BDI Python Code Clinic - More Machine Learning in Python with scikit-learn
BDI Python Code Clinic – 28 July 11am (Microsoft Teams – the link will be provided week commencing 27 July)

More Machine Learning in Python with scikit-learn

To book, click here:

oxford.onlinesurveys.ac.uk/bdi-python-code-clinic-28-july​

Following the success of the previous tutorial on Machine Learning in Python, we organise another session on this topic. We will be covering other aspects of ML this time, so this Code Clinic can be attended as a follow-up from the previous ML Python session, as well as a separate independent session – everyone is welcome to join.

We will continue using scikit-learn Python library (scikit-learn.org).

Last time we went through the simple example of solving a classification problem using ML, while this time we will pay attention to the regression problem.

Additionally, we will learn about the feature selection methods, which allow reducing the overfitting and improving the accuracy of the predictions, and will apply feature selection to our dataset. Then, we will evaluate the performance of different regression algorithms via such metrics as Mean Absolute Error, Mean Squared Error, and R^2.

At the end of the session, we may discuss the differences between supervised and unsupervised learning problems and look deeper at the available algorithms for each type of data.

The following tools will be used in this code clinic:
Python3 – www.python.org

Python SciPy libraries:

scipy

numpy

matplotlib

pandas

sklearn (shorten from scikit-learn)

Irina Chelysheva will be working in Spyder IDE – www.spyder-ide.org, but, please, feel free to use your favourite one
Date: 28 July 2020, 11:00
Venue: Venue to be announced
Speakers: Speaker to be announced
Organising department: Big Data Institute (NDPH)
Organiser: Sarah Laseke (Big Data Institute)
Organiser contact email address: sarah.laseke@ndph.ox.ac.uk
Booking required?: Required
Booking url: https://oxford.onlinesurveys.ac.uk/bdi-python-code-clinic-28-july
Audience: Members of the University only
Editor: Sarah Laseke