Alif Semiconductor announced a significant breakthrough in implementing AI vision processing on edge MCUs.
Arif Semiconductor has announced a major breakthrough in enabling AI vision processing on edge MCUS. This was achieved by introducing full support for the Nvidia TAO model training Kit on the Ensemble and Balletto MCU families, as well as the Edge Impulse platform.
Henrik Flodell, Senior Marketing Director at Arif Semiconductor, said: "With the Arif AI-optimized MCU ecosystem, high-end embedded vision processing is transitioned from large, expensive microprocessors to the next generation of edge MCUS. Edge Impulse's integration of the TAO toolkit greatly simplifies the development and deployment of AI vision processing models on Arif MCUS."
The TAO toolkit has generated a lot of enthusiasm among edge AI device developers because it provides a broad training dataset for common vision processing applications and supports transfer learning from pre-trained models. This innovation is expected to significantly reduce the cost, time and effort that embedded device Oems typically spend on AI vision application model development.
To date, TAO-trained models deployed on low-power MCUS for edge applications have not been tested and validated. Now, with Nvidia TAO fully integrated into its platform, Edge Impulse has established a streamlined process to deploy TAO models on the Alif Ensemble and Balletto family of MCUS and fusion processors. Alif's product is fully integrated into the Edge Impulse platform and uses Arm Ethos-U55, an Nvidia optimized TAO toolkit NPU.
Embedded developers seeking to implement AI vision applications such as people counting, intruder detection, or robotics can now use the TAO training kit and its data set, Confidently deploy pre-trained TAO models or custom models developed by Edge Impulse transfer learning on Alif Ensemble or Balletto mcu.
Adam Benzion, senior vice president of Edge Impulse, added, "The TAO toolkit accelerates the generation of effective machine learning models, but it does not address the deployment of these models on edge-optimized hardware. By partnering with Alif, we address this challenge by providing a fully integrated workflow, from the pre-trained model of the TAO toolkit to the deployment on the Alif edge MCUS."
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