Développez des compétences fondamentales en intelligence artificielle (IA) responsable grâce à des cours autodirigés, animés par des expert·e·s de Mila reconnu·e·s à l’échelle internationale.
Le Fellowship Mila en politiques de l'IA transforme l'expertise approfondie en IA en politiques rigoureuses d'intérêt public. Découvrez la dernière publication Combler la disparité en matière d’expertise : mécanismes de transfert des connaissances pour la réglementation de l’IA par Moritz von Knebel.
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Lecteur Multimédia
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Publications
Towards Enhancing the Reproducibility of Deep Learning Bugs: An Empirical Study
Machine unlearning aims to solve the problem of removing the influence of selected training examples from a learned model. Despite the incre… (voir plus)asing attention to this problem, it remains an open research question how to evaluate unlearning in large language models (LLMs), and what are the critical properties of the data to be unlearned that affect the quality and efficiency of unlearning. This work formalizes a metric to evaluate unlearning quality in generative models, and uses it to assess the trade-offs between unlearning quality and performance. We demonstrate that unlearning out-of-distribution examples requires more unlearning steps but overall presents a better trade-off overall. For in-distribution examples, however, we observe a rapid decay in performance as unlearning progresses. We further evaluate how example's memorization and difficulty affect unlearning under a classical gradient ascent-based approach.
Neural networks are traditionally trained under the assumption that data come from a stationary distribution. However, settings which violat… (voir plus)e this assumption are becoming more popular; examples include supervised learning under distributional shifts, reinforcement learning, continual learning and non-stationary contextual bandits. In this work we introduce a novel learning approach that automatically models and adapts to non-stationarity, via an Ornstein-Uhlenbeck process with an adaptive drift parameter. The adaptive drift tends to draw the parameters towards the initialisation distribution, so the approach can be understood as a form of soft parameter reset. We show empirically that our approach performs well in non-stationary supervised and off-policy reinforcement learning settings.
The proposed deep learning model accurately segmented the spinal cord and spinal cord injury lesions in a diverse, multicenter dataset of T2… (voir plus)-weighted MRI scans.
Text-to-SQL enables users to interact with databases through natural language, simplifying access to structured data. Although highly capabl… (voir plus)e large language models (LLMs) achieve strong accuracy for complex queries, they incur unnecessary latency and dollar cost for simpler ones. In this paper, we introduce the first LLM routing approach for Text-to-SQL, which dynamically selects the most cost-effective LLM capable of generating accurate SQL for each query. We present two routing strategies (score- and classification-based) that achieve accuracy comparable to the most capable LLM while reducing costs. We design the routers for ease of training and efficient inference. In our experiments, we highlight a practical and explainable accuracy-cost trade-off on the BIRD dataset.
We introduce Temporal Residual Jacobians as a novel representation to enable data-driven motion transfer. Our approach does not assume acces… (voir plus)s to any rigging or intermediate shape keyframes, produces geometrically and temporally consistent motions, and can be used to transfer long motion sequences. Central to our approach are two coupled neural networks that individually predict local geometric and temporal changes that are subsequently integrated, spatially and temporally, to produce the final animated meshes. The two networks are jointly trained, complement each other in producing spatial and temporal signals, and are supervised directly with 3D positional information. During inference, in the absence of keyframes, our method essentially solves a motion extrapolation problem. We test our setup on diverse meshes (synthetic and scanned shapes) to demonstrate its superiority in generating realistic and natural-looking animations on unseen body shapes against SoTA alternatives. Supplemental video and code are available at https://temporaljacobians.github.io/ .
High-level synthesis (HLS) produces hardware au-tomatically by scheduling and assigning resources based on an input control/data-flow graph.… (voir plus) One particular aspect of HLS for the digital signal processing (DSP) architecture is the het-erogeneous assignment problem (HAP) which maps operations into different types of functional units available in the electronic design automation tools to build efficient implementations. An optimal solution to this assignment problem can be found by formulating the problem as integer linear programming (ILP) and using a solver. However, given the slow nature of this process, heuristics tend to be used instead leading to sub-optimal designs. This paper revisits the classical ILP formulation of the HAP with time constraints for the DSP architecture by identifying redundant constraints. This paper proves theoretically, and demonstrates experimentally, that removing these constraints does not affect the obtained solution. This technique achieves speedups of more than 100 × in terms of runtime and reductions of more than 50 × in terms of memory usage of the solver. Also, this work proposes an updated heuristic that keeps reducing the latency of a path instead of finding a new critical path after giving a new node assignment. Runtime reductions (more than another 10×) due to reduced numbers of critical path searches are observed while returning similar results.
2024-11-03
IEEE Workshop on Signal Processing Systems (publié)