Displaying 20 results from an estimated 3000 matches similar to: "[LLVMdev] regarding multicore support for LLVM"
2010 Aug 04
1
[LLVMdev] regarding multicore support for LLVM
It is so difficult ...
Which FE? It need BE support? I didn't get it.
2010/8/4 vijay kumar <vijaygbvv at gmail.com>
> Yeah OpenMP support. I read that it has a front end support but not the
> back end. So are there any projects or teams looking at this issue.
>
> On Wed, Aug 4, 2010 at 7:24 AM, Liu <proljc at gmail.com> wrote:
>
>> Multicore?
>> You
2010 Aug 04
0
[LLVMdev] regarding multicore support for LLVM
On Aug 3, 2010, at 8:48 PM, Liu wrote:
> It is so difficult ...
> Which FE? It need BE support? I didn't get it.
>
> 2010/8/4 vijay kumar <vijaygbvv at gmail.com>
> Yeah OpenMP support. I read that it has a front end support but not the back end. So are there any projects or teams looking at this issue.
>
> On Wed, Aug 4, 2010 at 7:24 AM, Liu <proljc at
2010 Aug 04
0
[LLVMdev] regarding multicore support for LLVM
Multicore?
You want OpenMP support?
2010/8/3 vijay kumar <vijaygbvv at gmail.com>
> Hi all,
> I am new to this LLVM. I went through the documenation of LLVM but
> I didn't find any support for Multicore. Is there any such possibility where
> multicore architecture can be exploited using LLVM.
>
>
>
> Thanks
> Vijay
>
>
2010 Aug 04
3
[LLVMdev] regarding multicore support for LLVM
I'm using Clang but not llvm-gcc. Now, I get it.
Maybe Clang will support it soon, but I think it have nothing to do with
BE...
2010/8/4 Eric Christopher <echristo at apple.com>
>
> On Aug 3, 2010, at 8:48 PM, Liu wrote:
>
> > It is so difficult ...
> > Which FE? It need BE support? I didn't get it.
> >
> > 2010/8/4 vijay kumar <vijaygbvv at
2010 Aug 04
0
[LLVMdev] regarding multicore support for LLVM
On 08/03/2010 09:34 PM, Michael Spencer wrote:
> On Tue, Aug 3, 2010 at 8:08 AM, vijay kumar<vijaygbvv at gmail.com> wrote:
>> Hi all,
>> I am new to this LLVM. I went through the documenation of LLVM but
>> I didn't find any support for Multicore. Is there any such possibility where
>> multicore architecture can be exploited using LLVM.
>>
2010 Jun 25
2
installing multicore package
Sir,
I want to apply mclapply() function for my analysis. So, I have to install
multicore package. But I can not install the package.
>install.packages("multicore")
It gives that package multicore is not available.
Can you help me?
Regards,
Suman Dhara
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2009 Oct 30
1
Multicore package: sharing/modifying variable accross processes
Hi,
I want to parallelize some computations when it's possible on multicore
machines.
Each computation produces a big objects that I don't want to store if
not necessary: in the end only the object that best fits my data have to
be returned. In non-parallel mode, a single gloabl object is updated if
the current computation gets a better result than the best previously found.
My plan
2011 Feb 02
2
multicore + xeon ?
Is there any reason to expect a problem ?
i'm running this script on the cluster down the hall:
module load R/2.11.0
R
library(multicore)
fxx<-function(ll) runif(1)
mclapply(1:10,fxx)
i get:
Error in fork() : Unable to fork.
less /proc/cpuinfo
yields:
processor : 0
vendor_id : GenuineIntel
cpu family : 6
model : 15
model name : Intel(R) Xeon(R) CPU
2008 Sep 22
1
Profiling on Multicore and Parallel Systems
Hello All,
In general when we use Rprof for performance evaluation on
Multicore systems the output provides the time on the basis of the "user"
time and the sampling time is equal to the the user time as reported by
system.time. This does not seem right behavior when R is linked to
BLAS/Lapack or other libraries which are optimized for parallel or multicore
architectures as
2008 Sep 22
1
Profiling on Multicore and Parallel Systems
Hello All,
In general when we use Rprof for performance evaluation on
Multicore systems the output provides the time on the basis of the "user"
time and the sampling time is equal to the the user time as reported by
system.time. This does not seem right behavior when R is linked to
BLAS/Lapack or other libraries which are optimized for parallel or multicore
architectures as
2011 Oct 16
1
multicore combn
This is a 'rather than re-invent the wheel' post. Has anyone out there
re-written combn so that it can be parallelized - with multicore, snow, or
otherwise? I have a job that requires large numbers of combinations, and
rather than get all of the index values, then crank it through mclapply, I
was wondering if there was a way to just do this natively within a function.
Just curious.
2011 Oct 10
5
multicore by(), like mclapply?
dear r experts---Is there a multicore equivalent of by(), just like
mclapply() is the multicore equivalent of lapply()?
if not, is there a fast way to convert a data.table into a list based
on a column that lapply and mclapply can consume?
advice appreciated...as always.
regards,
/iaw
----
Ivo Welch (ivo.welch at gmail.com)
2011 Aug 17
1
R cmd check and multicore foreach loop
Hi,
in R 2.12.1, R CMD check hangs when building a vignette that uses a
foreach loop with the doMC parallel backend.
This does not happen in R 2.13.1, nor if I use doSEQ instead of doMC.
All versions of multicore, doMC and foreach are the same on both my R
installations.
Has anybody encountered a similar issue?
Thank you.
Renaud
###
UNIVERSITY OF CAPE TOWN
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2006 Dec 01
4
simple parallel computing on single multicore machine
Dear List,
the advent of multicore machines in the consumer segment makes me wonder
whether it would, at least in principle, be possible to divide a
computational task into more slave R processes running on the different
cores of the same processor, more or less in the way package SNOW would
do on a cluster. I am thinking of simple 'embarassingly parallel'
problems, just like inverting
2010 Jan 15
1
Using multicore with an open pdf device results in corrupt pdf (PR#14186)
The attached code produces corrupted pdfs (test2.pdf, test4.pdf and
test5.pdf). The resulting pdf depends on how many cores are available on
the machine.
I don't see why there should be any difference between the pdfs (exept for
the timestamp). Doing many operations involving mclapply can increase the
size of the resulting pdf by ten times!
Thank you for checking this.
require(multicore)
2011 Jul 20
4
R on Multicore for Linux
Hi all,
I have R installed on a box, which is running on a machine with 16 core and
Redhat - Linux. I am handling huge (size of dataset will be 5 GB) dataset.
Lets assume that my data is in the form of structured (multiple) logs. I
access the data by using all.files(). Since by default basic version of R
utilizes single core, the processing of my analysis code is taking too much
time. I got to
2010 Feb 25
1
multicore in R
Hi,
i have a function:
zz<- (constrOptim(c(.5,0), fr, grr, ui=rbind(c(-1,0),c(1,-1)), ci=c(-0.9,0.1)))
i can get the result by using command (for example): zz$par
now if i can use multicore:
zz<-parallel(constrOptim(c(.5,0), fr, grr, ui=rbind(c(-1,0),c(1,-1)),
ci=c(-0.9,0.1)))
result < collect(zz)
i cant get my the result: result$par because multicore add process id.
for example:
2011 Jun 06
1
parallel computing package on a multicore windows workstation
Hi,
I would like to get suggestion about parallel computing package on a
multicore windows workstation. I tried doSMP, but it crashes R a lot. I am
wondering if "snow" and "snowfall" can be used on a single workstation (i,e,
not cluster). At suggestion would be appreciated,
Best,
Richard
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2011 Dec 29
1
How would I rewrite my code so that I can implement the use of multicore on an Rstudio server to run regsubsets using the "exhaustive" method? The data has 1200 variables and 9000 obs so the code has been shortened here:
How would I rewrite my code so that I can implement the use of multicore on
an Rstudio server to run regsubsets using the "exhaustive" method? The data
has 1200 variables and 9000 obs so the code has been shortened here:
model<-regsubsets(price~x + y + z + a + b + ...., data=sample,
nvmax=500, method=c("exhaustive"))
Our server is a quad core 7.5 gb ram, is that
2012 Jul 12
4
Two R sessions on multicore computer seem to inhibit each other ?
Dear R-helpers,
I am puzzled by the following observation:
On my home dual core Windows desktop computer, I am used to running two R
sessions in parallel. These do very well in using the full CPU of the
computer (half each) and don't seem to slow each other down.
Today I have started some large computation effort in one of our university
labs, and I intended to go for two R sessions per