{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "# Adadelta with `Gluon`\n", "\n" ] }, { "cell_type": "code", "execution_count": 1, "metadata": { "ExecuteTime": { "end_time": "2017-10-22T11:51:32.307747Z", "start_time": "2017-10-22T11:51:31.609848Z" } }, "outputs": [], "source": [ "import mxnet as mx\n", "from mxnet import autograd\n", "from mxnet import gluon\n", "from mxnet import ndarray as nd\n", "import numpy as np\n", "import random\n", "\n", "mx.random.seed(1)\n", "random.seed(1)\n", "\n", "# Generate data.\n", "num_inputs = 2\n", "num_examples = 1000\n", "true_w = [2, -3.4]\n", "true_b = 4.2\n", "X = nd.random_normal(scale=1, shape=(num_examples, num_inputs))\n", "y = true_w[0] * X[:, 0] + true_w[1] * X[:, 1] + true_b\n", "y += .01 * nd.random_normal(scale=1, shape=y.shape)\n", "dataset = gluon.data.ArrayDataset(X, y)\n", "\n", "net = gluon.nn.Sequential()\n", "net.add(gluon.nn.Dense(1))\n", "square_loss = gluon.loss.L2Loss()" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "ExecuteTime": { "end_time": "2017-10-22T11:51:32.532402Z", "start_time": "2017-10-22T11:51:32.309572Z" } }, "outputs": [], "source": [ "%matplotlib inline\n", "import matplotlib as mpl\n", "mpl.rcParams['figure.dpi']= 120\n", "import matplotlib.pyplot as plt\n", "\n", "def train(batch_size, rho, epochs, period):\n", " assert period >= batch_size and period % batch_size == 0\n", " net.collect_params().initialize(mx.init.Normal(sigma=1), force_reinit=True)\n", " # AdaDelta.\n", " trainer = gluon.Trainer(net.collect_params(), 'adadelta',\n", " {'rho': rho})\n", " data_iter = gluon.data.DataLoader(dataset, batch_size, shuffle=True)\n", " total_loss = [np.mean(square_loss(net(X), y).asnumpy())]\n", " \n", " for epoch in range(1, epochs + 1):\n", " for batch_i, (data, label) in enumerate(data_iter):\n", " with autograd.record():\n", " output = net(data)\n", " loss = square_loss(output, label)\n", " loss.backward()\n", " trainer.step(batch_size)\n", "\n", " if batch_i * batch_size % period == 0:\n", " total_loss.append(np.mean(square_loss(net(X), y).asnumpy()))\n", " print(\"Batch size %d, Epoch %d, loss %.4e\" % \n", " (batch_size, epoch, total_loss[-1]))\n", "\n", " print('w:', np.reshape(net[0].weight.data().asnumpy(), (1, -1)), \n", " 'b:', net[0].bias.data().asnumpy()[0], '\\n')\n", " x_axis = np.linspace(0, epochs, len(total_loss), endpoint=True)\n", " plt.semilogy(x_axis, total_loss)\n", " plt.xlabel('epoch')\n", " plt.ylabel('loss')\n", " plt.show()" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "ExecuteTime": { "end_time": "2017-10-22T11:51:34.689040Z", "start_time": "2017-10-22T11:51:32.534241Z" } }, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Batch size 10, Epoch 1, loss 5.2081e-05\n", "Batch size 10, Epoch 2, loss 4.9538e-05\n", "Batch size 10, Epoch 3, loss 4.9217e-05\n", "w: [[ 1.99959445 -3.3999126 ]] b: 4.19964 \n", "\n" ] }, { "data": { "image/png": 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MJRXy+z/buCfZYiRJUmIMlUVQDqO/R8yqr+LixTMB+PlTe4nRLnBJksqRoVIT9toVc4H8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\nUFeVJhUCHb2DhMBo13p9VaboP9OhbI5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MzApzUWlmZmZmhbmoNDMzM7PCXFSamZmZWWEu\nKs3MzMysMBeVZmZmZlbY/wAAYI1xAhXhdAAAAABJRU5ErkJggg==\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "train(batch_size=10, rho=0.9999, epochs=3, period=10)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Next\n", "[Adam from scratch](../chapter06_optimization/adam-scratch.ipynb)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "For whinges or inquiries, [open an issue on GitHub.](https://github.com/zackchase/mxnet-the-straight-dope)" ] } ], "metadata": { "kernelspec": { "display_name": "Python 3", "language": "python", "name": "python3" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.6.1" } }, "nbformat": 4, "nbformat_minor": 2 }