1 //===- Schedule.cpp - Calculate an optimized schedule ---------------------===//
2 //
3 //                     The LLVM Compiler Infrastructure
4 //
5 // This file is distributed under the University of Illinois Open Source
6 // License. See LICENSE.TXT for details.
7 //
8 //===----------------------------------------------------------------------===//
9 //
10 // This pass generates an entirely new schedule tree from the data dependences
11 // and iteration domains. The new schedule tree is computed in two steps:
12 //
13 // 1) The isl scheduling optimizer is run
14 //
15 // The isl scheduling optimizer creates a new schedule tree that maximizes
16 // parallelism and tileability and minimizes data-dependence distances. The
17 // algorithm used is a modified version of the ``Pluto'' algorithm:
18 //
19 //   U. Bondhugula, A. Hartono, J. Ramanujam, and P. Sadayappan.
20 //   A Practical Automatic Polyhedral Parallelizer and Locality Optimizer.
21 //   In Proceedings of the 2008 ACM SIGPLAN Conference On Programming Language
22 //   Design and Implementation, PLDI ’08, pages 101–113. ACM, 2008.
23 //
24 // 2) A set of post-scheduling transformations is applied on the schedule tree.
25 //
26 // These optimizations include:
27 //
28 //  - Tiling of the innermost tilable bands
29 //  - Prevectorization - The choice of a possible outer loop that is strip-mined
30 //                       to the innermost level to enable inner-loop
31 //                       vectorization.
32 //  - Some optimizations for spatial locality are also planned.
33 //
34 // For a detailed description of the schedule tree itself please see section 6
35 // of:
36 //
37 // Polyhedral AST generation is more than scanning polyhedra
38 // Tobias Grosser, Sven Verdoolaege, Albert Cohen
39 // ACM Transactions on Programming Languages and Systems (TOPLAS),
40 // 37(4), July 2015
41 // http://www.grosser.es/#pub-polyhedral-AST-generation
42 //
43 // This publication also contains a detailed discussion of the different options
44 // for polyhedral loop unrolling, full/partial tile separation and other uses
45 // of the schedule tree.
46 //
47 //===----------------------------------------------------------------------===//
48 
49 #include "polly/ScheduleOptimizer.h"
50 #include "polly/CodeGen/CodeGeneration.h"
51 #include "polly/DependenceInfo.h"
52 #include "polly/LinkAllPasses.h"
53 #include "polly/Options.h"
54 #include "polly/ScopInfo.h"
55 #include "polly/Support/GICHelper.h"
56 #include "llvm/Analysis/TargetTransformInfo.h"
57 #include "llvm/Support/Debug.h"
58 #include "isl/aff.h"
59 #include "isl/band.h"
60 #include "isl/constraint.h"
61 #include "isl/map.h"
62 #include "isl/options.h"
63 #include "isl/printer.h"
64 #include "isl/schedule.h"
65 #include "isl/schedule_node.h"
66 #include "isl/space.h"
67 #include "isl/union_map.h"
68 #include "isl/union_set.h"
69 
70 using namespace llvm;
71 using namespace polly;
72 
73 #define DEBUG_TYPE "polly-opt-isl"
74 
75 static cl::opt<std::string>
76     OptimizeDeps("polly-opt-optimize-only",
77                  cl::desc("Only a certain kind of dependences (all/raw)"),
78                  cl::Hidden, cl::init("all"), cl::ZeroOrMore,
79                  cl::cat(PollyCategory));
80 
81 static cl::opt<std::string>
82     SimplifyDeps("polly-opt-simplify-deps",
83                  cl::desc("Dependences should be simplified (yes/no)"),
84                  cl::Hidden, cl::init("yes"), cl::ZeroOrMore,
85                  cl::cat(PollyCategory));
86 
87 static cl::opt<int> MaxConstantTerm(
88     "polly-opt-max-constant-term",
89     cl::desc("The maximal constant term allowed (-1 is unlimited)"), cl::Hidden,
90     cl::init(20), cl::ZeroOrMore, cl::cat(PollyCategory));
91 
92 static cl::opt<int> MaxCoefficient(
93     "polly-opt-max-coefficient",
94     cl::desc("The maximal coefficient allowed (-1 is unlimited)"), cl::Hidden,
95     cl::init(20), cl::ZeroOrMore, cl::cat(PollyCategory));
96 
97 static cl::opt<std::string> FusionStrategy(
98     "polly-opt-fusion", cl::desc("The fusion strategy to choose (min/max)"),
99     cl::Hidden, cl::init("min"), cl::ZeroOrMore, cl::cat(PollyCategory));
100 
101 static cl::opt<std::string>
102     MaximizeBandDepth("polly-opt-maximize-bands",
103                       cl::desc("Maximize the band depth (yes/no)"), cl::Hidden,
104                       cl::init("yes"), cl::ZeroOrMore, cl::cat(PollyCategory));
105 
106 static cl::opt<std::string> OuterCoincidence(
107     "polly-opt-outer-coincidence",
108     cl::desc("Try to construct schedules where the outer member of each band "
109              "satisfies the coincidence constraints (yes/no)"),
110     cl::Hidden, cl::init("no"), cl::ZeroOrMore, cl::cat(PollyCategory));
111 
112 static cl::opt<int> PrevectorWidth(
113     "polly-prevect-width",
114     cl::desc(
115         "The number of loop iterations to strip-mine for pre-vectorization"),
116     cl::Hidden, cl::init(4), cl::ZeroOrMore, cl::cat(PollyCategory));
117 
118 static cl::opt<bool> FirstLevelTiling("polly-tiling",
119                                       cl::desc("Enable loop tiling"),
120                                       cl::init(true), cl::ZeroOrMore,
121                                       cl::cat(PollyCategory));
122 
123 static cl::opt<int> LatencyVectorFma(
124     "polly-target-latency-vector-fma",
125     cl::desc("The minimal number of cycles between issuing two "
126              "dependent consecutive vector fused multiply-add "
127              "instructions."),
128     cl::Hidden, cl::init(8), cl::ZeroOrMore, cl::cat(PollyCategory));
129 
130 static cl::opt<int> ThroughputVectorFma(
131     "polly-target-throughput-vector-fma",
132     cl::desc("A throughput of the processor floating-point arithmetic units "
133              "expressed in the number of vector fused multiply-add "
134              "instructions per clock cycle."),
135     cl::Hidden, cl::init(1), cl::ZeroOrMore, cl::cat(PollyCategory));
136 
137 // This option, along with --polly-target-2nd-cache-level-associativity,
138 // --polly-target-1st-cache-level-size, and --polly-target-2st-cache-level-size
139 // represent the parameters of the target cache, which do not have typical
140 // values that can be used by default. However, to apply the pattern matching
141 // optimizations, we use the values of the parameters of Intel Core i7-3820
142 // SandyBridge in case the parameters are not specified. Such an approach helps
143 // also to attain the high-performance on IBM POWER System S822 and IBM Power
144 // 730 Express server.
145 static cl::opt<int> FirstCacheLevelAssociativity(
146     "polly-target-1st-cache-level-associativity",
147     cl::desc("The associativity of the first cache level."), cl::Hidden,
148     cl::init(8), cl::ZeroOrMore, cl::cat(PollyCategory));
149 
150 static cl::opt<int> SecondCacheLevelAssociativity(
151     "polly-target-2nd-cache-level-associativity",
152     cl::desc("The associativity of the second cache level."), cl::Hidden,
153     cl::init(8), cl::ZeroOrMore, cl::cat(PollyCategory));
154 
155 static cl::opt<int> FirstCacheLevelSize(
156     "polly-target-1st-cache-level-size",
157     cl::desc("The size of the first cache level specified in bytes."),
158     cl::Hidden, cl::init(32768), cl::ZeroOrMore, cl::cat(PollyCategory));
159 
160 static cl::opt<int> SecondCacheLevelSize(
161     "polly-target-2nd-cache-level-size",
162     cl::desc("The size of the second level specified in bytes."), cl::Hidden,
163     cl::init(262144), cl::ZeroOrMore, cl::cat(PollyCategory));
164 
165 static cl::opt<int> VectorRegisterBitwidth(
166     "polly-target-vector-register-bitwidth",
167     cl::desc("The size in bits of a vector register (if not set, this "
168              "information is taken from LLVM's target information."),
169     cl::Hidden, cl::init(-1), cl::ZeroOrMore, cl::cat(PollyCategory));
170 
171 static cl::opt<int> FirstLevelDefaultTileSize(
172     "polly-default-tile-size",
173     cl::desc("The default tile size (if not enough were provided by"
174              " --polly-tile-sizes)"),
175     cl::Hidden, cl::init(32), cl::ZeroOrMore, cl::cat(PollyCategory));
176 
177 static cl::list<int>
178     FirstLevelTileSizes("polly-tile-sizes",
179                         cl::desc("A tile size for each loop dimension, filled "
180                                  "with --polly-default-tile-size"),
181                         cl::Hidden, cl::ZeroOrMore, cl::CommaSeparated,
182                         cl::cat(PollyCategory));
183 
184 static cl::opt<bool>
185     SecondLevelTiling("polly-2nd-level-tiling",
186                       cl::desc("Enable a 2nd level loop of loop tiling"),
187                       cl::init(false), cl::ZeroOrMore, cl::cat(PollyCategory));
188 
189 static cl::opt<int> SecondLevelDefaultTileSize(
190     "polly-2nd-level-default-tile-size",
191     cl::desc("The default 2nd-level tile size (if not enough were provided by"
192              " --polly-2nd-level-tile-sizes)"),
193     cl::Hidden, cl::init(16), cl::ZeroOrMore, cl::cat(PollyCategory));
194 
195 static cl::list<int>
196     SecondLevelTileSizes("polly-2nd-level-tile-sizes",
197                          cl::desc("A tile size for each loop dimension, filled "
198                                   "with --polly-default-tile-size"),
199                          cl::Hidden, cl::ZeroOrMore, cl::CommaSeparated,
200                          cl::cat(PollyCategory));
201 
202 static cl::opt<bool> RegisterTiling("polly-register-tiling",
203                                     cl::desc("Enable register tiling"),
204                                     cl::init(false), cl::ZeroOrMore,
205                                     cl::cat(PollyCategory));
206 
207 static cl::opt<int> RegisterDefaultTileSize(
208     "polly-register-tiling-default-tile-size",
209     cl::desc("The default register tile size (if not enough were provided by"
210              " --polly-register-tile-sizes)"),
211     cl::Hidden, cl::init(2), cl::ZeroOrMore, cl::cat(PollyCategory));
212 
213 static cl::opt<int> PollyPatternMatchingNcQuotient(
214     "polly-pattern-matching-nc-quotient",
215     cl::desc("Quotient that is obtained by dividing Nc, the parameter of the"
216              "macro-kernel, by Nr, the parameter of the micro-kernel"),
217     cl::Hidden, cl::init(256), cl::ZeroOrMore, cl::cat(PollyCategory));
218 
219 static cl::list<int>
220     RegisterTileSizes("polly-register-tile-sizes",
221                       cl::desc("A tile size for each loop dimension, filled "
222                                "with --polly-register-tile-size"),
223                       cl::Hidden, cl::ZeroOrMore, cl::CommaSeparated,
224                       cl::cat(PollyCategory));
225 
226 static cl::opt<bool>
227     PMBasedOpts("polly-pattern-matching-based-opts",
228                 cl::desc("Perform optimizations based on pattern matching"),
229                 cl::init(true), cl::ZeroOrMore, cl::cat(PollyCategory));
230 
231 static cl::opt<bool> OptimizedScops(
232     "polly-optimized-scops",
233     cl::desc("Polly - Dump polyhedral description of Scops optimized with "
234              "the isl scheduling optimizer and the set of post-scheduling "
235              "transformations is applied on the schedule tree"),
236     cl::init(false), cl::ZeroOrMore, cl::cat(PollyCategory));
237 
238 /// Create an isl_union_set, which describes the isolate option based on
239 /// IsoalteDomain.
240 ///
241 /// @param IsolateDomain An isl_set whose @p OutDimsNum last dimensions should
242 ///                      belong to the current band node.
243 /// @param OutDimsNum    A number of dimensions that should belong to
244 ///                      the current band node.
245 static __isl_give isl_union_set *
246 getIsolateOptions(__isl_take isl_set *IsolateDomain, unsigned OutDimsNum) {
247   auto Dims = isl_set_dim(IsolateDomain, isl_dim_set);
248   assert(OutDimsNum <= Dims &&
249          "The isl_set IsolateDomain is used to describe the range of schedule "
250          "dimensions values, which should be isolated. Consequently, the "
251          "number of its dimensions should be greater than or equal to the "
252          "number of the schedule dimensions.");
253   auto *IsolateRelation = isl_map_from_domain(IsolateDomain);
254   IsolateRelation =
255       isl_map_move_dims(IsolateRelation, isl_dim_out, 0, isl_dim_in,
256                         Dims - OutDimsNum, OutDimsNum);
257   auto *IsolateOption = isl_map_wrap(IsolateRelation);
258   auto *Id = isl_id_alloc(isl_set_get_ctx(IsolateOption), "isolate", nullptr);
259   return isl_union_set_from_set(isl_set_set_tuple_id(IsolateOption, Id));
260 }
261 
262 /// Create an isl_union_set, which describes the atomic option for the dimension
263 /// of the current node.
264 ///
265 /// It may help to reduce the size of generated code.
266 ///
267 /// @param Ctx An isl_ctx, which is used to create the isl_union_set.
268 static __isl_give isl_union_set *getAtomicOptions(isl_ctx *Ctx) {
269   auto *Space = isl_space_set_alloc(Ctx, 0, 1);
270   auto *AtomicOption = isl_set_universe(Space);
271   auto *Id = isl_id_alloc(Ctx, "atomic", nullptr);
272   return isl_union_set_from_set(isl_set_set_tuple_id(AtomicOption, Id));
273 }
274 
275 /// Create an isl_union_set, which describes the option of the form
276 /// [isolate[] -> unroll[x]].
277 ///
278 /// @param Ctx An isl_ctx, which is used to create the isl_union_set.
279 static __isl_give isl_union_set *getUnrollIsolatedSetOptions(isl_ctx *Ctx) {
280   auto *Space = isl_space_alloc(Ctx, 0, 0, 1);
281   auto *UnrollIsolatedSetOption = isl_map_universe(Space);
282   auto *DimInId = isl_id_alloc(Ctx, "isolate", nullptr);
283   auto *DimOutId = isl_id_alloc(Ctx, "unroll", nullptr);
284   UnrollIsolatedSetOption =
285       isl_map_set_tuple_id(UnrollIsolatedSetOption, isl_dim_in, DimInId);
286   UnrollIsolatedSetOption =
287       isl_map_set_tuple_id(UnrollIsolatedSetOption, isl_dim_out, DimOutId);
288   return isl_union_set_from_set(isl_map_wrap(UnrollIsolatedSetOption));
289 }
290 
291 /// Make the last dimension of Set to take values from 0 to VectorWidth - 1.
292 ///
293 /// @param Set         A set, which should be modified.
294 /// @param VectorWidth A parameter, which determines the constraint.
295 static __isl_give isl_set *addExtentConstraints(__isl_take isl_set *Set,
296                                                 int VectorWidth) {
297   auto Dims = isl_set_dim(Set, isl_dim_set);
298   auto Space = isl_set_get_space(Set);
299   auto *LocalSpace = isl_local_space_from_space(Space);
300   auto *ExtConstr =
301       isl_constraint_alloc_inequality(isl_local_space_copy(LocalSpace));
302   ExtConstr = isl_constraint_set_constant_si(ExtConstr, 0);
303   ExtConstr =
304       isl_constraint_set_coefficient_si(ExtConstr, isl_dim_set, Dims - 1, 1);
305   Set = isl_set_add_constraint(Set, ExtConstr);
306   ExtConstr = isl_constraint_alloc_inequality(LocalSpace);
307   ExtConstr = isl_constraint_set_constant_si(ExtConstr, VectorWidth - 1);
308   ExtConstr =
309       isl_constraint_set_coefficient_si(ExtConstr, isl_dim_set, Dims - 1, -1);
310   return isl_set_add_constraint(Set, ExtConstr);
311 }
312 
313 /// Build the desired set of partial tile prefixes.
314 ///
315 /// We build a set of partial tile prefixes, which are prefixes of the vector
316 /// loop that have exactly VectorWidth iterations.
317 ///
318 /// 1. Get all prefixes of the vector loop.
319 /// 2. Extend it to a set, which has exactly VectorWidth iterations for
320 ///    any prefix from the set that was built on the previous step.
321 /// 3. Subtract loop domain from it, project out the vector loop dimension and
322 ///    get a set of prefixes, which don't have exactly VectorWidth iterations.
323 /// 4. Subtract it from all prefixes of the vector loop and get the desired
324 ///    set.
325 ///
326 /// @param ScheduleRange A range of a map, which describes a prefix schedule
327 ///                      relation.
328 static __isl_give isl_set *
329 getPartialTilePrefixes(__isl_take isl_set *ScheduleRange, int VectorWidth) {
330   auto Dims = isl_set_dim(ScheduleRange, isl_dim_set);
331   auto *LoopPrefixes = isl_set_project_out(isl_set_copy(ScheduleRange),
332                                            isl_dim_set, Dims - 1, 1);
333   auto *ExtentPrefixes =
334       isl_set_add_dims(isl_set_copy(LoopPrefixes), isl_dim_set, 1);
335   ExtentPrefixes = addExtentConstraints(ExtentPrefixes, VectorWidth);
336   auto *BadPrefixes = isl_set_subtract(ExtentPrefixes, ScheduleRange);
337   BadPrefixes = isl_set_project_out(BadPrefixes, isl_dim_set, Dims - 1, 1);
338   return isl_set_subtract(LoopPrefixes, BadPrefixes);
339 }
340 
341 __isl_give isl_schedule_node *ScheduleTreeOptimizer::isolateFullPartialTiles(
342     __isl_take isl_schedule_node *Node, int VectorWidth) {
343   assert(isl_schedule_node_get_type(Node) == isl_schedule_node_band);
344   Node = isl_schedule_node_child(Node, 0);
345   Node = isl_schedule_node_child(Node, 0);
346   auto *SchedRelUMap = isl_schedule_node_get_prefix_schedule_relation(Node);
347   auto *ScheduleRelation = isl_map_from_union_map(SchedRelUMap);
348   auto *ScheduleRange = isl_map_range(ScheduleRelation);
349   auto *IsolateDomain = getPartialTilePrefixes(ScheduleRange, VectorWidth);
350   auto *AtomicOption = getAtomicOptions(isl_set_get_ctx(IsolateDomain));
351   auto *IsolateOption = getIsolateOptions(IsolateDomain, 1);
352   Node = isl_schedule_node_parent(Node);
353   Node = isl_schedule_node_parent(Node);
354   auto *Options = isl_union_set_union(IsolateOption, AtomicOption);
355   Node = isl_schedule_node_band_set_ast_build_options(Node, Options);
356   return Node;
357 }
358 
359 __isl_give isl_schedule_node *
360 ScheduleTreeOptimizer::prevectSchedBand(__isl_take isl_schedule_node *Node,
361                                         unsigned DimToVectorize,
362                                         int VectorWidth) {
363   assert(isl_schedule_node_get_type(Node) == isl_schedule_node_band);
364 
365   auto Space = isl_schedule_node_band_get_space(Node);
366   auto ScheduleDimensions = isl_space_dim(Space, isl_dim_set);
367   isl_space_free(Space);
368   assert(DimToVectorize < ScheduleDimensions);
369 
370   if (DimToVectorize > 0) {
371     Node = isl_schedule_node_band_split(Node, DimToVectorize);
372     Node = isl_schedule_node_child(Node, 0);
373   }
374   if (DimToVectorize < ScheduleDimensions - 1)
375     Node = isl_schedule_node_band_split(Node, 1);
376   Space = isl_schedule_node_band_get_space(Node);
377   auto Sizes = isl_multi_val_zero(Space);
378   auto Ctx = isl_schedule_node_get_ctx(Node);
379   Sizes =
380       isl_multi_val_set_val(Sizes, 0, isl_val_int_from_si(Ctx, VectorWidth));
381   Node = isl_schedule_node_band_tile(Node, Sizes);
382   Node = isolateFullPartialTiles(Node, VectorWidth);
383   Node = isl_schedule_node_child(Node, 0);
384   // Make sure the "trivially vectorizable loop" is not unrolled. Otherwise,
385   // we will have troubles to match it in the backend.
386   Node = isl_schedule_node_band_set_ast_build_options(
387       Node, isl_union_set_read_from_str(Ctx, "{ unroll[x]: 1 = 0 }"));
388   Node = isl_schedule_node_band_sink(Node);
389   Node = isl_schedule_node_child(Node, 0);
390   if (isl_schedule_node_get_type(Node) == isl_schedule_node_leaf)
391     Node = isl_schedule_node_parent(Node);
392   isl_id *LoopMarker = isl_id_alloc(Ctx, "SIMD", nullptr);
393   Node = isl_schedule_node_insert_mark(Node, LoopMarker);
394   return Node;
395 }
396 
397 __isl_give isl_schedule_node *
398 ScheduleTreeOptimizer::tileNode(__isl_take isl_schedule_node *Node,
399                                 const char *Identifier, ArrayRef<int> TileSizes,
400                                 int DefaultTileSize) {
401   auto Ctx = isl_schedule_node_get_ctx(Node);
402   auto Space = isl_schedule_node_band_get_space(Node);
403   auto Dims = isl_space_dim(Space, isl_dim_set);
404   auto Sizes = isl_multi_val_zero(Space);
405   std::string IdentifierString(Identifier);
406   for (unsigned i = 0; i < Dims; i++) {
407     auto tileSize = i < TileSizes.size() ? TileSizes[i] : DefaultTileSize;
408     Sizes = isl_multi_val_set_val(Sizes, i, isl_val_int_from_si(Ctx, tileSize));
409   }
410   auto TileLoopMarkerStr = IdentifierString + " - Tiles";
411   isl_id *TileLoopMarker =
412       isl_id_alloc(Ctx, TileLoopMarkerStr.c_str(), nullptr);
413   Node = isl_schedule_node_insert_mark(Node, TileLoopMarker);
414   Node = isl_schedule_node_child(Node, 0);
415   Node = isl_schedule_node_band_tile(Node, Sizes);
416   Node = isl_schedule_node_child(Node, 0);
417   auto PointLoopMarkerStr = IdentifierString + " - Points";
418   isl_id *PointLoopMarker =
419       isl_id_alloc(Ctx, PointLoopMarkerStr.c_str(), nullptr);
420   Node = isl_schedule_node_insert_mark(Node, PointLoopMarker);
421   Node = isl_schedule_node_child(Node, 0);
422   return Node;
423 }
424 
425 __isl_give isl_schedule_node *
426 ScheduleTreeOptimizer::applyRegisterTiling(__isl_take isl_schedule_node *Node,
427                                            llvm::ArrayRef<int> TileSizes,
428                                            int DefaultTileSize) {
429   auto *Ctx = isl_schedule_node_get_ctx(Node);
430   Node = tileNode(Node, "Register tiling", TileSizes, DefaultTileSize);
431   Node = isl_schedule_node_band_set_ast_build_options(
432       Node, isl_union_set_read_from_str(Ctx, "{unroll[x]}"));
433   return Node;
434 }
435 
436 namespace {
437 bool isSimpleInnermostBand(const isl::schedule_node &Node) {
438   assert(isl_schedule_node_get_type(Node.keep()) == isl_schedule_node_band);
439   assert(isl_schedule_node_n_children(Node.keep()) == 1);
440 
441   auto ChildType = isl_schedule_node_get_type(Node.child(0).keep());
442 
443   if (ChildType == isl_schedule_node_leaf)
444     return true;
445 
446   if (ChildType != isl_schedule_node_sequence)
447     return false;
448 
449   auto Sequence = Node.child(0);
450 
451   for (int c = 0, nc = isl_schedule_node_n_children(Sequence.keep()); c < nc;
452        ++c) {
453     auto Child = Sequence.child(c);
454     if (isl_schedule_node_get_type(Child.keep()) != isl_schedule_node_filter)
455       return false;
456     if (isl_schedule_node_get_type(Child.child(0).keep()) !=
457         isl_schedule_node_leaf)
458       return false;
459   }
460   return true;
461 }
462 } // namespace
463 
464 bool ScheduleTreeOptimizer::isTileableBandNode(
465     __isl_keep isl_schedule_node *Node) {
466   if (isl_schedule_node_get_type(Node) != isl_schedule_node_band)
467     return false;
468 
469   if (isl_schedule_node_n_children(Node) != 1)
470     return false;
471 
472   if (!isl_schedule_node_band_get_permutable(Node))
473     return false;
474 
475   auto Space = isl_schedule_node_band_get_space(Node);
476   auto Dims = isl_space_dim(Space, isl_dim_set);
477   isl_space_free(Space);
478 
479   if (Dims <= 1)
480     return false;
481 
482   auto ManagedNode = isl::manage(isl_schedule_node_copy(Node));
483   return isSimpleInnermostBand(ManagedNode);
484 }
485 
486 __isl_give isl_schedule_node *
487 ScheduleTreeOptimizer::standardBandOpts(__isl_take isl_schedule_node *Node,
488                                         void *User) {
489   if (FirstLevelTiling)
490     Node = tileNode(Node, "1st level tiling", FirstLevelTileSizes,
491                     FirstLevelDefaultTileSize);
492 
493   if (SecondLevelTiling)
494     Node = tileNode(Node, "2nd level tiling", SecondLevelTileSizes,
495                     SecondLevelDefaultTileSize);
496 
497   if (RegisterTiling)
498     Node =
499         applyRegisterTiling(Node, RegisterTileSizes, RegisterDefaultTileSize);
500 
501   if (PollyVectorizerChoice == VECTORIZER_NONE)
502     return Node;
503 
504   auto Space = isl_schedule_node_band_get_space(Node);
505   auto Dims = isl_space_dim(Space, isl_dim_set);
506   isl_space_free(Space);
507 
508   for (int i = Dims - 1; i >= 0; i--)
509     if (isl_schedule_node_band_member_get_coincident(Node, i)) {
510       Node = prevectSchedBand(Node, i, PrevectorWidth);
511       break;
512     }
513 
514   return Node;
515 }
516 
517 /// Get the position of a dimension with a non-zero coefficient.
518 ///
519 /// Check that isl constraint @p Constraint has only one non-zero
520 /// coefficient for dimensions that have type @p DimType. If this is true,
521 /// return the position of the dimension corresponding to the non-zero
522 /// coefficient and negative value, otherwise.
523 ///
524 /// @param Constraint The isl constraint to be checked.
525 /// @param DimType    The type of the dimensions.
526 /// @return           The position of the dimension in case the isl
527 ///                   constraint satisfies the requirements, a negative
528 ///                   value, otherwise.
529 static int getMatMulConstraintDim(__isl_keep isl_constraint *Constraint,
530                                   enum isl_dim_type DimType) {
531   int DimPos = -1;
532   auto *LocalSpace = isl_constraint_get_local_space(Constraint);
533   int LocalSpaceDimNum = isl_local_space_dim(LocalSpace, DimType);
534   for (int i = 0; i < LocalSpaceDimNum; i++) {
535     auto *Val = isl_constraint_get_coefficient_val(Constraint, DimType, i);
536     if (isl_val_is_zero(Val)) {
537       isl_val_free(Val);
538       continue;
539     }
540     if (DimPos >= 0 || (DimType == isl_dim_out && !isl_val_is_one(Val)) ||
541         (DimType == isl_dim_in && !isl_val_is_negone(Val))) {
542       isl_val_free(Val);
543       isl_local_space_free(LocalSpace);
544       return -1;
545     }
546     DimPos = i;
547     isl_val_free(Val);
548   }
549   isl_local_space_free(LocalSpace);
550   return DimPos;
551 }
552 
553 /// Check the form of the isl constraint.
554 ///
555 /// Check that the @p DimInPos input dimension of the isl constraint
556 /// @p Constraint has a coefficient that is equal to negative one, the @p
557 /// DimOutPos has a coefficient that is equal to one and others
558 /// have coefficients equal to zero.
559 ///
560 /// @param Constraint The isl constraint to be checked.
561 /// @param DimInPos   The input dimension of the isl constraint.
562 /// @param DimOutPos  The output dimension of the isl constraint.
563 /// @return           isl_stat_ok in case the isl constraint satisfies
564 ///                   the requirements, isl_stat_error otherwise.
565 static isl_stat isMatMulOperandConstraint(__isl_keep isl_constraint *Constraint,
566                                           int &DimInPos, int &DimOutPos) {
567   auto *Val = isl_constraint_get_constant_val(Constraint);
568   if (!isl_constraint_is_equality(Constraint) || !isl_val_is_zero(Val)) {
569     isl_val_free(Val);
570     return isl_stat_error;
571   }
572   isl_val_free(Val);
573   DimInPos = getMatMulConstraintDim(Constraint, isl_dim_in);
574   if (DimInPos < 0)
575     return isl_stat_error;
576   DimOutPos = getMatMulConstraintDim(Constraint, isl_dim_out);
577   if (DimOutPos < 0)
578     return isl_stat_error;
579   return isl_stat_ok;
580 }
581 
582 /// Check that the access relation corresponds to a non-constant operand
583 /// of the matrix multiplication.
584 ///
585 /// Access relations that correspond to non-constant operands of the matrix
586 /// multiplication depend only on two input dimensions and have two output
587 /// dimensions. The function checks that the isl basic map @p bmap satisfies
588 /// the requirements. The two input dimensions can be specified via @p user
589 /// array.
590 ///
591 /// @param bmap The isl basic map to be checked.
592 /// @param user The input dimensions of @p bmap.
593 /// @return     isl_stat_ok in case isl basic map satisfies the requirements,
594 ///             isl_stat_error otherwise.
595 static isl_stat isMatMulOperandBasicMap(__isl_take isl_basic_map *bmap,
596                                         void *user) {
597   auto *Constraints = isl_basic_map_get_constraint_list(bmap);
598   isl_basic_map_free(bmap);
599   if (isl_constraint_list_n_constraint(Constraints) != 2) {
600     isl_constraint_list_free(Constraints);
601     return isl_stat_error;
602   }
603   int InPosPair[] = {-1, -1};
604   auto DimInPos = user ? static_cast<int *>(user) : InPosPair;
605   for (int i = 0; i < 2; i++) {
606     auto *Constraint = isl_constraint_list_get_constraint(Constraints, i);
607     int InPos, OutPos;
608     if (isMatMulOperandConstraint(Constraint, InPos, OutPos) ==
609             isl_stat_error ||
610         OutPos > 1 || (DimInPos[OutPos] >= 0 && DimInPos[OutPos] != InPos)) {
611       isl_constraint_free(Constraint);
612       isl_constraint_list_free(Constraints);
613       return isl_stat_error;
614     }
615     DimInPos[OutPos] = InPos;
616     isl_constraint_free(Constraint);
617   }
618   isl_constraint_list_free(Constraints);
619   return isl_stat_ok;
620 }
621 
622 /// Permute the two dimensions of the isl map.
623 ///
624 /// Permute @p DstPos and @p SrcPos dimensions of the isl map @p Map that
625 /// have type @p DimType.
626 ///
627 /// @param Map     The isl map to be modified.
628 /// @param DimType The type of the dimensions.
629 /// @param DstPos  The first dimension.
630 /// @param SrcPos  The second dimension.
631 /// @return        The modified map.
632 __isl_give isl_map *permuteDimensions(__isl_take isl_map *Map,
633                                       enum isl_dim_type DimType,
634                                       unsigned DstPos, unsigned SrcPos) {
635   assert(DstPos < isl_map_dim(Map, DimType) &&
636          SrcPos < isl_map_dim(Map, DimType));
637   if (DstPos == SrcPos)
638     return Map;
639   isl_id *DimId = nullptr;
640   if (isl_map_has_tuple_id(Map, DimType))
641     DimId = isl_map_get_tuple_id(Map, DimType);
642   auto FreeDim = DimType == isl_dim_in ? isl_dim_out : isl_dim_in;
643   isl_id *FreeDimId = nullptr;
644   if (isl_map_has_tuple_id(Map, FreeDim))
645     FreeDimId = isl_map_get_tuple_id(Map, FreeDim);
646   auto MaxDim = std::max(DstPos, SrcPos);
647   auto MinDim = std::min(DstPos, SrcPos);
648   Map = isl_map_move_dims(Map, FreeDim, 0, DimType, MaxDim, 1);
649   Map = isl_map_move_dims(Map, FreeDim, 0, DimType, MinDim, 1);
650   Map = isl_map_move_dims(Map, DimType, MinDim, FreeDim, 1, 1);
651   Map = isl_map_move_dims(Map, DimType, MaxDim, FreeDim, 0, 1);
652   if (DimId)
653     Map = isl_map_set_tuple_id(Map, DimType, DimId);
654   if (FreeDimId)
655     Map = isl_map_set_tuple_id(Map, FreeDim, FreeDimId);
656   return Map;
657 }
658 
659 /// Check the form of the access relation.
660 ///
661 /// Check that the access relation @p AccMap has the form M[i][j], where i
662 /// is a @p FirstPos and j is a @p SecondPos.
663 ///
664 /// @param AccMap    The access relation to be checked.
665 /// @param FirstPos  The index of the input dimension that is mapped to
666 ///                  the first output dimension.
667 /// @param SecondPos The index of the input dimension that is mapped to the
668 ///                  second output dimension.
669 /// @return          True in case @p AccMap has the expected form and false,
670 ///                  otherwise.
671 static bool isMatMulOperandAcc(__isl_keep isl_map *AccMap, int &FirstPos,
672                                int &SecondPos) {
673   int DimInPos[] = {FirstPos, SecondPos};
674   if (isl_map_foreach_basic_map(AccMap, isMatMulOperandBasicMap,
675                                 static_cast<void *>(DimInPos)) != isl_stat_ok ||
676       DimInPos[0] < 0 || DimInPos[1] < 0)
677     return false;
678   FirstPos = DimInPos[0];
679   SecondPos = DimInPos[1];
680   return true;
681 }
682 
683 /// Does the memory access represent a non-scalar operand of the matrix
684 /// multiplication.
685 ///
686 /// Check that the memory access @p MemAccess is the read access to a non-scalar
687 /// operand of the matrix multiplication or its result.
688 ///
689 /// @param MemAccess The memory access to be checked.
690 /// @param MMI       Parameters of the matrix multiplication operands.
691 /// @return          True in case the memory access represents the read access
692 ///                  to a non-scalar operand of the matrix multiplication and
693 ///                  false, otherwise.
694 static bool isMatMulNonScalarReadAccess(MemoryAccess *MemAccess,
695                                         MatMulInfoTy &MMI) {
696   if (!MemAccess->isArrayKind() || !MemAccess->isRead())
697     return false;
698   isl_map *AccMap = MemAccess->getAccessRelation();
699   if (isMatMulOperandAcc(AccMap, MMI.i, MMI.j) && !MMI.ReadFromC &&
700       isl_map_n_basic_map(AccMap) == 1) {
701     MMI.ReadFromC = MemAccess;
702     isl_map_free(AccMap);
703     return true;
704   }
705   if (isMatMulOperandAcc(AccMap, MMI.i, MMI.k) && !MMI.A &&
706       isl_map_n_basic_map(AccMap) == 1) {
707     MMI.A = MemAccess;
708     isl_map_free(AccMap);
709     return true;
710   }
711   if (isMatMulOperandAcc(AccMap, MMI.k, MMI.j) && !MMI.B &&
712       isl_map_n_basic_map(AccMap) == 1) {
713     MMI.B = MemAccess;
714     isl_map_free(AccMap);
715     return true;
716   }
717   isl_map_free(AccMap);
718   return false;
719 }
720 
721 /// Check accesses to operands of the matrix multiplication.
722 ///
723 /// Check that accesses of the SCoP statement, which corresponds to
724 /// the partial schedule @p PartialSchedule, are scalar in terms of loops
725 /// containing the matrix multiplication, in case they do not represent
726 /// accesses to the non-scalar operands of the matrix multiplication or
727 /// its result.
728 ///
729 /// @param  PartialSchedule The partial schedule of the SCoP statement.
730 /// @param  MMI             Parameters of the matrix multiplication operands.
731 /// @return                 True in case the corresponding SCoP statement
732 ///                         represents matrix multiplication and false,
733 ///                         otherwise.
734 static bool containsOnlyMatrMultAcc(__isl_keep isl_map *PartialSchedule,
735                                     MatMulInfoTy &MMI) {
736   auto *InputDimId = isl_map_get_tuple_id(PartialSchedule, isl_dim_in);
737   auto *Stmt = static_cast<ScopStmt *>(isl_id_get_user(InputDimId));
738   isl_id_free(InputDimId);
739   unsigned OutDimNum = isl_map_dim(PartialSchedule, isl_dim_out);
740   assert(OutDimNum > 2 && "In case of the matrix multiplication the loop nest "
741                           "and, consequently, the corresponding scheduling "
742                           "functions have at least three dimensions.");
743   auto *MapI = permuteDimensions(isl_map_copy(PartialSchedule), isl_dim_out,
744                                  MMI.i, OutDimNum - 1);
745   auto *MapJ = permuteDimensions(isl_map_copy(PartialSchedule), isl_dim_out,
746                                  MMI.j, OutDimNum - 1);
747   auto *MapK = permuteDimensions(isl_map_copy(PartialSchedule), isl_dim_out,
748                                  MMI.k, OutDimNum - 1);
749   for (auto *MemA = Stmt->begin(); MemA != Stmt->end() - 1; MemA++) {
750     auto *MemAccessPtr = *MemA;
751     if (MemAccessPtr->isArrayKind() && MemAccessPtr != MMI.WriteToC &&
752         !isMatMulNonScalarReadAccess(MemAccessPtr, MMI) &&
753         !(MemAccessPtr->isStrideZero(isl_map_copy(MapI)) &&
754           MemAccessPtr->isStrideZero(isl_map_copy(MapJ)) &&
755           MemAccessPtr->isStrideZero(isl_map_copy(MapK)))) {
756       isl_map_free(MapI);
757       isl_map_free(MapJ);
758       isl_map_free(MapK);
759       return false;
760     }
761   }
762   isl_map_free(MapI);
763   isl_map_free(MapJ);
764   isl_map_free(MapK);
765   return true;
766 }
767 
768 /// Check for dependencies corresponding to the matrix multiplication.
769 ///
770 /// Check that there is only true dependence of the form
771 /// S(..., k, ...) -> S(..., k + 1, …), where S is the SCoP statement
772 /// represented by @p Schedule and k is @p Pos. Such a dependence corresponds
773 /// to the dependency produced by the matrix multiplication.
774 ///
775 /// @param  Schedule The schedule of the SCoP statement.
776 /// @param  D The SCoP dependencies.
777 /// @param  Pos The parameter to desribe an acceptable true dependence.
778 ///             In case it has a negative value, try to determine its
779 ///             acceptable value.
780 /// @return True in case dependencies correspond to the matrix multiplication
781 ///         and false, otherwise.
782 static bool containsOnlyMatMulDep(__isl_keep isl_map *Schedule,
783                                   const Dependences *D, int &Pos) {
784   auto *Dep = D->getDependences(Dependences::TYPE_RAW);
785   auto *Red = D->getDependences(Dependences::TYPE_RED);
786   if (Red)
787     Dep = isl_union_map_union(Dep, Red);
788   auto *DomainSpace = isl_space_domain(isl_map_get_space(Schedule));
789   auto *Space = isl_space_map_from_domain_and_range(isl_space_copy(DomainSpace),
790                                                     DomainSpace);
791   auto *Deltas = isl_map_deltas(isl_union_map_extract_map(Dep, Space));
792   isl_union_map_free(Dep);
793   int DeltasDimNum = isl_set_dim(Deltas, isl_dim_set);
794   for (int i = 0; i < DeltasDimNum; i++) {
795     auto *Val = isl_set_plain_get_val_if_fixed(Deltas, isl_dim_set, i);
796     Pos = Pos < 0 && isl_val_is_one(Val) ? i : Pos;
797     if (isl_val_is_nan(Val) ||
798         !(isl_val_is_zero(Val) || (i == Pos && isl_val_is_one(Val)))) {
799       isl_val_free(Val);
800       isl_set_free(Deltas);
801       return false;
802     }
803     isl_val_free(Val);
804   }
805   isl_set_free(Deltas);
806   if (DeltasDimNum == 0 || Pos < 0)
807     return false;
808   return true;
809 }
810 
811 /// Check if the SCoP statement could probably be optimized with analytical
812 /// modeling.
813 ///
814 /// containsMatrMult tries to determine whether the following conditions
815 /// are true:
816 /// 1. The last memory access modeling an array, MA1, represents writing to
817 ///    memory and has the form S(..., i1, ..., i2, ...) -> M(i1, i2) or
818 ///    S(..., i2, ..., i1, ...) -> M(i1, i2), where S is the SCoP statement
819 ///    under consideration.
820 /// 2. There is only one loop-carried true dependency, and it has the
821 ///    form S(..., i3, ...) -> S(..., i3 + 1, ...), and there are no
822 ///    loop-carried or anti dependencies.
823 /// 3. SCoP contains three access relations, MA2, MA3, and MA4 that represent
824 ///    reading from memory and have the form S(..., i3, ...) -> M(i1, i3),
825 ///    S(..., i3, ...) -> M(i3, i2), S(...) -> M(i1, i2), respectively,
826 ///    and all memory accesses of the SCoP that are different from MA1, MA2,
827 ///    MA3, and MA4 have stride 0, if the innermost loop is exchanged with any
828 ///    of loops i1, i2 and i3.
829 ///
830 /// @param PartialSchedule The PartialSchedule that contains a SCoP statement
831 ///        to check.
832 /// @D     The SCoP dependencies.
833 /// @MMI   Parameters of the matrix multiplication operands.
834 static bool containsMatrMult(__isl_keep isl_map *PartialSchedule,
835                              const Dependences *D, MatMulInfoTy &MMI) {
836   auto *InputDimsId = isl_map_get_tuple_id(PartialSchedule, isl_dim_in);
837   auto *Stmt = static_cast<ScopStmt *>(isl_id_get_user(InputDimsId));
838   isl_id_free(InputDimsId);
839   if (Stmt->size() <= 1)
840     return false;
841   for (auto *MemA = Stmt->end() - 1; MemA != Stmt->begin(); MemA--) {
842     auto *MemAccessPtr = *MemA;
843     if (!MemAccessPtr->isArrayKind())
844       continue;
845     if (!MemAccessPtr->isWrite())
846       return false;
847     auto *AccMap = MemAccessPtr->getAccessRelation();
848     if (isl_map_n_basic_map(AccMap) != 1 ||
849         !isMatMulOperandAcc(AccMap, MMI.i, MMI.j)) {
850       isl_map_free(AccMap);
851       return false;
852     }
853     isl_map_free(AccMap);
854     MMI.WriteToC = MemAccessPtr;
855     break;
856   }
857 
858   if (!containsOnlyMatMulDep(PartialSchedule, D, MMI.k))
859     return false;
860 
861   if (!MMI.WriteToC || !containsOnlyMatrMultAcc(PartialSchedule, MMI))
862     return false;
863 
864   if (!MMI.A || !MMI.B || !MMI.ReadFromC)
865     return false;
866   return true;
867 }
868 
869 /// Permute two dimensions of the band node.
870 ///
871 /// Permute FirstDim and SecondDim dimensions of the Node.
872 ///
873 /// @param Node The band node to be modified.
874 /// @param FirstDim The first dimension to be permuted.
875 /// @param SecondDim The second dimension to be permuted.
876 static __isl_give isl_schedule_node *
877 permuteBandNodeDimensions(__isl_take isl_schedule_node *Node, unsigned FirstDim,
878                           unsigned SecondDim) {
879   assert(isl_schedule_node_get_type(Node) == isl_schedule_node_band &&
880          isl_schedule_node_band_n_member(Node) > std::max(FirstDim, SecondDim));
881   auto PartialSchedule = isl_schedule_node_band_get_partial_schedule(Node);
882   auto PartialScheduleFirstDim =
883       isl_multi_union_pw_aff_get_union_pw_aff(PartialSchedule, FirstDim);
884   auto PartialScheduleSecondDim =
885       isl_multi_union_pw_aff_get_union_pw_aff(PartialSchedule, SecondDim);
886   PartialSchedule = isl_multi_union_pw_aff_set_union_pw_aff(
887       PartialSchedule, SecondDim, PartialScheduleFirstDim);
888   PartialSchedule = isl_multi_union_pw_aff_set_union_pw_aff(
889       PartialSchedule, FirstDim, PartialScheduleSecondDim);
890   Node = isl_schedule_node_delete(Node);
891   Node = isl_schedule_node_insert_partial_schedule(Node, PartialSchedule);
892   return Node;
893 }
894 
895 __isl_give isl_schedule_node *ScheduleTreeOptimizer::createMicroKernel(
896     __isl_take isl_schedule_node *Node, MicroKernelParamsTy MicroKernelParams) {
897   applyRegisterTiling(Node, {MicroKernelParams.Mr, MicroKernelParams.Nr}, 1);
898   Node = isl_schedule_node_parent(isl_schedule_node_parent(Node));
899   Node = permuteBandNodeDimensions(Node, 0, 1);
900   return isl_schedule_node_child(isl_schedule_node_child(Node, 0), 0);
901 }
902 
903 __isl_give isl_schedule_node *ScheduleTreeOptimizer::createMacroKernel(
904     __isl_take isl_schedule_node *Node, MacroKernelParamsTy MacroKernelParams) {
905   assert(isl_schedule_node_get_type(Node) == isl_schedule_node_band);
906   if (MacroKernelParams.Mc == 1 && MacroKernelParams.Nc == 1 &&
907       MacroKernelParams.Kc == 1)
908     return Node;
909   int DimOutNum = isl_schedule_node_band_n_member(Node);
910   std::vector<int> TileSizes(DimOutNum, 1);
911   TileSizes[DimOutNum - 3] = MacroKernelParams.Mc;
912   TileSizes[DimOutNum - 2] = MacroKernelParams.Nc;
913   TileSizes[DimOutNum - 1] = MacroKernelParams.Kc;
914   Node = tileNode(Node, "1st level tiling", TileSizes, 1);
915   Node = isl_schedule_node_parent(isl_schedule_node_parent(Node));
916   Node = permuteBandNodeDimensions(Node, DimOutNum - 2, DimOutNum - 1);
917   Node = permuteBandNodeDimensions(Node, DimOutNum - 3, DimOutNum - 1);
918   return isl_schedule_node_child(isl_schedule_node_child(Node, 0), 0);
919 }
920 
921 /// Get the size of the widest type of the matrix multiplication operands
922 /// in bytes, including alignment padding.
923 ///
924 /// @param MMI Parameters of the matrix multiplication operands.
925 /// @return The size of the widest type of the matrix multiplication operands
926 ///         in bytes, including alignment padding.
927 static uint64_t getMatMulAlignTypeSize(MatMulInfoTy MMI) {
928   auto *S = MMI.A->getStatement()->getParent();
929   auto &DL = S->getFunction().getParent()->getDataLayout();
930   auto ElementSizeA = DL.getTypeAllocSize(MMI.A->getElementType());
931   auto ElementSizeB = DL.getTypeAllocSize(MMI.B->getElementType());
932   auto ElementSizeC = DL.getTypeAllocSize(MMI.WriteToC->getElementType());
933   return std::max({ElementSizeA, ElementSizeB, ElementSizeC});
934 }
935 
936 /// Get the size of the widest type of the matrix multiplication operands
937 /// in bits.
938 ///
939 /// @param MMI Parameters of the matrix multiplication operands.
940 /// @return The size of the widest type of the matrix multiplication operands
941 ///         in bits.
942 static uint64_t getMatMulTypeSize(MatMulInfoTy MMI) {
943   auto *S = MMI.A->getStatement()->getParent();
944   auto &DL = S->getFunction().getParent()->getDataLayout();
945   auto ElementSizeA = DL.getTypeSizeInBits(MMI.A->getElementType());
946   auto ElementSizeB = DL.getTypeSizeInBits(MMI.B->getElementType());
947   auto ElementSizeC = DL.getTypeSizeInBits(MMI.WriteToC->getElementType());
948   return std::max({ElementSizeA, ElementSizeB, ElementSizeC});
949 }
950 
951 /// Get parameters of the BLIS micro kernel.
952 ///
953 /// We choose the Mr and Nr parameters of the micro kernel to be large enough
954 /// such that no stalls caused by the combination of latencies and dependencies
955 /// are introduced during the updates of the resulting matrix of the matrix
956 /// multiplication. However, they should also be as small as possible to
957 /// release more registers for entries of multiplied matrices.
958 ///
959 /// @param TTI Target Transform Info.
960 /// @param MMI Parameters of the matrix multiplication operands.
961 /// @return The structure of type MicroKernelParamsTy.
962 /// @see MicroKernelParamsTy
963 static struct MicroKernelParamsTy
964 getMicroKernelParams(const llvm::TargetTransformInfo *TTI, MatMulInfoTy MMI) {
965   assert(TTI && "The target transform info should be provided.");
966 
967   // Nvec - Number of double-precision floating-point numbers that can be hold
968   // by a vector register. Use 2 by default.
969   long RegisterBitwidth = VectorRegisterBitwidth;
970 
971   if (RegisterBitwidth == -1)
972     RegisterBitwidth = TTI->getRegisterBitWidth(true);
973   auto ElementSize = getMatMulTypeSize(MMI);
974   assert(ElementSize > 0 && "The element size of the matrix multiplication "
975                             "operands should be greater than zero.");
976   auto Nvec = RegisterBitwidth / ElementSize;
977   if (Nvec == 0)
978     Nvec = 2;
979   int Nr =
980       ceil(sqrt(Nvec * LatencyVectorFma * ThroughputVectorFma) / Nvec) * Nvec;
981   int Mr = ceil(Nvec * LatencyVectorFma * ThroughputVectorFma / Nr);
982   return {Mr, Nr};
983 }
984 
985 /// Get parameters of the BLIS macro kernel.
986 ///
987 /// During the computation of matrix multiplication, blocks of partitioned
988 /// matrices are mapped to different layers of the memory hierarchy.
989 /// To optimize data reuse, blocks should be ideally kept in cache between
990 /// iterations. Since parameters of the macro kernel determine sizes of these
991 /// blocks, there are upper and lower bounds on these parameters.
992 ///
993 /// @param MicroKernelParams Parameters of the micro-kernel
994 ///                          to be taken into account.
995 /// @param MMI Parameters of the matrix multiplication operands.
996 /// @return The structure of type MacroKernelParamsTy.
997 /// @see MacroKernelParamsTy
998 /// @see MicroKernelParamsTy
999 static struct MacroKernelParamsTy
1000 getMacroKernelParams(const MicroKernelParamsTy &MicroKernelParams,
1001                      MatMulInfoTy MMI) {
1002   // According to www.cs.utexas.edu/users/flame/pubs/TOMS-BLIS-Analytical.pdf,
1003   // it requires information about the first two levels of a cache to determine
1004   // all the parameters of a macro-kernel. It also checks that an associativity
1005   // degree of a cache level is greater than two. Otherwise, another algorithm
1006   // for determination of the parameters should be used.
1007   if (!(MicroKernelParams.Mr > 0 && MicroKernelParams.Nr > 0 &&
1008         FirstCacheLevelSize > 0 && SecondCacheLevelSize > 0 &&
1009         FirstCacheLevelAssociativity > 2 && SecondCacheLevelAssociativity > 2))
1010     return {1, 1, 1};
1011   // The quotient should be greater than zero.
1012   if (PollyPatternMatchingNcQuotient <= 0)
1013     return {1, 1, 1};
1014   int Car = floor(
1015       (FirstCacheLevelAssociativity - 1) /
1016       (1 + static_cast<double>(MicroKernelParams.Nr) / MicroKernelParams.Mr));
1017 
1018   // Car can be computed to be zero since it is floor to int.
1019   // On Mac OS, division by 0 does not raise a signal. This causes negative
1020   // tile sizes to be computed. Prevent division by 0 Cac by early returning
1021   // if this happens.
1022   if (Car == 0)
1023     return {1, 1, 1};
1024 
1025   auto ElementSize = getMatMulAlignTypeSize(MMI);
1026   assert(ElementSize > 0 && "The element size of the matrix multiplication "
1027                             "operands should be greater than zero.");
1028   int Kc = (Car * FirstCacheLevelSize) /
1029            (MicroKernelParams.Mr * FirstCacheLevelAssociativity * ElementSize);
1030   double Cac =
1031       static_cast<double>(Kc * ElementSize * SecondCacheLevelAssociativity) /
1032       SecondCacheLevelSize;
1033   int Mc = floor((SecondCacheLevelAssociativity - 2) / Cac);
1034   int Nc = PollyPatternMatchingNcQuotient * MicroKernelParams.Nr;
1035 
1036   assert(Mc > 0 && Nc > 0 && Kc > 0 &&
1037          "Matrix block sizes should be  greater than zero");
1038   return {Mc, Nc, Kc};
1039 }
1040 
1041 /// Create an access relation that is specific to
1042 ///        the matrix multiplication pattern.
1043 ///
1044 /// Create an access relation of the following form:
1045 /// [O0, O1, O2, O3, O4, O5, O6, O7, O8] -> [OI, O5, OJ]
1046 /// where I is @p FirstDim, J is @p SecondDim.
1047 ///
1048 /// It can be used, for example, to create relations that helps to consequently
1049 /// access elements of operands of a matrix multiplication after creation of
1050 /// the BLIS micro and macro kernels.
1051 ///
1052 /// @see ScheduleTreeOptimizer::createMicroKernel
1053 /// @see ScheduleTreeOptimizer::createMacroKernel
1054 ///
1055 /// Subsequently, the described access relation is applied to the range of
1056 /// @p MapOldIndVar, that is used to map original induction variables to
1057 /// the ones, which are produced by schedule transformations. It helps to
1058 /// define relations using a new space and, at the same time, keep them
1059 /// in the original one.
1060 ///
1061 /// @param MapOldIndVar The relation, which maps original induction variables
1062 ///                     to the ones, which are produced by schedule
1063 ///                     transformations.
1064 /// @param FirstDim, SecondDim The input dimensions that are used to define
1065 ///        the specified access relation.
1066 /// @return The specified access relation.
1067 __isl_give isl_map *getMatMulAccRel(__isl_take isl_map *MapOldIndVar,
1068                                     unsigned FirstDim, unsigned SecondDim) {
1069   auto *Ctx = isl_map_get_ctx(MapOldIndVar);
1070   auto *AccessRelSpace = isl_space_alloc(Ctx, 0, 9, 3);
1071   auto *AccessRel = isl_map_universe(AccessRelSpace);
1072   AccessRel = isl_map_equate(AccessRel, isl_dim_in, FirstDim, isl_dim_out, 0);
1073   AccessRel = isl_map_equate(AccessRel, isl_dim_in, 5, isl_dim_out, 1);
1074   AccessRel = isl_map_equate(AccessRel, isl_dim_in, SecondDim, isl_dim_out, 2);
1075   return isl_map_apply_range(MapOldIndVar, AccessRel);
1076 }
1077 
1078 __isl_give isl_schedule_node *
1079 createExtensionNode(__isl_take isl_schedule_node *Node,
1080                     __isl_take isl_map *ExtensionMap) {
1081   auto *Extension = isl_union_map_from_map(ExtensionMap);
1082   auto *NewNode = isl_schedule_node_from_extension(Extension);
1083   return isl_schedule_node_graft_before(Node, NewNode);
1084 }
1085 
1086 /// Apply the packing transformation.
1087 ///
1088 /// The packing transformation can be described as a data-layout
1089 /// transformation that requires to introduce a new array, copy data
1090 /// to the array, and change memory access locations to reference the array.
1091 /// It can be used to ensure that elements of the new array are read in-stride
1092 /// access, aligned to cache lines boundaries, and preloaded into certain cache
1093 /// levels.
1094 ///
1095 /// As an example let us consider the packing of the array A that would help
1096 /// to read its elements with in-stride access. An access to the array A
1097 /// is represented by an access relation that has the form
1098 /// S[i, j, k] -> A[i, k]. The scheduling function of the SCoP statement S has
1099 /// the form S[i,j, k] -> [floor((j mod Nc) / Nr), floor((i mod Mc) / Mr),
1100 /// k mod Kc, j mod Nr, i mod Mr].
1101 ///
1102 /// To ensure that elements of the array A are read in-stride access, we add
1103 /// a new array Packed_A[Mc/Mr][Kc][Mr] to the SCoP, using
1104 /// Scop::createScopArrayInfo, change the access relation
1105 /// S[i, j, k] -> A[i, k] to
1106 /// S[i, j, k] -> Packed_A[floor((i mod Mc) / Mr), k mod Kc, i mod Mr], using
1107 /// MemoryAccess::setNewAccessRelation, and copy the data to the array, using
1108 /// the copy statement created by Scop::addScopStmt.
1109 ///
1110 /// @param Node The schedule node to be optimized.
1111 /// @param MapOldIndVar The relation, which maps original induction variables
1112 ///                     to the ones, which are produced by schedule
1113 ///                     transformations.
1114 /// @param MicroParams, MacroParams Parameters of the BLIS kernel
1115 ///                                 to be taken into account.
1116 /// @param MMI Parameters of the matrix multiplication operands.
1117 /// @return The optimized schedule node.
1118 static __isl_give isl_schedule_node *optimizeDataLayoutMatrMulPattern(
1119     __isl_take isl_schedule_node *Node, __isl_take isl_map *MapOldIndVar,
1120     MicroKernelParamsTy MicroParams, MacroKernelParamsTy MacroParams,
1121     MatMulInfoTy &MMI) {
1122   auto InputDimsId = isl_map_get_tuple_id(MapOldIndVar, isl_dim_in);
1123   auto *Stmt = static_cast<ScopStmt *>(isl_id_get_user(InputDimsId));
1124   isl_id_free(InputDimsId);
1125 
1126   // Create a copy statement that corresponds to the memory access to the
1127   // matrix B, the second operand of the matrix multiplication.
1128   Node = isl_schedule_node_parent(isl_schedule_node_parent(Node));
1129   Node = isl_schedule_node_parent(isl_schedule_node_parent(Node));
1130   Node = isl_schedule_node_parent(Node);
1131   Node = isl_schedule_node_child(isl_schedule_node_band_split(Node, 2), 0);
1132   auto *AccRel = getMatMulAccRel(isl_map_copy(MapOldIndVar), 3, 7);
1133   unsigned FirstDimSize = MacroParams.Nc / MicroParams.Nr;
1134   unsigned SecondDimSize = MacroParams.Kc;
1135   unsigned ThirdDimSize = MicroParams.Nr;
1136   auto *SAI = Stmt->getParent()->createScopArrayInfo(
1137       MMI.B->getElementType(), "Packed_B",
1138       {FirstDimSize, SecondDimSize, ThirdDimSize});
1139   AccRel = isl_map_set_tuple_id(AccRel, isl_dim_out, SAI->getBasePtrId());
1140   auto *OldAcc = MMI.B->getAccessRelation();
1141   MMI.B->setNewAccessRelation(AccRel);
1142   auto *ExtMap =
1143       isl_map_project_out(isl_map_copy(MapOldIndVar), isl_dim_out, 2,
1144                           isl_map_dim(MapOldIndVar, isl_dim_out) - 2);
1145   ExtMap = isl_map_reverse(ExtMap);
1146   ExtMap = isl_map_fix_si(ExtMap, isl_dim_out, MMI.i, 0);
1147   auto *Domain = Stmt->getDomain();
1148 
1149   // Restrict the domains of the copy statements to only execute when also its
1150   // originating statement is executed.
1151   auto *DomainId = isl_set_get_tuple_id(Domain);
1152   auto *NewStmt = Stmt->getParent()->addScopStmt(
1153       OldAcc, MMI.B->getAccessRelation(), isl_set_copy(Domain));
1154   ExtMap = isl_map_set_tuple_id(ExtMap, isl_dim_out, isl_id_copy(DomainId));
1155   ExtMap = isl_map_intersect_range(ExtMap, isl_set_copy(Domain));
1156   ExtMap = isl_map_set_tuple_id(ExtMap, isl_dim_out, NewStmt->getDomainId());
1157   Node = createExtensionNode(Node, ExtMap);
1158 
1159   // Create a copy statement that corresponds to the memory access
1160   // to the matrix A, the first operand of the matrix multiplication.
1161   Node = isl_schedule_node_child(Node, 0);
1162   AccRel = getMatMulAccRel(isl_map_copy(MapOldIndVar), 4, 6);
1163   FirstDimSize = MacroParams.Mc / MicroParams.Mr;
1164   ThirdDimSize = MicroParams.Mr;
1165   SAI = Stmt->getParent()->createScopArrayInfo(
1166       MMI.A->getElementType(), "Packed_A",
1167       {FirstDimSize, SecondDimSize, ThirdDimSize});
1168   AccRel = isl_map_set_tuple_id(AccRel, isl_dim_out, SAI->getBasePtrId());
1169   OldAcc = MMI.A->getAccessRelation();
1170   MMI.A->setNewAccessRelation(AccRel);
1171   ExtMap = isl_map_project_out(MapOldIndVar, isl_dim_out, 3,
1172                                isl_map_dim(MapOldIndVar, isl_dim_out) - 3);
1173   ExtMap = isl_map_reverse(ExtMap);
1174   ExtMap = isl_map_fix_si(ExtMap, isl_dim_out, MMI.j, 0);
1175   NewStmt = Stmt->getParent()->addScopStmt(OldAcc, MMI.A->getAccessRelation(),
1176                                            isl_set_copy(Domain));
1177 
1178   // Restrict the domains of the copy statements to only execute when also its
1179   // originating statement is executed.
1180   ExtMap = isl_map_set_tuple_id(ExtMap, isl_dim_out, DomainId);
1181   ExtMap = isl_map_intersect_range(ExtMap, Domain);
1182   ExtMap = isl_map_set_tuple_id(ExtMap, isl_dim_out, NewStmt->getDomainId());
1183   Node = createExtensionNode(Node, ExtMap);
1184   Node = isl_schedule_node_child(isl_schedule_node_child(Node, 0), 0);
1185   return isl_schedule_node_child(isl_schedule_node_child(Node, 0), 0);
1186 }
1187 
1188 /// Get a relation mapping induction variables produced by schedule
1189 /// transformations to the original ones.
1190 ///
1191 /// @param Node The schedule node produced as the result of creation
1192 ///        of the BLIS kernels.
1193 /// @param MicroKernelParams, MacroKernelParams Parameters of the BLIS kernel
1194 ///                                             to be taken into account.
1195 /// @return  The relation mapping original induction variables to the ones
1196 ///          produced by schedule transformation.
1197 /// @see ScheduleTreeOptimizer::createMicroKernel
1198 /// @see ScheduleTreeOptimizer::createMacroKernel
1199 /// @see getMacroKernelParams
1200 __isl_give isl_map *
1201 getInductionVariablesSubstitution(__isl_take isl_schedule_node *Node,
1202                                   MicroKernelParamsTy MicroKernelParams,
1203                                   MacroKernelParamsTy MacroKernelParams) {
1204   auto *Child = isl_schedule_node_get_child(Node, 0);
1205   auto *UnMapOldIndVar = isl_schedule_node_get_prefix_schedule_union_map(Child);
1206   isl_schedule_node_free(Child);
1207   auto *MapOldIndVar = isl_map_from_union_map(UnMapOldIndVar);
1208   if (isl_map_dim(MapOldIndVar, isl_dim_out) > 9)
1209     MapOldIndVar =
1210         isl_map_project_out(MapOldIndVar, isl_dim_out, 0,
1211                             isl_map_dim(MapOldIndVar, isl_dim_out) - 9);
1212   return MapOldIndVar;
1213 }
1214 
1215 /// Isolate a set of partial tile prefixes and unroll the isolated part.
1216 ///
1217 /// The set should ensure that it contains only partial tile prefixes that have
1218 /// exactly Mr x Nr iterations of the two innermost loops produced by
1219 /// the optimization of the matrix multiplication. Mr and Nr are parameters of
1220 /// the micro-kernel.
1221 ///
1222 /// In case of parametric bounds, this helps to auto-vectorize the unrolled
1223 /// innermost loops, using the SLP vectorizer.
1224 ///
1225 /// @param Node              The schedule node to be modified.
1226 /// @param MicroKernelParams Parameters of the micro-kernel
1227 ///                          to be taken into account.
1228 /// @return The modified isl_schedule_node.
1229 static __isl_give isl_schedule_node *
1230 isolateAndUnrollMatMulInnerLoops(__isl_take isl_schedule_node *Node,
1231                                  struct MicroKernelParamsTy MicroKernelParams) {
1232   auto *Child = isl_schedule_node_get_child(Node, 0);
1233   auto *UnMapOldIndVar = isl_schedule_node_get_prefix_schedule_relation(Child);
1234   isl_schedule_node_free(Child);
1235   auto *Prefix = isl_map_range(isl_map_from_union_map(UnMapOldIndVar));
1236   auto Dims = isl_set_dim(Prefix, isl_dim_set);
1237   Prefix = isl_set_project_out(Prefix, isl_dim_set, Dims - 1, 1);
1238   Prefix = getPartialTilePrefixes(Prefix, MicroKernelParams.Nr);
1239   Prefix = getPartialTilePrefixes(Prefix, MicroKernelParams.Mr);
1240   auto *IsolateOption = getIsolateOptions(
1241       isl_set_add_dims(isl_set_copy(Prefix), isl_dim_set, 3), 3);
1242   auto *Ctx = isl_schedule_node_get_ctx(Node);
1243   auto *AtomicOption = getAtomicOptions(Ctx);
1244   auto *Options =
1245       isl_union_set_union(IsolateOption, isl_union_set_copy(AtomicOption));
1246   Options = isl_union_set_union(Options, getUnrollIsolatedSetOptions(Ctx));
1247   Node = isl_schedule_node_band_set_ast_build_options(Node, Options);
1248   Node = isl_schedule_node_parent(isl_schedule_node_parent(Node));
1249   IsolateOption = getIsolateOptions(Prefix, 3);
1250   Options = isl_union_set_union(IsolateOption, AtomicOption);
1251   Node = isl_schedule_node_band_set_ast_build_options(Node, Options);
1252   Node = isl_schedule_node_child(isl_schedule_node_child(Node, 0), 0);
1253   return Node;
1254 }
1255 
1256 /// Mark @p BasePtr with "Inter iteration alias-free" mark node.
1257 ///
1258 /// @param Node The child of the mark node to be inserted.
1259 /// @param BasePtr The pointer to be marked.
1260 /// @return The modified isl_schedule_node.
1261 static isl_schedule_node *markInterIterationAliasFree(isl_schedule_node *Node,
1262                                                       llvm::Value *BasePtr) {
1263   if (!BasePtr)
1264     return Node;
1265 
1266   auto *Ctx = isl_schedule_node_get_ctx(Node);
1267   auto *Id = isl_id_alloc(Ctx, "Inter iteration alias-free", BasePtr);
1268   return isl_schedule_node_child(isl_schedule_node_insert_mark(Node, Id), 0);
1269 }
1270 
1271 /// Restore the initial ordering of dimensions of the band node
1272 ///
1273 /// In case the band node represents all the dimensions of the iteration
1274 /// domain, recreate the band node to restore the initial ordering of the
1275 /// dimensions.
1276 ///
1277 /// @param Node The band node to be modified.
1278 /// @return The modified schedule node.
1279 namespace {
1280 isl::schedule_node getBandNodeWithOriginDimOrder(isl::schedule_node Node) {
1281   assert(isl_schedule_node_get_type(Node.keep()) == isl_schedule_node_band);
1282   if (isl_schedule_node_get_type(Node.child(0).keep()) !=
1283       isl_schedule_node_leaf)
1284     return Node;
1285   auto Domain = isl::manage(isl_schedule_node_get_universe_domain(Node.keep()));
1286   assert(isl_union_set_n_set(Domain.keep()) == 1);
1287   if (isl_schedule_node_get_schedule_depth(Node.keep()) != 0 ||
1288       (isl::set(isl::manage(Domain.copy())).dim(isl::dim::set) !=
1289        isl_schedule_node_band_n_member(Node.keep())))
1290     return Node;
1291   Node = isl::manage(isl_schedule_node_delete(Node.take()));
1292   auto PartialSchedulePwAff =
1293       isl::manage(isl_union_set_identity_union_pw_multi_aff(Domain.take()));
1294   auto PartialScheduleMultiPwAff =
1295       isl::multi_union_pw_aff(PartialSchedulePwAff);
1296   PartialScheduleMultiPwAff = isl::manage(isl_multi_union_pw_aff_reset_tuple_id(
1297       PartialScheduleMultiPwAff.take(), isl_dim_set));
1298   return isl::manage(isl_schedule_node_insert_partial_schedule(
1299       Node.take(), PartialScheduleMultiPwAff.take()));
1300 }
1301 } // namespace
1302 
1303 __isl_give isl_schedule_node *ScheduleTreeOptimizer::optimizeMatMulPattern(
1304     __isl_take isl_schedule_node *Node, const llvm::TargetTransformInfo *TTI,
1305     MatMulInfoTy &MMI) {
1306   assert(TTI && "The target transform info should be provided.");
1307   Node = markInterIterationAliasFree(Node, MMI.WriteToC->getLatestBaseAddr());
1308   int DimOutNum = isl_schedule_node_band_n_member(Node);
1309   assert(DimOutNum > 2 && "In case of the matrix multiplication the loop nest "
1310                           "and, consequently, the corresponding scheduling "
1311                           "functions have at least three dimensions.");
1312   Node = getBandNodeWithOriginDimOrder(isl::manage(Node)).take();
1313   Node = permuteBandNodeDimensions(Node, MMI.i, DimOutNum - 3);
1314   int NewJ = MMI.j == DimOutNum - 3 ? MMI.i : MMI.j;
1315   int NewK = MMI.k == DimOutNum - 3 ? MMI.i : MMI.k;
1316   Node = permuteBandNodeDimensions(Node, NewJ, DimOutNum - 2);
1317   NewK = NewK == DimOutNum - 2 ? NewJ : NewK;
1318   Node = permuteBandNodeDimensions(Node, NewK, DimOutNum - 1);
1319   auto MicroKernelParams = getMicroKernelParams(TTI, MMI);
1320   auto MacroKernelParams = getMacroKernelParams(MicroKernelParams, MMI);
1321   Node = createMacroKernel(Node, MacroKernelParams);
1322   Node = createMicroKernel(Node, MicroKernelParams);
1323   if (MacroKernelParams.Mc == 1 || MacroKernelParams.Nc == 1 ||
1324       MacroKernelParams.Kc == 1)
1325     return Node;
1326   auto *MapOldIndVar = getInductionVariablesSubstitution(
1327       Node, MicroKernelParams, MacroKernelParams);
1328   if (!MapOldIndVar)
1329     return Node;
1330   Node = isolateAndUnrollMatMulInnerLoops(Node, MicroKernelParams);
1331   return optimizeDataLayoutMatrMulPattern(Node, MapOldIndVar, MicroKernelParams,
1332                                           MacroKernelParams, MMI);
1333 }
1334 
1335 bool ScheduleTreeOptimizer::isMatrMultPattern(
1336     __isl_keep isl_schedule_node *Node, const Dependences *D,
1337     MatMulInfoTy &MMI) {
1338   auto *PartialSchedule =
1339       isl_schedule_node_band_get_partial_schedule_union_map(Node);
1340   Node = isl_schedule_node_child(Node, 0);
1341   auto LeafType = isl_schedule_node_get_type(Node);
1342   Node = isl_schedule_node_parent(Node);
1343   if (LeafType != isl_schedule_node_leaf ||
1344       isl_schedule_node_band_n_member(Node) < 3 ||
1345       isl_schedule_node_get_schedule_depth(Node) != 0 ||
1346       isl_union_map_n_map(PartialSchedule) != 1) {
1347     isl_union_map_free(PartialSchedule);
1348     return false;
1349   }
1350   auto *NewPartialSchedule = isl_map_from_union_map(PartialSchedule);
1351   if (containsMatrMult(NewPartialSchedule, D, MMI)) {
1352     isl_map_free(NewPartialSchedule);
1353     return true;
1354   }
1355   isl_map_free(NewPartialSchedule);
1356   return false;
1357 }
1358 
1359 __isl_give isl_schedule_node *
1360 ScheduleTreeOptimizer::optimizeBand(__isl_take isl_schedule_node *Node,
1361                                     void *User) {
1362   if (!isTileableBandNode(Node))
1363     return Node;
1364 
1365   const OptimizerAdditionalInfoTy *OAI =
1366       static_cast<const OptimizerAdditionalInfoTy *>(User);
1367 
1368   MatMulInfoTy MMI;
1369   if (PMBasedOpts && User && isMatrMultPattern(Node, OAI->D, MMI)) {
1370     DEBUG(dbgs() << "The matrix multiplication pattern was detected\n");
1371     return optimizeMatMulPattern(Node, OAI->TTI, MMI);
1372   }
1373 
1374   return standardBandOpts(Node, User);
1375 }
1376 
1377 __isl_give isl_schedule *
1378 ScheduleTreeOptimizer::optimizeSchedule(__isl_take isl_schedule *Schedule,
1379                                         const OptimizerAdditionalInfoTy *OAI) {
1380   isl_schedule_node *Root = isl_schedule_get_root(Schedule);
1381   Root = optimizeScheduleNode(Root, OAI);
1382   isl_schedule_free(Schedule);
1383   auto S = isl_schedule_node_get_schedule(Root);
1384   isl_schedule_node_free(Root);
1385   return S;
1386 }
1387 
1388 __isl_give isl_schedule_node *ScheduleTreeOptimizer::optimizeScheduleNode(
1389     __isl_take isl_schedule_node *Node, const OptimizerAdditionalInfoTy *OAI) {
1390   Node = isl_schedule_node_map_descendant_bottom_up(
1391       Node, optimizeBand, const_cast<void *>(static_cast<const void *>(OAI)));
1392   return Node;
1393 }
1394 
1395 bool ScheduleTreeOptimizer::isProfitableSchedule(
1396     Scop &S, __isl_keep isl_schedule *NewSchedule) {
1397   // To understand if the schedule has been optimized we check if the schedule
1398   // has changed at all.
1399   // TODO: We can improve this by tracking if any necessarily beneficial
1400   // transformations have been performed. This can e.g. be tiling, loop
1401   // interchange, or ...) We can track this either at the place where the
1402   // transformation has been performed or, in case of automatic ILP based
1403   // optimizations, by comparing (yet to be defined) performance metrics
1404   // before/after the scheduling optimizer
1405   // (e.g., #stride-one accesses)
1406   if (S.containsExtensionNode(NewSchedule))
1407     return true;
1408   auto *NewScheduleMap = isl_schedule_get_map(NewSchedule);
1409   isl_union_map *OldSchedule = S.getSchedule();
1410   assert(OldSchedule && "Only IslScheduleOptimizer can insert extension nodes "
1411                         "that make Scop::getSchedule() return nullptr.");
1412   bool changed = !isl_union_map_is_equal(OldSchedule, NewScheduleMap);
1413   isl_union_map_free(OldSchedule);
1414   isl_union_map_free(NewScheduleMap);
1415   return changed;
1416 }
1417 
1418 namespace {
1419 class IslScheduleOptimizer : public ScopPass {
1420 public:
1421   static char ID;
1422   explicit IslScheduleOptimizer() : ScopPass(ID) { LastSchedule = nullptr; }
1423 
1424   ~IslScheduleOptimizer() { isl_schedule_free(LastSchedule); }
1425 
1426   /// Optimize the schedule of the SCoP @p S.
1427   bool runOnScop(Scop &S) override;
1428 
1429   /// Print the new schedule for the SCoP @p S.
1430   void printScop(raw_ostream &OS, Scop &S) const override;
1431 
1432   /// Register all analyses and transformation required.
1433   void getAnalysisUsage(AnalysisUsage &AU) const override;
1434 
1435   /// Release the internal memory.
1436   void releaseMemory() override {
1437     isl_schedule_free(LastSchedule);
1438     LastSchedule = nullptr;
1439   }
1440 
1441 private:
1442   isl_schedule *LastSchedule;
1443 };
1444 } // namespace
1445 
1446 char IslScheduleOptimizer::ID = 0;
1447 
1448 bool IslScheduleOptimizer::runOnScop(Scop &S) {
1449 
1450   // Skip empty SCoPs but still allow code generation as it will delete the
1451   // loops present but not needed.
1452   if (S.getSize() == 0) {
1453     S.markAsOptimized();
1454     return false;
1455   }
1456 
1457   const Dependences &D =
1458       getAnalysis<DependenceInfo>().getDependences(Dependences::AL_Statement);
1459 
1460   if (!D.hasValidDependences())
1461     return false;
1462 
1463   isl_schedule_free(LastSchedule);
1464   LastSchedule = nullptr;
1465 
1466   // Build input data.
1467   int ValidityKinds =
1468       Dependences::TYPE_RAW | Dependences::TYPE_WAR | Dependences::TYPE_WAW;
1469   int ProximityKinds;
1470 
1471   if (OptimizeDeps == "all")
1472     ProximityKinds =
1473         Dependences::TYPE_RAW | Dependences::TYPE_WAR | Dependences::TYPE_WAW;
1474   else if (OptimizeDeps == "raw")
1475     ProximityKinds = Dependences::TYPE_RAW;
1476   else {
1477     errs() << "Do not know how to optimize for '" << OptimizeDeps << "'"
1478            << " Falling back to optimizing all dependences.\n";
1479     ProximityKinds =
1480         Dependences::TYPE_RAW | Dependences::TYPE_WAR | Dependences::TYPE_WAW;
1481   }
1482 
1483   isl_union_set *Domain = S.getDomains();
1484 
1485   if (!Domain)
1486     return false;
1487 
1488   isl_union_map *Validity = D.getDependences(ValidityKinds);
1489   isl_union_map *Proximity = D.getDependences(ProximityKinds);
1490 
1491   // Simplify the dependences by removing the constraints introduced by the
1492   // domains. This can speed up the scheduling time significantly, as large
1493   // constant coefficients will be removed from the dependences. The
1494   // introduction of some additional dependences reduces the possible
1495   // transformations, but in most cases, such transformation do not seem to be
1496   // interesting anyway. In some cases this option may stop the scheduler to
1497   // find any schedule.
1498   if (SimplifyDeps == "yes") {
1499     Validity = isl_union_map_gist_domain(Validity, isl_union_set_copy(Domain));
1500     Validity = isl_union_map_gist_range(Validity, isl_union_set_copy(Domain));
1501     Proximity =
1502         isl_union_map_gist_domain(Proximity, isl_union_set_copy(Domain));
1503     Proximity = isl_union_map_gist_range(Proximity, isl_union_set_copy(Domain));
1504   } else if (SimplifyDeps != "no") {
1505     errs() << "warning: Option -polly-opt-simplify-deps should either be 'yes' "
1506               "or 'no'. Falling back to default: 'yes'\n";
1507   }
1508 
1509   DEBUG(dbgs() << "\n\nCompute schedule from: ");
1510   DEBUG(dbgs() << "Domain := " << stringFromIslObj(Domain) << ";\n");
1511   DEBUG(dbgs() << "Proximity := " << stringFromIslObj(Proximity) << ";\n");
1512   DEBUG(dbgs() << "Validity := " << stringFromIslObj(Validity) << ";\n");
1513 
1514   unsigned IslSerializeSCCs;
1515 
1516   if (FusionStrategy == "max") {
1517     IslSerializeSCCs = 0;
1518   } else if (FusionStrategy == "min") {
1519     IslSerializeSCCs = 1;
1520   } else {
1521     errs() << "warning: Unknown fusion strategy. Falling back to maximal "
1522               "fusion.\n";
1523     IslSerializeSCCs = 0;
1524   }
1525 
1526   int IslMaximizeBands;
1527 
1528   if (MaximizeBandDepth == "yes") {
1529     IslMaximizeBands = 1;
1530   } else if (MaximizeBandDepth == "no") {
1531     IslMaximizeBands = 0;
1532   } else {
1533     errs() << "warning: Option -polly-opt-maximize-bands should either be 'yes'"
1534               " or 'no'. Falling back to default: 'yes'\n";
1535     IslMaximizeBands = 1;
1536   }
1537 
1538   int IslOuterCoincidence;
1539 
1540   if (OuterCoincidence == "yes") {
1541     IslOuterCoincidence = 1;
1542   } else if (OuterCoincidence == "no") {
1543     IslOuterCoincidence = 0;
1544   } else {
1545     errs() << "warning: Option -polly-opt-outer-coincidence should either be "
1546               "'yes' or 'no'. Falling back to default: 'no'\n";
1547     IslOuterCoincidence = 0;
1548   }
1549 
1550   isl_ctx *Ctx = S.getIslCtx();
1551 
1552   isl_options_set_schedule_outer_coincidence(Ctx, IslOuterCoincidence);
1553   isl_options_set_schedule_serialize_sccs(Ctx, IslSerializeSCCs);
1554   isl_options_set_schedule_maximize_band_depth(Ctx, IslMaximizeBands);
1555   isl_options_set_schedule_max_constant_term(Ctx, MaxConstantTerm);
1556   isl_options_set_schedule_max_coefficient(Ctx, MaxCoefficient);
1557   isl_options_set_tile_scale_tile_loops(Ctx, 0);
1558 
1559   auto OnErrorStatus = isl_options_get_on_error(Ctx);
1560   isl_options_set_on_error(Ctx, ISL_ON_ERROR_CONTINUE);
1561 
1562   isl_schedule_constraints *ScheduleConstraints;
1563   ScheduleConstraints = isl_schedule_constraints_on_domain(Domain);
1564   ScheduleConstraints =
1565       isl_schedule_constraints_set_proximity(ScheduleConstraints, Proximity);
1566   ScheduleConstraints = isl_schedule_constraints_set_validity(
1567       ScheduleConstraints, isl_union_map_copy(Validity));
1568   ScheduleConstraints =
1569       isl_schedule_constraints_set_coincidence(ScheduleConstraints, Validity);
1570   isl_schedule *Schedule;
1571   Schedule = isl_schedule_constraints_compute_schedule(ScheduleConstraints);
1572   isl_options_set_on_error(Ctx, OnErrorStatus);
1573 
1574   // In cases the scheduler is not able to optimize the code, we just do not
1575   // touch the schedule.
1576   if (!Schedule)
1577     return false;
1578 
1579   DEBUG({
1580     auto *P = isl_printer_to_str(Ctx);
1581     P = isl_printer_set_yaml_style(P, ISL_YAML_STYLE_BLOCK);
1582     P = isl_printer_print_schedule(P, Schedule);
1583     auto *str = isl_printer_get_str(P);
1584     dbgs() << "NewScheduleTree: \n" << str << "\n";
1585     free(str);
1586     isl_printer_free(P);
1587   });
1588 
1589   Function &F = S.getFunction();
1590   auto *TTI = &getAnalysis<TargetTransformInfoWrapperPass>().getTTI(F);
1591   const OptimizerAdditionalInfoTy OAI = {TTI, const_cast<Dependences *>(&D)};
1592   isl_schedule *NewSchedule =
1593       ScheduleTreeOptimizer::optimizeSchedule(Schedule, &OAI);
1594 
1595   if (!ScheduleTreeOptimizer::isProfitableSchedule(S, NewSchedule)) {
1596     isl_schedule_free(NewSchedule);
1597     return false;
1598   }
1599 
1600   S.setScheduleTree(NewSchedule);
1601   S.markAsOptimized();
1602 
1603   if (OptimizedScops)
1604     S.dump();
1605 
1606   return false;
1607 }
1608 
1609 void IslScheduleOptimizer::printScop(raw_ostream &OS, Scop &) const {
1610   isl_printer *p;
1611   char *ScheduleStr;
1612 
1613   OS << "Calculated schedule:\n";
1614 
1615   if (!LastSchedule) {
1616     OS << "n/a\n";
1617     return;
1618   }
1619 
1620   p = isl_printer_to_str(isl_schedule_get_ctx(LastSchedule));
1621   p = isl_printer_print_schedule(p, LastSchedule);
1622   ScheduleStr = isl_printer_get_str(p);
1623   isl_printer_free(p);
1624 
1625   OS << ScheduleStr << "\n";
1626 }
1627 
1628 void IslScheduleOptimizer::getAnalysisUsage(AnalysisUsage &AU) const {
1629   ScopPass::getAnalysisUsage(AU);
1630   AU.addRequired<DependenceInfo>();
1631   AU.addRequired<TargetTransformInfoWrapperPass>();
1632 }
1633 
1634 Pass *polly::createIslScheduleOptimizerPass() {
1635   return new IslScheduleOptimizer();
1636 }
1637 
1638 INITIALIZE_PASS_BEGIN(IslScheduleOptimizer, "polly-opt-isl",
1639                       "Polly - Optimize schedule of SCoP", false, false);
1640 INITIALIZE_PASS_DEPENDENCY(DependenceInfo);
1641 INITIALIZE_PASS_DEPENDENCY(ScopInfoRegionPass);
1642 INITIALIZE_PASS_DEPENDENCY(TargetTransformInfoWrapperPass);
1643 INITIALIZE_PASS_END(IslScheduleOptimizer, "polly-opt-isl",
1644                     "Polly - Optimize schedule of SCoP", false, false)
1645