Overview
Hybrid
Depends on Experience
Contract - W2
Contract - Independent
Skills
Coaching
API
Access Control
Artificial Intelligence
Business-IT Alignment
Continuous Integration
Cloud Computing
Collaboration
Delegation
Documentation
Embedded Systems
Communication
Continuous Delivery
Generative Artificial Intelligence (AI)
Good Clinical Practice
Dashboard
Mentorship
Microservices
Microsoft Azure
Microsoft Certified Professional
Innovation
Interfaces
Organizational Architecture
Recovery
Kubernetes
Machine Learning (ML)
Management
SAP
Salesforce.com
Screening
Microsoft Windows
Reliability Engineering
Research
Roadmaps
SAFE
ServiceNow
Data Governance
Data Security
Enterprise Architecture
Google Cloud Platform
Python
Technical Direction
Technology Assessment
Testing
Use Cases
Version Control
Vertex
Workflow
Job Details
Role: Gen AI Architect
Location: Santa Clara, CA
Duration: Long term contract
Experience Range
Total IT 15+ Years experience
10 12 years in AI/ML, cloud, platform engineering, or enterprise architecture roles.
Must include:
- 3+ years hands-on with Google Cloud Platform Vertex AI, Vector Search
- 1 Year hands-on with year with Agent Development and hands-on experience with Agentspace, Agent Builder, Search & Conversation
- Prior experience designing enterprise-grade AI, GenAI or agentic systems including aspect of Agent Ops and Ob Behalf of Workflows
- Exposure to multi-cloud AI environments (Azure OpenAI, Copilot Studio, OpenAI API)
Primary (Must-Have) Skills TA Screening Version
- 3+ years of hands-on experience with Google Cloud Platform Vertex AI, including real work with components such as Agentspace, Agent Builder, Vector Search (Matching Engine), or Search & Conversation. The candidate must be able to describe at least one actual solution built on Vertex AI.
- 2+ years of experience building Generative AI applications, such as AI assistants, retrieval-based systems, or LLM-powered workflows. The candidate should clearly explain what they built and what their role was.
- 5+ years of strong Python development experience, specifically building backend services, APIs, microservices, or automation components used in production environments.
- Practical integration experience with at least one enterprise platform (SAP, Salesforce, or ServiceNow), with the ability to describe a real integration scenario they worked on.
- 3+ years of cloud deployment experience, preferably using Google Cloud Platform services like Cloud Run, Cloud Functions, or Kubernetes for deploying and maintaining cloud-native applications.
- 1 2 years of experience operationalizing AI systems, including managing prompts or models, handling errors or failures, monitoring performance, or improving system reliability. Exposure to LLMOps or similar processes is sufficient.
- Basic working knowledge of enterprise security and data protection, including responsible handling of sensitive data, access control, and safe use of AI systems in an enterprise environment.
- Strong communication skills, with the ability to explain past projects clearly, walk through their contributions, and provide understandable examples of their AI and cloud experience.
Key Technical Skills
As a Principal AI Architect specializing in Google Cloud Platform Vertex AI and Agentic AI, you will guide the architecture, strategy, and delivery of enterprise-grade AI platforms. You ll work closely with engineering, platform, and business teams to shape the AI roadmap, design scalable agentic systems, and ensure responsible adoption of Generative AI across the organization.
Primary Responsibilities:
- Architect Scalable Vertex AI & Agentspace Solutions: Design and deliver AI architectures built on Google Cloud Platform Vertex AI and Agentspace, covering agent workflows, retrieval pipelines, vector search, grounding logic, tool integrations, and multi-agent (A2A) coordination. Ensure the platform is secure, resilient, and built for scale.
- Platform Strategy & Technical Direction: Provide guidance on architecture patterns, technology choices, and platform evolution. Help teams understand trade-offs and make decisions that align with long-term business outcomes.
- RAG Systems & Context Engineering: Lead the design of retrieval pipelines and context strategies that produce reliable, high-quality responses. Define how data is chunked, embedded, searched, and assembled into grounded context windows for agents.
- Agentic AI Frameworks & A2A Patterns: Define patterns for building and coordinating agents across Agentspace, LangGraph, DSPy, or similar frameworks. Establish approaches for delegation, task planning, error recovery, and safe inter-agent communication.
- Tooling Integration & MCP-Style Interfaces: Architect how agents call tools and external systems. Define tool schemas, safety constraints, validation rules, and execution boundaries across SAP, Salesforce, ServiceNow, and enterprise APIs.
- LLMOps & AgentOps: Set up operational foundations for prompts, models, and agents including CI/CD pipelines, monitoring dashboards, version control, error tracking, and cost governance. Implement guardrails that reduce hallucinations and prevent unsafe or unintended behavior.
- Design Authority & Governance: Lead architecture reviews, define reference architectures, and establish reusable patterns. Ensure every GenAI initiative adheres to security, data governance, and platform standards.
- Cross-Functional Collaboration: Work closely with engineering, data, product, and business teams to convert use cases into practical, production-ready architecture. Break down complexity so teams can execute confidently.
- Documentation & Standards: Create and maintain playbooks, best practices, design guides, and reference implementations that help distributed teams build consistently.
- Monitoring, Testing & Observability: Establish testing frameworks for retrieval quality, agent behavior, grounding accuracy, and safety signals. Guide development of AgentOps dashboards that track performance, tool failures, latency, drift, and system health.
Secondary Responsibilities
- Platform Research & Innovation: Stay current with advancements across Vertex AI, Agentspace, Model Garden, and broader agentic patterns. Bring forward ideas worth evaluating and scaling.
- Proof of Concepts: Lead or sponsor PoCs to validate feasibility, performance, and business value before full-scale adoption.
- Ecosystem Awareness: Maintain familiarity with Azure OpenAI, Copilot Studio, AI Studio, Cognitive Search, and other cloud AI platforms to support multi-cloud strategy.
- Business Alignment: Engage with product and business leaders to identify impactful use cases, help shape roadmaps, and clarify expected outcomes.
- Mentorship & Skill Building: Support engineers through coaching on RAG tuning, prompt refinement, agent patterns, testing techniques, and responsible AI practices.
Best Regards,
Sai Surya Teja
US IT Recruiter
Humac Inc.
P:
E: | W:
LinkedIn:
Phoenix, AZ 85027
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