the Tuning Barrier
No mentions found
This entity hasn't been tracked yet, or Iris is still building its knowledge base.
Related Articles from SNS
Breaking the Tuning Barrier: Zero-Hyperparameters Yield Multi-Corner Analysis Via Learned Priors
Announce Type: replace Abstract: Yield Multi-Corner Analysis validates circuits across 25+ Process-Voltage-Temperature corners, resulting in a combinatorial simulation cost of $O(K \times N)$ where $K$ denotes corners and $N$ exceeds $10^4$ samples per corner. Existing methods face a fundamental trade-off: simple models achieve automation but fail on nonlinear circuits, while advanced AI models capture complex behaviors but require hours of hyperparameter tuning per design iteration, forming...
Single-Frequency Symmetry-Empowered Through-Barrier Sensing in Reconfigurable Complex Media
arXiv:2606.05877v1 Announce Type: new Abstract: Mirror symmetry can strongly enhance the transmission of waves through a barrier inside a complex medium. We recently showed that this phenomenon enables quantitative through-barrier sensing: by tuning programmable scatterers on one side of the barrier to maximize the broadband total transmission through the barrier, the characteristics of scatterers at mirror-symmetric positions on the other side of the barrier can be determined. Considering a...
The Map of Parameter Space in Double Microwave Shielding
arXiv:2606.09636v1 Announce Type: cross Abstract: Double microwave shielding employs $\sigma^{+}$- and $\pi$-polarized microwave fields, tuned close to the lowest rotational transition, to engineer a long-range repulsive barrier between polar molecules. By preventing molecules from reaching the short range, this technique suppresses detrimental two-body losses and recently enabled the realization of molecular Bose-Einstein condensates and self-bound droplets. Yet, the optimal operating...
Breaking the Scale Barrier: One-Shot Knowledge Transfer via Frequency Transform
arXiv:2603.07523v3 Announce Type: replace Abstract: Transferring knowledge by fine-tuning large-scale pre-trained networks has become a standard paradigm for downstream tasks, yet the knowledge of a pre-trained model is tightly coupled with monolithic architecture, which restricts flexible reuse across models of varying scales. In response to this challenge, recent approaches typically resort to either parameter selection, which fails to capture the interdependent structure of this...
Striking teachers bring Mexico City to a standstill ahead of World Cup
Striking teachers bring Mexico City to a standstill ahead of World Cup Thousands of demonstrators blocked a major avenue leading to Mexico City's Azteca Stadium on Tuesday, days before the 2026 World Cup opens at the venue, as teacher-led protests disrupted the capital. The demonstration, organised by a dissident faction of the CNTE teachers' union, followed a week of unrest that President Claudia Sheinbaum described as a "provocation." Thousands of demonstrators blocked an avenue leading to...
Tunable Real-Time Safety Filters via Set-Based Control Barrier Functions
arXiv:2507.07805v3 Announce Type: replace Abstract: Safety filters for industrial constrained systems are required to combine certified constraint satisfaction, predictable online computation, and a transparent tuning interface. Existing set-based filters are based on a well-established control invariant set design that scales favorably with state and input constraints, but typically intervene only at the set boundary. Control barrier function (CBF)-based filters, by contrast, provide...
Strain creates moiré 2D materials without twisting or stacking, opening more scalable route
Strain creates moiré 2D materials without twisting or stacking, opening more scalable route Lisa Lock Scientific Editor Robert Egan Associate Editor Cornell researchers have developed a new way to create moiré patterns—atomic-scale structures that can give materials unusual quantum behaviors—without relying on the traditionally used difficult-to-control twisting and stacking methods. The study is published in the Proceedings of the National Academy of Sciences. Why moiré materials matter...
Entropy as a Structural Prior: How a Log-Barrier on DiT Belief Space Drives Musical Diversity and Development
arXiv:2606.07207v1 Announce Type: new Abstract: Confidence-based loss weighting is usually avoided in generative models because it accelerates errors when the model is confidently wrong, but this intuition breaks down in supervised diffusion training. We introduce the Eisbach log-barrier, a parameter-free weight derived from the entropy of the DiT output's spatial energy distribution: high entropy damps the gradient, while low entropy preserves it. Applied to LoRA fine-tuning of Stable Audio...
Newegg Promo Code: 10% Off in June 2026
Newegg currently has promo codes and deals on gently used, refurbished, new and hard-to-find electronics, gaming products and more. Remaining one of the biggest online-only retailers in the US for the last 20 years, Newegg is a leading global online retailer for PC hardware, home appliances and all things tech, as well as providing help with businesses’ e-commerce needs. In the last decade, Newegg has expanded its online retail presence, selling everything from PC parts to refurbished vacuum...
U-Cast: A Surprisingly Simple and Efficient Frontier Probabilistic AI Weather Forecaster
Announce Type: replace-cross Abstract: AI-based weather forecasting now rivals traditional physics-based ensembles, but state-of-the-art (SOTA) models rely on specialized architectures and massive computational budgets, creating a high barrier to entry. We demonstrate that such complexity is unnecessary for frontier performance. We introduce \ours, a probabilistic forecaster built on a standard U-Net backbone trained with a simple recipe: deterministic pre-training on Mean Absolute Error...