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
AI Company
Search
Sponsored
·
Your Podcast. Everywhere. Effortlessly.
Share. Educate. Inspire. Entertain. You do you. We'll handle the rest.
→
Sungjoo Ha
May 24, 2022
Technology
1k
0
Share
Embed
Copy iframe code
Copy JS code
Copy link
Start on current slide
AI Company
Google cloud academy 발표 자료
Sungjoo Ha
May 24, 2022
More Decks by Sungjoo Ha
See All by Sungjoo Ha
AI in Social Discovery -- Blending Research and Production
shurain
2
1.7k
Bridging the Gap: AI Research and Real-World Deployment in AI Companies
shurain
0
710
AI Company
shurain
0
350
제품에 기여하는 머신러닝 -- 연구에서 고객까지
shurain
0
350
Research in Production Environment
shurain
0
2.4k
Zen of NumPy
shurain
1
1.1k
Other Decks in Technology
See All in Technology
2026TECHFRESH畢業分享會 - Lightning Talk - 資料也要 CI/CD? 用 Airbyte 自動化資料同步
line_developers_tw
PRO
0
1k
白金鉱業Meetup_Vol.24_「AIエージェントは分けるほど良い」は本当か? / Is it true that “the more you divide AI agents, the better”?
brainpadpr
1
370
Claude Codeとのおしゃべりでセマンティックモデルの定義からダッシュボード作成まで完成させる
nic_sugiyama
0
100
【セミナー資料】Claude Code をセキュアに使うための考え方と設定の勘どころ / Claude Code Webinar 20260616
masahirokawahara
2
330
【NRUG vol.18】なぜ多くのオブザーバビリティ導入は失敗するのか
nrug_member
0
130
【NRUG vol.18】KubernetesにおけるNew Relicデータ取得量削減の考え方
nrug_member
0
120
NAB Show 2026 動画技術関連レポート / NAB Show 2026 Report
cyberagentdevelopers
PRO
0
200
2026TECHFRESH畢業分享會 - 原生還是跨平台? App 開發踩坑實錄
line_developers_tw
PRO
0
1k
自律型AIエージェントは何を破壊するのか
kojira
0
160
Claude Codeをどのように キャッチアップしているか
oikon48
12
8k
AIのReact習熟度を測る
uhyo
2
560
Socrates × Looker 〜セマンティックレイヤーで進化するデータ分析エージェント〜
hanon52_
3
2.3k
Featured
See All Featured
Rebuilding a faster, lazier Slack
samanthasiow
85
9.5k
[SF Ruby Conf 2025] Rails X
palkan
2
1.1k
How to optimise 3,500 product descriptions for ecommerce in one day using ChatGPT
katarinadahlin
PRO
1
3.6k
Deep Space Network (abreviated)
tonyrice
0
170
The agentic SEO stack - context over prompts
schlessera
0
820
Building Applications with DynamoDB
mza
96
7.1k
Building Flexible Design Systems
yeseniaperezcruz
330
40k
StorybookのUI Testing Handbookを読んだ
zakiyama
31
6.8k
Paper Plane
katiecoart
PRO
1
51k
Practical Tips for Bootstrapping Information Extraction Pipelines
honnibal
25
2k
What the history of the web can teach us about the future of AI
inesmontani
PRO
1
610
SEO for Brand Visibility & Recognition
aleyda
0
4.6k
Transcript
AI Company Google Cloud Academy Hyperconnect Director of AI Sungjoo
Ha May 24th, 2022 Sungjoo Ha 1
AI Company • য়ט ઁ: AI company • ੋఠ֔ ӝࣿਸ
ੜ ഝਊೠ ӝস internet companyۄ ࠛ۷Ҋ ח ݽ߄ੌ दө য • Amazon, Alphabet, Facebook, Alibaba, Tencent, etc. • AI द AI companyח ޖ ܳө? • ݽܰ݅ ѐੋਵ۽ ࢤп೮؍ ݻ о ನੋী ೠ ࣗѐ Sungjoo Ha 2
ࣳೝށ + ਢࢎ ≠ Internet Company Sungjoo Ha 3
Jeff Bezos in 1997 In the book space, there are
more than three million different books worldwide active and in print at any given time across all languages, so when you have that many items, you can literally build a store online that couldn't exist any other way. Sungjoo Ha 4
Aggregators • Zero marginal cost • ٣ణ ইమਸ ౸ݒೞחؘী ୶о
࠺ਊ ٜ ঋ • Distributionী ࠺ਊ ٜ ঋ • Transactionী ࠺ਊ ٜ ঋ • ܳ ӓೠਵ۽ ഝਊೠ Ѫ ҳӖա ಕझ࠘җ э super-aggregator • ੋఠ֔ী ઓೞח Ѫ value proposition ইש • ੋఠ֔ ࢜۽ ח оܳ ߉ইٜҊ ੋఠ֔ ইפݶ ࢿ݀ೡ ࣻ হח ࠺ૉפझܳ ݅ٝ Sungjoo Ha 5
Internet-Enabled Technology • Internet द ӝࣿ • ੋఠ֔ दী ਢಕח
݅ ੋఠ֔ਵ۽ ੋ೧ оמ೧ ӝࣿਸ ഝਊೞח ӝস ઁೠ • ਬ ೯زী ೠ ࣻਸ ߄ఔਵ۽ ࢎਊܳ ೧ೞח Ѫ • ೠ ߊ աইоࢲ A/B test ೞח Ѫ • 1֙ী ೠ ف ߣ ߓನೞ؍ Ѫ • Continuous integration, continuous deployment ١ਵ۽ ݒੌݒੌ ߓನ • ӓױਵ۽ ૣ ఠۨ࣌ ࢎਸ ٜ݅যղҊ product-market-fitਸ ӝ ਤ೧ ࡅܰѱ ח Ѫ оמ೧ • ܳ оמாೞח ઑ ҳઑ Sungjoo Ha 6
Learnings From The Past • Internet company द۽ࠗఠ ࢤп೧ࠁח AI
company • AIо ইפݶ ࢿ݀غ ঋח ࠺ૉפझ • ӝઓী ഃ ࠛоמೞ؍ Ѫ оמ೧ח Ѫ • ઑӘ ؊ ևѱ ೧ࢳ೧ࠁݶ AI दী оמ೧ ࢜۽ ӝࣿਸ ੜ ഝਊೞ ח ഥࢎ Sungjoo Ha 7
Modern ML • അ ࠗ࠙ "AI"ۄ ܻࠛח Ѫ بणী Ӕрਸ
فҊ • ীࢲ ܳ Ҋ ܳ ח Ѫ • ҃ઁ ࠗооܳ о ݆ ٜ݅য ղח Ѫ ب//࠺ب/ъച ण ࣽࢲ • п ޙઁب ѾҴ بण ޙઁ۽ ജೞח ߑߨٜ ߊѼغҊ ਵݴ ী ٮܲ ࢿҗо աয়ח Sungjoo Ha 8
Supervised Learning Examples • male/female • ҃/ߓ҃ •
ೠҴয য • োয ࢸݺ • োয ࢸݺ • ҟҊ, ਬ ܼ • ݂ ܼ Sungjoo Ha 9
Algorithm + Compute + Data • ML ޙઁীࢲ ݏׯڰܻח ف
о ޙઁ • ݽ؛ ࢿמ णࣇীࢲ ծ ҃ • underfitting: ݽ؛ ࣻਊ۱ ૐо • ݽ؛ ࢿמ పझࣇীࢲ ծ ҃ • overfitting: ؘఠ ୶о • അ ML ӝࣿ ݽ؛ ࣻਊ۱(capacity)ਸ ޖೠ טܾ ࣻ • ܳ جܻӝ ਤೠ ҅ ਗҗ • ࠙ೠ ন ؘఠ݅ ਵݶ ҅ࣘ ࢿמ જই • 2010֙ ୡ߈ ীח ۠ ѐ֛ হਵݴ ୭Ӕ ٜয ۠ ܴ ؊ ъചغҊ Sungjoo Ha 10
Solvable Problems • അ AI ӝࣿ۽ ಽ ࣻ ח ޙઁ
• ಣߧೠ ࢎۈ 1ୡ ب दрਸ ٜৈࢲ ಽ ࣻ ח ޙઁ • द௫झܳ ஏೞח ޙઁ • ҳઑܳ צ ݽٚ ޙઁח زചؼ Ѫ Sungjoo Ha 11
AI Strategy • ܲ ۨযٜ যڃ ࢤпਸ ೞҊ ਸө? AI
ۚ ަө? • ٜ ৈ۞ оמࢿਸ ࠁݶࢲ ߬ೞҊ • Google: AI 3ਃࣗܳ ೠ ۽ ݽف ы୶Ҋ ח ݻ উغח ӝস • OpenAI: Ѣ ݽ؛ী ೠ ъೠ ਸ ాೠ ߬ • Tesla: അઓೞח ӝࣿਸ ӓೠਵ۽ ഝਊೞח ߡ౭ஸ ా Sungjoo Ha 12
ӝઓഥࢎ + AI/ML/DL ≠ AI Company Sungjoo Ha 13
Zero Marginal Content • AIо ইפݶ ࢿ݀ೡ ࣻ হח ࠺ૉפझח
ޖ ੌө? • ݻ о ൦ח • Zero marginal cost content creation • GPT-3 (copilot), DALL·E 2 • Super-human decision making • AlphaGo, AlphaFold Sungjoo Ha 14
AI-Enabled Technology • ӝসٜঠ নೠ ߬ਸ ೡ ࣻ ݅
ഥࢎח যڌѱ? • AI दীח ੋఠ֔ द ܴҗ ࠺तೞѱ AI ݽ؛ ٜ ࢎਊೡ Ѫ • ৈӝীࢲ بػ 2ରੋ ѐ֛/ӝࣿ/ޙചܳ ݃ա ੜ ഝਊೞջب ਃೠ ನੋо ؼ Ѫ • ݃ A/B పझܳ ೞח ഥࢎ৬ ইצ ഥࢎо աҊ • CI/CDܳ ഝਊೞח ഥࢎ৬ ইפפ ഥࢎо աח Ѫۢ Sungjoo Ha 15
Learned Business Logic • ࠺ૉפझ ۽ -> ݽ؛ Үജ •
࠺ૉפझ ۽: A ݶ B • ۽Ӓېݠٜ ٜ݅যղח ٘ ݆ ࠗ࠙ ࠺ૉפझ ۽ • ѱ ޤо ؘܲ? ۽Ӓېݠо ೞܖݶ ٜ݅؍Ѧ ҡ ML ॄࢲ ೠ׳ Ѧ۰ࢲ ݅٘ח Ѣ ইפঠ? • ࢎۈࠁ ੜ ೡ ࣻ ח ҃о • Aݶ Bীࢲ A ઑѤ ցޖցޖ ࠂ೮ݶ ࢎۈ ޅೣ • Software 2.0 Sungjoo Ha 16
Software Rot • ࠺ૉפझ ۽ب ࣗਝযب ॅ • ߸ ജ҃
߄Շӝ ٸޙ • ࢜۽ ӝמ ࢤӝҊ, ઁಿਸ Ցয оҊ ೞח ߑೱ ߄ՇҊ, ࢎਊо ߄ՇҊ... Ӓېࢲ ॅ • ࠁా Ѧ যڌѱ ೞջ? ࣗਝয ূפযо ٘ܳ ࣻ • Aݶ B ೮חؘ ઁח Aݶ C ೧ঠ ೠ • Ӕؘ ѱ ݽ؛ݶ • ࣘਵ۽ ؘఠ ࣻೞҊ ܳ ߄ఔਵ۽ ݽ؛ ঌইࢲ ജ҃ী • ؘఠ ऺݶ ࢿמب ؊ જই ࣻ Sungjoo Ha 17
Example • ോܻझ౮ vs ݽ؛ • द ࢎۈ ݅ٚ ോܻझ౮
જওਵա ࣘਵ۽ ࢿמ ೞۅ • ݽ؛ द աࡍਵա ࣘਵ۽ ࢿמ ࢚ थ Sungjoo Ha 18
Ideal • ݽٚ ࢎ Ѿ ਃೠ Ҕী ݽ؛ਸ ഝਊ •
ݽٚ Ѫ زച • ҳӖ द • ݂ झாેਸ زਵ۽ ೞѱ ೞৈ ؘఠࣃఠ պߑ࠺ܳ 40 ಌࣃ х • ౠ ࠺ૉפझ/۽؋ ਃ ޙઁܳ AI ޙઁ۽ ജೡ ࣻ ਵݶ ߬झ • Ӓ۞ݶ ҅ࣘ೧ࢲ ࣘਵ۽ ઁಿ ѐࢶغח ҃ਸ ೡ ࣻ ਸ Ѫ Sungjoo Ha 19
Easy? • औ֎? No • ML/ঌҊ્ܻ, ҅ਗ, ؘఠ ыঠ
ೣ • ݅ ॶݽӝ ਤ೧ ೦࢚ ఠޖפ হ ݆ ҅ਗҗ ؘఠо ਃೞח ঋ • ೡ ࣻח ח ب • Ӓېب ݆ਸࣻ۾ ٙ • ӒܻҊ അ ӝࣿ۽ب оמ • ҙ۲ػ ঠӝ ઑӘ ؊ ೧ࠁݶ... Sungjoo Ha 20
ML Model • ೠػ ؘఠ۽ જ Ѿҗܳ যղ۰ݶ ݽ؛ ஏݶ
Ҋ ݆ ਃ • AI ӝࣿ ߊ ࣘبо • ী ղܽ Ѿۿ ࢜۽ ӝࣿ աয়ݶࢲ Ҋغযঠ ೞח ҃ب ݆ • ୭न ӝࣿ زೱਸ ੜ ಝঠ ೣ • ݽ؛۞ٜ ࣗਝয ূפয݂ب ੜೞח Ѫ ൨ٝ • ݽ؍ೠ ஶపց ӝ߈ ূפয݂ী ೠ Ҋ ਃ • ӝࣿ Բ݅ ߄Շযࢲ ࡅܰѱ ٮۄоࠁݶ ߸҃ ݆ • ഈস ҳઑী ೠ Ҋ ਃ Sungjoo Ha 21
Compute • ݽ؛ਸ ٜ݅ӝ ਤ೧ ҅ ਗ ਃ •
҅ ਗਸ ؘఠ۽ ߄Բח ҃ب ݆ • AlphaGo • Data augmentation • ݽ؛ ࢲࡂب য۰ Sungjoo Ha 22
MLOps • ؘఠ ۄੋ • ࣘਵ۽ ݽ؛ णೞח ۄੋ •
ݽ؛ ࢿמ ز ಣо • ز ݽ؛ ߓನ • Shadow mode Sungjoo Ha 23
Data • ઁಿਸ ా೧ ؘఠܳ ദٙೡ ࣻ ח ؘఠ ۚ
ਃ • যڃ ؘఠܳ যڌѱ ࣻೡө? • যڌѱ ਸ ਸө? • Negative sampling ١ • human-in-the-loop दझమਸ যڌѱ ੜ ೡө? • ݽ؛ ੜ ೞҊ ח যڌѱ ࣘਵ۽ ݽפఠ݂ೞ? • ా ؘఠ ਝযೞझ Sungjoo Ha 24
AI PM • ۽؋ ਃ ޙઁܳ AI ޙઁ۽ যڌѱ ജೡ
ࣻ ਸө? • ܳ ా೧ ࢎਊٜ ݅بо য়ܰҊ ؊ ݆ ؘఠܳ ٜ݅যղҊ ؊ ա ઁಿਵ۽ যח • ਸ ӝ ए ҃ب Ҋ য۰ ҃ب Ҋ • AI ӝࣿਸ ೧ೞҊ ী ݏ ઁಿਸ э ҳࢿ೧ঠ ೣ • ӝദী ೠ ࢎ ࣗాਸ ਤೠ ࢜۽ য/بҳ/۽ࣁझ ਃ Sungjoo Ha 25
TikTok • ߑೠ ন బஎ • ন ਸ ࠁೠח Ѻೞী
ӏݽ ݃ாਸ ాೠ ݽٚ פ ൚ࣻ • ࣚऔѱ బஎܳ ٜ݅ ࣻ ب۾ ب৬ח নೠ ઁ بҳ ઁҕ • ݺߔೠ ਸ ਵ۽ ਸ ࣻ ח ߑधਵ۽ UIܳ ҳࢿ • ೠ ߣী ೞա ࠺٣য়݅ ࠁݴ ࢎਊ swipe ৈࠗ۽ ஂೱਸ ݺߔೞѱ ഛੋ • implicit feedback -> explicit feedback • ஏ ӝ߈ ࢎਊ ݽ؛݂ • ױࣽ ੋध(recognition)ীࢲ Ӓח Ѫ ইפۄ ࢎਊо যڌѱ ೯زೞח ݺߔೠ ೖ٘ߔਸ ߉ب۾ ҳࢿ Sungjoo Ha 26
Culture • ੌೞח ߑध, ޙചب ਃ • AI ӝദۄחѱ ই
ઓೞח ঋ • Ӓ۞ࠁפ э যڌѱ ੌೡী ೧ࢲب Ҋ೧ࠊঠ ೣ • ݽٚ ઑ/ҳࢿਗ ী ೠ Ӓܿਸ ݠ݁ࣘী ыҊ ӝৈ೧ঠ ೣ • ࢎ Ѿӂٜب ח ࣻળਵ۽ AIী ೧ ೧೧ঠ • ઑҳઑب ۞ೠ ղਊਸ ߈೧ঠ • Conway ߨ Sungjoo Ha 27
Conclusion • AI ӝࣿਸ ా೧ ী ೡ ࣻ হ؍ Ѫਸ
ೡ ࣻ ח ഥࢎٜ ࢤӡ Ѫ • AI ӝࣿ ݅ ੜ ഝਊೞח Ѫਵ۽ ର߹ചח оמ • ӝࣿী ೠ ೧৬ ઑ ҳઑ ߂ সޖ ߑध ߂ ޙച ١ নೠ ஏݶীࢲ Ҋ۰೧ঠ AI ӝࣿਸ ੜ ഝਊೡ ࣻ • ࢎ Ѿ ܖযח ݽٚ Ҕীࢲ ݽ؛ ഝਊؼ ৈо • ۽؋ ਃೠ ޙઁܳ AI ޙઁ۽ ജೞݶ ࢚ • ܳ ߄ఔਵ۽ ML ݽ؛ ѐࢶ ۽؋ ѐࢶਵ۽ যҊ ח ؊ ݆ ؘఠ۽ য ח ࢶࣽജ ҳઑܳ ٜ݅যյ ࣻ Sungjoo Ha 28