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Technical Lead – Data Migration, Testing & Quality Execution
Location
United Arab Emirates
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Technical Lead – Data Migration, Testing & Quality Execution
Müller's Solutions
• Lead end-to-end data migration activities, including planning, mapping, transformation, validation, and reconciliation. • Define and execute data migration strategies and methodologies for Skadina implementations. • Oversee functional, integration, system, regression, and User Acceptance Testing (UAT) activities. • Ensure data quality, integrity, and consistency throughout migration and deployment phases. • Develop and review test plans, test cases, test scripts, and quality metrics. • Coordinate defect management, issue resolution, and root cause analysis activities. • Collaborate with architects, business analysts, developers, and business stakeholders to ensure successful project delivery. • Support cutover planning, deployment activities, and post-go-live stabilization. • Monitor project quality standards and ensure compliance with established processes and best practices. • Provide technical leadership and mentorship to project teams during migration and testing phases. • Prepare and maintain technical documentation, migration plans, and testing reports.
Job Requirements
- Required Qualifications:**
- Bachelor's degree in Computer Science, Information Technology, Software Engineering, or a related field.
- Minimum 8+ years of experience in enterprise application implementation, with significant experience in data migration and testing.
- Proven hands-on experience with the **Skadina platform**.
- Strong experience in data migration, ETL processes, data mapping, and data validation.
- Experience leading testing activities, including SIT, UAT, regression, and performance testing.
- Strong understanding of software quality assurance methodologies and defect management processes.
- Experience with test management and defect tracking tools.
- Excellent analytical, troubleshooting, and problem-solving skills.
- Strong communication and stakeholder management skills.
- Experience working in Agile/Scrum environments.
- Preferred Qualifications:**
- Experience in large-scale digital transformation or migration projects.
- Experience in government or public sector projects is highly preferred.
- Knowledge of data governance and data quality frameworks.
- Experience with automation testing tools and quality assurance frameworks.
- Key Skills:**
- Skadina Platform
- Data Migration & ETL
- Testing & Quality Assurance
- Data Validation & Reconciliation
- UAT, SIT & Regression Testing
- Defect Management
- Technical Leadership
- Root Cause Analysis
- Stakeholder Management
- Agile/Scrum Methodologies
Benefits
- Key Responsibilities:**
- Lead end-to-end data migration activities, including planning, mapping, transformation, validation, and reconciliation.
- Define and execute data migration strategies and methodologies for Skadina implementations.
- Oversee functional, integration, system, regression, and User Acceptance Testing (UAT) activities.
- Ensure data quality, integrity, and consistency throughout migration and deployment phases.
- Develop and review test plans, test cases, test scripts, and quality metrics.
- Coordinate defect management, issue resolution, and root cause analysis activities.
- Collaborate with architects, business analysts, developers, and business stakeholders to ensure successful project delivery.
- Support cutover planning, deployment activities, and post-go-live stabilization.
- Monitor project quality standards and ensure compliance with established processes and best practices.
- Provide technical leadership and mentorship to project teams during migration and testing phases.
- Prepare and maintain technical documentation, migration plans, and testing reports.
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