General Information

Position
GenAI Engineer | Prague
Work arrangement
Plný pracovní úvazek
City
Praha
Country
Česká republika
Department
Consulting
Team
Engineering, AI & Data
Area of interest
Cloud, Consulting, Data & Analytics, Engineering
Way of work
Hybridní model

Description & Requirements

Who we are looking for
🎯We’re building agentic systems that do real work in production: tool-using workflows, RAG, structured outputs, guardrails, and measurable quality. If you like shipping and iterating fast - but still care about doing it properly - this is the team.

You’ll work with Solution Architects and LLMOps, but your focus is simple: build the thing, make it reliable, and keep improving it.


🔎What you bring:
  • 2+ years as a GenAI Engineer; ideally some NLP background for RAG and Talk2Document work.
  • Python-first engineer who can build production APIs/services (FastAPI or similar).
  • You’ve built agentic systems with LangGraph / LangChain / PydanticAI / CrewAI (or similar).
  • You’re comfortable integrating tools/data safely (timeouts, retries, idempotency, rate limiting).
  • You’ve worked with RAG/vector search (Azure AI Search, Pinecone, Redis Vector, Milvus/Chroma).
  • You’ve shipped Talk2Data and/or Talk2Document-style solutions (or very similar patterns).
  • You care about quality: eval harnesses + regression suites, and you can use LangSmith/Langfuse/Datadog to debug what’s happening.
  • Familiar with MCP and secure model-to-tool/data connectivity.
  • Bonus: A2A patterns / agent-to-agent coordination.
  • Bonus: agent builder frameworks (Azure AI Foundry, AWS Bedrock Agents, Vertex AI Agent Builder, or similar).
  • Cloud experience: Azure preferred, AWS/GCP fine.

Your future role
🚀What you will build:
  • Agent workflows with LangGraph / LangChain / PydanticAI / CrewAI (routing, retries, fallbacks, timeouts, human-in-the-loop).
  • Tool calling that doesn’t break: APIs, databases, and internal services with clean contracts, predictable behavior, and safe error handling (retries/timeouts, idempotency, rate limiting).
  • Hybrid systems: pre-built agents plus a thin custom orchestration layer (interfaces, policies, guardrails, reuse).
  • MCP integrations: implement MCP servers/clients so models can safely access tools/data (DBs/APIs/files) using least-privilege patterns and audit-friendly logging.
  • RAG + knowledge systems: chunking, embeddings, indexing, retrieval strategies, grounding patterns; vector stacks like Azure AI Search, Pinecone, Redis Vector, Milvus/Chroma; doc ingestion with Azure Document Intelligence.

Real use cases:
  • Talk2Data (safe querying + interpretation of enterprise data)
  • Talk2Document (Q&A/summarize/extract/reason over docs with citations/grounding)
  • Evaluation + observability: automated evals (task success, groundedness/relevance, safety, latency, cost), regression suites, and run tracing for debugging using LangSmith / Langfuse / Datadog.
  • Cloud GenAI: Azure OpenAI / Azure AI Foundry + Azure AI Search / Document Intelligence / Content Safety. AWS/GCP equivalents welcome (Bedrock/Vertex AI + search/document pipelines).
What we offer
  • A global network + a strong regional AI&D community (~160 people).
  • A dedicated technical team that’s actively growing and open to experimenting with new tech (when it actually helps).
  • Consultancy work, but on real problems with real impact - solutions people use.
Also: 

✨ Professional Growth – Continuous learning with access to SAP trainings, certifications, and mentorship.
💰 Attractive Package – Competitive salary, performance bonuses, meal vouchers, extra vacation days, and flexible benefits.
🌍 International Projects – Work with leading companies across Europe and beyond.
📈Career Development – Clear paths for advancement into senior consultant and manager roles.
🏢 Modern Workplace in Prague – Hybrid working model with a centrally located office.
🎉 Culture & Community – Friendly, diverse teams, team-building events, and supportive leadership.

#LI-NF1