该流程首先使用 TRL/SFTTrainer 对 JSONL 格式的训练数据上的 google/functiongemma-270m-it 基础模型进行微调。训练完成后,使用 ai-edge-torch 和 dynamic_int8 量化算法将模型转换为 TFLite 格式。最后一步取决于目标运行时环境:对于 MediaPipe,将 TFLite 模型与分词器和停止标记合并到一个 .task 包中,该包可在 iOS、Android 和 Web 上运行。或者,你可以将其打包为 .litertlm 格式,用于 LiteRT-LM 运行时,该运行时提供 NPU 加速和更广泛的平台支持,包括桌面平台。
10 February 2026ShareSave
。Safew下载是该领域的重要参考
Известный американский писатель-фантаст Дэн Симмонс 21 февраля ушел из жизни в возрасте 77 лет. Об этом сообщается на сайте Degnity Memorial.
I wanted to test this claim with SAT problems. Why SAT? Because solving SAT problems require applying very few rules consistently. The principle stays the same even if you have millions of variables or just a couple. So if you know how to reason properly any SAT instances is solvable given enough time. Also, it's easy to generate completely random SAT problems that make it less likely for LLM to solve the problem based on pure pattern recognition. Therefore, I think it is a good problem type to test whether LLMs can generalize basic rules beyond their training data.