Itransition
Middle/Senior AI Agent Developer
Не указана
- Английский язык
- Python
- Английский — B1 — Средний
Description:
We are looking for a skilled AI Agent Developer to join our AI team. You should have proven production experience with AI systems and a strong interest in learning and growing with modern agent technologies.
Responsibilities
- Develop, implement, and optimize AI agents capable of autonomous decision‑making, reasoning, and tool‑usage in real‑world scenarios.
- Build and maintain pipelines for agent planning, memory, retrieval, and multi‑step task execution.
- Integrate LLMs, vector stores, APIs, and external tools to enable complex agent behaviors.
- Design and refine prompting strategies, reasoning chains, and agent policies to improve reliability and accuracy.
- Implement evaluation frameworks for agent performance, safety, and robustness across diverse tasks.
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Monitor agent behavior in production, troubleshoot failures, and continuously improve quality of outputs.
- Optimize inference pipelines for speed, cost efficiency, and model/tool selection.
Requirements
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Strong Python skills and proven production experience with Agentic ecosystems
- Embeddings & Vector search
- Prompt & Context engineering
- RAG, CRAG, GraphRAG
- LangChain, LangGraph, CrewAI
- Agent's testing & verification
- Agentic Tools and skills
- AI-assisted coding models & tools
- Strong analytical and problem-solving mindset
- Ability to clearly communicate findings and trade-offs
- Ownership of tasks from research to implementation
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Curiosity and willingness to explore new approaches
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Level of English enough for efficient technical and business communication with native speakers
Nice to have
- Autonomous Agents & Deep Agents
- Model types and capabilities (Thinking, Multimodal models)
- LLMOps
- GenAI Observability
- Memory management & Prompt caching
- Model Governance & Data Governance (Responsible AI)
- Basics knowledge of Cloud infrastructure
- Agentic patterns
- Integration mechanics (MCP, AA-protocol)
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Basic understanding of machine learning fundamentals:
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Supervised learning, models training, model evaluation
- Overfitting, regularization, cross-validation
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- Knowledge of statistical methods and probability theory