iGaming Daily

Artificial Intelligence is changing every industry, but what does it actually mean for iGaming marketing?
At SBC Summit Americas 2026, Fernando Noodt sat down with Shai Frank, SVP of Product and GM Americas at Optimove, to discuss how AI is reshaping CRM, personalization and the future of player engagement. 

The conversation explores Optimove's "positionless marketing" philosophy and why AI is enabling marketers to move faster, make smarter decisions and create more personalised experiences than ever before. 

In this episode:
✅ What is Positionless Marketing?
✅ How AI is changing CRM strategies
✅ Why human judgement still matters 
✅ AI-powered campaign personalisation
✅ Journey decisioning and player lifetime value
✅ The role of ChatGPT, Claude and Gemini in marketing
✅ Why there are no AI "best practices" yet
✅ The future of AI in iGaming

Could AI fundamentally change the way operators engage with players? And where do marketers fit into this new world?

#AI #iGaming #CRM #Marketing #Optimove #ArtificialIntelligence #PlayerEngagement #SportsBetting #Casino #Tech

What is iGaming Daily?

A daily podcast delving into the biggest stories of the day throughout the sports betting and igaming sector.

Unless there is a very, very big change

in how these AI and

large language models work.

One thing that they still don't have and

probably won't have in

the near future is judgment

and taste.

Hello everyone and live

from SBC Summit America's 2026.

We are here for another episode of Eye

Gaming Daily brought to

you by OptiMove, the creator

of positionless marketing and number one

play engagement solution

for Eye Gaming and sports

betting operators.

I'm Fernands Nonot, media manager for SBC

and your host for today.

We'll wait a very special guest today,

someone from OptiMove

themselves, Shai Frank.

How are you today?

Shai Frank, SPP of product and GM of

America's for OptiMove.

Yes, that's right.

Thank you.

Hi, good morning.

Happy to be here.

How are you?

All good, all good.

How you find the event?

Yeah, very exciting event.

We've been here for quite a

few years in these events.

We have a big booth.

We enjoy the industry and the people that

we know our clients

and prospective clients,

some of our competitors.

It's an exciting event.

Happy to be here.

And happy to have you

back on Eye Gaming Daily.

It wasn't with me, it was

with Joe Streeter back then.

But ever since you were with us last

time, OptiMove has launched OptiMove AI.

So I want to get into AI because of

course it's a big topic of conversation.

Everyone is talking AI

here at SBC Summit America.

So you launched OptiMove AI.

So how does that impact your positionless

marketing vision going forward?

And what does it mean for OptiMove?

It's a good question.

And maybe a short refresher on what

positionless marketing is

because I'm not sure everyone

is aware or remember.

It's a simple concept.

It means that over the years technology

in general and

obviously AI in particular is

allowing people to extend their range and

be less in a small box.

So think about historically how companies

in general scaled

their processes, marketing

including.

You establish an assembly line with

multiple workstations and

multiple teams or people

that are specializing in specific tasks.

So if it was a car assembly line, you had

the Henry Ford

situation like 100 years ago.

But even with marketing campaign, you had

the people that if you

wanted to do a campaign,

you had to request assistance from IT or

engineering to help

you with the audience.

They would run some SQL

queries to pull up a list.

So you had to wait for that.

And then once you have the list, you need

to hire an analyst to

design an A-B test experiment.

And you go and you wait for creative to

come up with assets.

And everyone is a

specialist in their role.

But the end result is that you have an

assembly line with multiple

weights and multiple people

that have to work in order to get one

campaign out the door.

And it scales well because now you can do

in theory, you can do more of that.

But in practice, the time from idea to

execution was very long

because you had to wait for

all these five or six different

specialists to give you

their input in order to get one

campaign or one journey out the door.

And especially in the iGaming industry

where things are moving so

fast and player expectations

are always growing.

So we cannot afford having such a long

period from idea to execution.

And we believe that as technology has

evolved and AI is

becoming more and more prominent,

you no longer have to have so many

different teams and

specialists involved in one task.

A person that could never run SQL queries

is still able to

analyze data on their own

because technology

surfaces data insights to them.

And technology allows you to design a

Navy test without

being a PhD in statistics.

And you can analyze campaign performance

without understanding the

math behind it because technology

just does it for you.

And clients that we see and brands that

we see that adopt this

philosophy no longer are

moving faster, but they also change their

own processes and their org structures to

facilitate faster, more agile movement.

And they adopt the technology to just

scale and move faster.

And we have a lot of examples like that.

So let's position this.

The inspiration is from

positionless basketball.

In the past, the tall player had one job,

stand under the

basket, catch a rebound and

dunk it in.

Nobody would expect them

to shoot three pointers.

But in the last several years, we see

tall players, very tall

players like Wambaniyama,

are shooting three

pointers, are dribbling.

And this is positionless.

So same thing with

positionless marketing.

And the recent release of, to your actual

question, the recent

release of OOptima AI

accelerates that.

So marketers, the power of data and the

power of creative and

the power of optimization

so they can do more by themselves.

And the system supports them to do that

so they can move even faster.

They can work from within OptiMove

platform to ask questions

about their customer data,

understand hidden gems in customer

segments, design

campaigns, design audiences, design

experiences, including the creative work

itself within the

brand guidelines, within

the compliance and regulatory

constraints, and just move faster.

And we can probably

talk more about that later.

Yeah, absolutely.

And AI in CRM is often related or often

linked to finding the

right campaign for each player

and personalizing the

campaigns that reach the end user.

So at the same time, operators have

different goals, different objectives.

So can AI, like OptiMove AI specifically,

help arbitrate between objectives and not

just campaigns?

Yeah, that's a very good question.

You know, I think intuitively when you

think about how AI can help us

personalize our customer

experience further, right?

I think the recent, it's funny to say

intuition because it's all

like very new, but the recent

intuition would be, okay, I want to

target my customers or

my players with a specific

context or a specific offer, but I want

to give the AI a bank of

potential options, right?

Different levels of generosity, different

reward types, right?

And I want AI to decide

what's the best offer per player.

That seems to be very

intuitive of how AI can help you.

And that is perfectly correct, right?

And part of the OptiMove AI suite is what

we call offer decisioning.

But here's the thing, offer decisioning,

like the one that I

mentioned, or even content

variations, right?

It works within the context of a specific

campaign or a specific journey, right?

I now want to cross sell

players from sports to casino.

That's the context.

And within that, I can offer multiple

levels of, you know, free

bets, free spins, deposit

matches, each of them with different

levels of generosity and

the content creative changes,

but it's still within the context of one

campaign on one journey.

But what happens when a player is

eligible to different

campaigns or different journeys

at the same time, right?

You have a life cycle journey for risk of

churn and you have

some seasonal campaign,

right?

The World Cup, right?

And maybe someone happens to be, it's

their birthday week or

their birthday month.

And we also want to cross sell whatever

players from sports to casino.

And now all of a sudden, CHI is eligible

to four different campaigns.

But the underlying reasoning behind the

campaigns are

different objectives, right?

If I'm a big sports fan, an operator may

want to leverage my

sports affinity to get

me more and more

engaged with World Cup, right?

So I have, so my World Cup campaign is

trying to engage

customers and players who are more

into sports.

At the same time, the same operator in

general wants to cross

sell from sports to casino,

right?

I might be in a high risk of churn and

there is a life cycle that goes on.

So we have different objectives, save

customers from churning

and usually you're willing to

sacrifice some margins.

So you're willing to be

more generous when you do that.

And I want to exploit

more of my sports affinity.

So I'm more engaged with World Cup.

At the same time, the operator wants to

get me hooked into casino.

Now I'm eligible to all

of these three campaigns.

Each one of them has different offers and

different levels of generosity.

Now how we decide?

And this is where I think to your

question, OptiMove can, AI

can arbitrate between different

objectives, right?

So this is what we

call journey decisioning.

So when a player or a customer is

eligible to multiple

different campaigns or journeys

at the same time, typically those

campaigns or journeys are serving

different objectives.

Then OptiMove AI needs

to arbitrate between that.

So it's no longer within a specific

campaign I'm trying to

maximize casino bet amount because

I'm cross selling.

Because the other campaign is trying to

maximize retention rates in

general and the other campaign

wants to maximize NGR and not GGR.

So how do I arbitrate between all of

these different objectives?

And OptiMove AI in that case looks at

kind of like the

primary metric that determines

the player's lifetime value.

Beat GGR, beat NGR, doesn't matter.

Each operator with their own definition

of what a player lifetime value might be.

And then OptiMove AI can arbitrate within

that and say, okay, shy

is eligible to a cross

sale to a World Cup offer to a risk of

churn their birthday.

What is the campaign today that puts shy

on the path to maximize

lifetime value in general,

regardless of the specific objectives of

each and every campaign?

And then data changes, sports calendar

changes, customer

preferences changes, and we rinse

and repeat and we

personalize for each customer.

Learn how OptiMove's positionless

marketing is changing

how iGaming teams operate.

Discover how operators are using

OptiMove's positionless

marketing platform to launch

personalized CRM campaigns, dynamically

change casino lobbies and

bet slips, and create engaging

game-of-life experiences.

Learn more at OptiMove.com.

And, of course, AI tools have already

made it into the life of

most people and most marketers

actually use already Claude

or ChatTPT into their work.

So how does that change the way iGaming

teams approach or

strategize around campaigns, segments

and personalized player experiences?

Yeah, I think it's funny.

As a product person, for many years, when

you wanted to build a

product or you wanted

to decide how your organization needs to

work, there were always

best practices, right?

The world has figured out how to do

software development 20

years ago with agile and things

like that.

So you didn't have to reinvent the wheel.

It's funny in these times, right?

There are no best practices, right?

Everyone is trying something and every

day someone posts

something on Twitter on LinkedIn,

"Hey, look at this framework I created

and look at the way

that I'm doing things."

And it's really exciting

to be a part of that time.

And we see different

patterns emerging, right?

We see people that they would prefer

working with their own tools, right?

They are already working within Slack or

within Claude or within

ChatTPT in their own life,

right?

They want to meet them where they live.

And on the other hand, we have

specialized products and

tools that have their own AI,

right?

Optimal AI within the optimal platform

that has the benefits

of creating seamless user

experience between AI and point and click

interfaces and an

advantage with the context

the platform can provide.

So I think it's not either or, right?

There are different use cases and each

use case you may choose

the right path for you

as a marketer or as a user to use.

So when we built and released Optimal AI,

we came up with this

idea that says Optimal

AI is inside Optimal.

So you can use our own AI assistants and

AI agents from within our user interface.

They know everything about your data.

They know everything about your campaign.

You build stuff with AI and you can

seamlessly go from the

output of what AI generates to

the more traditional interfaces of, okay,

okay, now let's tweak this with the mouse

and keyboard and point and

click and let's approve it.

And you can go back and forth between AI

and more traditional interfaces.

And at the same time, we have Optimal AI

outside of Optimal where

you can use your own ChatTPT

cloud, Gemini, whatever agent harness of

choice to interact

with Optimal's platform

behind the scene.

So you can ask questions about your data

and get results both

from your own cloud skills

that go to your own

snowflake data warehouse.

And at the same time from the data you

have in Optimal and

cloud in that case would be

able to course reference between them.

And we think this is powerful.

So we've released a new version of our

Optimal MCP server who is

highly, highly capable of

answering questions about your data,

creating audiences, creating

campaigns, creating journeys,

creating content and message templates.

And from there you move into Optimal UI

to approve and tweak, right?

Nothing gets sent

without human in the loop.

And there's a third layer

on top of Optimal, right?

Where now our professional services team

can go and help

clients with customizing very

unique solutions and use cases that

before SaaS companies

like Optimal didn't really,

couldn't really and

didn't really want to do.

You wouldn't customize software for

individual customers, right?

The SaaS industry always frowned upon

things like that, right?

We never do that.

But now we have the infrastructure and we

have the tools for our

teams to go to a client.

They have a very unique use case, a

compliance, a planning

process, some content generation.

And now our teams can help with and build

custom solutions with AI.

So for example, we help one of our

clients create this

planning app that fetches the

sports calendar automatically on a daily

basis, analyzes data

from Optimal, finds the

customers that have the affinity to each

team or each match

automatically, shows it in a

nice custom application front end.

And in the click of a button, you create

an entire marketing

plan inside of Optimal with

dozens of audiences and campaigns that

are tailor made for that

specific sports calendar

of the week.

This is something we

couldn't have done before.

And every client has their own thing, so

it's hard to create a

generic software like that.

But now our teams can do it with the help

of AI and the

infrastructure that we build

to support agentic workflows like that.

So the bottom line is that we are seeing

different patterns of usage emerging.

And we are building our product in a way

that supports all of them.

So you can work inside of Optimal UI with

the context that you have.

You can use your own agent of choice from

outside of Optimal and

interact with our platform.

And you can get help from our teams on

top of everything you

have to customize solutions

for you.

And what has been the feedback from your

partners to Optimal AI?

You mentioned the patterns just now.

So I'm interested in that.

So how does that work?

And how do you work when you get the

feedback from your

partners and you identify those

patterns that they use?

Yeah, it's a great question.

I think there's a lot of excitement in

the world in general

and with our clients and

partners in particular.

When we released this new version of our

MCP server, it

included the option of working

with Optimal Gamify, which is our

loyalty, gamification

and mini games product.

So our MCP server supports our entire

product portfolio, right?

So you can use AI to interact with all

pieces of our product portfolio.

But within less than one day, less than

24 hours after we

released this, we had a client

that used it to build an entirely

customized loyalty front end

that lives in their website

and app within less than one day, right?

Before we even completed

the release notes, right?

We just released the thing and a day

later a client comes to

us, "Hey, look what I built."

An entire webpage, which is not just

demo, it lives in their

actual website now that

shows each player their loyalty points,

their tiers, their

progression across missions and

tournaments and leaderboards and badges.

And it's all customized, fully customized

for their brand and

the way they wanted it

to look like and the

mechanics of their program.

And it's all based on our Optimal AI MCP

server in that case.

And I gave you the example before of how

our teams helped

clients build this app for

sports calendar planning.

And we see a lot of excitement and a lot

of people that are

taking advantage of these

new capabilities, as well as continuing

adoption of features and

capabilities that we had before,

like decisioning agents,

which are not entirely new.

We just keep improving them all the time.

So we have a lot of clients that are

using our journey

decisioning, as I mentioned before,

and are offered decisioning to optimize

their level of generosity.

And as capabilities and machine learning

and AI models are

improving all the time, every

once in a while you get a step function

on the capability and the adoption.

And it's really exciting to see that.

All right.

Yes, sounds exciting.

And of course, in the future, it's also

exciting because this

technology keeps moving forward

and advancing at a

pace that is unbelievable.

So how can AI in the future help iGaming

operators with player

experience and all that?

Look, it's a great question.

And the reality is that the planning and

vision horizon has become very short.

It's really hard.

In the past, we were

planning like a year ahead.

We had a roadmap and a vision for like

two, three years forward.

Now you can plan six months ahead.

And by the time you get to month six,

everything is changing.

And Tropic just released less than two

days ago their new frontier model, Fable.

And with early experimentation, we seek a

step function in its

ability to reason and

its ability to do things that you

couldn't do before, right?

And long-term things, which we didn't

really know was possible

less than 48 hours ago.

So with the pace of progress, it's hard

to predict what will be the future.

But I think it's safe to say that unless

there is a very, very

big change in how these AI

and large language models work, one thing

that they still don't

have and probably won't

have in the near future is

judgment and taste, right?

So AI is really good at getting an order

from you and producing stuff.

It can produce content, it can give you a

summary and analysis.

You can produce audiences

and journeys and campaigns.

But still, all of us are using AI in our

daily basis or most of us.

And you can see that many times you have

to, a human being has to

steer the model to make

good judgment calls, right?

The model can do

things very quickly, right?

Like, "Oh, give me an

analysis with my players."

It will give me like a three-pager within

seconds, like a

three-page of all kinds of

analysis and insights.

But what out of these insights really

matters for my business

is something that AI hasn't

figured out just yet.

So I think what we think is going to

happen and already

starting to happen is marketers

or marketing organizations evolve from

execution of plan, right?

Build the audiences, build the tests,

analyze the reports,

create the journeys, analyze

the journeys day in and day out.

They evolve from that into becoming more

of orchestrators and managers of agents.

I have an AI agent that produces insights

far faster and far

more efficient than the

human being go into

querying some databases.

And I have an AI agent that can produce

dozens and hundreds of

audiences and campaigns within

minutes.

My job as a marketer is to apply the

judgment that says, "What

objectives do I need to make

and what campaigns matter and which

insights actually matter

for my business right now

so I can steer those agents into

producing the right stuff?"

All right, and when I get an email

template produced by AI,

the human has to apply their

taste and say, "This is

almost great, but you know what?

I need to change some layout here.

I need to change some wording there

because my brand in this

region, we want to save this

thing."

It's becoming really good

in following instructions.

And I give it context and it produces

email templates that are almost there.

Right a year ago, they

were like, "Great demoware.

I can produce an HTML email.

Looks great, but it's not really useful."

And AI has evolved and

it's now almost there.

But this last mile is

really hard for AI to cover.

And I think this is the place where

marketers still need to

apply their judgment and taste,

but they have more leverage.

They can move faster and they can

orchestrate agents that do

most of the grunt work for

them.

And we are building our products to

facilitate this idea of

you have all these AI agents,

you need to understand what they're

doing, give them the rules,

give them the instructions,

give them the guardrails, and see the

results, apply judgment,

and use your taste as a human

being to iterate on that.

And this is kind of how we built AI

Decisioning Studio and the

way that we're building the

interface for our AI assistants to help

facilitate the production

of stuff while you still have

to apply your judgment

and taste on top of that.

Cai, it all sounds very exciting, but

unfortunately, we've run out of time.

We can geek out on these

things forever, I know.

Yeah, absolutely.

But we will continue to be looking at

Optimum and Optimum AI

and the evolution of AI in

general.

Thank you very much, Cai Frank, SVP of

Product and GM of Americas for Optimum.

So that's all for today's episode.

Thank you very much, Cai.

Thank you very much for having me.

Yeah, of course.

Thank you very much, Naeem McDonald, for

producing this episode and

the team here at SVC Summit

Americas.

I'm Fernando Nott, and to our listeners

out there, we'll see you in the next one.

Goodbye.