Comprehensive Air Quality Data Analysis Using Python & ARIMAComprehensive Air Quality Data Analysis Using Python & ARIMA
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Developed a large-scale statistical and data analysis project focused on air quality trends across major cities in Pakistan using Python and advanced analytical techniques.
The project involved analyzing 21,000+ environmental records to identify pollution patterns, seasonal variations, and relationships between different pollutants. Multiple statistical methods and forecasting models were applied to better understand air quality behavior and generate meaningful insights from real-world environmental data.
Key tasks included: • Data cleaning and preprocessing • Exploratory Data Analysis (EDA) • Correlation analysis and visualization • Hypothesis testing and ANOVA • Regression modeling • ARIMA forecasting and trend analysis • Statistical reporting and visualization
Tools & Technologies: Python, pandas, matplotlib, seaborn, statsmodels, scikit-learn
The project also included publication-style visualizations, analytical reporting, and interpretation of statistical findings to make the results more understandable and actionable.
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