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chore: import upstream snapshot with attribution
2026-07-13 12:38:16 +08:00

217 lines
6.7 KiB
Python

"""
Adapted from
https://github.com/vllm-project/vllm/blob/020f58abcdea65302225663130d08fd8f4dd755a/vllm/model_executor/layers/quantization/utils/marlin_utils_test.py
"""
# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
"""Utility functions used for tests and benchmarks"""
from typing import Optional
import numpy as np
import torch
from sgl_kernel.scalar_type import ScalarType
from sglang.srt.layers.quantization.marlin_utils import (
GPTQ_MARLIN_TILE,
marlin_permute_scales,
marlin_zero_points,
)
from sglang.srt.layers.quantization.utils import (
get_pack_factor,
gptq_quantize_weights,
quantize_weights,
sort_weights,
)
class MarlinWorkspace:
def __init__(self, out_features, min_thread_n, max_parallel):
assert (
out_features % min_thread_n == 0
), "out_features = {} is undivisible by min_thread_n = {}".format(
out_features, min_thread_n
)
max_workspace_size = (out_features // min_thread_n) * max_parallel
self.scratch = torch.zeros(max_workspace_size, dtype=torch.int, device="cuda")
def marlin_permute_weights(q_w, size_k, size_n, perm, tile=GPTQ_MARLIN_TILE):
assert q_w.shape == (size_k, size_n)
assert size_k % tile == 0, f"size_k = {size_k}, tile = {tile}"
assert size_n % tile == 0, f"size_k = {size_n}, tile = {tile}"
# Permute weights to 16x64 marlin tiles
q_w = q_w.reshape((size_k // tile, tile, size_n // tile, tile))
q_w = q_w.permute((0, 2, 1, 3))
q_w = q_w.reshape((size_k // tile, size_n * tile))
q_w = q_w.reshape((-1, perm.numel()))[:, perm].reshape(q_w.shape)
return q_w
def marlin_weights(q_w, size_k, size_n, num_bits, perm):
# Permute
q_w = marlin_permute_weights(q_w, size_k, size_n, perm)
# Pack
pack_factor = get_pack_factor(num_bits)
orig_device = q_w.device
q_w = q_w.cpu().numpy().astype(np.uint32)
q_packed = np.zeros((q_w.shape[0], q_w.shape[1] // pack_factor), dtype=np.uint32)
for i in range(pack_factor):
q_packed |= q_w[:, i::pack_factor] << num_bits * i
q_packed = torch.from_numpy(q_packed.astype(np.int32)).to(orig_device)
return q_packed
def get_weight_perm(num_bits: int):
perm_list: list[int] = []
for i in range(32):
perm1: list[int] = []
col = i // 4
for block in [0, 1]:
for row in [
2 * (i % 4),
2 * (i % 4) + 1,
2 * (i % 4 + 4),
2 * (i % 4 + 4) + 1,
]:
perm1.append(16 * row + col + 8 * block)
for j in range(4):
perm_list.extend([p + 256 * j for p in perm1])
perm = np.array(perm_list)
if num_bits == 4:
interleave = np.array([0, 2, 4, 6, 1, 3, 5, 7])
elif num_bits == 8:
interleave = np.array([0, 2, 1, 3])
else:
raise Exception("num_bits must be 4 or 8, got {}".format(num_bits))
perm = perm.reshape((-1, len(interleave)))[:, interleave].ravel()
perm = torch.from_numpy(perm)
return perm
def marlin_quantize(
w: torch.Tensor,
quant_type: ScalarType,
group_size: int,
act_order: bool,
test_perm: Optional[torch.Tensor] = None,
):
size_k, size_n = w.shape
num_bits = quant_type.size_bits
# Normalize group_size
if group_size == -1:
group_size = size_k
assert group_size <= size_k
# Quantize (and apply act_order if provided)
w_ref, q_w, s, g_idx, rand_perm = gptq_quantize_weights(
w, quant_type, group_size, act_order, test_perm
)
# For act_order, sort the "weights" and "g_idx" so that group ids are
# increasing
sort_indices = torch.empty(0, dtype=torch.int, device=w.device)
if act_order:
q_w, g_idx, sort_indices = sort_weights(q_w, g_idx)
# Reformat to marlin
weight_perm = get_weight_perm(num_bits)
marlin_q_w = marlin_weights(q_w, size_k, size_n, num_bits, weight_perm)
marlin_s = marlin_permute_scales(s, size_k, size_n, group_size)
# Create result
res_list = [w_ref, marlin_q_w, marlin_s, g_idx, sort_indices, rand_perm]
for i in range(len(res_list)):
res_list[i] = res_list[i].to(w.device)
return res_list
def awq_marlin_quantize(w: torch.Tensor, quant_type: ScalarType, group_size: int):
size_k, size_n = w.shape
# Normalize group_size
if group_size == -1:
group_size = size_k
assert group_size <= size_k
# Detect num groups
assert size_k % group_size == 0
num_groups = size_k // group_size
# Quantize with zp
w_ref, q_w, s, zp = quantize_weights(w, quant_type, group_size, zero_points=True)
# Reformat to marlin
weight_perm = get_weight_perm(quant_type.size_bits)
marlin_q_w = marlin_weights(q_w, size_k, size_n, quant_type.size_bits, weight_perm)
marlin_s = marlin_permute_scales(s, size_k, size_n, group_size)
marlin_zp = marlin_zero_points(zp, num_groups, size_n, quant_type.size_bits)
# Create result
res_list = [w_ref, marlin_q_w, marlin_s, marlin_zp]
for i in range(len(res_list)):
res_list[i] = res_list[i].to(w.device)
return res_list
def make_nvfp4_weight_and_ref(
size_n: int,
size_k: int,
dtype: torch.dtype,
group_size: int = 16,
device: str = "cuda",
):
"""Build a random NVFP4-quantized weight and its FP dequantized reference.
Returns:
fp4_weight: (size_n, size_k // 2) uint8, two packed FP4 (E2M1) values per byte
scales: (size_n, size_k // group_size) FP8 E4M3 per-group scales
global_scale: scalar in `dtype`, the FP16/BF16 outer scale
weight_ref: (size_n, size_k) tensor in `dtype` = dequantized weight
"""
fp4_weight = torch.randint(
0, 256, (size_n, size_k // 2), dtype=torch.uint8, device=device
)
scale_source = torch.randn((size_n, size_k), dtype=dtype, device=device)
# /6 = FP4 (E2M1) max; /448 = FP8 (E4M3) max — sets each level to its dtype's full range.
scales = scale_source.view(size_n, -1, group_size).abs().max(-1)[0] / 6
global_scale = scales.max() / 448
scales = (scales / global_scale).to(torch.float8_e4m3fn)
def _unpack(byte_view: torch.Tensor) -> torch.Tensor:
# Convert 4-bit E2M1 nibble (in upper bits of a uint8) to FP8 E4M3 bit pattern.
unpacked = (byte_view & 0b10000000) | ((byte_view & 0b01110000) >> 2)
return unpacked.view(torch.float8_e4m3fn).to(dtype) * (2**6)
part_low = _unpack(fp4_weight)
part_high = _unpack(fp4_weight << 4)
weight_ref = torch.cat([part_high.unsqueeze(2), part_low.unsqueeze(2)], 2).view(
size_n, size_k
)
weight_ref = (
weight_ref
* global_scale.to(dtype)
* scales.repeat_interleave(group_size, 1).to(dtype)
)
return fp4_weight, scales, global_scale, weight_ref