Martin Morgan
2012-Nov-04 20:29 UTC
[Rd] parallel::mclapply list coercion limits opportunities for code re-use?
The attached diff address the following issues in mclapply mclapply coerces non-lists or objects (S3 or S4) to lists, but a list may not be an efficient representation and is not required if the object implements length, [, and [[ methods (lapply must also work on the object, either through coercion to a list at the 'inner.do' level or through other means, e.g., promoting lapply to a generic and writing a method specialized for the object). As written someone wishing to implement mclapply on an object not efficiently represented as a list would need to promote mclapply to a generic, and then re-implement an mclapply method for their object, rather than re-using the existing code. mcparallel is not consistently invoked with a 'name' argument; a name seems to be superfluous to the code. Creating the variable 'schedule' makes a full copy of a potentially large object in the master process; delaying until required in the inner.do function may (?) result in less copying. Avoiding coercion to a list is similar to a suggestion for pvec. https://stat.ethz.ch/pipermail/r-devel/2012-October/065097.html Martin -- Computational Biology / Fred Hutchinson Cancer Research Center 1100 Fairview Ave. N. PO Box 19024 Seattle, WA 98109 Location: Arnold Building M1 B861 Phone: (206) 667-2793 -------------- next part -------------- A non-text attachment was scrubbed... Name: mclapply.diff Type: text/x-patch Size: 1924 bytes Desc: not available URL: <https://stat.ethz.ch/pipermail/r-devel/attachments/20121104/8c735cb6/attachment.bin>
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