SQL for Financial Forecasting Systems : Designing Scenario Engines, Rolling Forecasts, and Real-Time Planning Models for FP&A, Strategy, and Risk
Overview
Reactive Publishing
SQL for Financial Forecasting Systems is a practitioner's guide to building forecasting infrastructure that actually works in real organizations.
Most finance teams still rely on fragile spreadsheets, disconnected models, and static annual budgets that collapse under uncertainty. This book shows how modern FP&A, strategy, and risk teams use SQL as the backbone for scalable, auditable, and adaptive forecasting systems, capable of handling rolling forecasts, scenario analysis, and real-time updates without breaking.
Written for finance professionals, data engineers, and technical FP&A leaders, the book goes beyond query syntax to focus on system design. You will learn how to structure financial data for forecasting accuracy, design scenario engines directly in relational databases, manage forecast versions and overrides, and handle time-series complexity using SQL window functions and partitions. The emphasis is on building forecasting pipelines that survive real-world constraints: changing assumptions, late data, executive overrides, and audit requirements.
The book covers how to implement rolling forecasts instead of static budgets, how to model best-case and worst-case scenarios at scale, and how to manage forecast decay as assumptions age. It also addresses performance, data latency, snapshotting, and governance, showing how SQL-driven systems can feed Excel models, BI tools, and APIs without duplicating logic or introducing risk.
This is not a SQL beginner book, and it is not theory-heavy finance reading. It is a field manual for professionals responsible for delivering reliable forecasts under pressure, where decisions, capital allocation, and credibility depend on the integrity of the underlying data systems.
If you are responsible for forecasting accuracy, planning systems, or financial decision infrastructure, this book shows how modern organizations engineer forecasting the right way, using SQL as the source of truth.
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Details
- ISBN-13: 9798242494190
- ISBN-10: 9798242494190
- Publisher: Independently Published
- Publish Date: January 2026
- Dimensions: 9 x 6 x 1.14 inches
- Shipping Weight: 1.64 pounds
- Page Count: 564
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