Software Engineer

Warwick
1 year ago
Applications closed

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Our client is a well-established IT developer with over 30 years industry experience, With located offices throughout the United Kingdom. We provide business software and hardware solutions, including Manufacturing, Production, ERP and Warehouse management systems. We have a broad world-wide customer base from small and medium sized companies, right up to FTSE 100 and international conglomerates.

The role on offer is for a C/C# engineer based working from home who can also install software and hardware at customers sites. Experience of C and C# is required, along with a knowledge of hardware and networks. Other languages such as SQL, Basic and JavaScript are desirable. Our software links many pieces of industrial equipment using IOT to bring in and analyse as big data and control using AI techniques.

You will become familiar with our range of software solutions. Working as part of a team, senior systems engineers will require you to implement modules within the system designs. Systems are typically Windows Desktop and Server based, with some Android and Cloud implementation.

You will need to be technically and independent minded. This will allow you to discuss customer's business requirements and relate this to our off-the-shelf, tailored and bespoke software and hardware offerings to provide the best solution. You will need to work with customers to install systems and troubleshoot their installation.

You will be part of a small, close team where everyone's contribution is key providing solutions to some of the biggest companies worldwide. You will gain a good understanding of our products and the many industries we work in.

This is mainly an office-based job, but will require field work as experience with our products progresses.

Responsibilities:

  • Writing software for production systems

  • Training customers on software modules

  • Install and support software for customer (online and onsite), travel to customer site for support, installation and test

  • Availability to travel up to 50% domestically and abroad for teamwork with international organization.

    Technical competence:

  • Programming software languages required: C, C#

  • Additional programming software languages preferred: SQL, BASIC, JavaScript and other languages

  • Knowledge of operating systems, networking, basic hardware for automation industry

  • Windows, Windows Server, Android, IOT, Internet

  • At least two years of applicable development experience required

    Job Type: Full-time, Permanent

    Salary: £35,000.00-£45,000.00 per year

    Schedule: Monday to Friday, some weekend travel

    Location: Office based, and some roles maybe hybrid and remote

    Education: Bachelor's (preferred)

    Work authorization: United Kingdom (preferred)
  • Knowledge of quantum engineering concepts (preferred but not required)
  • Familiarity with software development methodologies (e.g., Agile)
  • Excellent problem-solving and analytical skills
  • Strong communication and collaboration abilities
  • Ability to work independently as well as in a team environment

    Apply Now

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