EPAM Systems

Senior Data Integration Engineer

EPAM Systems$120K — $150K *
US-Anywhere
+ 2 other locationsRemote
Information Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 5+ years of data engineering experience, with a focus on ETL and data integration
  • Proficient in Python, PySpark, and SQL, with production-level coding skills
  • Advanced knowledge of cloud integration tools like Azure Data Factory and AWS Glue
  • Hands-on experience with workflow orchestrators such as Apache Airflow and CDC tools
  • Master-level understanding of OLAP and OLTP data modeling practices
  • Experience in DevOps with CI/CD for data products, including version control using Git
  • Strong communication skills, able to explain technical concepts to varied audiences

Responsibilities

  • Design and optimize scalable ETL/ELT data pipelines using modern technologies
  • Develop and automate complex workflow orchestrations to streamline data operations
  • Implement data warehouse and lakehouse architectures, focusing on performance and scalability
  • Establish and enforce data quality checks and validation frameworks
  • Collaborate with cross-functional teams to define data requirements and architectural decisions
  • Lead code reviews and maintain modular code repositories
  • Document technical specifications and metadata clearly for future reference

Benefits

  • Flexible work arrangements
  • Opportunities for professional development and advancement
  • Access to cutting-edge tools and technologies
  • Collaborative work environment with cross-functional teams
  • Support for continuous learning and skills enhancement
Full Job Description
Senior Data Integration Engineer Responsibilities Pipeline Architecture & Development: Design, build, and optimize scalable, reliable batch and near-real-time ETL/ELT pipelines using Python, PySpark, SQL, and modern cloud integration engines Orchestration & Automation: Develop and manage complex workflow orchestrations (using Apache Airflow or cloud native schedulers) and automate ingestion routines to minimize manual operations Data Modeling & Warehousing: Design and implement modern data warehouse/lakehouse layers (using Snowflake, ClickHouse, Azure Synapse, or Redshift), establishing optimal partitioning, indexing, and Slowly Changing Dimension (SCD Type 2) patterns Data Quality & Testing Integration: Establish rigorous data quality checks and validation frameworks utilizing tools like dbt (data build tool), Soda, or customized PySpark testing suites Collaboration & Design: Work closely with product owners, business analysts, and systems architects to define data requirements, analyze technical constraints, design Source-to-Target Mappings (STTM), and make critical architectural decisions Code Quality & DevOps: Maintain a clean, modular code repository. Lead code reviews, enforce engineering standards, and configure robust CI/CD pipelines (Azure DevOps, GitLab CI, or GitHub Actions) with Docker containers Technical Documentation: Deliver comprehensive, clear technical specs, metadata lineage documentation, architectural diagrams, and data dictionaries Requirements Experience: 5+ years of hands-on experience in data engineering, data warehousing, database design, and end-to-end data integration ETL & Integration Tools: Advanced knowledge of Cloud Integration tools such as Azure Data Factory (ADF), AWS Glue, or GCP Dataflow Orchestration & Real-Time Ingestion: Proficiency in workflow orchestrators like Apache Airflow and exposure to CDC (Change Data Capture) or real-time streaming tools (e.g., Kafka, Debezium) Core Technical Stack: Strong production-level coding skills in SQL (advanced optimization/stored procedures), Python, and PySpark / Apache Spark Analytical Databases & Cloud Warehouses: Experience working with high-performance databases and cloud-native systems (e.g., Snowflake, ClickHouse, PostgreSQL, MS SQL Server, or Azure Synapse) Methodologies: Master-level understanding of data modeling practices (OLAP, OLTP, Star/Snowflake schemas, Delta Lake/Lakehouse patterns, and Data staging processes) DevOps & CI/CD: Hands-on experience with version control (Git) and building automated deployment pipelines (CI/CD) for data products Communication & English: Proven ability to articulate complex technical ideas clearly to both business stakeholders and developers. Fluency in English (Upper-Intermediate level or higher) Nice to have Data Transformation & Quality Tools: Deep knowledge of dbt (data build tool) and schema validation practices Containerization: Experience using Docker or Kubernetes to package and deploy data applications Serverless Engineering: Experience building lightweight, serverless ingestion services (e.g., using AWS Lambda / Azure Functions and RESTful APIs)

About EPAM Systems

EPAM Systems, Inc. is a leading global provider of digital platform engineering and development services. The company has a strong presence in North America, Europe, and Asia, and serves clients in a variety of industries, including financial services, healthcare, and retail. EPAM's services include software engineering, product development, and digital platform engineering, and the company has a reputation for delivering high-quality solutions that help its clients achieve their business goals. EPAM has been recognized as a leader in the digital services industry by a number of independent research firms, and the company has won numerous awards for its work.
Learn more about EPAM Systems
Size
58,824 employees
Market Cap
$18.2 billion
Industry
Net Income
$327.1 million
Founded
1993
5 Year Trend
+26.5%
Revenue
$2.6 billion
NASDAQ

Similar Jobs

More Jobs at EPAM Systems

More Information Technology Jobs

Find similar Senior Data Integration Engineer jobs: