Coverage for src/flag_gems/runtime/backend/_kunlunxin/ops/randn_like.py: 0%

24 statements  

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1import logging 

2 

3import torch 

4import triton 

5 

6from flag_gems.runtime import torch_device_fn 

7from flag_gems.utils.random_utils import philox_backend_seed_offset 

8 

9from .randn import randn_kernel 

10 

11logger = logging.getLogger("flag_gems").getChild(__name__.lstrip(".")) 

12UNROLL = 4 

13 

14 

15def randn_like( 

16 x, *, dtype=None, layout=None, device=None, pin_memory=None, memory_format=None 

17): 

18 logger.debug("GEMS RANDN_LIKE") 

19 if device is None: 

20 device = x.device.index 

21 if dtype is None: 

22 dtype = x.dtype 

23 out = torch.empty_like(x, device=device, dtype=dtype) 

24 N = x.numel() 

25 cluster_num = 12 

26 BLOCK_SIZE = min(triton.next_power_of_2(triton.cdiv(N, cluster_num * UNROLL)), 1024) 

27 grid_fn = triton.cdiv(N, BLOCK_SIZE * UNROLL) 

28 # (TODO) Using Triton autotuner makes kernel parameters opaque to the caller, 

29 # hence we cannot obtain the per thread offset as in Pytorch. 

30 increment = triton.cdiv(N, UNROLL) 

31 philox_seed, philox_offset = philox_backend_seed_offset(increment) 

32 with torch_device_fn.device(x.device): 

33 randn_kernel[(grid_fn,)](out, N, philox_seed, philox_offset, BLOCK_SIZE) 

34 return out