rocm_flash_attn.py 41.5 KB
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# SPDX-License-Identifier: Apache-2.0
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"""Attention layer ROCm GPUs."""
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import itertools
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from dataclasses import dataclass
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from functools import cache
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from typing import TYPE_CHECKING, Any, Dict, List, Optional, Tuple, Type
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import torch

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import vllm.envs as envs
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from vllm import _custom_ops as ops
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from vllm.attention.backends.abstract import (AttentionBackend, AttentionImpl,
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                                              AttentionLayer,
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                                              AttentionMetadata, AttentionType)
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from vllm.attention.backends.utils import (CommonAttentionState,
                                           CommonMetadataBuilder)
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from vllm.attention.ops.paged_attn import (PagedAttention,
                                           PagedAttentionMetadata)
from vllm.logger import init_logger
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from vllm.platforms import current_platform
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from vllm.platforms.rocm import use_rocm_custom_paged_attention
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if TYPE_CHECKING:
    from vllm.worker.model_runner import ModelInputForGPUWithSamplingMetadata

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logger = init_logger(__name__)
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_PARTITION_SIZE_ROCM = 256
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@cache
def is_rocm_aiter_paged_attn_enabled() -> bool:
    return envs.VLLM_ROCM_USE_AITER_PAGED_ATTN \
        and envs.VLLM_ROCM_USE_AITER \


@cache
def _get_paged_attn_module() -> PagedAttention:
    """
    Initializes the appropriate PagedAttention module from `attention/ops`, 
    which is used as helper function
    by `ROCmFlashAttentionImpl` and `ROCmFlashAttentionBackend`.

    The choice of attention module depends on whether 
    AITER paged attention is enabled:
    - If enabled, `ROCmFlashAttentionImpl` uses `AITERPagedAttention`.
    - Otherwise, it defaults to using the original `PagedAttention`.
    """
    if is_rocm_aiter_paged_attn_enabled():
        # Import AITERPagedAttention only when the flag is enabled
        from vllm.attention.ops.rocm_aiter_paged_attn import (
            AITERPagedAttention)
        return AITERPagedAttention()
    return PagedAttention()


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class ROCmFlashAttentionBackend(AttentionBackend):
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    accept_output_buffer: bool = True
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    @staticmethod
    def get_name() -> str:
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        return "ROCM_FLASH"
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    @staticmethod
    def get_impl_cls() -> Type["ROCmFlashAttentionImpl"]:
        return ROCmFlashAttentionImpl

    @staticmethod
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    def get_metadata_cls() -> Type["AttentionMetadata"]:
        return ROCmFlashAttentionMetadata
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    @staticmethod
    def get_builder_cls() -> Type["ROCmFlashAttentionMetadataBuilder"]:
        return ROCmFlashAttentionMetadataBuilder

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    @staticmethod
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    def get_state_cls() -> Type["CommonAttentionState"]:
        return CommonAttentionState

    @staticmethod
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    def get_kv_cache_shape(
        num_blocks: int,
        block_size: int,
        num_kv_heads: int,
        head_size: int,
    ) -> Tuple[int, ...]:
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        paged_attn = _get_paged_attn_module()
        return paged_attn.get_kv_cache_shape(num_blocks, block_size,
                                             num_kv_heads, head_size)
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    @staticmethod
    def swap_blocks(
        src_kv_cache: torch.Tensor,
        dst_kv_cache: torch.Tensor,
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        src_to_dst: torch.Tensor,
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    ) -> None:
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        paged_attn = _get_paged_attn_module()
        paged_attn.swap_blocks(src_kv_cache, dst_kv_cache, src_to_dst)
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    @staticmethod
    def copy_blocks(
        kv_caches: List[torch.Tensor],
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        src_to_dists: torch.Tensor,
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    ) -> None:
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        paged_attn = _get_paged_attn_module()
        paged_attn.copy_blocks(kv_caches, src_to_dists)
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@dataclass
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class ROCmFlashAttentionMetadata(AttentionMetadata, PagedAttentionMetadata):
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    """Metadata for FlashAttentionBackend.

    NOTE: Any python object stored here is not updated when it is
    cuda-graph replayed. If you have values that need to be changed
    dynamically, it should be stored in tensor. The tensor has to be
    updated from `CUDAGraphRunner.forward` API.
    """
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    # (batch_size,). The sequence length per sequence. Sequence length means
    # the computed tokens + new tokens None if it is a decoding.
    seq_lens: Optional[List[int]]
    # seq_lens stored as a tensor.
    seq_lens_tensor: Optional[torch.Tensor]
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    # Maximum sequence length among prefill batch. 0 if there are decoding
    # requests only.
    max_prefill_seq_len: int
    # Maximum sequence length among decode batch. 0 if there are prefill
    # requests only.
    max_decode_seq_len: int

    # Whether or not if cuda graph is enabled.
    # Cuda-graph is currently enabled for decoding only.
    # TODO(woosuk): Move `use_cuda_graph` out since it's unrelated to attention.
    use_cuda_graph: bool
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    # NOTE(sang): Definition of context_len, query_len, and seq_len.
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    # |---------- N-1 iteration --------|
    # |---------------- N iteration ---------------------|
    # |- tokenA -|......................|-- newTokens ---|
    # |---------- context_len ----------|
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    # |-------------------- seq_len ----------------------|
    #                                   |-- query_len ---|
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    # Maximum query length in the batch. None for decoding.
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    max_query_len: Optional[int] = None
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    # (batch_size + 1,). The cumulative subquery lengths of the sequences in
    # the batch, used to index into subquery. E.g., if the subquery length
    # is [4, 6], it is [0, 4, 10].
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    query_start_loc: Optional[torch.Tensor] = None
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    # (batch_size + 1,). The cumulative sequence lengths of the sequences in
    # the batch, used to index into sequence. E.g., if the sequence length is
    # [4, 6], it is [0, 4, 10].
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    seq_start_loc: Optional[torch.Tensor] = None
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    # (batch_size,) A tensor of context lengths (tokens that are computed
    # so far).
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    context_lens_tensor: Optional[torch.Tensor] = None
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    # Max number of query tokens among request in the batch.
    max_decode_query_len: Optional[int] = None
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    _cached_prefill_metadata: Optional["ROCmFlashAttentionMetadata"] = None
    _cached_decode_metadata: Optional["ROCmFlashAttentionMetadata"] = None

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    # Begin encoder attn & enc/dec cross-attn fields...

    # Encoder sequence lengths representation
    encoder_seq_lens: Optional[List[int]] = None
    encoder_seq_lens_tensor: Optional[torch.Tensor] = None

    # Maximum sequence length among encoder sequences
    max_encoder_seq_len: Optional[int] = None

    # Number of tokens input to encoder
    num_encoder_tokens: Optional[int] = None

    # Cross-attention memory-mapping data structures: slot mapping
    # and block tables
    cross_slot_mapping: Optional[torch.Tensor] = None
    cross_block_tables: Optional[torch.Tensor] = None

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    @property
    def prefill_metadata(self) -> Optional["ROCmFlashAttentionMetadata"]:
        if self.num_prefills == 0:
            return None

        if self._cached_prefill_metadata is not None:
            return self._cached_prefill_metadata

        assert self.seq_lens is not None
        assert self.seq_lens_tensor is not None
        assert self.block_tables is not None

        self._cached_prefill_metadata = ROCmFlashAttentionMetadata(
            num_prefills=self.num_prefills,
            num_prefill_tokens=self.num_prefill_tokens,
            num_decode_tokens=0,
            slot_mapping=self.slot_mapping[:self.num_prefill_tokens],
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            multi_modal_placeholder_index_maps=self.
            multi_modal_placeholder_index_maps,
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            enable_kv_scales_calculation=self.enable_kv_scales_calculation,
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            seq_lens=self.seq_lens[:self.num_prefills],
            seq_lens_tensor=self.seq_lens_tensor[:self.num_prefills],
            max_query_len=self.max_query_len,
            max_prefill_seq_len=self.max_prefill_seq_len,
            max_decode_seq_len=0,
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            query_start_loc=None if self.query_start_loc is None else
            self.query_start_loc[:self.num_prefills + 1],
            seq_start_loc=None if self.seq_start_loc is None else
            self.seq_start_loc[:self.num_prefills + 1],
            context_lens_tensor=None if self.context_lens_tensor is None else
            self.context_lens_tensor[:self.num_prefills],
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            block_tables=self.block_tables[:self.num_prefills],
            use_cuda_graph=False,
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            # Begin encoder & cross attn fields below...
            encoder_seq_lens=self.encoder_seq_lens,
            encoder_seq_lens_tensor=self.encoder_seq_lens_tensor,
            max_encoder_seq_len=self.max_encoder_seq_len,
            cross_slot_mapping=self.cross_slot_mapping,
            cross_block_tables=self.cross_block_tables)
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        return self._cached_prefill_metadata

    @property
    def decode_metadata(self) -> Optional["ROCmFlashAttentionMetadata"]:
        if self.num_decode_tokens == 0:
            return None

        if self._cached_decode_metadata is not None:
            return self._cached_decode_metadata
        assert self.block_tables is not None
        assert self.seq_lens_tensor is not None

        self._cached_decode_metadata = ROCmFlashAttentionMetadata(
            num_prefills=0,
            num_prefill_tokens=0,
            num_decode_tokens=self.num_decode_tokens,
            slot_mapping=self.slot_mapping[self.num_prefill_tokens:],
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            multi_modal_placeholder_index_maps=None,
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            enable_kv_scales_calculation=True,
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            seq_lens=None,
            seq_lens_tensor=self.seq_lens_tensor[self.num_prefills:],
            max_query_len=None,
            max_prefill_seq_len=0,
            max_decode_seq_len=self.max_decode_seq_len,
            query_start_loc=None,
            seq_start_loc=None,
            context_lens_tensor=None,
            block_tables=self.block_tables[self.num_prefills:],
            use_cuda_graph=self.use_cuda_graph,
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            # Begin encoder & cross attn fields below...
            encoder_seq_lens=self.encoder_seq_lens,
            encoder_seq_lens_tensor=self.encoder_seq_lens_tensor,
            max_encoder_seq_len=self.max_encoder_seq_len,
            cross_slot_mapping=self.cross_slot_mapping,
            cross_block_tables=self.cross_block_tables)
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        # Batch may be composed of prefill|decodes, adjust query start indices
        # to refer to the start of decodes when the two are split apart.
        # E.g. in tokens:[3 prefills|6 decodes], query_start_loc=[3,9] => [0,6].
        if self._cached_decode_metadata.query_start_loc is not None:
            qs = self._cached_decode_metadata.query_start_loc
            self._cached_decode_metadata.query_start_loc = qs - qs[0]
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        return self._cached_decode_metadata
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    def advance_step(self,
                     model_input: "ModelInputForGPUWithSamplingMetadata",
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                     sampled_token_ids: Optional[torch.Tensor],
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                     block_size: int,
                     num_seqs: int,
                     num_queries: int,
                     turn_prefills_into_decodes: bool = False):
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        """
        Update metadata in-place to advance one decode step.
        """
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        assert not turn_prefills_into_decodes, \
            ("Chunked prefill is not supported with rocm_flash_attn yet."
             "turn_prefills_into_decodes is a Multi-Step + Chunked-Prefill "
             "specific parameter.")

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        # When using cudagraph, the num_seqs is padded to the next captured
        # batch sized, but num_queries tracks the actual number of requests in
        # the batch. For --enforce-eager mode, num_seqs == num_queries
        if num_seqs != num_queries:
            assert num_seqs > num_queries
            assert self.use_cuda_graph

        assert self.num_prefills == 0
        assert self.num_prefill_tokens == 0
        assert self.num_decode_tokens == num_seqs
        assert self.slot_mapping.shape == (num_seqs, )

        assert self.seq_lens is not None
        assert len(self.seq_lens) == num_seqs
        assert self.seq_lens_tensor is not None
        assert self.seq_lens_tensor.shape == (num_seqs, )
        assert self.max_query_len == 1
        assert self.max_prefill_seq_len == 0
        assert self.max_decode_seq_len == max(self.seq_lens)

        assert self.query_start_loc is not None
        assert self.query_start_loc.shape == (num_queries + 1, )
        assert self.seq_start_loc is not None
        assert self.seq_start_loc.shape == (num_seqs + 1, )

        assert self.context_lens_tensor is not None
        assert self.context_lens_tensor.shape == (num_queries, )

        assert self.block_tables is not None
        assert self.block_tables.shape[0] == num_seqs

        # Update query lengths. Note that we update only queries and not seqs,
        # since tensors may be padded due to captured cuda graph batch size
        for i in range(num_queries):
            self.seq_lens[i] += 1
        self.max_decode_seq_len = max(self.seq_lens)

        ops.advance_step_flashattn(num_seqs=num_seqs,
                                   num_queries=num_queries,
                                   block_size=block_size,
                                   input_tokens=model_input.input_tokens,
                                   sampled_token_ids=sampled_token_ids,
                                   input_positions=model_input.input_positions,
                                   seq_lens=self.seq_lens_tensor,
                                   slot_mapping=self.slot_mapping,
                                   block_tables=self.block_tables)

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class ROCmFlashAttentionMetadataBuilder(
        CommonMetadataBuilder[ROCmFlashAttentionMetadata]):

    _metadata_cls = ROCmFlashAttentionMetadata


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def _make_alibi_bias(alibi_slopes: torch.Tensor,
                     dtype: torch.dtype,
                     seq_lens: Optional[List[int]],
                     make_attn_mask: bool = True) -> List[torch.Tensor]:
    attn_biases = []
    if seq_lens:
        for seq_len in seq_lens:
            bias = torch.arange(seq_len, dtype=dtype)
            # NOTE(zhuohan): HF uses
            #     `bias = bias[None, :].repeat(seq_len, 1)`
            # here. We find that both biases give the same results, but
            # the bias below more accurately follows the original ALiBi
            # paper.
            bias = bias[None, :] - bias[:, None]

            num_heads = alibi_slopes.shape[0]
            bias = bias[None, :].repeat(
                (num_heads, 1, 1)).to(alibi_slopes.device)
            bias.mul_(alibi_slopes[:, None, None])
            if make_attn_mask:
                inf_mask = torch.empty(
                    (1, seq_len, seq_len),
                    dtype=bias.dtype).fill_(-torch.inf).triu_(diagonal=1).to(
                        alibi_slopes.device)
                attn_biases.append((bias + inf_mask).to(dtype))
            else:
                attn_biases.append(bias.to(dtype))

    return attn_biases


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def _get_seq_len_block_table_args(
    attn_metadata: ROCmFlashAttentionMetadata,
    attn_type: str,
) -> tuple:
    '''
    The particular choice of sequence-length
    attributes which should be extracted from attn_metadata is dependent
    on the type of attention operation.

    Decoder attn -> select entirely decoder self-attention-related fields
    Encoder/decoder cross-attn -> select encoder sequence lengths
    Encoder attn -> select encoder sequence lengths fields
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    Encoder-only attn -> select prefill sequence lengths with 
        bidirectional attention
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    Arguments:

    * attn_metadata: Attention metadata structure associated with attention op
    * attn_type: encoder attention, decoder self-attention,
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                encoder/decoder cross-attention, encoder-only
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    Returns:

    * Appropriate sequence-lengths tensors for query and key
    * Appropriate max sequence-length scalar
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    * Causal masking flag
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    '''

    if attn_type == AttentionType.ENCODER:
        assert attn_metadata.encoder_seq_lens is not None
        assert attn_metadata.encoder_seq_lens_tensor is not None
        query_seq_start_loc = torch.tensor(
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            list(itertools.accumulate([0] + attn_metadata.encoder_seq_lens)),
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            device=attn_metadata.encoder_seq_lens_tensor.device,
            dtype=attn_metadata.encoder_seq_lens_tensor.dtype)
        causal_mask = False

        # No block tables associated with encoder attention
        return (query_seq_start_loc, attn_metadata.max_encoder_seq_len,
                query_seq_start_loc, attn_metadata.max_encoder_seq_len,
                attn_metadata.encoder_seq_lens, causal_mask)
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    elif attn_type == AttentionType.ENCODER_ONLY:
        # For encoder-only models, we use the prefill sequence lengths
        assert attn_metadata.seq_lens is not None
        assert attn_metadata.seq_lens_tensor is not None
        query_seq_start_loc = torch.tensor(
            list(itertools.accumulate([0] + attn_metadata.seq_lens)),
            device=attn_metadata.seq_lens_tensor.device,
            dtype=attn_metadata.seq_lens_tensor.dtype)
        max_seq_len = attn_metadata.max_prefill_seq_len
        # Encoder-only models typically use bidirectional attention
        causal_mask = False

        return (query_seq_start_loc, max_seq_len, query_seq_start_loc,
                max_seq_len, attn_metadata.seq_lens, causal_mask)

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    elif attn_type == AttentionType.DECODER:
        # Decoder self-attention
        # Choose max_seq_len based on whether we are in prompt_run
        assert attn_metadata.seq_lens is not None
        assert attn_metadata.seq_lens_tensor is not None
        query_seq_start_loc = torch.tensor(
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            list(itertools.accumulate([0] + attn_metadata.seq_lens)),
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            device=attn_metadata.seq_lens_tensor.device,
            dtype=attn_metadata.seq_lens_tensor.dtype)
        max_seq_len = attn_metadata.max_prefill_seq_len
        causal_mask = True

        return (query_seq_start_loc, max_seq_len, query_seq_start_loc,
                max_seq_len, attn_metadata.seq_lens, causal_mask)
    elif attn_type == AttentionType.ENCODER_DECODER:
        assert attn_metadata.seq_lens is not None
        assert attn_metadata.encoder_seq_lens_tensor is not None
        query_start_loc = torch.tensor(
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            list(itertools.accumulate([0] + attn_metadata.seq_lens)),
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            device=attn_metadata.encoder_seq_lens_tensor.device,
            dtype=attn_metadata.encoder_seq_lens_tensor.dtype)

        assert attn_metadata.encoder_seq_lens is not None
        assert attn_metadata.seq_lens_tensor is not None
        key_seq_start_loc = torch.tensor(
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            list(itertools.accumulate([0] + attn_metadata.encoder_seq_lens)),
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            device=attn_metadata.seq_lens_tensor.device,
            dtype=attn_metadata.seq_lens_tensor.dtype)
        causal_mask = False

        # Enc/dec cross-attention KVs match encoder sequence length;
        # cross-attention utilizes special "cross" block tables
        return (query_start_loc, attn_metadata.max_prefill_seq_len,
                key_seq_start_loc, attn_metadata.max_encoder_seq_len,
                attn_metadata.seq_lens, causal_mask)
    else:
        raise AttributeError(f"Invalid attention type {str(attn_type)}")


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class ROCmFlashAttentionImpl(AttentionImpl):
    """
    If the input tensors contain prompt tokens, the layout is as follows:
    |<--------------- num_prompt_tokens -------------->|
    |<--prompt_0-->|<--prompt_1-->|...|<--prompt_N-1-->|

    Otherwise, the layout is as follows:
    |<------------------ num_generation_tokens (M) ----------------->|
    |<--generation_0-->|..........|<--generation_M-1-->|<--padding-->|

    Generation tokens can contain padding when cuda-graph is used.
    Currently, prompt tokens don't contain any padding.

    The prompts might have different lengths, while the generation tokens
    always have length 1.
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    If chunked prefill is enabled, prefill tokens and decode tokens can be
    batched together in a flattened 1D query.

    |<----- num_prefill_tokens ---->|<------- num_decode_tokens ----------->|	
    |<-prompt_0->|...|<-prompt_N-1->|<-generation_0->|...|<-generation_M-1->|

    Currently, cuda graph is disabled for chunked prefill, meaning there's no
    padding between prefill and decode tokens.
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    """

    def __init__(
        self,
        num_heads: int,
        head_size: int,
        scale: float,
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        num_kv_heads: int,
        alibi_slopes: Optional[List[float]],
        sliding_window: Optional[int],
        kv_cache_dtype: str,
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        blocksparse_params: Optional[Dict[str, Any]] = None,
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        logits_soft_cap: Optional[float] = None,
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        attn_type: str = AttentionType.DECODER,
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        use_irope: bool = False,
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    ) -> None:
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        if use_irope:
            logger.warning_once(
                "Using irope in ROCm Flash Attention is not supported yet, it "
                "will fail back to global attention for long context.")
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        if blocksparse_params is not None:
            raise ValueError(
                "ROCmFlashAttention does not support blocksparse attention.")
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        if use_irope:
            logger.warning(
                "Using irope in V0 is not supported yet, it will fall back "
                "to global attention for long context.")
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        if logits_soft_cap is None:
            # In flash-attn, setting logits_soft_cap as 0 means no soft cap.
            self.logits_soft_cap = 0.0
        else:
            self.logits_soft_cap = logits_soft_cap
        self.attn_type = attn_type
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        self.num_heads = num_heads
        self.head_size = head_size
        self.scale = float(scale)
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        self.num_kv_heads = num_kv_heads
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        if alibi_slopes is not None:
            alibi_slopes = torch.tensor(alibi_slopes, dtype=torch.float32)
        self.alibi_slopes = alibi_slopes
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        self.sliding_window = ((sliding_window, sliding_window)
                               if sliding_window is not None else (-1, -1))
        self.kv_cache_dtype = kv_cache_dtype
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        assert self.num_heads % self.num_kv_heads == 0
        self.num_queries_per_kv = self.num_heads // self.num_kv_heads

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        self.paged_attn_module = _get_paged_attn_module()
        supported_head_sizes = self.paged_attn_module.get_supported_head_sizes(
        )

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        if head_size not in supported_head_sizes:
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            raise ValueError(
                f"Head size {head_size} is not supported by PagedAttention. "
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                f"Supported head sizes are: {supported_head_sizes}.")
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        self.use_naive_attn = False
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        # NOTE: Allow for switching between Triton and CK. Defaulting to triton.
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        self.use_triton_flash_attn = envs.VLLM_USE_TRITON_FLASH_ATTN
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        if self.use_triton_flash_attn:
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            if logits_soft_cap is not None:
                raise ValueError(
                    "ROCm Triton FlashAttention does not support attention"
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                    " logits soft capping."
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                    " please try using the ROCm CK "
                    "FA backend instead by setting the env var "
                    "`VLLM_USE_TRITON_FLASH_ATTN=0`")

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            from vllm.attention.ops.triton_flash_attention import (  # noqa: F401
                triton_attention)
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            self.triton_attn_func = triton_attention
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            logger.debug("Using Triton FA in ROCmBackend")
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            if self.sliding_window != (-1, -1):
                logger.warning("ROCm Triton FA does not currently support "
                               "sliding window attention. If using half "
                               "precision, please try using the ROCm CK "
                               "FA backend instead by setting the env var "
                               "`VLLM_USE_TRITON_FLASH_ATTN=0`")
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        else:
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            # if not using triton, navi3x/navi21/navi10 do not use flash-attn
            # either
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            if not current_platform.has_device_capability(90):
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                self.use_naive_attn = True
            else:
                try:
                    from flash_attn import flash_attn_varlen_func  # noqa: F401
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                    self.fa_attn_func = flash_attn_varlen_func
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                    logger.debug("Using CK FA in ROCmBackend")
                except ModuleNotFoundError:
                    self.use_naive_attn = True

            if self.use_naive_attn:
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                if logits_soft_cap is not None:
                    raise ValueError(
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                        "ROCm Naive FlashAttention does not support "
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                        "attention logits soft capping.")
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                self.sdpa_attn_func = _sdpa_attention
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                logger.debug("Using naive (SDPA) attention in ROCmBackend")
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        self.aiter_kv_scales_initialized = False

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    def repeat_kv(self, x: torch.Tensor, n_rep: int) -> torch.Tensor:
        """torch.repeat_interleave(x, dim=1, repeats=n_rep)"""
        tokens, n_kv_heads, head_dim = x.shape
        return (x[:, :,
                  None, :].expand(tokens, n_kv_heads, n_rep,
                                  head_dim).reshape(tokens, n_kv_heads * n_rep,
                                                    head_dim))

    def forward(
        self,
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        layer: AttentionLayer,
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        query: torch.Tensor,
        key: torch.Tensor,
        value: torch.Tensor,
        kv_cache: torch.Tensor,
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        attn_metadata: ROCmFlashAttentionMetadata,
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        output: Optional[torch.Tensor] = None,
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    ) -> torch.Tensor:
        """Forward pass with FlashAttention and PagedAttention.

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        For decoder-only models: query, key and value must be non-None.

        For encoder/decoder models:
        * ROCmFlashAttentionImpl.forward() may be invoked for both self- and 
            cross-attention layers.
        * For self-attention: query, key and value must be non-None.
        * For cross-attention:
            * Query must be non-None
            * During prefill, key and value must be non-None; key and value
              get cached for use during decode.
            * During decode, key and value may be None, since:
              (1) key and value tensors were cached during prefill, and
              (2) cross-attention key and value tensors do not grow during
                  decode
        
        A note on how the attn_type (attention type enum) argument impacts
        attention forward() behavior:
    
            * DECODER: normal decoder-only behavior;
                use decoder self-attention block table
            * ENCODER: no KV caching; pass encoder sequence
                attributes (encoder_seq_lens/encoder_seq_lens_tensor/
                max_encoder_seq_len) to kernel, in lieu of decoder
                sequence attributes (seq_lens/seq_lens_tensor/max_seq_len)
            * ENCODER_DECODER: cross-attention behavior;
                use cross-attention block table for caching KVs derived
                from encoder hidden states; since KV sequence lengths
                will match encoder sequence lengths, pass encoder sequence
                attributes to kernel (encoder_seq_lens/encoder_seq_lens_tensor/
                max_encoder_seq_len)
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            * ENCODER_ONLY: bidirectional attention with no KV caching;
                use prefill sequence attributes
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        Args:
            query: shape = [num_tokens, num_heads * head_size]
            key: shape = [num_tokens, num_kv_heads * head_size]
            value: shape = [num_tokens, num_kv_heads * head_size]
            kv_cache = [2, num_blocks, block_size * num_kv_heads * head_size]
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                NOTE: kv_cache will be an empty tensor with shape [0]
                for profiling run.
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            attn_metadata: Metadata for attention.
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            attn_type: Select attention type, between encoder attention,
                       decoder self-attention, or encoder/decoder cross-
                       attention. Defaults to decoder self-attention,
                       which is the vLLM default generally
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        Returns:
            shape = [num_tokens, num_heads * head_size]
        """
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        assert output is not None, "Output tensor must be provided."

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        query = query.view(-1, self.num_heads, self.head_size)
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        if key is not None:
            assert value is not None
            key = key.view(-1, self.num_kv_heads, self.head_size)
            value = value.view(-1, self.num_kv_heads, self.head_size)
        else:
            assert value is None
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        paged_attn = self.paged_attn_module

        # Reshaping kv tensors is required for AITER paged attention kernel
        # because it works on a different tensor shape,
        # when the size of one element is one byte (int8/fp8 dtypes).
        # This reshaping is only required on the first forward call
        # and the kv cache must not be empty.
        if (is_rocm_aiter_paged_attn_enabled() and kv_cache.dtype.itemsize == 1
                and not self.aiter_kv_scales_initialized
                and kv_cache.shape != torch.Size([0])):
            num_blocks = kv_cache.shape[1]
            block_size = kv_cache.shape[2] // (self.num_kv_heads *
                                               self.head_size)
            k_scale = torch.empty((self.num_kv_heads, num_blocks * block_size),
                                  dtype=torch.float32,
                                  device=kv_cache.device)
            v_scale = torch.empty((self.num_kv_heads, num_blocks * block_size),
                                  dtype=torch.float32,
                                  device=kv_cache.device)
            self.aiter_kv_scales_initialized = True
            k_scale.fill_(layer._k_scale.item())
            v_scale.fill_(layer._v_scale.item())
            layer._k_scale = k_scale
            layer._v_scale = v_scale

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        # Only update KV cache for decoder self-attention
        # and encoder-decoder cross-attention
        if self.attn_type not in [
                AttentionType.ENCODER, AttentionType.ENCODER_ONLY
        ] and kv_cache.numel() > 0:
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            key_cache, value_cache = paged_attn.split_kv_cache(
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                kv_cache, self.num_kv_heads, self.head_size)

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            if key is not None and value is not None:
                # Reshape the input keys and values and store them in the
                # cache. If kv_cache is not provided, the new key and value
                # tensors are not cached. This happens during the initial
                # memory profiling run.
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                paged_attn.write_to_paged_cache(
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                    key,
                    value,
                    key_cache,
                    value_cache,
                    attn_metadata.slot_mapping
                    if self.attn_type != AttentionType.ENCODER_DECODER else
                    attn_metadata.cross_slot_mapping,
                    self.kv_cache_dtype,
                    layer._k_scale,
                    layer._v_scale,
                )

        if self.attn_type != AttentionType.ENCODER:
            num_prefill_tokens = attn_metadata.num_prefill_tokens
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        elif self.attn_type == AttentionType.ENCODER_ONLY:
            # For encoder-only models, all tokens are processed in one go
            num_prefill_tokens = query.shape[0]
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        else:
            assert attn_metadata.num_encoder_tokens is not None
            num_prefill_tokens = attn_metadata.num_encoder_tokens
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        # Query for decode. KV is not needed because it is already cached.
        decode_query = query[num_prefill_tokens:]
        # QKV for prefill.
        query = query[:num_prefill_tokens]

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        # For encoder-only and encoder models,
        # we process all tokens at once
        # For decoder and encoder-decoder,
        # we may need to limit key/value to prefill tokens
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        if key is not None and value is not None \
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            and self.attn_type not in [AttentionType.ENCODER_DECODER,
                                       AttentionType.ENCODER_ONLY]:
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            key = key[:num_prefill_tokens]
            value = value[:num_prefill_tokens]
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        if prefill_meta := attn_metadata.prefill_metadata:
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            # Prompt run.
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            # normal attention and DECODER
            if self.attn_type == AttentionType.DECODER and (
                    kv_cache.numel() == 0 or prefill_meta.block_tables is None
                    or prefill_meta.block_tables.numel() == 0):
                (query_seq_start_loc, query_max_seq_len, key_seq_start_loc,
                 key_max_seq_len, seq_lens,
                 causal_mask) = (prefill_meta.seq_start_loc,
                                 prefill_meta.max_prefill_seq_len,
                                 prefill_meta.seq_start_loc,
                                 prefill_meta.max_prefill_seq_len,
                                 attn_metadata.seq_lens, True)
            # prefix-enabled attention and ENCODER/ENCODER_DECODER
            else:
                (query_seq_start_loc, query_max_seq_len, key_seq_start_loc,
                 key_max_seq_len, seq_lens,
                 causal_mask) = _get_seq_len_block_table_args(
                     prefill_meta, self.attn_type)
            # Prompt run.
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            if kv_cache.numel() == 0 or prefill_meta.block_tables.numel() == 0:
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                # triton attention
                # When block_tables are not filled, it means q and k are the
                # prompt, and they have the same length.
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                attn_masks = None
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                if self.use_triton_flash_attn:
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                    if self.alibi_slopes is not None:
                        attn_masks = _make_alibi_bias(
                            self.alibi_slopes,
                            query.dtype,
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                            seq_lens,
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                            make_attn_mask=causal_mask)  # type: ignore
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                    use_fp8_scales = (layer._q_scale and layer._k_scale
                                      and layer._v_scale and layer._prob_scale
                                      and self.kv_cache_dtype == "fp8")
                    full_scales = (
                        layer._q_scale, layer._k_scale, layer._v_scale,
                        layer._prob_scale) if use_fp8_scales else None
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                    self.triton_attn_func(
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                        query,
                        key,
                        value,
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                        output[:num_prefill_tokens],
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                        query_seq_start_loc,
                        key_seq_start_loc,
                        query_max_seq_len,
                        key_max_seq_len,
                        causal_mask,
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                        self.scale,
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                        attn_masks[0][None]
                        if attn_masks is not None else None,
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                        full_scales,
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                    )
                elif self.use_naive_attn:
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                    if self.num_kv_heads != self.num_heads:
                        # Interleave for MQA workaround.
                        key = self.repeat_kv(key, self.num_queries_per_kv)
                        value = self.repeat_kv(value, self.num_queries_per_kv)
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                    if self.alibi_slopes is not None:
                        attn_masks = _make_alibi_bias(
                            self.alibi_slopes,
                            query.dtype,
                            attn_metadata.seq_lens,
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                            make_attn_mask=causal_mask)  # type: ignore
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                    query = query.movedim(0, query.dim() - 2)
                    key = key.movedim(0, key.dim() - 2)
                    value = value.movedim(0, value.dim() - 2)
                    # sdpa math backend attention
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                    self.sdpa_attn_func(
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                        query,
                        key,
                        value,
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                        output[:num_prefill_tokens],
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                        query_seq_start_loc,
                        num_prefill_tokens,
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                        self.num_heads,
                        self.head_size,
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                        self.scale,
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                        attn_masks,
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                    )
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                else:
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                    # upstream FA does not support an output arg, copy
                    output[:num_prefill_tokens] = self.fa_attn_func(
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                        q=query,
                        k=key,
                        v=value,
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                        cu_seqlens_q=query_seq_start_loc,
                        cu_seqlens_k=key_seq_start_loc,
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                        max_seqlen_q=prefill_meta.max_prefill_seq_len,
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                        max_seqlen_k=key_max_seq_len,
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                        softmax_scale=self.scale,
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                        causal=causal_mask,
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                        window_size=self.sliding_window,
                        alibi_slopes=self.alibi_slopes,
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                        softcap=self.logits_soft_cap,
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                    )
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            else:
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                # prefix-enabled attention -
                # not applicable for encoder-only models
                if self.attn_type != AttentionType.ENCODER_ONLY:
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                    output[:num_prefill_tokens] = paged_attn.forward_prefix(
                        query,
                        key,
                        value,
                        self.kv_cache_dtype,
                        key_cache,
                        value_cache,
                        prefill_meta.block_tables,
                        prefill_meta.query_start_loc,
                        prefill_meta.seq_lens_tensor,
                        prefill_meta.max_query_len,
                        self.alibi_slopes,
                        self.sliding_window[0],
                        layer._k_scale,
                        layer._v_scale,
                    )
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        # Skip decode phase for encoder-only models
        if (decode_meta := attn_metadata.decode_metadata) and (
                self.attn_type != AttentionType.ENCODER_ONLY):
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            # Decoding run.
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            # Whether to use rocm custom paged attention or not
            num_seqs, num_heads, head_size = decode_query.shape
            block_size = value_cache.shape[3]
            gqa_ratio = num_heads // self.num_kv_heads
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            use_custom = use_rocm_custom_paged_attention(
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                decode_query.dtype, head_size, block_size, gqa_ratio,
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                decode_meta.max_decode_seq_len, self.sliding_window,
                self.kv_cache_dtype, self.alibi_slopes)
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            use_custom = False
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            if use_custom:
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                max_seq_len = (decode_meta.max_decode_seq_len if self.attn_type
                               != AttentionType.ENCODER_DECODER else
                               decode_meta.max_encoder_seq_len)
                assert max_seq_len is not None
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                max_num_partitions = (
                    (max_seq_len + _PARTITION_SIZE_ROCM - 1) //
                    _PARTITION_SIZE_ROCM)
                assert _PARTITION_SIZE_ROCM % block_size == 0
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                tmp_output = torch.empty(
                    size=(num_seqs, num_heads, max_num_partitions, head_size),
                    dtype=output.dtype,
                    device=output.device,
                )
                exp_sums = torch.empty(
                    size=(num_seqs, num_heads, max_num_partitions),
                    dtype=torch.float32,
                    device=output.device,
                )
                max_logits = torch.empty_like(exp_sums)
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                query_start_loc = None
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                ops.paged_attention_rocm(
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                    output[num_prefill_tokens:],
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                    exp_sums,
                    max_logits,
                    tmp_output,
                    decode_query,
                    key_cache,
                    value_cache,
                    self.num_kv_heads,
                    self.scale,
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                    decode_meta.block_tables
                    if self.attn_type != AttentionType.ENCODER_DECODER else
                    decode_meta.cross_block_tables,
                    decode_meta.seq_lens_tensor
                    if self.attn_type != AttentionType.ENCODER_DECODER else
                    decode_meta.encoder_seq_lens_tensor,
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                    query_start_loc,
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                    block_size,
                    max_seq_len,
                    self.alibi_slopes,
                    self.kv_cache_dtype,
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                    layer._k_scale,
                    layer._v_scale,
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                )
            else:
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                output[num_prefill_tokens:] = paged_attn.forward_decode(
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                    decode_query,
                    key_cache,
                    value_cache,
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                    decode_meta.block_tables
                    if self.attn_type != AttentionType.ENCODER_DECODER else
                    decode_meta.cross_block_tables,
                    decode_meta.seq_lens_tensor
                    if self.attn_type != AttentionType.ENCODER_DECODER else
                    decode_meta.encoder_seq_lens_tensor,
                    decode_meta.max_decode_seq_len
                    if self.attn_type != AttentionType.ENCODER_DECODER else
                    decode_meta.max_encoder_seq_len,
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                    self.kv_cache_dtype,
                    self.num_kv_heads,
                    self.scale,
                    self.alibi_slopes,
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                    layer._k_scale,
                    layer._v_scale,
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                )
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        # Reshape the output tensor.
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        return output.view(-1, self.num_heads * self.head_size)
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def _sdpa_attention(
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    query: torch.Tensor,
    key: torch.Tensor,
    value: torch.Tensor,
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    output: torch.Tensor,
    seq_lens: torch.Tensor,
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    num_tokens: int,
    num_heads: int,
    head_size: int,
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    scale: float,
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    attn_masks: Optional[List[torch.Tensor]] = None,
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) -> torch.Tensor:
    start = 0
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    assert output.shape == (num_tokens, num_heads, head_size)
    assert output.dtype == query.dtype
    assert output.device == query.device
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    for i, seq_len in enumerate(seq_lens):
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        end = start + seq_len
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        with torch.nn.attention.sdpa_kernel(
                torch.nn.attention.SDPBackend.MATH):
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            sub_out = torch.nn.functional.scaled_dot_product_attention(
                query[:, start:end, :],
                key[:, start:end, :],
                value[:, start:end, :],
                dropout_p=0.0,
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                is_causal=attn_masks is None,
                attn_mask=attn_masks[i] if attn_masks else None,
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                scale=scale).movedim(query.dim() - 2, 0)
            output[start:end, :, :] = sub_out
            start = end
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    return output