AIA: A 16nm Multicore SoC for Approximate Inference Acceleration Exploiting Non-normalized Knuth-Yao Sampling and Inter-Core Register Sharing
Abstract
Probabilistic graphical models (PMs) are popular to empower machine learning with the ability of reasoning and decision-making. To perform approximate inference in PMs, sampling-based Markov Chain Monte Carlo (MCMC) algorithms are commonly employed. Unfortunately, MCMC is compute-intensive and hard to run in parallel, resulting in inefficient execution on modern CPU/GPU platforms. This paper proposes , an Approximate Inference Accelerator designed to empower decision-making and reasoning at the edge. consists of a RISC-V host, and a 2D mesh of 16 customized RISC-V cores optimized to efficiently support PM inference, each featuring (i) a novel non-normalized Knuth-Yao sampler and interpolation unit; and (ii) core-to-core direct data access via the register file, which provides solutions for compute-intensive operations. To fully exploit the parallel potential of Markov Chain Monte Carlo (MCMC) algorithms, a customized compiler chain has been developed for effective spatial mapping and scheduling on the chip. can generate 1277 MSample/s at 0.9V and 20 GSamples/s/W at 0.7V which is up to 2× faster and 1.45x more energy efficient compared to the previous state-of-the-art Markov Random Field (MRF) accelerator. We further map Bayesian Networks benchmark onto to show the flexibility of our design.
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