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# Copyright 2023-2024 SGLang Team
# Copyright 2025 ModelBest Inc. and/or its affiliates
#
# 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.
"""
Single Process Actor
"""
import logging
import os
import torch
from torch import nn
from torch.distributed.fsdp import FullyShardedDataParallel as FSDP
from torch.distributed.tensor import DTensor
import verl.utils.torch_functional as verl_F
from verl import DataProto
from verl.trainer.ppo.core_algos import agg_loss, get_policy_loss_fn, kl_penalty
from verl.utils.attention_utils import index_first_axis, pad_input, rearrange, unpad_input
from verl.utils.device import get_device_id, get_device_name
from verl.utils.fsdp_utils import FSDPModule, fsdp2_clip_grad_norm_
from verl.utils.profiler import GPUMemoryLogger
from verl.utils.py_functional import append_to_dict
from verl.utils.seqlen_balancing import prepare_dynamic_batch, restore_dynamic_batch
from verl.utils.torch_dtypes import PrecisionType
from verl.utils.torch_functional import logprobs_from_logits
from verl.utils.ulysses import gather_outputs_and_unpad, ulysses_pad, ulysses_pad_and_slice_inputs
from verl.workers.actor import BasePPOActor
from verl.workers.config import ActorConfig
__all__ = ["DataParallelPPOActor"]
logger = logging.getLogger(__file__)
logger.setLevel(os.getenv("VERL_LOGGING_LEVEL", "WARN"))
class DataParallelPPOActor(BasePPOActor):
"""FSDP DataParallel PPO Actor or Ref worker
Args:
config (ActorConfig): Actor config
actor_module (nn.Module): Actor or ref module
actor_optimizer (torch.optim.Optimizer, optional): Actor optimizer. Defaults to None.
"""
def __init__(self, config: ActorConfig, actor_module: nn.Module, actor_optimizer: torch.optim.Optimizer = None):
"""When optimizer is None, it is Reference Policy"""
super().__init__(config)
self.actor_module = actor_module
self.actor_optimizer = actor_optimizer
role = "Ref" if actor_optimizer is None else "Actor"
self.use_remove_padding = self.config.get("use_remove_padding", False)
if torch.distributed.get_rank() == 0:
print(f"{role} use_remove_padding={self.use_remove_padding}")
self.use_fused_kernels = self.config.get("use_fused_kernels", False)
if torch.distributed.get_rank() == 0:
print(f"{role} use_fused_kernels={self.use_fused_kernels}")
self.ulysses_sequence_parallel_size = self.config.ulysses_sequence_parallel_size
self.use_ulysses_sp = self.ulysses_sequence_parallel_size > 1
self.use_dynamic_bsz = self.config.get("use_dynamic_bsz", False)
self.use_prefix_grouper = self.config.get("use_prefix_grouper", False)
if torch.distributed.get_rank() == 0:
print(f"{role} use_prefix_grouper={self.use_prefix_grouper}")
if self.config.entropy_from_logits_with_chunking:
entropy_from_logits = verl_F.entropy_from_logits_with_chunking
else:
entropy_from_logits = verl_F.entropy_from_logits
self.compute_entropy_from_logits = (
torch.compile(entropy_from_logits, dynamic=True)
if self.config.get("use_torch_compile", True) # use torch compile by default
else entropy_from_logits
)
self.device_name = get_device_name()
self.param_dtype = PrecisionType.to_dtype(self.config.fsdp_config.get("dtype", "bfloat16"))
if self.param_dtype == torch.float16:
from torch.distributed.fsdp.sharded_grad_scaler import ShardedGradScaler
self.scaler = ShardedGradScaler(growth_interval=400)
else:
self.scaler = None
# Sum of squared probabilities computation (for optimal_token_baseline)
# Only initialize if calculate_sum_pi_squared config is enabled
if self.config.get("calculate_sum_pi_squared", False):
self.calculate_sum_pi_squared_from_logits = (
torch.compile(verl_F.calculate_sum_pi_squared_from_logits, dynamic=True)
if self.config.get("use_torch_compile", True)
else verl_F.calculate_sum_pi_squared_from_logits
)
assert not (self.use_fused_kernels or self.use_prefix_grouper), (
"calculate_sum_pi_squared is not supported with "
f"{self.use_fused_kernels=} or {self.use_prefix_grouper=} for now."
)
def _forward_micro_batch(
self, micro_batch: dict[str, torch.Tensor], temperature: float, calculate_entropy: bool = False
) -> dict[str, torch.Tensor]:
"""
Returns:
dict[str, torch.Tensor]:
log_probs: (bs, response_len)
if calculate_entropy is True:
entropys: (bs, response_len)
if calculate_sum_pi_squared is False:
sum_pi_squared: (bs, response_len)
"""
calculate_sum_pi_squared = self.config.get("calculate_sum_pi_squared", False)
sum_pi_squared_checkpointing = self.config.get("sum_pi_squared_checkpointing", False)
# PrefixGrouper path for shared-prefix optimization
if self.use_prefix_grouper:
can_use_pg = (
not self.use_remove_padding
and not self.use_ulysses_sp
and not self.use_fused_kernels
and not self.use_dynamic_bsz
)
if can_use_pg and "response_mask" in micro_batch and "uid" in micro_batch:
from verl.trainer.ppo.prefix_grouper_utils import forward_micro_batch_with_prefix_grouper
return forward_micro_batch_with_prefix_grouper(
micro_batch=micro_batch,
model=self.actor_module,
temperature=temperature,
calculate_entropy=calculate_entropy,
device_name=self.device_name,
param_dtype=self.param_dtype,
use_chunking_entropy=self.config.get("entropy_from_logits_with_chunking", False),
)
response_length = micro_batch["responses"].size(-1)
multi_modal_inputs = {}
if "multi_modal_inputs" in micro_batch.keys():
from verl.utils.model import extract_multi_modal_inputs
multi_modal_inputs = extract_multi_modal_inputs(micro_batch["multi_modal_inputs"])
with torch.autocast(device_type=self.device_name, dtype=self.param_dtype):
input_ids = micro_batch["input_ids"]
batch_size, seqlen = input_ids.shape
attention_mask = micro_batch["attention_mask"]
position_ids = micro_batch["position_ids"]
entropy = None
if position_ids.dim() == 3: # qwen2vl mrope
position_ids = position_ids.transpose(0, 1) # (bsz, 4, seqlen) -> (4, bsz, seqlen)
if self.use_remove_padding:
input_ids_rmpad, indices, cu_seqlens, *_ = unpad_input(
input_ids.unsqueeze(-1), attention_mask
) # input_ids_rmpad (total_nnz, ...)
input_ids_rmpad = input_ids_rmpad.transpose(0, 1) # (1, total_nnz)
# unpad the position_ids to align the rotary
if position_ids.dim() == 3:
position_ids_rmpad = (
index_first_axis(rearrange(position_ids, "c b s ... -> (b s) c ..."), indices)
.transpose(0, 1)
.unsqueeze(1)
) # (4, bsz, seqlen) -> (4, 1, bsz * seqlen)
else:
position_ids_rmpad = index_first_axis(
rearrange(position_ids.unsqueeze(-1), "b s ... -> (b s) ..."), indices
).transpose(0, 1)
is_mask_all_zero = attention_mask.sum() == 0
if is_mask_all_zero:
input_ids_rmpad = torch.zeros(
(1, self.ulysses_sequence_parallel_size),
device=input_ids.device,
dtype=input_ids.dtype,
)
if position_ids.dim() == 3:
position_ids_rmpad = torch.zeros(
(position_ids.shape[0], 1, self.ulysses_sequence_parallel_size),
device=position_ids.device,
dtype=position_ids.dtype,
)
else:
position_ids_rmpad = torch.zeros(
(1, self.ulysses_sequence_parallel_size),
device=position_ids.device,
dtype=position_ids.dtype,
)
if "image_bound" in multi_modal_inputs:
from verl.utils.dataset.vision_utils import process_multi_modal_inputs_for_minicpmo
multi_modal_inputs = process_multi_modal_inputs_for_minicpmo(
input_ids, attention_mask, position_ids, cu_seqlens, multi_modal_inputs
)
# for compute the log_prob
input_ids_rmpad_rolled = torch.roll(input_ids_rmpad, shifts=-1, dims=1) # (1, total_nnz)
# pad and slice the inputs if sp > 1
if self.use_ulysses_sp:
is_vlm_model = hasattr(
getattr(self.actor_module, "module", self.actor_module).config, "vision_config"
)
if is_vlm_model:
# vlm model's inputs will be sliced after embedding
input_ids_rmpad, position_ids_rmpad, pad_size = ulysses_pad(
input_ids_rmpad,
position_ids_rmpad=position_ids_rmpad,
sp_size=self.ulysses_sequence_parallel_size,
)
else:
input_ids_rmpad, position_ids_rmpad, pad_size = ulysses_pad_and_slice_inputs(
input_ids_rmpad,
position_ids_rmpad=position_ids_rmpad,
sp_size=self.ulysses_sequence_parallel_size,
)
input_ids_rmpad_rolled, _, _ = ulysses_pad_and_slice_inputs(
input_ids_rmpad_rolled,
position_ids_rmpad=None,
sp_size=self.ulysses_sequence_parallel_size,
)
input_ids_rmpad_rolled = input_ids_rmpad_rolled.squeeze(0) # ((total_nnz / sp) + pad)
# only pass input_ids and position_ids to enable flash_attn_varlen
extra_args = {}
if self.use_fused_kernels:
extra_args["temperature"] = temperature
extra_args["return_dict"] = True
output = self.actor_module(
input_ids=input_ids_rmpad,
attention_mask=None,
position_ids=position_ids_rmpad,
**multi_modal_inputs,
use_cache=False,
**extra_args,
) # prevent model thinks we are generating
if self.use_fused_kernels:
log_probs = output.log_probs.squeeze(0) # (total_nnz,)
entropy_rmpad = output.entropy.squeeze(0) # (total_nnz,)
else:
logits_rmpad = output.logits.squeeze(0) # (total_nnz, vocab_size)
logits_rmpad.div_(temperature)
# if use_sp: ((total_nnz / sp) + pad) ; if not use_sp: (batch, seqlen)
inplace_backward = True
if calculate_entropy:
inplace_backward = False
log_probs = logprobs_from_logits(
logits=logits_rmpad,
labels=input_ids_rmpad_rolled,
inplace_backward=inplace_backward,
)
# compute entropy
if calculate_entropy:
# ((total_nnz / sp) + pad)
entropy_rmpad = (
self.compute_entropy_from_logits(logits_rmpad)
if not self.config.entropy_checkpointing
else torch.utils.checkpoint.checkpoint(self.compute_entropy_from_logits, logits_rmpad)
)
# Compute sum_pi_squared if requested (for optimal_token_baseline)
if calculate_sum_pi_squared:
sum_pi_squared_rmpad = (
self.calculate_sum_pi_squared_from_logits(logits_rmpad)
if not sum_pi_squared_checkpointing
else torch.utils.checkpoint.checkpoint(
self.calculate_sum_pi_squared_from_logits, logits_rmpad
)
)
# gather log_prob if sp > 1
if self.use_ulysses_sp:
# gather and unpad for the ulysses sp
log_probs = gather_outputs_and_unpad(
log_probs,
gather_dim=0,
unpad_dim=0,
padding_size=pad_size,
)
if calculate_entropy:
entropy_rmpad = gather_outputs_and_unpad(
entropy_rmpad,
gather_dim=0,
unpad_dim=0,
padding_size=pad_size,
)
if calculate_sum_pi_squared:
sum_pi_squared_rmpad = gather_outputs_and_unpad(
sum_pi_squared_rmpad, gather_dim=0, unpad_dim=0, padding_size=pad_size
)
if is_mask_all_zero:
log_probs = log_probs[:0]
if calculate_entropy:
entropy_rmpad = entropy_rmpad[:0]
# pad back to (bsz, seqlen)
if calculate_entropy:
full_entropy = pad_input(
hidden_states=entropy_rmpad.unsqueeze(-1),
indices=indices,
batch=batch_size,
seqlen=seqlen,
)
if calculate_sum_pi_squared:
full_sum_pi_squared = pad_input(
hidden_states=sum_pi_squared_rmpad.unsqueeze(-1),
indices=indices,
batch=batch_size,
seqlen=seqlen,
)
full_log_probs = pad_input(
hidden_states=log_probs.unsqueeze(-1),
indices=indices,
batch=batch_size,
seqlen=seqlen,
)
# only return response part:
if calculate_entropy:
entropy = full_entropy.squeeze(-1)[:, -response_length - 1 : -1] # (bsz, response_length)
if calculate_sum_pi_squared:
# (bsz, response_length)
sum_pi_squared = full_sum_pi_squared.squeeze(-1)[:, -response_length - 1 : -1]
log_probs = full_log_probs.squeeze(-1)[:, -response_length - 1 : -1] # (bsz, response_length)
else: # not using rmpad and no ulysses sp
extra_args = {}
if self.use_fused_kernels:
extra_args["temperature"] = temperature
extra_args["return_dict"] = True
output = self.actor_module(
input_ids=input_ids,
attention_mask=attention_mask,
position_ids=position_ids,
**multi_modal_inputs,
use_cache=False,
**extra_args,
) # prevent model thinks we are generating
if self.use_fused_kernels:
log_probs = output.log_probs[:, -response_length - 1 : -1]
entropy = output.entropy[:, -response_length - 1 : -1] # (bsz, response_length)
else:
logits = output.logits
logits.div_(temperature)
logits = logits[:, -response_length - 1 : -1, :] # (bsz, response_length, vocab_size)
log_probs = logprobs_from_logits(logits, micro_batch["responses"])
if calculate_entropy:
if not self.config.entropy_checkpointing:
entropy = verl_F.entropy_from_logits(logits) # (bsz, response_length)
else:
entropy = torch.utils.checkpoint.checkpoint(verl_F.entropy_from_logits, logits)
# Compute sum_pi_squared if requested (for optimal_token_baseline)
if calculate_sum_pi_squared:
sum_pi_squared = (
self.calculate_sum_pi_squared_from_logits(logits)
if not sum_pi_squared_checkpointing
else torch.utils.checkpoint.checkpoint(self.calculate_sum_pi_squared_from_logits, logits)
)
outputs = {"log_probs": log_probs}
if calculate_entropy:
outputs["entropys"] = entropy
if calculate_sum_pi_squared:
outputs["sum_pi_squared"] = sum_pi_squared
return outputs
def _optimizer_step(self):
assert self.config.grad_clip is not None
if self.scaler is not None:
self.scaler.unscale_(self.actor_optimizer)
if isinstance(self.actor_module, FSDP):
grad_norm = self.actor_module.clip_grad_norm_(max_norm=self.config.grad_clip)
elif isinstance(self.actor_module, FSDPModule):
grad_norm = fsdp2_clip_grad_norm_(self.actor_module.parameters(), max_norm=self.config.grad_clip)
else:
grad_norm = torch.nn.utils.clip_grad_norm_(self.actor_module.parameters(), max_norm=self.config.grad_clip)
if isinstance(grad_norm, DTensor):
grad_norm = grad_norm.full_tensor()
# if grad_norm is not finite, skip the update
if self.scaler is not None:
self.scaler.step(self.actor_optimizer)
self.scaler.update()
else:
if not torch.isfinite(grad_norm):
print(f"WARN: rank {torch.distributed.get_rank()} grad_norm is not finite: {grad_norm}")
self.actor_optimizer.zero_grad()
else:
self.actor_optimizer.step()
# Clear cached weight scales for QAT (weights changed)
if getattr(self.actor_module, "_qat_fuse_enabled", False):
from verl.utils.qat import invalidate_all_scales
invalidate_all_scales(self.actor_module)
return grad_norm
@GPUMemoryLogger(role="dp actor", logger=logger)
def compute_log_prob(self, data: DataProto, calculate_entropy: bool = False) -> dict[str, torch.Tensor]:
"""Compute the log probability of the responses given input_ids, attention_mask and position_ids
Args:
data (DataProto): a DataProto containing keys
``input_ids``: tensor of shape [batch_size, sequence_length]. torch.int64. Note that input_ids is the
concatenation of prompt and response. Note that ``sequence_length = prompt_length + response_length``.
``attention_mask``: tensor of shape [batch_size, sequence_length]. torch.int64.
``position_ids``: tensor of shape [batch_size, sequence_length]. torch.int64.
``responses``: tensor of shape [batch_size, response_length]. torch.int64.
Returns:
dict[str, torch.Tensor]: a dict containing keys
- ``log_probs``: tensor of shape [batch_size, response_length]. torch.float32.
- ``entropys``: tensor of shape [batch_size, response_length]. torch.float32.
- ``sum_pi_squared``: tensor of shape [batch_size, response_length]. torch.float32.
"""
calculate_sum_pi_squared = self.config.get("calculate_sum_pi_squared", False)
# set to eval
self.actor_module.eval()
micro_batch_size = data.meta_info["micro_batch_size"]
temperature = data.meta_info["temperature"] # temperature must be in the data.meta_info to avoid silent error
use_dynamic_bsz = data.meta_info["use_dynamic_bsz"]
pad_token_id = data.meta_info.get("pad_token_id", 0)
has_multi_modal_inputs = "multi_modal_inputs" in data.non_tensor_batch.keys()
select_keys = ["responses", "input_ids", "attention_mask", "position_ids"]
non_tensor_select_keys = ["multi_modal_inputs"] if has_multi_modal_inputs else []
if self.use_prefix_grouper:
select_keys += [k for k in ["prompts", "response_mask"] if k in data.batch]
if "uid" in data.non_tensor_batch:
non_tensor_select_keys.append("uid")
data = data.select(batch_keys=select_keys, non_tensor_batch_keys=non_tensor_select_keys)
if use_dynamic_bsz:
max_token_len = data.meta_info["max_token_len"] * self.ulysses_sequence_parallel_size
micro_batches, batch_idx_list = prepare_dynamic_batch(data, max_token_len=max_token_len)
else:
micro_batches = data.split(micro_batch_size)
log_probs_lst = []
entropy_lst = []
sum_pi_squared_lst = []
for micro_batch in micro_batches:
micro_batch = micro_batch.to(get_device_id())
model_inputs = {**micro_batch.batch, **micro_batch.non_tensor_batch, "pad_token_id": pad_token_id}
with torch.no_grad():
outputs = self._forward_micro_batch(
model_inputs, temperature=temperature, calculate_entropy=calculate_entropy
)
log_probs_lst.append(outputs["log_probs"])
if calculate_entropy:
entropy_lst.append(outputs["entropys"])
if calculate_sum_pi_squared:
sum_pi_squared_lst.append(outputs["sum_pi_squared"])
log_probs = torch.concat(log_probs_lst, dim=0)
if calculate_entropy:
entropys = torch.concat(entropy_lst, dim=0)
if calculate_sum_pi_squared:
sum_pi_squared = torch.concat(sum_pi_squared_lst, dim=0)
if use_dynamic_bsz:
log_probs = restore_dynamic_batch(log_probs, batch_idx_list)
if calculate_entropy:
entropys = restore_dynamic_batch(entropys, batch_idx_list)
if calculate_sum_pi_squared:
sum_pi_squared = restore_dynamic_batch(sum_pi_squared, batch_idx_list)
outputs = {"log_probs": log_probs}
if calculate_entropy:
outputs["entropys"] = entropys
if calculate_sum_pi_squared:
outputs["sum_pi_squared"] = sum_pi_squared
return outputs
@GPUMemoryLogger(role="dp actor", logger=logger)
def update_policy(self, data: DataProto):
# make sure we are in training mode
self.actor_module.train()
temperature = data.meta_info["temperature"] # temperature must be in the data.meta_info to avoid silent error
pad_token_id = data.meta_info.get("pad_token_id", 0)
select_keys = [
"responses",
"response_mask",
"input_ids",
"attention_mask",
"position_ids",
"old_log_probs",
"advantages",
]
if self.use_prefix_grouper and "prompts" in data.batch.keys():
select_keys.append("prompts")
if self.config.use_kl_loss:
select_keys.append("ref_log_prob")
# Include pre-computed IS weights if present in batch
# Weights are computed centrally in trainer and added to batch when algorithm.rollout_is=True
if "rollout_is_weights" in data.batch.keys():
select_keys.append("rollout_is_weights")
# Include rollout_log_probs for computing rollout_corr metrics in bypass mode
if "rollout_log_probs" in data.batch.keys():
select_keys.append("rollout_log_probs")
has_multi_modal_inputs = "multi_modal_inputs" in data.non_tensor_batch.keys()
non_tensor_select_keys = []
if has_multi_modal_inputs:
non_tensor_select_keys.append("multi_modal_inputs")
if self.use_prefix_grouper and "uid" in data.non_tensor_batch.keys():
non_tensor_select_keys.append("uid")
data = data.select(batch_keys=select_keys, non_tensor_batch_keys=non_tensor_select_keys)
# Split to make minibatch iterator for updating the actor
# See PPO paper for details. https://arxiv.org/abs/1707.06347
mini_batches = data.split(self.config.ppo_mini_batch_size)
on_policy = len(mini_batches) == 1 and self.config.ppo_epochs == 1
metrics = {
"actor/pg_loss": 0.0,
"actor/kl_loss": 0.0,
}
for _ in range(self.config.ppo_epochs):
for batch_idx, mini_batch in enumerate(mini_batches):
if self.config.use_dynamic_bsz:
max_token_len = self.config.ppo_max_token_len_per_gpu * self.ulysses_sequence_parallel_size
micro_batches, _ = prepare_dynamic_batch(mini_batch, max_token_len=max_token_len)
else:
self.gradient_accumulation = (
self.config.ppo_mini_batch_size // self.config.ppo_micro_batch_size_per_gpu
)
micro_batches = mini_batch.split(self.config.ppo_micro_batch_size_per_gpu)
self.actor_optimizer.zero_grad()
for micro_batch in micro_batches:
micro_batch = micro_batch.to(get_device_id())
micro_batch_metrics = {}
model_inputs = {**micro_batch.batch, **micro_batch.non_tensor_batch, "pad_token_id": pad_token_id}
response_mask = model_inputs["response_mask"]
old_log_prob = model_inputs["old_log_probs"]
advantages = model_inputs["advantages"]
entropy_coeff = self.config.entropy_coeff
loss_agg_mode = self.config.loss_agg_mode
calculate_entropy = self.config.calculate_entropy or (entropy_coeff != 0)
if self.config.use_dynamic_bsz:
loss_scale_factor = response_mask.shape[0] / self.config.ppo_mini_batch_size
else:
loss_scale_factor = 1 / self.gradient_accumulation
# all return: (bsz, response_length)
outputs = self._forward_micro_batch(
model_inputs, temperature=temperature, calculate_entropy=calculate_entropy
)
log_prob = outputs["log_probs"]
entropy = outputs["entropys"] if calculate_entropy else None
# for fully_async_policy
if hasattr(self.config, "use_rollout_log_probs") and self.config.use_rollout_log_probs:
old_log_prob = model_inputs["old_log_probs"]
else:
if on_policy:
old_log_prob = log_prob.detach()
else:
old_log_prob = model_inputs["old_log_probs"]
loss_mode = self.config.policy_loss.get("loss_mode", "vanilla")
# vanilla -> verl.trainer.ppo.core_algos.compute_policy_loss_vanilla
# Extract pre-computed rollout correction weights if present
# Weights are computed centrally in trainer and added when algorithm.rollout_is=True
rollout_is_weights = model_inputs.get("rollout_is_weights", None)
# gpg -> verl.trainer.ppo.core_algos.compute_policy_loss_gpg
# clip_cov -> verl.trainer.ppo.core_algos.compute_policy_loss_clip_cov
policy_loss_fn = get_policy_loss_fn(loss_mode)
# Compute policy loss (any function is expected to return 2 values)
pg_loss, pg_metrics = policy_loss_fn(
old_log_prob=old_log_prob,
log_prob=log_prob,
advantages=advantages,
response_mask=response_mask,
loss_agg_mode=loss_agg_mode,
config=self.config,
rollout_is_weights=rollout_is_weights,
)
micro_batch_metrics.update(pg_metrics)
# Skip if using bypass_mode loss (metrics already computed in pg_metrics)
rollout_log_prob = model_inputs.get("rollout_log_probs", None)
if loss_mode != "bypass_mode" and rollout_log_prob is not None:
# Compute metrics using CURRENT policy π_θ vs π_rollout
# Tracks evolving off-policy gap as π_θ updates during mini-batch training
from verl.trainer.ppo.rollout_corr_helper import compute_rollout_corr_metrics_from_logprobs
rollout_corr_metrics = compute_rollout_corr_metrics_from_logprobs(
log_prob=log_prob,
rollout_log_prob=rollout_log_prob,
response_mask=response_mask,
)
micro_batch_metrics.update(rollout_corr_metrics)
policy_loss = pg_loss
if calculate_entropy and entropy is not None:
entropy_agg = agg_loss(loss_mat=entropy, loss_mask=response_mask, loss_agg_mode=loss_agg_mode)
micro_batch_metrics["actor/entropy"] = entropy_agg.detach().item()
if entropy_coeff != 0:
policy_loss -= entropy_agg * entropy_coeff
if self.config.use_kl_loss:
ref_log_prob = model_inputs["ref_log_prob"]
# compute kl loss
kld = kl_penalty(
logprob=log_prob, ref_logprob=ref_log_prob, kl_penalty=self.config.kl_loss_type
)
kl_loss = agg_loss(loss_mat=kld, loss_mask=response_mask, loss_agg_mode=loss_agg_mode)
policy_loss = policy_loss + kl_loss * self.config.kl_loss_coef
metrics["actor/kl_loss"] += kl_loss.detach().item() * loss_scale_factor
micro_batch_metrics["actor/kl_coef"] = self.config.kl_loss_coef
if self.config.use_dynamic_bsz:
# relative to the dynamic bsz
loss = policy_loss * loss_scale_factor
else:
loss = policy_loss * loss_scale_factor
if self.scaler is not None:
self.scaler.scale(loss).backward()
else:
loss.backward()
metrics["actor/pg_loss"] += pg_loss.detach().item() * loss_scale_factor
append_to_dict(metrics, micro_batch_metrics)
grad_norm = self._optimizer_step()
mini_batch_metrics = {"actor/grad_norm": grad_norm.detach().item()}
append_to_dict(metrics, mini_batch_metrics)
self.actor_optimizer.zero_grad()
return metrics
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