Molly OS - Whitepaper / Preprint

Daniele Trovato - Core Labs R&D - v1.0 - June 2026

Molly OS: A Model-Agnostic Inference Orchestration Layer for On-Device and Federated Inference.

A sovereign orchestration layer that routes each request across heterogeneous execution targets (on-device, LAN, cloud, external API), serves many domain-specialist LoRA adapters over a shared quantized base, enforces on-device-first data sovereignty, and continuously specializes via distillation. Evaluation across ~100 domains (neutral LLM judge, 115-panel probe) shows orchestration improves output quality over the unspecialized base.

Links

Read the paper

  • On this page (renders with figures): molly_os_whitepaper_en.md - molly_os_whitepaper_es.md - molly_os_whitepaper_it.md
  • PDF (offline / print, figures embedded): molly-os-whitepaper-en.pdf
  • Branded rendered version (live): EN - ES - IT

Architecture figures are embedded as SVG in the .md views (fig_1.svg ... fig_5.svg) and rasterized into the PDF. The 69 references are verified against the arXiv API, with official venue links for the two non-arXiv works.

License

Status: PUBLIC preprint. This repository contains three artifact classes, each licensed separately:

Artifact License What it allows
Whitepaper, translations & figures CC-BY-4.0 Share, quote, translate and build upon with attribution (incl. commercial)
Source code Apache-2.0 Use, modify and distribute, including commercially
Model adapters / weights CC-BY-NC-4.0 Share and adapt with attribution; no commercial use

You may read, cite, quote, translate, and reuse the whitepaper with attribution. See LICENSE. The orchestration service is the commercial product; for commercial use of the adapter weights, contact info@corelabsgroup.com.

How to cite

@techreport{trovato2026mollyos,
  title       = {Molly OS: A Model-Agnostic Inference Orchestration Layer for On-Device and Federated Inference},
  author      = {Trovato, Daniele},
  institution = {Core Labs R&D},
  year        = {2026},
  month       = {6},
  note        = {Preprint, v1.0}
}

Contact (corresponding author): Daniele Trovato - Core Labs R&D - info@corelabsgroup.com

(c) 2026 Daniele Trovato / Core Labs R&D. Contact: info@corelabsgroup.com

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