Python periodic table module

Overview

elemenpy

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Hello! elements.py is a small Python periodic table module that is used for calling certain information about an element.

Installation

  1. Install Python and pip here, if they are not installed already.
  2. Go to your command-line interface of choice and write the command pip install elemenpy.

Usage

Elemenpy needs to be imported with the usage of import elements at the top of the Python file.

Examples of usage:

from elements import elements

print(elements.symbol(1)) # should be H
print(elements.name(27)) # should be Cobalt
print(elements.mass(59)) # should be 140.9077

Contributing

The Elemenpy team welcomes all contributions, please see the contributing guidelines file here.

Testing

Elemenpy requires pytest to run its tests in the tests/ directory. All pull requests to the main branch will be linted and tested by CircleCI. In addition, CircleCI will upload a coverage report to Codacy, allowing us to see current test coverage and other code smells.

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