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ONNX-Bench

Paper Code Project Page

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
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