Difference between revisions of "Data Analysis Courses"

From SolidsWiki
Jump to navigation Jump to search
(Created page with "Category:Courses, Training{{Knoppen}} <noinclude><!------------------------------------------------ * READ THIS FIRST * Only edit this page if you can improve the content....")
 
 
Line 1: Line 1:
[[Category:Courses, Training]]{{Knoppen}}
[[Category:Courses, Training]]{{Knoppen}}
<noinclude><!------------------------------------------------ 
[[File:Data Analysis Courses.jpg|thumb|right|Data Analysis Courses]]
* READ THIS FIRST
'''Data Analysis Course''' covers the fundamental theoretical concepts needed to answer the practical questions which quickly arise in real data analysis and is a PhD-level course which prepares students to do research in machine learning. Machine learning, or pattern recognition, or computational statistics, or data mining, is a huge field with thousands of methods and mountains of theoretical ideas - in fact statistics, the mathematics of data analysis, is by far the largest area of mathematics.  
* Only edit this page if you can improve the content.  
 
* Improper use of this page will lead to permanent banning.
This course is aimed at advanced PhD students and post-doctoral researchers who are applying or planning to apply high throughput sequencing technologies and bioinformatics methods in their research. The aim of this course is to familiarise the participants with advanced data analysis methodologies and provide hands-on training on the latest analytical approaches.
* Please do not edit the sponsored link on the top right corner.
* Please start editing this page after the /noinclude 
* -------------------------------------------------></noinclude>
This page is still empty. If you know something about this product, please share your knowledge with others.

Latest revision as of 05:50, 5 February 2013

Data Analysis Courses

Data Analysis Course covers the fundamental theoretical concepts needed to answer the practical questions which quickly arise in real data analysis and is a PhD-level course which prepares students to do research in machine learning. Machine learning, or pattern recognition, or computational statistics, or data mining, is a huge field with thousands of methods and mountains of theoretical ideas - in fact statistics, the mathematics of data analysis, is by far the largest area of mathematics.

This course is aimed at advanced PhD students and post-doctoral researchers who are applying or planning to apply high throughput sequencing technologies and bioinformatics methods in their research. The aim of this course is to familiarise the participants with advanced data analysis methodologies and provide hands-on training on the latest analytical approaches.