# Research Takeaways This generated note summarizes what the current public Xperience-10M sample pipeline actually shows. It is built from committed metric artifacts, not from hand-edited score text. ## Scope - validated episodes: 1 - frames: 5,821 - aligned windows: 1,161 - current feature dimension: 8,546 - raw Xperience-10M data is not redistributed - Audio from the sample MP4 stream is represented in the current feature vector ## Takeaways ### One episode can become a real benchmark contract The public sample is converted into 5,821 frames, 1,161 aligned 20-frame windows, and an 8,546-dimensional feature contract. | Metric | Value | | --- | ---: | | `frames` | 5,821 | | `windows` | 1,161 | | `feature_dim` | 8,546 | Source: `docs/data/summary_metrics.json`. Current scope: This benchmark defines the task contract; cross-episode generalization is evaluated in the multi-episode stage. ### Chronological splits expose action-class shift Earlier all-feature action classifiers reach high macro-F1 on their local split, but the core chronological action/subtask heads are much harder because later held-out windows include unseen labels. | Metric | Value | | --- | ---: | | `all_feature_action_macro_f1` | 0.9829 | | `suite_action_macro_f1` | 0.0500 | | `suite_subtask_macro_f1` | 0.0506 | | `unseen_action_test_classes` | 4 | Source: `results/episode_task_suite/summary_report.json`. Current scope: This split is useful for studying label shift; broad action-recognition conclusions need held-out episodes. ### Small neural heads help dynamic and temporal probes The MLP heads substantially improve hand trajectory forecasting, temporal-order verification, and motion/visual synchronization. | Metric | Value | | --- | ---: | | `hand_mpjpe_minimal` | 0.8647 | | `hand_mpjpe_neural` | 0.1079 | | `hand_mpjpe_relative_improvement` | 0.8753 | | `temporal_order_f1_minimal` | 0.5400 | | `temporal_order_f1_neural` | 0.8520 | | `misalignment_f1_minimal` | 0.5052 | | `misalignment_f1_neural` | 0.7153 | Source: `results/episode_task_suite/neural_mlp/*/metrics.json`. Current scope: These gains are measured within one episode and are candidates for held-out-episode testing. ### Retrieval and reconstruction remain the harder multimodal problems Ridge/cosine retrieval remains stronger than the neural projection on this sample, and cross-modal reconstruction still has negative R2. | Metric | Value | | --- | ---: | | `retrieval_mrr_minimal` | 0.2693 | | `retrieval_mrr_neural` | 0.1300 | | `retrieval_top5_minimal` | 0.3678 | | `reconstruction_r2_minimal` | -0.0153 | | `reconstruction_r2_neural` | -0.0102 | Source: `results/episode_task_suite/cross_modal_retrieval/metrics.json`. Current scope: The current reconstruction task predicts feature vectors; depth, mesh, NeRF, and Gaussian-splatting outputs are future task variants. ### Audio helps some tasks and hurts others on the public sample Audio improves the primary metric on 6 walkthrough-backed task contracts, while raw log-mel replacement improves over the current handcrafted block on 6 of those contracts. The largest current-audio gain appears in feature reconstruction, not in action classification. | Metric | Value | | --- | ---: | | `tasks_where_current_audio_improves` | 6 | | `mean_current_audio_delta` | 0.0418 | | `tasks_where_raw_replacement_improves` | 6 | | `mean_raw_replacement_delta_vs_current` | 0.0936 | | `reconstruction_current_audio_delta` | 0.6524 | | `object_relevance_current_audio_delta` | 0.0102 | Source: `results/audio_ablation/audio_ablation_summary.json`. Current scope: This is a single-episode ablation over fixed ridge heads. It validates that audio is wired into the task suite and shows where it changes metrics; it does not prove cross-episode audio generalization. ### The next scientific unit is held-out episodes, not more adjacent windows The selected Qwen3-Omni path now has a verified two-epoch held-out diagnostic result. It proves the cross-episode train/validation/eval loop and meets the strict-JSON target, while weak action/subtask metrics remain the next modeling problem. | Metric | Value | | --- | ---: | | `selected_episodes` | 128 | | `held_out_test_windows` | n/a | | `json_validity_rate` | n/a | | `action_macro_f1` | n/a | Source: `docs/data/omni_finetune_verified_result.json`. Current scope: The selected-episode Qwen3-Omni diagnostic pilot is verified on the 96/16/16 split and now meets the 98% target for JSON validity; action/subtask quality remains weak, so current results are diagnostic baselines rather than a final model-quality ranking. ## How To Read These Results - High single-episode scores are useful pipeline checks for the current task contracts. - Low chronological action/subtask scores are informative because they expose later-label shift. - Neural gains on trajectory/order/alignment make those tasks good candidates for the next fine-tuning stage. - Audio ablation is task-specific: audio representation choices help some probes and hurt others. - Retrieval and reconstruction remain the main multimodal representation challenges. - The next credible model-quality result needs held-out episodes.