The group you'll be a part of
Enterprise AI is building the foundation for Lam's AI-first future. We partner across business, data, engineering, security, and technology teams to create scalable AI platforms, governed agent architectures, AI-ready knowledge assets, and reusable solution patterns that help Lam accelerate innovation, improve operations, and turn proprietary domain expertise into durable enterprise advantage.
The impact you'll make
As an AI Ontology Knowledge Architect, you will define and help build how Lam represents, governs, connects, and operationalizes enterprise meaning for AI. This is a hands-on architecture role at the intersection of ontology architecture, semantic modeling, data pipelines, knowledge engineering, agentic AI, and domain understanding. You will not only create reference architectures and standards-you will be directly involved in making them real. You will work with engineers, domain experts, platform teams, and AI solution teams to turn architectural patterns into working ontology models, knowledge assets, integration pipelines, MCP-enabled tools, and agent-ready semantic services. Your work will help ensure that AI systems, copilots, and agents understand business context, reason over trusted knowledge, operate within governed boundaries, and enable decisions and actions that are explainable, reusable, and scalable.
What you'll do
- Define and evolve Lam's enterprise ontology and semantic architecture across business objects, relationships, decisions, actions, permissions, events, and AI-ready knowledge assets.
- Hands-on design and implementation of reusable patterns that connect source systems, data pipelines, metadata, semantic models, knowledge graphs, AI Search, vector stores, MCP tools, and agent orchestration frameworks.
- Partner with business domain experts to model enterprise domains, processes, decision flows, operational states, and domain-specific knowledge for use by agents, copilots, applications, analytics, and automation.
- Translate architecture into working implementations, prototypes, platform patterns, graph structures, semantic services, and integration designs that delivery teams can adopt and scale.
- Create standards for ontology-data integration, including schema mapping, master-data alignment, graph design, metadata enrichment, lineage, observability, versioning, and access control.
- Define interoperability patterns across ontology platforms and AI ecosystems, including Palantir, Microsoft Fabric / Fabric IQ, Azure AI services, internal data platforms, and enterprise applications.
- Establish architecture for AI-ready knowledge assets, including structured and unstructured knowledge, semantic analysis, knowledge extraction, embeddings, retrieval, and feedback loops.
- Design how MCP servers, APIs, tools, data services, and agent actions should be represented, secured, governed, and connected into ontology-aware AI workflows.
- Collaborate with AI solution architects, data architects, platform engineers, security, IAM, governance, and domain teams to ensure agents operate with grounded context, trusted actions, and appropriate human oversight.
- Evaluate emerging ontology and knowledge platform capabilities and recommend patterns that balance speed, interoperability, portability, cost, governance, and long-term enterprise differentiation.
- Build reference architectures, standards, decision frameworks, implementation patterns, and governance models for ontology and knowledge lifecycle management.
Who we're looking for
- Bachelor's degree in Computer Science, Information Systems, Data Science, Engineering, Mathematics, or a related technical field; Master's or PhD preferred.
- 12+ years of experience in enterprise architecture, data architecture, knowledge architecture, semantic modeling, AI architecture, or related technical leadership roles.
- Hands-on experience designing and implementing enterprise-scale data, semantic, ontology, or knowledge graph architectures across complex business domains.
- Strong understanding of data pipelines, data integration, metadata, lineage, governance, access control, data quality, and data product design.
- Experience with ontologies, taxonomies, semantic models, graph models, knowledge graphs, business object models, or domain-driven design.
- Familiarity with modern cloud data and AI ecosystems such as Microsoft Fabric, Azure, Databricks, Synapse, AI Foundry, graph databases, vector stores, search platforms, or comparable technologies.
- Experience building AI-ready knowledge patterns for LLMs, copilots, retrieval-augmented generation, agent orchestration, semantic search, or decision-support applications.
- Understanding of MCP, API-based tool integration, agent-tool interaction patterns, and security/governance considerations for AI systems that access enterprise tools and data.
- Ability to move fluidly between strategy and execution-creating architecture direction while also working directly with teams to implement, validate, and refine it.
- Strong communication skills, including the ability to influence senior leaders and create clear architecture artifacts, standards, and roadmaps.
Preferred qualifications
- Experience with ontology or operational AI platforms such as Palantir Foundry / AIP, Microsoft Fabric / Fabric IQ, or comparable enterprise semantic and AI platforms.
- Experience with graph technologies, semantic standards, metadata platforms, catalogs, data governance platforms, or ontology engineering tools.
- Familiarity with enterprise manufacturing, semiconductor, supply chain, engineering, product lifecycle, quality, finance, or operations domains.
- Experience designing and delivering architectures for agentic AI systems, including grounded context, memory, tool use, action governance, feedback loops, and human-in-the-loop controls.
- Strong understanding of security, IAM, least privilege, auditability, and responsible AI principles for enterprise AI systems.
- Ability to balance near-term delivery with long-term architecture direction in a rapidly evolving AI landscape.
Our commitment
We believe it is important for every person to feel valued, included, and empowered to achieve their full potential. By bringing unique individuals and viewpoints together, we achieve extraordinary results. Lam Research ("Lam" or the "Company") is an equal opportunity employer. Lam is committed to and reaffirms support of equal opportunity in employment and non-discrimination in employment policies, practices and procedures on the basis of race, religious creed, color, national origin, ancestry, physical disability, mental disability, medical condition, genetic information, marital status, sex (including pregnancy, childbirth and related medical conditions), gender, gender identity, gender expression, age, sexual orientation, or military and veteran status or any other category protected by applicable federal, state, or local laws. It is the Company's intention to comply with all applicable laws and regulations. Company policy prohibits unlawful discrimination against applicants or employees. Lam offers a variety of work location models based on the needs of each role. Our hybrid roles combine the benefits of on-site collaboration with colleagues and the flexibility to work remotely and fall into two categories - On-site Flex and Virtual Flex. 'On-site Flex' you'll work 3+ days per week on-site at a Lam or customer/supplier location, with the opportunity to work remotely for the balance of the week. 'Virtual Flex' you'll work 1-2 days per week on-site at a Lam or customer/supplier location, and remotely the rest of the time. Salary CA San Francisco Bay Area Salary Range for this position: $166,000.00 -$350,000.00. The above salary range for this position is relevant to applicants that reside or work onsite in the California, San Francisco Bay Area only. Salary offers will depend on factors that include the location you work from, your level, education, training, specific skills, years of experience and comparison to other employees already in this role. Actual salary may vary from salary offered due to numerous factors including but not limited to unpaid time off, unpaid leave, company mandated shutdown, and other relevant factors. Our Perks and Benefits At Lam, our people make amazing things possible. That's why we invest in you throughout the phases of your life with a comprehensive set of outstanding benefits. >
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