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Dana Gardner: Hello,
and welcome to the next edition of the BriefingsDirect Voice of the Customer podcast
series. I’m Dana Gardner,
Principal Analyst at Interarbor Solutions, your
host and moderator for this ongoing discussion on digital transformation
success stories.
Gardner |
Our next big
data analytics and artificial
intelligence (AI) strategies discussion explores how human capital
management (HCM) services provider ADP unlocks new
business insights from vast data resources.
With more than 40 million
employee records to both protect and mine, ADP is in a unique position to leverage
its business data network for unprecedented intelligence on employee trends,
risks, and productivity.
ADP is entering a bold new era
in talent management
by deploying advanced infrastructure to support data assimilation and
refinement of a vast, secure data lake as foundations for machine
learning (ML).
Stay with us now as we unpack
how advances in infrastructure, data access, and AI combine to produce a step-change
in human capital analytics. With that, please join me in welcoming Marc
Rind, Vice President of Product Development and Chief Data Scientist
at ADP Analytics and Big Data. Welcome to BriefingsDirect, Marc.
Marc Rind: Thank
you, Dana.
Gardner: We’re
also here with Dr.
Eng Lim Goh, Vice President and Chief Technology Officer for High
Performance Computing and Artificial Intelligence at Hewlett Packard Enterprise (HPE).
Welcome, Dr. Goh.
Dr. Eng Lim Goh: Thank
you for having me.
Gardner: Marc,
what's unique about this point in time that allows organizations such as ADP to
begin to do entirely new and powerful things with its vast data?
Rind: What’s
changed today is the capability to take data -- and not just data that you
originally collect for a certain purpose, I am talking about the “data exhaust”
-- and to start using that data for purposes that are not the original
intention you had when you started collecting it.
Rind |
We pay one in six full-time
employees in the US, so you can imagine the data that we have around the
country, and around the world of work. But it's not just data about how they
get paid -- it's how they are structured, what kind of teams are they in,
advances, bonuses, the types of hours that they work, and everything across the
talent landscape. It's data that we have been able to collect, curate, normalize,
and then aggregate and anonymize to start leveraging to build some truly
fascinating insights that our clients are able to leverage.
Gardner: It's
been astonishing to me that companies like yours are now saying they want all of
the data they can get their hands on -- not just structured data, but all kinds
of content, and bringing in third-party data. It's really “the more, the
merrier” when it comes to the capability to gather entirely new insights.
The vision of data insight
Rind: Yes,
absolutely. Also there have been advances in methodologies to handle this data
-- like you said, unstructured data, non-normalized data, taking data from
across hundreds of thousands of our clients, all having their own way that they
define, categorize, and classify their workforces.
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Now we are able to make sense
of all of that -- across the board -- by using various approaches to normalize,
so that we can start building insights across the board. That’s something
extremely exciting for us to be able to leverage.
Gardner: Dr.
Goh, it's only been recently that we have been able to handle such vast amounts
of data in a simplified way and at a manageable cost. What are partners like
HPE bringing to the table to support these data platforms and approaches that enable
organizations like ADP to make analytics actionable?
Goh: As Marc
mentioned, these are massive amounts of data, not just the data you intend to
keep, but also the data exhaust. He also mentioned the need to curate it. So
the idea for us in terms of data strategy
with our partners and customers is, one, to retain data as much as you can.
Goh |
Secondly, we ensure that you
have the tools to curate it, because there is no point having massive amounts
of data over decades – and when you need them to train a machine – and you don’t know where all of the data is. You
need to curate it from the beginning, and if you have not, start curating your
data now.
The third area is to federate.
So retain, curate, and federate. Why is the third part, to federate, important?
As many huge enterprises evolve and grow, a lot of the data starts to get
siloed. Marc mentioned a data lake. This is one
way to federate, whereby you can cut across the silos so that you can train the
machine more intelligently.
We at HPE build
the tools to provide for the retention, curation, and federation of all
of that data.
Gardner: Is this
something you are seeing in many different industries? Where are people
leveraging ML, AI, and this new powerful infrastructure?
Goh: It
all begins with what I call the shift.
The use of these technologies emerged when industries shifted from when
prediction decisions were made using rules and scientific law-based models.
Then came a recent reemergence
of ML, where instead of being based on laws and rules, you evolve your model more
from historical data. So data becomes important here, because the intelligence
of your model is dependent on the quantity and quality of the data you have.
And by using this approach you are seeing many new use cases emerge, of using the
ML approach on historical data.
One example would be farming.
Instead of spraying the entire crop field, they just squirt specifically at the
weeds and avoid the crops.
Rind: It’s fascinating
because Dr. Goh’s example pertains to talent management, too. Everyone that we
work with in the HCM space is looking to gain an advantage when it comes to finding,
keeping, and retaining their best talent.
We look at a vast amount of employment
data. From that, we can identify people who ended up leaving an organization
voluntarily versus those who stayed and grew, why they were able to grow, based
on new opportunities, promotions, different methods of work, and by being on
different teams. Similar to the agriculture example, we have been able to use
the historical data to find patterns, and then identify those who are the “crops”
and determine what to do to keep them happier for longer retention.
It’s fascinating because Dr. Goh’s example pertains to talent management, too. Everyone that we work with in the HCM space is looking to gain an advantage when it comes to finding, keeping, and retaining their best talent.
Data that directs, doesn’t distract
Goh: What Marc
described is very similar to what our customers are doing by converting their
call center voice recordings into text. They then anonymize it but gain the
ability to figure out the sentiment of their customers.
The sentiment analysis of the text -- after converting from a
voice recording
– helps them better understand churn. In the telco industry, for example, they
are very concerned about churn, which means a customer leaving you for another
vendor.
Yes, it’s very similar. First
you go through a massive amount of historical data, and then use smart tools to
convert the data to make it useable, and then a different set of tools analyzes
it all -- to gain such insights as the sentiment of your customers.
Gardner: When
I began recording use case discussions around big data, AI, and ML, I would
talk to organizations like refineries or chemical plants. They were delighted
if they could gain
a half-percent or a full percent of improvement. That alone meant
billions of dollars to them.
But you all are talking about
the high-impact improvement for employees and talent. It seems to me that this
isn’t just shaving off a rounding number of improvement. Marc, this type of
analysis can make or break a company's future.
So let's look at the stakes
here. When we talk about improving talent management, this isn’t trivial. This
could mean major improvement for any cdanStaveMen66ompany.
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We are not talking about how
much more we can save on our materials, or how to be smarter in electricity
savings. You are talking about people. At the end of the day, they are not a resource
as much as they are human beings. You want to figure out what makes them tick,
gain insight into where people need to be growing, and where you should spend
the human time with them.
Where the AI
comes in is to provide that direction and offer suggestions and recommendations
on how to keep
those people there, happy and productive.
Another part of keeping people
productive is in automating the processes necessary for managers. We still have
a lot of users punching clocks, managing time, and approving pay cards and
processing payroll. And there are a lot of manual things that go on and there
is still a lot of paperwork
We are using AI to simplify
and make recommendations to handle a lot of those pieces, so the HR
professional can be focused on the human part -- to help grow careers rather
than be stuck processing paperwork and running reports.
Cost-effective AI, ML has arrived
Gardner: We’re
now seeing AI and ML have a major impact on one of the most important resources
and assets a company can have, human capital. At the same time, we’re seeing
the cost
and complexity of IT infrastructure that support AI go down thanks
to things like hyperconverged
infrastructure (HCI), lower cost of storage,
capability to create whole data
centers that can be mirrored, backed up, and protected -- as well as
ongoing improvements in composable
infrastructure.
Are we at the point where the
benefits of ML and AI are going up while the cost and composability of the underlying
infrastructure are going down?
Goh:
Absolutely. That’s the reason we have a reemergence of AI through machine learning of
historical data. These methods were already available decades ago, but the
infrastructure was just too costly to amass enough data for the machine to be
intelligent. You just couldn’t get enough compute power to go through that data
for the machine to be intelligent. It wasn’t until now that the various
infrastructure required came down in cost, and therefore you see this
reemergence of ML.
If one were to ask why in the last
few years there has been a surge to AI, it would be lower cost of compute
capability. We have reached a certain point where it is cost-effective enough
to amass the data. Also because of the Internet, the data has become more
easily accessible in the last few years.
Gardner: Marc,
please tell us about ADP. People might be
familiar with your brand through payroll processing, but there's a lot more to
it.
Find, manage, and keep talent
Rind: At ADP,
or Automatic Data Processing, data is our middle name. We’ve been working at a
global scale for 70 years, now with $12 billion in revenue and supporting over
600,000 businesses -- ranging from multinational corporations to three-person
small businesses. We process $2 trillion in payroll and taxes, running about 40
million employee records per month. The amount of data we have been collecting
is across the board, not just payroll.
Talent management is a huge
thing now in the world of work -- to find and keep the best resources. Moving
forward, there is a need to understand innovative engagement of that workforce,
to understand the new world of pay and micro-pay, and new models where people
are paid almost immediately.
The contingent workforce
means a work market where people are moving away from traditional jobs. So
there are lots of different areas within the world of payroll processing and
talent management. It has really gotten exciting.
This could mean major improvement for any company. Where the artificial intelligence comes in is to provide that direction and offer suggestions and recommendations on how to keep those people there happy and productive.
We can also show how your HCM
compares against others in your field. It's one thing to share some information.
It’s another to give an insight on how others have figured this out or are
handling this better. You gain the potential to save more by learning about
other methods out there that you should explore to improve talent retention.
Once you begin generating cost
savings for an organization -- be it in identifying people who are leaving, getting
them on-boarded better, or reducing cost from overtime – it shows the power of the
insights and of having that kind of data. And that’s not just about your own
organization, but it’s in how you compare to your peers.
So that’s very exciting for us.
All-access data analytics
Goh: Yes,
we are very keen to get such reports on intelligence with regards to our talent.
It’s become very difficult to hire and retain data scientists focused on ML and
AI. These reports can be helpful in hiring and to understand if they are
satisfied in their jobs.
Rind: That’s
where we see the
future of work, and the future of pay, going. We have the
organization, the clients, and the managers -- but at the end, it’s also data insights
for the employees. We are in a new world of transparency around data. People
understand more, they are more accepting of information as long as they are not
bombarded with it.
As an employee, your partner in
your career growth and your happiness at work is your employer. That’s the best
partnership, where the employer understands how to put you into the right place
to be more productive and knows what makes you tick. There should be understanding
of the employees’ strengths, to make sure they use those strengths every day,
and anticipate what makes them happier and more productive employees.
Those conversations start to
happen because of the data transparency. It’s really very exciting. We think
this data is going to help guide the employees, managers, and human resources (HR)
professionals across the organizations.
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Rind:
Through our journey we discovered that providing insights to the HR
professional is one thing. But we realized that to fully unleash and unlock the
value in the data, we needed to get
it into the hands of the managers and executives in the C-suite.
And the best way to do that
was to build ADP’s
mobile app. It’s been in the top three of the most downloaded
applications from the business section on the iTunes
Store. People initially got this application to check their paystub and
manage their deductions, et cetera. But now, that application is starting to
push up to the managers, to the executives, insights about their organization
and what's going on.
A key part was to understand
the management persona. They are busy running their organizations, and they
don’t have the time to pore through the data like a data scientist might to
find the insights.
So we built our engine to find
and highlight the most important critical data points based on their
statistical significance. Do you have an outlier? Are you in the bottom 10
percent as an organization in such areas as new hire attrition? Finding those
insights and pushing them to the manager and executive gets them these
headlines.
Next, as they interact with
the application, we gain intelligence about what's important to that manager
and executive. We can then then push out the insights related to what's most
important to them. And that's where we see these value-added services going. An
executive is going to care about some things differently than a supervisor or a
line manager might.
We can generate the insights based
on their own data when they need it through the application versus them having
to go in and get it. I think that push model is a big win for us, and we are
seeing a lot of excitement from our clients as they are start using the app.
Gardner: Dr.
Goh, are you seeing other companies extend their business models and rethinking
who and what they are due to these new analytics opportunities?
Data makes all the difference
Goh: Yes,
yes, absolutely. The industry has shifted from one where your differentiated asset
was your method and filed patent, to one where your differentiated asset is the
data. Data becomes your defensible asset, because from that data you can build
intelligent systems to make better decisions and better predictions. So you see
that trend.
In order for this trend to
continue, the infrastructure must be there to continually reduce cost, so you
can handle the growing amounts of data and not have the cost become unmanageable.
This is why HPE has gone with the edge-to-cloud hybrid
approach, where the customer can implement this amassing of data in a
curated and federated way. They can handle it in the most cost-effective way,
depending on their operating or capital budgets.
Gardner: Marc,
you have elevated your brand and value through trends analysis around pay
equity or turnover trends, and gaining more executive insights around talent
management. But that wouldn't have been possible unless you were able to gain
the right technology.
What do you have under the
hood? And what choices have you made to support this at the best cost?
Rind: We
build everything in our own development shop. We collect all the data on our Cloudera [big
data lake] platform. We use various frameworks to build the insights
and then push those applications out through our ADP Data
Cloud.
We have everything open via a RESTful
API, so those insights can permeate throughout the entire ADP
ecosystem -- everyone from a practitioner getting insights as they on-board a
new employee and on out to the recruiting process. So having that open API is a
critical part of all of this.
Gardner: Dr.
Goh, one of the things I have seen in the market is that the investments that
companies like ADP make in the infrastructure to support big data analytics and
AI sets in motion a virtuous adoption benefit. The investments to process the
data leads to an improvement in analytics, which then brings in more interest
in consumption of those analytics, which leads to the need for more data and
more analytics.
It seems to me like it’s a
gift that keeps giving and it grows in value over time.
Steps in the data journey
Goh: We
group our customers on
this AI journey into three different groups: Early, started, and
advanced. About 70 percent of our customers are in the early phase, about 20
percent in the started phase, where they have already started on the project,
and about 10 percent are in the advanced phase.
The advanced-phase customers are
like the automotive customers who are already on autonomous vehicles but would
like us to come in and help them with infrastructure to deal with the massive
amounts of data.
But the majority of our
customers are in the early phase. When we engage with them, the immediate discussion
is about how to get started. For example, “Let’s pick a low-hanging fruit that has
an outcome that’s measurable; that would be interesting.”
We work with the customer to decide
on an outcome to aim for, for the ML project. Then we talk about gaining access
to the data. Do they have sufficient data? If so, does it take a long time to
clean it out and normalize it, so you can consume it?
After that phase, we start a proof
of concept (POC) for that low-hanging fruit outcome -- and hopefully it turns
out well. From there the early customer can approach their management for solid
funding to get them started on an operational project.
We are using AI to simplify and make recommendations to handle a lot of those pieces, so the HR professional can be focused on the human part -- to help grow careers rather than be stuck processing paperwork and running reports.
Gardner: Marc,
any words of wisdom looking back with 20/20 hindsight? When it comes to the
investments around big data lakes, AI, and analytics, what would you tell those
just getting started?
Rind: Much
to Dr. Goh’s point, picking a manageable project is a very important idea. Go
for something that is tangible, and that you have the data for. It's always
important to get a win instead of boiling the ocean, to prove value upfront.
A lot of large organizations
-- instead of building data lakes, they end up with a bunch of data puddles.
Large companies can suffer from different groups building their own.
We have committed to
localizing all of the data into a single data lake. The reason is that you can quickly
connect data that you would never have thought to connect before. So
understanding what the sales and the service process is, and how that might impact
or inform the product or vice versa, is only possible if you start putting all
of your data together. Once you get it together, just work on connecting it up.
That's key to opening up the value across your organization.
Connecting the data dots
Goh: It
helps you connect more dots.
Gardner: The common
denominator here is that there is going to be more and more data. We’re
starting to see the Internet of Things (IoT)
and the Industrial
Internet of Things (IIoT) bring in even more data.
Even relevant to talent
management, there are more ways of gathering even more data about what people
are doing, how they are working, what their efficacy is in the field,
especially across organizational boundaries like contingent workforces, being
able to measure what they are doing and then pay them accordingly.
Marc, do you see ever more
data coming online to then need to be measured about how people work?
Rind:
Absolutely! There is no way around it. There are still a lot of disconnected
points of data, for sure. The connection points are going to just continue to
be made possible, so you get a 360-degree view of the world at work. From that you
can understand better how they are working, how to make them more productive
and engaged, and bringing flexibility to allow them to work the way they want.
But only by connecting up data across the board and pulling it all together
would that be possible.
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I’m afraid we’ll have to leave
it there. We’ve been discussing how global human capital management services
provider ADP has unlocked new business insights and services from its vast data
resources. And we have learned that by deploying the most advanced
infrastructure for AI, a new era is dawning for talent management.
Please join me now in thanking
our guests, Marc Rind, Vice President of Product Development and Chief Data
Scientist at ADP Analytics and Big Data. Thank you so much, Marc.
Rind: Thank
you for having me, Dana.
Gardner: And
we have been joined too by Dr. Eng Lim Goh, Vice President and Chief Technology
Officer for High Performance Computing
and Artificial Intelligence at HPE. Thank you so much, Dr. Goh.
Goh: Thank
you, Dana. Thank you, Marc.
Rind:
Great, thank you.
Gardner: And a
big thank you as well to our audience for joining us for this BriefingsDirect
Voice of the Customer digital transformation success story discussion. I’m Dana
Gardner, Principal Analyst at Interarbor Solutions, your host for this ongoing
series of Hewlett Packard Enterprise-sponsored interviews.
Thanks again for listening.
Please pass this along to your own IT community, and do come back next time.
Listen to the podcast. Find it on iTunes. Download the transcript. Sponsor: Hewlett Packard Enterprise.
Transcript
of a discussion on how advances in infrastructure, data access, and AI combine
to produce a step-change in human capital analytics and new business services. Copyright Interarbor Solutions, LLC,
2005-2019. All rights reserved.
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