Use evidence, not reputation.
Friction comes from operational signals such as access failures, waits, handoff constraints, proof issues, and tenant workflow exceptions.
Trust
DropScore is designed around private, auditable evidence and human-reviewed outcomes, not public labels or subjective rating loops.
Friction comes from operational signals such as access failures, waits, handoff constraints, proof issues, and tenant workflow exceptions.
Pay recommendations, repair prompts, safety review, and customer-impacting workflows stay behind approval until tenant policy and legal review support more automation.
LLMs can summarize verified packets or draft operator-facing text, but every prompt, model, packet scope, and output path needs audit and fallback controls.
Cross-tenant learning is disabled by default and should use only approved aggregate or redacted scopes when tenants explicitly opt in.
Customers see fixable prompts, not a hidden reputation label or a driver rating feed.
The core system relies on operational signals already present in last-mile workflows.
LLMs may summarize verified evidence, but they must not directly decide pay, discipline, safety outcomes, or restrictions.
Cross-tenant learning is off by default and can use only explicitly approved privacy-preserving scopes.
Prompt changes, evidence packets, approvals, publishing attempts, and tenant acknowledgements are recorded.
Production calibration must track outcomes by delivery type, address type, geography, route type, language, and accessibility factors.