Getting Started =============== The getting started guide aims to get you using pint-pandas productively as quickly as possible. What is Pint-pandas? -------------------- The Pandas package provides powerful DataFrame and Series abstractions for dealing with numerical, temporal, categorical, string-based, and even user-defined data (using its ExtensionArray feature). The Pint package provides a rich and extensible vocabulary of units for constructing Quantities and an equally rich and extensible range of unit conversions to make it easy to perform unit-safe calculations using Quantities. Pint-pandas provides PintArray, aPandas ExtensionArray that efficiently implements Pandas DataFrame and Series functionality as unit-aware operations where appropriate. Those who have used Pint know well that good units discipline often catches not only simple mistakes, but sometimes more fundamental errors as well. Pint-pandas can reveal similar errors when it comes to slicing and dicing Pandas data. Installation ------------ Pint-pandas requires pint and pandas. .. grid:: 2 .. grid-item-card:: Prefer pip? **pint-pandas** can be installed via pip from `PyPI `__. ++++++++++++++++++++++ .. code-block:: bash pip install pint-pandas .. grid-item-card:: Working with conda? **pint-pandas** is part of the `Conda-Forge `__ channel and can be installed with Anaconda or Miniconda: ++++++++++++++++++++++ .. code-block:: bash conda install -c conda-forge pint-pandas That's all! You can check that Pint is correctly installed by starting up python, and importing Pint: .. code-block:: python >>> import pint_pandas >>> pint_pandas.__version__ # doctest: +SKIP .. toctree:: :maxdepth: 2 :hidden: tutorial faq