#!/bin/bash export NCCL_P2P_LEVEL=NVL echo "dataset $1, model dir $2, input type $3, describe $4, lr $5, lr_LXM $6, batch size $7, wiki num $8, gpu_num $9 " export dataset=$1 export model_dir=$2 mkdir $model_dir export input_type=$3 #model_name to save export describe=$4 export lr=$5 export lr_LXM=$6 export batch_size=$7 # export port=$7 export wiki_num=$8 export gpu_num=$9 ports=(`echo $METIS_WORKER_0_PORT | tr ',' ' '`) port=${ports[0]} echo "total workers: ${ARNOLD_WORKER_NUM}" echo "cur worker id: ${ARNOLD_ID}" echo "gpus per worker: ${ARNOLD_WORKER_GPU}" echo "master ip: ${METIS_WORKER_0_HOST}" echo "master port: ${port}" export OMP_NUM_THREADS=8 export NCCL_IB_DISABLE=0 export NCCL_IB_GID_INDEX=3 export NCCL_IB_HCA=${ARNOLD_RDMA_DEVICE} export NCCL_SOCKET_IFNAME=eth0 python3 -m torch.distributed.launch --nproc_per_node $gpu_num \ --nnodes=${ARNOLD_WORKER_NUM} --node_rank=${ARNOLD_ID} --master_addr=${METIS_WORKER_0_HOST} --master_port ${port} \ train4LXMT5_DDP.py \ --dataset $dataset \ --model_dir $model_dir \ --input_type $input_type \ --describe $describe \ --learning_rate $lr \ --learning_rate_LXM $lr_LXM \ --validate \ --batch_size $batch_size \ --num_wiki $wiki_num \ --pretrain