# 128-Episode Task Suite Enhancement Pack Run id: `task_suite_enhancement_128_v1_20260608` This non-overwriting enhancement pack records how to push the current 128-episode task suite harder without adding more raw episodes. ## Current Evidence - Current public export windows: `3808` - Window split counts: `train 2848 / val 512 / test 448` - Selected episode split: `train 96 / val 16 / test 16` - Windowed episode ids in baseline CSV: `train 89 / val 16 / test 14` - Qwen3 v4 JSON validity: `1.0000` - Qwen3 v4 action macro-F1: `0.001868` - Qwen3 v4 subtask accuracy: `0.000000` - Qwen3 v4 unseen-label sample share: `0.7076` ## Dense-Window Scenarios | scenario | estimated windows | multiplier | role | | --- | ---: | ---: | --- | | `current_export` | 3808 | 1.0 | current public 128-episode JSON-task export | | `dense_20f_stride20` | 30422 | 7.99 | non-overlap dense coverage over each observed episode frame span | | `dense_20f_stride10` | 60725 | 15.95 | 2x overlap action/subtask densification | | `dense_20f_stride5` | 121331 | 31.86 | high-overlap action boundary and transition stress setting | | `medium_40f_stride20` | 30303 | 7.96 | subtask/procedure context window | | `long_80f_stride40` | 15067 | 3.96 | procedure and world-model context window | | `multiscale_20s10_40s20_80s40` | 106095 | 27.86 | recommended no-new-episode v5 export: short action windows plus medium/long procedure context | ## Highest-Priority Bottlenecks | task | priority | simple score | bottleneck | next action | | --- | --- | ---: | --- | --- | | Next-Action Prediction | highest | 0.000200 | fine-grained label explosion and held-out unseen labels | add hierarchical action/subtask families plus label-normalized scoring | | Action Recognition | highest | 0.000175 | fine-grained label explosion and held-out unseen labels | add hierarchical action/subtask families plus label-normalized scoring | | Procedure Step Recognition | highest | 0.000000 | fine-grained label explosion and held-out unseen labels | add hierarchical action/subtask families plus label-normalized scoring | | Cross-Modal Retrieval | high | | missing raw 128-episode feature blocks | export compact raw-feature shards for this task before model comparison | | Hand Trajectory Forecasting | high | | missing raw 128-episode feature blocks | export compact raw-feature shards for this task before model comparison | | Multimodal Synchronization Detection | high | | missing raw 128-episode feature blocks | export compact raw-feature shards for this task before model comparison | | Cross-Modal Reconstruction | high | | missing raw 128-episode feature blocks | export compact raw-feature shards for this task before model comparison | | Language Grounding | medium | 0.012786 | weak public-safe metadata/text baseline | add dense windows and stronger fusion baselines before interpreting model quality | ## Recommended Next Run Use `multiscale_20s10_40s20_80s40` as the next export target, then train a Qwen3 v5 hierarchical-target LoRA/partial-unfreeze run against the unchanged 96/16/16 episode split. In parallel, export compact raw 128-episode feature shards for trajectory, retrieval, reconstruction, and synchronization tasks so the simple and neural baselines can be fully aligned beyond the JSON-supported labels. The current artifacts remain the baseline; future runs should write new run ids and publish separate verified packages.