Backend + AI Engineer
Indexed description
Not chatbots. Not IVR. Not copilots.
Autonomous agents that can reason, take actions, communicate across channels (voice, text, email), and complete end-to-end business workflows.
We operate at the intersection of LLM reasoning, real-time communication, and production system orchestration — enabling companies to deploy AI employees across sales, support, operations, and collections.
Feather is building the infrastructure and runtime layer that makes autonomous agents production-ready across communication channels.
We’re backed by leading investors and already at $1M+ ARR, scaling quickly into enterprise deployments.
🔧 What You’ll Do
Agent Runtime & Cognition Systems
- Design and build the core runtime that powers autonomous AI agents
- Architect systems for reasoning loops, planning, tool use, and memory
- Enable agents to execute multi-step workflows across business systems
- Build systems enabling agents to operate across voice, SMS, chat, and email
- Develop real-time conversation pipelines and turn management
- Handle interruptions, context switching, and long-running dialogues
- Develop agent orchestration layers for async and long-lived tasks
- Build DAG/workflow systems coordinating agent decisions and actions
- Enable outcome-based automation (not just conversations)
- Integrate frontier models into production agent systems
- Build prompt pipelines, evaluation harnesses, and guardrails
- Design reliability layers: fallbacks, retries, human handoffs
- Architect event-driven systems handling millions of agent actions
- Build job queues, schedulers, and execution pipelines
- Optimize latency, throughput, and infrastructure cost
- 3–7 years building scalable backend or distributed systems
- Strong experience in Python or TypeScript
- Deep understanding of async processing and event-driven systems
- Experience designing production APIs and service architectures
- Experience working with LLM APIs in production environments
- Familiarity with agent frameworks, reasoning systems, or tool use
- Built systems where AI drives real user or business outcomes
- Comfortable owning infra end-to-end
- Strong debugging and performance optimization skills
- Product-minded — you think in workflows, not endpoints
- Built agent tooling (memory, planning, tool execution)
- Experience with workflow engines or orchestration systems
- Familiarity with real-time communication infra
- Experience with RAG, knowledge bases, or retrieval systems
- Exposure to eval frameworks and agent reliability testing
- Worked on customer ops, sales, or support automation
- LLMs: OpenAI + frontier / open-weight models
- Agent Systems: Custom runtimes + orchestration frameworks
- Communication: Voice, SMS, chat, email infrastructure
- Backend: Python, TypeScript
- Infra: AWS, Kubernetes, Postgres, Redis
- Observability: Prometheus, Grafana, tracing
- Workflows: Queue + DAG orchestration systems
- Competitive salary + founding equity
- Direct ownership of core platform architecture
- Work on frontier agent infrastructure problems
- Build AI systems deployed in real enterprise workflows
- Fast shipping velocity with technical founders
- Build AI agents that take actions — not just generate text
- Work on reasoning systems, orchestration, and autonomy
- Design infrastructure for AI employees
- Shape the foundation of an emerging category
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