Edge Impulse Integrates Microchip’s SAMA7G54 Microprocessor Into Its Platform to Easily Train Machine Learning Models

Edge-Impulse

Edge Impulse, the leading platform for building, deploying, and scaling edge machine learning models, announces Microchip Technology’s SAMA7G54 microprocessor (MPU) is now fully integrated into the Edge Impulse platform. This collaboration marks a significant milestone in advancing edge machine learning capabilities, particularly in camera-based applications.

The integration allows developers to build, train and deploy cutting-edge machine learning models directly on edge devices powered by the SAMA7G54. This development is set to accelerate the adoption of AI at the edge, offering unprecedented opportunities in various industries, from smart home devices to industrial automation.

“The Edge Impulse platform is designed to provide engineers with an easy-to-use device to develop AI/ML models,” said Zach Shelby, co-founder and CEO at Edge Impulse. “Our collaboration with Microchip to integrate the SAMA7G54 MPU into the platform aligns with our vision to empower developers to bring more AI products to market in weeks instead of months or years.”

Also Read: McAfee Appoints Craig Boundy as President and Chief Executive Officer

“This innovative solution leverages Microchip’s high-performance single-core MPU and the Edge Impulse platform to enable developers to train, evaluate and deploy machine learning (ML) models,” said Rod Drake, corporate vice president of Microchip’s MPU32 and MCU32 business units. “The adoption of AI at the edge is rapidly increasing across many applications and this solution is designed to significantly streamline the process from the design phase through implementation.”

Microchip’s SAMA7G54 is a high-performance single-core microprocessor that boasts several impressive features for edge AI applications. This powerful MPU supports camera-based edge machine learning tools like Edge Impulse’s Faster Objects, More Objects (FOMO) algorithm, which brings object detection to highly constrained devices, and image classification models, expanding the horizons for developers working on innovative AI solutions.

Further, the high efficiency SAMA7G54 is optimized for low power consumption without compromising performance and is equipped with an Arm® Cortex®-A7 core. The device also features enhanced connectivity with dual Ethernet options, a built-in camera using a 12-bit parallel or MIPI-CSI2 and audio subsystem, as well as advanced security such as secure boot and hardware cryptography accelerators.

SOURCE: BusinessWire