Search Results for author: Mohamed Abdelrazek

Found 9 papers, 0 papers with code

Quantifying Manifolds: Do the manifolds learned by Generative Adversarial Networks converge to the real data manifold

no code implementations8 Mar 2024 Anupam Chaudhuri, Anj Simmons, Mohamed Abdelrazek

This paper presents our experiments to quantify the manifolds learned by ML models (in our experiment, we use a GAN model) as they train.

LLMs for Test Input Generation for Semantic Caches

no code implementations16 Jan 2024 Zafaryab Rasool, Scott Barnett, David Willie, Stefanus Kurniawan, Sherwin Balugo, Srikanth Thudumu, Mohamed Abdelrazek

Our novel approach uses the reasoning capabilities of LLMs to 1) adapt queries to the domain, 2) synthesise subtle variations to queries, and 3) evaluate the synthesised test dataset.

Text Generation

ML-On-Rails: Safeguarding Machine Learning Models in Software Systems A Case Study

no code implementations12 Jan 2024 Hala Abdelkader, Mohamed Abdelrazek, Scott Barnett, Jean-Guy Schneider, Priya Rani, Rajesh Vasa

In this paper, we introduce ML-On-Rails, a protocol designed to safeguard ML models, establish a well-defined endpoint interface for different ML tasks, and clear communication between ML providers and ML consumers (software engineers).

Requirements Engineering Framework for Human-centered Artificial Intelligence Software Systems

no code implementations6 Mar 2023 Khlood Ahmad, Mohamed Abdelrazek, Chetan Arora, Arbind Agrahari Baniya, Muneera Bano, John Grundy

[Method] In this paper, we present a new framework developed based on human-centered AI guidelines and a user survey to aid in collecting requirements for human-centered AI-based software.

Deep Learning Methods for Credit Card Fraud Detection

no code implementations7 Dec 2020 Thanh Thi Nguyen, Hammad Tahir, Mohamed Abdelrazek, Ali Babar

This paper presents a thorough study of deep learning methods for the credit card fraud detection problem and compare their performance with various machine learning algorithms on three different financial datasets.

BIG-bench Machine Learning Fraud Detection

Beware the evolving 'intelligent' web service! An integration architecture tactic to guard AI-first components

no code implementations27 May 2020 Alex Cummaudo, Scott Barnett, Rajesh Vasa, John Grundy, Mohamed Abdelrazek

Intelligent services provide the power of AI to developers via simple RESTful API endpoints, abstracting away many complexities of machine learning.

Interpreting Cloud Computer Vision Pain-Points: A Mining Study of Stack Overflow

no code implementations28 Jan 2020 Alex Cummaudo, Rajesh Vasa, Scott Barnett, John Grundy, Mohamed Abdelrazek

The objective of this study is to determine the various pain-points developers face when implementing systems that rely on the most mature of these intelligent services, specifically those that provide computer vision.

Losing Confidence in Quality: Unspoken Evolution of Computer Vision Services

no code implementations18 Jun 2019 Alex Cummaudo, Rajesh Vasa, John Grundy, Mohamed Abdelrazek, Andrew Cain

Multiple vendors now offer this technology as cloud services and developers want to leverage these advances to provide value to end-users.

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