Text transcript

The Largest Agentic CS Deployment in B2B

AI Summit held on May 6–8
Disclaimer: This transcript was created using AI
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    Julia Nimchinski: Welcome, Alok Shukla!

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    Julia Nimchinski: This is going to be really interesting one, the largest agentic Cs deployment in B, 2 B.

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    Julia Nimchinski: Welcome to the show, Locke. How are you doing.

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    Alok Shukla: Pretty good. Can you hear me.

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    Julia Nimchinski: Yeah.

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    Alok Shukla: Absolutely.

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    Alok Shukla: I was excited to join you guys.

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    Julia Nimchinski: Amazing. I know you had a special plan for this one. How do you want to take it? Do you want to do a presentation. A demo. What flow are we in.

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    Alok Shukla: Yeah, we’ll do with something, both mostly to start with a quick couple of slides, just to kind of set up the context. But after that it would be mostly live product, demo

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    Alok Shukla: and hope to complete and around 1520 min. And then we can go for open ended question answers.

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    Julia Nimchinski: Awesome.

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    Alok Shukla: Sounds good.

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    Alok Shukla: Okay, let me share my screen.

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    Alok Shukla: Okay? So

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    Alok Shukla: I’m alok, and I’m the founder of funnel story. And thanks for hosting me for this agentic AI Conference.

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    Alok Shukla: So

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    Alok Shukla: product story is, almost a 3 year old startup that has focused on customer support intelligence primarily focused use case are for post sales, the renewal teams, the customer success teams, and we happen to have developed for almost last last one and a half years one of the largest agentic orchestration that any of our competitors do in this part of the if part of the vertical that we deal with.

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    Alok Shukla: So that’s why I would love. I’m very excited to talk about today. And let’s get on with that.

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    Alok Shukla: Okay? So for a story, as I said, AI, native customer support Intelligence Platform entirely builds on agents, and the way we think about agents is a lot different

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    Alok Shukla: compared to how many of the companies that have bolted on agents looks like

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    Alok Shukla: so unlike having a product where you kind of trust trap on an agent, or you put

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    Alok Shukla: do a kind of AI washing on top of that funnel story was created as an agentic platform to do a lot of its work, how the products operates from inside, how the products operates some of the smaller things it does, how it executes its features, it functions, how it interacts with the customers, customer success teams. The agentic architecture is built into everything. So when we say that you are dealing with agentic swamp.

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    Alok Shukla: what it means is that any place you test the product it built off agents.

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    Alok Shukla: So we will talk more about that. But if there are any questions I would be happy to take them as we go along.

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    Alok Shukla: Okay.

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    Alok Shukla: 1st of all, before we even go into the product. A good thing is to kind of talk about

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    Alok Shukla: what does even this agentic song even achieves like if you are with funnel story, what it will be able to achieve.

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    Alok Shukla: So there are many things funnel story can do. But broadly, there are

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    Alok Shukla: key issues that we attempt to solve. Number one.

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    Alok Shukla: the one of the single biggest problems in adoption of any kind of revenue or customer success platform as it stands today that they take months to deploy, if not weeks.

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    Alok Shukla: and final story has literally reduced that time to an hour or a couple of hours.

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    Alok Shukla: and that is log, primarily due to the agentic automation which ensures that it does not require any engineering work. It does not require any professional service. It just builds the entire stack without asking the questions, without requiring to manually have manual intervention. It just does things as the agents are supposed to do.

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    Alok Shukla: Then funnel story is has another agent which basically, we call this the prediction agent. It calculates the the churn risk or the expansion potential of the accounts automatically every day, analyzing thousands of accounts and generating predictions. That’s done entirely, autonomously.

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    Alok Shukla: And it calculates the very unique thing. And we’ll talk in the demo

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    Alok Shukla: number 3 is that and this is, we are very should be proud of this, and we accidentally pivoted to this feature.

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    Alok Shukla: There are a lot of tools in the industry, for example, which are very vertical. AI, you have AI zoom, you have AI on Salesforce, AI on Hubspot or AI on many other tools.

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    Alok Shukla: The problem that industry faces is that a lot of, especially for large enterprise faces that they have

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    Alok Shukla: a swarm of enterprise data. They have.

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    Alok Shukla: unstructured data and structured data living in Crm support tickets, product usage bugs

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    Alok Shukla: your conversation, your emails, your chats, your notes, you name it.

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    Alok Shukla: And they are not looking for siloed intelligence siloed ais. They are looking for the entire data to work together so that they can search and reason. Part of the search problem, especially for text, was being solved by companies like Gleam Covio. But what funnel story has done is goes way beyond that.

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    Alok Shukla: Where we have introduced the reasoning capabilities with this agents. So one of story becomes the 1st platform in the industry where you can search and reason your entire customer data to a single platform. And I’m extremely proud to show that today.

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    Alok Shukla: then we have more things which are basically about the usual automation, autonomous nature of the tasks that are done by customer success people today but can would be automatically done by AI, and we will show you how they are done.

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    Alok Shukla: So that’s kind of a very quick view of what funnel story is capable of doing.

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    Alok Shukla: But and we will touch many of these points. Go one by one before I

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    Alok Shukla: kind of jump into the product. That is a

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    Alok Shukla: a conceptual understanding of the product concept that functionally connects with your structured and unstructured data. Something I said, and we have a Felix, or what we call our agentic AI. We have given a name so that it’s simple to understand. It basically connects with your entire structured and unstructured data to build a hyper, dense knowledge graph

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    Alok Shukla: which is ultimately responsible for all kind of interaction, whether you are out of the box feature, or you are interacting to do AI search. And AI reasoning on top of that.

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    Alok Shukla: Okay? So at this point of time, I want to kind of start talking about the product, and I will come back to slides if I need to.

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    Alok Shukla: So let’s start with the 1st thing the funnel story

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    Alok Shukla: is can connect with your structure and our structure data. And I want to kind of start with how that does that happen?

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    Alok Shukla: So far, story can connect to all kind of sources of data.

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    Alok Shukla: whether it’s your your new style, database, your sequel, database or new SQL, database, or all kind of data simple database inside the house, or data warehouses

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    Alok Shukla: and host of application, and we keep on adding these application almost every day.

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    Alok Shukla: But the interesting part of follow story is that from an agent perspective, it does not actually take care too much about where which application you are connecting. It cares about something else.

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    Alok Shukla: It cares about that it understands your data intuitively.

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    Alok Shukla: it understands support ticket data, it understand conversation data. So, for example, if you offer, if you show from a story an agent that, hey? This is an app.

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    Alok Shukla: It will automatically start to figure out, okay, this looks like a conversation data. And these are the apps. For example, I know where conversation data can be available, and I will fetch that data automatically. You don’t have to tell me. Beyond that I will inquire. I will understand. And I will fetch the data back.

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    Alok Shukla: And that’s basically takes away multiple level of human intervention which is costly and which is time consuming

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    Alok Shukla: the moment you connect the data. For example, funnel story will automatically build out this entire configuration. In minutes

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    Alok Shukla: it will figure out what data, for example, I want.

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    Alok Shukla: build queries in some of the cases of our data warehouse what the data looks like, validate it. And just ask you what you need to done

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    Alok Shukla: so entire data, configuration and maintenance done by the agent in a matter of minutes, something that takes months

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    Alok Shukla: to get to this point

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    Alok Shukla: from a just efficiency and productivity release perspective. Not only it saves money, it saves something more valuable, which is time.

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    Alok Shukla: So we got the data.

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    Alok Shukla: Now, what we do, the second thing, what happens in a normal customer data process is that

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    Alok Shukla: you? You will deploy a tool and then you will expect some human or somebody who has a deep knowledge of data to explain the data so that the traditional Saas tools can make sense of it. Generate some dashboard, some data from tooling.

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    Alok Shukla: But with agent. AI. You don’t have to do that goes to a next step. When you have this data, it starts to undersco back in time and create a hyper, dense graph

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    Alok Shukla: to understand. For example, let’s say you collected 10 years of data

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    Alok Shukla: customer connected to your product customer was chatting in in your slack, or it was that you were sending an email or filing a support ticket, whatever they were doing across all types of customer, all types of users. But a story would go back in time and create a hyper, dense graph of understanding all the pathways your customers ever interacted.

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    Alok Shukla: There is no tool that does it before we filed a patent for this, and this is done. And, by the way, it’s not done by any trigger, it is done autonomously.

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    Alok Shukla: It goes beyond it, and starts to understand how your customers get value. Who are your best customers, where your customer drop off, which has the most interesting interaction point.

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    Alok Shukla: So the level of intelligence it generates before even the agent talk starts. Talking to you

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    Alok Shukla: is something that you expect. You expect somebody to know more about your behavior by themselves

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    Alok Shukla: without us spending time just to kind of get extract intelligence out of you. That’s power of aging here.

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    Alok Shukla: So what happens is in that in the 1st R itself, data is in data has been hypertensed, analyzed conversation have been analyzed.

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    Alok Shukla: We now understand when people chat to you what you were doing before what you did before. File the support ticket. What you did after how much time you take, how many people dropped off?

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    Alok Shukla: Pretty much everything right? And then, for a story does. Another thing

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    Alok Shukla: is that it actually has identified the best pathways for your customers to succeed. So if you connect click on this button, it will automatically generate an adoption funnel based on your historically best data. Best pathways your customers have done.

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    Alok Shukla: and it will generate a pathway which you can just use to drive the new customers for the same adoption journey.

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    Alok Shukla: Why, that is important is because it requires months of consulting work by the companies to build this kind of work, which is done by 9 people in a committee room doing.

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    Alok Shukla: arguing with each other what is the best journey, and here the AI and the combination agent AI is building that for you, just serving of you in the 1st one and a half hour itself.

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    Alok Shukla: Huge savings again, money and productivity.

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    Alok Shukla: So we have done that now what we can do next.

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    Alok Shukla: So the 3rd thing now financially does it.

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    Alok Shukla: that because it understands your usage, your conversations, your meetings, your chat, your everything. It starts to do what is very normally called in the health scoring it. Basically, we hold a patent, by the way, for the only company which combined usage, conversation, external business, intelligence, and the revenue data to build predictions. So we provide a score 0 is that account will churn 100 is, the account will be retained.

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    Alok Shukla: But here comes the agent. Api comes into place.

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    Alok Shukla: Remember that for any kind of a revenue person, or a salesperson or customer success person. These numbers are just numbers unless explained by something else, so they generally what they do is when they see a bad score. They go across all sources of data to figure out why this is happening. What? What do? Let’s look at the revenue data. Let’s look at chat. Let’s look at gong. Let’s look at zoom calls. Let’s look at product usage data where the problem might be happening.

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    Alok Shukla: But in funny story agent does for you. If you look at this

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    Alok Shukla: color story has automatically calculated, created a summary and a diagnosis

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    Alok Shukla: for each and every account. Let me kind of take you to a specific account.

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    Alok Shukla: Oh, for Accenture!

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    Alok Shukla: So funny story on every given daily basis is analyzing all your accounts

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    Alok Shukla: and calculating across all your revenue data. Why, that account is behaving the way it is behaving.

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    Alok Shukla: So it’s so you basically say, probably 30% of your daily time that you spend on analyzing your accounts. You don’t have to do that

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    Alok Shukla: simple. The agent does it for you to look at this

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    Alok Shukla: data, analyzed from product sources, from support tickets from conversations

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    Alok Shukla: and also adding a summary. Why, that might be happening. It doesn’t stop there. It’s also picking up the data from business side. What? Maybe everything is good with your product. The business is not doing well.

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    Alok Shukla: It is also modeling on everyday basis. Why, that churn might be happening. What are the sources of risk. This is entirely agentic. It’s building the sense on its own. But now I come to the next thing which actually, which exceeds.

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    Alok Shukla: compared to any other tool in the industry which have not even thought about. This story calculates leading indicator of churn from your conversations, from your unstructured data.

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    Alok Shukla: So it is picking up what is called as needle movers.

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    Alok Shukla: Needle movers are kind of things. Think about it like

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    Alok Shukla: before a revenue event happens, whether it churn or expansion or upgrade.

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    Alok Shukla: People start to give you indication in their conversations, all of 3 to 6 more, 9 months in advance.

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    Alok Shukla: They will tell you by their feature, request the pricing discussion, the competition discussion, some hint that will drop if you catch them, you can get over the problem. If you don’t, you will be left behind.

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    Alok Shukla: And the problem with most of the account executives is that they don’t know where to look for that. And can they be on top of researching. All the data but 42 is doing is because it has modeled that its agent is automatically behind the scene is identifying those conversations which have been known to be preceding journal expansion events.

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    Alok Shukla: So, for example, in this case, it is saying, your, we saw that your customers were talking about competition. This is a risk, and they have been talking about repeated to. They have been dropping hints across multiple channels.

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    Alok Shukla: They were talking about some feature request.

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    Alok Shukla: They asked us, and their tone is changing.

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    Alok Shukla: They were talking. There were some people who were planning to leave the company, or there was some internal reassignment or some. There has been operation on some team where the team size might have been reduced. So they have been talking about it. Proof of the conversations.

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    Alok Shukla: or they’ve been concerned about the pricing of.

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    Alok Shukla: there might be a issue with the contract size. There might be unsustainable pricing model.

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    Alok Shukla: or there are proof points, or there are task that told you about something. There was a bug in the product.

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    Alok Shukla: so the the issue can be across anything. But the point here is, it’s in very hard for a 1 customer, success person, or one account executive to do all this research and get this kind of research served you on a table for each and every account of his

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    Alok Shukla: on everyday morning. Honestly does it for you, taking away a huge work lift, and that’s an agentic power of agents.

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    Alok Shukla: But then we go a step further. We don’t stop here.

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    Alok Shukla: So now the problem here is okay. You give me the data. But are you expecting me if I’m a customer, success person, to daily go into the product and read all of these things and figure out what other tasks I need to focus on. Should I talk about pricing? Should I talk about personal change, in which account

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    Alok Shukla: it can become overwhelming?

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    Alok Shukla: So funny story goes. The next step

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    Alok Shukla: automatically looks at your accounts and identifies what are the tasks that you should be doing? The 3rd level of Agent or 4th Level of Agent so far where it is now figuring out, okay, this is the important thing you need to do. This is an account. This is a churn list. The account is expiring. So this is important. And basically it tells you how you’re

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    Alok Shukla: so. Your entire day has been planned in advance

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    Alok Shukla: with is why that account is important, prioritize by priority low medium.

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    Alok Shukla: so that you, when you come in the morning, all your issues accounts have been analyzed. The needle movers have been calculated, then, further on, the task has been created. So the entire workflow has been created. The only thing that you do, only thing you focus on

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    Alok Shukla: exactly how you want to be right.

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    Alok Shukla: So once we have done that, that’s the thing we do, let’s come to the final. And one of the most powerful things on a story offers. So all of these things have out of box features

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    Alok Shukla: which means agents have been programmed to do certain things, build your data, build your systems. Analyze them. Create your support. Your do needle mover analysis create AI task and so forth and so on.

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    Alok Shukla: But now you can do open, ended analysis. And that’s where I was coming to. You should have seen a lot of tools that couldn’t do. Search over your data.

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    Alok Shukla: but we can. But now, if we follow through, you can do reasoning. Let me kind of give you a few examples.

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    Alok Shukla: One of the questions of a lot of each customer. Success people is that, hey? I want to know about feature request.

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    Alok Shukla: How do I go about it?

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    Alok Shukla: And you can ask a question. For example, give me.

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    Alok Shukla: So let’s say, a customer success person heard from a customer. They are looking for a feature request. You go to your product manager. Your product manager says, I’m not going to solve a 1 feature request for one customer. I want to build for market. Give me a broader use case.

    1881
    05:47:31.300 –> 05:47:42.600
    Alok Shukla: How does one revenue person or one customer success person can even make that case. They don’t have capacity to go to all product data, all revenue data, all support tickets to even get that analysis.

    1882
    05:47:43.090 –> 05:47:44.950
    Alok Shukla: That’s where funnel story comes in.

    1883
    05:47:45.410 –> 05:47:51.339
    Alok Shukla: So let’s ask the question. Give me feature request across all accounts.

    1884
    05:47:52.910 –> 05:47:55.630
    Alok Shukla: or last, let’s say, 30 years.

    1885
    05:48:09.550 –> 05:48:10.769
    Alok Shukla: This is online.

    1886
    05:48:24.970 –> 05:48:34.350
    Alok Shukla: So what suddenly happened was that you got all the feature requests. But the more interesting part is that you got the information about all the customers who asked for it.

    1887
    05:48:34.650 –> 05:48:41.710
    Alok Shukla: and it is also telling you which are the con conversation as a proof point. So you go to your product manager says, I know

    1888
    05:48:42.120 –> 05:48:56.359
    Alok Shukla: I now have. There are so many customers asking for the same feature request. Will you do now? There is a different use case. But let’s say, product manager, ask you, no, no, this data. I need it in terms of how many total number of people are asking for it.

    1889
    05:48:59.340 –> 05:49:00.500
    Alok Shukla: Give me a second.

    1890
    05:49:08.360 –> 05:49:12.099
    Alok Shukla: I want to know how many people have asked for these feature requests.

    1891
    05:49:12.700 –> 05:49:18.169
    Alok Shukla: And I want to know what is the total revenue associated with each of these accounts.

    1892
    05:49:18.630 –> 05:49:21.390
    Alok Shukla: So let’s say so. The question is

    1893
    05:49:22.410 –> 05:49:26.800
    Alok Shukla: feature request showing different columns, number of customer asking for that feature request

    1894
    05:49:27.080 –> 05:49:38.340
    Alok Shukla: customers, and a total aggregate revenue, because that will create a prior tension. How many people ask for the same thing? But how much more money is associated with that because that should drive the business. Let’s ask it.

    1895
    05:49:57.090 –> 05:50:08.979
    Alok Shukla: Okay, we got this data. There is no other tool in the industry which can do this kind of analysis. Because now you are stitching data from your conversation with your product data, with your revenue data combining together in one thing.

    1896
    05:50:09.820 –> 05:50:20.760
    Alok Shukla: But now you have to go to the next step. You’re saying I’m not going to. Just with data. I have to make a more detailed case, more strategic case. Why that matters. Okay, let’s ask a different question.

    1897
    05:50:20.970 –> 05:50:37.250
    Alok Shukla: Create a memo. To describe the top themes of these feature requests that I can share with my colleagues, explain the example and references to companies and people asking for these requests try to estimate the Aggregate Revenue Company, asking for the feature request for each of these themes. So we are going even more deeper.

    1898
    05:50:38.070 –> 05:50:39.540
    Alok Shukla: Let’s ask this question

    1899
    05:50:40.280 –> 05:50:52.269
    Alok Shukla: at every level. You’re not just simply doing searching the data. You are doing a reasoning. You are developing a reasoned response that you can take, because once you have that level of memo along with the data along with the ask.

    1900
    05:50:52.640 –> 05:50:59.200
    Alok Shukla: you have just completed a month work of a product management in 2 min.

    1901
    05:50:59.760 –> 05:51:00.950
    Alok Shukla: So look at this.

    1902
    05:51:05.550 –> 05:51:06.740
    Alok Shukla: that’s all for you.

    1903
    05:51:06.960 –> 05:51:15.279
    Alok Shukla: So I mean, I can go deep, very deep into this thing. But I just wanted to kind of talk about that. How an agentic product.

    1904
    05:51:15.490 –> 05:51:30.609
    Alok Shukla: which is designed for customer super intelligence looks like, and how many small small agents have been baked into the entire product to make it happen. And that’s why the theme. It’s 1 of the largest agent deployment in any product that has ever been seen.

    1905
    05:51:30.950 –> 05:51:34.089
    Alok Shukla: With that I will stop here, and happy to take questions.

  • 05:51:34.930 –> 05:51:44.609
    Julia Nimchinski: That’s super impressive a log. And before we transition to the questions we received here from the audience, I’m just curious. Do you even have competitors in the space.

    1907
    05:51:45.150 –> 05:51:46.450
    Alok Shukla: Sorry come again.

    1908
    05:51:46.860 –> 05:52:00.830
    Julia Nimchinski: Yeah, before we transition to our questions with the audience. I’m just curious. This is really impressive and holistic use case for Cs, and honestly, I’m not sure that I ever seen like an end to end

    1909
    05:52:01.050 –> 05:52:08.590
    Julia Nimchinski: Demo like this. So I’m just curious. Do you even have competitors specifically direct competitors in this space.

    1910
    05:52:08.590 –> 05:52:11.024
    Alok Shukla: So I think in this space

    1911
    05:52:11.850 –> 05:52:27.860
    Alok Shukla: we started with customer success. But we are beginning to compete with tools like lean copio which are into general AI. Search and space. We are also competing with new company like wisdom. AI. Many of the new vendors that are coming in.

    1912
    05:52:27.990 –> 05:52:41.049
    Alok Shukla: I mean the super intelligence. Space is pretty new, and you’re right about it. So customer success is our entry point, where we always do. But I think our product can be used by anybody who cares about customer data.

    1913
    05:52:42.360 –> 05:52:44.559
    Julia Nimchinski: How do you even define the category?

    1914
    05:52:45.500 –> 05:52:48.140
    Alok Shukla: So I think I’m naming it. Customer super intelligence

    1915
    05:52:48.642 –> 05:52:55.907
    Alok Shukla: the idea here is, think about the evolution of the business Intelligence platform which was used by multiple

    1916
    05:52:57.280 –> 05:53:02.819
    Alok Shukla: products. But they were only doing the part of analyzing some of the data, especially structured data.

    1917
    05:53:03.170 –> 05:53:19.060
    Alok Shukla: So there is a horizontal expansion. This sorry. There’s a vertical expansion in terms of that. Now we can analyze both structured and unstructured data with the power of conversational framework, but from a horizontal expansion. We not only analyze, but we can take actions.

    1918
    05:53:20.330 –> 05:53:30.769
    Alok Shukla: So start, think about the bi which is growing in capabilities, but also expansion into action. Category data plus action together. So I will say

    1919
    05:53:30.910 –> 05:53:41.200
    Alok Shukla: I, I’m not very particular about what category it comes into. It’s more about what kind of use case we are solving, and that’s what will matter to ultimately the customers

    1920
    05:53:41.400 –> 05:53:58.459
    Alok Shukla: from a benefit perspective customers will see reduced churn customers will see actually, productivity. I know about couple of our customers who reported that in just 9 months they were able to handle twice or thrice the number of customers with the same number of people without burning out.

    1921
    05:53:59.310 –> 05:54:02.730
    Alok Shukla: and that’s 1 million dollar dollars of saving. Please go ahead.

    1922
    05:54:03.490 –> 05:54:15.700
    Julia Nimchinski: Definitely one of the questions we are seeing here, is, how do you ensure alignment between 100 plus AI agents and human Csms without conflict and confusion?

    1923
    05:54:16.600 –> 05:54:20.250
    Alok Shukla: So that’s so one of that’s a great question. So

    1924
    05:54:20.790 –> 05:54:29.840
    Alok Shukla: that’s where our background on how we design these things comes into the bank being so, all 3 co-founders actually comes from a cyber security background.

    1925
    05:54:29.990 –> 05:54:33.819
    Julia Nimchinski: And one of the things that we have done in cyber security is that.

    1926
    05:54:33.950 –> 05:54:35.150
    Alok Shukla: We

    1927
    05:54:35.990 –> 05:54:50.509
    Alok Shukla: had to. And we’ve always had to work with not enough data, but still work with a high degree of precision. Because, remember, if cyber security people don’t do their job effectively. Airlines stop working. We have seen that in past

    1928
    05:54:50.760 –> 05:55:04.389
    Alok Shukla: right? So that’s kind of training of design that we come to. So we have baked in that. How do we ensure that the quality of data is accurate? It’s secured and the outcome it produces are predictable.

    1929
    05:55:04.480 –> 05:55:28.959
    Alok Shukla: So we so the agentic swarm actually has agents which produce the data. Then we have agents who test the data before actually showing it to anybody. But all the output you’re saying is actually going through multiple agents. So you are asking question to one agent which is throwing the data to some other agent which are doing some part of the analysis. The 3rd agent is taking the data for general printing it. 5th agent is quantifying it before it comes back to you

    1930
    05:55:29.190 –> 05:55:35.949
    Alok Shukla: so short? That was a long answer. Short answer is, yes, it has been baked into the design in depth. That’s our design. Philosophy.

    1931
    05:55:37.540 –> 05:55:47.130
    Julia Nimchinski: On this note. The next question is, what guardrails were essential to keep customer experience personal and not robotic.

    1932
    05:55:50.540 –> 05:56:05.589
    Alok Shukla: That’s an interesting question. So I mean, personally, in the sense that agents they’re part of the product which is out of the box, which is more focused on enterprise workflow. So these are more standard for pretty much all people who use the system.

    1933
    05:56:05.780 –> 05:56:12.940
    Alok Shukla: But, Felix, when you interact in a conversational format, where you where you want information or assign instruction that is personal.

    1934
    05:56:13.180 –> 05:56:16.680
    Alok Shukla: that understands about what you are asking about. I mean, I have

    1935
    05:56:17.500 –> 05:56:22.309
    Alok Shukla: customer success leaders or revenue leaders who are asking those questions that

    1936
    05:56:22.728 –> 05:56:34.359
    Alok Shukla: that they talk to Felix in a very personal way. Remember, Sam Atman used to say, people talk a lot about. Thank you. And please, we see that a lot working with Felix, if that’s the question. If that is the intent of the question.

    1937
    05:56:36.040 –> 05:56:46.200
    Julia Nimchinski: Look one of the questions here, and actually, a couple of them are focused on resistance internally in terms of adoption.

    1938
    05:56:46.360 –> 05:56:48.799
    Julia Nimchinski: And how do you typically overcome it?

    1939
    05:56:49.580 –> 05:56:51.109
    Alok Shukla: Sorry. Can you ask the question again.

    1940
    05:56:51.110 –> 05:57:00.719
    Julia Nimchinski: Yeah, so what’s what are the biggest points of resistance in selling the software and adopting it

    1941
    05:57:01.510 –> 05:57:02.820
    Julia Nimchinski: within your Icp.

    1942
    05:57:03.370 –> 05:57:09.340
    Alok Shukla: So I think I, from a technology point of view, we are pretty comfortable. We are extremely war right now.

    1943
    05:57:11.210 –> 05:57:17.680
    Alok Shukla: I think in general, and I am very understanding of this, that most companies.

    1944
    05:57:18.460 –> 05:57:24.260
    Alok Shukla: most leaders, still do not know how to make the case for AI internally.

    1945
    05:57:25.184 –> 05:57:32.429
    Alok Shukla: How do they justify investment. It’s 1 thing. See, most of the large companies that we talk about. AI are b 2 c.

    1946
    05:57:32.900 –> 05:57:40.110
    Alok Shukla: where they are sold directly to individual, whether you’re looking for chat, gpt, or or cursor, or whatever the names might be.

    1947
    05:57:40.430 –> 05:57:52.829
    Alok Shukla: But the moment you look at the enterprise the deployment is much harder, because, first, st not only you need to ensure that the AI is predictable, but what big changes you can actually guarantee.

    1948
    05:57:53.440 –> 05:57:54.460
    Alok Shukla: And

    1949
    05:57:54.760 –> 05:58:04.869
    Alok Shukla: my, a lot of my effort is actually helping the leaders make the financial case. So one of the things we launched couple of months back was an Roi and AI calculator

    1950
    05:58:04.990 –> 05:58:21.679
    Alok Shukla: where we help them how to make the case, and what kind of things it can solve, and how they can successfully make the case. So that’s that’s my single biggest challenge is more on the sales side, less about on the product side, or an option side. If if that also makes sense.

    1951
    05:58:22.330 –> 05:58:27.029
    Julia Nimchinski: Absolutely. And what’s next? In terms of your roadmap?

    1952
    05:58:27.530 –> 05:58:31.829
    Julia Nimchinski: What are you most excited about? And what can you actually speak to.

    1953
    05:58:34.970 –> 05:58:38.902
    Alok Shukla: So we actually are releasing features almost every month.

    1954
    05:58:39.590 –> 05:58:43.369
    Alok Shukla: our core competency, as we said, is, is in the data architecture.

    1955
    05:58:43.590 –> 05:58:59.840
    Alok Shukla: So we are driven by use cases. So one of the interesting use cases that is coming to us right now is, how can we? Now we have the data? Can we assign some of this task to some of the agents which can now start interacting with customers?

    1956
    05:59:00.070 –> 05:59:11.890
    Alok Shukla: See, I know, I understand, that there’s a lot of excitement in the industry that agents can interact with the customers. But, as I said, my background is from cyber security, and I’m very conscious that

    1957
    05:59:12.140 –> 05:59:23.290
    Alok Shukla: selling into enterprise. I know customers will be happy with less features, but they will want the any agent to be predictable if a single agent misbehaves

    1958
    05:59:23.630 –> 05:59:26.250
    Alok Shukla: while interacting with the customers. That’s a

    1959
    05:59:26.410 –> 05:59:34.240
    Alok Shukla: that’s a wrap on the company’s prestige, and also the wrap on the on the vendors prestige.

    1960
    05:59:34.360 –> 05:59:47.270
    Alok Shukla: So we are being very careful. We. We are kind of rolling out small incremental change in that effect, mostly not because of technology, more, more to be to get the confidence of the buyers in that category.

    1961
    05:59:47.970 –> 05:59:59.749
    Alok Shukla: So that’s basically is most of things on a roadmap mostly is to introduce agent that us autonomously interacting with customers in a manner that enterprise can adopt them.

    1962
    06:00:02.100 –> 06:00:06.689
    Julia Nimchinski: Look as a thought leader in the space, and especially with your background.

    1963
    06:00:07.020 –> 06:00:13.330
    Julia Nimchinski: Just curious your thoughts. On sort of intelligent transition

    1964
    06:00:13.580 –> 06:00:18.170
    Julia Nimchinski: into a workflow just like your demo. Now.

    1965
    06:00:18.550 –> 06:00:25.930
    Julia Nimchinski: because when we were preparing the summit, we asked all of our community members what topics there are actually problems there

    1966
    06:00:26.060 –> 06:00:32.729
    Julia Nimchinski: focus on most now, and a lot of Cxos were specifically mentioning the transition piece.

    1967
    06:00:33.060 –> 06:00:39.210
    Julia Nimchinski: So what would you advise to all the leaders listening to us now?

    1968
    06:00:39.390 –> 06:00:45.509
    Julia Nimchinski: How do they transition from their existing tech stack to something like you showed us now.

    1969
    06:00:46.410 –> 06:00:52.670
    Alok Shukla: See, I think, there are some areas where the value is straightforward.

    1970
    06:00:53.090 –> 06:00:58.500
    Alok Shukla: For example, the data analysis, especially in some of see, let me kind of take a step back.

    1971
    06:01:00.370 –> 06:01:04.550
    Alok Shukla: There are in enterprise data that is waiting to be harnessed

    1972
    06:01:05.473 –> 06:01:18.549
    Alok Shukla: unstructured data has lived in the enterprise for a long time. There was no tool search already, is there? Reasoning is coming up? That’s an automatic case. You don’t have to make. That transition is easy.

    1973
    06:01:18.880 –> 06:01:25.219
    Alok Shukla: So that is something I will say, go for it. Test the tools. You will get benefit of whatever you’re doing correctly

    1974
    06:01:26.020 –> 06:01:37.920
    Alok Shukla: in terms of interacting with the customers. I would say that even though it kind of goes against my own interest, I would say, experience caution. Any interaction with the customer has to be predictable

    1975
    06:01:38.408 –> 06:01:53.469
    Alok Shukla: try out in smaller use cases. Give cust. Give your customers enough warning that this is something that you are trying out with an agent, so that you allow both parties to settle down in that interaction without rolling out something big.

    1976
    06:01:53.540 –> 06:02:11.319
    Alok Shukla: So there are some areas of faster transition. There are some areas for slower transition copilot are going to move faster. Direct agents are going to move slower. That’s would be my ex. That’s why, based on my experience interacting with almost 500 customer success leaders over the last one.

    1977
    06:02:12.400 –> 06:02:15.900
    Julia Nimchinski: Yeah. And that’s actually my last question here.

    1978
    06:02:16.790 –> 06:02:24.329
    Julia Nimchinski: There are a lot of community members with premium brands, more mid market enterprise brands, establishments.

    1979
    06:02:24.720 –> 06:02:28.119
    Julia Nimchinski: and they’re really cautious about deploying something like this.

    1980
    06:02:28.330 –> 06:02:37.120
    Julia Nimchinski: So the question is, how do you maintain your brand voice and generally reputation and experiment with AI.

    1981
    06:02:38.430 –> 06:02:56.919
    Alok Shukla: Again, going back to that focus on work. First, st focus on co-pilot use cases more than the direct agent use cases. See? Ultimately, I will say that agents require good data to work. If your data is not good, the agent will act irresponsibly.

    1982
    06:02:57.340 –> 06:03:06.230
    Alok Shukla: Agent cannot exist because they need some level of intelligence on which they will make decisions. If your underlying data is bad, you are going to have problems

    1983
    06:03:06.430 –> 06:03:25.229
    Alok Shukla: irrespective, or whatever use case you do, that you will swarm people. You will touch people without they having any need for it. So I believe that is the area that that’s how you should prioritize. So focus on data, first, st focus on internal use cases. 1st focus on co-pilot. Use cases 1st that way, you will reduce the risk

    1984
    06:03:25.480 –> 06:03:29.230
    Alok Shukla: and then go towards the bigger. Use cases as you go along.

    1985
    06:03:30.800 –> 06:03:32.039
    Julia Nimchinski: Thank you so much. Your luck

    1986
    06:03:32.410 –> 06:03:40.360
    Julia Nimchinski: really fascinating. Love the demo. And just for all of the folks watching. What is the next step.

    1987
    06:03:40.930 –> 06:03:44.640
    Julia Nimchinski: What? How can we learn more about final story? Is it a demo?

    1988
    06:03:44.820 –> 06:03:48.470
    Julia Nimchinski: Is there any pre premium experience to us more.

    1989
    06:03:49.190 –> 06:04:11.600
    Alok Shukla: I think the best way to do is to come. So I’m I am always available to set up a demo for you, and I can explain to you while live. So go to my website, and there is a link for setting asking for a demo, or you can do it yourself, but I generally advise do it with me because I could help you out and connects with your enterprise user experience. And I promise you.

    1990
    06:04:11.770 –> 06:04:14.330
    Alok Shukla: and I can actually put my word on this.

    1991
    06:04:15.080 –> 06:04:22.149
    Alok Shukla: Be able to set your entire system, especially on the self. Serve Demo piece that we offer in 31 min

    1992
    06:04:24.290 –> 06:04:28.599
    Alok Shukla: appointment of enterprise, revenue product in the industry period.

    1993
    06:04:28.600 –> 06:04:29.180
    Julia Nimchinski: Oh!

    1994
    06:04:30.560 –> 06:04:32.979
    Alok Shukla: It would be 9 months well spent. Thank you.

    1995
    06:04:33.830 –> 06:04:43.800
    Julia Nimchinski: Super impressive. Thank you again, and that wraps up day 2 of the agenda AI summit join us tomorrow for day. 3.

    1996
    06:04:43.930 –> 06:04:50.960
    Julia Nimchinski: The grand finale. There are a lot of exciting speakers, Cxos, Vcs analysts.

    1997
    06:04:51.200 –> 06:04:58.860
    Julia Nimchinski: And yeah, just remember, we are building the stock market of skills. You can book one session

    1998
    06:04:59.030 –> 06:05:05.030
    Julia Nimchinski: expert consultations coaching with majority of the speakers on this summit.

    1999
    06:05:05.390 –> 06:05:11.819
    Julia Nimchinski: So yeah, see you tomorrow, and any final words, oh, I’ll leave it to you.

    2000
    06:05:13.242 –> 06:05:16.749
    Alok Shukla: For me, I’m I’m pretty excited to be here. Thank you.

    2001
    06:05:17.320 –> 06:05:18.120
    Julia Nimchinski: Thank you.

    2002
    06:05:18.240 –> 06:05:19.430
    Alok Shukla: Thank you. See you soon.

    2003
    06:05:19.560 –> 06:05:20.090
    Alok Shukla: Okay.

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