Suche senden
Hochladen
BigData Clusters Redefined
âą
1 gefÀllt mir
âą
960 views
DataWorks Summit
Folgen
Technologie
Bildung
Melden
Teilen
Melden
Teilen
1 von 40
Empfohlen
The Data Center and Hadoop
The Data Center and Hadoop
DataWorks Summit
Â
Inside Microsoft's FPGA-Based Configurable Cloud
Inside Microsoft's FPGA-Based Configurable Cloud
inside-BigData.com
Â
Integrating data stored in rdbms and hadoop
Integrating data stored in rdbms and hadoop
leorick lin
Â
High Availability for HBase Tables - Past, Present, and Future
High Availability for HBase Tables - Past, Present, and Future
DataWorks Summit
Â
RTI Technical Road Show SPAWAR SD
RTI Technical Road Show SPAWAR SD
Real-Time Innovations (RTI)
Â
Inside Microsoft's FPGA-Based Configurable Cloud
Inside Microsoft's FPGA-Based Configurable Cloud
inside-BigData.com
Â
IPv6 and IP Multicast⊠better together?
IPv6 and IP Multicast⊠better together?
Steve Simlo
Â
Webinar: Replication and Replica Sets
Webinar: Replication and Replica Sets
MongoDB
Â
Empfohlen
The Data Center and Hadoop
The Data Center and Hadoop
DataWorks Summit
Â
Inside Microsoft's FPGA-Based Configurable Cloud
Inside Microsoft's FPGA-Based Configurable Cloud
inside-BigData.com
Â
Integrating data stored in rdbms and hadoop
Integrating data stored in rdbms and hadoop
leorick lin
Â
High Availability for HBase Tables - Past, Present, and Future
High Availability for HBase Tables - Past, Present, and Future
DataWorks Summit
Â
RTI Technical Road Show SPAWAR SD
RTI Technical Road Show SPAWAR SD
Real-Time Innovations (RTI)
Â
Inside Microsoft's FPGA-Based Configurable Cloud
Inside Microsoft's FPGA-Based Configurable Cloud
inside-BigData.com
Â
IPv6 and IP Multicast⊠better together?
IPv6 and IP Multicast⊠better together?
Steve Simlo
Â
Webinar: Replication and Replica Sets
Webinar: Replication and Replica Sets
MongoDB
Â
HP Storage pre virtuĂĄlne systĂ©my (PrehÄŸad rieĆĄenĂ na zĂĄlohovanie a ukladanie ...
HP Storage pre virtuĂĄlne systĂ©my (PrehÄŸad rieĆĄenĂ na zĂĄlohovanie a ukladanie ...
ASBIS SK
Â
Learning from ZFS to Scale Storage on and under Containers
Learning from ZFS to Scale Storage on and under Containers
inside-BigData.com
Â
Hacmp â high availability pdf
Hacmp â high availability pdf
asihan
Â
Data Center Network Trends - Lin Nease
Data Center Network Trends - Lin Nease
HPDutchWorld
Â
Increase Efficiency of Solaris Operations & Hardware Life Cycle
Increase Efficiency of Solaris Operations & Hardware Life Cycle
JomaSoft
Â
Hadoop World 2011: Hadoop and Performance - Todd Lipcon & Yanpei Chen, Cloudera
Hadoop World 2011: Hadoop and Performance - Todd Lipcon & Yanpei Chen, Cloudera
Cloudera, Inc.
Â
HPC Best Practices: Application Performance Optimization
HPC Best Practices: Application Performance Optimization
inside-BigData.com
Â
Microsofts Configurable Cloud
Microsofts Configurable Cloud
Chris Genazzio
Â
Oracle Database Appliance - RAC in a box Some strings attached
Oracle Database Appliance - RAC in a box Some strings attached
Fuad Arshad
Â
HP 3Par StoreServ Storage: HP All Flash Array SSD
HP 3Par StoreServ Storage: HP All Flash Array SSD
Unitiv
Â
Cisco Live! :: Content Delivery Networks (CDN)
Cisco Live! :: Content Delivery Networks (CDN)
Bruno Teixeira
Â
Data Center Network Topologies
Data Center Network Topologies
rjain51
Â
PLNOG 13: Maciej Grabowski: HP Moonshot
PLNOG 13: Maciej Grabowski: HP Moonshot
PROIDEA
Â
DPDK Summit 2015 - Sprint - Arun Rajagopal
DPDK Summit 2015 - Sprint - Arun Rajagopal
Jim St. Leger
Â
Big Data Everywhere Chicago: Getting Real with the MapR Platform (MapR)
Big Data Everywhere Chicago: Getting Real with the MapR Platform (MapR)
BigDataEverywhere
Â
ha_module5
ha_module5
Gurmukh Singh
Â
Next Generation Nexus 9000 Architecture
Next Generation Nexus 9000 Architecture
Cisco Canada
Â
Oracle Storage a ochrana dat
Oracle Storage a ochrana dat
MarketingArrowECS_CZ
Â
Introduction to Cloud Data Center and Network Issues
Introduction to Cloud Data Center and Network Issues
Jason TC HOU (äŸŻćźæ)
Â
Optimizing Dell PowerEdge Configurations for Hadoop
Optimizing Dell PowerEdge Configurations for Hadoop
Mike Pittaro
Â
The Data Center and Hadoop
The Data Center and Hadoop
Michael Zhang
Â
3 Ways to Connect to the Oracle Cloud
3 Ways to Connect to the Oracle Cloud
Simon Haslam
Â
Weitere Àhnliche Inhalte
Was ist angesagt?
HP Storage pre virtuĂĄlne systĂ©my (PrehÄŸad rieĆĄenĂ na zĂĄlohovanie a ukladanie ...
HP Storage pre virtuĂĄlne systĂ©my (PrehÄŸad rieĆĄenĂ na zĂĄlohovanie a ukladanie ...
ASBIS SK
Â
Learning from ZFS to Scale Storage on and under Containers
Learning from ZFS to Scale Storage on and under Containers
inside-BigData.com
Â
Hacmp â high availability pdf
Hacmp â high availability pdf
asihan
Â
Data Center Network Trends - Lin Nease
Data Center Network Trends - Lin Nease
HPDutchWorld
Â
Increase Efficiency of Solaris Operations & Hardware Life Cycle
Increase Efficiency of Solaris Operations & Hardware Life Cycle
JomaSoft
Â
Hadoop World 2011: Hadoop and Performance - Todd Lipcon & Yanpei Chen, Cloudera
Hadoop World 2011: Hadoop and Performance - Todd Lipcon & Yanpei Chen, Cloudera
Cloudera, Inc.
Â
HPC Best Practices: Application Performance Optimization
HPC Best Practices: Application Performance Optimization
inside-BigData.com
Â
Microsofts Configurable Cloud
Microsofts Configurable Cloud
Chris Genazzio
Â
Oracle Database Appliance - RAC in a box Some strings attached
Oracle Database Appliance - RAC in a box Some strings attached
Fuad Arshad
Â
HP 3Par StoreServ Storage: HP All Flash Array SSD
HP 3Par StoreServ Storage: HP All Flash Array SSD
Unitiv
Â
Cisco Live! :: Content Delivery Networks (CDN)
Cisco Live! :: Content Delivery Networks (CDN)
Bruno Teixeira
Â
Data Center Network Topologies
Data Center Network Topologies
rjain51
Â
PLNOG 13: Maciej Grabowski: HP Moonshot
PLNOG 13: Maciej Grabowski: HP Moonshot
PROIDEA
Â
DPDK Summit 2015 - Sprint - Arun Rajagopal
DPDK Summit 2015 - Sprint - Arun Rajagopal
Jim St. Leger
Â
Big Data Everywhere Chicago: Getting Real with the MapR Platform (MapR)
Big Data Everywhere Chicago: Getting Real with the MapR Platform (MapR)
BigDataEverywhere
Â
ha_module5
ha_module5
Gurmukh Singh
Â
Next Generation Nexus 9000 Architecture
Next Generation Nexus 9000 Architecture
Cisco Canada
Â
Oracle Storage a ochrana dat
Oracle Storage a ochrana dat
MarketingArrowECS_CZ
Â
Introduction to Cloud Data Center and Network Issues
Introduction to Cloud Data Center and Network Issues
Jason TC HOU (äŸŻćźæ)
Â
Optimizing Dell PowerEdge Configurations for Hadoop
Optimizing Dell PowerEdge Configurations for Hadoop
Mike Pittaro
Â
Was ist angesagt?
(20)
HP Storage pre virtuĂĄlne systĂ©my (PrehÄŸad rieĆĄenĂ na zĂĄlohovanie a ukladanie ...
HP Storage pre virtuĂĄlne systĂ©my (PrehÄŸad rieĆĄenĂ na zĂĄlohovanie a ukladanie ...
Â
Learning from ZFS to Scale Storage on and under Containers
Learning from ZFS to Scale Storage on and under Containers
Â
Hacmp â high availability pdf
Hacmp â high availability pdf
Â
Data Center Network Trends - Lin Nease
Data Center Network Trends - Lin Nease
Â
Increase Efficiency of Solaris Operations & Hardware Life Cycle
Increase Efficiency of Solaris Operations & Hardware Life Cycle
Â
Hadoop World 2011: Hadoop and Performance - Todd Lipcon & Yanpei Chen, Cloudera
Hadoop World 2011: Hadoop and Performance - Todd Lipcon & Yanpei Chen, Cloudera
Â
HPC Best Practices: Application Performance Optimization
HPC Best Practices: Application Performance Optimization
Â
Microsofts Configurable Cloud
Microsofts Configurable Cloud
Â
Oracle Database Appliance - RAC in a box Some strings attached
Oracle Database Appliance - RAC in a box Some strings attached
Â
HP 3Par StoreServ Storage: HP All Flash Array SSD
HP 3Par StoreServ Storage: HP All Flash Array SSD
Â
Cisco Live! :: Content Delivery Networks (CDN)
Cisco Live! :: Content Delivery Networks (CDN)
Â
Data Center Network Topologies
Data Center Network Topologies
Â
PLNOG 13: Maciej Grabowski: HP Moonshot
PLNOG 13: Maciej Grabowski: HP Moonshot
Â
DPDK Summit 2015 - Sprint - Arun Rajagopal
DPDK Summit 2015 - Sprint - Arun Rajagopal
Â
Big Data Everywhere Chicago: Getting Real with the MapR Platform (MapR)
Big Data Everywhere Chicago: Getting Real with the MapR Platform (MapR)
Â
ha_module5
ha_module5
Â
Next Generation Nexus 9000 Architecture
Next Generation Nexus 9000 Architecture
Â
Oracle Storage a ochrana dat
Oracle Storage a ochrana dat
Â
Introduction to Cloud Data Center and Network Issues
Introduction to Cloud Data Center and Network Issues
Â
Optimizing Dell PowerEdge Configurations for Hadoop
Optimizing Dell PowerEdge Configurations for Hadoop
Â
Ăhnlich wie BigData Clusters Redefined
The Data Center and Hadoop
The Data Center and Hadoop
Michael Zhang
Â
3 Ways to Connect to the Oracle Cloud
3 Ways to Connect to the Oracle Cloud
Simon Haslam
Â
Oracle RAC 12c Practical Performance Management and Tuning OOW13 [CON8825]
Oracle RAC 12c Practical Performance Management and Tuning OOW13 [CON8825]
Markus Michalewicz
Â
Open v ran
Open v ran
Rajasa Pramudya Wardhana
Â
3. ami big data hadoop on ucs seminar may 2013
3. ami big data hadoop on ucs seminar may 2013
Taldor Group
Â
Introduction to Segment Routing
Introduction to Segment Routing
MyNOG
Â
Thu 430pm solarflare_tolley_v1[1]
Thu 430pm solarflare_tolley_v1[1]
Bruce Tolley
Â
Introduction to SDN and Network Programmability - BRKRST-1014 | 2017/Las Vegas
Introduction to SDN and Network Programmability - BRKRST-1014 | 2017/Las Vegas
Bruno Teixeira
Â
Azure + DataStax Enterprise (DSE) Powers Office365 Per User Store
Azure + DataStax Enterprise (DSE) Powers Office365 Per User Store
DataStax Academy
Â
IPv6 Security - Myths and Reality
IPv6 Security - Myths and Reality
Swiss IPv6 Council
Â
Segment Routing Advanced Use Cases - Cisco Live 2016 USA
Segment Routing Advanced Use Cases - Cisco Live 2016 USA
Jose Liste
Â
SRv6-TOI-rev3i-EXTERNAL.pdf
SRv6-TOI-rev3i-EXTERNAL.pdf
YunLiu75
Â
Software Stacks to enable SDN and NFV
Software Stacks to enable SDN and NFV
Yoshihiro Nakajima
Â
Cisco EuroMPI'13 vendor session presentation
Cisco EuroMPI'13 vendor session presentation
Jeff Squyres
Â
Model-driven Telemetry: The Foundation of Big Data Analytics
Model-driven Telemetry: The Foundation of Big Data Analytics
Cisco Canada
Â
PLNOG15: Practical deployments of Kea, a high performance scalable DHCP - Tom...
PLNOG15: Practical deployments of Kea, a high performance scalable DHCP - Tom...
PROIDEA
Â
Webinar: Untethering Compute from Storage
Webinar: Untethering Compute from Storage
Avere Systems
Â
Big Data Benchmarking with RDMA solutions
Big Data Benchmarking with RDMA solutions
Mellanox Technologies
Â
Empower Hive with Spark
Empower Hive with Spark
DataWorks Summit
Â
Hive Now Sparks
Hive Now Sparks
DataWorks Summit
Â
Ăhnlich wie BigData Clusters Redefined
(20)
The Data Center and Hadoop
The Data Center and Hadoop
Â
3 Ways to Connect to the Oracle Cloud
3 Ways to Connect to the Oracle Cloud
Â
Oracle RAC 12c Practical Performance Management and Tuning OOW13 [CON8825]
Oracle RAC 12c Practical Performance Management and Tuning OOW13 [CON8825]
Â
Open v ran
Open v ran
Â
3. ami big data hadoop on ucs seminar may 2013
3. ami big data hadoop on ucs seminar may 2013
Â
Introduction to Segment Routing
Introduction to Segment Routing
Â
Thu 430pm solarflare_tolley_v1[1]
Thu 430pm solarflare_tolley_v1[1]
Â
Introduction to SDN and Network Programmability - BRKRST-1014 | 2017/Las Vegas
Introduction to SDN and Network Programmability - BRKRST-1014 | 2017/Las Vegas
Â
Azure + DataStax Enterprise (DSE) Powers Office365 Per User Store
Azure + DataStax Enterprise (DSE) Powers Office365 Per User Store
Â
IPv6 Security - Myths and Reality
IPv6 Security - Myths and Reality
Â
Segment Routing Advanced Use Cases - Cisco Live 2016 USA
Segment Routing Advanced Use Cases - Cisco Live 2016 USA
Â
SRv6-TOI-rev3i-EXTERNAL.pdf
SRv6-TOI-rev3i-EXTERNAL.pdf
Â
Software Stacks to enable SDN and NFV
Software Stacks to enable SDN and NFV
Â
Cisco EuroMPI'13 vendor session presentation
Cisco EuroMPI'13 vendor session presentation
Â
Model-driven Telemetry: The Foundation of Big Data Analytics
Model-driven Telemetry: The Foundation of Big Data Analytics
Â
PLNOG15: Practical deployments of Kea, a high performance scalable DHCP - Tom...
PLNOG15: Practical deployments of Kea, a high performance scalable DHCP - Tom...
Â
Webinar: Untethering Compute from Storage
Webinar: Untethering Compute from Storage
Â
Big Data Benchmarking with RDMA solutions
Big Data Benchmarking with RDMA solutions
Â
Empower Hive with Spark
Empower Hive with Spark
Â
Hive Now Sparks
Hive Now Sparks
Â
Mehr von DataWorks Summit
Data Science Crash Course
Data Science Crash Course
DataWorks Summit
Â
Floating on a RAFT: HBase Durability with Apache Ratis
Floating on a RAFT: HBase Durability with Apache Ratis
DataWorks Summit
Â
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
DataWorks Summit
Â
HBase Tales From the Trenches - Short stories about most common HBase operati...
HBase Tales From the Trenches - Short stories about most common HBase operati...
DataWorks Summit
Â
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
DataWorks Summit
Â
Managing the Dewey Decimal System
Managing the Dewey Decimal System
DataWorks Summit
Â
Practical NoSQL: Accumulo's dirlist Example
Practical NoSQL: Accumulo's dirlist Example
DataWorks Summit
Â
HBase Global Indexing to support large-scale data ingestion at Uber
HBase Global Indexing to support large-scale data ingestion at Uber
DataWorks Summit
Â
Scaling Cloud-Scale Translytics Workloads with Omid and Phoenix
Scaling Cloud-Scale Translytics Workloads with Omid and Phoenix
DataWorks Summit
Â
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFi
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFi
DataWorks Summit
Â
Supporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability Improvements
DataWorks Summit
Â
Security Framework for Multitenant Architecture
Security Framework for Multitenant Architecture
DataWorks Summit
Â
Presto: Optimizing Performance of SQL-on-Anything Engine
Presto: Optimizing Performance of SQL-on-Anything Engine
DataWorks Summit
Â
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
DataWorks Summit
Â
Extending Twitter's Data Platform to Google Cloud
Extending Twitter's Data Platform to Google Cloud
DataWorks Summit
Â
Event-Driven Messaging and Actions using Apache Flink and Apache NiFi
Event-Driven Messaging and Actions using Apache Flink and Apache NiFi
DataWorks Summit
Â
Securing Data in Hybrid on-premise and Cloud Environments using Apache Ranger
Securing Data in Hybrid on-premise and Cloud Environments using Apache Ranger
DataWorks Summit
Â
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
DataWorks Summit
Â
Computer Vision: Coming to a Store Near You
Computer Vision: Coming to a Store Near You
DataWorks Summit
Â
Big Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
Big Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
DataWorks Summit
Â
Mehr von DataWorks Summit
(20)
Data Science Crash Course
Data Science Crash Course
Â
Floating on a RAFT: HBase Durability with Apache Ratis
Floating on a RAFT: HBase Durability with Apache Ratis
Â
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
Tracking Crime as It Occurs with Apache Phoenix, Apache HBase and Apache NiFi
Â
HBase Tales From the Trenches - Short stories about most common HBase operati...
HBase Tales From the Trenches - Short stories about most common HBase operati...
Â
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
Optimizing Geospatial Operations with Server-side Programming in HBase and Ac...
Â
Managing the Dewey Decimal System
Managing the Dewey Decimal System
Â
Practical NoSQL: Accumulo's dirlist Example
Practical NoSQL: Accumulo's dirlist Example
Â
HBase Global Indexing to support large-scale data ingestion at Uber
HBase Global Indexing to support large-scale data ingestion at Uber
Â
Scaling Cloud-Scale Translytics Workloads with Omid and Phoenix
Scaling Cloud-Scale Translytics Workloads with Omid and Phoenix
Â
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFi
Building the High Speed Cybersecurity Data Pipeline Using Apache NiFi
Â
Supporting Apache HBase : Troubleshooting and Supportability Improvements
Supporting Apache HBase : Troubleshooting and Supportability Improvements
Â
Security Framework for Multitenant Architecture
Security Framework for Multitenant Architecture
Â
Presto: Optimizing Performance of SQL-on-Anything Engine
Presto: Optimizing Performance of SQL-on-Anything Engine
Â
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
Introducing MlFlow: An Open Source Platform for the Machine Learning Lifecycl...
Â
Extending Twitter's Data Platform to Google Cloud
Extending Twitter's Data Platform to Google Cloud
Â
Event-Driven Messaging and Actions using Apache Flink and Apache NiFi
Event-Driven Messaging and Actions using Apache Flink and Apache NiFi
Â
Securing Data in Hybrid on-premise and Cloud Environments using Apache Ranger
Securing Data in Hybrid on-premise and Cloud Environments using Apache Ranger
Â
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
Big Data Meets NVM: Accelerating Big Data Processing with Non-Volatile Memory...
Â
Computer Vision: Coming to a Store Near You
Computer Vision: Coming to a Store Near You
Â
Big Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
Big Data Genomics: Clustering Billions of DNA Sequences with Apache Spark
Â
KĂŒrzlich hochgeladen
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
The Digital Insurer
Â
đŹ The future of MySQL is Postgres đ
đŹ The future of MySQL is Postgres đ
RTylerCroy
Â
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
sudhanshuwaghmare1
Â
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Delhi Call girls
Â
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
Martijn de Jong
Â
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
Khem
Â
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
The Digital Insurer
Â
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
HampshireHUG
Â
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc
Â
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
Malak Abu Hammad
Â
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
Delhi Call girls
Â
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
Â
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
Rafal Los
Â
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
Michael W. Hawkins
Â
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Katpro Technologies
Â
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
Â
How to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
naman860154
Â
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
Maria Levchenko
Â
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
Enterprise Knowledge
Â
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
Â
KĂŒrzlich hochgeladen
(20)
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Bajaj Allianz Life Insurance Company - Insurer Innovation Award 2024
Â
đŹ The future of MySQL is Postgres đ
đŹ The future of MySQL is Postgres đ
Â
Boost Fertility New Invention Ups Success Rates.pdf
Boost Fertility New Invention Ups Success Rates.pdf
Â
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
Â
2024: Domino Containers - The Next Step. News from the Domino Container commu...
2024: Domino Containers - The Next Step. News from the Domino Container commu...
Â
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
Â
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Â
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
Â
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
Â
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
Â
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
Â
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
Â
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
Â
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
Â
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Â
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Apidays Singapore 2024 - Building Digital Trust in a Digital Economy by Veron...
Â
How to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
Â
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
Â
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
Â
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Â
BigData Clusters Redefined
1.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 1 Samuel Kommu Technical Marketing Engineer sakommu@cisco.com Hadoop Summit 2014 V3
2.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 2 âą Hadoop Overview âą Scheduling and Prioritizing Compute Network âą Visibility Plugins âą Hadoop Optimization and Tuning âą Recommendations âą Q & A
3.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 3 Big Data @ Cisco - www.cisco.com/go/bigdata Multi-year network and compute analysis testing (In conjunction with partners) Hadoop World 2011, 2012 & 2013 Hadoop Summit 2012 & 2013 Certifications and Solutions with UCS C-Series and Nexus Series Switches Cloudera Hadoop Certified Technology Oracle NoSQL Validated Solution Visibility & Monitoring
4.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 4
5.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 5 Could take several days just to read Per a test it took 11 days 100 Terabytes of data
6.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 6 NAS/SAN Since you are still limited by the Throughput of the storage systems 100 Terabytes of data
7.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 7 100 Terabytes of direct attached storage Hadoop Distributed File System Same job took 15 minutes once they went parallel spreading the load across 1000 nodes
8.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 9 Map Map Map Map Map Map Map Map Map Map âą The Data Ingest & Replication External Connectivity East West Traffic (Replication of data blocks) âą Map Phase â Raw data Analyzed and converted to name/value pair. Workload translate to multiple batches of Map task Reducer can start the reduce phase ONLY after the entire Map set is complete âą Mostly a IO/compute function Hadoop Distributed File System Unstructured Data Map Map Map Map Map Key 1 Key 1 Key 1 Key 1 Key 1 Key 1 Key 1 Key 2 Key 1 Key 1 Key 1 Key 3 Key 1 Key 1 Key 1 Key 4 Reduce Shuffle Phase ReduceReduce Result/Output Reduce Map Map Map Map Map
9.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 10 Key 1 Key 1 Key 1 Key 4 Key 1 Key 1 Key 1 Key 3 Key 1 Key 1 Key 1 Key 2 Map Map Map Map Map Map Map Map Map Map âą Shuffle Phase - All name/value pair are sorted and grouped by their keys. âą Reducer is PULLING the data from the Mapper Nodes âą High Network Activity âą Reduce Phase â All values associates with a key are process for results, three phases Copy - get intermediate result from each data node local disk Merge - to reduce the number of files Reduce method âą Output Replication Phase - Reducer replicating result to multiple nodes Highest Network Activity âą Network Activities Dependent on Workload Behavior Hadoop Distributed File System Unstructured Data Map Map Map Map Map Key 1 Key 1 Key 1 Key 1 Reduce Shuffle Phase ReduceReduce Result/Output Reduce Map Map Map Map Map
10.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 11 Analyze Search - Count Extract Transform Load (ETL - TeraSort) Explode Normalizing Data Reduce Ingress vs. Egress Data Set 1:0.3 Ingress vs. Egress Data Set 1:1 Ingress vs. Egress Data Set 1:2 Reduce Reduce
11.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 12 Analyze Simulated with Shakespeare Wordcount Extract Transform Load (ETL) Simulated with Yahoo TeraSort Extract Transform Load (ETL) Simulated with Yahoo TeraSort with output replication Job Patterns have varying impact on network utilization
12.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 13 Small Flows/Messaging (Admin Related, Heart-beats, Keep-alive, delay sensitive application messaging) Small â Medium Incast (Hadoop Shuffle) Large Flows (HDFS Ingest) Large Incast (Hadoop Replication)
13.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 14
14.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 15 Scheduling Core 1 Core 2 Core 3 Job 1 Job 2 Core 4 Job 3 Rescheduling Core 1 Core 2 Core 3 Job 1 Job 2 Core 4 Job 3 Prioritize/De-Prioritize Core 1 Core 2 Core 3 Job 1 Job 2 Core 4 Job 3
15.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 16 Client 1 Client 2 Resource Manager Node Manager Container App Master Node Manager Container App Master Node Manager ContainerContainer Job Submission Resource Request Node Status MapReduce Status
16.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 17 Switch Buffer Usage With Network QoS Policy to prioritize Hbase Update/Read Operations 0 5000 10000 15000 20000 25000 30000 35000 40000 Latency(us) Time UPDATE - Average Latency (us) READ - Average Latency (us) QoS - UPDATE - Average Latency (us) QoS - READ - Average Latency (us) 1 70 139 208 277 346 415 484 553 622 691 760 829 898 967 1036 1105 1174 1243 1312 1381 1450 1519 1588 1657 1726 1795 1864 1933 2002 2071 2140 2209 2278 2347 2416 2485 2554 2623 2692 2761 2830 2899 2968 3037 3106 3175 3244 3313 3382 3451 3520 3589 3658 3727 3796 3865 3934 4003 4072 4141 4210 4279 4348 4417 4486 4555 4624 4693 4762 4831 4900 4969 5038 5107 5176 5245 5314 5383 5452 5521 5590 5659 5728 5797 5866 5935 BufferUsed Timeline Hadoop TeraSort Hbase Read/Update Latency Comparison of Non- QoS vs. QoS Policy ~60% for Read Improvement
17.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 18
18.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 19 Traditional Networking â Switching/Routing Decisions are per flow What if we could divide a flow into multiple parts â that could take independent network paths
19.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 20 Normal Congested Leaf 1 Leaf 2 Spine 2Spine 1 In traditional networks available today: Leaf 1 is not aware of the congestion between Spine 2 and Leaf 2 Congestion awareness across the network is essential for optimal traffic distribution
20.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 21 Small FlowsLarge Flows Impact of large flows on small flows Without Dynamic Packet Prioritization Large Flows tend to use up resources: âą Bandwidth âą Buffer Unless smaller flows are prioritized â large flows could potentially have an adverse impact on the smaller flows
21.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 22 Decisions are per leaf Does not consider end-to-end connectivity/congestion Load balancing decisions are made based on end-to-end connectivity/congestion 50% Usage Congested Link 66% Usage 33% Usage ECMP DLB Leaf 1 Leaf 2 Spine 2Spine 1 Leaf 1 Leaf 2 Spine 2Spine 1
22.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 23 Buffer usage is mostly on Leafs Not on Spines Map Progress Reduce Progress
23.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 25
24.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 26 OS : Red Hat 6.2 Hadoop : Cloudera 3 U5 Memcached Symmetric - No link failures Asymmetric â One failed link
25.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 27 Tests with Memcached Dynamic Packet Prioritization helps improve memcached performance Note: These tests were disk bound â Will be testing with servers containing higher number of drives
26.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 28 ECMP DLB
27.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 29
28.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 30 âą Hardware 1 x Nexus 9508 (Spine) 2 x Nexus 9396 (Leaf) 8 x UCS C240 M3 2 x Xeon(R) CPU E5-2690 0 @ 2.90GHz 100G RAM 4 x 1TB Drives UCS VIC 1225 âą Software Red Hat 6.2 Cloudera 5 NXOS 6.1(2)I2(1)
29.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 31 âą Open Framework Modules will be on Github âą Based on Apache Hadoop Rest APIs NXOS Python APIs
30.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 32 leaf-001# python bootflash:hadoopModule/vpmHadoop.py localNodes --------------------------------------------------------------- Node Name Port Speed InRate OutRate Buffer --------------------------------------------------------------- c240-m3-017 Eth1/1 10 1385580232 1128094464 0 c240-m3-018 Eth1/2 10 1882651664 1273181224 50 c240-m3-020 Eth1/3 10 1236743432 1238902664 0 c240-m3-021 Eth1/4 10 675482600 1292790704 0 --------------------------------------------------------------- In/Out Rate is the avg of last 30 seconds in Gbits/sec NXAPI© ⹠Open Framework ⹠Based on Apache Hadoop Rest APIs NXOS Python APIs Scripts on GitHub: https://github.com/datacenter/VisibilityPlugins
31.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 33 leaf-001# python bootflash:hadoopModule/vpmHadoop.py allNodesJobs Node Name Port Neighbor Speed -------------------------------------- c240-m3-001 Eth2/2 spine-001 40 c240-m3-002 Eth2/2 spine-001 40 c240-m3-004 Eth2/2 spine-001 40 c240-m3-005 Eth2/2 spine-001 40 c240-m3-017 Eth1/1 local 10 c240-m3-018 Eth1/2 local 10 c240-m3-020 Eth1/3 local 10 c240-m3-021 Eth1/4 local 10 Job ID Job Name Host Name Application Progress % --------------------------------------------------------------------- 0887 TeraGen c240-m3-001 MAPREDUCE 37.7623 --------------------------------------------------------------------- Scripts on GitHub: https://github.com/datacenter/VisibilityPlugins NXAPI© ⹠Another example With Job info
32.
© 2013 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 34 Instantaneous Results Historic Data using GraphiteTopology
33.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 35
34.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 36 0 500 1000 1500 2000 2500 SSD Non-SSD TimeTakeninSeconds Time taken for 1TB Sort SSD vs. Non-SSD Drives
35.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 37 0 500 1000 1500 2000 2500 3000 Never Always TimeTakeninSeconds Time taken for 1TB Sort THP Always vs THP Never To disable: echo never > /sys/kernel/mm/redhat_transparent_hugepage/enabled
36.
Cisco Confidential© 2010
Cisco and/or its affiliates. All rights reserved. 38
37.
39 ï§ Network Attributes ï§
Architecture ï§ Availability ï§ Capacity, Scale & Oversubscription ï§ Flexibility ï§ Management & Visibility Integration Considerations
38.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 40 Availability âą Single NIC failure doubles the job completion time. âą Dual NIC has no impact on job completion time âą Effective load-sharing of traffic flow on two NICs. NIC bonding configured at Linux â with LACP mode of bonding âą Recommended to change the hashing to src-dst-ip-port (both network and NIC bonding in Linux) for optimal load- sharing 40 1161 min 286 min
39.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 41 Single 1GE 100% Utilized Dual 1GE 75% Utilized 10GE 40% Utilized
40.
© 2010 Cisco
and/or its affiliates. All rights reserved. Cisco Confidential 42 Big Data @ Cisco - www.cisco.com/go/bigdata Q & A For further questions and a chance to win Beats headset meet us in Booth P12