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{
  "title": "Ropedia Xperience-10M Project Brief",
  "summary": "A concise first-reader brief for the public-sample embodied-AI task lab and its multi-episode scale-up path.",
  "current_artifacts": [
    {
      "layer": "Data unit",
      "status": "1 public sample episode, 5,821 frames, 1,161 synchronized 20-frame windows"
    },
    {
      "layer": "Modalities",
      "status": "Video-derived features, AAC audio, depth, pose/SLAM, mocap, IMU, calibration, and language-derived features"
    },
    {
      "layer": "Task suite",
      "status": "12 embodied-AI task contracts with inputs, targets, metrics, predictions, and case-study walkthroughs"
    },
    {
      "layer": "Models",
      "status": "Minimal linear/ridge/logistic baselines plus compact PyTorch MLP heads for the same 12 tasks"
    },
    {
      "layer": "Research map",
      "status": "Four Ropedia research directions with direct, proxy, diagnostic, and extension-task coverage"
    },
    {
      "layer": "Scale-up path",
      "status": "Qwen3-Omni LoRA pilot code path prepared for 32 held-out episodes after gated data access"
    }
  ],
  "reading_order": [
    "Start with the website or PROJECT_BRIEF.md to understand the project shape.",
    "Open RESEARCH_ROADMAP.md to see how the work scales from the public sample to multi-episode modeling.",
    "Open EVALUATION_PROTOCOL.md before comparing task scores.",
    "Use RESEARCH_TAKEAWAYS.md for the current metric interpretation.",
    "Inspect results/episode_task_suite/feature_manifest.json to understand one model input.",
    "Use results/omni_finetune/DATA_ACCESS_STATUS.md for the multi-episode data status."
  ],
  "scope_boundary": "The public sample is enough to build and verify task definitions, feature contracts, metrics, visualization, and baseline code. It is not enough to measure final model quality for a general embodied-AI model.",
  "next_stage": "Run the same contracts on held-out episodes, then fine-tune and evaluate an omni-model with train/test separation at the episode level.",
  "entry_points": {
    "visual_dashboard": "https://chaoyue0307.github.io/ropedia-xperience-10m-task-suite/",
    "hf_space": "https://huggingface.co/spaces/cy0307/ropedia-xperience-10m-task-suite",
    "artifact_dataset": "https://huggingface.co/datasets/cy0307/ropedia-xperience-10m-task-suite-artifacts",
    "baseline_model_bundle": "https://huggingface.co/cy0307/ropedia-xperience-10m-task-baselines",
    "official_xperience10m_dataset": "https://huggingface.co/datasets/ropedia-ai/xperience-10m"
  }
}