13-02-2026 | Microchip Technology | Semiconductors
Microchip Technology has extended its edge AI offering with full-stack solutions that streamline the development of production-ready applications using its MCUs and MPUs – the devices that are located closest to the many sensors at the edge that gather sensor data, control motors, trigger alarms and actuators, and more.
The company's products are long-time embedded-design workhorses, and the new solutions turn its MCUs and MPUs into complete platforms for bringing secure, efficient and scalable intelligence to the edge. The company has rapidly built and expanded its growing, full-stack portfolio of silicon, software and tools that solve edge AI performance, power consumption and security challenges while simplifying implementation.
"AI at the edge is no longer experimental, it's expected, because of its many advantages over cloud implementations," said Mark Reiten, corporate vice president of Microchip's Edge AI business unit. "We created our Edge AI business unit to combine our MCUs, MPUs and FPGAs with optimised ML models plus model acceleration and robust development tools. Now, the addition of the first in our planned family of application solutions accelerates the design of secure and efficient intelligent systems that are ready to deploy in demanding markets."
The company's new full-stack application solutions for its MCUs and MPUs encompass pre-trained and deployable models as well as application code that can be modified, improved and applied to different environments. This can be done either through the company's embedded software and ML development tools or those from its partners. The new solutions include:
Engineers can employ familiar Microchip development platforms to rapidly prototype and deploy AI models, reducing complexity and accelerating design cycles. The company's MPLAB X IDE with its MPLAB Harmony software framework and MPLAB ML Development Suite plug-in provides a unified and scalable approach for supporting embedded AI model integration through optimised libraries. Developers can, for example, start with simple proof-of-concept tasks on 8-bit MCUs and move them to production-ready high-performance applications on Microchip's 16- or 32-bit MCUs.
For its FPGAs, the company's VectorBlox Accelerator SDK 2.0 AI/ML inference platform accelerates vision, HMI, sensor analytics and other computationally intensive workloads at the edge while also enabling training, simulation and model optimisation within a consistent workflow.
Other support includes training and enablement tools like the company's motor control reference design featuring its dsPIC DSCs for data extraction in a real-time edge AI data pipeline, and others for load disaggregation in smart e-metering, object detection and counting, and motion surveillance. The company also helps solve edge AI challenges through complementary components that are required for product design and development. These include PCIe devices that connect embedded compute at the edge and high-density power modules that enable edge AI in industrial automation and data centre applications.
The analyst firm IoT Analytics stated in its October 2025 market report that embedding edge AI capabilities directly into MCUs is among the top four industry trends, enabling AI-driven applications "… that reduce latency, enhance data privacy, and lower dependency on cloud infrastructure." Microchip's AI initiative reinforces this trend with its MCU and MPU platform, as well as its FPGAs. Edge AI ecosystems increasingly require support for both software AI accelerators and integrated hardware acceleration on multiple devices across a range of memory configurations.