pretrain_bert_distributed.sh 1.2 KB

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  1. #!/bin/bash
  2. GPUS_PER_NODE=8
  3. # Change for multinode config
  4. MASTER_ADDR=localhost
  5. MASTER_PORT=6000
  6. NNODES=1
  7. NODE_RANK=0
  8. WORLD_SIZE=$(($GPUS_PER_NODE*$NNODES))
  9. DATA_PATH=<Specify path and file prefix>_text_sentence
  10. CHECKPOINT_PATH=<Specify path>
  11. DISTRIBUTED_ARGS="--nproc_per_node $GPUS_PER_NODE --nnodes $NNODES --node_rank $NODE_RANK --master_addr $MASTER_ADDR --master_port $MASTER_PORT"
  12. python -m torch.distributed.launch $DISTRIBUTED_ARGS \
  13. pretrain_bert.py \
  14. --num-layers 24 \
  15. --hidden-size 1024 \
  16. --num-attention-heads 16 \
  17. --micro-batch-size 4 \
  18. --global-batch-size 32 \
  19. --seq-length 512 \
  20. --max-position-embeddings 512 \
  21. --train-iters 1000000 \
  22. --save $CHECKPOINT_PATH \
  23. --load $CHECKPOINT_PATH \
  24. --data-path $DATA_PATH \
  25. --vocab-file bert-vocab.txt \
  26. --data-impl mmap \
  27. --split 949,50,1 \
  28. --distributed-backend nccl \
  29. --lr 0.0001 \
  30. --lr-decay-style linear \
  31. --min-lr 1.0e-5 \
  32. --lr-decay-iters 990000 \
  33. --weight-decay 1e-2 \
  34. --clip-grad 1.0 \
  35. --lr-warmup-fraction .01 \
  36. --log-interval 100 \
  37. --save-interval 10000 \
  38. --eval-interval 1000 \
  39. --eval-iters 10 \
  40. --fp16