Phil Le-Brun (10:28):
And if you want to build your own model, well, don't jump into that. Bless your heart. Bless your heart, bless. But don't jump into that. I mean, you could be spending 10, a hundred million dollars, but if there's a real business case to do that, firstly, learn about what you really need to do with the technology you have. But then you've got the infrastructure in the cloud. You've got things like AWS’s Trainium and Inferentia to drive the cost of inferences and training down. So almost regardless of where you're going in the future, you want your data strategy set and you want to be in the cloud. You don't want to try this at home.
Tom Godden:
Let's talk for a minute about the vanity metrics around the foundational models. The latest stats are, the biggest foundation models have over 500 billion parameters. Sounds really cool. Great. I would like five. Why can't I have 800 billion? But I think what we're also seeing is sometimes you don't need that much size. In fact, it can create more spurious results and answers. Having a purpose-built--even a public, open source one—but one that's purpose-built for the use case that you're trying to do, that's tuned with your contextual business information, most likely has better results and efficacy than these vanity metrics that are amazing to talk about. 500 billion parameters sounds absolutely amazing, but may not be what's needed to solve the problem.
Miriam McLemore:
Yeah, the right data for the right problem. And again, as you said, start with the problem. Work backwards from a business value that you can drive, lean in, pick a place to begin. It's an exciting time, but it's going to take a minute to figure out your rhythm and what adds value in your approach. I am amazed at the customers that are already leaning in, making some incredible pathways that we're all going to copy. And that's one of the great things I think, and at AWS sessions, is leaning into other customer use cases, learning from those that have tried things. You don't have to do it all yourself.
Tom Godden:
We talked about Code Whisperer. I see a lot of people also very interested in Contact Center. It's a target rich environment. You have a direct relationship with the customer, so you got to be careful, but it's also lower risk from maybe trying to come up with that next new therapeutic in the healthcare industry. Please do it, we need that kind of advancement. But now we're getting really high risk; really, really complicated. I'm also seeing some people look at their intranet and if yours was like mine, it's where information went to die. You had a great search engine on top of it that found next to nothing in it, and now you have a great opportunity to take and unlock all that information within your organization, but also a great way to start to bring this to life so people can see its potential and do it in a low risk kind of way. That adds a lot of value. Go do it. Be impatient.
Training your teams (and yourself) on generative AI
Miriam McLemore (13:35):
That's one of the big announcements that we've made is around training, right? Because how do you learn how to do this? And so getting out there, getting your team trained, getting your executive team trained. We have a number of offerings that can help our customers train their organizations on places to start, what the tools are available so you can make your own decision for the right approach for your company.
Phil Le-Brun:
Learn and be curious. I mean, we've got the Executive course from Training and Certification. It’s a real straightforward, what is generative AI? We've got the Coursera course now, which is fantastic. If you really want to get into the nuts and bolts and some of the things you were talking about, about that balance between amount of data and parameters and compute and finding the right balance. So it's all out there. A lot of this is public domain. Do it now. Start learning now. It's never too early.
Tom Godden:
And that training's going to help you bring people along because, let's be honest, this is a transformative technology, but it can also be disruptive. Some people rightfully are very concerned about, what does this mean? Not only for my job. I've got rent, a mortgage, kids to send to college. Do I still have a role in this new, massively exciting, transformed world? What's it going to do to society? And I think helping them see their role, helping them understand what role that they're going to be able to play and support them through that training, is going to become even more vital in this than in other transformative evolutions we've seen.
Phil Le-Brun:
Yeah, break your silos down. I mean, you talked about bias, Tom. The best way of mitigating against bias is to have a team that is representative of your customer base. Plus also, we know machine learning in general, generative AI absolutely, is going to cut across the organization. It's going to work despite your organizational structure, not because of it. So get rid of your bureaucracy. I guess you can use generative AI to get rid of some of it, but it's back to what makes-
Tom Godden:
Build me a new org chart?
Phil Le-Brun:
Yeah, automate PowerPoint.
Miriam McLemore:
Tell me who should be in charge.
Phil Le-Brun:
That’s where some bias is going to creep in. That's right. But use it to really understand your competitive advantage. You look at companies like Autodesk who are using generative AI, now they're reducing the weight of some of their designs back to 40%. What a great sustainability benefit. But they've really identified, “where can we use it to make a competitive difference to our organization?”
Tom Godden:
Do it because it adds value. Don't just do it because the cool kids are.
Innovation vs cost-optimization: leave behind the false dichotomy
Phil Le-Brun (16:11):
What I find interesting is often there's this tension between, “do I save money because times are tough” or “do I innovate?” and I don't think there's a choice anymore. You need to do both. And the reality is there's so much money wasted in organization. So I think 94% of CXOs in one study showed that their own organizational structure is preventing them innovating. All of that bureaucracy. How long does it take you to make a decision? What we sort of tongue-in-cheek call the “bureaucratic mass index.” How much time are you actually spending doing meaningful work versus waiting for a decision? How do you drive those decisions down? So I don't think it's “do you innovate or do you save money?” I think you do both. Drive out cost of undifferentiated work, free up that to innovate, and it becomes a virtuous cycle. And even use machine learning, generative AI, to actually drive out some of that cost and bureaucracy in your own organization.
Miriam McLemore:
What we have seen and say to our customers is, constraints actually drive innovation better than when we have everything at our fingertips. Getting between a rock and a hard place makes you get creative about “how do I get out of this spot?” You can leverage tough economic times to think differently. You don't have a choice. But I also think, as you said, with generative AI, one of the great values is going to be productivity and saving of some of that undifferentiated lifting. I was at the Coca-Cola company for many years, and generating content, generating new sites, new experiences, new images for our consumers and customers, point of sale material, it will be a game changer for martech.
Tom Godden:
We've seen this play out in other transformations. The real change isn't always just the technology, but it's your willingness to apply the technology in a new way. We saw that with electricity, changing how we laid out factories and operated factories. We were able to run factories safer 24 hours a day. So again, the technology was the enabler, that initial enabler, but the real transformation occurred when we rethought the process. So as we look at this and we look for this new balance, we got to go back and look at our processes and go, why am I doing this? Does generative AI allow me to think of doing this in a completely different way? Don't just automate your past with generative AI. Use it as an opportunity to rethink these things and do them completely differently.