Design, build, and maintain scalable cloud-native data pipelines and dimensional data models using DBT, SQL, and AWS services. Implement infrastructure-as-code with AWS CDK, automate CI/CD, ensure data quality and governance, optimize performance, and collaborate with cross-functional teams and offshore partners to deliver analytics-ready data assets.
Job Title: Data Engineer
Location: Remote
Experience- 4-6 years
Overview /Objective:
We are seeking a skilled Data Engineer to join our Sports Analytics & Engineering Practice. This role is pivotal in shaping and implementing our client’s vision for a cutting-edge, cloud-native data ecosystem. You will architect and build scalable data infrastructure that transforms raw data into high-value assets, powering analytics across digital products, fan engagement, and marketing domains. Your work will directly contribute to the development of a world-class customer data platform.
ResponsibilitiesResponsibilities:
- Design and build robust, scalable data transformation pipelines using SQL, DBT, and Jinja templating
- Develop and maintain data architecture and standards for Data Integration and Data Warehousing projects using DBT and Amazon Redshift
- Collaborate with cross-functional teams to gather requirements and deliver dimensional data models that serve as a single source of truth
- Own the full stack of data modeling in DBT to empower analysts, data scientists, and BI engineers
- Enhance and maintain the analytics codebase, including DBT models, SQL scripts, and ERD documentation
- Ensure data quality, governance alignment, and operational readiness of data pipelines
- Apply software engineering best practices such as version control, CI/CD, and code reviews
- Optimize SQL queries for performance, scalability, and maintainability across large datasets
- Implement best practices for SQL performance tuning, including partitioning, clustering, and materialized views
- Build and manage infrastructure as code using AWS CDK for scalable and repeatable deployments. Integrate and automate deployment workflows using AWS CodeCommit, CodePipeline, and related DevOps tools
- Support Agile development processes and collaborate with offshore teams
- Perform comprehensive data profiling on staging datasets to assess completeness, accuracy, consistency, timeliness, and conformity with business rules before downstream ingestion.
- Conduct gap analysis between source, staging, and target data models to identify missing attributes, mismatched definitions, and transformation issues impacting reporting and analytics.
- Partner with business SMEs, product owners, and analytics teams to clarify data definitions, resolve ambiguities, and prioritize remediation of critical data gaps.
Required Qualifications:
- Bachelor’s or Master’s (preferred) degree in a quantitative or technical field such as Statistics, Mathematics, Computer Science, Information Technology, Computer Engineering or equivalent
- 4+ years of experience in data engineering and analytics on modern data platforms
- 3+ years’ extensive experience with DBT or similar data transformation tools, including building complex & maintainable DBT models and developing DBT packages/macros
- Deep familiarity with dimensional modeling/data warehousing concepts and expertise in designing, implementing, operating, and extending enterprise dimensional models
- Understand change data capture concepts
- Experience working with AWS Services (Lambda, Step Functions, MWAA, Glue, Redshift)
- Hands-on experience with AWS CDK, CodeCommit, and CodePipeline for infrastructure automation and CI/CD
- Python proficiency or general knowledge of Jinja templating in Python and/or PySpark
- Agile experience and willingness to work with extended offshore teams and assist with design and code reviews with customer
- A great teammate and self-starter, strong detail orientation is critical in this role.
Similar Jobs
Software • Consulting
Lead modernization of a large-scale AWS data platform: design, build, and optimize scalable ETL/ELT pipelines, migrate Airflow/EMR to AWS-native services (Glue, MWAA), implement data lake/warehouse solutions, enforce data governance/lineage/metadata, build data quality and monitoring frameworks, automate deployments with IaC, and support BI (QuickSight) and Power BI migration, UAT, and production support.
Top Skills:
Amazon AthenaAmazon EmrAmazon EventbridgeAmazon MwaaAmazon QuicksightAmazon RedshiftAmazon S3Apache AirflowSparkAws GlueAws Glue Data CatalogAws IamAws LambdaAws Step FunctionsCi/CdCloudFormationGitLake FormationPower BIPysparkPythonSQLTerraform
Agency • Information Technology
Design, build, and maintain ETL pipelines and frameworks on AWS. Deploy and troubleshoot containerized applications (Docker, EKS), support CI/CD and build tooling, work with SQL/Oracle and ORM tools, and use job schedulers like Autosys/Airflow. Collaborate in Agile/SCRUM environments.
Top Skills:
AirflowArtifactoryAutosysAWSDockerEksEtl FrameworkGitHibernateIbatisJenkinsMavenOraclePythonSQLStashUdeployUnix Shell
Agency • Information Technology
Design, build and maintain ETL mappings and data models; write SQL and Snowflake queries; manage ETL/infrastructure on AWS (EC2); use Informatica, Control-M and ServiceNow; script in Python/Shell/PowerShell; collaborate with onshore/offshore teams and define BI delivery strategy.
Top Skills:
AngularAws Ec2Control-MDaticalInformaticaJenkinsPower BIPowershellPythonServicenowShellSnowflakeSQLStashTableauUdeployUnix
What you need to know about the Kolkata Tech Scene
When considering the industries shaping India's tech scene, gaming might not immediately come to mind. However, in the last decade, increased internet usage and greater access to mobile devices have catapulted the industry to new heights, with Kolkata-based companies like Virtualinfocom, Red Apple Technologies and Digitoonz, at the forefront, driving the design and animation of new gaming titles for players.

