Sentiment Intelligence Engine
Real-time customer sentiment analysis across support, reviews, and social channels

Pluriza x Velo Commerce
ML-powered forecasting for demand, churn, and revenue across product lines — turning historical data into forward-looking business intelligence.
Industry
Intelligence Layer
Services
Year
2024
Share article
Velo Commerce had years of transactional data but no way to turn it into actionable forecasts. We built a predictive analytics layer that provides demand, churn, and revenue predictions — giving leadership the confidence to plan inventory, staffing, and budgets months in advance.
Five years of transactional data spread across three systems with inconsistent schemas, missing fields, and duplicate records.
The engineering team had no experience with model training, feature stores, or serving predictions at scale.
Leadership was skeptical of black box predictions and needed transparent, explainable outputs they could act on.
We followed a build-trust-first methodology: start with a simple, explainable model, prove its value, then layer on complexity.
Consolidated five years of data from Shopify, NetSuite, and a legacy SQL Server into a clean, versioned data warehouse.
Built 120+ features capturing seasonality, customer lifecycle stage, product affinity, and macroeconomic indicators.
Trained gradient-boosted tree models for demand and churn, and a time-series ensemble for revenue forecasting.
Added SHAP-based feature importance and natural-language explanations for every prediction surfaced to stakeholders.
Deployed models behind a low-latency API with drift detection, automatic retraining triggers, and alerting.
Twelve-month rolling revenue forecast with confidence bands
Customer-level churn scores with explainability breakdown
Product demand heatmap by region and time period
Real-time model performance and drift monitoring
94%
Demand forecast accuracy
28%
Reduction in excess inventory
$2.1M
Revenue protected from churn
< 50ms
Prediction API latency
Deploy AI agents across sales, support, HR, and operations — in days, not months.
Get Started