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Introduction CSCE 235 Introduction to Discrete Structures

Introduction CSCE 235 Introduction to Discrete Structures. Fall 2010 Instructor: Berthe Y. Choueiry (Shu-we-ri) GTA: Robert Woodward http://cse.unl.edu/~choueiry/F10-235/ http://cse.unl.edu/~cse235/. Outline. Introduction Rules Topics covered Syllabus Why Discrete Mathematics?

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Introduction CSCE 235 Introduction to Discrete Structures

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  1. Introduction CSCE 235 Introduction to Discrete Structures Fall 2010 Instructor: Berthe Y. Choueiry (Shu-we-ri) GTA: Robert Woodward http://cse.unl.edu/~choueiry/F10-235/ http://cse.unl.edu/~cse235/

  2. Outline • Introduction • Rules • Topics covered • Syllabus • Why Discrete Mathematics? • Basic preliminaries

  3. Introduction • Roll • Lectures: M/W/F 12:30—1:20 pm (Avery 109) • Recitations: T 5:30—6:20 pm (Avery 108) • Office hours: • Instructor: M/W 1:30—2:30 pm (Avery 360) • GTA: Thu 1:30—2:30 pm & Fri 9:00-10:00 am (SRC) • Must have a cse account • Must use cse handin • Bonus points: report bugs • Web page

  4. Rules for Success (1) • Please do the required reading before class • Even if you read it very quickly, reading the material allows you to focus during class   • It will also help you make more sense of the explanations in class and be tuned to the pitfalls and tricky details that I will discuss • Attend class • In  quizzes and exams, you are responsible for class discussions • After class • Do the required reading in as much detail as possible • Make sure to carefully read all the examples in the textbook:  they are excellent & abundant

  5. Rules for Success (2) • Start early working on homework • Visit GTA & instructor duringtheir office hours • If you still have questions email cse235@cse.unl.edu • We will always try hard to help you out • Not following the above recommendations demonstrates a lack of respect towards • Your responsibilities • The rules as spelled out in the syllabus • The GTA & the instructor.  It is unfair

  6. Topics • DM is not about • Integration techniques • Differentiation techniques • Calculus • Geometry • Numerical Analysis • Etc.

  7. Syllabus • Let’s read the syllabus

  8. Important Dates • Weekly quizzes, weekly homework • Midterm 1: Wednesday, Sep 29 • Midterm 2: Wednesday, Nov 10 • Final: Tuesday, Dec 14

  9. Why Discrete Mathematics? (I) • Computers use discrete structures to represent and manipulate data. • CSE 235 and CSE 310 are the basic building block for becoming a Computer Scientist • Computer Science is not Programming • Computer Science is not Software Engineering • Edsger Dijkstra: “Computer Science is no more about computers than Astronomy is about telescopes.” • Computer Science is about problem solving.

  10. Why Discrete Mathematics? (II) • Mathematics is at the heart of problem solving • Defining a problem requires mathematical rigor • Use and analysis of models, data structures, algorithms requires a solid foundation of mathematics • To justify why a particular way of solving a problem is correct or efficient (i.e., better than another way) requires analysis with a well-defined mathematical model.

  11. Problem Solving requires mathematical rigor • Your boss is not going to ask you to solve • an MST (Minimal Spanning Tree) or • a TSP (Travelling Salesperson Problem) • Rarely will you encounter a problem in an abstract setting • However, he/she may ask you to build a rotation of the company’s delivery trucks to minimize fuel usage • It is up to you to determine • a proper model for representing the problem and • a correct or efficient algorithm for solving it

  12. Scenario I • A limo company has hired you/your company to write a computer program to automate the following tasks for a large event • Task1: In the first scenario, businesses request • limos and drivers • for a fixed period of time, specifying a start data/time and end date/time and • a flat charge rate • The program must generate a schedule that accommodates the maximum number of customers

  13. Scenario II • Task 2: In the second scenario • the limo service allows customers to bid on a ride • so that the highest bidder get a limo when there aren’t enough limos available • The program should make a schedule that • Is feasible (no limo is assigned to two or more customers at the same time) • While maximizing the total profit

  14. Scenario III • Task 3: Here each customer • is allowed to specify a set of various times and • bid an amount for the entire event. • The limo service must choose to accept the entire set of times or reject it • The program must again maximize the profit.

  15. What’s your job? • Build a mathematical model for each scenario • Develop an algorithm for solving each task • Justify that your solutions work • Prove that your algorithms terminate. Termination • Prove that your algorithms find a solution when there is one. Completeness • Prove that the solution of your algorithms is correct Soundness • Prove that your algorithms find the best solution (i.e., maximize profit). Optimality (of the solution) • Prove that your algorithms finish before the end of life on earth. Efficiency, time & space complexity

  16. The goal of this course • Give you the foundations that you will use to eventually solve these problems. • Task1 is easily (i.e., efficiently) solved by a greedy algorithm • Task2 can also be (almost) easily solved, but requires a more involved technique, dynamic programming • Task3 is not efficiently solvable (it is NP-hard) by any known technique. It is believed today that to guarantee an optimal solution, one needs to look at all (exponentially many) possibilities

  17. Basic Preliminaries • A set is a collection of objects. • For example: • S = {s1,s2,s3,…,sn} is a finite set of n elements • S = {s1,s2,s3,…} is a infinite set of elements. • s1  S denotes that the object s1 is an element of the set S • s1  S denotes that the object s1 is not an element of the set S • LaTex • $S=\{s_1,s_2,s_3, \ldots,s_n\}$ • $s_i \in S$ • $si \notin S$

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