Coverage for src/flag_gems/ops/flip.py: 97%
32 statements
« prev ^ index » next coverage.py v7.6.9, created at 2026-03-23 02:03 +0800
« prev ^ index » next coverage.py v7.6.9, created at 2026-03-23 02:03 +0800
1import logging
3import torch
4import triton
6from flag_gems.utils import pointwise_dynamic
7from flag_gems.utils.tensor_wrapper import StridedBuffer
9logger = logging.getLogger(__name__)
12@pointwise_dynamic(is_tensor=[True], promotion_methods=[(0, "DEFAULT")])
13@triton.jit
14def copy_func(x):
15 return x
18def flip(A: torch.Tensor, dims) -> torch.Tensor:
19 logger.debug("GEMS FLIP")
20 strides = list(A.stride())
21 flip_dims_b = [False for _ in A.stride()]
22 for dim in dims:
23 assert (
24 dim >= -A.dim() and dim < A.dim()
25 ), "Dimension out of range (expected to be in range of [{}, {}], but got {})".format(
26 -A.dim(), A.dim() - 1, dim
27 )
28 assert not flip_dims_b[
29 dim
30 ], "dim {} appears multiple times in the list of dims".format(dim)
31 flip_dims_b[dim] = True
32 n = 0
33 offset = 0
34 for i in range(len(flip_dims_b)):
35 if flip_dims_b[i] and A.size(i) > 1 and A.stride(i) != 0:
36 offset += strides[i] * (A.shape[i] - 1)
37 strides[i] = -strides[i]
38 n += 1
39 if n == 0 or A.numel() <= 1:
40 return A.clone()
41 out = torch.empty_like(A)
42 # a flipped view of A
43 flipped_A = StridedBuffer(A, strides=strides, offset=offset)
45 # TODO: flip op can have a custom task simplification method, but we skip it now and just use A's rank.
46 overload = copy_func.instantiate(A.ndim)
47 overload(flipped_A, out0=out)
48 return out