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nrjchnd/README.md

Neeraj Chand


On Systems That Think

Software is more than code. Good systems keep intent, proof, and governance aligned, and teams stay clear about what they still need to learn.

I work at the intersection of high-concurrency infrastructure, telephony protocols, and AI agent governance as an Engineering Manager at Five9 and founder of Condensate.io. The main question behind this work is simple: how do complex systems stay trustworthy as they become more capable and more autonomous?

  • Role: Engineering Manager at Five9
  • Venture: Condensate.io
  • Explorations: agent control loops, telephony integrations, and real-time media transport
  • Craft: Go, Kubernetes, SIP/RTP, AI Infrastructure

Verified Agentic Development

The traditional model where code is the main artifact is not enough for AI-assisted delivery. Verified Agentic Development proposes a different foundation:

Intent is primary. Proof is mandatory. Governance is continuous.

Instead of producing compliance artifacts at the end, the goal is a system where every change starts with structured intent, every invariant has an executable proof obligation, and delivery works as a feedback loop.

Principle What it means in practice
Intent Formalization Goals, non-goals, and constraints are explicit before implementation begins
Proof Planning Every invariant has a testable proof obligation
Separation of Duties Builder, verifier, and policy roles are distinct, whether human or agent
Telemetry Feedback Production signals flow back into intent refinement

Active Explorations

  • Building control-plane patterns where AI agents work inside bounded verification loops.
  • Connecting language models to telephony systems through MCP-based interfaces.
  • Exploring RTP/SRTP media delivery over QUIC for resilient real-time transport.

Craft & Tooling

Systems & Architecture Delivery & Infrastructure
Go backend development Kubernetes orchestration
VoIP and messaging gateways Team scaling and mentorship
AI agentic control planes Product roadmap execution
Distributed systems design SDLC and governance patterns


Signal


Connections

chandneeraj
condensate.io
fiji.im


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