#!/bin/bash #PJM -L rscgrp=b-batch #PJM -L gpu=1 #PJM -L elapse=3:00:00 #PJM -j #PJM -S #PJM -o /home/hp250092/ku50001222/qian/aivc/lfj/transfer/logs/ccfm_eval_joint_%j.out # Evaluate CCFM with joint-generation inference (LatentForcing style) # using the checkpoint from two-stage ODE training. source /home/hp250092/ku50001222/qian/aivc/lfj/stack_env/bin/activate cd /home/hp250092/ku50001222/qian/aivc/lfj/transfer/code/CCFM export PYTORCH_CUDA_ALLOC_CONF=max_split_size_mb:256 echo "==========================================" echo "Job ID: $PJM_JOBID" echo "Start: $(date)" echo "Node: $(hostname)" echo "Eval mode: joint-generate (LatentForcing style)" echo "==========================================" CHECKPOINT="/home/hp250092/ku50001222/qian/aivc/lfj/transfer/code/CCFM/result/ccfm-fusion_differential_perceiver-norman-cascaded-predict_y-gamma_0.5-perturbation_function_crisper-lr_5e-05-dim_model_128-infer_top_gene_1000-split_method_additive-use_mmd_loss_True-fold_1-latent_weight_1.0-choose_latent_p_0.4/iteration_110000/checkpoint.pt" python scripts/run_cascaded.py \ --data-name norman \ --d-model 128 \ --nhead 8 \ --nlayers 4 \ --batch-size 128 \ --lr 5e-5 \ --steps 200000 \ --fusion-method differential_perceiver \ --perturbation-function crisper \ --noise-type Gaussian \ --infer-top-gene 1000 \ --n-top-genes 5000 \ --use-mmd-loss \ --gamma 0.5 \ --split-method additive \ --fold 1 \ --scgpt-dim 512 \ --bottleneck-dim 128 \ --latent-weight 1.0 \ --choose-latent-p 0.4 \ --dh-depth 2 \ --latent-steps 20 \ --expr-steps 20 \ --result-path ./result_joint_generate \ --checkpoint-path "$CHECKPOINT" \ --test-only echo "==========================================" echo "Finished: $(date)" echo "=========================================="