vastorbit.VastColumn.pie¶
- VastColumn.pie(method: Literal[None, 'density', 'count', 'avg', 'min', 'max', 'sum'] | str = 'density', of: str | None = None, max_cardinality: int = 6, h: Annotated[int | float | Decimal, 'Python Numbers'] = 0, kind: Literal['auto', 'donut', 'rose', '3d'] = 'auto', categoryorder: Literal['trace', 'category ascending', 'category descending', 'total ascending', 'total descending'] = 'trace', chart: PlottingBase | TableSample | Axes | mFigure | Figure | None = None, **style_kwargs) PlottingBase | TableSample | Axes | mFigure | Figure¶
Draws the pie chart of the VastColumn based on an aggregation.
- Parameters:
method (str, optional) –
The method used to aggregate the data.
- count:
Number of elements.
- density:
Percentage of the distribution.
- mean:
Average of the
VastColumnsof.
- min:
Minimum of the
VastColumnsof.
- max:
Maximum of the
VastColumnsof.
- sum:
Sum of the
VastColumnsof.
- q%:
q Quantile of the
VastColumnsof(ex: 50% to get the median).
- None:
No Aggregations.
It can also be a cutomized aggregation (ex:
AVG(column1) + 5).of (str, optional) – The VastColumn used to compute the aggregation.
max_cardinality (int, optional) – Maximum number of distinct elements for VastColumns to be used as categorical. For these elements, no h is picked or computed.
h (PythonNumber, optional) – Interval width of the bar. If empty, an optimized h is computed.
kind (str, optional) –
The type of pie chart.
- auto:
Regular pie chart.
- donut:
Donut chart.
- rose:
Rose chart.
3d: 3D Pie.
categoryorder (str, optional) –
How to sort the bars. One of the following options:
trace (no transformation)
category ascending
category descending
total ascending
total descending
chart (PlottingObject, optional) – The chart object to plot on.
**style_kwargs – Any optional parameter to pass to the plotting functions.
- Returns:
Plotting Object.
- Return type:
obj
Examples
Note
The below example is a very basic one. For other more detailed examples and customization options, please see Pie Chart
Let’s begin by importing vastorbit.
import vastorbit as vo
Let’s also import numpy to create a dataset.
import numpy as np
Let’s generate a dataset using the following data.
data = vo.VastFrame( { "gender": ['M', 'M', 'M', 'F', 'F', 'F', 'F'], "grade": ['A','B','C','A','B','B', 'B'], } )
Now we are ready to draw the plot:
data["grade"].pie()