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How we use AI in practice | AI Summit 2026 | Norges Bank Investment Management

57m 30s8,712 ord1,310 segmentsEnglish

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0:00

Warm welcome to this first AI seminar at

0:03

Norris Bank. And this is just a huge

0:06

moment because we have never seen a

0:08

technology like this.

0:11

And it's moving not in a straight curve.

0:15

It's continuing to curve up and it's

0:18

nearly vertical what this technology can

0:21

do now.

0:23

And so the issue is what we call the

0:26

technology overhang.

0:28

Are we able to utilize all this

0:31

technology? And that is really the tough

0:34

part I think is to get the organizations

0:36

to absorb and to utilize what we have.

0:42

So we are as you know the most

0:45

transparent fund in the world. And why

0:48

is transparency good? Well, I think it's

0:51

good because people can look in and see

0:54

what we do. And we believe that that

0:56

creates trust. But I think equally

0:58

important is that we can look out and

1:01

see what the world is doing. And I think

1:02

that's why we have been very very keen

1:05

on absorbing this new technology because

1:07

we also talk to leaders across the world

1:08

and we see what it can do if you apply

1:11

it in a correct way. And then we thought

1:15

it was great to invite all of you not

1:17

because we think we got it right but

1:20

because we also want to learn from you.

1:22

And we we think that if we share with

1:24

you what we know, you will share with us

1:27

what you know. And the cool thing, we

1:29

just do not compete.

1:32

We can cooperate and share good

1:34

practices across the board and across

1:36

the country. And I have this dream of

1:38

being able that we together, you know,

1:41

the private and public can basically

1:43

lift productivity in this country.

1:47

That's a good ambition. I think

1:52

we have a lot of user cases across the

1:54

firm and we could have picked uh you

1:57

know many many different ones. We picked

1:58

10 which we think gives uh a kind of a

2:03

taste of different things we do. Some of

2:05

them help us make more money, some make

2:08

us save money. Some improve efficiency.

2:12

Some improves accuracy and quality and

2:16

some just prevents us from doing boring

2:18

stuff because I think in this new world

2:21

we should not spend our time doing

2:23

boring stuff and hopefully you all agree

2:26

with that. So what we're going to do

2:28

first take you through why we are in the

2:31

situation we are now with our technology

2:33

briefly by big

2:36

the journey we've had on AI and how we

2:40

have tried to make it to permeate the

2:42

whole organization Ludia is going to

2:44

talk about uh the the framework we have

2:48

for doing this in a correct manner

2:50

because of course it needs to be

2:52

compliant and it needs to be correct and

2:54

safe and then Tron together with 10 of

2:56

our colleagues will take you through a

2:59

lot of user cases but first big over to

3:02

you.

3:07

Thank you Nikolai.

3:09

Uh so uh we've done many transformations

3:12

in MBIM since 2015 but today I want to

3:16

talk about three major steps that we

3:19

have done that has built the foundation

3:21

for our AI strategy. So the first thing

3:25

we did was to ins insource operations.

3:29

So before that we had an external vendor

3:31

that took care of settlement, corporate

3:33

actions, fund accounting, valuation,

3:36

everything. But when we scaled into new

3:40

markets, we wanted deeper expertise and

3:45

richer data. So the solution for that

3:48

was to bring it all home. We own the

3:51

process and we also wanted to own the

3:54

knowledge.

3:56

So the next big thing we did was to move

4:01

all our IT infrastructure,

4:04

all our IT systems to public cloud.

4:08

So before that we used to rent space in

4:11

an external data center,

4:14

outsource the technology with it. But

4:17

what we saw was that we had a data uh

4:21

ceiling in a way. But what we wanted was

4:24

to have a data horizon. We wanted

4:27

instant scale on demand and we wanted to

4:31

get away from server refresh cycles.

4:36

When we had moved over to public cloud,

4:40

we saw quickly that our old databases

4:44

which we had also moved over did not

4:47

meet the same requirements. We were not

4:49

able to utilize this scalability that

4:52

the cloud provider gave us. So what did

4:56

we do then? We decided that we had to

4:59

move our old database solutions over to

5:01

a modern setup so that we could have the

5:04

same scalability.

5:05

>> And is it fun to clean data?

5:08

>> It's no fun at all.

5:10

>> So it's the most it's the most kind of

5:12

boring job there ever is. Does anybody

5:14

thank you for cleaning your data?

5:16

>> No. How do you get people to clean data?

5:20

>> You basically tell them that 31st of

5:22

January we are going to turn the old old

5:25

data off. Yeah.

5:26

>> And if you sit there the day after and

5:29

have no data, you are going to look very

5:31

stupid. So we had a lot of late nights

5:34

and an enormous work by the whole

5:36

>> that was a lot of tidy up and rewrite of

5:38

code for basically everyone in the

5:41

company but uh now we have one place for

5:48

internal and external data with high

5:50

quality and it's tidy up and it can be

5:53

used for AI and it's called martium

5:56

core. So this is how much I love our new

5:58

data warehouse.

6:00

Um so these are the three things that we

6:03

have done that has been the foundation

6:06

of our uh success within AI and I will

6:09

now give the word over to Stian who will

6:12

talk you through what we did after that.

6:14

So I'll I'll take you through our AI

6:16

journey and having a good data warehouse

6:19

and a lot of compute in the cloud has

6:22

absolutely been necessary for us to get

6:25

on with the AI journey. And it all

6:27

started about two years ago when Nikolai

6:29

had Sam Alman from OpenAI and Dario

6:32

Amodai from Antropic on his podcast and

6:35

he found out we should be 20% more

6:37

efficient. So he said can you make that

6:40

happen? I said thank you. That's an easy

6:42

target to fix. So um to see how he

6:47

actually got that working is that him

6:49

being a a battery durel battery that

6:51

never goes out of the energy on the top

6:53

is pushing the organization throughout

6:55

the last two years and he has pushed

6:58

everyone. So everyone has gotten the

7:00

tools they gotten the time they have

7:03

experiments they created a lot of

7:05

different project on how they can use AI

7:07

to improve themsel but that is not

7:09

enough. If we're going to be 20% more

7:11

efficient and we're going to start using

7:13

AI, we have to change our habits. So, we

7:15

needed to push everyone

7:18

a lot and nudge them again and again and

7:21

again. So, we created a

7:25

uh add upskill program for everyone.

7:27

I'll take you through that. And we also

7:28

created an ambassador network to help

7:30

people get going here. And to keep the

7:34

nurturing going, we created a this tech

7:38

year 2025 that was full of activities to

7:42

help uh bring AI uh to the focus of

7:46

everyone. So first of all, we created

7:49

the ambassador network and you can call

7:51

it champions if you like it doesn't

7:52

matter. There were 20 uh volunteers from

7:55

all over the organization.

7:58

uh they were given the task of finding

8:01

the one use case in your team that you

8:03

think can be a valuable project with AI

8:07

solve it with the help of the other

8:08

ambassadors the AI team but also with

8:11

the help of entropic. So twice a week

8:14

Antropic help us get started by doing uh

8:17

creating training for these ambassadors

8:19

and the AI team for two months. So as

8:22

soon as you know the project would keep

8:25

rolling here the uh the ambassador

8:29

sold the project the turnout showcase

8:31

their team but also the rest of

8:32

organization and we can soon see you

8:35

know the value of AI in you know all the

8:38

corners of the company. So

8:41

we also had to create this tech here and

8:44

the important message with this slide

8:46

here with a lot of different bullet

8:48

point is that whenever something

8:51

happened in NB NBIM in 2025 it had AI in

8:56

it. If you had a gathering AI was on the

8:58

agenda. We had this large tech tech day

9:02

in London, Oslo and Singapore which

9:04

focused entirely on technology, tech

9:07

stack, cloud, the data warehouse and

9:09

absolutely on AI. But if we had a leader

9:13

summit, AI was on the agenda. So it kept

9:16

rolling and rolling reminding people to

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