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I have multiple data-frames with stock prices that I want to align into a single data-frame that contains only the close prices for all stocks.

I would expect all dates from all data-frames to be present in the date-column(index) and "NA" in case there was no close price for a stock on that date.

Example with two data-frames (df1 and df2):

In [5]: df1
Out[5]:
            Open   High   Low    Close
Date1
2012-01-05  22.00  22.66  23.11  24.04
2012-01-04  24.04  23.80  23.08  22.16
2012-01-03  22.16  21.27  20.42  21.24
2012-01-01  21.24  22.30  22.52  22.30

In [7]: df2
Out[7]:
             Open   High    Low  Close
Date1
2012-01-07  23.00  21.66  25.11  21.04
2012-01-06  22.00  22.66  23.11  24.04
2012-01-04  24.04  23.80  23.08  22.16
2012-01-02  22.16  21.27  20.42  21.24
2012-01-01  21.24  22.30  22.52  22.30

Now I can do

In [8]: frame=pd.DataFrame({"df1.Close":df1["Close"], "df2.Close":df2["Close"]})

and the result is as expected:

In [9]: frame
Out[9]:
            df1.Close  df2.Close
Date1
2012-01-01      22.30      22.30
2012-01-02        NaN      21.24
2012-01-03      21.24        NaN
2012-01-04      22.16      22.16
2012-01-05      24.04        NaN
2012-01-06        NaN      24.04
2012-01-07        NaN      21.04

How would I need to change my code to do the same for a dynamic number of data-frames? Right now, I have 8 data-frames I need to align this way. Is there any way to loop thru a list of data-frames and align them like above - instead of manually tying the data-frame names (something like df[0] to df[7] figuratively speaking)?

Thanks in advance and kind regards! Dirk

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1 Answer 1

up vote 3 down vote accepted

If you have the data-frames in a list (the actual data-frame objects, I mean, not their names) that looks something like this:

dflist = [df1, df2, df3, df4, df5, df6, df7, df8]

then the following code should do what it seems you're looking for:

frame = {}
for idx, df in enumerate(dflist):
    n = idx+1  # Since lists are 0-indexed
    name = "df{0:d}.Close".format(n)
    close = df["Close"]
    frame[name] = close

You could do this more compactly with a dict comprehension, but in example code I prefer to spell things out more explicitly for ease of understanding. For reference, the dict comprehension would look something like this:

{"df{0:d}.Close".format(idx+1): df["Close"] for idx, df in enumerate(dflist)}
share|improve this answer
    
Very cool, thanks a lot! With that example, I'm half-way there. Now how would I make that "dflist" dynamic? I won't know up-front how many data-frames I'm going to need - so I guess I'm looking for a way to create a number of data-frames dynamically and then use your code. Thanks so much for your help! –  user1653205 Jun 8 '13 at 18:29
    
Just use standard list-manipulation methods like append() -- so for example when you get a new data-frame, do something like dflist.append(new_df). –  rmunn Jun 9 '13 at 4:11
    
I think I'm getting closer. I now loaded the dataframes into a dict where the key is the ticker of the stock and the value is the dataframe with OHLC quotes for the stock. Now I have a dict with 8 key/value pairs. The remaining question is: How do I join the dataframes into one by iterating thru my dict? –  user1653205 Jun 9 '13 at 4:13
    
If you iterate through a dict, you get keys: for key in my_dict: print key. But dicts also have an iteritems() method for producing tuples of (key, value), so you can do for key, val in my_dict.iteritems(). Note that in Python 3, iteritems() gets renamed to just items(), so use the appropriate name depending on whether you're on Python 2.x or 3.x. –  rmunn Jun 11 '13 at 21:30
    
Some of these questions you're asking are covered by the Python tutorial -- have you worked through that yet? If not, it might be of benefit to you. Go to either docs.python.org/3/tutorial/index.html or docs.python.org/2.7/tutorial/index.html depending on whether you have Python 3.x or 2.x. –  rmunn Jun 11 '13 at 21:32

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