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PANDAS: Python has R envy
{
"metadata": {
"name": "Python has R envy"
},
"nbformat": 3,
"nbformat_minor": 0,
"worksheets": [
{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# http://goo.gl/c84WQ\n",
"\n",
"Eugene Van den Bulke \n",
"http://twitter.com/3kwa \n",
"eugene.vandenbulke@gmail.com"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Python is BIG in Science:\n",
"+ CERN [The Holy Grail of programming](http://cds.cern.ch/record/974627)\n",
"+ JPL [Lesson from middle age](http://www.youtube.com/watch?v=e3lTby5RI54)\n",
"+ ..."
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import datetime\n",
"from IPython.display import YouTubeVideo\n",
"\n",
"YouTubeVideo(\"e3lTby5RI54\", start=int(datetime.timedelta(minutes=14, seconds=53).total_seconds()))"
],
"language": "python",
"metadata": {},
"outputs": [
{
"html": [
"\n",
" <iframe\n",
" width=\"400\"\n",
" height=300\"\n",
" src=\"http://www.youtube.com/embed/e3lTby5RI54?start=893\"\n",
" frameborder=\"0\"\n",
" allowfullscreen\n",
" ></iframe>\n",
" "
],
"output_type": "pyout",
"prompt_number": 1,
"text": [
"<IPython.lib.display.YouTubeVideo at 0x1046a9ad0>"
]
}
],
"prompt_number": 1
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"[John Hunter Memorial Fund](http://numfocus.org/johnhunter/)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Numpy a powerful N-dimensional array object\n",
"\n",
"## Introduction"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"N = 100000\n",
"\n",
"def c_like_python():\n",
" a = range(N)\n",
" b = range(N)\n",
" c = []\n",
" for i in range(len(a)):\n",
" c.append(a[i] + b[i])\n",
" return c\n",
"\n",
"%timeit -n 10 c_like_python()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 23.6 ms per loop\n"
]
}
],
"prompt_number": 2
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import itertools\n",
"\n",
"def hettingeresque():\n",
" return [a + b for a, b in itertools.izip(*itertools.tee(xrange(N), 2))]\n",
"\n",
"%timeit -n 10 hettingeresque()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 10.7 ms per loop\n"
]
}
],
"prompt_number": 3
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import numpy\n",
"\n",
"def math_head():\n",
" return numpy.arange(N) + numpy.arange(N)\n",
"\n",
"%timeit -n 10 math_head()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 193 \u00b5s per loop\n"
]
}
],
"prompt_number": 4
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Fibonacci (digression)\n",
"\n",
"$$F_0 = 0$$\n",
"$$F_1 = 1$$\n",
"$$F_{n+2} = F_{n+1} + F_{n}$$\n",
"\n",
"### Naive implementation"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"def recursive(n):\n",
" if n == 0:\n",
" return 0\n",
" elif n == 1:\n",
" return 1\n",
" else:\n",
" return recursive(n-1) + recursive(n-2)\n",
" \n",
"%timeit -n 10 recursive(20)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 4.45 ms per loop\n"
]
}
],
"prompt_number": 5
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Linear algebra ... too the rescue?\n",
"\n",
"[33 miniatures: mathematical and algorithmic applications of linear algebra](http://kam.mff.cuni.cz/~matousek/la-ams.html)\n",
"\n",
"$$\n",
"\\left(\\begin{array}{c}F_{n+1}\\\\\\\\F_n\\end{array}\\right) = \n",
"\\begin{bmatrix}\n",
"1 & 1 \\\\\\\\\n",
"1 & 0 \\end{bmatrix}^n\n",
"\\left(\\begin{array}{c}1\\\\\\\\0\\end{array}\\right)$$\n"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"def vectorized(n):\n",
" M = numpy.array([1, 1, 1, 0]).reshape(2, 2)\n",
" result = numpy.linalg.matrix_power(M, n).dot([1, 0])\n",
" return result[1]\n",
"\n",
"%timeit -n 10 vectorized(20)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 71.9 \u00b5s per loop\n"
]
}
],
"prompt_number": 6
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Neither\n",
"\n",
"There is a reason [functools.lru_cache](http://docs.python.org/3.4/library/functools.html#functools.lru_cache) made it into the standard library with Python 3.2."
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"from functools import wraps\n",
"\n",
"def cache(f):\n",
" cache = {}\n",
" @wraps(f)\n",
" def wrapper(n):\n",
" if n not in cache:\n",
" cache[n] = f(n)\n",
" return cache[n]\n",
" return wrapper\n",
"\n",
"@cache\n",
"def recursive(n):\n",
" if n == 0:\n",
" return 0\n",
" elif n == 1:\n",
" return 1\n",
" else:\n",
" return recursive(n-1) + recursive(n-2)\n",
"\n",
"%timeit -n 10 recursive(20)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 286 ns per loop\n"
]
}
],
"prompt_number": 7
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Types %$^&@ :("
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"recursive(100)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 8,
"text": [
"354224848179261915075L"
]
}
],
"prompt_number": 8
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"vectorized(100)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 9,
"text": [
"3736710778780434371"
]
}
],
"prompt_number": 9
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"M = numpy.array([1, 1, 1, 0]).reshape(2, 2)\n",
"numpy.linalg.matrix_power(M, 100)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 10,
"text": [
"array([[ 1298777728820984005, 3736710778780434371],\n",
" [ 3736710778780434371, -2437933049959450366]])"
]
}
],
"prompt_number": 10
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"M = numpy.array([1, 1, 1, 0], dtype='float64').reshape(2, 2)\n",
"numpy.linalg.matrix_power(M, 100)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 11,
"text": [
"array([[ 5.73147844e+20, 3.54224848e+20],\n",
" [ 3.54224848e+20, 2.18922996e+20]])"
]
}
],
"prompt_number": 11
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# numpy array rocks"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import random\n",
"\n",
"array = [random.randint(-5, 5) for _ in xrange(10)]\n",
"odd = [i for i in array if i % 2]\n",
"array, odd"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 12,
"text": [
"([-3, -3, 0, 4, -5, 5, 3, -2, 1, 2], [-3, -3, -5, 5, 3, 1])"
]
}
],
"prompt_number": 12
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"array = numpy.random.randint(-5, 5, 10)\n",
"array"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 13,
"text": [
"array([-4, 0, 2, 2, 4, -2, 1, -5, -3, -1])"
]
}
],
"prompt_number": 13
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## universal functions"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"numpy.mod(4, 2)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 14,
"text": [
"0"
]
}
],
"prompt_number": 14
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"mod = numpy.mod(array, 2)\n",
"mod"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 15,
"text": [
"array([0, 0, 0, 0, 0, 0, 1, 1, 1, 1])"
]
}
],
"prompt_number": 15
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## broadcasting"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"mask = mod != 0\n",
"mask"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 16,
"text": [
"array([False, False, False, False, False, False, True, True, True, True], dtype=bool)"
]
}
],
"prompt_number": 16
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## (boolean) indexing"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"odd = array[mask]\n",
"array, odd"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 17,
"text": [
"(array([-4, 0, 2, 2, 4, -2, 1, -5, -3, -1]), array([ 1, -5, -3, -1]))"
]
}
],
"prompt_number": 17
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Why? \n",
"\n",
"+ ~40 times faster\n",
"+ expressiveness (debatable)"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"%timeit -n 10 [i for i in (random.randint(-5, 5) for _ in xrange(N)) if i % 2]"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 197 ms per loop\n"
]
}
],
"prompt_number": 18
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"%%timeit -n 10\n",
"array = numpy.random.randint(-5, 5, N)\n",
"array[numpy.mod(array, 2) != 0]"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"10 loops, best of 3: 4.5 ms per loop\n"
]
}
],
"prompt_number": 19
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# PANDAS (Python is not so big in statistics ... YET)\n",
"\n",
"Python used for data munging and preparation not so much for analysis and modelling where tools like R dominate.\n",
"\n",
"Time series are big business, [scikit.timeseries](http://pytseries.sourceforge.net/) use to be the reference implementation but ..."
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"from IPython.display import VimeoVideo, ScribdDocument\n",
"\n",
"ScribdDocument(71048089)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"html": [
"\n",
" <iframe\n",
" width=\"400\"\n",
" height=300\"\n",
" src=\"http://www.scribd.com/embeds/71048089/content\"\n",
" frameborder=\"0\"\n",
" allowfullscreen\n",
" ></iframe>\n",
" "
],
"output_type": "pyout",
"prompt_number": 20,
"text": [
"<IPython.lib.display.ScribdDocument at 0x1046b4750>"
]
}
],
"prompt_number": 20
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"VimeoVideo(\"59324550\")"
],
"language": "python",
"metadata": {},
"outputs": [
{
"html": [
"\n",
" <iframe\n",
" width=\"400\"\n",
" height=300\"\n",
" src=\"http://player.vimeo.com/video/59324550\"\n",
" frameborder=\"0\"\n",
" allowfullscreen\n",
" ></iframe>\n",
" "
],
"output_type": "pyout",
"prompt_number": 21,
"text": [
"<IPython.lib.display.VimeoVideo at 0x1046b4d90>"
]
}
],
"prompt_number": 21
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"VimeoVideo, ScribdDocument are my tiny [contribution](https://github.com/ipython/ipython/pull/3200) to IPython\n",
"\n",
"## Series"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import pandas\n",
"\n",
"series = pandas.Series([1, 2, 3, 4, 5], index=list('abcde'), name='demo')\n",
"series"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 22,
"text": [
"a 1\n",
"b 2\n",
"c 3\n",
"d 4\n",
"e 5\n",
"Name: demo"
]
}
],
"prompt_number": 22
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Think of it as a dictionary"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"series['e']"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 23,
"text": [
"5"
]
}
],
"prompt_number": 23
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### An old friend"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"series.index, type(series.index.values)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 24,
"text": [
"(Index([a, b, c, d, e], dtype=object), numpy.ndarray)"
]
}
],
"prompt_number": 24
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"series.values, type(series.values)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 25,
"text": [
"(array([1, 2, 3, 4, 5]), numpy.ndarray)"
]
}
],
"prompt_number": 25
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Alignment"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"another = pandas.Series([6, 7, 8, 9, 10], index=list('acegi'))\n",
"another"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 26,
"text": [
"a 6\n",
"c 7\n",
"e 8\n",
"g 9\n",
"i 10"
]
}
],
"prompt_number": 26
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"series / another"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 27,
"text": [
"a 0.166667\n",
"b NaN\n",
"c 0.428571\n",
"d NaN\n",
"e 0.625000\n",
"g NaN\n",
"i NaN"
]
}
],
"prompt_number": 27
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"_.fillna(method='bfill')"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 28,
"text": [
"a 0.166667\n",
"b 0.428571\n",
"c 0.428571\n",
"d 0.625000\n",
"e 0.625000\n",
"g NaN\n",
"i NaN"
]
}
],
"prompt_number": 28
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"_.dropna()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 29,
"text": [
"a 0.166667\n",
"b 0.428571\n",
"c 0.428571\n",
"d 0.625000\n",
"e 0.625000"
]
}
],
"prompt_number": 29
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### describe"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"_.describe()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 30,
"text": [
"count 5.000000\n",
"mean 0.454762\n",
"std 0.188635\n",
"min 0.166667\n",
"25% 0.428571\n",
"50% 0.428571\n",
"75% 0.625000\n",
"max 0.625000"
]
}
],
"prompt_number": 30
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### plot"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"normal = pandas.Series( numpy.random.normal(size=N), \n",
" index=xrange(N),\n",
" name='normal')\n",
"normal"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 31,
"text": [
"0 -1.177525\n",
"1 -0.139446\n",
"2 0.040140\n",
"3 1.397148\n",
"4 0.094213\n",
"5 0.908324\n",
"6 0.180137\n",
"7 0.834102\n",
"8 0.248740\n",
"9 -0.976949\n",
"10 -0.309291\n",
"11 -0.221863\n",
"12 -0.320174\n",
"13 -0.034669\n",
"14 -1.942757\n",
"...\n",
"99985 -1.346713\n",
"99986 -0.563065\n",
"99987 -0.170557\n",
"99988 -1.006635\n",
"99989 0.640849\n",
"99990 -0.006355\n",
"99991 1.462928\n",
"99992 -0.543633\n",
"99993 1.639055\n",
"99994 1.113526\n",
"99995 0.379972\n",
"99996 0.215632\n",
"99997 1.381902\n",
"99998 -0.918391\n",
"99999 -1.341989\n",
"Name: normal, Length: 100000"
]
}
],
"prompt_number": 31
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"normal.hist(bins=100)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 32,
"text": [
"<matplotlib.axes.AxesSubplot at 0x1053e9a10>"
]
},
{
"output_type": "display_data",
"png": 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58Y9/TCAQoKioiEgkwtatW/n3f/93WlpaADh27BgA1dXVPPvss2zZsiV6QMrw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\n",
"text": [
"<matplotlib.figure.Figure at 0x1046b0fd0>"
]
}
],
"prompt_number": 32
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"normal.describe()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 33,
"text": [
"count 100000.000000\n",
"mean -0.000221\n",
"std 1.001505\n",
"min -5.529533\n",
"25% -0.679099\n",
"50% -0.000121\n",
"75% 0.676216\n",
"max 4.395072"
]
}
],
"prompt_number": 33
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### skewness & kurtosis (digression)"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"normal.skew(), normal.kurt()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 34,
"text": [
"(0.0033964687260883385, 0.0013031617003046747)"
]
}
],
"prompt_number": 34
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Dataframe\n",
"\n",
"Think of it as a dictionary of dictionaries with more constructors than we have fingers and toes"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df = pandas.DataFrame({'A': series, 'B': another})\n",
"df"
],
"language": "python",
"metadata": {},
"outputs": [
{
"html": [
"<div style=\"max-height:1000px;max-width:1500px;overflow:auto;\">\n",
"<table border=\"1\" class=\"dataframe\">\n",
" <thead>\n",
" <tr style=\"text-align: right;\">\n",
" <th></th>\n",
" <th>A</th>\n",
" <th>B</th>\n",
" </tr>\n",
" </thead>\n",
" <tbody>\n",
" <tr>\n",
" <th>a</th>\n",
" <td> 1</td>\n",
" <td> 6</td>\n",
" </tr>\n",
" <tr>\n",
" <th>b</th>\n",
" <td> 2</td>\n",
" <td>NaN</td>\n",
" </tr>\n",
" <tr>\n",
" <th>c</th>\n",
" <td> 3</td>\n",
" <td> 7</td>\n",
" </tr>\n",
" <tr>\n",
" <th>d</th>\n",
" <td> 4</td>\n",
" <td>NaN</td>\n",
" </tr>\n",
" <tr>\n",
" <th>e</th>\n",
" <td> 5</td>\n",
" <td> 8</td>\n",
" </tr>\n",
" <tr>\n",
" <th>g</th>\n",
" <td>NaN</td>\n",
" <td> 9</td>\n",
" </tr>\n",
" <tr>\n",
" <th>i</th>\n",
" <td>NaN</td>\n",
" <td> 10</td>\n",
" </tr>\n",
" </tbody>\n",
"</table>\n",
"</div>"
],
"output_type": "pyout",
"prompt_number": 35,
"text": [
" A B\n",
"a 1 6\n",
"b 2 NaN\n",
"c 3 7\n",
"d 4 NaN\n",
"e 5 8\n",
"g NaN 9\n",
"i NaN 10"
]
}
],
"prompt_number": 35
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"pandas.set_option('display.notebook_repr_html', False)\n",
"df"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 36,
"text": [
" A B\n",
"a 1 6\n",
"b 2 NaN\n",
"c 3 7\n",
"d 4 NaN\n",
"e 5 8\n",
"g NaN 9\n",
"i NaN 10"
]
}
],
"prompt_number": 36
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"A dictionary of dictionaries ... with a twist"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df['A']"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 37,
"text": [
"a 1\n",
"b 2\n",
"c 3\n",
"d 4\n",
"e 5\n",
"g NaN\n",
"i NaN\n",
"Name: A"
]
}
],
"prompt_number": 37
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df.ix['e']"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 38,
"text": [
"A 5\n",
"B 8\n",
"Name: e"
]
}
],
"prompt_number": 38
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df.plot(subplots=True, title='Split view')"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 39,
"text": [
"array([<matplotlib.axes.AxesSubplot object at 0x1054066d0>,\n",
" <matplotlib.axes.AxesSubplot object at 0x10560d390>], dtype=object)"
]
},
{
"output_type": "display_data",
"png": 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j9WVlZXd9zK5du2rMnVZfzk6j0WDlEIQQok7p9XrS0tJQVRWdTsezzz6Loij4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\nkaQuhBB25P8BOwsI8PWyTlwAAAAASUVORK5CYII=\n",
"text": [
"<matplotlib.figure.Figure at 0x10556d0d0>"
]
}
],
"prompt_number": 39
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df.fillna(method='ffill')"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 40,
"text": [
" A B\n",
"a 1 6\n",
"b 2 6\n",
"c 3 7\n",
"d 4 7\n",
"e 5 8\n",
"g 5 9\n",
"i 5 10"
]
}
],
"prompt_number": 40
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df.describe()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 41,
"text": [
" A B\n",
"count 5.000000 5.000000\n",
"mean 3.000000 8.000000\n",
"std 1.581139 1.581139\n",
"min 1.000000 6.000000\n",
"25% 2.000000 7.000000\n",
"50% 3.000000 8.000000\n",
"75% 4.000000 9.000000\n",
"max 5.000000 10.000000"
]
}
],
"prompt_number": 41
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df.cov()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 42,
"text": [
" A B\n",
"A 2.5 2.0\n",
"B 2.0 2.5"
]
}
],
"prompt_number": 42
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## Panel\n",
"\n",
"Think of it as ..."
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"panel = pandas.Panel({'source': df, 'squared': df * df, 'cube': df ** 3})\n",
"panel"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 43,
"text": [
"<class 'pandas.core.panel.Panel'>\n",
"Dimensions: 3 (items) x 7 (major_axis) x 2 (minor_axis)\n",
"Items axis: cube to squared\n",
"Major_axis axis: a to i\n",
"Minor_axis axis: A to B"
]
}
],
"prompt_number": 43
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"panel.to_frame()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 44,
"text": [
" cube source squared\n",
"major minor \n",
"a A 1 1 1\n",
" B 216 6 36\n",
"b A 8 2 4\n",
"c A 27 3 9\n",
" B 343 7 49\n",
"d A 64 4 16\n",
"e A 125 5 25\n",
" B 512 8 64\n",
"g B 729 9 81\n",
"i B 1000 10 100"
]
}
],
"prompt_number": 44
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"##IO\n",
"\n",
"Text, CSV, Excel, HDF5 (PyTables) ..."
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"help(pandas.io)"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "stream",
"stream": "stdout",
"text": [
"Help on package pandas.io in pandas:\n",
"\n",
"NAME\n",
" pandas.io\n",
"\n",
"FILE\n",
" /usr/local/lib/python2.7/site-packages/pandas/io/__init__.py\n",
"\n",
"PACKAGE CONTENTS\n",
" auth\n",
" data\n",
" date_converters\n",
" ga\n",
" parsers\n",
" pytables\n",
" sql\n",
" tests (package)\n",
" wb\n",
"\n",
"\n"
]
}
],
"prompt_number": 45
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"**`pandas.io.ga`** stands for Google Analytics - [yhat](http://blog.yhathq.com/posts/pandas-google-analytics.html)\n",
"\n",
"Every one wants a piece of Pandas [Adobe SiteCatalyst/Omniture](https://github.com/lexual/sitecat-py)!\n",
"\n",
"## grouping, joining etc.\n"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"grouped = df.groupby(lambda x: ord(x) % 2)"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 46
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"grouped.sum()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 47,
"text": [
"minor A B\n",
"0 6 NaN\n",
"1 9 40"
]
}
],
"prompt_number": 47
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Like SQL better?"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"from pandasql import sqldf\n",
"\n",
"query = lambda query: sqldf(query, globals())\n",
"\n",
"query('select A+B from df')"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 48,
"text": [
" A+B\n",
"0 7\n",
"1 NaN\n",
"2 10\n",
"3 NaN\n",
"4 13\n",
"5 NaN\n",
"6 NaN"
]
}
],
"prompt_number": 48
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### How about SQLALchemy?\n",
"\n",
"Check [CALCHIPAN](https://bitbucket.org/zzzeek/calchipan/) (Crouching Alchemist Hidden Panda)"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Statsmodels\n",
"\n",
"Pandas does simple linear regression.\n",
"\n",
"If you need more advanced statistical analysis and modelling [statsmodels](http://statsmodels.sourceforge.net/) is your next port of call!\n",
"\n",
"# Machine Learning\n",
"\n",
"[scikti-learn](http://scikit-learn.org/stable/) and [sklearn-pandas](https://github.com/paulgb/sklearn-pandas)\n",
" \n",
"R is awesome and has a lot of traction ... if you'd rather use Python to **explore & exploit** your data ... yes you can!"
]
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# Boundary testing and isolation"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import datetime\n",
"\n",
"one_hour = datetime.timedelta(hours=1)\n",
"start = datetime.datetime(2013, 1, 1)\n",
"\n",
"index = [start + i * one_hour for i in xrange(N)]\n",
"temperature = numpy.random.randint(15, 30, N)\n",
"\n",
"series = pandas.Series(temperature, index=index)\n",
"series"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 49,
"text": [
"2013-01-01 00:00:00 27\n",
"2013-01-01 01:00:00 25\n",
"2013-01-01 02:00:00 25\n",
"2013-01-01 03:00:00 26\n",
"2013-01-01 04:00:00 27\n",
"2013-01-01 05:00:00 29\n",
"2013-01-01 06:00:00 21\n",
"2013-01-01 07:00:00 20\n",
"2013-01-01 08:00:00 26\n",
"2013-01-01 09:00:00 22\n",
"2013-01-01 10:00:00 21\n",
"2013-01-01 11:00:00 21\n",
"2013-01-01 12:00:00 20\n",
"2013-01-01 13:00:00 15\n",
"2013-01-01 14:00:00 21\n",
"...\n",
"2024-05-29 01:00:00 25\n",
"2024-05-29 02:00:00 24\n",
"2024-05-29 03:00:00 28\n",
"2024-05-29 04:00:00 24\n",
"2024-05-29 05:00:00 23\n",
"2024-05-29 06:00:00 18\n",
"2024-05-29 07:00:00 26\n",
"2024-05-29 08:00:00 15\n",
"2024-05-29 09:00:00 16\n",
"2024-05-29 10:00:00 20\n",
"2024-05-29 11:00:00 29\n",
"2024-05-29 12:00:00 23\n",
"2024-05-29 13:00:00 22\n",
"2024-05-29 14:00:00 25\n",
"2024-05-29 15:00:00 16\n",
"Length: 100000"
]
}
],
"prompt_number": 49
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"series.resample('D', how='mean').head()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 50,
"text": [
"2013-01-01 22.458333\n",
"2013-01-02 21.666667\n",
"2013-01-03 21.875000\n",
"2013-01-04 21.791667\n",
"2013-01-05 21.375000\n",
"Freq: D"
]
}
],
"prompt_number": 50
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"**Altered resample default behavior:**\n",
"\n",
"The default time series resample binning behavior of daily D and higher frequencies has been changed to closed='left', label='left'. Lower nfrequencies are unaffected. The prior defaults were causing a great deal of confusion for users, especially resampling data to daily frequency (which labeled the aggregated group with the end of the interval: the next day)."
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"series.resample('D', how='mean', closed='right', label='right').head()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 51,
"text": [
"2013-01-01 27.000000\n",
"2013-01-02 22.291667\n",
"2013-01-03 21.500000\n",
"2013-01-04 22.125000\n",
"2013-01-05 21.500000\n",
"Freq: D"
]
}
],
"prompt_number": 51
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"### Isolating third party library is ignored too often despite being both USEFUL and EASY\n",
"\n",
"It helps when switching from scikit.timeseries to pandas and when upgrading pandas (under intense development)"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"def resample_daily(resamplable):\n",
" return resamplable.resample('D', how='mean')\n",
"\n",
"def test_resample_daily():\n",
" # load resamplable fixture and expected\n",
" # result = resample_daily(fixture)\n",
" # assert result = expected\n",
" pass"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 52
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"Invitation to (re)read chapter 8 of [Clean Code](http://www.amazon.com/Clean-Code-Handbook-Software-Craftsmanship/dp/0132350882)"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"from IPython.core.display import Image \n",
"Image(filename='boundaries.png') "
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"png": 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1CheyNZpuh2mK0UB0IY5Tg+lqJNacEeqZRYDItNfQr7crrzEcsysd8NE+LxHn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/6YM42NvY2qHyoKyiByVX7652I4pqwMaeydhB4OMxw1Nmsu+6eUgJO0Cy9NQcsZhmhLiYAFBEsg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Odn2zZAnfT+xYxfB6EshiNceq8ILnNjheILR2y38lEGYs7AiC4TJ6BVVh8de//nU77hvezkRP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\nbhXeYCSmwak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"prompt_number": 53,
"text": [
"<IPython.core.display.Image at 0x105675790>"
]
}
],
"prompt_number": 53
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"# We can all be Data Scientist\n",
"\n",
"It is becoming trendier than being a **software engineer** and we can do it *all* in Python ;)\n",
"\n",
"# Questions?"
]
}
],
"metadata": {}
}
]
}
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