|
|
| import torch |
| import triton |
| import triton.language as tl |
|
|
| from fla.ops.utils.index import prepare_chunk_indices |
| from fla.utils import autotune_cache_kwargs |
|
|
|
|
| @triton.heuristics({ |
| 'HAS_SCALE': lambda args: args['scale'] is not None, |
| 'IS_VARLEN': lambda args: args['cu_seqlens'] is not None, |
| }) |
| @triton.autotune( |
| configs=[ |
| triton.Config({}, num_warps=num_warps) |
| for num_warps in [1, 2, 4, 8] |
| ], |
| key=['B', 'H', 'BT', 'IS_VARLEN'], |
| **autotune_cache_kwargs, |
| ) |
| @triton.jit(do_not_specialize=['T']) |
| def chunk_comba_cumsum_scalar_fwd_kernel( |
| g, |
| g0, |
| g1, |
| scale, |
| cu_seqlens, |
| chunk_indices, |
| T, |
| B: tl.constexpr, |
| H: tl.constexpr, |
| BT: tl.constexpr, |
| HAS_SCALE: tl.constexpr, |
| IS_VARLEN: tl.constexpr, |
| ): |
| i_t, i_bh = tl.program_id(0), tl.program_id(1) |
| i_b, i_h = i_bh // H, i_bh % H |
| if IS_VARLEN: |
| i_n, i_t = tl.load(chunk_indices + i_t * 2).to(tl.int32), tl.load(chunk_indices + i_t * 2 + 1).to(tl.int32) |
| bos, eos = tl.load(cu_seqlens + i_n).to(tl.int32), tl.load(cu_seqlens + i_n + 1).to(tl.int32) |
| T = eos - bos |
| else: |
| bos, eos = i_b * T, i_b * T + T |
|
|
| p_g = tl.make_block_ptr(g + bos*H + i_h, (T,), (H,), (i_t * BT,), (BT,), (0,)) |
| p_g0 = tl.make_block_ptr(g0 + bos*H + i_h, (T,), (H,), (i_t * BT,), (BT,), (0,)) |
| p_g1 = tl.make_block_ptr(g1 + bos*H + i_h, (T,), (H,), (i_t * BT,), (BT,), (0,)) |
| |
| b_g = tl.load(p_g, boundary_check=(0,)).to(tl.float32) |
| if HAS_SCALE: |
| b_g = b_g * scale |
| b_g1 = tl.cumsum(b_g, axis=0) |
| b_g0 = b_g1 - b_g |
| tl.store(p_g0, b_g0.to(p_g0.dtype.element_ty), boundary_check=(0,)) |
| tl.store(p_g1, b_g1.to(p_g1.dtype.element_ty), boundary_check=(0,)) |
|
|
|
|
| def chunk_comba_cumsum_scalar_fwd( |
| g: torch.Tensor, |
| chunk_size: int, |
| cu_seqlens: torch.Tensor | None = None, |
| output_dtype: torch.dtype | None = torch.float, |
| chunk_indices: torch.LongTensor | None = None, |
| scale: float | None = None, |
| ) -> torch.Tensor: |
| B, T, H = g.shape |
| assert chunk_size == 2**(chunk_size.bit_length()-1), "chunk_size must be a power of 2" |
| BT = chunk_size |
| if chunk_indices is None and cu_seqlens is not None: |
| chunk_indices = prepare_chunk_indices(cu_seqlens, BT) |
| NT = triton.cdiv(T, BT) if cu_seqlens is None else len(chunk_indices) |
| g0, g1 = torch.empty_like(g, dtype=output_dtype or g.dtype), torch.empty_like(g, dtype=output_dtype or g.dtype) |
| grid = (NT, B * H) |
| chunk_comba_cumsum_scalar_fwd_kernel[grid]( |
| g, |
| g0, |
| g1, |
| scale, |
| cu_seqlens, |
| chunk_indices, |
| T=T, |
| B=B, |
| H=H, |
| BT=BT, |
| ) |
| return g0, g1 |
|
|
|
|
| @triton.heuristics({ |
| 'IS_VARLEN': lambda args: args['cu_seqlens'] is not None, |
| }) |
| @triton.autotune( |
| configs=[ |
| triton.Config({}, num_warps=num_warps) |
| for num_warps in [1, 2, 4, 8] |
| ], |
| key=['B', 'H', 'BT', 'IS_VARLEN'], |
| **autotune_cache_kwargs, |
| ) |
| @triton.jit(do_not_specialize=['T']) |
| def chunk_comba_cumsum_scalar_bwd_kernel( |
| dg0, |
| dgr, |
| cu_seqlens, |
| chunk_indices, |
| T, |
| B: tl.constexpr, |
| H: tl.constexpr, |
| BT: tl.constexpr, |
| IS_VARLEN: tl.constexpr, |
| ): |
| i_t, i_bh = tl.program_id(0), tl.program_id(1) |
| i_b, i_h = i_bh // H, i_bh % H |
| if IS_VARLEN: |
| i_n, i_t = tl.load(chunk_indices + i_t * 2).to(tl.int32), tl.load(chunk_indices + i_t * 2 + 1).to(tl.int32) |
| bos, eos = tl.load(cu_seqlens + i_n).to(tl.int32), tl.load(cu_seqlens + i_n + 1).to(tl.int32) |
| T = eos - bos |
| else: |
| bos, eos = i_b * T, i_b * T + T |
|
|
| p_dg0 = tl.make_block_ptr(dg0 + bos*H + i_h, (T,), (H,), (i_t * BT,), (BT,), (0,)) |
| p_dgr = tl.make_block_ptr(dgr + bos*H + i_h, (T,), (H,), (i_t * BT,), (BT,), (0,)) |
| |
| """ |
| b_dg: 1,2,3,4 |
| b_dg0: 0,1,2,3 |
| b_temp: 0,1,3,6 |
| b_dz: 6 |
| b_dgr: 6,5,3,0 |
| """ |
| b_dg0 = tl.load(p_dg0, boundary_check=(0,)).to(tl.float32) |
| b_temp = tl.cumsum(b_dg0, axis=0) |
| b_dz = tl.sum(b_dg0, axis=0) |
| b_dgr = -b_temp + b_dz[None] |
| tl.store(p_dgr, b_dgr.to(p_dgr.dtype.element_ty), boundary_check=(0,)) |
|
|
|
|
| def chunk_comba_cumsum_scalar_bwd( |
| dg0: torch.Tensor, |
| chunk_size: int, |
| cu_seqlens: torch.Tensor | None = None, |
| output_dtype: torch.dtype | None = torch.float, |
| chunk_indices: torch.LongTensor | None = None, |
| ) -> torch.Tensor: |
| B, T, H = dg0.shape |
| assert chunk_size == 2**(chunk_size.bit_length()-1), "chunk_size must be a power of 2" |
| BT = chunk_size |
| if chunk_indices is None and cu_seqlens is not None: |
| chunk_indices = prepare_chunk_indices(cu_seqlens, BT) |
| NT = triton.cdiv(T, BT) if cu_seqlens is None else len(chunk_indices) |
| dg = torch.empty_like(dg0, dtype=output_dtype or dg0.dtype) |
| grid = (NT, B * H) |
| chunk_comba_cumsum_scalar_bwd_kernel[grid]( |
| dg0, |
| dg, |
| cu_seqlens, |
| chunk_indices, |
| T=T, |
| B=B, |
| H=H, |
| BT=BT, |
| ) |
| return dg |
|
|