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[Project Addition]: End to End Email Spam Classifier #626
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Our team will soon review your PR. Thanks @codewithpiyushh :) |
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- Project folder name should be same as the issue name with no hyphens.
- Create a README file inside the Web App folder and follow the template. Add a demonstration video of the working of the web app and add that inside the README of the web app.
- Follow the README template and update the README of the Models folder accordingly. Here is the template, https://github.com/abhisheks008/ML-Crate/blob/main/.github/readme_template.md
- For your reference, follow this project's structure Brain Tumor Detection. Look at the files pushed in the project and update the same in your project folder too.
Need these changes @codewithpiyushh
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Approved @codewithpiyushh
Hi @codewithpiyushh please share your email address for further communications. |
my email is piyushhhsinghh@gmail.com |
Pull Request for ML-Crate 💡
Issue Title: End to End Email spam classifier
Closes: #614 #issue number that will be closed through this PR
Describe the add-ons or changes you've made 📃
machine learning model that classifies emails as spam or not spam. It leverages Python and popular libraries like scikit-learn to train and evaluate various classification algorithms. The model aims to identify spam emails with high accuracy, protecting users from unwanted content.
Type of change ☑️
What sort of change have you made:
How Has This Been Tested? ⚙️
Describe how it has been tested
Describe how have you verified the changes made
Checklist: ☑️