arXiv Open Access 2025

Efficient Chromosome Parallelization for Precision Medicine Genomic Workflows

Daniel Mas Montserrat Ray Verma Míriam Barrabés Francisco M. de la Vega Carlos D. Bustamante +1 lainnya
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Abstrak

Large-scale genomic workflows used in precision medicine can process datasets spanning tens to hundreds of gigabytes per sample, leading to high memory spikes, intensive disk I/O, and task failures due to out-of-memory errors. Simple static resource allocation methods struggle to handle the variability in per-chromosome RAM demands, resulting in poor resource utilization and long runtimes. In this work, we propose multiple mechanisms for adaptive, RAM-efficient parallelization of chromosome-level bioinformatics workflows. First, we develop a symbolic regression model that estimates per-chromosome memory consumption for a given task and introduces an interpolating bias to conservatively minimize over-allocation. Second, we present a dynamic scheduler that adaptively predicts RAM usage with a polynomial regression model, treating task packing as a Knapsack problem to optimally batch jobs based on predicted memory requirements. Additionally, we present a static scheduler that optimizes chromosome processing order to minimize peak memory while preserving throughput. Our proposed methods, evaluated on simulations and real-world genomic pipelines, provide new mechanisms to reduce memory overruns and balance load across threads. We thereby achieve faster end-to-end execution, showcasing the potential to optimize large-scale genomic workflows.

Penulis (6)

D

Daniel Mas Montserrat

R

Ray Verma

M

Míriam Barrabés

F

Francisco M. de la Vega

C

Carlos D. Bustamante

A

Alexander G. Ioannidis

Format Sitasi

Montserrat, D.M., Verma, R., Barrabés, M., Vega, F.M.d.l., Bustamante, C.D., Ioannidis, A.G. (2025). Efficient Chromosome Parallelization for Precision Medicine Genomic Workflows. https://arxiv.org/abs/2511.15977

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Tahun Terbit
2025
Bahasa
en
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arXiv
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Open Access ✓