I'd like to use Haskell for stochastic simulation, but I don't know how. I've read Hutton's 'Programming in Haskell', and I'm comfortable writing deterministic functional programs. However, I don't know how to start writing stochastic simulations of the sort that are easy in imperative languages like R or python. Is there a tutorial or primer on this that I could read, or can anyone provide some tips on getting started?
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There's a nice selfcontained paper Erwig and Kollmansberger: Functional Pearls  Probabilistic Functional Programming in Haskell on this topic. I used this as a starting point for writing a natural language processor based on Hidden Markov Models in Haskell. There's a package that is based on this paper, which also seems to provide a basic interface to R plotting. There's also an entry on the HaskellWiki with more links to hackage. In particular, the ProbabilityMonads package might be useful for you. 


http://learnyouahaskell.com/afistfulofmonads#thelistmonad This small section in Learn You a Haskell talks about using the List monad and functor functions to easily deal with nondeterminism. May be a little simplistic depending on what your needs are, but make good use of the tools that are already in the standard library. 

