I am trying to create a stacked bar graph that replicates the picture, all my data is separate from that excel spreadsheet.

enter image description here

I cant figure out how to make a dataframe for it like pictured, nor can I figure out how to make the stacked bar chart. All examples I locate work in different ways to what I'm trying to create.

My dataframe is a csv of all values narrowed down to the following with a pandas dataframe.

      Site Name    Abuse/NFF
1    WASHINGTON         -
2    WASHINGTON        NFF
3    BELFAST            -
4    CROYDON            - 

I have managed to count the data with totals and get individual counts for each site, I just cant seem to combine it in a way to graph.

Would really appreciate some strong guidance.

Completed code, many thanks for the assistance completing.

test5 = faultdf.groupby(['Site Name', 'Abuse/NFF'])['Site Name'].count().unstack('Abuse/NFF').fillna(0)

test5.plot(kind='bar', stacked=True)
  • 1
    Note to readers: If you are getting the KeyError related to index when trying the accepted answer, use the completed code here in the question. – KobeJohn Dec 21 '16 at 5:04

Are you getting errors, or just not sure where to start?

%pylab inline
import pandas as pd
import matplotlib.pyplot as plt

df2 = df.groupby(['Name', 'Abuse/NFF'])['Name'].count().unstack('Abuse/NFF').fillna(0)
df2[['abuse','nff']].plot(kind='bar', stacked=True)

stacked bar plot

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    That produces this i.imgur.com/hocPgWg.jpg which is not quite right, i need the stacked part to be the count of the abuse/nff column for each site. I'm not getting errors, i just struggling to get started. Cheers for the response. – Kuzen May 2 '14 at 15:25
  • I've updated my answer to include the ['Abuse/NFF'] part after the groupby function. Adding this means that the Abuse column will be the only value that is aggregated (counted in this example). – chucklukowski May 2 '14 at 15:43
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    Not working sadly, its basically the same graph now but without being stacked, no errors, no legend, no green basically. Its counting the totals rather than the totals of the values in the columns per store, if that makes sense. – Kuzen May 2 '14 at 15:53
  • Another try. If you want to see the blanks, change the beginning of the last line to... df2.plot( – chucklukowski May 2 '14 at 18:39
  • Cheers for another bash, but still no joy. Will put code on my question above , getting error. KeyError: "['ABUSE' 'NFF' '-'] not in index" i have made adjustments to code so they match my dataframe, but cant seem to get it to work, also i want - in results, i need to change - to mean faulty, just not got around to it. – Kuzen May 2 '14 at 19:06

That should help

df.groupby(['NFF', 'ABUSE']).size().unstack().plot(kind='bar', stacked=True)

Maybe you can use pandas crosstab function

test5 = pd.crosstab(index=faultdf['Site Name'], columns=faultdf[''Abuse/NFF''])

test5.plot(kind='bar', stacked=True)

If you want to change the size of plot the use arg figsize

df.groupby(['NFF', 'ABUSE']).size().unstack()
      .plot(kind='bar', stacked=True, figsize=(15, 5))

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