SlideShare a Scribd company logo
Portable stateful big data processing
in Apache Beam
Kenneth Knowles
Apache Beam PMC
Software Engineer @ Google
klk@google.com / @KennKnowles
https://s.apache.org/ffsf-2017-beam-state
Flink Forward San Francisco 2017
Agenda
1. What is Apache Beam?
2. State
3. Timers
4. Example & Little Demo
What is
Apache Beam?
TL;DR
4
(Flink draws it more like this)
20142004 2006 2008 2010 2012 20162005 2007 2009 2013 20152011
MapReduce
(paper)
Apache
Hadoop
Dataflow Model
(paper)
MillWheel
(paper)
Heron
Apache
Spark
Apache
Storm
Apache
Gearpump
(incubating)
Apache
Apex
Apache
Flink
Cloud
Dataflow
FlumeJava
(paper)
Apache Beam
DAGs, DAGs, DAGs
Apache
Samza
The Beam Vision
Sum Per Key
6
input.apply(
Sum.integersPerKey())
Java
input | Sum.PerKey()
Python
⋮
Apache Flink
local, on-prem,
cloud
Apache Spark
local, on-prem,
cloud
Cloud Dataflow:
fully managed
⋮
Apache Apex
local, on-prem,
cloud
Apache
Gearpump
(incubating)
The Beam Vision
KafkaIO
7
input | KakaIO.read()
Python
⋮
class KafkaIO extends
UnboundedSource { … }
Java
Apache Flink
local, on-prem,
cloud
Apache Spark
local, on-prem,
cloud
Cloud Dataflow:
fully managed
⋮
Apache Apex
local, on-prem,
cloud
Apache
Gearpump
(incubating)
The Beam Model
Pipeline
8
PTransform
PCollection
(bounded or unbounded)
The Beam Model
What are you computing? (read, map, reduce)
Where in event time? (event time windowing)
9
When in processing time are results produced? (triggers)
How do refinements relate? (accumulation mode)
What are you computing?
10
Read
Parallel connectors to
external systems
ParDo
Per element
"Map"
Grouping
Group by key,
Combine per key,
"Reduce"
Composite
Encapsulated
subgraph
State
What are you computing?
12
Read
Parallel connectors to
external systems
ParDo
Per element
"Map"
Grouping
Group by key,
Combine per key,
"Reduce"
Composite
Encapsulated
subgraph
State for ParDo
13
ParDo(DoFn)
"Example"
14
Per Key Quantiles
ParDo.of(new DoFn<...>() {
// declare some state
@ProcessElement
public void process(...) {
// update quantiles
// output if needed
}
})
Partitioned
15
Quantiles Quantiles Quantiles
Parallelism!
16
Quantiles
DoFn
Quantiles
DoFn
Quantiles
DoFn
new DoFn<Foo, Quantiles<Foo>>() {
@StateId("quantiles")
private final StateSpec<...>
quantilesState = StateSpecs.combining();
…
}
Windowed
17
Quantiles
DoFn
Quantiles
DoFn
Quantiles
DoFn
Window into Fixed windows of one hour
Expected result: Quantiles for each hour
Windowed
18
Quantiles
DoFn
Quantiles
DoFn
Quantiles
DoFn
Window into windows of 30 min sliding by 10 min
Expected result: Quantiles for 30 minutes sliding by 10 min
<k, w>1
<k, w>2
<k, w>3
...
"x" 3 7 15
"y" "fizz" "7" "fizzbuzz"
...
State is per key and window
Bonus: automatically garbage collected when a window expires
(vs manual clearing of keyed state)
Windowed
20
Quantiles
DoFn
Quantiles
DoFn
Quantiles
DoFn
Window into Fixed windows of one hour
Expected result: Quantiles for each hour
What about Combine?
21
Quantiles
Combiner
Window into Fixed windows of one hour
Expected result: Quantiles for each hour
Quantiles
Combiner
Quantiles
Combiner
Combine vs State (naive conceptualization)
22
Window hourly
Expected result:
Quantiles for each hour
Quantiles
Combiner
Window hourly
Quantiles
DoFn
Expected result:
Quantiles for each hour
Combine vs State (likely execution plan)
Quantiles
Combiner
Quantiles
Combiner
Quantiles
Combiner
Shuffle
Accumulators
Quantiles
DoFn
Shuffle Elements
associative
commutative
single-output
enables optimizations
(engine is in control)
non-associative*
non-commutative*
multi-output
side outputs
(user is in control)
Combine vs State
Quantiles
Combiner
Quantiles
DoFn
output governed by trigger
(data/computation unaware) "output only when there's an
interesting change"
(data/computation aware)
Example: Arbitrary indices
D,0
A
Assign indices
B
C
D
E
C,1
A,2
B,3
E,4
non-associative
non-commutative
non-deterministic
and totally fine!
Kinds of state
● Value - just a mutable cell for a value
● Bag - supports "blind writes"
● Combining - has a CombineFn built in; can support blind writes and lazy
accumulation
● Set - membership checking
● Map - lookups and partial writes
Timers
Timers for ParDo
28
Stateful ParDo
new DoFn<...>() {
@TimerId("timeout")
private final TimerSpec timeoutTimer =
TimerSpecs.timer(TimeDomain.PROCESSING_TIME);
@OnTimer("timout")
public void timeout(...) {
// access state, set new timers, output
}
…
}
Timers in processing time
"call me back in 5
seconds"
output based only
on incoming
element
output return
value of batched
RPC
buffer request
batched RPC
On Timer
On Element
Timers in event time
"call me back when
the watermark hits
the end of the
window"
output
speculative result
immediately
output replacement
value only if
changed
store speculative result
On Timer
On Element
● Per-key arbitrary numbering
● Output only when result changes
● Tighter "side input" management for slowly changing dimension
● Streaming join-matrix / join-biclique
● Fine-grained combine aggregation and output control
● Per-key "workflows" like user sign up flow w/ expiration
● Low-latency deduplication (let the first through, squash the rest)
More example uses for state & timers
Performance considerations (cross-runner)
32
● Shuffle to colocate keys
● Linear processing of elements for key+window
● Window merging
● Storage of state and timers
● GC of state
Demo
33
Summary
State and Timers in Beam...
● … unlock new uses cases
● … they "just work" with event time windowing
● … are portable across runners (implementation ongoing)
Thank you for listening!
This talk:
● Me - @KennKnowles
● These Slides - https://s.apache.org/ffsf-2017-beam-state
Go Deeper
● Design doc - https://s.apache.org/beam-state
● Blog post - https://beam.apache.org/blog/2017/02/13/stateful-processing.html
Join the Beam community:
● User discussions - user@beam.apache.org
● Development discussions - dev@beam.apache.org
● Follow @ApacheBeam on Twitter
You can contribute to Beam + Flink
● New types of state
● Easy launch of Beam job on Flink-on-YARN
● Integration tests at scale
● Fit and finish: polish, polish, polish!
● … and lots more!
https://beam.apache.org

More Related Content

What's hot

Flink Forward SF 2017: Cliff Resnick & Seth Wiesman - From Zero to Streami...
Flink Forward SF 2017:  Cliff Resnick & Seth Wiesman -   From Zero to Streami...Flink Forward SF 2017:  Cliff Resnick & Seth Wiesman -   From Zero to Streami...
Flink Forward SF 2017: Cliff Resnick & Seth Wiesman - From Zero to Streami...
Flink Forward
 
Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch - Dynami...
Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch -  Dynami...Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch -  Dynami...
Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch - Dynami...
Flink Forward
 
Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...
Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...
Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...
Flink Forward
 
Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck - Pravega: Storage Rei...
Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck -  Pravega: Storage Rei...Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck -  Pravega: Storage Rei...
Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck - Pravega: Storage Rei...
Flink Forward
 
Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...
Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...
Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...
Flink Forward
 
Virtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy Farkas
Virtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy FarkasVirtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy Farkas
Virtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy Farkas
Flink Forward
 
Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...
Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...
Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...
Flink Forward
 
What's new in 1.9.0 blink planner - Kurt Young, Alibaba
What's new in 1.9.0 blink planner - Kurt Young, AlibabaWhat's new in 1.9.0 blink planner - Kurt Young, Alibaba
What's new in 1.9.0 blink planner - Kurt Young, Alibaba
Flink Forward
 
Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...
Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...
Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...
Flink Forward
 
Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...
Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...
Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...
Flink Forward
 
Till Rohrmann – Fault Tolerance and Job Recovery in Apache Flink
Till Rohrmann – Fault Tolerance and Job Recovery in Apache FlinkTill Rohrmann – Fault Tolerance and Job Recovery in Apache Flink
Till Rohrmann – Fault Tolerance and Job Recovery in Apache Flink
Flink Forward
 
Virtual Flink Forward 2020: A deep dive into Flink SQL - Jark Wu
Virtual Flink Forward 2020: A deep dive into Flink SQL - Jark WuVirtual Flink Forward 2020: A deep dive into Flink SQL - Jark Wu
Virtual Flink Forward 2020: A deep dive into Flink SQL - Jark Wu
Flink Forward
 
Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...
Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...
Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...
Flink Forward
 
Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...
Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...
Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...
ucelebi
 
Flink Forward SF 2017: Eron Wright - Introducing Flink Tensorflow
Flink Forward SF 2017: Eron Wright - Introducing Flink TensorflowFlink Forward SF 2017: Eron Wright - Introducing Flink Tensorflow
Flink Forward SF 2017: Eron Wright - Introducing Flink Tensorflow
Flink Forward
 
Marton Balassi – Stateful Stream Processing
Marton Balassi – Stateful Stream ProcessingMarton Balassi – Stateful Stream Processing
Marton Balassi – Stateful Stream Processing
Flink Forward
 
Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...
Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...
Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...
Flink Forward
 
Unify Enterprise Data Processing System Platform Level Integration of Flink a...
Unify Enterprise Data Processing System Platform Level Integration of Flink a...Unify Enterprise Data Processing System Platform Level Integration of Flink a...
Unify Enterprise Data Processing System Platform Level Integration of Flink a...
Flink Forward
 
Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015
Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015
Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015
Till Rohrmann
 
FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...
FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...
FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...
Flink Forward
 

What's hot (20)

Flink Forward SF 2017: Cliff Resnick & Seth Wiesman - From Zero to Streami...
Flink Forward SF 2017:  Cliff Resnick & Seth Wiesman -   From Zero to Streami...Flink Forward SF 2017:  Cliff Resnick & Seth Wiesman -   From Zero to Streami...
Flink Forward SF 2017: Cliff Resnick & Seth Wiesman - From Zero to Streami...
 
Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch - Dynami...
Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch -  Dynami...Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch -  Dynami...
Flink Forward SF 2017: David Hardwick, Sean Hester & David Brelloch - Dynami...
 
Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...
Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...
Flink Forward SF 2017: Shaoxuan Wang_Xiaowei Jiang - Blinks Improvements to F...
 
Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck - Pravega: Storage Rei...
Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck -  Pravega: Storage Rei...Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck -  Pravega: Storage Rei...
Flink Forward SF 2017: Srikanth Satya & Tom Kaitchuck - Pravega: Storage Rei...
 
Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...
Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...
Flink forward SF 2017: Elizabeth K. Joseph and Ravi Yadav - Flink meet DC/OS ...
 
Virtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy Farkas
Virtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy FarkasVirtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy Farkas
Virtual Flink Forward 2020: Autoscaling Flink at Netflix - Timothy Farkas
 
Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...
Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...
Flink Forward Berlin 2017: Fabian Hueske - Using Stream and Batch Processing ...
 
What's new in 1.9.0 blink planner - Kurt Young, Alibaba
What's new in 1.9.0 blink planner - Kurt Young, AlibabaWhat's new in 1.9.0 blink planner - Kurt Young, Alibaba
What's new in 1.9.0 blink planner - Kurt Young, Alibaba
 
Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...
Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...
Flink Forward Berlin 2017: Stephan Ewen - The State of Flink and how to adopt...
 
Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...
Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...
Flink Forward Berlin 2017: Dongwon Kim - Predictive Maintenance with Apache F...
 
Till Rohrmann – Fault Tolerance and Job Recovery in Apache Flink
Till Rohrmann – Fault Tolerance and Job Recovery in Apache FlinkTill Rohrmann – Fault Tolerance and Job Recovery in Apache Flink
Till Rohrmann – Fault Tolerance and Job Recovery in Apache Flink
 
Virtual Flink Forward 2020: A deep dive into Flink SQL - Jark Wu
Virtual Flink Forward 2020: A deep dive into Flink SQL - Jark WuVirtual Flink Forward 2020: A deep dive into Flink SQL - Jark Wu
Virtual Flink Forward 2020: A deep dive into Flink SQL - Jark Wu
 
Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...
Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...
Keynote: Building and Operating A Serverless Streaming Runtime for Apache Bea...
 
Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...
Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...
Apache Flink Internals: Stream & Batch Processing in One System – Apache Flin...
 
Flink Forward SF 2017: Eron Wright - Introducing Flink Tensorflow
Flink Forward SF 2017: Eron Wright - Introducing Flink TensorflowFlink Forward SF 2017: Eron Wright - Introducing Flink Tensorflow
Flink Forward SF 2017: Eron Wright - Introducing Flink Tensorflow
 
Marton Balassi – Stateful Stream Processing
Marton Balassi – Stateful Stream ProcessingMarton Balassi – Stateful Stream Processing
Marton Balassi – Stateful Stream Processing
 
Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...
Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...
Flink Forward Berlin 2017: Jörg Schad, Till Rohrmann - Apache Flink meets Apa...
 
Unify Enterprise Data Processing System Platform Level Integration of Flink a...
Unify Enterprise Data Processing System Platform Level Integration of Flink a...Unify Enterprise Data Processing System Platform Level Integration of Flink a...
Unify Enterprise Data Processing System Platform Level Integration of Flink a...
 
Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015
Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015
Computing recommendations at extreme scale with Apache Flink @Buzzwords 2015
 
FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...
FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...
FlinkDTW: Time-series Pattern Search at Scale Using Dynamic Time Warping - Ch...
 

Similar to Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overview

Unified stateful big data processing in Apache Beam (incubating)
Unified stateful big data processing in Apache Beam (incubating)Unified stateful big data processing in Apache Beam (incubating)
Unified stateful big data processing in Apache Beam (incubating)
Aljoscha Krettek
 
Aljoscha Krettek - Portable stateful big data processing in Apache Beam
Aljoscha Krettek - Portable stateful big data processing in Apache BeamAljoscha Krettek - Portable stateful big data processing in Apache Beam
Aljoscha Krettek - Portable stateful big data processing in Apache Beam
Ververica
 
Unbounded bounded-data-strangeloop-2016-monal-daxini
Unbounded bounded-data-strangeloop-2016-monal-daxiniUnbounded bounded-data-strangeloop-2016-monal-daxini
Unbounded bounded-data-strangeloop-2016-monal-daxini
Monal Daxini
 
Onyx data processing the clojure way
Onyx   data processing  the clojure wayOnyx   data processing  the clojure way
Onyx data processing the clojure way
Bahadir Cambel
 
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
Evention
 
Flink. Pure Streaming
Flink. Pure StreamingFlink. Pure Streaming
Flink. Pure Streaming
Indizen Technologies
 
Streaming Data Pipelines With Apache Beam
Streaming Data Pipelines With Apache BeamStreaming Data Pipelines With Apache Beam
Streaming Data Pipelines With Apache Beam
All Things Open
 
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Data Con LA
 
Unified Stream and Batch Processing with Apache Flink
Unified Stream and Batch Processing with Apache FlinkUnified Stream and Batch Processing with Apache Flink
Unified Stream and Batch Processing with Apache Flink
DataWorks Summit/Hadoop Summit
 
Apache Beam (incubating)
Apache Beam (incubating)Apache Beam (incubating)
Apache Beam (incubating)
Apache Apex
 
Apache Flink internals
Apache Flink internalsApache Flink internals
Apache Flink internals
Kostas Tzoumas
 
Malo Denielou - No shard left behind: Dynamic work rebalancing in Apache Beam
Malo Denielou - No shard left behind: Dynamic work rebalancing in Apache BeamMalo Denielou - No shard left behind: Dynamic work rebalancing in Apache Beam
Malo Denielou - No shard left behind: Dynamic work rebalancing in Apache Beam
Flink Forward
 
Kenneth Knowles - Apache Beam - A Unified Model for Batch and Streaming Data...
Kenneth Knowles -  Apache Beam - A Unified Model for Batch and Streaming Data...Kenneth Knowles -  Apache Beam - A Unified Model for Batch and Streaming Data...
Kenneth Knowles - Apache Beam - A Unified Model for Batch and Streaming Data...
Flink Forward
 
Cloud Dataflow - A Unified Model for Batch and Streaming Data Processing
Cloud Dataflow - A Unified Model for Batch and Streaming Data ProcessingCloud Dataflow - A Unified Model for Batch and Streaming Data Processing
Cloud Dataflow - A Unified Model for Batch and Streaming Data Processing
DoiT International
 
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(tm) - A Next-Generation Stream Processor
Apache Flink(tm) - A Next-Generation Stream ProcessorApache Flink(tm) - A Next-Generation Stream Processor
Apache Flink(tm) - A Next-Generation Stream Processor
Aljoscha Krettek
 
When Streaming Needs Batch With Konstantin Knauf | Current 2022
When Streaming Needs Batch With Konstantin Knauf | Current 2022When Streaming Needs Batch With Konstantin Knauf | Current 2022
When Streaming Needs Batch With Konstantin Knauf | Current 2022
HostedbyConfluent
 
Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry
Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry
Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry
confluent
 
Apache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - finalApache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - finalSub Szabolcs Feczak
 
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
Prakash Chockalingam
 

Similar to Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overview (20)

Unified stateful big data processing in Apache Beam (incubating)
Unified stateful big data processing in Apache Beam (incubating)Unified stateful big data processing in Apache Beam (incubating)
Unified stateful big data processing in Apache Beam (incubating)
 
Aljoscha Krettek - Portable stateful big data processing in Apache Beam
Aljoscha Krettek - Portable stateful big data processing in Apache BeamAljoscha Krettek - Portable stateful big data processing in Apache Beam
Aljoscha Krettek - Portable stateful big data processing in Apache Beam
 
Unbounded bounded-data-strangeloop-2016-monal-daxini
Unbounded bounded-data-strangeloop-2016-monal-daxiniUnbounded bounded-data-strangeloop-2016-monal-daxini
Unbounded bounded-data-strangeloop-2016-monal-daxini
 
Onyx data processing the clojure way
Onyx   data processing  the clojure wayOnyx   data processing  the clojure way
Onyx data processing the clojure way
 
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
 
Flink. Pure Streaming
Flink. Pure StreamingFlink. Pure Streaming
Flink. Pure Streaming
 
Streaming Data Pipelines With Apache Beam
Streaming Data Pipelines With Apache BeamStreaming Data Pipelines With Apache Beam
Streaming Data Pipelines With Apache Beam
 
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
Big Data Day LA 2016/ Big Data Track - Portable Stream and Batch Processing w...
 
Unified Stream and Batch Processing with Apache Flink
Unified Stream and Batch Processing with Apache FlinkUnified Stream and Batch Processing with Apache Flink
Unified Stream and Batch Processing with Apache Flink
 
Apache Beam (incubating)
Apache Beam (incubating)Apache Beam (incubating)
Apache Beam (incubating)
 
Apache Flink internals
Apache Flink internalsApache Flink internals
Apache Flink internals
 
Malo Denielou - No shard left behind: Dynamic work rebalancing in Apache Beam
Malo Denielou - No shard left behind: Dynamic work rebalancing in Apache BeamMalo Denielou - No shard left behind: Dynamic work rebalancing in Apache Beam
Malo Denielou - No shard left behind: Dynamic work rebalancing in Apache Beam
 
Kenneth Knowles - Apache Beam - A Unified Model for Batch and Streaming Data...
Kenneth Knowles -  Apache Beam - A Unified Model for Batch and Streaming Data...Kenneth Knowles -  Apache Beam - A Unified Model for Batch and Streaming Data...
Kenneth Knowles - Apache Beam - A Unified Model for Batch and Streaming Data...
 
Cloud Dataflow - A Unified Model for Batch and Streaming Data Processing
Cloud Dataflow - A Unified Model for Batch and Streaming Data ProcessingCloud Dataflow - A Unified Model for Batch and Streaming Data Processing
Cloud Dataflow - A Unified Model for Batch and Streaming Data Processing
 
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(tm) - A Next-Generation Stream Processor
Apache Flink(tm) - A Next-Generation Stream ProcessorApache Flink(tm) - A Next-Generation Stream Processor
Apache Flink(tm) - A Next-Generation Stream Processor
 
When Streaming Needs Batch With Konstantin Knauf | Current 2022
When Streaming Needs Batch With Konstantin Knauf | Current 2022When Streaming Needs Batch With Konstantin Knauf | Current 2022
When Streaming Needs Batch With Konstantin Knauf | Current 2022
 
Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry
Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry
Fundamentals of Stream Processing with Apache Beam, Tyler Akidau, Frances Perry
 
Apache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - finalApache Beam and Google Cloud Dataflow - IDG - final
Apache Beam and Google Cloud Dataflow - IDG - final
 
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
 

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
 
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
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 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
 
Introducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes OperatorIntroducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes Operator
Flink Forward
 
Autoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive ModeAutoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive Mode
Flink Forward
 
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Flink Forward
 
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
Flink 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.pptx
Flink 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 Pinterest
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 Era
Flink 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 Flink
Flink 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 Deployment
Flink 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 2022
Flink Forward
 
Flink SQL on Pulsar made easy
Flink SQL on Pulsar made easyFlink SQL on Pulsar made easy
Flink SQL on Pulsar made easy
Flink 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 Alerts
Flink 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 Pinot
Flink 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 Services
Flink 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 & Iceberg
Flink 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...
 
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
 
“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 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 ...
 
Introducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes OperatorIntroducing the Apache Flink Kubernetes Operator
Introducing the Apache Flink Kubernetes Operator
 
Autoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive ModeAutoscaling Flink with Reactive Mode
Autoscaling Flink with Reactive Mode
 
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
Dynamically Scaling Data Streams across Multiple Kafka Clusters with Zero Fli...
 
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
 
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
 
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
 
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
 

Recently uploaded

一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
ahzuo
 
Malana- Gimlet Market Analysis (Portfolio 2)
Malana- Gimlet Market Analysis (Portfolio 2)Malana- Gimlet Market Analysis (Portfolio 2)
Malana- Gimlet Market Analysis (Portfolio 2)
TravisMalana
 
Adjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTESAdjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTES
Subhajit Sahu
 
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptxData_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
AnirbanRoy608946
 
Influence of Marketing Strategy and Market Competition on Business Plan
Influence of Marketing Strategy and Market Competition on Business PlanInfluence of Marketing Strategy and Market Competition on Business Plan
Influence of Marketing Strategy and Market Competition on Business Plan
jerlynmaetalle
 
My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.
rwarrenll
 
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
ewymefz
 
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
2023240532
 
Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...
Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...
Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...
pchutichetpong
 
Everything you wanted to know about LIHTC
Everything you wanted to know about LIHTCEverything you wanted to know about LIHTC
Everything you wanted to know about LIHTC
Roger Valdez
 
做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样
做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样
做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样
axoqas
 
一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理
一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理
一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理
mbawufebxi
 
Machine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptxMachine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptx
balafet
 
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
axoqas
 
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
dwreak4tg
 
一比一原版(UofS毕业证书)萨省大学毕业证如何办理
一比一原版(UofS毕业证书)萨省大学毕业证如何办理一比一原版(UofS毕业证书)萨省大学毕业证如何办理
一比一原版(UofS毕业证书)萨省大学毕业证如何办理
v3tuleee
 
The affect of service quality and online reviews on customer loyalty in the E...
The affect of service quality and online reviews on customer loyalty in the E...The affect of service quality and online reviews on customer loyalty in the E...
The affect of service quality and online reviews on customer loyalty in the E...
jerlynmaetalle
 
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
NABLAS株式会社
 
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Subhajit Sahu
 
一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单
ewymefz
 

Recently uploaded (20)

一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
一比一原版(UIUC毕业证)伊利诺伊大学|厄巴纳-香槟分校毕业证如何办理
 
Malana- Gimlet Market Analysis (Portfolio 2)
Malana- Gimlet Market Analysis (Portfolio 2)Malana- Gimlet Market Analysis (Portfolio 2)
Malana- Gimlet Market Analysis (Portfolio 2)
 
Adjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTESAdjusting primitives for graph : SHORT REPORT / NOTES
Adjusting primitives for graph : SHORT REPORT / NOTES
 
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptxData_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
Data_and_Analytics_Essentials_Architect_an_Analytics_Platform.pptx
 
Influence of Marketing Strategy and Market Competition on Business Plan
Influence of Marketing Strategy and Market Competition on Business PlanInfluence of Marketing Strategy and Market Competition on Business Plan
Influence of Marketing Strategy and Market Competition on Business Plan
 
My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.My burning issue is homelessness K.C.M.O.
My burning issue is homelessness K.C.M.O.
 
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
一比一原版(UofM毕业证)明尼苏达大学毕业证成绩单
 
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
Quantitative Data AnalysisReliability Analysis (Cronbach Alpha) Common Method...
 
Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...
Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...
Data Centers - Striving Within A Narrow Range - Research Report - MCG - May 2...
 
Everything you wanted to know about LIHTC
Everything you wanted to know about LIHTCEverything you wanted to know about LIHTC
Everything you wanted to know about LIHTC
 
做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样
做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样
做(mqu毕业证书)麦考瑞大学毕业证硕士文凭证书学费发票原版一模一样
 
一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理
一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理
一比一原版(Bradford毕业证书)布拉德福德大学毕业证如何办理
 
Machine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptxMachine learning and optimization techniques for electrical drives.pptx
Machine learning and optimization techniques for electrical drives.pptx
 
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
哪里卖(usq毕业证书)南昆士兰大学毕业证研究生文凭证书托福证书原版一模一样
 
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
一比一原版(BCU毕业证书)伯明翰城市大学毕业证如何办理
 
一比一原版(UofS毕业证书)萨省大学毕业证如何办理
一比一原版(UofS毕业证书)萨省大学毕业证如何办理一比一原版(UofS毕业证书)萨省大学毕业证如何办理
一比一原版(UofS毕业证书)萨省大学毕业证如何办理
 
The affect of service quality and online reviews on customer loyalty in the E...
The affect of service quality and online reviews on customer loyalty in the E...The affect of service quality and online reviews on customer loyalty in the E...
The affect of service quality and online reviews on customer loyalty in the E...
 
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
【社内勉強会資料_Octo: An Open-Source Generalist Robot Policy】
 
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
Algorithmic optimizations for Dynamic Levelwise PageRank (from STICD) : SHORT...
 
一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单一比一原版(NYU毕业证)纽约大学毕业证成绩单
一比一原版(NYU毕业证)纽约大学毕业证成绩单
 

Flink Forward SF 2017: Kenneth Knowles - Back to Sessions overview

  • 1. Portable stateful big data processing in Apache Beam Kenneth Knowles Apache Beam PMC Software Engineer @ Google klk@google.com / @KennKnowles https://s.apache.org/ffsf-2017-beam-state Flink Forward San Francisco 2017
  • 2. Agenda 1. What is Apache Beam? 2. State 3. Timers 4. Example & Little Demo
  • 4. TL;DR 4 (Flink draws it more like this)
  • 5. 20142004 2006 2008 2010 2012 20162005 2007 2009 2013 20152011 MapReduce (paper) Apache Hadoop Dataflow Model (paper) MillWheel (paper) Heron Apache Spark Apache Storm Apache Gearpump (incubating) Apache Apex Apache Flink Cloud Dataflow FlumeJava (paper) Apache Beam DAGs, DAGs, DAGs Apache Samza
  • 6. The Beam Vision Sum Per Key 6 input.apply( Sum.integersPerKey()) Java input | Sum.PerKey() Python ⋮ Apache Flink local, on-prem, cloud Apache Spark local, on-prem, cloud Cloud Dataflow: fully managed ⋮ Apache Apex local, on-prem, cloud Apache Gearpump (incubating)
  • 7. The Beam Vision KafkaIO 7 input | KakaIO.read() Python ⋮ class KafkaIO extends UnboundedSource { … } Java Apache Flink local, on-prem, cloud Apache Spark local, on-prem, cloud Cloud Dataflow: fully managed ⋮ Apache Apex local, on-prem, cloud Apache Gearpump (incubating)
  • 9. The Beam Model What are you computing? (read, map, reduce) Where in event time? (event time windowing) 9 When in processing time are results produced? (triggers) How do refinements relate? (accumulation mode)
  • 10. What are you computing? 10 Read Parallel connectors to external systems ParDo Per element "Map" Grouping Group by key, Combine per key, "Reduce" Composite Encapsulated subgraph
  • 11. State
  • 12. What are you computing? 12 Read Parallel connectors to external systems ParDo Per element "Map" Grouping Group by key, Combine per key, "Reduce" Composite Encapsulated subgraph
  • 14. "Example" 14 Per Key Quantiles ParDo.of(new DoFn<...>() { // declare some state @ProcessElement public void process(...) { // update quantiles // output if needed } })
  • 16. Parallelism! 16 Quantiles DoFn Quantiles DoFn Quantiles DoFn new DoFn<Foo, Quantiles<Foo>>() { @StateId("quantiles") private final StateSpec<...> quantilesState = StateSpecs.combining(); … }
  • 17. Windowed 17 Quantiles DoFn Quantiles DoFn Quantiles DoFn Window into Fixed windows of one hour Expected result: Quantiles for each hour
  • 18. Windowed 18 Quantiles DoFn Quantiles DoFn Quantiles DoFn Window into windows of 30 min sliding by 10 min Expected result: Quantiles for 30 minutes sliding by 10 min
  • 19. <k, w>1 <k, w>2 <k, w>3 ... "x" 3 7 15 "y" "fizz" "7" "fizzbuzz" ... State is per key and window Bonus: automatically garbage collected when a window expires (vs manual clearing of keyed state)
  • 20. Windowed 20 Quantiles DoFn Quantiles DoFn Quantiles DoFn Window into Fixed windows of one hour Expected result: Quantiles for each hour
  • 21. What about Combine? 21 Quantiles Combiner Window into Fixed windows of one hour Expected result: Quantiles for each hour Quantiles Combiner Quantiles Combiner
  • 22. Combine vs State (naive conceptualization) 22 Window hourly Expected result: Quantiles for each hour Quantiles Combiner Window hourly Quantiles DoFn Expected result: Quantiles for each hour
  • 23. Combine vs State (likely execution plan) Quantiles Combiner Quantiles Combiner Quantiles Combiner Shuffle Accumulators Quantiles DoFn Shuffle Elements associative commutative single-output enables optimizations (engine is in control) non-associative* non-commutative* multi-output side outputs (user is in control)
  • 24. Combine vs State Quantiles Combiner Quantiles DoFn output governed by trigger (data/computation unaware) "output only when there's an interesting change" (data/computation aware)
  • 25. Example: Arbitrary indices D,0 A Assign indices B C D E C,1 A,2 B,3 E,4 non-associative non-commutative non-deterministic and totally fine!
  • 26. Kinds of state ● Value - just a mutable cell for a value ● Bag - supports "blind writes" ● Combining - has a CombineFn built in; can support blind writes and lazy accumulation ● Set - membership checking ● Map - lookups and partial writes
  • 28. Timers for ParDo 28 Stateful ParDo new DoFn<...>() { @TimerId("timeout") private final TimerSpec timeoutTimer = TimerSpecs.timer(TimeDomain.PROCESSING_TIME); @OnTimer("timout") public void timeout(...) { // access state, set new timers, output } … }
  • 29. Timers in processing time "call me back in 5 seconds" output based only on incoming element output return value of batched RPC buffer request batched RPC On Timer On Element
  • 30. Timers in event time "call me back when the watermark hits the end of the window" output speculative result immediately output replacement value only if changed store speculative result On Timer On Element
  • 31. ● Per-key arbitrary numbering ● Output only when result changes ● Tighter "side input" management for slowly changing dimension ● Streaming join-matrix / join-biclique ● Fine-grained combine aggregation and output control ● Per-key "workflows" like user sign up flow w/ expiration ● Low-latency deduplication (let the first through, squash the rest) More example uses for state & timers
  • 32. Performance considerations (cross-runner) 32 ● Shuffle to colocate keys ● Linear processing of elements for key+window ● Window merging ● Storage of state and timers ● GC of state
  • 34. Summary State and Timers in Beam... ● … unlock new uses cases ● … they "just work" with event time windowing ● … are portable across runners (implementation ongoing)
  • 35. Thank you for listening! This talk: ● Me - @KennKnowles ● These Slides - https://s.apache.org/ffsf-2017-beam-state Go Deeper ● Design doc - https://s.apache.org/beam-state ● Blog post - https://beam.apache.org/blog/2017/02/13/stateful-processing.html Join the Beam community: ● User discussions - user@beam.apache.org ● Development discussions - dev@beam.apache.org ● Follow @ApacheBeam on Twitter You can contribute to Beam + Flink ● New types of state ● Easy launch of Beam job on Flink-on-YARN ● Integration tests at scale ● Fit and finish: polish, polish, polish! ● … and lots more! https://beam.apache.org