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debug-abupt-chunked-onecase-0518
debug-abupt-chunked-run311-0518
debug-abupt-chunked-run311-0519-fixed
debug-abupt-oneshot-onecase-0518
debug-abupt-oneshot-run311-0518
debug-abupt-query-run311-0518
debug-abupt-query-run311-0519-fixed
eval-20260516-pe-transolver-seed1-full
eval-abupt-500k-s0-bf16-fixevals
eval-abupt-500k-s0-fp32-fixevals
eval-abupt-500k-s0-fp32-sharded
eval-abupt-500k-s1-sharded
eval-abupt-500k-s1-unsharded
eval-abupt-anchor1k-500k-s0
eval-abupt-anchor2k-500k-s0
eval-abupt-anchor4k-500k-s0
eval-abupt-fast8k-100k-0515-v9
eval-abupt-fast8k-500k-s1
eval-abupt-overnight-abupt-fast8k-100k-0515-v9-val-full
eval-cape-pretrain-100k-0601
eval-cape-pretrain-100k-0601-latest-0602
eval-cape-pretrain-tokenenc-fix-100k-0608
eval-cape-pretrain-uniform-100k-0602
eval-exp-0427-abupt-anch16k-feat-lion-8gpu-100k-full-test
eval-exp-0427-abupt-anch16k-feat-lion-8gpu-100k-full-val
eval-exp-20260506-main-models-200k-abupt-full-test
eval-exp-20260506-main-models-200k-abupt-full-val
eval-good-100k-sharded-full
eval-good-100k-unsharded-full
eval-good-abupt-smoke-A
eval-good-abupt-smoke-B
eval-parity-fresh-abupt-ema-full8-0515
eval-parity-fresh-abupt-fast8k-full8-0515
eval-parity-fresh-tx-raw-full-0515
eval-rank-parity-smoke
eval-t3-variant-max-100k-1m-fullmesh
eval-train-abupt-fast8k-500k-s0-0516-full-test
eval-train-abupt-fast8k-500k-s0-0516-full-val
smoke-artifact-full-eval-0515
smoke-artifact-unified-eval-0515
val-abupt-chunked-500k-s0-0518
val-abupt-query-500k-s0-0518
weekend-ab1k-500k-s0-0516d-val
weekend-ab2k-500k-s0-0516d-val
weekend-ab2k-500k-s0-0516d-val-fixed
weekend-ab4k-500k-s0-0516d-val
weekend-ab8k-500k-s0-0516d-val
weekend-abupt-500k-s1-0516-val
weekend-fast8k-500k-s0-0516-val
weekend-fast8k-500k-s1-0516-val
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train: 400 · val: 34 · test: 50 · showing 1–20 of 484 · OOD scores: 84/484 · predictions: 1/484 (debug-abupt-chunked-onecase-0518)
run_1
train
run_2
train
run_3
train
run_4
val
OOD 0.503
low 0.00%
run_5
train
run_6
train
run_7
train
run_8
train
run_9
train
run_10
train
run_11
test
OOD 0.000
low 0.00%
run_12
test
OOD 0.000
low 0.00%
run_13
train
run_14
train
run_15
train
run_16
train
run_17
train
run_18
train
run_19
test
OOD 0.000
low 0.00%
run_20
test
OOD 0.000
low 0.00%