Lagrange $LA Teams Up with Mira Network to Forge a Decentralized AI Trust Layer.

Lagrange and Mira Network have launched a joint initiative to build a decentralized trust layer for AI. By embedding Mira’s DeepProve zero-knowledge proof protocol into Lagrange’s infrastructure, every model inference can be cryptographically verified on-chain without exposing sensitive data.

Partnership Highlights

• Co-development of an open-source trust framework that attaches proof metadata to AI outputs.

• DeepProve integration ensures each inference generates a succinct zk-proof of correctness.

• Compatibility with leading decentralized AI platforms for seamless plug-and-play verification modules.

Why It Matters for Lagrange

Positioning itself at the intersection of AI and zero-knowledge technology, Lagrange gains:

• Enhanced credibility as a provider of verifiable AI infrastructure.

• A clear differentiator in a fast-growing market hungry for trustworthy, privacy-preserving AI.

• Momentum to attract developers and partners eager to build proof-enabled applications.

Core Benefits

• Reliability: verifiable on-chain proofs guarantee model integrity.

• Privacy: inputs remain confidential while outputs carry proof of authenticity.

• Composability: proof-enabled modules slot easily into DeFi and Web3 workflows.

• Efficiency: Mira’s optimized zk-proofs keep on-chain costs and latency low.

Ecosystem Impact.

This collaboration elevates Lagrange as a keystone in decentralized AI. Layer-2 and DeFi protocols are likely to adopt its trust layer for AI features, sparking new dashboard, analytics, and SDK projects that track proof data and streamline integration.

How to Get Involved.

1. Explore Lagrange’s developer portal for the open-source trust-layer repository.

2. Review DeepProve integration samples and run local proof tests.

3. Join @Lagrange Official Discord and Mira Network’s Telegram to collaborate on new proof modules.

4. Participate in upcoming hackathons and grants focused on proof-enabled AI dApps.

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