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
猫と私とGCP
Search
Masakazu Muraoka
May 23, 2018
Technology
560
4
Share
猫と私とGCP
ネコとワタシとGCPとの関係です
2018.5.23に開催されたGCPUG KOBE x OSAKA #1のLTスライドです
Masakazu Muraoka
May 23, 2018
More Decks by Masakazu Muraoka
See All by Masakazu Muraoka
たぶんオレのはPMじゃない
bathtimefish
0
49
Build2019で発表された機械学習系をためしてみた
bathtimefish
0
97
Other Decks in Technology
See All in Technology
サンプリングは「作る」のか「使う」のか? 分散トレースのコストと運用を両立する実践的戦略 / Why you need the tail sampling and why you don't want it
ymotongpoo
4
170
AI-Assisted Contributions and Maintainer Load - PyCon US 2026
pauloxnet
1
120
AI飲み会幹事エージェントを作っただけなのに
ykimi
0
180
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
880
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
610
いつの間にかデータエンジニア以外の業務も増えていたけど、意外と経験が役に立ってる
zozotech
PRO
0
510
変化の激しい時代をゴキゲンに生き抜くために 〜ストレスマネジメントのススメ〜
kakehashi
PRO
5
1.3k
React 19×Rustツール 進化の「ズレ」を設計で埋める
remrem0090
1
110
Oracle AI Database@Azure:サービス概要のご紹介
oracle4engineer
PRO
6
1.6k
カオナビに Suspenseを導入するまで / The Road to Suspense at kaonavi
kaonavi
1
450
鹿野さんに聞く!CSSの最新トレンド Ver.2026
tonkotsuboy_com
6
2.9k
[Scram Fest Niigata2026]Quality as Code〜AIにQAの思考を再現させる試み〜
masamiyajiri
1
320
Featured
See All Featured
Exploring the relationship between traditional SERPs and Gen AI search
raygrieselhuber
PRO
2
3.9k
Building a Scalable Design System with Sketch
lauravandoore
463
34k
Claude Code のすすめ
schroneko
67
220k
The Pragmatic Product Professional
lauravandoore
37
7.3k
Art, The Web, and Tiny UX
lynnandtonic
304
21k
Claude Code どこまでも/ Claude Code Everywhere
nwiizo
65
55k
We Analyzed 250 Million AI Search Results: Here's What I Found
joshbly
1
1.3k
Context Engineering - Making Every Token Count
addyosmani
9
870
The innovator’s Mindset - Leading Through an Era of Exponential Change - McGill University 2025
jdejongh
PRO
1
170
Building an army of robots
kneath
306
46k
Thoughts on Productivity
jonyablonski
76
5.1k
Design and Strategy: How to Deal with People Who Don’t "Get" Design
morganepeng
133
19k
Transcript
Copyright(c) Kobe Digital Labo Inc. ೣͱࢲͱ($1 ਆށσδλϧɾϥϘଜԬਖ਼ ($16(,0#&Y0TBLB
Copyright(c) Kobe Digital Labo Inc. HTML5-WEST.jpද / html5j ϚʔΫΞοϓ෦ ෦
/ HTML5 Experts.jp ϝϯόʔ NPO๏ਓຊΣΞϥϒϧσόΠεϢʔβʔձཧࣄ ਆށࢢΣΞϥϒϧσόΠεਪਐձٞϝϯόʔ JS Boardษڧձ ओ࠻ ΉΒ͓͔ɹ·͔ͣ͞ ଜԬਖ਼ גࣜձࣾਆށσδλϧɾϥϘ ࣾ֎औక ৽ࣄۀɹIoT൝ @bathtimefish 8FC *P5ؔ࿈ٕज़ʹ͍ͭͯͷߨԋࣥචΛ ΘΓͱͨ͘͞Μͬͯ·͢ɻ
Copyright(c) Kobe Digital Labo Inc. ϘΫͱ(PPHMF
Copyright(c) Kobe Digital Labo Inc. (%(ژͰ)BDLBUIPOͱ͔%FWFMPQFS%BZͱ͔։࠵ͨ͘͠Β͍͔Β
http://trendy.nikkeibp.co.jp/article/tech/20071010/1003339/ ͖͔͚ͬ(PPHMF%FTLUPQͰΨδΣοτͭͬͨ͘Β 5γϟπΒ͔ͬͨΒ
https://www.slideshare.net/bathtimefish/google-innovationnext-kyoto-gtug-20111218-10679038 ʹ(PPHMF(MBTTͷొΛ༧ݴͨ͠ͷϫΠ
Copyright(c) Kobe Digital Labo Inc. ωίͱϫλγ
Copyright(c) Kobe Digital Labo Inc. +BWB4DSJQUͰϚΠίϯηϯαʔ ੍ޚͯͨ͠Β͞Εͨ ܦΤϨΫτϩχΫε ߸
Copyright(c) Kobe Digital Labo Inc. ೣͷτΠϨΛࢹ͢Δ ηϯαʔΛͭͬͯࣗ͘ Ͱ*P5ͯͨ͠Βɺ ˣઐ༻εϚϗΞϓϦ
Copyright(c) Kobe Digital Labo Inc. IUUQTQFDJBMOJLLFJCQDPKQBUDM 5455&$@U@5.* ܦςΫϊϩδʔΦϯϥΠϯ41&$*"- νͷೣτΠϨ͕શࠃʹ ࡽ͞ΕΔɻ
͏ͪͷωί͔Θ͍͍ೣ͔Θ͍͍
Ϟʔγϣϯηϯα )551 )551 ($. ΞϓϦ 8FCαʔό 4NBSU$BU5PJMFUॳظߏʢʣ
Copyright(c) Kobe Digital Labo Inc. ӡ༻͢ΔσόΠε͕յΕͯ ์ஔ िؒલʹ࠶։ൃΛ։࢝ ʂʂʂ͔ͤͬ͘ͳΜͰݱͷٕज़ͰΔʂʂʂ
Copyright(c) Kobe Digital Labo Inc. 4NBSU$BU5PJMFU৽ߏʢʣ ͳΜ͔($1Ͱ.JDSP4FSWJDF"SDIJUFDUVSFʹͳͬͨ .2554
Copyright(c) Kobe Digital Labo Inc. ϝϦοτ ͳΜͱ͍ͬͯແྉʂʂ ωίͷτΠϨ༻ճʙճ ͋ͱαʔόαΠυͷίʔυ΄ͱΜͲॻ͍ͯͳ͍ͱ͔ϝϯςϑϦʔͱ͔
Copyright(c) Kobe Digital Labo Inc. ͭͬ͜ΈͲ͜Ζ
Copyright(c) Kobe Digital Labo Inc. ͜Εͬͯɺɺ .2554
Copyright(c) Kobe Digital Labo Inc. ͜ΕͰΑ͘Ͷʁ )551
Copyright(c) Kobe Digital Labo Inc. ͦ͏ͳΜ͚ͩͲ .255ͰΓ͔ͨͬͨͷʂʂ
Copyright(c) Kobe Digital Labo Inc. αʔόϨεόϯβΠɺ($1όϯβΠͰ"[VSFͰ"84ͰͰ͖ΔΑ ·ͱΊ 'JSFCBTFόϯβΠɺ)PTUJOHखܰͳͷ͕ଞΑΓ͍͍ײ͡ ࡉ͔͍͜ͱσϞΈ͍ͯͩ͘͞
Copyright(c) Kobe Digital Labo Inc. 5IBOLT