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
```

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)
```

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)
```

So two questions:

- 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; - 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?

`bar`

in your loop? – tcaswell Oct 27 '13 at 3:44