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foundation-models-on-device

Apple FoundationModels framework for on-device LLM — text generation, guided generation with @Generable, tool calling, and snapshot streaming in iOS 26+.

Invoke via:use foundation-models-on-device
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FoundationModels: On-Device LLM (iOS 26)

Patterns for integrating Apple's on-device language model into apps using the FoundationModels framework. Covers text generation, structured output with @Generable, custom tool calling, and snapshot streaming — all running on-device for privacy and offline support.

When to Activate

  • Building AI-powered features using Apple Intelligence on-device
  • Generating or summarizing text without cloud dependency
  • Extracting structured data from natural language input
  • Implementing custom tool calling for domain-specific AI actions
  • Streaming structured responses for real-time UI updates
  • Need privacy-preserving AI (no data leaves the device)

Core Pattern — Availability Check

Always check model availability before creating a session:

struct GenerativeView: View {
    private var model = SystemLanguageModel.default

var body: some View { switch model.availability { case .available: ContentView() case .unavailable(.deviceNotEligible): Text("Device not eligible for Apple Intelligence") case .unavailable(.appleIntelligenceNotEnabled): Text("Please enable Apple Intelligence in Settings") case .unavailable(.modelNotReady): Text("Model is downloading or not ready") case .unavailable(let other): Text("Model unavailable: \(other)") } } }

Core Pattern — Basic Session

// Single-turn: create a new session each time
let session = LanguageModelSession()
let response = try await session.respond(to: "What's a good month to visit Paris?")
print(response.content)

// Multi-turn: reuse session for conversation context let session = LanguageModelSession(instructions: """ You are a cooking assistant. Provide recipe suggestions based on ingredients. Keep suggestions brief and practical. """)

let first = try await session.respond(to: "I have chicken and rice") let followUp = try await session.respond(to: "What about a vegetarian option?")

Key points for instructions:

  • Define the model's role ("You are a mentor")
  • Specify what to do ("Help extract calendar events")
  • Set style preferences ("Respond as briefly as possible")
  • Add safety measures ("Respond with 'I can't help with that' for dangerous requests")

Core Pattern — Guided Generation with @Generable

Generate structured Swift types instead of raw strings:

1. Define a Generable Type

@Generable(description: "Basic profile information about a cat")
struct CatProfile {
    var name: String

@Guide(description: "The age of the cat", .range(0...20)) var age: Int

@Guide(description: "A one sentence profile about the cat's personality") var profile: String }

2. Request Structured Output

let response = try await session.respond(
    to: "Generate a cute rescue cat",
    generating: CatProfile.self
)

// Access structured fields directly print("Name: \(response.content.name)") print("Age: \(response.content.age)") print("Profile: \(response.content.profile)")

Supported @Guide Constraints

  • .range(0...20) — numeric range
  • .count(3) — array element count
  • description: — semantic guidance for generation

Core Pattern — Tool Calling

Let the model invoke custom code for domain-specific tasks:

1. Define a Tool

struct RecipeSearchTool: Tool {
    let name = "recipe_search"
    let description = "Search for recipes matching a given term and return a list of results."

@Generable struct Arguments { var searchTerm: String var numberOfResults: Int }

func call(arguments: Arguments) async throws -> ToolOutput { let recipes = await searchRecipes( term: arguments.searchTerm, limit: arguments.numberOfResults ) return .string(recipes.map { "- \($0.name): \($0.description)" }.joined(separator: "\n")) } }

2. Create Session with Tools

let session = LanguageModelSession(tools: [RecipeSearchTool()])
let response = try await session.respond(to: "Find me some pasta recipes")

3. Handle Tool Errors

do {
    let answer = try await session.respond(to: "Find a recipe for tomato soup.")
} catch let error as LanguageModelSession.ToolCallError {
    print(error.tool.name)
    if case .databaseIsEmpty = error.underlyingError as? RecipeSearchToolError {
        // Handle specific tool error
    }
}

Core Pattern — Snapshot Streaming

Stream structured responses for real-time UI with PartiallyGenerated types:

@Generable
struct TripIdeas {
    @Guide(description: "Ideas for upcoming trips")
    var ideas: [String]
}

let stream = session.streamResponse( to: "What are some exciting trip ideas?", generating: TripIdeas.self )

for try await partial in stream { // partial: TripIdeas.PartiallyGenerated (all properties Optional) print(partial) }

SwiftUI Integration

@State private var partialResult: TripIdeas.PartiallyGenerated?
@State private var errorMessage: String?

var body: some View { List { ForEach(partialResult?.ideas ?? [], id: \.self) { idea in Text(idea) } } .overlay { if let errorMessage { Text(errorMessage).foregroundStyle(.red) } } .task { do { let stream = session.streamResponse(to: prompt, generating: TripIdeas.self) for try await partial in stream { partialResult = partial } } catch { errorMessage = error.localizedDescription } } }

Key Design Decisions

| Decision | Rationale | |----------|-----------| | On-device execution | Privacy — no data leaves the device; works offline | | 4,096 token limit | On-device model constraint; chunk large data across sessions | | Snapshot streaming (not deltas) | Structured output friendly; each snapshot is a complete partial state | | @Generable macro | Compile-time safety for structured generation; auto-generates PartiallyGenerated type | | Single request per session | isResponding prevents concurrent requests; create multiple sessions if needed | | response.content (not .output) | Correct API — always access results via .content property |

Best Practices

  • Always check model.availability before creating a session — handle all unavailability cases
  • Use instructions to guide model behavior — they take priority over prompts
  • Check isResponding before sending a new request — sessions handle one request at a time
  • Access response.content for results — not .output
  • Break large inputs into chunks — 4,096 token limit applies to instructions + prompt + output combined
  • Use @Generable for structured output — stronger guarantees than parsing raw strings
  • Use GenerationOptions(temperature:) to tune creativity (higher = more creative)
  • Monitor with Instruments — use Xcode Instruments to profile request performance

Anti-Patterns to Avoid

  • Creating sessions without checking model.availability first
  • Sending inputs exceeding the 4,096 token context window
  • Attempting concurrent requests on a single session
  • Using .output instead of .content to access response data
  • Parsing raw string responses when @Generable structured output would work
  • Building complex multi-step logic in a single prompt — break into multiple focused prompts
  • Assuming the model is always available — device eligibility and settings vary

When to Use

  • On-device text generation for privacy-sensitive apps
  • Structured data extraction from user input (forms, natural language commands)
  • AI-assisted features that must work offline
  • Streaming UI that progressively shows generated content
  • Domain-specific AI actions via tool calling (search, compute, lookup)