Writing

Short pieces on AI, workflow design, and where finance teams are underestimating the architecture.

These are written for institutional teams trying to separate signal from noise: where AI actually helps, where generic tooling falls short, and why workflow design matters as much as model quality.

AI in credit · July 21, 2026

The constraint is not the AI

Most financial firms are sitting on years of accumulated judgment they cannot systematically access. The problem is not the model. It is whether the historical record has been made legible enough to use.

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AI workflow · July 17, 2026

The architecture matters more

The real test is not whether AI works in a demo. It is whether the system can run without you watching.

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AI in credit · July 16, 2026

The firm with the least legacy to defend

In credit markets, the pattern has repeated often enough to be worth naming. Electronic execution, direct lending, now AI. The advantage goes first to whoever moves with the fewest internal switching costs.

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AI in credit · July 15, 2026

The model is a variable, not a dependency

The model you choose today is unlikely to be the best one in a year. Building model-agnostic infrastructure is the more durable investment.

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AI workflow · July 14, 2026

Better models are not the main constraint

Past the basics, the main constraint in finance AI is not the model. It is whether the surrounding system is good enough to make the model useful in a repeatable, defensible way.

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AI in finance · July 13, 2026

Why AI implementation stalls in financial firms

Three observations on why AI implementation stalls: data security, infrastructure design, and the cultural change most institutions underestimate.

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AI workflow · June 20, 2026

Speed at the task level disappears into the same process

Most enterprise AI ROI is lagging for a simple reason. Companies are buying capability faster than they are redesigning workflows.

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AI in credit · June 18, 2026

You are restructuring

Credit funds are among the largest financiers of AI infrastructure in the world. Most have not applied any of it internally. There is a cost to that, and it is not gradual.

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AI workflow · June 2026

Before the call, the context you already have

The most valuable briefing before a financial services meeting isn't what a search engine returns. It's what you already know but can't access in two minutes.

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AI in credit · April 3, 2026

In private credit, the marks haven't moved. The risk has.

I ran AI across 10 major public BDC filings and built something no commercial tool currently produces: a systematic view of software exposure across the book.

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Workflow architecture · June 6, 2026

The bottleneck is not access to AI

Most teams already have model access. The hard part is converting raw information into a structured first read that a decision-maker can use.

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On-prem deployment · June 4, 2026

Why on-prem AI in finance is now a real option

Privacy was the starting point. Continuity, model availability, and operational resilience are making the on-prem path more practical and more relevant.

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AI in finance · March 12, 2026

AI doesn't level the playing field in credit

The narrative says AI democratizes information access. Seventeen years in credit trading suggests the opposite.

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AI in credit · March 10, 2026

The Bloomberg terminal was built for a different world

After nine months building AI tools for credit synthesis, the hard part turns out not to be the technology.

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AI workflow · March 18, 2026

The most useful system I built wasn't the most impressive one

On building AI tools for your own workflow, and why being the most frustrated user first is the better design brief.

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