Machine Learning with Python Training in South Africa

  • Learn via: Classroom / Virtual Classroom / Online
  • Duration: 2 Days
  • Price: Please contact for booking options
We can host this training at your preferred location. Contact us!

Python (along with R) has become the dominant language in machine learning and data science. It is now commonly used to fit complex models to messy datasets. This two-day intensive course will equip you with the knowledge and tools to undertake a variety of tasks in a standard machine learning analytics pipeline. We stress the importance of data preparation, both in terms of data standardisation and feature selection, before tackling model building. The course covers regression and classification models, including, tree-based methods, clustering and sparse regression models. Model selection is introduced using cross-validation and bootstrapping.


It is expected that participants are comfortable using the Python programming language and common data structures. Some exposure to common statistical terms would be an advantage, but not essential Attendance of the Introduction to Python course or equivalent experience should be sufficient.


  • How to build and quantitatively assess a variety of models suitable for a range of problems
  • The importance of data preprocessing and regularisation
  • Confident compare the efficacy of their models using a rigorous training and testing framework
  • How various types of models operate
  • Some modern, state of the art machine learning techniques

Introducing Machine Learning (ML)

An introduction to machine learning and the associated packages in Python, such as Numpy, Scipy, andSciKit-Learn.


Data Reprocessing

Learn the why and how about preprocessing your data with scaling transformations and one hot encoding. We cover typical standardisation and normalisation procedures.


Introduction to Modelling

Introductory modelling techniques such as linear regression and how we move from a statistical model to a machine learning model.


Model Assessment

Quantify the effectiveness of your models using training, validation and test sets plus techniques such as cross-validation. We discuss the different metrics that can be used to judge a model and which are appropriate


Regularisation

Techniques to avoid overfitting and to perform feature selection, such as lasso, ridge and elastic net regression.


Clustering

An unsupervised learning technique for uncovering patterns and structure within data.

 

Advanced Techniques

Some more advanced model fitting using algorithms such as gradient boosted trees and support vector machines.



Contact us for more detail about our trainings and for all other enquiries!

Upcoming Trainings

Join our public courses in our South Africa facilities. Private class trainings will be organized at the location of your preference, according to your schedule.

01 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
04 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
05 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
18 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
01 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
04 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
05 January 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
02 February 2025 (2 Days)
Cape Town, Durban, Johannesburg
Classroom / Virtual Classroom
Machine Learning with Python Training Course in South Africa

Formerly known as Union of South Africa, now officially known as Republic of South Africa is the Southernmost country in Africa. South Africa's population is over 60 million people, which makes the country the world's 23rd-most populous nation. South Africa has three capital cities: executive Pretoria, judicial Bloemfontein and legislative Cape Town, while the largest city is Johannesburg. The official languages of South Africa are Afrikaans, English, Ndebele, Pedi, Sotho, Swati, Tsonga, Tswana, Venda, Xhosa and Zulu.

South Africa can be rainy from November to February, so the best time to visit South Africa is from May to September. Despite the rainy season South Africa is a year-round destination, with varying regional climates. Blyde River Canyon, Durban, Drakensberg, Kruger National Park and of course, Cape Town are the tourist attractions of the country.

Expand your IT knowledge with our comprehensive range of courses, including programming, software development, business skills, data science, cybersecurity, cloud computing and virtualization. Our skilled instructors will facilitate hands-on training and share practical insights, all conveniently conducted at your preferred location within South Africa.
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