Skip to content

Instantly share code, notes, and snippets.

@fdeheeger
Created July 12, 2013 10:07
Show Gist options
  • Save fdeheeger/5983326 to your computer and use it in GitHub Desktop.
Save fdeheeger/5983326 to your computer and use it in GitHub Desktop.
ipynb save check with nvd3
Display the source blob
Display the rendered blob
Raw
Sorry, something went wrong. Reload?
Sorry, we cannot display this file.
Sorry, this file is invalid so it cannot be displayed.
Display the source blob
Display the rendered blob
Raw
{
"metadata": {
"name": "nvd3_checksave_"
},
"nbformat": 3,
"nbformat_minor": 0,
"worksheets": [
{
"cells": [
{
"cell_type": "code",
"collapsed": false,
"input": [
"import pandas as p\n",
"import matplotlib.pyplot as plt\n"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 1
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df = p.util.testing.makeDataFrame()"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 2
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"from nvd3 import pieChart, scatterChart\n",
"from IPython.display import HTML\n",
"chart2 = scatterChart(name='scatterChart', height=600, width=800)\n",
"\n",
"kwargs1 = {'shape': 'circle'}\n",
"extra_serie = {\"tooltip\": {\"y_start\": \"\", \"y_end\": \" call\"}}\n",
"\n",
"chart2.add_serie(name='scatter',\n",
" y=df.A.values,\n",
" x=df.B.values,\n",
" #extra=extra_serie,\n",
" **kwargs1)\n",
"\n",
"chart2.buildhtml()\n",
"HTML(chart2.htmlcontent)"
],
"language": "python",
"metadata": {},
"outputs": [],
"prompt_number": 4
},
{
"cell_type": "code",
"collapsed": false,
"input": [
"df.A.hist()\n",
"plt.show()"
],
"language": "python",
"metadata": {},
"outputs": [
{
"metadata": {},
"output_type": "display_data",
"png": "iVBORw0KGgoAAAANSUhEUgAAAWgAAAD9CAYAAACROe2RAAAABHNCSVQICAgIfAhkiAAAAAlwSFlz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\nioAGAE8R0ADgKQIaADxFQAOAp/4fzaJ2rTuPS+AAAAAASUVORK5CYII=\n",
"text": [
"<matplotlib.figure.Figure at 0x3bdd990>"
]
}
],
"prompt_number": 3
},
{
"cell_type": "code",
"collapsed": false,
"input": [],
"language": "python",
"metadata": {},
"outputs": []
}
],
"metadata": {}
}
]
}
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment