SlideShare ist ein Scribd-Unternehmen logo
1 von 33
Downloaden Sie, um offline zu lesen
Pulsar Summit
San Francisco
Hotel Nikko
August 18 2022
Tech Deep Dive
Matteo Merli
CTO • StreamNative
Towards a
ZooKeeper-less Pulsar
Co-creator of Pulsar
PMC Chair for Apache Pulsar
Member of Apache BookKeeper PMC
Prev: Splunk, Streamlio, Yahoo
Matteo Merli
CTO
StreamNative
Pulsar and Metadata
Pulsar cluster overview
Data Path
Metadata Path
Geo-Replication
What is metadata?
Examples of metadata
● Pointers to data
● Service discovery
● Distributed coordination
● System configuration
● Provisioning configuration
Topics metadata
Each persistent topic is
associated with a Managed
Ledger
Managed Ledger keeps a list of
ledgers for a topic
{
"ledgers" : [ {
"ledgerId" : 1234,
"entries" : 1000,
"size" : 433111,
"offloaded" : false
}, {
"ledgerId" : 5579,
"entries" : 50000,
"size" : 9433111,
"offloaded" : false
} ],
"schemaLedgers" : [ ],
"compactedLedger" : {
"ledgerId" : -1,
"entries" : -1,
"size" : -1,
"offloaded" : false
}
}
Ledger metadata
● Each BK ledger has an
associated metadata
● Contains
○ State of the ledger
○ Which bookies have the
data
LedgerMetadata{
formatVersion=3,
ensembleSize=2,
writeQuorumSize=2,
ackQuorumSize=2,
state=CLOSED,
length=1738964,
lastEntryId=1611
digestType=CRC32C,
password=base64:,
ensembles={
0=[bookie-1:3181, bookie-2:3181],
1000=[bookie-5:3181, bookie-2:3181]
},
customMetadata={
component=base64:bWFuYWdlZC1sZWRnZXI=,
pulsar/managed-ledger=base64:cHVibGlR=,
application=base64:cHVsc2Fy
}
}
Service discovery
● Find the list of available bookies
○ Which bookies are in read-only?
● Discover which broker owns a particular topic
● Find the list of available brokers
○ What is the current load on each broker?
Distributed coordination
● Acquire a lock over a particular resource
○ Ownership of group of topics
○ Signaling that some work on a particular resource is in
progress
■ BK autorecovery
● Leader election
○ Establish a single leader designed to perform some tasks
■ Load manager designates a leader that
○ Failover to other available nodes
System configuration
● Allow for dynamic settings
● Features can be activated/deactivated without restarting
brokers
● Keep isolation information
● Maintain tracking of (bookie → rack) mapping
Provisioning configuration
● Metadata for Tenants, Namespaces
● Policies to apply to namespaces
● Authorization definitions
● Highly-Cacheable metadata
What’s up with
ZooKeeper?
ZooKeeper
● Consensus based “database”
○ Data is replicated consistently to a quorum of nodes
● It is not horizontally scalable
○ Increasing the ZK cluster size does not increase the write
capacity
● All data is kept in memory in every node
○ Not very GC friendly
● It takes periodic snapshots of the entire dataset
ZooKeeper
● The amount of metadata that can be comfortably stored in ZK
is ~5GB
● Tuning and operating ZK to work with big datasets is not trivial
○ Requires deep knowledge of ZK internals
● In cloud and containerized environments, leader election can
sometime take few minutes:
○ Issues with DNS, software-defined-networking and sidecar
TCP proxies.
Why we would take ZK away?
● Big clusters → we don’t want to have a hard limit of the amount
of metadata
○ A horizontally scalable metadata store is more suited
● Small clusters → remove overhead of running ZK
○ Less components to deploy
○ Easier operations
PIP-45: A plan with
multiple steps
PIP-45: Pluggable metadata backend
● Instead of direct usage of ZooKeeper APIs, we have abstracted
all the accesses through a single generic API
● This API has multiple implementations:
○ ZooKeeper
○ Etcd
○ RocksDB (for standalone)
○ Memory (for unit tests)
Metadata semantics
We have identified 2 main patterns of access to the metadata
1. Simple key-value access + notifications
2. Complex coordination
Key-Value access
● MetadataStore → Key-value store access
○ put() – get() – delete()
○ Values are byte[]
○ Users can register for notifications
● MetadataCache → Object cache on top of MetadataStore
CoordinationService
● Contains primitives for “cluster coordination”
● High-level API that hides all the complexities
○ ResourceLock – Distributed lock over a shared resource
○ LeaderElection – Elect a leader among a set of peers
○ DistributedCounter – Generate unique IDs
Successes enabled
by MetadataStore
APIs in Pulsar 2.10
Pulsar broker metadata session revalidation
● All the coordination is going through CoordinationService
● All the locks are using the ResourceLock
When we lose a ZooKeeper session (or similarly an Etcd lease), we
are able to re-validate it later, without having to restart Pulsar
brokers.
This is a major cluster stability improvement.
Transparent batching of metadata operations
● All the metadata read and write operations are happening through a single
access point
● Accumulate operations into a queue and use underlying API for bulk access
(eg: ZK “multi” or Etcd transactions)
What’s next?
● Since Pulsar 2.10 one can choose the metadata service to use
for both the local metadata and the configuration store:
○ ZooKeeper
○ Etcd
○ It’s possible to add custom implementations
Current state of metadata in Pulsar
● Transparent horizontal scalability
● Ease of operations (add/remove nodes)
● No need for global linearizable history
● Scale up to 100 GB of total data set
● Read - Write rates scalable to ~1M ops/s
● Latency target: reads 99pct < 5ms — writes 99pct < 20ms
Defining the “perfect” metadata service
● Let’s not implement directly in Pulsar brokers
● Let’s not rewrite Paxos/Raft again
● Assume the facilities of a cloud-native environment
● Design for auto-tuning, from tiny to huge without admin
intervention
Design decisions
● Ultimate goal is to achieve a 10x increase in number of topics in
a cluster
● A small Pulsar cluster should be able to support millions of
topics
● Handling of metadata is the biggest obstacle
● It’s not the only factor though. We are also working on metrics,
lookups, overhead of single topic and global memory limits
What to expect
Matteo Merli
Thank you!
mmerli@streamnative.io
mmerli@apache.org
@merlimat
Pulsar Summit
San Francisco
Hotel Nikko
August 18 2022

Weitere ähnliche Inhalte

Was ist angesagt?

Apache Airflow Introduction
Apache Airflow IntroductionApache Airflow Introduction
Apache Airflow IntroductionLiangjun Jiang
 
Apache Con 2021 : Apache Bookkeeper Key Value Store and use cases
Apache Con 2021 : Apache Bookkeeper Key Value Store and use casesApache Con 2021 : Apache Bookkeeper Key Value Store and use cases
Apache Con 2021 : Apache Bookkeeper Key Value Store and use casesShivji Kumar Jha
 
How Orange Financial combat financial frauds over 50M transactions a day usin...
How Orange Financial combat financial frauds over 50M transactions a day usin...How Orange Financial combat financial frauds over 50M transactions a day usin...
How Orange Financial combat financial frauds over 50M transactions a day usin...StreamNative
 
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
 
Understanding InfluxDB’s New Storage Engine
Understanding InfluxDB’s New Storage EngineUnderstanding InfluxDB’s New Storage Engine
Understanding InfluxDB’s New Storage EngineInfluxData
 
Tips on High Performance Server Programming
Tips on High Performance Server ProgrammingTips on High Performance Server Programming
Tips on High Performance Server ProgrammingJoshua Zhu
 
Monitoring Apache Kafka
Monitoring Apache KafkaMonitoring Apache Kafka
Monitoring Apache Kafkaconfluent
 
Understanding of Apache kafka metrics for monitoring
Understanding of Apache kafka metrics for monitoring Understanding of Apache kafka metrics for monitoring
Understanding of Apache kafka metrics for monitoring SANG WON PARK
 
Monitoring using Prometheus and Grafana
Monitoring using Prometheus and GrafanaMonitoring using Prometheus and Grafana
Monitoring using Prometheus and GrafanaArvind Kumar G.S
 
MySQL Replication Performance Tuning for Fun and Profit!
MySQL Replication Performance Tuning for Fun and Profit!MySQL Replication Performance Tuning for Fun and Profit!
MySQL Replication Performance Tuning for Fun and Profit!Vitor Oliveira
 
Apache Tez - A unifying Framework for Hadoop Data Processing
Apache Tez - A unifying Framework for Hadoop Data ProcessingApache Tez - A unifying Framework for Hadoop Data Processing
Apache Tez - A unifying Framework for Hadoop Data ProcessingDataWorks Summit
 
Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022
Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022
Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022StreamNative
 
OpenTelemetry: From front- to backend (2022)
OpenTelemetry: From front- to backend (2022)OpenTelemetry: From front- to backend (2022)
OpenTelemetry: From front- to backend (2022)Sebastian Poxhofer
 
OpenTelemetry For Operators
OpenTelemetry For OperatorsOpenTelemetry For Operators
OpenTelemetry For OperatorsKevin Brockhoff
 
Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...
Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...
Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...Databricks
 
Galera Cluster - Node Recovery - Webinar slides
Galera Cluster - Node Recovery - Webinar slidesGalera Cluster - Node Recovery - Webinar slides
Galera Cluster - Node Recovery - Webinar slidesSeveralnines
 
Everything I Ever Learned About JVM Performance Tuning @Twitter
Everything I Ever Learned About JVM Performance Tuning @TwitterEverything I Ever Learned About JVM Performance Tuning @Twitter
Everything I Ever Learned About JVM Performance Tuning @TwitterAttila Szegedi
 
How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018
How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018
How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018javier ramirez
 
Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...
Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...
Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...StreamNative
 

Was ist angesagt? (20)

Apache Airflow Introduction
Apache Airflow IntroductionApache Airflow Introduction
Apache Airflow Introduction
 
Apache Con 2021 : Apache Bookkeeper Key Value Store and use cases
Apache Con 2021 : Apache Bookkeeper Key Value Store and use casesApache Con 2021 : Apache Bookkeeper Key Value Store and use cases
Apache Con 2021 : Apache Bookkeeper Key Value Store and use cases
 
How Orange Financial combat financial frauds over 50M transactions a day usin...
How Orange Financial combat financial frauds over 50M transactions a day usin...How Orange Financial combat financial frauds over 50M transactions a day usin...
How Orange Financial combat financial frauds over 50M transactions a day usin...
 
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 ...
 
Understanding InfluxDB’s New Storage Engine
Understanding InfluxDB’s New Storage EngineUnderstanding InfluxDB’s New Storage Engine
Understanding InfluxDB’s New Storage Engine
 
Tips on High Performance Server Programming
Tips on High Performance Server ProgrammingTips on High Performance Server Programming
Tips on High Performance Server Programming
 
Monitoring Apache Kafka
Monitoring Apache KafkaMonitoring Apache Kafka
Monitoring Apache Kafka
 
Understanding of Apache kafka metrics for monitoring
Understanding of Apache kafka metrics for monitoring Understanding of Apache kafka metrics for monitoring
Understanding of Apache kafka metrics for monitoring
 
Monitoring using Prometheus and Grafana
Monitoring using Prometheus and GrafanaMonitoring using Prometheus and Grafana
Monitoring using Prometheus and Grafana
 
MySQL Replication Performance Tuning for Fun and Profit!
MySQL Replication Performance Tuning for Fun and Profit!MySQL Replication Performance Tuning for Fun and Profit!
MySQL Replication Performance Tuning for Fun and Profit!
 
Apache Tez - A unifying Framework for Hadoop Data Processing
Apache Tez - A unifying Framework for Hadoop Data ProcessingApache Tez - A unifying Framework for Hadoop Data Processing
Apache Tez - A unifying Framework for Hadoop Data Processing
 
Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022
Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022
Message Redelivery: An Unexpected Journey - Pulsar Summit SF 2022
 
OpenTelemetry: From front- to backend (2022)
OpenTelemetry: From front- to backend (2022)OpenTelemetry: From front- to backend (2022)
OpenTelemetry: From front- to backend (2022)
 
OpenTelemetry For Operators
OpenTelemetry For OperatorsOpenTelemetry For Operators
OpenTelemetry For Operators
 
Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...
Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...
Improving SparkSQL Performance by 30%: How We Optimize Parquet Pushdown and P...
 
Galera Cluster - Node Recovery - Webinar slides
Galera Cluster - Node Recovery - Webinar slidesGalera Cluster - Node Recovery - Webinar slides
Galera Cluster - Node Recovery - Webinar slides
 
Everything I Ever Learned About JVM Performance Tuning @Twitter
Everything I Ever Learned About JVM Performance Tuning @TwitterEverything I Ever Learned About JVM Performance Tuning @Twitter
Everything I Ever Learned About JVM Performance Tuning @Twitter
 
How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018
How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018
How a BEAM runner executes a pipeline. Apache BEAM Summit London 2018
 
The Open vSwitch and OVN Projects
The Open vSwitch and OVN ProjectsThe Open vSwitch and OVN Projects
The Open vSwitch and OVN Projects
 
Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...
Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...
Tracking Apache Pulsar Messages with Apache SkyWalking - Pulsar Virtual Summi...
 

Ähnlich wie Towards a ZooKeeper-less Pulsar, etcd, etcd, etcd. - Pulsar Summit SF 2022

NetflixOSS Meetup season 3 episode 1
NetflixOSS Meetup season 3 episode 1NetflixOSS Meetup season 3 episode 1
NetflixOSS Meetup season 3 episode 1Ruslan Meshenberg
 
Logs @ OVHcloud
Logs @ OVHcloudLogs @ OVHcloud
Logs @ OVHcloudOVHcloud
 
Kubernetes @ Squarespace (SRE Portland Meetup October 2017)
Kubernetes @ Squarespace (SRE Portland Meetup October 2017)Kubernetes @ Squarespace (SRE Portland Meetup October 2017)
Kubernetes @ Squarespace (SRE Portland Meetup October 2017)Kevin Lynch
 
USENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a Month
USENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a MonthUSENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a Month
USENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a MonthNicolas Brousse
 
Big Data in 200 km/h | AWS Big Data Demystified #1.3
Big Data in 200 km/h | AWS Big Data Demystified #1.3  Big Data in 200 km/h | AWS Big Data Demystified #1.3
Big Data in 200 km/h | AWS Big Data Demystified #1.3 Omid Vahdaty
 
Netflix Open Source Meetup Season 4 Episode 2
Netflix Open Source Meetup Season 4 Episode 2Netflix Open Source Meetup Season 4 Episode 2
Netflix Open Source Meetup Season 4 Episode 2aspyker
 
Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...
Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...
Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...Hernan Costante
 
AWS Big Data Demystified #1: Big data architecture lessons learned
AWS Big Data Demystified #1: Big data architecture lessons learned AWS Big Data Demystified #1: Big data architecture lessons learned
AWS Big Data Demystified #1: Big data architecture lessons learned Omid Vahdaty
 
Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...
Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...
Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...Martin Zapletal
 
Introduction to apache kafka
Introduction to apache kafkaIntroduction to apache kafka
Introduction to apache kafkaSamuel Kerrien
 
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...javier ramirez
 
Security Monitoring for big Infrastructures without a Million Dollar budget
Security Monitoring for big Infrastructures without a Million Dollar budgetSecurity Monitoring for big Infrastructures without a Million Dollar budget
Security Monitoring for big Infrastructures without a Million Dollar budgetJuan Berner
 
Aggregated queries with Druid on terrabytes and petabytes of data
Aggregated queries with Druid on terrabytes and petabytes of dataAggregated queries with Druid on terrabytes and petabytes of data
Aggregated queries with Druid on terrabytes and petabytes of dataRostislav Pashuto
 
Gluster dev session #6 understanding gluster's network communication layer
Gluster dev session #6  understanding gluster's network   communication layerGluster dev session #6  understanding gluster's network   communication layer
Gluster dev session #6 understanding gluster's network communication layerPranith Karampuri
 
High performance json- postgre sql vs. mongodb
High performance json- postgre sql vs. mongodbHigh performance json- postgre sql vs. mongodb
High performance json- postgre sql vs. mongodbWei Shan Ang
 
Real-time analytics with Druid at Appsflyer
Real-time analytics with Druid at AppsflyerReal-time analytics with Druid at Appsflyer
Real-time analytics with Druid at AppsflyerMichael Spector
 
NetflixOSS Open House Lightning talks
NetflixOSS Open House Lightning talksNetflixOSS Open House Lightning talks
NetflixOSS Open House Lightning talksRuslan Meshenberg
 
Extreme Replication - RMOUG Presentation
Extreme Replication - RMOUG PresentationExtreme Replication - RMOUG Presentation
Extreme Replication - RMOUG PresentationBobby Curtis
 
Serverless Event Streaming with Pulsar Functions
Serverless Event Streaming with Pulsar FunctionsServerless Event Streaming with Pulsar Functions
Serverless Event Streaming with Pulsar FunctionsStreamNative
 
How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...
How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...
How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...Amazon Web Services
 

Ähnlich wie Towards a ZooKeeper-less Pulsar, etcd, etcd, etcd. - Pulsar Summit SF 2022 (20)

NetflixOSS Meetup season 3 episode 1
NetflixOSS Meetup season 3 episode 1NetflixOSS Meetup season 3 episode 1
NetflixOSS Meetup season 3 episode 1
 
Logs @ OVHcloud
Logs @ OVHcloudLogs @ OVHcloud
Logs @ OVHcloud
 
Kubernetes @ Squarespace (SRE Portland Meetup October 2017)
Kubernetes @ Squarespace (SRE Portland Meetup October 2017)Kubernetes @ Squarespace (SRE Portland Meetup October 2017)
Kubernetes @ Squarespace (SRE Portland Meetup October 2017)
 
USENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a Month
USENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a MonthUSENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a Month
USENIX LISA15: How TubeMogul Handles over One Trillion HTTP Requests a Month
 
Big Data in 200 km/h | AWS Big Data Demystified #1.3
Big Data in 200 km/h | AWS Big Data Demystified #1.3  Big Data in 200 km/h | AWS Big Data Demystified #1.3
Big Data in 200 km/h | AWS Big Data Demystified #1.3
 
Netflix Open Source Meetup Season 4 Episode 2
Netflix Open Source Meetup Season 4 Episode 2Netflix Open Source Meetup Season 4 Episode 2
Netflix Open Source Meetup Season 4 Episode 2
 
Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...
Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...
Eko10 - Security Monitoring for Big Infrastructures without a Million Dollar ...
 
AWS Big Data Demystified #1: Big data architecture lessons learned
AWS Big Data Demystified #1: Big data architecture lessons learned AWS Big Data Demystified #1: Big data architecture lessons learned
AWS Big Data Demystified #1: Big data architecture lessons learned
 
Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...
Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...
Large volume data analysis on the Typesafe Reactive Platform - Big Data Scala...
 
Introduction to apache kafka
Introduction to apache kafkaIntroduction to apache kafka
Introduction to apache kafka
 
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
Como creamos QuestDB Cloud, un SaaS basado en Kubernetes alrededor de QuestDB...
 
Security Monitoring for big Infrastructures without a Million Dollar budget
Security Monitoring for big Infrastructures without a Million Dollar budgetSecurity Monitoring for big Infrastructures without a Million Dollar budget
Security Monitoring for big Infrastructures without a Million Dollar budget
 
Aggregated queries with Druid on terrabytes and petabytes of data
Aggregated queries with Druid on terrabytes and petabytes of dataAggregated queries with Druid on terrabytes and petabytes of data
Aggregated queries with Druid on terrabytes and petabytes of data
 
Gluster dev session #6 understanding gluster's network communication layer
Gluster dev session #6  understanding gluster's network   communication layerGluster dev session #6  understanding gluster's network   communication layer
Gluster dev session #6 understanding gluster's network communication layer
 
High performance json- postgre sql vs. mongodb
High performance json- postgre sql vs. mongodbHigh performance json- postgre sql vs. mongodb
High performance json- postgre sql vs. mongodb
 
Real-time analytics with Druid at Appsflyer
Real-time analytics with Druid at AppsflyerReal-time analytics with Druid at Appsflyer
Real-time analytics with Druid at Appsflyer
 
NetflixOSS Open House Lightning talks
NetflixOSS Open House Lightning talksNetflixOSS Open House Lightning talks
NetflixOSS Open House Lightning talks
 
Extreme Replication - RMOUG Presentation
Extreme Replication - RMOUG PresentationExtreme Replication - RMOUG Presentation
Extreme Replication - RMOUG Presentation
 
Serverless Event Streaming with Pulsar Functions
Serverless Event Streaming with Pulsar FunctionsServerless Event Streaming with Pulsar Functions
Serverless Event Streaming with Pulsar Functions
 
How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...
How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...
How Netflix Uses Amazon Kinesis Streams to Monitor and Optimize Large-scale N...
 

Mehr von StreamNative

Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022
Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022
Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022StreamNative
 
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...StreamNative
 
Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...
Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...
Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...StreamNative
 
Distributed Database Design Decisions to Support High Performance Event Strea...
Distributed Database Design Decisions to Support High Performance Event Strea...Distributed Database Design Decisions to Support High Performance Event Strea...
Distributed Database Design Decisions to Support High Performance Event Strea...StreamNative
 
Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022
Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022
Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022StreamNative
 
Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...
Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...
Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...StreamNative
 
Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...
Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...
Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...StreamNative
 
Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...
Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...
Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...StreamNative
 
Understanding Broker Load Balancing - Pulsar Summit SF 2022
Understanding Broker Load Balancing - Pulsar Summit SF 2022Understanding Broker Load Balancing - Pulsar Summit SF 2022
Understanding Broker Load Balancing - Pulsar Summit SF 2022StreamNative
 
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...StreamNative
 
Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022
Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022
Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022StreamNative
 
Event-Driven Applications Done Right - Pulsar Summit SF 2022
Event-Driven Applications Done Right - Pulsar Summit SF 2022Event-Driven Applications Done Right - Pulsar Summit SF 2022
Event-Driven Applications Done Right - Pulsar Summit SF 2022StreamNative
 
Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022
Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022
Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022StreamNative
 
Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022
Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022
Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022StreamNative
 
Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022
Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022
Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022StreamNative
 
Welcome and Opening Remarks - Pulsar Summit SF 2022
Welcome and Opening Remarks - Pulsar Summit SF 2022Welcome and Opening Remarks - Pulsar Summit SF 2022
Welcome and Opening Remarks - Pulsar Summit SF 2022StreamNative
 
Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...
Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...
Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...StreamNative
 
MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...
MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...
MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...StreamNative
 
Improvements Made in KoP 2.9.0 - Pulsar Summit Asia 2021
Improvements Made in KoP 2.9.0  - Pulsar Summit Asia 2021Improvements Made in KoP 2.9.0  - Pulsar Summit Asia 2021
Improvements Made in KoP 2.9.0 - Pulsar Summit Asia 2021StreamNative
 
Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...
Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...
Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...StreamNative
 

Mehr von StreamNative (20)

Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022
Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022
Is Using KoP (Kafka-on-Pulsar) a Good Idea? - Pulsar Summit SF 2022
 
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
 
Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...
Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...
Blue-green deploys with Pulsar & Envoy in an event-driven microservice ecosys...
 
Distributed Database Design Decisions to Support High Performance Event Strea...
Distributed Database Design Decisions to Support High Performance Event Strea...Distributed Database Design Decisions to Support High Performance Event Strea...
Distributed Database Design Decisions to Support High Performance Event Strea...
 
Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022
Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022
Simplify Pulsar Functions Development with SQL - Pulsar Summit SF 2022
 
Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...
Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...
Validating Apache Pulsar’s Behavior under Failure Conditions - Pulsar Summit ...
 
Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...
Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...
Cross the Streams! Creating Streaming Data Pipelines with Apache Flink + Apac...
 
Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...
Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...
Unlocking the Power of Lakehouse Architectures with Apache Pulsar and Apache ...
 
Understanding Broker Load Balancing - Pulsar Summit SF 2022
Understanding Broker Load Balancing - Pulsar Summit SF 2022Understanding Broker Load Balancing - Pulsar Summit SF 2022
Understanding Broker Load Balancing - Pulsar Summit SF 2022
 
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
Building an Asynchronous Application Framework with Python and Pulsar - Pulsa...
 
Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022
Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022
Pulsar's Journey in Yahoo!: On-prem, Cloud and Hybrid - Pulsar Summit SF 2022
 
Event-Driven Applications Done Right - Pulsar Summit SF 2022
Event-Driven Applications Done Right - Pulsar Summit SF 2022Event-Driven Applications Done Right - Pulsar Summit SF 2022
Event-Driven Applications Done Right - Pulsar Summit SF 2022
 
Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022
Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022
Pulsar @ Scale. 200M RPM and 1K instances - Pulsar Summit SF 2022
 
Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022
Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022
Data Democracy: Journey to User-Facing Analytics - Pulsar Summit SF 2022
 
Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022
Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022
Beam + Pulsar: Powerful Stream Processing at Scale - Pulsar Summit SF 2022
 
Welcome and Opening Remarks - Pulsar Summit SF 2022
Welcome and Opening Remarks - Pulsar Summit SF 2022Welcome and Opening Remarks - Pulsar Summit SF 2022
Welcome and Opening Remarks - Pulsar Summit SF 2022
 
Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...
Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...
Log System As Backbone – How We Built the World’s Most Advanced Vector Databa...
 
MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...
MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...
MoP(MQTT on Pulsar) - a Powerful Tool for Apache Pulsar in IoT - Pulsar Summi...
 
Improvements Made in KoP 2.9.0 - Pulsar Summit Asia 2021
Improvements Made in KoP 2.9.0  - Pulsar Summit Asia 2021Improvements Made in KoP 2.9.0  - Pulsar Summit Asia 2021
Improvements Made in KoP 2.9.0 - Pulsar Summit Asia 2021
 
Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...
Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...
Pulsar in the Lakehouse: Overview of Apache Pulsar and Delta Lake Connector -...
 

Kürzlich hochgeladen

Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 3652toLead Limited
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsMark Billinghurst
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsEnterprise Knowledge
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationMichael W. Hawkins
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024Rafal Los
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machinePadma Pradeep
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationRadu Cotescu
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Alan Dix
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure servicePooja Nehwal
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slidespraypatel2
 
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
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...shyamraj55
 
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024BookNet Canada
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Paola De la Torre
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024Scott Keck-Warren
 
How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?XfilesPro
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking MenDelhi Call girls
 
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxFactors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxKatpro Technologies
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphNeo4j
 

Kürzlich hochgeladen (20)

Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
Tech-Forward - Achieving Business Readiness For Copilot in Microsoft 365
 
Human Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR SystemsHuman Factors of XR: Using Human Factors to Design XR Systems
Human Factors of XR: Using Human Factors to Design XR Systems
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
Install Stable Diffusion in windows machine
Install Stable Diffusion in windows machineInstall Stable Diffusion in windows machine
Install Stable Diffusion in windows machine
 
Scaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organizationScaling API-first – The story of a global engineering organization
Scaling API-first – The story of a global engineering organization
 
Pigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food ManufacturingPigging Solutions in Pet Food Manufacturing
Pigging Solutions in Pet Food Manufacturing
 
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...Swan(sea) Song – personal research during my six years at Swansea ... and bey...
Swan(sea) Song – personal research during my six years at Swansea ... and bey...
 
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure serviceWhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
WhatsApp 9892124323 ✓Call Girls In Kalyan ( Mumbai ) secure service
 
Slack Application Development 101 Slides
Slack Application Development 101 SlidesSlack Application Development 101 Slides
Slack Application Development 101 Slides
 
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...
 
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
Automating Business Process via MuleSoft Composer | Bangalore MuleSoft Meetup...
 
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
Transcript: #StandardsGoals for 2024: What’s new for BISAC - Tech Forum 2024
 
Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101Salesforce Community Group Quito, Salesforce 101
Salesforce Community Group Quito, Salesforce 101
 
SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024SQL Database Design For Developers at php[tek] 2024
SQL Database Design For Developers at php[tek] 2024
 
How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?How to Remove Document Management Hurdles with X-Docs?
How to Remove Document Management Hurdles with X-Docs?
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptxFactors to Consider When Choosing Accounts Payable Services Providers.pptx
Factors to Consider When Choosing Accounts Payable Services Providers.pptx
 
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge GraphSIEMENS: RAPUNZEL – A Tale About Knowledge Graph
SIEMENS: RAPUNZEL – A Tale About Knowledge Graph
 

Towards a ZooKeeper-less Pulsar, etcd, etcd, etcd. - Pulsar Summit SF 2022

  • 1. Pulsar Summit San Francisco Hotel Nikko August 18 2022 Tech Deep Dive Matteo Merli CTO • StreamNative Towards a ZooKeeper-less Pulsar
  • 2. Co-creator of Pulsar PMC Chair for Apache Pulsar Member of Apache BookKeeper PMC Prev: Splunk, Streamlio, Yahoo Matteo Merli CTO StreamNative
  • 9. Examples of metadata ● Pointers to data ● Service discovery ● Distributed coordination ● System configuration ● Provisioning configuration
  • 10. Topics metadata Each persistent topic is associated with a Managed Ledger Managed Ledger keeps a list of ledgers for a topic { "ledgers" : [ { "ledgerId" : 1234, "entries" : 1000, "size" : 433111, "offloaded" : false }, { "ledgerId" : 5579, "entries" : 50000, "size" : 9433111, "offloaded" : false } ], "schemaLedgers" : [ ], "compactedLedger" : { "ledgerId" : -1, "entries" : -1, "size" : -1, "offloaded" : false } }
  • 11. Ledger metadata ● Each BK ledger has an associated metadata ● Contains ○ State of the ledger ○ Which bookies have the data LedgerMetadata{ formatVersion=3, ensembleSize=2, writeQuorumSize=2, ackQuorumSize=2, state=CLOSED, length=1738964, lastEntryId=1611 digestType=CRC32C, password=base64:, ensembles={ 0=[bookie-1:3181, bookie-2:3181], 1000=[bookie-5:3181, bookie-2:3181] }, customMetadata={ component=base64:bWFuYWdlZC1sZWRnZXI=, pulsar/managed-ledger=base64:cHVibGlR=, application=base64:cHVsc2Fy } }
  • 12. Service discovery ● Find the list of available bookies ○ Which bookies are in read-only? ● Discover which broker owns a particular topic ● Find the list of available brokers ○ What is the current load on each broker?
  • 13. Distributed coordination ● Acquire a lock over a particular resource ○ Ownership of group of topics ○ Signaling that some work on a particular resource is in progress ■ BK autorecovery ● Leader election ○ Establish a single leader designed to perform some tasks ■ Load manager designates a leader that ○ Failover to other available nodes
  • 14. System configuration ● Allow for dynamic settings ● Features can be activated/deactivated without restarting brokers ● Keep isolation information ● Maintain tracking of (bookie → rack) mapping
  • 15. Provisioning configuration ● Metadata for Tenants, Namespaces ● Policies to apply to namespaces ● Authorization definitions ● Highly-Cacheable metadata
  • 17. ZooKeeper ● Consensus based “database” ○ Data is replicated consistently to a quorum of nodes ● It is not horizontally scalable ○ Increasing the ZK cluster size does not increase the write capacity ● All data is kept in memory in every node ○ Not very GC friendly ● It takes periodic snapshots of the entire dataset
  • 18. ZooKeeper ● The amount of metadata that can be comfortably stored in ZK is ~5GB ● Tuning and operating ZK to work with big datasets is not trivial ○ Requires deep knowledge of ZK internals ● In cloud and containerized environments, leader election can sometime take few minutes: ○ Issues with DNS, software-defined-networking and sidecar TCP proxies.
  • 19. Why we would take ZK away? ● Big clusters → we don’t want to have a hard limit of the amount of metadata ○ A horizontally scalable metadata store is more suited ● Small clusters → remove overhead of running ZK ○ Less components to deploy ○ Easier operations
  • 20. PIP-45: A plan with multiple steps
  • 21. PIP-45: Pluggable metadata backend ● Instead of direct usage of ZooKeeper APIs, we have abstracted all the accesses through a single generic API ● This API has multiple implementations: ○ ZooKeeper ○ Etcd ○ RocksDB (for standalone) ○ Memory (for unit tests)
  • 22. Metadata semantics We have identified 2 main patterns of access to the metadata 1. Simple key-value access + notifications 2. Complex coordination
  • 23. Key-Value access ● MetadataStore → Key-value store access ○ put() – get() – delete() ○ Values are byte[] ○ Users can register for notifications ● MetadataCache → Object cache on top of MetadataStore
  • 24. CoordinationService ● Contains primitives for “cluster coordination” ● High-level API that hides all the complexities ○ ResourceLock – Distributed lock over a shared resource ○ LeaderElection – Elect a leader among a set of peers ○ DistributedCounter – Generate unique IDs
  • 26. Pulsar broker metadata session revalidation ● All the coordination is going through CoordinationService ● All the locks are using the ResourceLock When we lose a ZooKeeper session (or similarly an Etcd lease), we are able to re-validate it later, without having to restart Pulsar brokers. This is a major cluster stability improvement.
  • 27. Transparent batching of metadata operations ● All the metadata read and write operations are happening through a single access point ● Accumulate operations into a queue and use underlying API for bulk access (eg: ZK “multi” or Etcd transactions)
  • 29. ● Since Pulsar 2.10 one can choose the metadata service to use for both the local metadata and the configuration store: ○ ZooKeeper ○ Etcd ○ It’s possible to add custom implementations Current state of metadata in Pulsar
  • 30. ● Transparent horizontal scalability ● Ease of operations (add/remove nodes) ● No need for global linearizable history ● Scale up to 100 GB of total data set ● Read - Write rates scalable to ~1M ops/s ● Latency target: reads 99pct < 5ms — writes 99pct < 20ms Defining the “perfect” metadata service
  • 31. ● Let’s not implement directly in Pulsar brokers ● Let’s not rewrite Paxos/Raft again ● Assume the facilities of a cloud-native environment ● Design for auto-tuning, from tiny to huge without admin intervention Design decisions
  • 32. ● Ultimate goal is to achieve a 10x increase in number of topics in a cluster ● A small Pulsar cluster should be able to support millions of topics ● Handling of metadata is the biggest obstacle ● It’s not the only factor though. We are also working on metrics, lookups, overhead of single topic and global memory limits What to expect