205 lines
7.3 KiB
Swift
205 lines
7.3 KiB
Swift
// For licensing see accompanying LICENSE.md file.
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// Copyright (C) 2022 Apple Inc. All Rights Reserved.
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import Foundation
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import CoreML
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/// U-Net noise prediction model for stable diffusion
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@available(iOS 16.2, macOS 13.1, *)
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public struct Unet: ResourceManaging {
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/// Model used to predict noise residuals given an input, diffusion time step, and conditional embedding
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///
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/// It can be in the form of a single model or multiple stages
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var models: [ManagedMLModel]
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/// Creates a U-Net noise prediction model
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///
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/// - Parameters:
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/// - url: Location of single U-Net compiled Core ML model
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/// - configuration: Configuration to be used when the model is loaded
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/// - Returns: U-net model that will lazily load its required resources when needed or requested
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public init(modelAt url: URL,
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configuration: MLModelConfiguration) {
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self.models = [ManagedMLModel(modelAt: url, configuration: configuration)]
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}
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/// Creates a U-Net noise prediction model
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///
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/// - Parameters:
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/// - urls: Location of chunked U-Net via urls to each compiled chunk
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/// - configuration: Configuration to be used when the model is loaded
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/// - Returns: U-net model that will lazily load its required resources when needed or requested
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public init(chunksAt urls: [URL],
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configuration: MLModelConfiguration) {
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self.models = urls.map { ManagedMLModel(modelAt: $0, configuration: configuration) }
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}
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/// Load resources.
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public func loadResources() throws {
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for model in models {
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try model.loadResources()
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}
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}
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/// Unload the underlying model to free up memory
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public func unloadResources() {
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for model in models {
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model.unloadResources()
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}
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}
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/// Pre-warm resources
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public func prewarmResources() throws {
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// Override default to pre-warm each model
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for model in models {
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try model.loadResources()
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model.unloadResources()
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}
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}
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var latentSampleDescription: MLFeatureDescription {
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try! models.first!.perform { model in
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model.modelDescription.inputDescriptionsByName["sample"]!
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}
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}
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/// The expected shape of the models latent sample input
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public var latentSampleShape: [Int] {
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latentSampleDescription.multiArrayConstraint!.shape.map { $0.intValue }
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}
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var latentTimeIdDescription: MLFeatureDescription {
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try! models.first!.perform { model in
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model.modelDescription.inputDescriptionsByName["time_ids"]!
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}
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}
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/// The expected shape of the geometry conditioning
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public var latentTimeIdShape: [Int] {
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latentTimeIdDescription.multiArrayConstraint!.shape.map { $0.intValue }
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}
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/// Batch prediction noise from latent samples
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///
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/// - Parameters:
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/// - latents: Batch of latent samples in an array
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/// - timeStep: Current diffusion timestep
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/// - hiddenStates: Hidden state to condition on
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/// - Returns: Array of predicted noise residuals
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func predictNoise(
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latents: [MLShapedArray<Float32>],
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timeStep: Int,
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hiddenStates: MLShapedArray<Float32>,
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additionalResiduals: [[String: MLShapedArray<Float32>]]? = nil
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) throws -> [MLShapedArray<Float32>] {
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// Match time step batch dimension to the model / latent samples
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let t: MLShapedArray<Float32>
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if hiddenStates.shape[0] == 2 {
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t = MLShapedArray(scalars: [Float(timeStep), Float(timeStep)], shape: [2])
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} else {
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t = MLShapedArray(scalars: [Float(timeStep)], shape: [1])
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}
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// Form batch input to model
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let inputs = try latents.enumerated().map {
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var dict: [String: Any] = [
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"sample" : MLMultiArray($0.element),
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"timestep" : MLMultiArray(t),
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"encoder_hidden_states": MLMultiArray(hiddenStates)
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]
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if let residuals = additionalResiduals?[$0.offset] {
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for (k, v) in residuals {
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dict[k] = MLMultiArray(v)
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}
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}
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return try MLDictionaryFeatureProvider(dictionary: dict)
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}
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let batch = MLArrayBatchProvider(array: inputs)
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// Make predictions
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let results = try models.predictions(from: batch)
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// Pull out the results in Float32 format
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let noise = (0..<results.count).map { i in
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let result = results.features(at: i)
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let outputName = result.featureNames.first!
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let outputNoise = result.featureValue(for: outputName)!.multiArrayValue!
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// To conform to this func return type make sure we return float32
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// Use the fact that the concatenating constructor for MLMultiArray
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// can do type conversion:
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let fp32Noise = MLMultiArray(
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concatenating: [outputNoise],
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axis: 0,
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dataType: .float32
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)
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return MLShapedArray<Float32>(fp32Noise)
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}
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return noise
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}
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/// Batch prediction noise from latent samples, for Stable Diffusion XL
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///
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/// - Parameters:
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/// - latents: Batch of latent samples in an array
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/// - timeStep: Current diffusion timestep
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/// - hiddenStates: Hidden state to condition on
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/// - pooledStates: Additional text states to condition on
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/// - geometryConditioning: Condition on image geometry
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/// - Returns: Array of predicted noise residuals
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@available(iOS 17.0, macOS 14.0, *)
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func predictNoise(
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latents: [MLShapedArray<Float32>],
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timeStep: Int,
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hiddenStates: MLShapedArray<Float32>,
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pooledStates: MLShapedArray<Float32>,
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geometryConditioning: MLShapedArray<Float32>
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) throws -> [MLShapedArray<Float32>] {
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// Match time step batch dimension to the model / latent samples
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let t = MLShapedArray<Float32>(scalars:[Float(timeStep), Float(timeStep)],shape:[2])
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// Form batch input to model
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let inputs = try latents.enumerated().map {
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let dict: [String: Any] = [
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"sample" : MLMultiArray($0.element),
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"timestep" : MLMultiArray(t),
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"encoder_hidden_states": MLMultiArray(hiddenStates),
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"text_embeds": MLMultiArray(pooledStates),
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"time_ids": MLMultiArray(geometryConditioning)
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]
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return try MLDictionaryFeatureProvider(dictionary: dict)
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}
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let batch = MLArrayBatchProvider(array: inputs)
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// Make predictions
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let results = try models.predictions(from: batch)
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// Pull out the results in Float32 format
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let noise = (0..<results.count).map { i in
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let result = results.features(at: i)
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let outputName = result.featureNames.first!
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let outputNoise = result.featureValue(for: outputName)!.multiArrayValue!
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// To conform to this func return type make sure we return float32
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// Use the fact that the concatenating constructor for MLMultiArray
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// can do type conversion:
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let fp32Noise = MLMultiArray(
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concatenating: [outputNoise],
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axis: 0,
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dataType: .float32
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)
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return MLShapedArray<Float32>(fp32Noise)
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}
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return noise
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}
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}
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