Tag Archives: Event Time Processing Time

Common Anti-Patterns in Financial Services Data Platforms

Financial Services data platforms rarely fail because of tools, scale, or performance. They fail because architectural decisions are left implicit, applied inconsistently, or overridden under pressure. This article documents the most common and damaging failure modes observed in large-scale FS data platforms: not as edge cases, but as predictable outcomes of well-intentioned instincts applied at the wrong layer. Each pattern shows how trust erodes quietly over time, often remaining invisible until audit, remediation, or regulatory scrutiny exposes the underlying architectural fault lines.

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Foundational Architecture Decisions in a Financial Services Data Platform

This article defines a comprehensive architectural doctrine for modern Financial Services data platforms, separating precursor decisions (what must be true for trust and scale) from foundational decisions (how the platform behaves under regulation, time, and organisational pressure). It explains why ingestion maximalism, streaming-first eventual consistency, transactional processing at the edge, domain-first design, and freshness as a business contract are non-negotiable in FS. Through detailed narrative and explicit anti-patterns, it shows how these decisions preserve optionality, enable regulatory defensibility, support diverse communities, and prevent the systemic failure modes that quietly undermine large-scale financial data platforms.

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