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KDE at 30
KDE at 30 KDE is turning 30 this year! Three decades of passionate community effort against all odds; delivering control, privacy, and freedom to our users; and tons and tons of software. We will be updating this page frequently with new content, exciting 30th Anniversary news, things you can participate in, updated merch you can get, and much more!
Preparing for KDE Plasma's Last X11-Supported Release
When we first announced the transition to Plasma Wayland, one of Martin's slides from stated, "It's done when it's done!" That talk was 15 years ago! Nothing in software is never truly "done", but as announced previously we are finally at a point where we're ready to retire the X11 and put all our focus on the future.
DiScoFormer: Plug-In Density and Score Estimation with Transformers
arXiv:2511.05924v4 Announce Type: replace Abstract: Estimating probability density and its score from samples remains a core problem in generative modeling, Bayesian inference, and kinetic theory. Existing methods are bifurcated: classical kernel density estimators (KDE) generalize across distributions but suffer from the curse of dimensionality, while modern neural score models achieve high precision but require retraining for every target distribution. We introduce DiScoFormer (Density and...
On Imbalanced Regression with Hoeffding Trees
arXiv:2602.22101v3 Announce Type: replace Abstract: Many real-world applications generate continuous data streams for regression. Hoeffding trees and their variants have a long-standing tradition due to their effectiveness, either alone or as base models in broader ensembles. Recent batch-learning work shows that kernel density estimation (KDE) improves smoothed predictions in imbalanced regression
OpenBSD 7.9 arrives, a diamond in the rough proud of every sharp edge
OpenBSD 7.9 has been released, maintaining its reputation as a highly secure Unix-like operating system. This version introduces modest features, including support for up to 255 processor cores on amd64 machines and improved CPU scheduler understanding for heterogeneous cores. Additionally, it features "delayed hibernation" to manage low battery power and includes updates to LibreSSL and OpenSSH.
Learnable Kernel Density Estimation for Graphs and Its Application to Graph-Level Anomaly Detection
arXiv:2505.21285v5 Announce Type: replace Abstract: This work proposes a framework LGKDE that learns kernel density estimation for graphs. The key challenge in graph density estimation lies in effectively capturing both structural patterns and semantic variations while maintaining theoretical guarantees.
Chuwi Minibook X: the netbook we deserve
Netbooks are dead, but the Chuwi Minibook X scratches the same itch. The Minibook X is a 10.5″ x86_64 sub-ultrabook with 16GB RAM, a 512GB NVMe drive, and only one majorly annyoing Linux quirk. I needed a knock-around laptop, so I bought myself a Minibook for my birthday last year.
Anthropic, please ship an official Claude Desktop for Linux
- Notifications You must be signed in to change notification settings - Fork 21.2k Official Claude Desktop build for Linux (Ubuntu LTS / Debian) #65697 Description Preflight Checklist - I have searched existing requests and this feature hasn't been requested yet - This is a single feature request (not multiple features) Problem Statement Preflight note. The closest open issue is #40347.
Adaptive Conditional Forest Sampling for Spectral Risk Optimisation under Decision-Dependent Uncertainty
arXiv:2603.12507v2 Announce Type: replace Abstract: Minimising a spectral risk objective, defined as a weighted combination of expected cost and Conditional Value-at-Risk (CVaR), is challenging when the uncertainty distribution is decision-dependent, making both surrogate modelling and simulation-based ranking sensitive to tail estimation error. We propose Adaptive Conditional Forest Sampling (ACFS), a four-phase simulation-optimisation framework that integrates Generalised Random Forests...