What Do Statisticians Do? Roles, Responsibilities, and Career Paths
Statisticians have long played a role in research and academia. Recently, however, there has been a spike in demand for statisticians in business, due to the proliferation of data generation and collection across industries and because businesses are now realizing the value of data-driven decision making.
With this increased demand in mind, it’s
understandable that more and more professionals are considering careers as
statisticians.
Unfortunately, the term “statistician” is
rather vague, and many people are unsure what, exactly, these professionals
actually do. Here, ISS coaching in Lucknow explore the
responsibilities of a statistician, the education and skills typically required
to excel in the role, and offer some alternative career paths for those who
want to work with data.
What is a
statistician?
At a high level, statisticians are
professionals who apply statistical methods and models to real-world problems.
They gather, analyze, and interpret data to aid in many business
decision-making processes. Statisticians are valuable employees in a range of
industries, and often seek roles in areas such as business, health and
medicine, government, physical sciences, and environmental sciences.
According to the Bureau of Labor Statistics,
which groups statisticians with mathematicians, the job outlook for the
industry is positive. Overall employment for mathematicians and statisticians
is expected to grow 30 per cent from 2018 to 2028—nearly five times as
fast as growth for all occupations.
Much of this projected growth will result from
businesses collecting an increasing amount of data from an ever-widening number
of sources. In order to analyze and interpret this data, businesses and
organizations will need to hire more people specifically trained in such
analysis.
The BLS also reports that the median annual
wage for statisticians was $91,160 per year as of 2019.
Roles and
Responsibilities of a Statistician
The specific tasks that statisticians are
expected to complete on a daily basis will naturally vary and depend on the
specific industry and organization in which they work.
Generally speaking, in the private sector,
statisticians often work to interpret data in a way that can inform
organizational and business strategies; for example, by understanding changes
in consumer behaviour and buying trends. In the public sector, on the other
hand, analyses will often be focused on furthering the public good; for
example, by collecting and analyzing environmental, demographic, or health
data.
Regardless of whether a statistician works in
the public or private sector, their daily tasks are likely to include:
·
Collecting, analyzing, and interpreting data
·
Identifying trends and relationships in data
·
Designing processes for data collection
·
Communicating findings to stakeholders
·
Advising organizational and business strategy
·
Assisting in decision making
Required Skills for
Statisticians
In order to be successful, statisticians
typically have a unique combination of technical, analytical, and leadership
skills. These include:
·
Analytical skills: First and foremost, statisticians must be
experts in statistical analysis. They must have a keen eye for detecting
patterns and anomalies in data.
·
Technical skills: To effectively collect and manipulate the data
that informs their actions, statisticians must leverage computer systems,
algorithms, and other technologies, meaning technical proficiency is critical.
·
Communication skills: Although statisticians are experts in
mathematics and statistics, they must also exhibit strong communication skills
to effectively
communicate the findings of their analysis with others in their organization. This
includes both verbal and written communication, as well as the ability to
present data in easy-to-understand, visual ways.
·
Leadership skills: Truly effective statisticians must be able to
think critically about the data that they are analyzing through the lens of key
stakeholders and executives. Learning to think like a leader can help
statisticians identify trends and data points that can make a big difference in
their organizations.
Education for
Statisticians
Many entry-level statistician roles require
candidates to hold a master’s degree, usually in statistics or mathematics.
However, those who demonstrate proficiency in
both statistical analysis as well as another subject area—for example,
economics and econometrics, computer and material science, or biology—can have
a distinct competitive advantage when seeking employment in a specialized
industry.
Students are encouraged to take classes in
computer sciences as well, which has important applications on the job. Those
specifically considering a career in research or academia are typically
required to earn a PhD.
Alternative Career
Path: Professions Similar to Statisticians
For individuals who enjoy working with data or
who exhibit all of these skills but don’t want to become a
statistician, there are similar career paths that will still allow you to put
your skills and passions to use. Two possible alternative career paths
include becoming a data analyst or becoming a data scientist.
Statistics vs. Data
Analytics
Similar to statisticians, data
analysts identify and
communicate data-driven insights that allow business stakeholders to make
better-informed decisions. Nearly all industries have a need for skilled data
analysts, at least to some degree. Industries with the greatest demand tend to
be sales, marketing, healthcare, and various sciences.
Data analysts typically work with teams to
complete projects or address problems as needed. Since most work is done on a
computer, there are possibilities to work remotely in this field.
Although at first glance it may seem
statistics and data analytics are one and the same, there are some major
differences that set these careers apart.
According to Thomas Goulding, professor for
Northeastern University’s Master’s in Data Analytics program,
statisticians are more immersed in the mathematics and computational aspects of
data. Data analysts should also have a strong feel for statistics, but their
real skills focus on being able to use tools to extract information from the
data. He points out that analysts are charged with cleaning, formatting, and
integrating data so that it can be input into software to be analyzed.
In contrast, statisticians must be devoted to
the computational nature of their work and be highly confident in their ability
to solve complex mathematical equations.
Statistics vs. Data
Science
Another possible alternative to a career in
statistics could be to pursue a role in data science. While there is a fair
amount of overlap between the fields of statistics and data science, there are
several important distinctions. For example, whereas statisticians use
mathematical analysis to solve real-world problems, data
scientists take
a multidisciplinary approach that is more focused on computing techniques in
order to extract insights from data.
It’s also important to understand the difference
between data science and data analytics. Unlike data analysts who interpret and draw
conclusions from data sets, data scientists design processes for modelling data.
A large difference between the two lies in the data scientist’s need for
advanced coding skills.
Data science is a rapidly growing field that
has caught the attention of those looking to break into a career that combines
mathematical and statistical analysis, coding skills, and substantive
expertise. Since this role is considered more senior than data analysts, it is
common for employers to seek candidates with a graduate
degree in data science or a related field.
Choosing Your Right
Fit
If you’re considering earning an advanced
degree to further your career, it’s important that you choose the degree that
will best prepare you for the career that you want to pursue. Consider your
personal and professional goals to determine which path you want to follow.
Many renowned institutes prepares students
for a successful career in this field by offering courses in statistics,
mathematics, analytics systems technology, business intelligence, advanced
analytics, business process and management, business analytics agility,
communicating with data, and more. Upon graduating, students possess a
portfolio of professional samples that demonstrate their range and depth of
skills through their participation in the institute’s renowned experiential
network.
The data analytics program is suitable for
people who are analytical thinkers and problem solvers and can be valuable to
those with virtually any background.
On the other hand, if you aspire to become a
data scientist, consider the benefits that earning an MS
in Data Science can have on your career. Not only do employers value
advanced degrees when recruiting for these positions, but choosing a program
that is rooted in experiential learning can provide you with the hands-on
learning and skills you will need to excel in the workplace.
No matter which path you choose, be sure to
evaluate both your personal and professional goals to help you decide which
career path is right for you.
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