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data-scientists
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Remove pinned transfomer version from generate_conda_files
https://github.com/interpretml/interpret-text/blob/97416a0a9cc3e60bcb1221f878577762c64df02e/tools/generate_conda_files.py#L65
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The output for the fuseml workflow assign
command is:
Workflow "ABC" assigned to codeset "relative-path/XYZ"
This would imply that the codeset is the structural object that the workflow runs on. Since the relationship is actually reverse of this, the output should be:
Codeset "relative-path/XYZ" assigned to workflow "ABC"
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Recently
dtreeviz
has added support for lightgbm models: https://github.com/parrt/dtreeviz/So it would be cool to add the same tree visualization in explainerdashboard that already exist for RandomForest, ExtraTrees and XGBoost models.
If someone wants to pitch in to help extract individual predictions of decision trees inside lightgbm boosters and then get them in shape to be used by the