It scares me sometimes when I think about the big decisions I’ve made on gut feel and will probably continue to make relying on my instincts.
Personally, I would love to be armed with meaningful data and insights whenever I make important life decisions. Such as what’s the maximum price I should pay for that house on the weekend, who to partner with, who to work for, and who to hire into my team. Data that helped me see a bigger picture or another perspective would be very valuable. For most of those decisions there is so much information asymmetry which makes it feel even riskier. For sure I could check out glassdoor when choosing my next job but it comes with huge sample bias and not much science behind it.
So why is there still an (almost) universal blind acceptance that these decisions are best entrusted to gut feel? Especially given the facts show we are pretty crap at making good ‘gut’ based decisions.
I’m one of those people that believe in the power of AI — to remove that asymmetry, to dial down the bias, to empower me with data to make smarter!
At a recent HR conference, a quick pulse around the room confirmed there is high curiosity and appetite to understand AI. What we’re missing is the clarity about the opportunities and what success looks like from using it. The concern about how to navigate the change management exercise that comes with introducing data and technology into a previously entirely human-driven process is daunting.
The best human resources AI is not about taking the human out of hiring and culture decisions. Far from it. It’s about providing meaningful data to help us make better decisions faster.
Having worked in the ‘People and Culture’ space for a while, I know building trust in how the organisation makes decisions — especially people decisions — is hard in the absence of data. Yet we all know that transparency builds trust. So how can you build that trust through transparency when the decision-maker is a human — and the humans make decisions in closed rooms and private discussions.
Remember that feeling when the recruiters call up and say you weren’t a good fit — who feels great about that call? A total black box cop-out response!
It doesn’t have to be this way, and the faster we can get to better decision making the better. Seven months ago, I joined a team of data scientists who had spent the prior three years building technology that relies on AI to work its magic and equip recruiters with meaningful and actionable insights when hiring.
I’m no data scientist. I have had to learn the ins and outs of our AI pretty fast. And because our technology is at work in the people space, I’m learning how to ensure the AI is safe, fair and our customers trust it and us to do the right thing with it.
If we reduce it to its core process, a machine learning algorithm is trying to improve the performance of an outcome based on the input data it receives. In some instances, such as in deep learning algorithms, it’s trying to simulate the functioning of the human brain’s neural networks, to figure out the patterns between the data inputs and data outputs.
Because it has no feelings, it’s going to be free of the biases humans bring to these critical decisions. Plus machines are more malleable to learning and way faster at it. This is more critical these days when roles are changing dynamically and swiftly as industries are disrupted.
Our team plays in predictive analytics for recruitment space. What this means is our AI seeks out the lead indicators of job success: the correlating factors between values, personality and job performance. We all intuitively know that behaviours drive leading indicators. But we struggle to assess for those consistently well.
Our job is to augment your intelligence and ability to make the right decision. By knowing how people treat others, what drives them, and their values, you become better informed about the real DNA of a person and how they might function in your team.
A powerful motivator to use AI is to build confidence and trust in the process from both candidates and people leaders by dialling down the human element (getting rid of the bias) and revealing the patterns for success. Less room for bias = more fairness for candidates = more diverse hiring. Key to this is we don’t look at any personal information — the machine doesn’t know or care about your age, gender, colour or educational background.
For our customers having this data is empowering and helps them make smart decisions. For all the people who are affected by those decisions, they can feel relieved that they were considered on their merits, not based on someone’s gut feel.
But if I have to choose between trusting biased humans and (a sometimes) biased machine they create, I know which one I would trust more. At least with a machine, you can actually test for the bias, remove it, and re-train it.
Suggested reading:
https://sapia.ai/blog/hr-job-manage-risk/
Barb Hyman, CEO & Founder, Sapia.ai
Every CHRO I speak to wants clarity on skills:
What skills do we have today?
What skills do we need tomorrow?
How do we close the gap?
The skills-based organisation has become HR’s holy grail. But not all skills data is created equal. The way you capture it has ethical consequences.
Some vendors mine employees’ “digital exhaust” by scanning emails, CRM activity, project tickets and Slack messages to guess what skills someone has.
It is broad and fast, but fairness is a real concern.
The alternative is to measure skills directly. Structured, science-backed conversations reveal behaviours, competencies and potential. This data is transparent, explainable and given with consent.
It takes longer to build, but it is grounded in reality.
Surveillance and trust: Do your people know their digital trails are being mined? What happens when they find out?
Bias: Who writes more Slack updates, introverts or extroverts? Who logs more Jira tickets, engineers or managers? Behaviour is not the same as skills.
Explainability: If an algorithm says, “You are good at negotiation” because you sent lots of emails, how can you validate that?
Agency: If a system builds a skills profile without consent, do employees have control over their own career data?
Skills define careers. They shape mobility, pay and opportunity. That makes how you measure them an ethical choice as well as a technical one.
At Sapia.ai, we have shown that structured, untimed, conversational AI interviews restore dignity in hiring and skills measurement. Over 8 million interviews across 50+ languages prove that candidates prefer transparent and fair processes that let them share who they are, in their own words.
Skills measurement is about trust, fairness and people’s futures.
When evaluating skills solutions, ask:
Is this system measuring real skills, or only inferring them from proxies?
Would I be comfortable if employees knew exactly how their skills profile was created?
Does this process give people agency over their data, or take it away?
The choice is between skills data that is guessed from digital traces and skills data that is earned through evidence, reflection and dialogue.
If you want trust in your people decisions, choose measurement over inference.
To see how candidates really feel about ethical skills measurement, check out our latest research report: Humanising Hiring, the largest scale analysis of candidate experience of AI interviews – ever.
What is the most ethical way to measure skills?
The most ethical method is to use structured, science-backed conversations that assess behaviours, competencies and potential with consent and transparency.
Why is skills inference problematic?
Skills inference relies on digital traces such as emails or Slack activity, which can introduce bias, raise privacy concerns and reduce employee trust.
How does ethical AI help with skills measurement?
Ethical AI, such as structured conversational interviews, ensures fairness by using consistent data, removing demographic bias and giving every candidate or employee a voice.
What should HR leaders look for in a skills platform?
Look for transparency, explainability, inclusivity and evidence that the platform measures skills directly rather than guessing from digital behaviour.
How does Sapia.ai support ethical skills measurement?
Sapia.ai uses structured, untimed chat interviews in over 50 languages. Every candidate receives
Walk into any store this festive season and you’ll see it instantly. The lights, the displays, the products are all crafted to draw people in. Retailers spend millions on campaigns to bring customers through the door.
But the real moment of truth isn’t the emotional TV ad, or the shimmering window display. It’s the human standing behind the counter. That person is the brand.
Most retailers know this, yet their hiring processes tell a different story. Candidates are often screened by rigid CV reviews or psychometric tests that force them into boxes. Neurodiverse candidates, career changers, and people from different cultural or educational backgrounds are often the ones who fall through the cracks.
And yet, these are the very people who may best understand your customers. If your store colleagues don’t reflect the diversity of the communities you serve, you create distance where there should be connection. You lose loyalty. You lose growth.
We call this gap the diversity mirror.
When retailers achieve mirrored diversity, their teams look like their customers:
Customers buy where they feel seen – making this a commercial imperative.
The challenge for HR leaders is that most hiring systems are biased by design. CVs privilege pedigree over potential. Multiple-choice tests reduce people to stereotypes. And rushed festive hiring campaigns only compound the problem.
That’s where Sapia.ai changes the equation: Every candidate is interviewed automatically, fairly, and in their own words.
With the right HR hiring tools, mirrored diversity becomes a data point you can track, prove, and deliver on. It’s no longer just a slogan.
David Jones, Australia’s premium department store, put this into practice:
The result? Store teams that belong with the brand and reflect the customers they serve.
Read the David Jones Case Study here 👇
As you prepare for festive hiring in the UK and Europe, ask yourself:
Because when your colleagues mirror your customers, you achieve growth, and by design, you’ll achieve inclusion.
See how Sapia.ai can help you achieve mirrored diversity this festive season. Book a demo with our team here.
Mirrored diversity means that store teams reflect the diversity of their customer base, helping create stronger connections and loyalty.
Seasonal employees often provide the first impression of a brand. Inclusive teams make customers feel seen, improving both experience and sales.
Adopting tools like AI structured interviews, bias monitoring, and data dashboards helps retailers hire fairly, reduce screening time, and build more diverse teams.
Organisations invest heavily in their employer brand, career sites, and EVP campaigns, especially to attract underrepresented talent. But without the right data, it’s impossible to know if that investment is paying off.
Representation often varies across functions, locations, and stages of the hiring process. Blind spots allow bias to creep in, meaning underrepresented groups may drop out long before offer.
Collecting demographic data is only step one. Turning it into insight you can act on is where real change and better hiring outcomes happen.
The Diversity Dashboard in Discover Insights, Sapia.ai’s analytics tool, gives you real-time visibility into representation, inclusion, and fairness at every stage of your talent funnel. It helps you connect the dots between your attraction strategies and actual hiring outcomes.
Key features include:
With the Diversity Dashboard, you can pinpoint where inclusion is thriving and where it’s falling short.
It’s also a powerful tool to tell your success story. Celebrate wins by showing which underrepresented groups are making the biggest gains, and share that progress with boards, executives, and regulators.
Powered by explainable AI and the world’s largest structured interview dataset, your insights are fair, auditable, and evidence-based.
Measuring diversity is the first step. Using that data to take action is where you close the Diversity Gap. With the Diversity Dashboard, you can prove your strategy is working and make the changes where it isn’t.
Book a demo to see the Diversity Dashboard in action.