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で冗長化するときに知っておきたいあれこれについてまとめた
Search
Sponsored
·
Your Podcast. Everywhere. Effortlessly.
Share. Educate. Inspire. Entertain. You do you. We'll handle the rest.
→
yasuo424
March 22, 2016
Technology
0
570
AWSで冗長化するときに知っておきたいあれこれについてまとめた
yasuo424
March 22, 2016
Tweet
Share
More Decks by yasuo424
See All by yasuo424
freeeのCRE誕生から現在までの歩みとセルフサービスへの挑戦について
yasuo424
1
28k
cloud vision apiで画像認識
yasuo424
1
370
機械学習ってなに
yasuo424
1
1.1k
初心者が機械学習についてふわっと解説してみる
yasuo424
1
490
node.jsでつくられたものをいろいろ触ってみた
yasuo424
0
7.5k
Dockerのことがほんのすこしわかったかもしれない
yasuo424
1
170
Other Decks in Technology
See All in Technology
三菱UFJ銀行におけるエンタープライズAI駆動開発のリアル / Enterprise AI_Driven Development at MUFG Bank: The Real Story
muit
10
20k
Introduction to Sansan Meishi Maker Development Engineer
sansan33
PRO
0
360
Exadata Fleet Update
oracle4engineer
PRO
0
1.3k
Digitization部 紹介資料
sansan33
PRO
1
6.9k
【SLO】"多様な期待値" と向き合ってみた
z63d
2
230
AIエンジニア Devin と歩む、自律型運用プロセスの構築
a2ito
0
250
NW構成図の自動描画は何が難しいのか?/netdevnight3
corestate55
2
490
Snowflake Night #2 LT
taromatsui_cccmkhd
0
260
【PyCon mini Shizuoka 2026】生成AI時代に画像処理やオーディオ処理のノードエディターを作る理由
kazuhitotakahashi
0
180
チームメンバー迷わないIaC設計
hayama17
4
3k
Claude Codeと駆け抜ける 情報収集と実践録
sontixyou
2
1.2k
組織のSREを推進するためのPlatform EngineeringとEKS / Platform Engineering and EKS to drive SRE in your organization
chmikata
0
150
Featured
See All Featured
Design of three-dimensional binary manipulators for pick-and-place task avoiding obstacles (IECON2024)
konakalab
0
370
The B2B funnel & how to create a winning content strategy
katarinadahlin
PRO
1
290
B2B Lead Gen: Tactics, Traps & Triumph
marketingsoph
0
64
Noah Learner - AI + Me: how we built a GSC Bulk Export data pipeline
techseoconnect
PRO
0
120
Digital Projects Gone Horribly Wrong (And the UX Pros Who Still Save the Day) - Dean Schuster
uxyall
0
550
Agile Leadership in an Agile Organization
kimpetersen
PRO
0
96
The MySQL Ecosystem @ GitHub 2015
samlambert
251
13k
Leading Effective Engineering Teams in the AI Era
addyosmani
9
1.7k
Visualization
eitanlees
150
17k
The Curse of the Amulet
leimatthew05
1
9.3k
Automating Front-end Workflow
addyosmani
1371
200k
The #1 spot is gone: here's how to win anyway
tamaranovitovic
2
970
Transcript
AWSͰԽ͢Δͱ͖ʹ͓ͬͯ ͖͍ͨ͋Ε͜Εʹ͍ͭͯ·ͱΊͨ 2016.03.22ɹͮձɹvol.3
ࣗݾհ ໊લ:ɹϠελΧ ৬छ:ɹόοΫΤϯυΤϯδχΞ ॅॴ: ɹݝʢ৲ބͷۙ͘ʣ ΤϯδχΞྺ:ɹ̍͘Β͍ LIGྺ:ɹ
AWSͷΦʔτεέʔϧઃఆ
Φʔτεέʔϧͷಛͱར • յΕͨΒ͙͢ަ • ඞཁͳ࣌ʹඞཁͳ͚ͩϦιʔεΛ ֬อ
ΦʔτεέʔϧͷΛ͢Δલʹ… • εέʔϧΞοϓɾɾɾαʔόʔͷεϖοΫΞοϓ • εέʔϧμϯɾɾɾαʔόʔͷεϖοΫμϯ • εέʔϧΞτɾɾɾαʔόʔͷ૿ • εέʔϧΠϯɾɾɾɾαʔόʔͷݮ ΦʔτεέʔϦϯάͷػೳ
Auto Scalingͷجຊతͳߏ Elastic Load Balancing Amazon CloudWatch alarm Auto Scaling
instance instance instance ᶃϦιʔεͷࢹ ᶄᮢΛ͑ͨΒΞϥʔϜ ᶅAuto Scalingͷൃಈ ᶆ৽نΠϯελϯεͷ࡞
Auto Scalingʹ͓͚Δ ̏ͭͷઃఆ߲
Auto Scalingͷઃఆ ᶃىಈઃఆ ᶄAuto Scalingάϧʔϓ ᶅεέʔϦϯάϙϦγʔ →ىಈ͢ΔEC2ΠϯελϯεͷύϥϝʔλΛઃఆ →Auto Scalingͷશମతͳઃܭ (Πϯλϯεͷ࠷େɾ࠷খɾرΛઃఆ)
→εέʔϧϦϯά͢Δ݅ύϥϝʔλͱCloud Watch ɹΛઃఆ
εέʔϦϯάϙϦγʔͷઃఆ ̏छྨͷΞδϟετϝϯτλΠϓ λΠϓ ҙຯ $IBOHF*O$BQBDJUZ ΠϯελϯεΛݱঢ়ͷ͔Βઃఆͨ͠૿ݮͤ͞Δɻ &YBDU$BQBDJUZ ΠϯελϯεΛݱঢ়ͷʹؔͳ͘ৗʹઃఆͨ͠ʹ͢Δɻ 1FSDFOU$IBOHF*O$BQBDJUZ ΠϯελϯεΛઃఆͨ͠Λඦʹجׂͮ͘߹Ͱ૿ݮ͢Δɻ
εέʔϦϯάϙϦγʔͷύϥϝʔλ ໊߲ આ໌ ໊લ 4DBMJOH1PMJDZͷ໊લ ࣍ͷ߹ʹϙϦγʔΛ࣮ߦ 4DBMJOH1PMJDZΛ࣮ߦ͢Δ݅ $MPVE8BUDIͷ"MBSNͰઃఆ ΞΫγϣϯΛ࣮ߦ "VUP4DBMJOHάϧʔϓʹॴଐ͢ΔΠϯελϯεͷ૿ݮͷઃఆ
ͦͷޙػ ଞͷεέʔϦϯάॲཧ͕࣮ߦ͞Ε͍ͯΔ߹ͷͪ࣌ؒ ໊߲ આ໌ ໊લ 4DBMPVUQPMJDZ ࣍ͷ߹ʹϙϦγʔΛ࣮ߦ $MPVE8BUDIͰඵؒ"VUP4DBMJOHάϧʔϓͷ$16ฏۉ ͕Ҏ্ʹͳͬͨ߹ ΞΫγϣϯΛ࣮ߦ ΠϯελϯεΛͭ૿͢ ͦͷޙػ ඵؒଞͷεέʔϦϯάΛͭ εέʔϧΞτϙϦγʔઃఆྫ
Auto ScalingΛར༻͢ΔࡍͷΞϓϦ ߏͷҙ
Auto ScalingΛར༻͢Δࡍʹߟྀ͓͔ͯ͠ͳ͍ͱ… • ΞϓϦέʔγϣϯͷσϓϩΠͲ͏͢Δͷʁ • ηογϣϯใͲ͏͢Δͷʁ • ϩάϑΝΠϧͲ͏͢Δͷʁ
ΞϓϦέʔγϣϯͷσϓϩΠͲ͏͢Δͷʁ ύλʔϯ1: AMIʹࣄલʹσϓϩΠ Elastic Load Balancing instance instance instance instance
Auto Scaling AMI AMI ৽͍͠όʔδϣϯͷΞϓϦΛσ ϓϩΠͨ͠EC2ΠϯελϯεΛ AMIʹͯ͠ىಈઃఆΛ࠶࡞ɺ Auto Scalingάϧʔϓʹઃఆ͠ ͠ɻ·ͨطଘͷΠϯελϯε ݹ͍··ͳͷͰɺͦͪΒʹΞ ϓϦΛσϓϩΠ͢Δ͔ɺEC2Π ϯελϯεΛ1ͣͭऴྃͯ͠ AMI͔Βࣗಈىಈ
ΞϓϦέʔγϣϯͷσϓϩΠͲ͏͢Δͷʁ ύλʔϯ2: ىಈΠϯελϯε͝ͱʹσϓϩΠ Elastic Load Balancing instance instance instance Auto
Scaling AMI EC2Πϯελϯε͕Auto ScalingʹΑΓىಈ͠ ͨࡍʹΞϓϦͷσϓϩΠࣗಈతʹߦ͏ɻ ۩ମతʹgitS3ͷετϨʔδʹอଘ͞Ε ͍ͯΔ৽͍͠ΞϓϦΛऔಘ͢ΔΑ͏͋Β͔͡ ΊAMIʹεΫϦϓτΛ࡞ͯ͠อଘɻ
ηογϣϯใͲ͏͢Δͷʁ Elastic Load Balancing instance instance instance ηογϣϯใ ElastiCache ϩʔυόϥϯαʹΑͬͯΞΫη
ε͍ͯ͠ΔΠϯελϯε͕มΘ Δ or εέʔϧΠϯ͞ΕͯΠϯε λϯε͕আ͞Εͨ߹ɺηο γϣϯใ͕ࣦΘΕΔɻ ϝϞϦΩϟογϡཧ༻ͷσʔ λϕʔεΛ༻ҙ(ElastiCache)͠౷ ߹తʹηογϣϯใͳͲͷσʔ λΛ֨ೲ
ϩάϑΝΠϧͲ͏͢Δͷʁ ෛՙ͕མͪண͍ͯεέʔϧΠϯ͢Δ߹ɺEC2Πϯε λϯε͕ऴྃ͞ΕΔͨΊγεςϜϩάΞϓϦέʔγϣ ϯϩάΠϯελϯεͱͱʹআ͞Εͯ͠·͏ɻ ͲͷEC2Πϯελϯεͷϩά͔ผͰ͖ΔΑ͏ʹͨ͠ ͏͑ͰS3ʹఆظతʹอଘ
࣮ࡍʹෛՙΛ͔͚ͯࢼ͢
ෛՙ֬ೝํ๏ 1. yesίϚϯυ ZFTEFWOVMMͱ͔ʜ ZFTEFWOVMM ZFTEFWOVMMͭͷϓϩηεΛ͏ ZFTEFWOVMM ZFTEFWOVMM 2. stressίϚϯυΛΠϯετʔϧͯ͠͏
TVEPZVNJOTUBMMTUSFTTZ 3. JmeterΛ͏ ࢀߟ: http://dev.classmethod.jp/server-side/server/use-stress-tool-on-ec2/ ࢀߟ: http://www.techscore.com/tech/Java/ApacheJakarta/JMeter/index/
ΦϑΟεͷ͝հ
ॴ ←͜͜
ͪΐͬͱલ·Ͱͷ৲ބ
ΦϑΟεͷ͝հɻ
ΦϑΟεͷ͝հ • ͍ͭͰؾܰʹ༡ͼʹདྷ͍ͯͩ͘͞ɻ • wifiɺిݯ͋Γ·͢ɻ • Πϕϯτ։࠵ͳͲ͝૬ஊ͍ͩ͘͞ɻ
Ͱاۀ߹॓ड͚͚͍ͯ·͢ʂʂ
ΦϑΟεͷΞΧϯτ lig_nagano @Lig_Nagano twitterɾinstagramͬͯ·͢ɻ
ΦϑΟεͰҰॹʹಇ͚Δ ؒΛืूதͰ͢ʂʂ •ϑϩϯτΤϯυΤϯδχΞ •όοΫΤϯυΤϯδχΞ •σβΠφʔ •σΟϨΫλʔ •ϥΠλʔ ʂʂཁ͢Δʹશ৬छʂʂ
͝ਗ਼ௌ͋Γ͕ͱ͏͍͟͝·ͨ͠ʂʂ