Coverage for src/flag_gems/runtime/backend/_ascend/ops/hstack.py: 0%

43 statements  

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1import itertools 

2import logging 

3from typing import List, Tuple, Union 

4 

5import torch 

6import triton 

7 

8from flag_gems.utils import pointwise_dynamic 

9from flag_gems.utils.tensor_wrapper import StridedBuffer 

10 

11logger = logging.getLogger(f'flag_gems.runtime._ascend.ops.{__name__.split(".")[-1]}') 

12 

13 

14@pointwise_dynamic(is_tensor=[True], promotion_methods=[(0, "DEFAULT")]) 

15@triton.jit 

16def copy_func(x): 

17 return x 

18 

19 

20def hstack( 

21 tensors: Union[Tuple[torch.Tensor, ...], List[torch.Tensor]] 

22) -> torch.Tensor: 

23 logger.debug("GEMS_ASCEND HSTACK") 

24 

25 if len(tensors) == 0: 

26 raise RuntimeError("hstack expected a non-empty TensorList") 

27 

28 if tensors[0].ndim == 0: 

29 tensors[0] = tensors[0].view(1) 

30 inp0_shape = tensors[0].shape 

31 out_shape = list(inp0_shape) 

32 inp_shapes = [inp0_shape] 

33 

34 if len(inp0_shape) == 1: 

35 dim = 0 

36 else: 

37 dim = 1 

38 

39 for tensor_num, tensor in enumerate(tensors[1:]): 

40 if tensor.ndim == 0: 

41 tensor = tensor.view(1) 

42 if tensor.ndim != tensors[0].ndim: 

43 raise RuntimeError( 

44 f"Tensors must have same number of dimensions: got {tensors[0].ndim} and {tensor.ndim}" 

45 ) 

46 

47 inp_shape = tensor.shape 

48 inp_shapes.append(inp_shape) 

49 

50 for i in range(len(inp_shape)): 

51 if i != dim and inp_shape[i] != inp0_shape[i]: 

52 raise RuntimeError( 

53 f"Sizes of tensors must match except in dimension {dim}. \ 

54 Expected size {inp0_shape[i]} but got size {inp_shape[i]} \ 

55 for tensor number {tensor_num + 1} in the list." 

56 ) 

57 

58 out_shape[dim] = sum(s[dim] for s in inp_shapes) 

59 

60 out0 = torch.empty(out_shape, dtype=tensors[0].dtype, device=tensors[0].device) 

61 out0_strides = out0.stride() 

62 out0_offsets = list( 

63 itertools.accumulate( 

64 [s[dim] * out0_strides[dim] for s in inp_shapes[:-1]], initial=0 

65 ) 

66 ) 

67 

68 for a, out0_offset in zip(tensors, out0_offsets): 

69 in_view = StridedBuffer(a, a.shape, a.stride()) 

70 out_view = StridedBuffer(out0, a.shape, out0.stride(), offset=out0_offset) 

71 copy_func.instantiate(a.ndim)(in_view, out0=out_view) 

72 

73 return out0