Operational Semantics Mooly Sagiv Tel Aviv University 640-6706 Sunday 18-21 Scrieber 8 Monday 10-12 Schrieber.

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Presentation transcript:

Operational Semantics Mooly Sagiv Tel Aviv University Sunday Scrieber 8 Monday Schrieber 317 Textbook: Semantics with Applications Chapter 2 H. Nielson and F. Nielson

Outline u Why formal semantics? u Possible formal semantics u A Simple programming language While u Natural Operational Semantics for While u Structural Operational Semantics for While u Equivalence Result u Extensions to While –Abort –Non determinism –Parallel constructs –Blocks and procedures

Benefits of Formal Semantics u Programming language design –hard- to-define= hard-to-implement=hard-to-use u Programming language implementation u Programming language understanding u Program correctness u Program equivalence u Compiler Correctness –Correctness of Static Analysis –Design of Static Analysis u Automatic generation of interpreter u But probably not –Automatic compiler generation

Alternative Formal Semantics u Operational Semantics –The meaning of the program is described “operationally” –Natural Operational Semantics –Structural Operational Semantics u Denotational Semantics –The meaning of the program is an input/output relation –Mathematically challenging but complicated u Axiomatic Semantics –The meaning of the program are observed properties

Static Analysis u Automatic derivation of static properties which hold on every execution leading to a program location

Example Static Analysis Problem u Find variables with constant value at a given program location u Example program int p(int x){ return x *x; void main()} { int z; if (getc()) z = p(6) + 8; else z = p(5) + 7; printf (z); }

Abstract (Conservative) interpretation abstract representation Set of states concretization Abstract semantics statement s abstract representation abstraction Operational semantics statement s Set of states

Example rule of signs u Safely identify the sign of variables at every program location u Abstract representation {P, N, ?} u Abstract (conservative) semantics of *

Abstract (conservative) interpretation {…,,…} concretization Abstract semantics x := x*#y abstraction Operational semantics x := x*y {…, …}

Example rule of signs (cont) u Safely identify the sign of variables at every program location u Abstract representation {P, N, ?} u  (C) = if all elements in C are positive then return P else if all elements in C are negative then return N else return ? u  (a) = if (a==P) then return{0, 1, 2, … } else if (a==N) return {-1, -2, -3, …, } else return Z

Benefits of Operational Semantics for Static Analysis u Correctness (soundness) of the analysis –The compiler will never change the meaning of the program u Establish the right mindset u Design the analysis u Becomes familiar with mathematical notations used in programming languages

The While Programming Language u Abstract syntax S::= x := a | skip | S 1 ; S 2 | if b then S 1 else S 2 | while b do S u Use parenthesizes for precedence u Informal Semantics –skip behaves like no-operation –Import meaning of arithmetic and Boolean operations

Example While Program y := 1; while  (x=1) do ( y := y * x; x := x - 1 )

General Notations u Syntactic categories –Var the set of program variables –Aexp the set of arithmetic expressions –Bexp the set of Boolean expressions –Stm set of program statements u Semantic categories –Natural values N={0, 1, 2, … –Truth values T={ff, tt} –States S= Var  N –Lookup in a state s: s x –Update of a state s: s [ x  5]

Natural Operational Semantics u Describe the “overall” effect of program constructs u Ignores non terminating computations

Natural Semantics u Notations – - the program statement S is executed on input state s –s representing a terminal (final) state u For every statement S, write meaning rules  o “If the statement S is executed on an input state i, it terminates and yields an output state o” u The meaning of a program P on an input state s is the set of outputs states o such that  o u The meaning of compound statements is defined using the meaning immediate constituent statements

Natural Semantics for While [ass ns ]  s[x  A  a  s] [skip ns ]  s [comp ns ]  s’,  s’’  s’’ [if tt ns ]  s’  s’ if B  b  s=tt [if ff ns ]  s’  s’ if B  b  s=ff axioms rules

Natural Semantics for While (More rules) [while tt ns ]  s’,  s’’  s’’ if B  b  s=tt [while ff ns ]  s if B  b  s=ff

Simple Examples [comp ns ]  s 0,  s 0 [x  1]  s 0 [x  1] u Let s 0 be the state which assigns zero to all program variables u Assignments [ass ns ]  s 0 [x  1] u Skip statement [skip ns ]  s 0 u Composition

Simple Examples (Cont) [if tt ns ]  s 0  s 0 u Let s 0 be the state which assigns zero to all program variables u if-construct

A Derivation Tree u A “proof” that  s’ u The root of tree is  s’ u Leaves are instances of axioms u Internal nodes rules –Immediate children match rule premises u Simple Example  s 0 [x  1]>  s 0  s 0 [x  1]>

An Example Derivation Tree  s0[x  1][y  2][z  2]

Top Down Evaluation of Derivation Trees u Given a program S and an input state s u Find an output state s’ such that  s’ u Start with the root and repeatedly apply rules until the axioms are reached u Inspect different alternatives in order u In While s’ and the derivation tree is unique

Example of Top Down Tree Construction u Input state s such that s x = 3 u Factorial program y := 1; while  (x=1) do (y := y * x; x := x - 1)

Program Termination u Given a statement S and input s –S terminates on s if there exists a state s’ such that  s’ –S loops on s if there is no state s’ such that  s’ u Given a statement S –S always terminates if for every input state s, S terminates on s –S always loops if for every input state s, S loops on s

Properties of Natural Semantics u Equivalence of program constructs –“skip ; skip” is semantically equivalent to “skip” –“((S 1 ; S 2 ) ; S 3 )” is semantically equivalent to “(S 1 ;( S 2 ; S 3 ))” –“(x := 5 ; y := x * 8)” is semantically equivalent to “(x :=5; y := 40)” u Deterministic –If  s 1 and  s 2 then s 1 =s 2

Semantic Equivalence u S 1 and S 2 are semantically equivalent if for all s and s’  s’ if and only if  s’ u Simple example “while b do S” is semantically equivalent to: “if b then (S ; while b do S) else skip”

Deterministic Semantics for While u If  s 1 and  s 2 then s 1 =s 2 u The proof uses induction on the shape of derivation trees –Prove that the property holds for all simple derivation trees by showing it holds for axioms –Prove that the property holds for all composite trees: »For each rule assume that the property holds for its premises (induction hypothesis) and prove it holds for the conclusion of the rule

The Semantic Function S ns u The meaning of a statement S is defined as a partial function from State to State u S ns : Stm  (State  State) u S ns  S  s = s’ if  s’ and otherwise S ns  S  s is undefined u Examples –S ns  skip  s =s –S ns  x :=1  s = s [x  1] –S ns  while true do skip  s = undefined

Structural Operational Semantics u Emphasizes the individual steps u Usually more suitable for analysis u For every statement S, write meaning rules   “If the first step of executing the statement S on an input state i leads to  ” u Two possibilities for  –  = The execution of S is not completed, S’ is the remaining computation which need to be performed on s’ –  = o The execution of S has terminated with a final state o –  is a stuck configuration when there are no transitions u The meaning of a program P on an input state s is the set of final states that can be executed in arbitrary finite steps

Structural Semantics for While [ass sos ]  s[x  A  a  s] [skip sos ]  s [comp 1 sos ]   axioms rules [comp 2 sos ]  s’ 

Structural Semantics for While if construct [if tt sos ]  if B  b  s=tt [if ff os ]  if B  b  s=ff

Structural Semantics for While while construct [while sos ] 

Derivation Sequences u A finite derivation sequence starting at  0,  1,  2 …,  k such that –  0 = –  i   i+1 –  k is either stuck configuration or a final state u An infinite derivation sequence starting at  0,  1,  2 … such that –  0 = –  i   i+1 u  0  i  i in i steps u  0  *  i in finite number of steps u For each step there is a derivation tree

Example u Let s 0 such that s 0 x = 5 and s 0 y = 7 u S = (z:=x; x := y); y := z

Factorial Program u Input state s such that s x = 3 u y := 1; while  (x=1) do (y := y * x; x := x - 1)

Program Termination u Given a statement S and input s –S terminates on s if there exists a finite derivation sequence starting at –S terminates successfully on s if there exists a finite derivation sequence starting at leading to a final state –S loops on s if there exists an infinite derivation sequence starting at

Properties of the Semantics u S 1 and S 2 are semantically equivalent if: – for all s and s’  * s’ if and only if  * s’ –there is an infinite derivation sequence starting at if and only if there is an infinite derivation sequence starting at u Deterministic –If  * s 1 and  * s 2 then s 1 =s 2 u The execution of S 1 ; S 2 on an input can be split into two parts: –execute S 1 on s yielding a state s’ –execute S 2 on s’

Sequential Composition u If  k s’’ then there exists a state s’ and numbers k 1 and k 2 such that –  k1 s’ –  k2 s’’ –and k = k 1 + k 2 u The proof uses induction on the length of derivation sequences –Prove that the property holds for all derivation sequences of length 0 –Prove that the property holds for all other derivation sequences: »Show that the property holds for sequences of length k+1 using the fact it holds on all sequences of length k (induction hypothesis)

The Semantic Function S sos u The meaning of a statement S is defined as a partial function from State to State u S sos : Stm  (State  State) u S sos  S  s = s’ if  * s’ and otherwise S sos  S  s is undefined

An Equivalence Result u For every statement S of the While language –S nat  S  = S sos  S 

Extensions to While u Abort statement (like C exit) u Non determinism u Parallelism u Local Variables u Procedures –Static Scope –Dynamic scope

The While Programming Language with Abort u Abstract syntax S::= x := a | skip | S 1 ; S 2 | if b then S 1 else S 2 | while b do S| abort u Abort terminates the execution u No new rules are needed in natural and structural operational semantics u Statements –skip –abort –while true do skip

Conclusion u The natural semantics cannot distinguish between looping and abnormal termination (unless the states are modified) u In the structural operational semantics looping is reflected by infinite derivations and abnormal termination is reflected by stuck configuration

The While Programming Language with Non-Determinism u Abstract syntax S::= x := a | skip | S 1 ; S 2 | if b then S 1 else S 2 | while b do S| S 1 or S 2 u Either S 1 or S 2 is executed u Example –x := 1 or (x :=2 ; x := x+2)

[or 1 ns ]  s’  s’ The While Programming Language with Non-Determinism Natural Semantics [or 2 ns ]  s’  s’

The While Programming Language with Non-Determinism Structural Semantics

The While Programming Language with Non-Determinism Examples u x := 1 or (x :=2 ; x := x+2) u (while true do skip) or (x :=2 ; x := x+2)

Conclusion u In the natural semantics non-determinism will suppress looping if possible (mnemonic) u In the structural operational semantics non- determinism does suppress termination configuration

The While Programming Language with Parallel Constructs u Abstract syntax S::= x := a | skip | S 1 ; S 2 | if b then S 1 else S 2 | while b do S| S 1 par S 2 u All the interleaving of S 1 or S 2 are executed u Example –x := 1 or (x :=2 ; x := x+2)

The While Programming Language with Parallel Constructs Structural Semantics [par 1 sos ]   [par 2 sos ] , s’  [par 3 sos ]   [par 4 sos ] , s’ 

The While Programming Language with Parallel Constructs Natural Semantics

Conclusion u In the natural semantics immediate constituent is an atomic entity so we cannot express interleaving of computations u In the structural operational semantics we concentrate on small steps so interleaving of computations can be easily expressed

Conclusions Local Variables u The natural semantics can “remember” local states u Need to introduce stack or heap into state of the structural semantics