image
  • Snapboard
  • Activity
  • Reports
  • Campaign
Welcome ,
loadingbar
Loading, Please wait..!!

Gen Ai Architect

  • ... Posted on: Nov 10, 2025
  • ... Tror AI for everyone
  • ... Santa Clara, California
  • ... Salary: Not Available
  • ... CTC

Gen Ai Architect   

Job Title :

Gen Ai Architect

Job Type :

CTC

Job Location :

Santa Clara California United States

Remote :

No

Jobcon Logo Job Description :

Job Title: Gen AI Architect

Location: Santa Clara, CA

Duration: Contract

Need 14+ years of experience resume.

Accepts only H1b Visa

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 GCP 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 Lang Graph, AutoGen, DSPy, and cloud-native orchestration tools.
Integration & APIs: Oversee integration of OpenAI, Azure OpenAI, and GCP 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 Agen tops dashboards for usage, adoption, ingestion health, and platform performance visibility.

Secondary Responsibilities:


Innovation & Research: Stay ahead of advancements in OpenAI, Azure AI, and GCP 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 GCP AI stack (Vertex AI, Big Query, 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.

Thanks & Regards

Akhil

akhil@tror.ai

Jobcon Logo Position Details

Posted:

Nov 10, 2025

Employment:

CTC

Salary:

Not Available

Snaprecruit ID:

SD-CIE-360a58b0d4745661a4310a3c649f5df10e8da75203a7773472bf715f6e99a9af

City:

Santa Clara

Job Origin:

CIEPAL_ORGANIC_FEED

Share this job:

  • linkedin

Jobcon Logo
A job sourcing event
In Dallas Fort Worth
Aug 19, 2017 9am-6pm
All job seekers welcome!

Gen Ai Architect    Apply

Click on the below icons to share this job to Linkedin, Twitter!

Job Title: Gen AI Architect

Location: Santa Clara, CA

Duration: Contract

Need 14+ years of experience resume.

Accepts only H1b Visa

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 GCP 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 Lang Graph, AutoGen, DSPy, and cloud-native orchestration tools.
Integration & APIs: Oversee integration of OpenAI, Azure OpenAI, and GCP 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 Agen tops dashboards for usage, adoption, ingestion health, and platform performance visibility.

Secondary Responsibilities:


Innovation & Research: Stay ahead of advancements in OpenAI, Azure AI, and GCP 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 GCP AI stack (Vertex AI, Big Query, 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.

Thanks & Regards

Akhil

akhil@tror.ai

Loading
Please wait..!!