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They both seem exceedingly similar and I'm curious as to which package would be more beneficial for financial data analysis.

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At the risk of being glib, I've found that the NumPy basis is awesome and Pandas takes that awesome and cranks it up to 11. –  Tim Whitcomb Jun 18 '12 at 23:30
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up vote 32 down vote accepted

Indeed, pandas provides high level data manipulation tools built on top of NumPy. NumPy by itself is a fairly low-level tool, and will be very much similar to using MATLAB. pandas on the other hand provides rich time series functionality, data alignment, NA-friendly statistics, groupby, merge and join methods, and lots of other conveniences. It has become very popular in recent years in financial applications. I will have a chapter dedicated to financial data analysis using pandas in my upcoming book.

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You ought to have mentioned that you're the primary author of pandas. :) The book in question: shop.oreilly.com/product/0636920023784.do –  Yktula Aug 21 '13 at 4:45
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Numpy is required by pandas (and by virtually all numerical tools for Python). Scipy is not strictly required for pandas but is listed as an "optional dependency". I wouldn't say that pandas is an alternative to Numpy and/or Scipy. Rather, it's an extra tool that provides a more streamlined way of working with numerical and tabular data in Python. You can use pandas data structures but freely draw on Numpy and Scipy functions to manipulate them.

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