Upgrade to Pro
— share decks privately, control downloads, hide ads and more …
Speaker Deck
Features
Speaker Deck
PRO
Sign in
Sign up for free
Search
Search
厳正な抽選をhubotで行う話
Search
Sota Sugiura
November 03, 2016
Technology
4.2k
2
Share
厳正な抽選をhubotで行う話
11/3 PHPカンファレンス東京 2016
くだりのhubot scriptはこちら
https://github.com/sota1235/hubot-reviewer-choice
Sota Sugiura
November 03, 2016
More Decks by Sota Sugiura
See All by Sota Sugiura
内製したSlack Appで頑張るIncident Response@Waroom Meetup #1 / Incident Response with Slack App in 10X
sota1235
0
1.9k
20220926_セキュリティチームの今_for_Drs._Prime_公開用.pdf
sota1235
0
190
再発防止策を考える技術 / #phpconsen
sota1235
10
4.1k
How to choose the best npm module for your team?
sota1235
9
650
Realtime Database for high traffic production application
sota1235
7
4.3k
Road to migrate JP Web as a microservice
sota1235
4
1.7k
インターフェース再入門 / Think Interface again
sota1235
6
11k
再発防止策を考える技術 #phpconfuk_rej
sota1235
1
1.4k
Update around Firebase #io18
sota1235
3
4.4k
Other Decks in Technology
See All in Technology
会社説明資料|株式会社ギークプラス ソフトウェア事業部
geekplus_tech
0
210
データモデリング通り #5オンライン勉強会: AIに『ビジネスの文脈』を教え込むデータモデリング
datayokocho
0
220
Forget technical debt
ufried
0
180
freeeで運用しているAIQAについて
qatonchan
0
470
自動テストだけで リリース判断できるチームへ - 鍵はテストの量ではなくリリース判断基準の再設計にあった / Redesigning Release Criteria for Lightweight Releases
ewa
7
3.6k
要件定義の精度を高めるための型と生成AIの活用 / Using Types and Generative AI to Improve the Accuracy of Requirements Definition
haru860
0
310
みんなの考えた最強のデータ基盤アーキテクチャ'26前期〜前夜祭〜ルーキーズ_資料_遠藤な
endonanana
0
200
Oracle Exadata Database Service on Cloud@Customer X11M (ExaDB-C@C) サービス概要
oracle4engineer
PRO
2
8k
そのSLO 99.9%、本当に必要ですか? 〜優先度付きSLOによる責任共有の設計思想〜 / Is that 99.9% SLO really necessary? Design philosophy of shared responsibility through prioritized SLOs
vtryo
0
500
React 19×Rustツール 進化の「ズレ」を設計で埋める
remrem0090
1
110
生成AIはソフトウェア開発の革命か、ソフトウェア工学の宿題再提出なのか -ソフトウェア品質特性の追加提案-
kyonmm
PRO
2
870
Digital Independence: Why, When and How
wannesrams
0
310
Featured
See All Featured
How to Grow Your eCommerce with AI & Automation
katarinadahlin
PRO
1
180
What the history of the web can teach us about the future of AI
inesmontani
PRO
1
550
Become a Pro
speakerdeck
PRO
31
5.9k
Building Experiences: Design Systems, User Experience, and Full Site Editing
marktimemedia
0
500
How to Build an AI Search Optimization Roadmap - Criteria and Steps to Take #SEOIRL
aleyda
1
2k
Data-driven link building: lessons from a $708K investment (BrightonSEO talk)
szymonslowik
1
1k
So, you think you're a good person
axbom
PRO
2
2k
I Don’t Have Time: Getting Over the Fear to Launch Your Podcast
jcasabona
34
2.7k
Templates, Plugins, & Blocks: Oh My! Creating the theme that thinks of everything
marktimemedia
31
2.8k
Organizational Design Perspectives: An Ontology of Organizational Design Elements
kimpetersen
PRO
1
690
Optimising Largest Contentful Paint
csswizardry
37
3.7k
Test your architecture with Archunit
thirion
1
2.2k
Transcript
ݫਖ਼ͳநબΛIVCPUͰߦ͏ !TPUB
ࣗݾհ w !TPUB w ͖ΓΜͱݺΜͰ͍ͩ͘͞
ࣗݾհ w !TPUB w ͖ΓΜͱݺΜͰ͍ͩ͘͞ w ͖ͳݴ༿ɿ1)1
ࣗݾհ w !TPUB w ͖ΓΜͱݺΜͰ͍ͩ͘͞ w ͖ͳݴ༿ɿ1)1 w ݏ͍ͳݴ༿ɿ1)1
ʑͷ։ൃαΠΫϧ
ϔΠγϟͷ߹ w ཁ݅ɾ༷ܾΊͯݟੵΓ w ։ൃ w ϨϏϡʔ w ϦϦʔε
͋ΔνʔϜͰͷ
ϨϏϡʔґཔ 䯡 ֣ךׂ׃וֲך Ͳͳ͔ͨϨϏϡʔ͓ئ͍͠·͢ʂ
࣌ؒޙʜ 䯡 ֣ךׂ׃וֲך Ͳͳ͔ͨϨϏϡʔΛ ɾТɾA
࣌ؒޙʜ 䯡 ֣ךׂ׃וֲך Ͳͳ͔ͨϨϏϡʔΛʜ ɾТʜ
ϨϏϡΞʔબͼͷ w νʔϜϝϯόʔ͕ଟ͍ͱʮ୭͔ݟΔΖʯʹͳ Γ͕ͪ w ͍͠λΠϛϯάͩͱݟΔଆޙճ͠ʹ͕ͪ͠ w ୯७ʹ4MBDLݟͯͳ͍࣌ʜ
࣌ʮΤϯδχΞͬΆ͘ղܾ͍ͨ͠ʜʯ
ͱ͋Δ4MBDLͷIVCPU
͑ͦ͏
༌ೖͯ͠Έͨ
IVCPUSFWJFXFSDIPJDF
͑ͦ͏٩ ˊᗜˋ و
͍͔͕ͭ͘ʜ
w ͕ࣗநબ͞ΕΔ͜ͱ͕͋Δ w ϨϏϡΞʔީิ͕ଟ͍ͱຖճίϚϯυଧͭͷ͕ ࢸۃͩΔ͍ w σόοά৬ਓʹΑΔόάใࠂ
վળ͢Δ
ࣗΛநબީิ͔Β֎͢
άϧʔϓػೳΛՃ
ղܾʂ w Ұճઃఆ͢ΕຖճίϚϯυଧͪ͞ͳͯ͘Α ͘ͳͬͨ w ηϧϑϨϏϡʔ͠ͳͯ͘Α͘ͳͬͨ w όάେํۦஞ͞Εͨ
Կ͕Α͍͔ w ϨϏϡΞʔΛબͿ͕࣌ؒܶతʹॖ͞Εͨ w ϨϏϡΞʔબͼҎ֎Ͱ׆༻͞Εͨ w ݫਖ਼ͳநબͳͷͰΈΜͳૉʹϨϏϡʔ͢Δ w ݫਖ਼ͳͷͰٯΒ͏༨͕ͳ͍
Կ͕Α͍͔ w ϨϏϡΞʔΛબͿ͕࣌ؒܶతʹॖ͞Εͨ w ϨϏϡΞʔબͼҎ֎Ͱ׆༻͞Εͨ w ݫਖ਼ͳநબͳͷͰΈΜͳૉʹϨϏϡʔ͢Δ w ݫਖ਼ͳͷͰٯΒ͏༨͕ͳ͍
ࠓ·Ͱ 䯡 ֣ךׂ׃וֲך ʮϨϏϡʔ͓ئ͍͠·͢ʯ
ࠓ·Ͱ 䯡 ֣ךׂ׃וֲך ʮϨϏϡʔ͓ئ͍͠·͢ʯ
IVCPUʹΑΔϓϩΩγ 䯡 ֣ךׂ׃וֲך
IVCPUʹΑΔϓϩΩγ 䯡 ֣ךׂ׃וֲך hubot choice
IVCPUʹΑΔϓϩΩγ 䯡 ֣ךׂ׃וֲך hubot choice ݫਖ਼ʹ நબ͠·ͨ͠
IVCPUʹΑΔϓϩΩγ 䯡 ֣ךׂ׃וֲך hubot choice ݫਖ਼ʹ நબ͠·ͨ͠ ݫਖ਼ͳΒ ͠ΐ͏͕ͳ͍Ͷ
IVCPUʹΑΔϓϩΩγ 䯡 ֡ך֥֪֔
IVCPUʹΑΔϓϩΩγ 䯡 ֡ך֥֪֔ hubot choice
IVCPUʹΑΔϓϩΩγ 䯡 ֡ך֥֪֔ hubot choice ݫਖ਼ʹ நબ͠·ͨ͠
IVCPUʹΑΔϓϩΩγ 䯡 ֡ך֥֪֔ hubot choice ݫਖ਼ͳΒ ͠ΐ͏͕ͳ͍Ͷ ݫਖ਼ʹ நબ͠·ͨ͠
·ͱΊ w ࠷খݶͷ࿑ྗͰ՝ΛղܾͰ͖ͨ w ࡞ͬͨͷ͕ΘΕͯخ͍͠ʂ w ͰճҎ্ίϚϯυ͕࣮ߦ͞ΕͯΔ w ΈΜͳIVCPUTDSJQU࡞Ζ͏ʂ
Ҏ্ʂ