A Python toolbox to churn out organic alkalinity calculations with minimal brain engagement.

Overview

Organic Alkalinity Sausage Machine

A Python toolbox to churn out organic alkalinity calculations with minimal brain engagement.

Getting started

To make it easy for you to get started with GitLab, here's a list of recommended next steps.

Already a pro? Just edit this README.md and make it your own. Want to make it easy? Use the template at the bottom!

Add your files

cd existing_repo
git remote add origin https://gitlab.com/charles-turner/organic-alkalinity-sausage-machine.git
git branch -M main
git push -uf origin main

Integrate with your tools

Collaborate with your team

Test and Deploy

Use the built-in continuous integration in GitLab.


Editing this README

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org-alk-sausage-machine

Owner
Charles Turner
PhD Oceanographer at University of Southampton
Charles Turner
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