Instructions to use ai21labs/Jamba-v0.1 with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use ai21labs/Jamba-v0.1 with Transformers:
# Use a pipeline as a high-level helper from transformers import pipeline pipe = pipeline("text-generation", model="ai21labs/Jamba-v0.1", trust_remote_code=True)# Load model directly from transformers import AutoTokenizer, AutoModelForCausalLM tokenizer = AutoTokenizer.from_pretrained("ai21labs/Jamba-v0.1", trust_remote_code=True) model = AutoModelForCausalLM.from_pretrained("ai21labs/Jamba-v0.1", trust_remote_code=True) - Notebooks
- Google Colab
- Kaggle
- Local Apps
- vLLM
How to use ai21labs/Jamba-v0.1 with vLLM:
Install from pip and serve model
# Install vLLM from pip: pip install vllm # Start the vLLM server: vllm serve "ai21labs/Jamba-v0.1" # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:8000/v1/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "ai21labs/Jamba-v0.1", "prompt": "Once upon a time,", "max_tokens": 512, "temperature": 0.5 }'Use Docker
docker model run hf.co/ai21labs/Jamba-v0.1
- SGLang
How to use ai21labs/Jamba-v0.1 with SGLang:
Install from pip and serve model
# Install SGLang from pip: pip install sglang # Start the SGLang server: python3 -m sglang.launch_server \ --model-path "ai21labs/Jamba-v0.1" \ --host 0.0.0.0 \ --port 30000 # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:30000/v1/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "ai21labs/Jamba-v0.1", "prompt": "Once upon a time,", "max_tokens": 512, "temperature": 0.5 }'Use Docker images
docker run --gpus all \ --shm-size 32g \ -p 30000:30000 \ -v ~/.cache/huggingface:/root/.cache/huggingface \ --env "HF_TOKEN=<secret>" \ --ipc=host \ lmsysorg/sglang:latest \ python3 -m sglang.launch_server \ --model-path "ai21labs/Jamba-v0.1" \ --host 0.0.0.0 \ --port 30000 # Call the server using curl (OpenAI-compatible API): curl -X POST "http://localhost:30000/v1/completions" \ -H "Content-Type: application/json" \ --data '{ "model": "ai21labs/Jamba-v0.1", "prompt": "Once upon a time,", "max_tokens": 512, "temperature": 0.5 }' - Docker Model Runner
How to use ai21labs/Jamba-v0.1 with Docker Model Runner:
docker model run hf.co/ai21labs/Jamba-v0.1
| # coding=utf-8 | |
| # Copyright 2024 AI21 Labs Ltd. and the HuggingFace Inc. team. All rights reserved. | |
| # | |
| # This code is based on EleutherAI's GPT-NeoX library and the GPT-NeoX | |
| # and OPT implementations in this library. It has been modified from its | |
| # original forms to accommodate minor architectural differences compared | |
| # to GPT-NeoX and OPT used by the Meta AI team that trained the model. | |
| # | |
| # 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. | |
| """ PyTorch Jamba model.""" | |
| import inspect | |
| import math | |
| from typing import Any, Dict, List, Optional, Tuple, Union | |
| import torch | |
| import torch.nn.functional as F | |
| import torch.utils.checkpoint | |
| from torch import nn | |
| from torch.nn import BCEWithLogitsLoss, CrossEntropyLoss, MSELoss | |
| from transformers.activations import ACT2FN | |
| from transformers.cache_utils import DynamicCache # we need __iter__ and __len__ of pkv | |
| from transformers.modeling_attn_mask_utils import ( | |
| AttentionMaskConverter, | |
| ) | |
| from transformers.modeling_outputs import ( | |
| MoeCausalLMOutputWithPast, | |
| MoeModelOutputWithPast, | |
| SequenceClassifierOutputWithPast, | |
| ) | |
| from transformers.modeling_utils import PreTrainedModel | |
| from transformers.utils import ( | |
| add_start_docstrings, | |
| add_start_docstrings_to_model_forward, | |
| is_flash_attn_greater_or_equal_2_10, | |
| logging, | |
| replace_return_docstrings, | |
| ) | |
| from transformers.utils.import_utils import ( | |
| is_causal_conv1d_available, | |
| is_flash_attn_2_available, | |
| is_mamba_ssm_available, | |
| ) | |
| from .configuration_jamba import JambaConfig | |
| # try except block so it'll work with trust_remote_code. | |
| try: | |
| from flash_attn import flash_attn_func, flash_attn_varlen_func | |
| from flash_attn.bert_padding import index_first_axis, pad_input, unpad_input # noqa | |
| _flash_supports_window_size = "window_size" in list(inspect.signature(flash_attn_func).parameters) | |
| except ImportError: | |
| pass | |
| # try except block so it'll work with trust_remote_code. | |
| try: | |
| from mamba_ssm.ops.selective_scan_interface import mamba_inner_fn, selective_scan_fn | |
| from mamba_ssm.ops.triton.selective_state_update import selective_state_update | |
| except ImportError: | |
| selective_state_update, selective_scan_fn, mamba_inner_fn = None, None, None | |
| # try except block so it'll work with trust_remote_code. | |
| try: | |
| from causal_conv1d import causal_conv1d_fn, causal_conv1d_update | |
| except ImportError: | |
| causal_conv1d_update, causal_conv1d_fn = None, None | |
| is_fast_path_available = all( | |
| (selective_state_update, selective_scan_fn, causal_conv1d_fn, causal_conv1d_update, mamba_inner_fn) | |
| ) | |
| logger = logging.get_logger(__name__) | |
| _CONFIG_FOR_DOC = "JambaConfig" | |
| # Copied from transformers.models.mixtral.modeling_mixtral.load_balancing_loss_func with gate->router | |
| def load_balancing_loss_func( | |
| router_logits: torch.Tensor, | |
| num_experts: torch.Tensor = None, | |
| top_k=2, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| ) -> float: | |
| r""" | |
| Computes auxiliary load balancing loss as in Switch Transformer - implemented in Pytorch. | |
| See Switch Transformer (https://arxiv.org/abs/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: | |
| router_logits (Union[`torch.Tensor`, Tuple[torch.Tensor]): | |
| Logits from the `router`, should be a tuple of model.config.num_hidden_layers tensors of | |
| shape [batch_size X sequence_length, num_experts]. | |
| attention_mask (`torch.Tensor`, None): | |
| The attention_mask used in forward function | |
| shape [batch_size X sequence_length] if not None. | |
| num_experts (`int`, *optional*): | |
| Number of experts | |
| Returns: | |
| The auxiliary loss. | |
| """ | |
| if router_logits is None or not isinstance(router_logits, tuple): | |
| return 0 | |
| if isinstance(router_logits, tuple): | |
| compute_device = router_logits[0].device | |
| concatenated_router_logits = torch.cat( | |
| [layer_router.to(compute_device) for layer_router in router_logits], dim=0 | |
| ) | |
| routing_weights = torch.nn.functional.softmax(concatenated_router_logits, dim=-1) | |
| _, selected_experts = torch.topk(routing_weights, top_k, dim=-1) | |
| expert_mask = torch.nn.functional.one_hot(selected_experts, num_experts) | |
| if attention_mask is None: | |
| # Compute the percentage of tokens routed to each experts | |
| tokens_per_expert = torch.mean(expert_mask.float(), dim=0) | |
| # Compute the average probability of routing to these experts | |
| router_prob_per_expert = torch.mean(routing_weights, dim=0) | |
| else: | |
| batch_size, sequence_length = attention_mask.shape | |
| num_hidden_layers = concatenated_router_logits.shape[0] // (batch_size * sequence_length) | |
| # 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(-1, top_k, num_experts) | |
| .to(compute_device) | |
| ) | |
| # Compute the percentage of tokens routed to each experts | |
| tokens_per_expert = torch.sum(expert_mask.float() * expert_attention_mask, dim=0) / torch.sum( | |
| expert_attention_mask, dim=0 | |
| ) | |
| # Compute the mask that masks all padding tokens as 0 with the same shape of tokens_per_expert | |
| router_per_expert_attention_mask = ( | |
| attention_mask[None, :, :, None] | |
| .expand((num_hidden_layers, batch_size, sequence_length, num_experts)) | |
| .reshape(-1, num_experts) | |
| .to(compute_device) | |
| ) | |
| # Compute the average probability of routing to these experts | |
| router_prob_per_expert = torch.sum(routing_weights * router_per_expert_attention_mask, dim=0) / torch.sum( | |
| router_per_expert_attention_mask, dim=0 | |
| ) | |
| overall_loss = torch.sum(tokens_per_expert * router_prob_per_expert.unsqueeze(0)) | |
| return overall_loss * num_experts | |
| # Copied from transformers.models.llama.modeling_llama._get_unpad_data | |
| def _get_unpad_data(attention_mask): | |
| seqlens_in_batch = attention_mask.sum(dim=-1, dtype=torch.int32) | |
| indices = torch.nonzero(attention_mask.flatten(), as_tuple=False).flatten() | |
| max_seqlen_in_batch = seqlens_in_batch.max().item() | |
| cu_seqlens = F.pad(torch.cumsum(seqlens_in_batch, dim=0, dtype=torch.int32), (1, 0)) | |
| return ( | |
| indices, | |
| cu_seqlens, | |
| max_seqlen_in_batch, | |
| ) | |
| # Copied from transformers.models.llama.modeling_llama.LlamaRMSNorm with Llama->Jamba | |
| class JambaRMSNorm(nn.Module): | |
| def __init__(self, hidden_size, eps=1e-6): | |
| """ | |
| JambaRMSNorm 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) | |
| # Copied from transformers.models.llama.modeling_llama.repeat_kv | |
| 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) | |
| class HybridMambaAttentionDynamicCache(DynamicCache): | |
| """ | |
| A dynamic cache that can handle both the attention cache (which has a seq_len dimension) and the mamba cache | |
| (which has a constant shape regardless of seq_len). | |
| This cache has two sets of lists of tensors: `key_cache` and `value_cache` for attention cache and `conv_states` | |
| and `ssm_states` for mamba cache. Each of these lists has `num_layers` tensors. The expected shape for each tensor | |
| For attention layers, `key_cache` and `value_cache` have a shape of `(batch_size, num_heads, seq_len, head_dim)`, | |
| while `conv_states` and `ssm_states` have a shape of `(batch_size, 0)` (empty tensors). | |
| For mamba layers, `key_cache` and `value_cache` have a shape of `(batch_size, 0)` (empty tensors), | |
| while `conv_states` represents the convolution state and has a shape of `(batch_size, d_inner, d_conv)`, | |
| and `ssm_states` represents the ssm state and has a shape of `(batch_size, d_inner, d_state)`. | |
| """ | |
| def __init__(self, config, batch_size, dtype=torch.float16, device=None): | |
| self.dtype = dtype | |
| self.layers_block_type = config.layers_block_type | |
| self.has_previous_state = False # only used by mamba | |
| intermediate_size = config.mamba_expand * config.hidden_size | |
| ssm_state_size = config.mamba_d_state | |
| conv_kernel_size = config.mamba_d_conv | |
| self.conv_states = [] | |
| self.ssm_states = [] | |
| for i in range(config.num_hidden_layers): | |
| if self.layers_block_type[i] == "mamba": | |
| self.conv_states += [ | |
| torch.zeros(batch_size, intermediate_size, conv_kernel_size, device=device, dtype=dtype) | |
| ] | |
| self.ssm_states += [ | |
| torch.zeros(batch_size, intermediate_size, ssm_state_size, device=device, dtype=dtype) | |
| ] | |
| else: | |
| self.conv_states += [torch.tensor([[]] * batch_size, device=device)] | |
| self.ssm_states += [torch.tensor([[]] * batch_size, device=device)] | |
| self.key_cache = [torch.tensor([[]] * batch_size, device=device) for _ in range(config.num_hidden_layers)] | |
| self.value_cache = [torch.tensor([[]] * batch_size, device=device) for _ in range(config.num_hidden_layers)] | |
| def update( | |
| self, | |
| key_states: torch.Tensor, | |
| value_states: torch.Tensor, | |
| layer_idx: int, | |
| cache_kwargs: Optional[Dict[str, Any]] = None, | |
| ) -> Tuple[torch.Tensor, torch.Tensor]: | |
| # Update the cache | |
| if self.key_cache[layer_idx].shape[-1] == 0: | |
| self.key_cache[layer_idx] = key_states | |
| self.value_cache[layer_idx] = value_states | |
| else: | |
| self.key_cache[layer_idx] = torch.cat([self.key_cache[layer_idx], key_states], dim=2) | |
| self.value_cache[layer_idx] = torch.cat([self.value_cache[layer_idx], value_states], dim=2) | |
| return self.key_cache[layer_idx], self.value_cache[layer_idx] | |
| def reorder_cache(self, beam_idx: torch.LongTensor): | |
| """Reorders the cache for beam search, given the selected beam indices.""" | |
| for layer_idx in range(len(self.key_cache)): | |
| device = self.key_cache[layer_idx].device | |
| self.key_cache[layer_idx] = self.key_cache[layer_idx].index_select(0, beam_idx.to(device)) | |
| device = self.value_cache[layer_idx].device | |
| self.value_cache[layer_idx] = self.value_cache[layer_idx].index_select(0, beam_idx.to(device)) | |
| device = self.conv_states[layer_idx].device | |
| self.conv_states[layer_idx] = self.conv_states[layer_idx].index_select(0, beam_idx.to(device)) | |
| device = self.ssm_states[layer_idx].device | |
| self.ssm_states[layer_idx] = self.ssm_states[layer_idx].index_select(0, beam_idx.to(device)) | |
| def to_legacy_cache(self) -> Tuple[Tuple[torch.Tensor], Tuple[torch.Tensor]]: | |
| raise NotImplementedError("HybridMambaAttentionDynamicCache does not have a legacy cache equivalent.") | |
| def from_legacy_cache(cls, past_key_values: Optional[Tuple[Tuple[torch.FloatTensor]]] = None) -> "DynamicCache": | |
| raise NotImplementedError("HybridMambaAttentionDynamicCache does not have a legacy cache equivalent.") | |
| # Adapted from transformers.models.mistral.modeling_mistral.MistralAttention with Mistral->Jamba | |
| class JambaAttention(nn.Module): | |
| """ | |
| Multi-headed attention from 'Attention Is All You Need' paper. Modified to use sliding window attention: Longformer | |
| and "Generating Long Sequences with Sparse Transformers". | |
| """ | |
| def __init__(self, config: JambaConfig, layer_idx: Optional[int] = None): | |
| super().__init__() | |
| self.config = config | |
| self.layer_idx = layer_idx | |
| if layer_idx is None: | |
| logger.warning_once( | |
| f"Instantiating {self.__class__.__name__} without passing a `layer_idx` is not recommended and will " | |
| "lead to errors during the forward call if caching is used. Please make sure to provide a `layer_idx` " | |
| "when creating this class." | |
| ) | |
| self.hidden_size = config.hidden_size | |
| self.num_heads = config.num_attention_heads | |
| self.head_dim = self.hidden_size // self.num_heads | |
| self.num_key_value_heads = config.num_key_value_heads | |
| self.num_key_value_groups = self.num_heads // self.num_key_value_heads | |
| self.is_causal = True | |
| self.attention_dropout = config.attention_dropout | |
| if (self.head_dim * self.num_heads) != self.hidden_size: | |
| raise ValueError( | |
| f"hidden_size must be divisible by num_heads (got `hidden_size`: {self.hidden_size}" | |
| f" and `num_heads`: {self.num_heads})." | |
| ) | |
| self.q_proj = nn.Linear(self.hidden_size, self.num_heads * self.head_dim, bias=False) | |
| self.k_proj = nn.Linear(self.hidden_size, self.num_key_value_heads * self.head_dim, bias=False) | |
| self.v_proj = nn.Linear(self.hidden_size, self.num_key_value_heads * self.head_dim, bias=False) | |
| self.o_proj = nn.Linear(self.num_heads * self.head_dim, self.hidden_size, bias=False) | |
| def forward( | |
| self, | |
| hidden_states: torch.Tensor, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_value: Optional[HybridMambaAttentionDynamicCache] = None, | |
| output_attentions: bool = False, | |
| use_cache: bool = False, | |
| cache_position: Optional[torch.LongTensor] = None, | |
| ) -> Tuple[torch.Tensor, Optional[torch.Tensor], Optional[Tuple[torch.Tensor]]]: | |
| bsz, q_len, _ = hidden_states.size() | |
| 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(bsz, q_len, self.num_heads, self.head_dim).transpose(1, 2) | |
| key_states = key_states.view(bsz, q_len, self.num_key_value_heads, self.head_dim).transpose(1, 2) | |
| value_states = value_states.view(bsz, q_len, self.num_key_value_heads, self.head_dim).transpose(1, 2) | |
| if past_key_value is not None: | |
| key_states, value_states = past_key_value.update(key_states, value_states, self.layer_idx) | |
| # repeat k/v heads if n_kv_heads < n_heads | |
| key_states = repeat_kv(key_states, self.num_key_value_groups) | |
| value_states = repeat_kv(value_states, self.num_key_value_groups) | |
| attn_weights = torch.matmul(query_states, key_states.transpose(2, 3)) / math.sqrt(self.head_dim) | |
| if attention_mask is not None: # no matter the length, we just slice it | |
| causal_mask = attention_mask[:, :, :, : key_states.shape[-2]] | |
| attn_weights = attn_weights + causal_mask | |
| # upcast attention to fp32 | |
| attn_weights = nn.functional.softmax(attn_weights, dim=-1, dtype=torch.float32).to(query_states.dtype) | |
| attn_weights = nn.functional.dropout(attn_weights, p=self.attention_dropout, training=self.training) | |
| attn_output = torch.matmul(attn_weights, value_states) | |
| if attn_output.size() != (bsz, self.num_heads, q_len, self.head_dim): | |
| raise ValueError( | |
| f"`attn_output` should be of size {(bsz, self.num_heads, q_len, self.head_dim)}, but is" | |
| f" {attn_output.size()}" | |
| ) | |
| attn_output = attn_output.transpose(1, 2).contiguous() | |
| attn_output = attn_output.reshape(bsz, q_len, self.hidden_size) | |
| attn_output = self.o_proj(attn_output) | |
| if not output_attentions: | |
| attn_weights = None | |
| return attn_output, attn_weights, past_key_value | |
| # Adapted from transformers.models.mistral.modeling_mistral.MistralFlashAttention2 with Mistral->Jamba | |
| class JambaFlashAttention2(JambaAttention): | |
| """ | |
| Jamba flash attention module. This module inherits from `JambaAttention` as the weights of the module stays | |
| untouched. The only required change would be on the forward pass where it needs to correctly call the public API of | |
| flash attention and deal with padding tokens in case the input contains any of them. | |
| """ | |
| # Copied from transformers.models.llama.modeling_llama.LlamaFlashAttention2.__init__ | |
| def __init__(self, *args, **kwargs): | |
| super().__init__(*args, **kwargs) | |
| # TODO: Should be removed once Flash Attention for RoCm is bumped to 2.1. | |
| # flash_attn<2.1 generates top-left aligned causal mask, while what is needed here is bottom-right alignement, that was made default for flash_attn>=2.1. This attribute is used to handle this difference. Reference: https://github.com/Dao-AILab/flash-attention/releases/tag/v2.1.0. | |
| # Beware that with flash_attn<2.1, using q_seqlen != k_seqlen (except for the case q_seqlen == 1) produces a wrong mask (top-left). | |
| self._flash_attn_uses_top_left_mask = not is_flash_attn_greater_or_equal_2_10() | |
| def forward( | |
| self, | |
| hidden_states: torch.Tensor, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_value: Optional[HybridMambaAttentionDynamicCache] = None, | |
| output_attentions: bool = False, | |
| use_cache: bool = False, | |
| cache_position: Optional[torch.LongTensor] = None, | |
| **kwargs, | |
| ): | |
| bsz, q_len, _ = hidden_states.size() | |
| query_states = self.q_proj(hidden_states) | |
| key_states = self.k_proj(hidden_states) | |
| value_states = self.v_proj(hidden_states) | |
| # Flash attention requires the input to have the shape | |
| # batch_size x seq_length x head_dim x hidden_dim | |
| # therefore we just need to keep the original shape | |
| query_states = query_states.view(bsz, q_len, self.num_heads, self.head_dim).transpose(1, 2) | |
| key_states = key_states.view(bsz, q_len, self.num_key_value_heads, self.head_dim).transpose(1, 2) | |
| value_states = value_states.view(bsz, q_len, self.num_key_value_heads, self.head_dim).transpose(1, 2) | |
| kv_seq_len = cache_position[-1] | |
| use_sliding_windows = ( | |
| _flash_supports_window_size | |
| and getattr(self.config, "sliding_window", None) is not None | |
| and kv_seq_len > self.config.sliding_window | |
| ) | |
| if not _flash_supports_window_size: | |
| logger.warning_once( | |
| "The current flash attention version does not support sliding window attention, for a more memory efficient implementation" | |
| " make sure to upgrade flash-attn library." | |
| ) | |
| if past_key_value is not None: | |
| # Activate slicing cache only if the config has a value `sliding_windows` attribute | |
| cache_has_contents = cache_position[0] > 0 | |
| if ( | |
| getattr(self.config, "sliding_window", None) is not None | |
| and kv_seq_len > self.config.sliding_window | |
| and cache_has_contents | |
| ): | |
| slicing_tokens = 1 - self.config.sliding_window | |
| past_key = past_key_value[self.layer_idx][0] | |
| past_value = past_key_value[self.layer_idx][1] | |
| past_key = past_key[:, :, slicing_tokens:, :].contiguous() | |
| past_value = past_value[:, :, slicing_tokens:, :].contiguous() | |
| if past_key.shape[-2] != self.config.sliding_window - 1: | |
| raise ValueError( | |
| f"past key must have a shape of (`batch_size, num_heads, self.config.sliding_window-1, head_dim`), got" | |
| f" {past_key.shape}" | |
| ) | |
| if attention_mask is not None: | |
| attention_mask = attention_mask[:, slicing_tokens:] | |
| attention_mask = torch.cat([attention_mask, torch.ones_like(attention_mask[:, -1:])], dim=-1) | |
| key_states, value_states = past_key_value.update(key_states, value_states, self.layer_idx) | |
| # repeat k/v heads if n_kv_heads < n_heads | |
| key_states = repeat_kv(key_states, self.num_key_value_groups) | |
| value_states = repeat_kv(value_states, self.num_key_value_groups) | |
| dropout_rate = 0.0 if not self.training else self.attention_dropout | |
| # In PEFT, usually we cast the layer norms in float32 for training stability reasons | |
| # therefore the input hidden states gets silently casted in float32. Hence, we need | |
| # cast them back in float16 just to be sure everything works as expected. | |
| input_dtype = query_states.dtype | |
| if input_dtype == torch.float32: | |
| if torch.is_autocast_enabled(): | |
| target_dtype = torch.get_autocast_gpu_dtype() | |
| # Handle the case where the model is quantized | |
| elif hasattr(self.config, "_pre_quantization_dtype"): | |
| target_dtype = self.config._pre_quantization_dtype | |
| else: | |
| target_dtype = self.q_proj.weight.dtype | |
| logger.warning_once( | |
| f"The input hidden states seems to be silently casted in float32, this might be related to" | |
| f" the fact you have upcasted embedding or layer norm layers in float32. We will cast back the input in" | |
| f" {target_dtype}." | |
| ) | |
| query_states = query_states.to(target_dtype) | |
| key_states = key_states.to(target_dtype) | |
| value_states = value_states.to(target_dtype) | |
| # Reashape to the expected shape for Flash Attention | |
| query_states = query_states.transpose(1, 2) | |
| key_states = key_states.transpose(1, 2) | |
| value_states = value_states.transpose(1, 2) | |
| attn_output = self._flash_attention_forward( | |
| query_states, | |
| key_states, | |
| value_states, | |
| attention_mask, | |
| q_len, | |
| dropout=dropout_rate, | |
| use_sliding_windows=use_sliding_windows, | |
| ) | |
| attn_output = attn_output.reshape(bsz, q_len, self.hidden_size).contiguous() | |
| attn_output = self.o_proj(attn_output) | |
| if not output_attentions: | |
| attn_weights = None | |
| return attn_output, attn_weights, past_key_value | |
| def _flash_attention_forward( | |
| self, | |
| query_states, | |
| key_states, | |
| value_states, | |
| attention_mask, | |
| query_length, | |
| dropout=0.0, | |
| softmax_scale=None, | |
| use_sliding_windows=False, | |
| ): | |
| """ | |
| Calls the forward method of Flash Attention - if the input hidden states contain at least one padding token | |
| first unpad the input, then computes the attention scores and pad the final attention scores. | |
| Args: | |
| query_states (`torch.Tensor`): | |
| Input query states to be passed to Flash Attention API | |
| key_states (`torch.Tensor`): | |
| Input key states to be passed to Flash Attention API | |
| value_states (`torch.Tensor`): | |
| Input value states to be passed to Flash Attention API | |
| attention_mask (`torch.Tensor`): | |
| The padding mask - corresponds to a tensor of size `(batch_size, seq_len)` where 0 stands for the | |
| position of padding tokens and 1 for the position of non-padding tokens. | |
| dropout (`float`, *optional*): | |
| Attention dropout | |
| softmax_scale (`float`, *optional*): | |
| The scaling of QK^T before applying softmax. Default to 1 / sqrt(head_dim) | |
| use_sliding_windows (`bool`, *optional*): | |
| Whether to activate sliding window attention. | |
| """ | |
| if not self._flash_attn_uses_top_left_mask: | |
| causal = self.is_causal | |
| else: | |
| # TODO: Remove the `query_length != 1` check once Flash Attention for RoCm is bumped to 2.1. For details, please see the comment in LlamaFlashAttention2 __init__. | |
| causal = self.is_causal and query_length != 1 | |
| # Contains at least one padding token in the sequence | |
| if attention_mask is not None: | |
| batch_size = query_states.shape[0] | |
| query_states, key_states, value_states, indices_q, cu_seq_lens, max_seq_lens = self._upad_input( | |
| query_states, key_states, value_states, attention_mask, query_length | |
| ) | |
| cu_seqlens_q, cu_seqlens_k = cu_seq_lens | |
| max_seqlen_in_batch_q, max_seqlen_in_batch_k = max_seq_lens | |
| if not use_sliding_windows: | |
| attn_output_unpad = flash_attn_varlen_func( | |
| query_states, | |
| key_states, | |
| value_states, | |
| cu_seqlens_q=cu_seqlens_q, | |
| cu_seqlens_k=cu_seqlens_k, | |
| max_seqlen_q=max_seqlen_in_batch_q, | |
| max_seqlen_k=max_seqlen_in_batch_k, | |
| dropout_p=dropout, | |
| softmax_scale=softmax_scale, | |
| causal=causal, | |
| ) | |
| else: | |
| attn_output_unpad = flash_attn_varlen_func( | |
| query_states, | |
| key_states, | |
| value_states, | |
| cu_seqlens_q=cu_seqlens_q, | |
| cu_seqlens_k=cu_seqlens_k, | |
| max_seqlen_q=max_seqlen_in_batch_q, | |
| max_seqlen_k=max_seqlen_in_batch_k, | |
| dropout_p=dropout, | |
| softmax_scale=softmax_scale, | |
| causal=causal, | |
| window_size=(self.config.sliding_window, self.config.sliding_window), | |
| ) | |
| attn_output = pad_input(attn_output_unpad, indices_q, batch_size, query_length) | |
| else: | |
| if not use_sliding_windows: | |
| attn_output = flash_attn_func( | |
| query_states, | |
| key_states, | |
| value_states, | |
| dropout, | |
| softmax_scale=softmax_scale, | |
| causal=causal, | |
| ) | |
| else: | |
| attn_output = flash_attn_func( | |
| query_states, | |
| key_states, | |
| value_states, | |
| dropout, | |
| softmax_scale=softmax_scale, | |
| causal=causal, | |
| window_size=(self.config.sliding_window, self.config.sliding_window), | |
| ) | |
| return attn_output | |
| # Copied from transformers.models.mixtral.modeling_mixtral.MixtralFlashAttention2._upad_input | |
| def _upad_input(self, query_layer, key_layer, value_layer, attention_mask, query_length): | |
| batch_size, kv_seq_len, num_heads, head_dim = key_layer.shape | |
| # On the first iteration we need to properly re-create the padding mask | |
| # by slicing it on the proper place | |
| if kv_seq_len != attention_mask.shape[-1]: | |
| attention_mask_num_tokens = attention_mask.shape[-1] | |
| attention_mask = attention_mask[:, attention_mask_num_tokens - kv_seq_len :] | |
| indices_k, cu_seqlens_k, max_seqlen_in_batch_k = _get_unpad_data(attention_mask) | |
| key_layer = index_first_axis(key_layer.reshape(batch_size * kv_seq_len, num_heads, head_dim), indices_k) | |
| value_layer = index_first_axis(value_layer.reshape(batch_size * kv_seq_len, num_heads, head_dim), indices_k) | |
| if query_length == kv_seq_len: | |
| query_layer = index_first_axis( | |
| query_layer.reshape(batch_size * kv_seq_len, num_heads, head_dim), indices_k | |
| ) | |
| cu_seqlens_q = cu_seqlens_k | |
| max_seqlen_in_batch_q = max_seqlen_in_batch_k | |
| indices_q = indices_k | |
| elif query_length == 1: | |
| max_seqlen_in_batch_q = 1 | |
| cu_seqlens_q = torch.arange( | |
| batch_size + 1, dtype=torch.int32, device=query_layer.device | |
| ) # There is a memcpy here, that is very bad. | |
| indices_q = cu_seqlens_q[:-1] | |
| query_layer = query_layer.squeeze(1) | |
| else: | |
| # The -q_len: slice assumes left padding. | |
| attention_mask = attention_mask[:, -query_length:] | |
| query_layer, indices_q, cu_seqlens_q, max_seqlen_in_batch_q = unpad_input(query_layer, attention_mask) | |
| return ( | |
| query_layer, | |
| key_layer, | |
| value_layer, | |
| indices_q, | |
| (cu_seqlens_q, cu_seqlens_k), | |
| (max_seqlen_in_batch_q, max_seqlen_in_batch_k), | |
| ) | |
| # Adapted from transformers.models.mistral.modeling_mistral.MistralSdpaAttention with Mistral->Jamba | |
| class JambaSdpaAttention(JambaAttention): | |
| """ | |
| Jamba attention module using torch.nn.functional.scaled_dot_product_attention. This module inherits from | |
| `JambaAttention` as the weights of the module stays untouched. The only changes are on the forward pass to adapt to | |
| SDPA API. | |
| """ | |
| # Adapted from JambaAttention.forward | |
| def forward( | |
| self, | |
| hidden_states: torch.Tensor, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_value: Optional[HybridMambaAttentionDynamicCache] = None, | |
| output_attentions: bool = False, | |
| use_cache: bool = False, | |
| cache_position: Optional[torch.LongTensor] = None, | |
| ) -> Tuple[torch.Tensor, Optional[torch.Tensor], Optional[Tuple[torch.Tensor]]]: | |
| if output_attentions: | |
| # TODO: Improve this warning with e.g. `model.config.attn_implementation = "manual"` once this is implemented. | |
| logger.warning_once( | |
| "JambaModel is using JambaSdpaAttention, but `torch.nn.functional.scaled_dot_product_attention` does not support `output_attentions=True`. Falling back to the manual attention implementation, " | |
| 'but specifying the manual implementation will be required from Transformers version v5.0.0 onwards. This warning can be removed using the argument `attn_implementation="eager"` when loading the model.' | |
| ) | |
| return super().forward( | |
| hidden_states=hidden_states, | |
| attention_mask=attention_mask, | |
| position_ids=position_ids, | |
| past_key_value=past_key_value, | |
| output_attentions=output_attentions, | |
| use_cache=use_cache, | |
| ) | |
| bsz, q_len, _ = hidden_states.size() | |
| 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(bsz, q_len, self.num_heads, self.head_dim).transpose(1, 2) | |
| key_states = key_states.view(bsz, q_len, self.num_key_value_heads, self.head_dim).transpose(1, 2) | |
| value_states = value_states.view(bsz, q_len, self.num_key_value_heads, self.head_dim).transpose(1, 2) | |
| if past_key_value is not None: | |
| key_states, value_states = past_key_value.update(key_states, value_states, self.layer_idx) | |
| key_states = repeat_kv(key_states, self.num_key_value_groups) | |
| value_states = repeat_kv(value_states, self.num_key_value_groups) | |
| causal_mask = attention_mask | |
| if attention_mask is not None: | |
| causal_mask = causal_mask[:, :, :, : key_states.shape[-2]] | |
| # SDPA with memory-efficient backend is currently (torch==2.1.2) bugged with non-contiguous inputs with custom attn_mask, | |
| # Reference: https://github.com/pytorch/pytorch/issues/112577. | |
| if query_states.device.type == "cuda" and attention_mask is not None: | |
| query_states = query_states.contiguous() | |
| key_states = key_states.contiguous() | |
| value_states = value_states.contiguous() | |
| attn_output = torch.nn.functional.scaled_dot_product_attention( | |
| query_states, | |
| key_states, | |
| value_states, | |
| attn_mask=causal_mask, | |
| dropout_p=self.attention_dropout if self.training else 0.0, | |
| # The q_len > 1 is necessary to match with AttentionMaskConverter.to_causal_4d that does not create a causal mask in case q_len == 1. | |
| is_causal=self.is_causal and attention_mask is None and q_len > 1, | |
| ) | |
| attn_output = attn_output.transpose(1, 2).contiguous() | |
| attn_output = attn_output.view(bsz, q_len, self.hidden_size) | |
| attn_output = self.o_proj(attn_output) | |
| return attn_output, None, past_key_value | |
| JAMBA_ATTENTION_CLASSES = { | |
| "eager": JambaAttention, | |
| "flash_attention_2": JambaFlashAttention2, | |
| "sdpa": JambaSdpaAttention, | |
| } | |
| # Adapted from transformers.models.mamba.modeling_mamba.MambaMixer | |
| class JambaMambaMixer(nn.Module): | |
| """ | |
| Compute ∆, A, B, C, and D the state space parameters and compute the `contextualized_states`. | |
| A, D are input independent (see Mamba paper [1] Section 3.5.2 "Interpretation of A" for why A isn't selective) | |
| ∆, B, C are input-dependent (this is a key difference between Mamba and the linear time invariant S4, | |
| and is why Mamba is called **selective** state spaces) | |
| """ | |
| def __init__(self, config: JambaConfig, layer_idx): | |
| super().__init__() | |
| self.config = config | |
| self.layer_idx = layer_idx | |
| self.hidden_size = config.hidden_size | |
| self.ssm_state_size = config.mamba_d_state | |
| self.conv_kernel_size = config.mamba_d_conv | |
| self.intermediate_size = config.mamba_expand * config.hidden_size | |
| self.time_step_rank = config.mamba_dt_rank | |
| self.use_conv_bias = config.mamba_conv_bias | |
| self.use_bias = config.mamba_proj_bias | |
| self.conv1d = nn.Conv1d( | |
| in_channels=self.intermediate_size, | |
| out_channels=self.intermediate_size, | |
| bias=self.use_conv_bias, | |
| kernel_size=self.conv_kernel_size, | |
| groups=self.intermediate_size, | |
| padding=self.conv_kernel_size - 1, | |
| ) | |
| self.activation = config.hidden_act | |
| self.act = ACT2FN[config.hidden_act] | |
| self.use_fast_kernels = config.use_mamba_kernels | |
| # projection of the input hidden states | |
| self.in_proj = nn.Linear(self.hidden_size, self.intermediate_size * 2, bias=self.use_bias) | |
| # selective projection used to make dt, B and C input dependant | |
| self.x_proj = nn.Linear(self.intermediate_size, self.time_step_rank + self.ssm_state_size * 2, bias=False) | |
| # time step projection (discretization) | |
| self.dt_proj = nn.Linear(self.time_step_rank, self.intermediate_size, bias=True) | |
| # S4D real initialization. These are not discretized! | |
| # The core is to load them, compute the discrete states, then write the updated state. Keeps the memory bounded | |
| A = torch.arange(1, self.ssm_state_size + 1, dtype=torch.float32)[None, :] | |
| A = A.expand(self.intermediate_size, -1).contiguous() | |
| self.A_log = nn.Parameter(torch.log(A)) | |
| self.D = nn.Parameter(torch.ones(self.intermediate_size)) | |
| self.out_proj = nn.Linear(self.intermediate_size, self.hidden_size, bias=self.use_bias) | |
| self.dt_layernorm = JambaRMSNorm(self.time_step_rank, eps=config.rms_norm_eps) | |
| self.b_layernorm = JambaRMSNorm(self.ssm_state_size, eps=config.rms_norm_eps) | |
| self.c_layernorm = JambaRMSNorm(self.ssm_state_size, eps=config.rms_norm_eps) | |
| if not is_fast_path_available: | |
| logger.warning_once( | |
| "The fast path is not available because on of `(selective_state_update, selective_scan_fn, causal_conv1d_fn, causal_conv1d_update, mamba_inner_fn)`" | |
| " is None. To install follow https://github.com/state-spaces/mamba/#installation and" | |
| " https://github.com/Dao-AILab/causal-conv1d. If you want to use the naive implementation, set `use_mamba_kernels=False` in the model config" | |
| ) | |
| def cuda_kernels_forward(self, hidden_states: torch.Tensor, cache_params: HybridMambaAttentionDynamicCache = None): | |
| batch_size, seq_len, _ = hidden_states.shape | |
| use_precomputed_states = ( | |
| cache_params is not None | |
| and cache_params.has_previous_state | |
| and seq_len == 1 | |
| and cache_params.conv_states[self.layer_idx].shape[0] | |
| == cache_params.ssm_states[self.layer_idx].shape[0] | |
| == batch_size | |
| ) | |
| # 1. Gated MLP's linear projection | |
| projected_states = self.in_proj(hidden_states).transpose(1, 2) | |
| # We can't use `mamba_inner_fn` even if in training and without cache params because we have the | |
| # inner layernorms which isn't supported by this fused kernel | |
| hidden_states, gate = projected_states.chunk(2, dim=1) | |
| # 2. Convolution sequence transformation | |
| conv_weights = self.conv1d.weight.view(self.conv1d.weight.size(0), self.conv1d.weight.size(2)) | |
| if use_precomputed_states: | |
| hidden_states = causal_conv1d_update( | |
| hidden_states.squeeze(-1), | |
| cache_params.conv_states[self.layer_idx], | |
| conv_weights, | |
| self.conv1d.bias, | |
| self.activation, | |
| ) | |
| hidden_states = hidden_states.unsqueeze(-1) | |
| else: | |
| if cache_params is not None: | |
| conv_states = nn.functional.pad(hidden_states, (self.conv_kernel_size - hidden_states.shape[-1], 0)) | |
| cache_params.conv_states[self.layer_idx].copy_(conv_states) | |
| hidden_states = causal_conv1d_fn(hidden_states, conv_weights, self.conv1d.bias, activation=self.activation) | |
| # 3. State Space Model sequence transformation | |
| # 3.a. input varying initialization of time_step, B and C | |
| ssm_parameters = self.x_proj(hidden_states.transpose(1, 2)) | |
| time_step, B, C = torch.split( | |
| ssm_parameters, [self.time_step_rank, self.ssm_state_size, self.ssm_state_size], dim=-1 | |
| ) | |
| time_step = self.dt_layernorm(time_step) | |
| B = self.b_layernorm(B) | |
| C = self.c_layernorm(C) | |
| # Here we need to apply dt_proj without the bias, as the bias is added in the selective scan kernel. | |
| # This is a hack to apply dt_proj while still using the forward pass of `torch.nn.Linear`, which is needed | |
| # in order to make quantization work. Quantization code replaces `torch.nn.Linear` layers with quantized | |
| # linear layers, and requires to call the forward pass directly. | |
| # The original code here was: ```discrete_time_step = self.dt_proj.weight @ time_step.transpose(1, 2)``` | |
| time_proj_bias = self.dt_proj.bias | |
| self.dt_proj.bias = None | |
| discrete_time_step = self.dt_proj(time_step).transpose(1, 2) | |
| self.dt_proj.bias = time_proj_bias | |
| A = -torch.exp(self.A_log.float()) | |
| # 3.c perform the recurrence y ← SSM(A, B, C)(x) | |
| time_proj_bias = time_proj_bias.float() if time_proj_bias is not None else None | |
| if use_precomputed_states: | |
| scan_outputs = selective_state_update( | |
| cache_params.ssm_states[self.layer_idx], | |
| hidden_states[..., 0], | |
| discrete_time_step[..., 0], | |
| A, | |
| B[:, 0], | |
| C[:, 0], | |
| self.D, | |
| gate[..., 0], | |
| time_proj_bias, | |
| dt_softplus=True, | |
| ).unsqueeze(-1) | |
| else: | |
| scan_outputs, ssm_state = selective_scan_fn( | |
| hidden_states, | |
| discrete_time_step, | |
| A, | |
| B.transpose(1, 2), | |
| C.transpose(1, 2), | |
| self.D.float(), | |
| gate, | |
| time_proj_bias, | |
| delta_softplus=True, | |
| return_last_state=True, | |
| ) | |
| if ssm_state is not None and cache_params is not None: | |
| cache_params.ssm_states[self.layer_idx].copy_(ssm_state) | |
| # 4. Final linear projection | |
| contextualized_states = self.out_proj(scan_outputs.transpose(1, 2)) | |
| return contextualized_states | |
| # fmt: off | |
| def slow_forward(self, input_states, cache_params: HybridMambaAttentionDynamicCache = None): | |
| batch_size, seq_len, _ = input_states.shape | |
| dtype = input_states.dtype | |
| # 1. Gated MLP's linear projection | |
| projected_states = self.in_proj(input_states).transpose(1, 2) # [batch, 2 * intermediate_size, seq_len] | |
| hidden_states, gate = projected_states.chunk(2, dim=1) | |
| use_cache = isinstance(cache_params,HybridMambaAttentionDynamicCache) | |
| # 2. Convolution sequence transformation | |
| if use_cache and cache_params.ssm_states[self.layer_idx].shape[0] == batch_size: | |
| if self.training: | |
| # In training mode, we don't want to perform in-place operations on ssm_state so we can compute the backwards pass | |
| ssm_state = cache_params.ssm_states[self.layer_idx].clone() | |
| else: | |
| ssm_state = cache_params.ssm_states[self.layer_idx] | |
| if cache_params.has_previous_state and seq_len == 1 and \ | |
| cache_params.conv_states[self.layer_idx].shape[0] == batch_size: | |
| conv_state = cache_params.conv_states[self.layer_idx] # [batch, intermediate_size, conv_kernel_size] | |
| conv_state = torch.roll(conv_state, shifts=-1, dims=-1) | |
| conv_state[:, :, -1] = hidden_states[:, :, 0] | |
| cache_params.conv_states[self.layer_idx] = conv_state | |
| hidden_states = torch.sum(conv_state * self.conv1d.weight[:, 0, :], dim=-1) | |
| if self.use_conv_bias: | |
| hidden_states += self.conv1d.bias | |
| hidden_states = self.act(hidden_states).to(dtype).unsqueeze(-1) # [batch, intermediate_size, 1] : decoding | |
| else: | |
| conv_state = nn.functional.pad( | |
| hidden_states, | |
| (self.conv_kernel_size - hidden_states.shape[-1], 0) | |
| ) | |
| cache_params.conv_states[self.layer_idx] = conv_state | |
| hidden_states = self.act(self.conv1d(hidden_states)[..., :seq_len]) # [batch, intermediate_size, seq_len] | |
| else: | |
| ssm_state = torch.zeros( | |
| (batch_size, self.intermediate_size, self.ssm_state_size), | |
| device=hidden_states.device, dtype=dtype | |
| ) | |
| hidden_states = self.act(self.conv1d(hidden_states)[..., :seq_len]) # [batch, intermediate_size, seq_len] | |
| # 3. State Space Model sequence transformation | |
| # 3.a. Selection: [batch, seq_len, self.time_step_rank + self.ssm_state_size * 2] | |
| ssm_parameters = self.x_proj(hidden_states.transpose(1, 2)) | |
| time_step, B, C = torch.split( | |
| ssm_parameters, [self.time_step_rank, self.ssm_state_size, self.ssm_state_size], dim=-1 | |
| ) | |
| time_step = self.dt_layernorm(time_step) | |
| B = self.b_layernorm(B) | |
| C = self.c_layernorm(C) | |
| discrete_time_step = self.dt_proj(time_step) # [batch, seq_len, intermediate_size] | |
| discrete_time_step = nn.functional.softplus(discrete_time_step).transpose(1, 2) # [batch, intermediate_size, seq_len] | |
| # 3.b. Discretization: B and C to [batch, seq_len, intermediate_size, ssm_state_size] (SRAM) | |
| A = -torch.exp(self.A_log.float()) # [intermediate_size, ssm_state_size] | |
| discrete_A = torch.exp(A[None, :, None, :] * discrete_time_step[:, :, :, None]) # [batch, intermediate_size, seq_len, ssm_state_size] | |
| discrete_B = discrete_time_step[:, :, :, None] * B[:, None, :, :].float() # [batch, intermediade_size, seq_len, ssm_state_size] | |
| deltaB_u = discrete_B * hidden_states[:, :, :, None].float() | |
| # 3.c perform the recurrence y ← SSM(A, B, C)(x) | |
| scan_outputs = [] | |
| for i in range(seq_len): | |
| ssm_state = discrete_A[:, :, i, :] * ssm_state + deltaB_u[:, :, i, :] # [batch, intermediade_size, ssm_state] | |
| scan_output = torch.matmul(ssm_state.to(dtype), C[:, i, :].unsqueeze(-1)) # [batch, intermediade_size, 1] | |
| scan_outputs.append(scan_output[:, :, 0]) | |
| scan_output = torch.stack(scan_outputs, dim=-1) # [batch, intermediade_size, seq_len] | |
| scan_output = scan_output + (hidden_states * self.D[None, :, None]) | |
| scan_output = (scan_output * self.act(gate)) | |
| if use_cache: | |
| cache_params.ssm_states[self.layer_idx] = ssm_state | |
| # 4. Final linear projection | |
| contextualized_states = self.out_proj(scan_output.transpose(1, 2)) # [batch, seq_len, hidden_size] | |
| return contextualized_states | |
| # fmt: on | |
| def forward(self, hidden_states, cache_params: HybridMambaAttentionDynamicCache = None): | |
| if self.use_fast_kernels: | |
| if not is_fast_path_available or "cuda" not in self.x_proj.weight.device.type: | |
| raise ValueError( | |
| "Fast Mamba kernels are not available. Make sure to they are installed and that the mamba module is on a CUDA device" | |
| ) | |
| return self.cuda_kernels_forward(hidden_states, cache_params) | |
| return self.slow_forward(hidden_states, cache_params) | |
| # Copied from transformers.models.mistral.modeling_mistral.MistralMLP with Mistral->Jamba | |
| class JambaMLP(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] | |
| def forward(self, x): | |
| return self.down_proj(self.act_fn(self.gate_proj(x)) * self.up_proj(x)) | |
| # Adapted from transformers.models.mixtral.modeling_mixtral.MixtralSparseMoeBlock with Mistral->Jamba | |
| class JambaSparseMoeBlock(nn.Module): | |
| """ | |
| This implementation is | |
| strictly equivalent to standard MoE with full capacity (no | |
| dropped tokens). It's faster since it formulates MoE operations | |
| in terms of block-sparse operations to accomodate imbalanced | |
| assignments of tokens to experts, whereas standard MoE either | |
| (1) drop tokens at the cost of reduced performance or (2) set | |
| capacity factor to number of experts and thus waste computation | |
| and memory on padding. | |
| """ | |
| def __init__(self, config: JambaConfig): | |
| super().__init__() | |
| self.hidden_dim = config.hidden_size | |
| self.ffn_dim = config.intermediate_size | |
| self.num_experts = config.num_experts | |
| self.top_k = config.num_experts_per_tok | |
| self.router = nn.Linear(self.hidden_dim, self.num_experts, bias=False) | |
| self.experts = nn.ModuleList([JambaMLP(config) for _ in range(self.num_experts)]) | |
| def forward(self, hidden_states: torch.Tensor) -> Tuple[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.router(hidden_states) | |
| routing_weights = F.softmax(router_logits, dim=1, dtype=torch.float) | |
| routing_weights, selected_experts = torch.topk(routing_weights, self.top_k, dim=-1) | |
| # 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 sollicitated | |
| 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]) | |
| if top_x.shape[0] == 0: | |
| continue | |
| # 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 JambaAttentionDecoderLayer(nn.Module): | |
| def __init__(self, config: JambaConfig, layer_idx: int): | |
| super().__init__() | |
| num_experts = config.layers_num_experts[layer_idx] | |
| self.self_attn = JAMBA_ATTENTION_CLASSES[config._attn_implementation](config, layer_idx) | |
| ffn_layer_class = JambaSparseMoeBlock if num_experts > 1 else JambaMLP | |
| self.feed_forward = ffn_layer_class(config) | |
| self.input_layernorm = JambaRMSNorm(config.hidden_size, eps=config.rms_norm_eps) | |
| self.pre_ff_layernorm = JambaRMSNorm(config.hidden_size, eps=config.rms_norm_eps) | |
| def forward( | |
| self, | |
| hidden_states: torch.Tensor, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_value: Optional[HybridMambaAttentionDynamicCache] = None, | |
| output_attentions: Optional[bool] = False, | |
| output_router_logits: Optional[bool] = False, | |
| use_cache: Optional[bool] = False, | |
| cache_position: Optional[torch.LongTensor] = None, | |
| ) -> Tuple[torch.FloatTensor, Optional[Tuple[torch.FloatTensor, 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, sequence_length)` where padding elements are indicated by 0. | |
| past_key_value (`HybridMambaAttentionDynamicCache`, *optional*): cached past key and value projection states | |
| 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`). | |
| cache_position (`torch.LongTensor` of shape `(sequence_length)`, *optional*): | |
| Indices depicting the position of the input sequence tokens in the sequence. | |
| """ | |
| residual = hidden_states | |
| hidden_states = self.input_layernorm(hidden_states) | |
| hidden_states, self_attn_weights, present_key_value = self.self_attn( | |
| hidden_states=hidden_states, | |
| attention_mask=attention_mask, | |
| position_ids=position_ids, | |
| past_key_value=past_key_value, | |
| output_attentions=output_attentions, | |
| use_cache=use_cache, | |
| cache_position=cache_position, | |
| ) | |
| # residual connection after attention | |
| hidden_states = residual + hidden_states | |
| # feed-forward (experts/MLP) | |
| residual = hidden_states | |
| hidden_states = self.pre_ff_layernorm(hidden_states) | |
| ff_outputs = self.feed_forward(hidden_states) | |
| if isinstance(ff_outputs, tuple): | |
| hidden_states, router_logits = ff_outputs | |
| else: | |
| hidden_states, router_logits = ff_outputs, None | |
| hidden_states = residual + hidden_states | |
| outputs = (hidden_states,) | |
| if output_attentions: | |
| outputs += (self_attn_weights,) | |
| if use_cache: | |
| outputs += (present_key_value,) | |
| if output_router_logits: | |
| outputs += (router_logits,) | |
| return outputs | |
| class JambaMambaDecoderLayer(nn.Module): | |
| def __init__(self, config: JambaConfig, layer_idx: int): | |
| super().__init__() | |
| num_experts = config.layers_num_experts[layer_idx] | |
| self.mamba = JambaMambaMixer(config=config, layer_idx=layer_idx) | |
| ffn_layer_class = JambaSparseMoeBlock if num_experts > 1 else JambaMLP | |
| self.feed_forward = ffn_layer_class(config) | |
| self.input_layernorm = JambaRMSNorm(config.hidden_size, eps=config.rms_norm_eps) | |
| self.pre_ff_layernorm = JambaRMSNorm(config.hidden_size, eps=config.rms_norm_eps) | |
| def forward( | |
| self, | |
| hidden_states: torch.Tensor, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_value: Optional[HybridMambaAttentionDynamicCache] = None, | |
| output_attentions: Optional[bool] = False, | |
| output_router_logits: Optional[bool] = False, | |
| use_cache: Optional[bool] = False, | |
| cache_position: Optional[torch.LongTensor] = None, | |
| ) -> Tuple[torch.FloatTensor, Optional[Tuple[torch.FloatTensor, 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, sequence_length)` where padding elements are indicated by 0. | |
| past_key_value (`HybridMambaAttentionDynamicCache`, *optional*): cached past key and value projection states | |
| 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`). | |
| cache_position (`torch.LongTensor` of shape `(sequence_length)`, *optional*): | |
| Indices depicting the position of the input sequence tokens in the sequence. | |
| """ | |
| residual = hidden_states | |
| hidden_states = self.input_layernorm(hidden_states) | |
| hidden_states = self.mamba( | |
| hidden_states=hidden_states, | |
| cache_params=past_key_value, | |
| ) | |
| self_attn_weights = None | |
| # residual connection after mamba | |
| hidden_states = residual + hidden_states | |
| # feed-forward (experts/MLP) | |
| residual = hidden_states | |
| hidden_states = self.pre_ff_layernorm(hidden_states) | |
| ff_outputs = self.feed_forward(hidden_states) | |
| if isinstance(ff_outputs, tuple): | |
| hidden_states, router_logits = ff_outputs | |
| else: | |
| hidden_states, router_logits = ff_outputs, None | |
| hidden_states = residual + hidden_states | |
| outputs = (hidden_states,) | |
| if output_attentions: | |
| outputs += (self_attn_weights,) | |
| if use_cache: | |
| outputs += (past_key_value,) | |
| if output_router_logits: | |
| outputs += (router_logits,) | |
| return outputs | |
| JAMBA_START_DOCSTRING = r""" | |
| This model inherits from [`PreTrainedModel`]. Check the superclass documentation for the generic methods the | |
| library implements for all its model (such as downloading or saving, resizing the input embeddings, pruning heads | |
| etc.) | |
| This model is also a PyTorch [torch.nn.Module](https://pytorch.org/docs/stable/nn.html#torch.nn.Module) subclass. | |
| Use it as a regular PyTorch Module and refer to the PyTorch documentation for all matter related to general usage | |
| and behavior. | |
| Parameters: | |
| config ([`JambaConfig`]): | |
| Model configuration class with all the parameters of the model. Initializing with a config file does not | |
| load the weights associated with the model, only the configuration. Check out the | |
| [`~PreTrainedModel.from_pretrained`] method to load the model weights. | |
| """ | |
| class JambaPreTrainedModel(PreTrainedModel): | |
| config_class = JambaConfig | |
| base_model_prefix = "model" | |
| supports_gradient_checkpointing = True | |
| _no_split_modules = ["JambaAttentionDecoderLayer", "JambaMambaDecoderLayer"] | |
| _skip_keys_device_placement = "past_key_values" | |
| _supports_flash_attn_2 = True | |
| _supports_sdpa = True | |
| _supports_cache_class = True | |
| def _init_weights(self, module): | |
| std = self.config.initializer_range | |
| if isinstance(module, (nn.Linear, nn.Conv1d)): | |
| module.weight.data.normal_(mean=0.0, std=std) | |
| if module.bias is not None: | |
| module.bias.data.zero_() | |
| elif isinstance(module, nn.Embedding): | |
| module.weight.data.normal_(mean=0.0, std=std) | |
| if module.padding_idx is not None: | |
| module.weight.data[module.padding_idx].zero_() | |
| JAMBA_INPUTS_DOCSTRING = r""" | |
| Args: | |
| input_ids (`torch.LongTensor` of shape `(batch_size, sequence_length)`): | |
| Indices of input sequence tokens in the vocabulary. Padding will be ignored by default should you provide | |
| it. | |
| Indices can be obtained using [`AutoTokenizer`]. See [`PreTrainedTokenizer.encode`] and | |
| [`PreTrainedTokenizer.__call__`] for details. | |
| [What are input IDs?](../glossary#input-ids) | |
| attention_mask (`torch.Tensor` of shape `(batch_size, sequence_length)`, *optional*): | |
| Mask to avoid performing attention on padding token indices. Mask values selected in `[0, 1]`: | |
| - 1 for tokens that are **not masked**, | |
| - 0 for tokens that are **masked**. | |
| [What are attention masks?](../glossary#attention-mask) | |
| Indices can be obtained using [`AutoTokenizer`]. See [`PreTrainedTokenizer.encode`] and | |
| [`PreTrainedTokenizer.__call__`] for details. | |
| If `past_key_values` is used, optionally only the last `input_ids` have to be input (see | |
| `past_key_values`). | |
| If you want to change padding behavior, you should read [`modeling_opt._prepare_decoder_attention_mask`] | |
| and modify to your needs. See diagram 1 in [the paper](https://arxiv.org/abs/1910.13461) for more | |
| information on the default strategy. | |
| - 1 indicates the head is **not masked**, | |
| - 0 indicates the head is **masked**. | |
| position_ids (`torch.LongTensor` of shape `(batch_size, sequence_length)`, *optional*): | |
| Indices of positions of each input sequence tokens in the position embeddings. Selected in the range `[0, | |
| config.n_positions - 1]`. | |
| [What are position IDs?](../glossary#position-ids) | |
| past_key_values (`HybridMambaAttentionDynamicCache`, *optional*, returned when `use_cache=True` is passed or when `config.use_cache=True`): | |
| A HybridMambaAttentionDynamicCache object containing pre-computed hidden-states (keys and values in the | |
| self-attention blocks and convolution and ssm states in the mamba blocks) that can be used (see | |
| `past_key_values` input) to speed up sequential decoding. | |
| Key and value cache tensors have shape `(batch_size, num_heads, seq_len, head_dim)`. | |
| Convolution and ssm states tensors have shape `(batch_size, d_inner, d_conv)` and | |
| `(batch_size, d_inner, d_state)` respectively. | |
| See the `HybridMambaAttentionDynamicCache` class for more details. | |
| If `past_key_values` are used, the user can optionally input only the last `input_ids` (those that | |
| don't have their past key value states given to this model) of shape `(batch_size, 1)` instead of all | |
| `input_ids` of shape `(batch_size, sequence_length)`. | |
| inputs_embeds (`torch.FloatTensor` of shape `(batch_size, sequence_length, hidden_size)`, *optional*): | |
| Optionally, instead of passing `input_ids` you can choose to directly pass an embedded representation. This | |
| is useful if you want more control over how to convert `input_ids` indices into associated vectors than the | |
| model's internal embedding lookup matrix. | |
| 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`). | |
| 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_hidden_states (`bool`, *optional*): | |
| Whether or not to return the hidden states of all layers. See `hidden_states` 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. | |
| return_dict (`bool`, *optional*): | |
| Whether or not to return a [`~utils.ModelOutput`] instead of a plain tuple. | |
| cache_position (`torch.LongTensor` of shape `(sequence_length)`, *optional*): | |
| Indices depicting the position of the input sequence tokens in the sequence. Contrarily to `position_ids`, | |
| this tensor is not affected by padding. It is used to update the cache in the correct position and to infer | |
| the complete sequence length. | |
| """ | |
| ALL_DECODER_LAYER_TYPES = {"attention": JambaAttentionDecoderLayer, "mamba": JambaMambaDecoderLayer} | |
| # Adapted from transformers.models.mistral.modeling_mistral.MistralModel with MISTRAL->JAMBA, Mistral->Jamba | |
| class JambaModel(JambaPreTrainedModel): | |
| """ | |
| Transformer decoder consisting of *config.num_hidden_layers* layers. Each layer is a [`JambaDecoderLayer`] | |
| Args: | |
| config: JambaConfig | |
| """ | |
| def __init__(self, config: JambaConfig): | |
| 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) | |
| decoder_layers = [] | |
| for i in range(config.num_hidden_layers): | |
| layer_class = ALL_DECODER_LAYER_TYPES[config.layers_block_type[i]] | |
| decoder_layers.append(layer_class(config, layer_idx=i)) | |
| self.layers = nn.ModuleList(decoder_layers) | |
| self._attn_implementation = config._attn_implementation | |
| self.final_layernorm = JambaRMSNorm(config.hidden_size, eps=config.rms_norm_eps) | |
| self.gradient_checkpointing = False | |
| # Initialize weights and apply final processing | |
| self.post_init() | |
| def get_input_embeddings(self): | |
| return self.embed_tokens | |
| def set_input_embeddings(self, value): | |
| self.embed_tokens = value | |
| def forward( | |
| self, | |
| input_ids: torch.LongTensor = None, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_values: Optional[HybridMambaAttentionDynamicCache] = None, | |
| inputs_embeds: Optional[torch.FloatTensor] = 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, | |
| ) -> Union[Tuple, MoeModelOutputWithPast]: | |
| 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 | |
| ) | |
| use_cache = use_cache if use_cache is not None else self.config.use_cache | |
| return_dict = return_dict if return_dict is not None else self.config.use_return_dict | |
| if (input_ids is None) ^ (inputs_embeds is not None): | |
| raise ValueError( | |
| "You cannot specify both input_ids and inputs_embeds at the same time, and must specify either one" | |
| ) | |
| if self.gradient_checkpointing and self.training and use_cache: | |
| logger.warning_once( | |
| "`use_cache=True` is incompatible with gradient checkpointing. Setting `use_cache=False`." | |
| ) | |
| use_cache = False | |
| if inputs_embeds is None: | |
| inputs_embeds = self.embed_tokens(input_ids) | |
| hidden_states = inputs_embeds | |
| if use_cache and past_key_values is None: | |
| logger.warning_once( | |
| "Jamba requires an initialized `HybridMambaAttentionDynamicCache` to return a cache. None was " | |
| "provided, so no cache will be returned." | |
| ) | |
| if cache_position is None: | |
| cache_position = torch.arange(hidden_states.shape[1], device=hidden_states.device) | |
| if position_ids is None: | |
| position_ids = cache_position.unsqueeze(0) | |
| causal_mask = self._update_causal_mask(attention_mask, inputs_embeds, cache_position) | |
| all_hidden_states = () if output_hidden_states else None | |
| all_self_attns = () if output_attentions else None | |
| all_router_logits = () if output_router_logits else None | |
| for decoder_layer in self.layers: | |
| if output_hidden_states: | |
| all_hidden_states += (hidden_states,) | |
| if self.gradient_checkpointing and self.training: | |
| layer_outputs = self._gradient_checkpointing_func( | |
| decoder_layer.__call__, | |
| hidden_states, | |
| causal_mask, | |
| position_ids, | |
| past_key_values, | |
| output_attentions, | |
| output_router_logits, | |
| use_cache, | |
| cache_position, | |
| ) | |
| else: | |
| layer_outputs = decoder_layer( | |
| hidden_states, | |
| attention_mask=causal_mask, | |
| position_ids=position_ids, | |
| past_key_value=past_key_values, | |
| output_attentions=output_attentions, | |
| output_router_logits=output_router_logits, | |
| use_cache=use_cache, | |
| cache_position=cache_position, | |
| ) | |
| hidden_states = layer_outputs[0] | |
| if output_attentions: | |
| if layer_outputs[1] is not None: | |
| # append attentions only of attention layers. Mamba layers return `None` as the attention weights | |
| all_self_attns += (layer_outputs[1],) | |
| if output_router_logits: | |
| if layer_outputs[-1] is not None: | |
| # append router logits only of expert layers. Regular MLP layers return `None` as the router logits | |
| all_router_logits += (layer_outputs[-1],) | |
| hidden_states = self.final_layernorm(hidden_states) | |
| # add hidden states from the last decoder layer | |
| if output_hidden_states: | |
| all_hidden_states += (hidden_states,) | |
| if past_key_values and not past_key_values.has_previous_state: | |
| past_key_values.has_previous_state = True | |
| next_cache = None if not use_cache else past_key_values | |
| if not return_dict: | |
| return tuple( | |
| v | |
| for v in [hidden_states, next_cache, all_hidden_states, all_self_attns, all_router_logits] | |
| if v is not None | |
| ) | |
| return MoeModelOutputWithPast( | |
| last_hidden_state=hidden_states, | |
| past_key_values=next_cache, | |
| hidden_states=all_hidden_states, | |
| attentions=all_self_attns, | |
| router_logits=all_router_logits, | |
| ) | |
| def _update_causal_mask(self, attention_mask, input_tensor, cache_position): | |
| if self.config._attn_implementation == "flash_attention_2": | |
| if attention_mask is not None and 0.0 in attention_mask: | |
| return attention_mask | |
| return None | |
| dtype, device = input_tensor.dtype, input_tensor.device | |
| min_dtype = torch.finfo(dtype).min | |
| sequence_length = input_tensor.shape[1] | |
| target_length = cache_position[-1] + 1 | |
| causal_mask = torch.full((sequence_length, target_length), fill_value=min_dtype, dtype=dtype, device=device) | |
| if sequence_length != 1: | |
| causal_mask = torch.triu(causal_mask, diagonal=1) | |
| causal_mask *= torch.arange(target_length, device=device) > cache_position.reshape(-1, 1) | |
| causal_mask = causal_mask[None, None, :, :].expand(input_tensor.shape[0], 1, -1, -1) | |
| if attention_mask is not None: | |
| causal_mask = causal_mask.clone() # copy to contiguous memory for in-place edit | |
| if attention_mask.dim() == 2: | |
| mask_length = attention_mask.shape[-1] | |
| padding_mask = causal_mask[..., :mask_length].eq(0.0) * attention_mask[:, None, None, :].eq(0.0) | |
| causal_mask[..., :mask_length] = causal_mask[..., :mask_length].masked_fill(padding_mask, min_dtype) | |
| if ( | |
| self.config._attn_implementation == "sdpa" | |
| and attention_mask is not None | |
| and attention_mask.device.type == "cuda" | |
| ): | |
| # Attend to all tokens in fully masked rows in the causal_mask, for example the relevant first rows when | |
| # using left padding. This is required by F.scaled_dot_product_attention memory-efficient attention path. | |
| # Details: https://github.com/pytorch/pytorch/issues/110213 | |
| causal_mask = AttentionMaskConverter._unmask_unattended(causal_mask, min_dtype) | |
| return causal_mask | |
| # Adapted from transformers.models.mixtral.modeling_mixtral.MixtralForCausalLM with MIXTRAL->JAMBA, Mixtral->Jamba | |
| class JambaForCausalLM(JambaPreTrainedModel): | |
| _tied_weights_keys = ["lm_head.weight"] | |
| def __init__(self, config: JambaConfig): | |
| super().__init__(config) | |
| self.model = JambaModel(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() | |
| def get_input_embeddings(self): | |
| return self.model.embed_tokens | |
| def set_input_embeddings(self, value): | |
| self.model.embed_tokens = value | |
| def get_output_embeddings(self): | |
| return self.lm_head | |
| def set_output_embeddings(self, new_embeddings): | |
| self.lm_head = new_embeddings | |
| def set_decoder(self, decoder): | |
| self.model = decoder | |
| def get_decoder(self): | |
| return self.model | |
| # Ignore copy | |
| def forward( | |
| self, | |
| input_ids: torch.LongTensor = None, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_values: Optional[HybridMambaAttentionDynamicCache] = 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, | |
| num_logits_to_keep: Optional[Union[int, None]] = None, | |
| ) -> Union[Tuple, MoeCausalLMOutputWithPast]: | |
| r""" | |
| Args: | |
| 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]`. | |
| num_logits_to_keep (`int` or `None`, *optional*): | |
| Calculate logits for the last `num_logits_to_keep` tokens. If `None`, calculate logits for all | |
| `input_ids`. Only last token logits are needed for generation, and calculating them only for that token | |
| can save memory, which becomes pretty significant for long sequences. | |
| Returns: | |
| Example: | |
| ```python | |
| >>> from transformers import AutoTokenizer, JambaForCausalLM | |
| >>> model = JambaForCausalLM.from_pretrained("ai21labs/Jamba-v0.1") | |
| >>> tokenizer = AutoTokenizer.from_pretrained("ai21labs/Jamba-v0.1") | |
| >>> 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 conscious, but I can talk to you." | |
| ```""" | |
| 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, | |
| cache_position=cache_position, | |
| return_dict=return_dict, | |
| ) | |
| hidden_states = outputs[0] | |
| if num_logits_to_keep is None: | |
| logits = self.lm_head(hidden_states) | |
| else: | |
| logits = self.lm_head(hidden_states[..., -num_logits_to_keep:, :]) | |
| logits = logits.float() | |
| loss = None | |
| if labels is not None: | |
| # Shift so that tokens < n predict n | |
| shift_logits = logits[..., :-1, :].contiguous() | |
| shift_labels = labels[..., 1:].contiguous() | |
| # Flatten the tokens | |
| loss_fct = CrossEntropyLoss() | |
| shift_logits = shift_logits.view(-1, self.config.vocab_size) | |
| shift_labels = shift_labels.view(-1) | |
| # Enable model parallelism | |
| shift_labels = shift_labels.to(shift_logits.device) | |
| loss = loss_fct(shift_logits, shift_labels) | |
| aux_loss = None | |
| if output_router_logits: | |
| aux_loss = load_balancing_loss_func( | |
| outputs.router_logits if return_dict else outputs[-1], | |
| self.num_experts, | |
| self.num_experts_per_tok, | |
| attention_mask, | |
| ) | |
| if labels is not None: | |
| loss += self.router_aux_loss_coef * aux_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 = (aux_loss,) + output | |
| return (loss,) + output if loss is not None else output | |
| return MoeCausalLMOutputWithPast( | |
| loss=loss, | |
| aux_loss=aux_loss, | |
| logits=logits, | |
| past_key_values=outputs.past_key_values, | |
| hidden_states=outputs.hidden_states, | |
| attentions=outputs.attentions, | |
| router_logits=outputs.router_logits, | |
| ) | |
| def prepare_inputs_for_generation( | |
| self, | |
| input_ids, | |
| past_key_values=None, | |
| attention_mask=None, | |
| inputs_embeds=None, | |
| output_router_logits=False, | |
| cache_position=None, | |
| **kwargs, | |
| ): | |
| empty_past_kv = past_key_values is None | |
| # Omit tokens covered by past_key_values | |
| if not empty_past_kv: | |
| past_length = cache_position[0] if cache_position is not None else attention_mask.shape[1] | |
| max_cache_length = self.config.sliding_window | |
| # Keep only the unprocessed tokens: | |
| # 1 - If the length of the attention_mask exceeds the length of input_ids, then we are in a setting where | |
| # some of the inputs are exclusively passed as part of the cache (e.g. when passing input_embeds as | |
| # input) | |
| if attention_mask is not None and attention_mask.shape[1] > input_ids.shape[1]: | |
| input_ids = input_ids[:, -(attention_mask.shape[1] - past_length) :] | |
| # 2 - If the past_length is smaller than input_ids', then input_ids holds all input tokens. We can discard | |
| # input_ids based on the past_length. | |
| elif past_length < input_ids.shape[1]: | |
| input_ids = input_ids[:, past_length:] | |
| # 3 - Otherwise (past_length >= input_ids.shape[1]), let's assume input_ids only has unprocessed tokens. | |
| # If we are about to go beyond the maximum cache length, we need to crop the input attention mask. | |
| if ( | |
| max_cache_length is not None | |
| and attention_mask is not None | |
| and past_length + input_ids.shape[1] > max_cache_length | |
| ): | |
| attention_mask = attention_mask[:, -max_cache_length:] | |
| else: | |
| past_key_values = HybridMambaAttentionDynamicCache( | |
| self.config, input_ids.shape[0], self.dtype, device=self.device | |
| ) | |
| position_ids = kwargs.get("position_ids", None) | |
| if attention_mask is not None and position_ids is None: | |
| # create position_ids on the fly for batch generation | |
| position_ids = attention_mask.long().cumsum(-1) - 1 | |
| position_ids.masked_fill_(attention_mask == 0, 1) | |
| if not empty_past_kv: | |
| position_ids = position_ids[:, -input_ids.shape[1] :] | |
| # if `inputs_embeds` are passed, we only want to use them in the 1st generation step | |
| if inputs_embeds is not None and empty_past_kv: | |
| model_inputs = {"inputs_embeds": inputs_embeds} | |
| else: | |
| model_inputs = {"input_ids": input_ids} | |
| model_inputs.update( | |
| { | |
| "position_ids": position_ids, | |
| "past_key_values": past_key_values, | |
| "use_cache": kwargs.get("use_cache"), | |
| "attention_mask": attention_mask, | |
| "output_router_logits": output_router_logits, | |
| "num_logits_to_keep": self.config.num_logits_to_keep, | |
| "cache_position": cache_position, | |
| } | |
| ) | |
| return model_inputs | |
| # Copied from transformers.models.mixtral.modeling_mixtral.MixtralForSequenceClassification with Mixtral->Jamba, MIXTRAL->JAMBA | |
| class JambaForSequenceClassification(JambaPreTrainedModel): | |
| def __init__(self, config): | |
| super().__init__(config) | |
| self.num_labels = config.num_labels | |
| self.model = JambaModel(config) | |
| self.score = nn.Linear(config.hidden_size, self.num_labels, bias=False) | |
| # Initialize weights and apply final processing | |
| self.post_init() | |
| def get_input_embeddings(self): | |
| return self.model.embed_tokens | |
| def set_input_embeddings(self, value): | |
| self.model.embed_tokens = value | |
| def forward( | |
| self, | |
| input_ids: torch.LongTensor = None, | |
| attention_mask: Optional[torch.Tensor] = None, | |
| position_ids: Optional[torch.LongTensor] = None, | |
| past_key_values: Optional[List[torch.FloatTensor]] = 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, | |
| return_dict: Optional[bool] = None, | |
| ) -> Union[Tuple, SequenceClassifierOutputWithPast]: | |
| r""" | |
| labels (`torch.LongTensor` of shape `(batch_size,)`, *optional*): | |
| Labels for computing the sequence classification/regression loss. Indices should be in `[0, ..., | |
| config.num_labels - 1]`. If `config.num_labels == 1` a regression loss is computed (Mean-Square loss), If | |
| `config.num_labels > 1` a classification loss is computed (Cross-Entropy). | |
| """ | |
| return_dict = return_dict if return_dict is not None else self.config.use_return_dict | |
| transformer_outputs = self.model( | |
| 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, | |
| return_dict=return_dict, | |
| ) | |
| hidden_states = transformer_outputs[0] | |
| logits = self.score(hidden_states) | |
| if input_ids is not None: | |
| batch_size = input_ids.shape[0] | |
| else: | |
| batch_size = inputs_embeds.shape[0] | |
| if self.config.pad_token_id is None and batch_size != 1: | |
| raise ValueError("Cannot handle batch sizes > 1 if no padding token is defined.") | |
| if self.config.pad_token_id is None: | |
| sequence_lengths = -1 | |
| else: | |
| if input_ids is not None: | |
| # if no pad token found, use modulo instead of reverse indexing for ONNX compatibility | |
| sequence_lengths = torch.eq(input_ids, self.config.pad_token_id).int().argmax(-1) - 1 | |
| sequence_lengths = sequence_lengths % input_ids.shape[-1] | |
| sequence_lengths = sequence_lengths.to(logits.device) | |
| else: | |
| sequence_lengths = -1 | |
| pooled_logits = logits[torch.arange(batch_size, device=logits.device), sequence_lengths] | |
| loss = None | |
| if labels is not None: | |
| labels = labels.to(logits.device) | |
| if self.config.problem_type is None: | |
| if self.num_labels == 1: | |
| self.config.problem_type = "regression" | |
| elif self.num_labels > 1 and (labels.dtype == torch.long or labels.dtype == torch.int): | |
| self.config.problem_type = "single_label_classification" | |
| else: | |
| self.config.problem_type = "multi_label_classification" | |
| if self.config.problem_type == "regression": | |
| loss_fct = MSELoss() | |
| if self.num_labels == 1: | |
| loss = loss_fct(pooled_logits.squeeze(), labels.squeeze()) | |
| else: | |
| loss = loss_fct(pooled_logits, labels) | |
| elif self.config.problem_type == "single_label_classification": | |
| loss_fct = CrossEntropyLoss() | |
| loss = loss_fct(pooled_logits.view(-1, self.num_labels), labels.view(-1)) | |
| elif self.config.problem_type == "multi_label_classification": | |
| loss_fct = BCEWithLogitsLoss() | |
| loss = loss_fct(pooled_logits, labels) | |
| if not return_dict: | |
| output = (pooled_logits,) + transformer_outputs[1:] | |
| return ((loss,) + output) if loss is not None else output | |
| return SequenceClassifierOutputWithPast( | |
| loss=loss, | |
| logits=pooled_logits, | |
| past_key_values=transformer_outputs.past_key_values, | |
| hidden_states=transformer_outputs.hidden_states, | |
| attentions=transformer_outputs.attentions, | |
| ) | |