{"id":27399723,"url":"https://github.com/malisha4065/flightdelaypredictiongroup99","last_synced_at":"2026-05-09T14:08:46.281Z","repository":{"id":230085422,"uuid":"743648978","full_name":"Malisha4065/FlightDelayPredictionGroup99","owner":"Malisha4065","description":"This project focuses on predicting flight delays in the United States domestic air traffic system over 500 000+ data using machine learning techniques. 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Leveraging a dataset from the Bureau of Transportation Statistics for the year 2020, we aim to develop a predictive model that can anticipate flight delays with  with (SVM 93.10% and KNN 87.86%)  high accuracy.\n- Data Set - https://www.kaggle.com/datasets/divyansh22/february-flight-delay-prediction\n\n## Usage\n\n1. Clone the repository:\n`https://github.com/Malisha4065/FlightDelayPredictionGroup99.git`\n\n2. Install dependencies:\n\n3. Explore the notebooks in the `notebooks` directory to understand the data preprocessing, model training, and evaluation process.\n\n4. Run the source code files in the `src` directory to train the machine learning model and make predictions.\n\n## Results\n\n- Our preliminary results indicate promising performance in predicting flight delays using the selected machine learning model.\n\n### Using KNN\n![KNN_results](./images/KNNConfutionMatrtix.png) \n\n- Accuracy: 0.8786\n- Precision: 0.5671\n- Recall: 0.7827\n- F1 Score: 0.6577\n\n### Using SVM\n![SVM_Results](./images/SVMConfusionMatrix.png)\n\n- Accuracy: 0.9310\n- Precision: 0.7782\n- Recall: 0.7510\n- F1 Score: 0.7644\n\n\n\n### Comparison between Models\n![Comparison](./images/comparison.png)\n\n- For detailed analysis and visualizations, refer to the notebook and results directory.\n\n## Contributing\n\nContributions to this project are welcome! Feel free to fork the repository, make improvements, and submit pull requests.\n\n\n## Authors\n\n- Dushmin Malisha\n- Sahan Lelwala \n","project_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Fmalisha4065%2Fflightdelaypredictiongroup99","html_url":"https://awesome.ecosyste.ms/projects/github.com%2Fmalisha4065%2Fflightdelaypredictiongroup99","lists_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2Fmalisha4065%2Fflightdelaypredictiongroup99/lists"}