Enterprise AI Lead
Role details
Job location
Tech stack
Job description
leading by building and establishing the technical foundation for enterprise AI. This includes everything from LLM platforms and agent orchestration to MLOps, RAG pipelines, and AI-enabled applications. This role is ideal for someone with a platform engineering or infrastructure background who has moved into AI and wants to continue building-while also shaping strategy, standards, and long-term direction., What You'll Do
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Design and build enterprise AI/LLM platforms, including model access layers, orchestration, prompt management, and evaluation capabilities
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Develop and deploy AI agents and orchestration frameworks to automate workflows and enable intelligent system behavior
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Architect and implement RAG pipelines and secure data integration patterns, connecting enterprise data to AI systems
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Build and operate MLOps pipelines supporting model deployment, monitoring, evaluation, and lifecycle management
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Develop production-grade AI-enabled applications and services, integrating AI into real operational workflows
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Define and implement AI strategy and governance with a focus on practical, enforceable standards
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Establish model assurance and risk management practices, including evaluation frameworks, guardrails, and observability
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Build and maintain operational data pipelines to support AI and analytics workloads
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Integrate AI capabilities into enterprise platforms, APIs, and business systems
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Lead rapid AI prototyping and experimentation, turning emerging capabilities into deployable solutions
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Build and evolve an AI enablement platform, including reusable services, implementation playbooks, guardrails, and a shared knowledge base, enabling teams to adopt AI capabilities consistently and efficiently.
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Enable internal teams through reusable platform services, templates, and development patterns
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Contribute to enterprise BI and analytics capabilities, integrating AI-driven insights into decisionmaking workflows
Requirements
- Strong experience building and operating platforms or infrastructure systems, with a shift into AI/ML or data platforms
- Hands-on experience developing and deploying AI/LLM-based systems in production
- Experience with LLMs, RAG architectures, embeddings, and agent-based systems
- Experience building or operating AI/LLM platforms, internal developer platforms, or shared services
- Strong experience with data engineering and pipeline development
- Experience with MLOps practices, including model lifecycle management, deployment, and monitoring
- Proficiency in backend development (Python, Node.js, or similar) and API design
- Experience working in cloud environments (AWS, Azure, or GCP) with distributed systems
- Strong understanding of system design, scalability, and operational reliability
- Familiarity with secure or regulated environments and data protection requirements
- Ability to operate both hands-on as a builder and strategically as a technical leader
Preferred Qualifications
- Background in platform engineering, DevSecOps, or infrastructure engineering
- Experience designing multi-tenant AI platforms or enterprise AI services
- Familiarity with agent orchestration frameworks such as LangChain, LlamaIndex, Semantic Kernel, or similar
- Experience with vector databases and semantic search systems
- Experience implementing AI governance, guardrails, and model assurance practices
- Familiarity with secure or regulated environments and data protection requirements
- Experience integrating AI into enterprise applications, workflows, or operational systems
- Experience supporting analytics platforms, data warehouses, or enterprise BI systems
Benefits & conditions
- AI capabilities are delivered as real, production-grade systems, not prototypes or isolated demos
- Teams can leverage reusable AI platforms and services to build and deploy solutions quickly
- AI systems are observable, reliable, and governed, with clear evaluation and risk controls
- Data pipelines and RAG architectures provide secure, high-quality inputs to AI systems
- AI adoption grows through usable tools, not mandates, driven by strong platform design
- New AI capabilities move rapidly from prototype to production
Why This Role Matters Most organizations struggle to move AI beyond experimentation. The Enterprise AI Lead changes that by building the platforms, pipelines, and applications that make AI usable in real operations. This role ensures that AI is not just a strategy, but a working capability embedded into systems, workflows, and decisions-delivered through strong engineering, practical architecture, and hands-on leadership.
The target salary range for this position is $150,000-$190,000.