That said, I would think random forests would get a lot of the benefits that deep learning tasks might get, since they also have a lot of hyperparameters. Boosting tasks would be interesting as well, since swapping the estimator used could make a huge difference, though that may be trickier to implement.
On Tue, Mar 24, 2015 at 5:01 PM, Kyle Kastner <kastnerk...@gmail.com> wrote: > It might be nice to talk about optimizing runtime and/or training time > like SMAC did in their paper. I don't see any reason we couldn't do > this in sklearn, and it might be of value to users since we don't > really do deep learning as Andy said. > > On Tue, Mar 24, 2015 at 4:52 PM, Andy <t3k...@gmail.com> wrote: >> On 03/24/2015 04:38 PM, Christof Angermueller wrote: >>> Thanks Andy! I replied to your comments: >>> https://docs.google.com/document/d/1bAWdiu6hZ6-FhSOlhgH-7x3weTluxRfouw9op9bHBxs/edit?usp=sharing. >>> >>> I summary, >>> * I will not mentioned parallelization as an extended features, >>> * suggest concrete data sets for benchmarking, >>> * mentioned tasks for which I expect an improvement. >> It is also important to have algorithms for which we expect improvements. >> I'm not sure how much we want to focus on deep learning, as the MLP is >> not merged. >> >>> Any further ideas? >>> Where can I find the PR for gaussian_processes? I would like to know >>> about what will be implemented and to which extend I can contribute. >>> >> As much as you want ;) >> >> ------------------------------------------------------------------------------ >> Dive into the World of Parallel Programming The Go Parallel Website, >> sponsored >> by Intel and developed in partnership with Slashdot Media, is your hub for >> all >> things parallel software development, from weekly thought leadership blogs to >> news, videos, case studies, tutorials and more. Take a look and join the >> conversation now. http://goparallel.sourceforge.net/ >> _______________________________________________ >> Scikit-learn-general mailing list >> Scikit-learn-general@lists.sourceforge.net >> https://lists.sourceforge.net/lists/listinfo/scikit-learn-general ------------------------------------------------------------------------------ Dive into the World of Parallel Programming The Go Parallel Website, sponsored by Intel and developed in partnership with Slashdot Media, is your hub for all things parallel software development, from weekly thought leadership blogs to news, videos, case studies, tutorials and more. Take a look and join the conversation now. http://goparallel.sourceforge.net/ _______________________________________________ Scikit-learn-general mailing list Scikit-learn-general@lists.sourceforge.net https://lists.sourceforge.net/lists/listinfo/scikit-learn-general