Word of advice to anyone considering the "minor-units precision" strategy for representing monetary amounts: Don't (or at least, don't use it as an interchange/API data format).
It seems like a clever idea (fast integer math, no rounding problems for addition and subtraction), but it'll bite you incredibly hard if you ever stumble upon an edge case such as working with a partner that has a different implied number of digits for a given currency. This is especially relevant for stablecoins, which often have a different number of implied decimal digits than the "fiat" currency they represent.
Also, consider representing amounts as a string type in JSON-based APIs. JSON does not specify decimal precision, so you (and all your users/vendors) will always have to make sure your parser/serializer doesn't internally lose precision by going via floating point. This can get ugly fast, and while a string seems conceptually less neat, it completely bypasses that problem. (Some will call this an anti-pattern [1], but I'd rather not fight this particular battle for ideological purity on the shoulders of my users or shareholders.)
> but it'll bite you incredibly hard if you ever stumble upon an edge case such as working with a partner that has a different implied number of digits for a given currency
Why would that be a problem? You just transform the values when interacting with their API.
Let's say I operate with a 4 decimal expectation and your API expects 6, is there any way to reconcile that outside of documentation and or metadata ? (which would be the same issue I guess whatever representation is used ?)
Still, even if you do: Chances that your users are just going to assume you're conforming to ISO 4217, some national standard, or your competitor that they're already integrated with are pretty high, so I wouldn't take the chance. Pick something that doesn't have to be documented instead.
What do you recommend instead? Standard floating-point ("float"/"double"), fixed-point arithmetic with thousandths (or smaller) of the minor unit, arbitrary-precision decimal numbers, or something else entirely?
I think what matters most is your database and API representation, as well as having consistent and well-defined rounding rules.
I largely agree with TFA: Round explicitly and consistently whenever you cross a boundary, i.e. database persistence and internal API calls.
Use whatever works for your required business case internally (i.e. inside of procedures calculating some function of one or more input amounts). This can be regular old floats/doubles if you absolutely know what you're doing, or BigDecimal if you aren't and would rather suffer slightly slower performance than having to talk to an auditor about IEEE 754 rounding modes, or even minor-amount integers (yes, even though I just said to not use them – but you'll want to ABSOLUTELY NEVER leak them outside of your system, including your data/analytics pipeline, which might have different ideas about financial amounts than your business logic implementing a nice custom monetary type).
You'll definitely have to throw it away at some point.
The art is in making those points well-defined and rare enough to not cause large discrepancies, but frequent enough to avoid ballooning arbitrary-precision numbers across databases and services that might not be able to handle them.
I think most of this applies to software engineering generally, not just fintech.
For example the parts talking of retries, idempotency, event ordering, etc. This applies to all systems that require any degree of accuracy, even if no money is directly involved. I've seen so many systems built on the assumption that "we can always retry", but you can only retry if you fail cleanly in the first place, and if the downstream system offers the same level of idempotency that you think it does. Quite often these are not put to the test.
I've spent many hours explaining how idempotency is supposed to work, and why it's important. Most teams understand the need for it, but very few thought about it up front.
I have just left a fintech company after 5 years and I can say after reading this, it looks legit to me (not AI slop as someone asked). These are the same sort of lessons I learned during my time in the industry.
I would recommend anyone starting in fintech to take some time to understand accounting principles and the ledger in a bit more depth than just debits vs credits - this is likely what is most unfamiliar to programmers.
Also financial software is very data-heavy and I learned more about databases in my time working in fintech than the 15 years before that. I think going into a bit more detail about even the basics (indexes) will save a lot of headaches.
I just published Fintech Engineering Handbook distilled from 6 years of tears, sweat and swears.
It’s a free ~25-page resource with various hints and patterns around handling money.
Tell me what you think!
other than that, peruse the commits on the source [1], or wait for the author to respond.
Whilst I wouldn't say anything in it requires years of experience to know, this would be helpful for someone who hasn't considered anything about monetary systems. It doesn't read like slop, but I could be wrong but even so it all seems fairly reasonable (I've only fully read about 50% before realising there's nothing new here for me, and then skimmed to rest).
Skimmed it and based on my experience in fintech, it looks good, accurately represents the real world. I guess there’s still a chance it is AI generated but it doesn’t seem like vacuous slop, it has substance!
Word of advice to anyone considering the "minor-units precision" strategy for representing monetary amounts: Don't (or at least, don't use it as an interchange/API data format).
It seems like a clever idea (fast integer math, no rounding problems for addition and subtraction), but it'll bite you incredibly hard if you ever stumble upon an edge case such as working with a partner that has a different implied number of digits for a given currency. This is especially relevant for stablecoins, which often have a different number of implied decimal digits than the "fiat" currency they represent.
Also, consider representing amounts as a string type in JSON-based APIs. JSON does not specify decimal precision, so you (and all your users/vendors) will always have to make sure your parser/serializer doesn't internally lose precision by going via floating point. This can get ugly fast, and while a string seems conceptually less neat, it completely bypasses that problem. (Some will call this an anti-pattern [1], but I'd rather not fight this particular battle for ideological purity on the shoulders of my users or shareholders.)
[1] https://blog.json-everything.net/posts/numbers-are-numbers-n...
> but it'll bite you incredibly hard if you ever stumble upon an edge case such as working with a partner that has a different implied number of digits for a given currency
Why would that be a problem? You just transform the values when interacting with their API.
Exactly, model is in integers and representation can be 1⃣3⃣ or whatever, that's why model-view separation exist.
Sure, but are all your (and your users' and vendors') engineers and LLM agents going to remember that? When in doubt, always be explicit.
I'm curious how you handle that.
Let's say I operate with a 4 decimal expectation and your API expects 6, is there any way to reconcile that outside of documentation and or metadata ? (which would be the same issue I guess whatever representation is used ?)
Yeah, you need to document it.
Still, even if you do: Chances that your users are just going to assume you're conforming to ISO 4217, some national standard, or your competitor that they're already integrated with are pretty high, so I wouldn't take the chance. Pick something that doesn't have to be documented instead.
What do you recommend instead? Standard floating-point ("float"/"double"), fixed-point arithmetic with thousandths (or smaller) of the minor unit, arbitrary-precision decimal numbers, or something else entirely?
I think what matters most is your database and API representation, as well as having consistent and well-defined rounding rules.
I largely agree with TFA: Round explicitly and consistently whenever you cross a boundary, i.e. database persistence and internal API calls.
Use whatever works for your required business case internally (i.e. inside of procedures calculating some function of one or more input amounts). This can be regular old floats/doubles if you absolutely know what you're doing, or BigDecimal if you aren't and would rather suffer slightly slower performance than having to talk to an auditor about IEEE 754 rounding modes, or even minor-amount integers (yes, even though I just said to not use them – but you'll want to ABSOLUTELY NEVER leak them outside of your system, including your data/analytics pipeline, which might have different ideas about financial amounts than your business logic implementing a nice custom monetary type).
A string type. As parent says: it completely bypasses the problem. Save the numbers between double quotes and be done with it.
Do not throw away any precision in finance/money computation, regardless what/ how you are doing it.
In C# e.g., there is type decimal for those computations.
You'll definitely have to throw it away at some point.
The art is in making those points well-defined and rare enough to not cause large discrepancies, but frequent enough to avoid ballooning arbitrary-precision numbers across databases and services that might not be able to handle them.
I think most of this applies to software engineering generally, not just fintech.
For example the parts talking of retries, idempotency, event ordering, etc. This applies to all systems that require any degree of accuracy, even if no money is directly involved. I've seen so many systems built on the assumption that "we can always retry", but you can only retry if you fail cleanly in the first place, and if the downstream system offers the same level of idempotency that you think it does. Quite often these are not put to the test.
Similar style and message to https://shapeofthesystem.com/
The idempotency keys section alone is worth the read most devs learn that lesson the hard way.
Also audit trails. Good audit trail can save company (and you) in emergency as well. Useful for debugging and last resort of compliance data source.
100%. It deserves more detail, too.
I've spent many hours explaining how idempotency is supposed to work, and why it's important. Most teams understand the need for it, but very few thought about it up front.
Does anyone have more learning resources in this field? Any model implementations, pet projects, anything to get going?
I have just left a fintech company after 5 years and I can say after reading this, it looks legit to me (not AI slop as someone asked). These are the same sort of lessons I learned during my time in the industry.
I would recommend anyone starting in fintech to take some time to understand accounting principles and the ledger in a bit more depth than just debits vs credits - this is likely what is most unfamiliar to programmers.
Also financial software is very data-heavy and I learned more about databases in my time working in fintech than the 15 years before that. I think going into a bit more detail about even the basics (indexes) will save a lot of headaches.
First half didn’t sound so bad.
Sorry have to ask these days. Is this carefully written down information from years of experience in the field or AI slop?
Hey, author here :)
Its at least 80% organic artisanal writing and maybe 20% AI when I needed help with grammar, completeness, broader perspective and everything around.
Appears that the author got some help organizing the document, but wrote it all themselves.
from the author's mastodon post [0]
other than that, peruse the commits on the source [1], or wait for the author to respond.[0]: https://mas.to/@krever/116814803588993437
[1]: https://github.com/Krever/fintech-engineering-handbook/commi...
Whilst I wouldn't say anything in it requires years of experience to know, this would be helpful for someone who hasn't considered anything about monetary systems. It doesn't read like slop, but I could be wrong but even so it all seems fairly reasonable (I've only fully read about 50% before realising there's nothing new here for me, and then skimmed to rest).
Skimmed it and based on my experience in fintech, it looks good, accurately represents the real world. I guess there’s still a chance it is AI generated but it doesn’t seem like vacuous slop, it has substance!