StdMoE_1b14b_1T / modeling_emo.py
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# This file was automatically generated from src/transformers/models/emo/modular_emo.py.
# Do NOT edit this file manually as any edits will be overwritten by the generation of
# the file from the modular. If any change should be done, please apply the change to the
# modular_emo.py file directly. One of our CI enforces this.
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# coding=utf-8
# Copyright 2025 the HuggingFace Team. All rights reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
from dataclasses import dataclass
from typing import Callable, Optional, Union
import torch
import torch.nn as nn
import torch.nn.functional as F
from transformers.activations import ACT2FN
from transformers.cache_utils import Cache, DynamicCache
from transformers.generation import GenerationMixin
from transformers.integrations import use_kernel_forward_from_hub
from transformers.masking_utils import create_causal_mask
from transformers.modeling_layers import GradientCheckpointingLayer
from transformers.modeling_outputs import MoeModelOutputWithPast
from transformers.modeling_rope_utils import ROPE_INIT_FUNCTIONS, dynamic_rope_update
from transformers.modeling_utils import ALL_ATTENTION_FUNCTIONS, PreTrainedModel
from transformers.processing_utils import Unpack
from transformers.utils import ModelOutput, TransformersKwargs, auto_docstring
from transformers.utils.deprecation import deprecate_kwarg
from transformers.utils.generic import OutputRecorder, check_model_inputs
from .configuration_emo import EmoConfig
@use_kernel_forward_from_hub("RMSNorm")
class EmoRMSNorm(nn.Module):
def __init__(self, hidden_size, eps=1e-6):
"""
EmoRMSNorm is equivalent to T5LayerNorm
"""
super().__init__()
self.weight = nn.Parameter(torch.ones(hidden_size))
self.variance_epsilon = eps
def forward(self, hidden_states):
input_dtype = hidden_states.dtype
hidden_states = hidden_states.to(torch.float32)
variance = hidden_states.pow(2).mean(-1, keepdim=True)
hidden_states = hidden_states * torch.rsqrt(variance + self.variance_epsilon)
return (self.weight * hidden_states).to(input_dtype)
def extra_repr(self):
return f"{tuple(self.weight.shape)}, eps={self.variance_epsilon}"
class EmoMLP(nn.Module):
def __init__(self, config):
super().__init__()
self.config = config
self.hidden_size = config.hidden_size
self.intermediate_size = config.intermediate_size
self.gate_proj = nn.Linear(self.hidden_size, self.intermediate_size, bias=False)
self.up_proj = nn.Linear(self.hidden_size, self.intermediate_size, bias=False)
self.down_proj = nn.Linear(self.intermediate_size, self.hidden_size, bias=False)
self.act_fn = ACT2FN[config.hidden_act]
# Some densefirst models were accidentally trained with bias=True on dense MLPs
# (OLMo Core's FeedForwardConfig defaults bias to True when not explicitly set).
# We support loading those weights here.
dense_mlp_bias = getattr(config, "dense_mlp_bias", False)
if dense_mlp_bias:
del self.gate_proj
del self.up_proj
del self.down_proj
self.gate_proj = nn.Linear(self.hidden_size, self.intermediate_size, bias=True)
self.up_proj = nn.Linear(self.hidden_size, self.intermediate_size, bias=True)
self.down_proj = nn.Linear(self.intermediate_size, self.hidden_size, bias=True)
def forward(self, x):
down_proj = self.down_proj(self.act_fn(self.gate_proj(x)) * self.up_proj(x))
return down_proj
def repeat_kv(hidden_states: torch.Tensor, n_rep: int) -> torch.Tensor:
"""
This is the equivalent of torch.repeat_interleave(x, dim=1, repeats=n_rep). The hidden states go from (batch,
num_key_value_heads, seqlen, head_dim) to (batch, num_attention_heads, seqlen, head_dim)
"""
batch, num_key_value_heads, slen, head_dim = hidden_states.shape
if n_rep == 1:
return hidden_states
hidden_states = hidden_states[:, :, None, :, :].expand(
batch, num_key_value_heads, n_rep, slen, head_dim
)
return hidden_states.reshape(batch, num_key_value_heads * n_rep, slen, head_dim)
def eager_attention_forward(
module: nn.Module,
query: torch.Tensor,
key: torch.Tensor,
value: torch.Tensor,
attention_mask: Optional[torch.Tensor],
scaling: float,
dropout: float = 0.0,
**kwargs: Unpack[TransformersKwargs],
):
key_states = repeat_kv(key, module.num_key_value_groups)
value_states = repeat_kv(value, module.num_key_value_groups)
attn_weights = torch.matmul(query, key_states.transpose(2, 3)) * scaling
if attention_mask is not None:
causal_mask = attention_mask[:, :, :, : key_states.shape[-2]]
attn_weights = attn_weights + causal_mask
attn_weights = nn.functional.softmax(attn_weights, dim=-1, dtype=torch.float32).to(query.dtype)
attn_weights = nn.functional.dropout(attn_weights, p=dropout, training=module.training)
attn_output = torch.matmul(attn_weights, value_states)
attn_output = attn_output.transpose(1, 2).contiguous()
return attn_output, attn_weights
def apply_rotary_pos_emb(q, k, cos, sin, position_ids=None, unsqueeze_dim=1):
"""Applies Rotary Position Embedding to the query and key tensors.
Args:
q (`torch.Tensor`): The query tensor.
k (`torch.Tensor`): The key tensor.
cos (`torch.Tensor`): The cosine part of the rotary embedding.
sin (`torch.Tensor`): The sine part of the rotary embedding.
position_ids (`torch.Tensor`, *optional*):
Deprecated and unused.
unsqueeze_dim (`int`, *optional*, defaults to 1):
The 'unsqueeze_dim' argument specifies the dimension along which to unsqueeze cos[position_ids] and
sin[position_ids] so that they can be properly broadcasted to the dimensions of q and k. For example, note
that cos[position_ids] and sin[position_ids] have the shape [batch_size, seq_len, head_dim]. Then, if q and
k have the shape [batch_size, heads, seq_len, head_dim], then setting unsqueeze_dim=1 makes
cos[position_ids] and sin[position_ids] broadcastable to the shapes of q and k. Similarly, if q and k have
the shape [batch_size, seq_len, heads, head_dim], then set unsqueeze_dim=2.
Returns:
`tuple(torch.Tensor)` comprising of the query and key tensors rotated using the Rotary Position Embedding.
"""
q_type, k_type = q.dtype, k.dtype
cos = cos.unsqueeze(unsqueeze_dim)
sin = sin.unsqueeze(unsqueeze_dim)
q_embed = (q * cos) + (rotate_half(q) * sin)
k_embed = (k * cos) + (rotate_half(k) * sin)
return q_embed.to(q_type), k_embed.to(k_type)
def rotate_half(x):
"""Rotates half the hidden dims of the input."""
x1 = x[..., : x.shape[-1] // 2]
x2 = x[..., x.shape[-1] // 2 :]
return torch.cat((-x2, x1), dim=-1)
class EmoAttention(nn.Module):
"""Multi-headed attention from 'Attention Is All You Need' paper"""
def __init__(self, config: EmoConfig, layer_idx: Optional[int] = None):
super().__init__()
self.config = config
self.layer_idx = layer_idx
self.head_dim = getattr(
config, "head_dim", config.hidden_size // config.num_attention_heads
)
self.num_key_value_groups = config.num_attention_heads // config.num_key_value_heads
self.scaling = self.head_dim**-0.5
self.attention_dropout = config.attention_dropout
self.is_causal = True
self.q_proj = nn.Linear(
config.hidden_size,
config.num_attention_heads * self.head_dim,
bias=config.attention_bias,
)
self.k_proj = nn.Linear(
config.hidden_size,
config.num_key_value_heads * self.head_dim,
bias=config.attention_bias,
)
self.v_proj = nn.Linear(
config.hidden_size,
config.num_key_value_heads * self.head_dim,
bias=config.attention_bias,
)
self.o_proj = nn.Linear(
config.num_attention_heads * self.head_dim,
config.hidden_size,
bias=config.attention_bias,
)
@deprecate_kwarg("past_key_value", new_name="past_key_values", version="4.58")
def forward(
self,
hidden_states: torch.Tensor,
position_embeddings: tuple[torch.Tensor, torch.Tensor],
attention_mask: Optional[torch.Tensor],
past_key_values: Optional[Cache] = None,
cache_position: Optional[torch.LongTensor] = None,
**kwargs: Unpack[TransformersKwargs],
) -> tuple[torch.Tensor, Optional[torch.Tensor]]:
input_shape = hidden_states.shape[:-1]
hidden_shape = (*input_shape, -1, self.head_dim)
query_states = self.q_proj(hidden_states)
key_states = self.k_proj(hidden_states)
value_states = self.v_proj(hidden_states)
query_states = query_states.view(hidden_shape).transpose(1, 2)
key_states = key_states.view(hidden_shape).transpose(1, 2)
value_states = value_states.view(hidden_shape).transpose(1, 2)
cos, sin = position_embeddings
query_states, key_states = apply_rotary_pos_emb(query_states, key_states, cos, sin)
if past_key_values is not None:
# sin and cos are specific to RoPE models; cache_position needed for the static cache
cache_kwargs = {"sin": sin, "cos": cos, "cache_position": cache_position}
key_states, value_states = past_key_values.update(
key_states, value_states, self.layer_idx, cache_kwargs
)
attention_interface: Callable = eager_attention_forward
if self.config._attn_implementation != "eager":
attention_interface = ALL_ATTENTION_FUNCTIONS[self.config._attn_implementation]
attn_output, attn_weights = attention_interface(
self,
query_states,
key_states,
value_states,
attention_mask,
dropout=0.0 if not self.training else self.attention_dropout,
scaling=self.scaling,
**kwargs,
)
attn_output = attn_output.reshape(*input_shape, -1).contiguous()
attn_output = self.o_proj(attn_output)
return attn_output, attn_weights
class EmoSparseMoeBlock(nn.Module):
def __init__(
self,
config,
num_experts: int,
num_shared_experts: int,
always_active_experts: Optional[list[int]] = None,
):
super().__init__()
self.top_k = config.num_experts_per_tok
self.norm_topk_prob = config.norm_topk_prob
self.num_shared_experts = num_shared_experts
self.always_active_experts = always_active_experts
self.num_experts = num_experts
self.gate = nn.Linear(config.hidden_size, self.num_experts, bias=False)
# Expert MLPs should never use dense_mlp_bias (that's only for dense FFN layers)
import copy
expert_config = copy.copy(config)
expert_config.dense_mlp_bias = False
self.experts = nn.ModuleList([EmoMLP(expert_config) for _ in range(self.num_experts)])
def _get_top_k_with_always_active(
self, scores: torch.Tensor
) -> tuple[torch.Tensor, torch.Tensor]:
"""
Select top-k experts where always_active_experts are always included.
Softmax is computed over all experts, then always-active are masked out for topk selection.
"""
always_active = self.always_active_experts
num_always_active = len(always_active)
routed_top_k = self.top_k - num_always_active
# Mask out always-active experts so they aren't selected by topk.
masked_scores = scores.clone()
masked_scores[:, always_active] = float("-inf")
# Select top-(top_k - num_always_active) from the remaining experts.
if routed_top_k == 1:
_, routed_indices = masked_scores.max(dim=-1, keepdim=True)
else:
_, routed_indices = torch.topk(masked_scores, routed_top_k, dim=-1)
# Gather actual weights from original (unmasked) scores.
routed_weights = scores.gather(-1, routed_indices)
# Build always-active indices and weights.
always_active_tensor = torch.tensor(
always_active, device=scores.device, dtype=routed_indices.dtype
)
always_active_indices = always_active_tensor.unsqueeze(0).expand(
scores.shape[0], num_always_active
)
always_active_weights = scores.gather(-1, always_active_indices)
# Concatenate: always-active first, then routed.
selected_experts = torch.cat([always_active_indices, routed_indices], dim=-1)
routing_weights = torch.cat([always_active_weights, routed_weights], dim=-1)
return routing_weights, selected_experts
def forward(self, hidden_states: torch.Tensor) -> torch.Tensor:
batch_size, sequence_length, hidden_dim = hidden_states.shape
hidden_states = hidden_states.view(-1, hidden_dim)
# router_logits: (batch * sequence_length, n_experts)
router_logits = self.gate(hidden_states)
if self.always_active_experts is not None and len(self.always_active_experts) > 0:
# Use masking approach: softmax over all experts, mask always-active for topk
routing_weights = F.softmax(router_logits, dim=1, dtype=torch.float)
routing_weights, selected_experts = self._get_top_k_with_always_active(routing_weights)
elif self.num_shared_experts > 0:
# Legacy path: shared experts are the last N experts
# split the router logits into shared and unshared experts
router_logits_standard = router_logits[
:, : -self.num_shared_experts
] # (batch * sequence_length, n_experts - num_shared_experts)
router_logits_shared = router_logits[
:, -self.num_shared_experts :
] # (batch * sequence_length, num_shared_experts)
# compute the routing weights for the standard experts and shared experts separately
routing_weights_standard = F.softmax(router_logits_standard, dim=1, dtype=torch.float)
routing_weights_shared = F.softmax(router_logits_shared, dim=1, dtype=torch.float)
# select the routing weights and experts for the standard experts and shared experts separately
routing_weights_standard, selected_experts_standard = torch.topk(
routing_weights_standard, self.top_k - self.num_shared_experts, dim=-1
)
routing_weights_shared, selected_experts_shared = torch.topk(
routing_weights_shared, self.num_shared_experts, dim=-1
)
# concatenate the routing weights and selected experts for the standard experts and shared experts
routing_weights = torch.cat([routing_weights_standard, routing_weights_shared], dim=1)
selected_experts = torch.cat(
[
selected_experts_standard,
selected_experts_shared + (self.num_experts - self.num_shared_experts),
],
dim=1,
) # we need to add the offset to the selected experts for the shared experts since they are at the end of the router logits
# make sure there are self.top_k experts selected in total
assert (
routing_weights.shape
== selected_experts.shape
== (batch_size * sequence_length, self.top_k)
), f"routing_weights and selected_experts should have the same shape of (batch_size * sequence_length, self.top_k), but got {routing_weights.shape} and {selected_experts.shape}"
else:
routing_weights = F.softmax(router_logits, dim=1, dtype=torch.float)
routing_weights, selected_experts = torch.topk(routing_weights, self.top_k, dim=-1)
if self.norm_topk_prob:
if self.num_shared_experts > 0 or (
self.always_active_experts is not None and len(self.always_active_experts) > 0
):
raise NotImplementedError(
"norm_topk_prob is not implemented for the case where num_shared_experts > 0 or always_active_experts is set"
)
routing_weights /= routing_weights.sum(dim=-1, keepdim=True)
# we cast back to the input dtype
routing_weights = routing_weights.to(hidden_states.dtype)
final_hidden_states = torch.zeros(
(batch_size * sequence_length, hidden_dim),
dtype=hidden_states.dtype,
device=hidden_states.device,
)
# One hot encode the selected experts to create an expert mask
# this will be used to easily index which expert is going to be selected
expert_mask = torch.nn.functional.one_hot(
selected_experts, num_classes=self.num_experts
).permute(2, 1, 0)
# Loop over all available experts in the model and perform the computation on each expert
for expert_idx in range(self.num_experts):
expert_layer = self.experts[expert_idx]
idx, top_x = torch.where(expert_mask[expert_idx])
# Index the correct hidden states and compute the expert hidden state for
# the current expert. We need to make sure to multiply the output hidden
# states by `routing_weights` on the corresponding tokens (top-1 and top-2)
current_state = hidden_states[None, top_x].reshape(-1, hidden_dim)
current_hidden_states = expert_layer(current_state) * routing_weights[top_x, idx, None]
# However `index_add_` only support torch tensors for indexing so we'll use
# the `top_x` tensor here.
final_hidden_states.index_add_(0, top_x, current_hidden_states.to(hidden_states.dtype))
final_hidden_states = final_hidden_states.reshape(batch_size, sequence_length, hidden_dim)
return final_hidden_states, router_logits
class EmoDecoderLayer(GradientCheckpointingLayer):
def __init__(
self,
config: EmoConfig,
layer_idx: int,
num_experts: int,
num_shared_experts: int,
always_active_experts: Optional[list[int]] = None,
):
super().__init__()
self.hidden_size = config.hidden_size
self.self_attn = EmoAttention(config=config, layer_idx=layer_idx)
self.num_experts = num_experts
if num_experts == 0:
# Dense layer: use MLP with dense_intermediate_size
dense_intermediate_size = getattr(config, "dense_intermediate_size", None)
if dense_intermediate_size is None:
raise ValueError(
"num_experts=0 (dense layer) but config.dense_intermediate_size is not set. "
"Please set dense_intermediate_size in the config."
)
import copy
dense_config = copy.copy(config)
dense_config.intermediate_size = dense_intermediate_size
dense_config.dense_mlp_bias = getattr(config, "dense_mlp_bias", False)
self.mlp = EmoMLP(dense_config)
else:
self.mlp = EmoSparseMoeBlock(
config, num_experts, num_shared_experts, always_active_experts
)
self.pre_attention_layernorm = EmoRMSNorm(config.hidden_size, eps=config.rms_norm_eps)
self.pre_feedforward_layernorm = EmoRMSNorm(config.hidden_size, eps=config.rms_norm_eps)
@deprecate_kwarg("past_key_value", new_name="past_key_values", version="4.58")
def forward(
self,
hidden_states: torch.Tensor,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[Cache] = None,
cache_position: Optional[torch.LongTensor] = None,
position_embeddings: Optional[tuple[torch.Tensor, torch.Tensor]] = None,
**kwargs,
) -> torch.FloatTensor:
"""
Args:
hidden_states (`torch.FloatTensor`): input to the layer of shape `(batch, seq_len, embed_dim)`
attention_mask (`torch.FloatTensor`, *optional*):
attention mask of size `(batch_size, sequence_length)` if flash attention is used or `(batch_size, 1,
query_sequence_length, key_sequence_length)` if default attention is used.
output_attentions (`bool`, *optional*):
Whether or not to return the attentions tensors of all attention layers. See `attentions` under
returned tensors for more detail.
output_router_logits (`bool`, *optional*):
Whether or not to return the logits of all the routers. They are useful for computing the router loss,
and should not be returned during inference.
use_cache (`bool`, *optional*):
If set to `True`, `past_key_values` key value states are returned and can be used to speed up decoding
(see `past_key_values`).
past_key_values (`Cache`, *optional*): cached past key and value projection states
cache_position (`torch.LongTensor` of shape `(sequence_length)`, *optional*):
Indices depicting the position of the input sequence tokens in the sequence
position_embeddings (`tuple[torch.FloatTensor, torch.FloatTensor]`, *optional*):
Tuple containing the cosine and sine positional embeddings of shape `(batch_size, seq_len, head_dim)`,
with `head_dim` being the embedding dimension of each attention head.
kwargs (`dict`, *optional*):
Arbitrary kwargs to be ignored, used for FSDP and other methods that injects code
into the model
"""
residual = hidden_states
# apply norm before attention
hidden_states = self.pre_attention_layernorm(hidden_states)
# Self Attention
hidden_states, _ = self.self_attn(
hidden_states=hidden_states,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
cache_position=cache_position,
position_embeddings=position_embeddings,
**kwargs,
)
hidden_states = residual + hidden_states
# Fully Connected
residual = hidden_states
# apply norm before feedforward
hidden_states = self.pre_feedforward_layernorm(hidden_states)
mlp_output = self.mlp(hidden_states)
if isinstance(mlp_output, tuple):
hidden_states, _ = mlp_output
else:
hidden_states = mlp_output
hidden_states = residual + hidden_states
return hidden_states
@auto_docstring
class EmoPreTrainedModel(PreTrainedModel):
config: EmoConfig
base_model_prefix = "model"
supports_gradient_checkpointing = True
_no_split_modules = ["EmoDecoderLayer"]
_skip_keys_device_placement = ["past_key_values"]
_supports_flash_attn = True
_supports_sdpa = True
_supports_flex_attn = True
_can_compile_fullgraph = (
False # MoE models don't work with torch.compile (`torch.where(condition)` not supported)
)
_supports_attention_backend = True
_can_record_outputs = {
"router_logits": OutputRecorder(EmoSparseMoeBlock, index=1),
"hidden_states": EmoDecoderLayer,
"attentions": EmoAttention,
}
config_class = EmoConfig
class EmoRotaryEmbedding(nn.Module):
inv_freq: torch.Tensor # fix linting for `register_buffer`
def __init__(self, config: EmoConfig, device=None):
super().__init__()
# BC: "rope_type" was originally "type"
if hasattr(config, "rope_scaling") and isinstance(config.rope_scaling, dict):
self.rope_type = config.rope_scaling.get("rope_type", config.rope_scaling.get("type"))
else:
self.rope_type = "default"
self.max_seq_len_cached = config.max_position_embeddings
self.original_max_seq_len = config.max_position_embeddings
self.config = config
self.rope_init_fn = ROPE_INIT_FUNCTIONS[self.rope_type]
inv_freq, self.attention_scaling = self.rope_init_fn(self.config, device)
self.register_buffer("inv_freq", inv_freq, persistent=False)
self.original_inv_freq = self.inv_freq
@torch.no_grad()
@dynamic_rope_update # power user: used with advanced RoPE types (e.g. dynamic rope)
def forward(self, x, position_ids):
inv_freq_expanded = (
self.inv_freq[None, :, None].float().expand(position_ids.shape[0], -1, 1).to(x.device)
)
position_ids_expanded = position_ids[:, None, :].float()
device_type = (
x.device.type if isinstance(x.device.type, str) and x.device.type != "mps" else "cpu"
)
with torch.autocast(device_type=device_type, enabled=False): # Force float32
freqs = (inv_freq_expanded.float() @ position_ids_expanded.float()).transpose(1, 2)
emb = torch.cat((freqs, freqs), dim=-1)
cos = emb.cos() * self.attention_scaling
sin = emb.sin() * self.attention_scaling
return cos, sin
@auto_docstring
class EmoModel(EmoPreTrainedModel):
def __init__(self, config):
super().__init__(config)
self.padding_idx = config.pad_token_id
self.vocab_size = config.vocab_size
self.embed_tokens = nn.Embedding(config.vocab_size, config.hidden_size, self.padding_idx)
self.norm = EmoRMSNorm(config.hidden_size, eps=config.rms_norm_eps)
self.rotary_emb = EmoRotaryEmbedding(config=config)
self.gradient_checkpointing = False
# Check if per-layer expert counts are specified
num_experts_per_layer = getattr(config, "num_experts_per_layer", None)
num_shared_experts_per_layer = getattr(config, "num_shared_experts_per_layer", None)
always_active_experts_per_layer = getattr(config, "always_active_experts_per_layer", None)
always_active_experts = getattr(config, "always_active_experts", None)
# Resolve always_active_experts to a per-layer list
if always_active_experts_per_layer is None and always_active_experts is not None:
always_active_experts_per_layer = [always_active_experts] * config.num_hidden_layers
if num_experts_per_layer is not None:
# Use per-layer expert counts
assert (
len(num_experts_per_layer) == config.num_hidden_layers
), f"num_experts_per_layer has length {len(num_experts_per_layer)} but model has {config.num_hidden_layers} layers"
if num_shared_experts_per_layer is None:
# Default: use config.num_shared_experts for all layers, but cap at layer's num_experts
num_shared_experts_per_layer = [
min(config.num_shared_experts, num_experts_per_layer[i])
for i in range(config.num_hidden_layers)
]
self.layers = nn.ModuleList(
[
EmoDecoderLayer(
config,
layer_idx,
num_experts_per_layer[layer_idx],
num_shared_experts_per_layer[layer_idx],
always_active_experts=always_active_experts_per_layer[layer_idx]
if always_active_experts_per_layer is not None
else None,
)
for layer_idx in range(config.num_hidden_layers)
]
)
else:
# Fall back to original behavior: all layers use config.num_experts
self.layers = nn.ModuleList(
[
EmoDecoderLayer(
config,
layer_idx,
config.num_experts,
config.num_shared_experts,
always_active_experts=always_active_experts_per_layer[layer_idx]
if always_active_experts_per_layer is not None
else None,
)
for layer_idx in range(config.num_hidden_layers)
]
)
# Initialize weights and apply final processing
self.post_init()
@check_model_inputs
@auto_docstring
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[Cache] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
use_cache: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
**kwargs: Unpack[TransformersKwargs],
) -> MoeModelOutputWithPast:
if (input_ids is None) ^ (inputs_embeds is not None):
raise ValueError("You must specify exactly one of input_ids or inputs_embeds")
if use_cache and past_key_values is None:
past_key_values = DynamicCache(config=self.config)
if inputs_embeds is None:
inputs_embeds = self.embed_tokens(input_ids)
if cache_position is None:
past_seen_tokens = (
past_key_values.get_seq_length() if past_key_values is not None else 0
)
cache_position = torch.arange(
past_seen_tokens,
past_seen_tokens + inputs_embeds.shape[1],
device=inputs_embeds.device,
)
if position_ids is None:
position_ids = cache_position.unsqueeze(0)
causal_mask = create_causal_mask(
config=self.config,
input_embeds=inputs_embeds,
attention_mask=attention_mask,
cache_position=cache_position,
past_key_values=past_key_values,
position_ids=position_ids,
)
hidden_states = inputs_embeds
# create position embeddings to be shared across the decoder layers
position_embeddings = self.rotary_emb(hidden_states, position_ids)
for decoder_layer in self.layers[: self.config.num_hidden_layers]:
hidden_states = decoder_layer(
hidden_states,
position_embeddings=position_embeddings,
attention_mask=causal_mask,
position_ids=position_ids,
past_key_values=past_key_values,
use_cache=use_cache,
cache_position=cache_position,
**kwargs,
)
hidden_states = self.norm(hidden_states)
return MoeModelOutputWithPast( # only diff with Mistral is the output type, we need MoE
last_hidden_state=hidden_states,
past_key_values=past_key_values,
)
@dataclass
class MoeCausalLMOutputWithPast(ModelOutput):
"""
Base class for causal language model (or autoregressive) with mixture of experts outputs.
Args:
loss (`torch.FloatTensor` of shape `(1,)`, *optional*, returned when `labels` is provided):
Language modeling loss (for next-token prediction).
logits (`torch.FloatTensor` of shape `(batch_size, sequence_length, config.vocab_size)`):
Prediction scores of the language modeling head (scores for each vocabulary token before SoftMax).
aux_loss (`torch.FloatTensor`, *optional*, returned when `labels` is provided):
aux_loss for the sparse modules.
router_logits (`tuple(torch.FloatTensor)`, *optional*, returned when `output_router_probs=True` and `config.add_router_probs=True` is passed or when `config.output_router_probs=True`):
Tuple of `torch.FloatTensor` (one for each layer) of shape `(batch_size, sequence_length, num_experts)`.
Raw router logtis (post-softmax) that are computed by MoE routers, these terms are used to compute the auxiliary
loss for Mixture of Experts models.
past_key_values (`Cache`, *optional*, returned when `use_cache=True` is passed or when `config.use_cache=True`):
It is a [`~cache_utils.Cache`] instance. For more details, see our [kv cache guide](https://huggingface.co/docs/transformers/en/kv_cache).
Contains pre-computed hidden-states (key and values in the self-attention blocks) that can be used (see
`past_key_values` input) to speed up sequential decoding.
hidden_states (`tuple(torch.FloatTensor)`, *optional*, returned when `output_hidden_states=True` is passed or when `config.output_hidden_states=True`):
Tuple of `torch.FloatTensor` (one for the output of the embeddings, if the model has an embedding layer, +
one for the output of each layer) of shape `(batch_size, sequence_length, hidden_size)`.
Hidden-states of the model at the output of each layer plus the optional initial embedding outputs.
attentions (`tuple(torch.FloatTensor)`, *optional*, returned when `output_attentions=True` is passed or when `config.output_attentions=True`):
Tuple of `torch.FloatTensor` (one for each layer) of shape `(batch_size, num_heads, sequence_length,
sequence_length)`.
Attentions weights after the attention softmax, used to compute the weighted average in the self-attention
heads.
"""
loss: Optional[torch.FloatTensor] = None
aux_loss: Optional[torch.FloatTensor] = None
lb_loss: Optional[torch.FloatTensor] = None
ce_loss: Optional[torch.FloatTensor] = None
logits: Optional[torch.FloatTensor] = None
past_key_values: Optional[Cache] = None
hidden_states: Optional[tuple[torch.FloatTensor, ...]] = None
attentions: Optional[tuple[torch.FloatTensor, ...]] = None
router_logits: Optional[tuple[torch.FloatTensor]] = None
def load_balancing_loss_func_olmoe(
gate_logits: Union[torch.Tensor, tuple[torch.Tensor], None],
num_experts: Optional[int] = None,
top_k=2,
attention_mask: Optional[torch.Tensor] = None,
labels: Optional[torch.Tensor] = None,
num_items_in_batch: Optional[
torch.Tensor
] = None, # the number of tokens within a global batch (including across dp ranks)
ignore_index=-100,
num_shared_experts=0,
num_experts_per_layer: Optional[list[int]] = None,
num_shared_experts_per_layer: Optional[list[int]] = None,
always_active_experts: Optional[list[int]] = None,
always_active_experts_per_layer: Optional[list[list[int]]] = None,
) -> Union[torch.Tensor, int]:
r"""
Computes auxiliary load balancing loss as in Switch Transformer - implemented in Pytorch.
This version supports variable per-layer expert counts by computing the loss
per-layer individually and averaging across layers.
See Switch Transformer (https://huggingface.co/papers/2101.03961) for more details. This function implements the loss
function presented in equations (4) - (6) of the paper. It aims at penalizing cases where the routing between
experts is too unbalanced.
Args:
gate_logits:
Logits from the `gate`, should be a tuple of model.config.num_hidden_layers tensors of
shape [batch_size X sequence_length, num_experts]. This has not been softmaxed yet.
Note: each layer may have a different num_experts if num_experts_per_layer is set.
num_experts:
Number of experts (used as fallback if num_experts_per_layer is None)
top_k:
The number of experts to route per-token, can be also interpreted as the `top-k` routing
parameter.
attention_mask (`torch.Tensor`, *optional*):
The attention_mask used in forward function
shape [batch_size X sequence_length] if not None.
num_experts_per_layer:
List of expert counts per layer. If None, uses num_experts for all layers.
num_shared_experts_per_layer:
List of shared expert counts per layer. If None, uses num_shared_experts for all layers.
Returns:
The auxiliary loss.
"""
if gate_logits is None or not isinstance(gate_logits, tuple):
return 0
compute_device = gate_logits[0].device
num_hidden_layers = len(gate_logits)
# Resolve always_active_experts for the uniform path
if always_active_experts_per_layer is None and always_active_experts is not None:
always_active_experts_per_layer = [always_active_experts] * num_hidden_layers
# Check if we have variable expert counts
has_variable_experts = num_experts_per_layer is not None and len(set(num_experts_per_layer)) > 1
if not has_variable_experts:
# All layers have the same expert count - use the original stacking approach
concatenated_gate_logits = torch.stack(
[layer_gate.to(compute_device) for layer_gate in gate_logits], dim=0
) # shape: (num_hidden_layers, batch_size * sequence_length, num_experts)
# remove the shared experts from the gate logits since they are not used for routing in the loss function
if num_shared_experts > 0:
concatenated_gate_logits = concatenated_gate_logits[:, :, :-num_shared_experts]
# adjust the num_experts and top_k accordingly for the loss computation
num_experts = num_experts - num_shared_experts
top_k = top_k - num_shared_experts
routing_weights = torch.nn.functional.softmax(concatenated_gate_logits, dim=-1)
# Exclude always-active experts from the LB loss by removing their
# columns entirely so that num_experts matches the last dimension.
if (
always_active_experts_per_layer is not None
and len(always_active_experts_per_layer[0]) > 0
):
aa_experts = always_active_experts_per_layer[0] # uniform across layers in this path
routed_mask = torch.ones(num_experts, dtype=torch.bool, device=compute_device)
routed_mask[aa_experts] = False
routing_weights = routing_weights[:, :, routed_mask]
num_experts = num_experts - len(aa_experts)
top_k = top_k - len(aa_experts)
_, selected_experts = torch.topk(
routing_weights, top_k, dim=-1
) # shape: (num_hidden_layers, batch_size * sequence_length, top_k)
expert_counts_onehot = torch.nn.functional.one_hot(
selected_experts, num_experts
) # shape: (num_hidden_layers, batch_size * sequence_length, top_k, num_experts)
if attention_mask is None and labels is None:
# Compute the percentage of tokens routed to each experts
counts_per_expert = torch.mean(
expert_counts_onehot.float(), dim=(1, 2)
) # shape: (num_hidden_layers, num_experts)
# Compute the average probability of routing to these experts
prob_per_expert = torch.mean(
routing_weights, dim=1
) # shape: (num_hidden_layers, num_experts)
else:
# if there are labels, then we want to ignore the indices that are in the prompt as well (if there is any)
if labels is not None:
attention_mask = labels != ignore_index
batch_size, sequence_length = attention_mask.shape
# Compute the mask that masks all padding tokens as 0 with the same shape of expert_mask
expert_attention_mask = (
attention_mask[None, :, :, None, None]
.expand((num_hidden_layers, batch_size, sequence_length, top_k, num_experts))
.reshape(num_hidden_layers, -1, top_k, num_experts)
.to(compute_device)
)
# Compute the percentage of tokens routed to each experts
counts_per_expert = torch.sum(
expert_counts_onehot.float() * expert_attention_mask, dim=(1, 2)
)
# Compute the mask that masks all padding tokens as 0 with the same shape of frequency_per_expert
router_per_expert_attention_mask = (
attention_mask[None, :, :, None]
.expand((num_hidden_layers, batch_size, sequence_length, num_experts))
.reshape(num_hidden_layers, -1, num_experts)
.to(compute_device)
)
# average the probability across valid tokens
prob_per_expert = torch.sum(
routing_weights * router_per_expert_attention_mask, dim=1
) / torch.sum(
attention_mask
) # shape: (num_hidden_layers, num_experts)
overall_loss = torch.sum(counts_per_expert * prob_per_expert)
# Fallback when num_items_in_batch isn't provided (e.g., manual forward calls)
if num_items_in_batch is None:
if labels is not None:
num_items_in_batch = (labels != ignore_index).sum()
elif attention_mask is not None:
num_items_in_batch = attention_mask.sum()
else:
# fall back to total tokens in batch/seq from gate logits
num_items_in_batch = gate_logits[0].shape[0]
if torch.is_tensor(num_items_in_batch):
num_items_in_batch = num_items_in_batch.to(compute_device)
# we follow olmo-core and use counts for dot product instead of frequency, and divide by total number token across gradient accumulation steps
overall_loss = overall_loss / (num_items_in_batch * top_k)
overall_loss = (
overall_loss * num_experts / num_hidden_layers
) # times num_experts according to lb equation, divide by num_hidden_layers to get average over layers
return overall_loss
else:
# Variable expert counts - compute loss per layer and average
if num_shared_experts_per_layer is None:
num_shared_experts_per_layer = [num_shared_experts] * num_hidden_layers
# Compute attention mask once
if labels is not None:
attention_mask = labels != ignore_index
if attention_mask is not None:
batch_size, sequence_length = attention_mask.shape
# Fallback when num_items_in_batch isn't provided
if num_items_in_batch is None:
if labels is not None:
num_items_in_batch = (labels != ignore_index).sum()
elif attention_mask is not None:
num_items_in_batch = attention_mask.sum()
else:
num_items_in_batch = gate_logits[0].shape[0]
if torch.is_tensor(num_items_in_batch):
num_items_in_batch = num_items_in_batch.to(compute_device)
layer_losses = []
for layer_idx, layer_gate in enumerate(gate_logits):
layer_gate = layer_gate.to(compute_device)
layer_num_experts = num_experts_per_layer[layer_idx]
layer_num_shared = num_shared_experts_per_layer[layer_idx]
# Remove shared experts from logits
if layer_num_shared > 0:
layer_gate = layer_gate[:, :-layer_num_shared]
effective_num_experts = layer_num_experts - layer_num_shared
effective_top_k = top_k - layer_num_shared
else:
effective_num_experts = layer_num_experts
effective_top_k = top_k
# Compute routing weights
routing_weights = torch.nn.functional.softmax(layer_gate, dim=-1)
# Exclude always-active experts from the LB loss by removing their columns
layer_aa = (
always_active_experts_per_layer[layer_idx]
if always_active_experts_per_layer is not None
else None
)
if layer_aa is not None and len(layer_aa) > 0:
routed_mask = torch.ones(
effective_num_experts, dtype=torch.bool, device=compute_device
)
routed_mask[layer_aa] = False
routing_weights = routing_weights[:, routed_mask]
effective_num_experts = effective_num_experts - len(layer_aa)
effective_top_k = effective_top_k - len(layer_aa)
_, selected_experts = torch.topk(
routing_weights, effective_top_k, dim=-1
) # shape: (batch_size * sequence_length, top_k)
expert_counts_onehot = torch.nn.functional.one_hot(
selected_experts, effective_num_experts
) # shape: (batch_size * sequence_length, top_k, num_experts)
if attention_mask is None:
counts_per_expert = torch.mean(
expert_counts_onehot.float(), dim=(0, 1)
) # shape: (num_experts,)
prob_per_expert = torch.mean(routing_weights, dim=0) # shape: (num_experts,)
else:
# Reshape for masking
expert_attention_mask = (
attention_mask[:, :, None, None]
.expand((batch_size, sequence_length, effective_top_k, effective_num_experts))
.reshape(-1, effective_top_k, effective_num_experts)
.to(compute_device)
)
counts_per_expert = torch.sum(
expert_counts_onehot.float() * expert_attention_mask, dim=(0, 1)
)
router_attention_mask = (
attention_mask[:, :, None]
.expand((batch_size, sequence_length, effective_num_experts))
.reshape(-1, effective_num_experts)
.to(compute_device)
)
prob_per_expert = torch.sum(
routing_weights * router_attention_mask, dim=0
) / torch.sum(attention_mask)
layer_loss = torch.sum(counts_per_expert * prob_per_expert)
layer_loss = layer_loss / (num_items_in_batch * effective_top_k)
layer_loss = layer_loss * effective_num_experts
layer_losses.append(layer_loss)
# Average across layers
overall_loss = torch.stack(layer_losses).mean()
return overall_loss
class EmoForCausalLM(EmoPreTrainedModel, GenerationMixin):
_tied_weights_keys = ["lm_head.weight"]
def __init__(self, config):
super().__init__(config)
self.model = EmoModel(config)
self.vocab_size = config.vocab_size
self.lm_head = nn.Linear(config.hidden_size, config.vocab_size, bias=False)
self.router_aux_loss_coef = config.router_aux_loss_coef
self.num_experts = config.num_experts
self.num_experts_per_tok = config.num_experts_per_tok
# Initialize weights and apply final processing
self.post_init()
@auto_docstring
def forward(
self,
input_ids: Optional[torch.LongTensor] = None,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
past_key_values: Optional[Cache] = None,
inputs_embeds: Optional[torch.FloatTensor] = None,
labels: Optional[torch.LongTensor] = None,
use_cache: Optional[bool] = None,
output_attentions: Optional[bool] = None,
output_hidden_states: Optional[bool] = None,
output_router_logits: Optional[bool] = None,
return_dict: Optional[bool] = None,
cache_position: Optional[torch.LongTensor] = None,
logits_to_keep: Union[int, torch.Tensor] = 0,
**kwargs,
) -> Union[tuple, MoeCausalLMOutputWithPast]:
r"""
labels (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*):
Labels for computing the masked language modeling loss. Indices should either be in `[0, ...,
config.vocab_size]` or -100 (see `input_ids` docstring). Tokens with indices set to `-100` are ignored
(masked), the loss is only computed for the tokens with labels in `[0, ..., config.vocab_size]`.
Example:
```python
>>> from transformers import AutoTokenizer, EmoForCausalLM
>>> model = EmoForCausalLM.from_pretrained("allenai/Emo-1B-7B-0924")
>>> tokenizer = AutoTokenizer.from_pretrained("allenai/Emo-1B-7B-0924")
>>> prompt = "Hey, are you conscious? Can you talk to me?"
>>> inputs = tokenizer(prompt, return_tensors="pt")
>>> # Generate
>>> generate_ids = model.generate(inputs.input_ids, max_length=30)
>>> tokenizer.batch_decode(generate_ids, skip_special_tokens=True, clean_up_tokenization_spaces=False)[0]
'Hey, are you conscious? Can you talk to me?\nI’m not sure if you’re conscious of this, but I’m'
```
"""
output_attentions = (
output_attentions if output_attentions is not None else self.config.output_attentions
)
output_router_logits = (
output_router_logits
if output_router_logits is not None
else self.config.output_router_logits
)
output_hidden_states = (
output_hidden_states
if output_hidden_states is not None
else self.config.output_hidden_states
)
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
# decoder outputs consists of (dec_features, layer_state, dec_hidden, dec_attn)
outputs = self.model(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
past_key_values=past_key_values,
inputs_embeds=inputs_embeds,
use_cache=use_cache,
output_attentions=output_attentions,
output_hidden_states=output_hidden_states,
output_router_logits=output_router_logits,
return_dict=return_dict,
cache_position=cache_position,
)
hidden_states = outputs[0]
# Only compute necessary logits, and do not upcast them to float if we are not computing the loss
slice_indices = (
slice(-logits_to_keep, None) if isinstance(logits_to_keep, int) else logits_to_keep
)
logits = self.lm_head(hidden_states[:, slice_indices, :])
loss = None
ce_loss = None
if labels is not None:
ce_loss = self.loss_function(logits, labels, self.vocab_size, **kwargs)
loss = ce_loss
lb_loss = None
if output_router_logits:
# Get per-layer expert counts if available
num_experts_per_layer = getattr(self.config, "num_experts_per_layer", None)
num_shared_experts_per_layer = getattr(
self.config, "num_shared_experts_per_layer", None
)
# Filter out dense layers (num_experts == 0) since they produce no router_logits
if num_experts_per_layer is not None:
moe_mask = [i for i, n in enumerate(num_experts_per_layer) if n > 0]
num_experts_per_layer = [num_experts_per_layer[i] for i in moe_mask]
if num_shared_experts_per_layer is not None:
num_shared_experts_per_layer = [
num_shared_experts_per_layer[i] for i in moe_mask
]
# Resolve always_active_experts for LB loss
always_active_experts_per_layer_for_loss = getattr(
self.config, "always_active_experts_per_layer", None
)
always_active_experts_for_loss = getattr(self.config, "always_active_experts", None)
# Filter out dense layers if needed
if (
num_experts_per_layer is not None
and always_active_experts_per_layer_for_loss is not None
):
always_active_experts_per_layer_for_loss = [
always_active_experts_per_layer_for_loss[i] for i in moe_mask
]
lb_loss = load_balancing_loss_func_olmoe(
outputs.router_logits if return_dict else outputs[-1],
self.num_experts,
self.num_experts_per_tok,
attention_mask,
labels,
num_shared_experts=self.config.num_shared_experts,
num_experts_per_layer=num_experts_per_layer,
num_shared_experts_per_layer=num_shared_experts_per_layer,
always_active_experts=always_active_experts_for_loss,
always_active_experts_per_layer=always_active_experts_per_layer_for_loss,
**kwargs,
)
if labels is not None:
loss += self.router_aux_loss_coef * lb_loss.to(
loss.device
) # make sure to reside in the same device
if not return_dict:
output = (logits,) + outputs[1:]
if output_router_logits:
output = (lb_loss,) + output
return (loss,) + output if loss is not None else output
return MoeCausalLMOutputWithPast(
loss=loss,
aux_loss=lb_loss,
lb_loss=lb_loss.detach().clone()
if lb_loss is not None
else None, # for logging callback
ce_loss=ce_loss.detach().clone()
if ce_loss is not None
else None, # for logging callback
logits=logits,
past_key_values=outputs.past_key_values,
hidden_states=outputs.hidden_states,
attentions=outputs.attentions,
router_logits=outputs.router_logits,
)
__all__ = [
"EmoForCausalLM",
"EmoModel",
"EmoPreTrainedModel",
]