Perspectives on automated composition of workflows in the life sciences

Author:

Lamprecht Anna-LenaORCID,Palmblad MagnusORCID,Ison Jon,Schwämmle VeitORCID,Al Manir Mohammad Sadnan,Altintas Ilkay,Baker Christopher J. O.,Ben Hadj Amor Ammar,Capella-Gutierrez SalvadorORCID,Charonyktakis Paulos,Crusoe Michael R.ORCID,Gil Yolanda,Goble Carole,Griffin Timothy J.ORCID,Groth PaulORCID,Ienasescu Hans,Jagtap PratikORCID,Kalaš MatúšORCID,Kasalica Vedran,Khanteymoori AlirezaORCID,Kuhn Tobias,Mei Hailiang,Ménager Hervé,Möller Steffen,Richardson Robin A.ORCID,Robert Vincent,Soiland-Reyes StianORCID,Stevens Robert,Szaniszlo Szoke,Verberne Suzan,Verhoeven Aswin,Wolstencroft KatherineORCID

Abstract

Scientific data analyses often combine several computational tools in automated pipelines, or workflows. Thousands of such workflows have been used in the life sciences, though their composition has remained a cumbersome manual process due to a lack of standards for annotation, assembly, and implementation. Recent technological advances have returned the long-standing vision of automated workflow composition into focus. This article summarizes a recent Lorentz Center workshop dedicated to automated composition of workflows in the life sciences. We survey previous initiatives to automate the composition process, and discuss the current state of the art and future perspectives. We start by drawing the “big picture” of the scientific workflow development life cycle, before surveying and discussing current methods, technologies and practices for semantic domain modelling, automation in workflow development, and workflow assessment. Finally, we derive a roadmap of individual and community-based actions to work toward the vision of automated workflow development in the forthcoming years. A central outcome of the workshop is a general description of the workflow life cycle in six stages: 1) scientific question or hypothesis, 2) conceptual workflow, 3) abstract workflow, 4) concrete workflow, 5) production workflow, and 6) scientific results. The transitions between stages are facilitated by diverse tools and methods, usually incorporating domain knowledge in some form. Formal semantic domain modelling is hard and often a bottleneck for the application of semantic technologies. However, life science communities have made considerable progress here in recent years and are continuously improving, renewing interest in the application of semantic technologies for workflow exploration, composition and instantiation. Combined with systematic benchmarking with reference data and large-scale deployment of production-stage workflows, such technologies enable a more systematic process of workflow development than we know today. We believe that this can lead to more robust, reusable, and sustainable workflows in the future.

Funder

European Commission Horizon 2020 Framework Programme

Publisher

F1000 Research Ltd

Subject

General Pharmacology, Toxicology and Pharmaceutics,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine

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