Coverage for src/flag_gems/ops/softshrink.py: 62%

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1# Generated by KernelGen: https://github.com/flagos-ai/KernelGen 

2import torch 

3import triton 

4import triton.language as tl 

5 

6from flag_gems.runtime import torch_device_fn 

7 

8 

9@triton.jit 

10def softshrink_kernel(x_ptr, out_ptr, n_elements, lambd, BLOCK_SIZE: tl.constexpr): 

11 pid = tl.program_id(axis=0) 

12 block_start = pid * BLOCK_SIZE 

13 offsets = block_start + tl.arange(0, BLOCK_SIZE) 

14 mask = offsets < n_elements 

15 

16 x = tl.load(x_ptr + offsets, mask=mask, other=0) 

17 x32 = x.to(tl.float32) 

18 

19 threshold = lambd # scalar float32 

20 

21 gt = x32 > threshold 

22 lt = x32 < -threshold 

23 res32 = tl.where(gt, x32 - threshold, tl.where(lt, x32 + threshold, 0.0)) 

24 

25 # Propagate NaN: if x is NaN, keep it 

26 res32 = tl.where(x32 != x32, x32, res32) 

27 

28 res = res32.to(x.dtype) 

29 tl.store(out_ptr + offsets, res, mask=mask) 

30 

31 

32def _check_supported_dtype(t: torch.Tensor): 

33 if t.dtype not in (torch.float16, torch.bfloat16, torch.float32): 

34 raise TypeError( 

35 f"Unsupported dtype {t.dtype}. Supported dtypes are float16, bfloat16, and float32." 

36 ) 

37 

38 

39def _launch_softshrink_kernel(x: torch.Tensor, out: torch.Tensor, lambd: float): 

40 n_elements = x.numel() 

41 if n_elements == 0: 

42 return 

43 BLOCK_SIZE = 1024 

44 grid = lambda meta: (triton.cdiv(n_elements, meta["BLOCK_SIZE"]),) 

45 with torch_device_fn.device(x.device): 

46 softshrink_kernel[grid]( 

47 x, 

48 out, 

49 n_elements, 

50 float(lambd), 

51 BLOCK_SIZE=BLOCK_SIZE, 

52 num_warps=4, 

53 ) 

54 

55 

56def softshrink(input: torch.Tensor, lambd: float = 0.5): 

57 _check_supported_dtype(input) 

58 x = input.contiguous() 

59 out = torch.empty_like(x) 

60 _launch_softshrink_kernel(x, out, lambd) 

61 return out.reshape_as(input) 

62 

63 

64def softshrink_out(input: torch.Tensor, lambd: float = 0.5, out: torch.Tensor = None): 

65 if out is None: 

66 raise ValueError("Argument 'out' must be provided for softshrink_out.") 

67 if input.shape != out.shape: 

68 raise ValueError( 

69 f"Shape mismatch: input.shape={input.shape}, out.shape={out.shape}" 

70 ) 

71 if input.dtype != out.dtype: 

72 raise TypeError( 

73 f"Dtype mismatch: input.dtype={input.dtype}, out.dtype={out.dtype}" 

74 ) 

75 _check_supported_dtype(input) 

76 

77 x = input.contiguous() 

78 if out.is_contiguous(): 

79 out_buf = out 

80 else: 

81 out_buf = torch.empty_like(out, memory_format=torch.contiguous_format) 

82 

83 _launch_softshrink_kernel(x, out_buf, lambd) 

84 

85 if out_buf.data_ptr() != out.data_ptr(): 

86 out.copy_(out_buf) 

87 return out