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 콘서트
Search
Daehyun Kim
October 11, 2012
Technology
0
500
AWS 콘서트
Amazon Web Services 소개. Amazon EC2, S3, EMR
Daehyun Kim
October 11, 2012
Tweet
Share
More Decks by Daehyun Kim
See All by Daehyun Kim
사내 Git 저장소 개발 사례
hatemogi
6
1.1k
김대현
hatemogi
1
160
EF2011
hatemogi
2
100
Other Decks in Technology
See All in Technology
Introduction to Sansan for Engineers / エンジニア向け会社紹介
sansan33
PRO
6
71k
類似画像検索モデルの開発ノウハウ
lycorptech_jp
PRO
2
630
技術的負債の泥沼から組織を救う3つの転換点
nwiizo
5
1k
Oracle Cloud Infrastructure:2026年2月度サービス・アップデート
oracle4engineer
PRO
0
200
「ヒットする」+「近い」を同時にかなえるスマートサジェストの作り方.pdf
nakasho
0
100
ブラックボックス観測に基づくAI支援のプロトコルのリバースエンジニアリングと再現~AIを用いたリバースエンジニアリング~ @ SECCON 14 電脳会議 / Reverse Engineering and Reproduction of an AI-Assisted Protocol Based on Black-Box Observation @ SECCON 14 DENNO-KAIGI
chibiegg
0
140
Devinを導入したら予想外の人たちに好評だった
tomuro
0
850
「ストレッチゾーンに挑戦し続ける」ことって難しくないですか? メンバーの持続的成長を支えるEMの環境設計
sansantech
PRO
1
230
「使いにくい」も「運用疲れ」も卒業する UIデザイナーとエンジニアが創る持続可能な内製開発
nrinetcom
PRO
1
770
EMからVPoEを経てCTOへ:マネジメントキャリアパスにおける葛藤と成長
kakehashi
PRO
6
660
LLM活用の壁を超える:リクルートR&Dの戦略と打ち手
recruitengineers
PRO
1
220
Datadog Cloud Cost Management で実現するFinOps
taiponrock
PRO
0
130
Featured
See All Featured
エンジニアに許された特別な時間の終わり
watany
106
240k
Practical Tips for Bootstrapping Information Extraction Pipelines
honnibal
25
1.8k
Self-Hosted WebAssembly Runtime for Runtime-Neutral Checkpoint/Restore in Edge–Cloud Continuum
chikuwait
0
380
The Organizational Zoo: Understanding Human Behavior Agility Through Metaphoric Constructive Conversations (based on the works of Arthur Shelley, Ph.D)
kimpetersen
PRO
0
260
Leading Effective Engineering Teams in the AI Era
addyosmani
9
1.7k
Joys of Absence: A Defence of Solitary Play
codingconduct
1
300
Effective software design: The role of men in debugging patriarchy in IT @ Voxxed Days AMS
baasie
0
240
Put a Button on it: Removing Barriers to Going Fast.
kastner
60
4.2k
HU Berlin: Industrial-Strength Natural Language Processing with spaCy and Prodigy
inesmontani
PRO
0
250
The #1 spot is gone: here's how to win anyway
tamaranovitovic
2
970
Applied NLP in the Age of Generative AI
inesmontani
PRO
4
2.1k
The untapped power of vector embeddings
frankvandijk
2
1.6k
Transcript
"NB[PO8FC4FSWJDFT ֙ਘ ӣഅ
ߊղਊ ۄ٘ஹೊ "NB[PO8FC4FSWJDFTࣗѐ &$43%4&.3 ܻоഝਊೡ݅ೠನੋ ࢎղীبੑغݶજਸ݅ೠѪ
ߊܳٛҊ যݶ ೧Ѿоמೠޙઁٜ ৌब
ҾӘ೧ৈ ҾӘೞݶਗ ౠदрীېށ۰ࢲࢲߡо؊ਃೠؘ ੌदਵ۽పझೡѐߊࢲߡоਃೠؘߊ߉ইঠೞա ੌਸೞݶ ېҊহਢࢲ࠺झೡࣻহա ߔসೞҊࠁҙೞח؊ಞܻೠߑߨহਸө ߎীࢲߡલযبਫ਼ખಞੜࣻחহա ইפ
؊աইоࢲগоউզࣻחহա
ۄ٘ஹೊ
ۄ٘ஹೊ &MBTUJD$BQBDJUZ 'BTUFSUJNFUPNBSLFU /P$BQ&Y 1BZBTZPVHP QBZGPSXIBUZPVVTF 'PDVTPOZPVSCVTJOFTT
"NB[PO8FC4FSWJDFT "84חஹೊੋۄܳۄ٘ࢲ࠺झ )JHIMZSFMJBCMF 4DBMBCMF -PXDPTU ࣁ҅աۄࣻभ݅࠺פझীੋۄۖಬઁҕ
"84ઁಿ߂ࣛܖ࣌
"84ઁಿ߂ࣛܖ࣌ IUUQBXTBNB[PODPNLPQSPEVDUT
"84ਃઁಿ߂ࣛܖ࣌ "NB[PO&$ &MBTUJD-PBE#BMBODJOH "VUP4DBMJOH "NB[PO&.3 "NB[PO4 "NB[PO "NB[PO3%4 "NB[PO%ZOBNP%# "NB[PO424
"NB[PO4&4 "NB[PO$MPVE'SPOU "NB[PO&MBTUJ$BDIF "84%JSFDU$POOFDU "84&MBTUJD#FBOTUBML "84$MPVE'PSNBUJPO "NB[PO$MPVE8BUDI
য়ि_݆Ѣঌইঠפө /P-JTUFODBSFGVMMZਃೠѪ݅ ॳݶؾפ #VU ־о"84ী೧ফӝೡٸӒ ޖী೧ফӝೞחѪੋഛੋ ೡਃחणפ
"84ࣁ҅࠙ನ
"NB[PO&$3FHJPO "WBJMBCJMJUZ;POFT "; ֙ୡӝળѐ";
$MPVE'SPOU 3PVUF &EHF-PDBUJPOT DNS Service Content Delivery Dallas St.Louis Miami
Jacksonville Los
Ӓܻۢաۄח
ооөبө֎ਕࣘبח IUUQXXXDMPVEQJOHJOGP XHFUIUUQEBVNDMPVETBNB[POBXTDPNSUH[ QJOHQJOHTPPVNF
"845PLZPө֎ਕࣘب
None
Ӓېࢲܻաۄীࢲח 5PLZPॳݶؾפ ӒܻҊ &EHFبחࢤӡࣻبঋਸөਃ
"NB[PO&$
"NB[PO&$ "NB[PO&MBTUJD$PNQVUF$MPVE ۄ٘о࢚ࢲߡ ࢜ࢲߡੋझఢझҊࠗೞחؘࣻᐠࣗਃ पઁࢎਊೠ݅ఀ݅ਃӘࠛ &MBTUJD#MPDL4UPSF  "VUP4DBMJOH &MBTUJD-PBE#BMBODJOH
"NB[PO&$൱ᠭઁ 3FE)BU&OUFSQSJTF-JOVY 6CVOUV 'FEPSB %FCJBO 0SBDMF&OUFSQSJTF-JOVY 8JOEPXT4FSWFS ᄑ
"NB[PO&$ੋझఢझਬഋ 128 64 32 16 8 4 2 1 1
2 4 8 16 32 64 EC2 Compute Units (HP) Memory (GB) Small 1.7 GB, 1 EC2 Compute Unit 1 virtual core $0.085/0.12 Micro 613 MB Up to 2 ECUs (for short bursts) $0.02/0.03 Large 7.5 GB 4 EC2 Compute Units 2 virtual cores $0.34/0.48 Extra Large 15 GB 8 EC2 Compute Units 4 virtual cores $0.68/0.96 Hi-Mem XL 17.1 GB 6.5 EC2 Compute Units 2 virtual cores $0.50/0.62 Hi-Mem 2XL 34.2 GB 13 EC2 Compute Units 4 virtual cores $1.00/1.24 Hi-Mem 4XL 68.4 GB 26 EC2 Compute Units 8 virtual cores $2.00/2.48 High-CPU Med 1.7 GB 5 EC2 Compute Units 2 virtual cores $0.17/0.29 High-CPU XL 7 GB 20 EC2 Compute Units 8 virtual cores $0.68/1.16 Cluster GPU 4XL 22 GB 33.5 EC2 Compute Units, 2 x NVIDIA Tesla “Fermi” M2050 GPUs $2.10/2.60 Cluster Compute 4XL 23 GB 33.5 EC2 Compute Units $1.60/1.98 ©2011 Amazon Web Services May not be reused or redistributed without written permission
"NB[PO&$ੋझఢझਬഋ߂оѺ 5 PLZP 7 JSHJOJB .&.$16 MPDBMEJTL оѺ दрਘ ળ
5 (DV( ݅ਗ ળ 5 (DV( ݅ਗ ળ 5 (DV( ݅ਗ ળ 5 (DV( ݅ਗ ਊݫݽܻ 5 (DV( ݅ਗ ਊݫݽܻ 5 (DV( ݅ਗ ਊݫݽܻ 5 (DV( ݅ਗ Ҋࢿמ$16 5 (DV( ݅ਗ Ҋࢿמ$16 5 (DV( ݅ਗ ۞झఠ(16 7 (DV( /7*%*"5FTMBt'FSNJu.(16Y ݅ਗ ֫*0 7 (DVY(44% ݅ਗ DV_()[0QUFSPOژח9FPO۽ࣁࢲࢿמ ` दрੌࢎਊӝળ ݅ਗ݅
"NB[PO&$оѺ଼ ੋझఢझਃӘ 0OEFNBOEJOTUBODFT 3FTFSWFEJOTUBODFT ֙ড ֙ড 4QPUJOTUBODFT झషܻਃӘ ֎ਕਃӘ
ۄ٘➝࠺ਊх
&$ੋझఢझоѺ࢚ࣁ ೞ٘ਝয ؘఠࣃఠ࢚ݶ࠺ਊ ӝܐ ֎ਕਊܐ ࢲ࠺झੋ۱ .&.$16 MPDBMEJTL оѺ दрਘ
ળ 5 (DV( ݅ਗ ળ 5 (DV( ݅ਗ
&$֙֙ডਃӘઁ 5PLZP POEFNBOEࢶѾઁӘহ दрਊਃӘ݅ࠛ ডઁୡӝ࠺ਊਸࢶѾઁೞҊ दрਃӘਸೡੋ߉ MJHIUNFEJVNIFBWZ (DV( ೠ׳ਃӘ POEFNBOE
݅ਗ ֙ড ݅ਗ ֙ড ݅ਗ
6ࢲߡਘ࠺ਊ ઁݧ۽ о ঌ۰6ࢲߡо࠺ਊ ࢚ݶױо ӝױо ֎ਕನ࠺ਊਘ݅ਗ ೞ٘ਝযо࠺ਊ
֙ѐਘਘ݅
ਘ࠺ਊ࠺Ү AWS OnDemand AWS 1֙ড AWS 3֙ড 1U 16 20
31 58
ডೞ۰ݶ ౠदрীԙਃೠ݅ఀࢲߡܳࢎਊೞҊ߈ժ ӝࠄࢲߡਗਸ֙ড ࢚ػೖఋਊਗਸ֙ডਵ۽MJHIUডઁࢲߡ ࢚ޅೠېૐоחPOEFNBOEࢲߡܳӒٸӒٸ
؊ডೞ۰ݶ Leverage All Three Models 0 1000 2000 3000 4000
5000 6000 7000 Reserved Instances On Demand Spot ©2011 Amazon Web Services May not be reused or redistributed without written permission
ې࠺ਊ
যݶਃೠ࠺ਊ ੋ۱࠺ਊ %FW0QT ੋ۱ ࠺ਊ ୭ࣗച গ࠺ਊ
ۄ٘࠺ਊ ऴо ഛೠёҙ࠺ਊ࠺Үח൨ٜா߄ா /P࠺࠺ਊԙऱחঋणפ :FTੌदрղղਃೠ࠺ੋоਃ
"NB[PO
"NB[PO "NB[PO&MBTUJD#MPDL4UPSF #MPDLMFWFMTUPSBHFWPMVNF &$ੋझఢझীোѾ೧ࢎਊ (#_5# ળࠅܬ۽࠺ઊ*014ࠅܬ ୭ *014 झշࢫࠂઁ 4۽ղࠁղӝоઉয়ӝ
"NB[PO4
"NB[PO4 "NB[PO4JNQMF4UPSBHF4FSWJDF ݒ0CKFDU ֙PSоਊࢿ ੋૐ ঐഐച )5514 #JU5PSSFOU۽ష $MPVE'SPOU۽$%/ࢲ࠺झܳࣚऔҊчऱѱഝਊ
ࣁ҅40CKFDUࣻ Amazon S3 Adoption Rate: Billions of Objects Stored 2.9
14 40 102 262 566 0 100 200 300 400 500 600 Q4 2006 Q4 2007 Q4 2008 Q4 2009 Q4 2010 Q3 2011 Peak Requests: 370,000+ per second Doubled in 9 months! ֙2ӝળ রPCKFDUTؽ
4ݒ۱ನੋ بन܉بݶ Ҋ೧بغਗ਼ই ߹بߔসਃೡө ➝ࢎۈपࣻח )5514۽ۄоӔ ېѣ
"NB[PO4ࠗоӝמ 6TFSEFGJOFENFUBEBUB 4FSWFSTJEFFODSZQUJPO "DDFTTMPHHJOH 0CKFDUFYQJSBUJPO 0CKFDUWFSTJPOJOH 334 3FEVDF3FEVOEBODZ4UPSBHF
"NB[PO3%4
"NB[PO3%4 "NB[PO3FMBUJPOBM%BUBCBTF4FSWJDF .Z42-0SBDMF42-4FSWFS زࣗਝযಁ ߔসزച %#झշࢫ زഐझҮ ࠂઁ
ଵҊ1PTUHSFTPO"84 IUUQFOUFSQSJTFECDPNDMPVEEBUBCBTF
"NB[PO&.3
"NB[PO&.3 "NB[PO&MBTUJD.BQ3FEVDF )BEPPQ۞झఠܳ&$ਤীࢲदҳز )BEPPQ۞झఠࢸ प೯ ઑѣ :PVsWFHPUUIFEBUB ؘఋ৬.3٘݅ળ࠺ೞࣁਃ
"843FGFSFODF "SDIJUFDUVSFT
None
None
None
"84 ޤоજо
"84ਃݒ۱ನੋ ֢۱୭ࣗച গ࠺زച पઁਃ࠺ਊ݅ࠛ ۽Ӓې߁ઁযоמೠੋఠಕझ ѐߊসޖী
গ࠺৬
ࢎղഝਊоמࢿ
ࢎղഝਊоמࢿ Ӗ۽ߥ۽ં೧৻ࢲ࠺झࣘبѐࢶ ੌदѐߊप࠺ഝਊ ӝ#BUDI1SPDFTTJOH ӏݽ.BQ3FEVDFসীഝਊ Ҋࢿמ(16۽ࣁࢲഝਊ
ࢎղഝਊоמࢿ ҅ࣘ ࢎ৻֎ਕীࢲݽפఠ݂ ౠदр୶оې উೞҊ۴ೞѱߔসࠁҙ 4(MBDJFS /*4۽ં
"84ԙॄঠפө
"84ഝਊࢶఖ ࣗӝসীѱח୭Ҋ ӏݽীѱחࢶఖ 4חӓॄࠅ݅ &.3ઙઙഝਊ &$חੌࠗ
"84ࢎਊӝળо٘
"84ࢎਊӝળо٘ ۄ٘ӝࣿਤఃಕଵҊ
ۄ٘ӝࣿ
ۄ٘ӝࣿ ࢎղ৻ۄ٘زೱঈ "84ܳನೣೠۄ٘ࢲ࠺झࢎղҕधօ ࢎղ"1*ాۖಬઁҕ ࢎղ1BB4ઁҕ $BB4ѐߊᬊ &4BB4ѐߊ
݃ޖܻ "84חۄ٘҅ц "84о߈٘दчऴѪইפ ࢎղীഝਊ೧ࠅ݅ೠನੋо
хࢎפ