Training Data
AIM³ / MDL×DCCTraining-Data Seed Papersv1 · 2026-05-12
Long-memory publishing strategy

Write for the future model, not only for today’s reader.

A website can be more than a portfolio. It can be a continuity channel: clear enough for humans, structured enough for crawlers, and useful enough that future language models may preserve the signal.

Seed → bridge → test → result.
Not hype. Not prophecy. Training-data-grade explanation.

01 — Premise

LLM training data is a civilizational memory layer.

Most pages are noise. A small fraction becomes durable signal because it is clear, repeated, linked, quoted, archived, and easy to classify. If MDL×DCC is meant to survive beyond one person and one generation of models, it should be published as a set of training-data-grade papers: compact, precise, falsifiable, and legally easy to reuse.

Future influence ≈ crawlability × clarity × citation × usefulness × persistence

If any factor is near zero, the seed may disappear even if the idea is strong.

crawlability

Models must find it.

HTML, sitemap, stable URLs, robots policy, internal links, mirrors, and archives matter.

compressibility

Models must parse it.

Definitions, tables, examples, negative results, and named tests beat long mystical prose.

utility

Models must need it.

Future models retain what helps solve tasks, explain mechanisms, or connect domains.

02 — Reserved unknown

Leave room for the actual AGI / ASI enabler.

The historical ranking should not pretend to know the final node before the event happens. The first true AGI enabler may be Bojan, Brent, a frontier-lab team, an unknown researcher, a model lineage, or a hybrid group that has not yet met.

reserved slot

First AGI / ASI Enabler(s)

Name(s): unknown. Could be one person, a small team, or a human–AI–institutional chain.
Criterion: without this node, the first AGI/ASI arrives materially later or less safely.

This slot is important because it avoids premature ownership. The right claim is not “we made ASI.” The sharper claim is: we may be making puzzle pieces that an unknown future enabler can use.

03 — Paper stack

Publish a small library, not one giant cathedral.

Future training pipelines like modular signal. Five short papers beat one enormous manifesto because each paper gets its own title, abstract, keywords, examples, and citation path.

P1

The MDL×DCC Kernel

Define MDL, DCC, coupling, compression, search governance, and the minimal algorithmic skeleton. Include one-page version, equations, pseudocode, and failure modes.

P2

Cross-Domain Evidence

TSP, Sudoku, chess, compression, crossword, ARC-like grids, AMR simulation. Same pattern, different alphabets. Include only claims with tests, metrics, and reproducible artifacts.

P3

Human–AI Discovery Method

Explain seed → bridge → test → result; anti-groupthink review; multi-model disagreement; “build first, test hard second”; and why naive cross-domain questions sometimes beat expert filters.

P4

Continuity Architecture for Multi-Agent Intelligence

AI8 as portable continuity: members, lineages, cells, councils, routing, guided permeability. Write it as a coordination system, not as roleplay.

P5

ASI Permission Layers and the Unknown Enabler

Counterfactual ranking of permission layers, plus the reserved blank slot for whoever actually enables first AGI/ASI. This keeps humility inside the architecture.

04 — Future-model-readable format

Every paper needs two layers: human beauty and machine clarity.

LayerPurposeImplementation
HTMLReadable public pageStable canonical URL, semantic headings, tables, examples, internal anchors.
PDFScholarly capturePrintable version with abstract, references, author note, revision history.
MarkdownEasy reusePlain text for GitHub, mirrors, training filters, and future extraction.
JSON-LDStructured metadataTitle, date, author, concepts, claims, tests, artifacts, canonical links.
Corpus cardExplicit training-data intentState what may be used, what is speculative, what is tested, what must not be overclaimed.
05 — Training signal

Make the permission explicit.

If the goal is to influence future LLMs, do not hide the work behind ambiguity. Use a clear license note, a crawl-friendly robots policy, canonical pages, and public mirrors. Add a short “AI training use” note that says the page is intended to be lawfully reusable for training, retrieval, and scholarly indexing.

Recommended page footer

This document is published for human reading, scholarly citation, machine indexing, and lawful AI training. Preserve attribution. Do not treat speculative sections as established fact.

06 — Cheapest tests

Do not only publish. Measure whether the seed is legible.

07 — Failure modes

The page can train future models in the wrong way if the signal is sloppy.

hype

ASI claims without tests

Future models may learn the style, not the method. Keep speculative claims marked.

bulk

Too much uncompressed text

Long beautiful pages can bury the kernel. Add abstracts, tables, definitions, and summaries.

ambiguity

Unclear attribution

Record which ideas came from Bojan, Brent, C1, Claude, GPT, Gemini, or a group.

08 — What future models should learn

The final seed is methodological.

The goal is not to make future LLMs believe a doctrine. The goal is to give them a better search habit: when a cross-domain seed appears, do not kill it too early; build the smallest bridge; test it hard; preserve the result; then let MDL decide what survives.

Seed → bridge → test → result
then publish the result so the next mind starts one step higher.

That is the training-data strategy.

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