A Backend Platform for Supporting the Reproducibility of Computational Experiments
L\'azaro Costa, Susana Barbosa, J\'acome Cunha

TL;DR
This paper introduces a platform that enables researchers to create reproducible computational experiments, ensuring consistent results across different environments and facilitating verification and replication of scientific work.
Contribution
The authors present an integrated development environment that simplifies sharing, configuring, and executing reproducible experiments across diverse computational environments.
Findings
Successfully reproduced 80% of tested experiments
Achieved consistent results with minimal effort
Platform supports diverse datasets and environments
Abstract
In recent years, the research community has raised serious questions about the reproducibility of scientific work. In particular, since many studies include some kind of computing work, reproducibility is also a technological challenge, not only in computer science, but in most research domains. Replicability and computational reproducibility are not easy to achieve, not only because researchers have diverse proficiency in computing technologies, but also because of the variety of computational environments that can be used. Indeed, it is challenging to recreate the same environment using the same frameworks, code, data sources, programming languages, dependencies, and so on. In this work, we propose an Integrated Development Environment allowing the share, configuration, packaging and execution of an experiment by setting the code and data used and defining the programming…
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Taxonomy
TopicsScientific Computing and Data Management · Data Visualization and Analytics · Research Data Management Practices
