@tensorflow/tfjs-core
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Hardware-accelerated JavaScript library for machine intelligence
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text/typescript
/**
* @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 {div, scalar, sub, zerosLike} from '../ops/ops';
import {ConfigDict, registerClass, Serializable, SerializableConstructor} from '../serialization';
import {Variable} from '../tensor';
import {NamedTensor, NamedVariableMap} from '../tensor_types';
import {Optimizer, OptimizerVariable} from './optimizer';
export class AdamaxOptimizer extends Optimizer {
/** @nocollapse */
static className = 'Adamax'; // Note: Name matters for Python compatbility.
private accBeta1: Variable;
private iteration: Variable;
private accumulatedFirstMoment: OptimizerVariable[] = [];
private accumulatedWeightedInfNorm: OptimizerVariable[] = [];
constructor(
protected learningRate: number, protected beta1: number,
protected beta2: number, protected epsilon: number = null,
protected decay = 0.0) {
super();
tidy(() => {
this.iteration = scalar(0).variable();
this.accBeta1 = scalar(beta1).variable();
});
if (epsilon == null) {
this.epsilon = ENGINE.backend.epsilon();
}
}
applyGradients(variableGradients: NamedVariableMap|NamedTensor[]) {
const variableNames = Array.isArray(variableGradients) ?
variableGradients.map(item => item.name) :
Object.keys(variableGradients);
tidy(() => {
const oneMinusAccBeta1 = sub(1, this.accBeta1);
const lr = div(-this.learningRate, this.iteration.mul(this.decay).add(1));
variableNames.forEach((name, i) => {
const value = ENGINE.registeredVariables[name];
const trainable = false;
if (this.accumulatedFirstMoment[i] == null) {
this.accumulatedFirstMoment[i] = {
originalName: `${name}/m`,
variable: zerosLike(value).variable(trainable)
};
}
if (this.accumulatedWeightedInfNorm[i] == null) {
this.accumulatedWeightedInfNorm[i] = {
originalName: `${name}/v`,
variable: zerosLike(value).variable(trainable)
};
}
const gradient = Array.isArray(variableGradients) ?
variableGradients[i].tensor :
variableGradients[name];
if (gradient == null) {
return;
}
const firstMoment = this.accumulatedFirstMoment[i].variable;
const weightedInfNorm = this.accumulatedWeightedInfNorm[i].variable;
const newFirstMoment =
firstMoment.mul(this.beta1).add(gradient.mul(1 - this.beta1));
const ut0 = weightedInfNorm.mul(this.beta2);
const ut1 = gradient.abs();
const newWeightedInfNorm = ut0.maximum(ut1);
firstMoment.assign(newFirstMoment);
weightedInfNorm.assign(newWeightedInfNorm);
const newValue =
lr.div(oneMinusAccBeta1)
.mul(newFirstMoment.div(newWeightedInfNorm.add(this.epsilon)))
.add(value);
value.assign(newValue);
});
this.iteration.assign(this.iteration.add(1));
this.accBeta1.assign(this.accBeta1.mul(this.beta1));
});
this.incrementIterations();
}
dispose(): void {
this.accBeta1.dispose();
this.iteration.dispose();
if (this.accumulatedFirstMoment != null) {
dispose(this.accumulatedFirstMoment.map(v => v.variable));
}
if (this.accumulatedWeightedInfNorm != null) {
dispose(this.accumulatedWeightedInfNorm.map(v => v.variable));
}
}
async getWeights(): Promise<NamedTensor[]> {
throw new Error('getWeights() is not implemented for Adamax yet.');
}
async setWeights(weightValues: NamedTensor[]): Promise<void> {
throw new Error('setWeights() is not implemented for Adamax yet.');
}
getConfig(): ConfigDict {
return {
'learningRate': this.learningRate,
'beta1': this.beta1,
'beta2': this.beta2,
'epsilon': this.epsilon,
'decay': this.decay
};
}
/** @nocollapse */
static fromConfig<T extends Serializable>(
cls: SerializableConstructor<T>, config: ConfigDict): T {
return new cls(
config['learningRate'], config['beta1'], config['beta2'],
config['epsilon'], config['decay']);
}
}
registerClass(AdamaxOptimizer);