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Mar
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comment Understanding groupby and pandas
It isn't entirely clear what you want to do. But the size() function (not groupby) is what removes most of the columns. The columns (like date) aren't specific to the reviewer so it's not clear what it would mean to append them to the review counts. But you could do reviews.groupby('critic').date.max() and similar functions to summarize data from other columns.
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Feb
11
comment Numpy very slow when performing looping
You can speed this up by orders of magnitude by vectorizing your code. As an example of what I mean, look at the first two examples at technicaldiscovery.blogspot.com/2011/06/…. Learning to vectorize your programs will be a good investment of your time. I would start by reading about broadcasting and fancy indexing.
Feb
10
comment Implement a classic martingale using Python and Pandas
@tcaswell Using pandas 0.10.1 I had to make the line toss2.ix[edges] = dsteps.astype(int) to get rid of the error.
Feb
10
comment Implement a classic martingale using Python and Pandas
@tcaswell That's great! The numpy version works for me, and it has the speed improvement you'd expect. But I get an error "array cannot be safely cast to required type" in the pandas version at the line "toss2[edges] = dsteps" because dsteps is 'float64' and toss2 is 'int64'
Feb
8
comment Implement a classic martingale using Python and Pandas
I am very skeptical that there is a clean vectorized solution. Because the stake in row i can depend on outcomes from an arbitrarily large number of previous bets. If you are willing to try to get creative, I think a solution making creative use of cumsum (and similar operations like cummax) is the most promising way to do it. I still anticipate it will be a messy hack. Hopefully someone will prove me wrong.
Feb
8
revised Implement a classic martingale using Python and Pandas
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Feb
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answered Implement a classic martingale using Python and Pandas