Lead Data Engineer

Lead Data Engineer

1 Nos.
126775
Full Time
6.0 Year(s) To 7.0 Year(s)
16.00 LPA TO 18.00 LPA
Job Description:

Role: Lead the design, development, and optimization of data pipelines and data platform components for an e-commerce business. Work across ingestion, transformation, modeling, governance, and performance to support large-scale Data & AI use cases.


Key Responsibilities

  • Build and maintain scalable batch and streaming data pipelines from transactional systems, clickstream, and third-party sources.

  • Implement and optimize data lake/lakehouse/warehouse environments on cloud platforms (GCP/AWS/Azure).

  • Develop data models and support medallion-layer architecture (bronze/silver/gold) for analytics, BI, and AI workloads.

  • Ensure end-to-end data quality, reliability, lineage, and performance.

  • Apply best practices in data governance, privacy, PII protection, and security standards.

  • Collaborate with architects, analysts, ML teams, and product stakeholders to translate business needs into scalable data solutions.

  • Optimize SQL, ETL/ELT jobs, orchestration workflows, and cloud infrastructure for performance and cost efficiency.

  • Contribute to defining data engineering standards, coding practices, and technology improvements.


Required Skills – Lead Data Engineer

  • 6 -7+ years of experience in data engineering, with strong exposure to cloud-based data platforms.

  • Hands-on expertise with data pipelines and streaming technologies (Kafka/PubSub, Spark, Flink).

  • Strong SQL and Python programming skills.

  • Experience building and optimizing data lake/lakehouse/warehouse platforms on GCP/AWS/Azure.

  • Solid understanding of data modeling: dimensional modeling, data vault (or similar), and medallion architecture.

  • Familiarity with lakehouse/warehouse tools (Databricks, BigQuery, Snowflake, Redshift, ClickHouse).

  • Experience with orchestration tools (Airflow/Cloud Composer, Databricks Workflows, etc.).

  • Strong background in data governance, data quality frameworks, cataloging, lineage, RBAC/ABAC, and compliance (GDPR/CCPA).

  • Experience in e-commerce, digital, or consumer-facing data environments is a strong advantage (clickstream, customer 360, orders, marketing).

  • Good communication skills; able to work with cross-functional teams and support architectural decisions.


    keyword skill 

    • AWS

    • Azure

    • Google Cloud Platform (GCP)

    • Data Pipelines

    • Streaming (Kafka / Spark)

    • SQL & Python

    • Data Lake / Lakehouse

    • Medallion Architecture

    • Databricks

    • Snowflake

     

Company Profile

Apply Now

  • Interested candidates are requested to apply for this job.
  • Recruiters will evaluate your candidature and will get in touch with you.

Similar Jobs