SlideShare ist ein Scribd-Unternehmen logo
1 von 38
Downloaden Sie, um offline zu lesen
Quality of data-aware data analytics
workflows
Hong-Linh Truong
Distributed Systems Group,
Vienna University of Technology
truong@dsg.tuwien.ac.at
http://dsg.tuwien.ac.at/staff/truong
1ASE Summer 2014
Advanced Services Engineering,
Summer 2014
Advanced Services Engineering,
Summer 2014
Outline
 Data analytics workflows – structures and
systems
 Issues on Quality of data aware data analytics
workflows
 Quality of data aware simulation workflows
ASE Summer 2014 2
Data analytics workflows
ASE Summer 2014 3
Things
People
DaaSDaaS
Computation
Service
Computation
Service
We use the term „workflow“ in a
generic meaning!!!
Different views of (data analytics)
workflow systems
4
View
Domain
view
Business
Workflow
Scientific/E-
science
Workflow
Data/Computati
on view
Data
intensive
workflow
Computatio
n intensive
workflow
Human-
intensive
workflow
System
view
Grid
workflow
Enterprise
workflow
Cloud-
based
workflow
Execution
model
view
Service-
based
workflow
Batch job
workflow
Interactive
workflow
ASE Summer 2014
Pros and cons of (data analytics)
workflow systems
ASE Summer 2014 5
 Ian J. Taylor, Ewa Deelman, Dennis B. Gannon, and Matthew Shields. 2006. Workflows for E-Science: Scientific
Workflows for Grids. Springer-Verlag New York, Inc., Secaucus, NJ, USA.
 Bertram Ludäscher, Mathias Weske, Timothy M. McPhillips, Shawn Bowers: Scientific Workflows: Business as
Usual? BPM 2009: 31-47
 Mirko Sonntag, Dimka Karastoyanova, Frank Leymann: The Missing Features of Workflow Systems for Scientific
Computations. Software Engineering (Workshops) 2010: 209-216
 Lavanya Ramakrishnan and Beth Plale. 2010. A multi-dimensional classification model for scientific workflow
characteristics. In Proceedings of the 1st International Workshop on Workflow Approaches to New Data-centric
Science (Wands '10). ACM, New York, NY, USA, , Article 4 , 12 pages. DOI=10.1145/1833398.1833402
http://doi.acm.org/10.1145/1833398.1833402
 Jia Yu and Rajkumar Buyya. 2005. A taxonomy of scientific workflow systems for grid computing. SIGMOD Rec. 34,
3 (September 2005), 44-49. DOI=10.1145/1084805.1084814 http://doi.acm.org/10.1145/1084805.1084814
 Ian J. Taylor, Ewa Deelman, Dennis B. Gannon, and Matthew Shields. 2006. Workflows for E-Science: Scientific
Workflows for Grids. Springer-Verlag New York, Inc., Secaucus, NJ, USA.
 Bertram Ludäscher, Mathias Weske, Timothy M. McPhillips, Shawn Bowers: Scientific Workflows: Business as
Usual? BPM 2009: 31-47
 Mirko Sonntag, Dimka Karastoyanova, Frank Leymann: The Missing Features of Workflow Systems for Scientific
Computations. Software Engineering (Workshops) 2010: 209-216
 Lavanya Ramakrishnan and Beth Plale. 2010. A multi-dimensional classification model for scientific workflow
characteristics. In Proceedings of the 1st International Workshop on Workflow Approaches to New Data-centric
Science (Wands '10). ACM, New York, NY, USA, , Article 4 , 12 pages. DOI=10.1145/1833398.1833402
http://doi.acm.org/10.1145/1833398.1833402
 Jia Yu and Rajkumar Buyya. 2005. A taxonomy of scientific workflow systems for grid computing. SIGMOD Rec. 34,
3 (September 2005), 44-49. DOI=10.1145/1084805.1084814 http://doi.acm.org/10.1145/1084805.1084814
Hierarchical view of workflows (1)
mProject1Service.java
public void mProject1() {
}
mProject1Service.java
public void mProject1() {
}
WorkflowWorkflow
A();A();
<parallel>
</parallel>
<parallel>
</parallel>
Workflow Region nWorkflow Region n
Activity mActivity m
Invoked Application mInvoked Application m
Code
Region 1
Code
Region 1
Code
Region q
Code
Region q
Code
Region …
Code
Region …
<activity name="mProject1">
<executable name="mProject1"/>
</activity>
<activity name="mProject1">
<executable name="mProject1"/>
</activity>
<activity name="mProject2">
<executable name="mProject2"/>
</activity>
<activity name="mProject2">
<executable name="mProject2"/>
</activity>
while () {
...
}
while () {
...
}
Hong Linh Truong, Schahram Dustdar, Thomas Fahringer:
Performance metrics and ontologies for Grid workflows. Future
Generation Comp. Syst. 23(6): 760-772 (2007)
Hong Linh Truong, Schahram Dustdar, Thomas Fahringer:
Performance metrics and ontologies for Grid workflows. Future
Generation Comp. Syst. 23(6): 760-772 (2007)
ASE Summer 2014 6
Representing and programming
data analytics workflows
 Programming languages
 General- and specific-purpose programming
languages, such as Java, Python, Swift
 Programming models, such as MapReduce, Hadoop,
Complex event processing
 Descriptive languages
 BPEL and several languages designed for specific
workflow engines
 They can also be combined
7ASE Summer 2014
Data analytics workflow execution
models
ASE Summer 2014 8
Data analytics
workflows
Data analytics
workflows Execution EngineExecution Engine
Local SchedulerLocal Scheduler
jobjob jobjob jobjob jobjob
Web
serviceWeb
serviceWeb
service
Web
service
People
Data analytics workflow execution
models
ASE Summer 2014 9
Data analytics
workflows
Data analytics
workflows
Execution EngineExecution Engine
Service
unit
Local
input
data
Analytics
Results
Web service
MapReduce/Hadoop
Sub-Workflow
MPI
Other solutions
Servers/Cloud/Cluster
How data is
transferred among
service units?
How data is
transferred among
service units?
Examples of systems and
frameworks for data analytics
workflows
ASE Summer 2014 10
ASKALONASKALON
KEPLERKEPLER
TAVERNATAVERNA
TRIDENTTRIDENT
Apache ODE +
WS-BPEL
Apache ODE +
WS-BPEL
PegasusPegasus
JOperaJOperaADEPTADEPT
MapReduce/HadoopMapReduce/Hadoop
SwiftSwiftRR
Some examples (1)
ASE Summer 2014 11
Source: Gideon Juve, Ewa Deelman, G. Bruce Berriman, Benjamin P. Berman, Philip Maechling: An Evaluation of the
Cost and Performance of Scientific Workflows on Amazon EC2. J. Grid Comput. 10(1): 5-21 (2012)
Source: Gideon Juve, Ewa Deelman, G. Bruce Berriman, Benjamin P. Berman, Philip Maechling: An Evaluation of the
Cost and Performance of Scientific Workflows on Amazon EC2. J. Grid Comput. 10(1): 5-21 (2012)
Some examples (2)
ASE Summer 2014 12
Source: http://www.dps.uibk.ac.at/projects/brokerage/Source: http://www.dps.uibk.ac.at/projects/brokerage/
Some examples (3)
ASE Summer 2014 13
Source: Cesare Pautasso, Thomas Heinis, Gustavo Alonso: JOpera: Autonomic Service
Orchestration. IEEE Data Eng. Bull. 29(3): 32-39 (2006)
Source: Cesare Pautasso, Thomas Heinis, Gustavo Alonso: JOpera: Autonomic Service
Orchestration. IEEE Data Eng. Bull. 29(3): 32-39 (2006)
Some examples (4)
ASE Summer 2014 14
Source: Sudipto Das, Yannis Sismanis, Kevin S. Beyer, Rainer Gemulla, Peter J. Haas, and John McPherson. 2010.
Ricardo: integrating R and Hadoop. In Proceedings of the 2010 ACM SIGMOD International Conference on Management
of data (SIGMOD '10). ACM, New York, NY, USA, 987-998. DOI=10.1145/1807167.1807275
http://doi.acm.org/10.1145/1807167.1807275
Source: Sudipto Das, Yannis Sismanis, Kevin S. Beyer, Rainer Gemulla, Peter J. Haas, and John McPherson. 2010.
Ricardo: integrating R and Hadoop. In Proceedings of the 2010 ACM SIGMOD International Conference on Management
of data (SIGMOD '10). ACM, New York, NY, USA, 987-998. DOI=10.1145/1807167.1807275
http://doi.acm.org/10.1145/1807167.1807275
Elastic provisioning for workflows
With cloud computing we can
 Provision a computing system
 E.g., a virtual cloud-based cluster
 Provision a workflow execution platform
 E.g., batch job workflow engine, Hadoop runtime
 Deploy and execute workflows
elastic!
ASE Summer 2014 15
WHY DO WE NEED TO KNOW THE HIERARCHICAL
STRUCTURES WELL?
ASE Summer 2014 16
WHICH ASPECTS ARE WELL ADDRESSED W.R.T.
„DATA/SERVICE CONCERNS“
17
Hong Linh Truong, Peter Brunner, Vlad Nae, Thomas Fahringer: DIPAS: A distributed performance analysis service for
grid service-based workflows. Future Generation Comp. Syst. 25(4): 385-398 (2009)
Hong Linh Truong, Peter Brunner, Vlad Nae, Thomas Fahringer: DIPAS: A distributed performance analysis service for
grid service-based workflows. Future Generation Comp. Syst. 25(4): 385-398 (2009)
Well-addressed concerns --
performance
ASE Summer 2014 17
Well-addressed concerns –
performance/cost
ASE Summer 2014 18
Source: David Chiu, Sagar Deshpande, Gagan Agrawal, Rongxing Li: Cost and accuracy sensitive dynamic workflow
composition over grid environments. GRID 2008: 9-16
Source: David Chiu, Sagar Deshpande, Gagan Agrawal, Rongxing Li: Cost and accuracy sensitive dynamic workflow
composition over grid environments. GRID 2008: 9-16
QUALITY OF DATA IN DATA
ANALYTICS WORKFLOWS
ASE Summer 2014 19
Performance and Data Quality
Aspects
20
Data Analytics
Data in
Data out
Executed on
Analytics
Models
uses
Execution time?
Performance Overhead?
Memory Consumption?
Is the data good
enough?
How bad data
impacts on
performance?
Is the data good enough
to be stored and shared?
Data quality metrics and models are
strongly domain-specific
Data quality metrics and models are
strongly domain-specific
Which models should be
used?
ASE Summer 2014 20
WHY QOD FOR DATA ANALYTICS
WORKFLOW IS IMPORTANT?
ASE Summer 2014 21
Very little support
 Qurator workbench
 “Personal quality models” can be expressed and
embedded into query processors or workflows.
 Assume that quality evidence is presented
 Kepler
 A data quality monitor allows user to specify quality
thresholds.
 Expect that rules can be used to control the execution
based on quality.
ASE Summer 2014 22
P Missier, S M Embury, M Greenwood, A D Preece, & B Jin, Managing Information Quality in e-Science: the Qurator
Workbench, Proc ACM International Conference on Management of Data (SIGMOD 2007), ACM Press, pages 1150-
1152, 2007.
Aisa Na’im, Daniel Crawl,Maria Indrawan, Ilkay Altintas, and Shulei Sun. Monitoring data quality in kepler. In Salim Hariri
and Kate Keahey, editors, HPDC, pages 560–564. ACM, 2010.
P Missier, S M Embury, M Greenwood, A D Preece, & B Jin, Managing Information Quality in e-Science: the Qurator
Workbench, Proc ACM International Conference on Management of Data (SIGMOD 2007), ACM Press, pages 1150-
1152, 2007.
Aisa Na’im, Daniel Crawl,Maria Indrawan, Ilkay Altintas, and Shulei Sun. Monitoring data quality in kepler. In Salim Hariri
and Kate Keahey, editors, HPDC, pages 560–564. ACM, 2010.
Research questions
 What are main QoD metrics, what are the relationship between QoD
metrics and other service level objectives, and what are their roles
and possible trade-offs?
 How to support different domain-specific QoD models and link them
to workflow structures?
 How to model, evaluate and estimate QoD associated with data
movement into, within, and out to workflows? When and where
software or scientists can perform automatic or manual QoD
measurement and analysis
 How to optimize the workflow composition and execution based on
QoD specification?
 How does QoD impact on the provisioning of data services,
computational services and supporting services?
ASE Summer 2014 23
Approach
ASE Summer 2014 24
Core models, techniques and algorithms to allow
the modeling and evaluating QoD metrics
Core models, techniques and algorithms to allow
the modeling and evaluating QoD metrics
QoD-aware composition and executionQoD-aware composition and execution
QoD-aware service provisioning and
infrastructure optimization
QoD-aware service provisioning and
infrastructure optimization
Modeling and evaluating QoD
metrics for data analytics
workflows
ASE Summer 2014 25
QoD-aware optimization for data
analytics workflow composition
and execution
ASE Summer 2014 26
HOW TO INTEGRATE QOD
EVALUATORS? AND WHICH CONCERNS
NEED TO BE CONSIDERED?
ASE Summer 2014 27
QoD metrics evaluation
 Domain-specific metrics
 Need specific tools and expertise for determining
metrics
 Evaluation
 Cannot done by software only: humans are required
 Complex integration model
 Where to put QoD evaluators and why?
 How evaluators obtain the data to be evaluated?
 Impact of QoD evaluation on performance of
data analytics workflows
ASE Summer 2014 28
WHAT KIND OF OPTIMIZATION CAN BE
DONE?
ASE Summer 2014 29
QoD-aware optimization for data
analytics workflows
 Improving quality of results
 Reducing analytics costs and time
 Enabling early failure detection
 Enabling elasticitiy of services provisioning
 Enabling elastic data analytics support
 Etc.
ASE Summer 2014 30
EXAMPLE: QOD-AWARE
SIMULATION WORKFLOWS
ASE Summer 2014 31
32
QoD-aware simulation workflows
Michael Reiter, Hong Linh Truong, Schahram Dustdar, Dimka Karastoyanova, Robert Krause, Frank Leymann, Dieter
Pahr: On Analyzing Quality of Data Influences on Performance of Finite Elements Driven Computational Simulations.
Euro-Par 2012: 793-804
Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A
Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112
Michael Reiter, Hong Linh Truong, Schahram Dustdar, Dimka Karastoyanova, Robert Krause, Frank Leymann, Dieter
Pahr: On Analyzing Quality of Data Influences on Performance of Finite Elements Driven Computational Simulations.
Euro-Par 2012: 793-804
Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A
Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112
ASE Summer 2014
Hybrid resources needed for
quality evaluation
 Challenges:
 Subjective and objective evaluation
 Long running processes
 Our approach
 Different QoD measurements
 Human and software tasks
33ASE Summer 2014
34
Evaluating quality of data in
workflows
Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A
Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112
Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A
Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112
ASE Summer 2014
QoD Evaluator
 Software-based QoD evaluators
 Can be provided under libraries integrated into
invoked applications
 Web services-based evaluators
 Human-based QoD evaluators
 Built based on the concept human-based services
 Can be interfaces via Human-Task
 Simple mapping at the moment
 Human resources from clouds/crowds
ASE Summer 2014 35
Open issues: quality-of-result
(QoR) driven workflows
 How to support QoR driven analytics?
 Some basic steps
 Conceptualize expected QoR
 Associate the expected QoR with workflow activities
 Use the expected QoR
 to match/select underlying services (e.g., data sources,
cloud IaaS, etc
 Utilize the expected QoR and the measured QoR
and apply elasticity principles for
 Refine the workflow structure
 Provision computation, network and data
ASE Summer 2014 36
Exercises
 Read mentioned papers
 Discuss pros and cons of descriptive languages
- and programming languages – based data
analytics workflows
 Examine how QoD evaluators can be integrated
into different programming models for QoD-
aware data analytics workflows
 Implement some QoD evaluators for Hadoop
 Develop techniques for determining places
where QoD evaluators are inserted
ASE Summer 2014 37
38
Thanks for
your attention
Hong-Linh Truong
Distributed Systems Group
Vienna University of Technology
truong@dsg.tuwien.ac.at
http://dsg.tuwien.ac.at/staff/truong
ASE Summer 2014

Weitere ähnliche Inhalte

Ähnlich wie TUW - Quality of data-aware data analytics workflows

TUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designs
TUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designsTUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designs
TUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designsHong-Linh Truong
 
TUW-ASE Summer 2015 - Quality of Result-aware data analytics
TUW-ASE Summer 2015 - Quality of Result-aware data analyticsTUW-ASE Summer 2015 - Quality of Result-aware data analytics
TUW-ASE Summer 2015 - Quality of Result-aware data analyticsHong-Linh Truong
 
TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...
TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...
TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...Hong-Linh Truong
 
TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...
TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...
TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...Hong-Linh Truong
 
Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...
Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...
Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...Hong-Linh Truong
 
TUW-ASE-Summer 2014: Advanced Services Engineering- Introduction
TUW-ASE-Summer 2014: Advanced Services Engineering- IntroductionTUW-ASE-Summer 2014: Advanced Services Engineering- Introduction
TUW-ASE-Summer 2014: Advanced Services Engineering- IntroductionHong-Linh Truong
 
“Semantic Technologies for Smart Services”
“Semantic Technologies for Smart Services” “Semantic Technologies for Smart Services”
“Semantic Technologies for Smart Services” diannepatricia
 
MACHINE LEARNING ON MAPREDUCE FRAMEWORK
MACHINE LEARNING ON MAPREDUCE FRAMEWORKMACHINE LEARNING ON MAPREDUCE FRAMEWORK
MACHINE LEARNING ON MAPREDUCE FRAMEWORKAbhi Jit
 
Streaming Hypothesis Reasoning - William Smith, Jan 2016
Streaming Hypothesis Reasoning - William Smith, Jan 2016Streaming Hypothesis Reasoning - William Smith, Jan 2016
Streaming Hypothesis Reasoning - William Smith, Jan 2016Seattle DAML meetup
 
Big Data Meetup #7
Big Data Meetup #7Big Data Meetup #7
Big Data Meetup #7Paul Lo
 
An Overview of VIEW
An Overview of VIEWAn Overview of VIEW
An Overview of VIEWShiyong Lu
 
Cloud Computing Research Developments and Future Directions
Cloud Computing Research Developments and Future DirectionsCloud Computing Research Developments and Future Directions
Cloud Computing Research Developments and Future DirectionsIRJET Journal
 
TUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaS
TUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaSTUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaS
TUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaSHong-Linh Truong
 
IRJET- E-MORES: Efficient Multiple Output Regression for Streaming Data
IRJET- E-MORES: Efficient Multiple Output Regression for Streaming DataIRJET- E-MORES: Efficient Multiple Output Regression for Streaming Data
IRJET- E-MORES: Efficient Multiple Output Regression for Streaming DataIRJET Journal
 
TUWien - ASE Summer 2015: Engineering human-based services in elastic systems
TUWien - ASE Summer 2015: Engineering human-based services in elastic systemsTUWien - ASE Summer 2015: Engineering human-based services in elastic systems
TUWien - ASE Summer 2015: Engineering human-based services in elastic systemsHong-Linh Truong
 
TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...
TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...
TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...Hong-Linh Truong
 
Cloud and Bid data Dr.VK.pdf
Cloud and Bid data Dr.VK.pdfCloud and Bid data Dr.VK.pdf
Cloud and Bid data Dr.VK.pdfkalai75
 
IRJET- A Workflow Management System for Scalable Data Mining on Clouds
IRJET- A Workflow Management System for Scalable Data Mining on CloudsIRJET- A Workflow Management System for Scalable Data Mining on Clouds
IRJET- A Workflow Management System for Scalable Data Mining on CloudsIRJET Journal
 
Scaling up with Cisco Big Data: Data + Science = Data Science
Scaling up with Cisco Big Data: Data + Science = Data ScienceScaling up with Cisco Big Data: Data + Science = Data Science
Scaling up with Cisco Big Data: Data + Science = Data ScienceeRic Choo
 
IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...
IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...
IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...IRJET Journal
 

Ähnlich wie TUW - Quality of data-aware data analytics workflows (20)

TUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designs
TUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designsTUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designs
TUW-ASE-Summer 2014: Advanced service-based data analytics: concepts and designs
 
TUW-ASE Summer 2015 - Quality of Result-aware data analytics
TUW-ASE Summer 2015 - Quality of Result-aware data analyticsTUW-ASE Summer 2015 - Quality of Result-aware data analytics
TUW-ASE Summer 2015 - Quality of Result-aware data analytics
 
TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...
TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...
TUW-ASE Summer 2015: Advanced service-based data analytics: Models, Elasticit...
 
TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...
TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...
TUW-ASE-Summer 2014: Emerging Dynamic Distributed Systems and Challenges for ...
 
Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...
Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...
Emerging Dynamic TUW-ASE Summer 2015 - Distributed Systems and Challenges for...
 
TUW-ASE-Summer 2014: Advanced Services Engineering- Introduction
TUW-ASE-Summer 2014: Advanced Services Engineering- IntroductionTUW-ASE-Summer 2014: Advanced Services Engineering- Introduction
TUW-ASE-Summer 2014: Advanced Services Engineering- Introduction
 
“Semantic Technologies for Smart Services”
“Semantic Technologies for Smart Services” “Semantic Technologies for Smart Services”
“Semantic Technologies for Smart Services”
 
MACHINE LEARNING ON MAPREDUCE FRAMEWORK
MACHINE LEARNING ON MAPREDUCE FRAMEWORKMACHINE LEARNING ON MAPREDUCE FRAMEWORK
MACHINE LEARNING ON MAPREDUCE FRAMEWORK
 
Streaming Hypothesis Reasoning - William Smith, Jan 2016
Streaming Hypothesis Reasoning - William Smith, Jan 2016Streaming Hypothesis Reasoning - William Smith, Jan 2016
Streaming Hypothesis Reasoning - William Smith, Jan 2016
 
Big Data Meetup #7
Big Data Meetup #7Big Data Meetup #7
Big Data Meetup #7
 
An Overview of VIEW
An Overview of VIEWAn Overview of VIEW
An Overview of VIEW
 
Cloud Computing Research Developments and Future Directions
Cloud Computing Research Developments and Future DirectionsCloud Computing Research Developments and Future Directions
Cloud Computing Research Developments and Future Directions
 
TUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaS
TUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaSTUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaS
TUW-ASE-SUmmer 2014: Evaluating and Utilizing Data Concerns for DaaS
 
IRJET- E-MORES: Efficient Multiple Output Regression for Streaming Data
IRJET- E-MORES: Efficient Multiple Output Regression for Streaming DataIRJET- E-MORES: Efficient Multiple Output Regression for Streaming Data
IRJET- E-MORES: Efficient Multiple Output Regression for Streaming Data
 
TUWien - ASE Summer 2015: Engineering human-based services in elastic systems
TUWien - ASE Summer 2015: Engineering human-based services in elastic systemsTUWien - ASE Summer 2015: Engineering human-based services in elastic systems
TUWien - ASE Summer 2015: Engineering human-based services in elastic systems
 
TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...
TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...
TUW-ASE-Summer 2014: Data as a Service – Concepts, Design & Implementation, a...
 
Cloud and Bid data Dr.VK.pdf
Cloud and Bid data Dr.VK.pdfCloud and Bid data Dr.VK.pdf
Cloud and Bid data Dr.VK.pdf
 
IRJET- A Workflow Management System for Scalable Data Mining on Clouds
IRJET- A Workflow Management System for Scalable Data Mining on CloudsIRJET- A Workflow Management System for Scalable Data Mining on Clouds
IRJET- A Workflow Management System for Scalable Data Mining on Clouds
 
Scaling up with Cisco Big Data: Data + Science = Data Science
Scaling up with Cisco Big Data: Data + Science = Data ScienceScaling up with Cisco Big Data: Data + Science = Data Science
Scaling up with Cisco Big Data: Data + Science = Data Science
 
IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...
IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...
IRJET- Deduplication Detection for Similarity in Document Analysis Via Vector...
 

Mehr von Hong-Linh Truong

QoA4ML – A Framework for Supporting Contracts in Machine Learning Services
QoA4ML – A Framework for Supporting Contracts in Machine Learning ServicesQoA4ML – A Framework for Supporting Contracts in Machine Learning Services
QoA4ML – A Framework for Supporting Contracts in Machine Learning ServicesHong-Linh Truong
 
Sharing Blockchain Performance Knowledge for Edge Service Development
Sharing Blockchain Performance Knowledge for Edge Service DevelopmentSharing Blockchain Performance Knowledge for Edge Service Development
Sharing Blockchain Performance Knowledge for Edge Service DevelopmentHong-Linh Truong
 
Measuring, Quantifying, & Predicting the Cost-Accuracy Tradeoff
Measuring, Quantifying, & Predicting the Cost-Accuracy TradeoffMeasuring, Quantifying, & Predicting the Cost-Accuracy Tradeoff
Measuring, Quantifying, & Predicting the Cost-Accuracy TradeoffHong-Linh Truong
 
DevOps for Dynamic Interoperability of IoT, Edge and Cloud Systems
DevOps for Dynamic Interoperability of IoT, Edge and Cloud SystemsDevOps for Dynamic Interoperability of IoT, Edge and Cloud Systems
DevOps for Dynamic Interoperability of IoT, Edge and Cloud SystemsHong-Linh Truong
 
Dynamic IoT data, protocol, and middleware interoperability with resource sli...
Dynamic IoT data, protocol, and middleware interoperability with resource sli...Dynamic IoT data, protocol, and middleware interoperability with resource sli...
Dynamic IoT data, protocol, and middleware interoperability with resource sli...Hong-Linh Truong
 
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...Hong-Linh Truong
 
Modeling and Provisioning IoT Cloud Systems for Testing Uncertainties
Modeling and Provisioning IoT Cloud Systems for Testing UncertaintiesModeling and Provisioning IoT Cloud Systems for Testing Uncertainties
Modeling and Provisioning IoT Cloud Systems for Testing UncertaintiesHong-Linh Truong
 
Characterizing Incidents in Cloud-based IoT Data Analytics
Characterizing Incidents in Cloud-based IoT Data AnalyticsCharacterizing Incidents in Cloud-based IoT Data Analytics
Characterizing Incidents in Cloud-based IoT Data AnalyticsHong-Linh Truong
 
Enabling Edge Analytics of IoT Data: The Case of LoRaWAN
Enabling Edge Analytics of IoT Data: The Case of LoRaWANEnabling Edge Analytics of IoT Data: The Case of LoRaWAN
Enabling Edge Analytics of IoT Data: The Case of LoRaWANHong-Linh Truong
 
Analytics of Performance and Data Quality for Mobile Edge Cloud Applications
Analytics of Performance and Data Quality for Mobile Edge Cloud ApplicationsAnalytics of Performance and Data Quality for Mobile Edge Cloud Applications
Analytics of Performance and Data Quality for Mobile Edge Cloud ApplicationsHong-Linh Truong
 
Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...
Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...
Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...Hong-Linh Truong
 
Deep Context-Awareness: Context Coupling and New Types of Context Information...
Deep Context-Awareness: Context Coupling and New Types of Context Information...Deep Context-Awareness: Context Coupling and New Types of Context Information...
Deep Context-Awareness: Context Coupling and New Types of Context Information...Hong-Linh Truong
 
Managing and Testing Ensembles of IoT, Network functions, and Clouds
Managing and Testing Ensembles of IoT, Network functions, and CloudsManaging and Testing Ensembles of IoT, Network functions, and Clouds
Managing and Testing Ensembles of IoT, Network functions, and CloudsHong-Linh Truong
 
Towards a Resource Slice Interoperability Hub for IoT
Towards a Resource Slice Interoperability Hub for IoTTowards a Resource Slice Interoperability Hub for IoT
Towards a Resource Slice Interoperability Hub for IoTHong-Linh Truong
 
On Supporting Contract-aware IoT Dataspace Services
On Supporting Contract-aware IoT Dataspace ServicesOn Supporting Contract-aware IoT Dataspace Services
On Supporting Contract-aware IoT Dataspace ServicesHong-Linh Truong
 
Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...
Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...
Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...Hong-Linh Truong
 
On Engineering Analytics of Elastic IoT Cloud Systems
On Engineering Analytics of Elastic IoT Cloud SystemsOn Engineering Analytics of Elastic IoT Cloud Systems
On Engineering Analytics of Elastic IoT Cloud SystemsHong-Linh Truong
 
HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...
HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...
HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...Hong-Linh Truong
 
SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...
SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...
SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...Hong-Linh Truong
 
Governing Elastic IoT Cloud Systems under Uncertainties
Governing Elastic IoT Cloud Systems under UncertaintiesGoverning Elastic IoT Cloud Systems under Uncertainties
Governing Elastic IoT Cloud Systems under UncertaintiesHong-Linh Truong
 

Mehr von Hong-Linh Truong (20)

QoA4ML – A Framework for Supporting Contracts in Machine Learning Services
QoA4ML – A Framework for Supporting Contracts in Machine Learning ServicesQoA4ML – A Framework for Supporting Contracts in Machine Learning Services
QoA4ML – A Framework for Supporting Contracts in Machine Learning Services
 
Sharing Blockchain Performance Knowledge for Edge Service Development
Sharing Blockchain Performance Knowledge for Edge Service DevelopmentSharing Blockchain Performance Knowledge for Edge Service Development
Sharing Blockchain Performance Knowledge for Edge Service Development
 
Measuring, Quantifying, & Predicting the Cost-Accuracy Tradeoff
Measuring, Quantifying, & Predicting the Cost-Accuracy TradeoffMeasuring, Quantifying, & Predicting the Cost-Accuracy Tradeoff
Measuring, Quantifying, & Predicting the Cost-Accuracy Tradeoff
 
DevOps for Dynamic Interoperability of IoT, Edge and Cloud Systems
DevOps for Dynamic Interoperability of IoT, Edge and Cloud SystemsDevOps for Dynamic Interoperability of IoT, Edge and Cloud Systems
DevOps for Dynamic Interoperability of IoT, Edge and Cloud Systems
 
Dynamic IoT data, protocol, and middleware interoperability with resource sli...
Dynamic IoT data, protocol, and middleware interoperability with resource sli...Dynamic IoT data, protocol, and middleware interoperability with resource sli...
Dynamic IoT data, protocol, and middleware interoperability with resource sli...
 
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
Integrated Analytics for IIoT Predictive Maintenance using IoT Big Data Cloud...
 
Modeling and Provisioning IoT Cloud Systems for Testing Uncertainties
Modeling and Provisioning IoT Cloud Systems for Testing UncertaintiesModeling and Provisioning IoT Cloud Systems for Testing Uncertainties
Modeling and Provisioning IoT Cloud Systems for Testing Uncertainties
 
Characterizing Incidents in Cloud-based IoT Data Analytics
Characterizing Incidents in Cloud-based IoT Data AnalyticsCharacterizing Incidents in Cloud-based IoT Data Analytics
Characterizing Incidents in Cloud-based IoT Data Analytics
 
Enabling Edge Analytics of IoT Data: The Case of LoRaWAN
Enabling Edge Analytics of IoT Data: The Case of LoRaWANEnabling Edge Analytics of IoT Data: The Case of LoRaWAN
Enabling Edge Analytics of IoT Data: The Case of LoRaWAN
 
Analytics of Performance and Data Quality for Mobile Edge Cloud Applications
Analytics of Performance and Data Quality for Mobile Edge Cloud ApplicationsAnalytics of Performance and Data Quality for Mobile Edge Cloud Applications
Analytics of Performance and Data Quality for Mobile Edge Cloud Applications
 
Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...
Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...
Testing Uncertainty of Cyber-Physical Systems in IoT Cloud Infrastructures: C...
 
Deep Context-Awareness: Context Coupling and New Types of Context Information...
Deep Context-Awareness: Context Coupling and New Types of Context Information...Deep Context-Awareness: Context Coupling and New Types of Context Information...
Deep Context-Awareness: Context Coupling and New Types of Context Information...
 
Managing and Testing Ensembles of IoT, Network functions, and Clouds
Managing and Testing Ensembles of IoT, Network functions, and CloudsManaging and Testing Ensembles of IoT, Network functions, and Clouds
Managing and Testing Ensembles of IoT, Network functions, and Clouds
 
Towards a Resource Slice Interoperability Hub for IoT
Towards a Resource Slice Interoperability Hub for IoTTowards a Resource Slice Interoperability Hub for IoT
Towards a Resource Slice Interoperability Hub for IoT
 
On Supporting Contract-aware IoT Dataspace Services
On Supporting Contract-aware IoT Dataspace ServicesOn Supporting Contract-aware IoT Dataspace Services
On Supporting Contract-aware IoT Dataspace Services
 
Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...
Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...
Towards the Realization of Multi-dimensional Elasticity for Distributed Cloud...
 
On Engineering Analytics of Elastic IoT Cloud Systems
On Engineering Analytics of Elastic IoT Cloud SystemsOn Engineering Analytics of Elastic IoT Cloud Systems
On Engineering Analytics of Elastic IoT Cloud Systems
 
HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...
HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...
HINC – Harmonizing Diverse Resource Information Across IoT, Network Functions...
 
SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...
SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...
SINC – An Information-Centric Approach for End-to-End IoT Cloud Resource Prov...
 
Governing Elastic IoT Cloud Systems under Uncertainties
Governing Elastic IoT Cloud Systems under UncertaintiesGoverning Elastic IoT Cloud Systems under Uncertainties
Governing Elastic IoT Cloud Systems under Uncertainties
 

Kürzlich hochgeladen

9548086042 for call girls in Indira Nagar with room service
9548086042  for call girls in Indira Nagar  with room service9548086042  for call girls in Indira Nagar  with room service
9548086042 for call girls in Indira Nagar with room servicediscovermytutordmt
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introductionMaksud Ahmed
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3JemimahLaneBuaron
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpinRaunakKeshri1
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactPECB
 
Russian Call Girls in Andheri Airport Mumbai WhatsApp 9167673311 💞 Full Nigh...
Russian Call Girls in Andheri Airport Mumbai WhatsApp  9167673311 💞 Full Nigh...Russian Call Girls in Andheri Airport Mumbai WhatsApp  9167673311 💞 Full Nigh...
Russian Call Girls in Andheri Airport Mumbai WhatsApp 9167673311 💞 Full Nigh...Pooja Nehwal
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdfSoniaTolstoy
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfchloefrazer622
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDThiyagu K
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesFatimaKhan178732
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphThiyagu K
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactdawncurless
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionSafetyChain Software
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxheathfieldcps1
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
The byproduct of sericulture in different industries.pptx
The byproduct of sericulture in different industries.pptxThe byproduct of sericulture in different industries.pptx
The byproduct of sericulture in different industries.pptxShobhayan Kirtania
 
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...fonyou31
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajanpragatimahajan3
 

Kürzlich hochgeladen (20)

Advance Mobile Application Development class 07
Advance Mobile Application Development class 07Advance Mobile Application Development class 07
Advance Mobile Application Development class 07
 
9548086042 for call girls in Indira Nagar with room service
9548086042  for call girls in Indira Nagar  with room service9548086042  for call girls in Indira Nagar  with room service
9548086042 for call girls in Indira Nagar with room service
 
microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3Q4-W6-Restating Informational Text Grade 3
Q4-W6-Restating Informational Text Grade 3
 
Student login on Anyboli platform.helpin
Student login on Anyboli platform.helpinStudent login on Anyboli platform.helpin
Student login on Anyboli platform.helpin
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
Russian Call Girls in Andheri Airport Mumbai WhatsApp 9167673311 💞 Full Nigh...
Russian Call Girls in Andheri Airport Mumbai WhatsApp  9167673311 💞 Full Nigh...Russian Call Girls in Andheri Airport Mumbai WhatsApp  9167673311 💞 Full Nigh...
Russian Call Girls in Andheri Airport Mumbai WhatsApp 9167673311 💞 Full Nigh...
 
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdfBASLIQ CURRENT LOOKBOOK  LOOKBOOK(1) (1).pdf
BASLIQ CURRENT LOOKBOOK LOOKBOOK(1) (1).pdf
 
Arihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdfArihant handbook biology for class 11 .pdf
Arihant handbook biology for class 11 .pdf
 
Measures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SDMeasures of Dispersion and Variability: Range, QD, AD and SD
Measures of Dispersion and Variability: Range, QD, AD and SD
 
Separation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and ActinidesSeparation of Lanthanides/ Lanthanides and Actinides
Separation of Lanthanides/ Lanthanides and Actinides
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
Accessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impactAccessible design: Minimum effort, maximum impact
Accessible design: Minimum effort, maximum impact
 
Mastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory InspectionMastering the Unannounced Regulatory Inspection
Mastering the Unannounced Regulatory Inspection
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
The byproduct of sericulture in different industries.pptx
The byproduct of sericulture in different industries.pptxThe byproduct of sericulture in different industries.pptx
The byproduct of sericulture in different industries.pptx
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
 
social pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajansocial pharmacy d-pharm 1st year by Pragati K. Mahajan
social pharmacy d-pharm 1st year by Pragati K. Mahajan
 

TUW - Quality of data-aware data analytics workflows

  • 1. Quality of data-aware data analytics workflows Hong-Linh Truong Distributed Systems Group, Vienna University of Technology truong@dsg.tuwien.ac.at http://dsg.tuwien.ac.at/staff/truong 1ASE Summer 2014 Advanced Services Engineering, Summer 2014 Advanced Services Engineering, Summer 2014
  • 2. Outline  Data analytics workflows – structures and systems  Issues on Quality of data aware data analytics workflows  Quality of data aware simulation workflows ASE Summer 2014 2
  • 3. Data analytics workflows ASE Summer 2014 3 Things People DaaSDaaS Computation Service Computation Service We use the term „workflow“ in a generic meaning!!!
  • 4. Different views of (data analytics) workflow systems 4 View Domain view Business Workflow Scientific/E- science Workflow Data/Computati on view Data intensive workflow Computatio n intensive workflow Human- intensive workflow System view Grid workflow Enterprise workflow Cloud- based workflow Execution model view Service- based workflow Batch job workflow Interactive workflow ASE Summer 2014
  • 5. Pros and cons of (data analytics) workflow systems ASE Summer 2014 5  Ian J. Taylor, Ewa Deelman, Dennis B. Gannon, and Matthew Shields. 2006. Workflows for E-Science: Scientific Workflows for Grids. Springer-Verlag New York, Inc., Secaucus, NJ, USA.  Bertram Ludäscher, Mathias Weske, Timothy M. McPhillips, Shawn Bowers: Scientific Workflows: Business as Usual? BPM 2009: 31-47  Mirko Sonntag, Dimka Karastoyanova, Frank Leymann: The Missing Features of Workflow Systems for Scientific Computations. Software Engineering (Workshops) 2010: 209-216  Lavanya Ramakrishnan and Beth Plale. 2010. A multi-dimensional classification model for scientific workflow characteristics. In Proceedings of the 1st International Workshop on Workflow Approaches to New Data-centric Science (Wands '10). ACM, New York, NY, USA, , Article 4 , 12 pages. DOI=10.1145/1833398.1833402 http://doi.acm.org/10.1145/1833398.1833402  Jia Yu and Rajkumar Buyya. 2005. A taxonomy of scientific workflow systems for grid computing. SIGMOD Rec. 34, 3 (September 2005), 44-49. DOI=10.1145/1084805.1084814 http://doi.acm.org/10.1145/1084805.1084814  Ian J. Taylor, Ewa Deelman, Dennis B. Gannon, and Matthew Shields. 2006. Workflows for E-Science: Scientific Workflows for Grids. Springer-Verlag New York, Inc., Secaucus, NJ, USA.  Bertram Ludäscher, Mathias Weske, Timothy M. McPhillips, Shawn Bowers: Scientific Workflows: Business as Usual? BPM 2009: 31-47  Mirko Sonntag, Dimka Karastoyanova, Frank Leymann: The Missing Features of Workflow Systems for Scientific Computations. Software Engineering (Workshops) 2010: 209-216  Lavanya Ramakrishnan and Beth Plale. 2010. A multi-dimensional classification model for scientific workflow characteristics. In Proceedings of the 1st International Workshop on Workflow Approaches to New Data-centric Science (Wands '10). ACM, New York, NY, USA, , Article 4 , 12 pages. DOI=10.1145/1833398.1833402 http://doi.acm.org/10.1145/1833398.1833402  Jia Yu and Rajkumar Buyya. 2005. A taxonomy of scientific workflow systems for grid computing. SIGMOD Rec. 34, 3 (September 2005), 44-49. DOI=10.1145/1084805.1084814 http://doi.acm.org/10.1145/1084805.1084814
  • 6. Hierarchical view of workflows (1) mProject1Service.java public void mProject1() { } mProject1Service.java public void mProject1() { } WorkflowWorkflow A();A(); <parallel> </parallel> <parallel> </parallel> Workflow Region nWorkflow Region n Activity mActivity m Invoked Application mInvoked Application m Code Region 1 Code Region 1 Code Region q Code Region q Code Region … Code Region … <activity name="mProject1"> <executable name="mProject1"/> </activity> <activity name="mProject1"> <executable name="mProject1"/> </activity> <activity name="mProject2"> <executable name="mProject2"/> </activity> <activity name="mProject2"> <executable name="mProject2"/> </activity> while () { ... } while () { ... } Hong Linh Truong, Schahram Dustdar, Thomas Fahringer: Performance metrics and ontologies for Grid workflows. Future Generation Comp. Syst. 23(6): 760-772 (2007) Hong Linh Truong, Schahram Dustdar, Thomas Fahringer: Performance metrics and ontologies for Grid workflows. Future Generation Comp. Syst. 23(6): 760-772 (2007) ASE Summer 2014 6
  • 7. Representing and programming data analytics workflows  Programming languages  General- and specific-purpose programming languages, such as Java, Python, Swift  Programming models, such as MapReduce, Hadoop, Complex event processing  Descriptive languages  BPEL and several languages designed for specific workflow engines  They can also be combined 7ASE Summer 2014
  • 8. Data analytics workflow execution models ASE Summer 2014 8 Data analytics workflows Data analytics workflows Execution EngineExecution Engine Local SchedulerLocal Scheduler jobjob jobjob jobjob jobjob Web serviceWeb serviceWeb service Web service People
  • 9. Data analytics workflow execution models ASE Summer 2014 9 Data analytics workflows Data analytics workflows Execution EngineExecution Engine Service unit Local input data Analytics Results Web service MapReduce/Hadoop Sub-Workflow MPI Other solutions Servers/Cloud/Cluster How data is transferred among service units? How data is transferred among service units?
  • 10. Examples of systems and frameworks for data analytics workflows ASE Summer 2014 10 ASKALONASKALON KEPLERKEPLER TAVERNATAVERNA TRIDENTTRIDENT Apache ODE + WS-BPEL Apache ODE + WS-BPEL PegasusPegasus JOperaJOperaADEPTADEPT MapReduce/HadoopMapReduce/Hadoop SwiftSwiftRR
  • 11. Some examples (1) ASE Summer 2014 11 Source: Gideon Juve, Ewa Deelman, G. Bruce Berriman, Benjamin P. Berman, Philip Maechling: An Evaluation of the Cost and Performance of Scientific Workflows on Amazon EC2. J. Grid Comput. 10(1): 5-21 (2012) Source: Gideon Juve, Ewa Deelman, G. Bruce Berriman, Benjamin P. Berman, Philip Maechling: An Evaluation of the Cost and Performance of Scientific Workflows on Amazon EC2. J. Grid Comput. 10(1): 5-21 (2012)
  • 12. Some examples (2) ASE Summer 2014 12 Source: http://www.dps.uibk.ac.at/projects/brokerage/Source: http://www.dps.uibk.ac.at/projects/brokerage/
  • 13. Some examples (3) ASE Summer 2014 13 Source: Cesare Pautasso, Thomas Heinis, Gustavo Alonso: JOpera: Autonomic Service Orchestration. IEEE Data Eng. Bull. 29(3): 32-39 (2006) Source: Cesare Pautasso, Thomas Heinis, Gustavo Alonso: JOpera: Autonomic Service Orchestration. IEEE Data Eng. Bull. 29(3): 32-39 (2006)
  • 14. Some examples (4) ASE Summer 2014 14 Source: Sudipto Das, Yannis Sismanis, Kevin S. Beyer, Rainer Gemulla, Peter J. Haas, and John McPherson. 2010. Ricardo: integrating R and Hadoop. In Proceedings of the 2010 ACM SIGMOD International Conference on Management of data (SIGMOD '10). ACM, New York, NY, USA, 987-998. DOI=10.1145/1807167.1807275 http://doi.acm.org/10.1145/1807167.1807275 Source: Sudipto Das, Yannis Sismanis, Kevin S. Beyer, Rainer Gemulla, Peter J. Haas, and John McPherson. 2010. Ricardo: integrating R and Hadoop. In Proceedings of the 2010 ACM SIGMOD International Conference on Management of data (SIGMOD '10). ACM, New York, NY, USA, 987-998. DOI=10.1145/1807167.1807275 http://doi.acm.org/10.1145/1807167.1807275
  • 15. Elastic provisioning for workflows With cloud computing we can  Provision a computing system  E.g., a virtual cloud-based cluster  Provision a workflow execution platform  E.g., batch job workflow engine, Hadoop runtime  Deploy and execute workflows elastic! ASE Summer 2014 15
  • 16. WHY DO WE NEED TO KNOW THE HIERARCHICAL STRUCTURES WELL? ASE Summer 2014 16 WHICH ASPECTS ARE WELL ADDRESSED W.R.T. „DATA/SERVICE CONCERNS“
  • 17. 17 Hong Linh Truong, Peter Brunner, Vlad Nae, Thomas Fahringer: DIPAS: A distributed performance analysis service for grid service-based workflows. Future Generation Comp. Syst. 25(4): 385-398 (2009) Hong Linh Truong, Peter Brunner, Vlad Nae, Thomas Fahringer: DIPAS: A distributed performance analysis service for grid service-based workflows. Future Generation Comp. Syst. 25(4): 385-398 (2009) Well-addressed concerns -- performance ASE Summer 2014 17
  • 18. Well-addressed concerns – performance/cost ASE Summer 2014 18 Source: David Chiu, Sagar Deshpande, Gagan Agrawal, Rongxing Li: Cost and accuracy sensitive dynamic workflow composition over grid environments. GRID 2008: 9-16 Source: David Chiu, Sagar Deshpande, Gagan Agrawal, Rongxing Li: Cost and accuracy sensitive dynamic workflow composition over grid environments. GRID 2008: 9-16
  • 19. QUALITY OF DATA IN DATA ANALYTICS WORKFLOWS ASE Summer 2014 19
  • 20. Performance and Data Quality Aspects 20 Data Analytics Data in Data out Executed on Analytics Models uses Execution time? Performance Overhead? Memory Consumption? Is the data good enough? How bad data impacts on performance? Is the data good enough to be stored and shared? Data quality metrics and models are strongly domain-specific Data quality metrics and models are strongly domain-specific Which models should be used? ASE Summer 2014 20
  • 21. WHY QOD FOR DATA ANALYTICS WORKFLOW IS IMPORTANT? ASE Summer 2014 21
  • 22. Very little support  Qurator workbench  “Personal quality models” can be expressed and embedded into query processors or workflows.  Assume that quality evidence is presented  Kepler  A data quality monitor allows user to specify quality thresholds.  Expect that rules can be used to control the execution based on quality. ASE Summer 2014 22 P Missier, S M Embury, M Greenwood, A D Preece, & B Jin, Managing Information Quality in e-Science: the Qurator Workbench, Proc ACM International Conference on Management of Data (SIGMOD 2007), ACM Press, pages 1150- 1152, 2007. Aisa Na’im, Daniel Crawl,Maria Indrawan, Ilkay Altintas, and Shulei Sun. Monitoring data quality in kepler. In Salim Hariri and Kate Keahey, editors, HPDC, pages 560–564. ACM, 2010. P Missier, S M Embury, M Greenwood, A D Preece, & B Jin, Managing Information Quality in e-Science: the Qurator Workbench, Proc ACM International Conference on Management of Data (SIGMOD 2007), ACM Press, pages 1150- 1152, 2007. Aisa Na’im, Daniel Crawl,Maria Indrawan, Ilkay Altintas, and Shulei Sun. Monitoring data quality in kepler. In Salim Hariri and Kate Keahey, editors, HPDC, pages 560–564. ACM, 2010.
  • 23. Research questions  What are main QoD metrics, what are the relationship between QoD metrics and other service level objectives, and what are their roles and possible trade-offs?  How to support different domain-specific QoD models and link them to workflow structures?  How to model, evaluate and estimate QoD associated with data movement into, within, and out to workflows? When and where software or scientists can perform automatic or manual QoD measurement and analysis  How to optimize the workflow composition and execution based on QoD specification?  How does QoD impact on the provisioning of data services, computational services and supporting services? ASE Summer 2014 23
  • 24. Approach ASE Summer 2014 24 Core models, techniques and algorithms to allow the modeling and evaluating QoD metrics Core models, techniques and algorithms to allow the modeling and evaluating QoD metrics QoD-aware composition and executionQoD-aware composition and execution QoD-aware service provisioning and infrastructure optimization QoD-aware service provisioning and infrastructure optimization
  • 25. Modeling and evaluating QoD metrics for data analytics workflows ASE Summer 2014 25
  • 26. QoD-aware optimization for data analytics workflow composition and execution ASE Summer 2014 26
  • 27. HOW TO INTEGRATE QOD EVALUATORS? AND WHICH CONCERNS NEED TO BE CONSIDERED? ASE Summer 2014 27
  • 28. QoD metrics evaluation  Domain-specific metrics  Need specific tools and expertise for determining metrics  Evaluation  Cannot done by software only: humans are required  Complex integration model  Where to put QoD evaluators and why?  How evaluators obtain the data to be evaluated?  Impact of QoD evaluation on performance of data analytics workflows ASE Summer 2014 28
  • 29. WHAT KIND OF OPTIMIZATION CAN BE DONE? ASE Summer 2014 29
  • 30. QoD-aware optimization for data analytics workflows  Improving quality of results  Reducing analytics costs and time  Enabling early failure detection  Enabling elasticitiy of services provisioning  Enabling elastic data analytics support  Etc. ASE Summer 2014 30
  • 32. 32 QoD-aware simulation workflows Michael Reiter, Hong Linh Truong, Schahram Dustdar, Dimka Karastoyanova, Robert Krause, Frank Leymann, Dieter Pahr: On Analyzing Quality of Data Influences on Performance of Finite Elements Driven Computational Simulations. Euro-Par 2012: 793-804 Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112 Michael Reiter, Hong Linh Truong, Schahram Dustdar, Dimka Karastoyanova, Robert Krause, Frank Leymann, Dieter Pahr: On Analyzing Quality of Data Influences on Performance of Finite Elements Driven Computational Simulations. Euro-Par 2012: 793-804 Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112 ASE Summer 2014
  • 33. Hybrid resources needed for quality evaluation  Challenges:  Subjective and objective evaluation  Long running processes  Our approach  Different QoD measurements  Human and software tasks 33ASE Summer 2014
  • 34. 34 Evaluating quality of data in workflows Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112 Michael Reiter, Uwe Breitenbücher, Schahram Dustdar, Dimka Karastoyanova, Frank Leymann, Hong Linh Truong: A Novel Framework for Monitoring and Analyzing Quality of Data in Simulation Workflows. eScience 2011: 105-112 ASE Summer 2014
  • 35. QoD Evaluator  Software-based QoD evaluators  Can be provided under libraries integrated into invoked applications  Web services-based evaluators  Human-based QoD evaluators  Built based on the concept human-based services  Can be interfaces via Human-Task  Simple mapping at the moment  Human resources from clouds/crowds ASE Summer 2014 35
  • 36. Open issues: quality-of-result (QoR) driven workflows  How to support QoR driven analytics?  Some basic steps  Conceptualize expected QoR  Associate the expected QoR with workflow activities  Use the expected QoR  to match/select underlying services (e.g., data sources, cloud IaaS, etc  Utilize the expected QoR and the measured QoR and apply elasticity principles for  Refine the workflow structure  Provision computation, network and data ASE Summer 2014 36
  • 37. Exercises  Read mentioned papers  Discuss pros and cons of descriptive languages - and programming languages – based data analytics workflows  Examine how QoD evaluators can be integrated into different programming models for QoD- aware data analytics workflows  Implement some QoD evaluators for Hadoop  Develop techniques for determining places where QoD evaluators are inserted ASE Summer 2014 37
  • 38. 38 Thanks for your attention Hong-Linh Truong Distributed Systems Group Vienna University of Technology truong@dsg.tuwien.ac.at http://dsg.tuwien.ac.at/staff/truong ASE Summer 2014