Solving a regresion problem using ANN, predict the Concrete compressive strength.
The solution can be found in CCS_Pytorch.ipynb and CCS_TensorKeras.ipynb with the implementation of the ANN in pytorch or tensorflow (with keras).
The Final model is a fully connected Network with an 8 node input layer, 3 hidden layers (30, 20, 10 nodes) with a relu activation and a output layer with 1 node with a sigmoid activation
Atributes | Values |
---|---|
Number of instances | 1030 |
Number of Attributes | 9 |
Features | 8 |
Outputs | 1 |
Missing Attribute Values | None |
Variable | Unit |
---|---|
Cement | kg in a m3 mixture |
Blast Furnace Slag | kg in a m3 mixture |
Fly Ash | kg in a m3 mixture |
Water | kg in a m3 mixture |
Superplasticizer | kg in a m3 mixture |
Coarse Aggregate | kg in a m3 mixture |
Fine Aggregate | kg in a m3 mixture |
Age | 1 - 365 |
Concrete compressive strength | MPa |
The dataset is also availabe from the source: http://archive.ics.uci.edu/ml/datasets/concrete+compressive+strength