overrides.py 103 KB

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  1. """
  2. Python implementation of ``__torch_function__``
  3. While most of the torch API and handling for ``__torch_function__`` happens
  4. at the C++ level, some of the torch API is written in Python so we need
  5. python-level handling for ``__torch_function__`` overrides as well. The main
  6. developer-facing functionality in this file are handle_torch_function and
  7. has_torch_function. See torch/functional.py and test/test_overrides.py
  8. for usage examples.
  9. Note
  10. ----
  11. heavily inspired by NumPy's ``__array_function__`` (see:
  12. https://github.com/pytorch/pytorch/issues/24015 and
  13. https://www.numpy.org/neps/nep-0018-array-function-protocol.html
  14. )
  15. If changing this file in a way that can affect ``__torch_function__`` overhead,
  16. please report the benchmarks in ``benchmarks/overrides_benchmark``. See the
  17. instructions in the ``README.md`` in that directory.
  18. """
  19. import __future__ # noqa: F404
  20. import collections
  21. import contextlib
  22. import functools
  23. import sys
  24. import types
  25. import warnings
  26. from collections.abc import Callable, Iterable
  27. from functools import wraps
  28. from typing import Any, TypeVar
  29. from typing_extensions import ParamSpec
  30. import torch
  31. from torch._C import (
  32. _add_docstr,
  33. _get_function_stack_at,
  34. _has_torch_function,
  35. _has_torch_function_unary,
  36. _has_torch_function_variadic,
  37. _is_torch_function_mode_enabled,
  38. _len_torch_function_stack,
  39. _pop_torch_function_stack,
  40. _push_on_torch_function_stack,
  41. )
  42. __all__ = [
  43. "get_ignored_functions",
  44. "get_overridable_functions",
  45. "get_testing_overrides",
  46. "handle_torch_function",
  47. "has_torch_function",
  48. "resolve_name",
  49. "is_tensor_like",
  50. "is_tensor_method_or_property",
  51. "wrap_torch_function",
  52. "enable_reentrant_dispatch",
  53. ]
  54. _P = ParamSpec("_P")
  55. _R = TypeVar("_R")
  56. def _disable_user_warnings(
  57. func: Callable[_P, _R],
  58. regex: str = ".*is deprecated, please use.*",
  59. module: str = "torch",
  60. ) -> Callable[_P, _R]:
  61. """
  62. Decorator that temporarily disables ``UserWarning``s for the given ``module`` if the warning message matches the
  63. given ``regex`` pattern.
  64. Arguments
  65. ---------
  66. func : function
  67. Function to disable the warnings for.
  68. regex : str
  69. A regex pattern compilable by ``re.compile``. This is used to match the ``UserWarning`` message.
  70. module : str
  71. The python module to which the filtering should be restricted.
  72. Returns
  73. -------
  74. function
  75. The wrapped function.
  76. """
  77. @wraps(func)
  78. def wrapper(*args: _P.args, **kwargs: _P.kwargs) -> _R:
  79. with warnings.catch_warnings():
  80. warnings.filterwarnings(
  81. "ignore", category=UserWarning, message=regex, module=module
  82. )
  83. return func(*args, **kwargs)
  84. return wrapper
  85. @functools.cache
  86. @_disable_user_warnings
  87. def get_ignored_functions() -> set[Callable]:
  88. """
  89. Return public functions that cannot be overridden by ``__torch_function__``.
  90. Returns
  91. -------
  92. set[Callable]
  93. A tuple of functions that are publicly available in the torch API but cannot
  94. be overridden with ``__torch_function__``. Mostly this is because none of the
  95. arguments of these functions are tensors or tensor-likes.
  96. Examples
  97. --------
  98. >>> torch.Tensor.as_subclass in torch.overrides.get_ignored_functions()
  99. True
  100. >>> torch.add in torch.overrides.get_ignored_functions()
  101. False
  102. """
  103. Tensor = torch.Tensor
  104. functions = {
  105. torch.typename,
  106. torch.is_tensor,
  107. torch.is_storage,
  108. torch.set_default_tensor_type,
  109. torch.set_default_device,
  110. torch.get_default_device,
  111. torch.set_rng_state,
  112. torch.get_rng_state,
  113. torch.manual_seed,
  114. torch.initial_seed,
  115. torch.seed,
  116. torch.save,
  117. torch.load,
  118. torch.set_printoptions,
  119. torch.fork,
  120. torch.get_default_dtype,
  121. torch.get_num_interop_threads,
  122. torch.get_num_threads,
  123. torch.init_num_threads,
  124. torch.import_ir_module,
  125. torch.import_ir_module_from_buffer,
  126. torch.is_anomaly_enabled,
  127. torch.is_anomaly_check_nan_enabled,
  128. torch.is_grad_enabled,
  129. torch.merge_type_from_type_comment,
  130. torch.parse_ir,
  131. torch.parse_schema,
  132. torch.parse_type_comment,
  133. torch.set_anomaly_enabled,
  134. torch.set_flush_denormal,
  135. torch.set_num_interop_threads,
  136. torch.set_num_threads,
  137. torch.wait,
  138. torch.as_tensor,
  139. torch.from_numpy,
  140. torch.tensor,
  141. torch.default_generator,
  142. torch.has_cuda,
  143. torch.has_cudnn,
  144. torch.has_lapack,
  145. torch.device,
  146. torch.dtype,
  147. torch.finfo,
  148. torch.has_mkl,
  149. torch.has_mps,
  150. torch.has_mkldnn,
  151. torch.has_openmp,
  152. torch.iinfo,
  153. torch.memory_format,
  154. torch.qscheme,
  155. torch.set_grad_enabled,
  156. torch.no_grad,
  157. torch.enable_grad,
  158. torch.inference_mode,
  159. torch.is_inference_mode_enabled,
  160. torch.layout,
  161. torch.align_tensors,
  162. torch.arange,
  163. torch.as_strided,
  164. torch.bartlett_window,
  165. torch.blackman_window,
  166. torch.broadcast_shapes,
  167. torch.can_cast,
  168. torch.compile,
  169. torch.cudnn_affine_grid_generator,
  170. torch.cudnn_batch_norm,
  171. torch.cudnn_convolution,
  172. torch.cudnn_convolution_transpose,
  173. torch.cudnn_convolution_relu,
  174. torch.cudnn_convolution_add_relu,
  175. torch.cudnn_grid_sampler,
  176. torch.cudnn_is_acceptable,
  177. torch.empty,
  178. torch.empty_permuted,
  179. torch.empty_strided,
  180. torch.empty_quantized,
  181. torch.export.export,
  182. torch.export.load,
  183. torch.export.register_dataclass,
  184. torch.export.save,
  185. torch.eye,
  186. torch.fft.fftfreq,
  187. torch.fft.rfftfreq,
  188. torch.from_file,
  189. torch.full,
  190. torch.fill,
  191. torch.hamming_window,
  192. torch.hann_window,
  193. torch.kaiser_window,
  194. torch.linspace,
  195. torch.logspace,
  196. torch.mkldnn_adaptive_avg_pool2d,
  197. torch.mkldnn_convolution,
  198. torch.mkldnn_max_pool2d,
  199. torch.mkldnn_max_pool3d,
  200. torch.mkldnn_linear_backward_weights,
  201. torch.mkldnn_rnn_layer,
  202. torch.normal,
  203. torch.ones,
  204. torch.promote_types,
  205. torch.rand,
  206. torch.rand_like,
  207. torch.randn,
  208. torch.randn_like,
  209. torch.randint,
  210. torch.randint_like,
  211. torch.randperm,
  212. torch.range,
  213. torch.result_type,
  214. torch.scalar_tensor,
  215. torch.sparse_coo_tensor,
  216. torch.sparse_compressed_tensor,
  217. torch.sparse_csr_tensor,
  218. torch.sparse_csc_tensor,
  219. torch.sparse_bsr_tensor,
  220. torch.sparse_bsc_tensor,
  221. torch.sym_constrain_range,
  222. torch.sym_constrain_range_for_size,
  223. torch.sym_fresh_size,
  224. torch.tril_indices,
  225. torch.triu_indices,
  226. torch.vander,
  227. torch.zeros,
  228. torch._jit_internal.boolean_dispatch,
  229. torch.nn.functional.assert_int_or_pair,
  230. torch.nn.functional.upsample,
  231. torch.nn.functional.upsample_bilinear,
  232. torch.nn.functional.upsample_nearest,
  233. torch.nn.functional.has_torch_function,
  234. torch.nn.functional.has_torch_function_unary,
  235. torch.nn.functional.has_torch_function_variadic,
  236. torch.nn.functional.handle_torch_function,
  237. torch.nn.functional.grouped_mm,
  238. torch.nn.functional.scaled_grouped_mm,
  239. torch.nn.functional.scaled_mm,
  240. torch.nn.functional.sigmoid,
  241. torch.nn.functional.hardsigmoid,
  242. torch.nn.functional.tanh,
  243. torch.nn.functional._canonical_mask,
  244. torch.nn.functional._none_or_dtype,
  245. # Doesn't actually take or return tensor arguments
  246. torch.nn.init.calculate_gain,
  247. # These are deprecated; don't test them
  248. torch.nn.init.uniform,
  249. torch.nn.init.normal,
  250. torch.nn.init.constant,
  251. torch.nn.init.eye,
  252. torch.nn.init.dirac,
  253. torch.nn.init.xavier_uniform,
  254. torch.nn.init.xavier_normal,
  255. torch.nn.init.kaiming_uniform,
  256. torch.nn.init.kaiming_normal,
  257. torch.nn.init.orthogonal,
  258. torch.nn.init.sparse,
  259. torch.nested.to_padded_tensor,
  260. has_torch_function,
  261. handle_torch_function,
  262. torch.set_autocast_enabled,
  263. torch.is_autocast_enabled,
  264. torch.set_autocast_dtype,
  265. torch.get_autocast_dtype,
  266. torch.clear_autocast_cache,
  267. torch.set_autocast_cpu_enabled,
  268. torch.is_autocast_cpu_enabled,
  269. torch.set_autocast_xla_enabled,
  270. torch.is_autocast_xla_enabled,
  271. torch.set_autocast_ipu_enabled,
  272. torch.is_autocast_ipu_enabled,
  273. torch.set_autocast_cpu_dtype,
  274. torch.get_autocast_cpu_dtype,
  275. torch.set_autocast_ipu_dtype,
  276. torch.get_autocast_ipu_dtype,
  277. torch.get_autocast_gpu_dtype,
  278. torch.set_autocast_gpu_dtype,
  279. torch.get_autocast_xla_dtype,
  280. torch.set_autocast_xla_dtype,
  281. torch.autocast_increment_nesting,
  282. torch.autocast_decrement_nesting,
  283. torch.is_autocast_cache_enabled,
  284. torch.set_autocast_cache_enabled,
  285. torch.nn.functional.hardswish,
  286. torch.is_vulkan_available,
  287. torch.are_deterministic_algorithms_enabled,
  288. torch.use_deterministic_algorithms,
  289. torch.is_deterministic_algorithms_warn_only_enabled,
  290. torch.set_deterministic_debug_mode,
  291. torch.get_device_module,
  292. torch.get_deterministic_debug_mode,
  293. torch.set_float32_matmul_precision,
  294. torch.get_float32_matmul_precision,
  295. torch.unify_type_list,
  296. torch.is_warn_always_enabled,
  297. torch.set_warn_always,
  298. torch.vitals_enabled,
  299. torch.set_vital,
  300. torch.read_vitals,
  301. torch.vmap,
  302. torch.cond,
  303. torch.frombuffer,
  304. torch.asarray,
  305. torch._functional_sym_constrain_range,
  306. torch._make_dep_token,
  307. Tensor.__delitem__,
  308. Tensor.__dir__,
  309. Tensor.__getattribute__,
  310. Tensor.__init__,
  311. Tensor.__iter__,
  312. Tensor.__init_subclass__,
  313. Tensor.__delattr__,
  314. Tensor.__setattr__,
  315. Tensor.__torch_function__,
  316. Tensor.__torch_dispatch__,
  317. Tensor.__new__,
  318. Tensor.__class__,
  319. Tensor.__subclasshook__,
  320. Tensor.__hash__,
  321. Tensor.as_subclass,
  322. Tensor.eig,
  323. Tensor.lstsq,
  324. Tensor.reinforce,
  325. Tensor.new,
  326. Tensor.new_tensor,
  327. Tensor.new_empty,
  328. Tensor.new_empty_strided,
  329. Tensor.new_zeros,
  330. Tensor.new_ones,
  331. Tensor.new_full,
  332. Tensor._make_subclass,
  333. Tensor.solve,
  334. Tensor.symeig,
  335. Tensor.stride,
  336. Tensor.unflatten,
  337. Tensor.to_sparse_coo,
  338. Tensor.to_sparse_csr,
  339. Tensor.to_sparse_csc,
  340. Tensor.to_sparse_bsr,
  341. Tensor.to_sparse_bsc,
  342. Tensor._to_sparse,
  343. Tensor._to_sparse_csr,
  344. Tensor._to_sparse_csc,
  345. Tensor._to_sparse_bsr,
  346. Tensor._to_sparse_bsc,
  347. Tensor._typed_storage,
  348. Tensor._reduce_ex_internal,
  349. Tensor._fix_weakref,
  350. Tensor._view_func,
  351. Tensor._view_func_unsafe,
  352. Tensor._rev_view_func_unsafe,
  353. Tensor._dtensor__new__,
  354. Tensor._make_wrapper_subclass,
  355. Tensor._python_dispatch.__get__,
  356. Tensor._has_symbolic_sizes_strides.__get__,
  357. Tensor._conj,
  358. Tensor._conj_physical,
  359. Tensor._lazy_clone,
  360. Tensor._neg_view,
  361. Tensor._is_zerotensor,
  362. Tensor._is_all_true,
  363. Tensor._is_any_true,
  364. Tensor._addmm_activation,
  365. Tensor.to_padded_tensor,
  366. Tensor._use_count,
  367. }
  368. if sys.version_info >= (3, 14):
  369. functions.add(Tensor.__annotate__)
  370. return functions
  371. @functools.cache
  372. def get_default_nowrap_functions() -> set[Callable]:
  373. """
  374. Return public functions that do not wrap in a subclass when invoked by
  375. the default ``Tensor.__torch_function__`` that preserves subclasses. Typically,
  376. these functions represent field accesses (i.e., retrieving a Tensor that
  377. is stored somewhere on the Tensor) as opposed to computation. Users of
  378. these functions expect object identity to be preserved over multiple accesses
  379. (e.g., ``a.grad is a.grad``) which cannot be upheld if we're wrapping on
  380. the fly every time (furthermore, the tensor stored here might already be
  381. the subclass, in which case wrapping really ought not to happen).
  382. Not ALL property accessors have this property; for example ``Tensor.T`` actually
  383. just creates a new transposed tensor on the fly, and so we SHOULD interpose on
  384. these calls (you need to check the implementation of the function to see if
  385. this is the case or not). Additionally, if a property accessor doesn't return a Tensor,
  386. it doesn't have to be on this list (though it is harmless if it is).
  387. """
  388. Tensor = torch.Tensor
  389. return {
  390. Tensor._base.__get__,
  391. Tensor.grad.__get__,
  392. Tensor._grad.__get__,
  393. }
  394. @functools.cache
  395. @_disable_user_warnings
  396. def get_testing_overrides() -> dict[Callable, Callable]:
  397. """Return a dict containing dummy overrides for all overridable functions
  398. Returns
  399. -------
  400. Dict[Callable, Callable]
  401. A dictionary that maps overridable functions in the PyTorch API to
  402. lambda functions that have the same signature as the real function
  403. and unconditionally return -1. These lambda functions are useful
  404. for testing API coverage for a type that defines ``__torch_function__``.
  405. Examples
  406. --------
  407. >>> import inspect
  408. >>> my_add = torch.overrides.get_testing_overrides()[torch.add]
  409. >>> inspect.signature(my_add)
  410. <Signature (input, other, out=None)>
  411. """
  412. # Every function in the PyTorchAPI that can be overridden needs an entry
  413. # in this dict.
  414. #
  415. # Optimally we would use inspect to get the function signature and define
  416. # the lambda function procedurally but that is blocked by generating
  417. # function signatures for native kernels that can be consumed by inspect.
  418. # See Issue #28233.
  419. Tensor = torch.Tensor
  420. ret: dict[Callable, Callable] = {
  421. torch.abs: lambda input, out=None: -1,
  422. torch.absolute: lambda input, out=None: -1,
  423. torch.adaptive_avg_pool1d: lambda input, output_size: -1,
  424. torch.adaptive_max_pool1d: lambda inputs, output_size: -1,
  425. torch.acos: lambda input, out=None: -1,
  426. torch.adjoint: lambda input: -1,
  427. torch.arccos: lambda input, out=None: -1,
  428. torch.acosh: lambda input, out=None: -1,
  429. torch.arccosh: lambda input, out=None: -1,
  430. torch.add: lambda input, other, out=None: -1,
  431. torch.addbmm: lambda input, batch1, batch2, alpha=1, beta=1, out=None: -1,
  432. torch.addcdiv: lambda input, tensor1, tensor2, value=1, out=None: -1,
  433. torch.addcmul: lambda input, tensor1, tensor2, value=1, out=None: -1,
  434. torch.addmm: lambda input, mat1, mat2, beta=1, alpha=1, out=None: -1,
  435. torch.addmv: lambda input, mat, vec, beta=1, alpha=1, out=None: -1,
  436. torch.addr: lambda input, vec1, vec2, beta=1, alpha=1, out=None: -1,
  437. torch.affine_grid_generator: lambda theta, size, align_corners: -1,
  438. torch.all: lambda input, dim=None: -1,
  439. torch.allclose: lambda input, other, trol=1e-05, atol=1e-08, equal_nan=False: -1,
  440. torch.alpha_dropout: lambda input, p, train, inplace=False: -1,
  441. torch.amax: lambda input, dim=None: -1,
  442. torch.amin: lambda input, dim=None: -1,
  443. torch.aminmax: lambda input, dim=None, keepdim=False, out=None: -1,
  444. torch.angle: lambda input, out=None: -1,
  445. torch.any: lambda input, dim=None, keepdim=False, out=None: -1,
  446. torch.argmax: lambda input: -1,
  447. torch.argmin: lambda input: -1,
  448. torch.argsort: lambda input, dim=None: -1,
  449. torch.asin: lambda input, out=None: -1,
  450. torch._assert_async: lambda input, msg: -1,
  451. torch.arcsin: lambda input, out=None: -1,
  452. torch.asinh: lambda input, out=None: -1,
  453. torch.arcsinh: lambda input, out=None: -1,
  454. torch.atan: lambda input, out=None: -1,
  455. torch.arctan: lambda input, out=None: -1,
  456. torch.atan2: lambda input, other, out=None: -1,
  457. torch.arctan2: lambda input, other, out=None: -1,
  458. torch.atanh: lambda input, out=None: -1,
  459. torch.arctanh: lambda input, out=None: -1,
  460. torch.atleast_1d: lambda *tensors: -1,
  461. torch.atleast_2d: lambda *tensors: -1,
  462. torch.atleast_3d: lambda *tensors: -1,
  463. torch.avg_pool1d: lambda input, kernel_size, stride=None, padding=0, ceil_mode=False, count_include_pad=True: -1,
  464. torch.baddbmm: lambda input, batch1, batch2, alpha=1, beta=1, out=None: -1,
  465. torch.batch_norm: lambda input, weight, bias, running_mean, running_var, training, momentum, eps, cudnn_enabled: -1,
  466. torch.batch_norm_backward_elemt: lambda grad_out, input, mean, invstd, weight, sum_dy, sum_dy_xmu, count_tensor: -1,
  467. torch.batch_norm_backward_reduce: lambda grad_out, input, mean, invstd, weight, input_g, weight_g, bias_g: -1,
  468. torch.batch_norm_elemt: lambda input, weight, bias, mean, invstd, eps: -1,
  469. torch.batch_norm_gather_stats: lambda input, mean, invstd, running_mean, running_var, momentum, eps, count: -1,
  470. torch.batch_norm_gather_stats_with_counts: lambda input, mean, invstd, running_mean, running_var, momentum, eps, count: -1,
  471. torch.batch_norm_stats: lambda input, eps: -1,
  472. torch.batch_norm_update_stats: lambda input, running_mean, running_var, momentum: -1,
  473. torch.bernoulli: lambda input, generator=None, out=None: -1,
  474. torch.bilinear: lambda input1, input2, weight, bias: -1,
  475. torch.binary_cross_entropy_with_logits: (
  476. lambda input, target, weight=None, size_average=None, reduce=None, reduction="mean", pos_weight=None: -1
  477. ),
  478. torch.bincount: lambda input, weights=None, minlength=0: -1,
  479. torch.binomial: lambda count, prob, generator=None: -1,
  480. torch.bitwise_and: lambda input, other, out=None: -1,
  481. torch.bitwise_not: lambda input, out=None: -1,
  482. torch.bitwise_or: lambda input, other, out=None: -1,
  483. torch.bitwise_xor: lambda input, other, out=None: -1,
  484. torch.bitwise_left_shift: lambda input, other, out=None: -1,
  485. torch.bitwise_right_shift: lambda input, other, out=None: -1,
  486. torch.block_diag: lambda *tensors: -1,
  487. torch.bmm: lambda input, mat2, out_dtype=None, out=None: -1,
  488. torch.broadcast_tensors: lambda *tensors: -1,
  489. torch.broadcast_to: lambda self, size: -1,
  490. torch.bucketize: lambda input, boundaries, out_int32=False, right=False, out=None: -1,
  491. torch.cartesian_prod: lambda *tensors: -1,
  492. torch.cat: lambda tensors, dim=0, out=None: -1,
  493. torch.concat: lambda tensors, dim=0, out=None: -1, # alias for torch.cat
  494. torch.concatenate: lambda tensors, dim=0, out=None: -1, # alias for torch.concatenate
  495. torch.cdist: lambda x1, x2, p=2.0, compute_mode="use_mm_for_euclid_dist_if_necessary": -1,
  496. torch.ceil: lambda input, out=None: -1,
  497. torch.celu: lambda input, alpha=1.0, inplace=False: -1,
  498. torch.chain_matmul: lambda *matrices, out=None: -1,
  499. torch.channel_shuffle: lambda input, groups: -1,
  500. torch.cholesky: lambda input, upper=False, out=None: -1,
  501. torch.linalg.cholesky: lambda input, out=None: -1,
  502. torch.linalg.cholesky_ex: lambda input, check_errors=False, out=None: -1,
  503. torch.cholesky_inverse: lambda input, upper=False, out=None: -1,
  504. torch.cholesky_solve: lambda input1, input2, upper=False, out=None: -1,
  505. torch.choose_qparams_optimized: lambda input, numel, n_bins, ratio, bit_width: -1,
  506. torch.chunk: lambda input, chunks, dim=0: -1,
  507. torch.clamp: lambda input, min=None, max=None, out=None: -1,
  508. torch.clip: lambda input, min=None, max=None, out=None: -1,
  509. torch.clamp_min: lambda input, min, out=None: -1,
  510. torch.clamp_max: lambda input, max, out=None: -1,
  511. torch.column_stack: lambda tensors, out=None: -1,
  512. torch.cov: lambda input, correction=1, fweights=None, aweights=None: -1,
  513. torch.clone: lambda input: -1,
  514. torch.combinations: lambda input, r=2, with_replacement=False: -1,
  515. torch.complex: lambda real, imag: -1,
  516. torch.copysign: lambda input, other, out=None: -1,
  517. torch.polar: lambda abs, ang: -1,
  518. torch.linalg.cond: lambda input, ord=None: -1,
  519. torch.conj: lambda input, out=None: -1,
  520. torch.conj_physical: lambda input, out=None: -1,
  521. torch.resolve_conj: lambda input, out=None: -1,
  522. torch.resolve_neg: lambda input, out=None: -1,
  523. torch.constant_pad_nd: lambda input, pad, value=0: -1,
  524. torch.conv1d: lambda input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1: -1,
  525. torch.conv2d: lambda input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1: -1,
  526. torch.conv3d: lambda input, weight, bias=None, stride=1, padding=0, dilation=1, groups=1: -1,
  527. torch.convolution: lambda input, weight, bias, stride, padding, dilation, transposed, output_adding, groups: -1,
  528. torch.conv_tbc: lambda input, weight, bias, pad=0: -1,
  529. torch.conv_transpose1d: lambda input, weight, bias=None, stride=1, padding=0, output_padding=0, groups=1, dilation=1: -1,
  530. torch.conv_transpose2d: lambda input, weight, bias=None, stride=1, padding=0, output_padding=0, groups=1, dilation=1: -1,
  531. torch.conv_transpose3d: lambda input, weight, bias=None, stride=1, padding=0, output_padding=0, groups=1, dilation=1: -1,
  532. torch.corrcoef: lambda input: -1,
  533. torch.cos: lambda input, out=None: -1,
  534. torch.cosine_embedding_loss: lambda input1, input2, target, margin=0, size_average=None, reduce=None, reduction="mean": -1,
  535. torch.cosh: lambda input, out=None: -1,
  536. torch.cosine_similarity: lambda x1, x2, dim=1, eps=1e-8: -1,
  537. torch.count_nonzero: lambda input: -1,
  538. torch.cross: lambda input, other, dim=None, out=None: -1,
  539. torch.linalg.cross: lambda input, other, dim=-1, out=None: -1,
  540. torch.ctc_loss: (
  541. lambda log_probs, targets, input_lengths, target_lengths, blank=0, reduction="mean", zero_infinity=False: -1
  542. ),
  543. torch.cummax: lambda input, dim, out=None: -1,
  544. torch.cummin: lambda input, dim, out=None: -1,
  545. torch.cumprod: lambda input, dim, out=None, dtype=None: -1,
  546. torch.cumsum: lambda input, dim, out=None, dtype=None: -1,
  547. torch.cumulative_trapezoid: lambda y, x=None, dim=-1: -1,
  548. torch.logcumsumexp: lambda input, dim, out=None: -1,
  549. torch.deg2rad: lambda input, out=None: -1,
  550. torch.dequantize: lambda input: -1,
  551. torch.det: lambda input: -1,
  552. torch.linalg.det: lambda input: -1, # alias for torch.det # type: ignore[attr-defined]
  553. torch.detach: lambda input: -1,
  554. torch.diag: lambda input, diagonal=0, out=None: -1,
  555. torch.diag_embed: lambda input, diagonal=0, out=None: -1,
  556. torch.diagflat: lambda input, offset=0: -1,
  557. torch.diff: lambda input, n=1, dim=-1, prepend=None, append=None, out=None: -1,
  558. torch.diagonal: lambda input, offset=0, dim1=0, dim2=1: -1,
  559. torch.linalg.diagonal: lambda input, offset=0, dim1=-2, dim2=-1: -1,
  560. torch.diagonal_scatter: lambda input, src, offset=0, dim1=0, dim2=1: -1,
  561. torch.as_strided_scatter: lambda self, src, size, stride, storage_offset=None: -1,
  562. torch.digamma: lambda input, out=None: -1,
  563. torch.dist: lambda input, other, p=2: -1,
  564. torch.div: lambda input, other, rounding_mode=None, out=None: -1,
  565. torch.divide: lambda input, other, rounding_mode=None, out=None: -1,
  566. torch.dot: lambda input, other, out=None: -1,
  567. torch.dropout: lambda input, p, train, inplace=False: -1,
  568. torch.dsmm: lambda input, mat2, out_dtype=None: -1,
  569. torch.hsmm: lambda mat1, mat2: -1,
  570. torch.dsplit: lambda input, indices_or_sections: -1,
  571. torch.dstack: lambda tensors, out=None: -1,
  572. torch.linalg.eig: lambda input, out=None: -1,
  573. torch.linalg.eigvals: lambda input, out=None: -1,
  574. torch.linalg.eigh: lambda input, UPLO="L", out=None: -1,
  575. torch.linalg.eigvalsh: lambda input, UPLO="L", out=None: -1,
  576. torch.einsum: lambda equation, *operands: -1,
  577. torch.embedding: (
  578. lambda input, weight, padding_idx=None, max_norm=None, norm_type=2.0, scale_grad_by_freq=False, sparse=False: -1 # noqa: B950
  579. ),
  580. torch.embedding_bag: (
  581. lambda input, weight, offsets, max_norm=None, norm_type=2, scale_grad_by_freq=False, mode="mean", sparse=False, per_sample_weights=None, padding_idx=None: -1 # noqa: B950
  582. ),
  583. torch.empty_like: lambda input, dtype=None, layout=None, device=None, requires_grad=False: -1,
  584. torch.eq: lambda input, other, out=None: -1,
  585. torch.equal: lambda input, other: -1,
  586. torch.erf: lambda input, out=None: -1,
  587. torch.erfc: lambda input, out=None: -1,
  588. torch.erfinv: lambda input, out=None: -1,
  589. torch.exp: lambda input, out=None: -1,
  590. torch.exp2: lambda input, out=None: -1,
  591. torch.expm1: lambda input, out=None: -1,
  592. torch.fake_quantize_per_channel_affine: lambda input, scale, zero_point, axis, quant_min, quant_max: -1,
  593. torch.fake_quantize_per_tensor_affine: lambda input, scale, zero_point, quant_min, quant_max: -1,
  594. torch.fused_moving_avg_obs_fake_quant: (
  595. lambda x, observer_on, fake_quant_on, averaging_const, running_min, running_max, scale, zero_point, quant_min, quant_max, ch_axis, per_row_fake_quant=False, symmetric_quant=False: -1 # noqa: B950
  596. ),
  597. torch.fbgemm_linear_fp16_weight: lambda input, packed_weight, bias, output: -1,
  598. torch.fbgemm_linear_fp16_weight_fp32_activation: lambda input, packed_weight, bias, output: -1,
  599. torch.fbgemm_linear_int8_weight: lambda input, weight, packed, col_offsets, weight_scale, weight_zero_point, bias: -1, # noqa: B950
  600. torch.fbgemm_linear_int8_weight_fp32_activation: (
  601. lambda input, weight, packed, col_offsets, weight_scale, weight_zero_point, bias: -1
  602. ),
  603. torch.fbgemm_linear_quantize_weight: lambda input: -1,
  604. torch.fbgemm_pack_gemm_matrix_fp16: lambda input: -1,
  605. torch.fbgemm_pack_quantized_matrix: lambda input, a, b: -1,
  606. torch.feature_alpha_dropout: lambda input, p, train: -1,
  607. torch.feature_dropout: lambda input, p, train: -1,
  608. torch.fft.ifft: lambda input, n=None, dim=-1, norm=None: -1,
  609. torch.fft.rfft: lambda input, n=None, dim=-1, norm=None: -1,
  610. torch.fft.irfft: lambda input, n=None, dim=-1, norm=None: -1,
  611. torch.fft.hfft: lambda input, n=None, dim=-1, norm=None: -1,
  612. torch.fft.ihfft: lambda input, n=None, dim=-1, norm=None: -1,
  613. torch.fft.hfft2: lambda input, s=None, dim=(-2, -1), norm=None: -1,
  614. torch.fft.ihfft2: lambda input, s=None, dim=(-2, -1), norm=None: -1,
  615. torch.fft.hfftn: lambda input, s=None, dim=-1, norm=None: -1,
  616. torch.fft.ihfftn: lambda input, s=None, dim=-1, norm=None: -1,
  617. torch.fft.fftn: lambda input, s=None, dim=None, norm=None: -1,
  618. torch.fft.ifftn: lambda input, s=None, dim=None, norm=None: -1,
  619. torch.fft.rfftn: lambda input, s=None, dim=None, norm=None: -1,
  620. torch.fft.irfftn: lambda input, s=None, dim=None, norm=None: -1,
  621. torch.fft.fft2: lambda input, s=None, dim=(-2, -1), norm=None: -1,
  622. torch.fft.ifft2: lambda input, s=None, dim=(-2, -1), norm=None: -1,
  623. torch.fft.rfft2: lambda input, s=None, dim=(-2, -1), norm=None: -1,
  624. torch.fft.irfft2: lambda input, s=None, dim=(-2, -1), norm=None: -1,
  625. torch.fft.fftshift: lambda input, dim=None: -1,
  626. torch.fft.ifftshift: lambda input, dim=None: -1,
  627. torch.fft.fft: lambda input, n=None, dim=-1, norm=None: -1,
  628. torch.fix: lambda input, out=None: -1,
  629. torch.flatten: lambda input, start_dim=0, end_dim=-1: -1,
  630. torch.flip: lambda input, dims: -1,
  631. torch.fliplr: lambda input: -1,
  632. torch.flipud: lambda input: -1,
  633. torch.frobenius_norm: lambda input, dim=None, keepdim=False, out=None: -1,
  634. torch.floor: lambda input, out=None: -1,
  635. torch.floor_divide: lambda input, other: -1,
  636. torch.float_power: lambda input, exponent, out=None: -1,
  637. torch.fmod: lambda input, other, out=None: -1,
  638. torch.frac: lambda input, out=None: -1,
  639. torch.frexp: lambda input, out=None: -1,
  640. torch.full_like: lambda input, fill_value, out=None, dtype=None, layout=torch.strided, device=None, requires_grad=False: -1, # noqa: B950
  641. torch._functional_assert_async: lambda input, msg, dep_token: -1,
  642. torch.lu_unpack: lambda LU_data, LU_pivots, unpack_data=True, unpack_pivots=True: -1,
  643. torch.gather: lambda input, dim, index, out=None, sparse_grad=False: -1,
  644. torch.gcd: lambda input, other, out=None: -1,
  645. torch.ge: lambda input, other, out=None: -1,
  646. torch.get_device: lambda input: -1,
  647. torch.greater_equal: lambda input, other, out=None: -1,
  648. torch.geqrf: lambda input, out=None: -1,
  649. torch.i0: lambda input, out=None: -1,
  650. torch.inner: lambda input, other, out=None: -1,
  651. torch.outer: lambda input, vec2, out=None: -1,
  652. torch.ger: lambda input, vec2, out=None: -1, # alias for torch.outer
  653. torch.gradient: lambda input, spacing=None, dim=None, edge_order=1: -1,
  654. torch.grid_sampler: lambda input, grid, interpolation_mode, padding_mode, align_corners: -1,
  655. torch.grid_sampler_2d: lambda input, grid, interpolation_mode, padding_mode, align_corners: -1,
  656. torch.grid_sampler_3d: lambda input, grid, interpolation_mode, padding_mode, align_corners: -1,
  657. torch.group_norm: lambda input, num_groups, weight=None, bias=None, eps=1e-05, cudnn_enabled=True: -1,
  658. torch.gru: lambda input, hx, params, has_biases, num_layers, dropout, train, bidirectional, batch_first: -1,
  659. torch.gru_cell: lambda input, hx, w_ih, w_hh, b_ih=None, b_hh=None: -1,
  660. torch.gt: lambda input, other, out=None: -1,
  661. torch.greater: lambda input, other, out=None: -1,
  662. torch.hardshrink: lambda input, lambd=0.5: -1,
  663. torch.hash_tensor: lambda input, dim=None, keepdim=False, mode=0, out=None: -1,
  664. torch.heaviside: lambda input, values, out=None: -1,
  665. torch.hinge_embedding_loss: lambda input, target, margin=1.0, size_average=None, reduce=None, reduction="mean": -1, # noqa: B950
  666. torch.histc: lambda input, bins=100, min=0, max=0, out=None: -1,
  667. torch.histogram: lambda input, bins=100, min=None, max=None, weight=None, density=False, out=None: -1,
  668. torch.histogramdd: lambda input, bins, range=None, weight=None, density=False: -1,
  669. torch.linalg.householder_product: lambda input, tau: -1,
  670. torch.hspmm: lambda mat1, mat2, out=None: -1,
  671. torch.hsplit: lambda input, indices_or_sections: -1,
  672. torch.hstack: lambda tensors, out=None: -1,
  673. torch.hypot: lambda input, other, out=None: -1,
  674. torch.igamma: lambda input, other, out=None: -1,
  675. torch.igammac: lambda input, other, out=None: -1,
  676. torch.imag: lambda input, out=None: -1,
  677. torch.index_add: lambda input, dim, index, source: -1,
  678. torch.index_copy: lambda input, dim, index, source: -1,
  679. torch.index_put: lambda input, indices, values, accumulate=False: -1,
  680. torch.index_select: lambda input, dim, index, out=None: -1,
  681. torch.index_fill: lambda input, dim, index, value: -1,
  682. torch.index_reduce: lambda input, dim, index, source, reduce, include_input=True: -1,
  683. torch.isfinite: lambda tensor: -1,
  684. torch.isin: lambda e, te, assume_unique=False, invert=False: -1,
  685. torch.isinf: lambda tensor: -1,
  686. torch.isreal: lambda tensor: -1,
  687. torch.isposinf: lambda input, out=None: -1,
  688. torch.isneginf: lambda input, out=None: -1,
  689. torch.instance_norm: (
  690. lambda input, running_mean, running_var, weight, bias, use_input_stats, momentum, eps, cudnn_enabled: -1
  691. ),
  692. torch.int_repr: lambda input: -1,
  693. torch.inverse: lambda input, out=None: -1,
  694. torch.linalg.inv: lambda input, out=None: -1,
  695. torch.linalg.inv_ex: lambda input, check_errors=False, out=None: -1,
  696. torch.is_complex: lambda input: -1,
  697. torch.is_conj: lambda input: -1,
  698. torch.is_neg: lambda input: -1,
  699. torch.is_distributed: lambda input: -1,
  700. torch.is_inference: lambda input: -1,
  701. torch.is_floating_point: lambda input: -1,
  702. torch.is_nonzero: lambda input: -1,
  703. torch.is_same_size: lambda input, other: -1,
  704. torch.is_signed: lambda input: -1,
  705. torch.isclose: lambda input, other, rtol=1e-05, atol=1e-08, equal_nan=False: -1,
  706. torch.isnan: lambda input: -1,
  707. torch.istft: (
  708. lambda input, n_fft, hop_length=None, win_length=None, window=None, center=True, normalized=False, onesided=None, length=None, return_complex=False: -1 # noqa: B950
  709. ),
  710. torch.kl_div: lambda input, target, size_average=None, reduce=None, reduction="mean", log_target=False: -1,
  711. torch.kron: lambda input, other: -1,
  712. torch.kthvalue: lambda input, k, dim=None, keepdim=False, out=None: -1,
  713. torch.linalg.ldl_factor_ex: lambda input, hermitian=False, check_errors=False, out=None: -1,
  714. torch.linalg.ldl_factor: lambda input, hermitian=False, out=None: -1,
  715. torch.linalg.ldl_solve: lambda LD, pivots, B, hermitian=False, out=None: -1,
  716. torch.layer_norm: lambda input, normalized_shape, weight=None, bias=None, esp=1e-05, cudnn_enabled=True: -1,
  717. torch.lcm: lambda input, other, out=None: -1,
  718. torch.ldexp: lambda input, other, out=None: -1,
  719. torch.le: lambda input, other, out=None: -1,
  720. torch.less_equal: lambda input, other, out=None: -1,
  721. torch.lerp: lambda input, end, weight, out=None: -1,
  722. torch.lgamma: lambda input, out=None: -1,
  723. torch.lobpcg: lambda input, k=None, B=None, X=None, n=None, iK=None, niter=None, tol=None, largest=None, method=None, tracker=None, ortho_iparams=None, ortho_fparams=None, ortho_bparams=None: -1, # noqa: B950
  724. torch.log: lambda input, out=None: -1,
  725. torch.log_softmax: lambda input, dim, dtype=None: -1,
  726. torch.log10: lambda input, out=None: -1,
  727. torch.log1p: lambda input, out=None: -1,
  728. torch.log2: lambda input, out=None: -1,
  729. torch.logaddexp: lambda input, other, out=None: -1,
  730. torch.logaddexp2: lambda input, other, out=None: -1,
  731. torch.logdet: lambda input: -1,
  732. torch.xlogy: lambda x, y, out=None: -1,
  733. torch.logical_and: lambda input, other, out=None: -1,
  734. torch.logical_not: lambda input, out=None: -1,
  735. torch.logical_or: lambda input, other, out=None: -1,
  736. torch.logical_xor: lambda input, other, out=None: -1,
  737. torch.logit: lambda input, eps=None: -1,
  738. torch.logsumexp: lambda input, names, keepdim=False, out=None: -1,
  739. torch.lstm: lambda data, batch_sizes, hx, params, has_biases, num_layers, dropout, train, bidirectional: -1,
  740. torch.lstm_cell: lambda input, hx, w_ih, w_hh, b_ih=None, b_hh=None: -1,
  741. torch.lt: lambda input, other, out=None: -1,
  742. torch.less: lambda input, other, out=None: -1,
  743. torch.lu: lambda A, pivot=True, get_infos=False, out=None: -1,
  744. torch.lu_solve: lambda b, LU_data, LU_pivots, out=None: -1,
  745. torch.margin_ranking_loss: lambda input1, input2, target, margin=0, size_average=None, reduce=None, reduction="mean": -1, # type: ignore[attr-defined] # noqa: B950
  746. torch.masked_fill: lambda input, mask, value: -1,
  747. torch.masked_scatter: lambda input, mask, source: -1,
  748. torch.masked_select: lambda input, mask, out=None: -1,
  749. torch.matmul: lambda input, other, out=None: -1,
  750. torch.linalg.lu: lambda input, pivot=True, out=None: -1,
  751. torch.linalg.lu_factor: lambda input, pivot=True, out=None: -1,
  752. torch.linalg.lu_factor_ex: lambda input, pivot=True, check_errors=False, out=None: -1,
  753. torch.linalg.lu_solve: lambda LU, pivots, B, left=True, adjoint=False, out=None: -1,
  754. torch.linalg.matmul: lambda input, other, out=None: -1, # alias for torch.matmul
  755. torch.matrix_power: lambda input, n: -1,
  756. torch.linalg.matrix_power: lambda input, n, out=None: -1,
  757. torch.linalg.matrix_rank: lambda input, tol=None, hermitian=False: -1,
  758. torch.linalg.multi_dot: lambda tensors, out=None: -1,
  759. torch.matrix_exp: lambda input: -1,
  760. torch.linalg.matrix_exp: lambda input: -1,
  761. torch.max: lambda input, out=None: -1,
  762. torch.maximum: lambda input, other, out=None: -1,
  763. torch.fmax: lambda input, other, out=None: -1,
  764. torch.max_pool1d: lambda input, kernel_size, stride=None, padding=0, dilation=1, ceil_mode=False: -1,
  765. torch.max_pool2d: lambda input, kernel_size, stride=None, padding=0, dilation=1, ceil_mode=False: -1,
  766. torch.max_pool3d: lambda input, kernel_size, stride=None, padding=0, dilation=1, ceil_mode=False: -1,
  767. torch.max_pool1d_with_indices: (
  768. lambda input, kernel_size, stride=None, padding=0, dilation=1, return_indices=False, ceil_mode=False: -1
  769. ),
  770. torch.mean: lambda input, dim=None: -1,
  771. torch.nanmean: lambda input, dim=None, keepdim=False, dtype=None, out=None: -1,
  772. torch.median: lambda input, dim=None: -1,
  773. torch.nanmedian: lambda input, dim=None: -1,
  774. torch.meshgrid: lambda *tensors, **kwargs: -1,
  775. torch.min: lambda input, out=None: -1,
  776. torch.minimum: lambda input, other, out=None: -1,
  777. torch.fmin: lambda input, other, out=None: -1,
  778. torch.miopen_batch_norm: (
  779. lambda input, weight, bias, running_mean, running_var, training, exponential_average_factor, epsilon: -1
  780. ),
  781. torch.miopen_convolution: lambda input, weight, bias, padding, stride, dilation, groups, benchmark, deterministic: -1, # noqa: B950
  782. torch.miopen_convolution_add_relu: lambda input, weight, z, alpha, bias, stride, padding, dilation, groups: -1,
  783. torch.miopen_convolution_relu: lambda input, weight, bias, stride, padding, dilation, groups: -1,
  784. torch.miopen_convolution_transpose: (
  785. lambda input, weight, bias, padding, output_padding, stride, dilation, groups, benchmark, deterministic: -1
  786. ),
  787. torch.miopen_depthwise_convolution: (
  788. lambda input, weight, bias, padding, stride, dilation, groups, benchmark, deterministic: -1
  789. ),
  790. torch.miopen_rnn: (
  791. lambda input, weight, weight_stride0, hx, cx, mode, hidden_size, num_layers, batch_first, dropout, train, bidirectional, batch_sizes, dropout_state: -1 # noqa: B950
  792. ),
  793. torch.mm: lambda input, mat2, out_dtype=None, out=None: -1,
  794. torch.mode: lambda input, dim=-1, keepdim=False, out=None: -1,
  795. torch.movedim: lambda input, source, destination: -1,
  796. torch.moveaxis: lambda input, source, destination: -1,
  797. torch.msort: lambda input, descending=False, out=None: -1,
  798. torch.mul: lambda input, other, out=None: -1,
  799. torch.multiply: lambda input, other, out=None: -1,
  800. torch.multinomial: lambda input, num_samples, replacement=False, out=None: -1,
  801. torch.mv: lambda input, vec, out=None: -1,
  802. torch.mvlgamma: lambda input, p: -1,
  803. torch.narrow: lambda input, dim, start, length: -1,
  804. torch.nan_to_num: lambda input, nan=0.0, posinf=None, neginf=None, out=None: -1,
  805. torch.native_batch_norm: lambda input, weight, bias, running_mean, running_var, training, momentum, eps: -1,
  806. torch._native_batch_norm_legit: lambda input, weight, bias, training, momentum, eps: -1,
  807. torch.native_dropout: lambda input, p, train: -1,
  808. torch.native_layer_norm: lambda input, normalized_shape, weight=None, bias=None, eps=1e-05: -1,
  809. torch._fused_rms_norm: lambda input, normalized_shape, weight=None, eps=1e-05: -1,
  810. torch.native_group_norm: lambda input, weight, bias, N, C, HxW, group, eps: -1,
  811. torch.native_norm: lambda input, p=2, dim=None, keepdim=False, dtype=None: -1,
  812. torch.native_channel_shuffle: lambda input, groups: -1,
  813. torch.ne: lambda input, other, out=None: -1,
  814. torch.not_equal: lambda input, other, out=None: -1,
  815. torch.neg: lambda input, out=None: -1,
  816. torch.negative: lambda input, out=None: -1,
  817. torch.nextafter: lambda input, other, out=None: -1,
  818. torch.nn.functional.adaptive_avg_pool2d: lambda input, output_size: -1,
  819. torch.nn.functional.adaptive_avg_pool3d: lambda input, output_size: -1,
  820. torch.nn.functional.adaptive_max_pool1d: lambda input, output_size, return_indices=False: -1,
  821. torch.nn.functional.adaptive_max_pool1d_with_indices: lambda input, output_size, return_indices=False: -1,
  822. torch.nn.functional.adaptive_max_pool2d: lambda input, output_size, return_indices=False: -1,
  823. torch.nn.functional.adaptive_max_pool2d_with_indices: lambda input, output_size, return_indices=False: -1,
  824. torch.nn.functional.adaptive_max_pool3d: lambda input, output_size, return_indices=False: -1,
  825. torch.nn.functional.adaptive_max_pool3d_with_indices: lambda input, output_size, return_indices=False: -1,
  826. torch.nn.functional.affine_grid: lambda theta, size, align_corners=None: -1,
  827. torch.nn.functional.alpha_dropout: lambda input, p=0.5, training=False, inplace=False: -1,
  828. torch.nn.functional.avg_pool2d: (
  829. lambda input, kernel_size, stride=None, padding=0, ceil_mode=False, count_include_pad=True, divisor_override=None: -1 # noqa: B950
  830. ),
  831. torch.nn.functional.avg_pool3d: (
  832. lambda input, kernel_size, stride=None, padding=0, ceil_mode=False, count_include_pad=True, divisor_override=None: -1 # noqa: B950
  833. ),
  834. torch.nn.functional.batch_norm: (
  835. lambda input, running_mean, running_var, weight=None, bias=None, training=False, momentum=0.1, eps=1e-05: -1
  836. ),
  837. torch.nn.functional.bilinear: lambda input1, input2, weight, bias=None: -1,
  838. torch.nn.functional.binary_cross_entropy: (
  839. lambda input, target, weight=None, size_average=None, reduce=None, reduction="mean": -1
  840. ),
  841. torch.nn.functional.binary_cross_entropy_with_logits: (
  842. lambda input, target, weight=None, size_average=None, reduce=None, reduction="mean", pos_weight=None: -1
  843. ),
  844. torch.nn.functional.celu: lambda input, alpha=1.0, inplace=False: -1,
  845. torch.nn.functional.cosine_embedding_loss: (
  846. lambda input1, input2, target, margin=0, size_average=None, reduce=None, reduction="mean": -1
  847. ),
  848. torch.nn.functional.cross_entropy: (
  849. lambda input, target, weight=None, size_average=None, ignore_index=-100, reduce=None, reduction="mean", label_smoothing=0.0: -1 # noqa: B950
  850. ),
  851. torch.nn.functional.ctc_loss: (
  852. lambda log_probs, targets, input_lengths, target_lengths, blank=0, reduction="mean", zero_infinity=False: -1
  853. ),
  854. torch.nn.functional.dropout: lambda input, p=0.5, training=True, inplace=False: -1,
  855. torch.nn.functional.dropout1d: lambda input, p=0.5, training=True, inplace=False: -1,
  856. torch.nn.functional.dropout2d: lambda input, p=0.5, training=True, inplace=False: -1,
  857. torch.nn.functional.dropout3d: lambda input, p=0.5, training=True, inplace=False: -1,
  858. torch.nn.functional.elu: lambda input, alpha=1.0, inplace=False: -1,
  859. torch.nn.functional.embedding: (
  860. lambda input, weight, padding_idx=None, max_norm=None, norm_type=2.0, scale_grad_by_freq=False, sparse=False: -1 # noqa: B950
  861. ),
  862. torch.nn.functional.embedding_bag: (
  863. lambda input, weight, offsets=None, max_norm=None, norm_type=2, scale_grad_by_freq=False, mode="mean", sparse=False, per_sample_weights=None, include_last_offset=False, padding_idx=None: -1 # noqa: B950
  864. ),
  865. torch.nn.functional.feature_alpha_dropout: lambda input, p=0.5, training=False, inplace=False: -1,
  866. torch.nn.functional.fold: lambda input, output_size, kernel_size, dilation=1, padding=0, stride=1: -1,
  867. torch.nn.functional.fractional_max_pool2d: (
  868. lambda input, kernel_size, output_size=None, output_ratio=None, return_indices=False, _random_samples=None: -1 # noqa: B950
  869. ),
  870. torch.nn.functional.fractional_max_pool2d_with_indices: (
  871. lambda input, kernel_size, output_size=None, output_ratio=None, return_indices=False, _random_samples=None: -1 # noqa: B950
  872. ),
  873. torch.nn.functional.fractional_max_pool3d: (
  874. lambda input, kernel_size, output_size=None, output_ratio=None, return_indices=False, _random_samples=None: -1 # noqa: B950
  875. ),
  876. torch.nn.functional.fractional_max_pool3d_with_indices: (
  877. lambda input, kernel_size, output_size=None, output_ratio=None, return_indices=False, _random_samples=None: -1 # noqa: B950
  878. ),
  879. torch.nn.functional.gaussian_nll_loss: lambda input, target, var, full=False, eps=1e-06, reduction="mean": -1,
  880. torch.nn.functional.gelu: lambda input, approximate="none": -1,
  881. torch.nn.functional.glu: lambda input, dim=-1: -1,
  882. torch.nn.functional.grid_sample: lambda input, grid, mode="bilinear", padding_mode="zeros", align_corners=None: -1, # noqa: B950
  883. torch.nn.functional.group_norm: lambda input, num_groups, weight=None, bias=None, eps=1e-05: -1,
  884. torch.nn.functional.gumbel_softmax: lambda logits, tau=1, hard=False, eps=1e-10, dim=-1: -1,
  885. torch.nn.functional.hardshrink: lambda input, lambd=0.5: -1,
  886. torch.nn.functional.hardtanh: lambda input, min_val=-1.0, max_val=1.0, inplace=False: -1,
  887. torch.nn.functional.hinge_embedding_loss: (
  888. lambda input, target, margin=1.0, size_average=None, reduce=None, reduction="mean": -1
  889. ),
  890. torch.nn.functional.instance_norm: (
  891. lambda input, running_mean=None, running_var=None, weight=None, bias=None, use_input_stats=True, momentum=0.1, eps=1e-05: -1 # noqa: B950
  892. ),
  893. torch.nn.functional.interpolate: (
  894. lambda input, size=None, scale_factor=None, mode="nearest", align_corners=None, recompute_scale_factor=None, antialias=False: -1 # noqa: B950
  895. ),
  896. torch.nn.functional.kl_div: lambda input, target, size_average=None, reduce=None, reduction="mean", log_target=False: -1, # noqa: B950
  897. torch.nn.functional.l1_loss: lambda input, target, size_average=None, reduce=None, reduction="mean", weight=None: -1,
  898. torch.nn.functional.layer_norm: lambda input, normalized_shape, weight=None, bias=None, eps=1e-05: -1,
  899. torch.nn.functional.leaky_relu: lambda input, negative_slope=0.01, inplace=False: -1,
  900. torch.nn.functional.linear: lambda input, weight, bias=None: -1,
  901. torch.nn.functional.local_response_norm: lambda input, size, alpha=0.0001, beta=0.75, k=1.0: -1,
  902. torch.nn.functional.log_softmax: lambda input, dim=None, _stacklevel=3, dtype=None: -1,
  903. torch.nn.functional.logsigmoid: lambda input: -1,
  904. torch.nn.functional.lp_pool1d: lambda input, norm_type, kernel_size, stride=None, ceil_mode=False: -1,
  905. torch.nn.functional.lp_pool2d: lambda input, norm_type, kernel_size, stride=None, ceil_mode=False: -1,
  906. torch.nn.functional.lp_pool3d: lambda input, norm_type, kernel_size, stride=None, ceil_mode=False: -1,
  907. torch.nn.functional.margin_ranking_loss: (
  908. lambda input1, input2, target, margin=0, size_average=None, reduce=None, reduction="mean": -1
  909. ),
  910. torch.nn.functional.max_pool1d: (
  911. lambda input, kernel_size, stride=None, padding=0, dilation=1, ceil_mode=False, return_indices=False: -1
  912. ),
  913. torch.nn.functional.max_pool1d_with_indices: (
  914. lambda input, kernel_size, stride=None, padding=0, dilation=1, return_indices=False, ceil_mode=False: -1
  915. ),
  916. torch.nn.functional.max_pool2d: (
  917. lambda input, kernel_size, stride=None, padding=0, dilation=1, ceil_mode=False, return_indices=False: -1
  918. ),
  919. torch.nn.functional.max_pool2d_with_indices: (
  920. lambda input, kernel_size, stride=None, padding=0, dilation=1, return_indices=False, ceil_mode=False: -1
  921. ),
  922. torch.nn.functional.max_pool3d: (
  923. lambda input, kernel_size, stride=None, padding=0, dilation=1, return_indices=False, ceil_mode=False: -1
  924. ),
  925. torch.nn.functional.max_pool3d_with_indices: (
  926. lambda input, kernel_size, stride=None, padding=0, dilation=1, return_indices=False, ceil_mode=False: -1
  927. ),
  928. torch.nn.functional.max_unpool1d: lambda input, indices, kernel_size, stride=None, padding=0, output_size=None: -1, # noqa: B950
  929. torch.nn.functional.max_unpool2d: lambda input, indices, kernel_size, stride=None, padding=0, output_size=None: -1, # noqa: B950
  930. torch.nn.functional.max_unpool3d: lambda input, indices, kernel_size, stride=None, padding=0, output_size=None: -1, # noqa: B950
  931. torch.nn.functional.mse_loss: lambda input, target, size_average=None, reduce=None, reduction="mean", weight=None: -1,
  932. torch.nn.functional.multi_head_attention_forward: (
  933. lambda query, key, value, embed_dim_to_check, num_heads, in_proj_weight, in_proj_bias, bias_k, bias_v, add_zero_attn, dropout_p, out_proj_weight, out_proj_bias, training=True, key_padding_mask=None, need_weights=True, attn_mask=None, use_separate_proj_weight=False, q_proj_weight=None, k_proj_weight=None, v_proj_weight=None, static_k=None, static_v=None, average_attn_weights=None, is_causal=False: -1 # noqa: B950
  934. ),
  935. torch.nn.functional.multi_margin_loss: (
  936. lambda input, target, p=1, margin=1.0, weight=None, size_average=None, reduce=None, reduction="mean": -1
  937. ),
  938. torch.nn.functional.multilabel_margin_loss: (
  939. lambda input, target, size_average=None, reduce=None, reduction="mean": -1
  940. ),
  941. torch.nn.functional.multilabel_soft_margin_loss: (
  942. lambda input, target, weight=None, size_average=None, reduce=None, reduction="mean": -1
  943. ),
  944. torch.nn.functional.nll_loss: (
  945. lambda input, target, weight=None, size_average=None, ignore_index=-100, reduce=None, reduction="mean": -1
  946. ),
  947. torch.nn.functional.normalize: lambda input, p=2, dim=1, eps=1e-12, out=None: -1,
  948. torch.nn.functional.one_hot: lambda tensor, num_classes=-1: -1,
  949. torch.nn.functional.pad: lambda input, pad, mode="constant", value=0: -1,
  950. torch.nn.functional.pairwise_distance: lambda x1, x2, p=2.0, eps=1e-06, keepdim=False: -1,
  951. torch.nn.functional.poisson_nll_loss: (
  952. lambda input, target, log_input=True, full=False, size_average=None, eps=1e-08, reduce=None, reduction="mean": -1 # noqa: B950
  953. ),
  954. torch.nn.functional.prelu: lambda input, weight: -1,
  955. torch.nn.functional.relu: lambda input, inplace=False: -1,
  956. torch.nn.functional.relu6: lambda input, inplace=False: -1,
  957. torch.nn.functional.rms_norm: lambda input, normalized_shape, weight=None, eps=1e-6: -1,
  958. torch.nn.functional.rrelu: lambda input, lower=0.125, upper=0.3333333333333333, training=False, inplace=False: -1, # noqa: B950
  959. torch.nn.functional.selu: lambda input, inplace=False: -1,
  960. torch.nn.functional.silu: lambda input, inplace=False: -1,
  961. torch.nn.functional.mish: lambda input, inplace=False: -1,
  962. torch.nn.functional.scaled_dot_product_attention: lambda query, key, value, attn_mask=None, dropout_p=0.0: -1,
  963. torch.nn.functional.smooth_l1_loss: lambda input, target, size_average=None, reduce=None, reduction="mean", beta=1.0: -1, # noqa: B950
  964. torch.nn.functional.huber_loss: lambda input, target, reduction="mean", delta=1.0, weight=None: -1,
  965. torch.nn.functional.soft_margin_loss: lambda input, target, size_average=None, reduce=None, reduction="mean": -1, # noqa: B950
  966. torch.nn.functional.softmax: lambda input, dim=None, _stacklevel=3, dtype=None: -1,
  967. torch.nn.functional.softmin: lambda input, dim=None, _stacklevel=3, dtype=None: -1,
  968. torch.nn.functional.softplus: lambda input, beta=1, threshold=20: -1,
  969. torch.nn.functional.softshrink: lambda input, lambd=0.5: -1,
  970. torch.nn.functional.softsign: lambda input: -1,
  971. torch.nn.functional.tanhshrink: lambda input: -1,
  972. torch.nn.functional.threshold: lambda input, threshold, value, inplace=False: -1,
  973. torch.nn.functional.triplet_margin_loss: (
  974. lambda anchor, positive, negative, margin=1.0, p=2, eps=1e-06, swap=False, size_average=None, reduce=None, reduction="mean": -1 # noqa: B950
  975. ),
  976. torch.nn.functional.triplet_margin_with_distance_loss: (
  977. lambda anchor, positive, negative, *, distance_function=None, margin=1.0, swap=False, reduction="mean": -1
  978. ),
  979. torch.nn.functional.unfold: lambda input, kernel_size, dilation=1, padding=0, stride=1: -1,
  980. torch.nn.init.uniform_: lambda tensor, a=0.0, b=1.0, generator=None: -1,
  981. torch.nn.init.normal_: lambda tensor, mean=0.0, std=1.0, generator=None: -1,
  982. torch.nn.init.constant_: lambda tensor, val: -1,
  983. torch.nn.init.kaiming_uniform_: lambda tensor, a=0, mode="fan_in", nonlinearity="leaky_relu", generator=None: -1, # noqa: B950
  984. torch.nonzero: lambda input, as_tuple=False: -1,
  985. torch.nonzero_static: lambda input, *, size, fill_value=-1: -1,
  986. torch.argwhere: lambda input: -1,
  987. torch.norm: lambda input, p="fro", dim=None, keepdim=False, out=None, dtype=None: -1,
  988. torch.linalg.norm: lambda input, ord=None, dim=None, keepdim=False, out=None, dtype=None: -1,
  989. torch.linalg.vector_norm: lambda input, ord=2, dim=None, keepdim=False, out=None, dtype=None: -1,
  990. torch.linalg.matrix_norm: lambda input, ord="fro", dim=(
  991. -2,
  992. -1,
  993. ), keepdim=False, out=None, dtype=None: -1,
  994. torch.norm_except_dim: lambda v, pow=2, dim=0: -1,
  995. torch.nuclear_norm: lambda input, p="fro", dim=None, keepdim=False, out=None, dtype=None: -1,
  996. torch.numel: lambda input: -1,
  997. torch.orgqr: lambda input, tau: -1,
  998. torch.ormqr: lambda input, input2, input3, left=True, transpose=False: -1,
  999. torch.pairwise_distance: lambda x1, x2, p=2.0, eps=1e-06, keepdim=False: -1,
  1000. torch.permute: lambda self, dim: -1,
  1001. torch.pca_lowrank: lambda input, q=None, center=True, niter=2: -1,
  1002. torch.pdist: lambda input, p=2: -1,
  1003. torch.pinverse: lambda input, rcond=1e-15: -1,
  1004. torch.linalg.pinv: lambda input, rcond=1e-15, hermitian=False: -1,
  1005. torch.pixel_shuffle: lambda input, upscale_factor: -1,
  1006. torch.pixel_unshuffle: lambda input, downscale_factor: -1,
  1007. torch.poisson: lambda input, generator=None: -1,
  1008. torch.poisson_nll_loss: lambda input, target, log_input, full, eps, reduction: -1,
  1009. torch.polygamma: lambda input, n, out=None: -1,
  1010. torch.positive: lambda input, out=None: -1,
  1011. torch.prelu: lambda input, weight: -1,
  1012. torch.ones_like: lambda input, dtype=None, layout=None, device=None, requires_grad=False: -1,
  1013. torch.pow: lambda input, exponent, out=None: -1,
  1014. torch.prod: lambda input, dtype=None: -1,
  1015. torch.put: lambda input, index, source, accumulate=False: -1,
  1016. torch.q_per_channel_axis: lambda input: -1,
  1017. torch.q_per_channel_scales: lambda input: -1,
  1018. torch.q_per_channel_zero_points: lambda input: -1,
  1019. torch.q_scale: lambda input: -1,
  1020. torch.q_zero_point: lambda input: -1,
  1021. torch.qr: lambda input, some=True, out=None: -1,
  1022. torch.linalg.qr: lambda input, mode="reduced", out=None: -1,
  1023. torch.quantile: lambda input, q, dim=None, keepdim=False, interpolation="linear", out=None: -1,
  1024. torch.nanquantile: lambda input, q, dim=None, keepdim=False, interpolation="linear", out=None: -1,
  1025. torch.quantize_per_channel: lambda input, scales, zero_points, axis, dtype: -1,
  1026. torch.quantize_per_tensor: lambda input, scale, zero_point, dtype: -1,
  1027. torch.quantize_per_tensor_dynamic: lambda input, dtype, reduce_range: -1,
  1028. torch.quantized_batch_norm: lambda input, weight, bias, mean, var, eps, output_scale, output_zero_point: -1,
  1029. torch.quantized_gru_cell: (
  1030. lambda input, hx, w_ih, w_hh, b_ih, b_hh, packed_ih, packed_hh, col_offsets_ih, col_offsets_hh, scale_ih, scale_hh, zero_point_ih, zero_point_hh: -1 # noqa: B950
  1031. ),
  1032. torch.quantized_lstm_cell: (
  1033. lambda input, hx, w_ih, w_hh, b_ih, b_hh, packed_ih, packed_hh, col_offsets_ih, col_offsets_hh, scale_ih, scale_hh, zero_point_ih, zero_point_hh: -1 # noqa: B950
  1034. ),
  1035. torch.quantized_max_pool1d: (
  1036. lambda input, kernel_size, stride=(), padding=(0,), dilation=(
  1037. 1,
  1038. ), ceil_mode=False: -1
  1039. ),
  1040. torch.quantized_max_pool2d: (
  1041. lambda input, kernel_size, stride=(), padding=(0, 0), dilation=(
  1042. 1,
  1043. 1,
  1044. ), ceil_mode=False: -1
  1045. ),
  1046. torch.quantized_max_pool3d: (
  1047. lambda input, kernel_size, stride=(), padding=(0, 0, 0), dilation=(
  1048. 1,
  1049. 1,
  1050. 1,
  1051. ), ceil_mode=False: -1
  1052. ),
  1053. torch.quantized_rnn_relu_cell: (
  1054. lambda input, hx, w_ih, w_hh, b_ih, b_hh, packed_ih, packed_hh, col_offsets_ih, col_offsets_hh, scale_ih, scale_hh, zero_point_ih, zero_point_hh: -1 # noqa: B950
  1055. ),
  1056. torch.quantized_rnn_tanh_cell: (
  1057. lambda input, hx, w_ih, w_hh, b_ih, b_hh, packed_ih, packed_hh, col_offsets_ih, col_offsets_hh, scale_ih, scale_hh, zero_point_ih, zero_point_hh: -1 # noqa: B950
  1058. ),
  1059. torch.rad2deg: lambda input, out=None: -1,
  1060. torch.ravel: lambda input: -1,
  1061. torch.real: lambda input, out=None: -1,
  1062. torch.vdot: lambda input, other, out=None: -1,
  1063. torch.linalg.vecdot: lambda input, other, dim=-1, out=None: -1,
  1064. torch.view_as_real: lambda input: -1,
  1065. torch.view_as_complex: lambda input: -1,
  1066. torch.reciprocal: lambda input, out=None: -1,
  1067. torch.relu: lambda input, inplace=False: -1,
  1068. torch.remainder: lambda input, other, out=None: -1,
  1069. torch.renorm: lambda input, p, dim, maxnorm, out=None: -1,
  1070. torch.repeat_interleave: lambda input, dim=None: -1,
  1071. torch.reshape: lambda input, shape: -1,
  1072. torch.rms_norm: lambda input, normalized_shape, weight=None, eps=1e-6: -1,
  1073. torch.rnn_relu: lambda input, hx, params, has_biases, num_layers, dropout, train, bidirectional, batch_first: -1, # noqa: B950
  1074. torch.rnn_relu_cell: lambda input, hx, w_ih, w_hh, b_ih=None, b_hh=None: -1,
  1075. torch.rnn_tanh: lambda input, hx, params, has_biases, num_layers, dropout, train, bidirectional, batch_first: -1, # noqa: B950
  1076. torch.rnn_tanh_cell: lambda input, hx, w_ih, w_hh, b_ih=None, b_hh=None: -1,
  1077. torch.roll: lambda input, shifts, dims=None: -1,
  1078. torch.rot90: lambda input, k=1, dims=(0, 1): -1,
  1079. torch.round: lambda input, out=None: -1,
  1080. torch.row_stack: lambda tensors, out=None: -1, # alias for torch.vstack
  1081. torch._rowwise_prune: (lambda weight, mask, compressed_indices_dtype: -1),
  1082. torch.rrelu: lambda input, lower=1.0 / 8, upper=1.0 / 3, training=False, inplace=False: -1,
  1083. torch.rsqrt: lambda input, out=None: -1,
  1084. torch.rsub: lambda input, other, alpha=1: -1,
  1085. torch.saddmm: lambda input, mat1, mat2, beta=1, alpha=1, out=None: -1,
  1086. torch.scatter: lambda input, dim, index, src: -1,
  1087. torch.scatter_add: lambda input, dim, index, src: -1,
  1088. torch.scatter_reduce: lambda input, dim, index, src, reduce, include_self=True: -1,
  1089. torch.searchsorted: lambda sorted_sequence, input, out_int32=False, right=False, out=None: -1,
  1090. torch._segment_reduce: lambda data, reduce="max", lengths=None, indices=None, offsets=None, axis=0, unsafe=False: -1, # noqa: B950
  1091. torch.select: lambda input, dim, index: -1,
  1092. torch.select_scatter: lambda input, src, dim, index: -1,
  1093. torch.slice_inverse: lambda input, src, dim=0, start=None, end=None, step=1: -1,
  1094. torch.slice_scatter: lambda input, src, dim=0, start=None, end=None, step=1: -1,
  1095. torch.selu: lambda input, inplace=False: -1,
  1096. torch.sigmoid: lambda input, out=None: -1,
  1097. torch.sign: lambda input, out=None: -1,
  1098. torch.signbit: lambda input, out=None: -1,
  1099. torch.sgn: lambda input, out=None: -1,
  1100. torch.sin: lambda input, out=None: -1,
  1101. torch.sinc: lambda input, out=None: -1,
  1102. torch.sinh: lambda input, out=None: -1,
  1103. torch.slogdet: lambda input: -1,
  1104. torch.linalg.slogdet: lambda input: -1,
  1105. torch.smm: lambda input, mat2, out_dtype=None: -1,
  1106. torch.spmm: lambda input, mat2, out_dtype=None: -1,
  1107. torch.softmax: lambda input, dim, dtype=None: -1,
  1108. torch.linalg.solve: lambda A, B, left=True, out=None: -1,
  1109. torch.linalg.solve_ex: lambda A, B, left=True, check_errors=False, out=None: -1,
  1110. torch.sort: lambda input, dim=-1, descending=False, *, stable=False, out=None: -1,
  1111. torch.split: lambda tensor, split_size_or_sections, dim=0: -1,
  1112. torch.split_with_sizes: lambda tensor, split_size_or_sections, dim=0: -1,
  1113. torch.sqrt: lambda input, out=None: -1,
  1114. torch.square: lambda input, out=None: -1,
  1115. torch.squeeze: lambda input, dim=None, out=None: -1,
  1116. torch.sspaddmm: lambda input, mat1, mat2, beta=1, alpha=1, out=None: -1,
  1117. torch.stack: lambda tensors, dim=0, out=None: -1,
  1118. torch.std: lambda input, dim=None: -1,
  1119. torch.std_mean: lambda input, dim=None: -1,
  1120. torch.stft: (
  1121. lambda input, n_fft, hop_length=None, win_length=None, window=None, center=True, pad_mode="reflect", normalized=False, onesided=True, return_complex=None, align_to_window=None: -1 # noqa: B950
  1122. ),
  1123. torch.sub: lambda input, other, out=None: -1,
  1124. torch.subtract: lambda input, other, out=None: -1,
  1125. torch.sum: lambda input, dim=None: -1,
  1126. torch.sym_float: lambda input: -1,
  1127. torch.sym_int: lambda input: -1,
  1128. torch.sym_max: lambda a, b: -1,
  1129. torch.sym_min: lambda a, b: -1,
  1130. torch.sym_not: lambda input: -1,
  1131. torch.sym_ite: lambda a, b, c: -1,
  1132. torch.sym_sum: lambda args: -1,
  1133. torch._sym_sqrt: lambda input: -1,
  1134. torch._sym_cos: lambda input: -1,
  1135. torch._sym_cosh: lambda input: -1,
  1136. torch._sym_sin: lambda input: -1,
  1137. torch._sym_sinh: lambda input: -1,
  1138. torch._sym_tan: lambda input: -1,
  1139. torch._sym_tanh: lambda input: -1,
  1140. torch._sym_asin: lambda input: -1,
  1141. torch._sym_acos: lambda input: -1,
  1142. torch._sym_atan: lambda input: -1,
  1143. torch.nansum: lambda input, dim=None: -1,
  1144. torch.svd: lambda input, some=True, compute_uv=True, out=None: -1,
  1145. torch.svd_lowrank: lambda input, q=6, niter=2, M=None: -1,
  1146. torch.linalg.svd: lambda input, full_matrices=True, out=None: -1,
  1147. torch.linalg.svdvals: lambda input, out=None: -1,
  1148. torch.swapaxes: lambda input, dim0, dim1: -1,
  1149. torch.swapdims: lambda input, axis0, axis1: -1,
  1150. torch.special.airy_ai: lambda input: -1,
  1151. torch.special.bessel_j0: lambda input: -1,
  1152. torch.special.bessel_j1: lambda input: -1,
  1153. torch.special.bessel_y0: lambda input: -1,
  1154. torch.special.bessel_y1: lambda input: -1,
  1155. torch.special.chebyshev_polynomial_t: lambda input, n, out=None: -1,
  1156. torch.special.chebyshev_polynomial_u: lambda input, n, out=None: -1,
  1157. torch.special.chebyshev_polynomial_v: lambda input, n, out=None: -1,
  1158. torch.special.chebyshev_polynomial_w: lambda input, n, out=None: -1,
  1159. torch.special.digamma: lambda input: -1,
  1160. torch.special.entr: lambda input: -1,
  1161. torch.special.erf: lambda input: -1,
  1162. torch.special.erfc: lambda input: -1,
  1163. torch.special.erfcx: lambda input: -1,
  1164. torch.special.erfinv: lambda input: -1,
  1165. torch.special.exp2: lambda input: -1,
  1166. torch.special.expit: lambda input: -1,
  1167. torch.special.expm1: lambda input: -1,
  1168. torch.special.gammainc: lambda input, other, out=None: -1,
  1169. torch.special.gammaincc: lambda input, other, out=None: -1,
  1170. torch.special.gammaln: lambda input: -1,
  1171. torch.special.hermite_polynomial_h: lambda input, n, out=None: -1,
  1172. torch.special.hermite_polynomial_he: lambda input, n, out=None: -1,
  1173. torch.special.i0: lambda input: -1,
  1174. torch.special.i0e: lambda input: -1,
  1175. torch.special.i1: lambda input: -1,
  1176. torch.special.i1e: lambda input: -1,
  1177. torch.special.laguerre_polynomial_l: lambda input, n, out=None: -1,
  1178. torch.special.legendre_polynomial_p: lambda input, n, out=None: -1,
  1179. torch.special.log1p: lambda input: -1,
  1180. torch.special.log_ndtr: lambda input: -1,
  1181. torch.special.log_softmax: lambda input, dim, dtype=None: -1,
  1182. torch.special.logit: lambda input: -1,
  1183. torch.special.logsumexp: lambda input, dim, keepdim=False, out=None: -1,
  1184. torch.special.modified_bessel_i0: lambda input: -1,
  1185. torch.special.modified_bessel_i1: lambda input: -1,
  1186. torch.special.modified_bessel_k0: lambda input: -1,
  1187. torch.special.modified_bessel_k1: lambda input: -1,
  1188. torch.special.multigammaln: lambda input, p: -1,
  1189. torch.special.ndtr: lambda input: -1,
  1190. torch.special.ndtri: lambda input: -1,
  1191. torch.special.polygamma: lambda input, n, out=None: -1,
  1192. torch.special.psi: lambda input: -1,
  1193. torch.special.round: lambda input: -1,
  1194. torch.special.scaled_modified_bessel_k0: lambda input: -1,
  1195. torch.special.scaled_modified_bessel_k1: lambda input: -1,
  1196. torch.special.shifted_chebyshev_polynomial_t: lambda input, n, out=None: -1,
  1197. torch.special.shifted_chebyshev_polynomial_u: lambda input, n, out=None: -1,
  1198. torch.special.shifted_chebyshev_polynomial_v: lambda input, n, out=None: -1,
  1199. torch.special.shifted_chebyshev_polynomial_w: lambda input, n, out=None: -1,
  1200. torch.special.sinc: lambda input: -1,
  1201. torch.special.softmax: lambda input, dim, dtype=None: -1,
  1202. torch.special.spherical_bessel_j0: lambda input: -1,
  1203. torch.special.xlog1py: lambda input, other, out=None: -1,
  1204. torch.special.xlogy: lambda input, other, out=None: -1,
  1205. torch.special.zeta: lambda self, other, out=None: -1,
  1206. torch.t: lambda input: -1,
  1207. torch.take: lambda input, index: -1,
  1208. torch.take_along_dim: lambda input, indices, dim=None, out=None: -1,
  1209. torch.tan: lambda input, out=None: -1,
  1210. torch.tanh: lambda input, out=None: -1,
  1211. torch.linalg.tensorinv: lambda a, ind=2: -1,
  1212. torch.linalg.tensorsolve: lambda a, b, dims=None: -1,
  1213. torch.tensordot: lambda a, b, dims=2, out=None: -1,
  1214. torch.tensor_split: lambda input, indices_or_sections, dim=0: -1,
  1215. torch.threshold: lambda input, threshold, value, inplace=False: -1,
  1216. torch.tile: lambda input, dims: -1,
  1217. torch.topk: lambda input, k, dim=-1, descending=False, out=None: -1,
  1218. torch.trace: lambda input: -1,
  1219. torch.transpose: lambda input, dim0, dim1: -1,
  1220. torch.trapz: lambda y, x=None, dim=-1: -1,
  1221. torch.trapezoid: lambda y, x=None, dim=-1: -1,
  1222. torch.triangular_solve: lambda input, A, upper=True, transpose=False, unitriangular=False: -1,
  1223. torch.linalg.solve_triangular: lambda input, B, upper, left=True, unitriangular=False: -1,
  1224. torch.tril: lambda input, diagonal=0, out=None: -1,
  1225. torch.triplet_margin_loss: (
  1226. lambda anchor, positive, negative, margin=1.0, p=2, eps=1e-06, swap=False, size_average=None, reduce=None, reduction="mean": -1 # noqa: B950
  1227. ),
  1228. torch.triu: lambda input, diagonal=0, out=None: -1,
  1229. torch.true_divide: lambda input, other: -1,
  1230. torch.trunc: lambda input, out=None: -1,
  1231. torch.unbind: lambda input, dim=0: -1,
  1232. torch.unflatten: lambda input, dim, sizes, names: -1,
  1233. torch.unique: lambda input, sorted=True, return_inverse=False, return_counts=False, dim=None: -1,
  1234. torch.unique_consecutive: lambda input, return_inverse=False, return_counts=False, dim=None: -1,
  1235. torch.unravel_index: lambda indices, shape: -1,
  1236. torch.unsafe_chunk: lambda input, chunks, dim=0: -1,
  1237. torch.unsafe_split: lambda tensor, split_size_or_sections, dim=0: -1,
  1238. torch.unsafe_split_with_sizes: lambda tensor, split_size_or_sections, dim=0: -1,
  1239. torch.unsqueeze: lambda input, dim, out=None: -1,
  1240. torch.linalg.vander: lambda x, N=None: -1,
  1241. torch.var: lambda input, dim=None: -1,
  1242. torch.var_mean: lambda input, dim=None: -1,
  1243. torch.vsplit: lambda input, indices_or_sections: -1,
  1244. torch.vstack: lambda tensors, out=None: -1,
  1245. torch.where: lambda condition, x=None, y=None: -1,
  1246. torch._wrapped_linear_prepack: lambda weight, weight_scale, weight_zero_point, bias : -1,
  1247. torch._wrapped_quantized_linear_prepacked: (
  1248. lambda input, input_scale, input_zero_point, prepacked, out_scale, out_zero_point, out_channel : -1 # noqa: B950
  1249. ),
  1250. torch.zeros_like: lambda input, dtype=None, layout=None, device=None, requires_grad=False: -1,
  1251. torch._fw_primal_copy: lambda self, level: -1,
  1252. torch._make_dual_copy: lambda primal, tangent, level: -1,
  1253. torch.view_as_real_copy: lambda self: -1,
  1254. torch.view_as_complex_copy: lambda self: -1,
  1255. torch._conj_copy: lambda self: -1,
  1256. torch._neg_view_copy: lambda self: -1,
  1257. torch.as_strided_copy: lambda self, size, stride, storage_offset=None: -1,
  1258. torch._sparse_broadcast_to_copy: lambda self, size: -1,
  1259. torch.diagonal_copy: lambda self, offset=0, dim1=0, dim2=1: -1,
  1260. torch.expand_copy: lambda self, size, *, implicit=False: -1,
  1261. torch.narrow_copy: lambda self, dim, start, length: -1,
  1262. torch.permute_copy: lambda self, dims: -1,
  1263. torch._reshape_alias_copy: lambda self, size, stride: -1,
  1264. torch.select_copy: lambda self, dim, index: -1,
  1265. torch.detach_copy: lambda self: -1,
  1266. torch.slice_copy: lambda self, dim=0, start=None, end=None, step=1: -1,
  1267. torch.split_copy: lambda self, split_size, dim=0: -1,
  1268. torch.split_with_sizes_copy: lambda self, split_sizes, dim=0: -1,
  1269. torch.squeeze_copy: lambda self, dim: -1,
  1270. torch.t_copy: lambda self: -1,
  1271. torch.transpose_copy: lambda self, dim0, dim1: -1,
  1272. torch.unsqueeze_copy: lambda self, dim: -1,
  1273. torch._indices_copy: lambda self: -1,
  1274. torch._values_copy: lambda self: -1,
  1275. torch.indices_copy: lambda self: -1,
  1276. torch.values_copy: lambda self: -1,
  1277. torch.crow_indices_copy: lambda self: -1,
  1278. torch.col_indices_copy: lambda self: -1,
  1279. torch.ccol_indices_copy: lambda self: -1,
  1280. torch.row_indices_copy: lambda self: -1,
  1281. torch.unbind_copy: lambda self, dim=0: -1,
  1282. torch.view_copy: lambda self, dtype: -1,
  1283. torch.unfold_copy: lambda self, dimension, size, step: -1,
  1284. torch.alias_copy: lambda self: -1,
  1285. Tensor.__floordiv__: lambda self, other: -1,
  1286. Tensor.__rfloordiv__: lambda self, other: -1,
  1287. Tensor.__ifloordiv__: lambda self, other: -1,
  1288. Tensor.__truediv__: lambda self, other: -1,
  1289. Tensor.__rtruediv__: lambda self, other: -1,
  1290. Tensor.__itruediv__: lambda self, other: -1,
  1291. Tensor.__lshift__: lambda self, other: -1,
  1292. Tensor.__rlshift__: lambda self, other: -1,
  1293. Tensor.__ilshift__: lambda self, other: -1,
  1294. Tensor.__rshift__: lambda self, other: -1,
  1295. Tensor.__rrshift__: lambda self, other: -1,
  1296. Tensor.__irshift__: lambda self, other: -1,
  1297. Tensor.__and__: lambda self, other: -1,
  1298. Tensor.__or__: lambda self, other: -1,
  1299. Tensor.__xor__: lambda self, other: -1,
  1300. Tensor.__float__: lambda self: -1,
  1301. Tensor.__complex__: lambda self: -1,
  1302. Tensor.__array__: lambda self, dtype: -1,
  1303. Tensor.__bool__: lambda self: -1,
  1304. Tensor.__contains__: lambda self, other: -1,
  1305. Tensor.__neg__: lambda self: -1,
  1306. Tensor.__invert__: lambda self: -1,
  1307. Tensor.__mod__: lambda self, other: -1,
  1308. Tensor.__rmod__: lambda self, other: -1,
  1309. Tensor.__imod__: lambda self, other: -1,
  1310. Tensor.__array_wrap__: lambda self, array: -1,
  1311. Tensor.__getitem__: lambda self, idx: -1,
  1312. Tensor.__deepcopy__: lambda self, memo: -1,
  1313. Tensor.__int__: lambda self: -1,
  1314. Tensor.__long__: lambda self: -1,
  1315. Tensor.__index__: lambda self: -1,
  1316. Tensor.__len__: lambda self: -1,
  1317. Tensor.__format__: lambda self, format_spec: -1,
  1318. Tensor.__reduce_ex__: lambda self, proto: -1,
  1319. Tensor.__reversed__: lambda self: -1,
  1320. Tensor.__repr__: lambda self, *, tensor_contents=None: -1,
  1321. Tensor.__setitem__: lambda self, k, v: -1,
  1322. Tensor.__setstate__: lambda self, d: -1,
  1323. Tensor.T.__get__: lambda self: -1,
  1324. Tensor.H.__get__: lambda self: -1,
  1325. Tensor.mT.__get__: lambda self: -1,
  1326. Tensor.mH.__get__: lambda self: -1,
  1327. Tensor._backward_hooks.__get__: lambda self: -1,
  1328. Tensor._post_accumulate_grad_hooks.__get__: lambda self: -1,
  1329. Tensor._base.__get__: lambda self: -1,
  1330. Tensor._cdata.__get__: lambda self: -1,
  1331. Tensor.grad.__get__: lambda self: -1,
  1332. Tensor._grad.__get__: lambda self: -1,
  1333. Tensor._grad_fn.__get__: lambda self: -1,
  1334. Tensor.grad_fn.__get__: lambda self: -1,
  1335. Tensor.grad_dtype.__get__: lambda self: -1,
  1336. Tensor._version.__get__: lambda self: -1,
  1337. Tensor._autocast_to_reduced_precision: lambda self, cuda_enabled, cpu_enabled, cuda_dtype, cpu_dtype: -1,
  1338. Tensor._autocast_to_full_precision: lambda self, cuda_enabled, cpu_enabled: -1,
  1339. Tensor._clear_non_serializable_cached_data: lambda self: -1,
  1340. Tensor.data.__get__: lambda self: -1,
  1341. Tensor.device.__get__: lambda self: -1,
  1342. Tensor.dtype.__get__: lambda self: -1,
  1343. Tensor.is_cuda.__get__: lambda self: -1,
  1344. Tensor.is_cpu.__get__: lambda self: -1,
  1345. Tensor.is_xla.__get__: lambda self: -1,
  1346. Tensor.is_xpu.__get__: lambda self: -1,
  1347. Tensor.is_ipu.__get__: lambda self: -1,
  1348. Tensor.is_leaf.__get__: lambda self: -1,
  1349. Tensor.retains_grad.__get__: lambda self: -1,
  1350. Tensor.is_meta.__get__: lambda self: -1,
  1351. Tensor.is_mps.__get__: lambda self: -1,
  1352. Tensor.is_mtia.__get__: lambda self: -1,
  1353. Tensor.is_nested.__get__: lambda self: -1,
  1354. Tensor.is_maia.__get__: lambda self: -1,
  1355. Tensor.is_mkldnn.__get__: lambda self: -1,
  1356. Tensor.is_quantized.__get__: lambda self: -1,
  1357. Tensor.is_sparse.__get__: lambda self: -1,
  1358. Tensor.is_sparse_csr.__get__: lambda self: -1,
  1359. Tensor.is_vulkan.__get__: lambda self: -1,
  1360. Tensor.itemsize.__get__: lambda self: -1,
  1361. Tensor.layout.__get__: lambda self: -1,
  1362. Tensor.name.__get__: lambda self: -1,
  1363. Tensor.names.__get__: lambda self: -1,
  1364. Tensor.nbytes.__get__: lambda self: -1,
  1365. Tensor.ndim.__get__: lambda self: -1,
  1366. Tensor.output_nr.__get__: lambda self: -1,
  1367. Tensor.requires_grad.__get__: lambda self: -1,
  1368. Tensor.shape.__get__: lambda self: -1,
  1369. Tensor.volatile.__get__: lambda self: -1,
  1370. Tensor.real.__get__: lambda self: -1,
  1371. Tensor.imag.__get__: lambda self: -1,
  1372. Tensor.__cuda_array_interface__.__get__: lambda self: -1,
  1373. Tensor.type: lambda self, dtype=None, non_blocking=False, **kwargs: -1,
  1374. Tensor._dimI: lambda self: -1,
  1375. Tensor._dimV: lambda self: -1,
  1376. Tensor._indices: lambda self: -1,
  1377. Tensor._is_view: lambda self: -1,
  1378. Tensor._nnz: lambda self: -1,
  1379. Tensor.crow_indices: lambda self: -1,
  1380. Tensor.col_indices: lambda self: -1,
  1381. Tensor.ccol_indices: lambda self: -1,
  1382. Tensor.row_indices: lambda self: -1,
  1383. Tensor._update_names: lambda self, names, inplace: -1,
  1384. Tensor._values: lambda self: -1,
  1385. Tensor.adjoint: lambda self: -1,
  1386. Tensor.align_as: lambda self, other: -1,
  1387. Tensor.align_to: lambda self, order, ellipsis_idx: -1,
  1388. Tensor.apply_: lambda self, callable: -1,
  1389. Tensor.as_strided: lambda self, size, stride: -1,
  1390. Tensor.as_strided_: lambda self, size, stride: -1,
  1391. Tensor.backward: lambda self, gradient=None, retain_graph=None, create_graph=False, inputs=None: -1,
  1392. Tensor.bfloat16: lambda self, memory_format=torch.preserve_format: -1,
  1393. Tensor.bool: lambda self, memory_format=torch.preserve_format: -1,
  1394. Tensor.byte: lambda self, memory_format=torch.preserve_format: -1,
  1395. Tensor.char: lambda self, memory_format=torch.preserve_format: -1,
  1396. Tensor.cauchy_: lambda self, median=0, sigma=1, *, generator=None: -1,
  1397. Tensor.coalesce: lambda self: -1,
  1398. Tensor._coalesced_: lambda self, coalesced: -1,
  1399. Tensor.contiguous: lambda self, memory_format=torch.contiguous_format: -1,
  1400. Tensor.copy_: lambda self, src, non_blocking=False: -1,
  1401. Tensor.cpu: lambda self, memory_format=torch.preserve_format: -1,
  1402. Tensor.cuda: lambda self, memory_format=torch.preserve_format: -1,
  1403. Tensor.mtia: lambda self, memory_format=torch.preserve_format: -1,
  1404. Tensor.xpu: lambda self, memory_format=torch.preserve_format: -1,
  1405. Tensor.ipu: lambda self, memory_format=torch.preserve_format: -1,
  1406. Tensor.data_ptr: lambda self: -1,
  1407. Tensor.dense_dim: lambda self: -1,
  1408. Tensor.diagonal_scatter: lambda self, src, offset=0, dim1=0, dim2=1: -1,
  1409. Tensor.dim: lambda self: -1,
  1410. Tensor.dim_order: lambda self, ambiguity_check=False: -1,
  1411. Tensor.double: lambda self, memory_format=torch.preserve_format: -1,
  1412. Tensor.cdouble: lambda self, memory_format=torch.preserve_format: -1,
  1413. Tensor.element_size: lambda self: -1,
  1414. Tensor.expand: lambda self, size: -1,
  1415. Tensor.expand_as: lambda self, other: -1,
  1416. Tensor.exponential_: lambda self, lambd=1, *, generator=None: -1,
  1417. Tensor.fill_: lambda self, value: -1,
  1418. Tensor.fill_diagonal_: lambda self, value: -1,
  1419. Tensor.float: lambda self, memory_format=torch.preserve_format: -1,
  1420. Tensor.cfloat: lambda self, memory_format=torch.preserve_format: -1,
  1421. Tensor.geometric_: lambda self, p, *, generator=None: -1,
  1422. Tensor.get_device: lambda self: -1,
  1423. Tensor.half: lambda self, memory_format=torch.preserve_format: -1,
  1424. Tensor.chalf: lambda self, memory_format=torch.preserve_format: -1,
  1425. Tensor.has_names: lambda self: -1,
  1426. Tensor.indices: lambda self: -1,
  1427. Tensor.int: lambda self, memory_format=torch.preserve_format: -1,
  1428. Tensor.is_coalesced: lambda self: -1,
  1429. Tensor.is_contiguous: lambda self: -1,
  1430. Tensor.is_inference: lambda self: -1,
  1431. Tensor.is_pinned: lambda self: -1,
  1432. Tensor.is_set_to: lambda self, tensor: -1,
  1433. Tensor.is_shared: lambda self: -1,
  1434. Tensor.item: lambda self: -1,
  1435. Tensor.log_normal_: lambda self, mean=1, std=2, *, generator=None: -1,
  1436. Tensor.log_softmax: lambda self, dim: -1,
  1437. Tensor.long: lambda self, memory_format=torch.preserve_format: -1,
  1438. Tensor.map_: lambda self, tensor, callable: -1,
  1439. Tensor.map2_: lambda self, x, y, callable: -1,
  1440. Tensor.mm: lambda self, mat2, out_dtype=None: -1,
  1441. Tensor.module_load: lambda self, other, assign=False: -1,
  1442. Tensor.narrow_copy: lambda self, dimension, start, length: -1,
  1443. Tensor.ndimension: lambda self: -1,
  1444. Tensor.nelement: lambda self: -1,
  1445. Tensor._nested_tensor_size: lambda self: -1,
  1446. Tensor._nested_tensor_storage_offsets: lambda self: -1,
  1447. Tensor._nested_tensor_strides: lambda self: -1,
  1448. Tensor.normal_: lambda self: -1,
  1449. Tensor.numpy: lambda self: -1,
  1450. Tensor.permute: lambda self, dim: -1,
  1451. Tensor.pin_memory: lambda self: -1,
  1452. Tensor.put_: lambda self, indices, tensor, accumulate=False: -1,
  1453. Tensor.qscheme: lambda self: -1,
  1454. Tensor.random_: lambda self, from_=0, to=None, *, generator=None: -1,
  1455. Tensor.record_stream: lambda self, stream: -1,
  1456. Tensor.refine_names: lambda self, names: -1,
  1457. Tensor.register_hook: lambda self, hook: -1,
  1458. Tensor.register_post_accumulate_grad_hook: lambda self, hook: -1,
  1459. Tensor.rename: lambda self, name: -1,
  1460. Tensor.repeat: lambda self, *size: -1,
  1461. Tensor.requires_grad_: lambda self, requires_grad=True: -1,
  1462. Tensor.reshape_as: lambda self, other: -1,
  1463. Tensor.resize: lambda self, *size: -1,
  1464. Tensor.resize_: lambda self, size: -1,
  1465. Tensor.resize_as: lambda self, other: -1,
  1466. Tensor.resize_as_sparse_: lambda self, other: -1,
  1467. Tensor.retain_grad: lambda self: -1,
  1468. Tensor.set_: lambda self, source=None, storage_offset=0, size=None, stride=None: -1,
  1469. Tensor.select_scatter: lambda self, src, dim, index: -1,
  1470. Tensor.share_memory_: lambda self: -1,
  1471. Tensor.short: lambda self, memory_format=torch.preserve_format: -1,
  1472. Tensor.size: lambda self: -1,
  1473. Tensor.slice_scatter: lambda self, src, dim=0, start=None, end=None, step=1: -1,
  1474. Tensor.sparse_dim: lambda self: -1,
  1475. Tensor.sparse_mask: lambda self, mask: -1,
  1476. Tensor._sparse_mask_projection: lambda self, mask, accumulate_matches=False: -1,
  1477. Tensor.sparse_resize_: lambda self, size1, size2, dense_dim: -1,
  1478. Tensor.sparse_resize_and_clear_: lambda self, size1, size2, dense_dim: -1,
  1479. Tensor.sspaddmm: lambda self, mat1, mat2, beta=1, alpha=1, out=None: -1,
  1480. Tensor.storage: lambda self: -1,
  1481. Tensor.untyped_storage: lambda self: -1,
  1482. Tensor.storage_offset: lambda self: -1,
  1483. Tensor.storage_type: lambda self: -1,
  1484. Tensor.sum_to_size: lambda self, size: -1,
  1485. Tensor.tile: lambda self, *reps: -1,
  1486. Tensor.to: lambda self, dtype, non_blocking=False, copy=False, memory_format=torch.preserve_format: -1,
  1487. Tensor.to_dense: lambda self, dtype=None, *, masked_grad=None: -1,
  1488. Tensor._to_dense: lambda self, dtype=None, masked_grad=None: -1,
  1489. Tensor.to_sparse: lambda self: -1,
  1490. Tensor.tolist: lambda self: -1,
  1491. Tensor.to_mkldnn: lambda self: -1,
  1492. Tensor.type_as: lambda self, other: -1,
  1493. Tensor.unfold: lambda self, dimension, size, step: -1,
  1494. Tensor.uniform_: lambda self, from_=0, to=1: -1,
  1495. Tensor.values: lambda self: -1,
  1496. Tensor.view: lambda self, shape: -1,
  1497. Tensor.view_as: lambda self, other: -1,
  1498. Tensor.zero_: lambda self: -1,
  1499. Tensor.__dlpack__: lambda self, stream=None, max_version=None, dl_device=None, copy=None: -1,
  1500. Tensor.__dlpack_device__: lambda self: -1,
  1501. Tensor.index: lambda self, a, b: -1,
  1502. torch.linalg.lstsq: lambda self, b, cond=None, driver=None: -1,
  1503. } # fmt: skip
  1504. privateuse1_backend_name = (
  1505. torch.utils.backend_registration._privateuse1_backend_name
  1506. )
  1507. if hasattr(Tensor, privateuse1_backend_name):
  1508. ret[getattr(Tensor, privateuse1_backend_name)] = (
  1509. lambda self, device=None, non_blocking=False, **kwargs: -1
  1510. )
  1511. ret[getattr(Tensor, f"is_{privateuse1_backend_name}").__get__] = lambda self: -1
  1512. ret2 = {}
  1513. ignored = get_ignored_functions()
  1514. for k, v in ret.items():
  1515. # Generate methods like __add__ and add_ by default from add
  1516. names = [
  1517. k.__name__, # Default method
  1518. k.__name__ + "_", # Inplace variant
  1519. "__" + k.__name__ + "__", # Dunder method
  1520. "__i" + k.__name__ + "__", # Inplace dunder method
  1521. "__r" + k.__name__ + "__", # Reverse dunder method
  1522. ]
  1523. if k.__name__.startswith("bitwise_"):
  1524. # bitwise_<op> have dunder methods of the form __<op>__
  1525. # And so on.
  1526. subname = k.__name__[len("bitwise_") :]
  1527. names.extend(
  1528. ["__" + subname + "__", "__i" + subname + "__", "__r" + subname + "__"]
  1529. )
  1530. for name in names:
  1531. func = getattr(Tensor, name, None)
  1532. if callable(func) and func not in ret and func not in ignored:
  1533. ret2[func] = v
  1534. ret.update(ret2)
  1535. return ret
  1536. def wrap_torch_function(dispatcher: Callable):
  1537. """Wraps a given function with ``__torch_function__`` -related functionality.
  1538. Parameters
  1539. ----------
  1540. dispatcher: Callable
  1541. A callable that returns an iterable of Tensor-likes passed into the function.
  1542. Note
  1543. ----
  1544. This decorator may reduce the performance of your code. Generally, it's enough to express
  1545. your code as a series of functions that, themselves, support __torch_function__. If you
  1546. find yourself in the rare situation where this is not the case, e.g. if you're wrapping a
  1547. low-level library and you also need it to work for Tensor-likes, then this function is available.
  1548. Examples
  1549. --------
  1550. >>> def dispatcher(a): # Must have the same signature as func
  1551. ... return (a,)
  1552. >>> @torch.overrides.wrap_torch_function(dispatcher)
  1553. >>> def func(a): # This will make func dispatchable by __torch_function__
  1554. ... return a + 0
  1555. """
  1556. def inner(func):
  1557. @functools.wraps(func)
  1558. def wrapped(*args, **kwargs):
  1559. relevant_args = dispatcher(*args, **kwargs)
  1560. if has_torch_function(relevant_args):
  1561. return handle_torch_function(wrapped, relevant_args, *args, **kwargs)
  1562. return func(*args, **kwargs)
  1563. return wrapped
  1564. return inner
  1565. def _get_overloaded_args(
  1566. relevant_args: Iterable[Any],
  1567. get_type_fn: Callable[[Any], type] | None = None,
  1568. ) -> list[Any]:
  1569. """Returns a list of arguments on which to call __torch_function__.
  1570. Checks arguments in relevant_args for __torch_function__ implementations,
  1571. storing references to the arguments and their types in overloaded_args and
  1572. overloaded_types in order of calling precedence. Only distinct types are
  1573. considered. If a type is a subclass of another type it will have higher
  1574. precedence, otherwise the precedence order is the same as the order of
  1575. arguments in relevant_args, that is, from left-to-right in the argument list.
  1576. The precedence-determining algorithm implemented in this function is
  1577. described in `NEP-0018`_.
  1578. See torch::append_overloaded_arg for the equivalent function in the C++
  1579. implementation.
  1580. Parameters
  1581. ----------
  1582. relevant_args : iterable of array-like
  1583. Iterable of array-like arguments to check for __torch_function__
  1584. methods.
  1585. get_type_fn : callable, optional
  1586. Function to call on each argument in relevant_args to get its type.
  1587. Returns
  1588. -------
  1589. overloaded_args : list
  1590. Arguments from relevant_args on which to call __torch_function__
  1591. methods, in the order in which they should be called.
  1592. .. _NEP-0018:
  1593. https://numpy.org/neps/nep-0018-array-function-protocol.html
  1594. """
  1595. if get_type_fn is None:
  1596. get_type_fn = type
  1597. # If torch function is not enabled, there are no overloaded types
  1598. if not torch._C._is_torch_function_enabled():
  1599. return []
  1600. # Runtime is O(num_arguments * num_unique_types)
  1601. overloaded_types: set[type] = set()
  1602. overloaded_args: list[Any] = []
  1603. for arg in relevant_args:
  1604. arg_type = get_type_fn(arg)
  1605. # We only collect arguments if they have a unique type, which ensures
  1606. # reasonable performance even with a long list of possibly overloaded
  1607. # arguments.
  1608. #
  1609. # NB: Important to exclude _disabled_torch_function_impl, otherwise
  1610. # https://github.com/pytorch/pytorch/issues/64687
  1611. if (
  1612. arg_type not in overloaded_types
  1613. and hasattr(arg_type, "__torch_function__")
  1614. and arg_type.__torch_function__
  1615. is not torch._C._disabled_torch_function_impl
  1616. ):
  1617. # Create lists explicitly for the first type (usually the only one
  1618. # done) to avoid setting up the iterator for overloaded_args.
  1619. if overloaded_types:
  1620. overloaded_types.add(arg_type)
  1621. # By default, insert argument at the end, but if it is
  1622. # subclass of another argument, insert it before that argument.
  1623. # This ensures "subclasses before superclasses".
  1624. index = len(overloaded_args)
  1625. for i, old_arg in enumerate(overloaded_args):
  1626. if issubclass(arg_type, get_type_fn(old_arg)):
  1627. index = i
  1628. break
  1629. overloaded_args.insert(index, arg)
  1630. else:
  1631. overloaded_types = {arg_type}
  1632. overloaded_args = [arg]
  1633. return overloaded_args
  1634. def handle_torch_function(
  1635. public_api: Callable,
  1636. relevant_args: Iterable[Any],
  1637. *args,
  1638. **kwargs,
  1639. ) -> Any:
  1640. """Implement a function with checks for ``__torch_function__`` overrides.
  1641. See torch::autograd::handle_torch_function for the equivalent of this
  1642. function in the C++ implementation.
  1643. Arguments
  1644. ---------
  1645. public_api : function
  1646. Function exposed by the public torch API originally called like
  1647. ``public_api(*args, **kwargs)`` on which arguments are now being
  1648. checked.
  1649. relevant_args : iterable
  1650. Iterable of arguments to check for __torch_function__ methods.
  1651. args : tuple
  1652. Arbitrary positional arguments originally passed into ``public_api``.
  1653. kwargs : tuple
  1654. Arbitrary keyword arguments originally passed into ``public_api``.
  1655. Returns
  1656. -------
  1657. object
  1658. Result from calling ``implementation`` or an ``__torch_function__``
  1659. method, as appropriate.
  1660. Raises
  1661. ------
  1662. TypeError : if no implementation is found.
  1663. Example
  1664. -------
  1665. >>> def func(a):
  1666. ... if has_torch_function_unary(a):
  1667. ... return handle_torch_function(func, (a,), a)
  1668. ... return a + 0
  1669. """
  1670. # Check for __torch_function__ methods.
  1671. overloaded_args = _get_overloaded_args(relevant_args)
  1672. # overloaded_args already have unique types.
  1673. types = tuple(map(type, overloaded_args))
  1674. # Check for __torch_function__ mode.
  1675. if _is_torch_function_mode_enabled():
  1676. # if we're here, the mode must be set to a TorchFunctionStackMode
  1677. # this unsets it and calls directly into TorchFunctionStackMode's torch function
  1678. with _pop_mode_temporarily() as mode:
  1679. result = mode.__torch_function__(public_api, types, args, kwargs)
  1680. if result is not NotImplemented:
  1681. return result
  1682. # Call overrides
  1683. for overloaded_arg in overloaded_args:
  1684. # This call needs to become a classmethod call in the future.
  1685. # See https://github.com/pytorch/pytorch/issues/63767
  1686. torch_func_method = overloaded_arg.__torch_function__
  1687. if (
  1688. hasattr(torch_func_method, "__self__")
  1689. and torch_func_method.__self__ is overloaded_arg
  1690. and torch_func_method is not torch._C._disabled_torch_function_impl
  1691. ):
  1692. warnings.warn(
  1693. "Defining your `__torch_function__ as a plain method is deprecated and "
  1694. "will be an error in future, please define it as a classmethod.",
  1695. DeprecationWarning,
  1696. stacklevel=2,
  1697. )
  1698. # Use `public_api` instead of `implementation` so __torch_function__
  1699. # implementations can do equality/identity comparisons.
  1700. result = torch_func_method(public_api, types, args, kwargs)
  1701. if result is not NotImplemented:
  1702. return result
  1703. func_name = f"{public_api.__module__}.{public_api.__name__}"
  1704. msg = (
  1705. f"no implementation found for '{func_name}' on types that implement "
  1706. f"__torch_function__: {[type(arg) for arg in overloaded_args]}"
  1707. )
  1708. if _is_torch_function_mode_enabled():
  1709. msg += f" nor in mode {_get_current_function_mode()}"
  1710. raise TypeError(msg)
  1711. has_torch_function = _add_docstr(
  1712. _has_torch_function,
  1713. r"""Check for __torch_function__ implementations in the elements of an iterable
  1714. or if a __torch_function__ mode is enabled. Considers exact ``Tensor`` s
  1715. and ``Parameter`` s non-dispatchable. Use this to guard a call to
  1716. :func:`handle_torch_function`; don't use it to test if something
  1717. is Tensor-like, use :func:`is_tensor_like` instead.
  1718. Arguments
  1719. ---------
  1720. relevant_args : iterable
  1721. Iterable or arguments to check for __torch_function__ methods.
  1722. Returns
  1723. -------
  1724. bool
  1725. True if any of the elements of relevant_args have __torch_function__
  1726. implementations, False otherwise.
  1727. See Also
  1728. ________
  1729. torch.is_tensor_like
  1730. Checks if something is a Tensor-like, including an exact ``Tensor``.
  1731. """,
  1732. )
  1733. has_torch_function_unary = _add_docstr(
  1734. _has_torch_function_unary,
  1735. r"""Special case of `has_torch_function` for single inputs.
  1736. Instead of:
  1737. `has_torch_function((t,))`
  1738. call:
  1739. `has_torch_function_unary(t)`
  1740. which skips unnecessary packing and unpacking work.
  1741. """,
  1742. )
  1743. has_torch_function_variadic = _add_docstr(
  1744. _has_torch_function_variadic,
  1745. r"""Special case of `has_torch_function` that skips tuple creation.
  1746. This uses the METH_FASTCALL protocol introduced in Python 3.7
  1747. Instead of:
  1748. `has_torch_function((a, b))`
  1749. call:
  1750. `has_torch_function_variadic(a, b)`
  1751. which skips unnecessary packing and unpacking work.
  1752. """,
  1753. )
  1754. @functools.cache
  1755. def _get_overridable_functions() -> tuple[
  1756. dict[Any, list[Callable]], dict[Callable, str]
  1757. ]:
  1758. overridable_funcs = collections.defaultdict(list)
  1759. index = {}
  1760. tested_namespaces = [
  1761. ("torch", torch, torch.__all__),
  1762. ("torch.functional", torch.functional, torch.functional.__all__),
  1763. ("torch.nn.functional", torch.nn.functional, dir(torch.nn.functional)),
  1764. ("torch.nn.init", torch.nn.init, dir(torch.nn.init)),
  1765. ("torch.Tensor", torch.Tensor, dir(torch.Tensor)),
  1766. ("torch.linalg", torch.linalg, dir(torch.linalg)),
  1767. ("torch.fft", torch.fft, dir(torch.fft)),
  1768. ("torch.special", torch.special, dir(torch.special)),
  1769. ]
  1770. for namespace_str, namespace, ns_funcs in tested_namespaces:
  1771. for func_name in ns_funcs:
  1772. ignore = False
  1773. # ignore private functions or functions that are deleted in torch.__init__
  1774. if namespace is not torch.Tensor:
  1775. if func_name.startswith("__"):
  1776. continue
  1777. elif func_name.startswith("_"):
  1778. ignore = True
  1779. elif func_name.endswith("_"):
  1780. ignore = True
  1781. elif not func_name[0].islower():
  1782. ignore = True
  1783. elif func_name == "unique_dim":
  1784. continue
  1785. else:
  1786. func = getattr(namespace, func_name)
  1787. if getattr(object, func_name, None) == func:
  1788. continue
  1789. if func_name == "__weakref__":
  1790. continue
  1791. func = getattr(namespace, func_name)
  1792. if namespace is torch.Tensor and getattr(object, func_name, None) == func:
  1793. continue
  1794. # ignore re-exported modules
  1795. if isinstance(func, types.ModuleType):
  1796. continue
  1797. # ignore __future__ imports
  1798. if isinstance(func, __future__._Feature):
  1799. continue
  1800. if not callable(func) and hasattr(func, "__get__"):
  1801. index[func.__get__] = f"{namespace_str}.{func_name}.__get__"
  1802. index[func.__set__] = f"{namespace_str}.{func_name}.__set__"
  1803. if ignore:
  1804. continue
  1805. if func.__get__ in get_ignored_functions():
  1806. msg = (
  1807. "{}.{} is in the tuple returned by torch._overrides.get_ignored_functions "
  1808. "but still has an explicit override"
  1809. )
  1810. assert func.__get__ not in get_testing_overrides(), msg.format(
  1811. namespace, func.__name__
  1812. )
  1813. continue
  1814. else:
  1815. overridable_funcs[func].append(func.__get__)
  1816. continue
  1817. if not callable(func):
  1818. continue
  1819. index[func] = f"{namespace_str}.{func_name}"
  1820. if ignore:
  1821. continue
  1822. # cannot be overridden by __torch_function__
  1823. if func in get_ignored_functions():
  1824. msg = (
  1825. "{}.{} is in the tuple returned by torch._overrides.get_ignored_functions "
  1826. "but still has an explicit override"
  1827. )
  1828. assert func not in get_testing_overrides(), msg.format(
  1829. namespace, func.__name__
  1830. )
  1831. continue
  1832. overridable_funcs[namespace].append(func)
  1833. return overridable_funcs, index
  1834. @_disable_user_warnings
  1835. def get_overridable_functions() -> dict[Any, list[Callable]]:
  1836. """List functions that are overridable via __torch_function__
  1837. Returns
  1838. -------
  1839. Dict[Any, List[Callable]]
  1840. A dictionary that maps namespaces that contain overridable functions
  1841. to functions in that namespace that can be overridden.
  1842. """
  1843. return _get_overridable_functions()[0]
  1844. @_disable_user_warnings
  1845. def resolve_name(f):
  1846. """Get a human readable string name for a function passed to
  1847. __torch_function__
  1848. Arguments
  1849. ---------
  1850. f : Callable
  1851. Function to resolve the name of.
  1852. Returns
  1853. -------
  1854. str
  1855. Name of the function; if eval'ed it should give back the input
  1856. function.
  1857. """
  1858. if isinstance(f, (torch._ops.OpOverload, torch._ops.OpOverloadPacket)):
  1859. return str(f)
  1860. return _get_overridable_functions()[1].get(f)
  1861. @functools.cache
  1862. def _get_tensor_methods() -> set[Callable]:
  1863. """Returns a set of the overridable methods on ``torch.Tensor``"""
  1864. overridable_funcs = get_overridable_functions()
  1865. methods = set(overridable_funcs[torch.Tensor])
  1866. return methods
  1867. @_disable_user_warnings
  1868. def is_tensor_method_or_property(func: Callable) -> bool:
  1869. """
  1870. Returns True if the function passed in is a handler for a
  1871. method or property belonging to ``torch.Tensor``, as passed
  1872. into ``__torch_function__``.
  1873. .. note::
  1874. For properties, their ``__get__`` method must be passed in.
  1875. This may be needed, in particular, for the following reasons:
  1876. 1. Methods/properties sometimes don't contain a `__module__` slot.
  1877. 2. They require that the first passed-in argument is an instance
  1878. of ``torch.Tensor``.
  1879. Examples
  1880. --------
  1881. >>> is_tensor_method_or_property(torch.Tensor.add)
  1882. True
  1883. >>> is_tensor_method_or_property(torch.add)
  1884. False
  1885. """
  1886. return func in _get_tensor_methods() or func.__name__ == "__get__"
  1887. def is_tensor_like(inp):
  1888. """
  1889. Returns ``True`` if the passed-in input is a Tensor-like.
  1890. Currently, this occurs whenever there's a ``__torch_function__``
  1891. attribute on the type of the input.
  1892. Examples
  1893. --------
  1894. A subclass of tensor is generally a Tensor-like.
  1895. >>> class SubTensor(torch.Tensor): ...
  1896. >>> is_tensor_like(SubTensor([0]))
  1897. True
  1898. Built-in or user types aren't usually Tensor-like.
  1899. >>> is_tensor_like(6)
  1900. False
  1901. >>> is_tensor_like(None)
  1902. False
  1903. >>> class NotATensor: ...
  1904. >>> is_tensor_like(NotATensor())
  1905. False
  1906. But, they can be made Tensor-like by implementing __torch_function__.
  1907. >>> class TensorLike:
  1908. ... @classmethod
  1909. ... def __torch_function__(cls, func, types, args, kwargs):
  1910. ... return -1
  1911. >>> is_tensor_like(TensorLike())
  1912. True
  1913. """
  1914. return type(inp) is torch.Tensor or hasattr(inp, "__torch_function__")
  1915. class TorchFunctionMode:
  1916. """
  1917. A ``TorchFunctionMode`` allows you to override the meaning of all
  1918. ``__torch_function__`` overridable functions within a dynamic scope,
  1919. without having to actually create a tensor subclass or manually
  1920. monkey-patch functions in the PyTorch API. Some common situations
  1921. where you should use a mode:
  1922. * You want to override the meaning of factory functions, or other
  1923. functions that do not otherwise take a tensor as an argument
  1924. (these cannot be overridden with tensor subclasses).
  1925. * You want to override the behavior of all functions without needing
  1926. to wrap your inputs in tensor subclasses; e.g., if you are just
  1927. interested in logging intermediate computations.
  1928. * You want to control the order of execution of various tensor
  1929. subclasses explicitly, rather than implicitly via the return of
  1930. ``NotImplemented``.
  1931. Independent subclasses of :class:`TorchFunctionMode` are compositional:
  1932. modes can be pushed onto a stack using ``with MyMode():``.
  1933. When you call functions in the PyTorch API inside your
  1934. ``__torch_function__`` implementation, by default, they will forward on to
  1935. the next mode on the mode stack. If you want recursively call back into
  1936. your current ``__torch_function__`` implementation, either explicitly
  1937. invoke ``self.__torch_function__(...)``, or use the context manager
  1938. ``enable_torch_function_mode(self, replace=self.inner)`` to make PyTorch
  1939. API self-referential (beware of infinite loops, in this case!)
  1940. """
  1941. inner: "TorchFunctionMode"
  1942. # Force metaclass to generate constructor at the base of the hierarchy
  1943. def __init__(self) -> None:
  1944. pass
  1945. def __torch_function__(self, func, types, args=(), kwargs=None):
  1946. raise NotImplementedError
  1947. def __enter__(self):
  1948. _push_mode(self)
  1949. return self
  1950. def __exit__(self, exc_type, exc_val, exc_tb):
  1951. _pop_mode()
  1952. @classmethod
  1953. def push(cls, *args, **kwargs):
  1954. warnings.warn(
  1955. "`Mode.push()` is no longer necessary and can be replaced with just `with Mode()`",
  1956. stacklevel=2,
  1957. )
  1958. instance = cls(*args, **kwargs)
  1959. return instance
  1960. def _get_current_function_mode():
  1961. stack_len = _len_torch_function_stack()
  1962. return _get_function_stack_at(stack_len - 1) if stack_len > 0 else None
  1963. def _get_current_function_mode_stack():
  1964. stack_len = _len_torch_function_stack()
  1965. return [_get_function_stack_at(i) for i in range(stack_len)]
  1966. def _push_mode(mode):
  1967. _push_on_torch_function_stack(mode)
  1968. def _pop_mode():
  1969. old = _pop_torch_function_stack()
  1970. return old
  1971. @contextlib.contextmanager
  1972. def _pop_mode_temporarily():
  1973. old = _pop_mode()
  1974. try:
  1975. yield old
  1976. finally:
  1977. _push_mode(old)
  1978. class BaseTorchFunctionMode(TorchFunctionMode):
  1979. def __torch_function__(self, func, types, args=(), kwargs=None):
  1980. if kwargs is None:
  1981. kwargs = {}
  1982. return func(*args, **kwargs)
  1983. @contextlib.contextmanager
  1984. def _enable_torch_function():
  1985. old_state = torch._C._get_torch_function_state()
  1986. try:
  1987. torch._C._set_torch_function_state(torch._C._TorchFunctionState.ENABLED)
  1988. yield
  1989. finally:
  1990. torch._C._set_torch_function_state(old_state)
  1991. @contextlib.contextmanager
  1992. def enable_reentrant_dispatch():
  1993. # NB: this can't simply be
  1994. # `enable_reentrant_dispatch = torch._C._RestorePythonTLSSnapshot`
  1995. # because:
  1996. # 1. torch._C._RestorePythonTLSSnapshot is unavailable when this file
  1997. # initially gets imported. Probably an import order thing.
  1998. # 2. enable_reentrant_dispatch is technically public API; assigning
  1999. # it the object would change the __module__ to look private.
  2000. with torch._C._RestorePythonTLSSnapshot():
  2001. try:
  2002. yield
  2003. finally:
  2004. pass