SlideShare a Scribd company logo
1 of 27
Scaling Apache Flink® to
very large State
Stephan Ewen (@StephanEwen)
State in Streaming Programs
2
case class Event(producer: String, evtType: Int, msg: String)
case class Alert(msg: String, count: Long)
env.addSource(…)
.map(bytes => Event.parse(bytes) )
.keyBy("producer")
.mapWithState { (event: Event, state: Option[Int]) => {
// pattern rules
}
.filter(alert => alert.msg.contains("CRITICAL"))
.keyBy("msg")
.timeWindow(Time.seconds(10))
.sum("count")
Source map()
mapWith
State()
filter()
window()
sum()keyBy keyBy
State in Streaming Programs
3
case class Event(producer: String, evtType: Int, msg: String)
case class Alert(msg: String, count: Long)
env.addSource(…)
.map(bytes => Event.parse(bytes) )
.keyBy("producer")
.mapWithState { (event: Event, state: Option[Int]) => {
// pattern rules
}
.filter(alert => alert.msg.contains("CRITICAL"))
.keyBy("msg")
.timeWindow(Time.seconds(10))
.sum("count")
Source map()
mapWith
State()
filter()
window()
sum()keyBy keyBy
Stateless
Stateful
Internal & External State
4
External State Internal State
• State in a separate data store
• Can store "state capacity" independent
• Usually much slower than internal state
• Hard to get "exactly-once" guarantees
• State in the stream processor
• Faster than external state
• Always exactly-once consistent
• Stream processor has to handle scalability
Scaling Stateful Computation
5
State Sharding Larger-than-memory State
• Operators keep state shards (partitions)
• Stream and state partitioning symmetric
 All state operations are local
• Increasing the operator parallelism is like
adding nodes to a key/value store
• State is naturally fastest in main memory
• Some applications have lot of historic data
 Lot of state, moderate throughput
• Flink has a RocksDB-based state backend
to allow for state that is kept partially in
memory, partially on disk
Scaling State Fault Tolerance
6
Scale Checkpointing
• Checkpoint asynchronous
• Checkpoint less (incremental)
Scale Recovery
• Need to recover fewer operators
• Replicate state
Performance during
regular operation
Performance at
recovery time
Asynchronous Checkpoints
7
Asynchronous Checkpoints
8
window()/
sum()
Source /
filter() /
map()
State index
(e.g., RocksDB)
Events are persistent
and ordered (per partition / key)
in the log (e.g., Apache Kafka)
Events flow without replication or synchronous writes
Asynchronous Checkpoints
9
window()/
sum()
Source /
filter() /
map()
Trigger checkpoint Inject checkpoint barrier
Asynchronous Checkpoints
10
window()/
sum()
Source /
filter() /
map()
Take state snapshot RocksDB:
Trigger state
copy-on-write
Asynchronous Checkpoints
11
window()/
sum()
Source /
filter() /
map()
Persist state snapshots Durably persist
snapshots
asynchronously
Processing pipeline continues
Asynchronous Checkpoints
12
RocksDB
LSM Tree
Asynchronous Checkpoints
Asynchronous checkpoints work with RocksDBStateBackend
 In Flink 1.1.x, use
RocksDBStateBackend.enableFullyAsyncSnapshots()
 In Flink 1.2.x, it is the default mode
 FsStateBackend and MemStateBackend not yet fully async.
13
Work in Progress
14
The following slides show ideas, designs,
and work in progress
The final techniques ending up in Flink
releases may be different,
depending on results.
Incremental Checkpointing
15
G
H
C
D
Full Checkpointing
16
Checkpoint 1 Checkpoint 2 Checkpoint 3
I
E
A
B
C
D
A
B
C
D
A
F
C
D
E
@t1 @t2 @t3
A
F
C
D
E
G
H
C
D
I
E
G
H
C
D
Incremental Checkpointing
17
Checkpoint 1 Checkpoint 2 Checkpoint 3
I
E
A
B
C
D
A
B
C
D
A
F
C
D
E
E
F
G
H
I
@t1 @t2 @t3
Incremental Checkpointing
18
Checkpoint 1 Checkpoint 2 Checkpoint 3 Checkpoint 4
d2
C1 d2 d3
C4C1 C1
Chk 1 Chk 2 Chk 3 Chk 4Storage
Incremental Checkpointing
19
Discussions
 To prevent applying many deltas, perform a full checkpoint
once in a while
• Option 1: Every N checkpoints
• Option 2: Once size of deltas is as large as full checkpoint
 Ideally: Having a separate merger of deltas
• See later slides on state replication
Incremental Recovery
20
Full Recovery
21
Flink's recovery provides "global consistency":
After recovery, all states are together
as if a failure free run happened
Even in the presence of non-determinism
• Network
• External lookups and other non-deterministic user code
All operators rewind to latest completed checkpoint
Incremental Recovery
22
Incremental Recovery
23
Incremental Recovery
24
State Replication
25
Standby State Replication
26
Biggest delay during recovery is loading state
Only way to alleviate this delay is if machines for recovery
do not need to load state
 Keep state outside Stream Processor
 Have hot standbys that can immediately proceed
Standbys: Replicate state to N other TaskManagers
Failures of up to (N-1) TaskManagers, no state loading necessary
Replication consistency managed by checkpoints
Replication can happen in addition to checkpointing to DFS
27
Thank you!
Questions?

More Related Content

What's hot

Evening out the uneven: dealing with skew in Flink
Evening out the uneven: dealing with skew in FlinkEvening out the uneven: dealing with skew in Flink
Evening out the uneven: dealing with skew in FlinkFlink Forward
 
Demystifying flink memory allocation and tuning - Roshan Naik, Uber
Demystifying flink memory allocation and tuning - Roshan Naik, UberDemystifying flink memory allocation and tuning - Roshan Naik, Uber
Demystifying flink memory allocation and tuning - Roshan Naik, UberFlink Forward
 
Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...
Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...
Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...Flink Forward
 
Apache Flink in the Cloud-Native Era
Apache Flink in the Cloud-Native EraApache Flink in the Cloud-Native Era
Apache Flink in the Cloud-Native EraFlink Forward
 
Webinar: Deep Dive on Apache Flink State - Seth Wiesman
Webinar: Deep Dive on Apache Flink State - Seth WiesmanWebinar: Deep Dive on Apache Flink State - Seth Wiesman
Webinar: Deep Dive on Apache Flink State - Seth WiesmanVerverica
 
Apache Flink internals
Apache Flink internalsApache Flink internals
Apache Flink internalsKostas Tzoumas
 
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...Zalando Technology
 
Zero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with NettyZero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with NettyDaniel Bimschas
 
Apache Spark Data Source V2 with Wenchen Fan and Gengliang Wang
Apache Spark Data Source V2 with Wenchen Fan and Gengliang WangApache Spark Data Source V2 with Wenchen Fan and Gengliang Wang
Apache Spark Data Source V2 with Wenchen Fan and Gengliang WangDatabricks
 
Click-Through Example for Flink’s KafkaConsumer Checkpointing
Click-Through Example for Flink’s KafkaConsumer CheckpointingClick-Through Example for Flink’s KafkaConsumer Checkpointing
Click-Through Example for Flink’s KafkaConsumer CheckpointingRobert Metzger
 
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...Flink Forward
 
Stephan Ewen - Experiences running Flink at Very Large Scale
Stephan Ewen -  Experiences running Flink at Very Large ScaleStephan Ewen -  Experiences running Flink at Very Large Scale
Stephan Ewen - Experiences running Flink at Very Large ScaleVerverica
 
One sink to rule them all: Introducing the new Async Sink
One sink to rule them all: Introducing the new Async SinkOne sink to rule them all: Introducing the new Async Sink
One sink to rule them all: Introducing the new Async SinkFlink Forward
 
Power of the Log: LSM & Append Only Data Structures
Power of the Log: LSM & Append Only Data StructuresPower of the Log: LSM & Append Only Data Structures
Power of the Log: LSM & Append Only Data Structuresconfluent
 
Real-time Stream Processing with Apache Flink
Real-time Stream Processing with Apache FlinkReal-time Stream Processing with Apache Flink
Real-time Stream Processing with Apache FlinkDataWorks Summit
 
Introduction to Kafka Streams
Introduction to Kafka StreamsIntroduction to Kafka Streams
Introduction to Kafka StreamsGuozhang Wang
 
Understanding and Improving Code Generation
Understanding and Improving Code GenerationUnderstanding and Improving Code Generation
Understanding and Improving Code GenerationDatabricks
 
Autoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive ModeAutoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive ModeFlink Forward
 
Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...
Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...
Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...Flink Forward
 

What's hot (20)

Evening out the uneven: dealing with skew in Flink
Evening out the uneven: dealing with skew in FlinkEvening out the uneven: dealing with skew in Flink
Evening out the uneven: dealing with skew in Flink
 
Demystifying flink memory allocation and tuning - Roshan Naik, Uber
Demystifying flink memory allocation and tuning - Roshan Naik, UberDemystifying flink memory allocation and tuning - Roshan Naik, Uber
Demystifying flink memory allocation and tuning - Roshan Naik, Uber
 
Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...
Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...
Flink Forward Berlin 2017: Stefan Richter - A look at Flink's internal data s...
 
Apache Flink in the Cloud-Native Era
Apache Flink in the Cloud-Native EraApache Flink in the Cloud-Native Era
Apache Flink in the Cloud-Native Era
 
Webinar: Deep Dive on Apache Flink State - Seth Wiesman
Webinar: Deep Dive on Apache Flink State - Seth WiesmanWebinar: Deep Dive on Apache Flink State - Seth Wiesman
Webinar: Deep Dive on Apache Flink State - Seth Wiesman
 
Apache Flink internals
Apache Flink internalsApache Flink internals
Apache Flink internals
 
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
Stream Processing using Apache Flink in Zalando's World of Microservices - Re...
 
Zero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with NettyZero-Copy Event-Driven Servers with Netty
Zero-Copy Event-Driven Servers with Netty
 
Apache Spark Data Source V2 with Wenchen Fan and Gengliang Wang
Apache Spark Data Source V2 with Wenchen Fan and Gengliang WangApache Spark Data Source V2 with Wenchen Fan and Gengliang Wang
Apache Spark Data Source V2 with Wenchen Fan and Gengliang Wang
 
Apache Spark Overview
Apache Spark OverviewApache Spark Overview
Apache Spark Overview
 
Click-Through Example for Flink’s KafkaConsumer Checkpointing
Click-Through Example for Flink’s KafkaConsumer CheckpointingClick-Through Example for Flink’s KafkaConsumer Checkpointing
Click-Through Example for Flink’s KafkaConsumer Checkpointing
 
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...
 
Stephan Ewen - Experiences running Flink at Very Large Scale
Stephan Ewen -  Experiences running Flink at Very Large ScaleStephan Ewen -  Experiences running Flink at Very Large Scale
Stephan Ewen - Experiences running Flink at Very Large Scale
 
One sink to rule them all: Introducing the new Async Sink
One sink to rule them all: Introducing the new Async SinkOne sink to rule them all: Introducing the new Async Sink
One sink to rule them all: Introducing the new Async Sink
 
Power of the Log: LSM & Append Only Data Structures
Power of the Log: LSM & Append Only Data StructuresPower of the Log: LSM & Append Only Data Structures
Power of the Log: LSM & Append Only Data Structures
 
Real-time Stream Processing with Apache Flink
Real-time Stream Processing with Apache FlinkReal-time Stream Processing with Apache Flink
Real-time Stream Processing with Apache Flink
 
Introduction to Kafka Streams
Introduction to Kafka StreamsIntroduction to Kafka Streams
Introduction to Kafka Streams
 
Understanding and Improving Code Generation
Understanding and Improving Code GenerationUnderstanding and Improving Code Generation
Understanding and Improving Code Generation
 
Autoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive ModeAutoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive Mode
 
Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...
Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...
Introducing BinarySortedMultiMap - A new Flink state primitive to boost your ...
 

Similar to Stephan Ewen - Scaling to large State

Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...
Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...
Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...Flink Forward
 
The Stream Processor as the Database - Apache Flink @ Berlin buzzwords
The Stream Processor as the Database - Apache Flink @ Berlin buzzwords   The Stream Processor as the Database - Apache Flink @ Berlin buzzwords
The Stream Processor as the Database - Apache Flink @ Berlin buzzwords Stephan Ewen
 
Flink 0.10 @ Bay Area Meetup (October 2015)
Flink 0.10 @ Bay Area Meetup (October 2015)Flink 0.10 @ Bay Area Meetup (October 2015)
Flink 0.10 @ Bay Area Meetup (October 2015)Stephan Ewen
 
Real-time Stream Processing with Apache Flink @ Hadoop Summit
Real-time Stream Processing with Apache Flink @ Hadoop SummitReal-time Stream Processing with Apache Flink @ Hadoop Summit
Real-time Stream Processing with Apache Flink @ Hadoop SummitGyula Fóra
 
Transition graph using free monads and existentials
Transition graph using free monads and existentialsTransition graph using free monads and existentials
Transition graph using free monads and existentialsAlexander Granin
 
Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das
Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das
Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das Databricks
 
Apache Flink Stream Processing
Apache Flink Stream ProcessingApache Flink Stream Processing
Apache Flink Stream ProcessingSuneel Marthi
 
Coroutines in Kotlin. In-depth review
Coroutines in Kotlin. In-depth reviewCoroutines in Kotlin. In-depth review
Coroutines in Kotlin. In-depth reviewDmytro Zaitsev
 
Coroutines in Kotlin. UA Mobile 2017.
Coroutines in Kotlin. UA Mobile 2017.Coroutines in Kotlin. UA Mobile 2017.
Coroutines in Kotlin. UA Mobile 2017.UA Mobile
 
Going Reactive with Relational Databases
Going Reactive with Relational DatabasesGoing Reactive with Relational Databases
Going Reactive with Relational DatabasesIvaylo Pashov
 
Job Queue in Golang
Job Queue in GolangJob Queue in Golang
Job Queue in GolangBo-Yi Wu
 
Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink huguk
 
Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overview
Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overviewFlink Forward SF 2017: Kenneth Knowles - Back to Sessions overview
Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overviewFlink Forward
 
State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...
State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...
State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...Paris Carbone
 
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan EwenAdvanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewenconfluent
 
Apache Flink: Better, Faster & Uncut - Piotr Nowojski, data Artisans
Apache Flink: Better, Faster & Uncut - Piotr Nowojski, data ArtisansApache Flink: Better, Faster & Uncut - Piotr Nowojski, data Artisans
Apache Flink: Better, Faster & Uncut - Piotr Nowojski, data ArtisansEvention
 
ClojureScript loves React, DomCode May 26 2015
ClojureScript loves React, DomCode May 26 2015ClojureScript loves React, DomCode May 26 2015
ClojureScript loves React, DomCode May 26 2015Michiel Borkent
 
Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...
Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...
Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...Data Con LA
 

Similar to Stephan Ewen - Scaling to large State (20)

Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...
Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...
Flink Forward SF 2017: Stefan Richter - Improvements for large state and reco...
 
The Stream Processor as a Database Apache Flink
The Stream Processor as a Database Apache FlinkThe Stream Processor as a Database Apache Flink
The Stream Processor as a Database Apache Flink
 
The Stream Processor as the Database - Apache Flink @ Berlin buzzwords
The Stream Processor as the Database - Apache Flink @ Berlin buzzwords   The Stream Processor as the Database - Apache Flink @ Berlin buzzwords
The Stream Processor as the Database - Apache Flink @ Berlin buzzwords
 
So you think you can stream.pptx
So you think you can stream.pptxSo you think you can stream.pptx
So you think you can stream.pptx
 
Flink 0.10 @ Bay Area Meetup (October 2015)
Flink 0.10 @ Bay Area Meetup (October 2015)Flink 0.10 @ Bay Area Meetup (October 2015)
Flink 0.10 @ Bay Area Meetup (October 2015)
 
Real-time Stream Processing with Apache Flink @ Hadoop Summit
Real-time Stream Processing with Apache Flink @ Hadoop SummitReal-time Stream Processing with Apache Flink @ Hadoop Summit
Real-time Stream Processing with Apache Flink @ Hadoop Summit
 
Transition graph using free monads and existentials
Transition graph using free monads and existentialsTransition graph using free monads and existentials
Transition graph using free monads and existentials
 
Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das
Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das
Apache Spark 2.0: A Deep Dive Into Structured Streaming - by Tathagata Das
 
Apache Flink Stream Processing
Apache Flink Stream ProcessingApache Flink Stream Processing
Apache Flink Stream Processing
 
Coroutines in Kotlin. In-depth review
Coroutines in Kotlin. In-depth reviewCoroutines in Kotlin. In-depth review
Coroutines in Kotlin. In-depth review
 
Coroutines in Kotlin. UA Mobile 2017.
Coroutines in Kotlin. UA Mobile 2017.Coroutines in Kotlin. UA Mobile 2017.
Coroutines in Kotlin. UA Mobile 2017.
 
Going Reactive with Relational Databases
Going Reactive with Relational DatabasesGoing Reactive with Relational Databases
Going Reactive with Relational Databases
 
Job Queue in Golang
Job Queue in GolangJob Queue in Golang
Job Queue in Golang
 
Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink Streaming Dataflow with Apache Flink
Streaming Dataflow with Apache Flink
 
Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overview
Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overviewFlink Forward SF 2017: Kenneth Knowles - Back to Sessions overview
Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overview
 
State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...
State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...
State Management in Apache Flink : Consistent Stateful Distributed Stream Pro...
 
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan EwenAdvanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
Advanced Streaming Analytics with Apache Flink and Apache Kafka, Stephan Ewen
 
Apache Flink: Better, Faster & Uncut - Piotr Nowojski, data Artisans
Apache Flink: Better, Faster & Uncut - Piotr Nowojski, data ArtisansApache Flink: Better, Faster & Uncut - Piotr Nowojski, data Artisans
Apache Flink: Better, Faster & Uncut - Piotr Nowojski, data Artisans
 
ClojureScript loves React, DomCode May 26 2015
ClojureScript loves React, DomCode May 26 2015ClojureScript loves React, DomCode May 26 2015
ClojureScript loves React, DomCode May 26 2015
 
Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...
Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...
Big Data Day LA 2016/ Hadoop/ Spark/ Kafka track - Iterative Spark Developmen...
 

More from Flink Forward

Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...Flink Forward
 
“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...
“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...
“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...Flink Forward
 
Introducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes OperatorIntroducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes OperatorFlink Forward
 
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.pptxFlink Forward
 
Flink powered stream processing platform at Pinterest
Flink powered stream processing platform at PinterestFlink powered stream processing platform at Pinterest
Flink powered stream processing platform at PinterestFlink Forward
 
Where is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in FlinkWhere is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in FlinkFlink Forward
 
Using the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production DeploymentUsing the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production DeploymentFlink Forward
 
The Current State of Table API in 2022
The Current State of Table API in 2022The Current State of Table API in 2022
The Current State of Table API in 2022Flink Forward
 
Flink SQL on Pulsar made easy
Flink SQL on Pulsar made easyFlink SQL on Pulsar made easy
Flink SQL on Pulsar made easyFlink Forward
 
Dynamic Rule-based Real-time Market Data Alerts
Dynamic Rule-based Real-time Market Data AlertsDynamic Rule-based Real-time Market Data Alerts
Dynamic Rule-based Real-time Market Data AlertsFlink Forward
 
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotExactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotFlink Forward
 
Processing Semantically-Ordered Streams in Financial Services
Processing Semantically-Ordered Streams in Financial ServicesProcessing Semantically-Ordered Streams in Financial Services
Processing Semantically-Ordered Streams in Financial ServicesFlink Forward
 
Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...Flink Forward
 
Batch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & IcebergBatch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & IcebergFlink Forward
 
Welcome to the Flink Community!
Welcome to the Flink Community!Welcome to the Flink Community!
Welcome to the Flink Community!Flink Forward
 
Practical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobsPractical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobsFlink Forward
 
Extending Flink SQL for stream processing use cases
Extending Flink SQL for stream processing use casesExtending Flink SQL for stream processing use cases
Extending Flink SQL for stream processing use casesFlink Forward
 
The top 3 challenges running multi-tenant Flink at scale
The top 3 challenges running multi-tenant Flink at scaleThe top 3 challenges running multi-tenant Flink at scale
The top 3 challenges running multi-tenant Flink at scaleFlink Forward
 
Changelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache FlinkChangelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache FlinkFlink Forward
 
Large Scale Real Time Fraudulent Web Behavior Detection
Large Scale Real Time Fraudulent Web Behavior DetectionLarge Scale Real Time Fraudulent Web Behavior Detection
Large Scale Real Time Fraudulent Web Behavior DetectionFlink Forward
 

More from Flink Forward (20)

Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...Building a fully managed stream processing platform on Flink at scale for Lin...
Building a fully managed stream processing platform on Flink at scale for Lin...
 
“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...
“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...
“Alexa, be quiet!”: End-to-end near-real time model building and evaluation i...
 
Introducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes OperatorIntroducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes Operator
 
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
 
Flink powered stream processing platform at Pinterest
Flink powered stream processing platform at PinterestFlink powered stream processing platform at Pinterest
Flink powered stream processing platform at Pinterest
 
Where is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in FlinkWhere is my bottleneck? Performance troubleshooting in Flink
Where is my bottleneck? Performance troubleshooting in Flink
 
Using the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production DeploymentUsing the New Apache Flink Kubernetes Operator in a Production Deployment
Using the New Apache Flink Kubernetes Operator in a Production Deployment
 
The Current State of Table API in 2022
The Current State of Table API in 2022The Current State of Table API in 2022
The Current State of Table API in 2022
 
Flink SQL on Pulsar made easy
Flink SQL on Pulsar made easyFlink SQL on Pulsar made easy
Flink SQL on Pulsar made easy
 
Dynamic Rule-based Real-time Market Data Alerts
Dynamic Rule-based Real-time Market Data AlertsDynamic Rule-based Real-time Market Data Alerts
Dynamic Rule-based Real-time Market Data Alerts
 
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and PinotExactly-Once Financial Data Processing at Scale with Flink and Pinot
Exactly-Once Financial Data Processing at Scale with Flink and Pinot
 
Processing Semantically-Ordered Streams in Financial Services
Processing Semantically-Ordered Streams in Financial ServicesProcessing Semantically-Ordered Streams in Financial Services
Processing Semantically-Ordered Streams in Financial Services
 
Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...Tame the small files problem and optimize data layout for streaming ingestion...
Tame the small files problem and optimize data layout for streaming ingestion...
 
Batch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & IcebergBatch Processing at Scale with Flink & Iceberg
Batch Processing at Scale with Flink & Iceberg
 
Welcome to the Flink Community!
Welcome to the Flink Community!Welcome to the Flink Community!
Welcome to the Flink Community!
 
Practical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobsPractical learnings from running thousands of Flink jobs
Practical learnings from running thousands of Flink jobs
 
Extending Flink SQL for stream processing use cases
Extending Flink SQL for stream processing use casesExtending Flink SQL for stream processing use cases
Extending Flink SQL for stream processing use cases
 
The top 3 challenges running multi-tenant Flink at scale
The top 3 challenges running multi-tenant Flink at scaleThe top 3 challenges running multi-tenant Flink at scale
The top 3 challenges running multi-tenant Flink at scale
 
Changelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache FlinkChangelog Stream Processing with Apache Flink
Changelog Stream Processing with Apache Flink
 
Large Scale Real Time Fraudulent Web Behavior Detection
Large Scale Real Time Fraudulent Web Behavior DetectionLarge Scale Real Time Fraudulent Web Behavior Detection
Large Scale Real Time Fraudulent Web Behavior Detection
 

Recently uploaded

Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...amitlee9823
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfLars Albertsson
 
Best VIP Call Girls Noida Sector 39 Call Me: 8448380779
Best VIP Call Girls Noida Sector 39 Call Me: 8448380779Best VIP Call Girls Noida Sector 39 Call Me: 8448380779
Best VIP Call Girls Noida Sector 39 Call Me: 8448380779Delhi Call girls
 
FESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfFESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfMarinCaroMartnezBerg
 
Halmar dropshipping via API with DroFx
Halmar  dropshipping  via API with DroFxHalmar  dropshipping  via API with DroFx
Halmar dropshipping via API with DroFxolyaivanovalion
 
Invezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz1
 
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...amitlee9823
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptxAnupama Kate
 
VidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxVidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxolyaivanovalion
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusTimothy Spann
 
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfAccredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfadriantubila
 
Ravak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxRavak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxolyaivanovalion
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxJohnnyPlasten
 
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceDelhi Call girls
 
Introduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxIntroduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxfirstjob4
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionfulawalesam
 
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...amitlee9823
 

Recently uploaded (20)

Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
 
Schema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdfSchema on read is obsolete. Welcome metaprogramming..pdf
Schema on read is obsolete. Welcome metaprogramming..pdf
 
Best VIP Call Girls Noida Sector 39 Call Me: 8448380779
Best VIP Call Girls Noida Sector 39 Call Me: 8448380779Best VIP Call Girls Noida Sector 39 Call Me: 8448380779
Best VIP Call Girls Noida Sector 39 Call Me: 8448380779
 
FESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfFESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdf
 
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get CytotecAbortion pills in Doha Qatar (+966572737505 ! Get Cytotec
Abortion pills in Doha Qatar (+966572737505 ! Get Cytotec
 
Halmar dropshipping via API with DroFx
Halmar  dropshipping  via API with DroFxHalmar  dropshipping  via API with DroFx
Halmar dropshipping via API with DroFx
 
Invezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signalsInvezz.com - Grow your wealth with trading signals
Invezz.com - Grow your wealth with trading signals
 
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
Call Girls Bannerghatta Road Just Call 👗 7737669865 👗 Top Class Call Girl Ser...
 
100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx100-Concepts-of-AI by Anupama Kate .pptx
100-Concepts-of-AI by Anupama Kate .pptx
 
VidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptxVidaXL dropshipping via API with DroFx.pptx
VidaXL dropshipping via API with DroFx.pptx
 
Generative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and MilvusGenerative AI on Enterprise Cloud with NiFi and Milvus
Generative AI on Enterprise Cloud with NiFi and Milvus
 
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdfAccredited-Transport-Cooperatives-Jan-2021-Web.pdf
Accredited-Transport-Cooperatives-Jan-2021-Web.pdf
 
Ravak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxRavak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptx
 
Log Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptxLog Analysis using OSSEC sasoasasasas.pptx
Log Analysis using OSSEC sasoasasasas.pptx
 
Sampling (random) method and Non random.ppt
Sampling (random) method and Non random.pptSampling (random) method and Non random.ppt
Sampling (random) method and Non random.ppt
 
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts ServiceCall Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
Call Girls In Shalimar Bagh ( Delhi) 9953330565 Escorts Service
 
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort ServiceBDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
BDSM⚡Call Girls in Mandawali Delhi >༒8448380779 Escort Service
 
Introduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptxIntroduction-to-Machine-Learning (1).pptx
Introduction-to-Machine-Learning (1).pptx
 
Week-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interactionWeek-01-2.ppt BBB human Computer interaction
Week-01-2.ppt BBB human Computer interaction
 
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
Junnasandra Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore...
 

Stephan Ewen - Scaling to large State

  • 1. Scaling Apache Flink® to very large State Stephan Ewen (@StephanEwen)
  • 2. State in Streaming Programs 2 case class Event(producer: String, evtType: Int, msg: String) case class Alert(msg: String, count: Long) env.addSource(…) .map(bytes => Event.parse(bytes) ) .keyBy("producer") .mapWithState { (event: Event, state: Option[Int]) => { // pattern rules } .filter(alert => alert.msg.contains("CRITICAL")) .keyBy("msg") .timeWindow(Time.seconds(10)) .sum("count") Source map() mapWith State() filter() window() sum()keyBy keyBy
  • 3. State in Streaming Programs 3 case class Event(producer: String, evtType: Int, msg: String) case class Alert(msg: String, count: Long) env.addSource(…) .map(bytes => Event.parse(bytes) ) .keyBy("producer") .mapWithState { (event: Event, state: Option[Int]) => { // pattern rules } .filter(alert => alert.msg.contains("CRITICAL")) .keyBy("msg") .timeWindow(Time.seconds(10)) .sum("count") Source map() mapWith State() filter() window() sum()keyBy keyBy Stateless Stateful
  • 4. Internal & External State 4 External State Internal State • State in a separate data store • Can store "state capacity" independent • Usually much slower than internal state • Hard to get "exactly-once" guarantees • State in the stream processor • Faster than external state • Always exactly-once consistent • Stream processor has to handle scalability
  • 5. Scaling Stateful Computation 5 State Sharding Larger-than-memory State • Operators keep state shards (partitions) • Stream and state partitioning symmetric  All state operations are local • Increasing the operator parallelism is like adding nodes to a key/value store • State is naturally fastest in main memory • Some applications have lot of historic data  Lot of state, moderate throughput • Flink has a RocksDB-based state backend to allow for state that is kept partially in memory, partially on disk
  • 6. Scaling State Fault Tolerance 6 Scale Checkpointing • Checkpoint asynchronous • Checkpoint less (incremental) Scale Recovery • Need to recover fewer operators • Replicate state Performance during regular operation Performance at recovery time
  • 8. Asynchronous Checkpoints 8 window()/ sum() Source / filter() / map() State index (e.g., RocksDB) Events are persistent and ordered (per partition / key) in the log (e.g., Apache Kafka) Events flow without replication or synchronous writes
  • 9. Asynchronous Checkpoints 9 window()/ sum() Source / filter() / map() Trigger checkpoint Inject checkpoint barrier
  • 10. Asynchronous Checkpoints 10 window()/ sum() Source / filter() / map() Take state snapshot RocksDB: Trigger state copy-on-write
  • 11. Asynchronous Checkpoints 11 window()/ sum() Source / filter() / map() Persist state snapshots Durably persist snapshots asynchronously Processing pipeline continues
  • 13. Asynchronous Checkpoints Asynchronous checkpoints work with RocksDBStateBackend  In Flink 1.1.x, use RocksDBStateBackend.enableFullyAsyncSnapshots()  In Flink 1.2.x, it is the default mode  FsStateBackend and MemStateBackend not yet fully async. 13
  • 14. Work in Progress 14 The following slides show ideas, designs, and work in progress The final techniques ending up in Flink releases may be different, depending on results.
  • 16. G H C D Full Checkpointing 16 Checkpoint 1 Checkpoint 2 Checkpoint 3 I E A B C D A B C D A F C D E @t1 @t2 @t3 A F C D E G H C D I E
  • 17. G H C D Incremental Checkpointing 17 Checkpoint 1 Checkpoint 2 Checkpoint 3 I E A B C D A B C D A F C D E E F G H I @t1 @t2 @t3
  • 18. Incremental Checkpointing 18 Checkpoint 1 Checkpoint 2 Checkpoint 3 Checkpoint 4 d2 C1 d2 d3 C4C1 C1 Chk 1 Chk 2 Chk 3 Chk 4Storage
  • 19. Incremental Checkpointing 19 Discussions  To prevent applying many deltas, perform a full checkpoint once in a while • Option 1: Every N checkpoints • Option 2: Once size of deltas is as large as full checkpoint  Ideally: Having a separate merger of deltas • See later slides on state replication
  • 21. Full Recovery 21 Flink's recovery provides "global consistency": After recovery, all states are together as if a failure free run happened Even in the presence of non-determinism • Network • External lookups and other non-deterministic user code All operators rewind to latest completed checkpoint
  • 26. Standby State Replication 26 Biggest delay during recovery is loading state Only way to alleviate this delay is if machines for recovery do not need to load state  Keep state outside Stream Processor  Have hot standbys that can immediately proceed Standbys: Replicate state to N other TaskManagers Failures of up to (N-1) TaskManagers, no state loading necessary Replication consistency managed by checkpoints Replication can happen in addition to checkpointing to DFS