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@Carreau
Created August 3, 2012 19:36
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Test IPynb
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{
"metadata": {
"name": "Untitled0"
},
"nbformat": 3,
"nbformat_minor": 0,
"worksheets": [
{
"cells": [
{
"cell_type": "markdown",
"metadata": {},
"source": [
"## IPython Notebook gist ! "
]
},
{
"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": 1
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"import matplotlib\n"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 2
},
{
"cell_type": "markdown",
"metadata": {},
"source": [
"with maths ! \n",
"\n",
"$\\LaTeX$ is great"
]
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"plot(range(10))"
],
"language": "python",
"metadata": {},
"outputs": [
{
"output_type": "pyout",
"prompt_number": 3,
"text": [
"[<matplotlib.lines.Line2D at 0x105cedf10>]"
]
},
{
"output_type": "display_data",
"png": 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GYDcKegxUMwAnoKCDUM0AnISC/hTVDMBpXF/QVDMAp3J1QVPNAJzMlQUdCEhbt1LNAJzN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\ngAYAh/p/Hh3oMK38fbYAAAAASUVORK5CYII=\n"
}
],
"prompt_number": 3
},
{
"cell_type": "code",
"collapsed": false,
"input": [],
"language": "python",
"metadata": {},
"outputs": []
}
],
"metadata": {}
}
]
}
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