Saad Jafar
FAST
· 2023
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19I-1691
Email
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Phone
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LinkedIn
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GitHub
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Academic
Program
BSCS
CGPA
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Year
2023
Education
SEECS
Address
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DOB
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Career
Current role
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Target role
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Skills
Python, PyTorch, Flutter, MongoDB, Firebase, BeautifulSoup, Selenium
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.
DressEZ A cross-platform mobile app made in Flutter, that utilizes the power of deep learning to recommend clothes to its customers. It uses the deep learning model ResNet50, transfer learned for multi-label classification, to generate embeddings for images of clothes. The customer uses the app to take a picture of one of their clothes, and the model generates an embedding for the image. The app calculates the cosine similarity of this embedding with the embeddings of the clothes in its database. The most similar looking clothes along with the links to where the customer can buy them are returned as the recommendations. The clothes in the app's database are scrapped from local online stores. App Features: • A user can take pictures of their clothes from within the app. The pictures of clothes taken by a user are stored online in a Firebase database. • The camera screen in the app has an overlay of a t-shirt or of a pair of pants that help guide the user in taking a picture. • A user can select one of their images from within to app to generate recommendations. The recommendations are generated and displayed to the user. DressEZ AN APP THAT ACTS AS A PERSONAL STYLIST FOR ITS USER SUPERVISOR: DR. FAISAL CHEEMA TEAM: ALI MURTAZA 19I-1665 TALHA ALI 19I-1681 SAAD JAFAR 19I-1691 OBJECTIVES RECOMMENDS WHAT CLOTHES TO BUY AND FROM WHERE, AND ALSO SUGGESTS WHAT COMBINATION OF CLOTHES TO WEAR FOR EACH DAY ARCHITECTURE PICTURES OF CLOTHES -> MOBILE APP -> RECOMMENDATION MODEL -> RECOMMENDED ITEMS / LINK TO ITEMS TOOLS python Selenium BeautifulSoup Flutter PyTorch TIMELINE SEP: COLLECTING AND MANUALLY CLEANING DATA FROM AVAILABLE DATASETS OCT: PREPROCESSING DATA AND TRAINING THE NEURAL NETWORK MODEL NOV-DEC: CREATING A FRONTEND IN THE FORM OF A MOBILE APPLICATION JAN-FEB: CREATING A DATABASE OF CLOTHES FROM WEB SCRAPING FROM LOCAL ONLINE STORES MAR: INTEGRATING THE MODEL AND THE DATABASE INTO MOBILE APPLICATION APR: OPTIMIZING PERFORMANCE AND DEPLOYING MODEL ON A SERVER Technology Used: Python, PyTorch, Flutter, MongoDB, Firebase, BeautifulSoup, Selenium Supervisor Name: Dr. Faisal Cheema Group Members: Ali Murtaza (19I-1665) Talha Ali Khan (19I-1681) Saad Jafar (19I-1691)
AI enrichment
Saad Jafar is a BSCS graduate who developed DressEZ, a cross-platform Flutter mobile application for clothing recommendations. The project integrates a PyTorch-based ResNet50 deep learning model with web scraping and Firebase to provide personalized style suggestions.
Skills (AI)
["Flutter", "Python", "PyTorch", "Deep Learning", "ResNet50", "Firebase", "MongoDB", "Web Scraping", "Selenium", "BeautifulSoup", "Computer Vision"]
Status: ai_done
Provenance
Source file: FAST - School of Computing -Graduate Directory-2023.pdfFrom job #14 page 499
Created: 1778169248