AI Edge Solutions
That Blend Performance and Portability
AI is becoming more integrated into our day-to-day lives. Smart cars, Siri, and face recognition software are just a few familiar products of AI, and applications running at the edge are projected to grow exponentially over the next few years. AI edge is important because it allows companies to provide extremely low latencies and collect data that improves neural networks.
For AI to be successful, it requires two main components: training and inferencing. Training takes an immense amount of computing power in the data center, and inferencing requires powerful but portable server equipment at the edge. Both of these components require advanced server hardware to power AI provider applications.
Intequus provides the hardware you need at the edge. Whether this is a portable option, like NVIDIA’s Jetson technology, or extremely powerful systems that provide thousands of tera operations per second (TOPS), we can help. Intequus can design, deploy, and manage your edge hardware so that you can focus on delivering the best AI solutions to your clients.
Custom Engineering for
AI Edge Solutions
We understand that AI edge needs range widely. Some AI companies deliver automated quality control services for the manufacturing line, while others provide medical image analysis or develop innovative applications for AI. Intequus can custom engineer your AI edge equipment to avoid wasted resources while giving you optimal performance.
Engineered Solutions For
AI Edge Infrastructure Customized for Your Use Case
Our devices are designed to solve your unique challenges. Whether you need an extremely portable solution, desktop computer, high-performance server rack, or something completely unique, we’ve got you covered. Discuss your needs with our engineering team, and they’ll help you create a solution that fits your organization’s requirements.
AI processes immense amounts of data, which requires fast storage to be effective. This article discusses five requirements for choosing the right AI storage.
Overloaded components in your IT infrastructure cause system bottlenecks. GPU virtualization allows you to run new applications and balance processor workloads.
Virtualization allows businesses to get the most out of their server resources. Learn which virtualization mistakes can hurt performance.