Getting Better
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Getting Better

Welcome to Edition 36 of Humanity Working, brought to you by BillionMinds. This time, more thoughts about expertise and what a single drop of poison can do to your enterprise.

Aren’t they supposed to know stuff?

You might have seen this clip of Bill Gates explaining the Internet to David Letterman in 1995.

Or this one where Mark Zuckerberg explains the concept of “Thefacebook.com” to CNBC.

Both of these are fascinating time capsules - showing that as new technologies went mainstream, even the creators of groundbreaking technology didn’t truly know where would go.

And they are not alone. Thomas Watson Chairman of IBM in the 1940s (and the reason IBM’s AI initiative was called Watson) once predicted that there would be no more than 5 computers in the world. Henry Ford predicted that there would be an endless supply of fuel from fruit, and Steve Ballmer famously said that the iPhone would be an abject failure.

Why is this? After all, these leaders were among the most knowledgeable people about their domains in existence, and even they couldn’t figure it out. I think the answer to these questions says something about expertise and what we often get wrong about it.

I’ll admit I’m a bit worried about how this edition of the newsletter might be interpreted, so I want to state something important upfront. This is not one of those articles where the author claims officially recognized expertise is useless - rather its aimed at pointing out how spotting real expertise is more difficult than ever, why that’s a problem, and offers some thoughts on what to do about it.


We Are All Experts

Whatever your job or your interests, you probably know a lot about at least something. In my case, I know way too much about Orson Welles, cricket and port wine, which I’m sure will come in very useful next time I sit down with a bunch of ex-cricketers over a glass to watch Citizen Kane. But while all of these topics can and do fill dozens of books (many of which I have read), they are still very narrow. My cricket expertise doesn’t translate to baseball (which I’m a casual fan of) or, say, Kabbadi (which Wikipedia just told me is the national sport of Bangladesh).

The point here is that no one is an expert on everything, and no one ever has been. Even Leonardo DaVinci, probably the most famous polymath of all, would have been stumped if you wanted to talk poetry.

So, two things are true at the same time. We are all experts at something, and no one is an expert at everything. Not recognizing that costs us every single day.


Why did the scarecrow win an award? He was out standing in his field!

If I asked you to name an expert at your workplace, you might name your top software engineer or the woman who invented the widget you sell. Are they experts? Yes. Are they the only experts in your company? Absolutely not.

We tend to attribute expertise to two things at the workplace - easily measurable job-specific skills: “he has this PhD,” or easily measurable accomplishments: “She invented this.” But expertise is everywhere. The great middle manager who has spent 20 years in the field and deeply studied management practice? An expert. Every human working in your organization has some measure of expertise in something, and much of that expertise is untapped every day.

If we as teams and organizations can find, recognize, and celebrate our expertise, we can innovate more, build more cohesive teams, and increase engagement.


Why don’t scientists trust atoms? Because they make up everything!

Failing to recognize that everyone has expertise in something is leaving money on the table, but assuming one person is an expert in something they are not? Well, that can cost you as much or even more.

The reason for this is, at its heart, simple. Rather than relying on true expertise, you are now making impactful decisions on the counsel of people who don’t really know what they are talking about. If I want to know where to aim my rocket to Mars, I’ll ask Einstein. But I won’t ask him to operate on my appendix.

Does this really happen? It does, and not just when we start listening to Elon Musk about our work-from-home policies (or the myriad of other things he pontificates about on X). There is even a pretty cool term for it that dates back to the early 1800s - ultracrepidarianism. People often step into new domains without realizing or acknowledging that their expertise doesn’t immediately translate. And in many cases, their status and confidence cause others to overly trust them. The result? Drowning out the true expertise and a bunch of bad decisions.


The AI Expert

There is a new type of “expert” on the block—generative AI. A while back, I did a small experiment that I alluded to in a previous blog post. I presented a group of people with 200 words written by AI on a topic they were experts in and asked them to grade it. Then, I presented them with 200 words written on a topic they were not experts in and asked them to grade that. The grades in the second case were significantly higher.

There are several reasons for this, but in part, it’s ultracrepidarianism at work. AI has status, and it has confidence - and that confidence never slips, no matter how “uncertain” it is. So if we are not experts ourselves, we are likely to overtrust it.

That’s potentially dangerous - especially if it’s drowning out the voices of the real experts. This is something we go into in a lot more detail in our Thrive with AI program. For individuals, we look at how to make sure that you treat AI with appropriate skepticism, and we also look at how teams should be structured so they don’t fall victim to it.


Back to Bill

So why do these really smart technology company leaders not know where their technology is going? Of course, it is inherently difficult, but I’d also submit it because it is outside their area of expertise. These people often began as experts in a technology field and then became experts in assembling teams that could build their solutions at scale. They are not experts in how their solutions will be adopted, adapted, used, and misused in society over time.

Being a great forecaster involves thinking in terms of probabilities, balancing humility and confidence, curiosity, and skepticism, learning lessons without overlearning them, being fine with being wrong, and being an expert in their specific domain while having a beginner’s mindset. Perhaps most critically, it involves self-awareness about what they do not know in adjacent domains that may affect their judgment. It’s rare to find anyone with these attributes, and very few of them run major companies.

So, I think it’s time for us all to look deeper at expertise. Be open to the fact that we live in a world where expertise is missed, and false expertise abounds. If we can fix that, we can all get a bit smarter.



One Drop of Poison

Talking of senior business leaders, Sean Lemson, ACC CPCC has some interesting things to say about them, and they are not all good. Sean is the founder of Motivated Outcomes and the author of One Drop of Poison: How One Bad Leader Can Poison Your Company. He talked to me about it on our Humanity Working podcast.

I found the conversation provocative and interesting - he challenges much of the hero worship often afforded to senior leadership, particularly in tech companies, and asks us as individuals and leaders to really think through the subtle ways our behaviors can negatively impact culture. It’s a great antidote to many of the “How to be as awesome as me” leadership books that are out there and so well worth a read.

But don’t just read it - listen to our discussion, as we get into some specific topics in more detail and even some important company culture issues in the news today. As ever, you can listen on your favorite podcasting platform or by watching below.


Thanks For Reading!

I'm Paul and I'm the CEO and Co-Founder of BillionMinds. If you are worried about how prepared your employees are for change - change in work environments (like hybrid and remote), business strategy, or even technology changes, you should talk to us. Just reach out to me here on LinkedIn and we can get a call scheduled.

As for this newsletter - please let me know your thoughts on it in the comments (I try to respond to everything)

If you liked this newsletter, chances are someone else will too, so be sure to share it with them! Oh, and don't forget to subscribe!

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Isabel Fajardo

Director Strategic Planning and Operations | Business Management | Cross-functional Team Leadership | Business Transformation - Change Manager (Prosci) | Project Management | People Manager | Coach Certified

3 个月

Good insight!

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Peter B.

Data Security and IT Consultant

3 个月

All probabilities working in tandem with prognosticators = nobody knows

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Wyatt Nordstrom

Co-Founder at Maven Research

3 个月

Thanks, Paul, for articulating so eloquently what my colleagues and I at Maven Research have been screaming from the rafters for years. The section on GenAI is particularly poignant.

Kelly Millar

?????? & ?????????????? ???? ???? ???????????????????????????????? ????????????????. I am an expert at driving brand growth and visibility through personal branding, thought leadership, company brand building and PR.

3 个月

Great read. Let's connect Paul Slater

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