Machine Learning Framework

Machine learning frameworks encompass the design and implementation of computational systems for building and deploying machine learning models. Current research emphasizes developing frameworks tailored to specific applications, such as optimizing industrial processes, predicting disease, or improving healthcare outcomes, often incorporating deep learning, gradient boosting, and other advanced algorithms. A key focus is on enhancing model interpretability and addressing challenges like data heterogeneity and bias, leading to more trustworthy and reliable predictions across diverse domains. These advancements are driving improvements in various fields, from precision medicine to environmental monitoring and resource management.

Papers