About this role
Role: BI Lead (Power BI / Tableau)
Location : Gurugram
Hire Type : FTE
KEY RESPONSIBILITIES
• Lead BI architecture and solution design conversations with clients, acting as the primary technical authority on data and analytics platforms. • Design, build, and optimise Power BI semantic models and Tableau data sources for enterprise-scale performance and maintainability. • Write and optimise complex DAX measures, M/Power Query transformations, and SQL queries to support accurate, high-performance reporting. • Diagnose and resolve data model issues — slow DAX, broken relationships, cardinality problems, and upstream data quality issues — quickly and systematically. • Architect dimensional data models (star schema, fact/dimension design) and semantic layers consumed across multiple BI tools. • Drive self-service BI capability: certify datasets, define governed metrics, and build enablement programmes so business teams can explore data independently. • Define BI deployment standards, CI/CD pipelines, and release governance to ensure reliable and secure analytics delivery. • Partner with data engineering teams to design analytics-ready data structures and resolve data issues at source. • Establish data governance frameworks covering data quality standards, metadata management, access controls, and KPI standardisation across business units. • Mentor BI developers through code and model reviews, sharing DAX, SQL, and design best practices to raise overall team capability.
MUST-HAVE SKILLS
Power BI
• Semantic model design and optimisation: star-schema modelling, reducing cardinality, managing relationships, aggregations, and composite models. • Advanced DAX: efficient, reusable measures; evaluation context; CALCULATE; iterator functions; time intelligence patterns. • M / Power Query: advanced transformations, query folding, incremental refresh, parameter-driven pipelines. • Power BI Service governance: certified datasets, deployment pipelines, workspaces, row-level security, gateways, and refresh scheduling. • Self-service BI: promoting dataset reuse and enabling business users to build their own reports without IT dependency.
Tableau
• Dashboard and data source design for enterprise-scale reporting. • Tableau Server / Tableau Cloud governance, published data sources, and performance optimisation.
SQL & Data Architecture
• Strong SQL: complex queries, CTEs, window functions, query optimisation, and reading execution plans. • Data warehouse and dimensional modelling: fact/dimension design, schema validation, and data lineage. • ETL/ELT understanding: diagnosing and resolving upstream data issues that affect BI layers.
Communication & Stakeholder Engagement
• Comfortable presenting architecture, data strategy, and roadmaps to client executives and technical leaders. • Skilled at requirements gathering from non-technical stakeholders and translating them into scalable BI solutions. • Experience leading architecture reviews, discovery workshops, and solution design sessions.
GOOD TO HAVE
• Snowflake: query optimisation, warehouse sizing, and integrating Snowflake with Power BI or Tableau via DirectQuery or native connectors. • Sigma Computing: cloud-native self-service analytics on Snowflake; governed metrics, semantic model integration, and business user enablement. • Experience connecting Sigma Computing with existing Power BI and Tableau ecosystems without creating governance gaps or data duplication. • Working knowledge of policy lifecycle, claims, underwriting, premiums, loss ratios, and combined ratio. • Ability to translate insurance business questions into structured KPIs, metrics hierarchies, and dashboard designs.
KEY RESPONSIBILITIES
• Lead BI architecture and solution design conversations with clients, acting as the primary technical authority on data and analytics platforms. • Design, build, and optimise Power BI semantic models and Tableau data sources for enterprise-scale performance and maintainability. • Write and optimise complex DAX measures, M/Power Query transformations, and SQL queries to support accurate, high-performance reporting. • Diagnose and resolve data model issues — slow DAX, broken relationships, cardinality problems, and upstream data quality issues — quickly and systematically. • Architect dimensional data models (star schema, fact/dimension design) and semantic layers consumed across multiple BI tools. • Drive self-service BI capability: certify datasets, define governed metrics, and build enablement programmes so business teams can explore data independently. • Define BI deployment standards, CI/CD pipelines, and release governance to ensure reliable and secure analytics delivery. • Partner with data engineering teams to design analytics-ready data structures and resolve data issues at source. • Establish data governance frameworks covering data quality standards, metadata management, access controls, and KPI standardisation across business units. • Mentor BI developers through code and model reviews, sharing DAX, SQL, and design best practices to raise overall team capability.
Bachelor's Degree