[run] ogbg-molbbbp view=gin compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view gin --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.68724 val_adapt_rocauc=0.69058 adapt_steps=2.34 halt=0.32 train_steps=2.70 ep20 val_rocauc=0.71443 val_adapt_rocauc=0.73106 adapt_steps=4.76 halt=0.35 train_steps=2.43 ep30 val_rocauc=0.89704 val_adapt_rocauc=0.89107 adapt_steps=2.92 halt=0.32 train_steps=2.76 ep40 val_rocauc=0.92044 val_adapt_rocauc=0.93149 adapt_steps=3.13 halt=0.31 train_steps=2.82 ep50 val_rocauc=0.89326 val_adapt_rocauc=0.91984 adapt_steps=2.52 halt=0.34 train_steps=2.62 ep60 val_rocauc=0.88529 val_adapt_rocauc=0.90411 adapt_steps=2.35 halt=0.39 train_steps=2.28 ep70 val_rocauc=0.86876 val_adapt_rocauc=0.88728 adapt_steps=2.40 halt=0.38 train_steps=2.31 ep80 val_rocauc=0.90929 val_adapt_rocauc=0.91228 adapt_steps=2.47 halt=0.38 train_steps=2.27 ep90 val_rocauc=0.90491 val_adapt_rocauc=0.90760 adapt_steps=2.26 halt=0.42 train_steps=2.01 ep100 val_rocauc=0.90979 val_adapt_rocauc=0.91825 adapt_steps=2.25 halt=0.41 train_steps=2.05 [ogbg-molbbbp_gin_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=40 val={'rocauc': 0.92044209897441} test={'rocauc': 0.6527777777777778} adaptive={'rocauc': 0.65258487654321} steps=4.872549019607843 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_gin_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=gine compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view gine --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.90073 val_adapt_rocauc=0.88450 adapt_steps=2.43 halt=0.27 train_steps=3.20 ep20 val_rocauc=0.92024 val_adapt_rocauc=0.93090 adapt_steps=3.02 halt=0.32 train_steps=2.63 ep30 val_rocauc=0.85622 val_adapt_rocauc=0.87673 adapt_steps=3.15 halt=0.34 train_steps=2.57 ep40 val_rocauc=0.89276 val_adapt_rocauc=0.88928 adapt_steps=3.26 halt=0.33 train_steps=2.70 ep50 val_rocauc=0.91795 val_adapt_rocauc=0.92114 adapt_steps=2.88 halt=0.34 train_steps=2.67 ep60 val_rocauc=0.91696 val_adapt_rocauc=0.90889 adapt_steps=2.46 halt=0.36 train_steps=2.44 ep70 val_rocauc=0.90501 val_adapt_rocauc=0.89037 adapt_steps=2.88 halt=0.38 train_steps=2.30 ep80 val_rocauc=0.92054 val_adapt_rocauc=0.91228 adapt_steps=2.57 halt=0.39 train_steps=2.24 ep90 val_rocauc=0.90949 val_adapt_rocauc=0.90312 adapt_steps=2.32 halt=0.41 train_steps=2.07 ep100 val_rocauc=0.91576 val_adapt_rocauc=0.91148 adapt_steps=2.29 halt=0.42 train_steps=2.02 [ogbg-molbbbp_gine_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=80 val={'rocauc': 0.9205416708154933} test={'rocauc': 0.591820987654321} adaptive={'rocauc': 0.5948109567901234} steps=2.9166666666666665 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_gine_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=gcn compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view gcn --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.82177 val_adapt_rocauc=0.93209 adapt_steps=2.11 halt=0.30 train_steps=2.97 ep20 val_rocauc=0.88241 val_adapt_rocauc=0.89923 adapt_steps=2.39 halt=0.38 train_steps=2.27 ep30 val_rocauc=0.84248 val_adapt_rocauc=0.89794 adapt_steps=2.54 halt=0.38 train_steps=2.19 ep40 val_rocauc=0.95280 val_adapt_rocauc=0.95390 adapt_steps=2.17 halt=0.41 train_steps=2.07 ep50 val_rocauc=0.89525 val_adapt_rocauc=0.92164 adapt_steps=2.07 halt=0.45 train_steps=1.74 ep60 val_rocauc=0.93727 val_adapt_rocauc=0.93050 adapt_steps=2.03 halt=0.45 train_steps=1.73 ep70 val_rocauc=0.92612 val_adapt_rocauc=0.92881 adapt_steps=2.03 halt=0.46 train_steps=1.68 ep80 val_rocauc=0.91845 val_adapt_rocauc=0.92273 adapt_steps=2.01 halt=0.47 train_steps=1.61 ep90 val_rocauc=0.91278 val_adapt_rocauc=0.91138 adapt_steps=2.00 halt=0.47 train_steps=1.66 ep100 val_rocauc=0.91477 val_adapt_rocauc=0.91626 adapt_steps=2.00 halt=0.47 train_steps=1.66 [ogbg-molbbbp_gcn_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=40 val={'rocauc': 0.9528029473264961} test={'rocauc': 0.6794945987654321} adaptive={'rocauc': 0.6629050925925926} steps=2.269607843137255 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_gcn_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=graphsage compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view graphsage --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.94066 val_adapt_rocauc=0.95440 adapt_steps=2.54 halt=0.30 train_steps=2.86 ep20 val_rocauc=0.93299 val_adapt_rocauc=0.93956 adapt_steps=2.87 halt=0.38 train_steps=2.26 ep30 val_rocauc=0.83142 val_adapt_rocauc=0.88171 adapt_steps=2.41 halt=0.36 train_steps=2.40 ep40 val_rocauc=0.87494 val_adapt_rocauc=0.87374 adapt_steps=2.28 halt=0.40 train_steps=2.07 ep50 val_rocauc=0.92233 val_adapt_rocauc=0.94285 adapt_steps=2.27 halt=0.38 train_steps=2.38 ep60 val_rocauc=0.86478 val_adapt_rocauc=0.88539 adapt_steps=2.44 halt=0.40 train_steps=2.08 ep70 val_rocauc=0.91029 val_adapt_rocauc=0.91377 adapt_steps=2.14 halt=0.45 train_steps=1.75 ep80 val_rocauc=0.92532 val_adapt_rocauc=0.91218 adapt_steps=2.07 halt=0.46 train_steps=1.68 ep90 val_rocauc=0.90630 val_adapt_rocauc=0.90202 adapt_steps=2.06 halt=0.45 train_steps=1.73 ep100 val_rocauc=0.90531 val_adapt_rocauc=0.90083 adapt_steps=2.04 halt=0.46 train_steps=1.67 [ogbg-molbbbp_graphsage_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=10 val={'rocauc': 0.9406551827143284} test={'rocauc': 0.6039737654320988} adaptive={'rocauc': 0.6147762345679012} steps=2.5686274509803924 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_graphsage_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=gatv2 compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view gatv2 --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.87544 val_adapt_rocauc=0.89704 adapt_steps=3.72 halt=0.33 train_steps=2.64 ep20 val_rocauc=0.92492 val_adapt_rocauc=0.94852 adapt_steps=2.61 halt=0.39 train_steps=2.17 ep30 val_rocauc=0.89804 val_adapt_rocauc=0.93239 adapt_steps=2.27 halt=0.37 train_steps=2.35 ep40 val_rocauc=0.90511 val_adapt_rocauc=0.92612 adapt_steps=2.27 halt=0.41 train_steps=2.00 ep50 val_rocauc=0.90103 val_adapt_rocauc=0.89475 adapt_steps=2.46 halt=0.41 train_steps=2.01 ep60 val_rocauc=0.90401 val_adapt_rocauc=0.89306 adapt_steps=2.24 halt=0.41 train_steps=2.05 ep70 val_rocauc=0.93030 val_adapt_rocauc=0.91656 adapt_steps=2.10 halt=0.46 train_steps=1.67 ep80 val_rocauc=0.92233 val_adapt_rocauc=0.90411 adapt_steps=2.09 halt=0.46 train_steps=1.66 ep90 val_rocauc=0.91546 val_adapt_rocauc=0.89386 adapt_steps=2.11 halt=0.46 train_steps=1.70 ep100 val_rocauc=0.91287 val_adapt_rocauc=0.88868 adapt_steps=2.09 halt=0.47 train_steps=1.65 [ogbg-molbbbp_gatv2_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=70 val={'rocauc': 0.9302997112416609} test={'rocauc': 0.6648341049382716} adaptive={'rocauc': 0.6627121913580247} steps=2.1372549019607843 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_gatv2_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=graphconv compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view graphconv --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.83053 val_adapt_rocauc=0.84875 adapt_steps=3.46 halt=0.34 train_steps=2.62 ep20 val_rocauc=0.71931 val_adapt_rocauc=0.75465 adapt_steps=3.00 halt=0.37 train_steps=2.40 ep30 val_rocauc=0.88380 val_adapt_rocauc=0.89704 adapt_steps=2.44 halt=0.37 train_steps=2.40 ep40 val_rocauc=0.89913 val_adapt_rocauc=0.91507 adapt_steps=2.17 halt=0.37 train_steps=2.35 ep50 val_rocauc=0.88938 val_adapt_rocauc=0.93737 adapt_steps=2.25 halt=0.43 train_steps=1.90 ep60 val_rocauc=0.92343 val_adapt_rocauc=0.93757 adapt_steps=2.21 halt=0.41 train_steps=2.04 ep70 val_rocauc=0.87703 val_adapt_rocauc=0.90889 adapt_steps=2.45 halt=0.41 train_steps=1.97 ep80 val_rocauc=0.89396 val_adapt_rocauc=0.91726 adapt_steps=2.09 halt=0.46 train_steps=1.73 ep90 val_rocauc=0.86498 val_adapt_rocauc=0.89167 adapt_steps=2.19 halt=0.46 train_steps=1.70 ep100 val_rocauc=0.87016 val_adapt_rocauc=0.89545 adapt_steps=2.13 halt=0.47 train_steps=1.68 [ogbg-molbbbp_graphconv_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=60 val={'rocauc': 0.9234292542069104} test={'rocauc': 0.6602044753086419} adaptive={'rocauc': 0.6875} steps=2.7941176470588234 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_graphconv_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=transformer compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view transformer --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.87494 val_adapt_rocauc=0.89316 adapt_steps=3.50 halt=0.33 train_steps=2.53 ep20 val_rocauc=0.88878 val_adapt_rocauc=0.89784 adapt_steps=2.60 halt=0.35 train_steps=2.46 ep30 val_rocauc=0.85243 val_adapt_rocauc=0.93747 adapt_steps=2.47 halt=0.36 train_steps=2.40 ep40 val_rocauc=0.93687 val_adapt_rocauc=0.94046 adapt_steps=2.35 halt=0.41 train_steps=2.09 ep50 val_rocauc=0.90959 val_adapt_rocauc=0.91875 adapt_steps=2.32 halt=0.41 train_steps=2.16 ep60 val_rocauc=0.93090 val_adapt_rocauc=0.93617 adapt_steps=2.40 halt=0.42 train_steps=1.90 ep70 val_rocauc=0.93199 val_adapt_rocauc=0.92134 adapt_steps=2.23 halt=0.45 train_steps=1.72 ep80 val_rocauc=0.93637 val_adapt_rocauc=0.93866 adapt_steps=2.15 halt=0.45 train_steps=1.78 ep90 val_rocauc=0.93976 val_adapt_rocauc=0.93378 adapt_steps=2.13 halt=0.45 train_steps=1.81 ep100 val_rocauc=0.93966 val_adapt_rocauc=0.93369 adapt_steps=2.13 halt=0.45 train_steps=1.79 [ogbg-molbbbp_transformer_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=90 val={'rocauc': 0.9397590361445782} test={'rocauc': 0.642554012345679} adaptive={'rocauc': 0.6309799382716049} steps=2.2254901960784315 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_transformer_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=pna compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view pna --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep10 val_rocauc=0.92731 val_adapt_rocauc=0.92950 adapt_steps=6.11 halt=0.24 train_steps=3.52 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep20 val_rocauc=0.89097 val_adapt_rocauc=0.90093 adapt_steps=2.08 halt=0.32 train_steps=2.95 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep30 val_rocauc=0.92433 val_adapt_rocauc=0.92502 adapt_steps=3.31 halt=0.34 train_steps=2.56 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep40 val_rocauc=0.93777 val_adapt_rocauc=0.94056 adapt_steps=2.97 halt=0.35 train_steps=2.49 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep50 val_rocauc=0.95001 val_adapt_rocauc=0.95051 adapt_steps=3.67 halt=0.31 train_steps=2.90 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep60 val_rocauc=0.91317 val_adapt_rocauc=0.89913 adapt_steps=2.84 halt=0.37 train_steps=2.45 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep70 val_rocauc=0.94583 val_adapt_rocauc=0.94613 adapt_steps=2.63 halt=0.36 train_steps=2.49 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep80 val_rocauc=0.90770 val_adapt_rocauc=0.90132 adapt_steps=2.44 halt=0.39 train_steps=2.22 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep90 val_rocauc=0.92761 val_adapt_rocauc=0.92482 adapt_steps=2.29 halt=0.42 train_steps=1.98 /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='min')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( /orion/u/oscarwan/rrog-gnn-runner/.venv/lib/python3.13/site-packages/torch_geometric/utils/_scatter.py:91: UserWarning: The usage of `scatter(reduce='max')` can be accelerated via the 'torch-scatter' package, but it was not found warnings.warn( ep100 val_rocauc=0.92871 val_adapt_rocauc=0.92612 adapt_steps=2.34 halt=0.43 train_steps=1.94 [ogbg-molbbbp_pna_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=50 val={'rocauc': 0.9500149357761626} test={'rocauc': 0.6172839506172839} adaptive={'rocauc': 0.6179591049382716} steps=4.686274509803922 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_pna_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=gen compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view gen --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.78104 val_adapt_rocauc=0.86747 adapt_steps=2.68 halt=0.35 train_steps=2.43 ep20 val_rocauc=0.89664 val_adapt_rocauc=0.89754 adapt_steps=4.28 halt=0.31 train_steps=2.84 ep30 val_rocauc=0.92512 val_adapt_rocauc=0.92114 adapt_steps=4.62 halt=0.30 train_steps=3.15 ep40 val_rocauc=0.88798 val_adapt_rocauc=0.86727 adapt_steps=3.66 halt=0.35 train_steps=2.40 ep50 val_rocauc=0.92383 val_adapt_rocauc=0.93737 adapt_steps=2.48 halt=0.35 train_steps=2.51 ep60 val_rocauc=0.91218 val_adapt_rocauc=0.91278 adapt_steps=2.67 halt=0.37 train_steps=2.35 ep70 val_rocauc=0.90083 val_adapt_rocauc=0.91785 adapt_steps=2.15 halt=0.40 train_steps=2.04 ep80 val_rocauc=0.91646 val_adapt_rocauc=0.92612 adapt_steps=2.24 halt=0.43 train_steps=1.95 ep90 val_rocauc=0.91616 val_adapt_rocauc=0.92751 adapt_steps=2.23 halt=0.45 train_steps=1.79 ep100 val_rocauc=0.90909 val_adapt_rocauc=0.91865 adapt_steps=2.24 halt=0.44 train_steps=1.86 [ogbg-molbbbp_gen_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=30 val={'rocauc': 0.925121975505327} test={'rocauc': 0.6313657407407408} adaptive={'rocauc': 0.6291473765432098} steps=3.7892156862745097 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_gen_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=film compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view film --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.65558 val_adapt_rocauc=0.57483 adapt_steps=4.25 halt=0.29 train_steps=2.83 ep20 val_rocauc=0.89615 val_adapt_rocauc=0.88997 adapt_steps=4.61 halt=0.29 train_steps=3.15 ep30 val_rocauc=0.91606 val_adapt_rocauc=0.91606 adapt_steps=3.94 halt=0.30 train_steps=2.97 ep40 val_rocauc=0.87683 val_adapt_rocauc=0.88221 adapt_steps=3.41 halt=0.27 train_steps=3.07 ep50 val_rocauc=0.93926 val_adapt_rocauc=0.94832 adapt_steps=2.70 halt=0.29 train_steps=3.03 ep60 val_rocauc=0.92204 val_adapt_rocauc=0.92881 adapt_steps=3.16 halt=0.29 train_steps=2.99 ep70 val_rocauc=0.89714 val_adapt_rocauc=0.90451 adapt_steps=2.59 halt=0.34 train_steps=2.64 ep80 val_rocauc=0.91835 val_adapt_rocauc=0.92413 adapt_steps=2.57 halt=0.35 train_steps=2.65 ep90 val_rocauc=0.91048 val_adapt_rocauc=0.91745 adapt_steps=2.50 halt=0.34 train_steps=2.57 ep100 val_rocauc=0.92582 val_adapt_rocauc=0.93189 adapt_steps=2.41 halt=0.37 train_steps=2.51 [ogbg-molbbbp_film_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=50 val={'rocauc': 0.9392611769391616} test={'rocauc': 0.5584490740740741} adaptive={'rocauc': 0.5745563271604939} steps=3.2058823529411766 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_film_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=resgated compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view resgated --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.79478 val_adapt_rocauc=0.79906 adapt_steps=4.00 halt=0.30 train_steps=2.83 ep20 val_rocauc=0.90192 val_adapt_rocauc=0.90431 adapt_steps=2.94 halt=0.36 train_steps=2.35 ep30 val_rocauc=0.91327 val_adapt_rocauc=0.93100 adapt_steps=2.63 halt=0.36 train_steps=2.32 ep40 val_rocauc=0.88051 val_adapt_rocauc=0.89535 adapt_steps=2.30 halt=0.37 train_steps=2.38 ep50 val_rocauc=0.90401 val_adapt_rocauc=0.90829 adapt_steps=2.96 halt=0.37 train_steps=2.33 ep60 val_rocauc=0.86060 val_adapt_rocauc=0.87822 adapt_steps=2.16 halt=0.41 train_steps=2.03 ep70 val_rocauc=0.90859 val_adapt_rocauc=0.90770 adapt_steps=2.04 halt=0.44 train_steps=1.88 ep80 val_rocauc=0.89893 val_adapt_rocauc=0.90581 adapt_steps=2.04 halt=0.45 train_steps=1.76 ep90 val_rocauc=0.89824 val_adapt_rocauc=0.89893 adapt_steps=2.02 halt=0.45 train_steps=1.72 ep100 val_rocauc=0.89206 val_adapt_rocauc=0.89406 adapt_steps=2.01 halt=0.45 train_steps=1.74 [ogbg-molbbbp_resgated_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=30 val={'rocauc': 0.9132729264164094} test={'rocauc': 0.5753279320987655} adaptive={'rocauc': 0.5887345679012346} steps=3.593137254901961 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_resgated_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=tag compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view tag --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.79010 val_adapt_rocauc=0.90242 adapt_steps=2.69 halt=0.30 train_steps=2.96 ep20 val_rocauc=0.78353 val_adapt_rocauc=0.88868 adapt_steps=2.15 halt=0.32 train_steps=2.81 ep30 val_rocauc=0.94344 val_adapt_rocauc=0.94145 adapt_steps=2.73 halt=0.38 train_steps=2.31 ep40 val_rocauc=0.86787 val_adapt_rocauc=0.89565 adapt_steps=2.29 halt=0.39 train_steps=2.18 ep50 val_rocauc=0.94962 val_adapt_rocauc=0.95420 adapt_steps=2.25 halt=0.40 train_steps=2.20 ep60 val_rocauc=0.93269 val_adapt_rocauc=0.94374 adapt_steps=2.16 halt=0.41 train_steps=2.00 ep70 val_rocauc=0.93996 val_adapt_rocauc=0.94155 adapt_steps=2.23 halt=0.42 train_steps=1.93 ep80 val_rocauc=0.93727 val_adapt_rocauc=0.93598 adapt_steps=2.08 halt=0.46 train_steps=1.75 ep90 val_rocauc=0.93508 val_adapt_rocauc=0.92691 adapt_steps=2.04 halt=0.46 train_steps=1.73 ep100 val_rocauc=0.93717 val_adapt_rocauc=0.92980 adapt_steps=2.02 halt=0.46 train_steps=1.69 [ogbg-molbbbp_tag_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=50 val={'rocauc': 0.9496166484118291} test={'rocauc': 0.6579861111111112} adaptive={'rocauc': 0.6550925925925926} steps=2.6176470588235294 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_tag_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=sgc compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view sgc --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.65259 val_adapt_rocauc=0.79578 adapt_steps=2.69 halt=0.32 train_steps=2.68 ep20 val_rocauc=0.92612 val_adapt_rocauc=0.94066 adapt_steps=2.18 halt=0.38 train_steps=2.24 ep30 val_rocauc=0.93478 val_adapt_rocauc=0.94484 adapt_steps=2.27 halt=0.34 train_steps=2.50 ep40 val_rocauc=0.91576 val_adapt_rocauc=0.94056 adapt_steps=2.19 halt=0.42 train_steps=2.00 ep50 val_rocauc=0.90760 val_adapt_rocauc=0.92552 adapt_steps=2.36 halt=0.41 train_steps=2.02 ep60 val_rocauc=0.94753 val_adapt_rocauc=0.95798 adapt_steps=2.07 halt=0.45 train_steps=1.74 ep70 val_rocauc=0.93647 val_adapt_rocauc=0.94066 adapt_steps=2.13 halt=0.46 train_steps=1.65 ep80 val_rocauc=0.93289 val_adapt_rocauc=0.93777 adapt_steps=2.06 halt=0.46 train_steps=1.67 ep90 val_rocauc=0.93817 val_adapt_rocauc=0.94165 adapt_steps=2.05 halt=0.47 train_steps=1.68 ep100 val_rocauc=0.93757 val_adapt_rocauc=0.93916 adapt_steps=2.03 halt=0.46 train_steps=1.68 [ogbg-molbbbp_sgc_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=60 val={'rocauc': 0.947525639749079} test={'rocauc': 0.6593364197530864} adaptive={'rocauc': 0.6675347222222222} steps=2.2549019607843137 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_sgc_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=cheb compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view cheb --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.79966 val_adapt_rocauc=0.83352 adapt_steps=2.95 halt=0.33 train_steps=2.69 ep20 val_rocauc=0.87763 val_adapt_rocauc=0.88738 adapt_steps=2.30 halt=0.38 train_steps=2.38 ep30 val_rocauc=0.83511 val_adapt_rocauc=0.87225 adapt_steps=2.24 halt=0.40 train_steps=2.04 ep40 val_rocauc=0.93578 val_adapt_rocauc=0.94066 adapt_steps=2.38 halt=0.41 train_steps=2.09 ep50 val_rocauc=0.92881 val_adapt_rocauc=0.92642 adapt_steps=2.17 halt=0.44 train_steps=1.85 ep60 val_rocauc=0.92353 val_adapt_rocauc=0.91337 adapt_steps=2.12 halt=0.45 train_steps=1.78 ep70 val_rocauc=0.94962 val_adapt_rocauc=0.94494 adapt_steps=2.03 halt=0.46 train_steps=1.65 ep80 val_rocauc=0.93986 val_adapt_rocauc=0.93508 adapt_steps=2.13 halt=0.47 train_steps=1.65 ep90 val_rocauc=0.93080 val_adapt_rocauc=0.91835 adapt_steps=2.03 halt=0.46 train_steps=1.72 ep100 val_rocauc=0.92433 val_adapt_rocauc=0.91208 adapt_steps=2.03 halt=0.45 train_steps=1.80 [ogbg-molbbbp_cheb_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=70 val={'rocauc': 0.9496166484118291} test={'rocauc': 0.6182484567901234} adaptive={'rocauc': 0.611014660493827} steps=2.1666666666666665 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_cheb_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=arma compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view arma --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.55989 val_adapt_rocauc=0.61585 adapt_steps=2.59 halt=0.37 train_steps=2.15 ep20 val_rocauc=0.88748 val_adapt_rocauc=0.93000 adapt_steps=2.67 halt=0.40 train_steps=2.09 ep30 val_rocauc=0.90172 val_adapt_rocauc=0.91427 adapt_steps=2.22 halt=0.39 train_steps=2.27 ep40 val_rocauc=0.93269 val_adapt_rocauc=0.93189 adapt_steps=2.33 halt=0.38 train_steps=2.31 ep50 val_rocauc=0.92771 val_adapt_rocauc=0.92433 adapt_steps=2.20 halt=0.46 train_steps=1.75 ep60 val_rocauc=0.91228 val_adapt_rocauc=0.91984 adapt_steps=2.14 halt=0.44 train_steps=1.83 ep70 val_rocauc=0.94046 val_adapt_rocauc=0.93757 adapt_steps=2.02 halt=0.45 train_steps=1.70 ep80 val_rocauc=0.92273 val_adapt_rocauc=0.92801 adapt_steps=2.06 halt=0.47 train_steps=1.64 ep90 val_rocauc=0.92154 val_adapt_rocauc=0.92542 adapt_steps=2.08 halt=0.45 train_steps=1.79 ep100 val_rocauc=0.91845 val_adapt_rocauc=0.92233 adapt_steps=2.07 halt=0.46 train_steps=1.74 [ogbg-molbbbp_arma_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=70 val={'rocauc': 0.9404560390321618} test={'rocauc': 0.6411072530864197} adaptive={'rocauc': 0.636766975308642} steps=2.1519607843137254 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_arma_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=mf compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view mf --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.70109 val_adapt_rocauc=0.81280 adapt_steps=2.37 halt=0.29 train_steps=2.98 ep20 val_rocauc=0.91815 val_adapt_rocauc=0.92184 adapt_steps=3.19 halt=0.33 train_steps=2.59 ep30 val_rocauc=0.93030 val_adapt_rocauc=0.94095 adapt_steps=2.34 halt=0.36 train_steps=2.50 ep40 val_rocauc=0.93677 val_adapt_rocauc=0.94534 adapt_steps=2.69 halt=0.35 train_steps=2.51 ep50 val_rocauc=0.91098 val_adapt_rocauc=0.91238 adapt_steps=2.40 halt=0.38 train_steps=2.23 ep60 val_rocauc=0.92184 val_adapt_rocauc=0.92672 adapt_steps=2.20 halt=0.44 train_steps=1.87 ep70 val_rocauc=0.93598 val_adapt_rocauc=0.93926 adapt_steps=2.13 halt=0.45 train_steps=1.70 ep80 val_rocauc=0.90790 val_adapt_rocauc=0.91785 adapt_steps=2.10 halt=0.47 train_steps=1.64 ep90 val_rocauc=0.89864 val_adapt_rocauc=0.91019 adapt_steps=2.09 halt=0.47 train_steps=1.65 ep100 val_rocauc=0.89406 val_adapt_rocauc=0.90561 adapt_steps=2.11 halt=0.46 train_steps=1.70 [ogbg-molbbbp_mf_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=40 val={'rocauc': 0.936771880912078} test={'rocauc': 0.662133487654321} adaptive={'rocauc': 0.667824074074074} steps=3.5441176470588234 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_mf_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json [run] ogbg-molbbbp view=appnp compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:0 python3 rrog/train_ogb_graphprop.py --dataset ogbg-molbbbp --view appnp --compute rrog-act --T 1 --n_sup 3 --hidden 128 --bs 128 --epochs 100 --eval_every 10 --agg_layers 5 --compute_layers 2 --seed 0 --lam_q 0.1 --halt_max_steps 8 --halt_min_steps 2 --halt_target loss --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:0 --num_workers 0 ep10 val_rocauc=0.84975 val_adapt_rocauc=0.88719 adapt_steps=2.18 halt=0.43 train_steps=1.80 ep20 val_rocauc=0.88748 val_adapt_rocauc=0.92572 adapt_steps=2.08 halt=0.47 train_steps=1.62 ep30 val_rocauc=0.78114 val_adapt_rocauc=0.87962 adapt_steps=2.04 halt=0.46 train_steps=1.63 ep40 val_rocauc=0.86936 val_adapt_rocauc=0.91825 adapt_steps=2.01 halt=0.47 train_steps=1.63 ep50 val_rocauc=0.90660 val_adapt_rocauc=0.93378 adapt_steps=2.00 halt=0.46 train_steps=1.65 ep60 val_rocauc=0.82316 val_adapt_rocauc=0.90620 adapt_steps=2.01 halt=0.46 train_steps=1.68 ep70 val_rocauc=0.86389 val_adapt_rocauc=0.90242 adapt_steps=2.00 halt=0.46 train_steps=1.70 ep80 val_rocauc=0.82684 val_adapt_rocauc=0.89884 adapt_steps=2.02 halt=0.46 train_steps=1.68 ep90 val_rocauc=0.81639 val_adapt_rocauc=0.89884 adapt_steps=2.01 halt=0.47 train_steps=1.70 ep100 val_rocauc=0.82445 val_adapt_rocauc=0.90192 adapt_steps=2.01 halt=0.46 train_steps=1.64 [ogbg-molbbbp_appnp_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=50 val={'rocauc': 0.9066016130638256} test={'rocauc': 0.5573881172839507} adaptive={'rocauc': 0.6225887345679013} steps=2.014705882352941 wrote /orion/u/oscarwan/rrog-gnn-runner/runs/ogbg-molbbbp_appnp_rrog-act_T1_ns3_stream_hm8_hmin2_loss0.2_lq0.1_hex0.1_qw0_h128_e100_s0.json