Data Science for Managers and Directors
Over the last
few years, there has been a meteoric rise in the number of online courses and
training programs to prepare the next generation of data scientists. This is in
response to the talent gap and the perceived demand for data scientists. Though
finding a data scientist who can mine large data sets and derive actionable
insights is still a challenging task, the increasing number of bootcamps,
MooCs, post-graduate
in data science and online training programs are somehow addressing the
issue. In our opinion, there are many companies out there that are not
necessarily short on data science talent, it is that the top management of the
company does not properly use the talent they already have in the company.
Business directors, managers, and VPs must adapt to work with data scientists
if they want their company to make the best use of data; in a nutshell, they
need to be more data fluent.
While the
structure of many business organizations is highly complex, this simplified
diagram clearly shows some of the important roles in a data driven
organization.
The roles
between a data science team and the senior leadership team meet the critical
function of translating - interpreting important business plans into tangible
initiatives, framing projects for data science professionals, interpreting and
observing results from the data scientists, and communicating those results
back to the senior leadership team in a convincing manner. In order to
interpret clearly, a person should be well versed with both data and business.
We think that this translation process can be further segregated into 4
different stages: clarify, iterate, interpret, and communicate.
Clarify:
Abstract Strategy to Concrete Projects
Today
many business organizations have started embracing data to become a "data
driven organization". However, the
problem here is that “becoming data driven” is such a fuzzy concept that many
get confused in identifying where to begin. While senior leadership envisions
the big-picture goals for a business, data science professionals should come up
with tangible steps to help in achieving these ambiguous strategic business
goals.
Though it
is hard to ignore the temptation to look at available data and envision what
can be achieved, a good data science manager should always begin from the end
point, focusing on creating an experience that perfectly aligns with the
business goals, and only then examines how to technically achieve it.
Iterate:
Managing the Data Science Process
It is not
always necessary that you be a data scientist to manage a project in data
science. But it is useful to be familiar with the characteristics of data
science tasks so that every project can be effectively planned and
managed. For example, there are some
tasks that may sound easy, but are deceptively difficult. The best way to keep
a project moving in the right direction is to be at ease with fast prototyping,
iteration, and pivoting speedily towards a conclusion that meet the needs of a
senior leadership team.
Interpret:
Consuming Your Data Responsibly
Interpreting
data-driven results has never been an easy task. Reports that comprise charts,
numbers, and correlations may lead to acceptance of results as scientific even
if they contain serious errors. For managers, directors, and VPs, it is
important to be able to question a data-driven result, since this leads to an
understanding of what to trust, and eventually making the best actionable
decision from the data. When interpreting data-driven results,
a healthy skepticism is considered a manager's best friend.
Communicate:
Sending Results to the higher level
Data science managers should always
keep in mind that a senior leadership team is not as engrossed in the data as
data scientists are. Thus it becomes essential that data science managers
should effectively communicate quantitative information and help the senior
leadership see the big picture as clearly and quickly as possible.

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