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eval_mnist.js
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eval_mnist.js
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/**
* @license
* Copyright 2019 Google LLC. 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 * as argparse from 'argparse';
import {FashionMnistDataset, MnistDataset} from './data_mnist';
import {compileModel} from './model_mnist';
// The `tf` module will be loaded dynamically depending on whether
// `--gpu` is specified in the command-line flags.
let tf;
function parseArgs() {
const parser = new argparse.ArgumentParser({
description:
'TensorFlow.js Quantization Example: Evaluating an MNIST Model',
addHelp: true
});
parser.addArgument('dataset', {
type: 'string',
help: 'Name of the dataset ({mnist, fashion-mnist}).'
});
parser.addArgument('modelSavePath', {
type: 'string',
help: 'Path at which the model to be evaluated is saved.'
});
parser.addArgument('--batchSize', {
type: 'int',
defaultValue: 128,
help: 'Batch size to be used during model training.'
});
parser.addArgument('--gpu', {
action: 'storeTrue',
help: 'Use tfjs-node-gpu for evaluation (requires CUDA-enabled ' +
'GPU and supporting drivers and libraries.'
});
return parser.parseArgs();
}
async function main() {
const args = parseArgs();
if (args.gpu) {
tf = require('@tensorflow/tfjs-node-gpu');
} else {
tf = require('@tensorflow/tfjs-node');
}
let dataset;
if (args.dataset === 'fashion-mnist') {
dataset = new FashionMnistDataset();
} else if (args.dataset === 'mnist') {
dataset = new MnistDataset();
} else {
throw new Error(`Unrecognized dataset name: ${args.dataset}`);
}
await dataset.loadData();
const {images: testImages, labels: testLabels} = dataset.getTestData();
console.log(`Loading model from ${args.modelSavePath}...`);
const model = await tf.loadLayersModel(`file://${args.modelSavePath}`);
compileModel(model);
console.log(`Performing evaluation...`);
const t0 = tf.util.now();
const evalOutput = model.evaluate(testImages, testLabels);
const t1 = tf.util.now();
console.log(`\nEvaluation took ${(t1 - t0).toFixed(2)} ms.`);
console.log(
`\nEvaluation result:\n` +
` Loss = ${evalOutput[0].dataSync()[0].toFixed(6)}; `+
`Accuracy = ${evalOutput[1].dataSync()[0].toFixed(6)}`);
}
if (require.main === module) {
main();
}