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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

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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