A binary tree is a data structure in which every node or vertex has at most two children. In Python, a binary tree can be represented in different ways with different data structures(dictionary, list) and class representations for a node. However, binarytree library helps to directly implement a binary tree. It also supports heap and binary search tree(BST). This module does not come pre-installed with Python’s standard utility module. To install it type the below command in the terminal.
pip install binarytree
Creating Node
The node class represents the structure of a particular node in the binary tree. The attributes of this class are values, left, right.
Syntax: binarytree.Node(value, left=None, right=None)
Parameters:
value: Contains the data for a node. This value must be number.
left: Contains the details of left node child.
right: Contains details of the right node child.
Note: If left or right child node is not an instance of binarytree.Node class then binarytree.exceptions.NodeTypeError is raised and if the node value is not a number then binarytree.exceptions.NodeValueError is raised.
Example:
Python3
from binarytree import Node root = Node( 3 ) root.left = Node( 6 ) root.right = Node( 8 ) # Getting binary tree print ( 'Binary tree :' , root) # Getting list of nodes print ( 'List of nodes :' , list (root)) # Getting inorder of nodes print ( 'Inorder of nodes :' , root.inorder) # Checking tree properties print ( 'Size of tree :' , root.size) print ( 'Height of tree :' , root.height) # Get all properties at once print ( 'Properties of tree : \n' , root.properties) |
Output:
Binary tree :
3
/ \
6 8
List of nodes : [Node(3), Node(6), Node(8)]
Inorder of nodes : [Node(6), Node(3), Node(8)]
Size of tree : 3
Height of tree : 1
Properties of tree :
{‘height’: 1, ‘size’: 3, ‘is_max_heap’: False, ‘is_min_heap’: True, ‘is_perfect’: True, ‘is_strict’: True, ‘is_complete’: True, ‘leaf_count’: 2, ‘min_node_value’: 3, ‘max_node_value’: 8, ‘min_leaf_depth’: 1, ‘max_leaf_depth’: 1, ‘is_bst’: False, ‘is_balanced’: True, ‘is_symmetric’: False}
Build a binary tree from the List:
Instead of using the Node method repeatedly, we can use build() method to convert a list of values into a binary tree.
Here, a given list contains the nodes of tree such that the element at index i has its left child at index 2*i+1, the right child at index 2*i+2 and parent at (i – 1)//2. The elements at index j for j>len(list)//2 are leaf nodes. None indicates the absence of a node at that index. We can also get the list of nodes back after building a binary tree using values attribute.
Syntax: binarytree.build(values)
Parameters:
values: List representation of the binary tree.
Returns: root of the binary tree.
Example:
Python3
# Creating binary tree # from given list from binarytree import build # List of nodes nodes = [ 3 , 6 , 8 , 2 , 11 , None , 13 ] # Building the binary tree binary_tree = build(nodes) print ( 'Binary tree from list :\n' , binary_tree) # Getting list of nodes from # binarytree print ( '\nList from binary tree :' , binary_tree.values) |
Output:
Binary tree from list : ___3 / \ 6 8 / \ \ 2 11 13 List from binary tree : [3, 6, 8, 2, 11, None, 13]
Build a random binary tree:
tree() generates a random binary tree and returns its root node.
Syntax: binarytree.tree(height=3, is_perfect=False)
Parameters:
height: It is the height of the tree and its value can be between the range 0-9 (inclusive)
is_perfect: If set True a perfect binary is created.
Returns: Root node of the binary tree.
Example:
Python3
from binarytree import tree # Create a random binary # tree of any height root = tree() print ( "Binary tree of any height :" ) print (root) # Create a random binary # tree of given height root2 = tree(height = 2 ) print ( "Binary tree of given height :" ) print (root2) # Create a random perfect # binary tree of given height root3 = tree(height = 2 , is_perfect = True ) print ( "Perfect binary tree of given height :" ) print (root3) |
Output:
Binary tree of any height : 14____ / \ 2 5__ / / \ 6 1 13 / / / \ 7 9 4 8 Binary tree of given height : 1__ / \ 5 2 / \ 4 3 Perfect binary tree of given height : __3__ / \ 2 4 / \ / \ 6 0 1 5
Building a BST:
The binary search tree is a special type of tree data structure whose inorder gives a sorted list of nodes or vertices. In Python, we can directly create a BST object using binarytree module. bst() generates a random binary search tree and return its root node.
Syntax: binarytree.bst(height=3, is_perfect=False)
Parameters:
height: It is the height of the tree and its value can be between the range 0-9 (inclusive)
is_perfect: If set True a perfect binary is created.
Returns: Root node of the BST.
Example:
Python3
from binarytree import bst # Create a random BST # of any height root = bst() print ( 'BST of any height : \n' , root) # Create a random BST of # given height root2 = bst(height = 2 ) print ( 'BST of given height : \n' , root2) # Create a random perfect # BST of given height root3 = bst(height = 2 , is_perfect = True ) print ( 'Perfect BST of given height : \n' , root3) |
Output:
BST of any height : ____9______ / \ __5__ ____12___ / \ / \ 2 8 10 _14 / \ / \ / 1 4 7 11 13 BST of given height : 5 / \ 4 6 / 3 Perfect BST of given height : __3__ / \ 1 5 / \ / \ 0 2 4 6
Importing heap:
Heap is a tree data structure that can be of two types –
- max heap
- min heap
Using the heap() method of binarytree library, we can generate a random maxheap and return its root node. To generate minheap, we need to set the is_max attribute as False.
Syntax: binarytree.heap(height=3, is_max=True, is_perfect=False)
Parameters:
height: It is the height of the tree and its value can be between the range 0-9 (inclusive)
is_max: If set True generates a max heap else min heap.
is_perfect: If set True a perfect binary is created.
Returns: Root node of the heap.
Python3
from binarytree import heap # Create a random max-heap root = heap() print ( 'Max-heap of any height : \n' , root) # Create a random max-heap # of given height root2 = heap(height = 2 ) print ( 'Max-heap of given height : \n' , root2) # Create a random perfect # min-heap of given height root3 = heap(height = 2 , is_max = False , is_perfect = True ) print ( 'Perfect min-heap of given height : \n' , root3) |
Output:
Max-heap of any height : _______14______ / \ ___12__ __13__ / \ / \ 10 8 3 9 / \ / \ / \ / 1 5 4 6 0 2 7 Max-heap of given height : __6__ / \ 4 5 / \ / \ 2 0 1 3 Perfect min-heap of given height : __0__ / \ 1 3 / \ / \ 2 6 4 5