Projets novateurs réalisés

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

29670 projets achevés

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Projets par catégorie

Titan Platform Marketing Internship

This Marketing Project will be undertaken in order to assess current strategies, improve current processes, and brainstorm new strategies. The successful candidate will first be educated on our industry, our project, and our potential clients by the CEO and CTO. The main goal of this project is to strengthen the marketing (including messaging and branding) of the company, and in an efficient manner. We welcome a candidate whose recent training and energy will bring our company a fresh perspective.

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Superviseur du corps professoral :

Joyce Shang

Étudiant :

Partenaire :

Atrexis Systems Ltd.

Discipline :

Sociologie

Secteur :

Services professionnels, scientifiques et techniques

Université :

Université Thompson Rivers

Programme :

Stage en stratégie d’affaires

To develop a culture-centric application for a modern matchmaking service

The main project objective is to develop a culture centric matchmaking application that would cater to the unique needs and preferences of African relationship seekers in Canada and diaspora.

Our research showed that the online dating industry (ODI)s does not cater to African relationship seekers’ unique needs and preferences. Only 2% of African respondents stated they had a good experience, while none met anyone seeking a serious relationship while using these western online dating apps. Qunuby aims to fulfil the needs of this heavily underserved market.

The project would include the following streams of activities to ultimately design and build a web and mobile matchmaking application to would cater to the needs of the target market. These activities include:

1. Conduct in-depth research and analysis on the online and offline relationship matching industry: This involves conducting primary and secondary research to re-validate the existing Lean model and marketing strategy before application development.

2. Use knowledge to design an innovative matchmaking application that meets the vision and requirements of the target market: This involves developing prototypes for both web and mobile platforms in line with the research findings and design requirements of the team. In addition, selecting a technology platform would meet the short and long-term needs of the project.

3. Build the solution for web and mobile usage: Develop the software application using the agreed platform.

4. Launch and Testing: conduct testing with a release of the beta II version and champion subsequent lessons learnt and bug management for continuity management

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Superviseur du corps professoral :

Norah McRae

Étudiant :

Partenaire :

Qunuby Personal Connections

Discipline :

Informatique

Secteur :

Autres services (sauf administration publique)

Université :

Université de Waterloo

Programme :

Stage en stratégie d’affaires

Natural Language Processing for automatically checking novelty of ideas

XLScout uses Natural Language Processing (NLP), Machine Learning (ML), and Innovation/Scientific principles to deliver actionable intelligence and accelerate innovation by analyzing large patent and research databases. The company is eliminating the pain of manually going through document and quickly providing relevant information to support data-driven strategic decisions. Presently XLScout hosts a data vault of over 130 million patents and 200+ million research publications occupying approximately 8TB of storage. Effectively searching these documents is time-consuming and it commonly requires advanced strategies that a novice searcher may not be familiar with. Moreover, as the database is so large, it is difficult to distill relevant information just by using keyword-based searches. XLScout already has different machine learning techniques for extracting information from these databases, and this project is seeking to make these systems smarter, efficient and scalable by utilizing state-of-the-art deep learning-based models.

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Superviseur du corps professoral :

Eric Yu

Étudiant :

Partenaire :

XLSCOUT

Discipline :

Informatique

Secteur :

Industries de l’information et culturelles

Université :

Université de Toronto

Programme :

Accélération

Detours: Location intelligence for Inclusive mobility in disruptive sidewalk conditions

Temporary disruptions in the pedestrian environment, such as construction or snow, make it difficult for people with disabilities (PWDs) to reach destinations in their community. Cities struggle to communicate alternate routes that are accessible to everyone when these disruptions occur. Grounded in a context of data valorization and transfer for the development of smart and inclusive cities, the present project aims at addressing the challenges of the mobility of people with disabilities in a dynamic and changing environment (e.g., construction sites, social events, snow, etc.) to provide them with the information on accessible itineraries based on their personal profile, capabilities and preferences in outdoor environments in close collaboration with “Quartier de l’innovation de Montréal” (QI), the city of Quebec, as well as the “Réseau de transport de la Capitale” (RTC) and community partners such as ROP 03 (Regroupement des organismes de personnes handicapées de la région 03).

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Superviseur du corps professoral :

Mir Abolfazl Mostafavi

Étudiant :

Partenaire :

Quartier de l’innovation de Montréal

Discipline :

Génie

Secteur :

Social Innovation; Information and Communications Technology; Health and Related Sciences & Technology

Université :

Université Laval

Programme :

Accélération

Essais structurels des panneaux sandwich Concete préfabriqués renforcés par la fibre de basalte

Un nouveau système de panneaux muraux en béton préfabriqué porteur a été proposé, utilisant des matériaux composites au lieu de l’acier pour le renforcement afin de réduire la perte de chaleur à travers ces matériaux et d’augmenter leur valeur R. Les panneaux subiront des essais structurels destructifs afin de déterminer dans quelle mesure le système de matériaux composites se compare à un design mural similaire utilisant un renforcement en acier. Des essais de flexion, des essais axiaux et des essais combinés flexion/axial seront réalisés. Les résultats des essais permettront de développer un outil de conception pour les ingénieurs qui leur indiquera la résistance à la flexion du mur sous diverses forces axiales. L’organisation partenaire, au cours du stage, apprendra le procédé de fabrication des murs et pourra ensuite appliquer ce procédé à la production de masse future. Les aides à la conception murale résultantes peuvent être présentées aux ingénieurs-conseils et aux clients souhaitant utiliser ce système comme matériel promotionnel.

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Superviseur du corps professoral :

Amir Fam

Étudiant :

Partenaire :

Anchor Concrete

Discipline :

Génie

Secteur :

Fabrication

Université :

Université Queen’s

Programme :

Accélération

Organizational Marketing Strategy Development-Standard Rail Corporation

Standard Rail is one of the leading participants in the Rail Service industry. We place the highest importance on ensuring employee safety and delivering quality customer service and pride ourselves on high-quality railcar and locomotive services across North America. This project would give the company the financial resources to branch out its service portfolio and market its service portfolio appropriately to build a niche reputation for itself in the market and help provide the necessary resources to support its marketing efforts.

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Superviseur du corps professoral :

Baljit Singh

Étudiant :

Partenaire :

Standard Rail Corporation

Discipline :

Affaires

Secteur :

Transport et entreposage

Université :

Université de la Saskatchewan

Programme :

Stage en stratégie d’affaires

Data Scientist / Ingénieur en apprentissage automatique

1) Recommender System : With most modern services and products now being offered predominately online, it can be hard to get to know your customers. Unlike running a local store where you get to see each person, online businesses can struggle to understand their users’ expectations.
The project’s goal is to improve the customer experience by offering what they are looking for, thereby improving the conversion rates for retailers. To achieve these goals, the company plans to develop a Recommender system that predicts whether a particular user would prefer an item or not based on the user’s profile. Here the Recommender System draws on advances in machine learning to deliver personalized recommendations that suit each customer’s tastes and preferences across all your touchpoints.
2) Canada, a resource-rich country, garners a significant portion of the GDP from mining. With that said, most mines are still using legacy technology and facing the growing need to drive operations deeper underground.
Moreover, the industry faces volatile commodity prices and a decline in productivity despite continuous improvements in mining.
While artificial intelligence is still an emerging technology, it enables mining companies to become insight-driven enterprises that utilize data to pinpoint ores and lower costs. The project goal is to use machine learning to deliver value by instantly collecting data and deriving on-site insights that have the potential to vastly improve safety and streamline the workflow and develop an AI model that leverages the data captured from various sources and predicts the locations for ore mining.

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Superviseur du corps professoral :

Sandy Staples

Étudiant :

Partenaire :

Incorporation.AI

Discipline :

Affaires

Secteur :

Intelligence artificielle

Université :

Université Queen’s

Programme :

Stage en stratégie d’affaires

Smart Textiles for Monitoring Aerobic Function using Artificial Intelligence

Physical activity is a crucial part of cardiovascular disease and prevention. Some of the most important clinical measurements relate to how effectively the body is able to consume and use oxygen to fuel muscles. However, these clinical measurements require complex technologies that make it only feasible in a laboratory environment. New technologies will be needed in the next 5-10 years for supporting remote monitoring. In this project, we propose to develop new fabric technologies with embedded sensors (“smart textiles”) that, paired with artificial intelligence, can monitor oxygen uptake continuously during exercise. These smart textiles will be evaluated in a clinical rehabilitation clinic to determine the feasibility of monitoring patients during prescribed exercise. Outcomes will produce new commercializable textile technologies for cardiovascular disease monitoring.

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Superviseur du corps professoral :

Azadeh Yadollahi

Étudiant :

Partenaire :

Vee Canada Inc

Discipline :

Génie

Secteur :

Services professionnels, scientifiques et techniques

Université :

Université de Toronto

Programme :

Accélération

Extraction d’information à partir des visualisations de données

Regulatory agencies publish several documents that outline the approval process of drugs. These contain valuable information on a drug’s safety, efficacy, etc. along with the feedback of reviewers from the agencies. Current technologies apply machine learning techniques to extract and categorize the unstructured text found in these documents. However, it does not accurately capture information from data visualizations such as tables, graphs, charts, etc. The data present in these elements are important for drug development teams to decide what clinical trial designs to use, which safety and efficacy data to gather for approval, etc. If solved, this can lead to quicker and more accurate decision-making by regulatory professionals, and in turn, result in faster drug approval and lowered drug development cost.

Voir la description complète du projet
Superviseur du corps professoral :

Kieran Campbell

Étudiant :

Partenaire :

Biotech Square Inc.

Discipline :

Informatique

Secteur :

Services professionnels, scientifiques et techniques

Université :

Université de Toronto

Programme :

Accélération

Développement d’un système de télé-réadaptation pour permettre une évaluation automatique de la performance des patients, améliorer leur adhésion et permettre la réadaptation à distance (analyse du marché et de la concurrence, réglementation et conception logicielle)

La mauvaise récupération physique, surtout en réadaptation à distance, est le problème qui sera abordé dans ce projet.
Ce projet est la phase I du développement du module Fun-exercise. Le système d’exercices amusants utilise la ludification pour renforcer l’adhésion des patients à leurs exercices à domicile prescrits. Pour atteindre cet objectif, Fun-exercise utilisera des jeux mentalement stimulants et personnalisables, jumelés à un ensemble de capteurs portables pour fournir un retour d’information afin de s’assurer que les activités sont bien réalisées. Lors de la phase I, une étude patiente et la conception conceptuelle du module Fun-exercise seront réalisées. L’étude des patients détermine et caractérise l’exercice ciblé et les groupes de patients. Ce projet aidera les organisations partenaires à stimuler l’innovation et le développement technologique au Canada. Le travail mené par le stagiaire informera la communauté élargie sur les tendances de l’industrie, l’impact des différentes technologies actuelles et émergentes sur divers secteurs, ainsi que favorisera la croissance des technologies innovantes dans l’économie canadienne.

Voir la description complète du projet
Superviseur du corps professoral :

Mark Towler

Étudiant :

Partenaire :

Fun-Exercise Digital Health Inc

Discipline :

Génie

Secteur :

Services professionnels, scientifiques et techniques

Université :

Université métropolitaine de Toronto

Programme :

Accélération

Évaluation de nouveaux composés antiviraux contre le SARS-CoV-2

SARS-CoV-2 appears to be poised to become endemic, meaning that we can expect continuous risk of exposure to infection. Despite highly effective vaccines, people still become infected, and some people become severely ill. Antivirals that can reduce symptoms and decrease the levels and duration of infection can aid in reducing onward transmission of the virus. As part of a Canadian antiviral development pipeline led by Applied Pharmaceutical Innovation, candidate antivirals identified in high throughput screens will be evaluated for their activity against SARS-CoV-2 in live virus assays using cell culture models. Compounds with high antiviral activity will then be further investigated for their effectiveness using small animal models of SARS-CoV-2. Effectiveness in small animal models serves as proof-of-concept for further development, including moving the compounds into clinical trials. Identification and verification of the effectiveness of novel antivirals remains a key component of preparing a long-term strategy for dealing with SARS-CoV-2.

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Superviseur du corps professoral :

Darryl Falzarano

Étudiant :

Partenaire :

Innovation pharmaceutique appliquée

Discipline :

Sciences de la vie

Secteur :

Services professionnels, scientifiques et techniques; Commerce de détail

Université :

Université de la Saskatchewan

Programme :

Accélération

Les fiduciaux anatomiques et leur pertinence pour la neurochirurgie stéréotaxique : contrôle de qualité et amélioration du ciblage chirurgical

Ultra-high field Magnetic Resonance Imaging (UHF-MRI) allows for visualization of deep brain regions in exquisite detail, unlike any other imaging modality. In Canada, there are only a few MRI machines that can generate magnetic fields strong enough (7T or higher) to obtain UHF-MRI scans. The ability to visualize and locate deeper brain regions with millimetric accuracy is crucial to achieving optimal therapeutic outcomes during an invasive neurosurgical procedure called deep brain stimulation (DBS). DBS involves delivering electrical stimulation via electrodes to relieve symptoms of a wide variety of disorders like Parkinson’s disease, essential tremor, dystonia, depression, and addiction. Neurosurgeons often target deeper brain regions without seeing them due to limited access to UHF-MRI images.

The goal of my research is to develop a machine learning model (allowing computers to make decisions beyond their initial programming) to utilize the locations and distances between 32 points on brain images called anatomical fiducials (AFIDs) placed on UHF-MRI images to locate common DBS surgical targets with millimetric accuracy. I hypothesize that the 32 AFIDs survey deep brain anatomy enough to allow for predicting the location of multiple DBS targets.

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Superviseur du corps professoral :

Jonathan C Lau;Ali Khan

Étudiant :

Partenaire :

Société Parkinson Sud-Ouest de l’Ontario

Discipline :

Génie

Secteur :

Autres services (sauf administration publique)

Université :

L’Université de Western Ontario

Programme :

Accélération