WebTables with Sphinx: A Quick Tutorial¶. This is a short tutorial on how to make tables in Sphinx. While there are several possibilities to render tables on the HTML page, there are a few tricks to get tables look good in the PDF output at the same time. WebThe column (or list of columns) to use to create the index. skiprowsint, list-like or slice, optional Number of rows to skip after parsing the column integer. 0-based. If a sequence of integers or a slice is given, will skip the rows indexed by that sequence.
spyder-ide/spyder-docs-sphinx-theme - Github
WebIf the data is a pandas Dataframe, the return is the expected output of the underlying pyfunc object (typically a pandas Series or a numpy array). """ if isinstance(data, pd.DataFrame): return self._model.predict(data) elif isinstance(data, DataFrame): return_col = self._model_udf(*data._internal.data_spark_columns) # TODO: the columns should be … WebApr 19, 2024 · It appears that for some reason sphinx is able to find numpy, but it for some reason does not seem to recognize pandas, although both exist in the virtual environment … libertarian facebook photo memes
Jupyter notebooks — Sphinx Book Theme - Read the Docs
WebReturn the bool of a single element in the current object. clip ( [lower, upper, inplace]) Trim values at input threshold (s). combine_first (other) Combine Series values, choosing the calling Series’s values first. compare (other [, keep_shape, keep_equal]) Compare to another Series and show the differences. WebThe PyData Sphinx Theme — PyData Theme documentation The PyData Sphinx Theme # A clean, Bootstrap-based Sphinx theme by and for the PyData community. Built with Bootstrap Use Bootstrap classes and functionality in your documentation. Responsive Design Site sections will change behavior and size at different screen sizes. Light / Dark theme Web10 minutes to pandas Object creation Viewing data Selection Missing data Operations Merge Grouping Reshaping Time series Categoricals Plotting Importing and exporting data Gotchas Intro to data structures Series DataFrame Essential basic functionality Head and tail Attributes and underlying data Accelerated operations Flexible binary operations mcglashans furniture