Periagoge
Concept
1 min readself knowledge

Subscription Audit: AI Detection of Recurring Charges

AI detection of recurring charges works by identifying the timing and amount patterns in your transaction history that signal a subscription or automatic payment — even from merchants whose names do not obviously indicate recurring billing. This catches charges you forgot you authorized and ones you never knowingly signed up for. This concept covers AI-assisted recurring charge detection as a financial monitoring practice.

Hypatia
Why It Matters

A subscription audit is the process of identifying every recurring charge on your bank and credit card statements — including forgotten free trials, duplicate services, and auto-renewed annual fees — and evaluating whether each one is still worth keeping. Research consistently shows most people underestimate their monthly subscription spending by 40% or more.

AI can scan exported transaction data to surface recurring patterns that human eyes miss, group similar services, flag charges that increased without notice, and help you decide what to cancel. This turns a tedious manual review into a fast, structured process that often uncovers $50–$200 in recoverable monthly cash.

How to apply it

Export 6 months of transactions from your bank as a CSV and upload it to ChatGPT with the prompt: 'Identify every recurring charge in this data, group them by frequency (weekly, monthly, annual), flag any that appear to have increased in price, and list which categories have overlapping services I might be able to consolidate.' Act on the cancellation list it generates.

Helpful guides
Hypatia
Daily Life & Decisions
Related Concepts
Peri
Questions about Subscription Audit: AI Detection of Recurring Charges?

Peri can explain this concept, give practical examples, help you decide whether it applies to your situation, or recommend a journey if appropriate.

Ready to work on Subscription Audit: AI Detection of Recurring Charges?

Explore related journeys or tell Peri what you're working through.