Commit Graph

222 Commits

Author SHA1 Message Date
Ramkumar Ramachandra
22426110c5 mlir/tblgen: use std::optional in generation
This is part of an effort to migrate from llvm::Optional to
std::optional. This patch changes the way mlir-tblgen generates .inc
files, and modifies tests and documentation appropriately. It is a "no
compromises" patch, and doesn't leave the user with an unpleasant mix of
llvm::Optional and std::optional.

A non-trivial change has been made to ControlFlowInterfaces to split one
constructor into two, relating to a build failure on Windows.

See also: https://discourse.llvm.org/t/deprecating-llvm-optional-x-hasvalue-getvalue-getvalueor/63716

Signed-off-by: Ramkumar Ramachandra <r@artagnon.com>

Differential Revision: https://reviews.llvm.org/D138934
2022-12-17 11:13:26 +01:00
Jacques Pienaar
fb5a64f0cf [mlir-c] Add method to create unmanaged dense resource elements attr
Following DenseElementsAttr pattern.

Differential Revision: https://reviews.llvm.org/D140189
2022-12-16 13:36:15 -08:00
Mike Urbach
dd8e443539 [mlir][CAPI] Add a simple MlirOpOperand API for MlirValue uses.
This allows basic IR traversal via the C API, which is useful for
analyses in languages other than C++.

This starts by defining an MlirOpOperand struct to encapsulate a pair
of an owner operation and an operand number.

A new API is added for MlirValue, to return the first use of the Value
as an MlirOpOperand, or a "null" MlirOpOperand if there are no uses.

A couple APIs are added for MlirOpOperand. The first checks if an
MlirOpOperand is "null", by checking if its owner's pointer is
null. The second supports iteration along the use-def lists by
accepting an MlirOpOperand and returning the next use of the Value as
another MlirOpOperand, or a "null" MlirOpOperand if there are no more
uses.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D139596
2022-12-12 14:14:53 -07:00
Kazu Hirata
1a36588ec6 [mlir] Use std::nullopt instead of None (NFC)
This patch mechanically replaces None with std::nullopt where the
compiler would warn if None were deprecated.  The intent is to reduce
the amount of manual work required in migrating from Optional to
std::optional.

This is part of an effort to migrate from llvm::Optional to
std::optional:

https://discourse.llvm.org/t/deprecating-llvm-optional-x-hasvalue-getvalue-getvalueor/63716
2022-12-03 18:50:27 -08:00
Aliia Khasanova
399638f98c Merge kDynamicSize and kDynamicSentinel into one constant.
resolve conflicts

Differential Revision: https://reviews.llvm.org/D138282
2022-11-21 13:01:26 +00:00
River Riddle
d023661115 [mlir][AsmPrinter] Allow explicitly disabling debug info
This adds an `enable` flag to OpPrintingFlags::enableDebugInfo
that allows for overriding any command line flags for debug printing,
and matches the format that we use for other `enableBlah` API.
2022-11-18 02:09:57 -08:00
Reed
e08ca4bb1d Add Float8E4M3FN type to MLIR.
The paper https://arxiv.org/abs/2209.05433 introduces two new FP8 dtypes: E5M2 (called Float8E5M2 in LLVM) and E4M3 (called Float8E4M3FN in LLVM). Support for Float8E5M2 in APFloat and MLIR was added in https://reviews.llvm.org/D133823. Support for Float8E4M3FN in APFloat was added in https://reviews.llvm.org/D137760. This change adds Float8E4M3FN to MLIR as well.

There is an RFC for adding the FP8 dtypes here: https://discourse.llvm.org/t/rfc-add-apfloat-and-mlir-type-support-for-fp8-e5m2/65279.

This change is identical to the MLIR changes in the patch that added Float8E5M2, except that Float8E4M3FN is added instead.

Reviewed By: stellaraccident, bkramer, rriddle

Differential Revision: https://reviews.llvm.org/D138075
2022-11-16 10:24:25 +01:00
rkayaith
215eba4e1e [mlir][CAPI] Include anchor op in mlirParsePassPipeline
The pipeline string must now include the pass manager's anchor op. This
makes the parse API properly roundtrip the printed form of a pass
manager. Since this is already an API break, I also added an extra
callback argument which is used for reporting errors.

The old functionality of appending to an existing pass manager is
available through `mlirOpPassManagerAddPipeline`.

Reviewed By: mehdi_amini, ftynse

Differential Revision: https://reviews.llvm.org/D136403
2022-11-03 11:48:21 -04:00
rkayaith
f9f708ef41 [mlir][CAPI] Allow specifying pass manager anchor
This adds a new function for creating pass managers that takes an
argument for the anchor string.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D136404
2022-10-27 13:32:14 -04:00
rkayaith
b3c5f6b15b [mlir][python] Include pipeline parse errors in exception message
Currently any errors during pipeline parsing are reported to stderr.
This adds a new pipeline parsing function to the C api that reports
errors through a callback, and updates the python bindings to use it.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D136402
2022-10-27 13:05:38 -04:00
Denys Shabalin
95c083f579 [mlir] Fix and test python bindings for dump_to_object_file
Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D136334
2022-10-20 15:53:16 +02:00
wren romano
0e77b63bc0 [mlir][sparse] Use the runtime DimLevelType instead of a separate tablegen enum
This differential replaces all uses of SparseTensorEncodingAttr::DimLevelType with DimLevelType.  The next differential will break out a separate library for the DimLevelType enum, so that the Dialect code doesn't need to depend on the rest of the runtime

Depends On D135995

Reviewed By: aartbik

Differential Revision: https://reviews.llvm.org/D135996
2022-10-18 13:45:26 -07:00
Alexander Belyaev
a7cccb9cbb [mlir] Simplify DestinationStyleOpInterface.
Differential Revision: https://reviews.llvm.org/D135348
2022-10-17 12:43:41 +02:00
Alex Zinenko
3e1f6d02f7 [mlir] add OperationType to the Transform dialect
Add a new OperationType handle type to the Transform dialect. This
transform type is parameterized by the name of the payload operation it
can point to. It is intended as a constraint on transformations that are
only applicable to a specific kind of payload operations. If a
transformation is applicable to a small set of operation classes, it can
be wrapped into a transform op by using a disjunctive constraint, such
as `Type<Or<[Transform_ConcreteOperation<"foo">.predicate,
Transform_ConcreteOperation<"bar">.predicate]>>` for its operand without
modifying this type. Broader sets of accepted operations should be
modeled as specific types.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D135586
2022-10-11 09:55:19 +00:00
Aart Bik
c48e90877f [mlir][sparse] introduce a higher-order tensor mapping
This extension to the sparse tensor type system in MLIR
opens up a whole new set of sparse storage schemes, such as
block sparse storage (e.g. BCSR) and ELL (aka jagged diagonals).

This revision merely introduces the type extension and
initial documentation. The actual interpretation of the type
(reading in tensors, lowering to code, etc.) will follow.

Reviewed By: Peiming

Differential Revision: https://reviews.llvm.org/D135206
2022-10-05 09:40:51 -07:00
Stella Laurenzo
e28b15b572 Add APFloat and MLIR type support for fp8 (e5m2).
(Re-Apply with fixes to clang MicrosoftMangle.cpp)

This is a first step towards high level representation for fp8 types
that have been built in to hardware with near term roadmaps. Like the
BFLOAT16 type, the family of fp8 types are inspired by IEEE-754 binary
floating point formats but, due to the size limits, have been tweaked in
various ways in order to maximally use the range/precision in various
scenarios. The list of variants is small/finite and bounded by real
hardware.

This patch introduces the E5M2 FP8 format as proposed by Nvidia, ARM,
and Intel in the paper: https://arxiv.org/pdf/2209.05433.pdf

As the more conformant of the two implemented datatypes, we are plumbing
it through LLVM's APFloat type and MLIR's type system first as a
template. It will be followed by the range optimized E4M3 FP8 format
described in the paper. Since that format deviates further from the
IEEE-754 norms, it may require more debate and implementation
complexity.

Given that we see two parts of the FP8 implementation space represented
by these cases, we are recommending naming of:

* `F8M<N>` : For FP8 types that can be conceived of as following the
  same rules as FP16 but with a smaller number of mantissa/exponent
  bits. Including the number of mantissa bits in the type name is enough
  to fully specify the type. This naming scheme is used to represent
  the E5M2 type described in the paper.
* `F8M<N>F` : For FP8 types such as E4M3 which only support finite
  values.

The first of these (this patch) seems fairly non-controversial. The
second is previewed here to illustrate options for extending to the
other known variant (but can be discussed in detail in the patch
which implements it).

Many conversations about these types focus on the Machine-Learning
ecosystem where they are used to represent mixed-datatype computations
at a high level. At that level (which is why we also expose them in
MLIR), it is important to retain the actual type definition so that when
lowering to actual kernels or target specific code, the correct
promotions, casts and rescalings can be done as needed. We expect that
most LLVM backends will only experience these types as opaque `I8`
values that are applicable to some instructions.

MLIR does not make it particularly easy to add new floating point types
(i.e. the FloatType hierarchy is not open). Given the need to fully
model FloatTypes and make them interop with tooling, such types will
always be "heavy-weight" and it is not expected that a highly open type
system will be particularly helpful. There are also a bounded number of
floating point types in use for current and upcoming hardware, and we
can just implement them like this (perhaps looking for some cosmetic
ways to reduce the number of places that need to change). Creating a
more generic mechanism for extending floating point types seems like it
wouldn't be worth it and we should just deal with defining them one by
one on an as-needed basis when real hardware implements a new scheme.
Hopefully, with some additional production use and complete software
stacks, hardware makers will converge on a set of such types that is not
terribly divergent at the level that the compiler cares about.

(I cleaned up some old formatting and sorted some items for this case:
If we converge on landing this in some form, I will NFC commit format
only changes as a separate commit)

Differential Revision: https://reviews.llvm.org/D133823
2022-10-04 17:18:17 -07:00
Jacques Pienaar
9181673bef [mlir][c] Init MLProgram C API
Add MLIR upstream C api library definition.

Differential Revision: https://reviews.llvm.org/D135083
2022-10-03 09:38:17 -07:00
Vitaly Buka
e68c7a9917 Revert "Add APFloat and MLIR type support for fp8 (e5m2)."
Breaks bots https://lab.llvm.org/buildbot/#/builders/37/builds/17086

This reverts commit 2dc68b5398.
2022-10-02 21:22:44 -07:00
Stella Laurenzo
2dc68b5398 Add APFloat and MLIR type support for fp8 (e5m2).
This is a first step towards high level representation for fp8 types
that have been built in to hardware with near term roadmaps. Like the
BFLOAT16 type, the family of fp8 types are inspired by IEEE-754 binary
floating point formats but, due to the size limits, have been tweaked in
various ways in order to maximally use the range/precision in various
scenarios. The list of variants is small/finite and bounded by real
hardware.

This patch introduces the E5M2 FP8 format as proposed by Nvidia, ARM,
and Intel in the paper: https://arxiv.org/pdf/2209.05433.pdf

As the more conformant of the two implemented datatypes, we are plumbing
it through LLVM's APFloat type and MLIR's type system first as a
template. It will be followed by the range optimized E4M3 FP8 format
described in the paper. Since that format deviates further from the
IEEE-754 norms, it may require more debate and implementation
complexity.

Given that we see two parts of the FP8 implementation space represented
by these cases, we are recommending naming of:

* `F8M<N>` : For FP8 types that can be conceived of as following the
  same rules as FP16 but with a smaller number of mantissa/exponent
  bits. Including the number of mantissa bits in the type name is enough
  to fully specify the type. This naming scheme is used to represent
  the E5M2 type described in the paper.
* `F8M<N>F` : For FP8 types such as E4M3 which only support finite
  values.

The first of these (this patch) seems fairly non-controversial. The
second is previewed here to illustrate options for extending to the
other known variant (but can be discussed in detail in the patch
which implements it).

Many conversations about these types focus on the Machine-Learning
ecosystem where they are used to represent mixed-datatype computations
at a high level. At that level (which is why we also expose them in
MLIR), it is important to retain the actual type definition so that when
lowering to actual kernels or target specific code, the correct
promotions, casts and rescalings can be done as needed. We expect that
most LLVM backends will only experience these types as opaque `I8`
values that are applicable to some instructions.

MLIR does not make it particularly easy to add new floating point types
(i.e. the FloatType hierarchy is not open). Given the need to fully
model FloatTypes and make them interop with tooling, such types will
always be "heavy-weight" and it is not expected that a highly open type
system will be particularly helpful. There are also a bounded number of
floating point types in use for current and upcoming hardware, and we
can just implement them like this (perhaps looking for some cosmetic
ways to reduce the number of places that need to change). Creating a
more generic mechanism for extending floating point types seems like it
wouldn't be worth it and we should just deal with defining them one by
one on an as-needed basis when real hardware implements a new scheme.
Hopefully, with some additional production use and complete software
stacks, hardware makers will converge on a set of such types that is not
terribly divergent at the level that the compiler cares about.

(I cleaned up some old formatting and sorted some items for this case:
If we converge on landing this in some form, I will NFC commit format
only changes as a separate commit)

Differential Revision: https://reviews.llvm.org/D133823
2022-10-02 17:17:08 -07:00
Denys Shabalin
ac2e2d6598 [mlir] Add Python bindings for StridedLayoutAttr
Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D134869
2022-09-29 11:03:30 +00:00
Denys Shabalin
0aced4e02b [mlir] Add C bindings for StridedArrayAttr
Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D134808
2022-09-29 11:52:57 +02:00
Mehdi Amini
89418ddcb5 Plumb write_bytecode to the Python API
This adds a `write_bytecode` method to the Operation class.
The method takes a file handle and writes the binary blob to it.

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D133210
2022-09-05 12:02:06 +00:00
Jeff Niu
cec7e80ebd [mlir] Make DenseArrayAttr generic
This patch turns `DenseArrayBaseAttr` into a fully-functional attribute by
adding a generic parser and printer, supporting bool or integer and floating
point element types with bitwidths divisible by 8. It has been renamed
to `DenseArrayAttr`. The patch maintains the specialized subclasses,
e.g. `DenseI32ArrayAttr`, which remain the preferred API for accessing
elements in C++.

This allows `DenseArrayAttr` to hold signed and unsigned integer elements:

```
array<si8: -128, 127>
array<ui8: 255>
```

"Exotic" floating point elements:

```
array<bf16: 1.2, 3.4>
```

And integers of other bitwidths:

```
array<i24: 8388607>
```

Reviewed By: rriddle, lattner

Differential Revision: https://reviews.llvm.org/D132758
2022-08-30 13:29:24 -07:00
Aart Bik
1b434652c5 [mlir][sparse] add more dimension level types and properties
We recently removed the singleton dimension level type (see the revision
https://reviews.llvm.org/D131002) since it was unimplemented but also
incomplete (properties were missing). This revision add singleton back as
extra dimension level type, together with properties ordered/not-ordered
and unique/not-unique. Even though still not lowered to actual code, this
provides a complete way of defining many more sparse storage schemes (in
the long run, we want to support even dimension level types and properties
using the additional extensions proposed in [Chou]).

Note that the current solution of using suffixes for the properties is not
ideal, but keeps the extension relatively simple with respect to parsing and
printing. Furthermore, it is rather consistent with the TACO implementation
which uses things like Compressed-Unique as well. Nevertheless, we probably
want to separate dimension level types from properties when we add more types
and properties.

Reviewed By: Peiming

Differential Revision: https://reviews.llvm.org/D132897
2022-08-30 10:37:49 -07:00
Kazu Hirata
258531b7ac Remove redundant initialization of Optional (NFC) 2022-08-20 21:18:28 -07:00
Jeff Niu
619fd8c2ab [mlir][python] Add python bindings for DenseArrayAttr
This patch adds python bindings for the dense array variants.

Fixes #56975

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D131801
2022-08-12 19:44:49 -04:00
Nikita Popov
57a9bccec7 [MLIR] Fix checks for native arch
Using if (TARGET ${LLVM_NATIVE_ARCH}) only works if MLIR is built
together with LLVM, but not for standalone builds of MLIR. The
correct way to check this is
if (${LLVM_NATIVE_ARCH} IN_LIST LLVM_TARGETS_TO_BUILD), as the
LLVM build system exports LLVM_TARGETS_TO_BUILD.

To avoid repeating the same check many times, add a
MLIR_ENABLE_EXECUTION_ENGINE variable.

Differential Revision: https://reviews.llvm.org/D131071
2022-08-04 11:10:08 +02:00
Aart Bik
9921ef73c8 [mlir][sparse] remove singleton dimension level type (for now)
Although we have plans to support this, and many other, dimension level type(s), currently the tag is not supported. It will be easy to add this back once support is added.

NOTE: based on discussion in https://discourse.llvm.org/t/overcoming-sparsification-limitation-on-level-types/62585

https://github.com/llvm/llvm-project/issues/51658

Reviewed By: Peiming

Differential Revision: https://reviews.llvm.org/D131002
2022-08-02 11:48:49 -07:00
River Riddle
40abd7ea64 [mlir] Remove OpaqueElementsAttr
This attribute is technical debt from the early stages of MLIR, before
ElementsAttr was an interface and when it was more difficult for
dialects to define their own types of attributes. At present it isn't
used at all in tree (aside from being convenient for eliding other
ElementsAttr), and has had little to no evolution in the past three years.

Differential Revision: https://reviews.llvm.org/D129917
2022-08-01 15:00:54 -07:00
Jeff Niu
e179532284 [mlir] Remove types from attributes
This patch removes the `type` field from `Attribute` along with the
`Attribute::getType` accessor.

Going forward, this means that attributes in MLIR will no longer have
types as a first-class concept. This patch lays the groundwork to
incrementally remove or refactor code that relies on generic attributes
being typed. The immediate impact will be on attributes that rely on
`Attribute` containing a type, such as `IntegerAttr`,
`DenseElementsAttr`, and `ml_program::ExternAttr`, which will now need
to define a type parameter on their storage classes. This will save
memory as all other attribute kinds will no longer contain a type.

Moreover, it will not be possible to generically query the type of an
attribute directly. This patch provides an attribute interface
`TypedAttr` that implements only one method, `getType`, which can be
used to generically query the types of attributes that implement the
interface. This interface can be used to retain the concept of a "typed
attribute". The ODS-generated accessor for a `type` parameter
automatically implements this method.

Next steps will be to refactor the assembly formats of certain operations
that rely on `parseAttribute(type)` and `printAttributeWithoutType` to
remove special handling of type elision until `type` can be removed from
the dialect parsing hook entirely; and incrementally remove uses of
`TypedAttr`.

Reviewed By: lattner, rriddle, jpienaar

Differential Revision: https://reviews.llvm.org/D130092
2022-07-31 20:01:31 -04:00
River Riddle
c60b897d22 [mlir] Refactor the Parser library in preparation for an MLIR binary format
The current Parser library is solely focused on providing API for
the textual MLIR format, but MLIR will soon also provide a binary
format. This commit renames the current Parser library to AsmParser to
better correspond to what the library is actually intended for. A new
Parser library is added which will act as a unified parser interface
between both text and binary formats. Most parser clients are
unaffected, given that the unified interface is essentially the same as
the current interface. Only clients that rely on utilizing the
AsmParserState, or those that want to parse Attributes/Types need to be
updated to point to the AsmParser library.

Differential Revision: https://reviews.llvm.org/D129605
2022-07-25 16:33:01 -07:00
Tanyo Kwok
5b0d6bf210 [MLIR] Add function to create Float16 array attribute
This patch adds a new function mlirDenseElementsAttrFloat16Get(),
which accepts the shaped type, the number of Float16 values, and a
pointer to an array of Float16 values, each of which is a uint16_t
value.

This commit is repeating https://reviews.llvm.org/D123981 + #761 but for Float16

Differential Revision: https://reviews.llvm.org/D130069
2022-07-20 21:58:15 +00:00
Stella Laurenzo
5e83a5b475 [mlir] Overhaul C/Python registration APIs to properly scope registration/loading activities.
Since the very first commits, the Python and C MLIR APIs have had mis-placed registration/load functionality for dialects, extensions, etc. This was done pragmatically in order to get bootstrapped and then just grew in. Downstreams largely bypass and do their own thing by providing various APIs to register things they need. Meanwhile, the C++ APIs have stabilized around this and it would make sense to follow suit.

The thing we have observed in canonical usage by downstreams is that each downstream tends to have native entry points that configure its installation to its preferences with one-stop APIs. This patch leans in to this approach with `RegisterEverything.h` and `mlir._mlir_libs._mlirRegisterEverything` being the one-stop entry points for the "upstream packages". The `_mlir_libs.__init__.py` now allows customization of the environment and Context by adding "initialization modules" to the `_mlir_libs` package. If present, `_mlirRegisterEverything` is treated as such a module. Others can be added by downstreams by adding a `_site_initialize_{i}.py` module, where '{i}' is a number starting with zero. The number will be incremented and corresponding module loaded until one is not found. Initialization modules can:

* Perform load time customization to the global environment (i.e. registering passes, hooks, etc).
* Define a `register_dialects(registry: DialectRegistry)` function that can extend the `DialectRegistry` that will be used to bootstrap the `Context`.
* Define a `context_init_hook(context: Context)` function that will be added to a list of callbacks which will be invoked after dialect registration during `Context` initialization.

Note that the `MLIRPythonExtension.RegisterEverything` is not included by default when building a downstream (its corresponding behavior was prior). For downstreams which need the default MLIR initialization to take place, they must add this back in to their Python CMake build just like they add their own components (i.e. to `add_mlir_python_common_capi_library` and `add_mlir_python_modules`). It is perfectly valid to not do this, in which case, only the things explicitly depended on and initialized by downstreams will be built/packaged. If the downstream has not been set up for this, it is recommended to simply add this back for the time being and pay the build time/package size cost.

CMake changes:
* `MLIRCAPIRegistration` -> `MLIRCAPIRegisterEverything` (renamed to signify what it does and force an evaluation: a number of places were incidentally linking this very expensive target)
* `MLIRPythonSoure.Passes` removed (without replacement: just drop)
* `MLIRPythonExtension.AllPassesRegistration` removed (without replacement: just drop)
* `MLIRPythonExtension.Conversions` removed (without replacement: just drop)
* `MLIRPythonExtension.Transforms` removed (without replacement: just drop)

Header changes:
* `mlir-c/Registration.h` is deleted. Dialect registration functionality is now in `IR.h`. Registration of upstream features are in `mlir-c/RegisterEverything.h`. When updating MLIR and a couple of downstreams, I found that proper usage was commingled so required making a choice vs just blind S&R.

Python APIs removed:
  * mlir.transforms and mlir.conversions (previously only had an __init__.py which indirectly triggered `mlirRegisterTransformsPasses()` and `mlirRegisterConversionPasses()` respectively). Downstream impact: Remove these imports if present (they now happen as part of default initialization).
  * mlir._mlir_libs._all_passes_registration, mlir._mlir_libs._mlirTransforms, mlir._mlir_libs._mlirConversions. Downstream impact: None expected (these were internally used).

C-APIs changed:
  * mlirRegisterAllDialects(MlirContext) now takes an MlirDialectRegistry instead. It also used to trigger loading of all dialects, which was already marked with a TODO to remove -- it no longer does, and for direct use, dialects must be explicitly loaded. Downstream impact: Direct C-API users must ensure that needed dialects are loaded or call `mlirContextLoadAllAvailableDialects(MlirContext)` to emulate the prior behavior. Also see the `ir.c` test case (e.g. `  mlirContextGetOrLoadDialect(ctx, mlirStringRefCreateFromCString("func"));`).
  * mlirDialectHandle* APIs were moved from Registration.h (which now is restricted to just global/upstream registration) to IR.h, arguably where it should have been. Downstream impact: include correct header (likely already doing so).

C-APIs added:
  * mlirContextLoadAllAvailableDialects(MlirContext): Corresponds to C++ API with the same purpose.

Python APIs added:
  * mlir.ir.DialectRegistry: Mapping for an MlirDialectRegistry.
  * mlir.ir.Context.append_dialect_registry(MlirDialectRegistry)
  * mlir.ir.Context.load_all_available_dialects()
  * mlir._mlir_libs._mlirAllRegistration: New native extension that exposes a `register_dialects(MlirDialectRegistry)` entry point and performs all upstream pass/conversion/transforms registration on init. In this first step, we eagerly load this as part of the __init__.py and use it to monkey patch the Context to emulate prior behavior.
  * Type caster and capsule support for MlirDialectRegistry

This should make it possible to build downstream Python dialects that only depend on a subset of MLIR. See: https://github.com/llvm/llvm-project/issues/56037

Here is an example PR, minimally adapting IREE to these changes: https://github.com/iree-org/iree/pull/9638/files In this situation, IREE is opting to not link everything, since it is already configuring the Context to its liking. For projects that would just like to not think about it and pull in everything, add `MLIRPythonExtension.RegisterEverything` to the list of Python sources getting built, and the old behavior will continue.

Reviewed By: mehdi_amini, ftynse

Differential Revision: https://reviews.llvm.org/D128593
2022-07-16 17:27:50 -07:00
Alex Zinenko
ff6e5508d6 [mlir] Structured transforms: introduce op splitting
Introduce a new transformation on structured ops that splits the iteration
space into two parts along the specified dimension. The index at which the
splitting happens may be static or dynamic. This transformation can be seen as
a rudimentary form of index-set splitting that only supports the splitting
along hyperplanes parallel to the iteration space hyperplanes, and is therefore
decomposable into per-dimension application.

It is a key low-level transformation that enables independent scheduling for
different parts of the iteration space of the same op, which hasn't been
possible previously. It may be used to implement, e.g., multi-sized tiling. In
future, peeling can be implemented as a combination of split-off amount
computation and splitting.

The transformation is conceptually close to tiling in its separation of the
iteration and data spaces, but cannot be currently implemented on top of
TilingInterface as the latter does not properly support `linalg.index`
offsetting.

Note that the transformation intentionally bypasses folding of
`tensor.extract_slice` operations when creating them as this folding was found
to prevent repeated splitting of the same operation because due to internal
assumptions about extract/insert_slice combination in dialect utilities.

Reviewed By: nicolasvasilache

Differential Revision: https://reviews.llvm.org/D129090
2022-07-07 13:19:44 +02:00
Alex Zinenko
8b68da2c7d [mlir] move SCF headers to SCF/{IR,Transforms} respectively
This aligns the SCF dialect file layout with the majority of the dialects.

Reviewed By: jpienaar

Differential Revision: https://reviews.llvm.org/D128049
2022-06-20 10:18:01 +02:00
Mogball
e16d13322b [mlir] (NFC) Clean up bazel and CMake target names
All dialect targets in bazel have been named *Dialect and all dialect
targets in CMake have been named MLIR*Dialect.
2022-06-13 16:24:15 +00:00
Mogball
d7ef488bb6 [mlir][gpu] Move GPU headers into IR/ and Transforms/
Depends on D127350

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D127352
2022-06-09 22:49:03 +00:00
dime10
4f55ed5a1e Add Python bindings for the OpaqueType
Implement the C-API and Python bindings for the builtin opaque type, which was previously missing.

Reviewed By: ftynse

Differential Revision: https://reviews.llvm.org/D127303
2022-06-08 19:51:00 +02:00
Benjamin Kramer
295d032762 [mlir] Move diagnostic handlers instead of copying
This also allows using unique_ptr instead of shared_ptr for the CAPI
user data. NFCI.
2022-05-21 13:25:24 +02:00
Chris Lattner
f21896f2c6 [DenseElementAttr] Simplify the public API for creating these.
Instead of requiring the client to compute the "isSplat" bit,
compute it internally.  This makes the logic more consistent
and defines away a lot of "elements.size()==1" in the clients.

This addresses Issue #55185

Differential Revision: https://reviews.llvm.org/D125447
2022-05-12 16:18:23 +01:00
Ashay Rane
25c218be36 [MLIR] Add function to create BFloat16 array attribute
This patch adds a new function `mlirDenseElementsAttrBFloat16Get()`,
which accepts the shaped type, the number of BFloat16 values, and a
pointer to an array of BFloat16 values, each of which is a `uint16_t`
value.

Reviewed By: stellaraccident

Differential Revision: https://reviews.llvm.org/D123981
2022-04-19 19:27:06 +00:00
Arthur Eubanks
7ccd026cf2 Reland [mlir] Remove uses of LLVM's legacy pass manager
Use the new pass manager.

This also removes the ability to run arbitrary sets of passes. Not sure if this functionality is used, but it doesn't seem to be tested.

No need to initialize passes outside of constructing the PassBuilder with the new pass manager.

Reland: Fixed custom calls to `-lower-matrix-intrinsics` in integration tests by replacing them with `-O0 -enable-matrix`.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D123425
2022-04-11 16:53:32 -07:00
Arthur Eubanks
c3efb75061 Revert "[mlir] Remove uses of LLVM's legacy pass manager"
This reverts commit b0f7f6f78d.

Causes test failures: https://lab.llvm.org/buildbot#builders/61/builds/24879
2022-04-11 16:45:19 -07:00
Arthur Eubanks
b0f7f6f78d [mlir] Remove uses of LLVM's legacy pass manager
Use the new pass manager.

This also removes the ability to run arbitrary sets of passes. Not sure if this functionality is used, but it doesn't seem to be tested.

No need to initialize passes outside of constructing the PassBuilder with the new pass manager.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D123425
2022-04-11 16:18:45 -07:00
John Demme
8d8738f6fe [MLIR] Add block detach func to CAPI and use it in Python bindings
Adds `mlirBlockDetach` to the CAPI to remove a block from its parent
region. Use it in the Python bindings to implement
`Block.append_to(region)`.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D123165
2022-04-06 13:11:56 -07:00
Benjamin Kramer
4ae24d9fd9 [mlir][capi] Unbreak Interfaces CAPI after 2387fadea3
No idea why check-mlir doesn't build this.
2022-04-04 18:52:11 +02:00
Daniel Resnick
2387fadea3 [mlir][capi] Add external pass creation to MLIR C-API
Adds the ability to create external passes using the C-API. This allows passes
to be written in C or languages that use the C-bindings.

Differential Revision: https://reviews.llvm.org/D121866
2022-04-04 10:27:11 -06:00
Martin Erhart
f4548ed7fc [mlir] Add C API for ControlFlow dialect
Add basic C API for the ControlFlow dialect. Follows the format of the other dialects.

Reviewed By: mehdi_amini

Differential Revision: https://reviews.llvm.org/D121867
2022-03-17 00:29:00 +01:00
Christian Sigg
dfaadf6b12 Update more parseSourceString() call sites.
Change to non-deprecated function template (see D121075).

Reviewed By: rriddle

Differential Revision: https://reviews.llvm.org/D121102
2022-03-08 13:25:54 +01:00
River Riddle
9eaff42360 [mlir][NFC] Move Parser.h to Parser/
There is no reason for this file to be at the top-level, and
its current placement predates the Parser/ folder's existence.

Differential Revision: https://reviews.llvm.org/D121024
2022-03-07 01:05:38 -08:00