Project Support Specialist/Data Analyst

Brighton
3 weeks ago
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We are recruiting for a permanent Project Support Specialist/Data Analyst based in Brighton, working Monday to Friday, 37.5 hours per week and paying a salary between 28k-29k Per Annum (DOE). This role offers hybrid working with 2-3 days in the office and the remaining days working from home.

If you are looking to join an established business that will offer you excellent career progression opportunities into an Account Management role, then continue reading…

Duties will include:

Gathering and analysing data from client's energy usage
Creating benchmarks and running project reports using the management system
Preparing invoices and budgets when required
Inputting invoices onto the system and updating Change of Tenancy details, ensuring these are accurate
Monitoring and identifying new suppliers
Building and maintaining relationships with clients
Liaising with internal departments on energy audits and meter management
Responsible for project management such as creating and updating project trackers
Contacting stakeholders via telephone or email regarding project updates, issues or delaysCandidate requirements:

2-3 years of demonstrable experience working in a comparable B2B environment handling large volumes of complex data and interacting with clients.
Excellent verbal and written communication skills.
Analytical skills and proven intermediate Microsoft Excel experience
Highly motivated and a self-starter with strong attention to detail
Ability to work under pressure, while liaising with internal and external stakeholders
Appetite to learn and develop technical knowledge within the roleThis role offers benefits such as private medical insurance, pension, life assurance and more!

Huntress does not discriminate on the grounds of age, race, gender, disability, creed or sexual orientation and complies with all relevant UK legislation. PLEASE NOTE! You should make yourself aware of how immigration laws apply to your situation before applying for any jobs. We are acting as a Recruitment Business in relation to this role

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