audiovisual
trial_type subject run Auditory/Left Auditory/Right Button Smiley Visual/Left Visual/Right
01 01 72 73 16 15 73 71

1 rows × 8 columns

General
Filename(s) sub-01_task-audiovisual_ave.fif
MNE object type Evoked
Measurement date 1921-08-16 at 19:01:10 UTC
Participant sub-01
Experimenter mne_anonymize
Acquisition
Aggregation average of 1 epochs
Condition Grand average: 0.50 × Auditory/Left + 0.50 × Auditory/Right
Time range -0.200 – 0.499 s
Baseline -0.200 – 0.000 s
Sampling frequency 600.61 Hz
Time points 421
Channels
Magnetometers
Gradiometers
Head & sensor digitization 146 points
Filters
Highpass 0.10 Hz
Lowpass 40.00 Hz
Projections PCA-v1 (on)
PCA-v2 (on)
PCA-v3 (on)
Time course (Magnetometers)
Time course (Gradiometers)
Global field power
General
Filename(s) sub-01_task-audiovisual_ave.fif
MNE object type Evoked
Measurement date 1921-08-16 at 19:01:10 UTC
Participant sub-01
Experimenter mne_anonymize
Acquisition
Aggregation average of 1 epochs
Condition Grand average: 0.51 × Visual/Left + 0.49 × Visual/Right
Time range -0.200 – 0.499 s
Baseline -0.200 – 0.000 s
Sampling frequency 600.61 Hz
Time points 421
Channels
Magnetometers
Gradiometers
Head & sensor digitization 146 points
Filters
Highpass 0.10 Hz
Lowpass 40.00 Hz
Projections PCA-v1 (on)
PCA-v2 (on)
PCA-v3 (on)
Global field power
General
Filename(s) sub-01_task-audiovisual_ave.fif
MNE object type Evoked
Measurement date 1921-08-16 at 19:01:10 UTC
Participant sub-01
Experimenter mne_anonymize
Acquisition
Aggregation average of 1 epochs
Condition Grand average: Auditory/Left
Time range -0.200 – 0.499 s
Baseline -0.200 – 0.000 s
Sampling frequency 600.61 Hz
Time points 421
Channels
Magnetometers
Gradiometers
Head & sensor digitization 146 points
Filters
Highpass 0.10 Hz
Lowpass 40.00 Hz
Projections PCA-v1 (on)
PCA-v2 (on)
PCA-v3 (on)
Time course (Magnetometers)
Time course (Gradiometers)
Global field power
General
Filename(s) sub-01_task-audiovisual_ave.fif
MNE object type Evoked
Measurement date 1921-08-16 at 19:01:10 UTC
Participant sub-01
Experimenter mne_anonymize
Acquisition
Aggregation average of 1 epochs
Condition Grand average: Auditory/Right
Time range -0.200 – 0.499 s
Baseline -0.200 – 0.000 s
Sampling frequency 600.61 Hz
Time points 421
Channels
Magnetometers
Gradiometers
Head & sensor digitization 146 points
Filters
Highpass 0.10 Hz
Lowpass 40.00 Hz
Projections PCA-v1 (on)
PCA-v2 (on)
PCA-v3 (on)
Time course (Magnetometers)
Time course (Gradiometers)
Global field power
General
Filename(s) sub-01_task-audiovisual_ave.fif
MNE object type Evoked
Measurement date 1921-08-16 at 19:01:10 UTC
Participant sub-01
Experimenter mne_anonymize
Acquisition
Aggregation average of 1 epochs
Condition Grand average: Auditory/Right - Auditory/Left
Time range -0.200 – 0.499 s
Baseline -0.200 – 0.000 s
Sampling frequency 600.61 Hz
Time points 421
Channels
Magnetometers
Gradiometers
Head & sensor digitization 146 points
Filters
Highpass 0.10 Hz
Lowpass 40.00 Hz
Projections PCA-v1 (on)
PCA-v2 (on)
PCA-v3 (on)
Time course (Magnetometers)
Time course (Gradiometers)
Global field power
Full-epochs decoding
Based on N=1 subjects. Each dot represents the mean cross-validation score for a single subject. The dashed line is expected chance performance.
  """ds000248: MNE sample data using template MRI."""

bids_root = "~/mne_data/ds000248"
deriv_root = "~/mne_data/derivatives/mne-bids-pipeline/ds000248_no_mri"
subjects_dir = f"{bids_root}/derivatives/freesurfer/subjects"

subjects = ["01"]
rename_events = {"Smiley": "Emoji", "Button": "Switch"}
conditions = ["Auditory", "Visual", "Auditory/Left", "Auditory/Right"]
contrasts = [("Auditory/Right", "Auditory/Left")]

ch_types = ["meg"]
use_maxwell_filter = False
process_empty_room = False
process_raw_clean = False

use_template_mri = "fsaverage"
adjust_coreg = True

  Platform             Linux-6.8.0-1053-aws-x86_64-with-glibc2.39
Python               3.14.5 (main, May 12 2026, 13:13:59) [GCC 13.3.0]
Executable           /home/circleci/.pyenv/versions/3.14.5/bin/python3.14
CPU                  Intel(R) Xeon(R) Platinum 8124M CPU @ 3.00GHz (36 cores)
Memory               4.0 GiB

Core
├☑ mne               1.13.0.dev54+g692eccee2 (development, latest release is 1.12.1)
├☑ numpy             2.4.4 (OpenBLAS 0.3.31.188.0 with 2 threads)
├☑ scipy             1.17.1
└☑ matplotlib        3.10.9 (backend=agg)

Numerical (optional)
├☑ sklearn           1.8.0
├☑ numba             0.65.1
├☑ nibabel           5.4.2
├☑ pandas            3.0.3
├☑ h5io              0.2.5
├☑ h5py              3.16.0
└☐ unavailable       nilearn, dipy, openmeeg, cupy

Visualization (optional)
├☑ pyvista           0.48.2 (OpenGL 4.5 (Core Profile) Mesa 25.2.8-0ubuntu0.24.04.1 via llvmpipe (LLVM 20.1.2, 256 bits))
├☑ pyvistaqt         0.11.4
├☑ vtk               9.6.1
├☑ qtpy              2.4.3 (PySide6=6.11.1)
└☐ unavailable       ipympl, pyqtgraph, mne-qt-browser, ipywidgets, trame_client, trame_server, trame_pyvista, trame_vtk, trame_vuetify

Ecosystem (optional)
├☑ mne-bids          0.19.0.dev68+gf25498449
├☑ mne-icalabel      0.8.1
├☑ mne-bids-pipeline 1.11.0.dev23+gb5c8b98b1
├☑ eeglabio          0.1.3
├☑ edfio             0.4.13
├☑ curryreader       0.1.2
├☑ pybv              0.7.6
├☑ defusedxml        0.7.1
└☐ unavailable       mne-nirs, mne-features, mne-connectivity, neo, mffpy, pymef, antio