Projets novateurs réalisés

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

29 670 projets achevés

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Projets par catégorie

Benchmarking ML based navigation systems in video games

This project develops and benchmarks novel offline training algorithms for AI navigation in gaming environments. As such, it is intended to be a self-contained project.
Traditional video game navigation heavily relies on navigation meshes (navmeshes) for pathfinding. Navmeshes offer a simplified representation of complex environments but face limitations in portraying nuanced navigation abilities, such as climbing or jumping. These abilities often necessitate additional constructs like navigation links (navlinks), which, while functional, can be unwieldy and less adaptable to dynamic game elements. Additionally, navmeshes can struggle to scale effectively in intricately detailed game environments, often requiring a compromise between accuracy and computational efficiency.
The evolution of game AI has seen a shift towards online learning methods like Reinforcement Learning (RL) and algorithms such as the Soft Actor-Critic (SAC). SAC, with its efficiency in handling continuous action spaces, has shown potential in navigating complex environments. However, the reliance on extensive simulations for training poses considerable challenges, including long iteration times and high resource demands.
In this context, offline training methods like Behavior Cloning and Goal-Conditioned Behavioral Cloning (GCBC) emerge as promising alternatives. Offline training, or batch RL, leverages pre-collected data for AI training, thereby circumventing the need for ongoing interaction with the environment. This approach significantly streamlines the development process by reducing iteration times.
Our aim is to improve AI navigation’s efficiency and effectiveness in dynamic game scenarios by leveraging offline training methods like BC and GCBC. We propose a dual-stage benchmarking process.
Initially, we’ll use a basic prototype environment in Godot for rapid algorithm iteration and refinement. Godot’s simplicity aids in early-stage algorithm tuning. Following this, we’ll escalate testing to a complex game currently under development at Ubisoft, offering a real-world application scenario. This step stress-tests the algorithms in a sophisticated, large-scale game setting, evaluating their robustness and scalability.
This two-pronged approach allows for rigorous testing from simple to complex environments, ensuring the algorithms’ applicability in diverse gaming contexts. Our research intends to significantly advance AI navigation in gaming, providing insights applicable to AI in interactive environments.

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Superviseur du corps professoral :

Amir-massoud Farahmand;Sheila McIlraith

Étudiant :

Partenaire :

Ubisoft Toronto

Discipline :

Computer science

Secteur :

Information and cultural industries

Université :

University of Toronto

Programme :

Accelerate

An ethnographic approach towards understanding the impact of canine-assisted support on hospital staff’s mental health

The goal of this study is to observe how a national service dog’s presence in a hospital setting impacts the mental health of various healthcare workers. The research trainee will observe the interactions between the dog and the staff and log detailed information regarding the interaction. When appropriate, the research trainee will conduct brief interviews with the staff receiving support from the dog to gain more understanding of these interactions. Additionally, the hospital has been logging the interactions between staff and the dog. The goal is to qualitatively analyze this data to complement the observational work.

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Superviseur du corps professoral :

Basem Gohar;Jason Coe

Étudiant :

Partenaire :

Cambridge Memorial Hospital

Discipline :

Sociology

Secteur :

Health and Related Sciences & Technology

Université :

University of Guelph

Programme :

Accelerate

Interpretation of Electrical Resistivity scans with the assistance of Machine Learning

The proposed research aims to use Machine Learning Methods to interpret data obtained during the Electrical Resistivity scans in the delineation of Fracking Sand deposits in Western Canada. Traditional exploration for sand deposits involves pricey and not always efficient auger and sonic drilling on the entire investigated Property. Currently, costs associated with those operations are the reason for importing the proppant sand from the USA rather than using our Canadian resources. The Electrical Resistivity Topography is a much more affordable field operation that can determine the near-surface lithology and location of valuable sand deposits by establishing the material’s resistivity distribution. Results obtained from ERT, combined with machine learning modelling and its predicting capabilities, would be an innovative approach for a quicker and more accessible exploration which will directly benefit the partner organization. The intern through his participation in this project will learn how to conduct mineral exploration using both the traditional exploration drilling techniques and geophysical methods. The work for the industrial partner will allow the intern to gain Canadian experience in the mineral exploration in Canada which will help him in finding employment un Canada.

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Superviseur du corps professoral :

Derek Apel

Étudiant :

Partenaire :

TerraShift Engineering

Discipline :

Engineering

Secteur :

Mining

Université :

University of Alberta

Programme :

Accelerate

Synthesis of Cell-Permeable Copper Chelators for Detecting, Sensing, and Therapy

For this new international collaboration we plan to develop cell-permeable metal binding agents as therapeutics to treat Wilson’s disease. Wilson’s disease is a genetic disorder that results in the build-up of excess copper in the liver, leading to significant toxicity. By drawing on the expertise of the research teams in Canada and Brazil we plan to synthesize new agents that selectively target excess Cu in the liver, and then test the effectiveness of these compounds in a cell model of the disease. Our eventual goal is to develop drug candidates that effect the removal and normalization of copper levels in the liver.

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Superviseur du corps professoral :

Tim Storr

Étudiant :

Partenaire :

Universidade Federal de Minas Gerais

Discipline :

Physics

Secteur :

Education

Université :

Simon Fraser University

Programme :

Globalink Research Award

Designing a Novel Plastic Feeding System for Eco-Friendly Pavement (Phase 1)

THIS IS A GENERIC TEXT PUT IN PLACE AS THERE WAS NO PROJECT OVERVIEW

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Superviseur du corps professoral :

Pouria Tavakkoli

Étudiant :

Partenaire :

Last20 Inc.

Discipline :

Engineering

Secteur :

Administrative and support, waste management and remediation services; Professional, scientific and technical services

Université :

Lambton College of Applied Arts and Technology

Programme :

Accelerate

HandCOMM: AI Solution for Crane & Workers’ Safety

The construction industry heavily relies on mobile cranes for the off-site modular construction, emphasizing safety in operations. Despite standardized hand signals, inadequate and interrupted communications between mobile crane signalmen on the ground and crane operators pose significant risks of accidents, especially during blind lifts or lifts in severe weather. This research project aims to develop a prototype addressing communication problems between crane operators and signalmen in mobile crane operations by designing robust embedded systems in the glove and helmet and a live data receiver module. These embedded systems, equipped with flex sensors, Inertial Measurement Units (IMUs), cameras, and data transfer capabilities, enhance the recognition of hand gestures and facilitate real-time data transmission between modules. Two techniques, sensors-based and computer vision (CV) based approaches, are used to recognize hand gestures, which allow cross-validated and precise identification of hand signals. The crane operator’s cabin’s data receiver incorporates auditory and visual modalities to convey the information. The application of the prototype is expected to improve on-site communication efficiency and safety during blind lifts of crane operations. The anticipated outcomes have the potential to revolutionize communication protocols in the construction industry, ensuring safer and more efficient practices.

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Superviseur du corps professoral :

Xinming Li;Jie Han

Étudiant :

Partenaire :

SensiImage Technologies Ltd.

Discipline :

Engineering

Secteur :

Construction and infrastructure

Université :

University of Alberta

Programme :

Accelerate

Leveraging Machine Learning in Scalability of Precision Agriculture and Variable Rate Technologies

This project aims to enhance smart farming by improving the scalability and accuracy of two commercial products, SWAT CAM and SWAT MAPS, owned by Croptimistic Technologies Inc. These products are used for precision mapping on over three million acres of land across four countries. The project will utilize machine learning to identify crop parameters such as plant count and row counts, which can improve future agronomic recommendations. Additionally, it will enhance the accuracy of electrical conductivity (EC) maps by detecting and correcting erroneous data, often compromised by external factors. This initiative promises to extend the knowledge base in agricultural technology and machine learning applications, aligning with the interests of both the academic community and industry partners.

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Superviseur du corps professoral :

Aitazaz Farooque

Étudiant :

Partenaire :

Croptimistic Technology Inc

Discipline :

Engineering

Secteur :

Agriculture; Professional, scientific and technical services

Université :

University of Prince Edward Island

Programme :

Accelerate

Digital Trust Test Bench

Digital Trust Test Bench (DTT) is a quality assurance tool for digital credentials, allowing governments and organizations to test digital credentials to ensure compatibility with other platforms.
The cloud-based platform enables interoperability testing among technology components and solutions within the digital trust ecosystem. DTT is designed to be an all-in-one platform for digital trust ecosystem participants to achieve and maintain interoperability through early and continuous testing, regardless of their role, process, or technology.
Currently, DTT enables the testing of digital wallets against the Hyperledger Aries Agent Test Harness without requiring the user to have software development or DevOps expertise. The user experience consists of three key steps: test configuration, test execution, and report generation.
IDLab continuously engages the community to extend and improve upon the capabilities of the platform to meet user needs. This project focuses on two desired outcomes: 1) Increase the value and benefits for users by establishing the second iteration of the user experience, and 2) Expand the scope of supported testing scenarios by establishing a standardized integration approach for test subjects and test modules with the platform.
Interns will leverage Design Thinking to explore the research problem and find potential ways to achieve the desired outcomes.

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Superviseur du corps professoral :

Oliver Schneider;Nafiseh Kahani

Étudiant :

Partenaire :

DTLab

Discipline :

Computer science

Secteur :

Professional, scientific and technical services

Université :

Carleton University; University of Waterloo

Programme :

Accelerate

Studying Cancer and SARS-CoV-2 Co-Infection with Molecular Imaging

Positron emission tomography (PET) is a common cancer imaging technique where FDG, a radioactive substance, is used to identify cancer in the body. FDG is preferentially taken up by cancer cells and creates distinct signals that are detected by the PET scanner. A limitation of FDG-PET is that FDG is not specific to cancer. Other diseases, including COVID, can cause higher uptake of FDG by cells and create confounding signals during PET. To mitigate the risk of cancer misdiagnosis in patients infected with COVID, we will investigate to what extent SARS-CoV-2 infection interferes with cancer diagnosis. Animal models of breast cancer and SARS-CoV-2 will be used for studying FDG-PET imaging features. Breast cancer is one of the most prominent cancers among women. Our study will help proper diagnosis of breast cancer in patients at the IWK Health Centre, the largest women’s and children’s hospital in Atlantic Canada.

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Superviseur du corps professoral :

Jeanette Boudreau

Étudiant :

Partenaire :

IWK Health Centre

Discipline :

Life Sciences

Secteur :

Health and Related Sciences & Technology

Université :

Dalhousie University

Programme :

Accelerate

Deep Semi-supervised Fraud Detection in Derivatives Market

In the previous projects with TMX some unsupervised techniques have been explored to detect anomalies in trading for the derivative market. All have their pros and cons but they all have provided promising results. The first objective of this collaboration with TMX is to treat all these techniques that have been explored in previous projects; contrast them and integrate them in order to develop an improved pipeline for anomaly detection. The second goal is to add the use of labeled data to this pipeline. TMX disposes of a large set of labeled manipulative examples which will be very useful to develop a semi-supervised methodology.

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Superviseur du corps professoral :

Manuel Morales

Étudiant :

Partenaire :

Bourse de Montréal

Discipline :

Mathematics

Secteur :

Finance and Insurance

Université :

Université de Montréal

Programme :

Accelerate

Alberta Parent Survey: Perspectives on Early Learning and Care

The Edmonton Council for Early Learning and Care, the Muttart Foundation, the Community-
University Partnership for the Study of Children, Youth and Families, and the United Way Capital Region partnered to survey Alberta parents/guardians about their early learning and child care
arrangements from May to July 2022. Data were collected from 1,479 parents. A series of reports on the survey findings rooted in the five principles of the Multilateral Early Learning and Child Care Framework (quality, inclusion, affordability, flexibility, and accessibility). The Mitacs intern involved in
this project will complete quantitative data analyses, manage survey data, and engage in knowledge mobilization activities. As a result, the work of the intern will provide the Edmonton Council for Early Learning and Care with valuable knowledge and materials as they work to inform policy and practice
in the early learning and care sector.

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Superviseur du corps professoral :

Rebecca Gokiert;Mackenzie Martin

Étudiant :

Partenaire :

EndPovertyEdmonton

Discipline :

Sociology

Secteur :

Health and Related Sciences & Technology

Université :

University of Alberta

Programme :

Accelerate

Neurophysiological AI models for training of public safety officers under high stress and mental load

Psychological stress could be an important indicator of comfort with a task, particularly for training in safety-critical
fields such as public safety. Continuous stress monitoring emerges as a valuable tool for improving and
individualizing training, offering instructors a more comprehensive understanding of each student’s overall task
comfort and enabling timely interventions based on stress levels at specific moments. SensorHub is a multimodal
human state monitoring platform developed by Thales, which includes stress and mental workload modeling in
near real-time. The objective of this internship is to develop and validate models based on the data collected with
a specific population (public safety officers as they are under high stress and mental workload) who have
undergone resilience training that is known to affect physiological signals.

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Superviseur du corps professoral :

Tiago H Falk

Étudiant :

Partenaire :

Thales Recherche et Technologie

Discipline :

Engineering

Secteur :

Management of companies and enterprises; Manufacturing; Professional, scientific and technical services

Université :

Université du Québec : Institut national de la recherche scientifique

Programme :

Accelerate