SlideShare a Scribd company logo
1 of 49
Netflix Data Pipeline
with Kafka
Allen Wang & Steven Wu
Agenda
● Introduction
● Evolution of Netflix data pipeline
● How do we use Kafka
What is Netflix?
Netflix is a logging company
that occasionally streams video
Numbers
● 400 billion events per day
● 8 million events & 17 GB per second during
peak
● hundreds of event types
Agenda
● Introduction
● Evolution of Netflix data pipeline
● How do we use Kafka
Mission of Data Pipeline
Publish, Collect, Aggregate, Move Data @
Cloud Scale
In the old days ...
S3
EMR
Event
Producer
Nowadays ...
S3
Router
Druid
EMR
Existing Data Pipeline
Event
Producer
Stream
Consumers
In to the Future ...
New Data Pipeline
S3
Router
Druid
EMR
Event
Producer
Stream
Consumers
Fronting
Kafka
Consumer
Kafka
Serving Consumers off Diff Clusters
S3
Router
Druid
EMR
Event
Producer
Stream
Consumers
Fronting
Kafka
Consumer
Kafka
Split Fronting Kafka Clusters
● Low-priority (error log, request trace, etc.)
o 2 copies, 1-2 hour retention
● Medium-priority (majority)
o 2 copies, 4 hour retention
● High-priority (streaming activities etc.)
o 3 copies, 12-24 hour retention
Producer Resilience
● Kafka outage should never disrupt existing
instances from serving business purpose
● Kafka outage should never prevent new
instances from starting up
● After kafka cluster restored, event producing
should resume automatically
Fail but Never Block
● block.on.buffer.full=false
● handle potential blocking of first meta data
request
● Periodical check whether KafkaProducer
was opened successfully
Agenda
● Introduction
● Evolution of Netflix data pipeline
● How do we use Kafka
What Does It Take to Run In Cloud
● Support elasticity
● Respond to scaling events
● Resilience to failures
o Favors architecture without single point of failure
o Retries, smart routing, fallback ...
Kafka in AWS - How do we make it
happen
● Inside our Kafka JVM
● Services supporting Kafka
● Challenges/Solutions
● Our roadmap
Netflix Kafka Container
Kafka
Metric reporting Health check
service Bootstrap
Kafka JVM
Bootstrap
● Broker ID assignment
o Instances obtain sequential numeric IDs using Curator’s locks recipe
persisted in ZK
o Cleans up entry for terminated instances and reuse its ID
o Same ID upon restart
● Bootstrap Kafka properties from Archaius
o Files
o System properties/Environment variables
o Persisted properties service
● Service registration
o Register with Eureka for internal service discovery
o Register with AWS Route53 DNS service
Metric Reporting
● We use Servo and Atlas from NetflixOSS
Kafka
MetricReporter
(Yammer → Servo adaptor)
JMX
Atlas Service
Kafka Atlas Dashboard
Health check service
● Use Curator to periodically read ZooKeeper
data to find signs of unhealthiness
● Export metrics to Servo/Atlas
● Expose the service via embedded Jetty
Kafka in AWS - How do we make it
happen
● Inside our Kafka JVM
● Services supporting Kafka
● Challenges/Solutions
● Our roadmap
ZooKeeper
● Dedicated 5 node cluster for our data
pipeline services
● EIP based
● SSD instance
Auditor
● Highly configurable producers and
consumers with their own set of topics and
metadata in messages
● Built as a service deployable on single or
multiple instances
● Runs as producer, consumer or both
● Supports replay of preconfigured set of
messages
Auditor
● Broker monitoring (Heartbeating)
Auditor
● Broker performance testing
o Produce tens of thousands messages per second on
single instance
o As consumers to test consumer impact
Kafka admin UI
● Still searching …
● Currently trying out KafkaManager
Kafka in AWS - How do we make it
happen
● Inside our Kafka JVM
● Services supporting Kafka
● Challenges/Solutions
● Our roadmap
Challenges
● ZooKeeper client issues
● Cluster scaling
● Producer/consumer/broker tuning
ZooKeeper Client
● Challenges
o Broker/consumer cannot survive ZooKeeper cluster
rolling push due to caching of private IP
o Temporary DNS lookup failure at new session
initialization kills future communication
ZooKeeper Client
● Solutions
o Created our internal fork of Apache ZooKeeper
client
o Periodically refresh private IP resolution
o Fallback to last good private IP resolution upon DNS
lookup failure
Scaling
● Provisioned for peak traffic
o … and we have regional fail-over
Strategy #1 Add Partitions to New
Brokers
● Caveat
o Most of our topics do not use keyed messages
o Number of partitions is still small
o Require high level consumer
Strategy #1 Add Partitions to new
brokers
● Challenges: existing admin tools does not
support atomic adding partitions and
assigning to new brokers
Strategy #1 Add Partitions to new
brokers
● Solutions: created our own tool to do it in
one ZooKeeper change and repeat for all or
selected topics
● Reduced the time to scale up from a few
hours to a few minutes
Strategy #2 Move Partitions
● Should work without precondition, but ...
● Huge increase of network I/O affecting
incoming traffic
● A much longer process than adding
partitions
● Sometimes confusing error messages
● Would work if pace of replication can be
controlled
Scale down strategy
● There is none
● Look for more support to automatically move
all partitions from a set of brokers to a
different set
Client tuning
● Producer
o Batching is important to reduce CPU and network
I/O on brokers
o Stick to one partition for a while when producing for
non-keyed messages
o “linger.ms” works well with sticky partitioner
● Consumer
o With huge number of consumers, set proper
fetch.wait.max.ms to reduce polling traffic on broker
Effect of batching
partitioner batched records
per request
broker cpu util
[1]
random without
lingering
1.25 75%
sticky without
lingering
2.0 50%
sticky with 100ms
lingering
15 33%
[1] 10 MB & 10K msgs / second per broker, 1KB per message
Broker tuning
● Use G1 collector
● Use large page cache and memory
● Increase max file descriptor if you have
thousands of producers or consumers
Kafka in AWS - How do we make it
happen
● Inside our Kafka JVM
● Services supporting Kafka
● Challenges/Solutions
● Our roadmap
Road map
● Work with Kafka community on rack/zone
aware replica assignment
● Failure resilience testing
o Chaos Monkey
o Chaos Gorilla
● Contribute to open source
o Kafka
o Schlep -- our messaging library including SQS and
Kafka support
o Auditor
Thank you!
http://netflix.github.io/
http://techblog.netflix.com/
@NetflixOSS
@allenxwang
@stevenzwu

More Related Content

What's hot

Kappa vs Lambda Architectures and Technology Comparison
Kappa vs Lambda Architectures and Technology ComparisonKappa vs Lambda Architectures and Technology Comparison
Kappa vs Lambda Architectures and Technology Comparison
Kai Wähner
 
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
SANG WON PARK
 
Introducing Kafka's Streams API
Introducing Kafka's Streams APIIntroducing Kafka's Streams API
Introducing Kafka's Streams API
confluent
 

What's hot (20)

Handle Large Messages In Apache Kafka
Handle Large Messages In Apache KafkaHandle Large Messages In Apache Kafka
Handle Large Messages In Apache Kafka
 
Kappa vs Lambda Architectures and Technology Comparison
Kappa vs Lambda Architectures and Technology ComparisonKappa vs Lambda Architectures and Technology Comparison
Kappa vs Lambda Architectures and Technology Comparison
 
Fundamentals of Apache Kafka
Fundamentals of Apache KafkaFundamentals of Apache Kafka
Fundamentals of Apache Kafka
 
Kafka 101
Kafka 101Kafka 101
Kafka 101
 
Apache Kafka Best Practices
Apache Kafka Best PracticesApache Kafka Best Practices
Apache Kafka Best Practices
 
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
Apache kafka 모니터링을 위한 Metrics 이해 및 최적화 방안
 
Consumer offset management in Kafka
Consumer offset management in KafkaConsumer offset management in Kafka
Consumer offset management in Kafka
 
Introduction to Apache Kafka
Introduction to Apache KafkaIntroduction to Apache Kafka
Introduction to Apache Kafka
 
Apache Kafka Architecture & Fundamentals Explained
Apache Kafka Architecture & Fundamentals ExplainedApache Kafka Architecture & Fundamentals Explained
Apache Kafka Architecture & Fundamentals Explained
 
Kafka presentation
Kafka presentationKafka presentation
Kafka presentation
 
Tuning Apache Kafka Connectors for Flink.pptx
Tuning Apache Kafka Connectors for Flink.pptxTuning Apache Kafka Connectors for Flink.pptx
Tuning Apache Kafka Connectors for Flink.pptx
 
Citi Tech Talk Disaster Recovery Solutions Deep Dive
Citi Tech Talk  Disaster Recovery Solutions Deep DiveCiti Tech Talk  Disaster Recovery Solutions Deep Dive
Citi Tech Talk Disaster Recovery Solutions Deep Dive
 
Autoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive ModeAutoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive Mode
 
Apache kafka
Apache kafkaApache kafka
Apache kafka
 
Improving Kafka at-least-once performance at Uber
Improving Kafka at-least-once performance at UberImproving Kafka at-least-once performance at Uber
Improving Kafka at-least-once performance at Uber
 
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
 
Tech Talk: RocksDB Slides by Dhruba Borthakur & Haobo Xu of Facebook
Tech Talk: RocksDB Slides by Dhruba Borthakur & Haobo Xu of FacebookTech Talk: RocksDB Slides by Dhruba Borthakur & Haobo Xu of Facebook
Tech Talk: RocksDB Slides by Dhruba Borthakur & Haobo Xu of Facebook
 
Introducing Kafka's Streams API
Introducing Kafka's Streams APIIntroducing Kafka's Streams API
Introducing Kafka's Streams API
 
Introduction to Apache Flink
Introduction to Apache FlinkIntroduction to Apache Flink
Introduction to Apache Flink
 
How Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per dayHow Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per day
 

Similar to Netflix Data Pipeline With Kafka

Similar to Netflix Data Pipeline With Kafka (20)

Introduction to Apache Kafka
Introduction to Apache KafkaIntroduction to Apache Kafka
Introduction to Apache Kafka
 
Netflix Keystone Pipeline at Big Data Bootcamp, Santa Clara, Nov 2015
Netflix Keystone Pipeline at Big Data Bootcamp, Santa Clara, Nov 2015Netflix Keystone Pipeline at Big Data Bootcamp, Santa Clara, Nov 2015
Netflix Keystone Pipeline at Big Data Bootcamp, Santa Clara, Nov 2015
 
Event driven architectures with Kinesis
Event driven architectures with KinesisEvent driven architectures with Kinesis
Event driven architectures with Kinesis
 
Big data Argentina meetup 2020-09: Intro to presto on docker
Big data Argentina meetup 2020-09: Intro to presto on dockerBig data Argentina meetup 2020-09: Intro to presto on docker
Big data Argentina meetup 2020-09: Intro to presto on docker
 
Netflix Keystone - How Netflix Handles Data Streams up to 11M Events/Sec
Netflix Keystone - How Netflix Handles Data Streams up to 11M Events/SecNetflix Keystone - How Netflix Handles Data Streams up to 11M Events/Sec
Netflix Keystone - How Netflix Handles Data Streams up to 11M Events/Sec
 
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUpStrimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
Strimzi - Where Apache Kafka meets OpenShift - OpenShift Spain MeetUp
 
Netflix Keystone—Cloud scale event processing pipeline
Netflix Keystone—Cloud scale event processing pipelineNetflix Keystone—Cloud scale event processing pipeline
Netflix Keystone—Cloud scale event processing pipeline
 
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and DaemonsQConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
QConSF18 - Disenchantment: Netflix Titus, its Feisty Team, and Daemons
 
Netflix Open Source Meetup Season 4 Episode 2
Netflix Open Source Meetup Season 4 Episode 2Netflix Open Source Meetup Season 4 Episode 2
Netflix Open Source Meetup Season 4 Episode 2
 
Netflix keystone streaming data pipeline @scale in the cloud-dbtb-2016
Netflix keystone   streaming data pipeline @scale in the cloud-dbtb-2016Netflix keystone   streaming data pipeline @scale in the cloud-dbtb-2016
Netflix keystone streaming data pipeline @scale in the cloud-dbtb-2016
 
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
 
kafka
kafkakafka
kafka
 
Architectual Comparison of Apache Apex and Spark Streaming
Architectual Comparison of Apache Apex and Spark StreamingArchitectual Comparison of Apache Apex and Spark Streaming
Architectual Comparison of Apache Apex and Spark Streaming
 
Kafka used at scale to deliver real-time notifications
Kafka used at scale to deliver real-time notificationsKafka used at scale to deliver real-time notifications
Kafka used at scale to deliver real-time notifications
 
Twitter’s Apache Kafka Adoption Journey | Ming Liu, Twitter
Twitter’s Apache Kafka Adoption Journey | Ming Liu, TwitterTwitter’s Apache Kafka Adoption Journey | Ming Liu, Twitter
Twitter’s Apache Kafka Adoption Journey | Ming Liu, Twitter
 
Things You MUST Know Before Deploying OpenStack: Bruno Lago, Catalyst IT
Things You MUST Know Before Deploying OpenStack: Bruno Lago, Catalyst ITThings You MUST Know Before Deploying OpenStack: Bruno Lago, Catalyst IT
Things You MUST Know Before Deploying OpenStack: Bruno Lago, Catalyst IT
 
The Netflix Way to deal with Big Data Problems
The Netflix Way to deal with Big Data ProblemsThe Netflix Way to deal with Big Data Problems
The Netflix Way to deal with Big Data Problems
 
Uber Real Time Data Analytics
Uber Real Time Data AnalyticsUber Real Time Data Analytics
Uber Real Time Data Analytics
 
Our Multi-Year Journey to a 10x Faster Confluent Cloud
Our Multi-Year Journey to a 10x Faster Confluent CloudOur Multi-Year Journey to a 10x Faster Confluent Cloud
Our Multi-Year Journey to a 10x Faster Confluent Cloud
 
Ultimate Guide to Microservice Architecture on Kubernetes
Ultimate Guide to Microservice Architecture on KubernetesUltimate Guide to Microservice Architecture on Kubernetes
Ultimate Guide to Microservice Architecture on Kubernetes
 

Recently uploaded

%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...
masabamasaba
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
Health
 
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
masabamasaba
 
%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...
%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...
%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...
masabamasaba
 
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Medical / Health Care (+971588192166) Mifepristone and Misoprostol tablets 200mg
 

Recently uploaded (20)

%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
%in kaalfontein+277-882-255-28 abortion pills for sale in kaalfontein
 
tonesoftg
tonesoftgtonesoftg
tonesoftg
 
%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Atlanta Psychic Readings, Attraction spells,Brin...
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
 
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
 
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
WSO2CON 2024 - Cloud Native Middleware: Domain-Driven Design, Cell-Based Arch...
 
WSO2CON 2024 - WSO2's Digital Transformation Journey with Choreo: A Platforml...
WSO2CON 2024 - WSO2's Digital Transformation Journey with Choreo: A Platforml...WSO2CON 2024 - WSO2's Digital Transformation Journey with Choreo: A Platforml...
WSO2CON 2024 - WSO2's Digital Transformation Journey with Choreo: A Platforml...
 
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park %in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
 
Announcing Codolex 2.0 from GDK Software
Announcing Codolex 2.0 from GDK SoftwareAnnouncing Codolex 2.0 from GDK Software
Announcing Codolex 2.0 from GDK Software
 
%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...
%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...
%+27788225528 love spells in new york Psychic Readings, Attraction spells,Bri...
 
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
Crypto Cloud Review - How To Earn Up To $500 Per DAY Of Bitcoin 100% On AutoP...
 
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
 
What Goes Wrong with Language Definitions and How to Improve the Situation
What Goes Wrong with Language Definitions and How to Improve the SituationWhat Goes Wrong with Language Definitions and How to Improve the Situation
What Goes Wrong with Language Definitions and How to Improve the Situation
 
%in Soweto+277-882-255-28 abortion pills for sale in soweto
%in Soweto+277-882-255-28 abortion pills for sale in soweto%in Soweto+277-882-255-28 abortion pills for sale in soweto
%in Soweto+277-882-255-28 abortion pills for sale in soweto
 
%in Rustenburg+277-882-255-28 abortion pills for sale in Rustenburg
%in Rustenburg+277-882-255-28 abortion pills for sale in Rustenburg%in Rustenburg+277-882-255-28 abortion pills for sale in Rustenburg
%in Rustenburg+277-882-255-28 abortion pills for sale in Rustenburg
 
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
 
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
 
WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?
 
Artyushina_Guest lecture_YorkU CS May 2024.pptx
Artyushina_Guest lecture_YorkU CS May 2024.pptxArtyushina_Guest lecture_YorkU CS May 2024.pptx
Artyushina_Guest lecture_YorkU CS May 2024.pptx
 
WSO2CON 2024 - Freedom First—Unleashing Developer Potential with Open Source
WSO2CON 2024 - Freedom First—Unleashing Developer Potential with Open SourceWSO2CON 2024 - Freedom First—Unleashing Developer Potential with Open Source
WSO2CON 2024 - Freedom First—Unleashing Developer Potential with Open Source
 

Netflix Data Pipeline With Kafka

  • 1. Netflix Data Pipeline with Kafka Allen Wang & Steven Wu
  • 2. Agenda ● Introduction ● Evolution of Netflix data pipeline ● How do we use Kafka
  • 4. Netflix is a logging company
  • 6. Numbers ● 400 billion events per day ● 8 million events & 17 GB per second during peak ● hundreds of event types
  • 7. Agenda ● Introduction ● Evolution of Netflix data pipeline ● How do we use Kafka
  • 8. Mission of Data Pipeline Publish, Collect, Aggregate, Move Data @ Cloud Scale
  • 9. In the old days ...
  • 13. In to the Future ...
  • 15. Serving Consumers off Diff Clusters S3 Router Druid EMR Event Producer Stream Consumers Fronting Kafka Consumer Kafka
  • 16. Split Fronting Kafka Clusters ● Low-priority (error log, request trace, etc.) o 2 copies, 1-2 hour retention ● Medium-priority (majority) o 2 copies, 4 hour retention ● High-priority (streaming activities etc.) o 3 copies, 12-24 hour retention
  • 17. Producer Resilience ● Kafka outage should never disrupt existing instances from serving business purpose ● Kafka outage should never prevent new instances from starting up ● After kafka cluster restored, event producing should resume automatically
  • 18. Fail but Never Block ● block.on.buffer.full=false ● handle potential blocking of first meta data request ● Periodical check whether KafkaProducer was opened successfully
  • 19. Agenda ● Introduction ● Evolution of Netflix data pipeline ● How do we use Kafka
  • 20. What Does It Take to Run In Cloud ● Support elasticity ● Respond to scaling events ● Resilience to failures o Favors architecture without single point of failure o Retries, smart routing, fallback ...
  • 21. Kafka in AWS - How do we make it happen ● Inside our Kafka JVM ● Services supporting Kafka ● Challenges/Solutions ● Our roadmap
  • 22. Netflix Kafka Container Kafka Metric reporting Health check service Bootstrap Kafka JVM
  • 23. Bootstrap ● Broker ID assignment o Instances obtain sequential numeric IDs using Curator’s locks recipe persisted in ZK o Cleans up entry for terminated instances and reuse its ID o Same ID upon restart ● Bootstrap Kafka properties from Archaius o Files o System properties/Environment variables o Persisted properties service ● Service registration o Register with Eureka for internal service discovery o Register with AWS Route53 DNS service
  • 24. Metric Reporting ● We use Servo and Atlas from NetflixOSS Kafka MetricReporter (Yammer → Servo adaptor) JMX Atlas Service
  • 26. Health check service ● Use Curator to periodically read ZooKeeper data to find signs of unhealthiness ● Export metrics to Servo/Atlas ● Expose the service via embedded Jetty
  • 27. Kafka in AWS - How do we make it happen ● Inside our Kafka JVM ● Services supporting Kafka ● Challenges/Solutions ● Our roadmap
  • 28. ZooKeeper ● Dedicated 5 node cluster for our data pipeline services ● EIP based ● SSD instance
  • 29. Auditor ● Highly configurable producers and consumers with their own set of topics and metadata in messages ● Built as a service deployable on single or multiple instances ● Runs as producer, consumer or both ● Supports replay of preconfigured set of messages
  • 31. Auditor ● Broker performance testing o Produce tens of thousands messages per second on single instance o As consumers to test consumer impact
  • 32. Kafka admin UI ● Still searching … ● Currently trying out KafkaManager
  • 33.
  • 34. Kafka in AWS - How do we make it happen ● Inside our Kafka JVM ● Services supporting Kafka ● Challenges/Solutions ● Our roadmap
  • 35. Challenges ● ZooKeeper client issues ● Cluster scaling ● Producer/consumer/broker tuning
  • 36. ZooKeeper Client ● Challenges o Broker/consumer cannot survive ZooKeeper cluster rolling push due to caching of private IP o Temporary DNS lookup failure at new session initialization kills future communication
  • 37. ZooKeeper Client ● Solutions o Created our internal fork of Apache ZooKeeper client o Periodically refresh private IP resolution o Fallback to last good private IP resolution upon DNS lookup failure
  • 38. Scaling ● Provisioned for peak traffic o … and we have regional fail-over
  • 39. Strategy #1 Add Partitions to New Brokers ● Caveat o Most of our topics do not use keyed messages o Number of partitions is still small o Require high level consumer
  • 40. Strategy #1 Add Partitions to new brokers ● Challenges: existing admin tools does not support atomic adding partitions and assigning to new brokers
  • 41. Strategy #1 Add Partitions to new brokers ● Solutions: created our own tool to do it in one ZooKeeper change and repeat for all or selected topics ● Reduced the time to scale up from a few hours to a few minutes
  • 42. Strategy #2 Move Partitions ● Should work without precondition, but ... ● Huge increase of network I/O affecting incoming traffic ● A much longer process than adding partitions ● Sometimes confusing error messages ● Would work if pace of replication can be controlled
  • 43. Scale down strategy ● There is none ● Look for more support to automatically move all partitions from a set of brokers to a different set
  • 44. Client tuning ● Producer o Batching is important to reduce CPU and network I/O on brokers o Stick to one partition for a while when producing for non-keyed messages o “linger.ms” works well with sticky partitioner ● Consumer o With huge number of consumers, set proper fetch.wait.max.ms to reduce polling traffic on broker
  • 45. Effect of batching partitioner batched records per request broker cpu util [1] random without lingering 1.25 75% sticky without lingering 2.0 50% sticky with 100ms lingering 15 33% [1] 10 MB & 10K msgs / second per broker, 1KB per message
  • 46. Broker tuning ● Use G1 collector ● Use large page cache and memory ● Increase max file descriptor if you have thousands of producers or consumers
  • 47. Kafka in AWS - How do we make it happen ● Inside our Kafka JVM ● Services supporting Kafka ● Challenges/Solutions ● Our roadmap
  • 48. Road map ● Work with Kafka community on rack/zone aware replica assignment ● Failure resilience testing o Chaos Monkey o Chaos Gorilla ● Contribute to open source o Kafka o Schlep -- our messaging library including SQS and Kafka support o Auditor