Data platform strategy
Define roadmaps, ownership models, governance, and platform investments that make analytics and AI delivery faster without sacrificing trust.
Data, analytics and applied AI leadership
I lead teams that turn complex operational data into reliable platforms, decision systems, and applied AI products for manufacturing and technology organisations.
Leadership focus
I work where data strategy, platform reliability, and business operations meet. The emphasis is practical: trusted data foundations, AI use cases with clear accountability, and teams that can keep improving after launch.
Operating model
Define roadmaps, ownership models, governance, and platform investments that make analytics and AI delivery faster without sacrificing trust.
Identify production-sensible AI opportunities, connect them to operational workflows, and set the guardrails needed for measurable adoption.
Build batch, streaming, and lakehouse systems with tools such as Python, Airflow, Spark, Kafka, Flink, ClickHouse, Iceberg, and Presto.
Lead engineers, analysts, software teams, and ML practitioners through prioritisation, operating cadence, and delivery standards.
Selected evidence
A practical book connecting data-driven thinking with personal and professional operating discipline.
Community Python Software Foundation contributing memberSupporting the ecosystem behind one of the core languages for modern data and AI work.
Open source Wikimedia contributor and tools adminContributing to public-interest technical infrastructure and community tooling.
Speaking From DWH to Data Lake: a story of 2 data engineersSharing real-world lessons from the transition from warehouse-centric architectures to modern data lake patterns.
Career arc
Define and execute data strategies for global manufacturing operations, lead a 10+ person data and AI team, and deliver mission-critical data products for operational efficiency, predictive maintenance, and defect detection.
Built event-driven platforms, data mesh patterns, Snowflake governance, GDPR-aware data products, and KPI systems aligned with senior stakeholder needs.
Delivered data warehouses, reporting automation, Spark applications, dashboards, recommendation systems, A/B testing, and analytics workflows across TCS, Gramener, TVF, Stylight, and Spark Networks.
Writing
Most teams call themselves AI-native without changing how data, governance, and delivery work. Here's what actually separates durable value from endless demos.
Data LeadershipExecutives don't need more dashboards. They need a data leader who creates trust, improves decisions, and builds scalable organizational leverage.
Platform StrategyAI doesn't sit outside your data stack. It works best where trust, governance, and reliable foundations already exist.
Platform StrategyA good data platform does not eliminate complexity entirely. It contains complexity in the right places and removes it from everyday delivery.
Data LeadershipData teams often appear highly productive—shipping dashboards, fixing pipelines, responding to requests—yet struggle to move the business forward. The problem isn't effort; it's a system designed for activity rather than leverage.
Platform StrategyA practical framework for evaluating data platforms based on reliability, cost, developer experience, governance, and speed to insight.
Contact
Best fit conversations are about platform strategy, data and AI operating models, manufacturing analytics, and leadership roles where execution depth matters.