Knowledge Management—Emerging Perspectives
Yes, knowledge management is the hottest subject of the day.
The question is: what is this activity called knowledge management,
and why is it so important to each and every one of us? The following
writings, articles, and links offer some emerging perspectives
in response to these questions. As you read on, you can determine
whether it all makes any sense or not.
Content
- Developing a Context
- A Continuum
- An Example
- Extending the Concept
- Knowledge Management: Bah Humbug!
- The Value of Knowledge Management
- References
Developing a Context
Like water, this rising tide of data can be viewed as an abundant, vital and necessary resource. With enough preparation, we should be able to tap into that reservoir -- and ride the wave -- by utilizing new ways to channel raw data into meaningful information. That information, in turn, can then become the knowledge that leads to wisdom. Les Alberthal
Before attempting to address the question of knowledge management,
it's probably appropriate to develop some perspective regarding
this stuff called knowledge, which there seems to be such a desire
to manage, really is. Consider this observation made by Neil Fleming as a basis for thought relating to the
following diagram.
- A collection of data is not information.
- A collection of information is not knowledge.
- A collection of knowledge is not wisdom.
- A collection of wisdom is not truth.
The idea is that information, knowledge,
and wisdom are more than simply collections. Rather, the whole
represents more than the sum of its parts and has a synergy of
its own.
We begin with data, which is just a meaningless point in space
and time, without reference to either space or time. It is like
an event out of context, a letter out of context, a word out of
context. The key concept here being "out of context."
And, since it is out of context, it is without a meaningful relation
to anything else. When we encounter a piece of data, if it gets
our attention at all, our first action is usually to attempt to
find a way to attribute meaning to it. We do this by associating
it with other things. If I see the number 5, I can immediately
associate it with cardinal numbers and relate it to being greater
than 4 and less than 6, whether this was implied by this particular
instance or not. If I see a single word, such as "time,"
there is a tendency to immediately form associations with previous
contexts within which I have found "time" to be meaningful.
This might be, "being on time," "a stitch in time
saves nine," "time never stops," etc. The implication
here is that when there is no context, there is little or no meaning.
So, we create context but, more often than not, that context is
somewhat akin to conjecture, yet it fabricates meaning.
That a collection of data is not information, as Neil indicated,
implies that a collection of data for which there is no relation
between the pieces of data is not information. The pieces of data
may represent information, yet whether or not it is information
depends on the understanding of the one perceiving the data. I
would also tend to say that it depends on the knowledge of the
interpreter, but I'm probably getting ahead of myself, since I
haven't defined knowledge. What I will say at this point is that
the extent of my understanding of the collection of data is dependent
on the associations I am able to discern within the collection.
And, the associations I am able to discern are dependent on all
the associations I have ever been able to realize in the past.
Information is quite simply an understanding of the relationships
between pieces of data, or between pieces of data and other information.
While information entails an understanding of the relations
between data, it generally does not provide a foundation for why
the data is what it is, nor an indication as to how the data is
likely to change over time. Information has a tendency to be relatively
static in time and linear in nature. Information is a relationship
between data and, quite simply, is what it is, with great dependence
on context for its meaning and with little implication for the
future.
Beyond relation there is pa,
where pattern is more than simply a relation of relations. Pattern
embodies both a consistency and completeness of relations which,
to an extent, creates its own context. Pattern also serves as
an Archetype[sen90] with both an implied
repeatability and predictability.
When a pattern relation exists amidst the data and information,
the pattern has the potential to represent knowledge. It
only becomes knowledge, however, when one is able to realize and
understand the patterns and their implications. The patterns representing
knowledge have a tendency to be more self-contextualizing. That
is, the pattern tends, to a great extent, to create its own context
rather than being context dependent to the same extent that information
is. A pattern which represents knowledge also provides, when the
pattern is understood, a high level of reliability or predictability
as to how the pattern will evolve over time, for patterns are
seldom static. Patterns which represent knowledge have a completeness
to them that information simply does not contain.
Wisdom arises when one understands the foundational principles
responsible for the patterns representing knowledge being what
they are. And wisdom, even more so than knowledge, tends to create
its own context. I have a preference for referring to these foundational
principles as eternal truths, yet I find people have a tendency
to be somewhat uncomfortable with this labeling. These foundational
principles are universal and completely context independent. Of
course, this last statement is sort of a redundant word game,
for if the principle was context dependent, then it couldn't be
universally true now could it?
So, in summary the following associations can reasonably be
made:
- Information relates to description, definition, or perspective (what, who, when, where).
- Knowledge comprises strategy, practice, method, or approach (how).
- Wisdom embodies principle, insight, moral, or archetype (why).
Now that I have categories I can get hold of, maybe I can figure
out what can be managed.
An Example
This example uses a bank savings account to show how data,
information, knowledge, and wisdom relate to principal, interest
rate, and interest.
Data: The numbers 100 or 5%, completely out of context,
are just pieces of data. Interest, principal, and interest rate,
out of context, are not much more than data as each has multiple
meanings which are context dependent.
Information: If I establish a bank savings account as
the basis for context, then interest, principal, and interest
rate become meaningful in that context with specific interpretations.
- Principal is the amount of money, $100, in the savings account.
- Interest rate, 5%, is the factor used by the bank to compute interest on the principal.
Knowledge: If I put $100 in my savings account, and
the bank pays 5% interest yearly, then at the end of one year
the bank will compute the interest of $5 and add it to my principal
and I will have $105 in the bank. This pattern represents knowledge,
which, when I understand it, allows me to understand how the pattern
will evolve over time and the results it will produce. In understanding
the pattern, I know, and what I know is knowledge. If I deposit
more money in my account, I will earn more interest, while if
I withdraw money from my account, I will earn less interest.
Wisdom: Getting wisdom out of this is a bit tricky,
and is, in fact, founded in systems principles. The principle
is that any action which produces a result which encourages more
of the same action produces an emergent characteristic called
growth. And, nothing grows forever for sooner or later growth
runs into limits.
If one studied all the individual components
of this pattern, which represents knowledge, they would never
discover the emergent characteristic of growth. Only when the
pattern connects, interacts, and evolves over time, does the principle
exhibit the characteristic of growth.
Note: If the mechanics of this diagram are unfamiliar,
you can find the basis in Systems Thinking
Introduction[bel96] .
Now, if this knowledge is valid, why doesn't everyone simply
become rich by putting money in a savings account and letting
it grow? The answer has to do with the fact that the pattern described
above is only a small part of a more elaborate pattern which operates
over time. People don't get rich because they either don't put
money in a savings account in the first place, or when they do,
in time, they find things they need or want more than being rich,
so they withdraw money. Withdrawing money depletes the principal
and subsequently the interest they earn on that principal. Getting
into this any deeper is more of a systems thinking exercise than
is appropriate to pursue here.
A Continuum
Note that the sequence data -> information -> knowledge
-> wisdom represents an emergent continuum. That is, although
data is a discrete entity, the progression to information, to
knowledge, and finally to wisdom does not occur in discrete stages
of development. One progresses along the continuum as one's understanding
develops. Everything is relative, and one can have partial understanding
of the relations that represent information, partial understanding
of the patterns that represent knowledge, and partial understanding
of the principles which are the foundation of wisdom. As the partial
understanding stage.
Extending the Concept
We learn by connecting new information to patterns that we
already understand. In doing so, we extend the patterns. So, in
my effort to make sense of this continuum, I searched for something
to connect it to that already made sense. And, I related it to
Csikszentmihalyi's interpretation of complexity.
Csikszentmihalyi[csi94]
provides a definition of complexity based on the degree to which
something is simultaneously differentiated and integrated. His
point is that complexity evolves along a corridor and he provides
some very interesting examples as to why complexity evolves. The
diagram below indicates that what is more highly differentiated
and integrated is more complex. While high levels of differentiation
without integration promote the complicated, that which is highly
integrated, without differentiation, produces mundane. And, it
should be rather obvious from personal experience that we tend
to avoid the complicated and are uninterested in the mundane.
The complexity that exists between these two alternatives is the
path we generally find most attractive.
On 4/27/05 Robert
Lamb commented that Csikszentmihalyi's labeling could be is
bit clearer if "Differentiation" was replaced by "Many
Components" and "Integration" was replaced by Highly
Interconnected." Robert also commented that "Common
Sense" might be another label for "Mundane." If
the mundane is something we seem to avoid paying attention to
then "Common Sense" might often be a very appropriate
label. Thanks Robert.
What I found really interesting was the view
that resulted when I dropped this diagram on top of the one at
the beginning of this article. It seemed that "Integrated"
and "Understanding" immediately correlated to each other.
There was also a real awareness that "Context Independence"
related to "Differentiated." Overall, the continuum
of data to wisdom seemed to correlate exactly to Csikszentmihalyi's
model of evolving complexity.
I now end up with a perception that wisdom is sort of simplified
complexity.
Knowledge Management: Bah Humbug!
When I first became interested in knowledge as a concept, and
then knowledge management, it was because of the connections I
made between my system studies and the data, information, knowledge,
and wisdom descriptions already stated. Saying that I became interested
is a bit of an understatement as I'm generally either not interested
or obsessed, and seldom anywhere in between. Then, after a couple
months I managed to catch myself, with the help of Mike Davidson[dav96], as to the indirection I was pursuing.
I managed to survive the Formula Fifties, the Sensitive Sixties,
the Strategic Seventies, and the Excellent Eighties to exist in
the Nanosecond Nineties, and for a time I thought I was headed
for the Learning Organizational Oh's of the next decade. The misdirection
I was caught up in was a focus on Knowledge Management not as
a means, but as an end in itself. Yes, knowledge management is
important, and I'll address reasons why shortly. But knowledge
management should simply be one of many cooperating means to an
end, not the end in itself, unless your job turns out to be corporate
knowledge management director or chief knowledge officer. I'm
quite sure it will come to this, for in some ways we are predictably
consistent.
I associate the cause of my indirection with the many companies
I have been associated with in the past. These companies had pursued
TQM or reengineering, not in support of what they were trying
to accomplish, but as ends in themselves because they simply didn't
know what they were really trying to accomplish. And, since they
didn't know what they were really trying to accomplish, the misdirection
was actually a relief, and pursued with a passion­­it
just didn't get them anywhere in particular.
According to Mike Davidson[dav96], and
I agree with him, what's really important is:
- Mission: What are we trying to accomplish?
- Competition: How do we gain a competitive edge?
- Performance: How do we deliver the results?
- Change: How do we cope with change?
As such, knowledge management, and everything else for that
matter, is important only to the extent that it enhances an organization's
ability and capacity to deal with, and develop in, these four
dimensions.
The Value of Knowledge Management
In an organizational context, data represents facts or values
of results, and relations between data and other relations have
the capacity to represent information. Patterns of relations of
data and information and other patterns have the capacity to represent
knowledge. For the representation to be of any utility it must
be understood, and when understood the representation is information
or knowledge to the one that understands. Yet, what is the real
value of information and knowledge, and what does it mean to manage
it?
Without associations we have little chance of understanding
anything. We understand things based on the associations we are
able to discern. If someone says that sales started at $100,000
per quarter and have been rising 20% per quarter for the last
four quarters, I am somewhat confident that sales are now about
$207,000 per quarter. I am confident because I know what "rising
20% per quarter" means and I can do the math.
Yet, if someone asks what sales are apt to be next quarter,
I would have to say, "It depends!" I would have to say
this because although I have data and information, I have no knowledge.
This is a trap that many fall into, because they don't understand
that data doesn't predict trends of data. What predicts trends
of data is the activity that is responsible for the data. To be
able to estimate the sales for next quarter, I would need information
about the competition, market size, extent of market saturation,
current backlog, customer satisfaction levels associated with
current product delivery, current production capacity, the extent
of capacity utilization, and a whole host of other things. When
I was able to amass sufficient data and information to form a
complete pattern that I understood, I would have knowledge, and
would then be somewhat comfortable estimating the sales for next
quarter. Anything less would be just fantasy!
In this example what needs to be managed to create value is
the data that defines past results, the data and information associated
with the organization, it's market, it's customers, and it's competition,
and the patterns which relate all these items to enable a reliable
level of predictability of the future.What I would refer to as
knowledge management would be the capture, retention, and reuse
of the foundation for imparting an understanding of how all these
pieces fit together and how to convey them meaningfully to some
other person.
The value of Knowledge Management relates directly to the effectiveness with which the managed knowledge enables
the members of the organization to deal with today's situations
and effectively envision and create their future. Without on-demand
access to managed knowledge, every situation is addressed based
on what the individual or group brings to the situation with them.
With on-demand access to managed knowledge, every situation is
addressed with the sum total of everything anyone in the organization
has ever learned about a situation of a similar nature. Which
approach would you perceive would make a more effective organization?
Deepa Singh
Business Developer
Web Site:-http://www.gyapti.com
Blog:- http://gyapti.blogspot.com/
Email Id:-deepa.singh@soarlogic.com
No comments:
Post a Comment