10 matches found
CVE-2026-31250
CosyVoice thru commit 6e01309e01bc93bbeb83bdd996b1182a81aaf11e 2025-30-21 contains an insecure deserialization vulnerability CWE-502 in its averagemodel.py model averaging tool. The script loads PyTorch checkpoint files epoch.pt for model averaging using torch.load without enabling the...
PT-2026-39635
CosyVoice thru commit 6e01309e01bc93bbeb83bdd996b1182a81aaf11e 2025-30-21 contains an insecure deserialization vulnerability CWE-502 in its average model.py model averaging tool. The script loads PyTorch checkpoint files epoch .pt for model averaging using torch.load without enabling the weights...
Large Empirical Case Study: Go-Explore Adapted for AI Red Team Testing
Production LLM agents with tool-using capabilities require security testing despite their safety training. We adapt Go-Explore to evaluate GPT-4o-mini across 28 experimental runs spanning six research questions. We find that random-seed variance dominates algorithmic parameters, yielding an 8x...
On Anti-Collusion Codes for Averaging Attack in Multimedia Fingerprinting
Multimedia fingerprinting is a technique to protect the copyrighted contents against being illegally redistributed under various collusion attack models. Averaging attack is the most fair choice for each colluder to avoid detection, and also makes the pirate copy have better perceptional quality...
Secure and Private Federated Learning: Achieving Adversarial Resilience through Robust Aggregation
Federated Learning FL enables collaborative machine learning across decentralized data sources without sharing raw data. It offers a promising approach to privacy-preserving AI. However, FL remains vulnerable to adversarial threats from malicious participants, referred to as Byzantine clients, wh...
Shadow Defense against Gradient Inversion Attack in Federated Learning
Federated learning FL has emerged as a transformative framework for privacy-preserving distributed training, allowing clients to collaboratively train a global model without sharing their local data. This is especially crucial in sensitive fields like healthcare, where protecting patient data is...
Differential Privacy Analysis of Decentralized Gossip Averaging under Varying Threat Models
Fully decentralized training of machine learning models offers significant advantages in scalability, robustness, and fault tolerance. However, achieving differential privacy DP in such settings is challenging due to the absence of a central aggregator and varying trust assumptions among nodes. I...
Secure Cluster-Based Hierarchical Federated Learning in Vehicular Networks
Hierarchical Federated Learning HFL has recently emerged as a promising solution for intelligent decision-making in vehicular networks, helping to address challenges such as limited communication resources, high vehicle mobility, and data heterogeneity. However, HFL remains vulnerable to...
Local Data Quantity-Aware Weighted Averaging for Federated Learning with Dishonest Clients
Whitepaper called Local Data Quantity-Aware Weighted Averaging For Federated Learning With Dishonest Clients...
[SECURITY] Fedora 14 Update: immix-1.3.2-10.fc14
Immix alignes and averages a set of similar images, thereby decreasing the numerical noise. It is especially useful with digital cameras images shot in a low light environment: multiple noisy, high-ISO setting images can be combined to get a single less noisy, low-ISO-like image, without the blur...