Install
openclaw skills install screen-recommendation-loopBuild and run a low-friction movie/anime recommendation + follow-up loop. Use when a user wants long-term taste profiling from watched/unfinished/dropped feedback, mixed sources (e.g., Douban/Bangumi Top lists), random title-type selection, and automatic type-based follow-up timing.
openclaw skills install screen-recommendation-loopRun an ongoing recommendation system that balances consistency and low user burden. Recommend one title at a time, collect short feedback, and adapt future picks from preference signals.
Keep each interaction short. Prioritize adherence over perfect metadata.
If the user proactively returns before scheduled follow-up (e.g., "I watched it, let's discuss"), skip waiting and immediately:
Use automatic, content-type-based follow-up windows.
Default logic:
recommendedAt + 7 daysrecommendedAt + 30 daysNo manual per-user interval configuration is required; infer from recommended content type.
When asking, send at a random time inside a normal activity window (for example 10:00–22:30 in the target timezone).
Treat all as valid outcomes:
Do not frame partial/dropped as failure. Use them as preference signals.
Use a tiny response format:
Decay old signals slowly to avoid overfitting to one week.
Keep per-title state:
This can live in JSON or SQLite.