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介绍了Matryoshka-Adaptor如何高效压缩模型嵌入维度,松弛等变图神经网络如何帮助AI理解对称性破缺,AI如何生成高难度数学题,MCAC算法如何实现自主快速适应新环境,以及FUTGA模型如何赋予AI细粒度音乐理解能力,展示了人工智能在效率提升、理解世界、辅助教育、应用落地和艺术探索等方面的潜力。完整推介:https://mp.weixin.qq.com/s/O-StjlVrBfNv9UFeo7INXA
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