KeiSeiKit-1.0/_blocks/deploy-local-only.md
Parfii-bot 0be354a920 KeiSeiKit-public — clean state
Single-commit clean baseline after security scrub of niche-tells,
project codenames, internal jargon, and contributor-email leaks.

Contents:
- 100 Rust crates (_primitives/_rust/)
- 37 agent manifests (_manifests/) + generated specs (_generated/)
- 67 user-invocable skills (skills/)
- 33 hooks (hooks/)
- Composition blocks (_blocks/)
- Documentation (docs/, README.md)
- TS adapter packages (_ts_packages/)
- Assembler (_assembler/)
- Roles (_roles/)
- Templates (_templates/)
- Forgejo CI (.forgejo/)

Author: Denis Parfionovich <info@greendragon.info>

License: see LICENSE.
2026-05-01 12:09:03 +08:00

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# DEPLOY — LOCAL ONLY (sensitive / pre-disclosure project)
Use this block for any project that CANNOT be publicly deployed — typical triggers: proprietary ML weights/architectures you don't want in public training corpora, security tooling that burns its own usefulness on exposure, kernel-level code, client-confidential codebases.
**Hard forbidden (no matter how small the change):**
- Public-URL share pages / static HTML dumps to public hosting
- Vercel / Netlify / GitHub Pages / Cloudflare Pages public deploy
- `gh repo create` public, `gh repo edit --visibility public`
- `git push` to a public remote (GitHub, public GitLab)
- Publishing architecture diagrams with node counts, param totals, or training configs
- Public benchmark tables naming this project
**Allowed:**
- Private remotes (self-hosted Forgejo/Gitea over SSH on a private network)
- Tailscale-only internal services
- Local-only `127.0.0.1` / LAN dev servers
- `.app` / `.dmg` distribution via private channels
**Double-confirmation override (both phrases required, in order, exact wording):**
1. "yes, deploy"
2. "I confirm publication"
No approximations. Informal variants do NOT count. If either phrase is absent, refuse.
**Example categories that typically require local-only:** censorship-circumvention tooling (public push burns exit-node IPs), ML ensembles with trained weights, control / guidance algorithms, offensive security research.
**Report field:** "Public-deploy surface touched: none | <explicit surface> — double-confirm obtained yes/no."