TL;DR
This paper offers practical computing tools and techniques tailored for researchers new to scientific computing, synthesizing community experiences and best practices to improve research reproducibility and efficiency.
Contribution
It provides a curated set of good practices specifically designed for beginners in research computing, based on extensive community input and workshops.
Findings
Community-driven recommendations enhance research reproducibility.
Practical tools improve efficiency for new researchers.
Guidelines are accessible for those new to scientific computing.
Abstract
We present a set of computing tools and techniques that every researcher can and should adopt. These recommendations synthesize inspiration from our own work, from the experiences of the thousands of people who have taken part in Software Carpentry and Data Carpentry workshops over the past six years, and from a variety of other guides. Unlike some other guides, our recommendations are aimed specifically at people who are new to research computing.
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