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## Zuvu AI and Vana Collaborate to Enhance Bittensor’s Uncentralized AI
Zuvu AI and Vana revealed a collaboration on February 26th, intending to improve uncentralized artificial intelligence on Bittensor. The pair plans to build a more transparent and economically viable AI environment.
Zuvu AI (previously SocialTensor) provides experience scaling four Bittensor (TAO) subnets, while Vana, recently guided by Binance founder Changpeng Zhao, donates its innovative user-possessed data network.
This partnership aims to examine a fresh blueprint for transparent, cooperative, and economically viable AI growth by incorporating essential layers of the uncentralized AI stack.
## Developing Tangible Worth
Art Abal, Managing Director at the Vana Foundation, remarked that the collaboration integrates Vana’s data layer, Bittensor’s subnet network, and Zuvu’s economic layer to enhance Vana’s DataDAO environment and tackle essential obstacles in AI growth.
Zuvu powers the AI economic layer, enabling investment, staking, trading, and monetization of blueprints, agents, and data, creating fresh prospects in a swiftly expanding market. According to the press release, this collaboration arrives at a moment when the AI market is anticipated to reach trillions of dollars by 2032.
## DeFi’s Expanding Disturbance
The collaboration’s integration with Bittensor is strategic, leveraging its incentive-driven network to scale AI growth. By uniting user-possessed data with permissionless computation and economic incentives, the collaboration mirrors uncentralized finance’s disturbance of conventional finance.
According to Abal and Zuvu AI COO Daniel Raissar, the collaboration is predicted to improve Bittensor’s subnet variety, support Vana’s DataDAO expansion, and position Zuvu as a frontrunner in AI finance, potentially affecting industry practices.
This partnership corresponds to the open-source AI trend, echoing Bittensor’s growth to 45 operational subnets. It constitutes an immediate reaction to the increasing requirement for substitutes to consolidated AI behemoths, presenting a more distributed and approachable strategy for AI progress.