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#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
The main entry point to run the PPO algorithm
"""
import datetime
import logging
import os
import time
import psutil
import torch
import torch.distributed
from codetiming import Timer
from omegaconf import DictConfig, OmegaConf
try:
from verl.workers.engine.mindspeed.transformer_impl import repatch
except ImportError:
repatch = None
from contextlib import nullcontext
from megatron.core import parallel_state as mpu
from verl import DataProto
from verl.models.mcore import get_mcore_weight_converter
from verl.single_controller.base import Worker
from verl.single_controller.base.decorator import Dispatch, make_nd_compute_dataproto_dispatch_fn, register
from verl.utils import hf_tokenizer
from verl.utils.checkpoint.megatron_checkpoint_manager import MegatronCheckpointManager
from verl.utils.config import omega_conf_to_dataclass
from verl.utils.device import (
get_device_id,
get_device_name,
get_nccl_backend,
get_torch_device,
set_expandable_segments,
)
from verl.utils.distributed import set_numa_affinity
from verl.utils.flops_counter import FlopsCounter
from verl.utils.fs import copy_to_local
from verl.utils.megatron.router_replay_patch import RouterReplay, RouterReplayAction, apply_router_replay_patch
from verl.utils.megatron_peft_utils import add_base_layer_suffix, build_peft_config_for_vllm
from verl.utils.megatron_utils import (
load_megatron_model_to_gpu,
load_megatron_optimizer,
offload_megatron_model_to_cpu,
offload_megatron_optimizer,
per_tensor_generator,
register_megatron_training_hooks,
)
from verl.utils.memory_utils import aggressive_empty_cache
from verl.utils.model import get_hf_model_path, load_mcore_dist_weights, load_megatron_gptmodel_weights
from verl.utils.profiler import (
DistProfiler,
DistProfilerExtension,
GPUMemoryLogger,
ProfilerConfig,
log_gpu_memory_usage,
simple_timer,
)
from verl.utils.profiler.performance import reduce_timing, topk_reduce_ratio_min_max
from verl.utils.ray_utils import get_event_loop
from verl.utils.torch_functional import use_original_torch_compile
from verl.workers.actor.megatron_actor import MegatronPPOActor
from verl.workers.config import HFModelConfig, McoreCriticConfig, RolloutConfig
from verl.workers.critic.megatron_critic import MegatronPPOCritic
from verl.workers.rollout import get_rollout_class
logger = logging.getLogger(__file__)
logger.setLevel(os.getenv("VERL_LOGGING_LEVEL", "WARN"))
def set_random_seed(seed, only_rollout=False):
import random
import numpy as np
import torch
torch.manual_seed(seed)
np.random.seed(seed)
random.seed(seed)
if not only_rollout and get_torch_device().device_count() > 0:
from megatron.core import tensor_parallel
tensor_parallel.model_parallel_cuda_manual_seed(seed)
# FIXME: torch cumsum not support deterministic (used in vllm sampler),
# https://github.com/pytorch/pytorch/issues/89492
# torch.use_deterministic_algorithms(True, warn_only=True)
# os.environ['CUBLAS_WORKSPACE_CONFIG'] = ':4096:8'
class MegatronWorker(Worker):
def _init_hf_config_and_tf_config(
self,
model_path,
tokenizer_or_path,
dtype,
override_model_config,
override_transformer_config,
trust_remote_code=False,
megatron_config=None,
enable_mtp=False,
):
from transformers import AutoConfig
from verl.models.mcore import hf_to_mcore_config
from verl.utils import hf_processor
from verl.utils.model import update_model_config
# Step 1: initialize the tokenizer
self.local_path = copy_to_local(model_path)
if tokenizer_or_path is None:
self.tokenizer = hf_tokenizer(self.local_path, trust_remote_code=trust_remote_code)
self.processor = hf_processor(self.local_path, trust_remote_code=trust_remote_code)
elif isinstance(tokenizer_or_path, str):
self.tokenizer = hf_tokenizer(copy_to_local(tokenizer_or_path), trust_remote_code=trust_remote_code)
self.processor = hf_processor(copy_to_local(tokenizer_or_path), trust_remote_code=trust_remote_code)
else:
self.tokenizer = tokenizer_or_path
self.processor = tokenizer_or_path
if self.config.model.get("custom_chat_template", None) is not None:
if self.processor is not None:
self.processor.chat_template = self.config.model.custom_chat_template
else:
self.tokenizer.chat_template = self.config.model.custom_chat_template
# Step 2: get the hf
hf_config = AutoConfig.from_pretrained(self.local_path, trust_remote_code=trust_remote_code)
# Step 3: override the hf config
override_config_kwargs = {
"bos_token_id": self.tokenizer.bos_token_id,
"eos_token_id": self.tokenizer.eos_token_id,
"pad_token_id": self.tokenizer.pad_token_id,
}
override_config_kwargs.update(override_model_config.get("model_config", {}))
self.share_embeddings_and_output_weights = getattr(hf_config, "tie_word_embeddings", False)
# only actor need enable mtp
if enable_mtp:
assert hf_config.num_nextn_predict_layers > 0, "MTP requires at least one nextn_predict_layer"
assert megatron_config.use_mbridge, "MTP requires use_mbridge to be True"
override_transformer_config["mtp_loss_scaling_factor"] = self.config.model.mtp.mtp_loss_scaling_factor
else:
if hasattr(hf_config, "num_nextn_predict_layers"):
hf_config.num_nextn_predict_layers = 0
self.enable_mtp = enable_mtp
update_model_config(hf_config, override_config_kwargs=override_config_kwargs)
self.architectures = getattr(hf_config, "architectures", None)
if self.rank == 0:
print(f"Model config after override: {hf_config}")
from verl.models.mcore.config_converter import mapping_string_to_attn_backend
# todo: remove this line after mcore adopt mbridge 0.15, now for compatibility
override_transformer_config = mapping_string_to_attn_backend(override_transformer_config)
fp16 = dtype == torch.float16
bf16 = dtype == torch.bfloat16
if fp16:
assert megatron_config.use_mbridge, "fp16 mode requires use_mbridge to be True"
self.provider = None
self.vanilla_bridge = megatron_config.get("vanilla_mbridge", True)
if megatron_config.use_mbridge:
if self.vanilla_bridge:
from verl.models.mcore.mbridge import AutoBridge
bridge = AutoBridge.from_config(hf_config, dtype=dtype)
bridge.set_extra_args(**override_transformer_config)
tf_config = bridge.config
tf_config.fp16 = fp16
tf_config.bf16 = bf16
else:
from verl.models.mcore.bridge import AutoBridge
# Use Megatron-Bridge to convert HF config to Megatron config
bridge = AutoBridge.from_hf_pretrained(self.local_path, trust_remote_code=trust_remote_code)
# Get Megatron provider and configure it
provider = bridge.to_megatron_provider(load_weights=False)
# In case of invalid overrides, we need to make sure some critical params are set correctly
provider.params_dtype = dtype
# Ensure dtype settings propagate to Megatron-Bridge/TE
provider.fp16 = fp16
provider.bf16 = bf16
# Pass distributed info
provider.tensor_model_parallel_size = megatron_config.tensor_model_parallel_size
provider.pipeline_model_parallel_size = megatron_config.pipeline_model_parallel_size
provider.expert_model_parallel_size = megatron_config.expert_model_parallel_size
provider.expert_tensor_parallel_size = megatron_config.expert_tensor_parallel_size
provider.virtual_pipeline_model_parallel_size = megatron_config.virtual_pipeline_model_parallel_size
provider.context_parallel_size = megatron_config.context_parallel_size
provider.sequence_parallel = megatron_config.sequence_parallel
# Match verl implementation (need variable_seq_lengths)
from megatron.core.transformer.enums import AttnBackend
provider.attention_backend = AttnBackend.flash
provider.variable_seq_lengths = True
provider.moe_token_dispatcher_type = "alltoall"
provider.moe_router_load_balancing_type = "none"
# Apply transformer config overrides
for key, value in override_transformer_config.items():
setattr(provider, key, value)
provider.finalize()
self.provider = provider
tf_config = None # Will be set after model creation
self.bridge = bridge
else:
tf_config = hf_to_mcore_config(hf_config, dtype, **override_transformer_config)
self.bridge = None
if torch.distributed.get_rank() == 0:
if tf_config is not None:
print(f"TF config: {tf_config}")
self.hf_config = hf_config
self.tf_config = tf_config
# Get PEFT config from model.lora if specified
from verl.workers.config.megatron_peft import get_peft_cls
self.peft_cls = get_peft_cls(
model_config=self.config.model, bridge=self.bridge, provider=self.provider, dtype=dtype
)
class ActorRolloutRefWorker(MegatronWorker, DistProfilerExtension):
"""
This worker can be instantiated as a standalone actor or a standalone rollout or a standalone reference policy
or a hybrid engine based on the config.rollout
"""
def __init__(self, config: DictConfig, role: str, **kwargs):
Worker.__init__(self)
self.config = config
if repatch is not None:
# NPU MindSpeed patch, will be refactored with MindSpeedEngine.
repatch(self.config.actor.megatron.get("override_transformer_config", {}))
self.role = role
assert self.role in ["actor", "rollout", "ref", "actor_rollout", "actor_rollout_ref"]
self._is_actor = self.role in ["actor", "actor_rollout", "actor_rollout_ref"]
self._is_rollout = self.role in ["rollout", "actor_rollout", "actor_rollout_ref"]
self._is_ref = self.role in ["ref", "actor_rollout_ref"]
# NOTE(sgm): We utilize colocate WorkerGroup by default.
# As a result, Workers for different model share the same process.
# Therefore, we only require one distribute initialization.
# To utilize different parallel strategy in different models:
# 1, users should disable WorkerDict; 2.assign different ResourcePool to different models,
# 3. and apply the following patch in ray==2.10, https://github.com/ray-project/ray/pull/44385
if not torch.distributed.is_initialized():
set_numa_affinity()
rank = int(os.environ["LOCAL_RANK"])
torch.distributed.init_process_group(
backend=f"cpu:gloo,{get_device_name()}:{get_nccl_backend()}",
timeout=datetime.timedelta(seconds=self.config.get("nccl_timeout", 600)),
init_method=os.environ.get("DIST_INIT_METHOD", None),
)
get_torch_device().set_device(rank)
if self._is_actor or self._is_ref:
mpu.initialize_model_parallel(
tensor_model_parallel_size=self.config.actor.megatron.tensor_model_parallel_size,
pipeline_model_parallel_size=self.config.actor.megatron.pipeline_model_parallel_size,
virtual_pipeline_model_parallel_size=self.config.actor.megatron.virtual_pipeline_model_parallel_size,
use_sharp=False,
context_parallel_size=self.config.actor.megatron.context_parallel_size,
expert_model_parallel_size=self.config.actor.megatron.expert_model_parallel_size,
expert_tensor_parallel_size=self.config.actor.megatron.expert_tensor_parallel_size,
nccl_communicator_config_path=None,
)
if self._is_actor or self._is_ref:
is_collect = (
mpu.get_tensor_model_parallel_rank() == 0
and mpu.get_pipeline_model_parallel_rank() == mpu.get_pipeline_model_parallel_world_size() - 1
and mpu.get_context_parallel_rank() == 0
)
self._register_dispatch_collect_info(
mesh_name="actor", dp_rank=mpu.get_data_parallel_rank(), is_collect=is_collect
)
only_rollout = self._is_rollout and not self._is_actor
self.enable_routing_replay = False
if self._is_actor:
self.router_replay = self.config.actor.router_replay
self.enable_routing_replay = self.router_replay.mode != "disabled"
if self.enable_routing_replay:
apply_router_replay_patch()
set_random_seed(seed=self.config.actor.megatron.seed, only_rollout=only_rollout)
if self._is_actor:
omega_profiler_config = config.actor.get("profiler", {})
elif self._is_rollout:
# NOTE: In colocation mode, rollout config may not take effect (follow the actor config)
# This is for extendability in AsyncRL cases
omega_profiler_config = config.rollout.get("profiler", {})
elif self._is_ref:
omega_profiler_config = config.ref.get("profiler", {})
else:
raise ValueError(
f"Invalid role {self.role}, should be one of "
"['actor', 'rollout', 'ref', 'actor_rollout', 'actor_rollout_ref']"
)
# omega_profiler_config is DictConfig
# profiler_config is a ProfilerConfig dataclass
profiler_config = omega_conf_to_dataclass(omega_profiler_config, dataclass_type=ProfilerConfig)
if omega_profiler_config.get("tool", None) in ["npu", "nsys", "torch", "torch_memory"]:
tool_config = omega_conf_to_dataclass(
omega_profiler_config.get("tool_config", {}).get(omega_profiler_config.get("tool"))
)
else:
tool_config = None
DistProfilerExtension.__init__(
self, DistProfiler(rank=self.rank, config=profiler_config, tool_config=tool_config)
)
# TODO(sgm): Currently, we only support reference model param offload
# will support other offload later
self._is_offload_param = False
self._is_offload_grad = False
self._is_offload_optimizer = False
# Initialize LoRA-related attributes (will be updated in _build_rollout if needed)
self.base_sync_done = False
self.peft_merge = False
# normalize config
if self._is_actor:
self.config.actor.ppo_mini_batch_size *= self.config.rollout.n
self.config.actor.ppo_mini_batch_size //= mpu.get_data_parallel_world_size()
if self.config.actor.get("ppo_micro_batch_size", None):
self.config.actor.ppo_micro_batch_size //= mpu.get_data_parallel_world_size()
self.config.rollout.log_prob_micro_batch_size //= mpu.get_data_parallel_world_size()
self.config.actor.ppo_micro_batch_size_per_gpu = self.config.actor.ppo_micro_batch_size
self.config.rollout.log_prob_micro_batch_size_per_gpu = self.config.rollout.log_prob_micro_batch_size
self._is_offload_param = self.config.actor.megatron.get("param_offload", False)
self._is_offload_grad = self.config.actor.megatron.get("grad_offload", False)
self._is_offload_optimizer = self.config.actor.megatron.get("optimizer_offload", False)
elif self._is_ref:
if self.config.ref.get("log_prob_micro_batch_size", None):
self.config.ref.log_prob_micro_batch_size //= mpu.get_data_parallel_world_size()
self.config.ref.log_prob_micro_batch_size_per_gpu = self.config.ref.log_prob_micro_batch_size
else:
assert self.config.ref.get("log_prob_micro_batch_size_per_gpu", None) is not None, (
"Please note that in the ref policy configuration, `log_prob_micro_batch_size_per_gpu` and "
"`log_prob_micro_batch_size` should not be None at the same time."
)
self._ref_is_offload_param = self.config.ref.megatron.get("param_offload", False)
def _build_model_optimizer(
self, model_path, optim_config, override_model_config, override_transformer_config, override_ddp_config=None
):
from verl.utils.megatron.optimizer import (
get_megatron_optimizer,
get_megatron_optimizer_param_scheduler,
init_megatron_optim_config,
)
from verl.utils.megatron_utils import McoreModuleWrapperConfig, make_megatron_module
from verl.utils.model import get_generation_config, print_model_size
self._init_hf_config_and_tf_config(
model_path,
self.config.model.get("tokenizer_path") or model_path,
self.dtype,
override_model_config,
override_transformer_config,
self.config.model.get("trust_remote_code", False),
self.config.actor.megatron if not self._is_ref else self.config.ref.megatron,
self.config.model.get("mtp", {}).get("enable", False),
)
self.generation_config = get_generation_config(
self.local_path,
self.config.model.get("trust_remote_code", False),
)
if self._is_actor or self._is_rollout:
wrap_config = McoreModuleWrapperConfig(
is_value_model=False, # actor is not value model
share_embeddings_and_output_weights=self.share_embeddings_and_output_weights,
wrap_with_ddp=True,
use_distributed_optimizer=self.config.actor.megatron.use_distributed_optimizer,
)
actor_module, updated_tf_config = make_megatron_module(
wrap_config=wrap_config,
tf_config=self.tf_config,
hf_config=self.hf_config,
bridge=self.bridge,
provider=self.provider,
override_model_config=override_model_config,
override_ddp_config=override_ddp_config,
peft_cls=self.peft_cls,
peft_config=self.config.model.get("lora", None),
)
self.tf_config = updated_tf_config
print(f"actor_module: {len(actor_module)}")
if self.config.actor.load_weight:
if self.config.actor.megatron.use_dist_checkpointing:
load_mcore_dist_weights(
actor_module,
self.config.actor.megatron.dist_checkpointing_path,
is_value_model=False,
prefix=self.config.actor.megatron.dist_checkpointing_prefix,
)
else:
if self.bridge is not None:
local_model_path = get_hf_model_path(self.config)
if self.vanilla_bridge:
self.bridge.load_weights(actor_module, local_model_path)
else:
self.bridge.load_hf_weights(actor_module, local_model_path)
else:
load_megatron_gptmodel_weights(
self.config, self.hf_config, actor_module, params_dtype=self.dtype, is_value_model=False
)
if self.rank == 0:
print_model_size(actor_module[0])
log_gpu_memory_usage("After MegatronPPOActor init", logger=logger)
elif self._is_ref:
wrap_config = McoreModuleWrapperConfig(
is_value_model=False, # ref is not value model
share_embeddings_and_output_weights=self.share_embeddings_and_output_weights,
wrap_with_ddp=False,
use_distributed_optimizer=self.config.ref.megatron.use_distributed_optimizer,
)
ref_module, updated_tf_config = make_megatron_module(
wrap_config=wrap_config,
tf_config=self.tf_config,
hf_config=self.hf_config,
bridge=self.bridge,
provider=self.provider,
override_model_config=override_model_config,
)
self.tf_config = updated_tf_config
if self.config.ref.load_weight: # should align with the actor:
assert self.config.actor.load_weight == self.config.ref.load_weight
print("load ref weight start")
if self.config.ref.megatron.use_dist_checkpointing:
load_mcore_dist_weights(
ref_module,
self.config.ref.megatron.dist_checkpointing_path,
is_value_model=False,
prefix=self.config.ref.megatron.dist_checkpointing_prefix,
)
else:
if self.bridge is not None:
local_model_path = get_hf_model_path(self.config)
if self.vanilla_bridge:
self.bridge.load_weights(ref_module, local_model_path)
else:
self.bridge.load_hf_weights(ref_module, local_model_path)
else:
load_megatron_gptmodel_weights(
self.config, self.hf_config, ref_module, params_dtype=self.dtype, is_value_model=False
)
log_gpu_memory_usage("After ref module init", logger=logger)
return ref_module, self.hf_config
# TODO: add more optimizer args into config
if self._is_actor:
optim_config_megatron = init_megatron_optim_config(
optim_config,
use_distributed_optimizer=wrap_config.use_distributed_optimizer,
fp16=self.dtype == torch.float16,
)
actor_optimizer = get_megatron_optimizer(model=actor_module, config=optim_config_megatron)
actor_optimizer_scheduler = get_megatron_optimizer_param_scheduler(
optimizer=actor_optimizer, config=optim_config
)
else:
optim_config = None
actor_optimizer = None
actor_optimizer_scheduler = None
log_gpu_memory_usage("After actor optimizer init", logger=logger)
register_megatron_training_hooks(actor_module, actor_optimizer)
return actor_module, actor_optimizer, actor_optimizer_scheduler, self.hf_config, optim_config
def _build_rollout(self, trust_remote_code=False):
from torch.distributed.device_mesh import init_device_mesh
# 1. parse rollout and huggingface model config
rollout_config: RolloutConfig = omega_conf_to_dataclass(self.config.rollout)
model_config: HFModelConfig = omega_conf_to_dataclass(self.config.model)
# 2. build rollout device mesh
infer_tp = self.config.rollout.tensor_model_parallel_size * self.config.rollout.data_parallel_size
infer_pp = self.config.rollout.pipeline_model_parallel_size
infer_world_size = infer_tp * infer_pp
dp = self.world_size // infer_world_size
assert self.world_size % infer_world_size == 0, (
f"rollout world_size: {self.world_size} is not divisible by infer_world_size: {infer_world_size}"
)
rollout_device_mesh = init_device_mesh(
get_device_name(), mesh_shape=(dp, infer_tp, infer_pp), mesh_dim_names=["dp", "infer_tp", "infer_pp"]
)
self.rollout_device_mesh = rollout_device_mesh
is_collect = (
rollout_device_mesh["infer_tp"].get_local_rank() == 0
and rollout_device_mesh["infer_pp"].get_local_rank() == 0
)
self._register_dispatch_collect_info(
"rollout", dp_rank=rollout_device_mesh["dp"].get_local_rank(), is_collect=is_collect
)
# 4. build rollout model
log_gpu_memory_usage(f"Before building {self.config.rollout.name} rollout", logger=logger)
self.rollout = get_rollout_class(rollout_config.name, rollout_config.mode)(
config=rollout_config, model_config=model_config, device_mesh=rollout_device_mesh
)
log_gpu_memory_usage(f"After building {self.config.rollout.name} rollout", logger=logger)
# Initialize base_sync_done for LoRA
self.base_sync_done: bool = "dummy" not in self.config.rollout.load_format
self.peft_merge: bool = model_config.lora.get("merge", False)
# 5. switch to trainer mode
# NOTE: It's critical that hybrid engine in trainer mode initially to load checkpoint.
# For async mode, we can't call run_until_complete here, so we will switch to trainer mode in AgentLoopManager.
# Note: sync mode is deprecated and rejected in RolloutConfig.__post_init__
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def init_model(self):
if self.config.model.get("external_lib", None) is not None:
# This is used to import external_lib into the huggingface systems
import importlib
importlib.import_module(self.config.model.external_lib)
from verl.utils.torch_dtypes import PrecisionType
override_model_config = OmegaConf.to_container(OmegaConf.create(self.config.model.get("override_config", {})))
if self._is_actor:
override_transformer_config = OmegaConf.to_container(
OmegaConf.create(self.config.actor.megatron.get("override_transformer_config", {}))
)
if self.enable_routing_replay:
override_transformer_config["enable_routing_replay"] = True
override_ddp_config = OmegaConf.to_container(
OmegaConf.create(self.config.actor.megatron.get("override_ddp_config", {}))
)
elif self._is_ref:
override_transformer_config = OmegaConf.to_container(
OmegaConf.create(self.config.ref.megatron.get("override_transformer_config", {}))
)
else:
override_transformer_config = {}
self.param_dtype = PrecisionType.to_dtype(self.config.actor.megatron.dtype)
log_gpu_memory_usage("Before init actor model and optimizer", logger=logger)
self.dtype = PrecisionType.to_dtype(self.param_dtype)
if self._is_actor:
# we need the model for actor and rollout
optim_config = self.config.actor.optim if self._is_actor else None
(
self.actor_module,
self.actor_optimizer,
self.actor_optimizer_scheduler,
self.actor_model_config,
self.actor_optim_config,
) = self._build_model_optimizer(
model_path=self.config.model.path,
optim_config=optim_config,
override_model_config=override_model_config,
override_transformer_config=override_transformer_config,
override_ddp_config=override_ddp_config,
)
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor_module)
log_gpu_memory_usage("After offload actor params and grad during init", logger=logger)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.actor_optimizer)
log_gpu_memory_usage("After offload actor optimizer during init", logger=logger)
if self._is_actor:
actor_cfg = omega_conf_to_dataclass(self.config.actor)
self.actor = MegatronPPOActor(
config=actor_cfg,
model_config=self.actor_model_config,
hf_config=self.hf_config,
tf_config=self.tf_config,
actor_module=self.actor_module,
actor_optimizer=self.actor_optimizer,
mtp_config=self.config.model.mtp if self.config.model.mtp.enable else None,
)
print(f"routing replay layers: {len(RouterReplay.router_instances)}")
log_gpu_memory_usage("After MegatronPPOActor init", logger=logger)
if self._is_rollout:
with use_original_torch_compile():
self._build_rollout(trust_remote_code=self.config.model.get("trust_remote_code", False))
log_gpu_memory_usage("After rollout init", logger=logger)
if self._is_ref:
self.ref_module, self.ref_model_config = self._build_model_optimizer(
model_path=self.config.model.path,
optim_config=None,
override_model_config=override_model_config,
override_transformer_config=override_transformer_config,
)
log_gpu_memory_usage("After ref model init", logger=logger)
self.ref_policy = MegatronPPOActor(
config=self.config.ref,
model_config=self.ref_model_config,
hf_config=self.hf_config,
tf_config=self.tf_config,
actor_module=self.ref_module,
actor_optimizer=None,
)
if self._ref_is_offload_param:
offload_megatron_model_to_cpu(self.ref_module)
log_gpu_memory_usage("After offload ref params during init", logger=logger)
if self._is_actor:
self.flops_counter = FlopsCounter(self.actor_model_config)
self.checkpoint_mananager = MegatronCheckpointManager(
config=self.config,
checkpoint_config=self.config.actor.checkpoint,
model_config=self.actor_model_config,
transformer_config=self.tf_config,
role="actor",
model=self.actor_module,
arch=self.architectures[0],
hf_config=self.hf_config,
param_dtype=self.param_dtype,
share_embeddings_and_output_weights=self.share_embeddings_and_output_weights,
processing_class=self.processor if self.processor is not None else self.tokenizer,
optimizer=self.actor_optimizer,
optimizer_scheduler=self.actor_optimizer_scheduler,
use_distributed_optimizer=self.config.actor.megatron.use_distributed_optimizer,
use_checkpoint_opt_param_scheduler=self.config.actor.optim.use_checkpoint_opt_param_scheduler,
bridge=self.bridge,
provider=self.provider,
use_dist_checkpointing=self.config.actor.megatron.use_dist_checkpointing,
peft_cls=self.peft_cls,
)
self.layer_name_mapping = {
"qkv_layer_name": "self_attention.linear_qkv.",
"gate_proj_layer_name": "linear_fc1.",
}
self.weight_converter = None
if not self.config.actor.megatron.use_mbridge:
self.weight_converter = get_mcore_weight_converter(self.actor_model_config, self.dtype)
# Free cached GPU memory so colocated vLLM processes can see it via cudaMemGetInfo
aggressive_empty_cache(force_sync=True)
log_gpu_memory_usage("After init_model finish", logger=logger)
async def rollout_mode(self):
"""Context switch hybridengine to rollout mode."""
aggressive_empty_cache(force_sync=True)
set_expandable_segments(False)
if self._is_offload_param:
load_megatron_model_to_gpu(self.actor.actor_module, load_grad=False)
log_gpu_memory_usage("After load actor params during rollout_mode", logger=logger)
# Build peft_config for vLLM LoRA support
peft_config = None
do_lora_base_sync = False
if not self.peft_merge and self.peft_cls is not None:
peft_config = build_peft_config_for_vllm(self.config.model.get("lora", {}))
# set sleep level for LoRA adapter weights only sync
# TODO: make this configurable so that users with small
# main memory can trade sync time to avoid OOM
self.rollout.sleep_level = 1
do_lora_base_sync = (not self.base_sync_done) or (
self.rollout.sleep_level != 1 and self.config.rollout.free_cache_engine
)
if self.bridge is not None:
if self.vanilla_bridge:
per_tensor_param = self.bridge.export_weights(self.actor.actor_module)
elif not self.peft_merge and self.peft_cls is not None:
# Only export adapter weights
per_tensor_param = self.bridge.export_adapter_weights(self.actor.actor_module)
else:
per_tensor_param = self.bridge.export_hf_weights(self.actor.actor_module)
else:
per_tensor_param = per_tensor_generator(
self.actor.actor_module,
self.actor_model_config,
self.weight_converter,
self.tf_config,
self.layer_name_mapping,
)
if self.config.rollout.free_cache_engine:
await self.rollout.resume(tags=["weights"])
if do_lora_base_sync:
# Base layer sync
per_tensor_param_lora_base = self.bridge.export_hf_weights(
self.actor.actor_module, merge_adapter_weights=False
)
await self.rollout.update_weights(
add_base_layer_suffix(per_tensor_param_lora_base, model_type=self.hf_config.model_type),
peft_config=peft_config,
base_sync_done=False,
)
# Mark base sync as done after first successful sync
self.base_sync_done = True
await self.rollout.update_weights(per_tensor_param, peft_config=peft_config, base_sync_done=True)
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor.actor_module)
aggressive_empty_cache(force_sync=True)
if self.config.rollout.free_cache_engine:
await self.rollout.resume(tags=["kv_cache"])
set_expandable_segments(True)
@register(dispatch_mode=make_nd_compute_dataproto_dispatch_fn(mesh_name="actor"))
@GPUMemoryLogger(role="update_actor", logger=logger)
@DistProfiler.annotate(color="red", role="actor_update")
def update_actor(self, data: DataProto):
assert self._is_actor
if self._is_offload_param:
load_megatron_model_to_gpu(self.actor_module)
log_gpu_memory_usage("After load actor params and grad during update_actor", logger=logger)
if self._is_offload_optimizer:
load_megatron_optimizer(self.actor_optimizer)
log_gpu_memory_usage("After load actor optimizer during update_actor", logger=logger)
micro_batch_size = self.config.actor.ppo_micro_batch_size_per_gpu
data.meta_info["micro_batch_size"] = micro_batch_size
dataloader = self.actor.make_minibatch_iterator(data=data)
with Timer(name="update_policy", logger=None) as timer:
metrics = self.actor.update_policy(dataloader=dataloader)
delta_time = timer.last
global_num_tokens = data.meta_info["global_token_num"]
images_seqlens = data.meta_info.get("images_seqlens", None)
estimated_flops, promised_flops = self.flops_counter.estimate_flops(
global_num_tokens, delta_time, images_seqlens=images_seqlens
)
metrics["perf/mfu/actor"] = estimated_flops * self.config.actor.ppo_epochs / promised_flops / self.world_size
metrics["perf/max_memory_allocated_gb"] = get_torch_device().max_memory_allocated() / (1024**3)
metrics["perf/max_memory_reserved_gb"] = get_torch_device().max_memory_reserved() / (1024**3)
metrics["perf/cpu_memory_used_gb"] = psutil.virtual_memory().used / (1024**3)
from verl.utils.megatron.optimizer import get_megatron_last_lr
metrics["actor/lr"] = get_megatron_last_lr(self.actor_optimizer)
self.actor_optimizer_scheduler.step(1)
# TODO: here, we should return all metrics
output = DataProto(meta_info={"metrics": metrics})
output = output.to("cpu")
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor_module)
log_gpu_memory_usage("After offload actor params and grad during update_actor", logger=logger)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.actor_optimizer)
log_gpu_memory_usage("After offload actor optimizer during update_actor", logger=logger)
aggressive_empty_cache(force_sync=True)
return output
@register(dispatch_mode=make_nd_compute_dataproto_dispatch_fn(mesh_name="rollout"))
@GPUMemoryLogger(role="generate_sequences", logger=logger)
@DistProfiler.annotate(color="red", role="rollout_generate")
def generate_sequences(self, prompts: DataProto):
assert self._is_rollout
prompts = prompts.to(get_device_name())
meta_info = {
"eos_token_id": self.generation_config.eos_token_id
if self.generation_config is not None
else self.tokenizer.eos_token_id,
"pad_token_id": self.generation_config.pad_token_id
if self.generation_config is not None
else self.tokenizer.pad_token_id,
}
prompts.meta_info.update(meta_info)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.actor_optimizer)
timing_generate = {}
if self._is_actor: # For rollout only, we do not switch context.
loop = get_event_loop()
loop.run_until_complete(self.rollout_mode())
log_gpu_memory_usage("After switch to rollout mode", logger=logger)
with simple_timer("generate_sequences", timing_generate):
output = self.rollout.generate_sequences(prompts=prompts)
if self._is_actor:
loop.run_until_complete(self.trainer_mode())
log_gpu_memory_usage("After switch to trainer mode", logger=logger)
# We calculate the average timing across all ranks
# to make sure meta_info["timing"] is the same
timing_generate_topk_ratio, timing_generate_min, timing_generate_max = topk_reduce_ratio_min_max(
timing_generate["generate_sequences"]
)
timing_generate = reduce_timing(timing_generate)
timing_generate.update(
{
"generation_timing/max": timing_generate_max,
"generation_timing/min": timing_generate_min,
"generation_timing/topk_ratio": timing_generate_topk_ratio,
}
)
output.meta_info["timing"] = timing_generate
output = output.to("cpu")
# clear kv cache
aggressive_empty_cache(force_sync=True)
return output
@register(dispatch_mode=make_nd_compute_dataproto_dispatch_fn(mesh_name="actor"))
@GPUMemoryLogger(role="compute_ref_log_prob", logger=logger)
@DistProfiler.annotate(color="olive", role="ref_compute_log_prob")
def compute_ref_log_prob(self, data: DataProto):
if self.peft_cls is not None:
# if is lora, actor without lora applied is the ref
data.meta_info["is_lora"] = True
return self.compute_log_prob(data)
assert self._is_ref
if self._ref_is_offload_param:
load_megatron_model_to_gpu(self.ref_module, load_grad=False)
log_gpu_memory_usage("After load ref params and grad during compute_ref_log_prob", logger=logger)
micro_batch_size = self.config.ref.log_prob_micro_batch_size_per_gpu
data.meta_info["micro_batch_size"] = micro_batch_size
data.meta_info["max_token_len"] = self.config.ref.log_prob_max_token_len_per_gpu
data.meta_info["use_dynamic_bsz"] = self.config.ref.log_prob_use_dynamic_bsz
data.meta_info["temperature"] = self.config.rollout.temperature
output, _, _ = self.ref_policy.compute_log_prob(data=data, calculate_entropy=False)
output = DataProto.from_dict(tensors={"ref_log_prob": output})
output = output.to("cpu")
if self._ref_is_offload_param:
offload_megatron_model_to_cpu(self.ref_module)
log_gpu_memory_usage("After offload ref params and grad during compute_ref_log_prob", logger=logger)
aggressive_empty_cache(force_sync=True)
return output
@register(dispatch_mode=make_nd_compute_dataproto_dispatch_fn(mesh_name="actor"))
@GPUMemoryLogger(role="compute_log_prob", logger=logger)
@DistProfiler.annotate(color="blue", role="actor_compute_log_prob")
def compute_log_prob(self, data: DataProto):
assert self._is_actor
if self._is_offload_param:
load_megatron_model_to_gpu(self.actor_module, load_grad=False)
log_gpu_memory_usage("After load actor params and grad during compute_log_prob", logger=logger)
is_lora = data.meta_info.pop("is_lora", False)
adapter_ctx = self.peft_cls.disable_adapter(self.actor_module) if is_lora else nullcontext()
# we should always recompute old_log_probs when it is HybridEngine
config_source = self.config.ref if is_lora else self.config.rollout
data.meta_info["micro_batch_size"] = config_source.log_prob_micro_batch_size_per_gpu
data.meta_info["max_token_len"] = config_source.log_prob_max_token_len_per_gpu
data.meta_info["use_dynamic_bsz"] = config_source.log_prob_use_dynamic_bsz
data.meta_info["temperature"] = self.config.rollout.temperature
if self.enable_routing_replay and self.config.actor.router_replay.mode == "R2":
RouterReplay.set_global_router_replay_action(RouterReplayAction.RECORD)
if self.enable_routing_replay and self.config.actor.router_replay.mode == "R3":
RouterReplay.set_global_router_replay_action(RouterReplayAction.REPLAY_FORWARD)
with adapter_ctx:
output, entropys, layers_topk_idx = self.actor.compute_log_prob(data=data, calculate_entropy=not is_lora)
tensors = {"ref_log_prob": output} if is_lora else {"old_log_probs": output}
if not is_lora:
tensors["entropys"] = entropys
output = DataProto.from_dict(
tensors=tensors,
meta_info={"temperature": self.config.rollout.temperature},
)
if self.config.actor.router_replay.mode == "R2":
output.batch["routed_experts"] = layers_topk_idx
if self.config.actor.router_replay.mode in ["R2", "R3"]:
RouterReplay.clear_global_indices()
RouterReplay.clear_global_router_replay_action()
output = output.to("cpu")
# clear kv cache
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor_module)
log_gpu_memory_usage("After offload actor params and grad during compute_log_prob", logger=logger)
aggressive_empty_cache(force_sync=True)
return output
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def load_checkpoint(self, checkpoint_path, hdfs_path=None, del_local_after_load=True):
# No checkpoint to load, just offload the model and optimizer to CPU
if checkpoint_path is None:
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor_module)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.actor_optimizer)
log_gpu_memory_usage("After offload actor params and optimizer during load_checkpoint", logger=logger)
return
if self._is_offload_param:
load_megatron_model_to_gpu(self.actor_module)
self.checkpoint_mananager.load_checkpoint(
local_path=checkpoint_path, hdfs_path=hdfs_path, del_local_after_load=del_local_after_load
)
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor_module)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.actor_optimizer)
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def load_pretrained_model(self, checkpoint_path, del_local_after_load=True):
pass
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def save_checkpoint(self, checkpoint_path, hdfs_path=None, global_step=0, max_ckpt_to_keep=None):
if self._is_offload_param:
load_megatron_model_to_gpu(self.actor_module)
if self.checkpoint_mananager.checkpoint_config.async_save and self._is_offload_optimizer:
load_megatron_optimizer(self.actor_optimizer)
self.checkpoint_mananager.save_checkpoint(
local_path=checkpoint_path, hdfs_path=hdfs_path, global_step=global_step, max_ckpt_to_keep=max_ckpt_to_keep
)
torch.distributed.barrier()
if self._is_offload_param:
offload_megatron_model_to_cpu(self.actor_module)
if self.checkpoint_mananager.checkpoint_config.async_save and self._is_offload_optimizer:
offload_megatron_optimizer(self.actor_optimizer)
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def async_calls_finalize_fn_exec(self, blocking=False):
from megatron.core.dist_checkpointing.strategies.base import async_calls
async_calls.maybe_finalize_async_calls(blocking=blocking)
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def start_profile(self, **kwargs) -> None:
"""Start profiling for the current rank in the current training step."""
self.profiler.start(**kwargs)
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def stop_profile(self) -> None:
"""Stop profiling for the current rank in the current training step."""
self.profiler.stop()
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def dump_memory_snapshot(self, tag: str = "manual", sub_dir: str = None) -> None:
"""Manually trigger a CUDA memory snapshot dump on all ranks."""
# Memory snapshot is now handled by the profiler system
# This method is kept for backward compatibility but delegates to profiler
if hasattr(self, "profiler") and hasattr(self.profiler, "_impl"):
try:
# Try to use the profiler's memory snapshot functionality
if hasattr(self.profiler._impl, "sampler"):
out_dir = OmegaConf.select(self.config, "actor.profiler.save_path") or "."
self.profiler._impl.sampler.dump_memory_snapshot(out_dir=out_dir, tag=tag, sub_dir=sub_dir)
except Exception as e:
# Log a warning if memory snapshot fails. This might be expected if the profiler doesn't support it.
logger.warning(f"Failed to dump memory snapshot: {e}")
class AsyncActorRolloutRefWorker(ActorRolloutRefWorker):
@register(dispatch_mode=Dispatch.ONE_TO_ALL, blocking=False)
async def update_weights(self, global_steps: int = None):
await self.rollout_mode()
return True
class CriticWorker(MegatronWorker, DistProfilerExtension):
def __init__(self, config: McoreCriticConfig):
Worker.__init__(self)
omega_profiler_config = config.get("profiler", {})
profiler_config = omega_conf_to_dataclass(omega_profiler_config, dataclass_type=ProfilerConfig)
if omega_profiler_config.get("tool", None) in ["npu", "nsys", "torch", "torch_memory"]:
tool_config = omega_conf_to_dataclass(
omega_profiler_config.get("tool_config", {}).get(omega_profiler_config.get("tool"))
)
else:
tool_config = None
DistProfilerExtension.__init__(
self, DistProfiler(rank=self.rank, config=profiler_config, tool_config=tool_config)
)
self.config: McoreCriticConfig = config
# NOTE(sgm): We utilize colocate WorkerGroup by default.
# As a result, Workers for different model share the same process.
# Therefore, we only require one distribute initialization.
# To utilize different parallel strategy in different models:
# 1, users should disable WorkerDict; 2.assign different ResourcePool to different models,
# 3. and apply the following patch in ray==2.10, https://github.com/ray-project/ray/pull/44385
if not torch.distributed.is_initialized():
set_numa_affinity()
rank = int(os.environ["LOCAL_RANK"])
torch.distributed.init_process_group(
backend=get_nccl_backend(),
timeout=datetime.timedelta(seconds=self.config.get("nccl_timeout", 600)),
init_method=os.environ.get("DIST_INIT_METHOD", None),
)
get_torch_device().set_device(rank)
mpu.initialize_model_parallel(
tensor_model_parallel_size=self.config.megatron.tensor_model_parallel_size,
pipeline_model_parallel_size=self.config.megatron.pipeline_model_parallel_size,
virtual_pipeline_model_parallel_size=self.config.megatron.virtual_pipeline_model_parallel_size,
use_sharp=False,
context_parallel_size=self.config.megatron.context_parallel_size,
expert_model_parallel_size=self.config.megatron.expert_model_parallel_size,
expert_tensor_parallel_size=self.config.megatron.expert_tensor_parallel_size,
nccl_communicator_config_path=None,
)
is_collect = (
mpu.get_tensor_model_parallel_rank() == 0
and mpu.get_pipeline_model_parallel_rank() == mpu.get_pipeline_model_parallel_world_size() - 1
and mpu.get_context_parallel_rank() == 0
)
self._register_dispatch_collect_info(
mesh_name="critic", dp_rank=mpu.get_data_parallel_rank(), is_collect=is_collect
)
set_random_seed(seed=self.config.megatron.seed)
# set FSDP offload params
self._is_offload_param = self.config.megatron.param_offload
self._is_offload_optimizer = self.config.megatron.optimizer_offload
# normalize config
self.config.ppo_mini_batch_size *= self.config.rollout_n
self.config.ppo_mini_batch_size //= mpu.get_data_parallel_world_size()
if self.config.get("ppo_micro_batch_size", None):
self.config.ppo_micro_batch_size //= mpu.get_data_parallel_world_size()
self.config.ppo_micro_batch_size_per_gpu = self.config.ppo_micro_batch_size
# TODO(sgm): support critic model offload
def _build_critic_model_optimizer(
self, model_path, optim_config, override_model_config, override_transformer_config, override_ddp_config
):
from verl.utils.megatron.optimizer import (
get_megatron_optimizer,
get_megatron_optimizer_param_scheduler,
init_megatron_optim_config,
)
from verl.utils.megatron_utils import McoreModuleWrapperConfig, make_megatron_module
from verl.utils.model import print_model_size
self._init_hf_config_and_tf_config(
model_path,
self.config.model.get("tokenizer_path") or model_path,
self.dtype,
override_model_config,
override_transformer_config,
self.config.model.get("trust_remote_code", False),
self.config.megatron,
)
wrap_config = McoreModuleWrapperConfig(
is_value_model=True, # critic is value model
share_embeddings_and_output_weights=False,
wrap_with_ddp=True,
use_distributed_optimizer=self.config.megatron.use_distributed_optimizer,
)
critic_module, updated_tf_config = make_megatron_module(
wrap_config=wrap_config,
tf_config=self.tf_config,
hf_config=self.hf_config,
bridge=self.bridge,
provider=self.provider,
override_model_config=override_model_config,
override_ddp_config=override_ddp_config,
peft_cls=self.peft_cls,
peft_config=self.config.model.get("lora", None),
)
self.tf_config = updated_tf_config
# note that here critic_module will be a list to be compatible with the construction of interleaved pp (vpp).
# but here, we do not use pp (vpp) yet. For simplicity, we remove the list
# critic_module = nn.ModuleList(critic_module)
if self.config.load_weight:
t0 = time.time()
if self.config.megatron.use_dist_checkpointing:
load_mcore_dist_weights(
critic_module,
self.config.megatron.dist_checkpointing_path,
is_value_model=True,
prefix=self.config.megatron.dist_checkpointing_prefix,
)
else:
if self.bridge is not None:
local_model_path = get_hf_model_path(self.config)
if self.vanilla_bridge:
self.bridge.load_weights(critic_module, local_model_path)
else:
self.bridge.load_hf_weights(
critic_module, local_model_path, allowed_mismatched_params=["output_layer.weight"]
)
else:
load_megatron_gptmodel_weights(
self.config, self.hf_config, critic_module, params_dtype=self.dtype, is_value_model=True
)
t1 = time.time()
if torch.distributed.get_rank() == 0:
print(f"critic load_weight time: {t1 - t0}")
if self.rank == 0:
print_model_size(critic_module[0])
# TODO: add more optimizer args into config
optim_config_megatron = init_megatron_optim_config(
optim_config,
use_distributed_optimizer=wrap_config.use_distributed_optimizer,
fp16=self.dtype == torch.float16,
)
critic_optimizer = get_megatron_optimizer(model=critic_module, config=optim_config_megatron)
critic_optimizer_scheduler = get_megatron_optimizer_param_scheduler(
optimizer=critic_optimizer, config=optim_config
)
get_torch_device().empty_cache()
register_megatron_training_hooks(critic_module, critic_optimizer)
return critic_module, critic_optimizer, critic_optimizer_scheduler, self.hf_config, optim_config
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def init_model(self):
# create critic
from verl.utils.torch_dtypes import PrecisionType
if self.config.model.get("external_lib", None) is not None:
# This is used to import external_lib into the huggingface systems
import importlib
importlib.import_module(self.config.model.external_lib)
override_model_config = OmegaConf.to_container(OmegaConf.create(self.config.model.get("override_config", {})))
override_transformer_config = OmegaConf.to_container(
OmegaConf.create(self.config.megatron.get("override_transformer_config", {}))
)
override_ddp_config = OmegaConf.to_container(
OmegaConf.create(self.config.megatron.get("override_ddp_config", {}))
)
self.param_dtype = PrecisionType.to_dtype(self.config.megatron.dtype)
self.dtype = PrecisionType.to_dtype(self.param_dtype)
(
self.critic_module,
self.critic_optimizer,
self.critic_optimizer_scheduler,
self.critic_model_config,
critic_optimizer_config,
) = self._build_critic_model_optimizer(
model_path=self.config.model.path,
optim_config=self.config.optim,
override_model_config=override_model_config,
override_transformer_config=override_transformer_config,
override_ddp_config=override_ddp_config,
)
if self._is_offload_param:
offload_megatron_model_to_cpu(self.critic_module)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.critic_optimizer)
self.critic = MegatronPPOCritic(
config=self.config,
model_config=self.critic_model_config,
hf_config=self.hf_config,
tf_config=self.tf_config,
critic_module=self.critic_module,
critic_optimizer=self.critic_optimizer,
critic_optimizer_config=critic_optimizer_config,
)
self.flops_counter = FlopsCounter(self.critic_model_config)
self.checkpoint_mananager = MegatronCheckpointManager(
config=self.config,
checkpoint_config=self.config.checkpoint,
model_config=self.critic_model_config,
transformer_config=self.tf_config,
role="critic",
model=self.critic_module,
arch=self.architectures[0],
hf_config=self.hf_config,
param_dtype=self.param_dtype,
share_embeddings_and_output_weights=False,
processing_class=self.processor if self.processor is not None else self.tokenizer,
optimizer=self.critic_optimizer,
optimizer_scheduler=self.critic_optimizer_scheduler,
use_distributed_optimizer=self.config.megatron.use_distributed_optimizer,
use_checkpoint_opt_param_scheduler=self.config.optim.use_checkpoint_opt_param_scheduler,
bridge=self.bridge,
provider=self.provider,
use_dist_checkpointing=self.config.megatron.use_dist_checkpointing,
peft_cls=self.peft_cls,
)
@register(dispatch_mode=make_nd_compute_dataproto_dispatch_fn(mesh_name="critic"))
@DistProfiler.annotate(color="cyan", role="compute_values")
def compute_values(self, data: DataProto):
micro_batch_size = self.config.ppo_micro_batch_size_per_gpu
data.meta_info["micro_batch_size"] = micro_batch_size
data.meta_info["max_token_len"] = self.config.forward_max_token_len_per_gpu
data.meta_info["use_dynamic_bsz"] = self.config.use_dynamic_bsz
data = data.to(get_device_id())
if self._is_offload_param:
load_megatron_model_to_gpu(self.critic_module)
values = self.critic.compute_values(data=data)
output = DataProto.from_dict(tensors={"values": values})
output = output.to("cpu")
if self._is_offload_param:
offload_megatron_model_to_cpu(self.critic_module)
return output
@register(dispatch_mode=make_nd_compute_dataproto_dispatch_fn(mesh_name="critic"))
@DistProfiler.annotate(color="pink", role="critic_update")
def update_critic(self, data: DataProto):
data = data.to(get_device_id())
if self._is_offload_param:
load_megatron_model_to_gpu(self.critic_module)
if self._is_offload_optimizer:
load_megatron_optimizer(self.critic_optimizer)
dataloader = self.critic.make_minibatch_iterator(data)
with Timer(name="update_critic", logger=None) as timer:
metrics = self.critic.update_critic(dataloader=dataloader)
delta_time = timer.last
global_num_tokens = data.meta_info["global_token_num"]
estimated_flops, promised_flops = self.flops_counter.estimate_flops(global_num_tokens, delta_time)
metrics["perf/mfu/critic"] = estimated_flops * self.config.ppo_epochs / promised_flops / self.world_size
from verl.utils.megatron.optimizer import get_megatron_last_lr
metrics["critic/lr"] = get_megatron_last_lr(self.critic_optimizer)
self.critic_optimizer_scheduler.step(1)
output = DataProto(batch=None, meta_info={"metrics": metrics})
if self._is_offload_param:
offload_megatron_model_to_cpu(self.critic_module)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.critic_optimizer)
output = output.to("cpu")
return output
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def load_checkpoint(self, checkpoint_path, hdfs_path=None, del_local_after_load=True):
if self._is_offload_param:
load_megatron_model_to_gpu(self.critic_module)
self.checkpoint_mananager.load_checkpoint(
local_path=checkpoint_path, hdfs_path=hdfs_path, del_local_after_load=del_local_after_load
)
if self._is_offload_param:
offload_megatron_model_to_cpu(self.critic_module)
if self._is_offload_optimizer:
offload_megatron_optimizer(self.critic_optimizer)
@register(dispatch_mode=Dispatch.ONE_TO_ALL)
def save_checkpoint(self, checkpoint_path, hdfs_path=None, global_steps=0, max_ckpt_to_keep=None):
if self._is_offload_param:
load_megatron_model_to_gpu(self.critic_module)
self.checkpoint_mananager.save_checkpoint(
local_path=checkpoint_path, hdfs_path=hdfs_path, global_step=global_steps, max_ckpt_to_keep=max_ckpt_to_keep
)
if self._is_offload_param:
offload_megatron_model_to_cpu(self.critic_module)
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