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Data Analytics for Finance: FP&A, Variance, and the CFO's Monthly Question

Analytics for the questions the CFO asks every month — why revenue missed, where margin compressed, which business unit is consuming cash, and whether the full-year forecast needs to change. Built on the GL, operational data, and the cross-system joins that standard financial reporting can't produce.

Why FP&A Teams Spend 80% of Close on Data and 20% on Insight

A mid-market company's FP&A team has five analysts. Each close cycle, they spend four days assembling data from the GL, the CRM, the HRIS, the billing system, and various operational databases into the variance analysis the CFO expects. They spend one day actually analyzing the variances and writing the commentary. The ratio is backwards. The CFO wants insight — why revenue missed by $2M, whether it's a timing issue or a structural change, what the implications are for the rest of the year. The FP&A team wants to provide that insight. But they can't get to the analysis until Day 4 because the data assembly and reconciliation takes Days 1-3. Every month, the same cycle. Every quarter, the CFO asks the same question: why can't we get the variance analysis faster?
Finance analytics that shifts the FP&A ratio starts with the data assembly problem. A curated financial data layer that joins the GL with operational data — CRM pipeline, headcount, billing, customer metrics — and reconciles to the trial balance automatically. Variance analysis models that decompose revenue, margin, and expense variances by driver (volume, price, mix, rate, FX) at the business unit and product level. Rolling forecast models that update automatically as actuals land. With the data assembly automated and the variance models pre-built, the FP&A team starts the close at the analysis stage — Day 1 is insight, not data extraction.

How Finance Teams Apply It

Automated Variance Decomposition

Variance analysis that decomposes revenue, margin, and expense variances by driver — volume, price, mix, rate, FX, one-time items — at the business unit and product level. Pre-built with every close so FP&A starts at the analysis, not the data extraction.

Variance decomposition + drivers + auto-refresh

Working Capital & Cash Flow Analytics

Working capital analytics — DSO, DPO, DIO trending with drill-down to customer and vendor level. Cash conversion cycle optimization. The analytics that tells treasury where cash is trapped and where it can be freed.

Working capital + DSO/DPO/DIO + cash conversion

Driver-Based Rolling Forecast

Rolling forecast models that update automatically as actuals land — driver-based at the business unit level, with the sensitivity analysis that shows the CFO the range of full-year outcomes under different scenarios.

Rolling forecast + driver-based + sensitivity

What You Receive

Finance analytics delivered for FP&A productivity: curated financial data layer reconciled to the trial balance, automated variance decomposition, working capital analytics, rolling forecast models, CFO dashboard, integration with the planning tool, and the training that shifts FP&A from data assembly to analysis.

From Our Blog

Data Analytics for Finance — FAQ

How do you reconcile the analytics to the trial balance?

Through automated reconciliation jobs that compare the financial data layer totals against the GL trial balance after every close. Any variance gets surfaced before the FP&A team starts analysis. This is the trust foundation — if the data doesn't match the trial balance, nobody uses it.

No — analytics replaces the data assembly work, not the analysis and judgment. The FP&A team's value is in the interpretation: why revenue missed, what it means, what to do about it. Analytics gives them more time for that work by eliminating the days they spend pulling data.

Yes. Pre-qualified data analysts with FP&A and corporate finance experience — variance analysis, working capital, forecasting, and the GL reconciliation discipline that finance analytics requires. 92% first-match acceptance.

FP&A That Starts at
the Analysis, Not the Data

Automated variance decomposition, rolling forecasts, trial balance reconciliation — so FP&A spends time on insight.