vllm.model_executor.models.vision ΒΆ
VisionFeatureSelectStrategy module-attribute
ΒΆ
VisionFeatureSelectStrategy = Union[
VisionFeatureSelectStrategyStr,
Callable[[Tensor], Tensor],
]
VisionFeatureSelectStrategyStr module-attribute
ΒΆ
VisionFeatureSelectStrategyStr = Literal[
"class", "default", "full"
]
VisionEncoderInfo ΒΆ
Source code in vllm/model_executor/models/vision.py
VisionLanguageConfig ΒΆ
_RootConfig ΒΆ
_get_vision_feature_selector ΒΆ
_get_vision_feature_selector(
strategy: Union[VisionFeatureSelectStrategy, str],
) -> Callable[[Tensor], Tensor]
Source code in vllm/model_executor/models/vision.py
get_load_balance_assignment ΒΆ
get_load_balance_assignment(
sizes: list[int], num_gpus: int = 2
) -> tuple[list[int], list[int], list[int]]
Generate load balancing assignment and metadata for distributing data across GPUs. The load is determined by the total image sizes, not the number of images.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
sizes | list[int] | The size of each image | required |
num_gpus | int | Number of GPUs to balance across | 2 |
Returns:
Name | Type | Description |
---|---|---|
shuffle_indices | list[int] | Indices to reorder data for balanced loading |
gpu_sample_counts | list[int] | Number of samples assigned to each GPU |
grouped_sizes_per_gpu | list[int] | Total size assigned to each GPU |
Source code in vllm/model_executor/models/vision.py
get_num_selected_vision_tokens ΒΆ
get_num_selected_vision_tokens(
num_vision_tokens: int,
strategy: Union[VisionFeatureSelectStrategy, str],
) -> int
Source code in vllm/model_executor/models/vision.py
get_vision_encoder_info ΒΆ
get_vision_encoder_info(
hf_config: VisionLanguageConfig,
) -> VisionEncoderInfo
Source code in vllm/model_executor/models/vision.py
get_vit_attn_backend ΒΆ
Get the available attention backend for Vision Transformer.
Source code in vllm/model_executor/models/vision.py
resolve_visual_encoder_outputs ΒΆ
resolve_visual_encoder_outputs(
encoder_outputs: Union[Tensor, list[Tensor]],
post_layer_norm: Optional[LayerNorm],
*,
select_layers: Optional[list[int]] = None,
max_possible_layers: Optional[int] = None,
feature_select_strategy: Optional[
VisionFeatureSelectStrategy
] = None,
) -> 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.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
encoder_outputs | Union[Tensor, list[Tensor]] | Output of encoder's last layer or all hidden states. | required |
post_layer_norm | Optional[LayerNorm] | Post norm to apply to the output of the encoder. | required |
select_layers | Optional[list[int]] | Optional layer indices to grab from the encoder outputs; if provided, encoder outputs must be a list. | None |
max_possible_layers | Optional[int] | Total layers in the fully loaded visual encoder. | None |
feature_select_strategy | Optional[VisionFeatureSelectStrategy] | Defines how to select the hidden states from each layer. | None |
Source code in vllm/model_executor/models/vision.py
run_dp_sharded_mrope_vision_model ΒΆ
run_dp_sharded_mrope_vision_model(
vision_model: Module,
pixel_values: Tensor,
grid_thw_list: list[list[int]],
*,
rope_type: Literal["rope_3d", "rope_2d"],
) -> tuple[Tensor, ...]
Run a vision model with data parallelism (DP) sharding. The function will shard the input image tensor on the first dimension and run the vision model. This function is used to run the vision model with mrope.
Parameters:
Name | Type | Description | Default |
---|---|---|---|
vision_model | Module | Vision model. | required |
pixel_values | Tensor | Image/Video input tensor. | required |
grid_thw_list | list[list[int]] | List of grid dimensions for each image | required |
rope_type | Literal['rope_3d', 'rope_2d'] | 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) | required |
Returns: torch.Tensor: Output image embeddings
Example
Source code in vllm/model_executor/models/vision.py
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|
run_dp_sharded_vision_model ΒΆ
Run a vision model with data parallelism (DP) sharding. The function will shard the input image tensor on the first dimension and run the vision model
Parameters:
Name | Type | Description | Default |
---|---|---|---|
image_input | Tensor | Image input tensor. | required |
vision_model | Module | Vision model. | required |
Returns: torch.Tensor: Output image embeddings