# Project Brief This project presents Ropedia Xperience-10M through two public evidence lines. Line 1 turns one public sample episode into a concrete 20-task embodied-AI task lab. Line 2 compares selected 128-episode public-safe artifacts across aligned baselines, Qwen3-Omni v6, Cosmos3-Super, and Cosmos3-Nano. ## Research Intent The public sample is treated as a small but real research system, while the selected-128 line shows the first same-split scale-up comparison. The project does not blend those two evidence types. A reader should be able to trace one model input, understand each task, reproduce the public-sample results, compare the 128-episode method rows, and see what remains before presenting stronger model-quality numbers. ## Capability Map | Capability | Evidence in this project | | --- | --- | | Data understanding | `feature_manifest.json`, `available_modalities.json`, modality atlas, episode-window HF viewer | | Task design | 20 unified task contracts, task cards, case-study walkthroughs, and four research-direction extension probes | | Evaluation rigor | chronological split, per-task metrics, predictions, confusion matrices, leakage notes, and generated takeaways | | Scale-up planning | Final verified 96/16/16 Qwen3-Omni v6 diagnostic row, same-split 128-episode baseline alignment, Cosmos3-Nano compatibility diagnostics, Cosmos3-Super diagnostics, and policy-model candidates after action-space conversion | ## What Exists Now | Evidence view | Current artifact | | --- | --- | | Line 1 data unit | 1 public sample episode, 5,821 frames, 1,161 synchronized 20-frame windows | | Line 2 data unit | Selected 96/16/16 split over 128 source episodes, 34,269 Qwen3-Omni v6 multiscale windows, and public-safe processed features linked to official gated episode paths | | Modalities | Video-derived features, audio, depth, pose/SLAM, mocap, IMU, calibration, and language-derived features | | Task suite | 20 embodied-AI task contracts with inputs, targets, metrics, predictions, and setup alignment | | Line 1 models | Minimal linear/ridge/logistic baselines plus compact PyTorch MLP heads for the unified 20-task public-sample suite | | Line 2 methods | Metadata simple/NN, raw-feature simple/NN, Qwen3-Omni v6 LoRA, Cosmos3-Super Reasoner, and Cosmos3-Nano Future Window; 140/140 selected-128 scores, including 6 marked compact-proxy cells | | Research map | Four Ropedia research directions with direct, proxy, diagnostic, and extension-task coverage | | Qwen3 lineage | Qwen3-Omni v1-v6 are run versions inside Line 2: v1-v4 are pipeline-hardening/ablation evidence, v5 is the pinned prior multiscale release, and v6 is the current 20-task Qwen3-Omni row | ## How To Read It 1. Start with `PUBLIC_READER_MAP.md` if you need to choose between GitHub, the website, Hugging Face artifacts, baseline weights, model-result repos, or release-health files. 2. Start with the website or this brief to understand the project shape. 3. Open `RESEARCH_ROADMAP.md` to see how the work scales from the public sample to multi-episode modeling. 4. Open `EVALUATION_PROTOCOL.md` before comparing task scores. 5. Use `RESEARCH_TAKEAWAYS.md` for the current metric interpretation. 6. Inspect `results/episode_task_suite/feature_manifest.json` to understand one model input. 7. Use `TASK_SUITE_20.md` and `docs/data/task_suite_20.json` to read the unified 20-task suite; the historical `docs/data/tier2_task_suite.json` path stores provenance rows inside that same suite. 8. Use `QWEN3_OMNI_RUN_LINEAGE.md` and `docs/data/qwen3_omni_run_lineage.json` to read v1-v6 correctly. 9. Use `docs/data/omni_finetune_verified_result.json` for the current multi-episode Qwen3-Omni v6 result. ## What This Enables Line 1 is enough to build and verify task definitions, feature contracts, metrics, visualization, and baseline code. It is not enough to measure final general embodied-AI model quality. Line 2 verifies the selected-128 held-out comparison surface and the Qwen3-Omni v6 diagnostic row; the next research stage is action/subtask error analysis, stronger structured-output training, and policy-target conversion before broader backbone comparisons. ## Best Entry Points | Entry point | Link | | --- | --- | | Public reader map | https://github.com/ChaoYue0307/ropedia-xperience-10m-task-suite/blob/main/PUBLIC_READER_MAP.md | | Visual dashboard | https://chaoyue0307.github.io/ropedia-xperience-10m-task-suite/ | | Interactive HF Space | https://huggingface.co/spaces/cy0307/ropedia-xperience-10m-task-suite | | Derived artifacts | https://huggingface.co/datasets/cy0307/ropedia-xperience-10m-task-suite-artifacts | | Baseline model bundle | https://huggingface.co/cy0307/ropedia-xperience-10m-task-baselines | | Official Xperience-10M dataset | https://huggingface.co/datasets/ropedia-ai/xperience-10m |