SlideShare a Scribd company logo
2
Most read
3
Most read
8
Most read
LINEAR PROGRAMMING




                                By:-
              Sankheerth P.             Uma Maheshwar Rao
              Aakansha Bajpai   Abhishek Bose
              Amit Kumar Das    Aniruddh Tiwari
              Ankit Sharma              Archana Yadav
              Arunava Saha              Arvind Singh
              Awinash Chandra          Ashok Kumar Komineni
LINEAR PROGRAMMING

  What is LP ?
       The word linear means the relationship which can
be represented by a straight line .i.e the relation is of the
form
ax +by=c. In other words it is used to describe the
relationship between two or more variables which are
proportional to each other
      The word “programming” is concerned with the
optimal allocation of limited resources.
Linear programming is a way to handle certain types of
optimization problems
Linear programming is a mathematical method for
determining a way to achieve the best outcome
DEFINITION OF LP
   LP is a mathematical modeling technique useful for
    the allocation of “scarce or limited’’ resources such
    as labor, material, machine ,time ,warehouse space
    ,etc…,to several competing activities such as
    product ,service ,job, new
    equipments, projects, etc...on the basis of a given
    criteria of optimality
DEFINITION OF LPP
     A mathematical technique used to obtain an
    optimum solution in resource allocation
    problems, such as production planning.

      It is a mathematical model or technique for
    efficient and effective utilization of limited recourses
    to achieve organization objectives (Maximize profits
    or Minimize cost).

   When solving a problem using linear programming
    , the program is put into a number of linear
    inequalities and then an attempt is made to
    maximize (or minimize) the inputs
REQUIREMENTS
   There must be well defined objective function.

   There must be a constraint on the amount.

   There must be alternative course of action.

   The decision variables should be interrelated and
    non negative.

   The resource must be limited in supply.
ASSUMPTIONS
   Proportionality

   Additivity

   Continuity

   Certainity

   Finite Choices
APPLICATION OF LINEAR PROGRAMMING
   Business

   Industrial

   Military

   Economic

   Marketing

   Distribution
AREAS OF APPLICATION OF LINEAR
                        PROGRAMMING
   Industrial Application
       Product Mix Problem
       Blending Problems
       Production Scheduling Problem
       Assembly Line Balancing
       Make-Or-Buy Problems
   Management Applications
       Media Selection Problems
       Portfolio Selection Problems
       Profit Planning Problems
       Transportation Problems
   Miscellaneous Applications
       Diet Problems
       Agriculture Problems
       Flight Scheduling Problems
       Facilities Location Problems
ADVANTAGES OF L.P.
   It helps in attaining optimum use of productive
    factors.

   It improves the quality of the decisions.

   It provides better tools for meeting the changing
    conditions.

   It highlights the bottleneck in the production
    process.
LIMITATION OF L.P.
   For large problems the computational difficulties are
    enormous.

   It may yield fractional value answers to decision
    variables.

   It is applicable to only static situation.

   LP deals with the problems with single objective.
TYPES OF SOLUTIONS TO L.P. PROBLEM



   Graphical Method




   Simplex Method
FORMS OF L.P.
   The canonical form
        Objective function is of maximum type
        All decision variables are non negetive




   The Standard Form
        All variables are non negative
        The right hand side of each constraint is non negative.

        All constraints are expressed in equations.

        Objective function may be of maximization or minimization

         type.
IMPORTANT DEFINITIONS IN L.P.
   Solution:
           A set of variables [X1,X2,...,Xn+m] is called a
    solution to L.P. Problem if it satisfies its constraints.
   Feasible Solution:
           A set of variables [X1,X2,...,Xn+m] is called a
    feasible solution to L.P. Problem if it satisfies its
    constraints as well as non-negativity restrictions.
   Optimal Feasible Solution:
          The basic feasible solution that optimises the
    objective function.
   Unbounded Solution:
          If the value of the objective function can be
    increased or decreased indefinitely, the solution is called
    an unbounded solution.
VARIABLES USED IN L.P.




   Slack Variable

                        Surplus Variable

                                           Artificial Variable
Non-negative variables, Subtracted from the L.H.S of the
    constraints to change the inequalities to equalities. Added when the
    inequalities are of the type (>=). Also called as “negative slack”.


   Slack Variables

     Non-negative variables, added to the L.H.S of the constraints to
    change the inequalities to equalities. Added when the inequalities
    are of the type (<=).


                                Surplus Variables
       In some L.P problems slack variables cannot provide a solution.
    These problems are of the types (>=) or (=) . Artificial variables are
    introduced in these problems to provide a solution.
     Artificial variables are fictitious and have no physical meaning.

                                                          Artificial Variables
DUALITY :
 For every L.P. problem there is a related unique L.P.
  problem involving same data which also describes
  the original problem.
 The primal programme is rewritten by transposing
  the rows and columns of the algebraic statement of
  the problem.
 The variables of the dual programme are known as
  “Dual variables or Shadow prices” of the various
  resources.
 The optimal solution of the dual problem gives
  complete information about the optimal solution of
  the primal problem and vice versa.
ADVANTAGES :
 By converting a primal problem into dual
  , computation becomes easier , as the no. of
  rows(constraints) reduces in comparison with the
  no. of columns( variables).
 Gives additional information as to how the optimal
  solution changes as a result of the changes in the
  coefficients . This is the basis for sensitivity
  analysis.
 Economic interpretation of dual helps the
  management in making future decisions.
 Duality is used to solve L.P. problems in which the
  initial solution in infeasible.
SENSITIVITY ANALYSIS :
(POST OPTIMALITY TEST)
Two situations:
 In formulation , it is assumed that the parameters
  such as market demand, equipment
  capacity, resource consumption, costs, profits
  etc., do not change but in real time it is not
  possible.

   After attaining the optimal solution, one may
    discover that a wrong value of a cost coefficient
    was used or a particular variable or constraint was
    omitted etc.,
 Changes in the parameters of the problem may be
  discrete or continuous.
 The study of effect of discrete changes in parameters on
  the optimal solution is called as “Sensitivity analysis”.
 The study of effect of continuous changes in parameters
  on the optimal solution is called as “Parametric
  Programming.”
 The objective of the sensitivity analysis is to determine
  how sensitive is the optimal solution to the changes in
  the parameters.
WE THANK YOU FOR YOUR PATIENCE

More Related Content

PPTX
Linear Programming
PDF
Unit.2. linear programming
PPTX
linear programming
PPTX
Duality in Linear Programming
PPTX
Linear programing
PPT
Formulation Lpp
PPT
Linear Programming 1
Linear Programming
Unit.2. linear programming
linear programming
Duality in Linear Programming
Linear programing
Formulation Lpp
Linear Programming 1

What's hot (20)

PPT
Simplex Method
PDF
Linear Programming (graphical method)
PPT
simplex method
PPTX
Game theory
PPT
Linear programming
PPTX
graphical method
PPTX
Decision theory
PPT
Operation research complete note
PPTX
Game theory
PPTX
Introduction to Operations Research
PPTX
Transportation Problem in Operational Research
PPT
Production Analysis
PPTX
Linear programming
PPTX
Big-M Method Presentation
PPTX
Game Theory Operation Research
PPTX
Game theory (Operation Research)
PPT
Simplex Method
PPTX
Operation research and its application
PPT
Assignment Problem
Simplex Method
Linear Programming (graphical method)
simplex method
Game theory
Linear programming
graphical method
Decision theory
Operation research complete note
Game theory
Introduction to Operations Research
Transportation Problem in Operational Research
Production Analysis
Linear programming
Big-M Method Presentation
Game Theory Operation Research
Game theory (Operation Research)
Simplex Method
Operation research and its application
Assignment Problem
Ad

Viewers also liked (17)

PPTX
Linear programming ppt
PPTX
Special Cases in Simplex Method
PPTX
Linear programming
DOCX
Limitations of linear programming
PPSX
Parle agro project presentation internet version
PPTX
POM - Decision Making
PPT
5.3 dynamic programming
PPTX
Transportation Problem In Linear Programming
PPTX
Dynamic Programming
PPT
Lecture 8 dynamic programming
PPT
Dynamic programming
PPTX
Linear programming - Model formulation, Graphical Method
PPTX
"Building Anomaly Detection For Large Scale Analytics", Yonatan Ben Shimon, A...
PPS
Applications of linear programming
PPT
Means of transportation
PPTX
Transportation ppt
PPTX
Harry Surden - Artificial Intelligence and Law Overview
Linear programming ppt
Special Cases in Simplex Method
Linear programming
Limitations of linear programming
Parle agro project presentation internet version
POM - Decision Making
5.3 dynamic programming
Transportation Problem In Linear Programming
Dynamic Programming
Lecture 8 dynamic programming
Dynamic programming
Linear programming - Model formulation, Graphical Method
"Building Anomaly Detection For Large Scale Analytics", Yonatan Ben Shimon, A...
Applications of linear programming
Means of transportation
Transportation ppt
Harry Surden - Artificial Intelligence and Law Overview
Ad

Similar to Linear programing (20)

PPT
001 lpp introduction
PDF
Linear programming class 12 investigatory project
PDF
CA02CA3103 RMTLPP Formulation.pdf
PPT
Unit ii-1-lp
PPTX
UNIT-2 Quantitaitive Anlaysis for Mgt Decisions.pptx
PDF
Linear programing
PPTX
Introduction to Linear programing.ORpptx
PDF
Linear Programming Problems {Operation Research}
PPTX
Definition of linear programming problem model decision variable, objective ...
PPTX
QA CHAPTER II.pptx
PDF
linear programming
PPTX
linearprogramingproblemlpp-180729145239.pptx
PPTX
Linear Programming Presentation - 24-8-22 (1).pptx
PDF
Chapter 2.Linear Programming.pdf
PPTX
Linear programming
PPTX
Linear Programming Problem
PPTX
OR Ch-two.pptx operational research chapter
DOCX
Application of linear programming technique for staff training of register se...
PPTX
Presentationgfkgfkghdgdgkgfkgfgkfgkg.pptx
001 lpp introduction
Linear programming class 12 investigatory project
CA02CA3103 RMTLPP Formulation.pdf
Unit ii-1-lp
UNIT-2 Quantitaitive Anlaysis for Mgt Decisions.pptx
Linear programing
Introduction to Linear programing.ORpptx
Linear Programming Problems {Operation Research}
Definition of linear programming problem model decision variable, objective ...
QA CHAPTER II.pptx
linear programming
linearprogramingproblemlpp-180729145239.pptx
Linear Programming Presentation - 24-8-22 (1).pptx
Chapter 2.Linear Programming.pdf
Linear programming
Linear Programming Problem
OR Ch-two.pptx operational research chapter
Application of linear programming technique for staff training of register se...
Presentationgfkgfkghdgdgkgfkgfgkfgkg.pptx

More from Aniruddh Tiwari (11)

PDF
Sales plan
PPSX
Toyota SCM
PPSX
Business ethics
PPSX
GATT & WTO - Their Impact on India
PPSX
Other competitive strategies
PPSX
Toyota prius case study
PPSX
Knowledge management
PPTX
Inventory management final
PPTX
Qualitative research techniques
PPTX
Conflict,cooperation,competetion
PPSX
Rural Marketing Hul
Sales plan
Toyota SCM
Business ethics
GATT & WTO - Their Impact on India
Other competitive strategies
Toyota prius case study
Knowledge management
Inventory management final
Qualitative research techniques
Conflict,cooperation,competetion
Rural Marketing Hul

Recently uploaded (20)

PDF
Deliverable file - Regulatory guideline analysis.pdf
PDF
Katrina Stoneking: Shaking Up the Alcohol Beverage Industry
PDF
Reconciliation AND MEMORANDUM RECONCILATION
DOCX
Business Management - unit 1 and 2
PDF
Chapter 5_Foreign Exchange Market in .pdf
PDF
Solara Labs: Empowering Health through Innovative Nutraceutical Solutions
PPTX
Board-Reporting-Package-by-Umbrex-5-23-23.pptx
PDF
Roadmap Map-digital Banking feature MB,IB,AB
PDF
NewBase 12 August 2025 Energy News issue - 1812 by Khaled Al Awadi_compresse...
PPTX
HR Introduction Slide (1).pptx on hr intro
PDF
Nidhal Samdaie CV - International Business Consultant
PDF
SIMNET Inc – 2023’s Most Trusted IT Services & Solution Provider
DOCX
unit 1 COST ACCOUNTING AND COST SHEET
PPTX
ICG2025_ICG 6th steering committee 30-8-24.pptx
PPTX
Dragon_Fruit_Cultivation_in Nepal ppt.pptx
DOCX
unit 2 cost accounting- Tender and Quotation & Reconciliation Statement
PDF
Laughter Yoga Basic Learning Workshop Manual
PPTX
Principles of Marketing, Industrial, Consumers,
PPT
Chapter four Project-Preparation material
PDF
Daniels 2024 Inclusive, Sustainable Development
Deliverable file - Regulatory guideline analysis.pdf
Katrina Stoneking: Shaking Up the Alcohol Beverage Industry
Reconciliation AND MEMORANDUM RECONCILATION
Business Management - unit 1 and 2
Chapter 5_Foreign Exchange Market in .pdf
Solara Labs: Empowering Health through Innovative Nutraceutical Solutions
Board-Reporting-Package-by-Umbrex-5-23-23.pptx
Roadmap Map-digital Banking feature MB,IB,AB
NewBase 12 August 2025 Energy News issue - 1812 by Khaled Al Awadi_compresse...
HR Introduction Slide (1).pptx on hr intro
Nidhal Samdaie CV - International Business Consultant
SIMNET Inc – 2023’s Most Trusted IT Services & Solution Provider
unit 1 COST ACCOUNTING AND COST SHEET
ICG2025_ICG 6th steering committee 30-8-24.pptx
Dragon_Fruit_Cultivation_in Nepal ppt.pptx
unit 2 cost accounting- Tender and Quotation & Reconciliation Statement
Laughter Yoga Basic Learning Workshop Manual
Principles of Marketing, Industrial, Consumers,
Chapter four Project-Preparation material
Daniels 2024 Inclusive, Sustainable Development

Linear programing

  • 1. LINEAR PROGRAMMING By:- Sankheerth P. Uma Maheshwar Rao Aakansha Bajpai Abhishek Bose Amit Kumar Das Aniruddh Tiwari Ankit Sharma Archana Yadav Arunava Saha Arvind Singh Awinash Chandra Ashok Kumar Komineni
  • 2. LINEAR PROGRAMMING  What is LP ?  The word linear means the relationship which can be represented by a straight line .i.e the relation is of the form ax +by=c. In other words it is used to describe the relationship between two or more variables which are proportional to each other The word “programming” is concerned with the optimal allocation of limited resources. Linear programming is a way to handle certain types of optimization problems Linear programming is a mathematical method for determining a way to achieve the best outcome
  • 3. DEFINITION OF LP  LP is a mathematical modeling technique useful for the allocation of “scarce or limited’’ resources such as labor, material, machine ,time ,warehouse space ,etc…,to several competing activities such as product ,service ,job, new equipments, projects, etc...on the basis of a given criteria of optimality
  • 4. DEFINITION OF LPP  A mathematical technique used to obtain an optimum solution in resource allocation problems, such as production planning.  It is a mathematical model or technique for efficient and effective utilization of limited recourses to achieve organization objectives (Maximize profits or Minimize cost).  When solving a problem using linear programming , the program is put into a number of linear inequalities and then an attempt is made to maximize (or minimize) the inputs
  • 5. REQUIREMENTS  There must be well defined objective function.  There must be a constraint on the amount.  There must be alternative course of action.  The decision variables should be interrelated and non negative.  The resource must be limited in supply.
  • 6. ASSUMPTIONS  Proportionality  Additivity  Continuity  Certainity  Finite Choices
  • 7. APPLICATION OF LINEAR PROGRAMMING  Business  Industrial  Military  Economic  Marketing  Distribution
  • 8. AREAS OF APPLICATION OF LINEAR PROGRAMMING  Industrial Application  Product Mix Problem  Blending Problems  Production Scheduling Problem  Assembly Line Balancing  Make-Or-Buy Problems  Management Applications  Media Selection Problems  Portfolio Selection Problems  Profit Planning Problems  Transportation Problems  Miscellaneous Applications  Diet Problems  Agriculture Problems  Flight Scheduling Problems  Facilities Location Problems
  • 9. ADVANTAGES OF L.P.  It helps in attaining optimum use of productive factors.  It improves the quality of the decisions.  It provides better tools for meeting the changing conditions.  It highlights the bottleneck in the production process.
  • 10. LIMITATION OF L.P.  For large problems the computational difficulties are enormous.  It may yield fractional value answers to decision variables.  It is applicable to only static situation.  LP deals with the problems with single objective.
  • 11. TYPES OF SOLUTIONS TO L.P. PROBLEM  Graphical Method  Simplex Method
  • 12. FORMS OF L.P.  The canonical form  Objective function is of maximum type  All decision variables are non negetive  The Standard Form  All variables are non negative  The right hand side of each constraint is non negative.  All constraints are expressed in equations.  Objective function may be of maximization or minimization type.
  • 13. IMPORTANT DEFINITIONS IN L.P.  Solution: A set of variables [X1,X2,...,Xn+m] is called a solution to L.P. Problem if it satisfies its constraints.  Feasible Solution: A set of variables [X1,X2,...,Xn+m] is called a feasible solution to L.P. Problem if it satisfies its constraints as well as non-negativity restrictions.  Optimal Feasible Solution: The basic feasible solution that optimises the objective function.  Unbounded Solution: If the value of the objective function can be increased or decreased indefinitely, the solution is called an unbounded solution.
  • 14. VARIABLES USED IN L.P.  Slack Variable  Surplus Variable  Artificial Variable
  • 15. Non-negative variables, Subtracted from the L.H.S of the constraints to change the inequalities to equalities. Added when the inequalities are of the type (>=). Also called as “negative slack”.  Slack Variables Non-negative variables, added to the L.H.S of the constraints to change the inequalities to equalities. Added when the inequalities are of the type (<=).  Surplus Variables In some L.P problems slack variables cannot provide a solution. These problems are of the types (>=) or (=) . Artificial variables are introduced in these problems to provide a solution. Artificial variables are fictitious and have no physical meaning.  Artificial Variables
  • 16. DUALITY :  For every L.P. problem there is a related unique L.P. problem involving same data which also describes the original problem.  The primal programme is rewritten by transposing the rows and columns of the algebraic statement of the problem.  The variables of the dual programme are known as “Dual variables or Shadow prices” of the various resources.  The optimal solution of the dual problem gives complete information about the optimal solution of the primal problem and vice versa.
  • 17. ADVANTAGES :  By converting a primal problem into dual , computation becomes easier , as the no. of rows(constraints) reduces in comparison with the no. of columns( variables).  Gives additional information as to how the optimal solution changes as a result of the changes in the coefficients . This is the basis for sensitivity analysis.  Economic interpretation of dual helps the management in making future decisions.  Duality is used to solve L.P. problems in which the initial solution in infeasible.
  • 18. SENSITIVITY ANALYSIS : (POST OPTIMALITY TEST) Two situations:  In formulation , it is assumed that the parameters such as market demand, equipment capacity, resource consumption, costs, profits etc., do not change but in real time it is not possible.  After attaining the optimal solution, one may discover that a wrong value of a cost coefficient was used or a particular variable or constraint was omitted etc.,
  • 19.  Changes in the parameters of the problem may be discrete or continuous.  The study of effect of discrete changes in parameters on the optimal solution is called as “Sensitivity analysis”.  The study of effect of continuous changes in parameters on the optimal solution is called as “Parametric Programming.”  The objective of the sensitivity analysis is to determine how sensitive is the optimal solution to the changes in the parameters.
  • 20. WE THANK YOU FOR YOUR PATIENCE

Editor's Notes

  • #5: LPP is the problem of maximizing r minimizing a linear function subjected to finite number of constraints
  • #6: -The objective function in case of manufacturing company can be profit, cost, or quantities produced, which is either to be maximised or minimised.-These constraints must be capable of being expressed in inequality.For ex :- Product may be produced by different machines and the problem may be that how much to allocate to each of those machines.
  • #15: Certain problems that have at least one constraint which is either or greater than or equal to equal to type cannot be solved by introducing slack or surplus variables, then a third variable called artificial variable is introduced. These values are ficticious and assume no meaning. They take the role of slack variable at the first iteration only to be replaced in the second iteration. Details of it can be understood when we will cover the Big M model.
  • #16: Certain problems that have at least one constraint which is either or greater than or equal to equal to type cannot be solved by introducing slack or surplus variables, then a third variable called artificial variable is introduced. These values are ficticious and assume no meaning. They take the role of slack variable at the first iteration only to be replaced in the second iteration. Details of it can be understood when we will cover the Big M model.