Ullah, SalimSalimUllahSahoo, Siva SatyendraSiva SatyendraSahooKumar, AkashAkashKumar2026-07-072026-07-072024979-8-3503-5638-02381-1560https://imec-publications.be/handle/20.500.12860/59765The widespread adoption of Artificial intelligence and Machine Learning (AI/ML) models across various fields, such as healthcare, autonomous vehicles, smart agriculture, and industrial automation, has led to a growing demand for efficient and scalable AI/ML solutions. However, as AI/ML algorithms grow more complex, their substantial memory requirements and high energy consumption pose significant challenges for deployment on resource-constrained embedded systems, such as wearable health monitors and IoT devices. To this end, various techniques, such as model pruning, knowledge distillation, quantization of model parameters, and employing approximate arithmetic operators, are commonly explored to overcome these challengesengEnabling Energy-efficient AI Computing: Leveraging Application-specific Approximations (Education Class)Proceedings paper10.1109/cases60062.2024.00014WOS:001709836300002