AI Engineering Lead / Manager | NDA in UK at Jobgether
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Job Description
This position is posted by Jobgether on behalf of a partner company. We are currently looking for an AI Engineering Lead / Manager | NDA in United Kingdom.
This is a high-impact consulting opportunity for an experienced AI engineering leader to help transform how modern software teams build, deliver, and scale products using AI-assisted development practices. In this role, you will work at the intersection of software engineering, artificial intelligence, and engineering productivity, guiding enterprise teams through the adoption of LLM-powered tools and workflows. You will operate in a client-facing environment, collaborating closely with engineers, architects, product leaders, and consulting stakeholders. The engagement blends strategic advisory responsibilities with hands-on technical delivery, including the design of AI applications, RAG systems, and agent-based architectures. This is an ideal role for a senior engineer or architect who thrives in fast-paced consulting environments and enjoys shaping engineering excellence at scale. The assignment offers exposure to cutting-edge AI technologies and real-world enterprise transformation challenges.
- Provide technical leadership and advisory support to engineering and consulting teams on AI-assisted software engineering, developer productivity, system architecture, and modern engineering practices.
- Guide the adoption of AI tools such as Claude Code, Cursor, Codex, and GitHub Copilot to improve software development workflows and efficiency.
- Define and refine architectural approaches for systems, including microservices, APIs, data flows, integrations, and CI/CD pipelines.
- Translate business requirements into clear technical designs and implementation strategies aligned with delivery goals.
- Spend a portion of time hands-on building and supporting AI-powered applications, including LLM-based systems, RAG pipelines, and AI agents.
- Design, implement, and optimize retrieval-augmented generation (RAG) systems with a focus on performance, cost efficiency, and accuracy.
- Contribute to engineering execution through code reviews, testing strategies, documentation, and implementation support.
- Advise on engineering best practices including automated testing, secure development, clean code principles, and scalable delivery workflows.
- Collaborate with cross-functional stakeholders including product, design, architecture, and platform teams in a client-facing environment.
- Support continuous improvement of engineering maturity across people, processes, and technology.
- Strong background in software engineering, backend development, full-stack engineering, or software architecture.
- Extensive hands-on experience with Python in production environments.
- Experience designing and developing microservice-based systems using REST, GraphQL, or gRPC APIs.
- Familiarity with API frameworks such as FastAPI, OpenAPI, Swagger, or similar technologies.
- Practical experience with AI-assisted development tools such as GitHub Copilot, Cursor, Claude Code, Codex, or equivalents.
- Hands-on experience with LLM-based applications, including prompt engineering, structured prompting, RAG systems, and AI agents.
- Deep understanding of transformer-based models and large language model architectures.
- Experience building and optimizing retrieval-augmented generation pipelines, including handling hallucination risks and performance trade-offs.
- Strong understanding of software engineering fundamentals, including data structures, algorithms, testing strategies, and OOP principles.
- Knowledge of tokenization, context limitations, model behavior, and cost-performance optimization in LLM systems.
- Ability to translate complex business needs into technical solutions and implementation roadmaps.
- Strong communication skills with the ability to explain technical concepts to both technical and non-technical stakeholders.
- Experience working in client-facing or consulting environments is highly desirable.
- Comfortable working with partial overlap with US time zones.
- Experience with cloud platforms (AWS, GCP, or Azure), databases (SQL or NoSQL), or enterprise environments is a plus.
- Opportunity to work on cutting-edge AI engineering transformation projects for enterprise clients.
- High-impact consulting engagement at the intersection of AI, software engineering, and developer productivity.
- Exposure to advanced LLM applications, RAG architectures, and AI agent systems in real-world environments.
- Client-facing role with significant ownership and visibility across technical and business stakeholders.
- Flexible consulting engagement structure with international collaboration.
- Opportunity to shape engineering practices and AI adoption strategies at scale.
- Hands-on experience with modern AI tooling and enterprise-grade system design.
- Exposure to global consulting environments and large-scale transformation programs.
- Competitive compensation aligned with senior-level consulting expertise and AI engineering experience.