SlideShare ist ein Scribd-Unternehmen logo
1 von 64
Downloaden Sie, um offline zu lesen
@crichardson
Building and deploying microservices
with event sourcing, CQRS and Docker
Chris Richardson
Author of POJOs in Action
Founder of the original CloudFoundry.com
@crichardson
chris@chrisrichardson.net
http://plainoldobjects.com
@crichardson
Presentation goal
Share my experiences with building and deploying an
application using Scala, functional domain models,
microservices, event sourcing, CQRS, and Docker
@crichardson
About Chris
@crichardson
About Chris
Founder of a buzzword compliant (stealthy, social, mobile, big data, machine
learning, ...) startup
Consultant helping organizations improve how they architect and deploy
applications using cloud, micro services, polyglot applications, NoSQL, ...
Creator of http://microservices.io
@crichardson
Agenda
Why build event-driven microservices?
Overview of event sourcing
Designing microservices with event sourcing
Implementing queries in an event sourced application
Building and deploying microservices
@crichardson
Let’s imagine that you are building a
banking app...
@crichardson
Domain model
Account
balance
open(initialBalance)
debit(amount)
credit(amount)
MoneyTransfer
fromAccountId
toAccountId
amount
@crichardson
Tomcat
Traditional application architecture
Browser/Client
WAR/EAR
RDBMS
Customers
Accounts
Transfers
BankingBanking UI
develop
test
deploy
Simple to
Load
balancer
scale
Spring MVC
Spring
Hibernate
...
HTML
REST/JSON
ACID
@crichardson
Problem #1: monolithic architecture
Intimidates developers
Obstacle to frequent deployments
Overloads your IDE and container
Obstacle to scaling development
Modules having conflicting scaling requirements
Requires long-term commitment to a technology stack
@crichardson
Solution #1: use a microservice architecture
Banking UI
Account Management Service
MoneyTransfer Management
Service
Account
Database
MoneyTransfer Database
Standalone
services
@crichardson
Problem #2: relational databases
Scalability
Distribution
Schema updates
O/R impedance mismatch
Handling semi-structured data
@crichardson
Solution #2: use NoSQL databases
Avoids the limitations of RDBMS
For example,
text search Solr/Cloud Search
social (graph) data Neo4J
highly distributed/available database Cassandra
...
@crichardson
Different modules use different
databases
IEEE Software Sept/October 2010 - Debasish Ghosh / Twitter @debasishg
@crichardson
But now we have problems with data
consistency!
@crichardson
Problem #3: Microservices = distributed
data management
Each microservice has it’s own database
Business transactions must update data owned by multiple services,
e.g. Update MoneyTransfer and from/to Accounts
Some data is replicated and must be kept in sync
Tricky to implement reliably without 2PC
@crichardson
Problem #4: NoSQL =
ACID-free, denormalized databases
Limited transactions, i.e. no ACID transactions
Tricky to implement business transactions that update multiple rows,
e.g. Update MoneyTransfer and from/to Accounts
e.g. http://bit.ly/mongo2pc
Limited querying capabilities
Requires denormalized/materialized views that must be synchronized
Multiple datastores (e.g. DynamoDB + Cloud Search ) that need to be kept in sync
@crichardson
Solution to #3/#4: Event-based
architecture to the rescue
Microservices publish events when state changes
Microservices subscribe to events
Maintains eventual consistency across multiple aggregates (in multiple
datastores)
Synchronize replicated data
@crichardson
MoneyTransferService
MoneyTransfer
fromAccountId = 101
toAccountId = 202
amount = 55
state = INITIAL
Eventually consistent money transfer
Message Bus
AccountService
transferMoney()
Publishes:
Subscribes to:
Subscribes to:
publishes:
MoneyTransferCreatedEvent
AccountDebitedEvent
DebitRecordedEvent
AccountCreditedEvent
MoneyTransferCreatedEvent
DebitRecordedEvent
AccountDebitedEvent
AccountCreditedEvent
Account
id = 101
balance = 250
Account
id = 202
balance = 125
MoneyTransfer
fromAccountId = 101
toAccountId = 202
amount = 55
state = DEBITED
Account
id = 101
balance = 195
Account
id = 202
balance = 180
MoneyTransfer
fromAccountId = 101
toAccountId = 202
amount = 55
state = COMPLETED
@crichardson
To maintain consistency a service must
atomically publish an event
whenever
a domain object changes
How to reliably generate events
whenever state changes?
Database triggers, Hibernate event
listener, ...
Reliable BUT
Not with NoSQL
Disconnected from the business
level event
Limited applicability
Ad hoc event publishing code mixed
into business logic
Publishes business level events
BUT
Tangled code, poor separation of
concerns
Unreliable, e.g. too easy to forget to
publish an event
How to atomically update the datastore
and publish event(s)
Use 2PC
Guaranteed atomicity BUT
Need a distributed transaction manager
Database and message broker must support
2PC
Impacts reliability
Not fashionable
2PC is best avoided
Use datastore as a message queue
1. Update database: new entity state & event
2. Consume event & mark event as consumed
Eventually consistent mechanism
See BASE: An Acid Alternative, http://bit.ly/
ebaybase
• BUT Tangled business logic and event
publishing code
• Difficult to implement when using a NoSQL
database :-(
@crichardson
Agenda
Why build event-driven microservices?
Overview of event sourcing
Designing microservices with event sourcing
Implementing queries in an event sourced application
Building and deploying microservices
@crichardson
Event sourcing
For each aggregate:
Identify (state-changing) domain events
Define Event classes
For example,
Account: AccountOpenedEvent, AccountDebitedEvent, AccountCreditedEvent
ShoppingCart: ItemAddedEvent, ItemRemovedEvent, OrderPlacedEvent
@crichardson
Persists events
NOT current state
Account
balance
open(initial)
debit(amount)
credit(amount)
AccountOpened
Event table
AccountCredited
AccountDebited
101 450
Account table
X
101
101
101
901
902
903
500
250
300
@crichardson
Replay events to recreate state
Account
balance
AccountOpenedEvent(balance)
AccountDebitedEvent(amount)
AccountCreditedEvent(amount)
Events
@crichardson
Before: update state + publish events
Two actions that must
be atomic
Single action that can
be done atomically
Now: persist (and publish) events
@crichardson
Aggregate traits
Map Command to Events
Apply event returning updated
Aggregate
@crichardson
Account - command processing
Prevent overdraft
@crichardson
Account - applying events
Immutable
@crichardson
Request handling in an event-sourced application
HTTP
Handler
Event
Store
pastEvents = findEvents(entityId)
Account
new()
applyEvents(pastEvents)
newEvents = processCmd(SomeCmd)
saveEvents(newEvents)
Microservice A
@crichardson
Event Store publishes events - consumed by other
services
Event
Store
Event
Subscriber
subscribe(EventTypes)
publish(event)
publish(event)
Aggregate
NoSQL
materialized
view
update()
update()
Microservice B
@crichardson
Persisting events
Ideally use a cross platform format
Use weak serialization:
enables event evolution, eg. add memo field to transfer
missing field provide default value
unknown field ignore
JSON is a good choice
@crichardson
Optimizing using snapshots
Most aggregates have relatively few events
BUT consider a 10-year old Account many transactions
Therefore, use snapshots:
Periodically save snapshot of aggregate state
Typically serialize a memento of the aggregate
Load latest snapshot + subsequent events
@crichardson
Event Store API
trait EventStore {
def save[T <: Aggregate[T]](entity: T, events: Seq[Event],
assignedId : Option[EntityId] = None): Future[EntityWithIdAndVersion[T]]
def update[T <: Aggregate[T]](entityIdAndVersion : EntityIdAndVersion,
entity: T, events: Seq[Event]): Future[EntityWithIdAndVersion[T]]
def find[T <: Aggregate[T] : ClassTag](entityId: EntityId) :
Future[EntityWithIdAndVersion[T]]
def findOptional[T <: Aggregate[T] : ClassTag](entityId: EntityId)
Future[Option[EntityWithIdAndVersion[T]]]
def subscribe(subscriptionId: SubscriptionId):
Future[AcknowledgableEventStream]
}
@crichardson
Business benefits of event sourcing
Built-in, reliable audit log
Enables temporal queries
Publishes events needed by big data/predictive analytics etc.
Preserved history More easily implement future requirements
@crichardson
Technical benefits of event sourcing
Solves data consistency issues in a Microservice/NoSQL-based architecture:
Atomically save and publish events
Event subscribers update other aggregates ensuring eventual consistency
Event subscribers update materialized views in SQL and NoSQL databases
(more on that later)
Eliminates O/R mapping problem
@crichardson
Drawbacks of event sourcing
Weird and unfamiliar
Events = a historical record of your bad design decisions
Handling duplicate events can be tricky
Application must handle eventually consistent data
Event store only directly supports PK-based lookup (more on that later)
@crichardson
Example of an eventual consistency
problem
Scenario:
1. Create the user
2. Create shopping cart
3. Update the user with the shopping cart’s id
The user temporarily does not have a shopping cart id!
Client might need to retry their request at a later point
Server should return status code 418??
@crichardson
Handling duplicate events
Idempotent operations
e.g. add item to shopping cart
Duplicate detection:
e.g. track most recently seen event and discard earlier ones
@crichardson
Agenda
Why build event-driven microservices?
Overview of event sourcing
Designing microservices with event sourcing
Implementing queries in an event sourced application
Building and deploying microservices
@crichardson
The anatomy of a microservice
Event Store
HTTP Request
HTTP Adapter
Aggregate
Event Adapter
Cmd
Cmd
Events
Events
Xyz Adapter
Xyz Request
microservice
@crichardson
Asynchronous Spring MVC controller
@crichardson
MoneyTransferService
DSL concisely specifies:
1.Creates MoneyTransfer aggregate
2.Processes command
3.Applies events
4.Persists events
@crichardson
MoneyTransfer Aggregate
@crichardson
Handling events published by
Accounts
1.Load MoneyTransfer aggregate
2.Processes command
3.Applies events
4.Persists events
@crichardson
Agenda
Why build event-driven microservices?
Overview of event sourcing
Designing microservices with event sourcing
Implementing queries in an event sourced application
Building and deploying microservices
@crichardson
Let’s imagine that you want to display
an account and it’s recent transactions...
@crichardson
Displaying balance + recent credits and
debits
We need to do a “join: between the Account and the corresponding MoneyTransfers
(Assuming Debit/Credit events don’t include other account, ...)
BUT
Event Store = primary key lookup of individual aggregates, ...
Use Command Query Responsibility Separation
@crichardson
Command Query Responsibility
Separation (CQRS)
Command-side
Commands
Aggregate
Event Store
Events
Query-side
Queries
(Denormalized)
View
Events
@crichardson
Query-side microservices
Event Store
Updater - microservice
View Updater
Service
Events
Reader - microservice
HTTP GET Request
View Query Service
View
Store
e.g.
MongoDB
Neo4J
CloudSearch
update query
@crichardson
Persisting account balance and recent
transactions in MongoDB
{
id: "298993498",
balance: 100000,
transfers : [
{"transferId" : "4552840948484",
"fromAccountId" : 298993498,
"toAccountId" : 3483948934,
"amount" : 5000}, ...
],
changes: [
{"changeId" : "93843948934",
"transferId" : "4552840948484",
"transactionType" : "AccountDebited",
"amount" : 5000}, ...
]
}
Denormalized = efficient lookup
Transfers that update the
account
The sequence of debits and
credits
Current balance
Other kinds of views
AWS Cloud Search
Text search as-a-Service
View updater batches aggregates
to index
View query service does text search
AWS DynamoDB
NoSQL as-a-Service
On-demand scalable - specify
desired read/write capacity
Document and key-value data
models
Useful for denormalized, UI oriented
views
Benefits and drawbacks of CQRS
Benefits
Necessary in an event-sourced
architecture
Separation of concerns = simpler
command and query models
Supports multiple denormalized views
Improved scalability and performance
Drawbacks
Complexity
Potential code duplication
Replication lag/eventually consistent
views
Dealing with eventually consistent views
Scenario:
Client creates/updates aggregate
Client requests view of aggregate
Problem:
The view might not yet have been
updated
Solution:
Create/Update response contains
aggregate version
Query request contains desired version
Out of date view wait or return “out
of date view” error code
Alternatively:
“Fake it” in the UI until the view is
updated
@crichardson
Agenda
Why build event-driven microservices?
Overview of event sourcing
Designing microservices with event sourcing
Implementing queries in an event sourced application
Building and deploying microservices
@crichardson
My application architecture
API gateway Event
Store
Service 1
Service 2
Service ...
Event Archiver
Indexer
AWS Cloud
Search
S3
NodeJS Scala/Spring Boot
@crichardson
Jenkins-based deployment pipeline
Build & Test
microservice
Build & Test
Docker
image
Deploy Docker
image
to registry
One pipeline per microservice
@crichardson
Building Docker images
cp ../build/libs/service.${1}.jar build/service.jar
docker build -t service-${VERSION} .
docker/build.sh
@crichardson
Smoke testing docker images
Smoke test
Docker daemon
Service
container
GET /health
POST /containers/create
creates
POST /containers/{id}/start
Docker daemon must listen on TCP port
@crichardson
Publishing Docker images
docker tag service-${VERSION}:latest 
${REGISTRY_HOST_AND_PORT}/service-${VERSION}
docker push ${REGISTRY_HOST_AND_PORT}/service-${VERSION}
docker/publish.sh
@crichardson
CI environment runs on Docker
EC2 Instance
Jenkins
Container
Artifactory
container
EBS volume
/jenkins-home
/gradle-home
/artifactory-home
@crichardson
Updating production environment
Large EC2 instance running Docker
Deployment tool:
1. Compares running containers with what’s been built by Jenkins
2. Pulls latest images from Docker registry
3. Stops old versions
4. Launches new versions
One day: use Docker clustering solution and a service discovery mechanism,
Mesos and Marathon + Zookeeper, Kubernetes or ???
@crichardson
Summary
Event sourcing solves key data consistency issues with:
Microservices
Partitioned SQL/NoSQL databases
Use CQRS to implement materialized views for queries
Docker is a great way to package microservices
@crichardson
Questions? Let’s talk at the Open Space
@crichardson chris@chrisrichardson.net
http://plainoldobjects.com http://microservices.io

Weitere ähnliche Inhalte

Was ist angesagt?

Was ist angesagt? (20)

202201 AWS Black Belt Online Seminar Apache Spark Performnace Tuning for AWS ...
202201 AWS Black Belt Online Seminar Apache Spark Performnace Tuning for AWS ...202201 AWS Black Belt Online Seminar Apache Spark Performnace Tuning for AWS ...
202201 AWS Black Belt Online Seminar Apache Spark Performnace Tuning for AWS ...
 
Schema Registry 101 with Bill Bejeck | Kafka Summit London 2022
Schema Registry 101 with Bill Bejeck | Kafka Summit London 2022Schema Registry 101 with Bill Bejeck | Kafka Summit London 2022
Schema Registry 101 with Bill Bejeck | Kafka Summit London 2022
 
마이크로서비스 기반 클라우드 아키텍처 구성 모범 사례 - 윤석찬 (AWS 테크에반젤리스트)
마이크로서비스 기반 클라우드 아키텍처 구성 모범 사례 - 윤석찬 (AWS 테크에반젤리스트) 마이크로서비스 기반 클라우드 아키텍처 구성 모범 사례 - 윤석찬 (AWS 테크에반젤리스트)
마이크로서비스 기반 클라우드 아키텍처 구성 모범 사례 - 윤석찬 (AWS 테크에반젤리스트)
 
[215]네이버콘텐츠통계서비스소개 김기영
[215]네이버콘텐츠통계서비스소개 김기영[215]네이버콘텐츠통계서비스소개 김기영
[215]네이버콘텐츠통계서비스소개 김기영
 
Architecture Patterns for Multi-Region Active-Active Applications (ARC209-R2)...
Architecture Patterns for Multi-Region Active-Active Applications (ARC209-R2)...Architecture Patterns for Multi-Region Active-Active Applications (ARC209-R2)...
Architecture Patterns for Multi-Region Active-Active Applications (ARC209-R2)...
 
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
 
CloudWatch 성능 모니터링과 신속한 대응을 위한 노하우 - 박선용 솔루션즈 아키텍트:: AWS Cloud Track 3 Gaming
CloudWatch 성능 모니터링과 신속한 대응을 위한 노하우 - 박선용 솔루션즈 아키텍트:: AWS Cloud Track 3 GamingCloudWatch 성능 모니터링과 신속한 대응을 위한 노하우 - 박선용 솔루션즈 아키텍트:: AWS Cloud Track 3 Gaming
CloudWatch 성능 모니터링과 신속한 대응을 위한 노하우 - 박선용 솔루션즈 아키텍트:: AWS Cloud Track 3 Gaming
 
Deep Dive on AWS Lambda
Deep Dive on AWS LambdaDeep Dive on AWS Lambda
Deep Dive on AWS Lambda
 
The basics of fluentd
The basics of fluentdThe basics of fluentd
The basics of fluentd
 
Security Patterns for Microservice Architectures
Security Patterns for Microservice ArchitecturesSecurity Patterns for Microservice Architectures
Security Patterns for Microservice Architectures
 
Bridge to Cloud: Using Apache Kafka to Migrate to GCP
Bridge to Cloud: Using Apache Kafka to Migrate to GCPBridge to Cloud: Using Apache Kafka to Migrate to GCP
Bridge to Cloud: Using Apache Kafka to Migrate to GCP
 
Getting Started with Amazon ElastiCache
Getting Started with Amazon ElastiCacheGetting Started with Amazon ElastiCache
Getting Started with Amazon ElastiCache
 
A Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and HudiA Thorough Comparison of Delta Lake, Iceberg and Hudi
A Thorough Comparison of Delta Lake, Iceberg and Hudi
 
MicroCPH - Managing data consistency in a microservice architecture using Sagas
MicroCPH - Managing data consistency in a microservice architecture using SagasMicroCPH - Managing data consistency in a microservice architecture using Sagas
MicroCPH - Managing data consistency in a microservice architecture using Sagas
 
When NOT to use Apache Kafka?
When NOT to use Apache Kafka?When NOT to use Apache Kafka?
When NOT to use Apache Kafka?
 
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
 
BDA311 Introduction to AWS Glue
BDA311 Introduction to AWS GlueBDA311 Introduction to AWS Glue
BDA311 Introduction to AWS Glue
 
Cloud Assessment and Readiness Tool (CART)
Cloud Assessment and Readiness Tool (CART)Cloud Assessment and Readiness Tool (CART)
Cloud Assessment and Readiness Tool (CART)
 
Deep Dive on Amazon RDS (Relational Database Service)
Deep Dive on Amazon RDS (Relational Database Service)Deep Dive on Amazon RDS (Relational Database Service)
Deep Dive on Amazon RDS (Relational Database Service)
 
Azure Cosmos DB + Gremlin API in Action
Azure Cosmos DB + Gremlin API in ActionAzure Cosmos DB + Gremlin API in Action
Azure Cosmos DB + Gremlin API in Action
 

Andere mochten auch

DevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのこと
DevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのことDevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのこと
DevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのこと
Terui Masashi
 
Certificate Certified Professional
Certificate Certified ProfessionalCertificate Certified Professional
Certificate Certified Professional
Greg Young
 

Andere mochten auch (20)

Going Serverless with CQRS on AWS
Going Serverless with CQRS on AWSGoing Serverless with CQRS on AWS
Going Serverless with CQRS on AWS
 
Developing event-driven microservices with event sourcing and CQRS (svcc, sv...
Developing event-driven microservices with event sourcing and CQRS  (svcc, sv...Developing event-driven microservices with event sourcing and CQRS  (svcc, sv...
Developing event-driven microservices with event sourcing and CQRS (svcc, sv...
 
Building and deploying microservices with event sourcing, CQRS and Docker (Ha...
Building and deploying microservices with event sourcing, CQRS and Docker (Ha...Building and deploying microservices with event sourcing, CQRS and Docker (Ha...
Building and deploying microservices with event sourcing, CQRS and Docker (Ha...
 
Building microservices with Scala, functional domain models and Spring Boot
Building microservices with Scala, functional domain models and Spring BootBuilding microservices with Scala, functional domain models and Spring Boot
Building microservices with Scala, functional domain models and Spring Boot
 
Building and deploying microservices with event sourcing, CQRS and Docker (Be...
Building and deploying microservices with event sourcing, CQRS and Docker (Be...Building and deploying microservices with event sourcing, CQRS and Docker (Be...
Building and deploying microservices with event sourcing, CQRS and Docker (Be...
 
Microservice Architecture with CQRS and Event Sourcing
Microservice Architecture with CQRS and Event SourcingMicroservice Architecture with CQRS and Event Sourcing
Microservice Architecture with CQRS and Event Sourcing
 
DDD Framework for Java: JdonFramework
DDD Framework for Java: JdonFrameworkDDD Framework for Java: JdonFramework
DDD Framework for Java: JdonFramework
 
Developing functional domain models with event sourcing (sbtb, sbtb2015)
Developing functional domain models with event sourcing (sbtb, sbtb2015)Developing functional domain models with event sourcing (sbtb, sbtb2015)
Developing functional domain models with event sourcing (sbtb, sbtb2015)
 
Developing microservices with aggregates (SpringOne platform, #s1p)
Developing microservices with aggregates (SpringOne platform, #s1p)Developing microservices with aggregates (SpringOne platform, #s1p)
Developing microservices with aggregates (SpringOne platform, #s1p)
 
Handling Eventual Consistency in JVM Microservices with Event Sourcing (javao...
Handling Eventual Consistency in JVM Microservices with Event Sourcing (javao...Handling Eventual Consistency in JVM Microservices with Event Sourcing (javao...
Handling Eventual Consistency in JVM Microservices with Event Sourcing (javao...
 
Futures and Rx Observables: powerful abstractions for consuming web services ...
Futures and Rx Observables: powerful abstractions for consuming web services ...Futures and Rx Observables: powerful abstractions for consuming web services ...
Futures and Rx Observables: powerful abstractions for consuming web services ...
 
Microservices + Events + Docker = A Perfect Trio (dockercon)
Microservices + Events + Docker = A Perfect Trio (dockercon)Microservices + Events + Docker = A Perfect Trio (dockercon)
Microservices + Events + Docker = A Perfect Trio (dockercon)
 
Deploying Spring Boot applications with Docker (east bay cloud meetup dec 2014)
Deploying Spring Boot applications with Docker (east bay cloud meetup dec 2014)Deploying Spring Boot applications with Docker (east bay cloud meetup dec 2014)
Deploying Spring Boot applications with Docker (east bay cloud meetup dec 2014)
 
Containers, Docker, and Microservices: the Terrific Trio
Containers, Docker, and Microservices: the Terrific TrioContainers, Docker, and Microservices: the Terrific Trio
Containers, Docker, and Microservices: the Terrific Trio
 
Microservices Workshop All Topics Deck 2016
Microservices Workshop All Topics Deck 2016Microservices Workshop All Topics Deck 2016
Microservices Workshop All Topics Deck 2016
 
MicroServices at Netflix - challenges of scale
MicroServices at Netflix - challenges of scaleMicroServices at Netflix - challenges of scale
MicroServices at Netflix - challenges of scale
 
H2O x mrubyで人はどれだけ幸せになれるのか
H2O x mrubyで人はどれだけ幸せになれるのかH2O x mrubyで人はどれだけ幸せになれるのか
H2O x mrubyで人はどれだけ幸せになれるのか
 
AWSでアプリ開発するなら 知っておくべこと
AWSでアプリ開発するなら 知っておくべことAWSでアプリ開発するなら 知っておくべこと
AWSでアプリ開発するなら 知っておくべこと
 
DevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのこと
DevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのことDevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのこと
DevOpsとか言う前にAWSエンジニアに知ってほしいアプリケーションのこと
 
Certificate Certified Professional
Certificate Certified ProfessionalCertificate Certified Professional
Certificate Certified Professional
 

Ähnlich wie Building and deploying microservices with event sourcing, CQRS and Docker (QCONSF 2014)

Building Microservices with Scala, functional domain models and Spring Boot -...
Building Microservices with Scala, functional domain models and Spring Boot -...Building Microservices with Scala, functional domain models and Spring Boot -...
Building Microservices with Scala, functional domain models and Spring Boot -...
JAXLondon2014
 

Ähnlich wie Building and deploying microservices with event sourcing, CQRS and Docker (QCONSF 2014) (20)

Building and deploying microservices with event sourcing, CQRS and Docker (Me...
Building and deploying microservices with event sourcing, CQRS and Docker (Me...Building and deploying microservices with event sourcing, CQRS and Docker (Me...
Building and deploying microservices with event sourcing, CQRS and Docker (Me...
 
Developing Event-driven Microservices with Event Sourcing & CQRS (gotoams)
Developing Event-driven Microservices with Event Sourcing & CQRS (gotoams)Developing Event-driven Microservices with Event Sourcing & CQRS (gotoams)
Developing Event-driven Microservices with Event Sourcing & CQRS (gotoams)
 
Building Microservices with Scala, functional domain models and Spring Boot -...
Building Microservices with Scala, functional domain models and Spring Boot -...Building Microservices with Scala, functional domain models and Spring Boot -...
Building Microservices with Scala, functional domain models and Spring Boot -...
 
#JaxLondon: Building microservices with Scala, functional domain models and S...
#JaxLondon: Building microservices with Scala, functional domain models and S...#JaxLondon: Building microservices with Scala, functional domain models and S...
#JaxLondon: Building microservices with Scala, functional domain models and S...
 
Building microservices with Scala, functional domain models and Spring Boot (...
Building microservices with Scala, functional domain models and Spring Boot (...Building microservices with Scala, functional domain models and Spring Boot (...
Building microservices with Scala, functional domain models and Spring Boot (...
 
Developing event-driven microservices with event sourcing and CQRS (phillyete)
Developing event-driven microservices with event sourcing and CQRS (phillyete)Developing event-driven microservices with event sourcing and CQRS (phillyete)
Developing event-driven microservices with event sourcing and CQRS (phillyete)
 
Developing event-driven microservices with event sourcing and CQRS (Shanghai)
Developing event-driven microservices with event sourcing and CQRS (Shanghai)Developing event-driven microservices with event sourcing and CQRS (Shanghai)
Developing event-driven microservices with event sourcing and CQRS (Shanghai)
 
Developing event-driven microservices with event sourcing and CQRS (london Ja...
Developing event-driven microservices with event sourcing and CQRS (london Ja...Developing event-driven microservices with event sourcing and CQRS (london Ja...
Developing event-driven microservices with event sourcing and CQRS (london Ja...
 
SVCC Developing Asynchronous, Message-Driven Microservices
SVCC Developing Asynchronous, Message-Driven Microservices  SVCC Developing Asynchronous, Message-Driven Microservices
SVCC Developing Asynchronous, Message-Driven Microservices
 
Microservices in Java and Scala (sfscala)
Microservices in Java and Scala (sfscala)Microservices in Java and Scala (sfscala)
Microservices in Java and Scala (sfscala)
 
Building and Deploying Microservices with Event Sourcing, CQRS and Docker
Building and Deploying Microservices with Event Sourcing, CQRS and DockerBuilding and Deploying Microservices with Event Sourcing, CQRS and Docker
Building and Deploying Microservices with Event Sourcing, CQRS and Docker
 
Events on the outside, on the inside and at the core (jfokus jfokus2016)
Events on the outside, on the inside and at the core (jfokus jfokus2016)Events on the outside, on the inside and at the core (jfokus jfokus2016)
Events on the outside, on the inside and at the core (jfokus jfokus2016)
 
#hacksummit 2016 - event-driven microservices – Events on the outside, on the...
#hacksummit 2016 - event-driven microservices – Events on the outside, on the...#hacksummit 2016 - event-driven microservices – Events on the outside, on the...
#hacksummit 2016 - event-driven microservices – Events on the outside, on the...
 
Microservices + Events + Docker = A Perfect Trio by Docker Captain Chris Rich...
Microservices + Events + Docker = A Perfect Trio by Docker Captain Chris Rich...Microservices + Events + Docker = A Perfect Trio by Docker Captain Chris Rich...
Microservices + Events + Docker = A Perfect Trio by Docker Captain Chris Rich...
 
Solving distributed data management problems in a microservice architecture (...
Solving distributed data management problems in a microservice architecture (...Solving distributed data management problems in a microservice architecture (...
Solving distributed data management problems in a microservice architecture (...
 
Developing functional domain models with event sourcing (oakjug, sfscala)
Developing functional domain models with event sourcing (oakjug, sfscala)Developing functional domain models with event sourcing (oakjug, sfscala)
Developing functional domain models with event sourcing (oakjug, sfscala)
 
OReilly SACON2018 - Events on the outside, on the inside, and at the core
OReilly SACON2018 - Events on the outside, on the inside, and at the coreOReilly SACON2018 - Events on the outside, on the inside, and at the core
OReilly SACON2018 - Events on the outside, on the inside, and at the core
 
Events on the outside, on the inside and at the core (jaxlondon)
Events on the outside, on the inside and at the core (jaxlondon)Events on the outside, on the inside and at the core (jaxlondon)
Events on the outside, on the inside and at the core (jaxlondon)
 
Events on the outside, on the inside and at the core - Chris Richardson
Events on the outside, on the inside and at the core - Chris RichardsonEvents on the outside, on the inside and at the core - Chris Richardson
Events on the outside, on the inside and at the core - Chris Richardson
 
Events to the rescue: solving distributed data problems in a microservice arc...
Events to the rescue: solving distributed data problems in a microservice arc...Events to the rescue: solving distributed data problems in a microservice arc...
Events to the rescue: solving distributed data problems in a microservice arc...
 

Mehr von Chris Richardson

Mehr von Chris Richardson (20)

The microservice architecture: what, why, when and how?
The microservice architecture: what, why, when and how?The microservice architecture: what, why, when and how?
The microservice architecture: what, why, when and how?
 
More the merrier: a microservices anti-pattern
More the merrier: a microservices anti-patternMore the merrier: a microservices anti-pattern
More the merrier: a microservices anti-pattern
 
YOW London - Considering Migrating a Monolith to Microservices? A Dark Energy...
YOW London - Considering Migrating a Monolith to Microservices? A Dark Energy...YOW London - Considering Migrating a Monolith to Microservices? A Dark Energy...
YOW London - Considering Migrating a Monolith to Microservices? A Dark Energy...
 
Dark Energy, Dark Matter and the Microservices Patterns?!
Dark Energy, Dark Matter and the Microservices Patterns?!Dark Energy, Dark Matter and the Microservices Patterns?!
Dark Energy, Dark Matter and the Microservices Patterns?!
 
Dark energy, dark matter and microservice architecture collaboration patterns
Dark energy, dark matter and microservice architecture collaboration patternsDark energy, dark matter and microservice architecture collaboration patterns
Dark energy, dark matter and microservice architecture collaboration patterns
 
Scenarios_and_Architecture_SkillsMatter_April_2022.pdf
Scenarios_and_Architecture_SkillsMatter_April_2022.pdfScenarios_and_Architecture_SkillsMatter_April_2022.pdf
Scenarios_and_Architecture_SkillsMatter_April_2022.pdf
 
Using patterns and pattern languages to make better architectural decisions
Using patterns and pattern languages to make better architectural decisions Using patterns and pattern languages to make better architectural decisions
Using patterns and pattern languages to make better architectural decisions
 
iSAQB gathering 2021 keynote - Architectural patterns for rapid, reliable, fr...
iSAQB gathering 2021 keynote - Architectural patterns for rapid, reliable, fr...iSAQB gathering 2021 keynote - Architectural patterns for rapid, reliable, fr...
iSAQB gathering 2021 keynote - Architectural patterns for rapid, reliable, fr...
 
A pattern language for microservices - June 2021
A pattern language for microservices - June 2021 A pattern language for microservices - June 2021
A pattern language for microservices - June 2021
 
QConPlus 2021: Minimizing Design Time Coupling in a Microservice Architecture
QConPlus 2021: Minimizing Design Time Coupling in a Microservice ArchitectureQConPlus 2021: Minimizing Design Time Coupling in a Microservice Architecture
QConPlus 2021: Minimizing Design Time Coupling in a Microservice Architecture
 
Mucon 2021 - Dark energy, dark matter: imperfect metaphors for designing micr...
Mucon 2021 - Dark energy, dark matter: imperfect metaphors for designing micr...Mucon 2021 - Dark energy, dark matter: imperfect metaphors for designing micr...
Mucon 2021 - Dark energy, dark matter: imperfect metaphors for designing micr...
 
Designing loosely coupled services
Designing loosely coupled servicesDesigning loosely coupled services
Designing loosely coupled services
 
Microservices - an architecture that enables DevOps (T Systems DevOps day)
Microservices - an architecture that enables DevOps (T Systems DevOps day)Microservices - an architecture that enables DevOps (T Systems DevOps day)
Microservices - an architecture that enables DevOps (T Systems DevOps day)
 
DDD SoCal: Decompose your monolith: Ten principles for refactoring a monolith...
DDD SoCal: Decompose your monolith: Ten principles for refactoring a monolith...DDD SoCal: Decompose your monolith: Ten principles for refactoring a monolith...
DDD SoCal: Decompose your monolith: Ten principles for refactoring a monolith...
 
Decompose your monolith: Six principles for refactoring a monolith to microse...
Decompose your monolith: Six principles for refactoring a monolith to microse...Decompose your monolith: Six principles for refactoring a monolith to microse...
Decompose your monolith: Six principles for refactoring a monolith to microse...
 
TDC2020 - The microservice architecture: enabling rapid, reliable, frequent a...
TDC2020 - The microservice architecture: enabling rapid, reliable, frequent a...TDC2020 - The microservice architecture: enabling rapid, reliable, frequent a...
TDC2020 - The microservice architecture: enabling rapid, reliable, frequent a...
 
Overview of the Eventuate Tram Customers and Orders application
Overview of the Eventuate Tram Customers and Orders applicationOverview of the Eventuate Tram Customers and Orders application
Overview of the Eventuate Tram Customers and Orders application
 
An overview of the Eventuate Platform
An overview of the Eventuate PlatformAn overview of the Eventuate Platform
An overview of the Eventuate Platform
 
#DevNexus202 Decompose your monolith
#DevNexus202 Decompose your monolith#DevNexus202 Decompose your monolith
#DevNexus202 Decompose your monolith
 
JFokus: Cubes, Hexagons, Triangles, and More: Understanding Microservices
JFokus: Cubes, Hexagons, Triangles, and More: Understanding MicroservicesJFokus: Cubes, Hexagons, Triangles, and More: Understanding Microservices
JFokus: Cubes, Hexagons, Triangles, and More: Understanding Microservices
 

Kürzlich hochgeladen

CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
Health
 

Kürzlich hochgeladen (20)

Introducing Microsoft’s new Enterprise Work Management (EWM) Solution
Introducing Microsoft’s new Enterprise Work Management (EWM) SolutionIntroducing Microsoft’s new Enterprise Work Management (EWM) Solution
Introducing Microsoft’s new Enterprise Work Management (EWM) Solution
 
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time ApplicationsUnveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
Unveiling the Tech Salsa of LAMs with Janus in Real-Time Applications
 
Exploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdfExploring the Best Video Editing App.pdf
Exploring the Best Video Editing App.pdf
 
A Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docxA Secure and Reliable Document Management System is Essential.docx
A Secure and Reliable Document Management System is Essential.docx
 
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 ...
 
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
 
10 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 202410 Trends Likely to Shape Enterprise Technology in 2024
10 Trends Likely to Shape Enterprise Technology in 2024
 
8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students8257 interfacing 2 in microprocessor for btech students
8257 interfacing 2 in microprocessor for btech students
 
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
Shapes for Sharing between Graph Data Spaces - and Epistemic Querying of RDF-...
 
Unlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language ModelsUnlocking the Future of AI Agents with Large Language Models
Unlocking the Future of AI Agents with Large Language Models
 
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
call girls in Vaishali (Ghaziabad) 🔝 >༒8448380779 🔝 genuine Escort Service 🔝✔️✔️
 
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
The Guide to Integrating Generative AI into Unified Continuous Testing Platfo...
 
Microsoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdfMicrosoft AI Transformation Partner Playbook.pdf
Microsoft AI Transformation Partner Playbook.pdf
 
HR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.comHR Software Buyers Guide in 2024 - HRSoftware.com
HR Software Buyers Guide in 2024 - HRSoftware.com
 
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
 
Diamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with PrecisionDiamond Application Development Crafting Solutions with Precision
Diamond Application Development Crafting Solutions with Precision
 
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
 
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Pushp Vihar (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
W01_panagenda_Navigating-the-Future-with-The-Hitchhikers-Guide-to-Notes-and-D...
 
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
+971565801893>>SAFE AND ORIGINAL ABORTION PILLS FOR SALE IN DUBAI AND ABUDHAB...
 

Building and deploying microservices with event sourcing, CQRS and Docker (QCONSF 2014)

  • 1. @crichardson Building and deploying microservices with event sourcing, CQRS and Docker Chris Richardson Author of POJOs in Action Founder of the original CloudFoundry.com @crichardson chris@chrisrichardson.net http://plainoldobjects.com
  • 2. @crichardson Presentation goal Share my experiences with building and deploying an application using Scala, functional domain models, microservices, event sourcing, CQRS, and Docker
  • 4. @crichardson About Chris Founder of a buzzword compliant (stealthy, social, mobile, big data, machine learning, ...) startup Consultant helping organizations improve how they architect and deploy applications using cloud, micro services, polyglot applications, NoSQL, ... Creator of http://microservices.io
  • 5. @crichardson Agenda Why build event-driven microservices? Overview of event sourcing Designing microservices with event sourcing Implementing queries in an event sourced application Building and deploying microservices
  • 6. @crichardson Let’s imagine that you are building a banking app...
  • 8. @crichardson Tomcat Traditional application architecture Browser/Client WAR/EAR RDBMS Customers Accounts Transfers BankingBanking UI develop test deploy Simple to Load balancer scale Spring MVC Spring Hibernate ... HTML REST/JSON ACID
  • 9. @crichardson Problem #1: monolithic architecture Intimidates developers Obstacle to frequent deployments Overloads your IDE and container Obstacle to scaling development Modules having conflicting scaling requirements Requires long-term commitment to a technology stack
  • 10. @crichardson Solution #1: use a microservice architecture Banking UI Account Management Service MoneyTransfer Management Service Account Database MoneyTransfer Database Standalone services
  • 11. @crichardson Problem #2: relational databases Scalability Distribution Schema updates O/R impedance mismatch Handling semi-structured data
  • 12. @crichardson Solution #2: use NoSQL databases Avoids the limitations of RDBMS For example, text search Solr/Cloud Search social (graph) data Neo4J highly distributed/available database Cassandra ...
  • 13. @crichardson Different modules use different databases IEEE Software Sept/October 2010 - Debasish Ghosh / Twitter @debasishg
  • 14. @crichardson But now we have problems with data consistency!
  • 15. @crichardson Problem #3: Microservices = distributed data management Each microservice has it’s own database Business transactions must update data owned by multiple services, e.g. Update MoneyTransfer and from/to Accounts Some data is replicated and must be kept in sync Tricky to implement reliably without 2PC
  • 16. @crichardson Problem #4: NoSQL = ACID-free, denormalized databases Limited transactions, i.e. no ACID transactions Tricky to implement business transactions that update multiple rows, e.g. Update MoneyTransfer and from/to Accounts e.g. http://bit.ly/mongo2pc Limited querying capabilities Requires denormalized/materialized views that must be synchronized Multiple datastores (e.g. DynamoDB + Cloud Search ) that need to be kept in sync
  • 17. @crichardson Solution to #3/#4: Event-based architecture to the rescue Microservices publish events when state changes Microservices subscribe to events Maintains eventual consistency across multiple aggregates (in multiple datastores) Synchronize replicated data
  • 18. @crichardson MoneyTransferService MoneyTransfer fromAccountId = 101 toAccountId = 202 amount = 55 state = INITIAL Eventually consistent money transfer Message Bus AccountService transferMoney() Publishes: Subscribes to: Subscribes to: publishes: MoneyTransferCreatedEvent AccountDebitedEvent DebitRecordedEvent AccountCreditedEvent MoneyTransferCreatedEvent DebitRecordedEvent AccountDebitedEvent AccountCreditedEvent Account id = 101 balance = 250 Account id = 202 balance = 125 MoneyTransfer fromAccountId = 101 toAccountId = 202 amount = 55 state = DEBITED Account id = 101 balance = 195 Account id = 202 balance = 180 MoneyTransfer fromAccountId = 101 toAccountId = 202 amount = 55 state = COMPLETED
  • 19. @crichardson To maintain consistency a service must atomically publish an event whenever a domain object changes
  • 20. How to reliably generate events whenever state changes? Database triggers, Hibernate event listener, ... Reliable BUT Not with NoSQL Disconnected from the business level event Limited applicability Ad hoc event publishing code mixed into business logic Publishes business level events BUT Tangled code, poor separation of concerns Unreliable, e.g. too easy to forget to publish an event
  • 21. How to atomically update the datastore and publish event(s) Use 2PC Guaranteed atomicity BUT Need a distributed transaction manager Database and message broker must support 2PC Impacts reliability Not fashionable 2PC is best avoided Use datastore as a message queue 1. Update database: new entity state & event 2. Consume event & mark event as consumed Eventually consistent mechanism See BASE: An Acid Alternative, http://bit.ly/ ebaybase • BUT Tangled business logic and event publishing code • Difficult to implement when using a NoSQL database :-(
  • 22. @crichardson Agenda Why build event-driven microservices? Overview of event sourcing Designing microservices with event sourcing Implementing queries in an event sourced application Building and deploying microservices
  • 23. @crichardson Event sourcing For each aggregate: Identify (state-changing) domain events Define Event classes For example, Account: AccountOpenedEvent, AccountDebitedEvent, AccountCreditedEvent ShoppingCart: ItemAddedEvent, ItemRemovedEvent, OrderPlacedEvent
  • 24. @crichardson Persists events NOT current state Account balance open(initial) debit(amount) credit(amount) AccountOpened Event table AccountCredited AccountDebited 101 450 Account table X 101 101 101 901 902 903 500 250 300
  • 25. @crichardson Replay events to recreate state Account balance AccountOpenedEvent(balance) AccountDebitedEvent(amount) AccountCreditedEvent(amount) Events
  • 26. @crichardson Before: update state + publish events Two actions that must be atomic Single action that can be done atomically Now: persist (and publish) events
  • 27. @crichardson Aggregate traits Map Command to Events Apply event returning updated Aggregate
  • 28. @crichardson Account - command processing Prevent overdraft
  • 30. @crichardson Request handling in an event-sourced application HTTP Handler Event Store pastEvents = findEvents(entityId) Account new() applyEvents(pastEvents) newEvents = processCmd(SomeCmd) saveEvents(newEvents) Microservice A
  • 31. @crichardson Event Store publishes events - consumed by other services Event Store Event Subscriber subscribe(EventTypes) publish(event) publish(event) Aggregate NoSQL materialized view update() update() Microservice B
  • 32. @crichardson Persisting events Ideally use a cross platform format Use weak serialization: enables event evolution, eg. add memo field to transfer missing field provide default value unknown field ignore JSON is a good choice
  • 33. @crichardson Optimizing using snapshots Most aggregates have relatively few events BUT consider a 10-year old Account many transactions Therefore, use snapshots: Periodically save snapshot of aggregate state Typically serialize a memento of the aggregate Load latest snapshot + subsequent events
  • 34. @crichardson Event Store API trait EventStore { def save[T <: Aggregate[T]](entity: T, events: Seq[Event], assignedId : Option[EntityId] = None): Future[EntityWithIdAndVersion[T]] def update[T <: Aggregate[T]](entityIdAndVersion : EntityIdAndVersion, entity: T, events: Seq[Event]): Future[EntityWithIdAndVersion[T]] def find[T <: Aggregate[T] : ClassTag](entityId: EntityId) : Future[EntityWithIdAndVersion[T]] def findOptional[T <: Aggregate[T] : ClassTag](entityId: EntityId) Future[Option[EntityWithIdAndVersion[T]]] def subscribe(subscriptionId: SubscriptionId): Future[AcknowledgableEventStream] }
  • 35. @crichardson Business benefits of event sourcing Built-in, reliable audit log Enables temporal queries Publishes events needed by big data/predictive analytics etc. Preserved history More easily implement future requirements
  • 36. @crichardson Technical benefits of event sourcing Solves data consistency issues in a Microservice/NoSQL-based architecture: Atomically save and publish events Event subscribers update other aggregates ensuring eventual consistency Event subscribers update materialized views in SQL and NoSQL databases (more on that later) Eliminates O/R mapping problem
  • 37. @crichardson Drawbacks of event sourcing Weird and unfamiliar Events = a historical record of your bad design decisions Handling duplicate events can be tricky Application must handle eventually consistent data Event store only directly supports PK-based lookup (more on that later)
  • 38. @crichardson Example of an eventual consistency problem Scenario: 1. Create the user 2. Create shopping cart 3. Update the user with the shopping cart’s id The user temporarily does not have a shopping cart id! Client might need to retry their request at a later point Server should return status code 418??
  • 39. @crichardson Handling duplicate events Idempotent operations e.g. add item to shopping cart Duplicate detection: e.g. track most recently seen event and discard earlier ones
  • 40. @crichardson Agenda Why build event-driven microservices? Overview of event sourcing Designing microservices with event sourcing Implementing queries in an event sourced application Building and deploying microservices
  • 41. @crichardson The anatomy of a microservice Event Store HTTP Request HTTP Adapter Aggregate Event Adapter Cmd Cmd Events Events Xyz Adapter Xyz Request microservice
  • 43. @crichardson MoneyTransferService DSL concisely specifies: 1.Creates MoneyTransfer aggregate 2.Processes command 3.Applies events 4.Persists events
  • 45. @crichardson Handling events published by Accounts 1.Load MoneyTransfer aggregate 2.Processes command 3.Applies events 4.Persists events
  • 46. @crichardson Agenda Why build event-driven microservices? Overview of event sourcing Designing microservices with event sourcing Implementing queries in an event sourced application Building and deploying microservices
  • 47. @crichardson Let’s imagine that you want to display an account and it’s recent transactions...
  • 48. @crichardson Displaying balance + recent credits and debits We need to do a “join: between the Account and the corresponding MoneyTransfers (Assuming Debit/Credit events don’t include other account, ...) BUT Event Store = primary key lookup of individual aggregates, ... Use Command Query Responsibility Separation
  • 49. @crichardson Command Query Responsibility Separation (CQRS) Command-side Commands Aggregate Event Store Events Query-side Queries (Denormalized) View Events
  • 50. @crichardson Query-side microservices Event Store Updater - microservice View Updater Service Events Reader - microservice HTTP GET Request View Query Service View Store e.g. MongoDB Neo4J CloudSearch update query
  • 51. @crichardson Persisting account balance and recent transactions in MongoDB { id: "298993498", balance: 100000, transfers : [ {"transferId" : "4552840948484", "fromAccountId" : 298993498, "toAccountId" : 3483948934, "amount" : 5000}, ... ], changes: [ {"changeId" : "93843948934", "transferId" : "4552840948484", "transactionType" : "AccountDebited", "amount" : 5000}, ... ] } Denormalized = efficient lookup Transfers that update the account The sequence of debits and credits Current balance
  • 52. Other kinds of views AWS Cloud Search Text search as-a-Service View updater batches aggregates to index View query service does text search AWS DynamoDB NoSQL as-a-Service On-demand scalable - specify desired read/write capacity Document and key-value data models Useful for denormalized, UI oriented views
  • 53. Benefits and drawbacks of CQRS Benefits Necessary in an event-sourced architecture Separation of concerns = simpler command and query models Supports multiple denormalized views Improved scalability and performance Drawbacks Complexity Potential code duplication Replication lag/eventually consistent views
  • 54. Dealing with eventually consistent views Scenario: Client creates/updates aggregate Client requests view of aggregate Problem: The view might not yet have been updated Solution: Create/Update response contains aggregate version Query request contains desired version Out of date view wait or return “out of date view” error code Alternatively: “Fake it” in the UI until the view is updated
  • 55. @crichardson Agenda Why build event-driven microservices? Overview of event sourcing Designing microservices with event sourcing Implementing queries in an event sourced application Building and deploying microservices
  • 56. @crichardson My application architecture API gateway Event Store Service 1 Service 2 Service ... Event Archiver Indexer AWS Cloud Search S3 NodeJS Scala/Spring Boot
  • 57. @crichardson Jenkins-based deployment pipeline Build & Test microservice Build & Test Docker image Deploy Docker image to registry One pipeline per microservice
  • 58. @crichardson Building Docker images cp ../build/libs/service.${1}.jar build/service.jar docker build -t service-${VERSION} . docker/build.sh
  • 59. @crichardson Smoke testing docker images Smoke test Docker daemon Service container GET /health POST /containers/create creates POST /containers/{id}/start Docker daemon must listen on TCP port
  • 60. @crichardson Publishing Docker images docker tag service-${VERSION}:latest ${REGISTRY_HOST_AND_PORT}/service-${VERSION} docker push ${REGISTRY_HOST_AND_PORT}/service-${VERSION} docker/publish.sh
  • 61. @crichardson CI environment runs on Docker EC2 Instance Jenkins Container Artifactory container EBS volume /jenkins-home /gradle-home /artifactory-home
  • 62. @crichardson Updating production environment Large EC2 instance running Docker Deployment tool: 1. Compares running containers with what’s been built by Jenkins 2. Pulls latest images from Docker registry 3. Stops old versions 4. Launches new versions One day: use Docker clustering solution and a service discovery mechanism, Mesos and Marathon + Zookeeper, Kubernetes or ???
  • 63. @crichardson Summary Event sourcing solves key data consistency issues with: Microservices Partitioned SQL/NoSQL databases Use CQRS to implement materialized views for queries Docker is a great way to package microservices
  • 64. @crichardson Questions? Let’s talk at the Open Space @crichardson chris@chrisrichardson.net http://plainoldobjects.com http://microservices.io