Plotly library of Python can be very useful for data visualization and understanding the data simply and easily.
plotly.figure_factory.create_choropleth
A Choropleth Map is a map composed of colored polygons. It is used to represent spatial variations of a quantity.
Syntax: plotly.figure_factory.create_choropleth(fips, values, scope=[‘usa’], binning_endpoints=None, colorscale=None, order=None, legend_title=”, **layout_options)
Parameters:
fips ((list)) – it describes the list of FIPS values which correspond to the con catination of state and county ids.
values ((list)) – These are the values that will determine how the counties are colored.
scope ((list)) – it describes the list of states and/or states abbreviations. Fits all states in the camera tightly.
binning_endpoints ((list)) – it describes the ascending numbers which implicitly define real number intervals which are used as bins.
colorscale ((list)) – it is a list of colors with length equal to the number of categories of colors.
Example: Choropleth a few counties in California
Python3
import plotly.figure_factory as ff fips = [ '06021' , '06023' , '06027' , '06029' , '06033' , '06059' , '06047' , '06049' , '06051' , '06055' , '06061' ] values = range ( len (fips)) fig = ff.create_choropleth(fips = fips, values = values) fig.layout.template = None fig.show() |
Output: