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I have a Python function historical_data that pulls daily historical price and dividend data from Yahoo Finance and outputs it into a pandas DataFrame.

>>> nlsn = y.historical_data('NLSN')
>>> nlsn
<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 366 entries, 2012-07-10 00:00:00 to 2011-01-27 00:00:00
Data columns:
Open         366  non-null values
High         366  non-null values
Low          366  non-null values
Close        366  non-null values
Volume       366  non-null values
Adj Close    366  non-null values
Dividends    366  non-null values
dtypes: float64(6), int64(1)
>>> nlsn['Adj Close']
2012-07-10    26.77
2012-07-09    26.77
2012-07-06    26.64
2012-07-05    26.56
2012-07-03    26.57
2011-02-01    25.75
2011-01-31    26.07
2011-01-28    25.00
2011-01-27    25.40
Name: Adj Close, Length: 366

I only want to store daily data persistently (vs. having to store daily, monthly, weekly, etc.). The following daily-to-monthly conversion doesn't seem to work, though:

>>> nlsn['Adj Close'].asfreq('M', method='bfill')
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
  File "/home/michael/Projects/envs/fintools32/lib/python3.2/site-packages/pandas/core/generic.py", line 156, in asfreq
    return asfreq(self, freq, method=method, how=how)
  File "/home/michael/Projects/envs/fintools32/lib/python3.2/site-packages/pandas/tseries/resample.py", line 329, in asfreq
    return obj.reindex(dti, method=method)
  File "/home/michael/Projects/envs/fintools32/lib/python3.2/site-packages/pandas/core/series.py", line 2053, in reindex
    level=level, limit=limit)
  File "/home/michael/Projects/envs/fintools32/lib/python3.2/site-packages/pandas/core/index.py", line 791, in reindex
  File "/home/michael/Projects/envs/fintools32/lib/python3.2/site-packages/pandas/core/index.py", line 719, in get_indexer

What's the right way for me to aggregate these stock prices into Monthly?

What I've tried

I tried all different method arguments (ffill, pad, bfill), all of which seem to raise the same assertion error.

I tried checking the source code index.py, but there seems to be a Strategy pattern in effect where the class in question delegates is_monotonic to its _engine attribute, and I can't find where the _engine attribute is actually assigned.

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1 Answer 1

up vote 2 down vote accepted

Try nlsn['Adj Close'][::-1].asfreq('M', method='ffill')

And if you can get your function to return ascending order DatetimeIndex that would allow you to skip the extra sorting here.

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That worked. I changed the original function to sort_index(inplace=True) the DataFrame before returning. –  MikeRand Jul 11 '12 at 15:59

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