NOTE:
Onsite to Foster City, CA
Open for Fulltime
Title: Google Cloud Platform LLM Agentic AI Solution Architect
Location: Onsite (Foster City, CA)
Duration: Fulltime Position
Primary Skills:
Azure OpenAI, Azure AI Studio, Azure and Google Cloud Platform Cloud Functions, Kubernetes, LLM orchestration, LLM Architecture, Retrieval-Augmented Generation (RAG), APIs and custom connectors Integration.
Educational Qualification:
Experience Range
Primary (Must have skills):
To be Screened by TA Team Generative AI Solution Architecture (2 3 years): Proven experience in designing and architecting GenAI applications, including Retrieval-Augmented Generation (RAG), LLM orchestration (LangChain, LangGraph), and advanced prompt design strategies.
Backend & Integration Expertise (5+ years): Strong background in architecting Python-based microservices, APIs, and orchestration layers that enable tool invocation, context management, and task decomposition across cloud-native environments (Azure Functions, Google Cloud Platform Cloud Functions, Kubernetes).
Enterprise LLM Architecture (2 3 years): Hands-on experience in architecting end-to-end LLM solutions using Azure OpenAI, Azure AI Studio, Hugging Face models, and Google Cloud Platform Vertex AI, ensuring scalability, security, and performance.
RAG & Data Pipeline Design (2 3 years): Expertise in designing and optimizing RAG pipelines, including enterprise data ingestion, embedding generation, and vector search using Azure Cognitive Search, Pinecone, Weaviate, FAISS, or Google Cloud Platform Vertex AI Matching Engine.
LLM Optimization & Adaptation (2 3 years): Experience in implementing fine-tuning and parameter-efficient tuning approaches (LoRA, QLoRA, PEFT) and integrating memory modules (long-term, short-term, episodic) to enhance agent intelligence.
Multi-Agent Orchestration (2 3 years): Skilled in designing multi-agent frameworks and orchestration pipelines with LangChain, AutoGen, or DSPy, enabling goal-driven planning, task decomposition, and tool/API invocation.
Performance Engineering (2 3 years): Experience in optimizing Google Cloud Platform Vertex AI models for latency, throughput, and scalability in enterprise-grade deployments.
AI Application Integration (2 3 years): Proven ability to integrate OpenAI and third-party models into enterprise applications via APIs and custom connectors (MuleSoft, Apigee, Azure APIM).
Governance & Guardrails (1 2 years): Hands-on experience in implementing security, compliance, and governance frameworks for LLM-based applications, including content moderation, data protection, and responsible AI guardrails.
Key technical skills :
As a Technical Architect specializing in LLMs and Agentic AI, you will own the architecture, strategy, and delivery of enterprise-grade AI solutions. You will work with cross-functional teams and customers to define the AI roadmap, design scalable solutions, and ensure responsible deployment of Generative AI across the organization:
Primary Responsibilities:
Architect Scalable GenAI Solutions: Lead the design of enterprise architectures for LLM and multi-agent systems, ensuring scalability, resilience, and security across Azure and Google Cloud Platform platforms.
Technology Strategy & Guidance: Provide strategic technical leadership to customers and internal teams, aligning GenAI projects with business outcomes.
LLM & RAG Applications: Architect and guide development of LLM-powered applications, assistants, and RAG pipelines for structured and unstructured data.
Agentic AI Frameworks: Define and implement agentic AI architectures leveraging frameworks like LangGraph, AutoGen, DSPy, and cloud-native orchestration tools.
Integration & APIs: Oversee integration of OpenAI, Azure OpenAI, and Google Cloud Platform Vertex AI models into enterprise systems, including MuleSoft Apigee connectors.
LLMOps & Governance: Establish LLMOps practices (CI/CD, monitoring, optimization, cost control) and enforce responsible AI guardrails (bias detection, prompt injection protection, hallucination reduction).
Enterprise Governance: Lead architecture reviews, governance boards, and technical design authority for all LLM initiatives.
Collaboration: Partner with data scientists, engineers, and business teams to translate use cases into scalable, secure solutions.
Documentation & Standards: Define and maintain best practices, playbooks, and technical documentation for enterprise adoption.
Monitoring & Observability: Guide implementation of AgentOps dashboards for usage, adoption, ingestion health, and platform performance visibility.
Secondary Responsibilities:
Innovation & Research: Stay ahead of advancements in OpenAI, Azure AI, and Google Cloud Platform Vertex AI, evaluating new features and approaches for enterprise adoption.
Proof of Concepts: Lead or sponsor PoCs to validate feasibility, ROI, and technical fit for new AI capabilities.
Ecosystem Expertise: Remain current on Azure AI services (Cognitive Search, AI Studio, Cognitive Services) and Google Cloud Platform AI stack (Vertex AI, BigQuery, Matching Engine).
Business Alignment: Collaborate with product and business leadership to prioritize high-value AI initiatives with measurable outcomes.
Mentorship: Coach engineering teams on LLM solution design, performance tuning, and evaluation techniques.
Communication Skills:
Communicate effectively with internal and customer stakeholders
Communication approach: verbal, emails and instant messages