Data Science
Introduction : Projects focused on data analysis, visualization, and deriving insights without heavy ML models.
Projects :
Project Title : Google Play Store Analysis
Statement : Analyze app ratings, downloads, and user sentiments.
Approach : Cleaned and visualized data using descriptive statistics and sentiment analysis.
Tools : Python (Pandas, Matplotlib), Power BI.
Project Title : Breath Alcohol Test Data Analysis
Statement : Study trends in alcohol-related incidents from 2013–2017.
Approach : Performed time-series analysis and clustering.
Tools : Python, R, Tableau.
Project Title : Medical Diagnosis Prediction (Chatbot)
Statement : Assist in diagnosing conditions using symptom data.
Approach : Built a rule-based system with basic ML for pattern recognition.
Tools : Python, Flask, SQLite.
Project Title : Sales Forecasting for E-commerce
Statement : Predict sales trends using historical data.
Approach : Applied ARIMA and LSTM for time-series forecasting.
Tools : Python, AWS Sagemaker, Excel.
Project Title : LEGO Set Analysis
Statement : Explore LEGO themes, colors, and parts over time.
Approach : Cleaned and visualized datasets using clustering and regression.
Tools : Python, Tableau, Jupyter Notebook.
Project Title : Social Media Sentiment Analysis
Project Statement: Analyze sentiment in social media posts.
Approach: Use NLP to process text data and classify sentiment.
Tools & Technology: Python, NLTK, SpaCy, Matplotlib.
Project Title : Retail Sales Forecasting
Project Statement : Predict future sales for retail businesses.
Approach : Use time-series forecasting models like ARIMA and Prophet.
Tools & Technology : Python, Pandas, Prophet, Matplotlib.