DocumentCode
3078741
Title
Scaling Machine Learning for Target Prediction in Drug Discovery using Apache Spark
Author
Harnie, Dries ; Vapirev, Alexander E. ; Wegner, Jorg Kurt ; Gedich, Andrey ; Steijaert, Marvin ; Wuyts, Roel ; De Meuter, Wolfgang
Author_Institution
Software Languages Lab., Vrije Univ. Brussel, Brussels, Belgium
fYear
2015
fDate
4-7 May 2015
Firstpage
871
Lastpage
879
Abstract
In the context of drug discovery, a key problem is the identification of candidate molecules that affect proteins associated with diseases. Inside Janssen Pharmaceutical, the Chemo genomics project aims to derive new candidates from existing experiments through a set of machine learning predictor programs, written in single-node C++. These programs take a long time to run and are inherently parallel, but do not use multiple nodes. We show how we reimplementation the pipeline using Apache Spark, which enabled us to lift the existing programs to a multi-node cluster without making changes to the predictors. We have benchmarked our Spark pipeline against the original, which shows almost linear speedup up to 8 nodes. In addition, our pipeline generates fewer intermediate files while allowing easier check pointing and monitoring.
Keywords
C++ language; bioinformatics; checkpointing; diseases; drugs; learning (artificial intelligence); pattern clustering; pipeline processing; proteins; Apache spark; Chemogenomics project; Janssen Pharmaceutica; Spark pipeline; candidate molecule identification; checkpointing; drug discovery; machine learning predictor programs; machine learning scaling; multinode cluster; single-node C++; target prediction; Compounds; Drugs; Pipelines; Predictive models; Proteins; Sparks; Training data; chemogenomics; clusters; distributed computing; life sciences; machine learning; spark;
fLanguage
English
Publisher
ieee
Conference_Titel
Cluster, Cloud and Grid Computing (CCGrid), 2015 15th IEEE/ACM International Symposium on
Conference_Location
Shenzhen
Type
conf
DOI
10.1109/CCGrid.2015.50
Filename
7152571
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