Data Manager

London
11 months ago
Applications closed

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Company

TEC Partners are representing a leading provider of end-to-end customer experience and digital CRM services to global brands. They combine human and artificial intelligence to create valuable customer interactions and drive business success, operating across the UK and Europe.

About the Data Manager Role

We are currently seeking a highly skilled and motivated Data Manager to join our client's Data and Applications team. This is an exciting opportunity to lead a team of analysts and developers, working closely with clients to understand business challenges and identify how data and AI can drive strategic value.

The successful candidate will be responsible for managing a team, ensuring high-quality deliverables, and maintaining strong client relationships.

Why Work as a Data Manager with Our Client?

Basic salary up to £90,000
27 days holiday (plus bank holidays), birthday off, two Epic days, and Christmas shutdown
Flexible working options
Professional development opportunities
Westfield Health Cash Plan and Employee Assistance Programme (EAP)
Supportive and collaborative working environment
Social events and team-building activitiesWhat Is Expected of You as a Data Manager?

Lead and manage a team of Data Analysts, Developers, and BI Consultants, fostering a high-performance and innovative culture
Collaborate with clients to understand business challenges and translate complex insights into actionable strategies
Oversee the entire software lifecycle for data management systems, ensuring compliance with industry best practices
Drive the integration of AI technologies into data processes to enhance business efficiency
Develop and present reports and insights to senior leadership, influencing business decisions
Maintain strong relationships with internal teams and stakeholders to align business goalsEssential Skills and Experience

Proven experience in data analytics and data science, managing a range of systems and integrations
Proficiency in Python or R, with experience working with big data technologies and cloud platforms
Strong experience managing a Microsoft SQL Server environment
Familiarity with statistical packages (e.g., Excel, SPSS, SAS) for data analysis
Experience creating and maintaining dashboards using Tableau, Power BI, Looker, or Qlik
Strong consulting background with experience translating technical insights into business recommendations
Excellent analytical, problem-solving, and decision-making skills
High level of industry and business acumen
Strong organisational skills, with the ability to manage multiple projects simultaneously
Excellent communication and interpersonal skills, with the ability to influence stakeholders at all levelsDesirable Skills and Experience

Experience with AI technologies and a forward-thinking approach to integrating them into data processes
Familiarity with storytelling and collaboration tools
Relevant certifications in project management or software developmentIf you would like to know more about this Data Manager role, please get in touch with Stuart at TEC Partners today

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