Hiring for: A US based well funded startup building low-latency, agentic voice AI systems at production scale.
Role: Principal AI / LLM Engineer – Agentic Orchestration
Experience: 8yrs+
Location: Bengaluru
Type: Hybrid - 3 days Work From Office
Notice: Immediate preferred, no longer than 30 days
Salary: Based on fitment (75L range + massive ESOPs)
Role:
Design and own the orchestration layer (control plane) powering production AI agent systems — building multi-step workflows that coordinate models, tools, and services with deterministic execution and controlled failure.
This role sits at the intersection of AI systems and workflow orchestration, where LLM-driven agents interact with APIs, data systems, and internal services through structured execution pipelines.
Here's what you're EXTREMELY good at:
- Shipping production AI agent systems (not prototypes or experiments) that orchestrate models, tools, and services
- Designing multi-step agent workflows with deterministic execution and clear state transitions
- Building orchestration layers that coordinate LLM reasoning, tool execution, and system state using patterns such as state machines, schedulers, or operator-style reconciliation loops
- Modeling state machines, dependency chains, and workflow DAGs
- Designing guardrails, invariants, and safety boundaries for AI agent behavior
- Handling retries, idempotency, compensating actions, and partial failures in complex workflows
- Building systems that remain reliable when agents interact with external tools and APIs
- Owning systems end-to-end: design → production rollout → incident recovery
- Working with event-driven architectures, workflow engines, distributed schedulers, or orchestration platforms (e.g. Temporal, Cadence, LangGraph, LangChain, LlamaIndex, Airflow, Step Functions, Argo or similar)
Here's how your peers and manager describe you:
- Thinks in states, transitions, and constraints, not just function calls
- Instinctively asks “How does this break?” before discussing how it works
- Decomposes complex AI systems into clear orchestration layers and execution components
- Designs abstractions that remain stable under scale, concurrency, and partial failure
- Understands that agent behavior must be deterministic and observable in production
- Moves fast without sacrificing structural integrity
- Adapts your model when challenged instead of defending weak assumptions
This is NOT who you are:
- Someone experimenting with LLM APIs without having shipped production AI systems
- A prompt engineer focused only on model tuning or chaining APIs
- A research-only AI/ML profile without production system ownership
- A generic backend engineer whose work stops at CRUD microservices
- A people manager stepping away from hands-on system design
Skills
Posted March 6, 2026
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