Commit Graph

170 Commits

Author SHA1 Message Date
Uday Bondhugula
715137d0c8 [MLIR] Fix memref get constant bound size and shape method
Fix FlatAffineConstraints::getConstantBoundOnDimSize to ensure that
returned bounds on dim size are always non-negative regardless of the
constraints on that dimension. Add an assertion at the user.

Differential Revision: https://reviews.llvm.org/D105171
2021-07-05 23:00:41 +05:30
Arjun P
c605dfcfc0 [MLIR] FlatAffineConstraints: Use Matrix objects to store the constraints
This results in significant deduplication of code. This patch is not expected to change any functionality, it's just some simplification in preparation for future work. Also slightly simplified some code that was being touched anyway and added some unit tests for some functions that were touched.

Reviewed By: bondhugula

Differential Revision: https://reviews.llvm.org/D105152
2021-07-01 22:05:31 +05:30
Vinayaka Bandishti
a873b6d466 [MLIR] Generalize detecting mods during slice computing
During slice computation of affine loop fusion, detect one id as the mod
of another id w.r.t a constant in a more generic way. Restrictions on
co-efficients of the ids is removed. Also, information from the
previously calculated ids is used for simplification of affine
expressions, e.g.,

If `id1` = `id2`,
  `id_n - divisor * id_q - id_r + id1 - id2 = 0`, is simplified to:
  `id_n - divisor * id_q - id_r = 0`.

If `c` is a non-zero integer,
  `c*id_n - c*divisor * id_q - c*id_r = 0`, is simplified to:
  `id_n - divisor * id_q - id_r = 0`.

Reviewed By: bondhugula, ayzhuang

Differential Revision: https://reviews.llvm.org/D104614
2021-06-23 12:29:34 +05:30
Arjun P
2690d4d45a [MLIR] Support symbols in emptiness checks for FlatAffineConstraints
Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D100114
2021-04-08 21:38:47 +05:30
Vinayaka Bandishti
dc537158d5 [MLIR][Affine] Add utility to check if the slice is valid
Fixes a bug in affine fusion pipeline where an incorrect slice is computed.
After the slice computation is done, original domain of the the source is
compared with the new domain that will result if the fusion succeeds. If the
new domain must be a subset of the original domain for the slice to be
valid. If the slice computed is incorrect, fusion based on such a slice is
avoided.

Relevant test cases are added/edited.

Fixes https://bugs.llvm.org/show_bug.cgi?id=49203

Differential Revision: https://reviews.llvm.org/D98239
2021-04-01 14:52:22 +05:30
Diego Caballero
c8fc5c0385 [mlir][Affine] Add support for multi-store producer fusion
This patch adds support for producer-consumer fusion scenarios with
multiple producer stores to the AffineLoopFusion pass. The patch
introduces some changes to the producer-consumer algorithm, including:

* For a given consumer loop, producer-consumer fusion iterates over its
producer candidates until a fixed point is reached.

* Producer candidates are gathered beforehand for each iteration of the
consumer loop and visited in reverse program order (not strictly guaranteed)
to maximize the number of loops fused per iteration.

In general, these changes were needed to simplify the multi-store producer
support and remove some of the workarounds that were introduced in the past
to support more fusion cases under the single-store producer limitation.

This patch also preserves the existing functionality of AffineLoopFusion with
one minor change in behavior. Producer-consumer fusion didn't fuse scenarios
with escaping memrefs and multiple outgoing edges (from a single store).
Multi-store producer scenarios will usually (always?) have multiple outgoing
edges so we couldn't fuse any with escaping memrefs, which would greatly limit
the applicability of this new feature. Therefore, the patch enables fusion for
these scenarios. Please, see modified tests for specific details.

Reviewed By: andydavis1, bondhugula

Differential Revision: https://reviews.llvm.org/D92876
2021-01-25 20:31:17 +02:00
Arjun P
14056dfb4d [MLIR] Add support for extracting an integer sample point (if one exists) from an unbounded FlatAffineConstraints.
With this, we have complete support for finding integer sample points in FlatAffineConstraints.

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D95047
2021-01-22 22:28:38 +05:30
Diego Caballero
735a07f047 Revert "[mlir][Affine] Add support for multi-store producer fusion"
This reverts commit 7dd198852b.

ASAN issue.
2021-01-21 00:37:23 +02:00
Diego Caballero
7dd198852b [mlir][Affine] Add support for multi-store producer fusion
This patch adds support for producer-consumer fusion scenarios with
multiple producer stores to the AffineLoopFusion pass. The patch
introduces some changes to the producer-consumer algorithm, including:

* For a given consumer loop, producer-consumer fusion iterates over its
producer candidates until a fixed point is reached.

* Producer candidates are gathered beforehand for each iteration of the
consumer loop and visited in reverse program order (not strictly guaranteed)
to maximize the number of loops fused per iteration.

In general, these changes were needed to simplify the multi-store producer
support and remove some of the workarounds that were introduced in the past
to support more fusion cases under the single-store producer limitation.

This patch also preserves the existing functionality of AffineLoopFusion with
one minor change in behavior. Producer-consumer fusion didn't fuse scenarios
with escaping memrefs and multiple outgoing edges (from a single store).
Multi-store producer scenarios will usually (always?) have multiple outgoing
edges so we couldn't fuse any with escaping memrefs, which would greatly limit
the applicability of this new feature. Therefore, the patch enables fusion for
these scenarios. Please, see modified tests for specific details.

Reviewed By: andydavis1, bondhugula

Differential Revision: https://reviews.llvm.org/D92876
2021-01-20 19:03:07 +02:00
Arjun P
6ebeba88f5 Support emptiness checks for unbounded FlatAffineConstraints.
With this, we have complete support for emptiness checks. This also paves the way for future support to check if two FlatAffineConstraints are equal.

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D94272
2021-01-14 19:33:37 +01:00
Kazuaki Ishizaki
f88fab5006 [mlir] NFC: fix trivial typos
fix typo under include and lib directories

Reviewed By: antiagainst

Differential Revision: https://reviews.llvm.org/D94220
2021-01-08 02:10:12 +09:00
Arjun P
63dead2096 Introduce subtraction for FlatAffineConstraints
Subtraction is a foundational arithmetic operation that is often used when computing, for example, data transfer sets or cache hits. Since the result of subtraction need not be a convex polytope, a new class `PresburgerSet` is introduced to represent unions of convex polytopes.

Reviewed By: ftynse, bondhugula

Differential Revision: https://reviews.llvm.org/D87068
2020-10-07 17:31:06 +02:00
Vincent Zhao
f108e71437 [MLIR] Turns swapId into a FlatAffineConstraints member func
`swapId` used to be a static function in `AffineStructures.cpp`. This diff makes it accessible from the external world by turning it into a member function of `FlatAffineConstraints`. This will be very helpful for other projects that need to manipulate the content of `FlatAffineConstraints`.

Differential Revision: https://reviews.llvm.org/D87766
2020-09-17 11:22:10 +01:00
Vincent Zhao
28a7dfa33d [MLIR] Fixed missing constraint append when adding an AffineIfOp domain
The prior diff that introduced `addAffineIfOpDomain` missed appending
constraints from the ifOp domain. This revision fixes this problem.

Differential Revision: https://reviews.llvm.org/D86421
2020-08-28 00:34:23 +05:30
Arjun P
33f574672f [MLIR] Redundancy detection for FlatAffineConstraints using Simplex
This patch adds the capability to perform constraint redundancy checks for `FlatAffineConstraints` using `Simplex`, via a new member function `FlatAffineConstraints::removeRedundantConstraints`. The pre-existing redundancy detection algorithm runs a full rational emptiness check for each inequality separately for checking redundancy. Leveraging the existing `Simplex` infrastructure, in this patch we have an algorithm for redundancy checks that can check each constraint by performing pivots on the tableau, which provides an alternative to running Fourier-Motzkin elimination for each constraint separately.

Differential Revision: https://reviews.llvm.org/D84935
2020-08-20 13:38:51 +05:30
Vincent Zhao
654e8aadfd [MLIR] Consider AffineIfOp when getting the index set of an Op wrapped in nested loops
This diff attempts to resolve the TODO in `getOpIndexSet` (formerly
known as `getInstIndexSet`), which states "Add support to handle IfInsts
surronding `op`".

Major changes in this diff:

1. Overload `getIndexSet`. The overloaded version considers both
`AffineForOp` and `AffineIfOp`.
2. The `getInstIndexSet` is updated accordingly: its name is changed to
`getOpIndexSet` and its implementation is based on a new API `getIVs`
instead of `getLoopIVs`.
3. Add `addAffineIfOpDomain` to `FlatAffineConstraints`, which extracts
new constraints from the integer set of `AffineIfOp` and merges it to
the current constraint system.
4. Update how a `Value` is determined as dim or symbol for
`ValuePositionMap` in `buildDimAndSymbolPositionMaps`.

Differential Revision: https://reviews.llvm.org/D84698
2020-08-09 03:16:03 +05:30
River Riddle
9db53a1827 [mlir][NFC] Remove usernames and google bug numbers from TODO comments.
These were largely leftover from when MLIR was a google project, and don't really follow LLVM guidelines.
2020-07-07 01:40:52 -07:00
Arjun P
10a898b3ec [MLIR] Exact integer emptiness checks for FlatAffineConstraints
This patch adds the capability to perform exact integer emptiness checks for FlatAffineConstraints using the General Basis Reduction algorithm (GBR). Previously, only a heuristic was available for emptiness checks, which was not guaranteed to always give a conclusive result.

This patch adds a `Simplex` class, which can be constructed using a `FlatAffineConstraints`, and can find an integer sample point (if one exists) using the GBR algorithm. Additionally, it adds two classes `Matrix` and `Fraction`, which are used by `Simplex`.

The integer emptiness check functionality can be accessed through the new `FlatAffineConstraints::isIntegerEmpty()` function, which runs the existing heuristic first and, if that proves to be inconclusive, runs the GBR algorithm to produce a conclusive result.

Differential Revision: https://reviews.llvm.org/D80860
2020-07-02 19:53:27 +05:30
Sean Silva
98eead8186 [mlir][Value] Add v.getDefiningOp<OpTy>()
Summary:
This makes a common pattern of
`dyn_cast_or_null<OpTy>(v.getDefiningOp())` more concise.

Differential Revision: https://reviews.llvm.org/D79681
2020-05-11 12:55:27 -07:00
River Riddle
7182d2da05 [mlir][AffineStructures] Explicitly initialize variables to avoid use of uninitialized variable 2020-04-30 12:12:42 -07:00
Jeremy Bruestle
9f3ab92ec8 [MLIR] Improve support for 0-dimensional Affine Maps.
Summary:
Modified AffineMap::get to remove support for the overload which allowed
an ArrayRef of AffineExpr but no context (and gathered the context from a
presumed first entry, resulting in bugs when there were 0 results).

Instead, we support only a ArrayRef and a context, and a version which
takes a single AffineExpr.

Additionally, removed some now needless case logic which previously
special cased which call to AffineMap::get to use.

Reviewers: flaub, bondhugula, rriddle!, nicolasvasilache, ftynse, ulysseB, mravishankar, antiagainst, aartbik

Subscribers: mehdi_amini, jpienaar, burmako, shauheen, antiagainst, arpith-jacob, mgester, lucyrfox, liufengdb, Joonsoo, bader, grosul1, frgossen, llvm-commits

Tags: #llvm

Differential Revision: https://reviews.llvm.org/D78226
2020-04-15 14:15:02 -07:00
Uday Bondhugula
70da33bf30 [MLIR] fix/update affine data copy utility for max/min bounds
Fix point-wise copy generation to work with bounds that have max/min.
Change structure of copy loop nest to use absolute loop indices and
subtracting base from the indexes of the fast buffers. Update supporting
utilities: Fix FlatAffineConstraints::getLowerAndUpperBound to look at
equalities as well and for a missing division. Update unionBoundingBox
to not discard common constraints (leads to a tighter system). Update
MemRefRegion::getConstantBoundingSizeAndShape to add memref dimension
constraints. Run removeTrivialRedundancy at the end of
MemRefRegion::compute.  Run single iteration loop promotion and
load/store canonicalization after affine data copy (in its test pass as
well).

Differential Revision: https://reviews.llvm.org/D77320
2020-04-07 13:55:42 +05:30
Uday Bondhugula
43a95a543f [MLIR] Introduce full/partial tile separation using if/else
This patch introduces a utility to separate full tiles from partial
tiles when tiling affine loop nests where trip counts are unknown or
where tile sizes don't divide trip counts. A conditional guard is
generated to separate out the full tile (with constant trip count loops)
into the then block of an 'affine.if' and the partial tile to the else
block. The separation allows the 'then' block (which has constant trip
count loops) to be optimized better subsequently: for eg. for
unroll-and-jam, register tiling, vectorization without leading to
cleanup code, or to offload to accelerators. Among techniques from the
literature, the if/else based separation leads to the most compact
cleanup code for multi-dimensional cases (because a single version is
used to model all partial tiles).

INPUT

  affine.for %i0 = 0 to %M {
    affine.for %i1 = 0 to %N {
      "foo"() : () -> ()
    }
  }

OUTPUT AFTER TILING W/O SEPARATION

  map0 = affine_map<(d0) -> (d0)>
  map1 = affine_map<(d0)[s0] -> (d0 + 32, s0)>

  affine.for %arg2 = 0 to %M step 32 {
    affine.for %arg3 = 0 to %N step 32 {
      affine.for %arg4 = #map0(%arg2) to min #map1(%arg2)[%M] {
        affine.for %arg5 = #map0(%arg3) to min #map1(%arg3)[%N] {
          "foo"() : () -> ()
        }
      }
    }
  }

  OUTPUT AFTER TILING WITH SEPARATION

  map0 = affine_map<(d0) -> (d0)>
  map1 = affine_map<(d0) -> (d0 + 32)>
  map2 = affine_map<(d0)[s0] -> (d0 + 32, s0)>

  #set0 = affine_set<(d0, d1)[s0, s1] : (-d0 + s0 - 32 >= 0, -d1 + s1 - 32 >= 0)>

  affine.for %arg2 = 0 to %M step 32 {
    affine.for %arg3 = 0 to %N step 32 {
      affine.if #set0(%arg2, %arg3)[%M, %N] {
        // Full tile.
        affine.for %arg4 = #map0(%arg2) to #map1(%arg2) {
          affine.for %arg5 = #map0(%arg3) to #map1(%arg3) {
            "foo"() : () -> ()
          }
        }
      } else {
        // Partial tile.
        affine.for %arg4 = #map0(%arg2) to min #map2(%arg2)[%M] {
          affine.for %arg5 = #map0(%arg3) to min #map2(%arg3)[%N] {
            "foo"() : () -> ()
          }
        }
      }
    }
  }

The separation is tested via a cmd line flag on the loop tiling pass.
The utility itself allows one to pass in any band of contiguously nested
loops, and can be used by other transforms/utilities. The current
implementation works for hyperrectangular loop nests.

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Differential Revision: https://reviews.llvm.org/D76700
2020-03-28 06:58:35 +05:30
Uday Bondhugula
92744f6247 [MLIR] Add flat affine constraints method to round trip integer set
- add method to get back an integer set from flat affine constraints;
  this allows a round trip
- use this to complete the simplification of integer sets in
  -simplify-affine-structures
- update FlatAffineConstraints::removeTrivialRedundancy to also do GCD
  tightening and normalize by GCD (while still keeping it linear time).

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>
2020-03-26 12:07:13 +05:30
Uday Bondhugula
bec785ab70 [MLIR][NFC] flat affine constraints - refactor to share, renames
- refactor to remove duplicate code
- some renaming / comment updates for readability

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Differential Revision: https://reviews.llvm.org/D76667
2020-03-24 10:57:42 +05:30
Rob Suderman
e708471395 [mlir][NFC] Cleanup AffineOps directory structure
Summary:
Change AffineOps Dialect structure to better group both IR and Tranforms. This included extracting transforms directly related to AffineOps. Also move AffineOps to Affine.

Differential Revision: https://reviews.llvm.org/D76161
2020-03-20 14:23:43 -07:00
Uday Bondhugula
bf0cc6b328 [mlir][NFC] modernize / clean up some loop transform utils, affine analysis utils
Summary:
- remove stale declarations on flat affine constraints
- avoid allocating small vectors where possible
- clean up code comments, rename some variables

Differential Revision: https://reviews.llvm.org/D76117
2020-03-13 21:16:05 -07:00
Uday Bondhugula
e241573d59 [mlir] NFC: remove IntegerValueSet / MutableIntegerSet
Summary:
- these are unused and really not needed now given flat affine
  constraints

Differential Revision: https://reviews.llvm.org/D75792
2020-03-09 20:55:55 -04:00
Uday Bondhugula
91153e0624 [mlir][NFC] remove stray decl of toAffineExpr, rename for readability
Summary:
- remove stray toAffineExpr decl in affine analysis (name duplicate of
  mlir::toAffineExpr)

- rename mlir::toAffineExpr for better readability

- related NFC changes

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Differential Revision: https://reviews.llvm.org/D75694
2020-03-06 22:38:47 -08:00
Rob Suderman
69d757c0e8 Move StandardOps/Ops.h to StandardOps/IR/Ops.h
Summary:
NFC - Moved StandardOps/Ops.h to a StandardOps/IR dir to better match surrounding
directories. This is to match other dialects, and prepare for moving StandardOps
related transforms in out for Transforms and into StandardOps/Transforms.

Differential Revision: https://reviews.llvm.org/D74940
2020-02-21 11:58:47 -08:00
Frank Laub
a248fa90a7 [MLIR][Affine] NFC: Move AffineValueMap and MutableAffineMap
Summary:
The `AffineValueMap` is moved into `Dialect/AffineOps` to prevent a cyclic
dependency between `Analysis` and `Dialect/AffineOps`.

Reviewers: bondhugula, herhut, nicolasvasilache, rriddle, mehdi_amini

Reviewed By: rriddle, mehdi_amini

Subscribers: mgorny, mehdi_amini, rriddle, jpienaar, burmako, shauheen, antiagainst, arpith-jacob, mgester, lucyrfox, aartbik, liufengdb, Joonsoo, llvm-commits

Tags: #llvm

Differential Revision: https://reviews.llvm.org/D74277
2020-02-10 02:26:27 -08:00
Mehdi Amini
308571074c Mass update the MLIR license header to mention "Part of the LLVM project"
This is an artifact from merging MLIR into LLVM, the file headers are
now aligned with the rest of the project.
2020-01-26 03:58:30 +00:00
Benjamin Kramer
df186507e1 Make helper functions static or move them into anonymous namespaces. NFC. 2020-01-14 14:06:37 +01:00
River Riddle
2bdf33cc4c [mlir] NFC: Remove Value::operator* and Value::operator-> now that Value is properly value-typed.
Summary: These were temporary methods used to simplify the transition.

Reviewed By: antiagainst

Differential Revision: https://reviews.llvm.org/D72548
2020-01-11 08:54:39 -08:00
River Riddle
e62a69561f NFC: Replace ValuePtr with Value and remove it now that Value is value-typed.
ValuePtr was a temporary typedef during the transition to a value-typed Value.

PiperOrigin-RevId: 286945714
2019-12-23 16:36:53 -08:00
River Riddle
ab46543ceb Resubmit: ReImplement the Value classes as value-typed objects wrapping an internal pointer storage.
This will enable future commits to reimplement the internal implementation of OpResult without needing to change all of the existing users. This is part of a chain of commits optimizing the size of operation results.

PiperOrigin-RevId: 286930047
2019-12-23 16:05:05 -08:00
MLIR Team
268365ab01 Automated rollback of commit f603a50109
PiperOrigin-RevId: 286924059
2019-12-23 15:54:44 -08:00
River Riddle
f603a50109 ReImplement the Value classes as value-typed objects wrapping an internal pointer storage.
This will enable future commits to reimplement the internal implementation of OpResult without needing to change all of the existing users. This is part of a chain of commits optimizing the size of operation results.

PiperOrigin-RevId: 286919966
2019-12-23 15:44:00 -08:00
Mehdi Amini
56222a0694 Adjust License.txt file to use the LLVM license
PiperOrigin-RevId: 286906740
2019-12-23 15:33:37 -08:00
River Riddle
35807bc4c5 NFC: Introduce new ValuePtr/ValueRef typedefs to simplify the transition to Value being value-typed.
This is an initial step to refactoring the representation of OpResult as proposed in: https://groups.google.com/a/tensorflow.org/g/mlir/c/XXzzKhqqF_0/m/v6bKb08WCgAJ

This change will make it much simpler to incrementally transition all of the existing code to use value-typed semantics.

PiperOrigin-RevId: 286844725
2019-12-22 22:00:23 -08:00
River Riddle
4562e389a4 NFC: Remove unnecessary 'llvm::' prefix from uses of llvm symbols declared in mlir namespace.
Aside from being cleaner, this also makes the codebase more consistent.

PiperOrigin-RevId: 286206974
2019-12-18 09:29:20 -08:00
Uday Bondhugula
a63f6e0bf9 Replace spurious SmallVector constructions with ValueRange
Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Closes tensorflow/mlir#305

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/305 from bondhugula:value_range 21d1fae73f549e3c8e72b60876eff1b864cea39c
PiperOrigin-RevId: 284541027
2019-12-09 06:26:33 -08:00
Uday Bondhugula
ca23bd78d4 NFC - update doc, comments, vim syntax file
- for the symbol rules, the code was updated but the doc wasn't.

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Closes tensorflow/mlir#284

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/284 from bondhugula:doc 9aad8b8a715559f7ce61265f3da3f8a3c11b45ea
PiperOrigin-RevId: 284283712
2019-12-06 16:17:06 -08:00
Uday Bondhugula
6a101671b0 Make isValidSymbol more powerful
The check in isValidSymbol, as far as a DimOp result went, checked if
the dim op was on a top-level memref. However, any alloc'ed, view, or
subview memref would be fine as long as the corresponding dimension of
that memref is either a static one or was in turn created using a valid
symbol in the case of dynamic dimensions.

Reported-by: Jose Gomez

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Closes tensorflow/mlir#252

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/252 from bondhugula:symbol 7b57dc394df9375e651f497231c6e4525a32a662
PiperOrigin-RevId: 282097114
2019-11-22 22:09:31 -08:00
Kazuaki Ishizaki
8bfedb3ca5 Fix minor spelling tweaks (NFC)
Closes tensorflow/mlir#177

PiperOrigin-RevId: 275692653
2019-10-20 00:11:34 -07:00
Christian Sigg
85dcaf19c7 Fix typos, NFC.
PiperOrigin-RevId: 272851237
2019-10-04 04:37:53 -07:00
Christian Sigg
c900d4994e Fix a number of Clang-Tidy warnings.
PiperOrigin-RevId: 270632324
2019-09-23 02:34:27 -07:00
Uday Bondhugula
f559c38c28 Upgrade/fix/simplify store to load forwarding
- fix store to load forwarding for a certain set of cases (where
  forwarding shouldn't have happened); use AffineValueMap difference
  based MemRefAccess equality checking; utility logic is also greatly
  simplified

- add missing equality/inequality operators for AffineExpr ==/!= ints

- add == != operators on MemRefAccess

Closes tensorflow/mlir#136

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/136 from bondhugula:store-load-forwarding d79fd1add8bcfbd9fa71d841a6a9905340dcd792
PiperOrigin-RevId: 270457011
2019-09-21 10:08:56 -07:00
Uday Bondhugula
018cfa94d9 Clean up build trip count analysis method - avoid mutating IR
- NFC - on any pass/utility logic/output.

- Resolve TODO; the method building loop trip count maps was
  creating and deleting affine.apply ops (transforming IR from under
  analysis!, strictly speaking). Introduce AffineValueMap::difference to
  do this correctly (without the need to create any IR).

- Move AffineApplyNormalizer out so that its methods are reusable from
  AffineStructures.cpp; add a helper method 'normalize' to it. Fix
  AffineApplyNormalize::renumberOneDim (Issue tensorflow/mlir#89).

- Trim includes on files touched.

- add test case on a scenario previously not covered

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Closes tensorflow/mlir#133

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/133 from bondhugula:trip-count-build 7fc34d857f7788f98b641792cafad6f5bd50e47b
PiperOrigin-RevId: 269101118
2019-09-14 12:10:55 -07:00
Uday Bondhugula
854a384f50 Integer set + operands / affine if op canonicalization
- turn canonicalizeMapAndOperands into a template that works on both
  sets and maps, and use it to introduce a utility to canonicalize an
  affine integer set and its operands
- add pattern to canonicalize affine if op's.
- rename IntegerSet::getNumOperands -> IntegerSet::getNumInputs to be
  consistent with AffineMap
- add missing accessors for IntegerSet

Doesn't need extensive testing since canonicalizeSetAndOperands just
reuses canonicalizeMapAndOperands' logic, and the latter is tested on
affine.apply map + operands; the new method works the same way on an
integer set + operands of an affine if op for example.

Signed-off-by: Uday Bondhugula <uday@polymagelabs.com>

Closes tensorflow/mlir#112

COPYBARA_INTEGRATE_REVIEW=https://github.com/tensorflow/mlir/pull/112 from bondhugula:set-canonicalize eff72f23250b96fa7d9f5caff3877440f5de2cec
PiperOrigin-RevId: 267532876
2019-09-05 23:12:35 -07:00