diff --git a/examples/notebooks/Cell Magics.ipynb b/examples/notebooks/Cell Magics.ipynb new file mode 100644 index 0000000..1fc2f43 --- /dev/null +++ b/examples/notebooks/Cell Magics.ipynb @@ -0,0 +1,1419 @@ +{ + "metadata": { + "name": "Cell Magics" + }, + "nbformat": 3, + "nbformat_minor": 0, + "worksheets": [ + { + "cells": [ + { + "cell_type": "heading", + "level": 1, + "metadata": {}, + "source": [ + "The cell magics in IPython" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "IPython has a system of commands we call 'magics' that provide effectively a mini command language that is orthogonal to the syntax of Python and is extensible by the user with new commands. Magics are meant to be typed interactively, so they use command-line conventions, such as using whitespace for separating arguments, dashes for options and other conventions typical of a command-line environment.\n", + "\n", + "Magics come in two kinds:\n", + "\n", + "* Line magics: these are commands prepended by one `%` character and whose arguments only extend to the end of the current line.\n", + "* Cell magics: these use *two* percent characters as a marker (`%%`), and they receive as argument *both* the current line where they are declared and the whole body of the cell. Note that cell magics can *only* be used as the first line in a cell, and as a general principle they can't be 'stacked' (i.e. you can only use one cell magic per cell). A few of them, because of how they operate, can be stacked, but that is something you will discover on a case by case basis.\n", + "\n", + "The `%lsmagic` magic is used to list all available magics, and it will show both line and cell magics currently defined:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%lsmagic" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "Available line magics:\n", + "%alias %alias_magic %autocall %automagic %bookmark %cd %clear %colors %config %connect_info %debug %dhist %dirs %doctest_mode %ed %edit %env %gui %hist %history %install_default_config %install_ext %install_profiles %killbgscripts %less %load %load_ext %loadpy %logoff %logon %logstart %logstate %logstop %lsmagic %macro %magic %man %more %notebook %page %pastebin %pdb %pdef %pdoc %pfile %pinfo %pinfo2 %popd %pprint %precision %profile %prun %psearch %psource %pushd %pwd %pycat %pylab %qtconsole %quickref %recall %rehashx %reload_ext %rep %rerun %reset %reset_selective %run %save %sc %store %sx %system %tb %time %timeit %unalias %unload_ext %who %who_ls %whos %xdel %xmode\n", + "\n", + "Available cell magics:\n", + "%%! %%bash %%capture %%file %%perl %%prun %%python3 %%ruby %%script %%sh %%sx %%system %%timeit\n", + "\n", + "Automagic is ON, % prefix IS NOT needed for line magics.\n" + ] + } + ], + "prompt_number": 1 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Since in the introductory section we already covered the most frequently used line magics, we will focus here on the cell magics, which offer a great amount of power.\n", + "\n", + "Let's load the pylab support so we can use numerics/plotting at will later on." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%pylab inline" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "\n", + "Welcome to pylab, a matplotlib-based Python environment [backend: module://IPython.zmq.pylab.backend_inline].\n", + "For more information, type 'help(pylab)'.\n" + ] + } + ], + "prompt_number": 8 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "\n", + "Some simple cell magics" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Timing the execution of code; the 'timeit' magic exists both in line and cell form:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%timeit np.linalg.eigvals(np.random.rand(100,100))" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "10 loops, best of 3: 20.5 ms per loop\n" + ] + } + ], + "prompt_number": 13 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%timeit a = np.random.rand(100, 100)\n", + "np.linalg.eigvals(a)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "10 loops, best of 3: 17.8 ms per loop\n" + ] + } + ], + "prompt_number": 14 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The `%%capture` magic can be used to capture the stdout/err of any block of python code, either to discard it (if it's noise to you) or to store it in a variable for later use:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%capture capt\n", + "import sys\n", + "print 'Hello stdout'\n", + "print >> sys.stderr, 'and stderr'" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 30 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "capt.stdout, capt.stderr" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 33, + "text": [ + "('Hello stdout\\n', 'and stderr\\n')" + ] + } + ], + "prompt_number": 33 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "capt.show()" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "Hello stdout\n" + ] + }, + { + "output_type": "stream", + "stream": "stderr", + "text": [ + "and stderr\n" + ] + } + ], + "prompt_number": 34 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The `%%file` magic is a very useful tool that writes the cell contents as a named file:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%file foo.py\n", + "print 'Hello world'" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "Overwriting foo.py\n" + ] + } + ], + "prompt_number": 44 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%run foo" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "Hello world\n" + ] + } + ], + "prompt_number": 45 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "\n", + "Magics for running code under other interpreters" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "IPython has a `%%script` cell magic, which lets you run a cell in\n", + "a subprocess of any interpreter on your system, such as: bash, ruby, perl, zsh, R, etc.\n", + "\n", + "It can even be a script of your own, which expects input on stdin." + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "To use it, simply pass a path or shell command to the program you want to run on the `%%script` line,\n", + "and the rest of the cell will be run by that script, and stdout/err from the subprocess are captured and displayed." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%script python\n", + "import sys\n", + "print 'hello from Python %s' % sys.version" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "hello from Python 2.7.3 (default, Apr 20 2012, 22:39:59) \n", + "[GCC 4.6.3]\n" + ] + } + ], + "prompt_number": 46 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%script python3\n", + "import sys\n", + "print('hello from Python: %s' % sys.version)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "hello from Python: 3.2.3 (default, May 3 2012, 15:51:42) \n", + "[GCC 4.6.3]\n" + ] + } + ], + "prompt_number": 47 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "IPython also creates aliases for a few common interpreters, such as bash, ruby, perl, etc.\n", + "\n", + "These are all equivalent to `%%script `" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%ruby\n", + "puts \"Hello from Ruby #{RUBY_VERSION}\"" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "Hello from Ruby 1.8.7\n" + ] + } + ], + "prompt_number": 48 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%bash\n", + "echo \"hello from $BASH\"" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "hello from /bin/bash\n" + ] + } + ], + "prompt_number": 49 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Exercise: write your own script that numbers input lines" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Write a file, called `lnum.py`, such that the following cell works as shown (hint: don't forget about the executable bit!): " + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%script lnum.py\n", + "my first line\n", + "my second\n", + "more" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "1 : my first line\n", + "2 : my second\n", + "3 : more \n", + "---- END ---\n" + ] + } + ], + "prompt_number": 97 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Capturing output" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "You can also capture stdout/err from these subprocesses into Python variables, instead of letting them go directly to stdout/err" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%bash\n", + "echo \"hi, stdout\"\n", + "echo \"hello, stderr\" >&2\n" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "hi, stdout\n" + ] + }, + { + "output_type": "stream", + "stream": "stderr", + "text": [ + "hello, stderr\n" + ] + } + ], + "prompt_number": 98 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%bash --out output --err error\n", + "echo \"hi, stdout\"\n", + "echo \"hello, stderr\" >&2" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 99 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "print error\n", + "print output" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "hello, stderr\n", + "\n", + "hi, stdout\n", + "\n" + ] + } + ], + "prompt_number": 100 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Background Scripts" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "These scripts can be run in the background, by adding the `--bg` flag.\n", + "\n", + "When you do this, output is discarded unless you use the `--out/err`\n", + "flags to store output as above." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%ruby --bg --out ruby_lines\n", + "for n in 1...10\n", + " sleep 1\n", + " puts \"line #{n}\"\n", + " STDOUT.flush\n", + "end" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "Starting job # 0 in a separate thread.\n" + ] + } + ], + "prompt_number": 22 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "When you do store output of a background thread, these are the stdout/err *pipes*,\n", + "rather than the text of the output." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "ruby_lines" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 23, + "text": [ + "', mode 'rb' at 0x2ed8ed0>" + ] + } + ], + "prompt_number": 23 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "print ruby_lines.read()" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "line 1\n", + "line 2\n", + "line 3\n", + "line 4\n", + "line 5\n", + "line 6\n", + "line 7\n", + "line 8\n", + "line 9\n", + "\n" + ] + } + ], + "prompt_number": 24 + }, + { + "cell_type": "heading", + "level": 1, + "metadata": {}, + "source": [ + "Cython Magic Functions Extension" + ] + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Loading the extension" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "IPtyhon has a `cythonmagic` extension that contains a number of magic functions for working with Cython code. This extension can be loaded using the `%load_ext` magic as follows:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%load_ext cythonmagic" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 1 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The `%%cython_pyximport` magic allows you to enter arbitrary Cython code into a cell. That Cython code is written as a `.pyx` file in the current working directory and then imported using `pyximport`. You have the specify the name of the module that the Code will appear in. All symbols from the module are imported automatically by the magic function." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%cython_pyximport foo\n", + "def f(x):\n", + " return 4.0*x" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 4 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "f(10)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 5, + "text": [ + "40.0" + ] + } + ], + "prompt_number": 5 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "The %cython magic" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Probably the most important magic is the `%cython` magic. This is similar to the `%%cython_pyximport` magic, but doesn't require you to specify a module name. Instead, the `%%cython` magic uses manages everything using temporary files in the `~/.cython/magic` directory. All of the symbols in the Cython module are imported automatically by the magic.\n", + "\n", + "Here is a simple example of a Black-Scholes options pricing algorithm written in Cython:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%cython\n", + "cimport cython\n", + "from libc.math cimport exp, sqrt, pow, log, erf\n", + "\n", + "@cython.cdivision(True)\n", + "cdef double std_norm_cdf(double x) nogil:\n", + " return 0.5*(1+erf(x/sqrt(2.0)))\n", + "\n", + "@cython.cdivision(True)\n", + "def black_scholes(double s, double k, double t, double v,\n", + " double rf, double div, double cp):\n", + " \"\"\"Price an option using the Black-Scholes model.\n", + " \n", + " s : initial stock price\n", + " k : strike price\n", + " t : expiration time\n", + " v : volatility\n", + " rf : risk-free rate\n", + " div : dividend\n", + " cp : +1/-1 for call/put\n", + " \"\"\"\n", + " cdef double d1, d2, optprice\n", + " with nogil:\n", + " d1 = (log(s/k)+(rf-div+0.5*pow(v,2))*t)/(v*sqrt(t))\n", + " d2 = d1 - v*sqrt(t)\n", + " optprice = cp*s*exp(-div*t)*std_norm_cdf(cp*d1) - \\\n", + " cp*k*exp(-rf*t)*std_norm_cdf(cp*d2)\n", + " return optprice" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 6 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "black_scholes(100.0, 100.0, 1.0, 0.3, 0.03, 0.0, -1)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 7, + "text": [ + "10.327861752731728" + ] + } + ], + "prompt_number": 7 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%timeit black_scholes(100.0, 100.0, 1.0, 0.3, 0.03, 0.0, -1)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "1000000 loops, best of 3: 821 ns per loop\n" + ] + } + ], + "prompt_number": 8 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Cython allows you to specify additional libraries to be linked with your extension, you can do so with the `-l` flag (also spelled `--lib`). Note that this flag can be passed more than once to specify multiple libraries, such as `-lm -llib2 --lib lib3`. Here's a simple example of how to access the system math library:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%cython -lm\n", + "from libc.math cimport sin\n", + "print 'sin(1)=', sin(1)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "sin(1)= 0.841470984808\n" + ] + } + ], + "prompt_number": 9 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "You can similarly use the `-I/--include` flag to add include directories to the search path, and `-c/--compile-args` to add extra flags that are passed to Cython via the `extra_compile_args` of the distutils `Extension` class. Please see [the Cython docs on C library usage](http://docs.cython.org/src/tutorial/clibraries.html) for more details on the use of these flags." + ] + }, + { + "cell_type": "heading", + "level": 1, + "metadata": {}, + "source": [ + "Rmagic Functions Extension" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "IPython has an `rmagic` extension that contains a some magic functions for working with R via rpy2. This extension can be loaded using the `%load_ext` magic as follows:" + ] + }, + { + "cell_type": "code", + "collapsed": true, + "input": [ + "%load_ext rmagic " + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 101 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "A typical use case one imagines is having some numpy arrays, wanting to compute some statistics of interest on these\n", + " arrays and return the result back to python. Let's suppose we just want to fit a simple linear model to a scatterplot." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "import numpy as np\n", + "import pylab\n", + "X = np.array([0,1,2,3,4])\n", + "Y = np.array([3,5,4,6,7])\n", + "pylab.scatter(X, Y)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 102, + "text": [ + "" + ] + }, + { + "output_type": "display_data", + "png": "iVBORw0KGgoAAAANSUhEUgAAAWgAAAD3CAYAAAAwos73AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nAAz1vw0tF27Rt+wZAAAAAElFTkSuQmCC\n" + } + ], + "prompt_number": 102 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "We can accomplish this by first pushing variables to R, fitting a model and returning the results. The line magic %Rpush copies its arguments to variables of the same name in rpy2. The %R line magic evaluates the string in rpy2 and returns the results. In this case, the coefficients of a linear model." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%Rpush X Y\n", + "%R lm(Y~X)$coef" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 103, + "text": [ + "array([ 3.2, 0.9])" + ] + } + ], + "prompt_number": 103 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "It is also possible to return more than one value with %R." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%R resid(lm(Y~X)); coef(lm(X~Y))" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 104, + "text": [ + "array([-2.5, 0.9])" + ] + } + ], + "prompt_number": 104 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "One can also easily capture the results of %R into python objects. Like R, the return value of this multiline expression (multiline in the sense that it is separated by ';') is the final value, which is \n", + "the *coef(lm(X~Y))*. To pull other variables from R, there is one more magic." + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "There are two more line magics, %Rpull and %Rget. Both are useful after some R code has been executed and there are variables\n", + "in the rpy2 namespace that one would like to retrieve. The main difference is that one\n", + " returns the value (%Rget), while the other pulls it to self.shell.user_ns (%Rpull). Imagine we've stored the results\n", + "of some calculation in the variable \"a\" in rpy2's namespace. By using the %R magic, we can obtain these results and\n", + "store them in b. We can also pull them directly to user_ns with %Rpull. They are both views on the same data." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "b = %R a=resid(lm(Y~X))\n", + "%Rpull a\n", + "print a\n", + "assert id(b.data) == id(a.data)\n", + "%R -o a" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "[-0.2 0.9 -1. 0.1 0.2]\n" + ] + } + ], + "prompt_number": 6 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Plotting and capturing output" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "R's console (i.e. its stdout() connection) is captured by ipython, as are any plots which are published as PNG files like the notebook with arguments --pylab inline. As a call to %R may produce a return value (see above) we must ask what happens to a magic like the one below. The R code specifies that something is published to the notebook. If anything is published to the notebook, that call to %R returns None." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "v1 = %R plot(X,Y); print(summary(lm(Y~X))); vv=mean(X)*mean(Y)\n", + "print 'v1 is:', v1\n", + "v2 = %R mean(X)*mean(Y)\n", + "print 'v2 is:', v2" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "display_data", + "text": [ + "\n", + "Call:\n", + "lm(formula = Y ~ X)\n", + "\n", + "Residuals:\n", + " 1 2 3 4 5 \n", + "-0.2 0.9 -1.0 0.1 0.2 \n", + "\n", + "Coefficients:\n", + " Estimate Std. Error t value Pr(>|t|) \n", + "(Intercept) 3.2000 0.6164 5.191 0.0139 *\n", + "X 0.9000 0.2517 3.576 0.0374 *\n", + "---\n", + "Signif. codes: 0 \u2018***\u2019 0.001 \u2018**\u2019 0.01 \u2018*\u2019 0.05 \u2018.\u2019 0.1 \u2018 \u2019 1 \n", + "\n", + "Residual standard error: 0.7958 on 3 degrees of freedom\n", + "Multiple R-squared: 0.81,\tAdjusted R-squared: 0.7467 \n", + "F-statistic: 12.79 on 1 and 3 DF, p-value: 0.03739 \n", + "\n" + ] + }, + { + "output_type": "display_data", + "png": "iVBORw0KGgoAAAANSUhEUgAAAeAAAAHgCAMAAABKCk6nAAACo1BMVEUAAAABAQECAgIDAwMEBAQF\nBQUGBgYHBwcICAgJCQkKCgoLCwsMDAwNDQ0ODg4PDw8QEBARERESEhITExMUFBQWFhYXFxcZGRka\nGhobGxsdHR0eHh4fHx8hISEiIiIjIyMkJCQlJSUmJiYnJycoKCgpKSkqKiorKystLS0uLi4vLy8x\nMTEyMjIzMzM2NjY3Nzc4ODg5OTk6Ojo7Ozs8PDw9PT0+Pj4/Pz9AQEBBQUFDQ0NERERFRUVGRkZH\nR0dISEhJSUlKSkpLS0tMTExNTU1OTk5PT09QUFBRUVFSUlJUVFRVVVVWVlZXV1dYWFhZWVlaWlpb\nW1tcXFxeXl5fX19gYGBhYWFiYmJjY2NkZGRlZWVmZmZnZ2doaGhpaWlqampra2tsbGxubm5vb29w\ncHBxcXFycnJ0dHR1dXV2dnZ3d3d4eHh6enp7e3t8fHx9fX1+fn6AgICBgYGDg4OFhYWGhoaHh4eI\niIiJiYmKioqLi4uNjY2Ojo6Pj4+QkJCRkZGUlJSVlZWXl5eYmJiZmZmampqbm5ucnJyenp6fn5+g\noKCioqKjo6OkpKSlpaWoqKipqamqqqqrq6uurq6vr6+wsLCxsbGysrKzs7O0tLS1tbW2tra3t7e4\nuLi6urq7u7u8vLy9vb2/v7/AwMDBwcHCwsLDw8PExMTFxcXGxsbHx8fJycnKysrLy8vMzMzNzc3P\nz8/Q0NDR0dHS0tLT09PU1NTV1dXW1tbX19fY2NjZ2dna2trb29vc3Nzd3d3e3t7f39/g4ODh4eHi\n4uLj4+Pk5OTl5eXm5ubn5+fo6Ojp6enq6urr6+vs7Ozt7e3u7u7v7+/w8PDx8fHy8vLz8/P09PT1\n9fX29vb39/f4+Pj5+fn6+vr7+/v8/Pz9/f3+/v7///9dYsGyAAALXElEQVR4nO3c+5uUdRnH8TtI\nRZTAU0lQSpoHEhUE3TQVMkpkMUEBxVILTxlZZqFoJOrioRPYQTNTCBURoUwT1BRXWU/sbgKisMgy\n3z+l2f1h2Z1hcWaf556b/Vzv1w+jPDN8n4+8L2d3YS8sQZpFD4Avix4AXxY9AL4segB8WfQA+LLo\nAfBl0QPgy6IHwJdFD4Avix4AXxY9AL4segB8WfQA+LLoAfBl0QPgy6IHwJdFD4Avix4AXxY9AL4s\negB8WfQA+LLoAfBl0QPgy6IHwJdFD4Avix4AXxY9AL4segB8WfQA+LLoAfBl0QPgy6IHwJdFD4Av\nix4AXxY9AL4segB8WfQA+LLoAfBl0QPgy6IHwJdFD4Avix4AXxY9AL4segB8WfQA+LLoAfBl0QPg\ny6IHwJdFD4Avix4AXxY9AL4segB8WfQA+LLoAfBl0QPgy6IHwJdFD4Av6/tPbV3cgHgPtHsFXnpJ\n9H8bis543S3w3X3/ucjN5QTWRmBxBBZHYHEEFkdgcQQWlznwyu29PEHgGNvf7PHDzIHthKf2/gSB\nI7R/f8KMMU90u5A98NPT61/c2xMEjrBwfkpbTvvfngvZAzem1ePOWrxxz5Xnbuv07av7uBEZTPqw\n+PDLx/ZcyCNwKjw5d+TRXVealnWacmHfJiKLKc3Fh5+u2HMhl8BFhedLn7h2WjXDkI+HrtiZXhnb\n7RPfzIHv2NLLEwQOcd+YCRe81u3Hfl8HE3i/QGBxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdgcQQW\nR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdg\ncQQWR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEE\nFkdgcQQWR2BxBBZHYHEEFkdgcQQWR2BxBBZHYHEEFkdgcQQWR2Bx+QRu3lx+jcC927344lnP1eZW\nmQO/UvfCxtMHHlDXVPoEgXt35a3vrZv4WE1ulTnwade1TblmR9u13+y60v5Bp6vqs26T1Tqp+LD1\nGzW5V+bAh76fjv1vSi1Duq48OrXTqHOybpP17x90PI6vyb0yBz7/zsKce1L6/SmlT/AW3avtp36S\n0osX1eRemQO/c8rxkwfUnfX5ss8ZCNy7P5x9/4JT36zJrbJ/Fl1Y8+CCRX9tK7tO4H1o/O2ft9Xm\nTnwdLI7A4ggsjsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggsjsDi\nCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggs\njsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A4ggsjsDiCCyOwOIILI7A\n4ggsjsDiCCyOwOIILK6SwDPe+7RTmjeXX6tV4J3Prt1dmzv1S5UEnvy5u3b1+orz3k9vjxtwwNnv\nlj5Ro8DPj/vhVePfqMmt+qWK3qKXnzT6mV5f0Zimzfho5/VTSp+oUeAJ76S0/oKa3KpfquxjcHvD\n4ZOmT5++11c0pi+/klLL0K4rK67sdNL5uY3chw86207gTbo3lQVu+d6QG+fPn7/XV6za9a3HU3ry\nK11XPtzQadZFuY3ch511HY/janGr/qmSwLvuPuw7b/X2ijO/eNCw0empYQ2lT9ToLfrqewvtP7+1\nJrfqlyoJfPKIR/b1mp2vPZvWrCy7XKPAO249fexd7TW5Vb9USeAbP+rLyXwdvF/gNzrEEVgcgcUR\nWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgc\ngcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHF\nEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFY\nHIHF5RR4dVvZpf4feO3UM+dsjB6RVU6Bj2gqu9TvA/9n3Gvp6VO3Rs/IKHPgQwZ2sAEDu65s29Bp\n1kVZtwW74Zniw8Kl0TMyyhx4/dipG1paDnuhpevKE1d2OuncrNuCzer4pVmyKHpGRtnfotsXHvc3\nybfo+xYUH+qfj56RUR4fg1+vmzFEMHD7ZfW3nLsgekVWuXyStbthWmvZxX4fOKWXlvf7T6L5Olgd\ngcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHF\nEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFY\nHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByBxRFYHIHFEVgcgcURWByB\nxRFYHIHFEVhcPoHb2suv9Qz8ryX/rHQS8pQ58LqJlzXWHThoWkvpE90DF+bMvGfm5YWq1yGzzIHH\nzZ535I2tGy+9uPSJ7oEfvqn4MO9P1Y5DdpkDD2rebB+n1Dys68rD53Qaed6eF938ZPFh1U193IgM\nMgc+an1hSfEfq08sfWLp3Xv+fdFvig+/+3WV25CDzIFvHrEmpbfmHvVg6RPdA7eO/ceOFWObq16H\nzDIHLix7I6VXb19b9kT3wKlp7vlzm6qchjz4fR3cIzCiEFgcgcURWByBxRFYHIHFEVgcgcX5BX58\n1JjuBrs5aJDb0Qe4nXzgwW5HD+3x637sJq/AJepyO6nUoofcjvYb/ePVXidvqq/m1ZbbfQncA4Er\nR+AeCFwFAleOwD0QuHIE7iEq8Hmf/pI+utfvm/n8Rv+k/DskctJ6STWvttzuuyO3k0p9spdvys6J\n3+g2v+8hrmq0OY3AfsKiB8CXRQ+AL4seAF8WPQC+LHoAfFn0APiy6AHwZTmds/Zrw2Zuz+msUhNf\ndjp42ejBZ7zkcXDhZ184ePw6j5M7vHxIFS+2fO65a+R9b5/9i3zOKrH8CnMK/O6hD225+QSPk5eP\nWN88e6LHyUXtYwdW8WrL56bLj09pxah8zipxxzWDnQIvOT2lnZ/5wOHkN9YUtsy7zOHgDgunBgS+\nf2pKrQc6/fbrcKfAH25K6akv+YxeYkc2uhycXj9uQ0Dg22an9IltzeewUl6Bix8r/zL8EaejP77B\n548id3/90ZaAwA31xf+DP7s7n8NKuQVuvXCMzx/qvfpWxxtam8fRDdNTROBlJ6a08th8zirjFbjt\nlHlOfxB5+9yUNg5yOXzakCMOsyMq/24Cy+e2u47+47bJt+RzVhmvwEtGNxZ5ZFh71HMtl1b1jRcV\na21qemFAU+VvDpbTfdeOPnymy1tS8gv8I+tQ9vd/5eGBE4bWuxzcIeItGvsrix4AXxY9AL4segB8\nWfQA+LLoAfBl0QPgy6IHwJdFD4Avix4AXxY9AL4segB8WfQA+LLoAfBl0QPgy6IHwJdFD4Avix4A\nXxY9AL4segB8WfSAOKsGrU9p0+EPR+/wZdEDAl0/fnf67qXRK5xZ9IBAH4+657Hhm6NXOLPoAZFW\nDhvx9+gN3ix6QKTCycf4/SV6+wmLHhCp4aujfxW9wZtFDwj05tBVaw59NXqFM4seEKdwztUpXXeG\n+Ju0RQ+Ic+/wrSltG3ln9A5fFj0Avix6AHxZ9AD4sugB8GXRA+DLogfAl0UPgC+LHgBfFj0Avix6\nAHxZ9AD4sugB8GXRA+DLogfAl0UPgC+LHgBfFj0Avix6AHxZ9AD4+j9nBM9GD8D5KgAAAABJRU5E\nrkJggg==\n" + }, + { + "output_type": "stream", + "stream": "stdout", + "text": [ + "v1 is: [ 10.]\n", + "v2 is: [ 10.]\n" + ] + } + ], + "prompt_number": 105 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Cell level magic" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Often, we will want to do more than a simple linear regression model. There may be several lines of R code that we want to \n", + "use before returning to python. This is the cell-level magic.\n", + "\n", + "\n", + "For the cell level magic, inputs can be passed via the -i or --inputs argument in the line. These variables are copied \n", + "from the shell namespace to R's namespace using rpy2.robjects.r.assign. It would be nice not to have to copy these into R: rnumpy ( http://bitbucket.org/njs/rnumpy/wiki/API ) has done some work to limit or at least make transparent the number of copies of an array. This seems like a natural thing to try to build on. Arrays can be output from R via the -o or --outputs argument in the line. All other arguments are sent to R's png function, which is the graphics device used to create the plots.\n", + "\n", + "We can redo the above calculations in one ipython cell. We might also want to add some output such as a summary\n", + " from R or perhaps the standard plotting diagnostics of the lm." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%R -i X,Y -o XYcoef\n", + "XYlm = lm(Y~X)\n", + "XYcoef = coef(XYlm)\n", + "print(summary(XYlm))\n", + "par(mfrow=c(2,2))\n", + "plot(XYlm)" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "display_data", + "text": [ + "\n", + "Call:\n", + "lm(formula = Y ~ X)\n", + "\n", + "Residuals:\n", + " 1 2 3 4 5 \n", + "-0.2 0.9 -1.0 0.1 0.2 \n", + "\n", + "Coefficients:\n", + " Estimate Std. Error t value Pr(>|t|) \n", + "(Intercept) 3.2000 0.6164 5.191 0.0139 *\n", + "X 0.9000 0.2517 3.576 0.0374 *\n", + "---\n", + "Signif. codes: 0 \u2018***\u2019 0.001 \u2018**\u2019 0.01 \u2018*\u2019 0.05 \u2018.\u2019 0.1 \u2018 \u2019 1 \n", + "\n", + "Residual standard error: 0.7958 on 3 degrees of freedom\n", + "Multiple R-squared: 0.81,\tAdjusted R-squared: 0.7467 \n", + "F-statistic: 12.79 on 1 and 3 DF, p-value: 0.03739 \n", + "\n" + ] + }, + { + "output_type": "display_data", + "png": "iVBORw0KGgoAAAANSUhEUgAAAeAAAAHgCAYAAAB91L6VAAAD8GlDQ1BJQ0MgUHJvZmlsZQAAKJGN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\n" + } + ], + "prompt_number": 16 + }, + { + "cell_type": "heading", + "level": 1, + "metadata": {}, + "source": [ + "octavemagic: Octave inside IPython" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The `octavemagic` extension provides the ability to interact with Octave. It depends on the `oct2py` and `h5py` packages,\n", + "which may be installed using `easy_install`. It has been closely modeled after the R extension, so many of its names and usage patterns are the same.\n", + "\n", + "To enable the extension, load it as follows:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%load_ext octavemagic" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 109 + }, + { + "cell_type": "heading", + "level": 2, + "metadata": {}, + "source": [ + "Overview" + ] + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "Loading the extension enables three magic functions: `%octave`, `%octave_push`, and `%octave_pull`.\n", + "\n", + "The first is for executing one or more lines of Octave, while the latter allow moving variables between the Octave and Python workspace.\n", + "Here you see an example of how to execute a single line of Octave, and how to transfer the generated value back to Python:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "x = %octave [1 2; 3 4];\n", + "x" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 110, + "text": [ + "array([[ 1., 2.],\n", + " [ 3., 4.]])" + ] + } + ], + "prompt_number": 110 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "a = [1, 2, 3]\n", + "\n", + "%octave_push a\n", + "%octave a = a * 2;\n", + "%octave_pull a\n", + "a" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 111, + "text": [ + "array([[2, 4, 6]])" + ] + } + ], + "prompt_number": 111 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "When using the cell magic, `%%octave` (note the double `%`), multiple lines of Octave 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": [ + "%%octave -i x -o y\n", + "y = x + 3;" + ], + "language": "python", + "metadata": {}, + "outputs": [], + "prompt_number": 116 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "y" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "pyout", + "prompt_number": 117, + "text": [ + "array([[ 4., 5.],\n", + " [ 6., 7.]])" + ] + } + ], + "prompt_number": 117 + }, + { + "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` and `svg` are supported)." + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%octave -f svg\n", + "\n", + "p = [12 -2.5 -8 -0.1 8];\n", + "x = 0:0.01:1;\n", + "\n", + "polyout(p, 'x')\n", + "plot(x, polyval(p, x));" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "display_data", + "text": [ + "12*x^4 - 2.5*x^3 - 8*x^2 - 0.1*x^1 + 8" + ] + }, + { + "output_type": "display_data", + "svg": [ + "\n", + "\n", + "Produced by GNUPLOT 4.4 patchlevel 3 \n", + "\n", + "\n", + "\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\n", + "\n", + "\n", + "\n", + "\n", + "\n", + "\n", + "\t\n", + "\t\n", + "\t\t6\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t6.5\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t7\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t7.5\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t8\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t8.5\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t9\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t9.5\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t0\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t0.2\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t0.4\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t0.6\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t0.8\n", + "\t\t\n", + "\t\n", + "\t\n", + "\t\n", + "\t\t1\n", + "\t\t\n", + "\t\n", + "\t\n", + "\n", + "\t\n", + "\n", + "\t\n", + "\n", + "\t\n", + "\n", + "\n", + "" + ] + } + ], + "prompt_number": 118 + }, + { + "cell_type": "markdown", + "metadata": {}, + "source": [ + "The plot size is adjusted using the `-s` flag:" + ] + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%octave -s 500,500\n", + "\n", + "# butterworth filter, order 2, cutoff pi/2 radians\n", + "b = [0.292893218813452 0.585786437626905 0.292893218813452];\n", + "a = [1 0 0.171572875253810];\n", + "freqz(b, a, 32);" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "display_data", + "png": "iVBORw0KGgoAAAANSUhEUgAAAfQAAAH0CAIAAABEtEjdAAAABmJLR0QA/wD/AP+gvaeTAAAgAElE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\nY2RHRMr/A5YdmP24XbLsAAAAAElFTkSuQmCC\n" + } + ], + "prompt_number": 119 + }, + { + "cell_type": "code", + "collapsed": false, + "input": [ + "%%octave -s 600,200 -f png\n", + "\n", + "subplot(121);\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);\n", + "\n", + "subplot(122);\n", + "sombrero()" + ], + "language": "python", + "metadata": {}, + "outputs": [ + { + "output_type": "display_data", + "png": "iVBORw0KGgoAAAANSUhEUgAAAlgAAADICAIAAAC7/QjhAAAABmJLR0QA/wD/AP+gvaeTAAAgAElE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\nCACQGokQACA1EiEAQGokQgCA1P4CasZOMJR81Q8AAAAASUVORK5CYII=\n" + } + ], + "prompt_number": 120 + } + ], + "metadata": {} + } + ] +} \ No newline at end of file