#!/bin/bash
source /usr/local/Ascend/cann/set_env.sh
export CUDA_DEVICE_MAX_CONNECTIONS=1
export ASCEND_SLOG_PRINT_TO_STDOUT=0
export ASCEND_GLOBAL_LOG_LEVEL=3
export TASK_QUEUE_ENABLE=2
export COMBINED_ENABLE=1
export CPU_AFFINITY_CONF=1
export HCCL_CONNECT_TIMEOUT=1200
export NPU_ASD_ENABLE=0
export ASCEND_LAUNCH_BLOCKING=1
export ACLNN_CACHE_LIMIT=100000
export TOKENIZERS_PARALLELISM=false
export PYTORCH_NPU_ALLOC_CONF=expandable_segments:True
export MS_NODE_TIMEOUT=3600
NPUS_PER_NODE=16
MASTER_ADDR=localhost
MASTER_PORT=6000
NNODES=1
NODE_RANK=0
WORLD_SIZE=$(($NPUS_PER_NODE*$NNODES))
export LOCAL_WORLD_SIZE=$NPUS_PER_NODE
MM_DATA="./examples/mindspore/qwen3vl/data_30B.json"
MM_MODEL="./examples/mindspore/qwen3vl/model_30B.json"
MM_TOOL="./mindspeed_mm/tools/tools.json"
LOAD_PATH=""
SAVE_PATH=""
LOG_PATH="msrun_log"
TP=2
PP=4
EP=2
CP=1
MBS=1
GRAD_ACC_STEP=1
SEQ_LEN=1024
DP=$(($WORLD_SIZE/$TP/$PP/$CP))
GBS=16
DISTRIBUTED_ARGS="
--local_worker_num $NPUS_PER_NODE \
--worker_num $WORLD_SIZE \
--node_rank $NODE_RANK \
--master_addr $MASTER_ADDR \
--master_port $MASTER_PORT \
--log_dir $LOG_PATH \
--bind_core=True \
--join True \
"
GPT_ARGS="
--use-mcore-models \
--tensor-model-parallel-size ${TP} \
--pipeline-model-parallel-size ${PP} \
--expert-model-parallel-size ${EP} \
--context-parallel-size ${CP} \
--context-parallel-algo ulysses_cp_algo \
--micro-batch-size ${MBS} \
--global-batch-size ${GBS} \
--tokenizer-type NullTokenizer \
--vocab-size 152064 \
--seq-length ${SEQ_LEN} \
--make-vocab-size-divisible-by 1 \
--normalization RMSNorm \
--use-fused-rmsnorm \
--swiglu \
--use-fused-swiglu \
--no-masked-softmax-fusion \
--lr 1.0e-6 \
--lr-decay-style cosine \
--weight-decay 0 \
--train-iters 5000 \
--lr-warmup-fraction 0.1 \
--clip-grad 0.0 \
--adam-beta1 0.9 \
--adam-beta2 0.999 \
--no-gradient-accumulation-fusion \
--seed 42 \
--use-flash-attn \
--no-load-optim \
--no-load-rng \
--no-save-optim \
--no-save-rng \
--num-workers 8 \
--use-distributed-optimizer \
--bf16 \
--sequence-parallel \
--load $LOAD_PATH \
"
MM_ARGS="
--mm-data $MM_DATA \
--mm-model $MM_MODEL \
--mm-tool $MM_TOOL
"
MOE_ARGS="
--moe-grouped-gemm \
--moe-permutation-async-comm \
--moe-token-dispatcher-type alltoall \
--variable-seq-lengths \
"
OUTPUT_ARGS="
--log-interval 1 \
--save-interval 10000 \
--eval-interval 10000 \
--eval-iters 5000 \
--save $SAVE_PATH \
--ckpt-format torch \
"
logfile=qwen3vl_30B_$(date +%Y%m%d)_$(date +%H%M%S)
mkdir -p logs
msrun $DISTRIBUTED_ARGS pretrain_vlm.py \
$GPT_ARGS \
$MM_ARGS \
$OUTPUT_ARGS \
$MOE_ARGS \
--ai-framework mindspore \
--distributed-backend nccl \
2>&1 | tee logs/train_${logfile}.log
chmod 440 logs/train_${logfile}.log
find $SAVE_PATH -type d -exec chmod 750 {} \;
find $SAVE_PATH -type f -exec chmod 640 {} \;