While simulation has proven to help companies develop better products faster and more efficiently, it also produces copious amounts of data. Simulation process data management (SPDM) solutions further accelerate and improve the approach to product development and serve as the cornerstone for implementing and optimizing the digital thread in modern product development.
Ansys subject matter experts Jeff Bernier, global sales director of new and emerging technologies, and Tom Marnik, senior business development executive, sat down with industry leaders from CIMdata, Aras, VCollab, and Inensia to discuss how SPDM can drive digital transformation.
Sandeep Natu, CIMdata
Matteo Nicolich, Aras
Prasad Mandava, VCollab
Hernán Giagnorio, Inensia
Mandava: I think the business value for this is the industry wants to launch the products quickly. How do you launch your products quickly? You have only so many resources in the company. Now they have to do more. A company made the presumption that computing is cheap. So, instead of doing 100 analyses, we can do 10,000 analyses. So, you're producing more data. Simulation is becoming a big data problem. How do you manage this data? How do you manage these processes? I think they need to think beyond the current tools of preprocessors, solutions, and post-processors. They need to think about the new class of tools, and SPDM certainly falls into that.
So, as simulation becomes more and more critical, again, as I say, I don't think industries can live without it because it brings the data-driven approach — a central depository, ability to audit, ability to preserve, the ability to democratize.
Natu: When we look at how SPDM contributes to digital transformation, I believe the merit is no different than the basic argument for simulation itself. Simulation has, over the last two, two-and-a-half decades, essentially provided return on investment (ROI) by reducing the number of prototypes, ensuring that the products are launched on or before time, and ensuring that the overall cost of product development initiatives are reduced.
SPDM is the next evolution of that. As simulation becomes more and more entrenched in ideation, design performance validation, as well as operation, you have to have a backup data and process management system in place to ensure that the organization's intellectual property is stored and reused appropriately.
Giagnorio: This is the first question that we normally get from the IT department. Every single time that we start an SPDM project, the question is, why do we need an SPDM system if we already have PLM, and we can store simulation data within the PLM system? The fact is that the PLM system can store complete simulation data, but it's the same with Google Drive. You can always have a SharePoint or a repository where you can store simulation data.
The real added value of SPDM over the PLM is the ability to ensure data flow within multiple inputs and outputs, so things like requirements, CAD, and test results, and also the possibility to launch and visualize simulation data. Here, I think we are aligned with a data center. So SPDM provides an edge by complementing the PLM system. So you enable a proper digital thread, data gathering, and, of course, visualization and process management.
Giagnorio: The ability to have a centralized repository will ensure that everybody has access to the latest revisions. And you can also define role-based access, which means that data can be shared in a controlled manner. So, no more and no less than what is needed.
At the process level, I would say the possibility to know the status and to visualize the results before they are published is a very powerful way of reducing the development cycle. Personally, I do remember needing managers to sign reports, print them, and give them to me to see what is happening in that simulation and to provide recommendations for improvements. I believe that an SPDM solution will go a long way to share data as it's being built.
Natu: The bigger point that I want to make here is particularly about creation and management of AI models. As all of us are aware, we are at the very early stage of this entire AI revolution. Given that, it is important that we have a robust data and information framework that supports these initiatives over the years. None of these models are final models or final algorithms that users are going to consume. It is going to be a huge amount of evolution they are going to undergo. There is going to be a good amount of governance that is going to require. There has to be a place to keep them, look at their own life cycle, and ensure that their integrity is in place before they are implemented in the industry.
So, both essentially the framework for creating these models, which is essentially the data and process management framework, and then the life cycle of the model management in terms of creation of the model, managing the models, and evolution of the model itself.
Nicolich: It starts with the base. Instead of focusing on very advanced isolated groups with advanced needs and requirements, you need a common base for all the data for simulation that is for every simulation engineer, every department in your company that may have different level of maturity.
To hear the full discussion, watch the webinar “SPDM Panel Discussion: A Foundation to Enable the Enterprise Digital Thread.”
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Watch the webinar “SPDM Panel Discussion: A Foundation to Enable the Enterprise Digital Thread.”