* Merge with private repo * Add Mega MoE Benchmark * Minor fix * Update --------- Co-authored-by: Chenggang Zhao <chenggangz@deepseek.com>
398 lines
21 KiB
Python
398 lines
21 KiB
Python
import dataclasses
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import random
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import torch
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from typing import Tuple, List
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import deep_gemm
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from deep_gemm.testing import (
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bench_kineto,
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calc_diff, count_bytes,
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ignore_env, get_arch_major,
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test_filter
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)
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from deep_gemm.utils import ceil_div, per_custom_dims_cast_to_fp8, per_token_cast_to_fp4, cast_back_from_fp4
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from generators import get_arch_major, generate_normal, get_ue8m0_usage, get_kernel_types, reset_seed, MajorTypeAB
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def apply_skip_head_mid(d: torch.Tensor, head_splits: Tuple[int, int, int]):
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left, mid, right = head_splits
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m, n = d.shape
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assert n % (left + right) == 0
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num_heads = n // (left + right)
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# Split and insert padding tensor
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d = d.view(m, num_heads, -1)
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d_left = d[:, :, :left]
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d_right = d[:, :, -right:]
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d_mid = torch.zeros((m, num_heads, mid), dtype=d.dtype, device=d.device)
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return torch.cat([d_left, d_mid, d_right], dim=2).view(m, -1)
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def test_gemm_skip_head_mid() -> None:
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print('Testing GEMM skip head mid:')
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head_splits = (128, 64, 128)
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major_a, major_b = MajorTypeAB.KMajor, MajorTypeAB.KMajor
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out_dtype, accumulate = torch.bfloat16, False
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for kernel_type in get_kernel_types(dtype=torch.float8_e4m3fn):
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for m in (128, 4096):
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for n, k in [(32768, 512), (8192, 512)]:
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kernel_opt = f'1D1D' if kernel_type.is_1d1d() else '1D2D'
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use_ue8m0 = get_ue8m0_usage(kernel_type)
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disable_ue8m0_cast = not use_ue8m0
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a, b, _, d, ref_d = generate_normal(m, n, k, major_a, major_b, accumulate, out_dtype, kernel_type, use_ue8m0=use_ue8m0)
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d = apply_skip_head_mid(d, head_splits)
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ref_d = apply_skip_head_mid(ref_d, head_splits)
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deep_gemm.fp8_gemm_nt_skip_head_mid(a, b, d, head_splits, disable_ue8m0_cast=disable_ue8m0_cast)
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diff = calc_diff(d, ref_d)
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assert diff < 0.001, f'{m=}, {n=}, {k=}, {kernel_opt}, {diff:.5f}'
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t = bench_kineto(lambda: deep_gemm.fp8_gemm_nt_skip_head_mid(a, b, d, head_splits, disable_ue8m0_cast=disable_ue8m0_cast),
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'gemm_', suppress_kineto_output=True)
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print(f' > Perf (m={m:5}, n={n:5}, k={k:5}, {kernel_opt}): '
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f'{t * 1e6:4.0f} us | '
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f'{2 * m * n * k / t / 1e12:4.0f} TFLOPS | '
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f'{(count_bytes(a, b, d)) / 1e9 / t:4.0f} GB/s')
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print()
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def ref_fp8_mqa_logits(q: torch.Tensor, kv: torch.Tensor, weights: torch.Tensor,
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cu_seqlen_ks: torch.Tensor, cu_seqlen_ke: torch.Tensor, cost_only: bool = False):
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seq_len_kv = kv.shape[0]
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if cost_only:
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start = cu_seqlen_ks.clamp(min=0, max=seq_len_kv)
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end = cu_seqlen_ke.clamp(min=0, max=seq_len_kv)
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count_ones_per_row = (end - start).clamp(min=0)
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return count_ones_per_row.sum()
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k = kv
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q = q.float()
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k = k.float()
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mask_lo = torch.arange(0, seq_len_kv, device='cuda')[None, :] >= cu_seqlen_ks[:, None]
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mask_hi = torch.arange(0, seq_len_kv, device='cuda')[None, :] < cu_seqlen_ke[:, None]
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mask = mask_lo & mask_hi
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score = torch.einsum('mhd,nd->hmn', q, k)
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logits = (score.relu() * weights.unsqueeze(-1).transpose(0, 1)).sum(dim=0)
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logits = logits.masked_fill(~mask, float('-inf'))
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cost = mask.sum()
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return logits, cost
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def test_mqa_logits():
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# Helper functions
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def generate_ks_ke_tests(seq_len: int, seq_len_kv: int, disable_cp: bool):
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if disable_cp:
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ks = torch.zeros(seq_len, dtype=torch.int, device='cuda')
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ke = torch.arange(seq_len, dtype=torch.int, device='cuda') + (seq_len_kv - seq_len)
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return ks, ke
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assert seq_len_kv % seq_len == 0 and seq_len % 2 == 0
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chunk_size = seq_len // 2
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cp_size = seq_len_kv // seq_len
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# Select an arbitrary CP rank
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cp_id = cp_size // 3
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ks = torch.zeros(seq_len, dtype=torch.int, device='cuda')
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ke = torch.zeros(seq_len, dtype=torch.int, device='cuda')
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for i in range(chunk_size):
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ke[i] = cp_id * chunk_size + i
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ke[i + chunk_size] = (cp_size * 2 - 1 - cp_id) * chunk_size + i
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return ks, ke
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def enumerate_mqa_logits():
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for is_fp4 in ((True, False) if get_arch_major() == 10 else (False, )):
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for logits_dtype in (torch.float, torch.bfloat16):
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for compressed_logits, clean_logits in [(False, True), (True, False)]:
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for seq_len in (2048, 4096):
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for seq_len_kv in (4096, 8192):
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for num_heads, head_dim in [(64, 128)]:
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for disable_cp in (False, True):
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yield is_fp4, logits_dtype, compressed_logits, clean_logits, seq_len, seq_len_kv, num_heads, head_dim, disable_cp
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print('Testing FP8 MQA Logits:')
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for is_fp4, logits_dtype, compressed_logits, clean_logits, seq_len, seq_len_kv, num_heads, head_dim, disable_cp in enumerate_mqa_logits():
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# Generate random inputs
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q = torch.randn(seq_len, num_heads, head_dim, device='cuda', dtype=torch.bfloat16)
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kv = torch.randn(seq_len_kv, head_dim, device='cuda', dtype=torch.bfloat16)
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weights = torch.randn(seq_len, num_heads, device='cuda', dtype=torch.float32)
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ks, ke = generate_ks_ke_tests(seq_len, seq_len_kv, disable_cp)
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# Calculate reference logits
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ref_logits, ref_cost = ref_fp8_mqa_logits(q, kv, weights, ks, ke)
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# Quantize Q and KV to FP4 / FP8
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if is_fp4:
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q_fp4 = per_token_cast_to_fp4(q.view(-1, head_dim), use_ue8m0=True, gran_k=32, use_packed_ue8m0=True)
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q_in = (q_fp4[0].view(seq_len, num_heads, head_dim // 2), q_fp4[1].view(seq_len, num_heads))
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q_simulated = cast_back_from_fp4(q_fp4[0], q_fp4[1], gran_k=32, use_packed_ue8m0=True).view(seq_len, num_heads, head_dim).to(torch.bfloat16)
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kv_fp4 = per_token_cast_to_fp4(kv.view(-1, head_dim), use_ue8m0=True, gran_k=32, use_packed_ue8m0=True)
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kv_in = (kv_fp4[0].view(seq_len_kv, head_dim // 2), kv_fp4[1].view(seq_len_kv))
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kv_simulated = cast_back_from_fp4(kv_fp4[0], kv_fp4[1], gran_k=32, use_packed_ue8m0=True).view(seq_len_kv, head_dim).to(torch.bfloat16)
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else:
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q_in = q.to(torch.float8_e4m3fn), None
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q_simulated = q_in[0].to(torch.bfloat16)
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kv_in = per_custom_dims_cast_to_fp8(kv, (0, ), False)
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kv_simulated = (kv_in[0].float() * kv_in[1].unsqueeze(1)).to(torch.bfloat16)
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# Calculate reference logits
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simulated_logits, _ = ref_fp8_mqa_logits(q_simulated, kv_simulated, weights, ks, ke)
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# Prepare kwargs
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kernel_kwargs = dict(
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q=q_in, kv=kv_in, weights=weights,
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cu_seq_len_k_start=ks, cu_seq_len_k_end=ke,
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clean_logits=clean_logits, max_seqlen_k=0,
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logits_dtype=logits_dtype
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)
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if compressed_logits:
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max_seqlen_k = (ke - ks).max().item()
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kernel_kwargs['max_seqlen_k'] = max_seqlen_k
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# Run kernel
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logits = deep_gemm.fp8_fp4_mqa_logits(**kernel_kwargs)
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# Post process for compressed logits
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if compressed_logits:
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assert logits.size() == (seq_len, max_seqlen_k)
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tmp = torch.full((seq_len, seq_len_kv), float('-inf'), device='cuda')
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for i in range(seq_len):
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tmp[i, ks[i] : ke[i]] = logits[i, : ke[i] - ks[i]]
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logits = tmp
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# Validation
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ref_neginf_mask = (ref_logits == float('-inf'))
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neginf_mask = (logits == float('-inf'))
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assert torch.equal(neginf_mask, ref_neginf_mask)
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ref_logits = ref_logits.masked_fill(ref_neginf_mask, 0)
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simulated_logits = simulated_logits.masked_fill(ref_neginf_mask, 0)
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logits = logits.masked_fill(ref_neginf_mask, 0)
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diff = calc_diff(logits, ref_logits)
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simulated_diff = calc_diff(logits, simulated_logits)
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assert diff < 0.02 if is_fp4 else 1e-3, f"Diff: {diff}"
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assert simulated_diff < 5e-6, f"Simulated Diff: {simulated_diff}"
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# Profiling
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tflops = 2 * ref_cost * num_heads * head_dim / 1e12
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t, clean_t = bench_kineto(lambda: deep_gemm.fp8_fp4_mqa_logits(**kernel_kwargs), ('mqa_logits', 'clean_logits'))
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clean_bytes = (seq_len * seq_len_kv - ref_cost) * 4 + count_bytes(ks, ke)
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print(f' > FP4={is_fp4}, BF16={logits_dtype == torch.bfloat16}, S={seq_len:4}, SKV={seq_len_kv:6}, H={num_heads:3}, D={head_dim:3}, CP={0 if disable_cp else 1}: '
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f'{tflops / t:4.0f} TFLOPS, {t * 1e6:4.0f} us, '
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f'{(count_bytes(q_in, kv_in, weights, ks, ke) + ref_cost * 4) / t / 1e9:4.0f} GB/s', end='')
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print(f' | clean: {clean_t * 1e6:3.0f} us, {clean_bytes / clean_t / 1e9:4.0f} GB/s' if clean_logits else '')
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print()
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def ref_paged_mqa_logits(q: torch.Tensor, kv_cache: torch.Tensor,
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weights: torch.Tensor, context_lens: torch.Tensor, block_tables: torch.Tensor,
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max_model_len: int, use_2d_context_lens: bool):
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batch_size, next_n, num_heads, dim = q.size()
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num_block, block_size, _, dim = kv_cache.size()
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logits = torch.full([batch_size * next_n, max_model_len], float('-inf'), device=q.device, dtype=torch.float32)
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context_lens = context_lens.tolist()
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for i in range(batch_size):
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context_len = context_lens[i]
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q_offsets = torch.full((next_n, ), context_len, device='cuda', dtype=torch.int32) if use_2d_context_lens \
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else torch.arange(context_len - next_n, context_len, device='cuda')
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weight_slice = weights[i * next_n:(i + 1) * next_n, :].transpose(0, 1).contiguous()
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num_blocks = (context_len + block_size - 1) // block_size
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block_idxs = block_tables[i][:num_blocks]
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kv_slice = kv_cache[block_idxs] # [num_blocks, block_size, kv_heads, dim]
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kx = kv_slice.permute(2, 3, 0, 1).reshape(kv_slice.size(2), dim, -1) # [kv_heads, dim, total_tokens]
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qx = q[i].transpose(0, 1) # q[i]: [next_n, num_heads, dim] -> [num_heads, next_n, dim]
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s = torch.matmul(qx, kx).to(logits.dtype) # [num_heads, next_n, dim] @ [1, dim, total_tokens] -> [num_heads, next_n, total_tokens]
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total_len = num_blocks * block_size
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k_offsets = torch.arange(0, total_len, device=q.device)
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mask = (k_offsets[None, :] < context_len) & (k_offsets[None, :] <= q_offsets[:, None])
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s = torch.where(mask[None, :, :], s, float('-inf')) # mask shape: [1, next_n, total_tokens]
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s = torch.relu(s) * weight_slice[..., None] # weight_slice: [num_heads, next_n] -> [num_heads, next_n, 1]
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s = s.sum(dim=0) # [next_n, total_tokens]
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logits[i * next_n:(i + 1) * next_n, :total_len] = torch.where(k_offsets[None, :] <= q_offsets[:, None], s, float('-inf'))
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return logits
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def test_paged_mqa_logits():
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# Helper functions
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def kv_cache_cast_to_fp8(x: torch.Tensor) -> Tuple[torch.Tensor, torch.Tensor]:
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num_blocks, block_size, num_heads, head_dim = x.shape
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assert num_heads == 1
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x_amax = x.abs().float().amax(dim=3, keepdim=True).clamp(1e-4)
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sf = x_amax / 448.0
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x_scaled = (x * (1.0 / sf)).to(torch.float8_e4m3fn)
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x_cast_back = x_scaled.float() * sf
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x_fp8 = torch.empty((num_blocks, block_size * (head_dim + 4)), device=x.device, dtype=torch.uint8)
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x_fp8[ :, : block_size * head_dim] = x_scaled.view(num_blocks, block_size * head_dim).view(torch.uint8)
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x_fp8[ :, block_size * head_dim :] = sf.view(num_blocks, block_size).view(torch.uint8)
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return x_fp8.view(num_blocks, block_size, num_heads, head_dim + 4), x_cast_back.to(x.dtype)
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def kv_cache_cast_to_fp4(x: torch.Tensor) -> torch.Tensor:
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num_blocks, block_size, num_heads, head_dim = x.shape
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assert num_heads == 1 and head_dim == 128
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x_scaled, sf = per_token_cast_to_fp4(x.view(-1, head_dim), use_ue8m0=True, gran_k=32, use_packed_ue8m0=True)
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x_cast_back = cast_back_from_fp4(x_scaled, sf, gran_k=32, use_packed_ue8m0=True).view(num_blocks, block_size, 1, head_dim)
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x_fp4 = torch.empty((num_blocks, block_size * (head_dim // 2 + 4)), device=x.device, dtype=torch.uint8)
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x_fp4[ :, : block_size * head_dim // 2] = x_scaled.view(num_blocks, block_size * head_dim // 2).view(torch.uint8)
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x_fp4[ :, block_size * head_dim // 2 :] = sf.view(num_blocks, block_size).view(torch.uint8)
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return x_fp4.view(num_blocks, block_size, num_heads, head_dim // 2 + 4), x_cast_back.to(x.dtype)
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def enumerate_paged_mqa_logits():
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arch_major = get_arch_major()
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for is_varlen in ((True, False) if arch_major == 10 else (False, )):
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for is_fp4 in ((True, False) if arch_major == 10 else (False, )):
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for logits_dtype in (torch.float, torch.bfloat16):
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for block_kv in ((32, 64) if arch_major == 10 else (64, )):
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for use_2d_context_lens, clean_logits in [(True, False)]:
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for batch_size in (256, ):
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for next_n in ((1, ) if is_varlen else ((1, 2, 4, 5, 6) if arch_major == 10 else (1, 2))):
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for max_tokens_per_batch in ((1, 4, 10) if is_varlen else (1, )):
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for num_heads, head_dim in [(64, 128)]:
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for avg_kv in (8192, 32768):
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yield is_varlen, is_fp4, logits_dtype, block_kv, use_2d_context_lens, clean_logits, batch_size, next_n, max_tokens_per_batch, num_heads, head_dim, avg_kv
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print('Testing FP8/FP4 Paged MQA Logits:')
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max_model_len = 111 * 1024
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num_total_blocks = max_model_len * 5
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for is_varlen, is_fp4, logits_dtype, block_kv, use_2d_context_lens, clean_logits, batch_size, next_n, max_tokens_per_batch, num_heads, head_dim, avg_kv in enumerate_paged_mqa_logits():
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# Varlen: flatten raw_batch_size sequences with variable tokens into (batch_size, 1, ...)
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raw_batch_size, raw_next_n = batch_size, next_n
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if is_varlen:
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tokens_per_seq = torch.randint(1, max_tokens_per_batch + 1, (raw_batch_size,), device='cuda', dtype=torch.int)
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indices = torch.arange(raw_batch_size, device='cuda', dtype=torch.int).repeat_interleave(tokens_per_seq)
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batch_size, next_n = tokens_per_seq.sum().item(), 1
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else:
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tokens_per_seq, indices = None, None
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# Generate random inputs
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q = torch.randn((batch_size, next_n, num_heads, head_dim), device='cuda', dtype=torch.bfloat16)
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kv_cache = torch.randn((num_total_blocks, block_kv, 1, head_dim), device='cuda', dtype=torch.bfloat16)
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weights = torch.randn((batch_size * next_n, num_heads), device='cuda', dtype=torch.float)
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context_lens = torch.randint(int(0.7 * avg_kv), int(1.3 * avg_kv), (raw_batch_size,), device='cuda', dtype=torch.int)
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if is_varlen:
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max_ctx_len_per_seq = context_lens + (tokens_per_seq - 1)
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else:
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max_ctx_len_per_seq = context_lens
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# Assign block tables (per-sequence, sized by the largest ctx_len within the sequence)
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seq_sum_lens = context_lens.sum().item()
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num_blocks_per_query = ceil_div(max_ctx_len_per_seq, block_kv)
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block_table = torch.empty((raw_batch_size, num_blocks_per_query.max().item()), device='cuda', dtype=torch.int)
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block_idx_pool = torch.randperm(num_total_blocks, device='cuda', dtype=torch.int)
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offset = 0
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for i, num_blocks in enumerate(num_blocks_per_query.tolist()):
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block_table[i, :num_blocks] = block_idx_pool[offset : offset + num_blocks]
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offset += num_blocks
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if is_varlen:
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context_lens = context_lens.repeat_interleave(tokens_per_seq)
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offsets_within_seq = torch.cat([
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torch.arange(n.item(), device='cuda', dtype=torch.int)
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for n in tokens_per_seq
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])
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context_lens = context_lens + offsets_within_seq
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block_table = block_table.repeat_interleave(tokens_per_seq, dim=0)
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# Calculate reference logits
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ref_logits = ref_paged_mqa_logits(q, kv_cache, weights, context_lens, block_table, max_model_len, use_2d_context_lens)
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# Quantize Q and KV cache to FP4 / FP8
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if is_fp4:
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q_fp4 = per_token_cast_to_fp4(q.view(-1, head_dim), use_ue8m0=True, gran_k=32, use_packed_ue8m0=True)
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q_in = (q_fp4[0].view(batch_size, next_n, num_heads, head_dim // 2), q_fp4[1].view(batch_size, next_n, num_heads))
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q_simulated = cast_back_from_fp4(q_fp4[0], q_fp4[1], gran_k=32, use_packed_ue8m0=True).view(batch_size, next_n, num_heads, head_dim).to(torch.bfloat16)
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kv_in, kv_simulated = kv_cache_cast_to_fp4(kv_cache)
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else:
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q_in = q.to(torch.float8_e4m3fn), None
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q_simulated = q_in[0].to(torch.bfloat16)
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kv_in, kv_simulated = kv_cache_cast_to_fp8(kv_cache)
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# Calculate simulated reference logits
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simulated_logits = ref_paged_mqa_logits(q_simulated, kv_simulated, weights, context_lens, block_table, max_model_len, use_2d_context_lens)
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# Prepare masks and context lengths with NextN
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positions = torch.arange(max_model_len, device='cuda').unsqueeze(0).expand(batch_size * next_n, -1)
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if use_2d_context_lens:
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if is_varlen:
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# Varlen: context_lens is already per-token (shape [total_tokens]);
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# just reshape to (total_tokens, 1) so each token keeps its own ctx_len.
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context_lens_nextn = context_lens.view(-1, 1)
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else:
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context_lens_nextn = ((context_lens.unsqueeze(1) + 1) * torch.rand(batch_size, next_n, device='cuda')).int()
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# Ensure last token matches actual length
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context_lens_nextn[:, -1] = context_lens
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ref_neginf_mask = ~(positions < context_lens_nextn.view(-1, 1))
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else:
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context_lens_nextn = context_lens
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offsets = torch.arange(batch_size * next_n, device='cuda')
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limits = (context_lens[offsets // next_n] - next_n + offsets % next_n).unsqueeze(1)
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ref_neginf_mask = ~(positions <= limits)
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# Run Kernel
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kernel_kwargs = dict(
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q=q_in, kv_cache=kv_in, weights=weights,
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context_lens=context_lens_nextn, block_table=block_table,
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schedule_meta=deep_gemm.get_paged_mqa_logits_metadata(context_lens_nextn, block_kv, deep_gemm.get_num_sms(), indices=indices),
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max_context_len=max_model_len, clean_logits=clean_logits, logits_dtype=logits_dtype,
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indices=indices,
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)
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logits = deep_gemm.fp8_fp4_paged_mqa_logits(**kernel_kwargs)
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# Validation
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assert logits.dtype == logits_dtype
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logits = logits.to(torch.float)
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|
|
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if clean_logits:
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assert torch.equal(logits == float('-inf'), ref_neginf_mask), "Mask mismatch"
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|
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logits_masked = logits.masked_fill(ref_neginf_mask, 0)
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ref_masked = ref_logits.masked_fill(ref_neginf_mask, 0)
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simulated_masked = simulated_logits.masked_fill(ref_neginf_mask, 0)
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diff = calc_diff(logits_masked, ref_masked)
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simulated_diff = calc_diff(logits_masked, simulated_masked)
|
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assert diff < 0.02 if is_fp4 else 1e-3, f"Diff: {diff}"
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assert simulated_diff < 5e-6, f"Simulated Diff: {simulated_diff}"
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|
|
|
# Profiling
|
|
sum_lens = context_lens.sum().item()
|
|
tflops_calc = 2 * sum_lens * next_n * num_heads * head_dim / 1e12
|
|
kv_bytes_per_token = head_dim / (2 if is_fp4 else 1) + 4
|
|
# KV is read once per sequence; for varlen sum_lens overcounts (per-token), so use seq_sum_lens
|
|
kv_sum_lens = seq_sum_lens if is_varlen else sum_lens
|
|
total_bytes = count_bytes(q, weights) + kv_sum_lens * kv_bytes_per_token + (sum_lens * next_n * logits_dtype.itemsize)
|
|
|
|
t, clean_t = bench_kineto(lambda: deep_gemm.fp8_fp4_paged_mqa_logits(**kernel_kwargs), ('paged_mqa_logits', 'clean_logits'))
|
|
print(f' > FP4={is_fp4}, BF16={logits_dtype == torch.bfloat16}, BLOCK_KV={block_kv}, BSZ={raw_batch_size:3}, NextN={raw_next_n:1}, H={num_heads:2}, D={head_dim:2}, L={avg_kv:6}: '
|
|
f'{tflops_calc / t:4.0f} TFLOPS, {t * 1e6:3.0f} us, {total_bytes / t / 1e9:4.0f} GB/s', end='')
|
|
if is_varlen:
|
|
print(f' | Varlen, MaxTPB={max_tokens_per_batch}, NumTokens={batch_size}', end='')
|
|
print(f' | clean: {clean_t*1e6:3.0f} us' if clean_logits else '')
|
|
print()
|
|
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|
|
|
if __name__ == '__main__':
|
|
torch.manual_seed(0)
|
|
random.seed(0)
|
|
|
|
test_gemm_skip_head_mid()
|
|
test_mqa_logits()
|
|
test_paged_mqa_logits()
|