In Narratives process for US commerical mortgage banking deals, AI(Berkie) is being embedded directly into analysts day to day workflow to help draft core Narratives sections. Original (Pre-AI) workflow and performance expectations Before AI tool called Berkie was used, the Narrative draft workflow followed a manual, time sensitive sequence Document Collection & Review Analyst manually gathered and studied multiple source documents: Offering Memorandum, Appraisal report, Property website, Borrower website/Sponsor details, Rent comps, Sales comps, expense comps from external websites, Crime reports, Google/Google Maps for location & aerial review, and latest financial analysis. Drafting Narrative sections manually Analyst wrote every section from scratch: Property overview, Location overview, Borrower/Sponsor overview, Management overview, Market Overview, Rent/Sales/Expense comps, Strength & Weakness, Risk & Mitigants, and Crime reports Performance expectations Accuracy of extracted data, Consistency in writing style, ability to identify key risks and themes, 100% manual verification, Turnaround time was typically longer(5hours to a full day depending on deal complexity) The process heavily relied on the analysts attention to detail, writing ability, and familiarity with CRE underwriting. What AI (Berkie) now does in the workflow With introduction of Berkie, analysts now use a structured marketplace of prompts for each narrative section. Analysts upload relevant documents (Offering memorandum, Appraisal, reports), URLs where possible(property site, crime data, etc), Screenshots or extracted information where login access restricts data. Berkie's role: Reads the attachments and URLs, Uses predefined prompts for each section, Produces a first draft narrative, structures the content according to the standard CRE narrative format (Freddie, Fannie agency template), Extracts factual information (property details, comps, management info, location attributes, market trends, etc) Analysts role afte AI input: Validate numerical accuracy, Fix missing or misinterpreted insights, Add deal specific perspective, Ensure compliance with underwriting and agency guidelines, and Finalize risks, mitigants, and subjective assessments. This has shifted analysts responsibility from writing everything to reviewing, correcting, and fine tuning. One situation where AI improves Improvement scenario : Enhancing speed & consistency in Market overview section. The market overview section often requires synthesizing market rents, vacancy rents, Employment trends, population growth, local economic drivers, competitors property performance. Before Berkie(AI), Analysts spent significant time pulling this from multiple sources and writing a clear Narrative How Berkie(AI) improves it: Berkie extracts and organizes market stats quickly, generates consistent writing style across deals, Highlights macro trends an analyst might overlook, saves hours of manual research & writing. Impact: Faster turnaround, reduced analyst workload, and more uniform quality across the team. One situation where AI could introduce risk, bias, delay or hidden errors Risk scenario: AI misinterpreting a financial data or comps Berkie may mis-read or mis-interpret Rent comps, Sales comps, Expense line items, NOI or DSCR calculations, Sq footage discrepancies between OM V/S Appraisal, Property photo context or map locations. Example: If Berkie incorrectly intreprets rent comps(e.g mistakes asking rent for effective rent, or uses older data from attachments), the narrative could inaccurately reflect market positioning leading to misinformed lender decisions. Why this creates a risk: Financial misreads may not be obvious during a quick review, Berkie/AI sometimes hallucinates missing data, Analysts may overtrust the AI draft, Incorrect comps analysis affects valuation, underwriting, and risk assessment. Potential outcomes: Undetected errors -> Misleading Narratives, Delays if analyst must significantly rewrite sections, Bias if AI leans toward overly positive/negative language, and Risk missing key red flags( e.g deferred maintenance, tenant rollover, poor crime trends) To manage these risks and bias, the workflow must treat AI as a drafting assistant with clear expectation that analysts must Cross check key data points against source documents, consciously adjust for optimistic marketing language v/s independent data, Document any data conflicts or uncertainities in the Narrative or internal notes. This balance using AI for speed and consolidation, while keeping human analysts fully accountable for accuracy and judgement is what turns AI from simple automation tool into a genuinely collborative part of the Narratives process.