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Mar
26
awarded  Notable Question
Sep
12
comment Generating Boolean Expressions from Subqueries in SQLAlchemy
Yeah, I think I am slowly convincing myself that I don't actually want the ORM layer at all.
Sep
12
accepted Generating Boolean Expressions from Subqueries in SQLAlchemy
Sep
12
answered Generating Boolean Expressions from Subqueries in SQLAlchemy
Sep
10
asked Generating Boolean Expressions from Subqueries in SQLAlchemy
Sep
10
awarded  Nice Question
Apr
16
awarded  Popular Question
Jun
7
awarded  Supporter
May
27
answered pandas drops index index on merge in Python?
May
17
comment Extra Bin with Pandas Resample
No, your output is just from having closed='right', which I believe used to be the default in pandas. The default is now closed='left', which is what I want in this situation. If I do closed='right' in pandas 0.11.0 I get that same output. You'll notice that your means also have the exact same problem I reported in my original question, which come from the extra bin. Your bin just happens to occur at a different place (2001-05-04) and is non-empty because you've grabbed a value that would come in a different bin if the interval was closed differently (2001-06-01 is 40 less.)
May
16
awarded  Editor
May
16
revised Extra Bin with Pandas Resample
added 32 characters in body; edited tags
May
15
asked Extra Bin with Pandas Resample
Apr
4
awarded  Scholar
Apr
4
accepted Resampling Within a Pandas MultiIndex
Apr
4
comment Resampling Within a Pandas MultiIndex
I think the real answer here is "if you're doing these sorts of calculations, you should be working with a groupby object, not a hierarchical index"
Apr
4
comment Resampling Within a Pandas MultiIndex
Interestingly, this is more performant than stacking and unstacking: In [561]: timeit.timeit("from main import df; df.reset_index(level=[0,1]).groupby(['State', 'City']).resample('2D', how='sum')", number=1000) Out[561]: 7.496185064315796 In [562]: timeit.timeit("from main import df; df.unstack(level=[0,1]).resample('2D', how='sum').stack(level=[2,1]).swaplevel(2,0)", number=1000) Out[562]: 10.618878841400146
Apr
4
comment Resampling Within a Pandas MultiIndex
Thanks -- that certainly does the job, but that groupby is forcing us to recompute the relations we've already established in our hierarchical index. Is there not a way to do this with the groupings we've already built in our hierarchical index, or are hierarchical indexes just not meant to be used for this sort of thing?
Apr
4
awarded  Teacher
Apr
4
answered list from findall to a dict