#! /bin/bash # Runs the "345M" parameter model GPUS_PER_NODE=8 # Change for multinode config MASTER_ADDR=localhost MASTER_PORT=6000 NNODES=1 NODE_RANK=0 WORLD_SIZE=$(($GPUS_PER_NODE*$NNODES)) DATA_PATH=_text_document CHECKPOINT_PATH= DISTRIBUTED_ARGS="--nproc_per_node $GPUS_PER_NODE --nnodes $NNODES --node_rank $NODE_RANK --master_addr $MASTER_ADDR --master_port $MASTER_PORT" python -m torch.distributed.launch $DISTRIBUTED_ARGS \ pretrain_gpt.py \ --num-layers 24 \ --hidden-size 1024 \ --num-attention-heads 16 \ --micro-batch-size 8 \ --global-batch-size 64 \ --seq-length 1024 \ --max-position-embeddings 1024 \ --train-iters 500000 \ --lr-decay-iters 320000 \ --save $CHECKPOINT_PATH \ --load $CHECKPOINT_PATH \ --data-path $DATA_PATH \ --vocab-file gpt2-vocab.json \ --merge-file gpt2-merges.txt \ --data-impl mmap \ --split 949,50,1 \ --distributed-backend nccl \ --lr 0.00015 \ --lr-decay-style cosine \ --min-lr 1.0e-5 \ --weight-decay 1e-2 \ --clip-grad 1.0 \ --lr-warmup-fraction .01 \ --checkpoint-activations \ --log-interval 100 \ --save-interval 10000 \ --eval-interval 1000 \ --eval-iters 10 \ --fp16