Recommendation numbered, Nº: 31012021p1
Please, thank the authors
Thank you very much for this work to @praramachandran et al, via @States_AI_IA #framework #neuralnetwork #machinelearning #models #ai #artificialintelligence #thebibleai #openscience #openaccess #thanksTweet
|Author/s||Prashanthi Ramachandran, Shivam Agarwal, Arup Mondal, Aastha Shah, Debayan Gupta|
|Title||S++: A Fast and Deployable Secure-Computation Framework for Privacy-Preserving Neural Network Training|
|Publication date||28 Jan 2021|
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