Feature
posted 1 Apr 2000 in Volume 3 Issue 7
Organic knowledge management, part
one - The ASHEN Model: An enabler of action
In a three-part series of articles
originally published in this magazine in 1998, David Snowden laid the
foundations for an approach to understanding the intellectual assets of an
organisation using techniques derived from anthropology and based on the
principle that 'we only know what we know when we need to know it'. It was a
methodology that eventually became known as Organic Knowledge Management. This
article marks the first in a three part series that updates and augments that
material with the benefit of two years of additional research and practice. The
first article in this series looks at the language of knowledge and suggests a
model of description that leads to constructive action. The second article will
provide a practical set of guidelines to enable the identification of knowledge,
updating and augmenting the 1998 material. The final article will complete the
picture, and consider the critical importance of heuristics to managing in the
face of uncertainty.
'A little knowledge that acts is worth more than much knowledge that
is idle'
Kahil Gibran, The Prophet
The way we choose (and it is always a
choice) to describe something determines to a large extent how we act in
consequence. At a trivial level the pessimist whose glass is half empty will
hoard what is left against the possibility of future shortage; the optimist
whose glass is half full proceeds with greater confidence. More seriously in the
17th Century the same act or belief could be reformation or heresy, and in the
modern era Derry or Londonderry spoken in innocence can identify an individual
as belonging to a particular socio-cultural background with assumed beliefs and
attitudes. This particular use of language to mandate response and action by its
nature is equally present in all organisations.
Have we outgrown the 'tacit'
and 'explicit' definitions?
The more intangible an asset appears,
the more important the language with which we describe the problem. In knowledge
management the words tacit and explicit dominate most conversation. Although the
use of tacit is normally attributed to Polanyi's 1962 Terry Lectures at Yale
University (Polanyi, 1983), its de facto use is to a large extent determined by
two authors: Nonaka globally and Probst in central Europe. The common reading of
both these authors, whatever their intent, too easily leads to implicit
assumptions about the way in which knowledge should be managed that are
inappropriate and in some cases down right dangerous.
The STET model (Nonaka and Takeuchi,
1995) has four transitions between the tacit and explicit states: Socialisation,
externalisation, internalisation and combination. The examples are drawn from
the manufacturing industry in which all four transitions are necessary to move
from research to production. The model in many ways gave rise to the current
levels of interest in knowledge management and provided many vendors of both
hardware and software with a classification matrix for new (and too often old)
tools. The difficulty with the model in use is four fold:
Probst and his co-authors (Probst, Raub & Romhardt, 1998) offer
a more seductive and simpler view of knowledge. Tacit gets little mention with
the focus on a useful set of tools and techniques for managing knowledge, which
can or should be codified. Knowledge is separated into two classes - that which can
be codified and that which cannot, which is held to be genius and beyond the
bounds of structured management. His book, recently translated into English,
dominates thinking on knowledge management in Central Europe. It is attractive
because it uses the principles and practice with which most western educated
managers are familiar and comfortable. It reinforces the de facto prejudice that
anything useful should be written down or embedded in a process. The mechanical
metaphor of Business Process Re-engineering, Quality Management and the like
predominates.
Both of these models play to the contradictory dualism that is
the day-to-day practice of most managers. In calm and rational moments, they
want things written down: Project reports, competitive intelligence and so on.
They plan and build systems in which this 'Intellectual Capital' is
widely distributed, and considerable investment is made in its maintenance, all
of which is justified on an idealised goal of dynamic decision making supported
by the availability any time any where of all and any knowledge that they or
their subordinates might need. These overblown expectations are both created
and reinforced by unscrupulous vendors of knowledge management systems
and consultancy. In contrast, when the chips are down Dr Jeckyl becomes Mr Hyde
and, either through direct management or a 'go fix it' instruction to a trusted
subordinate, moves the problem from structured, explicit and pseudo-rational
decision making to tacit empowerment based on trust and experience. Under these
circumstances, simple rules and values predominate; it is always interesting to
see the rationally constructed use of balanced score cards and the like being
abandoned under pressure to focus on sales, profit and cash.
Dualism is
inevitable if we see the organisation as a machine interacting with human agents.
The very language of tacit and explicit militates against a more holistic view
of the interaction between human beings and their artifacts. If we
separate human decision making from the support of artifacts 'the touchy-feely,
intuitive manager' then we rely on genius, or more often luck, at the expense of
scalability; if we deify the artifacts building unrealistic expectations about
the use of technology then we gain scalability and loose massively in our
ability to respond quickly to uncertainty. A holistic approach requires us to
describe things in terms that naturally lead to holistic thinking, while
providing some form of categorisation that leads to effective action. Human
beings need to categorise things in order to exercise their sense-making
capability within organisations, but the categorisation should lead immediately
to effective action. A hunter in the field needs to categorise prey from
predator instantly to trigger a kill or flight response; no lesser degree of
responsiveness is required in the modern organisation.
Knowledge is contextual; how and
when the question is asked are vital
In
A Hitchhikers Guide to the Galaxy, Douglas Adams writes of a society that
constructs a computer to answer the ultimate answer to the ultimate question
of Life the Universe and Everything. After centuries of thought, it 'in some trepidation' produces
the answer: 42. At this point, an even more massive computer has to be
constructed to identify what the question was in the first place! Interestingly, the
new computer is organic, involving the planet Earth and white mice, who provoke
the subjects of their study 'humans' by occasionally running the wrong way around a
maze.
Knowledge is only known when it is needed to be known (Snowden, 1998a). It
is triggered by events and by need. Normal consultancy methods in which
a structured interview is created, possibly with a questionnaire, are premature in the
early stages of knowledge discovery. Asking people what they know is a cruel
question. A group of managers in a workshop asked to write down what they
know will scribble industriously for ten minutes or so and will then start to
look puzzled before they reach a halt. The reality is that if they wrote down
everything they know, they would be there for the rest of their lives. A database can
be listed; a human mind has to be stimulated. One of the most common phrases
in all languages is 'I'll sleep on it'; in solving a problem an individual
will stimulate themselves through conversation and reading, and then assimilate
the results into something coherent. Knowledge Disclosure Points (KDPs)
(Snowden, 1998a) comprise decisions, judgments, problem resolution and learning. They
are the points at which we use knowledge. Any individual will find it
easier to recollect the use of knowledge, even if they cannot meaningfully
answer the question: 'What do you know?' Locating, categorising and summarising the KDPs
in the community are the means by which we provide context: 'When you made that
decision, what knowledge did you use?' is an adequate question in context and is
more likely to reveal meaningful results. How we identify those KDPs will be the
subject of the second article in this series.
However, while asking people what they
know in the context of KDPs has proved more successful than conventional
approaches, it still suffered in that knowledge so identified suffers from the
problems of dualism, as mentioned above. There seems be an insatiable drive to
codify. Two years of arguing with varying degrees of success to retain some
knowledge in its tacit state gave rise in the field under fire to the ASHEN
model, the components of which are described in the next section.
The ASHEN
Model
The
ASHEN model was created as a means of providing a linguistic framework both to
help organisations identify what they know and to move directly to action as a
result of the meaning provided by the language. It is designed to prevent the
need for argument about the management of its outcome. The mnemonic form (HANSE
in German) facilitates consistent use in the field. The five ASHEN components
are:
Artefacts
art'efact, art-, n. A product of human art and workmanship;
(archaeol.) a product of prehistoric art as dist. from a similar object
naturally produced. [f. L arte (abl. of ars) + factum (neut. p.p. of facere
make)]
The term 'artefacts' encompasses all the existing explicit knowledge
and/or codified information within an organisation. The processes, documents,
filing cabinets, databases and other constructed 'things' that encompass the codifiable
to varying degrees of success. The management issue here is the removal
of duplication and the general optimisation and ready distribution of
such artefacts to communities that need them. The artefacts will always need to be
in the right place at the right time - even though most people may be unaware
of their existence for most of the time - this is a non-trivial management
challenge for which technology can only support, but not provide, answers. Many
artefacts exist but are not recognised. They may be notebooks of past exceptions
events in the drawer of a staff room of a supermarket; a diary in a café
frequented on a regular basis by field engineers or a web site using the free
space in Hotmail used by individuals in competitive companies who shared a
common interest. All three of these examples come from the author's own
experience, and in each case were probably one of the most valuable assets
identified in a knowledge disclosure exercise.
Their value is in their natural
occurrence; they developed based on the real needs of individuals. Attempting to
change their nature would be dangerous. To take the example of the field
engineers: The book in question was used daily to communicate valuable
information about health and safety procedures, 'work a-rounds' on technical
parts, gossip about managers, information about customers. The mechanism of its
maintenance was that each engineer would casually read it over a cup of tea and
then write their own observations before leaving. One of the solutions proposed
when it was discovered was to enhance existing hand held computers to capture
the same information in the field. This missed the point; the artefact was a
part of a social setting and involved social obligations. The solution was to
endorse the use of the café in return for managers being allowed to photocopy
the book on a weekly basis; and to sell the idea to the engineers by telling
them to keep two books.
The key is to respect naturally occurring artefacts and to separate the
creation and capture of knowledge from its analysis and distribution. It may not
be neat and tidy to do so and may appear to be anti-rational and sub-optimal;
nevertheless, it works.
Skills
skill, n. Expertness, practised ability, facility in doing something,
dexterity, tact. [ME, f. ON skil distinction, cf. SKILLS]
In this context skills
are those things for which we can identify tangible measures of their successful
acquisition. If I employ a plasterer then I can measure the deviation from a
vertical plane of his work, and the time taken to complete the job. Customer
relationship is a different thing to measure, and although it has aspects of 'skill'
, the term is not enough in its own right. The time element is an
important aspect of the skill measurement. The author is a reasonably
accomplished carpenter, but a skilled chippie can accomplish in one hour a task
that is a weekend's work for the amateur.
Skills
are something that organisations know how to manage. They are an
organisation's most readily codifiable knowledge assets. Training needs and skills analysis
are well known techniques. Training courses, moderated work experience - the
gambit of techniques available is wide and well proven. However, there is
always the danger of the codification heresy; the belief that once something
is written down, then it is shared. Most of the published 'success' stories
of Intellectual Capital Management often suffer from this heresy. To illustrate this
let us return to the plasterer example. Anyone who has tried to plaster a wall
based on the codified knowledge of a book - say, The Ten Easy Steps to Perfect
Plastering - will know the issue. Following the instructions does not mean that the plaster
will stay on the wall, or that you will not have to burn out several sanding
machines to achieve any smoothness. Too many organisations in building their
Intellectual Capital Management systems are actually creating legions of amateur
plasterers. While skills can be codified, time has to be taken to internalise
them. The management task is to catalogue the skills, understand the time
horizon and resource requirements for their acquisition and plan
accordingly.
Heuristics
heuris'tic (hur-), a. & n. serving to discover; ~method, system
of education under which a pupil is trained to out things for himself, so ~s n.
pl. [irreg. F. Gk heurisko find, see -IC]
Heuristics, or
rules of thumb, are one of the most valuable of assets and may be articulated
without the need to render them fully explicit. They are the effective way by
which we make decisions when the full facts are not known - or are not knowable in the
time available. A good example is the CEO looking at a range of
investment proposals without sufficient time - or the inclination - to go through the detailed case.
The decision criteria often take the form of a simple rule set: Has someone I
trust checked this out? Will it impact on my targets for this year? Will it distract
key staff from other more important targets? These may or may not be articulated,
but they are often known to the CEO s inner circle. They are also the
means by which experts and/or professionals make decisions in conditions
of uncertainty. An example would be: 'If the gauge goes above that level,
in these circumstances, then I'll look at the problem again.' The essence of heuristics
is that they have fuzzy edges and therein lies their power. They allow
greater consistency in conditions of uncertainty but follow the pareto principle that
80% is good enough. Over time they may become fully explicit and become
artefacts, or they may remain tacit - only available to an expert community. Recent work
with a group of engineers revealed some interesting heuristics, some of which
could be codified and distributed - but the general comments about their use were
summed up by one engineer who said: 'It's a good rule and I use it all the time - but I
wouldn't let anyone with less than ten years experience anywhere near it. Until
then they can do it by the book!'
For management, identifying and
codifying heuristics is a fast track and generally cheap way to spread valuable
knowledge quickly. The act of making the heuristics explicit can also clear away
false assumptions and out of date working practices, where the context in which
the original and mostly un-stated heuristics were developed no longer
appertains. The third in this series of articles will look in more detail at the
use of heuristics in knowledge management, drawing on ideas from complexity
theory.
Experience
exper'ience1, n. Actual observation of or practical acquaintance
with facts or events; knowledge resulting from this [ME, f. OF experience f.
L experiential f. EX1periri pert- try : see -ENCE exper'ience2, v.t. Meet with,
feel, undergo, pleasure, trement, fate etc.); learn, find; (that, how, etc.
[f. prec
Experience is the most valuable and also the most difficult of the tacit assets of an organisation. It is difficult for two reasons:
- The experience may be collective rather than individual, and
- replication of the experience may not be practical or sensible.
- The experience was collective – they were a team, and
- although it could be repeated it does not make sense to plunge a company into bankruptcy every two years as a training exercise for the finance department
Over time, story telling, war
gaming and techniques derived from journalism can mitigate this problem, but
organisations should be under no illusion – mitigation is possible, but there is
no full substitute for the experience itself. The key, then, is to understand
the dependence – and the consequent vulnerability in the event of change – to
key experiences, whether individual or collective.
Natural talent
natural (-cher), a.
& n. 1. Based on the innate moral sense, instinctive, (~ law, justice). 2.
Constituted by nature (~ DAY, year). 6. Not enlightened or communicated by
revelation (the ~ man; ~ religion, theology). 8. Existing in or by nature, not
artificial, innate, inherent, self-sown, uncultivated. 9. Lifelike; unaffected,
easy-mannered, not disfigured or disguised. 10. Not surprising, to be expected.
12. Destined to be such by nature (~ enemies, antithesis). 16. Person
half-witted from birth; person who is naturally expert in some respect; thing
that is by nature successful, a certainty. [adj. (ME) f. OF -al or L naturalis
(NATURE, -AL); n. (16th c.) f. adj. & F naturel]
tal’ent, n. 1. Special
aptitude, faculty, gift, (for music etc., for doing; see Matt. XXV. 14-30), high
mental ability, whence ~ED2, ~LESS, aa. 2. Persons of ~, as all the ~ of the
country; looking out for local ~, ministry of all the ~s; (sport. Sl.) the ~ of
those who take odds etc. relying on their own judgement and knowledge, opp to
bookmakers. 3. Ancient weight & money of account among Greeks, Romans,
Assyrians, etc., of varying value. 4. ~money, bonus to professional cricketer
etc. for especially good performance. [ME, f. OF f. L talentum f. GK talanton
balance, weight, sum of money]
Natural talent, the final component of
our model, is unmanageable. We can improve our ability to spot it, we can foster
its development and attempt to prevent corporate politics from stifling its
realisation, but we cannot manufacture or transfer it. We can build the skills
necessary to spot it, and foster the experience that will allow us to use it.
Like non-repeatable experience we need to understand our key dependencies and
measure the risk and vulnerability to loss – and take appropriate action. The
formal definitions quoted above speak for themselves
A wider perspective
The ASHEN model is
powerful in that it uses commonplace, or takes slightly unusual words (artifacts
and heuristics), and invests them with common sense meaning. It provides a
different perspective, or creates an awareness of a required change in attitude.
By asking the ASHEN question in the context of a KDP we can achieve a meaningful
answer which itself leads to action. When you made that decision, what artifacts
did you use, or would you like to have? What skills did you have or need and how
are they acquired? What heuristics do you use to make such decisions quickly;
what is the range of their applicability? What experience do you have and what
experience do the people you respect in this field have? What natural talent is
necessary? How exclusive is it? Who else has it? Such questions allow the
questioned to produce meaningful answers with minimal interference from the
questioner. How to minimise that interference to the point were it does not
influence is the subject of the next article in this series.
Most importantly, ASHEN
helps create a key shift in organisational thinking from a key-person dependency
to knowledge dependency. This essential step of depersonalisation is critical to
effective knowledge practice. It is the shift from ‘only Linda can do X’, to ‘X
requires this combination of artifacts, skills, heuristics, experience and
natural talent and at the moment, only Linda has them’. The former statement has
only crude solutions, the latter permits greater sophistication and the
potential for long lasting solutions and sustainable management action. It
achieves this by using language that describes the situation at the right level
of granularity to permit action without excessive analysis.
References
Nonaka and Takeuchi, The Knowledge
Creating Company (Oxford, 1995) ISBN 019509269
Polanyi, The Tacit Dimension
(republished by Doubleday & Company, 1983) ISBN 0844659991
Gilbert Probst, Steffen
Raub & Kai Romhardt, ‘Wissen managen – Wie Unternehmen ihre wertvollste
Ressource optimal nutzen’, (2. Auflage, FAZ Frankfurt, Gabler Verlag,
Wiesbanden, 1998) ISBN 3409293175
Snowden, D (1998a) ‘I only know what I
know when I need to know it - embracing the active management of tacit
knowledge’, Knowledge Management (Arkgroup, March 1998)
Snowden, D (1998b) ‘A Framework for
Creating a Sustainable Programme’ CBI Guide to Knowledge Management (Caspian
Publishing/Confederation of British Industry, 1998. Republished in Knowledge
Management Year Book 1999, Butterworth Heinemann, April 1999)
David Snowden is
European director of the Institute for Knowledge Management. He can be contacted
at:snowded@uk.ibm
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