Principal AI Engineering Lead

Principal AI Engineering Lead

Full-Time 70000 - 90000 £ / year (est.) No working from home possible
LGBT Great

At a Glance

  • Tasks: Lead the design and deployment of innovative AI systems that make a real impact.
  • Company: Join a forward-thinking investment firm committed to cutting-edge technology.
  • Benefits: Enjoy competitive pay, bonuses, and a comprehensive benefits package.
  • Other info: Great opportunities for career growth and professional development.
  • Why this job: Shape the future of AI engineering and drive transformative projects.
  • Qualifications: Proven experience in AI solutions and strong leadership skills required.

The predicted salary is between 70000 - 90000 £ per year.

What you will do

  • Own End-to-End AI Engineering Delivery: Design, build, and deploy production‑grade AI/ML systems (LLMs, agents, predictive models) across the full lifecycle, including data ingestion, model integration, evaluation, and ensuring production readiness within a regulated environment.
  • Develop Reference Architectures & Accelerators: Create reusable frameworks, SDKs, and reference implementations (e.g., agent orchestration patterns, prompt frameworks, RAG pipelines) to standardise AI development across engineering teams.
  • Hands‑on Engineering Leadership: Contribute directly to codebases (Python, APIs, orchestration layers), perform code reviews, and enforce engineering standards across AI, data, and application layers.
  • Implement AI‑Native Development Patterns: Drive adoption of advanced engineering practices including LLM‑based development workflows, autonomous agents, retrieval‑augmented generation (RAG), and AI‑augmented CI/CD pipelines.
  • Define AI Platform & Tooling Strategy: Architect and influence enterprise AI platforms, including model integration layers, vector databases, orchestration frameworks, and developer tooling (e.g., Copilot, prompt management, evaluation pipelines).
  • Engineer Scalable Data & Model Pipelines: Design and optimise real‑time and batch data pipelines for AI workloads, ensuring performance, observability, and scalability across cloud‑native environments.
  • Operationalise AI Systems (MLOps / LLMOps): Establish robust deployment, monitoring, and evaluation pipelines (model performance, drift detection, prompt/version management, A/B testing).
  • Embed Security, Governance & Responsible AI: Implement guardrails including access controls, audit logging, model validation, data lineage, and compliance with regulatory and responsible AI requirements.
  • Assess Technical Maturity & Remove Bottlenecks: Conduct deep‑dive assessments of engineering workflows, tooling, and architecture to identify constraints and optimise developer productivity and delivery velocity.
  • Define Engineering Metrics & Telemetry: Instrument platforms to track system performance and developer productivity metrics (latency, throughput, error rates, cycle time, deployment frequency).
  • Enable Distributed Engineering Adoption: Build and scale internal capability through code‑first enablement, technical playbooks, and deep‑dive workshops focused on real‑world implementations.
  • Drive Cross‑Team Technical Integration: Align AI engineering patterns across platform, data, and application teams to ensure interoperability, consistency, and reuse.
  • Track Emerging AI Technologies: Evaluate and integrate advancements in LLMs, agent frameworks, orchestration protocols, and developer tooling into production‑ready enterprise patterns.
  • Produce Engineering Artefacts: Maintain architecture blueprints, ADRs, API contracts, runbooks, and reusable code assets to ensure maintainability and scalability.
  • Build Enterprise AI Capability: Design and deliver a structured capability uplift programme across engineering, data, architecture, and product disciplines, with role‑specific learning pathways.

Required skills

  • Ability to design scalable AI systems integrated into products and enterprise platforms.
  • Experience applying analytics and statistical techniques to drive AI performance.
  • Experience deploying AI solutions on cloud platforms.
  • Experience building LLM‑powered applications, Retrieval‑Augmented Generation (RAG) systems and Agent‑based workflows and orchestration patterns.
  • Ability to lead AI initiatives and define technical direction and mentor engineers and conduct code/architecture reviews.
  • Proven track record of delivering AI solutions from idea to production.
  • Strong communication skills to explain complex technical concepts to stakeholders.

Nice to have

  • Experience fine‑tuning models or building advanced AI algorithms.
  • Familiarity with Docker, Kubernetes, orchestration tools and workflow tools such as Airflow or Kubeflow.
  • Background in investment management, capital markets, or asset servicing — particularly familiarity with trading platforms, quantitative research tooling, or data pipelines subject to financial regulation.
  • Hands‑on experience architecting or operating retrieval‑augmented generation systems, agent‑orchestration layers, model‑evaluation harnesses, or LLM‑backed product features at production scale.

Supervisory responsibilities

  • Directly supervise a small team of AI engineers and enablement specialists, setting objectives, conducting performance reviews, and supporting their professional growth.
  • Provide day‑to‑day technical direction on delivery engagements, including code‑review standards, architectural decisions, and prioritisation of the team’s project backlog.

Potential for growth

  • Leadership development programs.
  • Regular training.
  • Career development services.
  • Continuing education courses.
  • Certification pathways across major AI, cloud, and developer‑tooling platforms.
  • Direct visibility with executive leadership through a high‑profile transformation initiative.
  • Scope to build a new function from scratch — this role is being created for the first time, with the mandate to define how AI engineering capability scales across the firm and evolves into AI‑native product delivery.

Benefits

  • Annual Bonus Opportunity: Position may be eligible to receive an annual discretionary bonus award from the profit pool. The profit pool is funded based on Company profits. Individual bonuses are determined based on Company, department, team, and individual performance.
  • Benefits: Janus Henderson is committed to offering a comprehensive total rewards package to eligible employees that includes competitive compensation, pension/retirement plans, and various health, wellbeing and lifestyle benefits.

Equal Opportunity Employment

Janus Henderson Investors is an equal opportunity employer. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability or veteran status. All applications are subject to background checks. Janus Henderson (including its subsidiaries) will not maintain existing or sponsor new industry registrations or licenses where not supported by an employee’s job functions (as determined by Janus Henderson at its sole discretion). You should be willing to adhere to the provisions of our Investment Advisory Code of Ethics related to personal securities activities and other disclosure and certification requirements, including past political contributions and political activities. Applicants’ past political contributions or activity may impact applicants’ eligibility for this position. You will be expected to understand the regulatory obligations of the firm, and abide by the regulated entity requirements and JHI policies applicable for your role.

Principal AI Engineering Lead employer: LGBT Great

At Janus Henderson, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration in the rapidly evolving field of AI engineering. Our commitment to employee growth is evident through leadership development programmes, regular training, and direct visibility with executive leadership, providing you with the unique opportunity to shape the future of AI capabilities within the firm. Located in a vibrant environment, we offer competitive compensation, comprehensive benefits, and a supportive atmosphere that values diversity and inclusion, making it an ideal place for talented professionals seeking meaningful and rewarding careers.

LGBT Great

Contact Details:

LGBT Great Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Principal AI Engineering Lead

Join Local Tech Meetups

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We think you need these skills to ace Principal AI Engineering Lead

AI/ML Systems Design
Data Ingestion
Model Integration
Production Readiness
Reference Architectures
SDK Development
Python Programming

Some tips for your application 🫡

Show off your coding skills:When applying for a software engineering role, it's super important to showcase your coding skills. Make sure your CV includes your tech stack, any relevant programming languages you’re comfortable with, and examples of projects you've worked on. If you have a GitHub profile, link it up! We love to see code in action.

Tailor your portfolio:For a full-time role, we’d expect to see some solid examples of your work in your portfolio. Make sure to include at least two or three projects that highlight your problem-solving skills and your ability to work with different technologies. Focus on the projects that are most relevant to the position at LGBT Great.

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Be clear and concise:When it comes to writing your CV and cover letter, clarity is key. Avoid jargon that could confuse us and stick to simple, direct language. Highlight your achievements with quantifiable results where possible, and keep everything easy to read. A well-organised application goes a long way!

How to prepare for a job interview at LGBT Great

Brush Up on Your Coding Skills

For a full-time software engineering role, it's crucial that we stay sharp with our coding abilities. Expect technical questions that might involve solving problems on the spot or discussing algorithms. Practise on platforms like LeetCode or HackerRank to get comfortable with the types of questions that often come up.

Know Your Tools and Frameworks

Make sure we’re well-acquainted with the tools and technologies listed in the job description. Familiarise ourselves with any specific frameworks or programming languages mentioned. If LGBT Great uses React or Node.js, for instance, be ready to discuss how we’ve used them in previous projects or coursework.

Showcase Your Projects

Bring along a portfolio that highlights our best work. This could be code samples, GitHub repositories, or any side projects we’ve built. Make sure we can talk through our thought process for each project, especially the challenges we faced and how we solved them—this shows our problem-solving skills in action.

Prepare for Behavioural Questions

While technical skills are key, full-time positions also require cultural fit. Be ready to discuss our previous experiences and how we handle teamwork, conflict, and deadlines. Brush up on the STAR method—Situation, Task, Action, Result—to clearly articulate our past experiences when discussing how we've contributed to a team.