March 12, 2025 /SemiMedia/ — Qualcomm Technologies has announced an agreement to acquire Edge Impulse, enhancing its AI and Internet of Things (IoT) capabilities while expanding its developer ecosystem.
The acquisition aligns with Qualcomm’s IoT strategy, which includes a comprehensive chipset portfolio, a unified software architecture, developer resources, ecosystem partnerships, and integrated solutions to address diverse industry needs. As AI adoption in IoT accelerates, businesses benefit from real-time data collection, AI-driven analytics, and automated decision-making, optimizing operational efficiency. Qualcomm’s leadership in edge AI and IoT positions it to drive this transformation.
Since 2024, Qualcomm has refined its strategy to serve various IoT segments with integrated hardware, software, and services, targeting industries such as consumer electronics, security, healthcare, retail, energy, and enterprise solutions.
Edge Impulse’s end-to-end edge AI platform, used by over 170,000 developers, enables easy creation, deployment, and monitoring of AI models on a wide range of edge devices. Supporting microcontrollers (MCUs) and processors from multiple semiconductor vendors, the platform features AI acceleration and a comprehensive suite of tools for data collection, model training, deployment, and monitoring—requiring little to no coding. Applications span asset tracking, manufacturing, anomaly detection, and predictive maintenance, leveraging AI technologies such as computer vision, time-series data analysis, audio event detection, and speech recognition.
Following the acquisition, Qualcomm aims to optimize Edge Impulse’s platform for its Qualcomm Dragonwing processors, enhancing AI inference, computer vision, and graphics processing on edge devices. Integration with Qualcomm AI Hub is expected to deliver up to 4x AI inference performance gains while reducing model size and memory usage. Currently, Edge Impulse supports Dragonwing QCS6490 and QCS5430 processors, with plans to expand compatibility to additional industrial and embedded IoT processors.
All Comments (0)