Moiz Hassan
FAST
· 2021
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i17-0414
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Academic
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Year
2021
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Career
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Skills
Keras, Tensorflow, Raspberry Pi, HTML 5, CSS3, JavaScript, Machine Learning, 3D UNET CNN
Verbatim text
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Brain Stroke Diagnosis using AI Brain stroke is suffered by 15 million people world-wide causing death and disability to around 10 million people due to lack of timely treatment. Treatment using manual CT scan inspection is a timely process. Our Machine Learning algorithm using 3D UNET CNN deployed on a raspberry Pi and connected with hospital database and website will give the diagnosis and segmentation results in fraction of the time and cost with accuracy. This is a low cost unit which can be implemented in hospitals in Pakistan preventing death and disabilities suffered by Brain Stroke patients. Technology Used: Keras with Tensorflow Backend Raspberry Pi,HTML 5, CSS3, JavaScript Supervisor Name: Dr. Farhan Khalid Group Members: Moiz Hassan (i17-0414) Omair Hassan (i17-0444)
AI enrichment
Moiz Hassan is a student who worked on a brain stroke diagnosis project utilizing a 3D UNET CNN model deployed on a Raspberry Pi. The initiative aimed to provide low-cost, rapid medical imaging analysis for hospitals in Pakistan.
Skills (AI)
["Machine Learning", "Deep Learning", "3D UNET CNN", "Keras", "TensorFlow", "Raspberry Pi", "HTML5", "CSS3", "JavaScript"]
Status: ai_done
Provenance
Source file: Graduate Directory FAST School of Engineering - 2021 (Final) (1).pdfFrom job #21 page 74
Created: 1778141601