Text transcript

Smarter Signals, Stronger Agents, Better GTM

AI Summit held on May 6–8
Disclaimer: This transcript was created using AI
  • 04:29:35.040 –> 04:29:43.139
    Julia Nimchinski: What a pleasure! And we are about to see a demo explorium.

    1487
    04:29:46.510 –> 04:29:47.760
    Julia Nimchinski: Amazing.

    1488
    04:29:48.420 –> 04:29:50.320
    Julia Nimchinski: Welcome back, Omar.

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    Julia Nimchinski: Smarter signals.

    1490
    04:29:53.600 –> 04:30:03.120
    Julia Nimchinski: better agents and Gtm. Welcome to the show again. And how would you like to set the stage? Shall we just dive into it?

    1491
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    Omer Har: Sure I can. I can just run the demo. I don’t. It’s not a problem to share right? Share my screen.

    1492
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    Julia Nimchinski: Yeah, sure.

    1493
    04:30:09.630 –> 04:30:10.230
    Omer Har: Sure

    1494
    04:30:23.210 –> 04:30:26.399
    Omer Har: I’m waiting for you for you to kick me off, so just.

    1495
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    Julia Nimchinski: Oh, are you waiting?

    1496
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    Omer Har: I’m waiting for you to just tell me that it’s okay. Can I stop? Then.

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    Julia Nimchinski: Oh, yeah. Yeah. Yeah.

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    Omer Har: That’s completely fine. So so Hi, everyone, I’m I’m Omi, and I’m the co-founder and CEO of explorium. I’m gonna in the next 1015 min. I’m gonna show you a bit about our product

    1499
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    Omer Har: and kind of tell you more about what we do. Exploring is a data aggregator. We aggregate data coming from about 50 different sources, and we create one or harmonize the data in order to create one layer. We call that fabric sometimes. And the idea is that that fabric allow you to interact with our data anywhere, from any need, from company, from a prospect

    1500
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    Omer Har: to an account, to a location, and you can move away. You can move from 1.1 entity to the next in a very easy way that you can. Then you can then learn and use the data. The way that we work is by providing what we call an Api suite. Of all of the endpoint we have more than 25 endpoints that allow you to discover anything that you want

    1501
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    Omer Har: on a company, or a person, or even location. Anything that you want in order to help you get to.

    1502
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    Omer Har: you know, to create, go to market motion. We work with many companies in the area, from from better data and better sophisticated, more sophisticated agent in order to you know, solve your go to market problems. So let me show you kind of a couple of the things that we’re doing. And specifically, I’m going to show today kind of the our Mcp. And I will explain what that means in a sec. Let me just share.

    1503
    04:32:15.400 –> 04:32:39.800
    Omer Har: So this is a demo app that we created specifically to show how powerful it is to connect our Mcp with specifically in this particular K. Claude. But you can use any. Llm. Specifically, we were with this product yesterday in product hunt, and we won the 1st place by a landslide specifically, because I think that once you start looking at, that’s very powerful.

    1504
    04:32:39.890 –> 04:32:53.159
    Omer Har: Mcp is basically a technology. It’s maybe a big acronym. But it’s a simple technology that allow an Llm. Any agent think about Gpt or Claude. Anyone that you’re using in

    1505
    04:32:53.160 –> 04:33:23.120
    Omer Har: can connect to basically tools. So we took all of our 25 endpoints. It’s a lot, and we connected that through an Mcp. And allowed the Llm. To actually learn something about our Apis and start running with what I’m showing you here is. You know, there’s no magic here. It’s our Mcp. With vanilla clawed within a very simple ui. The whole things took us a couple of day to build. We didn’t add any special, any special magic. It’s just our Mcp, our tool connected to it, to A

    1506
    04:33:23.750 –> 04:33:31.369
    Omer Har: to connect it to an Llm. So let’s start with something very simple like, let’s say you want to know whether

    1507
    04:33:32.470 –> 04:33:41.619
    Omer Har: Does adobe is using Apache zookeeper.

    1508
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    Omer Har: So Apache zookeeper is a type of

    1509
    04:33:46.279 –> 04:34:11.190
    Omer Har: of open source system that allow you to send requests and basically queuing system and monitoring system as well. So what we’re seeing here is that we send it down to Claude. Claude. Now have all of our Mcp, all of our endpoint to kind of use. And now he’s trying to actually solve the problem and and understand does adobe is using Apache zookeeper the 1st thing that he’s going to do. And again, I didn’t do it. I didn’t tell him to do anything

    1510
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    Omer Har: special here. There’s no special thing is just a Claude connected to an Llm. You can do the same thing using your Claude desktop.

    1511
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    Omer Har: The 1st thing that he’s doing. You need to understand what adobe is right? So you need to match that business towards some id. The reason that it’s so important that if you’re using just a simple kind of just going into the web and looking for adobe, it might work because adobe is a huge company. However, there is a company named Amazonia, which is a supply chain company. And if you search Amazonia in Google, 99% of the cases, you won’t find it, because Amazon will be there to grab your attention.

    1512
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    Omer Har: So from that perspective, you know that that’s kind of one of the things so adobe is easy as Amazonia is hard. You need to 1st match it. And this is exactly what you’re seeing. And basically what is happening in the background is that the agent is talking to our system in order to understand like which one which adobe is it? And what is the Id.

    1513
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    Omer Har: Once that is good, then it can actually use a different endpoint in this particular case is business technographic. In order to understand what is the technology that this business have? And you can see there is a long list of different technologies that adobe uses just to kind of

    1514
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    Omer Har: making sure that you kind of just understand a bit more. Most of this data is actually collected from job description. So when adobe

    1515
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    Omer Har: publish a job description in many cases they will ask for we want experience in, let’s say, Amazon, Ec. 2. Or in this particular case, adobe is using Apache zookeeper. So if they in some point we identify that adobe will look look for experience in Apache zookeeper, probably more than one time, and we pull that in and say, well, so that means that adobe is actually

    1516
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    Omer Har: you know, using that internally, otherwise, there’s no reason for that. That’s just an example. Another point that we can actually look at is what if we want to know more about

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    Omer Har: When we want to know more about the company, let’s say a different company. We want to understand more about what is the strategic changes that this particular company have

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    Omer Har: so kind of one of the things that many people are currently doing is actually using the web and kind of web research agent in order to understand, in order to actually read more information about the company and learn more. But there’s a lot of data that is not available straight up in the web, for example, snapshot of the website. So if you think about, if you want to learn what happened specifically from a positioning perspective, for example.

    1519
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    Omer Har: for a specific company. You can look at the website in 2 different snapshots, let’s say, 3 months apart and analyze the result in order to understand what is different there. Okay, so let’s say, get the web changes

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    Omer Har: for up to you.

    1521
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    Omer Har: So again, what will happen here is, instead of trying to do that on the web, where not necessarily, you’ll get this type of information. You can then go into one of our endpoints and actually query for that information in order to understand how we can change that in the same way that we did that for adobe, when the 1st thing that we need to do is the entity matching, and only then start running the rest. Then we’ll need to do that as well. Here 1st is going to match around

    1522
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    Omer Har: the business that should take just to take a couple of seconds, and once he identify the business, he can then try to look for web changes specifically for Atio.

    1523
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    Omer Har: Okay, that’s kind of how that’s kind of how it works. And you’ll probably see that in a second or not.

  • 1524
    04:37:32.070 –> 04:37:54.269
    Omer Har: When you think about the kind of a bigger kind of what is the plan for? What is the plan for Mcp overall? Here you go now. He’s running for that. If you think about how Mcp can work in a more general way. So we believe that. You know, if you think about Gpt, for example, Gpt. 0 3 went live about 3 weeks ago, as part of kind of the.

    1525
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    Omer Har: you know, release. They actually let him run an IQ test the same thing that many people running themselves. He got 130, which is 2 standard deviation more than the the average, which means that 96%. According to that test, specifically, 96% of the human population around the world is actually less smart than O, 3.

    1526
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    Omer Har: Which means that what we want to say is saying, okay, so the agent can be very smart if we give him all of the information. If we give him an Mcp with all of the information possible, what can. He does? What can he do? And I think that’s kind of how we think about, how can we think about our tool set? You’ll take explorium is a tool set that you plug in into your any Llm. And this Llm. Will become a go to market. Intelligent machine.

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    Omer Har: In this particular case you can see that when we look for Atio, which is a type of a kind of a new age. Crm, you can see that they have many changes in the website. They change from new object to the next Gen. Of Crm. Because they released different features.

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    Omer Har: We know that there is a security focus because there was no mention of security certification 3 months ago, but now the Gdpr. Ccpa. And other certificate, and you can see the different. They didn’t have any customer segment. Now they do so. All of those things is not available on the web. However, if you give an agent this freedom of not only testing the web, but also going into every one of those b 2 b databases that we

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    Omer Har: hold. As I said, more than 25 endpoints.

    1530
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    Omer Har: You have more things or more information that you can pull, which is super interesting, especially if you case in a case where you need that data. For, let’s say, prospecting research, and so on. If we’ll take another example which I which I love is get the email

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    Omer Har: or visible

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    Omer Har: Ciso.

    1533
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    Omer Har: So the reason that I love this is because this is something that many, many go to market practitioners is trying to do. They want to reach out to the Ciso invisible. Let’s say I’m trying to sell some in a security system, and they’re trying to

    1534
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    Omer Har: use. And we’re trying to sell directly to visible. And they want to get to the person of their Ciso. The reason that I’m like this this example is because there isn’t any Ciso for visible. They don’t have a Ciso. However, they do have a director of information security. So now the system will need, or the agent will need to automatically figure that out.

    1535
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    Omer Har: find this person and use that person and find the email for that person. It can take a bit of a couple of minutes to run that. But the main point will be that the agent again as and I didn’t do anything special for this particular agent, or the only thing that I gave him is and I refer

    1536
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    Omer Har: to the agent as him. For some reason the only thing that I did it just gave him

    1537
    04:40:50.270 –> 04:41:11.839
    Omer Har: the our Mcp. So once I connected it to the Mcp. He started working and kind of looking for different ways that he can then solve the question that I ask and spin this particular case to find the Cecil. When we think about the future, we think about what we call usually autonomous future, where the agent will be will have the autonomous, the autonomousity.

    1538
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    Omer Har: I guess, to actually choose what to do and how to solve a problem. And what exprogram does is provide him with the necessary tools in order to solve, go to market problems. We think about that as a shift, because up until now Mcps usually mean mainly for integration. We see that as a product, Mcp as a product.

    1539
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    Omer Har: If you release. If you take your Mcp and you connect it, you take our Mcp and you connect it to an Llm. The next step that will happen is that this Llm. Will become a prospecting machine, a go to market, intelligent machine that you’ll be able to use. That’s kind of how we think about

    1540
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    Omer Har: about it. Most of our customers, I said in the beginning, is customer, that building go to market intelligence system on top on top of ours and on top of our infrastructure and data. It can be, you know, a qualification agent. It can be

    1541
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    Omer Har: outreach agent like to send actually emails.

    1542
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    Omer Har: it can be around just providing the base layer on top of which you’re going to do research like we’re showing here is here. And this is kind of usually how we we work with those teams.

    1543
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    Omer Har: just to show you just to notice, like, just to show you kind of what he’s doing here. Not only he matched the business. That’s the easy part. Now. He’s trying to look for Ciso. He couldn’t find that I don’t see a specific Ciso title match. So now he’s trying to other, let’s say, creative ways. For example, look for query security in order to figure out what he can learn and what he needs to do. And after all of this he’ll very soon will get to a point where he said, Okay, I know who I need to reach out to

    1544
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    Omer Har: that will be a director of of it. I know that we’re very short in time, so I I want to be quick with that.

    1545
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    Julia Nimchinski: Where one of the questions that we’re receiving right away is, how long does it? How fast can actually teams get this live?

    1546
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    Julia Nimchinski: And how long does the training take, or how does it work.

    1547
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    Omer Har: So there’s no training involved here. The only thing that you need to do is to take your Api key for Cloud, the Api key that you get from explorium. Combine them together and kind of work together. With that, you can do that with Langgraph Langgraph automatically support Mcp. So if you’re working with Langgraph or Glangchain. That should be a breeze.

    1548
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    Omer Har: If you want to just try it out, you can. You, if you want to actually hook it up to a cloud and try it out yourself. You can do that with cloud desktop or in our demo up, just to show that around

    1549
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    Omer Har: if you are implementing something, if you want to implement something like that, just a chat bot that can give you information and kind of insight on on specific

    1550
    04:43:51.950 –> 04:44:06.310
    Omer Har: customers just for you. So imagine that you have a product, and within within it you have a chatbot similar to what you have here that allow you to do that. Then, in particular case, all you need to do is basically. And this is what we did here connected that to land graph.

    1551
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    Omer Har: framework.

    1552
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    Julia Nimchinski: Very cool. And one other question here. Truly, a lot of them. How do you compare? How do you compare it to other players in the space.

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    Julia Nimchinski: And who are you even competing with.

    1554
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    Omer Har: Cool. That’s a good question. So traditionally, we, we are competing with data provider like us that provide kind of layers of data. So you can think about Apollo. I/O, as an example, is an example of competitors. There is other, obviously,

    1555
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    Omer Har: usually what those guys in most cases, what you’re seeing. Those guys are actually focusing on creating their own agents like Apollo as an example. What we’re focusing more is by providing this layer that agent can connect with us. We believe that the real technology, or from our perspective, what we know how to do best is actually to power that layer of data that is integrated

    1556
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    Omer Har: and efficient from a from a harmonization perspective is efficient. So you can move from one entity to the next and do that pretty quickly, and then use that in order to to solve, go to market question, whether to find the email for

    1557
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    Omer Har: Baraki goes, which is the the one that security that that focus on security for for visible or other, you know, go to market issue that you have.

    1558
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    Julia Nimchinski: Very helpful. And, Omart, can you share more? Use cases? Probably some of the top ones that you’re seeing, and we’d love to hear more about your latest partnership with outreach.

    1559
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    Omer Har: Sure. So we work a lot in the agentic, you know, with agent company, that build agent, and one of the kind of the earliest partnership that we did was actually with outreach I owe. We’re working with them with over a year now. I think that the team is outreach is really kind of is

    1560
    04:46:00.610 –> 04:46:13.809
    Omer Har: future forward. When you think about kind of what they’re trying to do, they’re building, you know, things that up until 2 years ago was imaginary to most go-to-market tools and kind of what they want is to build a completely new.

    1561
    04:46:14.270 –> 04:46:27.230
    Omer Har: a way to interact with how sales and Aes interact with customers, and how efficient you can be to do that. What we do is provide all of the data layer and infrastructure that they need

    1562
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    Omer Har: in order to run them their their agent. We’re already in Beta. We. I think the Ga. Is in a couple of months away, but the idea will be that every you know, every customers any customer from outreach can come into come to outreach, get a a an agent that will help him prospect and then send emails to. And you can do that on our data and get the best email best personalization based on their technology.

    1563
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    Julia Nimchinski: Super helpful. And people are asking about the Roi, and how fast can you actually see it.

    1564
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    Omer Har: Yeah, that’s a good question. So we can. You know, we work with also a lot of smaller startups that you know, they move very quickly, and they need data in order to do multiple things. So one of them, for example, is find you

    1565
    04:47:19.860 –> 04:47:24.110
    Omer Har: find new prospects that you want to reach out to. It’s

    1566
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    Omer Har: as as it mostly based on Api. And we have a lot of experience kind of working with companies that needs that type of of information. We can do that in days. So once you connect to us, it can take days until you’re you’re up and running with a valid solution that you can then sell to the market.

    1567
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    Julia Nimchinski: Amazing, Omar, what would be the best next logical step? And how can people find more about explorian.

    1568
    04:47:50.810 –> 04:48:18.419
    Omer Har: Cool. So I think that our website is the 1st thing that I’m going to do what I’ll also suggest within the website. If you register, you can go into our Mcp playground to play around exactly how I did with with the app here. I think that would be the best. Usually what happened is that people play around with the playground and reaching out directly after kind of asking more questions. So I’ll be happy to to do that, and you can reach out to me. Of course I’d love to have a chat.

    1569
    04:48:19.250 –> 04:48:20.600
    Julia Nimchinski: Thank you so much again.

    1570
    04:48:20.600 –> 04:48:21.060
    Omer Har: Thank you.

    1571
    04:48:21.060 –> 04:48:22.109
    Julia Nimchinski: Pleasure hosting you.

    1572
    04:48:22.110 –> 04:48:23.520
    Omer Har: Thank you. Bye-bye.

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