Preprocessing is a critical step in the analysis pipeline
of spectroscopic
data. However, students are rarely introduced to preprocessing when
learning spectral techniques in laboratory courses which in turn may
affect and delay their progress in the field. Despite its undoubtable
importance, students will be mainly performing spectroscopic analysis
in the context of a research project where preprocessing is encountered
as part of a routine or “recipe” to follow. In this
work, a Python-based application has been developed that allows facile
application of common spectral preprocessing techniques with instantaneous
results to support student learning. The developed application, i.e.
Porchlight, and supplied Jupyter notebooks can substitute costly commercial
software and make spectroscopic analysis widely available to students,
trainees, and users in general.
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