The dataset viewer is not available for this split.
Error code: StreamingRowsError
Exception: CastError
Message: Couldn't cast
seed_0: struct<detailed_results: struct<completeness: struct<total_samples: int64, assigned_samples: int64, (... 5162 chars omitted)
child 0, detailed_results: struct<completeness: struct<total_samples: int64, assigned_samples: int64, unique_samples: int64, is (... 5082 chars omitted)
child 0, completeness: struct<total_samples: int64, assigned_samples: int64, unique_samples: int64, is_complete: bool, has_ (... 43 chars omitted)
child 0, total_samples: int64
child 1, assigned_samples: int64
child 2, unique_samples: int64
child 3, is_complete: bool
child 4, has_duplicates: bool
child 5, issues: list<item: null>
child 0, item: null
child 1, overlap: struct<has_overlap: bool, overlaps: list<item: null>, overlap_details: struct<>>
child 0, has_overlap: bool
child 1, overlaps: list<item: null>
child 0, item: null
child 2, overlap_details: struct<>
child 2, cold_start: struct<is_valid: bool, issues: list<item: null>, details: struct<>>
child 0, is_valid: bool
child 1, issues: list<item: null>
child 0, item: null
child 2, details: struct<>
child 3, distribution: struct<train: struct<sample_count: int64, unique_peptides: int64, peptide_length_mean: double, pepti (... 574 chars omitted)
child 0, train: struct<sample_count: int64, unique_peptides: int64, peptide_length_mean: double, peptide
...
hild 8, unique_train_prots: int64
child 9, unique_valid_prots: int64
child 10, unique_test_prots: int64
child 11, protein_overlap_train_valid: int64
child 12, protein_overlap_train_test: int64
child 13, protein_overlap_valid_test: int64
child 14, peptide_overlap_train_valid: int64
child 15, peptide_overlap_train_test: int64
child 16, peptide_overlap_valid_test: int64
child 17, is_valid: bool
child 18, violations: list<item: null>
child 0, item: null
child 11, double_hydra_cold_split: struct<split_name: string, cold_type: string, train_size: int64, valid_size: int64, test_size: int64 (... 416 chars omitted)
child 0, split_name: string
child 1, cold_type: string
child 2, train_size: int64
child 3, valid_size: int64
child 4, test_size: int64
child 5, unique_train_peps: int64
child 6, unique_valid_peps: int64
child 7, unique_test_peps: int64
child 8, unique_train_prots: int64
child 9, unique_valid_prots: int64
child 10, unique_test_prots: int64
child 11, protein_overlap_train_valid: int64
child 12, protein_overlap_train_test: int64
child 13, protein_overlap_valid_test: int64
child 14, peptide_overlap_train_valid: int64
child 15, peptide_overlap_train_test: int64
child 16, peptide_overlap_valid_test: int64
child 17, is_valid: bool
child 18, violations: list<item: null>
child 0, item: null
to
{'valid_splits': List(Value('string')), 'invalid_splits': List(Value('null')), 'validation_details': {'protein_random_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_train_peps': Value('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}, 'protein_mmseqs_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_train_peps': Value('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}, 'protein_kmer_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_tr
...
lue('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'peptide_overlap_train_valid': Value('int64'), 'peptide_overlap_train_test': Value('int64'), 'peptide_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}, 'double_hydra_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_train_peps': Value('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'peptide_overlap_train_valid': Value('int64'), 'peptide_overlap_train_test': Value('int64'), 'peptide_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}}, 'summary': {'total_expected_cold_splits': Value('int64'), 'found_cold_splits': Value('int64'), 'valid_cold_splits': Value('int64'), 'invalid_cold_splits': Value('int64'), 'validation_success_rate': Value('float64')}}
because column names don't match
Traceback: Traceback (most recent call last):
File "/src/services/worker/src/worker/utils.py", line 99, in get_rows_or_raise
return get_rows(
^^^^^^^^^
File "/src/libs/libcommon/src/libcommon/utils.py", line 272, in decorator
return func(*args, **kwargs)
^^^^^^^^^^^^^^^^^^^^^
File "/src/services/worker/src/worker/utils.py", line 77, in get_rows
rows_plus_one = list(itertools.islice(ds, rows_max_number + 1))
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2690, in __iter__
for key, example in ex_iterable:
^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2227, in __iter__
for key, pa_table in self._iter_arrow():
^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 2251, in _iter_arrow
for key, pa_table in self.ex_iterable._iter_arrow():
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 494, in _iter_arrow
for key, pa_table in iterator:
^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/iterable_dataset.py", line 384, in _iter_arrow
for key, pa_table in self.generate_tables_fn(**gen_kwags):
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/packaged_modules/json/json.py", line 289, in _generate_tables
self._cast_table(pa_table, json_field_paths=json_field_paths),
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/packaged_modules/json/json.py", line 124, in _cast_table
pa_table = table_cast(pa_table, self.info.features.arrow_schema)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2272, in table_cast
return cast_table_to_schema(table, schema)
^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^^
File "/usr/local/lib/python3.12/site-packages/datasets/table.py", line 2218, in cast_table_to_schema
raise CastError(
datasets.table.CastError: Couldn't cast
seed_0: struct<detailed_results: struct<completeness: struct<total_samples: int64, assigned_samples: int64, (... 5162 chars omitted)
child 0, detailed_results: struct<completeness: struct<total_samples: int64, assigned_samples: int64, unique_samples: int64, is (... 5082 chars omitted)
child 0, completeness: struct<total_samples: int64, assigned_samples: int64, unique_samples: int64, is_complete: bool, has_ (... 43 chars omitted)
child 0, total_samples: int64
child 1, assigned_samples: int64
child 2, unique_samples: int64
child 3, is_complete: bool
child 4, has_duplicates: bool
child 5, issues: list<item: null>
child 0, item: null
child 1, overlap: struct<has_overlap: bool, overlaps: list<item: null>, overlap_details: struct<>>
child 0, has_overlap: bool
child 1, overlaps: list<item: null>
child 0, item: null
child 2, overlap_details: struct<>
child 2, cold_start: struct<is_valid: bool, issues: list<item: null>, details: struct<>>
child 0, is_valid: bool
child 1, issues: list<item: null>
child 0, item: null
child 2, details: struct<>
child 3, distribution: struct<train: struct<sample_count: int64, unique_peptides: int64, peptide_length_mean: double, pepti (... 574 chars omitted)
child 0, train: struct<sample_count: int64, unique_peptides: int64, peptide_length_mean: double, peptide
...
hild 8, unique_train_prots: int64
child 9, unique_valid_prots: int64
child 10, unique_test_prots: int64
child 11, protein_overlap_train_valid: int64
child 12, protein_overlap_train_test: int64
child 13, protein_overlap_valid_test: int64
child 14, peptide_overlap_train_valid: int64
child 15, peptide_overlap_train_test: int64
child 16, peptide_overlap_valid_test: int64
child 17, is_valid: bool
child 18, violations: list<item: null>
child 0, item: null
child 11, double_hydra_cold_split: struct<split_name: string, cold_type: string, train_size: int64, valid_size: int64, test_size: int64 (... 416 chars omitted)
child 0, split_name: string
child 1, cold_type: string
child 2, train_size: int64
child 3, valid_size: int64
child 4, test_size: int64
child 5, unique_train_peps: int64
child 6, unique_valid_peps: int64
child 7, unique_test_peps: int64
child 8, unique_train_prots: int64
child 9, unique_valid_prots: int64
child 10, unique_test_prots: int64
child 11, protein_overlap_train_valid: int64
child 12, protein_overlap_train_test: int64
child 13, protein_overlap_valid_test: int64
child 14, peptide_overlap_train_valid: int64
child 15, peptide_overlap_train_test: int64
child 16, peptide_overlap_valid_test: int64
child 17, is_valid: bool
child 18, violations: list<item: null>
child 0, item: null
to
{'valid_splits': List(Value('string')), 'invalid_splits': List(Value('null')), 'validation_details': {'protein_random_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_train_peps': Value('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}, 'protein_mmseqs_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_train_peps': Value('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}, 'protein_kmer_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_tr
...
lue('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'peptide_overlap_train_valid': Value('int64'), 'peptide_overlap_train_test': Value('int64'), 'peptide_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}, 'double_hydra_cold_split': {'split_name': Value('string'), 'cold_type': Value('string'), 'train_size': Value('int64'), 'valid_size': Value('int64'), 'test_size': Value('int64'), 'unique_train_peps': Value('int64'), 'unique_valid_peps': Value('int64'), 'unique_test_peps': Value('int64'), 'unique_train_prots': Value('int64'), 'unique_valid_prots': Value('int64'), 'unique_test_prots': Value('int64'), 'protein_overlap_train_valid': Value('int64'), 'protein_overlap_train_test': Value('int64'), 'protein_overlap_valid_test': Value('int64'), 'peptide_overlap_train_valid': Value('int64'), 'peptide_overlap_train_test': Value('int64'), 'peptide_overlap_valid_test': Value('int64'), 'is_valid': Value('bool'), 'violations': List(Value('null'))}}, 'summary': {'total_expected_cold_splits': Value('int64'), 'found_cold_splits': Value('int64'), 'valid_cold_splits': Value('int64'), 'invalid_cold_splits': Value('int64'), 'validation_success_rate': Value('float64')}}
because column names don't matchNeed help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.
This dataset is part of PepBenchmark, a standardized benchmark for peptide machine learning introduced in the paper PepBenchmark: A Standardized Benchmark for Peptide Machine Learning.
PepBenchmark unifies datasets, preprocessing, and evaluation protocols for peptide drug discovery. It comprises three components:
PepBenchData: A well-curated collection of 29 canonical-peptide and 6 non-canonical-peptide datasets across 7 groups.
PepBenchPipeline: A standardized preprocessing pipeline ensuring consistent data cleaning, construction, and splitting.
PepBenchLeaderboard: A unified evaluation protocol and leaderboard with strong baselines across major methodological families.
GitHub Repository: https://github.com/ZGCI-AI4S-Pep/PepBenchmark
Sample Usage
You can use the pepbenchmark library to load and manage the datasets:
from pepbenchmark.dataset_manager.single_dataset import SinglePeptideDatasetManager
# Initialize the manager for a specific dataset
manager = SinglePeptideDatasetManager(
"ace_inhibitory",
official_feature_names=["fasta", "label"],
dataset_dir="../PepBenchData/PepBenchData-50",
)
# Access features
sequences = manager.get_feature("fasta")
labels = manager.get_feature("label")
# Set data splits
splits = manager.set_official_split_indices(
split_type="hybrid_split",
fold_seed=0
)
print(f"Train samples: {len(splits['train'])}")
print(f"Validation samples: {len(splits['valid'])}")
print(f"Test samples: {len(splits['test'])}")
Citation
@inproceedings{zhang2026pepbenchmark,
title={PepBenchmark: A Standardized Benchmark for Peptide Machine Learning},
author={Zhang, Jiahui and Wang, Rouyi and Zhou, Kuangqi and Xiao, Tianshu and Zhu, Lingyan and Min, Yaosen and Wang, Yang},
booktitle={International Conference on Learning Representations (ICLR)},
year={2026},
url={https://openreview.net/forum?id=NskQgtSdll}
}
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