THE MATHEMATICS OF MACHINE LEARNING

THE MATHEMATICS OF MACHINE LEARNINGIn the last few months, I have had several people contact me about their enthusiasm for venturing into the world of data science and using Machine Learning (ML) techniques to probe statistical regularities and build impeccable data-driven products. However, I’ve observed that some actually lack the necessary mathematical intuition and framework to get useful results. This is the main reason I decided to write this blog post. Recently, there has been an upsurge in the availability of many easy-to-use machine and deep learning packages such as scikit-learn, Weka, Tensorflow etc. Machine Learning theory is a field that intersects statistical, probabilistic, computer science and algorithmic aspects arising from learning iteratively from data and finding hidden insights which can be used to build intelligent applications. Despite the immense possibilities of Machine and Deep Learning, a thorough mathematical understanding of many of these techniques is necessary for a good grasp of the inner workings of the algorithms and getting good results.
Consultar la fuente de esta información  


Google Facebook LinkedIn VK Tumblr StumbleUpon Reddit Pinterest Print
T: Education ID: 799 I: 9368 P: 68.38 C: 0.0002 F: 9.200
Graphic design N:60  
Chanel N5 N:22  
Prácticas de orden de magnitud. Saber decir y escribir los números. Software  diseñado 
   para correr en Windows

Holywood Chamber  N:66  
Publicidad infolinks

Montblanc N:19  

Contactos

Teléfonos: +58 212 578 1145
Fax: +58 212 576 3892


Error in the consult..Incorrect parameter count in the call to native function 'DATEDIFF'