#!/bin/bash #PJM -L rscgrp=b-batch #PJM -L gpu=1 #PJM -L elapse=4:00:00 #PJM -N precompute_sparse #PJM -j #PJM -o logs/precompute_sparse_%j.out module load cuda/12.2.2 module load cudnn/8.9.7 module load gcc-toolset/12 source /home/pj24002027/ku50002536/Takoai/lfj/lfj/stack_env/bin/activate # 在 grn_ccfm 目录运行(precompute 脚本依赖 grn_ccfm 的 src/) cd /home/pj24002027/ku50002536/Takoai/lfj/lfj/GRN/grn_ccfm export PYTORCH_CUDA_ALLOC_CONF=max_split_size_mb:256 echo "==========================================" echo "Job ID: $PJM_JOBID" echo "Job Name: $PJM_JOBNAME" echo "Start: $(date)" echo "Node: $(hostname)" echo "GPU: $(nvidia-smi --query-gpu=name,memory.total --format=csv,noheader 2>/dev/null || echo 'N/A')" echo "==========================================" # 输出到 grn_ccfm/cache/ (pca_emb 的两个 shell 脚本引用此路径) mkdir -p cache python scripts/precompute_sparse_attn.py \ --data-name norman \ --n-top-genes 5000 \ --fold 1 \ --split-method additive \ --topk 30 \ --use-negative-edge \ --scgpt-model-dir transfer/data/scGPT_pretrained \ --max-seq-len 5000 \ --attn-layer 11 \ --attn-use-rank-norm \ --batch-size 2 \ --top-k 300 \ --n-pca-pairs 1000 \ --max-pca-components 64 \ --output cache/norman_attn_L11_sparse.h5 \ --device cuda echo "==========================================" echo "Finished: $(date)" echo "Output: cache/norman_attn_L11_sparse.h5" echo "=========================================="