IhorVodko / NYCDSA_DeepLearning_StockPriceForecastLinks
Gathered, cleaned and transformed stock price, balance sheet, income and cash flow statements data for 629 companies. Built a neural network to forecast stock prices based on the companies’ fundamental data for a 1-year investment horizon
☆10Updated 5 years ago
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