SlideShare ist ein Scribd-Unternehmen logo
1 von 13
Kafka Streams
Distributed, fault tolerant stream processing
Kafka Streams: Stream-table duality
● Almost every stream
processing needs database
● Stream of key-value
messages can be considered
as changelog of virtual two-
column table
● Also changelog of this table
can produce the same
original stream
Kafka Streams Concepts: Ktable and Kstream
● In KStream each data record represents a self-contained datum in unbounded
dataset
("alice", 1) --> ("alice", 3): sum for key “alice” will return 4
● In KTable each data record represents an update in changelog stream
("alice", 1) --> ("alice", 3): sum for key “alice” will return 3
● KTable provides an ability to look up current values of data records by keys,
which is available through join operations.
Kafka Streams: Stateless transformations
● Both KStream and KTable are created from Kafka topic
● Following standard stateless transformations are available:
- Branch (split)
- Filter
- Map
- Flatmap
- GroupBy
- Peek etc….
● All transformation methods can be chained together to compose a complex
processor topology
Kafka Streams: Time
Kafka Streams supports the following notions of time:
● Event time: The point in time when an event or data record occurred, created
“by the source”
● Processing time: The point in time when the event or data record happens to
be processed by the stream processing application
● Ingestion-time: The point in time when an event or data record is stored in a
topic partition by a Kafka broker.
Kafka Streams: Aggregation and Join
● An aggregation operation takes one input stream or table, and yields a new
table by combining multiple input records into a single output record. Examples
of aggregations are computing counts or sum.
● Aggregation API has standard implementations ready like count and reduce.
● A join operation merges two input streams and/or tables based on the keys of
their data records, and yields a new stream/table
● Records can be joined only by key.
● Logic depends on type of sources, so KStream-to-KStream, KStream-to-KTable
and KTable-to-KTable join are slightly different operations.
Kafka Streams: Windowing
Usecase: Price alert feature
Usecase: Price alert feature
Price alert feature: Classic
● Save user requests for price alerts to database
● Pay attention to flight offers add/update date
● Create complicated database queries to join user
requests and new offers according to date, source
and destination
● Use scheduler for publishing price alerts
Price alert feature: Event driven!
Price alert feature: Kafka Streams solution
Anatoly Tikhonov anatoly.tihonov@mentory.io https://www.linkedin.com/in/anatoly-tikhonov-
8617a483/
THANK YOU!

Weitere ähnliche Inhalte

Was ist angesagt?

It's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, Shopify
It's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, ShopifyIt's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, Shopify
It's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, ShopifyHostedbyConfluent
 
Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...
Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...
Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...HostedbyConfluent
 
Kafka Summit NYC 2017 Hanging Out with Your Past Self in VR
Kafka Summit NYC 2017 Hanging Out with Your Past Self in VRKafka Summit NYC 2017 Hanging Out with Your Past Self in VR
Kafka Summit NYC 2017 Hanging Out with Your Past Self in VRconfluent
 
Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...
Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...
Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...confluent
 
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...HostedbyConfluent
 
Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...
Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...
Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...HostedbyConfluent
 
Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...
Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...
Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...confluent
 
Real-time Data Streaming from Oracle to Apache Kafka
Real-time Data Streaming from Oracle to Apache Kafka Real-time Data Streaming from Oracle to Apache Kafka
Real-time Data Streaming from Oracle to Apache Kafka confluent
 
Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...
Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...
Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...Flink Forward
 
Hadoop summit - Scaling Uber’s Real-Time Infra for Trillion Events per Day
Hadoop summit - Scaling Uber’s Real-Time Infra for  Trillion Events per DayHadoop summit - Scaling Uber’s Real-Time Infra for  Trillion Events per Day
Hadoop summit - Scaling Uber’s Real-Time Infra for Trillion Events per DayAnkur Bansal
 
Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...
Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...
Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...confluent
 
Capture the Streams of Database Changes
Capture the Streams of Database ChangesCapture the Streams of Database Changes
Capture the Streams of Database Changesconfluent
 
Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...
Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...
Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...HostedbyConfluent
 
Kafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life Example
Kafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life ExampleKafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life Example
Kafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life Exampleconfluent
 
Administrative techniques to reduce Kafka costs | Anna Kepler, Viasat
Administrative techniques to reduce Kafka costs | Anna Kepler, ViasatAdministrative techniques to reduce Kafka costs | Anna Kepler, Viasat
Administrative techniques to reduce Kafka costs | Anna Kepler, ViasatHostedbyConfluent
 
Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...
Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...
Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...HostedbyConfluent
 
Easily Build a Smart Pulsar Stream Processor_Simon Crosby
Easily Build a Smart Pulsar Stream Processor_Simon CrosbyEasily Build a Smart Pulsar Stream Processor_Simon Crosby
Easily Build a Smart Pulsar Stream Processor_Simon CrosbyStreamNative
 
Portable Streaming Pipelines with Apache Beam
Portable Streaming Pipelines with Apache BeamPortable Streaming Pipelines with Apache Beam
Portable Streaming Pipelines with Apache Beamconfluent
 
Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform confluent
 

Was ist angesagt? (20)

It's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, Shopify
It's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, ShopifyIt's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, Shopify
It's Time To Stop Using Lambda Architecture | Yaroslav Tkachenko, Shopify
 
Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...
Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...
Utilizing Kafka Connect to Integrate Classic Monoliths into Modern Microservi...
 
Kafka Summit NYC 2017 Hanging Out with Your Past Self in VR
Kafka Summit NYC 2017 Hanging Out with Your Past Self in VRKafka Summit NYC 2017 Hanging Out with Your Past Self in VR
Kafka Summit NYC 2017 Hanging Out with Your Past Self in VR
 
Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...
Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...
Kafka Summit NYC 2017 - Building Advanced Streaming Applications using the La...
 
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streamin...
 
Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...
Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...
Tradeoffs in Distributed Systems Design: Is Kafka The Best? (Ben Stopford and...
 
Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...
Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...
Via Varejo taking data from legacy to a new world at Brazil Black Friday (Mar...
 
Real-time Data Streaming from Oracle to Apache Kafka
Real-time Data Streaming from Oracle to Apache Kafka Real-time Data Streaming from Oracle to Apache Kafka
Real-time Data Streaming from Oracle to Apache Kafka
 
Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...
Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...
Flink Forward San Francisco 2019: Building production Flink jobs with Airstre...
 
Hadoop summit - Scaling Uber’s Real-Time Infra for Trillion Events per Day
Hadoop summit - Scaling Uber’s Real-Time Infra for  Trillion Events per DayHadoop summit - Scaling Uber’s Real-Time Infra for  Trillion Events per Day
Hadoop summit - Scaling Uber’s Real-Time Infra for Trillion Events per Day
 
Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...
Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...
Kafka Summit SF 2017 - Query the Application, Not a Database: “Interactive Qu...
 
KSQL Intro
KSQL IntroKSQL Intro
KSQL Intro
 
Capture the Streams of Database Changes
Capture the Streams of Database ChangesCapture the Streams of Database Changes
Capture the Streams of Database Changes
 
Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...
Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...
Securing the Message Bus with Kafka Streams | Paul Otto and Ryan Salcido, Raf...
 
Kafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life Example
Kafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life ExampleKafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life Example
Kafka Summit NYC 2017 Introduction to Kafka Streams with a Real-life Example
 
Administrative techniques to reduce Kafka costs | Anna Kepler, Viasat
Administrative techniques to reduce Kafka costs | Anna Kepler, ViasatAdministrative techniques to reduce Kafka costs | Anna Kepler, Viasat
Administrative techniques to reduce Kafka costs | Anna Kepler, Viasat
 
Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...
Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...
Developing a custom Kafka connector? Make it shine! | Igor Buzatović, Porsche...
 
Easily Build a Smart Pulsar Stream Processor_Simon Crosby
Easily Build a Smart Pulsar Stream Processor_Simon CrosbyEasily Build a Smart Pulsar Stream Processor_Simon Crosby
Easily Build a Smart Pulsar Stream Processor_Simon Crosby
 
Portable Streaming Pipelines with Apache Beam
Portable Streaming Pipelines with Apache BeamPortable Streaming Pipelines with Apache Beam
Portable Streaming Pipelines with Apache Beam
 
Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform Putting Kafka Together with the Best of Google Cloud Platform
Putting Kafka Together with the Best of Google Cloud Platform
 

Ähnlich wie Apache Kafka Streams Use Case

Kafka streams decoupling with stores
Kafka streams decoupling with storesKafka streams decoupling with stores
Kafka streams decoupling with storesYoni Farin
 
Streaming ETL with Apache Kafka and KSQL
Streaming ETL with Apache Kafka and KSQLStreaming ETL with Apache Kafka and KSQL
Streaming ETL with Apache Kafka and KSQLNick Dearden
 
Integration for real-time Kafka SQL
Integration for real-time Kafka SQLIntegration for real-time Kafka SQL
Integration for real-time Kafka SQLAmit Nijhawan
 
Real time data pipline with kafka streams
Real time data pipline with kafka streamsReal time data pipline with kafka streams
Real time data pipline with kafka streamsYoni Farin
 
Stream processing using Kafka
Stream processing using KafkaStream processing using Kafka
Stream processing using KafkaKnoldus Inc.
 
Apache Kafka, and the Rise of Stream Processing
Apache Kafka, and the Rise of Stream ProcessingApache Kafka, and the Rise of Stream Processing
Apache Kafka, and the Rise of Stream ProcessingGuozhang Wang
 
Kafka meetup - kafka connect
Kafka meetup -  kafka connectKafka meetup -  kafka connect
Kafka meetup - kafka connectYi Zhang
 
Kafka Connect and Streams (Concepts, Architecture, Features)
Kafka Connect and Streams (Concepts, Architecture, Features)Kafka Connect and Streams (Concepts, Architecture, Features)
Kafka Connect and Streams (Concepts, Architecture, Features)Kai Wähner
 
Chicago Kafka Meetup
Chicago Kafka MeetupChicago Kafka Meetup
Chicago Kafka MeetupCliff Gilmore
 
Event Driven Microservices
Event Driven MicroservicesEvent Driven Microservices
Event Driven MicroservicesFabrizio Fortino
 
ksqlDB Workshop
ksqlDB WorkshopksqlDB Workshop
ksqlDB Workshopconfluent
 
London Apache Kafka Meetup (Jan 2017)
London Apache Kafka Meetup (Jan 2017)London Apache Kafka Meetup (Jan 2017)
London Apache Kafka Meetup (Jan 2017)Landoop Ltd
 
ksqlDB: A Stream-Relational Database System
ksqlDB: A Stream-Relational Database SystemksqlDB: A Stream-Relational Database System
ksqlDB: A Stream-Relational Database Systemconfluent
 
Kafka Summit SF 2017 - Real-Time Document Rankings with Kafka Streams
Kafka Summit SF 2017 - Real-Time Document Rankings with Kafka StreamsKafka Summit SF 2017 - Real-Time Document Rankings with Kafka Streams
Kafka Summit SF 2017 - Real-Time Document Rankings with Kafka Streamsconfluent
 
Streaming with Spring Cloud Stream and Apache Kafka - Soby Chacko
Streaming with Spring Cloud Stream and Apache Kafka - Soby ChackoStreaming with Spring Cloud Stream and Apache Kafka - Soby Chacko
Streaming with Spring Cloud Stream and Apache Kafka - Soby ChackoVMware Tanzu
 
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streaming
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to StreamingBravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streaming
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to StreamingYaroslav Tkachenko
 
How to Build an Apache Kafka® Connector
How to Build an Apache Kafka® ConnectorHow to Build an Apache Kafka® Connector
How to Build an Apache Kafka® Connectorconfluent
 
Elk presentation 2#3
Elk presentation 2#3Elk presentation 2#3
Elk presentation 2#3uzzal basak
 
Designing Structured Streaming Pipelines—How to Architect Things Right
Designing Structured Streaming Pipelines—How to Architect Things RightDesigning Structured Streaming Pipelines—How to Architect Things Right
Designing Structured Streaming Pipelines—How to Architect Things RightDatabricks
 
Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...
Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...
Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...Matt Stubbs
 

Ähnlich wie Apache Kafka Streams Use Case (20)

Kafka streams decoupling with stores
Kafka streams decoupling with storesKafka streams decoupling with stores
Kafka streams decoupling with stores
 
Streaming ETL with Apache Kafka and KSQL
Streaming ETL with Apache Kafka and KSQLStreaming ETL with Apache Kafka and KSQL
Streaming ETL with Apache Kafka and KSQL
 
Integration for real-time Kafka SQL
Integration for real-time Kafka SQLIntegration for real-time Kafka SQL
Integration for real-time Kafka SQL
 
Real time data pipline with kafka streams
Real time data pipline with kafka streamsReal time data pipline with kafka streams
Real time data pipline with kafka streams
 
Stream processing using Kafka
Stream processing using KafkaStream processing using Kafka
Stream processing using Kafka
 
Apache Kafka, and the Rise of Stream Processing
Apache Kafka, and the Rise of Stream ProcessingApache Kafka, and the Rise of Stream Processing
Apache Kafka, and the Rise of Stream Processing
 
Kafka meetup - kafka connect
Kafka meetup -  kafka connectKafka meetup -  kafka connect
Kafka meetup - kafka connect
 
Kafka Connect and Streams (Concepts, Architecture, Features)
Kafka Connect and Streams (Concepts, Architecture, Features)Kafka Connect and Streams (Concepts, Architecture, Features)
Kafka Connect and Streams (Concepts, Architecture, Features)
 
Chicago Kafka Meetup
Chicago Kafka MeetupChicago Kafka Meetup
Chicago Kafka Meetup
 
Event Driven Microservices
Event Driven MicroservicesEvent Driven Microservices
Event Driven Microservices
 
ksqlDB Workshop
ksqlDB WorkshopksqlDB Workshop
ksqlDB Workshop
 
London Apache Kafka Meetup (Jan 2017)
London Apache Kafka Meetup (Jan 2017)London Apache Kafka Meetup (Jan 2017)
London Apache Kafka Meetup (Jan 2017)
 
ksqlDB: A Stream-Relational Database System
ksqlDB: A Stream-Relational Database SystemksqlDB: A Stream-Relational Database System
ksqlDB: A Stream-Relational Database System
 
Kafka Summit SF 2017 - Real-Time Document Rankings with Kafka Streams
Kafka Summit SF 2017 - Real-Time Document Rankings with Kafka StreamsKafka Summit SF 2017 - Real-Time Document Rankings with Kafka Streams
Kafka Summit SF 2017 - Real-Time Document Rankings with Kafka Streams
 
Streaming with Spring Cloud Stream and Apache Kafka - Soby Chacko
Streaming with Spring Cloud Stream and Apache Kafka - Soby ChackoStreaming with Spring Cloud Stream and Apache Kafka - Soby Chacko
Streaming with Spring Cloud Stream and Apache Kafka - Soby Chacko
 
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streaming
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to StreamingBravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streaming
Bravo Six, Going Realtime. Transitioning Activision Data Pipeline to Streaming
 
How to Build an Apache Kafka® Connector
How to Build an Apache Kafka® ConnectorHow to Build an Apache Kafka® Connector
How to Build an Apache Kafka® Connector
 
Elk presentation 2#3
Elk presentation 2#3Elk presentation 2#3
Elk presentation 2#3
 
Designing Structured Streaming Pipelines—How to Architect Things Right
Designing Structured Streaming Pipelines—How to Architect Things RightDesigning Structured Streaming Pipelines—How to Architect Things Right
Designing Structured Streaming Pipelines—How to Architect Things Right
 
Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...
Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...
Big Data LDN 2017: Look Ma, No Code! Building Streaming Data Pipelines With A...
 

Kürzlich hochgeladen

%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...masabamasaba
 
WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?WSO2
 
WSO2CON2024 - It's time to go Platformless
WSO2CON2024 - It's time to go PlatformlessWSO2CON2024 - It's time to go Platformless
WSO2CON2024 - It's time to go PlatformlessWSO2
 
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...masabamasaba
 
Architecture decision records - How not to get lost in the past
Architecture decision records - How not to get lost in the pastArchitecture decision records - How not to get lost in the past
Architecture decision records - How not to get lost in the pastPapp Krisztián
 
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...masabamasaba
 
WSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital Transformation
WSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital TransformationWSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital Transformation
WSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital TransformationWSO2
 
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfonteinmasabamasaba
 
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
Direct Style Effect Systems -The Print[A] Example- A Comprehension AidDirect Style Effect Systems -The Print[A] Example- A Comprehension Aid
Direct Style Effect Systems - The Print[A] Example - A Comprehension AidPhilip Schwarz
 
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park %in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park masabamasaba
 
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisamasabamasaba
 
%in Benoni+277-882-255-28 abortion pills for sale in Benoni
%in Benoni+277-882-255-28 abortion pills for sale in Benoni%in Benoni+277-882-255-28 abortion pills for sale in Benoni
%in Benoni+277-882-255-28 abortion pills for sale in Benonimasabamasaba
 
WSO2CON 2024 - How to Run a Security Program
WSO2CON 2024 - How to Run a Security ProgramWSO2CON 2024 - How to Run a Security Program
WSO2CON 2024 - How to Run a Security ProgramWSO2
 
tonesoftg
tonesoftgtonesoftg
tonesoftglanshi9
 
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...Shane Coughlan
 
%in kempton park+277-882-255-28 abortion pills for sale in kempton park
%in kempton park+277-882-255-28 abortion pills for sale in kempton park %in kempton park+277-882-255-28 abortion pills for sale in kempton park
%in kempton park+277-882-255-28 abortion pills for sale in kempton park masabamasaba
 
WSO2CON 2024 Slides - Open Source to SaaS
WSO2CON 2024 Slides - Open Source to SaaSWSO2CON 2024 Slides - Open Source to SaaS
WSO2CON 2024 Slides - Open Source to SaaSWSO2
 
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...WSO2
 
AI & Machine Learning Presentation Template
AI & Machine Learning Presentation TemplateAI & Machine Learning Presentation Template
AI & Machine Learning Presentation TemplatePresentation.STUDIO
 

Kürzlich hochgeladen (20)

%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
%+27788225528 love spells in Knoxville Psychic Readings, Attraction spells,Br...
 
WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?WSO2CON 2024 - Does Open Source Still Matter?
WSO2CON 2024 - Does Open Source Still Matter?
 
WSO2CON2024 - It's time to go Platformless
WSO2CON2024 - It's time to go PlatformlessWSO2CON2024 - It's time to go Platformless
WSO2CON2024 - It's time to go Platformless
 
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
%+27788225528 love spells in Boston Psychic Readings, Attraction spells,Bring...
 
Architecture decision records - How not to get lost in the past
Architecture decision records - How not to get lost in the pastArchitecture decision records - How not to get lost in the past
Architecture decision records - How not to get lost in the past
 
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
%+27788225528 love spells in Toronto Psychic Readings, Attraction spells,Brin...
 
WSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital Transformation
WSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital TransformationWSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital Transformation
WSO2Con2024 - WSO2's IAM Vision: Identity-Led Digital Transformation
 
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
%in Stilfontein+277-882-255-28 abortion pills for sale in Stilfontein
 
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
Direct Style Effect Systems -The Print[A] Example- A Comprehension AidDirect Style Effect Systems -The Print[A] Example- A Comprehension Aid
Direct Style Effect Systems - The Print[A] Example - A Comprehension Aid
 
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park %in ivory park+277-882-255-28 abortion pills for sale in ivory park
%in ivory park+277-882-255-28 abortion pills for sale in ivory park
 
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa%in tembisa+277-882-255-28 abortion pills for sale in tembisa
%in tembisa+277-882-255-28 abortion pills for sale in tembisa
 
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
Abortion Pill Prices Tembisa [(+27832195400*)] 🏥 Women's Abortion Clinic in T...
 
%in Benoni+277-882-255-28 abortion pills for sale in Benoni
%in Benoni+277-882-255-28 abortion pills for sale in Benoni%in Benoni+277-882-255-28 abortion pills for sale in Benoni
%in Benoni+277-882-255-28 abortion pills for sale in Benoni
 
WSO2CON 2024 - How to Run a Security Program
WSO2CON 2024 - How to Run a Security ProgramWSO2CON 2024 - How to Run a Security Program
WSO2CON 2024 - How to Run a Security Program
 
tonesoftg
tonesoftgtonesoftg
tonesoftg
 
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
OpenChain - The Ramifications of ISO/IEC 5230 and ISO/IEC 18974 for Legal Pro...
 
%in kempton park+277-882-255-28 abortion pills for sale in kempton park
%in kempton park+277-882-255-28 abortion pills for sale in kempton park %in kempton park+277-882-255-28 abortion pills for sale in kempton park
%in kempton park+277-882-255-28 abortion pills for sale in kempton park
 
WSO2CON 2024 Slides - Open Source to SaaS
WSO2CON 2024 Slides - Open Source to SaaSWSO2CON 2024 Slides - Open Source to SaaS
WSO2CON 2024 Slides - Open Source to SaaS
 
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
WSO2Con2024 - From Code To Cloud: Fast Track Your Cloud Native Journey with C...
 
AI & Machine Learning Presentation Template
AI & Machine Learning Presentation TemplateAI & Machine Learning Presentation Template
AI & Machine Learning Presentation Template
 

Apache Kafka Streams Use Case

  • 1. Kafka Streams Distributed, fault tolerant stream processing
  • 2. Kafka Streams: Stream-table duality ● Almost every stream processing needs database ● Stream of key-value messages can be considered as changelog of virtual two- column table ● Also changelog of this table can produce the same original stream
  • 3. Kafka Streams Concepts: Ktable and Kstream ● In KStream each data record represents a self-contained datum in unbounded dataset ("alice", 1) --> ("alice", 3): sum for key “alice” will return 4 ● In KTable each data record represents an update in changelog stream ("alice", 1) --> ("alice", 3): sum for key “alice” will return 3 ● KTable provides an ability to look up current values of data records by keys, which is available through join operations.
  • 4. Kafka Streams: Stateless transformations ● Both KStream and KTable are created from Kafka topic ● Following standard stateless transformations are available: - Branch (split) - Filter - Map - Flatmap - GroupBy - Peek etc…. ● All transformation methods can be chained together to compose a complex processor topology
  • 5. Kafka Streams: Time Kafka Streams supports the following notions of time: ● Event time: The point in time when an event or data record occurred, created “by the source” ● Processing time: The point in time when the event or data record happens to be processed by the stream processing application ● Ingestion-time: The point in time when an event or data record is stored in a topic partition by a Kafka broker.
  • 6. Kafka Streams: Aggregation and Join ● An aggregation operation takes one input stream or table, and yields a new table by combining multiple input records into a single output record. Examples of aggregations are computing counts or sum. ● Aggregation API has standard implementations ready like count and reduce. ● A join operation merges two input streams and/or tables based on the keys of their data records, and yields a new stream/table ● Records can be joined only by key. ● Logic depends on type of sources, so KStream-to-KStream, KStream-to-KTable and KTable-to-KTable join are slightly different operations.
  • 10. Price alert feature: Classic ● Save user requests for price alerts to database ● Pay attention to flight offers add/update date ● Create complicated database queries to join user requests and new offers according to date, source and destination ● Use scheduler for publishing price alerts
  • 11. Price alert feature: Event driven!
  • 12. Price alert feature: Kafka Streams solution
  • 13. Anatoly Tikhonov anatoly.tihonov@mentory.io https://www.linkedin.com/in/anatoly-tikhonov- 8617a483/ THANK YOU!