Abstract:
The combination of cloud computing and artificial intelligence (AI) offers a potent remedy for disaster
management and response systems in this age of quickly advancing technology. Using text and image data gathered
from social media sites, this project, makes use of the collective intelligence present in the data. We carefully trained a
bidirectional LSTM model for textual analysis and a Convolutional Neural Network (CNN) model for image
classification using Kaggle datasets.
Our system's fundamental component is an API that is installed on an Amazon Web Services (AWS) EC2 instance. To
improve performance and stability, the API is strengthened with load balancing, auto-scaling features, and multi-AZ
redundancy. The API easily integrates with the trained models to determine whether the content is relevant to a
disaster scenario when it receives input data. When a positive classification is made from the processed text or image,
an alert mechanism sends out an email notification with important information about the disaster that was
discovered. The abundance of user-generated content available on social media sites like Facebook, Instagram, and
Twitter presents a special chance to improve the efficacy and efficiency of disaster relief operations. The main
objective of this project is to use cutting-edge technologies to sort through massive amounts of social media data and
derive useful insights in emergency situations.