Abstract:
While extensive research has focused on optimizing performance and efficiency in vision-based AI accelerators, an unexplored phenomenon, Clustering Similarity Effect, pre...Show MoreMetadata
Abstract:
While extensive research has focused on optimizing performance and efficiency in vision-based AI accelerators, an unexplored phenomenon, Clustering Similarity Effect, presents a significant opportunity for further improvement. This effect reveals that clusters of neighboring data points exhibit similar values, enabling the potential to skip redundant computations.To fully capitalize on the potential of the Clustering Similarity Effect (CSE), this work integrates hybrid bonding DRAM technology. We conduct a comprehensive analysis of the associated design considerations and integration overhead. Leveraging these insights, we propose a novel CSE-aware architecture specifically tailored for hybrid bonding memory. This architecture facilitates similarity detection and adapts to the inherent data characteristics associated with CSE.Compared with state-of-the-art 2D/2.5D AI accelerators, the hybrid bonding baseline demonstrates an average energy efficiency improvement of 2.89 \times \sim 14.28 \times and an area efficiency improvement of 2.67 \times \sim 7.68 \times. Incorporating the similarity optimizations further enhances energy efficiency and area efficiency improvement to 5.69 \times \sim 28.13 \times and 3.82 \times \sim 10.98 \times, respectively.
Date of Conference: 29 June 2024 - 03 July 2024
Date Added to IEEE Xplore: 01 August 2024
ISBN Information: