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Digital Twins with Autodesk Tandem: From Setup to Data-Driven Analysis

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说明

Why should your organization create a digital twin? In this session, you will learn about KEO International Consultants' digital-twin business case and how we built our first digital twin using Autodesk Tandem software and IoT devices. We'll go through our digital-twin creation journey from inception, when we identified operational challenges, business opportunities, chosen solutions, and the implementation strategy. We'll look at the Autodesk Tandem project and IoT sensors setup and integration. And we'll show how outcomes of digital-twin data analysis can be used to make data-driven decisions to improve operations and employee well-being. This class is perfect for anyone who wants to learn how to use digital twins to improve the performance of their assets. Whether you're an asset owner, consultant, or contractor, this class will give you the skills you need to use digital twins to make a difference.

主要学习内容

  • Explore the problem, solution, implementation approach, objectives, and challenges involved in a digital twin.
  • Learn about the Autodesk Tandem setup: 3D model, facility template, custom parameters, and data streams.
  • Learn about the setup of IoT devices, including a sensor types overview, assembly processes, and integration with Autodesk Tandem using webhooks.
  • Learn about analyzing data and making informed data-driven decisions to improve operations and well-being.

讲师

  • Mateusz Lukasiewicz 的头像
    Mateusz Lukasiewicz
    Mateusz Lukasiewicz has over 12 years of experience in the AEC industry, and throughout his career, he successfully led digital delivery of large-scale projects and developed a number of modern digital engineering solutions by combining BIM expertise, computer programming skills and project management principles. Mateusz undertakes a vital role in driving company's clear vision towards achieving the leading digital innovator position in the market and its long-term digital capability goals.
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      Transcript

      MATEUSZ LUKASIEWICZ: Hi, everyone and welcome to my presentation. The topic of the class today is Digital Twins with Autodesk Tandem, from setup to data driven analysis. Few words about myself, my name is Mateusz Lukasiewicz. I'm Digital Projects Manager at KEO International Consultants. I'm based in Dubai. In my role, I'm focused on BIM, computer programming, and computational design, project and construction management, and digital twins.

      The format of this class is a case study. We will start with a short introduction about digital twins, our objectives, and strategy. Then we'll move to practical step-by-step digital twin implementation and results overview.

      Why are we here? In the last 10 years, we can observe growing interest in digital twins. Looking ahead in the future, digital twin is a rapidly growing business, expected to reach close to $50 billion in investments in the next few years. We are here because we want to be early adopters and understand the benefits of this relatively new and promising concept.

      What is digital twin? It can be defined as virtual model of real object or process for analysis and optimization. Digital twin is composed by physical asset, digital model, and real time data connecting both. The real benefits of digital twins come from data that can be analyzed by using data science, parametric models, and optimization algorithms. The video shows digital twin of our office where we can see geometrical replica of physical asset and real time air quality and desk occupancy data. This model is analyzed by using custom parametric model, which is used to calculate the results and visualize various metrics that we will explore later on.

      There are multiple uses and benefits of digital twins, starting from internal, such as real-time monitoring and analysis, reduce downtime, optimized resources utilization, predictive maintenance, health and safety improvements, employee well-being and retention, training and simulations, also external, like new revenue streams, services expansion, improved customer experience, reputation gains, and emission reduction. Let's go back to our case study. We have identified five objectives, such as improve assets monitoring, prevent equipment failures, improve maintenance, improve employee's productivity, comfort, and well-being, and also evaluate what if scenarios for different layout changes.

      To achieve them, we implemented five components by creating 3D Revit model based on the physical asset, assembling IoT sensors, creating new facility in Tandem, importing 3D model and integrating sensors, then analyze model by creating parametric model using Dynamo for Revit where we define functions analyze historical data, calculated, and optimized results. We had challenges. Currently, digital twin software maturity is rather undescriptive and informative side, rather than predictive and comprehensive. As long as we've been able to achieve first three goals by using out of the box functionality, we had to create custom solution to optimize results and explore what if scenarios.

      In addition, we had minor issues with mapping IoT sensor data due to data type temporary restrictions in Tandem. However, it was easily handled by writing custom translation Cloud Function in Microsoft Azure. Finally, in the future, we are expecting automated way of assigning hosts to data streams rather than doing it manually. We found the practice of assigning hosts manually for 100 plus data streams quite inefficient.

      Now, let's talk about Tandem setup. The first step was to create digital representation of physical entity, which is selected floor of our office in Dubai. We modeled the relevant scope of structure and architecture, and applied special considerations to Revit rooms, which were split as per expected sensor coverage zone. Instead of having one room, we have multiple rooms in the same open space. Also, we utilized family instance mark parameter to identify desk number.

      Let's move to Tandem. We have created additional categories by modifying default classification system. By adding rooms and sensor categories, it is easily done by editing Excel file exported from Tandem. We create a new classification system based on the updated classification system.

      In the next step, we added custom parameters, such as carbon dioxide concentration, temperature, humidity, pressure, and occupancy to capture data coming from IoT sensors. This process was repeated for all expected data types. Later, we created new facility template using newly created classification system that contains sensors categories, where we applied custom parameters created earlier.

      Finally, we created a new facility, which is basically a Tandem project, and imported model directly from Autodesk Construction Cloud. The imported model is the latest published workshop model. In either case, we are using a Revit model. The input is very straight forward process. So first step done. We have now virtual model in Autodesk Tandem. It is not yet digital twin.

      The next step was to create data streams that are used to create connection with IoT sensor. Data streams can be hosted to specific Revit elements. In our case, desk occupancy data was hosted to desks. And other data streams were assigned to Revit rooms, such as air quality metrics, or meeting room occupancy. Data streams can be also added to classification system for grouping purpose.

      In our case, we created more than 100 data streams, which are represented in Tandem as green spheres that indicates approximate sensor location in physical office. So far, we have geometrical model and data streams. However, at this point, we still don't have connection between virtual model and physical asset.

      To do so, we need another component of digital twins, which are the sensors. There are multiple IoT sensors providers in the market. The manufacturer we selected offers following sensor types like temperature, humidity, touch motion, desk occupancy, water, object proximity, and air quality sensor. This is how it looks once installed. The assembly process is very straightforward.

      Basically, Cloud Connector is plugged in the socket and connected to internet cable. Other sensors are assembled by using double-sided tape. Each sensor comes with installation manual and recommendation for the ideal placement. So for example, air quality sensor cannot be placed too close to building facade or air exhaust.

      In terms of data flow, data is collected by sensors. Then it is sent to Cloud Connector device, and finally, to IoT service. From IoT service, we can link the data further to other software, such as Autodesk Tandem, which contains additional functionalities, such as data analysis tools, and also model visualization capabilities.

      At this point, we have data in IoT platform, office model in Tandem, and data streams placeholders. Data Bridge between sensors and Tandem can be made by mapping data stream ID extracted from the link that we can see now on the screen. The external ID is the last part of the string. So this is done on the sensor level. And on the project level, we will be using the webhooks.

      So we are now in IoT platform. We create new data connector by using webhook and specifying relevant parameters that should be reported back to Tandem. We can rename the sensors to match the IoT platform sensors naming with Autodesk Tandem data stream naming, and add label key for external ID and copy our external ID value to establish the connection. This exercise was repeated for 100 plus sensors.

      Back in Tandem, we can notice data in JSON format received from sensor. We can now simply select key value pair for each parameter to start reporting data and display in the charts. So now, we can see that there are some entries for the data. Select the single entries. Now we can see data for last few days. We can play with different data ranges to display different data.

      So basically, at this point, we have fully operational digital twin model. We have virtual representation of the office, and we have real data coming through sensors. The question now is how to use such model to achieve our objectives.

      If you recall our objectives, The first one was to improve assets monitoring. So what we did, we evaluated temperature, humidity, pressure and carbon dioxide concentration against codes, such as thermal environmental conditions for human occupancy. And based on the results, we were able to optimize air quality by applying corrective actions by inspecting HVAC system and adjusting thermostats. In similar manner, we've analyzed staff attendance, desks, and meeting room occupation. We've been able to optimize desks allocation and revise meeting room booking schedules.

      Moving to the second goal of improving maintenance, we've identified the problems in pantry area housekeeping, to reduce housekeeping team response time with utilize the touch sensor to send instant notification during specific hours to notify the maintenance team about various incidents in pantry area. Additionally, we've collected data, analyze it, and analyzed against current housekeeping schedule, and modify the frequency based on the peak and low periods. Our third goal was to prevent failures. We identified IT server room equipment as sensitive to high temperature and humidity. To prevent failures, we set the temperature trigger for sending automated notifications if temperature in IT server room is above 20 degrees. And eventually, as the result, we've been able to prevent failures by improving response time, as it was based on instant notifications whenever the event occurred, rather than relying on manual scheduled in-person inspections.

      Previous goals were easily accomplished by using Tandem and notification system. Moving forward, we will go beyond out-of-the-box functionality and start exploring custom solutions to improve productivity, comfort, well-being, and also to explore different office layouts scenarios. So before we move to improvements, we have to be able to actually measure what we are trying to improve. And to measure, we need to define. What we did, we came up with this simple formula taking into account five factors, such as proximity to other desks, point noise sources, and communication paths. These three components have negative impact in our formula, as well as we look at the air quality and daylight access, which have positive impact.

      First, we've noticed that two sides of our office are more or less independent. Therefore, each side was evaluated in separate exercise. So moving forward, we will focus only on this part of the office. To calculate the impact of each factor, we created a parametric model in Dynamo, which calculates the value of each impact, and also visualize for each desks. You can see there is some color coding applied for each of the metrics. Model is dynamic. Whenever we make any change in geometrical model, the metrics are being updated.

      So let's have a look on this impacts and how they are calculated. So first, let's start with desk proximity. The general principle is that the closer and more frequently occupy disks are, the higher the negative impact. On the video, we can see which desks are impacting the desk that we are considering at specific moment.

      In our exercise, we neglected desks that are further than five meters. So it's basically a sum of impacts. And the sum varies depending on the task that we are considering in our formula. The results can be exported and shown in the desk's interaction matrix. Based on the matrix, we can calculate the total result per desk. And we can also do some sort of a desk ranking based on the total value of this impact.

      For daylight accessibility, formula is very straightforward. It is multiplicative inverse of the distance to building facade. Basically, the closer to building facade, the higher daylight is, which is represented by parts of various height. In similar manner, we use sensor's data to identify different air zones across the office. In our case, we have three different air zones, as we install three different air quality sensors in this part of the office.

      We also had a look at point noise sources, such as printers. Basically, the closer to point noise source, the higher the impact is. And this impact is negative. Also, to demonstrate that the model is dynamic, we are going to simulate what if scenarios. So we are going to move the printer towards the left side.

      So what's happening now in the background are moving the printer in Revit. And now, updating model in Dynamo, we can see the geometrical change in the model and also updates of each matrix. Finally, we took into consideration the proximity and magnitude of communication paths. Basically, the closer two communication paths having higher number of employees, the higher negative impact. Simply means that there are more people moving, and there's more potential distraction.

      Going back to our case study, the formula for 41 desks, two noise sources, and two communication paths will look like on the screen. And we are going to explore three scenarios. First, we will look on dummy data, or rather, no IoT data. So we are assuming 100% occupancy and 100% air quality, which will give us some theoretical results. Then we'll plug actual IoT data to consider the actual air quality and desk occupancy time, which affects the proximity impact, as the result will have the actual results and desk allocation ranking. And finally, we will try to optimize results to achieve highest values by optimizing desk's allocation.

      Let's move to case number one. So we have no IoT data, and expected output of this exercise is to evaluate which option among four shown on the screen is the best. So again, we are using our parametrical model where we can assess impacts and create desks ranking. Also, we can use option one as benchmark, so we can compare total improvements, improvements for each metric per desk and desk ranking changes. So you can see that the option two is approximately 1.6% better than option one. Similar, we can repeat for option three and four.

      So as conclusion of this slide, you can see that the custom parametric model helps us to compare different layout options, and help us to identify the best among given proposed layouts. So in our case, the layout number four is approximately 6% better than option one. Previous example gave us some results assuming not actual desk occupancy and air quality matrix. In this scenario, we will plug the actual disk occupancy and air quality data to parametrical model to calculate the real values.

      So we can see the air quality data in Tandem. And similar for occupancy, you can now see data export, the average sum per week and normalized data. Similar for air quality, this data is plugged to our parametric model where we can calculate the actual results and the actual desk's ranking. So the takeaway from this slide is to understand that the actual data does make a difference, which was observed in updated desk ranking and formula results. So the results from this case will be used as a benchmark for further optimization.

      Before we attempt to optimize results by changing this allocation, let's spend a few seconds on basics of probability and statistics, and how many ways can three people be assigned to three desks? The answer is six. And this can be also visualized as shown on the screen. This number is not a guess. It's actually calculated using permutations formula.

      In our case, n is equal to r, which basically gives us factorial of three, which is six. So that's the background. In our case, we have 41 desks. This gives us factorial of 41, which is equal to this long number. Obviously, we can't evaluate all combinations. And in our case study, we'll take 100,000 random arrangements in optimization calculations.

      Before we calculate 100,000 different options, let's first try to do it manually. The first logical step was to optimize results manually by assigning better desks based on desk ranking to staff who are more frequently at their desks. So you can see the desk ranking. We can see the occupancy. So basically, the person who spends most of the time in the office is assigned to the best desk, and so on.

      Distorted data is plug the parametric model where we can calculate the improvement. You can also see desk ranking changes and improvements per desk. So by using this intuitive principle, we achieved close to 4.3% improvement against the benchmark.

      The results achieved through manual desk assignment in previous example are not optimal. The reason for is that the cranking and impacts are dynamic as they are influenced by time variable in desk proximity factor. To investigate further, we randomly selected 100,000 desk allocation permutations, calculated results, and identified the optimum disk allocation. So obviously, this exercise cannot be done manually. We are talking about 100,000 different combinations. We also use Power BI dashboard to somehow illustrate the results, and how the results are changing depending on the number of permutations.

      So in conclusion, by assessing 100,000 options of using optimum desk allocation, we've been able to further improve comfort, while being scored by almost 11% against the benchmark. In separate exercise, we modify the daylight formula to reflect time spent at each desk to calculate daylight hours. Knowing the daylight impact factor per desk and multiplying by average time spent at the desk, we calculated the baseline. Moving further, we have simulated disk allocation changes by using the very simple principle that the higher attendance, the better in terms of daylight factor desk assignment. By using this method, we've been able to achieve overall 78% improvement of daylight accessibility.

      In conclusion, setting up a digital twin with Autodesk Tandem is a straightforward process. IoT sensors connected to digital model enabled facility management to enhance asset monitoring, improve maintenance, and also prevent equipment failures. Historical data statistics and parametric model enabled the selection of optimal results and the exploration of what if scenarios. We've been able to improve overall performance comfort and well-being by 11%, reduce negative distraction impact by 27%, and improve daylight accessibility by 78% in a separate case.

      To sum up, in our relatively simple case study, we've been able to leverage digital twin and achieve multiple objectives, also, to identify huge potential in analyzing real data. This slide concludes my presentation. I hope you found my presentation interesting. Please drop me a message if you have any questions. And thank you for watching.

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      我们通过 Typepad Stats 收集与您在我们站点中的活动相关的数据。这可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID。我们使用此数据来衡量我们站点的性能并评估联机体验的难易程度,以便我们改进相关功能。此外,我们还将使用高级分析方法来优化电子邮件体验、客户支持体验和销售体验。. Typepad Stats 隐私政策
      Geo Targetly
      我们使用 Geo Targetly 将网站访问者引导至最合适的网页并/或根据他们的位置提供量身定制的内容。 Geo Targetly 使用网站访问者的 IP 地址确定访问者设备的大致位置。 这有助于确保访问者以其(最有可能的)本地语言浏览内容。Geo Targetly 隐私政策
      SpeedCurve
      我们使用 SpeedCurve 来监控和衡量您的网站体验的性能,具体因素为网页加载时间以及后续元素(如图像、脚本和文本)的响应能力。SpeedCurve 隐私政策
      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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      改善您的体验 – 使我们能够为您展示与您相关的内容

      Google Optimize
      我们通过 Google Optimize 测试站点上的新功能并自定义您对这些功能的体验。为此,我们将收集与您在站点中的活动相关的数据。此数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID 等。根据功能测试,您可能会体验不同版本的站点;或者,根据访问者属性,您可能会查看个性化内容。. Google Optimize 隐私政策
      ClickTale
      我们通过 ClickTale 更好地了解您可能会在站点的哪些方面遇到困难。我们通过会话记录来帮助了解您与站点的交互方式,包括页面上的各种元素。将隐藏可能会识别个人身份的信息,而不会收集此信息。. ClickTale 隐私政策
      OneSignal
      我们通过 OneSignal 在 OneSignal 提供支持的站点上投放数字广告。根据 OneSignal 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 OneSignal 收集的与您相关的数据相整合。我们利用发送给 OneSignal 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. OneSignal 隐私政策
      Optimizely
      我们通过 Optimizely 测试站点上的新功能并自定义您对这些功能的体验。为此,我们将收集与您在站点中的活动相关的数据。此数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID 等。根据功能测试,您可能会体验不同版本的站点;或者,根据访问者属性,您可能会查看个性化内容。. Optimizely 隐私政策
      Amplitude
      我们通过 Amplitude 测试站点上的新功能并自定义您对这些功能的体验。为此,我们将收集与您在站点中的活动相关的数据。此数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID 等。根据功能测试,您可能会体验不同版本的站点;或者,根据访问者属性,您可能会查看个性化内容。. Amplitude 隐私政策
      Snowplow
      我们通过 Snowplow 收集与您在我们站点中的活动相关的数据。这可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID。我们使用此数据来衡量我们站点的性能并评估联机体验的难易程度,以便我们改进相关功能。此外,我们还将使用高级分析方法来优化电子邮件体验、客户支持体验和销售体验。. Snowplow 隐私政策
      UserVoice
      我们通过 UserVoice 收集与您在我们站点中的活动相关的数据。这可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID。我们使用此数据来衡量我们站点的性能并评估联机体验的难易程度,以便我们改进相关功能。此外,我们还将使用高级分析方法来优化电子邮件体验、客户支持体验和销售体验。. UserVoice 隐私政策
      Clearbit
      Clearbit 允许实时数据扩充,为客户提供个性化且相关的体验。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。Clearbit 隐私政策
      YouTube
      YouTube 是一个视频共享平台,允许用户在我们的网站上查看和共享嵌入视频。YouTube 提供关于视频性能的观看指标。 YouTube 隐私政策

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      定制您的广告 – 允许我们为您提供针对性的广告

      Adobe Analytics
      我们通过 Adobe Analytics 收集与您在我们站点中的活动相关的数据。这可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID。我们使用此数据来衡量我们站点的性能并评估联机体验的难易程度,以便我们改进相关功能。此外,我们还将使用高级分析方法来优化电子邮件体验、客户支持体验和销售体验。. Adobe Analytics 隐私政策
      Google Analytics (Web Analytics)
      我们通过 Google Analytics (Web Analytics) 收集与您在我们站点中的活动相关的数据。这可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。我们使用此数据来衡量我们站点的性能并评估联机体验的难易程度,以便我们改进相关功能。此外,我们还将使用高级分析方法来优化电子邮件体验、客户支持体验和销售体验。. Google Analytics (Web Analytics) 隐私政策
      AdWords
      我们通过 AdWords 在 AdWords 提供支持的站点上投放数字广告。根据 AdWords 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 AdWords 收集的与您相关的数据相整合。我们利用发送给 AdWords 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. AdWords 隐私政策
      Marketo
      我们通过 Marketo 更及时地向您发送相关电子邮件内容。为此,我们收集与以下各项相关的数据:您的网络活动,您对我们所发送电子邮件的响应。收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、电子邮件打开率、单击的链接等。我们可能会将此数据与从其他信息源收集的数据相整合,以根据高级分析处理方法向您提供改进的销售体验或客户服务体验以及更相关的内容。. Marketo 隐私政策
      Doubleclick
      我们通过 Doubleclick 在 Doubleclick 提供支持的站点上投放数字广告。根据 Doubleclick 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Doubleclick 收集的与您相关的数据相整合。我们利用发送给 Doubleclick 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Doubleclick 隐私政策
      HubSpot
      我们通过 HubSpot 更及时地向您发送相关电子邮件内容。为此,我们收集与以下各项相关的数据:您的网络活动,您对我们所发送电子邮件的响应。收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、电子邮件打开率、单击的链接等。. HubSpot 隐私政策
      Twitter
      我们通过 Twitter 在 Twitter 提供支持的站点上投放数字广告。根据 Twitter 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Twitter 收集的与您相关的数据相整合。我们利用发送给 Twitter 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Twitter 隐私政策
      Facebook
      我们通过 Facebook 在 Facebook 提供支持的站点上投放数字广告。根据 Facebook 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Facebook 收集的与您相关的数据相整合。我们利用发送给 Facebook 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Facebook 隐私政策
      LinkedIn
      我们通过 LinkedIn 在 LinkedIn 提供支持的站点上投放数字广告。根据 LinkedIn 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 LinkedIn 收集的与您相关的数据相整合。我们利用发送给 LinkedIn 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. LinkedIn 隐私政策
      Yahoo! Japan
      我们通过 Yahoo! Japan 在 Yahoo! Japan 提供支持的站点上投放数字广告。根据 Yahoo! Japan 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Yahoo! Japan 收集的与您相关的数据相整合。我们利用发送给 Yahoo! Japan 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Yahoo! Japan 隐私政策
      Naver
      我们通过 Naver 在 Naver 提供支持的站点上投放数字广告。根据 Naver 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Naver 收集的与您相关的数据相整合。我们利用发送给 Naver 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Naver 隐私政策
      Quantcast
      我们通过 Quantcast 在 Quantcast 提供支持的站点上投放数字广告。根据 Quantcast 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Quantcast 收集的与您相关的数据相整合。我们利用发送给 Quantcast 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Quantcast 隐私政策
      Call Tracking
      我们通过 Call Tracking 为推广活动提供专属的电话号码。从而,使您可以更快地联系我们的支持人员并帮助我们更精确地评估我们的表现。我们可能会通过提供的电话号码收集与您在站点中的活动相关的数据。. Call Tracking 隐私政策
      Wunderkind
      我们通过 Wunderkind 在 Wunderkind 提供支持的站点上投放数字广告。根据 Wunderkind 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Wunderkind 收集的与您相关的数据相整合。我们利用发送给 Wunderkind 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Wunderkind 隐私政策
      ADC Media
      我们通过 ADC Media 在 ADC Media 提供支持的站点上投放数字广告。根据 ADC Media 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 ADC Media 收集的与您相关的数据相整合。我们利用发送给 ADC Media 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. ADC Media 隐私政策
      AgrantSEM
      我们通过 AgrantSEM 在 AgrantSEM 提供支持的站点上投放数字广告。根据 AgrantSEM 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 AgrantSEM 收集的与您相关的数据相整合。我们利用发送给 AgrantSEM 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. AgrantSEM 隐私政策
      Bidtellect
      我们通过 Bidtellect 在 Bidtellect 提供支持的站点上投放数字广告。根据 Bidtellect 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Bidtellect 收集的与您相关的数据相整合。我们利用发送给 Bidtellect 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Bidtellect 隐私政策
      Bing
      我们通过 Bing 在 Bing 提供支持的站点上投放数字广告。根据 Bing 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Bing 收集的与您相关的数据相整合。我们利用发送给 Bing 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Bing 隐私政策
      G2Crowd
      我们通过 G2Crowd 在 G2Crowd 提供支持的站点上投放数字广告。根据 G2Crowd 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 G2Crowd 收集的与您相关的数据相整合。我们利用发送给 G2Crowd 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. G2Crowd 隐私政策
      NMPI Display
      我们通过 NMPI Display 在 NMPI Display 提供支持的站点上投放数字广告。根据 NMPI Display 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 NMPI Display 收集的与您相关的数据相整合。我们利用发送给 NMPI Display 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. NMPI Display 隐私政策
      VK
      我们通过 VK 在 VK 提供支持的站点上投放数字广告。根据 VK 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 VK 收集的与您相关的数据相整合。我们利用发送给 VK 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. VK 隐私政策
      Adobe Target
      我们通过 Adobe Target 测试站点上的新功能并自定义您对这些功能的体验。为此,我们将收集与您在站点中的活动相关的数据。此数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID、您的 Autodesk ID 等。根据功能测试,您可能会体验不同版本的站点;或者,根据访问者属性,您可能会查看个性化内容。. Adobe Target 隐私政策
      Google Analytics (Advertising)
      我们通过 Google Analytics (Advertising) 在 Google Analytics (Advertising) 提供支持的站点上投放数字广告。根据 Google Analytics (Advertising) 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Google Analytics (Advertising) 收集的与您相关的数据相整合。我们利用发送给 Google Analytics (Advertising) 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Google Analytics (Advertising) 隐私政策
      Trendkite
      我们通过 Trendkite 在 Trendkite 提供支持的站点上投放数字广告。根据 Trendkite 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Trendkite 收集的与您相关的数据相整合。我们利用发送给 Trendkite 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Trendkite 隐私政策
      Hotjar
      我们通过 Hotjar 在 Hotjar 提供支持的站点上投放数字广告。根据 Hotjar 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Hotjar 收集的与您相关的数据相整合。我们利用发送给 Hotjar 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Hotjar 隐私政策
      6 Sense
      我们通过 6 Sense 在 6 Sense 提供支持的站点上投放数字广告。根据 6 Sense 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 6 Sense 收集的与您相关的数据相整合。我们利用发送给 6 Sense 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. 6 Sense 隐私政策
      Terminus
      我们通过 Terminus 在 Terminus 提供支持的站点上投放数字广告。根据 Terminus 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 Terminus 收集的与您相关的数据相整合。我们利用发送给 Terminus 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. Terminus 隐私政策
      StackAdapt
      我们通过 StackAdapt 在 StackAdapt 提供支持的站点上投放数字广告。根据 StackAdapt 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 StackAdapt 收集的与您相关的数据相整合。我们利用发送给 StackAdapt 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. StackAdapt 隐私政策
      The Trade Desk
      我们通过 The Trade Desk 在 The Trade Desk 提供支持的站点上投放数字广告。根据 The Trade Desk 数据以及我们收集的与您在站点中的活动相关的数据,有针对性地提供广告。我们收集的数据可能包含您访问的页面、您启动的试用版、您播放的视频、您购买的东西、您的 IP 地址或设备 ID。可能会将此信息与 The Trade Desk 收集的与您相关的数据相整合。我们利用发送给 The Trade Desk 的数据为您提供更具个性化的数字广告体验并向您展现相关性更强的广告。. The Trade Desk 隐私政策
      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

      是否确定要简化联机体验?

      我们希望您能够从我们这里获得良好体验。对于上一屏幕中的类别,如果选择“是”,我们将收集并使用您的数据以自定义您的体验并为您构建更好的应用程序。您可以访问我们的“隐私声明”,根据需要更改您的设置。

      个性化您的体验,选择由您来做。

      我们重视隐私权。我们收集的数据可以帮助我们了解您对我们产品的使用情况、您可能感兴趣的信息以及我们可以在哪些方面做出改善以使您与 Autodesk 的沟通更为顺畅。

      我们是否可以收集并使用您的数据,从而为您打造个性化的体验?

      通过管理您在此站点的隐私设置来了解个性化体验的好处,或访问我们的隐私声明详细了解您的可用选项。