NMP-PaK: Near-Memory Processing Acceleration of Scalable De Novo Genome Assembly
Heewoo Kim, Sanjay Sri Vallabh Singapuram, Haojie Ye, Joseph Izraelevitz, Trevor Mudge, Ronald Dreslinski, Nishil Talati

TL;DR
NMP-PaK introduces a near-memory processing hardware-software co-design that significantly accelerates scalable de novo genome assembly by reducing memory footprint and increasing throughput, addressing key computational challenges.
Contribution
It presents a novel hardware-software co-design with channel-level NMP architecture and software optimizations for efficient, scalable genome assembly.
Findings
14X smaller memory footprint compared to state-of-the-art
16X performance improvement over CPU baseline
8.3X greater throughput under same resources
Abstract
De novo assembly enables investigations of unknown genomes, paving the way for personalized medicine and disease management. However, it faces immense computational challenges arising from the excessive data volumes and algorithmic complexity. While state-of-the-art de novo assemblers utilize distributed systems for extreme-scale genome assembly, they demand substantial computational and memory resources. They also fail to address the inherent challenges of de novo assembly, including a large memory footprint, memory-bound behavior, and irregular data patterns stemming from complex, interdependent data structures. Given these challenges, de novo assembly merits a custom hardware solution, though existing approaches have not fully addressed the limitations. We propose NMP-PaK, a hardware-software co-design that accelerates scalable de novo genome assembly through near-memory…
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