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Python With Machine Learning Course

What will I learn?

Fungua amaanyi ga Python ne machine learning ku course yaffe eno enjjuvu etungiddwa butereevu eri abakozi abakugu mu tekinologiya. Yingira mu feature engineering, okumanya obulungi scaling, normalization, n'engeri y'okukwatamu categorical variables. Ongera ku bukugu bwo n'enkola z'okutereeza models nga random search ne hyperparameter tuning. Zuula ebifo data we ziva okuva ku UCI ne Kaggle, era ofune obukugu mu algorithms nga random forests ne decision trees. Yimusa obukugu bwo n'okutendekebwa okukola ddala, okwa quality eya waggulu okuteekeddwa okukozesebwa mu bulamu obwa bulijjo.

Apoia's Unique Features

Online and lifetime access to courses
Certificate aligned with educational standards
PDF summaries for easy printing
Online support available at all times
Select and arrange the chapters you want to study
Set your own course workload
Instant feedback on practical activities
Study at your convenience, no internet required

Develop skills

Strengthen the development of the practical skills listed below

Manya bulungi feature engineering: Scale, normalize, era okole features ezisinziira ku budde.

Tereeza models: Yiga hyperparameter tuning ne grid search techniques.

Zuula data we ziva obulungi: Kozesa UCI ne Kaggle okufuna datasets ezikwatagana.

Teekateeka algorithms: Noonyereza ku Random Forests, Decision Trees, ne Linear Regression.

Pima models: Kozesa MAE, RMSE, n'okugabanya data okwekenneenya engeri gye bikola.

Suggested summary

Workload: between 4 and 360 hours

Before starting, you can change the chapters and the workload.

  • Choose which chapter to start with
  • Add or remove chapters
  • Increase or decrease the course workload

Examples of chapters you can add

You will be able to generate more chapters like the examples below

This is a free course, focused on personal and professional development. It is not equivalent to a technical, undergraduate, or postgraduate course, but offers practical and relevant knowledge for your professional journey.