Google Tag Manager

Search Library Soup

Loading
Showing posts with label Knowledge Management. Show all posts
Showing posts with label Knowledge Management. Show all posts

Friday, October 12, 2012

InfoVision 2012



The 6th edition of InfoVision will be held on October 19 & 20 at SAP Labs, Bangalore. The theme of InfoVision 2012 is “ SMAC ( Social, Mobile, Analytics, Cloud) is smart”.
SMAC is the latest acronym to enter the jargon-filled technology space. SMAC--an acronym for Social, Mobility, Analytics, and Cloud has entered the business conversations in a big way.  Experts and business heads believe that SMAC will help companies to ride the next wave of business opportunities and is also expected to help Indian companies to innovate and move away from traditional business models. Industry veterans see an integrated SMAC to change the way companies do business in future. Based on the industry trending, a unified Social, Mobile, Analytics (Big Data predominantly) and Cloud based solutions appear to be the 'next big thing'.
The combined potential of SMAC technologies is estimated to be $70 billion to $200 billion over the next three years. And, that's the reason why most of the software vendors today are betting on SMAC.
GartnerReport
Source: Gartner Report
Research firm Gartner terms it as the nexus of four IT forces — cloud, social, mobile, and information (in other words analytics). Those forces, along with the continued impact of consumer spending, are expected to essentially set the stage for the next generation of capabilities that drive new business scenarios.

About InfoVision Series
InfoVision is a summit series initiated in 2005 with the aim of creating a platform for bringing together academic researchers in the information sciences and technologies and business heads in the information industry to discuss and deliberate on a chosen theme. Experts from the industry and the academia join the debate and share their views. Best practices and success stories are showcased. InfoVision is an intellectual confederation of all stakeholders – academia, industry, government and the user groups, to meet as partners and to develop a unified framework and formulate strategies for capitalizing knowledge for performance.
  • InfoVision 2005 was organised in September 2005 by the International Institute of Information Technology, Bangalore (IIITB) and Informatics India Limited and theInternational School of Information Management (ISiM) was launched during the first InfoVision Summit. Since then ISiM has been partnering with different organisations to organise the summit series. 
  • InfoVision 2006 was organised by ISiM in collaboration with CII in September 2006
  • InfoVision 2007 was organised by ISiM in collaboration with Rediff. Com during December 2007
  • InfoVision 2009 was organised by ISiM in partnership with Microsoft Research Bangalore during January 2009
  • InfoVision 2011 was organised by ISiM in collaboration with Information Excellence Group, a collaborative volunteer community including and with the support of CSI Bangalore chapter, DAMA Bangalore Chapter and TDWI India Chapter during September 2011

Monday, July 9, 2012

IIPA-DST Programme on Knowledge Management July 23-29, 2012

      I am glad to inform you that the Indian Institute of Public Administration will be offering a Programme on *Knowledge Management (KM) *during July 23-29, 2012. The training programme is  sponsored by the Department of Science and Technology (DST), Government of India
KM is  a core competency  which transforms an organization?s business competitiveness, through integration of knowledge and decentralized intelligence to empower knowledge workers to do a better job all around. The future of knowledge lies in its increasing propensity for value, social networks and enrichment of knowledge, and that of KM depends on the right approach to organizational elements that lead to economic value (tangible and intangible).  Knowledge (in the present century) reigns supreme, cutting across the core of an organization. In an era of connectivity, knowledge transfer and exchange via cooperation, coordination and creativity, studies have shown that  20% of an organization?s core knowledge can effectively operate 80% of  daily transactions. Organizations all over the world began the process of learning how to use and ?manage? the new resource called ? knowledge. Thus the understanding of importance, role, and performance assessment of the Knowledge Management System in organizations, particularly in knowledge intensive service institutions is very crucial for survival and growth of such organizations to achieve the cutting-edge differentiation.

The programme will deal with various  issues, tools and techniques  that would facilitate a complete array of activities in  building KM system from, execution, implementation and assessment  to deployment .  Besides, the various modules will be covering aspects like Understanding Knowledge & Working Smarter in Knowledge Economy, cognition and  Knowledge Management, KM Planning & Execution in Organizations and system evaluation,  Pillars of KM in S&T  Sector,  Key  enablers of KM (ICT & Human capital), legal & ethical aspects of KM. One of the important features of the programme is the opportunity provided to the participants to have a holistic approach for strategizing action plan for stimulating knowledge-centric culture in organizations. Thus developing an open-mind to pursue Knowledge-creation, acquisition- Unlearning, Relearning and Sharing with examples of best  practices  and case studies are drawn from different sectors. Eminent faculty from IIT?s, leading Management  institutions, Government Sector and from Corporate  domain will be pooling their knowledge resources for building a robust KM system in organizations.  The other key feature is the field visits and learning on site. 

Target Group- All Levels of Scientists and Technologists working in various research and academic institutions of Government of India.
Course Fee : (Free)/ Lodging/Boarding 
The Department of Science and Technology will bear the entire cost of the training. Only the expenses related to TA/DA of the participants for attending the training programmes at IIPA, and reporting back to  their respective places of duty, are to be borne by the nominating organizations.

The Institute will take care of the lodging/boarding. The Institute has a Hostel where board/lodging facilities are made available to all the participants on twin sharing basis.  Please note that the programme is residential and the accommodation is only for the participants.

For unwinding, the institute  generally makes arrangement for co-curricular activities. A certificate on completion will be awarded to the participants at the end of the programme.

We look forward to receiving nominations from your organization/s. For more details and  programme  brochure, kindly send mail to DST Cell IIPA <trgdstiipa@gmail.com or umunshi@gmail.com. The nominations may be sent at the earliest (preferably by 13th July, 2012) , so that the requisite arrangements can be made. Please note that only a maximum of 25 participants can be accommodated in the said training programme.

In case there are any queries, please feel free to get in touch with us by either e-mail or phone Supervisor (Training)  011-91-2346-8338  or to the Programme Coordinator Dr. Usha Mujoo Munshi (011-91- 2346-8320, 9717967686) or Co-Coordinator  Dr. Roma Mitra Debnath (011-91-2346-8376, 9310338939).
We look forward to your cooperation in sending a few nominations for the programmes at the earliest.

With regards,

Yours sincerely,
Dr. Usha Mujoo Munshi
Phone: 011-2346 8320
Mobile : 09717967686
e-mailumunshi@gmail.comumunshi@iipa.org.in

Tuesday, June 12, 2012

What about data?


Data is a buzzword today but it can mean many different things, writes Michael Clarke
There is a lot of excitement about data at the moment in STM publishing but when people talk about it they can mean many different things.
First and foremost there is research data itself. A lot of discussion is currently underway to make research data more accessible and to make sure it is properly archived. There is a need for more data repositories that can handle the diverse array of researcher data and maintain it over time.
There are some interesting data archives springing up that are very specialised. The geneticists are way out in front on this with Flybase and Wormbase and the like. But the notion is spreading. Archaeologists recently launched one called tDAR. DataONE is under development to archive ecological and environmental data. Dryad is providing archiving of data underlying peer-reviewed articles in the basic and applied biosciences. Given the myriad data repositories, a lot of work is being done on making these data sets linked and interoperable so they can be interrogated and mined. This is one of the goals for the semantic web championed by Tim Berners-Lee and others.
Second there is there is the publishing of research data – or of linking to it from journal articles. There are questions here about what is appropriate to publish and what sort of demand you can place on peer reviewers. Publishing supplementary data is becoming more and more common, however, and as more and more data is being generated. I was glad to see NISO get involved recently and begin to recommend some standards around this.
Third you have publication metrics. There is a lot of experimentation today around article-level metrics and alternatives to the impact factor, or altmetrics. These include looking at citations to articles independent of the journal they appear in. This makes a lot of sense as, even in the best journals, there are some duds. Similarly, in the second- and third-tier journals there are some gems. Public Library of Science (PLoS), with its open-access mega journal PLoS ONE is a particular champion of article-level metrics as one way to help user navigate through the wealth of content published in the title. 
PLoS is also experimenting with a number of altmetrics that, at the moment, are of questionable value. For example, usage and coverage in social media probably tells us more about the size of the author’s research field and his or her ability to network than they do about the underlying science. The number of people who have bookmarked a paper in Mendeley is interesting but again biases towards large fields (and, of course, to the subset of scientists that use Mendeley). But still, the experimentation is interesting and welcome despite its limitations.
A fourth kind of data is usage data and some really interesting things are happening around the intersection of semantic metadata (really metadata of all kinds) and usage data. Publishers are beginning to cross-tabulate usage data with data about content to ask interesting questions. What kinds of content are different user groups interacting with? When members of a user group begin to look at a certain paper or set of papers outside their field, is that a signal of an interdisciplinary breakthrough? Are there ways to leverage these dynamic communities of interest to help readers find information more efficiently and to find information of relevance that they might have missed? And, of course, publishers are exploring how they can build on this information to generate revenue via product upsells and targeted advertising.
This is the kind of user interaction that Amazon and others have been using for a long time and but is just starting to make inroads in STM. In some ways it is more interesting in STM than in consumer sectors because of the vast quantity of information; the goal is not simply to sell more saucepans to people that bought the ‘Joy of Cooking’ but rather to better understand how very smart people are using very complex information.
Michael Clarke is executive vice president for product and market development at Silverchair Information Systems. Look out for more of his thoughts in the interview in the June/July 2012 issue of Research Information magazine

Wednesday, April 18, 2012

What is knowledge management?

We define knowledge management as a business activity with two primary aspects:
* Treating the knowledge component of business activities as an explicit concern of business reflected in strategy, policy, and practice at all levels of the organization.
* Making a direct connection between an organization's intellectual assets - both explicit (recorded) and tacit (personal know- how) - and positive business results.
In practice, knowledge management often encompasses identifying and mapping intellectual assets within the organization, generating new knowledge for competitive advantage within the organization, making vast amounts of corporate information accessible, sharing of best practices, and technology that enables all of the above - including groupware and intranets.
That covers a lot of ground. And it should, because applying knowledge to work is integral to most business activities.
Knowledge management is hard to define precisely and simply. (The definition also leapfrogs the task of defining "knowledge" itself. We'll get to that later.) That's not surprising. How would a nurse or doctor define "health care" succinctly? How would a CEO describe "management"? How would a CFO describe "compensation"? Each of those domains is complex, with many sub- areas of specialization. Nevertheless, we know "health care" and "management" when we see them, and we understand the major goals and activities of those domains.
Business strategies related to knowledge management
As you explore other explanations of knowledge management - Bo Newman's Knowledge Management Forum is a good starting point - you'll detect connections with several well-known management strategies, practices, and business issues, including
* Change management
* Best practices
* Risk management
* Benchmarking
A significant element of the business community also views knowledge management as a natural extension of "business process reengineering," a fact underscored by the recent announcement that John Wiley's Business Change and Reengineering will become Knowledge and Process Management in March, 1997. See
(http://www.mgmt.utoronto.ca/wensle/journal1.htm)
There is a common thread among these and many other recent business strategies: A recognition that information and knowledge are corporate assets, and that businesses need strategies, policies, and tools to manage those assets.
The need to manage knowledge seems obvious, and discussions of intellectual capital have proliferated, but few businesses have acted on that understanding. Where companies have take action - and a growing number are doing so - implementations of "knowledge management" may range from technology-driven methods of accessing, controlling, and delivering information to massive efforts to change corporate culture.
Opinions about the paths, methods, and even the objectives of knowledge management abound. Some efforts focus on enhancing creativity - creating new knowledge value - while other programs emphasize leveraging existing knowledge. (See below, "Categorization of knowledge management approaches.")
What is "knowledge"?
Aren't we managing knowledge already? Well, no. In fact, most of the time we're making a really ugly mess of managing information. In practice, the terms information and knowledge are often used interchangeably by business writers.
Let's choose a simple working definition and get on with it:
Knowledge has two basic definitions of interest. The first pertains to a defined body of information. Depending on the definition, the body of information might consist of facts, opinions, ideas, theories, principles, and models (or other frameworks). Clearly, other categories are possible, too. Subject matter (e.g., chemistry, mathematics, etc.) is just one possibility.
Knowledge also refers to a person's state of being with respect to some body of information. These states include ignorance, awareness, familiarity, understanding, facility, and so on.
Email from Fred Nickols, Executive Director - Strategic Planning & Management, Educational Testing Service.
There are many thoughtful and thought-provoking definitions of "knowledge" - including the important distinctions Gene Bellinger et al. make in "Data, Information, Knowledge, and Wisdom". Nevertheless, Nickols provides a good, sensible, functional definition, and it is sufficient for our purposes.
Nickols' two kinds of knowledge parallel Michael Polanyi's often- quoted distinction between explicit knowledge (sometimes referred to as formal knowledge), which can be articulated in language and transmitted among individuals, and tacit knowledge (also, informal knowledge), personal knowledge rooted in individual experience and involving personal belief, perspective, and values. (Polanyi, Michael. The Tacit Dimension. London: Routledge & Kegan Paul. See also Karl E. Sveiby's online description.
"Tacit Knowledge."
In traditional perceptions of the role of knowledge in business organizations, tacit knowledge is often viewed as the real key to getting things done and creating new value. Not explicit knowledge. Thus we often encounter an emphasis on the "learning organization" and other approaches that stress internalization of information (through experience and action) and generation of new knowledge through managed interaction.
In the opinion of the editors of Knowledge Praxis, quibbles about fine distinctions in the meaning of knowledge are just not very important. (See Rant #1: Thinking objectively about subjective knowing) It doesn't matter whether a written procedure or a subject matter expert provides a solution to a particular problem, as long as a positive result is achieved. However, observing how knowledge is acquired and how we can apply knowledge - whether tacit or explicit - in order to achieve a positive result that meets business requirements ... that's a different and very important issue.
Why we need knowledge management now
Why do we need to manage knowledge? Ann Macintosh of the Artificial Intelligence Applications Institute (University of Edinburgh) has written a "Position Paper on Knowledge Asset Management" that identifies some of the specific business factors, including:
* Marketplaces are increasingly competitive and the rate of innovation is rising.
* Reductions in staffing create a need to replace informal knowledge with formal methods.
* Competitive pressures reduce the size of the work force that holds valuable business knowledge.
* The amount of time available to experience and acquire knowledge has diminished.
* Early retirements and increasing mobility of the work force lead to loss of knowledge.
* There is a need to manage increasing complexity as small operating companies are trans-national sourcing operations.
* Changes in strategic direction may result in the loss of knowledge in a specific area.
To these paraphrases of Ms. Macintosh's observations we would add:
* Most of our work is information based.
* Organizations compete on the basis of knowledge.
* Products and services are increasingly complex, endowing them with a significant information component.
* The need for life-long learning is an inescapable reality.
In brief, knowledge and information have become the medium in which business problems occur. As a result, managing knowledge represents the primary opportunity for achieving substantial savings, significant improvements in human performance, and competitive advantage.
It's not just a Fortune 500 business problem. Small companies need formal approaches to knowledge management even more, because they don't have the market leverage, inertia, and resources that big companies do. They have to be much more flexible, more responsive, and more "right" (make better decisions) - because even small mistakes can be fatal to them.
Roadblocks to adoption of knowledge management solutions
There have been many roadblocks to adoption of formal knowledge management activities. In general, managing knowledge has been perceived as an unmanageable kind of problem - an implicitly human, individual activity - that was intractable with traditional management methods and technology.
We tend to treat the activities of knowledge work as necessary, but ill-defined, costs of human resources, and we treat the explicit manifestations of knowledge work as forms of publishing - as byproducts of "real" work.
As a result, the metrics associated with knowledge resources - and our ability to manage those resources in meaningful ways - have not become part of business infrastructure.
But it isn't necessary to throw up one's hands in despair. We do know a lot about how people learn. We know more and more about how organizations develop and use knowledge. The body of literature about managing intellectual capital is growing. We have new insights and solutions from a variety of domains and disciplines that can be applied to making knowledge work manageable and measurable. And computer technology - itself a cause of the problem - can provide new tools to make it all work.
We don't need another "paradigm shift" (Please!), but we do have to accept that the nature of business itself has changed, in at least two important ways:
1. Knowledge work is fundamentally different in character from physical labor.
2. The knowledge worker is almost completely immersed in a computing environment. This new reality dramatically alters the methods by which we must manage, learn, represent knowledge, interact, solve problems, and act.
You can't solve the problems of Information Age business or gain a competitive advantage simply by throwing more information and people at the problems. And you can't solve knowledge-based problems with approaches borrowed from the product-oriented, print-based economy. Those solutions are reactive and inappropriate.
Applying technology blindly to knowledge-related business problems is a mistake, too, but What is knowledge...
the computerized business environment provides opportunities and new methods for representing "knowledge" and leveraging its value. It's not an issue of finding the right computer interface - although that would help, too. We simply have not defined in a rigorous, clear, widely accepted way the fundamental characteristics of "knowledge" in the computing environment. (See "Cooperative development of a classification of knowledge management functions.")
A brief history of knowledge management
An overarching theory of knowledge management has yet to emerge, perhaps because the practices associated with managing knowledge have their roots in a variety of disciplines and domains. Special thanks to Karl Wiig for supplying us with a pre-publication copy of "Knowledge Management:Where Did It Come From and Where Will It Go?" which will appear in The Journal of Expert Systems with Applications. This section draws heavily on that work but supplies only a small part of that value.
A number of management theorists have contributed to the evolution of knowledge management, among them such notables as Peter Drucker, Paul Strassmann, and Peter Senge in the United States. Drucker and Strassmann have stressed the growing importance of information and explicit knowledge as organizational resources, and Senge has focused on the "learning organization," a cultural dimension of managing knowledge. Chris Argyris, Christoper Bartlett, and Dorothy Leonard-Barton of Harvard Business School have examined various facets of managing knowledge. In fact, Leonard-Barton's well-known case study of Chaparral Steel, a company which has had an effective knowledge management strategy in place since the mid-1970s, inspired the research documented in her Wellsprings of Knowledge - Building and Sustaining Sources of Innovation (Harvard Business School Press, 1995).
Everett Rogers' work at Stanford in the diffusion of innovation and Thomas Allen's research at MIT in information and technology transfer, both of which date from the late 1970s, have also contributed to our understanding of how knowledge is produced, used, and diffused within organizations. By the mid-1980s, the importance of knowledge (and its expression in professional competence) as a competitive asset was apparent, even though classical economic theory ignores (the value of) knowledge as an asset and most organizations still lack strategies and methods for managing it.
Recognition of the growing importance of organizational knowledge was accompanied by concern over how to deal with exponential increases in the amount of available knowledge and increasingly complex products and processes. The computer technology that contributed so heavily to superabundance of information started to become part of the solution, in a variety of domains. Doug Engelbart's Augment (for "augmenting human intelligence"), which was introduced in 1978, was an early hypertext/groupware application capable of interfacing with other applications and systems. Rob Acksyn's and Don McCracken's Knowledge Management System (KMS), an open distributed hypermedia tool, is another notable example and one that predates the World Wide Web by a decade.
The 1980s also saw the development of systems for managing knowledge that relied on work done in artificial intelligence and expert systems, giving us such concepts as "knowledge acquisition," "knowledge engineering," "knowledge-base systems, and computer-based ontologies.
The phrase "knowledge management" entered the lexicon in earnest. To provide a technological base for managing knowledge, a consortium of U.S. companies started the Initiative for Managing Knowledge Assets in 1989. Knowledge management-related articles began appearing in journals like Sloan Management Review, Organizational Science, Harvard Business Review, and others, and the first books on organizational learning and knowledge management were published (for example, Senge's The Fifth Discipline and Sakaiya's The Knowledge Value Revolution).
By 1990, a number of management consulting firms had begun in- house knowledge management programs, and several well known U.S., European, and Japanese firms had instituted focused knowledge management programs. Knowledge management was introduced in the popular press in 1991, when Tom Stewart published "Brainpower" in Fortune magazine. Perhaps the most widely read work to date is Ikujiro Nonaka's and Hirotaka Takeuchi's The Knowledge-Creating Company: How Japanese Companies Create the Dynamics of Innovation (1995).
By the mid-1990s, knowledge management initiatives were flourishing, thanks in part to the Internet. The International Knowledge Management Network (IKMN), begun in Europe in 1989, went online in 1994 and was soon joined by the U.S.-based Knowledge Management Forum and other KM- related groups and publications. The number of knowledge management conferences and seminars is growing as organizations focus on managing and leveraging explicit and tacit knowledge resources to achieve competitive advantage. In 1994 the IKMN published the results of a knowledge management survey conducted among European firms, and the European Community began offering funding for KM-related projects through the ESPRIT program in 1995.
Knowledge management, which appears to offer a highly desirable alternative to failed TQM and business process re-engineering initiatives, has become big business for such major international consulting firms as Ernst & Young, Arthur Andersen, and Booz- Allen & Hamilton. In addition, a number of professional organizations interested in such related areas as benchmarking, best practices, risk management, and change management are exploring the relationship of knowledge management to their areas of special expertise (for example, the APQC American Productivity and Quality Council0 and ASIS American Society for Information Science0).
Knowledge management: a cross-disciplinary domain
Knowledge management draws from a wide range of disciplines and technologies.
* Cognitive science. Insights from how we learn and know will certainly improve tools and techniques for gathering and transferring knowledge.
* Expert systems, artificial intelligence and knowledge base management systems (KBMS). AI and related technologies have acquired an undeserved reputation of having failed to meet their own - and the marketplace's - high expectations. In fact, these technologies continue to be applied widely, and the lessons practitioners have learned are directly applicable to knowledge management.
* Computer-supported collaborative work (groupware). In Europe, knowledge management is almost synonymous with groupware ... and therefore with Lotus Notes. Sharing and collaboration are clearly vital to organizational knowledge management - with or without supporting technology.
* Library and information science. We take it for granted that card catalogs in libraries will help us find the right book when we need it. The body of research and practice in classification and knowledge organization that makes libraries work will be even more vital as we are inundated by information in business. Tools for thesaurus construction and controlled vocabularies are already helping us manage knowledge.
* Technical writing. Also under-appreciated - even sneered at - as a professional activity, technical writing (often referred to by its practitioners as technical communication) forms a body of theory and practice that is directly relevant to effective representation and transfer of knowledge.
* Document management. Originally concerned primarily with managing the accessibility of images, document management has moved on to making content accessible and re-usable at the component level. Early recognition of the need to associate "metainformation" with each document object prefigures document management technology's growing role in knowledge management activities.
* Decision support systems. According to Daniel J. Power, "Researchers working on Decision Support Systems have brought together insights from the fields of cognitive sciences, management sciences, computer sciences, operations research, and systems engineering in order to produce both computerised artifacts for helping knowledge workers in their performance of cognitive tasks, and to integrate such artifacts within the decision-making processes of modern organisations." See Powers' DSS Research Resources Home page.0 That already sounds a lot like knowledge management, but in practice the emphasis has been on quantitative analysis rather than qualitative analysis, and on tools for managers rather than everyone in the organization.
* Semantic networks. Semantic networks are formed from ideas and typed relationships among them - sort of "hypertext without the content," but with far more systematic structure according to meaning. Often applied in such arcane tasks as textual analysis, semantic nets are now in use in mainstream professional applications, including medicine, to represent domain knowledge in an explicit way that can be shared.
* Relational and object databases. Although relational databases are currently used primarily as tools for managing "structured" data - and object-oriented databases are considered more appropriate for "unstructured" content - we have only begun to apply the models on which they are founded to representing and managing knowledge resources.
* Simulation. Knowledge Management expert Karl-Erik Sveiby suggests "simulation" as a component technology of knowledge management, referring to "computer simulations, manual simulations as well as role plays and micro arenas for testing out skills." (Source: Email from Karl- Erik Sveiby, July 29, 1996)
* Organizational science. The science of managing organizations increasingly deals with the need to manage knowledge - often explicitly. It's not a surprise that the American Management Association's APQC has sponsored major knowledge management events.
That's only a partial list. Other technologies include: object- oriented information modeling; electronic publishing technology, hypertext, and the World Wide Web; help-desk technology; full- text search and retrieval; and performance support systems.
Categorization of knowledge management approaches
The term "knowledge management" is now in widespread use, having appeared in the titles of many new books about knowledge management as a business strategy, as well as in articles in many business publications, including The Wall Street Journal. There are, of course, many ways to slice up the multi-faceted world of knowledge management. However, it's often useful to categorize them.
In a posting to the Knowledge Management Forum, Karl-Erik Sveiby identified two "tracks" of knowledge management:
* Management of Information. To researchers in this track, according to Sveiby, "... knowledge = Objects that can be identified and handled in information systems."
* Management of People. For researchers and practitioners in this field, knowledge consists of "... processes, a complex set of dynamic skills, know-how, etc., that is constantly changing."
(From Sveiby, Karl-Erik, "What is knowledge management")
Sveiby's characterization is on target, but it may not capture the full flavor of the important distinctions in approaches to organizational knowledge management. At Knowledge Praxis, we have adopted a three-part categorization: (1) mechanistic approaches, (2) cultural/behavioristic approaches, and (3) systematic approaches to knowledge management.
Mechanistic approaches to knowledge management
Mechanistic approaches to knowledge management are characterized by the application of technology and resources to do more of the same better. The main assumptions of the mechanistic approach include:
* Better accessibility to information is a key, including enhanced methods of access and reuse of documents (hypertext linking, databases, full-text search, etc.)
* Networking technology in general (especially intranets), and groupware in particular, will be key solutions.
* In general, technology and sheer volume of information will make it work.
Assessment: Such approaches are relatively easy to implement for corporate "political" reasons, because the technologies and techniques - although sometimes advanced in particular areas - are familiar and easily understood. There is a modicum of good sense here, because enhanced access to corporate intellectual assets is vital. But it's simply not clear whether access itself will have a substantial impact on business performance, especially as mountains of new information are placed on line. Unless the knowledge management approach incorporates methods of leveraging cumulative experience, the net result may not be positive, and the impact of implementation may be no more measurable than in traditional paper models.
Cultural/behavioristic approaches to knowledge management
Cultural/behavioristic approaches, with substantial roots in process re-engineering and change management, tend to view the "knowledge problem" as a management issue. Technology - though ultimately essential for managing explicit knowledge resources - is not the solution. These approaches tend to focus more on innovation and creativity (the "learning organization") than on leveraging existing explicit resources or making working knowledge explicit.
Assumptions of cultural/behavioristic approaches often include:
* Organizational behaviors and culture need to be changed ... dramatically. In our information-intensive environments, organizations become dysfunctional relative to business objectives.
* Organizational behaviors and culture can be changed, but traditional technology and What is knowledge...
methods of attempting to solve the "knowledge problem" have reached their limits of effectiveness. A "holistic" view is required. Theories of behavior of large-scale systems are often invoked.
* It's the processes that matter, not the technology.
* Nothing happens or changes unless a manager makes it happen.
Assessment: The cultural factors affecting organizational change have almost certainly been undervalued, and cultural/behavioristic implementations have shown some benefits. But the cause-effect relationship between cultural strategy and business benefits is not clear, because the "Hawthorne Effect" may come into play, and because we still can't make dependable predictions about systems as complex as knowledge-based business organizations. Positive results achieved by cultural/behavioristic strategies may not be sustainable, measurable, cumulative, or replicable ... and employees thoroughly "Dilbertized" by yet another management strategy may roll their eyes. Time will tell.
Systematic approaches to knowledge management
Systematic approaches to knowledge management retain the traditional faith in rational analysis of the knowledge problem: the problem can be solved, but new thinking of many kinds is required. Some basic assumptions:
* It's sustainable results that matter, not the processes or technology ... or your definition of "knowledge."
* A resource cannot be managed unless it is modeled, and many aspects of the organization's knowledge can be modeled as an explicit resource.
* Solutions can be found in a variety of disciplines and technologies, and traditional methods of analysis can be used to re-examine the nature of knowledge work and to solve the knowledge problem.
* Cultural issues are important, but they too must be evaluated systematically. Employees may or may not have to be "changed," but policies and work practices must certainly be changed, and technology can be applied successfully to business knowledge problems themselves.
* Knowledge management has an important management component, but it is not an activity or discipline that belongs exclusively to managers.
Assessment: Unrepentant rationalists in the business world are taking a systematic approach to solving the "knowledge problem." You'll also find evidence of such approaches - as well as a less formal use of the term systematic knowledge management -Karl Wiig's Knowledge Research Institute Web site and Gene Bellinger's Systems Thinking Web pages. Systematic approaches show the most promise for positive cumulative impact, measurability, and sustainability.
Conclusion
Where do we stand at the moment, and where do we go from here? We conclude with a thought from Bo Newman, via email:
As attested to in numerous articles in the popular press, knowledge management has already been embraced as a source of solutions to the problems of today's business. Still it has not been easy for this "science" to construct for itself that royal road of self validation.
On the contrary, I believe that it is still, at least for the majority of the practitioners and their customers, in the stage of blind groping after its true aims and destination.
Enough said ... for the moment. Let's change the end of this story.