Trainee Database Engineer

Newmarket
2 weeks ago
Applications closed

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About Sureserve Energy Services Meters:

Sureserve Energy Services Meters (formerly Providor), a proud subsidiary of Sureserve Group Limited, is a leading provider of domestic smart meter installations across the UK, working with three of the "Big Six" energy suppliers. We are dedicated to advancing energy efficiency and sustainability through innovative metering solutions. Our mission is to empower consumers and businesses with accurate, real-time data, enabling informed energy decisions.

Purpose of the role:

As an Entry-Level Trainee Database Engineer, you will gain hands-on experience in database development, maintenance, optimization and the production of BI dashboards. This role is designed to provide foundational knowledge and skills while working alongside experienced professionals. You will be involved in all stages of real-world projects from capturing initial requirements to supporting products post-delivery. This position offers excellent career growth opportunities for individuals eager to develop their technical expertise.

Key Responsibilities:

Assist in the design, development, and maintenance of database solutions,

Learn and apply best practices for database performance and data integrity,

Support software engineers and data analysts with database-related tasks,

Help implement and maintain database security measures,

Monitor database health and troubleshoot issues under supervision,

Participate in training and development programs to enhance technical skills,

Assist in documenting database processes and best practices,

Contribute to business intelligence (BI) reporting and data visualization using Qlik
Education and Experience:

A strong interest in database engineering and data management,

Willingness to learn and develop technical skills through training,

Strong problem-solving skills and attention to detail,

Good communication and teamwork abilities,

An IT related degree, diploma, or equivalent experience is welcomed, but not essential.
Benefits:

Structured training and mentorship from experienced professionals, 

29 days holidays (inclusive of bank holidays)

Employer contribution pension scheme

EAP - Employee Assistance Program

Life assurance

Bike to Work Scheme

Family friendly policies

Breakfast Club

Social Events
Salary £26,208

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