为每个团队打造的
AI 自动化
我们相信每个部门都值得拥有专为其打造的 AI 自动化——而非需要数月客制化的通用工具。
Founded 2026. Pre-seed. Bay Area + Taipei. Customer roster intentionally small while we operate every engagement at founder-depth.
§1 — Founder
Shyan-Ming Perng — University of Chicago, 15+ years of production systems.
Background in physics + computer science (University of Chicago). 15+ years architecting production systems — first UI engineer at PernixData; streaming UI across PS3, iPad, iPhone, AppleTV at Netflix during the DVD-to-streaming pivot; founding engineer of the Nutanix IoT/AI/PaaS platform (Xi IoT) as Principal Engineer; co-founder + Chief Architect at Tiyaro across three platform iterations (pre-ChatGPT democratize-AI, post-ChatGPT enterprise RAG + agents, browser-automation infrastructure).
The pattern across four years at Tiyaro was unmistakable: every enterprise was deploying AI faster than they could govern it. Engineering teams built 80% of the stack themselves, then stalled at the production-grade last 20%. Vendors sold tools and walked away. Consultants delivered frameworks and walked away. Nobody operated the work. JieGou exists to be the third option.
§2 — What JieGou means
Structure for enterprise AI adoption.
JieGou (結構) means "structure" in Chinese. The name reflects what we do — provide structure for enterprise AI adoption.
AI without structure produces unmeasurable outcomes: drafts that nobody approved, decisions nobody can replay, exceptions that nobody catches, audit trails that don't exist. AI with the right operational structure — governance, audit, oversight, escalation, observability — becomes board-defensible.
The structure is what turns AI into operations.
§3 — What we believe
Operator-grade values, not aspirational marketing.
§4 — What we don't do
Boundary discipline. Things we explicitly will not do, even if asked.
- ✕ We don't bill hourly. Pricing is engagement fee + annual ops support. Hourly billing creates the wrong incentive for an operations partner.
- ✕ We don't train ML models on your data. Anthropic, OpenAI, and Google contractually commit to this; we contractually commit on top.
- ✕ We don't sell tools you'll operate yourself. If your team wants to operate AI workflows in-house, hire a platform engineer — we'll tell you when the math says this.
- ✕ We don't lock you in. Multi-year terms get pricing discounts but no exit penalty. Customer-VPC deployment means your data + audit trail + outputs all stay with you.
- ✕ We don't promise "AI transformation." Time-saved math, defensible against measured baselines. If we can't prove ROI after 90 days, you walk away. No exit penalty.