March 30, 2024, 5 a.m. | Pragati Jhunjhunwala

MarkTechPost www.marktechpost.com

GoogleAI researchers released AutoBNN to address the challenge of effectively modeling time series data for forecasting purposes. Traditional Bayesian approaches like Gaussian processes (GPs) and structural time series could not overcome limitations in scalability, interpretability, and computational efficiency. The neural network-based approaches lack interpretability and may not provide reliable uncertainty estimates. These issues create a […]


The post Google AI Introduces AutoBNN: A New Open-Source Machine Learning Framework for Building Sophisticated Time Series Prediction Models appeared first on MarkTechPost.

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