News
Comparing Efficiency Strategies for LLM Deployment and Summarizing PowerInfer‑2’...
This article situates PowerInfer‑2 among other frameworks that improve LLM efficiency through compression, pruning, and speculativ...
Performance Evaluation of PowerInfer‑2: Offloading, Prefill, and In‑Memory Effic...
PowerInfer‑2 achieves up to 29× speedups over llama.cpp and 13× over LLMFlash by leveraging neuron‑level pipelines and NPU‑centric...
How PowerInfer‑2 Turns Your Smartphone Into an AI Workstation
The cost model leverages SMT‑based solving (Z3) to achieve optimal decoding speed under CPU, I/O, and memory constraints.
Crypto Market Crash as $595.8M in Longs is Liquidated, Bitcoin Slides to $105,00...
The crypto market experienced a notable decline on Monday. Long positions worth more than $595.8 million were sold off in a single...
Solana Price Eyes Rebound as Institutional Demand Tops $3.2B YTD
Solana price has faced a notable decline recently, dipping below $170 after a significant market sell-off. The cryptocurrency has...
Why Log Semantics Matter More Than Sequence Data in Detecting Anomalies
This study explores how semantic information within log messages enhances anomaly detection, often outperforming models that rely...
Transformer Models Outperform Traditional Algorithms in Log Anomaly Detection
This study evaluates a Transformer-based model for log anomaly detection across multiple datasets, comparing it with simpler basel...
How Transformer Models Detect Anomalies in System Logs
This study evaluates a transformer-based framework for detecting anomalies in large-scale system logs. Experiments were conducted...
Transformer-Based Anomaly Detection Using Log Sequence Embeddings
This paper introduces a flexible Transformer-based model for detecting anomalies in system logs. By embedding log templates with a...
An Overview of Log-Based Anomaly Detection Techniques
This article explores various formulations and methodologies for log-based anomaly detection, including binary classification, pre...
A Transformer Approach to Log-Based Anomaly Detection
This study introduces a transformer-based anomaly detection model designed to flexibly analyze log data using semantic, sequential...
