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@tensorflow/tfjs-core

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Hardware-accelerated JavaScript library for machine intelligence

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/** * @license * Copyright 2018 Google Inc. All Rights Reserved. * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. * ============================================================================= */ import {ENGINE} from '../engine'; import {dispose, tidy} from '../globals'; import {fill} from '../ops/ops'; import {ConfigDict, registerClass, Serializable, SerializableConstructor} from '../serialization'; import {NamedTensor, NamedVariableMap} from '../tensor_types'; import {Optimizer, OptimizerVariable} from './optimizer'; /** @doclink Optimizer */ export class AdagradOptimizer extends Optimizer { /** @nocollapse */ static className = 'Adagrad'; // Note: Name matters for Python compatibility. private accumulatedGrads: OptimizerVariable[] = []; constructor( protected learningRate: number, private initialAccumulatorValue = 0.1) { super(); } applyGradients(variableGradients: NamedVariableMap|NamedTensor[]) { const variableNames = Array.isArray(variableGradients) ? variableGradients.map(item => item.name) : Object.keys(variableGradients); variableNames.forEach((name, i) => { const value = ENGINE.registeredVariables[name]; if (this.accumulatedGrads[i] == null) { const trainable = false; this.accumulatedGrads[i] = { originalName: `${name}/accumulator`, variable: tidy( () => fill(value.shape, this.initialAccumulatorValue) .variable(trainable)) }; } const gradient = Array.isArray(variableGradients) ? variableGradients[i].tensor : variableGradients[name]; if (gradient == null) { return; } const accumulatedGrad = this.accumulatedGrads[i].variable; tidy(() => { const newAccumulatedGrad = accumulatedGrad.add(gradient.square()); accumulatedGrad.assign(newAccumulatedGrad); const newValue = gradient .div(newAccumulatedGrad.add(ENGINE.backend.epsilon()).sqrt()) .mul(-this.learningRate) .add(value); value.assign(newValue); }); }); this.incrementIterations(); } dispose(): void { if (this.accumulatedGrads != null) { dispose(this.accumulatedGrads.map(v => v.variable)); } } async getWeights(): Promise<NamedTensor[]> { // Order matters for Python compatibility. return [await this.saveIterations()].concat(this.accumulatedGrads.map( v => ({name: v.originalName, tensor: v.variable}))); } async setWeights(weightValues: NamedTensor[]): Promise<void> { weightValues = await this.extractIterations(weightValues); const trainable = false; this.accumulatedGrads = weightValues.map( v => ({originalName: v.name, variable: v.tensor.variable(trainable)})); } getConfig(): ConfigDict { return { 'learningRate': this.learningRate, 'initialAccumulatorValue': this.initialAccumulatorValue, }; } /** @nocollapse */ static fromConfig<T extends Serializable>( cls: SerializableConstructor<T>, config: ConfigDict): T { return new cls(config['learningRate'], config['initialAccumulatorValue']); } } registerClass(AdagradOptimizer);