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Add ATS-SCORE-RECOGNIZER Project to Web Development Section
Description
I would like to propose adding the ATS-SCORE-RECOGNIZER project to the web development section as an intermediate-level project.
Project Overview
The ATS Score Recognizer is a tool designed to automatically extract and recognize scores from various documents, such as resumes and job applications. It leverages advanced optical character recognition (OCR) and machine learning techniques to streamline the recruitment process by providing accurate score extraction.
Technologies Used
Python: The core language used for development.
Flask/Django (if applicable): For web framework.
OpenCV/Pytesseract (if applicable): For OCR capabilities.
HTML/CSS/JavaScript: For the frontend interface.
Features
OCR Capabilities: Utilizes state-of-the-art OCR to read text from images and PDFs.
Score Extraction: Efficiently identifies and extracts relevant scores from documents.
User-Friendly Interface: Easy-to-use interface for uploading documents and viewing results.
Multi-Format Support: Works with multiple document formats including PDF, JPEG, and PNG.
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Issue Title
Add ATS-SCORE-RECOGNIZER Project to Web Development Section
Description
I would like to propose adding the ATS-SCORE-RECOGNIZER project to the web development section as an intermediate-level project.
Project Overview
The ATS Score Recognizer is a tool designed to automatically extract and recognize scores from various documents, such as resumes and job applications. It leverages advanced optical character recognition (OCR) and machine learning techniques to streamline the recruitment process by providing accurate score extraction.
Technologies Used
Features
🔍 Priority Level
🏷️ Initiative Participation (Required)
💬 Next Steps:
You can expect a response within [4 days].