Add Software Engineering for Machine Learning #1809
Merged
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This list includes articles recommending or describing software engineering best practices for building machine learning applications.
More informations can be found in the old pull request which was automatically closed.
It is more than 30 days old and has over 420 stars.
We reviewed 2 PRs: 1 and 2.
Some linting issues were ignored because the emojis used to flag publications as academic or must-read (see list) are not considered a description.
https://github.com/SE-ML/awesome-seml/blob/master/readme.md
Software engineering is complementary to any machine learning project. Ensuring good software engineering practices enhances development, deployment and maintenance of production level machine learning models. Until now, there is no awesome list to tackle this topic.
By submitting this pull request I confirm I've read and complied with the below requirements 🖖
Please read it multiple times. I spent a lot of time on these guidelines and most people miss a lot.
Requirements for your pull request
Try to prioritize unreviewed PRs, but you can also add more comments to reviewed PRs. Go through the below list when reviewing. This requirement is meant to help make the Awesome project self-sustaining. Comment here which PRs you reviewed. You're expected to put a good effort into this and to be thorough. Look at previous PR reviews for inspiration.
Add Name of List
.Add Swift
Add Software Architecture
Update readme.md
Add Awesome Swift
Add swift
Adding Swift
Added Swift
- [iOS](…) - Mobile operating system for Apple phones and tablets.
- [Framer](…) - Prototyping interactive UI designs.
- [iOS](…) - Resources and tools for iOS development.
- [Framer](…)
- [Framer](…) - prototyping interactive UI designs
Requirements for your Awesome list
That means 30 days from either the first real commit or when it was open-sourced. Whatever is most recent.
awesome-lint
on your list and fix the reported issues. If there are false-positives or things that cannot/shouldn't be fixed, please report it.Mobile operating system for Apple phones and tablets.
Prototyping interactive UI designs.
Resources and tools for iOS development.
Awesome Framer packages and tools.
If you have not put in considerable effort into your list, your pull request will be immediately closed.
awesome-name-of-list
.awesome-swift
awesome-web-typography
awesome-Swift
AwesomeWebTypography
# Awesome Name of List
.# Awesome Swift
# Awesome Web Typography
# awesome-swift
# AwesomeSwift
awesome-list
&awesome
as GitHub topics. I encourage you to add more relevant topics.Contents
, notTable of Contents
.https://github.com/<user>/<repo>/community/license/new?branch=master&template=cc0-1.0
(replace<user>
and<repo>
accordingly).license
orLICENSE
in the repo root with the license text.unicorn
.contributing.md
. Casing is up to you.Example:
- [AVA](…) - JavaScript test runner.
Node.js
, notNodeJS
ornode.js
.You can still use Travis for list linting, but the badge has no value in the readme.
Inspired by awesome-foo
orInspired by the Awesome project
kinda link at the top of the readme. The Awesome badge is enough.Go to the top and read it again.