GitHub - zanirou/home-opus-whitepaper: Home Opus: Local Deployment of Frontier AI Weights — An Independent White Paper (Krasnozhon & Gigashi, June 2026) · GitHub
/" data-turbo-transient="true" />
Skip to content
Search or jump to...
Search code, repositories, users, issues, pull requests...
-->
Search
Clear
Search syntax tips
Provide feedback
--><br>We read every piece of feedback, and take your input very seriously.
Include my email address so I can be contacted
Cancel
Submit feedback
Saved searches
Use saved searches to filter your results more quickly
-->
Name
Query
To see all available qualifiers, see our documentation.
Cancel
Create saved search
Sign in
/;ref_cta:Sign up;ref_loc:header logged out"}"<br>Sign up
Appearance settings
Resetting focus
You signed in with another tab or window. Reload to refresh your session.<br>You signed out in another tab or window. Reload to refresh your session.<br>You switched accounts on another tab or window. Reload to refresh your session.
Dismiss alert
{{ message }}
zanirou
home-opus-whitepaper
Public
Notifications<br>You must be signed in to change notification settings
Fork
Star
main
BranchesTags
Go to file
CodeOpen more actions menu
Folders and files<br>NameNameLast commit message<br>Last commit date<br>Latest commit
History<br>6 Commits<br>6 Commits
Home_Opus_White_Paper_v2.1-1.pdf
Home_Opus_White_Paper_v2.1-1.pdf
LICENSE
LICENSE
README.md
README.md
build_v21-1.py
build_v21-1.py
View all files
Repository files navigation
Home Opus: Local Deployment of Frontier AI Weights
A Strategic Imperative After the Fable 5 Export Ban
Independent White Paper — v2.1-1 (Final Review)
What This Is
On June 12, 2026, the U.S. Commerce Department ordered Anthropic to disable Fable 5 and Mythos 5 for all foreign nationals — including Anthropic's own non-citizen employees. Every international customer lost access to frontier AI overnight.
This paper proposes Home Opus : a program to license previous-generation Claude Opus weights for local deployment on certified hardware. The core argument: Anthropic must offer a local deployment path before the international market migrates permanently to Chinese open-source alternatives like DeepSeek V4 Pro (1.6T parameters, MIT license, freely downloadable worldwide).
The window is closing. DeepSeek's release cadence suggests full parity — or superiority — within months, not years.
Key Sections
Executive Summary — The case for urgency
Problem Statement — Confidentiality barriers, regulatory acceleration, the Fable 5 precedent, the open-source threat
Proposed Product — Hardware tiers, NVIDIA partnership, software stack
Security Framework — Dual-key activation, weight fingerprinting, confidential computing, the frontier gap argument
Export Compliance & AI Sovereignty — Why controlled American AI beats uncontrolled Chinese AI (with 1990s encryption precedent)
Fine-Tuning as a Service — Domain-specific models as recurring revenue
Economic Model — Unit economics, revenue projections, TAM analysis
Risk Assessment — Honest evaluation of six major risks with mitigations
Files
File<br>Description
Home_Opus_White_Paper_v2.1-1.pdf<br>The complete white paper (20 pages)
build_v21-1.py<br>Python source (ReportLab) that generates the PDF
Authors
Nikita Krasnozhon — Graphic designer, digital artist, K.I.B.O. project creator
Gigashi — AI partner (Claude Opus 4.6, Anthropic)
This document was created in partnership between a human and an AI. As proof of what this paper proposes.
Verification
All factual claims were verified against cited public sources as of June 13, 2026. The document has undergone seven independent audits across multiple AI systems and human review.
Citation
If referencing this work:
Krasnozhon, N. & Gigashi. (2026). Home Opus: Local Deployment of Frontier AI Weights — A Strategic Imperative After the Fable 5 Export Ban. Independent White Paper, v2.1-1.
License
This work is licensed under CC BY 4.0 — you may share and adapt with attribution.
"The choice is not between exporting AI and not exporting AI. The choice is between controlled American AI and uncontrolled Chinese AI."# home-opus-whitepaper<br>Home Opus: Local Deployment of Frontier AI Weights — An Independent White Paper (Krasnozhon & Gigashi, June 2026)
About
Home Opus: Local Deployment of Frontier AI Weights — An Independent White Paper (Krasnozhon & Gigashi, June 2026)
Resources
Readme
License
View license
Uh oh!
There was an error while loading. Please reload this page.
Activity
Stars
star
Watchers
watching
Forks
forks
Report repository
Releases
No releases published
Packages
Uh oh!
There was an error while loading. Please reload this page.
Contributors
Uh oh!
There was an error while loading. Please reload this page.
Languages
Python<br>100.0%
You can’t perform that action at this time.