Oh - and an extensive set of benchmarks would be very useful if people
wanted to try to re-implement some of those core algorithms using
alternative technologies like numba.

On Mon, 21 Mar 2016 at 12:55 federico vaggi <vaggi.feder...@gmail.com>
wrote:

> This is incredibly well detailed and explained.  The only suggestion I'd
> add is to add some benchmarks (mostly for speed, the change in memory usage
> should be predictable, I think).
>
> On Mon, 21 Mar 2016 at 05:37 lin yenchen <yenchenlin1...@gmail.com> wrote:
>
>> Hello everyone,
>> I'm Yen-Chen Lin, a senior student at Tsing Hua University major in
>> Computer Science.
>> (Here is my Github account <https://github.com/yenchenlin1994>)
>>
>> At first, thanks for reviewing and providing lots of conducive advice on
>> my previous PRs
>> <https://github.com/scikit-learn/scikit-learn/pulls/yenchenlin1994>,
>> I do learn a lot and I'm really enjoy in contributing scikit-learn.
>>
>> This summer, I really want to participate Google Summer of Code program
>> with scikit-learn to increase my involvement in the project.
>> I've written a proposal
>> <https://github.com/scikit-learn/scikit-learn/wiki/GSoC-2016-Proposal:-Adding-fused-types-to-Cython-files>
>>  for
>> this year's idea - Adding fused types to Cython files
>> In order to make my proposal fit organization's need, any comments /
>> reviews on the proposal is sincerely welcome!
>>
>> Best,
>> YenChen Lin
>>
>> ------------------------------------------------------------------------------
>> Transform Data into Opportunity.
>> Accelerate data analysis in your applications with
>> Intel Data Analytics Acceleration Library.
>> Click to learn more.
>> http://pubads.g.doubleclick.net/gampad/clk?id=278785351&iu=/4140
>> _______________________________________________
>> Scikit-learn-general mailing list
>> Scikit-learn-general@lists.sourceforge.net
>> https://lists.sourceforge.net/lists/listinfo/scikit-learn-general
>>
>
------------------------------------------------------------------------------
Transform Data into Opportunity.
Accelerate data analysis in your applications with
Intel Data Analytics Acceleration Library.
Click to learn more.
http://pubads.g.doubleclick.net/gampad/clk?id=278785351&iu=/4140
_______________________________________________
Scikit-learn-general mailing list
Scikit-learn-general@lists.sourceforge.net
https://lists.sourceforge.net/lists/listinfo/scikit-learn-general

Reply via email to