AI Agent
Scenario 3: Multi-Agent Legislative Impact Analysis Platform
Active
Quality Assurance & Self-Correction Specialist
The Quality Reviewer Agent performs comprehensive quality validation across all analysis outputs. It checks accuracy by cross-referencing legal citations against source documents, validating financial calculations, and verifying client impact assessments.
Sector
Legal & Compliance Services, Professional Publishing, Enterprise Compliance, and Corporate Training
Status
Operational
Problem Statement
The challenge addressed
AI-generated analysis may contain errors, inconsistencies, or incomplete information. Quality assurance is essential for maintaining trust and meeting professional standards. Self-correction capabilit... AI-generated analysis may contain errors, inconsistencies, or incomplete information. Quality assurance is essential for maintaining trust and meeting professional standards. Self-correction capabilities enable the system to identify and fix issues without human intervention, improving reliability and reducing manual review burden.
Core Logic
How the agent solves it
The Quality Reviewer Agent performs comprehensive quality validation across all analysis outputs. It checks accuracy by cross-referencing legal citations against source documents, validating financial... The Quality Reviewer Agent performs comprehensive quality validation across all analysis outputs. It checks accuracy by cross-referencing legal citations against source documents, validating financial calculations, and verifying client impact assessments. Completeness validation ensures all required sections are present and sufficiently detailed. Consistency checking identifies contradictions or discrepancies across outputs from different agents. Regulatory alignment verification confirms all compliance references are accurate and current. When issues are detected, the agent initiates self-correction loops: identifying the issue, determining correction approach, applying the fix, and re-validating. Corrections are tracked with original value, corrected value, correction reason, and iteration count. Quality metrics include overall score, accuracy score, completeness score, consistency score, regulatory alignment score, review iterations, and human verification needed flag. Corrections applied are documented with type, location, original/corrected values, and reason. Validation checks detail each check performed with pass/fail status and score. Tool execution uses validate_quality with accuracy, completeness, and consistency flags. Reasoning traces demonstrate: observing quality review initiation with module count, performing accuracy checks with verification counts, reflecting on detected issues and initiating self-correction, applying corrections with recalculations, and concluding with overall score, sub-scores, corrections count, and approval status.