1 / 29

Enterprise Semantic Infrastructure Workshop

Enterprise Semantic Infrastructure Workshop. Tom Reamy Chief Knowledge Architect KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com. Agenda. Introduction Semantic Infrastructure Basic Concepts – Content, People, Business Processes , Technology

curry
Download Presentation

Enterprise Semantic Infrastructure Workshop

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Enterprise Semantic Infrastructure Workshop Tom ReamyChief Knowledge Architect KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com

  2. Agenda • Introduction • Semantic Infrastructure • Basic Concepts – Content, People, Business Processes, Technology • Developing an Articulated Strategic Vision • Benefits of an Infrastructure Approach • Development and Maintenance of a Semantic Infrastructure • Semantic Tools – Capabilities & Acquisition Strategy • Development Processes & Best Practices • Semantic Infrastructure Applications • Enterprise Search • Search Based Applications & Beyond • Discussion &Questions / Lunch

  3. KAPS Group: General • Knowledge Architecture Professional Services • Virtual Company: Network of consultants – 8-10 • Partners – SAS, Smart Logic, Microsoft, Concept Searching, etc. • Consulting, Strategy, Knowledge architecture audit • Services: • Taxonomy/Text Analytics development, consulting, customization • Technology Consulting – Search, CMS, Portals, etc. • Evaluation of Enterprise Search, Text Analytics • Metadata standards and implementation • Knowledge Management: Collaboration, Expertise, e-learning • Applied Theory – Faceted taxonomies, complexity theory, natural categories

  4. Questions? Tom Reamytomr@kapsgroup.com KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com

  5. Semantic InfrastructureBasic Concepts & Benefits Tom ReamyChief Knowledge Architect KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com

  6. Agenda • Semantic Infrastructure – Basic Concepts • Content & Content Structure • People – Resources, Producers, Consumers • Semantics in Business Processes • Technology – Information, Text Analytics, Text Mining • Semantic Infrastructure – Strategic Foundation • Knowledge Audit Plus • Semantic Infrastructure – Benefits of an Infrastructure Approach • Infrastructure vs. Projects • Semantics vs. Technology • Conclusion

  7. Semantic Infrastructure: 4 Dimensions • Ideas – Content and Content Structure • Map of Content – Tribal language silos • Structure – articulate and integrate • People – Producers & Consumers • Communities, Users, Central Team • Activities – Business processes and procedures • Semantics, information needs and behaviors • Technology • CMS, Search, portals, text analytics • Applications – BI, CI, Semantic Web, Text Mining

  8. Semantic Infrastructure: 4 Dimensions Content and Content Structure • Map multiple types and sources of content • Structured and unstructured, internal and external • Beyond Metadata and Taxonomy • Keywords - poor performance • Dublin Core: hard to implement • Dublin Core: Too formal and not formal enough • Need structures that are more powerful and more flexible • Model of framework and smart modules • Framework • Faceted metadata • Simple taxonomies with intelligence – categorization & extraction • Ontology and Semantic Web • Best bets and user metadata

  9. Knowledge Structures • List of Keywords (Folksonomies) • Controlled Vocabularies, Glossaries • Thesaurus • Browse Taxonomies (Classification) • Formal Taxonomies • Faceted Classifications • Semantic Networks / Ontologies • Categorization Taxonomies • Topic Maps • Knowledge Maps

  10. A Framework of Knowledge Structures • Level 1 – keywords, glossaries, acronym lists, search logs • Resources, inputs into upper levels • Level 2 – Thesaurus, Taxonomies • Semantic Resource – foundation for applications, metadata • Level 3 – Facets, Ontologies, semantic networks, topic maps, Categorization Taxonomies • Applications • Level 4 – Knowledge maps • Strategic Resource

  11. Semantic Infrastructure: People • Communities / Tribes • Different languages • Different Cultures • Different models of knowledge • Two needs – support silos and inter-silo communication • Types of Communities • Formal and informal • Variety of subject matters – vaccines, research, sales • Variety of communication channels and information behaviors • Individual People – tacit knowledge / information behaviors • Consumers and Producers of information – In Depth • Map major types

  12. Semantic Infrastructure DimensionsPeople: Central Team • Central Team supported by software and offering services • Creating, acquiring, evaluating taxonomies, metadata standards, vocabularies, categorization taxonomies • Input into technology decisions and design – content management, portals, search • Socializing the benefits of metadata, creating a content culture • Evaluating metadata quality, facilitating author metadata • Analyzing the results of using metadata, how communities are using • Research metadata theory, user centric metadata • Facilitate knowledge capture in projects, meetings

  13. Semantic Infrastructure DimensionsPeople: Location of Team • KM/KA Dept. – Cross Organizational, Interdisciplinary • Balance of dedicated and virtual, partners • Library, Training, IT, HR, Corporate Communication • Balance of central and distributed • Industry variation • Pharmaceutical – dedicated department, major place in the organization • Insurance – Small central group with partners • Beans – a librarian and part time functions • Which design – knowledge architecture audit

  14. Semantic Infrastructure DimensionsTechnology Infrastructure • Enterprise platforms: from creation to retrieval to application • Semantic Infrastructure as the computer network • Applications – integrated meaning, not just data • Semantic Structure • Text Analytics – taxonomy, categorization, extraction • Integration Platforms – Content management, Search • Add structure to content at publication • Add structure to content at consumption

  15. Infrastructure Solutions: ResourcesTechnology • Text Mining • Both a structure technology – taxonomy development • And an application • Search Based Applications • Portals, collaboration, business intelligence, CRM • Semantics add intelligence to individual applications • Semantics add ability to communicate between applications • Creation – content management, innovation, communities of practice (CoPs) • When, who, how, and how much structure to add • Workflow with meaning, distributed subject matter experts (SMEs) and centralized teams

  16. Infrastructure Solutions: ElementsBusiness Processes • Platform for variety of information behaviors & needs • Research, administration, technical support, etc. • Types of content, questions • Subject Matter Experts – Info Structure Amateurs • Web Analytics – Feedback for maintenance & refine • Enhance Basic Processes – Integrated Workflow • Enhance Both Efficiency and Quality • Enhance support processes – education, training • Develop new processes and capabilities • External Content – Text mining, smarter categorization

  17. Semantic Infrastructure: The start and foundationKnowledge Architecture Audit • Knowledge Map - Understand what you have, what you are, what you want • The foundation of the foundation • Contextual interviews, content analysis, surveys, focus groups, ethnographic studies, Text Mining • Category modeling – “Intertwingledness” -learning new categories influenced by other, related categories • Natural level categories mapped to communities, activities • Novice prefer higher levels • Balance of informative and distinctiveness • Living, breathing, evolving foundation is the goal

  18. Knowledge Architecture Audit:Knowledge Map

  19. Semantic Infrastructure Enterprise Taxonomies: Wrong Approach • Very difficult to develop - $100,000’s • Even more difficult to apply • Teams of Librarians or Authors/SME’s • Cost versus Quality • Problems with maintenance • Cost rises in proportion with granularity • Difficulty of representing user perspective • Social media requires a framework – doesn’t create one • Tyranny of the majority, madness of crowds

  20. Semantic Infrastructure Content Structures: New Approach • Simple Subject Taxonomy structure • Easy to develop and maintain • Combined with categorization capabilities • Added power and intelligence • Combined with Faceted Metadata • Dynamic selection of simple categories • Allow multiple user perspectives • Can’t predict all the ways people think • Monkey, Banana, Panda • Combined with ontologies and semantic data • Multiple applications – Text mining to Search • Combine search and browse

  21. Semantic Infrastructure Design: People, Technology, Business Processes • People (Central) – tagging, evaluating tags, fine tune rules and taxonomy • People (Users) - social tagging, suggestions • Software - Text analytics, auto-categorization, entity extraction • Software – Search, Content Management, Portals-Intranets • Hybrid model – combination of automatic and human • Business Processes – integrated search with activities, text analytics based applications , intelligent routing

  22. Semantic Infrastructure BenefitsWhy Semantic Infrastructure • Unstructured content = 80% or more of all content • Limited Usefullness – database of unstructured content • Need to add (infra) structure to make it useful • Information is about meaning, semantics • Search is about semantics, not technology • Can’t Google do it? • Link Algorithm – human act of meaning • Doesn’t work in enterprise • 1,000’s of editors adding meaning • New technology makes it possible – Text Analytics

  23. Semantic Infrastructure BenefitsGeneral Time and Productivity • Time Savings – Too Big to Believe? • Lost time searching - $12M a year per 1,000 • Cost of recreating lost information - $4.5M per 1,000 • Cost of not finding the right information – Years? • 10% improvement = $1.2M a year per 10,000 • Making Metrics Human • Number of addition FTE’s at no cost (enhanced productivity) • Savings passed on to clients • Spreadsheet of extra activities (ex. Training – working smarter • Build a more integrated, smarter organization

  24. Semantic Infrastructure BenefitsReturn on Existing Technology • Enterprise Content Management - $100K - $2M • Underperforming – year after year, new initiative every 5 years • ECM as part of a Platform • Enhance search – improved metadata, especially keywords • A Hybrid Model of ECM and Metadata • Authors, editors-librarians, Text Analytics • Submit a document -> TA generates metadata, extracts concepts, Suggests categorization (keywords) -> author OK’s (easy task) -> librarian monitors for issues • Use results as input into analytics

  25. Semantic Infrastructure BenefitsReturn on Existing Technology • Enterprise Search - $100K - $2M • Cost Effective and good quality keywords / categorization • More metadata – faceted navigation • Work with ECM or dynamically generate categorization at search results time • Rich results – summaries, categorization, facets like date, people, organizations, etc. Tag clouds and related topics • Foundation for Search Based Applications – all need semantics

  26. Semantic Infrastructure BenefitsInfrastructure vs. Projects • Strategic foundation vs. Short Term • Integrated solution – CM and Search and Applications • Better results • Avoid duplication • Semantics • Small comparative cost • Needed to get full value from all the above • ROI – asking the wrong question • What is ROI for having an HR department? • What is ROI for organizing your company?

  27. Semantic Infrastructure BenefitsSelling the Benefits • CTO, CFO, CEO • Doesn’t understand – wrong language • Semantics is extra – harder work will overcome • Not business critical • Not tangible – accounting bias • Does not believe the numbers • Believes he/she can do it • Need stories and figures that will connect • Need to understand their world – every case is different • Need to educate them – Semantics is tough and needed

  28. Conclusion • Semantic Infrastructure is not just a project • Foundation and Platform for multiple projects • Semantic Infrastructure is not just about search • It is about language, cognition, and applied intelligence • Strategic Vision (articulated by K Map) is essential • Even for your under the radar vocabulary project • Paying attention to theory is practical • Benefits are enormous – believe it! • Think Big, Start Small, Scale Fast • Initial Project = +10%, All Other Projects = -50%

  29. Questions? Tom Reamytomr@kapsgroup.com KAPS Group Knowledge Architecture Professional Services http://www.kapsgroup.com

More Related