At a Glance
- Tasks: Lead the delivery of GenAI systems from research to production, ensuring performance and reliability.
- Company: Join a pioneering tech firm at the forefront of AI innovation.
- Benefits: Attractive salary, flexible working options, and opportunities for professional growth.
- Why this job: Be a key player in shaping the future of AI technology and make a real impact.
- Qualifications: 12+ years in software engineering with 3+ years in AI/ML/GenAI; strong system design skills required.
- Other info: Dynamic team environment with a focus on cutting-edge technology and career advancement.
The predicted salary is between 72000 - 108000 Β£ per year.
Experience: 12+ years total; 3+ years in AI/ML/GenAI (production-grade)
About the Role
We are looking for a Lead AI Engineer to own the delivery of GenAI and agentic systems end-to-end from research prototypes to secure, observable, scalable production systems. You will set engineering standards across AI projects, lead technical design, guide LLM orchestration, and drive platform reliability, performance, and cost efficiency.
Key Responsibilities
- End-to-end delivery: Own the full lifecycle (discovery β prototyping β hardening β production β monitoring β continuous improvement) of GenAI and agentic systems.
- LLM orchestration & tooling: Design and implement workflows using LangChain, LangGraph, LlamaIndex, Semantic Kernel or similar. Optimize prompt strategies, memory, tools, and policies.
- RAG & vector search: Architect robust RAG pipelines with vector DBs (Pinecone, Chroma, Weaviate, pgvector), including chunking, hybrid search, embeddings selection, caching, and evaluation.
- Guardrails & observability: Implement policy/guardrails, safety filters, prompt/content validation, and LLMOps observability (tracing, token/cost monitoring, drift detection, eval harnesses).
- Architecture & microservices: Build scalable services and APIs in Python/JS/Java; define contracts, SLAs, and resiliency patterns (circuit breakers, retries, idempotency).
- Cloud & platform engineering: Design for AWS/GCP/Azure using managed services; containerize with Docker, orchestrate with Kubernetes, and automate via CI/CD.
- Security-first delivery: Enforce encryption, secrets management, IAM/least-privilege, privacy-by-design, data minimization, and model compliance requirements.
- MLOps & model serving: Operationalize models via MLflow/SageMaker/Vertex, with feature/data/version management, model registry, canary/blue-green rollouts, and rollback plans.
- Data engineering: Build reliable data pipelines (batch/stream) using Spark/Airflow/Beam; ensure data quality, lineage, and governance.
- Technical leadership: Lead design reviews, mentor engineers, enforce coding standards, documentation, and SRE best practices. Partner with Product, Security, and Compliance.
- Performance & cost: Optimize latency, throughput, token usage, context windows, and hosting strategies; manage budgets and efficiency.
Required Qualifications
- 12+ years overall software engineering experience with 3+ years hands-on in AI/ML/GenAI, including production deployments.
- Strong system design and scalable architecture skills for AI-first applications and platforms.
- Hands-on expertise with LLM orchestration frameworks (e.g., LangChain / LangGraph/ LlamaIndex/ Semantic Kernel).
- Proven experience with RAG and vector databases (e.g., Pinecone, Chroma, Weaviate, pgvector).
- Proficiency in Python (primary) and at least one of JavaScript/TypeScript or Java.
- Solid foundation in cloud (AWS/GCP/Azure), Docker/Kubernetes, and CI/CD.
- Practical knowledge of guardrails, prompt/context engineering, multimodal workflows, and observability.
- Experience with MLOps/model serving (e.g., MLflow, SageMaker, Vertex AI) and data pipelines (e.g., Spark, Airflow, Beam).
- Security-first mindset and familiarity with compliance (PII handling, RBAC/IAM, key management).
Nice-to-Have
- Experience with function/tool calling, agent frameworks, and structured output (JSON/JSON Schema).
- Knowledge of embedding models, rerankers, hybrid search (BM25 + vector), and evaluation frameworks.
- Exposure to cost/latency trade-offs across hosted vs. self-hosted models; GPU inference (Triton, vLLM, TGI).
- Familiarity with feature stores, streaming (Kafka/PubSub), and data contracts.
- Domain experience in your industry/domain (e.g., BFSI, healthcare, manufacturing).
- Contributions to OSS, publications, patents, or speaking at AI/ML conferences.
Lead AI Engineer in Warwick employer: Response Informatics
Contact Detail:
Response Informatics Recruiting Team
StudySmarter Expert Advice π€«
We think this is how you could land Lead AI Engineer in Warwick
β¨Tip Number 1
Network like a pro! Get out there and connect with folks in the AI/ML space. Attend meetups, webinars, or conferences where you can chat with industry leaders and potential employers. Remember, sometimes itβs not just what you know, but who you know!
β¨Tip Number 2
Show off your skills! Create a portfolio showcasing your projects, especially those related to GenAI and agentic systems. Use platforms like GitHub to share your code and document your thought process. This gives employers a taste of what you can do before they even meet you.
β¨Tip Number 3
Prepare for interviews by brushing up on your technical knowledge and soft skills. Practice common interview questions related to AI/ML and be ready to discuss your past experiences. Mock interviews with friends or mentors can help you feel more confident when the real deal comes along.
β¨Tip Number 4
Donβt forget to apply through our website! Weβve got loads of opportunities waiting for talented individuals like you. Plus, applying directly can sometimes give you an edge over other candidates. So, get your application in and letβs make some AI magic happen together!
We think you need these skills to ace Lead AI Engineer in Warwick
Some tips for your application π«‘
Tailor Your CV: Make sure your CV reflects the specific skills and experiences mentioned in the job description. Highlight your 12+ years of software engineering experience and focus on your hands-on work with AI/ML/GenAI to catch our eye!
Craft a Compelling Cover Letter: Use your cover letter to tell us why you're the perfect fit for the Lead AI Engineer role. Share your passion for AI and how your past projects align with our goals at StudySmarter. Be genuine and let your personality shine through!
Showcase Your Projects: If you've worked on relevant projects, especially those involving LLM orchestration or RAG pipelines, make sure to include them. We love seeing real-world applications of your skills, so donβt hold back!
Apply Through Our Website: We encourage you to apply directly through our website. Itβs the best way to ensure your application gets into the right hands. Plus, it shows us youβre keen on joining the StudySmarter team!
How to prepare for a job interview at Response Informatics
β¨Know Your Stuff
Make sure you brush up on your AI/ML knowledge, especially around GenAI and LLM orchestration frameworks like LangChain and LlamaIndex. Be ready to discuss your hands-on experience with RAG pipelines and vector databases, as these are crucial for the role.
β¨Showcase Your Leadership Skills
As a Lead AI Engineer, you'll need to demonstrate your ability to lead technical design and mentor other engineers. Prepare examples of past projects where you set engineering standards or guided teams through complex challenges.
β¨Be Ready for Technical Questions
Expect in-depth technical questions about system design, cloud platforms, and MLOps. Practice explaining your thought process when architecting scalable services and how you've optimised performance and cost in previous roles.
β¨Understand Security and Compliance
Since security is a priority, be prepared to discuss your approach to encryption, IAM, and privacy-by-design principles. Highlight any experience you have with compliance requirements and how you've implemented guardrails in your projects.