Hybrid BDD and All-SAT Method for Model Checking Orna Grumberg Joint work with Assaf Schuster and...

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Hybrid BDD and All-SAT Method for Model

Checking

Orna Grumberg

Joint work with Assaf Schuster and Avi Yadgar

Technion – Israel Institute of Technology

Contribution of this Work

Hybrid All-SAT and BDD model checking Exploit the strength of each method. Avoid drawbacks of both methods.

Dual representation for All-SAT solving Exploit efficient SAT procedures.

bcp(), conflict driven learning. Extract information from the structure of a model.

Simplify and speedup the All-SAT solving process Minimize the representation of solutions.

Model Checking – Pre-image Computation Pre-image(S) – The set of predecessors of

states in S. - state variables, - input variables. - Transition Relation. - set of states.

x

( '( '))

{ | ', ( , , ') '( ')}

pre image S x

x x i Tr x i x S x

'( ')S x

( , , ')Tr x i x

i

Model Checking

Start with the error states.

Iteratively look for states in S0.

*

0

* *

*

P

( ) {

( )

( ) \

}

S

new

while new

if new S

return FALSE

S S new

new Pre Image new S

return TRUE

Checking of a safety property AGp:Input for the algorithm is S0,Tr and P.

Model Checking

Requires operations on sets Union, intersection, and quantification.

Common representation of sets: BDDs Union and intersection - polynomial in the size of

the BDDs. Quantification – exponential in the size of the

BDD. Explosion of intermediate results during pre-image

computation.

All-SAT Pre-image Computation

Each solution describes: A current-state not in . A valid transition. A next-state in new.

We need all the solutions which differ in the assignment to . Represent different current-states.

*

*

( ') \

( ( , , ') ( ') ( ))

pre image new S

All SAT Tr x i x new x S x

x

*S

Model Checking – Hybrid Method

*

0

* *

*

P

( ) {

( )

}

( ) \

S

new

while new

if new S

return FALSE

S S new

return TRUE

new Pre Image new S

Use BDD operations for all but pre-image computation

All-SAT – Blocking Clauses

Find all the satisfying assignments(solutions) of a formula.

Extend the SAT algorithm: Create a clause to block each solution found. Resume search with the new clause added.

Common in All-SAT tools. Direct and simple, natural for the solver. Disadvantage:

Rapid space growth of the solver.

All-SAT – Blocking BDDs [Gupta et al]

A partial assignment A agrees with a BDD B if there is a path from the root of B to the node ‘1’. Values of the nodes in the

path correspond to A. A1: x1=1,x8=0.

A2: x1=0,x5=1

A3: x3=0,x5=0

X3

X5

0 1

X1

0

0

0

1

11

All-SAT – Blocking BDDs

Restrict the search space of a SAT solver by a BDD B. Check if the current partial assignment agrees

with B each time variables from B are assigned. Backtrack if the assignment does not agree.

Use for All-SAT Add each solution to a BDD S. Force agreement with S.

Our Hybrid Pre-image computation Look for all the assignments to which can

be extended to a solution for:

new and S* are given as BDDs. Restrict the search by the BDD of ¬S*. new will be discussed later.

Tr is in CNF. Return a BDD of the solutions

Its negation is used for blocking known solutions.

*( , , ') ( ') ( )Tr x i x new x S x

x

All-SAT Decision Heuristic

Add a graph representation of the transition relation to the All-SAT solver.

Use information from the graph for making decisions in the All-SAT solver. Find sets of solutions instead of single ones. Compute dynamic transition relation. Detect independent sub-problems. Reduce sub-problems to SAT.

Transition Relation Graph (TRG)

x’1

v1

X1 i3

v3

v2

x’2

i1 i2 X2

1 1 2 3

2 2 3

' ( ( ))

( ( ))

x x x i

i x i

2 2 1'x x i

- x’: next-state

- x: current-state

- i: input

- v: intermediate

v3

v2

v1

Partitioned Transition Relation:

Transition Relation Graph

The intermediate variables exists in the CNF representation of Tr.

The operator of a variable is represented by a set of clauses:

3 2 3v x i 3 2 3

3 2

3 3

( )

( )

( )

v x i

v x

v i

TRG – Justification

Assignment to a node can be

justified by its

successors.

x’1

v1=0

X1 X2

v3

v2

x’2

i1 i2 i3

v3=0

All-SAT TRG-Based Decision

Decision i+1

justifies decision i. If not needed –justify a

new root. If all roots are justified –

a solution was found.

x’1=1

v1

X1 i3

v3

v2

x’2=1

i1 i2 X2

v2=1

i2=1 X2=1

Backtrack to change the value of at least one current state

variable. X2=0 i1=1

All-SAT TRG-Based Decision

A solution is a justification of an assignment to the roots. Represents a set of current states. Less instantiations of assignments. Each assignment is instantiated more quickly. Smaller representation of the solutions.

All-SAT TRG-Based Decision

Values of the roots – all the assignments in

*( , , ') ( )( ')Tr x i x S xnew x

( ')new x

x’1

x’2

x’3

x’4

x’4

x’3

x’1

x’2

1 0

x’4=0 x’3=0 x’2=0 x’1=1 x’1=0

TRGnew

All-SAT TRG-Based Decision

A solution is a justification of an assignment to the roots. Represents a set of current states. Less instantiations of assignments. Each assignment is instantiated more quickly. Smaller representation of the solutions.

DFS over the BDD of new Handle sets of assignments from new at once. Avoid repetition of justifications.

All-SAT TRG-Based Decision

Computes sets of current states (justifications) for each subset of new Unlike All-SAT which handles a single assignment

at a time Unlike BDDs that can compute the set of all

current states for new at once

All-SAT optimizations

Independent Roots Determined

statically or dynamically.

Sub-problems can be solved independently.

x’1

v1

X2

v3

v2

x’2

i1 i2 i3 X1 i1=1

x’2=1

All-SAT optimizations

Non-important roots Determined

statically or dynamically.

Reduce sub-problems to SAT.

x’1

X2

v3

v2

x’2

X3 i2 i3 X1

v1

x’2=1

x’2=1

Hybrid Model Checking – Final Notes Dynamic transition relation

Only variables of each path in the BDD of new are justified.

Incremental learning of the All-SAT solver Learning is independent of the current iteration.

*( , , ') ( ') ( )Tr x i x new x S x

Experimental Results Experiments were done on ISCAS89 and

ISCAS99 benchmarks 50~6000 state variables

Compared to a BDD model checker Results are not consistent for all models For each model, one method constantly

performed better than the other. For most models memory requirements is

lower.

Experimental Results

On “good” examples, less time is spent on quantification and more on Boolean operations Quantification is faster

Independent Roots and Non-Important Roots enhance performance.

Speedup

0

0.5

1

1.5

2

2.5

3

37 37 57 74 74 121

228

245

449

490

490

597

735

1452

6642

Number of State Variables

So

lvin

g T

ime

(no

rmal

ized

)

BDD Model Checker

Hybrid Model Checker

Conclusion

Hybrid All-SAT and BDD model checking Exploit the strength of each method. Avoid drawbacks of both methods.

Dual representation All-SAT solving Exploit efficient SAT procedures.

bcp(), conflict driven learning. Extract information from the structure of a model.

Simplify and speedup the All-SAT solving process Minimize the representation of solutions.

Extensions

Parallel All-SAT model checking

Adaptation of All-SAT solver for general All-SAT problems.

Optimizations of the current All-SAT scheme for model checking

Parallel All-SAT Model Checking Distribute the pre-image computation. Split the space of solutions into windows.

A window is represented by a partial assignment to the current-state variables.

A solution is an extension to the partial assignment of the window.

Split the space to as many subspaces as needed for maintaining CPU load balance.

Parallel All-SAT Model Checking

Each node only instantiates solutions in its window.

Split S* according to the window. Reduce the space requirement of a node.

Prefer memory load balance over CPU load balance.

*( , , ') ( ') ( )Tr x i x new x S x

Parallel All-SAT Model Checking

Init

Find solutions in window

Merge new for next iteration.

,

,

*j,i

*,

0

_ ()

0

{

(w , )

_ ( , , )

( )

{ }

( )

} (( ) ( ))

j i

j i

w

j w j i

j

k j

process j

new P

i

do

S get devision from master

new SAT pre image new S w

broadcast new

new receive new from allk j new

inc i

while new new S

Parallel All-SAT Model Checking

Use conflict clauses incrementally.

Share conflict clauses among nodes.

Adapt to grid computation.

TRG for General All-SAT

Extract a ‘circuit-like’ structure from general CNF formulae.

Gain more information about the formulae. Incorporate additional information into the

TRG, according to the type of problem being solved.

TRG for General All-SAT

Extract a ‘circuit-like’ structure from general CNF formulae.

1

2

3 1 2

4 2

3 4 1

( ) ( ) ( )

' ( )

( )

( )

( )

a b c d b c e a d

v a d

v b c

v v v

v v e

v v v

a d c b e

v1

v2

v3

v4

' 1

Optimizations – Early Quantification

in BDD

For a partitioned transition relation and an order f1…fn, define

Order the functions such that fi+1 shares the most current state variables with f1..fi. Group related variables

( '( '))

'( ')}{ | ', ( , , ')pre image S x

S xx x i Tr x i x

1 1 1 1{ | ' [ ' [ ... ' [ '( ')]]]}n n n nx x N x N x N S x

'i i iN x f

Optimizations – Early Quantification

in the Hybrid method Assign and justify the roots of the TRG

(next-state variables) in the order determined by early quantification Order the variables in the BDD new

accordingly

Optimizations – Success Learning

x’1=0

v3=0

v2

v1=0

x’1=0

v3=0

v2=0

v1

Store the set of solutions for a cut.

The End