Sharepoint Developer (Engineering, Construction)

Ernest Gordon Recruitment Limited
Leeds
1 month ago
Applications closed

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SharePoint Developer (Engineering, Construction)

Leeds - Hybrid 3 days in office

£45,000 to £55,000 + Hybrid 3 days a week + Performance Based Bonus + 1:30pm Friday Finish + Company Benefits

Are you a SharePoint Developer looking to join a well-respected and stable company who work on meaningful projects across various industries with over 90 years of experience in innovation?

Do you want to work for a company that will offer work-life balance with a hybrid setup and great benefits like a performance-based bonus, pension, and an early Friday finish?

On offer is the opportunity to join a stable global business that works on a number of projects globally and has been around for nearly a century. They help create iconic construction projects across various industries and will provide you with a great work-life balance with a hybrid setup and an early Friday finish.

The Role:

  1. Creating SharePoint solutions
  2. Documenting current processes and suggesting solutions


The Person:

  1. SharePoint Developer
  2. Knowledge of Power Platforms
  3. Understanding of any coding language but preferably C# or JavaScript
  4. Local to Leeds


Keywords:SharePoint, PowerApps, Azure, Developer, Power BI, Data Analyst, Business Intelligence, Programming, Developer, Leeds

Reference: BBBH18568

If you are interested in this role, click 'apply now' to forward an up-to-date copy of your CV.

We are an equal opportunities employer and welcome applications from all suitable candidates. The salary advertised is a guideline for this position. The offered remuneration will be dependent on the extent of your experience, qualifications, and skill set.#J-18808-Ljbffr

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