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147 lines (129 loc) · 5.59 KB
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set -x
export VLLM_USE_V1=1
# ================= data/model/tool ================
open_agent_rl=/path/to/your/dataset/Gen-Verse/Open-AgentRL-30K/Open-AgentRL-30K.parquet
gpqa_diamond=/path/to/your/dataset/Gen-Verse/Open-AgentRL-Eval/gpqa-diamond/gpqa_diamond.parquet
aime_2024=/path/to/your/dataset/Gen-Verse/Open-AgentRL-Eval/aime2024/aime_2024_problems.parquet
aime_2025=/path/to/your/dataset/Gen-Verse/Open-AgentRL-Eval/aime2025/aime_2025_problems.parquet
model_path=/path/to/your/models/
train_files="['$open_agent_rl']"
test_files="['$gpqa_diamond','$aime_2024','$aime_2025']"
# tool
tool_config_path=recipe/demystify/sandbox_fusion_tool_config.yaml
# wandb
project_name=demystify-agentic-rl
experiment_name=grpo-tcr-qwen2.5-7b-aime-gpqa
default_local_dir=/data_storage/yzc/models/checkpoint/$experiment_name
# ================= algorithm =================
adv_estimator=grpo
# remove KL divergence ✓
use_kl_in_reward=False
kl_coef=0.0
use_kl_loss=False
kl_loss_coef=0.0
# clip higher ✓
clip_ratio_low=0.2
clip_ratio_high=0.28
# loss agg ✓
loss_agg_mode="token-mean"
# Dymaic Sampleing, we do not utilize dynamic sampling here since it is too expensive for agentic rl x
enable_filter_groups=True
filter_groups_metric=acc
max_num_gen_batches=10
#Overlong Reward Shaping ✓
reward_manager=dapo
enable_overlong_buffer=True
overlong_buffer_len=$((1024 * 4))
overlong_penalty_factor=1.0
max_turns=16
max_prompt_length=4096
max_response_length=20480
actor_lr=1e-6
train_batch_size=64
ppo_mini_batch_size=16
n_resp_per_prompt=16
n_resp_per_prompt_val=32
# ================= perfomance =================
infer_tp=4 # vllm
train_sp=4 # train
offload=True
actor_max_token_len_per_gpu=$(( (max_prompt_length + max_response_length) * 1 ))
log_prob_max_token_len_per_gpu=$(( actor_max_token_len_per_gpu * 4 ))
# ================= save rollouts =================
ROLLOUT_SAVE_PATH="${default_local_dir}/rollout"
VAL_SAVE_PATH="${default_local_dir}/validation"
# Create rollout save directory
if [ ! -d "$ROLLOUT_SAVE_PATH" ]; then
mkdir -p $ROLLOUT_SAVE_PATH
fi
# Create validation save directory
if [ ! -d "$VAL_SAVE_PATH" ]; then
mkdir -p $VAL_SAVE_PATH
fi
python3 -m verl.trainer.main_ppo \
algorithm.adv_estimator=$adv_estimator \
algorithm.use_kl_in_reward=$use_kl_in_reward \
algorithm.kl_ctrl.kl_coef=$kl_coef \
data.train_files="$train_files" \
data.val_files="$test_files" \
data.return_raw_chat=True \
data.train_batch_size=$train_batch_size \
data.max_prompt_length=$max_prompt_length \
data.max_response_length=$max_response_length \
data.prompt_key=prompt \
data.filter_overlong_prompts=True \
data.truncation='error' \
data.custom_cls.path=recipe/demystify/reward.py \
data.custom_cls.name=CustomRLHFDataset \
custom_reward_function.path=recipe/demystify/reward.py \
custom_reward_function.name=compute_score \
actor_rollout_ref.model.path=$model_path \
actor_rollout_ref.model.use_remove_padding=True \
actor_rollout_ref.model.enable_gradient_checkpointing=True \
actor_rollout_ref.actor.use_kl_loss=$use_kl_loss \
actor_rollout_ref.actor.kl_loss_coef=$kl_loss_coef \
actor_rollout_ref.actor.clip_ratio_low=$clip_ratio_low \
actor_rollout_ref.actor.clip_ratio_high=$clip_ratio_high \
actor_rollout_ref.actor.grad_clip=1.0 \
actor_rollout_ref.actor.clip_ratio_c=10.0 \
actor_rollout_ref.actor.loss_agg_mode=${loss_agg_mode} \
actor_rollout_ref.actor.optim.lr=$actor_lr \
actor_rollout_ref.actor.use_dynamic_bsz=True \
actor_rollout_ref.actor.ppo_mini_batch_size=$ppo_mini_batch_size \
actor_rollout_ref.actor.ppo_max_token_len_per_gpu=$actor_max_token_len_per_gpu \
actor_rollout_ref.actor.ulysses_sequence_parallel_size=$train_sp \
actor_rollout_ref.actor.fsdp_config.param_offload=$offload \
actor_rollout_ref.actor.fsdp_config.optimizer_offload=$offload \
actor_rollout_ref.ref.log_prob_max_token_len_per_gpu=$log_prob_max_token_len_per_gpu \
actor_rollout_ref.rollout.name=vllm \
actor_rollout_ref.rollout.mode=async \
actor_rollout_ref.rollout.tensor_model_parallel_size=$infer_tp \
actor_rollout_ref.rollout.multi_turn.enable=True \
actor_rollout_ref.rollout.multi_turn.max_user_turns=$max_turns \
actor_rollout_ref.rollout.multi_turn.max_assistant_turns=$max_turns \
actor_rollout_ref.rollout.multi_turn.tool_config_path=$tool_config_path \
actor_rollout_ref.rollout.multi_turn.format=hermes \
actor_rollout_ref.rollout.gpu_memory_utilization=0.75 \
actor_rollout_ref.rollout.n=$n_resp_per_prompt \
actor_rollout_ref.rollout.val_kwargs.top_p=0.6 \
actor_rollout_ref.rollout.val_kwargs.temperature=1.0 \
actor_rollout_ref.rollout.val_kwargs.n=$n_resp_per_prompt_val \
reward_model.reward_manager=${reward_manager} \
+reward_model.reward_kwargs.overlong_buffer_cfg.enable=${enable_overlong_buffer} \
+reward_model.reward_kwargs.overlong_buffer_cfg.len=${overlong_buffer_len} \
+reward_model.reward_kwargs.overlong_buffer_cfg.penalty_factor=${overlong_penalty_factor} \
+reward_model.reward_kwargs.overlong_buffer_cfg.log=false \
+reward_model.reward_kwargs.max_resp_len=${max_response_length} \
trainer.logger=['console','wandb'] \
trainer.project_name=$project_name \
trainer.experiment_name=$experiment_name \
trainer.n_gpus_per_node=8 \
trainer.val_before_train=True \
trainer.validation_data_dir=${VAL_SAVE_PATH} \
trainer.log_val_generations=20 \
trainer.nnodes=1 \
trainer.save_freq=-1 \
trainer.default_local_dir=$default_local_dir \
trainer.total_training_steps=1 \
trainer.test_freq=10 \
trainer.total_epochs=1 $@