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Thèses et mémoires

Des thèses et mémoires de nos étudiants sont conservés et consultables dans Papyrus, le dépôt institutionnel de l'Université de Montréal.

 

 

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Date Sort by date in descending order Title Sort by title in descending order
2009-08 Training deep convolutional architectures for vision
2020-01 Traffic prediction and bilevel network design
2012-07 Traduction statistique vers une langue à morphologie riche : combinaison d’algorithmes de segmentation morphologique et de modèles statistiques de traduction automatique
2010-08 Traduction statistique par recherche locale
1994 Traduction d'un sous-ensemble de SDL en Estelle
2023-04 Toward trustworthy deep learning : out-of-distribution generalization and few-shot learning
2020-11 Towards using intelligent techniques to assist software specialists in their tasks
2020-01 Towards using fluctuations in internal quality metrics to find design intents
2019-08 Towards Understanding Generalization in Gradient-Based Meta-Learning
2023-06 Towards the reduction of greenhouse gas emissions : models and algorithms for ridesharing and carbon capture and storage
2020-08 Towards privacy preserving cooperative cloud based intrusion detection systems
2023-07 Towards privacy-preserving and fairness-enhanced item ranking in recommender systems
2022-09 Towards meaningful and data-efficient learning : exploring GAN losses, improving few-shot benchmarks, and multimodal video captioning
2019-07 Towards learning sentence representation with self-supervision
2021-08 Towards fairness in Kidney Exchange Programs
2020-12 Towards deep unsupervised inverse graphics
2016-05 Towards deep semi supervised learning
2021-08 Towards computationally efficient neural networks with adaptive and dynamic computations
2023-12 Towards combining deep learning and statistical relational learning for reasoning on graphs
2021-10 Towards causal federated learning : a federated approach to learning representations using causal invariance