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  4. Byzantine tolerant gradient descent for distributed machine learning with adversaries
 
patent

Byzantine tolerant gradient descent for distributed machine learning with adversaries

Blanchard, Peva  
•
El Mhamdi, El Mahdi  
•
Guerraoui, Rachid  
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2019

The present application concerns a computer-implemented method for training a machine learning model in a distributed fashion, using Stochastic Gradient Descent, SGD, wherein the method is performed by a first computer in a distributed computing environment and comprises performing a learning round, comprising broadcasting a parameter vector to a plurality of worker computers in the distributed computing environment, receiving an estimate update vector (gradient) from all or a subset of the worker computers, wherein each received estimate vector is either an estimate of a gradient of a cost function, or an erroneous vector, and determining an updated parameter vector for use in a next learning round based only on a subset of the received estimate vectors. The method aggregates the gradients while guaranteeing resilience to up to half workers being compromised (malfunctioning, erroneous or modified by attackers).

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