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ConvNetSharp compare to other Deep Learning frameworks #139
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Hi, I haven't done any comparison with other deep learning frameworks. |
Hi. |
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Hi, That's interesting. Can you show your keras code as well? |
Hi, root_mean_squared_error= function(y_true, y_pred) { metric_rmse <- custom_metric("rmse", function(y_true, y_pred) { trainf <- read.csv('c:/LD/train111.csv', header = T) train.y=yf$LS gc() earlyStopping=callback_early_stopping(monitor="val_loss", patience=30, verbose=1, mode='min') model <- keras_model_sequential() r<-ncol(train.x) model %>% model %>% compile( #summary(model) history <- model %>% fit( |
I noticed something in your C# code: the 4th dimension of your input/output data should be the batch size. But I see it's the whole dataset size. You need to adapt the code to call the train method on each batch (if batch size = 1, once for each entry in the dataset). I should emove the batch size parameter of the trainer because it's confusing: it should deduce it from the shape of the input. |
Thank you for pointing out the mistake. |
You can get some inspiration from this line in the mnist example. I'm travelling and I don't have access to a computer, typing code with a mobile is not ideal |
Hi,
It's great work you made.
How does ConvNetSharp compare to other Deep Learning frameworks like Keras in the accuracy of the prediction of DNN regression?
Have you done any tests?
Thanks.
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