Sign up ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I'd like to use a new project to learn Pandas and Matplotlib. I've run into a snag as described in the "STATUS" section below.




I want to create graphs that look similar to page 20 in this lab on longitudinal data:

  1. Each line corresponds to a single "idnum"
  2. Line color is determined by "idtype"
  3. the horizontal (x) axis is month/year
  4. the vertical (y) axis is the count of rows for that "idnum" in that month/year


I load the data using dateutil.parser

>>> data = read_csv("D:/path/file.csv",converters={0:parse})

I create a "monthyear" column set to the first day of the month

>>> data['monthyear'] = x: datetime(x.year,x.month,1))

Now I need to create the counts. crosstab produces a table where each column is a date and each cell a count:

>>> cross1 = crosstab(data.userid,data.monthyear)

But, I'm not sure how to graph the output or even if that is a useful format for future work. I'd appreciate some advice.

share|improve this question
what kind of graph do you want? Have you looked at groupby in pandas to get your data the way you want it, instead of using crosstab. You could use the plot() method on the groupby object you get. –  chrisfs May 12 '12 at 6:08
Thank you. I believe the graph is often referred to as a spaghetti plot. I eventually was able to create it by adding a "count" column set to 1.0 for every row and experimenting with the pivot_table and plot() functions. However--the plot didn't tell me as much as I expected. I shifted the work--at least temporarily--back into R to use the highly interactive "iplots" package. I think Pandas/python is still missing a similar tool. –  davideps May 27 '12 at 13:57

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Browse other questions tagged or ask your own question.