Job Closed
This listing is no longer active.
Join our team at MetaRPO and embark on a journey of growth and innovation.
DataStage Systems Analyst
Location
United States
Posted
85 days ago
Salary
$50 - $55 / year
Seniority
Mid Level
Job Description
DataStage Systems Analyst
MetaRPO
Role Description We have an upcoming need for a DataStage Systems Analyst for our Enterprise Integration Team. The successful candidate will work from specifications provided by the Application Tech Lead and ETL Tech Lead. This resource may also work with the ETL Tech Lead on ETL designs when requested. Qualifications - High proficiency with IBM DataStage; strong preference for version 11.x. - Extensive DataStage development experience; preferably spanning multiple engagements and technologies. - DataStage design experience; preferably spanning multiple engagements and technologies. - Experience in performance monitoring, performance tuning and design for reuse. - Experience in production support; how to design processes for ease of maintenance, re-startability, etc. - Experience in QA testing of ETL processes. - Experience with using DataStage to access multiple DBMS platforms including Oracle, SQL Server, UDB DB2, and DB2Z. - Ability to understand a business problem and broker a resolution between business partners. - Excellent communication and documentation, English-language skills. Requirements - Need a Sr level resource. Company Description Join our team at MetaRPO and embark on a journey of growth and innovation.
Job Requirements
- High proficiency with IBM DataStage; strong preference for version 11.x.
- Extensive DataStage development experience; preferably spanning multiple engagements and technologies.
- DataStage design experience; preferably spanning multiple engagements and technologies.
- Experience in performance monitoring, performance tuning and design for reuse.
- Experience in production support; how to design processes for ease of maintenance, re-startability, etc.
- Experience in QA testing of ETL processes.
- Experience with using DataStage to access multiple DBMS platforms including Oracle, SQL Server, UDB DB2, and DB2Z.
- Ability to understand a business problem and broker a resolution between business partners.
- Excellent communication and documentation, English-language skills.
- Need a Sr level resource.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Deliver insights to help our clients turn data into action as a Data Engineer Senior at GDIT • Provide transformative solutions to clients’ big-data obstacles and help advance their missions • Ensure today is safe and tomorrow is smarter • Develop enterprise grade data platforms, services, and pipelines • Lead and architect migration of data environments with performance and reliability • Assess and understand the ETL jobs, workflows, BI tools, and reports • Address technical inquiries concerning customization, integration, enterprise architecture and general feature/functionality of data products • Contribute to the growth of our Data Exploitation Practice
• Design, build, and maintain scalable, high-quality data pipelines supporting both real-time and batch analytics workloads • Develop and optimize ETL/ELT processes using modern cloud data technologies and orchestration tools • Contribute to the design and evolution of lakehouse and warehouse data models that support analytics and reporting needs • Partner with business, design, test, and development teams to understand data requirements and improve data capture strategies • Help lead technical writing initiatives, including goal-setting, planning, and execution • Write, edit, and maintain clear, concise, and well-structured technical documentation • Create and improve documentation standards, organization, and knowledge-sharing processes • Organize and curate documentation to ensure it is intuitive, discoverable, and up to date • Advocate for consistent knowledge sharing across teams and studios • Research and propose improvements to documentation workflows and solutions to existing pain points • Apply modern engineering best practices to ensure reliability, scalability, and data quality across platforms
• Design, develop, and maintain data pipelines and datastores that support enterprise analytics, data science, and operational workloads. • Lead and support large-scale database migration initiatives, including on-premises to cloud migrations. • Monitor, analyze, and optimize the performance and stability of data layer services and platforms. • Ensure data integrity, quality, and compliance across pipelines and datasets. • Collaborate closely with peers across engineering, analytics, and technology teams. • Guide, coach, and mentor data engineers, BI developers, and analysts. • Design and implement enterprise-scale data solutions with long-term business impact. • Build and maintain data processing solutions using Python and/or Scala. • Work with a variety of data ingestion patterns, including SFTP, APIs, streaming, and batch processing. • Design and support database models optimized for analytical and reporting use cases. • Implement monitoring, alerting, and observability for data pipelines and infrastructure. • Maintain clear and comprehensive documentation of data architectures, pipelines, and processes. • Work within an Agile environment, collaborating through tools such as Jira and Git
• Design, build, and maintain scalable data pipelines and warehouse infrastructure to support analytics and reporting needs. • Develop and maintain clean, well-modeled datasets optimized for analytics and self-service reporting. • Partner with product managers and stakeholders to define key metrics, reporting requirements, and product analytics needs. • Build and maintain BI dashboards and reports that provide visibility into product performance, operational metrics, and customer behavior. • Ensure data quality, reliability, and governance across the analytics platform. • Integrate and maintain data ingestion pipelines from internal and external systems. • Improve the data warehouse performance and data modeling layer to enable faster and more reliable analytics. • Enable self-service analytics by creating curated datasets and semantic layers for internal teams. • Document datasets, metric definitions, and data lineage to improve data discoverability and trust in data. • Collaborate with engineering teams to ensure data is captured, modeled, and surfaced effectively for analytics use cases.



