Python package for processing UC module spectral data.

Overview

UC Module Python Package

How To Install

clone repo.

cd UC-module
pip install .

How to Use

uc.module.UC(measurment=str, dark=str, reference=str, header=boolian)

  • measurment : file path to measurment file.
from uc.module import UC

spectrum = UC(measurment='your-measurment-file.txt', dark='your-dark.txt (optional)', reference='your-reference-file.txt', header=False)

spectrum.absorbance()
Owner
Nicolai Haaber Junge
Researcher in heterogeneous catalysis at the University of Oslo.
Nicolai Haaber Junge
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