A Multicore Path to Connectomics-on-Demand

Alexander Matveev, Yaron Meirovitch, Hayk Saribekyan, Wiktor Jakubiuk, Tim Kaler, Gergely Odor, David Budden, Aleksandar Zlateski, Nir Shavit

Research output: Contribution to journalArticlepeer-review

2 Scopus citations

Abstract

The current design trend in large scale machine learning is to use distributed clusters of CPUs and GPUs with MapReduce-style programming. Some have been led to believe that this type of horizontal scaling can reduce or even eliminate the need for traditional algorithm development, careful parallelization, and performance engineering. This paper is a case study showing the contrary: that the benefits of algorithms, parallelization, and performance engineering, can sometimes be so vast that it is possible to solve "cluster-scale" problems on a single commodity multicore machine. Connectomics is an emerging area of neurobiology that uses cutting edge machine learning and image processing to extract brain connectivity graphs from electron microscopy images. It has long been assumed that the processing of connectomics data will require mass storage, farms of CPU/GPUs, and will take months (if not years) of processing time. We present a high-throughput connectomics-on-demand system that runs on a multicore machine with less than 100 cores and extracts connectomes at the terabyte per hour pace of modern electron microscopes.

Original languageEnglish
Pages (from-to)267-281
Number of pages15
JournalACM SIGPLAN Notices
Volume52
Issue number8
DOIs
StatePublished - 26 Jan 2017
Externally publishedYes

Funding

FundersFunder number
National Science Foundation1314547, IIS-1447786, CCF-1563880
Intelligence Advanced Research Projects Activity138076-5093555

    Keywords

    • machine learning
    • multicore programming

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