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This package aims to provide a workflow for users who want to perform chemical analyses and predict characteristics using the NIRS technique.
The process includes:
- sample selection - you can upload all your NIRS spectra and it'll help to select the samples to analyse chemically.
- model creation - the PINARD (https://github.com/GBeurier/pinard) package creates a prediction model with spectra and related chemical analysis.-
- predictions - the PINARD package uses the model to predict chemical values for unknown samples.
If one wants to use data stored in a SQL database, the config file is in the config/ folder.
This package is written in python. You can clone the repository: git clone https://src.koda.cnrs.fr/CEFE/PACE/nirs_workflow.git
Then install the requirements: pip install -r requirements.txt
(OPTIONNAL) To use Locally weighted PLS Regression for creation model, you will need to install Jchemo.jl (https://github.com/mlesnoff/Jchemo.jl), a Julia package.
> python
'>>> import julia
'>>> julia.install()
'>>> from julia import Pkg
'>>> Pkg.add(["Jchemo","DataFrames","Pandas"])
You can then run (CLI): streamlit run ./app.py from within your folder.
## Usage
The web app allows you to process sample selection, model creation and predictions.
## Documentation
The doc is generated with mkDoc and Python DocStrings.
From CLI, run
> mkdocs serve
Contributors:
- Nicolas Barthes (CNRS)
-