**Worst Creative(s):** Explain which patterns predict failure
and flag whether the failure is universal or network-localized.
Explore
131,608 skills indexed with the new KISS metadata standard.
and flag whether the failure is universal or network-localized.
hook recuts
recut for Google's asset ingestion
and whether those attributes hold across all networks or are network-specific.
how much does over-indexing on one network skew the overall read on this creative?
top 1 on ALN
specific to this network
On ALN
ALN AXON fallback behavior
weak hook on a skip-heavy rewarded placement
and whether scaling is amplifying or compressing efficiency.
format fit
Mintegral
but to act as a performance-prediction model using structured
and reason about why
which creative traits show scaling potential vs. burnout risk on ALN; which show stability signals on Mintegral)
variance spikes
early CTR → later IPM quality drop
within and across networks
segmented by network
table
multi-format ingestion (YouTube
rewarded and interstitial heavy. Audience quality can vary significantly by geo and supply path. CPI tends to be volatile early; stabilizes at scale. Creative fatigue patterns differ from ALN — longer...
install clustering by creative batch