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I'm new to Pandas, and I'm trying to import financial time series from various csv sources into Pandas. However all of the csvs have different headers, which means I currently need to build custom logic to deal with each one. I'm wondering if there might be a library or other utility available to get them into a standardized format.

For example, a time series from one vendor might use "Trade Date" vs another that uses "Date" or "TradeDate". Also, the date format within this column varies between sources, so I need to handle that. Similarly, "Open", "OpenPx", and "Open Price" are all the same thing.

Finally, some csvs have non-useful text in the first or last line such as "This data is the property of ...", that I'd like to automatically remove.

Currently I'm using df = pandas.read_csv() to read in the non-standardized data, and then clunky code to remove the unnecessary top text and change header names into a single standardized set. I'd like something more graceful / easier to maintain, if it exists.

Thanks in advance!

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read_csv has a lot of args to help with this kind of stuff. Think it may help to give some examples of what you're looking at... (I was thinking about guessing it's a date from col title the other day, read_json does it - I think it's a good soln) – Andy Hayden Mar 19 '14 at 3:22
Thanks Andy, I hadn't noticed read_csv's args; parse_dates is definitely cleaner than what I was doing, as are index_col and dtype. I guess what I'm hoping for (which I probably didn't say clearly) is a maintained library that knows how to clean up / standardize the data given its source. E.g. for a CSV from Yahoo Finance do x to clean it, from CFE do y to clean it. – fantabolous Mar 19 '14 at 4:21
You might like to check out pandas.io.data pandas.pydata.org/pandas-docs/dev/remote_data.html. Not sure I can point you to another library, possible you can do some generic stuff with pandas relatively easily... but I think you'll need some explicit examples for us to help! – Andy Hayden Mar 19 '14 at 4:39
Andy you've opened my eyes to a far better way of getting the data: directly without the intermediate csv step. Thank you! I have 4 main sources for my data: Yahoo Finance, Google Finance, IB, and CBOE/CFE. The first two are covered by the remote_data you mentioned, and google has yielded some promising starting points for the other two, for example github.com/blampe/IbPy for IB, and code.google.com/p/trading-with-python/source/browse/trunk/… for CBOE. I'll still need some manipulation to get them into a standardized format but it's looking easier! – fantabolous Mar 19 '14 at 5:27

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