» » » Gaussian Process Regression for Bayesian Machine Learning

 

Gaussian Process Regression for Bayesian Machine Learning

Author: ziuziu on 1-06-2020, 14:43, views: 110

0
Gaussian Process Regression for Bayesian Machine Learning

MP4 | Video: h264, 1280x720 | Audio: AAC, 48 KHz, 2 Ch
Genre: eLearning | Language: English | Duration: 11 lectures (54 mins) | Size: 262 MB
Acquire a powerful probabilistic modelling tool for modern machine learning, with fundamentals and application in Python

What you'll learn
The mathematics behind an algorithm such as the scikit-learn GaussianProcessRegressor algorithm
The benefits of Gaussian process regression
Examples of Gaussian process regression in action
The most important kernels needed for Gaussian process regression
How to apply Gaussian process regression in Python using scikit-learn
Requirements
A basic understanding of linear algebra
Basic experience with coding
Description
Probabilistic modelling, which falls under the Bayesian paradigm, is gaining popularity world-wide. Its powerful capabilities, such as giving a reliable estimation of its own uncertainty, makes Gaussian process regression a must-have skill for any data scientist. Gaussian process regression is especially powerful when applied in the fields of data science, financial analysis, engineering and geostatistics.
This course covers the fundamental mathematical concepts needed by the modern data scientist to confidently apply Gaussian process regression. The course also covers the implementation of Gaussian process regression in Python.
Who this course is for:
Data scientists, engineers and financial analysts looking to up their data analysis game
Anybody interested in probabilistic modelling and Bayesian statistics
Gaussian Process Regression for Bayesian Machine Learning

Download link :
(If you need these, buy and download immediately before they are delete)
Links are Interchangeable - Single Extraction - Premium is support resumable

Category: Tutorial / Other Tutorial

Dear visitor, you are browsing our website as Guest.
We strongly recommend you to register and login to view hidden contents.
 
Themes: