Commit Graph

8648 Commits

Author SHA1 Message Date
Lei Zhang
b45476c94c [mlir][tosa] Do not fold transpose with quantized types
For such cases, the type of the constant DenseElementsAttr is
different from the transpose op return type.

Reviewed By: rsuderman

Differential Revision: https://reviews.llvm.org/D110446
2021-09-24 16:57:55 -04:00
Diego Caballero
2a876a711d [mlir] Create a generic reduction detection utility
This patch introduces a generic reduction detection utility that works
across different dialecs. It is mostly a generalization of the reduction
detection algorithm in Affine. The reduction detection logic in Affine,
Linalg and SCFToOpenMP have been replaced with this new generic utility.

The utility takes some basic components of the potential reduction and
returns: 1) the reduced value, and 2) a list with the combiner operations.
The logic to match reductions involving multiple combiner operations disabled
until we can properly test it.

Reviewed By: ftynse, bondhugula, nicolasvasilache, pifon2a

Differential Revision: https://reviews.llvm.org/D110303
2021-09-24 20:45:59 +00:00
River Riddle
531206310a [mlir:OpAsm] Factor out the common bits of (Op/Dialect)Asm(Parser/Printer)
This has a few benefits:
* It allows for defining parsers/printer code blocks that
  can be shared between operations and attribute/types.
* It removes the weird duplication of generic parser/printer hooks,
  which means that newly added hooks only require touching one class.

Differential Revision: https://reviews.llvm.org/D110375
2021-09-24 20:12:19 +00:00
River Riddle
aca9bea199 [mlir:MemRef] Move DmaStartOp/DmaWaitOp to ODS
These are among the last operations still defined explicitly in C++. I've
tried to keep this commit as NFC as possible, but these ops
definitely need a non-NFC cleanup at some point.

Differential Revision: https://reviews.llvm.org/D110440
2021-09-24 19:35:28 +00:00
Lei Zhang
e325ebb9c7 [mlir][tosa] Add some transpose folders
* If the input is a constant splat value, we just
  need to reshape it.
* If the input is a general constant with one user,
  we can also constant fold it, without bloating
  the IR.

Reviewed By: rsuderman

Differential Revision: https://reviews.llvm.org/D110439
2021-09-24 15:25:14 -04:00
River Riddle
ef976337f5 [mlir:OpConversion] Remove the remaing usages of the deprecated matchAndRewrite methods
This commits updates the remaining usages of the ArrayRef<Value> based
matchAndRewrite/rewrite methods in favor of the new OpAdaptor
overload.

Differential Revision: https://reviews.llvm.org/D110360
2021-09-24 17:51:41 +00:00
River Riddle
b54c724be0 [mlir:OpConversionPattern] Add overloads for taking an Adaptor instead of ArrayRef
This has been a TODO for a long time, and it brings about many advantages (namely nice accessors, and less fragile code). The existing overloads that accept ArrayRef are now treated as deprecated and will be removed in a followup (after a small grace period). Most of the upstream MLIR usages have been fixed by this commit, the rest will be handled in a followup.

Differential Revision: https://reviews.llvm.org/D110293
2021-09-24 17:51:41 +00:00
Alex Zinenko
5988a3b7a0 [mlir] Linalg: ensure tile-and-pad always creates padding as requested
Initially, the padding transformation and the related operation were only used
to guarantee static shapes of subtensors in tiled operations. The
transformation would not insert the padding operation if the shapes were
already static, and the overall code generation would actively remove such
"noop" pads. However, this transformation can be also used to pack data into
smaller tensors and marshall them into faster memory, regardless of the size
mismatches. In context of expert-driven transformation, we should assume that,
if padding is requested, a potentially padded tensor must be always created.
Update the transformation accordingly. To do this, introduce an optional
`packing` attribute to the `pad_tensor` op that serves as an indication that
the padding is an intentional choice (as opposed to side effect of type
normalization) and should be left alone by cleanups.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D110425
2021-09-24 18:40:13 +02:00
Arjun P
4a57f5d1e1 [MLIR] PresburgerSet: support divisions in operations
Add support for intersecting, subtracting, complementing and checking equality of sets having divisions.

Reviewed By: bondhugula

Differential Revision: https://reviews.llvm.org/D110138
2021-09-24 15:36:47 +05:30
Alex Zinenko
3f89e339bb [mlir] add pad_tensor(tensor.cast) -> pad_tensor canonicalizer
This canonicalization pattern complements the tensor.cast(pad_tensor) one in
propagating constant type information when possible. It contributes to the
feasibility of pad hoisting.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D110343
2021-09-24 12:03:47 +02:00
Matthias Springer
f3f25ffc04 [mlir][linalg] Fix result type in FoldSourceTensorCast
* Do not discard static result type information that cannot be inferred from lower/upper padding.
* Add optional argument to `PadTensorOp::inferResultType` for specifying known result dimensions.

Differential Revision: https://reviews.llvm.org/D110380
2021-09-24 16:47:18 +09:00
Mehdi Amini
83f3c615dd Add missing storageType to AttrDef to ODS
This is only noticeable when using an attribute across dialects I think.
Previously the namespace would be ommited, but it wouldn't matter as
long as the generated code stays within a single namespace.

Differential Revision: https://reviews.llvm.org/D110367
2021-09-24 01:30:29 +00:00
Matthias Springer
2190f8a8b1 [mlir][linalg] Support tile+peel with TiledLoopOp
Only scf.for was supported until now.

Differential Revision: https://reviews.llvm.org/D110220
2021-09-24 10:23:31 +09:00
Matthias Springer
8dc16ba8d2 [mlir][linalg] Merge all tiling passes into a single one.
Passes such as `linalg-tile-to-tiled-loop` are merged into `linalg-tile`.

Differential Revision: https://reviews.llvm.org/D110214
2021-09-24 10:16:46 +09:00
wren romano
221856f5cd [mlir][sparse] Moved a conditional from the RT library to the generated MLIR.
When generating code to add an element to SparseTensorCOO (e.g., when doing dense=>sparse conversion), we used to check for nonzero values on the runtime side, whereas now we generate MLIR code to do that check.

Reviewed By: aartbik

Differential Revision: https://reviews.llvm.org/D110121
2021-09-23 12:44:17 -07:00
Tharindu Rusira
1f3f144446 [NFC] Wrap MLIR addAffineForOpDomain warning with LLVM_DEBUG
Current warning message in method `addAffineForOpDomain` of mlir/lib/Analysis/AffineStructures.cpp is being printed to the stdout/stderr.
This patch redirects the warning with LLVM_DEBUG following standard llvm practice.

Reviewed By: bondhugula

Differential Revision: https://reviews.llvm.org/D108340
2021-09-23 13:20:16 +05:30
Diana Picus
b7050c791d [mlir] Fix build on Windows on Arm
clang-cl errors out while handling the templated version of tgfmt. This
patch works around the issue by explicitly choosing the non-templated
version of tgfmt, which takes an ArrayRef<std::string>.

More details in this thread:
https://lists.llvm.org/pipermail/cfe-dev/2021-September/068936.html

Thanks @Mehdi Amini for suggesting the fix :)

Differential Revision: https://reviews.llvm.org/D110223
2021-09-23 09:04:28 +02:00
John Demme
47cc166bc0 [MLIR] [Python] Make Attribute and Type hashable
Enables putting types and attributes in sets and in dicts as keys.

Reviewed By: stellaraccident

Differential Revision: https://reviews.llvm.org/D110301
2021-09-22 19:59:03 -07:00
Aart Bik
a924fcc7c3 [mlir][sparse] add sparse kernels test to sparse compiler test suite
This test makes sure kernels map to efficient sparse code, i.e. all
compressed for-loops, no co-iterating while loops.  In addition, this
revision removes the special constant folding inside the sparse
compiler in favor of Mahesh' new generic linalg folding. Thanks!

NOTE: relies on Mahesh fix, which needs to be rebased first

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D110001
2021-09-22 14:56:39 -07:00
Tyler Augustine
cd36bab4ca Fix bug for Ops with default valued attributes and successors/variadic regions.
When both a DefaultValuedAttr and a successor or variadic region was specified, this would generate invalid C++ declaration. There would be the parameter with a default value, followed by the successors/regions, which don't have a default, which is invalid.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D110205
2021-09-22 21:22:31 +00:00
MaheshRavishankar
a40a08ed98 [mlir][Linalg] Teach constant -> generic op fusion to handle scalar constants.
The current folder of constant -> generic op only handles splat
constants. The same logic holds for scalar constants. Teach the
pattern to handle such cases.

Differential Revision: https://reviews.llvm.org/D109982
2021-09-22 13:41:47 -07:00
River Riddle
6e60bb6883 [mlir:DataFlowAnalysis] Reprocess the arguments of already executable edges
This fixes a bug where we discover new information about the arguments of an
already executable edge, but don't visit the arguments. We only visit the arguments, and not the block itself, so this commit shouldn't really affect performance at all.

Fixes PR#51871

Differential Revision: https://reviews.llvm.org/D110197
2021-09-22 20:14:55 +00:00
Yi Zhang
b2b63d1b91 Reset operation when canceling root update transaction
Should reset the operation to original state when canceling the updates.

Reviewed By: rriddle, ftynse

Differential Revision: https://reviews.llvm.org/D110176
2021-09-22 16:05:08 -04:00
Aart Bik
5da21338bc [mlir][sparse] generalize reduction support in sparse compiler
Now not just SUM, but also PRODUCT, AND, OR, XOR. The reductions
MIN and MAX are still to be done (also depends on recognizing
these operations in cmp-select constructs).

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D110203
2021-09-22 12:36:46 -07:00
Tobias Gysi
e828655313 [mlir][linalg] Fix interchange initialization in fusion on tensors.
If no interchange vector is given initialize it with the identity permutation from 0 to number of loops.

Reviewed By: mravishankar

Differential Revision: https://reviews.llvm.org/D110249
2021-09-22 17:45:54 +00:00
Aart Bik
56bddf3b1c [mlir][sparse] replace ad-hoc MemRef struct with CRunnerUtils definition
This revision removes the ad-hoc MemRefs that were needed using the old
ABI (when we still passed by value) and replaces them with the shared
StridedMemRef definitions of CRunnerUtils (possible now that we pass by
pointer). This avoids code duplication and makes sure we have a consistent
view of strided memory references in all our support libraries.

Reviewed By: jsetoain

Differential Revision: https://reviews.llvm.org/D110221
2021-09-22 09:23:26 -07:00
Aart Bik
128a9e1cb4 [mlir][sparse] cleanup ABI issues in C interface with memrefs
This change adds automatic wrapper functoins with emit_c_interface
to all methods in the sparse support library that deal with MEMREFs.
The wrappers will take care of passing MEMREFs by value internally
and by pointer externally, thereby avoiding ABI issues across platforms.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D110219
2021-09-21 21:58:12 -07:00
Chris Lattner
da93829b44 [DialectAsmPrinter] Add missing 'printAttributeWithoutType' member.
DialectAsmParser has a `parseAttribute` member that takes a
contextual type, but DialectAsmPrinter doesn't have the corresponding
member to take advantage of it.  As such, custom attribute
implementations can't really use it.  This adds the obvious missing
method which fills this hole.

Differential Revision: https://reviews.llvm.org/D110211
2021-09-21 18:45:24 -07:00
Alex Zinenko
bdaf038266 [mlir] Always create a list of alias scopes when emitting LLVM IR
Previously, the translation to LLVM IR would emit IR that directly uses
a scope metadata node in case only one scope was in use in alias.scopes
or noalias metadata. It should always be a list of scopes. The verifier
change in 8700f2bd36 enforced this and
broke the test. Fix the translation to always create a list of scopes
using a new metadata node, update and reenable the respective test.

Fixes PR51919.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D110140
2021-09-22 00:00:46 +02:00
Christian Sigg
9149ae09bd Support value-typed references in iterator facade's operator->()
Add a PointerProxy similar to the existing iterator_facade_base::ReferenceProxy and return it from the arrow operator. This prevents iterator facades with a reference type that is not a true reference to take the address of a temporary.

Forward the reference type of the mapped_iterator to the iterator adaptor which in turn forwards it to the iterator facade. This fixes mlir::op_iterator::operator->() to take the address of a temporary.

Make some polishing changes to op_iterator and op_filter_iterator.

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D109490
2021-09-21 20:42:22 +02:00
Tobias Gysi
8b5236def5 [mlir][linalg] Simplify slice dim computation for fusion on tensors (NFC).
Compute the tiled producer slice dimensions directly starting from the consumer not using the producer at all.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D110147
2021-09-21 15:09:46 +00:00
Tobias Gysi
9072f1b5f8 [mlir][linalg] Add isPermutation helper (NFC).
Add a helper method to check if an index vector contains a permutation of its indices. Additionally, refactor applyPermutationToVector to take int64_t.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D110135
2021-09-21 15:07:39 +00:00
Nicolas Vasilache
101d017a64 [mlir][Linalg] Revisit heuristic ordering of tensor.insert_slice in comprehensive bufferize.
It was previously assumed that tensor.insert_slice should be bufferized first in a greedy fashion to avoid out-of-place bufferization of the large tensor. This heuristic does not hold upon further inspection.

This CL removes the special handling of such ops and adds a test that exhibits better behavior and appears in real use cases.

The only test adversely affected is an artificial test which results in a returned memref: this pattern is not allowed by comprehensive bufferization in real scenarios anyway and the offending test is deleted.

Differential Revision: https://reviews.llvm.org/D110072
2021-09-21 14:22:45 +00:00
Nicolas Vasilache
0d2c54e851 [mlir][Linalg] Revisit RAW dependence interference in comprehensive bufferize.
Previously, comprehensive bufferize would consider all aliasing reads and writes to
the result buffer and matching operand. This resulted in spurious dependences
being considered and resulted in too many unnecessary copies.

Instead, this revision revisits the gathering of read and write alias sets.
This results in fewer alloc and copies.
An exhaustive test cases is added that considers all possible permutations of
`matmul(extract_slice(fill), extract_slice(fill), ...)`.
2021-09-21 14:22:22 +00:00
Tobias Gysi
c8eed8f9a7 [mlir][linalg] Assert tile loop nest invariants in fusion.
Assert the tile loop nest invariants are satisfied instead of failing silently.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D110137
2021-09-21 14:20:57 +00:00
Uday Bondhugula
5c77ed0330 [MLIR] NFC. gpu.launch op argument const folder cleanup
NFC updates to gpu.launch op argument const folder.

Differential Revision: https://reviews.llvm.org/D110136
2021-09-21 14:30:03 +05:30
Morten Borup Petersen
032cb1650f [MLIR][SCF] Add for-to-while loop transformation pass
This pass transforms SCF.ForOp operations to SCF.WhileOp. The For loop condition is placed in the 'before' region of the while operation, and indctuion variable incrementation + the loop body in the 'after' region. The loop carried values of the while op are the induction variable (IV) of the for-loop + any iter_args specified for the for-loop.
Any 'yield' ops in the for-loop are rewritten to additionally yield the (incremented) induction variable.

This transformation is useful for passes where we want to consider structured control flow solely on the basis of a loop body and the computation of a loop condition. As an example, when doing high-level synthesis in CIRCT, the incrementation of an IV in a for-loop is "just another part" of a circuit datapath, and what we really care about is the distinction between our datapath and our control logic (the condition variable).

Differential Revision: https://reviews.llvm.org/D108454
2021-09-21 09:09:54 +01:00
Kunwar Shaanjeet Singh Grover
0d12c99191 [MLIR] Add mergeLocalIds and mergeSymbolIds
This patch adds mergeLocalIds andmergeSymbolIds as public functions
for FlatAffineConstraints and FlatAffineValueConstraints respectively.

mergeLocalIds is also required to support divisions in intersection,
subtraction, equality checks, and complement for PresburgerSet.

This patch is part of a series of patches aimed at generalizing affine
dependence analysis.

Reviewed By: bondhugula

Differential Revision: https://reviews.llvm.org/D110045
2021-09-21 13:02:23 +05:30
Chris Lattner
58abc8c34b [OpAsmParser] Add a parseCommaSeparatedList helper and beef up Delimeter.
Lots of custom ops have hand-rolled comma-delimited parsing loops, as does
the MLIR parser itself.  Provides a standard interface for doing this that
is less error prone and less boilerplate.

While here, extend Delimiter to support <> and {} delimited sequences as
well (I have a use for <> in CIRCT specifically).

Differential Revision: https://reviews.llvm.org/D110122
2021-09-20 20:59:11 -07:00
River Riddle
d80d3a358f [mlir] Refactor ElementsAttr into an AttrInterface
This revision refactors ElementsAttr into an Attribute Interface.
This enables a common interface with which to interact with
element attributes, without needing to modify the builtin
dialect. It also removes a majority (if not all?) of the need for
the current OpaqueElementsAttr, which was originally intended as
a way to opaquely represent data that was not representable by
the other builtin constructs.

The new ElementsAttr interface not only allows for users to
natively represent their data in the way that best suits them,
it also allows for efficient opaque access and iteration of the
underlying data. Attributes using the ElementsAttr interface
can directly expose support for interacting with the held
elements using any C++ data type they claim to support. For
example, DenseIntOrFpElementsAttr supports iteration using
various native C++ integer/float data types, as well as
APInt/APFloat, and more. ElementsAttr instances that refer to
DenseIntOrFpElementsAttr can use all of these data types for
iteration:

```c++
DenseIntOrFpElementsAttr intElementsAttr = ...;

ElementsAttr attr = intElementsAttr;
for (uint64_t value : attr.getValues<uint64_t>())
  ...;
for (APInt value : attr.getValues<APInt>())
  ...;
for (IntegerAttr value : attr.getValues<IntegerAttr>())
  ...;
```

ElementsAttr also supports failable range/iterator access,
allowing for selective code paths depending on data type
support:

```c++
ElementsAttr attr = ...;
if (auto range = attr.tryGetValues<uint64_t>()) {
  for (uint64_t value : *range)
    ...;
}
```

Differential Revision: https://reviews.llvm.org/D109190
2021-09-21 01:57:43 +00:00
River Riddle
0cb5d7fc7f [mlir] Add value_begin/value_end methods to DenseElementsAttr
Currently DenseElementsAttr only exposes the ability to get the full range of values for a given type T, but there are many situations where we just want the beginning/end iterator. This revision adds proper value_begin/value_end methods for all of the supported T types, and also cleans up a bit of the interface.

Differential Revision: https://reviews.llvm.org/D104173
2021-09-21 01:57:43 +00:00
River Riddle
4f21152af1 [mlir] Tighten verification of SparseElementsAttr
SparseElementsAttr currently does not perform any verfication on construction, with the only verification existing within the parser. This revision moves the parser verification to SparseElementsAttr, and also adds additional verification for when a sparse index is not valid.

Differential Revision: https://reviews.llvm.org/D109189
2021-09-21 01:57:42 +00:00
Stella Laurenzo
1fb2e842a9 [mlir][python] Forward _OperationBase _CAPIPtr to the Operation.
* ODS generated operations extend _OperationBase and without this, cannot be marshalled to CAPI functions.
* No test case updates: this kind of interop is quite hard to verify with in-tree tests.

Differential Revision: https://reviews.llvm.org/D110030
2021-09-20 18:52:05 -07:00
Chia-hung Duan
bb2506061b [mlir-tblgen] Add DagNode StaticMatcher.
Some patterns may share the common DAG structures. Generate a static
function to do the match logic to reduce the binary size.

Reviewed By: jpienaar

Differential Revision: https://reviews.llvm.org/D105797
2021-09-20 23:37:42 +00:00
Mehdi Amini
4e7c0a37c9 Update MLIR generate-test-checks.py to add the notice from the source into the generated file
Folks may not read the source of the tool and miss these instructions.

Differential Revision: https://reviews.llvm.org/D110082
2021-09-20 23:19:40 +00:00
natashaknk
38ff7e11c0 [mlir][tosa] Add several binary elementwise to the list of broadcastable ops.
Reviewed By: rsuderman

Differential Revision: https://reviews.llvm.org/D110096
2021-09-20 16:07:35 -07:00
natashaknk
4edf46f72a [mlir][tosa] Remove the documentation requirement for elements of several binary elementwise ops to be of the same rank.
Reviewed By: rsuderman

Differential Revision: https://reviews.llvm.org/D110095
2021-09-20 15:00:38 -07:00
MaheshRavishankar
4cf9bf6c9f [mlir][MemRef] Compute unused dimensions of a rank-reducing subviews using strides as well.
For `memref.subview` operations, when there are more than one
unit-dimensions, the strides need to be used to figure out which of
the unit-dims are actually dropped.

Differential Revision: https://reviews.llvm.org/D109418
2021-09-20 11:05:30 -07:00
MaheshRavishankar
0b33890f45 [mlir][Linalg] Add ConvolutionOpInterface.
Add an interface that allows grouping together all covolution and
pooling ops within Linalg named ops. The interface currently
- the indexing map used for input/image access is valid
- the filter and output are accessed using projected permutations
- that all loops are charecterizable as one iterating over
  - batch dimension,
  - output image dimensions,
  - filter convolved dimensions,
  - output channel dimensions,
  - input channel dimensions,
  - depth multiplier (for depthwise convolutions)

Differential Revision: https://reviews.llvm.org/D109793
2021-09-20 10:41:10 -07:00
Mehdi Amini
5edd79fc97 Revert "[MLIR][SCF] Add for-to-while loop transformation pass"
This reverts commit 644b55d57e.

The added test is failing the bots.
2021-09-20 17:21:59 +00:00