The Concept of Big Data Reference Model
|
|
|
- Moris Rice
- 10 years ago
- Views:
Transcription
1 ISO/IEC JTC1/SC32/WG2N1853 The Concept of Reference Model Sungjoon Lim, KoDB*, Dongwon Jeong, KNU**, Jangwon Gim, KISTI***, Hanmin Jung, KISTI, *Korea Database Agency **Kunsan National University ***Korea Institute of Science and Technology Information
2 Contents Brief History of discussions 32N2386 Reference Model for Concept for Reference model Uses of the reference model Possible Structure of parts Issues
3 Brief History of discussions Issue Date Nov 2011 Jan 2012 Mar 2012 Jun 2012 May 2013 Nov 2013 Summary [SC32N2181] ISO/IEC JTC 1/SC 32 N2181, Resolutions and topics from the recent JTC 1 meeting o f particular interest to SC 32 participants, SC32 Chair Jim Melton [SC32N2198] ISO/IEC JTC 1/SC 32 N 2198, Analysis of 2012 Gartner Technology Trends, JTC1 SWG-P - Mario Wendt Convener SC 6 Telecommunications and information exchange between systems SC 32 Data management and interchange SC 39 Sustainability for and by Information Technology [SC32N2199]ISO/IEC JTC 1/SC 32 N 2199, Discussion: SC 32 Response to 2011 JTC 1 Resolution 33, SC32 Chair Jim Melton [SC32N2241] Ad-hoc on Next gen analytics - Keith Hare - Chair Posted several documents - 32N2383-Big_data_&_Next_generation_analytics - 32N2386-Reference Model for - 32N2387-thoughts_on_big_data farance - 32N2388b-report_SG_big_data_analytics SC32 Chairman presented the report of SG to JTC1 Plenary, the reference model is included in the report.(iso/iec JTC 1 N11819)
4 Procedure for developing a reference model for 32N2386-Reference Model for 1. Eliciting requirements and analyzing the environment of 2. Establishing visions and strategies for achieving the goal of 3. Defining a concept model / a reference model / a framework for We are here 4. Deriving use-cases for applying the 4
5 A lifecycle of 32N2386-Reference Model for Collection/Identification Repository/Registry Semantic Intellectualization Integration Data Analytics / Prediction Insight Visualization Action Decision Data Curation Data Scientist Data Engineer Workflow Data Quality 5
6 Reference Model for A Reference Model for 32N2386-Reference Model for Analysis & Prediction Service Layer Interface Interface Workflow Data Quality Data Visualization Service Support Layer Data Curation Data Integration Data Semantic Intellectualization Platform Layer Security Interface Data Identification (Data Mining & Metadata Extraction) Data Collection Data Registry Data Repository Data Layer 6
7 Reference Model for A Reference Model for??? 32N2386-Reference Model for Analysis & Prediction Service Layer Interface Interface Workflow Data Quality Data Visualization Service Support Layer Data Curation Data Integration Data Semantic Intellectualization Platform Layer Security Interface Data Identification (Data Mining & Metadata Extraction) Data Collection Data Registry Data Repository Data Layer
8 Concept for Reference model Reference model might cover whole processes of from planning to discovering Reference model is not just for harvesting other standards, it might be able to be implemented by user requirement as Big Data services and technologies Reference Model User Requirement SNS Weather Sensor Customer Info. Log Purchase Info. Planning Preprocessing Operation and Analysis Visualization Planning Preprocess ing Operation and Analysis Visualizatio n Service& Technology discovery
9 Concept for Reference model Planning Reference Model Reference Model Operation and Planning Preprocessing Analysis Visualization Technical Reference Model
10 Concept for Reference model Planning Reference Model Project definition Analysis planning Analysis Achievement Analysis goal setup Analysis priority setup Achievement planning setup Analysis object deduction roadmap setup by Phase Achievement indicator definition Analysis scenario definition Analysis setup Performance measurement Reference Model System Operation Capacity management Security management Technical Reference Model Service & performance analysis System Capacity planning Account and authority management Preprocessing Analysis Visualization DB performance analysis DB Capacity planning Log analysis Collection Requirement Visualization planning system management Data Center Capacity planning Saving Modeling Visualization modeling Business transaction process management tool extraction Validation and testing Visualization designing integration Application Visualization setup
11 Uses of the reference model To enhance industry, reference model can be a guidance for consultation services and development solutions Reference model Guidance industry Consultations & Solutions Input Stakeholder s requirement (data provider, data creator, data analyzer, Service provider, service user, and so on)
12 Possible Structure of parts Part 1 Overview Part 2 Planning Reference Model Part 3 Reference Model Part 4 Technical Reference Model Overview Part1 Part2 Planning Reference Model Reference Model Technical Reference Model Part3 Part4
13 Issues How can WG2 contribute to Standardization?
Standardization Requirements Analysis on Big Data in Public Sector based on Potential Business Models
, pp. 165-172 http://dx.doi.org/10.14257/ijseia.2014.8.11.15 Standardization Requirements Analysis on Big Data in Public Sector based on Potential Business Models Suwook Ha 1, Seungyun Lee 2 and Kangchan
Standard Big Data Architecture and Infrastructure
Standard Big Data Architecture and Infrastructure Wo Chang Digital Data Advisor Information Technology Laboratory (ITL) National Institute of Standards and Technology (NIST) [email protected] May 20, 2016
The InterNational Committee for Information Technology Standards INCITS Big Data
The InterNational Committee for Information Technology Standards INCITS Big Data Keith W. Hare JCC Consulting, Inc. April 2, 2015 Who am I? Senior Consultant with JCC Consulting, Inc. since 1985 High performance
Cloud computing based big data ecosystem and requirements
Cloud computing based big data ecosystem and requirements Yongshun Cai ( 蔡 永 顺 ) Associate Rapporteur of ITU T SG13 Q17 China Telecom Dong Wang ( 王 东 ) Rapporteur of ITU T SG13 Q18 ZTE Corporation Agenda
ISO/IEC JTC1 SC32. Next Generation Analytics Study Group
November 13, 2013 ISO/IEC JTC1 SC32 Next Generation Analytics Study Group Title: Author: Project: Status: Big Data Efforts Keith W. Hare Discussion Paper References: 1/6 1 NIST Big Data Public Working
ARIS 9ARIS 9.6 map and Future Directions Die nächste Generation des Geschäftsprozessmanagements
ARIS 9ARIS 9.6 map and Future Directions Die nächste Generation des Geschäftsprozessmanagements Dr. Katrina Simon ARIS Product Management 2014 Software AG. All rights reserved. ARIS @ Software AG 2M END
Four Approaches to Healthcare Enterprise Analytics. Herb Smaltz, Ph.D., FHIMSS, FACHE Chairman & Founder Health Care DataWorks
1 Four Approaches to Healthcare Enterprise Analytics Herb Smaltz, Ph.D., FHIMSS, FACHE Chairman & Founder Health Care DataWorks 4 Options (plus a myriad of hybrid approaches) 1. Leverage Core Vendors EMR
Extend your analytic capabilities with SAP Predictive Analysis
September 9 11, 2013 Anaheim, California Extend your analytic capabilities with SAP Predictive Analysis Charles Gadalla Learning Points Advanced analytics strategy at SAP Simplifying predictive analytics
Big Data Analytics Platform @ Nokia
Big Data Analytics Platform @ Nokia 1 Selecting the Right Tool for the Right Workload Yekesa Kosuru Nokia Location & Commerce Strata + Hadoop World NY - Oct 25, 2012 Agenda Big Data Analytics Platform
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
Technical Layer (Technical Interoperability) Information Layer (Information Interoperability. Business Layer (Business Process Interoperability)
Layers of Interoperability Technical Layer (Technical Interoperability) Information Layer (Information Interoperability Business Layer (Business Process Interoperability) Information Interoperability Identify
AT&T Global Network Client for Windows Product Support Matrix January 29, 2015
AT&T Global Network Client for Windows Product Support Matrix January 29, 2015 Product Support Matrix Following is the Product Support Matrix for the AT&T Global Network Client. See the AT&T Global Network
Chapter ML:XI. XI. Cluster Analysis
Chapter ML:XI XI. Cluster Analysis Data Mining Overview Cluster Analysis Basics Hierarchical Cluster Analysis Iterative Cluster Analysis Density-Based Cluster Analysis Cluster Evaluation Constrained Cluster
Analysis One Code Desc. Transaction Amount. Fiscal Period
Analysis One Code Desc Transaction Amount Fiscal Period 57.63 Oct-12 12.13 Oct-12-38.90 Oct-12-773.00 Oct-12-800.00 Oct-12-187.00 Oct-12-82.00 Oct-12-82.00 Oct-12-110.00 Oct-12-1115.25 Oct-12-71.00 Oct-12-41.00
INTERNATIONAL ORGANISATION FOR STANDARDISATION ORGANISATION INTERNATIONALE DE NORMALISATION ISO/IEC JTC1/SC29/WG1 CODING OF STILL PICTURES
INTERNATIONAL ORGANISATION FOR STANDARDISATION ORGANISATION INTERNATIONALE DE NORMALISATION ISO/IEC JTC1//WG1 CODING OF STILL PICTURES TITLE: Meeting Report, 50 th Meeting of ISO/IEC JTC 1/SC 29/WG 1 2009-10-26
TEXT ANALYTICS INTEGRATION
TEXT ANALYTICS INTEGRATION A TELECOMMUNICATIONS BEST PRACTICES CASE STUDY VISION COMMON ANALYTICAL ENVIRONMENT Structured Unstructured Analytical Mining Text Discovery Text Categorization Text Sentiment
ON DEMAND ACCESS TO BIG DATA. Peter Haase fluid Operations AG
ON DEMAND ACCESS TO BIG DATA THROUGHSEMANTIC TECHNOLOGIES Peter Haase fluid Operations AG fluid Operations (fluidops) Linked Data & SemanticTechnologies Enterprise Cloud Computing Software company founded
Master Data Management Architecture
Master Data Management Architecture Version Draft 1.0 TRIM file number - Short description Relevant to Authority Responsible officer Responsible office Date introduced April 2012 Date(s) modified Describes
Data Mining, Predictive Analytics with Microsoft Analysis Services and Excel PowerPivot
www.etidaho.com (208) 327-0768 Data Mining, Predictive Analytics with Microsoft Analysis Services and Excel PowerPivot 3 Days About this Course This course is designed for the end users and analysts that
The Data Reservoir as an enabler of differentiating Analytics initiatives
Mandy Chessell CBE FREng CEng FBCS Distinguished Engineer, Master Inventor Chief Architect, Solutions The Reservoir as an enabler of differentiating Analytics initiatives 3 rd March 2015 Agenda Changing
Overview NIST Big Data Working Group Activities
Overview NIST Big Working Group Activities and Big Architecture Framework (BDAF) by UvA Yuri Demchenko SNE Group, University of Amsterdam Big Analytics Interest Group 17 September 2013, 2nd RDA Plenary
Knowledgent White Paper Series. Developing an MDM Strategy WHITE PAPER. Key Components for Success
Developing an MDM Strategy Key Components for Success WHITE PAPER Table of Contents Introduction... 2 Process Considerations... 3 Architecture Considerations... 5 Conclusion... 9 About Knowledgent... 10
A Holistic Framework for Enterprise Data Management DAMA NCR
A Holistic Framework for Enterprise Data Management DAMA NCR Deborah L. Brooks March 13, 2007 Agenda What is Enterprise Data Management? Why an EDM Framework? EDM High-Level Framework EDM Framework Components
FIA FIA. Installation Standards - 2004. e-ready Building Next Generation IT infrastructures. ϕ The Cabling Partnership AGENDA
Installation Standards - 2004 January 2004, Issue 1 Mike Gilmore Standards Activities Member: ISO/IEC JTC1 SC25 WG3: Generic Cabling ISO/IEC JTC1 SC25 Project Team: SOHO Convenor: ISO/IEC JTC1 SC25 WG3
Ganzheitliches Datenmanagement
Ganzheitliches Datenmanagement für Hadoop Michael Kohs, Senior Sales Consultant @mikchaos The Problem with Big Data Projects in 2016 Relational, Mainframe Documents and Emails Data Modeler Data Scientist
Master Data Management Components. Zahra Mansoori
Master Data Management Components Zahra Mansoori 1 Master Data Abbreviation: MD Referring to core business entities an organization uses repeatedly across many business processes and systems Captures the
Data Mart/Warehouse: Progress and Vision
Data Mart/Warehouse: Progress and Vision Institutional Research and Planning University Information Systems What is data warehousing? A data warehouse: is a single place that contains complete, accurate
IOT & Big Data: The Future Information Processing Architecture
IOT & Big Data: The Future Information Processing Architecture Dr. Michael Faden Dirk Weise BASEL BERN BRUGG GENF LAUSANNE ZÜRICH DÜSSELDORF FRANKFURT A.M. FREIBURG I.BR. HAMBURG MÜNCHEN STUTTGART WIEN
Information Management & Data Governance
Data governance is a means to define the policies, standards, and data management services to be employed by the organization. Information Management & Data Governance OVERVIEW A thorough Data Governance
@DanSSenter. Business Intelligence Centre of Excellence Manager. [email protected]. +44 (0) 7805 162092 dansenter.co.
Dan Senter Business Intelligence Centre of Excellence Manager [email protected] @DanSSenter +44 (0) 7805 162092 dansenter.co.uk Agenda National Grid Evolution of BI The BICC Empowerment Learnings
Monitor and Manage Your MicroStrategy BI Environment Using Enterprise Manager and Health Center
Monitor and Manage Your MicroStrategy BI Environment Using Enterprise Manager and Health Center Presented by: Dennis Liao Sales Engineer Zach Rea Sales Engineer January 27 th, 2015 Session 4 This Session
A Big Picture for Big Data
Supported by EU FP7 SCIDIP-ES, EU FP7 EarthServer A Big Picture for Big Data FOSS4G-Europe, Bremen, 2014-07-15 Peter Baumann Jacobs University rasdaman GmbH [email protected] Our Stds Involvement
On a Hadoop-based Analytics Service System
Int. J. Advance Soft Compu. Appl, Vol. 7, No. 1, March 2015 ISSN 2074-8523 On a Hadoop-based Analytics Service System Mikyoung Lee, Hanmin Jung, and Minhee Cho Korea Institute of Science and Technology
Voice. listen, understand and respond. enherent. wish, choice, or opinion. openly or formally expressed. May 2010. - Merriam Webster. www.enherent.
Voice wish, choice, or opinion openly or formally expressed - Merriam Webster listen, understand and respond May 2010 2010 Corp. All rights reserved. www..com Overwhelming Dialog Consumers are leading
Request for Information Page 1 of 9 Data Management Applications & Services
Request for Information Page 1 of 9 Data Management Implementation Analysis and Recommendations About MD Anderson M. D. Anderson is a component of the University of Texas System and was created by the
POLAR IT SERVICES. Business Intelligence Project Methodology
POLAR IT SERVICES Business Intelligence Project Methodology Table of Contents 1. Overview... 2 2. Visualize... 3 3. Planning and Architecture... 4 3.1 Define Requirements... 4 3.1.1 Define Attributes...
Oracle Business Intelligence Mobile
Oracle Business Intelligence Mobile Jon Ainsworth Director of Business Development Oracle EMEA Business Analytics 1 Copyright 2011, Oracle and/or its affiliates. All rights reserved. Fact: Today Mobile
Data Domain Profiling and Data Masking for Hadoop
Data Domain Profiling and Data Masking for Hadoop 1993-2015 Informatica LLC. No part of this document may be reproduced or transmitted in any form, by any means (electronic, photocopying, recording or
Big Data and Trusted Information
Dr. Oliver Adamczak Big Data and Trusted Information CAS Single Point of Truth 7. Mai 2012 The Hype Big Data: The next frontier for innovation, competition and productivity McKinsey Global Institute 2012
INSPIRE Dashboard. Technical scenario
INSPIRE Dashboard Technical scenario Technical scenarios #1 : GeoNetwork catalogue (include CSW harvester) + custom dashboard #2 : SOLR + Banana dashboard + CSW harvester #3 : EU GeoPortal +? #4 :? + EEA
BEA BPM an integrated solution for business processes modelling. Frederik Frederiksen Principal PreSales Consultant BEA Systems
BEA BPM an integrated solution for business processes modelling Frederik Frederiksen Principal PreSales Consultant BEA Systems Agenda What is BPM? BEA AquaLogic BPM Suite Industry View Customers BPM and
GEOG 482/582 : GIS Data Management. Lesson 10: Enterprise GIS Data Management Strategies GEOG 482/582 / My Course / University of Washington
GEOG 482/582 : GIS Data Management Lesson 10: Enterprise GIS Data Management Strategies Overview Learning Objective Questions: 1. What are challenges for multi-user database environments? 2. What is Enterprise
Adaptive Case Management - Capabilities for Faster Decisions
Adaptive Case Management - Capabilities for Faster Decisions Tayo Runsewe Chris Pinnell ECM Solutions IBM Canada ECM Client Solution Professional IBM Canada The beginning of wisdom is a definition of terms
SAP Agile Data Preparation
SAP Agile Data Preparation Speaker s Name/Department (delete if not needed) Month 00, 2015 Internal Legal disclaimer The information in this presentation is confidential and proprietary to SAP and may
Copyright 2005-2010 Soleran, Inc. esalestrack On-Demand CRM. Trademarks and all rights reserved. esalestrack is a Soleran product Privacy Statement
Business Data Authority: A data organization for strategic advantage
Business Data Authority: A data organization for strategic advantage Collibra Data Governance Software Company Reference Customers Business Data Growth and Challenge TREND Exploding volume, velocity and
Disrupt or be disrupted IT Driving Business Transformation
Disrupt or be disrupted IT Driving Business Transformation Gokula Mishra VP, Big Data & Advanced Analytics Business Analytics Product Group Copyright 2014 Oracle and/or its affiliates. All rights reserved.
Next Generation Grid Data Architecture & Analytics Required for the Future Grid
& Analytics Required for the Future Grid Arjun Shankar and Russell Robertson Team: Lin Zhu, Frank Liu, Jim Nutaro, Yilu Liu, and Tom King 1 2 2 Project Purpose PURPOSE To foster open collaboration on issues,
Migrating Discoverer to OBIEE Lessons Learned. Presented By Presented By Naren Thota Infosemantics, Inc.
Migrating Discoverer to OBIEE Lessons Learned Presented By Presented By Naren Thota Infosemantics, Inc. Professional Background Partner/OBIEE Architect at Infosemantics, Inc. Experience with BI solutions
BIG DATA: FROM HYPE TO REALITY. Leandro Ruiz Presales Partner for C&LA Teradata
BIG DATA: FROM HYPE TO REALITY Leandro Ruiz Presales Partner for C&LA Teradata Evolution in The Use of Information Action s ACTIVATING MAKE it happen! Insights OPERATIONALIZING WHAT IS happening now? PREDICTING
The Forefront of ICT International Standardization for Smart City and Smart Grid
The Forefront of ICT International Standardization for Smart City and Smart Grid Dr. Yicheng ZHOU Smart City Promotion Unit. FUJITSU LIMITED (2014-10 10 ChengDu, China) Why International Standards Bring
Index. Registry Report
2013.1-12 Registry Report 01 02 03 06 19 21 22 23 24 25 26 27 28 29 31 34 35 Index Registry Report 02 Registry Report Registry Report 03 04 Registry Report Registry Report 05 06 Registry Report Registry
DESIGN BUILD TEST TRAIN/DEPLOY MAINTENANCE
SOLUTION PLAN REQUIREMENTS ANALYSIS DESIGN BUILD TEST TRAIN/DEPLOY MAINTENANCE Executive Summary The project will document campus requirements for IAM functionality and select and procure one or more technology
Implementing a Data Governance Initiative
Implementing a Data Governance Initiative Presented by: Linda A. Montemayor, Technical Director AT&T Agenda AT&T Business Alliance Data Governance Framework Data Governance Solutions: o Metadata Management
12 th World Telecommunication/ICT Indicators Symposium (WTIS-14)
12 th World Telecommunication/ICT Indicators Symposium (WTIS-14) Tbilisi, Georgia, 24-26 November 2014 Presentation Document C/19-E 25 November 2014 English SOURCE: TITLE: Ministry of Internal Affairs
With business intelligence, we create a learning organization that adapts quickly to market changes and stays one step ahead of the competition.
With business intelligence, we create a learning organization that adapts quickly to market changes and stays one step ahead of the competition. Wayne W. Eckerson TDWI New to Business Intelligence? What
IDC MaturityScape Benchmark: Big Data and Analytics in Government. Adelaide O Brien Research Director IDC Government Insights June 20, 2014
IDC MaturityScape Benchmark: Big Data and Analytics in Government Adelaide O Brien Research Director IDC Government Insights June 20, 2014 IDC MaturityScape Benchmark: Big Data and Analytics in Government
CAREER TRACKS PHASE 1 UCSD Information Technology Family Function and Job Function Summary
UCSD Applications Programming Involved in the development of server / OS / desktop / mobile applications and services including researching, designing, developing specifications for designing, writing,
Introduction to Data Mining and Machine Learning Techniques. Iza Moise, Evangelos Pournaras, Dirk Helbing
Introduction to Data Mining and Machine Learning Techniques Iza Moise, Evangelos Pournaras, Dirk Helbing Iza Moise, Evangelos Pournaras, Dirk Helbing 1 Overview Main principles of data mining Definition
BUSINESS INTELLIGENCE AND DATA WAREHOUSING. Y o u r B u s i n e s s A c c e l e r a t o r
BUSINESS INTELLIGENCE AND DATA WAREHOUSING. Y o u r B u s i n e s s A c c e l e r a t o r About AccelTeam Leading intelligence solutions provider led by highly qualified professionals Industry vertical
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
5 CMDB GOOD PRACTICES
5 CMDB GOOD PRACTICES - Preparing for Service Asset and Configuration Management Wade Palmer, Director of IT Services ii TABLE OF CONTENTS INTRODUCTION... 1 1. KEY CMDB ELEMENTS... 1 2. IT CHANGE MANAGEMENT
OVERVIEW OF JPSEARCH: A STANDARD FOR IMAGE SEARCH AND RETRIEVAL
OVERVIEW OF JPSEARCH: A STANDARD FOR IMAGE SEARCH AND RETRIEVAL Frédéric Dufaux, Michael Ansorge, and Touradj Ebrahimi Institut de Traitement des Signaux Ecole Polytechnique Fédérale de Lausanne (EPFL)
NIST Big Data Phase I Public Working Group
NIST Big Data Phase I Public Working Group Reference Architecture Subgroup May 13 th, 2014 Presented by: Orit Levin Co-chair of the RA Subgroup Agenda Introduction: Why and How NIST Big Data Reference
Domain Name Abuse Detection. Liming Wang
Domain Name Abuse Detection Liming Wang Outline 1 Domain Name Abuse Work Overview 2 Anti-phishing Research Work 3 Chinese Domain Similarity Detection 4 Other Abuse detection ti 5 System Information 2 Why?
POSITION DETAILS. Digitisation & Digital Services
HR191 JOB DESCRIPTION NOTES Forms must be downloaded from the UCT website: http://www.uct.ac.za/depts/sapweb/forms/forms.htm This form serves as a template for the writing of job descriptions. A copy of
From Data to Foresight:
Laura Haas, IBM Fellow IBM Research - Almaden From Data to Foresight: Leveraging Data and Analytics for Materials Research 1 2011 IBM Corporation The road from data to foresight is long? Consumer Reports
Predictive Analytics and Proactive Service. Dr. Detlef Nauck Research & Innovation, BT
Predictive Analytics and Proactive Service Dr. Detlef Nauck Research & Innovation, BT Big Data Improving Data Plumbing Operational Data Stove Pipe Challenge Analytics No Silver Bullet Autonomics Self-aware
KNOWLEDGENT WHITE PAPER. Big Data Enabling Better Pharmacovigilance
Big Data Enabling Better Pharmacovigilance INTRODUCTION Biopharmaceutical companies are seeing a surge in the amount of data generated and made available to identify better targets, better design clinical
Business Intelligence
Business Intelligence What is it? Why do you need it? This white paper at a glance This whitepaper discusses Professional Advantage s approach to Business Intelligence. It also looks at the business value
What does the future hold for predictive analytics?
/ What does the future hold for predictive analytics? It's tough to make predictions, especially about the future (Yogi Berra) Einat Shimoni EVP and senior analysts STKI IT Knowledge Integrators [email protected]
Data Virtualization A Potential Antidote for Big Data Growing Pains
perspective Data Virtualization A Potential Antidote for Big Data Growing Pains Atul Shrivastava Abstract Enterprises are already facing challenges around data consolidation, heterogeneity, quality, and
Qi Liu Rutgers Business School ISACA New York 2013
Qi Liu Rutgers Business School ISACA New York 2013 1 What is Audit Analytics The use of data analysis technology in Auditing. Audit analytics is the process of identifying, gathering, validating, analyzing,
SILOBREAKER ENTERPRISE SOFTWARE SUITE
INSIGHT AS A SERVICE SILOBREAKER ENTERPRISE SOFTWARE SUITE Fully customizable behind your firewall! Silobreaker Enterprise Software Suite is Silobreaker s flagship product. It is ideal for organizations
Big Data and Analytics in Government
Big Data and Analytics in Government Nov 29, 2012 Mark Johnson Director, Engineered Systems Program 2 Agenda What Big Data Is Government Big Data Use Cases Building a Complete Information Solution Conclusion
