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5Static Classification · BSA/AML ComplianceBank

Classify Structuring Attempts

For each cash deposit, does the pattern indicate structuring to avoid CTR filing?

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A real-world example

For each cash deposit, does the pattern indicate structuring to avoid CTR filing?

Structuring — making multiple deposits just below $10,000 to avoid Currency Transaction Reports — is a federal crime. Current rules flag deposits between $8,000–$9,999, generating thousands of false positives. Pattern-based scoring on the full account behavior history can identify real structuring while cutting false alerts 70%+.

How KumoRFM solves this

Graph-powered fraud intelligence

Instead of threshold rules, Kumo scores each deposit based on the complete relational pattern: same account making near-threshold deposits at different branches, different tellers, on consecutive days. The graph reveals that A001 visits 4 branches in 3 days with deposits averaging $9,300 — a pattern invisible to single-transaction rules.

From data to predictions

See the full pipeline in action

Connect your tables, write a PQL query, and get predictions with built-in explainability — all in minutes, not months.

1

Your data

The relational tables Kumo learns from

Cash Deposits

deposit_idaccount_idamountbranch_idteller_idtimestamp
CD01A0019,400BR12TL052025-01-10
CD02A0019,200BR08TL112025-01-11
CD03A0024,500BR12TL052025-01-10

Accounts

account_idaccount_holderrisk_ratingkyc_date
A001Apex Corphigh2023-03-15
A002J. Smithlow2022-08-01
2

Write your PQL query

Describe what to predict in 2-3 lines — Kumo handles the rest

PQL
PREDICT CASH_DEPOSITS.AMOUNT > 9000
FOR EACH CASH_DEPOSITS.DEPOSIT_ID
WHERE ACCOUNTS.RISK_RATING = "high"
3

Prediction output

Every entity gets a score, updated continuously

DEPOSIT_IDSCORE
CD010.94
CD020.91
CD030.03
4

Understand why

Every prediction includes feature attributions — no black boxes

Deposit CD01

Predicted: 94% structuring probability

Top contributing features

Deposit amount

$9,400

35% attribution

Distinct branches (3d window)

4 branches

28% attribution

Distinct tellers (3d window)

4 tellers

18% attribution

Account risk rating

high

12% attribution

KYC recency (days since review)

672 days

7% attribution

Feature attributions are computed automatically for every prediction. No separate tooling required. Learn more about Kumo explainability

Bottom line: Replace blunt threshold rules with pattern-based scoring. Cut false positives 70%+ while catching more real structuring. Save 4,000+ analyst hours annually.

Topics covered

structuring detectionBSA complianceAML complianceanti-money laundering AIcurrency transaction reportinggraph neural networkKumoRFMmachine learning fraud detectionfinancial crime preventionAI explainabilitypredictive query languagefraud false positive reduction

One Platform. One Model. Predict Instantly.

KumoRFM

Relational Foundation Model

Turn structured relational data into predictions in seconds. KumoRFM delivers zero-shot predictions that rival months of traditional data science. No training, feature engineering, or infrastructure required. Just connect your data and start predicting.

For critical use cases, fine-tune KumoRFM on your data using the Kumo platform and Data Science Agent for 30%+ higher accuracy than traditional models.

Book a demo and get a free trial of the full platform: data science agent, fine-tune capabilities, and forward-deployed engineer support.