Qovaryx

Sovereign-trained compact AI for trading and finance.

Random-init scratch substrates. Audited compact specialists. Local-first deployment. No borrowed foundation weights, no closed APIs in the inference path. A research project building toward a frontier-grade decision system that runs on hardware a single person can own.


What lives here

This organization is the home for the Qovaryx model lineage β€” the published artifacts of a project arguing that compact, locally-trainable AI is a distinct research target, not a smaller version of frontier scaling.

Scratch-base substrates (random-init β€” designed to be trained, not chatted with)

These are directed blanks: the architecture, the decision surfaces, and the design choices are baked in; the weights are random. They exist so a single researcher on a single consumer GPU can train a specialist model end-to-end without renting a datacenter.

  • qovaryx-1b-scratch-base β€” 1B parameter own-base decoder. Fits on a 16 GB consumer card under QLoRA NF4. The publication target of the substrate line.
  • qovaryx-350m-scratch-base β€” 350M parameter mid-size substrate. Fits on a 12 GB card. The deployment-friendly size.
  • qovaryx-50m-scratch-base β€” 50M parameter proxy substrate. Fits anywhere. Used for pipeline validation before the larger sizes commit to training time.
  • qovaryx-3b-scratch-base β€” 3B parameter scratch-base extension of the same lineage.

All four share a modern compact stack: Grouped-Query Attention (GQA), Rotary Position Embeddings (RoPE), pre-norm RMSNorm, SwiGLU feed-forward, tied embeddings, native multi-token-prediction (MTP) heads, a four-class decision head, optional chart-patch encoder for vision input. Apache-2.0 weights, Apache-2.0 reference trainer.

Trading-application lineage (trained, working, local-first deployable)

The 9B chart-reading lineage that operationalized the same disciplines on a larger backbone before the current Qovaryx app surface:

Deployed: Q-Chat router

The first operational artifact in the lineage β€” a sovereign-trained compact specialist intent router, audited and deployed live on free Hugging Face CPU infrastructure, serving a real community Discord. Read more in the public devlog entry on the deployment.

You can interact with it directly through the project's Discord community β€” /qchat ask <question> β€” and the model will route, retrieve, and respond. No closed model anywhere in the loop.


Discipline

This project is built under six explicit commitments:

  • Local sovereign AI β€” the deployed system runs on hardware the operator owns. No silent dependency on a remote API.
  • Compact cognition β€” small is not the apology. Density per stored bit, routing per active parameter, structure per training row.
  • Verifier-governed inference β€” the wrapper around the model is part of the architecture, not a deployment afterthought.
  • Adaptive compute β€” the model thinks harder on the inputs that deserve it and cheaper on the inputs that do not.
  • Execution-aware intelligence β€” gross alpha is not a result. Numbers must survive realistic costs.
  • Intelligence per watt β€” the only honest unit of progress under a power-, memory-, and bit-constrained budget.

These are first-class architectural decisions made at the very first commit. They are not deployment optimizations.


Where to go next

Surface Link
Website qovaryx.jehorizon.com
πŸ“œ Public research devlog github.com/thron-j/qovaryx-ai-research
🎫 Community Discord (builders training their own trading/finance models, no signals) discord.gg/PtuHZDv5ju
πŸ§ͺ Deployed Q-Chat router type /qchat ask <question> in the Discord
πŸ€— Founder profile huggingface.co/tjarvis91
πŸ“¦ VFAi-X desktop releases github.com/thron-j/vfai-x-releases
β˜• Support the next training run ko-fi.com/tjarvis91
πŸ“§ Contact thomasjarvis2026@gmail.com

Implementation specifics β€” exact training recipes, routing heuristics, gate thresholds, curriculum mixing ratios, verifier internals β€” are intentionally withheld. The framings are publishable; the recipes are not.


Qovaryx is an ongoing research effort. The work is in motion. The claims are provisional. The constraint is the point.

This is research and infrastructure writing. Not financial advice. Not a trading signal.

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