SlideShare a Scribd company logo
Cohasset Associates, Inc.

                                                                  NOTES

                        Big Data
                    Requires Big ERM
                     Session 17 – Panel Discussion


                 Richard Fisher,
                 Cohasset Associates, Inc.
                 and Panel Members




                                Panelists
           EMC
               Christopher D. Preston
                Senior Director, Integrated Technology Strategy
           IBM Corporation
               Jake Frazier, JD, MBA,
                Worldwide Information Lifecycle
                Governance Solutions
           Autonomy, an HP Company
               Manu Chadha
                Vice President of Sales, Americas




                                  Topics

                 Where      and What is Big Data?
                 What Does it Mean to ERM
                 Focus - Case Study
                                   y
                 Challenges

                 Audience Questions




2012 Managing Electronic Records
Conference                                                                17.1
Cohasset Associates, Inc.

                                                                     NOTES
                 BIG DATA - Where is it?
           Have you done your “Data Map” yet?
               “Buzz word” since 2006 changes to
                Rule 26(f) of Federal Rules of Civil Procedure
               Inventory or Roadmap of Electronically Stored
                Information (ESI)
           “Big” is relative
               Gigabytes, terabytes, petabytes, exabytes –
                Depends on size of organization and
                velocity/volume of data




                   Big Data – What Is It?
                                 Examples
           Large scale e-commerce transactions
           Many large-volume business operation databases or
            file-based data records, e.g., HR, accounting,
            procurement, etc.
            procurement etc
           Social network communications, postings
           Internet text & documents
           Scientific research
           Medical records
           Other?




            What Does it Mean to ERM?
           To ERM, Big Data is NOT:
               Business analytics/trends – a typical IT focus for
                Big Data
           To ERM, Big Data is:
               Gigabytes, terabytes, petabytes, exabytes of
                data with few or no retention controls
               Determining where/how to apply retention:
                 Archive set
                 File or data set
                 Data transaction
             Attributes    for search and disposition




2012 Managing Electronic Records
Conference                                                                   17.2
Cohasset Associates, Inc.

                                                                          NOTES
                  Big Data – Case Study
             PeopleSoft HRIS - Current Situation
               340 Gigabytes growing at 15%/yr.
               17,000 tables
               20 tables with 10,000,000 rows of data
                                 ,   ,
               Over 33,000 data elements
           No current destruction for eligible
            records/rows/transactions.
           Archiving is done, but does not solve
            disposition problem.




               Big Data – Case Study?
             Database Element Retention
                      Type of Employee Data            Retention Period
               Name                                       25 years
               Pay Data                                   25 years
               Pay Summary (e.g., W-2)                    50 years
               Demographics (address changes, etc.)       10 years
               Assignments (job class, grade, salary      10 years
               changes, etc.)
               Time/Attendance Data                       7 years




                  Big Data – Case Study
             Requirements:
               Retention periods vary by need –
                from 8 to 25 years or more.
               At what level can retention be applied:
                  Data base record
                  Data base row
                  Database transaction
               How to index/search archived data for
                disposition purposes.
               What are industry best practices?




2012 Managing Electronic Records
Conference                                                                        17.3
Cohasset Associates, Inc.

                                                               NOTES
         General Requirements & Challenges
           Manage retention/disposition at various
            “record” levels:
             Archive set
             File or data set
             Data transaction
           Automation may be mandatory for
            classification, retention & disposition in order
            to handle the record volume.
           Use “Categorization” or other “Analytics” to
            classify/apply retention?




                            Big Data




                       Questions?




2012 Managing Electronic Records
Conference                                                             17.4

More Related Content

What's hot

Intel Cloud summit: Big Data by Nick Knupffer
Intel Cloud summit: Big Data by Nick KnupfferIntel Cloud summit: Big Data by Nick Knupffer
Intel Cloud summit: Big Data by Nick Knupffer
IntelAPAC
 
Week 5
Week 5Week 5
Week 5
adrenal
 
Big data data lake and beyond
Big data data lake and beyond Big data data lake and beyond
Big data data lake and beyond
Rajesh Kumar
 
Forrester
ForresterForrester
Forrester
Frits Bussemaker
 
Enterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and OptionsEnterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and Options
Boris Otto
 
EDM in the process industry
EDM in the process industryEDM in the process industry
EDM in the process industry
Glen Alleman
 
Is your business ready for open source databases? | Sysfore
Is your business ready for open source databases? | SysforeIs your business ready for open source databases? | Sysfore
Is your business ready for open source databases? | Sysfore
Sysfore Technologies
 
Chapter 5 data resource management
Chapter 5 data resource managementChapter 5 data resource management
Chapter 5 data resource management
AG RD
 
Challenges Ahead for Converging Financial Data
Challenges Ahead for Converging Financial DataChallenges Ahead for Converging Financial Data
Challenges Ahead for Converging Financial Data
Edward Curry
 
Wikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data CurationWikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data Curation
Edward Curry
 
Lecture6 is353(ea&data viewpoint )
Lecture6 is353(ea&data viewpoint )Lecture6 is353(ea&data viewpoint )
Lecture6 is353(ea&data viewpoint )
Taibah University, College of Computer Science & Engineering
 
Bird&Bird
Bird&BirdBird&Bird
Bird&Bird
Frits Bussemaker
 
Solutions Storage
Solutions StorageSolutions Storage
Solutions Storage
Jim Chalil
 
Jahima Edrm Imrm
Jahima Edrm ImrmJahima Edrm Imrm
Jahima Edrm Imrm
williamshorn
 
Data Curation at the New York Times
Data Curation at the New York TimesData Curation at the New York Times
Data Curation at the New York Times
Edward Curry
 
Enterprise Master Data Architecture
Enterprise Master Data ArchitectureEnterprise Master Data Architecture
Enterprise Master Data Architecture
Boris Otto
 
Next Generation BI: current state and changing product assumptions
Next Generation BI: current state and changing product assumptionsNext Generation BI: current state and changing product assumptions
Next Generation BI: current state and changing product assumptions
mark madsen
 
Approximate Semantic Matching of Heterogeneous Events
Approximate Semantic Matching of Heterogeneous EventsApproximate Semantic Matching of Heterogeneous Events
Approximate Semantic Matching of Heterogeneous Events
Edward Curry
 
Enterprise Integration in a nutshell (16:9)
Enterprise Integration in a nutshell (16:9)Enterprise Integration in a nutshell (16:9)
Enterprise Integration in a nutshell (16:9)
Dmytro Golodiuk
 
Document Management at East Carolina University
Document Management at East Carolina UniversityDocument Management at East Carolina University
Document Management at East Carolina University
Paul Gipson
 

What's hot (20)

Intel Cloud summit: Big Data by Nick Knupffer
Intel Cloud summit: Big Data by Nick KnupfferIntel Cloud summit: Big Data by Nick Knupffer
Intel Cloud summit: Big Data by Nick Knupffer
 
Week 5
Week 5Week 5
Week 5
 
Big data data lake and beyond
Big data data lake and beyond Big data data lake and beyond
Big data data lake and beyond
 
Forrester
ForresterForrester
Forrester
 
Enterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and OptionsEnterprise Master Data Architecture: Design Decisions and Options
Enterprise Master Data Architecture: Design Decisions and Options
 
EDM in the process industry
EDM in the process industryEDM in the process industry
EDM in the process industry
 
Is your business ready for open source databases? | Sysfore
Is your business ready for open source databases? | SysforeIs your business ready for open source databases? | Sysfore
Is your business ready for open source databases? | Sysfore
 
Chapter 5 data resource management
Chapter 5 data resource managementChapter 5 data resource management
Chapter 5 data resource management
 
Challenges Ahead for Converging Financial Data
Challenges Ahead for Converging Financial DataChallenges Ahead for Converging Financial Data
Challenges Ahead for Converging Financial Data
 
Wikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data CurationWikipedia (DBpedia): Crowdsourced Data Curation
Wikipedia (DBpedia): Crowdsourced Data Curation
 
Lecture6 is353(ea&data viewpoint )
Lecture6 is353(ea&data viewpoint )Lecture6 is353(ea&data viewpoint )
Lecture6 is353(ea&data viewpoint )
 
Bird&Bird
Bird&BirdBird&Bird
Bird&Bird
 
Solutions Storage
Solutions StorageSolutions Storage
Solutions Storage
 
Jahima Edrm Imrm
Jahima Edrm ImrmJahima Edrm Imrm
Jahima Edrm Imrm
 
Data Curation at the New York Times
Data Curation at the New York TimesData Curation at the New York Times
Data Curation at the New York Times
 
Enterprise Master Data Architecture
Enterprise Master Data ArchitectureEnterprise Master Data Architecture
Enterprise Master Data Architecture
 
Next Generation BI: current state and changing product assumptions
Next Generation BI: current state and changing product assumptionsNext Generation BI: current state and changing product assumptions
Next Generation BI: current state and changing product assumptions
 
Approximate Semantic Matching of Heterogeneous Events
Approximate Semantic Matching of Heterogeneous EventsApproximate Semantic Matching of Heterogeneous Events
Approximate Semantic Matching of Heterogeneous Events
 
Enterprise Integration in a nutshell (16:9)
Enterprise Integration in a nutshell (16:9)Enterprise Integration in a nutshell (16:9)
Enterprise Integration in a nutshell (16:9)
 
Document Management at East Carolina University
Document Management at East Carolina UniversityDocument Management at East Carolina University
Document Management at East Carolina University
 

Viewers also liked

M12S09 - ERM Case Law: The Latest News, Trends, and Issues
M12S09 - ERM Case Law: The Latest News, Trends, and IssuesM12S09 - ERM Case Law: The Latest News, Trends, and Issues
M12S09 - ERM Case Law: The Latest News, Trends, and Issues
MER Conference
 
M12S01 - The Information Tsunami: Where We Are and How to Move Forward
M12S01 - The Information Tsunami: Where We Are and How to Move ForwardM12S01 - The Information Tsunami: Where We Are and How to Move Forward
M12S01 - The Information Tsunami: Where We Are and How to Move Forward
MER Conference
 
M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...
M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...
M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...
MER Conference
 
M12S07 - Retention & ESI - Paths to Success - Part Two
M12S07 - Retention & ESI - Paths to Success - Part TwoM12S07 - Retention & ESI - Paths to Success - Part Two
M12S07 - Retention & ESI - Paths to Success - Part Two
MER Conference
 
M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems
 M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems
M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems
MER Conference
 
M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...
M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...
M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...
MER Conference
 
M12S13 - RIM for the Next Generation: A Call to Action
 M12S13 - RIM for the Next Generation: A Call to Action M12S13 - RIM for the Next Generation: A Call to Action
M12S13 - RIM for the Next Generation: A Call to Action
MER Conference
 
M12S08 - Transforming RIM to 'Responsible Information Management'
M12S08 - Transforming RIM to 'Responsible Information Management'M12S08 - Transforming RIM to 'Responsible Information Management'
M12S08 - Transforming RIM to 'Responsible Information Management'
MER Conference
 
M12S18 - Records and Information Management: What Healthcare Should be Learni...
M12S18 - Records and Information Management: What Healthcare Should be Learni...M12S18 - Records and Information Management: What Healthcare Should be Learni...
M12S18 - Records and Information Management: What Healthcare Should be Learni...
MER Conference
 
M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...
M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...
M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...
MER Conference
 
M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...
M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...
M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...
MER Conference
 

Viewers also liked (12)

Doc1
Doc1Doc1
Doc1
 
M12S09 - ERM Case Law: The Latest News, Trends, and Issues
M12S09 - ERM Case Law: The Latest News, Trends, and IssuesM12S09 - ERM Case Law: The Latest News, Trends, and Issues
M12S09 - ERM Case Law: The Latest News, Trends, and Issues
 
M12S01 - The Information Tsunami: Where We Are and How to Move Forward
M12S01 - The Information Tsunami: Where We Are and How to Move ForwardM12S01 - The Information Tsunami: Where We Are and How to Move Forward
M12S01 - The Information Tsunami: Where We Are and How to Move Forward
 
M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...
M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...
M12S05 - CASE STUDY: Leveraging Content Analytics to Kick-Start your Informat...
 
M12S07 - Retention & ESI - Paths to Success - Part Two
M12S07 - Retention & ESI - Paths to Success - Part TwoM12S07 - Retention & ESI - Paths to Success - Part Two
M12S07 - Retention & ESI - Paths to Success - Part Two
 
M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems
 M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems
M12S19 - S19 - CASE STUDY: e-RIM Success with Structured Data Systems
 
M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...
M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...
M12S21 - "Corporate Alzheimer's": The Impending Crisis in Accessing Digital R...
 
M12S13 - RIM for the Next Generation: A Call to Action
 M12S13 - RIM for the Next Generation: A Call to Action M12S13 - RIM for the Next Generation: A Call to Action
M12S13 - RIM for the Next Generation: A Call to Action
 
M12S08 - Transforming RIM to 'Responsible Information Management'
M12S08 - Transforming RIM to 'Responsible Information Management'M12S08 - Transforming RIM to 'Responsible Information Management'
M12S08 - Transforming RIM to 'Responsible Information Management'
 
M12S18 - Records and Information Management: What Healthcare Should be Learni...
M12S18 - Records and Information Management: What Healthcare Should be Learni...M12S18 - Records and Information Management: What Healthcare Should be Learni...
M12S18 - Records and Information Management: What Healthcare Should be Learni...
 
M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...
M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...
M12S06 - Will Technology-Assisted Predictive Modeling and Auto-Classification...
 
M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...
M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...
M12S02 - ERM Software: Historic Timeline, Lessons Learned, Current Issues, Fu...
 

Similar to M12S17 - Big Data Requires Big ERM!

Big data - what, why, where, when and how
Big data - what, why, where, when and howBig data - what, why, where, when and how
Big data - what, why, where, when and how
bobosenthil
 
Ibm Data Management 4 Mar 2007
Ibm Data Management 4 Mar 2007Ibm Data Management 4 Mar 2007
Ibm Data Management 4 Mar 2007
brzaaap
 
Big data? No. Big Decisions are What You Want
Big data? No. Big Decisions are What You WantBig data? No. Big Decisions are What You Want
Big data? No. Big Decisions are What You Want
Stuart Miniman
 
INTRODUCTION TO BIG DATA AND HADOOP
INTRODUCTION TO BIG DATA AND HADOOPINTRODUCTION TO BIG DATA AND HADOOP
INTRODUCTION TO BIG DATA AND HADOOP
Dr Geetha Mohan
 
Big data peresintaion
Big data peresintaion Big data peresintaion
Big data peresintaion
ahmed alshikh
 
01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI
Achmad Solichin
 
Intel Cloud Summit: Big Data
Intel Cloud Summit: Big DataIntel Cloud Summit: Big Data
Intel Cloud Summit: Big Data
IntelAPAC
 
Customer summit - big data (final)
Customer summit  - big data (final)Customer summit  - big data (final)
Customer summit - big data (final)
Anand Deshpande
 
Business Intelligence.pptx
Business Intelligence.pptxBusiness Intelligence.pptx
Business Intelligence.pptx
CindyDVUOWMalaysia
 
IRJET - Big Data Analysis its Challenges
IRJET - Big Data Analysis its ChallengesIRJET - Big Data Analysis its Challenges
IRJET - Big Data Analysis its Challenges
IRJET Journal
 
Best practices and trends in people soft
Best practices and trends in people softBest practices and trends in people soft
Best practices and trends in people soft
Hazelknight Media & Entertainment Pvt Ltd
 
Unit 1
Unit 1Unit 1
Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...
Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...
Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...
Kevin Pledge
 
1
11
AWSome Data Visibility with Information Map
AWSome Data Visibility with Information MapAWSome Data Visibility with Information Map
AWSome Data Visibility with Information Map
Veritas Technologies LLC
 
Digital Destiny
Digital DestinyDigital Destiny
Digital Destiny
Brad Houston
 
Big Data and BI Tools - BI Reporting for Bay Area Startups User Group
Big Data and BI Tools - BI Reporting for Bay Area Startups User GroupBig Data and BI Tools - BI Reporting for Bay Area Startups User Group
Big Data and BI Tools - BI Reporting for Bay Area Startups User Group
Scott Mitchell
 
Analytics for actuaries cia
Analytics for actuaries ciaAnalytics for actuaries cia
Analytics for actuaries cia
Kevin Pledge
 
Unit 2
Unit 2Unit 2
Why Data is Becoming the Most Valuable Asset Companies Posses
Why Data is Becoming the Most Valuable Asset Companies PossesWhy Data is Becoming the Most Valuable Asset Companies Posses
Why Data is Becoming the Most Valuable Asset Companies Posses
OSTHUS
 

Similar to M12S17 - Big Data Requires Big ERM! (20)

Big data - what, why, where, when and how
Big data - what, why, where, when and howBig data - what, why, where, when and how
Big data - what, why, where, when and how
 
Ibm Data Management 4 Mar 2007
Ibm Data Management 4 Mar 2007Ibm Data Management 4 Mar 2007
Ibm Data Management 4 Mar 2007
 
Big data? No. Big Decisions are What You Want
Big data? No. Big Decisions are What You WantBig data? No. Big Decisions are What You Want
Big data? No. Big Decisions are What You Want
 
INTRODUCTION TO BIG DATA AND HADOOP
INTRODUCTION TO BIG DATA AND HADOOPINTRODUCTION TO BIG DATA AND HADOOP
INTRODUCTION TO BIG DATA AND HADOOP
 
Big data peresintaion
Big data peresintaion Big data peresintaion
Big data peresintaion
 
01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI01. Introduction to Data Mining and BI
01. Introduction to Data Mining and BI
 
Intel Cloud Summit: Big Data
Intel Cloud Summit: Big DataIntel Cloud Summit: Big Data
Intel Cloud Summit: Big Data
 
Customer summit - big data (final)
Customer summit  - big data (final)Customer summit  - big data (final)
Customer summit - big data (final)
 
Business Intelligence.pptx
Business Intelligence.pptxBusiness Intelligence.pptx
Business Intelligence.pptx
 
IRJET - Big Data Analysis its Challenges
IRJET - Big Data Analysis its ChallengesIRJET - Big Data Analysis its Challenges
IRJET - Big Data Analysis its Challenges
 
Best practices and trends in people soft
Best practices and trends in people softBest practices and trends in people soft
Best practices and trends in people soft
 
Unit 1
Unit 1Unit 1
Unit 1
 
Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...
Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...
Advanced Business Analytics for Actuaries - Canadian Institute of Actuaries J...
 
1
11
1
 
AWSome Data Visibility with Information Map
AWSome Data Visibility with Information MapAWSome Data Visibility with Information Map
AWSome Data Visibility with Information Map
 
Digital Destiny
Digital DestinyDigital Destiny
Digital Destiny
 
Big Data and BI Tools - BI Reporting for Bay Area Startups User Group
Big Data and BI Tools - BI Reporting for Bay Area Startups User GroupBig Data and BI Tools - BI Reporting for Bay Area Startups User Group
Big Data and BI Tools - BI Reporting for Bay Area Startups User Group
 
Analytics for actuaries cia
Analytics for actuaries ciaAnalytics for actuaries cia
Analytics for actuaries cia
 
Unit 2
Unit 2Unit 2
Unit 2
 
Why Data is Becoming the Most Valuable Asset Companies Posses
Why Data is Becoming the Most Valuable Asset Companies PossesWhy Data is Becoming the Most Valuable Asset Companies Posses
Why Data is Becoming the Most Valuable Asset Companies Posses
 

Recently uploaded

spot a liar (Haiqa 146).pptx Technical writhing and presentation skills
spot a liar (Haiqa 146).pptx Technical writhing and presentation skillsspot a liar (Haiqa 146).pptx Technical writhing and presentation skills
spot a liar (Haiqa 146).pptx Technical writhing and presentation skills
haiqairshad
 
Benner "Expanding Pathways to Publishing Careers"
Benner "Expanding Pathways to Publishing Careers"Benner "Expanding Pathways to Publishing Careers"
Benner "Expanding Pathways to Publishing Careers"
National Information Standards Organization (NISO)
 
Chapter wise All Notes of First year Basic Civil Engineering.pptx
Chapter wise All Notes of First year Basic Civil Engineering.pptxChapter wise All Notes of First year Basic Civil Engineering.pptx
Chapter wise All Notes of First year Basic Civil Engineering.pptx
Denish Jangid
 
A Visual Guide to 1 Samuel | A Tale of Two Hearts
A Visual Guide to 1 Samuel | A Tale of Two HeartsA Visual Guide to 1 Samuel | A Tale of Two Hearts
A Visual Guide to 1 Samuel | A Tale of Two Hearts
Steve Thomason
 
Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"
Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"
Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"
National Information Standards Organization (NISO)
 
Gender and Mental Health - Counselling and Family Therapy Applications and In...
Gender and Mental Health - Counselling and Family Therapy Applications and In...Gender and Mental Health - Counselling and Family Therapy Applications and In...
Gender and Mental Health - Counselling and Family Therapy Applications and In...
PsychoTech Services
 
Beyond Degrees - Empowering the Workforce in the Context of Skills-First.pptx
Beyond Degrees - Empowering the Workforce in the Context of Skills-First.pptxBeyond Degrees - Empowering the Workforce in the Context of Skills-First.pptx
Beyond Degrees - Empowering the Workforce in the Context of Skills-First.pptx
EduSkills OECD
 
Juneteenth Freedom Day 2024 David Douglas School District
Juneteenth Freedom Day 2024 David Douglas School DistrictJuneteenth Freedom Day 2024 David Douglas School District
Juneteenth Freedom Day 2024 David Douglas School District
David Douglas School District
 
Standardized tool for Intelligence test.
Standardized tool for Intelligence test.Standardized tool for Intelligence test.
Standardized tool for Intelligence test.
deepaannamalai16
 
Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...
Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...
Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...
imrankhan141184
 
BBR 2024 Summer Sessions Interview Training
BBR  2024 Summer Sessions Interview TrainingBBR  2024 Summer Sessions Interview Training
BBR 2024 Summer Sessions Interview Training
Katrina Pritchard
 
skeleton System.pdf (skeleton system wow)
skeleton System.pdf (skeleton system wow)skeleton System.pdf (skeleton system wow)
skeleton System.pdf (skeleton system wow)
Mohammad Al-Dhahabi
 
HYPERTENSION - SLIDE SHARE PRESENTATION.
HYPERTENSION - SLIDE SHARE PRESENTATION.HYPERTENSION - SLIDE SHARE PRESENTATION.
HYPERTENSION - SLIDE SHARE PRESENTATION.
deepaannamalai16
 
REASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdf
REASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdfREASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdf
REASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdf
giancarloi8888
 
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
GeorgeMilliken2
 
Lifelines of National Economy chapter for Class 10 STUDY MATERIAL PDF
Lifelines of National Economy chapter for Class 10 STUDY MATERIAL PDFLifelines of National Economy chapter for Class 10 STUDY MATERIAL PDF
Lifelines of National Economy chapter for Class 10 STUDY MATERIAL PDF
Vivekanand Anglo Vedic Academy
 
Electric Fetus - Record Store Scavenger Hunt
Electric Fetus - Record Store Scavenger HuntElectric Fetus - Record Store Scavenger Hunt
Electric Fetus - Record Store Scavenger Hunt
RamseyBerglund
 
NEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptx
NEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptxNEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptx
NEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptx
iammrhaywood
 
Educational Technology in the Health Sciences
Educational Technology in the Health SciencesEducational Technology in the Health Sciences
Educational Technology in the Health Sciences
Iris Thiele Isip-Tan
 
How Barcodes Can Be Leveraged Within Odoo 17
How Barcodes Can Be Leveraged Within Odoo 17How Barcodes Can Be Leveraged Within Odoo 17
How Barcodes Can Be Leveraged Within Odoo 17
Celine George
 

Recently uploaded (20)

spot a liar (Haiqa 146).pptx Technical writhing and presentation skills
spot a liar (Haiqa 146).pptx Technical writhing and presentation skillsspot a liar (Haiqa 146).pptx Technical writhing and presentation skills
spot a liar (Haiqa 146).pptx Technical writhing and presentation skills
 
Benner "Expanding Pathways to Publishing Careers"
Benner "Expanding Pathways to Publishing Careers"Benner "Expanding Pathways to Publishing Careers"
Benner "Expanding Pathways to Publishing Careers"
 
Chapter wise All Notes of First year Basic Civil Engineering.pptx
Chapter wise All Notes of First year Basic Civil Engineering.pptxChapter wise All Notes of First year Basic Civil Engineering.pptx
Chapter wise All Notes of First year Basic Civil Engineering.pptx
 
A Visual Guide to 1 Samuel | A Tale of Two Hearts
A Visual Guide to 1 Samuel | A Tale of Two HeartsA Visual Guide to 1 Samuel | A Tale of Two Hearts
A Visual Guide to 1 Samuel | A Tale of Two Hearts
 
Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"
Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"
Jemison, MacLaughlin, and Majumder "Broadening Pathways for Editors and Authors"
 
Gender and Mental Health - Counselling and Family Therapy Applications and In...
Gender and Mental Health - Counselling and Family Therapy Applications and In...Gender and Mental Health - Counselling and Family Therapy Applications and In...
Gender and Mental Health - Counselling and Family Therapy Applications and In...
 
Beyond Degrees - Empowering the Workforce in the Context of Skills-First.pptx
Beyond Degrees - Empowering the Workforce in the Context of Skills-First.pptxBeyond Degrees - Empowering the Workforce in the Context of Skills-First.pptx
Beyond Degrees - Empowering the Workforce in the Context of Skills-First.pptx
 
Juneteenth Freedom Day 2024 David Douglas School District
Juneteenth Freedom Day 2024 David Douglas School DistrictJuneteenth Freedom Day 2024 David Douglas School District
Juneteenth Freedom Day 2024 David Douglas School District
 
Standardized tool for Intelligence test.
Standardized tool for Intelligence test.Standardized tool for Intelligence test.
Standardized tool for Intelligence test.
 
Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...
Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...
Traditional Musical Instruments of Arunachal Pradesh and Uttar Pradesh - RAYH...
 
BBR 2024 Summer Sessions Interview Training
BBR  2024 Summer Sessions Interview TrainingBBR  2024 Summer Sessions Interview Training
BBR 2024 Summer Sessions Interview Training
 
skeleton System.pdf (skeleton system wow)
skeleton System.pdf (skeleton system wow)skeleton System.pdf (skeleton system wow)
skeleton System.pdf (skeleton system wow)
 
HYPERTENSION - SLIDE SHARE PRESENTATION.
HYPERTENSION - SLIDE SHARE PRESENTATION.HYPERTENSION - SLIDE SHARE PRESENTATION.
HYPERTENSION - SLIDE SHARE PRESENTATION.
 
REASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdf
REASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdfREASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdf
REASIGNACION 2024 UGEL CHUPACA 2024 UGEL CHUPACA.pdf
 
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
What is Digital Literacy? A guest blog from Andy McLaughlin, University of Ab...
 
Lifelines of National Economy chapter for Class 10 STUDY MATERIAL PDF
Lifelines of National Economy chapter for Class 10 STUDY MATERIAL PDFLifelines of National Economy chapter for Class 10 STUDY MATERIAL PDF
Lifelines of National Economy chapter for Class 10 STUDY MATERIAL PDF
 
Electric Fetus - Record Store Scavenger Hunt
Electric Fetus - Record Store Scavenger HuntElectric Fetus - Record Store Scavenger Hunt
Electric Fetus - Record Store Scavenger Hunt
 
NEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptx
NEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptxNEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptx
NEWSPAPERS - QUESTION 1 - REVISION POWERPOINT.pptx
 
Educational Technology in the Health Sciences
Educational Technology in the Health SciencesEducational Technology in the Health Sciences
Educational Technology in the Health Sciences
 
How Barcodes Can Be Leveraged Within Odoo 17
How Barcodes Can Be Leveraged Within Odoo 17How Barcodes Can Be Leveraged Within Odoo 17
How Barcodes Can Be Leveraged Within Odoo 17
 

M12S17 - Big Data Requires Big ERM!

  • 1. Cohasset Associates, Inc. NOTES Big Data Requires Big ERM Session 17 – Panel Discussion Richard Fisher, Cohasset Associates, Inc. and Panel Members Panelists  EMC  Christopher D. Preston Senior Director, Integrated Technology Strategy  IBM Corporation  Jake Frazier, JD, MBA, Worldwide Information Lifecycle Governance Solutions  Autonomy, an HP Company  Manu Chadha Vice President of Sales, Americas Topics  Where and What is Big Data?  What Does it Mean to ERM  Focus - Case Study y  Challenges  Audience Questions 2012 Managing Electronic Records Conference 17.1
  • 2. Cohasset Associates, Inc. NOTES BIG DATA - Where is it?  Have you done your “Data Map” yet?  “Buzz word” since 2006 changes to Rule 26(f) of Federal Rules of Civil Procedure  Inventory or Roadmap of Electronically Stored Information (ESI)  “Big” is relative  Gigabytes, terabytes, petabytes, exabytes – Depends on size of organization and velocity/volume of data Big Data – What Is It? Examples  Large scale e-commerce transactions  Many large-volume business operation databases or file-based data records, e.g., HR, accounting, procurement, etc. procurement etc  Social network communications, postings  Internet text & documents  Scientific research  Medical records  Other? What Does it Mean to ERM?  To ERM, Big Data is NOT:  Business analytics/trends – a typical IT focus for Big Data  To ERM, Big Data is:  Gigabytes, terabytes, petabytes, exabytes of data with few or no retention controls  Determining where/how to apply retention: Archive set File or data set Data transaction  Attributes for search and disposition 2012 Managing Electronic Records Conference 17.2
  • 3. Cohasset Associates, Inc. NOTES Big Data – Case Study  PeopleSoft HRIS - Current Situation  340 Gigabytes growing at 15%/yr.  17,000 tables  20 tables with 10,000,000 rows of data , ,  Over 33,000 data elements  No current destruction for eligible records/rows/transactions.  Archiving is done, but does not solve disposition problem. Big Data – Case Study?  Database Element Retention Type of Employee Data Retention Period Name 25 years Pay Data 25 years Pay Summary (e.g., W-2) 50 years Demographics (address changes, etc.) 10 years Assignments (job class, grade, salary 10 years changes, etc.) Time/Attendance Data 7 years Big Data – Case Study  Requirements:  Retention periods vary by need – from 8 to 25 years or more.  At what level can retention be applied: Data base record Data base row Database transaction  How to index/search archived data for disposition purposes.  What are industry best practices? 2012 Managing Electronic Records Conference 17.3
  • 4. Cohasset Associates, Inc. NOTES General Requirements & Challenges  Manage retention/disposition at various “record” levels:  Archive set  File or data set  Data transaction  Automation may be mandatory for classification, retention & disposition in order to handle the record volume.  Use “Categorization” or other “Analytics” to classify/apply retention? Big Data Questions? 2012 Managing Electronic Records Conference 17.4