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# Copyright (c) 2024, NVIDIA CORPORATION. All rights reserved.
"""Example script for pruning a GPT / Mamba model using TensorRT Model Optimizer (ModelOpt).
Read more about ModelOpt pruning at https://github.com/NVIDIA/TensorRT-Model-Optimizer/tree/main/examples/pruning
"""
import functools
import os
import sys
import warnings
import torch
from datasets import load_dataset
from tqdm import tqdm
sys.path.append(os.path.abspath(os.path.join(os.path.dirname(__file__), "../../../")))
import modelopt.torch.opt as mto
import modelopt.torch.prune as mtp
from modelopt.torch.export import import_mcore_gpt_from_hf
from modelopt.torch.prune.plugins.mcore_minitron import SUPPORTED_HPARAMS
from megatron.core.parallel_state import get_pipeline_model_parallel_group, get_tensor_model_parallel_group
from megatron.post_training.arguments import add_modelopt_args
from megatron.post_training.checkpointing import load_modelopt_checkpoint
from megatron.post_training.generate import simple_generate
from megatron.post_training.model_builder import modelopt_gpt_mamba_builder
from megatron.post_training.utils import report_current_memory_info
from megatron.training import get_args, get_model, get_tokenizer, initialize_megatron
from megatron.training.checkpointing import save_checkpoint
from megatron.training.utils import print_rank_0, unwrap_model
from model_provider import model_provider
warnings.filterwarnings("ignore")
def add_prune_args(parser):
"""Add additional arguments for ModelOpt pruning."""
group = parser.add_argument_group(title="ModelOpt pruning")
group.add_argument(
"--calib-size",
type=int,
default=1024,
help="Samples to use for pruning calibration.",
)
group.add_argument(
"--prompts",
type=str,
default=("Hello!|Born in California, Soyer trained as a"),
help="Input texts. Please use | to separate different batches.",
)
group.add_argument(
"--references",
type=str,
default="",
help="Reference texts. Please use | to separate different batches.",
)
group.add_argument(
"--pretrained-model-path",
type=str,
default=None,
help="HuggingFace pretrained model",
)
# Pruning parameters
group.add_argument(
"--target-ffn-hidden-size",
type=int,
help="Prune MLP FFN hidden size to this value",
)
group.add_argument(
"--target-hidden-size",
type=int,
help="Prune hidden size (embedding dim) to this value",
)
group.add_argument(
"--target-num-attention-heads",
type=int,
help="Prune number of attention heads to this value. Must be supplied with --target-num-query-groups",
)
group.add_argument(
"--target-num-query-groups",
type=int,
help="Prune number of query groups to this value. Must be supplied with --target-num-attention-heads",
)
group.add_argument(
"--target-mamba-num-heads",
type=int,
help="Prune number of Mamba attention heads to this value",
)
group.add_argument(
"--target-mamba-head-dim",
type=int,
help="Prune dimension of Mamba attention heads to this value",
)
group.add_argument(
"--target-num-moe-experts",
type=int,
help="Prune number of MoE experts to this value",
)
group.add_argument(
"--target-moe-ffn-hidden-size",
type=int,
help="Prune MoE FFN hidden size to this value",
)
group.add_argument(
"--target-moe-shared-expert-intermediate-size",
type=int,
help="Prune MoE shared expert intermediate size to this value",
)
group.add_argument(
"--target-num-layers",
type=int,
help="Prune number of transformer layers to this value based on "
"Block Influence metric (cosine similarity) as per https://arxiv.org/abs/2403.03853",
)
group.add_argument(
"--layers-to-drop",
type=int,
metavar="N",
nargs="*",
help="Drop specific model layers (1-indexed). Cannot be used with rest of the pruning options",
)
group.add_argument(
"--pruning-scores-path",
type=str,
default=None,
help="Path to the cache and reuse pruning scores for pruning again to different params",
)
add_modelopt_args(parser)
return parser
def check_arguments(args):
"""Checking user arguments."""
if args.layers_to_drop:
if any(getattr(args, f"target_{k}", None) is not None for k in SUPPORTED_HPARAMS):
raise ValueError("--layers_to_drop cannot be used with other pruning parameters")
def get_calib_dataloader(calib_size=1024, max_sequence_length=512):
"""Return a dataloader for calibration."""
dataset = load_dataset("cnn_dailymail", name="3.0.0", split="train")
text_column = "article"
calib_size = min(len(dataset), calib_size)
for i in range(calib_size):
yield dataset[i][text_column][:max_sequence_length]
def get_params(model):
params = sum(p.numel() for p in model.parameters())
reduced_params = torch.Tensor([params]).to(device=next(model.parameters()).device)
torch.distributed.all_reduce(reduced_params, group=get_pipeline_model_parallel_group())
torch.distributed.all_reduce(reduced_params, group=get_tensor_model_parallel_group())
return reduced_params.item()
if __name__ == "__main__":
initialize_megatron(
extra_args_provider=add_prune_args,
args_defaults={
"tokenizer_type": "HuggingFaceTokenizer",
"no_load_rng": True,
"no_load_optim": True,
},
)
args = get_args()
check_arguments(args)
tokenizer = get_tokenizer()._tokenizer
model = get_model(functools.partial(model_provider, modelopt_gpt_mamba_builder), wrap_with_ddp=False)
unwrapped_model = unwrap_model(model)[0]
report_current_memory_info()
if args.load is not None:
load_modelopt_checkpoint(model, strict=not args.untie_embeddings_and_output_weights)
print_rank_0("Done loading checkpoint")
if args.pretrained_model_path is not None:
import_dtype = torch.float16 if args.fp16 else torch.bfloat16
workspace_dir = os.environ.get("MLM_WORK_DIR", "/tmp")
import_mcore_gpt_from_hf(
unwrapped_model,
args.pretrained_model_path,
workspace_dir,
dtype=import_dtype,
)
def _custom_prompt_forward_loop_func(model):
all_prompts = args.prompts.split("|")
if args.references == "":
all_references = [None] * len(all_prompts)
else:
all_references = args.references.split("|")
for idx, prompt in tqdm(enumerate(all_prompts), disable=torch.distributed.get_rank()):
tokens = tokenizer(prompt, return_tensors="pt")
generated_ids = simple_generate(model, tokens.input_ids.cuda(), osl=32)
generated_texts = tokenizer.batch_decode(generated_ids)
print_rank_0("{}".format(generated_texts))
if all_references[idx] is not None:
assert all_references[idx] == generated_texts[0], all_references[idx]
def _hf_dataset_forword_loop_func(model):
dataloader = get_calib_dataloader(args.calib_size)
for prompt in tqdm(dataloader, total=args.calib_size, disable=torch.distributed.get_rank()):
tokens = tokenizer(prompt, return_tensors="pt")
simple_generate(model, tokens.input_ids.cuda(), osl=1)
if args.layers_to_drop:
mtp.mcore_minitron.drop_mcore_language_model_layers(model, layers_to_drop=args.layers_to_drop)
else:
print_rank_0("Pruning model...")
export_config = {
k: getattr(args, f"target_{k}")
for k in SUPPORTED_HPARAMS
if getattr(args, f"target_{k}", None) is not None
}
config = {"forward_loop": _hf_dataset_forword_loop_func}
if args.pruning_scores_path is not None:
config["scores_path"] = args.pruning_scores_path
mtp.prune(
unwrapped_model,
mode="mcore_minitron",
constraints={"export_config": export_config},
dummy_input=None, # Not used
config=config,
)
# [WAR till modelopt 0.39]: Remove prune state to avoid converting again on restore which forces TP=1.
if mto.ModeloptStateManager.has_state_for_mode_type("prune", model=unwrapped_model):
mto.ModeloptStateManager.remove_state(unwrapped_model)
print_rank_0(f"Pruned Model:\n {unwrapped_model}")
print_rank_0(f"Pruned Model Params: {get_params(unwrapped_model)/1e9:.2f}B")
_custom_prompt_forward_loop_func(unwrapped_model)
if args.save is not None:
save_checkpoint(1, model, None, None, 0)
print_rank_0("Done")