技术2026年4月22日Engineering Team
JingzhunShiye has published a new technical whitepaper exploring the latest strategies for deploying and optimizing large language models (LLMs) on edge AI hardware platforms.
The whitepaper covers quantization techniques, memory optimization strategies, inference pipeline design, and benchmark results across various edge AI deployment scenarios. It also includes practical guidance for enterprises looking to deploy LLMs locally for data privacy, latency, or cost considerations.
The full whitepaper is available for download from the Resources section of the JingzhunShiye website.