Interim Applications Developer - Facilities Management

Guildford
9 months ago
Applications closed

CAFM Developer

We're looking for an experienced CAFM Developer to join our client's team. In this role, you'll be responsible for designing workflows, automations, and integrations within our CAFM system. This is an exciting opportunity for a developer with a strong background in software development and a focus on creating, testing, and deploying business-driven solutions.

Key Responsibilities:

Design, test, and integrate CAFM workflows and data across various workstreams.

Collaborate with business analysts and project teams to automate data flows based on business requirements.

Ensure development meets testing strategy and acceptance criteria.

Work with technical leads to ensure project timelines and task progress are well-managed.

Experience & Skills:

Essential: Experience with CAFM automation tools or similar platforms.

Strong background in software development (including web-based, database-driven applications).

Experience with coding, testing, and deployment.

Familiar with agile methodologies (TDD, unit testing).

Knowledge of APIs and SQL databases.

If you're a developer who thrives in a fast-paced, collaborative environment and has a passion for delivering optimized solutions, we'd love to hear from you.

Modis International Ltd acts as an employment agency for permanent recruitment and an employment business for the supply of temporary workers in the UK. Modis Europe Ltd provide a variety of international solutions that connect clients to the best talent in the world. For all positions based in Switzerland, Modis Europe Ltd works with its licensed Swiss partner Accurity GmbH to ensure that candidate applications are handled in accordance with Swiss law.

Both Modis International Ltd and Modis Europe Ltd are Equal Opportunities Employers.

By applying for this role your details will be submitted to Modis International Ltd and/ or Modis Europe Ltd. Our Candidate Privacy Information Statement which explains how we will use your information is available on the Modis website

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