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

When you're ready to make this README your own, just edit this file and use the handy template below (or feel free to structure it however you want - this is just a starting point!). Thank you to makeareadme.com for this template.

Suggestions for a good README

Every project is different, so consider which of these sections apply to yours. The sections used in the template are suggestions for most open source projects. Also keep in mind that while a README can be too long and detailed, too long is better than too short. If you think your README is too long, consider utilizing another form of documentation rather than cutting out information.

Name

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Description

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Visuals

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Installation

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Usage

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Support

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Roadmap

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Contributing

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Project status

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org-alk-sausage-machine

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