Semantic Business Management November 5, 2009 Paul Haley Automata, Inc. (412) 716-6420.

Slides:



Advertisements
Similar presentations
May 23, 2004OWL-S straw proposal for SWSL1 OWL-S Straw Proposal Presentation to SWSL Committee May 23, 2004 David Martin Mark Burstein Drew McDermott Deb.
Advertisements

Event and Process Semantics will Rule RuleML, 2008 Paul Haley Automata, Inc. (412) Copyright © 2008, Automata, Inc.
Andrea Maurino Web Service Design Methodology Batini, De Paoli, Maurino, Grega, Comerio WP2-WP3 Roma 24/11/2005.
Author: Graeme C. Simsion and Graham C. Witt Chapter 12 Physical Database Design.
Author: Graeme C. Simsion and Graham C. Witt Chapter 6 Primary Keys and Identity.
A Semantic Web Approach to Digital Rights Management Roberto García González.
1 Copyright ©2007 Sandpiper Software, Inc. Vocabulary, Ontology & Specification Management at OMG Elisa Kendall Sandpiper Software
OMV Ontology Metadata Vocabulary April 10, 2008 Peter Haase.
4. May 2007 Workshop on Dynamic Service Level AgreementsPage 1 Dynamic SLA Negotiation in BREIN Bastian Koller High Performance Computing Center Stuttgart.
Requirements. UC&R: Phase Compliance model –RIF must define a compliance model that will identify required/optional features Default.
OMG standards and related glossary entries. Proposed glossary entries Meta-model Production rule PRR SOA JSR 94 Business rules, SBVR and related entries.
A Web Rules WG Charter Focus Strawman Proposal Version 1.1, April 30, 2005 This Version Prepared by: Benjamin Grosof, Harold Boley, Michael Kifer, and.
Business Process Management (BPM)
Maritime Knowledge Base Semantic Application Semantic Exchange Workshop February 17th, 2009 Eric Freese Semantic Web, XML & Geospatial Technologist Copyright.
Copyright © 2006 Data Access Technologies, Inc. Open Source eGovernment Reference Architecture Approach to Semantic Interoperability Cory Casanave, President.
Page 1 Copyright © 2010 Data Access Technologies, Inc. Model Driven Solutions May 2009 Cory Casanave Architecture of Services SOA for E-Government Conference.
Some ideas …. Task XBRL as a business performance and financial reporting standard (with its various taxonomies). 2.
Language Specification using Metamodelling Joachim Fischer Humboldt University Berlin LAB Workshop Geneva
Visual Model-based Software Development EUD-Net Workshop, Pisa, Italy September 23 rd, 2002 University of Paderborn Gregor Engels, Stefan Sauer University.
© 2009 IBM Corporation iEA16 Defining and Aligning Requirements using System Architect and DOORs Paul W. Johnson CEO / President Pragmatica Innovations.
Copyright © 2013, Oracle and/or its affiliates. All rights reserved. Insert Information Protection Policy Classification from Slide 12 1.
Agenda for Discussion Agenda for Discussion Risk Management Stakeholder Analysis project solutions for your world Gina Davidovic, PMP
March 1, 2009 Dr. Muhammed Al-Mulhem 1 ICS 482 Natural Language Processing Semantics (Chapter 17) Muhammed Al-Mulhem March 1, 2009.
© 2011 TIBCO Software Inc. All Rights Reserved. Confidential and Proprietary. Towards a Model-Based Characterization of Data and Services Integration Paul.
Traffic Analyst Complete Network Visibility. © 2013 Impact Technologies Inc., All Rights ReservedSlide 2 Capacity Calibration Definitive Requirements.
Aligning Business and IT Models in Service-Oriented Architectures using BPMN and SoaML Brian Elvesæter, Dima Panfilenko, Sven Jacobi & Christian Hahn MDI2010.
Models 1/22 Broadbent Geoffrey (1973). Design in Architecture: architecture and the human sciences, John Wiley and Sons, London E = mc 2.
Lecture 6: Software Design (Part I)
CH-4 Ontologies, Querying and Data Integration. Introduction to RDF(S) RDF stands for Resource Description Framework. RDF is a standard for describing.
Intelligent Architectures for Electronic Commerce Part 1.5: Symbolic Reasoning Agents.
© 2014 Fair Isaac Corporation. Confidential. This presentation is provided for the recipient only and cannot be reproduced or shared without Fair Isaac.
Improving System Safety through Agent-Supported User/System Interfaces: Effects of Operator Behavior Model Charles SANTONI & Jean-Marc MERCANTINI (LSIS)
Business Analytics BI applications to support human and automated decision making Business Analytics—predict future outcomes Decision Support Systems.
Representations and Models: SysML and Beyond David Long Vitech Corporation SEDC
By Ahmet Can Babaoğlu Abdurrahman Beşinci.  Suppose you want to buy a Star wars DVD having such properties;  wide-screen ( not full-screen )  the extra.
Using the Semantic Web to Construct an Ontology- Based Repository for Software Patterns Scott Henninger Computer Science and Engineering University of.
OASIS Reference Model for Service Oriented Architecture 1.0
ReQuest (Validating Semantic Searches) Norman Piedade de Noronha 16 th July, 2004.
Semantic Web Technologies Lecture # 2 Faculty of Computer Science, IBA.
Presented to: By: Date: Federal Aviation Administration Enterprise Information Management SOA Brown Bag #2 Sam Ceccola – SOA Architect November 17, 2010.
What is Business Intelligence? Business intelligence (BI) –Range of applications, practices, and technologies for the extraction, translation, integration,
PowerPoint Presentation for Dennis & Haley Wixom, Systems Analysis and Design Copyright 2000 © John Wiley & Sons, Inc. All rights reserved. Slide 1 Process.
Katanosh Morovat.   This concept is a formal approach for identifying the rules that encapsulate the structure, constraint, and control of the operation.
Towards Semantic Business Intelligence Semantic Technology 2010, San Francisco Paul Haley Automata, Inc. (412)
APPA Business & Financial Conference 2006 September 18, 2015 Business Intelligence Solutions for the Workplace Enhancing Analytical Reporting Presented.
The Semantic Web William M Baker
Some Thoughts to Consider 1 What is so ‘artificial’ about Artificial Intelligence? Just what are ‘Knowledge Based Systems’ anyway? Why would we ever want.
Semantic Web - an introduction By Daniel Wu (danielwujr)
EXtreme Semantics Realize the Potential Today Dave Hollander CTO, Contivo Standards –Co-Founder of XML –Co-Chair W3C XML Schema Working.
Chapter 5: Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization DECISION SUPPORT SYSTEMS AND BUSINESS.
Trustworthy Semantic Webs Dr. Bhavani Thuraisingham The University of Texas at Dallas Lecture #4 Vision for Semantic Web.
Of 33 lecture 1: introduction. of 33 the semantic web vision today’s web (1) web content – for human consumption (no structural information) people search.
Service-Oriented Architecture: An Approach to Information Sharing Regional Information Sharing Conference San Diego, CA November 28, 2006 Scott Came SEARCH.
Copyright © 2015, 2012, and 2009 Pearson Education, Inc. 1 Section 6.4 Fundamental Theorem of Calculus Applications of Derivatives Chapter 6.
1 Ontolog OOR-BioPortal Comparative Analysis Todd Schneider 15 October 2009.
Service Oriented Architecture in the presence of information structure (audio of this talk)audio of this talk Presenter: Paul S Prueitt, PhD:
OWL Web Ontology Language Summary IHan HSIAO (Sharon)
1© Copyright 2012 EMC Corporation. All rights reserved. Turning Big Data into Competitive Advantage “Big data will represent a hugely disruptive force.
BI Performance Management. Business Issues Too much information: Create confusions Multiple version of Truth: Lack of Trusted information: Incomplete,
Presented to: Why Step Ahead Solutions. © 2012| Step Ahead Solutions, Inc. Do not distribute without prior permission. Why BI? Key Take Away Don’t.
OMG Meeting – March 2012 November 30 th Requirements and test cases Preliminary meta-model.
OMG Architecture Ecosystem SIG Enterprise Data World 2011.
Semantic Web. If you can't explain it simply, you don't understand it well enough Everything should be made as simple as possible, but not simpler Great.
Building the Semantic Web
Event and Process Semantics will Rule
Knowledge Representation
Chapter 10: Process Implementation with Executable Models
Decision Automation using Models , Services and Dashboards
Keynote Address Roadmap for Rules, Semantics, and Business Paul Haley Automata, Inc.
Model-Driven Semantic Web Rule Engineering
Presentation transcript:

Semantic Business Management November 5, 2009 Paul Haley Automata, Inc. (412)

Copyright © 2009, Automata, Inc. Forecasting beyond rules for… Model-driven architecture Service-oriented architecture Complex event processing Business process modeling Business activity monitoring Predictive analytics Business intelligence Corporate performance management 2

The ontology is the model Copyright © 2009, Automata, Inc.3

Business rule realities Derived from artificial intelligence Primarily based on production rules Substantially limited to forward chaining –Backward chaining avoids combinatoric deduction Goals rarely explicit; no automatic sub-goaling –Lacking deductive capability, authors bear the burden No ability to solve problems or optimize solutions –No search to achieve goals or evaluate alternatives Not enough AI or operations research 4

Copyright © 2009, Automata, Inc. Business needs more AI Natural logic: –Only full page color ads may run on the last page of the Times. Some business rules to enforce constraints: –If an ad that is not full page is to be run on the last page of the Times then refuse the run. –If an ad that is not color is to be run on the last page of the Times then refuse the run. Business rules for user interfaces: –If asking for the size of an ad that is to be run on the last page of the Times then the only choice should be full page. –If asking for the type of an ad that is to be run on the last page of the Times then full page should not be a choice. More general business rules (without if): –Ads run on the last page of the Times must be full page. –Ads run on the last page of the Times must be color. 5

Copyright © 2009, Automata, Inc. Semantic technology: the next step Semantics – focus on meaning (not structure) Resource Description Format (RDF) –Graphs are the universal data structure –Metadata is just more data in the graph –World-wide identification of nodes, links More powerful, logical deduction –Description logic (e.g., OWL-DL) –Logic programming (e.g., Prolog) –Predicate calculus (i.e., first-order logic) –HiLog (higher-order syntax for FOL) More powerful ontology (OWL) 6

Incremental steps forward Copyright © 2009, Automata, Inc.7 Production Rule Representation –no functional advance –may be adequate for some interchange Two very quick slides on: –Semantics of Business Vocabulary & Rules –World-wide web Rule Interchange Format Then back to the big picture

OMG SBVR Copyright © 2009, Automata, Inc.8 Semantics –Business Rules –Vocabulary logical aspects are a huge step forward but no ontology – no meanings and no runtime options needs more linguistic competence

W3C RIF Copyright © 2009, Automata, Inc.9 Think of RIF as first-order logic in XML a dumb version covers production rules SBVR and RIF overlap on logic SBVR textual, RIF formal syntax Weak vocabulary in SBVR, none in RIF Weak ontology in SBVR, strong in W3C

Copyright © 2009, Automata, Inc. Forecasting beyond rules for… Model-driven architecture Service-oriented architecture Complex event processing Business process modeling Business activity monitoring Predictive analytics Business intelligence Corporate performance management 10

Copyright © 2009, Automata, Inc. BI, BPM & CEP realities Flowchart metaphor dominates Events are second class citizens Asynchronous activity is awkward State within the business is poorly defined Policies enforced only at certain points Policy-based decisions are context free Governance is not part of the process Business transformation is like coding 11

Copyright © 2009, Automata, Inc. BAM, PA, BI, and CPM realities Activities have to be modeled (again?) –How long does it take or how much does it cost X to do Y? Decisions have to be represented. –How else can we audit or learn from what we have done? Predictive analytics doesnt know what to look for –will remain a skilled art until the meaning of data is clear Business intelligence is doesnt know what matters –will display the intelligence of analyst, not its own, until… Corporate performance management has no intelligence –will remain insight-free BI until the goals and objectives of business are clear 12

Ontology needed for BPMN –events and processes BMM –goals and objectives With ontology of rules, the process, and motivation: –Predictive analytics can automate intelligent investigation understanding data produces better variables understanding data produces better hypotheses understanding objectives produces better KPIs –BI produces more pertinent dashboards and reports –CPM becomes more insightful and pertinent PA & BI identify variance that is relevant Sharing ontology across the business stack is key Copyright © 2009, Automata, Inc.13

Events are primitive Events occur. –They happen. –They are temporal. –Processes are a kind of event. –Actions are processes. Its all about the verbs. –Tense is context for BPM & CEP –De-verbal nouns are not just objects! See the blog for all the details An SOA request is an action, process, and event. Semantic SOA is coming Copyright © 2009, Automata, Inc.14

Service-oriented architecture Why was it in the abstract? An SOA request –is an action –is a process –is an event Semantic SOA is coming –the externalization of IT will continue so are intelligent web agents Copyright © 2009, Automata, Inc.15

The ontology is the model Copyright © 2009, Automata, Inc.16 and the process definition the rest is the logic including requirements and policies and other rules