Advanced
Computing, Part 1: Markets and Skill Sets
by Tim Smith, PhD, May 22, 2002
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For years, the major advance of corporate computing
has been the dissemination of OO programming or ERD and relational
databases. When it came to advanced computing, firms would turn
to SAS to do a little statistical analysis. Data warehouses came
on board with means to slice and dice data for decision making,
yet their cost often out-weighed their value. It doesn't take a
rocket scientist to realize that we had come to a kind of standstill
or market maturity phase.
The PhDs are finally breaking out of the research
corridors and entering business. When advanced computing techniques
first entered business, around 92- 95, they entered in the form
of artificial intelligence, neural nets, and genetic algorithms.
Initially, these techniques found their place in futile attempts
to predict the stock market. As a result of the failure of these
techniques to achieve above average returns in the stock market,
many business leaders dismissed their credibility and went back
to industry accepted OOD and ERD.
These days however are bringing a rebirth to advanced
computing techniques as witnessed in the Tedesco questions.
One of the techniques generating a new found interest
is matrix algebra, also known as linear algebra. Coupling linear
algebra with basic statistics, SmartSignal has been able to create
a tool that is able to predict system failures within complex systems.
Financially, their product has been able to reap benefits in managing
power plants and turbines, but
there are many more applications where the tool could be deployed,
such as manufacturing. Both linear algebra and covariant statistics
are taught in good mathematics undergraduate programs. Moreover,
anyone who has studied undergraduate quantum mechanics in physics
or chemistry has a firm footing in both of these areas.
A second technique that has regenerated some interest
is optimal control. I first came across optimal control theory in
David Tannor's and Stuart Rice's work on controlling molecular dynamics
dating back to 1980s. Today, Adica Consulting, in conjunction with
researchers from Argonne National Laboratories, are using optimal
control with agent based systems to optimize power trading rules
in the energy businesses. Another area where optimal control theory
is applying itself to business is along with Monte Carlo simulations
in exploring the phase-space of the economic variables of a business
to determine which path and set of criteria produce the highest
return on investment.
A third technique that is getting major press is the
use of agent based systems for managing complex problems. Even Harvard
Business Review recently posted an article about how Southwest Airlines
saved money and improved service by using an agent based model to
redesign their cargo shipping process. Agent based models rely upon
both artificial intelligence and statistics to generate realistic
models of behavior of complex systems. Although I had to do independent
research to learn about agent based theory, I suspect that the pool
of likely candidates to perform this kind of work is sufficiently
large to warrant the expectation of finding satisfactory employees
with an appropriate skill set.
The difficulty with exploiting these new techniques
is that the skill set of computer scientists or database architects
do not neatly match the skill set required to reap the benefits
of the advanced computing techniques. The individuals that understand
advanced computing techniques are available, but their background
is likely to be highly academic and low in actual job experience.
While many business people consider multivariate regression analysis
to be hard, over 1000 physics PhDs, who graduate each year with
pathetic job prospects, consider statistics to be child's play.
If we throw in the Chemists and Mathematicians, we will quickly
find a pool of 5000 PhDs with experience, at least tangential, in
these areas. Yet hiring them would require managers to forego requiring
10 years of job experience for a 30 something year old and accept
that education and post-doctoral research might actually be worth
more than a stint at Proctor and Gamble or Accenture. Hence, if
a firm wanted to capture the next wave of computing, it may have
to make a risky investment in acquiring a new skill set, not to
mention marketing it.
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Tim Smith, PhD is a principal at Wiglaf, a Market Research and Sales
and Marketing Strategy consultancy serving tech-driven businesses
operating in business markets. Small and medium sized businesses
select Wiglaf for our quantitative and fact driven approach. www.wiglaf.biz.
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Also Appearing in
The May Report, TECH BUSINESS BRIEFS, May 22, 2002
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