I'm using pandas to perform some string matching from a Twitter dataset.
I've imported a CSV of Tweets and indexed using the date. I've then created a new column containing text matches:
In : import pandas as pd indata = pd.read_csv('tweets.csv') indata.index = pd.to_datetime(indata["Date"]) indata["matches"] = indata.Tweet.str.findall("rudd|abbott") only_results = pd.Series(indata["matches"]) only_results.head(10) Out: Date 2013-08-06 16:03:17  2013-08-06 16:03:12  2013-08-06 16:03:10  2013-08-06 16:03:09  2013-08-06 16:03:08  2013-08-06 16:03:07  2013-08-06 16:03:07 [abbott] 2013-08-06 16:03:06  2013-08-06 16:03:02  2013-08-06 16:03:00 [rudd] Name: matches, dtype: object
What I want to end up with is a dataframe, grouped by day/month, that I can plot the different search terms as columns and then plot.
I came across what looks like the perfect solution on another SO answer (http://stackoverflow.com/a/16637607/2034487) but when trying to apply to this series, I'm getting an exception:
In : only_results.apply(lambda x: pd.Series(1,index=x)).fillna(0) Out : Exception - Traceback (most recent call last) ... Exception: Reindexing only valid with uniquely valued Index objects
I really want to be able to apply the changes within the dataframe to apply and reapply groupby conditions and perform the plots efficiently - and would love to learn more about how the .apply() method works.
Thanks in advance.
UPDATE AFTER SUCCESSFUL ANSWER
The issue was with duplicates in the "matches" column that I hadn't seen. I iterated through that column to remove duplicates and then used the original solution from @Jeff linked above. This was successful, and I can now .groupby() on the resultant series to see daily, hourly, etc, trends. Here's an example of the resultant plot:
In : successful_run = only_results.apply(lambda x: pd.Series(1,index=x)).fillna(0) In : successful_run.groupby([successful_run.index.day,successful_run.index.hour]).sum().plot() Out : <matplotlib.axes.AxesSubplot at 0x110b51650>