I build engineering systems that make AI-assisted delivery reviewable without burning tokens.
System Reliability Map
Task to reviewable output
Senior software engineer focused on the substrate around coding agents — plans, scoped tools, verification gates, and sanitized receipts. Three case studies follow.
- Plan
Intent becomes a reviewable contract.
- Verify
Outputs pass explicit gates before completion.
- Receipt
Work leaves an audit trail that can be sanitized.
AI-assisted delivery becomes reviewable when the engineering system around it is explicit.
Coding agents are fast at producing output. They are slow at producing reviewable output. The difference is not the model; it is the engineering system around the model — the plans, scoped tools, verification gates, and receipts that turn agent activity into something a senior engineer can defend in review.
- 01
Plans are written before execution. Scope, non-goals, and confidence are explicit.
- 02
Agents act through scoped tools whose calls and outputs an engineer can audit.
- 03
Repeatable work runs hands-off through CLI recipes and gates, so automation reaches exactly as far as the audit trail does.
- 04
Scoped, economical context keeps agents fast and reviewable — token economy is a reliability property, not a cost trick.
- 05
Work is only complete after verification has run and its output is recorded.
A path through the reliability narrative.
Three sanitized systems, shown as proof cards first and deep technical narratives second.
- Case study 01
Small agents. Deterministic gates. Reviewable delivery.
Instead of loading every tool and rule into one agent, Pi routes repeatable work through CLI recipes, gives focused agents only the context they need, and requires isolated validation before QA handoff.
AI engineering Backend / Platform Verification - Case study 02
Agent Tools Workstation System
AGENT-TOOLS keeps skills, commands, sub-agents, and host policy in one git-backed control plane, so Codex, Claude Code, and OpenCode can share the same operating model across machines.
AI engineering DX Infrastructure - Case study 03
MCP Router
One shared local MCP router instance for multiple coding-agent hosts, with cached capability lookup, isolated plugin runtimes, and measurable routed-vs-direct overhead.
Backend / Platform Infrastructure AI engineering
Five proof areas, one reliability thesis.
AI, backend, frontend, infrastructure, and security are not separate pillars in this portfolio. Each is presented as evidence the same thesis can hold under production constraints.
Pick a path that fits the conversation.
Start with the case studies for the long read, or book an open conversation for a 30-minute technical chat.