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This Week |
Next Week |
Task Tracking (DeadLine)
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Dong Wang
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- Polish AI handbook (middle school and high school)
- Tsinghua Middel School 4th tutorial.
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Lantian Li
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- Polish middle-school AI handbook
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Ying Shi
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- Analyze and summarize the previous experiments
- Project things
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- continue on overlap asr task
- submit HUADANIAN challenge proposal
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Zhenghai You
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- The general content of the paper has been completed
(The method part still needs to be formalized, and the experimental part needs to be carefully thought about how to write it)[1]
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Junming Yuan
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Xiaolou Li
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- Finish CN-AV-HuBERT code modify, already test on small data
- Simplified the post process of collected data
- CVS3 audit for December
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- prepare training data for AVHuBERT, cp it to GA
- Some function demand on process server need to be solve
- Data Audit
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Zehua Liu
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- Organize my previous Experiment Result[3]
- Add correct loss, but code encounters some bugs, so i fix it and train again(still training)
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Pengqi Li
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- IS25 Proposal almost done(Double check and stat result)
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Wan Lin
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- NS: multi-enroll+margin bce: 1.638% -> 1.521% (5w spk)
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Tianhao Wang
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- Try using attention instead of FiLM:
- valid loss: query emb cross-attn: -8.065 vs. query feature cross-attn: -9.127 vs. FiLM: -10.054
- read a paper show that FiLM is better than attention in sound sep task
- Huawei project testing
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Xiaoxue Luo
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- final exam
- wrote the remaining course papers
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Zhenyu Zhou
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Junhui Chen
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- finished all course homework and final exams
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Jiaying Wang
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Yu Zhang
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- Finish Memory mechanism and Policy fusion part, start run and do further debug
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Wenqiang Du
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Yang Wei
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- Text enroll KWS model training without CTC loss.
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Turi
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- Midterm defense
- Assessment exam for application
- Experiment on improving Oromo ASR[4]
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Yue Gu
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- report my recent work
- read paper about functionally invariant path, which was reported by Prof. Wang.
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Qi Qu
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- KWS:
- pre-prod routine work for zh48+yichang5 models.
- android demo backed with gRPC services deployed on peacock01.
- QAT: exploration with little progress.
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