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LitData Refactor PR2: Implement a function to get the data chunks for all model types #83
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Codecov ReportAll modified and coverable lines are covered by tests ✅
Additional details and impacted files@@ Coverage Diff @@
## divya/get-datapipe-func #83 +/- ##
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Coverage ? 97.82%
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Files ? 36
Lines ? 3350
Branches ? 0
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Hits ? 3277
Misses ? 73
Partials ? 0 ☔ View full report in Codecov by Sentry. |
This is the second PR for #80. Here, we implement the get_chunks() method for each model pipeline. This method handles all the data preprocessing functions (except augmentation, resizing, padding to stride and confidence map (or pafs) generation) to extract dictionaries from .slp file and save them as .bin files.