Linalg is designed to solve the High-level Hierarchical Optimization (HHO box) in MLIR and to interoperate nicely within a Mixture Of Expert Compilers environment (i.e. the CGSel box).
The Rationale Document goes into significantly more design and architectural decision details.
The following key transformations have been central to driving the design of Linalg. They are all implemented in terms of the properties of the linalg.generic
OpInterface and avoid the pitfall of relying on hardcoded one-off op knowledge.
The textual form description of these transformations is left for future work. Still, it is useful to list the key transformations that are performed on the Linalg IR and that have influenced its design:
Linalg takes at least some inspiration from all previously listed prior art. The design enables the definition of CustomOps with generic properties that enable key transformations, including lowering to scalar load/store and other operations or to external library calls and intrinsics.
These ops can have either tensor or buffer as both input and output operands. Output tensors operands serve the purpose of providing a unifying abstraction and give a shape to the results. Output tensors can come in 2 flavors and are always associated with a corresponding op result:
an “init tensor” output value which provides an initial value for a tensor that is created by iteratively updating the result (also called “destructive updates”). Such tensor is always materialized in some form. If enough fusion occurs it may end up being materialized only as a register-level SSA value. It is expected (but not required) that the destructive update pattern can be rewritten as an inplace update on buffers.
a “shape-only” tensor output value whose underlying elements are not used in the payload computation and only serves the purpose of carrying shape information to lower levels of abstraction. In the future this will be replaced by an appropriate shape type when it is available as a builtin type (see the discourse discussion Linalg and Shapes for more details).
Linalg defines a payload carrying operation that implements the structured op abstraction on tensors and buffers. This linalg.generic
operation can express custom operations that optionally have indexing semantics (by accessing the iteration indices using the linalg.index
operation). The properties of linalg.generic
are the result of applying the guiding principles described in the Rationale Document. They are listed next, with a brief example and discussion for each.
A linalg.generic
op fully derives the specification of its iteration space from its operands. The property enforces that a localized IR element (the op) has all the information needed to synthesize the control-flow required to iterate over its operands, according to their type. This notion of IR localization bears some resemblance to URUK.
Consider the following fully specified linalg.generic
example. Here, the first operand is a memref
of f32
scalar elements that has an ordinary identity layout, and the second one is a memref
of 4-element vectors with a 2-strided, 1-offset layout.
// File name: example1.mlir #accesses = [ affine_map<(m) -> (m)>, affine_map<(m) -> (m)> ] #attrs = { indexing_maps = #accesses, iterator_types = ["parallel"] } // memory layouts #identity = affine_map<(d0) -> (d0)> func @example(%A: memref<?xf32, #identity>, %B: memref<?xvector<4xf32>, offset: 1, strides: [2]>) { linalg.generic #attrs ins(%A: memref<?xf32, #identity>) outs(%B: memref<?xvector<4xf32>, offset: 1, strides: [2]>) { ^bb0(%a: f32, %b: vector<4xf32>): %c = "some_compute"(%a, %b): (f32, vector<4xf32>) -> (vector<4xf32>) linalg.yield %c: vector<4xf32> } return }
The property “Input and Output Operands Define The Iteration Space” is materialized by a lowering into a form that will resemble:
// Run: mlir-opt example1.mlir -allow-unregistered-dialect -convert-linalg-to-loops // This converted representation is in the `scf` dialect. // It's syntax can be found here: https://mlir.llvm.org/docs/Dialects/SCFDialect/ #map0 = affine_map<(d0) -> (d0 * 2 + 1)> func @example(%arg0: memref<?xf32>, %arg1: memref<?xvector<4xf32>, #map0>) { %c0 = arith.constant 0 : index %c1 = arith.constant 1 : index %0 = memref.dim %arg0, %c0 : memref<?xf32> scf.for %arg2 = %c0 to %0 step %c1 { %1 = memref.load %arg0[%arg2] : memref<?xf32> %2 = memref.load %arg1[%arg2] : memref<?xvector<4xf32>, #map0> %3 = "some_compute"(%1, %2) : (f32, vector<4xf32>) -> vector<4xf32> memref.store %3, %arg1[%arg2] : memref<?xvector<4xf32>, #map0> } return }
The property participates in simplifying analyses and transformations. For instance, it guarantees no out-of bounds access can occur by construction (assuming dynamic operand dimensions agree with each other, which is the purpose of the assert
runtime check).
Before lowering to loop form, loop induction variables and iterators are implicit (i.e. not yet materialized).
The main implications are that:
The semantics of the ops are restricted to operate on structured data types, on which we can define an iterator.
This does not model arbitrary code with side-effects.
We do not think these are serious limitations in practice because MLIR is all about mixing different levels of abstractions in the same IR. As long as Linalg can progressively lower to the next level of abstraction, it can also be just bypassed for things that do not fit.
At the same time, conditioning op semantics on structured data types is a very promising path towards extensibility to non-dense tensors as experience with LIFT abstractions for sparse and position-dependent arrays, as well as TACO, has shown.
A linalg.generic
defines the mapping between the iteration space (i.e. the loops) and the data.
Consider the following fully specified linalg.generic
example. Here, the first memref
is a 2-strided one on both of its dimensions, and the second memref
uses an identity layout.
// File name: example2.mlir #indexing_maps = [ affine_map<(i, j) -> (j, i)>, affine_map<(i, j) -> (j)> ] #attrs = { indexing_maps = #indexing_maps, iterator_types = ["parallel", "parallel"] } func @example(%A: memref<8x?xf32, offset: 0, strides: [2, 2]>, %B: memref<?xvector<4xf32>>) { linalg.generic #attrs ins(%A: memref<8x?xf32, offset: 0, strides: [2, 2]>) outs(%B: memref<?xvector<4xf32>>) { ^bb0(%a: f32, %b: vector<4xf32>): %c = "some_compute"(%a, %b): (f32, vector<4xf32>) -> (vector<4xf32>) linalg.yield %c: vector<4xf32> } return }
The property “Reversible Mappings Between Control and Data Structures” is materialized by a lowering into a form that will resemble:
// Run: mlir-opt example2.mlir -allow-unregistered-dialect -convert-linalg-to-loops #map0 = affine_map<(d0, d1) -> (d0 * 2 + d1 * 2)> func @example(%arg0: memref<8x?xf32, #map0>, %arg1: memref<?xvector<4xf32>>) { %c8 = arith.constant 8 : index %c0 = arith.constant 0 : index %c1 = arith.constant 1 : index %0 = memref.dim %arg0, %c1 : memref<8x?xf32, #map0> scf.for %arg2 = %c0 to %0 step %c1 { scf.for %arg3 = %c0 to %c8 step %c1 { %1 = memref.load %arg0[%arg3, %arg2] : memref<8x?xf32, #map0> %2 = memref.load %arg1[%arg3] : memref<?xvector<4xf32>> %3 = "some_compute"(%1, %2) : (f32, vector<4xf32>) -> vector<4xf32> memref.store %3, %arg1[%arg3] : memref<?xvector<4xf32>> } } return }
This mapping needs to be reversible because we want to be able to go back and forth between the two and answer questions such as:
Answering these 2
questions is one of the main analyses that Linalg uses to implement transformations such as tiling, tiled producer-consumer fusion, and promotion to temporary buffers in fast memory.
In the current implementation, linalg.generic
uses a list of AffineMaps (see the #indexing_maps
attribute in the previous examples). This is a pragmatic short-term solution, but in the longer term note that this property could be even evaluated dynamically, similarly to inspector-executor algorithms.
A linalg.generic
op fully declares the type of its iterators. This information is used in transformations.
These properties are derived from established practice in the field and mirror the properties from Ken Kennedy's Optimizing Compilers for Modern Architectures. The key idea of legality of loop transformations expressed by Kennedy is that the lexicographic order of all dependence vectors must be preserved.
This can be better captured directly at the loop level thanks to specific iterator types, among which: parallel, reduction, partition, permutable/monotonic, sequential, dependence distance, ...
These types are traditionally the result of complex dependence analyses and have been referred to as “bands” in the polyhedral community (e.g. parallel bands, permutable bands, etc, in ISL schedule tree parlance).
Specifying the information declaratively in a linalg.generic
allows conveying properties that may be hard (or even impossible) to derive from lower-level information. These properties can be brought all the way to the moment when they are useful for transformations, used and then discarded.
Additionally, these properties may also be viewed as a contract that the frontend/user guarantees and that the compiler may take advantage of. The common example is the use of data-dependent reduction semantics for specifying histogram computations. If the frontend has additional knowledge that proper atomic operations are available, it may be better to specify parallel semantics and use the special atomic in the computation region.
At this time, Linalg only has an explicit use for parallel and reduction loops but previous experience shows that the abstraction generalizes.
A linalg.generic
op has a compute payload that is fully generic thanks to the use of Regions.
The region takes as arguments the scalar elemental types of the tensor or buffer operands of the linalg.generic
. For flexibility and ability to match library calls, additional special values may be passed. For instance, a linalg.fill
operation takes a buffer and an additional scalar value.
At this time there are no additional restrictions to the region semantics. This is meant to allow the exploration of various design tradeoffs at the intersection of regions and iterator types. In particular, the frontend is responsible for the semantics of iterator types to correspond to the operations inside the region: the region can capture buffers arbitrarily and write into them. If this conflicts with some parallel iterator requirement, this is undefined behavior.
Previous examples already elaborate compute payloads with an unregistered function "some_compute"
. The following code snippet shows what the result will be when using a concrete operation addf
:
// File name: example3.mlir #map = affine_map<(i, j) -> (i, j)> #attrs = { indexing_maps = [#map, #map, #map], iterator_types = ["parallel", "parallel"] } func @example(%A: memref<?x?xf32>, %B: memref<?x?xf32>, %C: memref<?x?xf32>) { linalg.generic #attrs ins(%A, %B: memref<?x?xf32>, memref<?x?xf32>) outs(%C: memref<?x?xf32>) { ^bb0(%a: f32, %b: f32, %c: f32): %d = arith.addf %a, %b : f32 linalg.yield %d : f32 } return }
This function basically element-wise adds up two matrices (%A
and %B
) and stores the result into another one (%C
).
The property “The Compute Payload is Specified With a Region” is materialized by a lowering into a form that will resemble:
func @example(%arg0: memref<?x?xf32>, %arg1: memref<?x?xf32>, %arg2: memref<?x?xf32>) { %c0 = arith.constant 0 : index %c1 = arith.constant 1 : index %0 = memref.dim %arg0, %c0 : memref<?x?xf32> %1 = memref.dim %arg0, %c1 : memref<?x?xf32> scf.for %arg3 = %c0 to %0 step %c1 { scf.for %arg4 = %c0 to %1 step %c1 { %2 = memref.load %arg0[%arg3, %arg4] : memref<?x?xf32> %3 = memref.load %arg1[%arg3, %arg4] : memref<?x?xf32> %4 = arith.addf %2, %3 : f32 memref.store %4, %arg2[%arg3, %arg4] : memref<?x?xf32> } } return }
In the process of lowering to loops and lower-level constructs, similar requirements are encountered, as are discussed in the inlined call op proposal. We expect to be able to reuse the common lower-level infrastructure provided it evolves to support both region arguments and captures.
A linalg.generic
op may map to an external library call by specifying a SymbolAttr
. At this level of abstraction, the important glue is the ability to perform transformations that preserve the structure necessary to call the external library after different transformations have been applied.
This involves considerations related to preservation of op semantics and integration at the ABI level. Regardless of whether one wants to use external library calls or a custom ISA, the problem for codegen is similar: preservation of a fixed granularity.
Consider the following example that adds an additional attribute library_call="pointwise_add"
that specifies the name of an external library call we intend to use:
// File name: example4.mlir #indexing_maps = [ affine_map<(i, j) -> (i, j)>, affine_map<(i, j) -> (i, j)>, affine_map<(i, j) -> (i, j)> ] #attrs = { indexing_maps = #indexing_maps, iterator_types = ["parallel", "parallel"], library_call = "pointwise_add" } func @example(%A: memref<?x?xf32>, %B: memref<?x?xf32>, %C: memref<?x?xf32>) { linalg.generic #attrs ins(%A, %B: memref<?x?xf32>, memref<?x?xf32>) outs(%C: memref<?x?xf32>) { ^bb0(%a: f32, %b: f32, %c: f32): %d = arith.addf %a, %b : f32 linalg.yield %d : f32 } return }
The property “Map To an External Library Call” is materialized by a lowering into a form that will resemble:
// Run: mlir-opt example4.mlir -convert-linalg-to-std // Note that we lower the Linalg dialect directly to the Standard dialect. // See this doc: https://mlir.llvm.org/docs/Dialects/Standard/ #map0 = affine_map<(d0, d1)[s0, s1, s2] -> (d0 * s1 + s0 + d1 * s2)> func @example(%arg0: memref<?x?xf32>, %arg1: memref<?x?xf32>, %arg2: memref<?x?xf32>) { %0 = memref.cast %arg0 : memref<?x?xf32> to memref<?x?xf32, #map0> %1 = memref.cast %arg1 : memref<?x?xf32> to memref<?x?xf32, #map0> %2 = memref.cast %arg2 : memref<?x?xf32> to memref<?x?xf32, #map0> call @pointwise_add(%0, %1, %2) : (memref<?x?xf32, #map0>, memref<?x?xf32, #map0>, memref<?x?xf32, #map0>) -> () return } func @pointwise_add(memref<?x?xf32, #map0>, memref<?x?xf32, #map0>, memref<?x?xf32, #map0>) attributes {llvm.emit_c_interface}
Which, after lowering to LLVM resembles:
// Run: mlir-opt example4.mlir -convert-linalg-to-std | mlir-opt -convert-std-to-llvm // Some generated code are omitted here. func @example(%arg0: !llvm<"float*">, ...) { ... llvm.call @pointwise_add(...) : (!llvm<"float*">, ...) -> () return } llvm.func @pointwise_add(%arg0: !llvm<"float*">, ...) attributes {llvm.emit_c_interface} { ... llvm.call @_mlir_ciface_pointwise_add(%9, %19, %29) : (!llvm."{ float*, float*, i64, [2 x i64], [2 x i64] }*">, !llvm<"{ f32*, f32*, i64, [2 x i64], [2 x i64] }*">, !llvm<"{ float*, float*, i64, [2 x i64], [2 x i64] } *">) -> () llvm.return } llvm.func @_mlir_ciface_pointwise_add(!llvm."{ float*, float*, i64, [2 x i64], [2 x i64] }*">, !llvm<"{ f32*, f32*, i64, [2 x i64], [2 x i64] }*">, !llvm<"{ f32*, f32*, i64, [2 x i64], [2 x i64] }*">) attributes {llvm.emit_c_interface}
The linalg
dialect adopts a convention that is similar to BLAS
when offloading operations to fast library implementations: pass a non-owning pointer to input and output data with additional metadata. This convention is also found in libraries such as MKL
, OpenBLAS
, BLIS
, cuBLAS
, cuDNN
, etc.. and more generally at interface points across language boundaries (e.g. C++ / Python).
Generally, linalg
passes non-owning pointers to View data structures to pre-compiled library calls linked externally.
There is an ongoing discussion on the topic of extending interoperability in the presence of key attributes.
Perfectly nested loops form a particularly important class of structure that enables key loop transformations such as tiling and mapping to library calls. Unfortunately, this type of structure is easily broken by transformations such as partial loop fusion. Tiling and mapping to library calls become more challenging, or even infeasible. Linalg ops adopt perfect-nestedness as a first-class property: the structure cannot be broken and is transported in the IR by construction.
A linalg.generic
op represents a perfectly nested loop nest that writes the entire memory region. This is a structural constraint across regions and loops that has proven to be key in simplifying transformations.
One particular point to mention is that converting imperfectly nested code into perfectly nested code can often be done with enough loop distribution and embedding of conditionals down to the innermost loop level.
Previous experience with Tensor Comprehensions gave us the intuition that forcing innermost control-flow nesting is a lot like writing data-parallel code with arrays of boolean values and predication. This type of trick has also been used before in polyhedral compilers to convert non-affine control into affine compute dependencies.
While it may be possible to automate such rewrites from generic IR, linalg.generic
just forces the semantics for now.
The key implication is that this conversion to deep predication needs to be undone once we are done with Linalg transformations. After iterators and induction variables are materialized (i.e. after lowering out of linalg.generic
occurred), the overall performance will be greatly influenced by the quality of canonicalizations, foldings and Loop Independent Code Motion (LICM).
In the grander scheme, the reliance on late LICM was deemed a necessary risk.
As it stands, the six properties above define the semantics of a linalg.generic
op. It is an open question whether all of these semantics are strictly necessary in practice and whether some should or could be derived automatically while still maintaining the core guiding principles.
For the time being, we have settled on the combination of these properties because of empirical evidence building and working on multiple high-level compilers. As we lay those down and engage more with the community, we expect multiple rounds of discussions and design changes to the original architecture.
The current implementation uses the Strided MemRef (a.k.a View) abstraction. The name View is used interchangeably in linalg
to signify Strided MemRef. In the future we expect to use other structured data types and support ragged, mixed-sparse and other types. We expect to draw on the experience from existing LIFT abstractions for sparse and position-dependent arrays.
A set of ops that manipulate metadata but do not move memory. These ops take view
operands + extra attributes and return new view
s. The returned view
s generally alias the operand view
. At the moment the existing ops are:
* `memref.view`, * `memref.subview`, * `memref.transpose`. * `linalg.range`, * `linalg.slice`, * `linalg.reshape`,
Future ops are added on a per-need basis but should include:
* `linalg.tile`, * `linalg.intersection`, * `linalg.convex_union`, * `linalg.difference` (would need to work on a list of views).
These additional operations correspond to abstractions that have been known to work in the field of large-scale distributed stencil computations.
In a longer-term future, the abstractions from Legion data-centric programming model seem generally appealing.
Additionally, linalg
provides a small subset of commonly named operations:
* `linalg.copy`, * `linalg.fill`, * `linalg.dot`, * `linalg.matmul`, * `linalg.conv`.
These named operations adhere to the linalg.generic
op interface. Work is in progress to define declarative mechanisms to automatically generate named ops from a description in terms of only the generic op interface.
This is the main reason there are only a small number of ops today: we expect them to be auto-generated from Tablegen soon.
Linalg provides a declarative specification and a generation tool (mlir-linalg-ods-gen
) to automatically produce named ops from a notation that is inspired by Einstein notation.
The syntax and semantics used in mlir-linalg-ods-gen
are very much in flight and borrow from Tensor Comprehensions (TC) but differ in a few dimensions, to better adapt to Linalg:
id : type(symbolic-affine-expression-list)
(e.g. A : f32(M, N + M)
) and each new symbol is discovered eagerly. TC on the other hand does not allow general symbolic affine expressions.std_add<k>
specifies that k
is a reduction dimension). In TC, the reduction dimensions are inferred. If one of the operand is not used in any expressions, it will be considered a shape-only operand, and the result of the indexing_map will be reduction dimensions.O(i, j) = std_add<k, l>(...)
, i
(resp. j
) is a parallel iterator encoded by affine dimension of position 0
(resp. 1
); k
(resp. l
) is a reduction iterator encoded by an affine dimension of position 2
(resp. 3
).attr( strides: 2xi32)
and referenced in comprehension like strides[0]
. These attribute uses will be parsed as affine symbols to generate op definition and implementation. For a concrete op instance, the runtime constant values from the attributes will be used to replace the affine symbols and simplify the indexing maps.These decisions and syntax are subject to evolution and change. In particular, op-specific attributes, dynamic ranks, some form of templating, shape calculation function specification, etc. may be added in the future.
At this time, the following restrictions are imposed on the syntax and semantics:
A """
-wrapped doc string can be attached to the named op. It should contain a oneliner for summary first, followed by lengthy description.
The following specification may be used to define a named batchmatmul
op:
def batchmatmul(A: f32(Batch, M, K), B: f32(K, N)) -> (C: f32(Batch, M, N)) """Batch matrix-multiply operation. This operation performs batch matrix-multiply over ... """ { C(b, m, n) = std_addf<k>(std_mulf(A(b, m, k), B(k, n))); }
When mlir-linalg-ods-gen -gen-ods-decl=1
is called, the following ODS is produced:
def batchmatmulOp : LinalgNamedStructured_Op<"batchmatmul", [ NInputs<2>, NOutputs<1>, NamedStructuredOpTrait]> { ... }
When mlir-linalg-ods-gen -gen-impl=1
is called, the following C++ is produced:
llvm::Optional<SmallVector<StringRef, 8>> batchmatmul::referenceIterators() { return SmallVector<StringRef, 8>{ getParallelIteratorTypeName(), getParallelIteratorTypeName(), getParallelIteratorTypeName(), getReductionIteratorTypeName() }; } llvm::Optional<SmallVector<AffineMap, 8>> batchmatmul::referenceIndexingMaps() { MLIRContext *context = getContext(); AffineExpr d0, d1, d2, d3; bindDims(context, d0, d1, d2, d3); return SmallVector<AffineMap, 8>{ AffineMap::get(4, 0, {d0, d1, d3}), AffineMap::get(4, 0, {d3, d2}), AffineMap::get(4, 0, {d0, d1, d2}) }; } void batchmatmul::regionBuilder(ArrayRef<BlockArgument> args) { using namespace edsc; using namespace intrinsics; Value _0(args[0]), _1(args[1]), _2(args[2]); Value _4 = std_mulf(_0, _1); Value _5 = std_addf(_2, _4); (linalg_yield(ValueRange{ _5 })); }
Linalg provides a declarative generation tool (mlir-linalg-ods-yaml-gen
) to automatically produce named ops from a YAML-based op description format intended to capture the structure of the named ops. The YAML-based op descriptions are generated from a higher level DSL and are not meant to be edited directly.
This facility is currently in flight and is intended to subsume the above when ready. See the C++ class to YAML mapping traits in mlir-mlinalg-ods-yaml-gen.cpp
as the source of truth for the schema.
Most of the above documentation roughly applies to this path and will be ported as migration continues.
Multiple open issues and design alternatives are in flight and it is time to lay them out for the community to discuss and pick apart:
linalg.generic
support nesting?linalg.generic
regions take views or only scalars?These key questions (and much more) should be really thought of in the general context of MLIR in which different levels of IR interoperate seamlessly. In practice, it is not necessary (or beneficial) to try and solve all problems in the same IR.
[include “Dialects/LinalgOps.md”]