AI engineer (Middle)

$$$

You will work on scalable AI solutions, developer-focused tools, workflow automation, and AI capabilities that improve engineering productivity and deliver real business value for clients.

 

Responsibilities:

 

โ€” Design, build, and deploy LLM-based applications and agentic AI systems from prototype to production.

โ€” Develop production-grade AI agents, multi-agent systems, and tool-using workflows.

โ€” Implement RAG pipelines over proprietary and third-party data sources.

โ€” Build and maintain vector databases for AI data storage, retrieval, and search.

โ€” Design and implement AI-powered capabilities such as code assistance, documentation generation, test automation, summarization, knowledge discovery, and code review support.

โ€” Evaluate foundation models such as OpenAI, Anthropic, Gemini, Llama, and other commercial or open-weight models.

โ€” Build LLM evaluation and benchmarking pipelines, including offline tests, online monitoring, human-in-the-loop review, and quality measurement.

โ€” Improve model performance across relevance, faithfulness, latency, throughput, reliability, and cost.

โ€” Design and maintain APIs, backend services, integrations, data flows, and custom tools for AI systems.

โ€” Build custom tools, skills, integrations, and MCP-style server/client patterns for agentic workflows.

โ€” Deploy, monitor, and optimize AI systems on cloud platforms, with a focus on scalability, reliability, observability, and cost efficiency.

 

 

Requirements: 

 

โ€” 2+ years of hands-on experience building and deploying LLM-based applications, RAG systems, or AI agents in production.

โ€” Strong Python experience, ideally 3+ years.

โ€” Experience building backend systems, APIs, services, integrations, and data flows.

โ€” Experience with object-oriented programming, backend architecture, design patterns, and production system design.

โ€” Hands-on experience with LangChain, LangGraph, or similar AI orchestration frameworks.

โ€” Strong experience designing agentic AI systems, tool-using agents, or multi-step AI workflows.

โ€” Experience with RAG architecture, including chunking strategies, embeddings, vector databases, reranking, and retrieval evaluation.

โ€” Experience with vector databases such as Pinecone, Weaviate, Qdrant, Chroma, Milvus, or similar.

โ€” Experience with LLM evaluation and benchmarking, including designing evaluation pipelines and measuring model performance.

โ€” Strong prompt design, prompt iteration, and prompt optimization skills.

โ€” Experience working with major model providers or open-weight models such as OpenAI, Anthropic, Gemini, Llama, or similar.

โ€” Cloud experience with AWS, GCP Vertex AI, Azure AI Foundry, or similar platforms.

โ€” Familiarity with AI safety, responsible AI, guardrails, and output validation for production systems.

โ€” Experience with CI/CD pipelines, deployment workflows, and engineering best practices.

 

 

We offer:


โ€” remote time job, B2B contract
โ€” 12 sick leaves and 18 paid vacation business days per year
โ€” Comfortable work conditions (including MacBook Pro and Dell monitor on each workplace)
โ€” Smart environment
โ€” Flexible work schedule
โ€” Competitive salary according to the qualifications

Required languages

English B2 - Upper Intermediate
Published 5 May
19 views
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4 applications
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