In Good Company with Nicolai Tangen - IBM CEO: Transforming a Tech Giant, AI Bets and Quantum Computing
Episode Date: May 6, 2026Nicolai Tangen sits down with Arvind Krishna, Chairman and CEO of IBM, for a wide-ranging conversation on technology, leadership, and reinvention. Arvind shares how he has reshaped one of the world's ...most iconic companies into a growing force in hybrid cloud and AI, and why he placed an early, decisive bet on AI long before it entered the mainstream. They explore the opportunities and risks of the current AI boom, IBM's push into quantum computing, and what it takes to reignite a risk-averse culture. Arvind also reflects on leading a global organization operating in more than 170 countries, and the lessons from his 35-year journey at IBM. Tune in for an insightful conversation!In Good Company is hosted by Nicolai Tangen, CEO of Norges Bank Investment Management. New full episodes every Wednesday, and don't miss our Highlight episodes every Friday. The production team for this episode includes Isabelle Karlsson and PLAN-B's Niklas Figenschau Johansen, Sebastian Langvik-Hansen and Pål Huuse. Background research was conducted by Karoline Woie. Watch the episode on YouTube: Norges Bank Investment Management - YouTubeWant to learn more about the fund? The fund | Norges Bank Investment Management (nbim.no)Follow Nicolai Tangen on LinkedIn: Nicolai Tangen | LinkedInFollow NBIM on LinkedIn: Norges Bank Investment Management: Administrator for bedriftsside | LinkedInFollow NBIM on Instagram: Explore Norges Bank Investment Management on Instagram Hosted on Acast. See acast.com/privacy for more information.
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Hi everybody, I'm Nicola Tangan, the CEO of the Norwegian Southern Wealth Fund, and today I'm in particularly good company because I'm with Arvin Krishna in New York, and Arvin is the chairman and CEO of IBM, one of the most iconic technology companies in the world.
Arvin has been with IBM for over 35 years and became the CEO in 2020 and have since orchestrated one of the most striking turnarounds in Big Tech.
When he took over, IBM had been declining for years and today is growing.
faster than it's done for a long time.
So, are in a warm welcome.
Thank you, Nikolai.
It's always good to talk to you.
Absolutely.
Now, a lot of people still think that IBM
is a kind of company from another era,
and you have changed that.
So today, what does IBM do?
IBM is largely a hybrid cloud and AI software company.
We have made the transition to that's almost half
our total revenue.
We have another third that is in consulting,
and we try to help our clients,
for the current era of digital and AI,
and then we have about 20% that is hardware.
I realize many people think that we are largely a hardware company,
but that is just a fifth of the company.
A very important piece, but a very small piece.
When you took over as a CEO,
the IBM had been declining for some time,
what was your diagnosis?
I always like to sit back and think,
what are your strengths and what are your weaknesses?
So as I talk to our own team and as I talk to clients,
It comes out that we were trusted, but we were considered to be part of the past, not necessarily the future.
So my diagnosis was you have to do things that are relevant for people's future.
They're not always the biggest revenue in a month or in three months or in one year,
but they become the big revenue over the next many years.
So we began to, A, say, what are we good at?
And then can we double down?
Can we double down on helping people transition towards a hybrid cloud?
We were strong believers that sovereignty would remain important for many, many years to come.
And so you double down on the portfolio that helps them do those things.
And back in 2019, I was convinced that AI would be big.
It took another three years for the world to wake up to that.
World made you so convinced at the time.
Data is going to overwhelm you and value is going to be derived from data.
What can unlock the value from that much data?
The only technology we knew was AI.
You made some big acquisitions.
and a very large one, Red Hat, which has been tremendously successful.
Just tell us about that.
So in 2017, I came to the conclusion that public cloud is very important,
but that IBM becoming a big investor in public cloud is probably not good for us.
It was a pretty economic conclusion.
When you were that far behind, you would have to spend multiple billions,
five to ten billion a year to try and catch up.
And if you think at the end of five years, you're still going to be number five, that doesn't
seem like a worthwhile investment.
So instead, I wanted to partner with all the big cloud providers.
And Red Hat, there were only two or three companies, I thought, that could help give us
the portfolio that makes us a great partner for all of them, that helps their business
and helps our own.
Hence, Red Hat.
What is the analysis that goes into such a decision?
You got to see, because in some areas you can say, I can compete because I can actually build something.
And at the end of that time, I can carve out our own niche or your own market share.
I felt that the others were spending so much that they would remain ahead.
So that is not purely financial analysis.
That's also analysis based on looking at the technology trends and at the strength of their technical teams in addition to the pure numbers.
Then you say, okay, if it's going to take a lot of capital investment, then is that capital
investment going to have its ROI or not?
That is perhaps much more analytic than not.
And then is there an alternate capital investment that pays off better?
I felt that if we put our capital into doing software M&A, that's probably a better return
for IBM.
Maybe I'm lucky, maybe I'm smart.
That's what the last six years have shown.
Yeah.
Well, I suspect you have been both.
Well, we need, I mean, it was a very smart decision and you've been proven right.
Now, you also spun off the IT services business, which was like a huge part of your number of people, right?
A third of the workforce.
What was the thinking behind that?
So the negative always is that these are clients that are intertwined with everything else we do.
So trying to separate it is painful.
Let's acknowledge that for the employees and for the clients.
I was clear.
I mean, as you began, you said, IBM was declared.
I was clear that revenue growth is essential.
If you say and conclude revenue growth is essential, then something which is itself declining
at 5% is something that should not be part of it.
Otherwise, your target for growth becomes that much harder.
That depends, everything else would have to grow at 10, not at 5.
So the revenue decline, and I felt that there was an area that didn't quite fit us well
now, though it did very well 30 years ago.
I wanted to have a company that is based on innovation, that is based on high margins,
and that can grow.
That is an area where people look for stability, not innovation.
It's an area where it is not going to grow because I think it is fundamentally deflationary,
and it is not going to be high margin because it is, by its nature, it's going to be decent,
but not high margin.
So that made it a decision to say such a company is probably a much better,
serve by being by itself and can unlock more value for its investors over time as opposed to being
part of us.
The latest you've done is Confluent.
What does that add to the business, you think?
So I think that back to why can you get more value from data?
AI is one thing.
But then you've got to be able to expose the data to all of AI.
Confluent is the best infrastructure for beginning to move data and for exposing data for everything
else. Also, there are so many companies that struggle with having real-time data. Conflient with
the Ska backbone is the best in the world at taking data and making it real-time for all the
purposes that you might want to use it for. So those two things together make it like a, it's a
wonderful acquisition, I believe, Time Bill's going to show how great it is for us.
It's for sure a great company and great product. But what, to which extent you integrate
these acquisitions or, you know, your view on letting them do the
on things and operate on the run.
The only one that we have not fully integrated yet, and I'll emphasize the yet, is
Red Hat.
And all the rest, I always look for three things.
It should be a great capability.
So to the point you're making on integration or not, you've got to make sure that even if you
integrate, the engineering team who's building that great capability still has freedom to
build it because they are the ones who really should be in charge of what they are building.
We'll try to bring them more of how they build.
We'll bring them more AI.
We'll bring them more tools.
We'll bring them more global capability.
But they should remain in charge of that.
On the go-to-market side, I really firmly believe in full integration.
Because in order to unlock the value of many of these companies, we can take it to more clients.
We generally have a presence in far more countries and geographies than anybody we acquire.
But to do that, you've got to integrate.
Otherwise, you've got to grow a unique capability.
everywhere else. So we believe that bringing our digital capability, our geography footprint,
our complete international go-to-market capability is a big plus for all of these entities.
The third part, to operate, you also need to worry about compliance, about contracts, about
recruiting, about HR, about payroll, about taxes, about cash management. There is no value to me
to have those as unintegrated functions.
So those, my love would be to do it on day minus one,
but to be fair, it takes a few weeks or months to get it done.
You said you haven't integrated it yet.
What does yet mean?
I believe that we are right now in the process, even in Red Hat,
that what I call the third bucket around HR, legal, contracts,
cash management, treasury, all the,
that we did over the last two years. So that's done. Now, Red Hat definitely had more scale.
So they were not going to get an advantage of being integrated with IBM, let's say in the
UK or Germany, unlike smaller ones like Confluent. So we let the go-to-market be independent.
I think that we are now discovering that even on the go-to-market, there are areas around
digital that are outside the top few markets where integration is going to help more than be
detractor. Engineering in Red Hat, I actually believe, given the open-source nature of Red Hat,
is going to have to be its own function. So engineering, I will likely not integrate because
working at their scale of open source, maybe that is one where IBM learns from them
and things that are open-source should belong much more in the Red Hat methodology than ours.
What's the best thing you've done since you became CEO?
Make the culture much more willing to take risk. I think that we had become a very very
very risk-averse culture, that is not the thing I would have told you if it asked me on the first
week. But after a couple of years of observing and doing, I think that making the culture much more
willing to take risk is the biggest thing I've done. How did you do it? It becomes a question
of you have to first ask yourself that if I don't like the culture taking risk, why is that?
You've got to begin to understand that. And I think these lessons are drawn from whether it's
biology or whether it's history. You said we were declining. When a culture begins to decline,
the focus becomes inward. And I think it's a natural, I don't actually call it malicious.
Human beings are very good at saying, how do I survive? If the culture isn't declined,
then people begin to say, I survive by not raising my head, by not looking like an outlier.
And so it becomes the thing which becomes self-reinforcing, not necessarily by design.
So then you have to say, how do you unlock that capability to take risk?
You've got to hold up examples.
You've got to tell people I want you to take risk.
I tell people, don't give me a 90% confidence, give me a 50% confidence.
And then you lean into it, recognizing they're probably not going to meet the timelines
of the quality you want at 50.
So you build a bit of a buffer.
But dejoling them to go down that path is a big unlock then in total productivity and in
how delighted clients feel.
Do you think also there is a factor of, you know,
a fact that when you decline,
a lot of the risk takers leave the company,
and so you are, in a way, stuck with the most risk-givers people?
That is definitely a big piece of it.
But then if you can unlock risk-taking even amongst those that are left,
of course you've got to get new people.
I'll completely acknowledge that.
I think a 10 to 15% refreshment rate per year is a great one.
But you can actually unlock even that,
Because my point being, if the ones who are risk-averse, it's a learned behavior as opposed to inherent in them, then they can unlearn it.
If it's truly inherent, then that's different.
So that's the best thing you've done.
What's the worst thing you've done?
I think I've been slow so far in terms of client expansion.
I think that we are very good at dealing with large clients and many of our people and probably myself turn that your B to B into thinking that you're B to large B.
You need to be good for B2B to everybody.
And I think that those are things that we are yet to unlock.
And how will you unlock that?
A lot of focus on it.
You got to say the longer tail is not going to necessarily want to buy everything that we sell.
We tend to have a habit right now of everybody should buy everything.
So you've got to then get more focused in what you do there.
Those people also are not making large decisions.
They're not viewing IBM as their partner.
They're typically purchasing a capability.
So you've got to be really good at saying, okay, if all you want to buy is that capability,
I'm going to give it to you at a great price and a great quality.
So you've got to begin to do those things.
But those are changing some of the plumbing of the company in terms of how you sell, how you price, how you go to market, all of that.
Moving to AI.
Which part of AI is a bubble?
I think that some of the infrastructure build out is probably a bit ahead of what the world is.
can tolerate for the next few years.
The way I would phrase it as, because I've been accused sometimes by saying that it's
not a bubble, but I believe that...
Which is kind of why I posed a question a bit carefully.
Some will disappoint, many will thrive, but not all will thrive, is the way I would phrase
it.
So when you say the infrastructure billard is a bit ahead, what does that mean?
Look, by the math that I have done, about a gigawatt of power, you can debate, but it costs
you $60 to $80 billion worth of semiconductors to go populate it.
So if you look at people who have committed over 100 gigawatts of AI data center buildout,
that points to $6 to $8 trillion worth of a buildout.
If you say that that's got a five to seven year payback, you are going to need an
an extra $1 to $2 trillion a year of revenue, because inside that one to two, even if it's high margin,
that high margin would be 20 to 30 percent.
So that much incremental revenue, I don't believe, is there.
And so that's why I think it's a bit ahead.
I also believe on a second one that many of the largest models are going to be a commodity.
Commodities can have a lot of value, but there is low switching costs usually between commodities.
If there is low switching cost, that means you can have a margin, but it's not going to be
a margin with a massive moat around it.
So those two make me believe that perhaps there aren't going to be a half dozen to a dozen
companies who can build the largest models and survive, maybe two or three.
And that then tells you the second side of it is how much can be the total capital expense
that goes into the data centers.
If you had said it was half as much as today, I would have said that completely makes sense.
I mean, that aligns.
But when it's double of that, then maybe some of those are not going to be able to get a great return.
So who are going to be the losers?
That is very hard to predict.
I mean, like having gone through a few technology cycles.
Sure.
I'm pretty different.
Who's going to be the winners?
Generally from AI?
I think, look, look, some of them that already have a very large consumer business,
that means you have a natural distribution advantage
on the consumer side.
On the enterprise side, I think it's wide open to decide who's going to win.
I don't think that that is predetermined.
On the consumer side, I think history has shown us if you have distribution and if the
distribution is aligned to AI, there's a pretty good chance you will be one of the winners.
Are you surprised that the research attack overhang, that we are so slow in utilizing
the full capability of this technology?
No, there's a human time scale always.
Technology can move at its rate and pace, but people take time to, because you get into the questions always of, is there a risk?
Am I going to lose something?
Always you get both sides of those voices, whether you go back to the 1700s Industrial Revolution, or whether you look at the last one, which was the Internet era, or you look right now at the AI one.
You get those voices that makes some people run and embrace.
It makes many kind of watch cautiously on the sidelines, and it makes some dislike and hate it.
So as you look across those three, each one I'll just observe has gone faster.
So if I look at computers and semiconductors from the 50s to the 70s, probably took 20 years to get fully embraced.
If you look at PCs that was circa 1980, probably took 10 years to get fully embraced.
If you look at internet, that probably took five years, 95 to 2000.
So this one, but it's still years.
It's not yet months.
So how long will this take?
I think we are right now, I used to say if I do a baseball analogy,
and our global audience may not always love baseball and no baseball.
About innings and stuff?
Innings.
It has nine innings.
I used to say AI was in its first innings.
I would say maybe it's in its second innings.
now. So if we are in the second innings, it probably is going to take three, four years
to get enough to embrace it, but probably not, definitely not 10, but not, it's not already
done. But when you talked about this sort of technology shifts, how would you compare the
AI advancements compared to those shifts? I think it's bigger than mobile and it's bigger
than cloud. It's probably in the same category as internet. If you go back to 1995, I use
95 because you are much more, I mean, many clever people say it's like 10 times the internet,
but you don't think it's that. No. And you are very clever, by the way, I should mention that,
not that he needs to explaining that our mutual friend Malcolm Gladwell said that you were the
cleverest person he had met. I don't know whether I'm the cleverest, but I'm older than many,
and I have been around a few of these. The internet to me was fundamental. If you think about it,
because many people don't realize the scale of global business that happens today is because
of the internet.
The ability to move work in technology from country to country is because of the internet.
The fact that a small producer, be it in Europe or be it in Africa or in China, can sell and
be part of the supply chain for a global corporation anywhere in the world, is because of the
internet.
If I look at that, the internet has had a massive impact.
The direct revenue, even to the technology providers, is measured in the trillions today.
The rise of all the social media companies could not have happened without the internet.
The rise of cloud could not happen without the internet.
If I include all those as the impact of the internet, then AI is going to be in that
category.
But do you think you are biased in your assessment of AI, given that you have tried before
and failed?
The fact that we tried, failed, but remained committed.
And I made the bet on AI in 2019 again before the Advent of Chat GPT says, no, I don't think we are biased or jaded because you can imply that in your question.
I actually think it's going to be very, very powerful, but it's in the same.
But tell us about, I mean, you tried with Watson, right?
Just tell us about Watson.
I think that Watson was the right goal at the time.
What was it?
So in 2011, we wanted to prove that AI can do and solve problems that were unimaginable.
At that time, people couldn't imagine that you could do natural language, question and answers
on kind of a gray area using AI.
Winning the game Jeopardy, which had these questions in English, but with all kinds of hidden
ponds and language and that had to be interpreted, not just the black and white question,
prove that AI can do those things.
Then you could say, but you failed.
Why did you fail?
The reason is we took that technology and we said, we want to construct monolithic applications
and we unfortunately picked the vertical that is the hardest health.
That was the mistake.
If we had taken it and said, let's use it to help corporations get better.
Let's use it to let their customers get better customer care.
Let's use it to digest all the documents that enterprises have.
I think we would have been five years ahead or where we are today on AI.
But it would have been a long journey.
because the technology then was still what I call bespoke.
What I call bespoke is, yes, AI worked,
but it worked when you had one use case with one corpus of data.
Today's AI actually can do many use cases.
So that's a big advantage.
Two, you don't have to relearn if some of the data changes.
You can add the new data and add to it.
Those two things make it much more industrial scale today than the one from 10 years ago.
And that is why we didn't succeed then, but I do believe that we will succeed this time around.
Are you basically building the infrastructure layer that the AI systems need?
We are not.
We rent the semiconductors from other people as appropriate.
So you can imagine all the big cloud players.
I won't name them on this call, but we tend to use many of them.
We tend to not build frontier models, those we will get from those.
The point I had made earlier, I believe that there will be low switching costs.
This will be based much more on what are the T's and Cs, how can you have a business relationship with our providers.
We will build small domain models when necessary, but not because we necessarily want to,
but because very few people are building the smaller models that can then augment the bigger models.
So we will actually, we have a belief that most people are going to be multi-model down the road.
and so we want to help enable that for our clients.
Yeah, and you got like granite and so on, right?
We have open weight models called the Granite family,
but in there, I'll note we have not built a single model
that's over 100 billion parameters,
and the biggest ones now are in the trillions.
So we don't want to go there because we believe those are good enough.
We don't have an advantage in coming there,
but we build many because smaller models are going to be much more power-effective
to operate, or much more cost-effective to operate,
operate, and where people care deeply about where is the data, they could operate them on
premise or at the edge, which is an advantage for some workloads and some clients.
The Chinese seems to be agreeing with your thinking.
Or?
I think that the Chinese are very focused on enterprise deployment, and they're very focused
on sovereignty.
We can ask ourselves, how many people should care about those same two attributes.
So if you just look at how you work with AI differently from the likes of Microsoft, Google, Amazon,
what would you say it is?
So many of them today are very focused on having a consumer approach to AI,
which is, I want to build a single thing which hopefully more and more of the billions of people in the world can begin to use.
That's not us at all.
We want to build great AI that our clients, is it Nestle, is it Elevance, is it?
is it Pepsi?
Is it Bank of America?
Can they use this?
And that's a very different goal.
So I am not ever going to build one thing that everybody is going to use.
We are very much focused on building that, which our clients need, and which is probably
not the consumer side of their business.
It is the enterprise side.
Can I help them on procurement?
Can I help them on accounts payable?
Can I help them on how they are.
leveraging data for their own business decisions.
Can we help them on all those things?
Is where they will tend to use us for artificial intelligence.
When you see things like the latest anthropic model, which is so powerful, they can't
even release it, what kind of reflections do you have?
I have two.
At a very deep computer science level, this is not new.
Let me observe.
clever people with extremely sophisticated tools have been able to find vulnerabilities
and have been able to exploit them for decades.
Yeah.
I remember when I was in graduate school, this is 35 years ago, we had the modest firm
that came out of a really clever kid at Carnegie Mellon.
Okay.
But if AI can inherently use some of those capabilities and you can harness or harvest or
harvested into that, that means you're now letting a person with a high school education
able to exploit these models to do what those really well-trained, really clever people
did.
That opens up the speed aperture, unfortunately.
So these models may well be able to exploit things in seconds that used to take really clever
people months to get done.
So the intensity and the speed is what we have to worry about.
It's not the fact that it exists.
It has always existed.
But that means that you have to be able to have layered defenses
and you need to pick your right partners to help protect the enterprise
because I actually think that some of the smaller vendors
may not have the capability to defend against these models.
Do you think there will be a requirement to pre-release models
to some kind of regulator or oversight function?
to make sure it's not too powerful before it's released to the public?
I think that that sounds good on paper.
So in practice, how do you do this globally?
Because you can say that here.
So do you stop the Koreans from doing it?
Do you stop the Chinese from doing it?
How do you get to being able to control these things globally?
Can AI be regulated?
I am skeptical that the technology can be regulated.
I believe the use cases can be.
because it's embedded in all their races.
It's physical goods that are tangible
are possible to regulate
because you can put border conditions
because there is a weight to them.
You can control how much and where.
A digital good that can cross a boundary,
I think is really hard to regulate.
If you think about some countries in the world
that some or the others don't always love the regime
and that site tries to control internet access,
you tell me how effectively they can or cannot do it.
Is software going to die, you think?
Your stock was down 13% when Claude Code was released.
No, I'll give you my reason for explaining why.
So we didn't talk about demographics,
but if the number of people in the world is going to decrease,
then seat-based software, by definition,
has a smaller market 10 or 20 years down the road.
I think investors are quite smart
at recognizing long-term trends.
So I think one thing is,
how well will seat-based software do?
Let me fully acknowledge to you,
I think AI and agents will replace some of the front end
of MUT software.
But if you replace the front end,
then by definition, it has less total value.
So you combine fewer seats, less value for some things.
That said, the system of record, the database that contains the business function, the business logic, that is still important.
But I do think that the value for some of the software where the front end was the prime value, that is going to decrease.
And then to give full credit to the investor, they're saying, look, I can't decide today who falls into that camp, who are the
few who might benefit, and then let's acknowledge, maybe half are not going to have a help or a hurt.
If I can't determine that, I'll take the sector down, and then over time, that will determine
itself based on the numbers that you print.
So I think that I could see that a fourth of people where the valley was largely the front end
could actually have a long-term impact.
That would kind of be where I would finish this.
So I would look at you and say, no, I actually think that we were hit in a way that was unfair.
But look, the market, depending on who you talk to is down from anywhere to 40 to 60 percent in software for many companies.
And we are down about 25.
So in some sense, we are taking a hit.
But I think that means there are enough people who also think, wait a moment, you may not get that full hit.
And so that's kind of where we are.
Talking about unexpected hit, your mainframe business is thriving, right?
And a lot of people didn't think it would.
The thing which CloudCourt thought that it is going to replace is the thing that is thriving the most.
That's interesting, isn't it?
Yeah.
So why is mainframe still thriving?
Because the mainframe workloads tend to be workloads in critical industries.
They're doing workloads like retail banking.
They're doing workloads like credit card, transaction.
authorization. They're doing workloads like airline reservations. They're doing workloads
around warranty and maintenance. It's systems of record. It's places where that full six to nine
nines of availability. I want to make sure that the transaction is not corrupt. I need to make sure
I can get the batch workload done in 20 minutes at 5 o'clock. Those workloads are only increasing.
But should those workloads have been moved to cloud already? If you want to pay three times as much.
Right.
So economics would dictate that that's the more expensive answer.
Did you think when you became CEO that Mainframe would continue to grow?
I was 100% convinced of it.
Really?
Wow.
So the 10 years before I became, Mainframe was declining.
It's surprising, isn't it, that in the last six years, mainframe has grown every single year.
It's incredible what one person can do.
It's not one person.
It is unlocking, back to risk-taking.
It's unlocking the enterprise.
Many people there believed it could.
And so you had to unlock them and give them the,
the environment which allowed them to succeed and thrive.
We have built AI into the mainframe.
That was not being done a decade ago.
We built more and more capability.
We built and encouraged our partners to build more software.
Actually, we built our own cobalt conversion code
leveraging large language models three years ago.
So it's harnessing innovation
and putting it into the platform
that then allows it to thrive.
And you put AI,
on the platform before Chiatimiti existed.
That is correct.
We put it on the platform in 2021, then we put more in 2024,
and then we put even more this year.
And you have, tell us about this new version, the Z-17.
So in the Z17, we decided to do three things.
One, we put a, it's a mini-GPU is the best way to think about it,
right on the main processor.
So you could actually,
do, I'll call it smaller models, not as you very large models, right in line.
So if you're doing a credit card approval and you want to approve your transaction,
previously you would do sampling.
You would take some transactions off the platform, see whether there's fraud, and then if
there's a transaction like it, you would block it.
Now you can run that model right in line.
Then we said if that's useful, should we put more?
And then we added our what we call the Spire card that lets you in a fully populated
mainframe do 450 billion inferences per day on the platform at zero latency and right in line,
so no extra cost.
That means you don't have to move all the data, you don't have to live with the seconds
of latency of taking it off platform, and those are very powerful in terms of the capability.
And the third one, which people have begun to wake up to, is we have post-quantum cryptography
built right into the platform.
So you can, for the data you think, could get attacked by quantum computers down the road,
allow it to be pretty safe on the mainframe.
Well, let's spend some time on quantum computing, which is one of your big bets, right?
For somebody who listens to this program, who is not very technical, in simple terms,
what is quantum computing?
So quantum computers at one level, and I'll just geek on the science for 10 seconds and get off,
are trying to harness properties of quantum mechanics to do a new kind of math.
That's the simplest way to explain it.
So if I think about normal computers, they do arithmetic.
You know, think of high school arithmetic and algebra.
That's what they do.
But they do it at incredible speed, so that looks remarkable.
Then we can say, what do GPUs do?
Because with the advent of AI, GPUs have come into the parlance.
GPS do matrix mathematics.
Let's just put it that simply.
But matrix math unlocks a lot of problems that would be 10,000 times slower to do on normal computers.
Such as?
For example, if I want to do an LLM, to do an LLM on a CPU would probably be so slow none of us would care.
But you can do these large language models.
You can recognize, is this a cat or is this a dog or is this a human being in a photograph?
is kind of what matrix math unlocks.
So let's say now we are, we fast forward, what do we think?
10, 10, 10, when will we have them?
2029.
Right.
Okay.
Quantum computers.
So let's say to be safe.
Five years.
Five years for now, we have this big quantum computer in this room.
Now, what are you and I going to do with it?
What's the stuff we can do then?
I think the first three use cases, the first one I think,
nobody debates is going to be in the world of materials.
So you look at me in some materials.
What do you mean by materials?
Would I like a better coating so that things don't corrode?
Example, aircraft wings or rivets or pipes that carry oil?
That's pretty important.
Or could I design a better pharmaceutical drug?
because we can do things with molecules
and be able to predict the properties
as opposed to have to do a wet lab experiment.
Or can I come up with a better fertilizer
than the current very energy inefficient fertilizer
that is there?
Or one that I'm getting excited by
because our team just showed
that you can predict magnetic properties of materials
using quantum computers.
Well, if I can't,
do that? Is there a possibility? And I'm calling it a possibility because we're still three, four years
away, to have a better magnet. And as we know, you need magnets for electrification, for
EVs, for lots of things. So those are the first category. The second category, I think,
is going to be around financial risk. How can we price something better knowing what we know?
So the way we do it today, we kind of use data that's a week old or a day old, and then we
try to guess during the day what it should be.
But if a quantum computer could price some of those things in milliseconds, then that gives
you an advantage in the financial world to be able to price complex instruments or derivatives
or bonds as some of our clients have begun to do during the day.
And the third is going to be in the area of optimization.
And by optimization, I mean things like, can we do a better route plan,
could we somehow attack the problem that 30% of all truck miles and containers are empty as opposed to use.
And that's because we use very simple routes because it's just too hard to do a complex route for all these things.
So those are problems that I think quantum computers are going to unlock in the first few years.
What's the relationship between quantum computers and AI?
I think that that relationship is going to be more in the long term than in the short term.
If I begin to look not at the first five, but the next five years,
quantum computers to make it very simple are great at finding hidden patterns in data.
Okay, what is AI trying to do?
In the end, a large model is trying to find those patterns in the data that it sees.
So could quantum computers in the first instance be used to help create these models
in a much more energy-efficient way
than could be done otherwise
is one example of how a quantum computer
is going to help on AI.
But for the first five years,
I believe the two will complement each other.
You will do a problem on AI.
You might discover that I need a property
of a material that AI could not figure out.
Quantum computer goes and does that.
Then AI says, knowing everything else,
here's the prediction it can make.
Then it can say there's a gap in the knowledge.
Maybe a quantum computer can help on that.
Does AI help you develop the quantum computer?
Absolutely.
Today already, it's a new form of programming.
We call it circuits, but let's call it programming,
for the sake of being simple.
How do you help people understand how to write these programs?
AI is going to help you do that.
How do you begin to make some of the normal electronics
around a quantum computer?
AI is going to do that.
So AI is going to accelerate the development of quantum computers.
From 1-200, how confident are you
that you'll have it by 29.
100.
There is no such thing as 100% certainty.
There is a certainty in we'll be able to have it.
Now we can debate how useful will it be?
When will it be like properly in production and useful?
Probably in the 28 to 30 range.
So will we have it?
The reason I have 100% confidence,
we have them at a scale of hundreds to low thousands today.
So that's not a future.
statement. So we got to get up and scale by a factor of 10, and we got to improve error
correction by a factor of 10. That's what has to happen between now and 2029, to make it just
really very simple. Who do you compete with? There's a large number of companies who are making it,
some in similar ways to us, some in very dissimilar ways. How confident are you that your
methodology is correct? We are very confident in it is correct for the
the next many years.
And we have to keep working on others if we have to have a much longer term horizon.
So if I look at it today, but there's so many companies.
Quantumium is there, INQ is there, Pasquale is there.
How do you wear in the competitive field you pitch yourself?
We put ourselves a couple of years ahead.
I would never put ourselves more than that, but I do think that we're a couple of years
ahead, but the next two, three years will demonstrate are we or are we not?
How much could this be worth for IBM?
Hundreds of billions.
And how do you get to that number?
So always when you come up with a brand new technology,
the best analogy I can put is quantum computers today
are where GPUs were circa 2015.
GPUs from 2015 took about seven years to reach,
or call it, take off velocity completely.
In 2022, you couldn't manufacture or supply enough to satisfy the demand.
But it took that years.
So if I go forward by five to seven years, if we are a few years ahead and we are better
at making quantum computers than anybody else, once people realize what you can do, the
demand will be insatiable for many.
Where is China?
It's hard to tell.
We know that they're very heavily invested.
We know that they are chasing the same use cases that we are.
and we know that it's a top-down initiative and extremely important to their government.
We know that much.
Then if you give them enough credit to say they have smart people, they have good scientists,
and they can go ahead and invest, then they are going to catch up or be in the race at some point.
That is certain.
And what does it mean for the geopolitical race, for sovereignty, national security?
So these things always have a number of different lenses.
So first, if it is going to unlock extreme economic value, let's stick to the main one,
that is extremely important for national security, because if you are economically way
superior to somebody else, the world has shown that that is a big national security advantage.
Second, some of those problems have incredible applications to direct defense applications,
better munitions, a way to navigate without having to rely upon low-earth orbit satellites.
All those are examples of quantum applications.
Then the third one, which we have not talked about,
we know that quantum computers can do what is called Shores algorithm.
What does it do?
It helps you decrypt most of today's encryption.
So the ability to be able to read somebody else's encrypted communications in the clear,
is an offensive military application.
So for national security, all those three are important,
which makes it imperative that we work on these
to be able to solve all of those applications.
Arvin, let's move on to leadership and just how you lead.
Now, not many CEOs have a PhD and 15 patents to hear his or her name.
And a kind of stupid question, of course, is it helpful to be so clever as a leader?
I think it's really important to know where your strengths are, leverage your strengths,
but also try to be very, very self-aware or where you don't have strengths.
I actually don't think about it in that lens at all.
I always think about it in terms of how do you want to empower the team to do their best?
That really is the first job of every leader.
The next is where can I help them?
So for those who may not be very technical, it may be helpful for them to get a sense of where
the world can go and as I call it, look around the corner a little bit.
I think my depth of knowledge more than cleverness is on the technology dimension.
But there are so many other dimensions where others are going to bring much more of a skill
said to me. And I think that actually my strength has been much more in trying to build around a team.
I know far less about politics in the financial markets than many others. So I try to bring in
people from both those dimensions into the team to give us that. I'm not ever going to know much
about the law. So I've got to have a great G.C. and a team around that for doing MNA. I bring in
people who were ex-investment bankers. What kind of credibility does it give you with your scientists?
that you have a scientific background?
It gives me the ability to argue with them.
I mostly lose the argument,
but it allows them to have fun in their argument.
What kind of scientists were you?
Were you like an introvert person sitting there working on your own,
or just how did you work?
I kind of put it this way.
I was a what I call a theory person.
Theory people tend to be deep in mathematics
and doing things.
It tends to be small team efforts.
but I was always very interested in being able to communicate my ideas.
So I would say, as a scientist by nature,
are more introverted than extroverted.
That, I think, is just a given for 99% of them.
There's a few we can imagine who are not, but 99% are.
But I wanted to be able to communicate my ideas.
That may have been my slight edge of why I was able to translate myself into the business world.
But the kind of the journey to go from that to,
running at 250,000 people.
How has that been?
I'm not sure it was a design path at the beginning.
There are three or four probably transitional moments.
Four or five years into IBM,
I was looking at a building,
this was in the early 90s, wireless networks.
And I was finding that the business side
was finding it very hard to understand
that there could be a big market
in the commercial world.
for wireless networks, and I was looking at them and saying,
laptops are coming.
You can see that.
People will want the ability to move around with them.
And they just couldn't understand.
Well, because we are used to computers being plugged in.
They're big, they're heavy.
You're not going to move.
Why do you need all this thing?
So I realize that you have to gain the skills of what are markets,
how do you distribute, what is that use case down the road.
Otherwise, it's going to be very hard to be able to talk the language.
that the other side who were the decision makers were doing.
That was one big moment that defined it for me.
Another big moment that defined it for me came in the late 2010s
where I was helping somebody do some business analysis
around the impact of some other companies doing a lot of M&A
in the application world and understanding.
That actually probably unlocked a lot of thinking in my head
around, can I take what I know?
know, but then relay it into what became, for example, that it had a decision 10 years after
that. So you kind of learn from those moments. And then when I was looking in the late 2010s
and thinking about how can IBM grow and where can it grow, that probably unlocked the
ambition for me to be in my current seat. After you took over, we had, you know, COVID coming
in. Do you think that made the transformation easier?
or more difficult?
Much easier.
Why?
So usually when you have to make a number of very tough decisions around things to divest,
around things to change in the company, there is a risk, to the point you made,
there is a risk that you actually will go through a trough before you can see a gain.
Hopefully you see the gain, but there will be a trough.
When there is already a lot of disruption in the market,
I actually believe it gives you a great debris to say,
let's take all the pain as quickly as possible.
And that allowed me to probably do in one year
what may have taken three to four otherwise.
So I completely agree with you
because I experienced the same thing.
When I took over, we had COVID just afterwards.
But I think there is another element,
which is that there is less resistance to change
because they are not together at the water cooler
and protest against these new idiot coming in
and thinking he can do whatever they want.
I won't say so much the protests.
I actually think I was lucky
there were a lot of people who wanted change
because you were a very successful fund already,
but you made it better.
In my case, we were not that, as you said, we were declining.
So I think there wasn't that much resistance
to the ambition.
But when there is a lot of disruption,
people are willing to take more change in stride
is the way I would put it.
Are you a typical Indian leader?
I don't even know what that means.
Well, I would say after having interviewed a lot of them, they are more humble.
They work for something which is bigger than themselves.
Well, I mean, in India, even the gods are supposed to be humble, right?
So in my mind, there is something there, better with people, more different type, just a different type of, you know, intellect, understanding, holistic way of looking at life and the world.
I think some of that may be the self-selection.
Just because there are so many Indians.
Well, one is there are so many Indians,
but one is also the self-selection you're looking at
is those who probably grew up in India,
migrated to the West,
and are now leading companies here.
While I'll accept that some of what you're saying
even applies to those who are leading companies in India.
India is really a collection of cultures.
You know, and that I feel pretty strongly about.
I was in India and I interviewed probably somewhere between 40 and 50 CEOs.
it was true across the board.
So India is a collection of cultures.
So if you're not adaptive and understanding and empathetic to people,
it's going to be very hard to survive in India itself.
It really is a collection of what was originally 22 languages,
which are probably more like 40 or 50,
and the cultures are different within that.
Two, the Indian culture is very quickly dismissive
of people who are very arrogant and who are not humble.
Three, at least where I went to college, there were a lot of really smart people.
So you get humbled really quickly that you might think you're smart, but you're actually not that smart.
And so I think all of those things play in.
But the point is, many of us came to the West on the basis of education and on the basis of trying to strive for a better life.
It has to be for a bigger purpose.
I don't think it should be ever about you.
It has to be about harnessing and making a better organization and by letting people thrive.
I think that if that's what you want to achieve, that's probably common to many Indians.
Are you personally an international business machine?
We are in 170 countries.
I probably visit only 40 or 50 of them over the last few years.
I actually love learning about business.
I read a lot and I try to learn from everybody I meet.
I'll say that.
How would you define the corporal culture now?
I think that we are half unlocked.
I think half the people now embrace risk.
I think the growth side has been embraced now.
People accept that we can grow, we will grow, we have the right to grow.
I think that people have accepted that we want to be very productive and very lean.
So the amount of overhead is decreasing and that seems to be a lot of overhead.
and that seems to be a muscle memory that is there.
I would say on the risk side, we're only halfway there.
I think I would like to unlock people's ability to take risk a bit more.
In the past, you did everything yourself.
Now you partner with some of the other great companies.
What kind of change in mentality did that take?
So if you think that it's a fixed pie,
then you're going to always fight for the largest slice for yourself.
I think that's just natural.
If you think that by partnering, you change the shape and size of the pie,
and so you've got to convince yourself of that,
then you say, well, I'll partner and I'll share,
but I'm sharing from a bigger pie.
That's kind of my mindset.
I kind of put it this way.
If you partner with somebody,
are you going to increase your chances of winning?
And the answer is like usually yes.
If that's the case, you're increasing the size of the pie.
You have something called getting fired mentality.
What does that mean?
15 years ago, I walked into the office of a mentor of mine
at 6.30 in the morning and I was kind of frustrated. I said, like, look, you know, I really believe
that I need to say these things, but I'm afraid that if I say them, somebody will want to try to
fire me. And this person turned on and told me, Arvind, you should live in the pleasure of being
fired. And I looked at me, he said, that doesn't mean that you always pick a fight. It doesn't
mean that you just make disruptive things for the sake of it. But if you are living in the pleasure
of being fired, that means you're not afraid of being fired. That means you'll do the right thing.
And if you have confidence in your abilities, why does it matter?
And it was truly freeing.
And I encourage people to think like that and to be like that.
And I think it really has been very powerful.
Have you been close to being fired?
A couple of times.
When?
The last time was probably in 2014.
What happened?
I was trying to make a decision that was popular with some people and was extremely
unpopular with some others.
So they decided that they were going to try and get me fired.
They almost succeeded.
Yeah, not quite.
No, not quite.
No, you've been in one company for a long time, right?
Why have you stayed for 35 years?
I've done so many different things.
Yeah.
I was...
Has that been a deliberate policy from the company to move you around, or is it you yourself?
No. I think it was...
I always put it like this.
If you put blinders on, you'll keep doing one thing for a long time.
If you keep yourself open to opportunity, those opportunities come.
I spent my first 10 years, I'll use probably a more extreme, I was an introverted researcher
for 10 years.
Then somebody asked me, do you want to come run a business?
You ask the average researcher, you want to come run a business, and they're like, I know
nothing about it.
I ran to it.
I did that for five years.
And somebody came and said, you want to run the database business.
And I said, I know many areas of software.
The one area I know nothing about is database, so yes.
Then they said, do you want to run our semiconductor business?
I said, yes.
So I think that that allowed me to just do so many different things.
In some sense, I've had seven different careers, even though it's been in one company.
Your father was a major general in the Indian Army.
Is that where you got your lack of fear from?
A big part of it.
He definitely was fearless in his personal approach to life, in how he lived his life.
Part of it was, I mean, if you spend weeks in the jungles at 18,000 feet, you tend to be like that.
But part of it was probably his natural personality.
But you observe that.
And then you observe him and his friends.
They were very similar.
It wasn't that dissimilar.
And you get not so much a lack of fear,
but there is also any military professional
also prepares a lot.
And so you say the phrase that I think is common in business
is luck favors the prepared.
So you put the two together.
How do you relax?
I like to read.
What do you read?
Almost anything.
I was reading a book on the technology trap, which is by Oxford Economic Historian
on how technology can evolve.
I read books on how and what is happening on geopolitics.
You love to read about why do different cultures behave in certain ways.
I love to read biographies, whether it's of,
Alexander Hamilton or Benjamin Franklin. Do you read poetry? I do not read poetry. I have read a little
bit of poetry, but I do not read. What kind of music do you listen to? I mostly listen to the music
I listen to in college, which is classic rock from the 70s and 80s. Such as. The Talking Heads was
the last concert I went to. I love David Byrne. I've actually listened to him maybe a half dozen
times live, Eric Clapton, many times, Queen, JethroTal, Pink Floyd, but that's a little bit,
you can, there's a few of their people around, but not the whole group. There are just some
recent examples, all my kind of music as well. Finally, what is your advice to young people?
Number one, do something you have a passion for and interest in. It's really important to wake up,
enthused about the day.
Do it with people that you respect and can learn from.
I don't say, so that's not necessarily your friends and popular, but do it with people
that you like working with.
Do not ever focus on the title or the compensation.
I believe if you have the first two, those will come.
I'm not saying don't focus on that at all, but don't make it your criteria for doing something.
Good advice.
Big thank you.
Thank you, Nicolai.
It's been tremendous.
This.
