{"id":19589808,"url":"https://github.com/97k/spam-ham-web-app","last_synced_at":"2025-04-27T12:33:09.026Z","repository":{"id":224896666,"uuid":"146644001","full_name":"97k/spam-ham-web-app","owner":"97k","description":"A web app that classifies text as a spam or ham. I am using my own ML algorithm in the backend, Code to that can be found under machine_learning_section. 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I've used Naive-Bayes along with NLP (TF-IDF, Bag of Words and more). \u003cbr\u003e\nIn order to perform an experiment I've combined two datasets (Enron email spam/ham and SMS spam classification) into one to gather more data. [See this notebook](https://github.com/aditya98ak/spam-ham-web-app/blob/master/machine_learning_section/SpamHam.ipynb) to get what I am saying.\n\u003cbr\u003e\nTo check out this project in action I've deployed it on heroku\n[Click on this link to check](https://spamham.herokuapp.com)\n\n\n### Built With\n\n1. Django 2.1\n2. Python 3.6\n3. Scikit-Learn\n4. Numpy\n5. Pandas\n6. Matplotlib\n7. Seaborn\n4. HTML5\n5. CSS\n6. Bootstrap-v4\n7. Love\n\n### Installing/ Things you need to install the Web App and how to set up the project locally?\n\n1. Python3\n2. Pip\n3. Django(2.1)\n4. Conda\n\n#### Steps\n- Make a virtual environment using \"conda create -n envname python=3.6 pip\"\n- source activate envname (for mac/linux) | activate envname (for windows)\n- Download or clone this repo by [git clone https://github.com/aditya98ak/spam-ham-web-app.git](https://github.com/aditya98ak/spam-ham-web-app.git)\n- pip install -r requirements.txt\n- Run the app using python manage.py runserver\n\n### Milestones for version 2\n- Implement login and tailor experience for each user\n- Collect the result reported by user for false classification of messages/email\n- Model will self-learn from the reported data\n\nMade with :heart: by\n**Aditya Kaushik**  - [linkedin.com/adityakaushik001](https://www.linkedin.com/in/adityakaushik01/)\n\n","project_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2F97k%2Fspam-ham-web-app","html_url":"https://awesome.ecosyste.ms/projects/github.com%2F97k%2Fspam-ham-web-app","lists_url":"https://awesome.ecosyste.ms/api/v1/projects/github.com%2F97k%2Fspam-ham-web-app/lists"}