Member of Technical Staff (forward Deployed Engineer, Applied Ai)

Perplexity Perplexity · AI Frontier · New York, NY · AI

Forward Deployed Engineer role focused on integrating Perplexity's AI API Platform and Perplexity Computer (agentic workflows) into enterprise customer systems. The role involves designing, building, and deploying end-to-end AI integrations, automating business workflows, and optimizing performance, security, and customer impact. Requires strong software engineering skills, experience with LLM-powered systems, and customer-facing deployment.

What you'd actually do

  1. Design, build, and deploy end-to-end integrations between Perplexity and enterprise systems (data platforms, internal tools, SaaS applications), translating business workflows into production-grade AI systems
  2. Work directly with customer teams to embed AI into existing processes, owning deployments from initial architecture through production rollout and ongoing optimization
  3. Develop and operationalize integrations using APIs, event-driven architectures, and workflow orchestration, including deploying Perplexity Computer for multi-step, agent-driven workflows across tools and environments
  4. Design and build production systems that combine retrieval, reasoning, and execution across enterprise environments, applying deep expertise in LLM capabilities, implementation patterns, and the AI stack to drive performance, security, and customer impact
  5. Debug and resolve issues across APIs, infrastructure, and external dependencies, ensuring reliability, performance, and scalability in production

Skills

Required

  • Python
  • APIs
  • distributed systems
  • LLM-powered systems
  • prompt engineering
  • agent workflows
  • evaluation
  • deploying AI systems at scale
  • automated, end-to-end workflows
  • enterprise systems
  • system design
  • rapid prototyping
  • end-to-end execution

Nice to have

  • JavaScript/TypeScript
  • Java
  • search systems
  • retrieval-augmented generation (RAG)
  • AI/ML APIs
  • developer tools
  • platform engineering
  • high-scale/low-latency system design
  • startups or small teams
  • enterprise IT systems
  • AI deployment patterns in regulated industries

What the JD emphasized

  • customer-facing environments
  • production experience building LLM-powered systems
  • automated, end-to-end workflows
  • enterprise systems
  • end-to-end execution

Other signals

  • customer integration
  • API platform
  • agentic workflows
  • production deployment
  • enterprise systems