The accurate forecasting of electricity price and load is essential for maintaining a stable interplay between demand
and supply in the dynamic electricity market. In this work we propose a deep Convolutional Neural Network-based model
for day-ahead electricity price forecasting from historical price/load data and predicted load values. The model was tested
on the data for New York and New South Wales and demonstrated high prediction accuracy for both datasets.