In [ ]:
import numpy as np
import holoviews as hv
hv.extension('plotly')
Area
elements are Curve
elements where the area below the line is filled. Like Curve
elements, Area
elements are used to display the development of quantitative values over an interval or time period. Area
Elements may also be stacked to display multiple data series in a cumulative fashion over the value dimension.
The data of an Area
Element should be tabular with one key dimension representing the samples over the interval or the timeseries and one or two value dimensions. A single value dimension will fill the area between the curve and the x-axis, while two value dimensions will fill the area between the curves. See the Tabular Datasets user guide for supported data formats, which include arrays, pandas dataframes and dictionaries of arrays.
In [ ]:
xs = np.linspace(0, np.pi*4, 40)
hv.Area((xs, np.sin(xs)))
In [ ]:
X = np.linspace(0,3,200)
Y = X**2 + 3
Y2 = np.exp(X) + 2
Y3 = np.cos(X)
hv.Area((X, Y, Y2), vdims=['y', 'y2']) * hv.Area((X, Y, Y3), vdims=['y', 'y3'])
Areas are also useful to visualize multiple variables changing over time, but in order to be able to compare them the areas need to be stacked. To do this, use the Area.stack
classmethod to stack multiple Area
elements in an (Nd)Overlay.
In this example we will generate a set of 5 arrays representing percentages and create an Overlay
of them. Then we simply call the stack
method with this overlay to get a stacked area chart.
In [ ]:
values = np.random.rand(5, 20)
percentages = (values/values.sum(axis=0)).T*100
value_dim = hv.Dimension('value', unit='%')
overlay = hv.Overlay([hv.Area(percentages[:, i], vdims=value_dim) for i in range(5)])
overlay + hv.Area.stack(overlay)
For full documentation and the available style and plot options, use hv.help(hv.Area).