Using application microprocessors for seismic
First practical application that I know of using the next thing after TPUs (Tensor Processing Units): ASICs or Application Specific Integrated Circuit. Ideal dedicated hardware for the massive seismic data and processing. Machine Learning (ML) algorithms build a mathematical model based upon representative sample data, known as ‘training data’, in order to make predictions or decisions without being explicitly programmed to perform the task. I limit my discussion here to supervised learning in the context of a potential application to seismic data image processing of a real marine seismic dataset, and then discuss how the computational scale of such exercises reinforce the need to develop computing technology that is customized for large ML problems.Well Failure Analysis by Kevin Ward
Article in LinkedIn.
How do you analyse well failure? Just to be clear upfront, I’m referring to geological failure, as opposed to engineering failure – I’ll leave that one for the engineers!
Well Failure Analysis by Kevin Ward.
Keywords: geology, well, Petrosys, dbMap
References:
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