DE · Topics · Resources · Simulate · 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

Skip the Mesh, Print from CAD
Skipping the mesh and printing from CAD, some argue, is long overdue.

SPEE3D Collaborates With Northeastern University Kostas Research Institute
Purpose of collaborative effort is to bring additive manufacturing to students and military.

Azure Printed Homes Launches $4.2 MM Crowdfunding Campaign
Company named a 2025 SXSW Innovation finalist in Urban Experience for Sustainable Homes

JT File Importer Updated in KISTERS 3D CAD Visualization App
The new JT importer maximizes efficiency under multithreading demands.

Altair and Cranfield University Sign Simulation-Focused MoU
Organizations agree to advance use of simulation, data analytics, and AI.

Role of Additive Manufacturing Through 2030
The global market for aerospace additive manufacturing is estimated at US$1.2 billion in 2023 and is projected to reach US$3.8 billion...

All posts