Computation times#
15:31.054 total execution time for 18 files from all galleries:
Example |
Time |
Mem (MB) |
|---|---|---|
Various string encoders: a sentiment analysis example ( |
03:26.713 |
1315.5 |
Multiples tables: building machine learning pipelines with DataOps ( |
02:59.671 |
631.7 |
AggJoiner on a credit fraud dataset ( |
02:11.141 |
750.4 |
Encoding: from a dataframe to a numerical matrix for machine learning ( |
00:54.709 |
577.2 |
Tuning DataOps with Optuna ( |
00:54.034 |
566.7 |
Spatial join for flight data: Joining across multiple columns ( |
00:47.427 |
2966.4 |
Hyperparameter tuning with DataOps ( |
00:43.372 |
566.6 |
Interpolation join: infer missing rows when joining two tables ( |
00:38.884 |
2590.4 |
Fuzzy joining dirty tables with the Joiner ( |
00:32.790 |
566.9 |
Using PyTorch (via skorch) in DataOps ( |
00:25.910 |
594.3 |
SquashingScaler: Robust numerical preprocessing for neural networks ( |
00:25.348 |
566.8 |
Subsampling for faster development ( |
00:19.932 |
572.2 |
Getting Started ( |
00:16.457 |
566.5 |
Hands-On with Column Selection and Transformers ( |
00:14.566 |
567.5 |
Introduction to wrangling pipelines for machine-learning skrub DataOps ( |
00:13.784 |
566.7 |
Handling datetime features with the DatetimeEncoder ( |
00:11.506 |
571.7 |
Use case: developing locally and deploying to production ( |
00:10.410 |
662.7 |
Deduplicating misspelled categories ( |
00:04.400 |
567.0 |