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Prognosis is an AI-based Placement and Salary Predictor tool that enables MBA recruits and candidates to gain insight about the possibilities of getting placed and average salary expectancy using factors such as academic details, percentages, and work experience, etc.

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Prognosis Application for Android and Web

About the Application:

Prognosis is an AI-based Placement and Salary Predictor tool that enables MBA recruits and candidates to gain insight about the possibilities of getting placed and average salary expectancy using factors such as academic details, percentages, and work experience, etc.

Steps Involved:

  1. Data Scrapping and Data analysis for finding the dataset and features that are important for prediction.
  2. Machine learning is used for predicting the placement status and salary according to the dataset and the features.
  3. Created an API using Flask that can perform the prediction and hosted it on Heroku.
  4. Created android and web application to make the application easy to use.

Technology Stack

  • Data Analysis and Machine Learning is used for predicting and placement status and salary
  • In Android App Flutter has been used in the front end along with Flask for API
  • In Web App HTML has been used for end along with Flask for backend
  • Heroku Cloud Service has been used to deploy the web app and API.

Features of the application

  • Easy to use: No prior training is required for using the application.
  • Adaptability: The application can be easily modified according to the need of the User.
  • Time Saving: Application can be used to shortlist the students.

For more details

About

Prognosis is an AI-based Placement and Salary Predictor tool that enables MBA recruits and candidates to gain insight about the possibilities of getting placed and average salary expectancy using factors such as academic details, percentages, and work experience, etc.

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