We build custom predictive models to support data-driven decisions. By analyzing your historical data, we uncover hidden patterns and develop AI algorithms for forecasting, customer segmentation, churn prediction, recommendations, and more.
Predict product demand, sales trends, or customer churn
Regression, classification, and multivariate forecasting models
Continuously improved with incoming data
Automated customer clustering (K-means, DBSCAN, etc.)
RFM analysis, churn prediction models
Personalized marketing and communication strategies
Dynamic product, content, or offer suggestions
Collaborative filtering, content-based, or hybrid approaches
Perfect for e-commerce, digital media, online learning
Detect fraud, outliers, or suspicious patterns automatically
Useful for finance, logistics, cybersecurity, and IT monitoring
Real-time alerts and smart logging
Python, Pandas, Scikit-learn, TensorFlow, XGBoost, PyTorch
Linear & multiple regression, Random Forest, SVM, neural networks, sequential models (LSTM, ARIMA)
ETL, Airflow, dbt
Power BI, Metabase, Grafana
REST APIs, webhooks, relational & NoSQL databases
We evaluate data quality and availability, and define your predictive goal (forecasting, classification, personalization, etc.).
We structure datasets, fill gaps, correct inconsistencies, and balance data distributions.
Using supervised, unsupervised, or hybrid techniques, we train and validate models for accuracy and reliability.
We translate complex results into business-ready insights that inform strategic decisions.
Models are deployed via API or embedded in dashboards, software, or internal workflows.
Not necessarily. We can start with small or incomplete datasets and refine the models over time with an iterative approach.
We analyze your data, select the best-suited algorithms, and train them using supervised, unsupervised, or hybrid approaches.
Yes. Our models work in the background and deliver results via API, dashboards, or data exports compatible with your systems.
Absolutely. We offer retrainable models—either periodically or continuously—to adapt to evolving data and business needs.