Title: Managing Knowledge in the Digital Firm
1Managing Knowledge inthe Digital Firm
Chapter 11
2Objectives
- What is knowledge management? Why do businesses
today need knowledge management programs and
systems for knowledge management? - What types of systems are used for
enterprise-wide knowledge management? How do they
provide value for organizations? - How do knowledge work systems provide value for
firms? What are the major types of knowledge work
systems?
3Objectives
- What are the business benefits of using
intelligent techniques for knowledge management? - What major management issues and problems are
raised by knowledge management systems? How can
firms obtain value from their investments in
knowledge management systems?
4Management Challenges
- Designing knowledge systems that genuinely
enhance organizational performance - Identifying and implementing appropriate
organizational applications for artificial
intelligence
5The Knowledge Management Landscape
Important Dimensions of Knowledge
- Knowledge
- Wisdom
- Tacit knowledge
- Explicit knowledge
6The Knowledge Management Landscape
U.S enterprise knowledge management software
revenues, 2001-2006
Figure 11-1
7The Knowledge Management Landscape
Important Dimensions of Knowledge
- Knowledge
- Is a firm asset
- Has different forms
- Has a location
- Is situational
8The Knowledge Management Landscape
Organizational Learning and Knowledge Management
- Organizational learning Creation of new standard
operating procedures and business processes
reflecting experience - Knowledge management Set of processes developed
in an organization to create, gather, store,
disseminate, and apply knowledge
9The Knowledge Management Landscape
The knowledge management value chain
Figure 11-2
10The Knowledge Management Landscape
The Knowledge Management Value Chain
- Knowledge acquisition
- Knowledge storage
- Knowledge dissemination
- Knowledge application
11The Knowledge Management Landscape
The Knowledge Management Value Chain
- Chief Knowledge Officer (CKO) Senior executive
in charge of the organization's knowledge
management program - Communities of Practice (COP) Informal groups
who may live or work in different locations but
share a common profession
12Types of Knowledge Management Systems
Types of Knowledge Management Systems
- Enterprise Knowledge Management Systems General
purpose, integrated, and firm-wide systems to
collect, store and disseminate digital content
and knowledge - Knowledge Work Systems (KWS) Information systems
that aid knowledge workers in the creation and
integration of new knowledge in the organization - Intelligent Techniques Datamining and artificial
intelligence technologies used for discovering,
codifying, storing, and extending knowledge
13Types of Knowledge Management Systems
Major types of knowledge management systems
Figure 11-3
14Enterprise-Wide Knowledge Management Systems
Structured Knowledge Systems
- Structured knowledge
- Semistructured knowledge
- Knowledge repository
- Knowledge network
15Enterprise-Wide Knowledge Management Systems
Enterprise-wide knowledge management systems
Figure 11-4
16Enterprise-Wide Knowledge Management Systems
KWorlds knowledge domain
Figure 11-5
17Enterprise-Wide Knowledge Management Systems
KPMG knowledge system processes
Figure 11-6
18Enterprise-Wide Knowledge Management Systems
Window on Technology
- DaimlerChrysler Learns to Manage
- Its Digital Assets
- What are the management benefits of using a
digital asset management system? - How does ADAM provide value for DaimlerChrysler?
19Enterprise-Wide Knowledge Management Systems
Organizing Knowledge Taxonomies and Tagging
- Taxonomy Method of classifying things according
to a predetermined system - Tagging Once a knowledge taxonomy is produced,
documents are tagged with proper classification
20Enterprise-Wide Knowledge Management Systems
Hummingbirds integrated knowledge management
system
Figure 11-7
21Enterprise-Wide Knowledge Management Systems
Knowledge Networks
- Key Functions of an Enterprise Knowledge Network
- Knowledge exchange services
- Community of practice support
- Auto-Profiling Capabilities
- Knowledge management services
22Enterprise-Wide Knowledge Management Systems
The problem of distributed knowledge
Figure 11-8
23Enterprise-Wide Knowledge Management Systems
AskMe Enterprise knowledge network system
Figure 11-9
24Enterprise-Wide Knowledge Management Systems
Portals, Collaboration Tools, and Learning
Management Systems
- Teamware Group collaboration software running on
intranets that is customized for teamwork
25Enterprise-Wide Knowledge Management Systems
Portals, Collaboration Tools, and Learning
Management Systems
- Learning Management Systems (LMS) Tools for the
management, delivery, tracking, and assessment of
various types of employee learning
26Enterprise-Wide Knowledge Management Systems
Window on Management
- Managing Employee Learning New Tools, New
Benefits - What are the management benefits of using
learning management systems? - How do they provide value to Alyeska and APL
27Knowledge Work Systems
Knowledge Workers and Knowledge Work
- Knowledge workers perform 3 key roles
- Keeping the organization current in knowledge as
it develops in the external world - Serving as integral consultants regarding the
areas of their knowledge, the changes taking
place, and opportunities - Acting as change agents
28Knowledge Work Systems
Requirements of knowledge work systems
Figure 11-10
29Knowledge Work Systems
Examples of Knowledge Work Systems
- Computer-aided design (CAD)
- Virtual reality systems
- Virtual Reality Modeling Language (VRML)
- Investment workstations
30Intelligent Techniques
Capturing Knowledge Expert Systems
- Knowledge Base Model of human knowledge
- Rule-based Expert System Collection in an AI
system represented in the the form of IF-THEN
31Intelligent Techniques
Capturing Knowledge Expert Systems
- AI shell programming environment
- Inference Engine strategy used to search
through the rule base - Forward Chaining strategy for searching the
rules base that begins with the information
entered by user and searches the rule base to
arrive at a conclusion
32Intelligent Techniques
Rules in an AI program
Figure 11-11
33Intelligent Techniques
Inference engines in expert systems
Figure 11-12
34Intelligent Techniques
Capturing Knowledge Expert Systems
- Backward Chaining Strategy for searching the
rule base in an expert system that acts as a
problem solver - Knowledge Engineer Specialist who elicits
information and expertise from other
professionals and translates it into set of rules
for an expert system
35Intelligent Techniques
Examples of Successful Expert Systems
- Galeria Kaufhof
- Countrywide Funding Corp.
36Intelligent Techniques
Organizational Intelligence Case-Based Reasoning
- Case-based Reasoning (CBR) Artificial
intelligence technology that represents knowledge
as a database of cases and solutions
37Intelligent Techniques
How case-based reasoning works
Figure 11-13
38Fuzzy Logic Systems
Fuzzy Logic Systems
- Rule-based AI
- Tolerates imprecision
- Uses nonspecific terms called membership
functions to solve problems
39Fuzzy Logic Systems
Implementing fuzzy logic rules in hardware
Figure 11-14
40Neural Networks
Neural Networks
- Hardware or software emulating processing
patterns of biological brain - Put intelligence into hardware in form of a
generalized capability to learn
41Neural Networks
How a neural network works
Figure 11-15
42Genetic Algorithms
Genetic Algorithms
- Problem-solving methods
- Promote evolution of solutions to specified
problems - Use a model of living organisms adapting to their
environment
43Genetic Algorithms
The components of a genetic algorithm
Figure 11-16
44Genetic Algorithms
Hybrid AI Systems
- Integration of multiple AI technologies into a
single application - Takes advantage of best features of technologies
45Intelligent Agents
Intelligent Agents
- Software program that uses built-in or learned
knowledge base to carry out specific, repetitive,
and predictable tasks for an individual user,
business process, or software application
46Intelligent Agents
Intelligent agent technology at work
Figure 11-17
47Management Issues for Knowledge Management Systems
Implementation Challenges
- Insufficient resources available to structure and
update the content in repositories - Poor quality and high variability of content
quality because of insufficient mechanisms - Content in repositories lacks context, making
documents difficult to understand
48Management Issues for Knowledge Management Systems
Implementation Challenges
- Individual employees not rewarded for
contributing content, and many fear sharing
knowledge with others on the job - Search engines return too much information,
reflecting lack of knowledge structure or taxonomy
49Management Issues for Knowledge Management Systems
Implementing knowledge management projects in
stages
Figure 11-18
50Obtaining Value from Knowledge Management Systems
Obtaining Value from Knowledge Management Systems
- Develop in stages
- Choose a high-value business process
- Choose the right audience
- Measure ROI during initial implementation
- Use the preliminary ROI to project
enterprise-wide values
51Chapter 11 Case Study
Can Knowledge Systems Help Procter Gamble Stay
Ahead of the Pack?
- Analyze PGs business strategy using the value
chain and competitive forces models. - What business and technology conditions caused
PG to change its business strategy? What
management, organization, and technology problems
did PG face?
52Chapter 11 Case Study
Can Knowledge Systems Help Procter Gamble Stay
Ahead of the Pack?
- What is the role of knowledge management in
supporting PGs business strategy? Explain how
knowledge management systems help PG execute its
business strategy. - How successful has PG been in pursuing its
business strategy and using knowledge management?
How successful do you think that strategy will be
in the future? Explain your answer.