nv2105/MovieIQ-Predictive-Analytics-on-Film-Success
MovieIQ is a Streamlit-based interactive dashboard that predicts movie success using data-driven insights. It combines data cleaning, visualization, statistical tests, and a Random Forest model to analyze how factors like budget, genre, and ratings influence box office performance.
This tool helps film producers, marketers, and studio executives understand the factors that drive a movie's box office success. You input movie details like budget, genre, and audience ratings, and it predicts whether the film is likely to generate more revenue than its budget. It also provides visual insights into trends and statistical evidence for key performance indicators.
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Use this if you need to quickly assess a film project's potential for financial success based on various attributes and gain insights into market trends.
Not ideal if you require hyper-specific, granular financial forecasting or advanced economic modeling beyond predicting profitability.
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12
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Language
Python
License
MIT
Category
Last pushed
Jul 16, 2025
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