Files
mercury/library/digraph.m
Zoltan Somogyi 3aca14b385 Compile the Mercury system with --warn-unused-types.
configure.ac:
    Require the installed compiler to support that option.

STANDARD_MCFLAGS:
    Specify that option.

compiler/canonicalize_interface.m:
compiler/comp_unit_interface.m:
compiler/inst_user.m:
compiler/parse_module.m:
compiler/switch_util.m:
compiler/type_ctor_info.m:
deep_profiler/mdprof_dump.m:
library/digraph.m:
slice/mcov.m:
    Delete unused equivalence types that were picked up by the option.
2026-03-09 03:07:51 +11:00

1601 lines
52 KiB
Mathematica

%---------------------------------------------------------------------------%
% vim: ft=mercury ts=4 sw=4 et
%---------------------------------------------------------------------------%
% Copyright (C) 1995-1999,2002-2007,2010-2012 The University of Melbourne.
% Copyright (C) 2014-2018, 2022-2026 The Mercury team.
% This file is distributed under the terms specified in COPYING.LIB.
%---------------------------------------------------------------------------%
%
% File: digraph.m
% Original authors: bromage, petdr
% Stability: high.
%
% This module defines a data type representing directed graphs. A directed
% graph of type digraph(T) is logically equivalent to a set of vertices of
% type T, and a set of edges of type pair(T). The endpoints of each edge
% must be included in the set of vertices. Cycles are allowed, including
% cycles consisting of only one edge (with both ends of the edge being
% the same node).
%
%---------------------------------------------------------------------------%
%---------------------------------------------------------------------------%
:- module digraph.
:- interface.
:- import_module assoc_list.
:- import_module enum.
:- import_module list.
:- import_module map.
:- import_module pair.
:- import_module set.
:- import_module sparse_bitset.
%---------------------------------------------------------------------------%
% The type of directed graphs with vertices in T.
%
:- type digraph(T).
% The abstract type that indexes vertices in a digraph.
% Each key is valid only with the digraph it was created from, and
% the predicates and functions in this module may throw an exception
% if their caller passes them an invalid key.
%
:- type digraph_key(T).
:- instance uenum(digraph_key(T)).
:- type digraph_key_set(T) == sparse_bitset(digraph_key(T)).
%---------------------------------------------------------------------------%
%
% Constructing digraphs.
%
% init creates an empty digraph.
%
:- func init = digraph(T).
:- pred init(digraph(T)::out) is det.
% add_vertex adds a vertex to the domain of a digraph.
% Returns the old key if one already exists for this vertex,
% otherwise it allocates a new key.
%
:- pred add_vertex(T::in, digraph_key(T)::out,
digraph(T)::in, digraph(T)::out) is det.
% add_edge adds an edge to the digraph if it doesn't already exist,
% and leaves the digraph unchanged otherwise.
%
:- func add_edge(digraph_key(T), digraph_key(T), digraph(T)) = digraph(T).
:- pred add_edge(digraph_key(T)::in, digraph_key(T)::in,
digraph(T)::in, digraph(T)::out) is det.
% add_vertices_and_edge adds a pair of vertices and an edge
% between them to the digraph.
%
% add_vertices_and_edge(X, Y, !G) :-
% add_vertex(X, XKey, !G),
% add_vertex(Y, YKey, !G),
% add_edge(XKey, YKey, !G).
%
:- func add_vertices_and_edge(T, T, digraph(T)) = digraph(T).
:- pred add_vertices_and_edge(T::in, T::in,
digraph(T)::in, digraph(T)::out) is det.
% As above, but takes a pair of vertices in a single argument.
%
:- func add_vertex_pair(pair(T), digraph(T)) = digraph(T).
:- pred add_vertex_pair(pair(T)::in, digraph(T)::in, digraph(T)::out) is det.
% add_assoc_list adds a list of edges to a digraph.
%
:- func add_assoc_list(assoc_list(digraph_key(T), digraph_key(T)),
digraph(T)) = digraph(T).
:- pred add_assoc_list(assoc_list(digraph_key(T), digraph_key(T))::in,
digraph(T)::in, digraph(T)::out) is det.
%---------------------------------------------------------------------------%
%
% Deleting from digraphs.
%
% delete_edge deletes an edge from the digraph if it exists,
% and leaves the digraph unchanged otherwise.
%
:- func delete_edge(digraph_key(T), digraph_key(T), digraph(T)) = digraph(T).
:- pred delete_edge(digraph_key(T)::in, digraph_key(T)::in,
digraph(T)::in, digraph(T)::out) is det.
% delete_assoc_list deletes a list of edges from a digraph.
%
:- func delete_assoc_list(assoc_list(digraph_key(T), digraph_key(T)),
digraph(T)) = digraph(T).
:- pred delete_assoc_list(
assoc_list(digraph_key(T), digraph_key(T))::in,
digraph(T)::in, digraph(T)::out) is det.
%---------------------------------------------------------------------------%
%
% Searches and lookups.
%
% search_key returns the key associated with a vertex.
% Fails if the vertex is not in the graph.
%
:- pred search_key(digraph(T)::in, T::in, digraph_key(T)::out) is semidet.
% lookup_key returns the key associated with a vertex.
% Throws an exception if the vertex is not in the graph.
%
:- func lookup_key(digraph(T), T) = digraph_key(T).
:- pred lookup_key(digraph(T)::in, T::in, digraph_key(T)::out) is det.
% lookup_vertex returns the vertex associated with a key.
%
:- func lookup_vertex(digraph(T), digraph_key(T)) = T.
:- pred lookup_vertex(digraph(T)::in, digraph_key(T)::in, T::out) is det.
% Given key x, lookup_from returns the set of keys y such that
% there is an edge (x,y) in the digraph.
%
:- func lookup_from(digraph(T), digraph_key(T)) = set(digraph_key(T)).
:- pred lookup_from(digraph(T)::in, digraph_key(T)::in,
set(digraph_key(T))::out) is det.
% As above, but returns a digraph_key_set.
%
:- func lookup_key_set_from(digraph(T), digraph_key(T)) = digraph_key_set(T).
:- pred lookup_key_set_from(digraph(T)::in, digraph_key(T)::in,
digraph_key_set(T)::out) is det.
% Given a key y, lookup_to returns the set of keys x such that
% there is an edge (x,y) in the digraph.
%
:- func lookup_to(digraph(T), digraph_key(T)) = set(digraph_key(T)).
:- pred lookup_to(digraph(T)::in, digraph_key(T)::in,
set(digraph_key(T))::out) is det.
% As above, but returns a digraph_key_set.
%
:- func lookup_key_set_to(digraph(T), digraph_key(T)) = digraph_key_set(T).
:- pred lookup_key_set_to(digraph(T)::in, digraph_key(T)::in,
digraph_key_set(T)::out) is det.
% is_edge checks to see if an edge is in the digraph.
%
:- pred is_edge(digraph(T), digraph_key(T), digraph_key(T)).
:- mode is_edge(in, in, out) is nondet.
:- mode is_edge(in, in, in) is semidet.
% is_edge_rev is equivalent to is_edge, except that
% the nondet mode works in the reverse direction.
%
:- pred is_edge_rev(digraph(T), digraph_key(T), digraph_key(T)).
:- mode is_edge_rev(in, out, in) is nondet.
:- mode is_edge_rev(in, in, in) is semidet.
% vertices returns the set of vertices in a digraph.
%
:- func vertices(digraph(T)) = set(T).
:- pred vertices(digraph(T)::in, set(T)::out) is det.
% is_dag(G) is true if-and-only-if G is a directed acyclic graph.
%
:- pred is_dag(digraph(T)::in) is semidet.
%---------------------------------------------------------------------------%
%
% Conversion between digraphs and assoc_lists.
%
% to_assoc_list turns a digraph into a list of pairs of vertices,
% one for each edge.
%
:- func to_assoc_list(digraph(T)) = assoc_list(T, T).
:- pred to_assoc_list(digraph(T)::in, assoc_list(T, T)::out) is det.
% to_key_assoc_list turns a digraph into a list of pairs of keys,
% one for each edge.
%
:- func to_key_assoc_list(digraph(T)) =
assoc_list(digraph_key(T), digraph_key(T)).
:- pred to_key_assoc_list(digraph(T)::in,
assoc_list(digraph_key(T), digraph_key(T))::out) is det.
% from_assoc_list turns a list of pairs of vertices into a digraph.
%
:- func from_assoc_list(assoc_list(T, T)) = digraph(T).
:- pred from_assoc_list(assoc_list(T, T)::in, digraph(T)::out) is det.
%---------------------------------------------------------------------------%
%
% Depth-first sorting.
%
% dfs(G, Key, Dfs) is true if Dfs is a depth-first sorting of G
% starting at Key. The set of keys in the list Dfs is equal to the
% set of keys reachable from Key.
%
:- func dfs(digraph(T), digraph_key(T)) = list(digraph_key(T)).
:- pred dfs(digraph(T)::in, digraph_key(T)::in,
list(digraph_key(T))::out) is det.
% dfsrev(G, Key, DfsRev) is true if DfsRev is a reverse
% depth-first sorting of G starting at Key. The set of keys in the
% list DfsRev is equal to the set of keys reachable from Key.
%
:- func dfsrev(digraph(T), digraph_key(T)) = list(digraph_key(T)).
:- pred dfsrev(digraph(T)::in, digraph_key(T)::in,
list(digraph_key(T))::out) is det.
% dfs(G, Dfs) is true if Dfs is a depth-first sorting of G.
% If one considers each edge to point from a parent node to a child node,
% then Dfs will be a list of all the keys in G such that all keys for
% the children of a vertex are placed in the list before the parent key.
%
% If the digraph is cyclic, the position in which cycles are broken
% (that is, in which a child is placed *after* its parent) is undefined.
%
:- func dfs(digraph(T)) = list(digraph_key(T)).
:- pred dfs(digraph(T)::in, list(digraph_key(T))::out) is det.
% dfsrev(G, DfsRev) is true if DfsRev is a reverse depth-first
% sorting of G. That is, DfsRev is the reverse of Dfs from dfs/2.
%
:- func dfsrev(digraph(T)) = list(digraph_key(T)).
:- pred dfsrev(digraph(T)::in, list(digraph_key(T))::out) is det.
% dfs(G, Key, !Visit, Dfs) is true if Dfs is a depth-first
% sorting of G starting at Key, assuming we have already visited !.Visit
% vertices. That is, Dfs is a list of vertices such that all the
% unvisited children of a vertex are placed in the list before the
% parent. !.Visit allows us to initialise a set of previously visited
% vertices. !:Visit is Dfs + !.Visit.
%
:- pred dfs(digraph(T)::in, digraph_key(T)::in, digraph_key_set(T)::in,
digraph_key_set(T)::out, list(digraph_key(T))::out) is det.
% dfsrev(G, Key, !Visit, DfsRev) is true if DfsRev is a
% reverse depth-first sorting of G starting at Key providing we have
% already visited !.Visit nodes, i.e. the reverse of Dfs from dfs/5.
% !:Visit is !.Visit + DfsRev.
%
:- pred dfsrev(digraph(T)::in, digraph_key(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out,
list(digraph_key(T))::out) is det.
%---------------------------------------------------------------------------%
%
% Reachability.
%
% reachable_vertices_from(G, FromVertex, ReachableVertices):
%
% Return the set of vertices that are reachable from FromVertex in G
% through zero or more edges. This means that the set will always
% include FromVertex.
%
:- pred reachable_vertices_from(digraph(T)::in, T::in, set(T)::out) is det.
%---------------------------------------------------------------------------%
%
% Transforming digraphs.
%
% inverse(G, G') is true if-and-only-if the domains of G and G' are equal,
% and for all x, y in this domain, (x,y) is an edge in G if-and-only-if
% (y,x) is an edge in G'.
%
:- func inverse(digraph(T)) = digraph(T).
:- pred inverse(digraph(T)::in, digraph(T)::out) is det.
% compose(G1, G2, G) is true if G is the composition
% of the digraphs G1 and G2. This means that there is an edge (x,y) in G
% if-and-only-if there exists a vertex m such that (x,m) is in G1 and
% (m,y) is in G2.
%
:- func compose(digraph(T), digraph(T)) = digraph(T).
:- pred compose(digraph(T)::in, digraph(T)::in, digraph(T)::out)
is det.
%---------------------------------------------------------------------------%
%
% Components of digraphs.
%
% components(G, Comp) is true if Comp is the set of the
% connected components of G.
%
:- func components(digraph(T)) = set(set(digraph_key(T))).
:- pred components(digraph(T)::in, set(set(digraph_key(T)))::out)
is det.
% cliques(G, Cliques) is true if Cliques is the set of the
% cliques (strongly connected components) of G.
%
:- func cliques(digraph(T)) = set(set(digraph_key(T))).
:- pred cliques(digraph(T)::in, set(set(digraph_key(T)))::out) is det.
% reduced(G, R) is true if R is the reduced digraph (digraph of cliques)
% obtained from G.
%
:- func reduced(digraph(T)) = digraph(set(T)).
:- pred reduced(digraph(T)::in, digraph(set(T))::out) is det.
% As above, but also return a map from each key in the original digraph
% to the key for its clique in the reduced digraph.
%
:- pred reduced(digraph(T)::in, digraph(set(T))::out,
map(digraph_key(T), digraph_key(set(T)))::out) is det.
%---------------------------------------------------------------------------%
%
% Topological sorts.
%
% Both
% return_vertices_in_from_to_order(G, FromToVertices)
% and
% return_vertices_in_to_from_order(G, ToFromVertices)
% do a topological sort of G, the difference being that they return
% the same list of vertices in opposite orders.
%
% If we view each edge in the digraph as representing a <from, to>
% relationship, then FromToVertices will contain a vertex "from"
% *before* all the other vertices "to" for which a <from, to> edge exists
% in the graph. In other words, FromToVertices will be in from-to order.
%
% ToFromVertices will be the reverse of FromToVertices.
%
% Both these predicates will fail if G is cyclic.
%
:- pred return_vertices_in_from_to_order(digraph(T)::in, list(T)::out)
is semidet.
:- pred return_vertices_in_to_from_order(digraph(T)::in, list(T)::out)
is semidet.
% A synonym for return_vertices_in_from_to_order.
%
:- pred tsort(digraph(T)::in, list(T)::out) is semidet.
%---------------------%
% Both
% return_sccs_in_from_to_order(G, FromToSccs)
% and
% return_sccs_in_to_from_order(G, ToFromSccs)
% do a topological sort of the strongly connected components (SCCs) of G,
% the difference being that they return the same list of SCCs
% in opposite orders.
%
% If we view each edge in the digraph as representing a <from, to>
% relationship, then FromToSccs will contain SCC A before all SCCs B
% for which there is an edge <from, to> with "from" being in SCC A
% and "to" being in SCC B. In other words, FromToSccs will be in
% from-to order.
%
% ToFromSccs will be the reverse of FromToSccs.
%
:- func return_sccs_in_from_to_order(digraph(T)) = list(set(T)).
:- func return_sccs_in_to_from_order(digraph(T)) = list(set(T)).
% A synonym for return_sccs_in_from_to_order.
%
:- func atsort(digraph(T)) = list(set(T)).
:- pred atsort(digraph(T)::in, list(set(T))::out) is det.
%---------------------------------------------------------------------------%
%
% Closures.
%
% symmetric_closure(G) = SC is true if SC is the symmetric closure of G.
% That is, (x,y) is in SC if-and-only-if either (x,y) or (y,x) is in G.
%
:- func symmetric_closure(digraph(T)) = digraph(T).
% Synonyms for symmetric_closure/1.
%
:- func sc(digraph(T)) = digraph(T).
:- pred sc(digraph(T)::in, digraph(T)::out) is det.
% transitive_closure(G) = TC is true if TC is the transitive closure of G.
%
:- func transitive_closure(digraph(T)) = digraph(T).
% Synonyms for transitive_closure/1.
%
:- func tc(digraph(T)) = digraph(T).
:- pred tc(digraph(T)::in, digraph(T)::out) is det.
% reflexive_transitive_closure(G) = RTC is true
% if RTC is the reflexive transitive closure of G.
%
% RTC is the reflexive closure of the transitive closure of G,
% or, equivalently, the transitive closure of the reflexive closure of G.
%
:- func reflexive_transitive_closure(digraph(T)) = digraph(T).
% Synonyms for reflexive_transitive_closure/1.
%
:- func rtc(digraph(T)) = digraph(T).
:- pred rtc(digraph(T)::in, digraph(T)::out) is det.
%---------------------------------------------------------------------------%
%
% Traversals.
%
% traverse(G, ProcessVertex, ProcessEdge, !Acc) will traverse the digraph G
% - calling ProcessVertex for each vertex in the digraph, and
% - calling ProcessEdge for each edge in the digraph.
% The processing of each vertex is followed by the processing of
% all the edges originating at that vertex, until all vertices
% have been processed.
%
:- pred traverse(digraph(T), pred(T, A, A), pred(T, T, A, A), A, A).
:- mode traverse(in, in(pred(in, di, uo) is det),
in(pred(in, in, di, uo) is det), di, uo) is det.
:- mode traverse(in, in(pred(in, in, out) is det),
in(pred(in, in, in, out) is det), in, out) is det.
%---------------------------------------------------------------------------%
%---------------------------------------------------------------------------%
:- implementation.
% Everything below here is not intended to be part of the public interface,
% and will not be included in the Mercury library reference manual.
:- interface.
% Straightforward implementation of tc for debugging.
%
:- pred slow_tc(digraph(T)::in, digraph(T)::out) is det.
%---------------------------------------------------------------------------%
%---------------------------------------------------------------------------%
:- implementation.
:- import_module bimap.
:- import_module require.
:- import_module uint.
%---------------------------------------------------------------------------%
:- type digraph_key(T)
---> digraph_key(uint).
:- type digraph(T)
---> digraph(
% Next unallocated key number.
next_key :: uint,
% Maps vertices to their keys.
vertex_map :: bimap(T, digraph_key(T)),
% Maps each vertex to its direct successors.
fwd_map :: key_set_map(T),
% Maps each vertex to its direct predecessors.
bwd_map :: key_set_map(T)
).
:- instance uenum(digraph_key(T)) where [
func(to_uint/1) is digraph_key_to_uint,
pred(from_uint/2) is digraph_key_from_uint
].
:- func digraph_key_to_uint(digraph_key(T)) = uint.
digraph_key_to_uint(digraph_key(UInt)) = UInt.
:- pred digraph_key_from_uint(uint::in, digraph_key(T)::out) is semidet.
:- pragma no_determinism_warning(pred(digraph_key_from_uint/2)).
digraph_key_from_uint(UInt, digraph_key(UInt)).
%---------------------------------------------------------------------------%
% Note that the keys in key_set_maps are actually digraph keys.
% The reason we use raw uints as keys is to allow type specialization.
%
:- type key_set_map(T) == map(uint, digraph_key_set(T)).
:- pred key_set_map_add(uint::in, digraph_key(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
key_set_map_add(XI, Y, Map0, Map) :-
( if map.search(Map0, XI, SuccXs0) then
( if sparse_bitset.insert_new(Y, SuccXs0, SuccXs) then
map.det_update(XI, SuccXs, Map0, Map)
else
Map = Map0
)
else
SuccXs = sparse_bitset.make_singleton_set(Y),
map.det_insert(XI, SuccXs, Map0, Map)
).
:- pred key_set_map_union(uint::in, digraph_key_set(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
key_set_map_union(XI, Ys, Map0, Map) :-
( if map.transform_value(sparse_bitset.union(Ys), XI, Map0, Map1) then
Map = Map1
else
map.det_insert(XI, Ys, Map0, Map)
).
:- pred key_set_map_delete(uint::in, digraph_key(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
key_set_map_delete(XI, Y, Map0, Map) :-
( if map.search(Map0, XI, SuccXs0) then
sparse_bitset.delete(Y, SuccXs0, SuccXs),
map.det_update(XI, SuccXs, Map0, Map)
else
Map = Map0
).
%---------------------------------------------------------------------------%
%
% Constructing digraphs.
%
init = G :-
digraph.init(G).
init(digraph(0u, VMap, FwdMap, BwdMap)) :-
bimap.init(VMap),
map.init(FwdMap),
map.init(BwdMap).
%---------------------%
add_vertex(Vertex, Key, !G) :-
VertexMap0 = !.G ^ vertex_map,
( if bimap.forward_search(VertexMap0, Vertex, Key0) then
Key = Key0
else
allocate_key(Key, !G),
bimap.set(Vertex, Key, VertexMap0, VertexMap),
!G ^ vertex_map := VertexMap
).
:- pred allocate_key(digraph_key(T)::out, digraph(T)::in, digraph(T)::out)
is det.
allocate_key(digraph_key(I), !G) :-
I = !.G ^ next_key,
!G ^ next_key := I + 1u.
%---------------------%
add_edge(X, Y, !.G) = !:G :-
digraph.add_edge(X, Y, !G).
add_edge(X, Y, !G) :-
X = digraph_key(XI),
Y = digraph_key(YI),
FwdMap0 = !.G ^ fwd_map,
BwdMap0 = !.G ^ bwd_map,
key_set_map_add(XI, Y, FwdMap0, FwdMap),
key_set_map_add(YI, X, BwdMap0, BwdMap),
!G ^ fwd_map := FwdMap,
!G ^ bwd_map := BwdMap.
add_vertices_and_edge(VX, VY, !.G) = !:G :-
digraph.add_vertices_and_edge(VX, VY, !G).
add_vertices_and_edge(VX, VY, !G) :-
digraph.add_vertex(VX, X, !G),
digraph.add_vertex(VY, Y, !G),
digraph.add_edge(X, Y, !G).
add_vertex_pair(Edge, !.G) = !:G :-
digraph.add_vertex_pair(Edge, !G).
add_vertex_pair(VX - VY, !G) :-
digraph.add_vertices_and_edge(VX, VY, !G).
add_assoc_list(Edges, !.G) = !:G :-
digraph.add_assoc_list(Edges, !G).
add_assoc_list([], !G).
add_assoc_list([X - Y | Edges], !G) :-
digraph.add_edge(X, Y, !G),
digraph.add_assoc_list(Edges, !G).
%---------------------------------------------------------------------------%
%
% Deleting from digraphs.
%
delete_edge(X, Y, !.G) = !:G :-
digraph.delete_edge(X, Y, !G).
delete_edge(X, Y, !G) :-
X = digraph_key(XI),
Y = digraph_key(YI),
FwdMap0 = !.G ^ fwd_map,
BwdMap0 = !.G ^ bwd_map,
key_set_map_delete(XI, Y, FwdMap0, FwdMap),
key_set_map_delete(YI, X, BwdMap0, BwdMap),
!G ^ fwd_map := FwdMap,
!G ^ bwd_map := BwdMap.
delete_assoc_list(Edges, !.G) = !:G :-
digraph.delete_assoc_list(Edges, !G).
delete_assoc_list([], !G).
delete_assoc_list([X - Y | Edges], !G) :-
digraph.delete_edge(X, Y, !G),
digraph.delete_assoc_list(Edges, !G).
%---------------------------------------------------------------------------%
%
% Searches and lookups.
%
search_key(G, Vertex, Key) :-
bimap.forward_search(G ^ vertex_map, Vertex, Key).
lookup_key(G, Vertex) = Key :-
digraph.lookup_key(G, Vertex, Key).
lookup_key(G, Vertex, Key) :-
( if digraph.search_key(G, Vertex, Key0) then
Key = Key0
else
unexpected($module, $pred, "search for key failed")
).
lookup_vertex(G, Key) = Vertex :-
digraph.lookup_vertex(G, Key, Vertex).
lookup_vertex(G, Key, Vertex) :-
( if bimap.reverse_search(G ^ vertex_map, Vertex0, Key) then
Vertex = Vertex0
else
unexpected($module, $pred, "search for vertex failed")
).
lookup_from(G, X) = Ys :-
digraph.lookup_from(G, X, Ys).
lookup_from(G, X, to_set(Ys)) :-
digraph.lookup_key_set_from(G, X, Ys).
lookup_key_set_from(G, X) = Ys :-
digraph.lookup_key_set_from(G, X, Ys).
lookup_key_set_from(G, digraph_key(XI), Ys) :-
( if map.search(G ^ fwd_map, XI, Ys0) then
Ys = Ys0
else
sparse_bitset.init(Ys)
).
lookup_to(G, Y) = Xs :-
digraph.lookup_to(G, Y, Xs).
lookup_to(G, Y, to_set(Xs)) :-
digraph.lookup_key_set_to(G, Y, Xs).
lookup_key_set_to(G, Y) = Xs :-
digraph.lookup_key_set_to(G, Y, Xs).
lookup_key_set_to(G, digraph_key(YI), Xs) :-
( if map.search(G ^ bwd_map, YI, Xs0) then
Xs = Xs0
else
sparse_bitset.init(Xs)
).
%---------------------%
is_edge(G, digraph_key(XI), Y) :-
map.search(G ^ fwd_map, XI, YSet),
sparse_bitset.member(Y, YSet).
is_edge_rev(G, X, digraph_key(YI)) :-
map.search(G ^ bwd_map, YI, XSet),
sparse_bitset.member(X, XSet).
%---------------------%
vertices(G) = Vs :-
digraph.vertices(G, Vs).
vertices(G, Vs) :-
bimap.ordinates(G ^ vertex_map, VsList),
set.sorted_list_to_set(VsList, Vs).
:- pred keys(digraph(T)::in, list(digraph_key(T))::out) is det.
keys(G, Keys) :-
bimap.coordinates(G ^ vertex_map, Keys).
%---------------------%
is_dag(G) :-
% Traverses the digraph depth-first, keeping track of all ancestors.
% Fails if we encounter an ancestor during the traversal, otherwise
% succeeds.
%
% not is_dag(G) <=> we encounter an ancestor at some stage:
%
% (=>) By assumption there exists a cycle. Since all vertices are reached
% in the traversal, we reach all vertices in the cycle at some stage.
% Let x be the vertex in the cycle that is reached first, and let y be
% the vertex preceding x in the cycle. Since x was first, y has not
% been visited and must therefore be reached at some stage in the depth-
% first traversal beneath x. At this stage we encounter x as both a
% child and an ancestor.
%
% (<=) If we encounter an ancestor in any traversal, then we have a cycle.
%
digraph.keys(G, Keys),
list.foldl(digraph.is_dag_2(G, []), Keys, sparse_bitset.init, _).
:- pred is_dag_2(digraph(T)::in, list(digraph_key(T))::in, digraph_key(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out) is semidet.
is_dag_2(G, Ancestors, X, !Visited) :-
( if list.member(X, Ancestors) then
fail
else if sparse_bitset.insert_new(X, !Visited) then
digraph.lookup_key_set_from(G, X, SuccXs),
foldl(digraph.is_dag_2(G, [X | Ancestors]), SuccXs, !Visited)
else
% We have already visited X.
true
).
%---------------------------------------------------------------------------%
%---------------------------------------------------------------------------%
%
% Conversion between digraphs and assoc_lists.
%
to_assoc_list(G) = List :-
digraph.to_assoc_list(G, List).
to_assoc_list(G, List) :-
Fwd = G ^ fwd_map,
map.keys(Fwd, FwdKeys),
digraph.to_assoc_list_2(Fwd, FwdKeys, G ^ vertex_map, [], List).
:- pred to_assoc_list_2(key_set_map(T)::in, list(uint)::in,
bimap(T, digraph_key(T))::in, assoc_list(T, T)::in, assoc_list(T, T)::out)
is det.
to_assoc_list_2(_Fwd, [], _, !AL).
to_assoc_list_2(Fwd, [XI | XIs], VMap, !AL) :-
digraph.to_assoc_list_2(Fwd, XIs, VMap, !AL),
bimap.reverse_lookup(VMap, VX, digraph_key(XI)),
map.lookup(Fwd, XI, SuccXs),
sparse_bitset.foldr(accumulate_rev_lookup(VMap, VX), SuccXs, !AL).
:- pred accumulate_rev_lookup(bimap(T, digraph_key(T))::in, T::in,
digraph_key(T)::in, assoc_list(T, T)::in, assoc_list(T, T)::out) is det.
accumulate_rev_lookup(VMap, VX, Y, !AL) :-
bimap.reverse_lookup(VMap, VY, Y),
!:AL = [VX - VY | !.AL].
to_key_assoc_list(G) = List :-
digraph.to_key_assoc_list(G, List).
to_key_assoc_list(G, List) :-
Fwd = G ^ fwd_map,
map.keys(Fwd, FwdKeys),
digraph.to_key_assoc_list_2(Fwd, FwdKeys, [], List).
:- pred to_key_assoc_list_2(key_set_map(T)::in, list(uint)::in,
assoc_list(digraph_key(T), digraph_key(T))::in,
assoc_list(digraph_key(T), digraph_key(T))::out) is det.
to_key_assoc_list_2(_Fwd, [], !AL).
to_key_assoc_list_2(Fwd, [XI | XIs], !AL) :-
digraph.to_key_assoc_list_2(Fwd, XIs, !AL),
map.lookup(Fwd, XI, SuccXs),
sparse_bitset.foldr(accumulate_with_key(digraph_key(XI)), SuccXs, !AL).
:- pred accumulate_with_key(digraph_key(T)::in, digraph_key(T)::in,
assoc_list(digraph_key(T), digraph_key(T))::in,
assoc_list(digraph_key(T), digraph_key(T))::out) is det.
accumulate_with_key(X, Y, !AL) :-
!:AL = [X - Y | !.AL].
from_assoc_list(AL) = G :-
digraph.from_assoc_list(AL, G).
from_assoc_list(AL, G) :-
list.foldl(add_vertex_pair, AL, digraph.init, G).
%---------------------------------------------------------------------------%
%---------------------------------------------------------------------------%
%
% Depth-first sorting.
%
dfs(G, X) = Dfs :-
digraph.dfs(G, X, Dfs).
dfs(G, X, Dfs) :-
digraph.dfsrev(G, X, DfsRev),
list.reverse(DfsRev, Dfs).
dfsrev(G, X) = DfsRev :-
digraph.dfsrev(G, X, DfsRev).
dfsrev(G, X, DfsRev) :-
init(Vis0),
digraph.dfs_2(G, X, Vis0, _, [], DfsRev).
dfs(G) = Dfs :-
digraph.dfs(G, Dfs).
dfs(G, Dfs) :-
digraph.dfsrev(G, DfsRev),
list.reverse(DfsRev, Dfs).
dfsrev(G) = DfsRev :-
digraph.dfsrev(G, DfsRev).
dfsrev(G, DfsRev) :-
digraph.keys(G, Keys),
list.foldl2(digraph.dfs_2(G), Keys, init, _, [], DfsRev).
dfs(G, X, !Visited, Dfs) :-
digraph.dfs_2(G, X, !Visited, [], DfsRev),
list.reverse(DfsRev, Dfs).
dfsrev(G, X, !Visited, DfsRev) :-
digraph.dfs_2(G, X, !Visited, [], DfsRev).
:- pred dfs_2(digraph(T)::in, digraph_key(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out,
list(digraph_key(T))::in, list(digraph_key(T))::out) is det.
dfs_2(G, X, !Visited, !DfsRev) :-
( if sparse_bitset.insert_new(X, !Visited) then
digraph.lookup_key_set_from(G, X, SuccXs),
% Go and visit all of the node's children.
sparse_bitset.foldl2(digraph.dfs_2(G), SuccXs, !Visited, !DfsRev),
!:DfsRev = [X | !.DfsRev]
else
% We have already visited X.
true
).
%---------------------------------------------------------------------------%
%
% Reachability.
%
reachable_vertices_from(G, From, VisitedVerticesSet) :-
digraph.lookup_key(G, From, FromKey),
WorkKeySet = sparse_bitset.make_singleton_set(FromKey),
sparse_bitset.init(VisitedKeySet0),
reachable_vertices_from_loop(G, WorkKeySet, VisitedKeySet0, VisitedKeySet),
sparse_bitset.foldl(add_vertex_to_list(G), VisitedKeySet,
[], VisitedVertices),
set.list_to_set(VisitedVertices, VisitedVerticesSet).
:- pred reachable_vertices_from_loop(digraph(T)::in, digraph_key_set(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out) is det.
reachable_vertices_from_loop(G, !.WorkKeySet, !VisitedKeySet) :-
( if sparse_bitset.remove_least(CurWorkKey, !WorkKeySet) then
sparse_bitset.insert(CurWorkKey, !VisitedKeySet),
digraph.lookup_key_set_from(G, CurWorkKey, SuccKeys),
sparse_bitset.difference(SuccKeys, !.VisitedKeySet, NewSuccKeys),
sparse_bitset.union(NewSuccKeys, !WorkKeySet),
reachable_vertices_from_loop(G, !.WorkKeySet, !VisitedKeySet)
else
% !.WorkKeySet is empty; we are done.
true
).
:- pred add_vertex_to_list(digraph(T)::in, digraph_key(T)::in,
list(T)::in, list(T)::out) is det.
add_vertex_to_list(G, VertexKey, !Vertices) :-
digraph.lookup_vertex(G, VertexKey, Vertex),
!:Vertices = [Vertex | !.Vertices].
%---------------------------------------------------------------------------%
%
% Transforming digraphs.
%
inverse(G) = InvG :-
digraph.inverse(G, InvG).
inverse(G, InvG) :-
G = digraph(Next, VMap, Fwd, Bwd),
InvG = digraph(Next, VMap, Bwd, Fwd).
%---------------------%
compose(G1, G2) = Comp :-
digraph.compose(G1, G2, Comp).
compose(G1, G2, Comp) :-
FwdMap2 = G2 ^ fwd_map,
map.foldl(compose_loop(G1, G2), FwdMap2, digraph.init, Comp).
:- pred compose_loop(digraph(T)::in, digraph(T)::in,
uint::in, digraph_key_set(T)::in, digraph(T)::in, digraph(T)::out) is det.
compose_loop(G1, G2, MI2, Ys2, !Comp) :-
% M is a vertex in G2.
% Ys is the set of ys such that (M,y) is in G2.
M2 = digraph_key(MI2),
digraph.lookup_vertex(G2, M2, VM),
( if
% Find the set of xs such that (x,M) is in G1.
digraph.search_key(G1, VM, M1),
M1 = digraph_key(MI1),
map.search(G1 ^ bwd_map, MI1, Xs1)
then
% Add all vertices in Xs and Ys to the new digraph.
copy_vertices(G1, Xs1, Xs, !Comp),
copy_vertices(G2, Ys2, Ys, !Comp),
% Add edges (x,y) for all x in Xs and y in Ys.
!.Comp = digraph(NextKey, VMap, FwdMap0, BwdMap0),
sparse_bitset.foldl(add_to_key_set_map(Ys), Xs, FwdMap0, FwdMap),
sparse_bitset.foldl(add_to_key_set_map(Xs), Ys, BwdMap0, BwdMap),
!:Comp = digraph(NextKey, VMap, FwdMap, BwdMap)
else
true
).
:- pred copy_vertices(digraph(T)::in, digraph_key_set(T)::in,
digraph_key_set(T)::out, digraph(T)::in, digraph(T)::out) is det.
copy_vertices(G, Xs, CompXs, !Comp) :-
sparse_bitset.foldl2(copy_vertex(G), Xs,
sparse_bitset.init, CompXs, !Comp).
:- pred copy_vertex(digraph(T)::in, digraph_key(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out,
digraph(T)::in, digraph(T)::out) is det.
copy_vertex(G, X, !CompXs, !Comp) :-
digraph.lookup_vertex(G, X, VX),
digraph.add_vertex(VX, CompX, !Comp),
sparse_bitset.insert(CompX, !CompXs).
:- pred add_to_key_set_map(digraph_key_set(T)::in, digraph_key(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
add_to_key_set_map(Ys, X, !Map) :-
X = digraph_key(XI),
key_set_map_union(XI, Ys, !Map).
%---------------------------------------------------------------------------%
%
% Components of digraphs.
%
components(G) = Components :-
digraph.components(G, Components).
components(G, Components) :-
digraph.keys(G, Keys),
sparse_bitset.list_to_set(Keys, KeySet : digraph_key_set(T)),
digraph.components_loop(G, KeySet, set.init, Components).
:- pred components_loop(digraph(T)::in, digraph_key_set(T)::in,
set(set(digraph_key(T)))::in, set(set(digraph_key(T)))::out) is det.
components_loop(G, Xs0, !Components) :-
( if sparse_bitset.remove_least(X, Xs0, Xs1) then
sparse_bitset.init(Comp0),
Keys0 = make_singleton_set(X),
digraph.reachable_from(G, Keys0, Comp0, Comp),
set.insert(sparse_bitset.to_set(Comp), !Components),
sparse_bitset.difference(Xs1, Comp, Xs2),
digraph.components_loop(G, Xs2, !Components)
else
true
).
:- pred reachable_from(digraph(T)::in, digraph_key_set(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out) is det.
reachable_from(G, Keys0, !Comp) :-
% Invariant: Keys0 and !.Comp are disjoint.
( if sparse_bitset.remove_least(X, Keys0, Keys1) then
sparse_bitset.insert(X, !Comp),
digraph.lookup_key_set_from(G, X, FwdSet),
digraph.lookup_key_set_to(G, X, BwdSet),
sparse_bitset.union(FwdSet, BwdSet, NextSet0),
sparse_bitset.difference(NextSet0, !.Comp, NextSet),
sparse_bitset.union(Keys1, NextSet, Keys),
digraph.reachable_from(G, Keys, !Comp)
else
true
).
%---------------------%
cliques(G) = Cliques :-
digraph.cliques(G, Cliques).
cliques(G, Cliques) :-
% Take a digraph and return the set of strongly connected components.
%
% Works using the following algorithm:
% 1. Reverse the digraph.
% 2. Traverse G in reverse depth-first order. From the first vertex
% do a DFS on the reversed G; all vertices visited are a member
% of the clique.
% 3. From the next non-visited vertex do a DFS on the reversed G,
% not including visited vertices. This is the next clique.
% 4. Repeat step 3 until all vertices visited.
digraph.dfsrev(G, DfsRev),
digraph.inverse(G, GInv),
set.init(Cliques0),
sparse_bitset.init(Visit),
digraph.cliques_2(DfsRev, GInv, Visit, Cliques0, Cliques).
:- pred cliques_2(list(digraph_key(T))::in, digraph(T)::in,
digraph_key_set(T)::in, set(set(digraph_key(T)))::in,
set(set(digraph_key(T)))::out) is det.
cliques_2([], _, _, !Cliques).
cliques_2([X | Xs0], GInv, !.Visited, !Cliques) :-
% Do a DFS on GInv, starting from X, but not including visited vertices.
digraph.dfs_2(GInv, X, !Visited, [], CliqueList),
% Insert the cycle into the clique set.
set.list_to_set(CliqueList, Clique),
set.insert(Clique, !Cliques),
% Delete all the visited vertices, so head of the list is the next
% highest non-visited vertex.
list.delete_elems(Xs0, CliqueList, Xs),
digraph.cliques_2(Xs, GInv, !.Visited, !Cliques).
%---------------------%
reduced(G) = R :-
digraph.reduced(G, R).
reduced(G, R) :-
digraph.reduced(G, R, _).
reduced(G, !:R, !:CliqMap) :-
digraph.cliques(G, Cliques),
set.to_sorted_list(Cliques, CliqList),
digraph.init(!:R),
map.init(!:CliqMap),
digraph.make_clique_map(G, CliqList, !CliqMap, !R),
digraph.to_key_assoc_list(G, AL),
digraph.make_reduced_graph(!.CliqMap, AL, !R).
:- type clique_map(T) == map(digraph_key(T), digraph_key(set(T))).
% Add a vertex to the reduced graph for each clique, and build a map
% from each key in the clique to this new key.
%
:- pred make_clique_map(digraph(T)::in, list(set(digraph_key(T)))::in,
clique_map(T)::in, clique_map(T)::out,
digraph(set(T))::in, digraph(set(T))::out) is det.
make_clique_map(_, [], !CliqMap, !R).
make_clique_map(G, [Clique | Cliques], !CliqMap, !R) :-
Vertices = set.map(digraph.lookup_vertex(G), Clique),
digraph.add_vertex(Vertices, CliqKey, !R),
set.fold(digraph.make_clique_map_2(CliqKey), Clique, !CliqMap),
digraph.make_clique_map(G, Cliques, !CliqMap, !R).
:- pred make_clique_map_2(digraph_key(set(T))::in, digraph_key(T)::in,
clique_map(T)::in, clique_map(T)::out) is det.
make_clique_map_2(CliqKey, X, !CliqMap) :-
map.set(X, CliqKey, !CliqMap).
:- pred make_reduced_graph(clique_map(T)::in,
assoc_list(digraph_key(T), digraph_key(T))::in,
digraph(set(T))::in, digraph(set(T))::out) is det.
make_reduced_graph(_, [], !R).
make_reduced_graph(CliqMap, [X - Y | Edges], !R) :-
map.lookup(CliqMap, X, CliqX),
map.lookup(CliqMap, Y, CliqY),
( if CliqX = CliqY then
true
else
digraph.add_edge(CliqX, CliqY, !R)
),
digraph.make_reduced_graph(CliqMap, Edges, !R).
%---------------------------------------------------------------------------%
%
% Topological sorts.
%
return_vertices_in_from_to_order(G, FromToTsort) :-
digraph.dfsrev(G, Tsort0),
digraph.check_from_to_order(G, init, Tsort0),
FromToTsort = list.map(digraph.lookup_vertex(G), Tsort0).
return_vertices_in_to_from_order(G, ToFromTsort) :-
return_vertices_in_from_to_order(G, FromToTsort),
list.reverse(FromToTsort, ToFromTsort).
tsort(G, FromToTsort) :-
return_vertices_in_from_to_order(G, FromToTsort).
:- pred check_from_to_order(digraph(T)::in, digraph_key_set(T)::in,
list(digraph_key(T))::in) is semidet.
check_from_to_order(_, _, []).
check_from_to_order(G, Vis0, [X | Xs]) :-
sparse_bitset.insert(X, Vis0, Vis),
digraph.lookup_key_set_from(G, X, SuccXs),
sparse_bitset.intersect(Vis, SuccXs, BackPointers),
sparse_bitset.is_empty(BackPointers),
digraph.check_from_to_order(G, Vis, Xs).
%---------------------%
return_sccs_in_from_to_order(G) = ATsort :-
ATsort0 = digraph.return_sccs_in_to_from_order(G),
list.reverse(ATsort0, ATsort).
return_sccs_in_to_from_order(G) = ATsort :-
% The algorithm used is described in R.E. Tarjan, "Depth-first search
% and linear graph algorithms", SIAM Journal on Computing, 1, 2 (1972).
%
% Strictly speaking, this is Kosaraju's algorithm. Tarjan's algorithm
% improves upon it by performing one traversal of the input graph
% instead of two.
digraph.dfsrev(G, DfsRev),
digraph.inverse(G, GInv),
sparse_bitset.init(Vis),
digraph.to_from_order_loop(DfsRev, GInv, Vis, [], ATsort).
atsort(G) = ATsort :-
ATsort = digraph.return_sccs_in_from_to_order(G).
atsort(G, ATsort) :-
ATsort = digraph.return_sccs_in_from_to_order(G).
:- pred to_from_order_loop(list(digraph_key(T))::in, digraph(T)::in,
digraph_key_set(T)::in, list(set(T))::in, list(set(T))::out) is det.
to_from_order_loop([], _, _, !ATsort).
to_from_order_loop([X | Xs], GInv, !.Vis, !ATsort) :-
( if sparse_bitset.contains(!.Vis, X) then
true
else
digraph.dfs_2(GInv, X, !Vis, [], CliqKeys),
list.map(digraph.lookup_vertex(GInv), CliqKeys, CliqList),
set.list_to_set(CliqList, Cliq),
!:ATsort = [Cliq | !.ATsort]
),
digraph.to_from_order_loop(Xs, GInv, !.Vis, !ATsort).
%---------------------------------------------------------------------------%
%
% Closures.
%
symmetric_closure(G) = Sc :-
digraph.inverse(G, GInv),
digraph.to_key_assoc_list(GInv, GInvList),
digraph.add_assoc_list(GInvList, G, Sc).
sc(G) = symmetric_closure(G).
sc(G, Sc) :-
Sc = symmetric_closure(G).
%---------------------%
transitive_closure(G) = Tc :-
basic_tc(G, Tc).
tc(G) = transitive_closure(G).
tc(G, Tc) :-
Tc = transitive_closure(G).
%---------------------%
% This implements the Basic_TC (BTC) algorithm described by Yannis Ioannidis
% et al. in "Transitive Closure Algorithms Based on Graph Traversal"
% ACM Transactions on Database Systems, Vol. 18, No. 3, Sept. 1993, pp. 512-576
% <https://www.madgik.di.uoa.gr/publications/
% transitive-closure-algorithms-based-graph-traversal>
%
% It is also helpful to read Esko Nuutila's doctoral thesis
% "Efficient Transitive Closure Computation in Large Digraphs"
% <http://www.cs.hut.fi/~enu/thesis.html>
%
% Note: Nuutila's STACK_TC algorithm should be faster than Basic_TC in general,
% as it computes edges between components rather than vertices. The algorithm
% outputs Comp and Succ, such that to find the successors of a vertex v,
% you would look up Succ(Comp(v)). That representation saves a lot of time and
% memory since the successors of every vertex in a component are always the
% same.
%
% However, the advantage is eroded given that our digraph representation stores
% the successors and predecessors of each vertex individually. Then Basic_TC
% tends to be faster, likely due to its relative simplicity.
:- type modified_tarjan_visit(T)
---> modified_tarjan_visit(
visit_counter :: uint,
visit_map :: map(digraph_key(T), uint)
).
:- type modified_tarjan_state(T)
---> modified_tarjan_state(
% A map from a vertex to the candidate root of the component
% that will include the vertex.
root_map :: map(digraph_key(T), digraph_key(T)),
% Stack of vertices being visited.
stack :: list(digraph_key(T)),
% A vertex is included in popped once the component containing
% the vertex has been determined, i.e. it has been popped off
% the stack.
popped :: digraph_key_set(T),
% The detected components in topological order
% (parent before descendants).
comps :: list(component(T))
).
:- type component(T)
---> component(
component_root :: digraph_key(T),
component_nonroots :: list(digraph_key(T))
).
:- pred basic_tc(digraph(T)::in, digraph(T)::out) is det.
basic_tc(G, Tc) :-
% First identify strong components.
modified_tarjan(G, Comps),
list.reverse(Comps, RevComps),
% Loop over components in reverse topological order
% (descendants before parent).
G = digraph(NextKey, VMap, FwdMap0, _BwdMap0),
list.foldl2(basic_tc_process_component(FwdMap0), RevComps,
map.init, SuccMap, map.init, PredMap),
Tc = digraph(NextKey, VMap, SuccMap, PredMap).
%---------------------%
% NOTE: modified_tarjan could be used elsewhere in this module.
%
:- pred modified_tarjan(digraph(T)::in, list(component(T))::out) is det.
modified_tarjan(G, Comps) :-
G = digraph(_NextKey, VMap, FwdMap, _BwdMap),
Visit0 = modified_tarjan_visit(0u, map.init),
State0 = modified_tarjan_state(map.init, [], sparse_bitset.init, []),
bimap.foldl2(modified_tarjan_main_loop(FwdMap), VMap,
Visit0, _Visit, State0, State),
State = modified_tarjan_state(_RootMap, _Stack, _Popped, Comps).
:- pred modified_tarjan_main_loop(key_set_map(T)::in,
T::in, digraph_key(T)::in,
modified_tarjan_visit(T)::in, modified_tarjan_visit(T)::out,
modified_tarjan_state(T)::in, modified_tarjan_state(T)::out) is det.
modified_tarjan_main_loop(OrigEdges, _V, KeyV, !Visit, !State) :-
( if modified_tarjan_new_visit(KeyV, !Visit) then
modified_tarjan_visit(OrigEdges, KeyV, !Visit, !State)
else
true
).
:- pred modified_tarjan_new_visit(digraph_key(T)::in,
modified_tarjan_visit(T)::in, modified_tarjan_visit(T)::out) is semidet.
modified_tarjan_new_visit(V, !Visit) :-
Counter0 = !.Visit ^ visit_counter,
Map0 = !.Visit ^ visit_map,
map.insert(V, Counter0, Map0, Map),
Counter = Counter0 + 1u,
!Visit ^ visit_counter := Counter,
!Visit ^ visit_map := Map.
:- pred modified_tarjan_visit(key_set_map(T)::in, digraph_key(T)::in,
modified_tarjan_visit(T)::in, modified_tarjan_visit(T)::out,
modified_tarjan_state(T)::in, modified_tarjan_state(T)::out) is det.
modified_tarjan_visit(OrigEdges, V, !Visit, !State) :-
some [!RootMap, !Stack] (
!:RootMap = !.State ^ root_map,
!:Stack = !.State ^ stack,
map.det_insert(V, V, !RootMap),
!:Stack = [V | !.Stack],
!State ^ root_map := !.RootMap,
!State ^ stack := !.Stack
),
get_successors(OrigEdges, V, SuccVs),
sparse_bitset.foldl2(modified_tarjan_visit_v_w(OrigEdges, V),
SuccVs, !Visit, !State),
RootMap = !.State ^ root_map,
( if map.search(RootMap, V, V) then
% V is the root of a component that also contains Ws.
some [!Stack, !Popped, !Comps] (
!:Stack = !.State ^ stack,
!:Popped = !.State ^ popped,
!:Comps = !.State ^ comps,
pop_component(V, Ws, !Stack),
sparse_bitset.insert(V, !Popped),
sparse_bitset.insert_list(Ws, !Popped),
!:Comps = [component(V, Ws) | !.Comps],
!State ^ stack := !.Stack,
!State ^ popped := !.Popped,
!State ^ comps := !.Comps
)
else
true
).
:- pred modified_tarjan_visit_v_w(key_set_map(T)::in,
digraph_key(T)::in, digraph_key(T)::in,
modified_tarjan_visit(T)::in, modified_tarjan_visit(T)::out,
modified_tarjan_state(T)::in, modified_tarjan_state(T)::out) is det.
modified_tarjan_visit_v_w(OrigEdges, V, W, !Visit, !State) :-
( if modified_tarjan_new_visit(W, !Visit) then
modified_tarjan_visit(OrigEdges, W, !Visit, !State)
else
true
),
Popped = !.State ^ popped,
( if sparse_bitset.contains(Popped, W) then
% We already determined the component that contains W.
true
else
% Otherwise, update the candidate that will become the root of the
% component that contains W.
RootMap0 = !.State ^ root_map,
map.lookup(RootMap0, V, RootV),
map.lookup(RootMap0, W, RootW),
( if visited_earlier(!.Visit, RootV, RootW) then
map.det_update(V, RootW, RootMap0, RootMap),
!State ^ root_map := RootMap
else
true
)
).
:- pred visited_earlier(modified_tarjan_visit(T)::in,
digraph_key(T)::in, digraph_key(T)::in) is semidet.
visited_earlier(Visit, X, Y) :-
VisitMap = Visit ^ visit_map,
map.lookup(VisitMap, X, OrderX),
map.lookup(VisitMap, Y, OrderY),
OrderY < OrderX.
:- pred pop_component(digraph_key(T)::in, list(digraph_key(T))::out,
list(digraph_key(T))::in, list(digraph_key(T))::out) is det.
pop_component(Root, NonRoots, !Stack) :-
(
!.Stack = [V | !:Stack],
( if V = Root then
NonRoots = []
else
pop_component(Root, TailNonRoots, !Stack),
NonRoots = [V | TailNonRoots]
)
;
!.Stack = [],
unexpected($pred, "empty stack")
).
%---------------------%
:- pred basic_tc_process_component(key_set_map(T)::in, component(T)::in,
key_set_map(T)::in, key_set_map(T)::out,
key_set_map(T)::in, key_set_map(T)::out) is det.
basic_tc_process_component(OrigEdges, Comp, !SuccMap, !PredMap) :-
% V is the root of a component that also contains Ws.
Comp = component(V, Ws),
% Build the set of successors for the root vertex V.
get_successors(!.SuccMap, V, SuccV0),
list.foldl(build_successor_set(OrigEdges, !.SuccMap), [V | Ws],
SuccV0, SuccV),
V = digraph_key(VI),
map.det_insert(VI, SuccV, !SuccMap),
% Distribute successors to other vertices in the component.
list.foldl(add_successors(SuccV), Ws, !SuccMap),
% Maintain the predecessor map from the (new) successors back to each
% vertex in the component. This ends up dominating the time spent computing
% the transitive closure, even though the user may not make use of the
% predecessor map at all.
(
Ws = [],
sparse_bitset.foldl(add_predecessor(V), SuccV, !PredMap)
;
Ws = [_ | _],
sparse_bitset.list_to_set([V | Ws], VWs),
sparse_bitset.foldl(add_predecessors(VWs), SuccV, !PredMap)
).
:- pred build_successor_set(key_set_map(T)::in, key_set_map(T)::in,
digraph_key(T)::in, digraph_key_set(T)::in, digraph_key_set(T)::out)
is det.
build_successor_set(OrigEdges, SuccMap0, W, !SuccV) :-
get_successors(OrigEdges, W, SuccW),
sparse_bitset.difference(SuccW, !.SuccV, NewSuccessors),
sparse_bitset.foldl(build_successor_set_2(SuccMap0), NewSuccessors,
!SuccV).
:- pred build_successor_set_2(key_set_map(T)::in, digraph_key(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out) is det.
build_successor_set_2(SuccMap0, W, !SuccV) :-
get_successors(SuccMap0, W, SuccW),
sparse_bitset.insert(W, !SuccV),
sparse_bitset.union(SuccW, !SuccV).
:- pred get_successors(key_set_map(T)::in, digraph_key(T)::in,
digraph_key_set(T)::out) is det.
get_successors(SuccMap, V, SuccV) :-
V = digraph_key(VI),
( if map.search(SuccMap, VI, SuccV0) then
SuccV = SuccV0
else
SuccV = sparse_bitset.init
).
:- pred add_successors(digraph_key_set(T)::in, digraph_key(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
add_successors(Ys, X, !Map) :-
X = digraph_key(XI),
key_set_map_union(XI, Ys, !Map).
:- pred add_predecessors(digraph_key_set(T)::in, digraph_key(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
add_predecessors(Ys, X, !Map) :-
X = digraph_key(XI),
key_set_map_union(XI, Ys, !Map).
:- pred add_predecessor(digraph_key(T)::in, digraph_key(T)::in,
key_set_map(T)::in, key_set_map(T)::out) is det.
add_predecessor(Y, X, !Map) :-
X = digraph_key(XI),
key_set_map_add(XI, Y, !Map).
%---------------------%
reflexive_transitive_closure(G) =
reflexive_closure(transitive_closure(G)).
rtc(G) = reflexive_transitive_closure(G).
rtc(G, Rtc) :-
Rtc = reflexive_transitive_closure(G).
:- func reflexive_closure(digraph(T)) = digraph(T).
reflexive_closure(G) = Rc :-
digraph.keys(G, Keys),
list.foldl(add_reflexive, Keys, G, Rc).
:- pred add_reflexive(digraph_key(T)::in,
digraph(T)::in, digraph(T)::out) is det.
add_reflexive(X, !G) :-
add_edge(X, X, !G).
%---------------------------------------------------------------------------%
%
% Traversals.
%
traverse(Graph, ProcessVertex, ProcessEdge, !Acc) :-
VertexMap = Graph ^ vertex_map,
bimap.foldl(traverse_vertex(Graph, ProcessVertex, ProcessEdge),
VertexMap, !Acc).
:- pred traverse_vertex(digraph(T),
pred(T, A, A), pred(T, T, A, A), T, digraph_key(T), A, A).
:- mode traverse_vertex(in, in(pred(in, di, uo) is det),
in(pred(in, in, di, uo) is det), in, in, di, uo) is det.
:- mode traverse_vertex(in, in(pred(in, in, out) is det),
in(pred(in, in, in, out) is det), in, in, in, out) is det.
traverse_vertex(Graph, ProcessVertex, ProcessEdge, Vertex, VertexKey, !Acc) :-
ProcessVertex(Vertex, !Acc),
digraph.lookup_key_set_from(Graph, VertexKey, ChildrenKeys),
sparse_bitset.foldl(traverse_child(Graph, ProcessEdge, Vertex),
ChildrenKeys, !Acc).
:- pred traverse_child(digraph(T), pred(T, T, A, A),
T, digraph_key(T), A, A).
:- mode traverse_child(in, in(pred(in, in, di, uo) is det),
in, in, di, uo) is det.
:- mode traverse_child(in, in(pred(in, in, in, out) is det),
in, in, in, out) is det.
traverse_child(Graph, ProcessEdge, Parent, ChildKey, !Acc) :-
Child = digraph.lookup_vertex(Graph, ChildKey),
ProcessEdge(Parent, Child, !Acc).
%---------------------------------------------------------------------------%
%---------------------------------------------------------------------------%
%
% For debugging.
%
slow_tc(G, TC) :-
% First start with all the vertices in G, but no edges.
G = digraph(NextKey, VMap, FwdMap, _BwdMap),
TC0 = digraph(NextKey, VMap, map.init, map.init),
map.keys(FwdMap, FwdKeys),
list.foldl(add_edges_to_reachable(G), FwdKeys, TC0, TC).
:- pred add_edges_to_reachable(digraph(T)::in, uint::in,
digraph(T)::in, digraph(T)::out) is det.
add_edges_to_reachable(G, XI, !TC) :-
X = digraph_key(XI),
find_descendants(G, X,
sparse_bitset.init, _Visited,
sparse_bitset.init, Reachable),
sparse_bitset.foldl(add_edge(X), Reachable, !TC).
:- pred find_descendants(digraph(T)::in, digraph_key(T)::in,
digraph_key_set(T)::in, digraph_key_set(T)::out,
digraph_key_set(T)::in, digraph_key_set(T)::out) is det.
find_descendants(G, X, !Visited, !Reachable) :-
( if sparse_bitset.contains(!.Visited, X) then
true
else
digraph.lookup_key_set_from(G, X, SuccXs),
sparse_bitset.insert(X, !Visited),
sparse_bitset.union(SuccXs, !Reachable),
sparse_bitset.foldl2(find_descendants(G), SuccXs, !Visited, !Reachable)
).
%---------------------------------------------------------------------------%
:- end_module digraph.
%---------------------------------------------------------------------------%