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Created February 21, 2019 22:28
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Hello, Colaboratory
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{
"nbformat": 4,
"nbformat_minor": 0,
"metadata": {
"colab": {
"name": "Hello, Colaboratory",
"version": "0.3.2",
"provenance": [],
"collapsed_sections": [],
"toc_visible": true,
"include_colab_link": true
},
"kernelspec": {
"display_name": "Python 3",
"name": "python3"
}
},
"cells": [
{
"cell_type": "markdown",
"metadata": {
"id": "view-in-github",
"colab_type": "text"
},
"source": [
"<a href=\"https://colab.research.google.com/gist/lzhou1110/2a30a81cb8c175514ed627bc18016774/hello-colaboratory.ipynb\" target=\"_parent\"><img src=\"https://colab.research.google.com/assets/colab-badge.svg\" alt=\"Open In Colab\"/></a>"
]
},
{
"metadata": {
"colab_type": "text",
"id": "9J7p406abzgl"
},
"cell_type": "markdown",
"source": [
"<img height=\"60px\" src=\"https://colab.research.google.com/img/colab_favicon.ico\" align=\"left\" hspace=\"20px\" vspace=\"5px\">\n",
"\n",
"<h1>Welcome to Colaboratory!</h1>\n",
"Colaboratory is a free Jupyter notebook environment that requires no setup and runs entirely in the cloud. See our [FAQ](https://research.google.com/colaboratory/faq.html) for more info."
]
},
{
"metadata": {
"colab_type": "text",
"id": "-Rh3-Vt9Nev9"
},
"cell_type": "markdown",
"source": [
"## Getting Started\n",
"- [Overview of Colaboratory](/notebooks/basic_features_overview.ipynb)\n",
"- [Loading and saving data: Local files, Drive, Sheets, Google Cloud Storage](/notebooks/io.ipynb)\n",
"- [Importing libraries and installing dependencies](/notebooks/snippets/importing_libraries.ipynb)\n",
"- [Using Google Cloud BigQuery](/notebooks/bigquery.ipynb)\n",
"- [Forms](/notebooks/forms.ipynb), [Charts](/notebooks/charts.ipynb), [Markdown](/notebooks/markdown_guide.ipynb), & [Widgets](/notebooks/widgets.ipynb)\n",
"- [TensorFlow with GPU](/notebooks/gpu.ipynb)\n",
"- [TensorFlow with TPU](/notebooks/tpu.ipynb)\n",
"- [Machine Learning Crash Course](https://developers.google.com/machine-learning/crash-course/): [Intro to Pandas](/notebooks/mlcc/intro_to_pandas.ipynb) & [First Steps with TensorFlow](/notebooks/mlcc/first_steps_with_tensor_flow.ipynb)\n",
"- [Using Colab with GitHub](https://colab.research.google.com/github/googlecolab/colabtools/blob/master/notebooks/colab-github-demo.ipynb)\n"
]
},
{
"metadata": {
"colab_type": "text",
"id": "1fr51oVCHRZU"
},
"cell_type": "markdown",
"source": [
"## Highlighted Features\n",
"### Seedbank\n",
"\n",
"Looking for Colab notebooks to learn from? Check out [Seedbank](https://tools.google.com/seedbank/), a place to discover interactive machine learning examples."
]
},
{
"metadata": {
"colab_type": "text",
"id": "9wi5kfGdhK0R"
},
"cell_type": "markdown",
"source": [
"### TensorFlow execution"
]
},
{
"metadata": {
"colab_type": "text",
"id": "S9GW-n-oYWIj"
},
"cell_type": "markdown",
"source": [
"Colaboratory allows you to execute TensorFlow code in your browser with a single click. The example below adds two matrices.\n",
"\n",
"$\\begin{bmatrix}\n",
" 1. & 1. & 1. \\\\\n",
" 1. & 1. & 1. \\\\\n",
"\\end{bmatrix} +\n",
"\\begin{bmatrix}\n",
" 1. & 2. & 3. \\\\\n",
" 4. & 5. & 6. \\\\\n",
"\\end{bmatrix} =\n",
"\\begin{bmatrix}\n",
" 2. & 3. & 4. \\\\\n",
" 5. & 6. & 7. \\\\\n",
"\\end{bmatrix}$"
]
},
{
"metadata": {
"colab_type": "code",
"id": "oYZkU7ZN3CL0",
"outputId": "9589151d-5ff4-4bca-f05e-8bcba8ffcba1",
"colab": {
"base_uri": "https://localhost:8080/",
"height": 53
}
},
"cell_type": "code",
"source": [
"import tensorflow as tf\n",
"\n",
"input1 = tf.ones((2, 3))\n",
"input2 = tf.reshape(tf.range(1, 7, dtype=tf.float32), (2, 3))\n",
"output = input1 + input2\n",
"\n",
"with tf.Session():\n",
" result = output.eval()\n",
"result "
],
"execution_count": 0,
"outputs": [
{
"output_type": "execute_result",
"data": {
"text/plain": [
"array([[2., 3., 4.],\n",
" [5., 6., 7.]], dtype=float32)"
]
},
"metadata": {
"tags": []
},
"execution_count": 0
}
]
},
{
"metadata": {
"colab_type": "text",
"id": "nwYF0E3Sjiy4"
},
"cell_type": "markdown",
"source": [
"### GitHub\n",
"\n",
"For a full discussion of interactions between Colab and GitHub, see [Using Colab with GitHub](https://colab.research.google.com/github/googlecolab/colabtools/blob/master/notebooks/colab-github-demo.ipynb). As a brief summary:\n",
"\n",
"To save a copy of your Colab notebook to Github, select *File → Save a copy to GitHub…*\n",
"\n",
"To load a specific notebook from github, append the github path to http://colab.research.google.com/github/.\n",
"For example to load this notebook in Colab: [https://github.com/tensorflow/docs/blob/master/site/en/tutorials/_index.ipynb](https://github.com/tensorflow/docs/blob/master/site/en/tutorials/_index.ipynb) use the following Colab URL: [https://colab.research.google.com/github/tensorflow/docs/blob/master/site/en/tutorials/_index.ipynb](https://colab.research.google.com/github/tensorflow/docs/blob/master/site/en/tutorials/_index.ipynb)\n",
"\n",
"To open a github notebook in one click, we recommend installing the [Open in Colab Chrome Extension](https://chrome.google.com/webstore/detail/open-in-colab/iogfkhleblhcpcekbiedikdehleodpjo).\n",
"\n"
]
},
{
"metadata": {
"colab_type": "text",
"id": "yv2XIwi5hQ_g"
},
"cell_type": "markdown",
"source": [
"### Visualization"
]
},
{
"metadata": {
"colab_type": "text",
"id": "rYs5mx2JZkmy"
},
"cell_type": "markdown",
"source": [
"Colaboratory includes widely used libraries like [matplotlib](https://matplotlib.org/), simplifying visualization."
]
},
{
"metadata": {
"colab_type": "code",
"id": "xqrc5C-IaA5J",
"outputId": "3460cc84-faf8-4d8c-a4e6-96a6809c389a",
"colab": {
"height": 360
}
},
"cell_type": "code",
"source": [
"import matplotlib.pyplot as plt\n",
"import numpy as np\n",
"\n",
"x = np.arange(20)\n",
"y = [x_i + np.random.randn(1) for x_i in x]\n",
"a, b = np.polyfit(x, y, 1)\n",
"_ = plt.plot(x, y, 'o', np.arange(20), a*np.arange(20)+b, '-')"
],
"execution_count": 0,
"outputs": [
{
"output_type": "display_data",
"data": {
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pbHNv4qHMpRqZLSIRSQUtpgoEA/zP99/ive5TGM4RbIFoHk15mm8/sh6nRmaL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\nRK5CYII=\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x562d64cf1b10>"
]
},
"metadata": {
"tags": []
}
}
]
},
{
"metadata": {
"colab_type": "text",
"id": "AN_LRQ9NkOjs"
},
"cell_type": "markdown",
"source": [
"Want to use a new library? `pip install` it at the top of the notebook. Then that library can be used anywhere else in the notebook. For recipes to import commonly used libraries, refer to the [importing libraries example notebook](/notebooks/snippets/importing_libraries.ipynb)."
]
},
{
"metadata": {
"colab_type": "code",
"id": "FlQq0SUepQbd",
"outputId": "6e404831-3336-4633-b76f-c6313ecdd356",
"colab": {
"base_uri": "https://localhost:8080/",
"height": 349
}
},
"cell_type": "code",
"source": [
"!pip install -q matplotlib-venn\n",
"\n",
"from matplotlib_venn import venn2\n",
"_ = venn2(subsets = (3, 2, 1))"
],
"execution_count": 0,
"outputs": [
{
"output_type": "display_data",
"data": {
"image/png": 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1dPCimufPqlVix475RUYUsLl2rsS7ma48nxHqaCY/o+RoTK0SO3pUdAIKgVLc5ijsFqLF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\nxIiISFn/H6CFJPx9gio9AAAAAElFTkSuQmCC\n",
"text/plain": [
"<matplotlib.figure.Figure at 0x7f48ff99ff10>"
]
},
"metadata": {
"tags": []
}
}
]
},
{
"metadata": {
"colab_type": "text",
"id": "LxZ3dPzYnyNF"
},
"cell_type": "markdown",
"source": [
"### Forms\n",
"\n",
"Forms can be used to parameterize code. See the [forms example notebook](/notebooks/forms.ipynb) for more details."
]
},
{
"metadata": {
"colab_type": "code",
"id": "FQ_Hx_9tn7uF",
"colab": {}
},
"cell_type": "code",
"source": [
"#@title Examples\n",
"\n",
"text = 'value' #@param \n",
"date_input = '2018-03-22' #@param {type:\"date\"}\n",
"number_slider = 0 #@param {type:\"slider\", min:-1, max:1, step:0.1}\n",
"dropdown = '1st option' #@param [\"1st option\", \"2nd option\", \"3rd option\"]\n"
],
"execution_count": 0,
"outputs": []
},
{
"metadata": {
"colab_type": "text",
"id": "rTX3heEtu0b2"
},
"cell_type": "markdown",
"source": [
"### Local runtime support\n",
"\n",
"Colab supports connecting to a Jupyter runtime on your local machine. For more information, see our [documentation](https://research.google.com/colaboratory/local-runtimes.html)."
]
}
]
}
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