AI Implementation Engineer

Adria Solutions
Manchester, United Kingdom
Last week
£50,000 – £85,000 pa

Salary

£50,000 – £85,000 pa

Job Type
Permanent
Work Location
Hybrid
Seniority
Mid
Education
Degree
Posted
20 May 2026 (Last week)

Benefits

Quarterly bonus scheme Hybrid working arrangements — 3 days office / 2 days remote Opportunity to shape AI capability within a growing business Strong long-term career progression opportunities

AI Implementation Engineer - Manchester

A growing technology-led business is looking to hire an AI Implementation Engineer to help drive practical AI adoption across multiple areas of the organisation.

This is a hands-on role focused on delivering AI solutions from concept through to live deployment and business adoption. Working within IT and closely alongside operational and commercial teams, you will build and implement practical AI use cases using Azure, LLMs, machine learning, and AI agents - ensuring solutions are secure, integrated, scalable, and actively used across the business.

The organisation is already exploring a broad range of AI initiatives and is looking for someone capable of getting hands-on with implementation, working collaboratively with existing technical teams, and helping shape the future AI capability of the business.

This role would suit someone who enjoys building practical AI solutions, solving operational problems, and delivering measurable business impact in a fast-moving environment.

Role Purpose

Hands-on role responsible for delivering AI solutions from concept through to live deployment and business adoption.

Working within IT and closely with business teams, you will build and implement practical AI use cases using Azure, LLMs, ML, and AI agents — ensuring they are secure, integrated, scalable, and actively used.

Key Responsibilities

Design and build high-performing AI models tailored to specific business needs

Lead rapid prototyping initiatives through to production delivery

Work directly with the IT Infrastructure team to deploy AI models into production environments

Ensure solutions use Private Endpoints and meet enterprise-grade security standards

Work with operational and business teams to embed AI tools into day-to-day workflows

Drive adoption and ensure teams are actively using implemented AI solutions

Set up automated evaluation and monitoring frameworks for production AI environments, including hallucination detection, drift monitoring, and latency tracking (GenAIOps)

Ensure AI solutions integrate securely with existing systems, data platforms, and APIs

Collaborate with commercial stakeholders to assess project viability and business value before implementation

Measure and track project impact, including efficiency gains, time savings, automation improvements, and quality outcomes

Work closely with IT, development, and leadership teams to identify and prioritise AI opportunities across the organisation

Required Experience

Essential

Deep expertise in Python and relevant AI/ML frameworks and SDKs

Proven experience building RAG pipelines that operate effectively in production environments

Hands-on experience with model packaging, deployment, and production AI workflows

Strong understanding of enterprise infrastructure concepts including VNets, Entra ID, API Gateways, and secure integrations

Experience working with at least one major enterprise AI cloud platform (Azure preferred)

Strong SQL skills and experience working with both structured and unstructured data

Experience building AI agents, workflow automation, and tool/API integrations

Strong understanding of AI implementation, deployment, and operationalisation

Ability to work closely with technical and non-technical stakeholders

Strong problem-solving and communication skills

Desirable

Experience with LLMOps / GenAIOps tooling and monitoring frameworks

Exposure to OCR, computer vision, voice AI, or conversational AI solutions

Experience working in operational, retail, automotive, or customer-focused businesses

Familiarity with AI governance, security, and scalability best practices

Experience helping shape or build internal AI capabilities within a business

Salary & Benefits

Competitive salary depending on experience

Quarterly bonus scheme

Hybrid working arrangements — 3 days office / 2 days remote

Opportunity to shape AI capability within a growing business

Strong long-term career progression opportunities

Interested? Please click Apply Now!

AI Implementation Engineer - Manchester

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