Job Summary
An accomplished technology leader with 8+ years of experience in architecting and delivering scalable data-driven systems. This role oversees the design of data subsystems, provides strategic technical direction, and leads projects of significant organizational impact. The individual will engage directly with customers in high-level discussions and guide technical teams in modern data engineering practices, BI strategy, and advanced analytics across cloud platforms. Brings an innovation-first mindset and deep hands-on experience in data architecture, pipelines, visualization, and AI/ML readiness.
Key Responsibilities
- Own the architecture and design of scalable data engineering subsystems and cloud-native analytics solutions.
- Lead cross-functional teams on high-profile projects, making technical trade-off decisions that balance performance, cost, and delivery timelines.
- Engage with customers in technical forums to represent the organization as a thought leader and trusted advisor.
- Create data ingestion, transformation, and enrichment pipelines using ETL/ELT best practices.
- Drive the creation and automation of dashboards, reports, and self-service BI layers.
- Evaluate and integrate emerging technologies to improve platform capabilities and decision intelligence.
- Mentor senior engineers and architects, and foster a data-driven culture within the organization.
Education & Experience
- Bachelor's or Master's degree in Engineering, Computer Science, or equivalent (B.E./B.Tech/MCA)
- 8+ years of experience in data engineering, BI, and analytics leadership roles
Core Competencies
- Data Engineering Expertise:
- Data warehousing, big data pipelines, stream processing
- Handling structured/unstructured data and real-time ingestion
- Cloud & Platform Skills:
- Hands-on experience with AWS, Azure, GCP
- Cloud-native analytics and scalable storage systems
- Tools & Technologies:
- Data & Storage: MongoDB, Hive, HBase, ElasticSearch
- Visualization: Tableau, Power BI, QlikView
- Compute & Processing: Spark (MLlib), Kafka
- Programming & Querying:
- Languages: Python, Scala, SQL, R
- Frameworks: Spark, Hadoop, REST APIs
Specializations
- Data Warehousing (DWH)
- Big Data Engineering
- Edge Analytics & Real-Time Processing
- Data Architecture & BI Platform Design