I want to plot trees using Python. Decision trees, Organizational charts, etc. Any library that helps me with that?

6 Answers 6


I develop ETE, which is a python package intended, among other stuff, for programmatic tree rendering and visualization. You can create your own layout functions and produce custom tree images: enter image description here

It has a focus on phylogenetics, but it can actually deal with any type of hierarchical tree (clustering, decision trees, etc.)

  • @Fxs7576 There is a working branch that will be merged soon that adds Qt5 support. github.com/etetoolkit/ete/pull/284
    – Zak
    Commented Oct 4, 2017 at 19:08
  • Is it not available for Windows? Your install guide doesn't have a windows section and if I run the conda install line, it doesn't find the package. Commented Nov 8, 2017 at 12:33
  • 3
    For windows, it looks like you can install using pip install ete3.
    – panofish
    Commented Aug 21, 2018 at 13:46
  • Literally the only package I found that could be pip installed and it would run out of the box.
    – c z
    Commented Mar 31, 2021 at 10:32
  • 1
    I installed ete3 (released in 2020), but since I have Qt5 installed, it throws an error. When will ete4 be avilable as pip installable package?
    – Rolf
    Commented Jan 4, 2023 at 15:28

For basic visualization I would consider using treelib,

It is very straightforward and easy to use:

 from treelib import Node, Tree

 tree = Tree()

 tree.create_node("Harry", "harry")  # No parent means its the root node
 tree.create_node("Jane",  "jane"   , parent="harry")
 tree.create_node("Bill",  "bill"   , parent="harry")
 tree.create_node("Diane", "diane"  , parent="jane")
 tree.create_node("Mary",  "mary"   , parent="diane")
 tree.create_node("Mark",  "mark"   , parent="jane")



├── Bill
└── Jane
    ├── Diane
    │   └── Mary
    └── Mark 

There's graphviz - http://www.graphviz.org/. It uses the "DOT" language to plot graphs. You can either generate the DOT code yourself, or use pydot - https://github.com/pydot/pydot. You could also use networkx - http://networkx.lanl.gov/tutorial/tutorial.html#drawing-graphs, which make it easy to draw to either graphviz or matplotlib.

networkx + matplotlib + graphviz gives you the most flexibility and power, but you need to install a lot.

If you want a quick solution, try:

Install Graphviz.

open('hello.dot','w').write("digraph G {Hello->World}")
import subprocess
# I think this is right - try it form the command line to debug

Then you install pydot, because pydot already does this for you. Then you can use networkx to "drive" pydot.

  • NetworX looks pretty good. The only thing is that I require an external library to generate image files. Can I generate an arc between nodes? Commented Oct 7, 2011 at 1:08
  • Which library? NetworkX can handle a few different ones. They seem to like Matplotlib, which has an install guide here: matplotlib.sourceforge.net/users/installing.html.
    – wisty
    Commented Oct 7, 2011 at 5:32
  • Matplotlib doesn't support graphs, standalone at least. Commented Oct 9, 2011 at 23:54
  • NetworkX. Graphviz is famous historically for reading the "DOT" files, but IMO NetworkX, Ete, and iGraph produce far better results by modern standards, and don't require mixing another language with Python.
    – c z
    Commented Mar 31, 2021 at 10:30
  • 2
    Link to NetworkX website is broken. New link: networkx.org/documentation/stable/tutorial.html#drawing-graphs Commented Dec 31, 2021 at 15:21

Plotly can plot tree diagrams using igraph. You can use it offline these days too. The example below is intended to be run in a Jupyter notebook

import plotly.plotly as py
import plotly.graph_objs as go

import igraph
from igraph import *
# I do not endorse importing * like this

#Set Up Tree with igraph

nr_vertices = 25
v_label = map(str, range(nr_vertices))
G = Graph.Tree(nr_vertices, 2) # 2 stands for children number
lay = G.layout('rt')

position = {k: lay[k] for k in range(nr_vertices)}
Y = [lay[k][1] for k in range(nr_vertices)]
M = max(Y)

es = EdgeSeq(G) # sequence of edges
E = [e.tuple for e in G.es] # list of edges

L = len(position)
Xn = [position[k][0] for k in range(L)]
Yn = [2*M-position[k][1] for k in range(L)]
Xe = []
Ye = []
for edge in E:
    Xe+=[position[edge[0]][0],position[edge[1]][0], None]
    Ye+=[2*M-position[edge[0]][1],2*M-position[edge[1]][1], None] 

labels = v_label

#Create Plotly Traces

lines = go.Scatter(x=Xe,
                   line=dict(color='rgb(210,210,210)', width=1),
dots = go.Scatter(x=Xn,
                                color='#6175c1',    #'#DB4551', 
                                line=dict(color='rgb(50,50,50)', width=1)

# Create Text Inside the Circle via Annotations

def make_annotations(pos, text, font_size=10, 
    if len(text)!=L:
        raise ValueError('The lists pos and text must have the same len')
    annotations = go.Annotations()
    for k in range(L):
                text=labels[k], # or replace labels with a different list 
                                # for the text within the circle  
                x=pos[k][0], y=2*M-position[k][1],
                xref='x1', yref='y1',
                font=dict(color=font_color, size=font_size),
    return annotations  

# Add Axis Specifications and Create the Layout

axis = dict(showline=False, # hide axis line, grid, ticklabels and  title

layout = dict(title= 'Tree with Reingold-Tilford Layout',  
              annotations=make_annotations(position, v_label),
              margin=dict(l=40, r=40, b=85, t=100),

# Plot

data=go.Data([lines, dots])
fig=dict(data=data, layout=layout)
fig['layout'].update(annotations=make_annotations(position, v_label))
py.iplot(fig, filename='Tree-Reingold-Tilf')
# use py.plot instead of py.iplot if you're not using a Jupyter notebook


  • I get an incomprehensible error message from this: DeprecationWarning Traceback (most recent call last) <ipython-input-44-cfbb1d309447> in <module>() ----> 4 import igraph DeprecationWarning: To avoid name collision with the igraph project, this visualization library has been renamed to 'jgraph'. Please upgrade when convenient. I do not know what to upgrade: igraph, jgraph, or something else. I have the latest versions of everything. Rewriting your code to refer to jgraph didn't work. pip install jgraph didn't work: jgraph has no Graph member. etc. :(
    – Reb.Cabin
    Commented Nov 25, 2017 at 16:01
  • Found a potential answer: stackoverflow.com/questions/36200707/…
    – Reb.Cabin
    Commented Nov 25, 2017 at 16:09
  • I got this to work, but it required setting up an account with plotly, so I looked for free alternatives. python-igraph (NOT the same as igraph) has some plotting capability in it igraph.org/python/doc/tutorial/tutorial.html. It's hard to install; on Mac OS X, after a painful trip down the rabbit hole, "brew install cairo" turned out to be necessary and sufficient.
    – Reb.Cabin
    Commented Nov 26, 2017 at 13:49
  • why am I getting TypeError: object of type 'map' has no len()
    – Jesse Adam
    Commented Jun 23, 2018 at 0:49

For a 2021 solution, I wrote a Python wrapper of the TreantJS library. The package creates an HTML file with a tree visualization. The user can optionally invoke R's webshot library to render high-res screenshots of the trees. The package is quite new, so any PRs, bug reports, or feature requests in the issues would be much appreciated! See: https://github.com/Luke-Poeppel/treeplotter.

The package has some annoying installation requirements (see Installation.md), so I wrote a MacOS installation helper (tested on Catalina and Big Sur). Any tips on reducing these constraints would also be welcome.

enter image description here

enter image description here


It's expirmental, but Google has a GraphViz api. It's convenient if you just want to quickly visualize a graph, but don't want to install any software.

  • 3
    This API is deprecated and turned off
    – Ivelin
    Commented Jan 13, 2020 at 22:40

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