Back to Jobs
Data Engineer(ETL, SQL, SSIS, Python), AWS
Actively Reviewing
Virtusa
Job Description
Job Description: Data Engineer (Mid-Level, AWS & Databricks)
Role Overview
As a Mid-Level Data Engineer, you will develop and maintain the data pipelines that form the backbone of our AWS Data Lakehouse. Your mission is to translate business requirements into efficient PySpark code and ensure our SQL Server data is accurately migrated and synchronized with Databricks.
Key Responsibilities
ETL Development: Develop and debug data pipelines in Databricks using PySpark and SparkSQL.
Data Ingestion: Implement data movement from SQL Server to Amazon S3 using efficient batch and incremental loading techniques.
Database Operations: Query and manage SQL Server environments to validate data consistency during the migration phase.
Modernization: Refactor existing SQL-based transformations into modular Python scripts or Scala functions.
Required Skills & Qualifications
4-6 years of experience in Data Engineering.
Hands-on Experience: Building production pipelines in Databricks on AWS.
Core Competencies: Strong Python, PySpark, and complex SQL (T-SQL preferred).
AWS Basics: Familiarity with S3 bucket management and basic IAM roles.
Adaptability: Ability to work across Python and SQL comfortably, with an interest in learning/using Scala for performance tuning.
Nice to Have
Prior exposure to SSIS (this is a plus, not a requirement).
Knowledge of AWS Glue or AWS Lambda for lightweight orchestration.
Role Overview
As a Mid-Level Data Engineer, you will develop and maintain the data pipelines that form the backbone of our AWS Data Lakehouse. Your mission is to translate business requirements into efficient PySpark code and ensure our SQL Server data is accurately migrated and synchronized with Databricks.
Key Responsibilities
ETL Development: Develop and debug data pipelines in Databricks using PySpark and SparkSQL.
Data Ingestion: Implement data movement from SQL Server to Amazon S3 using efficient batch and incremental loading techniques.
Database Operations: Query and manage SQL Server environments to validate data consistency during the migration phase.
Modernization: Refactor existing SQL-based transformations into modular Python scripts or Scala functions.
Required Skills & Qualifications
4-6 years of experience in Data Engineering.
Hands-on Experience: Building production pipelines in Databricks on AWS.
Core Competencies: Strong Python, PySpark, and complex SQL (T-SQL preferred).
AWS Basics: Familiarity with S3 bucket management and basic IAM roles.
Adaptability: Ability to work across Python and SQL comfortably, with an interest in learning/using Scala for performance tuning.
Nice to Have
Prior exposure to SSIS (this is a plus, not a requirement).
Knowledge of AWS Glue or AWS Lambda for lightweight orchestration.
Similar Jobs
View all →
SAP ABAP Development for HANA
Aryvart Software Pvt Ltd
Coimbatore
₹5–17 LPA
SAP ABAP on HANA
HANA
SAP
+1
Sr. Data Analyst
RSCP
Noida
₹6–9 LPA
Dashboard Development
Data Analysis
ETL Validation
+1
PHP Developer
Cloudnausor Technologies Pvt ltd
Chennai
₹4–10 LPA
PHP
SQL
Data Engineer III
Stifel Financial Corp.
Amazon EMR
Python
SQL
+10
Technical Manager/ Data Project Manager
Unison Group
Delhi
Effort estimation
AWS
Azure
+10
Share
Quick Apply
Upload your resume to apply for this position
–