Login Sign Up

GCP Data Engineer (BigQuery, Cloud Storage, Dataproc, Airflow

Tata Consultancy Services

2 - 5 years

Hyderabad

Posted: 12/01/2026

Getting a referral is 5x more effective than applying directly

Job Description

TCS Hiring !!. GCP Data Engineer (BigQuery, Cloud Storage, Dataproc, Airflow)



Please read Job description before Applying


SKILLS: GCP Data Engineer (BigQuery, Cloud Storage, Dataproc, Airflow)


GCP Services: BigQuery, Cloud Storage, Dataproc, Cloud Composer (managed Airflow) or self-managed Airflow. Airflow: Strong experience in DAG creation, operators/hooks, scheduling, backfilling, retry strategies, and CI/CD for DAG deployments. Programming: Proficiency in Python (PySpark, Airflow DAGs), SQL (advanced BigQuery SQL). Data Modeling: Dimensional modeling (Star/Snowflake), data vault basics, and schema design for analytics. Performance Tuning: BigQuery partitioning/clustering, predicate pushdown, job stats review, Dataproc executor tuning. Version Control & CI/CD: Git, branching strategies, pipelines for deploying Airflow DAGs and config. Operational Excellence: Monitoring with Stackdriver/Cloud Logging, debugging pipeline failures, and root-cause analysis. involves end-to-end ownership of data ingestion, transformation, orchestration, and performance tuning for batch and near real-time workflows.


NOTE: If the skills/profile matches and interested, please reply to this email by attaching your latest updated CV and with below few details:

Name:

Contact Number:

Email ID:

Highest Qualification in: (Eg. B.Tech/B.E./M.Tech/MCA/M.Sc./MS/BCA/B.Sc./Etc.)

Current Organization Name:

Total IT Experience-7+ years

Location: TCS: Hyderabad

Current CTC

Expected CTC

Notice period: Immediate Joiner

Whether worked with TCS - Y/N


GCP Services: BigQuery, Cloud Storage, Dataproc, Cloud Composer (managed Airflow) or self-managed Airflow. Airflow: Strong experience in DAG creation, operators/hooks, scheduling, backfilling, retry strategies, and CI/CD for DAG deployments. Programming: Proficiency in Python (PySpark, Airflow DAGs), SQL (advanced BigQuery SQL). Data Modeling: Dimensional modeling (Star/Snowflake), data vault basics, and schema design for analytics. Performance Tuning: BigQuery partitioning/clustering, predicate pushdown, job stats review, Dataproc executor tuning. Version Control & CI/CD: Git, branching strategies, pipelines for deploying Airflow DAGs and config. Operational Excellence: Monitoring with Stackdriver/Cloud Logging, debugging pipeline failures, and root-cause analysis. involves end-to-end ownership of data ingestion, transformation, orchestration, and performance tuning for batch and near real-time workflows.

Services you might be interested in

We Search & Apply Jobs for You!

Our team scans through 1000s of opportunities and applies to roles best suited to your profile

Save 100+ hours and focus on what matters - cracking interviews and landing offers.