Job Openings
Gen AI Architect
About the job Gen AI Architect
Job Title: Gen AI Architect
Location: Fremont, CA (Onsite)
Job Type: C2C
Remote: No
Job Summary
We are seeking an experienced Senior Technical Lead / Gen AI Architect with strong expertise in Langfuse v3, Azure AI services, and GenAI lifecycle management. The role will involve architecting, implementing, and optimizing advanced GenAI evaluation frameworks, ensuring enterprise-grade reliability, scalability, and observability for AI-driven solutions.
Key Responsibilities
- Provide technical leadership to development teams, ensuring best practices, coding standards, and performance optimization in complex GenAI projects.
- Architect and deploy Langfuse v3 in production environments, including upgrades from Langfuse v2 with backward compatibility.
- Design and build modular components for prompt management, tracing, metrics, evaluation, and playground features using Langfuse v3.
-
Leverage Langfuse capabilities for:
- Prompt Management versioning, templating, optimization
-
Tracing end-to-end visibility of GenAI workflows
-
Metrics performance, latency, and usage analytics
-
Evaluation automated/manual scoring of outputs
-
Playground interactive prompt testing/debugging
- Integrate Azure AI Evaluation SDK into enterprise pipelines for scalable evaluation of GenAI models.
- Build reusable components and templates for evaluation across diverse RAG, multi-agent, and GenAI lifecycle workflows.
- Ensure scalability, observability, and traceability of evaluation frameworks in both offline and online environments.
- Collaborate with cross-functional teams (product, data science, and engineering) to align evaluation metrics with business KPIs.
- Conduct feasibility studies, recommend technical alternatives, and ensure compliance with architecture best practices.
- Stay current with emerging GenAI evaluation tools and methodologies (e.g., TruLens, W&B, Helicone).
Required Skills & Qualifications
- Hands-on expertise in Langfuse (including v3 features) and integrations.
- Proficiency with Azure AI Services and Azure AI Evaluation SDK.
- Strong understanding of LLMOps, prompt engineering, and GenAI lifecycle management.
- Experience with Retrieval-Augmented Generation (RAG), fine-tuning, and multi-agent orchestration.
- Proficiency in Python (TypeScript or other GenAI-related languages is a plus).
- Experience with cloud-native architectures (Azure preferred).
- Familiarity with observability tools, tracing frameworks, and evaluation metrics for GenAI systems.
- Excellent communication, documentation, and stakeholder collaboration skills.
Nice to Have
- Experience with additional observability tools such as TruLens, Weights & Biases (W&B), Helicone.
- Exposure to evaluation standards for enterprise AI adoption.
- Knowledge of multi-cloud and hybrid deployment strategies.