Artificial Intelligence Engineer with Agentic AI

Market Cloud
London
3 months ago
Applications closed

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🚀 We’re Hiring: Agentic AI Engineer / Agentic AI


Location: Onsite - UK


Experience: 1 yr and above


Type: Full-time


Are you passionate about building autonomous AI agents that can reason, plan, and execute complex tasks? Join us to shape the future of Agentic AI and intelligent automation!


Tasks

What You’ll Do


✅ Develop and deploy AI agents using LLMs and multi-agent frameworks


✅ Design adaptive workflows with reasoning and planning capabilities


✅ Implement RAG pipelines, memory systems, and orchestration tools


✅ Collaborate with cross-functional teams to deliver enterprise AI solutions


Requirements

What We’re Looking For


✔ Strong skills in Python, APIs, and cloud platforms (AWS, Azure, GCP)


✔ Experience with LLMs, prompt engineering, and frameworks like LangChain, AutoGen


✔ Knowledge of multi-agent systems, vector databases, and AI orchestration


✔ 3+ years in Generative AI or Agentic AI development



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