Real estate developers in India face stringent financial compliance requirements under the Real Estate (Regulation and Development) Act (RERA), including the need to reconcile multiple financial data sources such as escrow accounts, CRM records, loan ledgers, and customer-submitted proofs. Manual reconciliation is time-consuming, error-prone, and unsustainable at scale. This paper presents an AI-powered framework for automating revenue reconciliation using machine learning (ML), optical character recognition (OCR), natural language processing (NLP), and anomaly detection techniques. The system extracts and standardizes data from diverse formats-including PDFs, emails, spreadsheets, and images-performs intelligent matching of transactions across sources, flags anomalies, and provides real-time dashboards and audit-ready reports. Through case studies and empirical data, the paper demonstrates significant improvements in reconciliation speed, accuracy, regulatory compliance, and operational efficiency. This research highlights how AI-driven reconciliation enhances financial governance, supports real-time cash flow visibility, and ensures robust compliance with RERA mandates in complex real estate ecosystems.