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Hamza Iftikhar

FAST · 2023 · I19-2003
Email
Phone
LinkedIn
GitHub

Academic

Program
BSCS
CGPA
Year
2023
Education
SEECS
Address
DOB

Career

Current role
Target role
Skills
Python, Tensorflow, React, Flower, Ethereum, IPFS, Ganache, Federated Learning, Blockchain, Cryptography

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.
MedGnosis
MedGnosis is a decentralized platform that provides secure and privacy-preserving collaborative medical machine learning using the power of federated learning. The platform offers several features, such as:
• Privacy-Preserving: MedGnosis ensures that client data is always protected using advanced cryptographic techniques.
• Decentralized: The platform uses a peer-to-peer network to distribute the model training process across multiple clients, ensuring that no single entity has control over the model.
• Flexible: MedGnosis is highly customizable, allowing clients to select the type of data they want to contribute and the level of participation they are comfortable with.
• Secure Aggregation: The platform uses a secure aggregation protocol to ensure that the model is trained on aggregated data while preserving the privacy of each client.
We use a technique called Federated Learning to train machine learning models on data from multiple sources without centralizing the data in one place. This preserves the privacy of the data and ensures that it never leaves the client’s device. Additionally, MedGnosis uses a decentralized blockchain-based architecture to ensure that the data is not tampered with and that the model is not maliciously modified

MedGnosis
ABSTRACT
A Decentralized Privacy Preserving Federated Learning System For Medical Biagnosis Using Blockchain
ARCHITECTURE
Supervisor
Dr. Hina Binte Haq
Members
Hamza Khalid - I19-2011
Hamza Iftikhar - I19-2003
Technology Used:
Python, Tensorflow, React, Flower, Ethereum, IPFS, Ganache
Supervisor Name:
Dr. Hina Binte Haq
Group Members:
Hamza Khalid (I19 - 2011)
Hamza Iftikhar (I19 - 2003)

AI enrichment

Hamza Iftikhar is a BSCS graduate who contributed to a decentralized, privacy-preserving federated learning system for medical diagnosis using blockchain technology. The project involved implementing secure aggregation and peer-to-peer model training using Python, TensorFlow, and Ethereum.
Skills (AI)
["Python", "TensorFlow", "React", "Flower", "Ethereum", "IPFS", "Ganache", "Federated Learning", "Blockchain", "Machine Learning"]
Status: ai_done
Provenance
Source file: FAST - School of Computing -Graduate Directory-2023.pdf
From job #14 page 312
Created: 1778169842