Computation times#
04:47.374 total execution time for 105 files from all galleries:
Example |
Time |
Mem (MB) |
|---|---|---|
Cumulative subsidence on a satellite-style map ( |
00:22.020 |
0.0 |
Ablations and sensitivities: learning where the model behaves well in lambda space ( |
00:18.078 |
0.0 |
SM3 identifiability: learning when recovery is accurate and when parameters slide along a ridge ( |
00:14.787 |
0.0 |
External validation: comparing inferred effective fields against independent site evidence ( |
00:10.952 |
0.0 |
Physics sanity: checking closure agreement and residual behavior ( |
00:10.563 |
0.0 |
Transfer impact: what transfer changes for retention, risk, and hotspot stability ( |
00:10.001 |
0.0 |
Physics profiles: reducing a 2D lambda landscape into readable 1D lessons ( |
00:09.802 |
0.0 |
Plot physics payload values as maps and histograms ( |
00:09.584 |
0.0 |
Read smooth spatial structure with plot_spatial_contours ( |
00:09.368 |
0.0 |
Physics sensitivity: learning how lambda choices reshape the physics diagnostics ( |
00:08.311 |
0.0 |
Hotspot analytics: turning future forecasts into decision-ready priority maps ( |
00:08.181 |
0.0 |
SM3 bounds versus ridge: learning the two main failure modes ( |
00:06.965 |
0.0 |
Read smoothed spatial structure with gridded heatmaps ( |
00:06.471 |
0.0 |
Driver-response plots: learning how the response moves with the drivers ( |
00:05.498 |
0.0 |
Cross-city transferability (v3.2): what survives when a workflow moves to the other city ( |
00:04.963 |
0.0 |
Build non-overlapping spatial sample batches ( |
00:04.458 |
0.0 |
Cross-city transferability: learning what survives transfer between cities ( |
00:04.355 |
0.0 |
Focus on a local map window with plot_spatial_roi ( |
00:04.227 |
0.0 |
Forecast by horizon step with plot_forecast_by_step ( |
00:03.834 |
0.0 |
Read spatial forecast patterns with plot_spatial ( |
00:03.720 |
0.0 |
Core ablation: learning what physics adds to the workflow ( |
00:03.529 |
0.0 |
From raw model outputs to forecast tables with format_and_forecast ( |
00:03.356 |
0.0 |
Read nearest-observation spatial influence with Voronoi maps ( |
00:03.235 |
0.0 |
Learn to compare forecasts visually with plot_forecast_comparison ( |
00:03.056 |
0.0 |
Compare independent regression pairs with plot_r2_in ( |
00:02.936 |
0.0 |
Find and read spatial hotspots before acting on a map ( |
00:02.924 |
0.0 |
Lithology parity: comparing the geological composition of the two cities ( |
00:02.903 |
0.0 |
Inspect interpretable evaluation physics before reporting results ( |
00:02.840 |
0.0 |
Inspect ablation records before choosing a configuration ( |
00:02.734 |
0.0 |
Inspect a training summary before trusting a Stage-2 run ( |
00:02.681 |
0.0 |
Build a stratified spatial sample table ( |
00:02.668 |
0.0 |
Read forecast quality horizon by horizon with plot_metric_over_horizon ( |
00:02.439 |
0.0 |
Read ensemble forecast quality with plot_crps ( |
00:02.401 |
0.0 |
Compare compact score profiles with plot_radar_scores ( |
00:02.352 |
0.0 |
Plot training history with robust grouping and scale handling ( |
00:02.312 |
0.0 |
Holdout versus future forecast with plot_eval_future ( |
00:02.241 |
0.0 |
Inspect compact evaluation diagnostics before trusting forecast quality ( |
00:02.040 |
0.0 |
Inspect a Stage-1 audit before Stage-2 ( |
00:01.999 |
0.0 |
Understand regression agreement with plot_r2 ( |
00:01.819 |
0.0 |
Expanded uncertainty diagnostics: learning what the main uncertainty figure still hides ( |
00:01.800 |
0.0 |
Future quantile maps with forecast_view ( |
00:01.758 |
0.0 |
Inspect a model-initialization manifest before training ( |
00:01.657 |
0.0 |
Spatial forecasts: how to read observed maps, fitted maps, and future forecast maps together ( |
00:01.615 |
0.0 |
Build a compact forecast-ready panel sample ( |
00:01.611 |
0.0 |
Physics maps: turning pointwise payloads into readable spatial fields ( |
00:01.545 |
0.0 |
Read quantile reliability with plot_quantile_calibration ( |
00:01.475 |
0.0 |
Automatically save the standard GeoPrior history diagnostics ( |
00:01.410 |
0.0 |
Compare forecast quality across groups with plot_metric_radar ( |
00:01.385 |
0.0 |
Forecast uncertainty: learning how calibration behaves across cities and horizons ( |
00:01.364 |
0.0 |
From calibrated forecasts to action-first zones ( |
00:01.356 |
0.0 |
Auditing identifiability before reading learned physics fields ( |
00:01.340 |
0.0 |
Stage-2 training curves and physics-aware learning dynamics ( |
00:01.337 |
0.0 |
Physics diagnostics bridge: from evaluate_physics to payload inspection ( |
00:01.259 |
0.0 |
Quantile recalibration with calibrate_forecasts ( |
00:01.225 |
0.0 |
Learn how horizon emphasis changes the score with plot_time_weighted_metric ( |
00:01.201 |
0.0 |
Stage-2 training curves and physics diagnostics ( |
00:01.184 |
0.0 |
Stage-3 tuning summary and best-trial diagnostics ( |
00:01.183 |
0.0 |
Exceedance probabilities and Brier score ( |
00:01.173 |
0.0 |
When cross-city reuse is useful, and when it is not ( |
00:01.153 |
0.0 |
Enrich main datasets with surface elevation ( |
00:01.151 |
0.0 |
Coverage versus sharpness in probabilistic forecasts ( |
00:01.123 |
0.0 |
Read quantile miscalibration with plot_qce_donut ( |
00:01.106 |
0.0 |
Inspect calibration statistics before trusting interval forecasts ( |
00:01.104 |
0.0 |
Plot physics loss terms from a GeoPrior training history ( |
00:01.089 |
0.0 |
Inspect transfer-learning results before trusting cross-city conclusions ( |
00:00.974 |
0.0 |
SM3 log offsets: learning where the inferred fields drift from their priors ( |
00:00.952 |
0.0 |
Build city boundary polygons from forecast points ( |
00:00.950 |
0.0 |
Forecast quick-look with plot_forecasts ( |
00:00.946 |
0.0 |
Plot epsilon diagnostics from a GeoPrior training history ( |
00:00.929 |
0.0 |
Extract threshold-based spatial zones with extract-zones ( |
00:00.920 |
0.0 |
Inspect a Stage-1 manifest before downstream stages ( |
00:00.907 |
0.0 |
Extract a rectangular region of interest with spatial-roi ( |
00:00.897 |
0.0 |
Stage-1 data checks with group masks and holdout splitting ( |
00:00.892 |
0.0 |
Learn how to read forecast sharpness with plot_mean_interval_width ( |
00:00.869 |
0.0 |
Physics fields: learning to read the physical story in a map ( |
00:00.865 |
0.0 |
Build spatial cluster tables with spatial-clusters ( |
00:00.858 |
0.0 |
Assign boreholes to the nearest city cloud ( |
00:00.851 |
0.0 |
Learn how to read interval reliability with plot_coverage ( |
00:00.845 |
0.0 |
Learn how to judge interval forecasts with plot_weighted_interval_score ( |
00:00.831 |
0.0 |
Spatial-block holdout as a Stage-1 diagnostic ( |
00:00.812 |
0.0 |
Inspect a scaling_kwargs.json configuration ( |
00:00.732 |
0.0 |
Why physics matters in core forecasting ( |
00:00.680 |
0.0 |
Create exposure weights from forecast point density ( |
00:00.679 |
0.0 |
Create district grid layers from forecast points ( |
00:00.666 |
0.0 |
Build ablation tables from sensitivity records ( |
00:00.644 |
0.0 |
Extend forecast CSVs to later years ( |
00:00.643 |
0.0 |
Inspect a Stage-2 run manifest before downstream workflow steps ( |
00:00.622 |
0.0 |
Compare raw and calibrated reliability with plot_calibration_comparison ( |
00:00.591 |
0.0 |
Inspect physics-payload metadata before opening the full payload ( |
00:00.570 |
0.0 |
Summarize hotspot point clouds into tidy group tables ( |
00:00.565 |
0.0 |
Tag hotspot clusters with district Zone IDs ( |
00:00.560 |
0.0 |
Learn how forecast smoothness behaves with plot_prediction_stability ( |
00:00.547 |
0.0 |
Evaluate forecast tables with evaluate_forecast ( |
00:00.546 |
0.0 |
Compute hotspot summary tables from forecast CSVs ( |
00:00.527 |
0.0 |
Interval calibration with calibrate_quantile_forecasts ( |
00:00.519 |
0.0 |
Reliability diagrams for probabilistic forecasts ( |
00:00.516 |
0.0 |
External validation of inferred effective fields ( |
00:00.509 |
0.0 |
Learn how to benchmark a forecast against a naive baseline with plot_theils_u_score ( |
00:00.509 |
0.0 |
Compute exceedance Brier scores from calibrated forecasts ( |
00:00.505 |
0.0 |
Build unified model-metrics tables from GeoPrior runs ( |
00:00.462 |
0.0 |
Build one merged full_inputs.npz from Stage-1 split artifacts ( |
00:00.461 |
0.0 |
Read forecast reliability with plot_reliability_diagram ( |
00:00.413 |
0.0 |
Group-validity masks for Stage-1 diagnostics ( |
00:00.368 |
0.0 |
Extract learned physical parameters from a trained model ( |
00:00.031 |
0.0 |
Flatten (t, x, y) coordinates from dataset batches ( |
00:00.007 |
0.0 |