AI Solutions Engineer

Adria Solutions
Nottingham, Nottinghamshire, United Kingdom
Last week
£60,000 – £90,000 pa

Salary

£60,000 – £90,000 pa

Job Type
Permanent
Work Pattern
Full-time
Work Location
Hybrid
Seniority
Mid
Education
Degree
Posted
17 Apr 2026 (Last week)

Benefits

Excellent career development Training budget Hybrid working - 1-2 days office based

AI Solutions Engineer

Our client is a fast-growing, award-winning UK business with a strong reputation for both performance and employee satisfaction. They are investing heavily in AI and automation, with a number of internal tools already in place and ambitious plans to expand further.

The Role

This is a hands-on role focused on turning business challenges into practical solutions. You’ll build and deploy tools, automate workflows, and develop dashboards that improve efficiency across the organisation. Working closely with both technical and non-technical teams, you’ll identify opportunities for improvement and deliver scalable, AI-assisted solutions. This is a visible role requiring strong communication skills and a proactive, problem-solving mindset.

Key Responsibilities

Analyse business processes and identify automation opportunities

Build internal tools, dashboards, and data pipelines

Integrate systems using APIs and data feeds

Develop AI-powered features to improve workflows and insights

Support rollout, training, and ongoing system improvements

About You

3–5 years’ experience in a technical role (development, data, or solutions)

Strong understanding of programming concepts and integrations

Experience working with APIs, data, and databases

Familiarity with AI tools and where they add value

Confident communicator, able to work with non-technical stakeholders

Self-sufficient, solutions-focused, and comfortable owning projects

Experience with Laravel, Python, or similar- though we are genuinely language-agnostic given our AI-assisted approach

What’s on Offer

High-impact role with real ownership

Opportunity to shape AI and automation strategy

Collaborative, supportive team environment

A business actively investing in technology and innovation

Benefits:

Excellent career development

Training budget

Hybrid working - 1- 2 days office based

Interested? Please Click Apply Now

AI Solutions Engineer

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