SlideShare a Scribd company logo
Event Applications:
Real-Life Experiences at the
    Hasso Plattner Institute


             Matthieu-P. Schapranow
              Hasso Plattner Institute
                        May 18, 2010
A
    Agenda
        d
2


      ■ Key Facts about the Hasso Plattner Institute
      ■ I: Radio Frequency Identification in the European Pharma Industry
      ■ II: Smart Power Grids




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Key Facts about the Hasso Plattner Institute
    Internals

3


      ■ Founded as a public-private partnership
        in 1998 in Potsdam near Berlin, Germany
                                      ,         y
      ■ Institute belongs to the
        University of Potsdam
      ■ Ranked 1st in CHE 2009
      ■ 500 B.Sc. and M.Sc. students
      ■ 10 professors, 92 PhD students
              f                  d


      ■ Course of study: IT Systems Engineering




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Key Facts about the Hasso Plattner Institute
      y
    Research Group Hasso Plattner / Alexander Zeier

4


      ■ Research focus: real customer data for enterprise
        software and design of complex applications
                         g         p    pp
            □ In-Memory Data Management for Enterprise Applications
            □ Human-Centered Software Design and Engineering
            □ Maintenance and Evolution of SOA Systems
            □ Integration of RFID Technology in Enterprise Platforms
      ■ Cooperations
            □ Academic: Stanford, MIT, etc.
            □ Industry: SAP, Siemens, Audi, etc.




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Key Facts about the Hasso Plattner Institute
    What can we do for you?

5


      ■ Network between Industry and Academic,
        e.g. European section of the
          g      p
      ■ Curriculum
            □ RFID seminars for graduate / undergraduate students
            □ Trends & concepts lecture (Prof. Hasso Plattner)
      ■ Enterprise Application Architecture Laboratory
            □ Enterprise software, e.g. SAP, Microsoft, etc.
            □ Equipped RFID Lab, e.g. deister electronic, noFilis, etc.
      ■ Concrete sizing and simulation of customer supply chains




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
I: European Pharma Supply Chain
    Anti-Counterfeiting

6




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
European Pharma Supply Chain
    Anti-Counterfeiting (cont’d)

7




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
European Pharma Supply Chain
    Business-level Security

8




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
European Pharma Supply Chain
    Business-level Security

9




    SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
European Pharma Supply Chain
     Data Sizing Assumptions

10


       ■ 14,9 billion pharmaceuticals on prescription per year
       ■ ~9 read events per supply chain
             □ 1 x producer (create + out)
             □ 2 x distributors (in + out)
                                (        )
             □ 1 x pharmacy (in + sell)
             □ 1 x customer (check)
       ■ Assuming 220 working days with 14 hours per day production
         results in ~12k events/second




                                                                                 Source: Interview with Stefan Führing
                                  (Pharmaceuticals, Enterprise and Industry Directorate-General European Commission)


     SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
II S
     II: Smart P
               Power G id
                     Grids
11


                                                   ■ Real-time sensor data
                                                   ■ Outage notification
                                                   ■ Power quality monitoring
                                                   ■ Remote device management
                                                                       g
                                                   ■ Power peak control
                                                   ■ ...




     SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Smart Power Grids
     Aspects
12


       ■ Device management
             □ Meter reading
       ■ Customer service
             □ Disconnection/
               reconnection
             □ Event mgmt.
       ■ Conceptual work
             □ Performance &
               risk evaluation
                i k    l ti
       ■ Energy consumption
             □ Sustainability

     SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Smart Power Grids
     I
     Involved R l
         l d Roles
13




                                               Smart Grid




                   Smart
                  Metering



     SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Smart Power Grids
     S
     System A hi
            Architecture
14




                                                            ■ 100M households


                                                            ■ Aggregators for
                                                              10k-50k households




                                                            ■ Preprocessing-as-a-Service




                                                            ■ Billing, remote device
                                                              management, etc.
     SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Smart Power Grids
     D
     Data P
          Processing N d
                 i   Needs
15
            365 days x 96 events x 100 M households = 3.504 B events per year
         Thursday       Thursday     Friday      Friday    Saturday     Saturday                     Tuesday       Tuesday
         0am -6am      12pm -6pm   0am -6am    12pm -6pm   0am -6am    12pm -6pm                     0am -6am     12pm -6pm

              Thursday       Thursday     Friday        Friday  Saturday       Saturday                    Tuesday         Tuesday
             6am -12pm       6pm -0am   6am -12pm     6pm -0am 6am -12pm       6pm -0am                   6am -12pm       6pm -0am


                     Day 1                    Day 2                    Day 3                                     Day 30

          24 Reads     24 Reads

               24 Reads      24 Reads




                                                                                                                                        Time Slots on
                                                                                                                                     Business System
                                     M-F      M-F        M-F      M-F     Sat-Sun  Sat-Sun   Sat-Sun   Sat-Sun
                                   0am -6am 6am -12pm 12pm -6pm 6pm -0am 0am -6am 6am -12pm 12pm -6pm 6pm -0am




     SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
Thank you for your interest!
      K
      Keep i contact with us.
           in          ih
16

                          See you at the follow on discussion OR12534
                                           at 5:00 p.m.
                            in room 7, ecosystem and partner center
                                    7


     Responsible: Deputy Prof. of Prof. Hasso Plattner
     Dr. Alexander Zeier                                                  Matthieu-P. Schapranow, M.Sc.
     zeier@hpi.uni-potsdam.de                                  matthieu.schapranow@hpi.uni-potsdam.de




                                                                         Hasso Plattner Institute
                                                     Enterprise Platform & Integration Concepts
                                                                        Matthieu-P. Schapranow
                                                                           August Bebel Str.
                                                                           August-Bebel-Str 88
                                                                       14482 Potsdam, Germany

      SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010

More Related Content

Similar to Event Applications: Real-Life Experiences at the Hasso Plattner Institute

Big data analytics und machine learning die Herrschaft der Daten
Big data analytics und machine learning die Herrschaft der DatenBig data analytics und machine learning die Herrschaft der Daten
Big data analytics und machine learning die Herrschaft der Daten
Peter Seeberg
 
2016 Laboratory Instrumentation Informatics Summit
2016  Laboratory Instrumentation  Informatics Summit2016  Laboratory Instrumentation  Informatics Summit
2016 Laboratory Instrumentation Informatics Summit
Tamir Huberman
 
How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...
How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...
How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...
Bigfinite
 
The 2015 II-SDV conference in Nice, 20 - 21 April 2015
The 2015 II-SDV conference in Nice, 20 - 21 April 2015The 2015 II-SDV conference in Nice, 20 - 21 April 2015
The 2015 II-SDV conference in Nice, 20 - 21 April 2015
Dr. Haxel Consult
 
Analyze Genomes: In-memory Apps for Next-generation Life Sciences Research
Analyze Genomes: In-memory Apps for Next-generation Life Sciences ResearchAnalyze Genomes: In-memory Apps for Next-generation Life Sciences Research
Analyze Genomes: In-memory Apps for Next-generation Life Sciences Research
Matthieu Schapranow
 
Ray poynter big data and advanced analytics
Ray poynter big data and advanced analyticsRay poynter big data and advanced analytics
Ray poynter big data and advanced analytics
MROC Japan
 
Fernando Meco, Director de Marketing de SAS.
Fernando Meco, Director de Marketing de SAS.Fernando Meco, Director de Marketing de SAS.
Fernando Meco, Director de Marketing de SAS.
MSMK - Madrid School of Marketing
 
The Internet of Food and Farm
The Internet of Food and FarmThe Internet of Food and Farm
The Internet of Food and Farm
Sjaak Wolfert
 
Cwin16 tls-faurecia predictive maintenance
Cwin16 tls-faurecia predictive maintenanceCwin16 tls-faurecia predictive maintenance
Cwin16 tls-faurecia predictive maintenance
Capgemini
 
Sbdc2018 master slidedeck-final
Sbdc2018 master slidedeck-finalSbdc2018 master slidedeck-final
Sbdc2018 master slidedeck-final
Freek Bomhof
 
Program lift2010 en_print_hd
Program lift2010 en_print_hdProgram lift2010 en_print_hd
Program lift2010 en_print_hd
Fing
 
Smart Data Slides: Leverage the IOT to Build a Smart Data Ecosystem
Smart Data Slides: Leverage the IOT to Build a Smart Data EcosystemSmart Data Slides: Leverage the IOT to Build a Smart Data Ecosystem
Smart Data Slides: Leverage the IOT to Build a Smart Data Ecosystem
DATAVERSITY
 
How to Beat Silicon Valley - TechSauce Bangkok 2017
How to Beat Silicon Valley - TechSauce Bangkok 2017How to Beat Silicon Valley - TechSauce Bangkok 2017
How to Beat Silicon Valley - TechSauce Bangkok 2017
Vitaly Golomb
 
Digital Innovation Trends in Government Blockchain Machine Learning and Inter...
Digital Innovation Trends in Government Blockchain Machine Learning and Inter...Digital Innovation Trends in Government Blockchain Machine Learning and Inter...
Digital Innovation Trends in Government Blockchain Machine Learning and Inter...
scoopnewsgroup
 
Cwin16 tls-datalab for scientists
Cwin16 tls-datalab for scientistsCwin16 tls-datalab for scientists
Cwin16 tls-datalab for scientists
Capgemini
 
Prophesee - NOAH19 Berlin
Prophesee - NOAH19 BerlinProphesee - NOAH19 Berlin
Prophesee - NOAH19 Berlin
NOAH Advisors
 
Crap. Your Big Data Kitchen Is Broken.
Crap. Your Big Data Kitchen Is Broken.Crap. Your Big Data Kitchen Is Broken.
Crap. Your Big Data Kitchen Is Broken.
Altoros
 
SAP Run Live Truck - SAP Cloud Platform use cases
SAP Run Live Truck - SAP Cloud Platform use casesSAP Run Live Truck - SAP Cloud Platform use cases
SAP Run Live Truck - SAP Cloud Platform use cases
Twan van den Broek
 
Data Science Powered Apps for Internet of Things
Data Science Powered Apps for Internet of ThingsData Science Powered Apps for Internet of Things
Data Science Powered Apps for Internet of Things
VMware Tanzu
 
04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...
04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...
04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...
Customer Experience Professionals Association
 

Similar to Event Applications: Real-Life Experiences at the Hasso Plattner Institute (20)

Big data analytics und machine learning die Herrschaft der Daten
Big data analytics und machine learning die Herrschaft der DatenBig data analytics und machine learning die Herrschaft der Daten
Big data analytics und machine learning die Herrschaft der Daten
 
2016 Laboratory Instrumentation Informatics Summit
2016  Laboratory Instrumentation  Informatics Summit2016  Laboratory Instrumentation  Informatics Summit
2016 Laboratory Instrumentation Informatics Summit
 
How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...
How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...
How To Deliver Step Changes in Manufacturing Operations with Predictive Insig...
 
The 2015 II-SDV conference in Nice, 20 - 21 April 2015
The 2015 II-SDV conference in Nice, 20 - 21 April 2015The 2015 II-SDV conference in Nice, 20 - 21 April 2015
The 2015 II-SDV conference in Nice, 20 - 21 April 2015
 
Analyze Genomes: In-memory Apps for Next-generation Life Sciences Research
Analyze Genomes: In-memory Apps for Next-generation Life Sciences ResearchAnalyze Genomes: In-memory Apps for Next-generation Life Sciences Research
Analyze Genomes: In-memory Apps for Next-generation Life Sciences Research
 
Ray poynter big data and advanced analytics
Ray poynter big data and advanced analyticsRay poynter big data and advanced analytics
Ray poynter big data and advanced analytics
 
Fernando Meco, Director de Marketing de SAS.
Fernando Meco, Director de Marketing de SAS.Fernando Meco, Director de Marketing de SAS.
Fernando Meco, Director de Marketing de SAS.
 
The Internet of Food and Farm
The Internet of Food and FarmThe Internet of Food and Farm
The Internet of Food and Farm
 
Cwin16 tls-faurecia predictive maintenance
Cwin16 tls-faurecia predictive maintenanceCwin16 tls-faurecia predictive maintenance
Cwin16 tls-faurecia predictive maintenance
 
Sbdc2018 master slidedeck-final
Sbdc2018 master slidedeck-finalSbdc2018 master slidedeck-final
Sbdc2018 master slidedeck-final
 
Program lift2010 en_print_hd
Program lift2010 en_print_hdProgram lift2010 en_print_hd
Program lift2010 en_print_hd
 
Smart Data Slides: Leverage the IOT to Build a Smart Data Ecosystem
Smart Data Slides: Leverage the IOT to Build a Smart Data EcosystemSmart Data Slides: Leverage the IOT to Build a Smart Data Ecosystem
Smart Data Slides: Leverage the IOT to Build a Smart Data Ecosystem
 
How to Beat Silicon Valley - TechSauce Bangkok 2017
How to Beat Silicon Valley - TechSauce Bangkok 2017How to Beat Silicon Valley - TechSauce Bangkok 2017
How to Beat Silicon Valley - TechSauce Bangkok 2017
 
Digital Innovation Trends in Government Blockchain Machine Learning and Inter...
Digital Innovation Trends in Government Blockchain Machine Learning and Inter...Digital Innovation Trends in Government Blockchain Machine Learning and Inter...
Digital Innovation Trends in Government Blockchain Machine Learning and Inter...
 
Cwin16 tls-datalab for scientists
Cwin16 tls-datalab for scientistsCwin16 tls-datalab for scientists
Cwin16 tls-datalab for scientists
 
Prophesee - NOAH19 Berlin
Prophesee - NOAH19 BerlinProphesee - NOAH19 Berlin
Prophesee - NOAH19 Berlin
 
Crap. Your Big Data Kitchen Is Broken.
Crap. Your Big Data Kitchen Is Broken.Crap. Your Big Data Kitchen Is Broken.
Crap. Your Big Data Kitchen Is Broken.
 
SAP Run Live Truck - SAP Cloud Platform use cases
SAP Run Live Truck - SAP Cloud Platform use casesSAP Run Live Truck - SAP Cloud Platform use cases
SAP Run Live Truck - SAP Cloud Platform use cases
 
Data Science Powered Apps for Internet of Things
Data Science Powered Apps for Internet of ThingsData Science Powered Apps for Internet of Things
Data Science Powered Apps for Internet of Things
 
04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...
04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...
04 CXPA Elisa - AI and RPA Bringing Experiences Productivity - Elisa - Kimmo ...
 

More from Matthieu Schapranow

Patient Journey in Oncology 2025: Molecular Tumour Boards in Practice
Patient Journey in Oncology 2025: Molecular Tumour Boards in PracticePatient Journey in Oncology 2025: Molecular Tumour Boards in Practice
Patient Journey in Oncology 2025: Molecular Tumour Boards in Practice
Matthieu Schapranow
 
How will AI affect the patient journey of the future?
How will AI affect the patient journey of the future?How will AI affect the patient journey of the future?
How will AI affect the patient journey of the future?
Matthieu Schapranow
 
AI in Oncology
AI in OncologyAI in Oncology
AI in Oncology
Matthieu Schapranow
 
AnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital Health
AnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital HealthAnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital Health
AnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital Health
Matthieu Schapranow
 
Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...
Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...
Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...
Matthieu Schapranow
 
A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...
A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...
A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...
Matthieu Schapranow
 
In-Memory Apps for Precision Medicine
In-Memory Apps for Precision MedicineIn-Memory Apps for Precision Medicine
In-Memory Apps for Precision Medicine
Matthieu Schapranow
 
"When time matters..."
"When time matters...""When time matters..."
"When time matters..."
Matthieu Schapranow
 
ICT Platform to Enable Consortium Work for Systems Medicine of Heart Failure
ICT Platform to Enable Consortium Work for Systems Medicine of Heart FailureICT Platform to Enable Consortium Work for Systems Medicine of Heart Failure
ICT Platform to Enable Consortium Work for Systems Medicine of Heart Failure
Matthieu Schapranow
 
Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...
Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...
Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...
Matthieu Schapranow
 
Analyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision MedicineAnalyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision Medicine
Matthieu Schapranow
 
In-Memory Data Management for Systems Medicine
In-Memory Data Management for Systems MedicineIn-Memory Data Management for Systems Medicine
In-Memory Data Management for Systems Medicine
Matthieu Schapranow
 
Analyze Genomes: In-memory Apps supporting Precision Medicine
Analyze Genomes: In-memory Apps supporting Precision MedicineAnalyze Genomes: In-memory Apps supporting Precision Medicine
Analyze Genomes: In-memory Apps supporting Precision Medicine
Matthieu Schapranow
 
Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...
Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...
Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...
Matthieu Schapranow
 
Analyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision MedicineAnalyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision Medicine
Matthieu Schapranow
 
The Driver of the Healthcare System in the 21st Century: Real-world Applicati...
The Driver of the Healthcare System in the 21st Century: Real-world Applicati...The Driver of the Healthcare System in the 21st Century: Real-world Applicati...
The Driver of the Healthcare System in the 21st Century: Real-world Applicati...
Matthieu Schapranow
 
Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...
Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...
Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...
Matthieu Schapranow
 
Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...
Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...
Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...
Matthieu Schapranow
 
Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...
Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...
Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...
Matthieu Schapranow
 
Festival of Genomics 2016 London: Analyze Genomes: Real-world Examples
Festival of Genomics 2016 London: Analyze Genomes: Real-world ExamplesFestival of Genomics 2016 London: Analyze Genomes: Real-world Examples
Festival of Genomics 2016 London: Analyze Genomes: Real-world Examples
Matthieu Schapranow
 

More from Matthieu Schapranow (20)

Patient Journey in Oncology 2025: Molecular Tumour Boards in Practice
Patient Journey in Oncology 2025: Molecular Tumour Boards in PracticePatient Journey in Oncology 2025: Molecular Tumour Boards in Practice
Patient Journey in Oncology 2025: Molecular Tumour Boards in Practice
 
How will AI affect the patient journey of the future?
How will AI affect the patient journey of the future?How will AI affect the patient journey of the future?
How will AI affect the patient journey of the future?
 
AI in Oncology
AI in OncologyAI in Oncology
AI in Oncology
 
AnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital Health
AnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital HealthAnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital Health
AnalyzeGenomes.com: A Federated In-Memory Database Platform for Digital Health
 
Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...
Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...
Algorithmen statt Ärzte: Algorithmen statt Ärzte: Ersetzt Big Data künftig ...
 
A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...
A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...
A Federated In-Memory Database Computing Platform Enabling Real-Time Analysis...
 
In-Memory Apps for Precision Medicine
In-Memory Apps for Precision MedicineIn-Memory Apps for Precision Medicine
In-Memory Apps for Precision Medicine
 
"When time matters..."
"When time matters...""When time matters..."
"When time matters..."
 
ICT Platform to Enable Consortium Work for Systems Medicine of Heart Failure
ICT Platform to Enable Consortium Work for Systems Medicine of Heart FailureICT Platform to Enable Consortium Work for Systems Medicine of Heart Failure
ICT Platform to Enable Consortium Work for Systems Medicine of Heart Failure
 
Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...
Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...
Gesundheit geht uns alle an: Smart Data ermöglicht passendere Entscheidungen...
 
Analyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision MedicineAnalyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision Medicine
 
In-Memory Data Management for Systems Medicine
In-Memory Data Management for Systems MedicineIn-Memory Data Management for Systems Medicine
In-Memory Data Management for Systems Medicine
 
Analyze Genomes: In-memory Apps supporting Precision Medicine
Analyze Genomes: In-memory Apps supporting Precision MedicineAnalyze Genomes: In-memory Apps supporting Precision Medicine
Analyze Genomes: In-memory Apps supporting Precision Medicine
 
Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...
Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...
Analyze Genomes: A Federated In-memory Database Computing Platform enabling r...
 
Analyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision MedicineAnalyze Genomes Services for Precision Medicine
Analyze Genomes Services for Precision Medicine
 
The Driver of the Healthcare System in the 21st Century: Real-world Applicati...
The Driver of the Healthcare System in the 21st Century: Real-world Applicati...The Driver of the Healthcare System in the 21st Century: Real-world Applicati...
The Driver of the Healthcare System in the 21st Century: Real-world Applicati...
 
Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...
Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...
Festival of Genomics 2016 London: Mining and Processing of Unstructured Medic...
 
Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...
Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...
Festival of Genomics 2016 London: Analyze Genomes: Modeling and Executing Gen...
 
Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...
Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...
Festival of Genomics 2016 London: Analyze Genomes: A Federated In-Memory Comp...
 
Festival of Genomics 2016 London: Analyze Genomes: Real-world Examples
Festival of Genomics 2016 London: Analyze Genomes: Real-world ExamplesFestival of Genomics 2016 London: Analyze Genomes: Real-world Examples
Festival of Genomics 2016 London: Analyze Genomes: Real-world Examples
 

Recently uploaded

9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
saastr
 
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
Jason Yip
 
Leveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and StandardsLeveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and Standards
Neo4j
 
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving
 
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their MainframeDigital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Precisely
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Safe Software
 
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid ResearchHarnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
Neo4j
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
Zilliz
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
Javier Junquera
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
c5vrf27qcz
 
Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)
Jakub Marek
 
What is an RPA CoE? Session 1 – CoE Vision
What is an RPA CoE?  Session 1 – CoE VisionWhat is an RPA CoE?  Session 1 – CoE Vision
What is an RPA CoE? Session 1 – CoE Vision
DianaGray10
 
Choosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptxChoosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptx
Brandon Minnick, MBA
 
HCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAUHCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAU
panagenda
 
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
saastr
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
DanBrown980551
 
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
Edge AI and Vision Alliance
 
Monitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdfMonitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdf
Tosin Akinosho
 
Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...
Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...
Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...
saastr
 
Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |
AstuteBusiness
 

Recently uploaded (20)

9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
 
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
 
Leveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and StandardsLeveraging the Graph for Clinical Trials and Standards
Leveraging the Graph for Clinical Trials and Standards
 
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024
 
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their MainframeDigital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
Digital Banking in the Cloud: How Citizens Bank Unlocked Their Mainframe
 
Driving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success StoryDriving Business Innovation: Latest Generative AI Advancements & Success Story
Driving Business Innovation: Latest Generative AI Advancements & Success Story
 
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid ResearchHarnessing the Power of NLP and Knowledge Graphs for Opioid Research
Harnessing the Power of NLP and Knowledge Graphs for Opioid Research
 
Programming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup SlidesProgramming Foundation Models with DSPy - Meetup Slides
Programming Foundation Models with DSPy - Meetup Slides
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
 
Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)
 
What is an RPA CoE? Session 1 – CoE Vision
What is an RPA CoE?  Session 1 – CoE VisionWhat is an RPA CoE?  Session 1 – CoE Vision
What is an RPA CoE? Session 1 – CoE Vision
 
Choosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptxChoosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptx
 
HCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAUHCL Notes and Domino License Cost Reduction in the World of DLAU
HCL Notes and Domino License Cost Reduction in the World of DLAU
 
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
 
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
“Temporal Event Neural Networks: A More Efficient Alternative to the Transfor...
 
Monitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdfMonitoring and Managing Anomaly Detection on OpenShift.pdf
Monitoring and Managing Anomaly Detection on OpenShift.pdf
 
Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...
Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...
Deep Dive: AI-Powered Marketing to Get More Leads and Customers with HyperGro...
 
Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |Astute Business Solutions | Oracle Cloud Partner |
Astute Business Solutions | Oracle Cloud Partner |
 

Event Applications: Real-Life Experiences at the Hasso Plattner Institute

  • 1. Event Applications: Real-Life Experiences at the Hasso Plattner Institute Matthieu-P. Schapranow Hasso Plattner Institute May 18, 2010
  • 2. A Agenda d 2 ■ Key Facts about the Hasso Plattner Institute ■ I: Radio Frequency Identification in the European Pharma Industry ■ II: Smart Power Grids SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 3. Key Facts about the Hasso Plattner Institute Internals 3 ■ Founded as a public-private partnership in 1998 in Potsdam near Berlin, Germany , y ■ Institute belongs to the University of Potsdam ■ Ranked 1st in CHE 2009 ■ 500 B.Sc. and M.Sc. students ■ 10 professors, 92 PhD students f d ■ Course of study: IT Systems Engineering SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 4. Key Facts about the Hasso Plattner Institute y Research Group Hasso Plattner / Alexander Zeier 4 ■ Research focus: real customer data for enterprise software and design of complex applications g p pp □ In-Memory Data Management for Enterprise Applications □ Human-Centered Software Design and Engineering □ Maintenance and Evolution of SOA Systems □ Integration of RFID Technology in Enterprise Platforms ■ Cooperations □ Academic: Stanford, MIT, etc. □ Industry: SAP, Siemens, Audi, etc. SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 5. Key Facts about the Hasso Plattner Institute What can we do for you? 5 ■ Network between Industry and Academic, e.g. European section of the g p ■ Curriculum □ RFID seminars for graduate / undergraduate students □ Trends & concepts lecture (Prof. Hasso Plattner) ■ Enterprise Application Architecture Laboratory □ Enterprise software, e.g. SAP, Microsoft, etc. □ Equipped RFID Lab, e.g. deister electronic, noFilis, etc. ■ Concrete sizing and simulation of customer supply chains SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 6. I: European Pharma Supply Chain Anti-Counterfeiting 6 SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 7. European Pharma Supply Chain Anti-Counterfeiting (cont’d) 7 SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 8. European Pharma Supply Chain Business-level Security 8 SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 9. European Pharma Supply Chain Business-level Security 9 SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 10. European Pharma Supply Chain Data Sizing Assumptions 10 ■ 14,9 billion pharmaceuticals on prescription per year ■ ~9 read events per supply chain □ 1 x producer (create + out) □ 2 x distributors (in + out) ( ) □ 1 x pharmacy (in + sell) □ 1 x customer (check) ■ Assuming 220 working days with 14 hours per day production results in ~12k events/second Source: Interview with Stefan Führing (Pharmaceuticals, Enterprise and Industry Directorate-General European Commission) SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 11. II S II: Smart P Power G id Grids 11 ■ Real-time sensor data ■ Outage notification ■ Power quality monitoring ■ Remote device management g ■ Power peak control ■ ... SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 12. Smart Power Grids Aspects 12 ■ Device management □ Meter reading ■ Customer service □ Disconnection/ reconnection □ Event mgmt. ■ Conceptual work □ Performance & risk evaluation i k l ti ■ Energy consumption □ Sustainability SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 13. Smart Power Grids I Involved R l l d Roles 13 Smart Grid Smart Metering SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 14. Smart Power Grids S System A hi Architecture 14 ■ 100M households ■ Aggregators for 10k-50k households ■ Preprocessing-as-a-Service ■ Billing, remote device management, etc. SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 15. Smart Power Grids D Data P Processing N d i Needs 15 365 days x 96 events x 100 M households = 3.504 B events per year Thursday Thursday Friday Friday Saturday Saturday Tuesday Tuesday 0am -6am 12pm -6pm 0am -6am 12pm -6pm 0am -6am 12pm -6pm 0am -6am 12pm -6pm Thursday Thursday Friday Friday Saturday Saturday Tuesday Tuesday 6am -12pm 6pm -0am 6am -12pm 6pm -0am 6am -12pm 6pm -0am 6am -12pm 6pm -0am Day 1 Day 2 Day 3 Day 30 24 Reads 24 Reads 24 Reads 24 Reads Time Slots on Business System M-F M-F M-F M-F Sat-Sun Sat-Sun Sat-Sun Sat-Sun 0am -6am 6am -12pm 12pm -6pm 6pm -0am 0am -6am 6am -12pm 12pm -6pm 6pm -0am SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010
  • 16. Thank you for your interest! K Keep i contact with us. in ih 16 See you at the follow on discussion OR12534 at 5:00 p.m. in room 7, ecosystem and partner center 7 Responsible: Deputy Prof. of Prof. Hasso Plattner Dr. Alexander Zeier Matthieu-P. Schapranow, M.Sc. zeier@hpi.uni-potsdam.de matthieu.schapranow@hpi.uni-potsdam.de Hasso Plattner Institute Enterprise Platform & Integration Concepts Matthieu-P. Schapranow August Bebel Str. August-Bebel-Str 88 14482 Potsdam, Germany SAPPHIRE '10, Event Applications: Real-Life Experiences at the HPI, Schapranow, May 18, 2010