vision.py 19.5 KB
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# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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import itertools
import math
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from abc import ABC, abstractmethod
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from collections.abc import Callable
from typing import Final, Generic, Literal, Protocol, TypeAlias, TypeVar
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import torch
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from transformers import PretrainedConfig

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from vllm.config import VllmConfig
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from vllm.distributed import (
    get_tensor_model_parallel_rank,
    get_tensor_model_parallel_world_size,
    tensor_model_parallel_all_gather,
)
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from vllm.logger import init_logger
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from vllm.platforms import current_platform
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from vllm.v1.attention.backends.registry import AttentionBackendEnum
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logger = init_logger(__name__)
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_C = TypeVar("_C", bound=PretrainedConfig)


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class _RootConfig(Protocol[_C]):
    vision_config: _C


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class VisionEncoderInfo(ABC, Generic[_C]):
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    def __init__(self, hf_config: _RootConfig[_C]) -> None:
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        super().__init__()

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        self.hf_config = hf_config
        self.vision_config = hf_config.vision_config
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    @abstractmethod
    def get_num_image_tokens(
        self,
        *,
        image_width: int,
        image_height: int,
    ) -> int:
        raise NotImplementedError

    @abstractmethod
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    def get_image_size(self) -> int:
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        raise NotImplementedError

    @abstractmethod
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    def get_patch_size(self) -> int:
        raise NotImplementedError

    @abstractmethod
    def get_patch_grid_length(self) -> int:
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        raise NotImplementedError


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class VisionLanguageConfig(Protocol):
    vision_config: Final[PretrainedConfig]


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def get_vision_encoder_info(hf_config: VisionLanguageConfig) -> VisionEncoderInfo:
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    # Avoid circular imports
    from .clip import CLIPEncoderInfo, CLIPVisionConfig
    from .pixtral import PixtralHFEncoderInfo, PixtralVisionConfig
    from .siglip import SiglipEncoderInfo, SiglipVisionConfig

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    if isinstance(hf_config.vision_config, CLIPVisionConfig):
        return CLIPEncoderInfo(hf_config)
    if isinstance(hf_config.vision_config, PixtralVisionConfig):
        return PixtralHFEncoderInfo(hf_config)
    if isinstance(hf_config.vision_config, SiglipVisionConfig):
        return SiglipEncoderInfo(hf_config)

    msg = f"Unsupported vision config: {type(hf_config.vision_config)}"
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    raise NotImplementedError(msg)
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def get_vit_attn_backend(
    head_size: int,
    dtype: torch.dtype,
    *,
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    attn_backend_override: AttentionBackendEnum | None = None,
) -> AttentionBackendEnum:
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    """
    Get the available attention backend for Vision Transformer.
    """
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    return current_platform.get_vit_attn_backend(
        head_size,
        dtype,
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        backend=attn_backend_override,
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    )
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def should_torch_compile_mm_vit(vllm_config: VllmConfig) -> bool:
    """Callable to be passed to `@support_torch_compile`'s `enable_if` argument."""
    return vllm_config.compilation_config.compile_mm_encoder


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VisionFeatureSelectStrategyStr = Literal["class", "default", "full"]

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VisionFeatureSelectStrategy: TypeAlias = (
    VisionFeatureSelectStrategyStr | Callable[[torch.Tensor], torch.Tensor]
)
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def _get_vision_feature_selector(
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    strategy: VisionFeatureSelectStrategy | str,
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) -> Callable[[torch.Tensor], torch.Tensor]:
    if callable(strategy):
        return strategy

    # https://github.com/huggingface/transformers/blob/cd74917ffc3e8f84e4a886052c5ab32b7ac623cc/src/transformers/models/clip/modeling_clip.py#L762
    if strategy == "class":
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        return lambda feats: feats[:, :1, :]
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    # https://github.com/huggingface/transformers/blob/4a02bc7004285bdb12cc033e87ad2578ce2fa900/src/transformers/models/llava/modeling_llava.py#L196
    if strategy == "default":
        return lambda feats: feats[:, 1:, :]

    if strategy == "full":
        return lambda feats: feats

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    raise ValueError(f"Unexpected feature select strategy: {strategy!r}")


def get_num_selected_vision_tokens(
    num_vision_tokens: int,
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    strategy: VisionFeatureSelectStrategy | str,
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) -> int:
    if callable(strategy):
        dummy_features = torch.empty(1, num_vision_tokens, 64)  # [B, L, D]
        dummy_selected_features = strategy(dummy_features)
        return dummy_selected_features.shape[1]

    if strategy == "class":
        return 1

    if strategy == "default":
        return num_vision_tokens - 1

    if strategy == "full":
        return num_vision_tokens

    raise ValueError(f"Unexpected feature select strategy: {strategy!r}")
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def resolve_visual_encoder_outputs(
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    encoder_outputs: torch.Tensor | list[torch.Tensor],
    post_layer_norm: torch.nn.LayerNorm | None,
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    *,
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    select_layers: list[int] | None = None,
    max_possible_layers: int | None = None,
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    last_hs_proc: Callable[[torch.Tensor], torch.Tensor] | None = None,
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    feature_select_strategy: VisionFeatureSelectStrategy | None = None,
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) -> torch.Tensor:
    """Given the outputs a visual encoder module that may correspond to the
    output of the last layer, or a list of hidden states to be stacked,
    handle post normalization and resolve it into a single output tensor.

    Args:
        encoder_outputs: Output of encoder's last layer or all hidden states.
        post_layer_norm: Post norm to apply to the output of the encoder.
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        select_layers: Optional layer indices to grab from the encoder
            outputs; if provided, encoder outputs must be a list.
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        max_possible_layers: Total layers in the fully loaded visual encoder.
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        last_hs_proc: Optional callable to be applied to the last layer if it
            is used, e.g., pooling head for Siglip. This is done prior to
            feature selection and layer normalization. If select_layers are
            provided, the output of last_hs_proc must be able to be
            concatenated with the other select_layers along the last dimension.
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        feature_select_strategy: Defines how to select the hidden states
            from each layer.
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    """
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    if select_layers is None:
        if not isinstance(encoder_outputs, torch.Tensor):
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            raise ValueError(
                "Expected only a single encoder output when "
                "`select_layers` is not provided"
            )
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        # Preprocess the encoder outputs as needed, e.g., map head
        # and layer norm for siglip, which runs before feature selection
        if last_hs_proc is not None:
            encoder_outputs = last_hs_proc(encoder_outputs)

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        if feature_select_strategy is not None:
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            select_features = _get_vision_feature_selector(feature_select_strategy)
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            encoder_outputs = select_features(encoder_outputs)

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        if post_layer_norm is not None:
            return post_layer_norm(encoder_outputs)
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        return encoder_outputs

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    if max_possible_layers is None:
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        raise ValueError(
            "`max_possible_layers` must be provided alongside `select_layers`"
        )
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    # Get the hidden states corresponding to the layer indices.
    # Negative values are relative to the full visual encoder,
    # so offset them depending on how many layers were loaded.
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    # NOTE: this assumes that encoder_outputs is a list containing
    # the inputs to the visual encoder, followed by the hidden states
    # of each layer.
    num_loaded_layers = len(encoder_outputs) - 1
    offset = max_possible_layers - num_loaded_layers
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    hs_pool = [
        encoder_outputs[layer_idx]
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        if layer_idx >= 0
        else encoder_outputs[layer_idx + offset]
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        for layer_idx in select_layers
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    ]

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    uses_last_layer = select_layers[-1] in (max_possible_layers - 1, -1)
    if last_hs_proc is not None and uses_last_layer:
        hs_pool[-1] = last_hs_proc(hs_pool[-1])

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    if feature_select_strategy is not None:
        select_features = _get_vision_feature_selector(feature_select_strategy)
        hs_pool = [select_features(hs) for hs in hs_pool]

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    # Apply post-norm on the final hidden state if we are using it
    if post_layer_norm is not None and uses_last_layer:
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        hs_pool[-1] = post_layer_norm(hs_pool[-1])

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    return torch.cat(hs_pool, dim=-1)
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def run_dp_sharded_vision_model(
    image_input: torch.Tensor, vision_model: torch.nn.Module
) -> torch.Tensor:
    """Run a vision model with data parallelism (DP) sharding. The function
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    will shard the input image tensor on the first dimension and run the vision
    model

    Args:
        image_input (torch.Tensor): Image input tensor.
        vision_model (torch.nn.Module): Vision model.
    Returns:
        torch.Tensor: Output image embeddings
    """

    num_chunks = image_input.shape[0]
    mp_world_size = get_tensor_model_parallel_world_size()
    num_chunks_per_rank = (num_chunks + mp_world_size - 1) // mp_world_size
    num_padded_chunks = num_chunks_per_rank * mp_world_size - num_chunks
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    pad = (0,) * (2 * (image_input.dim() - 1)) + (0, num_padded_chunks)
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    image_input_padded = torch.nn.functional.pad(image_input, pad)
    rank = get_tensor_model_parallel_rank()
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    image_input_per_rank = image_input_padded[
        rank * num_chunks_per_rank : (rank + 1) * num_chunks_per_rank, ...
    ]
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    vision_embeddings = vision_model(image_input_per_rank)
    # Ensure tensor is contiguous before all_gather
    vision_embeddings = vision_embeddings.contiguous()
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    vision_embeddings = tensor_model_parallel_all_gather(vision_embeddings, dim=0)
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    vision_embeddings = vision_embeddings[:num_chunks, ...]
    return vision_embeddings


def get_load_balance_assignment(
    sizes: list[int],
    num_gpus: int = 2,
) -> tuple[list[int], list[int], list[int]]:
    """
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    Generate load balancing assignment and metadata
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    for distributing data across GPUs.
    The load is determined by the total image sizes,
    not the number of images.
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    Args:
        sizes: The size of each image
        num_gpus: Number of GPUs to balance across
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    Returns:
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        shuffle_indices:
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            Indices to reorder data for balanced loading
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        gpu_sample_counts:
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            Number of samples assigned to each GPU
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        grouped_sizes_per_gpu:
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            Total size assigned to each GPU
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    Example:
        ```
        sizes = [1000, 100, 200, 50]
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        num_gpus = 2
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        ```

    """

    n_samples = len(sizes)

    # Handle edge cases
    if n_samples == 0:
        return [], [0] * num_gpus, [0] * num_gpus

    # Use greedy algorithm - balance by total size, not sample count
    gpu_assignments = [list[int]() for _ in range(num_gpus)]
    gpu_loads = [0] * num_gpus  # This tracks total SIZE, not sample count

    # Sort indices by size (largest first for better load balancing)
    # sizes = [1000, 100, 200, 50]
    # large_to_small_indices = [0, 2, 1, 3]
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    large_to_small_indices = sorted(
        range(n_samples), key=lambda i: sizes[i], reverse=True
    )
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    for idx in large_to_small_indices:
        # Find GPU with minimum current load (by total size)
        min_gpu = min(range(num_gpus), key=lambda i: gpu_loads[i])
        gpu_assignments[min_gpu].append(idx)
        gpu_loads[min_gpu] += sizes[idx]

    # Create shuffle indices and counts
    shuffle_indices = list[int]()
    gpu_sample_counts = list[int]()
    for gpu_id in range(num_gpus):
        # GPU_0 = [1000] = [0]
        # GPU_1 = [200, 100, 50] = [2, 1, 3]
        # shuffle_indices = [0, 2, 1, 3]
        shuffle_indices.extend(gpu_assignments[gpu_id])
        # GPU_0 = [1]
        # GPU_1 = [3]
        # gpu_sample_counts = [1, 3]
        gpu_sample_counts.append(len(gpu_assignments[gpu_id]))

    return (shuffle_indices, gpu_sample_counts, gpu_loads)


def run_dp_sharded_mrope_vision_model(
    vision_model: torch.nn.Module,
    pixel_values: torch.Tensor,
    grid_thw_list: list[list[int]],
    *,
    rope_type: Literal["rope_3d", "rope_2d"],
) -> tuple[torch.Tensor, ...]:
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    """Run a vision model with data parallelism (DP) sharding.
    The function will shard the input image tensor on the
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    first dimension and run the vision model.
    This function is used to run the vision model with mrope.
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    Args:
        vision_model (torch.nn.Module): Vision model.
        pixel_values (torch.Tensor): Image/Video input tensor.
        grid_thw_list: List of grid dimensions for each image
        rope_type: Type of rope used in the vision model.
                   Different rope types have different dimension to do ViT.
                   "rope_3d" for 3D rope (e.g., Qwen2.5-VL)
                   "rope_2d" for 2D rope (e.g., Kimi-VL)
    Returns:
        torch.Tensor: Output image embeddings

    Example:
        ```
        vision_model.out_hidden_size = 64
        vision_model.spatial_merge_size = 2
        pixel_values.shape = (1350, channel)
        grid_thw_list = [[1, 10, 100], [1, 10, 10], [1, 10, 20], [1, 50]]
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        tp_size = 2
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        ```

    """
    tp_size = get_tensor_model_parallel_world_size()

    # GPU_0 tp_rank_local = 0
    # GPU_1 tp_rank_local = 1
    tp_rank_local = get_tensor_model_parallel_rank()

    # patches_per_image = [1000, 100, 200, 50]
    patches_per_image = [math.prod(grid_thw) for grid_thw in grid_thw_list]
    # patches_per_image = [0, 1000, 1100, 1300, 1350]
    cum_patches_per_image = [0, *itertools.accumulate(patches_per_image)]

    # Get load balancing assignment with all metadata
    # image_to_tp_rank = [0, 2, 1, 3]
    # gpu_sample_counts = [1, 3]
    # grouped_pixel_values_len = [1000, 350]
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    (image_to_tp_rank, gpu_sample_counts, grouped_pixel_values_len) = (
        get_load_balance_assignment(patches_per_image, tp_size)
    )
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    # cu_gpu_sample_counts = [0, 1, 4]
    cum_gpu_sample_counts = [0, *itertools.accumulate(gpu_sample_counts)]

    # GPU_0 image_idxs_local = [0]
    # GPU_1 image_idxs_local = [2, 1, 3]
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    image_idxs_local = image_to_tp_rank[
        cum_gpu_sample_counts[tp_rank_local] : cum_gpu_sample_counts[tp_rank_local + 1]
    ]
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    # Get the pixel values for the local images based on the image_idxs_local
    if len(image_idxs_local) > 0:
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        pixel_values_local = torch.cat(
            [
                pixel_values[cum_patches_per_image[i] : cum_patches_per_image[i + 1]]
                for i in image_idxs_local
            ]
        )
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    else:
        # Handle case where this rank has no images
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        pixel_values_local = torch.empty(
            (0, pixel_values.shape[1]),
            device=pixel_values.device,
            dtype=pixel_values.dtype,
        )
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    # embed_dim_reduction_factor = 2 * 2
    if rope_type == "rope_2d":
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        embed_dim_reduction_factor = (
            vision_model.merge_kernel_size[0] * vision_model.merge_kernel_size[1]
        )
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    else:
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        embed_dim_reduction_factor = (
            vision_model.spatial_merge_size * vision_model.spatial_merge_size
        )
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    # Find the max length across all ranks
    # The output embedding of every DP rank has to be
    # padded to this length for tensor_model_parallel_all_gather
    # to work
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    max_len_per_rank = max(grouped_pixel_values_len) // embed_dim_reduction_factor
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    local_grid_thw_list = [grid_thw_list[i] for i in image_idxs_local]

    # Run the vision model on the local pixel_values_local
    if rope_type == "rope_2d":
        if pixel_values_local.shape[0] > 0:
            image_embeds_local = vision_model(
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                pixel_values_local, torch.tensor(local_grid_thw_list)
            )
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            if isinstance(image_embeds_local, list):
                image_embeds_local = torch.cat(image_embeds_local, dim=0)
        else:
            out_dim = getattr(vision_model.config, "hidden_size", None)
            image_embeds_local = torch.empty(
                (0, embed_dim_reduction_factor, out_dim),
                device=pixel_values.device,
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                dtype=pixel_values.dtype,
            )
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    else:
        if pixel_values_local.shape[0] > 0:
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            image_embeds_local = vision_model(pixel_values_local, local_grid_thw_list)
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        else:
            # Handle empty case
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            image_embeds_local = torch.empty(
                (0, vision_model.out_hidden_size),
                device=pixel_values.device,
                dtype=pixel_values.dtype,
            )
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    # Pad the output based on max_len_per_rank
    # for tensor_model_parallel_all_gather to work
    current_len = image_embeds_local.shape[0]
    if current_len < max_len_per_rank:
        padding_size = max_len_per_rank - current_len
        if rope_type == "rope_2d":
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            padding = torch.empty(
                (
                    padding_size,
                    image_embeds_local.shape[1],
                    image_embeds_local.shape[2],
                ),
                dtype=image_embeds_local.dtype,
                device=image_embeds_local.device,
            )
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        else:
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            padding = torch.empty(
                (padding_size, image_embeds_local.shape[1]),
                dtype=image_embeds_local.dtype,
                device=image_embeds_local.device,
            )
        image_embeds_local_padded = torch.cat([image_embeds_local, padding], dim=0)
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    else:
        image_embeds_local_padded = image_embeds_local

    # Do all_gather to collect embeddings from all ranks
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    gathered_embeds = tensor_model_parallel_all_gather(image_embeds_local_padded, dim=0)
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    # Remove padding and reconstruct per-rank embeddings
    rank_embeddings = list[torch.Tensor]()
    for rank in range(tp_size):
        start_idx = rank * max_len_per_rank
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        end_idx = start_idx + (
            grouped_pixel_values_len[rank] // embed_dim_reduction_factor
        )
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        rank_embeddings.append(gathered_embeds[start_idx:end_idx])

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    patches_per_output_image = [
        (patch_size // embed_dim_reduction_factor) for patch_size in patches_per_image
    ]
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    # Reconstruct embeddings in the original order
    original_order_embeddings = [None] * len(grid_thw_list)
    current_idx = 0
    for rank in range(tp_size):
        count = gpu_sample_counts[rank]
        if count > 0:
            # Get images assigned to this rank in shuffled order
            # GPU_0 = image_idxs_local  [0]
            # GPU_1 = image_idxs_local  [2, 1, 3]
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            rank_images = image_to_tp_rank[current_idx : current_idx + count]
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            rank_embed = rank_embeddings[rank]
            # Split rank embeddings back to individual images
            embed_start = 0
            for img_idx in rank_images:
                img_patches = patches_per_output_image[img_idx]
                original_order_embeddings[img_idx] = rank_embed[
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                    embed_start : embed_start + img_patches
                ]
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                embed_start += img_patches
            current_idx += count
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    out_embeddings = tuple(
        embed for embed in original_order_embeddings if embed is not None
    )
    assert len(out_embeddings) == len(original_order_embeddings), (
        "Found unassigned embeddings"
    )
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    return out_embeddings
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def get_llm_pos_ids_for_vision(
    start_idx: int,
    vision_idx: int,
    spatial_merge_size: int,
    t_index: list[int],
    grid_hs: torch.Tensor,
    grid_ws: torch.Tensor,
) -> torch.Tensor:
    llm_pos_ids_list = []
    llm_grid_h = grid_hs[vision_idx] // spatial_merge_size
    llm_grid_w = grid_ws[vision_idx] // spatial_merge_size
    h_index = (
        torch.arange(llm_grid_h)
        .view(1, -1, 1)
        .expand(len(t_index), -1, llm_grid_w)
        .flatten()
    )
    w_index = (
        torch.arange(llm_grid_w)
        .view(1, 1, -1)
        .expand(len(t_index), llm_grid_h, -1)
        .flatten()
    )
    t_index_tensor = (
        torch.Tensor(t_index)
        .to(llm_grid_h.device)
        .view(-1, 1)
        .expand(-1, llm_grid_h * llm_grid_w)
        .long()
        .flatten()
    )
    _llm_pos_ids = torch.stack([t_index_tensor, h_index, w_index])
    llm_pos_ids_list.append(_llm_pos_ids + start_idx)
    llm_pos_ids = torch.cat(llm_pos_ids_list, dim=1)
    return llm_pos_ids