SlideShare una empresa de Scribd logo
1 de 75
Descargar para leer sin conexión
8 ,1. 1 1 8 22 1 1 1 10
, 1 8 18 1 : 1
C GA I W
SA A F
1 18 ..121 8 22 1 08 ,
• AWS re:Invent 2018
• A S I
• A
1 18 ..121 8 22 1 08 ,
1 18 ..121 8 22 1 08 ,
v
• AWS sl sc
bhc I
S A
ü 2018 11 25 11 30
ü 7 +7
ü 50,000
ü 1,000
ü 2,100
• a c z
g m c isd s m g
sn t v
• re:PLAY f Pub Crawl heg
r s osg W
8 , 8 00 12 .
1. AWS RoboMaker MN
2. AWS Amplify Console MN
3. AWS Transfer for SFTP MN
4. AWS DataSync MN
5. AWS S3 Batch Operations MN
6. Amazon S3 Intelligent Tiering MN
7. Amazon EFS Infrequent Access(EFS-IA) MN
8. Snowball Edge Compute Optimized MN
9. Amazon EBSAPIOPS AI
8 1 8 MN
1 18 ..121 8 22 1 08 ,
( )
1. AWS Global Accelerator
2. AWS Transit Gateway
3. Amazon EC2 A1
4. Amazon EC2 C5n
5. Elastic Fabric Adapter
6. Firecracker
7. Dynamic Training for Deep Learning Model
8. AWS IoT Events
9. AWS IoT SiteWise
10. AWS IoT Thing Graph
11. AWS IoT Greengrass 3
12. AWS IoT Device Tester
13. Amazon FreeRTOS Bluetooth Low Energy
14. IoT A3 AWS I S
1 18 ..121 8 22 1 08 ,
( )
15. AWS KMS Custom Key StoreA
16. Amazon S3 Object LockA
17. Amazon S3-Glacier 3
18. Amazon Kinesis Data Analytics Java I A
1 18 ..121 8 22 1 08 ,
1. AWS Container Competency I lm
2. AWS Device Qualification Program
AWS Partner Device Catalog lm
3. AWS Marketplace W S hg A
4. AWS Marketplace Private Marketplace lm
5. AWS Ground Station lm
6. Amazon Comprehend Medical lm
7. Amazon Translate deAf
8. Amazon QuickSight n b Sa Af
9. Amazon DynamoDB Transactions lm
10. AWS Elemental MediaConnect lm
11. Amazon CloudWatch Logs Insights lm
12. Amazon AthenaAWorkgroupa i
13. AWS CodePipeline ECRAf cACodeDeploy Blue/Green Af
14. Shared VPC lm
1 18 ..121 8 22 1 08 ,
( )
1. Amazon S3 Glacier Deep Archive
2. Amazon FSx for Windows File Server
3. Amazon FSx for Lustre
4. AWS Lake Formation
5. AWS Control Tower
6. AWS Security Hub
7. Amazon Aurora Global Database
8. Amazon DynamoDB Read/Write Capacity On Demand
9. Amazon Timestream
10. Amazon Quantum Ledger Database
11. Amazon Managed Blockchain
12. Amazon Elastic Inference
13. AWS Inferentia
14. Amazon SageMaker Ground Trouth
1 18 ..121 8 22 1 08 ,
( )
15. AWS Marketplace for Machine LearningA
16. Amazon SageMaker RLA
17. Amazon SageMaker 3 W
18. AWS DeepRacerA
19. Amazon TextractA
20. Amazon PersonalizeA
21. Amazon ForecastA
22. AWS OutpostsA
23. AWS License ManagerA
24. AWS Cloud MapA
25. AWS App MeshA
26. Amazon EC2 I A
27. Amazon Lightsail 2 W
28. Amazon RDS on VMware S A
1 18 ..121 8 22 1 08 ,
1. Amazon Redshift Concurrency Scaling S
2. PyCharm, IntelliJ, Visual Studio Code AWS Toolkits S
3. AWS Lambda Ruby
4. AWS LambdaACustom Runtimes
5. AWS Lambda Layers S
6. AWS Serverless Application Model I
7. AWS Lambda ALB
8. AWS Step Functions API Connectors S
9. Amazon API Gateway for WebSocket S
10. Amazon Managed Streaming for Kafka S
11. AWS Well-Architected Tool S
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
AD
K J
• SQL EJava e hm Wf
• n em i di E
g v N Arz
ü Apache Flink
ü AWS SDK for Java
• Kinesis S3 DynamoDB I AWSW c
t E Java S E
Cassandra RabbitMQ I OSS t rz
• b a l m
im s hm o rz
( 2E 1 3 0 D A A 2 2 A ( 8 A A D
A P
Q
.
1
• i eus m 1 3
ü W I a
ü 0 8 W )
• L ,Mr gWc dcl
Q ou
ü ,r gWz z
ü ,r gW W
ü nvkb SNt h f
, 8 8 00 8 12 8 8 .
A
C
• AWS W A b l o
a cs z Wnv
d b me
• CloudWatch Logs
g e n vh
mdr t f EW
• Dashboard W NS
• ds
e i h I
$0.0076/GB( )N W
, 8 8 00 8 12 8 8 .
1
A
• S3 g i h S
z E N I b l
S I A
• AWS Lake FormationSCloudFormation
g b l
ovnds I g NE
• AWS gf e W
gva g m i cs
• o nr Lake Formation
S N tf e I
, 8 8 00 8 12 8 8 .
A
• Apache Kafka E ao h
i l v Apache
Kafka gc b d t
• r IKafka n t Kafkav eo
m IA
• E S z Kinesis
Data Streams ndo NW a
s f I I
• e d
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
3 B 3
A
• r E W g mh AA i
I veN Batch Operations
c a fl st
• S3 n W N E c
bd b o S N I
ü ACL
Glacier
ü CSV S3
ü CloudTrail
8. 2 2 02 0 . . 2 2 2 21
,
A 3
• S3 PUT t bc a ib I
Glacier o v S3 lb ahm
f hm A d ahm
Glacier ib S
• S3-Glacier ea c v SNS/SQS
E r W g m E
• n rI bc ATUs P U
I f hm z TD P
ü
ü
Queue
,
, 8 8 00 8 12 8 8 .
( ) 3, 3 )
3 ( , ,
• S3 WORMW Wm nb 2
e vE
•
• IAM
• Object Lock f cd o r g l
t W IS h
d o s
• ni na eN
A s z W Bucket with objects
, 8 0 0 4.0 . 8 4 ,114 4, 0 42 0 0 0
G AD 3
• I E E S I
hAe Glacierv
• E oh ctgtf A m
z sa E bAd N
• hAe W v E E
l A W
W I
• nr tdoti 2019
, 8 8 00 8 12 8 8 .
A
F
• AZ E me n s
S3 d W e
• Windowsf E DFS Replication Active
Directory z Ib ihna W
• 10GB/s l e a g mS
n E l e aI v s
• aIo NArtId c
ü 1GB $0.13/
ü 1MBps $2.2/
ü 1GB $0.050/
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
A
• ISN m
b af I cvz
(Custom Terminology) N
• n N g E hNl r
A I rN cvz
g iSI
• cvz TMX I CSV m
o Wd t
s edf
https://docs.aws.amazon.com/translate/latest/dg/creating-custom-terminology.html
1 . E C C 88 C C C E
E E GI C AE
2 E
• XE 0 r NS eg e
gih W c oe
ü eia1.medium: 8TFLOPs(Mixed precision)
ü eia1.large: 16TFLOPs(Mixed precision)
ü eia1.xlarge: 32TFLOPs(Mixed precision)
• A 2 W, 2I/ C 8 cp
. O P M XTU
• n dl Iawb I vt kIam aI
f vI ds z
1
, 8 8 00 8 12 8 8 .
LA
• t b z N N
S 3rd partyE s W o
• SageMakerE s W z md
g mc r W
• 200n z l h zv ib
lE meafI WS E
A EN
ü
ü
ü
, 8 8 00 8 12 8 8 .
A
• t S N E
Wiba f c gm S
N
• v Sc do A l
v S t N
• N r
• hne OCR N
N z S r
I szS z
, 8 8 00 8 12 8 8 .
• s zv E AN
t
I
• s E fb A W N
hloA m rN
• Open AI Gym/Intel Coach/RLLib MXNet
Tensorflow E ce ai ce
S gAd
• SageMaker N nA m
, 8 8 00 8 12 8 8 .
A
• Amazon A v i s lvf
a nb I l
vfa NI N
• i e IW b
ENm dlt c E W
• r Si e I z h
g E IW A
• NSovn fo
i e v
TPS z
, 8 8 00 8 12 8 8 .
A
• h lvc W iAf
Amazon
gc I z
• I iAf
rn g
S E
• a eAt I z
s dW
• b o m A W
iAf N S
, 8 8 00 8 12 8 8 .
A D / 8 1
• z IA s cf N
Ad daf N
v E W
• AWS DeepRacer NSDK lmr b
eg a S hc
• SageMaker RL Wz AWS RoboMaker
W3D lmr nt W
• io t to tNDeepRacer
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
• Cloud9dA N me
fglA hn cmS
WAb
• ROS(Robot Operating System) AWS t
z WAb r ROS
a A o I
• fglA hn 1SU(Simulation Unit) E
A $0.40/ WAb
• A l n S in v A h
n s 2019
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
• CubeSat/PocketQube N n stN
n A N S e
• n A E d EC2
Ib io Kinesis Data Streams Redshift S3
Nz e I S
• NORAD ID FCCNg N S
AWSa f c
• S I 2 2019
12 Im
• v W h r E l v
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
A
• AWSb We cdi W
a v l t AE f
s m I
• r g IPS iW
A A ni h ALB/NLB/EIPI A
• o 8 i h m
• 2 z Ns
ü Global Accelerator : $0.025/Accelerator/
ü : IN/OUT
APAC
$0.015/GB $0.015/GB $0.035/GB
$0.015/GB $0.015/GB $0.043/GB
APAC $0.012/GB $0.043/GB $0.010/GB
, 8 8 00 8 12 8 8 .
A C
G
• big oAc IW N
VPC IW
• CloudWatch W gn a VPC Flow Logs
Ag SG/NACL W St
• Transit Gateway s N
50Gbps hAaggmi e EW
• Direct Connect TGW cedIW
EN r v
• znA l
fAc 2 NW
, 8 8 00 8 12 8 8 .
C A
• e i d Nl rt SN
d S
AS E nv SN d aW ch
• d Ni f d
bg d aW chN
• SDK/CLI DNS z m
d Cloud Map z E
SE m
• Ih $0.10/ oNaW
chAPI $1.00N s
, 8 8 00 8 12 8 8 .
A
• AWS o crd me
W d me
• o crd me bicg
A d me E S E N
z I v E t S
• App Mesh a nsf e Envoy Proxy
ASa nf eh l
• App Mesh
, 8 8 00 8 12 8 8 .
A
• WebSocket m na l
v z A API API GatewayN
• hn e dNWebSocketi API
I
• fb od SAWS Lambda S
AWS g EC2i
W s od oc NE
• r t S
1 18 ..121 8 22 1 08 ,
8 ,1. 1 /1 8/ 22 1 1 1 10
A C A
• m Web e i w q
S nc N p
• Amplify Console N W E z
q N f nq w qa
rS nca r Wp
• v r $0.01/ y o d
W q $0.023/GB p l
$0.15/GB I
• s b g r bt b
irs W
,
hz qN w c : 8 / : 2A / 8 1 2
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
3
• S3 API IW N E SFTP S3g cd
ba W z IAM
o n IW
• hn f e a
n s AW
• ei d $0.30/ UP/DOWN
$0.04/GB IS m
l v
• t IS m l r
, 8 8 00 8 12 8 8 .
• b sh s lc g d
NS3S EFSN I b s
h msfisc
• t v rh
b sh 10Gbps E
crehos NW a h
• 1GB $0.04 A o bn
s
• z o bns
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
• i g d bgz t e
cg W bgr
• s 2 f bg E v10
S aI4MB NhA
ü TransactWriteItems: PutItem/UpdateItem/DeleteItem
ü TransactGetItems: GetItem
Read
• o n m ld bg
, 8 8 00 8 12 8 8 .
DA
G
• Amazon Aurora(MySQL ) bo
gsl W Aurora
Global DatabaseN c
• t sl ao cf
s b I v 1
s e a z N A
• mibn f d rS SDK/CLI
• bh s r g
bo E
Writer
Reader
, 8 8 00 8 12 8 8 .
BA C D
/
• h m ga I c eS
a eh Ss n i
• On-Demandn i Sec rb E
S l a
S f e
• Provisioned Capacityn i zN
On-Demand 1 S1v
• W dor t S
$1.25/1M write request unit $0.25/1M read
request unit A d
, 8 8 00 8 12 8 8 .
A
• IoTim eE SfvcvaiAg Sh
so riAg nrbAc v lgrva
iAg E S
• Amazon Timestream iAg E z
N W N
SiAg N RDBS1/10S
• S SiAg
W A tA
• Write/Queryr e e sAd I
e sAd Memory/SSD/MagneticS3
, 8 8 00 8 12 8 8 .
BA D
)( ) )
• rzdAf lAi EN
W m a c sz
I lAisAheAoh
• S gvAn
EN W
• SQL b b z etAm b
A A AbN
• r o A I/O W
gvAn hm Ag l bhhm Ag
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
A 2 C
2
• g hfA mo ln d
a z oacoa r
• Ah W in A mo
W N E oacoa W
• g hfA mo oacoa b v
W NS ln bNEBS I
t S s W
• M3/M4/M5/C3/C4/C5/R3/R4/R5 oacoa
r Windows ServerNAmazon Linux 1
Ae Amazon Linux 2
N , C ME 8 6 G A 2 EG AI ABA I BB GA I G G
2 C E
1 G
• bg Pum cd Pt
f o Pt b
mn m
• v z W SU 45% h
mp
• Amazon Linux 2, RHEL, Ubuntu
AMI
xPp
• tPlra e i ab
esbe
4
08
A /5
1A.
0.6
1
48
1
hmp
$
C A C 3 ( 3
B G ) 3 ( 3
B G ) , 3 ( 3
B G , 3 ( 3 )
) B G ( ( 3 ) ,
M C9 E 8 6 G A 2 EG AI 9 ABA9I BB GA I G G
EG 0 5 21
C C 5
• mn Pg tnz mg a
Pg Po NC5 mn Pg
c SUC5nc P l
• c aU ENAoxes
1 mi W 10Gbps/5Gbps
U N a
• b N P EC2
S3/RDS/EMR 100GbpsW
• sP pdNf h Ndezx oN
frefNGovCloud(US-West)
4
08
A 57 v
1A.
0.6
1
48
1
( B9G ( ( 39 ( 39 (
( B9G ( 39 ( 39 (
( B9G 39 ( 39 (
( B9G ) ( 39 (
( , B9G ) ,) (
( B9G ,
, 8 8 00 8 12 8 8 .
• fi sdAb A c r
sf KVMf tanAb
o tVMf ta
• Lambda Fargate v
N S
• z 125ms o
tVM I W E5MiB s A Ameh
• Al dAblta g
https://github.com/firecracker-microvm/firecracker
, 8 0 0 .0 . 8 ,11 , 0 2 0 0 0
• AWS Lambda S Ruby d
A I E
• cg hI aL fN
ü Python 2.7, 3.6, 3.7
ü Node.js 4.3, 6.10, 8.10
ü .NET Core 1.0(C#), 2.0(C#), 2,1(C#/PowerShell)
ü Go 1.x
ü Java 8
ü Ruby
• , ,A hIeW i b
Lambda Function
L BA : : H 8:E .A8 B E :E E :E: H:
C A C
0
,
• Linux zt o ifne W r
eLambdau ev ScaP
• ppOh d Runtime API a s
NRuby gmO ac
• x b+ E ppOhe NlO
O b 2-2 , A , +1 1/R w d
c
• + E 1 c
ü CE 8B IE E IE 8CC A :
ü https://github.com/awslabs/aws-lambda-rust-runtime
, 8 8 00 8 12 8 8 .
• ALB hea ng Lambdai nacln
I Lambda
HTTP ng nf
• t Web mb cln Lambdai
nacln W E
• i naclnSALB N Nv
A S o
• ALB Lambda r m dlnN
sz
, 8 8 00 8 12 8 8 .
A
• z i bma o i bma
v I
• AMI Launch Template A
I Ndic m dic m
mflga Ae W n
• vCPU I Dedicated
I Ni bma S
t
• A hm s r A hm E
N N
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
• AWS Marketplacel ohf E d
ig N A
N A r IWv S
• A b mcg f
ena W N W
• AWS Organization W ogs
W
• Private Marketplace dig
zt
1 18 ..121 8 22 1 08 ,
8. 2 2 02 0 . . 2 2 2 21
/ / CD E BA
, / E , / /
• AWS CodePipeline Amazon ECRU A c
Ir DS
• o AWS CodeDeploy Amazon ECS AWS
Fargate Blue/Green c d g
• ET ef cAUlm DS
• ECR
• CodePipeline
• CodeBuild
• CodeDeploy Blue/Green
• n UiPhbAWad r g
,
, 8 8 00 8 12 8 8 .
, A
C
• s EIDE W i cg f o
z g f t E c S n
AWS Toolkits
• Apache License, Version 2.0 N c
• PyCharmr GA IntelliJ Visual Studio
Coder d a cibe l I
• AWS Serverless Application Model(SAM) CLI mv
E S hA
1 18 ..121 8 22 1 08 ,
, 8 8 00 8 12 8 8 .
H EB A
/ / /
• ie em W oc an z
N v Amazon Managed
Blockechain S s
• a f t E aio
ho r I
• Amazon Quantum Ledger Database em
W oN d
alobN
• fldg AI Web
https://aws.amazon.com/managed-blockchain/
1 18 ..121 8 22 1 08 ,
2 1 / : A , :BA 2 : :2B A :8 BA A
1
• Nb VPCVpdtwh P
a VPC
• 1VPC PaNV i
m s AWSdgewnc
n z c a
• VPC f o VPCvru (RouteTable
Subnet W)c I Security Group
tl c S
• Padgewn AWS Organizationh
u a a
-
1
/ 2 0.
C B C B
BB A A 2EA 2 2
2B AB CA 8C: A 2 : 8 B
, 8 8 00 8 12 8 8 .
- A
• Well-ArchitectedhrA sA af N
agio f a N WE IW S
• SA z N baltg eA SmA
c d W A ntS af c d v
1 18 ..121 8 22 1 08 ,
8 1 02
https://amzn.to/2R23scQhttps://amzn.to/2S4F1eN
. . 2,.8 , 2 8 2 2 .8 201 8 .8. .-
. ,12 ., .- A
n : ]m[e : cb
• W S
h A
• S j S
. / - -
( a)S
2 8
8 , ! 8 00 ! 12 .!

Más contenido relacionado

Similar a AWS re:Invent 2018 re:cap for Gaming (Amazon Game Developers Day)

20180512 AWS SageMakerを初めて使うガイド
20180512 AWS SageMakerを初めて使うガイド20180512 AWS SageMakerを初めて使うガイド
20180512 AWS SageMakerを初めて使うガイドYasuhiro Matsuo
 
AWSでの情報システムの可用性確保ポイント
AWSでの情報システムの可用性確保ポイントAWSでの情報システムの可用性確保ポイント
AWSでの情報システムの可用性確保ポイントGanota Ichida
 
IVS CTO Night And Day 2018 Winter - AWS Startup Tech Office Hours
IVS CTO Night And Day 2018 Winter - AWS Startup Tech Office HoursIVS CTO Night And Day 2018 Winter - AWS Startup Tech Office Hours
IVS CTO Night And Day 2018 Winter - AWS Startup Tech Office HoursAmazon Web Services Japan
 
AWS モニタリングソリューションのご紹介
AWS モニタリングソリューションのご紹介AWS モニタリングソリューションのご紹介
AWS モニタリングソリューションのご紹介Takanori Ohba
 
Edge trends mizuno-template
Edge trends mizuno-templateEdge trends mizuno-template
Edge trends mizuno-templateshintaro mizuno
 
AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)
AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)
AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)Amazon Web Services Korea
 
サービスをスケールさせるために AWSと利用者の技術
サービスをスケールさせるために AWSと利用者の技術サービスをスケールさせるために AWSと利用者の技術
サービスをスケールさせるために AWSと利用者の技術Yasuhiro Araki, Ph.D
 
Amazon Connect 導入支援のご紹介
Amazon Connect 導入支援のご紹介Amazon Connect 導入支援のご紹介
Amazon Connect 導入支援のご紹介Serverworks Co.,Ltd.
 
Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...
Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...
Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...Daniel Cukier
 
JTF2018_B30_k8s_operator_nobusue
JTF2018_B30_k8s_operator_nobusueJTF2018_B30_k8s_operator_nobusue
JTF2018_B30_k8s_operator_nobusueNobuhiro Sue
 
Faceted Search – the 120 Million Documents Story
Faceted Search – the 120 Million Documents StoryFaceted Search – the 120 Million Documents Story
Faceted Search – the 120 Million Documents StorySourcesense
 
Code4Lib 2007: MyResearch Portal
Code4Lib 2007: MyResearch PortalCode4Lib 2007: MyResearch Portal
Code4Lib 2007: MyResearch Portaleby
 
[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...
[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...
[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...Insight Technology, Inc.
 
Building prediction models with Amazon Redshift and Amazon ML
Building prediction models with  Amazon Redshift and Amazon MLBuilding prediction models with  Amazon Redshift and Amazon ML
Building prediction models with Amazon Redshift and Amazon MLJulien SIMON
 
AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方
AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方
AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方Salesforce Developers Japan
 
Google Polymer in Action
Google Polymer in ActionGoogle Polymer in Action
Google Polymer in ActionJeongkyu Shin
 
AWSでの機械学習におけるデータレイク・GPU実行環境
AWSでの機械学習におけるデータレイク・GPU実行環境AWSでの機械学習におけるデータレイク・GPU実行環境
AWSでの機械学習におけるデータレイク・GPU実行環境Yasuhiro Matsuo
 
[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby
[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby
[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・MobyAkihiro Suda
 
20180309 DLIもくもく会 Deep Learning on AWS
20180309 DLIもくもく会 Deep Learning on AWS20180309 DLIもくもく会 Deep Learning on AWS
20180309 DLIもくもく会 Deep Learning on AWSYasuhiro Matsuo
 
Automation Anywhere - Imagine New York 2019 - Verizon
Automation Anywhere - Imagine New York 2019 - VerizonAutomation Anywhere - Imagine New York 2019 - Verizon
Automation Anywhere - Imagine New York 2019 - VerizonAutomation Anywhere
 

Similar a AWS re:Invent 2018 re:cap for Gaming (Amazon Game Developers Day) (20)

20180512 AWS SageMakerを初めて使うガイド
20180512 AWS SageMakerを初めて使うガイド20180512 AWS SageMakerを初めて使うガイド
20180512 AWS SageMakerを初めて使うガイド
 
AWSでの情報システムの可用性確保ポイント
AWSでの情報システムの可用性確保ポイントAWSでの情報システムの可用性確保ポイント
AWSでの情報システムの可用性確保ポイント
 
IVS CTO Night And Day 2018 Winter - AWS Startup Tech Office Hours
IVS CTO Night And Day 2018 Winter - AWS Startup Tech Office HoursIVS CTO Night And Day 2018 Winter - AWS Startup Tech Office Hours
IVS CTO Night And Day 2018 Winter - AWS Startup Tech Office Hours
 
AWS モニタリングソリューションのご紹介
AWS モニタリングソリューションのご紹介AWS モニタリングソリューションのご紹介
AWS モニタリングソリューションのご紹介
 
Edge trends mizuno-template
Edge trends mizuno-templateEdge trends mizuno-template
Edge trends mizuno-template
 
AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)
AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)
AWS re:Invent 특집 세미나 - (2) DB/분석 분야 신규 서비스 요약 :: 윤석찬 (AWS 테크에반젤리스트)
 
サービスをスケールさせるために AWSと利用者の技術
サービスをスケールさせるために AWSと利用者の技術サービスをスケールさせるために AWSと利用者の技術
サービスをスケールさせるために AWSと利用者の技術
 
Amazon Connect 導入支援のご紹介
Amazon Connect 導入支援のご紹介Amazon Connect 導入支援のご紹介
Amazon Connect 導入支援のご紹介
 
Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...
Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...
Eficiency and Low Cost: Pro Tips for you to save 50% of your money with Googl...
 
JTF2018_B30_k8s_operator_nobusue
JTF2018_B30_k8s_operator_nobusueJTF2018_B30_k8s_operator_nobusue
JTF2018_B30_k8s_operator_nobusue
 
Faceted Search – the 120 Million Documents Story
Faceted Search – the 120 Million Documents StoryFaceted Search – the 120 Million Documents Story
Faceted Search – the 120 Million Documents Story
 
Code4Lib 2007: MyResearch Portal
Code4Lib 2007: MyResearch PortalCode4Lib 2007: MyResearch Portal
Code4Lib 2007: MyResearch Portal
 
[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...
[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...
[db tech showcase Tokyo 2018] #dbts2018 #C32 『Deep Dive on the Amazon Aurora ...
 
Building prediction models with Amazon Redshift and Amazon ML
Building prediction models with  Amazon Redshift and Amazon MLBuilding prediction models with  Amazon Redshift and Amazon ML
Building prediction models with Amazon Redshift and Amazon ML
 
AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方
AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方
AIアプリはこう作る!-独自の識別モデル作成も簡単 Einstein Platform Services の使い方
 
Google Polymer in Action
Google Polymer in ActionGoogle Polymer in Action
Google Polymer in Action
 
AWSでの機械学習におけるデータレイク・GPU実行環境
AWSでの機械学習におけるデータレイク・GPU実行環境AWSでの機械学習におけるデータレイク・GPU実行環境
AWSでの機械学習におけるデータレイク・GPU実行環境
 
[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby
[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby
[表示が崩れる場合ダウンロードしてご覧ください] 2018年のDocker・Moby
 
20180309 DLIもくもく会 Deep Learning on AWS
20180309 DLIもくもく会 Deep Learning on AWS20180309 DLIもくもく会 Deep Learning on AWS
20180309 DLIもくもく会 Deep Learning on AWS
 
Automation Anywhere - Imagine New York 2019 - Verizon
Automation Anywhere - Imagine New York 2019 - VerizonAutomation Anywhere - Imagine New York 2019 - Verizon
Automation Anywhere - Imagine New York 2019 - Verizon
 

Más de Amazon Web Services Japan

202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)
202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)
202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)Amazon Web Services Japan
 
202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS
202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS
202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFSAmazon Web Services Japan
 
202204 AWS Black Belt Online Seminar AWS IoT Device Defender
202204 AWS Black Belt Online Seminar AWS IoT Device Defender202204 AWS Black Belt Online Seminar AWS IoT Device Defender
202204 AWS Black Belt Online Seminar AWS IoT Device DefenderAmazon Web Services Japan
 
202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現
202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現
202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現Amazon Web Services Japan
 
202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...
202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...
202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...Amazon Web Services Japan
 
Amazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデート
Amazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデートAmazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデート
Amazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデートAmazon Web Services Japan
 
20220409 AWS BLEA 開発にあたって検討したこと
20220409 AWS BLEA 開発にあたって検討したこと20220409 AWS BLEA 開発にあたって検討したこと
20220409 AWS BLEA 開発にあたって検討したことAmazon Web Services Japan
 
202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用
202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用
202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用Amazon Web Services Japan
 
202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf
202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf
202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdfAmazon Web Services Japan
 
SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介
SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介
SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介Amazon Web Services Japan
 
Amazon QuickSight の組み込み方法をちょっぴりDD
Amazon QuickSight の組み込み方法をちょっぴりDDAmazon QuickSight の組み込み方法をちょっぴりDD
Amazon QuickSight の組み込み方法をちょっぴりDDAmazon Web Services Japan
 
マルチテナント化で知っておきたいデータベースのこと
マルチテナント化で知っておきたいデータベースのことマルチテナント化で知っておきたいデータベースのこと
マルチテナント化で知っておきたいデータベースのことAmazon Web Services Japan
 
機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ
機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ
機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチAmazon Web Services Japan
 
パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介
パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介
パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介Amazon Web Services Japan
 
202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles
202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles
202202 AWS Black Belt Online Seminar Amazon Connect Customer ProfilesAmazon Web Services Japan
 
Amazon Game Tech Night #24 KPIダッシュボードを最速で用意するために
Amazon Game Tech Night #24 KPIダッシュボードを最速で用意するためにAmazon Game Tech Night #24 KPIダッシュボードを最速で用意するために
Amazon Game Tech Night #24 KPIダッシュボードを最速で用意するためにAmazon Web Services Japan
 
202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨
202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨
202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨Amazon Web Services Japan
 
[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介
[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介
[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介Amazon Web Services Japan
 
202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介
202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介
202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介Amazon Web Services Japan
 

Más de Amazon Web Services Japan (20)

202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)
202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)
202205 AWS Black Belt Online Seminar Amazon VPC IP Address Manager (IPAM)
 
202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS
202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS
202205 AWS Black Belt Online Seminar Amazon FSx for OpenZFS
 
202204 AWS Black Belt Online Seminar AWS IoT Device Defender
202204 AWS Black Belt Online Seminar AWS IoT Device Defender202204 AWS Black Belt Online Seminar AWS IoT Device Defender
202204 AWS Black Belt Online Seminar AWS IoT Device Defender
 
Infrastructure as Code (IaC) 談義 2022
Infrastructure as Code (IaC) 談義 2022Infrastructure as Code (IaC) 談義 2022
Infrastructure as Code (IaC) 談義 2022
 
202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現
202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現
202204 AWS Black Belt Online Seminar Amazon Connect を活用したオンコール対応の実現
 
202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...
202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...
202204 AWS Black Belt Online Seminar Amazon Connect Salesforce連携(第1回 CTI Adap...
 
Amazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデート
Amazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデートAmazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデート
Amazon Game Tech Night #25 ゲーム業界向け機械学習最新状況アップデート
 
20220409 AWS BLEA 開発にあたって検討したこと
20220409 AWS BLEA 開発にあたって検討したこと20220409 AWS BLEA 開発にあたって検討したこと
20220409 AWS BLEA 開発にあたって検討したこと
 
202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用
202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用
202202 AWS Black Belt Online Seminar AWS Managed Rules for AWS WAF の活用
 
202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf
202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf
202203 AWS Black Belt Online Seminar Amazon Connect Tasks.pdf
 
SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介
SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介
SaaS テナント毎のコストを把握するための「AWS Application Cost Profiler」のご紹介
 
Amazon QuickSight の組み込み方法をちょっぴりDD
Amazon QuickSight の組み込み方法をちょっぴりDDAmazon QuickSight の組み込み方法をちょっぴりDD
Amazon QuickSight の組み込み方法をちょっぴりDD
 
マルチテナント化で知っておきたいデータベースのこと
マルチテナント化で知っておきたいデータベースのことマルチテナント化で知っておきたいデータベースのこと
マルチテナント化で知っておきたいデータベースのこと
 
機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ
機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ
機密データとSaaSは共存しうるのか!?セキュリティー重視のユーザー層を取り込む為のネットワーク通信のアプローチ
 
パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介
パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介
パッケージソフトウェアを簡単にSaaS化!?既存の資産を使ったSaaS化手法のご紹介
 
202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles
202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles
202202 AWS Black Belt Online Seminar Amazon Connect Customer Profiles
 
Amazon Game Tech Night #24 KPIダッシュボードを最速で用意するために
Amazon Game Tech Night #24 KPIダッシュボードを最速で用意するためにAmazon Game Tech Night #24 KPIダッシュボードを最速で用意するために
Amazon Game Tech Night #24 KPIダッシュボードを最速で用意するために
 
202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨
202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨
202202 AWS Black Belt Online Seminar AWS SaaS Boost で始めるSaaS開発⼊⾨
 
[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介
[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介
[20220126] JAWS-UG 2022初頭までに葬ったAWSアンチパターン大紹介
 
202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介
202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介
202111 AWS Black Belt Online Seminar AWSで構築するSmart Mirrorのご紹介
 

Último

Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brandgvaughan
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii SoldatenkoFwdays
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Enterprise Knowledge
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):comworks
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...Fwdays
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfPrecisely
 
How to write a Business Continuity Plan
How to write a Business Continuity PlanHow to write a Business Continuity Plan
How to write a Business Continuity PlanDatabarracks
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Scott Keck-Warren
 
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo DayH2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo DaySri Ambati
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek SchlawackFwdays
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 3652toLead Limited
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionDilum Bandara
 

Último (20)

Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brand
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024Designing IA for AI - Information Architecture Conference 2024
Designing IA for AI - Information Architecture Conference 2024
 
CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):CloudStudio User manual (basic edition):
CloudStudio User manual (basic edition):
 
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks..."LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
"LLMs for Python Engineers: Advanced Data Analysis and Semantic Kernel",Oleks...
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
 
How to write a Business Continuity Plan
How to write a Business Continuity PlanHow to write a Business Continuity Plan
How to write a Business Continuity Plan
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024Advanced Test Driven-Development @ php[tek] 2024
Advanced Test Driven-Development @ php[tek] 2024
 
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo DayH2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
H2O.ai CEO/Founder: Sri Ambati Keynote at Wells Fargo Day
 
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
"Subclassing and Composition – A Pythonic Tour of Trade-Offs", Hynek Schlawack
 
Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365Ensuring Technical Readiness For Copilot in Microsoft 365
Ensuring Technical Readiness For Copilot in Microsoft 365
 
Advanced Computer Architecture – An Introduction
Advanced Computer Architecture – An IntroductionAdvanced Computer Architecture – An Introduction
Advanced Computer Architecture – An Introduction
 

AWS re:Invent 2018 re:cap for Gaming (Amazon Game Developers Day)

  • 1. 8 ,1. 1 1 8 22 1 1 1 10 , 1 8 18 1 : 1 C GA I W SA A F
  • 2. 1 18 ..121 8 22 1 08 , • AWS re:Invent 2018 • A S I • A
  • 3. 1 18 ..121 8 22 1 08 ,
  • 4. 1 18 ..121 8 22 1 08 , v • AWS sl sc bhc I S A ü 2018 11 25 11 30 ü 7 +7 ü 50,000 ü 1,000 ü 2,100 • a c z g m c isd s m g sn t v • re:PLAY f Pub Crawl heg r s osg W
  • 5. 8 , 8 00 12 . 1. AWS RoboMaker MN 2. AWS Amplify Console MN 3. AWS Transfer for SFTP MN 4. AWS DataSync MN 5. AWS S3 Batch Operations MN 6. Amazon S3 Intelligent Tiering MN 7. Amazon EFS Infrequent Access(EFS-IA) MN 8. Snowball Edge Compute Optimized MN 9. Amazon EBSAPIOPS AI 8 1 8 MN
  • 6. 1 18 ..121 8 22 1 08 , ( ) 1. AWS Global Accelerator 2. AWS Transit Gateway 3. Amazon EC2 A1 4. Amazon EC2 C5n 5. Elastic Fabric Adapter 6. Firecracker 7. Dynamic Training for Deep Learning Model 8. AWS IoT Events 9. AWS IoT SiteWise 10. AWS IoT Thing Graph 11. AWS IoT Greengrass 3 12. AWS IoT Device Tester 13. Amazon FreeRTOS Bluetooth Low Energy 14. IoT A3 AWS I S
  • 7. 1 18 ..121 8 22 1 08 , ( ) 15. AWS KMS Custom Key StoreA 16. Amazon S3 Object LockA 17. Amazon S3-Glacier 3 18. Amazon Kinesis Data Analytics Java I A
  • 8. 1 18 ..121 8 22 1 08 , 1. AWS Container Competency I lm 2. AWS Device Qualification Program AWS Partner Device Catalog lm 3. AWS Marketplace W S hg A 4. AWS Marketplace Private Marketplace lm 5. AWS Ground Station lm 6. Amazon Comprehend Medical lm 7. Amazon Translate deAf 8. Amazon QuickSight n b Sa Af 9. Amazon DynamoDB Transactions lm 10. AWS Elemental MediaConnect lm 11. Amazon CloudWatch Logs Insights lm 12. Amazon AthenaAWorkgroupa i 13. AWS CodePipeline ECRAf cACodeDeploy Blue/Green Af 14. Shared VPC lm
  • 9. 1 18 ..121 8 22 1 08 , ( ) 1. Amazon S3 Glacier Deep Archive 2. Amazon FSx for Windows File Server 3. Amazon FSx for Lustre 4. AWS Lake Formation 5. AWS Control Tower 6. AWS Security Hub 7. Amazon Aurora Global Database 8. Amazon DynamoDB Read/Write Capacity On Demand 9. Amazon Timestream 10. Amazon Quantum Ledger Database 11. Amazon Managed Blockchain 12. Amazon Elastic Inference 13. AWS Inferentia 14. Amazon SageMaker Ground Trouth
  • 10. 1 18 ..121 8 22 1 08 , ( ) 15. AWS Marketplace for Machine LearningA 16. Amazon SageMaker RLA 17. Amazon SageMaker 3 W 18. AWS DeepRacerA 19. Amazon TextractA 20. Amazon PersonalizeA 21. Amazon ForecastA 22. AWS OutpostsA 23. AWS License ManagerA 24. AWS Cloud MapA 25. AWS App MeshA 26. Amazon EC2 I A 27. Amazon Lightsail 2 W 28. Amazon RDS on VMware S A
  • 11. 1 18 ..121 8 22 1 08 , 1. Amazon Redshift Concurrency Scaling S 2. PyCharm, IntelliJ, Visual Studio Code AWS Toolkits S 3. AWS Lambda Ruby 4. AWS LambdaACustom Runtimes 5. AWS Lambda Layers S 6. AWS Serverless Application Model I 7. AWS Lambda ALB 8. AWS Step Functions API Connectors S 9. Amazon API Gateway for WebSocket S 10. Amazon Managed Streaming for Kafka S 11. AWS Well-Architected Tool S
  • 12. 1 18 ..121 8 22 1 08 ,
  • 13. , 8 8 00 8 12 8 8 . AD K J • SQL EJava e hm Wf • n em i di E g v N Arz ü Apache Flink ü AWS SDK for Java • Kinesis S3 DynamoDB I AWSW c t E Java S E Cassandra RabbitMQ I OSS t rz • b a l m im s hm o rz
  • 14. ( 2E 1 3 0 D A A 2 2 A ( 8 A A D A P Q . 1 • i eus m 1 3 ü W I a ü 0 8 W ) • L ,Mr gWc dcl Q ou ü ,r gWz z ü ,r gW W ü nvkb SNt h f
  • 15. , 8 8 00 8 12 8 8 . A C • AWS W A b l o a cs z Wnv d b me • CloudWatch Logs g e n vh mdr t f EW • Dashboard W NS • ds e i h I $0.0076/GB( )N W
  • 16. , 8 8 00 8 12 8 8 . 1 A • S3 g i h S z E N I b l S I A • AWS Lake FormationSCloudFormation g b l ovnds I g NE • AWS gf e W gva g m i cs • o nr Lake Formation S N tf e I
  • 17. , 8 8 00 8 12 8 8 . A • Apache Kafka E ao h i l v Apache Kafka gc b d t • r IKafka n t Kafkav eo m IA • E S z Kinesis Data Streams ndo NW a s f I I • e d
  • 18. 1 18 ..121 8 22 1 08 ,
  • 19. , 8 8 00 8 12 8 8 . 3 B 3 A • r E W g mh AA i I veN Batch Operations c a fl st • S3 n W N E c bd b o S N I ü ACL Glacier ü CSV S3 ü CloudTrail
  • 20. 8. 2 2 02 0 . . 2 2 2 21 , A 3 • S3 PUT t bc a ib I Glacier o v S3 lb ahm f hm A d ahm Glacier ib S • S3-Glacier ea c v SNS/SQS E r W g m E • n rI bc ATUs P U I f hm z TD P ü ü Queue ,
  • 21. , 8 8 00 8 12 8 8 . ( ) 3, 3 ) 3 ( , , • S3 WORMW Wm nb 2 e vE • • IAM • Object Lock f cd o r g l t W IS h d o s • ni na eN A s z W Bucket with objects
  • 22. , 8 0 0 4.0 . 8 4 ,114 4, 0 42 0 0 0 G AD 3 • I E E S I hAe Glacierv • E oh ctgtf A m z sa E bAd N • hAe W v E E l A W W I • nr tdoti 2019
  • 23. , 8 8 00 8 12 8 8 . A F • AZ E me n s S3 d W e • Windowsf E DFS Replication Active Directory z Ib ihna W • 10GB/s l e a g mS n E l e aI v s • aIo NArtId c ü 1GB $0.13/ ü 1MBps $2.2/ ü 1GB $0.050/
  • 24. 1 18 ..121 8 22 1 08 ,
  • 25. , 8 8 00 8 12 8 8 . A • ISN m b af I cvz (Custom Terminology) N • n N g E hNl r A I rN cvz g iSI • cvz TMX I CSV m o Wd t s edf https://docs.aws.amazon.com/translate/latest/dg/creating-custom-terminology.html
  • 26. 1 . E C C 88 C C C E E E GI C AE 2 E • XE 0 r NS eg e gih W c oe ü eia1.medium: 8TFLOPs(Mixed precision) ü eia1.large: 16TFLOPs(Mixed precision) ü eia1.xlarge: 32TFLOPs(Mixed precision) • A 2 W, 2I/ C 8 cp . O P M XTU • n dl Iawb I vt kIam aI f vI ds z 1
  • 27. , 8 8 00 8 12 8 8 . LA • t b z N N S 3rd partyE s W o • SageMakerE s W z md g mc r W • 200n z l h zv ib lE meafI WS E A EN ü ü ü
  • 28. , 8 8 00 8 12 8 8 . A • t S N E Wiba f c gm S N • v Sc do A l v S t N • N r • hne OCR N N z S r I szS z
  • 29. , 8 8 00 8 12 8 8 . • s zv E AN t I • s E fb A W N hloA m rN • Open AI Gym/Intel Coach/RLLib MXNet Tensorflow E ce ai ce S gAd • SageMaker N nA m
  • 30. , 8 8 00 8 12 8 8 . A • Amazon A v i s lvf a nb I l vfa NI N • i e IW b ENm dlt c E W • r Si e I z h g E IW A • NSovn fo i e v TPS z
  • 31. , 8 8 00 8 12 8 8 . A • h lvc W iAf Amazon gc I z • I iAf rn g S E • a eAt I z s dW • b o m A W iAf N S
  • 32. , 8 8 00 8 12 8 8 . A D / 8 1 • z IA s cf N Ad daf N v E W • AWS DeepRacer NSDK lmr b eg a S hc • SageMaker RL Wz AWS RoboMaker W3D lmr nt W • io t to tNDeepRacer
  • 33. 1 18 ..121 8 22 1 08 ,
  • 34. , 8 8 00 8 12 8 8 . • Cloud9dA N me fglA hn cmS WAb • ROS(Robot Operating System) AWS t z WAb r ROS a A o I • fglA hn 1SU(Simulation Unit) E A $0.40/ WAb • A l n S in v A h n s 2019
  • 35. 1 18 ..121 8 22 1 08 ,
  • 36. , 8 8 00 8 12 8 8 . • CubeSat/PocketQube N n stN n A N S e • n A E d EC2 Ib io Kinesis Data Streams Redshift S3 Nz e I S • NORAD ID FCCNg N S AWSa f c • S I 2 2019 12 Im • v W h r E l v
  • 37. 1 18 ..121 8 22 1 08 ,
  • 38. , 8 8 00 8 12 8 8 . A • AWSb We cdi W a v l t AE f s m I • r g IPS iW A A ni h ALB/NLB/EIPI A • o 8 i h m • 2 z Ns ü Global Accelerator : $0.025/Accelerator/ ü : IN/OUT APAC $0.015/GB $0.015/GB $0.035/GB $0.015/GB $0.015/GB $0.043/GB APAC $0.012/GB $0.043/GB $0.010/GB
  • 39. , 8 8 00 8 12 8 8 . A C G • big oAc IW N VPC IW • CloudWatch W gn a VPC Flow Logs Ag SG/NACL W St • Transit Gateway s N 50Gbps hAaggmi e EW • Direct Connect TGW cedIW EN r v • znA l fAc 2 NW
  • 40. , 8 8 00 8 12 8 8 . C A • e i d Nl rt SN d S AS E nv SN d aW ch • d Ni f d bg d aW chN • SDK/CLI DNS z m d Cloud Map z E SE m • Ih $0.10/ oNaW chAPI $1.00N s
  • 41. , 8 8 00 8 12 8 8 . A • AWS o crd me W d me • o crd me bicg A d me E S E N z I v E t S • App Mesh a nsf e Envoy Proxy ASa nf eh l • App Mesh
  • 42. , 8 8 00 8 12 8 8 . A • WebSocket m na l v z A API API GatewayN • hn e dNWebSocketi API I • fb od SAWS Lambda S AWS g EC2i W s od oc NE • r t S
  • 43. 1 18 ..121 8 22 1 08 ,
  • 44. 8 ,1. 1 /1 8/ 22 1 1 1 10 A C A • m Web e i w q S nc N p • Amplify Console N W E z q N f nq w qa rS nca r Wp • v r $0.01/ y o d W q $0.023/GB p l $0.15/GB I • s b g r bt b irs W , hz qN w c : 8 / : 2A / 8 1 2
  • 45. 1 18 ..121 8 22 1 08 ,
  • 46. , 8 8 00 8 12 8 8 . 3 • S3 API IW N E SFTP S3g cd ba W z IAM o n IW • hn f e a n s AW • ei d $0.30/ UP/DOWN $0.04/GB IS m l v • t IS m l r
  • 47. , 8 8 00 8 12 8 8 . • b sh s lc g d NS3S EFSN I b s h msfisc • t v rh b sh 10Gbps E crehos NW a h • 1GB $0.04 A o bn s • z o bns
  • 48. 1 18 ..121 8 22 1 08 ,
  • 49. , 8 8 00 8 12 8 8 . • i g d bgz t e cg W bgr • s 2 f bg E v10 S aI4MB NhA ü TransactWriteItems: PutItem/UpdateItem/DeleteItem ü TransactGetItems: GetItem Read • o n m ld bg
  • 50. , 8 8 00 8 12 8 8 . DA G • Amazon Aurora(MySQL ) bo gsl W Aurora Global DatabaseN c • t sl ao cf s b I v 1 s e a z N A • mibn f d rS SDK/CLI • bh s r g bo E Writer Reader
  • 51. , 8 8 00 8 12 8 8 . BA C D / • h m ga I c eS a eh Ss n i • On-Demandn i Sec rb E S l a S f e • Provisioned Capacityn i zN On-Demand 1 S1v • W dor t S $1.25/1M write request unit $0.25/1M read request unit A d
  • 52. , 8 8 00 8 12 8 8 . A • IoTim eE SfvcvaiAg Sh so riAg nrbAc v lgrva iAg E S • Amazon Timestream iAg E z N W N SiAg N RDBS1/10S • S SiAg W A tA • Write/Queryr e e sAd I e sAd Memory/SSD/MagneticS3
  • 53. , 8 8 00 8 12 8 8 . BA D )( ) ) • rzdAf lAi EN W m a c sz I lAisAheAoh • S gvAn EN W • SQL b b z etAm b A A AbN • r o A I/O W gvAn hm Ag l bhhm Ag
  • 54. 1 18 ..121 8 22 1 08 ,
  • 55. , 8 8 00 8 12 8 8 . A 2 C 2 • g hfA mo ln d a z oacoa r • Ah W in A mo W N E oacoa W • g hfA mo oacoa b v W NS ln bNEBS I t S s W • M3/M4/M5/C3/C4/C5/R3/R4/R5 oacoa r Windows ServerNAmazon Linux 1 Ae Amazon Linux 2
  • 56. N , C ME 8 6 G A 2 EG AI ABA I BB GA I G G 2 C E 1 G • bg Pum cd Pt f o Pt b mn m • v z W SU 45% h mp • Amazon Linux 2, RHEL, Ubuntu AMI xPp • tPlra e i ab esbe 4 08 A /5 1A. 0.6 1 48 1 hmp $ C A C 3 ( 3 B G ) 3 ( 3 B G ) , 3 ( 3 B G , 3 ( 3 ) ) B G ( ( 3 ) ,
  • 57. M C9 E 8 6 G A 2 EG AI 9 ABA9I BB GA I G G EG 0 5 21 C C 5 • mn Pg tnz mg a Pg Po NC5 mn Pg c SUC5nc P l • c aU ENAoxes 1 mi W 10Gbps/5Gbps U N a • b N P EC2 S3/RDS/EMR 100GbpsW • sP pdNf h Ndezx oN frefNGovCloud(US-West) 4 08 A 57 v 1A. 0.6 1 48 1 ( B9G ( ( 39 ( 39 ( ( B9G ( 39 ( 39 ( ( B9G 39 ( 39 ( ( B9G ) ( 39 ( ( , B9G ) ,) ( ( B9G ,
  • 58. , 8 8 00 8 12 8 8 . • fi sdAb A c r sf KVMf tanAb o tVMf ta • Lambda Fargate v N S • z 125ms o tVM I W E5MiB s A Ameh • Al dAblta g https://github.com/firecracker-microvm/firecracker
  • 59. , 8 0 0 .0 . 8 ,11 , 0 2 0 0 0 • AWS Lambda S Ruby d A I E • cg hI aL fN ü Python 2.7, 3.6, 3.7 ü Node.js 4.3, 6.10, 8.10 ü .NET Core 1.0(C#), 2.0(C#), 2,1(C#/PowerShell) ü Go 1.x ü Java 8 ü Ruby • , ,A hIeW i b Lambda Function
  • 60. L BA : : H 8:E .A8 B E :E E :E: H: C A C 0 , • Linux zt o ifne W r eLambdau ev ScaP • ppOh d Runtime API a s NRuby gmO ac • x b+ E ppOhe NlO O b 2-2 , A , +1 1/R w d c • + E 1 c ü CE 8B IE E IE 8CC A : ü https://github.com/awslabs/aws-lambda-rust-runtime
  • 61. , 8 8 00 8 12 8 8 . • ALB hea ng Lambdai nacln I Lambda HTTP ng nf • t Web mb cln Lambdai nacln W E • i naclnSALB N Nv A S o • ALB Lambda r m dlnN sz
  • 62. , 8 8 00 8 12 8 8 . A • z i bma o i bma v I • AMI Launch Template A I Ndic m dic m mflga Ae W n • vCPU I Dedicated I Ni bma S t • A hm s r A hm E N N
  • 63. 1 18 ..121 8 22 1 08 ,
  • 64. , 8 8 00 8 12 8 8 . • AWS Marketplacel ohf E d ig N A N A r IWv S • A b mcg f ena W N W • AWS Organization W ogs W • Private Marketplace dig zt
  • 65. 1 18 ..121 8 22 1 08 ,
  • 66. 8. 2 2 02 0 . . 2 2 2 21 / / CD E BA , / E , / / • AWS CodePipeline Amazon ECRU A c Ir DS • o AWS CodeDeploy Amazon ECS AWS Fargate Blue/Green c d g • ET ef cAUlm DS • ECR • CodePipeline • CodeBuild • CodeDeploy Blue/Green • n UiPhbAWad r g ,
  • 67. , 8 8 00 8 12 8 8 . , A C • s EIDE W i cg f o z g f t E c S n AWS Toolkits • Apache License, Version 2.0 N c • PyCharmr GA IntelliJ Visual Studio Coder d a cibe l I • AWS Serverless Application Model(SAM) CLI mv E S hA
  • 68. 1 18 ..121 8 22 1 08 ,
  • 69. , 8 8 00 8 12 8 8 . H EB A / / / • ie em W oc an z N v Amazon Managed Blockechain S s • a f t E aio ho r I • Amazon Quantum Ledger Database em W oN d alobN • fldg AI Web https://aws.amazon.com/managed-blockchain/
  • 70. 1 18 ..121 8 22 1 08 ,
  • 71. 2 1 / : A , :BA 2 : :2B A :8 BA A 1 • Nb VPCVpdtwh P a VPC • 1VPC PaNV i m s AWSdgewnc n z c a • VPC f o VPCvru (RouteTable Subnet W)c I Security Group tl c S • Padgewn AWS Organizationh u a a - 1 / 2 0. C B C B BB A A 2EA 2 2 2B AB CA 8C: A 2 : 8 B
  • 72. , 8 8 00 8 12 8 8 . - A • Well-ArchitectedhrA sA af N agio f a N WE IW S • SA z N baltg eA SmA c d W A ntS af c d v
  • 73. 1 18 ..121 8 22 1 08 , 8 1 02 https://amzn.to/2R23scQhttps://amzn.to/2S4F1eN
  • 74. . . 2,.8 , 2 8 2 2 .8 201 8 .8. .- . ,12 ., .- A n : ]m[e : cb • W S h A • S j S . / - - ( a)S
  • 75. 2 8 8 , ! 8 00 ! 12 .!