SlideShare une entreprise Scribd logo
1  sur  23
Next Generation Apache Hadoop Map
Reduce


Mahadev Konar
Co Founder
@mahadevkonar (@hortonworks)




                                    Page 1
Bio
• Apache Hadoop since 2006 - committer and PMC member
• Apache ZooKeeper since 2008 – committer and PMC member




                                                           Page 2
Hadoop MapReduce Classic


• JobTracker
  – Manages cluster
    resources and job
    scheduling
• TaskTracker
  – Per-node agent
  – Manage tasks
Current Limitations

• Hard partition of resources into map and reduce slots
   – Low resource utilization
• Lacks support for alternate paradigms
   – Iterative applications implemented using
     MapReduce are 10x slower.
   – Hacks for the likes of MPI/Graph Processing
• Lack of wire-compatible protocols
   – Client and cluster must be of same version
   – Applications and workflows cannot migrate to
     different clusters


                            4
Current Limitations

• Scalability
   – Maximum Cluster size – 4,000 nodes
   – Maximum concurrent tasks – 40,000
   – Coarse synchronization in JobTracker
• Single point of failure
   – Failure kills all queued and running jobs
   – Jobs need to be re-submitted by users
• Restart is very tricky due to complex state




                         5
Requirements

• Reliability
• Availability
• Scalability - Clusters of 6,000-10,000 machines
   – Each machine with 16 cores, 48G/96G RAM,
     24TB/36TB disks
   – 100,000+ concurrent tasks
   – 10,000 concurrent jobs
• Wire Compatibility
• Agility & Evolution – Ability for customers to control
  upgrades to the grid software stack.


                         6
Design Centre

• Split up the two major functions of JobTracker
   – Cluster resource management
   – Application life-cycle management
• MapReduce becomes user-land library




                        7
Architecture

• Application
   – Application is a job submitted to the framework
   – Example – Map Reduce Job
• Container
   – Basic unit of allocation
   – Example – container A = 2GB, 1CPU
   – Replaces the fixed map/reduce slots




                        8
Architecture

• Resource Manager
   – Global resource scheduler
   – Hierarchical queues
• Node Manager
   – Per-machine agent
   – Manages the life-cycle of container
   – Container resource monitoring
• Application Master
   – Per-application
   – Manages application scheduling and task execution
   – E.g. MapReduce Application Master
                       9
Architecture

                                           Node
                                           Node
                                          Manager
                                          Manager


                                    Container   App Mstr
                                                App Mstr


     Client

                         Resource          Node
                                           Node
                         Resource
                         Manager
                         Manager          Manager
                                          Manager
     Client
      Client

                                    App Mstr    Container
                                                Container




      MapReduce Status                     Node
                                           Node
      MapReduce Status
                                          Manager
                                          Manager
        Job Submission
       Job Submission
         Node Status
        Node Status
      Resource Request
      Resource Request              Container   Container
Architecture – Resource Manager
                                          Resource Manager




                                                             Resource
                           Applications
                                                Scheduler




                                                             Tracker
                           Manager
 • Applications Manager
    • Responsible for launching and monitoring Application Masters (per
       Application process)
    • Restarts an Application Master on failure
 • Scheduler
    • Responsible for allocating resources to the Application
 • Resource Tracker
    • Responsible for managing the nodes in the cluster
Improvements vis-à-vis classic MapReduce


•   Utilization
     – Generic resource model
         •   Memory
         •   CPU
         •   Disk b/w
         •   Network b/w
     – Remove fixed partition of map and reduce slots




                                12
Improvements vis-à-vis classic MapReduce



• Scalability
   – Application life-cycle management is very expensive
   – Partition resource management and application life-
     cycle management
   – Application management is distributed
   – Hardware trends - Currently run clusters of 4,000
     machines
      • 6,000 2012 machines > 12,000 2009 machines
      • <16+ cores, 48/96G, 24TB> v/s <8
        cores, 16G, 4TB>


                       13
Improvements vis-à-vis classic MapReduce



• Fault Tolerance and Availability
   – Resource Manager
      • No single point of failure – state saved in ZooKeeper
      • Application Masters are restarted automatically on
         RM restart
      • Applications continue to progress with existing
         resources during restart, new resources aren’t
         allocated
   – Application Master
      • Optional failover via application-specific checkpoint
      • MapReduce applications pick up where they left off
         via state saved in HDFS

                          14
Improvements vis-à-vis classic MapReduce


•   Wire Compatibility
    – Protocols are wire-compatible
    – Old clients can talk to new servers
    – Rolling upgrades




                              15
Improvements vis-à-vis classic MapReduce


•   Innovation and Agility
    – MapReduce now becomes a user-land library
    – Multiple versions of MapReduce can run in the same cluster (a la
       Apache Pig)
        •   Faster deployment cycles for improvements
    – Customers upgrade MapReduce versions on their schedule
    – Users can customize MapReduce




                                  16
Improvements vis-à-vis classic MapReduce


•   Support for programming paradigms other than MapReduce
    – MPI
    – Master-Worker
    – Machine Learning
    – Iterative processing
    – Enabled by allowing use of paradigm-specific Application Master
    – Run all on the same Hadoop cluster




                              17
Summary


•   MapReduce .Next takes Hadoop to the next level
    – Scale-out even further
    – High availability
    – Cluster Utilization
    – Support for paradigms other than MapReduce




                            18
Coming Up

• Next Gen in 0.23.0
• Yahoo! Deployment on 1000 servers
• Ongoing work on
  – Stability
  – Admin ease of use




                  19
Coming Up

• MPI on Hadoop
• Other frameworks on Hadoop
  – Giraph
  – Spark/Kafka/Storm?




                  20
Roadmap

• RM restart and Pre emption
• Performance
  – Preleminary results
    • At par with classic
    • Sort/DFSIO
    • Yahoo! Performance team




                   21
Questions?




             http://issues.apache.org/jira/browse/MAPREDUCE-279
 http://developer.yahoo.com/blogs/hadoop/posts/2011/02/mapreduce-nextgen/




                              22
Thank You.
@mahadevkonar

Contenu connexe

Tendances

Yarns about YARN: Migrating to MapReduce v2
Yarns about YARN: Migrating to MapReduce v2Yarns about YARN: Migrating to MapReduce v2
Yarns about YARN: Migrating to MapReduce v2DataWorks Summit
 
YARN - Next Generation Compute Platform fo Hadoop
YARN - Next Generation Compute Platform fo HadoopYARN - Next Generation Compute Platform fo Hadoop
YARN - Next Generation Compute Platform fo HadoopHortonworks
 
Hadoop 2.0, MRv2 and YARN - Module 9
Hadoop 2.0, MRv2 and YARN - Module 9Hadoop 2.0, MRv2 and YARN - Module 9
Hadoop 2.0, MRv2 and YARN - Module 9Rohit Agrawal
 
Apache Hadoop YARN
Apache Hadoop YARNApache Hadoop YARN
Apache Hadoop YARNAdam Kawa
 
Apache Hadoop YARN: best practices
Apache Hadoop YARN: best practicesApache Hadoop YARN: best practices
Apache Hadoop YARN: best practicesDataWorks Summit
 
Apache Hadoop YARN - Enabling Next Generation Data Applications
Apache Hadoop YARN - Enabling Next Generation Data ApplicationsApache Hadoop YARN - Enabling Next Generation Data Applications
Apache Hadoop YARN - Enabling Next Generation Data ApplicationsHortonworks
 
YARN: a resource manager for analytic platform
YARN: a resource manager for analytic platformYARN: a resource manager for analytic platform
YARN: a resource manager for analytic platformTsuyoshi OZAWA
 
[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から by NTT 小沢健史
[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から  by NTT 小沢健史[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から  by NTT 小沢健史
[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から by NTT 小沢健史Insight Technology, Inc.
 
Taming YARN @ Hadoop conference Japan 2014
Taming YARN @ Hadoop conference Japan 2014Taming YARN @ Hadoop conference Japan 2014
Taming YARN @ Hadoop conference Japan 2014Tsuyoshi OZAWA
 
YARN - Presented At Dallas Hadoop User Group
YARN - Presented At Dallas Hadoop User GroupYARN - Presented At Dallas Hadoop User Group
YARN - Presented At Dallas Hadoop User GroupRommel Garcia
 
Introduction to Yarn
Introduction to YarnIntroduction to Yarn
Introduction to YarnApache Apex
 
Introduction to spark
Introduction to sparkIntroduction to spark
Introduction to sparkHome
 
Next Generation Hadoop: High Availability for YARN
Next Generation Hadoop: High Availability for YARN Next Generation Hadoop: High Availability for YARN
Next Generation Hadoop: High Availability for YARN Arinto Murdopo
 
Anti patterns in hadoop cluster deployment
Anti patterns in hadoop cluster deploymentAnti patterns in hadoop cluster deployment
Anti patterns in hadoop cluster deploymentNaganarasimha Garla
 

Tendances (20)

Yarns about YARN: Migrating to MapReduce v2
Yarns about YARN: Migrating to MapReduce v2Yarns about YARN: Migrating to MapReduce v2
Yarns about YARN: Migrating to MapReduce v2
 
YARN - Next Generation Compute Platform fo Hadoop
YARN - Next Generation Compute Platform fo HadoopYARN - Next Generation Compute Platform fo Hadoop
YARN - Next Generation Compute Platform fo Hadoop
 
Hadoop 2.0, MRv2 and YARN - Module 9
Hadoop 2.0, MRv2 and YARN - Module 9Hadoop 2.0, MRv2 and YARN - Module 9
Hadoop 2.0, MRv2 and YARN - Module 9
 
Hadoop YARN overview
Hadoop YARN overviewHadoop YARN overview
Hadoop YARN overview
 
Hadoop YARN
Hadoop YARNHadoop YARN
Hadoop YARN
 
Apache Hadoop YARN
Apache Hadoop YARNApache Hadoop YARN
Apache Hadoop YARN
 
Apache Hadoop YARN: best practices
Apache Hadoop YARN: best practicesApache Hadoop YARN: best practices
Apache Hadoop YARN: best practices
 
Anatomy of Hadoop YARN
Anatomy of Hadoop YARNAnatomy of Hadoop YARN
Anatomy of Hadoop YARN
 
Apache Hadoop YARN - Enabling Next Generation Data Applications
Apache Hadoop YARN - Enabling Next Generation Data ApplicationsApache Hadoop YARN - Enabling Next Generation Data Applications
Apache Hadoop YARN - Enabling Next Generation Data Applications
 
Apache spark
Apache sparkApache spark
Apache spark
 
YARN: a resource manager for analytic platform
YARN: a resource manager for analytic platformYARN: a resource manager for analytic platform
YARN: a resource manager for analytic platform
 
[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から by NTT 小沢健史
[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から  by NTT 小沢健史[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から  by NTT 小沢健史
[db tech showcase Tokyo 2014] C32: Hadoop最前線 - 開発の現場から by NTT 小沢健史
 
Taming YARN @ Hadoop conference Japan 2014
Taming YARN @ Hadoop conference Japan 2014Taming YARN @ Hadoop conference Japan 2014
Taming YARN @ Hadoop conference Japan 2014
 
YARN - Presented At Dallas Hadoop User Group
YARN - Presented At Dallas Hadoop User GroupYARN - Presented At Dallas Hadoop User Group
YARN - Presented At Dallas Hadoop User Group
 
Introduction to Yarn
Introduction to YarnIntroduction to Yarn
Introduction to Yarn
 
Hadoop scheduler
Hadoop schedulerHadoop scheduler
Hadoop scheduler
 
Introduction to spark
Introduction to sparkIntroduction to spark
Introduction to spark
 
Next Generation Hadoop: High Availability for YARN
Next Generation Hadoop: High Availability for YARN Next Generation Hadoop: High Availability for YARN
Next Generation Hadoop: High Availability for YARN
 
YARN Federation
YARN Federation YARN Federation
YARN Federation
 
Anti patterns in hadoop cluster deployment
Anti patterns in hadoop cluster deploymentAnti patterns in hadoop cluster deployment
Anti patterns in hadoop cluster deployment
 

Similaire à Next Generation Apache Hadoop MapReduce Architecture Scales to 10K+ Nodes

Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...
Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...
Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...Cloudera, Inc.
 
Hadoop bangalore-meetup-dec-2011-hadoop nextgen
Hadoop bangalore-meetup-dec-2011-hadoop nextgenHadoop bangalore-meetup-dec-2011-hadoop nextgen
Hadoop bangalore-meetup-dec-2011-hadoop nextgenInMobi
 
Apache Hadoop MapReduce: What's Next
Apache Hadoop MapReduce: What's NextApache Hadoop MapReduce: What's Next
Apache Hadoop MapReduce: What's NextDataWorks Summit
 
YARN: Future of Data Processing with Apache Hadoop
YARN: Future of Data Processing with Apache HadoopYARN: Future of Data Processing with Apache Hadoop
YARN: Future of Data Processing with Apache HadoopHortonworks
 
Apache Hadoop YARN - The Future of Data Processing with Hadoop
Apache Hadoop YARN - The Future of Data Processing with HadoopApache Hadoop YARN - The Future of Data Processing with Hadoop
Apache Hadoop YARN - The Future of Data Processing with HadoopHortonworks
 
Next Generation of Hadoop MapReduce
Next Generation of Hadoop MapReduceNext Generation of Hadoop MapReduce
Next Generation of Hadoop MapReducehuguk
 
YARN Hadoop Summit Bangalore 2011
YARN Hadoop Summit Bangalore 2011YARN Hadoop Summit Bangalore 2011
YARN Hadoop Summit Bangalore 2011Sharad Agarwal
 
Apache Hadoop YARN - Hortonworks Meetup Presentation
Apache Hadoop YARN - Hortonworks Meetup PresentationApache Hadoop YARN - Hortonworks Meetup Presentation
Apache Hadoop YARN - Hortonworks Meetup PresentationHortonworks
 
A sdn based application aware and network provisioning
A sdn based application aware and network provisioningA sdn based application aware and network provisioning
A sdn based application aware and network provisioningStanley Wang
 
Bikas saha:the next generation of hadoop– hadoop 2 and yarn
Bikas saha:the next generation of hadoop– hadoop 2 and yarnBikas saha:the next generation of hadoop– hadoop 2 and yarn
Bikas saha:the next generation of hadoop– hadoop 2 and yarnhdhappy001
 
YARN - Hadoop Next Generation Compute Platform
YARN - Hadoop Next Generation Compute PlatformYARN - Hadoop Next Generation Compute Platform
YARN - Hadoop Next Generation Compute PlatformBikas Saha
 
Apache Hadoop YARN: Understanding the Data Operating System of Hadoop
Apache Hadoop YARN: Understanding the Data Operating System of HadoopApache Hadoop YARN: Understanding the Data Operating System of Hadoop
Apache Hadoop YARN: Understanding the Data Operating System of HadoopHortonworks
 
Big Data Analytics Chapter3-6@2021.pdf
Big Data Analytics Chapter3-6@2021.pdfBig Data Analytics Chapter3-6@2021.pdf
Big Data Analytics Chapter3-6@2021.pdfWasyihunSema2
 
Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele
Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele
Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele Hakka Labs
 
Running Non-MapReduce Big Data Applications on Apache Hadoop
Running Non-MapReduce Big Data Applications on Apache HadoopRunning Non-MapReduce Big Data Applications on Apache Hadoop
Running Non-MapReduce Big Data Applications on Apache Hadoophitesh1892
 
Hadoop 2 - More than MapReduce
Hadoop 2 - More than MapReduceHadoop 2 - More than MapReduce
Hadoop 2 - More than MapReduceUwe Printz
 

Similaire à Next Generation Apache Hadoop MapReduce Architecture Scales to 10K+ Nodes (20)

Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...
Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...
Hadoop World 2011: Next Generation Apache Hadoop MapReduce - Mohadev Konar, H...
 
Hadoop bangalore-meetup-dec-2011-hadoop nextgen
Hadoop bangalore-meetup-dec-2011-hadoop nextgenHadoop bangalore-meetup-dec-2011-hadoop nextgen
Hadoop bangalore-meetup-dec-2011-hadoop nextgen
 
Apache Hadoop MapReduce: What's Next
Apache Hadoop MapReduce: What's NextApache Hadoop MapReduce: What's Next
Apache Hadoop MapReduce: What's Next
 
YARN: Future of Data Processing with Apache Hadoop
YARN: Future of Data Processing with Apache HadoopYARN: Future of Data Processing with Apache Hadoop
YARN: Future of Data Processing with Apache Hadoop
 
Apache Hadoop YARN - The Future of Data Processing with Hadoop
Apache Hadoop YARN - The Future of Data Processing with HadoopApache Hadoop YARN - The Future of Data Processing with Hadoop
Apache Hadoop YARN - The Future of Data Processing with Hadoop
 
Next Generation of Hadoop MapReduce
Next Generation of Hadoop MapReduceNext Generation of Hadoop MapReduce
Next Generation of Hadoop MapReduce
 
YARN Hadoop Summit Bangalore 2011
YARN Hadoop Summit Bangalore 2011YARN Hadoop Summit Bangalore 2011
YARN Hadoop Summit Bangalore 2011
 
Apache Hadoop YARN - Hortonworks Meetup Presentation
Apache Hadoop YARN - Hortonworks Meetup PresentationApache Hadoop YARN - Hortonworks Meetup Presentation
Apache Hadoop YARN - Hortonworks Meetup Presentation
 
Hadoop ecosystem
Hadoop ecosystemHadoop ecosystem
Hadoop ecosystem
 
Hadoop ecosystem
Hadoop ecosystemHadoop ecosystem
Hadoop ecosystem
 
A sdn based application aware and network provisioning
A sdn based application aware and network provisioningA sdn based application aware and network provisioning
A sdn based application aware and network provisioning
 
Yarnthug2014
Yarnthug2014Yarnthug2014
Yarnthug2014
 
MHUG - YARN
MHUG - YARNMHUG - YARN
MHUG - YARN
 
Bikas saha:the next generation of hadoop– hadoop 2 and yarn
Bikas saha:the next generation of hadoop– hadoop 2 and yarnBikas saha:the next generation of hadoop– hadoop 2 and yarn
Bikas saha:the next generation of hadoop– hadoop 2 and yarn
 
YARN - Hadoop Next Generation Compute Platform
YARN - Hadoop Next Generation Compute PlatformYARN - Hadoop Next Generation Compute Platform
YARN - Hadoop Next Generation Compute Platform
 
Apache Hadoop YARN: Understanding the Data Operating System of Hadoop
Apache Hadoop YARN: Understanding the Data Operating System of HadoopApache Hadoop YARN: Understanding the Data Operating System of Hadoop
Apache Hadoop YARN: Understanding the Data Operating System of Hadoop
 
Big Data Analytics Chapter3-6@2021.pdf
Big Data Analytics Chapter3-6@2021.pdfBig Data Analytics Chapter3-6@2021.pdf
Big Data Analytics Chapter3-6@2021.pdf
 
Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele
Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele
Developing Applications with Hadoop 2.0 and YARN by Abhijit Lele
 
Running Non-MapReduce Big Data Applications on Apache Hadoop
Running Non-MapReduce Big Data Applications on Apache HadoopRunning Non-MapReduce Big Data Applications on Apache Hadoop
Running Non-MapReduce Big Data Applications on Apache Hadoop
 
Hadoop 2 - More than MapReduce
Hadoop 2 - More than MapReduceHadoop 2 - More than MapReduce
Hadoop 2 - More than MapReduce
 

Plus de Hortonworks

Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next LevelHortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next LevelHortonworks
 
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT StrategyIoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT StrategyHortonworks
 
Getting the Most Out of Your Data in the Cloud with Cloudbreak
Getting the Most Out of Your Data in the Cloud with CloudbreakGetting the Most Out of Your Data in the Cloud with Cloudbreak
Getting the Most Out of Your Data in the Cloud with CloudbreakHortonworks
 
Johns Hopkins - Using Hadoop to Secure Access Log Events
Johns Hopkins - Using Hadoop to Secure Access Log EventsJohns Hopkins - Using Hadoop to Secure Access Log Events
Johns Hopkins - Using Hadoop to Secure Access Log EventsHortonworks
 
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad GuysCatch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad GuysHortonworks
 
HDF 3.2 - What's New
HDF 3.2 - What's NewHDF 3.2 - What's New
HDF 3.2 - What's NewHortonworks
 
Curing Kafka Blindness with Hortonworks Streams Messaging Manager
Curing Kafka Blindness with Hortonworks Streams Messaging ManagerCuring Kafka Blindness with Hortonworks Streams Messaging Manager
Curing Kafka Blindness with Hortonworks Streams Messaging ManagerHortonworks
 
Interpretation Tool for Genomic Sequencing Data in Clinical Environments
Interpretation Tool for Genomic Sequencing Data in Clinical EnvironmentsInterpretation Tool for Genomic Sequencing Data in Clinical Environments
Interpretation Tool for Genomic Sequencing Data in Clinical EnvironmentsHortonworks
 
IBM+Hortonworks = Transformation of the Big Data Landscape
IBM+Hortonworks = Transformation of the Big Data LandscapeIBM+Hortonworks = Transformation of the Big Data Landscape
IBM+Hortonworks = Transformation of the Big Data LandscapeHortonworks
 
Premier Inside-Out: Apache Druid
Premier Inside-Out: Apache DruidPremier Inside-Out: Apache Druid
Premier Inside-Out: Apache DruidHortonworks
 
Accelerating Data Science and Real Time Analytics at Scale
Accelerating Data Science and Real Time Analytics at ScaleAccelerating Data Science and Real Time Analytics at Scale
Accelerating Data Science and Real Time Analytics at ScaleHortonworks
 
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATATIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATAHortonworks
 
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...Hortonworks
 
Delivering Real-Time Streaming Data for Healthcare Customers: Clearsense
Delivering Real-Time Streaming Data for Healthcare Customers: ClearsenseDelivering Real-Time Streaming Data for Healthcare Customers: Clearsense
Delivering Real-Time Streaming Data for Healthcare Customers: ClearsenseHortonworks
 
Making Enterprise Big Data Small with Ease
Making Enterprise Big Data Small with EaseMaking Enterprise Big Data Small with Ease
Making Enterprise Big Data Small with EaseHortonworks
 
Webinewbie to Webinerd in 30 Days - Webinar World Presentation
Webinewbie to Webinerd in 30 Days - Webinar World PresentationWebinewbie to Webinerd in 30 Days - Webinar World Presentation
Webinewbie to Webinerd in 30 Days - Webinar World PresentationHortonworks
 
Driving Digital Transformation Through Global Data Management
Driving Digital Transformation Through Global Data ManagementDriving Digital Transformation Through Global Data Management
Driving Digital Transformation Through Global Data ManagementHortonworks
 
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming FeaturesHDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming FeaturesHortonworks
 
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...Hortonworks
 
Unlock Value from Big Data with Apache NiFi and Streaming CDC
Unlock Value from Big Data with Apache NiFi and Streaming CDCUnlock Value from Big Data with Apache NiFi and Streaming CDC
Unlock Value from Big Data with Apache NiFi and Streaming CDCHortonworks
 

Plus de Hortonworks (20)

Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next LevelHortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
Hortonworks DataFlow (HDF) 3.3 - Taking Stream Processing to the Next Level
 
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT StrategyIoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
IoT Predictions for 2019 and Beyond: Data at the Heart of Your IoT Strategy
 
Getting the Most Out of Your Data in the Cloud with Cloudbreak
Getting the Most Out of Your Data in the Cloud with CloudbreakGetting the Most Out of Your Data in the Cloud with Cloudbreak
Getting the Most Out of Your Data in the Cloud with Cloudbreak
 
Johns Hopkins - Using Hadoop to Secure Access Log Events
Johns Hopkins - Using Hadoop to Secure Access Log EventsJohns Hopkins - Using Hadoop to Secure Access Log Events
Johns Hopkins - Using Hadoop to Secure Access Log Events
 
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad GuysCatch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
Catch a Hacker in Real-Time: Live Visuals of Bots and Bad Guys
 
HDF 3.2 - What's New
HDF 3.2 - What's NewHDF 3.2 - What's New
HDF 3.2 - What's New
 
Curing Kafka Blindness with Hortonworks Streams Messaging Manager
Curing Kafka Blindness with Hortonworks Streams Messaging ManagerCuring Kafka Blindness with Hortonworks Streams Messaging Manager
Curing Kafka Blindness with Hortonworks Streams Messaging Manager
 
Interpretation Tool for Genomic Sequencing Data in Clinical Environments
Interpretation Tool for Genomic Sequencing Data in Clinical EnvironmentsInterpretation Tool for Genomic Sequencing Data in Clinical Environments
Interpretation Tool for Genomic Sequencing Data in Clinical Environments
 
IBM+Hortonworks = Transformation of the Big Data Landscape
IBM+Hortonworks = Transformation of the Big Data LandscapeIBM+Hortonworks = Transformation of the Big Data Landscape
IBM+Hortonworks = Transformation of the Big Data Landscape
 
Premier Inside-Out: Apache Druid
Premier Inside-Out: Apache DruidPremier Inside-Out: Apache Druid
Premier Inside-Out: Apache Druid
 
Accelerating Data Science and Real Time Analytics at Scale
Accelerating Data Science and Real Time Analytics at ScaleAccelerating Data Science and Real Time Analytics at Scale
Accelerating Data Science and Real Time Analytics at Scale
 
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATATIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
TIME SERIES: APPLYING ADVANCED ANALYTICS TO INDUSTRIAL PROCESS DATA
 
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
Blockchain with Machine Learning Powered by Big Data: Trimble Transportation ...
 
Delivering Real-Time Streaming Data for Healthcare Customers: Clearsense
Delivering Real-Time Streaming Data for Healthcare Customers: ClearsenseDelivering Real-Time Streaming Data for Healthcare Customers: Clearsense
Delivering Real-Time Streaming Data for Healthcare Customers: Clearsense
 
Making Enterprise Big Data Small with Ease
Making Enterprise Big Data Small with EaseMaking Enterprise Big Data Small with Ease
Making Enterprise Big Data Small with Ease
 
Webinewbie to Webinerd in 30 Days - Webinar World Presentation
Webinewbie to Webinerd in 30 Days - Webinar World PresentationWebinewbie to Webinerd in 30 Days - Webinar World Presentation
Webinewbie to Webinerd in 30 Days - Webinar World Presentation
 
Driving Digital Transformation Through Global Data Management
Driving Digital Transformation Through Global Data ManagementDriving Digital Transformation Through Global Data Management
Driving Digital Transformation Through Global Data Management
 
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming FeaturesHDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
HDF 3.1 pt. 2: A Technical Deep-Dive on New Streaming Features
 
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
Hortonworks DataFlow (HDF) 3.1 - Redefining Data-In-Motion with Modern Data A...
 
Unlock Value from Big Data with Apache NiFi and Streaming CDC
Unlock Value from Big Data with Apache NiFi and Streaming CDCUnlock Value from Big Data with Apache NiFi and Streaming CDC
Unlock Value from Big Data with Apache NiFi and Streaming CDC
 

Dernier

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 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Allon Mureinik
 
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 Processorsdebabhi2
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsRoshan Dwivedi
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j
 
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 RobisonAnna Loughnan Colquhoun
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc
 
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 WorkerThousandEyes
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking MenDelhi Call girls
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking MenDelhi Call girls
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityPrincipled Technologies
 
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 2024The Digital Insurer
 
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 organizationRadu Cotescu
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)Gabriella Davis
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationSafe Software
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Drew Madelung
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure servicePooja Nehwal
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Enterprise Knowledge
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking MenDelhi Call girls
 

Dernier (20)

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 2024The 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
 
Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)Injustice - Developers Among Us (SciFiDevCon 2024)
Injustice - Developers Among Us (SciFiDevCon 2024)
 
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
 
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live StreamsTop 5 Benefits OF Using Muvi Live Paywall For Live Streams
Top 5 Benefits OF Using Muvi Live Paywall For Live Streams
 
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
Neo4j - How KGs are shaping the future of Generative AI at AWS Summit London ...
 
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
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
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
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men08448380779 Call Girls In Friends Colony Women Seeking Men
08448380779 Call Girls In Friends Colony Women Seeking Men
 
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men08448380779 Call Girls In Greater Kailash - I Women Seeking Men
08448380779 Call Girls In Greater Kailash - I Women Seeking Men
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
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
 
A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)A Domino Admins Adventures (Engage 2024)
A Domino Admins Adventures (Engage 2024)
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 

Next Generation Apache Hadoop MapReduce Architecture Scales to 10K+ Nodes

  • 1. Next Generation Apache Hadoop Map Reduce Mahadev Konar Co Founder @mahadevkonar (@hortonworks) Page 1
  • 2. Bio • Apache Hadoop since 2006 - committer and PMC member • Apache ZooKeeper since 2008 – committer and PMC member Page 2
  • 3. Hadoop MapReduce Classic • JobTracker – Manages cluster resources and job scheduling • TaskTracker – Per-node agent – Manage tasks
  • 4. Current Limitations • Hard partition of resources into map and reduce slots – Low resource utilization • Lacks support for alternate paradigms – Iterative applications implemented using MapReduce are 10x slower. – Hacks for the likes of MPI/Graph Processing • Lack of wire-compatible protocols – Client and cluster must be of same version – Applications and workflows cannot migrate to different clusters 4
  • 5. Current Limitations • Scalability – Maximum Cluster size – 4,000 nodes – Maximum concurrent tasks – 40,000 – Coarse synchronization in JobTracker • Single point of failure – Failure kills all queued and running jobs – Jobs need to be re-submitted by users • Restart is very tricky due to complex state 5
  • 6. Requirements • Reliability • Availability • Scalability - Clusters of 6,000-10,000 machines – Each machine with 16 cores, 48G/96G RAM, 24TB/36TB disks – 100,000+ concurrent tasks – 10,000 concurrent jobs • Wire Compatibility • Agility & Evolution – Ability for customers to control upgrades to the grid software stack. 6
  • 7. Design Centre • Split up the two major functions of JobTracker – Cluster resource management – Application life-cycle management • MapReduce becomes user-land library 7
  • 8. Architecture • Application – Application is a job submitted to the framework – Example – Map Reduce Job • Container – Basic unit of allocation – Example – container A = 2GB, 1CPU – Replaces the fixed map/reduce slots 8
  • 9. Architecture • Resource Manager – Global resource scheduler – Hierarchical queues • Node Manager – Per-machine agent – Manages the life-cycle of container – Container resource monitoring • Application Master – Per-application – Manages application scheduling and task execution – E.g. MapReduce Application Master 9
  • 10. Architecture Node Node Manager Manager Container App Mstr App Mstr Client Resource Node Node Resource Manager Manager Manager Manager Client Client App Mstr Container Container MapReduce Status Node Node MapReduce Status Manager Manager Job Submission Job Submission Node Status Node Status Resource Request Resource Request Container Container
  • 11. Architecture – Resource Manager Resource Manager Resource Applications Scheduler Tracker Manager • Applications Manager • Responsible for launching and monitoring Application Masters (per Application process) • Restarts an Application Master on failure • Scheduler • Responsible for allocating resources to the Application • Resource Tracker • Responsible for managing the nodes in the cluster
  • 12. Improvements vis-à-vis classic MapReduce • Utilization – Generic resource model • Memory • CPU • Disk b/w • Network b/w – Remove fixed partition of map and reduce slots 12
  • 13. Improvements vis-à-vis classic MapReduce • Scalability – Application life-cycle management is very expensive – Partition resource management and application life- cycle management – Application management is distributed – Hardware trends - Currently run clusters of 4,000 machines • 6,000 2012 machines > 12,000 2009 machines • <16+ cores, 48/96G, 24TB> v/s <8 cores, 16G, 4TB> 13
  • 14. Improvements vis-à-vis classic MapReduce • Fault Tolerance and Availability – Resource Manager • No single point of failure – state saved in ZooKeeper • Application Masters are restarted automatically on RM restart • Applications continue to progress with existing resources during restart, new resources aren’t allocated – Application Master • Optional failover via application-specific checkpoint • MapReduce applications pick up where they left off via state saved in HDFS 14
  • 15. Improvements vis-à-vis classic MapReduce • Wire Compatibility – Protocols are wire-compatible – Old clients can talk to new servers – Rolling upgrades 15
  • 16. Improvements vis-à-vis classic MapReduce • Innovation and Agility – MapReduce now becomes a user-land library – Multiple versions of MapReduce can run in the same cluster (a la Apache Pig) • Faster deployment cycles for improvements – Customers upgrade MapReduce versions on their schedule – Users can customize MapReduce 16
  • 17. Improvements vis-à-vis classic MapReduce • Support for programming paradigms other than MapReduce – MPI – Master-Worker – Machine Learning – Iterative processing – Enabled by allowing use of paradigm-specific Application Master – Run all on the same Hadoop cluster 17
  • 18. Summary • MapReduce .Next takes Hadoop to the next level – Scale-out even further – High availability – Cluster Utilization – Support for paradigms other than MapReduce 18
  • 19. Coming Up • Next Gen in 0.23.0 • Yahoo! Deployment on 1000 servers • Ongoing work on – Stability – Admin ease of use 19
  • 20. Coming Up • MPI on Hadoop • Other frameworks on Hadoop – Giraph – Spark/Kafka/Storm? 20
  • 21. Roadmap • RM restart and Pre emption • Performance – Preleminary results • At par with classic • Sort/DFSIO • Yahoo! Performance team 21
  • 22. Questions? http://issues.apache.org/jira/browse/MAPREDUCE-279 http://developer.yahoo.com/blogs/hadoop/posts/2011/02/mapreduce-nextgen/ 22