Solutions Architect (apac)

LangChain LangChain · Data AI · Singapore · Customer Engineering

Solutions Architect for an AI company specializing in agent engineering. The role involves designing and deploying production-grade AI infrastructure and agent systems for enterprise customers, combining software development, infrastructure engineering, and customer-facing skills. Responsibilities include architecting scalable infrastructure, building agent applications, and engaging with customers to understand requirements and present recommendations.

What you'd actually do

  1. Design scalable, highly-available infrastructure for AI platform deployments (compute, storage, networking, security), enterprise integration patterns, Infrastructure as Code (Terraform, Helm), multi-region HA/DR strategies, and CI/CD pipelines
  2. Design multi-agent systems using different patterns, implement agent logic using modern frameworks (langchain/langgraph), design comprehensive evaluation frameworks, optimize prompts with A/B testing, and guide deployment/operations
  3. Lead technical maturity assessments, work directly with enterprise customers to understand requirements and present recommendations, and partner with Engagement Managers and Product/Engineering teams

Skills

Required

  • 7+ years of experience in a technical, hands-on customer-facing roles
  • 3+ years of experience designing and deploying production infrastructure on cloud platforms (GCP, AWS, or Azure)
  • Strong Kubernetes experience (GKE, EKS, or AKS)
  • Experience with Infrastructure as Code (Terraform, Helm)
  • Knowledge of database systems
  • Experience designing high-availability and disaster recovery solutions
  • Strong understanding of networking, security, and observability
  • Experience with CI/CD pipelines
  • 1+ years of experience building production AI/ML applications or agents
  • Strong experience with LLM frameworks (LangChain, LangGraph, or similar)
  • Experience with state management patterns
  • Experience designing and implementing evaluation frameworks for AI applications
  • Strong prompt engineering skills
  • Experience with vector stores, RAG patterns, and knowledge organization
  • Experience with tool integration, API design, and error handling patterns
  • Strong Python and/or TypeScript development skills
  • Customer-facing experience with enterprise customers
  • Experience conducting technical assessments or infrastructure audits
  • Strong communication skills

Nice to have

  • former founders

What the JD emphasized

  • production infrastructure
  • production AI/ML applications or agents
  • enterprise customers
  • design scalable, highly-available infrastructure
  • design multi-agent systems
  • design comprehensive evaluation frameworks

Other signals

  • designing and deploying production infrastructure
  • building reliable, well-evaluated agent applications
  • architecting scalable, secure infrastructure deployments
  • multi-agent system architecture