AI Can Draft Your Ind AS Disclosures in Minutes. It Still Can’t Make a Single Judgement Call That Matters.
The reporting standards that define a CA’s real value — Ind AS 116, Ind AS 109, and their IFRS equivalents — are built almost entirely on professional judgement. That’s precisely the part AI can’t do. Here’s where it genuinely helps, and where trusting it would be a mistake.
There’s a comfortable myth doing the rounds that AI will soon “handle” financial reporting. It won’t, and understanding exactly why is more useful than either the hype or the fear. Ind AS and IFRS reporting splits cleanly into two kinds of work: mechanical structuring — drafting notes, reformatting into Schedule III, cross-checking figures — and judgement — deciding a lease term, staging a receivable for expected credit loss, estimating a fair value. AI is genuinely useful for the first kind and quietly dangerous for the second, because it produces equally confident output for both.
This article walks through where AI in Ind AS/IFRS reporting earns its place in a working CA’s process, where it actively creates risk, and how to draw the line cleanly — using real examples from the standards that matter most in Indian practice.
📑 Table of Contents
- AI helps with the mechanical half of reporting — drafting notes, reformatting, checklist summaries, consistency checks.
- AI fails at the judgement half — Lease term under Ind AS 116, ECL staging under Ind AS 109, fair value., impairment indicators.
- The tell is simple: wherever the standard says “the entity shall assess,” that’s a human’s call, not AI’s.
- Every AI-assisted disclosure still needs a qualified reviewer to sign off — AI output carries no assurance value on its own.
The two kinds of reporting work
Every Ind AS or IFRS reporting task falls into one of two buckets, and keeping them separate is the whole skill of using AI responsibly here.
The first bucket is structuring work: taking figures and assumptions that have already been decided and turning them into compliant, well-presented output. Drafting a fixed-asset note, reformatting a trial balance into Schedule III presentation, writing the standard boilerplate around a related-party disclosure — this is repetitive, template-driven work where the answer is largely determined once the inputs are fixed.
The second bucket is judgement work: deciding what those inputs and assumptions should be in the first place. Is the lessee reasonably certain to exercise a renewal option, extending the lease term under Ind AS 116? Has a receivable experienced a significant increase in credit risk, moving it from Stage 1 to Stage 2 under the Ind AS 109 expected credit loss model? These are the questions that actually require a Chartered Accountant — and they’re exactly the questions AI cannot answer reliably.

Where AI genuinely helps
Used on the structuring half, AI in Ind AS/IFRS reporting is a real time-saver. Four uses stand out in day-to-day practice.
First-pass disclosure drafting. Feed AI last period’s disclosure note plus this period’s movement figures, and it will produce a clean first draft in the same format — the same way you’d redraft a fixed-asset schedule or a lease liability movement note. You review and correct; it saves the blank-page time. Here’s the prompt structure I use, with all client identifiers stripped first:
Reformatting into Schedule III. AI is good at taking data in one structure and re-presenting it in a prescribed format, which is much of what Schedule III compliance mechanically requires.
Turning a standard into a checklist. Ask AI to summarise the disclosure requirements of a specific standard as a checklist, and it produces a useful starting scaffold — which you then verify against the actual standard, since AI can misstate specifics.
Consistency checks. AI can cross-read your notes against your primary statements and flag where a number in the notes doesn’t tie to the face of the financials — a genuinely useful second pair of eyes on mechanical consistency.
Pro tip
When you ask AI to summarise a standard’s requirements, always treat the output as a draft checklist to verify against the actual text of Ind AS — not as an authority. AI can confidently state a threshold or disclosure requirement that’s subtly wrong, and in reporting, subtly wrong is still wrong.

Where AI fails — with real examples
On the judgement half, AI doesn’t just underperform — it creates a specific kind of risk, because it produces fluent, confident output that looks like a reasoned conclusion but isn’t grounded in the actual facts of your client. Three concrete examples from standards every Indian CA deals with.
Lease term under Ind AS 116. The standard requires you to determine the lease term as the non-cancellable period plus any renewal periods the lessee is “reasonably certain” to exercise. That certainty assessment depends on facts AI simply doesn’t have — the client’s business plans, the economic incentive to renew, the history of similar leases. AI will happily produce a lease term, but it’s guessing at the judgement, not making it.
Expected credit loss staging under Ind AS 109. The ECL model turns on whether a financial asset has experienced a “significant increase in credit risk” since initial recognition — the trigger for moving from 12-month to lifetime expected losses. This is a heavily judgement-driven area that NFRA has actively scrutinised, and it depends on borrower-specific credit information no general AI tool can properly weigh. Getting this wrong misstates both the loss allowance and the profit or loss.
Fair value and impairment estimates. Any measurement that rests on assumptions — discount rates, growth projections, recoverable amounts — is judgement work. AI can lay out the mechanics of a calculation, but the assumptions that drive the answer are management’s and the reviewing professional’s responsibility, not a tool’s.
CHECK
REQ’D
The single rule that keeps this safe
Wherever an Ind AS or IFRS standard uses language like “the entity shall assess,” “reasonably certain,” or “significant increase” — that is a judgement the standard deliberately assigns to a person. AI can draft the disclosure around that judgement, but it must never be the thing that makes it. If you find yourself letting AI decide the assumption, stop.

How to draw the line cleanly
The practical test is a single question, asked before you hand any task to AI: Is the answer already determined by fixed inputs, or does it depend on an assumption someone still has to make? If the inputs are fixed and the task is presentation, AI is a legitimate and efficient tool. If the task requires choosing an assumption, estimating a value, or interpreting whether a threshold has been crossed, that’s yours — and it stays yours even if AI would give you an answer instantly.
The same split, mapped across the reporting tasks Indian CAs deal with most:
| Reporting task | AI role | Who owns the outcome |
|---|---|---|
| Drafting a disclosure note from a prior-period template | Safe — first-draft structuring | Reviewer edits & signs off |
| Reformatting into Schedule III presentation | Safe — mechanical re-presentation | Reviewer verifies mapping |
| Summarising a standard’s disclosure checklist | Safe as a draft — verify against the standard | Practitioner confirms accuracy |
| Determining lease term under Ind AS 116 | Risky — judgement, not AI’s call | Chartered Accountant only |
| ECL staging under Ind AS 109 | Risky — judgement, regulator-scrutinised | Chartered Accountant only |
| Fair value / impairment assumptions | Risky — assumption-driven estimate | Management & reviewing CA |
None of this makes AI less valuable in reporting. It makes it more valuable, because keeping AI firmly on the structuring side frees up exactly the time you need for the judgement side — the part clients are actually paying a Chartered Accountant to get right.
Let AI Own the Format. You Own the Judgement.
The future of AI in Ind AS/IFRS reporting isn’t AI replacing the Chartered Accountant — it’s AI clearing the mechanical drafting off your desk so your attention goes where it’s actually needed. Use it freely for structuring, notes, and reformatting. Keep it away from every lease-term assessment, every ECL staging decision, every fair-value assumption. The standards were written to assign those calls to a person on purpose, and the practitioner who understands that line will always be more valuable than the tool that doesn’t. Draw it cleanly, and AI becomes the best junior you’ve ever had — fast, tireless, and wisely never trusted to sign off.
AI in Ind AS/IFRS Reporting: Questions I Get Asked
Can AI do Ind AS or IFRS reporting on its own?
Where does AI genuinely help in Ind AS reporting?
Where does AI fail or become risky in IFRS reporting?
Is it acceptable to use AI for financial statement disclosures under Ind AS?
If AI helped prepare a disclosure and it turns out wrong, who is responsible?









