Coverage for src/flag_gems/experimental_ops/arcsinh_.py: 0%

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1import torch 

2import triton 

3import triton.language as tl 

4 

5 

6@triton.jit 

7def arcsinh_(x_ptr, n_elements, BLOCK_SIZE: tl.constexpr): 

8 pid = tl.program_id(axis=0) 

9 block_start = pid * BLOCK_SIZE 

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

11 mask = offsets < n_elements 

12 

13 x = tl.load(x_ptr + offsets, mask=mask) 

14 x32 = x.to(tl.float32) 

15 x2 = x32 * x32 

16 tmp = tl.sqrt(x2 + 1.0) 

17 y32 = tl.log(x32 + tmp) 

18 y = y32.to(x.dtype) 

19 

20 tl.store(x_ptr + offsets, y, mask=mask) 

21 

22 

23# Preserve reference to the kernel before defining the wrapper with the same name 

24arcsinh__kernel = arcsinh_ 

25 

26 

27def arcsinh_(*args, **kwargs): 

28 if len(args) == 0: 

29 raise TypeError("arcsinh_ expected at least 1 argument (a Tensor)") 

30 x = args[0] 

31 if not isinstance(x, torch.Tensor): 

32 raise TypeError("arcsinh_ expected a torch.Tensor as the first argument") 

33 

34 # Fallback for unsupported cases 

35 if (not x.is_cuda) or (not x.is_contiguous()) or (not x.dtype.is_floating_point): 

36 torch.ops.aten.arcsinh_(x) 

37 return x 

38 

39 n_elements = x.numel() 

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

41 arcsinh__kernel[grid](x, n_elements, BLOCK_SIZE=1024) 

42 return x