I am looking for a function that takes as input two lists, and returns the Pearson correlation, and the significance of the correlation.
You can have a look at scipy: http://docs.scipy.org/doc/scipy/reference/stats.html



I'd recommend SciPy as mentioned in the other answers. But if you want standalone code, see How to compute correlation accurately. 


Just for completeness, you can call R's statistical functions from Python using the rpy Python package. Probably overkill if all you want is the Pearson stat, but if you then want to go on and do lots of stats things that you can't find in the Python packages in other answers here, rpy might be the way to go. www.rproject.org rpy.sourceforge.net 


If you don't feel like installing scipy, I've used this quick hack, slightly modified from Programming Collective Intelligence: (Edited for correctness.)



The following code is a straightup interpretation of the definition:
Test:
returns
This agrees with Excel, this calculator, SciPy (also NumPy), which return 0.981980506 and 0.9819805060619657, and 0.98198050606196574, respectively. R:
EDIT: Fixed a bug pointed out by a commenter. 


You may wonder how to interpret your probability in the context of looking for a correlation in a particular direction (negative or positive correlation.) Here is a function I wrote to help with that. It might even be right! It's based on info I gleaned from http://www.vassarstats.net/rsig.html and http://en.wikipedia.org/wiki/Student%27s_t_distribution, thanks to other answers posted here.



The Pearson correlation can be calculated with numpy.



Rather than rely on numpy/scipy, I think my answer should be the easiest to code and understand the steps in calculating the Pearson Correlation Coefficient (PCC) .
The significance of PCC is basically to show you how strongly correlated the two variables/lists are. It is important to note that the PCC value ranges from 1 to 1. A value between 0 to 1 denotes a positive correlation. Value of 0 = highest variation (no correlation whatsoever). A value between 1 to 0 denotes a negative correlation. 


You can simply load the data in a Pandas DataFrame which has method for calculating pairwise correlation on his columns. Here is a simple tutorial with real Investment Founds data. 


Here is an implementation for pearson correlation based on sparse vector. The vectors here are expressed as a list of tuples expressed as (index, value). The two sparse vectors can be of different length but over all vector size will have to be same. This is useful for text mining applications where the vector size is extremely large due to most features being bag of words and hence calculations are usually performed using sparse vectors.
Unit tests:



Hmm, many of these responses have long and hard to read code... I'd suggest using numpy with its nifty features when working with arrays:


