Datasets:
Tasks:
Graph Machine Learning
Sub-tasks:
multi-class-classification
Languages:
English
Size:
100K - 1M
ArXiv:
License:
metadata
language:
- en
license: bsd-3-clause
size_categories:
- 100K<n<1M
task_categories:
- graph-ml
task_ids:
- multi-class-classification
pretty_name: TEDBench
tags:
- protein
- structure
- fold-classification
- tedbench
- alphafold
- cath
TEDBench
Large-scale, non-redundant benchmark for protein fold classification built from Encyclopedia of Domains (TED) annotations projected onto the Foldseek-clustered AlphaFold Database.
This dataset was presented in the paper Protein Fold Classification at Scale: Benchmarking and Pretraining.
Dataset statistics
| Split | Structures |
|---|---|
| Train | 369,740 |
| Val | 46,217 |
| Test | 46,218 |
965 CATH topology (T-level) classes — rare topologies with fewer than 10 samples are merged into architecture-level "x" classes.
Schema
| Column | Type | Description |
|---|---|---|
name |
string |
AlphaFold domain identifier (e.g. AF-Q8IYB3-F1) |
sequence |
string |
Amino-acid sequence (single-letter code) |
coords |
[L, 3, 3] float32 |
Backbone N/Cα/C coordinates (Å) |
plddt |
[L] float32 |
Per-residue AlphaFold pLDDT confidence score |
residue_index |
[L] int64 |
Residue index in the original AlphaFold model |
seq_ids |
[L] int64 |
ESM-tokenised sequence IDs |
label |
ClassLabel |
CATH topology class index (names are CATH T-level code strings, e.g. "3.40.50.300") |
label is a datasets.ClassLabel whose .names list contains the CATH
topology strings (e.g. "3.40.50.300"), so the dataset is fully self-contained.
Usage
Load from HuggingFace
from datasets import load_dataset
import torch
ted = load_dataset("TEDBench/ted")
sample = ted["train"][0]
coords = torch.tensor(sample["coords"]) # [L, 3, 3]
plddt = torch.tensor(sample["plddt"]) # [L]
label = sample["label"] # int index
# Decode label → CATH code string:
cath_code = ted["train"].features["label"].int2str(label)
Use in TEDBench training scripts
# Fine-tune pretrained MiAE-B on TEDBench
python main_finetune_ted.py datamodule=hf_ted \
pretrained_model_path=TEDBench/miae-b \
experiment=finetune_ted_base_n1g8
# Linear probing with pretrained MiAE-B
python main_linprobe_ted.py datamodule=hf_ted \
pretrained_model_path=TEDBench/miae-b
# Evaluate a fine-tuned model on the CATH 4.4 external test set
python main_test_ted.py datamodule=hf_cath_test \
pretrained_model_path=TEDBench/miae-b-ft
Source data
Citation
@inproceedings{chen2026tedbench,
title={Protein Fold Classification at Scale: Benchmarking and Pretraining},
author={Chen, Dexiong and Manolache, Andrei and Niepert, Mathias and Borgwardt, Karsten},
booktitle={Proceedings of the 43rd International Conference on Machine Learning (ICML)},
year={2026}
}
License
BSD-3-Clause