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Working with Data Managers

Working with Data Managers. Renee Woodten Frost Internet2 Middleware Initiative University of Michigan. Topics. Vignette Data: Role in Directory Implementation Data Policy Issues Key Data Needs Identifiers Directory data eduPerson schema Strategies and Recommendations. Vignette.

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Working with Data Managers

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  1. Working with Data Managers Renee Woodten Frost Internet2 Middleware Initiative University of Michigan

  2. Topics • Vignette • Data: Role in Directory Implementation • Data Policy Issues • Key Data Needs • Identifiers • Directory data • eduPerson schema • Strategies and Recommendations

  3. Vignette Sam is taking a class in geneticsat Alpha U and needs to do some research for a paper. At lunch, he goes online to access a restricted EBSCO database AU shares with Beta U. A window pops up in the browser asking if it’s okay for AU to give EBSCO information about his status --- only students from subscribing institutions can access the database. He clicks ok, knowing that only his status is passed, not his name or contact information. The browser then loads the restricted website.

  4. Vignette Illustrates • Privacy trust • Sam controls personal information flow • Administrative and security services integration • Inter-campus access • University vouches for and acts on behalf of Sam

  5. Demands on IT Revealed • One stop for university services integrated with course management systems • Expensive library databases shared with other schools by joint agreement • Browser or desktop preferences follow you • Submission and/or maintenance of information online • Privacy protection

  6. Important questions, Important data • Are the people using these services who they claim to be? • Are they a member of our campus community? • Have they been given permission? • Is their privacy being protected?

  7. Pause for Some Terminology • Identity: set of attributes about you. • Attributes: specific information stored about you. • Authentication: process used to prove your identity. Often a login process. • Authorization: process of determining if policy permits an intended action to proceed. • Directories: where an identity’s basic characteristics are stored

  8. Enterprise Directory • Anti-stovepipe architecture that can provide authentication, attribute, & group services to applications. • Adds value by improving cost/benefit of online services and by improving security. • A new and visible flow of administrative data..

  9. Definitions: Enterprise Directory Services Enterprise Directory services - where your electronic identifiers are reconciled and basic characteristics are kept • Very quick lookup function • Machine address, voice mail box, email box location, address, campus identifiers

  10. Enterprise Directory • Determine application-driven requirements for authentication, attribute, and group services and then design these four stages to meet the requirements: • Data Sources • Metadirectory Processes • Directory Services • Applications

  11. UoM Core Middleware Stages Data sources Metadirectory processes Directories Applications

  12. Nature of Directory Work • Technology • Establish campus-wide services: name space, authentication • Build an enterprise directory service • Populate the directory from source systems • Enable applications to use the directory • Policies and Politics • Clarify relationships between individuals and institution • Determine who manages, who can update and who can see common data • Structure information access and use rules between departments and central administrative units • Reconcile business rules and practices

  13. Data Policy Issues • Cross organizational data sharing • Enabling a centralized repository • Identifying authoritative sources • Building trust • Privacy constraints – FERPA, HIPAA • New procedures • Security • Audit ability • Accountability

  14. Stage 1: Analyze Data Sources • Common Identifiers on campus • Identify systems of record and data owners • Determine data and data access needed • Determine frequency of the feed • Provide Standard Data Collection Model • Define database load procedure and produce audit log

  15. Definitions: Identifiers Identifiers– your electronic identification • Multiple names and corresponding information in multiple places • Single unique identifier for each authorized user • Names and information in other systems can be cross-linked to it • Admin systems, library systems, building systems

  16. Definitions: Authentication Authentication – maps the physical you to an electronic identifier • Password authentication most common • Security need should drive authentication method • Distance learning and inter-campus applications

  17. UUID Student and/or emplid Person registry ID Account login ID Enterprise-LAN ID Student ID card Net ID Email address Library/departmental ID Publicly visible ID (and pseudo-SSN) Pseudonymous ID Major campus identifiers

  18. General Identifier Characteristics • Uniqueness (within a given context) • Dumb vs intelligent (i.e. whether subfields have meaning) • Readability (machine vs human vs device) • Affordance (centrally versus locally provided) • Resolver approach (how an identifier is mapped to associated object) • Metadata (both associated with the assignment and resolution of an identifier) • Persistence (permanence of relationship between identifier and specific object)

  19. General Identifier Characteristics • Granularity (the degree to which identifier denotes a collection or component) • Format (checkdigits) • Versions (can defining characteristics of identifier change over time) • Capacity (size limitations imposed on the domain or object range) • Extensibility (the capability to intelligently extend one identifier to be the basis for another identifier).

  20. Important Characteristics • Semantics and syntax- what it names and how does it name it • Domain - who issues and over what space is identifier unique • Revocation - can the subject ever be given a different value for the identifier • Reassignment - can the identifier ever be given to another subject • Opacity - is the real world subject easily deduced from the identifier - privacy and use issues

  21. Identifier Mapping Process • Map campus identifiers against a canonical set of functional needs • For each identifier, establish its key characteristics, including revocation, reassignment, privileges, and opacity • Shine a light on some of the shadowy underpinnings of middleware • A key first step towards the loftier middleware goals

  22. Identifier Mapping Template • Model Identifier Mapping and examples: http://middleware.internet2.edu/earlyadopters/identifier-mappings/

  23. Stage 1: Analyze Data Sources • Common Identifiers on campus • Identify systems of record and data owners/managers • Determine data and data access needed • Determine frequency of the feed/updates • Provide Standard Data Collection Model • Define database load procedure and produce audit log

  24. Cross Organizational Data Sharing • Information gathering across silos • What are the systems of record? The authoritative source of the data? • Who are the owners/stewards/managers? • Centralized vs Distributed • Environment • Cooperative vs Competitive • Uncovering skeletons • Normalizing the data

  25. Systems of Record • Data (ex,names,addresses) exist in multiple systems; which is authoritative? • Individual can have several roles; which is primary? • Student and alum • Student and staff/teaching assistant • How is maintenance, especially purge process, handled?

  26. Data Stewards/Managers • Registrar • Human Resources • Alumni Records • Library Records • Schools and Colleges • Telecommunications • [Potentially, many] others

  27. Requires Education and Communication with Data Stewards/Managers • Need to understand data as a resource • Need to understand the concept of authoritative data and be willing to collaborate • Need to understand the value of data sharing and appropriate access • Need to be reassured that proper security/privacy being adhered to

  28. Institutional Environment Impact • Public vs. Private Institutions • Institutional Vision vs. Local Control • Change Readiness • Strategic vs. Tactical Planning • Role of IT • Policy and Legal Constraints • Resource Determination/Allocation

  29. Institutional Environment: Organizational Culture/Structure • Competitive or collaborative • Challenges “ownership” • Can feel disenfranchised • Anticipate clear needs and keep everyone on the same page = educate and communicate • Willingness to change • Technical infrastructure • Formally or informally, organizational structure may need to change too

  30. Institutional Environment:Policy and Legal Constraints • Ownership of Data • Is data stewardship well-defined? • Is it centralized or distributed? • Access to Data • Formally or loosely governed? • Access authority centralized or distributed? • Data Administration • Centrally managed or distributed? • FERPA and HIPAA compliant?

  31. Data Administration • Definition: the development and application of formal rules and methods to the management of an institution’s data resource • Management of any resource: establish policy and procedures and monitor compliance

  32. University of MichiganData Resource Management Policy • Institutional data resource is a University asset • Data resource will be safeguarded/protected • Data will be shared based on institutional policies • Data will be managed as an institutional resource • Institutional data will be identified and defined • Databases will be developed based on functional needs • Information quality will be actively managed

  33. University of Michigan Data Resource Guidelines • Defines data management roles • Introduces concept of “Institutional Database” • Provides guidelines for: collection & maintenance, validation & correction, manipulation, modification, and reporting, security, access, data availability and integration, and documentation (includes data definitions and level of security)

  34. University of MichiganData Administration • Philosophy: the value of data as an institutional resource is increased through the widespread and appropriate use; the value is diminished through misuse, misinterpretation, or unnecessary restriction. • University “owns” the data, stewardship is identified and maintained

  35. Without Data Administration . . And/or high level exec sponsorship • the burden of data manager and data source identification and negotiation often falls to IT leadership • requires leadtime, energy, communication and negotiation skills, and continual education and communication

  36. Approach • Dependent on institutional environment • Dependent on drivers • Dependent on project methods (often related to environment) • Campus strategic project • Application requirement • Stealth

  37. Primary Tasks to be Completed • Select attributes/data for inclusion • Negotiate for access to data • Determine data access policy • Develop familiarity with semantics of desired data elements • Develop familiarity with business processes that maintain them • Define database load procedure, with standard feeds, and produce audit log

  38. What Data is Needed? • The object classes/schema and source data to populate directories are determined by the applications to be directory enabled. • Common initial or early applications include white pages and email routing which require: • identifiers • directory information (name, addresses, phone numbers, email addresses,etc) - found in standard directory schemas such as inetOrgPerson • eduPerson attributes

  39. “Good” Practices for Attributes • Use standards schema: inetOrgPerson, eduPerson, localPerson • Never repurpose an fields defined as standards (RFC-defined). Add new attributes - adding attributes is easier than thought

  40. A directory object class intended to support inter-institutional applications Fills gaps in traditional directory schema For existing attributes, states good practices where known Specifies several new attributes and controlled vocabulary to use as values Provides suggestions on how to assign values, but leaves it to the institution to choose Latest version released with NMI components in October, 2002 eduPerson

  41. eduPerson inherits attributes from Person, inetOrgPerson Some of those attributes need conventions about controlled vocabulary (e.g. telephones) Some of those attributes need ambiguity resolved via a consistent interpretation (e.g. email address) Some of the attributes need standards around indexing and search (e.g. compound surnames) Many of those attributes need access control and privacy decisions (e.g. JPEG photo, email address, etc.) Upper Class Attributes Issues

  42. eduPersonAffiliation eduPersonEntitlement eduPersonNickname eduPersonOrgDN eduPersonOrgUnitDN eduPersonPrimaryAffiliation eduPersonPrimaryOrgUnitDN eduPersonPrincipalName eduPerson Attributes

  43. Multi-valued list of relationships an individual has with institution Controlled vocabulary includes: faculty, staff, student, alum, member, affiliate, employee Applications that use: Shibboleth digital libraries, Directory of Directories for Higher Education eduPersonAffiliation

  44. Single-valued attribute that would be the status put on a name badge at a conference Controlled vocabulary includes: faculty, staff, student, alum, member, affiliate Determined by institutional business rules Applications that use: white pages, restricted access sites eduPersonPrimaryAffiliation

  45. Strategies • Executive Dictate (overt or stealth) • Data Administration • Fully functioning unit or philosophy itself • Data managers committee • Education/communication/negotiation • Data administration concepts • Vignettes/scenarios (relevant to data manager) • Institutional drivers (external,internal, apps) • Case studies from other universities • NMI/Internet2 materials

  46. Key Planning Recommendations • Understand the institutional environment, including data policies and business rules, and the value of the enterprise directory to your institution • Build in time to collect and map/resolve identifiers • Allow considerable time upfront to work with/educate data stewards, possibly developing policy • Think standards • Be prepared for political wounds from the possible reduction of duchies in data and policies • Give priority to both education and communication plans (continual and consistent)

  47. Strategies You Used? • Discussion • Questions

  48. More Information • Middleware: • http://middleware.internet2.edu • http://www.nmi-edit.org • My contact information: • Rwfrost@internet2.edu

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