Posted Jul 9, 2026

Senior GenAI Engineer

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🧠 Tech Level: Senior πŸ—£ Language Proficiency: Upper-Intermediate πŸ‘₯ FTE: 1 🧾 Employment type: Full time 🌍 Candidate Location: Poland πŸ• Working Time Zone: CET (European time zone with occasional cross-region meetings) πŸš€ Start: asap 🧭 Planned Work Duration: 6 months (possible extension) πŸ‘₯ Customer Description: Our client is a leading global management consulting firm. 🧩 Project Description: The project focuses on building and iterating on GenAI proof-of-concepts for knowledge capture and curation. The engineer will work across the complete AI application lifecycle, including prototyping, deployment, observability, optimization, and production scaling of enterprise AI solutions. βš™οΈ Project Phase: active development 🀝 Soft Skills: β€’ Excellent communication skills with the ability to explain complex AI concepts to both technical and non-technical stakeholders β€’ Strong analytical and problem-solving mindset β€’ Demonstrated ability to lead technical initiatives πŸ’‘ Hard Skills / Must Have: β€’ 6+ years of software engineering experience, including backend systems, APIs, distributed systems. β€’ 3+ years of experience with production GenAI or LLM applications β€’ Strong expertise in Python β€’ Experience building scalable APIs, microservices, and cloud-native applications. β€’ Strong understanding of production system design, scalability, resiliency, and observability principles. β€’ Hands-on experience with:LLM APIs and RAG. β€’ AI agents and tool-calling architectures. β€’ Multi-agent orchestration systems. β€’ Prompt engineering and prompt; optimization. β€’ Embedding models and vector databases. β€’ Experience working with multiple foundation model providers and open-source LLM ecosystems. β€’ Experience with cloud platforms such as AWS, Azure, or GCP. β€’ Experience integrating GenAI systems with enterprise platforms, APIs, and data ecosystems. ✨ Hard Skills / Nice to Have: β€’ Experience with frameworks such as LangChain, LangGraph, LlamaIndex, CrewAI, Semantic Kernel, AutoGen, or similar. β€’ Experience with model fine-tuning, PEFT, LoRA, and open-source LLM deployment. β€’ Experience with vector databases such as Pinecone, Weaviate, Chroma, FAISS, Milvus, or pgvector. β€’ Experience with Docker, Kubernetes, Ray, MLflow, Airflow, or Temporal. β€’ Experience with AI observability and evaluation platforms such as LangSmith, Weights & Biases, Arize, Helicone, Phoenix, or similar. πŸ“Œ Responsibilities: β€’ Design, develop, and deploy scalable GenAI applications using LLMs, RAG, AI agents, and workflow orchestration frameworks β€’ Build production-grade AI systems integrating structured and unstructured enterprise data β€’ Architect and optimize end-to-end AI pipelines β€’ Develop AI-powered copilots, assistants, automation workflows, and autonomous agent systems β€’ Design hybrid AI systems combining deterministic workflows with autonomous agent behavior β€’ Build multi-agent orchestration workflows β€’ Implement tracing, telemetry, observability, and monitoring β€’ Develop automated evaluation pipelines and testing frameworks β€’ Improve reliability through retrieval optimization and AI safety mechanisms β€’ Optimize inference cost, latency, throughput, and scalability β€’ Own AI systems from prototype to production β€’ Collaborate with stakeholders, product managers, platform teams, and data engineers β€’ Stay current with advances in LLMs, agentic AI, multimodal systems, and AI infrastructure πŸ§ͺ Technology Stack: Python, FastAPI, SQL, Snowflake, Streamlit, React (light), LangChain, LangGraph, LLM APIs via internal gateway, vector databases, Docker, Kubernetes, AWS πŸ“ Additional notes: The candidate must be employed in client's company at 0.125 FTE under UoP (employment contract) and additionally under a service contract (B2B or mandate contract). Payment terms β€” up to 60 days. Work will be performed using client-provided equipment. πŸ“© Ready to Join? We look forward to receiving your application and welcoming you to our team!