SlideShare a Scribd company logo
1 of 51
Building eventing system for microservices architecture
Yaroslav Tkachenko
@sap1ens
Director of Engineering, Platform at Bench Accounting
Agenda
• Context
• Events & event sourcing
• High-level architecture
• Schema & persistence
Context
Context
Context
3 types of events:
• Application
• Notifications
• TODO items
• [Messages]
• System
• Stats
Context - TODO
Context - Notifications
Context - Messaging
Context - Legacy system
Multiple issues:
• Designed for a couple of use-cases, schema is not extendable
• Wasn’t built for microservices
• Tight coupling
• New requirements: messaging (web & mobile)
Events
Events
Event - simply a fact that something happened
Events
Event:
• Immutable
• Contains:
• timestamp
• metadata
• context
• payload
Events
Event Sourcing ensures that all changes to application state are
stored as a sequence of events. Not just can we query these
events, we can also use the event log to reconstruct past states,
and as a foundation to automatically adjust the state to cope with
retroactive changes.
Martin Fowler
Events
Event Sourcing != CQRS (Command Query Responsibility Segregation)
Events
Event Sourcing can be simple, without new frameworks or NoSQL databases
Events
Entry-level, Synchronous & Transactional Event Sourcing
https://softwaremill.com/entry-level-event-sourcing/
Adam Warski
Events
So…
Events
You won’t see:
• Akka Clustering
• Akka Persistence
• Akka Streams
• CQRS
• NoSQL
You will see:
• Akka
• ActiveMQ/Camel
• Slick 3 with Postgres (JSONB)
High-level architecture
High-level architecture - ActiveMQ
Queue
• Reliable
• Replicated
• Load balanced
Topic
• Pub/Sub
• Broadcast
High-level architecture - ActiveMQ
Component - Queue
High-level architecture - ActiveMQ
Component - Topic
High-level architecture - ActiveMQ
Broadcast - Topic
High-level architecture
High-level architecture - Camel
from("direct:report")
.to("file:target/reports/?fileName=report.txt")
from("twitter://search?...")
.to("websocket:camel-tweet?sendToAll=true")
from("netty-http:http://0.0.0.0:8080")
.to("direct:name")
from("jms:invoices")
.setBody()
.groovy("new Invoice(request.body,currentTimeMillis())")
.to("mongodb:mongo?...operation=insert")
High-level architecture - Setup
trait CamelSupport extends SimpleConfigHolder {
val context = new DefaultCamelContext()
val producer = context.createProducerTemplate()
val activemqHost = config.getString("eventing.activemq.host")
val activemqPort = config.getString("eventing.activemq.port")
context.addComponent("activemq",
ActiveMQComponent.activeMQComponent(s"tcp://$activemqHost:$activemqPort"))
}
High-level architecture - Setup
“activemq:queue:queue.eventing?
acknowledgementModeName=CLIENT_ACKNOWLEDGE&
transacted=true"
High-level architecture - Setup
producer.sendBodyAndHeaders(queueURI, Event.toJSON(event), headers)
High-level architecture - Send
EventingClient.buildEvent()
.buildSystemEvent(Event.BankError, account.benchId.toString, Component.FileThis)
.send(true)
EventingClient.buildEvent()
.startConfiguration(Event.SessionInvalidate, userId.toString, Component.Security)
.addPayloadAssets(excludedSessions)
.endConfiguration()
.sendDirect(Component.MainApp, true)
High-level architecture - Receive
import akka.camel.Consumer
trait EventingConsumer extends Actor with ActorLogging with Consumer {
def endpointUri = "activemq:topic:events"
}
High-level architecture - Receive
class CustomerService extends EventingConsumer {
def receive = {
case e: CamelMessage if e.isEvent && e.name == “some.event.name” => {
e.context.personId.foreach { clientId =>
self ! DeleteAccount(clientId.toLong, sender())
}
}
}
}
High-level architecture - Eventing service
High-level architecture - Event Receiver
override def autoAck = false
import akka.camel.Ack
sender() ! Ack
Schema
Schema - Legacy
case class InboxEvent(
id: ObjectId
name: String,
eventType: EventType = Inbox,
date: Long,
clientId: String,
itemId: String,
read: Boolean,
active: Boolean
)
Schema - Legacy
case class InboxEvent(
id: ObjectId
name: String,
eventType: EventType = Inbox,
date: Long,
clientId: String,
itemId: String,
read: Boolean,
active: Boolean,
attributes: Map[String, Any]
)
Schema
{
"id": "2a12e2a0-b530-49ff-9e8a-6ab3923ff890",
"createdAt": 1440610041000,
"version": "1.0.0",
"name": "feed.receipt.created",
"actions": [
{
"id": "5cf87e73-abd5-4ed6-a1f0-661d174b38d9",
"eventId": "2a12e2a0-b530-49ff-9e8a-6ab3923ff890",
"createdAt": 1440610041000,
"actionName": "viewed",
"personId": "12345"
}
],
"context": {
"personId": "11111",
"eventSource": {
"sourceType": "Person",
"authorId": "12345",
"authorRoles": [
"USER"
]
}
},
"assets": [
{
"assetType": "resource",
"resourceId": "53cb38a9e4b000cda19dfa0e",
"sourceType": "document"
}
]
}
Schema
{
"id": "2a12e2a0-b530-49ff-9e8a-6ab3923ff890",
"createdAt": 1440610041000,
"version": "1.0.0",
"name": “feed.receipt.created”,
...
}
Schema
{
...,
"context": {
"personId": "11111",
"eventSource": {
"sourceType": "Person",
"authorId": "12345",
"authorRoles": [
"USER"
]
}
},
...
}
Schema
{
...,
"assets": [
{
"assetType": "resource",
"resourceId": "53cb38a9e4b000cda19dfa0e",
"sourceType": "document"
}
]
}
Schema
{
"actions": [
{
"id": "5cf87e73-abd5-4ed6-a1f0-661d174b38d9",
"eventId": "2a12e2a0-b530-49ff-9e8a-6ab3923ff890",
"createdAt": 1440610041000,
"actionName": "viewed",
"personId": "12345"
}
],
...
}
Schema
1 Event ← X Actions
Schema
ReceiptCreated
ReceiptViewed
ReceiptArchived
Receipt
Viewed
Archived
↑
Schema
Schema
Why JSON?:
• Simple
• Easy to change
• Easy to write migrations
• Log-friendly
• Can be persisted efficiently / indexed
• MongoDB
• Postgres JSONB
• …
Persistence
Event
Action
Persistence
class Events(tag: Tag) extends Table[EventTuple](tag, "event") {
def id = column[UUID]("id", O.PrimaryKey)
def createdAt = column[Long]("created_at")
def version = column[String]("version")
def name = column[String]("name")
def context = column[JValue]("context")
def assets = column[JValue]("assets")
def * = (id, createdAt, version, name, context, assets)
}
Persistence
def findByPersonId(personId: String, params: FilteringParams = defaults): Future[Seq[Event]] =
run(this.filter(_.context +>> "personId" === personId), params)
def findByResourceId(resourceId: String, params: FilteringParams = defaults): Future[Seq[Event]] =
run(this.filter(_.assets @> filterArrayBy("resourceId", resourceId)), params)
private def filterArrayBy(field: String, value: String): LiteralColumn[JValue] =
Extraction.decompose(List(Map(field -> value)))
Summary
• Event sourcing is (can be) simple
• Don’t use NoSQL until you have to
• Invest in schema
• Think about failures before they happen
We’re hiring!
https://bench.co/careers/
• Software Engineer - Infrastructure
• Software Engineer - Platform
• Software Engineer - Frontend
Questions?
@sap1ens

More Related Content

What's hot

Akka Streams - From Zero to Kafka
Akka Streams - From Zero to KafkaAkka Streams - From Zero to Kafka
Akka Streams - From Zero to KafkaMark Harrison
 
Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...
Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...
Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...Lightbend
 
UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...
UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...
UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...confluent
 
Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...
Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...
Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...confluent
 
Kafka summit SF 2019 - the art of the event-streaming app
Kafka summit SF 2019 - the art of the event-streaming appKafka summit SF 2019 - the art of the event-streaming app
Kafka summit SF 2019 - the art of the event-streaming appNeil Avery
 
Event sourcing - what could possibly go wrong ? Devoxx PL 2021
Event sourcing  - what could possibly go wrong ? Devoxx PL 2021Event sourcing  - what could possibly go wrong ? Devoxx PL 2021
Event sourcing - what could possibly go wrong ? Devoxx PL 2021Andrzej Ludwikowski
 
KSQL and Kafka Streams – When to Use Which, and When to Use Both
KSQL and Kafka Streams – When to Use Which, and When to Use BothKSQL and Kafka Streams – When to Use Which, and When to Use Both
KSQL and Kafka Streams – When to Use Which, and When to Use Bothconfluent
 
ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...
ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...
ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...Paul Brebner
 
Developing Secure Scala Applications With Fortify For Scala
Developing Secure Scala Applications With Fortify For ScalaDeveloping Secure Scala Applications With Fortify For Scala
Developing Secure Scala Applications With Fortify For ScalaLightbend
 
Apache Kafka: New Features That You Might Not Know About
Apache Kafka: New Features That You Might Not Know AboutApache Kafka: New Features That You Might Not Know About
Apache Kafka: New Features That You Might Not Know AboutYaroslav Tkachenko
 
Real-Time Stream Processing with KSQL and Apache Kafka
Real-Time Stream Processing with KSQL and Apache KafkaReal-Time Stream Processing with KSQL and Apache Kafka
Real-Time Stream Processing with KSQL and Apache Kafkaconfluent
 
Actors or Not: Async Event Architectures
Actors or Not: Async Event ArchitecturesActors or Not: Async Event Architectures
Actors or Not: Async Event ArchitecturesYaroslav Tkachenko
 
Streaming Microservices With Akka Streams And Kafka Streams
Streaming Microservices With Akka Streams And Kafka StreamsStreaming Microservices With Akka Streams And Kafka Streams
Streaming Microservices With Akka Streams And Kafka StreamsLightbend
 
Solutions for bi-directional Integration between Oracle RDMBS & Apache Kafka
Solutions for bi-directional Integration between Oracle RDMBS & Apache KafkaSolutions for bi-directional Integration between Oracle RDMBS & Apache Kafka
Solutions for bi-directional Integration between Oracle RDMBS & Apache KafkaGuido Schmutz
 
Lightbend Fast Data Platform
Lightbend Fast Data PlatformLightbend Fast Data Platform
Lightbend Fast Data PlatformLightbend
 
Full Stack Reactive In Practice
Full Stack Reactive In PracticeFull Stack Reactive In Practice
Full Stack Reactive In PracticeLightbend
 
Introduction to Structured Streaming
Introduction to Structured StreamingIntroduction to Structured Streaming
Introduction to Structured StreamingKnoldus Inc.
 
Introduction to akka actors with java 8
Introduction to akka actors with java 8Introduction to akka actors with java 8
Introduction to akka actors with java 8Johan Andrén
 
Bootstrapping Microservices with Kafka, Akka and Spark
Bootstrapping Microservices with Kafka, Akka and SparkBootstrapping Microservices with Kafka, Akka and Spark
Bootstrapping Microservices with Kafka, Akka and SparkAlex Silva
 
Akka at Enterprise Scale: Performance Tuning Distributed Applications
Akka at Enterprise Scale: Performance Tuning Distributed ApplicationsAkka at Enterprise Scale: Performance Tuning Distributed Applications
Akka at Enterprise Scale: Performance Tuning Distributed ApplicationsLightbend
 

What's hot (20)

Akka Streams - From Zero to Kafka
Akka Streams - From Zero to KafkaAkka Streams - From Zero to Kafka
Akka Streams - From Zero to Kafka
 
Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...
Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...
Lessons Learned From PayPal: Implementing Back-Pressure With Akka Streams And...
 
UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...
UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...
UDF/UDAF: the extensibility framework for KSQL (Hojjat Jafapour, Confluent) K...
 
Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...
Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...
Kafka Summit NYC 2017 - Easy, Scalable, Fault-tolerant Stream Processing with...
 
Kafka summit SF 2019 - the art of the event-streaming app
Kafka summit SF 2019 - the art of the event-streaming appKafka summit SF 2019 - the art of the event-streaming app
Kafka summit SF 2019 - the art of the event-streaming app
 
Event sourcing - what could possibly go wrong ? Devoxx PL 2021
Event sourcing  - what could possibly go wrong ? Devoxx PL 2021Event sourcing  - what could possibly go wrong ? Devoxx PL 2021
Event sourcing - what could possibly go wrong ? Devoxx PL 2021
 
KSQL and Kafka Streams – When to Use Which, and When to Use Both
KSQL and Kafka Streams – When to Use Which, and When to Use BothKSQL and Kafka Streams – When to Use Which, and When to Use Both
KSQL and Kafka Streams – When to Use Which, and When to Use Both
 
ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...
ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...
ApacheCon2019 Talk: Improving the Observability of Cassandra, Kafka and Kuber...
 
Developing Secure Scala Applications With Fortify For Scala
Developing Secure Scala Applications With Fortify For ScalaDeveloping Secure Scala Applications With Fortify For Scala
Developing Secure Scala Applications With Fortify For Scala
 
Apache Kafka: New Features That You Might Not Know About
Apache Kafka: New Features That You Might Not Know AboutApache Kafka: New Features That You Might Not Know About
Apache Kafka: New Features That You Might Not Know About
 
Real-Time Stream Processing with KSQL and Apache Kafka
Real-Time Stream Processing with KSQL and Apache KafkaReal-Time Stream Processing with KSQL and Apache Kafka
Real-Time Stream Processing with KSQL and Apache Kafka
 
Actors or Not: Async Event Architectures
Actors or Not: Async Event ArchitecturesActors or Not: Async Event Architectures
Actors or Not: Async Event Architectures
 
Streaming Microservices With Akka Streams And Kafka Streams
Streaming Microservices With Akka Streams And Kafka StreamsStreaming Microservices With Akka Streams And Kafka Streams
Streaming Microservices With Akka Streams And Kafka Streams
 
Solutions for bi-directional Integration between Oracle RDMBS & Apache Kafka
Solutions for bi-directional Integration between Oracle RDMBS & Apache KafkaSolutions for bi-directional Integration between Oracle RDMBS & Apache Kafka
Solutions for bi-directional Integration between Oracle RDMBS & Apache Kafka
 
Lightbend Fast Data Platform
Lightbend Fast Data PlatformLightbend Fast Data Platform
Lightbend Fast Data Platform
 
Full Stack Reactive In Practice
Full Stack Reactive In PracticeFull Stack Reactive In Practice
Full Stack Reactive In Practice
 
Introduction to Structured Streaming
Introduction to Structured StreamingIntroduction to Structured Streaming
Introduction to Structured Streaming
 
Introduction to akka actors with java 8
Introduction to akka actors with java 8Introduction to akka actors with java 8
Introduction to akka actors with java 8
 
Bootstrapping Microservices with Kafka, Akka and Spark
Bootstrapping Microservices with Kafka, Akka and SparkBootstrapping Microservices with Kafka, Akka and Spark
Bootstrapping Microservices with Kafka, Akka and Spark
 
Akka at Enterprise Scale: Performance Tuning Distributed Applications
Akka at Enterprise Scale: Performance Tuning Distributed ApplicationsAkka at Enterprise Scale: Performance Tuning Distributed Applications
Akka at Enterprise Scale: Performance Tuning Distributed Applications
 

Similar to Building Eventing Systems for Microservice Architecture

Streaming Data with scalaz-stream
Streaming Data with scalaz-streamStreaming Data with scalaz-stream
Streaming Data with scalaz-streamGaryCoady
 
Apache Flink @ Tel Aviv / Herzliya Meetup
Apache Flink @ Tel Aviv / Herzliya MeetupApache Flink @ Tel Aviv / Herzliya Meetup
Apache Flink @ Tel Aviv / Herzliya MeetupRobert Metzger
 
GTS Episode 1: Reactive programming in the wild
GTS Episode 1: Reactive programming in the wildGTS Episode 1: Reactive programming in the wild
GTS Episode 1: Reactive programming in the wildOmer Iqbal
 
4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...
4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...
4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...PROIDEA
 
Scaling with Scala: refactoring a back-end service into the mobile age
Scaling with Scala: refactoring a back-end service into the mobile ageScaling with Scala: refactoring a back-end service into the mobile age
Scaling with Scala: refactoring a back-end service into the mobile ageDragos Manolescu
 
Spring Web Services: SOAP vs. REST
Spring Web Services: SOAP vs. RESTSpring Web Services: SOAP vs. REST
Spring Web Services: SOAP vs. RESTSam Brannen
 
Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...
Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...
Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...Anton Kirillov
 
Working with data using Azure Functions.pdf
Working with data using Azure Functions.pdfWorking with data using Azure Functions.pdf
Working with data using Azure Functions.pdfStephanie Locke
 
以Device Shadows與Rules Engine串聯實體世界
以Device Shadows與Rules Engine串聯實體世界以Device Shadows與Rules Engine串聯實體世界
以Device Shadows與Rules Engine串聯實體世界Amazon Web Services
 
Event Sourcing - what could go wrong - Devoxx BE
Event Sourcing - what could go wrong - Devoxx BEEvent Sourcing - what could go wrong - Devoxx BE
Event Sourcing - what could go wrong - Devoxx BEAndrzej Ludwikowski
 
Microsoft SQL Server - StreamInsight Overview Presentation
Microsoft SQL Server - StreamInsight Overview PresentationMicrosoft SQL Server - StreamInsight Overview Presentation
Microsoft SQL Server - StreamInsight Overview PresentationMicrosoft Private Cloud
 
Anatomy of an action
Anatomy of an actionAnatomy of an action
Anatomy of an actionGordon Chung
 
Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd
Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd
Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd Sencha
 
The art of the event streaming application: streams, stream processors and sc...
The art of the event streaming application: streams, stream processors and sc...The art of the event streaming application: streams, stream processors and sc...
The art of the event streaming application: streams, stream processors and sc...confluent
 
2 years with python and serverless
2 years with python and serverless2 years with python and serverless
2 years with python and serverlessHector Canto
 
Server-Sent Events in Action
Server-Sent Events in ActionServer-Sent Events in Action
Server-Sent Events in ActionAndrei Rusu
 
Stream and Batch Processing in the Cloud with Data Microservices
Stream and Batch Processing in the Cloud with Data MicroservicesStream and Batch Processing in the Cloud with Data Microservices
Stream and Batch Processing in the Cloud with Data Microservicesmarius_bogoevici
 
Masterclass Webinar: Application Services and Dynamic Dashboard
Masterclass Webinar: Application Services and Dynamic DashboardMasterclass Webinar: Application Services and Dynamic Dashboard
Masterclass Webinar: Application Services and Dynamic DashboardAmazon Web Services
 

Similar to Building Eventing Systems for Microservice Architecture (20)

Streaming Data with scalaz-stream
Streaming Data with scalaz-streamStreaming Data with scalaz-stream
Streaming Data with scalaz-stream
 
Apache Flink @ Tel Aviv / Herzliya Meetup
Apache Flink @ Tel Aviv / Herzliya MeetupApache Flink @ Tel Aviv / Herzliya Meetup
Apache Flink @ Tel Aviv / Herzliya Meetup
 
GTS Episode 1: Reactive programming in the wild
GTS Episode 1: Reactive programming in the wildGTS Episode 1: Reactive programming in the wild
GTS Episode 1: Reactive programming in the wild
 
4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...
4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...
4Developers 2018: Real-time capabilities in ASP.NET Core web applications (To...
 
Scaling with Scala: refactoring a back-end service into the mobile age
Scaling with Scala: refactoring a back-end service into the mobile ageScaling with Scala: refactoring a back-end service into the mobile age
Scaling with Scala: refactoring a back-end service into the mobile age
 
Spring Web Services: SOAP vs. REST
Spring Web Services: SOAP vs. RESTSpring Web Services: SOAP vs. REST
Spring Web Services: SOAP vs. REST
 
Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...
Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...
Data processing platforms architectures with Spark, Mesos, Akka, Cassandra an...
 
Working with data using Azure Functions.pdf
Working with data using Azure Functions.pdfWorking with data using Azure Functions.pdf
Working with data using Azure Functions.pdf
 
以Device Shadows與Rules Engine串聯實體世界
以Device Shadows與Rules Engine串聯實體世界以Device Shadows與Rules Engine串聯實體世界
以Device Shadows與Rules Engine串聯實體世界
 
Event Sourcing - what could go wrong - Devoxx BE
Event Sourcing - what could go wrong - Devoxx BEEvent Sourcing - what could go wrong - Devoxx BE
Event Sourcing - what could go wrong - Devoxx BE
 
Microsoft SQL Server - StreamInsight Overview Presentation
Microsoft SQL Server - StreamInsight Overview PresentationMicrosoft SQL Server - StreamInsight Overview Presentation
Microsoft SQL Server - StreamInsight Overview Presentation
 
Anatomy of an action
Anatomy of an actionAnatomy of an action
Anatomy of an action
 
AWS IoT Deep Dive
AWS IoT Deep DiveAWS IoT Deep Dive
AWS IoT Deep Dive
 
Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd
Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd
Sencha Roadshow 2017: Build Progressive Web Apps with Ext JS and Cmd
 
The art of the event streaming application: streams, stream processors and sc...
The art of the event streaming application: streams, stream processors and sc...The art of the event streaming application: streams, stream processors and sc...
The art of the event streaming application: streams, stream processors and sc...
 
2 years with python and serverless
2 years with python and serverless2 years with python and serverless
2 years with python and serverless
 
Server-Sent Events in Action
Server-Sent Events in ActionServer-Sent Events in Action
Server-Sent Events in Action
 
Stream and Batch Processing in the Cloud with Data Microservices
Stream and Batch Processing in the Cloud with Data MicroservicesStream and Batch Processing in the Cloud with Data Microservices
Stream and Batch Processing in the Cloud with Data Microservices
 
Masterclass Webinar: Application Services and Dynamic Dashboard
Masterclass Webinar: Application Services and Dynamic DashboardMasterclass Webinar: Application Services and Dynamic Dashboard
Masterclass Webinar: Application Services and Dynamic Dashboard
 
AWS intro
AWS introAWS intro
AWS intro
 

More from Yaroslav Tkachenko

Dynamic Change Data Capture with Flink CDC and Consistent Hashing
Dynamic Change Data Capture with Flink CDC and Consistent HashingDynamic Change Data Capture with Flink CDC and Consistent Hashing
Dynamic Change Data Capture with Flink CDC and Consistent HashingYaroslav Tkachenko
 
Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?Yaroslav Tkachenko
 
Apache Flink Adoption at Shopify
Apache Flink Adoption at ShopifyApache Flink Adoption at Shopify
Apache Flink Adoption at ShopifyYaroslav Tkachenko
 
Storing State Forever: Why It Can Be Good For Your Analytics
Storing State Forever: Why It Can Be Good For Your AnalyticsStoring State Forever: Why It Can Be Good For Your Analytics
Storing State Forever: Why It Can Be Good For Your AnalyticsYaroslav Tkachenko
 
It's Time To Stop Using Lambda Architecture
It's Time To Stop Using Lambda ArchitectureIt's Time To Stop Using Lambda Architecture
It's Time To Stop Using Lambda ArchitectureYaroslav Tkachenko
 
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
 
Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...
Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...
Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...Yaroslav Tkachenko
 
Designing Scalable and Extendable Data Pipeline for Call Of Duty Games
Designing Scalable and Extendable Data Pipeline for Call Of Duty GamesDesigning Scalable and Extendable Data Pipeline for Call Of Duty Games
Designing Scalable and Extendable Data Pipeline for Call Of Duty GamesYaroslav Tkachenko
 
10 tips for making Bash a sane programming language
10 tips for making Bash a sane programming language10 tips for making Bash a sane programming language
10 tips for making Bash a sane programming languageYaroslav Tkachenko
 
Kafka Streams: the easiest way to start with stream processing
Kafka Streams: the easiest way to start with stream processingKafka Streams: the easiest way to start with stream processing
Kafka Streams: the easiest way to start with stream processingYaroslav Tkachenko
 
Querying Data Pipeline with AWS Athena
Querying Data Pipeline with AWS AthenaQuerying Data Pipeline with AWS Athena
Querying Data Pipeline with AWS AthenaYaroslav Tkachenko
 
Быстрая и безболезненная разработка клиентской части веб-приложений
Быстрая и безболезненная разработка клиентской части веб-приложенийБыстрая и безболезненная разработка клиентской части веб-приложений
Быстрая и безболезненная разработка клиентской части веб-приложенийYaroslav Tkachenko
 

More from Yaroslav Tkachenko (12)

Dynamic Change Data Capture with Flink CDC and Consistent Hashing
Dynamic Change Data Capture with Flink CDC and Consistent HashingDynamic Change Data Capture with Flink CDC and Consistent Hashing
Dynamic Change Data Capture with Flink CDC and Consistent Hashing
 
Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?Streaming SQL for Data Engineers: The Next Big Thing?
Streaming SQL for Data Engineers: The Next Big Thing?
 
Apache Flink Adoption at Shopify
Apache Flink Adoption at ShopifyApache Flink Adoption at Shopify
Apache Flink Adoption at Shopify
 
Storing State Forever: Why It Can Be Good For Your Analytics
Storing State Forever: Why It Can Be Good For Your AnalyticsStoring State Forever: Why It Can Be Good For Your Analytics
Storing State Forever: Why It Can Be Good For Your Analytics
 
It's Time To Stop Using Lambda Architecture
It's Time To Stop Using Lambda ArchitectureIt's Time To Stop Using Lambda Architecture
It's Time To Stop Using Lambda Architecture
 
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
 
Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...
Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...
Building Scalable and Extendable Data Pipeline for Call of Duty Games: Lesson...
 
Designing Scalable and Extendable Data Pipeline for Call Of Duty Games
Designing Scalable and Extendable Data Pipeline for Call Of Duty GamesDesigning Scalable and Extendable Data Pipeline for Call Of Duty Games
Designing Scalable and Extendable Data Pipeline for Call Of Duty Games
 
10 tips for making Bash a sane programming language
10 tips for making Bash a sane programming language10 tips for making Bash a sane programming language
10 tips for making Bash a sane programming language
 
Kafka Streams: the easiest way to start with stream processing
Kafka Streams: the easiest way to start with stream processingKafka Streams: the easiest way to start with stream processing
Kafka Streams: the easiest way to start with stream processing
 
Querying Data Pipeline with AWS Athena
Querying Data Pipeline with AWS AthenaQuerying Data Pipeline with AWS Athena
Querying Data Pipeline with AWS Athena
 
Быстрая и безболезненная разработка клиентской части веб-приложений
Быстрая и безболезненная разработка клиентской части веб-приложенийБыстрая и безболезненная разработка клиентской части веб-приложений
Быстрая и безболезненная разработка клиентской части веб-приложений
 

Recently uploaded

(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...gurkirankumar98700
 
Cloud Management Software Platforms: OpenStack
Cloud Management Software Platforms: OpenStackCloud Management Software Platforms: OpenStack
Cloud Management Software Platforms: OpenStackVICTOR MAESTRE RAMIREZ
 
How To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsHow To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsAndolasoft Inc
 
Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...
Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...
Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...soniya singh
 
Right Money Management App For Your Financial Goals
Right Money Management App For Your Financial GoalsRight Money Management App For Your Financial Goals
Right Money Management App For Your Financial GoalsJhone kinadey
 
Optimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTVOptimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTVshikhaohhpro
 
What is Binary Language? Computer Number Systems
What is Binary Language?  Computer Number SystemsWhat is Binary Language?  Computer Number Systems
What is Binary Language? Computer Number SystemsJheuzeDellosa
 
Der Spagat zwischen BIAS und FAIRNESS (2024)
Der Spagat zwischen BIAS und FAIRNESS (2024)Der Spagat zwischen BIAS und FAIRNESS (2024)
Der Spagat zwischen BIAS und FAIRNESS (2024)OPEN KNOWLEDGE GmbH
 
5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdfWave PLM
 
Adobe Marketo Engage Deep Dives: Using Webhooks to Transfer Data
Adobe Marketo Engage Deep Dives: Using Webhooks to Transfer DataAdobe Marketo Engage Deep Dives: Using Webhooks to Transfer Data
Adobe Marketo Engage Deep Dives: Using Webhooks to Transfer DataBradBedford3
 
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...kellynguyen01
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfkalichargn70th171
 
Professional Resume Template for Software Developers
Professional Resume Template for Software DevelopersProfessional Resume Template for Software Developers
Professional Resume Template for Software DevelopersVinodh Ram
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providermohitmore19
 
Test Automation Strategy for Frontend and Backend
Test Automation Strategy for Frontend and BackendTest Automation Strategy for Frontend and Backend
Test Automation Strategy for Frontend and BackendArshad QA
 
Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...
Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...
Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...OnePlan Solutions
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfkalichargn70th171
 
Advancing Engineering with AI through the Next Generation of Strategic Projec...
Advancing Engineering with AI through the Next Generation of Strategic Projec...Advancing Engineering with AI through the Next Generation of Strategic Projec...
Advancing Engineering with AI through the Next Generation of Strategic Projec...OnePlan Solutions
 

Recently uploaded (20)

Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS LiveVip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
Vip Call Girls Noida ➡️ Delhi ➡️ 9999965857 No Advance 24HRS Live
 
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
(Genuine) Escort Service Lucknow | Starting ₹,5K To @25k with A/C 🧑🏽‍❤️‍🧑🏻 89...
 
Cloud Management Software Platforms: OpenStack
Cloud Management Software Platforms: OpenStackCloud Management Software Platforms: OpenStack
Cloud Management Software Platforms: OpenStack
 
How To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.jsHow To Use Server-Side Rendering with Nuxt.js
How To Use Server-Side Rendering with Nuxt.js
 
Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...
Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...
Russian Call Girls in Karol Bagh Aasnvi ➡️ 8264348440 💋📞 Independent Escort S...
 
Right Money Management App For Your Financial Goals
Right Money Management App For Your Financial GoalsRight Money Management App For Your Financial Goals
Right Money Management App For Your Financial Goals
 
Optimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTVOptimizing AI for immediate response in Smart CCTV
Optimizing AI for immediate response in Smart CCTV
 
What is Binary Language? Computer Number Systems
What is Binary Language?  Computer Number SystemsWhat is Binary Language?  Computer Number Systems
What is Binary Language? Computer Number Systems
 
Der Spagat zwischen BIAS und FAIRNESS (2024)
Der Spagat zwischen BIAS und FAIRNESS (2024)Der Spagat zwischen BIAS und FAIRNESS (2024)
Der Spagat zwischen BIAS und FAIRNESS (2024)
 
5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf5 Signs You Need a Fashion PLM Software.pdf
5 Signs You Need a Fashion PLM Software.pdf
 
Adobe Marketo Engage Deep Dives: Using Webhooks to Transfer Data
Adobe Marketo Engage Deep Dives: Using Webhooks to Transfer DataAdobe Marketo Engage Deep Dives: Using Webhooks to Transfer Data
Adobe Marketo Engage Deep Dives: Using Webhooks to Transfer Data
 
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
Short Story: Unveiling the Reasoning Abilities of Large Language Models by Ke...
 
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdfLearn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
Learn the Fundamentals of XCUITest Framework_ A Beginner's Guide.pdf
 
Professional Resume Template for Software Developers
Professional Resume Template for Software DevelopersProfessional Resume Template for Software Developers
Professional Resume Template for Software Developers
 
TECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service providerTECUNIQUE: Success Stories: IT Service provider
TECUNIQUE: Success Stories: IT Service provider
 
Test Automation Strategy for Frontend and Backend
Test Automation Strategy for Frontend and BackendTest Automation Strategy for Frontend and Backend
Test Automation Strategy for Frontend and Backend
 
Exploring iOS App Development: Simplifying the Process
Exploring iOS App Development: Simplifying the ProcessExploring iOS App Development: Simplifying the Process
Exploring iOS App Development: Simplifying the Process
 
Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...
Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...
Tech Tuesday-Harness the Power of Effective Resource Planning with OnePlan’s ...
 
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdfThe Ultimate Test Automation Guide_ Best Practices and Tips.pdf
The Ultimate Test Automation Guide_ Best Practices and Tips.pdf
 
Advancing Engineering with AI through the Next Generation of Strategic Projec...
Advancing Engineering with AI through the Next Generation of Strategic Projec...Advancing Engineering with AI through the Next Generation of Strategic Projec...
Advancing Engineering with AI through the Next Generation of Strategic Projec...
 

Building Eventing Systems for Microservice Architecture