Supernal
Technology
SeniorAIEngineer(Clients)
Neural analysis suggests this role is
optimal for Senior candidates.
“Senior AI Engineer (Clients) at Supernal. Skills: AI Engineering, Agentic AI, LLM Orchestration, RAG. Design backend systems. Build backend systems”
Industry & Context.
Debugging complex issues; Diagnose complex issues
Work from anywhere globally
What They're Looking For.
Must Have
4+ years of experience in software engineering, 4+ years of experience in systems engineering, 4+ years of experience in automation-focused roles, Hands-on experience building agentic architectures, Hands-on experience building conversational AI systems, Hands-on experience building workflow automation platforms, Proven experience working with LLM orchestration, Proven experience working with prompt engineering, Proven experience working with function calling, Proven experience working with retrieval-augmented generation (RAG), Experience building and deploying voice systems, Experience building and deploying real-time systems, Experience handling latency, Experience handling streaming, Experience handling failure recovery scenarios, Familiarity with integration patterns involving APIs, Familiarity with integration patterns involving webhooks, Familiarity with integration patterns involving external services, Debugging skills, Solid engineering fundamentals, Ability to own delivery outcomes end-to-end, Communication skills in English
Nice to Have
Experience with Kubernetes and container orchestration platforms a plus
What You'll Do.
Design backend systems
Build backend systems
Maintain backend systems
Design CRUD applications
Build CRUD applications
Maintain CRUD applications
Develop external APIs
Integrate external APIs
Develop third-party systems
Integrate third-party systems
Build conversational AI systems
Deploy conversational AI systems
Build agentic AI systems
Deploy agentic AI systems
Own technical delivery
Translate customer requirements
Translate statements of work
Make architectural decisions
Debug production issues
Ensure system reliability
Define engineering best practices
Enforce engineering best practices
Write automated tests
Maintain automated tests
How You'll Work.
Team & Collaboration
Delivery stakeholders; Product stakeholders
Communication Scope
Explain technical trade-offs
Process & Methodology
Roadmaps, Timelines, Scope management
Full Job Description
## Accountabilities Design, build, and maintain production-grade backend systems, including services, data models, and CRUD applications supporting AI-driven workflows. Develop and integrate external APIs, webhooks, and third-party systems to enable secure and reliable AI agent actions. Build and deploy conversational and agentic AI systems, including multi-turn dialogue management, state handling, and tool use orchestration. Own end-to-end technical delivery for client implementations, from system architecture and planning through to production deployment. Translate customer requirements and statements of work into clear technical designs, implementation plans, and execution roadmaps. Make architectural decisions across system design, LLM orchestration, RAG pipelines, integrations, and workflow decomposition. Debug complex production issues across distributed systems, AI agents, prompts, and external dependencies while ensuring system reliability. Define and enforce engineering best practices, including testing strategies, error handling, observability, and maintainability standards. Collaborate closely with delivery and product stakeholders to manage scope, timelines, and technical trade-offs. Write and maintain automated tests (unit, integration, and end-to-end) to ensure system stability and production readiness. Requirements: 4+ years of experience in software engineering, systems engineering, or automation-focused roles delivering production-grade systems. Strong hands-on experience building agentic architectures, conversational AI systems, or workflow automation platforms. Proven experience working with LLM orchestration, prompt engineering, function calling, and retrieval-augmented generation (RAG). Experience building and deploying voice or real-time systems, including handling latency, streaming, and failure recovery scenarios. Familiarity with integration patterns involving APIs, webhooks, and external services in production environments. Strong debugging
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