| |
| |
|
|
| from typing import Optional, Tuple |
|
|
| import torch |
| import triton |
| import triton.language as tl |
|
|
| from fla.ops.utils import chunk_global_cumsum, chunk_local_cumsum |
| from fla.ops.utils.op import safe_exp |
| from fla.utils import autocast_custom_bwd, autocast_custom_fwd, check_shared_mem, input_guard, is_intel_alchemist |
|
|
| |
| triton_config = {'grf_mode': 'large'} if is_intel_alchemist else {} |
|
|
|
|
| @triton.heuristics({ |
| 'NV': lambda args: triton.cdiv(args['V'], args['BV']), |
| 'OUTPUT_ATTENTIONS': lambda args: args['attn'] is not None, |
| 'USE_OFFSETS': lambda args: args['offsets'] is not None, |
| 'USE_G': lambda args: args['g'] is not None |
| }) |
| @triton.autotune( |
| configs=[ |
| triton.Config({}, num_warps=num_warps, num_stages=num_stages) |
| for num_warps in [2, 4, 8, 16] |
| for num_stages in [2, 3, 4] |
| ], |
| key=["BT", "BS", "BK", "BV", "USE_G"], |
| ) |
| @triton.jit |
| def parallel_simple_gla_fwd_kernel( |
| q, |
| k, |
| v, |
| g, |
| o, |
| attn, |
| scale, |
| offsets, |
| indices, |
| T, |
| B: tl.constexpr, |
| H: tl.constexpr, |
| K: tl.constexpr, |
| V: tl.constexpr, |
| BT: tl.constexpr, |
| BS: tl.constexpr, |
| BK: tl.constexpr, |
| BV: tl.constexpr, |
| NV: tl.constexpr, |
| OUTPUT_ATTENTIONS: tl.constexpr, |
| HEAD_FIRST: tl.constexpr, |
| USE_OFFSETS: tl.constexpr, |
| USE_G: tl.constexpr |
| ): |
| tl.static_assert(not (USE_OFFSETS and HEAD_FIRST), "USE_OFFSETS and HEAD_FIRST cannot be True at the same time") |
| i_kv, i_t, i_bh = tl.program_id(0), tl.program_id(1), tl.program_id(2) |
| i_k, i_v = i_kv // NV, i_kv % NV |
| i_b, i_h = i_bh // H, i_bh % H |
| o += i_k * B * T * H * V |
|
|
| if USE_OFFSETS: |
| i_n, i_t = tl.load(indices + i_t * 2).to(tl.int32), tl.load(indices + i_t * 2 + 1).to(tl.int32) |
| bos, eos = tl.load(offsets + i_n).to(tl.int32), tl.load(offsets + i_n + 1).to(tl.int32) |
| T = eos - bos |
| else: |
| bos, eos = i_b * T, i_b * T + T |
|
|
| q += i_bh * T * K if HEAD_FIRST else (bos * H + i_h) * K |
| k += i_bh * T * K if HEAD_FIRST else (bos * H + i_h) * K |
| v += i_bh * T * V if HEAD_FIRST else (bos * H + i_h) * V |
| o += i_bh * T * V if HEAD_FIRST else (bos * H + i_h) * V |
| if USE_G: |
| g += i_bh * T if HEAD_FIRST else bos * H + i_h |
| if OUTPUT_ATTENTIONS: |
| attn += (bos * H + i_h * T) * T + i_k * B * H * T * T |
| stride_qk = K if HEAD_FIRST else H * K |
| stride_vo = V if HEAD_FIRST else H * V |
| stride_g = 1 if HEAD_FIRST else H |
|
|
| p_q = tl.make_block_ptr(q, (T, K), (stride_qk, 1), (i_t * BT, i_k * BK), (BT, BK), (1, 0)) |
|
|
| |
| |
| b_q = tl.load(p_q, boundary_check=(0, 1)) |
| b_q = (b_q * scale).to(b_q.dtype) |
| b_o = tl.zeros([BT, BV], dtype=tl.float32) |
|
|
| |
| o_q = i_t * BT + tl.arange(0, BT) |
| |
| o_k = i_t * BT + tl.arange(0, BS) |
| |
| |
| if USE_G: |
| p_gq = tl.make_block_ptr(g, (T,), (stride_g,), (i_t * BT,), (BT,), (0,)) |
| |
| b_gq = tl.load(p_gq, boundary_check=(0,)).to(tl.float32) |
| |
| else: |
| b_gq = None |
|
|
| for i_s in range(i_t * BT, min((i_t + 1) * BT, T), BS): |
| p_k = tl.make_block_ptr(k, (K, T), (1, stride_qk), (i_k * BK, i_s), (BK, BS), (0, 1)) |
| p_v = tl.make_block_ptr(v, (T, V), (stride_vo, 1), (i_s, i_v * BV), (BS, BV), (1, 0)) |
| |
| b_k = tl.load(p_k, boundary_check=(0, 1)) |
| |
| b_v = tl.load(p_v, boundary_check=(0, 1)) |
| |
| m_s = o_q[:, None] >= o_k[None, :] |
| b_s = tl.dot(b_q, b_k) |
| if USE_G: |
| p_gk = tl.make_block_ptr(g, (T,), (stride_g,), (i_s,), (BS,), (0,)) |
| b_gk = tl.load(p_gk, boundary_check=(0,)) |
| b_s *= safe_exp(b_gq[:, None] - b_gk[None, :]) |
| b_s = tl.where(m_s, b_s, 0) |
| else: |
| b_s = tl.where(m_s, b_s, 0) |
| |
| if i_s >= 0: |
| b_o += tl.dot(b_s.to(b_q.dtype), b_v) |
| if OUTPUT_ATTENTIONS: |
| p_a = tl.make_block_ptr(attn, (T, T), (T, 1), (i_t * BT, i_s), (BT, BS), (1, 0)) |
| tl.store(p_a, b_s.to(p_a.dtype.element_ty), boundary_check=(0, 1)) |
| o_k += BS |
|
|
| for i_s in range(i_t * BT - BS, -BS, -BS): |
| p_k = tl.make_block_ptr(k, (K, T), (1, stride_qk), (i_k * BK, i_s), (BK, BS), (0, 1)) |
| p_v = tl.make_block_ptr(v, (T, V), (stride_vo, 1), (i_s, i_v * BV), (BS, BV), (1, 0)) |
| |
| b_k = tl.load(p_k, boundary_check=(0, 1)) |
| |
| b_v = tl.load(p_v, boundary_check=(0, 1)) |
| b_s = tl.dot(b_q, b_k) |
| if USE_G: |
| p_g = tl.make_block_ptr(g, (T,), (stride_g,), (i_s,), (BS,), (0,)) |
| b_g = tl.load(p_g, boundary_check=(0,)) |
| b_gn = tl.load(g + (min(i_s + BS, T) - 1) * stride_g) |
| b_gp = tl.load(g + (i_s-1) * stride_g) if i_s % BT > 0 else 0. |
| |
| b_s *= safe_exp(b_gq[:, None] + (b_gn - b_g)[None, :]) |
| b_gq += (b_gn - b_gp) |
| if OUTPUT_ATTENTIONS: |
| p_a = tl.make_block_ptr(attn, (T, T), (T, 1), (i_t * BT, i_s), (BT, BS), (1, 0)) |
| tl.store(p_a, b_s.to(p_a.dtype.element_ty), boundary_check=(0, 1)) |
| if i_s >= 0: |
| b_o += tl.dot(b_s.to(b_v.dtype), b_v) |
| p_o = tl.make_block_ptr(o, (T, V), (stride_vo, 1), (i_t * BT, i_v * BV), (BT, BV), (1, 0)) |
| tl.store(p_o, b_o.to(p_o.dtype.element_ty), boundary_check=(0, 1)) |
|
|
|
|
| @triton.jit(do_not_specialize=['T']) |
| def parallel_simple_gla_bwd_kernel_dq( |
| i_t, |
| i_k, |
| i_v, |
| q, |
| k, |
| v, |
| g, |
| do, |
| dq, |
| dg, |
| stride_qk, |
| stride_vo, |
| stride_g, |
| scale, |
| T, |
| K: tl.constexpr, |
| V: tl.constexpr, |
| BT: tl.constexpr, |
| BS: tl.constexpr, |
| BK: tl.constexpr, |
| BV: tl.constexpr, |
| USE_G: tl.constexpr |
| ): |
| p_do = tl.make_block_ptr(do, (T, V), (stride_vo, 1), (i_t * BT, i_v * BV), (BT, BV), (1, 0)) |
| |
| b_do = tl.load(p_do, boundary_check=(0, 1)) |
| |
| b_dq = tl.zeros([BT, BK], dtype=tl.float32) |
|
|
| for i_s in range(0, i_t * BT, BS): |
| p_k = tl.make_block_ptr(k, (T, K), (stride_qk, 1), (i_s, i_k * BK), (BS, BK), (1, 0)) |
| p_v = tl.make_block_ptr(v, (V, T), (1, stride_vo), (i_v * BV, i_s), (BV, BS), (0, 1)) |
| |
| b_k = tl.load(p_k, boundary_check=(0, 1)) |
| |
| b_v = tl.load(p_v, boundary_check=(0, 1)) |
| |
| b_ds = tl.dot(b_do, b_v) |
| if USE_G: |
| p_g = tl.make_block_ptr(g, (T,), (stride_g,), (i_s,), (BS,), (0,)) |
| b_g = tl.load(p_g, boundary_check=(0,)) |
| b_gn = tl.load(g + (min(i_s + BS, T) - 1) * stride_g) |
| b_gp = tl.load(g + (i_s - 1) * stride_g) if i_s % BT > 0 else 0. |
| b_ds *= safe_exp(b_gn - b_g)[None, :] |
| if i_s > 0: |
| b_dq *= safe_exp(b_gn - b_gp) |
| |
| b_dq += tl.dot(b_ds.to(b_v.dtype), b_k) |
|
|
| if USE_G: |
| p_gq = tl.make_block_ptr(g, (T,), (stride_g,), (i_t * BT,), (BT,), (0,)) |
| |
| b_gq = tl.load(p_gq, boundary_check=(0,)) |
| |
| b_dq *= safe_exp(b_gq)[:, None] |
|
|
| |
| o_q = i_t * BT + tl.arange(0, BT) |
| |
| o_k = i_t * BT + tl.arange(0, BS) |
| |
| for i_s in range(i_t * BT, min((i_t + 1) * BT, T), BS): |
| p_k = tl.make_block_ptr(k, (T, K), (stride_qk, 1), (i_s, i_k * BK), (BS, BK), (1, 0)) |
| p_v = tl.make_block_ptr(v, (V, T), (1, stride_vo), (i_v * BV, i_s), (BV, BS), (0, 1)) |
| |
| b_k = tl.load(p_k, boundary_check=(0, 1)) |
| |
| b_v = tl.load(p_v, boundary_check=(0, 1)) |
| |
| b_ds = tl.dot(b_do, b_v) |
| if USE_G: |
| p_gk = tl.make_block_ptr(g, (T,), (stride_g,), (i_s,), (BS,), (0,)) |
| b_gk = tl.load(p_gk, boundary_check=(0,)) |
| b_ds *= safe_exp(b_gq[:, None] - b_gk[None, :]) |
| b_ds = tl.where(o_q[:, None] >= o_k[None, :], b_ds, 0) |
| |
| b_dq += tl.dot(b_ds.to(b_k.dtype), b_k) |
| o_k += BS |
|
|
| b_dq *= scale |
| p_dq = tl.make_block_ptr(dq, (T, K), (stride_qk, 1), (i_t * BT, i_k * BK), (BT, BK), (1, 0)) |
| tl.store(p_dq, b_dq.to(p_dq.dtype.element_ty), boundary_check=(0, 1)) |
| if USE_G: |
| p_q = tl.make_block_ptr(q, (T, K), (stride_qk, 1), (i_t * BT, i_k * BK), (BT, BK), (1, 0)) |
| b_q = tl.load(p_q, boundary_check=(0, 1)) |
| b_dg = tl.sum(b_dq * b_q, 1) |
| p_dg = tl.make_block_ptr(dg, (T,), (stride_g,), (i_t * BT,), (BT,), (0,)) |
| tl.store(p_dg, b_dg.to(p_dg.dtype.element_ty), boundary_check=(0,)) |
|
|
|
|
| @triton.jit(do_not_specialize=['T']) |
| def parallel_simple_gla_bwd_kernel_dkv( |
| i_t, |
| i_k, |
| i_v, |
| q, |
| k, |
| v, |
| g, |
| do, |
| dk, |
| dv, |
| dg, |
| scale, |
| stride_qk, |
| stride_vo, |
| stride_g, |
| T, |
| K: tl.constexpr, |
| V: tl.constexpr, |
| BT: tl.constexpr, |
| BS: tl.constexpr, |
| BK: tl.constexpr, |
| BV: tl.constexpr, |
| USE_G: tl.constexpr |
| ): |
| |
| p_k = tl.make_block_ptr(k, (T, K), (stride_qk, 1), (i_t * BT, i_k * BK), (BT, BK), (1, 0)) |
| b_k = tl.load(p_k, boundary_check=(0, 1)) |
| b_dk = tl.zeros([BT, BK], dtype=tl.float32) |
| |
| p_v = tl.make_block_ptr(v, (T, V), (stride_vo, 1), (i_t * BT, i_v * BV), (BT, BV), (1, 0)) |
| b_v = tl.load(p_v, boundary_check=(0, 1)) |
| b_dv = tl.zeros([BT, BV], dtype=tl.float32) |
| if USE_G: |
| p_gk = tl.make_block_ptr(g, (T,), (stride_g,), (i_t * BT,), (BT,), (0,)) |
| b_gk = tl.load(p_gk, boundary_check=(0,)) |
| NTS = tl.cdiv(T, BS) |
| |
| for i_s in range(NTS * BS - BS, (i_t + 1) * BT - BS, -BS): |
| p_q = tl.make_block_ptr(q, (T, K), (stride_qk, 1), (i_s, i_k * BK), (BS, BK), (1, 0)) |
| p_do = tl.make_block_ptr(do, (T, V), (stride_vo, 1), (i_s, i_v * BV), (BS, BV), (1, 0)) |
| b_q = tl.load(p_q, boundary_check=(0, 1)) |
| b_do = tl.load(p_do, boundary_check=(0, 1)) |
| b_ds = tl.dot(b_v, tl.trans(b_do)) |
| b_s = tl.dot(b_k, tl.trans(b_q)) |
| if USE_G: |
| p_gq = tl.make_block_ptr(g, (T,), (stride_g,), (i_s,), (BS,), (0,)) |
| b_gq = tl.load(p_gq, boundary_check=(0,)) |
| b_gp = tl.load(g + (min(i_s + BS, T) - 1) * stride_g) |
| b_gn = tl.load(g + (i_s - 1) * stride_g) if i_s % BT > 0 else 0. |
| if i_s >= 0: |
| tmp = safe_exp(b_gp - b_gn) |
| b_dk *= tmp |
| b_dv *= tmp |
| tmp2 = safe_exp(b_gq - b_gn) |
| b_ds *= tmp2[None, :] |
| b_s *= tmp2[None, :] |
| |
| b_dk += tl.dot(b_ds.to(b_q.dtype), b_q) |
| |
| b_dv += tl.dot(b_s.to(b_do.dtype), b_do) |
|
|
| if USE_G: |
| b_g_last = tl.load(g + (min(i_t * BT + BT, T) - 1) * stride_g) |
| if i_t >= 0: |
| tmp2 = safe_exp(b_g_last - b_gk)[:, None] |
| b_dk *= tmp2 |
| b_dv *= tmp2 |
|
|
| o_q = i_t * BT + tl.arange(0, BS) |
| o_k = i_t * BT + tl.arange(0, BT) |
| for i_s in range(i_t * BT, min((i_t + 1) * BT, T), BS): |
| p_q = tl.make_block_ptr(q, (T, K), (stride_qk, 1), (i_s, i_k * BK), (BS, BK), (1, 0)) |
| p_do = tl.make_block_ptr(do, (T, V), (stride_vo, 1), (i_s, i_v * BV), (BS, BV), (1, 0)) |
| |
| b_q = tl.load(p_q, boundary_check=(0, 1)) |
| |
| b_do = tl.load(p_do, boundary_check=(0, 1)) |
| |
| b_ds = tl.dot(b_v, tl.trans(b_do)) |
| b_s = tl.dot(b_k, tl.trans(b_q)) |
| if USE_G: |
| p_gq = tl.make_block_ptr(g, (T,), (stride_g,), (i_s,), (BS,), (0,)) |
| b_gq = tl.load(p_gq, boundary_check=(0,)) |
| if i_s >= 0: |
| tmp = safe_exp(-b_gk[:, None] + b_gq[None, :]) |
| b_ds *= tmp |
| b_s *= tmp |
| m_s = o_k[:, None] <= o_q[None, :] |
| b_s = tl.where(m_s, b_s, 0) |
| b_ds = tl.where(m_s, b_ds, 0) |
| |
| b_dk += tl.dot(b_ds.to(b_q.dtype), b_q) |
| b_dv += tl.dot(b_s.to(b_do.dtype), b_do) |
| o_q += BS |
| b_dk *= scale |
| b_dv *= scale |
| p_dk = tl.make_block_ptr(dk, (T, K), (stride_qk, 1), (i_t * BT, i_k * BK), (BT, BK), (1, 0)) |
| p_dv = tl.make_block_ptr(dv, (T, V), (stride_vo, 1), (i_t * BT, i_v * BV), (BT, BV), (1, 0)) |
| tl.store(p_dk, b_dk.to(p_dk.dtype.element_ty), boundary_check=(0, 1)) |
| tl.store(p_dv, b_dv.to(p_dv.dtype.element_ty), boundary_check=(0, 1)) |
| if USE_G: |
| p_dg = tl.make_block_ptr(dg, (T,), (stride_g,), (i_t * BT,), (BT,), (0,)) |
| b_dg = tl.load(p_dg, boundary_check=(0,)) |
| b_dg -= tl.sum(b_dk * b_k, 1) |
| tl.store(p_dg, b_dg.to(p_dg.dtype.element_ty), boundary_check=(0,)) |
|
|
|
|
| @triton.heuristics({ |
| 'NV': lambda args: triton.cdiv(args['V'], args['BV']), |
| 'USE_OFFSETS': lambda args: args['offsets'] is not None, |
| 'USE_G': lambda args: args['g'] is not None |
| }) |
| @triton.autotune( |
| configs=[ |
| triton.Config(triton_config, num_warps=num_warps) |
| for num_warps in [2, 4, 8, 16] |
| ], |
| key=['BT', 'BS', 'BK', 'BV', 'USE_G'], |
| ) |
| @triton.jit(do_not_specialize=['T']) |
| def parallel_simple_gla_bwd_kernel( |
| q, |
| k, |
| v, |
| g, |
| do, |
| dq, |
| dk, |
| dv, |
| dg, |
| scale, |
| offsets, |
| indices, |
| T, |
| B: tl.constexpr, |
| H: tl.constexpr, |
| K: tl.constexpr, |
| V: tl.constexpr, |
| BT: tl.constexpr, |
| BS: tl.constexpr, |
| BK: tl.constexpr, |
| BV: tl.constexpr, |
| NV: tl.constexpr, |
| USE_OFFSETS: tl.constexpr, |
| HEAD_FIRST: tl.constexpr, |
| USE_G: tl.constexpr |
| ): |
| tl.static_assert(not (USE_OFFSETS and HEAD_FIRST), "USE_OFFSETS and HEAD_FIRST cannot be True at the same time") |
| i_kv, i_t, i_bh = tl.program_id(0), tl.program_id(1), tl.program_id(2) |
| i_k, i_v = i_kv // NV, i_kv % NV |
| i_b, i_h = i_bh // H, i_bh % H |
| dq += i_v * B * H * T * K |
| dk += i_v * B * H * T * K |
| dv += i_k * B * H * T * V |
| if USE_G: |
| dg += i_kv * B * H * T |
|
|
| if USE_OFFSETS: |
| i_n, i_t = tl.load(indices + i_t * 2).to(tl.int32), tl.load(indices + i_t * 2 + 1).to(tl.int32) |
| bos, eos = tl.load(offsets + i_n).to(tl.int32), tl.load(offsets + i_n + 1).to(tl.int32) |
| T = eos - bos |
| else: |
| bos, eos = i_b * T, i_b * T + T |
|
|
| q += (i_bh * T * K) if HEAD_FIRST else (bos * H + i_h) * K |
| k += (i_bh * T * K) if HEAD_FIRST else (bos * H + i_h) * K |
| v += (i_bh * T * V) if HEAD_FIRST else (bos * H + i_h) * V |
| do += (i_bh * T * V) if HEAD_FIRST else (bos * H + i_h) * V |
| dq += (i_bh * T * K) if HEAD_FIRST else (bos * H + i_h) * K |
| dk += (i_bh * T * K) if HEAD_FIRST else (bos * H + i_h) * K |
| dv += (i_bh * T * V) if HEAD_FIRST else (bos * H + i_h) * V |
| if USE_G: |
| g += (i_bh * T) if HEAD_FIRST else (bos * H + i_h) |
| dg += (i_bh * T) if HEAD_FIRST else (bos * H + i_h) |
| stride_qk = K if HEAD_FIRST else H * K |
| stride_vo = V if HEAD_FIRST else H * V |
| stride_g = 1 if HEAD_FIRST else H |
|
|
| parallel_simple_gla_bwd_kernel_dq( |
| i_t=i_t, |
| i_k=i_k, |
| i_v=i_v, |
| q=q, |
| k=k, |
| v=v, |
| g=g, |
| do=do, |
| dq=dq, |
| dg=dg, |
| scale=scale, |
| stride_qk=stride_qk, |
| stride_vo=stride_vo, |
| stride_g=stride_g, |
| T=T, |
| K=K, |
| V=V, |
| BT=BT, |
| BS=BS, |
| BK=BK, |
| BV=BV, |
| USE_G=USE_G |
| ) |
| tl.debug_barrier() |
| parallel_simple_gla_bwd_kernel_dkv( |
| i_t=i_t, |
| i_k=i_k, |
| i_v=i_v, |
| q=q, |
| k=k, |
| v=v, |
| g=g, |
| do=do, |
| dk=dk, |
| dv=dv, |
| dg=dg, |
| scale=scale, |
| stride_qk=stride_qk, |
| stride_vo=stride_vo, |
| stride_g=stride_g, |
| T=T, |
| K=K, |
| V=V, |
| BT=BT, |
| BS=BS, |
| BK=BK, |
| BV=BV, |
| USE_G=USE_G |
| ) |
|
|
|
|
| def parallel_simple_gla_fwd( |
| q: torch.Tensor, |
| k: torch.Tensor, |
| v: torch.Tensor, |
| g: torch.Tensor, |
| scale: float, |
| output_attentions: bool = False, |
| chunk_size: int = 128, |
| head_first: bool = True, |
| offsets: Optional[torch.LongTensor] = None, |
| indices: Optional[torch.LongTensor] = None, |
| ): |
| if head_first: |
| B, H, T, K, V = *k.shape, v.shape[-1] |
| else: |
| B, T, H, K, V = *k.shape, v.shape[-1] |
| BT, BS = chunk_size, 32 |
| if check_shared_mem('hopper', k.device.index): |
| BK = min(256, triton.next_power_of_2(K)) |
| BV = min(256, triton.next_power_of_2(V)) |
| elif check_shared_mem('ampere', k.device.index): |
| BK = min(128, triton.next_power_of_2(K)) |
| BV = min(128, triton.next_power_of_2(V)) |
| else: |
| BK = min(64, triton.next_power_of_2(K)) |
| BV = min(64, triton.next_power_of_2(V)) |
|
|
| NK = triton.cdiv(K, BK) |
| NV = triton.cdiv(V, BV) |
| assert BT % BS == 0 |
|
|
| NT = triton.cdiv(T, BT) if offsets is None else len(indices) |
|
|
| |
| if g is not None: |
| g = chunk_local_cumsum(g, chunk_size, offsets=offsets, indices=indices, head_first=head_first) |
| grid = (NK * NV, NT, B * H) |
| o = torch.empty(NK, *v.shape, dtype=v.dtype if NK == 1 else torch.float, device=q.device) |
| attn = q.new_zeros(NK, B, H, T, T) if output_attentions else None |
|
|
| parallel_simple_gla_fwd_kernel[grid]( |
| q=q, |
| k=k, |
| v=v, |
| g=g, |
| o=o, |
| attn=attn, |
| scale=scale, |
| offsets=offsets, |
| indices=indices, |
| B=B, |
| H=H, |
| T=T, |
| K=K, |
| V=V, |
| BT=BT, |
| BS=BS, |
| BK=BK, |
| BV=BV, |
| HEAD_FIRST=head_first, |
| ) |
| o = o.sum(0) |
|
|
| if output_attentions: |
| attn = attn.sum(0) |
| return o, g, attn |
|
|
|
|
| def parallel_simple_gla_bwd( |
| q: torch.Tensor, |
| k: torch.Tensor, |
| v: torch.Tensor, |
| g: torch.Tensor, |
| do: torch.Tensor, |
| scale: float, |
| chunk_size: int = 128, |
| head_first: bool = True, |
| offsets: Optional[torch.LongTensor] = None, |
| indices: Optional[torch.LongTensor] = None, |
| ): |
| if head_first: |
| B, H, T, K, V = *k.shape, v.shape[-1] |
| else: |
| B, T, H, K, V = *k.shape, v.shape[-1] |
| BT, BS = chunk_size, 32 |
| if check_shared_mem('hopper', k.device.index): |
| BK = min(256, triton.next_power_of_2(K)) |
| BV = min(256, triton.next_power_of_2(V)) |
| elif check_shared_mem('ampere', k.device.index): |
| BK = min(128, triton.next_power_of_2(K)) |
| BV = min(128, triton.next_power_of_2(V)) |
| elif check_shared_mem('ada', k.device.index): |
| BK = min(64, triton.next_power_of_2(K)) |
| BV = min(64, triton.next_power_of_2(V)) |
| else: |
| BK = min(32, triton.next_power_of_2(K)) |
| BV = min(32, triton.next_power_of_2(V)) |
|
|
| NK = triton.cdiv(K, BK) |
| NV = triton.cdiv(V, BV) |
| assert BT % BS == 0 |
|
|
| dq = torch.empty(NV, * q.shape, dtype=q.dtype if NV == 1 else torch.float, device=q.device) |
| dk = torch.empty(NV, * k.shape, dtype=k.dtype if NV == 1 else torch.float, device=q.device) |
| dv = torch.empty(NK, * v.shape, dtype=v.dtype if NK == 1 else torch.float, device=q.device) |
| dg = torch.empty(NK*NV, *g.shape, dtype=torch.float, device=q.device) if g is not None else None |
|
|
| NT = triton.cdiv(T, BT) if offsets is None else len(indices) |
|
|
| grid = (NK * NV, NT, B * H) |
| parallel_simple_gla_bwd_kernel[grid]( |
| q=q, |
| k=k, |
| v=v, |
| g=g, |
| do=do, |
| dq=dq, |
| dk=dk, |
| dv=dv, |
| dg=dg, |
| offsets=offsets, |
| indices=indices, |
| scale=scale, |
| T=T, |
| B=B, |
| H=H, |
| K=K, |
| V=V, |
| BT=BT, |
| BS=BS, |
| BK=BK, |
| BV=BV, |
| HEAD_FIRST=head_first |
| ) |
| dq = dq.sum(0) |
| dk = dk.sum(0) |
| dv = dv.sum(0) |
| dg = chunk_global_cumsum(dg.sum(0), reverse=True, head_first=head_first, offsets=offsets) if g is not None else None |
| return dq, dk, dv, dg |
|
|
|
|
| class ParallelSimpleGLAFunction(torch.autograd.Function): |
|
|
| @staticmethod |
| @input_guard |
| @autocast_custom_fwd |
| def forward(ctx, q, k, v, g, scale, output_attentions, head_first, offsets): |
| chunk_size = 128 |
| ctx.dtype = q.dtype |
|
|
| |
| |
| |
| |
| indices = None |
| if offsets is not None: |
| indices = torch.cat([torch.arange(n) for n in triton.cdiv(offsets[1:] - offsets[:-1], chunk_size).tolist()]) |
| indices = torch.stack([indices.eq(0).cumsum(0) - 1, indices], 1).to(offsets) |
|
|
| o, g, attn = parallel_simple_gla_fwd( |
| q=q, |
| k=k, |
| v=v, |
| g=g, |
| scale=scale, |
| output_attentions=output_attentions, |
| head_first=head_first, |
| offsets=offsets, |
| indices=indices, |
| chunk_size=chunk_size) |
| ctx.save_for_backward(q, k, v, g, offsets, indices) |
| ctx.scale = scale |
| ctx.chunk_size = chunk_size |
| ctx.head_first = head_first |
| return o.to(q.dtype), attn |
|
|
| @staticmethod |
| @input_guard |
| @autocast_custom_bwd |
| def backward(ctx, do, da=None): |
| q, k, v, g, offsets, indices = ctx.saved_tensors |
| dq, dk, dv, dg = parallel_simple_gla_bwd( |
| q=q, |
| k=k, |
| v=v, |
| g=g, |
| do=do, |
| scale=ctx.scale, |
| chunk_size=ctx.chunk_size, |
| offsets=offsets, |
| indices=indices, |
| head_first=ctx.head_first) |
| return dq.to(q), dk.to(k), dv.to(v), dg.to(ctx.dtype) if dg is not None else None, None, None, None, None |
|
|
|
|
| def parallel_simple_gla( |
| q: torch.Tensor, |
| k: torch.Tensor, |
| v: torch.Tensor, |
| g: Optional[torch.Tensor] = None, |
| scale: Optional[float] = None, |
| output_attentions: bool = False, |
| cu_seqlens: Optional[torch.LongTensor] = None, |
| head_first: bool = True |
| ) -> Tuple[torch.Tensor, torch.Tensor]: |
| r""" |
| Args: |
| q (torch.Tensor): |
| queries of shape `[B, H, T, K]` if `head_first=True` else `[B, T, H, K]` |
| k (torch.Tensor): |
| keys of shape `[B, H, T, K]` if `head_first=True` else `[B, T, H, K]` |
| v (torch.Tensor): |
| values of shape `[B, H, T, V]` if `head_first=True` else `[B, T, H, V]` |
| g (torch.Tensor): |
| Forget gates of shape `[B, H, T]` if `head_first=True` else `[B, T, H]`. |
| Compared to GLA, the gating is head-wise instead of elementwise. |
| scale (Optional[int]): |
| Scale factor for attention scores. |
| If not provided, it will default to `1 / sqrt(K)`. Default: `None`. |
| output_attentions (bool): |
| Whether to output the materialized attention scores of shape [B, H, T, T]. Default: `False`. |
| head_first (Optional[bool]): |
| Whether the inputs are in the head-first format. Default: `True`. |
| cu_seqlens (torch.LongTensor): |
| Cumulative sequence lengths of shape `[N+1]` used for variable-length training, |
| consistent with the FlashAttention API. |
| |
| Returns: |
| o (torch.Tensor): |
| Outputs of shape `[B, H, T, V]` if `head_first=True` else `[B, T, H, V]`. |
| attn (torch.Tensor): |
| Attention scores of shape `[B, H, T, T]` if `output_attentions=True` else `None` |
| """ |
| if scale is None: |
| scale = k.shape[-1] ** -0.5 |
| if cu_seqlens is not None: |
| assert q.shape[0] == 1, "batch size must be 1 when cu_seqlens are provided" |
| assert not head_first, "head_first must be False when cu_seqlens are provided" |
| if g is not None: |
| g = g.float() |
| if output_attentions: |
| assert cu_seqlens is None, "output_attentions=True is not supported with variable-length sequences" |
| o, attn = ParallelSimpleGLAFunction.apply(q, k, v, g, scale, output_attentions, head_first, cu_seqlens) |
| return o, attn |
|
|