""" *Experimental* implementation of FlashAttention in Triton. Tested with triton==2.0.0.dev20221202. Triton 2.0 has a new backend (MLIR) but seems like it doesn't yet work for head dimensions other than 64: https://github.com/openai/triton/blob/d376020f90002757eea3ea9475d4f7cfc2ec5ead/python/triton/ops/flash_attention.py#L207 We'll update this implementation with the new Triton backend once this is fixed. We use the FlashAttention implementation from Phil Tillet a starting point. https://github.com/openai/triton/blob/master/python/tutorials/06-fused-attention.py Changes: - Implement both causal and non-causal attention. - Implement both self-attention and cross-attention. - Support arbitrary seqlens (not just multiples of 128), for both forward and backward. - Support all head dimensions up to 128 (not just 16, 32, 64, 128), for both forward and backward. - Support attention bias. - Speed up the forward pass a bit, and only store the LSE instead of m and l. - Make the backward for d=128 much faster by reducing register spilling. - Optionally parallelize the backward pass across seqlen_k, to deal with the case of small batch size * nheads. Caution: - This is an *experimental* implementation. The forward pass should be quite robust but I'm not 100% sure that the backward pass doesn't have race conditions (due to the Triton compiler). - This implementation has only been tested on A100. - If you plan to use headdim other than 64 and 128, you should test for race conditions (due to the Triton compiler), as done in tests/test_flash_attn.py "test_flash_attn_triton_race_condition". I've tested and fixed many race conditions for different head dimensions (40, 48, 64, 128, 80, 88, 96), but I'm still not 100% confident that there are none left for other head dimensions. Differences between this Triton version and the CUDA version: - Triton version doesn't support dropout. - Triton forward is generally faster than CUDA forward, while Triton backward is generally slower than CUDA backward. Overall Triton forward + backward is slightly slower than CUDA forward + backward. - Triton version doesn't support different sequence lengths in a batch (i.e., RaggedTensor/NestedTensor). - Triton version supports attention bias, while CUDA version doesn't. """ import math import torch import triton import triton.language as tl # Disabling autotune for now, set num_warps=4 if headdim=64 and num_warps=8 if headdim=128 # @triton.autotune( # configs=[ # triton.Config({"BLOCK_M": 128, "BLOCK_N": 128}, num_warps=4, num_stages=1), # # This config has a race condition when EVEN_M == False, disabling it for now. # # triton.Config({"BLOCK_M": 64, "BLOCK_N": 64}, num_warps=4, num_stages=1), # ], # key=['CACHE_KEY_SEQLEN_Q', 'CACHE_KEY_SEQLEN_K', 'BIAS_TYPE', 'IS_CAUSAL', 'BLOCK_HEADDIM'] # ) @triton.heuristics( { "EVEN_M": lambda args: args["seqlen_q"] % args["BLOCK_M"] == 0, "EVEN_N": lambda args: args["seqlen_k"] % args["BLOCK_N"] == 0, "EVEN_HEADDIM": lambda args: args["headdim"] == args["BLOCK_HEADDIM"], } ) @triton.jit def _fwd_kernel( Q, K, V, Bias, Out, Lse, TMP, # NOTE: TMP is a scratchpad buffer to workaround a compiler bug softmax_scale, stride_qb, stride_qh, stride_qm, stride_kb, stride_kh, stride_kn, stride_vb, stride_vh, stride_vn, stride_bb, stride_bh, stride_bm, stride_ob, stride_oh, stride_om, nheads, seqlen_q, seqlen_k, seqlen_q_rounded, headdim, CACHE_KEY_SEQLEN_Q, CACHE_KEY_SEQLEN_K, BIAS_TYPE: tl.constexpr, IS_CAUSAL: tl.constexpr, BLOCK_HEADDIM: tl.constexpr, EVEN_M: tl.constexpr, EVEN_N: tl.constexpr, EVEN_HEADDIM: tl.constexpr, BLOCK_M: tl.constexpr, BLOCK_N: tl.constexpr, ): start_m = tl.program_id(0) off_hb = tl.program_id(1) off_b = off_hb // nheads off_h = off_hb % nheads # off_b = tl.program_id(1) # off_h = tl.program_id(2) # off_hb = off_b * nheads + off_h # initialize offsets offs_m = start_m * BLOCK_M + tl.arange(0, BLOCK_M) offs_n = tl.arange(0, BLOCK_N) offs_d = tl.arange(0, BLOCK_HEADDIM) # Initialize pointers to Q, K, V # Adding parenthesis around indexing might use int32 math instead of int64 math? # https://github.com/openai/triton/issues/741 # I'm seeing a tiny bit of difference (5-7us) q_ptrs = ( Q + off_b * stride_qb + off_h * stride_qh + (offs_m[:, None] * stride_qm + offs_d[None, :]) ) k_ptrs = ( K + off_b * stride_kb + off_h * stride_kh + (offs_n[:, None] * stride_kn + offs_d[None, :]) ) v_ptrs = ( V + off_b * stride_vb + off_h * stride_vh + (offs_n[:, None] * stride_vn + offs_d[None, :]) ) if BIAS_TYPE == "vector": b_ptrs = Bias + off_b * stride_bb + off_h * stride_bh + offs_n elif BIAS_TYPE == "matrix": b_ptrs = ( Bias + off_b * stride_bb + off_h * stride_bh + (offs_m[:, None] * stride_bm + offs_n[None, :]) ) # initialize pointer to m and l t_ptrs = TMP + off_hb * seqlen_q_rounded + offs_m lse_i = tl.zeros([BLOCK_M], dtype=tl.float32) - float("inf") m_i = tl.zeros([BLOCK_M], dtype=tl.float32) - float("inf") acc_o = tl.zeros([BLOCK_M, BLOCK_HEADDIM], dtype=tl.float32) # load q: it will stay in SRAM throughout # [2022-10-30] TD: Triton bug - in the case of EVEN_M=True and EVEN_N=False, if we just call # tl.load(q_ptrs), we get the wrong output! if EVEN_M & EVEN_N: if EVEN_HEADDIM: q = tl.load(q_ptrs) else: q = tl.load(q_ptrs, mask=offs_d[None, :] < headdim, other=0.0) else: if EVEN_HEADDIM: q = tl.load(q_ptrs, mask=offs_m[:, None] < seqlen_q, other=0.0) else: q = tl.load( q_ptrs, mask=(offs_m[:, None] < seqlen_q) & (offs_d[None, :] < headdim), other=0.0 ) # loop over k, v and update accumulator end_n = seqlen_k if not IS_CAUSAL else tl.minimum((start_m + 1) * BLOCK_M, seqlen_k) for start_n in range(0, end_n, BLOCK_N): start_n = tl.multiple_of(start_n, BLOCK_N) # -- compute qk ---- if EVEN_N & EVEN_M: # If we just do "if EVEN_N", there seems to be some race condition if EVEN_HEADDIM: k = tl.load(k_ptrs + start_n * stride_kn) else: k = tl.load(k_ptrs + start_n * stride_kn, mask=offs_d[None, :] < headdim, other=0.0) else: if EVEN_HEADDIM: k = tl.load( k_ptrs + start_n * stride_kn, mask=(start_n + offs_n)[:, None] < seqlen_k, other=0.0, ) else: k = tl.load( k_ptrs + start_n * stride_kn, mask=((start_n + offs_n)[:, None] < seqlen_k) & (offs_d[None, :] < headdim), other=0.0, ) qk = tl.zeros([BLOCK_M, BLOCK_N], dtype=tl.float32) qk += tl.dot(q, k, trans_b=True) # Trying to combine the two masks seem to make the result wrong if not EVEN_N: # Need to mask out otherwise the softmax is wrong qk += tl.where((start_n + offs_n)[None, :] < seqlen_k, 0, float("-inf")) if IS_CAUSAL: qk += tl.where(offs_m[:, None] >= (start_n + offs_n)[None, :], 0, float("-inf")) if BIAS_TYPE != "none": if BIAS_TYPE == "vector": if EVEN_N: bias = tl.load(b_ptrs + start_n).to(tl.float32) else: bias = tl.load( b_ptrs + start_n, mask=(start_n + offs_n) < seqlen_k, other=0.0 ).to(tl.float32) bias = bias[None, :] elif BIAS_TYPE == "matrix": if EVEN_M & EVEN_N: bias = tl.load(b_ptrs + start_n).to(tl.float32) else: bias = tl.load( b_ptrs + start_n, mask=(offs_m[:, None] < seqlen_q) & ((start_n + offs_n)[None, :] < seqlen_k), other=0.0, ).to(tl.float32) # Slightly faster to multiply the softmax_scale in the tl.exp below since the compiler # can then fuse the mult and add into an fma instruction. But if we have bias we need to # to multiply with softmax_scale here. qk = qk * softmax_scale + bias m_ij = tl.maximum(tl.max(qk, 1), lse_i) p = tl.exp(qk - m_ij[:, None]) else: m_ij = tl.maximum(tl.max(qk, 1) * softmax_scale, lse_i) p = tl.exp(qk * softmax_scale - m_ij[:, None]) l_ij = tl.sum(p, 1) # scale acc_o acc_o_scale = tl.exp(m_i - m_ij) # # -- update output accumulator -- # BUG: have to store and immediately load tl.store(t_ptrs, acc_o_scale) acc_o_scale = tl.load(t_ptrs) acc_o = acc_o * acc_o_scale[:, None] # update acc_o if EVEN_N & EVEN_M: # If we just do "if EVEN_N", there seems to be some race condition if EVEN_HEADDIM: v = tl.load(v_ptrs + start_n * stride_vn) else: v = tl.load(v_ptrs + start_n * stride_vn, mask=offs_d[None, :] < headdim, other=0.0) else: if EVEN_HEADDIM: v = tl.load( v_ptrs + start_n * stride_vn, mask=(start_n + offs_n)[:, None] < seqlen_k, other=0.0, ) else: v = tl.load( v_ptrs + start_n * stride_vn, mask=((start_n + offs_n)[:, None] < seqlen_k) & (offs_d[None, :] < headdim), other=0.0, ) p = p.to(v.dtype) acc_o += tl.dot(p, v) # -- update statistics m_i = m_ij l_i_new = tl.exp(lse_i - m_ij) + l_ij lse_i = m_ij + tl.log(l_i_new) o_scale = tl.exp(m_i - lse_i) # BUG: have to store and immediately load tl.store(t_ptrs, o_scale) o_scale = tl.load(t_ptrs) acc_o = acc_o * o_scale[:, None] # rematerialize offsets to save registers start_m = tl.program_id(0) offs_m = start_m * BLOCK_M + tl.arange(0, BLOCK_M) # write back l and m lse_ptrs = Lse + off_hb * seqlen_q_rounded + offs_m tl.store(lse_ptrs, lse_i) # initialize pointers to output offs_d = tl.arange(0, BLOCK_HEADDIM) out_ptrs = ( Out + off_b * stride_ob + off_h * stride_oh + (offs_m[:, None] * stride_om + offs_d[None, :]) ) if EVEN_M: if EVEN_HEADDIM: tl.store(out_ptrs, acc_o) else: tl.store(out_ptrs, acc_o, mask=offs_d[None, :] < headdim) else: if EVEN_HEADDIM: tl.store(out_ptrs, acc_o, mask=offs_m[:, None] < seqlen_q) else: tl.store( out_ptrs, acc_o, mask=(offs_m[:, None] < seqlen_q) & (offs_d[None, :] < headdim) ) @triton.jit def _bwd_preprocess_do_o_dot( Out, DO, Delta, stride_ob, stride_oh, stride_om, stride_dob, stride_doh, stride_dom, nheads, seqlen_q, seqlen_q_rounded, headdim, BLOCK_M: tl.constexpr, BLOCK_HEADDIM: tl.constexpr, ): start_m = tl.program_id(0) off_hb = tl.program_id(1) off_b = off_hb // nheads off_h = off_hb % nheads # initialize offsets offs_m = start_m * BLOCK_M + tl.arange(0, BLOCK_M) offs_d = tl.arange(0, BLOCK_HEADDIM) # load o = tl.load( Out + off_b * stride_ob + off_h * stride_oh + offs_m[:, None] * stride_om + offs_d[None, :], mask=(offs_m[:, None] < seqlen_q) & (offs_d[None, :] < headdim), other=0.0, ).to(tl.float32) do = tl.load( DO + off_b * stride_dob + off_h * stride_doh + offs_m[:, None] * stride_dom + offs_d[None, :], mask=(offs_m[:, None] < seqlen_q) & (offs_d[None, :] < headdim), other=0.0, ).to(tl.float32) delta = tl.sum(o * do, axis=1) # write-back tl.store(Delta + off_hb * seqlen_q_rounded + offs_m, delta) @triton.jit def _bwd_store_dk_dv( dk_ptrs, dv_ptrs, dk, dv, offs_n, offs_d, seqlen_k, headdim, EVEN_M: tl.constexpr, EVEN_N: tl.constexpr, EVEN_HEADDIM: tl.constexpr, ): # [2022-11-01] TD: Same bug. In the case of EVEN_N=True and EVEN_M=False, # if we just call tl.store(dv_ptrs), there's a race condition if EVEN_N & EVEN_M: if EVEN_HEADDIM: tl.store(dv_ptrs, dv) tl.store(dk_ptrs, dk) else: tl.store(dv_ptrs, dv, mask=offs_d[None, :] < headdim) tl.store(dk_ptrs, dk, mask=offs_d[None, :] < headdim) else: if EVEN_HEADDIM: tl.store(dv_ptrs, dv, mask=offs_n[:, None] < seqlen_k) tl.store(dk_ptrs, dk, mask=offs_n[:, None] < seqlen_k) else: tl.store(dv_ptrs, dv, mask=(offs_n[:, None] < seqlen_k) & (offs_d[None, :] < headdim)) tl.store(dk_ptrs, dk, mask=(offs_n[:, None] < seqlen_k) & (offs_d[None, :] < headdim)) @triton.jit def _bwd_kernel_one_col_block( start_n, Q, K, V, Bias, DO, DQ, DK, DV, LSE, D, softmax_scale, stride_qm, stride_kn, stride_vn, stride_bm, stride_dom, stride_dqm, stride_dkn, stride_dvn, seqlen_q, seqlen_k, headdim, ATOMIC_ADD: tl.constexpr, BIAS_TYPE: tl.constexpr, IS_CAUSAL: tl.constexpr, BLOCK_HEADDIM: tl.constexpr, EVEN_M: tl.constexpr, EVEN_N: tl.constexpr, EVEN_HEADDIM: tl.constexpr, BLOCK_M: tl.constexpr, BLOCK_N: tl.constexpr, ): # We need to make sure begin_m is a multiple of BLOCK_M (not BLOCK_N) begin_m = 0 if not IS_CAUSAL else ((start_n * BLOCK_N) // BLOCK_M) * BLOCK_M # initialize row/col offsets offs_qm = begin_m + tl.arange(0, BLOCK_M) offs_n = start_n * BLOCK_N + tl.arange(0, BLOCK_N) offs_m = tl.arange(0, BLOCK_M) offs_d = tl.arange(0, BLOCK_HEADDIM) # initialize pointers to value-like data q_ptrs = Q + (offs_qm[:, None] * stride_qm + offs_d[None, :]) k_ptrs = K + (offs_n[:, None] * stride_kn + offs_d[None, :]) v_ptrs = V + (offs_n[:, None] * stride_vn + offs_d[None, :]) do_ptrs = DO + (offs_qm[:, None] * stride_dom + offs_d[None, :]) dq_ptrs = DQ + (offs_qm[:, None] * stride_dqm + offs_d[None, :]) if BIAS_TYPE == "vector": b_ptrs = Bias + offs_n elif BIAS_TYPE == "matrix": b_ptrs = Bias + (offs_qm[:, None] * stride_bm + offs_n[None, :]) # initialize dv and dk dv = tl.zeros([BLOCK_N, BLOCK_HEADDIM], dtype=tl.float32) dk = tl.zeros([BLOCK_N, BLOCK_HEADDIM], dtype=tl.float32) # There seems to be some problem with Triton pipelining that makes results wrong for # headdim=64, seqlen=(113, 255), bias_type='matrix'. In this case the for loop # may have zero step, and pipelining with the bias matrix could screw it up. # So we just exit early. if begin_m >= seqlen_q: dv_ptrs = DV + (offs_n[:, None] * stride_dvn + offs_d[None, :]) dk_ptrs = DK + (offs_n[:, None] * stride_dkn + offs_d[None, :]) _bwd_store_dk_dv( dk_ptrs, dv_ptrs, dk, dv, offs_n, offs_d, seqlen_k, headdim, EVEN_M=EVEN_M, EVEN_N=EVEN_N, EVEN_HEADDIM=EVEN_HEADDIM, ) return # k and v stay in SRAM throughout # [2022-10-30] TD: Same bug as the fwd. In the case of EVEN_N=True and EVEN_M=False, # if we just call tl.load(k_ptrs), we get the wrong output! if EVEN_N & EVEN_M: if EVEN_HEADDIM: k = tl.load(k_ptrs) v = tl.load(v_ptrs) else: k = tl.load(k_ptrs, mask=offs_d[None, :] < headdim, other=0.0) v = tl.load(v_ptrs, mask=offs_d[None, :] < headdim, other=0.0) else: if EVEN_HEADDIM: k = tl.load(k_ptrs, mask=offs_n[:, None] < seqlen_k, other=0.0) v = tl.load(v_ptrs, mask=offs_n[:, None] < seqlen_k, other=0.0) else: k = tl.load( k_ptrs, mask=(offs_n[:, None] < seqlen_k) & (offs_d[None, :] < headdim), other=0.0 ) v = tl.load( v_ptrs, mask=(offs_n[:, None] < seqlen_k) & (offs_d[None, :] < headdim), other=0.0 ) # loop over rows num_block_m = tl.cdiv(seqlen_q, BLOCK_M) for start_m in range(begin_m, num_block_m * BLOCK_M, BLOCK_M): start_m = tl.multiple_of(start_m, BLOCK_M) offs_m_curr = start_m + offs_m # load q, k, v, do on-chip # Same bug as below. Otherwise gives wrong result for headdim=40, seqlen=(128, 117) if EVEN_M & EVEN_HEADDIM: q = tl.load(q_ptrs) else: if EVEN_HEADDIM: q = tl.load(q_ptrs, mask=offs_m_curr[:, None] < seqlen_q, other=0.0) else: q = tl.load( q_ptrs, mask=(offs_m_curr[:, None] < seqlen_q) & (offs_d[None, :] < headdim), other=0.0, ) # recompute p = softmax(qk, dim=-1).T qk = tl.dot(q, k, trans_b=True) # Trying to combine the two masks seem to make the result wrong if not EVEN_N: # Need to mask out otherwise the softmax is wrong qk = tl.where(offs_n[None, :] < seqlen_k, qk, float("-inf")) if IS_CAUSAL: qk = tl.where(offs_m_curr[:, None] >= (offs_n[None, :]), qk, float("-inf")) if BIAS_TYPE != "none": tl.debug_barrier() # Race condition otherwise if BIAS_TYPE == "vector": if EVEN_N: bias = tl.load(b_ptrs).to(tl.float32) else: bias = tl.load(b_ptrs, mask=offs_n < seqlen_k, other=0.0).to(tl.float32) bias = bias[None, :] elif BIAS_TYPE == "matrix": if EVEN_M & EVEN_N: bias = tl.load(b_ptrs).to(tl.float32) else: bias = tl.load( b_ptrs, mask=(offs_m_curr[:, None] < seqlen_q) & (offs_n[None, :] < seqlen_k), other=0.0, ).to(tl.float32) qk = qk * softmax_scale + bias # There seems to be a race condition when headdim=48/96, and dq, dk, dv are wrong. # Also wrong for headdim=64. if not (EVEN_M & EVEN_HEADDIM): tl.debug_barrier() lse_i = tl.load(LSE + offs_m_curr) if BIAS_TYPE == "none": p = tl.exp(qk * softmax_scale - lse_i[:, None]) else: p = tl.exp(qk - lse_i[:, None]) # compute dv # [2022-10-30] TD: A Triton bug: if EVEN_M=True and EVEN_HEADDIM=False, if we call # do = tl.load(do_ptrs, mask=offs_d[None, :] < headdim, other=0.0), we get wrong outputs # in the case of headdim=48/96, seqlen_q & seqlen_k >= 512. If headdim=40 or seqlen < 512, # the output is correct. if EVEN_M & EVEN_HEADDIM: do = tl.load(do_ptrs) else: # [2022-11-01] TD: Triton bug, there's a race condition if we just use m_mask and not d_mask. do = tl.load( do_ptrs, mask=(offs_m_curr[:, None] < seqlen_q) & (offs_d[None, :] < headdim), other=0.0, ) # if EVEN_M: # if EVEN_HEADDIM: # do = tl.load(do_ptrs) # else: # do = tl.load(do_ptrs, mask=offs_d[None, :] < headdim, other=0.0) # else: # if EVEN_HEADDIM: # do = tl.load(do_ptrs, mask=offs_m_curr[:, None] < seqlen_q, other=0.0) # else: # do = tl.load(do_ptrs, mask=(offs_m_curr[:, None] < seqlen_q) # & (offs_d[None, :] < headdim), other=0.0) dv += tl.dot(p.to(do.dtype), do, trans_a=True) # compute dp = dot(v, do) # There seems to be a race condition when headdim=48/96, and dq, dk are wrong. # Also wrong for headdim=128, seqlen=(108, 256), and ATOMIC_ADD=True # Also wrong for headdim=64, seqlen=(1023, 1024), and ATOMIC_ADD=False if not (EVEN_M & EVEN_HEADDIM): tl.debug_barrier() dp = tl.dot(do, v, trans_b=True) # There's a race condition for headdim=48 if not EVEN_HEADDIM: tl.debug_barrier() # compute ds = p * (dp - delta[:, None]) # Putting the subtraction after the dp matmul (instead of before) is slightly faster Di = tl.load(D + offs_m_curr) # Converting ds to q.dtype here reduces register pressure and makes it much faster # for BLOCK_HEADDIM=128 ds = (p * (dp - Di[:, None]) * softmax_scale).to(q.dtype) # compute dk = dot(ds.T, q) dk += tl.dot(ds, q, trans_a=True) # compute dq if not ( EVEN_M & EVEN_HEADDIM ): # Otherewise there's a race condition when BIAS_TYPE='matrix' tl.debug_barrier() if not ATOMIC_ADD: if EVEN_M & EVEN_HEADDIM: # Race condition if we just do EVEN_M dq = tl.load(dq_ptrs, eviction_policy="evict_last") dq += tl.dot(ds, k) tl.store(dq_ptrs, dq, eviction_policy="evict_last") else: if EVEN_HEADDIM: dq = tl.load( dq_ptrs, mask=offs_m_curr[:, None] < seqlen_q, other=0.0, eviction_policy="evict_last", ) dq += tl.dot(ds, k) tl.store( dq_ptrs, dq, mask=offs_m_curr[:, None] < seqlen_q, eviction_policy="evict_last", ) else: dq = tl.load( dq_ptrs, mask=(offs_m_curr[:, None] < seqlen_q) & (offs_d[None, :] < headdim), other=0.0, eviction_policy="evict_last", ) dq += tl.dot(ds, k) tl.store( dq_ptrs, dq, mask=(offs_m_curr[:, None] < seqlen_q) & (offs_d[None, :] < headdim), eviction_policy="evict_last", ) else: # If we're parallelizing across the seqlen_k dimension dq = tl.dot(ds, k) if EVEN_M & EVEN_HEADDIM: # Race condition if we just do EVEN_M tl.atomic_add(dq_ptrs, dq) else: if EVEN_HEADDIM: tl.atomic_add(dq_ptrs, dq, mask=offs_m_curr[:, None] < seqlen_q) else: tl.atomic_add( dq_ptrs, dq, mask=(offs_m_curr[:, None] < seqlen_q) & (offs_d[None, :] < headdim), ) # increment pointers dq_ptrs += BLOCK_M * stride_dqm q_ptrs += BLOCK_M * stride_qm do_ptrs += BLOCK_M * stride_dom if BIAS_TYPE == "matrix": b_ptrs += BLOCK_M * stride_bm # write-back dv_ptrs = DV + (offs_n[:, None] * stride_dvn + offs_d[None, :]) dk_ptrs = DK + (offs_n[:, None] * stride_dkn + offs_d[None, :]) _bwd_store_dk_dv( dk_ptrs, dv_ptrs, dk, dv, offs_n, offs_d, seqlen_k, headdim, EVEN_M=EVEN_M, EVEN_N=EVEN_N, EVEN_HEADDIM=EVEN_HEADDIM, ) def init_to_zero(name): return lambda nargs: nargs[name].zero_() @triton.autotune( configs=[ triton.Config( {"BLOCK_M": 128, "BLOCK_N": 128, "SEQUENCE_PARALLEL": False}, num_warps=8, num_stages=1, pre_hook=init_to_zero("DQ"), ), triton.Config( {"BLOCK_M": 128, "BLOCK_N": 128, "SEQUENCE_PARALLEL": True}, num_warps=8, num_stages=1, pre_hook=init_to_zero("DQ"), ), # Other configs seem to give wrong results when seqlen_q % 128 != 0, disabling them for now # # Kernel is buggy (give wrong result) if we set BLOCK_m=128, BLOCK_n=64, num_warps=*4* # triton.Config({"BLOCK_M": 128, "BLOCK_N": 64, "SEQUENCE_PARALLEL": False}, num_warps=8, num_stages=1, pre_hook=init_to_zero('DQ')), # triton.Config({"BLOCK_M": 128, "BLOCK_N": 64, "SEQUENCE_PARALLEL": True}, num_warps=8, num_stages=1, pre_hook=init_to_zero('DQ')), # triton.Config({"BLOCK_M": 64, "BLOCK_N": 64, "SEQUENCE_PARALLEL": False}, num_warps=4, num_stages=1, pre_hook=init_to_zero('DQ')), # triton.Config({"BLOCK_M": 64, "BLOCK_N": 64, "SEQUENCE_PARALLEL": True}, num_warps=4, num_stages=1, pre_hook=init_to_zero('DQ')), ], key=["CACHE_KEY_SEQLEN_Q", "CACHE_KEY_SEQLEN_K", "BIAS_TYPE", "IS_CAUSAL", "BLOCK_HEADDIM"], ) @triton.heuristics( { "EVEN_M": lambda args: args["seqlen_q"] % args["BLOCK_M"] == 0, "EVEN_N": lambda args: args["seqlen_k"] % args["BLOCK_N"] == 0, "EVEN_HEADDIM": lambda args: args["headdim"] == args["BLOCK_HEADDIM"], } ) @triton.jit def _bwd_kernel( Q, K, V, Bias, DO, DQ, DK, DV, LSE, D, softmax_scale, stride_qb, stride_qh, stride_qm, stride_kb, stride_kh, stride_kn, stride_vb, stride_vh, stride_vn, stride_bb, stride_bh, stride_bm, stride_dob, stride_doh, stride_dom, stride_dqb, stride_dqh, stride_dqm, stride_dkb, stride_dkh, stride_dkn, stride_dvb, stride_dvh, stride_dvn, nheads, seqlen_q, seqlen_k, seqlen_q_rounded, headdim, CACHE_KEY_SEQLEN_Q, CACHE_KEY_SEQLEN_K, BIAS_TYPE: tl.constexpr, IS_CAUSAL: tl.constexpr, BLOCK_HEADDIM: tl.constexpr, SEQUENCE_PARALLEL: tl.constexpr, EVEN_M: tl.constexpr, EVEN_N: tl.constexpr, EVEN_HEADDIM: tl.constexpr, BLOCK_M: tl.constexpr, BLOCK_N: tl.constexpr, ): off_hb = tl.program_id(1) off_b = off_hb // nheads off_h = off_hb % nheads # offset pointers for batch/head Q += off_b * stride_qb + off_h * stride_qh K += off_b * stride_kb + off_h * stride_kh V += off_b * stride_vb + off_h * stride_vh DO += off_b * stride_dob + off_h * stride_doh DQ += off_b * stride_dqb + off_h * stride_dqh DK += off_b * stride_dkb + off_h * stride_dkh DV += off_b * stride_dvb + off_h * stride_dvh if BIAS_TYPE != "none": Bias += off_b * stride_bb + off_h * stride_bh # pointer to row-wise quantities in value-like data D += off_hb * seqlen_q_rounded LSE += off_hb * seqlen_q_rounded if not SEQUENCE_PARALLEL: num_block_n = tl.cdiv(seqlen_k, BLOCK_N) for start_n in range(0, num_block_n): _bwd_kernel_one_col_block( start_n, Q, K, V, Bias, DO, DQ, DK, DV, LSE, D, softmax_scale, stride_qm, stride_kn, stride_vn, stride_bm, stride_dom, stride_dqm, stride_dkn, stride_dvn, seqlen_q, seqlen_k, headdim, ATOMIC_ADD=False, BIAS_TYPE=BIAS_TYPE, IS_CAUSAL=IS_CAUSAL, BLOCK_HEADDIM=BLOCK_HEADDIM, EVEN_M=EVEN_M, EVEN_N=EVEN_N, EVEN_HEADDIM=EVEN_HEADDIM, BLOCK_M=BLOCK_M, BLOCK_N=BLOCK_N, ) else: start_n = tl.program_id(0) _bwd_kernel_one_col_block( start_n, Q, K, V, Bias, DO, DQ, DK, DV, LSE, D, softmax_scale, stride_qm, stride_kn, stride_vn, stride_bm, stride_dom, stride_dqm, stride_dkn, stride_dvn, seqlen_q, seqlen_k, headdim, ATOMIC_ADD=True, BIAS_TYPE=BIAS_TYPE, IS_CAUSAL=IS_CAUSAL, BLOCK_HEADDIM=BLOCK_HEADDIM, EVEN_M=EVEN_M, EVEN_N=EVEN_N, EVEN_HEADDIM=EVEN_HEADDIM, BLOCK_M=BLOCK_M, BLOCK_N=BLOCK_N, ) def _flash_attn_forward(q, k, v, bias=None, causal=False, softmax_scale=None): # shape constraints batch, seqlen_q, nheads, d = q.shape _, seqlen_k, _, _ = k.shape assert k.shape == (batch, seqlen_k, nheads, d) assert v.shape == (batch, seqlen_k, nheads, d) assert d <= 128, "FlashAttention only support head dimensions up to 128" assert q.dtype == k.dtype == v.dtype, "All tensors must have the same type" assert q.dtype in [torch.float16, torch.bfloat16], "Only support fp16 and bf16" assert q.is_cuda and k.is_cuda and v.is_cuda softmax_scale = softmax_scale or 1.0 / math.sqrt(d) has_bias = bias is not None bias_type = "none" if has_bias: assert bias.dtype in [q.dtype, torch.float] assert bias.is_cuda assert bias.dim() == 4 if bias.stride(-1) != 1: bias = bias.contiguous() if bias.shape[2:] == (1, seqlen_k): bias_type = "vector" elif bias.shape[2:] == (seqlen_q, seqlen_k): bias_type = "matrix" else: raise RuntimeError( "Last 2 dimensions of bias must be (1, seqlen_k)" " or (seqlen_q, seqlen_k)" ) bias = bias.expand(batch, nheads, seqlen_q, seqlen_k) bias_strides = (bias.stride(0), bias.stride(1), bias.stride(2)) if has_bias else (0, 0, 0) seqlen_q_rounded = math.ceil(seqlen_q / 128) * 128 lse = torch.empty((batch, nheads, seqlen_q_rounded), device=q.device, dtype=torch.float32) tmp = torch.empty((batch, nheads, seqlen_q_rounded), device=q.device, dtype=torch.float32) o = torch.empty_like(q) BLOCK_HEADDIM = max(triton.next_power_of_2(d), 16) BLOCK = 128 num_warps = 4 if d <= 64 else 8 grid = lambda META: (triton.cdiv(seqlen_q, META["BLOCK_M"]), batch * nheads) _fwd_kernel[grid]( q, k, v, bias, o, lse, tmp, softmax_scale, q.stride(0), q.stride(2), q.stride(1), k.stride(0), k.stride(2), k.stride(1), v.stride(0), v.stride(2), v.stride(1), *bias_strides, o.stride(0), o.stride(2), o.stride(1), nheads, seqlen_q, seqlen_k, seqlen_q_rounded, d, seqlen_q // 32, seqlen_k // 32, # key for triton cache (limit number of compilations) # Can't use kwargs here because triton autotune expects key to be args, not kwargs # IS_CAUSAL=causal, BLOCK_HEADDIM=d, bias_type, causal, BLOCK_HEADDIM, BLOCK_M=BLOCK, BLOCK_N=BLOCK, num_warps=num_warps, num_stages=1, ) return o, lse, softmax_scale # softmax_scale could have been updated def _flash_attn_backward( do, q, k, v, o, lse, dq, dk, dv, bias=None, causal=False, softmax_scale=None ): # Make sure that the last dimension is contiguous if do.stride(-1) != 1: do = do.contiguous() batch, seqlen_q, nheads, d = q.shape _, seqlen_k, _, _ = k.shape # assert d in {16, 32, 64, 128} assert d <= 128 seqlen_q_rounded = math.ceil(seqlen_q / 128) * 128 assert lse.shape == (batch, nheads, seqlen_q_rounded) assert q.stride(-1) == k.stride(-1) == v.stride(-1) == o.stride(-1) == 1 assert dq.stride(-1) == dk.stride(-1) == dv.stride(-1) == 1 softmax_scale = softmax_scale or 1.0 / math.sqrt(d) # dq_accum = torch.zeros_like(q, dtype=torch.float32) dq_accum = torch.empty_like(q, dtype=torch.float32) delta = torch.empty_like(lse) # delta = torch.zeros_like(lse) BLOCK_HEADDIM = max(triton.next_power_of_2(d), 16) grid = lambda META: (triton.cdiv(seqlen_q, META["BLOCK_M"]), batch * nheads) _bwd_preprocess_do_o_dot[grid]( o, do, delta, o.stride(0), o.stride(2), o.stride(1), do.stride(0), do.stride(2), do.stride(1), nheads, seqlen_q, seqlen_q_rounded, d, BLOCK_M=128, BLOCK_HEADDIM=BLOCK_HEADDIM, ) has_bias = bias is not None bias_type = "none" if has_bias: assert bias.dtype in [q.dtype, torch.float] assert bias.is_cuda assert bias.dim() == 4 assert bias.stride(-1) == 1 if bias.shape[2:] == (1, seqlen_k): bias_type = "vector" elif bias.shape[2:] == (seqlen_q, seqlen_k): bias_type = "matrix" else: raise RuntimeError( "Last 2 dimensions of bias must be (1, seqlen_k)" " or (seqlen_q, seqlen_k)" ) bias = bias.expand(batch, nheads, seqlen_q, seqlen_k) bias_strides = (bias.stride(0), bias.stride(1), bias.stride(2)) if has_bias else (0, 0, 0) # BLOCK_M = 128 # BLOCK_N = 64 # num_warps = 4 grid = lambda META: ( triton.cdiv(seqlen_k, META["BLOCK_N"]) if META["SEQUENCE_PARALLEL"] else 1, batch * nheads, ) _bwd_kernel[grid]( q, k, v, bias, do, dq_accum, dk, dv, lse, delta, softmax_scale, q.stride(0), q.stride(2), q.stride(1), k.stride(0), k.stride(2), k.stride(1), v.stride(0), v.stride(2), v.stride(1), *bias_strides, do.stride(0), do.stride(2), do.stride(1), dq_accum.stride(0), dq_accum.stride(2), dq_accum.stride(1), dk.stride(0), dk.stride(2), dk.stride(1), dv.stride(0), dv.stride(2), dv.stride(1), nheads, seqlen_q, seqlen_k, seqlen_q_rounded, d, seqlen_q // 32, seqlen_k // 32, # key for triton cache (limit number of compilations) # Can't use kwargs here because triton autotune expects key to be args, not kwargs # IS_CAUSAL=causal, BLOCK_HEADDIM=d, bias_type, causal, BLOCK_HEADDIM, # SEQUENCE_PARALLEL=False, # BLOCK_M=BLOCK_M, BLOCK_N=BLOCK_N, # num_warps=num_warps, # num_stages=1, ) dq.copy_(dq_accum) class FlashAttnQKVPackedFunc(torch.autograd.Function): @staticmethod def forward(ctx, qkv, bias=None, causal=False, softmax_scale=None): """ qkv: (batch, seqlen, 3, nheads, headdim) bias: optional, shape broadcastible to (batch, nheads, seqlen, seqlen). For example, ALiBi mask for causal would have shape (1, nheads, 1, seqlen). ALiBi mask for non-causal would have shape (1, nheads, seqlen, seqlen) """ # Make sure that the last dimension is contiguous if qkv.stride(-1) != 1: qkv = qkv.contiguous() o, lse, ctx.softmax_scale = _flash_attn_forward( qkv[:, :, 0], qkv[:, :, 1], qkv[:, :, 2], bias=bias, causal=causal, softmax_scale=softmax_scale, ) ctx.save_for_backward(qkv, o, lse, bias) ctx.causal = causal return o @staticmethod def backward(ctx, do): qkv, o, lse, bias = ctx.saved_tensors assert not ctx.needs_input_grad[1], "FlashAttention does not support bias gradient yet" # Triton's autotune causes the Tensor._version to change, and so Pytorch autograd # does a memcpy. To avoid this we run in inference_mode, which doesn't track the version. with torch.inference_mode(): dqkv = torch.empty_like(qkv) _flash_attn_backward( do, qkv[:, :, 0], qkv[:, :, 1], qkv[:, :, 2], o, lse, dqkv[:, :, 0], dqkv[:, :, 1], dqkv[:, :, 2], bias=bias, causal=ctx.causal, softmax_scale=ctx.softmax_scale, ) return dqkv, None, None, None flash_attn_qkvpacked_func = FlashAttnQKVPackedFunc.apply class FlashAttnKVPackedFunc(torch.autograd.Function): @staticmethod def forward(ctx, q, kv, bias=None, causal=False, softmax_scale=None): """ q: (batch, seqlen_q, nheads, headdim) kv: (batch, seqlen_k, 2, nheads, headdim) bias: optional, shape broadcastible to (batch, nheads, seqlen_q, seqlen_k). For example, ALiBi mask for causal would have shape (1, nheads, 1, seqlen_k). ALiBi mask for non-causal would have shape (1, nheads, seqlen_q, seqlen_k) """ # Make sure that the last dimension is contiguous q, kv = [x if x.stride(-1) == 1 else x.contiguous() for x in [q, kv]] o, lse, ctx.softmax_scale = _flash_attn_forward( q, kv[:, :, 0], kv[:, :, 1], bias=bias, causal=causal, softmax_scale=softmax_scale ) ctx.save_for_backward(q, kv, o, lse, bias) ctx.causal = causal return o @staticmethod def backward(ctx, do): q, kv, o, lse, bias = ctx.saved_tensors if len(ctx.needs_input_grad) >= 3: assert not ctx.needs_input_grad[2], "FlashAttention does not support bias gradient yet" # Triton's autotune causes the Tensor._version to change, and so Pytorch autograd # does a memcpy. To avoid this we run in inference_mode, which doesn't track the version. with torch.inference_mode(): dq = torch.empty_like(q) dkv = torch.empty_like(kv) _flash_attn_backward( do, q, kv[:, :, 0], kv[:, :, 1], o, lse, dq, dkv[:, :, 0], dkv[:, :, 1], bias=bias, causal=ctx.causal, softmax_scale=ctx.softmax_scale, ) return dq, dkv, None, None, None flash_attn_kvpacked_func = FlashAttnKVPackedFunc.apply class FlashAttnFunc(torch.autograd.Function): @staticmethod def forward(ctx, q, k, v, bias=None, causal=False, softmax_scale=None): """ q: (batch_size, seqlen_q, nheads, headdim) k, v: (batch_size, seqlen_k, nheads, headdim) bias: optional, shape broadcastible to (batch, nheads, seqlen_q, seqlen_k). For example, ALiBi mask for causal would have shape (1, nheads, 1, seqlen_k). ALiBi mask for non-causal would have shape (1, nheads, seqlen_q, seqlen_k) """ # Make sure that the last dimension is contiguous q, k, v = [x if x.stride(-1) == 1 else x.contiguous() for x in [q, k, v]] o, lse, ctx.softmax_scale = _flash_attn_forward( q, k, v, bias=bias, causal=causal, softmax_scale=softmax_scale ) ctx.save_for_backward(q, k, v, o, lse, bias) ctx.causal = causal return o @staticmethod def backward(ctx, do): q, k, v, o, lse, bias = ctx.saved_tensors assert not ctx.needs_input_grad[3], "FlashAttention does not support bias gradient yet" # Triton's autotune causes the Tensor._version to change, and so Pytorch autograd # does a memcpy. To avoid this we run in inference_mode, which doesn't track the version. with torch.inference_mode(): dq = torch.empty_like(q) dk = torch.empty_like(k) dv = torch.empty_like(v) _flash_attn_backward( do, q, k, v, o, lse, dq, dk, dv, bias=bias, causal=ctx.causal, softmax_scale=ctx.softmax_scale, ) return dq, dk, dv, None, None, None flash_attn_func = FlashAttnFunc.apply