DE · Topics · Resources · Design · Sponsored Content

Using Synthetic Datasets to Train Embedded AI

This study demonstrates training and validating embedded AI algorithms using synthetic datasets derived from large numbers of parametric cloud simulations.

Using synthetic datasets to train AI is a fast, cost effective way to deploy robust embedded algorithms for new hardware technologies. Synthetic datasets generated from cloud simulations can be created in hours using the OnScale platform, compared to weeks or months to create similar datasets from physical experimentation.

This whitepaper discusses how an embedded AI algorithm for 3D smartphone touchscreens was trained and validated using the results of 8,000 simulations run in parallel on AWS. The demonstrated approach of using synthetic datasets to train AI networks can drastically reduce cost, risk, and time for the development of new hardware technologies.

OnScale is fully cloud-enabled, empowering engineers with the high-performance computing (HPC) resources needed to explore their design space quickly and with ease. Semiconductors, MEMS, sensors, medical devices, and 5G and IoT RF systems are among the many applications that can benefit from design and optimization with OnScale. To learn more visit onscale.com/applications.

Contents

  • Problem: 3D touch technology operation
  • Introduction: Using Synthetic Datasets to Train Embedded AI
  • Approach: Simulating a synthetic data set & AI training
  • Results: AI Performance

Fill out the information below to download the resource.

By downloading this content, I agree to receive the DE 24/7 Newswire, a twice weekly free email newsletter (you may choose to opt-out in the newsletter).

Latest News

BigRep Reintroduces Large-Scale 3D Printer Updated ONE.5
Features include advanced dual PEX2 extruders, expanded material compatibility with two print bed options, an intuitive user interface, and a...

Ulendo Launches Add-In Laser Path Optimization Software
Ulendo supports Dyndrite to enhance performance of metal 3D printers with laser path optimization that Reduces Heat-Induced Deformation and Stress

Altair and Aerospace Startup Team Up for eVTOLs
The collaboration, established within Altair's Aerospace Startup Acceleration Program (ASAP), is designed to enhance accelerate product development and slash prototyping...

Q3 Client CPU shipments Up From Last Quarter
CPU shipments also up 7.8% from last year.

3D Printing Companies Establish Consortium
Group of leading companies has a mission to address top challenges in manufacturing and create a common language across industries...

RAPID + TCT 2025 to Return to Detroit
Show is celebrating 35 years with education, a large show floor and strategic colocation with mobility and additive heavy hitters, according...

All posts