SlideShare une entreprise Scribd logo
1  sur  60
DWH/Hadoop in Rakuten Ichiba
Vol.01 Oct/26/2013
Mitsuo Hangai
Sendai Development Gruop
New Service Development Department, Rakuten, Inc.
http://www.rakuten.co.jp/
Self introduction

@bangucs
Mitsuo Hangai(半谷 充生)
Rakuten, Inc. Service Development Sendai Group

汉语
2
Agenda

About Sendai Branch
What is our data ware-house
Now and future

3
About Sendai Branch

4
Do you know
Sendai?
5
About Sendai

Sendai City
白地図、世界地図、日本地図が無料【白地図専門店】 http://www.freemap.jp/japan/ja_kouiki_japan_big_scale_3.html

6
About Sendai

7
About Sendai branch

8
History of Sendai Development Group
2007. Foundation for Pro-sports.
2008. Start Ichiba Business Support and Infoseek operations.
2009. Growing up and starting Advertisement development.
2010. Start Marriage operations.
2011.Hit by the huge earthquake…
Move to new office.
2012. GM changed to Nanjo (He organizes Satellite!).

30

20
10
0
2007 2008 2009 2010 2011 2012 2013

Advertisement
Auction
Marrige
Infoseek
Ichiba
Pro-sports
9
Current work of Rakuten Sendai
Our team!

International Ichiba
Development & Operation

Central Data WareHouse
Development & Operation

Development &
Operation

Development &
System replacement
Operation
Development & Operation
10
About the usage of
Rakuten Ichiba’s Data

11
How/what we use Rakuten Ichiba’s data

Purchase
History

Ranking Ichiba

GMS(Gross Merchandise Sales)
Reporting for 500 of EC
Consultants

Marketing
department

Accounting,
Giving points

Find injustice
And so forth….
12
By the way….

Do you know
….
13
How many orders
Rakuten Ichiba
receives
per day?
14
A: About
2,000,000
Transactions
(※order based, not items)
15
How much data
Do our Data
warehouse
handle per day?
16
A:About 100GB
(this is not all, only needed)

17
How many
Items
Does Rakuten
Ichiba have?
18
A: about
1,400,000,000
Items
(2013/10/08 basis)
19
There are some
Long and
Funny names of
Items
20
This is the name
of this item!!

http://item.rakuten.co.jp/wakamaru/sale-2908-50offcp/
21
This is the name of
this item!!

http://item.rakuten.co.jp/pascoshop/4901820354426/
22
This is the name of this
item!!
http://item.rakuten.co.jp/e-cha/hd-sakusakuwakame/
23
We have
such huge
data.

(and

funny)

24
We must handle
such huge data
until morning…
25
Like this(1):
This table has about
200,000,000 records

26
Like this(2):
About
2 meters

Each tables has
about 200,000,000
records
27
How tough…
But it is
necessary…
28
Few years ago(- May 2011)

Old SelectDB
SQL
Perl

Scheduler

Batch Server

File
File
File
File
File
File

Purchase

RDB2

Interface

File
File
File

load

ITEM

Unload

Shops

RDB1

107 tables
378 interface files

File
File
File
File
File
File
File
File
File
File
File
File

29
Problem

RDBMS had problems such
as:
-Poor performance…
-Lack of disk amount...
-Difficult to enhance…
-servers are expensive!!
30
Really poor…
For example:
31
32
How do we
solve it?
33
34
Sweet point of Hadoop

 Good performance!
 As for batch processing, it acts extremely
good performance.

 Easy to enhance!
 Just only add Data nodes.

 Do not need high performance
servers!
 Just only commodity servers, so we can
reduce costs!
35
Bitter point of Hadoop

 MapReduce is not easy…
 We decided to use Hive(enable MapReduce
via SQL-like query language called HiveQL)

 Hive has no “delete” and “insert
into” clause, and HiveQL has
many different from SQL…
 Need to consider before development, deeply

 Hive has high latency…
 Only batch processing

36
Then we
decided to use
Hadoop.
37
Rakuten’s Shared Hadoop Cluster

Recommend
Recommend
Ranking
Ranking
Item data analysis
Item data analysis Behavior analysis
Recommend
Behavior analysis Japan Ichiba DWH
Ranking
Item data analysis Japan Ichiba DWH Access log analysis
Behavior analysis Access log analysis
Personalize
Suggest
Granting Point
2009
15 nodes
50TB

2011
69 nodes
300TB

2013
30 nodes
1PB
38
Plan:

New SelectDB(called Ichiba DWH)
HiveQL
Shell/Java

Batch Server

Scheduler

Purchase

Hadoop
Cluster
69nodes

File
File
File
Interface

File
File
File

load

ITEM

Unload

Shops

File
File
File

107 tables
378 interface files

File
File
File
File
File
File
File
File
File
File
File
File

39
We had to transfer data
from old system to
Hadoop:

107 tables!!
We had to check all diff
between old system
and new system:

378 files!!
(=378HiveQL)
40
Project was
2010-Oct
To
2011-May
41
Can we
Beat it?

http://www.pakutaso.com/20130900245post-3233.html

42
Moreover...
43
2011- March
44
We were hit by a huge earthquake on
March 11, 2011… the project was in the climax….

Hole at the wall…

45
But we did.
46
At temporary office
(like Tako-beya)

47
2011- May
48
We released
The new Data
warehouse!!
49
Hadoop was great

At result, total processing time basis:
RDB1

161:29:38

VS
99:54:39

Hadoop beat RDBMS
40%!!!!
50
No problem at all!!!
51
Detail of architecture of our DWH

HiveQL
Perl/Shell/Java

Batch Server
Scheduler
(Client Node of Hadoop)
File
File
File
Purchase

Unload

Shops

File
File
File

Job tracker/
Name Node

File
File
File
File
File
File
File
File
File

ITEM

File
File
File
Data Nodes

File
File
File
Rakuten Shared Hadoop
Cluster

52
Now and future

53
Current situation of our DWH

Purchase

Shops

Tables:202
HiveQLs:701
Keeps Growing!!!
New!
Data Nodes

ITEM

Review

Rakuten Shared Hadoop
Cluster

New!

…

It doubled!
Total processing time:
Total processing time:
80:04:04!!
99:54:39
http://model.foto.ne.jp/free/product_info.php/cPath/24_251_243/products_id/302131

54
Future
BI

New!

Purchase

Shops

New!

Data Nodes

Customer
Support tool

ITEM

Review

Rakuten Shared Hadoop
Cluster

New!
New!

…

http://model.foto.ne.jp/free/product_info.php/cPath/24_251_243/products_id/302131

55
We will expand our service and usage of data!!

 Currently, we act like a platform team.
But our mission is “analytics”.
 We are going to focus on Analyzing
data, more and more!
 And we are going to expand and
develop other services which use
Rakuten Ichiba’s exciting data!
56
Exciting!!

http://www.pakutaso.com/20130926245post-3235.html
57
We are
Waiting for
you!!
58
Join us!
59
Thank you for listening!
Contact me via:
@bangucs
Mitsuo.hangai
mitsuo.hangai@mail.rakuten.com

English is OK, of course 日本語でもおk
60

Contenu connexe

Tendances

MHA for MySQLとDeNAのオープンソースの話
MHA for MySQLとDeNAのオープンソースの話MHA for MySQLとDeNAのオープンソースの話
MHA for MySQLとDeNAのオープンソースの話
Yoshinori Matsunobu
 
[D35] インメモリーデータベース徹底比較 by Komori
[D35] インメモリーデータベース徹底比較 by Komori[D35] インメモリーデータベース徹底比較 by Komori
[D35] インメモリーデータベース徹底比較 by Komori
Insight Technology, Inc.
 
HAクラスタで PostgreSQLレプリケーション構成の 高可用化
HAクラスタで PostgreSQLレプリケーション構成の 高可用化HAクラスタで PostgreSQLレプリケーション構成の 高可用化
HAクラスタで PostgreSQLレプリケーション構成の 高可用化
Takatoshi Matsuo
 

Tendances (20)

Keycloak拡張入門
Keycloak拡張入門Keycloak拡張入門
Keycloak拡張入門
 
MHA for MySQLとDeNAのオープンソースの話
MHA for MySQLとDeNAのオープンソースの話MHA for MySQLとDeNAのオープンソースの話
MHA for MySQLとDeNAのオープンソースの話
 
Power BI を提案してみた件
Power BI を提案してみた件Power BI を提案してみた件
Power BI を提案してみた件
 
[D35] インメモリーデータベース徹底比較 by Komori
[D35] インメモリーデータベース徹底比較 by Komori[D35] インメモリーデータベース徹底比較 by Komori
[D35] インメモリーデータベース徹底比較 by Komori
 
HAクラスタで PostgreSQLレプリケーション構成の 高可用化
HAクラスタで PostgreSQLレプリケーション構成の 高可用化HAクラスタで PostgreSQLレプリケーション構成の 高可用化
HAクラスタで PostgreSQLレプリケーション構成の 高可用化
 
実環境にTerraform導入したら驚いた
実環境にTerraform導入したら驚いた実環境にTerraform導入したら驚いた
実環境にTerraform導入したら驚いた
 
JDMC LT#1 - なぜモノタロウでデータマネジメントが必要になったのか
JDMC LT#1 - なぜモノタロウでデータマネジメントが必要になったのかJDMC LT#1 - なぜモノタロウでデータマネジメントが必要になったのか
JDMC LT#1 - なぜモノタロウでデータマネジメントが必要になったのか
 
Oracle Database Applianceのご紹介(詳細)
Oracle Database Applianceのご紹介(詳細)Oracle Database Applianceのご紹介(詳細)
Oracle Database Applianceのご紹介(詳細)
 
PostgreSQLをKubernetes上で活用するためのOperator紹介!(Cloud Native Database Meetup #3 発表資料)
PostgreSQLをKubernetes上で活用するためのOperator紹介!(Cloud Native Database Meetup #3 発表資料)PostgreSQLをKubernetes上で活用するためのOperator紹介!(Cloud Native Database Meetup #3 発表資料)
PostgreSQLをKubernetes上で活用するためのOperator紹介!(Cloud Native Database Meetup #3 発表資料)
 
クラウドDWHにおける観点とAzure Synapse Analyticsの対応
クラウドDWHにおける観点とAzure Synapse Analyticsの対応クラウドDWHにおける観点とAzure Synapse Analyticsの対応
クラウドDWHにおける観点とAzure Synapse Analyticsの対応
 
モノタロウの1900万商品を検索する Elasticsearch構築運用事例(2022-10-26 第50回Elasticsearch 勉強会発表資料)
モノタロウの1900万商品を検索する Elasticsearch構築運用事例(2022-10-26 第50回Elasticsearch 勉強会発表資料)モノタロウの1900万商品を検索する Elasticsearch構築運用事例(2022-10-26 第50回Elasticsearch 勉強会発表資料)
モノタロウの1900万商品を検索する Elasticsearch構築運用事例(2022-10-26 第50回Elasticsearch 勉強会発表資料)
 
At least onceってぶっちゃけ問題の先送りだったよね #kafkajp
At least onceってぶっちゃけ問題の先送りだったよね #kafkajpAt least onceってぶっちゃけ問題の先送りだったよね #kafkajp
At least onceってぶっちゃけ問題の先送りだったよね #kafkajp
 
dbt Cloud intro 日本語 202206
dbt Cloud intro 日本語 202206dbt Cloud intro 日本語 202206
dbt Cloud intro 日本語 202206
 
PostgreSQL10を導入!大規模データ分析事例からみるDWHとしてのPostgreSQL活用のポイント
PostgreSQL10を導入!大規模データ分析事例からみるDWHとしてのPostgreSQL活用のポイントPostgreSQL10を導入!大規模データ分析事例からみるDWHとしてのPostgreSQL活用のポイント
PostgreSQL10を導入!大規模データ分析事例からみるDWHとしてのPostgreSQL活用のポイント
 
Cookpad TechConf 2016 - DWHに必要なこと
Cookpad TechConf 2016 - DWHに必要なことCookpad TechConf 2016 - DWHに必要なこと
Cookpad TechConf 2016 - DWHに必要なこと
 
DXとプロセスマイニング Part01
DXとプロセスマイニング Part01DXとプロセスマイニング Part01
DXとプロセスマイニング Part01
 
堅牢な国内システムへの導入でも安心!実践的Mulesoft設計テクニック(NTTデータ テクノロジーカンファレンス 2020 発表資料)
堅牢な国内システムへの導入でも安心!実践的Mulesoft設計テクニック(NTTデータ テクノロジーカンファレンス 2020 発表資料)堅牢な国内システムへの導入でも安心!実践的Mulesoft設計テクニック(NTTデータ テクノロジーカンファレンス 2020 発表資料)
堅牢な国内システムへの導入でも安心!実践的Mulesoft設計テクニック(NTTデータ テクノロジーカンファレンス 2020 発表資料)
 
datatech-jp Casual Talks#3 データエンジニアを採用するための試行錯誤
datatech-jp Casual Talks#3  データエンジニアを採用するための試行錯誤datatech-jp Casual Talks#3  データエンジニアを採用するための試行錯誤
datatech-jp Casual Talks#3 データエンジニアを採用するための試行錯誤
 
データモデリング・テクニック
データモデリング・テクニックデータモデリング・テクニック
データモデリング・テクニック
 
え、まって。その並列分散処理、Kafkaのしくみでもできるの? Apache Kafkaの機能を利用した大規模ストリームデータの並列分散処理
え、まって。その並列分散処理、Kafkaのしくみでもできるの? Apache Kafkaの機能を利用した大規模ストリームデータの並列分散処理え、まって。その並列分散処理、Kafkaのしくみでもできるの? Apache Kafkaの機能を利用した大規模ストリームデータの並列分散処理
え、まって。その並列分散処理、Kafkaのしくみでもできるの? Apache Kafkaの機能を利用した大規模ストリームデータの並列分散処理
 

En vedette

Hadoop and Enterprise Data Warehouse
Hadoop and Enterprise Data WarehouseHadoop and Enterprise Data Warehouse
Hadoop and Enterprise Data Warehouse
DataWorks Summit
 

En vedette (9)

Building a Hadoop Data Warehouse with Impala
Building a Hadoop Data Warehouse with ImpalaBuilding a Hadoop Data Warehouse with Impala
Building a Hadoop Data Warehouse with Impala
 
Integrated Data Warehouse with Hadoop and Oracle Database
Integrated Data Warehouse with Hadoop and Oracle DatabaseIntegrated Data Warehouse with Hadoop and Oracle Database
Integrated Data Warehouse with Hadoop and Oracle Database
 
Hadoop and the Data Warehouse: When to Use Which
Hadoop and the Data Warehouse: When to Use Which Hadoop and the Data Warehouse: When to Use Which
Hadoop and the Data Warehouse: When to Use Which
 
What Comes After The Star Schema? Dimensional Modeling For Enterprise Data Hubs
What Comes After The Star Schema? Dimensional Modeling For Enterprise Data HubsWhat Comes After The Star Schema? Dimensional Modeling For Enterprise Data Hubs
What Comes After The Star Schema? Dimensional Modeling For Enterprise Data Hubs
 
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about..."Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
"Hadoop and Data Warehouse (DWH) – Friends, Enemies or Profiteers? What about...
 
Hadoop and Enterprise Data Warehouse
Hadoop and Enterprise Data WarehouseHadoop and Enterprise Data Warehouse
Hadoop and Enterprise Data Warehouse
 
Big Data Warehousing Meetup: Dimensional Modeling Still Matters!!!
Big Data Warehousing Meetup: Dimensional Modeling Still Matters!!!Big Data Warehousing Meetup: Dimensional Modeling Still Matters!!!
Big Data Warehousing Meetup: Dimensional Modeling Still Matters!!!
 
Best Practices for the Hadoop Data Warehouse: EDW 101 for Hadoop Professionals
Best Practices for the Hadoop Data Warehouse: EDW 101 for Hadoop ProfessionalsBest Practices for the Hadoop Data Warehouse: EDW 101 for Hadoop Professionals
Best Practices for the Hadoop Data Warehouse: EDW 101 for Hadoop Professionals
 
Hadoop and Your Data Warehouse
Hadoop and Your Data WarehouseHadoop and Your Data Warehouse
Hadoop and Your Data Warehouse
 

Similaire à [RakutenTechConf2013] [B-3_2] DWH/Hadoop in Rakuten Ichiba

Hadoop at Yahoo! -- University Talks
Hadoop at Yahoo! -- University TalksHadoop at Yahoo! -- University Talks
Hadoop at Yahoo! -- University Talks
yhadoop
 
Big data-at-detik
Big data-at-detikBig data-at-detik
Big data-at-detik
k4ndar
 

Similaire à [RakutenTechConf2013] [B-3_2] DWH/Hadoop in Rakuten Ichiba (20)

Introduction To Big Data & Hadoop
Introduction To Big Data & HadoopIntroduction To Big Data & Hadoop
Introduction To Big Data & Hadoop
 
Hadoop at Yahoo! -- University Talks
Hadoop at Yahoo! -- University TalksHadoop at Yahoo! -- University Talks
Hadoop at Yahoo! -- University Talks
 
Data Visualisation with Hadoop Mashups, Hive, Power BI and Excel 2013
Data Visualisation with Hadoop Mashups, Hive, Power BI and Excel 2013Data Visualisation with Hadoop Mashups, Hive, Power BI and Excel 2013
Data Visualisation with Hadoop Mashups, Hive, Power BI and Excel 2013
 
Architecting the Future of Big Data and Search
Architecting the Future of Big Data and SearchArchitecting the Future of Big Data and Search
Architecting the Future of Big Data and Search
 
Big Data 2.0: YARN Enablement for Distributed ETL & SQL with Hadoop
Big Data 2.0: YARN Enablement for Distributed ETL & SQL with HadoopBig Data 2.0: YARN Enablement for Distributed ETL & SQL with Hadoop
Big Data 2.0: YARN Enablement for Distributed ETL & SQL with Hadoop
 
Bi on Big Data - Strata 2016 in London
Bi on Big Data - Strata 2016 in LondonBi on Big Data - Strata 2016 in London
Bi on Big Data - Strata 2016 in London
 
Real Time Interactive Queries IN HADOOP: Big Data Warehousing Meetup
Real Time Interactive Queries IN HADOOP: Big Data Warehousing MeetupReal Time Interactive Queries IN HADOOP: Big Data Warehousing Meetup
Real Time Interactive Queries IN HADOOP: Big Data Warehousing Meetup
 
Apache Hivemall and my OSS experience
Apache Hivemall and my OSS experienceApache Hivemall and my OSS experience
Apache Hivemall and my OSS experience
 
Big data-at-detik
Big data-at-detikBig data-at-detik
Big data-at-detik
 
Big Data Warehousing: Pig vs. Hive Comparison
Big Data Warehousing: Pig vs. Hive ComparisonBig Data Warehousing: Pig vs. Hive Comparison
Big Data Warehousing: Pig vs. Hive Comparison
 
From Hadoop to Enterprise Data Warehouse
From Hadoop to Enterprise Data WarehouseFrom Hadoop to Enterprise Data Warehouse
From Hadoop to Enterprise Data Warehouse
 
Hadoop and SQL: Delivery Analytics Across the Organization
Hadoop and SQL:  Delivery Analytics Across the OrganizationHadoop and SQL:  Delivery Analytics Across the Organization
Hadoop and SQL: Delivery Analytics Across the Organization
 
Open source stak of big data techs open suse asia
Open source stak of big data techs   open suse asiaOpen source stak of big data techs   open suse asia
Open source stak of big data techs open suse asia
 
Apache hive essentials
Apache hive essentialsApache hive essentials
Apache hive essentials
 
Eric Baldeschwieler Keynote from Storage Developers Conference
Eric Baldeschwieler Keynote from Storage Developers ConferenceEric Baldeschwieler Keynote from Storage Developers Conference
Eric Baldeschwieler Keynote from Storage Developers Conference
 
Webinar: Improving Time to Value for Enterprise Big Data Analytics
Webinar: Improving Time to Value for Enterprise Big Data AnalyticsWebinar: Improving Time to Value for Enterprise Big Data Analytics
Webinar: Improving Time to Value for Enterprise Big Data Analytics
 
Hadoop @ Yahoo! - Internet Scale Data Processing
Hadoop @ Yahoo! - Internet Scale Data ProcessingHadoop @ Yahoo! - Internet Scale Data Processing
Hadoop @ Yahoo! - Internet Scale Data Processing
 
Open Source Geospatial Business Intelligence (GeoBI): Definition, architectur...
Open Source Geospatial Business Intelligence (GeoBI): Definition, architectur...Open Source Geospatial Business Intelligence (GeoBI): Definition, architectur...
Open Source Geospatial Business Intelligence (GeoBI): Definition, architectur...
 
View on big data technologies
View on big data technologiesView on big data technologies
View on big data technologies
 
Big data for the rest of us with hadoop
Big data for the rest of us with hadoopBig data for the rest of us with hadoop
Big data for the rest of us with hadoop
 

Plus de Rakuten Group, Inc.

Plus de Rakuten Group, Inc. (20)

コードレビュー改善のためにJenkinsとIntelliJ IDEAのプラグインを自作してみた話
コードレビュー改善のためにJenkinsとIntelliJ IDEAのプラグインを自作してみた話コードレビュー改善のためにJenkinsとIntelliJ IDEAのプラグインを自作してみた話
コードレビュー改善のためにJenkinsとIntelliJ IDEAのプラグインを自作してみた話
 
楽天における安全な秘匿情報管理への道のり
楽天における安全な秘匿情報管理への道のり楽天における安全な秘匿情報管理への道のり
楽天における安全な秘匿情報管理への道のり
 
What Makes Software Green?
What Makes Software Green?What Makes Software Green?
What Makes Software Green?
 
Simple and Effective Knowledge-Driven Query Expansion for QA-Based Product At...
Simple and Effective Knowledge-Driven Query Expansion for QA-Based Product At...Simple and Effective Knowledge-Driven Query Expansion for QA-Based Product At...
Simple and Effective Knowledge-Driven Query Expansion for QA-Based Product At...
 
DataSkillCultureを浸透させる楽天の取り組み
DataSkillCultureを浸透させる楽天の取り組みDataSkillCultureを浸透させる楽天の取り組み
DataSkillCultureを浸透させる楽天の取り組み
 
大規模なリアルタイム監視の導入と展開
大規模なリアルタイム監視の導入と展開大規模なリアルタイム監視の導入と展開
大規模なリアルタイム監視の導入と展開
 
楽天における大規模データベースの運用
楽天における大規模データベースの運用楽天における大規模データベースの運用
楽天における大規模データベースの運用
 
楽天サービスを支えるネットワークインフラストラクチャー
楽天サービスを支えるネットワークインフラストラクチャー楽天サービスを支えるネットワークインフラストラクチャー
楽天サービスを支えるネットワークインフラストラクチャー
 
楽天の規模とクラウドプラットフォーム統括部の役割
楽天の規模とクラウドプラットフォーム統括部の役割楽天の規模とクラウドプラットフォーム統括部の役割
楽天の規模とクラウドプラットフォーム統括部の役割
 
Rakuten Services and Infrastructure Team.pdf
Rakuten Services and Infrastructure Team.pdfRakuten Services and Infrastructure Team.pdf
Rakuten Services and Infrastructure Team.pdf
 
The Data Platform Administration Handling the 100 PB.pdf
The Data Platform Administration Handling the 100 PB.pdfThe Data Platform Administration Handling the 100 PB.pdf
The Data Platform Administration Handling the 100 PB.pdf
 
Supporting Internal Customers as Technical Account Managers.pdf
Supporting Internal Customers as Technical Account Managers.pdfSupporting Internal Customers as Technical Account Managers.pdf
Supporting Internal Customers as Technical Account Managers.pdf
 
Making Cloud Native CI_CD Services.pdf
Making Cloud Native CI_CD Services.pdfMaking Cloud Native CI_CD Services.pdf
Making Cloud Native CI_CD Services.pdf
 
How We Defined Our Own Cloud.pdf
How We Defined Our Own Cloud.pdfHow We Defined Our Own Cloud.pdf
How We Defined Our Own Cloud.pdf
 
Travel & Leisure Platform Department's tech info
Travel & Leisure Platform Department's tech infoTravel & Leisure Platform Department's tech info
Travel & Leisure Platform Department's tech info
 
Travel & Leisure Platform Department's tech info
Travel & Leisure Platform Department's tech infoTravel & Leisure Platform Department's tech info
Travel & Leisure Platform Department's tech info
 
OWASPTop10_Introduction
OWASPTop10_IntroductionOWASPTop10_Introduction
OWASPTop10_Introduction
 
Introduction of GORA API Group technology
Introduction of GORA API Group technologyIntroduction of GORA API Group technology
Introduction of GORA API Group technology
 
100PBを越えるデータプラットフォームの実情
100PBを越えるデータプラットフォームの実情100PBを越えるデータプラットフォームの実情
100PBを越えるデータプラットフォームの実情
 
社内エンジニアを支えるテクニカルアカウントマネージャー
社内エンジニアを支えるテクニカルアカウントマネージャー社内エンジニアを支えるテクニカルアカウントマネージャー
社内エンジニアを支えるテクニカルアカウントマネージャー
 

Dernier

Dernier (20)

Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot TakeoffStrategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
 
Tech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdfTech Trends Report 2024 Future Today Institute.pdf
Tech Trends Report 2024 Future Today Institute.pdf
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a FresherStrategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
 
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, AdobeApidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
Apidays New York 2024 - Scaling API-first by Ian Reasor and Radu Cotescu, Adobe
 
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected WorkerHow to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
 
Developing An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of BrazilDeveloping An App To Navigate The Roads of Brazil
Developing An App To Navigate The Roads of Brazil
 
Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024Partners Life - Insurer Innovation Award 2024
Partners Life - Insurer Innovation Award 2024
 
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdfBoost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
 
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt RobisonData Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
 
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...Workshop - Best of Both Worlds_ Combine  KG and Vector search for  enhanced R...
Workshop - Best of Both Worlds_ Combine KG and Vector search for enhanced R...
 
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone ProcessorsExploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
HTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation StrategiesHTML Injection Attacks: Impact and Mitigation Strategies
HTML Injection Attacks: Impact and Mitigation Strategies
 

[RakutenTechConf2013] [B-3_2] DWH/Hadoop in Rakuten Ichiba