[FIX] Speed-up slow table_to_frame#5413
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janezd merged 1 commit intobiolab:masterfrom Apr 30, 2021
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We started using bottleneck in Orange Spectroscopy. Faster than numpy. Maybe it would also make sense to use that here. |
Codecov Report
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## master #5413 +/- ##
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Coverage 86.37% 86.37%
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Files 303 303
Lines 62155 62154 -1
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Hits 53688 53688
+ Misses 8467 8466 -1 |
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Issue
table_to_frameis slow on large dataset. On dataset with shape (1M, 12) it took ~20s to transform dataframe to table. The reason for slow error is list comprehension used to find out if there is any nan in numeric column.Description of changes
List comprehension is now replaced with NumPy functions.
Transformation on the previously mention dataset now takes ~0.6s
Includes