Algorithms. Problems, Algorithms, Programs Problem - a well defined task. –Sort a list of numbers. –Find a particular item in a list. –Find a winning.

Slides:



Advertisements
Similar presentations
Algorithms Algorithm: what is it ?. Algorithms Algorithm: what is it ? Some representative problems : - Interval Scheduling.
Advertisements

Towers of Hanoi Move n (4) disks from pole A to pole C such that a disk is never put on a smaller disk A BC ABC.
MATH 224 – Discrete Mathematics
Algorithms Analysis Lecture 6 Quicksort. Quick Sort Divide and Conquer.
DIVIDE AND CONQUER APPROACH. General Method Works on the approach of dividing a given problem into smaller sub problems (ideally of same size).  Divide.
Proofs, Recursion, and Analysis of Algorithms Mathematical Structures for Computer Science Chapter 2 Copyright © 2006 W.H. Freeman & Co.MSCS SlidesProofs,
Chapter 1 – Basic Concepts
Insertion sort, Merge sort COMP171 Fall Sorting I / Slide 2 Insertion sort 1) Initially p = 1 2) Let the first p elements be sorted. 3) Insert the.
Introduction to Analysis of Algorithms
Scott Grissom, copyright 2004 Chapter 5 Slide 1 Analysis of Algorithms (Ch 5) Chapter 5 focuses on: algorithm analysis searching algorithms sorting algorithms.
Eleg667/2001-f/Topic-1a 1 A Brief Review of Algorithm Design and Analysis.
Algorithms. Problems, Algorithms, Programs Problem - a well defined task. –Sort a list of numbers. –Find a particular item in a list. –Find a winning.
CSC 2300 Data Structures & Algorithms January 30, 2007 Chapter 2. Algorithm Analysis.
Analysis of Algorithms 7/2/2015CS202 - Fundamentals of Computer Science II1.
CS107 Introduction to Computer Science Lecture 7, 8 An Introduction to Algorithms: Efficiency of algorithms.
Analysis of Algorithms COMP171 Fall Analysis of Algorithms / Slide 2 Introduction * What is Algorithm? n a clearly specified set of simple instructions.
Analysis of Algorithms Spring 2015CS202 - Fundamentals of Computer Science II1.
COMP s1 Computing 2 Complexity
Algorithms Friday 7th Week. Algorithms What is an Algorithm? –A series of precise steps, known to stop eventually, to solve a problem –NOT necessarily.
Liang, Introduction to Java Programming, Seventh Edition, (c) 2009 Pearson Education, Inc. All rights reserved Chapter 23 Algorithm Efficiency.
Recursion, Complexity, and Searching and Sorting By Andrew Zeng.
Chapter 13 Recursion. Topics Simple Recursion Recursion with a Return Value Recursion with Two Base Cases Binary Search Revisited Animation Using Recursion.
(C) 2010 Pearson Education, Inc. All rights reserved. Java How to Program, 8/e.
Matt Schierholtz. Method for solving problems with finite steps Algorithm example: Error Check for problem Solve problem Must terminate.
Chapter 12 Recursion, Complexity, and Searching and Sorting
Analysis of Algorithms
Chapter 19: Searching and Sorting Algorithms
Complexity of algorithms Algorithms can be classified by the amount of time they need to complete compared to their input size. There is a wide variety:
Review Introduction to Searching External and Internal Searching Types of Searching Linear or sequential search Binary Search Algorithms for Linear Search.
C++ Programming: From Problem Analysis to Program Design, Second Edition Chapter 19: Searching and Sorting.
Unsolvability and Infeasibility. Computability (Solvable) A problem is computable if it is possible to write a computer program to solve it. Can all problems.
Lesson Objective: Understand what an algorithm is and be able to use them to solve a simple problem.
CSC 211 Data Structures Lecture 13
Data Structure Introduction.
CS 361 – Chapters 8-9 Sorting algorithms –Selection, insertion, bubble, “swap” –Merge, quick, stooge –Counting, bucket, radix How to select the n-th largest/smallest.
Algorithms Java Methods A & AB Object-Oriented Programming and Data Structures Maria Litvin ● Gary Litvin Copyright © 2006 by Maria Litvin, Gary Litvin,
1 Searching and Sorting Searching algorithms with simple arrays Sorting algorithms with simple arrays –Selection Sort –Insertion Sort –Bubble Sort –Quick.
Prof. Amr Goneid, AUC1 Analysis & Design of Algorithms (CSCE 321) Prof. Amr Goneid Department of Computer Science, AUC Part 1. Complexity Bounds.
Chapter 9 Sorting. The efficiency of data handling can often be increased if the data are sorted according to some criteria of order. The first step is.
27-Jan-16 Analysis of Algorithms. 2 Time and space To analyze an algorithm means: developing a formula for predicting how fast an algorithm is, based.
Data Structures and Algorithms Searching Algorithms M. B. Fayek CUFE 2006.
Algorithm Analysis. What is an algorithm ? A clearly specifiable set of instructions –to solve a problem Given a problem –decide that the algorithm is.
1. Searching The basic characteristics of any searching algorithm is that searching should be efficient, it should have less number of computations involved.
Searching Topics Sequential Search Binary Search.
1 Recursive algorithms Recursive solution: solve a smaller version of the problem and combine the smaller solutions. Example: to find the largest element.
Searching CSE 103 Lecture 20 Wednesday, October 16, 2002 prepared by Doug Hogan.
23 February Recursion and Logarithms CSE 2011 Winter 2011.
Vishnu Kotrajaras, PhD.1 Data Structures
CMPT 120 Topic: Searching – Part 2 and Intro to Time Complexity (Algorithm Analysis)
Chapter 15 Running Time Analysis. Topics Orders of Magnitude and Big-Oh Notation Running Time Analysis of Algorithms –Counting Statements –Evaluating.
1 Algorithms Searching and Sorting Algorithm Efficiency.
CS 116 Object Oriented Programming II Lecture 13 Acknowledgement: Contains materials provided by George Koutsogiannakis and Matt Bauer.
Algorithms.
Introduction to Algorithms
Analysis of Algorithms
CSC 427: Data Structures and Algorithm Analysis
OBJECT ORIENTED PROGRAMMING II LECTURE 23 GEORGE KOUTSOGIANNAKIS
Analysis of Algorithms
Courtsey & Copyright: DESIGN AND ANALYSIS OF ALGORITHMS Courtsey & Copyright:
Algorithm Analysis CSE 2011 Winter September 2018.
Teach A level Computing: Algorithms and Data Structures
Recursion "To understand recursion, one must first understand recursion." -Stephen Hawking.
A Balanced Introduction to Computer Science David Reed, Creighton University ©2005 Pearson Prentice Hall ISBN X Chapter 13 (Reed) - Conditional.
Algorithm Analysis (not included in any exams!)
Algorithm design and Analysis
Introduction to Algorithms
CSC 427: Data Structures and Algorithm Analysis
A Balanced Introduction to Computer Science David Reed, Creighton University ©2005 Pearson Prentice Hall ISBN X Chapter 13 (Reed) - Conditional.
Analysis of Algorithms
Presentation transcript:

Algorithms

Problems, Algorithms, Programs Problem - a well defined task. –Sort a list of numbers. –Find a particular item in a list. –Find a winning chess move.

Algorithms A series of precise steps, known to stop eventually, that solve a problem. NOT necessarily tied to computers. There can be many algorithms to solve the same problem.

Characteristics of an Algorithm Precise steps. Effective steps. Has an output. Terminates eventually.

Trivial Algorithm Computing an average: –Sum up all of the values. –Divide the sum by the number of values.

Problems vs. Algorithms vs. Programs There can be many algorithms that solve the same problem. There can be many programs that implement the same algorithm. We are concerned with: –Analyzing the difficulty of problems. –Finding good algorithms. –Analyzing the efficiency of algorithms.

Example: Search Search through a list of items for a particular value. Example: –Search through an array of student records for the student with ID –Search through an array of address records for the address of the person with last name Doe.

Linear Search If we are searching in a list, start at the beginning and check each element until we find the one we want or reach the end. Best case? Worst case? Average case?

Binary Search If we are searching in a sorted list, we look at the middle item and then choose which half to continue looking in. We continue to cut the area we are searching in half until we find the value, or there are no more values to check. Best case? Worst case? Average case? (A little tricky)

Binary Search: Worst Case Let’s say the list has1024 items and the item is the last one we check. –Check midpoint of 1024 items. –Check midpoint of upper or lower half (512). –Check midpoint of a half of that half (128). –Successive ranges we are checking have lengths 64, 32, 16, 8, 4, 2, 1. –How many checks was that? 10 (log 1024 = 10)

Binary Search Aside: Note that binary search only works if the data in the list are sorted by the field on which we’re searching!

Classifying Problems Problems fall into two categories. –Computable problems can be solved using an algorithm. –Non-computable problems have no algorithm to solve them. Historical note: –Hilbert’s questions in 1900: complete? Consistent? Decidable?

Classifying Problems Historical note: –Hilbert posed the following questions in 1900: Is mathematics complete? Is mathematics consistent? Is every statement in mathematics decidable? –In 1930, he thought the all 3 answers would be “yes.” –Almost immediately, Gödel showed that no closed system can be both complete & consistent. –By the mid-1930’s, Turing showed that the answer to the 3 rd question is “no.”

Classifying Problems Two categories of problems: –Computable –Non-computable Wouldn’t it be nice to know which category a problem falls into? (Topic for later in the week: this problem itself is non-computable.)

Classifying Computable Problems Tractable –There is an efficient algorithm to solve the problem. Intractable –There is an algorithm to solve the problem but there is no efficient algorithm. (This is difficult to prove.)

Examples Sorting: tractable. The traveling salesperson problem: intractable. (we think…) Halting Problem: non-computable. –(More on this later in the week.)

Measuring Efficiency We are (usually) concerned with the time an algorithm takes to complete. We often count the number of times blocks of code are executed, as a function of the size of the input. –Why not measure time directly? –Why not count the number of instructions executed?

Example Code: If the array has N elements, this function executes 4 + (2 * N) statements (i.e., 2N + 4). def aFunction(array): statementA; statementB; statementC; for x in array: statementD; statementE; return someValue;

Example: Computing an Average The statement inside the for loop gets executed len(array) times. If the length is n, we say this algorithm is “on the order of n”, or, O(n). O(n)??? What’s this? def average(array): sum = 0 for x in array: sum += x return sum / len(array)

Some Mathematical Background Let’s see some examples …

Big O The worst case running time, discounting constants and lower order terms. Example: –n 3 + 2n is O(n 3 )

Exchange Sort Let’s work out the big O running time… def exchangeSort(array): for indx1 in range(len(array)): for indx2 in range(indx1, len(array)): if (array[indx1] > array[indx2]): swap(array, indx1, indx2)

Merge Sort Given a list, split it into 2 equal piles. Then split each of these piles in half. Continue to do this until you are left with 1 element in each pile. Now merge piles back together in order.

Merge Sort An example of how the merge works: Suppose the first half and second half of an array are sorted: Merge these by taking a new element from either the first or second subarray, choosing the smallest of the remaining elements. Big O running time?

Big O Can Be Misleading Big O analysis is concerned with worst case behavior. Sometimes we know that we are not dealing with the worst case.

Searching an Array Worst case? Best case? def search(array, key): for x in array: if x == key: return key

Algorithms Exercise…

Problem - Finding the Greatest Common Denominator Examples: –gcd(12, 2) = 2 –gcd(100, 95) = 5 –gcd(100, 75) = 25 –gcd(39, 26) = 13 –gcd(17, 8) = 1

Possible Algorithm #1 Assumption: A > B >= 0 –If A is a multiple of B, then gcd(A, B) = B. –Otherwise, return an error. Works for gcd(12,2) = 2 But what about gcd(100, 95)???

Possible Algorithm #2 –Start with 1 and go up to B. –If a number if a common divisor of both A and B, remember it. –When we get to B, stop. The last number we remembered is the gcd. Works, but is there a better way? Think about gcd(100, 95)

Euclid’s Algorithm Make use of the fact that: gcd(A, B) = gcd(B, A rem B) –Note: A rem B refers to the remainder left when A is divided by B. –Examples: 12 rem 2 = rem 95 = 5

Euclid’s Algorithm If B = 0, then gcd(A, B) = A. Otherwise, gcd(A, B) = gcd (B, A rem B). Note – this algorithm is recursive. Examples: –gcd(12, 2) = gcd(2, 0) = 2 –gcd(100, 95) = gcd(95, 5) = gcd(5, 0) = 5

Why do we care? Let’s say we want the gcd of 1,120,020,043,575,432 and 1,111,363,822,624,856 Assume we can do 100,000,000 divisions per second. Algorithm #2 will take about three years. Euclid’s Algorithm will take less than a second.

Programs vs. Algorithms Program: “A set of computer instructions written in a programming language” We write Programs that implement Algorithms

Algorithm vs. Program def gcd(A, B): if B == 0: return A else: return gcd(B, A % B) If B = 0, then gcd(A, B) = A. Otherwise, gcd(A, B) = gcd (B, A rem B).

Tractable vs. Intractable Problems Problems with polynomial time algorithms are considered tractable. Problems without polynomial time algorithms are considered intractable. –Eg. Exponential time algorithms. –(More on Friday)