Data Engineer â ERP / EPM Cloud Transformation
Data Centrix Pretoria
Minimum Requirements
- Bachelors degree in Computer Science, Information Management, Information Systems, Data Engineering, or an equivalent qualification
- 5 to 8 years experience in a data management, data engineering, data integration, or related technical data environment
- Strong experience in data migration, data pipeline development, data integration, ETL/ELT processes and data quality improvement
- Solid understanding of data modelling, metadata management, master and reference data management, data cataloguing, data lineage and data lifecycle principles
- Experience working with business stakeholders, technical teams and implementation partners
- Exposure to ERP, EPM Cloud, enterprise transformation projects, or financial services environments will be advantageous
Duties and Responsibilities
Data Migration and Project Delivery- Lead and support the data migration workstream as part of the ERP Roadmap and EPM Cloud Solution Project
- Guide and facilitate activities and deliverables within the data migration workstream
- Facilitate review sessions with business stakeholders, implementation partners and technical teams
- Review and facilitate sign-off of data migration artefacts by all relevant stakeholders
- Provide technical input and support to ensure data migration deliverables are aligned with business, technical and governance requirements
- Design, develop, test and maintain robust, scalable and reusable data pipelines
- Develop data pipelines that are modular, deployable, reproducible, version-controlled and aligned to data engineering standards
- Develop and maintain data integration patterns, APIs, data exchange formats and integration protocols to support interoperability between systems
- Employ appropriate tools, technologies and programming languages to integrate data across multiple platforms and systems
- Monitor and optimise data pipelines to ensure reliable data availability, sustained performance and long-term scalability
- Recommend ways to improve data reliability, efficiency, quality and usability
- Support the implementation of data management capabilities, including data quality, metadata management, master and reference data management, data architecture, data modelling, data security, privacy, retention, cataloguing, lineage and analytics enablement
- Quality assure data pipeline implementations to ensure adherence to data engineering frameworks, standards and best practices
- Manage data growth patterns to support infrastructure planning, regulatory compliance, retention requirements and responsible data sharing
- Maintain accurate documentation for data pipelines, integration processes, interoperability requirements and technical data management activities
- Prepare data for use in predictive and prescriptive modelling
- Develop data set processes for data modelling, mining and production
- Leverage internal and external data sources to support business analysis, reporting and decision-making
- Conduct research and data analysis to answer relevant industry and business questions
- Identify opportunities for data acquisition, data sharing and improved data usage across the organisation
- Develop and manage effective stakeholder relationships to promote data management practices across the organisation
- Participate in cross-organisational initiatives relating to data management, data engineering and information management
- Provide regular progress reports in line with stakeholder requirements
- Present data management updates in relevant project, governance and operational forums
Lexdan SelectPretoria
based data infrastructure (AWS, Azure, or GCP)
• Create and maintain data models and analytics-ready schemas
• Troubleshoot and resolve complex data engineering challenges
• Collaborate with cross-functional teams to deliver data-driven solutions
Key...
Open Source (Pty) LtdMenlyn, 10 km from Pretoria
Responsibilities
• Design, develop, and deliver scalable data engineering solutions using Python or similar languages
• Build and optimize data pipelines and data models using modern frameworks (e.g., Spark, Flink)
• Collaborate with stakeholders to clarify...
Data CentrixPretoria
pipelines that are robust, modular, scalable, reproducible, deployable, and version controlled across relevant data and business domains.
• Quality assure data pipeline implementations to ensure alignment with approved data engineering frameworks, standards...