Organizational Memory: Issues in Design & Implementation Sree Nilakanta May 1, 2000.

Slides:



Advertisements
Similar presentations
GMD German National Research Center for Information Technology Darmstadt University of Technology Perspectives and Priorities for Digital Libraries Research.
Advertisements

By: Mr Hashem Alaidaros MIS 211 Lecture 4 Title: Data Base Management System.
1.Data categorization 2.Information 3.Knowledge 4.Wisdom 5.Social understanding Which of the following requires a firm to expend resources to organize.
1 Knowledge Management Session 4. 2 Objectives 1.What is knowledge management? Why do businesses today need knowledge management programs and systems.
Faculty of Computer Science © 2006 CMPUT 605February 11, 2008 A Data Warehouse Architecture for Clinical Data Warehousing Tony R. Sahama and Peter R. Croll.
Adopt & Adapt Tips on Enterprise Data Management Annette Pence September 10, 2009 MITRE.
Chapter 9 DATA WAREHOUSING Transparencies © Pearson Education Limited 1995, 2005.
DATA WAREHOUSING.
Data and Knowledge Management
Business Intelligence System September 2013 BI.
Data Warehouse Toolkit Introduction. Data Warehouse Bill Inmon's paradigm: Data warehouse is one part of the overall business intelligence system. An.
Data Warehousing: Defined and Its Applications Pete Johnson April 2002.
A Cloud-based Decision Intelligence Application ntegrated ecision ptimization enter idocidoc.
Microsoft Business Intelligence Gustavo Santade Business Intelligence Project Manager Improving Business Insight Building a cube using Analysis Services.
© 2003, Prentice-Hall Chapter Chapter 2: The Data Warehouse Modern Data Warehousing, Mining, and Visualization: Core Concepts by George M. Marakas.
Data Conversion to a Data warehouse Presented By Sanjay Gunasekaran.
ETL By Dr. Gabriel.
MDC Open Information Model West Virginia University CS486 Presentation Feb 18, 2000 Lijian Liu (OIM:
By N.Gopinath AP/CSE. Why a Data Warehouse Application – Business Perspectives  There are several reasons why organizations consider Data Warehousing.
Designing Knowledge Infrastructures Organizations and Society in Information Systems (OASIS) 2004 Workshop December, 12th, 2004 Ronald Maier Dept. of Management.
Understanding Data Warehousing
Database Systems – Data Warehousing
Ihr Logo Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang.
A National Resource Working in the Public Interest © 2006 The MITRE Corporation. All rights reserved. KM at MITRE Jean Tatalias KM TEM, December 2007.
Human Resource Management Lecture 27 MGT 350. Last Lecture What is change. why do we require change. You have to be comfortable with the change before.
Knowledge Management Business Intelligence Decision Making
Knowledge Management By Dr.S.Sridhar,Ph.D., RACI(Paris),RZFM(Germany),RMR(USA),RIEEEProc. web-site :
Decision Support System Definition A Decision Support System is an interactive computer-based system or subsystem that helps people use computer communications,
@ ?!.
Data Warehouse Overview September 28, 2012 presented by Terry Bilskie.
Ch.3 Data, Text, and Document Management
Business Intelligence Zamaneh Jahed. What is Business Intelligence? Business Intelligence (BI) is a broad category of applications and technologies for.
Marakas: Decision Support Systems, 2nd Edition © 2003, Prentice-Hall Chapter Chapter 10: The Data Warehouse Decision Support Systems in the 21 st.
Data warehousing and online analytical processing- Ref Chap 4) By Asst Prof. Muhammad Amir Alam.
2 Copyright © Oracle Corporation, All rights reserved. Defining Data Warehouse Concepts and Terminology.
BUSINESS DRIVEN TECHNOLOGY
Chapter 3 DECISION SUPPORT SYSTEMS CONCEPTS, METHODOLOGIES, AND TECHNOLOGIES: AN OVERVIEW Study sub-sections: , 3.12(p )
Fall CIS 764 Database Systems Design L18.3 Business Intelligence Aspects (aka Decision support systems) (Slides support.
1 Reviewing Data Warehouse Basics. Lessons 1.Reviewing Data Warehouse Basics 2.Defining the Business and Logical Models 3.Creating the Dimensional Model.
Information Builders : SmartMart Seon-Min Rhee Visualization & Simulation Lab Dept. of Computer Science & Engineering Ewha Womans University.
Datawarehouse A sneak preview. 2 Data Warehouse Approach An old idea with a new interest: Cheap Computing Power Special Purpose Hardware New Data Structures.
MANAGING DATA RESOURCES ~ pertemuan 7 ~ Oleh: Ir. Abdul Hayat, MTI.
Data Warehouse. Group 5 Kacie Johnson Summer Bird Washington Farver Jonathan Wright Mike Muchane.
Next Back MAP 3-1 Management Information Systems for the Information Age Copyright 2002 The McGraw-Hill Companies, Inc. All rights reserved Chapter 3 Data.
Chapter 5 DATA WAREHOUSING Study Sections 5.2, 5.3, 5.5, Pages: & Snowflake schema.
Create Content Capture Content Review Content Edit Content Version Content Version Content Translate Content Translate Content Format Content Transform.
A Resource Discovery Service for the Library of Texas Requirements, Architecture, and Interoperability Testing William E. Moen, Ph.D. Principal Investigator.
IT and Network Organization Ecommerce. IT and Network Organization OPTIMIZING INTERNAL COLLABORATIONS IN NETWORK ORGANIZATIONS.
Project Management May 30th, Team Members Name Project Role Gint of Communications Sai
Pertemuan 16 Materi : Buku Wajib & Sumber Materi :
Why BI….? Most companies collect a large amount of data from their business operations. To keep track of that information, a business and would need to.
Advanced Database Concepts
KNOWLEDGE MANAGEMENT UNIT II KNOWLEDGE MANAGEMENT AND TECHNOLOGY 1.
1 Copyright © Oracle Corporation, All rights reserved. Business Intelligence and Data Warehousing.
Knowledge management By Dhanalakshmi. Contents  Knowledge & knowledge management  Knowledge creation process  Knowledge management system  Knowledge.
1 Adaptive Workflow to Support Knowledge Intensive Tasks Ann Macintosh AIAI The University of Edinburgh
MBA/1092/10 MBA/1093/10 MBA/1095/10 MBA/1114/10 MBA/1115/10.
Data Warehouse – Your Key to Success. Data Warehouse A data warehouse is a  subject-oriented  Integrated  Time-variant  Non-volatile  Restructure.
SAP BI – The Solution at a Glance : SAP Business Intelligence is an enterprise-class, complete, open and integrated solution.
BUSINESS INTELLIGENCE. The new technology for understanding the past & predicting the future … BI is broad category of technologies that allows for gathering,
KNOWLEDGE MANAGEMENT (KM) Session # 33. Corporate Intranet A Conceptual Model INTRANET Production Team— New Product Budget Director— New Product Knowledge.
1 2. Knowledge Management. 2  Structuring of knowledge enables effective and efficient problem solving dynamic learning strategic planning decision making.
نمايندگي استان يزد. نمايندگي استان يزد طراحی کسب و کار الکترونیکی ارائه کننده : محسن افسر قره باغ.
Business Intelligence Overview
Building a Data Warehouse
Manajemen Data (2) PTI Pertemuan 6.
Information Technology for Management
Data Warehouse Overview September 28, 2012 presented by Terry Bilskie
Data Warehousing Concepts
Analytics, BI & Data Integration
Presentation transcript:

Organizational Memory: Issues in Design & Implementation Sree Nilakanta May 1, 2000

Organizational Memory Stored information from an organization’s history that can be brought to bear on present decisions. The information is stored as a consequence of implementing decisions to which they refer, by individual recollections, and through shared interpretations. –Walsh and Ungson (1991), AMR, vol. 16.

Assumptions of OM Organizations functionally resemble Information Processing Systems Organizations are Interpretative Systems Organizations have distinct Ontological Systems

Imperatives for OM Retention Structure (Locus of OM) –Individuals, Culture, Transformations, Structures, Ecology Processing Architecture –Acquisition, Retention, Retrieval Impact on Organizational Outcomes & Performance –Use, Misuse, Abuse

OM Research Suggestions Phase I –Assess structure of OM Phase II –Parse the Process Phase III –Assess Consequences

Organizational Memory Recorder Knowledge Percolator Composer & Builder Knowledge Navigator & Retriever

Enterprise Information Portal A Vehicle for OM Business intelligence Content management Data warehouse Data management

Enterprise Information Portal

EIP Design Parameters

EIP Applications

Post Millenium Priorities

Business Intelligence

Business Intelligence Applications leverage enterprise database sources to provide timely, accurate and targeted information across the enterprise. Query, Reporting, On-Line Analytical Processing (OLAP), Data Mining and Analytical Applications.

Content Management

Content Management systems capture, archive, index, manage, combine and distribute internal and external information to create a corporate knowledge repository.

Content Management Case Study http//

Data Warehouse/Data Mart Data Warehouses and Marts create an environment where data is stored, managed and optimized for analysis.

Data Management Data Management systems perform Extract, Transform and Load (ETL) tasks, clean data and facilitate scheduling, administration and metadata management for Data Warehouses and Marts.

Document Workflow Management

Knowledge Management

Source: Communications of AIS Volume 1, 1999 Article 7 13 Knowledge Management Systems: Issues, Challenges, and Benefits by Alavi and Leidner

Knowledge Management Characterized as the problem of identifying the personal and collective knowledge existing in an organization and making it available to the relevant people. –Success depends on understanding unstructured information –Innovation depends on searching knowledge domain

Key Concerns Related to Knowledge Management Source: Communications of AIS Volume 1, 1999 Article 7 13 Knowledge Management Systems: Issues, Challenges, and Benefits by Alavi and Leidner

Market Opportunity

Papers Tools for Organizational Decision Support: The Design and Development of an Organizational Memory System –Introduced a model for capturing and parsing organizational memory –HICSS 1997

Meeting Maker

Papers Design & Implementation of Data Warehouses Using Metadata –the paper presents a CASE tool designed to generate the SQL queries necessary to build a warehouse from a set of operational relational databases –HICSS 1998, J of IST (review)

Data Warehouse Tool

Papers PROMIS: A Profiler of Organizational Memory and Institutional Systems –present an information retrieval model for searching and retrieving distributed information. –IRMA 1998

Papers Data Warehouse Generation: The Role of Mobile Agents in Capturing Data from Disparate and Multiple Sources. –The topic of integrating data from multiple heterogeneous sources has been studied in this paper. A system based on the Voyager 2.0 mobile agent infrastructure is implemented in JAVA –IRMA 1999

Papers Supporting Objects in the Data Warehouse Environment –we introduce a model for an object-oriented data warehouse. The warehouse model is based on materializing object views and the current prototype has been implemented on top of the POET object-oriented database system. –IEEE 1998, JDB (revision)

Papers Supporting Organizational Knowledge Management with Agents –The present work is focused on making the vast amount of unstructured text more useful to committees. An agent environment has been designed and implemented. –IRMA 2000

Papers A Collaborative Work Group-Based Model for Supporting Organizational Knowledge Management –The present work looks at making corporate knowledge more useful to organizations by focusing on supporting collaborative work groups. We focus on presenting our knowledge model and briefly look at the prototypes used to test the feasibility of our model.

Software and Patent Disclosures Meeting Capture (1997) Meeting Playback (1997) Information Extractor, PROMIS (1997) Warehouse Query Translator (1999) Meeting Analyzer (1999) Knowledge Management & Discovery Model of OM (1999)

Quo Vadis? OM/KM Center for Research & Support IT Leadership Technology Transfer