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quantize.py
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quantize.py
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# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the BSD-style license found in the
# LICENSE file in the root directory of this source tree.
import os
import sys
import time
from pathlib import Path
from typing import Any, Dict
import torch
from omegaconf import DictConfig
from torch import nn
from torchtune import config, training, utils
logger = utils.get_logger("DEBUG")
class QuantizationRecipe:
"""
Recipe for quantizing a Transformer-based LLM.
Uses quantizer classes from torchao to quantize a model.
Supported quantization modes are:
8da4w (PyTorch 2.3+):
torchtune.training.quantization.Int8DynActInt4WeightQuantizer
int8 per token dynamic activation with int4 weight only per axis group quantization
Args:
`groupsize` (int): a parameter of int4 weight only quantization,
it refers to the size of quantization groups which get independent quantization parameters
e.g. 32, 64, 128, 256, smaller numbers means more fine grained and higher accuracy,
but also higher memory overhead
8da4w-qat (PyTorch 2.4+):
torchtune.training.quantization.Int8DynActInt4WeightQATQuantizer
int8 per token dynamic activation with int4 weight only per axis group quantization
Same as "8da4w", but for quantizing QAT checkpoints
Args:
`groupsize` (int): a parameter of int4 weight only quantization,
it refers to the size of quantization groups which get independent quantization parameters
e.g. 32, 64, 128, 256, smaller numbers means more fine grained and higher accuracy,
but also higher memory overhead
"""
def __init__(self, cfg: DictConfig) -> None:
self._device = utils.get_device(device=cfg.device)
self._dtype = training.get_dtype(dtype=cfg.dtype, device=self._device)
self._quantizer = config.instantiate(cfg.quantizer)
self._quantization_mode = training.get_quantizer_mode(self._quantizer)
training.set_seed(seed=cfg.seed)
def load_checkpoint(self, checkpointer_cfg: DictConfig) -> Dict[str, Any]:
self._checkpointer = config.instantiate(checkpointer_cfg)
checkpoint_dict = self._checkpointer.load_checkpoint()
return checkpoint_dict
def setup(self, cfg: DictConfig) -> None:
ckpt_dict = self.load_checkpoint(cfg.checkpointer)
self._model = self._setup_model(
model_cfg=cfg.model,
model_state_dict=ckpt_dict[training.MODEL_KEY],
)
def _setup_model(
self,
model_cfg: DictConfig,
model_state_dict: Dict[str, Any],
) -> nn.Module:
with training.set_default_dtype(self._dtype), self._device:
model = config.instantiate(model_cfg)
if "qat" in self._quantization_mode:
model = self._quantizer.prepare(model)
model.load_state_dict(model_state_dict)
# Validate model was loaded in with the expected dtype.
training.validate_expected_param_dtype(
model.named_parameters(), dtype=self._dtype
)
logger.info(f"Model is initialized with precision {self._dtype}.")
return model
@torch.no_grad()
def quantize(self, cfg: DictConfig):
t0 = time.perf_counter()
if "qat" in self._quantization_mode:
self._model = self._quantizer.convert(self._model)
else:
self._model = self._quantizer.quantize(self._model)
t = time.perf_counter() - t0
logger.info(f"Time for quantization: {t:.02f} sec")
logger.info(f"Memory used: {torch.cuda.max_memory_allocated() / 1e9:.02f} GB")
def save_checkpoint(self, cfg: DictConfig):
ckpt_dict = self._model.state_dict()
file_name = cfg.checkpointer.checkpoint_files[0].split(".")[0]
output_dir = Path(cfg.checkpointer.output_dir)
output_dir.mkdir(exist_ok=True)
checkpoint_file = Path.joinpath(
output_dir, f"{file_name}-{self._quantization_mode}".rstrip("-qat")
).with_suffix(".pt")
torch.save(ckpt_dict, checkpoint_file)
logger.info(
"Model checkpoint of size "
f"{os.path.getsize(checkpoint_file) / 1000**3:.2f} GB "
f"saved to {checkpoint_file}"
)
@config.parse
def main(cfg: DictConfig) -> None:
config.log_config(recipe_name="QuantizationRecipe", cfg=cfg)
recipe = QuantizationRecipe(cfg=cfg)
recipe.setup(cfg=cfg)
recipe.quantize(cfg=cfg)
recipe.save_checkpoint(cfg=cfg)
if __name__ == "__main__":
sys.exit(main())