AutoGPTQ/auto_gptq/nn_modules/qlinear/qlinear_triton.py
2023-05-26 13:11:30 +08:00

181 lines
6.2 KiB
Python

import math
from logging import getLogger
import numpy as np
import torch
import torch.nn as nn
import transformers
from ..triton_utils.mixin import TritonModuleMixin
logger = getLogger(__name__)
try:
from ..triton_utils.kernels import (
quant_matmul_248, transpose_quant_matmul_248, quant_matmul_inference_only_248,
QuantLinearFunction, QuantLinearInferenceOnlyFunction
)
except ImportError:
logger.error('triton not installed.')
raise
class QuantLinear(nn.Module, TritonModuleMixin):
def __init__(
self,
bits,
group_size,
infeatures,
outfeatures,
bias,
trainable=False
):
super().__init__()
if bits not in [2, 4, 8]:
raise NotImplementedError("Only 2,4,8 bits are supported.")
if infeatures % 256 != 0 or outfeatures % 256 != 0:
raise NotImplementedError("in_feature or out_feature must be divisible by 256.")
self.infeatures = infeatures
self.outfeatures = outfeatures
self.bits = bits
self.group_size = group_size if group_size != -1 else infeatures
self.maxq = 2 ** self.bits - 1
self.register_buffer(
'qweight',
torch.zeros((infeatures // 32 * self.bits, outfeatures), dtype=torch.int32)
)
self.register_buffer(
'qzeros',
torch.zeros((math.ceil(infeatures / self.group_size), outfeatures // 32 * self.bits), dtype=torch.int32)
)
self.register_buffer(
'scales',
torch.zeros((math.ceil(infeatures / self.group_size), outfeatures), dtype=torch.float16)
)
self.register_buffer(
'g_idx',
torch.tensor([i // self.group_size for i in range(infeatures)], dtype=torch.int32)
)
if bias:
self.register_buffer('bias', torch.zeros((outfeatures), dtype=torch.float16))
else:
self.bias = None
self.trainable = trainable
def pack(self, linear, scales, zeros, g_idx=None):
W = linear.weight.data.clone()
if isinstance(linear, nn.Conv2d):
W = W.flatten(1)
if isinstance(linear, transformers.pytorch_utils.Conv1D):
W = W.t()
self.g_idx = g_idx.clone() if g_idx is not None else self.g_idx
scales = scales.t().contiguous()
zeros = zeros.t().contiguous()
scale_zeros = zeros * scales
self.scales = scales.clone().half()
if linear.bias is not None:
self.bias = linear.bias.clone().half()
intweight = []
for idx in range(self.infeatures):
intweight.append(
torch.round(
(
W[:, idx] + scale_zeros[self.g_idx[idx]]) / self.scales[self.g_idx[idx]]
).to(torch.int)[:, None]
)
intweight = torch.cat(intweight, dim=1)
intweight = intweight.t().contiguous()
intweight = intweight.numpy().astype(np.uint32)
i = 0
row = 0
qweight = np.zeros(
(intweight.shape[0] // 32 * self.bits, intweight.shape[1]), dtype=np.uint32
)
while row < qweight.shape[0]:
if self.bits in [2, 4, 8]:
for j in range(i, i + (32 // self.bits)):
qweight[row] |= intweight[j] << (self.bits * (j - i))
i += 32 // self.bits
row += 1
else:
raise NotImplementedError("Only 2,4,8 bits are supported.")
qweight = qweight.astype(np.int32)
self.qweight = torch.from_numpy(qweight)
zeros -= 1
zeros = zeros.numpy().astype(np.uint32)
qzeros = np.zeros((zeros.shape[0], zeros.shape[1] // 32 * self.bits), dtype=np.uint32)
i = 0
col = 0
while col < qzeros.shape[1]:
if self.bits in [2, 4, 8]:
for j in range(i, i + (32 // self.bits)):
qzeros[:, col] |= zeros[:, j] << (self.bits * (j - i))
i += 32 // self.bits
col += 1
else:
raise NotImplementedError("Only 2,4,8 bits are supported.")
qzeros = qzeros.astype(np.int32)
self.qzeros = torch.from_numpy(qzeros)
def forward(self, x):
out_shape = x.shape[:-1] + (self.outfeatures,)
quant_linear_fn = QuantLinearFunction if self.trainable else QuantLinearInferenceOnlyFunction
out = quant_linear_fn.apply(
x.reshape(-1, x.shape[-1]),
self.qweight,
self.scales,
self.qzeros,
self.g_idx,
self.bits,
self.maxq
)
out = out.half().reshape(out_shape)
out = out + self.bias if self.bias is not None else out
return out
@classmethod
def warmup(cls, model, transpose=False, seqlen=2048):
"""
Pre-tunes the quantized kernel
"""
from tqdm import tqdm
kn_values = {}
for _, m in model.named_modules():
if not isinstance(m, cls):
continue
k = m.infeatures
n = m.outfeatures
if (k, n) not in kn_values:
kn_values[(k, n)] = (m.qweight, m.scales, m.qzeros, m.g_idx, m.bits, m.maxq)
logger.info(f'Found {len(kn_values)} unique KN Linear values.')
logger.info('Warming up autotune cache ...')
with torch.no_grad():
for m in tqdm(range(0, math.ceil(math.log2(seqlen)) + 1)):
m = 2 ** m
for (k, n), (qweight, scales, qzeros, g_idx, bits, maxq) in kn_values.items():
if transpose:
a = torch.randn(m, k, dtype=torch.float16, device=model.device)
quant_matmul_248(a, qweight, scales, qzeros, g_idx, bits, maxq)
a = torch.randn(m, n, dtype=torch.float16, device=model.device)
transpose_quant_matmul_248(a, qweight, scales, qzeros, g_idx, bits, maxq)
else:
a = torch.randn(m, k, dtype=torch.float16, device=model.device)
quant_matmul_inference_only_248(a, qweight, scales, qzeros, g_idx, bits, maxq)
del kn_values
__all__ = ["QuantLinear"]