Skip to content
forked from ineelshah/SRIJAS

Smart-Resume-Interpreter-And-Job-Alert-System is an application that makes your job search easy and less frustrating. With SRIJAS, you can upload your resume and job which you want to search for. The application will browse Linkedin and Glassdoor websites to search for the jobs. The links of the jobs that matches with the skills in your resume, …

License

Notifications You must be signed in to change notification settings

hvudeshi/SRIJAS

 
 

Repository files navigation

SRIJAS_LOGO

License: MIT Github GitHub issues Github closes issues Github pull requests Github closed pull requests DOI Build Status codecov GitHub release (latest by date including pre-releases) github workflow github workflow github workflow github workflow github workflow github workflow GitHub code size in bytes Lines of code GitHub contributors

SRIJAS_DEMO.mp4

🚀 Phase-2 Working Demo

SRIJAS

S.R.I.J.A.S.

Job Search was never this easy

Smart-Resume-Interpreter-And-Job-Alert-System is an application that makes your job search easy and less frustrating. With SRIJAS, you can upload your resume and job which you want to search for. The application will browse Linkedin and Glassdoor websites to search for the jobs. The links of the jobs that matches with the skills in your resume, will be sent to you via email.

This is our submission for the Project for Software Engineering CSC 510 Fall 2021.

Overview

1.This is the main SRIJAS web page

2.User have to upload their resume file and enter the details

3.The application matches the job postings with the skills and send email to the user.

Plan Of Action:

Phase 1:

  • Designing the infrastructure for hosting the web application, database and other required services.
  • Taking Resume, User Email and other basic User Details from the User using a portal.
  • Design Database to support all phases of development.
  • Scraping data from job posting websites like LinkedIn.
  • Developing an Email or Notification Service.
  • Extract knowledge from scraped data.
  • Match user skillsets with the skillsets extracted from scraped data.

Phase 2:

  • Take more advanced filters from the user.
  • Allow users to choose the threshold of matching of Skills.
  • Integrate the basic portal with a login service.
  • Create a system that stores user profiles and can generate insights from it.
  • Allow users to select previously uploaded resumes.
  • Added UI to display user skills.
  • Added confirmation page when user submitted their details and redirects to home.php.
  • Created proper structure for mail alerts that includes job information, its location, type, skills.

Phase 3:

  • Develop a dashboard.
  • Summarize and generate a graph about how the user's resume has progressed.
  • Allow users to generate insights from how the uploaded resume compares with job descriptions in the market.
  • Generate insights from all collected data.

Report Bug or Request a feature

Report Bug · Request Feature

🔱: Installation

  1. Clone the Github repository to a desired location on your computer. You will need git to be preinstalled on your machine. Once the repository is cloned, you will then cd into the local repository.
git clone https://github.com/hvudeshi/SRIJAS.git
cd SRIJAS
  1. This project uses Python 3, so make sure that Python and Pip are preinstalled. All requirements of the project are listed in the requirements.txt file. Use pip to install all of those.
pip install -r requirements.txt

Contributors (Phase-2)


Het Patel

Hardik Udeshi


Saloni Mahatma


Kalgee Kotak


Vineet Chheda

About

Smart-Resume-Interpreter-And-Job-Alert-System is an application that makes your job search easy and less frustrating. With SRIJAS, you can upload your resume and job which you want to search for. The application will browse Linkedin and Glassdoor websites to search for the jobs. The links of the jobs that matches with the skills in your resume, …

Resources

License

Code of conduct

Stars

Watchers

Forks

Packages

No packages published

Languages

  • Python 40.3%
  • PHP 33.2%
  • HCL 20.7%
  • HTML 4.2%
  • Shell 1.6%