Esempio n. 1
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 def __init__(self, kernel_name: str, f: NativeFunction):
     self.__schema = LazyIrSchema(f.func)
     self.__dispatch_args = ', '.join(
         [a.decl() for a in dispatcher.arguments(f.func)])
     self.__call_args = ", ".join(
         [f"{t.name}" for t in self.__schema.filtered_types()])
     self.__kernel_name = kernel_name
def ts_lowering_body(f: Union[NativeFunctionsGroup, NativeFunction]) -> str:
    # for now, we just want one IR class decl and soon after also the method defs
    # and we use the functional version not out/inplace.
    func = f.functional.func if isinstance(f, NativeFunctionsGroup) else f.func
    schema = LazyIrSchema(func)

    emplace_arguments = []
    for value in schema.positional_arg_types:
        if isValueType(value.type):
            if isinstance(value.type, OptionalCType):
                emplace_arguments.append(
                    f"has_{value.name} ? loctx->GetOutputOp(operand(i++)) : nullptr"
                )
                continue
            emplace_arguments.append('loctx->GetOutputOp(operand(i++))')
            continue
        emplace_arguments.append(f'"{value.name}", {value.name}_')

    emplace_arguments_str = "\n    ".join(
        [f"arguments.emplace_back({a});" for a in emplace_arguments])
    emplace_kwarg_values = [
        f'loctx->GetOutputOp(operand({i}))'
        for i in range(len(schema.keyword_values))
    ]
    emplace_kwarg_scalars = [
        f'"{t.name}", {t.name}_' for t in schema.keyword_scalars
    ]
    assert len(
        schema.keyword_values
    ) == 0, "TODO the logic for operand(i) is broken if there are kw values"
    emplace_kwarguments = "\n    ".join([
        f"kwarguments.emplace_back({a});"
        for a in emplace_kwarg_values + emplace_kwarg_scalars
    ])
    return f"""\
Esempio n. 3
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class ComputeShapeSignature:
    """
    Here we use the base name as the suffix of the signature to avoid generating for in-place variants.
    """
    def __init__(self, kernel_name: str, f: NativeFunction):
        self.__schema = LazyIrSchema(f.func)
        self.__dispatch_args = ', '.join(
            [a.decl() for a in dispatcher.arguments(f.func)])
        self.__call_args = ", ".join(
            [f"{t.name}" for t in self.__schema.filtered_types()])
        self.__kernel_name = kernel_name

    def __decl_suffix(self) -> str:
        return f"{self.__kernel_name}({self.__dispatch_args})"

    def __call_suffix(self) -> str:
        return f"{self.__kernel_name}({self.__call_args})"

    @property
    def shape_decl(self) -> str:
        return f"TORCH_API std::vector<Shape> compute_shape_{self.__decl_suffix()}"

    @property
    def shape_call(self) -> str:
        return f"torch::lazy::compute_shape_{self.__call_suffix()}"
def ts_lowering_body(f: Union[NativeFunctionsGroup, NativeFunction]) -> str:
    # for now, we just want one IR class decl and soon after also the method defs
    # and we use the functional version not out/inplace.
    func = f.functional.func if isinstance(f, NativeFunctionsGroup) else f.func
    schema = LazyIrSchema(func)

    emplace_arguments = []
    for arg in schema.positional_args:
        if arg.is_lazy_value:
            if isinstance(arg.lazy_type, OptionalCType):
                emplace_arguments.append(
                    f"has_{arg.name} ? loctx->GetOutputOp(operand(i++)) : nullptr"
                )
                continue
            emplace_arguments.append('loctx->GetOutputOp(operand(i++))')
            continue
        emplace_arguments.append(f'"{arg.name}", {arg.name}')

    emplace_arguments_str = "\n    ".join(
        [f"arguments.emplace_back({a});" for a in emplace_arguments])
    emplace_kwarg_values = [
        f'"{arg.name}", loctx->GetOutputOp(operand(i++))'
        for arg in schema.keyword_values
    ]
    emplace_kwarg_scalars = [
        f'"{arg.name}", {arg.name}' for arg in schema.keyword_scalars
    ]
    emplace_kwarguments = "\n    ".join([
        f"kwarguments.emplace_back({a});"
        for a in emplace_kwarg_values + emplace_kwarg_scalars
    ])
    return f"""\
Esempio n. 5
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    def __call__(self, f: NativeFunction) -> List[str]:
        sig = kernel_signature(f, self.backend_index)
        metadata = self.backend_index.get_kernel(f)
        assert metadata is not None
        schema = LazyIrSchema(f.func)
        value_args = schema.filtered_args(values=True, scalars=False)
        lazy_tensor_decls_str = lazy_tensor_decls(value_args, self.tensor_class)
        node_ctor_input_str = node_ctor_inputs(schema)

        # Only generate shape/dtype fn for non-structured kernels,
        # since we just use the meta function for structured kernels
        if not f.structured and f.structured_delegate is None:
            shape_sig = ComputeShapeSignature(metadata.kernel, f)
            return ["\n".join([f"{shape_sig.shape_decl};"])]
        else:
            return []
Esempio n. 6
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def node_ctor_inputs(func: LazyIrSchema) -> str:
    """
    Produce a formatted string with the arguments as passed into the constructor of a node class.
    """
    node_ctor_values = [
        node_ctor_arg_rvalue_string(arg) for arg in func.filtered_types()
    ]
    return ",\n                              ".join(node_ctor_values)
Esempio n. 7
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def gen_fallback_code(schema: LazyIrSchema, overload_name: str) -> str:
    """
    Generate code that falls back to eager conditioned on a predicate
    """
    fallback_args = ",\n                ".join(
        [str(arg.name) for arg in schema.filtered_types()])
    if len(overload_name):
        aten_op_str = f"ATEN_OP2({schema.aten_name}, {overload_name})"
    else:
        aten_op_str = f"ATEN_OP({schema.aten_name})"
    return f"""
Esempio n. 8
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    def gen_shape_call(self, func: NativeFunction) -> str:
        metadata = self.backend_index.get_kernel(func)
        assert metadata is not None
        schema = LazyIrSchema(func.func)
        all_args = schema.filtered_args()
        returns_length = len(schema.returns)

        # call the meta kernel if it exists, to compute output shape/dtype for our IR
        if func.structured or func.structured_delegate is not None:
            meta_out = """std::vector<Shape> shapes{Shape(out_meta.scalar_type(), out_meta.sizes().vec())};"""
            if returns_length > 1:

                def this_shape(i: int) -> str:
                    return f"Shape(std::get<{i}>(out_meta).scalar_type(), std::get<{i}>(out_meta).sizes().vec())"

                shapes_str = ",".join(
                    [this_shape(i) for i in range(returns_length)])
                meta_out = "std::vector<Shape> shapes{" + shapes_str + "};"

            meta_str = f"""auto out_meta = at::meta::{schema.aten_name}({', '.join(str(a.name) for a in all_args)});
        {meta_out}"""
        else:
            shape_sig = ComputeShapeSignature(metadata.kernel, func)
            meta_str = f"""
        auto shapes = {shape_sig.shape_call};"""

        meta_str += f"""
        TORCH_INTERNAL_ASSERT(shapes.size() == {returns_length});"""

        # Calculating which dimensions are symbolic
        func_schema_str = "aten::" + str(func.func)
        meta_str += f"""
        if(symbolicShapeEnabled()){{
            std::vector<jit::IValue> inputs = {{ {', '.join(str(a.name) for a in all_args)} }};
            char* schema_str = "{func_schema_str}";
            applySymbolicShapesOnLT(schema_str, inputs, shapes);
        }}
        """
        return meta_str
Esempio n. 9
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def gen_fallback_code(schema: LazyIrSchema, overload_name: str) -> str:
    """
    Generate code that falls back to eager conditioned on a predicate
    """
    fallback_args = ",\n                ".join([str(arg.name) for arg in schema.filtered_args(generator=True)])
    if len(overload_name):
        aten_op_str = f"ATEN_OP2({schema.aten_name}, {overload_name})"
    else:
        aten_op_str = f"ATEN_OP({schema.aten_name})"
    or_has_generator = ""
    if schema.generator_arg:
        # generators are always optional and there is never more than one, at least currently
        or_has_generator = f" || ({schema.generator_arg.name}.has_value() && {schema.generator_arg.name}->defined())"
    return f"""
Esempio n. 10
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    def __call__(self, func: NativeFunction) -> List[str]:
        sig = kernel_signature(func, self.backend_index)
        metadata = self.backend_index.get_kernel(func)
        assert metadata is not None
        schema = LazyIrSchema(func.func)
        all_types = schema.filtered_types()
        value_types = schema.filtered_types(values=True, scalars=False)
        scalar_types = schema.filtered_types(values=False, scalars=True)
        returns_length = len(schema.returns)

        fallback_str = gen_fallback_code(
            schema, overload_name=func.func.name.overload_name)
        value_types_names = [
            f"{t.name}" for t in value_types
            if t.name not in schema.wrapped_scalar_names
        ]
        assert len(value_types_names
                   ) > 0, "Code below assumes there is at least one tensor arg"
        get_device_str = f"""auto common_device = torch::lazy::GetBackendDevice({', '.join(value_types_names)});
        TORCH_INTERNAL_ASSERT(common_device);
        """

        lazy_tensor_decls_str = lazy_tensor_decls(value_types,
                                                  self.tensor_class, schema)
        node_ctor_input_str = node_ctor_inputs(schema)

        # call the meta kernel if it exists, to compute output shape/dtype for our IR
        if func.structured or func.structured_delegate is not None:
            meta_out = """std::vector<Shape> shapes{Shape(out_meta.scalar_type(), out_meta.sizes().vec())};"""
            if returns_length > 1:

                def this_shape(i: int) -> str:
                    return f"Shape(std::get<{i}>(out_meta).scalar_type(), std::get<{i}>(out_meta).sizes().vec())"

                shapes_str = ','.join(
                    [this_shape(i) for i in range(returns_length)])
                meta_out = "std::vector<Shape> shapes{" + shapes_str + "};"

            meta_str = f"""auto out_meta = at::meta::{schema.aten_name}({', '.join(str(t.name) for t in all_types)});
        {meta_out}"""
        else:
            shape_sig = ComputeShapeSignature(metadata.kernel, func)
            meta_str = f"""
        auto shapes = {shape_sig.shape_call};"""

        meta_str += f"""
        TORCH_INTERNAL_ASSERT(shapes.size() == {returns_length});"""

        node_str = f"""auto node = torch::lazy::MakeNode<ir::ops::{schema.node_name}>({node_ctor_input_str},
                                                                                      std::move(shapes));"""
        first_tensor_name = value_types_names[0]
        bridge_str = """auto result = torch::lazy::CreateAtenFromLtcTensor(
                torch::lazy::LazyTensor::Create(std::move(node), *common_device));"""

        if returns_length > 1:
            bridge_str = f"""std::vector<{self.tensor_class}Ptr> lazy_tensors;
        for (int i = 0; i < {returns_length}; i++) {{
            lazy_tensors.push_back(torch::lazy::LazyTensor::Create(torch::lazy::Value(node, i), *common_device));
        }}
        auto result = torch::lazy::TupleAtenFromLtcTensors<{returns_length}>(lazy_tensors);"""

        if schema.name.name.inplace or func.func.is_out_fn():
            assert returns_length == 1, "We assumed there was no such case where an op is an in-place variant " \
                                        "and has tuple outputs."
            bridge_str = f"""lazy_{first_tensor_name}->SetInPlaceIrValue(node);
        auto& result = {first_tensor_name};"""

        return [
            f"""\
    {sig.decl(name=f"{self.class_method_name}::{metadata.kernel}")} {{
        {fallback_str}
        TORCH_LAZY_FN_COUNTER("lazy::");
        {get_device_str}
        {lazy_tensor_decls_str}
        {meta_str}
        {node_str}
        {bridge_str}
        return result;
    }};\n
    """
        ]
Esempio n. 11
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    def gen(self, f: Union[NativeFunctionsGroup, NativeFunction]) -> List[str]:
        # for now, we just want one IR class decl and soon after also the method defs
        # and we use the functional version not out/inplace.
        func = f.functional.func if isinstance(
            f, NativeFunctionsGroup) else f.func
        schema = LazyIrSchema(func)
        all_types = schema.filtered_types()
        value_types = schema.filtered_types(values=True, scalars=False)
        scalar_types = schema.filtered_types(values=False, scalars=True)

        node_ctor_args = ", ".join(
            [f"const {i.cpp_type()}& {i.name}" for i in all_types])
        scalar_initializers = ",\n        ".join(
            [f"{t.name}({t.name})" for t in scalar_types])
        comma_if_scalar_initializers = ",\n" if len(
            scalar_initializers) else ""
        scalar_decls = "\n  ".join(
            [f"{t.cpp_type()} {t.name};" for t in scalar_types])
        scalar_hashes = ", ".join([f"{f.name}" for f in scalar_types])
        base_ctor_value_args_list = []
        optional_values = []
        for t in value_types:
            if isinstance(t.type, BaseCType):
                base_ctor_value_args_list.append(f"{t.name}")
            elif isinstance(t.type, OptionalCType):
                base_ctor_value_args_list.append(
                    f"{t.name}.value_or(kNullValue)")
                optional_values.append(t.name)
            else:
                raise AssertionError(
                    "TODO not sure if there are other valid types to handle here"
                )
        base_ctor_value_args = ", ".join(base_ctor_value_args_list)
        has_optional_decls = "\n  ".join(
            [f"bool has_{value}: 1;" for value in optional_values])
        has_optional_defs = "\n    ".join(
            [f"has_{value} = !!{value};" for value in optional_values])
        members_to_string = []
        for t in scalar_types:
            if isinstance(t.type, OptionalCType):
                members_to_string.append(f"""if ({t.name}.has_value()) {{
    ss << ", {t.name}=" << {t.name}.value();
}} else {{
    ss << ", {t.name}=null";
}}""")
            else:
                members_to_string.append(f'ss << ", {t.name}=" << {t.name};')
        members_to_string_str = "\n    ".join(members_to_string)

        return [
            f"""\
class {schema.node_name} : public {self.node_base} {{
 public:
  {schema.node_name}({node_ctor_args}, std::vector<Shape>&& shapes)
      : {self.node_base}(torch::lazy::OpKind({aten_symbol(schema)}),
              {{{base_ctor_value_args}}}, std::move(shapes),
              /* num_outputs */ {len(func.returns)},
              torch::lazy::MHash({scalar_hashes})){comma_if_scalar_initializers}
        {scalar_initializers}

  {{
    {has_optional_defs}
  }}

  std::string ToString() const override {{
    std::stringstream ss;
    ss << {self.node_base}::ToString();
    {members_to_string_str}
    return ss.str();
  }}

  {self.lowering_return_type} Lower({self.lowering_function_type} function,
                   {self.lowering_context_type} loctx) const override {{
    {self.lowering_body(f)}
  }}

  {scalar_decls}
  {has_optional_decls}

}};

""",
        ]
Esempio n. 12
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    def __call__(self, func: NativeFunction) -> List[str]:
        sig = kernel_signature(func, self.backend_index)

        # Lazy IR stuff
        schema = LazyIrSchema(func.func)
        all_types = schema.filtered_types()
        value_types = schema.filtered_types(values=True, scalars=False)
        scalar_types = schema.filtered_types(values=False, scalars=True)
        returns_length = len(schema.returns)

        value_types_names = ", ".join([f"{t.name}" for t in value_types])
        get_device_str = f"""auto device = bridge::GetBackendDevice({value_types_names});"""
        lazy_tensor_decls_str = lazy_tensor_decls(value_types,
                                                  self.tensor_class)
        node_ctor_input_str = node_ctor_inputs(schema)

        # call the meta kernel if it exists, to compute output shape/dtype for our IR
        if func.structured or func.structured_delegate is not None:
            meta_out = """std::vector<Shape> shapes{Shape(out_meta.scalar_type(), out_meta.sizes().vec())};"""
            if returns_length > 1:

                def this_shape(i: int) -> str:
                    return f"Shape(std::get<{i}>(out_meta).scalar_type(), std::get<{i}>(out_meta).sizes().vec())"

                shapes_str = ','.join(
                    [this_shape(i) for i in range(returns_length)])
                meta_out = "std::vector<Shape> shapes{" + shapes_str + "};"

            meta_str = f"""auto out_meta = at::meta::{schema.aten_name}({', '.join(str(t.name) for t in all_types)});
        {meta_out}"""
        else:
            shape_sig = ComputeShapeSignature(func)
            meta_str = f"""
        auto shapes = {shape_sig.shape_call};"""
        meta_str += f"""
        TORCH_INTERNAL_ASSERT(shapes.size() == {returns_length});"""

        node_str = f"""auto node = torch::lazy::MakeNode<ir::ops::{schema.node_name}>({node_ctor_input_str},
                                                                                      std::move(shapes));"""

        assert len(
            value_types
        ) > 0, f"Only supporting tensor ops so far, none found in {sig}"
        first_tensor = value_types[0]
        bridge_str = f"""auto result = CreateAtenFromLtcTensor(lazy_{first_tensor.name}.CreateFrom(node));"""
        if returns_length > 1:
            bridge_str = f"""std::vector<{self.tensor_class}> lazy_tensors;
        for (int i = 0; i < {returns_length}; i++) {{
            lazy_tensors.push_back(lazy_{first_tensor.name}.CreateFrom(torch::lazy::Value(node, i)));
        }}
        auto result = TupleAtenFromLtcTensors<{returns_length}>(lazy_tensors);"""
        if schema.name.name.inplace:
            assert returns_length == 1, "We assumed there was no such case where an op is an in-place variant " \
                                        "and has tuple outputs."
            bridge_str = f"""lazy_{first_tensor.name}.SetInPlaceIrValue(node);
        auto& result = {first_tensor.name};"""

        return [
            f"""\
    // TODO(alanwaketan): Quite a lot inefficient copy-by-value there. Let's optimize it.
    {sig.decl(name=f"{self.class_method_name}::{schema.aten_name}")} {{
        LTC_FN_COUNTER("lazy::");
        {get_device_str}
        {lazy_tensor_decls_str}
        {meta_str}
        {node_str}
        {bridge_str}
        return result;
    }};\n
    """
        ]
Esempio n. 13
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    def __call__(self, func: NativeFunction) -> List[str]:
        sig = kernel_signature(func, self.backend_index)
        metadata = self.backend_index.get_kernel(func)
        assert metadata is not None
        schema = LazyIrSchema(func.func)
        value_args = schema.filtered_args(values=True, scalars=False)
        returns_length = len(schema.returns)

        fallback_str = ""
        if self.gen_forced_fallback_code:
            fallback_str = gen_fallback_code(
                schema, overload_name=func.func.name.overload_name)

        value_types_names = [
            f"{a.name}" for a in value_args if not a.is_wrapped_scalar
        ]
        assert (len(value_types_names) >
                0), "Code below assumes there is at least one tensor arg"
        get_device_str = f"""auto common_device = torch::lazy::GetBackendDevice({', '.join(value_types_names)});
        TORCH_INTERNAL_ASSERT(common_device);
        """

        lazy_tensor_decls_str = lazy_tensor_decls(value_args,
                                                  self.tensor_class)
        node_ctor_input_str = node_ctor_inputs(schema)
        shape_str = self.gen_shape_call(func)

        node_str = f"""auto node = torch::lazy::MakeNode<{schema.node_name}>({node_ctor_input_str},
                                                                                      std::move(shapes));"""
        first_tensor_name = value_types_names[0]
        bridge_str = """auto result = torch::lazy::CreateAtenFromLtcTensor(
                torch::lazy::LazyTensor::Create(std::move(node), *common_device));"""

        if returns_length > 1:
            bridge_str = f"""std::vector<{self.tensor_class}Ptr> lazy_tensors;
        for (int i = 0; i < {returns_length}; i++) {{
            lazy_tensors.push_back(torch::lazy::LazyTensor::Create(torch::lazy::Value(node, i), *common_device));
        }}
        auto result = torch::lazy::TupleAtenFromLtcTensors<{returns_length}>(lazy_tensors);"""

        if schema.name.name.inplace or func.func.is_out_fn():
            assert returns_length == 1, (
                "We assumed there was no such case where an op is an in-place variant "
                f"and has tuple outputs, but got tuple of len {returns_length}."
            )
            bridge_str = f"""lazy_{first_tensor_name}->SetInPlaceIrValue(node);
        auto& result = {first_tensor_name};"""

        return [
            f"""\
    {sig.decl(name=f"{self.class_method_name}::{metadata.kernel}")} {{
        {fallback_str}
        TORCH_LAZY_FN_COUNTER("lazy::");
        {get_device_str}
        {lazy_tensor_decls_str}
        {shape_str}
        {node_str}
        {bridge_str}
        return result;
    }};\n
    """
        ]