i would like to create a pandas SparseDataFrame with the Dimonson 250.000 x 250.000. In the end my aim is to come up with a big adjacency matrix.
So far that is no problem to create that data frame:
df = SparseDataFrame(columns=arange(250000), index=arange(250000))
But when i try to update the DataFrame, i become massive memory/runtime problems:
index = 1000 col = 2000 value = 1 df.set_value(index, col, value)
I checked the source:
def set_value(self, index, col, value): """ Put single value at passed column and index Parameters ---------- index : row label col : column label value : scalar value Notes ----- This method *always* returns a new object. It is currently not particularly efficient (and potentially very expensive) but is provided for API compatibility with DataFrame ...
The latter sentence describes the problem in this case using pandas? I really would like to keep on using pandas in this case, but its totally impossible in this case!
Does someone have an idea, how to solve this problem more efficiently? My next idea is to work with something like nested lists/dicts or so...
thanks for your help!