# Proactive Triage And Preference Learning ## Proactive `nudge_decision` `proactive_assistant` supports `action="nudge_decision"` to bucket candidate nudges into: - `interrupt` - `notify` - `defer` Routing is deterministic and depends on: - `policy`: `interrupt | defer | adaptive` - `quiet_window_active` (explicit arg, otherwise runtime quiet-window policy) - candidate urgency inputs (`severity`, `due_at`, `expires_at`, `interrupt_allowed`) - optional `context` inputs (`user_busy`, `conversation_active`, `presence_confidence`) - `max_dispatch` capacity limit - dedupe suppression window (`dedupe_window_sec`, default 600 seconds) The response returns per-bucket rows plus summary counts and cumulative proactive counters. When context indicates an active/busy interaction or low presence confidence, non-critical interrupts are downgraded to `notify`/`defer`. Candidates recently dispatched within the dedupe window are downgraded to `defer` with reason `duplicate_recent_dispatch` to reduce notification spam. ## Preference Learning Loop Conversation runtime now detects explicit user style directives and updates the active voice profile for: - `verbosity` (`brief | normal | detailed`) - `confirmations` (`minimal | standard | strict`) - `pace` (`slow | normal | fast`) - `tone` (`auto | formal | witty | empathetic | direct`) When memory is enabled, learned profile state is mirrored to memory summaries (`voice_profile:`). Learned updates are exposed through runtime voice status (`preference_learning`) and observability intent metrics (`preference_update_turns`, `preference_update_fields`). ## Safety Boundaries - Preference learning only triggers on explicit style-oriented directives (not on arbitrary requests). - High-risk action safeguards remain unchanged (preview/approval gates, policy checks). - Quiet-hour and policy controls still govern whether proactive actions interrupt or defer. - Multimodal grounding is advisory for operator transparency and recommendation quality; it does not bypass policy gates.