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I'm using pandas to analyse financial records.

I have a DataFrame that comes from a csv file that looks like this:

<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 800 entries, 2010-10-27 00:00:00 to 2011-07-12 00:00:00
Data columns:
debit                      800  non-null values
transaction_type           799  non-null values
transaction_date_raw       800  non-null values
credit                     800  non-null values
transaction_description    800  non-null values
account_number             800  non-null values
sort_code                  800  non-null values
balance                    800  non-null values
dtypes: float64(3), int64(1), object(4)

I am selecting a subset based on transaction amount:

c1 = df['credit'].map(lambda x: x > 1000)
milestones = df[c1].sort()

and want to create slices of the original df based on the dates between the milestones:

delta = dt.timedelta(days=1)
for i in range(len(milestones.index)-1):
        start = milestones.index[i].date()
        end = milestones.index[i+1].date() - delta
        rng = date_range(start, end)

this generates a new series with the dates between my milestones.

<class 'pandas.tseries.index.DatetimeIndex'>
[2010-11-29 00:00:00, ..., 2010-12-30 00:00:00]
Length: 32, Freq: D, Timezone: None

I have followed several approaches to slice my df using these new series (rng) but have failed:

df.ix[start:end] or
df.ix[rng]

this raises: IndexError: invalid slice

df.reindex(rng) or df.reindex(index=rng)

raises: Exception: Reindexing only valid with uniquely valued Index objects

x = [v for v in rng if v in df.index]
df[x]
df.ix[x]
df.index[x]

this also raises invalid slice, and so does:

df.truncate(start, end)

I'm new to pandas, I'm following the early release of the book from Oreilly, and really enjoying it. Any pointers would be appreciated.

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2 Answers 2

It looks like you've hit a couple of known bugs in non-unique index handling:

https://github.com/pydata/pandas/issues/1201/

https://github.com/pydata/pandas/issues/1587/

A bug fix release is coming out very soon so please check the pandas website or PyPI in a week or so.

Thanks

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I found a "hackish" solution see above –  G Garcia Jul 10 '12 at 15:31

I've managed to circumvent some of the issues highlighted above, here is a "solution" until the bugs mentioned by Chang She are resolved.

I start with my original TimeSeries indexed DataFrame as before. I sort the df, this sorts records by date (using the TimeSeries index).

df = df.sort()

once sorted I replace the df.index with a numerical index

df.index = range(len(df))

I subsequently extract my milestones as before with the difference now these will have an index which is a positive int, and create a list of that index:

milestones_list = milestones_df.index.tolist()

and extract the data between my milestones from the original df using the numeric index like so:

datasets = {}
    for milestone in milestones_list:
        milestone_index = milestones_list.index(milestone)
        print "milestone {0} index {1}".format(milestone, milestone_index)
        if milestone_index < len(milestones_list) -1:
            x = df[milestones_df.index[milestone_index]:milestones_df.index[milestone_index+1]]
        else:
            x = df[milestones_df.index[milestone_index]:df.index.max()]

        n = str(int(x.index.min())) +'-'+  str(int(x.index.max()))
        datasets[n] = x

this creates a dict with DataFrames for each milestone time interval named as the index intervals they represent.

print datasets.keys()
['592-650', '448-527', '382-447', '264-318', '319-381', '118-198', '528-591', '728-798', '54-117', '199-263', '651-727']

Although admittedly not the ideal solution I hope it helps someone with similar issues.

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