SlideShare a Scribd company logo
1 of 36
Download to read offline
Kubernetes
The Next Research Platform
$ whoami
Bob Killen
rkillen@umich.edu
Senior Research Cloud Administrator
CNCF Ambassador
GitHub: @mrbobbytables
Twitter: @mrbobbytables
Kubernetes TL;DR Edition
● Greek for “Pilot” or “Helmsman of a ship”.
● Container orchestration system originally developed at Google.
● Built with lessons learned from Borg and Omega.
● Designed from the ground-up as a loosely coupled collection of components
centered around deploying, maintaining and scaling workloads.
● Supports both on-prem and cloud provider deployments.
Kubernetes TL;DR Edition
● Declarative system.
● Steers cluster towards desired
state.
● EVERYTHING is an API Object.
● Objects generally describe in
YAML.
apiVersion: batch/v1
kind: Job
metadata:
name: job-example
spec:
backoffLimit: 4
completions: 4
parallelism: 2
template:
spec:
containers:
- name: hello
image: alpine:latest
command: ["/bin/sh", "-c"]
args: ["echo hello from $HOSTNAME!"]
restartPolicy: Never
Why?
Research needs
are changing.
Why?
● Increased use of containers...everywhere.
● Moving away from strict “job” style workflows.
● Adoption of data-streaming and in-flight processing.
● Greater use of interactive Science Gateways.
● Dependence on other more persistent services.
Why Kubernetes?
● Kubernetes is seeing significant adoption across
Enterprises and multiple fields of research; serving as
both a scientific platform and substrate for application
management.
● Very large, active development community.
● Extremely easy to extend, augment, and integrate with
other systems.
Why Kubernetes?
Use the SAME API
across bare metal
and EVERY cloud
provider.
Challenges
● Difficult to integrate with classic multi-user posix
infrastructure.
○ Translating API level identity to posix identity.
● Installation on-prem/bare-metal is not as well supported.
● Device support and integration is a pain point.
○ GPUs well supported, other devices -- not as much.
Challenges with Regard to HPC
● Difficult to integrate with classic multi-user posix
infrastructure.
○ Translating API level identity to posix identity.
● No “native” concept of job queue or wall time.
○ Up to higher level components to extend and add that functionality.
● Scheduler generally not as expressive as common HPC
workload managers such as Slurm or Torque.
Challenges
Very high learning curve
coming from a traditional
infrastructure background.
Ecosystem
Helm
https://helm.sh
Helm
● “Package manager” for Kubernetes.
○ User only have to configures a few variables for their site without needing
to know majority of details of the application.
● Many commonly used applications packaged and
distributed as “Helm Charts”.
List of Charts
● Aerospike
● Airflow
● Argo
● CockroachDB
● Dask
● Flink
● Hadoop
● Galaxy
● Hazelcast
● Ignite
● Jenkins
● JanusGraph
● JupyterHub
● Kafka
● KubeDB
● Luigi
● MariaDB
● Metabase
● MongoDB
● Moodle
● NATS
● Pachyderm
● Postgres
● Presto
● Pulsar
● RECAST
● RabbitMQ
● Spark
● Tensorflow
● Terracotta
● Zookeeper
Controllers &
Custom Resources
https://kubernetes.io/docs/concepts/extend-kubernetes/api-extension/custom-resources/
Controllers & Custom Resources
● Custom Resource Definition (CRD).
● Extends current Kubernetes resources.
● Create your own Kubernetes API object that can be
consumed in the SAME WAY with the SAME TOOLS as
every other Kubernetes object.
● Add custom behaviors to workload management.
Example: CRD
apiVersion: apiextensions.k8s.io/v1beta1
kind: CustomResourceDefinition
metadata:
name: foo.bar.example.com
spec:
group: bar.example.com
version: v1alpha1
scope: Namespaced
names:
plural: foos
singular: foo
kind: Foo
validation:
openAPIV3Schema:
properties:
spec:
properties:
varFoo:
type: string
apiVersion: foo.bar.example.com/v1alpha1
kind: Foo
metadata:
name: myfoo
spec:
varFoo: bar
Example: Kube-batch
● Controller that adds coscheduling (gang scheduling) in the form of a
PodGroup object and additional scheduler.
● Developed by Huawei & IBM.
● Job Queues on the Road Map.
https://github.com/kubernetes-sigs/kube-batch
apiVersion: scheduling.incubator.k8s.io/v1alpha1
kind: PodGroup
metadata:
name: MPIGroup
spec:
minMember: 6
Example: Argo
● Powerful suite of workflow tools.
● Workflow engine supports both DAG and
Pipeline based workflows.
● Built-in Event system.
● Integrated and used by many other organizations and
projects.
Native vs CRD
apiVersion: batch/v1
kind: Job
metadata:
name: hello-world
spec:
completions: 1
template:
spec:
containers:
- name: hello
image: alpine:latest
command: ["/bin/sh", "-c"]
args: ["echo Hello World”]
restartPolicy: Never
apiVersion: argoproj.io/v1alpha1
kind: Workflow
metadata:
generateName: hello-world-
spec:
entrypoint: hello
arguments:
parameters:
- name: message
value: Hello World
templates:
- name: hello
inputs:
parameters:
- name: message
container:
image: alpine:latest
command: ["/bin/sh", "-c"]
args: ["echo {{inputs.parameters.message}}"]
Operators
https://www.operatorhub.io/what-is-an-operator
Operators
Operator Pattern
● Uses Controllers & CRDs to manage complex applications.
● Introduced by CoreOS in 2016.
● Automatically handle full application lifecycle: Install,
Configuration, Upgrade, Backup, Failover and Scaling.
● Multiple frameworks available supporting a wide range of
languages and components.
Example: Spark
● Kubernetes supported as an executor in 2.3+
● Spark maintainers pursued developing their own controller
as Spark workload patterns did not fit with out of the box
Kubernetes core workload types.
● Bypasses “default” Spark job submission process and
uses a SparkApplication CRD.
https://github.com/GoogleCloudPlatform/spark-on-k8s-operator
Example job
apiVersion: sparkoperator.k8s.io/v1beta1
kind: SparkApplication
metadata:
name: myspark
spec:
type: Scala
mode: cluster
image: gcr.io/spark-operator/spark:v2.4.0
mainClass: org.apache.spark.examples.SparkPi
mainApplicationFile: local://spark-example.jar
sparkVersion: 2.4.0
volumes:
- name: test-volume
hostPath:
path: "/tmp"
type: Directory
<continued>
<continued>
driver:
cores: 0.1
coreLimit: 200m
memory: 512m
labels:
version: 2.4.0
volumeMounts:
- name: test-volume
mountPath: /tmp
executor:
cores: 1
instances: 1
memory: "512m"
labels:
version: 2.4.0
volumeMounts:
- name: test-volume
mountPath: /tmp
Example: Kubeflow
“The Kubeflow project is dedicated to making deployments of machine
learning (ML) workflows on Kubernetes simple, portable and scalable.
Our goal is not to recreate other services, but to provide a straightforward
way to deploy best-of-breed open-source systems for ML to diverse infrastructures.
Anywhere you are running Kubernetes, you should be able to run Kubeflow.”
https://www.kubeflow.org/
Example: Kubeflow
“The Kubeflow project is dedicated to making deployments of machine
learning (ML) workflows on Kubernetes simple, portable and scalable.
Our goal is not to recreate other services, but to provide a straightforward
way to deploy best-of-breed open-source systems for ML to diverse infrastructures.
Anywhere you are running Kubernetes, you should be able to run Kubeflow.”
Comprehensive Machine Learning Suite.
https://www.kubeflow.org/
Kubeflow Features & Integrations
● Chainer Training
● Hyperparameter Tuning (Katib)
● Istio Integration (for TF Serving)
● Jupyter Notebooks
● ModelDB
● ksonnet
● MPI Training
● MXNet Training
● Pipelines
● PyTorch Training
● Seldon Serving
● NVIDIA TensorRT Inference Server
● TensorFlow Serving
● TensorFlow Batch Predict
● TensorFlow Training (TFJob)
● PyTorch Serving
Kubeflow Features & Integrations
● Chainer Training
● Hyperparameter Tuning (Katib)
● Istio Integration (for TF Serving)
● Jupyter Notebooks
● ModelDB
● ksonnet
● MPI Training
● MXNet Training
● Pipelines
● PyTorch Training
● Seldon Serving
● NVIDIA TensorRT Inference Server
● TensorFlow Serving
● TensorFlow Batch Predict
● TensorFlow Training (TFJob)
● PyTorch Serving
Others
● Aerospike
● Airflow
● ArangoDB
● Cassandra
● CouchDB
● Federation-v2
● Flink
● Gluster
● Kafka
● KubeDB
● MongoDB
● MySQL
● NATS
● PostgreSQL
● Rook
● Velero
● Vitess
● Zookeeper
Why Kubernetes?
What containers have done for
code, application portability and
reproducible research --
Kubernetes has done for the
orchestration and management
of those things.
Complex applications can be
packaged and distributed easily.
If Kubernetes does not provide
the needed primitives, it is easy
enough to extend.
Questions?
rkillen@umich.edu
GitHub: @mrbobbytables
Twitter: @mrbobbytables

More Related Content

What's hot

Are you ready to be edgy? Bringing applications to the edge of the network
Are you ready to be edgy? Bringing applications to the edge of the networkAre you ready to be edgy? Bringing applications to the edge of the network
Are you ready to be edgy? Bringing applications to the edge of the network
Megan O'Keefe
 

What's hot (20)

Ansible, integration testing, and you.
Ansible, integration testing, and you.Ansible, integration testing, and you.
Ansible, integration testing, and you.
 
Kubernetes automation in production
Kubernetes automation in productionKubernetes automation in production
Kubernetes automation in production
 
Hands-On Introduction to Kubernetes at LISA17
Hands-On Introduction to Kubernetes at LISA17Hands-On Introduction to Kubernetes at LISA17
Hands-On Introduction to Kubernetes at LISA17
 
Kubernetes Workshop
Kubernetes WorkshopKubernetes Workshop
Kubernetes Workshop
 
Introduction to Kubernetes
Introduction to KubernetesIntroduction to Kubernetes
Introduction to Kubernetes
 
Evolution of containers to kubernetes
Evolution of containers to kubernetesEvolution of containers to kubernetes
Evolution of containers to kubernetes
 
K8s in 3h - Kubernetes Fundamentals Training
K8s in 3h - Kubernetes Fundamentals TrainingK8s in 3h - Kubernetes Fundamentals Training
K8s in 3h - Kubernetes Fundamentals Training
 
Federated Kubernetes: As a Platform for Distributed Scientific Computing
Federated Kubernetes: As a Platform for Distributed Scientific ComputingFederated Kubernetes: As a Platform for Distributed Scientific Computing
Federated Kubernetes: As a Platform for Distributed Scientific Computing
 
Kubernetes 101
Kubernetes 101Kubernetes 101
Kubernetes 101
 
Quick introduction to Kubernetes
Quick introduction to KubernetesQuick introduction to Kubernetes
Quick introduction to Kubernetes
 
(Draft) Kubernetes - A Comprehensive Overview
(Draft) Kubernetes - A Comprehensive Overview(Draft) Kubernetes - A Comprehensive Overview
(Draft) Kubernetes - A Comprehensive Overview
 
DevOps with Kubernetes
DevOps with KubernetesDevOps with Kubernetes
DevOps with Kubernetes
 
A Peek Behind the Curtain: Managing the Kubernetes Contributor Community
A Peek Behind the Curtain: Managing the Kubernetes Contributor CommunityA Peek Behind the Curtain: Managing the Kubernetes Contributor Community
A Peek Behind the Curtain: Managing the Kubernetes Contributor Community
 
Kubernetes intro public - kubernetes meetup 4-21-2015
Kubernetes intro   public - kubernetes meetup 4-21-2015Kubernetes intro   public - kubernetes meetup 4-21-2015
Kubernetes intro public - kubernetes meetup 4-21-2015
 
An overview of the Kubernetes architecture
An overview of the Kubernetes architectureAn overview of the Kubernetes architecture
An overview of the Kubernetes architecture
 
Kubernetes Introduction
Kubernetes IntroductionKubernetes Introduction
Kubernetes Introduction
 
Are you ready to be edgy? Bringing applications to the edge of the network
Are you ready to be edgy? Bringing applications to the edge of the networkAre you ready to be edgy? Bringing applications to the edge of the network
Are you ready to be edgy? Bringing applications to the edge of the network
 
Intro to kubernetes
Intro to kubernetesIntro to kubernetes
Intro to kubernetes
 
Kubernetes Architecture
 Kubernetes Architecture Kubernetes Architecture
Kubernetes Architecture
 
Kubernetes 101 Workshop
Kubernetes 101 WorkshopKubernetes 101 Workshop
Kubernetes 101 Workshop
 

Similar to Kubernetes: The Next Research Platform

Similar to Kubernetes: The Next Research Platform (20)

Kubernetes - training micro-dragons without getting burnt
Kubernetes -  training micro-dragons without getting burntKubernetes -  training micro-dragons without getting burnt
Kubernetes - training micro-dragons without getting burnt
 
Kubernetes for Java Developers
Kubernetes for Java DevelopersKubernetes for Java Developers
Kubernetes for Java Developers
 
DevEx | there’s no place like k3s
DevEx | there’s no place like k3sDevEx | there’s no place like k3s
DevEx | there’s no place like k3s
 
Get you Java application ready for Kubernetes !
Get you Java application ready for Kubernetes !Get you Java application ready for Kubernetes !
Get you Java application ready for Kubernetes !
 
Introducing Koki Short
Introducing Koki ShortIntroducing Koki Short
Introducing Koki Short
 
Kubernetes for the PHP developer
Kubernetes for the PHP developerKubernetes for the PHP developer
Kubernetes for the PHP developer
 
Introduction to kubernetes
Introduction to kubernetesIntroduction to kubernetes
Introduction to kubernetes
 
Kubernetes #1 intro
Kubernetes #1   introKubernetes #1   intro
Kubernetes #1 intro
 
18th Athens Big Data Meetup - 2nd Talk - Run Spark and Flink Jobs on Kubernetes
18th Athens Big Data Meetup - 2nd Talk - Run Spark and Flink Jobs on Kubernetes18th Athens Big Data Meetup - 2nd Talk - Run Spark and Flink Jobs on Kubernetes
18th Athens Big Data Meetup - 2nd Talk - Run Spark and Flink Jobs on Kubernetes
 
CI/CD Across Multiple Environments
CI/CD Across Multiple EnvironmentsCI/CD Across Multiple Environments
CI/CD Across Multiple Environments
 
Kubernetes extensibility: crd & operators
Kubernetes extensibility: crd & operators Kubernetes extensibility: crd & operators
Kubernetes extensibility: crd & operators
 
Kubernetes extensibility: CRDs & Operators
Kubernetes extensibility: CRDs & OperatorsKubernetes extensibility: CRDs & Operators
Kubernetes extensibility: CRDs & Operators
 
Kubernetes for java developers - Tutorial at Oracle Code One 2018
Kubernetes for java developers - Tutorial at Oracle Code One 2018Kubernetes for java developers - Tutorial at Oracle Code One 2018
Kubernetes for java developers - Tutorial at Oracle Code One 2018
 
Kubernetes: training micro-dragons for a serious battle
Kubernetes: training micro-dragons for a serious battleKubernetes: training micro-dragons for a serious battle
Kubernetes: training micro-dragons for a serious battle
 
Introduction to kubernetes
Introduction to kubernetesIntroduction to kubernetes
Introduction to kubernetes
 
Kubernetes - how to orchestrate containers
Kubernetes - how to orchestrate containersKubernetes - how to orchestrate containers
Kubernetes - how to orchestrate containers
 
Containerized architectures for deep learning
Containerized architectures for deep learningContainerized architectures for deep learning
Containerized architectures for deep learning
 
OSDC 2018 | Three years running containers with Kubernetes in Production by T...
OSDC 2018 | Three years running containers with Kubernetes in Production by T...OSDC 2018 | Three years running containers with Kubernetes in Production by T...
OSDC 2018 | Three years running containers with Kubernetes in Production by T...
 
Build Your Kubernetes Operator with the Right Tool!
Build Your Kubernetes Operator with the Right Tool!Build Your Kubernetes Operator with the Right Tool!
Build Your Kubernetes Operator with the Right Tool!
 
Pydata 2020 containers meetup
Pydata  2020 containers meetup Pydata  2020 containers meetup
Pydata 2020 containers meetup
 

More from Bob Killen

More from Bob Killen (6)

Tackling New Challenges in a Virtual Focused Community
Tackling New Challenges in a Virtual Focused CommunityTackling New Challenges in a Virtual Focused Community
Tackling New Challenges in a Virtual Focused Community
 
KubeCon EU 2021 Keynote: Shaping Kubernetes Community Culture
KubeCon EU 2021 Keynote: Shaping Kubernetes Community CultureKubeCon EU 2021 Keynote: Shaping Kubernetes Community Culture
KubeCon EU 2021 Keynote: Shaping Kubernetes Community Culture
 
Intro to Kubernetes SIG Contributor Experience
Intro to Kubernetes SIG Contributor ExperienceIntro to Kubernetes SIG Contributor Experience
Intro to Kubernetes SIG Contributor Experience
 
Intro to the CNCF Research User Group
Intro to the CNCF Research User GroupIntro to the CNCF Research User Group
Intro to the CNCF Research User Group
 
Kubernetes The New Research Platform
Kubernetes The New Research PlatformKubernetes The New Research Platform
Kubernetes The New Research Platform
 
Pluggable Infrastructure with CI/CD and Docker
Pluggable Infrastructure with CI/CD and DockerPluggable Infrastructure with CI/CD and Docker
Pluggable Infrastructure with CI/CD and Docker
 

Recently uploaded

💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋
💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋
💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋
nirzagarg
 

Recently uploaded (20)

Call Girls Sangvi Call Me 7737669865 Budget Friendly No Advance BookingCall G...
Call Girls Sangvi Call Me 7737669865 Budget Friendly No Advance BookingCall G...Call Girls Sangvi Call Me 7737669865 Budget Friendly No Advance BookingCall G...
Call Girls Sangvi Call Me 7737669865 Budget Friendly No Advance BookingCall G...
 
Top Rated Pune Call Girls Daund ⟟ 6297143586 ⟟ Call Me For Genuine Sex Servi...
Top Rated  Pune Call Girls Daund ⟟ 6297143586 ⟟ Call Me For Genuine Sex Servi...Top Rated  Pune Call Girls Daund ⟟ 6297143586 ⟟ Call Me For Genuine Sex Servi...
Top Rated Pune Call Girls Daund ⟟ 6297143586 ⟟ Call Me For Genuine Sex Servi...
 
20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf20240508 QFM014 Elixir Reading List April 2024.pdf
20240508 QFM014 Elixir Reading List April 2024.pdf
 
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service AvailableCall Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
Call Girls Ludhiana Just Call 98765-12871 Top Class Call Girl Service Available
 
Wagholi & High Class Call Girls Pune Neha 8005736733 | 100% Gennuine High Cla...
Wagholi & High Class Call Girls Pune Neha 8005736733 | 100% Gennuine High Cla...Wagholi & High Class Call Girls Pune Neha 8005736733 | 100% Gennuine High Cla...
Wagholi & High Class Call Girls Pune Neha 8005736733 | 100% Gennuine High Cla...
 
Al Barsha Night Partner +0567686026 Call Girls Dubai
Al Barsha Night Partner +0567686026 Call Girls  DubaiAl Barsha Night Partner +0567686026 Call Girls  Dubai
Al Barsha Night Partner +0567686026 Call Girls Dubai
 
VIP Model Call Girls NIBM ( Pune ) Call ON 8005736733 Starting From 5K to 25K...
VIP Model Call Girls NIBM ( Pune ) Call ON 8005736733 Starting From 5K to 25K...VIP Model Call Girls NIBM ( Pune ) Call ON 8005736733 Starting From 5K to 25K...
VIP Model Call Girls NIBM ( Pune ) Call ON 8005736733 Starting From 5K to 25K...
 
APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53APNIC Updates presented by Paul Wilson at ARIN 53
APNIC Updates presented by Paul Wilson at ARIN 53
 
Trump Diapers Over Dems t shirts Sweatshirt
Trump Diapers Over Dems t shirts SweatshirtTrump Diapers Over Dems t shirts Sweatshirt
Trump Diapers Over Dems t shirts Sweatshirt
 
Nanded City ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready ...
Nanded City ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready ...Nanded City ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready ...
Nanded City ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready ...
 
💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋
💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋
💚😋 Bilaspur Escort Service Call Girls, 9352852248 ₹5000 To 25K With AC💚😋
 
VVIP Pune Call Girls Sinhagad WhatSapp Number 8005736733 With Elite Staff And...
VVIP Pune Call Girls Sinhagad WhatSapp Number 8005736733 With Elite Staff And...VVIP Pune Call Girls Sinhagad WhatSapp Number 8005736733 With Elite Staff And...
VVIP Pune Call Girls Sinhagad WhatSapp Number 8005736733 With Elite Staff And...
 
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
Shikrapur - Call Girls in Pune Neha 8005736733 | 100% Gennuine High Class Ind...
 
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
WhatsApp 📞 8448380779 ✅Call Girls In Mamura Sector 66 ( Noida)
 
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
Call Now ☎ 8264348440 !! Call Girls in Green Park Escort Service Delhi N.C.R.
 
Sarola * Female Escorts Service in Pune | 8005736733 Independent Escorts & Da...
Sarola * Female Escorts Service in Pune | 8005736733 Independent Escorts & Da...Sarola * Female Escorts Service in Pune | 8005736733 Independent Escorts & Da...
Sarola * Female Escorts Service in Pune | 8005736733 Independent Escorts & Da...
 
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
2nd Solid Symposium: Solid Pods vs Personal Knowledge Graphs
 
Pune Airport ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready...
Pune Airport ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready...Pune Airport ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready...
Pune Airport ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready...
 
Katraj ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For S...
Katraj ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For S...Katraj ( Call Girls ) Pune  6297143586  Hot Model With Sexy Bhabi Ready For S...
Katraj ( Call Girls ) Pune 6297143586 Hot Model With Sexy Bhabi Ready For S...
 
Microsoft Azure Arc Customer Deck Microsoft
Microsoft Azure Arc Customer Deck MicrosoftMicrosoft Azure Arc Customer Deck Microsoft
Microsoft Azure Arc Customer Deck Microsoft
 

Kubernetes: The Next Research Platform

  • 2. $ whoami Bob Killen rkillen@umich.edu Senior Research Cloud Administrator CNCF Ambassador GitHub: @mrbobbytables Twitter: @mrbobbytables
  • 3. Kubernetes TL;DR Edition ● Greek for “Pilot” or “Helmsman of a ship”. ● Container orchestration system originally developed at Google. ● Built with lessons learned from Borg and Omega. ● Designed from the ground-up as a loosely coupled collection of components centered around deploying, maintaining and scaling workloads. ● Supports both on-prem and cloud provider deployments.
  • 4. Kubernetes TL;DR Edition ● Declarative system. ● Steers cluster towards desired state. ● EVERYTHING is an API Object. ● Objects generally describe in YAML. apiVersion: batch/v1 kind: Job metadata: name: job-example spec: backoffLimit: 4 completions: 4 parallelism: 2 template: spec: containers: - name: hello image: alpine:latest command: ["/bin/sh", "-c"] args: ["echo hello from $HOSTNAME!"] restartPolicy: Never
  • 7. Why? ● Increased use of containers...everywhere. ● Moving away from strict “job” style workflows. ● Adoption of data-streaming and in-flight processing. ● Greater use of interactive Science Gateways. ● Dependence on other more persistent services.
  • 8. Why Kubernetes? ● Kubernetes is seeing significant adoption across Enterprises and multiple fields of research; serving as both a scientific platform and substrate for application management. ● Very large, active development community. ● Extremely easy to extend, augment, and integrate with other systems.
  • 9. Why Kubernetes? Use the SAME API across bare metal and EVERY cloud provider.
  • 10. Challenges ● Difficult to integrate with classic multi-user posix infrastructure. ○ Translating API level identity to posix identity. ● Installation on-prem/bare-metal is not as well supported. ● Device support and integration is a pain point. ○ GPUs well supported, other devices -- not as much.
  • 11. Challenges with Regard to HPC ● Difficult to integrate with classic multi-user posix infrastructure. ○ Translating API level identity to posix identity. ● No “native” concept of job queue or wall time. ○ Up to higher level components to extend and add that functionality. ● Scheduler generally not as expressive as common HPC workload managers such as Slurm or Torque.
  • 12. Challenges Very high learning curve coming from a traditional infrastructure background.
  • 15. Helm ● “Package manager” for Kubernetes. ○ User only have to configures a few variables for their site without needing to know majority of details of the application. ● Many commonly used applications packaged and distributed as “Helm Charts”.
  • 16. List of Charts ● Aerospike ● Airflow ● Argo ● CockroachDB ● Dask ● Flink ● Hadoop ● Galaxy ● Hazelcast ● Ignite ● Jenkins ● JanusGraph ● JupyterHub ● Kafka ● KubeDB ● Luigi ● MariaDB ● Metabase ● MongoDB ● Moodle ● NATS ● Pachyderm ● Postgres ● Presto ● Pulsar ● RECAST ● RabbitMQ ● Spark ● Tensorflow ● Terracotta ● Zookeeper
  • 18. Controllers & Custom Resources ● Custom Resource Definition (CRD). ● Extends current Kubernetes resources. ● Create your own Kubernetes API object that can be consumed in the SAME WAY with the SAME TOOLS as every other Kubernetes object. ● Add custom behaviors to workload management.
  • 19. Example: CRD apiVersion: apiextensions.k8s.io/v1beta1 kind: CustomResourceDefinition metadata: name: foo.bar.example.com spec: group: bar.example.com version: v1alpha1 scope: Namespaced names: plural: foos singular: foo kind: Foo validation: openAPIV3Schema: properties: spec: properties: varFoo: type: string apiVersion: foo.bar.example.com/v1alpha1 kind: Foo metadata: name: myfoo spec: varFoo: bar
  • 20. Example: Kube-batch ● Controller that adds coscheduling (gang scheduling) in the form of a PodGroup object and additional scheduler. ● Developed by Huawei & IBM. ● Job Queues on the Road Map. https://github.com/kubernetes-sigs/kube-batch apiVersion: scheduling.incubator.k8s.io/v1alpha1 kind: PodGroup metadata: name: MPIGroup spec: minMember: 6
  • 21. Example: Argo ● Powerful suite of workflow tools. ● Workflow engine supports both DAG and Pipeline based workflows. ● Built-in Event system. ● Integrated and used by many other organizations and projects.
  • 22. Native vs CRD apiVersion: batch/v1 kind: Job metadata: name: hello-world spec: completions: 1 template: spec: containers: - name: hello image: alpine:latest command: ["/bin/sh", "-c"] args: ["echo Hello World”] restartPolicy: Never apiVersion: argoproj.io/v1alpha1 kind: Workflow metadata: generateName: hello-world- spec: entrypoint: hello arguments: parameters: - name: message value: Hello World templates: - name: hello inputs: parameters: - name: message container: image: alpine:latest command: ["/bin/sh", "-c"] args: ["echo {{inputs.parameters.message}}"]
  • 25. Operator Pattern ● Uses Controllers & CRDs to manage complex applications. ● Introduced by CoreOS in 2016. ● Automatically handle full application lifecycle: Install, Configuration, Upgrade, Backup, Failover and Scaling. ● Multiple frameworks available supporting a wide range of languages and components.
  • 26. Example: Spark ● Kubernetes supported as an executor in 2.3+ ● Spark maintainers pursued developing their own controller as Spark workload patterns did not fit with out of the box Kubernetes core workload types. ● Bypasses “default” Spark job submission process and uses a SparkApplication CRD. https://github.com/GoogleCloudPlatform/spark-on-k8s-operator
  • 27. Example job apiVersion: sparkoperator.k8s.io/v1beta1 kind: SparkApplication metadata: name: myspark spec: type: Scala mode: cluster image: gcr.io/spark-operator/spark:v2.4.0 mainClass: org.apache.spark.examples.SparkPi mainApplicationFile: local://spark-example.jar sparkVersion: 2.4.0 volumes: - name: test-volume hostPath: path: "/tmp" type: Directory <continued> <continued> driver: cores: 0.1 coreLimit: 200m memory: 512m labels: version: 2.4.0 volumeMounts: - name: test-volume mountPath: /tmp executor: cores: 1 instances: 1 memory: "512m" labels: version: 2.4.0 volumeMounts: - name: test-volume mountPath: /tmp
  • 28. Example: Kubeflow “The Kubeflow project is dedicated to making deployments of machine learning (ML) workflows on Kubernetes simple, portable and scalable. Our goal is not to recreate other services, but to provide a straightforward way to deploy best-of-breed open-source systems for ML to diverse infrastructures. Anywhere you are running Kubernetes, you should be able to run Kubeflow.” https://www.kubeflow.org/
  • 29. Example: Kubeflow “The Kubeflow project is dedicated to making deployments of machine learning (ML) workflows on Kubernetes simple, portable and scalable. Our goal is not to recreate other services, but to provide a straightforward way to deploy best-of-breed open-source systems for ML to diverse infrastructures. Anywhere you are running Kubernetes, you should be able to run Kubeflow.” Comprehensive Machine Learning Suite. https://www.kubeflow.org/
  • 30. Kubeflow Features & Integrations ● Chainer Training ● Hyperparameter Tuning (Katib) ● Istio Integration (for TF Serving) ● Jupyter Notebooks ● ModelDB ● ksonnet ● MPI Training ● MXNet Training ● Pipelines ● PyTorch Training ● Seldon Serving ● NVIDIA TensorRT Inference Server ● TensorFlow Serving ● TensorFlow Batch Predict ● TensorFlow Training (TFJob) ● PyTorch Serving
  • 31. Kubeflow Features & Integrations ● Chainer Training ● Hyperparameter Tuning (Katib) ● Istio Integration (for TF Serving) ● Jupyter Notebooks ● ModelDB ● ksonnet ● MPI Training ● MXNet Training ● Pipelines ● PyTorch Training ● Seldon Serving ● NVIDIA TensorRT Inference Server ● TensorFlow Serving ● TensorFlow Batch Predict ● TensorFlow Training (TFJob) ● PyTorch Serving
  • 32. Others ● Aerospike ● Airflow ● ArangoDB ● Cassandra ● CouchDB ● Federation-v2 ● Flink ● Gluster ● Kafka ● KubeDB ● MongoDB ● MySQL ● NATS ● PostgreSQL ● Rook ● Velero ● Vitess ● Zookeeper
  • 34. What containers have done for code, application portability and reproducible research -- Kubernetes has done for the orchestration and management of those things.
  • 35. Complex applications can be packaged and distributed easily. If Kubernetes does not provide the needed primitives, it is easy enough to extend.