Job Title: Data Engineer
Location: Jersey City, NJ (will require onsite interview)
Duration: Long Term Contract
Looking for:
Financial services experience
Data pipeline development
Databricks/Delta Lake
Master Data Management (MDM)(Golden Source) integration
Strong SQL and data engineering skills
Oracle to Cloud migration experience
Data quality and reconciliation
Strong hands-on experience in Data Engineering and enterprise-scale data integration.
Proven experience developing scalable ETL/ELT pipelines and distributed data processing solutions.
Experience working with modern cloud-based data platforms and data ecosystems.
Hands-on expertise with Strong SQL expertise along with programming/scripting experience in Python, PySpark, or Snowpark.
Job Description
We are seeking a hands-on Data Engineer with strong experience in building scalable enterprise data solutions within Financial Services environments. The ideal candidate will have expertise in cloud-based data platforms, modern data engineering practices, and large-scale data integration initiatives supporting operational, analytical, and regulatory data needs.
This role requires strong technical capabilities in data pipeline development, cloud data processing, Master Data Management (MDM), and enterprise data integration. The candidate should be comfortable working across complex distributed environments and partnering with architecture, analytics, governance, and business teams to deliver reliable, secure, and scalable data solutions.
Key Responsibilities:
Design, develop, and support scalable data pipelines and enterprise data integration solutions.
Build and maintain batch and real-time data ingestion, transformation, and processing frameworks.
Develop cloud-native data engineering solutions supporting enterprise data lake, warehouse, and lakehouse platforms.
Implement ETL/ELT processes for structured, semi-structured, and unstructured data sources.
Support Master Data Management (MDM) initiatives across security, account, client, and reference data domains.
Collaborate with data architects, business analysts, governance teams, and application teams to support enterprise data initiatives.
Implement data quality validation, monitoring, metadata management, and lineage processes.
Support cloud migration and modernization efforts involving legacy and enterprise data platforms.
Optimize data processing, storage, and pipeline performance for scalability and operational efficiency.
Ensure compliance with enterprise security, governance, and regulatory standards within financial services environments.
Support reporting, analytics, and downstream consumption platforms through reliable and trusted data delivery.
Required Skills & Experience:
Strong hands-on experience in Data Engineering and enterprise-scale data integration.
Proven experience developing scalable ETL/ELT pipelines and distributed data processing solutions.
Experience working with modern cloud-based data platforms and data ecosystems.
Hands-on expertise with Strong SQL expertise along with programming/scripting experience in Python, PySpark, or Snowpark.
Experience with dbt (Data Build Tool) for:
Data transformation and modeling
ELT pipeline development within Snowflake/Databricks
Modular, reusable SQL-based data workflows
Data testing, documentation, and version control integration
Experience with cloud platforms such as Azure, AWS, or Google Cloud Platform, including integration with Snowflake and Databricks.
Solid understanding of data lake, data warehouse, and lakehouse architectures, and their implementation across platforms.
Experience with orchestration and workflow tools (e.g., Airflow, Databricks Workflows, Snowflake Tasks) for pipeline scheduling and automation.
Experience supporting Master Data Management (MDM) and enterprise data governance initiatives.