ParallelKernelBench_Problems / reference /49_moe_ep_balanced.py
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from typing import List, Optional, Tuple, Union
import torch
import torch.distributed as dist
class _AllToAll(torch.autograd.Function):
@staticmethod
def forward(ctx, group, input, output_split_sizes, input_split_sizes):
ctx.group = group
ctx.output_split_sizes = output_split_sizes
ctx.input_split_sizes = input_split_sizes
if dist.get_world_size(group=group) == 1:
return input.contiguous()
input = input.contiguous()
if output_split_sizes is None:
output = torch.empty_like(input)
else:
output = torch.empty(
size=(sum(output_split_sizes), input.size(1)),
dtype=input.dtype,
device=input.device,
)
dist.all_to_all_single(
output,
input,
output_split_sizes=output_split_sizes,
input_split_sizes=input_split_sizes,
group=group,
)
return output
@staticmethod
def backward(ctx, grad_output):
return (
None,
_AllToAll.apply(
ctx.group, grad_output, ctx.input_split_sizes, ctx.output_split_sizes
),
None,
None,
)
def _all_to_all(
group: dist.ProcessGroup,
input: torch.Tensor,
output_split_sizes: Optional[List[int]],
input_split_sizes: Optional[List[int]],
) -> torch.Tensor:
return _AllToAll.apply(group, input, output_split_sizes, input_split_sizes)
def _preprocess(
expert_mask: torch.Tensor,
num_experts: int,
ep_group: dist.ProcessGroup,
) -> Tuple[List[int], List[int], torch.Tensor, torch.Tensor]:
ep_size = ep_group.size()
num_local_experts = num_experts // ep_size
rank = dist.get_rank(ep_group)
num_local_tokens_per_expert = expert_mask.sum(dim=(1, 2))
input_splits = (
num_local_tokens_per_expert.reshape(ep_size, num_local_experts).sum(dim=1).tolist()
)
num_local_tokens_per_expert_flat = num_local_tokens_per_expert.contiguous().view(-1)
output_size = ep_size * num_local_tokens_per_expert_flat.numel()
num_global_tokens_per_expert_flat = torch.empty(
output_size,
dtype=num_local_tokens_per_expert.dtype,
device=num_local_tokens_per_expert.device,
)
dist.all_gather_into_tensor(
num_global_tokens_per_expert_flat, num_local_tokens_per_expert_flat, group=ep_group
)
num_global_tokens_per_expert = num_global_tokens_per_expert_flat.view(
ep_size, num_local_tokens_per_expert.size(0)
)
start_idx, end_idx = rank * num_local_experts, (rank + 1) * num_local_experts
num_global_tokens_per_local_expert = num_global_tokens_per_expert[
:, start_idx:end_idx
].contiguous()
output_splits = num_global_tokens_per_local_expert.sum(dim=1).tolist()
num_global_sum_tokens_per_local_expert = num_global_tokens_per_local_expert.sum(
dim=0
).to(torch.device("cpu"), non_blocking=True)
num_global_tokens_per_local_expert = num_global_tokens_per_local_expert.view(
-1, num_local_experts
).to(torch.device("cpu"), non_blocking=True)
return (
input_splits,
output_splits,
num_global_tokens_per_local_expert,
num_global_sum_tokens_per_local_expert,
)
def _permute(
tokens: torch.Tensor, routing_map: torch.Tensor
) -> Tuple[torch.Tensor, torch.Tensor]:
num_tokens, _ = tokens.shape
num_experts = routing_map.shape[0]
routing_map = routing_map.bool()
token_indices = (
torch.arange(num_tokens, device=routing_map.device)
.unsqueeze(0)
.expand(num_experts, -1)
)
sorted_indices = token_indices.masked_select(routing_map)
permuted_input = tokens.index_select(0, sorted_indices)
return permuted_input, sorted_indices
def _sort_chunks_by_idxs(
input: torch.Tensor,
split_sizes: Union[torch.Tensor, List[int]],
sorted_idxs: List[int],
) -> torch.Tensor:
if isinstance(split_sizes, torch.Tensor):
split_sizes = split_sizes.tolist()
chunks = torch.split(input, split_sizes, dim=0)
return torch.cat([chunks[i] for i in sorted_idxs], dim=0)
def _generate_weights_idx(
routing_weights: torch.Tensor,
selected_experts: torch.Tensor,
num_experts: int,
) -> torch.Tensor:
num_tokens, topk = routing_weights.shape
weights_idx = torch.zeros(
(num_tokens, num_experts),
dtype=routing_weights.dtype,
device=routing_weights.device,
)
weights_idx.scatter_add_(1, selected_experts, routing_weights)
return weights_idx
def _unpermute(
tokens: torch.Tensor,
routing_weights: torch.Tensor,
hidden_states_shape: torch.Size,
permutation_mapping: torch.Tensor,
routing_map: torch.Tensor,
) -> torch.Tensor:
tokens_weight = routing_weights.T.contiguous().masked_select(routing_map.bool())
tokens = tokens * tokens_weight.unsqueeze(-1)
hidden_dim = hidden_states_shape[-1]
unpermuted_tokens = torch.zeros(
hidden_states_shape, device=tokens.device, dtype=tokens.dtype
)
expanded_mapping = permutation_mapping.unsqueeze(1).expand(-1, hidden_dim)
unpermuted_tokens.scatter_add_(0, expanded_mapping, tokens)
return unpermuted_tokens
def token_pre_all2all(
hidden_states: torch.Tensor,
expert_mask: torch.Tensor,
num_experts: int,
input_splits: List[int],
output_splits: List[int],
num_global_tokens_per_local_expert: torch.Tensor,
group: Optional[dist.ProcessGroup] = None,
) -> Tuple[torch.Tensor, torch.Tensor, torch.Tensor, torch.Size]:
group = group or dist.group.WORLD
hidden_dim = hidden_states.size(-1)
hidden_states = hidden_states.reshape(-1, hidden_dim)
org_hidden_states_shape = hidden_states.shape
routing_map = expert_mask.sum(dim=1)
local_permuted_hidden_states, local_input_permutation_mapping = _permute(
hidden_states, routing_map
)
expected_tokens = sum(input_splits)
actual_tokens = local_permuted_hidden_states.shape[0]
if expected_tokens != actual_tokens:
raise RuntimeError(
f"EP split mismatch: input_splits sum ({expected_tokens}) != "
f"permuted tokens ({actual_tokens})"
)
global_permuted_hidden_states = _all_to_all(
group, local_permuted_hidden_states, output_splits, input_splits
)
num_local_experts = num_experts // dist.get_world_size(group)
permute_order = (
torch.arange(num_experts).reshape(-1, num_local_experts).T.ravel().tolist()
)
split_sizes = num_global_tokens_per_local_expert.ravel().tolist()
global_permuted_hidden_states = _sort_chunks_by_idxs(
global_permuted_hidden_states, split_sizes, permute_order
)
return (
global_permuted_hidden_states,
routing_map,
local_input_permutation_mapping,
org_hidden_states_shape,
)
def tokens_post_all2all(
expert_outputs: torch.Tensor,
routing_weights: torch.Tensor,
selected_experts: torch.Tensor,
num_experts: int,
input_splits: List[int],
output_splits: List[int],
num_global_tokens_per_local_expert: torch.Tensor,
routing_map: torch.Tensor,
local_input_permutation_mapping: torch.Tensor,
org_hidden_states_shape: torch.Size,
group: Optional[dist.ProcessGroup] = None,
) -> torch.Tensor:
group = group or dist.group.WORLD
num_local_experts = num_experts // dist.get_world_size(group)
unpermute_order = (
torch.arange(num_experts).reshape(num_local_experts, -1).T.ravel().tolist()
)
split_sizes = num_global_tokens_per_local_expert.T.ravel().tolist()
expert_outputs = _sort_chunks_by_idxs(
expert_outputs, split_sizes, unpermute_order
)
unpermute_outputs = _all_to_all(group, expert_outputs, input_splits, output_splits)
weights_idx = _generate_weights_idx(routing_weights, selected_experts, num_experts)
unpermute_outputs = _unpermute(
unpermute_outputs,
weights_idx,
org_hidden_states_shape,
local_input_permutation_mapping,
routing_map,
)
return unpermute_outputs
def expert_forward(
x: torch.Tensor,
gate_proj: torch.nn.Linear,
up_proj: torch.nn.Linear,
down_proj: torch.nn.Linear,
) -> torch.Tensor:
gate = torch.nn.functional.silu(gate_proj(x))
up = up_proj(x)
return down_proj(gate * up)
def solution(
hidden_states: torch.Tensor,
gate_weight: torch.Tensor,
gate_bias: Optional[torch.Tensor],
gate_proj: torch.nn.Linear,
up_proj: torch.nn.Linear,
down_proj: torch.nn.Linear,
num_experts: int,
top_k: int,
group: Optional[dist.ProcessGroup] = None,
) -> torch.Tensor:
group = group or dist.group.WORLD
hidden_dim = hidden_states.size(-1)
num_tokens = hidden_states.reshape(-1, hidden_dim).size(0)
router_logits = torch.nn.functional.linear(
hidden_states.reshape(-1, hidden_dim), gate_weight, gate_bias
)
routing_weights, selected_experts = torch.topk(
torch.softmax(router_logits, dim=-1), top_k, dim=-1
)
expert_mask = torch.nn.functional.one_hot(
selected_experts, num_classes=num_experts
).permute(2, 1, 0)
input_splits, output_splits, num_global_tokens_per_local_expert, _ = _preprocess(
expert_mask, num_experts, group
)
(
global_permuted_hidden_states,
routing_map,
local_input_permutation_mapping,
org_hidden_states_shape,
) = token_pre_all2all(
hidden_states,
expert_mask,
num_experts,
input_splits,
output_splits,
num_global_tokens_per_local_expert,
group,
)
expert_outputs = expert_forward(
global_permuted_hidden_states, gate_proj, up_proj, down_proj
)
out = tokens_post_all2all(
expert_outputs,
routing_weights,
selected_experts,
num_experts,
input_splits,
output_splits,
num_global_tokens_per_local_expert,
routing_map,
local_input_permutation_mapping,
org_hidden_states_shape,
group,
)
return out