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SPIR-V Dialect

This document describes the design of the SPIR-V dialect in MLIR. It lists various design choices we made for modeling different SPIR-V mechanisms, and their rationale.

This document also explains in a high-level manner how different components are organized and implemented in the code and gives steps to follow for extending them.

This document assumes familiarity with SPIR-V. SPIR-V is the Khronos Group’s binary intermediate language for representing graphics shaders and compute kernels. It is adopted by multiple Khronos Group’s APIs, including Vulkan and OpenCL. It is fully defined in a human-readable specification; the syntax of various SPIR-V instructions are encoded in a machine-readable grammar.

Design Guidelines

SPIR-V is a binary intermediate language that serves dual purpose: on one side, it is an intermediate language to represent graphics shaders and compute kernels for high-level languages to target; on the other side, it defines a stable binary format for hardware driver consumption. As a result, SPIR-V has design principles pertain to not only intermediate language, but also binary format. For example, regularity is one of the design goals of SPIR-V. All concepts are represented as SPIR-V instructions, including declaring extensions and capabilities, defining types and constants, defining functions, attaching additional properties to computation results, etc. This way favors binary encoding and decoding for driver consumption but not necessarily compiler transformations.

Dialect design principles

The main objective of the SPIR-V dialect is to be a proper intermediate representation (IR) to facilitate compiler transformations. While we still aim to support serializing to and deserializing from the binary format for various good reasons, the binary format and its concerns play less a role in the design of the SPIR-V dialect: when there is a trade-off to be made between favoring IR and supporting binary format, we lean towards the former.

On the IR aspect, the SPIR-V dialect aims to model SPIR-V at the same semantic level. It is not intended to be a higher level or lower level abstraction than the SPIR-V specification. Those abstractions are easily outside the domain of SPIR-V and should be modeled with other proper dialects so they can be shared among various compilation paths. Because of the dual purpose of SPIR-V, SPIR-V dialect staying at the same semantic level as the SPIR-V specification also means we can still have straightforward serailization and deserailization for the majority of functionalities.

To summarize, the SPIR-V dialect follows the following design principles:

  • Stay as the same semantic level as the SPIR-V specification by having one-to-one mapping for most concepts and entities.
  • Adopt SPIR-V specification's syntax if possible, but deviate intentionally to utilize MLIR mechanisms if it results in better representation and benefits transformation.
  • Be straightforward to serialize into and deserialize from the SPIR-V binary format.

SPIR-V is designed to be consumed by hardware drivers, so its representation is quite clear, yet verbose for some cases. Allowing representational deviation gives us the flexibility to reduce the verbosity by using MLIR mechanisms.

Dialect scopes

SPIR-V supports multiple execution environments, specified by client APIs. Notable adopters include Vulkan and OpenCL. It follows that the SPIR-V dialect should support multiple execution environments if to be a proper proxy of SPIR-V in MLIR systems. The SPIR-V dialect is designed with these considerations: it has proper support for versions, extensions, and capabilities and is as extensible as SPIR-V specification.

Conventions

The SPIR-V dialect adopts the following conventions for IR:

  • The prefix for all SPIR-V types and operations are spv..
  • All instructions in an extended instruction set are further qualified with the extended instruction set's prefix. For example, all operations in the GLSL extended instruction set is has the prefix of spv.GLSL..
  • Ops that directly mirror instructions in the specification have CamelCase names that are the same as the instruction opnames (without the Op prefix). For example, spv.FMul is a direct mirror of OpFMul in the specification. Such an op will be serialized into and deserialized from one SPIR-V instruction.
  • Ops with snake_case names are those that have different representation from corresponding instructions (or concepts) in the specification. These ops are mostly for defining the SPIR-V structure. For example, spv.module and spv.constant. They may correspond to one or more instructions during (de)serialization.
  • Ops with _snake_case names are those that have no corresponding instructions (or concepts) in the binary format. They are introduced to satisfy MLIR structural requirements. For example, spv._module_end and spv._merge. They maps to no instructions during (de)serialization.

(TODO: consider merging the last two cases and adopting spv.mlir. prefix for them.)

Module

A SPIR-V module is defined via the spv.module op, which has one region that contains one block. Model-level instructions, including function definitions, are all placed inside the block. Functions are defined using the builtin func op.

We choose to model a SPIR-V module with a dedicated spv.module op based on the following considerations:

  • It maps cleanly to a SPIR-V module in the specification.
  • We can enforce SPIR-V specific verification that is suitable to be performed at the module-level.
  • We can attach additional model-level attributes.
  • We can control custom assembly form.

The spv.module op's region cannot capture SSA values from outside, neither implicitly nor explicitly. The spv.module op's region is closed as to what ops can appear inside: apart from the builtin func op, it can only contain ops from the SPIR-V dialect. The spv.module op's verifier enforces this rule. This meaningfully guarantees that a spv.module can be the entry point and boundary for serialization.

Module-level operations

SPIR-V binary format defines the following sections:

  1. Capabilities required by the module.
  2. Extensions required by the module.
  3. Extended instructions sets required by the module.
  4. Addressing and memory model specification.
  5. Entry point specifications.
  6. Execution mode declarations.
  7. Debug instructions.
  8. Annotation/decoration instructions.
  9. Type, constant, global variables.
  10. Function declarations.
  11. Function definitions.

Basically, a SPIR-V binary module contains multiple module-level instructions followed by a list of functions. Those module-level instructions are essential and they can generate result ids referenced by functions, notably, declaring resource variables to interact with the execution environment.

Compared to the binary format, we adjust how these module-level SPIR-V instructions are represented in the SPIR-V dialect:

Use MLIR attributes for metadata

  • Requirements for capabilities, extensions, extended instruction sets, addressing model, and memory model is conveyed using spv.module attributes. This is considered better because these information are for the execution environment. It's easier to probe them if on the module op itself.
  • Annotations/decoration instructions are "folded" into the instructions they decorate and represented as attributes on those ops. This eliminates potential forward references of SSA values, improves IR readability, and makes querying the annotations more direct. More discussions can be found in the Decorations section.

Model types with MLIR custom types

  • Types are represented using MLIR standard types and SPIR-V dialect specific types. There are no type declaration ops in the SPIR-V dialect. More discussions can be found in the Types section later.

Unify and localize constants

  • Various normal constant instructions are represented by the same spv.constant op. Those instructions are just for constants of different types; using one op to represent them reduces IR verbosity and makes transformations less tedious.
  • Normal constants are not placed in spv.module's region; they are localized into functions. This is to make functions in the SPIR-V dialect to be isolated and explicit capturing. Constants are cheap to duplicate given attributes are uniqued in MLIRContext.

Adopt symbol-based global variables and specialization constant

  • Global variables are defined with the spv.globalVariable op. They do not generate SSA values. Instead they have symbols and should be referenced via symbols. To use a global variables in a function block, spv._address_of is needed to turn the symbol into a SSA value.
  • Specialization constants are defined with the spv.specConstant op. Similar to global variables, they do not generate SSA values and have symbols for reference, too. spv._reference_of is needed to turn the symbol into a SSA value for use in a function block.

The above choices enables functions in the SPIR-V dialect to be isolated and explicit capturing.

Disallow implicit capturing in functions

  • In SPIR-V specification, functions support implicit capturing: they can reference SSA values defined in modules. In the SPIR-V dialect functions are defined with func op, which disallows implicit capturing. This is more friendly to compiler analyses and transformations. More discussions can be found in the Function section later.

Model entry points and execution models as normal ops

  • A SPIR-V module can have multiple entry points. And these entry points refer to the function and interface variables. It’s not suitable to model them as spv.module op attributes. We can model them as normal ops of using symbol references.
  • Similarly for execution modes, which are coupled with entry points, we can model them as normal ops in spv.module's region.

Decorations

Annotations/decorations provide additional information on result ids. In SPIR-V, all instructions can generate result ids, including value-computing and type-defining ones.

For decorations on value result ids, we can just have a corresponding attribute attached to the operation generating the SSA value. For example, for the following SPIR-V:

OpDecorate %v1 RelaxedPrecision
OpDecorate %v2 NoContraction
...
%v1 = OpFMul %float %0 %0
%v2 = OpFMul %float %1 %1

We can represent them in the SPIR-V dialect as:

%v1 = "spv.FMul"(%0, %0) {RelaxedPrecision: unit} : (f32, f32) -> (f32)
%v2 = "spv.FMul"(%1, %1) {NoContraction: unit} : (f32, f32) -> (f32)

This approach benefits transformations. Essentially those decorations are just additional properties of the result ids (and thus their defining instructions). In SPIR-V binary format, they are just represented as instructions. Literally following SPIR-V binary format means we need to through def-use chains to find the decoration instructions and query information from them.

For decorations on type result ids, notice that practically, only result ids generated from composite types (e.g., OpTypeArray, OpTypeStruct) need to be decorated for memory layouting purpose (e.g., ArrayStride, Offset, etc.); scalar/vector types are required to be uniqued in SPIR-V. Therefore, we can just encode them directly in the dialect-specific type.

Types

Theoretically we can define all SPIR-V types using MLIR extensible type system, but other than representational purity, it does not buy us more. Instead, we need to maintain the code and invest in pretty printing them. So we prefer to use builtin/standard types if possible.

The SPIR-V dialect reuses standard integer, float, and vector types:

Specification Dialect
OpTypeBool i1
OpTypeInt <bitwidth> i<bitwidth>
OpTypeFloat <bitwidth> f<bitwidth>
OpTypeVector <scalar-type> <count> vector<<count> x <scalar-type>>

Similarly, mlir::NoneType can be used for SPIR-V OpTypeVoid; builtin function types can be used for SPIR-V OpTypeFunction types.

The SPIR-V dialect and defines the following dialect-specific types:

spirv-type ::= array-type
             | image-type
             | pointer-type
             | runtime-array-type
             | struct-type

Array type

This corresponds to SPIR-V array type. Its syntax is

element-type ::= integer-type
               | floating-point-type
               | vector-type
               | spirv-type

array-type ::= `!spv.array<` integer-literal `x` element-type `>`

For example,

!spv.array<4 x i32>
!spv.array<16 x vector<4 x f32>>

Image type

This corresponds to SPIR-V image type. Its syntax is

dim ::= `1D` | `2D` | `3D` | `Cube` | <and other SPIR-V Dim specifiers...>

depth-info ::= `NoDepth` | `IsDepth` | `DepthUnknown`

arrayed-info ::= `NonArrayed` | `Arrayed`

sampling-info ::= `SingleSampled` | `MultiSampled`

sampler-use-info ::= `SamplerUnknown` | `NeedSampler` | `NoSampler`

format ::= `Unknown` | `Rgba32f` | <and other SPIR-V Image Formats...>

image-type ::= `!spv.image<` element-type `,` dim `,` depth-info `,`
                           arrayed-info `,` sampling-info `,`
                           sampler-use-info `,` format `>`

For example,

!spv.image<f32, 1D, NoDepth, NonArrayed, SingleSampled, SamplerUnknown, Unknown>
!spv.image<f32, Cube, IsDepth, Arrayed, MultiSampled, NeedSampler, Rgba32f>

Pointer type

This corresponds to SPIR-V pointer type. Its syntax is

storage-class ::= `UniformConstant`
                | `Uniform`
                | `Workgroup`
                | <and other storage classes...>

pointer-type ::= `!spv.ptr<` element-type `,` storage-class `>`

For example,

!spv.ptr<i32, Function>
!spv.ptr<vector<4 x f32>, Uniform>

Runtime array type

This corresponds to SPIR-V runtime array type. Its syntax is

runtime-array-type ::= `!spv.rtarray<` element-type `>`

For example,

!spv.rtarray<i32>
!spv.rtarray<vector<4 x f32>>

Struct type

This corresponds to SPIR-V struct type. Its syntax is

struct-member-decoration ::= integer-literal? spirv-decoration*
struct-type ::= `!spv.struct<` spirv-type (`[` struct-member-decoration `]`)?
                     (`, ` spirv-type (`[` struct-member-decoration `]`)?

For Example,

!spv.struct<f32>
!spv.struct<f32 [0]>
!spv.struct<f32, !spv.image<f32, 1D, NoDepth, NonArrayed, SingleSampled, SamplerUnknown, Unknown>>
!spv.struct<f32 [0], i32 [4]>

Function

In SPIR-V, a function construct consists of multiple instructions involving OpFunction, OpFunctionParameter, OpLabel, OpFunctionEnd.

// int f(int v) { return v; }
%1 = OpTypeInt 32 0
%2 = OpTypeFunction %1 %1
%3 = OpFunction %1 %2
%4 = OpFunctionParameter %1
%5 = OpLabel
%6 = OpReturnValue %4
     OpFunctionEnd

This construct is very clear yet quite verbose. It is intended for driver consumption. There is little benefit to literally replicate this construct in the SPIR-V dialect. Instead, we reuse the builtin func op to express functions more concisely:

func @f(%arg: i32) -> i32 {
  "spv.ReturnValue"(%arg) : (i32) -> (i32)
}

A SPIR-V function can have at most one result. It cannot contain nested functions or non-SPIR-V operations. spv.module verifies these requirements.

A major difference between the SPIR-V dialect and the SPIR-V specification for functions is that the former are isolated and require explicit capturing, while the latter allow implicit capturing. In SPIR-V specification, functions can refer to SSA values (generated by constants, global variables, etc.) defined in modules. The SPIR-V dialect adjusted how constants and global variables are modeled to enable isolated functions. Isolated functions are more friendly to compiler analyses and transformations. This also enables the SPIR-V dialect to better utilize core infrastructure: many functionalities in the core infrastructure requires ops to be isolated, e.g., the greedy pattern rewriter can only act on ops isolated from above.

(TODO: create a dedicated spv.fn op for SPIR-V functions.)

Operations

In SPIR-V, instruction is a generalized concept; a SPIR-V module is just a sequence of instructions. Declaring types, expressing computations, annotating result ids, expressing control flows and others are all in the form of instructions.

We only discuss instructions expressing computations here, which can be represented via SPIR-V dialect ops. Module-level instructions for declarations and definitions are represented differently in the SPIR-V dialect as explained earlier in the Module-level operations section.

An instruction computes zero or one result from zero or more operands. The result is a new result id. An operand can be a result id generated by a previous instruction, an immediate value, or a case of an enum type. We can model result id operands and results with MLIR SSA values; for immediate value and enum cases, we can model them with MLIR attributes.

For example,

%i32 = OpTypeInt 32 0
%c42 = OpConstant %i32 42
...
%3 = OpVariable %i32 Function 42
%4 = OpIAdd %i32 %c42 %c42

can be represented in the dialect as

%0 = "spv.constant"() { value = 42 : i32 } : () -> i32
%1 = "spv.Variable"(%0) { storage_class = "Function" } : (i32) -> !spv.ptr<i32, Function>
%2 = "spv.IAdd"(%0, %0) : (i32, i32) -> i32

Operation documentation is written in each op's Op Definition Spec using TableGen. A markdown version of the doc can be generated using mlir-tblgen -gen-doc.

Ops from extended instruction sets

Analogically extended instruction set is a mechanism to import SPIR-V instructions within another namespace. GLSL.std.450 is an extended instruction set that provides common mathematical routines that should be supported. Instead of modeling OpExtInstImport as a separate op and use a single op to model OpExtInst for all extended instructions, we model each SPIR-V instruction in an extended instruction set as a separate op with the proper name prefix. For example, for

%glsl = OpExtInstImport "GLSL.std.450"

%f32 = OpTypeFloat 32
%cst = OpConstant %f32 ...

%1 = OpExtInst %f32 %glsl 28 %cst
%2 = OpExtInst %f32 %glsl 31 %cst

we can have

%1 = "spv.GLSL.Log"(%cst) : (f32) -> (f32)
%2 = "spv.GLSL.Sqrt(%cst) : (f32) -> (f32)

Control Flow

SPIR-V binary format uses merge instructions (OpSelectionMerge and OpLoopMerge) to declare structured control flow. They explicitly declare a header block before the control flow diverges and a merge block where control flow subsequently converges. These blocks delimit constructs that must nest, and can only be entered and exited in structured ways.

In the SPIR-V dialect, we use regions to mark the boundary of a structured control flow construct. With this approach, it's easier to discover all blocks belonging to a structured control flow construct. It is also more idiomatic to MLIR system.

We introduce a spv.selection and spv.loop op for structured selections and loops, respectively. The merge targets are the next ops following them. Inside their regions, a special terminator, spv._merge is introduced for branching to the merge target.

Selection

spv.selection defines a selection construct. It contains one region. The region should contain at least two blocks: one selection header block and one merge block.

  • The selection header block should be the first block. It should contain the spv.BranchConditional or spv.Switch op.
  • The merge block should be the last block. The merge block should only contain a spv._merge op. Any block can branch to the merge block for early exit.
               +--------------+
               | header block |                 (may have multiple outgoing branches)
               +--------------+
                    / | \
                     ...


   +---------+   +---------+   +---------+
   | case #0 |   | case #1 |   | case #2 |  ... (may have branches between each other)
   +---------+   +---------+   +---------+


                     ...
                    \ | /
                      v
               +-------------+
               | merge block |                  (may have multiple incoming branches)
               +-------------+

For example, for the given function

void loop(bool cond) {
  int x = 0;
  if (cond) {
    x = 1;
  } else {
    x = 2;
  }
  // ...
}

It will be represented as

func @selection(%cond: i1) -> () {
  %zero = spv.constant 0: i32
  %one = spv.constant 1: i32
  %two = spv.constant 2: i32
  %x = spv.Variable init(%zero) : !spv.ptr<i32, Function>

  spv.selection {
    spv.BranchConditional %cond, ^then, ^else

  ^then:
    spv.Store "Function" %x, %one : i32
    spv.Branch ^merge

  ^else:
    spv.Store "Function" %x, %two : i32
    spv.Branch ^merge

  ^merge:
    spv._merge
  }

  // ...
}

Loop

spv.loop defines a loop construct. It contains one region. The region should contain at least four blocks: one entry block, one loop header block, one loop continue block, one merge block.

  • The entry block should be the first block and it should jump to the loop header block, which is the second block.
  • The merge block should be the last block. The merge block should only contain a spv._merge op. Any block except the entry block can branch to the merge block for early exit.
  • The continue block should be the second to last block and it should have a branch to the loop header block.
  • The loop continue block should be the only block, except the entry block, branching to the loop header block.
    +-------------+
    | entry block |           (one outgoing branch)
    +-------------+
           |
           v
    +-------------+           (two incoming branches)
    | loop header | <-----+   (may have one or two outgoing branches)
    +-------------+       |
                          |
          ...             |
         \ | /            |
           v              |
   +---------------+      |   (may have multiple incoming branches)
   | loop continue | -----+   (may have one or two outgoing branches)
   +---------------+

          ...
         \ | /
           v
    +-------------+           (may have multiple incoming branches)
    | merge block |
    +-------------+

The reason to have another entry block instead of directly using the loop header block as the entry block is to satisfy region's requirement: entry block of region may not have predecessors. We have a merge block so that branch ops can reference it as successors. The loop continue block here corresponds to "continue construct" using SPIR-V spec's term; it does not mean the "continue block" as defined in the SPIR-V spec, which is "a block containing a branch to an OpLoopMerge instruction’s Continue Target."

For example, for the given function

void loop(int count) {
  for (int i = 0; i < count; ++i) {
    // ...
  }
}

It will be represented as

func @loop(%count : i32) -> () {
  %zero = spv.constant 0: i32
  %one = spv.constant 1: i32
  %var = spv.Variable init(%zero) : !spv.ptr<i32, Function>

  spv.loop {
    spv.Branch ^header

  ^header:
    %val0 = spv.Load "Function" %var : i32
    %cmp = spv.SLessThan %val0, %count : i32
    spv.BranchConditional %cmp, ^body, ^merge

  ^body:
    // ...
    spv.Branch ^continue

  ^continue:
    %val1 = spv.Load "Function" %var : i32
    %add = spv.IAdd %val1, %one : i32
    spv.Store "Function" %var, %add : i32
    spv.Branch ^header

  ^merge:
    spv._merge
  }
  return
}

Block argument for Phi

There are no direct Phi operations in the SPIR-V dialect; SPIR-V OpPhi instructions are modelled as block arguments in the SPIR-V dialect. (See the Rationale doc for "Block Arguments vs Phi nodes".) Each block argument corresponds to one OpPhi instruction in the SPIR-V binary format. For example, for the following SPIR-V function foo:

  %foo = OpFunction %void None ...
%entry = OpLabel
  %var = OpVariable %_ptr_Function_int Function
         OpSelectionMerge %merge None
         OpBranchConditional %true %true %false
 %true = OpLabel
         OpBranch %phi
%false = OpLabel
         OpBranch %phi
  %phi = OpLabel
  %val = OpPhi %int %int_1 %false %int_0 %true
         OpStore %var %val
         OpReturn
%merge = OpLabel
         OpReturn
         OpFunctionEnd

It will be represented as:

func @foo() -> () {
  %var = spv.Variable : !spv.ptr<i32, Function>

  spv.selection {
    %true = spv.constant true
    spv.BranchConditional %true, ^true, ^false

  ^true:
    %zero = spv.constant 0 : i32
    spv.Branch ^phi(%zero: i32)

  ^false:
    %one = spv.constant 1 : i32
    spv.Branch ^phi(%one: i32)

  ^phi(%arg: i32):
    spv.Store "Function" %var, %arg : i32
    spv.Return

  ^merge:
    spv._merge
  }
  spv.Return
}

Shader interface (ABI)

SPIR-V itself is just expressing computation happening on GPU device. SPIR-V programs themselves are not enough for running workloads on GPU; a companion host application is needed to manage the resources referenced by SPIR-V programs and dispatch the workload. For the Vulkan execution environment, the host application will be written using Vulkan API. Unlike CUDA, the SPIR-V program and the Vulkan application are typically authored with different front-end languages, which isolates these two worlds. Yet they still need to match interfaces: the variables declared in a SPIR-V program for referencing resources need to match with the actual resources managed by the application regarding their parameters.

Still using Vulkan as an example execution environment, there are two primary resource types in Vulkan: buffers and images. They are used to back various uses that may differ regarding the classes of operations (load, store, atomic) to be performed. These uses are differentiated via descriptor types. (For example, uniform storage buffer descriptors can only support load operations while storage buffer descriptors can support load, store, and atomic operations.) Vulkan uses a binding model for resources. Resources are associated with descriptors and descriptors are further grouped into sets. Each descriptor thus has a set number and a binding number. Descriptors in the application corresponds to variables in the SPIR-V program. Their parameters must match, including but not limited to set and binding numbers.

Apart from buffers and images, there is other data that is set up by Vulkan and referenced inside the SPIR-V program, for example, push constants. They also have parameters that require matching between the two worlds.

The interface requirements are external information to the SPIR-V compilation path in MLIR. Besides, each Vulkan application may want to handle resources differently. To avoid duplication and to share common utilities, a SPIR-V shader interface specification needs to be defined to provide the external requirements to and guide the SPIR-V compilation path.

Shader interface attributes

The SPIR-V dialect defines a few attributes for specifying these interfaces:

  • spv.entry_point_abi is a struct attribute that should be attached to the entry function. It contains:
    • local_size for specifying the local work group size for the dispatch.
  • spv.interface_var_abi is a struct attribute that should be attached to each operand and result of the entry function. It contains:
    • descriptor_set for specifying the descriptor set number for the corresponding resource variable.
    • binding for specifying the binding number for the corresponding resource variable.
    • storage_class for specifying the storage class for the corresponding resource variable.

The SPIR-V dialect provides a LowerABIAttributesPass for consuming these attributes and create SPIR-V module complying with the interface.

Serialization and deserialization

Although the main objective of the SPIR-V dialect is to act as a proper IR for compiler transformations, being able to serialize to and deserialize from the binary format is still very valuable for many good reasons. Serialization enables the artifacts of SPIR-V compilation to be consumed by a execution environment; deserialization allows us to import SPIR-V binary modules and run transformations on them. So serialization and deserialization is supported from the very beginning of the development of the SPIR-V dialect.

The serialization library provides two entry points, mlir::spirv::serialize() and mlir::spirv::deserialize(), for converting a MLIR SPIR-V module to binary format and back. The Code organization explains more about this.

Given that the focus is transformations, which inevitably means changes to the binary module; so serialization is not designed to be a general tool for investigating the SPIR-V binary module and does not guarantee roundtrip equivalence (at least for now). For the latter, please use the assembler/disassembler in the SPIRV-Tools project.

A few transformations are performed in the process of serialization because of the representational differences between SPIR-V dialect and binary format:

  • Attributes on spv.module are emitted as their corresponding SPIR-V instructions.
  • Types are serialized into OpType* instructions in the SPIR-V binary module section for types, constants, and global variables.
  • spv.constants are unified and placed in the SPIR-V binary module section for types, constants, and global variables.
  • Attributes on ops, if not part of the op's binary encoding, are emitted as OpDecorate* instructions in the SPIR-V binary module section for decorations.
  • spv.selections and spv.loops are emitted as basic blocks with Op*Merge instructions in the header block as required by the binary format.
  • Block arguments are materialized as OpPhi instructions at the beginning of the corresponding blocks.

Similarly, a few transformations are performed during deserialization:

  • Instructions for execution environment requirements (extensions, capabilities, extended instruction sets, etc.) will be placed as attributes on spv.module.
  • OpType* instructions will be converted into proper mlir::Types.
  • OpConstant* instructions are materialized as spv.constant at each use site.
  • OpVariable instructions will be converted to spv.globalVariable ops if in module-level; otherwise they will be converted into spv.Variable ops.
  • Every use of a module-level OpVariable instruction will materialize a spv._address_of op to turn the symbol of the corresponding spv.globalVariable into an SSA value.
  • Every use of a OpSpecConstant instruction will materialize a spv._reference_of op to turn the symbol of the corresponding spv.specConstant into an SSA value.
  • OpPhi instructions are converted to block arguments.
  • Structured control flow are placed inside spv.selection and spv.loop.

Conversions

(TODO: expand this section)

Code organization

We aim to provide multiple libraries with clear dependencies for SPIR-V related functionalities in MLIR so developers can just choose the needed components without pulling in the whole world.

The dialect

The code for the SPIR-V dialect resides in a few places:

The whole SPIR-V dialect is exposed via multiple headers for better organization:

The dialect itself, including all types and ops, is in the MLIRSPIRV library. Serialization functionalities are in the MLIRSPIRVSerialization library.

Op definitions

We use Op Definition Spec to define all SPIR-V ops. They are written in TableGen syntax and placed in various *Ops.td files in the header directory. Those *Ops.td files are organized according to the instruction categories used in the SPIR-V specification, for example, an op belonging to the "Atomics Instructions" section is put in the SPIRVAtomicOps.td file.

SPIRVOps.td serves as the master op definition file that includes all files for specific categories.

SPIRVBase.td defines common classes and utilities used by various op definitions. It contains the TableGen SPIR-V dialect definition, SPIR-V versions, known extensions, various SPIR-V enums, TableGen SPIR-V types, and base op classes, etc.

Many of the contents in SPIRVBase.td, e.g., the opcodes and various enums, and all *Ops.td files can be automatically updated via a Python script, which queries the SPIR-V specification and grammar. This greatly reduces the burden of supporting new ops and keeping updated with the SPIR-V spec. More details on this automated development can be found in the Automated development flow section.

Dialect conversions

The code for conversions from other dialects to the SPIR-V dialect also resides in a few places:

These dialect to dialect conversions have their dedicated libraries, MLIRGPUToSPIRVTransforms and MLIRStandardToSPIRVTransforms, respectively.

There are also common utilities when targeting SPIR-V from any dialect:

These common utilities are implemented in the MLIRSPIRVTransforms library.

Contribution

All kinds of contributions are highly appreciated! :) We have GitHub issues for tracking the dialect and lowering development. You can find todo tasks there. The Code organization section gives an overview of how SPIR-V related functionalities are implemented in MLIR. This section gives more concrete steps on how to contribute.

Automated development flow

One of the goals of SPIR-V dialect development is to leverage both the SPIR-V human-readable specification and machine-readable grammar to auto-generate as much contents as possible. Specifically, the following tasks can be automated (partially or fully):

  • Adding support for a new operation.
  • Adding support for a new SPIR-V enum.
  • Serialization and deserialization of a new operation.

We achieve this using the Python script gen_spirv_dialect.py. It fetches the human-readable specification and machine-readable grammar directly from the Internet and updates various SPIR-V *.td files in place. The script gives us an automated flow for adding support for new ops or enums.

Afterwards, we have SPIR-V specific mlir-tblgen backends for reading the Op Definition Spec and generate various components, including (de)serialization logic for ops. Together with standard mlir-tblgen backends, we auto-generate all op classes, enum classes, etc.

In the following subsections, we list the detailed steps to follow for common tasks.

Add a new op

To add a new op, invoke the define_inst.sh script wrapper in utils/spirv. define_inst.sh requires a few parameters:

./define_inst.sh <filename> <base-class-name> <opname>

For example, to define the op for OpIAdd, invoke

./define_inst.sh SPIRVArithmeticOps.td ArithmeticBinaryOp OpIAdd

where SPIRVArithmeticOps.td is the filename for hosting the new op and ArithmeticBinaryOp is the direct base class the newly defined op will derive from.

Similarly, to define the op for OpAtomicAnd,

./define_inst.sh SPIRVAtomicOps.td AtomicUpdateWithValueOp OpAtomicAnd

Note that the generated SPIR-V op definition is just a best-effort template; it is still expected to be updated to have more accurate traits, arguments, and results.

The generated op will automatically gain the logic for (de)serialization. However, tests still need to be coupled with the change to make sure no surprises. Serialization tests live in test/Dialect/SPIRV/Serialization.

Add a new enum

To add a new enum, invoke the define_enum.sh script wrapper in utils/spirv. define_enum.sh expects the following parameters:

./define_enum.sh <enum-class-name>

For example, to add the definition for SPIR-V storage class in to SPIRVBase.td:

./define_enum.sh StorageClass

Add a new conversion

(TODO: add details for this section)