Identifying Optimal Workload Offloading Partitions for CPU-PIM Graph Processing Accelerators
IEEE TRANSACTIONS ON VERY LARGE SCALE INTEGRATION (VLSI) SYSTEMS(2025)
Anhui Normal Univ | Chinese Acad Sci
Abstract
The integrated architecture that features both in-memory logic and host processors, or so-called "processing-in-memory" (PIM) architecture, is an emerging and promising solution to bridge the performance gap between the memory and host processors. In spite of the considerable potential of PIM, the workload offloading policy, which partitions the program and determines where code snippets are executed, is still a main challenge in PIM. In order to determine the best PIM offloading partitions, existing methods require in-depth program profiling to create the control flow graph (CFG) and then transform it into a graph-cut problem. These CFG-based solutions depend on detailed profiling of a crucial element, the execution time of basic blocks, to accurately assess the benefits of PIM offloading. The issue is that these execution times can change significantly in PIM, leading to inaccurate offloading decisions. To tackle this challenge, we present a novel PIM workload offloading framework called "RDPIM" for CPU-PIM graph processing accelerators, which systematically considers the variations in the execution time of basic blocks. By analyzing the relationship between data dependencies among workloads and the connectivity of input graphs, we identified three key features that can lead to variations in execution time. We developed a novel reuse distance (RD)-based model to predict the exact performance of basic blocks for optimal offloading decisions. We evaluate RDPIM using real-world graphs and compare it with some state-of-the-art PIM offloading approaches. Experiments have demonstrated that our method achieves an average speedup of 2x compared to CPU-only executions and up to 1.6x compared to state-of-the-art PIM offloading schemes.
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Key words
Program processors,Logic,Codes,Arrays,Runtime,Electronic mail,Accuracy,Very large scale integration,Training,Through-silicon vias,Graph processing,heterogenous systems,processing-in-memory (PIM),reuse distance (RD),workload offloading
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