“2025-02-10”版本间的差异

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|Zhenyu Zhou
 
|Zhenyu Zhou
 
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* write graduation paper
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* paper draft double check with jiaying
 
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|Jiaying Wang
 
|Jiaying Wang
 
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* is25 paper: abstract, intro, related work, method, dataset parts have been finished[https://z1et6d3xtb.feishu.cn/docx/TUHldiaoQoYBqux7JEhcaCXenzh]
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* experiment: baseline with pit and cc all finished
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* model which sort by ctc: coding, finished in these days
 
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2025年2月10日 (一) 10:45的版本

People This Week Next Week Task Tracking (DeadLine)
Dong Wang
  • AI handbook high-school version v3.0 done
  • All pictures for handbook done


Lantian Li
Ying Shi
Zhenghai You
  • Revise the Is2025 paper to the second edition
  • Reading some papers on SE/SS/TSE refiner
Junming Yuan
Xiaolou Li
Zehua Liu
Pengqi Li
  • High-school PPT and Jiaoan(5)
Wan Lin
  • Revised NS paper for IS2025 [1] (still lack of experimental results)
  • Train multi-scenario model (need parameters adjusting, still in training)
  • Try other revised-BCE loss(failed)
Tianhao Wang
Xiaoxue Luo
Zhenyu Zhou
  • write graduation paper
  • paper draft double check with jiaying
Junhui Chen
  • faster test code for NS (Vox-O 25min -> 5min)
  • writing paper for is25
  • (On plane to Beijing)
Jiaying Wang
  • is25 paper: abstract, intro, related work, method, dataset parts have been finished[2]
  • experiment: baseline with pit and cc all finished
  • model which sort by ctc: coding, finished in these days
Yu Zhang
  • refine prompt
  • add backtesting report to debate report
  • trying stronger model (DeepSeek R1 70B)
  • introduce more trading groups that are mutually opposed.
Wenqiang Du
  • AI primary handbook PPT (16/35)
  • Check AI primary handbook
  • Check AI middle handbook
Yang Wei
Turi
  • Text data collection
  • Adding Language Model to ASR (not successful yet)
Yue Gu
  • almost finish phone-level gaussian model training
  • according to the badcase analysis,I‘m designing a new framework for fine-grained speaker adaptation
Qi Qu