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Carnegie Mellon University

SAT-Based Decision Procedures for Subsets of First-Order Logic. Part I: Equality with Uninterpreted Functions. Randal E. Bryant. Carnegie Mellon University. http://www.cs.cmu.edu/~bryant. Overall Outline. Background SAT-based Decision Procedures

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Carnegie Mellon University

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  1. SAT-Based Decision Procedures for Subsets of First-Order Logic Part I: Equality with Uninterpreted Functions Randal E. Bryant Carnegie Mellon University http://www.cs.cmu.edu/~bryant

  2. Overall Outline • Background • SAT-based Decision Procedures • Part I: Equality with Uninterpreted Functions • Translating to propositional formula • Exploiting positive equality and sparse transitivity • Part II: Separation Logic • Restricted form of addition • Translating to propositional formula • Hybrid encoding techniques

  3. OK Verification Error Decision Procedure for Decidable Fragment of First-Order Logic Decision Procedure for Decidable Fragment of First-Order Logic Decision Procedures in Formal Verification RTL/ Source Code + Specifi-cation Formal Model + Specifi-cation Abstraction Applications: Out-of-order, Pipelined Microprocessors; Cache Coherence Protocols; Device Drivers; Compiler Validation; …

  4. Input Formula Input Formula additional clause unsatisfiable Approximate Boolean Encoder Satisfiability-preserving Boolean Encoder First-order Conjunctions SAT Checker Boolean Formula Boolean Formula satisfiable SAT Solver SAT Solver satisfying assignment satisfiable unsatisfiable satisfiable unsatisfiable LAZY ENCODING EAGER ENCODING SAT-based Decision Procedures

  5. Uninterpreted Functions Linear Arithmetic Theory Combiner Bit Vectors • • • First-order Conjunctions SAT Checker Theory N Lazy Encoding Characteristics • Can be extended to handle wide variety of theories • Clean & modular design • Does not scale well • Number of calls to conjunction checker typically exponential in formula size • Each call independent: nothing learned in one call can be exploited by another

  6. Input Formula Satisfiability-preserving Boolean Encoder Boolean Formula SAT Solver unsatisfiable satisfiable Eager Encoding Characteristics • Must encode all information about domain properties into Boolean formula • Some properties can give exponential blowup • Lets SAT solver do all of the work Good Approach for Some Domains • Modern SAT solvers have remarkable capacity • Good at extracting relevant portions out of very large formulas • Learns about formula properties as search proceeds • Focus of this talk

  7. Common Operations x0 x1 p  x x2 ALU x 1 0 ITE(p, x, y) xn-1 y If-then-else Bit-vectors to (unbounded) Integers x = x = y Test for equality y  f Functional units to Uninterpreted Functions a = x b = y  f(a,b) = f(x,y) Data and Function Abstraction

  8. IF/ID ID/EX EX/WB PC Control Control Op Instr Mem Rd Ra = Adat Reg. File ALU Imm +4 = Rb Abstract Modeling of Microprocessor • For any Block that Transforms or Evaluates Data: • Replace with generic, unspecified function • Also view instruction memory as function F3 F2 F1

  9. EUF: Equality with Uninterp. Functs • Decidable fragment of first order logic • Formulas (F ) Boolean Expressions F, F1F2, F1F2 Boolean connectives T1 = T2 Equation P (T1, …, Tk) Predicate application • Terms (T ) Integer Expressions ITE(F, T1, T2) If-then-else Fun (T1, …, Tk) Function application • Functions (Fun) Integer  Integer f Uninterpreted function symbol Read, Write Memory operations • Predicates (P) Integer  Boolean p Uninterpreted predicate symbol

  10. e 1 f T F Ù e Ø 0 = x f 0 T Ú = F T F d 0 EUF Decision Problem • Circuit Representation of Formula • Truth Values • Dashed Lines • Model Control • Logical connectives • Equations • Integer Values • Solid lines • Model Data • Uninterpreted functions • If-Then-Else operation • Task • Determine whether formula F is universally valid • True for all interpretations of variables and function symbols • Often expressed as (un)satisfiability problem • Prove that formula F is not satisfiable

  11. e 1 f T x0 d0 f(x0) f(d0) F Ù e Ø 0 = x f 0 T Ú = F T F d 0 Finite Model Property for EUF • Observation • Any formula has limited number of distinct expressions • Only property that matters is whether or not different terms are equal

  12. Boolean Encoding of Integer Values • For Each Expression • Either equal to or distinct from each preceding expression • Boolean Encoding • Use Boolean values to encode integers over small range • EUF formula can be translated into propositional logic • Logic circuit with multiplexors, comparators, logic gates • Tautology iff original formula valid

  13. Some History of EUF Decision Procedures • Ackermann, 1954 • Quantifier-free decision problem can be decided based on finite instantiations • Burch & Dill, CAV ‘94 • Automatic decision procedure • Davis-Putnam enumeration • Congruence closure to enforce functional consistency • Boolean approaches • Goel, et al, CAV ‘98 • Attempted with BDDs, but didn’t get good results • Bryant, German, Velev, CAV ‘99 • Could verify microprocessor using BDDs • Velev & Bryant, DAC 2001 • Demonstrated power of modern SAT procedures

  14. Exploiting Positive Equality • Bryant, German, Velev CAV ‘99 • First successful use of Boolean methods for EUF • Positive Equality • Equations that appear in unnegated form • Exploiting • Can greatly reduce number of cases required to show validity • Only need to consider maximally diverse interpretations • Reduce number of Boolean variables in bit-level encoding

  15. Diverse Interpretations: Illustration • Task • Verify someone’s obscure code for 4X4 array transpose void trans(int a[4][4]) { int t; for (t = 4; t < 15; t++) if (~t&2|| t&8 && ~t&1) { int r = t&0x3; int c = t>>2; int val = a[r][c]; a[r][c] = a[c][r]; a[c][r] = val; } } Only operations on array elements Observation • Array elements altered only by copying one to another • Just need to make sure right set of copies performed

  16. Verifying Array Code • Test for trans4 dest src trans4 Single Test Adequate • Unique value for each possible source element • “Maximally Diverse” • If dest[r][c]=src[c][r], then must have copied proper value

  17. Characteristics of Array Verification • Correctness Condition • src[0][0] = dest[0][0]  src[0][1] = dest[1][0]  • src[0][2] = dest[2][0]  … • …  • src[3][2] = dest[2][3]  src[3][3] = dest[3][3] • Properties • All equations are in positive form • Worst case test is one that tends to make things unequal • I.e., maximally diverse interpretation • All maximally diverse interpretations isomorphic • Only need to try one to prove all handled correctly

  18. IF/ID ID/EX EX/WB PC Control Control Op Instr Mem Rd Ra = Adat Reg. File ALU Imm +4 = Rb Equations in Processor Verification • Data Types Equations • Register Ids Control stalling & forwarding • Instruction Address Only top-level verification condition • Program Data Only top-level verification condition

  19. Exploiting Equation Structure • Positive Equations • In top-level verification condition • Can use maximally diverse interpretation • Negative Equations • PIpeline control logic • Between register IDs • Operation depends on whether or not two IDs are equal • Must use general encoding • Encode with Boolean variables • All possibility of IDs that match and/or don’t match

  20. e 5 6 7 8 1 f T F 7 Ù 5 e Ø 0 = 0 x 5 5 6 6 f 0 T Ú 1 6 7 7 6 8 = F T 0 7 5 8 6 1 F d 0 Application of Positive Equality • Observation • All equations are positive in this formula • Can consider single, diverse interpretation for terms x0 d0 f(x0) f(d0) 1

  21. = F x1 vf1  = vf2 x2 f f Function Elimination: Ackermann’s Method • Replace All Function Applications by Integer Variables • Introduce new domain variable • Enforce functional consistency by global constraints • Unclear how to restrict evaluation to diverse interpretations

  22. f vf1 x1 = f x2 T F vf2 = = x3 f T F T F vf3 Function Elimination: ITE Method • General Technique • Introduce new domain variable • Nested ITE structure maintains functional consistency

  23. f 5 x1 = f x2 T F 6 = = x3 f T F T F 7 Generating Diverse Encoding • Replacing Application • Use fixed values rather than variables • Application results equal iff arguments equal

  24. Benefits of Positive Equality • Microprocessor Benchmarks • 1xDLX: Single issue, RISC processor • 2xDLX-EX-BP: Dual issue processor with exception handling & branch prediction • 9VLIW-BP: 9-way VLIW processor with branch prediction • Measurements • Using BerkMin SAT solver

  25. Benefits of Positive Equality Velev & Bryant, JSC ‘02 • Microprocessor Benchmarks • 1xDLX: Single issue, RISC processor • 2xDLX-EX-BP: Dual issue processor with exception handling & branch prediction • 9VLIW-BP: 9-way VLIW processor with branch prediction • Measurements • Using BerkMin SAT solver

  26. Transitivity Constraints eyz ezx exy exy eyz exz exy exz eyz  Revisiting Encoding Techniques x = y  y = z  z  x Satisfiable? • Small Domain (SD) • Use bit-level encodings of bounded integers • Implicitly encode properties of equality logic • Per-Constraint Encoding (EIJ) • Introduce explicit Boolean variable for each equation • Additional transitivity constraints to express properties of equality logic x1x0=y1y0y1y0=z1z0z1z0x1x0 exy eyzexz

  27. Per-Constraint Encoding • Introduced by Goel et al., CAV ‘98 • Exploiting sparse structure by Bryant & Velev, CAV 2000 • Procedure • Initial formula F • Want to prove valid • Prove that F is not satisfiable • Replace each equation x = y by Boolean variable exy • Gives formula Fsat • Generate formula expressing transitivity constraints • Gives formula Ftrans • Use SAT solver to show that Fsat Ftrans not satisfiable • Motivation • Provides SAT solver with more direct representation of underlying problem

  28. = =  = = = = = Graph Interpretation of Transitivity • Transitivity Violation • Cycle in graph • Exactly one edge has ei,j= false

  29.   Exploiting Chords • Chord • Edge connecting two non-adjacent vertices in cycle Property • Sufficient to enforce transitivity constraints for all chord-free cycles • If transitivity holds for all chord-free cycles, then holds for arbitrary cycles

  30. Enumerating Chord-Free Cycles • Strategy • Enumerate chord-free cycles in graph • Each cycle of length k yields k transitivity constraints Problem • Potentially exponential number of chord-free cycles 1 2 k • • • 2k+k chord-free cycles • • •

  31. 2k+1 chord-free cycles Adding Chords • Strategy • Add edges to graph to reduce number of chord-free cycles 1 2 k • • • 2k+k chord-free cycles • • • Trade-Off • Reduces formula size • Increases number of relational variables

  32. Chordal Graph • Definition • Every cycle of length > 3 has a chord • Goal • Add minimum number of edges to make graph chordal • Relation to Sparse Gaussian Elimination • Choose pivot ordering that minimizes fill-in • NP-hard • Simple heuristics effective

  33. 1xDLX-C Equation Structure • Vertices • For each vi • 13 different register identifiers • Edges • For each equation • Control stalling and forwarding logic • 27 relational variables • Out of 78 possible

  34. Original 27 relational variables 286 cycles 858 clauses Augmented 33 relational variables 40 cycles 120 clauses Adding Chordal Edges to 1xDLX-C

  35. 2DLX-CCt Equation Structure • Equations • Between 25 different register identifiers • 143 relational variables • Out of 300 possible

  36. Original 143 relational variables 2,136 cycles 8,364 clauses Augmented 193 relational variables 858 cycles 2,574 clauses Adding Chordal Edges to 2xDLX-CCt

  37. Choosing Encoding Method • Comparison • Formula length n with m integer variables & function applications • Worst-case complexity • Per-Constraint Encoding Works Well in Practice • Generates slightly larger formulas than small domain • Better performance by SAT solver

  38. Encoding Comparison Velev & Bryant, JSC ‘02 • Benchmarks • Superscalar, out-of-order datapath • 2–6 instructions issued in parallel • Measurements • Using BerkMin SAT solver

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