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| |Pengqi Li | | |Pengqi Li |
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− | * | + | * Modify NC-paper |
| + | * Expand experiments for supervise(ASP)(finished code) |
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People |
This Week |
Next Week |
Task Tracking (DeadLine)
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Dong Wang
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- A trial talk in Retired Professor Association of THU.
- Check Aigraph slides
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Lantian Li
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- GPU status [1]
- Projects
- AED -> model miniaturization/streaming
- TSE -> 1st phase delivery (this week)
- VSR -> no progress
- Finance -> no progress
- Papers
- AI graph
- Slides checking (10/50)
- High school handbook (2/40)
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Ying Shi
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- Text enroll Keyword Spotting
- Training with sufficient data augmentation [failed]
- Cohort Conditional Chain Overlap ASR
- Fix the bug about the positional embedding of Condition, the performance is still not good
- Review several NC paper
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- Text enroll Keyword Spotting
- Cohort Conditional Chain Overlap ASR
- Check the SID performance of the current speaker embedding model on the training dataset
- Reproduce the previous Cohort-SOT methods on the training dataset
- Finish the SPL response
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Zhenghai You
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- Complete the project deliverables
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Junming Yuan
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- find the bug in SSL model finetuning experiment with multi-lingual
- double check result in [2]
- The results need check again.
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Chen Chen
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- graduate
- entropy (with avhubert/hubert for LRS3/GRID)
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Xiaolou Li
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- Some exps on Bimamba (parameters search) [3]
- Paper reading
- MLLM survey, pre-train, fine-tune and modality alignment
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Zehua Liu
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- VSP-LLM Reproduce(LRS3(30h) wer:36.32 > wer: 29.2)[4]
- still need work on the code
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Pengqi Li
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- Modify NC-paper
- Expand experiments for supervise(ASP)(finished code)
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Wan Lin
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- Neural Scoring
- trials test: vox1-e, vox1-h
- cn: ns(all-genres and 3-genres fine-tuning)
- variable-chunk training(2-10s):
training, looks similar to the results of 4/6s
- weekly report
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Tianhao Wang
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- Neural Scoring [5]:
- vox: vox1-e, vox1-h test [6]
- cn: three genres fine-tuning: resnet and ns, 2s and 4s
- weekly report
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Zhenyu Zhou
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- Huawei Project Submission
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Junhui Chen
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- Neural Scoring [7]:
- vox: vox1-e, vox1-h test [8]
- vox: one transformer encoder layer training
- cn: three genres fine-tuning: resnet and ns, 2s and 4s
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Jiaying Wang
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- Preliminary validation: cohort works[9]
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Yu Zhang
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- Finance
- Data Collection (2015 - 2019 HS300 stocks)
- AED
- 8k 2s CNN model training and Window inference code
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Wenqiang Du
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- Quantified the kws model of Aibabel
- Training dialect models for AIbabel( Uyghur language)
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- Train a joint model for Chinese, Uyghur, and Kazakh languages
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Yang Wei
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- AIbabel
- Learn to train and test KWS model
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Lily
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- Assisted with design of AI courses for primary, high school
- Some chores about 'AIradiance'
- Prepare application for Beijing Science and Technology Progress Award
- Live broadcast
- Prepare the content for the daily sign poster for July, August
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Turi
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- Thesis Proposal Defense
- Data Collection
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Yue Gu
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- Prepare the live content
- writing paper
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Qi Qu
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- AED:
- CED + Linear: c/jni/python lib development and test.
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- AED:
- CED: Linear to be trained on data.
- On-device demo.
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