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Ensuring scientific reproducibility in bio-macromolecular modeling via extensive, automated benchmarks.

Julia Koehler LemanSergey LyskovSteven M LewisJared Adolf-BryfogleRebecca F AlfordKyle A BarlowZiv Ben-AharonDaniel P FarrellJason S FellWilliam A HansenAmeya HarmalkarJeliazko R JeliazkovGeorg KuenzeJustyna Dorota KryśAjasja LjubetičAmanda L LoshbaughJack MaguireRocco MorettiVikram Khipple MulliganMorgan L NancePhuong T NguyenShane Ó ConchúirShourya S Roy BurmanRituparna SamantaShannon T SmithFrank TeetsJohanna K S TiemannAndrew WatkinsHope WoodsBrahm J YachninChristopher D BahlChris Bailey-KelloggJulien S BakerRachel J HageyFrank DiMaioSagar D KhareTanja KortemmeJason W LabonteKresten Lindorff-LarsenJens MeilerWilliam R SchiefOra Schueler-FurmanJustin B SiegelAmelie SteinVladimir Yarov-YarovoyBrian KuhlmanAndrew Leaver-FayDominik GrontJeffrey J GrayRichard A Bonneau
Published in: Nature communications (2021)
Each year vast international resources are wasted on irreproducible research. The scientific community has been slow to adopt standard software engineering practices, despite the increases in high-dimensional data, complexities of workflows, and computational environments. Here we show how scientific software applications can be created in a reproducible manner when simple design goals for reproducibility are met. We describe the implementation of a test server framework and 40 scientific benchmarks, covering numerous applications in Rosetta bio-macromolecular modeling. High performance computing cluster integration allows these benchmarks to run continuously and automatically. Detailed protocol captures are useful for developers and users of Rosetta and other macromolecular modeling tools. The framework and design concepts presented here are valuable for developers and users of any type of scientific software and for the scientific community to create reproducible methods. Specific examples highlight the utility of this framework, and the comprehensive documentation illustrates the ease of adding new tests in a matter of hours.
Keyphrases
  • healthcare
  • primary care
  • mental health
  • randomized controlled trial
  • data analysis
  • machine learning
  • deep learning
  • high throughput
  • big data
  • single cell
  • artificial intelligence