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Verifying Catamorphism-Based Contracts using Constrained Horn Clauses

Published online by Cambridge University Press:  07 July 2022

EMANUELE DE ANGELIS
Affiliation:
IASI-CNR, Rome, Italy (e-mails: emanuele.deangelis@iasi.cnr.it, maurizio.proietti@iasi.cnr.it)
MAURIZIO PROIETTI
Affiliation:
IASI-CNR, Rome, Italy (e-mails: emanuele.deangelis@iasi.cnr.it, maurizio.proietti@iasi.cnr.it)
FABIO FIORAVANTI
Affiliation:
DEc, University of Chieti-Pescara, Pescara, Italy (e-mail: fabio.fioravanti@unich.it)
ALBERTO PETTOROSSI
Affiliation:
DICII, University of Rome “Tor Vergata”, Rome, Italy (e-mail: adp@iasi.cnr.it)
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Abstract

We address the problem of verifying that the functions of a program meet their contracts, specified by pre/postconditions. We follow an approach based on constrained Horn clauses (CHCs) by which the verification problem is reduced to the problem of checking satisfiability of a set of clauses derived from the given program and contracts. We consider programs that manipulate algebraic data types (ADTs) and a class of contracts specified by catamorphisms, that is, functions defined by simple recursion schemata on the given ADTs. We show by several examples that state-of-the-art CHC satisfiability tools are not effective at solving the satisfiability problems obtained by direct translation of the contracts into CHCs. To overcome this difficulty, we propose a transformation technique that removes the ADT terms from CHCs and derives new sets of clauses that work on basic sorts only, such as integers and booleans. Thus, when using the derived CHCs there is no need for induction rules on ADTs. We prove that the transformation is sound, that is, if the derived set of CHCs is satisfiable, then so is the original set. We also prove that the transformation always terminates for the class of contracts specified by catamorphisms. Finally, we present the experimental results obtained by an implementation of our technique when verifying many non-trivial contracts for ADT manipulating programs.

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Original Article
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1 Introduction

Many program verification techniques are based on the classical axiomatic approach proposed by Hoare (Reference Hoare1969), where the functional correctness of a program is specified by a pair of assertions of first order logic: a precondition, which is assumed to hold on the program variables before execution, and a postcondition, which is expected to hold after execution. This pair of assertions is often referred to as a contract (Meyer Reference Meyer1992), and many programming languages provide built-in support for contracts associated with function definitions (see, for instance, Ada Booch and Bryan Reference Booch and Bryan1994, Ciao Hermenegildo et al. Reference Hermenegildo, Bueno, Carro, López-García, Mera, Morales and Puebla2012, and Scala Odersky et al. Reference Odersky, Spoon and Venners2011). In order to prove that all program functions meet their contracts, program verifiers generate verification conditions, that is, formulas of first order logic that have to be discharged by a theorem prover. Recent developments of Satisfiability Modulo Theory (SMT) solvers (de Moura and Bjø rner 2008; Barrett et al. Reference Barrett, Conway, Deters, Hadarean, Jovanovic, King, Reynolds and Tinelli2011; Komuravelli et al. Reference Komuravelli, Gurfinkel and Chaki2014; Hojjat and Rümmer Reference Hojjat and Rümmer2018) provide support for proving verification conditions in a wide range of logical theories that axiomatize data types, such as booleans, uninterpreted functions, linear integer or real arithmetic, bit vectors, arrays, strings, algebraic data types, and heaps. Among the program verifiers that use SMT solvers as a back-end, we mention Boogie (Barnett et al. Reference Barnett, Chang, De Line, Jacobs and Leino2006), Dafny (Leino Reference Leino2013), Leon (Suter et al. Reference Suter, Köksal and Kuncak2011), Stainless (Hamza et al. Reference Hamza, Voirol and Kuncak2019), and Why3 (Filliâtre and Paskevich Reference Filliâtre and Paskevich2013). There are, however, various issues that remain to be solved when following this approach to contract verification. For programs manipulating ADTs, like lists or trees, one such issue is that the verifier often has to generate suitable loop invariants whose verification may require the extension of SMT solvers with inductive proof rules (Reynolds and Kuncak Reference Reynolds and Kuncak2015).

An alternative approach is based on translating the contract verification problem into an equivalent satisfiability problem for constrained Horn clauses Footnote 1 (CHCs), that is, Horn clauses extended with logical theories that axiomatize data types like the ones mentioned above (Jaffar and Maher Reference Jaffar and Maher1994; Grebenshchikov et al. Reference Grebenshchikov, Lopes, Popeea and Rybalchenko2012; Bjø rner et al. 2015; De Angelis et al. Reference De Angelis, Fioravanti, Gallagher, Hermenegildo, Pettorossi and Proietti2021). For clauses extended with theories on basic sorts, such as the theories of boolean values and linear integer arithmetic, various state-of-the-art CHC solvers are available. Among them, let us mention Eldarica (Hojjat and Rümmer Reference Hojjat and Rümmer2018) and SPACER (Komuravelli et al. Reference Komuravelli, Gurfinkel and Chaki2014) that are quite effective in checking clause satisfiability. For clauses defined on ADTs, some solvers that can handle them, have been recently proposed. They are based on the extension of the satisfiability algorithms by induction rules (Unno et al. Reference Unno, Torii and Sakamoto2017; Yang et al. Reference Yang, Fedyukovich and Gupta2019), tree automata (Kostyukov et al. Reference Kostyukov, Mordvinov and Fedyukovich2021), and abstractions (Govind et al. 2022).

In this paper, we present a method for proving the satisfiability of CHCs defined on ADTs that avoids the need of extending the satisfiability algorithms and, instead, follows a transformational approach (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2018; De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022a). A set of CHCs is transformed, by applying the fold/unfold rules (Etalle and Gabbrielli Reference Etalle and Gabbrielli1996; Tamaki and Sato Reference Tamaki and Sato1984), into a new set of CHCs such that: (i) the ADT terms are no longer present, and hence no induction rules are needed to reason on them, and (ii) the satisfiability of the derived set implies the satisfiability of the original set. The transformational approach has the advantage of separating the concern of dealing with ADTs (which we face at transformation time) from the concern of dealing with simpler, non-inductive constraint theories (which we face at solving time by applying CHC solvers that support basic sorts only). We show that the transformational approach is well suited for a significant class of verification problems where program contracts are specified by means of catamorphisms, that is, functions defined by a simple structural recursion schema over the ADTs manipulated by the program (Meijer et al. Reference Meijer, Fokkinga and Paterson1991; Suter et al. 2010).

The main contributions of this paper are the following. (i) We define a class of CHCs that represent ADT manipulating programs and their contracts. No restrictions are imposed on programs, while contracts can be specified by means of catamorphisms only (see Section 4). (ii) We define an algorithm that, by making use of the given contract specifications as lemmas, transforms a set of CHCs into a new set of CHCs without ADT terms such that, if the transformed clauses are satisfiable, so are the original ones, and hence the contracts specified by the original clauses are valid (see Section 5). (iii) Unlike previous work (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2018; De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022a), we prove that the transformation algorithm terminates for all sets of CHCs in the given class, and it introduces in a fully automatic way new predicates corresponding to loop invariants (see Section 5). (iv) Finally, by using a prototype implementation of our method, we prove many non-trivial contracts relative to programs that manipulate lists and trees (see Section 6).

2 Preliminaries on constrained Horn clauses

We consider CHCs defined in a many-sorted first order language with equality that includes the language of linear integer arithmetic (LIA) and boolean expressions (Bool). For notions not recalled here we refer to the literature (Jaffar and Maher Reference Jaffar and Maher1994; Bjø rner et al. 2015). A constraint is a quantifier-free formula c, where the linear integer constraints may occur as subexpressions of boolean constraints, according to the SMT approach (Barrett et al. 2009). The formula c is constructed as follows:

$c ::= d \,|\, {B} \,|\, {true} \,|\, {false} \,|\sim\!c \,|\, c_1\,\&\,c_2 \,|\, c_1\!\!\vee\!c_2 \,|\, c_1\!\Rightarrow\!c_2 \,|\, c_1\!=\!c_2 \,|\, {ite}(c,c_1,c_2) \,|\, t\!=\!{ite}(c,t_1,t_2)$

$d ::=\, t_1\!\!=\!t_2 \,|\, t_1\!\!\geq\!t_2 \,|\, t_1\!\!>\!t_2 \,|\, t_1\!\!\leq\!t_2 \,|\, t_1\!\!<\!t_2$

where B is a boolean variable and t, possibly with subscripts, is a LIA term of the form $a_0+a_1X_1+\dots+a_nX_n$ with integer coefficients $a_0,\dots, a_n$ and variables $X_1,...,X_n$ . The “ $\sim$ ” symbol denotes negation. The ternary function ite denotes the if-then-else operator. The equality “=” symbol is used for both integers and booleans.

An atom is a formula of the form $p(t_{1},\ldots,t_{m})$ , where p is a predicate symbol not occurring in $\textit{LIA}\cup\textit{Bool}$ , and $t_{1},\ldots,t_{m}$ are first order terms. A constrained Horn clause (or a CHC, or simply, a clause) is an implication of the form $H\leftarrow c, G$ . The conclusion (or head) H is either an atom or false, the premise (or body) is the conjunction of a constraint c and a (possibly empty) conjunction G of atoms. A clause is called a goal if its head is false, and a definite clause, otherwise. Without loss of generality, we assume that every atom occurring in the body of a clause has distinct variables (of any sort) as arguments. By ${\it vars}(e)$ we denote the set of all variables occurring in an expression e. Given a formula $\varphi$ , we denote by $\forall (\varphi)$ its universal closure. Let $\mathbb D$ be the usual interpretation for the symbols of theory $\textit{LIA}\cup\textit{Bool}$ . By M(P) we denote the least ${\mathbb D}$ -model of a set P of definite clauses (Jaffar and Maher Reference Jaffar and Maher1994). In the examples, we will use the Prolog syntax and the teletype font. Moreover, we will often prefer writing B1 and $\sim$ B2, instead of the equivalent constraints B1=true and B2=false, respectively.

3 A motivating example

The CHC translation of a contract verification problem for a functional or an imperative program (Grebenshchikov et al. Reference Grebenshchikov, Lopes, Popeea and Rybalchenko2012; De Angelis et al. Reference De Angelis, Fioravanti, Gallagher, Hermenegildo, Pettorossi and Proietti2021) produces three sets of clauses, as shown in Figure 1, where we refer to a program that reverses a list of integers (we omit the source functional program for lack of space). The first set (clauses 14) is the translation of the operational semantics of the program. The second set (clauses 512) is the translation of the properties needed for specifying the contracts. The third set (goals 1314) is the translation of the contracts for the rev and snoc functions. In particular, goal 13 is the translation of the contract for rev, which, written in relational form, is the following universally quantified implication:

Figure 1. The set $\textsf{Reverse}$ of CHCs. For technical reasons (see Definition 1) all program properties are defined by total functions. In particular, for the empty list, the hd function returns the arbitrarily chosen value 0 (which is never used).

$\forall$ L,R. is_asorted(L,true) $\wedge$ rev(L,R) $\rightarrow$ is_dsorted(R,true)

The atoms is_asorted(L,true) and is_dsorted(R,true) are the precondition and the postcondition for rev, respectively, stating that, if a list L of integers is sorted in ascending order with respect to the “ $\leq$ ” relation, then the list R computed by the rev function for input L is sorted in descending order.

The problem of checking the validity of the contracts for the functions rev and snoc is reduced to the problem of proving the satisfiability of the set $\textsf{Reverse}$ of clauses shown in Figure 1. The set $\textsf{Reverse}$ is indeed satisfiable, but state-of-the-art CHC solvers, such as Eldarica and SPACER, fail to prove its satisfiability. This is basically due to the fact that those solvers lack any form of inductive reasoning on lists and, moreover, they do not use the information about the validity of the contract for snoc during the proof of satisfiability of the goal representing the contract for rev.

The algorithm we will present in Section 5 transforms the set $\textsf{Reverse}$ of clauses into a new set $\textsf{TransfReverse}$ of clauses (see Figure 2) without occurrences of list terms, such that if $\textsf{TransfReverse}$ is satisfiable, so is $\textsf{Reverse}$ . Since in the set $\textsf{TransfReverse}$ there are only integer and boolean terms, no induction rule is needed for proving its satisfiability.

Figure 2. The set $\textsf{TransfReverse}$ of transformed CHCs. The clauses shown here are those derived from clauses 1-12 of $\textsf{Reverse}$ and goal 13. The clauses derived from goal 14 are listed in Appendix A of the extended version of this paper (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022b).

The transformation works by introducing, for each predicate p representing a program function (in our case, rev and snoc), a new predicate symbol newp (in our case, new3 and new7) defined in terms of p together with predicates defining program properties used in the contracts (in our case, is_asorted, is_dsorted, hd, and leq_all). The arguments of newp are the variables of basic sorts occurring in the body of its defining clause, and hence newp specifies a relation among the values of the catamorphisms that are applied to p. For example, the transformation algorithm introduces the following predicate new3:

new3(K,D,J,G,H,I) :- is_asorted(F,I), hd(F,G,H), rev(F,C), is_dsorted(C,K), leq_all(D,C,J).

Then by applying the fold/unfold transformation rules, the algorithm derives a recursive definition of newp. During the transformation, the algorithm makes use of the user-provided contracts as lemmas, thus adding new constraints that ease the subsequent satisfiability proof. By construction, the recursive definition of newp is a set of clauses that do not manipulate ADTs. Note that while the contract specifications are provided by the users, the introduction of the new predicate definitions, which is the key step in our transformation algorithm is done in a fully automatic way, as we will show in Section 5.

If the predicates defining program properties are in the class of catamorphisms (formally defined in Section 4), then our transformation is guaranteed to terminate. Thus, we eventually get, as desired, a set of clauses that are defined on basic sorts only, whose satisfiability can be checked by CHC solvers that handle the $\textit{LIA}\cup\textit{Bool}$ theory. In our example, both Eldarica and SPACER are able to show the satisfiability of $\textsf{TransfReverse}$ .

4 Specifying contracts using catamorphisms

The notion of a catamorphism has been popularized in the field of functional programming (Meijer et al. Reference Meijer, Fokkinga and Paterson1991) and many generalizations of it have been proposed in the literature (Hinze et al. Reference Hinze, Wu and Gibbons2013). Catamorphisms have also been considered in the context of many-sorted first order logic with recursively defined functions (Suter et al. 2010; Pham et al. Reference Pham, Gacek and Whalen2016; Govind et al. 2022), as we do in this paper.

Let f be a predicate symbol whose $m \!+\! n$ arguments (for $m,\!n\!\geq\! 0$ ) have sorts $\alpha_1,\!\ldots\!,\!$ $\alpha_m,$ $\beta_1,\ldots,\beta_n$ , respectively. We say that f is functional from $\alpha_1\times\ldots\times\alpha_m$ to $\beta_1\times\ldots\times\beta_n$ , with respect to a set P of definite clauses, if $M(P) \models \forall X, Y, Z.\ f(X,Y) \wedge f(X,Z) ~\rightarrow~ Y\!=\!Z$ ,

where X is an m-tuple of distinct variables, and Y and Z are n-tuples of distinct variables. X and Y are said to be tuples of the input and output variables of f, respectively. Predicate f is said to be total if $M(P) \models \forall X \exists Y.\ f(X,Y)$ . In what follows, a “total, functional predicate” f from $\alpha$ to $\beta$ will be called a “total function” and denoted by $f \in \mbox{[}\alpha \rightarrow \beta\mbox{]}$ (the set P of clauses that define f will be understood from the context).

Definition 1 (Catamorphisms) A list catamorphism, shown in Figure 3(A), is a total function h $\in [\sigma\times$ list $(\beta) \rightarrow \varrho]$ , where: (i) $\sigma$ , $\beta$ , and $\varrho$ are (products of) basic sorts, (ii) list $(\beta)$ is the sort of any list of elements each of which is of sort $\beta$ , (iii) base1 is a total function in $[\sigma\rightarrow \varrho]$ , and (iv) combine1 is a total function in $[\sigma\times\beta\times\varrho\rightarrow \varrho]$ . Similarly, a (binary) tree catamorphism (or a tree catamorphism, for short) is a total function t $\in [\sigma\times$ tree $(\beta)\rightarrow \varrho]$ defined as shown in Figure 3(B).

Figure 3. (A) List catamorphism. (B) Tree catamorphism.

The parameter X and some atoms in the body of the clauses in Figure 3 may be absent (see, for instance, the predicate hd in Figure 1). The definition of catamorphisms we consider here slightly extends the usual first order definitions (Suter et al. 2010; Pham et al. Reference Pham, Gacek and Whalen2016; Govind et al. 2022) by allowing the parameter X, which gives an extra flexibility for specifying contracts. Catamorphisms with parameters have also been considered in functional programming (Hinze et al. Reference Hinze, Wu and Gibbons2013). To see an example, the predicate leq_all (see Figure 1) is a catamorphism in [int $\times$ list(int) $\rightarrow$ bool], where: (i) base1(X,Res) is the function in [int $\rightarrow$ bool] defined by the constraint Res = true (i.e. it binds the output boolean variable Res to true), and (ii) combine1(X,H,R,Res) is the function in [int $\times$ int $\times$ bool $\rightarrow$ bool] defined by the $\textit{LIA}\cup\textit{Bool}$ constraint Res = (X=<H & R).

The schemata presented in Figure 3 can be extended by adding to the bodies of the clauses extra atoms that have the list tail or the left and right subtrees as arguments. These extensions are shown in Figure 4, where base3, combine3, base4, and combine4 are total functions on basic sorts, and f and g are defined by instances of the same schemata (C) and (D), respectively. Strictly speaking, these schemata are a CHC translation of the zygomorphism recursion schemata (Hinze et al. Reference Hinze, Wu and Gibbons2013), extended with parameter X. However, schemata (C) and (D) can be transformed into schemata (A) and (B), respectively (see Appendix B of the extended version of this paper (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022b)), and hence we prefer not to introduce a different terminology and we call them simply catamorphisms.

Figure 4. (C) Generalized list catamorphism. (D) Generalized tree catamorphism.

Examples of list catamorphisms that are instances of the schema of Figure 3(A) are the functions is_asorted and is_dsorted shown in Figure 1 of Section 3. For instance, is_asorted is a catamorphism in [list(int) $\rightarrow$ bool], where: (i) base3 is the constant function defined by the constraint Res = true, (ii) the auxiliary function f is hd $\in$ [list(int) $\rightarrow$ bool $\times$ int], and (iii) combine3 is the function in [bool $\times$ int $\times$ int $\times$ bool $\rightarrow$ bool] defined by the $\textit{LIA}\cup\textit{Bool}$ constraint Res = (IsDefHdT => (H=<HdT & ResT)). Two more examples are given in Figure 5, where count counts the occurrences of a given element in a list, bstree checks whether or not a tree is a binary search tree (duplicate keys are not allowed), treemax and treemin compute, respectively, the maximum and the minimum element in a binary tree.

Figure 5. The catamorphisms count and bstree.

In the sets of CHCs we consider, we identify two disjoint sets of predicates: (1) the program predicates, defined by any set of CHCs not containing occurrences of catamorphisms, and (2) the catamorphisms, defined by instances of the schemata in Figure 4. An atom is said to be a program atom (or a catamorphism atom) if its predicate symbol is a program predicate (or a catamorphism, respectively).

Definition 2 A contract is a formula of the form (where implication is right-associative):

$({\mathit{K}})$ $\mathit{pred}(Z) \rightarrow c, \mathit{cata}_1(X_1,T_1,Y_1),\ldots,\mathit{cata}_n(X_n,T_n,Y_n) \rightarrow d$

where: (i) $\mathit{pred}$ is a program predicate and $\mathit{Z}$ is a tuple of distinct variables, (ii) c is a constraint such that $\mathit{vars}(c)\!\subseteq\! \{X\!_{1},\ldots,X\!_{n},Z\}$ , (iii) $\mathit{cata}_1,\ldots,$ $\mathit{cata}_n$ are catamorphisms, (iv) ${X_1},\ldots,{X_n},$ ${Y_1},\ldots,{Y_n}$ are pairwise disjoint tuples of distinct variables of basic sort, (v) ${T_1},\ldots,{T_n}$ are ADT variables occurring in Z, and (vi) d is a constraint, called the postcondition of the contract, such that $\mathit{vars}(d) \subseteq \{X_1,\ldots,X_n,$ $Y_1,\ldots,Y_n,Z\}$ .

The following are the contracts for rev and snoc. Footnote 2

:- spec rev(L,R) ==> is_asorted(L,BL), is_dsorted(R,BR) => (BL=>BR).

:- spec snoc(A,X,C) ==> is_dsorted(A,BA), leq_all(X,A,BX), is_dsorted(C,BC)

=> ((BX & BA) => BC).

Definition 3 Let $\mathit{Catas}$ denote the conjunction $\mathit{cata}_1(X_1,T_1,Y_1) \wedge \ldots \wedge \mathit{cata}_n(X_n,T_n,Y_n)$ of the catamorphisms in the contract K (see Definition 2), and let P be a set of definite CHCs. We say that contract K is valid (with respect to the set P of CHCs) if $M(P) \models \forall \ (\mathit{pred}(Z) \wedge c \wedge \mathit{Catas} ~\rightarrow~ d)$ .

Theorem 1 (Correctness of the CHC translation) For contract K, let $\gamma(K)$ denote the goal $\mathit{false} \leftarrow \neg\,d, c, \mathit{pred}(Z), \mathit{Catas}$ . Contract K is valid with respect to a set P of CHCs if and only if $P\cup \{\gamma(K)\}$ is satisfiable.

The proof of this theorem is given in Appendix C of the extended version of this paper (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022b). The use of the catamorphism schemata (C) and (D) guarantees the termination of the transformation algorithm (see Theorem 2) and, at same time, allows the specification of many non-trivial contracts (see our benchmark in Section 6). Among the properties that cannot be specified by our notion of catamorphisms, we mention ADT equality (indeed ADT equality has more than one ADT argument). Thus, in particular, the property $\forall$ L,RR. double-rev(L,RR) $\!\rightarrow\!$ L=RR, where double-rev(L,RR) holds if the conjunction “rev(L,R), rev(R,RR)” holds, cannot be written as a contract in our framework. We leave it for future work to identify larger classes of contracts that can be handled by our transformation-based approach.

5 Catamorphism-based transformation algorithm

In this section we present Algorithm ${\mathcal{T}}_{\mathit{cata}}$ (see Figure 6) which, given a set P of definite clauses manipulating ADTs and a set ${\mathit{Cns}}$ of contracts, derives a set $\mathit{TransfCls}$ of CHCs with new predicates manipulating terms of basic sorts only, such that if $\mathit{TransfCls}$ is satisfiable, then $P\cup \{\gamma(K) \mid K\!\in\! \mathit{Cns}\}$ is satisfiable. By Theorem 1, the satisfiability of $\mathit{TransfCls}$ implies the validity of the contracts in ${\mathit{Cns}}$ with respect to P.

Figure 6. The Transformation Algorithm ${\mathcal{T}}_{\mathit{cata}}$ .

During the while-do loop, ${\mathcal{T}}_{\mathit{cata}}$ iterates the $\mathit{Define}$ , $\mathit{Unfold}$ , and $\mathit{Apply}-\mathit{Contracts}$ procedures as we now explain. Their formal definition is given in Figures 7, 8, and 9.

  • Procedure $\mathit{Define}$ works by introducing suitable new predicates defined by clauses, called definitions, of the form: $\mathit{newp}(U) \leftarrow c, A, \mathit{Catas}\!_{A}$ , where U is a tuple of variables of basic sort, A is a program atom, and $\mathit{Catas}\!_A$ is a conjunction of catamorphism atoms whose ADT variables occur in A. Thus, $\mathit{newp}(U)$ defines the projection onto $\textit{LIA}\cup\textit{Bool}$ of the relation between the variables of the program atom A and the catamorphisms acting on the ADT variables of A. In particular, for each program atom A occurring in the body “c,G” of a definite clause or a goal in $\mathit{InCls}$ , the $\mathit{Define}$ procedure may either (i) introduce a new definition whose body consists of A, together with the conjunction of all catamorphism atoms in G that share an ADT variable with A, and the constraints on the input variables of A of basic sort (case Project) or (ii) extend an already introduced definition for the program predicate of A by (ii.1) adding new catamorphism atoms to its body and/or (ii.2) generalizing its constraint (case Extend). The new predicate definitions introduced by a single application of the $\mathit{Define}$ procedure are collected in $\mathit{NewDefs}$ , while the set of all definitions introduced during the execution of ${\mathcal{T}}_{\mathit{cata}}$ are collected in $\mathit{Defs}$ .

  • Then, Procedure $\mathit{Unfold}$ (1) unfolds the program atoms occurring in the body of the definitions belonging to $\mathit{NewDefs}$ , and then (2) unfolds all catamorphism atoms whose ADT argument is not a variable. Finally, (3) by the functionality property (see Section 4), repeated occurrences of a function with the same input are removed.

  • Next, Procedure $\mathit{Apply}-\mathit{Contracts}$ applies the contracts in ${\mathit{Cns}}$ for the program predicates occurring in the body of the clauses generated by the $\mathit{Unfold}$ procedure. This is done in two steps. First, (1) for each program atom A in a clause C obtained by unfolding, the procedure adds the catamorphism atoms (with free output variables) that are present in the contract for A and not in the body of C. Note that, since catamorphisms are total functions, their addition preserves satisfiability of clauses. Then, (2) if the constraints on the input variables of the added catamorphisms are satisfiable, the procedure adds also the postconditions of the contracts. Thus, the effect of the $\mathit{Apply}-\mathit{Contracts}$ procedure is similar to the one produced by the application of user-provided lemmas.

Figure 7. The $\mathit{Define}$ procedure.

Figure 8. The ${\mathit{Unfold}}$ procedure.

Figure 9. The $\mathit{Apply\mbox{-}Contracts}$ procedure.

The $\mathit{Unfold}$ and $\mathit{Apply}-\mathit{Contracts}$ procedures may generate clauses that are not foldable, that is, clauses whose body “c,G” contains a conjunction of a program atom and catamorphism atoms which is not a variant of the body of any definition in Defs, or, if there is such a definition in Defs, the constraint c does not imply the constraint occurring in that definition. By using the function $\mathit{not\mbox{-}foldable},$ those clauses are added to the set $\mathit{InCls}$ of clauses to be further processed by the while-do loop, while the others, by using the function $\mathit{foldable}$ , are added to the set $\mathit{OutCls}$ of clauses that are output by the loop.

The termination of the while-do loop is guaranteed by the following two facts: (i) there are finitely many catamorphism atoms that can be added to the body of a definition, and (ii) by implementing constraint generalization through a widening operator (Cousot and Halbwachs Reference Cousot and Halbwachs1978), a most general constraint is eventually computed. When Algorithm ${\mathcal{T}}_{\mathit{cata}}$ exits the while-do loop, it returns a set $\mathit{OutCls}$ of clauses (which are all foldable) and a set $\mathit{Defs}$ of new predicate definitions. Then, the $\mathit{Fold}$ procedure (Figure 10) uses the definitions in $\mathit{Defs}$ for removing ADT variables from the clauses in $\mathit{OutCls}$ . By construction, (i) the head of each clause C in $\mathit{OutCls}$ is either false or an atom $\mathit{newq}(V)$ , where V is a tuple of variables of basic sort, and (ii) for each conjunction of a program atom A and catamorphism atoms B in the body of C sharing an ADT variable with A, there is in $\mathit{Defs}$ a definition $\mathit{newp}(U) \leftarrow c, A, \mathit{Catas}\!_A$ such that B is a subconjunction of $\mathit{Catas}\!_A$ and c is implied by the constraint in C. The Fold procedure removes all ADT variables by replacing in C the atom A by $\mathit{newp}(U)$ and removing the subconjunction B.

Figure 10. The $\mathit{Fold}$ procedure.

Let us introduce some notions used in the procedures Define, Unfold, $\mathit{Apply}-\mathit{Contracts}$ , and Fold. Given a conjunction G of atoms, by $\mathit{bvars}(G)$ and $\mathit{adt\mbox{-}vars}(G)$ we denote the set of variables in G that have a basic sort and an ADT sort, respectively.

Definition 4 The projection of a constraint c onto a tuple V of variables is a constraint $\pi(c,V)$ such that: (i) $\mathit{vars}(\pi(c,V))\!\subseteq\! V$ and (ii) $\mathbb D \models \forall (c\!\rightarrow\!\pi(c,V))$ .

A generalization of two constraints $c_1$ and $c_2$ is a constraint, denoted $\alpha (c_1,c_2)$ , such that $\mathbb D \models\forall (c_1 \!\rightarrow \alpha (c_1,c_2))$ and $\mathbb D \models\forall (c_2 \!\rightarrow \alpha (c_1,c_2))$ .

Let D $:$ $\mathit{newp}(U) \leftarrow c, {A}, \mathit{Catas}\!_A$ be a clause in Defs, where: (i) A is a program atom with predicate p, (ii) $\mathit{Catas}\!_A$ is a conjunction of catamorphism atoms, and (iii) c is a constraint on input variables of A, and U is a tuple of variables of basic sort. We say that D is maximal for p if, for all definitions $\mathit{newq}(V) \leftarrow d,{A}, B$ in $\mathit{Defs}$ , we have that: (i) B is a subconjunction of $\mathit{Catas}\!_A$ , (ii) $\mathbb D\!\models\!\forall (d\! \rightarrow\! c)$ , and (iii) V is a subtuple of U.

For a concrete definition of a generalization operator, based on widening, we refer to the existing literature (De Angelis et al. Reference De Angelis, Fioravanti, Gallagher, Hermenegildo, Pettorossi and Proietti2021).

Note that, by the Extend case of the Define procedure, for every program predicate p occurring in $\mathit{Defs}$ , there is a unique maximal definition.

Example 1 (Reverse, continued) $\mathit{InCls}$ is initialized to the set {13, 14} of goals (see Figure 1). The while-do loop starts by applying the $\mathit{Define}$ procedure to goal 13. (For lack of space, we will not show here the transformation steps starting from goal 14.) No definitions for predicate rev are present in $\mathit{Defs}$ , and hence the case Project applies. Thus, the $\mathit{Define}$ procedure introduces the following clause defining the new predicate new1:

D1. new1(BL,BR) :- is_asorted(L,BL), rev(L,R), is_dsorted(R,BR)

.

where: (i) the body is made out of the program atom rev(L,R) and the catamorphisms on the lists L and R occurring in goal 13, (ii) BL and BR are the variables of basic sort in the body of D1, and (iii) the projection of the constraint of goal 13 onto the (empty) tuple of input variables of basic sort of the body of D1 is true (and thus, omitted). $\Box$

Definition 5 (Unfolding) Let C: $H\leftarrow c,G_L,A,G_R$ be a clause, where A is an atom, and let P be a set of definite clauses with $\mathit{vars}(C)\cap\mathit{vars}(P)=\emptyset$ . Let Cls: $\{K_{1}\leftarrow c_{1}, B_{1},~\ldots,~K_{m}\leftarrow c_{m}, B_{m}\}$ , with $m\!\geq\!0$ , be the set of clauses in P, such that: for $j=1,\ldots,m$ , (i) there exists a most general unifier $\vartheta_j$ of A and $K_j$ , and (ii) the conjunction of constraints $(c, c_{j})\vartheta_j$ is satisfiable. We define: $\mathit{Unf}(C,A,P)=\{(H\leftarrow c, {c}_j,G_L, B_j, G_R) \vartheta_j \mid j=1, \ldots, m\}.$

Example 2 (Reverse, continued) The ${\mathit{Unfold}}$ procedure first (1) unfolds the program atom rev(L,R) in clause D1, and then (2) unfolds the catamorphism atoms with non-variable ADT arguments. We get:

C1. new1(A,B) :- A & B. C2. new1(A,B) :- A=(G=>((D=<H) & I)), is_asorted(F,I), hd(F,G,H), rev(F,C), snoc(C,D,E), is_dsorted(E,B).

Finally, functionality is not applicable, and $\mathit{Unfold}$ terminates. $\Box$

Example 3 (Reverse, continued) The Apply-Contracts procedure first (1) adds the catamorphism atoms is_dsorted(C,K), leq_all(D,C,J) to the body of clause C2, and then (2) adds the postconditions of the contracts for rev and snoc. We get:

C3. new1(A,B) :- A=(G=>(D=<H & I)) & I=>K & (K&J)=>B, is_asorted(F,I), hd(F,G,H), rev(F,C), snoc(C,D,E), is_dsorted(C,K), leq_all(D,C,J), is_dsorted(E,B).

>Now, in the second iteration of the while-do loop of ${\mathcal{T}}_{\mathit{cata}}$ , clause C3 is processed by the $\mathit{Define}$ procedure. The following new definition D2 relative to the program atom rev(F,C), is introduced according to the Extend case because the catamorphism atoms in C3 that share ADT variables with rev(F,C) is not a subset of the catamorphism atoms in D1.

D2. new3(K,D,J,G,H,I) :- is_asorted(F,I), hd(F,G,H), rev(F,C), is_dsorted(C,K), leq_all(D,C,J).

$\Box$

Example 4 (Reverse, continued) When Algorithm ${\mathcal{T}}_{\mathit{cata}}$ exits the while-do loop, we get a set $\mathit{OutCls}$ of clauses including:

C4. new3(A,B,C,D,E,F) :- (D & E=G & F=(H=>G=<I & J) & J=>K & (K&L)=>A), is_asorted(M,J), hd(M,H,I), rev(M,N), is_dsorted(N,K), leq_all(G,N,L), snoc(N,G,V), is_dsorted(V,A), leq_all(B,V,C).

and a set $\mathit{Defs}$ of definitions including clause D2 and the following clause relative to snoc:

D3. new7(A,B,C,D,E,F,G,H,D,I,J) :- hd(K,A,B), is_dsorted(K,C), leq_all(D,L,E), hd(L,F,G), is_dsorted(L,H), snoc(L,D,K), leq_all(I,K,J).

By the Fold procedure, from clause C4, using D2 and D3, we get clause T4 of Figure 2. $\Box$

Theorem 2 (Termination of Algorithm ${\mathcal{T}}_{\mathit{cata}}$ ) Let $\mathit{P}$ be a set of definite clauses and $\mathit{Cns}$ a set of contracts specified by catamorphisms. Then, Algorithm ${\mathcal{T}}_{\mathit{cata}}$ terminates for $\mathit{P}$ and $\mathit{Cns}$ .

Theorem 3 (Soundness of Algorithm( ${\mathcal{T}}_{\mathit{cata}}$ ) Let $\mathit{P}$ and $\mathit{Cns}$ be the input of Algorithm ${\mathcal{T}}_{\mathit{cata}}$ , and let $\mathit{TransfCls}$ be the output set of clauses. Then, every clause in $\mathit{TransfCls}$ has basic sort, and if $\mathit{TransfCls}$ is satisfiable, then all contracts in $\mathit{Cns}$ are valid with respect to P.

The proofs of Theorems 2 and 2 are given in Appendix C of the extended version of this paper (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022b). The converse of Theorem 3 does not hold. Thus, the unsatisfiability of $\mathit{TransfCls}$ means that our transformation technique is unable to prove the validity of the contract at hand, and not necessarily that the contract is not valid.

6 Experimental evaluation

In this section we describe a tool, called VeriCat, implementing our verification method based on the use of catamorphisms and we present some case studies to which VeriCat has been successfully applied (see https://fmlab.unich.it/vericat/ for details).

VeriCat implements the two steps of our method: (i) the Transf step, which realizes the CHC transformation algorithm presented in Section 5, and (ii) the CheckSat step, which checks CHC satisfiability. For the Transf step, VeriCat uses VeriMAP (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2014), a tool for fold/unfold transformation of CHCs. It takes as input a set of CHCs representing a program manipulating ADTs, together with its contracts, and returns a new set of CHCs acting on variables of basic sorts only. For the CheckSat step, VeriCat uses SPACER to check the satisfiability of the transformed CHCs.

We have applied our method to prove the validity of contracts for programs implementing various algorithms for concatenating, permuting, reversing, and sorting lists of integers, and also for inserting and deleting elements in binary search trees. The contracts specify properties defined by catamorphisms such as: list length, tree size, tree height, list (or tree) minimum and maximum element, list sortedness (in ascending or descending order), binary search tree property, element sum, and list (or tree) content (defined as sets or multisets of elements). For instance, for the sorting programs implementing Bubblesort, Insertionsort, Mergesort, Quicksort, Selectionsort, and Treesort, VeriCat was able to prove the following two contracts:

:- spec sort(Xs,Ys) ==> is_asorted(Ys,B) => B.

stating that the output Ys of sort is a list in ascending order, and

:- spec sort(Xs,Ys) ==> count(X,Xs,N1), count(X,Ys,N2) => N1=N2.

stating that the input and output of the sort program have the same multiset of integers.

As an example of a verification problem for a tree manipulating program, in Figure 11 we present: (i) the clauses for bstdel(X,T1,T2), which deletes the element X from the binary search tree T1, thereby deriving the tree T2, and (ii) a contract for bstdel (catamorphism bstree is shown in Figure 5). VeriCat proved that contract by first transforming the clauses of Figure 11 and the following goal that represents the contract for bstdel:

Figure 11. Deleting an element from a binary search tree: bstdel and its contract.

In Table 1 we summarize the results of our experiments performed on an Intel Xeon CPU E5-2640 2.00GHz with 64GB RAM under CentOS. The columns report the name of the program, the number of contracts proved by VeriCat for each program, and the total time, in milliseconds, needed for the Transf and CheckSat steps. Finally, as a baseline, we report the number of contracts proved by AdtRem (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022a), which does not take advantage of the user-provided contract specifications and, instead, tries to discover lemmas by using the differential replacement transformation rule. Our results show that VeriCaT is indeed able to exploit the extra information provided by the contracts, and performs better than previous transformational approaches.

Table 1. Contracts proved by the VeriCat and AdtRem tools. Times are in ms

In order to compare the effectiveness of our method with that of other tools, we have also run solvers such as AdtInd (Yang et al. Reference Yang, Fedyukovich and Gupta2019), CVC4 extended with induction (Reynolds and Kuncak Reference Reynolds and Kuncak2015), Eldarica (2.0.6), and SPACER (with Z3 4.8.12) on the CHC specifications (translated to SMT-LIB format) before the application of the Transf step. Eldarica and SPACER proved the satisfiability of the CHCs for 12 and 1 contracts, respectively, while the AdtInd and CVC4 did not solve any problem within the time limit of 300 s. However, it might be the case that better results can be achieved by those tools by using some different encodings of the verification problems. Finally, we ran the Stainless verifier (0.9.1) (Hamza et al. Reference Hamza, Voirol and Kuncak2019) on a few manually encoded specifications of programs for reversing a list, deleting an element from a binary search tree, and sorting a list using the Quicksort algorithm. Stainless can prove some, but not all contracts of each of these specifications. For a more exhaustive comparison we would need an automated translator, which is not available yet, between CHCs and Stainless specifications.

7 Related work and conclusions

Many program verifiers are based on Hoare’s axiomatic notion of correctness (Hoare Reference Hoare1969) and have the objective of proving the validity of pre/postconditions. Some of those verifiers use SMT solvers as a back-end to check verification conditions in various logical theories (Barnett et al. Reference Barnett, Chang, De Line, Jacobs and Leino2006; Suter et al. Reference Suter, Köksal and Kuncak2011; Leino Reference Leino2013; Filliâtre and Paskevich Reference Filliâtre and Paskevich2013; Hamza et al. Reference Hamza, Voirol and Kuncak2019). In order to deal with properties of programs that manipulate ADTs, program verifiers may also be enhanced with some form of induction (e.g. Dafny Leino Reference Leino2013), or be based on the unfolding of recursive functions (e.g. Leon Suter et al. Reference Suter, Köksal and Kuncak2011 and Stainless Hamza et al. Reference Hamza, Voirol and Kuncak2019), or rely on an SMT solver that uses induction, such as the extension of CVC4 proposed by Reynolds and Kuncak (Reference Reynolds and Kuncak2015).

Catamorphisms were used to define decision procedures for suitable classes of SMT formulas (Suter et al. 2010; Pham et al. Reference Pham, Gacek and Whalen2016), and a special form of integer-valued catamorphisms, called type-based norms, were used for proving termination of logic programs (Bruynooghe et al. Reference Bruynooghe, Codish, Gallagher, Genaim and Vanhoof2007) and for resource analysis (Albert et al. Reference Albert, Genaim, Gutiérrez and Martin-Martin2020). The main difference of our approach with respect to these works is that we transform a set of clauses with catamorphisms into a new set of CHCs that act on the codomains of the catamorphisms, and in those clauses neither ADTs nor catamorphisms are present.

The contracts considered in this paper are similar to calls and success user-defined assertions supported by the Ciao logic programming system (Hermenegildo et al. Reference Hermenegildo, Bueno, Carro, López-García, Mera, Morales and Puebla2012). Those assertions may refer to operational properties of logic programs, taking into account the order of execution and the extra-logical features of the language, while here we consider only the logical meaning of CHCs and contracts. By using abstract interpretation techniques, the CiaoPP preprocessor (Hermenegildo et al. Reference Hermenegildo, Puebla, Bueno and López-Garca2005) can statically verify a wide range of calls/success assertions related to types, modes, non-failure, determinism, and typed-norms. However, CiaoPP suffers from some limitations in checking the validity of properties expressed by constrained types, such as the catamorphisms considered in this paper, for example, the properties of being a sorted list or a binary search tree.

The use of CHCs for program verification has become very popular and many techniques and tools for translating program verification problems into satisfiability problems for CHCs have been proposed (see, for instance, the surveys by Bjørner et al. Reference Bjørner, Gurfinkel, McMillan and Rybalchenko2015 and by De Angelis et al. Reference De Angelis, Fioravanti, Gallagher, Hermenegildo, Pettorossi and Proietti2021). However, as also shown in this paper, in the case of clauses with ADT terms, state-of-the-art CHC solvers have some severe limitations due to the fact that they do not include any proof technique for inductive reasoning on the ADT structures. Some approaches to mitigate these limitations include: (i) a proof system that combines inductive theorem proving with CHC solving (Unno et al. Reference Unno, Torii and Sakamoto2017), (ii) lemma generation based on syntax-guided synthesis from user-specified templates (Yang et al. Reference Yang, Fedyukovich and Gupta2019), (iii) invariant discovery based on finite tree automata (Kostyukov et al. Reference Kostyukov, Mordvinov and Fedyukovich2021), and (iv) use of suitable abstractions (Govind et al. 2022).

Transformation-based approaches to the verification of CHC satisfiability on ADTs have been proposed in recent work (Mordvinov and Fedyukovich Reference Mordvinov and Fedyukovich2017; De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2018; Kobayashi et al. Reference Kobayashi, Fedyukovich and Gupta2020), with the aim to avoid the complexity of integrating CHC solving with induction. The transformational approach compares well with induction-based solvers, but it also shares similar issues for full mechanization, such as the need for lemma discovery (Yang et al. Reference Yang, Fedyukovich and Gupta2019; De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022a). The transformation technique we have proposed in this paper avoids the problem of lemma discovery by relying on user-specified contracts and, unlike previous work (De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2018; De Angelis et al. Reference De Angelis, Fioravanti, Pettorossi and Proietti2022a), it guarantees the termination of the transformation for a large class of CHCs.

Our experiments show that the novel transformation technique we propose can successfully exploit the information supplied by the user-provided contracts, and indeed, (i) it can increase the effectiveness of state-of-the-art CHC solvers in verifying contracts encoded as CHCs, and (ii) performs better than previous transformational approaches based on lemma discovery.

For future work, we plan to extend the practical applicability of our verification method by developing automatic translators to CHCs of programs and contracts written in the languages used by verifiers such as Dafny, Stainless, and Why3.

Footnotes

The arrangement of the authors’ names is a publisher’s choice.

All authors have contributed in equal measure.

*

The authors warmly thank the anonymous reviewers for their helpful comments and suggestions. The authors are members of the INdAM Research Group GNCS.

1 In recent verification literature, the term constrained Horn clauses is often used instead of constraint logic programs, as the focus is on their logical meaning rather than their execution as programs.

2 In concrete contract specifications we use the keyword “spec” and the two distinct implication symbols “==>” and “=>.”

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Figure 0

Figure 1. The set $\textsf{Reverse}$ of CHCs. For technical reasons (see Definition 1) all program properties are defined by total functions. In particular, for the empty list, the hd function returns the arbitrarily chosen value 0 (which is never used).

Figure 1

Figure 2. The set $\textsf{TransfReverse}$ of transformed CHCs. The clauses shown here are those derived from clauses 1-12 of $\textsf{Reverse}$ and goal 13. The clauses derived from goal 14 are listed in Appendix A of the extended version of this paper (De Angelis et al. 2022b).

Figure 2

Figure 3. (A) List catamorphism. (B) Tree catamorphism.

Figure 3

Figure 4. (C) Generalized list catamorphism. (D) Generalized tree catamorphism.

Figure 4

Figure 5. The catamorphisms count and bstree.

Figure 5

Figure 6. The Transformation Algorithm ${\mathcal{T}}_{\mathit{cata}}$.

Figure 6

Figure 7. The $\mathit{Define}$ procedure.

Figure 7

Figure 8. The ${\mathit{Unfold}}$ procedure.

Figure 8

Figure 9. The $\mathit{Apply\mbox{-}Contracts}$ procedure.

Figure 9

Figure 10. The $\mathit{Fold}$ procedure.

Figure 10

Figure 11. Deleting an element from a binary search tree: bstdel and its contract.

Figure 11

Table 1. Contracts proved by the VeriCat and AdtRem tools. Times are in ms