Black
Skills for certificate:
Python
Linting
Black
This is the page displaying all the material related to Black. This can include projects, blogs, certificates, university modules and work experience along with sub-skills.
Material
Flask Forum Backend
This is a custom backend for the first iteration of the discussion platform. This was created to learn how to create a custom backend using Python and Flask.
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
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
Practicing various Machine Learning algorithms and techniques. This includes supervised, unsupervised, and reinforcement learning algorithms, as well as feature engineering, data preprocessing, and hyperparameter tuning. Some additional content in the field of Deep Learning and Neural Networks are also covered.
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
Be able to implement machine-learning algorithms, using the Nearest Neighbours algorithm as an example. Have an understanding of ways to apply the ideas and algorithms of machine learning in science and technology.
Machine Learning Assignment 2
Be able to use and implement machine-learning algorithms, with the Lasso and inductive conformal prediction algorithms as examples. Have an understanding of ways to apply the ideas and algorithms of machine learning in industry and medicine.
Machine Learning Assignment 3
Be able to use and implement machine-learning algorithms, with the SVM, neural networks, and cross-conformal prediction algorithms as examples. Have an understanding of ways to apply the ideas and algorithms of machine learning in industry.
Machine Learning Lab Questions
Implemented various machine learning algorithms and techniques learned during the course, such as Nearest Neighbours, conformal prediction, linear regression, Ridge Regression, Lasso, data preprocessing, parameter selection, kernels, neural networks, support vector machines, scikit-learn pipelines, and cross-conformal predictors.
Searching & Sorting Algorithms
Jupyter Notebook containing various searching and sorting algorithms. Each algorithms is explained. All the algorithms are also compared to each other.
Osmos Game
This is a simple game created using SimpleGUI for a group project in my first year of university. The physics of the game were done manually using vector theory and physics concepts. This required us to rely on the documentation as there was no tutorials or guides on how to use the library.