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plotly.express.line_3d() function in Python

Plotly library of Python can be very useful for data visualization and understanding the data simply and easily. Plotly graph objects are a high-level interface to plotly which are easy to use.

plotly.express.line_3d() function

This function is used to create a 3D line plot and can be used with pandas dataframes. Each row of dataframe is represented by a symbol mark in 3D space in the line plot.



Syntax: plotly.express.line_3d(data_frame=None, x=None, y=None, z=None, color=None, line_dash=None, text=None, line_group=None, hover_name=None, hover_data=None, title=None, template=None, width=None, height=None)

Parameters:



data_frame: DataFrame or array-like or dict needs to be passed for column names.

x, y, z: This parameters is either a name of a column in data_frame, or a pandas Series or array_like object. Values from this column or array_like are used to position marks along the x, y and z axis in cartesian coordinates respectively.

color: This parameters assign color to marks.

line_dash: This parameter is used to assign dash-patterns to lines.

line_group: This parameter is used to group rows of data_frame into lines.

hover_name:  Values from this column or array_like appear in bold in the hover tooltip.

hover_data: This parameter is used to appear in the hover tooltip or tuples with a bool or formatting string as first element, and list-like data to appear in hover as second element Values from these columns appear as extra data in the hover tooltip.

Example 1:




import plotly.express as px
  
df = px.data.tips()
  
plot = px.line_3d(df, x = 'time'
                     y = 'day',
                     z = 'sex')
plot.show()

Output:

Example 2:




import plotly.express as px
  
df = px.data.tips()
  
plot = px.line_3d(df, x = 'time'
                  y = 'day',
                  z = 'sex',
                  color = 'time')
plot.show()

Output:

Example 3:




# Python program to demonstrate scatter
# plot
  
import plotly.express as px
  
df = px.data.tips()
  
plot = px.line_3d(df, x = 'day'
                     y = 'total_bill'
                     z = 'sex'
                     color = 'time',
                     line_group = 'sex')
plot.show()

Output:


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