
UX for AI
Hosted by Behrad Mirafshar, CEO of Bonanza Studios, Germany’s Premier
Product Innovation Studio, UX for AI is the podcast that explores the intersection of cutting-edge artificial intelligence and pioneering user experiences. Each episode features candid conversations with the trailblazers shaping AI’s application layer—professionals building novel interfaces, interactions, and breakthroughs that are transforming our digital world.
We’re here for CEOs and executives seeking to reimagine business models and create breakthrough experiences, product leaders wanting to stay ahead of AI-driven product innovation, and UX designers at the forefront of shaping impactful, human-centered AI solutions. Dive into real-world case studies, uncover design best practices, and learn how to marry innovative engineering with inspired design to make AI truly accessible—and transformative—for everyone. Tune in and join us on the journey to the future of AI-driven experiences!
UX for AI
EP. 94 - The Startup That Turned Waste Into Resource w/ Umutcan Duman
Umutcan Duman, CEO of Evreka, joins us to share how a group of engineers turned waste collection into a global smart tech platform. From IoT sensors to AI-powered insights, they’ve been solving real problems long before the buzzwords. This is the story of building Evreka — one bin at a time.
You can find Umutcan here: https://nl.linkedin.com/in/umutcanduman
Interested in joining the podcast? DM Behrad on LinkedIn:
https://www.linkedin.com/in/behradmirafshar/
This podcast is made by Bonanza Studios, Germany’s Premier Digital Design Studio:
https://www.bonanza-studios.com/
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Welcome to UX for AI. Omojan, thanks a lot for coming on the podcast. You're a busy man.
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I can see with the wealth and extent that you are behind Evrica. And yeah, we'd really
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love to use every minute of it and go through what you have created. It's a work of wonder
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if I would say it properly, maybe like give audience the way that you shared with me in
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the initial call. That was very beautifully put. I think let's start from there because
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I wanted to be on the recording and then we can take it further. I know that you are going
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to share some screens and also show us really cool stuff as well.
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Yeah, of course. So this is our tent here as Evrica. We started as four co-founders.
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Back then I was a student in my last year in university. So we were knowing each other
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from the university time, school friends. So the initial problem that we have discovered
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is the inefficient based collection operation. We are all engineers, Berkay, Matt, Mehmet,
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and myself. Unfortunately, we lost Berkay two years later than we started. He passed away.
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So we are also carrying his dreams with us, trying to reach the level that we would like
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to reach altogether from the beginning. Yeah, so the first day was with Berkay. So we actually
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waited for the waste collection truck to ask our questions to the truck driver because
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that was our assumption and that they were just visiting every waste bin every single
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day in a static structure. So it was actually proven that they are doing the same route
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every single day without knowing which bin is full, which bin is empty. So they do the
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same thing every day, which is actually a huge inefficiency. So that was the initial
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starting point for us because this was something that we have been learning in engineering,
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industrial engineering department, like route optimization, efficiency, all these things.
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So that was trying to implement what we have learned on the field. And waste management
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is actually a kind of old school industry. So basically, things have been in a certain,
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you know, structure for a long time. Yeah. So if you try to innovate, if you try to change
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something, this is a little difficult. But if you can manage it, then you can have a
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big impact on the outcome of the industry. So that was a big challenge. So this is how
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we have started and we get it together within like two and a half months. Matt and Mehmet
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also joined our team. As four co-founders, we have started. I was even trying to catch
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my exams because I was, you know, my friends were calling me. I was running to the exam
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from the office. So luckily, I, you know, I finished my study without losing years. And
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then yeah, here we are. I didn't know one of your co-founders passed away hits. Yeah.
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Sadly, it's a miss, but also it must fill your furnace, not to take time for granted
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and try to create a legacy that he would be proud of. Yeah. Hopefully, hopefully we can
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make him proud. So you know, waste management, and I studied a bit as well, seems like to
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be a straightforward topic. You need to reduce waste, but it's a very difficult engineering
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problem. For example, for one, if a truck would go around the route and there are like 400
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bins, how would you use technology to know which bins is full, which bins is half empty,
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which bin is empty? That's a big engineering problem in my opinion, as an engineer with
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the engineering background. So how did you go? Like it's a big complex ecosystem. Where
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did you start? And maybe like walk us through this past year, 10 year journey from a bird's
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eye viewpoint and break down the journey, the evolution of Africa. Yeah, of course.
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Well, when we have started, we were not we, but in general, the ecosystem were talking
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about garbage. Yeah. And then it became waste and then it became material and then it became
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resource. So it's basically kind of, you know, evolution of the industry as well. So it was
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not, it was not that much valuable industry back then, it was all like the logistics,
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just carrying the garbage from one point to another just to dump it or burn it or whatever.
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Of course, in some countries, you know, more mature approaches were there, but not, it
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was not like globally best practice. All countries or all cities or all the companies were following
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the best practices. So basically as a normal random citizen, we didn't know about commercial
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waste. We didn't know about industrial waste, hazardous waste. Those are different verticals
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of waste management. As a normal citizen, we were only aware of the municipal waste
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management. So we only thought the municipality is our customer. Right. Well, actually this
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was not the case most of the time, because although municipalities are the responsible,
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generally these operations are managed by the private companies on behalf of cities.
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It's like outsourced operations. Right. So we were trying to optimize the routes of waste
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collection trucks for municipal waste operations. That was the initial starting point. Then,
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obviously, we realized there are different verticals of waste management and it is not
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only collection operations. You, you need to also manage the fleet. You need to also
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manage the employees. You also need to manage the different relationships, structures like
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invoicing proof of services, all of these. And it's not about collection only, managing
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the material after collection is another half of the waste management vertical. Yeah. So
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collection and material recovery. They call it material recovery facility in general.
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You can do different kinds of activities related with the material. You can just wash it, you
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can bail it, you can crash it. You can do many different types of activities after collection
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of the material. You got even harder problem to solve. Yeah, we are actually not satisfied
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with the problem that we solve. Then we always try to make it a bigger problem and then solve
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it. I think this is kind of the trigger, inner trigger for us, as we try to find it a bigger
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problem, more difficult problem to solve it. So, yeah, related to route optimization, it's
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actually a big problem because route optimization is one type of problem and route optimization
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within waste management is actually a different and a little more complex problem because
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you have different time windows. So those trucks cannot travel like 24 hours. That's right,
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that's right. Some of those trucks cannot get into some of the streets. So you need
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to use different vehicles for different types of streets and some different containers should
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be managed by different types of vehicles because some of the containers are big. Some
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of the containers are small. Too many variables. Yeah, it's getting more complex. So many variables.
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Variables can be easy, but constraints are getting also complex. So you have many different
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variables, so you have many different constraints and trying to manage them every day. And if
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you have different shifts, also this is bringing another complexity. Sometimes it also makes
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it simpler. But yeah, that was a big challenge. So we said it is a big enough challenge to
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tackle. Yeah, for engineers, massive complex ecosystem, why not? Yeah, this is what we
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enjoy. So this is a recipe for AI, especially from the traditional sense, machine learning,
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then now AI, especially gen AI. So how, so you started way back, then there was any gen
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AI or large language models were widespread used. How did you leverage, especially machine
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learning before the whole LLMs and gen AI came to being? Yeah. So I think this is like
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different. We have a different approach. Why? Because we studied in Ankara, it's the capital
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of Turkey. And our university is Middle East Technical University. This is like one of
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the best engineering university in Ankara. And there are different kinds of like two
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different kinds of approach in Turkey. One, like Ankara approach, more like engineering,
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trying to solve the problem and Istanbul approach is more on the commercial side, you know,
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so we solve the big problems, but we are not good at selling and marketing, packaging it.
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Istanbul is actually really good at selling and packaging and marketing. So we actually
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didn't know about IoT when we were starting. We thought if we can understand the fullness
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level of the bin, then we can do route optimization for waste collection trucks. Then we said,
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okay, let's try to find a solution to understand how full is the bin. It's not about, you know,
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trying to become an IoT company. It's about trying to find a solution for a problem that
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we see. So you were IoT before IoT? Before IoT was a thing. Well, we were not aware of
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IoT when we had built the field level sensor. Then IoT became a thing. Then we said, hey,
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we are actually an IoT company. But we didn't know that we are becoming an IoT company when
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we are building this sensor. That's fantastic. This field level sensors is patented, but
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is your patent or is something that that? It's not something that you can get a patent on,
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but you can have this design ownership kind of thing because it's... Got it. Then we realized
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the field level sensor topic is going to become kind of just a standard device. Right. So
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we need to provide a software solution which can work with different kinds of sensors too.
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It's not only a field level sensor. It's about also tracking the vehicles, also tracking
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the whole operations, so weighing systems on trucks, cameras. So basically we decided
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to have a hardware agnostic software, which can also create value without the hardware.
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We were actually trying to solve our own problems because being an IoT company, being an hardware
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company, also brings challenges because it's actually problematic from the supply chain
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point of view. It's also capital intensive. In order to make sales, you need to make expandings.
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Then you can make money afterwards. So it's also a challenge from the financial point.
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We said, hey, let's try to simplify things. So let's try to sell software. We also were
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not aware of software as a service concept. So we were actually trying to solve our own
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problem this time because there was a kind of bottleneck. Then you're getting sensor
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data and sometimes you're getting wrong data. Sometimes there are problems on the containers.
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We were also getting the temperature data from the sensors because we would like to
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understand if there is any potential fire inside of the bin, which is common in some
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areas. Then we said, okay, we need to understand the anomalies without checking manually. So
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basically we created an anomaly detection algorithm in order to understand if there's a potential
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fire inside. And then also we developed an algorithm to predict when bin is going to
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be full because sometimes bin is not full right now. If I'm not collecting this bin
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today, it is going to be overfull till next root. So I have to put this bin into my root
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plan. So I need to have the prediction. So basically these kinds of things are forced
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by the problems and we were trying to solve them. Then, then all of a sudden, of course,
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it's, it's not happening in one day, but we have the anomaly detection. We have the prediction.
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We have all these decision making processes. We have developed them all internally. Fantastic.
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So AI was that a topic back then. So basically to solve your own problems, you had to touch
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upon all the trending topics of the past 10 years. Well, I think, I think this is more,
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you know, this satisfies our internal, you know, the motivation a lot more instead of,
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you know, running after the buzzwords to be doing like real things in our mind. So because
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we see the problem, we decided to solve it. We solve it. I have it different algorithms
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or different approaches that we can think of. And well, it becomes IoT, it becomes SASS,
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it becomes machine learning, it becomes AI at the end, because we believe we shouldn't
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put those buzzwords as aim. We should utilize them for good purpose. Our good purpose is
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to solve the problem of waste and material management all around the earth. As much as
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we see problems, we need to solve it. So basically if it is AI today, then obviously we can implement
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AI, but it is not to implement AI. It is to solve problems, we can implement AI. Very
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beautifully said. I think I see that it could become a clip for us because a lot of, I see
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that a lot on LinkedIn and X that, hey, they're just like AI something. But why do you want
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to AI it? Do we actually need it? And, you know, touching upon my own personal experience
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with AI, and I've been working on multiple projects for the past months and I always wanted
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to add AI to it, but I came up with a very simple problem that need a very smart table.
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And there is no AI in it. It actually could solve one of my own problems that I have on
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a daily basis. So I decided to build it with AI, but there is no AI in it. True. True.
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Yeah. Sometimes it's just, you know, trying to kill a mosquito with a rocket instead of,
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you know, simple solutions. Yeah. Yeah. Really, I really tried to focus on simpler approaches
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instead of making it more complex or just to take it with a fancy things, but maybe this
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is because we are coming from Ankara approach. Maybe this is not correct. I don't know. This
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is our approach. I'm telling this is our approach. I'm not telling this is the best approach.
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This is our story. I love it. I love it. Being problem obsessed. I think that guarantees that,
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that you end up building technologies that you can reuse a lot. And then if I want to
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like lay out what you have done the past 10 years, now actually you're going to one of
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the very, very few companies that going to unlock so much potential from LLMs and GeneAiR.
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Because at the root of your platform, there is a IoT, there are machine learning algorithms
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that could detect and predict and there's a SaaS on top of it that offers all of this.
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Then it's a perfect transition toward perfect evolution towards using LLMs and GeneAi for
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offering more services and products. True. So hopefully we will by the help of LLMs and
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AI, we will be solving the problem from the deeper areas and not like from the layer,
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first layer only. Because if you try to solve the bigger problem, then you need to cover
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different stakeholders. One more stakeholder should be involved. There are different stakeholders,
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like the driver of the vehicle, the dispatcher, the management of the waste management company,
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security authorities and individuals like yourself, myself. So we are generating waste in different
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areas and so the companies, or producers, manufacturers, extended producer responsibility. So everyone
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is going to be involved. Then the problem is also getting bigger. Who is going to do
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what? Am I actually segregating my waste properly so that the waste management company can do
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the best of the operation? Because if I don't segregate properly, I am actually kind of
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creating another problem for the waste management companies. There is a need for increasing
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my awareness or changing my behavior to do good. It's not only the waste collection or
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waste treatment. It's also enabling waste generators to be part of the solution. We also
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try to involve waste generators in different perspectives. Let's move towards the visual
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side of our podcast. This is going to be recorded and the video will be available on Spotify
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and YouTube. We started with IoT. We need sensors to understand what's going on in this
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ecosystem to get that out of the need to detect and predict. Then we need basically a window
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of software that we can offer these services to our customers. What kind of problems that
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you've been facing that you couldn't solve with this tech stack that you then saw a lot
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of potential to solve with LLMs and GNI? Could you ask it again? Okay. Up to LLMs, your tech
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stack was IoT sensors of different kinds. You got SaaS to offer your services. You got
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deep learning to detect and predict. Then now LLM came to the playground. What kind
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of problem you've been facing that you couldn't solve with your previous tech stack now and
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then with LLM you could solve? Yeah, of course. Basically, we have started as an IoT company,
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and then we decided to become a SaaS company. That was the second step. Then we realized
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that if you need to solve problems of different countries, different waste streams, different
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regulations, then your solution should be flexible enough to cover all the municipal waste operation
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in the Netherlands and also electronic waste in Singapore and medical waste in South Africa.
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Different regulations, different operations, everything. Currently, we are using the third
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version of our product stack. This is actually the rule set mechanism, because our customers
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can create their own if this, then that structures. So, we actually give them this capability
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to create their own rule sets. By this way, we are capable to onboard our customers in
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weeks time. So, we don't need to change the product from scratch or we don't need to customize
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our product. We just configure the environment and give them the flexibility to change their
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own rule sets. So, the same solution can be used in different areas for different purposes.
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So, that is one of the good things. That was a really good approach, which is kind of unique
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in the market. So, this is actually differentiating our solution from the other providers, and
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there was a kind of challenge related with the dashboard part of it. Because one company
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would like to see different KPIs and the other company would like to see different KPIs.
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For that purpose, we need to understand what kind of KPIs they have and we need to build
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all these dashboard things on our own. But obviously, those KPI requirements are changing
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in time. So, maybe they wanted these 10 KPIs from the first day, two months later, they
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would like to see another KPI. That's right. Three months later, they would like to see
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another two. So, this is actually lots of requirements coming from the customers. We try to give
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response to them with our customer success, product management, product development, it's
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actually consuming a lot. So, we were spending too much of time in order to satisfy these
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requirements. But thanks to LLM, we gave the capability to our customers to ask questions
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to their data. So, they can basically ask which vehicle is performing best, which driver
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is doing good, which driver is just, you know, not doing good. So, basically, data set is
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there although the dashboard is kind of, you know, you have 10 KPIs, but you can ask questions
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to your dashboard. So, we don't get requirements like 12th, 13th KPI, we gave them the capability
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to communicate with their own tool so that they can gather any data, any KPIs from the
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system on their own. Obviously, we are developing and improving this capability, but yeah, this
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is available before it. Now, it is available thanks to it. So, we also secured some of
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our time and attention.
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Can you map the, so by implementing this, by implementing LLMs, to allow your users
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to go layers deeper than what they see on the interface and interact with the data sets?
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Most likely, the byproduct of that, the causation of, well, correlation of a relationship should
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be that it did reduce the burden that is on your customer service and on your product
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team, support team, whatever the case may be. Is that correct?
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Yeah, true, true, definitely. Because if you give them the capability to gather what they
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want from the solution. So, instead of creating a ticket for our customer success team, they
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can actually get the response because actually they communicate with their own words. So,
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normally what they do, they write words to our customer success team, "Hey, I would like
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to see this data." And actually they are writing these messages to their system, so the system
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is actually replying back directly, so they can see those data on their own instead of
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creating tickets. So, this is actually helping them to gather the data that they would like
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right away. And this is actually reducing, you know, the effort that our customer success
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team and product teams spend to resolve these tickets.
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Beautiful, beautiful. I think that's a huge advantage of LLM, because typically I think
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one of the frustrations that none of us in the design and product could solve prior to
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LLM when we were designing SaaS applications is that, for example, typical SaaS application
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has a reporting page, insight page, home page, whatever the, how you want to name it. And
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you would go there and to your point, you would see a set of KPIs. At most, there was
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a filter or there was something configuration with the settings that we could say that,
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"Okay, instead of seeing these KPIs, I want to see these KPIs." But basically, you had
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to understand or you had to come to this realization by yourself through going through the data,
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through the data, to realize that, okay, instead of having this set of KPIs, I want to use
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this set of KPIs, right? So with LLM, you can embark on this journey of, "Okay, let's
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get down under the hood and go layers deep to get a better sense of my data and how,
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for example, my customers are doing." So you can embark on that journey.
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So my question here, you said that with LLM, users or customers can now understand far
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better what's going on with their customers and users and have access to a broader range
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of their data set. When they fetch the information that is typically not available under SaaS
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dashboard, can they with prompt or perhaps with some interface configuration change the
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dashboard the way they want it to see it? Currently, that is not available in our product.
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So there are a couple of things which are in our roadmap. One of the things is this,
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because having a conversation with your system and getting the response is the first thing,
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but then I would like to implement what I have learned, right? That is going to be the
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second thing, because I'm learning it. So what? Then I'm going to write it down, then I'm
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going to do it manually. All of these steps, again, needs to be done. So this is one of
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the things, because you can ask questions, you can brainstorm with it, and then you need
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to make it implement. So we are not there yet. So it's like step-by-step, again, the
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same approach. So that was the first problem. Then what? Then this is the second problem.
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So we have to solve that one too. So this is one of the things which is in our roadmap.
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The other thing, because there are, I mentioned two stakeholders, like waste collection, waste
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treatment, and the third in general, waste generators. We also have waste generator customers.
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Waste generators can be individuals or big companies, like manufacturing facilities,
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imagine an automotive facility, building tens of thousands of vehicles. Then they are also
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generating huge amount of waste from different types of materials, in hazardous, non-hazardous,
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so on, so forth. So currently they are at point A, but actually without our solution,
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they cannot describe the point A. They don't know how much waste they are generating, because
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of which activity. I see. At which corner of their facility, in which shift, which type
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of material, hazardous, non-hazardous, are they doing good? Are they segregating the
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materials properly, or are they mixing hazardous and non-hazardous material, which is going
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to be hazardous at the end? So these kinds of things. The only data that they have is
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the invoices of the waste management companies. It's like ballpark figure at the end of the
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month or quarter. So if you don't know the details of all these things that I mentioned,
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you cannot improve your performance from the waste management point of view as a waste
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generator. Right. Which is like, you know, doctor is looking at you. Hey, you look okay.
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Right. They do blood test, right? Because maybe in your blood, there are different numbers,
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some like less, some higher. So looking at those numbers, they can make a decision. So
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it is because the waste or urine as well. Urine test as well. Waste is kind of blood test
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or urine test. Imagine you make a... It's such a life's analogy. Yeah. Basically it's like,
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you know, continuous testing your body. And if there is something happening, you can understand
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from the waste. Yeah. Yeah. Makes sense to me. We are again in anomaly detection. Yeah.
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That is kind of thing. And coming to the point A, they don't know point A. They cannot describe
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where they are right now. And actually by the regulation, by the company policies, they
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have targets maybe like 10, 15 years. Let's say that is point Z. They can define like
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ballpark figure point Z. They don't know where they are right now. Point ABC. So what our
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aim is to first describe point A, describe point Z and create a roadmap from point A
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to Z in 10 years, 15 years. It's not only roadmap. This is like targets, but how can
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I achieve those targets? What are my action points? What should I do to achieve my target
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within three months? So these are actually possible with AI. It is a little complex problem.
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I know, but this is doable. Now we are working on these two. One is putting the output of
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our, you know, brainstorming into action. Two, creating a roadmap and making sure that
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I can achieve my long term target by forcing, you know, action points to my field employees,
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because they don't know what to do tomorrow in the morning. We need to give them some
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actions. So yeah, these are the things. So basically first step is diagnosis. Yeah. What's
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wrong? Not wrong. No, what is the current status? Exactly. Just take a picture today.
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What's the, what's the current, what's, what's in your blood? So waste blood makes sense
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to me all the way. Then the second point with AI will be progresses. Okay, now this is your
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current state of effort. This is the goal is set by regulatory bodies. You have to achieve
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it whether you like it or not within 15 years. Let us generate you a roadmap. The roadmap
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is based on the goal set by regulatory bodies and the best industry practices for waste
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management and treatment and collection. Yep. True. Right. And obviously it has to be reasonable
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for the organization. That's a really good point too. It cannot be like sort of a blue
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sky goal that you have to next, next year you have to reduce waste by 50%. Yeah, it's,
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it's not going to happen. That is why, you know, the waste is not core thing for any
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organization other than the, you know, waste management companies. Imagine you, you are
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a car manufacturing facility. Your main objective is to, you know, building vehicles, making
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profit. Managing the waste is like, I have to do it some way and I have to, you know,
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comply. That's it. So it's not your main objective. So it has to be handled seamlessly. It's,
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it shouldn't be a big problem for my operation. It shouldn't stop me from making enough production,
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making enough profit, but it has to be done somehow. So it has to be achievable, reasonable.
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I guess for those kinds of negotiations, you would wear your Istanbul hat and try to connect
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how waste management could improve your profit at the end. Definitely true. But by the way,
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it actually has an impact because waste, managing the waste has an impact on cost or has an
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impact on revenue. Because if you have valuable material, this can be a kind of revenue. Obviously,
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it's not as much as selling the products, right? But it can be a certain amount of cost or
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revenue depending on how you manage your material. And also could be a very good use case for
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LLM too. If you say that, okay, we can save you this amount of waste and basically calculate
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at how much that base reduction would lead to reducing costs across the board in your
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operation and increasing profit. I think any CFO would love to see that chart. Yeah, definitely.
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Definitely. So we would like to convince them first, so that because generally, you know,
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these targets to whole organization and then goes to directors, goes to managers, goes
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to all the employees. Obviously, it is coming from top in general. So if we can convince
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them from their financial drive forces, then it is going to be spread to all organizations.
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It is not enough to convince the environmental manager within the organization only because
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it's going to be in his or her area solely, which is not going to have an impact on the
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operation side. But if organization is convinced from the top, then everything can be possible.
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Of course, there will be some challenges in that case too, because it's going to be a
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big change management problem. But still, it is better to convince most of the different
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stakeholders in different layers. Mujer, I think it's a really good time to jump into
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the interface and see what are you being cooking for the past 10 years? Of course. Just give
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me a second so I can... I'm really excited now after like 40 minutes of going down the
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rabbit hole of waste. So basically, I would like to show you a couple of pages. Obviously,
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not all. Let me share my screen. If you're listening to these podcasts throughout your
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channels, you can easily get the timestamp, go to YouTube or Spotify and see the screens.
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Can you see my screen now? Yes. Perfect. So basically, this is like a master demo account
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of our dashboard. Obviously, this data is just randomly generated data. So this is like
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the main dashboard. All these boxes can be configured depending on different KPI requirements,
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as we have taught. So we were generating these boxes per customer because they would like
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to see different types of KPI. And we have different modules like operation, we have
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fleet management, we have assets. Assets is like the bins and containers. We have engagement.
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Engagement is actually related with the relationship management for waste management companies,
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so they can manage other third parties here like subcontractors, their customers, authorities.
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MRF is for the material recovery facility, so they can manage incoming materials, processes
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within the facility, inventory management, and the outgoing materials to their different
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types of customers. An employee is managing the employees because different employees
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has different constraints. So basically, they can have the drivers. That driver can only
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use this type of vehicle, maybe the employee which is working on field only. They cannot
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drive any vehicle. So they have different constraints too. And we have user management
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events, which is like the reports coming from the field, complaints, et cetera. And all
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the reports can be also archived here. So anyone who would like to see those reports
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afterwards, they can go to this archive and see all the reports. And there are different
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document types here. And our system is also supporting different languages. Currently,
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12 languages we support, which is actually easy to translate to different languages.
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And if you want to see the one month data, three months data, six months data, these
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are the big challenges. So what I would like to show you just simply is the AI button here.
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So basically, either you can ask these kind of questions, predefined questions, go for
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the vehicle performance, then I can see the vehicle performance data here, then I can
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ask questions here, or I can directly communicate with sustainability assistant here. So I can
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ask questions to my chat bot. So how can I reduce, how to say, my recycling rate, increase
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my recycling rate within my city, then I can even get responses to that. So this is basically
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what we are showing to our customers. But not all of them are enjoying right now because
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this is like special trial for some of them. So after we can be satisfied with the old
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results, then we are going to be launching to all the customers. So this is what we are
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currently testing with some of the customers. So for example, in that anomaly analysis,
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basically, whenever I go there, if there is an anomaly with my operation, I could see it.
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So anomaly detection is one related with the fill level sensors, because in fill level
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sensors, there might be two main challenges. One is the potential fire, because if there
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is, you know, the high temperature doesn't mean a fire, but increasing rapidly may mean
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a fire, for instance. So this is different because we work in the very hot geographies
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like Saudi UAE area. So the temperature within the metal container can be really high, but
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this doesn't mean a fire. So this is one of the anomalies that we can detect. The other
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one is the data, like fill level data can be problematic as well. Maybe it is, you know,
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there is a blockage in front of the sensor. Maybe there is a problem with the sensor.
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So those kinds of anomalies can be detected too. So this is actually going to like the
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fire is actually creating, remember the events. Yeah, this is actually creating an event alarm,
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saying that potential fire. So those events is actually created by the alarm mechanisms
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and anomaly detection for the sensors, which is actually our problem. It comes to our customer
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success team. There might be a problem within your sensor. Just check it manually. And if
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you confirm that there is a problem with the sensor, then try to solve it. If you cannot
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solve it, you need to maybe change the sensor whatsoever. Before this anomaly detection,
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our customer success managers had to check the sensors in a frequent manner. Like every
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week they had a dedicated time to check the sensors one by one. Then we said, "Okay, let's
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create an algorithm because after some time, we will not be able to check all of them manually."
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So that was the starting point. But the third, it's not anomaly detection, but it is actually
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performance management. Recently we launched it. Imagine you have a hundred tasks in your
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route, right? And your route length is eight hours. Like four hours later than you started.
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You expect to finalize 50 of those tasks. If you finalized so far, if you finalize 30
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of them, you're actually, you know, behind the expected schedule. And we are predicting
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that you are not going to be able to finalize all of the tasks of your routes. Then we do
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the calculation. How many tasks is going to be undone till the end of the day. Then we
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recommend the dispatcher, "Hey, there is a problem here in this route. Make an action.
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Take those potentially risky tasks and assign it to another route." By this way we can assure
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at the end of the route, at the end of the day, we are maximizing the performance of
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all the routes. Otherwise we can only show them, you know, "Hey, you have done 80% today.
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You have done 70% today. You have done 90% today." This is actually showing what has
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happened. This is also valuable, but our aim is to enable our customers to maximize their
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performance. It's not only show them how they perform. So instead of like them hitting their
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quota 80%, let's focus on creating performance impact outcome. Yeah. Would it be, so basically
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the way you are thinking about it, it's better off for a vehicle to hit 60% what covered
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the most riskiest cases in the route, rather than hitting 80%, but not covering those.
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Yes, definitely. So I can, it is not in my master demo account available, but I can send
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you a screenshot if you want. You can put them as well. You can share them too, because
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you actually put them in a, you know, red route layer, like on top. So the dispatcher is actually
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checking them and managing them, because I don't want to say, "Hey, Behrat, you didn't
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manage your tasks today." It's actually nothing valuable for me as a dispatcher. My aim is
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to maximize the fulfillment rate of my total routes. Right, right. It's not about who is
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performing how, it's about fulfilling all the tasks. So currently, we are suggesting to
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dispatcher, but after learning their decision-making processes, we are going to assign these risky
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tasks to automated selected routes without asking to dispatcher. So we will be actually
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managing all these operations by the system. Omarjan, I think if we talk at the end of
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this year, you're probably going to break out how you guys were not a robotic company. Now
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you are a robotic company. I don't know. I don't know. Maybe we need to think about it
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as that, because this is actually how we are trying to solve. Normally, the dispatchers
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are checking the WhatsApp groups, trying to understand what is happening, calling drivers
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like all the time. So instead of getting pictures on WhatsApp groups and calling other drivers,
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and managing all of them like super chaotic way, we had them to manage like in a calm
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environment, let them think wisely, manage it with data, do it afterwards. But actually,
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our system can learn from their activities so that they the system can implement at the
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end. But there is also this question comes, who is the responsible of this route management?
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Is it our system or is it the dispatcher itself? So maybe we will just ask, just confirm button.
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YOLO mode. You know, exactly. You only look once. You are getting to the YOLO mode sooner
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or later. And I think it's better off to for this kind of really like complex route management.
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I mean, you don't have to rely on YOLO mode all the time, but having a YOLO mode is better
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than not having a YOLO mode. I think so too. Yeah. Otherwise, it can be a little bit complicated.
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Otherwise, it can be a little challenging. So from the from the optimization point of
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view, it is also about estimated time of arrival. Yeah. Because some of the customers have time
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window, some of the customers of our customers have some time windows, they only say, hey,
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you can pick my waste from 9 to 10. So in order to make this route optimization, we
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need to take this into consideration as well. So we do the route optimization, like the
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sequencing, but we need to be sure that that time window should be satisfied too. So these
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kind of challenges are also coming and going. And obviously, we there are still some challenges
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that we are not able to solve, especially related with the map data. If there is no relevant
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map data, then you cannot manage whatever you do. So you need to have a proper real time
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map data as well. So many, so many variables and constraints. I got to say, I thoroughly
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enjoy this conversation as an engineer, as a UX designer, it has been a very hands-on
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conversation with a founder, a visionary person who's very obviously clear that you're like
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dealing with this hard problem on a daily basis, minute basis, hour basis. For me, it has been
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so refreshing to understand that what it takes, I mean, I just like, like listen to it for
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15 minutes, but the kind of hard problems you have to solve, and it's physics, some of them
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are really physics. You have to deal with physics, that is physics is very unforgiving,
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you have to, it doesn't matter if you have good will or not, it's very unforgiving. I
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don't know. I'm very impressed. I'm very wow. Thank you for being very like, obviously,
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this is, this is a business that you've been working on for 10 years, so everything is
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here. But thank you for bringing all this here because I think one thing that our listeners
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could get out with is that building meaningful businesses that solve hard problems is absolutely
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not a walk in the park. Yeah, yeah, definitely, definitely. Because obviously looking from,
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outside, the challenges can be seen small, you can think that you can solve it easily.
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Well, we taught the same way, by the way, we didn't think that it's going to be a really
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big problem, we thought it is going to be a simple problem that we can solve easily.
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It is not. Then we accept that this is not going to be a short journey. It is going to
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be a really big journey from the, from, from every perspective, by the way, it's not only
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technical challenges, like commercial, you know, relationships and everything. But if
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you enjoy the challenges, if you enjoy the problems and trying to solve it, that is actually
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kind of, you know, giving you the feeling of walking in the park. Yeah, actually, you
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know, you actually enjoy it. I myself is like an endurance sports lover. So you enjoy suffering,
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actually. I couldn't find a way, I couldn't think of a better way of ending this conversation.
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Thanks a lot, Ubu Munchen. Thank you. Thank you, Behrad. It was a lovely conversation.
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Thank you for listening to UX for AI. Join us next week for more insightful conversations
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about the impact of artificial intelligence in development, design and user experience.
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