SlideShare uma empresa Scribd logo
1 de 69
Baixar para ler offline
Event Sourcing, Stream Processing & Serverless
Ben Stopford
Office of the CTO, Confluent
What we’re going to talk about
• Event Sourcing
• What it is and how does it relate to Event Streaming?
• Stream Processing as a kind of “Database”
• What does this mean?
• Serverless Functions
• How do this relate?
Can you do event sourcing
with Kafka?
Traditional Event
Sourcing
Popular example: Shopping Cart
DB
Apps
Search
Apps Apps
Database Table matches
what the user sees.
12.42
12.44
12.49
12.50
12.59
Event Sourcing stores events, then derives the
‘current state view’
Apps Apps
DERIVE
Chronological Reduce
Event
Timeseries
of user
activity
Traditional Event Sourcing
(Store immutable events in a database in time order)
Apps
Search
NoSQL
Monitoring
Security
Apps Apps
S T R E A M I N G P L AT F O R MTable of events
Persist events
Apps Apps
Traditional Event Sourcing (Read)
Apps
Search
NoSQL
Monitoring
Security
Apps Apps
S T R E A M I N G P L AT F O R M
Apps
Search Monitoring
Apps Apps
Chronological
Reduce on read
(done inside the app)
Query by
customer Id
(+session?)
- No schema migration
- Similar to ’schema on read’
3 Benefits
Evidentiary
Accountants don’t use erasers
(e.g. audit, ledger, git)
Replayability
Recover corrupted data after a
programmatic bug
Analytics
Keep the data needed to
extract trends and behaviors
i.e. non-lossy
(e.g. insight, metrics, ML)
Traditional Event Sourcing
• Use a database (any one will do)
• Create a table and insert events as they occur
• Query all the events associated with your problem*
• Reduce them chronologically to get the current state
*Aggregate ID in DDD parlance
Traditional Event Sourcing with Kafka
• Use a database Kafka
• Create a table topic insert events as they occur
• Query all the events associated with your problem*
• Reduce them chronologically to get the current state
*Aggregate ID in DDD parlance
Confusion: You can’t query Kafka by say Customer Id*
*Aggregate ID in DDD parlance
If we can’t query by Customer ID
then what do we do?
CQRS is a tonic: Cache the projection in a ‘View’
Apps
Search Monitoring
Apps Apps
S T R E A M I N G P L AT F O R M
Query by customer Id
Apps
Search
NoSQL
Apps Apps
DWH
Hadoop
S T R E A M I N G P L AT F O R M
View
Events/Command
Events are the
Storage Model
Stream Processor
Cache/DB/Ktable etc.
Regenerate the view
rather than doing
schema migration
CQRS provides the
benefits of event
sourcing using a
“Materialized View”
Even with CQRS, Event Sourcing is Hard
CQRS helps, but it’s still quite hard if you’re a CRUD app
What’s the problem?
Harder:
• Eventually Consistent
• Multi-model (Complexity ∝ #Schemas in the log)
• More moving parts
Apps
Search
NoSQL
Monitoring
Security
Apps Apps
S T R E A M I N G P L A T F O R M
CRUD System CQRS
New York Times Website
Source of Truth
Every article since
1851
https://www.confluent.io/blog/publishing-apache-kafka-new-york-times/
Normalized assets
(images, articles, bylines, tags
all separate messages)
Denormalized into
“Content View”
If CRUD makes sense there are other ways:
audit tables, CDC, etc.
Trigger
Evidentiary
Replayable N/A to web app
Analytics
CDC
More advanced: Use a Bi-Temporal Database
Events make most sense
where data has to move
This is where CQRS comes
into its own!
Online Transaction Processing: e.g. a Flight Booking System
- Flight price served 10,000 x #bookings
- Consistency required only at booking time
CQRS with event movement
Apps
Search Monitoring
Apps Apps
S T R E A M I N G P L AT F O R M
Apps
Search
NoSQL
Apps Apps
DWH
Hadoop
S T R E A M I N G P L AT F O R M
View
Book Flight
Apps
Search
Apps
S T R E A M I N G P L A
View
Apps
Search
NoSQL
Apps
DWH
S T R E A M I N G P L A
View
Get Flights
Get Flights
Get Flights
Global Read
Central Write
The exact same logic applies
to microservices
Event Sourcing for Microservices
Basket Service
Fraud Service
Billing Service
Email ServiceBasket Events
Event Sourcing for Microservices
Basket Service
Fraud Service
Billing Service
Email ServiceBasket Events
Events are the
storage model
Each microservice creates a
view that suits its use case
Event Sourcing “with a DB”
for monoliths.
Event Streaming for
Microservices & Scale.
(Often via. CQRS)
Event Streaming
Event Streaming is a more general form of Event Sourcing/CQRS
Event Streaming
• Events as shared data model
• Many microservices
• Polyglot persistence
• Event-Driven processing
Traditional Event Sourcing
• Events as a storage model
• Single microservice
• Single DB
• data-at-rest
Event Streams is about many event sources
(Join, Filter, Transform and Summarize)
Fraud Service
Orders
Service
Payment
Service
Customer
Service
Event Log
Projection created in
Kafka Streams API
KStreams & KSQL have different positioning
•KStreams is a library for Dataflow programming:
• App Logic & Stream Processor (including state) are combined.
• Apps are stateful.
• JVM only.
•KSQL is a ‘database’ for event preparation:
• App sends SQL to a separate process
• Apps are stateless
• Connect from any language
This difference makes most
sense if we we look to the
future.
Cloud & Serverless
Thesis
• Serverless provides event-driven infrastructure
• KSQL is the corollary: an event-driven database
Serverless Functions (FaaS)
• Write a function
• Upload
• Configure a trigger (HTTP, Messaging, Object Store, Database, Timer etc.)
Request Respond Event Source
FaaS in a Nutshell
• Fully managed (Runs in a container pool)
• Pay for execution time (not resources used)
• Auto-scales with load
• 0-1000+ concurrent functions
• Stateless
• Short lived (limit 5-15 mins)
• Weak ordering guarantees
• Cold start’s can be (very) slow: 100ms – 45s (AWS 250ms-7s)
Where is FaaS useful?
• Spikey workloads and ‘occasional’ use cases
• Use cases that don’t typically warrant massive parallelism
e.g. CI systems.
• General purpose programming paradigm?
But there are open questions
Serverless Developer Ecosystem
• Runtime diagnostics
• Monitoring
• Deploy loop
• Testing
• IDE integration
Currently quite poor
Harder than current approaches Easier than current approaches
Amazon
Google
Microsoft
Serverless programming will likely become prevalent
In the future it seems
unlikely we’ll manage our
own infrastructure.
But where will we manage
our data?
Event-Streaming approaches this
from a different angle
FaaS is event-driven
But it isn’t streaming
Complex, Timing issues, Scaling limits
Customers
Event Source
Orders
Event Source
Payments
Event Source
Serverless functions handle only one event source
FaaS/μS
FaaS/μS
FaaS/μS
A slightly more complex
example:
Send email only to
platinum customers
Payments
Event Source
Event is received by serverless function
FaaS/μS
Payments
Event Source
Block and calls the database to get customer+order
FaaS/μS
Get customer
Get order
Payments
Event Source
Is it a ‘Platinum’ customer?
FaaS/μS
Get customer
Get order
Is the customer
platinum?
Payments
Event Source
Send email if ‘Platinum’
FaaS/μS
Get customer
Get order
Maybe send email
Payments
Event Source
Increase Load: 100 concurrant functions doing IO.
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
Payments
Event Source
Only send 2 emails.
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
FaaS/μS
Send SQL
Process
boundary
Orders
Payments
KSQL
Customers
Table
Customers
KSQL simplifies:
App
Logic
CREATE STREAM foo AS
SELECT * FROM orders, payments,
customers
LEFT JOIN…
WHERE customer.type = ‘PLATINUM’
Order
Payment
Customer
KSQL
- Handle timing issues
- No “per-event” IO.
- Price efficient
Functions have no
additional data
dependencies:
Everything is in the event!
Queries filter out the
events you need
(much like you filter rows in a
database query)
FaaSFaaSFaaSKSQL
Customers
Table
KSQL as a “Database” for Event-Driven Infrastructure
FaaSFaaS
Stateless,
elastic compute
Prepare the
events we need
(Sateful)
Orders
Payments
Customers
Autoscale
with load
FaaS
Traditional
Application
Event-Driven
Application
Application
Database
KSQL
Stateful
Data Layer
FaaS
FaaS
FaaS
FaaS
FaaS
Streaming
Stateless
Stateless
Stateless
Compute Layer
Massive linear scalability with elasticity
Event-Driven vs. Event Streaming
Event Driven Event Streaming
Multiple Event Sources Use Database + ETL + Code Handles automatically
Efficiency Extract data from DB in the
FaaS (IO)
Only the data you need
Logic-driven data requests. Call DB from the FaaS (IO) DB/KStreams KqlDB?
Event Streaming Platform
Summary
• Event Streaming provides the benefits of Event Sourcing to
microservices and data pipelines.
• Events are the data model.
• Projections are the serving model: matching to each specific use case
• Serving layer can be regenerated from the log (CQRS)
• KSQL provides the same benefits for event-driven programs: e.g.
preparing the event streams each FaaS application’s specific needs
• In serverless architectures this drives efficiency: a ‘database-
equivalent’ for event-driven infrastructure.
FaaSFaaSFaaSKSQL
Can I Build This?
FaaSFaaS
AWS Lambda /
Azure Functions Connectors
(in Preview)
Hosted KSQL In Preview
Confluent Cloud
Things I didn’t tell you
• Tools like KSQL provide data provisioning, not state mutation.
• Use single writers. Try KSQL DB?
• Can KSQL handle large state?
• Unintended rebalance can stall processing
• Static membership (KIP-345) – name the list of stream processors
• Increase the timeout for rebalance after node removal (group.max.session.timeout.ms)
• Worst case reload: RocksDB ~GbE speed
• Can Kafka be used for long term storage?
• Log files are immutable once they roll (unless compacted)
• Jun spent a decade working on DB2
• Careful:
• Historical reads can stall real-time requests (cached)
• ZFS has several page cache optimizations
• Tiered storage will help
Find out More
• Peeking Behind the Curtains of Serverless Platforms, Wang et al.
• Cloud Programming Simplified: A Berkeley View on Serverless Compute
• Neil Avery’s Journey to Event Driven Part 3. The Affinity Between Events, Streams and Serverless.
• Designing Event Driven Systems, Ben Stopford
Thank you
@benstopford
Book:
https://www.confluent.io/designing-event-driven-systems

Mais conteúdo relacionado

Mais procurados

Introduction to Kibana
Introduction to KibanaIntroduction to Kibana
Introduction to KibanaVineet .
 
How Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per dayHow Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per dayDataWorks Summit
 
Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...
Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...
Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...confluent
 
Netflix viewing data architecture evolution - EBJUG Nov 2014
Netflix viewing data architecture evolution - EBJUG Nov 2014Netflix viewing data architecture evolution - EBJUG Nov 2014
Netflix viewing data architecture evolution - EBJUG Nov 2014Philip Fisher-Ogden
 
Kafka Summit NYC 2017 - Data Processing at LinkedIn with Apache Kafka
Kafka Summit NYC 2017 - Data Processing at LinkedIn with Apache KafkaKafka Summit NYC 2017 - Data Processing at LinkedIn with Apache Kafka
Kafka Summit NYC 2017 - Data Processing at LinkedIn with Apache Kafkaconfluent
 
Microservices Part 3 Service Mesh and Kafka
Microservices Part 3 Service Mesh and KafkaMicroservices Part 3 Service Mesh and Kafka
Microservices Part 3 Service Mesh and KafkaAraf Karsh Hamid
 
Elastic Stack Introduction
Elastic Stack IntroductionElastic Stack Introduction
Elastic Stack IntroductionVikram Shinde
 
Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...
Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...
Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...HostedbyConfluent
 
Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...
Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...
Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...Kai Wähner
 
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...Flink Forward
 
Kubernetes Networking - Sreenivas Makam - Google - CC18
Kubernetes Networking - Sreenivas Makam - Google - CC18Kubernetes Networking - Sreenivas Makam - Google - CC18
Kubernetes Networking - Sreenivas Makam - Google - CC18CodeOps Technologies LLP
 
Big Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSBig Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSAmazon Web Services
 
Simplify your SAP CPI development with Figaf
Simplify your SAP CPI development with FigafSimplify your SAP CPI development with Figaf
Simplify your SAP CPI development with FigafDaniel Graversen
 
Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...
Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...
Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...confluent
 
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...HostedbyConfluent
 
Kubernetes: Reducing Infrastructure Cost & Complexity
Kubernetes: Reducing Infrastructure Cost & ComplexityKubernetes: Reducing Infrastructure Cost & Complexity
Kubernetes: Reducing Infrastructure Cost & ComplexityDevOps.com
 
Real-Time Dynamic Data Export Using the Kafka Ecosystem
Real-Time Dynamic Data Export Using the Kafka EcosystemReal-Time Dynamic Data Export Using the Kafka Ecosystem
Real-Time Dynamic Data Export Using the Kafka Ecosystemconfluent
 

Mais procurados (20)

Introduction to Kibana
Introduction to KibanaIntroduction to Kibana
Introduction to Kibana
 
How Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per dayHow Uber scaled its Real Time Infrastructure to Trillion events per day
How Uber scaled its Real Time Infrastructure to Trillion events per day
 
Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...
Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...
Eventing Things - A Netflix Original! (Nitin Sharma, Netflix) Kafka Summit SF...
 
Netflix viewing data architecture evolution - EBJUG Nov 2014
Netflix viewing data architecture evolution - EBJUG Nov 2014Netflix viewing data architecture evolution - EBJUG Nov 2014
Netflix viewing data architecture evolution - EBJUG Nov 2014
 
Kafka Summit NYC 2017 - Data Processing at LinkedIn with Apache Kafka
Kafka Summit NYC 2017 - Data Processing at LinkedIn with Apache KafkaKafka Summit NYC 2017 - Data Processing at LinkedIn with Apache Kafka
Kafka Summit NYC 2017 - Data Processing at LinkedIn with Apache Kafka
 
ELK Stack
ELK StackELK Stack
ELK Stack
 
Microservices Part 3 Service Mesh and Kafka
Microservices Part 3 Service Mesh and KafkaMicroservices Part 3 Service Mesh and Kafka
Microservices Part 3 Service Mesh and Kafka
 
Elastic Stack Introduction
Elastic Stack IntroductionElastic Stack Introduction
Elastic Stack Introduction
 
Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...
Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...
Reigning in Protobuf with David Navalho and Graham Stirling | Kafka Summit Lo...
 
Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...
Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...
Resilient Real-time Data Streaming across the Edge and Hybrid Cloud with Apac...
 
ELK Stack
ELK StackELK Stack
ELK Stack
 
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
Squirreling Away $640 Billion: How Stripe Leverages Flink for Change Data Cap...
 
Kubernetes Networking - Sreenivas Makam - Google - CC18
Kubernetes Networking - Sreenivas Makam - Google - CC18Kubernetes Networking - Sreenivas Makam - Google - CC18
Kubernetes Networking - Sreenivas Makam - Google - CC18
 
Big Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWSBig Data Architectural Patterns and Best Practices on AWS
Big Data Architectural Patterns and Best Practices on AWS
 
Simplify your SAP CPI development with Figaf
Simplify your SAP CPI development with FigafSimplify your SAP CPI development with Figaf
Simplify your SAP CPI development with Figaf
 
Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...
Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...
Flexible Authentication Strategies with SASL/OAUTHBEARER (Michael Kaminski, T...
 
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
Real-time Analytics with Upsert Using Apache Kafka and Apache Pinot | Yupeng ...
 
Kubernetes: Reducing Infrastructure Cost & Complexity
Kubernetes: Reducing Infrastructure Cost & ComplexityKubernetes: Reducing Infrastructure Cost & Complexity
Kubernetes: Reducing Infrastructure Cost & Complexity
 
Amazon Aurora 100% 활용하기
Amazon Aurora 100% 활용하기Amazon Aurora 100% 활용하기
Amazon Aurora 100% 활용하기
 
Real-Time Dynamic Data Export Using the Kafka Ecosystem
Real-Time Dynamic Data Export Using the Kafka EcosystemReal-Time Dynamic Data Export Using the Kafka Ecosystem
Real-Time Dynamic Data Export Using the Kafka Ecosystem
 

Semelhante a Event Sourcing, Stream Processing and Serverless (Ben Stopford, Confluent) Kafka Summit SF 2019

Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...
Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...
Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...confluent
 
A Global Source of Truth for the Microservices Generation
A Global Source of Truth for the Microservices GenerationA Global Source of Truth for the Microservices Generation
A Global Source of Truth for the Microservices GenerationBen Stopford
 
Understanding event data
Understanding event dataUnderstanding event data
Understanding event datayalisassoon
 
Serverless Messaging with Microsoft Azure by Steef-Jan Wiggers
Serverless Messaging with Microsoft Azure by Steef-Jan WiggersServerless Messaging with Microsoft Azure by Steef-Jan Wiggers
Serverless Messaging with Microsoft Azure by Steef-Jan WiggersAdam Walhout
 
Serverless Architecture Patterns
Serverless Architecture PatternsServerless Architecture Patterns
Serverless Architecture PatternsAmazon Web Services
 
serverless_architecture_patterns_london_loft.pdf
serverless_architecture_patterns_london_loft.pdfserverless_architecture_patterns_london_loft.pdf
serverless_architecture_patterns_london_loft.pdfAmazon Web Services
 
Confluent:AWS - GameDay.pptx
 Confluent:AWS - GameDay.pptx Confluent:AWS - GameDay.pptx
Confluent:AWS - GameDay.pptxAhmed791434
 
The AWS Big Data Platform – Overview
The AWS Big Data Platform – OverviewThe AWS Big Data Platform – Overview
The AWS Big Data Platform – OverviewAmazon Web Services
 
Data Streaming with Apache Kafka & MongoDB
Data Streaming with Apache Kafka & MongoDBData Streaming with Apache Kafka & MongoDB
Data Streaming with Apache Kafka & MongoDBconfluent
 
Dev show september 8th 2020 power platform - not just a simple toy
Dev show september 8th 2020   power platform - not just a simple toyDev show september 8th 2020   power platform - not just a simple toy
Dev show september 8th 2020 power platform - not just a simple toyJens Schrøder
 
Azure Event Grid: Glue for the Internet
Azure Event Grid: Glue for the InternetAzure Event Grid: Glue for the Internet
Azure Event Grid: Glue for the InternetJeremy Likness
 
(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014
(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014
(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014Amazon Web Services
 
Building cloud native data microservice
Building cloud native data microserviceBuilding cloud native data microservice
Building cloud native data microserviceNilanjan Roy
 
A guide through the Azure Messaging services - Update Conference
A guide through the Azure Messaging services - Update ConferenceA guide through the Azure Messaging services - Update Conference
A guide through the Azure Messaging services - Update ConferenceEldert Grootenboer
 
BDA307 Real-time Streaming Applications on AWS, Patterns and Use Cases
BDA307 Real-time Streaming Applications on AWS, Patterns and Use CasesBDA307 Real-time Streaming Applications on AWS, Patterns and Use Cases
BDA307 Real-time Streaming Applications on AWS, Patterns and Use CasesAmazon Web Services
 
Apache Kafka as Event Streaming Platform for Microservice Architectures
Apache Kafka as Event Streaming Platform for Microservice ArchitecturesApache Kafka as Event Streaming Platform for Microservice Architectures
Apache Kafka as Event Streaming Platform for Microservice ArchitecturesKai Wähner
 
Application Architecture Summit - Monitoring the Dynamic Cloud
Application Architecture Summit - Monitoring the Dynamic Cloud Application Architecture Summit - Monitoring the Dynamic Cloud
Application Architecture Summit - Monitoring the Dynamic Cloud New Relic
 

Semelhante a Event Sourcing, Stream Processing and Serverless (Ben Stopford, Confluent) Kafka Summit SF 2019 (20)

Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...
Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...
Event Sourcing, Stream Processing and Serverless (Benjamin Stopford, Confluen...
 
A Global Source of Truth for the Microservices Generation
A Global Source of Truth for the Microservices GenerationA Global Source of Truth for the Microservices Generation
A Global Source of Truth for the Microservices Generation
 
Understanding event data
Understanding event dataUnderstanding event data
Understanding event data
 
Serverless Messaging with Microsoft Azure by Steef-Jan Wiggers
Serverless Messaging with Microsoft Azure by Steef-Jan WiggersServerless Messaging with Microsoft Azure by Steef-Jan Wiggers
Serverless Messaging with Microsoft Azure by Steef-Jan Wiggers
 
Serverless Architecture Patterns
Serverless Architecture PatternsServerless Architecture Patterns
Serverless Architecture Patterns
 
serverless_architecture_patterns_london_loft.pdf
serverless_architecture_patterns_london_loft.pdfserverless_architecture_patterns_london_loft.pdf
serverless_architecture_patterns_london_loft.pdf
 
Confluent:AWS - GameDay.pptx
 Confluent:AWS - GameDay.pptx Confluent:AWS - GameDay.pptx
Confluent:AWS - GameDay.pptx
 
The AWS Big Data Platform – Overview
The AWS Big Data Platform – OverviewThe AWS Big Data Platform – Overview
The AWS Big Data Platform – Overview
 
Azue_Serverless.pptx
Azue_Serverless.pptxAzue_Serverless.pptx
Azue_Serverless.pptx
 
Data Streaming with Apache Kafka & MongoDB
Data Streaming with Apache Kafka & MongoDBData Streaming with Apache Kafka & MongoDB
Data Streaming with Apache Kafka & MongoDB
 
Dev show september 8th 2020 power platform - not just a simple toy
Dev show september 8th 2020   power platform - not just a simple toyDev show september 8th 2020   power platform - not just a simple toy
Dev show september 8th 2020 power platform - not just a simple toy
 
Azure Event Grid: Glue for the Internet
Azure Event Grid: Glue for the InternetAzure Event Grid: Glue for the Internet
Azure Event Grid: Glue for the Internet
 
Application Portfolio Migration
Application Portfolio MigrationApplication Portfolio Migration
Application Portfolio Migration
 
(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014
(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014
(SPOT305) Event-Driven Computing on Change Logs in AWS | AWS re:Invent 2014
 
Building cloud native data microservice
Building cloud native data microserviceBuilding cloud native data microservice
Building cloud native data microservice
 
A guide through the Azure Messaging services - Update Conference
A guide through the Azure Messaging services - Update ConferenceA guide through the Azure Messaging services - Update Conference
A guide through the Azure Messaging services - Update Conference
 
Application Portfolio Migration
Application Portfolio MigrationApplication Portfolio Migration
Application Portfolio Migration
 
BDA307 Real-time Streaming Applications on AWS, Patterns and Use Cases
BDA307 Real-time Streaming Applications on AWS, Patterns and Use CasesBDA307 Real-time Streaming Applications on AWS, Patterns and Use Cases
BDA307 Real-time Streaming Applications on AWS, Patterns and Use Cases
 
Apache Kafka as Event Streaming Platform for Microservice Architectures
Apache Kafka as Event Streaming Platform for Microservice ArchitecturesApache Kafka as Event Streaming Platform for Microservice Architectures
Apache Kafka as Event Streaming Platform for Microservice Architectures
 
Application Architecture Summit - Monitoring the Dynamic Cloud
Application Architecture Summit - Monitoring the Dynamic Cloud Application Architecture Summit - Monitoring the Dynamic Cloud
Application Architecture Summit - Monitoring the Dynamic Cloud
 

Mais de confluent

Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...confluent
 
Santander Stream Processing with Apache Flink
Santander Stream Processing with Apache FlinkSantander Stream Processing with Apache Flink
Santander Stream Processing with Apache Flinkconfluent
 
Unlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insightsUnlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insightsconfluent
 
Workshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con FlinkWorkshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con Flinkconfluent
 
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...confluent
 
AWS Immersion Day Mapfre - Confluent
AWS Immersion Day Mapfre   -   ConfluentAWS Immersion Day Mapfre   -   Confluent
AWS Immersion Day Mapfre - Confluentconfluent
 
Eventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalkEventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalkconfluent
 
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent CloudQ&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent Cloudconfluent
 
Citi TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep DiveCiti TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep Diveconfluent
 
Build real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with ConfluentBuild real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with Confluentconfluent
 
Q&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service MeshQ&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service Meshconfluent
 
Citi Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka MicroservicesCiti Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka Microservicesconfluent
 
Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3confluent
 
Citi Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging ModernizationCiti Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging Modernizationconfluent
 
Citi Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time dataCiti Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time dataconfluent
 
Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2confluent
 
Data In Motion Paris 2023
Data In Motion Paris 2023Data In Motion Paris 2023
Data In Motion Paris 2023confluent
 
Confluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with SynthesisConfluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with Synthesisconfluent
 
The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023confluent
 
The Playful Bond Between REST And Data Streams
The Playful Bond Between REST And Data StreamsThe Playful Bond Between REST And Data Streams
The Playful Bond Between REST And Data Streamsconfluent
 

Mais de confluent (20)

Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
Catch the Wave: SAP Event-Driven and Data Streaming for the Intelligence Ente...
 
Santander Stream Processing with Apache Flink
Santander Stream Processing with Apache FlinkSantander Stream Processing with Apache Flink
Santander Stream Processing with Apache Flink
 
Unlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insightsUnlocking the Power of IoT: A comprehensive approach to real-time insights
Unlocking the Power of IoT: A comprehensive approach to real-time insights
 
Workshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con FlinkWorkshop híbrido: Stream Processing con Flink
Workshop híbrido: Stream Processing con Flink
 
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
Industry 4.0: Building the Unified Namespace with Confluent, HiveMQ and Spark...
 
AWS Immersion Day Mapfre - Confluent
AWS Immersion Day Mapfre   -   ConfluentAWS Immersion Day Mapfre   -   Confluent
AWS Immersion Day Mapfre - Confluent
 
Eventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalkEventos y Microservicios - Santander TechTalk
Eventos y Microservicios - Santander TechTalk
 
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent CloudQ&A with Confluent Experts: Navigating Networking in Confluent Cloud
Q&A with Confluent Experts: Navigating Networking in Confluent Cloud
 
Citi TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep DiveCiti TechTalk Session 2: Kafka Deep Dive
Citi TechTalk Session 2: Kafka Deep Dive
 
Build real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with ConfluentBuild real-time streaming data pipelines to AWS with Confluent
Build real-time streaming data pipelines to AWS with Confluent
 
Q&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service MeshQ&A with Confluent Professional Services: Confluent Service Mesh
Q&A with Confluent Professional Services: Confluent Service Mesh
 
Citi Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka MicroservicesCiti Tech Talk: Event Driven Kafka Microservices
Citi Tech Talk: Event Driven Kafka Microservices
 
Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3Confluent & GSI Webinars series - Session 3
Confluent & GSI Webinars series - Session 3
 
Citi Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging ModernizationCiti Tech Talk: Messaging Modernization
Citi Tech Talk: Messaging Modernization
 
Citi Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time dataCiti Tech Talk: Data Governance for streaming and real time data
Citi Tech Talk: Data Governance for streaming and real time data
 
Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2Confluent & GSI Webinars series: Session 2
Confluent & GSI Webinars series: Session 2
 
Data In Motion Paris 2023
Data In Motion Paris 2023Data In Motion Paris 2023
Data In Motion Paris 2023
 
Confluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with SynthesisConfluent Partner Tech Talk with Synthesis
Confluent Partner Tech Talk with Synthesis
 
The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023The Future of Application Development - API Days - Melbourne 2023
The Future of Application Development - API Days - Melbourne 2023
 
The Playful Bond Between REST And Data Streams
The Playful Bond Between REST And Data StreamsThe Playful Bond Between REST And Data Streams
The Playful Bond Between REST And Data Streams
 

Último

Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostLeverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostZilliz
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Wonjun Hwang
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxNavinnSomaal
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Patryk Bandurski
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsMemoori
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr LapshynFwdays
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationSafe Software
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr BaganFwdays
 
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfAlex Barbosa Coqueiro
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Commit University
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clashcharlottematthew16
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii SoldatenkoFwdays
 

Último (20)

Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage CostLeverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
Leverage Zilliz Serverless - Up to 50X Saving for Your Vector Storage Cost
 
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
Bun (KitWorks Team Study 노별마루 발표 2024.4.22)
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
SAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptxSAP Build Work Zone - Overview L2-L3.pptx
SAP Build Work Zone - Overview L2-L3.pptx
 
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
Integration and Automation in Practice: CI/CD in Mule Integration and Automat...
 
DMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special EditionDMCC Future of Trade Web3 - Special Edition
DMCC Future of Trade Web3 - Special Edition
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
AI as an Interface for Commercial Buildings
AI as an Interface for Commercial BuildingsAI as an Interface for Commercial Buildings
AI as an Interface for Commercial Buildings
 
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
"Federated learning: out of reach no matter how close",Oleksandr Lapshyn
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptxE-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
E-Vehicle_Hacking_by_Parul Sharma_null_owasp.pptx
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry InnovationBeyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
Beyond Boundaries: Leveraging No-Code Solutions for Industry Innovation
 
"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan"ML in Production",Oleksandr Bagan
"ML in Production",Oleksandr Bagan
 
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
Unraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdfUnraveling Multimodality with Large Language Models.pdf
Unraveling Multimodality with Large Language Models.pdf
 
Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!Nell’iperspazio con Rocket: il Framework Web di Rust!
Nell’iperspazio con Rocket: il Framework Web di Rust!
 
Powerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time ClashPowerpoint exploring the locations used in television show Time Clash
Powerpoint exploring the locations used in television show Time Clash
 
"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko"Debugging python applications inside k8s environment", Andrii Soldatenko
"Debugging python applications inside k8s environment", Andrii Soldatenko
 

Event Sourcing, Stream Processing and Serverless (Ben Stopford, Confluent) Kafka Summit SF 2019

  • 1. Event Sourcing, Stream Processing & Serverless Ben Stopford Office of the CTO, Confluent
  • 2. What we’re going to talk about • Event Sourcing • What it is and how does it relate to Event Streaming? • Stream Processing as a kind of “Database” • What does this mean? • Serverless Functions • How do this relate?
  • 3. Can you do event sourcing with Kafka?
  • 5. Popular example: Shopping Cart DB Apps Search Apps Apps Database Table matches what the user sees.
  • 6. 12.42 12.44 12.49 12.50 12.59 Event Sourcing stores events, then derives the ‘current state view’ Apps Apps DERIVE Chronological Reduce Event Timeseries of user activity
  • 7. Traditional Event Sourcing (Store immutable events in a database in time order) Apps Search NoSQL Monitoring Security Apps Apps S T R E A M I N G P L AT F O R MTable of events Persist events Apps Apps
  • 8. Traditional Event Sourcing (Read) Apps Search NoSQL Monitoring Security Apps Apps S T R E A M I N G P L AT F O R M Apps Search Monitoring Apps Apps Chronological Reduce on read (done inside the app) Query by customer Id (+session?) - No schema migration - Similar to ’schema on read’
  • 10. Evidentiary Accountants don’t use erasers (e.g. audit, ledger, git)
  • 11. Replayability Recover corrupted data after a programmatic bug
  • 12. Analytics Keep the data needed to extract trends and behaviors i.e. non-lossy (e.g. insight, metrics, ML)
  • 13. Traditional Event Sourcing • Use a database (any one will do) • Create a table and insert events as they occur • Query all the events associated with your problem* • Reduce them chronologically to get the current state *Aggregate ID in DDD parlance
  • 14. Traditional Event Sourcing with Kafka • Use a database Kafka • Create a table topic insert events as they occur • Query all the events associated with your problem* • Reduce them chronologically to get the current state *Aggregate ID in DDD parlance
  • 15. Confusion: You can’t query Kafka by say Customer Id* *Aggregate ID in DDD parlance
  • 16. If we can’t query by Customer ID then what do we do?
  • 17. CQRS is a tonic: Cache the projection in a ‘View’ Apps Search Monitoring Apps Apps S T R E A M I N G P L AT F O R M Query by customer Id Apps Search NoSQL Apps Apps DWH Hadoop S T R E A M I N G P L AT F O R M View Events/Command Events are the Storage Model Stream Processor Cache/DB/Ktable etc. Regenerate the view rather than doing schema migration
  • 18. CQRS provides the benefits of event sourcing using a “Materialized View”
  • 19. Even with CQRS, Event Sourcing is Hard CQRS helps, but it’s still quite hard if you’re a CRUD app
  • 20. What’s the problem? Harder: • Eventually Consistent • Multi-model (Complexity ∝ #Schemas in the log) • More moving parts Apps Search NoSQL Monitoring Security Apps Apps S T R E A M I N G P L A T F O R M CRUD System CQRS
  • 21. New York Times Website Source of Truth Every article since 1851 https://www.confluent.io/blog/publishing-apache-kafka-new-york-times/ Normalized assets (images, articles, bylines, tags all separate messages) Denormalized into “Content View”
  • 22. If CRUD makes sense there are other ways: audit tables, CDC, etc. Trigger Evidentiary Replayable N/A to web app Analytics CDC
  • 23. More advanced: Use a Bi-Temporal Database
  • 24. Events make most sense where data has to move
  • 25. This is where CQRS comes into its own!
  • 26. Online Transaction Processing: e.g. a Flight Booking System - Flight price served 10,000 x #bookings - Consistency required only at booking time
  • 27. CQRS with event movement Apps Search Monitoring Apps Apps S T R E A M I N G P L AT F O R M Apps Search NoSQL Apps Apps DWH Hadoop S T R E A M I N G P L AT F O R M View Book Flight Apps Search Apps S T R E A M I N G P L A View Apps Search NoSQL Apps DWH S T R E A M I N G P L A View Get Flights Get Flights Get Flights Global Read Central Write
  • 28. The exact same logic applies to microservices
  • 29. Event Sourcing for Microservices Basket Service Fraud Service Billing Service Email ServiceBasket Events
  • 30. Event Sourcing for Microservices Basket Service Fraud Service Billing Service Email ServiceBasket Events Events are the storage model Each microservice creates a view that suits its use case
  • 31. Event Sourcing “with a DB” for monoliths. Event Streaming for Microservices & Scale. (Often via. CQRS)
  • 33. Event Streaming is a more general form of Event Sourcing/CQRS Event Streaming • Events as shared data model • Many microservices • Polyglot persistence • Event-Driven processing Traditional Event Sourcing • Events as a storage model • Single microservice • Single DB • data-at-rest
  • 34. Event Streams is about many event sources (Join, Filter, Transform and Summarize) Fraud Service Orders Service Payment Service Customer Service Event Log Projection created in Kafka Streams API
  • 35. KStreams & KSQL have different positioning •KStreams is a library for Dataflow programming: • App Logic & Stream Processor (including state) are combined. • Apps are stateful. • JVM only. •KSQL is a ‘database’ for event preparation: • App sends SQL to a separate process • Apps are stateless • Connect from any language
  • 36. This difference makes most sense if we we look to the future.
  • 38. Thesis • Serverless provides event-driven infrastructure • KSQL is the corollary: an event-driven database
  • 39. Serverless Functions (FaaS) • Write a function • Upload • Configure a trigger (HTTP, Messaging, Object Store, Database, Timer etc.) Request Respond Event Source
  • 40. FaaS in a Nutshell • Fully managed (Runs in a container pool) • Pay for execution time (not resources used) • Auto-scales with load • 0-1000+ concurrent functions • Stateless • Short lived (limit 5-15 mins) • Weak ordering guarantees • Cold start’s can be (very) slow: 100ms – 45s (AWS 250ms-7s)
  • 41. Where is FaaS useful? • Spikey workloads and ‘occasional’ use cases • Use cases that don’t typically warrant massive parallelism e.g. CI systems. • General purpose programming paradigm?
  • 42. But there are open questions
  • 43. Serverless Developer Ecosystem • Runtime diagnostics • Monitoring • Deploy loop • Testing • IDE integration Currently quite poor
  • 44. Harder than current approaches Easier than current approaches Amazon Google Microsoft Serverless programming will likely become prevalent
  • 45. In the future it seems unlikely we’ll manage our own infrastructure. But where will we manage our data?
  • 46.
  • 48. FaaS is event-driven But it isn’t streaming
  • 49. Complex, Timing issues, Scaling limits Customers Event Source Orders Event Source Payments Event Source Serverless functions handle only one event source FaaS/μS FaaS/μS FaaS/μS
  • 50. A slightly more complex example: Send email only to platinum customers
  • 51. Payments Event Source Event is received by serverless function FaaS/μS
  • 52. Payments Event Source Block and calls the database to get customer+order FaaS/μS Get customer Get order
  • 53. Payments Event Source Is it a ‘Platinum’ customer? FaaS/μS Get customer Get order Is the customer platinum?
  • 54. Payments Event Source Send email if ‘Platinum’ FaaS/μS Get customer Get order Maybe send email
  • 55. Payments Event Source Increase Load: 100 concurrant functions doing IO. FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS
  • 56. Payments Event Source Only send 2 emails. FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS FaaS/μS
  • 57. Send SQL Process boundary Orders Payments KSQL Customers Table Customers KSQL simplifies: App Logic CREATE STREAM foo AS SELECT * FROM orders, payments, customers LEFT JOIN… WHERE customer.type = ‘PLATINUM’ Order Payment Customer KSQL - Handle timing issues - No “per-event” IO. - Price efficient
  • 58. Functions have no additional data dependencies: Everything is in the event!
  • 59. Queries filter out the events you need (much like you filter rows in a database query)
  • 60. FaaSFaaSFaaSKSQL Customers Table KSQL as a “Database” for Event-Driven Infrastructure FaaSFaaS Stateless, elastic compute Prepare the events we need (Sateful) Orders Payments Customers Autoscale with load
  • 62. Event-Driven vs. Event Streaming Event Driven Event Streaming Multiple Event Sources Use Database + ETL + Code Handles automatically Efficiency Extract data from DB in the FaaS (IO) Only the data you need Logic-driven data requests. Call DB from the FaaS (IO) DB/KStreams KqlDB?
  • 63.
  • 65. Summary • Event Streaming provides the benefits of Event Sourcing to microservices and data pipelines. • Events are the data model. • Projections are the serving model: matching to each specific use case • Serving layer can be regenerated from the log (CQRS) • KSQL provides the same benefits for event-driven programs: e.g. preparing the event streams each FaaS application’s specific needs • In serverless architectures this drives efficiency: a ‘database- equivalent’ for event-driven infrastructure.
  • 66. FaaSFaaSFaaSKSQL Can I Build This? FaaSFaaS AWS Lambda / Azure Functions Connectors (in Preview) Hosted KSQL In Preview Confluent Cloud
  • 67. Things I didn’t tell you • Tools like KSQL provide data provisioning, not state mutation. • Use single writers. Try KSQL DB? • Can KSQL handle large state? • Unintended rebalance can stall processing • Static membership (KIP-345) – name the list of stream processors • Increase the timeout for rebalance after node removal (group.max.session.timeout.ms) • Worst case reload: RocksDB ~GbE speed • Can Kafka be used for long term storage? • Log files are immutable once they roll (unless compacted) • Jun spent a decade working on DB2 • Careful: • Historical reads can stall real-time requests (cached) • ZFS has several page cache optimizations • Tiered storage will help
  • 68. Find out More • Peeking Behind the Curtains of Serverless Platforms, Wang et al. • Cloud Programming Simplified: A Berkeley View on Serverless Compute • Neil Avery’s Journey to Event Driven Part 3. The Affinity Between Events, Streams and Serverless. • Designing Event Driven Systems, Ben Stopford