from typing import Any, Optional, Tuple import torch import torch.nn.functional as F import torch.distributed as dist from torch import Tensor from torch.distributed import ProcessGroup def _pad_tensor(x: Tensor, dim: int, padding_size: int, padding_value: int = 0) -> Tensor: shape = list(x.shape) shape[dim] = padding_size pad = torch.full(shape, padding_value, dtype=x.dtype, device=x.device) return torch.cat([x, pad], dim=dim) def _unpad_tensor(x: Tensor, dim: int, padding_size: int) -> Tensor: slc = [slice(None)] * len(x.shape) slc[dim] = slice(0, -padding_size) return x[tuple(slc)] def _all_to_all_single( x: Tensor, scatter_dim: int, gather_dim: int, group: Optional[dist.ProcessGroup] = None, async_op: bool = False, ): group = group or dist.group.WORLD sp_world_size = dist.get_world_size(group) assert scatter_dim <= 1, "scatter_dim must be 0 or 1 when using all_to_all_single!" assert gather_dim <= 1, "gather_dim must be 0 or 1 when using all_to_all_single!" if scatter_dim != 0: gather_dim_bef = x.shape[gather_dim] scatter_dim_bef = x.shape[scatter_dim] x = ( x.reshape( [gather_dim_bef, sp_world_size, scatter_dim_bef // sp_world_size] + list(x.shape[2:]) ) .transpose(0, 1) .reshape( [gather_dim_bef * sp_world_size, scatter_dim_bef // sp_world_size] + list(x.shape[2:]) ) .contiguous() ) output = torch.empty_like(x) comm = dist.all_to_all_single(output, x.contiguous(), group=group, async_op=async_op) if async_op: def wait(): comm.wait() if scatter_dim == 0: return torch.cat(output.split(x.size(0) // sp_world_size), dim=gather_dim) else: return output return wait if scatter_dim == 0: output = torch.cat(output.split(x.size(0) // sp_world_size), dim=gather_dim) return output def _all_to_all( local_input: Tensor, scatter_dim: int, gather_dim: int, group: Optional[dist.ProcessGroup] = None, async_op: bool = False, ): group = group or dist.group.WORLD seq_world_size = dist.get_world_size(group) input_list = [ t.contiguous() for t in torch.tensor_split(local_input, seq_world_size, scatter_dim) ] output_list = [torch.empty_like(input_list[0]) for _ in range(seq_world_size)] comm = dist.all_to_all(output_list, input_list, group=group, async_op=async_op) if async_op: def wait(): comm.wait() return torch.cat(output_list, dim=gather_dim).contiguous() return wait return torch.cat(output_list, dim=gather_dim).contiguous() def _all_to_all_tensor( x: Tensor, scatter_dim: int, gather_dim: int, group: dist.ProcessGroup, async_op: bool = False, ): if scatter_dim <= 1 and gather_dim <= 1: return _all_to_all_single(x, scatter_dim, gather_dim, group, async_op) return _all_to_all(x, scatter_dim, gather_dim, group, async_op) class _SeqAllToAll(torch.autograd.Function): @staticmethod def forward( ctx: Any, group: dist.ProcessGroup, local_input: Tensor, scatter_dim: int, gather_dim: int, async_op: bool, ) -> Tensor: ctx.group = group ctx.scatter_dim = scatter_dim ctx.gather_dim = gather_dim ctx.async_op = async_op return _all_to_all_tensor(local_input, scatter_dim, gather_dim, group, async_op) @staticmethod def backward(ctx: Any, *grad_output: Tensor) -> Tuple[None, Tensor, None, None, None]: if ctx.async_op: input_t = torch.cat(grad_output[1:], dim=ctx.gather_dim).contiguous() else: input_t = grad_output[0] return ( None, _all_to_all_tensor( input_t, ctx.gather_dim, ctx.scatter_dim, ctx.group, False ), None, None, None, ) def gather_heads_scatter_seq( x: Tensor, head_dim: int, seq_dim: int, group: Optional[ProcessGroup] = None ) -> Tensor: group = group or dist.group.WORLD if not group: return x dim_size = x.size(seq_dim) sp_world = dist.get_world_size(group) if dim_size % sp_world != 0: padding_size = sp_world - (dim_size % sp_world) x = _pad_tensor(x, seq_dim, padding_size) return _SeqAllToAll.apply(group, x, seq_dim, head_dim, False) def gather_seq_scatter_heads( x: Tensor, seq_dim: int, head_dim: int, unpadded_dim_size: int = 0, async_op: bool = False, group: Optional[ProcessGroup] = None, ) -> Tensor: group = group or dist.group.WORLD if not group: return x sp_world = dist.get_world_size(group) if async_op: return _SeqAllToAll.apply(group, x, head_dim, seq_dim, async_op) x = _SeqAllToAll.apply(group, x, head_dim, seq_dim, async_op) if unpadded_dim_size and unpadded_dim_size % sp_world != 0: padding_size = x.size(seq_dim) - unpadded_dim_size x = _unpad_tensor(x, seq_dim, padding_size) return x def _local_attention( q: torch.Tensor, k: torch.Tensor, v: torch.Tensor, scale: float, causal: bool = False, ) -> torch.Tensor: scores = torch.matmul(q, k.transpose(-2, -1)) * scale if causal and q.size(1) > 1: S = scores.size(-1) causal_mask = torch.triu( torch.ones(S, S, device=scores.device, dtype=torch.bool), diagonal=1, ) scores = scores.masked_fill(causal_mask.unsqueeze(0).unsqueeze(0), float("-inf")) attn = F.softmax(scores, dim=-1) return torch.matmul(attn, v) def solution( hidden_states: torch.Tensor, w_qkv: torch.Tensor, w_o: torch.Tensor, group: Optional[dist.ProcessGroup] = None, num_heads: int = 8, causal: bool = False, ) -> torch.Tensor: group = group or dist.group.WORLD world_size = dist.get_world_size(group) if world_size == 1: B, S_local, H = hidden_states.shape head_dim = H // num_heads qkv = F.linear(hidden_states, w_qkv) qkv = qkv.view(B, S_local, 3, num_heads, head_dim) q, k, v = qkv.unbind(2) scale = head_dim**-0.5 attn_out = _local_attention(q, k, v, scale, causal=causal) out = attn_out.reshape(B, S_local, -1) return F.linear(out, w_o) B, S_local, H = hidden_states.shape head_dim = (w_qkv.shape[0] // 3) // num_heads assert (w_qkv.shape[0] // 3) == num_heads * head_dim assert num_heads % world_size == 0, "num_heads must be divisible by world_size" qkv = F.linear(hidden_states, w_qkv) qkv = qkv.view(B, S_local, 3, num_heads, head_dim) q, k, v = qkv[:, :, 0], qkv[:, :, 1], qkv[:, :, 2] q = gather_seq_scatter_heads(q, seq_dim=1, head_dim=2, group=group) kv = torch.stack([k, v], dim=3) kv = kv.reshape(B, S_local, 2 * num_heads, head_dim) kv = gather_seq_scatter_heads(kv, seq_dim=1, head_dim=2, group=group) kv = kv.reshape(B, kv.size(1), num_heads // world_size, 2, head_dim) k = kv[:, :, :, 0, :] v = kv[:, :, :, 1, :] scale = head_dim**-0.5 attn_out = _local_attention(q, k, v, scale, causal=causal) attn_out = gather_heads_scatter_seq(attn_out, seq_dim=1, head_dim=2, group=group) out = attn_out.reshape(B, attn_out.size(1), -1) return F.linear(out, w_o)