Lecturer | Computer Science
Passionate about inspiring the next generation of tech leaders. Research interests include artificial intelligence and data science. Published papers on neural networks and natural language processing. Enthusiastic about fostering critical thinking and creativity in students.
I hold a Master’s degree from UKM in the CIAT Department. Additionally, I have obtained the American TOT certificate and the TOT (Training of Trainers) certification from the Counting Center at the University of Baghdad. I serve as a scientific reviewer for the Journal of Al-Qadisiyah in the fields of Computer Science and Mathematics. Furthermore, I have been a member of the examination committee for the past three years. Lastly, I have taken on the role of being responsible for the Ibn Sina e-learning unit for a duration of two years.
Organized and led various preparatory committees for workshops, seminars, examination boards, and student activities.
Received many certificates of participation for actively engaging in seminars, workshops, and courses. Received letters of thanks and appreciation from esteemed individuals, including the prime minister, the university president, and the college dean.
AI,NLP,ML,DL
IT
Computational Theory ,Principles Of Computer Science And Operating System Practical Part
Supervising fourth-stage project students
Abstract— The growing use of digital technologies across various sectors and daily activities has made handwriting recognition a popular research topic. Despite the continued relevance of handwriting, people still require the conversion of handwritten copies into digital versions that can be stored and shared digitally. Handwriting recognition involves the computer's strength to identify and understand legible handwriting input data from various sources, including document, photo-graphs and others. Handwriting recognition pose a complexity challenge due to the diversity in handwriting styles among different individuals especially in real time applications. In this paper, an automatic system was designed to handwriting recognition
... Show MoreResearchers are increasingly using multimodal biometrics to strengthen the security of biometric applications. In this study, a strong multimodal human identification model was developed to address the growing problem of spoofing attacks in biometric security systems. Through the use of metaheuristic optimization methods, such as the Genetic Algorithm(GA), Ant Colony Optimization(ACO), and Particle Swarm Optimization (PSO) for feature selection, this unique model incorporates three biometric modalities: face, iris, and fingerprint. Image pre-processing, feature extraction, critical image feature selection, and multibiometric recognition are the four main steps in the workflow of the system. To determine its performance, the model wa
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