AI Architect (GenAI & Agentic Systems): Contract (12 Months) £1,000–£1,200/day
Posted 1 week ago by FORTE ICT
£150 Per hour
Undetermined
Hybrid
London Area, United Kingdom
Summary: The AI Architect role focuses on designing, building, and deploying production-grade Generative AI and Agentic AI systems within complex enterprise environments, particularly in Financial Services, Banking, and Telecommunications. The position requires hands-on experience with Large Language Models (LLMs) and autonomous agents, ensuring compliance with regulatory and security standards. The architect will lead the implementation of AI solutions from proof-of-value to scaled production. This is a contract position for 12 months with a hybrid working arrangement, preferably based in London.
Key Responsibilities:
- Architect end-to-end GenAI and Agentic AI solutions for enterprise use cases
- Design systems integrating LLMs into AI agents, workflows, and applications
- Lead selection and implementation of models (OpenAI, Anthropic, open-source, domain-tuned)
- Build multi-agent orchestration frameworks and tool-using agents
- Implement Retrieval-Augmented Generation (RAG) architectures at scale
- Design secure deployment patterns (cloud, on-prem, hybrid)
- Integrate AI services with enterprise data platforms, APIs, and legacy systems
- Define guardrails, governance, explainability, and safety controls
- Optimize performance, latency, and cost at scale
- Establish MLOps / LLMOps pipelines and monitoring frameworks
- Provide technical leadership to engineering and data teams
- Translate business requirements into deployable AI capabilities
Key Skills:
- Deep experience integrating production LLMs into applications
- Prompt engineering, tool use, function calling, reasoning chains
- Model evaluation, benchmarking, and tuning
- Fine-tuning, adapters, or domain specialization (LoRA, PEFT etc.)
- Design and deployment of autonomous or semi-autonomous AI agents
- Multi-agent collaboration patterns
- Planning, memory, tool orchestration
- Human-in-the-loop controls
- Vector databases (e.g., Pinecone, Weaviate, FAISS, Milvus)
- Embeddings pipelines and semantic search
- Knowledge grounding and hallucination mitigation
- Cloud: AWS / Azure / GCP (enterprise-scale deployments)
- Containerization: Docker / Kubernetes
- Microservices and event-driven architectures
- API design and integration
- Model deployment pipelines
- Observability, drift monitoring, evaluation frameworks
- Cost management and scaling strategies
- Proven track record delivering AI systems into production
- Experience working with C-suite stakeholders and enterprise architects
- Strong software engineering foundation
- Ability to operate in ambiguous, fast-moving programmes
- Excellent communication and leadership skills
Salary (Rate): £1,200.00/day
City: London
Country: United Kingdom
Working Arrangements: hybrid
IR35 Status: undetermined
Seniority Level: undetermined
Industry: IT
AI Architect (GenAI & Agentic Systems): Contract (12 Months) £1,000–£1,200/day Location: UK / Hybrid (London preferred) Role Overview We are seeking a hands-on AI Architect to design, build, and deploy production-grade Generative AI and Agentic AI systems across complex enterprise environments, particularly within Financial Services, Banking, and Telecommunications . This is not a research role. You will have delivered real AI systems on the ground, ntegrating Large Language Models (LLMs) into enterprise platforms, orchestrating autonomous agents, and operating within strict regulatory, security, and reliability constraints. You will define architecture, select models, design agent frameworks, and lead implementation from proof-of-value through to scaled production.
- Architect end-to-end GenAI and Agentic AI solutions for enterprise use cases
- Design systems integrating LLMs into AI agents, workflows, and applications
- Lead selection and implementation of models (OpenAI, Anthropic, open-source, domain-tuned)
- Build multi-agent orchestration frameworks and tool-using agents
- Implement Retrieval-Augmented Generation (RAG) architectures at scale
- Design secure deployment patterns (cloud, on-prem, hybrid)
- Integrate AI services with enterprise data platforms, APIs, and legacy systems
- Define guardrails, governance, explainability, and safety controls
- Optimize performance, latency, and cost at scale
- Establish MLOps / LLMOps pipelines and monitoring frameworks
- Provide technical leadership to engineering and data teams
- Translate business requirements into deployable AI capabilities
Core Technical Expertise Required LLMs & Generative AI • Deep experience integrating production LLMs into applications • Prompt engineering, tool use, function calling, reasoning chains • Model evaluation, benchmarking, and tuning • Fine-tuning, adapters, or domain specialization (LoRA, PEFT etc.) Agentic AI Systems • Design and deployment of autonomous or semi-autonomous AI agents • Multi-agent collaboration patterns • Planning, memory, tool orchestration • Human-in-the-loop controls RAG & Knowledge Systems • Vector databases (e.g., Pinecone, Weaviate, FAISS, Milvus) • Embeddings pipelines and semantic search • Knowledge grounding and hallucination mitigation Architecture & Platforms • Cloud: AWS / Azure / GCP (enterprise-scale deployments) • Containerization: Docker / Kubernetes • Microservices and event-driven architectures • API design and integration LLMOps / MLOps • Model deployment pipelines • Observability, drift monitoring, evaluation frameworks • Cost management and scaling strategies Industry Experience (Highly Desirable) • Financial Services / Banking / Insurance • Telecommunications • Regulated enterprise environments • Data privacy and security-critical systems Essential Background • Proven track record delivering AI systems into production , not just prototypes • Experience working with C-suite stakeholders and enterprise architects • Strong software engineering foundation • Ability to operate in ambiguous, fast-moving programmes • Excellent communication and leadership skills Preferred Experience • Building enterprise copilots or digital workforce solutions • Conversational AI at scale • Integration with core banking or telecom platforms • Knowledge of regulatory frameworks (GDPR, model risk, etc.) • Experience with both proprietary and open-source LLM stacks Key Deliverables • Enterprise-ready AI architecture and roadmap • Production deployment of agentic AI solutions • Scalable, secure GenAI platform components • Govern