FreshRSS

Normální zobrazení

Jsou dostupné nové články, klikněte pro obnovení stránky.
PředevčíremHlavní kanál
  • ✇Semiconductor Engineering
  • Dedicated Approximate Computing Framework To Efficiently Compute PCs On HardwareTechnical Paper Link
    A technical paper titled “On Hardware-efficient Inference in Probabilistic Circuits” was published by researchers at Aalto University and UCLouvain. Abstract: “Probabilistic circuits (PCs) offer a promising avenue to perform embedded reasoning under uncertainty. They support efficient and exact computation of various probabilistic inference tasks by design. Hence, hardware-efficient computation of PCs is highly interesting for edge computing applications. As computations in PCs are based on arit
     

Dedicated Approximate Computing Framework To Efficiently Compute PCs On Hardware

20. Červen 2024 v 20:28

A technical paper titled “On Hardware-efficient Inference in Probabilistic Circuits” was published by researchers at Aalto University and UCLouvain.

Abstract:

“Probabilistic circuits (PCs) offer a promising avenue to perform embedded reasoning under uncertainty. They support efficient and exact computation of various probabilistic inference tasks by design. Hence, hardware-efficient computation of PCs is highly interesting for edge computing applications. As computations in PCs are based on arithmetic with probability values, they are typically performed in the log domain to avoid underflow. Unfortunately, performing the log operation on hardware is costly. Hence, prior work has focused on computations in the linear domain, resulting in high resolution and energy requirements. This work proposes the first dedicated approximate computing framework for PCs that allows for low-resolution logarithm computations. We leverage Addition As Int, resulting in linear PC computation with simple hardware elements. Further, we provide a theoretical approximation error analysis and present an error compensation mechanism. Empirically, our method obtains up to 357x and 649x energy reduction on custom hardware for evidence and MAP queries respectively with little or no computational error.”

Find the technical paper here. Published May 2024 (preprint). CODE: https://github.com/lingyunyao/AAI_Probabilistic_Circuits

Yao, Lingyun, Martin Trapp, Jelin Leslin, Gaurav Singh, Peng Zhang, Karthekeyan Periasamy, and Martin Andraud. “On Hardware-efficient Inference in Probabilistic Circuits.” arXiv preprint arXiv:2405.13639 (2024).

Related Reading
Architecting Chips For High-Performance Computing
Data center IC designs are evolving, based on workloads, but making the tradeoffs for those workloads is not always straightforward.
AI Tradeoffs At The Edge
The best ways to optimize AI efficiency today, and other options under development.

The post Dedicated Approximate Computing Framework To Efficiently Compute PCs On Hardware appeared first on Semiconductor Engineering.

❌
❌