Skip to content

Instantly share code, notes, and snippets.

@mgaitan
Last active December 28, 2015 02:49
Show Gist options
  • Select an option

  • Save mgaitan/7430677 to your computer and use it in GitHub Desktop.

Select an option

Save mgaitan/7430677 to your computer and use it in GitHub Desktop.
plot twice
{
"metadata": {
"name": ""
},
"nbformat": 3,
"nbformat_minor": 0,
"worksheets": [
{
"cells": [
{
"cell_type": "code",
"collapsed": false,
"input": [
"import numpy as np\n",
"from matplotlib import pyplot as plt\n",
"\n",
"from matplotlib import interactive\n",
"interactive(False)\n",
"\n",
"def plot_factory():\n",
" fig, ax = plt.subplots()\n",
" x = np.linspace(0, 5, 500)\n",
" _ = ax.plot(x, np.sin(x))\n",
" return fig\n",
"\n"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 40
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"plot_factory()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"metadata": {},
"output_type": "pyout",
"png": "iVBORw0KGgoAAAANSUhEUgAAAXoAAAEACAYAAAC9Gb03AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\ngg==\n",
"prompt_number": 41,
"text": [
"<matplotlib.figure.Figure at 0x4924510>"
]
},
{
"metadata": {},
"output_type": "display_data",
"png": "iVBORw0KGgoAAAANSUhEUgAAAXoAAAEACAYAAAC9Gb03AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\ngg==\n",
"text": [
"<matplotlib.figure.Figure at 0x4924510>"
]
}
],
"prompt_number": 41
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"%matplotlib inline"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 4
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"f = plot_factory()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"metadata": {},
"output_type": "display_data",
"png": "iVBORw0KGgoAAAANSUhEUgAAAXoAAAEACAYAAAC9Gb03AAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\ngg==\n",
"text": [
"<matplotlib.figure.Figure at 0x4aaf690>"
]
}
],
"prompt_number": 42
}
],
"metadata": {}
}
]
}
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment