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instead of save, and then I rescued and dealt with the invalid record case, giving the user a chance to…
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A function which is responsible for writing data to a file might not know that it is part of a…
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Neural networks are trained using stochastic gradient descent and require that you choose a loss function when designing and configuring…
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The related statistic concept covers:Basic Calculus and concept of functionMean, Variance, and Standard DeviationDistribution Function (CDF) and Probability Density Function…
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If we take a look about the linear relationship in each synapse, for both inputs, in next figure:We can see…
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