17 Commits

Author SHA1 Message Date
Peiming Liu
b0f8057e4c [mlir][sparse] use loop emitter to generate loop in sparsification
Reviewed By: aartbik

Differential Revision: https://reviews.llvm.org/D136185
2022-10-26 00:27:56 +00:00
Aart Bik
610b09074a [mlir][sparse] change variable dimension to fixed attribute pointers/indices
The "sparsification" pass does not need the ability to use runtime values for
the dimension, so the only source for variability would have been user code.
Restricting the dimension to constants simplifies code generation.

Reviewed By: Peiming, wrengr

Differential Revision: https://reviews.llvm.org/D133458
2022-09-07 16:27:24 -07:00
Aart Bik
e3d64ccf9f [mlir][sparse] more concise sparse tensor type printing
This change omits default values from the sparse tensor type,
saving considerable text real estate for the common cases.

Reviewed By: Peiming

Differential Revision: https://reviews.llvm.org/D132083
2022-08-17 17:35:50 -07:00
Matthias Springer
c66303c287 [mlir][sparse] Switch to One-Shot Bufferize
This change removes the partial bufferization passes from the sparse compilation pipeline and replaces them with One-Shot Bufferize. One-Shot Analysis (and TensorCopyInsertion) is used to resolve all out-of-place bufferizations, dense and sparse. Dense ops are then bufferized with BufferizableOpInterface. Sparse ops are still bufferized in the Sparsification pass.

Details:
* Dense allocations are automatically deallocated, unless they are yielded from a block. (In that case the alloc would leak.) All test cases are modified accordingly. E.g., some funcs now have an "out" tensor argument that is returned from the function. (That way, the allocation happens at the call site.)
* Sparse allocations are *not* automatically deallocated. They must be "released" manually. (No change, this will be addressed in a future change.)
* Sparse tensor copies are not supported yet. (Future change)
* Sparsification no longer has to consider inplacability. If necessary, allocations and/or copies are inserted during TensorCopyInsertion. All tensors are inplaceable by the time Sparsification is running. Instead of marking a tensor as "not inplaceable", it can be marked as "not writable", which will trigger an allocation and/or copy during TensorCopyInsertion.

Differential Revision: https://reviews.llvm.org/D129356
2022-07-14 09:52:48 +02:00
Aart Bik
eca6f9160f [mlir][sparse][bufferization] refine bufferization assumption enforcement
Enforce the assumption made on tensor buffers explicitly. When in-place,
reuse the buffer, but fill with all zeroes for the non-update case, since
the kernel assumes all elements are written to. When not in-place, zero
out the new buffer when materializing or when no-updates occur. Copy the
original tensor value when updates occur. This prepares migrating to the
new bufferization strategy, where these assumptions must be made explicit.

Reviewed By: springerm

Differential Revision: https://reviews.llvm.org/D128691
2022-06-28 09:43:30 -07:00
River Riddle
fb35cd3baf [mlir][NFC] Update textual references of func to func.func in SparseTensor tests
The special case parsing of `func` operations is being removed.
2022-04-20 22:17:29 -07:00
Aart Bik
34381a76c1 [mlir][sparse] avoid some codeup in sparsification transformation
A very small refactoring, but a big impact on tests that expect an exact order.
This revision fixes the tests, but also makes them less brittle for similar
minor changes in the future!

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D119992
2022-02-16 17:39:04 -08:00
River Riddle
dec8af701f [mlir] Move SelectOp from Standard to Arithmetic
This is part of splitting up the standard dialect. See https://llvm.discourse.group/t/standard-dialect-the-final-chapter/ for discussion.

Differential Revision: https://reviews.llvm.org/D118648
2022-02-02 14:45:12 -08:00
Alexander Belyaev
57470abc41 [mlir] Move memref.[tensor_load|buffer_cast|clone] to "bufferization" dialect.
https://llvm.discourse.group/t/rfc-dialect-for-bufferization-related-ops/4712

Differential Revision: https://reviews.llvm.org/D114552
2021-11-25 11:50:39 +01:00
Aart Bik
7373cabcda [mlir][sparse] implement full reduction "scalarization" across loop nests
The earlier reduction "scalarization" was only applied to a chain of
*innermost* and *for* loops. This revision generalizes this to any
nesting of for- and while-loops. This implies that reductions can be
implemented with a lot less load and store operations. The chaining
is implemented with a forest of yield statements (but not as bad as
when we would also include the while-induction).

Fixes https://bugs.llvm.org/show_bug.cgi?id=52311

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D113078
2021-11-04 17:38:47 -07:00
Mogball
a54f4eae0e [MLIR] Replace std ops with arith dialect ops
Precursor: https://reviews.llvm.org/D110200

Removed redundant ops from the standard dialect that were moved to the
`arith` or `math` dialects.

Renamed all instances of operations in the codebase and in tests.

Reviewed By: rriddle, jpienaar

Differential Revision: https://reviews.llvm.org/D110797
2021-10-13 03:07:03 +00:00
Chris Lattner
42431b8207 [tests] Make testsuite more resilient to "order of constant" changes. NFC. 2021-09-08 10:10:10 -07:00
Aart Bik
b6d1a31c1b [mlir][sparse] refine heuristic for iteration graph topsort
The sparse index order must always be satisfied, but this
may give a choice in topsorts for several cases. We broke
ties in favor of any dense index order, since this gives
good locality. However, breaking ties in favor of pushing
unrelated indices into sparse iteration spaces gives better
asymptotic complexity. This revision improves the heuristic.

Note that in the long run, we are really interested in using
ML for ML to find the best loop ordering as a replacement for
such heuristics.

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D109100
2021-09-03 08:37:15 -07:00
Aart Bik
68ac2e53ff [mlir][sparse] replace linalg.copy with memref.copy
Note, this revision relies on the following revision
for a bugfix in the memref copy library in order for
all sparse integration tests to pass.

https://reviews.llvm.org/D106036

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D106038
2021-07-15 07:56:50 -07:00
Matthias Springer
c0a6318d96 [mlir][tensor] Add tensor.dim operation
* Split memref.dim into two operations: memref.dim and tensor.dim. Both ops have the same builder interface and op argument names, so that they can be used with templates in patterns that apply to both tensors and memrefs (e.g., some patterns in Linalg).
* Add constant materializer to TensorDialect (needed for folding in affine.apply etc.).
* Remove some MemRefDialect dependencies, make some explicit.

Differential Revision: https://reviews.llvm.org/D105165
2021-07-01 10:00:19 +09:00
Aart Bik
96a23911f6 [mlir][sparse] complete migration to sparse tensor type
A very elaborate, but also very fun revision because all
puzzle pieces are finally "falling in place".

1. replaces lingalg annotations + flags with proper sparse tensor types
2. add rigorous verification on sparse tensor type and sparse primitives
3. removes glue and clutter on opaque pointers in favor of sparse tensor types
4. migrates all tests to use sparse tensor types

NOTE: next CL will remove *all* obsoleted sparse code in Linalg

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D102095
2021-05-10 12:55:22 -07:00
Aart Bik
a2c9d4bb04 [mlir][sparse] Introduce proper sparsification passes
This revision migrates more code from Linalg into the new permanent home of
SparseTensor. It replaces the test passes with proper compiler passes.

NOTE: the actual removal of the last glue and clutter in Linalg will follow

Reviewed By: bixia

Differential Revision: https://reviews.llvm.org/D101811
2021-05-04 17:10:09 -07:00