Suppose I have a DataFrame that is block sparse. By this I mean that there are groups of rows that have disjoint sets of non-null columns. Storing this a huge table will use more memory in the values (nan filling) and unstacking the table to rows will creating a large index (at least it appears that way on saving to disk ... I'm not 100% clear if there is some efficient MultiIndexing that is supposed to be going on).
Typically, I store the blocks as separate DataFrames in a dict or list (dropping the nan columns) and make a class that has almost the same api as a DataFrame, 'manually' passing the queries to the blocks and concatenating the results. This works well but involves a short amount of some special code to store and handle these objects.
Recently, I've noticed that pytables provides a feature similar to this but only for the pytables query api.
Is there some way of handling this natively in pandas? Or am I missing some simpler way of getting a solution that is similar in performance?
EDIT: Here is a small example dataset
import pandas, string, itertools from pylab import * # create some data and put it in a list of blocks (d) m = 10; n = 6; s = list(string.ascii_uppercase) A = array([s[x] * (1 + mod(x, 3)) for x in randint(0, 26, m*n)]).reshape(m, n) df = pandas.DataFrame(A) d = list() d += [df.ix[0:(m/2)].T.ix[0:(n/2)].T] d += [df.ix[(m/2):].T.ix[(n/2):].T] # 1. use lots of memory, fill with na d0 = pandas.concat(d) # this is just the original df # 2. maybe ok, not sure how this is handled across different pandas versions d1 = pandas.concat([x.unstack() for x in d]) # want this to work however the blocks are stored print(d0.ix[[0, 8]][[2,5]]) # this raises exception sdf = pandas.SparseDataFrame(df)