Added a template for a cheat sheet

tutorial
Tommy 2018-03-06 22:32:24 +01:00
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{
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"source": [
"# Pandas Cheat Sheet"
]
},
{
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"source": [
"# Table of contents\n",
"\n",
"\n",
"- **The setup**: anaconda, Python, pandas, Jupyter\n",
"- **Importing data**: from csv (and options), from the web, creating from scratch, convering types, rename cols\n",
"- **Summarizing data**: len(df), shape, value_counts, head, tail, max(), min(), mean, dtype, info(), describe(), memory_usage(), scatter matrix, corr, isnull, notnull, unique(), nlargest\n",
"- **Selecting and computing**: select subset of row and cols, .loc, .iloc, drop columns, assign, apply/map/applymap, multiindex\n",
"- **Filtering and sorting**: >=, AND, OR, ==, ~, str.contains, str.startswith, sort_values, sort_index, filtering on sorted/unsorted, isin()\n",
"- **Split-apply-combine and pivots**: groupby, dt.month, dt.year, groupby.mean(), agg, stack, unstack, pivot, melt, merge\n",
"- **Time series manipulations**: downsampling, upsampling, rolling, mean, simple plotting\n",
"- **Plotting**: built-in plotting, advanced plotting, matplotlib, seaborn, styles, saving\n",
"- **Modeling and machine learning**: .value, feeding data, saving data\n",
"- **Misc tips and tricks**: pandas options, vectorization, timings with %%timeit, profiling with lprun\n",
"\n",
"**principles:** small examples, no more than 5 rows. one or two data sets, no more."
]
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