Nagarro (Frankfurt: NA9) is a leader in digital product engineering and drives technology-led business breakthroughs.
Staff Engineer, Data Migration Analyst
Location
India
Posted
1 day ago
Salary
0
Seniority
Lead
Job Description
Staff Engineer, Data Migration Analyst
Nagarro
• Maintain and update migration workplan trackers (mock run schedule, environment data refresh plan, reconciliation checkpoints, cutover readiness checklist) • Support requirements-to-data traceability: maintain source-to-target mapping tracker, transformation rule clarifications, and sign-off status across stakeholders • Perform data validation activities using agreed control framework (record counts, control totals, sample-based checks, exception analysis) against vendor outputs • Support reconciliation preparation and review (balance reconciliations, account-level variances, GL/SL tie-outs where applicable); document findings and follow up with owners • Manage defect and exception logs for data migration (capture issues, categorize root cause themes, track to closure, support evidence collation) • Coordinate data-related SIT/UAT readiness: confirm test data availability, refresh requests, masking requirements (if applicable), and resolve data blockers with vendor/IT teams • Prepare artifacts and evidence for governance and auditability (mapping approvals, run results, reconciliation reports, signoff packs, cutover runbooks attachments) • Produce regular status updates and dashboards for the Data Migration Lead (progress, risks/issues, decisions needed, upcoming milestones) • Support cutover activities and mock runs (checklist execution support, results collation, variance reporting, post-run lessons learned capture) • Ensure adherence to client data security and access controls when handling extracts, files, and non-production data.
Job Requirements
- Total experience 5.5+ years
- 5-8 years of experience in data analysis, system implementation support, testing support, or PMO/BA roles with strong data exposure (banking/financial services preferred)
- Experience supporting data migration, reconciliation, or test data activities is an advantage
- Familiarity with core banking/deposits concepts (CASA/Time Deposit) is a plus
- Experience with legacy-to-modern platform migrations (AS/400 to modern core banking, cloud-native or microservices architectures) is strongly preferred
- Hands-on experience with DMS platforms or other core banking platforms
- Knowledge of data quality and validation concepts
- Working understanding of ETL concepts and migration lifecycle
- Understanding of banking data objects (customer/account, balances, product parameters, transaction history) and downstream impacts
- Strong analytical skills; comfortable working with large datasets and spotting patterns/variances
- Proficiency in SQL (preferred) and Excel; experience with data tools (e.g., Power BI) is a plus
- Strong documentation discipline (logs, trackers, evidence packs) and attention to detail
- Good communication skills to coordinate clarifications and follow-ups across IT, vendor, and business SMEs
- Structured problem-solving and ability to summarize issues and impacts clearly.
Benefits
- Employees can work remotely
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