The Custom Group of Companies
Your role as a Senior Data Engineer
• Work on migrating applications from an on-premises location to the cloud service providers.
• Develop products and services on the latest technologies through contributions in development, enhancements, testing and implementation.
• Develop, modify, extend code for building cloud infrastructure, and automate using CI/CD pipeline.
• Partners with business and peers in the pursuit of solutions that achieve business goals through an agile software development methodology.
• Perform problem analysis, data analysis, reporting, and communication.
• Work with peers across the system to define and implement best practices and standards.
• Assess applications and help determine the appropriate application infrastructure patterns.
• Use the best practices and knowledge of internal or external drivers to improve products or services.
Qualifications-- What we are looking for: • Hands-on experience in building ETL using Databricks SaaS infrastructure. • Experience in developing data pipeline solutions to ingest and exploit new and existing data sources. • Expertise in leveraging SQL, programming language like Python and ETL tools like Databricks • Perform code reviews to ensure requirements, optimal execution patterns and adherence to established standards. Computer Science or Equivalent • Expertise in AWS Compute (EC2, EMR), AWS Storage (S3, EBS), AWS Databases (RDS, DynamoDB), AWS Data Integration (Glue). • Advanced understanding of Container Orchestration services including Docker and Kubernetes, and a variety of AWS tools and services. • Good understanding of AWS Identify and Access management, AWS Networking and AWS Monitoring tools. • Proficiency in CI/CD and deployment automation using GITLAB pipeline. • Proficiency in Cloud infrastructure provisioning tools e.g., Terraform. • Proficiency in one or more programming languages e.g., Python, Scala. • Experience in Starburst, Trino and building SQL queries in federated architecture. • Good knowledge of Lake house architecture. • Design, develop, and optimize scalable ETL/ELT pipelines using Databricks and Apache Spark (PySpark and Scala). • Build data ingestion workflows from various sources (structured, semi-structured, and unstructured). • Develop reusable components and frameworks for efficient data processing. • Implement best practices for data quality, validation, and governance. • Collaborate with data architects, analysts, and business stakeholders to understand data requirements. • Tune Spark jobs for performance and scalability in a cloud-based environment. • Maintain robust data lake or Lakehouse architecture. • Ensure high availability, security, and integrity of data pipelines and platforms. • Support troubleshooting, debugging, and performance optimization in production workloads.
Qualifications-- What we are looking for: • Hands-on experience in building ETL using Databricks SaaS infrastructure. • Experience in developing data pipeline solutions to ingest and exploit new and existing data sources. • Expertise in leveraging SQL, programming language like Python and ETL tools like Databricks • Perform code reviews to ensure requirements, optimal execution patterns and adherence to established standards. Computer Science or Equivalent • Expertise in AWS Compute (EC2, EMR), AWS Storage (S3, EBS), AWS Databases (RDS, DynamoDB), AWS Data Integration (Glue). • Advanced understanding of Container Orchestration services including Docker and Kubernetes, and a variety of AWS tools and services. • Good understanding of AWS Identify and Access management, AWS Networking and AWS Monitoring tools. • Proficiency in CI/CD and deployment automation using GITLAB pipeline. • Proficiency in Cloud infrastructure provisioning tools e.g., Terraform. • Proficiency in one or more programming languages e.g., Python, Scala. • Experience in Starburst, Trino and building SQL queries in federated architecture. • Good knowledge of Lake house architecture. • Design, develop, and optimize scalable ETL/ELT pipelines using Databricks and Apache Spark (PySpark and Scala). • Build data ingestion workflows from various sources (structured, semi-structured, and unstructured). • Develop reusable components and frameworks for efficient data processing. • Implement best practices for data quality, validation, and governance. • Collaborate with data architects, analysts, and business stakeholders to understand data requirements. • Tune Spark jobs for performance and scalability in a cloud-based environment. • Maintain robust data lake or Lakehouse architecture. • Ensure high availability, security, and integrity of data pipelines and platforms. • Support troubleshooting, debugging, and performance optimization in production workloads.