Nagarro (Frankfurt: NA9) is a leader in digital product engineering and drives technology-led business breakthroughs.
Senior Staff Engineer, LLM
Location
United Kingdom
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
Senior Staff Engineer, LLM
Nagarro
• Hands-on, daily use of AI-assisted and agentic coding tools (e.g., Claude Code, Cursor, GitHub Copilot, autonomous coding agents) to write and refactor code, automate workflows, and optimize engineering processes • Proficiency with server-side events, event-driven architectures, and messaging systems • Strong critical thinking and systems thinking skills, with experience debugging, optimizing, and making sound engineering decisions across complex backend systems, not just solving isolated problems • Solid understanding of security best practices for backend systems, including authentication and data protection
Job Requirements
- 2+ years of experience developing and experimenting with LLMs
- 8+ years of experience developing APIs with Python
- Strong experience with Python, particularly in building REST APIs using frameworks like FastAPI
- Grounding in NLP and machine learning as they relate to building LLM systems
- Strong experience working with key LLM models APIs (e.g. OpenAI, Anthropic)
- Experience building, deploying, and securing MCP servers at scale
- Understanding of multi-agent systems and their applications in complex problem-solving scenarios
- Designing and implementing RAG systems end to end: vector databases, semantic search, retrieval quality, and chunking strategy
- Experience with prompt writing for various use cases
- Experience with generative solutions released to prod, at scale, beyond POCs
Benefits
- Employees can work remotely
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