{ "metadata": { "kernelspec": { "codemirror_mode": { "name": "ipython", "version": 3 }, "display_name": "IPython (Python 3)", "language": "python", "name": "python3" }, "name": "", "signature": "sha256:5c0c036736e09c6e4457e0766ab295acb0216f424d0021ca36483f1e309fe3c8" }, "nbformat": 3, "nbformat_minor": 0, "worksheets": [ { "cells": [ { "cell_type": "heading", "level": 1, "metadata": {}, "source": [ "scilabmagic: Scilab inside IPython" ] }, { "cell_type": "heading", "level": 2, "metadata": {}, "source": [ "Installation" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "The `scilabmagic` extension provides the ability to interact with Scilab. It is provided by the `scilab2py` package,\n", "which may be installed using `pip` or `easy_install`.\n", "\n", "To enable the extension, load it as follows:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "%load_ext scilab2py.ipython\n" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 1 }, { "cell_type": "heading", "level": 2, "metadata": {}, "source": [ "Overview" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Loading the extension enables three magic functions: `%scilab`, `%scilab_push`, and `%scilab_pull`.\n", "\n", "The first is for executing one or more lines of Scilab, while the latter allow moving variables between the Scilab and Python workspace.\n", "Here you see an example of how to execute a single line of Scilab, and how to transfer the generated value back to Python:" ] }, { "cell_type": "code", "collapsed": false, "input": [ "x = %scilab [1 2; 3 4];\n", "x" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] }, { "metadata": {}, "output_type": "display_data", "png": "iVBORw0KGgoAAAANSUhEUgAAAl8AAAHYCAIAAAD8gBq3AAATyklEQVR42u3dQWsT+xrAYesmhAgi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\n" } ], "prompt_number": 2 }, { "cell_type": "code", "collapsed": false, "input": [ "a = [1, 2, 3]\n", "\n", "%scilab_push a\n", "%scilab a = a * 2;\n", "%scilab_pull a\n", "a" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] }, { "metadata": {}, "output_type": "display_data", "png": "iVBORw0KGgoAAAANSUhEUgAAAl8AAAHYCAIAAAD8gBq3AAATyklEQVR42u3dQWsT+xrAYesmhAgi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\n" } ], "prompt_number": 3 }, { "cell_type": "markdown", "metadata": {}, "source": [ "When using the cell magic, `%%scilab` (note the double `%`), multiple lines of Scilab can be executed together. Unlike\n", "with the single cell magic, no value is returned, so we use the `-i` and `-o` flags to specify input and output variables." ] }, { "cell_type": "code", "collapsed": false, "input": [ "%%scilab -i x -o y\n", "y = x + 3;" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] }, { "metadata": {}, "output_type": "display_data", "png": "iVBORw0KGgoAAAANSUhEUgAAAl8AAAHYCAIAAAD8gBq3AAATyklEQVR42u3dQWsT+xrAYesmhAgi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\n" } ], "prompt_number": 4 }, { "cell_type": "code", "collapsed": false, "input": [ "y" ], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 5 }, { "cell_type": "heading", "level": 2, "metadata": {}, "source": [ "Plotting" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "Plot output is automatically captured and displayed, and using the `-f` flag you may choose its format (currently, `png`, `svg` `jpg`, and `jpeg` are supported)." ] }, { "cell_type": "code", "collapsed": false, "input": [ "%%scilab -f svg\n", "\n", "xset(\"fpf\",\" \")\n", "contour2d(1:10,1:10,rand(10,10),5,rect=[0,0,11,11]);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] }, { "metadata": {}, "output_type": "display_data", "svg": [ "\n", "\n", "2131.21.41.61.82.22.42.62.82131.21.41.61.82.22.42.62.8\n" ] } ], "prompt_number": 6 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Example 3D plots." ] }, { "cell_type": "code", "collapsed": false, "input": [ "%%scilab -f jpg\n", "\n", "# simple plot using z = f(x, y)\n", "t = [0: 0.3: 2 * %pi]';\n", "z = sin(t) * cos(t');\n", "plot3d(t, t, z);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] }, { "jpeg": "/9j/4AAQSkZJRgABAgAAAQABAAD/2wBDAAIBAQEBAQIBAQECAgICAgQDAgICAgUEBAMEBgUGBgYF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\nUUUAFFFFABRRRQAUUUUAFFFFABRRRQAUUUUAFFFFAH//2Q==\n", "metadata": {}, "output_type": "display_data" } ], "prompt_number": 7 }, { "cell_type": "code", "collapsed": false, "input": [ "%%scilab -f png\n", "\n", "[x, y] = meshgrid(0:0.1:3);\n", "r = sin(x - 0.5).^2 + cos(y - 0.5).^2;\n", "surf(x, y, r);" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] }, { "metadata": {}, "output_type": "display_data", "png": "iVBORw0KGgoAAAANSUhEUgAAAl8AAAHYCAIAAAD8gBq3AAATyklEQVR42u3dQWsT+xrAYesmhAgi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\n" } ], "prompt_number": 8 }, { "cell_type": "markdown", "metadata": {}, "source": [ "Plots can be drawn inline (default) or bring up the Scilab plotting GUI by using the -g (or --gui) flag: " ] }, { "cell_type": "code", "collapsed": false, "input": [ "%%scilab -g\n", "plot([1,2,3])\n", "# brings up a Scilab plotting GUI" ], "language": "python", "metadata": {}, "outputs": [ { "metadata": {}, "output_type": "display_data", "text": [] } ], "prompt_number": 9 }, { "cell_type": "code", "collapsed": false, "input": [], "language": "python", "metadata": {}, "outputs": [], "prompt_number": 9 } ], "metadata": {} } ] }