I wonder why
pandas has a large memory usage when reindexing a Series.
I create a simple dataset:
a = pd.Series(np.arange(5e7, dtype=np.double))
top on my Ubuntu, the whole session is about 820MB.
Now if I slice this to extract the first 100 elements:
a_sliced = a[:100]
This shows no increased memory consumption.
Instead if I reindex
a on the same range:
a_reindexed = a.reindex(np.arange(100))
I get a memory consumption of about 1.8GB. Tried also to cleanup with
gc.collect without success.
I would like to know if this is expected and if there is a workaround to reindex large datasets without significant memory overhead.
I am using a very recent snapshot of
pandas from github.