Dataset Viewer
The dataset viewer is not available because its heuristics could not detect any supported data files. You can try uploading some data files, or configuring the data files location manually.
ONNX-Bench
A large-scale benchmark of neural network architectures represented in a unified ONNX format with performance labels. Designed to train and evaluate universal, search-space-agnostic surrogate models.
✨ Highlights
- 📦 649,596 architectures across multiple NAS search spaces, standardised to ONNX.
- 🧪 Consistent evaluation on CIFAR-10 for most spaces; includes additional UnseenNAS tasks within einspace.
- 🧱 Rich architectural diversity (cell-based, hierarchical), enabling cross-space generalisation studies.
- 🔧 Pre-simplified ONNX graphs (via onnx-simplifier) for stable parsing and downstream encoding.
- 📈 Ready for performance prediction, zero-shot transfer, and universal surrogate training.
Key stats from the paper:
- Node counts span 1–3503; CIFAR-10 top-1 accuracy across [0.0, 97.03].
- Strong operational diversity within and across spaces (see paper’s JSD analysis).
🧭 What’s Inside
| Search Space | Type | Evaluation | Num Architectures |
|---|---|---|---|
| NAS-Bench-101 | Cell-based | CIFAR-10 | 423624 |
| NAS-Bench-201 | Cell-based | CIFAR-10 | 15625 |
| NATS-Bench | Cell-based | CIFAR-10 | 32768 |
| NAS-Bench-301 | Cell-based | CIFAR-10 | 57189 |
| TransNAS-Bench-101 | Cell-based | Other | 38895 |
| hNAS-Bench-201 | Hierarchical | CIFAR-10 | 8000 |
| einspace | Hierarchical | CIFAR-10 | 57495 |
| einspace | Hierarchical | UnseenNAS | 16000 |
| Total | 649596 |
- Downloads last month
- 49