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Artificial intelligence engineer with .net
Luxoft
📍
ciudad nezahualcóyotl, Mexico
Location
ciudad nezahualcóyotl
Posted
June 03, 2026
Commute
Local Area
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Job Description
Project Description:Customer is looking for an AI Engineerwith. Net experience
Responsibilities:
To design and build intelligent, agent-based systems leveraging Model Context Protocol (MCP) and advanced LLM frameworks. This role focuses on developing autonomous AI agents capable of tool use, memory management, multi-step reasoning, and system orchestration across enterprise environments.
The ideal candidate will architect scalable agentic workflows, integrate APIs and data sources via MCP standards, implement context-aware memory systems, and ensure safe, reliable AI execution. Responsibilities include prompt engineering, tool integration, evaluation frameworks, guardrail implementation, and performance optimization.
Strong experience with LLM ecosystems (e.g., Open AI APIs), multi-agent architectures, retrieval-augmented generation (RAG), and production-grade deployment is required. Familiarity with AI safety, monitoring, and human-in-the-loop systems is highly preferred.<...
Responsibilities:
To design and build intelligent, agent-based systems leveraging Model Context Protocol (MCP) and advanced LLM frameworks. This role focuses on developing autonomous AI agents capable of tool use, memory management, multi-step reasoning, and system orchestration across enterprise environments.
The ideal candidate will architect scalable agentic workflows, integrate APIs and data sources via MCP standards, implement context-aware memory systems, and ensure safe, reliable AI execution. Responsibilities include prompt engineering, tool integration, evaluation frameworks, guardrail implementation, and performance optimization.
Strong experience with LLM ecosystems (e.g., Open AI APIs), multi-agent architectures, retrieval-augmented generation (RAG), and production-grade deployment is required. Familiarity with AI safety, monitoring, and human-in-the-loop systems is highly preferred.<...