flash_attn.py 39.6 KB
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"""Attention layer with FlashAttention."""
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from collections import defaultdict
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from dataclasses import dataclass
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from itertools import accumulate
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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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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,
                                              AttentionMetadataBuilder,
                                              AttentionType)
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from vllm.attention.backends.utils import (
    PAD_SLOT_ID, CommonAttentionState, compute_slot_mapping,
    compute_slot_mapping_start_idx, get_num_prefill_decode_query_kv_tokens,
    get_seq_len_block_table_args, is_all_cross_attn_metadata_set,
    is_all_encoder_attn_metadata_set, is_block_tables_empty)
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from vllm.envs import VLLM_FLASH_ATTN_VERSION
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from vllm.multimodal import MultiModalPlaceholderMap
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from vllm.platforms import current_platform
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from vllm.utils import async_tensor_h2d, make_tensor_with_pad
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if TYPE_CHECKING:
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    from vllm.worker.model_runner import (ModelInputForGPUBuilder,
                                          ModelInputForGPUWithSamplingMetadata)
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from vllm.vllm_flash_attn import (flash_attn_varlen_func,
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                                  flash_attn_with_kvcache,
                                  is_fa_version_supported)
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class FlashAttentionBackend(AttentionBackend):

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    accept_output_buffer: bool = True

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    @staticmethod
    def get_supported_head_sizes() -> List[int]:
        return [32, 64, 96, 128, 160, 192, 224, 256]

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    @staticmethod
    def get_name() -> str:
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        return "FLASH_ATTN"
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    @staticmethod
    def get_impl_cls() -> Type["FlashAttentionImpl"]:
        return FlashAttentionImpl

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

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

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    @staticmethod
    def get_kv_cache_shape(
        num_blocks: int,
        block_size: int,
        num_kv_heads: int,
        head_size: int,
    ) -> Tuple[int, ...]:
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        if block_size % 16 != 0:
            raise ValueError("Block size must be a multiple of 16.")
        return (2, 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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        src_key_cache = src_kv_cache[0]
        dst_key_cache = dst_kv_cache[0]
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        ops.swap_blocks(src_key_cache, dst_key_cache, src_to_dst)
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        src_value_cache = src_kv_cache[1]
        dst_value_cache = dst_kv_cache[1]
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        ops.swap_blocks(src_value_cache, dst_value_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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        key_caches = [kv_cache[0] for kv_cache in kv_caches]
        value_caches = [kv_cache[1] for kv_cache in kv_caches]
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        ops.copy_blocks(key_caches, value_caches, src_to_dists)
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@dataclass
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class FlashAttentionMetadata(AttentionMetadata):
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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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    # 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 ---------------------|
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    #                                   |-- query_len ---|
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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
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    # (batch_size,) A tensor of context lengths (tokens that are computed
    # so far).
    context_lens_tensor: Optional[torch.Tensor]
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    # (batch_size, max_blocks_per_seq).
    # Block addresses per sequence. (Seq id -> list of physical block)
    # E.g., [0, 1, 2] means tokens are stored in 0th, 1st, and 2nd blocks
    # in the kv cache. Each block can contain up to block_size tokens.
    # 2nd dimensions are padded up to max_blocks_per_seq if it is cuda-graph
    # captured.
    block_tables: Optional[torch.Tensor]

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    # 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.
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    use_cuda_graph: bool

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    # Maximum query length in the batch.
    max_query_len: Optional[int] = None

    # Max number of query tokens among request in the batch.
    max_decode_query_len: Optional[int] = None

    # (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].
    query_start_loc: Optional[torch.Tensor] = None
    # (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].
    seq_start_loc: Optional[torch.Tensor] = None

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    _cached_prefill_metadata: Optional["FlashAttentionMetadata"] = None
    _cached_decode_metadata: Optional["FlashAttentionMetadata"] = 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
    # (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].
    encoder_seq_start_loc: 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

    @property
    def is_all_encoder_attn_metadata_set(self):
        '''
        All attention metadata required for encoder attention is set.
        '''
        return is_all_encoder_attn_metadata_set(self)

    @property
    def is_all_cross_attn_metadata_set(self):
        '''
        All attention metadata required for enc/dec cross-attention is set.

        Superset of encoder attention required metadata.
        '''
        return is_all_cross_attn_metadata_set(self)

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

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

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        assert ((self.seq_lens is not None)
                or (self.encoder_seq_lens is not None))
        assert ((self.seq_lens_tensor is not None)
                or (self.encoder_seq_lens_tensor is not None))

        # Compute some attn_metadata fields which default to None
        query_start_loc = (None if self.query_start_loc is None else
                           self.query_start_loc[:self.num_prefills + 1])
        slot_mapping = (None if self.slot_mapping is None else
                        self.slot_mapping[:self.num_prefill_tokens])
        seq_lens = (None if self.seq_lens is None else
                    self.seq_lens[:self.num_prefills])
        seq_lens_tensor = (None if self.seq_lens_tensor is None else
                           self.seq_lens_tensor[:self.num_prefills])
        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])
        block_tables = (None if self.block_tables is None else
                        self.block_tables[:self.num_prefills])
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        self._cached_prefill_metadata = FlashAttentionMetadata(
            num_prefills=self.num_prefills,
            num_prefill_tokens=self.num_prefill_tokens,
            num_decode_tokens=0,
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            slot_mapping=slot_mapping,
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            multi_modal_placeholder_index_maps=self.
            multi_modal_placeholder_index_maps,
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            seq_lens=seq_lens,
            seq_lens_tensor=seq_lens_tensor,
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            max_query_len=self.max_query_len,
            max_prefill_seq_len=self.max_prefill_seq_len,
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            max_decode_query_len=0,
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            max_decode_seq_len=0,
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            query_start_loc=query_start_loc,
            seq_start_loc=seq_start_loc,
            context_lens_tensor=context_lens_tensor,
            block_tables=block_tables,
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            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,
            encoder_seq_start_loc=self.encoder_seq_start_loc,
            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["FlashAttentionMetadata"]:
        if self.num_decode_tokens == 0:
            return None

        if self._cached_decode_metadata is not None:
            return self._cached_decode_metadata
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        assert ((self.seq_lens_tensor is not None)
                or (self.encoder_seq_lens_tensor is not None))

        # Compute some attn_metadata fields which default to None
        slot_mapping = (None if self.slot_mapping is None else
                        self.slot_mapping[self.num_prefill_tokens:])
        seq_lens_tensor = (None if self.seq_lens_tensor is None else
                           self.seq_lens_tensor[self.num_prefills:])
        block_tables = (None if self.block_tables is None else
                        self.block_tables[self.num_prefills:])
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        self._cached_decode_metadata = FlashAttentionMetadata(
            num_prefills=0,
            num_prefill_tokens=0,
            num_decode_tokens=self.num_decode_tokens,
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            slot_mapping=slot_mapping,
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            multi_modal_placeholder_index_maps=None,
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            seq_lens=None,
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            seq_lens_tensor=seq_lens_tensor,
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            max_decode_query_len=self.max_decode_query_len,
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            max_query_len=self.max_query_len,
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            max_prefill_seq_len=0,
            max_decode_seq_len=self.max_decode_seq_len,
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            # Batch may be composed of prefill|decodes, adjust query start
            # indices to refer to the start of decodes. E.g.
            # in tokens:[3 prefills|6 decodes], query_start_loc=[3,9] => [0,6].
            query_start_loc=(self.query_start_loc[self.num_prefills:] -
                             self.query_start_loc[self.num_prefills])
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            if self.query_start_loc is not None else None,
            seq_start_loc=self.seq_start_loc[self.num_prefills:]
            if self.seq_start_loc is not None else None,
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            context_lens_tensor=None,
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            block_tables=block_tables,
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            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,
            encoder_seq_start_loc=self.encoder_seq_start_loc,
            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_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.
        """
        # 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

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        if turn_prefills_into_decodes:
            # When Mutli-Step is enabled with Chunked-Prefill, prefills and
            # decodes are scheduled together. In the first step, all the
            # prefills turn into decodes. This update reflects that
            # conversion.
            assert self.num_decode_tokens + self.num_prefills == num_seqs
            self.num_decode_tokens += self.num_prefills
            self.num_prefills = 0
            self.num_prefill_tokens = 0
            self.max_prefill_seq_len = 0
            self.max_query_len = 1

            self.slot_mapping = self.slot_mapping[:num_seqs]
        else:
            assert self.seq_lens is not None
            assert self.max_decode_seq_len == max(self.seq_lens)

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        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.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)

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        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 FlashAttentionMetadataBuilder(
        AttentionMetadataBuilder[FlashAttentionMetadata]):

    def __init__(self, input_builder: "ModelInputForGPUBuilder"):
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        self.input_builder = input_builder
        self.runner = input_builder.runner
        self.sliding_window = input_builder.sliding_window
        self.block_size = input_builder.block_size

    def prepare(self):
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        self.slot_mapping: List[int] = []
        self.prefill_seq_lens: List[int] = []
        self.context_lens: List[int] = []
        self.block_tables: List[List[int]] = []
        self.curr_seq_lens: List[int] = []
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        self.multimodal_placeholder_maps: Dict[
            str,
            MultiModalPlaceholderMap] = defaultdict(MultiModalPlaceholderMap)
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        self.num_prefills = 0
        self.num_prefill_tokens = 0
        self.num_decode_tokens = 0
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        self.has_prefix_cache_hit = False
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    def _add_seq_group(
            self, inter_data: "ModelInputForGPUBuilder.InterDataForSeqGroup",
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            chunked_prefill_enabled: bool, prefix_cache_hit: bool):
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        """Add a sequence group to the metadata. Specifically update/append
        1. context length.
        2. block table.
        3. slot mapping.
        """
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        is_prompt = inter_data.is_prompt
        block_tables = inter_data.block_tables
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        for (seq_id, token_len, seq_len, curr_seq_len, query_len, context_len,
             curr_sliding_window_block) in zip(
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                 inter_data.seq_ids, [len(t) for t in inter_data.input_tokens],
                 inter_data.orig_seq_lens, inter_data.seq_lens,
                 inter_data.query_lens, inter_data.context_lens,
                 inter_data.curr_sliding_window_blocks):
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            self.context_lens.append(context_len)

            if is_prompt:
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                mm_maps = inter_data.multi_modal_placeholder_maps
                if mm_maps:
                    for modality, placeholders in mm_maps.items():
                        self.multimodal_placeholder_maps[modality].extend(
                            placeholders)

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                self.num_prefills += 1
                self.num_prefill_tokens += token_len
                self.prefill_seq_lens.append(seq_len)
            else:
                self.num_decode_tokens += query_len
                self.curr_seq_lens.append(curr_seq_len)

            # Compute block table.
            # TODO(sang): Combine chunked prefill and prefix caching by
            # only allowing multiple of block_size chunk size.
            # NOTE: This only works for oooooooxxx style attention.
            block_table = []
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            if prefix_cache_hit:
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                # NOTE(woosuk): For flash-attn, the block table should
                # include the entries for the incoming prefill tokens.
                block_table = block_tables[seq_id]
            elif ((chunked_prefill_enabled or not is_prompt)
                  and block_tables is not None):
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                if curr_sliding_window_block == 0:
                    block_table = block_tables[seq_id]
                else:
                    block_table = block_tables[seq_id][
                        -curr_sliding_window_block:]
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            self.block_tables.append(block_table)

            # Compute slot mapping.
            is_profile_run = is_block_tables_empty(block_tables)
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            start_idx = compute_slot_mapping_start_idx(is_prompt, query_len,
                                                       context_len,
                                                       self.sliding_window)
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            compute_slot_mapping(is_profile_run, self.slot_mapping, seq_id,
                                 seq_len, context_len, start_idx,
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                                 self.block_size, inter_data.block_tables)
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    def _get_graph_runner_block_tables(
            self, num_seqs: int,
            block_tables: List[List[int]]) -> torch.Tensor:
        # The shape of graph_block_tables is
        # [max batch size, max context len // block size].
        max_batch_size, max_blocks = self.runner.graph_block_tables.shape
        assert max_batch_size >= num_seqs

        graph_block_tables = self.runner.graph_block_tables[:num_seqs]
        for i, block_table in enumerate(block_tables):
            if block_table:
                num_blocks = len(block_table)
                if num_blocks <= max_blocks:
                    graph_block_tables[i, :num_blocks] = block_table
                else:
                    # It may be possible to have more blocks allocated due
                    # to lookahead slots of multi-step, however, they are
                    # not used anyway, so can be safely ignored.
                    graph_block_tables[
                        i, :max_blocks] = block_table[:max_blocks]

        return torch.from_numpy(graph_block_tables).to(
            device=self.runner.device, non_blocking=True)

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    def build(self, seq_lens: List[int], query_lens: List[int],
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              cuda_graph_pad_size: int, batch_size: int):
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        """Build attention metadata with on-device tensors.

        Args:
            seq_lens: The maybe padded sequence lengths of the input sequences.
            query_lens: The query lengths of the input sequences.
            cuda_graph_pad_size: The padding size for cuda graph.
                                 -1 if cuda graph is not used.
            batch_size: The maybe padded batch size.
        """
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        prefix_cache_hit = any([
            inter_data.prefix_cache_hit
            for inter_data in self.input_builder.inter_data_list
        ])
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        for inter_data in self.input_builder.inter_data_list:
            self._add_seq_group(inter_data,
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                                self.input_builder.chunked_prefill_enabled,
                                prefix_cache_hit)
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        device = self.runner.device
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        use_captured_graph = cuda_graph_pad_size != -1

        max_query_len = max(query_lens)
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        decode_query_lens = query_lens[self.num_prefills:]
        if len(decode_query_lens) > 0:
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            max_decode_query_len = max(decode_query_lens)
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        else:
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            max_decode_query_len = 1
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        max_prefill_seq_len = max(self.prefill_seq_lens, default=0)
        max_decode_seq_len = max(self.curr_seq_lens, default=0)
        num_decode_tokens = self.num_decode_tokens
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        query_start_loc = list(accumulate(query_lens, initial=0))
        seq_start_loc = list(accumulate(seq_lens, initial=0))
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        num_seqs = len(seq_lens)
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        if use_captured_graph:
            self.slot_mapping.extend([PAD_SLOT_ID] * cuda_graph_pad_size)
            self.block_tables.extend([] * cuda_graph_pad_size)
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            num_decode_tokens = batch_size - self.num_prefill_tokens
            block_tables = self._get_graph_runner_block_tables(
                num_seqs, self.block_tables)
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        else:
            block_tables = make_tensor_with_pad(
                self.block_tables,
                pad=0,
                dtype=torch.int,
                device=device,
            )
        assert max_query_len > 0, ("query_lens: {}".format(query_lens))

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        assert device is not None
        context_lens_tensor = async_tensor_h2d(self.context_lens, torch.int,
                                               device, self.runner.pin_memory)
        seq_lens_tensor = async_tensor_h2d(seq_lens, torch.int, device,
                                           self.runner.pin_memory)
        slot_mapping_tensor = async_tensor_h2d(self.slot_mapping, torch.long,
                                               device, self.runner.pin_memory)
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        query_start_loc_tensor = async_tensor_h2d(query_start_loc, torch.int32,
                                                  device,
                                                  self.runner.pin_memory)
        seq_start_loc_tensor = async_tensor_h2d(seq_start_loc, torch.int32,
                                                device, self.runner.pin_memory)
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        placeholder_index_maps = {
            modality: placeholder_map.index_map()
            for modality, placeholder_map in
            self.multimodal_placeholder_maps.items()
        }
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        return FlashAttentionMetadata(
            num_prefills=self.num_prefills,
            slot_mapping=slot_mapping_tensor,
            num_prefill_tokens=self.num_prefill_tokens,
            num_decode_tokens=num_decode_tokens,
            seq_lens=seq_lens,
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            multi_modal_placeholder_index_maps=placeholder_index_maps,
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            seq_lens_tensor=seq_lens_tensor,
            max_query_len=max_query_len,
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            max_decode_query_len=max_decode_query_len,
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            max_prefill_seq_len=max_prefill_seq_len,
            max_decode_seq_len=max_decode_seq_len,
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            query_start_loc=query_start_loc_tensor,
            seq_start_loc=seq_start_loc_tensor,
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            context_lens_tensor=context_lens_tensor,
            block_tables=block_tables,
            use_cuda_graph=use_captured_graph,
        )


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class FlashAttentionImpl(AttentionImpl):
    """
    If the input tensors contain prompt tokens, the layout is as follows:
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    |<--------------- num_prefill_tokens ----------------->|	
    |<--prefill_0-->|<--prefill_1-->|...|<--prefill_N-1--->|
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    Otherwise, the layout is as follows:	
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    |<----------------- num_decode_tokens ------------------>|	
    |<--decode_0-->|..........|<--decode_M-1-->|<--padding-->|
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    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 --------->|
    |<-prefill_0->|...|<-prefill_N-1->|<--decode_0-->|...|<--decode_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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    ) -> None:
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        if blocksparse_params is not None:
            raise ValueError(
                "FlashAttention does not support block-sparse attention.")
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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 - 1,
                                0) if sliding_window is not None else (-1, -1))
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        self.kv_cache_dtype = kv_cache_dtype
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        if logits_soft_cap is None:
            # In flash-attn, setting logits_soft_cap as 0 means no soft cap.
            logits_soft_cap = 0
        self.logits_soft_cap = logits_soft_cap
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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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        support_head_sizes = FlashAttentionBackend.get_supported_head_sizes()
        if head_size not in support_head_sizes:
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            raise ValueError(
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                f"Head size {head_size} is not supported by FlashAttention. "
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                f"Supported head sizes are: {support_head_sizes}.")
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        self.attn_type = attn_type
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        # if hopper default to FA3, otherwise stick to FA2 for now
        # TODO(lucas): profile FA3 on ampere to see if it makes sense to
        #  use FA3 as default for both
        if current_platform.get_device_capability()[0] >= 9:
            self.fa_version = 3 if is_fa_version_supported(3) else 2
        else:
            self.fa_version = 2

        if VLLM_FLASH_ATTN_VERSION is not None:
            assert VLLM_FLASH_ATTN_VERSION in [2, 3]
            self.fa_version = VLLM_FLASH_ATTN_VERSION

        assert is_fa_version_supported(self.fa_version)

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    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: FlashAttentionMetadata,
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        output: Optional[torch.Tensor] = None,
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    ) -> torch.Tensor:
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        """Forward pass with FlashAttention.
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        Args:
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            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]
            output: shape = [num_tokens, num_heads, head_size]
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            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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        NOTE: It in-place updates the output tensor.
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        """
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        # NOTE(woosuk): FlashAttention does not support FP8 KV cache.
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        assert layer._k_scale == 1.0 and layer._v_scale == 1.0, (
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            "key/v_scale is not supported in FlashAttention.")
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        assert output is not None, "Output tensor must be provided."

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        attn_type = self.attn_type
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        if (attn_type == AttentionType.ENCODER
                and (not attn_metadata.is_all_encoder_attn_metadata_set)):
            raise AttributeError("Encoder attention requires setting "
                                 "encoder metadata attributes.")
        elif (attn_type == AttentionType.ENCODER_DECODER
              and (not attn_metadata.is_all_cross_attn_metadata_set)):
            raise AttributeError("Encoder/decoder cross-attention "
                                 "requires setting cross-attention "
                                 "metadata attributes.")

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        kv_cache_dtype: str = self.kv_cache_dtype
        softmax_scale: float = self.scale
        window_size = self.sliding_window
        alibi_slopes: Optional[torch.Tensor] = self.alibi_slopes
        logits_soft_cap: Optional[float] = self.logits_soft_cap

        if kv_cache.numel() > 0:
            key_cache = kv_cache[0]
            value_cache = kv_cache[1]
            # We skip updating the KV cache under two conditions:
            #  a. When the Attention Type is ENCODER. In this phase, we compute
            #     only the encoder attention without updating the cache.
            #  b. When both Key and Value are None. This occurs during
            #     cross-attention computation in the decoding phase, where the
            #     KV cache is already populated with the cross-attention
            #     tensor. Thus, we skip cache updates during this time.
            if (attn_type != AttentionType.ENCODER) and (key is not None) and (
                    value is not None):
                if attn_type == AttentionType.ENCODER_DECODER:
                    # Update cross-attention KV cache (prefill-only)
                    updated_slot_mapping = attn_metadata.cross_slot_mapping
                else:
                    # Update self-attention KV cache (prefill/decode)
                    updated_slot_mapping = attn_metadata.slot_mapping

                # 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.
                torch.ops._C_cache_ops.reshape_and_cache_flash(
                    key,
                    value,
                    kv_cache[0],
                    kv_cache[1],
                    updated_slot_mapping.flatten(),  # type: ignore[union-attr]
                    kv_cache_dtype,
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                    layer._k_scale,
                    layer._v_scale,
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                )

        (num_prefill_query_tokens, num_prefill_kv_tokens,
        num_decode_query_tokens) = \
            get_num_prefill_decode_query_kv_tokens(attn_metadata, attn_type)
        decode_query = query[num_prefill_query_tokens:]
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        decode_output = output[num_prefill_query_tokens:]
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        # QKV for prefill.
        query = query[:num_prefill_query_tokens]
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        prefill_output = output[:num_prefill_query_tokens]
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        assert query.shape[0] == num_prefill_query_tokens
        assert decode_query.shape[0] == num_decode_query_tokens

        if prefill_meta := attn_metadata.prefill_metadata:
            # Prompt run.
            if (kv_cache.numel() == 0 or prefill_meta.block_tables is None
                    or prefill_meta.block_tables.numel() == 0):
                # normal attention
                # When block_tables are not filled, it means q and k are the
                # prompt, and they have the same length.
                q_seq_start_loc, q_seq_len, k_seq_start_loc, k_seq_len = \
                    _get_query_key_seq_metadata(prefill_meta, True, attn_type)

                key = key[:num_prefill_kv_tokens]
                value = value[:num_prefill_kv_tokens]

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                flash_attn_varlen_func(
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                    q=query,
                    k=key,
                    v=value,
                    cu_seqlens_q=q_seq_start_loc,
                    cu_seqlens_k=k_seq_start_loc,
                    max_seqlen_q=q_seq_len,
                    max_seqlen_k=k_seq_len,
                    softmax_scale=softmax_scale,
                    causal=_get_causal_option(attn_type),
                    window_size=window_size,
                    alibi_slopes=alibi_slopes,
                    softcap=logits_soft_cap,
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                    out=prefill_output,
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                    fa_version=self.fa_version,
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                )
            else:
                # prefix-enabled attention
                assert attn_type == AttentionType.DECODER, (
                    "Only decoder-only models support prefix caching")
                assert prefill_meta.seq_lens is not None
                max_seq_len = max(prefill_meta.seq_lens)
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                flash_attn_varlen_func(  # noqa
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                    q=query,
                    k=key_cache,
                    v=value_cache,
                    cu_seqlens_q=prefill_meta.query_start_loc,
                    max_seqlen_q=prefill_meta.max_query_len,
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                    seqused_k=prefill_meta.seq_lens_tensor,
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                    max_seqlen_k=max_seq_len,
                    softmax_scale=softmax_scale,
                    causal=True,
                    window_size=window_size,
                    alibi_slopes=alibi_slopes,
                    block_table=prefill_meta.block_tables,
                    softcap=logits_soft_cap,
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                    out=prefill_output,
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                    fa_version=self.fa_version,
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                )

        if decode_meta := attn_metadata.decode_metadata:
            # Decoding run.
            # Use flash_attn_varlen_func kernel for speculative decoding
            # because different queries might have different lengths.

            assert decode_meta.max_decode_query_len is not None
            # use only for actual varlen decoding
            if decode_meta.max_decode_query_len > 1:
                assert attn_type == AttentionType.DECODER, (
                    "Only decoder-only models support max_decode_query_len > 1"
                )
809
                flash_attn_varlen_func(
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                    q=decode_query,
                    k=key_cache,
                    v=value_cache,
                    cu_seqlens_q=decode_meta.query_start_loc,
                    max_seqlen_q=decode_meta.max_decode_query_len,
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                    seqused_k=decode_meta.seq_lens_tensor,
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                    max_seqlen_k=decode_meta.max_decode_seq_len,
                    softmax_scale=softmax_scale,
                    causal=True,
                    window_size=window_size,
                    alibi_slopes=alibi_slopes,
                    softcap=logits_soft_cap,
                    block_table=decode_meta.block_tables,
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                    out=decode_output,
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                    fa_version=self.fa_version,
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                )
            else:
                # Use flash_attn_with_kvcache for normal decoding.
                (
                    seq_lens_arg,
                    _,
                    block_tables_arg,
                ) = get_seq_len_block_table_args(decode_meta, False, attn_type)
833
                flash_attn_with_kvcache(
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                    q=decode_query.unsqueeze(1),
                    k_cache=key_cache,
                    v_cache=value_cache,
                    block_table=block_tables_arg,
                    cache_seqlens=seq_lens_arg,
                    softmax_scale=softmax_scale,
                    causal=True,
                    window_size=window_size,
                    alibi_slopes=alibi_slopes,
                    softcap=logits_soft_cap,
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                    out=decode_output.unsqueeze(1),
845
                    fa_version=self.fa_version,
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                )
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        return output


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def _get_query_key_seq_metadata(
    attn_metadata,
    is_prompt: bool,
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    attn_type: str,
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) -> tuple:
    """
    Returns sequence metadata for key and query based on the specified 
    attention type and whether input is a prompt.

    This function computes the starting locations and maximum sequence lengths 
    for key and query sequences for different attention types.

    Args:
        attn_metadata: The attention metadata object
        is_prompt (bool): A flag indicating if the input is a prompt
        attn_type (AttentionType): The type of attention being used.

    Returns:
        tuple: A tuple containing four integers:
            - Starting location for the query sequence.
            - Maximum sequence length for the query sequence.
            - Starting location for the key sequence.
            - Maximum sequence length for the key sequence.

    Raises:
        AttributeError: If an invalid attention type is provided.
    """
    if attn_type == AttentionType.DECODER:
        # Decoder self-attention
        # Choose max_seq_len based on whether we are in prompt_run
        if is_prompt:
            max_seq_len = attn_metadata.max_prefill_seq_len
        else:
            max_seq_len = attn_metadata.max_decode_seq_len
        return (attn_metadata.seq_start_loc, max_seq_len,
                attn_metadata.seq_start_loc, max_seq_len)

    elif attn_type == AttentionType.ENCODER_DECODER:
        # This is cross attention between the where the key
        # is the precomputed encoder attention and query
        # is the input sequence.
        # Choose query max length based on whether it is prompt
        # or not.
        if is_prompt:
            max_seq_len = attn_metadata.max_prefill_seq_len
        else:
            max_seq_len = attn_metadata.max_decode_seq_len
        return (attn_metadata.seq_start_loc, max_seq_len,
                attn_metadata.encoder_seq_start_loc,
                attn_metadata.max_encoder_seq_len)
    elif attn_type == AttentionType.ENCODER:
        # For encoder attention both the query and the key are same i.e the
        # encoder sequence.
        return (attn_metadata.encoder_seq_start_loc,
                attn_metadata.max_encoder_seq_len,
                attn_metadata.encoder_seq_start_loc,
                attn_metadata.max_encoder_seq_len)
    elif attn_type == AttentionType.ENCODER_ONLY:
        assert is_prompt, "Should not have decode for encoder only model."
        return (attn_metadata.seq_start_loc, attn_metadata.max_prefill_seq_len,
                attn_metadata.seq_start_loc, attn_metadata.max_prefill_seq_len)
    else:
        raise AttributeError(f"Invalid attention type {str(attn_type)}")


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def _get_causal_option(attn_type: str) -> bool:
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    """
    Determine whether the given attention type is suitable for causal 
    attention mechanisms.

    Args:
        attn_type (AttentionType): The type of attention being evaluated

    Returns:
        bool: Returns `True` if the attention type is suitable for causal 
        attention (i.e., not encoder, encoder-only, or encoder-decoder), 
        otherwise returns `False`.
    """
    return not (attn_type == AttentionType.ENCODER
                or attn_type == AttentionType.ENCODER_ONLY
                or attn_type == AttentionType.ENCODER_DECODER)