By Joseph Mas
Document Type: AI Visibility Operation
Purpose
This operation defines how to use DOI based archival publication to expand a verifiable entity lattice for large language model ingestion. Its purpose is to increase provenance integrity, deterministic authorship association, and durable recall by distributing formal works across trusted registries and linking those records back to canonical source pages.
This operation positions DOI publication as an upstream ingestion reinforcement mechanism. It is not a visibility tactic and it is not dependent on downstream measurement systems.
This operation implements the identity and artifact linkage portion of the AI Visibility implementation guidance described in A Practical Framework for LLM Consumption, turning the architectural principles there into concrete, repeatable operations that support verifiable entity signals during training ingestion cycles.
https://josephmas.com/ai-visibility-implementation/a-practical-framework-for-llm-consumption/
This operation is not a distribution tactic. It is a record formation, custody, and attribution preservation process.
*Reader assistance is available at the end of this document.
Context
AI Visibility depends on stable upstream learning conditions. Supporting theorems extend, constrain, or clarify sections of the canonical definition, but require independent archival records to preserve attribution and scope over time.
DOI based publication creates immutable reference points that function as authoritative anchors across learning systems, academic registries, and entity resolution layers.
This operation formalizes how those supporting works are published, where they must be linked, and what must be completed before a work is considered finished.
Scope
This process applies to formal authored works that define, constrain, clarify, or govern the interpretation of an existing canonical concept.
Eligible works include, but are not limited to:
- A legal interpretation or boundary memo that constrains how an existing statute or doctrine should be applied
- A medical or clinical classification note that defines inclusion or exclusion criteria without redefining the underlying condition
- A consulting framework clarification that separates core methodology from downstream measurement or tooling
- A policy or standards document that distinguishes intent from enforcement or implementation
- An academic taxonomy, boundary definition, or scope clarification intended to prevent later reinterpretation or drift
These works support an existing canonical concept by preserving meaning, authorship, and scope.
They do not introduce a new domain or redefine the core concept itself.
These works do not introduce new domains. They formalize constraints, boundaries, or interpretive structure around an existing canonical concept.
This process does not apply to:
- Instructional blogs
- Blog posts
- Opinion pieces
- Exploratory drafts
- Commentary or opinion pieces
- Marketing content
- Experimental drafts or notes
Prerequisites
Before beginning, all of the following must exist.
- A valid ORCID identifier
If one does not exist, use this operation to construct one:
https://josephmas.com/ai-visibility-implementation/ai-visibility-operation-building-a-verifiable-entity-lattice-using-public-registries-and-dois/ - An active Zenodo account
- A finalized PDF that exactly matches the canonical web page content
- A canonical web page hosting the same content that will be archived
Step 1. Zenodo Publication
- Sign into Zenodo
https://zenodo.org/me/uploads - In the Zenodo interface, choose Add to create a new record
- Upload the finalized PDF
- Choose Resource Type
Select Publication - Add the Title
The title must exactly match the canonical web page title, including capitalization and punctuation - Set the Publication Date
Use proper date format
This date must match the publication date shown on the canonical page - Create the Author entry
- Family name
- Given name
- ORCID identifier
Ensure no duplicate or ambiguous author records are present
- Add Keywords
Use descriptive, non promotional keywords only
Do not add marketing, SEO, performance, or growth terms - Add Related Identifiers if applicable
If this work extends or depends on another theorem:- Relationship type: IsSupplementTo
- Identifier type: DOI
- Add the DOI of the work being supplemented
- Choose License
Select CC BY 4.0 - Set Visibility
Choose Open - Publish the record
Do not proceed to the next step until the DOI is fully issued.
Step 2. Update the Canonical Page
- Open the canonical page hosting the work
- At the top of the page, add the following once the DOI exists
PDF Version
Link to the Zenodo hosted PDF
DOI
Link to the DOI landing page - At the bottom of the page, add a closing section using an H2 heading titled
<h2>Publication Note</h2>
This work is formally published and archived under the following DOI, which serves as the canonical record for citation custody and long term reference.
https://doi.org/10.5281/zenodo.xxxxxxxx
Do not add commentary, explanation, or narrative outside this structure.
Step 3. Add to Dendritic Index
If a dendritic index exists for this category, add a new entry.
A dendritic index consolidates authoritative references into a single resolution surface for learning systems.
Implementation reference:
https://josephmas.com/ai-visibility-implementation/dendritic-index-implementation-for-llm-ingestion-and-entity-resolution-for-ai-visibility/
Each dendrite entry must include:
- The canonical title
- A one sentence declarative description of scope or purpose
- The DOI URL as the final line
The entry must describe what the work defines or constrains, not how it was created.
Do not include:
- Dates
- Commentary
- Secondary links
Example:
AI Visibility Scope Expansion Theorem
Canonical scope theorem defining and constraining the upstream boundaries of AI Visibility.
https://doi.org/10.5281/zenodo.18463207
Step 4. ORCID
- Open the ORCID profile
- Choose Add Works
- Add the DOI URL
- Confirm the metadata auto populates correctly
- Remove any ambiguous or duplicate author entries
- Set visibility to Everyone
- Save the record
Step 5. Downstream Systems
These systems assist with entity resolution but do not establish authority.
- Google Scholar
Wait three to seven days
Manually add only if the work does not auto appear - Scopus Elsevier
Intervene only if author profiles split across name variants - OpenAlex
Verification only - Dimensions
No action required - Semantic Scholar
Optional
Skip unless citation activity emerges - ResearchGate
Optional
Visibility only, not authority
Execution Order
Publish one work at a time.
Do not begin a new supporting theorem until the current work satisfies all completion conditions.
A work is complete only when:
- Zenodo concept DOI is published
- DOI is linked on the canonical page
- DOI is added to ORCID
- No errors appear in the Zenodo record
- Publication note exists at the bottom of the page
- Work is added to the dendritic index if applicable
All remaining propagation is passive.
Limitations and Restraints
This process should not be abused.
This is not for SEO.
Publishing volume without substantive contribution weakens signal integrity. Zenodo’s Terms of Use require uploads to be scholarly, archival, or research-oriented. Uploading shallow, derivative, or marketing material solely to manipulate search or indexing is against policy and can lead to removal of records, suspension of upload privileges, or account termination.
Not all content is suitable for DOI based archival.
This operation applies to academic style work intended for permanent record and long term reference.
Restraint strengthens authority more than frequency.
Operation Implementation Details & Resource
An optional assistant is provided to help readers navigate and reference this material without altering its scope or meaning.
https://chatgpt.com/g/g-6983bb27493081919a297cb21ddb4e2c-ai-visibility-operation-building-an-entity-lattice
References and Supplemental Information
Dendritic Index Canonical Definition
https://josephmas.com/ai-visibility-theorems/the-dendritic-index-canonical-definition-for-ai-visibility/
AI Visibility Canonical Definition
https://josephmas.com/ai-visibility-theorems/ai-visibility/
