A Unified Memory Perspective for Probabilistic Trustworthy AI
AI 摘要
论文提出统一的内存视角分析概率可信AI,揭示随机采样对内存效率的影响,并评估新兴计算架构。
主要贡献
- 提出了统一的内存访问视角,将确定性访问视为随机采样的极限情况
- 定义了内存级评估标准,包括统一操作、分布可编程性等
- 分析了传统架构的局限性,并考察了新兴的概率计算内存方法
方法论
论文采用分析和评估的方法,提出了统一视角和评估标准,并对现有架构和新兴方法进行了分析。
原文摘要
Trustworthy artificial intelligence increasingly relies on probabilistic computation to achieve robustness, interpretability, security and privacy. In practical systems, such workloads interleave deterministic data access with repeated stochastic sampling across models, data paths and system functions, shifting performance bottlenecks from arithmetic units to memory systems that must deliver both data and randomness. Here we present a unified data-access perspective in which deterministic access is treated as a limiting case of stochastic sampling, enabling both modes to be analyzed within a common framework. This view reveals that increasing stochastic demand reduces effective data-access efficiency and can drive systems into entropy-limited operation. Based on this insight, we define memory-level evaluation criteria, including unified operation, distribution programmability, efficiency, robustness to hardware non-idealities and parallel compatibility. Using these criteria, we analyze limitations of conventional architectures and examine emerging probabilistic compute-in-memory approaches that integrate sampling with memory access, outlining pathways toward scalable hardware for trustworthy AI.