Projets novateurs réalisés

Explorez des milliers de projets réussis issus de la collaboration entre organisations et talents postsecondaires.

30156 projets achevés

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842
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Projets par catégorie

Assessing the Impact of B.C.’s PST on Industrial Investment: A Policy Analysis

This project aims to examine the role of British Columbia’s Provincial Sales Tax (PST) in shaping capital investment decisions within the industrial and advanced manufacturing sectors. Specifically, it will explore how the taxation of machinery and equipment under the PST has evolved over the past 20 years (2004–2024), and how the current tax structure may serve as a barrier to productivity by enhancing investments.
Through a combination of policy review, data analysis, and interprovincial comparison, the project will assess the extent to which B.C.’s PST framework may be discouraging industrial reinvestment. The findings will inform the development of targeted, evidence-based policy recommendations, particularly around potential PST exemptions or reforms, that could incentivize capital investment and improve economic competitiveness.
The final deliverable will be a policy-oriented report for the Greater Vancouver Board of Trade (GVBOT), supporting its Agenda for Growth by offering actionable insights to guide provincial advocacy efforts on tax reform and industrial policy.

Voir la description complète du projet
Superviseur du corps professoral :

Komla Avoumatsodo;Karima Fredj;Karima Fredj

Étudiant :

Partenaire :

Greater Vancouver Board of Trade

Discipline :

Sociology

Secteur :

Other services (except public administration)

Université :

University of Northern British Columbia

Programme :

Business Strategy Internship

Codesigning a stepped care model of mental health supports for Canadian Veterans and their families

This project will engage Veterans, Families and service organisations across Canada to co-design a continuum of care that supports the mental health and substance use health of Veterans and Families. A series of 3-4 engagement sessions will be held with approximately 50 Veterans and families, as well as a 2-3 workshops series with approximately 30 service providers, system leaders and advocates. The process is designed to identify key mental health and substance use services currently available to Veterans and families, as well as opportunities and service needs/gaps. The process will engage key interest holders to co-design recommendations to increase access, flexibility, collaboration and ease of navigation across programs and services. Key findings will shared wtih participating organizations and with the Veteran and family communities.

Voir la description complète du projet
Superviseur du corps professoral :

Sandra Moll

Étudiant :

Partenaire :

Stepped Care Solutions

Discipline :

Life Sciences

Secteur :

Professional, scientific and technical services

Université :

McMaster University

Programme :

Business Strategy Internship

Bridging the Gaps: Identifying Practical and Emotional Needs in Cancer Care

Look Good Feel Better (LGFB) is a national charitable organization dedicated to enhancing the quality of life for people facing cancer. We do this by educating and empowering individuals to manage the appearance-related and psychosocial impacts of cancer and its treatment. Our workshops and resources are designed to help people feel more like themselves again by offering practical, compassionate support for dealing with visible and often distressing side effects—such as hair loss, changes to the skin, and other physical impacts. LGFB programs are offered free of charge, both online and in person, at over 80 hospitals and cancer centres across Canada.

Our programming is grounded in research that shows how psychosocial interventions, like LGFB’s workshops, can reduce depression, improve self-esteem, and enhance quality of life for people with cancer. While our work has focused primarily on the visible side effects of treatment, LGFB also aims to fill broader gaps in supportive care that are not always addressed within the healthcare system.

Despite growing evidence of the benefits of psychosocial support, access remains inequitable and fragmented across Canada. People facing cancer often lack access to low-intensity, universal supports that can prevent more serious mental health issues from emerging. Many report receiving information about physical side effects of treatment, but fewer feel they have adequate support for emotional or practical concerns. This unmet need extends well beyond the active treatment phase into survivorship.

LGFB is seeking to understand which types of supportive care are most needed and valued, and where the biggest gaps lie across the cancer journey. This research represents an innovative shift for LGFB: from solely delivering supportive programs to also contributing to national knowledge about how to best design and deliver psychosocial care for people affected by cancer.

Voir la description complète du projet
Superviseur du corps professoral :

Meredith Rocchi;Sophie Lebel

Étudiant :

Partenaire :

Look Good Feel Better

Discipline :

Sociology

Secteur :

Other services (except public administration)

Université :

University of Ottawa

Programme :

Business Strategy Internship

Web-based Goal Management Training™ in older adults with cognitive impairment: a randomized-controlled trial examining feasibility and efficacy

As the Canadian population is aging, more and more Canadians will show cognitive decline. Aging and certain types of
neurological disorders is often associated with deficits in executive functions: goal maintenance, planning, task
switching and attention. These functions are critical for the maintenance of functional independence. Few validated
rehabilitation approaches for these types of deficits exist. One rehabilitation approach, Goal Management Training™
(GMT), has shown promise. In its standard implementation, GMT is led in small groups. Although this approach is
effective, it has significant practical limitations (limited accessibility and high cost). The goal of the proposed research
is to design an automated, web-based GMT training program that can be delivered remotely, to assess its feasibility in
older adults and patients with deficits in executive functions and to compare its efficacy to an active control group
that would participate in an online activity that we do not expect to improve cognition.

Voir la description complète du projet
Superviseur du corps professoral :

Brian Levine

Étudiant :

Partenaire :

Cogniciti

Discipline :

Sociology

Secteur :

Health and Related Sciences & Technology; Professional, scientific and technical services

Université :

University of Toronto

Programme :

Elevate

Real-Time Machine Learning Integration with MES for Waste Reduction, Quality Control, and Production Optimization in Flexible Packaging at Transcontinental

This project focuses on the real-time integration of machine learning (ML) models with the Manufacturing Execution System (MES) at Transcontinental (TC) to enhance quality control, reduce production waste, and optimize operations in flexible packaging manufacturing. TC’s current MES infrastructure ensures traceability and workflow coordination but lacks predictive analytics capabilities, leading to a reactive approach where quality issues and process inefficiencies are often addressed only after causing significant material loss, downtime, and customer dissatisfaction.

To address this gap, the project introduces a strategic initiative aimed at transforming live production data into actionable insights through ML-driven predictive modeling. The solution will enable early detection of process anomalies, suggest real-time corrective actions, and evolve continuously with new data patterns. Historical and live data from critical processes such as extrusion, printing, and lamination will be leveraged to train, validate, and deploy ML models directly into the MES environment, enhancing decision-making at the operational level. By embedding intelligence into MES workflows, the project aims to minimize scrap rates, improve first-pass yield, reduce energy usage, and increase overall equipment effectiveness (OEE).

Expected outcomes include significant reductions in waste and energy consumption, enhanced process stability, and improved responsiveness on the shop floor. This initiative positions TC at the forefront of Industry 4.0 by integrating AI into core manufacturing operations, supporting long-term innovation, sustainability, and digital transformation in the flexible packaging sector.

Voir la description complète du projet
Superviseur du corps professoral :

Amin Chaabane;Rim Larbi

Étudiant :

Partenaire :

Transcontinental

Discipline :

Engineering

Secteur :

Manufacturing

Université :

École de technologie supérieure

Programme :

Business Strategy Internship

Medventions Atlantic Fall 2025 – General Surgery

The Medventions Atlantic program based on the proven model from Sunnybrook Health Sciences Centre enables high-performing students and recent graduates from diverse academic backgrounds to engage directly with frontline clinical and innovation challenges. The interns are embedded within clinical environments to identify unmet needs, apply early-stage innovation thinking, and co-develop solutions with clinicians, patients, and administrators.

Voir la description complète du projet
Superviseur du corps professoral :

Clifton Johnston

Étudiant :

Partenaire :

Nova Scotia Health

Discipline :

Life Sciences

Secteur :

Health and Related Sciences & Technology; Professional, scientific and technical services; Public administration

Université :

Dalhousie University

Programme :

Business Strategy Internship

Génération de données synthétique en utilisant le concept de confidentialité différentielle et mise en lien avec d’autres mesures de confidentialité

Beneva est une entreprise québécoise à caractère mutualiste, qui offre des produits en assurances et en services financiers. Dans le contexte de la loi 25 adoptée par le gouvernement du Québec pour renforcer la protection des renseignements personnels, en adaptant les règles en matière de confidentialité aux nouvelles réalités numériques, Beneva a été soumise à des obligations accrues en termes de gestion, de collecte et de divulgation des données personnelles. L’une des solutions envisageables pour se conformer à ces exigences est l’anonymisation des renseignements personnels (RP). Cette méthode permet de transformer les données de manière qu’elles ne puissent plus être associées à une personne identifiable, tout en préservant leur utilité pour l’analyse statistique et la prise de décisions.
Afin de renforcer ses processus de protection des données confidentielles, Beneva souhaite tirer parti d’un partenariat avec Prof. Anne-Sophie Charest du département de mathématiques et de statistique de l’Université de Laval, en s’alliant pour approfondir les méthodes d’anonymisation des données. Beneva utilise déjà l’approche de la génération de données synthétiques, basée sur des modèles génératifs CTGANs [1] et TVAE [2]. Cependant, plus le degré de conservation des propriétés statistiques est élevé, plus le risque d’identification est élevé, même avec des données synthétiques. Un juste équilibre est alors souhaitable. Beneva vise ainsi à améliorer les méthodologies existantes en introduisant dans le processus de génération de données synthétiques un paramètre qui permet de générer des données avec le degré de confidentialité/utilité souhaité selon le besoin de partage. Plusieurs méthodes sont à tester, dont l’ajout de la notion de confidentialité différentielle, lors de la génération des données synthétiques, avec l’objectif de satisfaire certaines métriques de divulgation existantes qui sont calculées a posteriori.
En plus de se conformer aux réglementations sur la protection des renseignements personnels, le projet représente des avantages économiques, tels que :
1. Amélioration des performances des modèles d’IA.
2. Facilitation du partage et de la collaboration : qui permet d’Accélérer des partenariats et collaborations internes et externes.
3. Réduction des délais de mise en marché : en évitant les contraintes liées à l’accès aux données réelles.
Le projet a aussi des avantages sociaux, tels que :
1. Renforcement de la protection des données des clients.
2. Contribution à l’innovation et à la recherche : en permettant aux chercheurs et aux équipes internes de tester de nouvelles approches sans compromettre la sécurité des données.
3. Accessibilité et démocratisation des analyses de données.
4. Soutien à la mission mutualiste.

Voir la description complète du projet
Superviseur du corps professoral :

Anne-Sophie Charest

Étudiant :

Partenaire :

Beneva

Discipline :

Mathematics

Secteur :

Finance and Insurance

Université :

Université Laval

Programme :

Accelerate

Advances in sensor fusion and gap-filling for satellite based analysis ready surface reflectance data

This project aims to develop a physics-guided deep learning framework that can be used to further enhance the robustness of surface reflectance forecasting in Planet Fusion. We want to improve and refine existing temporal-driven gap-filling techniques in handling extensive cloud cover and dynamic land changes to avoid delays and reduced reliability of delivered insights to the extent possible. The integration of domain knowledge with advanced AI techniques will allow Planet to deliver more robust, continuous, and predictive Earth observation products. This addresses a core need for the company and its clients in agriculture, climate resilience, and land management, who increasingly demand reliable uninterrupted near real-time surface reflectance solutions.

Voir la description complète du projet
Superviseur du corps professoral :

Claudia Wagner-Riddle

Étudiant :

Partenaire :

Planet Labs Geomatics Corp

Discipline :

Earth science

Secteur :

Professional, scientific and technical services

Université :

University of Guelph

Programme :

Accelerate

Making Medical AI Smarter, Adapting Language Models for Real-World Healthcare

This international project brings together researchers from Canada and Japan to improve the accuracy and reliability of artificial intelligence (AI) in healthcare. The goal is to enhance how large language models (LLMs)—the technology behind tools like ChatGPT—respond to medical questions by grounding them in verified facts.

At the National Institute of Informatics (NII) in Tokyo, the team is building a Japanese medical language model using real clinical data and a technique called a Mixture-of-Experts. To ensure accuracy, the model will be linked to knowledge graphs, structured databases that help the AI provide more factual and explainable responses. This is especially important in healthcare, where misinformation can have serious consequences. Furthermore, this project will also address how to adapt medical AI systems across different languages and cultures.

The technology developed through this collaboration will directly support and advance the MARVIN chatbot project at Polytechnique Montréal, which helps people living with HIV manage their health. By applying these new tools, MARVIN will become more accurate, culturally aware, and effective for diverse users around the world.

Voir la description complète du projet
Superviseur du corps professoral :

Sofiane Achiche;Bertrand Lebouché

Étudiant :

Partenaire :

National Institute of Informatics

Discipline :

Engineering

Secteur :

Education

Université :

Polytechnique Montréal

Programme :

Globalink Research Award

Ergonomic Design of an Automotive Material Sequencing Centre – Year two

The Ford Motor Company is bringing 800 jobs into the Oakville Assembly Plant. These jobs will be concerned with
sequencing parts for the new Material Sequencing Centre. To ensure that workers remain healthy, and their
productivity and quality output is up to Ford’s high standards, Ford (through this fellowship) wants to establish clear
ergonomic guidelines for this type of work. The post-doctoral fellow will conduct surveys in the plant, as well as
review existing ergonomic guidelines within Ford. The main focus of this Elevate award is to develop new guidelines as
necessary for the work in the MSC, and to base these standards off of current research, or research to be conducted
during the duration of this award. The priority is to include strong theory and research to make these guidelines, as
they will be used across all Ford platforms around the world.

Voir la description complète du projet
Superviseur du corps professoral :

Peter Keir

Étudiant :

Partenaire :

Ford Motor Company

Discipline :

Life Sciences

Secteur :

Manufacturing; Professional, scientific and technical services

Université :

McMaster University

Programme :

Elevate

American lobster (Homarus americanus) genomics research revitalization

The Canadian Lobster Research Network (CLRN) is a multi-stakeholder and multi-disciplinary research platform led by fishing associations throughout eastern Canada with the principal goal of supporting sustainable and profitable lobster fisheries in the face of rapid climate and ecosystem changes. The CLRN has its origins in the Lobster Node, an industry-driven collaborative research node under the Canadian Fisheries Research Network from 2010-2015. Under the Lobster Node, population genomics approaches were used to delineate the genetic structure of lobster in Atlantic Canada. Weak, albeit highly significant, genetic structure was found at a regional level. A northern and southern population was identified and for the first time, the north–south genetic break was precisely located. Over the last 10 years, genomics techniques have advanced greatly. Current technology would allow for a substantial improvement over previous methods. The previously collected lobster samples are available for re-analysis, but first their quality must be evaluated. This project will inventory and assess the quality of the previously collected lobster samples (4,190) to determine their suitability for additional analysis with updated genomic research techniques, so a lobster genomics research plan can be co-developed with Dr. Scott Pavey (UNB), the CLRN and industry representatives utilizing the samples.

Voir la description complète du projet
Superviseur du corps professoral :

Scott Pavey

Étudiant :

Partenaire :

Canadian Lobster Research Network

Discipline :

Life Sciences

Secteur :

Professional, scientific and technical services

Université :

University of New Brunswick

Programme :

Accelerate

Software Development for Automated Material Property Prediction and Business Intelligence Tools

Chemia is developing an online platform that helps R&D engineers and scientists find, compare, and design better materials for their products using a comperehsnive database of materials, their properties and scientific validation tools. We primarily focus on inorganic materials in areas like clean energy and electronics. This project will enhance the material intelligence, innovation, and integration features of our platform, making them more complete, up to date, and intelligent. The main objective is to automatically add new data from trusted and commercially compliant sources and improve our property prediction tools using AI and first principles calculation tools along with experimentations and experimental data. With a more comprehensive database and integrated validation tools, companies will be able to explore more material options, shorten development cycles, and make better decisions when selecting or designing viable materials.

Voir la description complète du projet
Superviseur du corps professoral :

Alex Hernandez-Garcia

Étudiant :

Partenaire :

Chemia Discovery Inc

Discipline :

Computer science

Secteur :

Professional, scientific and technical services

Université :

Université de Montréal

Programme :

Business Strategy Internship