summaryrefslogtreecommitdiff
path: root/logs/ogbg-molhiv_act_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_e100_s0.log
blob: 2b050b16388f5a1ea71767fba0960e66b71075a4 (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
[run] ogbg-molhiv view=gin compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.57684 val_adapt_rocauc=0.58405 adapt_steps=2.00 halt=0.47 train_steps=1.59
ep20 val_rocauc=0.60452 val_adapt_rocauc=0.59144 adapt_steps=2.01 halt=0.47 train_steps=1.59
ep30 val_rocauc=0.71542 val_adapt_rocauc=0.72246 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep40 val_rocauc=0.70211 val_adapt_rocauc=0.68285 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep50 val_rocauc=0.59821 val_adapt_rocauc=0.72487 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.64796 val_adapt_rocauc=0.71730 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep70 val_rocauc=0.70277 val_adapt_rocauc=0.73025 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep80 val_rocauc=0.68902 val_adapt_rocauc=0.72341 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.72762 val_adapt_rocauc=0.74793 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.74125 val_adapt_rocauc=0.75760 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_gin_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=100 val={'rocauc': 0.7412490201842054} test={'rocauc': 0.7254234342107805} adaptive={'rocauc': 0.7567005929044593} steps=2.00024313153416
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_gin_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=gcn compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.67913 val_adapt_rocauc=0.65745 adapt_steps=2.00 halt=0.47 train_steps=1.60
ep20 val_rocauc=0.53086 val_adapt_rocauc=0.70728 adapt_steps=2.02 halt=0.47 train_steps=1.59
ep30 val_rocauc=0.73614 val_adapt_rocauc=0.73784 adapt_steps=2.04 halt=0.48 train_steps=1.57
ep40 val_rocauc=0.74062 val_adapt_rocauc=0.74468 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep50 val_rocauc=0.64917 val_adapt_rocauc=0.74024 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.74111 val_adapt_rocauc=0.74943 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep70 val_rocauc=0.69073 val_adapt_rocauc=0.75506 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep80 val_rocauc=0.75837 val_adapt_rocauc=0.74771 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.77126 val_adapt_rocauc=0.75543 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.76237 val_adapt_rocauc=0.74920 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_gcn_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=90 val={'rocauc': 0.7712620027434841} test={'rocauc': 0.7476081036713725} adaptive={'rocauc': 0.7387782691824871} steps=2.012156576707999
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_gcn_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=sgc compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.56968 val_adapt_rocauc=0.68573 adapt_steps=2.01 halt=0.47 train_steps=1.60
ep20 val_rocauc=0.65960 val_adapt_rocauc=0.64533 adapt_steps=2.00 halt=0.47 train_steps=1.59
ep30 val_rocauc=0.73782 val_adapt_rocauc=0.74603 adapt_steps=2.03 halt=0.48 train_steps=1.57
ep40 val_rocauc=0.70390 val_adapt_rocauc=0.72870 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep50 val_rocauc=0.68717 val_adapt_rocauc=0.73036 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.68431 val_adapt_rocauc=0.72508 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep70 val_rocauc=0.69653 val_adapt_rocauc=0.73800 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep80 val_rocauc=0.70493 val_adapt_rocauc=0.74137 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.69423 val_adapt_rocauc=0.73412 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.69464 val_adapt_rocauc=0.74486 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_sgc_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=30 val={'rocauc': 0.7378227268273565} test={'rocauc': 0.7035709457502076} adaptive={'rocauc': 0.724386334228162} steps=2.0269876002917577
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_sgc_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=tag compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.64438 val_adapt_rocauc=0.62773 adapt_steps=2.01 halt=0.47 train_steps=1.60
ep20 val_rocauc=0.64326 val_adapt_rocauc=0.64524 adapt_steps=2.01 halt=0.47 train_steps=1.61
ep30 val_rocauc=0.68766 val_adapt_rocauc=0.66943 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep40 val_rocauc=0.63871 val_adapt_rocauc=0.72422 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep50 val_rocauc=0.63257 val_adapt_rocauc=0.73165 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.68678 val_adapt_rocauc=0.75939 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep70 val_rocauc=0.73265 val_adapt_rocauc=0.76437 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep80 val_rocauc=0.71019 val_adapt_rocauc=0.75081 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.71181 val_adapt_rocauc=0.75327 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.72871 val_adapt_rocauc=0.76052 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_tag_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=70 val={'rocauc': 0.7326450127376054} test={'rocauc': 0.759611039224396} adaptive={'rocauc': 0.7786419204696885} steps=2.0
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_tag_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=graphconv compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.62212 val_adapt_rocauc=0.62817 adapt_steps=2.01 halt=0.47 train_steps=1.60
ep20 val_rocauc=0.61445 val_adapt_rocauc=0.69759 adapt_steps=2.00 halt=0.47 train_steps=1.59
ep30 val_rocauc=0.68557 val_adapt_rocauc=0.71732 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep40 val_rocauc=0.47925 val_adapt_rocauc=0.71316 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep50 val_rocauc=0.61766 val_adapt_rocauc=0.69094 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.73183 val_adapt_rocauc=0.73302 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep70 val_rocauc=0.72858 val_adapt_rocauc=0.73825 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep80 val_rocauc=0.74850 val_adapt_rocauc=0.74077 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.73303 val_adapt_rocauc=0.74217 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.73150 val_adapt_rocauc=0.73659 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_graphconv_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=80 val={'rocauc': 0.7484965951401137} test={'rocauc': 0.722140249908264} adaptive={'rocauc': 0.7285405280132873} steps=2.00024313153416
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_graphconv_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=appnp compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.70638 val_adapt_rocauc=0.68842 adapt_steps=2.01 halt=0.47 train_steps=1.60
ep20 val_rocauc=0.64695 val_adapt_rocauc=0.67193 adapt_steps=2.00 halt=0.47 train_steps=1.59
ep30 val_rocauc=0.71509 val_adapt_rocauc=0.75189 adapt_steps=2.01 halt=0.48 train_steps=1.58
ep40 val_rocauc=0.65625 val_adapt_rocauc=0.68931 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep50 val_rocauc=0.73236 val_adapt_rocauc=0.74043 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.68610 val_adapt_rocauc=0.70942 adapt_steps=2.01 halt=0.48 train_steps=1.58
ep70 val_rocauc=0.71282 val_adapt_rocauc=0.71800 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep80 val_rocauc=0.70420 val_adapt_rocauc=0.71488 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.71668 val_adapt_rocauc=0.72406 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.71284 val_adapt_rocauc=0.72607 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_appnp_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=50 val={'rocauc': 0.7323571918479326} test={'rocauc': 0.7487070047702736} adaptive={'rocauc': 0.7287433129260897} steps=2.0063214198881596
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_appnp_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=pna compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.52661 val_adapt_rocauc=0.57540 adapt_steps=2.02 halt=0.47 train_steps=1.60
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.53124 val_adapt_rocauc=0.54271 adapt_steps=2.00 halt=0.48 train_steps=1.58
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.64086 val_adapt_rocauc=0.71386 adapt_steps=2.00 halt=0.48 train_steps=1.57
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.66964 val_adapt_rocauc=0.69129 adapt_steps=2.00 halt=0.48 train_steps=1.58
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.63916 val_adapt_rocauc=0.69673 adapt_steps=2.00 halt=0.48 train_steps=1.57
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.73238 val_adapt_rocauc=0.74287 adapt_steps=2.00 halt=0.48 train_steps=1.57
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.73849 val_adapt_rocauc=0.76782 adapt_steps=2.00 halt=0.48 train_steps=1.57
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.72881 val_adapt_rocauc=0.78390 adapt_steps=2.00 halt=0.48 train_steps=1.57
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.73387 val_adapt_rocauc=0.77480 adapt_steps=2.00 halt=0.48 train_steps=1.57
/home/yurenh2/miniconda3/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(
/home/yurenh2/miniconda3/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=0.73341 val_adapt_rocauc=0.77625 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_pna_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=70 val={'rocauc': 0.7384932882618068} test={'rocauc': 0.7185075030417737} adaptive={'rocauc': 0.7421078043222156} steps=2.0
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_pna_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json
[run] ogbg-molhiv view=resgated compute=rrog-act mode=stream T=1 ns=3 seed=0 device=cuda:3
python3 rrog/train_ogb_graphprop.py --dataset ogbg-molhiv --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 exact --halt_loss_threshold 0.2 --halt_exploration_prob 0.1 --act_train_mode stream --q_warmup_epochs 0 --device cuda:3 --num_workers 0
ep10 val_rocauc=0.50096 val_adapt_rocauc=0.63103 adapt_steps=2.00 halt=0.47 train_steps=1.60
ep20 val_rocauc=0.65405 val_adapt_rocauc=0.70279 adapt_steps=2.00 halt=0.47 train_steps=1.58
ep30 val_rocauc=0.68276 val_adapt_rocauc=0.65325 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep40 val_rocauc=0.80097 val_adapt_rocauc=0.78965 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep50 val_rocauc=0.77943 val_adapt_rocauc=0.71584 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep60 val_rocauc=0.77564 val_adapt_rocauc=0.75634 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep70 val_rocauc=0.77493 val_adapt_rocauc=0.78545 adapt_steps=2.00 halt=0.48 train_steps=1.58
ep80 val_rocauc=0.77393 val_adapt_rocauc=0.77547 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep90 val_rocauc=0.76533 val_adapt_rocauc=0.76729 adapt_steps=2.00 halt=0.48 train_steps=1.57
ep100 val_rocauc=0.76010 val_adapt_rocauc=0.76356 adapt_steps=2.00 halt=0.48 train_steps=1.57
[ogbg-molhiv_resgated_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0] best_ep=40 val={'rocauc': 0.8009657309425828} test={'rocauc': 0.7787017903010873} adaptive={'rocauc': 0.7875702504876494} steps=2.0
  wrote /home/yurenh2/rrog-gnn-runner/runs/ogbg-molhiv_resgated_rrog-act_T1_ns3_stream_hm8_hmin2_exact_lq0.1_hex0.1_qw0_h128_e100_s0.json