Apply func(self, *args, **kwargs), and return the result.
Function to apply to the Styler. Alternatively, a (callable, keyword) tuple where keyword is a string indicating the keyword of callable that expects the Styler.
Arguments passed to func.
A dictionary of keyword arguments passed into func.
The value returned by func.
See also
DataFrame.pipeAnalogous method for DataFrame.
Styler.applyApply a CSS-styling function column-wise, row-wise, or table-wise.
Notes
Like DataFrame.pipe(), this method can simplify the application of several user-defined functions to a styler. Instead of writing:
f(g(df.style.format(precision=3), arg1=a), arg2=b, arg3=c)
users can write:
(df.style.format(precision=3)
.pipe(g, arg1=a)
.pipe(f, arg2=b, arg3=c))
In particular, this allows users to define functions that take a styler object, along with other parameters, and return the styler after making styling changes (such as calling Styler.apply() or Styler.set_properties()).
Examples
Common Use
A common usage pattern is to pre-define styling operations which can be easily applied to a generic styler in a single pipe call.
>>> def some_highlights(styler, min_color="red", max_color="blue"):
... styler.highlight_min(color=min_color, axis=None)
... styler.highlight_max(color=max_color, axis=None)
... styler.highlight_null()
... return styler
>>> df = pd.DataFrame([[1, 2, 3, pd.NA], [pd.NA, 4, 5, 6]], dtype="Int64")
>>> df.style.pipe(some_highlights, min_color="green")
Since the method returns a Styler object it can be chained with other methods as if applying the underlying highlighters directly.
>>> (df.style.format("{:.1f}")
... .pipe(some_highlights, min_color="green")
... .highlight_between(left=2, right=5))
Advanced Use
Sometimes it may be necessary to pre-define styling functions, but in the case where those functions rely on the styler, data or context. Since Styler.use and Styler.export are designed to be non-data dependent, they cannot be used for this purpose. Additionally the Styler.apply and Styler.format type methods are not context aware, so a solution is to use pipe to dynamically wrap this functionality.
Suppose we want to code a generic styling function that highlights the final level of a MultiIndex. The number of levels in the Index is dynamic so we need the Styler context to define the level.
>>> def highlight_last_level(styler):
... return styler.apply_index(
... lambda v: "background-color: pink; color: yellow", axis="columns",
... level=styler.columns.nlevels-1
... )
>>> df.columns = pd.MultiIndex.from_product([["A", "B"], ["X", "Y"]])
>>> df.style.pipe(highlight_last_level)
Additionally suppose we want to highlight a column header if there is any missing data in that column. In this case we need the data object itself to determine the effect on the column headers.
>>> def highlight_header_missing(styler, level):
... def dynamic_highlight(s):
... return np.where(
... styler.data.isna().any(), "background-color: red;", ""
... )
... return styler.apply_index(dynamic_highlight, axis=1, level=level)
>>> df.style.pipe(highlight_header_missing, level=1)
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https://pandas.pydata.org/pandas-docs/version/2.3.0/reference/api/pandas.io.formats.style.Styler.pipe.html