Scikit Learn

Skills for certificate:

Python

Machine Learning

Data Science

Continuous Integration

Hyperparameters

Boosting

Neural Networks

Scikit Learn

This is the page displaying all the material related to Scikit Learn. This can include projects, blogs, certificates, university modules and work experience along with sub-skills.

Material

Adult Income Prediction cover image

Adult Income Prediction

A project comparing various classification algorithms to predict whether an adult earns more than $50,000 a year. Emphasis is on feature engineering, data preprocessing with One-Hot Encoding, and model optimization through hyperparameter tuning.

House Price Prediction cover image

House Price Prediction

A project comparing various regression algorithms to predict house prices in relation to the distance from the coast. Emphasis is on feature engineering, data preprocessing with One-Hot Encoding, and model optimization through hyperparameter tuning.

Machine Learning Algorithms & Techniques Lab cover image

Machine Learning Algorithms & Techniques Lab

Practicing various algorithms and techniques. This includes supervised, unsupervised, and reinforcement learning algorithms, as well as feature engineering, data preprocessing, and hyperparameter tuning.

Reinforcement Learning Lab cover image

Reinforcement Learning Lab

Practicing various Reinforcement Learning algorithms and techniques. This includes Q-Learning, Deep Q-Learning, and Asynchronous Advantage Actor-Critic (A3C) algorithms.

Machine Learning Assignment 1 cover image

Machine Learning Assignment 1

Be able to implement algorithms from scratch such as the Nearest Neighbours algorithm. Requires an understanding of the Mathematics behind the algorithms and the ability to implement them.

Machine Learning Assignment 2 cover image

Machine Learning Assignment 2

Be able to use and implement algorithms, with the Lasso and inductive conformal prediction algorithms as examples.

Machine Learning Assignment 3 cover image

Machine Learning Assignment 3

Be able to use and implement algorithms, with the SVM, neural networks, and cross-conformal prediction algorithms as examples.

Machine Learning Lab Questions cover image

Machine Learning Lab Questions

Implemented various algorithms and techniques learnt during the course, such as Nearest Neighbours, Conformal Prediction, Regression algorithms, data preprocessing, kernels, Neural Networks, SVMs, etc.

Machine Learning & Data Science Lab cover image

Machine Learning & Data Science Lab

This lab mainly focuses on learning generative models, using third-party models and using advanced techniques. This includes techniques such as transfer learning, LLM Agents, and Generative Models.

Related Skills