In our
daily lives, we use personal biases, intuitions, and gut feelings to make our
decisions. And that’s perfectly fine. They serve us well in many ways.
However,
when it comes to improving work performances, personal biases, intuitions, and
gut feelings just don’t cut it.
Data can
improve your own, your team’s, and your organization’s performance; people
analytics can help. People analytics is the data that
identifies workforce patterns and trends. Here are some questions that can be
answered with people analytics:
- How engaged are our employees?
- What skills does my organization need to invest in, to achieve our mission?
- Why are my employees leaving the organization?
A
brief primer on people analytics
Before we
answer why employees are leaving your organization, let’s start by defining a
few terms:
So
who uses data?
One group
of people who use data are data analysts. Data analysts organize, examine,
analyze and use data to draw meaning. They tend to focus on understanding
previous events to describe things that have already happened.
Big data
refers to enormous volumes of data. We’re talking millions of cases. Big data
require a special skill set to effectively manage, organize, examine, and
analyze.
Data
scientists are the people with those skills. Data scientists use machine
learning and algorithms to work with and draw meaning from big data. While they
can use their data to describe things that have already happened, like data
analysts, they have additional skills that allow them to use their data to make
predictions. These predictions tend to center on how likely something is to
happen and estimate the consequences of its occurrence, using data about events
that have already happened.
The data
analysts and data scientists that work in people analytics use their skills to
understand and improve the workforce. People analytics is the application of
data science and data analytics to understanding human resources and human
capital processes in and across organizations. You may have heard people
analytics referred to as talent analytics, HR
analytics, or workforce analytics.
Even if
data analytics, data science, or people analytics aren’t skills you currently
have in your toolkit, you can still benefit from people analytics to better
understand your workforce.
I’m
just not a data person
Right now
though, you may not see your relationship to data. You might even be thinking,
“Listen, I’m just not a data person.”
And to
that, I’d ask you a few questions. Do you:
- Track your steps?
- Check your ‘likes’ on Instagram, Facebook, or LinkedIn?
- Post on social media at particular times of day, with the hopes of reaching a wider audience?
Steps
to using data
Using data
to improve your organization’s performance is the essence of people analytics.
Let’s pretend you work for a tech company that builds educational phone apps
targeted toward getting girls interested in STEM. In the last two years, the
company grew from three people to 75 people! However, you’ve noticed that even
though you’ve grown, you tend to be losing some of the best sales people and
programmers. They’re getting replaced, but why are you losing the good ones?
Using
data to answer questions
That is a
people analytics question. Now let’s talk about how we use data to answer these
questions. As I mentioned, we have our
intuitions and gut feelings, but these amount to anecdotes. While they help get
us interested in topics and can help us to start formulating a more scientific
response, they are not subject to the rigorous treatment data require. As a
result, we cannot trust the validity of anecdotes over the validity of sound
data.
Define
your Questions
The way
that you can harness data to improve your workforce is through a scientific
approach. The first step is to define your question as best as you can. Be as
precise as possible here; you’ll need to refine your thought to a point where
the question is answerable. For example, you might start with a question of “Why are people leaving the organization?”
but eventually wind up with, “What percentage of the workforce plans to stay
with the company in two years?” It’s not the only question you could ask, but
it is a start.
Qualitative
or Quantitative Data?
From here,
you need to figure out the type of data you need to answer your question:
qualitative or quantitative? Qualitative data is data concerned with
descriptions, which can be observed but cannot be computed. On the contrary,
quantitative data focuses on numbers and mathematical calculations. It’s
important to note that one type of data is not better than another; determining
which data to use depends on the question you ask. Answering “Why are people
leaving this organization?” will use qualitative data. Determining “What
percentage of the workforce plans to stay with the company in two years?” will
likely use quantitative data or both.
Collecting
data
Once you
determine the type of data you need, it’s time to collect your data.
Qualitative data can be captured with interviews, surveys, focus groups and
workshops, whereas quantitative data is often captured through recorded
workforce data.
Cleaning
data
Then,
before we can analyze it, we have to ‘clean’ the data, which is just fancy-talk
for making-the-data-work-for-us. You might need to “recode variables” or
“create an index” using the data.
Analyze
data
Once the
data are clean and ready to go, we analyze them using the appropriate
techniques. The technique will vary based on the type of data you have, the
type of question you have, and your desired end state.
Putting
data to work
The next
steps are to use those data for something and put it in action at the micro-,
mezzo-, and macro-level. For example, you can answer questions about attrition
by reviewing individuals’ performance appraisals. At the mezzo level, you could
also look at how teams compare, or perhaps other sites. We can also take a
macro-approach and look at organizational performance over time
and see which areas have improved and which areas can use further improvement?
Any level can help you identify why employees are leaving your organization.
As you can
see, while the idea of people analytics can feel overwhelming, breaking the
process into steps will help you make data-based decisions about your
workforce. And using a systematic approach will guide you on your people
analytics journey. Want to learn more? Contact
us now.
0 comments:
Post a Comment