Lead AI Architect
⚲ Warszawa
30 240 - 33 600 PLN netto (B2B)
Wymagania
- GenAI
- Python
- ML
Opis stanowiska
SNI is serving as a trusted IT Outsourcing partner in line with the needs of World's most prestigious firms and carried out successful projects worldwide.
Scope:
• Define the enterprise AI strategy, including commercial versus self-hosted open-source models, optimizing for cost, performance, security, and compliance.
• Architect large-scale autonomous multi-agent ecosystems, including orchestration, task delegation, context management, and agent-to-agent communication.
• Design the enterprise integration layer connecting AI agents to corporate systems through REST APIs, event-driven architectures, MCP, and custom connectors.
• Design distributed vector architectures and knowledge layers, including embedding pipelines, indexing strategies, metadata management, and RAG governance policies.
• Own security and compliance at the architectural level, including PII handling, authorization, access control, agent quality metrics, and adherence to the AI Act and other regulatory requirements.
• Drive production excellence by defining enterprise cloud architectures with full observability, automated evaluation, monitoring, cost governance, and Responsible AI guardrails.
• Act as the technical authority by establishing architectural standards, coordinating across DevOps, Security, and Business teams, and mentoring senior engineers and architects.
Skills:
• 10+ years of experience in software architecture, software development, data engineering, or ML engineering, with deep hands-on expertise in GenAI and agentic AI.
• Proven track record of designing and delivering autonomous multi-agent systems at enterprise scale.
• Expert-level understanding of agentic architecture patterns, with the ability to define the technical direction for large engineering teams.
• Deep knowledge of model orchestration, inference cost optimization, and model selection across both commercial and open-source models.
• Experience architecting large-scale vector databases, embedding pipelines, and retrieval systems.
• Ability to design secure, privacy-preserving AI systems that are resilient to hallucinations, prompt injection attacks, and adversarial inputs.
• Expert-level experience in cloud architecture on AWS, Azure, or GCP.
• Deep expertise in LLMOps, including model versioning, evaluation pipelines, prompt management, cost monitoring, and CI/CD for AI solutions.
• Ability to define and establish AI-assisted development standards, governance frameworks, and engineering best practices across teams.
Follow us on Linkedin! http://linkedin.com/company/snisourcing/
Scope:
• Define the enterprise AI strategy, including commercial versus self-hosted open-source models, optimizing for cost, performance, security, and compliance.
• Architect large-scale autonomous multi-agent ecosystems, including orchestration, task delegation, context management, and agent-to-agent communication.
• Design the enterprise integration layer connecting AI agents to corporate systems through REST APIs, event-driven architectures, MCP, and custom connectors.
• Design distributed vector architectures and knowledge layers, including embedding pipelines, indexing strategies, metadata management, and RAG governance policies.
• Own security and compliance at the architectural level, including PII handling, authorization, access control, agent quality metrics, and adherence to the AI Act and other regulatory requirements.
• Drive production excellence by defining enterprise cloud architectures with full observability, automated evaluation, monitoring, cost governance, and Responsible AI guardrails.
• Act as the technical authority by establishing architectural standards, coordinating across DevOps, Security, and Business teams, and mentoring senior engineers and architects.
Skills:
• 10+ years of experience in software architecture, software development, data engineering, or ML engineering, with deep hands-on expertise in GenAI and agentic AI.
• Proven track record of designing and delivering autonomous multi-agent systems at enterprise scale.
• Expert-level understanding of agentic architecture patterns, with the ability to define the technical direction for large engineering teams.
• Deep knowledge of model orchestration, inference cost optimization, and model selection across both commercial and open-source models.
• Experience architecting large-scale vector databases, embedding pipelines, and retrieval systems.
• Ability to design secure, privacy-preserving AI systems that are resilient to hallucinations, prompt injection attacks, and adversarial inputs.
• Expert-level experience in cloud architecture on AWS, Azure, or GCP.
• Deep expertise in LLMOps, including model versioning, evaluation pipelines, prompt management, cost monitoring, and CI/CD for AI solutions.
• Ability to define and establish AI-assisted development standards, governance frameworks, and engineering best practices across teams.
Follow us on Linkedin! http://linkedin.com/company/snisourcing/
🔍 Dekoder Ogłoszenia
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World's most prestigious firms
Może oznaczać zarówno prawdziwie prestiżowych klientów, jak i firmy, które po prostu mają wysoki budżet i są skłonne go wydać na outsourcing.
🔴
carried out successful projects worldwide
Sukces jest subiektywny i może oznaczać realizację projektu zgodnie z założeniami, a niekoniecznie z osiągnięciem oczekiwanych rezultatów biznesowych.
🔴
Define the enterprise AI strategy
Osoba na tym stanowisku będzie odpowiedzialna za tworzenie strategii, ale jej faktyczny wpływ na jej wdrożenie może być ograniczony.
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Act as the technical authority
Może oznaczać faktyczne podejmowanie kluczowych decyzji technicznych lub bycie osobą, która ma ostatnie słowo w dyskusjach, ale niekoniecznie jest to gwarantowane.
🟡
deep hands-on exp
Wymagane jest faktyczne, praktyczne doświadczenie, a nie tylko teoretyczna wiedza.