Abdessamad El-Kabid

h-index14
2papers

2 Papers

CRFeb 28, 2025
Approaching the Harm of Gradient Attacks While Only Flipping Labels

Abdessamad El-Kabid, El-Mahdi El-Mhamdi

Machine learning systems deployed in distributed or federated environments are highly susceptible to adversarial manipulations, particularly availability attacks -adding imperceptible perturbations to training data, thereby rendering the trained model unavailable. Prior research in distributed machine learning has demonstrated such adversarial effects through the injection of gradients or data poisoning. In this study, we aim to enhance comprehension of the potential of weaker (and more probable) adversaries by posing the following inquiry: Can availability attacks be inflicted solely through the flipping of a subset of training labels, without altering features, and under a strict flipping budget? We analyze the extent of damage caused by constrained label flipping attacks. Focusing on a distributed classification problem, (1) we propose a novel formalization of label flipping attacks on logistic regression models and derive a greedy algorithm that is provably optimal at each training step. (2) To demonstrate that availability attacks can be approached by label flipping alone, we show that a budget of only $0.1\%$ of labels at each training step can reduce the accuracy of the model by $6\%$, and that some models can perform worse than random guessing when up to $25\%$ of labels are flipped. (3) We shed light on an interesting interplay between what the attacker gains from more write-access versus what they gain from more flipping budget. (4) we define and compare the power of targeted label flipping attack to that of an untargeted label flipping attack.

LGJul 24, 2025
Multiscale Neural PDE Surrogates for Prediction and Downscaling: Application to Ocean Currents

Abdessamad El-Kabid, Loubna Benabbou, Redouane Lguensat et al.

Accurate modeling of physical systems governed by partial differential equations is a central challenge in scientific computing. In oceanography, high-resolution current data are critical for coastal management, environmental monitoring, and maritime safety. However, available satellite products, such as Copernicus data for sea water velocity at ~0.08 degrees spatial resolution and global ocean models, often lack the spatial granularity required for detailed local analyses. In this work, we (a) introduce a supervised deep learning framework based on neural operators for solving PDEs and providing arbitrary resolution solutions, and (b) propose downscaling models with an application to Copernicus ocean current data. Additionally, our method can model surrogate PDEs and predict solutions at arbitrary resolution, regardless of the input resolution. We evaluated our model on real-world Copernicus ocean current data and synthetic Navier-Stokes simulation datasets.