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 Curious
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  • 0 posts edited
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  • 5 votes cast
May
19
revised Extrapolating variance components from Weir-Fst on Vcftools
add code to convert from 012 to hierfstat
May
14
answered Extrapolating variance components from Weir-Fst on Vcftools
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
Thanks everyone, adding a numpy int16 array is just under 7GB which works fine for my purposes. Glad I'm not totally crazy. Will def try out dtype in read_csv in a bit.
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@prpl.mnky.dshwshr perhaps. once i get the work done I actually have to do, i'll experiment with the data type.
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@TheLaughingMan Agreed. I've got a box with huge ram that I can run this on, but it didn't seem to want to stop. I killed it manually at 170GB. Who knows how big it would have gotten?
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@TheLaughingMan: check out the gist link ;-)
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@prpl.mnky.dshwshr: 26.4GB i can deal with, per the title of this post 170GB is crazy and weird.
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@TheLaughingMan 6.5GB ish.
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
Currently processing like this: we'll see what happens. gist.github.com/cfriedline/9b462b1f4696b2e6dcc3
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@TheLaughingMan: that's just to get the header information to specify the number of columns in the data. The first three data rows look like this (in numpy): array([[ 0., 0., 0., ..., 0., 0., 0.], [ 1., 1., 0., ..., 1., 0., 0.], [ 1., 0., 0., ..., 1., 0., 1.],
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@SimeonVisser: python 2.7.9, ipython 2.3.1, numpy 1.9.1, pandas 0.15.2.
Jan
29
comment Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
@PaulH: sorry, exactly that. it's genotype data, literally the characters 0, 1, and 2.
Jan
29
asked Pandas read_csv on 6.5 GB file consumes more than 170GB RAM
Sep
11
comment Entrez epost + elink returns results out of order with Biopython
minor point, but rettype="gp" should be "gb", I guess. Thanks! I was doing this earlier, but wanted to simplify my code a bit through elink.
Sep
10
revised Entrez epost + elink returns results out of order with Biopython
added 1100 characters in body
Sep
10
asked Entrez epost + elink returns results out of order with Biopython
Jul
2
awarded  Curious
Jun
5
answered Mulitprocessing and rpy2 (with ape)
Jun
4
comment Mulitprocessing and rpy2 (with ape)
Well, I'm getting closer, but I'm still not getting the right stuff back from my code, though the testing works. test: pastie.org/9256603#, new notebook with updated code: nbviewer.ipython.org/gist/cfriedline/0095ad55d645a7202cc6
Jun
4
comment Mulitprocessing and rpy2 (with ape)
I even tried with scipy.random.choice coupled with scipy.random.seed, same problem. Hmmph.