Data & Analytics Team Lead / Manager

DGH Recruitment
Manchester
11 months ago
Applications closed

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Data & Analytics Team Lead / ManagerLocation:Manchester (Hybrid Working)Are you ready to lead, mentor, andinspire a team of Data & Analytics engineers? Join our dynamicand collaborative teams dedicated to maintaining high standards ofquality, performance, and scalability for our internal analyticalbusiness systems.Key Responsibilities:Develop and execute the Data& Analytics strategy, aligning with business roadmaps,priorities, and objectives.Lead data migration projects, ensuringseamless and efficient transitions.Contribute to the softwareengineering functional area by establishing tools, technologies,standards, and ways of working that expedite Agiledelivery.Requirements:10+ years of experience in Data &Analytics, with at least 5 years in a leadership role.Demonstratedextensive experience with PostgreSQL and Real-Time Data ManagementSystems (RTDMS).Strong experience with data migrations andrelational database design.Technical skills in ETL, Python, Java,Database access modelling, SQL Optimisation, Low Code tools, AWScloud.Knowledge of DevOps practices and tools (e.g., Docker,Kubernetes / EKS-based container orchestration).

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