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COT 5407: Introduction to Algorithms

COT 5407: Introduction to Algorithms. Tao Li ECS 318; Phone: x6036 taoli@cs.fiu.edu http://www.cs.fiu.edu/~taoli/class/COT5407/index.html. Self-Introduction. Ph.D. in Computer Science from University of Rochester, 2004

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COT 5407: Introduction to Algorithms

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  1. COT 5407: Introduction to Algorithms Tao Li ECS 318; Phone: x6036 taoli@cs.fiu.edu http://www.cs.fiu.edu/~taoli/class/COT5407/index.html COT 5407

  2. Self-Introduction • Ph.D. in Computer Science from University of Rochester, 2004 • Research Interests: data mining, machine learning, information retrieval, bioinformatics and more ? • Assistant Professor in the School of Computer Science at Florida International University • Industry Experience: • Summer internships at Xerox Research (summer 2001, 2002) and IBM Research (Summer 2003, 2004) COT 5407

  3. My Research Projects • You can find on http://www.cis.fiu.edu/~taoli • Data Mining research group meeting • http://taoli.cs.fiu.edu/group/meeting/meeting.htm • 4:30pm -- 6:00pm every Friday • Brainstorm research ideas, discuss our research progress, review recent and interesting research papers, and formulate research problems COT 5407

  4. Student Self-Introduction • Name • I will try to remember your names. But if you have a Long name, please let me know how should I call you  • Major and Academic status • Programming Skills • Java, C/C++, VB, Matlab, Scripts etc. • Research Interest • Anything you want us to know • e.g., I am a spurs fan.  COT 5407

  5. What this course is about • Introduction to Algorithms • Analysis of Algorithms • How does one design programs and ascertain their efficiency? • Divide-and-conquer techniques, string processing, graph algorithms, mathematical algorithms. Advanced data structures such as balanced tree schemes. COT 5407

  6. Course Logistics • Meeting Time and Location: Tuesday and Thursday 17:00pm-18:15pm, ECS136 • Office Hours:Tuesday and Thursday 14:30pm-15:30pm • TA: TBA • Textbook: Introduction to Algorithms,  (Second Edition) Thomas Cormen, Charles Leiserson, Ronald Rivest, and Clifford Stein. MIT Press. COT 5407

  7. Evaluation • Class participation and Quizzes: 10% • Midterm Exam: 25% • Final Exam: 30% • Assignments:35% • You may work with one other person on homeworks, but you must each write up your solutions separately. If you work with another person, indicate who you worked with on your solution. • Please start a new page for each problem on your solutions, and include your name on each page, so the TA can choose the problems for grading. Exams are closed book. COT 5407

  8. Analysis Of Algorithms Criteria for selecting algorithms • 1. Correctness • 2. Amount of work done • 3. Amount of space used • 4. Simplicity, clarity • 5. Optimality COT 5407

  9. Correctness Proving correctness is dreadful for large algorithms. A strategy that can be used is: divide the algorithm into smaller pieces, and then clarify what the preconditions and postconditions are and prove correct assuming everything else is correct. COT 5407

  10. Amount of Work Done Rather than counting the total number of instructions executed, we'll focus on a set of key instructions and count how many times they are executed. Use asymptotic notation and pay attention only to the largest growing factor in the formula of the running time. Two major types of analysis: worst-case analysis and average-case analysis COT 5407

  11. More • Amount of space used: The amount of space used can be measured similarly. Consideration of this efficiency is often important. • Simplicity, clarity: Sometimes, complicated and long algorithms can be simplified and shortened by the use of recursive calls. • Optimality: For some algorithms, you can argue that they are the best in terms of either amount of time used or amount of space used. There are also problems for which you cannot hope to have efficient algorithms. COT 5407

  12. Asymptotic Growth Rates of Functions • Big O • Big Omega • Little O • Little Omega • Theta Notation COT 5407

  13. Notations COT 5407

  14. Other mathematical background • The ceiling function • The floor function • The exponentials and logarithms • Fibonacci number • Summations and Series COT 5407

  15. Search • You are asked to guess a number X that is known to be an integer lying between integers A and B. How many guesses do you need in the worst case? • Number of guesses = log2(B-A) • You are asked to guess a positive integer X. How many guesses do you need in the worst case? • NOTE: No upper bound B is known for the number. • X is between B/2 and B. So log2(B/2) < log2X • Number of guesses < 2log2X - 1 COT 5407

  16. Polynomials • Given a polynomial • p(x) = a0 + a1 x + a2 x2 + … + an-1 xn-1 + an xn compute the value of the polynomial for a given value of x. • How many additions and multiplications are needed? • Simple solution: • Number of additions = n • Number of multiplications = 1 + 2 + … + n = n(n+1)/2 • Improved solution using Horner’s rule: • p(x) = • Number of additions = n • Number of multiplications = n COT 5407

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