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| ## Multinode Training |
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| Our codebase supports multi-node training for large-scale language models. The implementation is mainly based on [Ray](https://github.com/ray-project/ray). |
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| There are two types of nodes when doing Ray multi-node training: (1) head node and (2) worker nodes. |
| There is only one head node where you will start the ray cluster and submit the job. |
| The other nodes are worker nodes, where you only need to start and register to the ray cluster. |
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| ### Step 1: Set up multinode ray cluster (from [link](https://verl.readthedocs.io/en/latest/start/multinode.html#set-up-multinode-ray-cluster)) |
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| a. Start **head** node with ```ray start --head --dashboard-host=0.0.0.0```, there’re 2 address you should care about: |
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| - GCS address: ```ray start --address=<address>```, where **worker** node should connect to. |
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| - Dashboard address: ```<address>:8265```, where you should submit job to the cluster. |
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| b. Start **worker node** and register it to the ray cluster with ```ray start --address=<address>``` you get above. |
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| c. Check the cluster status with ```ray status```. |
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| For example, if you have two nodes (each with 8 GPUs) in the cluster, you should see something like this: |
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| ### Step 2: Launch the retrieval server on every node. |
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| We would recommend launch the **same** retrieval server on every nodes (including both head and worker nodes) for the stable RL training. Detailed information on how to launch different retrievers can be found as follows: [doc](https://github.com/PeterGriffinJin/Search-R1/blob/main/docs/retriever.md) and [scripts](https://github.com/PeterGriffinJin/Search-R1/tree/main/example/retriever). |
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| For example, if you want to launch the local dense retriever with flat indexing, run the following command on **every** nodes: |
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| ``` |
| bash retrieval_launch.sh |
| ``` |
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| ### Step 3: Start the job |
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| After the retrievers are launched, you can start the training job. You only need to start the job on the ***head*** node. |
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| An example script is shown as below. Change ```RAY_DASHBOARD_ADDRESS``` and ```N_NODES``` to your dashboard address found in step 1 and the number of nodes respectively. |
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| More script examples can be found [here](https://github.com/PeterGriffinJin/Search-R1/tree/main/example/multinode). |
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| ```bash |
| export CUDA_VISIBLE_DEVICES=0,1,2,3,4,5,6,7 |
| export DATA_DIR='data/nq_search' |
| |
| WAND_PROJECT="Search-R1-release" |
| RAY_DASHBOARD_ADDRESS="<address>:8265" |
| N_NODES=2 |
| |
| export BASE_MODEL='Qwen/Qwen2.5-7B' |
| export EXPERIMENT_NAME=${train_data}-${test_data}-search-r1-ppo-qwen2.5-7b-em-multinode-$N_NODES |
| |
| # set -x |
| export VLLM_ATTENTION_BACKEND=XFORMERS |
| |
| ulimit -n 65535 |
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| ray job submit --address=$RAY_DASHBOARD_ADDRESS \ |
| --runtime-env=verl/trainer/runtime_env.yaml \ |
| --no-wait \ |
| -- \ |
| python3 -m verl.trainer.main_ppo \ |
| data.train_files=$DATA_DIR/train.parquet \ |
| data.val_files=$DATA_DIR/test.parquet \ |
| data.train_data_num=null \ |
| data.val_data_num=null \ |
| data.train_batch_size=512 \ |
| data.val_batch_size=256 \ |
| data.max_prompt_length=4096 \ |
| data.max_response_length=500 \ |
| data.max_start_length=2048 \ |
| data.max_obs_length=500 \ |
| data.shuffle_train_dataloader=True \ |
| algorithm.adv_estimator=gae \ |
| actor_rollout_ref.model.path=$BASE_MODEL \ |
| actor_rollout_ref.actor.optim.lr=1e-6 \ |
| actor_rollout_ref.model.enable_gradient_checkpointing=true \ |
| actor_rollout_ref.model.use_remove_padding=True \ |
| actor_rollout_ref.actor.optim.lr_warmup_steps_ratio=0.285 \ |
| actor_rollout_ref.actor.ppo_mini_batch_size=256 \ |
| actor_rollout_ref.actor.ppo_micro_batch_size=64 \ |
| actor_rollout_ref.actor.fsdp_config.param_offload=False \ |
| actor_rollout_ref.actor.fsdp_config.grad_offload=False \ |
| actor_rollout_ref.actor.fsdp_config.optimizer_offload=False \ |
| actor_rollout_ref.rollout.log_prob_micro_batch_size=128 \ |
| actor_rollout_ref.rollout.tensor_model_parallel_size=1 \ |
| actor_rollout_ref.rollout.name=vllm \ |
| actor_rollout_ref.rollout.gpu_memory_utilization=0.6 \ |
| actor_rollout_ref.ref.log_prob_micro_batch_size=128 \ |
| actor_rollout_ref.ref.fsdp_config.param_offload=False \ |
| actor_rollout_ref.rollout.n_agent=1 \ |
| actor_rollout_ref.rollout.temperature=1 \ |
| actor_rollout_ref.rollout.top_p=1.0 \ |
| actor_rollout_ref.actor.state_masking=true \ |
| critic.optim.lr=1e-5 \ |
| critic.model.use_remove_padding=True \ |
| critic.optim.lr_warmup_steps_ratio=0.015 \ |
| critic.model.path=$BASE_MODEL \ |
| critic.model.enable_gradient_checkpointing=true \ |
| critic.ppo_micro_batch_size=16 \ |
| critic.model.fsdp_config.param_offload=False \ |
| critic.model.fsdp_config.grad_offload=False \ |
| critic.model.fsdp_config.optimizer_offload=False \ |
| algorithm.kl_ctrl.kl_coef=0.001 \ |
| algorithm.no_think_rl=false \ |
| trainer.critic_warmup=0 \ |
| trainer.logger=['wandb'] \ |
| +trainer.val_only=false \ |
| +trainer.val_before_train=false \ |
| trainer.default_hdfs_dir=null \ |
| trainer.n_gpus_per_node=8 \ |
| trainer.nnodes=$N_NODES \ |
| trainer.save_freq=100 \ |
| trainer.test_freq=100 \ |
| trainer.project_name=$WAND_PROJECT \ |
| trainer.experiment_name=$EXPERIMENT_NAME \ |
| trainer.total_epochs=15 \ |
| trainer.total_training_steps=1005 \ |
| trainer.default_hdfs_dir=null \ |
| trainer.default_local_dir=verl_checkpoints/$EXPERIMENT_NAME \ |
| max_turns=4 \ |
| retriever.url="http://127.0.0.1:8000/retrieve" \ |
| retriever.topk=3 \ |
| 2>&1 | tee $EXPERIMENT_NAME.log |
| ``` |
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