#!/bin/bash set -ex CONDA_PYTHON=/mlx/users/jiashuo.fan/miniconda3/envs/abbie/bin/python CONDA_TORCHRUN=/mlx/users/jiashuo.fan/miniconda3/envs/abbie/bin/torchrun export DISABLE_ZB=1 export USE_DETERMINISTIC_BACKWARD=0 export TORCH_NCCL_ENABLE_MONITORING=0 export WANDB_MODE=disabled export WANDB_DISABLED=true export UCX_ERROR_SIGNALS="" export NCCL_IB_DISABLE=0 export UCX_TLS=rc,sm,self # pip3 install byted-thoth-arpeggio==0.2.0c6 # git clone -b feat/qwen3-vl-lbh --single-branch git@code.byted.org:Thoth/Abbie.git # unzip /mlx/users/jiashuo.fan/playground/Abbie-feat_qwen3-vl-lbh-sft.zip -d /opt/tiger/Abbie cd /opt/tiger/Abbie # conda activate DATA_PATHS='[ ["/mnt/hdfs/byte_tt_data_cu_vagcp/haogeng.liu/new_policy7w_v2_reformat","100%"] ]' DATA_PATHS=$(echo "$DATA_PATHS" | tr -d ' \n\t') # hdfs dfs -get hdfs://harunava/home/byte_tt_data_cu_vagcp/libohan.1024/models/TiViLa-Qwen3-VL-8B-Instruct-Compliance /home/tiger/.cache/ MODEL_PATH=/home/tiger/.cache/TiViLa-Qwen3-VL-8B-Instruct-Compliance PROJNAME=qwen3_vl_cpt EXPNAME=new_policy7w_v2_reformat OUTDIR=/mnt/bn/bohanzhainas1/jiashuo/exp/new_policy7w_v2_reformat # ls /mnt/bn/bohanzhainas1/jiashuo/viz MASTER_PORT=$($CONDA_PYTHON - <<'EOF' import socket s = socket.socket() s.bind(('', 0)) print(s.getsockname()[1]) s.close() EOF ) echo "Using port: $MASTER_PORT" LOG_DIR=/mlx/users/jiashuo.fan/playground/.claude/run_$(date +%Y%m%d_%H%M%S) mkdir -p "$LOG_DIR" echo "Logs: $LOG_DIR" $CONDA_TORCHRUN \ --nproc_per_node=8 \ --master_port=$MASTER_PORT \ --log-dir="$LOG_DIR" \ tivila_trainer.py \ model.pretrained_path=${MODEL_PATH} \ optim.lr="1e-5" \ optim.visual_lr="1e-5" \ optim.lr_warmup_steps_ratio=0.03 \ trainer.output_path=${OUTDIR} \ trainer.project_name=${PROJNAME} \ trainer.experiment_name=${EXPNAME} \ trainer.log_interval=10 \ trainer.checkpoint_interval=850 \ trainer.checkpoint_hf_model=true \ data.patterns=${DATA_PATHS} \ data.transform_extra_kwargs.image_max_pixels=16777216 \ data.transform_extra_kwargs.video_max_pixels=307200 \ data.transform_extra_kwargs.video_max_frames=32 \ data.max_seq_len=8192 \ data.is_continuous_batch=true \ data.num_training_steps=99999999 \ data.chunks_per_step=4 \ model.recompute_attn=true \ model.activation_offloading=true \ model.visual_activation_offloading=true # torchrun \ # --nproc_per_node=${ARNOLD_WORKER_GPU} \ # --nnodes=${ARNOLD_WORKER_NUM} \ # --node_rank=${ARNOLD_ID} \ # --master_addr=${METIS_WORKER_0_HOST} \ # --master_port=${METIS_WORKER_0_PORT} \ # tivila_trainer.py \ # model.pretrained_path=${MODEL_PATH} \ # optim.lr="1e-5" \ # optim.visual_lr="1e-5" \ # optim.lr_warmup_steps_ratio=0.03 \ # trainer.output_path=${OUTDIR} \ # trainer.project_name=${PROJNAME} \ # trainer.experiment_name=${EXPNAME} \ # trainer.log_interval=10 \ # trainer.checkpoint_interval=850 \ # trainer.checkpoint_hf_model=true \ # data.patterns=${DATA_PATHS} \ # data.transform_extra_kwargs.image_max_pixels=16777216 \ # data.transform_extra_kwargs.video_max_pixels=307200 \ # data.transform_extra_kwargs.video_max_frames=32 \ # data.max_seq_len=8192 \ # data.is_continuous_batch=true \ # data.num_training_steps=99999999 \ # data.chunks_per_step=4 \ # model.recompute_attn=true \ # model.activation_offloading=false \ # model.visual_activation_offloading=true