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Today’s default AI have bigger foundation models, but they’re slow, costly, and hard to specialize.
And looking at it, you don’t scale intelligence with a $10M monolith.
You scale it with modularity.
Ethereum didn’t go faster. It went modular by Splitting State into:
- Rollups
- Shards
- DA layers
@Mira_Network applies the same principle to AI through LoRA
LoRA = Intelligence Shards
Each LoRA is a small, specialized module; a fragment of expertise.
- One LoRA for DeFi whitepapers
- One for DAO proposals
- One for multilingual summarization
You don’t need generalists.
You compose specialists.
How It Works
1. ModelFactory: anyone can train LoRA modules
2. OpenLoRA Registry: each LoRA is onchain, composable, and traceable
3. Model Router: routes queries to the right LoRA swarm
4. Mira Nodes: verify outputs via multi-model consensus
This just like how Ethereum shards for cognition.
Why This Approach Wins
- Cheaper than retraining full models
- Faster specialization
- Open, decentralized AI composition
No central control. No black boxes.
Just modular intelligence; verifiable, efficient, and built for scale.