Build an exit-interview pattern detector (clustering across N exits)
Each exit interview is a story. Manager X "wasn't a good fit," compensation "wasn't quite right," "wanted new challenges." Individually, every one makes sense and doesn't justify action. But across 12 interviews over 6 months, three of them mentioned Manager X. Four mentioned compensation specifically below market for senior IC roles. Five mentioned a lack of growth path in the data team. These patterns are invisible in 1:1 review but obvious when clustered. This workflow builds the synthesis pipeline that finds them.
Premium workflow
Build an exit-interview pattern detector (clustering across N exits) is part of the full HR Edition library. The full pack has 31 workflows total, including 23premium workflows.
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