Core Concepts & Architecture

Prompt-to-code Pipeline
We’ve turned our backend into a slick five-step magic show:
flowchart LR
Prompt[User Prompt] --> Parser[NL Parser]
Parser --> Blueprint[Blueprint Generator]
Blueprint --> Trainer[Training Composer]
Trainer --> Evaluator[Evaluation Harness]
Evaluator --> Packager[Deployment Packager]NL Parser: Reads your prompt like a champ.
Blueprint: Drafts your model’s blueprint.
Trainer: Writes data pipelines & training scripts.
Evaluator: Sets up tests for accuracy & speed.
Packager: Bundles everything into a deployable artifact.
Meta-AI Engine
Forget manual scripting. We use a fine-tuned AI to:
Sketch out code templates.
Auto-adjust hyperparameters based on your sliders.
Include linters, type checks, and test scaffolds, so it works on the first run.
On-Chain Magic with Solana
Every model build, module purchase, and compute job flows through $AILO:
Pay-per-gen: Sub-cent fees to train your model.
Royalties: 90% to module authors, 10% to treasury—auto-split on-chain.
Governance: Vote on new features, data packs, and grants.
Decentralized Compute: Meet AiloNet
When you need muscle, tap into AiloNet:
Stake AILO: Become a compute node.
Run jobs: Earn micro-fees for GPU/CPU tasks.
Stay honest: On-chain reputation and slashing keep nodes reliable.
Last updated
