Hasnae Zerouaoui

Hi, I am Hasnae Zerouaoui, a Post-doctoral researcher at the College of Computing - Mohammed VI Polytechnic University.

I’m a Post-doctoral Researcher aspiring to think deeply, elaborate innovative scientific concepts and teach very well futur data scientists. My expertise includes health analytics, data analytics, artificial intelligence and computer science. I enjoy generating new ideas and devising feasible solutions to broadly relevant problems.

Latest Post

Deep Heterogeneous Convolution Neural Networks Ensembles for Pathological Breast Cancer Diagnosis  (Neurips 2023 - NAMLA 2023)

Deep Heterogeneous Convolution Neural Networks Ensembles for Pathological Breast Cancer Diagnosis (Neurips 2023 - NAMLA 2023)

This study proposes a deep end-to-end heterogeneous ensemble approach (DEHtE) for breast histopathological images classification. The ensemble approach combines two to seven learners among the following popular deep convolutional neural networks: VGG16, VGG19, ResNet50, Inception V3, Inception ResNet V2, Xception, and MobileNet V2. It is based on three selection criteria (by accuracy, by diversity, and by both accuracy and diversity) and two voting methods (majority voting and weighted voting). An experimental evaluation on the popular BreakHis dataset demonstrates a significant increase in performance compared to the learner ResNet50 used as a baseline with an accuracy rising from 78.14%, 78.57%, 82.80% and 79.43% to 93.80%, 93.40%, 93.30%, and 91.80% through the BreakHis dataset’s four magnification factors: 40X, 100X, 200X, and 400X respectively. This study proposes a deep end-to-end heterogeneous ensemble approach (DEHtE) for breast histopathological images classification. The ensemble approach combines two to seven learners among the following popular deep convolutional neural networks: VGG16, VGG19, ResNet50, Inception V3, Inception ResNet V2, Xception, and MobileNet V2. It is based on three selection criteria (by accuracy, by diversity, and by both accuracy and diversity) and two voting methods (majority voting and weighted voting). An experimental evaluation on the popular BreakHis dataset demonstrates a significant increase in performance compared to the learner ResNet50 used as a baseline with an accuracy rising from 78.14%, 78.57%, 82.80% and 79.43% to 93.80%, 93.40%, 93.30%, and 91.80% through the BreakHis dataset’s four magnification factors: 40X, 100X, 200X, and 400X respectively.

  • Poster

Work Experience

Post-Doctoral Researcher  logo

Post-Doctoral Researcher

from Aug 15, 2023 to Present

College of computing - UM6P

Ph.D. Fellow logo

Ph.D. Fellow

from Oct 1, 2022 to Oct 1, 2023

Microsoft Reseach https://www.microsoft.com/en-us/research/academic-program/phd-fellowship/2022-recipients/

One of 36 students selected from around the world from various prestigious universities such as MIT, Stanford, Carnegie Mellon, Pennsylvania, Oxford and more.

Ph.D. Student  logo

Ph.D. Student

from May 1, 2019 to Jul 18, 2023

Mohammed VI Polytechnic University (UM6P)

Ph.D. In Computer Science and Artificial Intelligence

Ph.D. Subject : Deep Ensemble Learning Models For Digital Pathological Breast Cancer Diagnosis

Teaching assistant | Supervisor logo

Teaching assistant | Supervisor

from Jan 1, 2021 to Feb 1, 2023

IST&I

Teaching Assistant | Artificiel Intelligence | Bachelor Data Science

Co-Supervisor | Deep Learning | Final Year Project for Master students

Teaching Assistant | Machine Learning | Executive Master Data Science

Teaching Assistant | Machine Learning | Bachelor and Master Data Science

Co-supervisor | Deep learning | Bachelor and Master students

Teaching Assistant | Bachelor Student

Teaching Assistant | Bachelor Student

Design and Development Engineer | Junior Analyst logo

Design and Development Engineer | Junior Analyst

from Sep 1, 2016 to Jan 1, 2019

CGI

o Handling production incidents.

o Problem analysis and handling.

o Correction of malfunctions

o Handling customer-declared non-conformities.

o Planning and follow-up of exceptional data processing in conjunction with the customer and operations teams.

Final year Project  logo

Final year Project

from Feb 1, 2016 to Aug 31, 2016

Internship subject : As part of a CGI major account client, work in a support team in a Mainframe and Cobol environment as part of the maintenance of a Repository application. Project description: To integrate this customer's Support team, made up of 120 people, including 7 on the specific scope of the Repository. Responsibilities : Reporting to an expert in this application: - Increasing functional and technical competence on this application - Correction of malfunctions - Capitalization to optimize skills management - Management of service request changes. - Management and resolution of typical anomalies Incidents.

Internship | Development of a mobile application logo

Internship | Development of a mobile application

from Jul 1, 2015 to Sep 15, 2015

Tek Inside

-Back-office and front-office development of the mobile application.

-Link with REST Web service.

-Design and execution of unit tests, functional tests and integration tests.

Internship | Application e-mail management  logo

Internship | Application e-mail management

from Jul 1, 2014 to Aug 31, 2014

4D

Development of a web application to distribute emails to a company's customers

Adaptation of the application to a mobile version.

Internship - Employee management application  logo

Internship - Employee management application

from Jun 1, 2014 to Jun 30, 2014

CNSS

Design, modeling and development of an employee management application.

Automated a leave management application | added macro in VB.