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Graphs in ‘C’ Language



              By
         Dr. C. Saritha
    Lecturer in Electronics
SSBN Degree College, Anantapur
Data Structure
• Data structure is a particular way of
  sorting and organizing data in a
  computer. So that it can be used
  efficiently.
• Different kinds of data structures are
  suited to different kinds of applications.
Types of Data Structure
• Linear Data Structure: A data structure
  is said to be linear data structure if its
  elements form a sequence.
  Ex: Array, Stack , Queue and linked list.
• Non-Linear Data Structure: Elements in
  a non-linear data structure do not form
  a sequence.
  Ex: Tree and Graph.
Types of data structure

                                     Data Structures




                    Linear                                     Non-Linear




Arrays   Linked lists        Stack       Queue         Trees            Graphs
Trees
• A tree is hierarchical collection of
  nodes. One of the nodes, known as the
  root, is at the top of the hierarchical.
• Each node can have utmost one link
  coming into it.
• The node where the link originates is
  called the parent node. The root node
  has no parent.
Continue…
• The links leaving a node (any number
  of links are allowed) point to child
  nodes.
                  A

       B            C          D

   E       F G H          I     J
Graphs
• A graph is a set of nodes (also called
  vertices) and a set of arcs (also called
  edges). A sample graph is as fallows:

           A            B


                    C
                              D
               E
Edges & Vertices

• Each node in a graph is known as a
  vertex of the graph.
• The Each edge of a graph contains two
  vertices.
Types of Graphs
• The Graphs can be classified into two
  types. They are:
Undirected graphs
Directed graph
Continue…
Undirected graphs: In an undirected
 graph the order of pair is unimportant.
 Hence the pairs (v1,v2)and (v2,v1)
 represent same edge.
Directed graph: In this the order of the
 vertices representing an edge is
 important. This pair is represented as
 <v1,v2> where v1 is the tail and v2 is
 head of v2. Thus <v1,v2> and <v2,v1>
 represents different edges.
Undirected graph

           1            2

                                   5


           3            4

• Set of vertices={1,2,3,4,5}
• Set of edges= {(1,2),(1,3),(1,4),(2,3),
                   (2,4),(2,5),(3,4),(4,5)}
Directed Graphs
                 1


                 2


                 3


• Set of vertices={1,2,3}
• Set of edges= {<1,2>, <2,1>, <2,3>,
                          <3,2>}
Adjacent Vectors & Incident Edges
• In an undirected graph if (v1,v2) is an
  edge in the set of edges, then the
  vertices v1 and v2 are said to be
  adjacent and the edge (v1,v2) is
  incident on vertices v1 and v2.
• If <v1,v2> is a directed edge, then
  vertex v1 is said to be adjacent to v2
  while v2 is adjacent from v1.
• The edge <v1,v2> is incident to v1 and
  v2.
Continue…
• The vertex 2 in the
  shown      undirected
  graph is adjacent to    1      2
  vertices 1,3,4 and
  5.The edges incident                    5
  on vertex 3 are
  (1,3),(2,3)       and   3      4
  (3,4).
Continue…
• In     the   shown
  directed graph the     1
  edges incident to
  vertex     2    are    2
  <1,2>,<2,1>,<2,3>
  and <3,2>.
                         3
Terminology of Graphs
• Weighted graph: A
  graph is said to be
  weighted graph if
  it’s edges have been           2
                                     2
  assigned some non-         1
  negative value as
                         5
  weight. A weighted                     6
  graph is known as
  network.                   3       4
                                 3
Continue…
• Degree:     In     an
  undirected     graph,
  the number of edges     1        2
  connected to a node
  is called the degree
  of that node. Where
  is in digraph, there             4
                          3
  are two degrees for
  every node they are
  indegree          and
  outdegree.
Continue…
• Indegree:       The
  indegree of node is
  the number of edges    1         2
  coming    to    that
  node.
• Out degree: The out
  degree of node is      3         4
  the number of edges
  going outside that
  node.
Continue…
• Isolated node: If any node has no
  edges connected with any other node
  then its degree will be zero (0) and it
  will be called as isolated node.
           A           B


                   C
                              D
               E
Continue…
• Source: A node,
  which       has     no
  incoming edges, but      1        2
  has outgoing edges,
  is called a source.

                           3        4
Continue…
• Connected      graph:
  An undirected graph                 B
                          A
  is   said    to    be
  connected if there is
  a path from any                 C
  node of graph to                            D
  any other node.             E
Continue…
• Complete graph: An
  undirected     graph               1
  will contain n(n-1)/2    1
  edges is called a
  complete       graph     2         2
  where as in the case
  of     digraph    will
  contain        n(n-1)    3
                                     3
  edges, where n is
  the total number of
  nodes in the graph.
Continue…
• Loop: An edge will
  be called loop or self
  edge if it starts and    1          2
  ends on the same
  node.

                           3          4
Breadth first search
• The general idea
  behind a breadth
  first       traversal    A     B    C
  beginning     at    a
  starting node A is as    D     E
  following. We first
  examine the starting
  node A, and then its     F      G
  neighbors after that
  the neighbors of its
  neighbors.            • A BDE CFG
Depth first search
• In Depth first search
  technique also we take      T      H   A
  one node as starting
  node. Then go to the           K   Y   N
  path     which     from
  starting node and visit
  all the nodes which are     O
  in the path. When we
  reach at the last node         U
  then     we    traverse
  another path starting     THANK YOU
  from that node

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Graphs in c language

  • 1. Graphs in ‘C’ Language By Dr. C. Saritha Lecturer in Electronics SSBN Degree College, Anantapur
  • 2. Data Structure • Data structure is a particular way of sorting and organizing data in a computer. So that it can be used efficiently. • Different kinds of data structures are suited to different kinds of applications.
  • 3. Types of Data Structure • Linear Data Structure: A data structure is said to be linear data structure if its elements form a sequence. Ex: Array, Stack , Queue and linked list. • Non-Linear Data Structure: Elements in a non-linear data structure do not form a sequence. Ex: Tree and Graph.
  • 4. Types of data structure Data Structures Linear Non-Linear Arrays Linked lists Stack Queue Trees Graphs
  • 5. Trees • A tree is hierarchical collection of nodes. One of the nodes, known as the root, is at the top of the hierarchical. • Each node can have utmost one link coming into it. • The node where the link originates is called the parent node. The root node has no parent.
  • 6. Continue… • The links leaving a node (any number of links are allowed) point to child nodes. A B C D E F G H I J
  • 7. Graphs • A graph is a set of nodes (also called vertices) and a set of arcs (also called edges). A sample graph is as fallows: A B C D E
  • 8. Edges & Vertices • Each node in a graph is known as a vertex of the graph. • The Each edge of a graph contains two vertices.
  • 9. Types of Graphs • The Graphs can be classified into two types. They are: Undirected graphs Directed graph
  • 10. Continue… Undirected graphs: In an undirected graph the order of pair is unimportant. Hence the pairs (v1,v2)and (v2,v1) represent same edge. Directed graph: In this the order of the vertices representing an edge is important. This pair is represented as <v1,v2> where v1 is the tail and v2 is head of v2. Thus <v1,v2> and <v2,v1> represents different edges.
  • 11. Undirected graph 1 2 5 3 4 • Set of vertices={1,2,3,4,5} • Set of edges= {(1,2),(1,3),(1,4),(2,3), (2,4),(2,5),(3,4),(4,5)}
  • 12. Directed Graphs 1 2 3 • Set of vertices={1,2,3} • Set of edges= {<1,2>, <2,1>, <2,3>, <3,2>}
  • 13. Adjacent Vectors & Incident Edges • In an undirected graph if (v1,v2) is an edge in the set of edges, then the vertices v1 and v2 are said to be adjacent and the edge (v1,v2) is incident on vertices v1 and v2. • If <v1,v2> is a directed edge, then vertex v1 is said to be adjacent to v2 while v2 is adjacent from v1. • The edge <v1,v2> is incident to v1 and v2.
  • 14. Continue… • The vertex 2 in the shown undirected graph is adjacent to 1 2 vertices 1,3,4 and 5.The edges incident 5 on vertex 3 are (1,3),(2,3) and 3 4 (3,4).
  • 15. Continue… • In the shown directed graph the 1 edges incident to vertex 2 are 2 <1,2>,<2,1>,<2,3> and <3,2>. 3
  • 16. Terminology of Graphs • Weighted graph: A graph is said to be weighted graph if it’s edges have been 2 2 assigned some non- 1 negative value as 5 weight. A weighted 6 graph is known as network. 3 4 3
  • 17. Continue… • Degree: In an undirected graph, the number of edges 1 2 connected to a node is called the degree of that node. Where is in digraph, there 4 3 are two degrees for every node they are indegree and outdegree.
  • 18. Continue… • Indegree: The indegree of node is the number of edges 1 2 coming to that node. • Out degree: The out degree of node is 3 4 the number of edges going outside that node.
  • 19. Continue… • Isolated node: If any node has no edges connected with any other node then its degree will be zero (0) and it will be called as isolated node. A B C D E
  • 20. Continue… • Source: A node, which has no incoming edges, but 1 2 has outgoing edges, is called a source. 3 4
  • 21. Continue… • Connected graph: An undirected graph B A is said to be connected if there is a path from any C node of graph to D any other node. E
  • 22. Continue… • Complete graph: An undirected graph 1 will contain n(n-1)/2 1 edges is called a complete graph 2 2 where as in the case of digraph will contain n(n-1) 3 3 edges, where n is the total number of nodes in the graph.
  • 23. Continue… • Loop: An edge will be called loop or self edge if it starts and 1 2 ends on the same node. 3 4
  • 24. Breadth first search • The general idea behind a breadth first traversal A B C beginning at a starting node A is as D E following. We first examine the starting node A, and then its F G neighbors after that the neighbors of its neighbors. • A BDE CFG
  • 25. Depth first search • In Depth first search technique also we take T H A one node as starting node. Then go to the K Y N path which from starting node and visit all the nodes which are O in the path. When we reach at the last node U then we traverse another path starting THANK YOU from that node