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Symbolic execution http://pan.cin.ufpe.br © Marcelo d’Amorim 2010
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Goal and Input-Output Automate test input data generation – Input: parameterized function call – Output: inputs s.t. all* paths are explored © Marcelo d’Amorim 2010 foo(int x, int y){ if(x > y){... } else{... } } Symbolic Execution foo($a, $b); foo(1,0); foo(0,0)
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Attention! Function foo can be arbitrarily complex – Other types, call to other functions, contain loops and branches, etc. One can obtain tests with user-defined assertions © Marcelo d’Amorim 2010
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Opening the box… © Marcelo d’Amorim 2010 Symbolic Execution foo($a, $b); foo(1,0); foo(0,0)
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Opening the box… © Marcelo d’Amorim 2010 Symbolic Execution foo($a, $b); foo(1,0); foo(0,0) Constraint generation Constraint solving
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Opening the box… © Marcelo d’Amorim 2010 Symbolic Execution foo($a, $b); foo(1,0); foo(0,0) A path condition is a description of a path as function of symbolic inputs. Symbolic execution explores all program paths. Constraint generation Constraint solving path conditions
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Opening the box… © Marcelo d’Amorim 2010 Symbolic Execution foo($a, $b); foo(1,0); foo(0,0) Constraint generation Constraint solving $a > $b $a <= $b foo(int x, int y){ if(x > y){... } else{... } }
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Exercise Generate the path conditions for this program. © Marcelo d’Amorim 2010 void bar1(int x){ if (x > 0) { … } else if (x < 0) { … } else { ERROR; } }
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Exercise Generate the path conditions for this program. © Marcelo d’Amorim 2010 void bar2(int x){ if (x > 0) { if (x > 10) {…} } else if (x < 0) { if (x < 2) {…} } else { ERROR; } }
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Exercise Generate the path conditions for this program. © Marcelo d’Amorim 2010 void bar2(int x){ if (x > 0) { if (x > 10) {…} } else if (x < 0) { if (x < 2) {…} } else { ERROR; } } Infeasible path!
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Exercise Generate the path conditions for this program. Hint: ignore paths with length > 2. © Marcelo d’Amorim 2010 int fact(int n){ return n * (n > 0) ? fact (n – 1) : 1; }
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Exercise Generate the path conditions for this program. Hint: ignore paths with length > 2. © Marcelo d’Amorim 2010 int fact(int n){ return n * (n > 0) ? fact (n – 1) : 1; } Repeated states.
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Part 1: constraint generator Modifies program semantics to handle symbolic state – Stack, heap, and static area hold symbolic values Two popular alternatives – Instrumentation – Modified interpreter (e.g., Java Virtual Machine) © Marcelo d’Amorim 2010
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Instrumentation © Marcelo d’Amorim 2010 foo(int x) { x = x + 1; if (x > 10) { // … } else { // … } foo(SymInt x) { x = x.add(ONE); if (x.gt(TEN).choose()) { // … } else { // … } Types and operationschoice
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Discussion What would you need to modify in a JVM to run programs in symbolic execution mode? What are pros-cons of instrumentation-based solution vs. modified JVM? © Marcelo d’Amorim 2010
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Part 2: constraint solver Decision procedures can be used to solve simple constraints. For example: – Integer linear arithmetic: x > y + z and z < y Unfortunately, symbolic execution can generate complex constraints – Undecidable, intractable, or just not handled by decision procedures © Marcelo d’Amorim 2010
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Pointers to the interested JVM symbolic execution: AQUA and SPF Complex constraints: CORAL or FloPSy Links: – AQUA and CORAL: http://pan.cin.ufpe.brhttp://pan.cin.ufpe.br – SPF: google JPF and symb project – FloPSy: http://research.microsoft.com/en- us/people/nikolait/http://research.microsoft.com/en- us/people/nikolait/ © Marcelo d’Amorim 2010
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Objects: Lazy initialization A symbolic object is an “unknown blob”. – Execution details the blob by need Assignment example: o.f = exp – Variable o holds the symbolic object ? (the blob) – 3 possible outcomes depending on ?: ? is null ? is a not yet seen object ? Is an already seen object © Marcelo d’Amorim 2010
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Objects: Lazy initialization A symbolic object is an “unknown blob”. – Execution details the blob by need Assignment example: o.f = exp – Variable o holds the symbolic object ? (the blob) – 3 possible outcomes depending on ?: ? is null ? is a not yet seen object ? Is an already seen object © Marcelo d’Amorim 2010 Concretize the heap while making choices
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Example © Marcelo d’Amorim 2010 Node root; add(Node n) { if (root == null) { root = n; } else { int v = root.val; if (v < n.val) {…} … } Notation: Primitive fields inside the box. Reference fields outside (omission indicates null). Dashed borders indicate symbolic objects. BST bst = new BST(); bst.add($a); bst.add($b); bst
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Example © Marcelo d’Amorim 2010 Node root; add(Node n) { if (root == null) { root = n; } else { int v = root.val; if (v < n.val) {…} … } BST bst = new BST(); bst.add($a); bst.add($b); $abst root
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Example © Marcelo d’Amorim 2010 Node root; add(Node n) { if (root == null) { root = n; } else { int v = root.val; if (v < n.val) {…} … } BST bst = new BST(); bst.add($a); bst.add($b); $a $x $y bst $b $a $x $y bst $b $a root left right $a == null $a != null and $a.val = $x and $b.val = $y and $y < $x $x bst $a root $a != null and $a.val = x and $b.val = y and $x=$y $a != null and $a.val = $x and $b.val = $y and $y > $x NPE!
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Strings Two approaches – A string is an array of symbolic characters – Symbolic string + special interpretation of library methods First approach can be too expensive. Why? © Marcelo d’Amorim 2010
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Strings Two approaches – A string is an array of symbolic characters – Symbolic string + special interpretation of library methods First approach can be too expensive. Why? © Marcelo d’Amorim 2010 foo(String s) { …if (s.equals(“hello”)) {…}… }
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Automata for string constraints Second approach generates finite automata for string constraints generated with library calls Constraint solving = automata walk! © Marcelo d’Amorim 2010
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Exercise Generate automata to characterize these constraints © Marcelo d’Amorim 2010 $s.startsWith(“hello”) and $s.indexOf(“class”)!=-1 and s.endsWith(“.”)
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Concolic execution (a.k.a. fuzzing) Several problems with standard symbolic execution. In particular: – Exploration of infeasible paths – Symbolic arrays – Handling of loops and recursion – Native method calls © Marcelo d’Amorim 2010
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Concolic Execution: How it works 1.Execute the problem with concrete and symbolic inputs 2.Save decisions as before, but execute a single path! 3.Solve pending decisions and back to 1 © Marcelo d’Amorim 2010 Can go from symbolic to concrete domain anytime during execution!
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Summary Important technique to automate testing Found real errors in file systems, OS, network protocols, and several data structures See www.coverity.com for industrial applicationswww.coverity.com © Marcelo d’Amorim 2010
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What I believe is still missing Automation of driver and oracle generation Exploit natural parallelism © Marcelo d’Amorim 2010 SYMB.EXE Solver YICES … … queries: solutions:
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