. Vision has a number of built in features. Some of the things vision can do on still images, others on video, most on both.

SeeFood - Inspired by HBO's Silicon Valley: SeeFood is an iOS app that uses CoreML to detect various dishes

  •    Swift

For a step by step guide on how to build SeeFood: How to train your own model for CoreML. Xcode 9 (currently Version 9.0 beta 3 (9M174d)). The trained CoreML data model which can be downloaded here. An iOS device running iOS 11+.

ARPaint - Draw with bare fingers in the air using ARKit

  •    Swift

ARPaint demonstrates how to draw in the air with bare fingers using ARKit and Vision libraries introduced in iOS 11. Read this article: iOS ARKit Tutorial: Drawing in the Air with Bare Fingers for detailed description of how this code work and how to get started with ARKit.

awesome-scalability - Scalable, Available, Stable, Performant, and Intelligent System Design Patterns

  •    

An updated and curated list of readings to illustrate best practices and patterns in building scalable, available, stable, performant, and intelligent large-scale systems. Concepts are explained in the articles of prominent engineers and credible references. Case studies are taken from battle-tested systems that serve millions to billions of users. Understand your problems: scalability problem (fast for a single user but slow under heavy load) or performance problem (slow for a single user) by reviewing some design principles and checking how scalability and performance problems are solved at tech companies. The section of intelligence are created for those who work with data and machine learning at big (data) and deep (learning) scale.

MobileNet-CoreML - The MobileNet neural network using Apple's new CoreML framework

  •    Swift

This is the MobileNet neural network architecture from the paper MobileNets: Efficient Convolutional Neural Networks for Mobile Vision Applications implemented using Apple's shiny new CoreML framework. This uses the pretrained weights from shicai/MobileNet-Caffe.

iOS-11-by-Examples - 👨🏻‍💻 Examples of new iOS 11 APIs

  •    Swift

Code examples for new APIs of iOS 11. Note: The project requires Xcode 9, Swift 4 and iOS 11.

ARKit-Sampler - Code examples for ARKit.

  •    Swift

ARKit-Sampler is a collection of ARKit samples. A simple AR with 3 lines code.

NextLevel - ⬆️ Rad Media Capture in Swift

  •    Swift

NextLevel is a Swift camera system designed for easy integration, customized media capture, and image streaming in iOS. Integration can optionally leverage AVFoundation or ARKit. Alternatively, drop the NextLevel source files or project file into your Xcode project.

machine-learning-with-ruby - Curated list: Resources for machine learning in Ruby.

  •    Ruby

Machine Learning is a field of Computational Science - often nested under AI research - with many practical applications due to the ability of resulting algorithms to systematically implement a specific solution without explicit programmer's instructions. Obviously many algorithms need a definition of features to look at or a biggish training set of data to derive the solution from. This curated list comprises awesome libraries, data sources, tutorials and presentations about Machine Learning utilizing the Ruby programming language.

Awesome-ARKit - A curated list of awesome ARKit projects and resources. Feel free to contribute!

  •    Swift

ARKit is a new framework that allows you to easily create unparalleled augmented reality experiences for iPhone and iPad. By blending digital objects and information with the environment around you, ARKit takes apps beyond the screen, freeing them to interact with the real world in entirely new ways. Your contributions are always welcome! To add, remove, or change things on the list: Submit a pull request. See contribution.md for guidelines.

awesome-deep-learning-music - List of articles related to deep learning applied to music

  •    TeX

By Yann Bayle (Website, GitHub) from LaBRI (Website, Twitter), Univ. Bordeaux (Website, Twitter), CNRS (Website, Twitter) and SCRIME (Website). The role of this curated list is to gather scientific articles, thesis and reports that use deep learning approaches applied to music. The list is currently under construction but feel free to contribute to the missing fields and to add other resources! To do so, please refer to the How To Contribute section. The resources provided here come from my review of the state-of-the-art for my PhD Thesis for which an article is being written. There are already surveys on deep learning for music generation, speech separation and speaker identification. However, these surveys do not cover music information retrieval tasks that are included in this repository.

awesome-ios - A collaborative list of awesome for iOS developers. Include quick preview.

  •    Swift

If you know a good framework or you author of framework, feel free to add it to this project. All added libraries appear on the site awesome-ios.com. To add library, see instructions.

awesome-deep-learning-papers - The most cited deep learning papers

  •    TeX

We believe that there exist classic deep learning papers which are worth reading regardless of their application domain. Rather than providing overwhelming amount of papers, We would like to provide a curated list of the awesome deep learning papers which are considered as must-reads in certain research domains. Before this list, there exist other awesome deep learning lists, for example, Deep Vision and Awesome Recurrent Neural Networks. Also, after this list comes out, another awesome list for deep learning beginners, called Deep Learning Papers Reading Roadmap, has been created and loved by many deep learning researchers.






We have large collection of open source products. Follow the tags from Tag Cloud >>


Open source products are scattered around the web. Please provide information about the open source projects you own / you use. Add Projects.