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SST vs. GaLore: The Battle for the Most Efficient AI Brain

30 Oct 2025

SST outperforms GaLore in compressing large language models, maintaining accuracy and efficiency for next-gen AI inference.

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Here’s Why AI Researchers Are Talking About Sparse Spectral Training

30 Oct 2025

Discover how Sparse Spectral Training (SST) enhances deep learning with low-rank optimization and zero-gradient distortion.

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Can Sparse Spectral Training Make AI More Accessible?

30 Oct 2025

Efficient, eco-friendly, and powerful — Sparse Spectral Training boosts LLM performance while cutting memory use and training costs.

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SST vs LoRA: A Leaner, Smarter Way to Train AI Models

30 Oct 2025

SST delivers full-rank performance with fewer parameters, outperforming LoRA across NLP and graph tasks.

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Generalizing Sparse Spectral Training Across Euclidean and Hyperbolic Architectures

29 Oct 2025

Sparse Spectral Training boosts transformer stability and efficiency, outperforming LoRA and ReLoRA across neural network architectures.

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Why Sparse Spectral Training Might Replace LoRA in AI Model Optimization

29 Oct 2025

Sparse Spectral Training (SST) boosts AI efficiency with selective spectral updates—balancing speed, accuracy, and memory use.

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Breaking Down Low-Rank Adaptation and Its Next Evolution, ReLoRA

29 Oct 2025

Learn how LoRA and ReLoRA improve AI model training by cutting memory use and boosting efficiency without full-rank computation.

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New Training Method Cuts Neural Network Memory Costs Without Losing Accuracy

29 Oct 2025

A new AI training method, Sparse Spectral Training (SST), reduces memory use while matching full-rank performance in large language models.

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Improving Deep Learning with Lorentzian Geometry: Results from LHIER Experiments

28 Oct 2025

With improved accuracy, stability, and speed of training, new Lorentz hyperbolic approaches (LHIER+) improve AI performance on classification and hierarchy task