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An app to analyse the mood of the user from different social media platforms like Facebook, Twitter, YouTube etc.

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IBM_Mood_Analysis

An app to analyse the mood of the user form different social media platforms like Facebook, Twitter, YouTube etc.

Team Name - HelpYa

Problem Statement - Help me with my mood.

Team Members and their Roles:

1)Nikhil Kolte - Android Development 2)Abhishek Kulkarni - Data Analysis Module 3)Pranav Kajgaonkar - Data Analysis Module 4)Pratul Trivedi - Database Module

Data is extracted from different social media sites like twitter, facebook, youtube etc.

That data is analysed and a prominent emotion of the user for the certain day is detected.

According to the detected emotion, the suggestions are given to the user.

User can see the detailed analysis of his emotional behaviour throught his usage.

Can be helpful in detecting unstable mindset and take precautions beforehand.

Unique value proposition:

Real-Time analysis of user's emotional behaviour Daily insights on user's emotional analysis to help user understand his emotional behaviour and improve on it. Detailed statistical of user's social media activities. If worst case emotion pattern identified,then active helping measures are implemented.

#APK link: https://drive.google.com/open?id=1DzZdXn_mjaLVwZPAtXGT6yl2aRBGF9fo

#Use these login credentials: Username: nikminerx2 Password: moodyapp

**Important- Please go through application's working video first Video link- https://tinyurl.com/MoodAnalyser

Thanks!

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An app to analyse the mood of the user from different social media platforms like Facebook, Twitter, YouTube etc.

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