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第39行: |
第39行: |
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| |Shiyue Zhang || | | |Shiyue Zhang || |
− | * run rnng on MKL successfully, which can double or triple the speed. | + | * run rnng on MKL successfully, which can double or triple the speed. Revised the RNNG User Guide. |
| * rerun the original model and get the final result 92.32 | | * rerun the original model and get the final result 92.32 |
| * rerun the wrong memory models, still running | | * rerun the wrong memory models, still running |
Date |
People |
Last Week |
This Week
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2016/11/21
|
Yang Feng |
1) ran experiments of rnng+mn [report] ;
2) used top-k for memory, under training
- sequence-to-sequence + mn
1) wrote the proposal
2) discussed the details with Andy
- intern interview
- Huilan's work
|
1) get the result of top-k; 2) try bigger memory;
- sequence-to-sequence + mn
1)coding work
1) try syntax-based TM
|
Jiyuan Zhang |
- ran decoder-memory model, but the effect is not obvious
- changed binding way of memory and atten models, can generate different style of poetry
- cleanned up my code
- wrote a techreport about poemGen [1]
- submitted two databases about poemGen and musicGen
|
- explored a variety of binding ways of memory and atten model
|
Andi Zhang |
- prepare new data set for paraphrase, wiped out repetition & most of the noises
- run NMT on fr-en data set and new paraphrase set
- read through source code to find ways to modify it
- helped Guli with running NMT on our server
|
- decide to drop theano or not
- start to work on codes
|
Shiyue Zhang |
- run rnng on MKL successfully, which can double or triple the speed. Revised the RNNG User Guide.
- rerun the original model and get the final result 92.32
- rerun the wrong memory models, still running
- implement the dynamic memory model and get the result 92.54 which is 0.22 better than baseline
- try another structure of memory [report]
|
- try more different models and summary the results
- publish the technical reports
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Guli |
- read the paper "NMT by jointly learning to align and translate"
- read the codes of paper and ran NMT (cs-en) on GPU with the help of Andi
- learn more about python
- prepare data for Ontology Library
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- continue to prepare the data
- follow the teacher Yang's instructions
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