Go Back   SEQanswers > Events / Conferences

Similar Threads
Thread Thread Starter Forum Replies Last Post
PostDoc position Bioinformatics / Machine Learning bioinfolux Academic/Non-Profit Jobs 0 12-11-2016 05:25 AM
Research Associate in Machine Learning / Bioinformatics (Luxembourg) bioinfolux Academic/Non-Profit Jobs 0 05-05-2016 05:35 AM
Open areas in Bioinformatics and Machine Learning? hlyates Literature Watch 1 07-20-2015 08:56 AM
RNASeq data-set for machine learning fcarrillo RNA Sequencing 3 12-19-2013 05:42 AM
stanford's machine learning applied in bioinformatics delinquentme Bioinformatics 6 11-23-2011 06:19 AM

Thread Tools
Old 04-10-2019, 05:05 AM   #1
Location: Berlin

Join Date: May 2017
Posts: 44
Default Introduction to Machine Learning - training course in Berlin

Course: "Introduction to Machine Learning"

When: 3rd-7th June 2019

Registration deadline: 4th May 2019

Instructor: Prof. Paolo Frasconi (University of Florence, Italy;


This workshop is aimed to students and researchers aiming to understand the basic principles of machine learning. It will focus on supervised learning, starting with linear models (regression, logistic regression, support vector machines) and will extend to the basic technologies of deep learning and kernel methods for vector data, signals, and structured data. Basic principles of learning theory that are useful to analyze results of practical applications will be also covered. Finally, there will be practical sessions using scikit-learn, TensorFlow, and Keras. After completing the workshop, students should able to understand the most popular learning algorithms, to apply them to solve simple practical problems, and to analyze and interpret the results. All course materials (including copies of presentations, practical exercises, data files, and example scripts prepared by the instructing team) will be provided electronically to participants.

Targeted Audience & Assumed Background

This workshop is aimed at all researchers and technical workers with a background in biology, computer science, mathematics, physics or related disciplines who want to understand and apply supervised machine learning algorithms to practical problems. The syllabus has been planned for people with zero or very basic knowledge of machine learning.

Students are assumed to know calculus, linear algebra, and algorithms and data structures at the undergraduate level. Students should also have sufficient programming skills, and preferably previous knowledge of the Python programming language.

Session content:

For more information about the course, please visit our website:

Here is the full list of our courses and Workshops:

Physalia-courses is offline   Reply With Quote

deep learning, machine learning, python

Thread Tools

Posting Rules
You may not post new threads
You may not post replies
You may not post attachments
You may not edit your posts

BB code is On
Smilies are On
[IMG] code is On
HTML code is Off

All times are GMT -8. The time now is 11:32 AM.

Powered by vBulletin® Version 3.8.9
Copyright ©2000 - 2021, vBulletin Solutions, Inc.
Single Sign On provided by vBSSO