Dear all, I'm running a number of Bayesian binomial regression models using 
jags (interfacing with R via R2jags) on a Mac server with quad core processor 
running at 2.66 Ghz with 6 GB memory under Snow Leopard (session info below).  
As the models contain around 30 predictors and between 5 to 15 thousand 
observations, the time required to run a single model with 3 chains with an 
adequate number of iterations to ensure convergence is around 2 hours.  While I 
can live with this for the occasional run, it will be a problem when I need to 
run several dozen different models. 
Perhaps some of you have relevant experience and can advise if this run time 
could be significantly reduced using, for example, one of the parallel 
computing packages?  And if so, which one?  I should add that I'm not clear if 
jags can directly avail of multicore processing even if available - it might be 
necessary to program a Gibbs or Metropolis sampler directly in R.....
Any thoughts/suggestions?
Best wishes,
Alan Kelly

sessionInfo()
R version 2.12.1 (2010-12-16)
Platform: x86_64-apple-darwin9.8.0/x86_64 (64-bit)

locale:
[1] en_IE.UTF-8/en_IE.UTF-8/C/C/en_IE.UTF-8/en_IE.UTF-8

attached base packages:
[1] splines   stats     graphics  grDevices utils     datasets  methods   base  
   

other attached packages:
[1] car_2.0-9       survival_2.36-2 nnet_7.3-1      MASS_7.3-9      
foreign_0.8-41 

loaded via a namespace (and not attached):
[1] tools_2.12.1

 
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