--- license: other license_name: gg800-subset license_link: LICENSE configs: - config_name: default data_files: - split: train path: - train/metadata.csv - train/**/capture.mkv size_categories: - 1K the video clip - `events.srt` -> human-readable control timeline overlay - `events.jsonl` -> frame-level machine-readable control states The key contract: **frame and controls are aligned by frame index** (not loose timestamp matching), so training pipelines can reliably map visuals <-> actions. ### What the footage actually is 🎥 GG800-Subset contains action-agent gameplay footage from GTA V collected with a bias-reduction collection policy: - capture environment uses **GTA5 Enhanced** with the **NaturalVision Enhanced (NVE)** visual mod for higher-fidelity graphics; - each clip starts from a randomized world spawn location; - the agent is reset into either a random pedestrian state or a random vehicle context (for example car/bike/other road vehicle); - actions are programmatically generated to avoid repetitive route-locked behavior and improve behavioral coverage. Each clip follows a fixed format: - resolution: **720p** - frame rate: **12 FPS** - clip length: **384 frames** (32 seconds) - `events.jsonl`: **exactly 384 lines**, one per frame So the alignment invariant is strict: **frame `i` in video <-> line `i` in `events.jsonl`** for `i = 0..383`. Practical note: the first ~2 seconds (~24 frames) may include scene/asset loading artifacts in some clips. For model training/inference pipelines, a common practice is to skip these initial frames and use the final **360** frames. Even when you apply this trim, action logs remain perfectly synchronized with frames by index. --- ## Dataset Format (Simple + Practical) 📦 Each row corresponds to one clip directory with three assets: - `video` (`.mkv`) - `srt_file_name` (`.srt`) - `action_file_name` (`.jsonl`) In `events.jsonl`, each line includes: - `frame` (frame index) - `t` (seconds) - analog controls (`lx`, `ly`, `rx`, `ry`, `lt`, `rt`) - button state list (`buttons`) - optional context fields like reset/mode metadata This is designed so you can stream rows directly into action-conditioned training code with minimal preprocessing. --- ## Why this is useful for world models 🧠 - Action-conditioned trajectories (not just passive video) - Strong temporal alignment between controls and frames - Mixed contexts (on-foot + vehicle segments) - Collected for long-horizon, interactive modeling workflows --- ## Quick Start (Python) 🚀 ```python from datasets import load_dataset import json from huggingface_hub import hf_hub_download ds = load_dataset("lucidml/GG800-Subset", split="train") sample = ds[0] # `video` is a Video feature object/handle. video_obj = sample["video"] # Sidecar files are stored as relative paths in the dataset repo. srt_path = hf_hub_download( repo_id="lucidml/GG800-Subset", repo_type="dataset", filename=f"train/{sample['srt_file_name']}", ) jsonl_path = hf_hub_download( repo_id="lucidml/GG800-Subset", repo_type="dataset", filename=f"train/{sample['action_file_name']}", ) with open(jsonl_path, "r", encoding="utf-8") as f: first_event = json.loads(f.readline()) print("first frame event:", first_event) ``` --- ## License and Access 🔐 - GG800-Subset is released under the repository `LICENSE` file (research-focused terms). - For larger subsets, enterprise access, or full-dataset discussions, contact: - `abhishek@lucidml.ai` - Subject: `GG800 Access Inquiry` --- ## Citation 📝 If you use GG800-Subset in research, please cite the associated paper/technical report and mention: > "This work uses GG800-Subset, licensed under the GG800-Subset Research License v1.0." --- Thanks for building with GG800-Subset. If you create something cool, we would love to see it! 🌍⚡