Welcome ๐๐ป to my GitHub profile! Iโm Shriram Vibhute, a passionate Machine Learning Engineer based in Pune, Maharashtra. With a strong background in programming and a keen interest in solving real-world problems through data, I love exploring new technologies and enhancing my skills. Feel free to connect with me or explore my projects below!
- Programming Languages and Tools: Python ๐ | SQL (MySQL) ๐พ | Git ๐ ๏ธ | GitHub ๐งโ๐ป
- Libraries & Frameworks: Scikit-learn ๐ค | TensorFlow ๐ | Keras ๐ | Pandas ๐ | Numpy ๐ข | Matplotlib ๐ | Beautiful Soup ๐ฒ
- Data Science Tools: Data Collection ๐ฅ | Data Preprocessing ๐ง | Data Visualization ๐ | Data Wrangling ๐ค
- Machine Learning: Linear & Logistic Regression ๐ | KNN ๐ | Decision Tree ๐ณ | Random Forest ๐ฒ | SVM ๐งฉ | K Means ๐งช | Gradient Boosting & XGBoosting ๐
- Mathematics: Statistics ๐ | Probability ๐ฒ
- Libraries & Frameworks: NumPy | Pandas | Scikit-Learn | NLTK | Streamlit
- Developed a content-based movie recommender system with a dataset of 5,000 movies ๐ฅ.
- Conducted data preprocessing and feature engineering, utilizing โBag of Wordsโ and โCosine Similarityโ ๐.
- Employed NLTK for text normalization, including stemming techniques for tags creation ๐.
- GitHub Repository: Movie Recommendation System
- Libraries & Frameworks: NumPy | Pandas | Scikit-Learn | Matplotlib
- Developed and evaluated multiple models (RandomForestClassifier, SGDClassifier, KNN) for digit classification, achieving an F1-Score of 0.93 ๐.
- Optimized classifiers using precision-recall and ROC curves, achieving 90% precision by adjusting decision thresholds ๐ฏ.
- GitHub Repository: MNIST Digit Classification
- Libraries & Frameworks: NumPy | Pandas | Scikit-Learn | Matplotlib
- Built a comprehensive pipeline for house price prediction, including data visualization, preprocessing, and model evaluation ๐.
- Employed Random Forest modeling with cross-validation and GridSearchCV, achieving 81% accuracy (R2 score) ๐ก.
- GitHub Repository: House Price Prediction
- Libraries & Frameworks: NumPy | Pandas | Seaborn | Plotly | Word Cloud | Streamlit
- Description: Developed a Streamlit app that enables users to upload and analyze WhatsApp chat files, both group and one-on-one. The app provides insightful trends, sentiment analysis, and key highlights, transforming conversations into meaningful data ๐ก.
- GitHub Repository: WhatsApp Chat Analysis
- Libraries & Frameworks: NumPy | Pandas | Plotly | EDA
- Description: Exploratory data analysis (EDA) of gameplay statistics from the popular multiplayer game, Among Us. Originally released in 2018, the game surged in popularity during the summer of 2020, resulting in a wealth of data regarding player performance and game dynamics ๐ก.
- GitHub Repository: Among Us Exploratory Data Analysis
- Email: shriram.vibhute08@gmail.com
- LinkedIn: LinkedIn Profile
- GitHub: GitHub Profile
- Kaggle: Kaggle Profile
- Twitter Twitter Profile
Thanks for visiting my profile! ๐