Pigeon 0.1.16

Pigeon 0.1.16

Maintained by Fernando Ortiz.



Pigeon 0.1.16

Pigeon 🐦

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Introduction

Pigeon is a SwiftUI and UIKit library that relies on Combine to deal with asynchronous data. It is heavily inspired by React Query.

In a nutshell

With Pigeon you can:

  • Fetch server side APIs.
  • Cache server responses using interchangeable and configurable cache providers.
  • Share server data among different, unconnected components in your app.
  • Mutate server side resources.
  • Invalidate cache and refetch data.
  • Manage paginated data sources
  • Pigeon is agnostic on what you use for fetching data.

All of that working against a very simple interface that uses the very convenient ObservableObject Combine protocol.

What is Pigeon?

Pigeon is all about Queries and Mutations. Queries are objects that are responsible of fetching server data, and Mutations are objects that are responsible of modifying server data. Both Queries and Mutations are ObservableObject conforming, meaning both of them are fully compatible with SwiftUI and that their states are observable.

Queries are identified by a QueryKey. Pigeon uses QueryKey objects to cache query results, link them internally and invalidate queries when they need to be refetched.

A very important thing in Pigeon is that you can use whatever you want to fetch data from wherever you need. Pigeon don't force you to use Alamofire or URLSession or GraphQL or even CoreData. You can fetch the data from where you need using the most appropriate tool. The only thing you need to use is Combine publishers.

The last thing I want to note and then we can go straight to code. Pigeon can optionally cache your responses: you can let Pigeon store the responses for your fetches and it will populate your app with data with almost zero-config.

Quick Start

In the core of Pigeon is the Query ObservableObject. Let's explore the 'hello world' of Pigeon:

// 1
struct User: Codable, Identifiable {
    let id: Int
    let name: String
}

struct UsersList: View {
    // 2
    @ObservedObject var users = Query<Void, [User]>(
        // 3    
        key: QueryKey(value: "users"),
        // 4
        fetcher: {
            URLSession.shared
                .dataTaskPublisher(for: URL(string: "https://jsonplaceholder.typicode.com/users")!)
                .map(\.data)
                .decode(type: [User].self, decoder: JSONDecoder())
                .receive(on: DispatchQueue.main)
                .eraseToAnyPublisher()
        }
    )
    
    var body: some View {
        // 5
        List(users.state.value ?? []) { user in
            Text(user.name)
        }.onAppear(perform: {
            // 6
            self.users.refetch(request: ())
        })
    }
}
  1. We start by defining a Codable structure that will store our server side data. This is not related to Pigeon itself, but is still needed for our example to work.
  2. We define a Query that will store our array of User. Query takes two generic parameters: Request (Void in this example, since the fetch action won't receive any parameters) and Response which is the type of our data ([User] in this example).
  3. Data is cached by default in Pigeon. The QueryKey is a simple wrapper around the String that identifies our piece of state.
  4. Query also receives a fetcher, which is a function that we have to define. fetcher takes the Request and returns a Combine Publisher holding the Response. Note that we can put whatever custom logic in the fetcher. In this case, we use URLSession to get an array of User from an API.
  5. Query contains a state, that is either: idle (if it just starts), loading (if the fetcher is running), failed (which also contains an Error), or succeed (which also contains the Response). value is just a convenience property that returns a Response in case it exists, or nil otherwise.
// ...
    var body: some View {
        // 5
        switch users.state {
            case .idle, .loading:
                return AnyView(Text("Loading..."))
            case .failed:
                return AnyView(Text("Oops..."))
            case let .succeed(users):
                return AnyView(
                    List(users) { user in
                        Text(user.name)
                    }
                )
        }
    }
// ...

Note: If you find this ugly, then you might be interested in QueryRenderer. Keep scrolling!

  1. In this example, we are firing our Query manually, using refetch. However, we can also configure our Query so it fires immediately like this:
struct UsersList: View {
    @ObservedObject var users = Query<Void, [User]>(
        key: QueryKey(value: "users"),
        // Changing the query behavior, we can tell the query to 
        // start fetching as soon as it initializes. 
        behavior: .startImmediately(()),
        fetcher: {
            URLSession.shared
                .dataTaskPublisher(for: URL(string: "https://jsonplaceholder.typicode.com/users")!)
                .map(\.data)
                .decode(type: [User].self, decoder: JSONDecoder())
                .receive(on: DispatchQueue.main)
                .eraseToAnyPublisher()
        }
    )
    
    var body: some View {
        List(users.state.value ?? []) { user in
            Text(user.name)
        }
    }
}

Queries and Query Consumers

In addition to Queries, Pigeon has another type, Consumer that doesn't provide any kind of fetching capability, but just provides the capability to consume, and react to changes in Queries with the same QueryKey that it subscribes to. Please note that the Query dependency injection is done internally, and that the state is not duplicated.

struct ContentView: View {
    @ObservedObject var users = Query<Void, [User]>(
        key: QueryKey(value: "users"),
        behavior: .startImmediately(()),
        fetcher: {
            URLSession.shared
                .dataTaskPublisher(for: URL(string: "https://jsonplaceholder.typicode.com/users/")!)
                .map(\.data)
                .decode(type: [User].self, decoder: JSONDecoder())
                .receive(on: DispatchQueue.main)
                .eraseToAnyPublisher()
        }
    )
    
    var body: some View {
        UsersList()
    }
}

struct UsersList: View {
    @ObservedObject var users = Query<Void, [User]>.Consumer(key: QueryKey(value: "users"))
    
    var body: some View {
        List(users.state.value ?? []) { user in
            Text(user.name)
        }
    }
}

struct User: Codable, Identifiable {
    let id: Int
    let name: String
}

Polling

Pigeon provides a way to fetching data using the fetcher every N seconds. That's achieved with the pollingBehavior property in the Query class. Default is .noPolling. Let's see an example:

@ObservedObject var users = Query<Void, [User]>(
    key: QueryKey(value: "users"),
    behavior: .startImmediately(()),
    pollingBehavior: .pollEvery(2),
    fetcher: {
        URLSession.shared
            .dataTaskPublisher(for: URL(string: "https://jsonplaceholder.typicode.com/users")!)
            .map(\.data)
            .decode(type: [User].self, decoder: JSONDecoder())
            .receive(on: DispatchQueue.main)
            .eraseToAnyPublisher()
    }
)

That query will trigger its fetcher every 2 seconds.

Mutations

In addition to allow queries, Pigeon also provides a way to mutate server data, and force to refetch affected queries.

@ObservedObject var sampleMutation = Mutation<Int, User> { (number) -> AnyPublisher<User, Error> in
    Just(User(id: number, name: "Pepe"))
        .tryMap({ $0 })
        .eraseToAnyPublisher()
}

// ...

sampleMutation.execute(with: 10) { (user: User, invalidate) in
    // Invalidate triggers a new query on the "users" key
    invalidate(QueryKey(value: "users"), .lastData)
}

Convenient keys

You can also define more convenient keys by extending QueryKey like this:

extension QueryKey {
    static let users: QueryKey = QueryKey(value: "users")
}

So then you can use it like this:

struct UsersList: View {
    @ObservedObject var users = Query<Void, [User]>.Consumer(key: .users)
    
    var body: some View {
        List(users.state.value ?? []) { user in
            Text(user.name)
        }
    }
}

Key adapters

There are some times where you need to cache values not only depending on your Query type, but also on the parameters of your request. For instance, maybe you want to cache the response for user with id=1 in a separate cache value than user with id=2. That is the problem key adapters solve. Key Adapters are available both in Query and in PaginatedQuery and are optional. Key adapters are sent under the keyAdapter parameter for the constructor and are functions with (QueryKey, Request) -> QueryKey signature.

@ObservedObject private var user = Query<Int, [User]>(
    key: QueryKey(value: "users"),
    keyAdapter: { key, id in
        key.appending(id.description)
    },
    behavior: .startImmediately(1),
    cache: UserDefaultsQueryCache.shared,
    fetcher: { id in
        // ...
    }
)

Paginated Queries

A very frequent scenario when fetching server data is pagination. Pigeon provides a special type of Query for this use case: PaginatedQuery. PaginatedQuery is generic on three types:

  • Request: The type that is required in order to perform the fetch
  • PageIdentifier: a PaginatedQueryKey conforming type, that identifies the current page. By default, Pigeon provides two PaginatedQueryKey alternatives: NumericPaginatedQueryKey (page 1, page 2, ...) and LimitOffsetPaginatedQueryKey (limit: 20, offset: 40, for instance). If these don't match your needs, then you can create a new type that implements PaginatedQueryKey and customize its behavior.
  • Response: The response type. This type needs to conform Sequence in order to be suitable for use in PaginatedQuery.

Let's jump on an example:

@ObservedObject private var users = PaginatedQuery<Void, LimitOffsetPaginatedQueryKey, [User]>(
    key: QueryKey(value: "users"),
    firstPage: LimitOffsetPaginatedQueryKey(
        limit: 20,
        offset: 0
    ),
    fetcher: { (request, page) in
        // ...
    }
)

This is an example of a PaginatedQuery. There are a couple of important things to note here:

  • key works in the exact same way as in the regular Query type.
  • firstPage should receive the first possible page for your fetcher.
  • fetcher works exactly the same way as in Query BUT it also receives the page to be fetched.

On top of all the functionality that Query provides, PaginatedQuery allow you a couple of more things:

// If you want to fetch the next page.
users.fetchNextPage()

// If you need to fetch the first page again (this will reset the current state for your query)
users.refetch(request /* some Request */)

An important thing to note is that PaginatedQuery can not be cached at this moment.

Dependency on Codable

An important restriction in Pigeon Query type is that the Response must be Codable. That is because of the cachable nature of server side data. Data can be cached, and in order to be cached, we need it to be Codable.

Cache

Cache is deeply integrated into Pigeon mechanics. All data in Pigeon Query objects can be cached since it's codable, and then used for state rehydration in the next app startup.

Let's see an example:

@ObservedObject private var cards = PaginatedQuery<Void, NumericPaginatedQueryKey, [Card]>(
    key: QueryKey(value: "cards"),
    firstPage: NumericPaginatedQueryKey(current: 0),
    behavior: .startImmediately(()),
    cache: UserDefaultsQueryCache.shared,
    cacheConfig: QueryCacheConfig(
        invalidationPolicy: .expiresAfter(1000),
        usagePolicy: .useInsteadOfFetching
    ),
    fetcher: { request, page in
        print("Fetching page no. \(page)")
        return GetCardsRequest()
            .execute()
            .map(\.cards)
            .eraseToAnyPublisher()
    }
)

This is from the Example folder in this project. If you see in the cacheConfig:

cacheConfig: QueryCacheConfig(
    invalidationPolicy: .expiresAfter(1000),
    usagePolicy: .useInsteadOfFetching
),

It's almost self-explanatory: Pigeon will use the cache if possible and if its data is valid, instead of fetching. And the data will be considered valid until 1000 seconds from saved.

Pigeon provides two invalidation policies:

public enum InvalidationPolicy {
    case notExpires
    case expiresAfter(TimeInterval)
}

and three usage policies:

public enum UsagePolicy {
    case useInsteadOfFetching
    case useIfFetchFails
    case useAndThenFetch
}

Right now, two cache providers are included in the project: InMemoryQueryCache and UserDefaultsQueryCache, but you can create your own cache by implementing QueryCacheType in a custom type.

Query Renderers

If you saw the state rendering in the Quick Start section:

// ...
    var body: some View {
        // 5
        switch users.state {
            case .idle, .loading:
                return AnyView(Text("Loading..."))
            case .failed:
                return AnyView(Text("Oops..."))
            case let .succeed(users):
                return AnyView(
                    List(users) { user in
                        Text(user.name)
                    }
                )
        }
    }
// ...

Then you probably felt it could have been done in a much better way. What is all that AnyView thing? Weird...

Well, Pigeon provides an alternative way to do this: QueryRenderer. It's a protocol with three requirements:

// When Query is in loading state
var loadingView: some View { get }

// When Query is in succeed state
func successView(for response: Response) -> some View

// When Query is in failure state
func failureView(for failure: Error) -> some View

In exchange of that, QueryRenderer provides a method for rendering a QueryState. Let's see a full example:

struct UsersList: View {
    @ObservedObject private var users = Query<Void, [User]>(
        key: QueryKey(value: "users"),
        behavior: .startImmediately(()),
        fetcher: {
            URLSession.shared
                .dataTaskPublisher(for: URL(string: "https://jsonplaceholder.typicode.com/users/")!)
                .map(\.data)
                .decode(type: [User].self, decoder: JSONDecoder())
                .receive(on: DispatchQueue.main)
                .eraseToAnyPublisher()
        }
    )
    
    var body: some View {
        self.view(for: users.state)
    }
}

extension UsersList: QueryRenderer {
    var loadingView: some View {
        Text("Loading...")
    }
    
    func successView(for response: [User]) -> some View {
        List(response) { user in
            Text(user.name)
        }
    }
    
    func failureView(for failure: Error) -> some View {
        Text("It failed...")
    }
}

struct User: Codable, Identifiable {
    let id: Int
    let name: String
}

Please note that you aren't forced to put implement QueryRenderer in your View. You can always create a different structure for the rendering logic, and make that structure reusable for different contexts. Check this full example:

struct CardDetailView: View {
    @ObservedObject private var card = Query<String, Card>(
        key: QueryKey(value: "card_detail"),
        keyAdapter: { key, id in
            key.appending(id)
        },
        cache: UserDefaultsQueryCache.shared,
        cacheConfig: QueryCacheConfig(
            invalidationPolicy: .expiresAfter(500),
            usagePolicy: .useInsteadOfFetching
        ),
        fetcher: { id in
            CardDetailRequest(cardId: id)
                .execute()
                .map(\.card)
                .eraseToAnyPublisher()
        }
    )
    private let id: String
    
    let renderer = NameRepresentableRenderer<Card>()
    
    init(id: String) {
        self.id = id
    }
    
    var body: some View {
        renderer.view(for: card.state)
            .navigationBarTitle("Card Detail")
    }
}

protocol NameRepresentable {
    var name: String { get }
}

extension Card: NameRepresentable {}

struct NameRepresentableRenderer<T: NameRepresentable>: QueryRenderer {
    var loadingView: some View {
        Text("Loading...")
    }
    
    func failureView(for failure: Error) -> some View {
        EmptyView()
    }
    
    func successView(for response: T) -> some View {
        Text(response.name)
    }
}

Global defaults

You can change QueryCacheType and QueryCacheConfig global data by calling to setGlobal on either type.

Best Practices

You are not forced to mix networking logic with the views. You can always define your queries externally and inject them as a dependency. You can even embed Queries and Mutations in your own view models or ObservableObject instances. Query, Consumer and PaginatedQuery have three interesting properties:

var state: QueryState<Response> { get }
var statePublisher: AnyPublisher<QueryState<Response>, Never> { get }
var valuePublisher: AnyPublisher<Response, Never>

You can observe statePublisher or valuePublisher, so you can add abstract your views from the QueryType objects, or even create dependent queries. You can chain queries by listening to changes in their state or success values.

Example

To run the example project, clone the repo, and run pod install from the Example directory first.

Requirements

Pigeon works with SwiftUI and UIKit as well. As it has a dependency in Combine, it required a minimum iOS version of 13.0.

Installation

Pigeon is available through CocoaPods. To install it, simply add the following line to your Podfile:

pod 'Pigeon'

Author

fmo91, [email protected]

License

Pigeon is available under the MIT license. See the LICENSE file for more info.