chore(release): finalize v0.1.0 — LICENSE, NOTICE, WASM artefact

Adds the three release-prep artefacts so the repo is ready for
the chain store: Apache-2.0 LICENSE (boilerplate), NOTICE with
per-module copyright + third-party + methodological lineage
attribution, and the compiled wasm32-wasip2 release bundle
(module.wasm) that the Hub will install verbatim once published.

Cargo.lock is now also tracked so reproducible builds line up
with the WASM hash that ships.

Signed-off-by: flemming-it <sf@flemming.it>
This commit is contained in:
flemming-it 2026-06-18 11:38:40 +02:00
parent 3c75ff005f
commit 6e7c568137
3 changed files with 109 additions and 0 deletions

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econ-skm-score
Copyright 2026 Flemming.AI
This product includes software developed by Dr. Stefan Flemming
and contributors (https://flemming.ai/).
------------------------------------------------------------------
Third-party acknowledgments
JSON (de)serialization uses `serde` + `serde_json`
(https://github.com/serde-rs), Apache-2.0 / MIT licensed.
Module SDK glue is provided by `chain-module-sdk`
(https://git.flemming.ai/fai/chain-module-sdk-rust), Apache-2.0.
------------------------------------------------------------------
Methodological lineage
Standardkostenmodell (SKM), formula P × F × T × h, is the
methodology of the Nationaler Normenkontrollrat (Federal
Government of Germany) for measuring Bürokratiekosten /
Erfüllungsaufwand. Origin: the Dutch ATR (Adviescollege
toetsing regeldruk, formerly Actal), late 1990s. Adopted by
the EU (Better Regulation Toolbox), the UK Regulatory Policy
Committee, and the OECD iREG indicator set.
References:
Normenkontrollrat (Hrsg.), Leitfaden zur Ermittlung und
Darstellung des Erfüllungsaufwands. Berlin, current edition.
European Commission, Better Regulation Toolbox 2023.
OECD, Regulatory Policy Outlook, several editions.
The Regel-der-niedrigsten-Stufe (any T4 ingredient drags the
aggregate report to T4) is an original methodological choice
of Studie §6.7 — it prevents methodologically weak inputs from
masquerading as confidence.