SlideShare une entreprise Scribd logo
1  sur  37
Télécharger pour lire hors ligne
The UberCloud
From Project to Product
From HPC Experiment to HPC Marketplace
From HPC Shop to HPC Shopping Mall
Wolfgang Gentzsch
President,The UberCloud
BurakYenier
CEO,The UberCloud
HPC 2014 , Cetraro, July 7 – 11, 2014
The UberCloud
From Project to Product
From HPC Experiment to HPC Marketplace
From HPC Shop to HPC Shopping Mall
Wolfgang Gentzsch
President,The UberCloud
BurakYenier
CEO,The UberCloud
Product innovation and scientific insight require computing
<=
HPC 2014 , Cetraro, July 7 – 11, 2014
Summary: UberCloud Progress
 Traction: 1,500 registered orgs, 72 countries, 155 experiment teams
exploring Computing as a Service
 Visible: 60+ articles; 40+ trade shows; prestigious 2013 HPCwire Readers’
ChoiceAward
 Powerful sponsors: Intel,Autodesk, Bull, IDC,ANSYS; talking to 10 more.
 Powerful participant: 4 ofTop 5 CAE ISVs (total 80+); 100+ sw/hw providers;
hundreds of end-users, 600+ renowned experts
 Compendium I & II: 25 + 17 best case studies from Round 1 – 5 HPC
Experiment sponsored by Intel, over 1,000 downloads
 Hired LindaTreiman (from Bright) to take care of our providers and sponsors
 Container technology and run time environment
 UberCloud Marketplace andAppStore
3
Engineers & scientists computing tools:
workstations
3 options to use technical compute power
, servers, and clouds
Benefits of HPC in the Cloud
Continue using your workstation for your daily design,
and use Cloud resources with additional benefits:
 An HPC system at your finger tip, on demand
 Pay per use (no CAPital EXpenditure)
 Scaling resources up and down (business flexibility)
 Low risk by working with multiple cloud providers.
The challenges
 Workstation: slow, limited capacity
 HPC server: expensive (TCO!), complex
 HPC in the Cloud: security, licensing,
data transfer, expertise, and …
 Very crowded cloud services market,
difficult to find your ideal service
It all started June 2012 with the free
voluntary UberCloud Experiments
HPC as a Service, on demand, in a team experiment
For SMBs and their engineering applications
to explore the end-to-end process
of using remote computing resources,
as a service, on demand, at your finger tip,
and learning how to resolve the roadblocks.
How does the Experiment work?
 End-User registers
 SoftwareVendor joins
 We select a Team Expert
 Matching a Resource Provider
 152 UberCloud Experiments so far
 42 case studies in Compendium I & II
 Assigning an UberCloud mentor
 Now, the team is ready to go
 Finally, writing the Case Study
22 StepsTowards a successful project
Step 1: define end-user project
 1.1: TE & EU fill out "Project definition" docu
 1.2: UC assigns SP based on "Project definition" docu
 1.3: UC +TM assign RP based on "Project definition" docu
 1.4: TE calls for a kick-off meeting over Skype via Doodle
 1.5: RP fills out "Computing resources" docu
 1.6: SP fills out "Software resources" docu
 1.7: If custom code, EU fills out "Software resources" docu
 1.8 TE +TM review UC Exhibit, consider additional services
EU = end user, SP = software provider, RP = resource provider,TE = team expert,
TM = team mentor, UC UberCloud
22 StepsTowards a successful project
Step 2 & 3: resources & execution
Step 2: Contact the resources, set up the project environment
 2.1: TE gets resources using "Computing resources" docu
 2.2: TE & RP set up software using "Software resources" docu
 2.3: TE & RP set up EU code using "Software resources" docu
 2.4: TE & RP configure project environment
 2.5: TE performs a trial run
Step 3: Initiate project execution on cloud resources
 3.1: TE & EU upload data to the project environment
 3.2: TE & RP queue the job(s) for the project
EU = end user, SP = software provider, RP = resource provider,TE = team expert,
TM = team mentor, UC UberCloud
22 StepsTowards a successful project
Step 4-6: monitor, review, report
Step 4: Monitor the project
 4.1: TE monitors the job status
 4.2: TE & EU re-set parameters between runs as needed
 4.3: TE & RP performs post processing, such as remote viz
Step 5: Review your results
 5.1: TE makes results available to EU, if needed repeats Step 2-5
 5.2: TE & RP remove EU data from project environment
Step 6: Document your findings
 6.1: TE initiates docu "Template for UC Experiment Uses Cases"
 6.2: TE requests team to contribute to and review the docu
EU = end user, SP = software provider, RP = resource provider,TE = team expert,
TM = team mentor, UC UberCloud
Step by Step process
Basecamp project management platform for each team
The UberCloud HPC Experiments
Started July 2012, 1500 participants, 72 countries
Example: AmazonAWS in the UberCloud:
 Team 2:
 Team 20:
 Team 30:
 Team 40:
 Team 65:
 Team 70:
 Team 116:
 Team 142:
 Team 147:
13
Simulation of a Multi-resonant Antenna System
Turbo-machinery Application Benchmarks
HeatTransfer Use Case
Simulation of Spatial Hearing
Weather Research with WRF
Next Generation Sequencing Data Analysis
Quantitative Finance Historical Data Modeling
VirtualTesting of Severe Service ControlValve
Compressor Map Generation Using Cloud-Based CFD
The UberCloud HPC Experiments
Started July 2012, 1500 participants, 72 countries
Example: Bull extreme factory in the UberCloud:
 Team 5:
 Team 8:
 Team 32:
 Team 52:
 Team 85:
 Team 89:
 Team 120:
14
2-phase Flow Simulation of a Separation Column
Flash Dryer with Hot Gas to EvaporateWater from a Solid
2-phase flow simulation of a separation columns
Simulations of Blow-off in Combustion Systems
Combustion simulations of power plant equipment
Simulations of Enzyme-Substrate reactions
Simulation of water flow around self-propelled ship
© 2013 ANSYS, Inc. July 16, 201415
Some Lessons Learned
- UberCloud HPC Experiment
Team 8: Flash Dryer Simulation (ANSYS Fluent)
Simulation throughput criterion was met
‼ Remote visualization solution required
‼ Time for downloading results
‼ IP concern
Team 9: Irrigation Simulation (ANSYS CFX)
Timely, high fidelity results were obtained
‼ Windows above Linux preferred
‼ HPC workshop services for SMEs requested
Ability to conduct parametric simulations
‼ Sufficient number of licenses needed
‼ Remote visualization solution required
‼ Disappointing hardware performance results
Team 34: Wind Turbine Simulation (ANSYS Fluent)
Source: The UberCloud HPC Experiment: Compendium of Case Studies
© 2013 ANSYS, Inc. July 16, 201416
Some Lessons Learned
- UberCloud HPC Experiment
Team 36: IC-Engine Simulation (ANSYS Fluent)
Smooth setup of environment and sw
‼ Appropriate cloud licensing required
‼ Network bandwidth not good for graphics
‼ Customized sw needs to be recompiled
Team 54: Pool Plant Simulation (ANSYS CFX)
Ability to easily burst into the Cloud
Accelerated file transfer and 3D graphics
‼ Cost of the commercial CFD licenses
Ease of use
Good remote visualization
‼ File uploading time
‼ Stress test with multiple users required
Team 56: Axial Fan Simulation (ANSYS Fluent)
Source: The UberCloud HPC Experiment: Compendium of Case Studies
Team 1: Heavy DutyABAQUS
Structural Analysis in the Cloud
TheTeam:
 Frank Ding, is the EngineeringAnalysis and Computing Manager at
Simpson Strong-Tie in Northern California.The end user problem space…..
 Matt Dunbar, is now the ChiefArchitect and CAE technical specialist at
Simulia Dassault Systems, in Rhode Island on the East Coast. He represents
the application level expertise in this experiment.
 Steve Hebert, is one of the founders and CEO of Nimbix, located inTexas,
which in this team is the provider of cloud-based HPCinfrastructure and
applications hosting
 Rob Sherrard, is the other co-founder of Nimbix andVP of Service Delivery.
 Sharan Kalwani, HPC Segment Architect with Intel Corporation and in this
project is the overall Subject Matter Expert,located in Michigan (Midwest).
Team 1:The problem to be solved
 The Use Case:
 ABAQUS/Explicit and ABAQUS/Standard are the major applications
 HPC cluster at Simpson Strong-Tie is modest, 32 cores of Intel x86-based gear.
 Cloud bursting is critical.
 Also challenging is the issue of sudden large data transfers
 Need to perform visualization ensuring design simulation is proceeding correctly
 Workflow
 Pre-processing happens on end user’s workstation to prepare the CAE model
 Files transferred to HPC cloud data staging area using a secured FTP process
 Submit the job through (Nimbix.net) web portal
 Result files can be transferred back for post-processing,
 or the post-processing can be done using remote desktop tool like HP RGS on
the HPC provider’s visualization node.
Team 1: Challenges!
 A weekly schedule – was not the first challenge!
 Needed a fast interconnect (e.g. Infiniband) which was not available.
 Solved with “fat” nodes, as this cluster is a sandbox for testing the cloud workflow,
the actual inter-connect performance of this 12 core cluster was not a concern.
 The second challenge was to address the need for simple and secure file storage and
transfer. Accomplished very quickly using GLOBUS technology.These days cloud
based storage is mature and ready for prime time HPC, especially in the CAE arena.
 The third challenge was now to push the limits and stream several jobs
simultaneously to the remote HPC cloud resource.This provided solid evidence that
“bursting” was indeed feasible.To the whole team’s surprise it worked admirably
and had no impact whatsoever overall.
 The fourth and final challenge now became perhaps the most critical which was the
end user perception and acceptance of the cloud as a smooth part of the workflow.
 Remote visualization was necessary to see if the simulation results (left remotely in
the cloud)
Team 1:What the end user saw…..
 With right tuning, useful remote visualization!
Team 1:What did we learn?
 Benefits:
 Clearly established - HPC cloud model can indeed be made to work.
 Recommendations:
 A few key necessary factors emerged:
 Result file transfers: most CAE result files easily over several gigabytes, a
minimum of 2-4 MB/sec sustained and delivered bandwidth is necessary
 The same applies when doing remote visualizations, in this case, 4 MB/sec is
the threshold Latency is also a key concern.
 Beyond the Cloud service provider, a network savvy ISP is perhaps a
necessary part of the team of infrastructure in order to deliver robust and
production like HPC cloud
 Remote visualization provides a convenient collaboration platform for a CAE
analyst to access the analysis results any where he has the need, but it
requires a secure “behind the firewall” remote workspace
Team 2: Simulating new probe design
for a medical device
HPC Expert:
End User:
wanted to stay anonymous
Credits
from:
Team 70 Case Study: Next Generation
Sequencing DataAnalysis
 MEET TEAM 70:
 End User -Thomas Dyar, Senior Genomics Data Scientist,
Betty Diegel, Senior Software Engineer, medical devices
company
 Software Provider - Brian O'Connor, CEO Nimbus Inform..
Cloud services for workflows utilizing SeqWare
 Resource Provider - AmazonWeb Services
 HPC Cloud Experts - Cycle Computing
Team 142 Case Study:Virtual testing of
severe service control valve
 MEET TEAM 142:
 End User – Mark Lobo, Lobo Engineering;
 Software Provider – Derrek Cooper,Autodesk CFD 360
 Resource Provider - AmazonWeb Services
 HPC Cloud Experts – Jon den Hartog
and Heath HoughtonAutodesk
Challenges with the experiments
 HPC is complex; at times it requires multiple experts
 Reaching out to industry end-users
 No standards: access and usage of hw & sw
providers are different, some are complex
 Lack of automation: Currently the end-to-end process of the
HPC experiment is manual (intentionally).
 Time delays: vacation, conferences, and
everybody has a day job (busy!)
 Barriers: Complexity, data transfer, security, IP,
software licenses, performance, interoperability…
AND: we learn a lot . . . .
Bumps on the road
 Time delays:Vacation times in July/August and December
 No standards: Access and usage processes of
hw & sw providers are different, some complex
 Hands-on: Process automation at providers
vary greatly.
 Lack of automation: Currently the end-to-end process of the
HPC experiment is manual (intentionally).
 Participants spent relatively small portion of their time, some
are responsive, others are not: it is not their day job!
 Getting regular updates fromTeam Experts is a challenge
because this is not their day job !
Building a marketplace
demands building an ecosystem
UC
Market
Place
App
store
Comm
unity
Start:
Rough
idea
Mar
Com
ß Pro
duct
Techn
ology
Exper
iment
Exhib
ition
06/12 HPC Cetraro
09/12
01/13
01/13
01/14
01/14
03/14
06/14
workflow impact
Problem: today’s crowded
and ineffective cloud ‘market’
Supply
Cloud providers
ISVs
Consultants
Trainers
Demand
Engineers
Scientists
Data analysts
Experts
.
.
.
.
.
Complexity
Data
Transfer
SecurityLicensing
Uncertain
Cost
Roadblocks
Solution:
The UberCloud Marketplace
Supply
Cloud providers
ISVs
Consultants
Trainers
…
Demand
Engineers
Scientists
Data analysts
Experts
UberCloud
Marketplace
Solution:
The UberCloud Marketplace
UberCloud
Marketplace
for 20+ million engineers and scientists
and their service providers
to discover, try, buy, and sell
computing time, storage, software and expertise
on demand
Announcement at HPC Cetraro
Technology solution:
StandardCloud run-time environment
 Building thin, light-weight run-time environment (RTE) on
top of Linux kernel features and open source tools, which
 provides a standard platform across distributed in-house,
grid, and cloud resources
 facilitates access to all kinds of resources (workstations,
servers, and private, hybrid, and public clouds)
 moving portable, stackable units including end-users app,
data, tools seamlessly btwn in-house and external resources
 enables portability across different in-house and external
resources (federation)
 reducing / removing many of the cloud challenges
32
Builder
Launcher
Controller
ISV DataTools
Stackable units with tools (ex: encryption), ISV application codes (ex: OpenFOAM).
Just add your own codes and data.
Run anywhere with UberCloud Run Time.
Scale up or down the compute power as needed.
Collect granular usage data, logs.
Monitor, alert, report.
Any
Workstation
Any Cluster Any Cloud
Run Time Run Time Run Time
Build once, run anywhere
Portable Units are like containers
 Standard software units (with user’s app, data, tools etc.)
can be moved seamlessly across any set of resources.
Units are
 stackable and portable,
 built from a base unit with standard functionality (security,
encryption, compression, monitoring, data transfer, etc)
 extended by the ISV’s software as next layer,
 top layer is the end-users configuration and data.
34
Next Steps:
Reducing / Removing Cloud Challenges
Challenge *) Addressed today With UberCloud **)
Portability low high
Security medium high
Software Licenses low medium
DataTransfer low medium
Compliance low medium
Standardization low high
Cost & ROITransparency low high
Resource Availability medium high
Transparency of Market low high
Cloud Computing Expertise low medium
*) Cloud challenges are addressed low, or medium, or high
**)When UberCloud is fully developed one year from now
It’s your turn now 
 Download 2013 Compendium of case studies from
HPCwire
 Download 2014 Compendium of case studies
 Register atTheUberCloud.com
 Try the UberCloud Marketplace with $1 voucher
and you get
 NOW NOW
The UberCloud Community and Marketplace
ThankYou !
Register free at
http://www.TheUberCloud.com

Contenu connexe

Tendances

Tendances (20)

Performance Testing : Cloud Deployments
Performance Testing : Cloud DeploymentsPerformance Testing : Cloud Deployments
Performance Testing : Cloud Deployments
 
Cloud Migration Patterns: A Multi-Cloud Architectural Perspective
Cloud Migration Patterns: A Multi-Cloud Architectural PerspectiveCloud Migration Patterns: A Multi-Cloud Architectural Perspective
Cloud Migration Patterns: A Multi-Cloud Architectural Perspective
 
DevOps as a Pathway to AWS | AWS Public Sector Summit 2016
DevOps as a Pathway to AWS | AWS Public Sector Summit 2016DevOps as a Pathway to AWS | AWS Public Sector Summit 2016
DevOps as a Pathway to AWS | AWS Public Sector Summit 2016
 
Ask The Architect: RightScale & AWS Dive Deep into Hybrid IT
Ask The Architect: RightScale & AWS Dive Deep into Hybrid ITAsk The Architect: RightScale & AWS Dive Deep into Hybrid IT
Ask The Architect: RightScale & AWS Dive Deep into Hybrid IT
 
Greg Maxey - Electric Cloud - Process as Code: An Introduction to the Electri...
Greg Maxey - Electric Cloud - Process as Code: An Introduction to the Electri...Greg Maxey - Electric Cloud - Process as Code: An Introduction to the Electri...
Greg Maxey - Electric Cloud - Process as Code: An Introduction to the Electri...
 
Feasibility of cloud migration for large enterprises
Feasibility of cloud migration for large enterprisesFeasibility of cloud migration for large enterprises
Feasibility of cloud migration for large enterprises
 
Using Cloud CAE Delivered by AWS HPC to Optimize Next-Gen Medical Devices - B...
Using Cloud CAE Delivered by AWS HPC to Optimize Next-Gen Medical Devices - B...Using Cloud CAE Delivered by AWS HPC to Optimize Next-Gen Medical Devices - B...
Using Cloud CAE Delivered by AWS HPC to Optimize Next-Gen Medical Devices - B...
 
Identifying Workloads to Move to the Cloud
Identifying Workloads to Move to the CloudIdentifying Workloads to Move to the Cloud
Identifying Workloads to Move to the Cloud
 
How to move to the cloud
How to move to the cloudHow to move to the cloud
How to move to the cloud
 
OneAPI Series 2 Webinar - 9th, Dec-20
OneAPI Series 2 Webinar - 9th, Dec-20OneAPI Series 2 Webinar - 9th, Dec-20
OneAPI Series 2 Webinar - 9th, Dec-20
 
Cloud Based Disaster Recovery: CloudEndure
Cloud Based Disaster Recovery: CloudEndureCloud Based Disaster Recovery: CloudEndure
Cloud Based Disaster Recovery: CloudEndure
 
How to Architect AWS for Mission-Critical Applications
How to Architect AWS for Mission-Critical ApplicationsHow to Architect AWS for Mission-Critical Applications
How to Architect AWS for Mission-Critical Applications
 
Microservices Architecture Enables DevOps: Migration to a Cloud-Native Archit...
Microservices Architecture Enables DevOps: Migration to a Cloud-Native Archit...Microservices Architecture Enables DevOps: Migration to a Cloud-Native Archit...
Microservices Architecture Enables DevOps: Migration to a Cloud-Native Archit...
 
Converting Your Existing SAP Server Infrastructure to a Modern Cloud-Based Ar...
Converting Your Existing SAP Server Infrastructure to a Modern Cloud-Based Ar...Converting Your Existing SAP Server Infrastructure to a Modern Cloud-Based Ar...
Converting Your Existing SAP Server Infrastructure to a Modern Cloud-Based Ar...
 
Enterprise-Grade Disaster Recovery Without Breaking the Bank
Enterprise-Grade Disaster Recovery Without Breaking the BankEnterprise-Grade Disaster Recovery Without Breaking the Bank
Enterprise-Grade Disaster Recovery Without Breaking the Bank
 
Ten key steps for on prem to azure cloud migration
Ten key steps for on prem to azure cloud migrationTen key steps for on prem to azure cloud migration
Ten key steps for on prem to azure cloud migration
 
Optimizing Your Cloud Applications in RightScale
Optimizing Your Cloud Applications in RightScaleOptimizing Your Cloud Applications in RightScale
Optimizing Your Cloud Applications in RightScale
 
Pragmatic Enterprise Application Migration to AWS
Pragmatic Enterprise Application Migration to AWSPragmatic Enterprise Application Migration to AWS
Pragmatic Enterprise Application Migration to AWS
 
Testing Applications—For the Cloud and in the Cloud
Testing Applications—For the Cloud and in the CloudTesting Applications—For the Cloud and in the Cloud
Testing Applications—For the Cloud and in the Cloud
 
Migrating to Cloud - A Step by Step
Migrating to Cloud - A Step by Step Migrating to Cloud - A Step by Step
Migrating to Cloud - A Step by Step
 

Similaire à The UberCloud - From Project to Product - From HPC Experiment to HPC Marketplace - From HPC Shop to HPC Shopping Mall

Uber cloud at ucc dresden dec 2013
Uber cloud at ucc dresden dec 2013Uber cloud at ucc dresden dec 2013
Uber cloud at ucc dresden dec 2013
Wolfgang Gentzsch
 

Similaire à The UberCloud - From Project to Product - From HPC Experiment to HPC Marketplace - From HPC Shop to HPC Shopping Mall (20)

UberCloud HPC Experiment Introduction for Beginners
UberCloud HPC Experiment Introduction for BeginnersUberCloud HPC Experiment Introduction for Beginners
UberCloud HPC Experiment Introduction for Beginners
 
Smart Manufacturing: CAE in the Cloud
Smart Manufacturing: CAE in the CloudSmart Manufacturing: CAE in the Cloud
Smart Manufacturing: CAE in the Cloud
 
International Conference on Utility and Cloud Computing December 9 – 12, Dres...
International Conference on Utility and Cloud Computing December 9 – 12, Dres...International Conference on Utility and Cloud Computing December 9 – 12, Dres...
International Conference on Utility and Cloud Computing December 9 – 12, Dres...
 
UberCloud at ucc dresden
UberCloud at ucc dresdenUberCloud at ucc dresden
UberCloud at ucc dresden
 
NCMS UberCloud Experiment Webinar .
NCMS UberCloud Experiment Webinar .NCMS UberCloud Experiment Webinar .
NCMS UberCloud Experiment Webinar .
 
NAFEMS Smart Manufacturing - UberCloud
NAFEMS Smart Manufacturing - UberCloudNAFEMS Smart Manufacturing - UberCloud
NAFEMS Smart Manufacturing - UberCloud
 
Smart Manufacturing: CAE in the Cloud
Smart Manufacturing: CAE in the CloudSmart Manufacturing: CAE in the Cloud
Smart Manufacturing: CAE in the Cloud
 
Uber cloud at ucc dresden dec 2013
Uber cloud at ucc dresden dec 2013Uber cloud at ucc dresden dec 2013
Uber cloud at ucc dresden dec 2013
 
Heavy duty Abaqus structural analysis using HPC in the cloud
Heavy duty Abaqus structural analysis using HPC in the cloudHeavy duty Abaqus structural analysis using HPC in the cloud
Heavy duty Abaqus structural analysis using HPC in the cloud
 
Pyconuk2011
Pyconuk2011Pyconuk2011
Pyconuk2011
 
Deployment Automation for Hybrid Cloud and Multi-Platform Environments
Deployment Automation for Hybrid Cloud and Multi-Platform EnvironmentsDeployment Automation for Hybrid Cloud and Multi-Platform Environments
Deployment Automation for Hybrid Cloud and Multi-Platform Environments
 
DEEP: a user success story
DEEP: a user success storyDEEP: a user success story
DEEP: a user success story
 
PLM World Conference 2007
PLM World Conference 2007PLM World Conference 2007
PLM World Conference 2007
 
Hewlett Packard Entreprise | Stormrunner load | Game Changer
Hewlett Packard Entreprise | Stormrunner load | Game ChangerHewlett Packard Entreprise | Stormrunner load | Game Changer
Hewlett Packard Entreprise | Stormrunner load | Game Changer
 
High Performance Computing (HPC) and Engineering Simulations in the Cloud
High Performance Computing (HPC) and Engineering Simulations in the CloudHigh Performance Computing (HPC) and Engineering Simulations in the Cloud
High Performance Computing (HPC) and Engineering Simulations in the Cloud
 
High Performance Computing (HPC) and Engineering Simulations in the Cloud
High Performance Computing (HPC) and Engineering Simulations in the CloudHigh Performance Computing (HPC) and Engineering Simulations in the Cloud
High Performance Computing (HPC) and Engineering Simulations in the Cloud
 
[Srijan Wednesday Webinars] How to Build a Cloud Native Platform for Enterpri...
[Srijan Wednesday Webinars] How to Build a Cloud Native Platform for Enterpri...[Srijan Wednesday Webinars] How to Build a Cloud Native Platform for Enterpri...
[Srijan Wednesday Webinars] How to Build a Cloud Native Platform for Enterpri...
 
WaveMaker and Cloud Foundry
WaveMaker and Cloud FoundryWaveMaker and Cloud Foundry
WaveMaker and Cloud Foundry
 
Managing elasticity across Multi-cloud providers
Managing elasticity across Multi-cloud providersManaging elasticity across Multi-cloud providers
Managing elasticity across Multi-cloud providers
 
Daimler’s Community Approach to TAS Platform Monitoring
Daimler’s Community Approach to TAS Platform MonitoringDaimler’s Community Approach to TAS Platform Monitoring
Daimler’s Community Approach to TAS Platform Monitoring
 

Dernier

Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
Joaquim Jorge
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
giselly40
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
vu2urc
 

Dernier (20)

A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law DevelopmentsTrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
TrustArc Webinar - Stay Ahead of US State Data Privacy Law Developments
 
08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men08448380779 Call Girls In Civil Lines Women Seeking Men
08448380779 Call Girls In Civil Lines Women Seeking Men
 
Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024Finology Group – Insurtech Innovation Award 2024
Finology Group – Insurtech Innovation Award 2024
 
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
 
Artificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and MythsArtificial Intelligence: Facts and Myths
Artificial Intelligence: Facts and Myths
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxThe Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
 
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
Raspberry Pi 5: Challenges and Solutions in Bringing up an OpenGL/Vulkan Driv...
 
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
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...Driving Behavioral Change for Information Management through Data-Driven Gree...
Driving Behavioral Change for Information Management through Data-Driven Gree...
 
Advantages of Hiring UIUX Design Service Providers for Your Business
Advantages of Hiring UIUX Design Service Providers for Your BusinessAdvantages of Hiring UIUX Design Service Providers for Your Business
Advantages of Hiring UIUX Design Service Providers for Your Business
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
Histor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slideHistor y of HAM Radio presentation slide
Histor y of HAM Radio presentation slide
 
Real Time Object Detection Using Open CV
Real Time Object Detection Using Open CVReal Time Object Detection Using Open CV
Real Time Object Detection Using Open CV
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024Tata AIG General Insurance Company - Insurer Innovation Award 2024
Tata AIG General Insurance Company - Insurer Innovation Award 2024
 
Automating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps ScriptAutomating Google Workspace (GWS) & more with Apps Script
Automating Google Workspace (GWS) & more with Apps Script
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 

The UberCloud - From Project to Product - From HPC Experiment to HPC Marketplace - From HPC Shop to HPC Shopping Mall

  • 1. The UberCloud From Project to Product From HPC Experiment to HPC Marketplace From HPC Shop to HPC Shopping Mall Wolfgang Gentzsch President,The UberCloud BurakYenier CEO,The UberCloud HPC 2014 , Cetraro, July 7 – 11, 2014
  • 2. The UberCloud From Project to Product From HPC Experiment to HPC Marketplace From HPC Shop to HPC Shopping Mall Wolfgang Gentzsch President,The UberCloud BurakYenier CEO,The UberCloud Product innovation and scientific insight require computing <= HPC 2014 , Cetraro, July 7 – 11, 2014
  • 3. Summary: UberCloud Progress  Traction: 1,500 registered orgs, 72 countries, 155 experiment teams exploring Computing as a Service  Visible: 60+ articles; 40+ trade shows; prestigious 2013 HPCwire Readers’ ChoiceAward  Powerful sponsors: Intel,Autodesk, Bull, IDC,ANSYS; talking to 10 more.  Powerful participant: 4 ofTop 5 CAE ISVs (total 80+); 100+ sw/hw providers; hundreds of end-users, 600+ renowned experts  Compendium I & II: 25 + 17 best case studies from Round 1 – 5 HPC Experiment sponsored by Intel, over 1,000 downloads  Hired LindaTreiman (from Bright) to take care of our providers and sponsors  Container technology and run time environment  UberCloud Marketplace andAppStore 3
  • 4. Engineers & scientists computing tools: workstations 3 options to use technical compute power , servers, and clouds
  • 5. Benefits of HPC in the Cloud Continue using your workstation for your daily design, and use Cloud resources with additional benefits:  An HPC system at your finger tip, on demand  Pay per use (no CAPital EXpenditure)  Scaling resources up and down (business flexibility)  Low risk by working with multiple cloud providers.
  • 6. The challenges  Workstation: slow, limited capacity  HPC server: expensive (TCO!), complex  HPC in the Cloud: security, licensing, data transfer, expertise, and …  Very crowded cloud services market, difficult to find your ideal service
  • 7. It all started June 2012 with the free voluntary UberCloud Experiments HPC as a Service, on demand, in a team experiment For SMBs and their engineering applications to explore the end-to-end process of using remote computing resources, as a service, on demand, at your finger tip, and learning how to resolve the roadblocks.
  • 8. How does the Experiment work?  End-User registers  SoftwareVendor joins  We select a Team Expert  Matching a Resource Provider  152 UberCloud Experiments so far  42 case studies in Compendium I & II  Assigning an UberCloud mentor  Now, the team is ready to go  Finally, writing the Case Study
  • 9. 22 StepsTowards a successful project Step 1: define end-user project  1.1: TE & EU fill out "Project definition" docu  1.2: UC assigns SP based on "Project definition" docu  1.3: UC +TM assign RP based on "Project definition" docu  1.4: TE calls for a kick-off meeting over Skype via Doodle  1.5: RP fills out "Computing resources" docu  1.6: SP fills out "Software resources" docu  1.7: If custom code, EU fills out "Software resources" docu  1.8 TE +TM review UC Exhibit, consider additional services EU = end user, SP = software provider, RP = resource provider,TE = team expert, TM = team mentor, UC UberCloud
  • 10. 22 StepsTowards a successful project Step 2 & 3: resources & execution Step 2: Contact the resources, set up the project environment  2.1: TE gets resources using "Computing resources" docu  2.2: TE & RP set up software using "Software resources" docu  2.3: TE & RP set up EU code using "Software resources" docu  2.4: TE & RP configure project environment  2.5: TE performs a trial run Step 3: Initiate project execution on cloud resources  3.1: TE & EU upload data to the project environment  3.2: TE & RP queue the job(s) for the project EU = end user, SP = software provider, RP = resource provider,TE = team expert, TM = team mentor, UC UberCloud
  • 11. 22 StepsTowards a successful project Step 4-6: monitor, review, report Step 4: Monitor the project  4.1: TE monitors the job status  4.2: TE & EU re-set parameters between runs as needed  4.3: TE & RP performs post processing, such as remote viz Step 5: Review your results  5.1: TE makes results available to EU, if needed repeats Step 2-5  5.2: TE & RP remove EU data from project environment Step 6: Document your findings  6.1: TE initiates docu "Template for UC Experiment Uses Cases"  6.2: TE requests team to contribute to and review the docu EU = end user, SP = software provider, RP = resource provider,TE = team expert, TM = team mentor, UC UberCloud
  • 12. Step by Step process Basecamp project management platform for each team
  • 13. The UberCloud HPC Experiments Started July 2012, 1500 participants, 72 countries Example: AmazonAWS in the UberCloud:  Team 2:  Team 20:  Team 30:  Team 40:  Team 65:  Team 70:  Team 116:  Team 142:  Team 147: 13 Simulation of a Multi-resonant Antenna System Turbo-machinery Application Benchmarks HeatTransfer Use Case Simulation of Spatial Hearing Weather Research with WRF Next Generation Sequencing Data Analysis Quantitative Finance Historical Data Modeling VirtualTesting of Severe Service ControlValve Compressor Map Generation Using Cloud-Based CFD
  • 14. The UberCloud HPC Experiments Started July 2012, 1500 participants, 72 countries Example: Bull extreme factory in the UberCloud:  Team 5:  Team 8:  Team 32:  Team 52:  Team 85:  Team 89:  Team 120: 14 2-phase Flow Simulation of a Separation Column Flash Dryer with Hot Gas to EvaporateWater from a Solid 2-phase flow simulation of a separation columns Simulations of Blow-off in Combustion Systems Combustion simulations of power plant equipment Simulations of Enzyme-Substrate reactions Simulation of water flow around self-propelled ship
  • 15. © 2013 ANSYS, Inc. July 16, 201415 Some Lessons Learned - UberCloud HPC Experiment Team 8: Flash Dryer Simulation (ANSYS Fluent) Simulation throughput criterion was met ‼ Remote visualization solution required ‼ Time for downloading results ‼ IP concern Team 9: Irrigation Simulation (ANSYS CFX) Timely, high fidelity results were obtained ‼ Windows above Linux preferred ‼ HPC workshop services for SMEs requested Ability to conduct parametric simulations ‼ Sufficient number of licenses needed ‼ Remote visualization solution required ‼ Disappointing hardware performance results Team 34: Wind Turbine Simulation (ANSYS Fluent) Source: The UberCloud HPC Experiment: Compendium of Case Studies
  • 16. © 2013 ANSYS, Inc. July 16, 201416 Some Lessons Learned - UberCloud HPC Experiment Team 36: IC-Engine Simulation (ANSYS Fluent) Smooth setup of environment and sw ‼ Appropriate cloud licensing required ‼ Network bandwidth not good for graphics ‼ Customized sw needs to be recompiled Team 54: Pool Plant Simulation (ANSYS CFX) Ability to easily burst into the Cloud Accelerated file transfer and 3D graphics ‼ Cost of the commercial CFD licenses Ease of use Good remote visualization ‼ File uploading time ‼ Stress test with multiple users required Team 56: Axial Fan Simulation (ANSYS Fluent) Source: The UberCloud HPC Experiment: Compendium of Case Studies
  • 17. Team 1: Heavy DutyABAQUS Structural Analysis in the Cloud TheTeam:  Frank Ding, is the EngineeringAnalysis and Computing Manager at Simpson Strong-Tie in Northern California.The end user problem space…..  Matt Dunbar, is now the ChiefArchitect and CAE technical specialist at Simulia Dassault Systems, in Rhode Island on the East Coast. He represents the application level expertise in this experiment.  Steve Hebert, is one of the founders and CEO of Nimbix, located inTexas, which in this team is the provider of cloud-based HPCinfrastructure and applications hosting  Rob Sherrard, is the other co-founder of Nimbix andVP of Service Delivery.  Sharan Kalwani, HPC Segment Architect with Intel Corporation and in this project is the overall Subject Matter Expert,located in Michigan (Midwest).
  • 18. Team 1:The problem to be solved  The Use Case:  ABAQUS/Explicit and ABAQUS/Standard are the major applications  HPC cluster at Simpson Strong-Tie is modest, 32 cores of Intel x86-based gear.  Cloud bursting is critical.  Also challenging is the issue of sudden large data transfers  Need to perform visualization ensuring design simulation is proceeding correctly  Workflow  Pre-processing happens on end user’s workstation to prepare the CAE model  Files transferred to HPC cloud data staging area using a secured FTP process  Submit the job through (Nimbix.net) web portal  Result files can be transferred back for post-processing,  or the post-processing can be done using remote desktop tool like HP RGS on the HPC provider’s visualization node.
  • 19. Team 1: Challenges!  A weekly schedule – was not the first challenge!  Needed a fast interconnect (e.g. Infiniband) which was not available.  Solved with “fat” nodes, as this cluster is a sandbox for testing the cloud workflow, the actual inter-connect performance of this 12 core cluster was not a concern.  The second challenge was to address the need for simple and secure file storage and transfer. Accomplished very quickly using GLOBUS technology.These days cloud based storage is mature and ready for prime time HPC, especially in the CAE arena.  The third challenge was now to push the limits and stream several jobs simultaneously to the remote HPC cloud resource.This provided solid evidence that “bursting” was indeed feasible.To the whole team’s surprise it worked admirably and had no impact whatsoever overall.  The fourth and final challenge now became perhaps the most critical which was the end user perception and acceptance of the cloud as a smooth part of the workflow.  Remote visualization was necessary to see if the simulation results (left remotely in the cloud)
  • 20. Team 1:What the end user saw…..  With right tuning, useful remote visualization!
  • 21. Team 1:What did we learn?  Benefits:  Clearly established - HPC cloud model can indeed be made to work.  Recommendations:  A few key necessary factors emerged:  Result file transfers: most CAE result files easily over several gigabytes, a minimum of 2-4 MB/sec sustained and delivered bandwidth is necessary  The same applies when doing remote visualizations, in this case, 4 MB/sec is the threshold Latency is also a key concern.  Beyond the Cloud service provider, a network savvy ISP is perhaps a necessary part of the team of infrastructure in order to deliver robust and production like HPC cloud  Remote visualization provides a convenient collaboration platform for a CAE analyst to access the analysis results any where he has the need, but it requires a secure “behind the firewall” remote workspace
  • 22. Team 2: Simulating new probe design for a medical device HPC Expert: End User: wanted to stay anonymous Credits from:
  • 23. Team 70 Case Study: Next Generation Sequencing DataAnalysis  MEET TEAM 70:  End User -Thomas Dyar, Senior Genomics Data Scientist, Betty Diegel, Senior Software Engineer, medical devices company  Software Provider - Brian O'Connor, CEO Nimbus Inform.. Cloud services for workflows utilizing SeqWare  Resource Provider - AmazonWeb Services  HPC Cloud Experts - Cycle Computing
  • 24. Team 142 Case Study:Virtual testing of severe service control valve  MEET TEAM 142:  End User – Mark Lobo, Lobo Engineering;  Software Provider – Derrek Cooper,Autodesk CFD 360  Resource Provider - AmazonWeb Services  HPC Cloud Experts – Jon den Hartog and Heath HoughtonAutodesk
  • 25. Challenges with the experiments  HPC is complex; at times it requires multiple experts  Reaching out to industry end-users  No standards: access and usage of hw & sw providers are different, some are complex  Lack of automation: Currently the end-to-end process of the HPC experiment is manual (intentionally).  Time delays: vacation, conferences, and everybody has a day job (busy!)  Barriers: Complexity, data transfer, security, IP, software licenses, performance, interoperability… AND: we learn a lot . . . .
  • 26. Bumps on the road  Time delays:Vacation times in July/August and December  No standards: Access and usage processes of hw & sw providers are different, some complex  Hands-on: Process automation at providers vary greatly.  Lack of automation: Currently the end-to-end process of the HPC experiment is manual (intentionally).  Participants spent relatively small portion of their time, some are responsive, others are not: it is not their day job!  Getting regular updates fromTeam Experts is a challenge because this is not their day job !
  • 27. Building a marketplace demands building an ecosystem UC Market Place App store Comm unity Start: Rough idea Mar Com ß Pro duct Techn ology Exper iment Exhib ition 06/12 HPC Cetraro 09/12 01/13 01/13 01/14 01/14 03/14 06/14 workflow impact
  • 28. Problem: today’s crowded and ineffective cloud ‘market’ Supply Cloud providers ISVs Consultants Trainers Demand Engineers Scientists Data analysts Experts . . . . . Complexity Data Transfer SecurityLicensing Uncertain Cost Roadblocks
  • 29. Solution: The UberCloud Marketplace Supply Cloud providers ISVs Consultants Trainers … Demand Engineers Scientists Data analysts Experts UberCloud Marketplace
  • 30. Solution: The UberCloud Marketplace UberCloud Marketplace for 20+ million engineers and scientists and their service providers to discover, try, buy, and sell computing time, storage, software and expertise on demand
  • 32. Technology solution: StandardCloud run-time environment  Building thin, light-weight run-time environment (RTE) on top of Linux kernel features and open source tools, which  provides a standard platform across distributed in-house, grid, and cloud resources  facilitates access to all kinds of resources (workstations, servers, and private, hybrid, and public clouds)  moving portable, stackable units including end-users app, data, tools seamlessly btwn in-house and external resources  enables portability across different in-house and external resources (federation)  reducing / removing many of the cloud challenges 32
  • 33. Builder Launcher Controller ISV DataTools Stackable units with tools (ex: encryption), ISV application codes (ex: OpenFOAM). Just add your own codes and data. Run anywhere with UberCloud Run Time. Scale up or down the compute power as needed. Collect granular usage data, logs. Monitor, alert, report. Any Workstation Any Cluster Any Cloud Run Time Run Time Run Time Build once, run anywhere
  • 34. Portable Units are like containers  Standard software units (with user’s app, data, tools etc.) can be moved seamlessly across any set of resources. Units are  stackable and portable,  built from a base unit with standard functionality (security, encryption, compression, monitoring, data transfer, etc)  extended by the ISV’s software as next layer,  top layer is the end-users configuration and data. 34
  • 35. Next Steps: Reducing / Removing Cloud Challenges Challenge *) Addressed today With UberCloud **) Portability low high Security medium high Software Licenses low medium DataTransfer low medium Compliance low medium Standardization low high Cost & ROITransparency low high Resource Availability medium high Transparency of Market low high Cloud Computing Expertise low medium *) Cloud challenges are addressed low, or medium, or high **)When UberCloud is fully developed one year from now
  • 36. It’s your turn now   Download 2013 Compendium of case studies from HPCwire  Download 2014 Compendium of case studies  Register atTheUberCloud.com  Try the UberCloud Marketplace with $1 voucher and you get  NOW NOW
  • 37. The UberCloud Community and Marketplace ThankYou ! Register free at http://www.TheUberCloud.com