mclapply is a parallelized version of lapply, it returns a list of the same length as X, each element of which is the result of applying FUN to the corresponding element of X.

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Application of mclapply() to a function writing to a global variable

I'm trying to use parallel::mclapply to speed up the calculation of the following code: library(raster) library(HistogramTools)#for AddHistogram #Create a first h here for the first band... omitted ...
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1answer
40 views

How do I convert “for” in “mclapply”?

I have this: # A simple "script" that receives an index ScriptR = function(i) { A = i^3; }; # With "for", pass the index "i" for "ScriptR" for (i in 1:10) { ScriptR(i); }; # How ...
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R tm In mclapply(content(x), FUN, …) : all scheduled cores encountered errors in user code

When I run the following codes to the penultimate line, I got Warning message: In mclapply(content(x), FUN, ...) : all scheduled cores encountered errors in user code When I run the final ...
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1answer
51 views

How to pass function arguments when creating a list of tasks in R?

I'm trying to create a list of tasks to run in R parallel using mclapply. library(parallel) tasks <- list( job1 = y(5), job2 = y(6) ) # Using fork() out <- mclapply( tasks, ...
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638 views

tm_map has parallel::mclapply error in R 3.0.1 on Linux

I am using R 3.0.1 on Platform: i486-pc-linux-gnu (32-bit).I am trying to use tm_map from the tm library.I have 4080 words in my SmartStopWord list. But when I execute the this code : library(tm) ...
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1answer
198 views

When using mclapply, each single core is slower than its unparallelized version

I am learning about parallel computing in R , and I found this happening in my experiments. Briefly, in the following example, why are most values of 'user' in t smaller than that in mc_t ? My ...
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1answer
86 views

mclapply cores spending lots of time in uninterruptable sleep

This is a somewhat generic question for which I apologize, but I can't generate a code example that reproduces the behavior. My question is this: I'm scoring a largish data set (~11 million rows with ...
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1answer
142 views

Warnings suppressed with mclapply in R

With mclapply() all issued warnings seems get suppressed: library(multicore) mclapply(1:3, function(x) warning(x)) [[1]] [1] "1" [[2]] [1] "2" [[3]] [1] "3" while lapply would give: lapply(1:3, ...
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353 views

mclapply returns NULL randomly

When I am using mclapply, from time to time (really randomly) it gives incorrect results. The problem is quite thoroughly described in other posts across the Internet, e.g. ...
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1answer
175 views

Knitr: redirect chunk code output to terminal

I want to monitor some pretty lengthy parallelized computations embedded in a knitr file. The computations rely on a package I have written, and the relevant function uses mclapply from the multicore ...
5
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635 views

Speed-up data.table group by using multiple cores and parallel programming

I have a large code and the aggregation step is the current bottleneck in terms of speed. In my code I'd like to speed-up the data grouping step to be faster. A SNOTE (simple non trivial example) ...
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54 views

Efficient way to add-up all numbers except the ones that accompany an I using mclapply

I have the following vector: my.vector = c("4M1D5M15I1D10M", "3M", "4M2I3D") And I'd like to transform it into the following vector: my.result = c("21N", "3N", "7N") The logic for such results ...
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1answer
67 views

Efficient way to split a vector of cigars using mclapply

I have a very large vector of cigars: my.vector = c("44M2D1I","32M465N3M", "3S4I3D45N65M") That I'd like to transform to a vector of splitted cigars - the logic is as follows: whenever I find a ...
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1answer
43 views

Can mclapply work with a CompressedRleList?

Can mclapply work with a CompressedRleList? For example, I have a vector of cigars (a), and the cigarToRleList returns CompressedRleList given that vector: a = c("44M","44M","9S35M","44M","40M4S") ...
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1answer
838 views

An error in one job contaminates others with mclapply

When mclapply(X, FUN) encounters errors for some of the values of X, the errors propagate to some (but not all) of the other values of X: require(parallel) test <- function(x) if(x == 3) stop() ...
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4answers
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tm_map has parallel::mclapply error in R 3.0.1 on Mac

I am using R 3.0.1 on Platform: x86_64-apple-darwin10.8.0 (64-bit) I am trying to use tm_map from the tm library. But when I execute the this code library(tm) data('crude') tm_map(crude, ...
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Modify variables outside function using mclapply

It is easy to modify variables outside a function using assign() or <<-, even if the function is called with lapply(). But these tricks seem not working while calling function with mclapply(), ...
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1answer
190 views

Why is mclappy slower than apply in this case?

i'm pretty confused. I want to speed up my algorithm by using mclapply:parallel, but when I compare time efficiency, apply still wins. I'm smoothing log2ratio data by rq.fit.fnb:quantreg which is ...
5
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1answer
3k views

Combine lists in R

What would be an easy and fast way to get from: x <- list(a1=2, b1=c(1,2), c1=1:3) y <- list(a2=5, b2=c(2,5), c2=2:4) to list(list(x$a1, y$a2), list(x$b1, y$b2), list(x$c1, y$c2)) ? Or in ...
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2answers
385 views

Printing from mclapply in R Studio

I am using mclapply from within RStudio and would like to have an output to the console from each process but this seems to be suppressed somehow (as mentioned for example here: Is mclapply guaranteed ...
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1answer
209 views

Is there a faster way to apply logical operations to subset a large dataset in R?

first post on StackOverflow, so be gentle if I don't get the etiquette quite right. I have a big data frame (well, seven of them actually, but that isn't important) containing hands drawn from a deck ...
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2answers
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understanding the differences between mclapply and parLapply in R

I've recently started using parallel techniques in R for a project and have my program working on Linux systems using mclapply. However, I've hit a road block with my understanding of parLapply for ...
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1answer
126 views

Unwanted bold-face while putting multiple ggplot charts in the same file

I don't know if you have seen some unwanted bold-face font like picture below: As you see the third line is bold-faced, while the others are not. This happens to me when I try to use ggplot() with ...
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Deprecation of multicore (mclapply) in R 3.0

I understand multicore is deprecated as of R version 2.14 and I was advised to start using the package parallel which comes built into the base of R 3.0. Going through the documentation of parallel, ...
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1answer
400 views

mclapply additional arguments

I have created a function DevCstat(). It takes the arguments: indat, mod, Covar,txtMat, PatCovar. indat is a list, I would like to apply the function to each element of the list. mod, Covar, ...
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1answer
187 views

R Checking for duplicates is painfully slow, even with mclapply

I've got some data involving repeated sales for a bunch of of cars with unique Ids. A car can be sold more than once. Some of the Ids are erroneous however, so I'm checking, for each Id, if the size ...
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1answer
305 views

Creating an R function to use mclapply from the multicore package

I need to analyze some simulated data with the following structure: h c x1 y1 x1c10 1 0 37.607056431 104.83097593 5 1 1 27.615251557 140.85532974 10 ...
2
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1answer
374 views

All jobs on one core fail with R multicore

I'm using R multicore on a long list. I invoke mclapply on the list, which makes use of 12 cores on my machine. When my list has about 1000 elements long it runs fine. When my list is longer than ...
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2answers
271 views

Semi-global variable to mclapply

In a function, I need to run mclapply per each item in a list and it should also use a semi-global variable var.1. I don't want to add var.1 to every list-item as it would take too much memory. Here ...
2
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2answers
559 views

mclapply vs for loops for plotting: speed and scalability focus

I am running a function in R that can take a long time to run as it carries out multiple commands to transform and subset some data before it pushes it into ggplot to plot. I need to run this function ...
2
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0answers
190 views

R/sqldf/mclapply, How can I use sqldf and mclapply together?

Hi I am trying to use sqldf to fetch data from my database. Since sqldf will always load tcltk, I can not use mclapply function. How can I do with that? Thanks. Here is an example. ...
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1answer
310 views

How can I get R's lapply (and mclapply) to restore the state of the random number generator?

R ignores setting .Random.seed inside of an lapply. Using set.seed however, works fine. Some code: # I can save the state of the RNG for a few seeds seed.list <- lapply( 1:5, function(x) { ...
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1answer
169 views

What is the ideal format to store large results generated by R?

I simulate reasonably sized datasets (10-20mb) through a large number of parameter combinations (20-40k). Each dataset x parameter set is pushed through mclapply and the result is a list where each ...
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5answers
2k views

Is there way to track progress on a mclapply?

I love the setting .progress = 'text' in plyr's llply. However, it causes my much anxiety to not know how far along an mclapply (from package multicore) is since list items are sent to various cores ...