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I have the following data in a pandas dataframe

       date  template     score
0  20140605         0  0.138786
1  20140605         1  0.846441
2  20140605         2  0.766636
3  20140605         3  0.259632
4  20140605         4  0.497366
5  20140606         0  0.138139
6  20140606         1  0.845320
7  20140606         2  0.762876
8  20140606         3  0.261035
9  20140606         4  0.498010

For every day there will be 5 templates and each template will have a score.

I want to plot the date in the x axis and score in the y axis and a separate line graph for each template in the same figure.

Is it possible to do this using matplotlib?

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just fast-fast : try to start from the samples : matplotlib.org/examples/pylab_examples/date_demo_rrule.html –  Louis Jun 6 '14 at 12:21
@Louis Just to be clear. I want to know how to plot a grouped dataframe, not about processing dates –  Sudar Jun 6 '14 at 13:06

3 Answers 3

up vote 2 down vote accepted

You can use an approach like the following one. You can simply slice the dataframe according to the values of each template, and subsequently use the dates and scores for the plot.

from pandas import *
import matplotlib.pyplot as plt
import matplotlib.dates as mdates
import datetime as dt

#The following part is just for generating something similar to your dataframe
date1 = "20140605"
date2 = "20140606"

d = {'date': Series([date1]*5 + [date2]*5), 'template': Series(range(5)*2),
'score': Series([random() for i in range(10)]) } 

data = DataFrame(d)
#end of dataset generation

fig, ax = plt.subplots()

for temp in range(5):
    dat = data[data['template']==temp]
    dates =  dat['date']
    dates_f = [dt.datetime.strptime(date,'%Y%m%d') for date in dates]
    ax.plot(dates_f, dat['score'], label = "Template: {0}".format(temp))

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Thanks. I didn't know about slicing the dataframe and plotting them separately. –  Sudar Jun 7 '14 at 5:43

You can use the groupby method:

data.groupby("template").plot(x="date", y="score")
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wow!! this is very crisp and gets the work done. It never occurred to me that I can group by template as well. If I had not accepted the previous answer, I would have accepted this one though. –  Sudar Jun 8 '14 at 4:14
is there a way to have the groups populate the legend? –  Conrad.Dean Sep 23 '14 at 15:51
To get them on a single figure I had to do fig, ax = plt.subplots(1,1); data.groupby("template").plot(x="date", y="score", ax=ax). It seems like there should be a nicer way to do this and get the legends right automatically as well. –  dshepherd Apr 30 at 15:37
I populated the legend using plt.legend([v[0] for v in pr.groupby('template')['template']]), which is messy but it works (groupby returns an iterator of data frames, within each data frame all values of 'template' are the same so we just take the first). –  dshepherd Apr 30 at 17:16

You can add the legend according to the groups with:

plt.legend(pr['template'], loc='best')
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Actually you can't do this in general. pr['template'] = [0,1,2,3,4,0,1,2,3,4] in the case in the question, so it appears to work. However in general the first 4 elements of pr['template'] will not contain each of the labels in the correct order. For example if you sort the data before plotting then pr['template'][:4] = [0,0,1,1]. –  dshepherd Apr 30 at 17:11

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