Brevis announces collaboration with Primus and Trendle to build a verifiable attention marketplace on Monad

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Deep Tide TechFlow News, January 22nd, according to official sources, ZK intelligent verifiable computation platform Brevis announced a partnership with privacy computing protocol Primus and decentralized prediction market Trendle to build an attention-driven verifiable prediction market on Monad.

In this collaboration, Trendle aims to create a perpetual version of the prediction market where traders can go long or short based on social media Mindshare. The core of this market is the attention index, which aggregates interaction data from platforms like X, Reddit, and YouTube; Primus provides zkTLS proofs to verify that the data indeed originates from trustworthy sources and is tamper-proof and unforgeable; Brevis’s Pico zkVM performs verifiable computations on the proven data to calculate Trendle’s attention index, ensuring that results are based on reliable data and computed strictly according to open algorithms. This framework achieves end-to-end verification from data collection to on-chain settlement, promoting the development of verifiable attention markets supported by cryptographic proofs.

This partnership also marks Brevis’s official expansion into the Monad ecosystem, with Brevis’s complete ZK infrastructure becoming an important force supporting Monad developers in building data-intensive applications.

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