-
NN_for_Datarock_test.ipynb contains all work.
- data exploration
- data preparation
- model definition
- model training
- model testing and output of results
-
best_val_loss.pth contains a reference trained model which achieved MAE of 1.32 on Test set
-
test_pred.csv is the prediction outputs
- Download the train.csv and
test.csv
datasets from thetest_1
folder. - Each dataset has 11 columns: X1, X2, X3, X4, X5, X6, X7, X8, X9, X10 and Y.
- Build a deep neural network model from scratch (i.e. not using a canned or built-in model) to predict the Y values from the X* values.
- Train the model on the
train.csv
dataset and report the mean absolute error (MAE) of the model (it would be a good signal if the MAE is less than 2) . - Run the model to predict the Y values for the samples in the
test.csv
dataset and save the results in thetest_pred.csv
file. - Please provide your git repository, the
test_pred.csv
file