Michael Fauscette discusses autonomous agents and automation in customer experience.
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All right, I think that's it.
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Michael, hello.
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Thanks for coming.
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Thanks.
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Thanks for inviting.
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Yeah.
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Let me-- let's see here.
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I always have two screens going on.
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I think we're good here.
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So first of all, for those that are listening here,
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and we'll kind of join the stream,
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I just want to thank you, Michael, for joining us.
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We just were introduced a day ago.
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So first and foremost, I'm going to let
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us do my goals, reduce your style, because obviously, I would not
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do any justice there.
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So let's start there.
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Sure.
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I've been in tech for a long time.
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I'm an X-Nable Officer, and I got involved in software.
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Then that's what they do with liberal art
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to people when you go in the Navy.
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They turn you into engineers.
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And so then when I got out, I started
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working for software companies.
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I've worked for seven vendors.
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I work for companies like PeopleSoft in the mid '90s,
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Autodesk, I've been involved in a bunch of startups.
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And I was eventually moved to an analyst role at IDC.
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I ran the Enterprise Apps Group there for 10 years,
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went to G2, which a lot of people have heard of probably now.
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And I was chief research officer there for five years.
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And I'm still an advisor to them.
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But I started my own analyst firm three years ago.
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It's called Arianne Research.
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And we tend to focus a lot on AI and CX,
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but I've been around the space for a long time.
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So I still do some work on the ARP and some other things.
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And I'm a chairman of an IoT company
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and on a board of a sales tech company as well.
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So I kind of dabble across a bunch of different things.
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What I'm actually excited about, Michael too,
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is that I've had--
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and I know you've had these type of conversations longer
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than I had about AI and customer service.
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But I love branching out and just getting another person's
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insights that I think I got a higher level too.
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Because my insights were more of the tech company,
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like working at customer, hearing from prospects and customers.
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But only those prospects and customers
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that are within our industry.
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But to get your insight there as well too,
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from someone that's outside of it.
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And when you brought up autonomous agents,
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and especially automation, obviously,
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that was music to my ears.
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So I'm happy to get right into it, which is like--
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and I asked you this before-- but you're
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just helping us be on the same page of when
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you mentioned autonomous agents.
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What do you mean by that?
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Because it can have several different definitions
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across different industries.
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Yeah, the simple way that I like to look at it
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is any AI-enabled system that can operate with independently
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or with minimal human intervention
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to make decisions, take actions in real-time data.
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That is an autonomous agent.
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And there are obviously a lot of different use cases
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around that.
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And we're, of course, with anything in AI,
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I should do the preamble of.
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I may say something today, and it changes tomorrow.
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So that's--
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Or the next couple of.
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It is evolving rapidly, hang on.
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But no, the AI piece of it is obviously real important.
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And then when we moved to generative AI two years ago,
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as a topic and as a tool, really, to use,
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then I've seen that evolve as well into this automation space,
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especially around autonomous agents.
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And it really is moving from doing things that are generative
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around generative AI, like making content to doing things
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actually taking action for you, which is an evolution, for sure.
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So from your opinion and standpoint,
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when it comes to customer service and autonomous agents,
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where are we at today?
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Are we basically at the--
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the Professor, Iran Chapter 1?
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Are we in the middle of the book?
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What are we at from your opinion?
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The part-- the hard part about this
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is that I don't know how long the book is.
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So I'll say that we're a few chapters in,
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and we are making really rapid progress.
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So to make that simpler, I guess, to say that for the first,
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what, 18 months of generative AI, there
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was very little of it taking an action independently.
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There was a lot more of it generating content
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and doing some content dynamically and personalization,
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all the sort of things in marketing.
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But now we've gotten to the point where you could take
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an agent, a chatbot, is a simple way
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to think of it in customer service, right?
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You could take that chatbot and you can now train it
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with some contextual data.
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So you're using retrieval augmented generation.
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So in other words, a vector database that
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stores your information so it doesn't go into the large language
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model.
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And you can take that, and I had the context around it.
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And then on the other end, you enable it now
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to go review documentation.
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You train it to own all of your information
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and then when it interacts with a customer,
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it can interact with the same level of knowledge
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or maybe even more than a human agent would.
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Then as it evolves more, and we're just on the edge of this,
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but as it evolves more than that agent could also take action.
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So I'll give you a simple example.
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Let's say you order something from SACS,
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and it comes in, and it's the wrong size.
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So you jump online and you're interacting with their chatbot.
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And they're using an autonomous agent,
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but it doesn't have full capability yet.
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So what does it do?
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Well, it interacts with me.
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It knows who I am.
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It looks up my order.
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It sees that, in fact, I ordered something that was monogrammed.
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But what happened was the monogrammed thing was incorrect.
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So normally that would be a, we can't take anything
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monogrammed back.
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And an old chatbot would have just gone, sorry,
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can't help you.
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In the new world, that one goes, ah, okay, well,
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we did this incorrectly.
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So I've, it thinks past that and it goes, okay,
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here's how you return it.
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Talks you through the process, points you to the portal.
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That's stage now.
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Stage next week or next month or soon is that it then says,
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okay, I can help you with that return.
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And it processes all the return actions for you.
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So that's, you know, we're right at the edge of that.
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And then the next step will be moving into things
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that can solve problems for you.
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And this could even, you know, think about it
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from a customer service, think about it internally
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from an IT service perspective.
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You could even have it take, you know, take actions like,
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I'm having problems with this on my laptop and the agent
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could go out and repair something, fix something,
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change them, you know, so it'll be close to
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and soon doing those types of actions
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in a customer service environment.
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- Yeah.
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And I want to get your feedback on something
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that I've heard a lot about, which is the educational stance
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on this, right?
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So in your example, that you just used,
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this is again, brand new technology,
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we're solving newer use cases.
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So it's the education of the tech company
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because this is still brand new technology for us
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to output myself and the technology.
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So we have to, I'd start educating ourselves right now.
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We have to start learning about the products ourselves.
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And then obviously the consumers have to learn
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how to engage with this.
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And then you have the brands themselves learning
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how to implement this sort of technology.
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Because like my question is like,
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how big of a hurdle is that?
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And could that also hold up how fast we actually execute
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on all of this?
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- Well, interestingly, I mean, there's always some level
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of education there, but the way that a lot of these products
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are being put together, they're being built on top
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of some type of a platform that lets you
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with load code or no code, generally no code,
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be able to go in and configure the thing.
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'Cause you're not really, you're not training the language model.
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'Cause you presumably have an integration
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to some language model.
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Maybe you had your own, maybe you're using chat GBT
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or, you know, entropics, cloud or something.
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So you have a language model and then you have a system
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that uses this retrieval logmented generation.
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I told you about that is a way to get all your data
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in there safely, contextually.
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So you provide context.
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'Cause if you know anything about generative AI,
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one of the most important things in any prompt
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is giving it the right context.
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Because if you don't and the more context you can give it,
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if you don't do that, then you see the old hallucination problem.
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But the way things are being built today
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is then with those no code tools on top,
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I would take that agent and train it,
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but it's not like training a language model
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that takes a lot of effort, a lot of heavy lifting,
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a lot of tech, all those things.
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It's simply letting that data and letting that agent
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interact with that data and be able then to work
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from that data, not just the language model,
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but the language model is important,
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but also that contextual data from your company.
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And so then it learns all of that.
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The same, I mean, honestly, same thing,
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pretty much you'd be training a human agent on,
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except that it obviously can, has more data capacity
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than a human would.
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So it's gonna retrieve that much more easily.
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- So on that note, Michael,
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what would you tell, maybe you've had these conversations,
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like what would you tell leadership
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in terms of implementing this?
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Is this a whole 'nother department in a company?
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Is this just changing people's roles from like,
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okay, you used to do this,
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now you have to be a workflow AI editor
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or you have to be understanding the feedback?
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Like, what, you know, I would you tell a leadership team
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to make sure that they're ready for this sort of implementation?
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- That's a big question, and I guess, you know,
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we can stick to talking about autonomous agents,
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but if I was actually given a leader advice,
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I would say the first thing you need to do is step back
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and build out a complete strategy
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because AI is a lot more than just this one place
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we're talking about, but let's say for the sake of discussion
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that they've done that, they have an AI strategy,
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it aligns with their business strategy,
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it aligns with their IT strategy,
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and then they would look for use cases,
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and that's, frankly, I've spent a lot of time over the last year
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so digging into different use cases of generative AI
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and traditionally, I like to separate them that way,
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just so you can kind of keep it straight
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'cause traditionally, I, machine learning, algorithms,
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deep learning, all these things that we've had for a while,
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those are important, they're still important in what we're doing,
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you still need them even in some of the applications
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of generative AI underneath it
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because the generative AI ends up being the front of it.
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But anyway, I would tell them that if they're,
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that use case makes sense that they need,
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you know, customer service automation,
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then that's when they would evaluate the tools that are available,
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and with the idea that it's gonna evolve very quickly,
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so pick a partner that you believe will grow that capability
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with you because there's still a lot of things that you,
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you need that agent to learn and do.
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I mean, a simple example is empathy,
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and we've talked about empathy a lot,
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that's a very important thing in customer service.
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As a human, I want you to, you know, in certain cases,
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I want you to feel empathy for my problem,
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AI doesn't have empathy 'cause it's not human,
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but we are working towards a way that they call it synthetic empathy.
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I kind of hate that, but it is a thing.
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That, you know, that's the language model
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and the agent be able to interact in a way that is,
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is reasonably sensitive to the language
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and the way it's using things and the way it phrases,
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things the way it responds to things, that sort of thing.
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So, you know, those are problems that'll be solved,
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but they're in process, I guess, right now.
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- That's still interesting 'cause again,
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we're talking about AI, right?
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It's artificial intelligence,
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so artificial empathy,
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and then trying to like disguise that as real empathy.
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That's so interesting there.
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- Yeah, now I will say one thing that I would always tell you
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is that I believe personally,
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you should always disclose that a person's talking
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to a chatbot or a person's talking to a human, don't.
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And we're getting to the point now
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where you could actually fool them.
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Like the new chatbot.
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- No, you can, can, yeah.
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Intelligent bots anyway.
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So that's the one thing I'm big on from an ethics perspective.
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I feel like you need to be transparent about that.
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- I would agree too, and I will say, like obviously,
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I don't wanna call out anything, anybody.
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But there are, I mean, there are services, right?
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That are like, hey, we're trying to replicate
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the human experience, we're not gonna say anything.
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And what I've seen in like successful companies,
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I mean, if you look at actually customers homepage right now,
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we say AI bot, like we call it an AI bot,
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so they know.
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And I do think that is,
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I think that's gonna be more of the norm
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because as we start more innovation
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and more companies start utilizing
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these AI agents.
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- People are just gonna be used to like,
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okay, I know I'm gonna be interacting
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with some sort of AI upfront.
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And I do think that's gonna be the default setting
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sooner or later.
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- Yeah, well, and I did a survey last year,
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consumer communication survey,
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and we asked some questions about interacting with companies
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and what preferences, consumer preferences were.
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And if you ask somebody straight out,
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if they wanna talk to a chatbot, they'll usually say no.
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I mean, the overwhelming majority of people would go,
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like, and I don't really wanna talk to a chatbot.
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Just let me talk to a human.
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But if you couch it differently and you say,
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how many times have you been helped by a chatbot
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when you called in for service
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and it was a good experience, you'll find a lot of people
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have positive experiences,
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particularly now with newer chatbots.
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And then if you go further and you go,
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are you okay with talking with the chatbot first?
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And if the problems result fine,
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if it's not, that chatbot hands over to a human agent
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and passes all the context,
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so it's none of that, you know, forgetting who you are
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and you have to go back through your story again.
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It's all this contextual, it's passed on.
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They're very open to that idea.
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And I think that's the experience that we're gonna see
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for the foreseeable future.
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Automation's important and automation is growing
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and being able to take actions using those autonomous agents
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is important, but at the same time,
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there's still a place for that human agent.
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And frankly, it even lets you
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from a customer service perspective,
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start to think about your customer service approach differently.
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If you're in a business where you can upsell,
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acrosssell or interact with your customer,
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you free up those human agents, teach them to be able
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to help you generate revenue or improve
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the customer service satisfaction levels,
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those sorts of things.
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So simple things get handled by the AI, by the agent.
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And more complex things go further up the chain
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to a human if need be.
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And then as humans can also be encended
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to do other things versus the old idea
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of I'm gonna try to deflect.
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'Cause deflections not customer service,
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I realize why you want to do that,
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but is it a really a good experience
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if you just deflect as much as possible?
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What you really wanna do is create the best experience
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at the best price.
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And automation can help you do a lot of that
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and leave your human agents to do
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that higher level, more complex things
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that the AI at least right now couldn't really do.
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- I love that, the best experience at the best price
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and then companies that will understand,
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like, okay, am I gonna send this to AI or a human,
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which I mean, humans would be more expensive,
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but who knows in a little bit what that could change?
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But you also bring up something that I think
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as a marketer myself,
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like there's this preconceived idea of a chatbot.
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Like I think, like you said, you ask people
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what do they think of chatbots?
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And I do think about the last five,
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you know, I don't know, 10 years of chatbot experience
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and probably hasn't been really nice.
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And so going back to autonomous agents,
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like if brands, I should say,
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of technology companies start advertising this
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as another chatbot or another version of a chatbot,
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I do think they might run into problems like that.
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I'm like, no, I'm not looking for a chatbot,
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which is why we talk about autonomous agents
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and all of a sudden it's like, oh, hold on, what's that?
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And then obviously you have to make the connections,
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like well, it's kind of like a chatbot,
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this is, but this is totally different.
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And I can see that a lot of companies running that
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sometimes.
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- Yeah, and the experience changes dramatically.
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I mean, none of us liked the old IVR,
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interactive voice systems because they were logic-free-based.
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And the same thing happened when we rolled out chatbots,
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they were logic-free-based.
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So if it's in their realm of logic-tree, you're fine.
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But if it goes outside of that,
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then the chatbot simply can't do anything
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because they don't have the capability
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to generate new content or new bot, new interaction.
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A generative AI-based autonomous agent
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has the capability to synthesize all of that data
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that it has and take other action outside of what a logic-tree
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would be because it learns as it interacts.
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So that's a very, very different experience
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than trying to go through a logic-tree.
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Well, one thing that I've never mentioned this out loud,
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but I think it's fascinating is there's
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a element of who's in charge of the conversation.
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If you're talking to a chatbot or even an IVR,
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you know that the IVR is in charge of it
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because it's already predetermined
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and it's up to you of which way you're going to go around.
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But if you're dealing with an autonomous agent,
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you're still technically in charge because you can actually
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get, these are the questions that you want solved.
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And you're going to have follow-up questions.
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The AI agent is really, they have instructions,
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but still there's this preconceived
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like the visitor that actual customer is really in charge
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of how they're going to get their answer, right?
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Is that something you thought of?
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Shift the interaction back, right?
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It shifts the interaction back to the customer
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so that they're in control of this.
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And if they want, you know, in the old days,
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you're yelling at your phone, "Give me a human, please."
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It's actually probably not please.
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And now, you know, they have that interaction
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that can be more in control and control
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when they want to go to a human if they're not getting
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what they're trying to solve.
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But the nice thing about these agents is they, you know,
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they learn they evolve over time.
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They can be trained to, in these situations,
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this is when you would hand it to an agent
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and here's how you would do that.
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And that's important.
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The other thing that's interesting now,
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because we've, again, we've evolved quite a bit,
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that agent can also, in real time,
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analyze the sentiment in the conversation.
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So it knows if you're getting angry
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and it can then go, "Why are you getting angry?
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Am I doing something incorrect?"
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Maybe I didn't give you the right information.
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Maybe I need to pass you to a human now
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because you're getting upset.
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Like it can know that you're happy, you're sad,
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you're mad, you know, all those things.
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And that, and it can take that into account
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as far as the interactions concerned, which is pretty cool.
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- Yeah, just one other, one other kind of footnote
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on this is that, maybe for like a learning
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for other companies here, like on the customer side,
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we've put in AI bots and we're doing a little bit
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of like customer service on our side
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and trying to eat our own dog food.
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And what I've seen is that when you,
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when people do want to talk to a human,
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it's so important to then bring that human on the call
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like as fast as possible.
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And I don't think we're ready for that yet.
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It's like, hey, they're asking for a human now.
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Be ready to join that conversation
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because what has been set up beforehand
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and historically it's like, hey, give us your email.
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We're gonna follow up with you at a later time.
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And now this gives that ability where that's now,
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it's not a great experience.
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Like you were answering questions so fast,
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getting answer so fast and all of a sudden
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you got a day for a response from an actual human.
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- Yeah, that's a terrible experience.
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Yeah, that's a terrible experience.
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I mean, if you're trying to solve a problem,
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if I'm your customer, I'm trying to solve a problem,
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that means I'm trying to solve a problem now.
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Like if I took the time to get online
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and do a chat with you or whatever,
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however you wanna interact,
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maybe it's a voice call or whatever.
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If I'm doing that, I'm looking for an answer now.
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I'm not looking for an answer tomorrow.
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And so yeah, these systems become real time
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and that's important.
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And then when you think of automation,
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I like to break it down this way
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because I think this is,
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and this goes across all sorts of different areas
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in the business, what I call decision intelligence,
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for example, so ways to automate certain routine decisions.
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There's really three ways you can approach this.
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One is fully automated.
20:57
And there are a lot of things now,
20:59
and there'll be more and more things that agents can do
21:02
that can be fully automated
21:04
because you trust them, it's simple, it's phenomenal.
21:07
But there are other things that aren't ready
21:09
for full automation,
21:10
and there are two ways you could deal with them.
21:12
One is you could build a system
21:15
that puts human oversight in the loop.
21:19
And so there's human oversight to the decision
21:22
and this human could step in at any point
21:25
if it's not going the direction that makes sense.
21:28
The third way is human in the loop,
21:31
in other words, the human is making that decision all the time.
21:34
So you're not giving the agent the capability
21:38
to make that final decision.
21:39
And I'll give you the perfect example of that one.
21:41
That's your doctor.
21:43
So I love that my doctor could have access to a chatbot
21:47
that could pull all the medical data in the world together
21:50
to tell him what I might have,
21:52
but I do not want that chatbot telling him what I have.
21:57
I don't want the diagnosis to come from the chatbot.
22:00
I want the diagnosis to come from the doctor
22:02
because that's what we have doctors for.
22:04
So that's very much human in the loop.
22:06
And then human oversight would be,
22:09
like for example, a lot of companies have automated approval
22:13
for credit.
22:15
So you put in some little bit of data,
22:17
you're still security number, whatever.
22:18
And in the AI, then crunches in the background,
22:21
and goes, are you okay?
22:22
If you meet all the criteria, it makes the decision,
22:26
you got your credit, you're good.
22:27
If you don't meet all the criteria,
22:29
that's when the human can step in and look at it
22:32
and go, yep, this is a rejection or no, this is not,
22:35
this is a special case, we're going to approve this.
22:37
So those three ways to think of automation,
22:40
I think are important because they're three different things.
22:42
And those will change over time
22:44
because the AI will get better and you'll trust it more.
22:47
But in the meantime, having those three scenarios
22:50
and thinking of it that way, I think is important
22:53
when you're thinking about how to deploy it.
22:55
And I'm going to add on to that point, Michael,
22:57
just because I've also, just in the last month or so,
23:00
I've also talked about human in the loop.
23:02
Only because I haven't seen it as much
23:04
from tech companies really talking about it.
23:06
It's either your first option of all automated
23:09
or maybe that handoff, like that to a human.
23:12
But again, I keep on pushing on that human in the loop
23:16
because I'll give you an easier example outside of the doctor
23:19
of what's happening in e-commerce, right?
23:21
Like if there was a travel website and the AI agent
23:24
is able to then change reservation dates
23:27
for certain people and change schedules,
23:30
don't you at least want a human to kind of like,
23:33
at least confirm that?
23:34
Like, hey, yeah, I'm good with you confirming that date.
23:37
And so what I've seen of some examples is like,
23:40
okay, AI bot, AI bot works on it.
23:42
And then just throws the question over to a human being,
23:44
like, hey, I just want to get an approval process.
23:46
Like, you're good with me changing the dates.
23:48
And that's another example of human in the loop.
23:50
And it's like, it's a good step because I do think,
23:52
oh, there's a lot of people out there that's like,
23:54
oh, my gosh, I don't want the AI agent to handle everything.
23:57
And even like critical decisions,
23:59
even maybe they can make it, and maybe it's the right decision.
24:02
And like, don't you just want some overlooking
24:05
the approval process.
24:06
And so I couldn't agree with you more on that.
24:08
And that's where, that's why I like this idea
24:11
breaking it out from human in the loop, human oversight.
24:13
Because human oversight is really what you're describing there.
24:16
Right, I want the human to look at it.
24:18
And if it's in the parameters, I'm not going to do anything.
24:21
Sure.
24:21
And if it's not, I'm going to take action.
24:23
And then having humans in the loop,
24:26
they always make this decision.
24:27
So decision intelligence is a systematic way
24:30
to approach decision making in your business.
24:33
Automation underneath that with some things
24:36
that fall in these other categories.
24:37
And so what you see is people start with the simplest
24:43
decisions and automate those.
24:45
Because there's no risk.
24:46
But then over time, as you trust the system more,
24:50
you can move that automation line up
24:52
and start to include other things
24:53
that you originally may not have thought would go.
24:56
But once you realize that this is safe,
24:58
this risk is very minimal or whatever.
25:03
And over time, the agents get more capable.
25:06
And so more things can be automated.
25:10
And it's not-- we have a lot of fear around future work
25:15
kind of issues, right?
25:16
But the truth is-- and it's not totally misplaced.
25:21
But the truth is, I'm not suggesting that your AI is going
25:25
to come in and make all the decisions in your business.
25:27
What I'm suggesting is you're going to free up the humans
25:29
to handle the more complex things.
25:31
In the service example we were talking about, right?
25:34
Now, your agents could help you increase revenue
25:39
or they could have a metric around NPS.
25:42
So rather than trying to have call to flex and call volume,
25:46
first call resolution, those kinds of things that we've seen,
25:49
you can shift that in the metric shift.
25:51
And then your customer satisfaction will go up
25:53
because you're providing a much more bespoke service
25:58
when it's needed.
25:59
But it's not always needed.
26:00
But when it is, you could do it.
26:02
Yeah.
26:03
I'm going to shift gears just a little bit here before we sign off.
26:07
But one question I have you Michael, too, is as you've
26:10
talked to a lot of different people in the industry,
26:14
I know you just talked to Salesforce recently, too.
26:17
Do you think that the companies that are embracing--
26:22
let's just talk about autonomous agents?
26:23
Because that's the subject.
26:25
Do you think that enterprises right now
26:27
are moving quickly?
26:30
Do you think the small businesses right now
26:32
are moving quickly used to that?
26:33
Do you think everyone's on the same timeline right now?
26:35
Because usually, right?
26:36
You're not going to put both of those degree
26:37
that you have large companies.
26:38
And they're just slow to move.
26:39
They're slow to innovate.
26:41
You have security issues and so forth.
26:42
Are we seeing that?
26:43
Are you seeing that with people you talk to
26:45
with autonomous agents?
26:47
Yeah.
26:47
So I will take the--
26:49
there's sort of two approaches to this.
26:51
One is, I just saw survey data this week actually.
26:54
And I don't remember the exact number,
26:55
but it was really high that small businesses
26:59
are adopting AI at a very, very fast pace.
27:02
Because it is such--
27:04
it's easy to pitch the productivity gains.
27:07
There are other reasons that you should look at it.
27:09
But that's obvious to a small business.
27:12
Interprises, they do-- they definitely move slower
27:15
in the evaluation, in the rollouts, all those things.
27:18
But we're seeing some really big brands
27:21
that have gone down this road because the technology
27:25
is evolving very quickly.
27:26
Now, last year, I would have said
27:29
that a lot of those companies are doing prototypes
27:31
and test and trying out these different ideas and piloting.
27:39
But now, that's not really true.
27:41
They're just putting it through their normal process.
27:43
So they have a tool.
27:45
They have a platform they want to go down.
27:47
In this path, they've gentied.
27:48
In the five, these use cases, they'll build it.
27:51
Maybe it's no code.
27:52
Maybe it's low code.
27:53
Maybe it's pro code.
27:54
It just depends on what you're trying to do.
27:56
And once it passes that QA, then it goes into production.
28:01
And you mentioned Salesforce.
28:04
So I'll say at DreamFourse, there were several very large brands
28:08
that told stories about what they were already doing.
28:10
The SACS example I gave was one of those.
28:12
In fact, that they are already using.
28:15
They've already deployed an autonomous agent
28:17
in their customer service.
28:19
And they're already using them.
28:20
And the next step is to increase the level of automation
28:23
and they're moving down that road.
28:25
And there were a bunch of others.
28:26
So I think you're starting to see real projects
28:30
go into production because a lot of those companies
28:34
started evaluating this a year and a half ago.
28:37
Ish.
28:39
Yeah.
28:40
And also for some context, too.
28:42
I usually come from the small business side.
28:46
And as I've started seeing this, I got super surprised
28:49
in last month because it was a combination of DreamFourse
28:52
only talking about agent force.
28:54
I mean, I think the quote from Benny off
28:56
was something like that.
28:57
He spends 100% of his time thinking
28:59
about autonomous agents, which for Benny off to say that it's like,
29:02
OK, this is a big deal for mid-site, like for all
29:05
types of companies.
29:07
HubSpot came out with, I think it was Blaze, right,
29:10
for a race, something like that.
29:11
But they're autonomous agents.
29:13
And obviously, they're more now in the red market
29:15
as opposed to smaller companies.
29:16
You have service now that is now
29:18
mentioning autonomous agents for all their enterprise
29:20
companies.
29:21
So it's super interesting because you have the startups.
29:23
You have the VCs putting a lot of money into the small companies
29:26
here.
29:27
And then you have all these large enterprises now
29:29
to really come out of autonomous agents.
29:31
So it's coming from all sides.
29:32
So that's why I asked that question.
29:34
Yeah.
29:34
And I mean, I think that it is gain attraction.
29:38
When you first started down this path with generative AI,
29:40
a lot of it was focused on productivity.
29:43
And maybe even to its own detriment,
29:46
because a lot of feedback I've seen since then
29:49
has been that we got this generative AI tool.
29:53
And if I'm a worker, they gave it to me.
29:55
They didn't teach me how to use it.
29:56
And they raised my quota or whatever the measurement is.
30:01
They quadrupled it because it's
30:02
supposed to make me that much more productive.
30:04
And I don't know how.
30:05
That was kind of the old problem.
30:09
And that started to mitigate a lot.
30:11
Now I think it's people starting to realize that there--
30:14
you have to understand the use case.
30:16
You have to make sure the tool is the correct one for the use case.
30:19
And the if your approach is the correct one for now.
30:22
And you may evolve that over time.
30:25
But it's been intentional about what you're doing.
30:28
And I think that we're getting out of just kind
30:31
of raw experimentation into very specific use case
30:34
examples that can be done.
30:37
And we're starting to see real metrics
30:40
that come back with success.
30:42
Yeah.
30:43
Well, I think that's a really good place to end it, Michael.
30:48
For everyone that's listening here, there's no script.
30:51
I think it's just awesome to have a conversation.
30:54
We could probably keep seeing you discover
30:55
station for days.
30:56
And then you have AI avatars taking on.
30:59
But this is the real thing.
31:00
So again, I appreciate all the time, Michael.
31:03
Yeah, enjoy it.
31:04
There's definitely a fun subject these days.
31:07
Yeah.
31:08
And it will continue to do so.
31:10
I don't-- like you said, I think we're--
31:11
I would agree we're probably at chapter 2.
31:14
Don't know when the end of this book is.
31:15
It could be 20 different chapters.
31:17
But let's see where it goes from here.
31:18
So thanks all.
31:19
Thanks, Michael.
31:20
Sure.
31:21
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