HR Has a “Last Mile” Problem. Here’s How to Solve It

HR Has a “Last Mile” Problem. Here’s How to Solve It

Welcome to my LinkedIn newsletter! In each issue of People Analytics In Action, I'll be tackling the biggest trends and issues facing the workforce, with a focus on people data and analytics. Subscribe here for the latest.


Ever waited longer than you’d hoped for a package? You’ve experienced the proverbial “last mile” problem. A parcel zips all the way across the country, but then somehow, it gets stranded at the post office a few blocks from your home — so close, but still out of reach.

HR departments have a last mile problem too, and it’s just as frustrating. Companies are generating more people data than ever — insights about everything from how employees work best to ways to boost retention — but that intel isn’t getting into the hands of the managers who need it most, when it’s needed.??

For example, let’s say a manager needs to know what kind of raise to give a valued employee. The clock is ticking. HR has relevant data, but often, it takes weeks for someone to tally industry averages and cross-reference the employee’s specifics. In a fast-moving business environment where competition for top talent is scarce, companies can’t afford such delays, which can end up impacting the bottom line.

As the co-founder of a business that helps companies use people data to drive results, I know there’s a better way. Here’s why the last mile problem exists — and how businesses can solve it to ensure timely delivery of HR data that makes an impact.

What’s behind HR’s last mile problem?

The fundamental reason HR data doesn’t travel that last mile: It’s languishing in silos .

Essentially, there’s a wall between HR and the rest of the company. Many HR departments hoard their people data, on the grounds that it’s personal and confidential. At large companies, this siloing problem even happens within HR itself. Recruiting, talent management, compliance, learning and development, compensation — all have their own data fiefdoms.?

To make things worse, that data may not be very meaningful to anyone except HR pros. Even when it is shared, it often lacks context and is hard to interpret. That’s partly because it’s rife with HR jargon , not framed in the language the rest of the business speaks. Don’t know what utilization analysis is, or featherbedding, or negligent referral? You’re not alone.

Even familiar concepts like turnover rates can be confusing or misleading in the absence of context. HR might report that your department has a 10% turnover rate. Sounds terrible — but is it really? How does that compare to competitors? Is it impacting revenue or performance? The underlying problem: data is shared in the language of HR, not the language of business.?

Companies lacking the ability to connect HR data with business impact risk falling behind. Over a three-year period, businesses making sophisticated use of people analytics reported more than 80% higher average profit than their less data-savvy peers.

How to solve HR’s last mile problem?

Getting over HR’s last mile hurdle calls for both a culture shift and a technology shift.

Culturally, HR leaders need education around the idea that using people analytics doesn’t mean sharing personal information. Far from it. In fact, data in question can be readily aggregated and anonymized, so nothing sensitive gets divulged.?

It’s also important to drive home the message that HR’s contributions can and should go well beyond compliance and administration. After all, people are a company’s biggest line item and greatest resource. HR is ideally positioned to help connect the dots between talent and results.?

Technology can help, too, especially when it comes to getting the right insights in the right hands. Believe it or not, many companies still rely on old-fashioned charts and spreadsheets to manage HR data. I’ve seen how this creates challenges for frontline managers, many of whom lack the time, training or inclination to sit down and crunch numbers.??

The good news is that new generative AI technology is finally helping liberate that data. Using the latest tools , managers can quickly find the answers they need by asking a question in plain English. Is an employee being paid fairly? Rather than poring over a dense chart or waiting for a data analyst to weigh in, managers can get answers in real-time, with data specific to their company and the employee in question, along with industry benchmarks.?

Finally, the best companies find ways to integrate people data into the rhythms and routines of daily company culture. Instead of quarterly blasts, they share insights with decision-makers on a consistent basis, whether it’s weekly or monthly. They’re selective, tailoring reports to the department or business need in question, and they put the data in context by telling the story behind it in business language. If turnover will be 10% this year, what does that number mean for the company, and how does it stack up against the competition?

"For the business at large, fixing HR’s last mile problem equates to a sea change in efficiency and performance. Talent decisions can be made in real-time, not months (or even years) too late."

The payoff for closing the last mile

When people data gets where it needs to go, fast, the entire organization benefits.

HR can now focus on the “art” of the profession, rather than rote, time-consuming requests for information that can easily be handled by analytics tools. That means fewer hours spent on admin, compliance and tickets — and more time for the people who drive the business.

Managers get the information they need, when they need it. For instance, they can use people analytics to find out who’s most likely to leave the company before it actually happens. Thanks to today’s generative AI tools, that’s no longer a guessing game. Ask and you get a straight answer about individual employees’ engagement levels, based on data pulled from chat, email, calendars and other workplace apps.?

For the business at large, fixing HR’s last mile problem equates to a sea change in efficiency and performance. Talent decisions can be made in real-time, not months (or even years) too late. Best guesses and gut instinct give way to data-backed insights. Ultimately, the ability to draw a straight line from people to business results boosts customer satisfaction, employee retention and the bottom line.?

Granted, we’re not there yet. Institutional biases linger — from HR’s warehouse mentality toward data to frontline managers’ aversion to being analyzed and judged.?

Wariness of AI is another potential blocker, especially in the context of privacy and misinformation — areas where the right guardrails are essential. (At my company, for example, we do ethics testing of our generative AI tools to ensure that their guidance is free of racial and other bias.)

Ultimately, however, solving HR’s last mile problem is well within reach. We have the data. We have the tools to share it safely and responsibly. Now it’s time to get it into the hands of the leaders who need it most.


Thanks for reading! I'd love to hear what you’re seeing in your own industry, so please share your thoughts in the comments below. For more news and ideas on people data in the workplace, be sure to subscribe .

(A version of this post originally appeared in Entrepreneur ).


Great points, Josh. Breaking down barriers between HR and management is crucial for timely decision-making. How do you see AI being implemented effectively to speed up the flow of this critical information?

回复
David Newton

Senior Global Business Development Director @ The Leadership Board | Sales Strategy Development

6 个月

HR data is super important for deciding who gets a raise. It helps managers make better decisions about pay by giving them all the info they need. Using AI and stuff can make this process even better, so that raises are fair and in line with what other companies are doing. This helps the company make more money too.

Brad Boyson, GPHR, SPHRi, CPHR

Cofounder & CEO at HR Learn In | Convenor ISO 30414 Human Capital Reporting | Sustainability | EdTech | HRTech | | Assurance

6 个月

Great summary and insight - Thank you Ryan Wong

Russell Klosk (智能虎)

Senior Executive & Advisor to CxOs on Futureproofing your Workforce and Next Gen Talent. Author of Talent Prophecy. Innovator, Talent Strategist, Speaker, and Coach.

6 个月

Good pov

要查看或添加评论,请登录

社区洞察

其他会员也浏览了