I'm formerly an auditor and have since pursued my budding interest in the value and wonders of Data and Machine Learning. I am currently a Data Science Immersive Course Student at General Assembly (GA) and enjoy practising and applying knowledge I've learnt through projects and collaborating with my teammates. Python is my first language and I enjoy writing in Markdown!
- Statistics
- Exploratory Data Analysis and Data Visualisations
- Regression Models (Linear Regression, Multivariate Regression)
- Classification Models (Logstic Regression, Naive Bayes, Decision Tree, Random Forest, Support Vector)
- Feature Engineering
- Webscraping (JSON API, Reddit API)
- Dealing with imbalanced classes (Random Oversampling, Synthetic Minority Oversampling Technique (SMOTE), Adaptic Synthetic (ADAYSN))
- Natural Language Processing
- Solar Energy Potential Prediction
- Credit Card Fraud Detection
- Pricing Products (for profit maximization)
- Reddit API and Classification
- Predicting House Prices (Ames)
- SAT and ACT Analysis
- I have at least 2 cups/thermos with me when I work as coffee keeps my brain alert while tea prevents my brain from going on overdrive. I always have plain water with me as coffee is dehydrating and tea is a diuretic.
- When I'm not coding, I am watching Netflix πΊ, reading π, learning chess or I'm out and about (I love nature walks πΏ and hikes!)
- my GA experience!