--- license: mit --- # Dataset Card for "JDWebProgrammer/arg-agi-augmented" ## Dataset Description ### Overview This dataset is an augmented version of grids extracted from the [ARC-AGI dataset](https://huggingface.co/datasets/dataartist/arc-agi) (Abstraction and Reasoning Corpus). It focuses on **individual grids** rather than full tasks or games, providing an expanded collection for pretraining and testing models like autoencoders (AEs) or latent-space reasoners. - **Source**: Derived from the `training` split of ARC-AGI (all demonstration and test grids). - **Augmentations**: Each original grid is expanded with 5 transformations (horizontal flip, vertical flip, 90°/180°/270° rotations), resulting in 6 variants per grid (original + 5 augments). - **Key Note**: This is **not the full games/tasks** from ARC-AGI. It contains only the raw, augmented grids (as 2D lists of integers 0-10) for standalone use in perceptual pretraining or reconstruction testing. Use the original ARC-AGI for full few-shot reasoning tasks. ### Dataset Structure - **Format**: Hugging Face `Dataset` object. - **Splits**: Single split (`train`) with one field: - `augmented_grids`: List of 2D lists (grids). Each grid is `[[int, ...], ...]` (H x W, values 0-10). - **Size**: ~48,000 grids (from ~400 ARC training tasks × ~4 grids/task × 6 augments). - **Metadata**: See `metadata.json` for stats (original grids, augmentation factor). Example grid entry: ```python augmented_grids[0] = [[0, 1, 0], [1, 0, 1], [0, 1, 0]] # Example 3x3 grid ``` ### Usage Load and use for AE pretraining: ```python from datasets import load_dataset ds = load_dataset("JDWebProgrammer/arc-agi-augmented") grids = ds['train']['augmented_grids'] # List of all grids # Example: Batch grids for AE def grid_to_tensor(grid): h, w = len(grid), len(grid[0]) return torch.tensor(grid, dtype=torch.float).view(1, -1) / 10.0 # Normalize 0-1 batch = torch.cat([grid_to_tensor(g) for g in grids[:32]]) # Batch of 32 # Feed to AE: z = ae.encode(batch); recon = ae.decode(z) ``` Ideal for: - Pretraining perceptual models. - Testing reconstruction accuracy (compare original vs. augmented). - Data augmentation for fluid intelligence tasks (e.g., ARC-like pattern inference). ### Generation - Extracted all input/output grids from ARC-AGI `training` split demos/tests. - Applied deterministic augmentations (flips/rotations) to expand variety without labels. - No synthetic generation — pure augmentation of real ARC data. ### Limitations - Grids only (no task structure/context) — not for end-to-end ARC solving. - Augmentations preserve structure but may introduce artifacts (e.g., rotations on asymmetric grids). - Values 0-10 (ARC standard); normalize for models. ### License - Based on ARC-AGI (CC BY-SA 4.0) — inherits same license. - Augmentations: MIT (free for research/commercial). ### Citation ```bibtex @misc{dataartist/arc-agi, title = {Augmented ARC-AGI Grids for Pretraining}, author = {dataartist}, year = {2025}, url = {https://huggingface.co/datasets/your_username/arc-augmented-grids} } ``` --- *Generated for pretraining perceptual models on ARC-style puzzles. Not a substitute for full ARC tasks.*