llvm-project/mlir/docs/Tutorials/Toy/Ch-2.md

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# Chapter 2: Emitting Basic MLIR
[TOC]
Now that we're familiar with our language and the AST, let's see how MLIR can
help to compile Toy.
## Introduction: Multi-Level Intermediate Representation
Other compilers, like LLVM (see the
[Kaleidoscope tutorial](https://llvm.org/docs/tutorial/MyFirstLanguageFrontend/index.html)),
offer a fixed set of predefined types and (usually *low-level* / RISC-like)
instructions. It is up to the frontend for a given language to perform any
language-specific type-checking, analysis, or transformation before emitting
LLVM IR. For example, Clang will use its AST to perform not only static analysis
but also transformations, such as C++ template instantiation through AST cloning
and rewrite. Finally, languages with construction at a higher-level than C/C++
may require non-trivial lowering from their AST to generate LLVM IR.
As a consequence, multiple frontends end up reimplementing significant pieces of
infrastructure to support the need for these analyses and transformation. MLIR
addresses this issue by being designed for extensibility. As such, there are few
pre-defined instructions (*operations* in MLIR terminology) or types.
## Interfacing with MLIR
[Language reference](../../LangRef.md)
MLIR is designed to be a completely extensible infrastructure; there is no
closed set of attributes (think: constant metadata), operations, or types. MLIR
supports this extensibility with the concept of
[Dialects](../../LangRef.md#dialects). Dialects provide a grouping mechanism for
abstraction under a unique `namespace`.
In MLIR, [`Operations`](../../LangRef.md#operations) are the core unit of
abstraction and computation, similar in many ways to LLVM instructions.
Operations can have application-specific semantics and can be used to represent
all of the core IR structures in LLVM: instructions, globals (like functions),
modules, etc.
Here is the MLIR assembly for the Toy `transpose` operations:
```mlir
%t_tensor = "toy.transpose"(%tensor) {inplace = true} : (tensor<2x3xf64>) -> tensor<3x2xf64> loc("example/file/path":12:1)
```
Let's break down the anatomy of this MLIR operation:
- `%t_tensor`
* The name given to the result defined by this operation (which includes
[a prefixed sigil to avoid collisions](../../LangRef.md#identifiers-and-keywords)).
An operation may define zero or more results (in the context of Toy, we
will limit ourselves to single-result operations), which are SSA values.
The name is used during parsing but is not persistent (e.g., it is not
tracked in the in-memory representation of the SSA value).
- `"toy.transpose"`
* The name of the operation. It is expected to be a unique string, with
the namespace of the dialect prefixed before the "`.`". This can be read
as the `transpose` operation in the `toy` dialect.
- `(%tensor)`
* A list of zero or more input operands (or arguments), which are SSA
values defined by other operations or referring to block arguments.
- `{ inplace = true }`
* A dictionary of zero or more attributes, which are special operands that
are always constant. Here we define a boolean attribute named 'inplace'
that has a constant value of true.
- `(tensor<2x3xf64>) -> tensor<3x2xf64>`
* This refers to the type of the operation in a functional form, spelling
the types of the arguments in parentheses and the type of the return
values afterward.
- `loc("example/file/path":12:1)`
* This is the location in the source code from which this operation
originated.
Shown here is the general form of an operation. As described above,
the set of operations in MLIR is extensible. Operations are modeled
using a small set of concepts, enabling operations to be reasoned
about and manipulated generically. These concepts are:
- A name for the operation.
- A list of SSA operand values.
- A list of [attributes](../../LangRef.md#attributes).
- A list of [types](../../LangRef.md#type-system) for result values.
- A [source location](../../Diagnostics.md#source-locations) for debugging
purposes.
- A list of successors [blocks](../../LangRef.md#blocks) (for branches,
mostly).
- A list of [regions](../../LangRef.md#regions) (for structural operations
like functions).
In MLIR, every operation has a mandatory source location associated with it.
Contrary to LLVM, where debug info locations are metadata and can be dropped, in
MLIR, the location is a core requirement, and APIs depend on and manipulate it.
Dropping a location is thus an explicit choice which cannot happen by mistake.
To provide an illustration: If a transformation replaces an operation by
another, that new operation must still have a location attached. This makes it
possible to track where that operation came from.
It's worth noting that the mlir-opt tool - a tool for testing
compiler passes - does not include locations in the output by default. The
`-mlir-print-debuginfo` flag specifies to include locations. (Run `mlir-opt
--help` for more options.)
### Opaque API
MLIR is designed to allow most IR elements, such as attributes,
operations, and types, to be customized. At the same time, IR
elements can always be reduced to the above fundamental concepts. This
allows MLIR to parse, represent, and
[round-trip](../../../getting_started/Glossary.md#round-trip) IR for
*any* operation. For example, we could place our Toy operation from
above into an `.mlir` file and round-trip through *mlir-opt* without
registering any dialect:
```mlir
func @toy_func(%tensor: tensor<2x3xf64>) -> tensor<3x2xf64> {
%t_tensor = "toy.transpose"(%tensor) { inplace = true } : (tensor<2x3xf64>) -> tensor<3x2xf64>
return %t_tensor : tensor<3x2xf64>
}
```
In the cases of unregistered attributes, operations, and types, MLIR
will enforce some structural constraints (SSA, block termination,
etc.), but otherwise they are completely opaque. For instance, MLIR
has little information about whether an unregistered operation can
operate on particular datatypes, how many operands it can take, or how
many results it produces. This flexibility can be useful for
bootstrapping purposes, but it is generally advised against in mature
systems. Unregistered operations must be treated conservatively by
transformations and analyses, and they are much harder to construct
and manipulate.
This handling can be observed by crafting what should be an invalid IR for Toy
and seeing it round-trip without tripping the verifier:
```mlir
func @main() {
%0 = "toy.print"() : () -> tensor<2x3xf64>
}
```
There are multiple problems here: the `toy.print` operation is not a terminator;
it should take an operand; and it shouldn't return any values. In the next
section, we will register our dialect and operations with MLIR, plug into the
verifier, and add nicer APIs to manipulate our operations.
## Defining a Toy Dialect
To effectively interface with MLIR, we will define a new Toy dialect. This
dialect will model the structure of the Toy language, as well as
provide an easy avenue for high-level analysis and transformation.
```c++
/// This is the definition of the Toy dialect. A dialect inherits from
/// mlir::Dialect and registers custom attributes, operations, and types (in its
/// constructor). It can also override virtual methods to change some general
/// behavior, which will be demonstrated in later chapters of the tutorial.
class ToyDialect : public mlir::Dialect {
public:
explicit ToyDialect(mlir::MLIRContext *ctx);
/// Provide a utility accessor to the dialect namespace. This is used by
/// several utilities.
static llvm::StringRef getDialectNamespace() { return "toy"; }
};
```
The dialect can now be registered in the global registry:
```c++
mlir::registerDialect<ToyDialect>();
```
Any new `MLIRContext` created from now on will contain an instance of the Toy
dialect and invoke specific hooks for things like parsing attributes and types.
## Defining Toy Operations
Now that we have a `Toy` dialect, we can start registering operations. This will
allow for providing semantic information that the rest of the system can hook
into. Let's walk through the creation of the `toy.constant` operation:
```mlir
%4 = "toy.constant"() {value = dense<1.0> : tensor<2x3xf64>} : () -> tensor<2x3xf64>
```
This operation takes zero operands, a
[dense elements](../../LangRef.md#dense-elements-attribute) attribute named
`value`, and returns a single result of
[TensorType](../../LangRef.md#tensor-type). An operation inherits from the
[CRTP](https://en.wikipedia.org/wiki/Curiously_recurring_template_pattern)
`mlir::Op` class which also takes some optional [*traits*](../../Traits.md) to
customize its behavior. These traits may provide additional accessors,
verification, etc.
```c++
class ConstantOp : public mlir::Op<ConstantOp,
/// The ConstantOp takes no inputs.
mlir::OpTrait::ZeroOperands,
/// The ConstantOp returns a single result.
mlir::OpTrait::OneResult> {
public:
/// Inherit the constructors from the base Op class.
using Op::Op;
/// Provide the unique name for this operation. MLIR will use this to register
/// the operation and uniquely identify it throughout the system.
static llvm::StringRef getOperationName() { return "toy.constant"; }
/// Return the value of the constant by fetching it from the attribute.
mlir::DenseElementsAttr getValue();
/// Operations can provide additional verification beyond the traits they
/// define. Here we will ensure that the specific invariants of the constant
/// operation are upheld, for example the result type must be of TensorType.
LogicalResult verify();
/// Provide an interface to build this operation from a set of input values.
/// This interface is used by the builder to allow for easily generating
/// instances of this operation:
/// mlir::OpBuilder::create<ConstantOp>(...)
/// This method populates the given `state` that MLIR uses to create
/// operations. This state is a collection of all of the discrete elements
/// that an operation may contain.
/// Build a constant with the given return type and `value` attribute.
static void build(mlir::OpBuilder &builder, mlir::OperationState &state,
mlir::Type result, mlir::DenseElementsAttr value);
/// Build a constant and reuse the type from the given 'value'.
static void build(mlir::OpBuilder &builder, mlir::OperationState &state,
mlir::DenseElementsAttr value);
/// Build a constant by broadcasting the given 'value'.
static void build(mlir::OpBuilder &builder, mlir::OperationState &state,
double value);
};
```
and we register this operation in the `ToyDialect` constructor:
```c++
ToyDialect::ToyDialect(mlir::MLIRContext *ctx)
: mlir::Dialect(getDialectNamespace(), ctx) {
addOperations<ConstantOp>();
}
```
### Op vs Operation: Using MLIR Operations
Now that we have defined an operation, we will want to access and
transform it. In MLIR, there are two main classes related to
operations: `Operation` and `Op`. The `Operation` class is used to
generically model all operations. It is 'opaque', in the sense that
it does not describe the properties of particular operations or types
of operations. Instead, the 'Operation' class provides a general API
into an operation instance. On the other hand, each specific type of
operation is represented by an `Op` derived class. For instance
`ConstantOp` represents a operation with zero inputs, and one output,
which is always set to the same value. `Op` derived classes act as
smart pointer wrapper around a `Operation*`, provide
operation-specific accessor methods, and type-safe properties of
operations. This means that when we define our Toy operations, we are
simply defining a clean, semantically useful interface for building
and interfacing with the `Operation` class. This is why our
`ConstantOp` defines no class fields; all the data structures are
stored in the referenced `Operation`. A side effect is that we always
pass around `Op` derived classes by value, instead of by reference or
pointer (*passing by value* is a common idiom and applies similarly to
attributes, types, etc). Given a generic `Operation*` instance, we
can always get a specific `Op` instance using LLVM's casting
infrastructure:
```c++
void processConstantOp(mlir::Operation *operation) {
ConstantOp op = llvm::dyn_cast<ConstantOp>(operation);
// This operation is not an instance of `ConstantOp`.
if (!op)
return;
// Get the internal operation instance wrapped by the smart pointer.
mlir::Operation *internalOperation = op.getOperation();
assert(internalOperation == operation &&
"these operation instances are the same");
}
```
### Using the Operation Definition Specification (ODS) Framework
In addition to specializing the `mlir::Op` C++ template, MLIR also supports
defining operations in a declarative manner. This is achieved via the
[Operation Definition Specification](../../OpDefinitions.md) framework. Facts
regarding an operation are specified concisely into a TableGen record, which
will be expanded into an equivalent `mlir::Op` C++ template specialization at
compile time. Using the ODS framework is the desired way for defining operations
in MLIR given the simplicity, conciseness, and general stability in the face of
C++ API changes.
Lets see how to define the ODS equivalent of our ConstantOp:
The first thing to do is to define a link to the Toy dialect that we defined in
C++. This is used to link all of the operations that we will define to our
dialect:
```tablegen
// Provide a definition of the 'toy' dialect in the ODS framework so that we
// can define our operations.
def Toy_Dialect : Dialect {
// The namespace of our dialect, this corresponds 1-1 with the string we
// provided in `ToyDialect::getDialectNamespace`.
let name = "toy";
// The C++ namespace that the dialect class definition resides in.
let cppNamespace = "toy";
}
```
Now that we have defined a link to the Toy dialect, we can start defining
operations. Operations in ODS are defined by inheriting from the `Op` class. To
simplify our operation definitions, we will define a base class for operations
in the Toy dialect.
```tablegen
// Base class for toy dialect operations. This operation inherits from the base
// `Op` class in OpBase.td, and provides:
// * The parent dialect of the operation.
// * The mnemonic for the operation, or the name without the dialect prefix.
// * A list of traits for the operation.
class Toy_Op<string mnemonic, list<OpTrait> traits = []> :
Op<Toy_Dialect, mnemonic, traits>;
```
With all of the preliminary pieces defined, we can begin to define the constant
operation.
We define a toy operation by inheriting from our base 'Toy_Op' class above. Here
we provide the mnemonic and a list of traits for the operation. The
[mnemonic](../../OpDefinitions.md#operation-name) here matches the one given in
`ConstantOp::getOperationName` without the dialect prefix; `toy.`. Missing here
from our C++ definition are the `ZeroOperands` and `OneResult` traits; these
will be automatically inferred based upon the `arguments` and `results` fields
we define later.
```tablegen
def ConstantOp : Toy_Op<"constant"> {
}
```
At this point you probably might want to know what the C++ code generated by
TableGen looks like. Simply run the `mlir-tblgen` command with the
`gen-op-decls` or the `gen-op-defs` action like so:
```shell
${build_root}/bin/mlir-tblgen -gen-op-defs ${mlir_src_root}/examples/toy/Ch2/include/toy/Ops.td -I ${mlir_src_root}/include/
```
Depending on the selected action, this will print either the `ConstantOp` class
declaration or its implementation. Comparing this output to the hand-crafted
implementation is incredibly useful when getting started with TableGen.
#### Defining Arguments and Results
With the shell of the operation defined, we can now provide the
[inputs](../../OpDefinitions.md#operation-arguments) and
[outputs](../../OpDefinitions.md#operation-results) to our operation. The
inputs, or arguments, to an operation may be attributes or types for SSA operand
values. The results correspond to a set of types for the values produced by the
operation:
```tablegen
def ConstantOp : Toy_Op<"constant"> {
// The constant operation takes an attribute as the only input.
// `F64ElementsAttr` corresponds to a 64-bit floating-point ElementsAttr.
let arguments = (ins F64ElementsAttr:$value);
// The constant operation returns a single value of TensorType.
// F64Tensor corresponds to a 64-bit floating-point TensorType.
let results = (outs F64Tensor);
}
```
By providing a name to the arguments or results, e.g. `$value`, ODS will
automatically generate a matching accessor: `DenseElementsAttr
ConstantOp::value()`.
#### Adding Documentation
The next step after defining the operation is to document it. Operations may
provide
[`summary` and `description`](../../OpDefinitions.md#operation-documentation)
fields to describe the semantics of the operation. This information is useful
for users of the dialect and can even be used to auto-generate Markdown
documents.
```tablegen
def ConstantOp : Toy_Op<"constant"> {
// Provide a summary and description for this operation. This can be used to
// auto-generate documentation of the operations within our dialect.
let summary = "constant operation";
let description = [{
Constant operation turns a literal into an SSA value. The data is attached
to the operation as an attribute. For example:
%0 = "toy.constant"()
{ value = dense<[[1.0, 2.0, 3.0], [4.0, 5.0, 6.0]]> : tensor<2x3xf64> }
: () -> tensor<2x3xf64>
}];
// The constant operation takes an attribute as the only input.
// `F64ElementsAttr` corresponds to a 64-bit floating-point ElementsAttr.
let arguments = (ins F64ElementsAttr:$value);
// The generic call operation returns a single value of TensorType.
// F64Tensor corresponds to a 64-bit floating-point TensorType.
let results = (outs F64Tensor);
}
```
#### Verifying Operation Semantics
At this point we've already covered a majority of the original C++ operation
definition. The next piece to define is the verifier. Luckily, much like the
named accessor, the ODS framework will automatically generate a lot of the
necessary verification logic based upon the constraints we have given. This
means that we don't need to verify the structure of the return type, or even the
input attribute `value`. In many cases, additional verification is not even
necessary for ODS operations. To add additional verification logic, an operation
can override the [`verifier`](../../OpDefinitions.md#custom-verifier-code)
field. The `verifier` field allows for defining a C++ code blob that will be run
as part of `ConstantOp::verify`. This blob can assume that all of the other
invariants of the operation have already been verified:
```tablegen
def ConstantOp : Toy_Op<"constant"> {
// Provide a summary and description for this operation. This can be used to
// auto-generate documentation of the operations within our dialect.
let summary = "constant operation";
let description = [{
Constant operation turns a literal into an SSA value. The data is attached
to the operation as an attribute. For example:
%0 = "toy.constant"()
{ value = dense<[[1.0, 2.0, 3.0], [4.0, 5.0, 6.0]]> : tensor<2x3xf64> }
: () -> tensor<2x3xf64>
}];
// The constant operation takes an attribute as the only input.
// `F64ElementsAttr` corresponds to a 64-bit floating-point ElementsAttr.
let arguments = (ins F64ElementsAttr:$value);
// The generic call operation returns a single value of TensorType.
// F64Tensor corresponds to a 64-bit floating-point TensorType.
let results = (outs F64Tensor);
// Add additional verification logic to the constant operation. Here we invoke
// a static `verify` method in a C++ source file. This codeblock is executed
// inside of ConstantOp::verify, so we can use `this` to refer to the current
// operation instance.
let verifier = [{ return ::verify(*this); }];
}
```
#### Attaching `build` Methods
The final missing component here from our original C++ example are the `build`
methods. ODS can generate some simple build methods automatically, and in this
case it will generate our first build method for us. For the rest, we define the
[`builders`](../../OpDefinitions.md#custom-builder-methods) field. This field
takes a list of `OpBuilder` objects that take a string corresponding to a list
of C++ parameters, as well as an optional code block that can be used to specify
the implementation inline.
```tablegen
def ConstantOp : Toy_Op<"constant"> {
...
// Add custom build methods for the constant operation. These methods populate
// the `state` that MLIR uses to create operations, i.e. these are used when
// using `builder.create<ConstantOp>(...)`.
let builders = [
// Build a constant with a given constant tensor value.
OpBuilderDAG<(ins "DenseElementsAttr":$value), [{
// Call into an autogenerated `build` method.
build(builder, result, value.getType(), value);
}]>,
// Build a constant with a given constant floating-point value. This builder
// creates a declaration for `ConstantOp::build` with the given parameters.
OpBuilderDAG<(ins "double":$value)>
];
}
```
#### Specifying a Custom Assembly Format
At this point we can generate our "Toy IR". For example, the following:
```toy
# User defined generic function that operates on unknown shaped arguments.
def multiply_transpose(a, b) {
return transpose(a) * transpose(b);
}
def main() {
var a<2, 3> = [[1, 2, 3], [4, 5, 6]];
var b<2, 3> = [1, 2, 3, 4, 5, 6];
var c = multiply_transpose(a, b);
var d = multiply_transpose(b, a);
print(d);
}
```
Results in the following IR:
```mlir
module {
func @multiply_transpose(%arg0: tensor<*xf64>, %arg1: tensor<*xf64>) -> tensor<*xf64> {
%0 = "toy.transpose"(%arg0) : (tensor<*xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:10)
%1 = "toy.transpose"(%arg1) : (tensor<*xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:25)
%2 = "toy.mul"(%0, %1) : (tensor<*xf64>, tensor<*xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:25)
"toy.return"(%2) : (tensor<*xf64>) -> () loc("test/Examples/Toy/Ch2/codegen.toy":5:3)
} loc("test/Examples/Toy/Ch2/codegen.toy":4:1)
func @main() {
%0 = "toy.constant"() {value = dense<[[1.000000e+00, 2.000000e+00, 3.000000e+00], [4.000000e+00, 5.000000e+00, 6.000000e+00]]> : tensor<2x3xf64>} : () -> tensor<2x3xf64> loc("test/Examples/Toy/Ch2/codegen.toy":9:17)
%1 = "toy.reshape"(%0) : (tensor<2x3xf64>) -> tensor<2x3xf64> loc("test/Examples/Toy/Ch2/codegen.toy":9:3)
%2 = "toy.constant"() {value = dense<[1.000000e+00, 2.000000e+00, 3.000000e+00, 4.000000e+00, 5.000000e+00, 6.000000e+00]> : tensor<6xf64>} : () -> tensor<6xf64> loc("test/Examples/Toy/Ch2/codegen.toy":10:17)
%3 = "toy.reshape"(%2) : (tensor<6xf64>) -> tensor<2x3xf64> loc("test/Examples/Toy/Ch2/codegen.toy":10:3)
%4 = "toy.generic_call"(%1, %3) {callee = @multiply_transpose} : (tensor<2x3xf64>, tensor<2x3xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":11:11)
%5 = "toy.generic_call"(%3, %1) {callee = @multiply_transpose} : (tensor<2x3xf64>, tensor<2x3xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":12:11)
"toy.print"(%5) : (tensor<*xf64>) -> () loc("test/Examples/Toy/Ch2/codegen.toy":13:3)
"toy.return"() : () -> () loc("test/Examples/Toy/Ch2/codegen.toy":8:1)
} loc("test/Examples/Toy/Ch2/codegen.toy":8:1)
} loc(unknown)
```
One thing to notice here is that all of our Toy operations are printed using the
generic assembly format. This format is the one shown when breaking down
`toy.transpose` at the beginning of this chapter. MLIR allows for operations to
define their own custom assembly format, either
[declaratively](../../OpDefinitions.md#declarative-assembly-format) or
imperatively via C++. Defining a custom assembly format allows for tailoring the
generated IR into something a bit more readable by removing a lot of the fluff
that is required by the generic format. Let's walk through an example of an
operation format that we would like to simplify.
##### `toy.print`
The current form of `toy.print` is a little verbose. There are a lot of
additional characters that we would like to strip away. Let's begin by thinking
of what a good format of `toy.print` would be, and see how we can implement it.
Looking at the basics of `toy.print` we get:
```mlir
toy.print %5 : tensor<*xf64> loc(...)
```
Here we have stripped much of the format down to the bare essentials, and it has
become much more readable. To provide a custom assembly format, an operation can
either override the `parser` and `printer` fields for a C++ format, or the
`assemblyFormat` field for the declarative format. Let's look at the C++ variant
first, as this is what the declarative format maps to internally.
```tablegen
/// Consider a stripped definition of `toy.print` here.
def PrintOp : Toy_Op<"print"> {
let arguments = (ins F64Tensor:$input);
// Divert the printer and parser to static functions in our .cpp
// file that correspond to 'print' and 'printPrintOp'. 'printer' and 'parser'
// here correspond to an instance of a 'OpAsmParser' and 'OpAsmPrinter'. More
// details on these classes is shown below.
let printer = [{ return ::print(printer, *this); }];
let parser = [{ return ::parse$cppClass(parser, result); }];
}
```
A C++ implementation for the printer and parser is shown below:
```c++
/// The 'OpAsmPrinter' class is a stream that will allows for formatting
/// strings, attributes, operands, types, etc.
static void print(mlir::OpAsmPrinter &printer, PrintOp op) {
printer << "toy.print " << op.input();
printer.printOptionalAttrDict(op.getAttrs());
printer << " : " << op.input().getType();
}
/// The 'OpAsmParser' class provides a collection of methods for parsing
/// various punctuation, as well as attributes, operands, types, etc. Each of
/// these methods returns a `ParseResult`. This class is a wrapper around
/// `LogicalResult` that can be converted to a boolean `true` value on failure,
/// or `false` on success. This allows for easily chaining together a set of
/// parser rules. These rules are used to populate an `mlir::OperationState`
/// similarly to the `build` methods described above.
static mlir::ParseResult parsePrintOp(mlir::OpAsmParser &parser,
mlir::OperationState &result) {
// Parse the input operand, the attribute dictionary, and the type of the
// input.
mlir::OpAsmParser::OperandType inputOperand;
mlir::Type inputType;
if (parser.parseOperand(inputOperand) ||
parser.parseOptionalAttrDict(result.attributes) || parser.parseColon() ||
parser.parseType(inputType))
return mlir::failure();
// Resolve the input operand to the type we parsed in.
if (parser.resolveOperand(inputOperand, inputType, result.operands))
return mlir::failure();
return mlir::success();
}
```
With the C++ implementation defined, let's see how this can be mapped to the
[declarative format](../../OpDefinitions.md#declarative-assembly-format). The
declarative format is largely composed of three different components:
* Directives
- A type of builtin function, with an optional set of arguments.
* Literals
- A keyword or punctuation surrounded by \`\`.
* Variables
- An entity that has been registered on the operation itself, i.e. an
argument(attribute or operand), result, successor, etc. In the `PrintOp`
example above, a variable would be `$input`.
A direct mapping of our C++ format looks something like:
```tablegen
/// Consider a stripped definition of `toy.print` here.
def PrintOp : Toy_Op<"print"> {
let arguments = (ins F64Tensor:$input);
// In the following format we have two directives, `attr-dict` and `type`.
// These correspond to the attribute dictionary and the type of a given
// variable represectively.
let assemblyFormat = "$input attr-dict `:` type($input)";
}
```
The [declarative format](../../OpDefinitions.md#declarative-assembly-format) has
many more interesting features, so be sure to check it out before implementing a
custom format in C++. After beautifying the format of a few of our operations we
now get a much more readable:
```mlir
module {
func @multiply_transpose(%arg0: tensor<*xf64>, %arg1: tensor<*xf64>) -> tensor<*xf64> {
%0 = toy.transpose(%arg0 : tensor<*xf64>) to tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:10)
%1 = toy.transpose(%arg1 : tensor<*xf64>) to tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:25)
%2 = toy.mul %0, %1 : tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:25)
toy.return %2 : tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":5:3)
} loc("test/Examples/Toy/Ch2/codegen.toy":4:1)
func @main() {
%0 = toy.constant dense<[[1.000000e+00, 2.000000e+00, 3.000000e+00], [4.000000e+00, 5.000000e+00, 6.000000e+00]]> : tensor<2x3xf64> loc("test/Examples/Toy/Ch2/codegen.toy":9:17)
%1 = toy.reshape(%0 : tensor<2x3xf64>) to tensor<2x3xf64> loc("test/Examples/Toy/Ch2/codegen.toy":9:3)
%2 = toy.constant dense<[1.000000e+00, 2.000000e+00, 3.000000e+00, 4.000000e+00, 5.000000e+00, 6.000000e+00]> : tensor<6xf64> loc("test/Examples/Toy/Ch2/codegen.toy":10:17)
%3 = toy.reshape(%2 : tensor<6xf64>) to tensor<2x3xf64> loc("test/Examples/Toy/Ch2/codegen.toy":10:3)
%4 = toy.generic_call @multiply_transpose(%1, %3) : (tensor<2x3xf64>, tensor<2x3xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":11:11)
%5 = toy.generic_call @multiply_transpose(%3, %1) : (tensor<2x3xf64>, tensor<2x3xf64>) -> tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":12:11)
toy.print %5 : tensor<*xf64> loc("test/Examples/Toy/Ch2/codegen.toy":13:3)
toy.return loc("test/Examples/Toy/Ch2/codegen.toy":8:1)
} loc("test/Examples/Toy/Ch2/codegen.toy":8:1)
} loc(unknown)
```
Above we introduce several of the concepts for defining operations in the ODS
framework, but there are many more that we haven't had a chance to: regions,
variadic operands, etc. Check out the
[full specification](../../OpDefinitions.md) for more details.
## Complete Toy Example
We can now generate our "Toy IR". You can build `toyc-ch2` and try yourself on
the above example: `toyc-ch2 test/Examples/Toy/Ch2/codegen.toy -emit=mlir
-mlir-print-debuginfo`. We can also check our RoundTrip: `toyc-ch2
test/Examples/Toy/Ch2/codegen.toy -emit=mlir -mlir-print-debuginfo 2>
codegen.mlir` followed by `toyc-ch2 codegen.mlir -emit=mlir`. You should also
use `mlir-tblgen` on the final definition file and study the generated C++ code.
At this point, MLIR knows about our Toy dialect and operations. In the
[next chapter](Ch-3.md), we will leverage our new dialect to implement some
high-level language-specific analyses and transformations for the Toy language.