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I use mclapply for all my "embarassingly parallel" computations. I find it clean and easy to use, and when arguments mc.cores = 1 and mc.preschedule = TRUE I can insert browser() in the function inside mclapply and debug line by line just like in regular R. This is a huge help in getting code to production quicker.

What does foreach offer that mclapply does not? Is there a reason I should consider writing foreach code going forward?

If I understand correctly, both can use the multicore approach to parallel computations (permitting forking) which I like to use for performance reasons.

I have seen foreach being used in various packages, and have read the basics of it, but frankly I don't find it as easy to use. I also am unable to figure out how to get the browser() to work in foreach function calls. (yes I have read this thread browser mode with foreach %dopar% but didn't help me to get the browser to work right).

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    one reason we sometimes use foreach rather than parallel is the simple fact that mclapply does not work by default under windows (and many users still use windows). Although I could perform OS detection, as you noticed it also requires functions to be implemented a bit differently. – FM Kerckhof Jan 8 '18 at 15:12

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