REASON: Accelerating Probabilistic Logical Reasoning for Scalable Neuro-Symbolic Intelligence
Zishen Wan, Che-Kai Liu, Jiayi Qian, Hanchen Yang, Arijit Raychowdhury, Tushar Krishna

TL;DR
REASON is a specialized acceleration framework that significantly improves the efficiency and speed of probabilistic logical reasoning in neuro-symbolic AI systems, enabling real-time performance and scalability.
Contribution
It introduces a unified graph representation and hardware-software co-design to accelerate probabilistic logical reasoning in neuro-symbolic AI.
Findings
Achieves 12-50x speedup over GPUs
Provides 310-681x energy efficiency improvements
Enables real-time reasoning in 0.8 seconds
Abstract
Neuro-symbolic AI systems integrate neural perception with symbolic reasoning to enable data-efficient, interpretable, and robust intelligence beyond purely neural models. Although this compositional paradigm has shown superior performance in domains such as reasoning, planning, and verification, its deployment remains challenging due to severe inefficiencies in symbolic and probabilistic inference. Through systematic analysis of representative neuro-symbolic workloads, we identify probabilistic logical reasoning as the inefficiency bottleneck, characterized by irregular control flow, low arithmetic intensity, uncoalesced memory accesses, and poor hardware utilization on CPUs and GPUs. This paper presents REASON, an integrated acceleration framework for probabilistic logical reasoning in neuro-symbolic AI. REASON introduces a unified directed acyclic graph representation that captures…
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Taxonomy
TopicsFerroelectric and Negative Capacitance Devices · Advanced Memory and Neural Computing · Advanced Neural Network Applications
