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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)
share|improve this question
Can you post some example data demonstrating the kind of structure you're dealing with? Also, if you've looked at pandas.SparseDataFrame, can you explain why that doesn't work for your case? –  Marius Sep 23 '13 at 0:01
@Marius: Thanks, I wasn't really aware of SparseDataFrame. Had a brief look and a brief try with it and it appears to only handle floats (at least by default). The use-case I'm thinking of involves mixed types, I may be able to enforce some stricter typing at a column-by-column level if I do some work. –  mathtick Sep 23 '13 at 13:53
in 0.13, sparse will support multi-dtypes, so that may work for you. –  Jeff Sep 23 '13 at 14:23

1 Answer 1

You could use HDFStore this way

  • Store different tables with a common index (that is itself) a column

  • only the non-all-nan rows would be stored. so if you group your columns intelligently (e.g. put the ones that would tend to have lots of sparseness in the same place together). I think you could achieve a 'sparse'-like layout.

  • you can compress the table if necessary.

  • you can then query individual tables, and get the coordinates to then pull from other tables (this is what select_as_multiple does).

Can you provde a small example, and rough size of data set, e.g. num of rows, columuns, disjoint groups, etc.

What do your queries look like? This is generally how I approach the problem. Figure our how you are going to query; this is going to define how you store the data layout.

share|improve this answer
Yes, HDFStore is what I mean by select_as_multiple. I think I could set this up with most of the blocks not having the full indexed set. But what I think I really want is the pandas api. i.e. I want to be able to type df.ix[something] and get a fast response at the prompt. The data I'm thinking of for this use case fits in memory, with say about 50 blocks mostly in the thousands of rows. Unstacking to a MultiIndex of (Index, ColumnName) -> value works too but somehow doesn't feel as nice since the return structure would typically need to be pivoted back to index vs column view. –  mathtick Sep 23 '13 at 13:35
ok...if this can be done in memory, what exactly is the issue? –  Jeff Sep 23 '13 at 14:23
The issue is the pandas api ... I want 50 dataframes to behave as one. Merging the frames can not be done in memory. Working with a MultiIndex Series (ID, attribute) -> value does not work as well (selecting at the second level is a pain). –  mathtick Sep 23 '13 at 14:36
you are welcome to contribute this this discussion: github.com/pydata/pandas/issues/3443, but without an example still not clear what you are doing. –  Jeff Sep 23 '13 at 14:50

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