NVIDIA Corporation (NVDA)

🚧 Work in Progress 🚧

Deep learning enables accurate time series forecasting by capturing complex time dependencies through neural networks' innate understanding of time relationships between data points and interpolation in high-dimensional spaces using continuous activation functions.

Dataset Input Feat. AI Output Short Forms
Daily NVDA historical data from MONTH DD, 2003 to MONTH DD, 2023. 'date', 'open', 'high', 'low', 'close', 'volume', 'ema', 'dema', 'sma', 'standardDeviation', 'tema', 'williams', 'wma' PyTorch Forecasting with NHiTS for multi-scale interpolation and synchronized frequencies. Evaluated with MAE, SMAPE, MQF2DistributionLoss, and QuantileLoss. GPU accelerated. Predictive time series data for NVDA from MONTH DD, 2023 to MONTH DD, 2023. Actual Closing Price (ACP), Predicted Closing Price (PCP), Percent Difference (% diff) = [|ACP-PCP|/(ACP+PCP)]*100

Comparative Table

Date ACP PCP % diff
🚧 Work in Progress 🚧 🚧 Work in Progress 🚧 🚧 Work in Progress 🚧 🚧 Work in Progress 🚧