design and analysis of algorithms maria-florina (nina) balcan lecture 1, jan. 14 th 2011
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Introductions
• Course web page: http://www.cc.gatech.edu/~ninamf/Algos11/
• Instructor: Maria Florina (Nina) Balcan Office hours: Mon and Wed, 12:00 – 1:00, Klaus
2144.• TA: Jacob Robertson Office hours: Fri, 12:00 – 1:00.
• Grader: Nishant Kothari Office hours: TBA
• Course Staff:
• Meeting Time: Mon, Wed, Fri, 11:00 – 12:00
Additional Resources
• Sections on Tue/Wed for all Algos courses.– Starting next week
Tas: Jacob Robertson, Chris Bowen, Michael Qin
[Location and Time: TBA]
Prerequisites
• Constructing Proofs CS 1050 (Min Grade of C)
• Intro-Object Orient Prog CS 1331 (Min Grade of C)
• Applied Combinatorics MATH 3012 (Min Grade of D)
References
• Official Text Book: “CLRS”
Introduction to Algorithms [Cormen, Leiserson, Rivest, Stein]
• Algorithm Design [Kleinberg, Tardos]
• Algorithms [Dasgupta, Papadimitriou, Vazirani]
• Other Useful Resources
Goals of the Course
Course is about the design and analysis of algos• How to design correct, efficient algos, and how to
think clearly about analyzing correctness and running time.
What is an algorithm?
• A method for solving a computational problem (e.g. sorting or shortest paths).
Main goal: provide intellectual tools for designing and analyzing your own algorithms for problems you need to solve in the future.
10
Why care about algorithms
Goal: use emails seen so far to produce good prediction rule for future data.
Not spam spam
Decide which emails are spam and which are important.
Supervised classification
Structure of the Class
• Greedy Algorithms, Dynamic Programming.
• Divide and conquer algorithms; Randomized algorithms
• Graph Algorithms
• NP-completeness, Reductions. Approximation Algorithms
• DFS, topological sorting, strongly connected components, BFS, Shortest paths and Dijkstra's Algorithm, Minimum spanning trees, Min-Heaps, Union Find
• Examples, recurrences, the master theorem, probabilistic analysis, Quicksort, Median selection
• Longest common subsequence, Knapsack, The Bellman Ford Algorithm, All pairs shortest paths [Floyd-Warshall].
Structure of the Class
• Greedy Algorithms, Dynamic Programming.
• Divide and conquer algorithms; Randomized algorithms
• Graph Algorithms
• NP-completeness, Reductions. Approximation Algorithms
Exam 1: February 11
Exam 2: March 9th
Exam 3: April 8th
Exam 4: April 22nd
Grading Scheme
• Exercises/problems (pencil-and-paper problem-solving variety).
• 4 Exams: 50%• Final: 25%• Homeworks: 25%• Class participation to adjust borderline
scores
Homework
• 8-9 weekly homeworks
• Collaboration generally allowed– Work in groups of size at most 3– Write up your own solutions– Acknowledge your collaborators– Breaking these rules will be considered as
cheating
• NO late submissionLowest two (2) homework scores will be dropped
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