{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "<!--BOOK_INFORMATION-->\n", "<img align=\"left\" style=\"padding-right:10px;\" src=\"fig/cover-small.jpg\">\n", "*This notebook contains an excerpt from the [Whirlwind Tour of Python](http://www.oreilly.com/programming/free/a-whirlwind-tour-of-python.csp) by Jake VanderPlas; the content is available [on GitHub](https://github.com/jakevdp/WhirlwindTourOfPython).*\n", "\n", "*The text and code are released under the [CC0](https://github.com/jakevdp/WhirlwindTourOfPython/blob/master/LICENSE) license; see also the companion project, the [Python Data Science Handbook](https://github.com/jakevdp/PythonDataScienceHandbook).*\n" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "<!--NAVIGATION-->\n", "< [String Manipulation and Regular Expressions](14-Strings-and-Regular-Expressions.ipynb) | [Contents](Index.ipynb) | [Resources for Further Learning](16-Further-Resources.ipynb) >" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "# A Preview of Data Science Tools" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "If you would like to spring from here and go farther in using Python for scientific computing or data science, there are a few packages that will make your life much easier.\n", "This section will introduce and preview several of the more important ones, and give you an idea of the types of applications they are designed for.\n", "If you're using the *Anaconda* or *Miniconda* environment suggested at the beginning of this report, you can install the relevant packages with the following command:\n", "```\n", "$ conda install numpy scipy pandas matplotlib scikit-learn\n", "```\n", "Let's take a brief look at each of these in turn." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## NumPy: Numerical Python\n", "\n", "NumPy provides an efficient way to store and manipulate multi-dimensional dense arrays in Python.\n", "The important features of NumPy are:\n", "\n", "- It provides an ``ndarray`` structure, which allows efficient storage and manipulation of vectors, matrices, and higher-dimensional datasets.\n", "- It provides a readable and efficient syntax for operating on this data, from simple element-wise arithmetic to more complicated linear algebraic operations.\n", "\n", "In the simplest case, NumPy arrays look a lot like Python lists.\n", "For example, here is an array containing the range of numbers 1 to 9 (compare this with Python's built-in ``range()``):" ] }, { "cell_type": "code", "execution_count": 1, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "array([1, 2, 3, 4, 5, 6, 7, 8, 9])" ] }, "execution_count": 1, "metadata": {}, "output_type": "execute_result" } ], "source": [ "import numpy as np\n", "x = np.arange(1, 10)\n", "x" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "NumPy's arrays offer both efficient storage of data, as well as efficient element-wise operations on the data.\n", "For example, to square each element of the array, we can apply the \"``**``\" operator to the array directly:" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "array([ 1, 4, 9, 16, 25, 36, 49, 64, 81])" ] }, "execution_count": 2, "metadata": {}, "output_type": "execute_result" } ], "source": [ "x ** 2" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Compare this with the much more verbose Python-style list comprehension for the same result:" ] }, { "cell_type": "code", "execution_count": 3, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "[1, 4, 9, 16, 25, 36, 49, 64, 81]" ] }, "execution_count": 3, "metadata": {}, "output_type": "execute_result" } ], "source": [ "[val ** 2 for val in range(1, 10)]" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Unlike Python lists (which are limited to one dimension), NumPy arrays can be multi-dimensional.\n", "For example, here we will reshape our ``x`` array into a 3x3 array:" ] }, { "cell_type": "code", "execution_count": 4, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "array([[1, 2, 3],\n", " [4, 5, 6],\n", " [7, 8, 9]])" ] }, "execution_count": 4, "metadata": {}, "output_type": "execute_result" } ], "source": [ "M = x.reshape((3, 3))\n", "M" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "A two-dimensional array is one representation of a matrix, and NumPy knows how to efficiently do typical matrix operations. For example, you can compute the transpose using ``.T``:" ] }, { "cell_type": "code", "execution_count": 5, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "array([[1, 4, 7],\n", " [2, 5, 8],\n", " [3, 6, 9]])" ] }, "execution_count": 5, "metadata": {}, "output_type": "execute_result" } ], "source": [ "M.T" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "or a matrix-vector product using ``np.dot``:" ] }, { "cell_type": "code", "execution_count": 6, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "array([ 38, 92, 146])" ] }, "execution_count": 6, "metadata": {}, "output_type": "execute_result" } ], "source": [ "np.dot(M, [5, 6, 7])" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "and even more sophisticated operations like eigenvalue decomposition:" ] }, { "cell_type": "code", "execution_count": 7, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "array([ 1.61168440e+01, -1.11684397e+00, -1.30367773e-15])" ] }, "execution_count": 7, "metadata": {}, "output_type": "execute_result" } ], "source": [ "np.linalg.eigvals(M)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Such linear algebraic manipulation underpins much of modern data analysis, particularly when it comes to the fields of machine learning and data mining.\n", "\n", "For more information on NumPy, see [Resources for Further Learning](16-Further-Resources.ipynb)." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Pandas: Labeled Column-oriented Data\n", "\n", "Pandas is a much newer package than NumPy, and is in fact built on top of it.\n", "What Pandas provides is a labeled interface to multi-dimensional data, in the form of a DataFrame object that will feel very familiar to users of R and related languages.\n", "DataFrames in Pandas look something like this:" ] }, { "cell_type": "code", "execution_count": 8, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/html": [ "<div>\n", "<table border=\"1\" class=\"dataframe\">\n", " <thead>\n", " <tr style=\"text-align: right;\">\n", " <th></th>\n", " <th>label</th>\n", " <th>value</th>\n", " </tr>\n", " </thead>\n", " <tbody>\n", " <tr>\n", " <th>0</th>\n", " <td>A</td>\n", " <td>1</td>\n", " </tr>\n", " <tr>\n", " <th>1</th>\n", " <td>B</td>\n", " <td>2</td>\n", " </tr>\n", " <tr>\n", " <th>2</th>\n", " <td>C</td>\n", " <td>3</td>\n", " </tr>\n", " <tr>\n", " <th>3</th>\n", " <td>A</td>\n", " <td>4</td>\n", " </tr>\n", " <tr>\n", " <th>4</th>\n", " <td>B</td>\n", " <td>5</td>\n", " </tr>\n", " <tr>\n", " <th>5</th>\n", " <td>C</td>\n", " <td>6</td>\n", " </tr>\n", " </tbody>\n", "</table>\n", "</div>" ], "text/plain": [ " label value\n", "0 A 1\n", "1 B 2\n", "2 C 3\n", "3 A 4\n", "4 B 5\n", "5 C 6" ] }, "execution_count": 8, "metadata": {}, "output_type": "execute_result" } ], "source": [ "import pandas as pd\n", "df = pd.DataFrame({'label': ['A', 'B', 'C', 'A', 'B', 'C'],\n", " 'value': [1, 2, 3, 4, 5, 6]})\n", "df" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "The Pandas interface allows you to do things like select columns by name:" ] }, { "cell_type": "code", "execution_count": 9, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "0 A\n", "1 B\n", "2 C\n", "3 A\n", "4 B\n", "5 C\n", "Name: label, dtype: object" ] }, "execution_count": 9, "metadata": {}, "output_type": "execute_result" } ], "source": [ "df['label']" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Apply string operations across string entries:" ] }, { "cell_type": "code", "execution_count": 10, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "0 a\n", "1 b\n", "2 c\n", "3 a\n", "4 b\n", "5 c\n", "Name: label, dtype: object" ] }, "execution_count": 10, "metadata": {}, "output_type": "execute_result" } ], "source": [ "df['label'].str.lower()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Apply aggregates across numerical entries:" ] }, { "cell_type": "code", "execution_count": 11, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/plain": [ "21" ] }, "execution_count": 11, "metadata": {}, "output_type": "execute_result" } ], "source": [ "df['value'].sum()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "And, perhaps most importantly, do efficient database-style joins and groupings:" ] }, { "cell_type": "code", "execution_count": 12, "metadata": { "collapsed": false }, "outputs": [ { "data": { "text/html": [ "<div>\n", "<table border=\"1\" class=\"dataframe\">\n", " <thead>\n", " <tr style=\"text-align: right;\">\n", " <th></th>\n", " <th>value</th>\n", " </tr>\n", " <tr>\n", " <th>label</th>\n", " <th></th>\n", " </tr>\n", " </thead>\n", " <tbody>\n", " <tr>\n", " <th>A</th>\n", " <td>5</td>\n", " </tr>\n", " <tr>\n", " <th>B</th>\n", " <td>7</td>\n", " </tr>\n", " <tr>\n", " <th>C</th>\n", " <td>9</td>\n", " </tr>\n", " </tbody>\n", "</table>\n", "</div>" ], "text/plain": [ " value\n", "label \n", "A 5\n", "B 7\n", "C 9" ] }, "execution_count": 12, "metadata": {}, "output_type": "execute_result" } ], "source": [ "df.groupby('label').sum()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Here in one line we have computed the sum of all objects sharing the same label, something that is much more verbose (and much less efficient) using tools provided in Numpy and core Python.\n", "\n", "For more information on using Pandas, see [Resources for Further Learning](16-Further-Resources.ipynb)." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Matplotlib MatLab-style scientific visualization\n", "\n", "Matplotlib is currently the most popular scientific visualization packages in Python.\n", "Even proponents admit that its interface is sometimes overly verbose, but it is a powerful library for creating a large range of plots.\n", "\n", "To use Matplotlib, we can start by enabling the notebook mode (for use in the Jupyter notebook) and then importing the package as ``plt``\"" ] }, { "cell_type": "code", "execution_count": 13, "metadata": { "collapsed": true }, "outputs": [], "source": [ "# run this if using Jupyter notebook\n", "%matplotlib notebook" ] }, { "cell_type": "code", "execution_count": 14, "metadata": { "collapsed": true }, "outputs": [], "source": [ "import matplotlib.pyplot as plt\n", "plt.style.use('ggplot') # make graphs in the style of R's ggplot" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Now let's create some data (as NumPy arrays, of course) and plot the results:" ] }, { "cell_type": "code", "execution_count": 15, "metadata": { "collapsed": false }, "outputs": [ { "data": { "application/javascript": [ "/* Put everything inside the global mpl namespace */\n", "window.mpl = {};\n", "\n", "mpl.get_websocket_type = function() {\n", " if (typeof(WebSocket) !== 'undefined') {\n", " return WebSocket;\n", " } else if (typeof(MozWebSocket) !== 'undefined') {\n", " return MozWebSocket;\n", " } else {\n", " alert('Your browser does not have WebSocket support.' +\n", " 'Please try Chrome, Safari or Firefox ≥ 6. ' +\n", " 'Firefox 4 and 5 are also supported but you ' +\n", " 'have to enable WebSockets in about:config.');\n", " };\n", "}\n", "\n", "mpl.figure = function(figure_id, websocket, ondownload, parent_element) {\n", " this.id = figure_id;\n", "\n", " this.ws = websocket;\n", "\n", " this.supports_binary = (this.ws.binaryType != undefined);\n", "\n", " if (!this.supports_binary) {\n", " var warnings = document.getElementById(\"mpl-warnings\");\n", " if (warnings) {\n", " warnings.style.display = 'block';\n", " warnings.textContent = (\n", " \"This browser does not support binary websocket messages. \" +\n", " \"Performance may be slow.\");\n", " }\n", " }\n", "\n", " this.imageObj = new Image();\n", "\n", " this.context = undefined;\n", " this.message = undefined;\n", " this.canvas = undefined;\n", " this.rubberband_canvas = undefined;\n", " this.rubberband_context = undefined;\n", " this.format_dropdown = undefined;\n", "\n", " this.image_mode = 'full';\n", "\n", " this.root = $('<div/>');\n", " this._root_extra_style(this.root)\n", " this.root.attr('style', 'display: inline-block');\n", "\n", " $(parent_element).append(this.root);\n", "\n", " this._init_header(this);\n", " this._init_canvas(this);\n", " this._init_toolbar(this);\n", "\n", " var fig = this;\n", "\n", " this.waiting = false;\n", "\n", " this.ws.onopen = function () {\n", " fig.send_message(\"supports_binary\", {value: fig.supports_binary});\n", " fig.send_message(\"send_image_mode\", {});\n", " fig.send_message(\"refresh\", {});\n", " }\n", "\n", " this.imageObj.onload = function() {\n", " if (fig.image_mode == 'full') {\n", " // Full images could contain transparency (where diff images\n", " // almost always do), so we need to clear the canvas so that\n", " // there is no ghosting.\n", " fig.context.clearRect(0, 0, fig.canvas.width, fig.canvas.height);\n", " }\n", " fig.context.drawImage(fig.imageObj, 0, 0);\n", " };\n", "\n", " this.imageObj.onunload = function() {\n", " this.ws.close();\n", " }\n", "\n", " this.ws.onmessage = this._make_on_message_function(this);\n", "\n", " this.ondownload = ondownload;\n", "}\n", "\n", "mpl.figure.prototype._init_header = function() {\n", " var titlebar = $(\n", " '<div class=\"ui-dialog-titlebar ui-widget-header ui-corner-all ' +\n", " 'ui-helper-clearfix\"/>');\n", " var titletext = $(\n", " '<div class=\"ui-dialog-title\" style=\"width: 100%; ' +\n", " 'text-align: center; padding: 3px;\"/>');\n", " titlebar.append(titletext)\n", " this.root.append(titlebar);\n", " this.header = titletext[0];\n", "}\n", "\n", "\n", "\n", "mpl.figure.prototype._canvas_extra_style = function(canvas_div) {\n", "\n", "}\n", "\n", "\n", "mpl.figure.prototype._root_extra_style = function(canvas_div) {\n", "\n", "}\n", "\n", "mpl.figure.prototype._init_canvas = function() {\n", " var fig = this;\n", "\n", " var canvas_div = $('<div/>');\n", "\n", " canvas_div.attr('style', 'position: relative; clear: both; outline: 0');\n", "\n", " function canvas_keyboard_event(event) {\n", " return fig.key_event(event, event['data']);\n", " }\n", "\n", " canvas_div.keydown('key_press', canvas_keyboard_event);\n", " canvas_div.keyup('key_release', canvas_keyboard_event);\n", " this.canvas_div = canvas_div\n", " this._canvas_extra_style(canvas_div)\n", " this.root.append(canvas_div);\n", "\n", " var canvas = $('<canvas/>');\n", " canvas.addClass('mpl-canvas');\n", " canvas.attr('style', \"left: 0; top: 0; z-index: 0; outline: 0\")\n", "\n", " this.canvas = canvas[0];\n", " this.context = canvas[0].getContext(\"2d\");\n", "\n", " var rubberband = $('<canvas/>');\n", " rubberband.attr('style', \"position: absolute; left: 0; top: 0; z-index: 1;\")\n", "\n", " var pass_mouse_events = true;\n", "\n", " canvas_div.resizable({\n", " start: function(event, ui) {\n", " pass_mouse_events = false;\n", " },\n", " resize: function(event, ui) {\n", " fig.request_resize(ui.size.width, ui.size.height);\n", " },\n", " stop: function(event, ui) {\n", " pass_mouse_events = true;\n", " fig.request_resize(ui.size.width, ui.size.height);\n", " },\n", " });\n", "\n", " function mouse_event_fn(event) {\n", " if (pass_mouse_events)\n", " return fig.mouse_event(event, event['data']);\n", " }\n", "\n", " rubberband.mousedown('button_press', mouse_event_fn);\n", " rubberband.mouseup('button_release', mouse_event_fn);\n", " // Throttle sequential mouse events to 1 every 20ms.\n", " rubberband.mousemove('motion_notify', mouse_event_fn);\n", "\n", " rubberband.mouseenter('figure_enter', mouse_event_fn);\n", " rubberband.mouseleave('figure_leave', mouse_event_fn);\n", "\n", " canvas_div.on(\"wheel\", function (event) {\n", " event = event.originalEvent;\n", " event['data'] = 'scroll'\n", " if (event.deltaY < 0) {\n", " event.step = 1;\n", " } else {\n", " event.step = -1;\n", " }\n", " mouse_event_fn(event);\n", " });\n", "\n", " canvas_div.append(canvas);\n", " canvas_div.append(rubberband);\n", "\n", " this.rubberband = rubberband;\n", " this.rubberband_canvas = rubberband[0];\n", " this.rubberband_context = rubberband[0].getContext(\"2d\");\n", " this.rubberband_context.strokeStyle = \"#000000\";\n", "\n", " this._resize_canvas = function(width, height) {\n", " // Keep the size of the canvas, canvas container, and rubber band\n", " // canvas in synch.\n", " canvas_div.css('width', width)\n", " canvas_div.css('height', height)\n", "\n", " canvas.attr('width', width);\n", " canvas.attr('height', height);\n", "\n", " rubberband.attr('width', width);\n", " rubberband.attr('height', height);\n", " }\n", "\n", " // Set the figure to an initial 600x600px, this will subsequently be updated\n", " // upon first draw.\n", " this._resize_canvas(600, 600);\n", "\n", " // Disable right mouse context menu.\n", " $(this.rubberband_canvas).bind(\"contextmenu\",function(e){\n", " return false;\n", " });\n", "\n", " function set_focus () {\n", " canvas.focus();\n", " canvas_div.focus();\n", " }\n", "\n", " window.setTimeout(set_focus, 100);\n", "}\n", "\n", "mpl.figure.prototype._init_toolbar = function() {\n", " var fig = this;\n", "\n", " var nav_element = $('<div/>')\n", " nav_element.attr('style', 'width: 100%');\n", " this.root.append(nav_element);\n", "\n", " // Define a callback function for later on.\n", " function toolbar_event(event) {\n", " return fig.toolbar_button_onclick(event['data']);\n", " }\n", " function toolbar_mouse_event(event) {\n", " return fig.toolbar_button_onmouseover(event['data']);\n", " }\n", "\n", " for(var toolbar_ind in mpl.toolbar_items) {\n", " var name = mpl.toolbar_items[toolbar_ind][0];\n", " var tooltip = mpl.toolbar_items[toolbar_ind][1];\n", " var image = mpl.toolbar_items[toolbar_ind][2];\n", " var method_name = mpl.toolbar_items[toolbar_ind][3];\n", "\n", " if (!name) {\n", " // put a spacer in here.\n", " continue;\n", " }\n", " var button = $('<button/>');\n", " button.addClass('ui-button ui-widget ui-state-default ui-corner-all ' +\n", " 'ui-button-icon-only');\n", " button.attr('role', 'button');\n", " button.attr('aria-disabled', 'false');\n", " button.click(method_name, toolbar_event);\n", " button.mouseover(tooltip, toolbar_mouse_event);\n", "\n", " var icon_img = $('<span/>');\n", " icon_img.addClass('ui-button-icon-primary ui-icon');\n", " icon_img.addClass(image);\n", " icon_img.addClass('ui-corner-all');\n", "\n", " var tooltip_span = $('<span/>');\n", " tooltip_span.addClass('ui-button-text');\n", " tooltip_span.html(tooltip);\n", "\n", " button.append(icon_img);\n", " button.append(tooltip_span);\n", "\n", " nav_element.append(button);\n", " }\n", "\n", " var fmt_picker_span = $('<span/>');\n", "\n", " var fmt_picker = $('<select/>');\n", " fmt_picker.addClass('mpl-toolbar-option ui-widget ui-widget-content');\n", " fmt_picker_span.append(fmt_picker);\n", " nav_element.append(fmt_picker_span);\n", " this.format_dropdown = fmt_picker[0];\n", "\n", " for (var ind in mpl.extensions) {\n", " var fmt = mpl.extensions[ind];\n", " var option = $(\n", " '<option/>', {selected: fmt === mpl.default_extension}).html(fmt);\n", " fmt_picker.append(option)\n", " }\n", "\n", " // Add hover states to the ui-buttons\n", " $( \".ui-button\" ).hover(\n", " function() { $(this).addClass(\"ui-state-hover\");},\n", " function() { $(this).removeClass(\"ui-state-hover\");}\n", " );\n", "\n", " var status_bar = $('<span class=\"mpl-message\"/>');\n", " nav_element.append(status_bar);\n", " this.message = status_bar[0];\n", "}\n", "\n", "mpl.figure.prototype.request_resize = function(x_pixels, y_pixels) {\n", " // Request matplotlib to resize the figure. Matplotlib will then trigger a resize in the client,\n", " // which will in turn request a refresh of the image.\n", " this.send_message('resize', {'width': x_pixels, 'height': y_pixels});\n", "}\n", "\n", "mpl.figure.prototype.send_message = function(type, properties) {\n", " properties['type'] = type;\n", " properties['figure_id'] = this.id;\n", " this.ws.send(JSON.stringify(properties));\n", "}\n", "\n", "mpl.figure.prototype.send_draw_message = function() {\n", " if (!this.waiting) {\n", " this.waiting = true;\n", " this.ws.send(JSON.stringify({type: \"draw\", figure_id: this.id}));\n", " }\n", "}\n", "\n", "\n", "mpl.figure.prototype.handle_save = function(fig, msg) {\n", " var format_dropdown = fig.format_dropdown;\n", " var format = format_dropdown.options[format_dropdown.selectedIndex].value;\n", " fig.ondownload(fig, format);\n", "}\n", "\n", "\n", "mpl.figure.prototype.handle_resize = function(fig, msg) {\n", " var size = msg['size'];\n", " if (size[0] != fig.canvas.width || size[1] != fig.canvas.height) {\n", " fig._resize_canvas(size[0], size[1]);\n", " fig.send_message(\"refresh\", {});\n", " };\n", "}\n", "\n", "mpl.figure.prototype.handle_rubberband = function(fig, msg) {\n", " var x0 = msg['x0'];\n", " var y0 = fig.canvas.height - msg['y0'];\n", " var x1 = msg['x1'];\n", " var y1 = fig.canvas.height - msg['y1'];\n", " x0 = Math.floor(x0) + 0.5;\n", " y0 = Math.floor(y0) + 0.5;\n", " x1 = Math.floor(x1) + 0.5;\n", " y1 = Math.floor(y1) + 0.5;\n", " var min_x = Math.min(x0, x1);\n", " var min_y = Math.min(y0, y1);\n", " var width = Math.abs(x1 - x0);\n", " var height = Math.abs(y1 - y0);\n", "\n", " fig.rubberband_context.clearRect(\n", " 0, 0, fig.canvas.width, fig.canvas.height);\n", "\n", " fig.rubberband_context.strokeRect(min_x, min_y, width, height);\n", "}\n", "\n", "mpl.figure.prototype.handle_figure_label = function(fig, msg) {\n", " // Updates the figure title.\n", " fig.header.textContent = msg['label'];\n", "}\n", "\n", "mpl.figure.prototype.handle_cursor = function(fig, msg) {\n", " var cursor = msg['cursor'];\n", " switch(cursor)\n", " {\n", " case 0:\n", " cursor = 'pointer';\n", " break;\n", " case 1:\n", " cursor = 'default';\n", " break;\n", " case 2:\n", " cursor = 'crosshair';\n", " break;\n", " case 3:\n", " cursor = 'move';\n", " break;\n", " }\n", " fig.rubberband_canvas.style.cursor = cursor;\n", "}\n", "\n", "mpl.figure.prototype.handle_message = function(fig, msg) {\n", " fig.message.textContent = msg['message'];\n", "}\n", "\n", "mpl.figure.prototype.handle_draw = function(fig, msg) {\n", " // Request the server to send over a new figure.\n", " fig.send_draw_message();\n", "}\n", "\n", "mpl.figure.prototype.handle_image_mode = function(fig, msg) {\n", " fig.image_mode = msg['mode'];\n", "}\n", "\n", "mpl.figure.prototype.updated_canvas_event = function() {\n", " // Called whenever the canvas gets updated.\n", " this.send_message(\"ack\", {});\n", "}\n", "\n", "// A function to construct a web socket function for onmessage handling.\n", "// Called in the figure constructor.\n", "mpl.figure.prototype._make_on_message_function = function(fig) {\n", " return function socket_on_message(evt) {\n", " if (evt.data instanceof Blob) {\n", " /* FIXME: We get \"Resource interpreted as Image but\n", " * transferred with MIME type text/plain:\" errors on\n", " * Chrome. But how to set the MIME type? It doesn't seem\n", " * to be part of the websocket stream */\n", " evt.data.type = \"image/png\";\n", "\n", " /* Free the memory for the previous frames */\n", " if (fig.imageObj.src) {\n", " (window.URL || window.webkitURL).revokeObjectURL(\n", " fig.imageObj.src);\n", " }\n", "\n", " fig.imageObj.src = (window.URL || window.webkitURL).createObjectURL(\n", " evt.data);\n", " fig.updated_canvas_event();\n", " fig.waiting = false;\n", " return;\n", " }\n", " else if (typeof evt.data === 'string' && evt.data.slice(0, 21) == \"data:image/png;base64\") {\n", " fig.imageObj.src = evt.data;\n", " fig.updated_canvas_event();\n", " fig.waiting = false;\n", " return;\n", " }\n", "\n", " var msg = JSON.parse(evt.data);\n", " var msg_type = msg['type'];\n", "\n", " // Call the \"handle_{type}\" callback, which takes\n", " // the figure and JSON message as its only arguments.\n", " try {\n", " var callback = fig[\"handle_\" + msg_type];\n", " } catch (e) {\n", " console.log(\"No handler for the '\" + msg_type + \"' message type: \", msg);\n", " return;\n", " }\n", "\n", " if (callback) {\n", " try {\n", " // console.log(\"Handling '\" + msg_type + \"' message: \", msg);\n", " callback(fig, msg);\n", " } catch (e) {\n", " console.log(\"Exception inside the 'handler_\" + msg_type + \"' callback:\", e, e.stack, msg);\n", " }\n", " }\n", " };\n", "}\n", "\n", "// from http://stackoverflow.com/questions/1114465/getting-mouse-location-in-canvas\n", "mpl.findpos = function(e) {\n", " //this section is from http://www.quirksmode.org/js/events_properties.html\n", " var targ;\n", " if (!e)\n", " e = window.event;\n", " if (e.target)\n", " targ = e.target;\n", " else if (e.srcElement)\n", " targ = e.srcElement;\n", " if (targ.nodeType == 3) // defeat Safari bug\n", " targ = targ.parentNode;\n", "\n", " // jQuery normalizes the pageX and pageY\n", " // pageX,Y are the mouse positions relative to the document\n", " // offset() returns the position of the element relative to the document\n", " var x = e.pageX - $(targ).offset().left;\n", " var y = e.pageY - $(targ).offset().top;\n", "\n", " return {\"x\": x, \"y\": y};\n", "};\n", "\n", "/*\n", " * return a copy of an object with only non-object keys\n", " * we need this to avoid circular references\n", " * http://stackoverflow.com/a/24161582/3208463\n", " */\n", "function simpleKeys (original) {\n", " return Object.keys(original).reduce(function (obj, key) {\n", " if (typeof original[key] !== 'object')\n", " obj[key] = original[key]\n", " return obj;\n", " }, {});\n", "}\n", "\n", "mpl.figure.prototype.mouse_event = function(event, name) {\n", " var canvas_pos = mpl.findpos(event)\n", "\n", " if (name === 'button_press')\n", " {\n", " this.canvas.focus();\n", " this.canvas_div.focus();\n", " }\n", "\n", " var x = canvas_pos.x;\n", " var y = canvas_pos.y;\n", "\n", " this.send_message(name, {x: x, y: y, button: event.button,\n", " step: event.step,\n", " guiEvent: simpleKeys(event)});\n", "\n", " /* This prevents the web browser from automatically changing to\n", " * the text insertion cursor when the button is pressed. We want\n", " * to control all of the cursor setting manually through the\n", " * 'cursor' event from matplotlib */\n", " event.preventDefault();\n", " return false;\n", "}\n", "\n", "mpl.figure.prototype._key_event_extra = function(event, name) {\n", " // Handle any extra behaviour associated with a key event\n", "}\n", "\n", "mpl.figure.prototype.key_event = function(event, name) {\n", "\n", " // Prevent repeat events\n", " if (name == 'key_press')\n", " {\n", " if (event.which === this._key)\n", " return;\n", " else\n", " this._key = event.which;\n", " }\n", " if (name == 'key_release')\n", " this._key = null;\n", "\n", " var value = '';\n", " if (event.ctrlKey && event.which != 17)\n", " value += \"ctrl+\";\n", " if (event.altKey && event.which != 18)\n", " value += \"alt+\";\n", " if (event.shiftKey && event.which != 16)\n", " value += \"shift+\";\n", "\n", " value += 'k';\n", " value += event.which.toString();\n", "\n", " this._key_event_extra(event, name);\n", "\n", " this.send_message(name, {key: value,\n", " guiEvent: simpleKeys(event)});\n", " return false;\n", "}\n", "\n", "mpl.figure.prototype.toolbar_button_onclick = function(name) {\n", " if (name == 'download') {\n", " this.handle_save(this, null);\n", " } else {\n", " this.send_message(\"toolbar_button\", {name: name});\n", " }\n", "};\n", "\n", "mpl.figure.prototype.toolbar_button_onmouseover = function(tooltip) {\n", " this.message.textContent = tooltip;\n", "};\n", "mpl.toolbar_items = [[\"Home\", \"Reset original view\", \"fa fa-home icon-home\", \"home\"], [\"Back\", \"Back to previous view\", \"fa fa-arrow-left icon-arrow-left\", \"back\"], [\"Forward\", \"Forward to next view\", \"fa fa-arrow-right icon-arrow-right\", \"forward\"], [\"\", \"\", \"\", \"\"], [\"Pan\", \"Pan axes with left mouse, zoom with right\", \"fa fa-arrows icon-move\", \"pan\"], [\"Zoom\", \"Zoom to rectangle\", \"fa fa-square-o icon-check-empty\", \"zoom\"], [\"\", \"\", \"\", \"\"], [\"Download\", \"Download plot\", \"fa fa-floppy-o icon-save\", \"download\"]];\n", "\n", "mpl.extensions = [\"eps\", \"jpeg\", \"pdf\", \"png\", \"ps\", \"raw\", \"svg\", \"tif\"];\n", "\n", "mpl.default_extension = \"png\";var comm_websocket_adapter = function(comm) {\n", " // Create a \"websocket\"-like object which calls the given IPython comm\n", " // object with the appropriate methods. Currently this is a non binary\n", " // socket, so there is still some room for performance tuning.\n", " var ws = {};\n", "\n", " ws.close = function() {\n", " comm.close()\n", " };\n", " ws.send = function(m) {\n", " //console.log('sending', m);\n", " comm.send(m);\n", " };\n", " // Register the callback with on_msg.\n", " comm.on_msg(function(msg) {\n", " //console.log('receiving', msg['content']['data'], msg);\n", " // Pass the mpl event to the overriden (by mpl) onmessage function.\n", " ws.onmessage(msg['content']['data'])\n", " });\n", " return ws;\n", "}\n", "\n", "mpl.mpl_figure_comm = function(comm, msg) {\n", " // This is the function which gets called when the mpl process\n", " // starts-up an IPython Comm through the \"matplotlib\" channel.\n", "\n", " var id = msg.content.data.id;\n", " // Get hold of the div created by the display call when the Comm\n", " // socket was opened in Python.\n", " var element = $(\"#\" + id);\n", " var ws_proxy = comm_websocket_adapter(comm)\n", "\n", " function ondownload(figure, format) {\n", " window.open(figure.imageObj.src);\n", " }\n", "\n", " var fig = new mpl.figure(id, ws_proxy,\n", " ondownload,\n", " element.get(0));\n", "\n", " // Call onopen now - mpl needs it, as it is assuming we've passed it a real\n", " // web socket which is closed, not our websocket->open comm proxy.\n", " ws_proxy.onopen();\n", "\n", " fig.parent_element = element.get(0);\n", " fig.cell_info = mpl.find_output_cell(\"<div id='\" + id + \"'></div>\");\n", " if (!fig.cell_info) {\n", " console.error(\"Failed to find cell for figure\", id, fig);\n", " return;\n", " }\n", "\n", " var output_index = fig.cell_info[2]\n", " var cell = fig.cell_info[0];\n", "\n", "};\n", "\n", "mpl.figure.prototype.handle_close = function(fig, msg) {\n", " fig.root.unbind('remove')\n", "\n", " // Update the output cell to use the data from the current canvas.\n", " fig.push_to_output();\n", " var dataURL = fig.canvas.toDataURL();\n", " // Re-enable the keyboard manager in IPython - without this line, in FF,\n", " // the notebook keyboard shortcuts fail.\n", " IPython.keyboard_manager.enable()\n", " $(fig.parent_element).html('<img src=\"' + dataURL + '\">');\n", " fig.close_ws(fig, msg);\n", "}\n", "\n", "mpl.figure.prototype.close_ws = function(fig, msg){\n", " fig.send_message('closing', msg);\n", " // fig.ws.close()\n", "}\n", "\n", "mpl.figure.prototype.push_to_output = function(remove_interactive) {\n", " // Turn the data on the canvas into data in the output cell.\n", " var dataURL = this.canvas.toDataURL();\n", " this.cell_info[1]['text/html'] = '<img src=\"' + dataURL + '\">';\n", "}\n", "\n", "mpl.figure.prototype.updated_canvas_event = function() {\n", " // Tell IPython that the notebook contents must change.\n", " IPython.notebook.set_dirty(true);\n", " this.send_message(\"ack\", {});\n", " var fig = this;\n", " // Wait a second, then push the new image to the DOM so\n", " // that it is saved nicely (might be nice to debounce this).\n", " setTimeout(function () { fig.push_to_output() }, 1000);\n", "}\n", "\n", "mpl.figure.prototype._init_toolbar = function() {\n", " var fig = this;\n", "\n", " var nav_element = $('<div/>')\n", " nav_element.attr('style', 'width: 100%');\n", " this.root.append(nav_element);\n", "\n", " // Define a callback function for later on.\n", " function toolbar_event(event) {\n", " return fig.toolbar_button_onclick(event['data']);\n", " }\n", " function toolbar_mouse_event(event) {\n", " return fig.toolbar_button_onmouseover(event['data']);\n", " }\n", "\n", " for(var toolbar_ind in mpl.toolbar_items){\n", " var name = mpl.toolbar_items[toolbar_ind][0];\n", " var tooltip = mpl.toolbar_items[toolbar_ind][1];\n", " var image = mpl.toolbar_items[toolbar_ind][2];\n", " var method_name = mpl.toolbar_items[toolbar_ind][3];\n", "\n", " if (!name) { continue; };\n", "\n", " var button = $('<button class=\"btn btn-default\" href=\"#\" title=\"' + name + '\"><i class=\"fa ' + image + ' fa-lg\"></i></button>');\n", " button.click(method_name, toolbar_event);\n", " button.mouseover(tooltip, toolbar_mouse_event);\n", " nav_element.append(button);\n", " }\n", "\n", " // Add the status bar.\n", " var status_bar = $('<span class=\"mpl-message\" style=\"text-align:right; float: right;\"/>');\n", " nav_element.append(status_bar);\n", " this.message = status_bar[0];\n", "\n", " // Add the close button to the window.\n", " var buttongrp = $('<div class=\"btn-group inline pull-right\"></div>');\n", " var button = $('<button class=\"btn btn-mini btn-primary\" href=\"#\" title=\"Stop Interaction\"><i class=\"fa fa-power-off icon-remove icon-large\"></i></button>');\n", " button.click(function (evt) { fig.handle_close(fig, {}); } );\n", " button.mouseover('Stop Interaction', toolbar_mouse_event);\n", " buttongrp.append(button);\n", " var titlebar = this.root.find($('.ui-dialog-titlebar'));\n", " titlebar.prepend(buttongrp);\n", "}\n", "\n", "mpl.figure.prototype._root_extra_style = function(el){\n", " var fig = this\n", " el.on(\"remove\", function(){\n", "\tfig.close_ws(fig, {});\n", " });\n", "}\n", "\n", "mpl.figure.prototype._canvas_extra_style = function(el){\n", " // this is important to make the div 'focusable\n", " el.attr('tabindex', 0)\n", " // reach out to IPython and tell the keyboard manager to turn it's self\n", " // off when our div gets focus\n", "\n", " // location in version 3\n", " if (IPython.notebook.keyboard_manager) {\n", " IPython.notebook.keyboard_manager.register_events(el);\n", " }\n", " else {\n", " // location in version 2\n", " IPython.keyboard_manager.register_events(el);\n", " }\n", "\n", "}\n", "\n", "mpl.figure.prototype._key_event_extra = function(event, name) {\n", " var manager = IPython.notebook.keyboard_manager;\n", " if (!manager)\n", " manager = IPython.keyboard_manager;\n", "\n", " // Check for shift+enter\n", " if (event.shiftKey && event.which == 13) {\n", " this.canvas_div.blur();\n", " event.shiftKey = false;\n", " // Send a \"J\" for go to next cell\n", " event.which = 74;\n", " event.keyCode = 74;\n", " manager.command_mode();\n", " manager.handle_keydown(event);\n", " }\n", "}\n", "\n", "mpl.figure.prototype.handle_save = function(fig, msg) {\n", " fig.ondownload(fig, null);\n", "}\n", "\n", "\n", "mpl.find_output_cell = function(html_output) {\n", " // Return the cell and output element which can be found *uniquely* in the notebook.\n", " // Note - this is a bit hacky, but it is done because the \"notebook_saving.Notebook\"\n", " // IPython event is triggered only after the cells have been serialised, which for\n", " // our purposes (turning an active figure into a static one), is too late.\n", " var cells = IPython.notebook.get_cells();\n", " var ncells = cells.length;\n", " for (var i=0; i<ncells; i++) {\n", " var cell = cells[i];\n", " if (cell.cell_type === 'code'){\n", " for (var j=0; j<cell.output_area.outputs.length; j++) 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\">" ], "text/plain": [ "<IPython.core.display.HTML object>" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "x = np.linspace(0, 10) # range of values from 0 to 10\n", "y = np.sin(x) # sine of these values\n", "plt.plot(x, y); # plot as a line" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "If you run this code live, you will see an interactive plot that lets you pan, zoom, and scroll to explore the data.\n", "\n", "This is the simplest example of a Matplotlib plot; for ideas on the wide range of plot types available, see [Matplotlib's online gallery](http://matplotlib.org/gallery.html) as well as other references listed in [Resources for Further Learning](16-Further-Resources.ipynb)." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## SciPy: Scientific Python\n", "\n", "SciPy is a collection of scientific functionality that is built on NumPy.\n", "The package began as a set of Python wrappers to well-known Fortran libraries for numerical computing, and has grown from there.\n", "The package is arranged as a set of submodules, each implementing some class of numerical algorithms.\n", "Here is an incomplete sample of some of the more important ones for data science:\n", "\n", "- ``scipy.fftpack``: Fast Fourier transforms\n", "- ``scipy.integrate``: Numerical integration\n", "- ``scipy.interpolate``: Numerical interpolation\n", "- ``scipy.linalg``: Linear algebra routines\n", "- ``scipy.optimize``: Numerical optimization of functions\n", "- ``scipy.sparse``: Sparse matrix storage and linear algebra\n", "- ``scipy.stats``: Statistical analysis routines\n", "\n", "For example, let's take a look at interpolating a smooth curve between some data" ] }, { "cell_type": "code", "execution_count": 16, "metadata": { "collapsed": false }, "outputs": [ { "data": { "application/javascript": [ "/* Put everything inside the global mpl namespace */\n", "window.mpl = {};\n", "\n", "mpl.get_websocket_type = function() {\n", " if (typeof(WebSocket) !== 'undefined') {\n", " return WebSocket;\n", " } else if (typeof(MozWebSocket) !== 'undefined') {\n", " return MozWebSocket;\n", " } else {\n", " alert('Your browser does not have WebSocket support.' +\n", " 'Please try Chrome, Safari or Firefox ≥ 6. ' +\n", " 'Firefox 4 and 5 are also supported but you ' +\n", " 'have to enable WebSockets in about:config.');\n", " };\n", "}\n", "\n", "mpl.figure = function(figure_id, websocket, ondownload, parent_element) {\n", " this.id = figure_id;\n", "\n", " this.ws = websocket;\n", "\n", " this.supports_binary = (this.ws.binaryType != undefined);\n", "\n", " if (!this.supports_binary) {\n", " var warnings = document.getElementById(\"mpl-warnings\");\n", " if (warnings) {\n", " warnings.style.display = 'block';\n", " warnings.textContent = (\n", " \"This browser does not support binary websocket messages. \" +\n", " \"Performance may be slow.\");\n", " }\n", " }\n", "\n", " this.imageObj = new Image();\n", "\n", " this.context = undefined;\n", " this.message = undefined;\n", " this.canvas = undefined;\n", " this.rubberband_canvas = undefined;\n", " this.rubberband_context = undefined;\n", " this.format_dropdown = undefined;\n", "\n", " this.image_mode = 'full';\n", "\n", " this.root = $('<div/>');\n", " this._root_extra_style(this.root)\n", " this.root.attr('style', 'display: inline-block');\n", "\n", " $(parent_element).append(this.root);\n", "\n", " this._init_header(this);\n", " this._init_canvas(this);\n", " this._init_toolbar(this);\n", "\n", " var fig = this;\n", "\n", " this.waiting = false;\n", "\n", " this.ws.onopen = function () {\n", " fig.send_message(\"supports_binary\", {value: fig.supports_binary});\n", " fig.send_message(\"send_image_mode\", {});\n", " fig.send_message(\"refresh\", {});\n", " }\n", "\n", " this.imageObj.onload = function() {\n", " if (fig.image_mode == 'full') {\n", " // Full images could contain transparency (where diff images\n", " // almost always do), so we need to clear the canvas so that\n", " // there is no ghosting.\n", " fig.context.clearRect(0, 0, fig.canvas.width, fig.canvas.height);\n", " }\n", " fig.context.drawImage(fig.imageObj, 0, 0);\n", " };\n", "\n", " this.imageObj.onunload = function() {\n", " this.ws.close();\n", " }\n", "\n", " this.ws.onmessage = this._make_on_message_function(this);\n", "\n", " this.ondownload = ondownload;\n", "}\n", "\n", "mpl.figure.prototype._init_header = function() {\n", " var titlebar = $(\n", " '<div class=\"ui-dialog-titlebar ui-widget-header ui-corner-all ' +\n", " 'ui-helper-clearfix\"/>');\n", " var titletext = $(\n", " '<div class=\"ui-dialog-title\" style=\"width: 100%; ' +\n", " 'text-align: center; padding: 3px;\"/>');\n", " titlebar.append(titletext)\n", " this.root.append(titlebar);\n", " this.header = titletext[0];\n", "}\n", "\n", "\n", "\n", "mpl.figure.prototype._canvas_extra_style = function(canvas_div) {\n", "\n", "}\n", "\n", "\n", "mpl.figure.prototype._root_extra_style = function(canvas_div) {\n", "\n", "}\n", "\n", "mpl.figure.prototype._init_canvas = function() {\n", " var fig = this;\n", "\n", " var canvas_div = $('<div/>');\n", "\n", " canvas_div.attr('style', 'position: relative; clear: both; outline: 0');\n", "\n", " function canvas_keyboard_event(event) {\n", " return fig.key_event(event, event['data']);\n", " }\n", "\n", " canvas_div.keydown('key_press', canvas_keyboard_event);\n", " canvas_div.keyup('key_release', canvas_keyboard_event);\n", " this.canvas_div = canvas_div\n", " this._canvas_extra_style(canvas_div)\n", " this.root.append(canvas_div);\n", "\n", " var canvas = $('<canvas/>');\n", " canvas.addClass('mpl-canvas');\n", " canvas.attr('style', \"left: 0; top: 0; z-index: 0; outline: 0\")\n", "\n", " this.canvas = canvas[0];\n", " this.context = canvas[0].getContext(\"2d\");\n", "\n", " var rubberband = $('<canvas/>');\n", " rubberband.attr('style', \"position: absolute; left: 0; top: 0; z-index: 1;\")\n", "\n", " var pass_mouse_events = true;\n", "\n", " canvas_div.resizable({\n", " start: function(event, ui) {\n", " pass_mouse_events = false;\n", " },\n", " resize: function(event, ui) {\n", " fig.request_resize(ui.size.width, ui.size.height);\n", " },\n", " stop: function(event, ui) {\n", " pass_mouse_events = true;\n", " fig.request_resize(ui.size.width, ui.size.height);\n", " },\n", " });\n", "\n", " function mouse_event_fn(event) {\n", " if (pass_mouse_events)\n", " return fig.mouse_event(event, event['data']);\n", " }\n", "\n", " rubberband.mousedown('button_press', mouse_event_fn);\n", " rubberband.mouseup('button_release', mouse_event_fn);\n", " // Throttle sequential mouse events to 1 every 20ms.\n", " rubberband.mousemove('motion_notify', mouse_event_fn);\n", "\n", " rubberband.mouseenter('figure_enter', mouse_event_fn);\n", " rubberband.mouseleave('figure_leave', mouse_event_fn);\n", "\n", " canvas_div.on(\"wheel\", function (event) {\n", " event = event.originalEvent;\n", " event['data'] = 'scroll'\n", " if (event.deltaY < 0) {\n", " event.step = 1;\n", " } else {\n", " event.step = -1;\n", " }\n", " mouse_event_fn(event);\n", " });\n", "\n", " canvas_div.append(canvas);\n", " canvas_div.append(rubberband);\n", "\n", " this.rubberband = rubberband;\n", " this.rubberband_canvas = rubberband[0];\n", " this.rubberband_context = rubberband[0].getContext(\"2d\");\n", " this.rubberband_context.strokeStyle = \"#000000\";\n", "\n", " this._resize_canvas = function(width, height) {\n", " // Keep the size of the canvas, canvas container, and rubber band\n", " // canvas in synch.\n", " canvas_div.css('width', width)\n", " canvas_div.css('height', height)\n", "\n", " canvas.attr('width', width);\n", " canvas.attr('height', height);\n", "\n", " rubberband.attr('width', width);\n", " rubberband.attr('height', height);\n", " }\n", "\n", " // Set the figure to an initial 600x600px, this will subsequently be updated\n", " // upon first draw.\n", " this._resize_canvas(600, 600);\n", "\n", " // Disable right mouse context menu.\n", " $(this.rubberband_canvas).bind(\"contextmenu\",function(e){\n", " return false;\n", " });\n", "\n", " function set_focus () {\n", " canvas.focus();\n", " canvas_div.focus();\n", " }\n", "\n", " window.setTimeout(set_focus, 100);\n", "}\n", "\n", "mpl.figure.prototype._init_toolbar = function() {\n", " var fig = this;\n", "\n", " var nav_element = $('<div/>')\n", " nav_element.attr('style', 'width: 100%');\n", " this.root.append(nav_element);\n", "\n", " // Define a callback function for later on.\n", " function toolbar_event(event) {\n", " return fig.toolbar_button_onclick(event['data']);\n", " }\n", " function toolbar_mouse_event(event) {\n", " return fig.toolbar_button_onmouseover(event['data']);\n", " }\n", "\n", " for(var toolbar_ind in mpl.toolbar_items) {\n", " var name = mpl.toolbar_items[toolbar_ind][0];\n", " var tooltip = mpl.toolbar_items[toolbar_ind][1];\n", " var image = mpl.toolbar_items[toolbar_ind][2];\n", " var method_name = mpl.toolbar_items[toolbar_ind][3];\n", "\n", " if (!name) {\n", " // put a spacer in here.\n", " continue;\n", " }\n", " var button = $('<button/>');\n", " button.addClass('ui-button ui-widget ui-state-default ui-corner-all ' +\n", " 'ui-button-icon-only');\n", " button.attr('role', 'button');\n", " button.attr('aria-disabled', 'false');\n", " button.click(method_name, toolbar_event);\n", " button.mouseover(tooltip, toolbar_mouse_event);\n", "\n", " var icon_img = $('<span/>');\n", " icon_img.addClass('ui-button-icon-primary ui-icon');\n", " icon_img.addClass(image);\n", " icon_img.addClass('ui-corner-all');\n", "\n", " var tooltip_span = $('<span/>');\n", " tooltip_span.addClass('ui-button-text');\n", " tooltip_span.html(tooltip);\n", "\n", " button.append(icon_img);\n", " button.append(tooltip_span);\n", "\n", " nav_element.append(button);\n", " }\n", "\n", " var fmt_picker_span = $('<span/>');\n", "\n", " var fmt_picker = $('<select/>');\n", " fmt_picker.addClass('mpl-toolbar-option ui-widget ui-widget-content');\n", " fmt_picker_span.append(fmt_picker);\n", " nav_element.append(fmt_picker_span);\n", " this.format_dropdown = fmt_picker[0];\n", "\n", " for (var ind in mpl.extensions) {\n", " var fmt = mpl.extensions[ind];\n", " var option = $(\n", " '<option/>', {selected: fmt === mpl.default_extension}).html(fmt);\n", " fmt_picker.append(option)\n", " }\n", "\n", " // Add hover states to the ui-buttons\n", " $( \".ui-button\" ).hover(\n", " function() { $(this).addClass(\"ui-state-hover\");},\n", " function() { $(this).removeClass(\"ui-state-hover\");}\n", " );\n", "\n", " var status_bar = $('<span class=\"mpl-message\"/>');\n", " nav_element.append(status_bar);\n", " this.message = status_bar[0];\n", "}\n", "\n", "mpl.figure.prototype.request_resize = function(x_pixels, y_pixels) {\n", " // Request matplotlib to resize the figure. Matplotlib will then trigger a resize in the client,\n", " // which will in turn request a refresh of the image.\n", " this.send_message('resize', {'width': x_pixels, 'height': y_pixels});\n", "}\n", "\n", "mpl.figure.prototype.send_message = function(type, properties) {\n", " properties['type'] = type;\n", " properties['figure_id'] = this.id;\n", " this.ws.send(JSON.stringify(properties));\n", "}\n", "\n", "mpl.figure.prototype.send_draw_message = function() {\n", " if (!this.waiting) {\n", " this.waiting = true;\n", " this.ws.send(JSON.stringify({type: \"draw\", figure_id: this.id}));\n", " }\n", "}\n", "\n", "\n", "mpl.figure.prototype.handle_save = function(fig, msg) {\n", " var format_dropdown = fig.format_dropdown;\n", " var format = format_dropdown.options[format_dropdown.selectedIndex].value;\n", " fig.ondownload(fig, format);\n", "}\n", "\n", "\n", "mpl.figure.prototype.handle_resize = function(fig, msg) {\n", " var size = msg['size'];\n", " if (size[0] != fig.canvas.width || size[1] != fig.canvas.height) {\n", " fig._resize_canvas(size[0], size[1]);\n", " fig.send_message(\"refresh\", {});\n", " };\n", "}\n", "\n", "mpl.figure.prototype.handle_rubberband = function(fig, msg) {\n", " var x0 = msg['x0'];\n", " var y0 = fig.canvas.height - msg['y0'];\n", " var x1 = msg['x1'];\n", " var y1 = fig.canvas.height - msg['y1'];\n", " x0 = Math.floor(x0) + 0.5;\n", " y0 = Math.floor(y0) + 0.5;\n", " x1 = Math.floor(x1) + 0.5;\n", " y1 = Math.floor(y1) + 0.5;\n", " var min_x = Math.min(x0, x1);\n", " var min_y = Math.min(y0, y1);\n", " var width = Math.abs(x1 - x0);\n", " var height = Math.abs(y1 - y0);\n", "\n", " fig.rubberband_context.clearRect(\n", " 0, 0, fig.canvas.width, fig.canvas.height);\n", "\n", " fig.rubberband_context.strokeRect(min_x, min_y, width, height);\n", "}\n", "\n", "mpl.figure.prototype.handle_figure_label = function(fig, msg) {\n", " // Updates the figure title.\n", " fig.header.textContent = msg['label'];\n", "}\n", "\n", "mpl.figure.prototype.handle_cursor = function(fig, msg) {\n", " var cursor = msg['cursor'];\n", " switch(cursor)\n", " {\n", " case 0:\n", " cursor = 'pointer';\n", " break;\n", " case 1:\n", " cursor = 'default';\n", " break;\n", " case 2:\n", " cursor = 'crosshair';\n", " break;\n", " case 3:\n", " cursor = 'move';\n", " break;\n", " }\n", " fig.rubberband_canvas.style.cursor = cursor;\n", "}\n", "\n", "mpl.figure.prototype.handle_message = function(fig, msg) {\n", " fig.message.textContent = msg['message'];\n", "}\n", "\n", "mpl.figure.prototype.handle_draw = function(fig, msg) {\n", " // Request the server to send over a new figure.\n", " fig.send_draw_message();\n", "}\n", "\n", "mpl.figure.prototype.handle_image_mode = function(fig, msg) {\n", " fig.image_mode = msg['mode'];\n", "}\n", "\n", "mpl.figure.prototype.updated_canvas_event = function() {\n", " // Called whenever the canvas gets updated.\n", " this.send_message(\"ack\", {});\n", "}\n", "\n", "// A function to construct a web socket function for onmessage handling.\n", "// Called in the figure constructor.\n", "mpl.figure.prototype._make_on_message_function = function(fig) {\n", " return function socket_on_message(evt) {\n", " if (evt.data instanceof Blob) {\n", " /* FIXME: We get \"Resource interpreted as Image but\n", " * transferred with MIME type text/plain:\" errors on\n", " * Chrome. But how to set the MIME type? It doesn't seem\n", " * to be part of the websocket stream */\n", " evt.data.type = \"image/png\";\n", "\n", " /* Free the memory for the previous frames */\n", " if (fig.imageObj.src) {\n", " (window.URL || window.webkitURL).revokeObjectURL(\n", " fig.imageObj.src);\n", " }\n", "\n", " fig.imageObj.src = (window.URL || window.webkitURL).createObjectURL(\n", " evt.data);\n", " fig.updated_canvas_event();\n", " fig.waiting = false;\n", " return;\n", " }\n", " else if (typeof evt.data === 'string' && evt.data.slice(0, 21) == \"data:image/png;base64\") {\n", " fig.imageObj.src = evt.data;\n", " fig.updated_canvas_event();\n", " fig.waiting = false;\n", " return;\n", " }\n", "\n", " var msg = JSON.parse(evt.data);\n", " var msg_type = msg['type'];\n", "\n", " // Call the \"handle_{type}\" callback, which takes\n", " // the figure and JSON message as its only arguments.\n", " try {\n", " var callback = fig[\"handle_\" + msg_type];\n", " } catch (e) {\n", " console.log(\"No handler for the '\" + msg_type + \"' message type: \", msg);\n", " return;\n", " }\n", "\n", " if (callback) {\n", " try {\n", " // console.log(\"Handling '\" + msg_type + \"' message: \", msg);\n", " callback(fig, msg);\n", " } catch (e) {\n", " console.log(\"Exception inside the 'handler_\" + msg_type + \"' callback:\", e, e.stack, msg);\n", " }\n", " }\n", " };\n", "}\n", "\n", "// from http://stackoverflow.com/questions/1114465/getting-mouse-location-in-canvas\n", "mpl.findpos = function(e) {\n", " //this section is from http://www.quirksmode.org/js/events_properties.html\n", " var targ;\n", " if (!e)\n", " e = window.event;\n", " if (e.target)\n", " targ = e.target;\n", " else if (e.srcElement)\n", " targ = e.srcElement;\n", " if (targ.nodeType == 3) // defeat Safari bug\n", " targ = targ.parentNode;\n", "\n", " // jQuery normalizes the pageX and pageY\n", " // pageX,Y are the mouse positions relative to the document\n", " // offset() returns the position of the element relative to the document\n", " var x = e.pageX - $(targ).offset().left;\n", " var y = e.pageY - $(targ).offset().top;\n", "\n", " return {\"x\": x, \"y\": y};\n", "};\n", "\n", "/*\n", " * return a copy of an object with only non-object keys\n", " * we need this to avoid circular references\n", " * http://stackoverflow.com/a/24161582/3208463\n", " */\n", "function simpleKeys (original) {\n", " return Object.keys(original).reduce(function (obj, key) {\n", " if (typeof original[key] !== 'object')\n", " obj[key] = original[key]\n", " return obj;\n", " }, {});\n", "}\n", "\n", "mpl.figure.prototype.mouse_event = function(event, name) {\n", " var canvas_pos = mpl.findpos(event)\n", "\n", " if (name === 'button_press')\n", " {\n", " this.canvas.focus();\n", " this.canvas_div.focus();\n", " }\n", "\n", " var x = canvas_pos.x;\n", " var y = canvas_pos.y;\n", "\n", " this.send_message(name, {x: x, y: y, button: event.button,\n", " step: event.step,\n", " guiEvent: simpleKeys(event)});\n", "\n", " /* This prevents the web browser from automatically changing to\n", " * the text insertion cursor when the button is pressed. We want\n", " * to control all of the cursor setting manually through the\n", " * 'cursor' event from matplotlib */\n", " event.preventDefault();\n", " return false;\n", "}\n", "\n", "mpl.figure.prototype._key_event_extra = function(event, name) {\n", " // Handle any extra behaviour associated with a key event\n", "}\n", "\n", "mpl.figure.prototype.key_event = function(event, name) {\n", "\n", " // Prevent repeat events\n", " if (name == 'key_press')\n", " {\n", " if (event.which === this._key)\n", " return;\n", " else\n", " this._key = event.which;\n", " }\n", " if (name == 'key_release')\n", " this._key = null;\n", "\n", " var value = '';\n", " if (event.ctrlKey && event.which != 17)\n", " value += \"ctrl+\";\n", " if (event.altKey && event.which != 18)\n", " value += \"alt+\";\n", " if (event.shiftKey && event.which != 16)\n", " value += \"shift+\";\n", "\n", " value += 'k';\n", " value += event.which.toString();\n", "\n", " this._key_event_extra(event, name);\n", "\n", " this.send_message(name, {key: value,\n", " guiEvent: simpleKeys(event)});\n", " return false;\n", "}\n", "\n", "mpl.figure.prototype.toolbar_button_onclick = function(name) {\n", " if (name == 'download') {\n", " this.handle_save(this, null);\n", " } else {\n", " this.send_message(\"toolbar_button\", {name: name});\n", " }\n", "};\n", "\n", "mpl.figure.prototype.toolbar_button_onmouseover = function(tooltip) {\n", " this.message.textContent = tooltip;\n", "};\n", "mpl.toolbar_items = [[\"Home\", \"Reset original view\", \"fa fa-home icon-home\", \"home\"], [\"Back\", \"Back to previous view\", \"fa fa-arrow-left icon-arrow-left\", \"back\"], [\"Forward\", \"Forward to next view\", \"fa fa-arrow-right icon-arrow-right\", \"forward\"], [\"\", \"\", \"\", \"\"], [\"Pan\", \"Pan axes with left mouse, zoom with right\", \"fa fa-arrows icon-move\", \"pan\"], [\"Zoom\", \"Zoom to rectangle\", \"fa fa-square-o icon-check-empty\", \"zoom\"], [\"\", \"\", \"\", \"\"], [\"Download\", \"Download plot\", \"fa fa-floppy-o icon-save\", \"download\"]];\n", "\n", "mpl.extensions = [\"eps\", \"jpeg\", \"pdf\", \"png\", \"ps\", \"raw\", \"svg\", \"tif\"];\n", "\n", "mpl.default_extension = \"png\";var comm_websocket_adapter = function(comm) {\n", " // Create a \"websocket\"-like object which calls the given IPython comm\n", " // object with the appropriate methods. Currently this is a non binary\n", " // socket, so there is still some room for performance tuning.\n", " var ws = {};\n", "\n", " ws.close = function() {\n", " comm.close()\n", " };\n", " ws.send = function(m) {\n", " //console.log('sending', m);\n", " comm.send(m);\n", " };\n", " // Register the callback with on_msg.\n", " comm.on_msg(function(msg) {\n", " //console.log('receiving', msg['content']['data'], msg);\n", " // Pass the mpl event to the overriden (by mpl) onmessage function.\n", " ws.onmessage(msg['content']['data'])\n", " });\n", " return ws;\n", "}\n", "\n", "mpl.mpl_figure_comm = function(comm, msg) {\n", " // This is the function which gets called when the mpl process\n", " // starts-up an IPython Comm through the \"matplotlib\" channel.\n", "\n", " var id = msg.content.data.id;\n", " // Get hold of the div created by the display call when the Comm\n", " // socket was opened in Python.\n", " var element = $(\"#\" + id);\n", " var ws_proxy = comm_websocket_adapter(comm)\n", "\n", " function ondownload(figure, format) {\n", " window.open(figure.imageObj.src);\n", " }\n", "\n", " var fig = new mpl.figure(id, ws_proxy,\n", " ondownload,\n", " element.get(0));\n", "\n", " // Call onopen now - mpl needs it, as it is assuming we've passed it a real\n", " // web socket which is closed, not our websocket->open comm proxy.\n", " ws_proxy.onopen();\n", "\n", " fig.parent_element = element.get(0);\n", " fig.cell_info = mpl.find_output_cell(\"<div id='\" + id + \"'></div>\");\n", " if (!fig.cell_info) {\n", " console.error(\"Failed to find cell for figure\", id, fig);\n", " return;\n", " }\n", "\n", " var output_index = fig.cell_info[2]\n", " var cell = fig.cell_info[0];\n", "\n", "};\n", "\n", "mpl.figure.prototype.handle_close = function(fig, msg) {\n", " fig.root.unbind('remove')\n", "\n", " // Update the output cell to use the data from the current canvas.\n", " fig.push_to_output();\n", " var dataURL = fig.canvas.toDataURL();\n", " // Re-enable the keyboard manager in IPython - without this line, in FF,\n", " // the notebook keyboard shortcuts fail.\n", " IPython.keyboard_manager.enable()\n", " $(fig.parent_element).html('<img src=\"' + dataURL + '\">');\n", " fig.close_ws(fig, msg);\n", "}\n", "\n", "mpl.figure.prototype.close_ws = function(fig, msg){\n", " fig.send_message('closing', msg);\n", " // fig.ws.close()\n", "}\n", "\n", "mpl.figure.prototype.push_to_output = function(remove_interactive) {\n", " // Turn the data on the canvas into data in the output cell.\n", " var dataURL = this.canvas.toDataURL();\n", " this.cell_info[1]['text/html'] = '<img src=\"' + dataURL + '\">';\n", "}\n", "\n", "mpl.figure.prototype.updated_canvas_event = function() {\n", " // Tell IPython that the notebook contents must change.\n", " IPython.notebook.set_dirty(true);\n", " this.send_message(\"ack\", {});\n", " var fig = this;\n", " // Wait a second, then push the new image to the DOM so\n", " // that it is saved nicely (might be nice to debounce this).\n", " setTimeout(function () { fig.push_to_output() }, 1000);\n", "}\n", "\n", "mpl.figure.prototype._init_toolbar = function() {\n", " var fig = this;\n", "\n", " var nav_element = $('<div/>')\n", " nav_element.attr('style', 'width: 100%');\n", " this.root.append(nav_element);\n", "\n", " // Define a callback function for later on.\n", " function toolbar_event(event) {\n", " return fig.toolbar_button_onclick(event['data']);\n", " }\n", " function toolbar_mouse_event(event) {\n", " return fig.toolbar_button_onmouseover(event['data']);\n", " }\n", "\n", " for(var toolbar_ind in mpl.toolbar_items){\n", " var name = mpl.toolbar_items[toolbar_ind][0];\n", " var tooltip = mpl.toolbar_items[toolbar_ind][1];\n", " var image = mpl.toolbar_items[toolbar_ind][2];\n", " var method_name = mpl.toolbar_items[toolbar_ind][3];\n", "\n", " if (!name) { continue; };\n", "\n", " var button = $('<button class=\"btn btn-default\" href=\"#\" title=\"' + name + '\"><i class=\"fa ' + image + ' fa-lg\"></i></button>');\n", " button.click(method_name, toolbar_event);\n", " button.mouseover(tooltip, toolbar_mouse_event);\n", " nav_element.append(button);\n", " }\n", "\n", " // Add the status bar.\n", " var status_bar = $('<span class=\"mpl-message\" style=\"text-align:right; float: right;\"/>');\n", " nav_element.append(status_bar);\n", " this.message = status_bar[0];\n", "\n", " // Add the close button to the window.\n", " var buttongrp = $('<div class=\"btn-group inline pull-right\"></div>');\n", " var button = $('<button class=\"btn btn-mini btn-primary\" href=\"#\" title=\"Stop Interaction\"><i class=\"fa fa-power-off icon-remove icon-large\"></i></button>');\n", " button.click(function (evt) { fig.handle_close(fig, {}); } );\n", " button.mouseover('Stop Interaction', toolbar_mouse_event);\n", " buttongrp.append(button);\n", " var titlebar = this.root.find($('.ui-dialog-titlebar'));\n", " titlebar.prepend(buttongrp);\n", "}\n", "\n", "mpl.figure.prototype._root_extra_style = function(el){\n", " var fig = this\n", " el.on(\"remove\", function(){\n", "\tfig.close_ws(fig, {});\n", " });\n", "}\n", "\n", "mpl.figure.prototype._canvas_extra_style = function(el){\n", " // this is important to make the div 'focusable\n", " el.attr('tabindex', 0)\n", " // reach out to IPython and tell the keyboard manager to turn it's self\n", " // off when our div gets focus\n", "\n", " // location in version 3\n", " if (IPython.notebook.keyboard_manager) {\n", " IPython.notebook.keyboard_manager.register_events(el);\n", " }\n", " else {\n", " // location in version 2\n", " IPython.keyboard_manager.register_events(el);\n", " }\n", "\n", "}\n", "\n", "mpl.figure.prototype._key_event_extra = function(event, name) {\n", " var manager = IPython.notebook.keyboard_manager;\n", " if (!manager)\n", " manager = IPython.keyboard_manager;\n", "\n", " // Check for shift+enter\n", " if (event.shiftKey && event.which == 13) {\n", " this.canvas_div.blur();\n", " event.shiftKey = false;\n", " // Send a \"J\" for go to next cell\n", " event.which = 74;\n", " event.keyCode = 74;\n", " manager.command_mode();\n", " manager.handle_keydown(event);\n", " }\n", "}\n", "\n", "mpl.figure.prototype.handle_save = function(fig, msg) {\n", " fig.ondownload(fig, null);\n", "}\n", "\n", "\n", "mpl.find_output_cell = function(html_output) {\n", " // Return the cell and output element which can be found *uniquely* in the notebook.\n", " // Note - this is a bit hacky, but it is done because the \"notebook_saving.Notebook\"\n", " // IPython event is triggered only after the cells have been serialised, which for\n", " // our purposes (turning an active figure into a static one), is too late.\n", " var cells = IPython.notebook.get_cells();\n", " var ncells = cells.length;\n", " for (var i=0; i<ncells; i++) {\n", " var cell = cells[i];\n", " if (cell.cell_type === 'code'){\n", " for (var j=0; j<cell.output_area.outputs.length; j++) 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\">" ], "text/plain": [ "<IPython.core.display.HTML object>" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "from scipy import interpolate\n", "\n", "# choose eight points between 0 and 10\n", "x = np.linspace(0, 10, 8)\n", "y = np.sin(x)\n", "\n", "# create a cubic interpolation function\n", "func = interpolate.interp1d(x, y, kind='cubic')\n", "\n", "# interpolate on a grid of 1,000 points\n", "x_interp = np.linspace(0, 10, 1000)\n", "y_interp = func(x_interp)\n", "\n", "# plot the results\n", "plt.figure() # new figure\n", "plt.plot(x, y, 'o')\n", "plt.plot(x_interp, y_interp);" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "What we see is a smooth interpolation between the points." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Other Data Science Packages\n", "\n", "Built on top of these tools are a host of other data science packages, including general tools like [Scikit-Learn](http://scikit-learn.org) for machine learning, [Scikit-Image](http://scikit-image.org) for image analysis, and [Statsmodels](http://statsmodels.sourceforge.net/) for statistical modeling, as well as more domain-specific packages like [AstroPy](http://astropy.org) for astronomy and astrophysics, [NiPy](http://nipy.org/) for neuro-imaging, and many, many more.\n", "\n", "No matter what type of scientific, numerical, or statistical problem you are facing, it's likely there is a Python package out there that can help you solve it." ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "<!--NAVIGATION-->\n", "< [String Manipulation and Regular Expressions](14-Strings-and-Regular-Expressions.ipynb) | [Contents](Index.ipynb) | [Resources for Further Learning](16-Further-Resources.ipynb) >" ] } ], "metadata": { "anaconda-cloud": {}, "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": "3.5.1" } }, "nbformat": 4, "nbformat_minor": 0 }