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The dataset viewer is not available for this dataset.
Cannot get the config names for the dataset.
Error code:   ConfigNamesError
Exception:    FileNotFoundError
Message:      Couldn't find any data file at /src/services/worker/BdezuSZo/turbosens2. Couldn't find 'BdezuSZo/turbosens2' on the Hugging Face Hub either: FileNotFoundError: Unable to find 'hf://datasets/BdezuSZo/turbosens2@d1d10b90f001100bca14c47af04288a62da82b31/turbosens2_train.h5' with any supported extension ['.csv', '.tsv', '.json', '.jsonl', '.ndjson', '.parquet', '.geoparquet', '.gpq', '.arrow', '.txt', '.conll', '.conllu', '.tar', '.xml', '.hdf5', '.h5', '.eval', '.lance', '.tsfile', '.blp', '.bmp', '.dib', '.bufr', '.cur', '.pcx', '.dcx', '.dds', '.ps', '.eps', '.fit', '.fits', '.fli', '.flc', '.ftc', '.ftu', '.gbr', '.gif', '.grib', '.png', '.apng', '.jp2', '.j2k', '.jpc', '.jpf', '.jpx', '.j2c', '.icns', '.ico', '.im', '.iim', '.tif', '.tiff', '.jfif', '.jpe', '.jpg', '.jpeg', '.mpg', '.mpeg', '.msp', '.pcd', '.pxr', '.pbm', '.pgm', '.ppm', '.pnm', '.psd', '.bw', '.rgb', '.rgba', '.sgi', '.ras', '.tga', '.icb', '.vda', '.vst', '.webp', '.wmf', '.emf', '.xbm', '.xpm', '.BLP', '.BMP', '.DIB', '.BUFR', '.CUR', '.PCX', '.DCX', '.DDS', '.PS', '.EPS', '.FIT', '.FITS', '.FLI', '.FLC', '.FTC', '.FTU', '.GBR', '.GIF', '.GRIB', '.PNG', '.APNG', '.JP2', '.J2K', '.JPC', '.JPF', '.JPX', '.J2C', '.ICNS', '.ICO', '.IM', '.IIM', '.TIF', '.TIFF', '.JFIF', '.JPE', '.JPG', '.JPEG', '.MPG', '.MPEG', '.MSP', '.PCD', '.PXR', '.PBM', '.PGM', '.PPM', '.PNM', '.PSD', '.BW', '.RGB', '.RGBA', '.SGI', '.RAS', '.TGA', '.ICB', '.VDA', '.VST', '.WEBP', '.WMF', '.EMF', '.XBM', '.XPM', '.aiff', '.au', '.avr', '.caf', '.flac', '.htk', '.svx', '.mat4', '.mat5', '.mpc2k', '.ogg', '.paf', '.pvf', '.raw', '.rf64', '.sd2', '.sds', '.ircam', '.voc', '.w64', '.wav', '.nist', '.wavex', '.wve', '.xi', '.mp3', '.opus', '.3gp', '.3g2', '.avi', '.asf', '.flv', '.mp4', '.mov', '.m4v', '.mkv', '.webm', '.f4v', '.wmv', '.wma', '.ogm', '.mxf', '.nut', '.AIFF', '.AU', '.AVR', '.CAF', '.FLAC', '.HTK', '.SVX', '.MAT4', '.MAT5', '.MPC2K', '.OGG', '.PAF', '.PVF', '.RAW', '.RF64', '.SD2', '.SDS', '.IRCAM', '.VOC', '.W64', '.WAV', '.NIST', '.WAVEX', '.WVE', '.XI', '.MP3', '.OPUS', '.3GP', '.3G2', '.AVI', '.ASF', '.FLV', '.MP4', '.MOV', '.M4V', '.MKV', '.WEBM', '.F4V', '.WMV', '.WMA', '.OGM', '.MXF', '.NUT', '.glb', '.ply', '.stl', '.GLB', '.PLY', '.STL', '.pdf', '.PDF', '.nii', '.NII', '.zip', '.idx', '.manifest', '.txn']
Traceback:    Traceback (most recent call last):
                File "/src/services/worker/src/worker/job_runners/dataset/config_names.py", line 67, in compute_config_names_response
                  config_names = get_dataset_config_names(
                      path=dataset,
                      token=hf_token,
                  )
                File "/usr/local/lib/python3.14/site-packages/datasets/inspect.py", line 161, in get_dataset_config_names
                  dataset_module = dataset_module_factory(
                      path,
                  ...<4 lines>...
                      **download_kwargs,
                  )
                File "/usr/local/lib/python3.14/site-packages/datasets/load.py", line 1213, in dataset_module_factory
                  raise FileNotFoundError(
                  ...<2 lines>...
                  ) from None
              FileNotFoundError: Couldn't find any data file at /src/services/worker/BdezuSZo/turbosens2. Couldn't find 'BdezuSZo/turbosens2' on the Hugging Face Hub either: FileNotFoundError: Unable to find 'hf://datasets/BdezuSZo/turbosens2@d1d10b90f001100bca14c47af04288a62da82b31/turbosens2_train.h5' with any supported extension ['.csv', '.tsv', '.json', '.jsonl', '.ndjson', '.parquet', '.geoparquet', '.gpq', '.arrow', '.txt', '.conll', '.conllu', '.tar', '.xml', '.hdf5', '.h5', '.eval', '.lance', '.tsfile', '.blp', '.bmp', '.dib', '.bufr', '.cur', '.pcx', '.dcx', '.dds', '.ps', '.eps', '.fit', '.fits', '.fli', '.flc', '.ftc', '.ftu', '.gbr', '.gif', '.grib', '.png', '.apng', '.jp2', '.j2k', '.jpc', '.jpf', '.jpx', '.j2c', '.icns', '.ico', '.im', '.iim', '.tif', '.tiff', '.jfif', '.jpe', '.jpg', '.jpeg', '.mpg', '.mpeg', '.msp', '.pcd', '.pxr', '.pbm', '.pgm', '.ppm', '.pnm', '.psd', '.bw', '.rgb', '.rgba', '.sgi', '.ras', '.tga', '.icb', '.vda', '.vst', '.webp', '.wmf', '.emf', '.xbm', '.xpm', '.BLP', '.BMP', '.DIB', '.BUFR', '.CUR', '.PCX', '.DCX', '.DDS', '.PS', '.EPS', '.FIT', '.FITS', '.FLI', '.FLC', '.FTC', '.FTU', '.GBR', '.GIF', '.GRIB', '.PNG', '.APNG', '.JP2', '.J2K', '.JPC', '.JPF', '.JPX', '.J2C', '.ICNS', '.ICO', '.IM', '.IIM', '.TIF', '.TIFF', '.JFIF', '.JPE', '.JPG', '.JPEG', '.MPG', '.MPEG', '.MSP', '.PCD', '.PXR', '.PBM', '.PGM', '.PPM', '.PNM', '.PSD', '.BW', '.RGB', '.RGBA', '.SGI', '.RAS', '.TGA', '.ICB', '.VDA', '.VST', '.WEBP', '.WMF', '.EMF', '.XBM', '.XPM', '.aiff', '.au', '.avr', '.caf', '.flac', '.htk', '.svx', '.mat4', '.mat5', '.mpc2k', '.ogg', '.paf', '.pvf', '.raw', '.rf64', '.sd2', '.sds', '.ircam', '.voc', '.w64', '.wav', '.nist', '.wavex', '.wve', '.xi', '.mp3', '.opus', '.3gp', '.3g2', '.avi', '.asf', '.flv', '.mp4', '.mov', '.m4v', '.mkv', '.webm', '.f4v', '.wmv', '.wma', '.ogm', '.mxf', '.nut', '.AIFF', '.AU', '.AVR', '.CAF', '.FLAC', '.HTK', '.SVX', '.MAT4', '.MAT5', '.MPC2K', '.OGG', '.PAF', '.PVF', '.RAW', '.RF64', '.SD2', '.SDS', '.IRCAM', '.VOC', '.W64', '.WAV', '.NIST', '.WAVEX', '.WVE', '.XI', '.MP3', '.OPUS', '.3GP', '.3G2', '.AVI', '.ASF', '.FLV', '.MP4', '.MOV', '.M4V', '.MKV', '.WEBM', '.F4V', '.WMV', '.WMA', '.OGM', '.MXF', '.NUT', '.glb', '.ply', '.stl', '.GLB', '.PLY', '.STL', '.pdf', '.PDF', '.nii', '.NII', '.zip', '.idx', '.manifest', '.txn']

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TurboSens2

The second scenario of the TurboSens turbofan degradation benchmark, extending TurboSens1 with:

  • a two-channel hidden state separating intrinsic mechanical wear $\mathbf{s}_t \in \mathbb{R}^{10}$ from a transient fouling channel $\mathbf{c}t \in \mathbb{R}^{5}{\ge 0}$;
  • a phantom observation map $\tilde{\mathbf{s}}_t = \mathrm{clip}(\mathbf{s}_t + M\max(0, -\mathbf{s}_t) + C\mathbf{c}_t)$ so that the sensed state can diverge from the true mechanical state;
  • a seventh engine wash action that decays $\mathbf{c}_t$ toward zero without touching $\mathbf{s}_t$ — making the observability of $\mathbf{s}_t$ action dependent;
  • six region archetypes (Continental, Littoral, Arid, Equatorial, Highland, Industrial), each characterised by a dominant atmospheric stressor and a different prior over degradation archetypes;
  • a hierarchical seasonal weather process and longer episodes (mean ~14k flights, max 20k).

The simpler, two-channel-free scenario is released as TurboSens1 (separate dataset).

Splits

Split Episodes Total flights Mean episode length
train 500 7,010,872 14,022
test 60 830,756 13,846
test_hard 60 854,710 14,245

test_hard skews toward more degraded states and slightly higher extreme-degradation rate; the same generator and region prior as test, distinct seed offset.

Schema (HDF5 columns)

Path Shape Description
sensors (N, 11, 16) Sensor stream (7 sensors + 4 operating-point parameters) x 16 contexts
observation.state (N, 10) Ground truth mechanical wear $\mathbf{s}_t$ (probing target)
action (N, 1) Maintenance action index
visit_type (N,) Categorical visit type (see below)
component_service_mask (N, 10) Boolean mask: which components were serviced at this visit
event_mask (N,) Boolean: any event fired at $t$
event_types (N, 12) Per event type rising edge flag
weather (N, 1) Ambient temperature deviation
valid_flight_mask, repaired_flight_mask (N,) Validation flags
ep_offset, ep_len (N_ep,) Per-episode offsets
ep_meta/{archetype, archetype_onset, eol_triggered, flights_per_day, is_extreme, region} (N_ep,) Episode metadata

File-level attributes

  • scenario: "turbosens2"
  • n_episodes, n_timesteps
  • action_names: [do_nothing, fan_overhaul, hpc_overhaul, turbine_overhaul, full_overhaul, targeted_patch, engine_wash]
  • archetype_names: [A_compressor, B_fan_booster, C_turbine, D_balanced]
  • region_names: [Continental, Littoral, Arid, Equatorial, Highland, Industrial]
  • event_names: abstract effect-typed labels — [perm_step_1, trans_drift_1, trans_anomaly_1, perm_step_2, trans_fouling_1, trans_anomaly_2, perm_drift_1, perm_drift_2, sensor_pulse_1, trans_drift_2, regional_perm_1, regional_drift_1]
  • sensor_names: [HPC_Tout, HP_Nmech, HPC_Tin, LPT_Tin, Fuel_flow, HPC_Pout_st, LP_Nmech]
  • context_names, context_phases: per-context labels (16 contexts)

Visit-type encoding

Code Label Description
0 do_nothing No maintenance this step
1 llp_forced Life-limiting-part cycle ceiling reached
2 proactive Health-correlated proactive scheduling
3 early_visit Anticipated visit ahead of an emerging issue
4 opportunistic_repair Component bundled into another visit after deferred service
5 rerepair Repeat repair after an imperfect prior intervention
6 wash Engine water wash — clears $\mathbf{c}_t$ only

Loading

import h5py

with h5py.File("turbosens2_train.h5", "r") as f:
    sensors    = f["sensors"][:]                  # (N, 11, 16)
    state      = f["observation.state"][:]       # (N, 10)
    action     = f["action"][:]                  # (N, 1)
    visit_type = f["visit_type"][:]              # (N,)
    region     = f["ep_meta/region"][:]          # (N_ep,) string codes

Inverse probing + counterfactual evaluation

  1. Pretrain any world model self supervised on train's sensor stream alone.
  2. Freeze the encoder; train a probe head to predict $\mathbf{s}_t$.
  3. Evaluate on test and test_hard.
  4. Use the released EpisodeReplayer (companion GitHub repo) to fork any episode under counterfactual maintenance actions and compare the world model's rollout against the simulator's deterministic replay.

Versioning

Generated by turbosens2@v1.0.0 (deterministic simulator, stamped in SIM_VERSION).

Caveats and intended use

  • Synthetic data, not a calibration of any real fleet. Stochastic event rates and magnitudes are mathematical abstractions and do not reflect operational fleet failure statistics.
  • Region archetypes are descriptive labels, not geographic claims; they capture qualitative environmental stressor mixes.
  • Single domain. Cross-domain generalisation claims should not be made from TurboSens alone.
  • Linear probe sufficiency. Encoders that encode the state in a non-linearly decodable form will appear to fail at probing — informative, not definitive.

Full RAI metadata is in croissant.json.

License

CC-BY-4.0.

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