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My goal is to read EURUSD data (daily) into a time series object where I can easily slice-and-dice, aggregate, and resample the information based on irregular-ish time frames. This is most likely a simple answer. I'm working out of Python for Data Analysis but can't seem to bridge the gap.

After downloading and unzipping the data, I run the following code:

>>> import pandas as pd
>>> df = pd.read_csv('EURUSD_day.csv', parse_dates = {'Timestamp' : ['<DATE>', '<TIME>']}, index_col = 'Timestamp')

So far so good. I now have a nice data frame with Timestamps as the index.

However, the book implies (p. 295) that I should be able to subset the data, as follows, to look at all the data from the year 2001.

>>> df['2001']

But, that doesn't work.

Reading this question and answer tells me that I could import Timestamp:

>>> from pandas.lib import Timestamp
>>> s = df['<CLOSE>']

Which seems to work for a particular day:

>>> s[Timestamp('2001-01-04)]

Yet, the following code yields a single value for my desired range of all data from year 2001.

>>> s[Timestamp('2001')]

I know I am missing something simple, something basic. Can anyone help?

Thank you, Brian

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2 Answers 2

up vote 4 down vote accepted

The example on pg. 295 is being performed on Series object which is why indexing with the year works. With a DataFrame you would want df.ix['2001'] to achieve the same results.

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THANK YOU!!! Your answer works wonderfully for a data frame. How would I import the data into a Series object? –  Brian Mar 21 '13 at 15:12
A series is a simple one dimensional array-like object. It has an index and values associated with each index. A DataFrame is made up of multiple Series objects (each column is a Series). So to get a Series from your DataFrame you can select any individual column like df["Column Name"] and the result will be a series. Or to access a value in that column by index, try df["Column Name"]['2001']. –  bdiamante Mar 21 '13 at 15:22
Thank you, sir. I knew that I was missing something basic, and you nailed it. I can't tell you how much I appreciate your clear and concise explanation. –  Brian Mar 21 '13 at 15:29
You're welcome, glad I could help! –  bdiamante Mar 21 '13 at 15:39
@Brian: you don't strictly need to upvote any answers (click upward-facing arrow), but since this answer -- and related comments -- helped you out a lot you should consider upvoting so that the community will be more likely to trust this user accordingly in the future. –  bernie Mar 21 '13 at 16:04

If you want to get all of the columns, then df.ix['2001'].

If you're interested only in "CLOSE", since you already did s = df['<CLOSE>'], you can get the 2001 values by s['2001']

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