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Compiler Construction

Compiler Construction. Vana Doufexi vdoufexi@cs.northwestern.edu office #317 @ CS dept. Administrative info. class webpage http://www.cs.northwestern.edu/academics/courses/322 contains: news staff information lecture notes & other handouts homeworks & manuals policies, grades

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Compiler Construction

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  1. Compiler Construction Vana Doufexi vdoufexi@cs.northwestern.eduoffice #317 @ CS dept

  2. Administrative info • class webpage • http://www.cs.northwestern.edu/academics/courses/322 • contains: • news • staff information • lecture notes & other handouts • homeworks & manuals • policies, grades • newsgroup portal • useful links

  3. What is a compiler • A program that reads a program written in some language and translates it into a program written in some other language • Modula-2 to C • Java to bytecodes • COOL to MIPS code

  4. Why study compilers? • Application of a wide range of theoretical techniques • Good SW engineering experience • Better understand languages

  5. Features of compilers • Correctness • preserve the meaning of the code • Speed of target code • vs. speed of compilation? • Good use of resources (size, power) • Good error reporting/handling

  6. Compiler structure • Use intermediate representation • Why? Front End Back End IR source code target code

  7. Compiler Structure • Front end • Recognize legal/illegal programs • report/handle errors • Generate IR • The process can be automated • Back end • Translate IR into target code • instruction selection • register allocation • instruction scheduling • lots of NPC problems -- use approximations

  8. Compiler Structure • Optimization: Middle stage • goals • improve running time of generated code • improve space, power consumption, etc. • how? • perform a number of transformations on the IR • multiple passes • important: preserve meaning of code

  9. The Front End • Scanning (a.k.a. lexical analysis) • recognize "words" • Parsing (a.k.a. syntax analysis) • check syntax • Semantic analysis • examine meaning (e.g. type checking) • Other issues: • symbol table (to keep track of identifiers) • error detection/reporting/recovery

  10. The Scanner • Its job: • given a character stream, recognize words (tokens) • e.g. x = 1 becomes IDENTIFIER EQUAL INTEGER • collect identifier information • e.g. IDENTIFIER corresponds to a lexeme (the actual word x) and its type (acquired from the declaration of x). • ignore white space and comments • report errors • Good news • the process can be automated

  11. The Parser • Its job: • Check and verify syntax based on specified syntax rules • e.g. IDENTIFIER LPAREN RPAREN make up an EXPRESSION. • Coming soon: how context-free grammars specify syntax • Report errors • Build IR • often a syntax tree • Good news • the process can be automated

  12. Semantic analysis • Its job: • Check the meaning of the program • e.g. In x=y, is y defined before being used? Are x and y declared? • e.g. In x=y, are the types of x and y such that you can assign one to the other? • Meaning may depend on context • Report errors

  13. IRs • Graphical • e.g. parse tree, DAG • Linear • e.g. three-address code • Hybrid • e.g. linear for blocks of straight-line code, a graph to connect blocks • Low-level or high-level

  14. The scanning process • Main goal: recognize words • How? by recognizing patterns • e.g. an identifier is a sequence of letters or digits that starts with a letter. • Lexical patterns form a regular language • Regular languages are described using regular expressions (REs) • Can we create an automatic RE recognizer? • Yes! (Hold that thought)

  15. The scanning process • Definition: Regular expressions (over alphabet ) •  is an RE denoting {} • If , then  is an RE denoting {} • If r and s are REs, then • (r) is an RE denoting L(r) • r|s is an RE denoting L(r)L(s) • rs is an RE denoting L(r)L(s) • r* is an RE denoting the Kleene closure of L(r) • Property: REs are closed under many operations • This allows us to build complex REs.

  16. The scanning process • Definition: Deterministic Finite Automaton • a five-tuple (, S, , s0, F) where •  is the alphabet • S is the set of states •  is the transition function (SS) • s0 is the starting state • F is the set of final states (F  S) • Notation: • Use a transition diagram to describe a DFA • DFAs are equivalent to REs • Hey! We just came up with a recognizer!

  17. The scanning process • Goal: automate the process • Idea: • Start with an RE • Build a DFA • How? • We can build a non-deterministic finite automaton (Thompson's construction) • Convert that to a deterministic one (Subset construction) • Minimize the DFA (Hopcroft's algorithm) • Implement it • Existing scanner generator: flex

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