391 lines
13 KiB
Python
391 lines
13 KiB
Python
# SPDX-License-Identifier: Apache-2.0
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# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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# SPDX-FileCopyrightText: Songlin Yang, Yu Zhang
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#
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# This file contains code copied from the flash-linear-attention project.
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# The original source code was licensed under the MIT license and included
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# the following copyright notice:
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# Copyright (c) 2023-2025, Songlin Yang, Yu Zhang
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# ruff: noqa: E501
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import torch
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from vllm.triton_utils import tl, triton
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from .op import exp
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@triton.heuristics(
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{
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"USE_INITIAL_STATE": lambda args: args["h0"] is not None,
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"IS_VARLEN": lambda args: args["cu_seqlens"] is not None,
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"IS_CONTINUOUS_BATCHING": lambda args: args["ssm_state_indices"] is not None,
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"IS_SPEC_DECODING": lambda args: args["num_accepted_tokens"] is not None,
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}
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)
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@triton.jit(do_not_specialize=["N", "T"])
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def fused_recurrent_gated_delta_rule_fwd_kernel(
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q,
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k,
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v,
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g,
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beta,
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o,
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h0,
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ht,
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cu_seqlens,
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ssm_state_indices,
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num_accepted_tokens,
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scale,
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N: tl.int64, # num of sequences
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T: tl.int64, # num of tokens
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B: tl.constexpr,
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H: tl.constexpr,
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HV: tl.constexpr,
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K: tl.constexpr,
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V: tl.constexpr,
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BK: tl.constexpr,
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BV: tl.constexpr,
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stride_init_state_token: tl.constexpr,
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stride_final_state_token: tl.constexpr,
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stride_indices_seq: tl.constexpr,
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stride_indices_tok: tl.constexpr,
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USE_INITIAL_STATE: tl.constexpr, # whether to use initial state
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INPLACE_FINAL_STATE: tl.constexpr, # whether to store final state inplace
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IS_BETA_HEADWISE: tl.constexpr, # whether beta is headwise vector or scalar,
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USE_QK_L2NORM_IN_KERNEL: tl.constexpr,
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IS_VARLEN: tl.constexpr,
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IS_CONTINUOUS_BATCHING: tl.constexpr,
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IS_SPEC_DECODING: tl.constexpr,
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IS_KDA: tl.constexpr,
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):
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i_k, i_v, i_nh = tl.program_id(0), tl.program_id(1), tl.program_id(2)
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i_n, i_hv = i_nh // HV, i_nh % HV
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i_h = i_hv // (HV // H)
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if IS_VARLEN:
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bos, eos = (
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tl.load(cu_seqlens + i_n).to(tl.int64),
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tl.load(cu_seqlens + i_n + 1).to(tl.int64),
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)
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all = T
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T = eos - bos
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else:
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bos, eos = i_n * T, i_n * T + T
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all = B * T
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if T == 0:
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# no tokens to process for this sequence
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return
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o_k = i_k * BK + tl.arange(0, BK)
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o_v = i_v * BV + tl.arange(0, BV)
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p_q = q + (bos * H + i_h) * K + o_k
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p_k = k + (bos * H + i_h) * K + o_k
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p_v = v + (bos * HV + i_hv) * V + o_v
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if IS_BETA_HEADWISE:
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p_beta = beta + (bos * HV + i_hv) * V + o_v
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else:
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p_beta = beta + bos * HV + i_hv
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if not IS_KDA:
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p_g = g + bos * HV + i_hv
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else:
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p_gk = g + (bos * HV + i_hv) * K + o_k
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p_o = o + ((i_k * all + bos) * HV + i_hv) * V + o_v
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mask_k = o_k < K
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mask_v = o_v < V
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mask_h = mask_k[:, None] & mask_v[None, :]
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b_h = tl.zeros([BK, BV], dtype=tl.float32)
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if USE_INITIAL_STATE:
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if IS_CONTINUOUS_BATCHING:
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if IS_SPEC_DECODING:
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i_t = tl.load(num_accepted_tokens + i_n).to(tl.int64) - 1
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else:
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i_t = 0
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p_h0 = (
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h0
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+ tl.load(ssm_state_indices + i_n * stride_indices_seq + i_t).to(
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tl.int64
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)
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* stride_init_state_token
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)
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else:
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p_h0 = h0 + bos * HV * K * V
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p_h0 = p_h0 + i_hv * K * V + o_k[:, None] * V + o_v[None, :]
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b_h += tl.load(p_h0, mask=mask_h, other=0).to(tl.float32)
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for i_t in range(0, T):
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b_q = tl.load(p_q, mask=mask_k, other=0).to(tl.float32)
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b_k = tl.load(p_k, mask=mask_k, other=0).to(tl.float32)
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b_v = tl.load(p_v, mask=mask_v, other=0).to(tl.float32)
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if USE_QK_L2NORM_IN_KERNEL:
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b_q = b_q / tl.sqrt(tl.sum(b_q * b_q) + 1e-6)
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b_k = b_k / tl.sqrt(tl.sum(b_k * b_k) + 1e-6)
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b_q = b_q * scale
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# [BK, BV]
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if not IS_KDA:
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b_g = tl.load(p_g).to(tl.float32)
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b_h *= exp(b_g)
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else:
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b_gk = tl.load(p_gk).to(tl.float32)
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b_h *= exp(b_gk[:, None])
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# [BV]
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b_v -= tl.sum(b_h * b_k[:, None], 0)
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if IS_BETA_HEADWISE:
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b_beta = tl.load(p_beta, mask=mask_v, other=0).to(tl.float32)
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else:
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b_beta = tl.load(p_beta).to(tl.float32)
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b_v *= b_beta
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# [BK, BV]
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b_h += b_k[:, None] * b_v[None, :]
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# [BV]
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b_o = tl.sum(b_h * b_q[:, None], 0)
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tl.store(p_o, b_o.to(p_o.dtype.element_ty), mask=mask_v)
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# keep the states for multi-query tokens
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if INPLACE_FINAL_STATE:
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p_ht = (
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ht
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+ tl.load(ssm_state_indices + i_n * stride_indices_seq + i_t).to(
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tl.int64
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)
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* stride_final_state_token
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)
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else:
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p_ht = ht + (bos + i_t) * stride_final_state_token
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p_ht = p_ht + i_hv * K * V + o_k[:, None] * V + o_v[None, :]
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tl.store(p_ht, b_h.to(p_ht.dtype.element_ty), mask=mask_h)
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p_q += H * K
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p_k += H * K
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p_o += HV * V
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p_v += HV * V
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if not IS_KDA:
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p_g += HV
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else:
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p_gk += HV * K
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p_beta += HV * (V if IS_BETA_HEADWISE else 1)
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def fused_recurrent_gated_delta_rule_fwd(
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q: torch.Tensor,
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k: torch.Tensor,
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v: torch.Tensor,
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g: torch.Tensor,
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beta: torch.Tensor,
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scale: float,
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initial_state: torch.Tensor,
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inplace_final_state: bool = True,
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cu_seqlens: torch.LongTensor | None = None,
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ssm_state_indices: torch.Tensor | None = None,
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num_accepted_tokens: torch.Tensor | None = None,
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use_qk_l2norm_in_kernel: bool = False,
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) -> tuple[torch.Tensor, torch.Tensor]:
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B, T, H, K, V = *k.shape, v.shape[-1]
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HV = v.shape[2]
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N = B if cu_seqlens is None else len(cu_seqlens) - 1
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BK, BV = triton.next_power_of_2(K), min(triton.next_power_of_2(V), 8)
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NK, NV = triton.cdiv(K, BK), triton.cdiv(V, BV)
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assert NK == 1, "NK > 1 is not supported yet"
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num_stages = 3
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num_warps = 1
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o = q.new_empty(NK, *v.shape)
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if inplace_final_state:
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final_state = initial_state
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else:
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final_state = q.new_empty(T, HV, K, V, dtype=initial_state.dtype)
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stride_init_state_token = initial_state.stride(0)
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stride_final_state_token = final_state.stride(0)
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if ssm_state_indices is None:
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stride_indices_seq, stride_indices_tok = 1, 1
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elif ssm_state_indices.ndim == 1:
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stride_indices_seq, stride_indices_tok = ssm_state_indices.stride(0), 1
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else:
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stride_indices_seq, stride_indices_tok = ssm_state_indices.stride()
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grid = (NK, NV, N * HV)
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fused_recurrent_gated_delta_rule_fwd_kernel[grid](
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q=q,
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k=k,
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v=v,
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g=g,
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beta=beta,
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o=o,
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h0=initial_state,
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ht=final_state,
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cu_seqlens=cu_seqlens,
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ssm_state_indices=ssm_state_indices,
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num_accepted_tokens=num_accepted_tokens,
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scale=scale,
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N=N,
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T=T,
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B=B,
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H=H,
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HV=HV,
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K=K,
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V=V,
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BK=BK,
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BV=BV,
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stride_init_state_token=stride_init_state_token,
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stride_final_state_token=stride_final_state_token,
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stride_indices_seq=stride_indices_seq,
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stride_indices_tok=stride_indices_tok,
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IS_BETA_HEADWISE=beta.ndim == v.ndim,
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USE_QK_L2NORM_IN_KERNEL=use_qk_l2norm_in_kernel,
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INPLACE_FINAL_STATE=inplace_final_state,
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IS_KDA=False,
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num_warps=num_warps,
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num_stages=num_stages,
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)
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o = o.squeeze(0)
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return o, final_state
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class FusedRecurrentFunction(torch.autograd.Function):
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@staticmethod
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def forward(
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ctx,
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q: torch.Tensor,
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k: torch.Tensor,
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v: torch.Tensor,
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g: torch.Tensor,
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beta: torch.Tensor,
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scale: float,
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initial_state: torch.Tensor,
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inplace_final_state: bool = True,
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cu_seqlens: torch.LongTensor | None = None,
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ssm_state_indices: torch.Tensor | None = None,
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num_accepted_tokens: torch.Tensor | None = None,
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use_qk_l2norm_in_kernel: bool = False,
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):
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o, final_state = fused_recurrent_gated_delta_rule_fwd(
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q=q.contiguous(),
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k=k.contiguous(),
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v=v.contiguous(),
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g=g.contiguous(),
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beta=beta.contiguous(),
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scale=scale,
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initial_state=initial_state,
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inplace_final_state=inplace_final_state,
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cu_seqlens=cu_seqlens,
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ssm_state_indices=ssm_state_indices,
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num_accepted_tokens=num_accepted_tokens,
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use_qk_l2norm_in_kernel=use_qk_l2norm_in_kernel,
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)
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return o, final_state
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def fused_recurrent_gated_delta_rule(
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q: torch.Tensor,
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k: torch.Tensor,
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v: torch.Tensor,
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g: torch.Tensor,
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beta: torch.Tensor = None,
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scale: float = None,
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initial_state: torch.Tensor = None,
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inplace_final_state: bool = True,
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cu_seqlens: torch.LongTensor | None = None,
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ssm_state_indices: torch.Tensor | None = None,
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num_accepted_tokens: torch.Tensor | None = None,
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use_qk_l2norm_in_kernel: bool = False,
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) -> tuple[torch.Tensor, torch.Tensor]:
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r"""
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Args:
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q (torch.Tensor):
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queries of shape `[B, T, H, K]`.
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k (torch.Tensor):
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keys of shape `[B, T, H, K]`.
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v (torch.Tensor):
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values of shape `[B, T, HV, V]`.
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GVA is applied if `HV > H`.
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g (torch.Tensor):
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g (decays) of shape `[B, T, HV]`.
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beta (torch.Tensor):
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betas of shape `[B, T, HV]`.
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scale (Optional[int]):
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Scale factor for the RetNet attention scores.
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If not provided, it will default to `1 / sqrt(K)`. Default: `None`.
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initial_state (Optional[torch.Tensor]):
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Initial state of shape `[N, HV, K, V]` for `N` input sequences.
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For equal-length input sequences, `N` equals the batch size `B`.
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Default: `None`.
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inplace_final_state: bool:
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Whether to store the final state in-place to save memory.
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Default: `True`.
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cu_seqlens (torch.LongTensor):
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Cumulative sequence lengths of shape `[N+1]` used for variable-length training,
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consistent with the FlashAttention API.
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ssm_state_indices (Optional[torch.Tensor]):
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Indices to map the input sequences to the initial/final states.
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num_accepted_tokens (Optional[torch.Tensor]):
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Number of accepted tokens for each sequence during decoding.
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Returns:
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o (torch.Tensor):
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Outputs of shape `[B, T, HV, V]`.
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final_state (torch.Tensor):
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Final state of shape `[N, HV, K, V]`.
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Examples::
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>>> import torch
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>>> import torch.nn.functional as F
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>>> from einops import rearrange
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>>> from fla.ops.gated_delta_rule import fused_recurrent_gated_delta_rule
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# inputs with equal lengths
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>>> B, T, H, HV, K, V = 4, 2048, 4, 8, 512, 512
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>>> q = torch.randn(B, T, H, K, device='cuda')
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>>> k = F.normalize(torch.randn(B, T, H, K, device='cuda'), p=2, dim=-1)
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>>> v = torch.randn(B, T, HV, V, device='cuda')
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>>> g = F.logsigmoid(torch.rand(B, T, HV, device='cuda'))
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>>> beta = torch.rand(B, T, HV, device='cuda').sigmoid()
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>>> h0 = torch.randn(B, HV, K, V, device='cuda')
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>>> o, ht = fused_gated_recurrent_delta_rule(
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q, k, v, g, beta,
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initial_state=h0,
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)
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# for variable-length inputs, the batch size `B` is expected to be 1 and `cu_seqlens` is required
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>>> q, k, v, g, beta = map(lambda x: rearrange(x, 'b t ... -> 1 (b t) ...'), (q, k, v, g, beta))
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# for a batch with 4 sequences, `cu_seqlens` with 5 start/end positions are expected
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>>> cu_seqlens = q.new_tensor([0, 2048, 4096, 6144, 8192], dtype=torch.long)
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>>> o_var, ht_var = fused_gated_recurrent_delta_rule(
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q, k, v, g, beta,
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initial_state=h0,
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cu_seqlens=cu_seqlens
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)
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"""
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if cu_seqlens is not None and q.shape[0] != 1:
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raise ValueError(
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f"The batch size is expected to be 1 rather than {q.shape[0]} when using `cu_seqlens`."
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f"Please flatten variable-length inputs before processing."
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)
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if scale is None:
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scale = k.shape[-1] ** -0.5
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else:
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assert scale > 0, "scale must be positive"
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if beta is None:
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beta = torch.ones_like(q[..., 0])
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o, final_state = FusedRecurrentFunction.apply(
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q,
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k,
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v,
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g,
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beta,
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scale,
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initial_state,
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inplace_final_state,
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cu_seqlens,
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ssm_state_indices,
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num_accepted_tokens,
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use_qk_l2norm_in_kernel,
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)
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return o, final_state
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