利用 Qwen3.5-4B-MNN 本身是多模态(含 visual.mnn),让同一个 MNN 模型 同时做文本生成与拍照识别 → MNN 路径只需下 1 个模型(7.4GB→2.64GB)。 MLX(.llm/.vl)保留作兜底,尤其开发机 iPhone 15 Pro(A17 无 SME2)。 - MNN.xcframework 重建为 OMNI(MNN_BUILD_LLM_OMNI=ON,加 OpenCV 图像解码); 构建脚本同步加 OMNI flag - MNNLLMBridge.analyzeImages:把图片路径拼成 <img>路径</img> 标签 + response, Omni 内部 CV::imread 加载(无需桥接 include OpenCV);与 generateText 共用 runResponse - MNNBackend.analyze:detached 线程跑 blocking VL 调用,聚合为字符串 - AIRuntime:engine=.mnn 且就绪时,prepareVL→prepareMNN、analyzeReport→mnn.analyze; 否则回退 MLX VL device + 模拟器 BUILD SUCCEEDED,0 error,OMNI 框架链接干净。 VL 实际识别质量需真机用化验单 A/B(demo 核心)。 Co-Authored-By: Claude Opus 4.8 (1M context) <noreply@anthropic.com>
95 lines
3.9 KiB
Swift
95 lines
3.9 KiB
Swift
import Foundation
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/// MNN(CPU / SME2)推理后端,封装 `MNNLLMBridge` 的文本流式生成。
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/// 与 `LLMSession`/`VLSession` 同款 actor 隔离;跨调用的串行化由上游 `AIRuntime` 闸门保证。
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///
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/// VL(图→文)需 MNN OMNI 构建(OpenCV 解码图像),当前文本构建不支持;`analyze` 抛错,
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/// 上层在 VL 路径回退 MLX(见 `AIRuntime`)。
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actor MNNBackend {
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private var bridge: MNNLLMBridge?
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var isLoaded: Bool { bridge?.isLoaded ?? false }
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/// 从 MNN 模型目录加载(目录含 MNN llm 的 config.json + llm.mnn + 权重 + tokenizer)。
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func load(folderURL: URL) throws {
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let configPath = folderURL.appendingPathComponent("config.json").path
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guard FileManager.default.fileExists(atPath: configPath) else {
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throw AIRuntimeError.notReady
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}
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guard let b = MNNLLMBridge(configPath: configPath) else {
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throw AIRuntimeError.modelLoadFailed("MNN createLLM/load 失败")
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}
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bridge = b
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}
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func unload() { bridge = nil }
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/// 文本流式生成。`bridge.generateText` 同步阻塞、逐段回调,放在 detached 线程跑,
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/// 把每段文本 yield 成 `TokenChunk`(含即时 tok/s)。流被取消时调用 `bridge.cancel()`。
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func generate(prompt: String, maxTokens: Int) -> AsyncThrowingStream<TokenChunk, Error> {
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guard let bridge else {
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return AsyncThrowingStream { $0.finish(throwing: AIRuntimeError.notReady) }
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}
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let box = MNNUncheckedBox(bridge)
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return AsyncThrowingStream { continuation in
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let meter = MNNRateMeter()
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let task = Task.detached(priority: .userInitiated) {
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_ = box.value.generateText(prompt, maxTokens: Int32(maxTokens)) { piece in
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let rate = meter.tick()
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continuation.yield(TokenChunk(text: piece, decodeRate: rate))
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}
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continuation.finish()
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}
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continuation.onTermination = { _ in
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box.value.cancel()
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task.cancel()
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}
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}
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}
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/// 图→文(VL)。一次性收集(JSON 抽取不需流式)。桥接里把图片路径拼成 <img> 标签,
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/// MNN Omni 内部 imread 加载(需 OMNI 框架);blocking 调用放 detached 线程。
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func analyze(imageURLs: [URL], prompt: String, maxTokens: Int) async throws -> String {
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guard let bridge else { throw AIRuntimeError.notReady }
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let paths = imageURLs.map(\.path)
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let box = MNNUncheckedBox(bridge)
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return try await withCheckedThrowingContinuation { cont in
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Task.detached(priority: .userInitiated) {
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let sink = MNNTextSink()
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do {
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_ = try box.value.analyzeImages(paths, prompt: prompt, maxTokens: Int32(maxTokens)) { piece in
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sink.append(piece)
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}
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cont.resume(returning: sink.text)
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} catch {
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cont.resume(throwing: AIRuntimeError.inferenceFailed(error.localizedDescription))
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}
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}
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}
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}
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}
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/// 单线程串行回调聚合文本,无竞争。
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private nonisolated final class MNNTextSink: @unchecked Sendable {
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private(set) var text = ""
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func append(_ s: String) { text += s }
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}
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/// 把非 Sendable 的 ObjC 桥对象安全带过 detached 边界。
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/// 安全性来自 `AIRuntime` 闸门:同一时刻只有一个生成在跑,桥不会被并发访问。
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private nonisolated struct MNNUncheckedBox<T>: @unchecked Sendable {
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let value: T
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init(_ value: T) { self.value = value }
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}
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/// 即时解码速率计:回调在单线程串行调用,内部计数无竞争。
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private nonisolated final class MNNRateMeter: @unchecked Sendable {
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private let start = Date()
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private var produced = 0
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func tick() -> Double {
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produced += 1
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let elapsed = Date().timeIntervalSince(start)
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return elapsed > 0 ? Double(produced) / elapsed : 0
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}
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}
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