How can you design an effective ML library for edge devices?
Machine learning (ML) is a powerful technique for extracting insights from data and making predictions. However, not all ML applications can run on cloud servers or powerful desktops. Sometimes, you need to deploy ML models on edge devices, such as smartphones, IoT sensors, drones, or robots. These devices have limited resources, such as memory, battery, processing power, and network connectivity. Therefore, you need to design an effective ML library that can run on these devices efficiently and reliably. In this article, you will learn some key aspects of designing an ML library for edge devices, such as:
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Keval MorabiaGen AI @NVIDIA (Acquired) | UIUC | BITS Pilani | Content Creator | 15k+
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