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Going Beyond Gut Checks

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Episode 11: AI Cloud Essentials Podcast

Susanne Seitinger, VP of Product Marketing at CoreWeave, joins host Ritu Jyoti to discuss how AI is transforming product marketing. From messaging and naming to persona development and synthetic research, learn how marketing teams are using AI to increase speed, improve decision-making, and build more effective go-to-market strategies.

Discover how leading organizations are moving beyond basic content generation to create AI-first workflows that accelerate feedback loops, strengthen customer insights, and improve consistency. The conversation also explores the risks of overreliance on AI and why human judgment remains essential for creating marketing that resonates.

Podcast Guest:

Susanne Seitinger, VP of Product Marketing, CoreWeave

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Marketing is one of those horizontals that's going to be changed and transformed the most. Are

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we moving beyond simple content generation to foundational marketing transformation? It's not

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going to replace sort of the wholesale task, right? It's individual areas that will be affected. And

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in product marketing, we need to keep pace with an increasingly fast paced release cycle. In this

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episode of AI Cloud Essentials, I explore interesting product marketing use cases for

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synthetic research with Suzanne, VP of Product Marketing at CoreWeave. It's not as simple as just

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asking for the answer. You need to know what questions to ask and that will never go away. I

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don't think. If you lead product marketing, this conversation will transform how you think about

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research, messaging and launch velocity.

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Hello everyone. Welcome to season two of the AI Cloud Essentials, a podcast series brought to you

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by CoreWeave. Today we are talking about one of my favorite areas with one of my favorite

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individuals who I've known for a couple of years. Welcome, Susanne. Thanks. Me too. Yeah. We are going

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to talk about one of the the favorite topic of everyone in the industry. How are you going to

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transform product marketing, how the velocity meets impact and what can be done in that

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area. So everyone's talking about for the last couple of years, Susanne, how you can actually use

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AI to do content generation. Right. But I personally believe that that's really not meeting

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the entire potential that you can actually do. And there's so many interesting use cases where

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things fall short. But before we dive into it, let's hear from you. How did you come into this

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role? What brought you here, and what are you seeing in terms of when you're setting up an AI

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first product marketing group? Thanks, Ritu. Um, it's so great to be here. And you're right, it is the

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topic everyone wants to talk about, right? Marketing is one of those horizontals that's

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going to be changed and transformed the most. And within that space, product marketing is kind of in

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the thick of it, right? Because we're it's almost recursive, right? We're we're launching the AI

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products that we have to use AI to launch. So it's a pretty, you know, fortunate moment to be in this

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space. And I certainly feel fortunate that way. I did not fall into it in a straight line, I can

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assure you. And I think that's indicative of a lot of people's experience right now. Yeah, I came to

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marketing from a technology background. I worked in smart cities and IoT and different spaces that

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were also very disruptive at the time. So I feel like I'm just following the disruption, if you

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will. And marketing is a great kind of focal point where some of these technologies have to be

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explained, they have to be demystified. And so that's certainly what brought me to it, this

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desire to make it more, um, um, accessible to more people. And that's what I love about, you know,

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marketing and product marketing in particular. Our job is to demystify these systems, demystify these

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technologies, and show how they bring value. And so that's what brought me into product marketing. And

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in this AI moment, you know, there's certainly a lot of need for diversification, right? Yeah. So,

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you know, like I have some similar threats in my career as well. I've been a, you know, product

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marketer. I have also been a product manager. And I sit back and think, one of my, you know, jobs that I

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hated the most was to be, you know, creative about product naming. Right. Even in my current role, when

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I have started my own startup, that's been my biggest, biggest challenge, right? Because there's

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so many creative minds moving around. But, you know, how do you settle on what was going to resonate?

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So when you started looking into this, where did you start with and what are the use cases that

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kind of gravitated to you and your team in terms of, you know, kind of making the best use of AI to

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kind of accelerate the velocity and impact. I mean, it's great that you're framing it as different

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use cases because like, you know, in a lot of spaces, there's it's not going to replace sort of

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the wholesale task, right. It's individual areas that will be affected. And in product marketing, we

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need to keep pace with an increasingly fast paced release cycle. Right. And so some of the challenges

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that come with that are things like naming consistency, naming conventions, messaging

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strategies, persona mapping. And so we've we've started to tackle some of these different use

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cases and kind of one by one here at CoreWeave. And then with my team and then also with

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interesting partners like Evidenza. And so the the use case of naming is a really interesting one

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because it's, it's both in terms of the ideation phase. But then it's also in terms of validating

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the choices you're making against different audiences. And I think we're increasingly able to

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be specific about what's going to resonate. And so certainly some of the products that we've looked

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at and have launched at a very rapid pace over the last several months, we've leveraged tools to

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figure out which names will resonate the most. So things like zero egress migration are very clear.

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And and maybe we would have picked that name on our own as well. But having that kind of

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counterbalance and ability to bounce ideas off of real different personas has been really, really

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helpful and fruitful. Yeah. You know, uh, you know, it that I've been in an analyst role as well

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in, in, in the past couple of years. And one thing that always was a pet peeve for me is that while

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it's exciting to conduct, you know, industry research, and it was really time taking and

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consuming and costly and bursty, and sometimes we used to joke that by the time you get the survey

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results, it might be out. Totally. Yes. Yeah. Does it really make sense? And sometimes it's also very

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difficult to get the right set of personas that you're targeting. And synthetic research was

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always on top of my mind as to how you could do that. So could you talk a little bit about, you

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know, how you'll use some of this synthetic research, just the examples that you just talked

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about. But beyond that, what were the lessons learned? Walk me through the process so that the

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viewers who are listening to us can benefit from it. It's a great example, right? And especially

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because if you think about yeah, like you said, it takes so much time to do it in person, to do it

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with real individuals. And some of these individuals might not be that accessible. If

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you're looking at, you know, CEOs, you know, of a particular from a particular industry, how do you

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find enough of them to have a really indicative sample? And so this has been very interesting for

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us. And we've certainly been drawing on this, um, ability to test ideas in a rapid

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way, like in days, you know, not months. Right. And it's been super helpful. And it's, it's it's been

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really helpful in terms of also challenging our ideas. right? Because on some level, we've also

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gotten feedback. A lot of the times that resonates, we're like, okay, we're on the right track. But in

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some cases, we've been surprised. We we thought something would resonate and it didn't. And so

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that's been really eye opening and also kind of breaking boundaries, because in the past we may

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have not used research at all. Right. I mean, a lot of marketers, they're under time pressure. The

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launch is happening. You have to make a decision, right? You can't wait around for a six month study.

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And so being able to draw on research and to step back and to try to be more objective and to try

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to reflect on your own assumptions and biases, right, in a way that's much more, um,

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constructive, has been eye opening and empowering for the team. And so I see us just thinking

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harder, challenging ourselves more, and, you know, also starting to create a practice of, of

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feedback and, and conversation that we might not even have had before because we were too busy

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executing and meeting the deadlines. Yeah, because I'm sitting and thinking with you here is that in

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the past, I've seen a lot of you reaching out to the analyst for the message testing. Right. But it

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still could be a biased opinion or a very small set of opinion surveys. Have there, you know, long

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time and, you know, costs and inefficiencies. But there are some gotchas in these systems as well.

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Right? So it could create some friction. Could could create some hallucination, could end up into

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some kind of a descent. So, uh, did you guys kind of counter it or balance it with some kind of

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traditional methods of research? Along with that, what were the best practices that you learned out

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of it? It's a great question, and it's super important because we absolutely are coming back

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to, you know, validating our assumptions. We are testing against real focus groups. We're also it

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depends on what study you're running, right. Are you doing a naming test or a message test or are

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you trying to create sort of longitudinal views, at which point you cannot really rely on the

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models yet as much, right? So that's where you want to use real panels of people. And then that allows

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you to also continuously cross-check your own the data you're getting back from the synthetic

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research against what's happening among the, you know, the communities out there. And they're

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progressing, but the models are changing, too. Right. And at the same time and in parallel. And so just

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keeping these things in balance and having a back and forth so that you're asking the right

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question with the right method like that doesn't change. Right. Like even it's always it that will

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always be critical. And so that's where the experience and the and the knowledge of the

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marketers comes back into play. Right. Yeah. It's it's not as simple as just, you know, asking for

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the answer. You need to know what questions to ask. And that will never go away I don't think. Yeah. So

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as you kind of very rightfully said, it's not either or it's a complementary. You have to kind

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of use the right set of tools in the right place and complement it each other. Not to ask you

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something personal at this level, when you're managing this team, you might have been confronted

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with your team members who might have not had the experience or knowledge about these tools. Did

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everyone embrace it? Seemingly. You know. Everyone always know. I mean, you know, I'll be honest. I

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think I'm just maybe I'm just really lucky, too, that we're we're creating communities of folks

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who are really, really curious and maybe coming to marketing from a less traditional background. I've

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always, um, brought other people along who are also very, very curious. So it's less about

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resistance and more about getting past the initial kind of experimentation phase. Like that's

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where I've seen the most challenge, right? So we we dabble, we try, but now we're at this new moment

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where we're starting to implement new systems that are really propelling us forward. So, you know,

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competitive intelligence work or like you said, message testing. Yeah. Um, persona development and

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refinement. Um, these are all things that are now part of our common practice. So it's

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less about resistance and more about giving everyone the tools they need to get to the right

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level of comfort. And so that's where I'm finding the most need to, to to jump in and give support

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and then a little bit. It's also about creating space because I don't know how it is for you. But

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when I'm under time pressure I, I you know what they say, right? You fall to your level of training.

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So you go back to your safe space. You go back to the things you know how to do. And that's not the

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time to try something completely different. And so how do you create a space where people can

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experiment. So, you know, we're trying to, you know, come back to the old school kind of Fridays are

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for innovation. You know, fewer meetings open up longer periods of time. So people have

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the breathing room to do something differently. And that's key, I think, in all of. This, I think

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that's very well said. And also empowering them to kind of learn and iterate and, you know. Fail. Yeah.

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And sometimes it could be bad, right? And then that's okay. And it lessens and figured out

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totally. So I would love to understand. Where do you see the industry? Headache. You know, what would

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be your kind of insight that you see from product marketing kind of evolving in the era of AI? Uh,

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from a roll perspective, from a usage perspective of AI. I mean, it's going to be central to

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everything we do. I mean, I think that is is a given. Honestly, it's a given. It's a given because,

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you know, we our craft is related to to language, to expression. Right? So regardless of how things

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move, we have to embrace this and weave it into how we imagine, you know, products should be

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launched, products should be framed. And so we need to harness it for our purposes. Like there's no

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question about it. And so that will happen I think where the the interesting components will be is

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around the speed and the level of iteration. You know, one of the things we always talk about is,

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you know, things like message consistency. You know, message consistency is critical, right? But also

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moving with your customers is critical, right? So do you have a way to, um, evolve

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quickly enough where you're still being consistent but also keeping pace? Because that is

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where I worry the most. You know, like the the customers are inventing new products. I mean,

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whether it's, you know, from all kinds of directions, whether it's an enterprise or AI,

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native startups or the leaders themselves, they're all innovating so quickly that the

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product marketing risk is falling behind. If it's not using the same tools to keep pace. And so

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that's where we need to stay focused and and just move very, very quickly so that we can, you know,

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provide the insight and the, you know, that the mystification along with the products that are

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coming out. So do you and your team members have some wish list that I wish the the technology

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suppliers kind of stall this problem, and I wish they did a better job. Um, I don't know if we have

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a wish list. I think our wish list is more about how we how. How quickly we can test things, right?

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Can we test things more readily? Can we try more things in different places? Can we create more, um,

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persona based journeys in rapid succession? Can we then weave that back in? A lot

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of conversations are happening now around loops, right? And marketing. And so it's less about kind

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of a linear funnel, and it's much more about this iterative conversation you're having with

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different stakeholders in, in a customer. How do you bring all that together and then make it even

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more engaging and interesting and beneficial really for everyone, right. Because at the end of

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the day, you're providing real value to customers and you want them to see it, feel it in a way that

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makes sense to them. I always kind of joke that, you know, we want less of AI slop and more

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maturity and more angles and knobs for us to kind of manage it so that the quality improves. It's a

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powerful tool for us to use, and how we get the solutions that give us the power to kind of move

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it forward with real business, you know, value. Right. Yeah. Awesome. Awesome. So it seems like

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you're doing all the right things with your team members in terms of empowering them, providing

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them the flexibility. I think the reason I was asking this question is because that sometimes,

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you know, some people kind of, you know, are hunkered down and they have the human paranoia,

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which is human nature. Uh, so, Suzanne, as we're kind of wrapping up this particular episode, I'd love

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to get your take on your parting advice to the viewers of this particular episode. You know, I

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think the most important thing and everyone says this right now, but jump in, right? So don't wait.

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Don't hesitate. This isn't going away. Um, and there's so much potential, right? The opportunities

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are vast. So I would encourage everyone to jump in. And then I would encourage folks to remember what

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makes them great marketers. And I think the core of that is discernment and taste and the ability

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to actually figure out what is. You know, you called it AI slop versus what is really

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valuable kind of nuggets of insight that will resonate with customers and then use the

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technology and the tools to iterate faster, to try more things so that you can actually progress

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your own thinking faster. So focus on your own discernment, trust it, and and then keep

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iterating quickly so that you can keep pace with the innovations of the stakeholders you're

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serving within your organization. Awesome. Awesome. So I'd like to wrap it up by saying that don't

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just automate content. Rethink your foundational practices like validation and decision making. And

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with that, we have come to the end of this episode. Thank you everyone for joining us, and stay tuned

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for more insights from us. Thank you.