test_aiter_flash_attn.py 6.7 KB
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# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project

from typing import Optional

import pytest
import torch

import vllm.v1.attention.backends.rocm_aiter_fa  # noqa: F401
from vllm.platforms import current_platform

NUM_HEADS = [(4, 4), (8, 2), (16, 2)]
HEAD_SIZES = [128, 256]
BLOCK_SIZES = [16, 32]
DTYPES = [torch.float16, torch.bfloat16]
QDTYPES = [None]
# one value large enough to test overflow in index calculation.
# one value small enough to test the schema op check
NUM_BLOCKS = [32768, 2048]


def ref_paged_attn(
    query: torch.Tensor,
    key_cache: torch.Tensor,
    value_cache: torch.Tensor,
    query_lens: list[int],
    kv_lens: list[int],
    block_tables: torch.Tensor,
    scale: float,
    sliding_window: Optional[int] = None,
    soft_cap: Optional[float] = None,
) -> torch.Tensor:
    num_seqs = len(query_lens)
    block_tables = block_tables.cpu().numpy()
    _, block_size, num_kv_heads, head_size = key_cache.shape

    outputs: list[torch.Tensor] = []
    start_idx = 0
    for i in range(num_seqs):
        query_len = query_lens[i]
        kv_len = kv_lens[i]
        q = query[start_idx:start_idx + query_len]
        q *= scale

        num_kv_blocks = (kv_len + block_size - 1) // block_size
        block_indices = block_tables[i, :num_kv_blocks]

        k = key_cache[block_indices].view(-1, num_kv_heads, head_size)
        k = k[:kv_len]
        v = value_cache[block_indices].view(-1, num_kv_heads, head_size)
        v = v[:kv_len]

        if q.shape[1] != k.shape[1]:
            k = torch.repeat_interleave(k, q.shape[1] // k.shape[1], dim=1)
            v = torch.repeat_interleave(v, q.shape[1] // v.shape[1], dim=1)
        attn = torch.einsum("qhd,khd->hqk", q, k).float()
        empty_mask = torch.ones(query_len, kv_len)
        mask = torch.triu(empty_mask, diagonal=kv_len - query_len + 1).bool()
        if sliding_window is not None:
            sliding_window_mask = torch.triu(empty_mask,
                                             diagonal=kv_len -
                                             (query_len + sliding_window) +
                                             1).bool().logical_not()
            mask |= sliding_window_mask
        if soft_cap is not None:
            attn = soft_cap * torch.tanh(attn / soft_cap)
        attn.masked_fill_(mask, float("-inf"))
        attn = torch.softmax(attn, dim=-1).to(v.dtype)
        out = torch.einsum("hqk,khd->qhd", attn, v)

        outputs.append(out)
        start_idx += query_len

    return torch.cat(outputs, dim=0)


@pytest.mark.skipif(not current_platform.is_rocm(),
                    reason="Only ROCm is supported")
@pytest.mark.parametrize("seq_lens",
                         [[(10, 1328), (5, 18),
                           (129, 463)], [(8, 523), (24, 37), (3, 2011)]])
@pytest.mark.parametrize("num_heads", NUM_HEADS)
@pytest.mark.parametrize("head_size", HEAD_SIZES)
@pytest.mark.parametrize("block_size", BLOCK_SIZES)
@pytest.mark.parametrize("sliding_window", [None, 256])
@pytest.mark.parametrize("dtype", DTYPES)
@pytest.mark.parametrize("soft_cap", [None])
@pytest.mark.parametrize("num_blocks", NUM_BLOCKS)
@pytest.mark.parametrize("q_dtype", QDTYPES)
@torch.inference_mode()
def test_varlen_with_paged_kv(
    seq_lens: list[tuple[int, int]],
    num_heads: tuple[int, int],
    head_size: int,
    sliding_window: Optional[int],
    dtype: torch.dtype,
    block_size: int,
    soft_cap: Optional[float],
    num_blocks: int,
    q_dtype: Optional[torch.dtype],
) -> None:
    torch.set_default_device("cuda")
    current_platform.seed_everything(0)
    num_seqs = len(seq_lens)
    query_lens = [x[0] for x in seq_lens]
    kv_lens = [x[1] for x in seq_lens]
    num_query_heads = num_heads[0]
    num_kv_heads = num_heads[1]
    assert num_query_heads % num_kv_heads == 0
    max_query_len = max(query_lens)
    max_kv_len = max(kv_lens)
    window_size = ((sliding_window - 1, 0) if sliding_window is not None else
                   (-1, -1))
    scale = head_size**-0.5

    query = torch.randn(sum(query_lens),
                        num_query_heads,
                        head_size,
                        dtype=dtype)
    key_cache = torch.randn(num_blocks,
                            block_size,
                            num_kv_heads,
                            head_size,
                            dtype=dtype)
    value_cache = torch.randn_like(key_cache)
    cu_query_lens = torch.tensor([0] + query_lens,
                                 dtype=torch.int32).cumsum(dim=0,
                                                           dtype=torch.int32)

    cu_seq_lens = torch.tensor([0] + kv_lens,
                               dtype=torch.int32).cumsum(dim=0,
                                                         dtype=torch.int32)
    kv_lens = torch.tensor(kv_lens, dtype=torch.int32)

    max_num_blocks_per_seq = (max_kv_len + block_size - 1) // block_size
    block_tables = torch.randint(0,
                                 num_blocks,
                                 (num_seqs, max_num_blocks_per_seq),
                                 dtype=torch.int32)

    output = torch.empty_like(query)

    maybe_quantized_query = query
    maybe_quantized_key_cache = key_cache
    maybe_quantized_value_cache = value_cache
    k_descale = None
    v_descale = None
    if q_dtype is not None:
        # QKV are drawn from N(0, 1): no need for a fp8 scaling factor
        maybe_quantized_query = query.to(q_dtype)
        maybe_quantized_key_cache = key_cache.to(q_dtype)
        maybe_quantized_value_cache = value_cache.to(q_dtype)

        scale_shape = (num_seqs, num_kv_heads)
        k_descale = torch.ones(scale_shape, dtype=torch.float32)
        v_descale = torch.ones(scale_shape, dtype=torch.float32)

    torch.ops.vllm.flash_attn_varlen_func(
        maybe_quantized_query,
        maybe_quantized_key_cache,
        maybe_quantized_value_cache,
        out=output,
        cu_seqlens_q=cu_query_lens,
        max_seqlen_q=max_query_len,
        max_seqlen_k=max_kv_len,
        softmax_scale=scale,
        alibi_slopes=None,
        window_size=window_size,
        block_table=block_tables,
        cu_seqlens_k=cu_seq_lens,
        k_scale=k_descale,
        v_scale=v_descale,
    )

    ref_output = ref_paged_attn(
        query=query,
        key_cache=key_cache,
        value_cache=value_cache,
        query_lens=query_lens,
        kv_lens=kv_lens,
        block_tables=block_tables,
        scale=scale,
        sliding_window=sliding_window,
        soft_cap=soft_cap,
    )

    atol, rtol = 2e-2, 2e-2
    if q_dtype is not None:
        atol, rtol = 1.5e-1, 1.5e-1
    torch.testing.assert_close(output, ref_output, atol=atol, rtol=rtol), \
        f"{torch.max(torch.abs(output - ref_output))}"