Case Studies

Real analyses on real data. Each one was generated by the MCP Analytics team — interactive in the browser, exportable as PDF, citable, and reproducible. Click any card to open the full live report. Want to see one question answered at every depth, Snapshot through Capstone? See the examples.

Ecommerce churn drivers — chart preview
Ecommerce

What's driving customer churn?

Logistic regression with feature importance, ranking the behavioral and demographic factors that predict whether a customer will churn.

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Fraud anomaly detection — chart preview
Finance

Which transactions look anomalous?

Isolation forest anomaly scoring on transaction features, surfacing the highest-risk outliers with explanation by feature contribution.

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HR attrition drivers — chart preview
HR

Why are employees leaving?

Logistic regression on attrition drivers — tenure, role, compensation, satisfaction — with odds ratios and a ranked driver list for retention planning.

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Delivery satisfaction drivers — chart preview
Ecommerce

What's driving delivery satisfaction?

Regression analysis on order data identifying the delivery, timing, and fulfillment factors that most affect customer satisfaction scores.

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Retail price elasticity — chart preview
Retail

How elastic is demand to price changes?

Price elasticity analysis on transaction data, estimating demand sensitivity by product category and identifying optimal pricing thresholds.

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Ecommerce — chart preview
Ecommerce

Which customer segments drive most of the revenue?

K-Means clustering on Recency, Frequency, Monetary value — bands customers into actionable retention and upsell segments with named profiles.

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Ecommerce — chart preview
Ecommerce

Which customers are most likely to churn next?

Random forest + logistic regression on behavioral and transactional features — outputs per-customer churn probability and ranked predictive drivers.

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Ecommerce — chart preview
Ecommerce

How sensitive is demand to price across product categories?

Log-log multiple regression on historical price and volume data — reports elasticity coefficients per category with confidence intervals.

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Finance — chart preview
Finance

What patterns separate fraudulent from legitimate transactions?

Statistical EDA across 28 PCA features plus amount and time — distributional comparisons, temporal heatmaps, and correlation matrices that surface the strongest fraud signals.

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Finance — chart preview
Finance

Can we automatically flag fraudulent credit card charges?

SMOTE-balanced training of logistic regression, random forest, and XGBoost — reports F1, AUC, precision, recall plus a ROC diagnostic and feature-importance ranking.

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Finance — chart preview
Finance

Where will revenue be 3-6 months from now?

Seasonal decomposition plus ARIMA on monthly FMCG sales — produces point forecasts with prediction intervals and breaks out trend, seasonality, and residuals.

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SaaS — chart preview
SaaS

Which subscribers will be the most valuable over their lifetime?

Distributional analysis of customer LTV with segment-by-contract breakdowns — surfaces high-value and at-risk cohorts and what subscription patterns drive each.

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HR — chart preview
HR

What's actually driving employee engagement and satisfaction?

Exploratory analysis of IBM HR engagement and attrition data — satisfaction-by-department, tenure patterns, work-life balance, and how each dimension co-moves with attrition risk.

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Healthcare — chart preview
Healthcare

How long will a patient stay in the hospital?

Multi-class classification on patient clinical features, comorbidities, labs and vitals — predicts length-of-stay bin and ranks the strongest predictors for care planning.

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Operations — chart preview
Operations

What does demand look like across SKUs, warehouses, and regions?

Time-series ARIMA forecasts per SKU/warehouse with seasonal components — informs reorder timing and inventory levels under varying supplier lead times.

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Operations — chart preview
Operations

Which segments of telemetry look anomalous?

Supervised classification on signal statistical features — flags telemetry segments with anomalous behavior and explains them via feature contribution.

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Agencies — chart preview
Agencies

What spending patterns separate your customer segments?

Personality and demographic profiling against spend across categories, purchase channels, and campaign response — produces actionable customer segments for client work.

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Agencies — chart preview
Agencies

What does this dataset look like — without writing any code?

Automated profiling: distributions, correlations, missing-data audit, and a category-by-numeric overview that lands the analyst on the meaningful patterns in minutes.

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Anatomy of a Report

Every analysis includes the same components designed for real-world decision making.

Interactive visualizations

Zoom, pan, and hover over charts. Residual plots, Q-Q plots, feature importance, time-series decompositions, and correlation matrices.

Complete metrics

R², RMSE, MAE, p-values, confidence intervals, AIC/BIC — every relevant statistic for the analysis type. Nothing hidden.

AI-generated insights

Plain-English interpretation that explains what the numbers mean. Key findings, recommendations, and actionable next steps.

Citable

APA, MLA, Chicago, BibTeX in one click — paste straight into a paper, deck, or compliance filing. Methodology and source travel with the citation.

Sourceable

Validated R source code is embedded in every report. A skeptical reader can rerun it and get the same answer.

Reproducible

Fixed seeds, Docker isolation, validated R. Same input → same output on any machine, any day, forever.

Make one of these for your data

Upload a CSV or connect a live source. Describe what you want to know. The team builds, validates, and ships the report.