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πŸ’» A fast and flexible O(n) difference algorithm framework for Swift collection.

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A fast and flexible O(n) difference algorithm framework for Swift collection.
The algorithm is optimized based on the Paul Heckel's algorithm.

Swift5 Release CocoaPods Carthage Swift Package Manager
Build Status Platform Lincense


Made with ❀️ by Ryo Aoyama and Contributors


Features

πŸ’‘ Fastest O(n) diffing algorithm optimized for Swift collection

πŸ’‘ Calculate diffs for batch updates of list UI in UIKit, AppKit and Texture

πŸ’‘ Supports both linear and sectioned collection even if contains duplicates

πŸ’‘ Supports all kind of diffs for animated UI batch updates


Algorithm

This is a diffing algorithm developed for Carbon, works stand alone.
The algorithm optimized based on the Paul Heckel's algorithm.
See also his paper "A technique for isolating differences between files" released in 1978.
It allows all kind of diffs to be calculated in linear time O(n).
RxDataSources and IGListKit are also implemented based on his algorithm.

However, in performBatchUpdates of UITableView, UICollectionView, etc, there are combinations of diffs that cause crash when applied simultaneously.
To solve this problem, DifferenceKit takes an approach of split the set of diffs at the minimal stages that can be perform batch updates with no crashes.

Implementation is here.


Getting Started

Basic Usage

The type of the element that to take diffs must be conform to the Differentiable protocol.
The differenceIdentifier's type is generic associated type:

struct User: Differentiable {
    let id: Int
    let name: String

    var differenceIdentifier: Int {
        return id
    }

    func isContentEqual(to source: User) -> Bool {
        return name == source.name
    }
}

In the case of definition above, id uniquely identifies the element and get to know the user updated by comparing equality of name of the elements in source and target.

There are default implementations of Differentiable for the types that conforming to Equatable or Hashable:

// If `Self` conforming to `Hashable`.
var differenceIdentifier: Self {
    return self
}

// If `Self` conforming to `Equatable`.
func isContentEqual(to source: Self) -> Bool {
    return self == source
}

Therefore, you can simply:

extension String: Differentiable {}

Calculate the diffs by creating StagedChangeset from two collections of elements conforming to Differentiable:

let source = [
    User(id: 0, name: "Vincent"),
    User(id: 1, name: "Jules")
]
let target = [
    User(id: 1, name: "Jules"),
    User(id: 0, name: "Vincent"),
    User(id: 2, name: "Butch")
]

let changeset = StagedChangeset(source: source, target: target)

If you want to include multiple types conforming to Differentiable in the collection, use AnyDifferentiable:

let source = [
    AnyDifferentiable("A"),
    AnyDifferentiable(User(id: 0, name: "Vincent"))
]

In the case of sectioned collection, the section itself must have a unique identifier and be able to compare whether there is an update.
So each section must conforming to DifferentiableSection protocol, but in most cases you can use ArraySection that general type conforming to it.
ArraySection requires a model conforming to Differentiable for diffing from other sections:

enum Model: Differentiable {
    case a, b, c
}

let source: [ArraySection<Model, String>] = [
    ArraySection(model: .a, elements: ["A", "B"]),
    ArraySection(model: .b, elements: ["C"])
]
let target: [ArraySection<Model, String>] = [
    ArraySection(model: .c, elements: ["D", "E"]),
    ArraySection(model: .a, elements: ["A"]),
    ArraySection(model: .b, elements: ["B", "C"])
]

let changeset = StagedChangeset(source: source, target: target)

You can perform diffing batch updates of UITableView and UICollectionView using the created StagedChangeset.

⚠️ Don't forget to synchronously update the data referenced by the data-source, with the data passed in the setData closure. The diffs are applied in stages, and failing to do so is bound to create a crash:

tableView.reload(using: changeset, with: .fade) { data in
    dataSource.data = data
}

Batch updates using too large amount of diffs may adversely affect to performance.
Returning true with interrupt closure then falls back to reloadData:

collectionView.reload(using: changeset, interrupt: { $0.changeCount > 100 }) { data in
    dataSource.data = data
}

Comparison with Other Frameworks

Made a fair comparison as much as possible in performance and features with other popular and awesome frameworks.
This does NOT determine superiority or inferiority of the frameworks.
I know that each framework has different benefits.
The frameworks and its version that compared is below.

Performance Comparison

Benchmark project is here.
Performance was mesured by code compiled using Xcode10.2 and Swift 5.0 with -O -whole-module-optimization and run on iPhoneXs simulator.
Use Foundation.UUID as an element of collections.

- From 5,000 elements to 1,000 deleted, 1,000 inserted and 200 shuffled

Time(sec)
DifferenceKit 0.0021
RxDataSources 0.0067
IGListKit 0.0490
FlexibleDiff 0.0117
DeepDiff 0.0263
Differ 1.2661
Dwifft 0.4552

- From 100,000 elements to 10,000 deleted, 10,000 inserted and 2,000 shuffled

Time(sec)
DifferenceKit 0.0364
RxDataSources 0.1167
IGListKit 1.0130
FlexibleDiff 0.2104
DeepDiff 0.4180
Differ 136.8958
Dwifft 211.4457

Features Comparison

- Supported Collection

Linear Sectioned Duplicate element/section
DifferenceKit βœ… βœ… βœ…
RxDataSources ❌ βœ… ❌
FlexibleDiff βœ… βœ… βœ…
IGListKit βœ… ❌ βœ…
DeepDiff βœ… ❌ βœ…
Differ βœ… βœ… βœ…
Dwifft βœ… βœ… βœ…

* Linear means 1-dimensional collection
* Sectioned means 2-dimensional collection

- Supported Element Diff

Delete Insert Move Reload Move across sections
DifferenceKit βœ… βœ… βœ… βœ… βœ…
RxDataSources βœ… βœ… βœ… βœ… βœ…
FlexibleDiff βœ… βœ… βœ… βœ… ❌
IGListKit βœ… βœ… βœ… βœ… ❌
DeepDiff βœ… βœ… βœ… βœ… ❌
Differ βœ… βœ… βœ… ❌ ❌
Dwifft βœ… βœ… ❌ ❌ ❌

- Supported Section Diff

Delete Insert Move Reload
DifferenceKit βœ… βœ… βœ… βœ…
RxDataSources βœ… βœ… βœ… ❌
FlexibleDiff βœ… βœ… βœ… βœ…
IGListKit ❌ ❌ ❌ ❌
DeepDiff ❌ ❌ ❌ ❌
Differ βœ… βœ… βœ… ❌
Dwifft βœ… βœ… ❌ ❌

Requirements

  • Swift 4.2+
  • iOS 9.0+
  • tvOS 9.0+
  • OS X 10.9+
  • watchOS 2.0+ (only algorithm)

Installation

To use only algorithm without extensions for UI, add the following to your Podfile:

pod 'DifferenceKit/Core'

iOS / tvOS

To use DifferenceKit with UIKit extension, add the following to your Podfile:

pod 'DifferenceKit'

or

pod 'DifferenceKit/UIKitExtension'

macOS

To use DifferenceKit with AppKit extension, add the following to your Podfile:

pod 'DifferenceKit/AppKitExtension'

watchOS

There is no UI extension for watchOS.
To use only algorithm without extensions for UI, add the following to your Podfile:

pod 'DifferenceKit/Core'

Add the following to your Cartfile:

github "ra1028/DifferenceKit"

Add the following to the dependencies of your Package.swift:

.package(url: "https://github.com/ra1028/DifferenceKit.git", from: "version")

Contribution

Pull requests, bug reports and feature requests are welcome πŸš€
Please see the CONTRIBUTING file for learn how to contribute to DifferenceKit.


Credit

Bibliography

DifferenceKit was developed with reference to the following excellent materials and framework.

OSS using DifferenceKit

The list of the awesome OSS which uses this library. They also help to understanding how to use DifferenceKit.

Other diffing libraries

I respect and ️❀️ all libraries involved in diffing.


License

DifferenceKit is released under the Apache 2.0 License.

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πŸ’» A fast and flexible O(n) difference algorithm framework for Swift collection.

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