# Bounds for fixture 5 (multi_operator). # # Ground truth at campaign-level: 1 campaign of 2 observation rows # (one per DSL actor). A correct algorithm scores 1.0 across every # metric on this fixture. # # Completeness is the load-bearing metric: a clusterer that splits # the two operators by shift / by tooling / by ASN tanks # completeness (the one true class is split across two predicted # clusters). The adversarial shift_clusterer demonstrates this and # the bound below rejects it. # # Campaign-level fixture only — the two DSL actors model two # distinct identities (different tooling, different operators) by # design. See the YAML header for the modeling note. # # Bounds are loose at v1; tighten as the algorithm matures. adjusted_rand_index: min: 1.0 homogeneity: min: 1.0 completeness: min: 1.0 singleton_recall: min: 1.0