Business Analyst

IC Resources
Nottingham
1 year ago
Applications closed

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Business Analyst

Bingham, Nottingham (On-site, hybrid after probation)

IC Resources is seeking a Business Analyst to join our client’s innovative team in Bingham, UK. This is an exciting opportunity for a detail-oriented professional to contribute to cutting-edge projects involving AI-driven software and hardware-integrated solutions within the vehicle technology sector. As a Business Analyst, you’ll act as the bridge between stakeholders and technical teams, helping shape next-generation solutions in computer vision, telematics, and edge processing technologies.

Primary Responsibilities:

  • Collaborate with stakeholders to gather and document business and technical requirements for AI-driven and hardware-integrated solutions.
  • Conduct process mapping and workflow analysis to identify efficiencies and align objectives.
  • Develop detailed documentation, including requirements specifications, user stories, and compliance-focused acceptance criteria.
  • Organise Agile ceremonies such as sprints, retrospectives, and daily stand-ups.
  • Identify and manage project risks to ensure alignment with strategic goals.
  • Support software and hardware integration, defining and addressing dependencies.
  • Ensure products meet relevant compliance standards for software and hardware solutions.
  • Create and maintain project plans, tracking progress and coordinating cross-functional deliverables.
  • Serve as a key liaison, fostering effective communication between business units and technical teams throughout project lifecycles.

Essential Experience:

  • Proven track record as a Business Analyst, particularly with hardware integration projects.
  • Proficiency with documentation tools (e.g., Visio, Lucidchart) and project management software (e.g., Jira, Trello).
  • Strong knowledge of Agile frameworks such as Scrum or Kanban.
  • Understanding of regulatory compliance in software and hardware development.
  • Strong analytical and problem-solving skills, coupled with excellent verbal and written communication abilities.
  • Bachelor’s or Master’s degree in Business, Computer Science, Engineering, or a related field.

Desired Experience:

  • Familiarity with software libraries and frameworks such as PyTorch, TensorFlow, or CUDA.
  • Experience in software engineering or R&D roles in academic or industrial settings.
  • Relevant certifications, such as PMP or PRINCE2, are advantageous.

What’s on Offer:

  • £45-55k DOE with room for career progression in a fast-expanding organisation.
  • The opportunity to work on innovative AI and hardware-integrated solutions.
  • A collaborative and supportive environment focused on growth and professional development.

How to Apply:

If you are an analytical thinker passionate about bridging the gap between business, software and hardware technology, apply now for immediate consideration! Contact Chris Wyatt, Principal Recruitment Consultant, to learn more about this exciting Business Analyst role.

 

 

 

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