SlideShare a Scribd company logo
1 of 61
Download to read offline
SMACK Stack 1.1
Elodina is a big data as a service platform built on top
of open source software.
The Elodina platform solves today’s data
analytics needs by providing the tools and
support necessary to utilize open source
technologies.
http://www.elodina.net/
Whats SMACK Stack?
SMACK stack 1.0 has been traditionally Spark, Mesos, Akka, Cassandra and
Kafka lots https://dzone.com/articles/smack-stack-guide and lots lots more https:
//www.google.com/webhp?q=smack%20stack
Now we are going to introduce SMACK Stack 1.1 and talk more about dynamic
compute, micro services, orchestration, micro segmentation all part of what you
can do now with Streaming, Mesos, Analytics, Cassandra and Kafka
The free lunch is over!
http://www.gotw.ca/publications/concurrency-ddj.htm
Many industries still don’t get it
XML is everywhere but we have alternatives!
We can support XML interface but don’t have to take on the burden of the extra
data. You can save A LOT of overheard just by having a pre-processing step
taking the XML, turning it into Avro and processing and storing that.
It works https://github.com/elodina/xml-avro
You can even process the response in Avro but return the result in XML, more on
that later though!
You need to be running Mesos. Lots of options here!
What is most important is that you abstract your “Provider” from your “Grid”.
What is “The Grid”?
It is your PaaS layer you deploy too that runs your software. (aka your new
awesome super computer)
The grid is your mesos cluster. You are likely going to have more than one so plan
accordingly. Think of it as immutable infrastructure, the computer does.
Step 1
“Provider” of compute resources
The Grid … 2.0 ...
https://github.com/elodina/sawfly/blob/master/cloud-deploy-grid.md
Program against your datacenter like it’s a single pool of resources Apache Mesos abstracts CPU,
memory, storage, and other compute resources away from machines (physical or virtual), enabling
fault-tolerant and elastic distributed systems to easily be built and run effectively. Mesosphere’s Data
Center Operating System (DCOS) is an operating system that spans all of the machines in a datacenter
or cloud and treats them as a single computer, providing a highly elastic and highly scalable way of
deploying applications, services, and big data infrastructure on shared resources. DCOS is based on
Apache Mesos and includes a distributed systems kernel with enterprise-grade security.
Data Center Optimization!
But there is more!
● Provisioning
● Micro Segmentation
● Orchestration
● Configuration Management
● Service Discovery
● Deployment Isolation and Identification
● Telemetry, Tracing, Ops Stuff, Etc
● Oh My!
It boils back down into stacks! https://github.com/elodina/stack-deploy and how
you are working with your schedulers in your cluster ultimatlly.
Stack Deploy to the rescue!
In the Grid you need Schedulers!
● Kafka – Producer/Consumer-based message queue management
● Exhibitor – Supervisor for distributed persistence (like ZooKeeper)
● Cassandra/DSE – HA, scalable, distributed NoSQL data storage
● Storm – Topology-based Real-time distributed data streaming
● Monarch – Distributed Remote Procedure Calls, Kafka REST interface and schema repository
● Zipkin – Configure, launch and manage Zipkin distributed trace on Mesos
● HDFS – Configure, launch and manage HDFS on Mesos (coming soon)
● Stockpile – Consumer to “stock pile” data into persistent storage (mesos scheduler only for c* now)
● MirrorMaker – Consumer to make a mirror copy of data to destination
● StatsD – Producer to pump StatsD on Mesos into Kafka for consumption, preserves layers
● SysLog – Producer to pump Syslog on Mesos into Kafka for consumption, preserves layers
https://github.com/elodina/
Virtual Telemetry “Data Center” In the Grid
ZipkinQATeamBuild92
● 1x Exhibitor-Mesos
● 1x Exhibitor
● 1x DSE-Mesos
● 1x Cassandra node
● 1x Kafka-Mesos
● 1x Kafka 0.8 broker
● 1x Zipkin-Mesos
● 1x Zipkin Collector
● 1x Zipkin Query
● 1x Zipkin Web
“cluster”
“zone”
“Stack” - defaultSimpleZipkinFull
“data center”
Stack Deploy In Action
./stack-deploy addlayer --file stacks/cassandra_dc.stack --level datacenter
./stack-deploy addlayer --file stacks/cassandra_cluster.stack --level cluster --parent cassandra_dc
./stack-deploy addlayer --file stacks/cassandra_zone1.stack --level zone --parent cassandra_cluster
./stack-deploy addlayer --file stacks/cassandra_zone2.stack --level zone --parent cassandra_cluster
./stack-deploy add --file stacks/cassandra.stack
./stack-deploy run cassandra --zone cassandra_zone1
Full Stack Deployments
Cassandra
Cassandra Multi DC
Casandra https://github.com/elodina/datastax-enterprise-mesos
Start your nodes!
Apache Kafka
• Apache Kafka
o http://kafka.apache.org
• Apache Kafka Source Code
o https://github.com/apache/kafka
• Documentation
o http://kafka.apache.org/documentation.html
• Wiki
o https://cwiki.apache.org/confluence/display/KAFKA/Index
It often starts with just one data pipeline
Reuse of data pipelines for new producers
Reuse of existing providers for new consumers
Eventually the solution becomes the problem
Kafka decouples data-pipelines
Topics & Partitions
A high-throughput distributed messaging system
rethought as a distributed commit log.
Intra Cluster Replication
Mesos Kafka http://github.com/mesos/kafka
Streaming & Analytics
● The landscape of streaming is about to get more fragmented and harder to
navigate. This is not all bad news and it is not much different than where we
were with NoSQL 6 years ago or so.
● Different systems are getting really (really (really)) good at different things.
○ Dag based systems
○ Event based systems
○ Query & Execution Engines
○ Streaming Engines
○ Etc!
GearPump
Airflow
Spring Cloud Data Flow
Storm (and Storm Topology based systems)
Storm Nimbus
{
"id": "storm-nimbus",
"cmd": "cp storm.yaml storm-mesos-0.9.6/conf && cd storm-mesos-0.9.6 && ./bin/storm-mesos nimbus -c mesos.master.url=zk:
//zookeeper.service:2181/mesos -c storm.zookeeper.servers="["zookeeper.service"]" -c nimbus.thrift.port=$PORT0 -c topology.
mesos.worker.cpu=0.5 -c topology.mesos.worker.mem.mb=615 -c worker.childopts=-Xmx512m -c topology.mesos.executor.cpu=0.1 -c
topology.mesos.executor.mem.mb=160 -c supervisor.childopts=-Xmx128m -c mesos.executor.uri=http://repo.elodina.s3.amazonaws.
com/storm-mesos-0.9.6.tgz -c storm.log.dir=$(pwd)/logs",
"cpus": 1.0,
"mem": 1024,
"ports": [31056],
"requirePorts": true,
"instances": 1,
"uris": [
"http://repo.elodina.s3.amazonaws.com/storm-mesos-0.9.6.tgz",
"http://repo.elodina.s3.amazonaws.com/storm.yaml"
]
}
Storm UI
{
"id": "storm-ui",
"cmd": "cp storm.yaml storm-mesos-0.9.6/conf && cd storm-mesos-0.9.6 && ./bin/storm ui -c ui.port=$PORT0 -c nimbus.thrift.port=31056 -c nimbus.
host=storm-nimbus.service -c storm.log.dir=$(pwd)/logs",
"cpus": 0.2,
"mem": 512,
"ports": [31067],
"requirePorts": true,
"instances": 1,
"uris": [
"http://repo.elodina.s3.amazonaws.com/storm-mesos-0.9.6.tgz",
"http://repo.elodina.s3.amazonaws.com/storm.yaml"
],
"healthChecks": [
{
"protocol": "HTTP",
"portIndex": 0,
"path": "/",
"gracePeriodSeconds": 120,
"intervalSeconds": 20,
"maxConsecutiveFailures": 3
}
]
}
Storm Kafka - new spouts & bolts for Kafka 8, 9, ...
Apache Kafka Streams
Go Kafka Client - Fan Out Processing
https://github.com/elodina/go-kafka-client-mesos
● Dynamic Kafka Log workers
● Blue/Green Deploy Support
● Fan Out Processing
● Auditable
● Batches
● Scalable/Auto-Scalable
Questions?
http://www.elodina.net

More Related Content

What's hot

Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...
Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...
Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...Helena Edelson
 
Real-Time Anomaly Detection with Spark MLlib, Akka and Cassandra
Real-Time Anomaly Detection  with Spark MLlib, Akka and  CassandraReal-Time Anomaly Detection  with Spark MLlib, Akka and  Cassandra
Real-Time Anomaly Detection with Spark MLlib, Akka and CassandraNatalino Busa
 
The How and Why of Fast Data Analytics with Apache Spark
The How and Why of Fast Data Analytics with Apache SparkThe How and Why of Fast Data Analytics with Apache Spark
The How and Why of Fast Data Analytics with Apache SparkLegacy Typesafe (now Lightbend)
 
Tachyon and Apache Spark
Tachyon and Apache SparkTachyon and Apache Spark
Tachyon and Apache Sparkrhatr
 
Sa introduction to big data pipelining with cassandra & spark west mins...
Sa introduction to big data pipelining with cassandra & spark   west mins...Sa introduction to big data pipelining with cassandra & spark   west mins...
Sa introduction to big data pipelining with cassandra & spark west mins...Simon Ambridge
 
Fully fault tolerant real time data pipeline with docker and mesos
Fully fault tolerant real time data pipeline with docker and mesos Fully fault tolerant real time data pipeline with docker and mesos
Fully fault tolerant real time data pipeline with docker and mesos Rahul Kumar
 
Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...
Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...
Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...Lucidworks
 
Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...
Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...
Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...Helena Edelson
 
Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...
Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...
Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...Spark Summit
 
Feeding Cassandra with Spark-Streaming and Kafka
Feeding Cassandra with Spark-Streaming and KafkaFeeding Cassandra with Spark-Streaming and Kafka
Feeding Cassandra with Spark-Streaming and KafkaDataStax Academy
 
Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...
Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...
Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...Brian O'Neill
 
Using the SDACK Architecture to Build a Big Data Product
Using the SDACK Architecture to Build a Big Data ProductUsing the SDACK Architecture to Build a Big Data Product
Using the SDACK Architecture to Build a Big Data ProductEvans Ye
 
Spark streaming , Spark SQL
Spark streaming , Spark SQLSpark streaming , Spark SQL
Spark streaming , Spark SQLYousun Jeong
 
Analyzing Time Series Data with Apache Spark and Cassandra
Analyzing Time Series Data with Apache Spark and CassandraAnalyzing Time Series Data with Apache Spark and Cassandra
Analyzing Time Series Data with Apache Spark and CassandraPatrick McFadin
 
Real time data viz with Spark Streaming, Kafka and D3.js
Real time data viz with Spark Streaming, Kafka and D3.jsReal time data viz with Spark Streaming, Kafka and D3.js
Real time data viz with Spark Streaming, Kafka and D3.jsBen Laird
 
Data processing platforms with SMACK: Spark and Mesos internals
Data processing platforms with SMACK:  Spark and Mesos internalsData processing platforms with SMACK:  Spark and Mesos internals
Data processing platforms with SMACK: Spark and Mesos internalsAnton Kirillov
 
Streaming Analytics with Spark, Kafka, Cassandra and Akka
Streaming Analytics with Spark, Kafka, Cassandra and AkkaStreaming Analytics with Spark, Kafka, Cassandra and Akka
Streaming Analytics with Spark, Kafka, Cassandra and AkkaHelena Edelson
 
Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...
Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...
Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...Helena Edelson
 

What's hot (20)

Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...
Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...
Lambda Architecture with Spark, Spark Streaming, Kafka, Cassandra, Akka and S...
 
Real-Time Anomaly Detection with Spark MLlib, Akka and Cassandra
Real-Time Anomaly Detection  with Spark MLlib, Akka and  CassandraReal-Time Anomaly Detection  with Spark MLlib, Akka and  Cassandra
Real-Time Anomaly Detection with Spark MLlib, Akka and Cassandra
 
The How and Why of Fast Data Analytics with Apache Spark
The How and Why of Fast Data Analytics with Apache SparkThe How and Why of Fast Data Analytics with Apache Spark
The How and Why of Fast Data Analytics with Apache Spark
 
Tachyon and Apache Spark
Tachyon and Apache SparkTachyon and Apache Spark
Tachyon and Apache Spark
 
Sa introduction to big data pipelining with cassandra & spark west mins...
Sa introduction to big data pipelining with cassandra & spark   west mins...Sa introduction to big data pipelining with cassandra & spark   west mins...
Sa introduction to big data pipelining with cassandra & spark west mins...
 
Fully fault tolerant real time data pipeline with docker and mesos
Fully fault tolerant real time data pipeline with docker and mesos Fully fault tolerant real time data pipeline with docker and mesos
Fully fault tolerant real time data pipeline with docker and mesos
 
Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...
Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...
Near Real Time Indexing Kafka Messages into Apache Blur: Presented by Dibyend...
 
Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...
Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...
Fast and Simplified Streaming, Ad-Hoc and Batch Analytics with FiloDB and Spa...
 
Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...
Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...
Recipes for Running Spark Streaming Applications in Production-(Tathagata Das...
 
Feeding Cassandra with Spark-Streaming and Kafka
Feeding Cassandra with Spark-Streaming and KafkaFeeding Cassandra with Spark-Streaming and Kafka
Feeding Cassandra with Spark-Streaming and Kafka
 
Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...
Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...
Re-envisioning the Lambda Architecture : Web Services & Real-time Analytics ...
 
Lambda architecture
Lambda architectureLambda architecture
Lambda architecture
 
Using the SDACK Architecture to Build a Big Data Product
Using the SDACK Architecture to Build a Big Data ProductUsing the SDACK Architecture to Build a Big Data Product
Using the SDACK Architecture to Build a Big Data Product
 
Spark streaming , Spark SQL
Spark streaming , Spark SQLSpark streaming , Spark SQL
Spark streaming , Spark SQL
 
Cassandra & Spark for IoT
Cassandra & Spark for IoTCassandra & Spark for IoT
Cassandra & Spark for IoT
 
Analyzing Time Series Data with Apache Spark and Cassandra
Analyzing Time Series Data with Apache Spark and CassandraAnalyzing Time Series Data with Apache Spark and Cassandra
Analyzing Time Series Data with Apache Spark and Cassandra
 
Real time data viz with Spark Streaming, Kafka and D3.js
Real time data viz with Spark Streaming, Kafka and D3.jsReal time data viz with Spark Streaming, Kafka and D3.js
Real time data viz with Spark Streaming, Kafka and D3.js
 
Data processing platforms with SMACK: Spark and Mesos internals
Data processing platforms with SMACK:  Spark and Mesos internalsData processing platforms with SMACK:  Spark and Mesos internals
Data processing platforms with SMACK: Spark and Mesos internals
 
Streaming Analytics with Spark, Kafka, Cassandra and Akka
Streaming Analytics with Spark, Kafka, Cassandra and AkkaStreaming Analytics with Spark, Kafka, Cassandra and Akka
Streaming Analytics with Spark, Kafka, Cassandra and Akka
 
Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...
Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...
Leveraging Kafka for Big Data in Real Time Bidding, Analytics, ML & Campaign ...
 

Similar to SMACK Stack 1.1

Containerized Data Persistence on Mesos
Containerized Data Persistence on MesosContainerized Data Persistence on Mesos
Containerized Data Persistence on MesosJoe Stein
 
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...Joe Stein
 
MANTL Data Platform, Microservices and BigData Services
MANTL Data Platform, Microservices and BigData ServicesMANTL Data Platform, Microservices and BigData Services
MANTL Data Platform, Microservices and BigData ServicesCisco DevNet
 
Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...
Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...
Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...DataStax Academy
 
Deploy data analysis pipeline with mesos and docker
Deploy data analysis pipeline with mesos and dockerDeploy data analysis pipeline with mesos and docker
Deploy data analysis pipeline with mesos and dockerVu Nguyen Duy
 
Azure fb-google Web Services
Azure fb-google Web ServicesAzure fb-google Web Services
Azure fb-google Web ServicesShreya Srivastava
 
OSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating System
OSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating SystemOSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating System
OSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating SystemNETWAYS
 
Modern Elastic Datacenter Architecture
Modern Elastic Datacenter ArchitectureModern Elastic Datacenter Architecture
Modern Elastic Datacenter ArchitectureWeston Bassler
 
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...C4Media
 
Smack Stack and Beyond—Building Fast Data Pipelines with Jorg Schad
Smack Stack and Beyond—Building Fast Data Pipelines with Jorg SchadSmack Stack and Beyond—Building Fast Data Pipelines with Jorg Schad
Smack Stack and Beyond—Building Fast Data Pipelines with Jorg SchadSpark Summit
 
Enabling Microservices Frameworks to Solve Business Problems
Enabling Microservices Frameworks to Solve  Business ProblemsEnabling Microservices Frameworks to Solve  Business Problems
Enabling Microservices Frameworks to Solve Business ProblemsKen Owens
 
Dataservices - Processing Big Data The Microservice Way
Dataservices - Processing Big Data The Microservice WayDataservices - Processing Big Data The Microservice Way
Dataservices - Processing Big Data The Microservice WayJosef Adersberger
 
Cisco: Cassandra adoption on Cisco UCS & OpenStack
Cisco: Cassandra adoption on Cisco UCS & OpenStackCisco: Cassandra adoption on Cisco UCS & OpenStack
Cisco: Cassandra adoption on Cisco UCS & OpenStackDataStax Academy
 
HPC and cloud distributed computing, as a journey
HPC and cloud distributed computing, as a journeyHPC and cloud distributed computing, as a journey
HPC and cloud distributed computing, as a journeyPeter Clapham
 
Simplifying Big Data Integration with Syncsort DMX and DMX-h
Simplifying Big Data Integration with Syncsort DMX and DMX-hSimplifying Big Data Integration with Syncsort DMX and DMX-h
Simplifying Big Data Integration with Syncsort DMX and DMX-hPrecisely
 
High Performance Processing of Streaming Data
High Performance Processing of Streaming DataHigh Performance Processing of Streaming Data
High Performance Processing of Streaming DataGeoffrey Fox
 
Big Data Streams Architectures. Why? What? How?
Big Data Streams Architectures. Why? What? How?Big Data Streams Architectures. Why? What? How?
Big Data Streams Architectures. Why? What? How?Anton Nazaruk
 
Ceph-Mesos framework
Ceph-Mesos frameworkCeph-Mesos framework
Ceph-Mesos frameworkZhongyue Luo
 

Similar to SMACK Stack 1.1 (20)

Containerized Data Persistence on Mesos
Containerized Data Persistence on MesosContainerized Data Persistence on Mesos
Containerized Data Persistence on Mesos
 
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
 
MANTL Data Platform, Microservices and BigData Services
MANTL Data Platform, Microservices and BigData ServicesMANTL Data Platform, Microservices and BigData Services
MANTL Data Platform, Microservices and BigData Services
 
Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...
Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...
Typesafe & William Hill: Cassandra, Spark, and Kafka - The New Streaming Data...
 
Deploy data analysis pipeline with mesos and docker
Deploy data analysis pipeline with mesos and dockerDeploy data analysis pipeline with mesos and docker
Deploy data analysis pipeline with mesos and docker
 
Azure fb-google Web Services
Azure fb-google Web ServicesAzure fb-google Web Services
Azure fb-google Web Services
 
OSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating System
OSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating SystemOSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating System
OSDC 2015: Bernd Mathiske | Why the Datacenter Needs an Operating System
 
Modern Elastic Datacenter Architecture
Modern Elastic Datacenter ArchitectureModern Elastic Datacenter Architecture
Modern Elastic Datacenter Architecture
 
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
Making Distributed Data Persistent Services Elastic (Without Losing All Your ...
 
Mesos by zigi
Mesos by zigiMesos by zigi
Mesos by zigi
 
Smack Stack and Beyond—Building Fast Data Pipelines with Jorg Schad
Smack Stack and Beyond—Building Fast Data Pipelines with Jorg SchadSmack Stack and Beyond—Building Fast Data Pipelines with Jorg Schad
Smack Stack and Beyond—Building Fast Data Pipelines with Jorg Schad
 
Enabling Microservices Frameworks to Solve Business Problems
Enabling Microservices Frameworks to Solve  Business ProblemsEnabling Microservices Frameworks to Solve  Business Problems
Enabling Microservices Frameworks to Solve Business Problems
 
Dataservices - Processing Big Data The Microservice Way
Dataservices - Processing Big Data The Microservice WayDataservices - Processing Big Data The Microservice Way
Dataservices - Processing Big Data The Microservice Way
 
Cisco: Cassandra adoption on Cisco UCS & OpenStack
Cisco: Cassandra adoption on Cisco UCS & OpenStackCisco: Cassandra adoption on Cisco UCS & OpenStack
Cisco: Cassandra adoption on Cisco UCS & OpenStack
 
HPC and cloud distributed computing, as a journey
HPC and cloud distributed computing, as a journeyHPC and cloud distributed computing, as a journey
HPC and cloud distributed computing, as a journey
 
Scabiv0.2
Scabiv0.2Scabiv0.2
Scabiv0.2
 
Simplifying Big Data Integration with Syncsort DMX and DMX-h
Simplifying Big Data Integration with Syncsort DMX and DMX-hSimplifying Big Data Integration with Syncsort DMX and DMX-h
Simplifying Big Data Integration with Syncsort DMX and DMX-h
 
High Performance Processing of Streaming Data
High Performance Processing of Streaming DataHigh Performance Processing of Streaming Data
High Performance Processing of Streaming Data
 
Big Data Streams Architectures. Why? What? How?
Big Data Streams Architectures. Why? What? How?Big Data Streams Architectures. Why? What? How?
Big Data Streams Architectures. Why? What? How?
 
Ceph-Mesos framework
Ceph-Mesos frameworkCeph-Mesos framework
Ceph-Mesos framework
 

More from Joe Stein

Streaming Processing with a Distributed Commit Log
Streaming Processing with a Distributed Commit LogStreaming Processing with a Distributed Commit Log
Streaming Processing with a Distributed Commit LogJoe Stein
 
Get started with Developing Frameworks in Go on Apache Mesos
Get started with Developing Frameworks in Go on Apache MesosGet started with Developing Frameworks in Go on Apache Mesos
Get started with Developing Frameworks in Go on Apache MesosJoe Stein
 
Introduction To Apache Mesos
Introduction To Apache MesosIntroduction To Apache Mesos
Introduction To Apache MesosJoe Stein
 
Real-Time Log Analysis with Apache Mesos, Kafka and Cassandra
Real-Time Log Analysis with Apache Mesos, Kafka and CassandraReal-Time Log Analysis with Apache Mesos, Kafka and Cassandra
Real-Time Log Analysis with Apache Mesos, Kafka and CassandraJoe Stein
 
Developing Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache KafkaDeveloping Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache KafkaJoe Stein
 
Developing Frameworks for Apache Mesos
Developing Frameworks  for Apache MesosDeveloping Frameworks  for Apache Mesos
Developing Frameworks for Apache MesosJoe Stein
 
Making Apache Kafka Elastic with Apache Mesos
Making Apache Kafka Elastic with Apache MesosMaking Apache Kafka Elastic with Apache Mesos
Making Apache Kafka Elastic with Apache MesosJoe Stein
 
Real-Time Distributed and Reactive Systems with Apache Kafka and Apache Accumulo
Real-Time Distributed and Reactive Systems with Apache Kafka and Apache AccumuloReal-Time Distributed and Reactive Systems with Apache Kafka and Apache Accumulo
Real-Time Distributed and Reactive Systems with Apache Kafka and Apache AccumuloJoe Stein
 
Building and Deploying Application to Apache Mesos
Building and Deploying Application to Apache MesosBuilding and Deploying Application to Apache Mesos
Building and Deploying Application to Apache MesosJoe Stein
 
Apache Kafka, HDFS, Accumulo and more on Mesos
Apache Kafka, HDFS, Accumulo and more on MesosApache Kafka, HDFS, Accumulo and more on Mesos
Apache Kafka, HDFS, Accumulo and more on MesosJoe Stein
 
Developing with the Go client for Apache Kafka
Developing with the Go client for Apache KafkaDeveloping with the Go client for Apache Kafka
Developing with the Go client for Apache KafkaJoe Stein
 
Current and Future of Apache Kafka
Current and Future of Apache KafkaCurrent and Future of Apache Kafka
Current and Future of Apache KafkaJoe Stein
 
Introduction Apache Kafka
Introduction Apache KafkaIntroduction Apache Kafka
Introduction Apache KafkaJoe Stein
 
Introduction to Apache Mesos
Introduction to Apache MesosIntroduction to Apache Mesos
Introduction to Apache MesosJoe Stein
 
Developing Realtime Data Pipelines With Apache Kafka
Developing Realtime Data Pipelines With Apache KafkaDeveloping Realtime Data Pipelines With Apache Kafka
Developing Realtime Data Pipelines With Apache KafkaJoe Stein
 
Developing Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache KafkaDeveloping Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache KafkaJoe Stein
 
Real-time streaming and data pipelines with Apache Kafka
Real-time streaming and data pipelines with Apache KafkaReal-time streaming and data pipelines with Apache Kafka
Real-time streaming and data pipelines with Apache KafkaJoe Stein
 
Apache Cassandra 2.0
Apache Cassandra 2.0Apache Cassandra 2.0
Apache Cassandra 2.0Joe Stein
 
Storing Time Series Metrics With Cassandra and Composite Columns
Storing Time Series Metrics With Cassandra and Composite ColumnsStoring Time Series Metrics With Cassandra and Composite Columns
Storing Time Series Metrics With Cassandra and Composite ColumnsJoe Stein
 
Apache Kafka
Apache KafkaApache Kafka
Apache KafkaJoe Stein
 

More from Joe Stein (20)

Streaming Processing with a Distributed Commit Log
Streaming Processing with a Distributed Commit LogStreaming Processing with a Distributed Commit Log
Streaming Processing with a Distributed Commit Log
 
Get started with Developing Frameworks in Go on Apache Mesos
Get started with Developing Frameworks in Go on Apache MesosGet started with Developing Frameworks in Go on Apache Mesos
Get started with Developing Frameworks in Go on Apache Mesos
 
Introduction To Apache Mesos
Introduction To Apache MesosIntroduction To Apache Mesos
Introduction To Apache Mesos
 
Real-Time Log Analysis with Apache Mesos, Kafka and Cassandra
Real-Time Log Analysis with Apache Mesos, Kafka and CassandraReal-Time Log Analysis with Apache Mesos, Kafka and Cassandra
Real-Time Log Analysis with Apache Mesos, Kafka and Cassandra
 
Developing Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache KafkaDeveloping Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache Kafka
 
Developing Frameworks for Apache Mesos
Developing Frameworks  for Apache MesosDeveloping Frameworks  for Apache Mesos
Developing Frameworks for Apache Mesos
 
Making Apache Kafka Elastic with Apache Mesos
Making Apache Kafka Elastic with Apache MesosMaking Apache Kafka Elastic with Apache Mesos
Making Apache Kafka Elastic with Apache Mesos
 
Real-Time Distributed and Reactive Systems with Apache Kafka and Apache Accumulo
Real-Time Distributed and Reactive Systems with Apache Kafka and Apache AccumuloReal-Time Distributed and Reactive Systems with Apache Kafka and Apache Accumulo
Real-Time Distributed and Reactive Systems with Apache Kafka and Apache Accumulo
 
Building and Deploying Application to Apache Mesos
Building and Deploying Application to Apache MesosBuilding and Deploying Application to Apache Mesos
Building and Deploying Application to Apache Mesos
 
Apache Kafka, HDFS, Accumulo and more on Mesos
Apache Kafka, HDFS, Accumulo and more on MesosApache Kafka, HDFS, Accumulo and more on Mesos
Apache Kafka, HDFS, Accumulo and more on Mesos
 
Developing with the Go client for Apache Kafka
Developing with the Go client for Apache KafkaDeveloping with the Go client for Apache Kafka
Developing with the Go client for Apache Kafka
 
Current and Future of Apache Kafka
Current and Future of Apache KafkaCurrent and Future of Apache Kafka
Current and Future of Apache Kafka
 
Introduction Apache Kafka
Introduction Apache KafkaIntroduction Apache Kafka
Introduction Apache Kafka
 
Introduction to Apache Mesos
Introduction to Apache MesosIntroduction to Apache Mesos
Introduction to Apache Mesos
 
Developing Realtime Data Pipelines With Apache Kafka
Developing Realtime Data Pipelines With Apache KafkaDeveloping Realtime Data Pipelines With Apache Kafka
Developing Realtime Data Pipelines With Apache Kafka
 
Developing Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache KafkaDeveloping Real-Time Data Pipelines with Apache Kafka
Developing Real-Time Data Pipelines with Apache Kafka
 
Real-time streaming and data pipelines with Apache Kafka
Real-time streaming and data pipelines with Apache KafkaReal-time streaming and data pipelines with Apache Kafka
Real-time streaming and data pipelines with Apache Kafka
 
Apache Cassandra 2.0
Apache Cassandra 2.0Apache Cassandra 2.0
Apache Cassandra 2.0
 
Storing Time Series Metrics With Cassandra and Composite Columns
Storing Time Series Metrics With Cassandra and Composite ColumnsStoring Time Series Metrics With Cassandra and Composite Columns
Storing Time Series Metrics With Cassandra and Composite Columns
 
Apache Kafka
Apache KafkaApache Kafka
Apache Kafka
 

Recently uploaded

How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.Curtis Poe
 
unit 4 immunoblotting technique complete.pptx
unit 4 immunoblotting technique complete.pptxunit 4 immunoblotting technique complete.pptx
unit 4 immunoblotting technique complete.pptxBkGupta21
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024Lorenzo Miniero
 
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxDigital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxLoriGlavin3
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfAddepto
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc
 
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
 
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
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Mark Simos
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfMounikaPolabathina
 
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
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024BookNet Canada
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brandgvaughan
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024Lonnie McRorey
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxLoriGlavin3
 

Recently uploaded (20)

How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.
 
unit 4 immunoblotting technique complete.pptx
unit 4 immunoblotting technique complete.pptxunit 4 immunoblotting technique complete.pptx
unit 4 immunoblotting technique complete.pptx
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024SIP trunking in Janus @ Kamailio World 2024
SIP trunking in Janus @ Kamailio World 2024
 
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxDigital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
Gen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdfGen AI in Business - Global Trends Report 2024.pdf
Gen AI in Business - Global Trends Report 2024.pdf
 
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
 
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data PrivacyTrustArc Webinar - How to Build Consumer Trust Through Data Privacy
TrustArc Webinar - How to Build Consumer Trust Through Data Privacy
 
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
 
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
 
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
Tampa BSides - Chef's Tour of Microsoft Security Adoption Framework (SAF)
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdf
 
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
 
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: BNC CataList - Tech Forum 2024
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brand
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 
The State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptxThe State of Passkeys with FIDO Alliance.pptx
The State of Passkeys with FIDO Alliance.pptx
 

SMACK Stack 1.1

  • 2. Elodina is a big data as a service platform built on top of open source software. The Elodina platform solves today’s data analytics needs by providing the tools and support necessary to utilize open source technologies. http://www.elodina.net/
  • 3. Whats SMACK Stack? SMACK stack 1.0 has been traditionally Spark, Mesos, Akka, Cassandra and Kafka lots https://dzone.com/articles/smack-stack-guide and lots lots more https: //www.google.com/webhp?q=smack%20stack Now we are going to introduce SMACK Stack 1.1 and talk more about dynamic compute, micro services, orchestration, micro segmentation all part of what you can do now with Streaming, Mesos, Analytics, Cassandra and Kafka
  • 4. The free lunch is over! http://www.gotw.ca/publications/concurrency-ddj.htm
  • 5. Many industries still don’t get it XML is everywhere but we have alternatives! We can support XML interface but don’t have to take on the burden of the extra data. You can save A LOT of overheard just by having a pre-processing step taking the XML, turning it into Avro and processing and storing that. It works https://github.com/elodina/xml-avro You can even process the response in Avro but return the result in XML, more on that later though!
  • 6. You need to be running Mesos. Lots of options here! What is most important is that you abstract your “Provider” from your “Grid”. What is “The Grid”? It is your PaaS layer you deploy too that runs your software. (aka your new awesome super computer) The grid is your mesos cluster. You are likely going to have more than one so plan accordingly. Think of it as immutable infrastructure, the computer does. Step 1
  • 8. The Grid … 2.0 ... https://github.com/elodina/sawfly/blob/master/cloud-deploy-grid.md Program against your datacenter like it’s a single pool of resources Apache Mesos abstracts CPU, memory, storage, and other compute resources away from machines (physical or virtual), enabling fault-tolerant and elastic distributed systems to easily be built and run effectively. Mesosphere’s Data Center Operating System (DCOS) is an operating system that spans all of the machines in a datacenter or cloud and treats them as a single computer, providing a highly elastic and highly scalable way of deploying applications, services, and big data infrastructure on shared resources. DCOS is based on Apache Mesos and includes a distributed systems kernel with enterprise-grade security.
  • 9.
  • 10.
  • 12.
  • 13. But there is more! ● Provisioning ● Micro Segmentation ● Orchestration ● Configuration Management ● Service Discovery ● Deployment Isolation and Identification ● Telemetry, Tracing, Ops Stuff, Etc ● Oh My! It boils back down into stacks! https://github.com/elodina/stack-deploy and how you are working with your schedulers in your cluster ultimatlly.
  • 14. Stack Deploy to the rescue!
  • 15.
  • 16. In the Grid you need Schedulers! ● Kafka – Producer/Consumer-based message queue management ● Exhibitor – Supervisor for distributed persistence (like ZooKeeper) ● Cassandra/DSE – HA, scalable, distributed NoSQL data storage ● Storm – Topology-based Real-time distributed data streaming ● Monarch – Distributed Remote Procedure Calls, Kafka REST interface and schema repository ● Zipkin – Configure, launch and manage Zipkin distributed trace on Mesos ● HDFS – Configure, launch and manage HDFS on Mesos (coming soon) ● Stockpile – Consumer to “stock pile” data into persistent storage (mesos scheduler only for c* now) ● MirrorMaker – Consumer to make a mirror copy of data to destination ● StatsD – Producer to pump StatsD on Mesos into Kafka for consumption, preserves layers ● SysLog – Producer to pump Syslog on Mesos into Kafka for consumption, preserves layers https://github.com/elodina/
  • 17.
  • 18. Virtual Telemetry “Data Center” In the Grid ZipkinQATeamBuild92 ● 1x Exhibitor-Mesos ● 1x Exhibitor ● 1x DSE-Mesos ● 1x Cassandra node ● 1x Kafka-Mesos ● 1x Kafka 0.8 broker ● 1x Zipkin-Mesos ● 1x Zipkin Collector ● 1x Zipkin Query ● 1x Zipkin Web “cluster” “zone” “Stack” - defaultSimpleZipkinFull “data center”
  • 19. Stack Deploy In Action ./stack-deploy addlayer --file stacks/cassandra_dc.stack --level datacenter ./stack-deploy addlayer --file stacks/cassandra_cluster.stack --level cluster --parent cassandra_dc ./stack-deploy addlayer --file stacks/cassandra_zone1.stack --level zone --parent cassandra_cluster ./stack-deploy addlayer --file stacks/cassandra_zone2.stack --level zone --parent cassandra_cluster ./stack-deploy add --file stacks/cassandra.stack ./stack-deploy run cassandra --zone cassandra_zone1
  • 20.
  • 21.
  • 22.
  • 23.
  • 25.
  • 28.
  • 29.
  • 31.
  • 33.
  • 34. Apache Kafka • Apache Kafka o http://kafka.apache.org • Apache Kafka Source Code o https://github.com/apache/kafka • Documentation o http://kafka.apache.org/documentation.html • Wiki o https://cwiki.apache.org/confluence/display/KAFKA/Index
  • 35. It often starts with just one data pipeline
  • 36. Reuse of data pipelines for new producers
  • 37. Reuse of existing providers for new consumers
  • 38. Eventually the solution becomes the problem
  • 40.
  • 42. A high-throughput distributed messaging system rethought as a distributed commit log.
  • 45.
  • 46.
  • 47.
  • 48.
  • 49. Streaming & Analytics ● The landscape of streaming is about to get more fragmented and harder to navigate. This is not all bad news and it is not much different than where we were with NoSQL 6 years ago or so. ● Different systems are getting really (really (really)) good at different things. ○ Dag based systems ○ Event based systems ○ Query & Execution Engines ○ Streaming Engines ○ Etc!
  • 51.
  • 54. Storm (and Storm Topology based systems)
  • 55. Storm Nimbus { "id": "storm-nimbus", "cmd": "cp storm.yaml storm-mesos-0.9.6/conf && cd storm-mesos-0.9.6 && ./bin/storm-mesos nimbus -c mesos.master.url=zk: //zookeeper.service:2181/mesos -c storm.zookeeper.servers="["zookeeper.service"]" -c nimbus.thrift.port=$PORT0 -c topology. mesos.worker.cpu=0.5 -c topology.mesos.worker.mem.mb=615 -c worker.childopts=-Xmx512m -c topology.mesos.executor.cpu=0.1 -c topology.mesos.executor.mem.mb=160 -c supervisor.childopts=-Xmx128m -c mesos.executor.uri=http://repo.elodina.s3.amazonaws. com/storm-mesos-0.9.6.tgz -c storm.log.dir=$(pwd)/logs", "cpus": 1.0, "mem": 1024, "ports": [31056], "requirePorts": true, "instances": 1, "uris": [ "http://repo.elodina.s3.amazonaws.com/storm-mesos-0.9.6.tgz", "http://repo.elodina.s3.amazonaws.com/storm.yaml" ] }
  • 56. Storm UI { "id": "storm-ui", "cmd": "cp storm.yaml storm-mesos-0.9.6/conf && cd storm-mesos-0.9.6 && ./bin/storm ui -c ui.port=$PORT0 -c nimbus.thrift.port=31056 -c nimbus. host=storm-nimbus.service -c storm.log.dir=$(pwd)/logs", "cpus": 0.2, "mem": 512, "ports": [31067], "requirePorts": true, "instances": 1, "uris": [ "http://repo.elodina.s3.amazonaws.com/storm-mesos-0.9.6.tgz", "http://repo.elodina.s3.amazonaws.com/storm.yaml" ], "healthChecks": [ { "protocol": "HTTP", "portIndex": 0, "path": "/", "gracePeriodSeconds": 120, "intervalSeconds": 20, "maxConsecutiveFailures": 3 } ] }
  • 57. Storm Kafka - new spouts & bolts for Kafka 8, 9, ...
  • 59.
  • 60. Go Kafka Client - Fan Out Processing https://github.com/elodina/go-kafka-client-mesos ● Dynamic Kafka Log workers ● Blue/Green Deploy Support ● Fan Out Processing ● Auditable ● Batches ● Scalable/Auto-Scalable