What is RMSprop?
Master RMSprop optimization for neural networks. Explore RMSprop, math, applications, and hyperparameters in deep learning.
I have been working as a machine learning engineer and software developer since 2020 and am passionate about the world of data, algorithms and software development. In addition to my work in the field, I teach at several German universities, including the IU International University of Applied Sciences and the Baden-Württemberg Cooperative State University, in the fields of data science, mathematics and business analytics.
My goal is to present complex topics such as statistics and machine learning in a way that makes them not only understandable, but also exciting and tangible. I combine practical experience from industry with sound theoretical foundations to prepare my students in the best possible way for the challenges of the data world.
Master RMSprop optimization for neural networks. Explore RMSprop, math, applications, and hyperparameters in deep learning.
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