#!/usr/bin/env bash set -xeuo pipefail # Note that we set the response length to 4k. This results in many truncations at the beginning. # So the training dynamic acts as using RL to compress the math capabilities of QWen3 236b into 4k response instead of verbose thinking. # We can achieve 0.5 on AIME'24 after 30 steps. project_name='DAPO' exp_name='DAPO-Qwen3-236b-megatron-0531a1' adv_estimator=grpo use_kl_in_reward=False kl_coef=0.0 use_kl_loss=False kl_loss_coef=0.0 clip_ratio_low=0.2 clip_ratio_high=0.28 max_prompt_length=$((1024 * 2)) max_response_length=$((1024 * 4)) enable_overlong_buffer=True overlong_buffer_len=$((1024 * 4)) overlong_penalty_factor=0.1 loss_agg_mode="token-mean" train_prompt_bsz=256 n_resp_per_prompt=4 train_prompt_mini_bsz=16 # H20 GPUs NNODES=${NNODES:-32} # Paths RAY_DATA_HOME=${RAY_DATA_HOME:-"${HOME}/verl"} MODEL_PATH=$RAY_DATA_HOME/models/Qwen3-235B-A22B MCORE_MODEL_PATH=$RAY_DATA_HOME/models/Qwen3-235B-A22B_dist_ckpt_mcore/ # convert QWen3-235b-A22b to dist ckpt of mcore. Conversion process will take about 4 hours # python scripts/converter_hf_to_mcore.py --hf_model_path $MODEL_PATH --output_path $MCORE_MODEL_PATH --use_cpu_initialization CKPTS_DIR=$RAY_DATA_HOME/ckpt/${project_name}/${exp_name} TRAIN_FILE=$RAY_DATA_HOME/dataset/dapo-math-17k.parquet TEST_FILE=$RAY_DATA_HOME/dataset/aime-2024.parquet # Algorithm temperature=1.0 top_p=1.0 top_k=-1 # 0 for HF rollout, -1 for vLLM rollout val_top_p=0.7 # Performance Related Parameter offload=True gen_tp=8 train_tp=4 train_ep=4 train_pp=8 python3 -m verl.trainer.main_ppo \ --config-path=config \ --config-name='ppo_megatron_trainer.yaml' \ data.train_files="${TRAIN_FILE}" \ data.val_files="${TEST_FILE}" \ data.prompt_key=prompt \ data.truncation='left' \ data.max_prompt_length=${max_prompt_length} \ data.max_response_length=${max_response_length} \ data.train_batch_size=${train_prompt_bsz} \ actor_rollout_ref.rollout.n=${n_resp_per_prompt} \ algorithm.adv_estimator=${adv_estimator} \ algorithm.use_kl_in_reward=${use_kl_in_reward} \ algorithm.kl_ctrl.kl_coef=${kl_coef} \ actor_rollout_ref.actor.use_kl_loss=${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=${clip_ratio_high} \ actor_rollout_ref.actor.clip_ratio_c=10.0 \ actor_rollout_ref.actor.ppo_micro_batch_size_per_gpu=1 \ actor_rollout_ref.ref.log_prob_micro_batch_size_per_gpu=4 \ actor_rollout_ref.rollout.log_prob_micro_batch_size_per_gpu=4 \ actor_rollout_ref.model.path="${MODEL_PATH}" \ actor_rollout_ref.actor.optim.lr=1e-6 \ actor_rollout_ref.actor.optim.lr_warmup_steps=10 \ actor_rollout_ref.actor.optim.weight_decay=0.1 \ actor_rollout_ref.actor.ppo_mini_batch_size=${train_prompt_mini_bsz} \ actor_rollout_ref.actor.megatron.param_offload=${offload} \ actor_rollout_ref.actor.megatron.optimizer_offload=${offload} \ actor_rollout_ref.actor.megatron.grad_offload=${offload} \ actor_rollout_ref.actor.megatron.pipeline_model_parallel_size=${train_pp} \ actor_rollout_ref.actor.megatron.tensor_model_parallel_size=${train_tp} \ actor_rollout_ref.actor.megatron.expert_model_parallel_size=${train_ep} \ actor_rollout_ref.actor.megatron.dist_checkpointing_path=${MCORE_MODEL_PATH} \ actor_rollout_ref.actor.megatron.use_dist_checkpointing=True \ +actor_rollout_ref.actor.megatron.override_transformer_config.num_layers_in_first_pipeline_stage=5 \ +actor_rollout_ref.actor.megatron.override_transformer_config.num_layers_in_last_pipeline_stage=5 \ actor_rollout_ref.actor.entropy_coeff=0 \ actor_rollout_ref.actor.optim.clip_grad=1.0 \ actor_rollout_ref.actor.loss_agg_mode=${loss_agg_mode} \ actor_rollout_ref.rollout.gpu_memory_utilization=0.8 \ actor_rollout_ref.rollout.tensor_model_parallel_size=${gen_tp} \ actor_rollout_ref.rollout.enable_chunked_prefill=True \ actor_rollout_ref.rollout.max_num_batched_tokens=$((max_prompt_length + max_response_length)) \ actor_rollout_ref.rollout.temperature=${temperature} \ actor_rollout_ref.rollout.top_p=${top_p} \ actor_rollout_ref.rollout.top_k=${top_k} \ actor_rollout_ref.rollout.val_kwargs.temperature=${temperature} \ actor_rollout_ref.rollout.val_kwargs.top_p=${val_top_p} \ actor_rollout_ref.rollout.val_kwargs.top_k=${top_k} \ actor_rollout_ref.rollout.val_kwargs.do_sample=True \ actor_rollout_ref.rollout.val_kwargs.n=1 \ actor_rollout_ref.rollout.name=vllm \ actor_rollout_ref.ref.megatron.pipeline_model_parallel_size=${train_pp} \ actor_rollout_ref.ref.megatron.tensor_model_parallel_size=${train_tp} \ actor_rollout_ref.ref.megatron.expert_model_parallel_size=${train_ep} \ actor_rollout_ref.ref.megatron.param_offload=${offload} \ actor_rollout_ref.ref.megatron.dist_checkpointing_path=${MCORE_MODEL_PATH} \ actor_rollout_ref.ref.megatron.use_dist_checkpointing=True \ reward_model.reward_manager=dapo \ +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="${project_name}" \ trainer.experiment_name="${exp_name}" \ trainer.n_gpus_per_node=8 \ trainer.nnodes="${NNODES}" \ trainer.val_before_train=False \ trainer.test_freq=10 \ trainer.save_freq=20 \ trainer.total_epochs=10 \ trainer.total_training_steps=100 \ trainer.default_local_dir="${CKPTS_DIR}" \ trainer.resume_mode=auto \ trainer.log_val_generations=10