AI Developer (Agents Focus)
Role Overview
Senior AI Engineer will lead the development of multi-agent systems. Responsibilities include agent design, RAG, tool-calling, evaluation, safety guardrails, and integration with the core platform.
Key Responsibilities
- Architecture and implementation of LLM agents (LangChain, CrewAI, LangGraph).
- Development of RAG systems (Pinecone/Weaviate/Chroma).
- Prompt engineering, chain-of-thought, tool-calling.
- Agent evaluation (Ragas, DeepEval, Langfuse/Phoenix).
- Implementation of safety (prompt injection defense, human-in-the-loop).
- Integration with backend (FastAPI, Celery), monitoring of latency/token costs.
Requirements
Must-Have
- 4+ years in AI engineering, 2+ years specifically on LLM-based systems.
- Deep experience with agent frameworks: LangChain / CrewAI / LangGraph (multi-agent orchestration, tool-calling, state management).
- Hands-on RAG systems (vector DB: Pinecone, Weaviate, Chroma; retrieval strategies, chunking).
- Expertise in prompt engineering + evaluation (Ragas, DeepEval, Langfuse/Phoenix).
- Strong Python (3.10+, async, API integrations).
- Understanding of LLM safety (guardrails, hallucination mitigation, bias handling).
Nice-to-Have
- Production multi-agent systems experience.
- Knowledge of classical ML (scikit-learn, XGBoost/LightGBM) and NLP (Hugging Face Transformers, spaCy) for hybrid solutions.
- MLOps tools (MLflow, Kubeflow, Evidently).
Required skills experience
| Python | 5 years |
| LangChain | 3 years |
| CrewAI | 3 years |
| LangGraph | 3 years |
| Pinecone | 3 years |
+ 6 more
| Weaviate | 3 years |
| Chroma | 3 years |
| Celery | 3 years |
| FastAPI | 3 years |
| Phoenix Framework | 3 years |
| Prompt Engineering | 3 years |
Required languages
| English | B2 - Upper Intermediate |
| Ukrainian | Native |
Published 4 February
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Updated 4 February
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