Blog post by Great Roberts. This is a great article to print and/or forward to HR and specifically the data scientist hiring manager in your organization.
I had yet another call today with a brilliant data scientist working inside of a Human Resources Department of a major business. This HR data scientist has both a strong analytics and predictive analytics background. She has a Bachelor’s Degree in Statistics and a Master’s Degree in Predictive Analytics. She excels in R, math, predictive modeling, machine learning and all things quantitative. She is also excited about applying data science from other domains, to solve interesting workforce optimization challenges.
She applied for a quantitative HR role that promised to let her use her skills and interest in solving difficult employee-based challenges. She was hired for this role. What’s the problem you ask? HR won’t let her do Data Science.
Over and over again she has suggested a data science approach to help solve employee focused challenges that have plagued the organization for years, and cost many millions to the organization’s bottom line. Over and over again she is denied the ability to move forward.
Her comment is that HR seems to be scared or hesitant in moving forward to a new way of solving solutions. The real concern is that the “reason” was not fully discussed so she could learn.
Instead, she is asked to work on generating monthly or weekly reports that the organization has grown addicted to. When she is allowed to solve an interesting problem using analytics, and brilliantly does so, the executive HR leadership won’t give it executive visibility or implement it in production. Results are found “interesting” but not deployed. Then, she’s back to generating reports.
She isn’t alone. And, this blog isn’t about one unique HR Data Scientist. Not by a long shot. I hear this all the time – thus this blog. As a result, I also see brilliant HR data scientists jumping from one company to another. I can see it on LinkedIn updates as brilliant HR Data Scientists move from one company to the other. I hear it in the conversations I have with them about why they left and their angst before they leave.
My plea to HR (and any other department hiring a Data Scientist)?
Stop hiring real Data Scientists until you’re ready to do real data science.
I think I understand some of the problem. Perhaps the pressure on HR to begin using an analytical approach has led them to hire data scientists, but when it comes to actually using this approach it’s too foreign, or scary or “not what we’ve done before”. HR needs to learn from these brilliant people they’re bringing into their domain or stop hiring them to begin with.
Anyone can hire a Data Scientist. Not every HR department or organization is ready for data science. Generating reports are not analytics – even if they’re prettier or faster reports. Dashboards are not analytics even if they’re really pretty dashboards. More than anyone, HR should understand the devastating impact of changing job description on someone that’s been hired.
Ironically, the Data Scientist hire is perhaps one of the most brilliant and strategic hires your HR Department has ever made — perhaps ever. But only if they let her do what she was hired to do. HR Data Scientists can help move HR from being tactical to strategic, using an analytics approach to highlight never seen before patterns, make decisions based on data and the like.
Tips on letting that brilliant HR Data Scientist you hired be one of your most brilliant hires:
And mostly, don’t hire a Data Scientist if you’re not ready for Data Science. If you thought you were and you find out later you really aren’t, let them know and let them go. Be honest. Don’t put them in a different role and block them as they keep trying to be successful.
About the Author: Greta Roberts is the CEO & Co-founder of Talent Analytics, Corp. and Chair of Predictive Analytics World for Workforce. She is also a Faculty Member of the International Institute for Analytics. Follow her on twitter @gretaroberts.
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