Text transcript

Fireside Chat — The Agent’s GPS: Causal AI in a Post-Pattern World

AI Summit held on Sept 16–18
Disclaimer: This transcript was created using AI
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    Julia Nimchinski: Welcome back, Tuba! Long time no see!

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    Julia Nimchinski: So this is gonna be a battle of the mind. Are we debating? Are we chatting? What are we doing?

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    Mark Stouse, Proof Analytics: I can tell you that my earlier conversation with Tuba was pure magic.

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    Mark Stouse, Proof Analytics: I have…

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    Julia Nimchinski: I have the auto recording, so… My agent was there.

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    Julia Nimchinski: Let’s dive into it.

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    Julia Nimchinski: So what, take us away. Yeah, let’s dive into it.

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    Mark Stouse, Proof Analytics: Awesome.

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    Tooba Durraze: Awesome. Maybe we can start with a quick round of introductions. Mark, if you want to go first.

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    Mark Stouse, Proof Analytics: Sure, I’m Mark Stuce. I am the chairman and CEO of Proof Causal Advisory. We do a… well, we focus entirely, pretty much, on, causal AI and what it does for Cohens.

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    Tooba Durraze: Awesome, and then for everyone in the room, Tuba, founder and CEO of Amoeba AI, and we purely work on a neuro-symbolic AI architecture, so I’m very excited for this conversation, because

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    Tooba Durraze: I know we’ve been talking a ton about agents, et cetera, and a lot of that concentrated on a transformer-based architecture, so now we have two people in the room who are working on an architecture that’s a little bit different.

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    Tooba Durraze: So let me throw it to you first, Mark. Maybe you can describe, in plain language, what causal really means to folks in the room.

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    Mark Stouse, Proof Analytics: So, I think that it really helps to say this, right? That…

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    Mark Stouse, Proof Analytics: Most of what we call AI in business today is just correlation.

    1400
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    Mark Stouse, Proof Analytics: And I think, you know, we all…

    1401
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    Mark Stouse, Proof Analytics: remember Statistics 101, maybe it didn’t make you feel all that great or smart or whatever, but you probably remember, anyone listening remembers, correlation does not imply causality. And…

    1402
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    Mark Stouse, Proof Analytics: We all kind of wondered…

    1403
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    Mark Stouse, Proof Analytics: whenever that was, like, okay, that’s kind of interesting, but how is it really relevant? Well, we are now entering a time when it becomes not just highly relevant, but

    1404
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    Mark Stouse, Proof Analytics: a significant part of almost everything that we do, particularly in business, right? So, correlation shows us patterns.

    1405
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    Mark Stouse, Proof Analytics: In the rearview mirror, right?

    1406
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    Mark Stouse, Proof Analytics: And… That’s kind of a problem today, because…

    1407
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    Mark Stouse, Proof Analytics: Everyone can feel and see the marketplace volatility, the speed with which things are changing.

    1408
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    Mark Stouse, Proof Analytics: what does that mean? It means that…

    1409
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    Mark Stouse, Proof Analytics: past isn’t prologue anymore. To the extent that it ever was, it’s definitely not now.

    1410
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    Mark Stouse, Proof Analytics: And so, we’re seeing… the patterns… that were…

    1411
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    Mark Stouse, Proof Analytics: identifiable, even recently, becoming separated.

    1412
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    Mark Stouse, Proof Analytics: faster and faster and faster from today’s reality and tomorrow’s probabilities, and correlation just can’t keep up with that, but causation or causality can.

    1413
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    Tooba Durraze: Yeah, I completely agree with you. I think… I think we’re in a world where the future looks very different from what the past was, so a lot of our historical signals, etc, which we’re used to seeing in traditional go-to-market functions, like forecasting, etc, maybe don’t apply in the same way. So, let me ask you, where do you see

    1414
    04:04:03.330 –> 04:04:15.219
    Tooba Durraze: If we talk about Gen AI, and specifically, like, how folks are using LLMs now, where do you see that struggling the most in go-to-market motions, and how does causal AI maybe fill in that gap?

    1415
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    Mark Stouse, Proof Analytics: Well, I mean, an LLM, an SLM…

    1416
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    Mark Stouse, Proof Analytics: even traditional BI, but in a different way, right, is built on correlation, on pattern match.

    1417
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    Tooba Durraze: Not causation, so…

    1418
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    Mark Stouse, Proof Analytics: It can tell you what usually happens, but it can’t tell you why it’s happening or what to do about it.

    1419
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    Tooba Durraze: You can pretend to know why it’s happening, and that’s something, actually, to be very aware of for the folks in the room.

    1420
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    Tooba Durraze: Just because it doesn’t know, doesn’t mean it doesn’t say it like it does know, essentially.

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    Mark Stouse, Proof Analytics: Yeah, I mean, one of the… one of the big challenges is getting just a little bit technical, with Gen AI, right, is what’s called regression to the mean.

    1422
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    Mark Stouse, Proof Analytics: Right? And so, the mean is the average.

    1423
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    Mark Stouse, Proof Analytics: And so everything tends in a correlation-based, machine learning-based kind of system.

    1424
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    Mark Stouse, Proof Analytics: to regress to the mean. And so…

    1425
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    Mark Stouse, Proof Analytics: Why that… why is that bad? Okay, well, it averages out everything, that… that’s kind of somewhat of a problem for a lot of people, but also, if we look at…

    1426
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    Mark Stouse, Proof Analytics: How much of the time The average, or the mean, represents reality.

    1427
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    Mark Stouse, Proof Analytics: It’s… it can… in an open system, which we’re all very much operating in.

    1428
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    Mark Stouse, Proof Analytics: It could be, like, 2%.

    1429
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    Mark Stouse, Proof Analytics: Right? So it’s not really reliable.

    1430
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    Mark Stouse, Proof Analytics: Even as guidance.

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    Tooba Durraze: Yeah.

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    Tooba Durraze: No, absolutely. And again, the intention here is not to say that LLMs aren’t great at certain things, but I think understanding what the purpose is is really important, because

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    Tooba Durraze: you can apply, when we talk about AI these days, everyone kind of conflates that with us talking about GenAI and, like, a subset of Gen AI, which are LLMs. So I think it’s important to understand that these tools are great.

    1434
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    Tooba Durraze: But you have to know where to apply them, where they’re good, instead of kind of using them as a multi-purpose tool, essentially. So there’s a concept that you talk about a lot, which is that… the GPS, essentially. Can you dive into that a little bit? Because…

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    Tooba Durraze: for me as well, I’ve always looked at, like, neurosymbolic AI as, like, a compass, meaning it’s directional, and folks are used to treating, whether it’s business intelligence, whether it’s numbers, analytics, etc, as, like, a very precise science, which I don’t think is the case. So, curious to hear from you on your concept around the GPS.

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    Mark Stouse, Proof Analytics: Yeah, it’s definitely not the case. That said, it’s also not… Just completely laissez-faire and, and…

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    Mark Stouse, Proof Analytics: you know, only generally representative either, right? There’s… it’s kind of a balance, and so…

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    Mark Stouse, Proof Analytics: We talk a lot about fit-for-purpose levels of accuracy.

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    Tooba Durraze: You know, if it’s life and death.

    1440
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    Mark Stouse, Proof Analytics: Then you’re gonna want a very high confidence score.

    1441
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    Mark Stouse, Proof Analytics: If you are doing something else, marketing, go-to-market, comes to mind. You know, not only are you not going to get a high confidence score, because it’s almost all human behavior related.

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    Mark Stouse, Proof Analytics: But also, you know, you’re just gonna…

    1443
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    Mark Stouse, Proof Analytics: You’re far more interested in how it’s iterating than it… what it is at a particular moment.

    1444
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    Mark Stouse, Proof Analytics: And I think that that’s what a lot of people are really getting at when they talk about the idea of being directional.

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    Mark Stouse, Proof Analytics: Yeah. You know?

    1446
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    Mark Stouse, Proof Analytics: it’s… It’s a GPS in the sense that…

  • 1447
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    Mark Stouse, Proof Analytics: Right? Actually, it’s literally a GPS, the math is extremely similar.

    1448
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    Tooba Durraze: Yes, I was going to laugh and say that, actually.

    1449
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    Mark Stouse, Proof Analytics: Yeah, no, it is. It’s why it’s the analogy that never breaks, right? Yeah. And so,

    1450
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    Mark Stouse, Proof Analytics: you know, you’re… you’re… you think about a… the GPS on your phone, it’s… it’s going… it knows where you are, you tell it where you want it to go, or where you want to go, and it’s going to show you

    1451
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    Mark Stouse, Proof Analytics: two or three options. You’re gonna pick one.

    1452
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    Mark Stouse, Proof Analytics: And critically, and this is the direct compare, it’s going to track what you do, what you control, namely the car.

    1453
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    Mark Stouse, Proof Analytics: And it’s gonna track a whole bunch of factors you do not control.

    1454
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    Mark Stouse, Proof Analytics: but that either help or hurt your journey, right? Speed it up, slow it down.

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    Tooba Durraze: Yeah.

    1456
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    Mark Stouse, Proof Analytics: Could easily, you know, and this is where you get to the whole idea that just because

    1457
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    Mark Stouse, Proof Analytics: The root to value, in this case, was… correct and optimized.

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    Tooba Durraze: Hmm.

    1459
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    Mark Stouse, Proof Analytics: in January does not mean that that is still it in September.

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    Mark Stouse, Proof Analytics: And so you’re gonna, you know, a lot of times you have to reroute. I was, I was with a CMO of… it’s a customer of ours, not, you know, a couple years ago, and he was up on stage, and he said, oh, the thing I love about proof

    1461
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    Mark Stouse, Proof Analytics: is that… it means I’m never wrong.

    1462
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    Mark Stouse, Proof Analytics: And of course, I just…

    1463
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    Mark Stouse, Proof Analytics: pretty much had a heart attack right there, right? And so, you know, when he came off the stage, I’m like, dude, that was really cool, but…

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    Mark Stouse, Proof Analytics: You know, what did you mean?

    1465
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    Tooba Durraze: Yeah.

    1466
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    Mark Stouse, Proof Analytics: You know, and he’s like, well, think about it for a second.

    1467
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    Mark Stouse, Proof Analytics: He goes, If, because of the readouts improved, and a GPS,

    1468
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    Mark Stouse, Proof Analytics: I’m never wrong, I’m just endlessly corrected.

    1469
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    Mark Stouse, Proof Analytics: and I get to my destination.

    1470
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    Mark Stouse, Proof Analytics: with an explainable variance, if I’m late, explainable variance, guys, means you’re… you’re not worried… you didn’t nail it, but you have a good reason that’s documented for the fact that you’re, in this case, late.

    1471
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    Mark Stouse, Proof Analytics: Right? And he’s like, so, how is…

    1472
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    Mark Stouse, Proof Analytics: How am I wrong in saying I’m never wrong?

    1473
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    Mark Stouse, Proof Analytics: And I’m kinda like, Well, factually, that’s probably pretty much true, pretty much defensible, right? It just doesn’t sound…

    1474
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    Mark Stouse, Proof Analytics: Right. You know, so we had a good laugh about it.

    1475
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    Tooba Durraze: Yeah, like, I would say, you can get from A to B, like, you can walk from A to B, as well as drive from A to B. You’re still getting the result where you’re reaching your destination, but

    1476
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    Tooba Durraze: reaching it in the right way, in the most precise way, in the most optimized way, rather, is, like, the thing. Yeah, so just because you took a path and you got to your end destination doesn’t mean that was, like, the optimal path for you to take, essentially.

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    Mark Stouse, Proof Analytics: That’s right.

    1478
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    Mark Stouse, Proof Analytics: That’s right. And that is actually, quickly, very, very relevant right now. For the last two and a half years since Delaware’s Chancery Court

    1479
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    Mark Stouse, Proof Analytics: Made a major new ruling on fiduciary duty, spreading it out.

    1480
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    Mark Stouse, Proof Analytics: to all corporate officers and lowering the threshold for breach considerably, right?

    1481
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    Mark Stouse, Proof Analytics: the ability to say, I am managing my function iteratively.

    1482
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    Mark Stouse, Proof Analytics: And always with an eye towards… Minimizing risk, And maximizing shareholder value.

    1483
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    Mark Stouse, Proof Analytics: That’s exactly where not only That the… the calculation of causality matters.

    1484
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    Mark Stouse, Proof Analytics: The ability to iterate it at the clock speed of the business is super important.

    1485
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    Tooba Durraze: Yeah, it’s not a nice-to-have anymore. And, like, this is… again, the intention is not to scare the people in the room who are listening to this, but I think, like, as a founder, like, I’m constantly thinking about my fiduciary responsibility in that sense.

    1486
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    Tooba Durraze: And I’m constantly optimizing, but sometimes when executive teams get a little bit bigger, a little bit bloat gets introduced into the company.

    1487
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    Tooba Durraze: you think about, like, okay, it’s fine if I miss my target by X percent in quarter one, I’m gonna make up for it in quarter two, and then that can have a compounding effect, because you can’t presumably predict very well on what’s gonna happen in quarter two.

    1488
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    Tooba Durraze: So the idea of, like, having a system that optimizes consistently against your business goals is…

    1489
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    Tooba Durraze: Very important, not just, from the business perspective, but also from the

    1490
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    Tooba Durraze: fiduciary responsibility perspective. So, given that, I’m curious on, your thoughts on agents. Now, we’ll define agents right now as

    1491
    04:13:24.750 –> 04:13:43.299
    Tooba Durraze: conducting some sort of, like, autonomous flow using, like, LLMs, instructions, etc. So what are your thoughts on how folks are thinking about agents these days, especially because there’s a lack of observability on, like, the paths the agents would take, because they’re LLM-based, non-deterministic?

    1492
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    Mark Stouse, Proof Analytics: Yeah, I mean, I think that the problem here is, is that everyone…

    1493
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    Mark Stouse, Proof Analytics: By the way, this also goes for Gen AI in general, right?

    1494
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    Tooba Durraze: Yep.

    1495
    04:13:55.490 –> 04:14:00.700
    Mark Stouse, Proof Analytics: Everyone’s really focused On efficiency and productivity.

    1496
    04:14:01.510 –> 04:14:03.989
    Mark Stouse, Proof Analytics: Not being effective.

    1497
    04:14:04.570 –> 04:14:05.460
    Mark Stouse, Proof Analytics: Right?

    1498
    04:14:05.500 –> 04:14:09.239
    Tooba Durraze: And so, when you program an agent right now.

    1499
    04:14:09.360 –> 04:14:15.560
    Mark Stouse, Proof Analytics: It’s totally correlation-based. It’s essentially… this is a little harsh, but not by much.

    1500
    04:14:15.720 –> 04:14:21.150
    Mark Stouse, Proof Analytics: It is, it’s very sophisticated automation.

    1501
    04:14:21.920 –> 04:14:22.520
    Tooba Durraze: Yeah.

    1502
    04:14:22.870 –> 04:14:24.330
    Mark Stouse, Proof Analytics: So…

    1503
    04:14:24.490 –> 04:14:34.400
    Mark Stouse, Proof Analytics: The problem is, is that in an ever-changing, highly volatile, open system, like the marketplace, and like your response to the marketplace.

    1504
    04:14:34.750 –> 04:14:42.880
    Mark Stouse, Proof Analytics: The instructions that you are giving your agents are almost immediately dated.

    1505
    04:14:45.290 –> 04:14:52.239
    Mark Stouse, Proof Analytics: And if you can’t have a GPS on board effectively with every agent.

    1506
    04:14:52.500 –> 04:14:55.980
    Tooba Durraze: Yeah. Will not know how to…

    1507
    04:14:56.050 –> 04:15:05.070
    Mark Stouse, Proof Analytics: compensate, right? So you’ll start getting… by the way, this is one of the major symptoms of…

    1508
    04:15:05.260 –> 04:15:13.789
    Mark Stouse, Proof Analytics: the failures that are being reported on all this is that the agents are kind of shutting down and running home to mama.

    1509
    04:15:13.790 –> 04:15:15.420
    Tooba Durraze: for additional… Yes.

    1510
    04:15:15.420 –> 04:15:17.910
    Mark Stouse, Proof Analytics: instructions, right? Yeah.

    1511
    04:15:18.060 –> 04:15:20.279
    Mark Stouse, Proof Analytics: And that… and that’s a… and that’s a problem.

    1512
    04:15:21.190 –> 04:15:40.409
    Tooba Durraze: Yeah, I think one of the things that could be really interesting is how you layer on, kind of, causal AI to Gen AI. You layer on neurosymbolic AI to gen AI. Again, this technology exists in a way that you can kind of marry the two pieces together, and kind of get the best of both worlds, but

    1513
    04:15:40.480 –> 04:16:00.409
    Tooba Durraze: like, agents in the way that we think about them today, will only get us part of the way there if they’re only GenAI-based. So, given that, and the folks in the room are mostly on the go-to-market side, on the marketing side, how does… how does the role of a go-to-market leader evolve in, like, a causal world, let’s just say?

  • 1514
    04:16:01.230 –> 04:16:10.270
    Mark Stouse, Proof Analytics: Well, there’s some things… I mean, number one, it’s gonna really cause out… causal AI, causal inference, really helps you understand

    1515
    04:16:10.740 –> 04:16:26.470
    Mark Stouse, Proof Analytics: exactly what’s going on, not just with your machine, I’m putting quotes around that, but in the way that it interacts with the marketplace ecosystem, I’m not putting quotes around that.

    1516
    04:16:26.470 –> 04:16:27.280
    Tooba Durraze: Yeah. Right?

    1517
    04:16:27.530 –> 04:16:35.110
    Mark Stouse, Proof Analytics: And so, it is… For example, most B2B marketers do not

    1518
    04:16:35.530 –> 04:16:39.339
    Mark Stouse, Proof Analytics: No, it has probably never crossed their mind.

    1519
    04:16:39.840 –> 04:16:50.880
    Mark Stouse, Proof Analytics: that… The value that they contribute to the go-to-market enterprise is they are a non-linear multiplier.

    1520
    04:16:51.400 –> 04:16:55.010
    Mark Stouse, Proof Analytics: Of sales productivity, sales performance, right?

    1521
    04:16:55.380 –> 04:16:56.400
    Mark Stouse, Proof Analytics: And…

    1522
    04:16:57.070 –> 04:17:05.620
    Mark Stouse, Proof Analytics: When you don’t know that, and you also don’t know that the stuff out there in the marketplace is killing you right now because of…

    1523
    04:17:05.960 –> 04:17:20.150
    Mark Stouse, Proof Analytics: volatility, etc, right? You’re not compensating for it, you don’t know how to compensate for it, you’re just executing the same old roadmap, the same old framework, right?

    1524
    04:17:20.380 –> 04:17:22.439
    Tooba Durraze: And not realizing that.

    1525
    04:17:22.650 –> 04:17:30.410
    Mark Stouse, Proof Analytics: The efficacy and impact of your investments have been falling for years.

    1526
    04:17:31.100 –> 04:17:36.850
    Mark Stouse, Proof Analytics: We’re getting ready to release a report From 2018 to 2025.

    1527
    04:17:37.450 –> 04:17:47.809
    Mark Stouse, Proof Analytics: Right? That shows that… the effectiveness of B2B marketing across a very large number of companies has fallen

    1528
    04:17:48.730 –> 04:17:52.780
    Mark Stouse, Proof Analytics: Well, very recently, it’s just crossed the 50% mark, right?

    1529
    04:17:52.780 –> 04:17:54.080
    Tooba Durraze: Wow, okay.

    1530
    04:17:54.080 –> 04:18:00.300
    Mark Stouse, Proof Analytics: And in 2017, 2018, it was, like, 20-25% in effect, right?

    1531
    04:18:01.560 –> 04:18:04.329
    Tooba Durraze: Yeah, and, like, I… all that is to say is, like.

    1532
    04:18:04.420 –> 04:18:20.699
    Tooba Durraze: I think we think of the idea of, like, being data-driven as, like, we’re applying any and every kind of data, like, into our strategy. So, there are folks that… who are applying this data, but then the inefficiency is still, like, rising. From 25% to 50% is a huge leap, so think of how much opportunity

    1533
    04:18:20.700 –> 04:18:28.450
    Tooba Durraze: They’re leaving on the table that they could optimize for if the right systems were connected in the right way.

    1534
    04:18:28.640 –> 04:18:30.809
    Tooba Durraze: Right? So, now…

    1535
    04:18:30.810 –> 04:18:33.660
    Mark Stouse, Proof Analytics: It also helps you know what to cut.

    1536
    04:18:33.830 –> 04:18:34.420
    Tooba Durraze: Yeah.

    1537
    04:18:34.420 –> 04:18:36.460
    Mark Stouse, Proof Analytics: without hurting anything.

    1538
    04:18:36.750 –> 04:18:37.470
    Tooba Durraze: Yeah.

    1539
    04:18:37.470 –> 04:18:41.029
    Mark Stouse, Proof Analytics: By the way, this also really applies to the CFO.

    1540
    04:18:41.740 –> 04:18:49.140
    Mark Stouse, Proof Analytics: CFO is usually cutting pretty gratuitously, just to meet an EPS target.

    1541
    04:18:49.140 –> 04:18:49.760
    Tooba Durraze: Yep.

    1542
    04:18:50.460 –> 04:18:58.800
    Mark Stouse, Proof Analytics: And that usually entails cutting things that they… if they could understand the impact, particularly time-lagged impact.

    1543
    04:18:59.080 –> 04:19:01.159
    Mark Stouse, Proof Analytics: Right? They wouldn’t make those cuts.

    1544
    04:19:01.750 –> 04:19:20.350
    Tooba Durraze: Yeah, agreed. I would agree with that. So, like, going back to marketers, and the age-old question, like, marketers talk a ton about measuring their value, you talked about, like, the nonlinear relationship between the impact that they have on the business, and one of the things that comes up a ton is ways to solve for

    1545
    04:19:20.450 –> 04:19:26.679
    Tooba Durraze: things like attribution. To me, attribution in general is the wrong problem to solve, because…

    1546
    04:19:27.210 –> 04:19:41.989
    Tooba Durraze: Ideally, you’re not looking for, like, which activity is worth how much to convert, but you’re looking at what sets of activities are, like, actually driving things, and that… that… the sets of activities, to your point, it’s an open system, change fairly regularly.

    1547
    04:19:41.990 –> 04:19:48.779
    Tooba Durraze: So I’m curious on your thoughts on just attribution and attribution tools in general.

    1548
    04:19:50.540 –> 04:19:57.729
    Mark Stouse, Proof Analytics: Yeah, I mean, it’s kind of sad in the sense… okay, so number one… you know, MTA, multi-touch attribution.

    1549
    04:19:57.730 –> 04:19:58.290
    Tooba Durraze: Yeah.

    1550
    04:19:58.610 –> 04:20:00.250
    Mark Stouse, Proof Analytics: is baseless.

    1551
    04:20:01.210 –> 04:20:03.849
    Mark Stouse, Proof Analytics: Right? So I completely agree with you there.

    1552
    04:20:04.340 –> 04:20:11.360
    Mark Stouse, Proof Analytics: I think that one of the… one of the bummers is, is that… The word attribution

    1553
    04:20:12.080 –> 04:20:16.380
    Mark Stouse, Proof Analytics: Technically, is indivisible from causality.

    1554
    04:20:16.890 –> 04:20:17.330
    Tooba Durraze: Yeah.

    1555
    04:20:17.330 –> 04:20:23.640
    Mark Stouse, Proof Analytics: But because of the way it’s been used for the last 10 years, It’s sort of poisoned

    1556
    04:20:23.920 –> 04:20:27.810
    Mark Stouse, Proof Analytics: At least in the marketing or go-to-market space.

    1557
    04:20:27.810 –> 04:20:28.510
    Tooba Durraze: Yeah. Right?

    1558
    04:20:29.390 –> 04:20:33.669
    Mark Stouse, Proof Analytics: So, it also kind of implies that…

    1559
    04:20:34.650 –> 04:20:38.510
    Mark Stouse, Proof Analytics: Marketing’s role is sort of additive.

    1560
    04:20:40.270 –> 04:20:44.410
    Mark Stouse, Proof Analytics: And thus, you can somehow share revenue credit?

    1561
    04:20:45.310 –> 04:20:48.600
    Mark Stouse, Proof Analytics: And that’s just not the way it works, like, at all.

    1562
    04:20:49.030 –> 04:20:57.069
    Mark Stouse, Proof Analytics: Right? It’s, you… you’re not sharing revenue credit, you are showing, or should be showing.

    1563
    04:20:57.340 –> 04:21:03.190
    Mark Stouse, Proof Analytics: How much more efficient and effective sales is because you exist.

    1564
    04:21:04.590 –> 04:21:04.990
    Tooba Durraze: Yeah.

    1565
    04:21:04.990 –> 04:21:09.710
    Mark Stouse, Proof Analytics: than they would if you didn’t exist, right? And…

    1566
    04:21:09.890 –> 04:21:18.379
    Mark Stouse, Proof Analytics: that’s… that’s a classic calculation in causal AI. I mean, that’s… that’s just kind of a normal output, right, on anything.

    1567
    04:21:18.380 –> 04:21:18.860
    Tooba Durraze: Captain.

    1568
    04:21:18.860 –> 04:21:20.040
    Mark Stouse, Proof Analytics: Marketing and sales.

    1569
    04:21:20.340 –> 04:21:32.989
    Tooba Durraze: Yeah, I feel like… I feel like the thoughts around… and you’re right, people, like, in general, I even use the term attribution, but I think that it gets conflated with multi-touch attribution, that’s what we’re talking about right now. Does…

    1570
    04:21:33.210 –> 04:21:49.560
    Tooba Durraze: Sort of put marketing sometimes as a second-degree citizen to, like, the business, as in they have to prove that the things they did contributed to the revenue generated, instead of first-class citizens to say, you were an accelerant to, like, certain things, causing your revenue to rise.

    1571
    04:21:49.630 –> 04:21:58.320
    Tooba Durraze: So if I’m a marketer now, and, you know, I have a ton of agents, Gen AI tools, at my disposal.

    1572
    04:21:58.320 –> 04:22:13.729
    Tooba Durraze: And I’m listening to this, and I’m saying, like, okay, I need to think about things like causal AI, neurosymbolic AI, etc. Where would I start? What would be, like, the first thing I could do, essentially, to try to understand this a bit better and try to apply this?

    1573
    04:22:14.170 –> 04:22:23.549
    Mark Stouse, Proof Analytics: Well, this, this, I guess my answer would probably not surprise anybody, right? I think you have to really understand causally.

    1574
    04:22:23.920 –> 04:22:26.159
    Mark Stouse, Proof Analytics: What’s been going on to this point?

    1575
    04:22:26.290 –> 04:22:31.760
    Mark Stouse, Proof Analytics: Right? There’s an internal benchmark, a causal audit.

    1576
    04:22:31.930 –> 04:22:33.590
    Mark Stouse, Proof Analytics: That has to be done.

    1577
    04:22:33.750 –> 04:22:34.230
    Tooba Durraze: Yep.

    1578
    04:22:35.460 –> 04:22:44.619
    Mark Stouse, Proof Analytics: One of the coolest things in the last several years is that even if your data, your natural data, your operational data.

    1579
    04:22:44.830 –> 04:22:46.490
    Mark Stouse, Proof Analytics: It’s kind of marginal.

    1580
    04:22:46.630 –> 04:22:52.550
    Mark Stouse, Proof Analytics: Or maybe even doesn’t exist in the way that maybe it should.

    1581
    04:22:52.660 –> 04:22:59.370
    Mark Stouse, Proof Analytics: There’s a lot that we can do today with very high-fidelity synthetic data.

    1582
    04:22:59.980 –> 04:23:06.400
    Mark Stouse, Proof Analytics: That can help fill in the gaps and simulate, and it’s represented clearly as a… as…

    1583
    04:23:06.800 –> 04:23:09.709
    Mark Stouse, Proof Analytics: What it is, which is a, you know, a mix…

    1584
    04:23:09.940 –> 04:23:15.959
    Mark Stouse, Proof Analytics: Of synthetic and natural data, or maybe a pure synthetic model, so that no one’s confused.

    1585
    04:23:16.160 –> 04:23:16.550
    Tooba Durraze: Yeah.

    1586
    04:23:16.550 –> 04:23:31.399
    Mark Stouse, Proof Analytics: But you… but you get a real… you can… you can get to a level of understanding that used to be just kind of, like, outside of what was possible unless you were a nation-state or something, right?

    1587
    04:23:31.400 –> 04:23:39.180
    Tooba Durraze: Yeah, yeah, that was… that’s a fallacy around AI that has existed, right? It’s like, I don’t have enough data to get started, or…

    1588
    04:23:39.230 –> 04:23:52.320
    Tooba Durraze: in go-to-market case, folks will often say, like, my data is, like, too messy to even be useful in some of these AI systems, and I feel like synthetic data is a really, really good option to kind of bridge that gap. Now, again.

    1589
    04:23:52.950 –> 04:24:00.399
    Tooba Durraze: It’s a GPS, it’s directional. I think we’re used to consuming data sometimes in a way where we feel like it has to be, like, precise.

    1590
    04:24:00.550 –> 04:24:08.310
    Tooba Durraze: Essentially. Do you think that, for marketers and leaders, there should be more trust around things like synthetic data?

    1591
    04:24:09.140 –> 04:24:09.699
    Tooba Durraze: Or do you think…

    1592
    04:24:09.700 –> 04:24:17.610
    Mark Stouse, Proof Analytics: I think that there’s gonna have to be… there’s gonna have to be. Yeah. There’s just… we’re kind of getting to a place where…

    1593
    04:24:18.070 –> 04:24:22.259
    Mark Stouse, Proof Analytics: If you don’t do… if you… if you don’t trust…

    1594
    04:24:22.610 –> 04:24:23.250
    Tooba Durraze: Yeah.

    1595
    04:24:23.250 –> 04:24:26.659
    Mark Stouse, Proof Analytics: Certain things, you’re just gonna stop.

    1596
    04:24:27.270 –> 04:24:31.769
    Mark Stouse, Proof Analytics: you’re gonna stop. You won’t be able to go any further

    1597
    04:24:32.110 –> 04:24:38.550
    Mark Stouse, Proof Analytics: Or you’ll be able to progress, but much more slowly. You will totally lose a competitive edge.

    1598
    04:24:38.900 –> 04:24:43.090
    Mark Stouse, Proof Analytics: Not only organizationally, corporately, but personally.

    1599
    04:24:43.430 –> 04:24:44.200
    Tooba Durraze: Yep.

    1600
    04:24:44.420 –> 04:24:48.830
    Mark Stouse, Proof Analytics: And I think that that’s… That’s just kind of the way it is.

    1601
    04:24:49.580 –> 04:24:56.510
    Mark Stouse, Proof Analytics: We can… we can debate that. I mean, is that good? Is that bad? You know, that kind of thing, but it’s not going to change

    1602
    04:24:57.180 –> 04:24:59.029
    Mark Stouse, Proof Analytics: The reality of it.

    1603
    04:24:59.290 –> 04:25:00.950
    Mark Stouse, Proof Analytics: At all.

    1604
    04:25:01.130 –> 04:25:01.720
    Tooba Durraze: Yeah.

    1605
    04:25:02.210 –> 04:25:12.810
    Mark Stouse, Proof Analytics: So, I mean, it’s, and you’re not, you know, I think everybody really needs to stop and consider

    1606
    04:25:14.160 –> 04:25:25.220
    Mark Stouse, Proof Analytics: That if you can’t show what your company is getting in return for the money that they’re spending on fill-in-the-blank, right?

    1607
    04:25:25.330 –> 04:25:29.419
    Mark Stouse, Proof Analytics: Increasingly, you’re gonna be very unlikely to get it.

    1608
    04:25:31.130 –> 04:25:34.239
    Mark Stouse, Proof Analytics: Yeah. And that’s a problem.

    1609
    04:25:34.520 –> 04:25:41.599
    Mark Stouse, Proof Analytics: In a lot of ways, but it’s a huge problem in the sense that go-to-market is the revenue engine of the company.

    1610
    04:25:42.580 –> 04:25:44.040
    Tooba Durraze: No, absolutely, yeah.

    1611
    04:25:44.040 –> 04:25:44.860
    Mark Stouse, Proof Analytics: So…

    1612
    04:25:44.860 –> 04:25:56.590
    Tooba Durraze: it sometimes happens slowly over time as well. I think there’s drift sometimes that people don’t actually notice until it’s a little bit too late. So that’s another thing to watch out for, because I see a lot of times

    1613
    04:25:56.730 –> 04:26:12.560
    Tooba Durraze: books, kind of repeating playbooks that have worked, and it might continue to work within a certain degree, but you might see depreciating returns that you don’t pick up on, essentially. So understanding the root cause of, like, why something is working, and applying that root cause to other things.

    1614
    04:26:12.590 –> 04:26:23.870
    Tooba Durraze: that you could do that would make it work. I think it’s more important than, you know, yesterday, everyone thumbs up my post, and today, if I write a similar post, everyone’s gonna thumbs up my post as well.

    1615
    04:26:23.900 –> 04:26:36.489
    Tooba Durraze: I bring that up because there’s a lot of debate around, how personalization at scale kind of impacts your go-to-market or your marketing motion, and the argument I always bring to the table is, like, you don’t know what

    1616
    04:26:36.650 –> 04:26:43.019
    Tooba Durraze: What is the affinity that you’re personalizing on that is appealing to the person on the other side?

    1617
    04:26:43.140 –> 04:26:52.850
    Tooba Durraze: So is it their title? Like, everyone has, like, so many attributes and affinities, right? So you don’t know, and unless you figure that out, it’s very hard to kind of correlate that and say.

    1618
    04:26:53.430 –> 04:27:00.230
    Tooba Durraze: Yeah, like, they may already have opened an email, but the reason why they opened an email is very important to know, to kind of repeat that success.

    1619
    04:27:00.430 –> 04:27:01.450
    Tooba Durraze: Okay.

    1620
    04:27:01.450 –> 04:27:07.530
    Mark Stouse, Proof Analytics: I’m gonna… I’m just gonna… I’ll just say this real fast. Most people… find…

    1621
    04:27:08.110 –> 04:27:13.569
    Mark Stouse, Proof Analytics: the fact that causal AI is a Pretty definitive readout.

    1622
    04:27:13.830 –> 04:27:14.370
    Tooba Durraze: Yeah.

    1623
    04:27:14.370 –> 04:27:15.829
    Mark Stouse, Proof Analytics: Kind of scary.

    1624
    04:27:16.420 –> 04:27:21.910
    Tooba Durraze: Right? Like, it’s gonna… it’s gonna tell me I’m wrong, right? I’ve been doing it all wrong. Yeah.

    1625
    04:27:21.910 –> 04:27:26.610
    Mark Stouse, Proof Analytics: Let me just say that that’s not usually how it goes in go-to-market.

    1626
    04:27:26.930 –> 04:27:32.980
    Mark Stouse, Proof Analytics: You’re gonna be more… you’re gonna score higher on the test, so to speak, than you probably think.

    1627
    04:27:33.050 –> 04:27:49.890
    Mark Stouse, Proof Analytics: Right? And the most important thing is that while you may have to learn a few things up front that is… that don’t make you feel really good, it’s gonna limit your downside risk going forward.

    1628
    04:27:50.070 –> 04:27:52.180
    Mark Stouse, Proof Analytics: In a huge way.

    1629
    04:27:52.600 –> 04:27:53.180
    Tooba Durraze: Yeah.

    1630
    04:27:53.730 –> 04:27:54.160
    Mark Stouse, Proof Analytics: So…

    1631
    04:27:54.160 –> 04:28:05.749
    Tooba Durraze: I agree. It’s a more stable and dependable system than the current systems. I think that we have to change our consumption behavior from these systems as well, because we’re so used to getting quick wins.

    1632
    04:28:05.890 –> 04:28:21.049
    Tooba Durraze: out of these systems, but those quick wins, the opportunity cost is, like, it’s actually causing you to be more inefficient. So taking the time to understand a system, implementing a system, letting it kind of do its thing, and then applying it makes a huge difference.

    1633
    04:28:21.210 –> 04:28:32.830
    Tooba Durraze: I know we have other panelists joining us, but I… my last question is, what is your prediction over the next 3 to 5 years? Does everyone adopt causal AI? Do people adopt neurosymbolic AI, or how does that evolve?

    1634
    04:28:34.360 –> 04:28:41.250
    Mark Stouse, Proof Analytics: You know, if the situation in Delaware hadn’t happened, and if similar situations

    1635
    04:28:41.350 –> 04:28:46.960
    Mark Stouse, Proof Analytics: in the EU, the UK, the PRC, Hadn’t happened.

    1636
    04:28:46.960 –> 04:28:47.900
    Tooba Durraze: Yeah.

    1637
    04:28:47.900 –> 04:28:52.620
    Mark Stouse, Proof Analytics: I would have said that it would take a lot… it would take 10 years, okay?

    1638
    04:28:52.880 –> 04:28:53.540
    Tooba Durraze: Okay.

    1639
    04:28:53.540 –> 04:28:56.590
    Mark Stouse, Proof Analytics: to see causal AI be pervasive.

    1640
    04:28:56.800 –> 04:28:57.530
    Tooba Durraze: Yeah.

    1641
    04:28:57.530 –> 04:28:59.620
    Mark Stouse, Proof Analytics: the regulatory pressure

    1642
    04:29:00.290 –> 04:29:08.900
    Mark Stouse, Proof Analytics: Which, you know, it takes about 3 years for all that to kind of filter through a system. That was the way it was for SOX as well, right?

    1643
    04:29:09.290 –> 04:29:14.300
    Mark Stouse, Proof Analytics: So, we’re almost to that point here, and

    1644
    04:29:14.990 –> 04:29:24.379
    Mark Stouse, Proof Analytics: It’s definitely a tailwind for our business, and for the business of our competitors… It… you just won’t…

    1645
    04:29:24.780 –> 04:29:31.540
    Mark Stouse, Proof Analytics: You literally won’t be able to operate anymore without it, because nobody is willing to put up

    1646
    04:29:31.940 –> 04:29:33.589
    Mark Stouse, Proof Analytics: with the guesses.

    1647
    04:29:33.820 –> 04:29:34.410
    Mark Stouse, Proof Analytics: Right?

    1648
    04:29:34.410 –> 04:29:35.030
    Tooba Durraze: Yeah.

    1649
    04:29:35.240 –> 04:29:36.820
    Mark Stouse, Proof Analytics: And… and that’s the…

    1650
    04:29:36.990 –> 04:29:46.550
    Mark Stouse, Proof Analytics: And the fact that now a CMO or a CRO or somebody can be sued directly by shareholders.

    1651
    04:29:46.550 –> 04:29:47.450
    Tooba Durraze: Scary.

    1652
    04:29:47.450 –> 04:29:51.000
    Mark Stouse, Proof Analytics: That’s it, yeah, no, it’s… I mean, it’s bringing a whole new…

    1653
    04:29:51.270 –> 04:29:59.090
    Mark Stouse, Proof Analytics: Real fast, right? I was just part of a case, I was consulting for a case,

    1654
    04:29:59.250 –> 04:30:12.949
    Mark Stouse, Proof Analytics: in California, large Delaware, domiciled company, sued by, and, you know, shareholders, naming the CRO, the CIO, and the CDO, the Chief Data Offic

    1655
    04:30:14.150 –> 04:30:19.619
    Mark Stouse, Proof Analytics: Kind of the people, process, technology representatives, on this project?

    1656
    04:30:19.790 –> 04:30:26.570
    Mark Stouse, Proof Analytics: And it was all about CRM data quality. It was about nothing else, okay? Just that.

    1657
    04:30:27.620 –> 04:30:37.090
    Mark Stouse, Proof Analytics: They ran analysis, and mainly, mainly pattern match, because it was essentially a fraud detection case.

    1658
    04:30:37.190 –> 04:30:41.630
    Mark Stouse, Proof Analytics: And 14 years worth of data, two-thirds of it came back.

    1659
    04:30:42.090 –> 04:30:47.890
    Mark Stouse, Proof Analytics: just… completely engineered by God only knows how many sales guys over the years.

    1660
    04:30:47.990 –> 04:30:48.570
    Tooba Durraze: Yeah.

    1661
    04:30:48.750 –> 04:30:56.260
    Mark Stouse, Proof Analytics: And they went immediately to settlement, and I… you know, it’s… it was a lot of money. I mean, a lot of money.

    1662
    04:30:56.880 –> 04:31:03.300
    Mark Stouse, Proof Analytics: And so, now that company is dealing with 5 more suits…

    1663
    04:31:03.810 –> 04:31:08.790
    Tooba Durraze: Not about CRM data quality, but about data quality in other parts of the business.

    1664
    04:31:09.840 –> 04:31:21.140
    Tooba Durraze: Yeah, and again, I will close this out. Julius, I’m sorry, we could talk forever about these topics, clearly, as you can tell. But essentially, again, the intention here is, like, not to…

    1665
    04:31:21.260 –> 04:31:38.160
    Tooba Durraze: scare the folks in the room, but to more inform them that it is our responsibility to kind of get to learn about these things, and sometimes not to get caught up in the hype of, like, every new piece of technology and what that offers. Like, there is a lot of foundational tech here that I think

    1666
    04:31:38.160 –> 04:31:48.440
    Tooba Durraze: serves us well in terms of businesses, so the best way you can do that is just educate yourself, is read. And spending time tinkering and reading, I think it’s the only way forward.

    1667
    04:31:49.690 –> 04:31:51.550
    Tooba Durraze: Let me pass it back to you, Julia.

    1668
    04:31:51.550 –> 04:31:59.060
    Julia Nimchinski: Phenomenal parasite chat, thank you so much. Super, super thought-provoking. What’s the best way to support you, Tuba and Mark?

    1669
    04:32:00.060 –> 04:32:00.930
    Tooba Durraze: Go ahead, Mark.

    1670
    04:32:02.320 –> 04:32:05.740
    Mark Stouse, Proof Analytics: You know, I would say learn, right?

    1671
    04:32:06.420 –> 04:32:08.409
    Mark Stouse, Proof Analytics: Just be open to learning.

    1672
    04:32:08.900 –> 04:32:12.850
    Mark Stouse, Proof Analytics: You know, I see a lot of…

    1673
    04:32:13.640 –> 04:32:17.300
    Mark Stouse, Proof Analytics: Fireside chats, or a lot of panels, or whatever, that…

    1674
    04:32:17.610 –> 04:32:22.270
    Mark Stouse, Proof Analytics: Are all the same kind of people talking to…

    1675
    04:32:22.500 –> 04:32:25.610
    Mark Stouse, Proof Analytics: Just to people in their space that are…

    1676
    04:32:25.780 –> 04:32:30.370
    Mark Stouse, Proof Analytics: just younger than they are in their career, right? And…

    1677
    04:32:30.990 –> 04:32:34.070
    Mark Stouse, Proof Analytics: That is… that… that is being inbred.

    1678
    04:32:34.190 –> 04:32:36.209
    Mark Stouse, Proof Analytics: In your thinking, right?

    1679
    04:32:36.550 –> 04:32:37.130
    Tooba Durraze: Yes.

    1680
    04:32:37.130 –> 04:32:47.629
    Mark Stouse, Proof Analytics: I mean, go outside of marketing and say to other, you know, functional leaders, how are you dealing with this, this, and this?

    1681
    04:32:48.070 –> 04:32:58.350
    Mark Stouse, Proof Analytics: Right? I mean, I got started along this whole line of thought by listening 20 years ago, or more, listening to CIOs in briefing centers.

    1682
    04:32:58.620 –> 04:33:01.929
    Mark Stouse, Proof Analytics: Talk about exactly the same problem.

    1683
    04:33:02.170 –> 04:33:13.510
    Mark Stouse, Proof Analytics: And I was sitting there going… as a CMO, I was sitting there going, shit, I can just, like, do a search and replace on what they’re saying, and it applies the same to me.

    1684
    04:33:13.869 –> 04:33:16.849
    Mark Stouse, Proof Analytics: And so I started to learn how they were dealing with it.

    1685
    04:33:18.119 –> 04:33:25.119
    Mark Stouse, Proof Analytics: So I think that’s the best way to support this, is… Realize that learning means…

    1686
    04:33:25.700 –> 04:33:28.420
    Mark Stouse, Proof Analytics: That you don’t know. And that’s okay.

    1687
    04:33:29.560 –> 04:33:39.609
    Tooba Durraze: Same for me. I think we’re both evangelists of, like, the more informed people are, the better off we’ll all be. So, yes, I’ll take Mark’s advice on that. Learn

    1688
    04:33:39.610 –> 04:33:54.770
    Tooba Durraze: read… reach out to both of us on LinkedIn or otherwise. We’re happy to share, like, papers, documents, and things, et cetera, to help inform you. But, yeah, keep your eyes open on everything that exists, and keep your eyes… keep your head forward on what’s coming next.

    1689
    04:33:55.520 –> 04:33:57.179
    Julia Nimchinski: Thank you so much again. Thank you.

    1690
    04:33:57.330 –> 04:33:58.160
    Mark Stouse, Proof Analytics: Super.

    1691
    04:33:58.340 –> 04:33:59.009
    Tooba Durraze: Thanks.

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