
GCP Application Technical Lead
About the role
Job Summary
Data Engineer who is able to:
-
design, build, and automate ETL pipelines that ingest data from multiple sources (e.g., decoding feeds) and deliver reproducible, model-ready datasets
-
build and maintain data warehouses and lakes, plus all supporting database structures
-
provision and run the data infrastructure for storage, scheduling, and orchestration (Airflow) on both GCP and on-prem systems
-
embed rigorous validation, monitoring, logging, and governance to meet GDPR and EU AI Act requirements
-
collaborate with AI engineers to supply high-quality datasets on time
Key Skills: Data Engineer, AWS, GCP, Google Cloud Platform, Hybrid, Infrastructure, On-prem, ETL, ELT, Data Pipelines, Data Warehousing, Data Lakes, Airflow, Terraform, Python, SQL, Spark, Pandas, Infrastructure-as-Code, IaC, Pulumi, Ansible, CI/CD, GitHub Actions, Jenkins, Containerization, GDPR, Parquet, Iceberg, SNS, Pub/Sub, Data Validation, IAM.
Screening Criteria:
-
What data engineering tools or platforms have you used most frequently?
-
How comfortable are you with SQL, and what kind of queries do you typically write?
-
How do you make sure data pipelines are reliable or data quality issues are caught?
-
Who do you typically work with — analysts, data scientists, software engineers
Key Responsibilities
null
Skill Requirements
null
Other Requirements
null
Required skills
ETL
Data pipelines
Airflow
Terraform
Python
SQL
Spark
Pandas
About HCL Technologies
Pune
Headquarters