inputs.py 30.5 KB
Newer Older
1
# SPDX-License-Identifier: Apache-2.0
2
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
3

4
from abc import ABC, abstractmethod
5
from collections import UserDict, defaultdict
6
from collections.abc import Mapping, Sequence
7
from dataclasses import dataclass
8
from functools import partial
9
from itertools import accumulate
10
11
from typing import (TYPE_CHECKING, Any, Literal, Optional, TypedDict, Union,
                    cast, final)
12
13

import numpy as np
14
from typing_extensions import NotRequired, TypeAlias, TypeVar, deprecated
15

16
from vllm.utils import LazyLoader, full_groupby, is_list_of
17
from vllm.utils.jsontree import JSONTree, json_map_leaves
18

19
if TYPE_CHECKING:
20
21
22
23
24
    import torch
    import torch.types
    from PIL.Image import Image
    from transformers.feature_extraction_utils import BatchFeature

25
26
    from .processing import MultiModalHashes

27
28
else:
    torch = LazyLoader("torch", globals(), "torch")
29

30
31
_T = TypeVar("_T")

32
HfImageItem: TypeAlias = Union["Image", np.ndarray, "torch.Tensor"]
33
"""
34
A `transformers.image_utils.ImageInput` representing a single image
35
item, which can be passed to a HuggingFace `ImageProcessor`.
36
37
"""

38
39
HfVideoItem: TypeAlias = Union[list["Image"], np.ndarray, "torch.Tensor",
                               list[np.ndarray], list["torch.Tensor"]]
40
"""
41
A `transformers.image_utils.VideoInput` representing a single video
42
item, which can be passed to a HuggingFace `VideoProcessor`.
43
44
"""

45
HfAudioItem: TypeAlias = Union[list[float], np.ndarray, "torch.Tensor"]
46
"""
47
Represents a single audio
48
item, which can be passed to a HuggingFace `AudioProcessor`.
49
50
"""

51
ImageItem: TypeAlias = Union[HfImageItem, "torch.Tensor"]
52
"""
53
A `transformers.image_utils.ImageInput` representing a single image
54
item, which can be passed to a HuggingFace `ImageProcessor`.
55
56
57
58
59
60

Alternatively, a 3-D tensor or batch of 2-D tensors,
which are treated as image embeddings;
these are directly passed to the model without HF processing.
"""

61
62
VideoItem: TypeAlias = Union[HfVideoItem, "torch.Tensor",
                             tuple[HfVideoItem, dict[str, Any]]]
63
"""
64
65
66
A `transformers.video_utils.VideoInput` representing a single video item. 
This can be passed to a HuggingFace `VideoProcessor` 
with `transformers.video_utils.VideoMetadata`.
67
68
69
70
71
72
73

Alternatively, a 3-D tensor or batch of 2-D tensors,
which are treated as video embeddings;
these are directly passed to the model without HF processing.
"""

AudioItem: TypeAlias = Union[HfAudioItem, tuple[np.ndarray, float],
74
                             "torch.Tensor"]
75
76
"""
Represents a single audio
77
item, which can be passed to a HuggingFace `AudioProcessor`.
78
79
80
81
82
83
84
85
86
87

Alternatively, a tuple `(audio, sampling_rate)`, where the sampling rate
is different from that expected by the model;
these are resampled to the model's sampling rate before being processed by HF.

Alternatively, a 3-D tensor or batch of 2-D tensors,
which are treated as audio embeddings;
these are directly passed to the model without HF processing.
"""

88
ModalityData: TypeAlias = Union[_T, list[Optional[_T]], None]
89
"""
90
91
Either a single data item, or a list of data items. Can only be None if UUID
is provided.
92
93

The number of data items allowed per modality is restricted by
94
`--limit-mm-per-prompt`.
95
96
97
98
99
100
101
"""


@final
class MultiModalDataBuiltins(TypedDict, total=False):
    """Type annotations for modality types predefined by vLLM."""

102
    image: ModalityData[ImageItem]
103
104
    """The input image(s)."""

105
    video: ModalityData[VideoItem]
106
107
    """The input video(s)."""

108
    audio: ModalityData[AudioItem]
109
110
111
    """The input audio(s)."""


112
MultiModalDataDict: TypeAlias = Mapping[str, ModalityData[Any]]
113
114
"""
A dictionary containing an entry for each modality type to input.
115

116
117
The built-in modalities are defined by
[`MultiModalDataBuiltins`][vllm.multimodal.inputs.MultiModalDataBuiltins].
118
119
"""

120
121
122
123
124
125
126
127
128
129
MultiModalUUIDDict: TypeAlias = Mapping[str, Union[list[Optional[str]], str]]
"""
A dictionary containing user-provided UUIDs for items in each modality.
If a UUID for an item is not provided, its entry will be `None` and
MultiModalHasher will compute a hash for the item.

The UUID will be used to identify the item for all caching purposes
(input processing caching, embedding caching, prefix caching, etc).
"""

130

131
132
@dataclass(frozen=True)
class PlaceholderRange:
133
134
135
    """
    Placeholder location information for multi-modal data.

136
137
    Example:

138
    Prompt: `AAAA BBBB What is in these images?`
139

140
    Images A and B will have:
141

142
143
144
145
    ```
    A: PlaceholderRange(offset=0, length=4)
    B: PlaceholderRange(offset=5, length=4)
    ```
146
147
148
149
150
151
152
153
    """

    offset: int
    """The start index of the placeholder in the prompt."""

    length: int
    """The length of the placeholder."""

154
    is_embed: Optional["torch.Tensor"] = None
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
    """
    A boolean mask of shape `(length,)` indicating which positions
    between `offset` and `offset + length` to assign embeddings to.
    """

    def get_num_embeds(self) -> int:
        if self.is_embed is None:
            return self.length

        return int(self.is_embed.sum().item())

    def __eq__(self, other: object) -> bool:
        if not isinstance(other, self.__class__):
            return False
        if not (self.offset, self.length) == (other.offset, other.length):
            return False

        if self.is_embed is None:
            return other.is_embed is None
        if other.is_embed is None:
            return self.is_embed is None

        return nested_tensors_equal(self.is_embed, other.is_embed)

179

180
181
NestedTensors: TypeAlias = Union[list["NestedTensors"], list["torch.Tensor"],
                                 "torch.Tensor", tuple["torch.Tensor", ...]]
182
183
184
185
"""
Uses a list instead of a tensor if the dimensions of each element do not match.
"""

186
187

def nested_tensors_equal(a: NestedTensors, b: NestedTensors) -> bool:
188
189
    """Equality check between
    [`NestedTensors`][vllm.multimodal.inputs.NestedTensors] objects."""
190
    if isinstance(a, torch.Tensor):
191
        return isinstance(b, torch.Tensor) and torch.equal(a, b)
192
    elif isinstance(b, torch.Tensor):
193
        return isinstance(a, torch.Tensor) and torch.equal(b, a)
194
195
196
197
198
199
200
201
202
203
204
205
206

    if isinstance(a, list):
        return (isinstance(b, list)
                and all(nested_tensors_equal(a_, b_) for a_, b_ in zip(a, b)))
    if isinstance(b, list):
        return (isinstance(a, list)
                and all(nested_tensors_equal(b_, a_) for b_, a_ in zip(b, a)))

    # Both a and b are scalars
    return a == b


BatchedTensorInputs: TypeAlias = Mapping[str, NestedTensors]
207
208
"""
A dictionary containing nested tensors which have been batched via
209
[`MultiModalKwargs.batch`][vllm.multimodal.inputs.MultiModalKwargs.batch].
210
211
212
"""


213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
@dataclass
class MultiModalFeatureSpec:
    """
    Represents a single multimodal input with its processed data and metadata.
    
    Used by the V1 engine to track multimodal data through processing and
    caching. A request containing multiple multimodal items will have one
    MultiModalFeatureSpec per item.
    """

    data: Optional["MultiModalKwargsItem"]
    """Multimodal data for this feature"""

    modality: str
    """Based on the input, e.g., "image", "audio", "video"."""

    identifier: str
    """mm_hash or uuid for caching encoder outputs."""

    mm_position: PlaceholderRange
    """e.g., PlaceholderRange(offset=2, length=336)"""


236
@dataclass
237
class MultiModalFieldElem:
238
239
    """
    Represents a keyword argument corresponding to a multi-modal item
240
    in [`MultiModalKwargs`][vllm.multimodal.inputs.MultiModalKwargs].
241
242
243
244
245
246
247
248
249
250
    """

    modality: str
    """
    The modality of the corresponding multi-modal item.
    Each multi-modal item can consist of multiple keyword arguments.
    """

    key: str
    """
251
252
    The key of this field in
    [`MultiModalKwargs`][vllm.multimodal.inputs.MultiModalKwargs],
253
254
255
    i.e. the name of the keyword argument to be passed to the model.
    """

256
    data: NestedTensors
257
    """
258
259
    The tensor data of this field in
    [`MultiModalKwargs`][vllm.multimodal.inputs.MultiModalKwargs],
260
    i.e. the value of the keyword argument to be passed to the model.
261
262
263

    It may be set to `None` if it is determined that the item is cached
    in `EngineCore`.
264
265
266
267
268
269
270
    """

    field: "BaseMultiModalField"
    """
    Defines how to combine the tensor data of this field with others
    in order to batch multi-modal items together for model inference.
    """
271
272
273
274
275

    def __eq__(self, other: object) -> bool:
        if not isinstance(other, self.__class__):
            return False

276
277
278
279
280
281
282
        if self.data is None:
            data_equal = other.data is None
        elif other.data is None:
            data_equal = self.data is None
        else:
            data_equal = nested_tensors_equal(self.data, other.data)

283
        return ((self.modality, self.key) == (other.modality, other.key)
284
                and data_equal
285
                and type(self.field) == type(other.field))  # noqa: E721
286
287
288
289


@dataclass(frozen=True)
class BaseMultiModalField(ABC):
290
291
    """
    Defines how to interpret tensor data belonging to a keyword argument in
292
293
    [`MultiModalKwargs`][vllm.multimodal.inputs.MultiModalKwargs] for multiple
    multi-modal items, and vice versa.
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
    """

    def _field_factory(self, *, modality: str, key: str):
        f = partial(
            MultiModalFieldElem,
            modality=modality,
            key=key,
            field=self,
        )

        # Allow passing data as positional argument
        def factory(data: NestedTensors) -> MultiModalFieldElem:
            return f(data=data)

        return factory
309
310

    @abstractmethod
311
312
313
314
315
316
317
    def build_elems(
        self,
        modality: str,
        key: str,
        data: NestedTensors,
    ) -> Sequence[MultiModalFieldElem]:
        """
318
319
320
        Construct
        [`MultiModalFieldElem`][vllm.multimodal.inputs.MultiModalFieldElem]
        instances to represent the provided data.
321

322
323
        This is the inverse of
        [`reduce_data`][vllm.multimodal.inputs.BaseMultiModalField.reduce_data].
324
        """
325
326
        raise NotImplementedError

327
    @abstractmethod
328
329
330
331
332
333
    def _reduce_data(
        self,
        batch: list[NestedTensors],
        *,
        pin_memory: bool,
    ) -> NestedTensors:
334
        raise NotImplementedError
335

336
337
338
339
340
341
    def reduce_data(
        self,
        elems: list[MultiModalFieldElem],
        *,
        pin_memory: bool = False,
    ) -> NestedTensors:
342
        """
343
344
        Merge the data from multiple instances of
        [`MultiModalFieldElem`][vllm.multimodal.inputs.MultiModalFieldElem].
345

346
347
        This is the inverse of
        [`build_elems`][vllm.multimodal.inputs.BaseMultiModalField.build_elems].
348
349
350
351
        """
        field_types = [type(item.field) for item in elems]
        if len(set(field_types)) > 1:
            raise ValueError(f"Cannot merge different {field_types=}")
352

353
354
        batch = [elem.data for elem in elems]
        return self._reduce_data(batch, pin_memory=pin_memory)
355
356
357
358
359


@dataclass(frozen=True)
class MultiModalBatchedField(BaseMultiModalField):
    """
360
    Info:
361
        [`MultiModalFieldConfig.batched`][vllm.multimodal.inputs.MultiModalFieldConfig.batched]
362
363
    """

364
365
366
367
368
369
370
371
    def build_elems(
        self,
        modality: str,
        key: str,
        data: NestedTensors,
    ) -> Sequence[MultiModalFieldElem]:
        field_factory = self._field_factory(modality=modality, key=key)
        return [field_factory(item) for item in data]
372

373
374
375
376
377
378
    def _reduce_data(
        self,
        batch: list[NestedTensors],
        *,
        pin_memory: bool,
    ) -> NestedTensors:
379
        if len(batch) > 0 and is_list_of(batch, torch.Tensor, check="all"):
380
381
382
383
384
            if len(batch) == 1:
                # An optimization when `batch` contains only one tensor:
                # - produce exactly same result as `torch.stack(batch)`
                # - will achieve zero-copy if the tensor is contiguous
                return batch[0].unsqueeze(0).contiguous()
385
            first_shape = batch[0].shape
386
            if all(elem.shape == first_shape for elem in batch):
387
388
389
390
391
                out = torch.empty((len(batch), *batch[0].shape),
                                  dtype=batch[0].dtype,
                                  device=batch[0].device,
                                  pin_memory=pin_memory)
                return torch.stack(batch, out=out)
392
393
394
395
396
397
398

        return batch


@dataclass(frozen=True)
class MultiModalFlatField(BaseMultiModalField):
    """
399
    Info:
400
401
        [`MultiModalFieldConfig.flat`][vllm.multimodal.inputs.MultiModalFieldConfig.flat]
        [`MultiModalFieldConfig.flat_from_sizes`][vllm.multimodal.inputs.MultiModalFieldConfig.flat_from_sizes]
402
    """
403
404
    slices: Union[Sequence[slice], Sequence[Sequence[slice]]]
    dim: int = 0
405

406
    def build_elems(
407
        self,
408
409
410
411
412
        modality: str,
        key: str,
        data: NestedTensors,
    ) -> Sequence[MultiModalFieldElem]:
        field_factory = self._field_factory(modality=modality, key=key)
413
414
415
416
        if not is_list_of(self.slices, slice, check="all"):
            assert isinstance(data, torch.Tensor), \
                "torch.Tensor is required for multiple slices"
        return [field_factory(data[cast(slice, s)]) for s in self.slices]
417

418
419
420
421
422
423
    def _reduce_data(
        self,
        batch: list[NestedTensors],
        *,
        pin_memory: bool,
    ) -> NestedTensors:
424
        if len(batch) > 0 and is_list_of(batch, torch.Tensor, check="all"):
425
426
427
428
429
            if len(batch) == 1:
                # An optimization when `batch` contains only one tensor:
                # - produce exactly same result as `torch.concat(batch)`
                # - will achieve zero-copy if the tensor is contiguous
                return batch[0].contiguous()
430

431
432
433
434
            dim = self.dim + (self.dim < 0) * len(batch[0].shape)

            def _shape_before_after(tensor: torch.Tensor):
                return tensor.shape[:dim], tensor.shape[dim + 1:]
435

436
            first_shape = _shape_before_after(batch[0])
437

438
439
440
441
442
443
444
445
            if all(_shape_before_after(elem) == first_shape for elem in batch):
                shape_before, shape_after = first_shape
                shape_concat = sum(item.shape[dim] for item in batch)
                out = torch.empty((*shape_before, shape_concat, *shape_after),
                                  dtype=batch[0].dtype,
                                  device=batch[0].device,
                                  pin_memory=pin_memory)
                return torch.concat(batch, dim=self.dim, out=out)
446
447

        assert self.dim == 0, "dim == 0 is required for nested list"
448
        return [e for elem in batch for e in elem]
449
450


451
452
453
@dataclass(frozen=True)
class MultiModalSharedField(BaseMultiModalField):
    """
454
    Info:
455
        [`MultiModalFieldConfig.shared`][vllm.multimodal.inputs.MultiModalFieldConfig.shared]
456
457
458
459
460
461
462
463
464
465
466
467
    """
    batch_size: int

    def build_elems(
        self,
        modality: str,
        key: str,
        data: NestedTensors,
    ) -> Sequence[MultiModalFieldElem]:
        field_factory = self._field_factory(modality=modality, key=key)
        return [field_factory(data)] * self.batch_size

468
469
470
471
472
473
    def _reduce_data(
        self,
        batch: list[NestedTensors],
        *,
        pin_memory: bool,
    ) -> NestedTensors:
474
475
476
        return batch[0]


477
478
479
480
class MultiModalFieldConfig:

    @staticmethod
    def batched(modality: str):
481
482
483
484
485
486
487
488
489
490
        """
        Defines a field where an element in the batch is obtained by
        indexing into the first dimension of the underlying data.

        Args:
            modality: The modality of the multi-modal item that uses this
                keyword argument.

        Example:

491
492
493
494
495
496
497
498
499
500
501
        ```
        Input:
            Data: [[AAAA]
                [BBBB]
                [CCCC]]

        Output:
            Element 1: [AAAA]
            Element 2: [BBBB]
            Element 3: [CCCC]
        ```
502
        """
503
        return MultiModalFieldConfig(
504
            field=MultiModalBatchedField(),
505
506
507
508
            modality=modality,
        )

    @staticmethod
509
510
511
    def flat(modality: str,
             slices: Union[Sequence[slice], Sequence[Sequence[slice]]],
             dim: int = 0):
512
513
514
515
516
517
518
        """
        Defines a field where an element in the batch is obtained by
        slicing along the first dimension of the underlying data.

        Args:
            modality: The modality of the multi-modal item that uses this
                keyword argument.
519
            slices: For each multi-modal item, a slice (dim=0) or a tuple of
520
                slices (dim>0) that is used to extract the data corresponding
521
522
                to it.
            dim: The dimension to extract data, default to 0.
523
524
525

        Example:

526
527
528
529
530
531
532
533
534
535
536
537
538
539
540
541
542
543
544
545
546
547
548
549
550
551
552
553
554
        ```
        Given:
            slices: [slice(0, 3), slice(3, 7), slice(7, 9)]

        Input:
            Data: [AAABBBBCC]

        Output:
            Element 1: [AAA]
            Element 2: [BBBB]
            Element 3: [CC]
        ```

        ```
        Given:
            slices: [
                (slice(None), slice(0, 3)),
                (slice(None), slice(3, 7)),
                (slice(None), slice(7, 9))]
            dim: 1

        Input:
            Data: [[A],[A],[A],[B],[B],[B],[B],[C],[C]]

        Output:
            Element 1: [[A],[A],[A]]
            Element 2: [[B],[B],[B],[B]]
            Element 3: [[C],[C]]
        ```
555
        """
556
        return MultiModalFieldConfig(
557
            field=MultiModalFlatField(slices=slices, dim=dim),
558
559
560
            modality=modality,
        )

561
    @staticmethod
562
    def flat_from_sizes(modality: str,
563
                        size_per_item: "torch.Tensor",
564
                        dim: int = 0):
565
566
567
568
569
570
571
        """
        Defines a field where an element in the batch is obtained by
        slicing along the first dimension of the underlying data.

        Args:
            modality: The modality of the multi-modal item that uses this
                keyword argument.
572
573
            size_per_item: For each multi-modal item, the size of the slice
                that is used to extract the data corresponding to it.
574
            dim: The dimension to slice, default to 0.
575
576
577

        Example:

578
579
580
581
582
583
584
585
586
587
588
589
590
591
592
        ```
        Given:
            size_per_item: [3, 4, 2]

        Input:
            Data: [AAABBBBCC]

        Output:
            Element 1: [AAA]
            Element 2: [BBBB]
            Element 3: [CC]
        ```

        ```
        Given:
593
            size_per_item: [3, 4, 2]
594
595
596
597
598
599
600
601
602
603
604
            dim: 1

        Input:
            Data: [[A],[A],[A],[B],[B],[B],[B],[C],[C]]

        Output:
            Element 1: [[A],[A],[A]]
            Element 2: [[B],[B],[B],[B]]
            Element 3: [[C],[C]]
        ```

605
        Info:
606
            [`MultiModalFieldConfig.flat`][vllm.multimodal.inputs.MultiModalFieldConfig.flat]
607
608
        """

609
610
611
612
        if size_per_item.ndim != 1:
            raise ValueError("size_per_item should be a 1-D tensor, "
                             f"but found shape: {size_per_item.shape}")

613
        slice_idxs = [0, *accumulate(size_per_item)]
614
615
616
        slices = [(slice(None, None, None), ) * dim +
                  (slice(slice_idxs[i], slice_idxs[i + 1]), )
                  for i in range(len(size_per_item))]
617

618
        return MultiModalFieldConfig.flat(modality, slices, dim=dim)
619

620
621
622
623
624
625
626
627
628
629
630
631
632
633
634
    @staticmethod
    def shared(modality: str, batch_size: int):
        """
        Defines a field where an element in the batch is obtained by
        taking the entirety of the underlying data.

        This means that the data is the same for each element in the batch.

        Args:
            modality: The modality of the multi-modal item that uses this
                keyword argument.
            batch_size: The number of multi-modal items which share this data.

        Example:

635
636
637
        ```
        Given:
            batch_size: 4
638

639
640
        Input:
            Data: [XYZ]
641

642
643
644
645
646
647
        Output:
            Element 1: [XYZ]
            Element 2: [XYZ]
            Element 3: [XYZ]
            Element 4: [XYZ]
        ```
648
649
650
651
652
653
654
        """
        return MultiModalFieldConfig(
            field=MultiModalSharedField(batch_size),
            modality=modality,
        )

    def __init__(self, field: BaseMultiModalField, modality: str) -> None:
655
656
        super().__init__()

657
        self.field = field
658
        self.modality = modality
659

660
    def build_elems(
661
662
663
        self,
        key: str,
        batch: NestedTensors,
664
    ) -> Sequence[MultiModalFieldElem]:
665
        return self.field.build_elems(self.modality, key, batch)
666
667


668
669
class MultiModalKwargsItem(UserDict[str, MultiModalFieldElem]):
    """
670
671
672
673
    A collection of
    [`MultiModalFieldElem`][vllm.multimodal.inputs.MultiModalFieldElem]
    corresponding to a data item in
    [`MultiModalDataItems`][vllm.multimodal.parse.MultiModalDataItems].
674
    """
675

676
677
678
679
680
681
682
683
684
685
686
    @staticmethod
    def dummy(modality: str):
        """Convenience class for testing."""
        mm_elem = MultiModalFieldElem(
            modality=modality,
            key="dummy",
            data=torch.empty(1),
            field=MultiModalSharedField(1),
        )
        return MultiModalKwargsItem.from_elems([mm_elem])

687
688
    @staticmethod
    def from_elems(elems: Sequence[MultiModalFieldElem]):
689
        return MultiModalKwargsItem({elem.key: elem for elem in elems})
690

691
    def __init__(self, data: Mapping[str, MultiModalFieldElem] = {}) -> None:
692
693
        super().__init__(data)

694
        modalities = {elem.modality for elem in self.values()}
695
        assert len(modalities) == 1, f"Found different modalities={modalities}"
696
697
698
699
700
701
        self._modality = next(iter(modalities))

    @property
    def modality(self) -> str:
        return self._modality

702
    def get_data(self) -> dict[str, NestedTensors]:
703
        return {key: elem.data for key, elem in self.items()}
704
705


706
707
708
709
710
711
712
713
714
_I = TypeVar(
    "_I",
    MultiModalKwargsItem,
    Optional[MultiModalKwargsItem],
    default=MultiModalKwargsItem,
)


class MultiModalKwargsItems(UserDict[str, Sequence[_I]]):
715
    """
716
717
718
    A dictionary of
    [`MultiModalKwargsItem`][vllm.multimodal.inputs.MultiModalKwargsItem]s
    by modality.
719
720
    """

721
722
    @staticmethod
    def from_hf_inputs(
723
        hf_inputs: "BatchFeature",
724
725
726
727
        config_by_key: Mapping[str, MultiModalFieldConfig],
    ):
        # NOTE: This skips fields in `hf_inputs` that are not in `config_by_key`
        # We assume that those fields are not used in vLLM
728
729
730
731
732
733
734
735
736
737
738
739
740
741
742
743
744
745
746
747
748
749
750
751
752
        elems_by_key = dict[str, Sequence[MultiModalFieldElem]]()
        keys_by_modality = defaultdict[str, set[str]](set)
        for key, config in config_by_key.items():
            batch = hf_inputs.get(key)
            if batch is not None:
                elems = config.build_elems(key, batch)
                if len(elems) > 0:
                    elems_by_key[key] = elems
                    keys_by_modality[config.modality].add(key)

        items = list[MultiModalKwargsItem]()
        for modality, keys in keys_by_modality.items():
            elems_in_modality = {k: elems_by_key[k] for k in keys}
            batch_sizes = {k: len(v) for k, v in elems_in_modality.items()}

            if len(set(batch_sizes.values())) > 1:
                raise ValueError(
                    f"Cannot merge different batch sizes for {modality=}! "
                    f"Found: {batch_sizes=}")

            batch_size = next(iter(batch_sizes.values()))
            for item_idx in range(batch_size):
                elems = [v[item_idx] for v in elems_in_modality.values()]
                items.append(MultiModalKwargsItem.from_elems(elems))

753
        return MultiModalKwargsItems.from_seq(items)
754

755
756
    @staticmethod
    def from_seq(items: Sequence[MultiModalKwargsItem]):
757
        items_by_modality = full_groupby(items, key=lambda x: x.modality)
758
        return MultiModalKwargsItems(items_by_modality)
759

760
    def __getitem__(self, modality: str) -> Sequence[_I]:
761
762
763
764
        if modality not in self:
            raise KeyError(f"Modality {modality!r} not found. "
                           f"Available modalities: {set(self.keys())}")

765
        return super().__getitem__(modality)  # type: ignore[return-value]
766
767
768

    def get_data(self, *, pin_memory: bool = False) -> "MultiModalKwargs":
        elems_by_key = defaultdict[str, list[MultiModalFieldElem]](list)
769
770
771
772
773
774
        for modality, items in self.items():
            for i, item in enumerate(items):
                if item is None:
                    raise RuntimeError("Cannot build data from empty "
                                       f"mm_items[{modality}][{i}]")

775
776
777
778
779
780
                for key, elem in item.items():
                    elems_by_key[key].append(elem)

        return MultiModalKwargs({
            key:
            elems[0].field.reduce_data(elems, pin_memory=pin_memory)
781
            for key, elems in elems_by_key.items()
782
        })
783

784

785
786
787
788
789
790
MultiModalKwargsOptionalItems: TypeAlias = Union[
    MultiModalKwargsItems[MultiModalKwargsItem],
    MultiModalKwargsItems[Optional[MultiModalKwargsItem]],
]


791
792
793
794
795
796
797
798
799
800
801
802
803
804
805
806
807
808
809
810
811
812
813
814
815
816
817
818
819
820
class MultiModalKwargs(UserDict[str, NestedTensors]):
    """
    A dictionary that represents the keyword arguments to
    [`torch.nn.Module.forward`][].
    """

    @staticmethod
    @deprecated("`MultiModalKwargs.from_hf_inputs` is deprecated and "
                "will be removed in v0.13. "
                "Please use `MultiModalKwargsItems.from_hf_inputs` and "
                "access the tensor data using `.get_data()`.")
    def from_hf_inputs(
        hf_inputs: "BatchFeature",
        config_by_key: Mapping[str, MultiModalFieldConfig],
    ):
        return MultiModalKwargsItems.from_hf_inputs(hf_inputs, config_by_key) \
            .get_data()

    @staticmethod
    @deprecated("`MultiModalKwargs.from_items` is deprecated and "
                "will be removed in v0.13. "
                "Please use `MultiModalKwargsItems.from_seq` and "
                "access the tensor data using `.get_data()`.")
    def from_items(
        items: Sequence[MultiModalKwargsItem],
        *,
        pin_memory: bool = False,
    ):
        return MultiModalKwargsItems.from_seq(items) \
            .get_data(pin_memory=pin_memory)
821

822
    @staticmethod
823
824
    def _try_stack(nested_tensors: NestedTensors,
                   pin_memory: bool = False) -> NestedTensors:
825
826
827
828
829
830
831
832
833
834
835
836
837
838
839
840
        """
        Stack the inner dimensions that have the same shape in
        a nested list of tensors.

        Thus, a dimension represented by a list means that the inner
        dimensions are different for each element along that dimension.
        """
        if isinstance(nested_tensors, torch.Tensor):
            return nested_tensors

        # TODO: Remove these once all models have been migrated
        if isinstance(nested_tensors, np.ndarray):
            return torch.from_numpy(nested_tensors)
        if isinstance(nested_tensors, (int, float)):
            return torch.tensor(nested_tensors)

841
842
843
        stacked = [
            MultiModalKwargs._try_stack(t, pin_memory) for t in nested_tensors
        ]
844
845
846
847
        if not is_list_of(stacked, torch.Tensor, check="all"):
            # Only tensors (not lists) can be stacked.
            return stacked

848
        tensors_ = cast(list[torch.Tensor], stacked)
849
850
851
852
853
854
        if len(tensors_) == 1:
            # An optimization when `tensors_` contains only one tensor:
            # - produce exactly same result as `torch.stack(tensors_)`
            # - will achieve zero-copy if the tensor is contiguous
            return tensors_[0].unsqueeze(0).contiguous()

855
856
857
858
        if any(t.shape != tensors_[0].shape for t in tensors_):
            # The tensors have incompatible shapes and can't be stacked.
            return tensors_

859
860
861
862
863
864
        outputs = torch.empty(len(tensors_),
                              *tensors_[0].shape,
                              dtype=tensors_[0].dtype,
                              device=tensors_[0].device,
                              pin_memory=pin_memory)
        return torch.stack(tensors_, out=outputs)
865
866

    @staticmethod
867
868
    def batch(inputs_list: list["MultiModalKwargs"],
              pin_memory: bool = False) -> BatchedTensorInputs:
869
870
871
872
873
874
875
876
877
878
879
880
881
882
        """
        Batch multiple inputs together into a dictionary.

        The resulting dictionary has the same keys as the inputs.
        If the corresponding value from each input is a tensor and they all
        share the same shape, the output value is a single batched tensor;
        otherwise, the output value is a list containing the original value
        from each input.
        """
        if len(inputs_list) == 0:
            return {}

        # We need to consider the case where each item in the batch
        # contains different modalities (i.e. different keys).
883
        item_lists = defaultdict[str, list[NestedTensors]](list)
884
885
886
887
888
889

        for inputs in inputs_list:
            for k, v in inputs.items():
                item_lists[k].append(v)

        return {
890
            k: MultiModalKwargs._try_stack(item_list, pin_memory)
891
892
893
894
895
896
897
898
899
900
901
902
            for k, item_list in item_lists.items()
        }

    @staticmethod
    def as_kwargs(
        batched_inputs: BatchedTensorInputs,
        *,
        device: torch.types.Device,
    ) -> BatchedTensorInputs:
        json_inputs = cast(JSONTree[torch.Tensor], batched_inputs)

        json_mapped = json_map_leaves(
903
            lambda x: x.to(device=device, non_blocking=True),
904
905
906
907
908
            json_inputs,
        )

        return cast(BatchedTensorInputs, json_mapped)

909
    def __getitem__(self, key: str):
910
911
912
913
914
        if key not in self:
            raise KeyError(f"Keyword argument {key!r} not found. "
                           f"Available keys: {set(self.keys())}")

        return super().__getitem__(key)
915

916
917
918
919
    def __eq__(self, other: object) -> bool:
        if not isinstance(other, self.__class__):
            return False

920
921
922
923
924
        for k in self:
            if k not in other:
                return False
            if not nested_tensors_equal(self[k], other[k]):
                return False
925

926
        return True
927

928

929
MultiModalPlaceholderDict: TypeAlias = Mapping[str, Sequence[PlaceholderRange]]
930
"""
931
A dictionary containing placeholder ranges for each modality.
932
933
934
"""


935
class MultiModalInputs(TypedDict):
936
    """
937
    Represents the outputs of
938
    [`BaseMultiModalProcessor`][vllm.multimodal.processing.BaseMultiModalProcessor],
939
940
941
942
943
944
945
    ready to be passed to vLLM internals.
    """

    type: Literal["multimodal"]
    """The type of inputs."""

    prompt: str
946
    """The processed prompt text."""
947

948
    prompt_token_ids: list[int]
949
950
    """The processed token IDs which includes placeholder tokens."""

951
    mm_kwargs: MultiModalKwargsOptionalItems
952
953
    """Keyword arguments to be directly passed to the model after batching."""

954
    mm_hashes: "MultiModalHashes"
955
956
    """The hashes of the multi-modal data."""

957
    mm_placeholders: "MultiModalPlaceholderDict"
958
959
    """
    For each modality, information about the placeholder tokens in
960
    `prompt_token_ids`.
961
    """
962

963
964
965
966
967
    cache_salt: NotRequired[str]
    """
    Optional cache salt to be used for prefix caching.
    """

968
969
970

class MultiModalEncDecInputs(MultiModalInputs):
    """
971
972
    Represents the outputs of
    [`EncDecMultiModalProcessor`][vllm.multimodal.processing.EncDecMultiModalProcessor]
973
974
975
976
977
978
979
980
    ready to be passed to vLLM internals.
    """

    encoder_prompt: str
    """The processed encoder prompt text."""

    encoder_prompt_token_ids: list[int]
    """The processed token IDs of the encoder prompt."""