# SPDX-License-Identifier: Apache-2.0 # SPDX-FileCopyrightText: Copyright contributors to the vLLM project # SPDX-FileCopyrightText: Songlin Yang, Yu Zhang # # This file contains code copied from the flash-linear-attention project. # The original source code was licensed under the MIT license and included # the following copyright notice: # Copyright (c) 2023-2025, Songlin Yang, Yu Zhang # ruff: noqa: E501 from typing import Optional import torch from vllm.triton_utils import tl, triton from .index import prepare_chunk_indices from .utils import FLA_GDN_FIX_BT, check_shared_mem, is_nvidia_hopper BKV_LIST = [64, 128] if check_shared_mem() else [32, 64] NUM_WARPS = [2, 4] if is_nvidia_hopper else [2, 4, 8] @triton.heuristics( { "USE_G": lambda args: args["g"] is not None, "IS_VARLEN": lambda args: args["cu_seqlens"] is not None, } ) # @triton.autotune( # configs=[ # triton.Config({ # 'BK': BK, # 'BV': BV # }, # num_warps=num_warps, # num_stages=num_stages) for BK in BKV_LIST # for BV in BKV_LIST for num_warps in NUM_WARPS # for num_stages in [2, 3, 4] # ], # key=['H', 'K', 'V', 'BT'], # ) @triton.jit(do_not_specialize=["T"]) def chunk_fwd_kernel_o( q, k, v, h, g, o, cu_seqlens, chunk_indices, scale, T, H: tl.constexpr, Hg: tl.constexpr, K: tl.constexpr, V: tl.constexpr, BT: tl.constexpr, BK: tl.constexpr, BV: tl.constexpr, USE_G: tl.constexpr, IS_VARLEN: tl.constexpr, ): i_v, i_t, i_bh = tl.program_id(0), tl.program_id(1), tl.program_id(2) i_b, i_h = i_bh // H, i_bh % H if IS_VARLEN: i_tg = i_t i_n, i_t = tl.load(chunk_indices + i_t * 2).to(tl.int32), tl.load( chunk_indices + i_t * 2 + 1 ).to(tl.int32) bos, eos = tl.load(cu_seqlens + i_n).to(tl.int32), tl.load( cu_seqlens + i_n + 1 ).to(tl.int32) T = eos - bos NT = tl.cdiv(T, BT) else: NT = tl.cdiv(T, BT) i_tg = i_b * NT + i_t bos, eos = i_b * T, i_b * T + T # offset calculation q += (bos * Hg + i_h // (H // Hg)) * K k += (bos * Hg + i_h // (H // Hg)) * K v += (bos * H + i_h) * V o += (bos * H + i_h) * V h += (i_tg * H + i_h).to(tl.int64) * K * V b_o = tl.zeros([BT, BV], dtype=tl.float32) b_A = tl.zeros([BT, BT], dtype=tl.float32) for i_k in range(tl.cdiv(K, BK)): p_q = tl.make_block_ptr( q, (T, K), (Hg * K, 1), (i_t * BT, i_k * BK), (BT, BK), (1, 0) ) p_k = tl.make_block_ptr( k, (K, T), (1, Hg * K), (i_k * BK, i_t * BT), (BK, BT), (0, 1) ) p_h = tl.make_block_ptr( h, (K, V), (V, 1), (i_k * BK, i_v * BV), (BK, BV), (1, 0) ) # [BT, BK] b_q = tl.load(p_q, boundary_check=(0, 1)) # [BK, BT] b_k = tl.load(p_k, boundary_check=(0, 1)) # [BK, BV] b_h = tl.load(p_h, boundary_check=(0, 1)) # [BT, BK] @ [BK, BV] -> [BT, BV] b_o += tl.dot(b_q, b_h) # [BT, BK] @ [BK, BT] -> [BT, BT] b_A += tl.dot(b_q, b_k) if USE_G: g += bos * H + i_h p_g = tl.make_block_ptr(g, (T,), (H,), (i_t * BT,), (BT,), (0,)) b_g = tl.load(p_g, boundary_check=(0,)) b_o = b_o * tl.exp(b_g)[:, None] b_A = b_A * tl.exp(b_g[:, None] - b_g[None, :]) o_t = i_t * BT + tl.arange(0, BT) # m_t = o_t < T # m_A = (o_t[:, None] >= o_t[None, :]) & (m_t[:, None] & m_t) # b_A = tl.where(m_A, b_A, 0) b_A = tl.where(o_t[:, None] >= o_t[None, :], b_A, 0) p_v = tl.make_block_ptr( v, (T, V), (H * V, 1), (i_t * BT, i_v * BV), (BT, BV), (1, 0) ) p_o = tl.make_block_ptr( o, (T, V), (H * V, 1), (i_t * BT, i_v * BV), (BT, BV), (1, 0) ) b_v = tl.load(p_v, boundary_check=(0, 1)) # to fix mma -> mma layout conversion # already solved by triton v3.2 or higher b_o = b_o * scale + tl.dot(b_A.to(b_v.dtype), b_v) * scale tl.store(p_o, b_o.to(p_o.dtype.element_ty), boundary_check=(0, 1)) def chunk_fwd_o( q: torch.Tensor, k: torch.Tensor, v: torch.Tensor, h: torch.Tensor, g: Optional[torch.Tensor] = None, # cumsum of log decay scale: Optional[float] = None, cu_seqlens: Optional[torch.LongTensor] = None, chunk_size: int = 64, ) -> torch.Tensor: _, T, _, _, _ = *q.shape, v.shape[-1] if FLA_GDN_FIX_BT: BT = 64 else: BT = min(chunk_size, max(16, triton.next_power_of_2(T))) chunk_indices = ( prepare_chunk_indices(cu_seqlens, BT) if cu_seqlens is not None else None ) if scale is None: scale = k.shape[-1] ** -0.5 o = torch.empty_like(v) o = torch.ops.xspeedgate_ops.chunk_fwd_o( q, k, v, h, g, scale, cu_seqlens, chunk_indices, chunk_size ) return o