[scikit-learn] Sprint discussion points?
Hanmin Qin
qinhanmin2005 at sina.com
Thu Feb 21 04:01:56 EST 2019
Thanks. I'll take part in the OPTICS discussion and I'd like to see it at 14:00, though 10:00 will also be acceptable. The core issue now is how to design the API (i.e., use multiple extraction methods without calculating RD/CD again), and how to deal with the mysterious additions in _extract_optics (See https://github.com/scikit-learn/scikit-learn/issues/12375. I'm unable to contact the original author so I tend to follow the original paper and remove these additions. This will get rid of some parameters and make the interface much more friendly IMO).
For other issues, I don't think you need to consider my time. I'll comment on relevant issues if I have any thoughts.
Hanmin Qin
----- Original Message -----
From: Joel Nothman <joel.nothman at gmail.com>
To: Scikit-learn user and developer mailing list <scikit-learn at python.org>, Hanmin Qin <qinhanmin2005 at sina.com>
Subject: Re: [scikit-learn] Sprint discussion points?
Date: 2019-02-21 15:40
@Hanmin are there particular conversations you are keen to take part in, and particular times that suit you?
On Thu., 21 Feb. 2019, 9:13 am Andreas Mueller, <t3kcit at gmail.com> wrote:
On 2/20/19 4:40 PM, Gael Varoquaux wrote:
> On Tue, Feb 19, 2019 at 06:16:20PM -0500, Andreas Mueller wrote:
>> I put a draft schedule here:
>> https://github.com/scikit-learn/scikit-learn/wiki/Upcoming-events#technical-discussions-schedule
> I'd like to discuss sample_props. They are important to me.
>
> Should I add them somewhere on the schedule? Maybe in a place where
> people who care about them (AFAIK Joel and Alex also do) are available?
>
Sure, sounds like a plan. If they are discussed I'd like to be part of
the discussion if possible given the complexity involved (and because I
tried to implement it twice). But feel free to have it Monday without me
if that works better.
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