Hiring Talent who is familiar with Voice Agent development
Role Overview
We are seeking a Senior AI Voice Systems Engineer to design, build, and operate a real-time, AI-powered voice orchestration platform.
This role sits at the intersection of:
  • AI/LLM orchestration
  • telephony systems
  • backend engineering
  • workflow automation
  • reliability engineering (SRE)
You will be responsible for building and maintaining systems that manage live customer calls, perform real-time decisioning, and integrate AI agents with external services and human support teams.
Key Responsibilities
🧠 AI Orchestration & Conversation Systems
  • Design and implement multi-step conversational flows using AI voice agents (e.g., Retell or similar platforms)
  • Structure and optimize system prompts and knowledge bases for performance and maintainability
  • Implement interrupt handling (e.g., “talk to human”) and dynamic routing during conversations
  • Ensure AI agents operate reliably under real-world conditions (latency, ambiguity, user interruptions)
⚙️ Backend & Orchestration Logic
  • Build and maintain orchestration services to manage call state, routing, and decision logic
  • Implement state management for real-time sessions (Redis, DB, or similar)
  • Design APIs for: authentication & verification routing decisions workflow triggers
  • Ensure clear separation between: AI layer (conversation) orchestration layer (decision-making) execution layer (workflows, integrations)
☎️ Telephony & Real-Time Systems
  • Integrate with telephony platforms (e.g., Jambonz, Twilio, SIP systems)
  • Handle: inbound/outbound call flows warm and cold transfers failure scenarios and retries
  • Optimize call latency and responsiveness
🔄 Workflow Automation & Integrations
  • Design and maintain n8n workflows (or similar tools) for: authentication fallback troubleshooting flows third-party integrations
  • Integrate with external services (APIs, CRMs, internal systems)
  • Ensure workflows are idempotent, traceable, and debuggable
⚡ Performance & Reliability (SRE Mindset)
  • Identify and resolve system bottlenecks (e.g., verification latency, API delays)
  • Implement fallback strategies: Lambda → workflow fallback warm → cold transfer fallback
  • Define retry strategies and escalation paths
  • Ensure high availability and graceful degradation
🧪 Testing & Quality Assurance
  • Perform end-to-end (E2E) testing using live telephony flows
  • Validate: AI behavior workflow execution transfer success/failure handling
  • Work within production constraints (no dedicated QA environment)
  • Collaborate with QA and business stakeholders to define test scenarios
📊 Observability & Debugging
  • Implement logging and monitoring across: AI interactions API calls workflows telephony events
  • Track key metrics: call success rate verification time retry rates transfer failures
  • Debug cross-system issues spanning multiple services
Required Skills & Experience
Core Engineering
  • 5+ years in backend or distributed systems engineering
  • Strong experience with: Node.js, Python, or similar REST APIs and event-driven systems
  • Experience designing stateful systems
AI / LLM Systems
  • Experience working with: LLM APIs (OpenAI, Gemini, etc.) prompt engineering and optimization
  • Understanding of: system prompt vs knowledge base design latency and token constraints
  • Experience building agentic workflows (not just chatbots)
Real-Time / Telephony (Highly Preferred)
  • Experience with: Twilio, Jambonz, SIP, or VoIP systems
  • Understanding of: call routing transfer handling real-time streaming systems
Cloud & Infrastructure
  • Experience with AWS (Lambda, API Gateway, etc.)
  • Familiarity with: serverless architectures event-driven systems
  • Experience with workflow tools (n8n, Temporal, Step Functions, etc.)
Debugging & Systems Thinking
  • Ability to debug across: AI layer backend services external APIs telephony systems
  • Strong problem-solving skills in ambiguous, real-time environments
Nice to Have
  • Experience with Redis or real-time state stores
  • Experience with observability tools (Prometheus, Grafana, ELK)
  • Experience in customer support or call center systems
  • SRE or DevOps background
What Success Looks Like
  • AI agents handle calls reliably with minimal human escalation
  • Verification and routing flows are fast and accurate
  • Transfer failures are rare and gracefully handled
  • System is observable, debuggable, and scalable
  • New service lines can be added with minimal friction
💬 Real Talk (What This Role Actually Is)
This is not:
  • just prompt engineering
  • just backend dev
  • just DevOps
👉 It’s someone who can own the entire call lifecycle:
voice → AI → decision → workflow → human → resolution
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8 comments
Anthony Nguyen
4
Hiring Talent who is familiar with Voice Agent development
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