Dataset Viewer
The dataset could not be loaded because the splits use different data file formats, which is not supported. Read more about the splits configuration. Click for more details.
Couldn't infer the same data file format for all splits. Got {NamedSplit('train'): ('json', {}), NamedSplit('test'): ('hdf5', {})}
Error code:   FileFormatMismatchBetweenSplitsError

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

STEMGym: A Gymnasium Environment for Benchmarking Dose-Efficient Autonomous Scanning Transmission Electron Microscopy

This dataset accompanies the STEMGym benchmark — a Gymnasium-based environment for evaluating autonomous dose-efficient scanning transmission electron microscopy (STEM) agents.

Dataset Description

STEMGym provides simulated STEM specimens as HDF5 world files. Each world contains:

  • Overview image: Low-magnification survey of the full specimen
  • Tile grid: High-resolution STEM-HAADF images (128x128 px tiles, 4px overlap, stride=124) arranged in an 8x8 grid
  • Ground truth annotations: Atom positions, defect types, and phase maps for scoring
  • Metadata: Pixel size, accelerating voltage, detector geometry, material parameters

Materials

Material Zone Axis FOV Defect Types Task
SrTiO3 [001] ~100 nm O vacancies clustered along grain boundary Defect Census
BaTiO3 [001] ~100 nm Cubic/tetragonal phase boundaries + O vacancies Phase Mapping + Defect Census
SiGe [110] ~50 nm Ge substitutions concentrated in one quadrant Targeted Characterization
GaN [11-20] ~80 nm InGaN quantum-well substitutions Defect Census
Pt nanoparticles ~60 nm Pt nanoparticles on amorphous carbon Particle Census

Difficulty Levels

Each material is provided at three difficulty levels:

Level Vacancy Rate Phonon Configs Dose (e-/A^2)
Easy 5% 4 1e4
Medium 3% 8 5e3
Hard 1% 16 1e3

Files

Simulated Worlds (worlds/)

File Material Difficulty Size
test_world.h5 Synthetic (Gaussian blobs) 9.7 MB
replay_world.h5 Synthetic (replay validation) 2.5 MB
srtio3_clustered_easy.h5 SrTiO3 Easy 884 MB
srtio3_clustered_medium.h5 SrTiO3 Medium 884 MB
srtio3_clustered_hard.h5 SrTiO3 Hard 885 MB
batio3_interface_easy.h5 BaTiO3 Easy 911 MB
batio3_interface_medium.h5 BaTiO3 Medium 911 MB
batio3_interface_hard.h5 BaTiO3 Hard 911 MB
sige_gradient_clustered_easy.h5 SiGe Easy 150 MB
sige_gradient_clustered_medium.h5 SiGe Medium 148 MB
sige_gradient_clustered_hard.h5 SiGe Hard 147 MB
gan_easy.h5 GaN Easy 451 MB
gan_medium.h5 GaN Medium 449 MB
gan_hard.h5 GaN Hard 448 MB
pt_nanoparticles_easy.h5 Pt Easy 129 MB
pt_nanoparticles_medium.h5 Pt Medium 129 MB
pt_nanoparticles_hard.h5 Pt Hard 129 MB

Model Checkpoints (checkpoints/)

File Model Description Size
atom_finder.pt AtomFinderUNet Atomic column detection ensemble (3 members) 88 MB
defect_classifier.pt DefectClassifierCNN Defect type classification 1.4 MB
phase_identifier.pt PhaseIdentifierResNet Material phase identification 7.4 MB
dqn_agent.zip DQN (SB3) RL navigation baseline 0.8 MB
ppo_agent.zip PPO (SB3) RL navigation baseline 1.0 MB
sac_agent.zip SAC (SB3) RL navigation baseline 8.4 MB

Transfer Checkpoints (checkpoints/transfer/)

Material-specific analyst models trained on individual materials for transfer experiments:

Directory Contents
transfer/srtio3/ atom_finder.pt, defect_classifier.pt, phase_identifier.pt, training_metadata.json
transfer/batio3/ atom_finder.pt, defect_classifier.pt, phase_identifier.pt, training_metadata.json
transfer/sige/ atom_finder.pt, defect_classifier.pt, phase_identifier.pt, training_metadata.json
transfer/gan/ atom_finder.pt, defect_classifier.pt, phase_identifier.pt, training_metadata.json

HDF5 World Format

Each world file follows this layout:

/metadata/
    pixel_size_nm          # Physical pixel size
    tile_size_px           # Tile dimensions (128)
    grid_shape             # Grid dimensions (rows, cols)
    fov_nm                 # Field of view in nm
    scenario               # Material/scenario name
    difficulty             # easy / medium / hard
/overview                  # (H, W) low-res overview image
/tiles/{row}_{col}         # (128, 128) float32 normalized HAADF tiles
/ground_truth/
    atom_positions         # (N, 2) in nm
    atom_types             # (N,) int [0=pristine, 1=vacancy, 2=substitution]
    defect_mask            # (N,) bool
    defect_types           # (N,) str ["pristine"/"vacancy"/"substitution"]
    phase_map              # (H, W) int32, optional
/valid_region              # (H, W) bool

Usage

# Install STEMGym
pip install -e .

# Download this data
python stem_gym/scripts/download_data.py

# Run a benchmark
stemgym run --agent raster_equipped --task defect_census --world srtio3_clustered_easy --seeds 3

License

This dataset is released under the CC-BY-4.0 license.

Citation

@inproceedings{polat2026stemgym,
  title={STEMGym: A Gymnasium Environment for Benchmarking Dose-Efficient Autonomous Scanning Transmission Electron Microscopy},
  author={Polat, Can},
  year={2026}
}
Downloads last month
68