Smart Data Innovation Lab (SDIL)
|
|
|
- Samson Bennett
- 10 years ago
- Views:
Transcription
1 Smart Data Innovation Lab (SDIL) Accelerating Data driven Innovation NESSI Summit May 27, 2014 Prof. Dr.-Ing. Michael Beigl Department of Informatics KIT University of the State of Baden-Wuerttemberg and National Research Center of the Helmholtz Association
2 Smart Data Innovation Lab (SDIL) Activity of working group 6 (Education and Research) of the German Government Announced January, 2014 (Operation Centre: KIT) Structure: Operation + Research & Innovation in High-Speed Big Data (with semantics, security & trust) aka Smart Data Topics = Data Communities are selected to start Industry (4.0), Energy, Smart Cities, Medicine Core Members bound by contract Operation & Community Members: Karlsruhe Institute of Technology (KIT), Microsoft, SAP, Software AG Operators: Hitachi Data Systems Community Members: Bayer, Bosch, Energy Baden-Württemberg (EnBW), Forschungszentrum Jülich, Fraunhofer, German Research Centre for Artificial Intelligence (DFKI), Siemens 3-2 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
3 SDIL Goals A Smart Data Centre and a Smart Data Community Prompt Co-Working on valuable Problems with valuable Big Data Requires Structure (SDIL Orga) and Trust (SDIL Contract) Knowledge Transfer from Research to Industry and vice versa Exploration of Smart Data Potential / Innovation Potential Best Practice and Standards Research in Analytics, Systems, Application Domain specific Smart Data Tools, Support, Management, Privacy, Legal and Curation HCI and Usability First focus: short term high impact projects 3-3 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
4 Support Repository Governance SDIL Coordination Ind 4.0 (DFKI, Bosch) Operator Energy (EnBW, KIT) Cities (Siemens, FhG) Projects HANA Terracotta Azure Generic Tools, Data Management, Legal Medicine (Bayer, FZJ) Central Storage Remote Data Source Catalogue, Broker Data Curation (DFKI, FhG) Communities 3-4 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu SDIL Platform
5 Research and Innovation Cycle Generated Data Data Sources Industrial, Research, Government, Open Data Systems, Analytics, Research based on open, proprietary SDIL internal Knowledge Smart Data Innovation Lab (Fast) Research and Development Code Artefacts Selected Results Knowledge and Innovation (Analysis results, prognosis, Online-Analysis Systems) 3-5 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
6 SDIL Project Phases Phase: Information Industry and research partners search partners and their competence focus through the SDIL database Phase: Project Definition Data Access / Result Model Selection, Funding & Contract Model Research and Innovation Question and Results (Data, Algorithm, System) Technical Details including Data and Service Interfaces Project Proposal Phase Proposal handed into SDIL Community In case of go: Preparing Operation Phase: Analysis Prepare Data, Compute, Interpret Data and/or develop analytical method or system Publish Results according to Data Model Continuation Phase Prepare for follow up actions or development of a run time system Care of Data Life Cycle according to contract 3-6 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
7 SDIL Models (proposed) SDIL introduces legal models to accelerate data driven research Data Access Models: Standard for data access P2P Models: Standard Contracts how to Share data What results get published Data Life Cycle Funding Contract Model SDIL develops standardized interfaces to data and computation Technical Libraries to harmonize access to HANA, Terracotta, Hadoop, Watson etc. Specialized libraries for application areas and user groups 3-7 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
8 Further Activities and Services of SDIL Workshops Competition Consulting & Support Tools Education 3-8 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
9 Core members Operation & Community Members Karlsruhe Institute of Technology (KIT) SAP Software AG Microsoft Operators Hitachi Data Systems Community Members Bayer Bosch Energy Baden- Württemberg (EnBW) Forschungszentrum Jülich Fraunhofer German Research Centre for Artificial Intelligence (DFKI) Siemens 3-9 Smart Data Innovation Lab. Michael Beigl. teco.kit.edu
KIT Site Report. Andreas Petzold. www.kit.edu STEINBUCH CENTRE FOR COMPUTING - SCC
KIT Site Report Andreas Petzold STEINBUCH CENTRE FOR COMPUTING - SCC KIT University of the State of Baden-Württemberg and National Laboratory of the Helmholtz Association www.kit.edu GridKa Tier 1 - Batch
Towards Open Urban Platforms for Smart Cities and Communities. Memorandum of Understanding
Towards Open Urban Platforms for Smart Cities and Communities Memorandum of Understanding 1. Outline of this Memorandum 1.1. The market for current Urban Platform(s) is fragmented and uncertain on the
Solutions for energy efficient buildings and cities
Solutions for energy efficient buildings and cities M.Sc Preslava Krahtova Research associate Institut for Information Management in Engineering (IMI) www.kit.edu Outline Short presentation at KIT Research
PICTURE Project Final Event. 21 May 2014 Minsk, Belarus
PICTURE Project Final Event 21 May 2014 Minsk, Belarus NESSI recent activities on Big Data and S/W Engineering Yannis Kliafas, ATC NESSI & EC Software Engineering Workshop; 26 May 2014 2 NESSI is the European
IT Security in Industrie 4.0
IT Security in Industrie 4.0 Prof. Dr. Michael Waidner TU Darmstadt & Fraunhofer Institute for Secure Information Technology? AUTONOMIK Innovation Days Berlin, June 17-18, 2014 1. What is Industrial IT
SAP Solution Brief SAP Technology SAP HANA. SAP HANA An In-Memory Data Platform for Real-Time Business
SAP Brief SAP Technology SAP HANA Objectives SAP HANA An In-Memory Data Platform for Real-Time Business Fast, broad, and meaningful insight at your service Real-time analytics Fast, broad, and meaningful
SAP HANA Big Data Intelligence rapiddeployment
SAP HANA 1.0 November 2015 English SAP HANA Big Data Intelligence rapiddeployment solution: Software and Delivery Requirements SAP SE Dietmar-Hopp-Allee 16 69190 Walldorf Germany Document Revisions 0 1
SAP Business Objects BO BI 4.1
SAP Business Objects BO BI 4.1 SAP Business Objects (a.k.a. BO, BOBJ) is an enterprise software company, specializing in business intelligence (BI). Business Objects was acquired in 2007 by German company
VIEWPOINT. High Performance Analytics. Industry Context and Trends
VIEWPOINT High Performance Analytics Industry Context and Trends In the digital age of social media and connected devices, enterprises have a plethora of data that they can mine, to discover hidden correlations
The KOALA Cloud Management Service
The KOALA Cloud Management Service A Modern Approach for Cloud Infrastructure Management CloudCP 1 st International Workshop on Cloud Computing Platforms at EuroSys 2011 Christian Baun, Marcel Kunze April
SAP BusinessObjects Business Intelligence 4.1 One Strategy for Enterprise BI. May 2013
SAP BusinessObjects Business Intelligence 4.1 One Strategy for Enterprise BI May 2013 SAP s Strategic Focus on Business Intelligence Core Self-service Mobile Extreme Social Core for innovation Complete
SAP SE - Legal Requirements and Requirements
Finding the signals in the noise Niklas Packendorff @packendorff Solution Expert Analytics & Data Platform Legal disclaimer The information in this presentation is confidential and proprietary to SAP and
Steinbuch Centre for Computing (SCC) The Information Technology Centre of KIT
Steinbuch Centre for Computing (SCC) The Information Technology Centre of KIT SCIENTIFIC COMPUTING, HPC AND GRIDS KIT the cooperation of Forschungszentrum Karlsruhe GmbH and Universität Karlsruhe (TH)
Smart Energy made in Germany
Smart Energy made in Germany How ICT makes the change happen Ludwig Karg, B.A.U.M., Head of E-Energy Ancillary Research www.bmwi.de Decisions made! 2 Key Challenges in Energy geothermal triangle of hope
Towards a Thriving Data Economy: Open Data, Big Data, and Data Ecosystems
Towards a Thriving Data Economy: Open Data, Big Data, and Data Ecosystems Volker Markl [email protected] dima.tu-berlin.de dfki.de/web/research/iam/ bbdc.berlin Based on my 2014 Vision Paper On
IT Security Quo Vadis?
Munich IT Security Research Group IT Security Quo Vadis? Hans-Joachim Hof MuSe - Munich IT Security Research Group Munich University of Applied Sciences [email protected] http://muse.bayern Prof. Dr.-Ing. Hans-Joachim
SAP HANA Data Center Intelligence - Overview Presentation
SAP HANA Data Center Intelligence - Overview Presentation August, 2014 Customer Disclaimer This presentation outlines our general product direction and should not be relied on in making a purchase decision.
The RoboCup Soccer Simulator
Short presentation At the University of the Basque Country - Computer Science Faculty - TAIA (German Rigau) 1 Richard Hertel: KIT University of the State of Baden-Württemberg and National Large-scale Research
Energy research at KIT
Energy research at KIT 25. October 2011 2 nd Workshop of Dr.-Ing. Joachim U. Knebel, Chief Science Officer Bereich 4 KIT University of the State of Baden-Wuerttemberg and National Research Center of the
KEMP LoadMaster. Enabling Hybrid Cloud Solutions in Microsoft Azure
KEMP LoadMaster Enabling Hybrid Cloud Solutions in Microsoft Azure Introduction An increasing number of organizations are moving from traditional on-premises datacenter architecture to a public cloud platform
User Needs and Requirements Analysis for Big Data Healthcare Applications
User Needs and Requirements Analysis for Big Data Healthcare Applications Sonja Zillner, Siemens AG In collaboration with: Nelia Lasierra, Werner Faix, and Sabrina Neururer MIE 2014 in Istanbul: 01-09-2014
Predictive Analytics
Predictive Analytics How many of you used predictive today? 2015 SAP SE. All rights reserved. 2 2015 SAP SE. All rights reserved. 3 How can you apply predictive to your business? Predictive Analytics is
From Big Data to Smart Data Thomas Hahn
Siemens Future Forum @ HANNOVER MESSE 2014 From Big to Smart Hannover Messe 2014 The Evolution of Big Digital data ~ 1960 warehousing ~1986 ~1993 Big data analytics Mining ~2015 Stream processing Digital
SAP Big Data Helping Government Run Like Never Before
SAP Big Data Helping Government Run Like Never Before 2005 2 2013 3 Big Data is Driving Innovation and Value for Public Sector Trends We See Ensure safe, sustainable communities Provide the next generation
A Generic Business Logic for Energy Optimization Models
A Generic Business Logic for Energy Optimization Models Sabrina Merkel 1, Christoph Schlenzig 1, Albrecht Reuter 2 1 Seven2one Informationssysteme GmbH, Waldstr. 41-43, 76133, Karlsruhe, Germany (sabrina.merkel,
DGE /DG Connect. 25-6-2015 www.bdva.eu
DGE /DG Connect 1 CHALLENGES, SOLUTIONS AND VISIONS FOR THE EUROPEAN DATA ECONOMY Laure Le Bars SAP 2 BIG DATA WHAT S IT ALL ABOUT www.bdva.eu 25-6-2015 3 When is Data Big? Volume Velocity Variety Veracity
Executive Master Program Green Mobility Engineering. Technology + Management
Executive Master Program Green Mobility Engineering Technology + Management KIT University of the State of Baden-Wuerttemberg and National Research Center of the Helmholtz Association Accredited by Keyfacts
IoT Analytics: Four Key Essentials and Four Target Industries
IoT Analytics: Four Key Essentials and Four Target Industries 1 Introduction Analysts and IT personnel across all industries seek technology to better engage and manage data generated by the Internet of
Rationale and vision for E2E data standards: the need for a MDR
E2E data standards, the need for a new generation of metadata repositories Isabelle de Zegher, PAREXEL Informatics, Belgium Alan Cantrell, PAREXEL, United Kingdom Julie James, PAREXEL Informatics, United
The Edge Editions of SAP InfiniteInsight Overview
Analytics Solutions from SAP The Edge Editions of SAP InfiniteInsight Overview Enabling Predictive Insights with Mouse Clicks, Not Computer Code Table of Contents 3 The Case for Predictive Analysis 5 Fast
ICT Enabling the Future of Smart Energy. Competence Center IT4Energy Dr. Thomas Luckenbach Dr. Armin Wolf
ICT Enabling the Future of Smart Energy Competence Center IT4Energy Dr. Thomas Luckenbach Dr. Armin Wolf 1 egovernment ehealth Public Security Smart Mobility Smart Energy Activity Domains of FOKUS Public
Demonstration of SAP Predictive Analysis 1.0, consumption from SAP BI clients and best practices
September 10-13, 2012 Orlando, Florida Demonstration of SAP Predictive Analysis 1.0, consumption from SAP BI clients and best practices Vishwanath Belur, Product Manager, SAP Predictive Analysis Learning
EO Data by using SAP HANA Spatial Hinnerk Gildhoff, Head of HANA Spatial, SAP Satellite Masters Conference 21 th October 2015 Public
Leveraging Geospatial Technologies EO Data by using SAP HANA Spatial Hinnerk Gildhoff, Head of HANA Spatial, SAP Satellite Masters Conference 21 th October 2015 Public Disclaimer This presentation outlines
Social Media: Was kommt als nächstes?
How social computing creates business value Social Media: Was kommt als nächstes? Dr. Manfred Langen, Siemens AG, Corporate Technology Social Media / Social Software Fields of application Internal Use
Integration and Data Management In The Cloud Gary Palgon VP Healthcare Solutions [email protected]
Integration and Data Management In The Cloud Gary Palgon VP Healthcare Solutions [email protected] 2012 Liaison Technologies. All rights reserved. Liaison is a trademark of Liaison Technologies. What
The Internet of Things and I4.0 is an Evolution. New Markets (e.g. maintenance hub operator) Data Driven. Services. (e.g. predictive.
Industrie 4.0 and Internet of Things July 9, 2015 The Internet of Things and I4.0 is an Evolution Business Impact 40-50% CAGR for M2M market until 2020* IoT Space Data Driven Services (e.g. predictive
IAEA Workshop Wire Saw Technology
IAEA Workshop Wire Saw Technology Prof. Dr.-Ing. Sascha Gentes KIT University of the State of Baden-Wuerttemberg and National Research Center of the Helmholtz Association www.kit.edu Content: 1. History
Headstrong: SAP Solution Helps Streamline and Accelerate Financial Services Application Development
2012 SAP AG. All rights reserved. Headstrong: SAP Helps Streamline and Accelerate Financial Services Application Development Headstrong, a Genpact company Industry High tech software integration and development
SAP HANA Vora : Gain Contextual Awareness for a Smarter Digital Enterprise
Frequently Asked Questions SAP HANA Vora SAP HANA Vora : Gain Contextual Awareness for a Smarter Digital Enterprise SAP HANA Vora software enables digital businesses to innovate and compete through in-the-moment
Enterprise Application Enablement for the Internet of Things
Enterprise Application Enablement for the Internet of Things Prof. Dr. Uwe Kubach VP Internet of Things Platform, P&I Technology, SAP SE Public Internet of Things (IoT) Trends 12 50 bn 40 50 % Devices
Cloud and Big Data Standardisation
Cloud and Big Data Standardisation EuroCloud Symposium ICS Track: Standards for Big Data in the Cloud 15 October 2013, Luxembourg Yuri Demchenko System and Network Engineering Group, University of Amsterdam
Stream Processing on GPUs Using Distributed Multimedia Middleware
Stream Processing on GPUs Using Distributed Multimedia Middleware Michael Repplinger 1,2, and Philipp Slusallek 1,2 1 Computer Graphics Lab, Saarland University, Saarbrücken, Germany 2 German Research
Executive Master Program Production & Operations Management
Executive Master Program Production & Operations Management Technology + Management KIT University of the State of Baden-Wuerttemberg and National Research Center of the Helmholtz Association Accredited
Trends, Strategy, Roadmaps and Product Direction for SAP BI tools in SAP HANA environment
September 9 11, 2013 Anaheim, California Trends, Strategy, Roadmaps and Product Direction for SAP BI tools in SAP HANA environment Surya K Dutta [email protected] Analytics New possibilities In-Memory
Combining the INTERNET of THINGS and the INTERNET of SERVICES
On RFID Conference and Exhibition LAGOAS PARK, LISBON Combining the INTERNET of THINGS and the INTERNET of SERVICES Dr. Joachim Schaper Vice President SAP Research EMEA, SAP AG Agenda 1 2 3 4 5 The VISION
SAP PartnerEdge Program Guide for Authorized Resellers
SAP PartnerEdge Program Guide for Authorized Resellers Table of Contents 3 SAP PartnerEdge Program: Accelerating Your Growth Gain an Edge on Your Competition 5 Program Requirements: How to Become an Authorized
SAP and Hortonworks Reference Architecture
SAP and Hortonworks Reference Architecture Hortonworks. We Do Hadoop. June Page 1 2014 Hortonworks Inc. 2011 2014. All Rights Reserved A Modern Data Architecture With SAP DATA SYSTEMS APPLICATIO NS Statistical
SAP Solution Brief SAP HANA. Transform Your Future with Better Business Insight Using Predictive Analytics
SAP Brief SAP HANA Objectives Transform Your Future with Better Business Insight Using Predictive Analytics Dealing with the new reality Dealing with the new reality Organizations like yours can identify
Process Mining The influence of big data (and the internet of things) on the supply chain
September 16, 2015 Process Mining The influence of big data (and the internet of things) on the supply chain Wil van der Aalst www.vdaalst.com @wvdaalst www.processmining.org http://www.engineersjournal.ie/factory-of-thefuture-will-see-merging-of-virtual-and-real-worlds/
A Generic Platform for Enterprise Gamification
A Generic Platform for Enterprise Gamification Philipp Herzig / SAP AG / Technische Universität Dresden Michael Ameling / SAP AG Alexander Schill / Technische Universität Dresden Gamification Classification
Software and Delivery Requirements
SAP HANA Big Data Intelligence rapiddeployment solution November 2014 English SAP HANA Big Data Intelligence rapiddeployment solution: Software and Delivery Requirements SAP SE Dietmar-Hopp-Allee 16 69190
Session 5. Mixing and matching Public, Private and Hybrid Clouds for maximum benefits
Session 5. Mixing and matching Public, Private and Hybrid Clouds for maximum benefits Best of both/ Best of all regarding specific needs, based on the use of resources Hybrid cloud is simply a mix of private
SAP BusinessObjects (BI) 4.1 on SAP HANA Piepaolo Vezzosi, SAP Product Strategy. Orange County Convention Center Orlando, Florida June 3-5, 2014
SAP BusinessObjects (BI) 4.1 on SAP HANA Piepaolo Vezzosi, SAP Product Strategy Orange County Convention Center Orlando, Florida June 3-5, 2014 Learning points SAP HANA scenarios for business intelligence
Real-Time Analytics: Integrating Social Media Insights with Traditional Data
SAP Brief SAP Rapid Deployment s SAP HANA Sentiment Intelligence Rapid-Deployment Objectives Real-Time Analytics: Integrating Social Media Insights with Traditional Data Capturing customer sentiment from
Integrating Predictive Analytics Into Clinical Practice For Improved Outcomes & Financial Performance
Transforming the HHS Experience Improving the relationship between payers, providers and consumers Integrating Predictive Analytics Into Clinical Practice For Improved Outcomes & Financial Performance
Business Intelligence meets Big Data: An Overview on Security and Privacy
Business Intelligence meets Big Data: An Overview on Security and Privacy Claudio A. Ardagna Ernesto Damiani Dipartimento di Informatica - Università degli Studi di Milano NSF Workshop on Big Data Security
Predictive Analytics Powered by SAP HANA. Cary Bourgeois Principal Solution Advisor Platform and Analytics
Predictive Analytics Powered by SAP HANA Cary Bourgeois Principal Solution Advisor Platform and Analytics Agenda Introduction to Predictive Analytics Key capabilities of SAP HANA for in-memory predictive
Integration of Industry 4.0 in Education Programs of German Universities of Applied Science. Prof. Dr.-Ing. Rainer Würslin
Integration of Industry 4.0 in Education Programs of German Universities of Applied Science Prof. Dr.-Ing. Rainer Würslin Agenda» The University of Applied Sciences Esslingen» The German Education- and
Enterprise Information Management Services Managing Your Company Data Along Its Lifecycle
SAP Solution in Detail SAP Services Enterprise Information Management Enterprise Information Management Services Managing Your Company Data Along Its Lifecycle Table of Contents 3 Quick Facts 4 Key Services
BIG DATA AND PREDICTIVE ANALYTICS PDF
BIG DATA AND PREDICTIVE ANALYTICS PDF ==> Download: BIG DATA AND PREDICTIVE ANALYTICS PDF BIG DATA AND PREDICTIVE ANALYTICS PDF - Are you searching for Big Data And Predictive Analytics Books? Now, you
Cloud SSO and Federated Identity Management Solutions and Services
Cloud SSO and Federated Identity Management Solutions and Services Achieving Balance Between Availability and Protection Discussion Points What is Cloud Single Sign-On (SSO) What is Federated Identity
Scalable Developments for Big Data Analytics in Remote Sensing
Scalable Developments for Big Data Analytics in Remote Sensing Federated Systems and Data Division Research Group High Productivity Data Processing Dr.-Ing. Morris Riedel et al. Research Group Leader,
Customer Relationship Management Prof. Dr. Hasso Plattner SAP AG
Customer Relationship Management Prof. Dr. Hasso Plattner SAP AG SAP AG 1999 Wirtschaftsinformatik 99, Feb. 99 (Hasso Plattner) /1 From Reducing Costs to Generating Value Relationship Centric Customer
INVENTING THE FUTURE HITACHI DATA SYSTEMS BIG DATA ROADMAP MICHAEL HAY
INVENTING THE FUTURE HITACHI DATA SYSTEMS BIG DATA ROADMAP MICHAEL HAY CTO AND VP, GLOBAL SOLUTIONS STRATEGY AND DEVELOPMENT CHIEF ENGINEER, INTEGRATED PLATFORM STRATEGY @ ITPD WEBTECH EDUCATIONAL SERIES
Microsoft Big Data. Solution Brief
Microsoft Big Data Solution Brief Contents Introduction... 2 The Microsoft Big Data Solution... 3 Key Benefits... 3 Immersive Insight, Wherever You Are... 3 Connecting with the World s Data... 3 Any Data,
CMS Level 1 Track Trigger
Institut für Technik der Informationsverarbeitung CMS Level 1 Track Trigger An FPGA Approach Management Prof. Dr.-Ing. Dr. h.c. J. Becker Prof. Dr.-Ing. Eric Sax Prof. Dr. rer. nat. W. Stork KIT University
Intelligent Retrieval for Component Reuse in System-On-Chip Design
Intelligent Retrieval for Component Reuse in System-On-Chip Design Andrea Freßmann, Rainer Maximini, Martin Schaaf University of Hildesheim, Data- and Knowledge Management Group PO Box 101363, 31113 Hildesheim,
Big Data, Analytics, Intelligence: Potenziale und Nutzen
Dr. Matthias Kaiserswerth Vice President, Europe and Director, IBM Research Big Data, Analytics, Intelligence: Potenziale und Nutzen Market Forces Driving Health Care Transformation Source: If applicable,
How To Understand The Power Of The Internet Of Things
Next Internet Evolution: Getting Big Data insights from the Internet of Things Internet of things are fast becoming broadly accepted in the world of computing and they should be. Advances in Cloud computing,
SAP BusinessObjects Business Intelligence 4 Innovation and Implementation
SAP BusinessObjects Business Intelligence 4 Innovation and Implementation TABLE OF CONTENTS 1- INTRODUCTION... 4 2- LOGON DETAILS... 5 3- STARTING AND STOPPING THE APPLIANCE... 6 4.1 Remote Desktop Connection
ischool 2-Year Course Plan Summer 2015-Summer 2016 College Park Campus = CP; Shady Grove Campus = SG; SGO = Online
INFM 600 Information Environments CP, SG CP, SGO CP, SG CP, SGO INFM 603 Information Technology and Organizational Context CP, SG CP CP, SG SG INFM 605 Users and Use Context CP, SG CP, SGO CP, SG CP INFM
Asset Management Solutions for Research Analysts THE CHALLENGE YOUR END-TO-END RESEARCH SOLUTION
Asset Management Solutions for Research Analysts THE CHALLENGE In today s high-speed global research and investment environment, the primary challenge for research analysts is how to efficiently collect,
Outperform Financial Objectives and Enable Regulatory Compliance
SAP Brief Analytics s from SAP SAP s for Enterprise Performance Management Objectives Outperform Financial Objectives and Enable Regulatory Compliance Drive better decisions and streamline the close-to-disclose
Image Data, RDA and Practical Policies
Image Data, RDA and Practical Policies Rainer Stotzka and many others KIT University of the State of Baden-Württemberg and National Laboratory of the Helmholtz Association www.kit.edu Data Life Cycle Lab
Using In-Memory Data Fabric Architecture from SAP to Create Your Data Advantage
SAP HANA Using In-Memory Data Fabric Architecture from SAP to Create Your Data Advantage Deep analysis of data is making businesses like yours more competitive every day. We ve all heard the reasons: the
Die Technologieplattform der Zukunft. Arne Speck Solution Expert, Mobility & Technology, SAP (Schweiz) AG
Die Technologieplattform der Zukunft Arne Speck Solution Expert, Mobility & Technology, SAP (Schweiz) AG Disclaimer This presentation outlines our general product direction and should not be relied on
Industrie 4.0. The Aachen Approach
Industrie 4.0 The Aachen Approach Axel Demmer Fraunhofer Institute for Production Technology IPT, Aachen (GER) Fraunhofer Additive Manufacturing Alliance Paradigm shifts lead to the announced fourth industrial
Horizontal IoT Application Development using Semantic Web Technologies
Horizontal IoT Application Development using Semantic Web Technologies Soumya Kanti Datta Research Engineer Communication Systems Department Email: [email protected] Roadmap Introduction Challenges
