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I am making a series of bar plots of data with two categorical variables and one numeric. What i have is the below, but what I would love to do is to facet by one of the categorical variables as with facet_wrap in ggplot. I have a somewhat working example, but I get the wrong plot type (lines and not bars) and I do subsetting of the data in a loop--that can't be the best way.

## first try--plain vanilla
import pandas as pd
import numpy as np
N = 100

## generate toy data
ind = np.random.choice(['a','b','c'], N)
cty = np.random.choice(['x','y','z'], N)
jobs = np.random.randint(low=1,high=250,size=N)

## prep data frame
df_city = pd.DataFrame({'industry':ind,'city':cty,'jobs':jobs})
df_city_grouped = df_city.groupby(['city','industry']).jobs.sum().unstack()
df_city_grouped.plot(kind='bar',stacked=True,figsize=(9, 6))

This gives something like this:

  city industry  jobs
0    z        b   180
1    z        c   121
2    x        a    33
3    z        a   121
4    z        c   236

firstplot

However, what i would like to see is something like this:

## R code
library(plyr)
df_city<-read.csv('/home/aksel/Downloads/mockcity.csv',sep='\t')

## summarize
df_city_grouped <- ddply(df_city, .(city,industry), summarise, jobstot = sum(jobs))

## plot
ggplot(df_city_grouped, aes(x=industry, y=jobstot)) +
  geom_bar(stat='identity') +
  facet_wrap(~city)

enter image description here

The closest I get with matplotlib is something like this:

cols =df_city.city.value_counts().shape[0]
fig, axes = plt.subplots(1, cols, figsize=(8, 8))

for x, city in enumerate(df_city.city.value_counts().index.values):
    data = df_city[(df_city['city'] == city)]
    data = data.groupby(['industry']).jobs.sum()
    axes[x].plot(data)

enter image description here

So two questions:

  1. Can I do bar plots (they plot lines as shown here) using the AxesSubplot object and end up with something along the lines of the facet_wrap example from ggplot example;
  2. In loops generating charts such as this attempt, I subset the data in each. I can't imagine that is the 'proper' way to do this type of faceting?
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why don't you just use bar in your loop? –  tcaswell Oct 27 '13 at 3:44
    
@tcaswell, good suggestion. What is the trick for plotting bar plots? Both arguments seem to be required as numeric. Convert the categorical variable first? Is there a more canonical way? –  ako Oct 27 '13 at 4:40
    

2 Answers 2

up vote 1 down vote accepted

Second example here: http://pandas.pydata.org/pandas-docs/dev/visualization.html#bar-plots

Anyway, you can always do that by hand, as you did yourself.

EDIT: BTW, you can always use rpy2 in python, so you can do all the same things as in R.

Also, have a look at this: http://pandas.pydata.org/pandas-docs/stable/rplot.html I am not sure, but it should be helpful for creating plots over many panels, though might require further reading.

share|improve this answer
    
I suppose that is workable, but I really like them in separate panels, as ggplot does it, particularly as that is flexible as more dimensions is added. And the example of course doesn't like the data frame variables to be non-numeric. Do have a good way to work around that? –  ako Oct 27 '13 at 19:07
    
Please, see the edited answer. –  Ilya Oct 27 '13 at 20:56
    
This looks exactly like what I am looking for out of the box--without having to subset the data in each loop. All that remains is for me to understand the 'proper' way to plot categorical variables in a plot. –  ako Oct 28 '13 at 19:57

@tcasell suggested the bar call in the loop. Here is a working, if not elegant, example.

## second try--facet by county

N = 100
industry = ['a','b','c']
city = ['x','y','z']
ind = np.random.choice(industry, N)
cty = np.random.choice(city, N)
jobs = np.random.randint(low=1,high=250,size=N)
df_city =pd.DataFrame({'industry':ind,'city':cty,'jobs':jobs})

## how many panels do we need?
cols =df_city.city.value_counts().shape[0]
fig, axes = plt.subplots(1, cols, figsize=(8, 8))

for x, city in enumerate(df_city.city.value_counts().index.values):
    data = df_city[(df_city['city'] == city)]
    data = data.groupby(['industry']).jobs.sum()
    print (data)
    print type(data.index)
    left=  [k[0] for k in enumerate(data)]
    right=  [k[1] for k in enumerate(data)]

    axes[x].bar(left,right,label="%s" % (city))
    axes[x].set_xticks(left, minor=False)
    axes[x].set_xticklabels(data.index.values)

    axes[x].legend(loc='best')
    axes[x].grid(True)
    fig.suptitle('Employment By Industry By City', fontsize=20)

enter image description here

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