# Copyright (c) Facebook, Inc. and its affiliates. # # This source code is licensed under the MIT license found in the # LICENSE file in the root directory of this source tree. import torch.nn as nn import torch import sys from fairseq import utils from fairseq.distributed import utils as distributed_utils from fairseq.modules.layer_norm import LayerNorm class BaseLayer(nn.Module): def __init__(self, args): super().__init__() self.num_workers = distributed_utils.get_data_parallel_world_size() expert_centroids = torch.empty(self.num_workers, args.decoder_embed_dim) torch.nn.init.orthogonal_(expert_centroids, gain=0.1) self.register_parameter("expert_centroids", torch.nn.Parameter(expert_centroids)) self.expert_network = nn.Sequential(*([BaseSublayer(args) for _ in range(args.base_sublayers)])) self.expert_id = distributed_utils.get_data_parallel_rank() self.shuffle = args.base_shuffle self.cpp = self.load_assignment() # Add a special attribute to the expert parameters, so we know not to sync their gradients for param in self.expert_network.parameters(): param.expert = True def forward(self, input_features, *args, **kwargs): features = input_features.reshape(-1, input_features.size(-1)) is_training = input_features.requires_grad if self.shuffle and is_training: # Send each token to a random worker, to break correlations within the batch shuffle_sort = torch.randperm(features.size(0), device=features.device) features = All2All.apply(features[shuffle_sort]) with torch.no_grad(): # Compute similarity of each token to each expert, for routing token_expert_affinities = features.matmul(self.expert_centroids.transpose(0, 1)) # Compute which token goes to which expert sort_by_expert, input_splits, output_splits = self.balanced_assignment(token_expert_affinities) \ if is_training else self.greedy_assignment(token_expert_affinities) # Swap these tokens for the right ones for our expert routed_features = All2All.apply(features[sort_by_expert], output_splits, input_splits) if routed_features.size(0) > 0: # Mix in the expert network based on how appropriate it is for these tokens alpha = torch.sigmoid(routed_features.mv(self.expert_centroids[self.expert_id])).unsqueeze(1) routed_features = alpha * self.expert_network(routed_features) + (1 - alpha) * routed_features # Return to original worker and ordering result = All2All.apply(routed_features, input_splits, output_splits)[self.inverse_sort(sort_by_expert)] if self.shuffle and is_training: # Undo shuffling result = All2All.apply(result)[self.inverse_sort(shuffle_sort)] # Return additional Nones for compatibility with TransformerDecoderLayer return result.view(input_features.size()), None, None def inverse_sort(self, order): # Creates an index that undoes a sort: xs==xs[order][inverse_sort(order)] return torch.empty_like(order).scatter_(0, order, torch.arange(0, order.size(0), device=order.device)) def balanced_assignment(self, scores): ok = scores.isfinite() if not ok.all(): # NaNs here can break the assignment algorithm scores[~ok] = scores[ok].min() return self.cpp.balanced_assignment(scores), None, None # Assigns each token to the top k experts def greedy_assignment(self, scores, k=1): token_to_workers = torch.topk(scores, dim=1, k=k, largest=True).indices.view(-1) token_to_workers, sort_ordering = torch.sort(token_to_workers) worker2token = sort_ordering // k # Find how many tokens we're sending to each other worker (being careful for sending 0 tokens to some workers) output_splits = torch.zeros((self.num_workers,), dtype=torch.long, device=scores.device) workers, counts = torch.unique_consecutive(token_to_workers, return_counts=True) output_splits[workers] = counts # Tell other workers how many tokens to expect from us input_splits = All2All.apply(output_splits) return worker2token, input_splits.tolist(), output_splits.tolist() def load_assignment(self): try: from fairseq import libbase return libbase except ImportError as e: sys.stderr.write( "ERROR: missing libbase. run `python setup.py build_ext --inplace`\n" ) raise e class BaseSublayer(nn.Module): def __init__(self, args): super().__init__() self.activation_fn = utils.get_activation_fn( activation=getattr(args, 'activation_fn', 'relu') or "relu" ) self.norm = LayerNorm(args.decoder_embed_dim, export=False) self.ff1 = torch.nn.Linear(args.decoder_embed_dim, args.decoder_ffn_embed_dim) self.ff2 = torch.nn.Linear(args.decoder_ffn_embed_dim, args.decoder_embed_dim) self.ff2.weight.data.zero_() def forward(self, xs): return xs + self.ff2(self.activation_fn(self.ff1(self.norm(xs)))) # Wraps torch.distributed.all_to_all_single as a function that supports autograd class All2All(torch.autograd.Function): @staticmethod def forward(ctx, xs, input_splits=None, output_splits=None): ctx.input_splits = input_splits ctx.output_splits = output_splits ys = torch.empty_like(xs) if output_splits is None else \ xs.new_empty(size=[sum(output_splits)] + list(xs.size()[1:])) torch.distributed.all_to_all_single(ys, xs, output_split_sizes=output_splits, input_split_sizes=input_splits) return ys @staticmethod def backward(ctx, grad_output): result = torch.empty_like(grad_output) if ctx.input_splits is None else \ grad_output.new_empty(size=[sum(ctx.input_splits)] + list(grad_output.size()[1:])) torch.distributed.all_to_all_single(result, grad_output, output_split_sizes=ctx.input_splits, input_split_sizes=ctx.output_splits) return result, None, None