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
AWS App Runnerについてとこれから期待したいこと/About-AWS-App-Ru...
Search
Sponsored
·
Your Podcast. Everywhere. Effortlessly.
Share. Educate. Inspire. Entertain. You do you. We'll handle the rest.
→
hedgehog051
August 27, 2021
Programming
120
0
Share
AWS App Runnerについてとこれから期待したいこと/About-AWS-App-Runner-and-what-to-expect-in-the-future
hedgehog051
August 27, 2021
More Decks by hedgehog051
See All by hedgehog051
AWS Generative AI CDK Constructsについて
hedgehog051
3
350
KnowledgeBasesとAgentsの紹介
hedgehog051
4
1.9k
BedrockUpdatesPost-GW Summary
hedgehog051
4
1k
来てくれClaude 3! Agents for Amazon Bedrockのモデル比較或いはチューニングの話
hedgehog051
5
1.8k
Relic_Tech_Camp_GenerativeAI.pdf
hedgehog051
12
90k
concurrencyで爆速並列デプロイ
hedgehog051
1
1.9k
AWSにおけるデータ分析入門 / Introduction To Data Analytics In AWS
hedgehog051
0
260
また増えた!?AWSコンテナ関連サービスを10分でざっくり掴もう/Learn-about-AWS-0container-services-in-10-minutes
hedgehog051
0
130
Other Decks in Programming
See All in Programming
不変条件と整合性境界—ビジネスが決める設計判断と実現パターン / Invariants and Consistency Boundaries
nrslib
13
3.3k
開発体験を左右するライブラリの API 設計 - GraphQL スキーマ構築ライブラリから考える #tskaigi
izumin5210
2
1.6k
jQueryをバージョンアップする前に使いたいjQuery Migrate
matsuo_atsushi
0
170
メソッドのジェネリクスでGoの夢は広がるか? / Kyoto.go #65
utgwkk
3
450
OSもどきOS
arkw
0
400
tsserverとは何だったのか、これからどうなるのか
nowaki28
1
440
Modding RubyKaigi for Myself
yui_knk
0
870
Inside Stream API
skrb
1
620
Moments When Things Go Wrong
aurimas
3
140
並列実装の現場、2ヶ月間実務でAIを使い倒したAIもPCも私も限界が近い
ming_ayami
0
100
AIチームを指揮するOSS「TAKT」活用術 / How to Use “TAKT,” an OSS Tool for Orchestrating AI Teams
nrslib
6
800
脅威をエンジニアリングの糧にして――現場編 / Turning Threats into Engineering Fuel — Field Edition
nrslib
0
240
Featured
See All Featured
Ethics towards AI in product and experience design
skipperchong
2
300
Stewardship and Sustainability of Urban and Community Forests
pwiseman
0
220
Primal Persuasion: How to Engage the Brain for Learning That Lasts
tmiket
0
360
Tips & Tricks on How to Get Your First Job In Tech
honzajavorek
1
530
Self-Hosted WebAssembly Runtime for Runtime-Neutral Checkpoint/Restore in Edge–Cloud Continuum
chikuwait
0
560
Being A Developer After 40
akosma
91
590k
B2B Lead Gen: Tactics, Traps & Triumph
marketingsoph
0
130
Technical Leadership for Architectural Decision Making
baasie
3
390
Agile that works and the tools we love
rasmusluckow
331
21k
Lessons Learnt from Crawling 1000+ Websites
charlesmeaden
PRO
1
1.3k
Prompt Engineering for Job Search
mfonobong
0
330
Amusing Abliteration
ianozsvald
1
190
Transcript
" Q Q 3 V O O F S
ʹ ͭ ͍ͯ ͱ ͜ Ε ͔ Β ظ ͠ ͨ ͍ ͜ ͱ ۽ ా
ࣗݾհ
ࣗݾհ • ۽ాɹ ,BO,VNBEB • ݄ʹגࣜձࣾ3FMJDೖࣾ • ॴଐɿ1*ࣄۀຊ෦@γεςϜσϕϩοϓϝϯτࣄۀ෦@51'
• "84ׂͱ͖
"QQ3VOOFSͱ
Πϯϑϥߏஙෆཁͷ ϑϧϚωʔδυܕίϯςφΞϓϦ σϓϩΠαʔϏε
͜Ε·ͰͷΞϓϦ࣮ߦͷྺ࢙
"QQ3VOOFSͱ • ΦϯϓϨϛεͷ߹
"QQ3VOOFSͱ • "84&$ͷ߹
"QQ3VOOFSͱ • "84&$4PO&$ͷ߹
"QQ3VOOFSͱ • "84&$4PO'BSHBUFͷ߹
"QQ3VOOFSͱ • "84"QQ3VOOFSͷ߹
"QQ3VOOFS
"QQ3VOOFSͷಛ
"QQ3VOOFSͷಛ • छྨͷ4PVSDFλΠϓͰ࣮ߦՄೳ • ίϯςφΠϝʔδ &$31SJWBUF1VCMJD • 1VCMJD3FHJTUSZͷ߹ɺσϓϩΠτϦΨʔखಈͷΈ
• ιʔείʔυ 1ZUIPOPS/PEFKT
"QQ3VOOFSͷಛ • ΠϯελϯεαΠζͷΈ߹Θͤ • ετϨʔδ • (J#ͷΤϑΣϥϝϧετϨʔδΠϯελϯεຖ • ίϯςφΠϝʔδΛల։͢Δ༻్ؚΉ
"QQ3VOOFSͷಛ • σϓϩΠλΠϓ • खಈσϓϩΠ • ࣗಈσϓϩΠ • ίϯςφΠϝʔδ͔ιʔείʔυ͕ߋ৽͞ΕΔͱ
"QQ3VOOFS͕ࣗಈతʹ#VJMEͱ%FQMPZΛ࣮ߦ • #MVF(SFFO%FQMPZ • ϔϧενΣοΫ 5$1 • σϓϩΠ࣌ͷ)FBMUIDIFDLࣦഊ࣌ʹࣗಈϩʔϧόοΫ
"QQ3VOOFSͷಛ • ϩʔυόϥϯγϯάͱΦʔτεέʔϦϯά • ಉ࣮࣌ߦ • ˞֤ΠϯελϯεʹৼΓ͚Δಉ࣌ϦΫΤετ • ࠷খαΠζ
Ҏ্ • ࠷ݶ*EMFঢ়ଶͱ͢ΔΠϯελϯε • ࠷େαΠζ ҎԼ • εέʔϧՄೳͳΠϯελϯε
"QQ3VOOFSͷಛ • ಉ࣌ϦΫΤετ૯ • ಉ࣮࣌ߦɺ.JOJɺ.BY
"QQ3VOOFSͷಛ • ಉ࣌ϦΫΤετ૯ • ಉ࣮࣌ߦɺ.JOJɺ.BY
"QQ3VOOFSͷಛ • ՝ۚମܥ • *EMFঢ়ଶͷΠϯελϯεͷ߹ • 64%(#࣌ • "DUJWFঢ়ଶͷΠϯελϯεͷ߹
• 64%(#࣌ɹɹ64%W$16࣌ • #VJME • 64%#VJME࣌ؒ • ࣗಈσϓϩΠ • 64%ΞϓϦέʔγϣϯ݄
"QQ3VOOFSͷಛ • ϦΫΤετ૯ • W$16.FNPSZ(#ɺಉ࣮࣌ߦɺ.JOJɺ.BY • 64% (# *OTUBODF
.JOJNVN 64%࣌
"QQ3VOOFSͷಛ • ϦΫΤετ૯ • W$16.FNPSZ(#ɺಉ࣮࣌ߦɺ.JOJɺ.BY • 64% (# *OTUBODF
.JOJNVN 64%࣌ • W$16 *OTUBODF64%࣌ • 5PUBM 64%࣌
"QQ3VOOFSͷಛ • ϩάཧ • σϓϩΠϩά • ΞϓϦέʔγϣϯϩά • Πϕϯτϩά
• ϝτϦΫε • ϦΫΤετؔ࿈ • ϦΫΤετɺϨΠςϯγɺ&3303ίʔυ • Πϯελϯεؔ࿈ • ΞΫςΟϒΠϯελϯε
"QQ3VOOFSͷಛ • ΧελϜυϝΠϯ • "QQ3VOOFSʹΑΔΞϓϦέʔγϣϯσϓϩΠͰׂΓͯΒ ΕΔυϝΠϯҎ֎ͷಠࣗυϝΠϯΛؔ࿈͚Մೳ • ҉߸Խ •
"84ϚωʔδυΩʔ σϑΥϧτ PSΧελϚʔཧܕΩʔ • Ұ࣌ఀࢭػೳ • ఀࢭத՝ۚͳ͠
"QQ3VOOFSͷಛ • ͱ͍͑ɺ·ͩ·ͩ։ൃ్্ • ϓϥΠϕʔτ71/͕ະରԠͳҝɺͲ͏ͯ͠3%4Λ͍ͨ ͍߹3%4ΛύϒϦοΫʹஔ͘ඞཁ͕͋Δ • બΔΠϯελϯελΠϓͷબࢶ͕গͳ͍ •
4(ͳͲͷ੍ޚෆՄ • 8"'࿈ܞෆՄ • ΧφϦΞϦϦʔεෆՄ • ॾʑநԽ͞Ε͍ͯΔͷͰΧελϚΠζੑ͍ • %PDLFS$PNQPTFະରԠFUDʜ
ϩʔυϚοϓ • ։ൃϩʔυϚοϓ • ࣌ؒʹج͍ͮͨΞϓϦέʔγϣϯϩάϑΟϧλϦϯά • ϓϥΠϕʔτ71$ͱͷ௨৴ • 4PVSDFλʔήοτʹ$PEF$PNNJU(JU)VC&OUFSQSJTFɺ
%PDLFS)VCͳͲΛՃFUDʜ IUUQTHJUIVCDPNBXTBQQSVOOFSSPBENBQ
·ͱΊ
·ͱΊ • ؆୯ʹΞϓϦέʔγϣϯΛσϓϩΠग़དྷΔ͚Ͳສೳ͡Όͳ͍ • ཉ͍͠ػೳ*TTVFΛ্͛Δ্͔͕ͬͯΔ*TTVFʹ͍͍ͶΛԡͤ ༏ઌ্͕͕Δ͔͠Εͳ͍ɺΒ͍͠ ɹɹɹɹɹɹ͜Ε͔Βʹظ