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CS 152: Programming Language Paradigms January 27 Class Meeting Department of Computer Science San Jose State University Spring 2014 Instructor: Ron Mak.

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Presentation on theme: "CS 152: Programming Language Paradigms January 27 Class Meeting Department of Computer Science San Jose State University Spring 2014 Instructor: Ron Mak."— Presentation transcript:

1 CS 152: Programming Language Paradigms January 27 Class Meeting Department of Computer Science San Jose State University Spring 2014 Instructor: Ron Mak www.cs.sjsu.edu/~mak

2 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 2 CS 152: Programming Language Paradigms  Instructor: Ron Mak  Faculty website: http://www.cs.sjsu.edu/~mak/http://www.cs.sjsu.edu/~mak/  Office hours: MW 7:15 - 8:30 pm in MH 413

3 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 3 Course Notes  Class website http://www.cs.sjsu.edu/~mak Green sheet Lecture notes and handouts Assignments  Required textbook: Programming Languages: Principles and Practice, 3 rd edition by Kenneth Louden and Kenneth Lambert _

4 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 4 Goals of the Course  Program in languages from different “cultures”. Learn new ideas and concepts. Apply the new concepts to your “native” language.  C++, Java, etc. Become a better programmer!  Different programming cultures (paradigms). Object-oriented  C++, C#, Objective C, Java, etc. Functional  Lisp, Scheme, ML, Haskell, F# Logic  Prolog

5 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 5 Goals of the Course  How are programming languages designed? Can we design a language? What are the design criteria? How can we specify the language’s syntax and semantics? What about data types and control structures?  How are programming languages implemented? Interpreters Compilers _

6 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 6 Course Overview  First half: Mostly about culture. Introduction Design criteria Functional paradigm Logic paradigm Object-oriented paradigm Syntax and semantics  Midterm  Second half: Mostly about design and implementation Data types and control structures Abstract data types Formal semantics Introduction to compilers and interpreters  Final

7 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 7 Small Teams  You will learn better by working in small teams.  Form your own teams of 2 or 3 students each. Choose your team members wisely!  Be sure you’ll be able to meet and communicate with each other and work together well.  After forming a team, no moving to another team. Each team member will receive the same score on the team assignments. Email me your team name and the list of team members and email addresses by Monday, February 3: ron.mak@sjsu.edu _ron.mak@sjsu.edu

8 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 8 Individual Responsibilities You are personally responsible for participating and contributing to your team’s work, and for understanding each part of the work for every assignment, whether or not you worked on that part.

9 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 9 Postmortem Assessment Report  At the end of the semester, each student will individually turn in a short (1 page) report: A brief description of what you learned in the course.  An assessment of your personal accomplishments for your project team. An assessment of each of your project team members. _

10 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 10 Individual Student’s Overall Class Grade  60% assignments (team scores)  15% midterm exam (individual score)  25% final exam (individual score)  Final letter grade based on the class curve.  Participation will be important! Can move your final grade up or down, especially in borderline cases. Participation in class. Participation in your team.  As reported by the postmortem assessment reports. _

11 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 11 Take roll!

12 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 12 Introduction  How we program computers influences how we think about computation, and vice versa.  The basic principles and concepts of programming languages are part of the fundamental body of computer science knowledge. The study of these principles is essential to programmers and to computer scientists.  We will study principles and concepts. The languages we examine will illustrate how to apply these principles and concepts. Not a “language of the week” class. _

13 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 13 More Good Reasons  Increased capacity to express ideas. The depth at which we can think is influenced by the expressive power of the language in which we communicate our thoughts. Example: If you have weak grasp of your natural language, you are limited in the complexity of your thinking, particularly in the area of abstraction.  Improved background for choosing appropriate languages. Make better informed choices if you are familiar with other available languages, especially the particular features of those languages. _

14 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 14 More Good Reasons, cont’d  Increased capacity to learn new languages. A thorough understanding of the fundamental concepts of languages makes it easier to see how those concepts are incorporated into the design of the new languages. Learning a new language gives you better understanding of your first language.  Better understanding language implementation. Understand implementation issues  Understand why languages are designed the way they are  Ability to use a language more intelligently.  Increased ability to design new languages. Advance the state of the art. Better languages can crowd out poor languages.

15 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 15 A Historic Timeline Programming Languages: Principles and Practice, 3 rd ed. Kenneth Louden & Kenneth Lambert (c) 2012 Course Technology. All rights reserved. 978-1-111-52941-3

16 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 16 Origins of Programming Languages  A programming language is often defined as “a notation for communicating to a computer what we want it to do”.  Before the mid 1940s, computer operators set switches to adjust the internal wiring of a computer to perform the requested tasks.  Programming languages allowed computer users to solve problems without having to reconfigure hardware. _

17 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 17 Plugboard Control Panel IBM 407 Accounting Machine (1949)

18 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 18 Programming a Plugboard “Hmm, should I pass this parameter by value or by reference?”  “Programming” was hand-wiring plugboards.

19 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 19 Programming a Plugboard  Plugboard wiring diagram It doesn’t look too complicated, does it?

20 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 20 Machine Language  John von Neumann proposed that computers should be permanently hardwired with a small set of general-purpose operations. An operator could input a series of binary codes to organize the basic hardware operations to solve more specific problems. Operators could flip switches to enter these codes, called machine language, into memory. _

21 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 21 Machine Language  Machine language programming was tedious and error prone.

22 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 22 Assembly Language  Assembly language: a set of mnemonic symbols for instruction codes and memory locations. Example: LD R1,R2  Assembler: a program that translates the symbolic assembly language code to binary machine code.  Loader: a program that loads the machine code into computer memory for execution.  Input devices: Keypunch machine Punched card reader _

23 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 23 IBM 1401 Autocoder Programming  80/80 List Read and print a deck of cards. JOB 80/80 CARD LISTER * ORG 333 LOCATE AFTER THE PRINT AREA START CS 332 CLEAR STORAGE 332 - 300 CS CLEAR STORAGE 299 - 200 SW 1,201 SET WORD MARKS AT 1 AND 201 * READ R READ A CARD INTO READ AREA MCW 80,280 MOVE TO PRINT AREA W PRINT IT BLC DONE GO TO DONE IF LAST CARD READ B READ ELSE GO READ ANOTHER CARD * DONE H DONE ALL DONE END START MCW Move characters to word mark Main loop

24 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 24 Assembly Language  Mnemonic symbols were an improvement over binary machine codes but still had shortcomings. Lacks abstraction of conventional mathematical notation. Each type of computer hardware architecture has its own machine language instruction set and requires its own dialect of assembly language.  Assembly languages first appeared in the 1950s and are still used today for low-level system tools or for hand-optimization. _

25 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 25 Punched Cards  Data was stored in punched cards called “IBM cards” or “Hollerith cards” Named after Herman Hollerith.  80 columns per card, one character per column.  Up to 12 punched holes per column.  Alphanumeric data, often grouped into fields. _

26 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 26 A Data Processing Job  A typical “job”. Tanenbaum & Woodhull Operating Systems: Design and Implementation (c) 2006 Prentice-Hall, Inc. All rights reserved. 0-13-142938-8

27 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 27 Punched Cards  Data processing was all about punched cards.  My school compiler project: 3½ boxes of punched cards Each box = 2000 cards, 10 lbs.

28 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 28 FORTRAN  FORTRAN: FORmula TRANslation language Developed by John Backus in the early 1950s. Reflected the architecture of a particular type of machine. Lacked the structured control statements and data structures of later high-level languages.  Popular with scientists and engineers for its support for algebraic notation and floating-point numbers.  The language has evolved and is still used today. FORTRAN IV FORTRAN 77 FORTRAN 90 FORTRAN 95 FORTRAN 2015...

29 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 29 FORTRAN DOUBLE PRECISION NUMBER, ROOT C DO 500 I = 1, 3 C 5 WRITE (6, 10) 10 FORMAT ('ENTER A NUMBER') C READ (5,100) NUMBER 100 FORMAT (F5.1) C IF (NUMBER.GE. 0.0) GO TO 175 WRITE (6, 150) 150 FORMAT ('*** THE NUMBER MUST NOT BE NEGATIVE.') GOTO 5 C 175 ROOT = DSQRT(NUMBER) C WRITE (6,200) NUMBER, ROOT 200 FORMAT ('THE SQUARE ROOT OF ', F5.1, ' IS ', F15.10) C 500 CONTINUE C PAUSE STOP END Demo What does this FORTRAN IV program do?

30 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 30 Algol  Algol: Algorithmic Language released in 1960 Provided a standard notation for computer scientists to publish algorithms in journals. John Backus was a major contributor.  Structured control statements Sequencing (begin-end blocks) Loops (for loop) Selection (if and if-else statements)  Different numeric types  Introduced the array structure  Supported procedures Including recursive procedures

31 SJSU Dept. of Computer Science Spring 2014: January 27 CS 152: Programming Language Paradigms © R. Mak 31 The Algol Family  A large number of high-level languages descended from Algol, including: Pascal: language for teaching programming in the 1980s Ada: for embedded applications of U.S. Dept. of Defense  Algol control structures are present in today’s languages, including Java, C, C++, etc. _


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