At a Glance
- Tasks: Lead the design and implementation of advanced AI systems using cutting-edge technologies.
- Company: Join a dynamic tech company at the forefront of AI innovation.
- Benefits: Enjoy competitive salary, health benefits, and flexible hybrid working.
- Other info: Collaborate with global clients and grow your skills in a fast-paced environment.
- Why this job: Make a real impact in the evolving world of agentic AI and software architecture.
- Qualifications: 5-8 years in software engineering with a focus on AI systems and LLMs.
The predicted salary is between 60000 - 80000 £ per year.
- Role
- Senior AI Engineer
- Location
- London, UK (Hybrid)
Experience
5‑8 years
Responsibilities
- Architect and lead the implementation of multi‑agent systems using Google AI SDKs (Vertex AI Agent Builder), Lang Graph, Crew AI, and other emerging orchestration frameworks.
- Design and build stateful, tool‑augmented agents capable of advanced reasoning, long‑term planning, and autonomous execution.
- Develop and document agent orchestration patterns including planner‑executor, supervisor‑worker, and hierarchical agent structures.
- Implement sophisticated memory systems (short‑term, long‑term, and cross‑session contextual memory).
- Enable seamless cross‑agent communication and multi‑modal coordination.
- Lead the delivery of production‑grade LLM applications: RAG pipelines, specialised agents, and developer copilots.
- Integrate diverse tools, enterprise APIs, and legacy systems into agentic workflows.
- Design robust system prompts, dynamic routing logic, and AI guardrails using Vertex AI Model Garden or Azure AI Studio.
- Drive optimisation of AI workflows for latency, token cost, and output quality.
- Develop and own reusable AI microservices, agent frameworks, and standardised APIs.
- Contribute to core AI platform capabilities including model routing, centralised observability, and safety filters.
- Define and enforce engineering standards and best practices for AI development across the team.
- Deploy and manage agent‑based systems on GCP, Azure, and/or AWS using Docker, Kubernetes (GKE/AKS/EKS), and Cloud Run.
- Implement comprehensive monitoring and observability using Vertex AI Inspector, Lang Smith, or Azure Monitor.
- Drive incident response and post‑mortems for production AI system failures.
- Act as a technical lead on key AI engineering workstreams, shaping architecture and approach.
- Mentor and support more junior AI engineers through code review, design discussions, and pair programming.
- Collaborate with Principal AI Engineer and cross‑functional teams (data, product, delivery) to align AI engineering with business outcomes.
- Stay at the forefront of the rapidly evolving agentic AI landscape and bring new approaches into the team.
Qualifications
- 5‑8 years of software engineering experience, with at least 3 years focused on LLM‑based or AI systems in production.
- Proven track record building and shipping RAG pipelines, autonomous agents, and multi‑step reasoning chains.
- Strong hands‑on experience with Google AI SDKs, Vertex AI, and/or Azure AI services.
- Deep proficiency in orchestration stacks: Lang Graph, Crew AI, Llama Index, Haystack, or comparable frameworks.
- Expert‑level Python; strong backend development skills (Fast API, Go, or Node. js).
- Deep understanding of agent design patterns: planning, reflection, memory, and tool‑use.
- Experience integrating complex enterprise APIs and event‑driven systems into agentic workflows.
- Proven ability to trace, debug, and improve non‑deterministic, multi‑step AI reasoning pipelines.
- Strong instinct for building resilient, observable, and production‑ready AI systems.
- Strong familiarity with GCP and/or Azure core services: GKE, Cloud Run, Azure AI services.
- Infrastructure as Code experience: Terraform or Pulumi.
- Experience building automated evaluation and deployment pipelines for AI models (CI/CD).
- Vector databases (nice to have): Vertex AI Vector Search, Azure AI Search, Pinecone, Weaviate.
- Data pipelines (nice to have): Big Query, Pub/Sub, Azure Synapse.
- ETL/ELT experience preparing unstructured data for RAG and fine‑tuning (nice to have).
- Additional Skills & Mindset
- View LLMs as components within a larger system, not just standalone models, and thoughtfully consider architecture, reliability, and cost.
- Take ownership, drive outcomes, and elevate the engineering team.
- Bias toward production‑ready, resilient, and observable AI applications.
- Passionate about the evolving landscape of agentic AI and next‑generation software architectures.
- Comfortable across cloud platforms and navigating ambiguity in a fast‑moving consultancy environment.
Benefits
- Competitive base salary + performance incentives.
- Health and wellness benefits.
- Flexible hybrid working environment (UK‑based).
- Exposure to global clients, cutting‑edge AI projects, and a fast‑growing AI practice.
- Ongoing learning and development support.
- #J-18808-Ljbffr
Senior AI Engineer employer: Acrotrend - A NowVertical Company
As a Senior AI Engineer at our London-based company, you will thrive in a dynamic hybrid work environment that champions innovation and collaboration. We offer competitive salaries, health benefits, and a commitment to your professional growth through ongoing learning opportunities, all while working on cutting-edge AI projects with global clients. Join us to be part of a forward-thinking team that values resilience, creativity, and the pursuit of excellence in the rapidly evolving field of AI.
Contact Details:
Acrotrend - A NowVertical Company Recruitment Team
We think you need these skills to ace Senior AI Engineer
Google AI SDKs
Vertex AI
Azure AI services
LangGraph
CrewAI
Python
FastAPI