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Jun
19
accepted calculate average correlation for neighboring pixels through time
Jun
19
comment calculate average correlation for neighboring pixels through time
clever! I did not know about adjacent. I was trying to use focal with a for loop to change the weights matrix and stackApply to extract the necessary values into a dataframe...same idea as this but not nearly as slick. and a bookkeeping headache. thanks!
Jun
19
revised calculate average correlation for neighboring pixels through time
added 53 characters in body
Jun
19
asked calculate average correlation for neighboring pixels through time
May
12
awarded  Popular Question
Apr
28
awarded  Notable Question
Apr
27
comment split data for embarrassingly parallel with R?
the multicore backend, such as with DoMC package, would share memory. you'd just need to replace your mclapply() with a foreach loop.
Apr
17
revised add second axis label to facetted plot
edited title
Apr
16
accepted add second axis label to facetted plot
Apr
16
comment add second axis label to facetted plot
Thanks! Don't have time to play with this until next week but it looks like what I'm was after. Great example of using grobs too...I was trying to make the top and bottom graphs independently originally but couldn't figure out how to control the graph sizes.
Apr
15
awarded  Yearling
Apr
10
revised add second axis label to facetted plot
added 43 characters in body
Apr
10
asked add second axis label to facetted plot
Mar
17
comment set x/y limits in facet_wrap with scales = 'free'
i believe if you were going to show a trend line or some sort of stat you would want to use scale_x_discrete(llmits=...). xlim is an abbreviation for coord_cartesian which is essentially just a zoom and so ggplot would calculate a stat with the appended data too. maybe someone can confirm.
Mar
6
comment Assign to a variable data frame in R
first, i think you'll want vals=60:69 to match the length of the x and y columns. second, do you want the effect of scores.d$new.col=vals and scores.e$new.col=vals but with speedier syntax - i assume this is part of a larger problem?
Mar
3
revised R code parallelized using plyr and doMC: error message: Error in do.ply(i) : task 1 failed - “could not find function ”getClass“”
EDIT. fixed the type with .export
Mar
3
comment R code parallelized using plyr and doMC: error message: Error in do.ply(i) : task 1 failed - “could not find function ”getClass“”
@masfenix I had a typo. should have been .export = c('data','main.function'). you can also try .export=ls()
Feb
11
comment ddply error: Error in attributes(out) <- attributes(col) : 'names' attribute must be the same length as the vector
Just had this problem and the issue was a date column with class POSIXlt. Once I converted it to POSIXct it worked even though I wasn't subsetting on the date column.
Feb
1
accepted Setup torque/moab cluster to use multiple cores per node with a single loop
Feb
1
comment Setup torque/moab cluster to use multiple cores per node with a single loop
great thanks! Thats what I was looking for. on my system PBS_NODEFILE already has each node listed for each core so simply f<-... and x<-readLines(f) suffice for getnodelist. Is there an effective difference between a 'sock' cluster and doMC? it seems both could work on my personal machine but only a sock cluster works with networked nodes.