Faaira Ahmed
FAST
· 2022
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I18-0423
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Academic
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Year
2022
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Career
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Skills
DLTS, Python, ReactJS, Colab, Flask, Firebase, Google Maps Api, Deep Learning, MFCCs, Delta MFCCs
Verbatim text
The exact text the LLM saw on the page (or the booklet text from the old import).
This is what powers semantic search.
Covitector Covitector is a first ever non-invasive, rapid, free of cost platform to detect Covid through the input of a forced cough sound. Cough Sound is the only single feature that every Covid Positive or Covid Negative patient can experience, where other symptoms like loss of taste or loss of smell is not experienced by all patients. Covitector uses a mix of Deep Learning Techniques to produce some of the very complex models to understand the inter-connectivity and correlation of features from MFCCs and Delta MFCCs, to form a complex algorithm to diagnose people. There were 6 models trained and tested on different data samples that are openly available, conjuring a total of 98.4% on CoughVid and 100% on Coswara and Virufy-Covid Datasets. A ReactJs application backed by Flask, Google Firebase is built to aid people with a web application, where they can record, upload, check daily statistics of Covid Cases across the globe; google-maps- api integrated with the web app helps customers get live update of Covid-positive cases in their vicinity. Features include: - Recording their Audio Sounds - Uploading pre-recorded Audio Sounds. -Applying Silence Removal - Applying Cough Detection Algorithm - Computing MFCCs and Delta MFCCs - Majority Voting on the cough sound and notifying the results. - Data Scraping from worldometers website for Daily Statistics - Integration of google-maps-api to produce live update of covid positive cases in vicinity Technology Used: DLTS, Python, ReactJS, Colab, Flask, Firebase, Google Maps Api Supervisor Name: Mr. Umair Arshad Co-Supervisor Name: Mr Salman Ijaz (PhD Researcher at NTNU, Norway) Group Members: Omer Ihtizaz (I18-0404) Faaira Ahmed (I18-0423)
AI enrichment
Faaira Ahmed contributed to Covitector, a non-invasive COVID-19 detection platform utilizing deep learning models on cough sound data. The project involved developing a React and Flask web application with Firebase integration for audio processing and global case statistics.
Skills (AI)
["Deep Learning", "Python", "ReactJS", "Flask", "Firebase", "Google Maps API", "MFCC Analysis", "Data Scraping", "Audio Processing"]
Status: ai_done
Provenance
Source file: Graduate Directory FAST School of Computing 2022 Final Version (07-06-2022).pdfFrom job #25 page 223
Created: 1778149999