Enviar pesquisa
Carregar
Big Data Infrastructure
•
3 gostaram
•
908 visualizações
Trivadis
Seguir
Big Data Infrastructure von Daniel Steiger an DOAG 2014
Leia menos
Leia mais
Tecnologia
Denunciar
Compartilhar
Denunciar
Compartilhar
1 de 34
Baixar agora
Baixar para ler offline
Recomendados
#dbhouseparty - Spatial Technologies - @Home and Everywhere Else on the Map
#dbhouseparty - Spatial Technologies - @Home and Everywhere Else on the Map
Tammy Bednar
Flash session -goldengate--lht1053-lon
Flash session -goldengate--lht1053-lon
Jeffrey T. Pollock
Which Questions We Should Have
Which Questions We Should Have
Oracle Korea
2009.10.22 S308460 Cloud Data Services
2009.10.22 S308460 Cloud Data Services
Jeffrey T. Pollock
Building a marketing data lake
Building a marketing data lake
Sumit Sarkar
Enterprise Postgres
Enterprise Postgres
Oracle Korea
Microservices Patterns with GoldenGate
Microservices Patterns with GoldenGate
Jeffrey T. Pollock
Database@Home - Data Driven Reference Architecture
Database@Home - Data Driven Reference Architecture
Tammy Bednar
Recomendados
#dbhouseparty - Spatial Technologies - @Home and Everywhere Else on the Map
#dbhouseparty - Spatial Technologies - @Home and Everywhere Else on the Map
Tammy Bednar
Flash session -goldengate--lht1053-lon
Flash session -goldengate--lht1053-lon
Jeffrey T. Pollock
Which Questions We Should Have
Which Questions We Should Have
Oracle Korea
2009.10.22 S308460 Cloud Data Services
2009.10.22 S308460 Cloud Data Services
Jeffrey T. Pollock
Building a marketing data lake
Building a marketing data lake
Sumit Sarkar
Enterprise Postgres
Enterprise Postgres
Oracle Korea
Microservices Patterns with GoldenGate
Microservices Patterns with GoldenGate
Jeffrey T. Pollock
Database@Home - Data Driven Reference Architecture
Database@Home - Data Driven Reference Architecture
Tammy Bednar
IBM THINK 2018 - IBM Cloud SQL Query Introduction
IBM THINK 2018 - IBM Cloud SQL Query Introduction
Torsten Steinbach
Biwa summit 2015 oaa oracle data miner hands on lab
Biwa summit 2015 oaa oracle data miner hands on lab
Charlie Berger
Oracle Advanced Analytics
Oracle Advanced Analytics
aghosh_us
Modernizando plataforma de bi
Modernizando plataforma de bi
Maximiliano Accotto
10 Amazing Things To Do With a Hadoop-Based Data Lake
10 Amazing Things To Do With a Hadoop-Based Data Lake
VMware Tanzu
One Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and Governance
Jeffrey T. Pollock
Myth Busters II: BI Tools and Data Virtualization are Interchangeable
Myth Busters II: BI Tools and Data Virtualization are Interchangeable
Denodo
Hybrid Data Architecture: Integrating Hadoop with a Data Warehouse
Hybrid Data Architecture: Integrating Hadoop with a Data Warehouse
DataWorks Summit
Why and how to leverage the simplicity and power of SQL on Flink
Why and how to leverage the simplicity and power of SQL on Flink
DataWorks Summit
Hive with HDInsight
Hive with HDInsight
Khalid Salama
ds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_Suite
Robin Fong 方俊强
Application Development & Database Choices: Postgres Support for non Relation...
Application Development & Database Choices: Postgres Support for non Relation...
EDB
Webinar: Ways to Succeed with Hadoop in 2015
Webinar: Ways to Succeed with Hadoop in 2015
Edureka!
Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...
DataWorks Summit
Information Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data Lakes
DataWorks Summit
dvprimer-architecture
dvprimer-architecture
Kenneth Peeples
Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration
Hortonworks
(OTW13) Agile Data Warehousing: Introduction to Data Vault Modeling
(OTW13) Agile Data Warehousing: Introduction to Data Vault Modeling
Kent Graziano
Creando un Portal Oracle para una Empresa
Creando un Portal Oracle para una Empresa
isarmientop
oracle-database-editions-wp-12c-1896124
oracle-database-editions-wp-12c-1896124
Arjun Sathe
Operational elastic
Operational elastic
Ed Anderson
The "Big Data" Ecosystem at LinkedIn
The "Big Data" Ecosystem at LinkedIn
Sam Shah
Mais conteúdo relacionado
Mais procurados
IBM THINK 2018 - IBM Cloud SQL Query Introduction
IBM THINK 2018 - IBM Cloud SQL Query Introduction
Torsten Steinbach
Biwa summit 2015 oaa oracle data miner hands on lab
Biwa summit 2015 oaa oracle data miner hands on lab
Charlie Berger
Oracle Advanced Analytics
Oracle Advanced Analytics
aghosh_us
Modernizando plataforma de bi
Modernizando plataforma de bi
Maximiliano Accotto
10 Amazing Things To Do With a Hadoop-Based Data Lake
10 Amazing Things To Do With a Hadoop-Based Data Lake
VMware Tanzu
One Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and Governance
Jeffrey T. Pollock
Myth Busters II: BI Tools and Data Virtualization are Interchangeable
Myth Busters II: BI Tools and Data Virtualization are Interchangeable
Denodo
Hybrid Data Architecture: Integrating Hadoop with a Data Warehouse
Hybrid Data Architecture: Integrating Hadoop with a Data Warehouse
DataWorks Summit
Why and how to leverage the simplicity and power of SQL on Flink
Why and how to leverage the simplicity and power of SQL on Flink
DataWorks Summit
Hive with HDInsight
Hive with HDInsight
Khalid Salama
ds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_Suite
Robin Fong 方俊强
Application Development & Database Choices: Postgres Support for non Relation...
Application Development & Database Choices: Postgres Support for non Relation...
EDB
Webinar: Ways to Succeed with Hadoop in 2015
Webinar: Ways to Succeed with Hadoop in 2015
Edureka!
Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...
DataWorks Summit
Information Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data Lakes
DataWorks Summit
dvprimer-architecture
dvprimer-architecture
Kenneth Peeples
Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration
Hortonworks
(OTW13) Agile Data Warehousing: Introduction to Data Vault Modeling
(OTW13) Agile Data Warehousing: Introduction to Data Vault Modeling
Kent Graziano
Creando un Portal Oracle para una Empresa
Creando un Portal Oracle para una Empresa
isarmientop
oracle-database-editions-wp-12c-1896124
oracle-database-editions-wp-12c-1896124
Arjun Sathe
Mais procurados
(20)
IBM THINK 2018 - IBM Cloud SQL Query Introduction
IBM THINK 2018 - IBM Cloud SQL Query Introduction
Biwa summit 2015 oaa oracle data miner hands on lab
Biwa summit 2015 oaa oracle data miner hands on lab
Oracle Advanced Analytics
Oracle Advanced Analytics
Modernizando plataforma de bi
Modernizando plataforma de bi
10 Amazing Things To Do With a Hadoop-Based Data Lake
10 Amazing Things To Do With a Hadoop-Based Data Lake
One Slide Overview: ORCL Big Data Integration and Governance
One Slide Overview: ORCL Big Data Integration and Governance
Myth Busters II: BI Tools and Data Virtualization are Interchangeable
Myth Busters II: BI Tools and Data Virtualization are Interchangeable
Hybrid Data Architecture: Integrating Hadoop with a Data Warehouse
Hybrid Data Architecture: Integrating Hadoop with a Data Warehouse
Why and how to leverage the simplicity and power of SQL on Flink
Why and how to leverage the simplicity and power of SQL on Flink
Hive with HDInsight
Hive with HDInsight
ds_Pivotal_Big_Data_Suite_Product_Suite
ds_Pivotal_Big_Data_Suite_Product_Suite
Application Development & Database Choices: Postgres Support for non Relation...
Application Development & Database Choices: Postgres Support for non Relation...
Webinar: Ways to Succeed with Hadoop in 2015
Webinar: Ways to Succeed with Hadoop in 2015
Software engineering practices for the data science and machine learning life...
Software engineering practices for the data science and machine learning life...
Information Virtualization: Query Federation on Data Lakes
Information Virtualization: Query Federation on Data Lakes
dvprimer-architecture
dvprimer-architecture
Hortonworks Oracle Big Data Integration
Hortonworks Oracle Big Data Integration
(OTW13) Agile Data Warehousing: Introduction to Data Vault Modeling
(OTW13) Agile Data Warehousing: Introduction to Data Vault Modeling
Creando un Portal Oracle para una Empresa
Creando un Portal Oracle para una Empresa
oracle-database-editions-wp-12c-1896124
oracle-database-editions-wp-12c-1896124
Destaque
Operational elastic
Operational elastic
Ed Anderson
The "Big Data" Ecosystem at LinkedIn
The "Big Data" Ecosystem at LinkedIn
Sam Shah
Using Elastic to Monitor Anything
Using Elastic to Monitor Anything
Idan Tohami
Big Data World 2013 - How LinkedIn leveraged its data to become the world's l...
Big Data World 2013 - How LinkedIn leveraged its data to become the world's l...
Vitaly Gordon
Using Elastic to Monitor Everything - Christoph Wurm, Elastic - DevOpsDays Te...
Using Elastic to Monitor Everything - Christoph Wurm, Elastic - DevOpsDays Te...
DevOpsDays Tel Aviv
Monitor Engineered Systems from a Single Pane of Glass: Oracle Enterprise Man...
Monitor Engineered Systems from a Single Pane of Glass: Oracle Enterprise Man...
Alfredo Krieg
Technology Primer: Hey IT—Your Big Data Infrastructure Can’t Sit in a Silo An...
Technology Primer: Hey IT—Your Big Data Infrastructure Can’t Sit in a Silo An...
CA Technologies
How TERN Data Infrastructure works
How TERN Data Infrastructure works
TERN Australia
Proactively Managing Your Data Center Infrastructure
Proactively Managing Your Data Center Infrastructure
kimotte
Rootconf
Rootconf
akbarabi
Streaming using Kafka Flink & Elasticsearch
Streaming using Kafka Flink & Elasticsearch
Keira Zhou
How to Build a Data-Driven Company: From Infrastructure to Insights
How to Build a Data-Driven Company: From Infrastructure to Insights
Janessa Lantz
Tick
Tick
Vincenzo Ferrari
LinkedIn Data Infrastructure Slides (Version 2)
LinkedIn Data Infrastructure Slides (Version 2)
Sid Anand
Time Series Database and Tick Stack
Time Series Database and Tick Stack
Gianluca Arbezzano
Spatial Data Infrastructure Best Practices with GeoNode
Spatial Data Infrastructure Best Practices with GeoNode
Sebastian Benthall
Big Data Ecosystem at LinkedIn. Keynote talk at Big Data Innovators Gathering...
Big Data Ecosystem at LinkedIn. Keynote talk at Big Data Innovators Gathering...
Mitul Tiwari
Beats
Beats
Hiroki Takeda
Webinar usando graylog para la gestión centralizada de logs
Webinar usando graylog para la gestión centralizada de logs
atSistemas
Elastic - ELK, Logstash & Kibana
Elastic - ELK, Logstash & Kibana
SpringPeople
Destaque
(20)
Operational elastic
Operational elastic
The "Big Data" Ecosystem at LinkedIn
The "Big Data" Ecosystem at LinkedIn
Using Elastic to Monitor Anything
Using Elastic to Monitor Anything
Big Data World 2013 - How LinkedIn leveraged its data to become the world's l...
Big Data World 2013 - How LinkedIn leveraged its data to become the world's l...
Using Elastic to Monitor Everything - Christoph Wurm, Elastic - DevOpsDays Te...
Using Elastic to Monitor Everything - Christoph Wurm, Elastic - DevOpsDays Te...
Monitor Engineered Systems from a Single Pane of Glass: Oracle Enterprise Man...
Monitor Engineered Systems from a Single Pane of Glass: Oracle Enterprise Man...
Technology Primer: Hey IT—Your Big Data Infrastructure Can’t Sit in a Silo An...
Technology Primer: Hey IT—Your Big Data Infrastructure Can’t Sit in a Silo An...
How TERN Data Infrastructure works
How TERN Data Infrastructure works
Proactively Managing Your Data Center Infrastructure
Proactively Managing Your Data Center Infrastructure
Rootconf
Rootconf
Streaming using Kafka Flink & Elasticsearch
Streaming using Kafka Flink & Elasticsearch
How to Build a Data-Driven Company: From Infrastructure to Insights
How to Build a Data-Driven Company: From Infrastructure to Insights
Tick
Tick
LinkedIn Data Infrastructure Slides (Version 2)
LinkedIn Data Infrastructure Slides (Version 2)
Time Series Database and Tick Stack
Time Series Database and Tick Stack
Spatial Data Infrastructure Best Practices with GeoNode
Spatial Data Infrastructure Best Practices with GeoNode
Big Data Ecosystem at LinkedIn. Keynote talk at Big Data Innovators Gathering...
Big Data Ecosystem at LinkedIn. Keynote talk at Big Data Innovators Gathering...
Beats
Beats
Webinar usando graylog para la gestión centralizada de logs
Webinar usando graylog para la gestión centralizada de logs
Elastic - ELK, Logstash & Kibana
Elastic - ELK, Logstash & Kibana
Semelhante a Big Data Infrastructure
Cisco Big Data Warehouse Expansion Featuring MapR Distribution
Cisco Big Data Warehouse Expansion Featuring MapR Distribution
Appfluent Technology
Robin_Hadoop
Robin_Hadoop
Robin David
Big Data Integration Webinar: Getting Started With Hadoop Big Data
Big Data Integration Webinar: Getting Started With Hadoop Big Data
Pentaho
[Azureビッグデータ関連サービスとHortonworks勉強会] Azure HDInsight
[Azureビッグデータ関連サービスとHortonworks勉強会] Azure HDInsight
Naoki (Neo) SATO
Vmware Serengeti - Based on Infochimps Ironfan
Vmware Serengeti - Based on Infochimps Ironfan
Jim Kaskade
Webinar | Data Management for Hybrid and Multi-Cloud: A Four-Step Journey
Webinar | Data Management for Hybrid and Multi-Cloud: A Four-Step Journey
DataStax
Oracle Big Data Appliance and Big Data SQL for advanced analytics
Oracle Big Data Appliance and Big Data SQL for advanced analytics
jdijcks
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Innovative Management Services
Bring your SAP and Enterprise Data to Hadoop, Apache Kafka and the Cloud
Bring your SAP and Enterprise Data to Hadoop, Apache Kafka and the Cloud
DataWorks Summit/Hadoop Summit
Hadoop Summit San Jose 2015: What it Takes to Run Hadoop at Scale Yahoo Persp...
Hadoop Summit San Jose 2015: What it Takes to Run Hadoop at Scale Yahoo Persp...
Sumeet Singh
Munich HUG 21.11.2013
Munich HUG 21.11.2013
Emil Andreas Siemes
IBM - Introduction to Cloudant
IBM - Introduction to Cloudant
Francisco González Jiménez
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
Raul Chong
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
DataWorks Summit
Hp Converged Systems and Hortonworks - Webinar Slides
Hp Converged Systems and Hortonworks - Webinar Slides
Hortonworks
Trafodion – an enterprise class sql based on hadoop
Trafodion – an enterprise class sql based on hadoop
Krishna-Kumar
Open Source DWBI-A Primer
Open Source DWBI-A Primer
partha69
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
Hortonworks
Apresentação Hadoop
Apresentação Hadoop
José Renato Pequeno
Boost Performance with Scala – Learn From Those Who’ve Done It!
Boost Performance with Scala – Learn From Those Who’ve Done It!
Cécile Poyet
Semelhante a Big Data Infrastructure
(20)
Cisco Big Data Warehouse Expansion Featuring MapR Distribution
Cisco Big Data Warehouse Expansion Featuring MapR Distribution
Robin_Hadoop
Robin_Hadoop
Big Data Integration Webinar: Getting Started With Hadoop Big Data
Big Data Integration Webinar: Getting Started With Hadoop Big Data
[Azureビッグデータ関連サービスとHortonworks勉強会] Azure HDInsight
[Azureビッグデータ関連サービスとHortonworks勉強会] Azure HDInsight
Vmware Serengeti - Based on Infochimps Ironfan
Vmware Serengeti - Based on Infochimps Ironfan
Webinar | Data Management for Hybrid and Multi-Cloud: A Four-Step Journey
Webinar | Data Management for Hybrid and Multi-Cloud: A Four-Step Journey
Oracle Big Data Appliance and Big Data SQL for advanced analytics
Oracle Big Data Appliance and Big Data SQL for advanced analytics
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Open-BDA Hadoop Summit 2014 - Mr. Slim Baltagi (Building a Modern Data Archit...
Bring your SAP and Enterprise Data to Hadoop, Apache Kafka and the Cloud
Bring your SAP and Enterprise Data to Hadoop, Apache Kafka and the Cloud
Hadoop Summit San Jose 2015: What it Takes to Run Hadoop at Scale Yahoo Persp...
Hadoop Summit San Jose 2015: What it Takes to Run Hadoop at Scale Yahoo Persp...
Munich HUG 21.11.2013
Munich HUG 21.11.2013
IBM - Introduction to Cloudant
IBM - Introduction to Cloudant
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
0812 2014 01_toronto-smac meetup_i_os_cloudant_worklight_part2
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
Verizon Centralizes Data into a Data Lake in Real Time for Analytics
Hp Converged Systems and Hortonworks - Webinar Slides
Hp Converged Systems and Hortonworks - Webinar Slides
Trafodion – an enterprise class sql based on hadoop
Trafodion – an enterprise class sql based on hadoop
Open Source DWBI-A Primer
Open Source DWBI-A Primer
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
A Comprehensive Approach to Building your Big Data - with Cisco, Hortonworks ...
Apresentação Hadoop
Apresentação Hadoop
Boost Performance with Scala – Learn From Those Who’ve Done It!
Boost Performance with Scala – Learn From Those Who’ve Done It!
Mais de Trivadis
Azure Days 2019: Azure Chatbot Development for Airline Irregularities (Remco ...
Azure Days 2019: Azure Chatbot Development for Airline Irregularities (Remco ...
Trivadis
Azure Days 2019: Trivadis Azure Foundation – Das Fundament für den ... (Nisan...
Azure Days 2019: Trivadis Azure Foundation – Das Fundament für den ... (Nisan...
Trivadis
Azure Days 2019: Business Intelligence auf Azure (Marco Amhof & Yves Mauron)
Azure Days 2019: Business Intelligence auf Azure (Marco Amhof & Yves Mauron)
Trivadis
Azure Days 2019: Master the Move to Azure (Konrad Brunner)
Azure Days 2019: Master the Move to Azure (Konrad Brunner)
Trivadis
Azure Days 2019: Keynote Azure Switzerland – Status Quo und Ausblick (Primo A...
Azure Days 2019: Keynote Azure Switzerland – Status Quo und Ausblick (Primo A...
Trivadis
Azure Days 2019: Grösser und Komplexer ist nicht immer besser (Meinrad Weiss)
Azure Days 2019: Grösser und Komplexer ist nicht immer besser (Meinrad Weiss)
Trivadis
Azure Days 2019: Get Connected with Azure API Management (Gerry Keune & Stefa...
Azure Days 2019: Get Connected with Azure API Management (Gerry Keune & Stefa...
Trivadis
Azure Days 2019: Infrastructure as Code auf Azure (Jonas Wanninger & Daniel H...
Azure Days 2019: Infrastructure as Code auf Azure (Jonas Wanninger & Daniel H...
Trivadis
Azure Days 2019: Wie bringt man eine Data Analytics Plattform in die Cloud? (...
Azure Days 2019: Wie bringt man eine Data Analytics Plattform in die Cloud? (...
Trivadis
Azure Days 2019: Azure@Helsana: Die Erweiterung von Dynamics CRM mit Azure Po...
Azure Days 2019: Azure@Helsana: Die Erweiterung von Dynamics CRM mit Azure Po...
Trivadis
TechEvent 2019: Kundenstory - Kein Angebot, kein Auftrag – Wie Du ein individ...
TechEvent 2019: Kundenstory - Kein Angebot, kein Auftrag – Wie Du ein individ...
Trivadis
TechEvent 2019: Oracle Database Appliance M/L - Erfahrungen und Erfolgsmethod...
TechEvent 2019: Oracle Database Appliance M/L - Erfahrungen und Erfolgsmethod...
Trivadis
TechEvent 2019: Security 101 für Web Entwickler; Roland Krüger - Trivadis
TechEvent 2019: Security 101 für Web Entwickler; Roland Krüger - Trivadis
Trivadis
TechEvent 2019: Trivadis & Swisscom Partner Angebote; Konrad Häfeli, Markus O...
TechEvent 2019: Trivadis & Swisscom Partner Angebote; Konrad Häfeli, Markus O...
Trivadis
TechEvent 2019: DBaaS from Swisscom Cloud powered by Trivadis; Konrad Häfeli ...
TechEvent 2019: DBaaS from Swisscom Cloud powered by Trivadis; Konrad Häfeli ...
Trivadis
TechEvent 2019: Status of the partnership Trivadis and EDB - Comparing Postgr...
TechEvent 2019: Status of the partnership Trivadis and EDB - Comparing Postgr...
Trivadis
TechEvent 2019: More Agile, More AI, More Cloud! Less Work?!; Oliver Dörr - T...
TechEvent 2019: More Agile, More AI, More Cloud! Less Work?!; Oliver Dörr - T...
Trivadis
TechEvent 2019: Kundenstory - Vom Hauptmann zu Köpenick zum Polizisten 2020 -...
TechEvent 2019: Kundenstory - Vom Hauptmann zu Köpenick zum Polizisten 2020 -...
Trivadis
TechEvent 2019: Vom Rechenzentrum in die Oracle Cloud - Übertragungsmethoden;...
TechEvent 2019: Vom Rechenzentrum in die Oracle Cloud - Übertragungsmethoden;...
Trivadis
TechEvent 2019: The sleeping Power of Data; Eberhard Lösch - Trivadis
TechEvent 2019: The sleeping Power of Data; Eberhard Lösch - Trivadis
Trivadis
Mais de Trivadis
(20)
Azure Days 2019: Azure Chatbot Development for Airline Irregularities (Remco ...
Azure Days 2019: Azure Chatbot Development for Airline Irregularities (Remco ...
Azure Days 2019: Trivadis Azure Foundation – Das Fundament für den ... (Nisan...
Azure Days 2019: Trivadis Azure Foundation – Das Fundament für den ... (Nisan...
Azure Days 2019: Business Intelligence auf Azure (Marco Amhof & Yves Mauron)
Azure Days 2019: Business Intelligence auf Azure (Marco Amhof & Yves Mauron)
Azure Days 2019: Master the Move to Azure (Konrad Brunner)
Azure Days 2019: Master the Move to Azure (Konrad Brunner)
Azure Days 2019: Keynote Azure Switzerland – Status Quo und Ausblick (Primo A...
Azure Days 2019: Keynote Azure Switzerland – Status Quo und Ausblick (Primo A...
Azure Days 2019: Grösser und Komplexer ist nicht immer besser (Meinrad Weiss)
Azure Days 2019: Grösser und Komplexer ist nicht immer besser (Meinrad Weiss)
Azure Days 2019: Get Connected with Azure API Management (Gerry Keune & Stefa...
Azure Days 2019: Get Connected with Azure API Management (Gerry Keune & Stefa...
Azure Days 2019: Infrastructure as Code auf Azure (Jonas Wanninger & Daniel H...
Azure Days 2019: Infrastructure as Code auf Azure (Jonas Wanninger & Daniel H...
Azure Days 2019: Wie bringt man eine Data Analytics Plattform in die Cloud? (...
Azure Days 2019: Wie bringt man eine Data Analytics Plattform in die Cloud? (...
Azure Days 2019: Azure@Helsana: Die Erweiterung von Dynamics CRM mit Azure Po...
Azure Days 2019: Azure@Helsana: Die Erweiterung von Dynamics CRM mit Azure Po...
TechEvent 2019: Kundenstory - Kein Angebot, kein Auftrag – Wie Du ein individ...
TechEvent 2019: Kundenstory - Kein Angebot, kein Auftrag – Wie Du ein individ...
TechEvent 2019: Oracle Database Appliance M/L - Erfahrungen und Erfolgsmethod...
TechEvent 2019: Oracle Database Appliance M/L - Erfahrungen und Erfolgsmethod...
TechEvent 2019: Security 101 für Web Entwickler; Roland Krüger - Trivadis
TechEvent 2019: Security 101 für Web Entwickler; Roland Krüger - Trivadis
TechEvent 2019: Trivadis & Swisscom Partner Angebote; Konrad Häfeli, Markus O...
TechEvent 2019: Trivadis & Swisscom Partner Angebote; Konrad Häfeli, Markus O...
TechEvent 2019: DBaaS from Swisscom Cloud powered by Trivadis; Konrad Häfeli ...
TechEvent 2019: DBaaS from Swisscom Cloud powered by Trivadis; Konrad Häfeli ...
TechEvent 2019: Status of the partnership Trivadis and EDB - Comparing Postgr...
TechEvent 2019: Status of the partnership Trivadis and EDB - Comparing Postgr...
TechEvent 2019: More Agile, More AI, More Cloud! Less Work?!; Oliver Dörr - T...
TechEvent 2019: More Agile, More AI, More Cloud! Less Work?!; Oliver Dörr - T...
TechEvent 2019: Kundenstory - Vom Hauptmann zu Köpenick zum Polizisten 2020 -...
TechEvent 2019: Kundenstory - Vom Hauptmann zu Köpenick zum Polizisten 2020 -...
TechEvent 2019: Vom Rechenzentrum in die Oracle Cloud - Übertragungsmethoden;...
TechEvent 2019: Vom Rechenzentrum in die Oracle Cloud - Übertragungsmethoden;...
TechEvent 2019: The sleeping Power of Data; Eberhard Lösch - Trivadis
TechEvent 2019: The sleeping Power of Data; Eberhard Lösch - Trivadis
Último
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...
Neo4j
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
Safe Software
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
Enterprise Knowledge
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
UK Journal
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
sammart93
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
Michael W. Hawkins
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
ThousandEyes
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
Delhi Call girls
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
Remote DBA Services
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
Product Anonymous
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
sudhanshuwaghmare1
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
The Digital Insurer
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
Delhi Call girls
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
apidays
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
debabhi2
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
hans926745
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
lior mazor
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Delhi Call girls
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
Anna Loughnan Colquhoun
Último
(20)
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...
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Understanding Discord NSFW Servers A Guide for Responsible Users.pdf
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
Strategize a Smooth Tenant-to-tenant Migration and Copilot Takeoff
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
How to Troubleshoot Apps for the Modern Connected Worker
How to Troubleshoot Apps for the Modern Connected Worker
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
Strategies for Landing an Oracle DBA Job as a Fresher
Strategies for Landing an Oracle DBA Job as a Fresher
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
ProductAnonymous-April2024-WinProductDiscovery-MelissaKlemke
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Exploring the Future Potential of AI-Enabled Smartphone Processors
Exploring the Future Potential of AI-Enabled Smartphone Processors
[2024]Digital Global Overview Report 2024 Meltwater.pdf
[2024]Digital Global Overview Report 2024 Meltwater.pdf
GenAI Risks & Security Meetup 01052024.pdf
GenAI Risks & Security Meetup 01052024.pdf
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Data Cloud, More than a CDP by Matt Robison
Data Cloud, More than a CDP by Matt Robison
Big Data Infrastructure
1.
Big Data Infrastructure.
Appliance, Cloud, or Do-it-Yourself. Daniel Steiger Discipline Manager Infrastructure Engineering BASEL BERN BRUGG GENF LAUSANNE ZÜRICH DÜSSELDORF FRANKFURT A.M. FREIBURG I.BR. HAMBURG MÜNCHEN STUTTGART WIEN 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 1
2.
Unser Unternehmen Trivadis
ist führend bei der IT-Beratung, der Systemintegration, dem Solution-Engineering und der Erbringung von IT-Services mit Fokussierung auf und Technologien im D-A-CH-Raum. Unsere strategischen Geschäftsfelder... 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 2
3.
Mit über 600
IT- und Fachexperten bei Ihnen vor Ort Stuttgart Brugg 2014 © Trivadis 3 12 Trivadis Niederlassungen mit über 600 Mitarbeitenden 200 Service Level Agreements Mehr als 4'000 Trainingsteilnehmer Forschungs- und Entwicklungs-budget: CHF 5.0 Mio. / EUR 4.0 Mio. Finanziell unabhängig und nachhaltig profitabel Erfahrung aus mehr als 1'900 Projekten pro Jahr bei über 800 Kunden (Stand 12/2013) 3 Big Data Infrastructure DOAG Jahreskonferenz 2014 3 Hamburg Düsseldorf Frankfurt Freiburg München Wien Basel Bern Zürich Lausanne
4.
1. Big Data
Infrastructure Challenges 2. Hadoop on an Appliance 3. Hadoop in the Cloud 4. Hadoop Do-it-Yourself 5. Conclusion 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 4 Agenda
5.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 5 Big Data Infrastructure Challenges
6.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 6 Trailwise – a "quantified self" use case 11'000 data points rendered in 165ms 47'295 data points rendered in 643ms
7.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 7 Trailwise – Infrastructure for a Proof of Concept 7 § Hadoop HDFS as data store § HBase for real-time data access § Hadoop Map/Reduce
8.
2014 © Trivadis
Concerns… § Scalability § Costs for "always up" § Setup and administration of a large cluster on AWS § Break-even cloud vs on-premise For a proof of concept hadoop in the cloud (e.g. on Amazon EC2) is perfect... + Fast and easy deployment + Optimized Hadoop/HBase setup + HBase real-time performance + Map/Reduce scalability + Affordable, ca. EUR 15.-/day Big Data Infrastructure DOAG Jahreskonferenz 2014 8 Trailwise – Infrastructure Lessons Learned
9.
§ Big Data
means big data volume § Petabytes and exabytes § Scalability § 10, 20, 50, 100, ... cluster nodes § Costs should scale as well... § High demands on machine-to-machine networks § In Big Data for every one-client interaction, there may be hundreds or thousands of server and data node interactions § This generates far more east-west (server-to-server or server-to-storage) network traffic than north-south (server-to-client or server-to-outside) network traffic § And many others like integration, data protection, operation, etc. 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 9 Big Data Infrastructure Challenges
10.
§ Infrastructure must
be engineered to scale § The network has to provide high bandwidth, low latency, and should scale seamlessly with Hadoop clusters to provide predictable performance § And many more, like § Integration with operational data systems § Authentication, authorization, encryption § Centralized management 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 10 Infrastructure Requirements Figure 1.2: Picture of a row of servers in a Google WSC, 1.6. ARCHITECTURAL Will my infrastructure meet my needs now and in the future without putting my business at risk?
11.
When enterprises adopt
Hadoop, one of the decisions they must make is the deployment model. There are four options: 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 11 Where to Deploy your Hadoop Cluster? When enterprises adopt Hadoop, one of the decisions they must make is the deployment model. There are four options as illustrated in Figure 1: ‡On-premise full custom. With this option, businesses purchase commodity hardware, then they install software and There have existed two divergent views related to the price-performance ratio for Hadoop deployments. One view is that a virtualized Hadoop cluster is slower because Hadoop’s workload has intensive I/O operations, which tend to run slowly on virtualized environments. A related and fourth area is data enrichment, which involves leveraging multiple datasets to uncover new insights. For example, combining a consumer’s purchase history and social-networking activities can yield a deeper understanding of the consumer’s lifestyle and key personal Figure 1. The spectrum of Hadoop deployment options On-premise full custom Hadoop appliance Hadoop hosting Hadoop-as-a- Service Bare-metal Cloud Reference: Hadoop Deployment Comparison Study, Price-Performance Comparison, Accenture Technology Labs, 2013
12.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 12 Hadoop on an Appliance Oracle Big Data Appliance
13.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 13 Overview: Oracle's Big Data Solution § A complete and optimized solution for big data § Tight integration with Exadata, Exalogic, Exalytics and SPARC Supercluster using Infiniband network § Single-vendor support for both hardware and software
14.
Full Rack Configuration
(up to 18 racks) § 18 x compute/storage nodes Per Node: § 2 x Eight-Core Intel ® Xeon ® E5-2650 V2 Processors § 64 GB Memory (up to 512 GB) § 48 TB Raw Storage Capacity § 40 Gb/sec Infiniband Network § 10 Gb/sec Data Center Connectivity 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 14 Oracle Big Data Appliance X4-2 HW Source: Oracle ®
15.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 15 Oracle Big Data Appliance Internal Network Connectivity Source: Oracle Big Data Appliance: Datacenter Network Integration, Oracle White Paper, 2012
16.
2014 © Trivadis
§ Oracle R Distribution § Oracle NoSQL DB Community Ed. § BDA Enterprise Manager Plug-In § Optional Software* § Oracle Big Data SQL § Oracle Big Data Connectors § Oracle Audit Vault Database Firewall for Hadoop Auditing § Oracle Data Integrator § Oracle NoSQL Database EE § Oracle Linux 6.4 with UEK § Oracle Java JDK 7 § Cloudera Enterprise Data Hub Edition § Apache Hadoop HDFS § HBase § Cloudera Impala § Cloudera Search § Cloudera Manager § Apache Spark Big Data Infrastructure DOAG Jahreskonferenz 2014 16 Big Data Appliance Software Stack *Connectors are licensed separately from Oracle Big Data Appliance
17.
2014 © Trivadis
§ Oracle R Support for Big Data § R is an open-source language and environment for statistical analysis and graphing § The standard R distribution is installed on all nodes of Oracle Big Data Appliance § Oracle R Connector for Hadoop provides R users with high-performance, native access to HDFS and the MapReduce programming framework § Oracle R Enterprise is a separate package that provides real-time access to Oracle Database. § Oracle NoSQL Database § Oracle NoSQL Database is a distributed key-value database built on storage technology of Berkeley DB Java Edition. § An intelligent driver on top of Berkeley DB keeps track of the underlying storage topology, shards the data and knows where data can be placed with the lowest latency Big Data Infrastructure DOAG Jahreskonferenz 2014 17 BDA Specific Software Features
18.
§ Oracle SQL
Connector for HDFS § Oracle Loader for Hadoop § Oracle R Connector for Hadoop § Oracle Data Integrator Application Adapter for Hadoop § Data in HDFS (and NoSQL) data is accessable through relational database external table mechanism (HDFS as cluster file system) 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 18 Oracle Big Data Connectors Reference: Oracle Big Data Connectors Data Sheet Source: Oracle ®
19.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 19 Oracle Big Data SQL: one tool for all data sources Reference: https://www.oracle.com/webfolder/s/delivery_production/docs/FY15h1/doc6/1-T2-BigData.pdf
20.
§ Oracle Big
Data Lite VM § http://www.oracle.com/technetwork/database/bigdata-appliance/ oracle-bigdatalite-2104726.html § MOS Notes § Information Center: Oracle Big Data Appliance (Doc ID 1445762.2) § Big Data Connectors (ID 1487399.2) § Sqoop Frequently Asked Questions (FAQ) (Doc ID 1510470.1) 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 20 Oracle Big Data Appliance Ressources
21.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 21 Hadoop in the Cloud
22.
Hadoop in the
Cloud 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 22
23.
There are five
key areas to consider when choosing the right deployment model*: Five key areas to consider when choosing the right deployment model: *Public Cloud, Private Cloud, Community Cloud oder Hybrid Cloud 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 23 Deployment Considerations The second area of consideration is data privacy, which is a common concern when storing data outside of corporate-owned infrastructure. Cloud-based deployment requires a comprehensive cloud-data privacy strategy that encompasses areas such as proper implementation of legal requirements, well-orchestrated and therefore enable companies to introduce new services and products of interest. The primary challenge is that the storage of these multiple datasets increases the volume of data, resulting in slow connectivity. Therefore, many organizations choose to co-locate these datasets. Given volume and portability For the experiment, we first built the total cost of ownership (TCO) model to control two environments at the matched cost level. Then, using Accenture Data Platform Benchmark as real-world workloads, we compared the performance of both a bare-metal Hadoop cluster and Amazon Price-performance ratio Data privacy Data gravity Data enrichment Productivity of developers and data scientists Reference: Where to Deploy your Hadoop Cluster?, Executive Summary, Accenture Technology Labs, 2013
24.
EC2 Instance for
Hadoop/MapReduce Storage optimized – current generation § Instance hs1.8xlarge § 16 vCPUs (Intel Xeon) § 117GB RAM § 24 x 2000GB = 48TB § 10 Gigabit network § MapR as option § M3, M5 or M7 edition 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 24 Amazon EMR with the MapR Distribution for Hadoop Reference: http://aws.amazon.com/elasticmapreduce/mapr/
25.
Costs for hs1.8xlarge
Instance § Medium Utilization Reserved Instances § 1-Year term: upfront $9'200, $1.809 per Hour § 3-Year term: upfront $14'109, $1.581 per Hour § Data Transfer IN to Amazon EC2 from internet: $0.0 per GB § Data Transfer OUT from Amazon EC2 to internet: $0.12 per GB up to 10TB/ month ($120 per TB) § MapR M7: $1.49 per Hour § Total: $2'600/month, $31'200/year (24/365 utilization) 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 25 Amazon EMR with the MapR Distribution for Hadoop
26.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 26 Hadoop on Do-It-Yourself Infrastructure
27.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 27 Do-it-Yourself (experimental setup) Source: http://blog.ittoby.com/
28.
HP ProLiant DL380p
Gen8 § 2 x Eight-Core Intel ® Xeon ® E5-2650 V2 § 64 GB Memory (up to 512 GB) § 48 TB Raw Storage Capacity § 40 Gb/sec Infiniband Network § 10 Gb/sec Data Center Connectivity § About $20'000 + Rack + Network + Work 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 28 Do-it-Yourself (enterprise class setup) HP ProLiant DL380e Gen8 The HP ProLiant DL380e Gen8 (2U) is an excellent choice as the server platform for the Figure 6. HP ProLiant DL380e Gen8 Server § Cloudera Enterprise Data Hub Edition 5.x § ca. $2'500/node + support
29.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 29 Conclusion
30.
Oracle BDA +
High performance scalable network architecture + Highly integrated into Oracle eco system + Complete software stack Oracle Hadoop + Single point of support + Competitive price/ performance ratio for enterprise class demands 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 30 Appliance, Cloud or DIY? Amazon EC2 Instances + Fast and easy deployment + Scales from very small to very large cluster setups + Capacity on demand on hourly base + Optional enterprise class hadoop distribution + Interesting price model for volatile utilisation and capacity on demand Servers running the node processes should have sufficient memory for either HBase or for the amount of Map/Reduce configured on the server. A server with larger RAM configuration will deliver optimum performance for both HBase Map/Reduce. To ensure optimal memory performance and bandwidth, we recommend using 8GB or 16GB DIMMs to populate each of the 6 memory channels as needed. Network configuration The DL380e includes four 1GbE NICs onboard. MapR automatically identifies the available NICs on the server and bonds them via the MapR software to increase throughput. MapR Benefit Each of the reference architecture configurations below specifies an additional Top of Rack Switch for redundancy. make use of this, we recommend cabling the ProLiant DL380e Worker Nodes so that NIC 1 is cabled to Switch 1 and cabled to Switch 2, repeating the same process for NICs 3 and 4. Each NIC in the server should have its own IP subnet instead of sharing the same subnet with other NICs. HP ProLiant DL380e Gen8 The HP ProLiant DL380e Gen8 (2U) is an excellent choice as the server platform for the worker nodes. Figure 6. HP ProLiant DL380e Gen8 Server Do it Yourself + Low entry point + Free choice of hardware + Free choice of software stack
31.
§ Building an
enterprise-class hadoop infrastructure is a challenge § Analyse and prioritize your requirements (business and IT) is crucial § Start „small fast“ with a proof of concept § Consider various deployment models (On-Premis, Appliance, IaaS, PaaS, HaaS, ...) § The Oracle Database Appliance is a very competitive offering – especially as extension to your existing Oracle operational data systems 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 31 Conclusion
32.
Thank you. Daniel
Steiger Discipline Manager Infratructure Engineering Tel: +41 58 459 50 88 daniel.steiger@trivadis.com BASEL BERN BRUGG GENF LAUSANNE ZÜRICH DÜSSELDORF FRANKFURT A.M. FREIBURG I.BR. HAMBURG MÜNCHEN STUTTGART WIEN 2014 © Trivadis Big Data Infrastructure DOAG Jahreskonferenz 2014 32
33.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 33 Trivadis an der DOAG Ebene 3 - gleich neben der Rolltreppe Wir freuen uns auf Ihren Besuch. Denn mit Trivadis gewinnen Sie immer.
34.
2014 © Trivadis
Big Data Infrastructure DOAG Jahreskonferenz 2014 34 Cost comparison Aribute Oracle BDA Amazon EMR DIY Typ X4-‐2 hs1.8xlarge DL-‐380 CPU 2x8-‐Core 16 vCPU 2x8-‐Core RAM 64 GB 117 GB 64 GB Storage 48 TB 48 TB 8 TB Network 10 GB / 40 GB 10 GB 10 GB / 40 GB Hadoop Distr. Cloudera MapR Cloudera Preis / Jahr 525'000 562'256 405'000 Wartung / Jahr 63'000 -‐ 40'000 Total 1. Jahr 588'000 562'256 445'000 Total 3 Jahre 714'000 1'686'768 525'000
Baixar agora