5+ years turning raw enterprise data into decisions — SQL, Python, Power BI, Machine Learning. From manufacturing floors at Škoda VW & Caterpillar to EV grid forecasting and healthcare risk prediction.
I'm a Senior Data Analyst with 5+ years of enterprise experience transforming complex datasets into decisions that move the needle — across manufacturing, automotive, and now healthcare and fintech.
My background spans end-to-end analytics delivery: from raw data pipelines and star-schema modelling to predictive ML systems and executive Power BI dashboards. I've worked inside large-scale enterprise environments at Škoda Auto Volkswagen, Caterpillar India, and Mahindra & Mahindra, consistently bridging the gap between technical complexity and business clarity.
Currently based in Dublin, holding an MSc in Business Analytics (2:1) from Dublin Business School. Actively targeting roles in Data Analytics, BI Development, Analytics Engineering, and Healthcare IT / FinTech.
- Designed interactive Power BI dashboards consolidating data from multiple enterprise systems, improving leadership reporting accessibility and decision-making efficiency by an estimated 30%.
- Built and optimised SQL-based data models (star schemas) and ETL workflows feeding executive reporting layers, reducing query runtimes by 40% and improving downstream reporting accuracy.
- Developed predictive forecasting models in Python (regression, time-series) for demand and resource planning, improving planning accuracy by 18%.
- Built supervised ML models to detect consumption anomalies and surface optimisation opportunities, contributing to 7% cost savings on operational spend.
- Automated recurring analytics pipelines and collaborated cross-functionally to translate ambiguous business requirements into structured BI solutions delivered on time.
- Delivered targeted analytics use cases on operational, quality and event-level datasets, identifying inefficiencies that contributed to a 12% cost reduction.
- Built Power BI dashboards tracking key operational KPIs, enabling leadership to monitor trends in real time.
- Performed trend, variance and root-cause analysis on historical datasets uncovering recurring failure patterns — resulting in a 15% reduction in repeat issues.
- Developed predictive statistical models in Python to estimate failure probability and risk prioritisation using incident logs and quality datasets.
- Built and evaluated supervised ML models (classification and regression) improving early issue detection accuracy by 24%.
- Collected, cleaned and prepared large-scale operational and sensor datasets using Python and SQL, ensuring data accuracy, consistency and reliability for downstream analysis.
- Worked closely with cross-functional teams to gather requirements and translate business problems into structured analytical solutions and reporting deliverables.
- Applied descriptive and diagnostic analytics to explain performance variations and deviations, supporting data-driven course corrections.
- Built and maintained KPI dashboards covering productivity, cycle time, quality and efficiency metrics, surfacing trends for management review.
in mind?