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
izumisano hackathon
Search
Sponsored
·
SiteGround - Reliable hosting with speed, security, and support you can count on.
→
Hide Ogawa
April 16, 2019
Technology
86
0
Share
Embed
Copy iframe code
Copy JS code
Copy link
Start on current slide
izumisano hackathon
Hide Ogawa
April 16, 2019
More Decks by Hide Ogawa
See All by Hide Ogawa
開発時間2時間!gemma 4で動くローカルAIマルチエージェント構築(Python標準ライブラリ縛り)
hideyuki_ogawa
0
270
Generative UIの論文をNotebookLMにまとめてもらったスライド
hideyuki_ogawa
0
46
生成AI業務実践セミナー: Geminiで手書きアンケート を瞬時にデータ化!
hideyuki_ogawa
0
220
生成AIプレゼン作成テスト: manus版
hideyuki_ogawa
0
710
生成AIプレゼン作成テスト: Genspark版
hideyuki_ogawa
0
760
生成AIプレゼン作成テスト: Google Slide版
hideyuki_ogawa
0
760
生成AI: ホワイトカラーの産業革命ツール ~ 業務効率化から創造的イノベーションまで
hideyuki_ogawa
0
180
生成AIの振り返りと妄想
hideyuki_ogawa
0
310
Digital TransformationをPythonを使って進めよう!
hideyuki_ogawa
1
310
Other Decks in Technology
See All in Technology
MCP Appsを作ってみよう
iwamot
PRO
4
640
日本 Fintech 未来予測レポート 2027〜2028年(手動編集版)
8maki
0
2.3k
【Snowflake Summit 2026 Recap!!】Snowflake Summit Deep Dive: Security & Governance
civitaspo
1
170
Bedrock AgentCore RuntimeでAuth0 Changelog調査AIをアップグレードした話
t5u8a5a
1
140
小さくはじめるSLI/SLO ~育てながら組織に定着させる実践知~ / Starting Small with SLI/SLOs: Building Adoption Through Continuous Growth
nari_ex
7
1.9k
【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
310
脆弱性対応、どこで線を引くか
rymiyamoto
1
390
AIソロプレナー時代に2ヶ月で20人増員した事業創造会社の開発組織の話
miyatakoji
0
660
NAB Show 2026 動画技術関連レポート / NAB Show 2026 Report
cyberagentdevelopers
PRO
0
200
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
GitHub Copilot 最新アップデート – 「一歩先」の実践活用術
moulongzhang
2
340
LLMにもCAP定理があるという話
harukasakihara
0
360
Featured
See All Featured
Visualization
eitanlees
152
17k
Digital Projects Gone Horribly Wrong (And the UX Pros Who Still Save the Day) - Dean Schuster
uxyall
1
1.7k
Leveraging LLMs for student feedback in introductory data science courses - posit::conf(2025)
minecr
1
280
Chasing Engaging Ingredients in Design
codingconduct
0
220
Fashionably flexible responsive web design (full day workshop)
malarkey
408
66k
VelocityConf: Rendering Performance Case Studies
addyosmani
333
25k
KATA
mclloyd
PRO
35
15k
DevOps and Value Stream Thinking: Enabling flow, efficiency and business value
helenjbeal
1
240
Navigating Weather and Climate Data
rabernat
0
220
How People are Using Generative and Agentic AI to Supercharge Their Products, Projects, Services and Value Streams Today
helenjbeal
1
210
How Software Deployment tools have changed in the past 20 years
geshan
0
34k
How Fast Is Fast Enough? [PerfNow 2025]
tammyeverts
3
610
Transcript
0QFO%BUB XJUI #MPDLDIBJO ઘࠤࢢϒϩοΫνΣʔϯϋοΧιϯ #νʔϜ
ΦʔϓϯσʔλݑষΑΓ ֎লɿɹIUUQTXXXNPGBHPKQNPGBKHBJLPQBHF@IUNM ɾσʔλͷΞΫηεɼਓ৫͕ੜ׆Λվળ͠ɼࠃٴͼࠃՈؒͷใͷ ྲྀΕΛվળ͢ΔͨΊͷࢹΠϊϕʔγϣϯΛਐԽ͍ͤͯ͘͞ɻٴͼϏδω εɼ෯͍ൣғͷσʔλΛऩू͢Δͷͷɼਓʑ͕ར༻͍͢͠ܗͰඞͣ͠ ڞ༗͍ͯ͠ͳ͍ɻ ɾਓʑɼใαʔϏεΛɼརศੑΛͬͯɼిࢠతʹೖखͰ͖Δ͜ͱΛظ ͓ͯ͠ΓɼใͦͷҰͭɻ·ͨɼΦʔϓϯσʔλɼࣗࠃͷఱવࢿݯ͕Ͳ ͷΑ͏ʹΘΕɼ࠾औ࢈ۀͷऩӹ͕༻͞Εɼ͕ͲͷΑ͏ʹऔҾ͞Εɼ·ͨ ར༻͞Ε͍ͯΔ͔ͱ͍ͬͨೝࣝΛ্ͤ͞Δɻ͜ΕΒɼઆ໌ྑ͖Ψόφ
ϯεΛଅਐͤ͞ɼਓʑͷٞΛଅਐ͠ɼԚ৬ͷಆ͍Λࢧԉ͢Δɻ·ͨɼ(ͷ ։ൃԉॿʹ͓͚Δಁ໌ੑͷ͋Δσʔλɼઆ໌ͷ͔ΒෆՄܽͰ͋Δɻ σʔλΛΦʔϓϯʹ͢Δ͜ͱʹΑΓΠϊϕʔγϣϯ͕ਐΉʂ
ར༻͍͢͠σʔλ ຊͰσʔλͷ։͕ࣔ࢝·͍ͬͯΔ͕ɺ ඞ͍͍ͣ͢͠σʔλͱݴ͑ͳ͍ɻՃ͞Εͨ1%'ɺΤΫηϧͳͲ ΣϒΛ࡞ͬͨςΟϜɾόʔφʔζɾϦʔͷ 5&%ͷߨԋͰʮࠓ͙͢ੜσʔλΛʂʯͱڣΜͩʂ https://www.ted.com/talks/tim_berners_lee_on_the_next_web
#MPDLDIBJOͷڧΈ ɾಁ໌ੑ ୭ͰࢀরͰ͖Δʂ ɾηΩϡϦςΟ վ͟Μ͕͙͢ʹ͔Δʂ ެڞͷσʔλΛஔ͘ॴʹ͍ͬͯ͜ʂ
ͲͷΑ͏ͳσʔλ͕ඞཁ͔ʁ ɾطଘͷσʔλ ࢢͷجૅతͳσʔλΛͯ͢ ɾ͜Ε·Ͱʹͳ͍σʔλ ΈΜͳͰ࡞Δ·ͪͷσʔλ ͦͯ͠σʔλߋ৽ͷ ϦΞϧλΠϜੑఏڙͰ͖ΔΑ͏ʹʂ
͜Ε·Ͱʹͳ͍σʔλͱ۩ମతʹʁ ொͷݟͲ͜Ζ ݩͷਓ͕ΔɺݩͳΒͰͷ͓ళɺ෩ܠͳͲΛ ߘͯ͠Β͏͜ͱʹΑΓσʔλ͕࡞ΕΔɻ ؾ͍͍ͯͳ͍ίϯςϯπ͕·ͩொʹͨ͘͞Μ͋Δͣʂ ڥσʔλ ԿΒ͔ͷͰ૽Իۭؾͷঢ়ଶͳͲ Λఏڙͯ͠Β͏ɻ౦ຊେࡂޙɺ༷ʑͳਓ͕ ΨΠΨʔΧϯλʔͰଌͬͨσʔλΛఏڙͨ͠Α͏ʹɻ ͜ΕΒͷใुͱͯ͠τʔΫϯΛఏڙ͢Δɻ
τʔΫϯ࣮ࡍʹ͑Δػೳͱɺ܄ষతͳ྆ํͷׂΛͨͤΔɻ
ࢿ͕ͳ͔ͳ͔ߦΘΕͳ͍ɻ ͲͷΑ͏ʹ͕ղܾ͞ΕΔ͔ʁ ւ֎٬ͷ૿ՃϗςϧͷΘ͍ͳͲͷ σʔλΛΘ͔Γ͘͢ఏڙ͢Δ͜ͱʹΑΓɺ ࢿՈ͔Βͷ͕ू·Γɺࢿۚू·Δɻ େاۀͳͲࢿྉͷӳޠԽࢿՈͷ ཁٻ͢ΔσʔλͷఏڙͳͲ༷ʑͳରԠΛ͍ͯ͠Δɻ
ए͍ੈ͕Ҿͬӽ͠Λߟ͑Δ͕ɺۭߓ͕͍ۙͱ͍ ͏͜ͱ͋Γɺڥ͕ѱͦ͏Ͱ͋Δ͜ͱ͔Βɺখ ͞ͳࢠڙ͕Ͱ͖ͨͱ͖ͷӨڹΛߟ͑ɺ͡Ί͔Β ආ͚Δɻ ͲͷΑ͏ʹ͕ղܾ͞ΕΔ͔ʁ ૽Իɺۭؾͷঢ়ଶͳͲͷσʔλΛ Θ͔Γ͘͢ఏڙ͢Δ͜ͱʹΑΓɺ ʢͦͷঢ়ଶ͕ྑ͚ΕʣબࢶʹೖΔɻ
Ϛονϯά ͲͷΑ͏ʹ͕ղܾ͞ΕΔ͔ʁ ༷ʑͳσʔλ͕ಘΒΕΔΑ͏ʹͳΕɺ ͦͷதͰϚονϯά͕ߦ͑ΔΑ͏ʹͳΔɻ ݱࡏ͋ΔΑ͏ͳधڅͷΪϟοϓ ղফ͞Ε͘͢ͳΔɻ
·ͱΊ ɾσʔλͷΦʔϓϯԽʹϒϩοΫνΣʔϯΛ͏ ɾ͜͏͢Δ͜ͱʹΑΓɺσʔλ͕ΑΓΦʔϓϯʹͳΔͱಉ࣌ ʹɺվ͟ΜੑΛ࣋ͭ͜ͱ͕Ͱ͖Δ͜ͱ͔Βɺσʔλ͕ΑΓ ৴པͰ͖ΔͷͱͳΔɻ ɾͦͷΑ͏ʹσʔλ͕ΦʔϓϯʹͳΔ͜ͱʹΑΓɺଟ͘ͷ͜ͱ ͕׆ੑԽ͢Δɻ ɾҰൠ͚ʹՄࢹԽ͞Εͨσʔλఏڙ͞ΕΕɺ ΑΓҰஈͱσʔλ͕׆༻͞Εɺൃల͕ظͰ͖Δɻ