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Summary: Pull Request resolved: https://github.com/pytorch/pytorch/pull/57361 Data model change in the codegen, which splits backend-specific information out of `NativeFunction` ### Overview Currently in the codegen, native_functions.yaml has backend-specific information about each operator that is encoded directly into the data model, in the `NativeFunction` object. That's reasonable, since the native_functions.yaml is the source of truth for information about an operator, and the data model encodes that information into types. Now that external backends can use the codegen though, that information is technically incomplete/inaccurate. In another PR, I tried patching the information on the `NativeFunction` object with the additional external information, by updating the `dispatch` entry to contain the external backend kernel name and dispatch key. Instead, this PR tries to split out that information. The `NativeFunction` class contains all information about an operator from native_functions.yaml that's backend-independent and is known never to change regardless of what extra information backends provide. We also build up a backend "index", which is basically a mapping from [backend] -> [backend-specific-metadata]. Reading in an external backend yaml just involves updating that index with the new backend. There were a few places where `NativeFunction` used the dispatch table directly, that I encoded as properties directly on the NativeFunction object (e.g. `is_abstract`). They were mostly around whether or not the operator has a composite kernel, which isn't something that's going to change for any external backends. This has a few advantages: - We can more easily re-use the existing logic in `native_function.py` and `register_dispatch_key.py` for both native and external backends, since they both involve a NativeFunction + a particular backend index - The data in the data model will be the same regardless of how the codegen is run. Running the codegen with a new external backend doesn't change the data inside of NativeFunction or an existing backend index. It just adds a new index for that backend. - There are several of codegen areas that don't care about backend-specific information: mostly the tracing and autograd codegen. We can reason about the codegen there more easily, knowing that backend-specific info is entirely uninvolved. An alternative to this split would be to augment the NativeFunction objects with external backend information at the time that we create them. So the external codegen could read both native_functions.yaml and the external backend's yaml at the same time, and construct a NativeObject with a full dispatch table (including the XLA entry), and the correct setting of structured (taking into account both yamls). One disadvantage to this approach is that NativeFunction objects now contain different stuff depending on how you ran the codegen, and you have to make sure that any changes to the codegen can properly handle all the different variants. ### Data Model Changes Removed 3 classes, which are used by the external codegen: - ExternalBackendFunction - ExternalBackendFunctionsGroup - ExternalBackendMetadata And added two new ones: - BackendIndex - BackendMetadata `BackendIndex` contains any info that's specific to that backend, plus a mapping from operator names to backend specific metadata about the operator. One example of backend-specific info that's not operator-dependent is the fact that XLA prefers to implement functional kernels instead of out kernels (and so when they eventually mark an op as structured, they're going to mark the functional op and not the out op). `BackendMetadata` contains info specific to an (operator, backend) pair. Right now, that's just (a) the name of the kernel, and (b) whether or not that operator is structured. ### Questions I wanted to get this PR up earlier so I could get feedback, but there are a few things I want to call out: **Dealing with `structured`.** This PR separates out the notion of `structured` into two bits of information: - Does [operator] have a meta() function. This is backend-agnostic, and is represented by the `structured` property on `NativeFunction`, same as before. This is used, e.g., to decide what signatures to add to `MetaFunctions.h`. - Does [operator, backend] have an impl() function. This is backend dependent; even though technically all in-tree backends are forced to write impl() functions for an operator when we port the op to structured in native_functions.yaml, out-of-tree backends can decide to opt in independently. This is represented as a property on `BackendMetadata`. This is used in most other cases, e.g. in `RegisterDispatchKey` when we're deciding whether or not to gen a structured or unstructured wrapper. I also baked `is_structured_dispatch_key` directly into each BackendIndex. So for operators marked "structured" in native_functions.yaml, their corresponding CPU/CUDA BackendIndex entries will be marked structured, and all others (except for potentially external backends) will not. I ended up trying to deal with `structured` in this change since it's technically backend dependent (XLA can opt kernels into structured separately from in-tree ops), but that may have been too ambitious: it's technically not relevant until we actually add support for structured external kernels. If it's not clear that this is the right path for dealing with structured and we want to push that off, I'm fine with backing out the bits of this PR that make `structured` backend-dependent. I don't see anything *too* controversial related to structured in the change, but I tried to call out any areas in the comments **Localizing the fact that external backends follow Dispatcher convention.** Another thing that's sort of backend specific that I didn't totally address in this PR is the fact the fact that in-tree backends follow the Native API while external backends follow the Dispatcher API. I painted over that in `native_functions.py` by adding a helper, `kernel_signature`, that takes in a native function and gives you the "correct" signature for the specified backend- NativeSignature for in-tree backends, and DispatcherSignature for out-of-tree backends. In order to make that fully useable though, we'll need `NativeSignature` and `DispatcherSignature` to have matching interfaces. I didn't bother with that in this PR, which is why `gen_external_aten_fallbacks.py` still has a bunch of direct references to the dispatcher API. Thinking of adding it in a later PR but wanted to see if anyone has other opinions. Maybe `is_external()` shouldn't even be a property on the BackendMetadata, and anything the codegen does that requires asking for that information should just be better abstracted away. **Thoughts on the `BackendIndex` / `BackendMetadata` breakdown.** One thing that's annoying right now is that to query for various pieces of metadata, you call helper functions like `backend_index.structured(f)`, which queries that particular backend and tells you if that specific NativeFunctionGroup is structured for that backend. It has to return an `Optional[bool]` though, since you have to handle the case where that operator doesn't have a kernel for that backend at all. So users of those helpers end up with a bunch of optionals that they need to unpack, even if they know at some point that the result isn't None. I think it would be easier instead to just store the NativeFunction object as a field directly on the BackendMetadata. Curious if there are any other opinions on a better way to model it though. Test Plan: Imported from OSS Reviewed By: navahgar Differential Revision: D28474362 Pulled By: bdhirsh fbshipit-source-id: 41a00821acf172467d764cb41e771e096542f661
1469 lines
58 KiB
Python
1469 lines
58 KiB
Python
import re
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from dataclasses import dataclass
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from typing import List, Dict, Optional, Iterator, Tuple, Set, NoReturn, Sequence, Callable, Union
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from enum import Enum, auto
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import itertools
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# A little trick from https://github.com/python/mypy/issues/6366
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# for getting mypy to do exhaustiveness checking
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# TODO: put this somewhere else, maybe
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def assert_never(x: NoReturn) -> NoReturn:
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raise AssertionError("Unhandled type: {}".format(type(x).__name__))
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# ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ #
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#
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# DATA MODEL
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#
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# ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ #
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#
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# Some general principles for our data model.
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#
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# - Stop using C++ data types as the internal data representation
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# format. Instead, the internal data structures are centered
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# around JIT schema representation. This avoid a big problem
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# with the old codegen where we read in all the types from
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# native_functions.yaml and then immediately had to retranslate
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# them into C++ types.
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#
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# - More semantic data representation. Instead of representing
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# everything as dicts and strings, we define dataclasses for
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# every interesting entity the code generation has to deal with.
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# These dataclasses have strong semantic invariants: for example,
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# we generally require them to roundtrip losslessly into the
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# form they were parsed from. These structures are immutable
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# and you're expected to populate information once during
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# construction.
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# Represent a source location; used for better error reporting
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@dataclass(frozen=True)
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class Location:
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file: str
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line: int
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def __str__(self) -> str:
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return "{}:{}".format(self.file, self.line)
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# Valid values of the 'variants' field in native_functions.yaml
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Variant = Enum('Variant', ('function', 'method'))
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# NOTE: Keep the list in sync with `DispatchKey` in c10/core/DispatchKey.h
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class DispatchKey(Enum):
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Undefined = 0
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CatchAll = Undefined
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CPU = auto()
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CUDA = auto()
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HIP = auto()
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FPGA = auto()
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MSNPU = auto()
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XLA = auto()
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Vulkan = auto()
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Metal = auto()
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XPU = auto()
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MKLDNN = auto()
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OpenGL = auto()
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OpenCL = auto()
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IDEEP = auto()
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QuantizedCPU = auto()
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QuantizedCUDA = auto()
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QuantizedXPU = auto()
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CustomRNGKeyId = auto()
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MkldnnCPU = auto()
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SparseCPU = auto()
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SparseCUDA = auto()
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SparseCsrCPU = auto()
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SparseCsrCUDA = auto()
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SparseHIP = auto()
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SparseXPU = auto()
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NestedTensor = auto()
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PrivateUse1 = auto()
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PrivateUse2 = auto()
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PrivateUse3 = auto()
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EndOfBackendKeys = PrivateUse3
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Meta = auto()
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BackendSelect = auto()
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Named = auto()
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AutogradOther = auto()
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AutogradCPU = auto()
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AutogradCUDA = auto()
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AutogradXLA = auto()
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AutogradNestedTensor = auto()
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AutogradXPU = auto()
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AutogradPrivateUse1 = auto()
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AutogradPrivateUse2 = auto()
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AutogradPrivateUse3 = auto()
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Tracer = auto()
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Autocast = auto()
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Batched = auto()
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VmapMode = auto()
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TESTING_ONLY_GenericWrapper = auto()
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TESTING_ONLY_GenericMode = auto()
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NumDispatchKeys = auto()
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Autograd = auto()
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CompositeImplicitAutograd = auto()
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CompositeExplicitAutograd = auto()
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EndOfAliasKeys = CompositeExplicitAutograd
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CPUTensorId = CPU
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CUDATensorId = CUDA
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PrivateUse1_PreAutograd = AutogradPrivateUse1
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PrivateUse2_PreAutograd = AutogradPrivateUse2
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PrivateUse3_PreAutograd = AutogradPrivateUse3
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def __str__(self) -> str:
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return self.name
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def lower(self) -> str:
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return str(self).lower()
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@staticmethod
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def parse(value: str) -> 'DispatchKey':
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for k, v in DispatchKey.__members__.items():
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if k == value:
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return v
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raise AssertionError(f'unknown dispatch key {value}')
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STRUCTURED_DISPATCH_KEYS = {DispatchKey.CUDA, DispatchKey.CPU}
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# Dispatch keys that "support all backends". These codegen slightly differently
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# then backend specific keys.
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def is_generic_dispatch_key(dk: DispatchKey) -> bool:
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return dk in {DispatchKey.CompositeExplicitAutograd, DispatchKey.CompositeImplicitAutograd}
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# CUDA specific dispatch keys
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def is_cuda_dispatch_key(dk: DispatchKey) -> bool:
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return dk in {
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DispatchKey.CUDA,
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DispatchKey.QuantizedCUDA,
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DispatchKey.SparseCUDA,
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DispatchKey.SparseCsrCUDA,
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DispatchKey.AutogradCUDA,
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DispatchKey.CUDATensorId,
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}
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# Structured kernel generation is only supported for certain key types;
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# otherwise use old-style
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def is_structured_dispatch_key(dk: DispatchKey) -> bool:
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return dk in STRUCTURED_DISPATCH_KEYS
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class DeviceCheckType(Enum):
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NoCheck = 0
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ExactSame = 1
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# The basic input to the code generation is native_functions.yaml.
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# The name "native", BTW, comes from the distinction between native
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# functions and legacy TH functions. The legacy TH functions are gone,
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# but the "native" descriptor has stuck.
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#
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# NativeFunction models a single entry in native_functions.yaml. Its
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# fields roughly correspond to what you would see in the YAML itself,
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# but after canonicalization and parsing has occurred.
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#
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# You can see some of the overall design patterns for how we setup
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# dataclasses in this class, but we will defer a complete discussion
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# of this at FunctionSchema.
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@dataclass(frozen=True)
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class NativeFunction:
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# The function schema of the operator in question. This schema
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# has been parsed; see FunctionSchema for more about its structure.
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# (This type is quoted as we are forward referencing a type
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# defined later in the file. I opted for this ordering of the
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# classes for expository clarity.)
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func: 'FunctionSchema'
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# Whether or not to generate mutable tensor arguments like regular
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# ones
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use_const_ref_for_mutable_tensors: bool
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# Whether or not to omit automatic generation of a DeviceGuard
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device_guard: bool
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# How to emit automatic generation of device check
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device_check: DeviceCheckType
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# What python module to put the function in
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python_module: Optional[str]
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# TODO: figure out what this does
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category_override: Optional[str]
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# If no variants are specified in native_functions.yaml, this is
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# assumed to be {'function'}.
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variants: Set[Variant]
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# Whether or not we should skip generating registrations for
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# this kernel. This is a bit of a double-edged sword, as manual
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# registrations don't participate in codegen-based selective build!
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manual_kernel_registration: bool
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# Whether or not to skip generating TensorMethod/Functions bindings
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# for this kernel. Technically, this doesn't actually skip generating
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# the binding; instead, the binding gets generated to __dispatch_{funcname}
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# so you can make use of the normal binding if you need it.
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manual_cpp_binding: bool
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# The location in the YAML file were this native function entry was
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# defined. This is for conveniently reporting error messages!
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loc: 'Location'
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# Whether or not this out functions is a "structured kernel". Structured
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# kernels are defined a little differently from normal kernels; in
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# particular, their shape checking logic is defined separately from
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# the kernel. Only out functions can be structured; other functions
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# delegate to the out function using the structured_delegate keyword.
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# Every structured kernel must have at least an out and a functional
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# variant.
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structured: bool
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# Whether or not this non-out function is a structured kernel, defined
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# in terms of the out kernel referenced by the string here.
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structured_delegate: Optional['OperatorName']
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# Only valid for structured kernels. Specifies alternative of what
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# to inherit from when defining the meta class for the structured
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# operator. This will usually be TensorIteratorBase. This also
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# changes the semantics of set_output to call the parent class.
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structured_inherits: Optional[str]
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# Argument names whose default should be excluded from the C++ interface.
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# Intended for resolving overload ambiguities between signatures.
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cpp_no_default_args: Set[str]
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# Note [Abstract ATen methods]
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# ~~~~~~~~~~~~~~~~~~~~~~~~~~~~
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# An abstract ATen method is one whose dispatch differs between
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# types. These are implemented in derived types (with a
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# standard (throwing) definition in Type). A concrete ATen
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# method is one which has the same dispatch for all types;
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# we just implement it in the base Type. This is exposed
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# in Declarations.yaml via a field named 'abstract'.
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is_abstract: bool
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# Whether or not the NativeFunction contains a backend-agnostic kernel
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has_composite_implicit_autograd_kernel: bool
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has_composite_explicit_autograd_kernel: bool
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# NB: The benefit of defining a dataclass is that we automatically get
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# a constructor defined for all the fields we specify. No need
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# to explicitly write it out.
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# We parse both the NativeFunction + backend-specific information about it, which it stored in a corresponding BackendIndex.
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@staticmethod
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def from_yaml(
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ei: Dict[str, object],
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loc: 'Location'
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) -> Tuple['NativeFunction', Dict[DispatchKey, Dict['OperatorName', 'BackendMetadata']]]:
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"""
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Parse a NativeFunction from a dictionary as directly parsed
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from native_functions.yaml
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"""
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e = ei.copy()
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funcs = e.pop('func')
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assert isinstance(funcs, str), f'not a str: {funcs}'
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func = FunctionSchema.parse(funcs)
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cpp_no_default_args_list = e.pop('cpp_no_default_args', [])
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assert isinstance(cpp_no_default_args_list, list)
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cpp_no_default_args = set(cpp_no_default_args_list)
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use_const_ref_for_mutable_tensors = e.pop('use_const_ref_for_mutable_tensors', False)
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assert isinstance(use_const_ref_for_mutable_tensors, bool)
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variants_s = e.pop('variants', 'function')
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assert isinstance(variants_s, str)
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variants: Set[Variant] = set()
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for v in variants_s.split(', '):
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if v == 'function':
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variants.add(Variant.function)
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elif v == 'method':
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variants.add(Variant.method)
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else:
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raise AssertionError(f'illegal variant {v}')
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manual_kernel_registration = e.pop('manual_kernel_registration', False)
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assert isinstance(manual_kernel_registration, bool), f'not a bool: {manual_kernel_registration}'
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manual_cpp_binding = e.pop('manual_cpp_binding', False)
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assert isinstance(manual_cpp_binding, bool), f'not a bool: {manual_cpp_binding}'
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device_guard = e.pop('device_guard', True)
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assert isinstance(device_guard, bool), f'not a bool: {device_guard}'
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device_check_s = e.pop('device_check', None)
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assert device_check_s is None or isinstance(device_check_s, str), f'not a str: {device_check_s}'
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device_check: DeviceCheckType
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if device_check_s is None:
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device_check = DeviceCheckType.ExactSame
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else:
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device_check = DeviceCheckType[device_check_s]
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structured = e.pop('structured', False)
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assert isinstance(structured, bool), f'not a bool: {structured}'
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structured_delegate_s = e.pop('structured_delegate', None)
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assert structured_delegate_s is None or isinstance(structured_delegate_s, str), f'not a str: {structured_delegate}'
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structured_delegate: Optional[OperatorName] = None
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if structured_delegate_s is not None:
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structured_delegate = OperatorName.parse(structured_delegate_s)
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structured_inherits = e.pop('structured_inherits', None)
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assert structured_inherits is None or isinstance(structured_inherits, str), f'not a str: {structured_inherits}'
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python_module = e.pop('python_module', None)
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assert python_module is None or isinstance(python_module, str), f'not a str: {python_module}'
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category_override = e.pop('category_override', None)
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assert category_override is None or isinstance(category_override, str), f'not a str: {category_override}'
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from tools.codegen.api import cpp
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raw_dispatch = e.pop('dispatch', None)
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assert raw_dispatch is None or isinstance(raw_dispatch, dict), e
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dispatch: Dict[DispatchKey, str] = {}
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if raw_dispatch is not None:
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assert not manual_kernel_registration, \
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"cannot specify both manual_kernel_registration and dispatch; with " \
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"manual registration, dispatch has no effect!"
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for ks, v in raw_dispatch.items():
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if ks == '__line__':
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continue # not worth tracking line numbers for dispatch entries
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assert isinstance(ks, str), e
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assert isinstance(v, str), e
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for k in ks.split(","):
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dispatch_key = DispatchKey.parse(k.strip())
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dispatch[dispatch_key] = v
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assert dispatch != {DispatchKey.CompositeImplicitAutograd: cpp.name(func)}, \
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"unnecessary dispatch table for this function; just delete the dispatch " \
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"key entirely"
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assert dispatch.keys() != {DispatchKey.CompositeImplicitAutograd}, \
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f"unexpected name for singleton CompositeImplicitAutograd dispatch entry: expected {cpp.name(func)} " \
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f"but got {dispatch[DispatchKey.CompositeImplicitAutograd]}. Rename your implementation to the expected " \
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"name, then delete the dispatch table"
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elif not structured and structured_delegate is None:
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dispatch[DispatchKey.CompositeImplicitAutograd] = cpp.name(func)
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assert not (DispatchKey.CompositeExplicitAutograd in dispatch and DispatchKey.CompositeImplicitAutograd in dispatch), \
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"cannot specify both CompositeExplicitAutograd and CompositeImplicitAutograd on a single kernel; each " \
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"strictly subsumes the other. If you wanted to provide an explicit autograd " \
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"implementation, specify CompositeExplicitAutograd; otherwise specify CompositeImplicitAutograd only"
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if structured_delegate:
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# Structured functions MUST have a dispatch table
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is_abstract = True
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else:
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is_abstract = dispatch.keys() != {DispatchKey.CompositeImplicitAutograd}
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has_composite_implicit_autograd_kernel = DispatchKey.CompositeImplicitAutograd in dispatch.keys()
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has_composite_explicit_autograd_kernel = DispatchKey.CompositeExplicitAutograd in dispatch.keys()
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# BackendMetadata is used to store any information about a NativeFunction that is backend dependent.
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# The most obvious information is the kernel name, which usually contains the name of the backend in it for cpu/cuda.
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# Why is 'structured' included? External backends (e.g. XLA) opt into which ops are structured
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# independently of which in-tree ops are structured
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backend_metadata = {k: {func.name: BackendMetadata(
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kernel=v, structured=structured and is_structured_dispatch_key(k))} for k, v in dispatch.items()}
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# don't care if it exists or not; make it easier to use this function
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# with other yaml parsers that aren't setting __line__ in the dict
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e.pop('__line__', None)
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assert not e, f"leftover entries: {e}"
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|
|
# Asserts that we can't do in post_init, because they rely on backend-specific info
|
|
if structured_delegate is not None:
|
|
for key in STRUCTURED_DISPATCH_KEYS:
|
|
assert key not in dispatch, \
|
|
f"if structured_delegate, then must not have {key} in dispatch dictionary " \
|
|
"(it is delegated!)"
|
|
|
|
return NativeFunction(
|
|
func=func,
|
|
use_const_ref_for_mutable_tensors=use_const_ref_for_mutable_tensors,
|
|
variants=variants,
|
|
structured=structured,
|
|
structured_delegate=structured_delegate,
|
|
structured_inherits=structured_inherits,
|
|
manual_kernel_registration=manual_kernel_registration,
|
|
manual_cpp_binding=manual_cpp_binding,
|
|
python_module=python_module,
|
|
category_override=category_override,
|
|
device_guard=device_guard,
|
|
device_check=device_check,
|
|
loc=loc,
|
|
cpp_no_default_args=cpp_no_default_args,
|
|
is_abstract=is_abstract,
|
|
has_composite_implicit_autograd_kernel=has_composite_implicit_autograd_kernel,
|
|
has_composite_explicit_autograd_kernel=has_composite_explicit_autograd_kernel,
|
|
), backend_metadata
|
|
|
|
|
|
def validate_unstructured(self) -> None:
|
|
# TODO: probably better to accumulate these errors and report them all
|
|
# at once
|
|
assert not self.structured, "This function is structured, but there was " \
|
|
"no valid functional variant of it."
|
|
assert self.structured_delegate, "This function delegates to another structured out function, " \
|
|
"but no valid function was found (the delegate may not exist, or it has the wrong type)"
|
|
|
|
# __post_init__ functions in dataclasses can be used to do extra
|
|
# validation after construction.
|
|
#
|
|
# Notice that we don't do any type validation here. In fact, we
|
|
# rely exclusively on mypy to check if you've done types correctly!
|
|
# Validation is for nontrivial invariants that cannot be (conveniently)
|
|
# encoded in the type system.
|
|
def __post_init__(self) -> None:
|
|
if self.func.arguments.out:
|
|
assert self.variants == {Variant.function}, "Native functions with out arguments MUST " \
|
|
"be declared with only function variant; e.g., variants: function; " \
|
|
"otherwise you will tickle a Python argument binding bug " \
|
|
"(which usually manifests itself as the result variable being undefined.)"
|
|
if self.structured:
|
|
assert self.func.kind() == SchemaKind.out, "Put structured field on the out= " \
|
|
"variant of a function; did you mean structured_delegate?"
|
|
assert self.device_guard, "device_guard: False is not respected by structured kernels"
|
|
if self.structured_delegate:
|
|
assert self.func.kind() != SchemaKind.out, "structured_delegate field not allowed " \
|
|
"on out= functions; did you mean structured?"
|
|
assert self.device_guard, "device_guard: False is not respected by structured kernels"
|
|
# Technically, with the asserts above, this assert is impossible to
|
|
# happen
|
|
assert not (self.structured and self.structured_delegate), \
|
|
"Cannot have both structured and structured_delegate on function"
|
|
defaulted_arguments = {a.name for a in self.func.schema_order_arguments()
|
|
if a.default is not None}
|
|
invalid_args = set.difference(self.cpp_no_default_args, defaulted_arguments)
|
|
assert len(invalid_args) == 0, f'Invalid cpp_no_default_args: {invalid_args}'
|
|
if self.structured_inherits is not None:
|
|
assert self.structured, "structured_inherits must also imply structured: True"
|
|
if str(self.func.name).startswith('_foreach'):
|
|
assert self.device_check == DeviceCheckType.NoCheck, \
|
|
"foreach kernels fall back to slow path when tensor are on different devices, " \
|
|
"device_check not allowed to be enabled"
|
|
|
|
@property
|
|
def has_composite_kernel(self) -> bool:
|
|
return self.has_composite_implicit_autograd_kernel or self.has_composite_explicit_autograd_kernel
|
|
|
|
SchemaKind = Enum('SchemaKind', ('functional', 'inplace', 'out'))
|
|
|
|
# A structured kernel is guaranteed to have a functional and out variant, and
|
|
# optionally an inplace variant.
|
|
#
|
|
# NB: we create NativeFunctionsGroup *even if* the function is not
|
|
# actually annotated structured. Test the structured boolean to see if it
|
|
# actually is structured or not.
|
|
@dataclass(frozen=True)
|
|
class NativeFunctionsGroup:
|
|
functional: NativeFunction
|
|
inplace: Optional[NativeFunction]
|
|
out: NativeFunction
|
|
|
|
@property
|
|
def structured(self) -> bool:
|
|
# Whether or not the operator has a meta() function. This information is backend-agnostic.
|
|
return self.out.structured
|
|
|
|
def __post_init__(self) -> None:
|
|
test_sig: FunctionSchema = self.functional.func.signature()
|
|
for f in self.functions():
|
|
if test_sig != f.func.signature():
|
|
raise AssertionError(
|
|
"NativeFunctionsGroup constructed from two NativeFunctions "
|
|
f"that don't have matching signatures: {test_sig} != {f.func.signature()}"
|
|
)
|
|
assert self.functional.func.kind() == SchemaKind.functional
|
|
assert self.out.func.kind() == SchemaKind.out
|
|
if self.inplace is not None:
|
|
assert self.inplace.func.kind() == SchemaKind.inplace
|
|
|
|
if self.structured:
|
|
# For now, structured composite kernels are not supported (need some
|
|
# design work to figure out how to make the composite case work)
|
|
assert not self.out.has_composite_implicit_autograd_kernel
|
|
|
|
assert self.functional.structured_delegate == self.out.func.name, \
|
|
f"{self.functional.func.name} delegates to {self.functional.structured_delegate} " \
|
|
f"but its actual delegate is {self.out.func.name}"
|
|
if self.inplace is not None:
|
|
assert self.inplace.structured_delegate == self.out.func.name
|
|
|
|
def signature(self) -> 'FunctionSchema':
|
|
return self.out.func.signature()
|
|
|
|
def functions(self) -> Iterator[NativeFunction]:
|
|
yield self.out
|
|
yield self.functional
|
|
if self.inplace is not None:
|
|
yield self.inplace
|
|
|
|
@staticmethod
|
|
def from_dict(d: Dict[SchemaKind, NativeFunction]) -> Optional['NativeFunctionsGroup']:
|
|
assert d
|
|
if len(d) == 1:
|
|
return None
|
|
d = dict(d) # non-destructive updates please
|
|
functional = d.pop(SchemaKind.functional, None)
|
|
inplace = d.pop(SchemaKind.inplace, None)
|
|
out = d.pop(SchemaKind.out, None)
|
|
assert not d
|
|
assert functional is not None
|
|
# There are a few operators which only have functional/inplace variants;
|
|
# these don't count as structured for our purposes here
|
|
if out is None:
|
|
return None
|
|
|
|
return NativeFunctionsGroup(
|
|
functional=functional,
|
|
inplace=inplace,
|
|
out=out,
|
|
)
|
|
|
|
def is_foreach_op(name: str) -> bool:
|
|
return str(name) in set([
|
|
'_amp_foreach_non_finite_check_and_unscale_',
|
|
'_foreach_add_.ScalarList',
|
|
'_foreach_sub_.ScalarList',
|
|
'_foreach_mul_.ScalarList',
|
|
'_foreach_div_.ScalarList',
|
|
'_foreach_add_.Scalar',
|
|
'_foreach_sub_.Scalar',
|
|
'_foreach_mul_.Scalar',
|
|
'_foreach_div_.Scalar',
|
|
'_foreach_add_.List',
|
|
'_foreach_sub_.List',
|
|
'_foreach_mul_.List',
|
|
'_foreach_div_.List',
|
|
'_foreach_exp_',
|
|
'_foreach_sqrt_',
|
|
'_foreach_abs_',
|
|
'_foreach_acos_',
|
|
'_foreach_asin_',
|
|
'_foreach_atan_',
|
|
'_foreach_ceil_',
|
|
'_foreach_cos_',
|
|
'_foreach_cosh_',
|
|
'_foreach_erf_',
|
|
'_foreach_erfc_',
|
|
'_foreach_expm1_',
|
|
'_foreach_floor_',
|
|
'_foreach_log_',
|
|
'_foreach_log10_',
|
|
'_foreach_log1p_',
|
|
'_foreach_log2_',
|
|
'_foreach_neg_',
|
|
'_foreach_tan_',
|
|
'_foreach_tanh_',
|
|
'_foreach_sin_',
|
|
'_foreach_sinh_',
|
|
'_foreach_round_',
|
|
'_foreach_lgamma_',
|
|
'_foreach_frac_',
|
|
'_foreach_reciprocal_',
|
|
'_foreach_sigmoid_',
|
|
'_foreach_trunc_',
|
|
'_foreach_addcmul_.Scalar',
|
|
'_foreach_addcdiv_.Scalar',
|
|
'_foreach_addcmul_.ScalarList',
|
|
'_foreach_addcdiv_.ScalarList',
|
|
'_foreach_zero_'])
|
|
|
|
@dataclass(frozen=True)
|
|
class BackendMetadata:
|
|
# The name of the backend kernel, for a given operator
|
|
# for in-tree backends. These names come directly from the 'dispatch" field
|
|
# in native_functions.yaml. The dispatch entry is optional; in that
|
|
# case, that is equivalent to having written:
|
|
#
|
|
# dispatch:
|
|
# CompositeImplicitAutograd: $operator_name
|
|
kernel: str
|
|
# Whether or not the operator has a structured kernel implemented, for this particular backend.
|
|
# For in-tree backends, they all have the same value for structured- this is listed
|
|
# in native_functions.yaml.
|
|
# However, external backends like XLA can indendently toggle which ops are structured.
|
|
structured: bool
|
|
#
|
|
|
|
|
|
# BackendIndex represents a backend.
|
|
# The BackendIndex encodes per-operator information that is potentially different
|
|
# for each backend. The most obvious example is the name of the kernel
|
|
# (the 'dispatch' entry in native_functions.yaml).
|
|
# However, there can be other examples of different backends having different information.
|
|
# External backends can choose to opt their kernels to be structured independently from in-tree backends,
|
|
# which means that this information isn't inherentely tied to a NativeFunction- it's different per backend.
|
|
@dataclass(frozen=True)
|
|
class BackendIndex:
|
|
dispatch_key: DispatchKey
|
|
# Mainly important for structured kernels, this determines which variant in the operator group is used to implement the others.
|
|
# All in-tree ops use out kernels, while XLA uses functional kernels.
|
|
use_out_as_primary: bool
|
|
# Whether the backend is in-tree (CPU/CUDA) or out-of-tree (XLA)
|
|
external: bool
|
|
# Other backend-specific information that is on a per-operator basis
|
|
index: Dict['OperatorName', BackendMetadata]
|
|
|
|
@staticmethod
|
|
def grow_index(
|
|
parent_index: Dict[DispatchKey, Dict['OperatorName', BackendMetadata]],
|
|
child_index: Dict[DispatchKey, Dict['OperatorName', BackendMetadata]]
|
|
) -> None:
|
|
for k, v in child_index.items():
|
|
for op_name, metadata in v.items():
|
|
assert op_name not in parent_index[k], f'duplicate operator {op_name} for dispatch key {k}'
|
|
parent_index[k][op_name] = metadata
|
|
|
|
def primary(self, g: NativeFunctionsGroup) -> NativeFunction:
|
|
if self.use_out_as_primary:
|
|
return g.out
|
|
else:
|
|
return g.functional
|
|
|
|
def has_kernel(self, g: Union[NativeFunction, NativeFunctionsGroup]) -> bool:
|
|
m = self.get_kernel(g)
|
|
return m is not None
|
|
|
|
|
|
def get_kernel(self, g: Union[NativeFunction, NativeFunctionsGroup]) -> Optional[BackendMetadata]:
|
|
if isinstance(g, NativeFunction):
|
|
f = g
|
|
elif isinstance(g, NativeFunctionsGroup):
|
|
f = self.primary(g)
|
|
else:
|
|
assert_never(f)
|
|
if f.func.name not in self.index:
|
|
return None
|
|
return self.index[f.func.name]
|
|
|
|
|
|
# The function schema is undoubtedly the most important data structure
|
|
# in all of the codegen, as it defines the type signature for operators,
|
|
# and most of the code generation we do is type directed (e.g., look at
|
|
# the types, decide what to do. Think about how we code generate
|
|
# C++ function stubs!)
|
|
#
|
|
# We will also see in this class the general structure for how we model
|
|
# data in this code generation. A few notable properties to point out
|
|
# ahead of time:
|
|
#
|
|
# - These dataclasses are a *lossless* representation of the strings
|
|
# they are parsed from. In fact, we assert that given the
|
|
# information stored in the dataclass, we can exactly reconstruct
|
|
# the string we parsed from (and assert this inside the parse
|
|
# definition). There are a few reasons for this:
|
|
#
|
|
# - If you find that it is difficult to reconstruct the string
|
|
# given a dataclass, that is a clue that you are data
|
|
# representation is wrong.
|
|
#
|
|
# - It helps ensure that all relevant information is present
|
|
# in the dataclass, so that downstream users aren't tempted
|
|
# to reparse the original string to get some information
|
|
# that was omitted.
|
|
#
|
|
# - It forces you to represent the data in-memory in the same way
|
|
# it is recorded textually, which makes the dataclasses easier
|
|
# to understand for someone who is familiar with the
|
|
# textual format. (As a tradeoff, it means you have to model
|
|
# the syntax, even when it is inconvenient. But maybe that means
|
|
# the syntax is bad!) If you don't understand the internal
|
|
# representation, go look at the printing code to see how
|
|
# it maps onto the surface syntax!
|
|
#
|
|
# - It makes it easy to test the parsing code, as parsing code
|
|
# that is inconsistent with the string code will fail early
|
|
# and loudly. (As a tradeoff, it makes the parsing code a bit
|
|
# brittle (in particular, with trivial whitespace changes you
|
|
# are likely to trigger an assert error).
|
|
#
|
|
# In general, try to make the __str__ code as simple as possible
|
|
# (even at the cost of more complex parsing logic.) Additionally,
|
|
# try to minimize redundancy in data representation. (Precomputed
|
|
# fields are OK though: they are defined as a simple function on
|
|
# the canonical representation in question.)
|
|
#
|
|
# - These dataclasses are all frozen; once constructed their
|
|
# values never change. This makes it easy to tell where any
|
|
# given data came from: just look to the constructor. As a
|
|
# tradeoff, you can't easily "decorate" a schema with extra
|
|
# information from a post-facto analysis. We impose this
|
|
# restriction to make these structures more understandable.
|
|
#
|
|
@dataclass(frozen=True)
|
|
class FunctionSchema:
|
|
# The name of the operator this function schema describes.
|
|
name: 'OperatorName'
|
|
|
|
arguments: 'Arguments'
|
|
|
|
# TODO: Need to handle collisions with argument names at some point
|
|
returns: Tuple['Return', ...]
|
|
|
|
def schema_order_arguments(self) -> Iterator['Argument']:
|
|
return itertools.chain(
|
|
self.arguments.flat_positional,
|
|
self.arguments.flat_kwarg_only,
|
|
self.arguments.out
|
|
)
|
|
|
|
@staticmethod
|
|
def parse(func: str) -> 'FunctionSchema':
|
|
# We should probably get a proper parser here
|
|
assert ' -> ' in func, "function schema missing return type (spaces are mandatory)"
|
|
func_decl, return_decl = [x.strip() for x in func.split(' -> ')]
|
|
ops, args = func_decl.split('(', 1)
|
|
assert args[-1] == ")", "Expecting closing )"
|
|
args = args[:-1]
|
|
name = OperatorName.parse(ops)
|
|
arguments = Arguments.parse(args)
|
|
returns = parse_returns(return_decl)
|
|
r = FunctionSchema(
|
|
name=name,
|
|
arguments=arguments,
|
|
returns=returns
|
|
)
|
|
assert str(r) == func, f'{str(r)} != {func}'
|
|
return r
|
|
|
|
def __post_init__(self) -> None:
|
|
for arg, ret in zip(self.arguments.out, self.returns):
|
|
assert arg.annotation == ret.annotation, \
|
|
"Out arguments must have matching return Tensor; furthermore, " \
|
|
"the ith-argument needs to correspond to the ith return"
|
|
# Invariant: we expect out arguments to appear as keyword arguments in the schema.
|
|
# This means that all mutable returns should be aliased to a keyword argument
|
|
# (except for "self", which we explicitly don't treat as an out argument because of its use in methods)
|
|
# See Note [is_out_fn]
|
|
out_and_self = list(self.arguments.out) + [arg for arg in self.arguments.flat_positional if arg.name == "self"]
|
|
mutable_returns = [ret for ret in self.returns if ret.annotation is not None and ret.annotation.is_write]
|
|
for ret in mutable_returns:
|
|
assert any([ret.annotation == arg.annotation for arg in out_and_self]), \
|
|
"All mutable returns must be aliased either to a keyword argument, or to \"self\". " \
|
|
"Did you forget to mark an out argument as keyword-only?"
|
|
if self.arguments.out:
|
|
assert len(self.arguments.out) == len(self.returns), \
|
|
"Must return as many arguments as there are out arguments"
|
|
if self.name.name.inplace:
|
|
# TODO: fixme
|
|
if not is_foreach_op(str(self.name)):
|
|
assert len(self.returns) == 1
|
|
|
|
def is_out_fn(self) -> bool:
|
|
# Note [is_out_fn]
|
|
#
|
|
# out functions are the variants which take an explicit out= argument
|
|
# to populate into. We need to know if a schema corresponds to an
|
|
# out function for several reasons:
|
|
#
|
|
# - They codegen differently in C++ API
|
|
# - codegen to at::add_out rather than at::add
|
|
# - out argument is moved to front of C++ argument list
|
|
#
|
|
# out functions are DEFINED to be any function with a keyword-only
|
|
# argument that is mutable. In principle, this could lead to a
|
|
# false positive if you define a function that mutates a
|
|
# kwarg only argument, but this isn't the "true" output of this
|
|
# function. A more robust definition that would work in this
|
|
# case would also look at:
|
|
#
|
|
# - The output types. Out functions take in the arguments
|
|
# they mutate and then return them again; this is sort
|
|
# of "definitionally" what makes something an out function.
|
|
# Historically, we DO check this for consistency.
|
|
# - Correspondence with pure variant. An out function
|
|
# should have a signature equivalent to its pure variant,
|
|
# but just with extra kwargs for the output elements. This
|
|
# is difficult to actually check for and historically
|
|
# we only do this check in tools/
|
|
return bool(self.arguments.out)
|
|
|
|
def kind(self) -> SchemaKind:
|
|
"""
|
|
What kind of schema is this? A functional schema is one
|
|
that returns a newly allocated output; an inplace schema
|
|
modifies the self argument inplace; an out schema writes
|
|
the result into an explicitly provided out argument.
|
|
"""
|
|
is_inplace = self.name.name.inplace
|
|
is_out = bool(self.arguments.out)
|
|
assert not (is_inplace and is_out)
|
|
if is_inplace:
|
|
return SchemaKind.inplace
|
|
elif is_out:
|
|
return SchemaKind.out
|
|
else:
|
|
return SchemaKind.functional
|
|
|
|
def signature(self, *, strip_default: bool = False) -> 'FunctionSchema':
|
|
"""
|
|
Certain schemas are 'related', in that they are simply
|
|
inplace/out/functional versions of the same function. This method
|
|
factors these schemas into the "core" functional signature which
|
|
is equal across all versions.
|
|
|
|
Here is what normalization happens to the schema to convert
|
|
it to a signature:
|
|
- The overload name is stripped (name is retained, since
|
|
it expresses semantic content about what the function does)
|
|
- Inplace is set False
|
|
- Out arguments are stripped
|
|
- Mutability annotations are stripped (this is sound
|
|
because you cannot overload on mutability annotation)
|
|
- Return names are stripped since they are not overloadable and
|
|
some variants have return names but some not
|
|
"""
|
|
|
|
def strip_ret_annotation(r: Return) -> Return:
|
|
return Return(
|
|
name=None,
|
|
type=r.type,
|
|
annotation=None,
|
|
)
|
|
|
|
return FunctionSchema(
|
|
name=OperatorName(
|
|
name=BaseOperatorName(
|
|
base=self.name.name.base,
|
|
inplace=False,
|
|
dunder_method=self.name.name.dunder_method,
|
|
),
|
|
overload_name="", # stripped
|
|
),
|
|
arguments=self.arguments.signature(strip_default=strip_default),
|
|
returns=tuple(map(strip_ret_annotation, self.returns)),
|
|
)
|
|
|
|
def __str__(self) -> str:
|
|
all_arguments_str = str(self.arguments)
|
|
if len(self.returns) == 1:
|
|
returns = str(self.returns[0]) # omit parentheses
|
|
else:
|
|
returns = '(' + ', '.join(map(str, self.returns)) + ')'
|
|
return f'{self.name}({all_arguments_str}) -> {returns}'
|
|
|
|
# Here is the rest of the data model, described more briefly.
|
|
|
|
# Simplified version for what actually shows up in built-ins.
|
|
# Look at alias_info.h for expanded syntax. If you need the structure,
|
|
# you also need to make this structure recursive so it can be lined
|
|
# up with the type components too. For primitives this isn't really
|
|
# necessary
|
|
@dataclass(frozen=True)
|
|
class Annotation:
|
|
# Typically only has one element. Not actually a set so
|
|
# we can conveniently assume it is canonically ordered
|
|
alias_set: Tuple[str, ...]
|
|
is_write: bool
|
|
|
|
@staticmethod
|
|
def parse(ann: str) -> 'Annotation':
|
|
m = re.match(r'^([a-z])(!?)(!?)$', ann)
|
|
assert m is not None, f'unrecognized alias annotation {ann}'
|
|
alias_set = (m.group(1),)
|
|
is_write = m.group(2) == '!'
|
|
r = Annotation(alias_set=alias_set, is_write=is_write)
|
|
assert str(r) == ann, f'{r} != {ann}'
|
|
return r
|
|
|
|
def __str__(self) -> str:
|
|
alias_set = '|'.join(self.alias_set)
|
|
is_write = '!' if self.is_write else ''
|
|
return f'{alias_set}{is_write}'
|
|
|
|
# The base class for the type system. This is also loosely modeled
|
|
# off of jit_type.h, but we've simplified the hierarchy to focus
|
|
# in on the aspects of the type system that matter for code generation
|
|
# (for example, there's no SingleElementType subclass anymore).
|
|
# You never actually construct a Type; usually it's going to be one
|
|
# of the subclasses. If Python had ADTs this would be one!
|
|
@dataclass(frozen=True)
|
|
class Type:
|
|
@staticmethod
|
|
def parse(t: str) -> 'Type':
|
|
r = Type._parse(t)
|
|
assert str(r) == t, f'{r} != {t}'
|
|
return r
|
|
|
|
@staticmethod
|
|
def _parse(t: str) -> 'Type':
|
|
m = re.match(r'^(.+)\?$', t)
|
|
if m is not None:
|
|
return OptionalType(Type.parse(m.group(1)))
|
|
m = re.match(r'^(.+)\[([0-9]+)?\]$', t)
|
|
if m is not None:
|
|
size = int(m.group(2)) if m.group(2) is not None else None
|
|
return ListType(elem=Type.parse(m.group(1)), size=size)
|
|
try:
|
|
return BaseType(BaseTy[t])
|
|
except KeyError:
|
|
raise RuntimeError(f"unrecognized type {t}")
|
|
|
|
def __str__(self) -> str:
|
|
raise NotImplementedError
|
|
|
|
# WARNING: These concepts are not very well-defined. For example,
|
|
# is "int?" nullable? How about "int?[]". They are defined
|
|
# so we can conveniently generate legacy Declarations.yaml but
|
|
# really we should probably just remove these at some point
|
|
|
|
def is_tensor_like(self) -> bool:
|
|
raise NotImplementedError
|
|
|
|
def is_nullable(self) -> bool:
|
|
raise NotImplementedError
|
|
|
|
def is_list_like(self) -> Optional['ListType']:
|
|
raise NotImplementedError
|
|
|
|
# Base types are simple, atomic types with no further structure
|
|
BaseTy = Enum('BaseTy', (
|
|
'Generator',
|
|
'ScalarType',
|
|
'Tensor',
|
|
'int',
|
|
'Dimname',
|
|
'float',
|
|
'str',
|
|
'bool',
|
|
'Layout',
|
|
'Device',
|
|
'Scalar',
|
|
'MemoryFormat',
|
|
'QScheme',
|
|
'Storage',
|
|
'Stream',
|
|
'ConstQuantizerPtr', # TODO: rename
|
|
))
|
|
|
|
@dataclass(frozen=True)
|
|
class BaseType(Type):
|
|
name: BaseTy
|
|
|
|
def __str__(self) -> str:
|
|
return f'{self.name.name}'
|
|
|
|
def is_tensor_like(self) -> bool:
|
|
return self.name == BaseTy.Tensor
|
|
|
|
def is_nullable(self) -> bool:
|
|
return False
|
|
|
|
def is_list_like(self) -> Optional['ListType']:
|
|
return None
|
|
|
|
# Optional types may be specified, or may also be validly given None
|
|
@dataclass(frozen=True)
|
|
class OptionalType(Type):
|
|
elem: Type
|
|
|
|
def __str__(self) -> str:
|
|
return f'{self.elem}?'
|
|
|
|
def is_tensor_like(self) -> bool:
|
|
return self.elem.is_tensor_like()
|
|
|
|
def is_nullable(self) -> bool:
|
|
return True
|
|
|
|
def is_list_like(self) -> Optional['ListType']:
|
|
return self.elem.is_list_like()
|
|
|
|
# List types specify that we may have multiples of an element. We
|
|
# also support explicit sizes on list types, but these have
|
|
# some nontrivial semantics! (However, for C++ API purposes, explicit
|
|
# sizes are mostly erased from the type system.)
|
|
#
|
|
# DANGER WILL ROBINSON: C++ elaboration depends on elem type; e.g.,
|
|
# int[] elaborates differently than bool[3]!
|
|
@dataclass(frozen=True)
|
|
class ListType(Type):
|
|
elem: Type
|
|
size: Optional[int]
|
|
|
|
def __str__(self) -> str:
|
|
size = f'{self.size}' if self.size else ''
|
|
return f'{self.elem}[{size}]'
|
|
|
|
def is_tensor_like(self) -> bool:
|
|
return self.elem.is_tensor_like()
|
|
|
|
def is_nullable(self) -> bool:
|
|
return self.elem.is_nullable()
|
|
|
|
def is_list_like(self) -> Optional['ListType']:
|
|
return self
|
|
|
|
@dataclass(frozen=True)
|
|
class Argument:
|
|
# NB: I didn't put kwarg_only as a boolean field here, unlike
|
|
# c10::Argument, so that printing works correctly
|
|
|
|
name: str
|
|
type: Type
|
|
default: Optional[str]
|
|
|
|
# The semantics of the annotation field are a little strange.
|
|
#
|
|
# Alias annotations parametrize Tensors (since Tensors are the only things
|
|
# that can alias.) This motivates why I write Tensor(a!)? (and not, for
|
|
# example, Tensor?(a!)), because the (a!) describes aliasing on the tensor,
|
|
# which may be optional (i.e., the alias annotation should bind first to
|
|
# Tensor, before the optional postfix annotation).
|
|
#
|
|
# However, despite being a property of Tensor, we (and c10::Argument)
|
|
# store the annotation at the top level of the Argument, rather than
|
|
# inside the embedded Tensor type. In the C++ version of this
|
|
# class, we then go through great lengths to mimic the type
|
|
# structure in the annotation structure so we can correlate
|
|
# annotations with types.
|
|
#
|
|
# Now, it turns out, in all applications in code generation, the
|
|
# structure of annotated types is very simple. So we just hard
|
|
# code it here. But if we ever do get anything more complex, this
|
|
# model will have to change!
|
|
annotation: Optional[Annotation]
|
|
|
|
@staticmethod
|
|
def parse(arg: str) -> 'Argument':
|
|
name: str
|
|
default: Optional[str]
|
|
type_and_annot, name_and_default = arg.rsplit(' ', 1)
|
|
if '=' in name_and_default:
|
|
name, default = name_and_default.split('=')
|
|
else:
|
|
name = name_and_default
|
|
default = None
|
|
# TODO: deduplicate annotation matching with Return
|
|
match = re.match(r'Tensor\((.+)\)(.*)', type_and_annot)
|
|
annotation: Optional[Annotation]
|
|
if match:
|
|
# If you update this, make sure the __str__ still works too
|
|
assert match.group(2) in ['', '?', '[]'], 'unrecognized alias analysis form with Tensor'
|
|
type_s = 'Tensor' + match.group(2)
|
|
annotation = Annotation.parse(match.group(1))
|
|
else:
|
|
type_s = type_and_annot
|
|
annotation = None
|
|
type = Type.parse(type_s)
|
|
r = Argument(
|
|
name=name,
|
|
type=type,
|
|
default=default,
|
|
annotation=annotation,
|
|
)
|
|
assert str(r) == arg, f'{str(r)} != {arg}'
|
|
return r
|
|
|
|
@property
|
|
def is_write(self) -> bool:
|
|
return self.annotation is not None and self.annotation.is_write
|
|
|
|
def __str__(self) -> str:
|
|
type = f'{self.type}'
|
|
if self.annotation:
|
|
assert type in ['Tensor', 'Tensor?', 'Tensor[]']
|
|
type = type.replace('Tensor', f'Tensor({self.annotation})')
|
|
if self.name is None:
|
|
return type
|
|
else:
|
|
mb_default = ''
|
|
if self.default:
|
|
mb_default = f'={self.default}'
|
|
return f"{type} {self.name}{mb_default}"
|
|
|
|
|
|
@dataclass(frozen=True)
|
|
class Return:
|
|
name: Optional[str]
|
|
type: Type
|
|
annotation: Optional[Annotation]
|
|
|
|
@staticmethod
|
|
def parse(arg: str) -> 'Return':
|
|
name: Optional[str]
|
|
if ' ' in arg:
|
|
type_and_annot, name = arg.rsplit(' ', 1)
|
|
else:
|
|
type_and_annot = arg
|
|
name = None
|
|
match = re.match(r'Tensor\((.+)\)(.*)', type_and_annot)
|
|
annotation: Optional[Annotation]
|
|
if match:
|
|
# If you update this, make sure the __str__ still works too
|
|
assert match.group(2) in ['', '?', '[]'], 'unrecognized alias analysis form with Tensor'
|
|
type_s = 'Tensor' + match.group(2)
|
|
annotation = Annotation.parse(match.group(1))
|
|
else:
|
|
type_s = type_and_annot
|
|
annotation = None
|
|
type = Type.parse(type_s)
|
|
r = Return(
|
|
name=name,
|
|
type=type,
|
|
annotation=annotation,
|
|
)
|
|
assert str(r) == arg, f'{str(r)} != {arg}'
|
|
return r
|
|
|
|
@property
|
|
def is_write(self) -> bool:
|
|
return self.annotation is not None and self.annotation.is_write
|
|
|
|
def __str__(self) -> str:
|
|
type = f'{self.type}'
|
|
if self.annotation:
|
|
assert type in ['Tensor', 'Tensor?', 'Tensor[]']
|
|
type = type.replace('Tensor', f'Tensor({self.annotation})')
|
|
if self.name is None:
|
|
return type
|
|
else:
|
|
return f"{type} {self.name}"
|
|
|
|
|
|
# Represents the self argument for functions that may be methods
|
|
@dataclass(frozen=True)
|
|
class SelfArgument:
|
|
argument: Argument
|
|
|
|
# Bundle of arguments that represent a TensorOptions. This is mostly
|
|
# relevant for the public C++ API but we bake it into the core data
|
|
# model because other APIs often have to interact with it
|
|
@dataclass(frozen=True)
|
|
class TensorOptionsArguments:
|
|
dtype: Argument
|
|
layout: Argument
|
|
device: Argument
|
|
pin_memory: Argument
|
|
|
|
def all(self) -> Sequence[Argument]:
|
|
return [self.dtype, self.layout, self.device, self.pin_memory]
|
|
|
|
@dataclass(frozen=True)
|
|
class Arguments:
|
|
# pre_self_positional is usually empty, but is notably non-empty
|
|
# for where.self, where the condition argument comes before the
|
|
# self argument
|
|
pre_self_positional: Tuple[Argument, ...]
|
|
self_arg: Optional[SelfArgument]
|
|
post_self_positional: Tuple[Argument, ...]
|
|
|
|
pre_tensor_options_kwarg_only: Tuple[Argument, ...]
|
|
tensor_options: Optional[TensorOptionsArguments]
|
|
# post_tensor_options is typically memory format, which should be
|
|
# part of tensor options but isn't right now, and is usually
|
|
# placed after the tensor options arguments
|
|
post_tensor_options_kwarg_only: Tuple[Argument, ...]
|
|
|
|
# Unlike in the previous codegen, we have factored out 'out' arguments
|
|
# in the canonical representation, removing them from kwarg
|
|
# arguments. This choice is justified by numerous downstream
|
|
# transformations which treat out arguments specially; additionally,
|
|
# you can see that canonicity is not violated!
|
|
out: Tuple[Argument, ...] # these are also kwarg-only
|
|
|
|
@property
|
|
def flat_non_out(self) -> Sequence[Argument]:
|
|
ret: List[Argument] = []
|
|
ret.extend(self.flat_positional)
|
|
ret.extend(self.flat_kwarg_only)
|
|
return ret
|
|
|
|
@property
|
|
def flat_positional(self) -> Sequence[Argument]:
|
|
ret: List[Argument] = []
|
|
ret.extend(self.pre_self_positional)
|
|
if self.self_arg is not None:
|
|
ret.append(self.self_arg.argument)
|
|
ret.extend(self.post_self_positional)
|
|
return ret
|
|
|
|
# NB: doesn't contain out arguments
|
|
@property
|
|
def flat_kwarg_only(self) -> Sequence[Argument]:
|
|
ret: List[Argument] = []
|
|
ret.extend(self.pre_tensor_options_kwarg_only)
|
|
if self.tensor_options is not None:
|
|
ret.extend(self.tensor_options.all())
|
|
ret.extend(self.post_tensor_options_kwarg_only)
|
|
return ret
|
|
|
|
@property
|
|
def non_out(self) -> Sequence[Union[Argument, SelfArgument, TensorOptionsArguments]]:
|
|
ret: List[Union[Argument, SelfArgument, TensorOptionsArguments]] = []
|
|
ret.extend(self.positional)
|
|
ret.extend(self.kwarg_only)
|
|
return ret
|
|
|
|
@property
|
|
def positional(self) -> Sequence[Union[Argument, SelfArgument]]:
|
|
ret: List[Union[Argument, SelfArgument]] = []
|
|
ret.extend(self.pre_self_positional)
|
|
if self.self_arg is not None:
|
|
ret.append(self.self_arg)
|
|
ret.extend(self.post_self_positional)
|
|
return ret
|
|
|
|
@property
|
|
def kwarg_only(self) -> Sequence[Union[Argument, TensorOptionsArguments]]:
|
|
ret: List[Union[Argument, TensorOptionsArguments]] = []
|
|
ret.extend(self.pre_tensor_options_kwarg_only)
|
|
if self.tensor_options is not None:
|
|
ret.append(self.tensor_options)
|
|
ret.extend(self.post_tensor_options_kwarg_only)
|
|
return ret
|
|
|
|
def signature(self, *, strip_default: bool = False) -> 'Arguments':
|
|
# dataclasses.replace could be used here, but it is less
|
|
# type safe so for now I've opted to type everything out
|
|
def strip_arg_annotation(a: Argument) -> Argument:
|
|
return Argument(
|
|
name=a.name,
|
|
type=a.type,
|
|
default=a.default if not strip_default else None,
|
|
annotation=None,
|
|
)
|
|
|
|
return Arguments(
|
|
pre_self_positional=tuple(map(strip_arg_annotation, self.pre_self_positional)),
|
|
self_arg=SelfArgument(
|
|
strip_arg_annotation(self.self_arg.argument)
|
|
) if self.self_arg is not None else None,
|
|
post_self_positional=tuple(map(strip_arg_annotation, self.post_self_positional)),
|
|
pre_tensor_options_kwarg_only=tuple(map(strip_arg_annotation, self.pre_tensor_options_kwarg_only)),
|
|
# NB: tensor_options guaranteed to not have any alias annotations
|
|
tensor_options=self.tensor_options,
|
|
post_tensor_options_kwarg_only=tuple(map(strip_arg_annotation, self.post_tensor_options_kwarg_only)),
|
|
# out arguments are dropped in signature
|
|
out=(),
|
|
)
|
|
|
|
|
|
@staticmethod
|
|
def _preparse(args: str) -> Tuple[List[Argument], List[Argument], List[Argument]]:
|
|
positional: List[Argument] = []
|
|
kwarg_only: List[Argument] = []
|
|
out: List[Argument] = []
|
|
arguments_acc = positional
|
|
|
|
# TODO: Use a real parser here; this will get bamboozled
|
|
# by signatures that contain things like std::array<bool, 2> (note the space)
|
|
for arg in args.split(', '):
|
|
if not arg:
|
|
continue
|
|
if arg == '*':
|
|
assert arguments_acc is positional, "invalid syntax: kwarg-only specifier * can only occur once"
|
|
arguments_acc = kwarg_only
|
|
continue
|
|
parg = Argument.parse(arg)
|
|
# Currently, we rely directly on the invariant that there are NO
|
|
# kwarg-only mutating arguments. If you want to relax this,
|
|
# we will need a more semantic way of matching that takes
|
|
# into account return arguments. In that case, you will have
|
|
# to manage out computation a level up, in FunctionSchema. See Note
|
|
# [is_out_fn]
|
|
if parg.annotation is not None and parg.annotation.is_write:
|
|
if arguments_acc is positional:
|
|
pass # do nothing
|
|
elif arguments_acc is kwarg_only:
|
|
arguments_acc = out
|
|
else:
|
|
assert arguments_acc is not out
|
|
arguments_acc.append(parg)
|
|
|
|
return positional, kwarg_only, out
|
|
|
|
@staticmethod
|
|
def parse(args: str) -> 'Arguments':
|
|
"""
|
|
Input: 'int x, int y, int z'
|
|
"""
|
|
|
|
# We do this in two phases. First we parse into three
|
|
# main categories: positional, kwarg_only, out.
|
|
# Then, we reparse positional and kwarg_only to separate
|
|
# out the self argument and tensor options arguments.
|
|
|
|
positional, kwarg_only, out = Arguments._preparse(args)
|
|
|
|
# Split self argument
|
|
self_ix = None
|
|
for i, a in enumerate(positional):
|
|
if a.name == "self":
|
|
self_ix = i
|
|
break
|
|
pre_self_positional: List[Argument]
|
|
self_arg: Optional[SelfArgument]
|
|
post_self_positional: List[Argument]
|
|
if self_ix is not None:
|
|
pre_self_positional = positional[:self_ix]
|
|
self_arg = SelfArgument(positional[self_ix])
|
|
post_self_positional = positional[self_ix + 1:]
|
|
else:
|
|
pre_self_positional = []
|
|
self_arg = None
|
|
post_self_positional = positional
|
|
|
|
# Group tensor options arguments
|
|
pre_tensor_options_kwarg_only: List[Argument] = []
|
|
tensor_options: Optional[TensorOptionsArguments] = None
|
|
post_tensor_options_kwarg_only: List[Argument] = []
|
|
kwarg_only_acc = pre_tensor_options_kwarg_only
|
|
|
|
def pred(name: str, ty: Type) -> Callable[[Argument], bool]:
|
|
return lambda a: a.name == name and a.type in [ty, OptionalType(ty)]
|
|
predicates = [ # order matters
|
|
pred('dtype', Type.parse('ScalarType')),
|
|
pred('layout', Type.parse('Layout')),
|
|
pred('device', Type.parse('Device')),
|
|
pred('pin_memory', Type.parse('bool')),
|
|
]
|
|
|
|
i = 0
|
|
while i < len(kwarg_only):
|
|
# If there is enough space...
|
|
if i <= len(kwarg_only) - len(predicates):
|
|
# And the next len(predicates) arguments look like TensorOptions arguments
|
|
if all(p(a) for p, a in zip(predicates, kwarg_only[i : i + len(predicates)])):
|
|
assert kwarg_only_acc is pre_tensor_options_kwarg_only
|
|
# Group them together as one argument
|
|
tensor_options = TensorOptionsArguments(
|
|
dtype=kwarg_only[i],
|
|
layout=kwarg_only[i + 1],
|
|
device=kwarg_only[i + 2],
|
|
pin_memory=kwarg_only[i + 3],
|
|
)
|
|
i += len(predicates)
|
|
kwarg_only_acc = post_tensor_options_kwarg_only
|
|
continue
|
|
kwarg_only_acc.append(kwarg_only[i])
|
|
i += 1
|
|
|
|
return Arguments(
|
|
pre_self_positional=tuple(pre_self_positional),
|
|
self_arg=self_arg,
|
|
post_self_positional=tuple(post_self_positional),
|
|
pre_tensor_options_kwarg_only=tuple(pre_tensor_options_kwarg_only),
|
|
tensor_options=tensor_options,
|
|
post_tensor_options_kwarg_only=tuple(post_tensor_options_kwarg_only),
|
|
out=tuple(out),
|
|
)
|
|
|
|
|
|
def __str__(self) -> str:
|
|
all_arguments: List[str] = []
|
|
all_arguments.extend(map(str, self.flat_positional))
|
|
if self.flat_kwarg_only or self.out:
|
|
all_arguments.append('*')
|
|
all_arguments.extend(map(str, self.flat_kwarg_only))
|
|
all_arguments.extend(map(str, self.out))
|
|
return ', '.join(all_arguments)
|
|
|
|
def __post_init__(self) -> None:
|
|
# TODO: These invariants are weirdly asymmetric?
|
|
# TODO: Fancier types?
|
|
if self.self_arg is None:
|
|
assert not self.pre_self_positional
|
|
if self.tensor_options is None:
|
|
assert not self.post_tensor_options_kwarg_only
|
|
|
|
|
|
# Names that validly are __iXXX__ indicating inplace operations.
|
|
# Taken from https://www.python.org/dev/peps/pep-0203/#new-methods
|
|
# NB: PyTorch hasn't actually implemented all of these
|
|
AUGMENTED_ASSIGNMENT_NAMES = ['add', 'sub', 'mul', 'div', 'mod', 'pow', 'lshift', 'rshift', 'and', 'xor', 'or']
|
|
|
|
# A BaseOperatorName is what we think of the operator name, without
|
|
# the overload name. Unusually, we don't represent this as just a
|
|
# string; instead, we directly represent a few important semantic
|
|
# bits of information we derive from the string: namely whether
|
|
# or not it's inplace (add_) and whether or not it's a double-underscore
|
|
# method (__add__)
|
|
@dataclass(frozen=True)
|
|
class BaseOperatorName:
|
|
base: str
|
|
inplace: bool
|
|
dunder_method: bool
|
|
|
|
@staticmethod
|
|
def parse(op: str) -> 'BaseOperatorName':
|
|
assert op != ''
|
|
assert not op.endswith('_out'), \
|
|
"_out suffix is reserved and not permitted for operator names; " \
|
|
"did you mean to specify an out overload name instead?"
|
|
m = re.match(r'^__([^_]+)__$', op)
|
|
if m is not None:
|
|
dunder_method = True
|
|
base = m.group(1)
|
|
if any(base == f'i{n}' for n in AUGMENTED_ASSIGNMENT_NAMES):
|
|
inplace = True
|
|
base = base[1:]
|
|
else:
|
|
inplace = False
|
|
# temporary, this is not intrinsically true but
|
|
# has been historically true for dunder methods
|
|
# we support (but, if we ever got, say, __int__, this would
|
|
# be wrong!)
|
|
assert base[0] != 'i'
|
|
else:
|
|
dunder_method = False
|
|
base = op
|
|
if base[-1] == '_':
|
|
inplace = True
|
|
base = base[:-1]
|
|
else:
|
|
inplace = False
|
|
r = BaseOperatorName(base=base, inplace=inplace, dunder_method=dunder_method)
|
|
assert str(r) == op, f'{str(r)} != {op}'
|
|
return r
|
|
|
|
def __str__(self) -> str:
|
|
if self.dunder_method:
|
|
i = 'i' if self.inplace else ''
|
|
return f'__{i}{self.base}__'
|
|
else:
|
|
i = '_' if self.inplace else ''
|
|
return f'{self.base}{i}'
|
|
|
|
# Operator name is the base operator name along with the (typically not
|
|
# user visible) overload string.
|
|
@dataclass(frozen=True)
|
|
class OperatorName:
|
|
name: BaseOperatorName
|
|
overload_name: str
|
|
|
|
@staticmethod
|
|
def parse(op_name: str) -> 'OperatorName':
|
|
if '.' in op_name:
|
|
name, overload_name = op_name.split('.', 1)
|
|
else:
|
|
name = op_name
|
|
overload_name = ''
|
|
r = OperatorName(
|
|
name=BaseOperatorName.parse(name),
|
|
overload_name=overload_name
|
|
)
|
|
assert str(r) == op_name, f'{str(r)} != {op_name}'
|
|
return r
|
|
|
|
def __str__(self) -> str:
|
|
if self.overload_name:
|
|
return f"{self.name}.{self.overload_name}"
|
|
else:
|
|
return f"{self.name}"
|
|
|
|
# Helper functions for parsing argument lists (both inputs and returns)
|
|
|
|
def parse_returns(return_decl: str) -> Tuple[Return, ...]:
|
|
"""
|
|
Input: '()'
|
|
Output: []
|
|
"""
|
|
if return_decl == '()':
|
|
return ()
|
|
if return_decl[0] == '(' and return_decl[-1] == ')':
|
|
return_decl = return_decl[1:-1]
|
|
return tuple(Return.parse(arg) for arg in return_decl.split(', '))
|