On August 8, 2018, the ambitious DeepBrain Chain project launched its AI training net, achieving a major milestone in its quest for creating a fully decentralized marketplace for AI computing power and algorithms.
The AI training net serves the purpose of matching computer power requestors with network members that can provide these computational needs on a decentralized marketplace. Through this, projects and companies that require additional computational power for AI deep-learning algorithms can do so on DeepBrain Chain’s AI cloud computing network.
There is a growing need for computing power in the AI industry because the development of AI algorithms requires exponentially more complex calculations. This has created a dramatic increase in the cost of developing AI, something that greatly obstructs startups from proceeding with their AI projects.
The AI training net is the first leap towards realizing DeepBrain Chain’s full ambition, creating a decentralized ecosystem that fosters AI development and can be accessed by all due to its reducing the otherwise high capital barrier of entry.
The DeepBrain Chain team stated that they see the launch of the AI training net as the final test before the release of the mainnet, which is scheduled to launch by the end of 2018. One added functionality indicated thus far is an elaborate matchmaking algorithm to match computational power supply with demand to make the marketplace efficient.
Since the testnet is live, interested parties can apply to use the computational power supplied to the network and indicate how much extra power they need. All payments on the network are in Deepbrain Chain’s native DBC token, a NEP-5 token attached to the NEO network.
Of the 250 million DBC tokens scheduled to release this year, the DeepBrain Chain Foundation has reserved 150 million tokens for over-the-counter sales to AI enterprises and research institutions that want to start using the network.
To recruit AI computational power suppliers, DeepBrain Chain launched their Skynet project last June. To apply for the Skynet project as a power supplier, click here. Because the testnet is now live, early applications to the Skynet program can actually start earning DBC.
DeepBrain Chain’s AI testnet has already brought forth several successful real-life training scenarios for AI machine learning algorithms in fields such as natural language processing, voice recognition, driverless cars, medical tumor detection, planet inspections, and a variety of other applications.
Since this is still only a testnet, some hurdles are to be expected, which will provide valuable learning opportunities for the team to better prepare the platform for the mainnet launch. Factors such as profitability, the learning curve for enterprises to integrate cryptocurrencies and blockchain into their operations, and the feel of the platform in general will need to be optimized over the next few months to prepare the AI marketplace for its full-scale release at the end of this year.
Another milestone to look forward to is the integration of the DBC AI miners onto the network in October. These specialized miners are built to provide computational power to the network and have been optimized to perform DeepBrain Chain specific tasks.
The coming 4 months will be exciting times for the DeepBrain Chain network, and the AI training testnet will serve as an indication of what more we can expect from the world’s first decentralized AI cloud-computing services platform.
Related: Blockchain and Artificial Intelligence: The Benefits of Decentralized AI
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