DataBright: Towards a Global Exchange for Decentralized Data Ownership and Trusted Computation

13 Feb 2018 David Dao Dan Alistarh Claudiu Musat Ce Zhang

It is safe to assume that, for the foreseeable future, machine learning, especially deep learning will remain both data- and computation-hungry. In this paper, we ask: Can we build a global exchange where everyone can contribute computation and data to train the next generation of machine learning applications?.. (read more)

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