| from typing import *
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| import torch
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| from .. import SparseTensor
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| from .. import DEBUG, ATTN
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|
|
| if ATTN == 'xformers':
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| import xformers.ops as xops
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| elif ATTN == 'flash_attn':
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| import flash_attn
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| else:
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| raise ValueError(f"Unknown attention module: {ATTN}")
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|
|
|
|
| __all__ = [
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| 'sparse_scaled_dot_product_attention',
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| ]
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|
|
|
|
| @overload
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| def sparse_scaled_dot_product_attention(qkv: SparseTensor) -> SparseTensor:
|
| """
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| Apply scaled dot product attention to a sparse tensor.
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|
|
| Args:
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| qkv (SparseTensor): A [N, *, 3, H, C] sparse tensor containing Qs, Ks, and Vs.
|
| """
|
| ...
|
|
|
| @overload
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| def sparse_scaled_dot_product_attention(q: SparseTensor, kv: Union[SparseTensor, torch.Tensor]) -> SparseTensor:
|
| """
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| Apply scaled dot product attention to a sparse tensor.
|
|
|
| Args:
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| q (SparseTensor): A [N, *, H, C] sparse tensor containing Qs.
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| kv (SparseTensor or torch.Tensor): A [N, *, 2, H, C] sparse tensor or a [N, L, 2, H, C] dense tensor containing Ks and Vs.
|
| """
|
| ...
|
|
|
| @overload
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| def sparse_scaled_dot_product_attention(q: torch.Tensor, kv: SparseTensor) -> torch.Tensor:
|
| """
|
| Apply scaled dot product attention to a sparse tensor.
|
|
|
| Args:
|
| q (SparseTensor): A [N, L, H, C] dense tensor containing Qs.
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| kv (SparseTensor or torch.Tensor): A [N, *, 2, H, C] sparse tensor containing Ks and Vs.
|
| """
|
| ...
|
|
|
| @overload
|
| def sparse_scaled_dot_product_attention(q: SparseTensor, k: SparseTensor, v: SparseTensor) -> SparseTensor:
|
| """
|
| Apply scaled dot product attention to a sparse tensor.
|
|
|
| Args:
|
| q (SparseTensor): A [N, *, H, Ci] sparse tensor containing Qs.
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| k (SparseTensor): A [N, *, H, Ci] sparse tensor containing Ks.
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| v (SparseTensor): A [N, *, H, Co] sparse tensor containing Vs.
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|
|
| Note:
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| k and v are assumed to have the same coordinate map.
|
| """
|
| ...
|
|
|
| @overload
|
| def sparse_scaled_dot_product_attention(q: SparseTensor, k: torch.Tensor, v: torch.Tensor) -> SparseTensor:
|
| """
|
| Apply scaled dot product attention to a sparse tensor.
|
|
|
| Args:
|
| q (SparseTensor): A [N, *, H, Ci] sparse tensor containing Qs.
|
| k (torch.Tensor): A [N, L, H, Ci] dense tensor containing Ks.
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| v (torch.Tensor): A [N, L, H, Co] dense tensor containing Vs.
|
| """
|
| ...
|
|
|
| @overload
|
| def sparse_scaled_dot_product_attention(q: torch.Tensor, k: SparseTensor, v: SparseTensor) -> torch.Tensor:
|
| """
|
| Apply scaled dot product attention to a sparse tensor.
|
|
|
| Args:
|
| q (torch.Tensor): A [N, L, H, Ci] dense tensor containing Qs.
|
| k (SparseTensor): A [N, *, H, Ci] sparse tensor containing Ks.
|
| v (SparseTensor): A [N, *, H, Co] sparse tensor containing Vs.
|
| """
|
| ...
|
|
|
| def sparse_scaled_dot_product_attention(*args, **kwargs):
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| arg_names_dict = {
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| 1: ['qkv'],
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| 2: ['q', 'kv'],
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| 3: ['q', 'k', 'v']
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| }
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| num_all_args = len(args) + len(kwargs)
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| assert num_all_args in arg_names_dict, f"Invalid number of arguments, got {num_all_args}, expected 1, 2, or 3"
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| for key in arg_names_dict[num_all_args][len(args):]:
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| assert key in kwargs, f"Missing argument {key}"
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|
|
| if num_all_args == 1:
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| qkv = args[0] if len(args) > 0 else kwargs['qkv']
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| assert isinstance(qkv, SparseTensor), f"qkv must be a SparseTensor, got {type(qkv)}"
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| assert len(qkv.shape) == 4 and qkv.shape[1] == 3, f"Invalid shape for qkv, got {qkv.shape}, expected [N, *, 3, H, C]"
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| device = qkv.device
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|
|
| s = qkv
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| q_seqlen = [qkv.layout[i].stop - qkv.layout[i].start for i in range(qkv.shape[0])]
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| kv_seqlen = q_seqlen
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| qkv = qkv.feats
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|
|
| elif num_all_args == 2:
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| q = args[0] if len(args) > 0 else kwargs['q']
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| kv = args[1] if len(args) > 1 else kwargs['kv']
|
| assert isinstance(q, SparseTensor) and isinstance(kv, (SparseTensor, torch.Tensor)) or \
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| isinstance(q, torch.Tensor) and isinstance(kv, SparseTensor), \
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| f"Invalid types, got {type(q)} and {type(kv)}"
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| assert q.shape[0] == kv.shape[0], f"Batch size mismatch, got {q.shape[0]} and {kv.shape[0]}"
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| device = q.device
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|
|
| if isinstance(q, SparseTensor):
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| assert len(q.shape) == 3, f"Invalid shape for q, got {q.shape}, expected [N, *, H, C]"
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| s = q
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| q_seqlen = [q.layout[i].stop - q.layout[i].start for i in range(q.shape[0])]
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| q = q.feats
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| else:
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| assert len(q.shape) == 4, f"Invalid shape for q, got {q.shape}, expected [N, L, H, C]"
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| s = None
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| N, L, H, C = q.shape
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| q_seqlen = [L] * N
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| q = q.reshape(N * L, H, C)
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|
|
| if isinstance(kv, SparseTensor):
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| assert len(kv.shape) == 4 and kv.shape[1] == 2, f"Invalid shape for kv, got {kv.shape}, expected [N, *, 2, H, C]"
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| kv_seqlen = [kv.layout[i].stop - kv.layout[i].start for i in range(kv.shape[0])]
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| kv = kv.feats
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| else:
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| assert len(kv.shape) == 5, f"Invalid shape for kv, got {kv.shape}, expected [N, L, 2, H, C]"
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| N, L, _, H, C = kv.shape
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| kv_seqlen = [L] * N
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| kv = kv.reshape(N * L, 2, H, C)
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|
|
| elif num_all_args == 3:
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| q = args[0] if len(args) > 0 else kwargs['q']
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| k = args[1] if len(args) > 1 else kwargs['k']
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| v = args[2] if len(args) > 2 else kwargs['v']
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| assert isinstance(q, SparseTensor) and isinstance(k, (SparseTensor, torch.Tensor)) and type(k) == type(v) or \
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| isinstance(q, torch.Tensor) and isinstance(k, SparseTensor) and isinstance(v, SparseTensor), \
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| f"Invalid types, got {type(q)}, {type(k)}, and {type(v)}"
|
| assert q.shape[0] == k.shape[0] == v.shape[0], f"Batch size mismatch, got {q.shape[0]}, {k.shape[0]}, and {v.shape[0]}"
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| device = q.device
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|
|
| if isinstance(q, SparseTensor):
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| assert len(q.shape) == 3, f"Invalid shape for q, got {q.shape}, expected [N, *, H, Ci]"
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| s = q
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| q_seqlen = [q.layout[i].stop - q.layout[i].start for i in range(q.shape[0])]
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| q = q.feats
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| else:
|
| assert len(q.shape) == 4, f"Invalid shape for q, got {q.shape}, expected [N, L, H, Ci]"
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| s = None
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| N, L, H, CI = q.shape
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| q_seqlen = [L] * N
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| q = q.reshape(N * L, H, CI)
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|
|
| if isinstance(k, SparseTensor):
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| assert len(k.shape) == 3, f"Invalid shape for k, got {k.shape}, expected [N, *, H, Ci]"
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| assert len(v.shape) == 3, f"Invalid shape for v, got {v.shape}, expected [N, *, H, Co]"
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| kv_seqlen = [k.layout[i].stop - k.layout[i].start for i in range(k.shape[0])]
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| k = k.feats
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| v = v.feats
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| else:
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| assert len(k.shape) == 4, f"Invalid shape for k, got {k.shape}, expected [N, L, H, Ci]"
|
| assert len(v.shape) == 4, f"Invalid shape for v, got {v.shape}, expected [N, L, H, Co]"
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| N, L, H, CI, CO = *k.shape, v.shape[-1]
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| kv_seqlen = [L] * N
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| k = k.reshape(N * L, H, CI)
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| v = v.reshape(N * L, H, CO)
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|
|
| if DEBUG:
|
| if s is not None:
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| for i in range(s.shape[0]):
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| assert (s.coords[s.layout[i]] == i).all(), f"SparseScaledDotProductSelfAttention: batch index mismatch"
|
| if num_all_args in [2, 3]:
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| assert q.shape[:2] == [1, sum(q_seqlen)], f"SparseScaledDotProductSelfAttention: q shape mismatch"
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| if num_all_args == 3:
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| assert k.shape[:2] == [1, sum(kv_seqlen)], f"SparseScaledDotProductSelfAttention: k shape mismatch"
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| assert v.shape[:2] == [1, sum(kv_seqlen)], f"SparseScaledDotProductSelfAttention: v shape mismatch"
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|
|
| if ATTN == 'xformers':
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| if num_all_args == 1:
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| q, k, v = qkv.unbind(dim=1)
|
| elif num_all_args == 2:
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| k, v = kv.unbind(dim=1)
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| q = q.unsqueeze(0)
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| k = k.unsqueeze(0)
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| v = v.unsqueeze(0)
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| mask = xops.fmha.BlockDiagonalMask.from_seqlens(q_seqlen, kv_seqlen)
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| out = xops.memory_efficient_attention(q, k, v, mask)[0]
|
| elif ATTN == 'flash_attn':
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| cu_seqlens_q = torch.cat([torch.tensor([0]), torch.cumsum(torch.tensor(q_seqlen), dim=0)]).int().to(device)
|
| if num_all_args in [2, 3]:
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| cu_seqlens_kv = torch.cat([torch.tensor([0]), torch.cumsum(torch.tensor(kv_seqlen), dim=0)]).int().to(device)
|
| if num_all_args == 1:
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| out = flash_attn.flash_attn_varlen_qkvpacked_func(qkv, cu_seqlens_q, max(q_seqlen))
|
| elif num_all_args == 2:
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| out = flash_attn.flash_attn_varlen_kvpacked_func(q, kv, cu_seqlens_q, cu_seqlens_kv, max(q_seqlen), max(kv_seqlen))
|
| elif num_all_args == 3:
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| out = flash_attn.flash_attn_varlen_func(q, k, v, cu_seqlens_q, cu_seqlens_kv, max(q_seqlen), max(kv_seqlen))
|
| else:
|
| raise ValueError(f"Unknown attention module: {ATTN}")
|
|
|
| if s is not None:
|
| return s.replace(out)
|
| else:
|
| return out.reshape(N, L, H, -1)
|
|
|