pracaon.pl

Generative AI Systems Architect | Associate Management

Remote, Polska
EPAM
Partner
15d
Salary to be agreed
Full-time • Remote • IT & Telecommunications

Key offer highlights

  • Min. 1 year of experience

  • DevOps / Cloud: AWS, Azure, Docker, Kubernetes

  • Full-time

  • Remote work - no commuting

Description

We are seeking a skilled Generative AI Platforms Architect to lead and define the architecture for our enterprise GenAI platform. The role involves creating reference architectures, guardrails, and roadmaps to deliver scalable and secure AI solutions — including LLMs, agentic applications, and tool integrations — across multiple clouds. By collaborating with engineering, security, data governance, and product teams, the Architect will translate business goals into platform designs and actionable delivery plans, while mentoring engineers and advocating for best practices in LLMOps/ModelOps. Responsibilities Design enterprise generative AI reference architectures, blueprints, and reusable patterns Define multi-cloud platform foundations addressing networking, identity, and secrets management Lead efforts in LLMOps/ModelOps, focusing on model evaluation, safety, observability, and rollout strategies Create frameworks and governance for agentic systems, including tool governance and the Model Context Protocol (MCP) Ensure systems comply with security, risk, and compliance standards, with Responsible AI principles and PII controls applied Establish strategies for cost efficiency, reliability, and performance using capacity planning and FinOps techniques Improve developer experience through CI/CD pipelines, golden paths, templates, and Infrastructure as Code (IaC) techniques Collaborate with cross-functional teams to align system requirements with strategic objectives Requirements Bachelor’s degree in Computer Science, Engineering, or related field, or equivalent experience 1+ years in architecture roles involving cloud, data, or production Generative AI/LLM systems Knowledge of cloud platforms (Azure, AWS, GCP) and IaC tools (Terraform, Bicep, CDK, CloudFormation) Competency in containerization and orchestration technologies (Docker, Kubernetes), as well as API gateways/service meshes Proficiency in CI/CD and release management for ML/LLM workloads (Jenkins, GitHub Actions, GitLab CI, Azure DevOps) Understanding of Large Language Model (LLM) platforms like Azure AI Foundry, Azure OpenAI, AWS Bedrock, or Google Vertex AI Familiarity with security-by-design principles and compliance frameworks tailored to GenAI systems Advanced proficiency in English (B2+/C1)

Requirements

  • Bachelor’s degree in Computer Science, Engineering, or related field, or equivalent experience

  • 1+ years in architecture roles involving cloud, data, or production Generative AI/LLM systems

  • Knowledge of cloud platforms (Azure, AWS, GCP) and IaC tools (Terraform, Bicep, CDK, CloudFormation)

  • Competency in containerization and orchestration technologies (Docker, Kubernetes), as well as API gateways/service meshes

  • Proficiency in CI/CD and release management for ML/LLM workloads (Jenkins, GitHub Actions, GitLab CI, Azure DevOps)

  • Understanding of Large Language Model (LLM) platforms like Azure AI Foundry, Azure OpenAI, AWS Bedrock, or Google Vertex AI

  • Familiarity with security-by-design principles and compliance frameworks tailored to GenAI systems

  • Advanced proficiency in English (B2+/C1)

Responsibilities

  • Design enterprise generative AI reference architectures, blueprints, and reusable patterns

  • Define multi-cloud platform foundations addressing networking, identity, and secrets management

  • Lead efforts in LLMOps/ModelOps, focusing on model evaluation, safety, observability, and rollout strategies

  • Create frameworks and governance for agentic systems, including tool governance and the Model Context Protocol (MCP)

  • Ensure systems comply with security, risk, and compliance standards, with Responsible AI principles and PII controls applied

  • Establish strategies for cost efficiency, reliability, and performance using capacity planning and FinOps techniques

  • Improve developer experience through CI/CD pipelines, golden paths, templates, and Infrastructure as Code (IaC) techniques

  • Collaborate with cross-functional teams to align system requirements with strategic objectives

Seniority

  • Associate Management

Keywords / Skills

Generative AI Operations
This offer was imported from an external portal.Listing source