Files
mercury/compiler/term_constr_data.m
Zoltan Somogyi 672f77c4ec Add a new compiler option. --inform-ite-instead-of-switch.
Estimated hours taken: 20
Branches: main

Add a new compiler option. --inform-ite-instead-of-switch. If this is enabled,
the compiler will generate informational messages about if-then-elses that
it thinks should be converted to switches for the sake of program reliability.

Act on the output generated by this option.

compiler/simplify.m:
	Implement the new option.

	Fix an old bug that could cause us to generate warnings about code
	that was OK in one duplicated copy but not in another (where a switch
	arm's code is duplicated due to the case being selected for more than
	one cons_id).

compiler/options.m:
	Add the new option.

	Add a way to test for the bug fix in simplify.

doc/user_guide.texi:
	Document the new option.

NEWS:
	Mention the new option.

library/*.m:
mdbcomp/*.m:
browser/*.m:
compiler/*.m:
deep_profiler/*.m:
	Convert if-then-elses to switches at most of the sites suggested by the
	new option. At the remaining sites, switching to switches would have
	nontrivial downsides. This typically happens with the switched-on type
	has many functors, and we treat one or two specially (e.g. cons/2 in
	the cons_id type).

	Perform misc cleanups in the vicinity of the if-then-else to switch
	conversions.

	In a few cases, improve the error messages generated.

compiler/accumulator.m:
compiler/hlds_goal.m:
	(Rename and) move insts for particular kinds of goal from
	accumulator.m to hlds_goal.m, to allow them to be used in other
	modules. Using these insts allowed us to eliminate some if-then-elses
	entirely.

compiler/exprn_aux.m:
	Instead of fixing some if-then-elses, delete the predicates containing
	them, since they aren't used, and (as pointed out by the new option)
	would need considerable other fixing if they were ever needed again.

compiler/lp_rational.m:
	Add prefixes to the names of the function symbols on some types,
	since without those prefixes, it was hard to figure out what type
	the switch corresponding to an old if-then-else was switching on.

tests/invalid/reserve_tag.err_exp:
	Expect a new, improved error message.
2007-11-23 07:36:01 +00:00

800 lines
27 KiB
Mathematica

%-----------------------------------------------------------------------------%
% vim: ft=mercury ts=4 sw=4 et
%-----------------------------------------------------------------------------%
% Copyright (C) 2002, 2005-2007 The University of Melbourne.
% This file may only be copied under the terms of the GNU General
% Public License - see the file COPYING in the Mercury distribution.
%-----------------------------------------------------------------------------%
%
% File: term_constr_data.m.
% Main author: juliensf.
%
% This module defines data structures that are common to all modules in the
% termination analyser.
%
% The main data structure defined here is the abstract representation (AR),
% which is an abstraction of a Mercury program in terms of linear arithmetic
% constraints on term sizes.
%
%------------------------------------------------------------------------------%
%
% AR Goals.
%
% The AR has four kinds of goal:
%
% * primitives - a set of primitive constraints representing the
% abstraction variable size relationships in some
% HLDS goal.
%
% * conjunction - a conjunction of AR goals.
%
% * disjunction - a disjunction of AR goals.
%
% * calls - an abstraction of intra-SCC calls. Calls to
% procedures lower down the call-graph are abstracted
% as primitive AR goals.
%
% XXX In order to handle higher-order we need to either modify the
% exiting AR call goal or add a new AR goal type.
%
%------------------------------------------------------------------------------%
%
% Mapping the HLDS to the AR
%
%
% 1. unification
%
% A HLDS unification of the form:
%
% X = f(A, B, C)
%
% is converted to a AR primitive goal of the form:
%
% { |X| = |A| + |B| + |C| + |f| }
%
% where |X| represents the size of the variable X (according to whatever
% measure we are using). There will also additional non-negativity
% constraints on any variables that have non-zero size type. Variables
% of that have zero size type are not included at all. Variables that
% represent polymorphic types are included. The code in
% term_constr_fixpoint.m and term_constr_pass2.m that processes calls is
% responsible for dealing with the situation where a polymorphic
% procedure is called with zero sized arguments.
%
% 2. conjunction and parallel conjunction
%
% A HLDS conjunction (A, B) is converted to an AR conjunction. Parallel
% conjunction is treated the same way.
%
% 3. disjunction and switches.
%
% A HLDS disjunction (A ; B) is converted to an AR disjunction. Switches
% are similar although we also have to add any constraints on the variable
% being switched on.
%
% 4. calls
%
% A HLDS call to a procedure lower down the call graph is abstracted as
% an AR primitive. A call to something in the same SCC becomes an AR call.
%
% 5. negation.
%
% A HLDS negation is abstracted as an AR primitive.
% The analyser tries to infer bounds upon the sizes of any input variables
% of the negated goal when if fails.
%
% 6. scopes
%
% Scope goals, such as existential quantifications, that do not
% affect term size are ignored.
%
% 8. if-then-else.
%
% ( Cond -> Then ; Else ) is abstracted as
%
% disj(conj(|Cond|, |Then|), conj(neg(|Cond|), |Else|))
%
% (using |Goal| to represent the abstraction of Goal).
%
% 9. foreign_procs
%
% Currently these map onto a primitive whose variables are unconstrained.
% XXX Could do better with user supplied information.
%
% 10. generic call.
%
% XXX As above, need HO analysis to make these work.
%
%-----------------------------------------------------------------------------%
:- module transform_hlds.term_constr_data.
:- interface.
:- import_module hlds.hlds_module.
:- import_module hlds.hlds_pred.
:- import_module libs.lp_rational.
:- import_module libs.polyhedron.
:- import_module parse_tree.prog_data.
:- import_module transform_hlds.term_constr_errors.
:- import_module bool.
:- import_module io.
:- import_module list.
:- import_module map.
:- import_module set. % XXX We should experiment with different set
% implementations.
%-----------------------------------------------------------------------------%
%
% Types that are common to all parts of the termination analyser.
%
% A size_var is a variable that represents the size (according
% to some measure) of a program variable.
%
:- type size_var == lp_var.
:- type size_vars == list(size_var).
:- type size_varset == lp_varset.
:- type size_term == lp_term.
:- type size_terms == lp_terms.
% A map between prog_vars and their corresponding size_vars.
%
:- type size_var_map == map(prog_var, size_var).
% The widening strategy used in the fixpoint calculation.
% (At present there is only one but we may add others in the future).
%
:- type widening ---> after_fixed_cutoff(int).
% The result of the argument size analysis.
%
% NOTE: this is just an indication that everything worked, any
% argument size constraint derived will be stored in the
% termination2_info structure.
%
:- type arg_size_result
---> ok
; error(term2_errors).
%-----------------------------------------------------------------------------%
%
% The abstract representation.
%
% XXX There should really be a representation for abstract SCCs as
% some of the data in the abstract_proc structure is actually information
% about the SCC; currently the relevant information is just duplicated
% amongst the abstract procs.
:- type abstract_scc == list(abstract_proc).
% XXX This will need to be extended in order to handle HO calls and
% intermodule mutual recursion.
%
% The idea here is that information about procedures from other
% modules/HO information will be turned into `fake' abstract procs.
% Using these fake procs we will then fill in the missing bits of
% the SCCs that involve intermodule mutual recursion/HO calls, and
% then run the analysis on them.
%
% This is the main reason that we try a eliminate, as much as
% possible, dependencies between the AR and the HLDS.
%
:- type abstract_ppid ---> real(pred_proc_id).
:- type abstract_proc
---> abstract_proc(
ppid :: abstract_ppid,
% The procedure that this is an abstraction of.
context :: prog_context,
% The context of the procedure.
recursion :: recursion_type,
% The type of recursion present in the procedure.
size_var_map :: size_var_map,
% Map from prog_vars to size_vars for the procedure.
head_vars :: head_vars,
% The procedure's arguments (as size_vars).
inputs :: list(bool),
% `yes' if the corresponding argument can be used
% as part of a termination proof, `no' otherwise.
zeros :: zero_vars,
% The size_vars that have zero size.
body :: abstract_goal,
% An abstraction of the body of the procedure.
calls :: int,
% The number of calls made in the body of the
% procedure. This is useful for short-circuiting
% pass 2.
varset :: size_varset,
% The varset from which the size_vars were
% allocated. The linear solver needs this.
ho :: list(abstract_ho_call),
% A list of higher-order calls made by the
% procedure. XXX Currently not used.
is_entry :: bool
% Is this procedure called from outside the SCC?
).
% This is like an error message (and is treated as such
% at the moment). It's here because we want to treat information
% regarding higher-order constructs differently from other errors.
% In particular higher-order constructs will not always be errors
% (ie. when we can analyse them properly).
%
:- type abstract_ho_call ---> ho_call(prog_context).
% NOTE: the AR's notion of local/non-local variables may not
% correspond directly to that in the HLDS because of various
% transformations performed on the the AR.
%
:- type local_vars == size_vars.
:- type nonlocal_vars == size_vars.
:- type call_vars == size_vars.
:- type head_vars == size_vars.
% `zero_vars' are those variables in a procedure that have
% zero size type (as defined in term_norm.m).
%
:- type zero_vars == set(size_var).
% This is the representation of goals that the termination analyser
% works with.
%
:- type abstract_goal
---> term_disj(
disj_goals :: abstract_goals,
disj_size :: int,
% We keep track of the number of disjuncts for use
% in heuristics that may speed up the convex hull
% calculation.
disj_locals :: local_vars,
disj_nonlocals :: nonlocal_vars
)
; term_conj(
conj_goals :: abstract_goals,
conj_locals :: local_vars,
conj_nonlocals :: nonlocal_vars
)
; term_call(
call_ppid :: abstract_ppid,
call_context :: prog_context,
call_vars :: call_vars,
call_zeros :: zero_vars,
call_locals :: local_vars,
call_nonlocals :: nonlocal_vars,
call_constrs :: polyhedron
)
; term_primitive(
prim_constrs :: polyhedron,
prim_locals :: local_vars,
prim_nonlocals :: nonlocal_vars
).
:- type abstract_goals == list(abstract_goal).
% This type is used to keep track of intramodule recursion during
% the build pass.
%
% NOTE: if a procedure is (possibly) involved in intermodule recursion
% we handle things differently.
%
:- type recursion_type
---> none % Procedure is not recursive.
; direct_only % Only recursion is self-calls.
; mutual_only % Only recursion is calls to other procs
% in the same SCC.
; both. % Both types of recursion.
%-----------------------------------------------------------------------------%
%
% Functions that operate on the AR.
%
% Update the local and nonlocal variable sets associated with an
% abstract goal.
%
:- func update_local_and_nonlocal_vars(abstract_goal, local_vars,
nonlocal_vars) = abstract_goal.
% For any two goals whose recursion types are known return the
% recursion type of the conjunction of the two goals.
%
:- func combine_recursion_types(recursion_type, recursion_type)
= recursion_type.
% Combines the constraints contained in two primitive goals
% into a single primitive goal. It is an error to pass
% any other kind of abstract goal as an argument to this
% function.
%
:- func combine_primitive_goals(abstract_goal, abstract_goal) = abstract_goal.
% Take a list of conjoined primitive goals and simplify them
% so there is one large block of constraints.
%
:- func simplify_abstract_rep(abstract_goal) = abstract_goal.
:- func simplify_conjuncts(abstract_goals) = abstract_goals.
% Succeeds iff the given SCC contains recursion.
%
:- pred scc_contains_recursion(abstract_scc::in) is semidet.
% Succeeds iff the given procedure is recursive (either directly
% or otherwise).
%
:- pred proc_is_recursive(abstract_proc::in) is semidet.
% Returns the size_varset for this given SCC.
%
:- func varset_from_abstract_scc(abstract_scc) = size_varset.
% Succeeds iff the results of the analysis depend upon the
% values of some higher-order variables.
%
:- pred analysis_depends_on_ho(abstract_proc::in) is semidet.
%-----------------------------------------------------------------------------%
%
% Predicates for printing out debugging traces, etc.
%
% Dump a representation of the AR to stdout.
%
:- pred dump_abstract_scc(abstract_scc::in, module_info::in, io::di,
io::uo) is det.
% As above. The extra argument specifies the indentation level.
%
:- pred dump_abstract_scc(abstract_scc::in, int::in, module_info::in, io::di,
io::uo) is det.
% Write an abstract_proc to stdout.
%
:- pred dump_abstract_proc(abstract_proc::in, int::in, module_info::in,
io::di, io::uo) is det.
% Write an abstract_goal to stdout.
%
:- pred dump_abstract_goal(module_info::in, size_varset::in, int::in,
abstract_goal::in, io::di, io::uo) is det.
%-----------------------------------------------------------------------------%
%-----------------------------------------------------------------------------%
:- implementation.
:- import_module hlds.hlds_pred.
:- import_module hlds.hlds_out.
:- import_module libs.compiler_util.
:- import_module parse_tree.prog_data.
:- import_module int.
:- import_module std_util.
:- import_module string.
:- import_module varset.
:- import_module term.
%-----------------------------------------------------------------------------%
%
% Functions that operate on the AR.
%
update_local_and_nonlocal_vars(Goal0, Locals0, NonLocals0) = Goal :-
(
Goal0 = term_disj(Goals, Size, Locals1, NonLocals1),
Locals = Locals0 ++ Locals1,
NonLocals = NonLocals0 ++ NonLocals1,
Goal = term_disj(Goals, Size, Locals, NonLocals)
;
Goal0 = term_conj(Goals, Locals1, NonLocals1),
Locals = Locals0 ++ Locals1,
NonLocals = NonLocals0 ++ NonLocals1,
Goal = term_conj(Goals, Locals, NonLocals)
;
Goal0 = term_call(PPId, Context, CallVars, Zeros, Locals1,
NonLocals1, Polyhedron),
Locals = Locals0 ++ Locals1,
NonLocals = NonLocals0 ++ NonLocals1,
Goal = term_call(PPId, Context, CallVars, Zeros, Locals,
NonLocals, Polyhedron)
;
Goal0 = term_primitive(Polyhedron, Locals1, NonLocals1),
Locals = Locals0 ++ Locals1,
NonLocals = NonLocals0 ++ NonLocals1,
Goal = term_primitive(Polyhedron, Locals, NonLocals)
).
scc_contains_recursion([]) :-
unexpected(this_file, "empty SCC.").
scc_contains_recursion([Proc | _]) :-
Proc ^ recursion \= none.
proc_is_recursive(Proc) :-
not Proc ^ recursion = none.
varset_from_abstract_scc([]) = _ :-
unexpected(this_file, "empty SCC.").
varset_from_abstract_scc([Proc | _]) = Proc ^ varset.
analysis_depends_on_ho(Proc) :-
list.is_not_empty(Proc ^ ho).
%-----------------------------------------------------------------------------%
%
% Code for simplifying the abstract representation.
%
% XXX We should keep running the simplifications until we arrive at a
% fixpoint.
simplify_abstract_rep(Goal0) = Goal :- simplify_abstract_rep(Goal0, Goal).
:- pred simplify_abstract_rep(abstract_goal::in, abstract_goal::out) is det.
simplify_abstract_rep(term_disj(!.Disjuncts, _Size0, Locals, NonLocals),
Goal) :-
% Begin by simplifying each disjunct.
list.map(simplify_abstract_rep, !Disjuncts),
(
!.Disjuncts = [] ,
Goal = term_primitive(polyhedron.universe, [], [])
;
!.Disjuncts = [Disjunct] ,
% We need to merge the set of locals with the locals from the
% disjunct otherwise we will end up throwing away the locals
% from the enclosing goal.
%
Goal = update_local_and_nonlocal_vars(Disjunct, Locals, NonLocals)
;
!.Disjuncts = [_, _ | _] ,
Size = list.length(!.Disjuncts),
Goal = term_disj(!.Disjuncts, Size, Locals, NonLocals)
).
simplify_abstract_rep(term_conj(!.Conjuncts, Locals, NonLocals), Goal) :-
list.map(simplify_abstract_rep, !Conjuncts),
list.filter(isnt(is_empty_primitive), !Conjuncts),
flatten_conjuncts(!Conjuncts),
list.filter(isnt(is_empty_conj), !Conjuncts),
( !.Conjuncts = [Conjunct] ->
% The local/non-local var sets need to be updated for similar
% reasons as we do with disjunctions.
Goal = update_local_and_nonlocal_vars(Conjunct, Locals, NonLocals)
;
Goal = term_conj(!.Conjuncts, Locals, NonLocals)
).
simplify_abstract_rep(Goal @ term_primitive(_,_,_), Goal).
simplify_abstract_rep(Goal @ term_call(_,_,_,_,_,_,_), Goal).
% Given a conjuntion of abstract goals take the intersection
% of all consecutive primitive goals in the list of abstract goals.
%
% e.g if we have
%
% [ P1, P2, P3, NP1, NP2, P4, P5, NP3, P6, P7 ]
%
% where Px is a primitive goal and NPx is a non-primitive
%
% then simplify this to:
%
% [ ( P1 /\ P2 /\ P3), NP1, NP2, ( P4 /\ P5), NP3, (P6 /\ P7) ]
%
% where `/\' is the intersection of the primitive goals.
%
% Note: because intersection is commutative we could go further
% and take the intersection of all the primitive goals in a
% conjunction but that unnecessarily increases the size of the edge
% labels in pass 2.
%
:- pred flatten_conjuncts(abstract_goals::in, abstract_goals::out) is det.
flatten_conjuncts([], []).
flatten_conjuncts([Goal], [Goal]).
flatten_conjuncts(Goals0 @ [_, _ | _], Goals) :-
flatten_conjuncts_2(Goals0, [], Goals1),
Goals = list.reverse(Goals1).
:- pred flatten_conjuncts_2(abstract_goals::in, abstract_goals::in,
abstract_goals::out) is det.
flatten_conjuncts_2([], !Goals).
flatten_conjuncts_2([Goal0 | Goals0], !Goals) :-
( Goal0 = term_primitive(_, _, _) ->
list.takewhile(is_primitive, Goals0, Primitives, NextNonPrimitive),
(
Primitives = [],
NewPrimitive = Goal0
;
Primitives = [_ | _],
NewPrimitive = list.foldl(combine_primitives, Primitives, Goal0)
),
list.cons(NewPrimitive, !Goals)
;
list.cons(Goal0, !Goals),
NextNonPrimitive = Goals0
),
flatten_conjuncts_2(NextNonPrimitive, !Goals).
% Test whether an abstract goal is a primtive.
%
:- pred is_primitive(abstract_goal::in) is semidet.
is_primitive(term_primitive(_, _, _)).
:- func combine_primitives(abstract_goal, abstract_goal) = abstract_goal.
combine_primitives(GoalA, GoalB) = Goal :-
(
GoalA = term_primitive(PolyA, LocalsA, NonLocalsA),
GoalB = term_primitive(PolyB, LocalsB, NonLocalsB)
->
Poly = polyhedron.intersection(PolyA, PolyB),
Locals = LocalsA ++ LocalsB,
NonLocals = NonLocalsA ++ NonLocalsB,
Goal = term_primitive(Poly, Locals, NonLocals)
;
unexpected(this_file, "intersect_primitives called with "
++ "non-primitive goals.")
).
% We end up with `empty' primitives by abstracting unifications
% that involve variables that have zero size.
%
:- pred is_empty_primitive(abstract_goal::in) is semidet.
is_empty_primitive(term_primitive(Poly, _, _)) :-
polyhedron.is_universe(Poly).
% We end up with `empty' conjunctions by abstracting conjunctions
% that involve variables that have zero size.
%
:- pred is_empty_conj(abstract_goal::in) is semidet.
is_empty_conj(term_conj([], _, _)).
% We end up with `empty' disjunctions by abstracting disjunctions
% that involve variables that have zero size.
%
:- pred is_empty_disj(abstract_goal::in) is semidet.
is_empty_disj(term_disj([], _, _, _)).
%-----------------------------------------------------------------------------%
%
% Code for dealing with different types of recursion.
%
combine_recursion_types(none, none) = none.
combine_recursion_types(none, direct_only) = direct_only.
combine_recursion_types(none, mutual_only) = mutual_only.
combine_recursion_types(none, both) = both.
combine_recursion_types(direct_only, none) = direct_only.
combine_recursion_types(direct_only, direct_only) = direct_only.
combine_recursion_types(direct_only, mutual_only) = both.
combine_recursion_types(direct_only, both) = both.
combine_recursion_types(mutual_only, none) = mutual_only.
combine_recursion_types(mutual_only, direct_only) = both.
combine_recursion_types(mutual_only, mutual_only) = mutual_only.
combine_recursion_types(mutual_only, both) = both.
combine_recursion_types(both, none) = both.
combine_recursion_types(both, direct_only) = both.
combine_recursion_types(both, mutual_only) = both.
combine_recursion_types(both, both) = both.
combine_primitive_goals(GoalA, GoalB) = Goal :-
(
GoalA = term_primitive(PolyA, LocalsA, NonLocalsA),
GoalB = term_primitive(PolyB, LocalsB, NonLocalsB)
->
Poly = polyhedron.intersection(PolyA, PolyB),
Locals = LocalsA ++ LocalsB,
NonLocals = NonLocalsA ++ NonLocalsB,
Goal = term_primitive(Poly, Locals, NonLocals)
;
unexpected(this_file,
"non-primitive goals passed to combine_primitive_goals")
).
%-----------------------------------------------------------------------------%
%
% Predicates for printing out the abstract data structure.
% (These are for debugging only)
%
dump_abstract_scc(SCC, Module, !IO) :-
dump_abstract_scc(SCC, 0, Module, !IO).
dump_abstract_scc(SCC, Indent, Module, !IO) :-
list.foldl((pred(Proc::in, !.IO::di, !:IO::uo) is det :-
dump_abstract_proc(Proc, Indent, Module, !IO)
), SCC, !IO).
dump_abstract_proc(Proc, Indent, Module, !IO) :-
Proc = abstract_proc(AbstractPPId, _, _, _, HeadVars, _, _,
Body, _, Varset, _, _),
indent_line(Indent, !IO),
AbstractPPId = real(PPId),
hlds_out.write_pred_proc_id(Module, PPId, !IO),
io.write_string(" : [", !IO),
WriteHeadVars = (pred(Var::in, !.IO::di, !:IO::uo) is det :-
varset.lookup_name(Varset, Var, VarName),
io.format(VarName ++ "[%d]", [i(term.var_id(Var))], !IO)
),
io.write_list(HeadVars, ", ", WriteHeadVars, !IO),
io.write_string(" ] :- \n", !IO),
dump_abstract_goal(Module, Varset, Indent + 1, Body, !IO).
:- func recursion_type_to_string(recursion_type) = string.
recursion_type_to_string(none) = "none".
recursion_type_to_string(direct_only) = "direct recursion only".
recursion_type_to_string(mutual_only) = "mutual recursion only".
recursion_type_to_string(both) = "mutual and direct recursion".
:- pred dump_abstract_disjuncts(abstract_goals::in, size_varset::in, int::in,
module_info::in, io::di, io::uo) is det.
dump_abstract_disjuncts([], _, _, _, !IO).
dump_abstract_disjuncts([Goal | Goals], Varset, Indent, Module, !IO) :-
dump_abstract_goal(Module, Varset, Indent + 1, Goal, !IO),
(
Goals = [_ | _],
indent_line(Indent, !IO),
io.write_string(";\n", !IO)
;
Goals = []
),
dump_abstract_disjuncts(Goals, Varset, Indent, Module, !IO).
dump_abstract_goal(Module, Varset, Indent,
term_disj(Goals, Size, Locals, NonLocals), !IO) :-
indent_line(Indent, !IO),
io.format("disj[%d](\n", [i(Size)], !IO),
dump_abstract_disjuncts(Goals, Varset, Indent, Module, !IO),
WriteVars = (pred(Var::in, !.IO::di, !:IO::uo) is det :-
varset.lookup_name(Varset, Var, VarName),
io.write_string(VarName, !IO)
),
indent_line(Indent, !IO),
io.write_string(" Locals: ", !IO),
io.write_list(Locals, ", ", WriteVars, !IO),
io.nl(!IO),
indent_line(Indent, !IO),
io.write_string(" Non-Locals: ", !IO),
io.write_list(NonLocals, ", ", WriteVars, !IO),
io.nl(!IO),
indent_line(Indent, !IO),
io.write_string(")\n", !IO).
dump_abstract_goal(Module, Varset, Indent, term_conj(Goals, Locals, NonLocals),
!IO) :-
indent_line(Indent, !IO),
io.write_string("conj(\n", !IO),
list.foldl(dump_abstract_goal(Module, Varset, Indent + 1), Goals, !IO),
WriteVars = (pred(Var::in, !.IO::di, !:IO::uo) is det :-
varset.lookup_name(Varset, Var, VarName),
io.write_string(VarName, !IO)
),
indent_line(Indent, !IO),
io.write_string(" Locals: ", !IO),
io.write_list(Locals, ", ", WriteVars, !IO),
io.nl(!IO),
indent_line(Indent, !IO),
io.write_string(" Non-Locals: ", !IO),
io.write_list(NonLocals, ", ", WriteVars, !IO),
io.nl(!IO),
indent_line(Indent, !IO),
io.write_string(")\n", !IO).
dump_abstract_goal(Module, Varset, Indent,
term_call(PPId0, _, CallVars, _, _, _, CallPoly), !IO) :-
indent_line(Indent, !IO),
io.write_string("call: ", !IO),
PPId0 = real(PPId),
hlds_out.write_pred_proc_id(Module, PPId, !IO),
io.write_string(" : [", !IO),
WriteVars = (pred(Var::in, !.IO::di, !:IO::uo) is det :-
varset.lookup_name(Varset, Var, VarName),
io.write_string(VarName, !IO)
),
io.write_list(CallVars, ", ", WriteVars, !IO),
io.write_string("]\n", !IO),
indent_line(Indent, !IO),
io.write_string("Other call constraints:[\n", !IO),
polyhedron.write_polyhedron(CallPoly, Varset, !IO),
indent_line(Indent, !IO),
io.write_string("]\n", !IO).
dump_abstract_goal(_, Varset, Indent, term_primitive(Poly, _, _), !IO) :-
indent_line(Indent, !IO),
io.write_string("[\n", !IO),
polyhedron.write_polyhedron(Poly, Varset, !IO),
indent_line(Indent, !IO),
io.write_string("]\n", !IO).
%-----------------------------------------------------------------------------%
%
% Predicates for simplifying conjuncts.
%
% XXX Make this part of the other AR simplification predicates.
simplify_conjuncts(Goals0) = Goals :-
simplify_conjuncts(Goals0, Goals).
:- pred simplify_conjuncts(abstract_goals::in, abstract_goals::out) is det.
simplify_conjuncts(Goals0, Goals) :-
(
Goals0 = [],
Goals = []
;
Goals0 = [Goal],
Goals = [Goal]
;
% If the list of conjuncts starts with two primitives
% join them together into a single primitive.
Goals0 = [GoalA, GoalB | OtherGoals],
(
GoalA = term_primitive(PolyA, LocalsA, NonLocalsA),
GoalB = term_primitive(PolyB, LocalsB, NonLocalsB)
->
Poly = polyhedron.intersection(PolyA, PolyB),
Locals = LocalsA ++ LocalsB,
NonLocals = NonLocalsA ++ NonLocalsB,
Goal = term_primitive(Poly, Locals, NonLocals),
Goals1 = [Goal | OtherGoals],
simplify_conjuncts(Goals1, Goals)
;
Goals = Goals0
)
).
%-----------------------------------------------------------------------------%
%
% Utility predicates.
%
:- pred indent_line(int::in, io::di, io::uo) is det.
indent_line(N, !IO) :-
( if N > 0
then io.write_string(" ", !IO), indent_line(N - 1, !IO)
else true
).
%-----------------------------------------------------------------------------%
:- func this_file = string.
this_file = "term_constr_data.m".
%-----------------------------------------------------------------------------%
:- end_module transform_hlds.term_constr_data.
%-----------------------------------------------------------------------------%