Machine Learning Street Talk (MLST) cover image

Prof. Chris Bishop's NEW Deep Learning Textbook!

Machine Learning Street Talk (MLST)

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Balance Between Data and Inductive Bias in Scientific Domain

Scientific data for large models can be scarce and costly, often originating from computational simulations or lab experiments. In the scientific domain, the balance between data and inductive bias is crucial due to the need for prior knowledge. Machine learning in scientific applications is particularly fascinating and rich in creativity, requiring a delicate blend of data-driven insights and inductive biases rooted in fundamental mathematics.

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