Lead Data Engineer
Date:
23 Jun 2026
Lead Data Engineer
Company:
IT & Digital Solutions
Job Purpose
Lead the Data Engineering function, owning the design and evolution of the organization's data infrastructure and platform. Drive the delivery of scalable, reliable data pipelines and systems that underpin analytics, data science, and AI capabilities, while developing team capability and aligning engineering strategy with broader business objectives.
Key Result Responsibilities
- Define and own the data engineering roadmap, aligning pipeline, platform, and infrastructure strategy with organizational data and AI goals
- Architect and oversee the design of scalable, resilient data pipelines, data lakes, and warehouse solutions that meet performance, cost, and governance requirements
- Lead end-to-end delivery of complex data engineering initiatives, from requirements through to production
- Establish and enforce engineering standards, code quality practices, and data governance frameworks across the team
- Evaluate and introduce new tools, frameworks, and cloud-native technologies to continuously improve the data platform
- Partner with Data Science and AI teams to ensure data infrastructure is fit for advanced analytics and machine learning workloads
- Collaborate with business stakeholders to translate data requirements into robust, reusable engineering solutions
- Lead, mentor, and develop a team of data engineers, supporting career growth and building a high-performance engineering culture
Key Result Responsibilities-Continued
- Own data platform reliability, monitoring, and incident response; drive root-cause resolution and preventive improvements
- Provide direction on data security, access control, and compliance in coordination with relevant governance functions
People Management:
- Provides direction, coaching and guidance to team members for their career and professional development.
- Creates a conducive working environment to build and sustain a performance driven, engaged, and committed team.
- Ensures people management responsibilities are handled effectively in line with company procedures.
Qualifications (Academic, training, languages)
- Bachelor's or Master's degree in Computer Science, Computer Engineering, Information Technology, or a related field.
- Expert-level proficiency in SQL and Python; strong knowledge of Spark, Scala, or Java
- Deep experience with cloud data platforms (AWS, GCP, or Azure) and associated managed services
- Proven ability to design and implement complex data models across relational, NoSQL, and lakehouse architectures
- Advanced knowledge of data orchestration tools (e.g., Apache Airflow, Prefect, dbt) and CI/CD for data pipelines
- Strong understanding of data governance, data quality frameworks, and metadata management
- Familiarity with MLOps patterns and infrastructure requirements for machine learning workloads
- Ability to communicate complex technical concepts clearly to non-technical stakeholders and senior leadership
- Demonstrated leadership in building and mentoring engineering teams
- Strong commercial awareness and ability to make pragmatic engineering trade-offs aligned with business value
- Fluent in English; proficiency in Hindi is an advantage
Work Experience
- With 8-10 years of progressive experience in data engineering, with at least 2 years in a technical lead or senior engineering role.
- Demonstrated track record of delivering large-scale data infrastructure in a cloud environment. ITIL Certification is an advantage but not mandatory
- Experience with real-time and streaming data platforms (e.g., Apache Kafka, Flink, Kinesis)