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BIM and GIS for AECO Digital Twins

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설명

Our industry is changing, and the way we collaborate and deliver must change with it. This change is having disruptive effects on how infrastructure is planned, engineered, and constructed. Digital twins (or virtual representations of the real world, including physical objects, processes, relationships, and behaviors) are promising to be a solution to creating deliverables that provide centralized, purpose-built access to stakeholders along the design and construction supply chain. We are at a time when the distance between building information modeling (BIM) and geographic information system (GIS) is shrinking, and emerging workflows require sharing new system engagement views with more collaborators, including asset owners. Although some customers are seeing the benefit of a digital twin, others wonder how best to modernize their approach to reduce risk, increase transparency in infrastructure asset delivery, and bridge information gaps between project and operator participants.

주요 학습

  • Learn about addressing digital-twin workflow roadblocks with new ways of working.
  • Discover digital-twin planning strategies that will change business outcomes throughout delivery and into operations.
  • Discover cloud-technology efficiencies in BIM and GIS that streamline digital-twin workflows and outcomes.
  • Learn about using new solutions and methods to drive risk awareness and stakeholder engagement.

발표자

  • Clay Starr
    As Esri's Architecture, Urban Planning & Design Lead, I am responsible for setting the overall strategy on how GIS enables designers and planners to radically improve their response to the challenges they face, deliver data-driven results, and generate new and better outcomes through the geographic approach. The digitalization of our industry over the last 2 decades through the data-rich BIM process has laid the foundation for this next evolution in design and it's an exciting time to be part of the AEC!
  • Chris Harman
    Based in Atlanta, Mr. Harman leads the implementation of WSP's digital delivery offering by elevating existing services and developing innovative new approaches, including connected data environments and digital twins. Mr. Harman participates in the full life cycle of project delivery through all phases of planning, design, construction, and asset management. He works with experts in modelling, simulation, data management, systems interface, and artificial intelligence to provide enterprise-level strategy for clients, assisting them to realize the true benefits of their data and information.
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      Transcript

      CLAY STARR: Thank you guys for coming this morning, 10:30. Of my favorite announcements that they make on airplanes these days-- and it only happens rarely, but it always makes me laugh-- is the doors are closed, and it's something along the lines of, hey, if you're not going to Dallas, you're on the wrong flight. So I'm going to give you a warning.

      If you are here to see Ryan Reynolds, you are going to be disappointed. This is the extent of what you're going to see up on stage. But yeah, this morning, we are going to be talking about BIM and GIS collaboration, to support digital twins for the AECO industry.

      So raise of hands. How many A's do we have in here? OK. E's? Got some engineers. Some C's?

      There we go. Any O's? All right. We got a couple. All right. We're going to hit them all then.

      We've got a light crowd, which is great and fine. We're meant to have a conversation. So I think there's a-- is there a hand held? If there were, need to be microphones.

      Well, we'll get one to you. If you have a question anytime, raise your hand. Happy to interrupt and get your thoughts.

      So who are we? Let's talk about why we're all here. First off, because I'm speaking, I'm going to go first. My name is Clay Starr.

      I work for Esri. I'm part of our AEC team, and I lead our Architecture, Urban Design, and Planning group. I focus on Esri's key customers and working on building out business around architecture, urban planning, and design, et cetera.

      Anybody not familiar with Esri or GIS in general? OK, good. So I don't need to tell you who we are. You guys know about Esri. If you want to know more, stop by our booth later. Happy to have that conversation with you.

      But I do want to talk about how Esri views sustainability and how we talk about data and its use in support of some of the challenges that we face. And it's important from an Esri standpoint that you understand we view the world through these three very unique lenses. And we feel there's an overlap at any and all times between the social systems on this planet, the economic, and the environmental systems.

      And when you talk about integrating data sets, when you talk about CAD, or BIM, or GIS, or sensor data, whatever that might look like, the analytics and the ways we understand that information is geospatial. It is, at its heart, a geospatial issue. And so when we talk today, we're going to try to hit as much as we can about these three lenses.

      GIS as a software, as a technology platform is-- it's really just a system of record, a system of insights, and a system of collaboration for managing and applying what we're going to talk about today. And you can see there's lots of technical things up there, but happy to talk GIS. Happy to talk Esri with you guys later.

      But I really want to get to our panel and give these guys and ladies an opportunity to introduce themselves. And we'll start-- Megan Stanley, GHD, who are you?

      MEGAN STANLEY: Thank you. Yeah, great to be here today. From GHD, I manage our technical applications globally for the business. So I touch on Esri, Autodesk, and many other products across the business that do integrate and connect with workflows for our clients. So a great space to see the change that some of the shares that I'll talk about today in that lens of IS, GIS, but also what's happening in project space.

      My three portfolios includes the automation and emerging technology space. We do look ahead about what's coming, what can be integrated in the business. We support the collaboration technologies and also with our partnerships as well.

      For me, Yes, I actually have been in GIS a while. Since moving more into a technology leader role, I've been in GIS 18-plus years-- so really understand the workflows. And in particularly, came from an emergency services environment-- so fast-paced, standardization around symbologies, but getting information out to the field quickly to make decisions. And we've seen some big change in that industry as well. And a bit of a background in graphic design and art, so that's a bit of my personal flair that comes in that loves the geographic approach.

      And just a bit about GHD-- we are a global firm. We are in three economic regions from our UK, Middle East part of the business, to our Americas, and also our APAC side. So we are quite broad. We've got about 12,000-plus people and centered around a lot of the markets around environment buildings. We've got sustainability, roads, transportation, and so on.

      So there's lots of connects into the different aspects of supporting clients and projects. And some of our strategic pillars that we've been focusing on from what we're seeing around community resiliency is around that future of water, energy, and future community space. So a lot of our projects from a horizon perspective are looking at that forward-looking piece, but we are working in connecting globally on many projects in that spectrum. So thank you.

      CLAY STARR: Yeah. Thanks, Megan. Just a quick question to get us all warmed up. When we talk digital twins-- we've heard this talked about obviously ad nauseam for a few years now-- talk a little bit about how your view-- and I mean maybe your specific or maybe even GHD's view-- how has the view of digital twin maybe changed just in the last 12 months?

      MEGAN STANLEY: Oh, look, it's an ever-changing pathway. We've heard it quite a lot in industry in the last couple of years. But for me, I-- and it's something I resonated actually with what Andrew had said yesterday on main stage is that technology is moving at a fast pace. We've got a lot more data coming into our systems or consuming and creating from, which includes a lot of different technologies and integrated technologies. I'm seeing a lot of integration across technologies now as we move into the digital twin space where it's more of-- I see it as a modular connection into the outcomes you're trying to achieve for your clients.

      So I think we're also seeing our clients are becoming more savvy. They're asking bigger questions around data. They're wanting to get into the mix of moving it around, and it's not just static anymore. It's actually, what does it mean to business aspects of the business or even the people side?

      The human-centered approach I'm seeing come through as well. What does it mean to the people and the communities? What impact is that making? It's not just about the tech. And we've seen this for a long time, but we're really seeing that human-centered design come through, especially from GHD. There's a lot of focus on that space for client discovery of projects in that area.

      And I think we're seeing the emergence of cloud. So that collaboration across regions is supporting what-- if we are building that digital ecosystem where people do need to connect in different regions, I'm seeing a lot of questions around cloud security, data flows, but then how do we connect and collaborate the skill sets across the globe to really get the outcomes that we need? So some of the key things that I'm seeing in regards to a morphing of what that means to digital twins.

      CLAY STARR: Awesome. Thank you, Megan. Let's move on to Chris Harman, WSP.

      CHRIS HARMAN: Morning, everyone. My name is Chris Harman, Technical Director of Digital Delivery and Innovation for the WSP Transportation and Infrastructure US Business. And that is a mouthful. I apologize.

      I spend about half of my time working with internal clients or internal teams trying to change the way we work, instituting new strategies, new process, new workflows, building out technology. And then I spend about half of my time working with external-- so actually working on projects, working with clients, doing as much real work as I can get my hands on, which is unfortunately not a lot. So I still manage to be a BIM manager. I still manage to get my hands dirty enough to know what I'm talking about, but I make it up as I go along, as you'll see.

      And WSP, I think-- I've been here two years now, so I feel like I'm starting to understand. If you follow the industry, we are now the largest AEC firm, and most of our work is design. And you get that through acquisition. And one of the things I really like about WSP is that they have just a really diverse set of clients, and deliveries, and sectors doing everything.

      So if I ever need something, I can usually find it. But we don't like to say we're the biggest. We like to say we're leading. We want to lead.

      And I think that that's something that we're really trying to lean into over the next few years. So it's an exciting time to be there because it doesn't feel so big. We're just trying to get stuff done.

      CLAY STARR: And I'll ask you the same question I asked Megan around your thoughts around digital twins conceptually. How is that altered or changed over the last year

      CHRIS HARMAN: I mean, if you're familiar with the Gartner Hype Cycle, like the rising expectations and everybody says it's going to be the next big thing, and then there's the trough of disillusionment when everybody's like, wow, this is just never going to happen. We did that with VR/AR. And then there's the-- it moves back up and becomes part of just day to day and stops being a thing we even talk about.

      I'd say we're definitely in the trough of disillusionment. I don't know what the room feels, but I hear it from our clients a lot. They're just sick of it. And I'm going to be a broken record.

      I'm going to go Jeff Goldblum, Jurassic Park. I'm not going to do a definition of digital twin, but I am going to say, we were so obsessed with what we could do, we never stopped to think about what we should do. We just let the dinosaurs loose, and everybody's mad at us.

      And I think the problem is we never really did let the dinosaurs loose. We were just like, we could make dinosaurs. Do you want dinosaurs? And we'd be like, yeah, cool. And then we're like, well, actually, it doesn't work that well. And then we're left holding the bag.

      So I'm going to touch on themes of that throughout, but that has been what I've been coming to. And not that I'm not still bullish on it, but I'm starting to say, I don't care if you think what I'm describing should is not necessarily a twin or what you're describing could be like-- I don't care. Let's just talk about who's paying for what and how we're going to give them that.

      CLAY STARR: I thought your Jeff Goldblum quote was going to be more of the positive, like life--

      CHRIS HARMAN: Finds a way.

      CLAY STARR: --finds a way.

      CHRIS HARMAN: Digital twins find a way. I'll do that next time. I hadn't thought about that, yeah. I could probably string together a set of GIFs for this, yeah.

      CLAY STARR: All right. Mark Mutter with Arcadis.

      MARK MUTTER: Thanks for having me, Clay. I got no dinosaurs. Sorry about that. But we'll get on. So Mark Mutter, work for Arcadis as the Director of Digital Twins. My time is across three areas. One is working with clients to solve their problems.

      So how does a digital twin help them solve something? A second is building our products or solutions that we can take to clients, a standardized offering. And the third one is similar to what you were saying-- building out capacity capability, playing around with a couple of proofs of concepts, seeing what technology can enable us to do.

      Probably a little bit on Arcadis on the next ones. For those that aren't familiar, we are a Dutch firm, about 150 years old, 36,000 people across 70 countries. Again, if you've got a question about some topic, we've got a ton of experts, which is always really helpful to be able to delve into, across a couple of areas-- so places. So this is the built environment-- so buildings, mobility, helping people move through cities and between cities.

      And resilience is really picking up on the sustainability and climate change resilience. And recently, we've added a fourth one-- so intelligence, helping our clients. I mean, it's a complex topic, this one. And it's not a surprise that there's help needed on our client side as well. And how do we adopt this? What do we do with all of this new information and new capabilities that are coming our way? So that's the fourth area.

      CLAY STARR: And I know, Mark, you've been the Director of Digital Twin now for several years. Full disclosure-- I worked for Arcadis until about two years ago, so I go way back with Mark. How has your view of this topic change just in the last year or so?

      MARK MUTTER: I really like the trough of disillusionment example is there are so many definitions of digital twins. You ask 10 people, you'll get 11 answers about what a twin is. So I read them, and they make sense to me. I understand the words that are in there and how they come together, but I don't think it helps anyone really understand why do we want one. What are we going to do with it? So I think a similar vein is focus on the outcome. What benefit is it going to achieve?

      So we're starting to move it to something much more simple. So what's the use case? What's the problem you're trying to solve? And that will define a lot of what you put in place around a digital twin, what you talk about. So for me, the understanding has moved.

      It's a data model about something in the real world. And it's got an ability to bring in data about something, and that's it's secret super power. And how you do that and how you define it it's really going to depend on the problem you're trying to solve.

      CLAY STARR: And I want to remind our audience. You guys ask questions any time. You've got a panel of experts up here who live and breathe this topic. So raise your hand, interrupt me.

      It's not a big deal. But I do have some prepared questions. And it's interesting. You all three talked less about technology and more about the job to be done, right? These outcomes you're trying to achieve.

      And when we talk about digital twin, I mean, just in general, we generally maybe don't agree on the actual definition. I don't know that we need a unified definition.

      But I think what we agree on is that it's the future. And ultimately determining what that future looks like is really the question that I have for you guys. And that is why are digital twins? Why is this acclamation and amalgamation of all of these data sources-- why are they necessary to achieve the kind of outcomes and goals your clients are wanting? Maybe I'll just start with Chris here in the middle.

      CHRIS HARMAN: Yeah, I mean, I think to what I said earlier, the outcome is what it is. I'm not going to do a case study, but we did it at Geo-- Geodesign Summit, this year, present a big case study on a digital twin in New Zealand that was basically an asset management optimization platform. And I really have been pushing us to just call it an asset management optimization platform, not call it a digital twin, because that's the outcome.

      That's what we sold. That's what they asked for. That's what they got. And when we call it a digital twin, the expectations grow, and the outcomes could be anything. And we usually get judged poorly not on the quality of our work, but on how well we met the expectations we set at the outset, right?

      So sure, we can do anything. It can be anything. And so the outcomes is everything. And digital twins is a great way to wrap it up. It's a great way to describe the process that we did in delivering the asset management optimization platform.

      And that is a digital twin in a sense. But we don't call it that. We call it what it is. And that's the outcome we're trying to achieve.

      I think that another thing I'll talk more about in a minute is the difference between an endpoint solution for a client, an asset management optimization platform that works for one client in one place. You start with a data set, and you combine it with some stuff and move up. That's that is one thing. It would be much more convenient to have built across several sectors a single platform that would do it in multiple locations.

      And then it would be much easier to describe it as a digital twin because it can be applied to multiple places in different ways. But when we go straight up to that end solution to that outcome, it makes it hard to then just say, oh, it's a digital twin, and it does everything because, really, we've built it for that. And that outcome is important, and it's actually very valuable. So let's just focus on that.

      CLAY STARR: Megan, you mentioned a minute ago the increasing maturity and the savviness of clients. And I'll put the same question to you. Why is this concept-- why is it necessary to drive the kind of outcomes that they're hoping to achieve?

      MEGAN STANLEY: Oh, and I think I'll actually touch on the concept that I raised around that connectivity piece. From what I'm seeing with our clients, we are continually needing to connect the right skill sets across our business and clients to the resources and opportunities around technology, but also data. So I feel like there's a connectivity piece here to achieve those outcomes and to get the benefit of, yeah, the skill sets globally and also leveraging technology across borders.

      So I think the connected data ecosystem really sings true when you're thinking about outcomes. And I think the storytelling that we're sharing today, but also, we see it in industry as well, how are each of us connecting the dots on how we apply digital twins to an outcome? Whether it's an environmental outcome, or if it's a regulatory outcome, or if it's an asset management outcome, it's great to hear the stories around how we're all attacking that problem and sharing that knowledge from each other. So again, a connected ecosystem of stories, but also, when we're trying to achieve that, I think that's also an important piece.

      And especially as we've got some pretty challenging problems globally that we are all want to achieve, whether it's resiliency through climate, or it's connecting communities on large pieces to support community living and things like that and, also, the energy space. There's some big topics out there and I think connecting us. And how we can better connect technologies is a big piece.

      CLAY STARR: Mark, are Arcadis's clients-- are they asking specifically for these digital twins? Or are they asking for something different? And speak to maybe the necessity of what that difference means to them.

      MARK MUTTER: Yeah. So we're seeing more and more RFPs or opportunities coming out describing digital twins specifically. But I think similar story is you describe, we're going to come with a digital twin. There's a glazed look across the client's face, and there's a bit of "this sounds expensive." And you try and bring along, team members in your own business.

      And it's like, digital twin sounds way too complex for what we need. So I think one of the things that we've been trying to refocus for the space of digital twins is to talk about the outcome. What's it there? What's it going to deliver? It's going to increase resilience.

      It's going to make more cars go through this intersection. It's going to make something safer. And you may be using a digital twin for it. No one's describing we're going to make you an Excel solution.

      You're describing the solution. In a similar way, you've got to just let the tool be in the background. That's what we're able to bring and offer. And focus on the outcome. And I think that's where some of the trough of disillusionment or the adoption is isn't quite there because it's been a technology-first perspective before, where we're putting a digital twin in place, and we're not focusing on the outcomes.

      So it's not delivering a good benefit. So people haven't had a good track record of seeing the digital twin was implemented and, wow, look at what we got for it. It wasn't focused on the outcome enough. So I think, yeah, being able to reshift it.

      There is something about digital twins is I'm a massive believer that they are necessary for solving clients' problems, or sustainability problems, or Insert anything there. It's a technology that offers something that isn't there otherwise. It's able to bring in data and plug the missing data gaps that you need to solve the problems. It's got loads of really strong things that are just getting missed, I think, a little bit.

      CLAY STARR: I feel like I should retroactively retitle this session demystifying digital twins because everyone has this very unique approach to it, which is not let's define it, and then let's build toward it, and then let's sell it-- although all those things are possible-- but really focusing, it sounds like, on those kind of outcomes and really-- I don't know-- almost translating what the market, and the industry, and even Esri and others are saying about digital twins. And when you put boots on the ground, what are we really trying to accomplish? And with that, obviously you guys know this, I'm sure, that the problems of digital innovations and transformations largely are not technological, right?

      Technology isn't the barrier that it once was. Oh, well, it's a file format issue, or it's a VPN, or whatever. The problems we face are largely cultural or even structural inside of our organizations.

      But we understand that the need to bring these data sets together is increasing. So I guess, my question-- let's start with Megan this time. I'm just curious on your thoughts on this question in terms of-- and I use GIS and BIM because those are the two big data sets, this horizontal data set and these vertical data sets that have existed for decades. But why those? Why is GHD bringing those together?

      MEGAN STANLEY: Yeah, look, and I love that being in the GIS world for so long that we're really seeing the connection here, both from a skill set perspective, but workflows and how we are delivering projects with that integration of both location data and the LEGO blocks of the important asset information around the BIM side. So yeah, I've been fascinated to-- I've been talking to a lot of our colleagues across GHD. And I wouldn't say I'm the sole expert of BIM and GIS connection.

      We've got heaps of a lot of different leaders and technical leaders across the business that are looking at different ways of integrating this. And I think we said it earlier. GIS brings location to the project. It brings context to faster decision making. You're not going backwards and forwards with file formats to try and get a location-based question answered that actually might move you faster through that asset life cycle of the project.

      One particular example-- and I did bring it up mid this year at the Esri conference. We had some great work that I'm seeing both from a skill set level, but the power that it's having to the client. We're working with a port client in our APAC business. And we are looking at integrating workflows with our auditors construction cloud and the GBIM space.

      So we're starting to build this stakeholder opportunity essentially for visualizing data and having some governance workflows around particular parts of the workflow that will help the decision making on that port. And we're seeing some real evidence of that being quite a success. And I love that there's one particular person that's working on that project that is really harnessing the GIS and the design side and pivoting what used to be quite a big gap between it's just a GIS map, or you do your design.

      We're actually starting to see these integrated workflows that you're actually starting to see the benefits to the client side in the stakeholder piece. So yeah, I think that working through ecosystems and sharing stories in that world, I think, will be really impactful. And that's just an example of what we're seeing at GHD.

      CLAY STARR: Yeah. Working for a digital mapping company, I hear location. And I hear you say it's very important, and this is why I want to georeference my [? CAD ?] and my BIM. But Mark and I have had some interesting conversations where maybe you take a different approach-- I'm curious-- on-- because when we talked about BIM and GIS, you said, yeah, but what about all these other non-BIM or non-GIS data sets? So talk about what Arcadis is doing and how you're leveraging data and why you're bringing it together.

      MARK MUTTER: Yeah, so Esri and Autodesk, you guys are making it easy to bring these things together. It's been the launches that you guys have gone through this year. So we can bring these two things together, and that's great. I think the thing for me is it brings context to everything else. Much of it's focused on the asset and the asset health.

      So How's the asset performing? Is something broken? Is something worn, et cetera? How much energy has something used? It misses some of the what's the asset there for? What's the process or the thing that it's supporting? The roads there or the bridge is there to move vehicles. And how well is it doing that? Your building-- it's got some objectives like a conference center.

      How well are people moving through it? So I think being able to bring these two things together and the GIS element means the context to it is allowing much more-- not just a focus which the AEC industry tends to take about the physical asset itself, how that's performing, but how it performs in enabling what it's there to be doing in the first place. So I think the GIS contextual element just makes that even more applicable.

      CLAY STARR: And, Chris, I know we've talked about the idea of-- when we talk digital twins, I know you and I talked specifically about how location was foundational. Maybe talk a little bit, like, what does that mean to you in that place we talked about?

      CHRIS HARMAN: Yeah, I mean why are we bringing GIS and BIM together? Because we want to know where it is. Next question.

      CLAY STARR: [LAUGHS]

      CHRIS HARMAN: No, I'm just kidding. I don't ever do anything that fast. I'm just kidding.

      No, I was getting off the airplane. And a guy behind me decided to push past, which is totally wrong, by the way. You're not allowed to do that.

      And it annoyed me. And so then I pulled my suitcase out and wasn't paying attention and smashed myself in the face and broke my glasses a little bit. They're all bent. This is a real story. I'm going somewhere with this.

      CLAY STARR: [LAUGHS] You're just complaining.

      CHRIS HARMAN: So I went to the glasses website where these came from. And I searched for certified authorized repair places in Las Vegas. And it gave me a table.

      Ugh. I had to copy and paste that into Google Maps. That's the worst.

      Nobody wants to work that way. That's not how we think about things. I don't know one client that's like, yeah, could you just give me a table? And then we'll just figure it out.

      Yeah, it's fine. They're not like that. That's not the world we live in.

      And I think one of the issues we have is that geolocation should be relatively agnostic. We should all be able to include where a thing is. If we're building things that are important, then we should know where they are. And that should be translatable across different platforms and software vendors.

      And so Esri gets credit here because they've been just like us with this very disparate data sets coming in at them. And they're just like, well, just put in a table and tell us where it is, and we'll put it all together in one place. And I think that's what our clients want.

      I think the other answer to this is because GIS systems are prevalent across all of our clients, especially in transportation space. They operate huge assets across thousands of miles even-- state departments of transportation, port authorities. And I can't do that in Revit. They can't, right? It's not possible. So it's really important that we include that.

      And to answer your original question, I've started just being like, if you're not including geolocation information, I don't want to spend effort on it. Figure out a way to put this in the world, and then we'll talk. And I think that's maybe not the best approach because there's lots of problems we could solve without worrying about that.

      But I like the way you put it. And one of the things we try to do in the asset management space is plan projects better, so we don't go fix one thing and then, a month later, go fix something else right next to it. If you don't know where it is and you're basing your decisions on condition, those are the kinds of decisions you make. And that's not how we should be operating.

      CLAY STARR: Yeah, that's great. Yeah. We say in Esri, everything is somewhere.

      And then there are impacts to the things that exist that maybe aren't related to it exclusively existing. But there are environmental, and ecological, and other factors at play. You're not going to design a house meant for Florida and stick it in Las Vegas.

      I heard someone say this recently. He said, they did that-- I don't know who they is-- they did that. And year 1, they were an architectural record. Year 2, they were in court. So the location is something that's critical to how we make these decisions.

      OK, yeah, so let's talk. We brought this data together there. And I'll go back to Mark here. We brought it together, right? So let's talk. I want I want to hear the good and the bad or the good or the bad.

      Let's talk about some improvements or maybe even some challenges or barriers that have emerged when it comes to, how do I integrate these data? These are sometimes rather large data sets. Arcadis is a big company. You've got all these regional issues and cloud. What are some of the things that you've experienced in that integration?

      MARK MUTTER: I mean, just data integration is always going to be massively difficult. And so just when you think you've got it worked out, there's a different situation. Every client, every location's got some different data that's going to require you to do something else. I think that's one of the largest challenges is being flexible enough to be able to manage what might come at you in a different way.

      I think that, going back to the user interface-wise, maps are a really natural language, natural way of engaging with the data and the information. It's brilliant. So bringing extra context but adding data to that, it's good. The challenge is, so what? So what does that mean?

      Now what? We've brought the data together and fill out the blank. There's got to be something off the back of it. And I think it's harder to find what's the reason.

      I want to go and get my glasses fixed. What's the closest one? This is something natural in much of our lives. But when we come to these big schemes or big plans, we forget some of that.

      CLAY STARR: And, Chris, what about you? I heard what you said a minute ago, and I just want to-- I'd like to focus on the challenges you guys have seen in order to achieve this. But if there's some positive, I'm sure there's some--

      CHRIS HARMAN: Yeah, I'm going to try to be positive. I feel I've been real negative. Maybe it was that guy. I just need to let it go. It was definitely my fault, but it's nice to blame somebody.

      So I think challenges are data schema, right? And we spend so much time trying to relate x to y, and this apple is that orange. And it's this never-ending process. I think an improvement that I'm seeing right now-- and I don't have a proof point for it yet, but we all know it's there. We just won a contract with a large DOT to provide digital delivery and a roadmap for them.

      And one of the first-- well, they want to do a proof of concept because they wanted to check scour data, flooding, overtopping for all their culverts and bridges. And this data exists in reports. And we were like, OK, well, let's go through and find out what those things are, and then figure out a way to build a table out of that, and then put that into your GIS system.

      So that way, now you're not having to scroll through a 100-page report for each crossing, but you can just go to that crossing and click on it and get the data that you want. And they were like, oh, that's fantastic. You're going to revolutionize everything. And we're like, great.

      So now we'll just start figuring out how to build these tables and we should call things. And we were chasing this last year. And I mean, as everybody-- we haven't said it yet, I don't know how we made it this far. But I was like, what if we just took all those reports and put them in a bucket and set a large language model on that?

      CLAY STARR: Yeah, I was just thinking.

      CHRIS HARMAN: Right? Like, why-- our problem has been for so long that challenge of building these data sets and making them talk to each other, and pulling what we need out of it, and figuring out how to dictionary this to that. And we spend so much time doing that. And I'm like, well, what I have is a big bucket of unstructured data.

      And then suddenly-- and it has not gone through a trough of disillusionment, by the way, because artificial intelligence, those large language models, they went straight up, straight down, and then now they're just a thing. Before we could ever come to grips with it, we're now suddenly just like, oh, I guess GPT can just do everything. It's just become this thing.

      And so the improvement-- but I don't have a proof point for it yet, but we're trying it on this project-- is that I don't have to structure all this data. I don't have to do this anymore. I don't have to spend all my time arguing with the client about what they call things and begging them to define this stuff because the language model will pull it out. And this is where I see a lot of advantage for us in this space because we've been real negative about how it's difficult to put these things together, but now we're into this new era where the more junk we can put in the bucket, the more value we'll pull out of it, which has been a complete opposite up until now.

      CLAY STARR: Yeah, the "garbage in, garbage out" mentality over the last couple of decades has been turned on its head because now you just can chuck it all in there and ask interesting questions. Megan, what about you? What is GHD seeing in terms of challenges or improvements to integrations?

      MEGAN STANLEY: Look, I think, from-- I think there's a people side to this as well that I'll touch on as well as the technical that we're seeing a lot more thinking beyond teams. So if you're in a team, it's about team of teams. It's beyond the silo of where you sit. So if it's a GIS team working with a design team, and the planning team, and the whole-- what is the broader ecosystem of the data sets that you need to work on?

      So you're bringing teams together. So I'm seeing an opportunity there. And I mentioned one before where we are looking-- we're doing some great between-team type workshops. And they're being led by some young professionals too, which have some really great ideas.

      So and they're sitting with this cross skill of both design and GIS. So they understand both worlds, and they're coming up with these integration workflows between these technology integrations that are now becoming available. So yeah, I think that's been a great thing to see from an improvement over time and just harnessing that across the business.

      Something else as well that I'm seeing-- I mean, my role, I work very much within the enterprise. I've had previous roles where I worked client-facing delivery through GIS and building the teams and strategy. But now, having more of an enterprise approach, we're looking at ways of-- it's interesting. We're looking at how things are-- and this is for any client organization-- how you structure your taxonomy on what you call certain even data sets within your business.

      So what does that taxonomy structure look like? And that sets up the foundations for future efficiencies, and governance, and automation workflows between teams, as I mentioned. So I think that's been a challenge and an improvement across the business. But I think a big piece here from an integration side is there's a people aspect to this that I will talk about a bit later on.

      But it's about connecting the people, mindsets. We've got a cultural focus point at the moment at GHD. We call them the ways.

      But there's one particular one which I'm quite passionate on is about data, the data way. And it's linking about what are we trying to achieve from our client's point of view, our future orientation of where we're going with data, but also how we scaling and making things more efficient. So keeping that top-of-mind approach when we are talking cross boundaries is being quite important cultural shift that the business and for us supporting clients on as well around integration.

      CLAY STARR: Yeah. We mentioned earlier about these cultural barriers that have existed. We've been talking about breaking down silos for a couple of decades now. And those silos, we thought, were just between the A and the E, right?

      Or the C and the E. Those are the silos we had initially imagined. But really, I think what we're talking about is silos that exist inside of our own organizations, where the inability-- not even the desire is there, but it's the inability to understand that it's even possible to make those connections internally, to create those more efficient workflows.

      And we are finding-- and I'm seeing in the customers that I work with the desire, the vernacular, it exists. It's just now giving them the tools to understand how to go about doing it because you said, technology is isn't the issue, right? It's getting into your people.

      And, Mark, I want to ask you about-- with that in mind, we talked a little bit about how your view on digital twins has maybe evolved or changed over the last several months. But let's talk about your overall adoption strategy. How has your digital twin adoption changed? Or how is your overall strategy around them? What differences are you are you seeing just from maybe a more cultural business-driven sense?

      MARK MUTTER: Your question at the beginning, how has your opinion or thinking of twins changed in the past 12 months. And I'm thinking now that probably the next 12 months is going to be way different compared to the last two or three years. I think there was another buzzword just to introduce-- so artificial intelligence, or machine learning, or something else. I think one of the core capabilities of a digital twin is providing the data for AI to burn is, in many cases, you don't have the data sets required for machine learning or all these clever analytics tools to be able to really benefit you. And so twins is a good way to standardize, automate, structure, or bring in unstructured data to be able to do that.

      So I think we're shifting to try and find what the right data is to gather. I think 40 petabytes of data was mentioned yesterday. It's like, what can you mine from that? And there's still going to be big gaps that you needed that you wish you had. And that's where twins, I think, on an AI strategy can really add some fuel to the fire. You can't get that going unless you pour some data fuel in there.

      And the other part is just, I think, the impact on resilience and sustainability. Twins, for our industry, it's going to be a big opportunity area to be able to understand how something is performing in not exactly real time, but at least be able to know what's happened for my portfolio or my specific assets. I think it's just a huge opportunity. That's somewhere that we're refocusing us on.

      CLAY STARR: And, Megan, since you did bring it up, I want to come to you and get your answer to this as well. Are there other things that have changed from a corporate standpoint around how you guys are adopting your digital twin, how your strategies toward them? How are they shifting?

      MEGAN STANLEY: Yeah. I mean, I, again, mentioned earlier at the start we're seeing a lot more savviness from our clients around working with data and understanding what that means. And I think, for us, we're quite conscious of-- when we're talking about a digital twin, there's a spectrum that gets you into a real autonomous or future vision scenario planning environment. But to get there, you need to be visualizing or just connected.

      And to get to that spectrum, there is a pathway. And I think we've been quite conscious of understanding our clients' maturity levels of maybe it's about building that data strategy to set up that foundation and to actually share and set them up for what that vision could be in the future. Some are even more advanced.

      So it's being aware of that spectrum. And I think that's matured the thinking. I think it's changed, but I think it's matured. And I agree. I think AI is going to play a big role in changing workflows again and how we connect and also what new ideas get generated for our connected teams around that space.

      CLAY STARR: And, Chris, because you started the AI conversation, I want to come to you on this question, but I want to ask the audience first. Being in the design-and-build space where you guys sit, how many of you right now are thinking of your data as an actual asset? This idea of time, and materials, and producing production, PDF documents effectively excising 95% of all intrinsic data so that it can be emailed via PDF-- if you're not thinking in terms of data as an asset, if you're not thinking about how you're changing your approach to not only how you're delivering but what you're delivering-- I think that's the challenge that I want to put on you to start thinking about, well, what impact do these technologies, and these new requirements, and the savviness of our clients as they increase?

      What are you doing to prepare? And if you're thinking technology-- and this is not of the panel-- that's just going to let you do more, faster, then there's a race to the bottom at that point-- so thinking about new ways, new services, new delivery models. So, Chris, you brought up AI. And I'd love to hear more of your thoughts about that, but maybe in terms of its your broader strategy changing. And what are you seeing in WSP moving forward for in the next 12 months?

      CHRIS HARMAN: Sure. I was prepared to talk about one thing, but I think your data acquisition is important, so I'll try to get there at the end. Information property has become a big discussion.

      I don't know if you remember me saying at the earlier. We're so focused on those single endpoint solutions-- building that digital twin at the very top that solves a problem-- that we found ourselves rebuilding it for every client. And if they're paying us to do that, if we build some widget whizzbang, then they own it in a sense, depending on what they wrote in the contract.

      And most of the time, it's pretty broad. And so what I'm seeing is that we don't have a lot of awareness at a project management level across our organization to just say, hey, you're interested in this outcome. Everything that comes out of this in the structured end form is yours.

      The way that we produce that is ours. And that's why you hired us, and it's important that you hire us to do this for you. But this is our piece.

      And then it's important that when we develop that piece, we're not using their dollars to do it. And we have to be clear on that. And so we're trying to have this conversation across. And it comes down to that. I think there was an AEC Advisors publication from 2021 where they asked 300 CEOs all these questions. And one of them was, how much of your business do you expect to come from digital by 2030?

      And the answer was about 47%. From a completely new revenue stream-- we're not selling ours, we're not consultants, advisory. They're expecting to develop some sort of digital thing that our clients are going to be paying for by 2030 that's making up half our revenue. Well, let me tell you, as the Director of Digital Delivery Innovation, I don't have that right now. And if you want it by 2030, then we need to start working on it.

      And so the organizational change that I'm trying to affect is to have us stop thinking about those endpoint solutions that go all the way up and figure out a way to pay for building some kind of platform that would let us do the same thing in multiple places and get that same solution, which is hard because in an industry where we exist, we build on hours. And so internal investment is very difficult. I can get 50 grand to pay somebody to dev this thing. I cannot get 50 grand in unutilized time.

      And you're not just going to buy this. You're going to have to invest internally. You're going to have to pay somebody to manage this thing.

      And that's the internal challenge and the transformation that we're seeing internally. What we're trying to push for is, OK, well, if we need a thing, the widget whizzbang, we're going to have to figure out how to build it ourselves and then figure out how to only sell the outputs from it. And that's a challenge.

      And from an acquisition standpoint, I mean, we were brainstorming widget whizzbangs yesterday, and we were saying, what if we built a sustainability tool that would look at rents in a city and give people the ability to pick where they want-- you input what kind of office space you're looking for, and it gives you the different versions? You build it yourself, or you outfit this one, and it gives you all that. And everybody's like, well, you know, where do we get all that data? And I'm like, well, CBRE probably publishes all this right now. We could scrape that today.

      And if you've been watching, Reddit have turned off the taps. Everybody is quickly turning off the taps to their internal data. So data acquisition, I think, is important. And we're trying to think, what data is important to us? There's so much that's out there that's important to us in AEC space.

      If you're not making a run on it now, if you're not going out and grabbing it, it's not going to be there forever. CBRE is going to become wise to it. They're not going to want their clients to pay you to figure this out.

      They're going to turn it off. This is across all industries. We've got to start thinking about that and pulling it in.

      CLAY STARR: That's an excellent point. Do you have a follow up?

      MARK MUTTER: Yeah, just on the data acquisition, there is something about abstraction is really important on this digital twin space. So what data do we keep after a big design job? So a railway station that's underground-- we've got the BIM drawings that have got the threading on the bolt that holds the panel to the tunnel wall. Do we keep that? Do we turn that into a digital twin? Is that useful for the end use cases? What are we going to do with it?

      And if it's not helpful, keep it somewhere, but don't necessarily put it into a twin. It's going to slow a lot of your model down, a lot of its performance and increase the cost as well. So abstraction is really key.

      Figuring out the data that you want to acquire is really important, whether that's scraping or-- that's the key of the twin is you can put sensors out or different devices, whether that's satellites or whatever else, to go and get that data. But being clear on it is really important. Otherwise, you could weigh yourself down focused on data.

      CLAY STARR: And this is one of my prepared questions. And I want to open it up to you guys in a moment before we get to the last one. But this concept of abstraction-- is this something you guys-- WSP and GHD-- have you considered as-- because when I hear abstraction, what I'm hearing is cultivating, curating some level of data that seems to be important, either organizationally or, yeah, for a particular use case. Is this something you guys are considering?

      CHRIS HARMAN: Megan?

      CLAY STARR: Yeah, look, when I think of that, I'm thinking of, yes, we have a lot of data that we generate. And it's only becoming more and more over time, exponentially increasing with the level of detail. And what is the authoritative data that does need to go to an asset owner or needs to go to the end state to achieve the outcome that they're trying to achieve? So I think we are looking at tagging data and setting up data management-- well, essentially, it's already set up, but really harnessing that data management office essentially to look at how you manage data both from an enterprise perspective, but also how we support and talk to our clients about that space as well.

      And one other thing I will add is if you are moving to cloud or if it's something that is-- where is data stored? What does that data management life cycle look like? So understanding archival needs. Like you say, how long do we keep it? How large is this data set? I mean, it is an important asset, but I think we need to categorize that asset to make sure it's got cost optimization added to it. So there are a few things I think about and what we think about. Yeah.

      CHRIS HARMAN: I don't on this one. I think I feel like our-- it feels inefficient right now. It feels hard to abstract and make usable and institute policies. We do a lot of dictionary work. We do a lot of trying to understand how to relate different industries or regions together.

      And what I don't see is I haven't yet pipelined that into that value. It tends to be doing it more on a much smaller scale. It feels like it should work, and we keep trying.

      But it just-- it's not getting there. I don't know. Maybe I'm doing it wrong, but it does seem hard.

      MARK MUTTER: I've been getting into trouble. It's not about getting rid of the data. So you want some of that asset data.

      If you've got a nuclear power station, you want to know where the panel is and how it's held together. That's good. But it doesn't mean that you need it in a digital twin.

      Great for an asset management system. Keep it, know what's there when it was done. But does the digital twin need that information for you to get the answers out or solve the problem? I think that's what I mean by abstractionism.

      CLAY STARR: Yeah, that makes sense. So before I get to my last question, I do want to make sure you guys have an opportunity to ask questions of the panel if there's a microphone. Just raise your hand, and we'll get you before we move on.

      CHRIS HARMAN: It's just us in here.

      CLAY STARR: We've got about 10 minutes left, yeah. Any questions out there? No? Oh, here's a question. Thank you.

      AUDIENCE: Hi. First, great discussion. [INAUDIBLE] that I've heard, so thank you. Oh, thanks. OK. So my question is, have any of you employed the use of Forma in your designs?

      CHRIS HARMAN: I can.

      CLAY STARR: Yeah, please.

      CHRIS HARMAN: Yes. And actually, I went to a GraphQL presentation this morning. I don't know if you're following that, but the old REST API connections and Forma and Forge-- they're trying to change to a graph database and convert everything to nodes. And I'm so excited about it. And I told you I wasn't going to be so negative, but it's for Revit.

      I'm from transportation. And they are not helping me. So I mean, kind of yes. And I think it's-- let me just say-- I'm going to say this because I asked about, like, I don't know safe harbor or whatever.

      So I asked, well, because we know what Autodesk are trying to do. What they want is for platforms like Revit, Civil 3D, Infraworks-- all of their AEC platforms sitting at the top and to build that graph database below. And Forma will be this push and pull for that with the viewer and whatever else you want to put into it.

      Imagine that data model is not-- it's file agnostic. It's not and RVT. Just a data model down there that you can reach in and do stuff with. So what they're doing is they're pulling all that data in there, and they're letting us query it, manipulate it, pull things out, and do really cool things. So our most common Forma/Forge example, is we hired a dev, and we sat them next to some MEP engineers-- like, old-school New York City MEP engineers-- and gave him all of the code books and let him just sit and watch over their shoulders what they were doing.

      And he would just be like, why are you doing it that way? Why are you doing it that way? And he would just build it in Forge-- everything, build it in Forge, build it in Forge, build it in Forma. And it was very powerful for them because they started to rely on this person to automate so many of their code checks, so many of the things they were doing because they were looking at that data model underneath. How many electrical outlets do I have in the building? What's the spacing for electrical outlets?

      What's the code require? Show me where I'm not meeting that. Well, I'm not going to scroll through drawings. I'm going to dev this in Forma or Forge.

      I'm going to build a viewer. I'm going to build a reporting tool. I'm going to pipeline this in there. I think it's super powerful.

      What we need them to do, though, is it's built on Model Derivative Revit schemas. And I think that's great. And anything they can do to make pulling that out easier is going to be good. But I'm interested in the agnostic model. I wish that they had spent as much time on IFC in this version as they did in Revit because that's solving one of my problems.

      And then I'm on these jobs where I've got Bentley, and I've got Rhino, and I've got everybody, and they're trying to all put it together and build that same Forma data model. And that's where I'm starting to be like, I can only get so far because the schema underneath that is hidden. It's built in the platform. Did that answer your question? Sorry.

      AUDIENCE: Yes, yes, it did. And actually led into what I was going to do as a follow up, which is what would you like to see in there to adopt if nobody was using it yet, let's say, up there?

      CHRIS HARMAN: I mean, I think that I like totally agree with their solution. And if you remember what I was talking about, you build this data set, and then you build platforms and applications on top-- that kind of model. I mean, you can see that's what Autodesk is thinking.

      They're like, well, you just host every-- you pay us for the AWS storage, and you can build whatever apps you want on top of that as long as we can figure out a way to make all of the apples apples and oranges oranges. And then, you can offer any solution you want. I mean, I think that's fantastic.

      But for me, anyway, the world does not start and end at Revit. And so what I want to see them do is work with, say, BuildingSMART International or somebody and offer some more open-source extensible frameworks for editing these dictionaries and adding information to these models in that same data framework. Yes, let's move to a graph. Yes, let's do all these things, but let's figure out how to make it more open.

      AUDIENCE: Awesome. Thank you.

      CLAY STARR: Follow-up comments, other questions? I do want to ask one final question of the panel. Interrupt me if you have one. But really, we've got just a few minutes left, so just a quick quiet. I'm really just curious because we've been talking a lot about bringing this data together, rethinking our processes, understanding how we may need to change or modify our behaviors culturally.

      But what it all comes down to is our clients, right? The people, the stakeholders that we engage with on a regular basis, the people who pay us or who are going to benefit from the asset itself. So whether that's community members, our clients, and just talk a little bit. And I'm going to just go right down the aisle here, Megan. How has that changed how your approach to digital twins and data aggregation-- everything we've been talking about-- how has that changed the way you manage your stakeholders?

      MEGAN STANLEY: As I mentioned before, I'm actually provide a different lens on this because, as I say, my clients are actually part of GHD as well. So I've got a client-client extended value chain of my client is GHD and then clients of GHD use the data, and we develop solutions. So I just might talk to the lens that I sit in around looking at the enterprise. And we went through an interesting journey around understanding-- again, this culture piece, I think, is very relevant around engagement and really understanding your stakeholders, especially when we're talking around data and technology.

      And we had a really interesting technical conference recently where we talked about bringing people across the organization and them understanding what role they play in data. So we unpacked a persona piece, which was actually quite fascinating because you do have your data engineers that are really deep into the technical, and they know how to work the data. But it's not just the data engineers that create the solution.

      You need data journalists. You might need a data-- those that really look beyond about emerging technologies. And a term that we looked at called the data night. What's the security around that data when you start to scale for big systems? So this whole data persona exercise was actually quite fascinating and sharing the stories and getting people really connecting into, actually, I don't have a data role, but I do have a role in data.

      So I think that's quite powerful when you want to scale solutions to clients and because you've got a lot of touch points across the organization that do talk, like we say, a digital twin can be many different outcomes. So I think it's tapping into different domains. I think that maturity has definitely been a great change that I've seen in the last few months or six months.

      CLAY STARR: Yeah, thanks. Mark, what about at Arcadis? How are you engaging your stakeholders differently?

      MARK MUTTER: I think that persona piece is really important. So when you're talking about your stakeholders, who is it? And that's going to really vary what they need, when they need it, how they need it to be looked at, what decision they're trying to answer or problem they're trying to solve. So the stakeholder engagement in general has taken off in a digital format since lockdown. That was a huge push to digital native users. But yeah, really important to keep focused on the persona side of it.

      CLAY STARR: Chris, you want to wrap us up?

      CHRIS HARMAN: Yeah. So I'm going to say something completely different, and I'm starting to-- I'm like, I did write down a lot of what Megan said because it's very people-focused. And I think Mark and I both come from a slightly different side. And I need to do better.

      So maybe I'm wrong, but I do-- I was going to say, I don't want to do data personas anymore. [LAUGHS] How has my approach changed? I was actually going to say, I don't talk about data stewards. And I think where I'm coming from this is a place of I've been beaten down.

      When digital twins started, our stakeholder engagement was, all you need to do is completely reorganize your entire organization. Institute new roles that don't exist, break down every silo, and then the future is great. Imagine what we can do.

      And guess what, you know, how many times did I pull that one off? So now I'm just like, hey, what is it that we can do with you right now without having to bring anybody else in, without having to figure out how we're going to talk to somebody else? What can we just do that's small and achievable? And just do that. And then I get some success, right? And then, I think-- I wrote down your stories comment because then you have a story. And that story is so much more valuable.

      If you want to break down silos in an organization, you need to have a story to tell, and you need them to tell it. I can't go around and tell stories about what could happen anymore. I've got to win somewhere and then build that story.

      So my change to stakeholder engagement is like, I'm going to ignore all these personas and people. And maybe I'm not. Maybe I'm actually just focusing. And then try to win and grow that rather than trying to eat the elephant.

      CLAY STARR: No, that was great. And I hope-- and I know we're just at time. I really want to thank you guys for coming in and listening to our panel. We're going to be available for questions. I hope what you heard today was, we've got three industry-leading companies up here who all are taking slightly different approaches or thinking a little bit differently.

      There's not a magic bullet. There is a way for you to survive in this digital world. And it's conversations like this that keep our industry moving forward. And it keeps us growing in the ways that we can start solving the problems that we need to solve. So a round of applause for our panelists.

      [APPLAUSE]

      Thank you guys for being in here today. Thank you for coming. We'll see you guys in the Expo Hall, dinners, and elsewhere. Enjoy the rest of the conference. Thank you.

      ______
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      광고 수신 설정 – 사용자에게 타겟팅된 광고를 제공할 수 있게 해 줌

      이 쿠키는 사용자와 관련성이 높은 광고를 표시하고 그 효과를 추적하기 위해 사용자 활동 및 관심 사항에 대한 데이터를 수집합니다. 이렇게 데이터를 수집함으로써 사용자의 관심 사항에 더 적합한 광고를 표시할 수 있습니다. 이 쿠키를 허용하지 않을 경우 관심 분야에 해당되지 않는 광고가 표시될 수 있습니다.

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      타사 서비스

      각 범주에서 오토데스크가 사용하는 타사 서비스와 온라인에서 고객으로부터 수집하는 데이터를 사용하는 방식에 대해 자세히 알아보십시오.

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      반드시 필요 - 사이트가 제대로 작동하고 사용자에게 서비스를 원활하게 제공하기 위해 필수적임

      Qualtrics
      오토데스크는 고객에게 더욱 시의적절하며 관련 있는 이메일 컨텐츠를 제공하기 위해 Qualtrics를 이용합니다. 이를 위해, 고객의 온라인 행동 및 오토데스크에서 전송하는 이메일과의 상호 작용에 관한 데이터를 수집합니다. 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 이메일 확인율, 클릭한 링크 등이 포함될 수 있습니다. 오토데스크는 이 데이터를 다른 소스에서 수집된 데이터와 결합하여 고객의 판매 또는 고객 서비스 경험을 개선하며, 고급 분석 처리에 기초하여 보다 관련 있는 컨텐츠를 제공합니다. Qualtrics 개인정보취급방침
      Akamai mPulse
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Akamai mPulse를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Akamai mPulse 개인정보취급방침
      Digital River
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Digital River를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Digital River 개인정보취급방침
      Dynatrace
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Dynatrace를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Dynatrace 개인정보취급방침
      Khoros
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Khoros를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Khoros 개인정보취급방침
      Launch Darkly
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Launch Darkly를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Launch Darkly 개인정보취급방침
      New Relic
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 New Relic를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. New Relic 개인정보취급방침
      Salesforce Live Agent
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Salesforce Live Agent를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Salesforce Live Agent 개인정보취급방침
      Wistia
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Wistia를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Wistia 개인정보취급방침
      Tealium
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Tealium를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Upsellit
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Upsellit를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. CJ Affiliates
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 CJ Affiliates를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Commission Factory
      Typepad Stats
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Typepad Stats를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Typepad Stats 개인정보취급방침
      Geo Targetly
      Autodesk는 Geo Targetly를 사용하여 웹 사이트 방문자를 가장 적합한 웹 페이지로 안내하거나 위치를 기반으로 맞춤형 콘텐츠를 제공합니다. Geo Targetly는 웹 사이트 방문자의 IP 주소를 사용하여 방문자 장치의 대략적인 위치를 파악합니다. 이렇게 하면 방문자가 (대부분의 경우) 현지 언어로 된 콘텐츠를 볼 수 있습니다.Geo Targetly 개인정보취급방침
      SpeedCurve
      Autodesk에서는 SpeedCurve를 사용하여 웹 페이지 로드 시간과 이미지, 스크립트, 텍스트 등의 후속 요소 응답성을 측정하여 웹 사이트 환경의 성능을 모니터링하고 측정합니다. SpeedCurve 개인정보취급방침
      Qualified
      Qualified is the Autodesk Live Chat agent platform. This platform provides services to allow our customers to communicate in real-time with Autodesk support. We may collect unique ID for specific browser sessions during a chat. Qualified Privacy Policy

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      사용자 경험 향상 – 사용자와 관련된 항목을 표시할 수 있게 해 줌

      Google Optimize
      오토데스크는 사이트의 새 기능을 테스트하고 이러한 기능의 고객 경험을 사용자화하기 위해 Google Optimize을 이용합니다. 이를 위해, 고객이 사이트를 방문해 있는 동안 행동 데이터를 수집합니다. 이 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 오토데스크 ID 등이 포함될 수 있습니다. 고객은 기능 테스트를 바탕으로 여러 버전의 오토데스크 사이트를 경험하거나 방문자 특성을 바탕으로 개인화된 컨텐츠를 보게 될 수 있습니다. Google Optimize 개인정보취급방침
      ClickTale
      오토데스크는 고객이 사이트에서 겪을 수 있는 어려움을 더 잘 파악하기 위해 ClickTale을 이용합니다. 페이지의 모든 요소를 포함해 고객이 오토데스크 사이트와 상호 작용하는 방식을 이해하기 위해 세션 녹화를 사용합니다. 개인적으로 식별 가능한 정보는 가려지며 수집되지 않습니다. ClickTale 개인정보취급방침
      OneSignal
      오토데스크는 OneSignal가 지원하는 사이트에 디지털 광고를 배포하기 위해 OneSignal를 이용합니다. 광고는 OneSignal 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 OneSignal에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 OneSignal에 제공하는 데이터를 사용합니다. OneSignal 개인정보취급방침
      Optimizely
      오토데스크는 사이트의 새 기능을 테스트하고 이러한 기능의 고객 경험을 사용자화하기 위해 Optimizely을 이용합니다. 이를 위해, 고객이 사이트를 방문해 있는 동안 행동 데이터를 수집합니다. 이 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 오토데스크 ID 등이 포함될 수 있습니다. 고객은 기능 테스트를 바탕으로 여러 버전의 오토데스크 사이트를 경험하거나 방문자 특성을 바탕으로 개인화된 컨텐츠를 보게 될 수 있습니다. Optimizely 개인정보취급방침
      Amplitude
      오토데스크는 사이트의 새 기능을 테스트하고 이러한 기능의 고객 경험을 사용자화하기 위해 Amplitude을 이용합니다. 이를 위해, 고객이 사이트를 방문해 있는 동안 행동 데이터를 수집합니다. 이 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 오토데스크 ID 등이 포함될 수 있습니다. 고객은 기능 테스트를 바탕으로 여러 버전의 오토데스크 사이트를 경험하거나 방문자 특성을 바탕으로 개인화된 컨텐츠를 보게 될 수 있습니다. Amplitude 개인정보취급방침
      Snowplow
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Snowplow를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Snowplow 개인정보취급방침
      UserVoice
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 UserVoice를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. UserVoice 개인정보취급방침
      Clearbit
      Clearbit를 사용하면 실시간 데이터 보강 기능을 통해 고객에게 개인화되고 관련 있는 환경을 제공할 수 있습니다. Autodesk가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. Clearbit 개인정보취급방침
      YouTube
      YouTube는 사용자가 웹 사이트에 포함된 비디오를 보고 공유할 수 있도록 해주는 비디오 공유 플랫폼입니다. YouTube는 비디오 성능에 대한 시청 지표를 제공합니다. YouTube 개인정보보호 정책

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      광고 수신 설정 – 사용자에게 타겟팅된 광고를 제공할 수 있게 해 줌

      Adobe Analytics
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Adobe Analytics를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID 및 오토데스크 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. Adobe Analytics 개인정보취급방침
      Google Analytics (Web Analytics)
      오토데스크 사이트에서 고객의 행동에 관한 데이터를 수집하기 위해 Google Analytics (Web Analytics)를 이용합니다. 여기에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 오토데스크는 사이트 성과를 측정하고 고객의 온라인 경험의 편리함을 평가하여 기능을 개선하기 위해 이러한 데이터를 이용합니다. 또한, 이메일, 고객 지원 및 판매와 관련된 고객 경험을 최적화하기 위해 고급 분석 방법도 사용하고 있습니다. AdWords
      Marketo
      오토데스크는 고객에게 더욱 시의적절하며 관련 있는 이메일 컨텐츠를 제공하기 위해 Marketo를 이용합니다. 이를 위해, 고객의 온라인 행동 및 오토데스크에서 전송하는 이메일과의 상호 작용에 관한 데이터를 수집합니다. 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 이메일 확인율, 클릭한 링크 등이 포함될 수 있습니다. 오토데스크는 이 데이터를 다른 소스에서 수집된 데이터와 결합하여 고객의 판매 또는 고객 서비스 경험을 개선하며, 고급 분석 처리에 기초하여 보다 관련 있는 컨텐츠를 제공합니다. Marketo 개인정보취급방침
      Doubleclick
      오토데스크는 Doubleclick가 지원하는 사이트에 디지털 광고를 배포하기 위해 Doubleclick를 이용합니다. 광고는 Doubleclick 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Doubleclick에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Doubleclick에 제공하는 데이터를 사용합니다. Doubleclick 개인정보취급방침
      HubSpot
      오토데스크는 고객에게 더욱 시의적절하며 관련 있는 이메일 컨텐츠를 제공하기 위해 HubSpot을 이용합니다. 이를 위해, 고객의 온라인 행동 및 오토데스크에서 전송하는 이메일과의 상호 작용에 관한 데이터를 수집합니다. 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 이메일 확인율, 클릭한 링크 등이 포함될 수 있습니다. HubSpot 개인정보취급방침
      Twitter
      오토데스크는 Twitter가 지원하는 사이트에 디지털 광고를 배포하기 위해 Twitter를 이용합니다. 광고는 Twitter 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Twitter에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Twitter에 제공하는 데이터를 사용합니다. Twitter 개인정보취급방침
      Facebook
      오토데스크는 Facebook가 지원하는 사이트에 디지털 광고를 배포하기 위해 Facebook를 이용합니다. 광고는 Facebook 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Facebook에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Facebook에 제공하는 데이터를 사용합니다. Facebook 개인정보취급방침
      LinkedIn
      오토데스크는 LinkedIn가 지원하는 사이트에 디지털 광고를 배포하기 위해 LinkedIn를 이용합니다. 광고는 LinkedIn 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 LinkedIn에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 LinkedIn에 제공하는 데이터를 사용합니다. LinkedIn 개인정보취급방침
      Yahoo! Japan
      오토데스크는 Yahoo! Japan가 지원하는 사이트에 디지털 광고를 배포하기 위해 Yahoo! Japan를 이용합니다. 광고는 Yahoo! Japan 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Yahoo! Japan에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Yahoo! Japan에 제공하는 데이터를 사용합니다. Yahoo! Japan 개인정보취급방침
      Naver
      오토데스크는 Naver가 지원하는 사이트에 디지털 광고를 배포하기 위해 Naver를 이용합니다. 광고는 Naver 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Naver에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Naver에 제공하는 데이터를 사용합니다. Naver 개인정보취급방침
      Quantcast
      오토데스크는 Quantcast가 지원하는 사이트에 디지털 광고를 배포하기 위해 Quantcast를 이용합니다. 광고는 Quantcast 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Quantcast에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Quantcast에 제공하는 데이터를 사용합니다. Quantcast 개인정보취급방침
      Call Tracking
      오토데스크는 캠페인을 위해 사용자화된 전화번호를 제공하기 위하여 Call Tracking을 이용합니다. 그렇게 하면 고객이 오토데스크 담당자에게 더욱 빠르게 액세스할 수 있으며, 오토데스크의 성과를 더욱 정확하게 평가하는 데 도움이 됩니다. 제공된 전화번호를 기준으로 사이트에서 고객 행동에 관한 데이터를 수집할 수도 있습니다. Call Tracking 개인정보취급방침
      Wunderkind
      오토데스크는 Wunderkind가 지원하는 사이트에 디지털 광고를 배포하기 위해 Wunderkind를 이용합니다. 광고는 Wunderkind 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Wunderkind에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Wunderkind에 제공하는 데이터를 사용합니다. Wunderkind 개인정보취급방침
      ADC Media
      오토데스크는 ADC Media가 지원하는 사이트에 디지털 광고를 배포하기 위해 ADC Media를 이용합니다. 광고는 ADC Media 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 ADC Media에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 ADC Media에 제공하는 데이터를 사용합니다. ADC Media 개인정보취급방침
      AgrantSEM
      오토데스크는 AgrantSEM가 지원하는 사이트에 디지털 광고를 배포하기 위해 AgrantSEM를 이용합니다. 광고는 AgrantSEM 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 AgrantSEM에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 AgrantSEM에 제공하는 데이터를 사용합니다. AgrantSEM 개인정보취급방침
      Bidtellect
      오토데스크는 Bidtellect가 지원하는 사이트에 디지털 광고를 배포하기 위해 Bidtellect를 이용합니다. 광고는 Bidtellect 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Bidtellect에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Bidtellect에 제공하는 데이터를 사용합니다. Bidtellect 개인정보취급방침
      Bing
      오토데스크는 Bing가 지원하는 사이트에 디지털 광고를 배포하기 위해 Bing를 이용합니다. 광고는 Bing 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Bing에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Bing에 제공하는 데이터를 사용합니다. Bing 개인정보취급방침
      G2Crowd
      오토데스크는 G2Crowd가 지원하는 사이트에 디지털 광고를 배포하기 위해 G2Crowd를 이용합니다. 광고는 G2Crowd 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 G2Crowd에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 G2Crowd에 제공하는 데이터를 사용합니다. G2Crowd 개인정보취급방침
      NMPI Display
      오토데스크는 NMPI Display가 지원하는 사이트에 디지털 광고를 배포하기 위해 NMPI Display를 이용합니다. 광고는 NMPI Display 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 NMPI Display에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 NMPI Display에 제공하는 데이터를 사용합니다. NMPI Display 개인정보취급방침
      VK
      오토데스크는 VK가 지원하는 사이트에 디지털 광고를 배포하기 위해 VK를 이용합니다. 광고는 VK 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 VK에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 VK에 제공하는 데이터를 사용합니다. VK 개인정보취급방침
      Adobe Target
      오토데스크는 사이트의 새 기능을 테스트하고 이러한 기능의 고객 경험을 사용자화하기 위해 Adobe Target을 이용합니다. 이를 위해, 고객이 사이트를 방문해 있는 동안 행동 데이터를 수집합니다. 이 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역, IP 주소 또는 장치 ID, 오토데스크 ID 등이 포함될 수 있습니다. 고객은 기능 테스트를 바탕으로 여러 버전의 오토데스크 사이트를 경험하거나 방문자 특성을 바탕으로 개인화된 컨텐츠를 보게 될 수 있습니다. Adobe Target 개인정보취급방침
      Google Analytics (Advertising)
      오토데스크는 Google Analytics (Advertising)가 지원하는 사이트에 디지털 광고를 배포하기 위해 Google Analytics (Advertising)를 이용합니다. 광고는 Google Analytics (Advertising) 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Google Analytics (Advertising)에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Google Analytics (Advertising)에 제공하는 데이터를 사용합니다. Google Analytics (Advertising) 개인정보취급방침
      Trendkite
      오토데스크는 Trendkite가 지원하는 사이트에 디지털 광고를 배포하기 위해 Trendkite를 이용합니다. 광고는 Trendkite 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Trendkite에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Trendkite에 제공하는 데이터를 사용합니다. Trendkite 개인정보취급방침
      Hotjar
      오토데스크는 Hotjar가 지원하는 사이트에 디지털 광고를 배포하기 위해 Hotjar를 이용합니다. 광고는 Hotjar 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Hotjar에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Hotjar에 제공하는 데이터를 사용합니다. Hotjar 개인정보취급방침
      6 Sense
      오토데스크는 6 Sense가 지원하는 사이트에 디지털 광고를 배포하기 위해 6 Sense를 이용합니다. 광고는 6 Sense 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 6 Sense에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 6 Sense에 제공하는 데이터를 사용합니다. 6 Sense 개인정보취급방침
      Terminus
      오토데스크는 Terminus가 지원하는 사이트에 디지털 광고를 배포하기 위해 Terminus를 이용합니다. 광고는 Terminus 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 Terminus에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 Terminus에 제공하는 데이터를 사용합니다. Terminus 개인정보취급방침
      StackAdapt
      오토데스크는 StackAdapt가 지원하는 사이트에 디지털 광고를 배포하기 위해 StackAdapt를 이용합니다. 광고는 StackAdapt 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 StackAdapt에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 StackAdapt에 제공하는 데이터를 사용합니다. StackAdapt 개인정보취급방침
      The Trade Desk
      오토데스크는 The Trade Desk가 지원하는 사이트에 디지털 광고를 배포하기 위해 The Trade Desk를 이용합니다. 광고는 The Trade Desk 데이터와 고객이 사이트를 방문하는 동안 오토데스크가 수집하는 행동 데이터 모두에 기초하여 제공됩니다. 오토데스크가 수집하는 데이터에는 고객이 방문한 페이지, 시작한 체험판, 재생한 동영상, 구매 내역 및 IP 주소 또는 장치 ID가 포함될 수 있습니다. 이 정보는 The Trade Desk에서 고객으로부터 수집한 데이터와 결합될 수 있습니다. 오토데스크는 디지털 광고 경험에 대한 사용자화를 개선하고 고객에게 더욱 관련 있는 광고를 제시하기 위해 The Trade Desk에 제공하는 데이터를 사용합니다. The Trade Desk 개인정보취급방침
      RollWorks
      We use RollWorks to deploy digital advertising on sites supported by RollWorks. Ads are based on both RollWorks data and behavioral data that we collect while you’re on our sites. The data we collect may include pages you’ve visited, trials you’ve initiated, videos you’ve played, purchases you’ve made, and your IP address or device ID. This information may be combined with data that RollWorks has collected from you. We use the data that we provide to RollWorks to better customize your digital advertising experience and present you with more relevant ads. RollWorks Privacy Policy

      정말 더 적은 온라인 경험을 원하십니까?

      오토데스크는 고객 여러분에게 좋은 경험을 드리고 싶습니다. 이전 화면의 범주에 대해 "예"를 선택하셨다면 오토데스크는 고객을 위해 고객 경험을 사용자화하고 향상된 응용프로그램을 제작하기 위해 귀하의 데이터를 수집하고 사용합니다. 언제든지 개인정보 처리방침을 방문해 설정을 변경할 수 있습니다.

      고객의 경험. 고객의 선택.

      오토데스크는 고객의 개인 정보 보호를 중요시합니다. 오토데스크에서 수집하는 정보는 오토데스크 제품 사용 방법, 고객이 관심을 가질 만한 정보, 오토데스크에서 더욱 뜻깊은 경험을 제공하기 위한 개선 사항을 이해하는 데 도움이 됩니다.

      오토데스크에서 고객님께 적합한 경험을 제공해 드리기 위해 고객님의 데이터를 수집하고 사용하도록 허용하시겠습니까?

      선택할 수 있는 옵션을 자세히 알아보려면 이 사이트의 개인 정보 설정을 관리해 사용자화된 경험으로 어떤 이점을 얻을 수 있는지 살펴보거나 오토데스크 개인정보 처리방침 정책을 확인해 보십시오.