Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Copy update #172

Open
wants to merge 80 commits into
base: copy
Choose a base branch
from
Open

Copy update #172

wants to merge 80 commits into from

Conversation

pskrunner14
Copy link

  • Fixed copy_decoder def and minor changes.
  • Latest changes from develop.

TODO: fix dimensions for compatibility with top_k_decoder.

kylegao91 and others added 30 commits October 24, 2017 09:46
* Fixed topk decoder.
* Use torchtext from pipe.

* Fixed torch text sorting order.
…BM#90)

* attention is not required when only using teacher forcing in decoder
Fixed field arguments validation.
* 0.1.5 (IBM#91)

* Modified parameter order of DecoderRNN.forward (IBM#85)

* Updated TopKDecoder (IBM#86)

* Fixed topk decoder.

* Use torchtext from pipy (IBM#87)

* Use torchtext from pipe.

* Fixed torch text sorting order.

* attention is not required when only using teacher forcing in decoder (IBM#90)

* attention is not required when only using teacher forcing in decoder

* Updated docs and version.

* Fixed code style.

* shuffle the training data
* fix example of inflate function in TopKDecoer.py
* Fix hidden_layer size for one-directional decoder

Hidden layer size of the decoder was given `hidden_size * 2 if bidirectional else 1`, resulting in a dimensionality error for non-bidirectional decoders.
Changed `1` to `hidden_size`.
* Adapt load to allow CPU loading of GPU models

Add storage parameter to torch.load to allow loading
models on a CPU that are trained on the GPU, depending
on availability of cuda.
* Fix wrong parameter use on DecoderRNN
# Conflicts:
#	seq2seq/models/TopKDecoder.py
#	seq2seq/trainer/supervised_trainer.py
* Modified parameter order of DecoderRNN.forward (IBM#85)

* Updated TopKDecoder (IBM#86)

* Fixed topk decoder.

* Use torchtext from pipy (IBM#87)

* Use torchtext from pipe.

* Fixed torch text sorting order.

* attention is not required when only using teacher forcing in decoder (IBM#90)

* attention is not required when only using teacher forcing in decoder

* Updated docs and version.

* Fixed code style.

* bugfix (IBM#92)

Fixed field arguments validation.

* Removed `initial_lr` when resuming optimizer with scheduler. (IBM#95)

* shuffle the training data (IBM#97)

* 0.1.5 (IBM#91)

* Modified parameter order of DecoderRNN.forward (IBM#85)

* Updated TopKDecoder (IBM#86)

* Fixed topk decoder.

* Use torchtext from pipy (IBM#87)

* Use torchtext from pipe.

* Fixed torch text sorting order.

* attention is not required when only using teacher forcing in decoder (IBM#90)

* attention is not required when only using teacher forcing in decoder

* Updated docs and version.

* Fixed code style.

* shuffle the training data

* fix example of inflate function in TopKDecoer.py (IBM#98)

* fix example of inflate function in TopKDecoer.py

* Fix hidden_layer size for one-directional decoder (IBM#99)

* Fix hidden_layer size for one-directional decoder

Hidden layer size of the decoder was given `hidden_size * 2 if bidirectional else 1`, resulting in a dimensionality error for non-bidirectional decoders.
Changed `1` to `hidden_size`.

* Adapt load to allow CPU loading of GPU models (IBM#100)

* Adapt load to allow CPU loading of GPU models

Add storage parameter to torch.load to allow loading
models on a CPU that are trained on the GPU, depending
on availability of cuda.

* Fix wrong parameter use on DecoderRNN (IBM#103)

* Fix wrong parameter use on DecoderRNN
* Upgrade to pytorch-0.3.0

* Use pytorch 3.0 in travis env.
…eturns several seqs for a given seq (IBM#116)

* Adding a predictor method to return n predicted seqs for a src_seq input
(intended to be used along to Beam Search using TopKDecoder)
when attention is turned off, pytorch (well, 0.4 at least) gets angry about calling view on a non-contiguous tensor
* add contiguous call to tensor (IBM#127)

when attention is turned off, pytorch (well, 0.4 at least) gets angry about calling view on a non-contiguous tensor

* Fixed shape documentation (IBM#131)

* Update to pytorch-0.4

* Remove pytorch manual install in travis.
* Modified parameter order of DecoderRNN.forward (IBM#85)

* Updated TopKDecoder (IBM#86)

* Fixed topk decoder.

* Use torchtext from pipy (IBM#87)

* Use torchtext from pipe.

* Fixed torch text sorting order.

* attention is not required when only using teacher forcing in decoder (IBM#90)

* attention is not required when only using teacher forcing in decoder

* Updated docs and version.

* Fixed code style.

* bugfix (IBM#92)

Fixed field arguments validation.

* Removed `initial_lr` when resuming optimizer with scheduler. (IBM#95)

* shuffle the training data (IBM#97)

* 0.1.5 (IBM#91)

* Modified parameter order of DecoderRNN.forward (IBM#85)

* Updated TopKDecoder (IBM#86)

* Fixed topk decoder.

* Use torchtext from pipy (IBM#87)

* Use torchtext from pipe.

* Fixed torch text sorting order.

* attention is not required when only using teacher forcing in decoder (IBM#90)

* attention is not required when only using teacher forcing in decoder

* Updated docs and version.

* Fixed code style.

* shuffle the training data

* fix example of inflate function in TopKDecoer.py (IBM#98)

* fix example of inflate function in TopKDecoer.py

* Fix hidden_layer size for one-directional decoder (IBM#99)

* Fix hidden_layer size for one-directional decoder

Hidden layer size of the decoder was given `hidden_size * 2 if bidirectional else 1`, resulting in a dimensionality error for non-bidirectional decoders.
Changed `1` to `hidden_size`.

* Adapt load to allow CPU loading of GPU models (IBM#100)

* Adapt load to allow CPU loading of GPU models

Add storage parameter to torch.load to allow loading
models on a CPU that are trained on the GPU, depending
on availability of cuda.

* Fix wrong parameter use on DecoderRNN (IBM#103)

* Fix wrong parameter use on DecoderRNN

* Upgrade to pytorch-0.3.0 (IBM#111)

* Upgrade to pytorch-0.3.0

* Use pytorch 3.0 in travis env.

* Make sure tensor contiguous when attention's not used. (IBM#112)

* Implementing the predict_n method. Using the beam search outputs it returns several seqs for a given seq (IBM#116)

* Adding a predictor method to return n predicted seqs for a src_seq input
(intended to be used along to Beam Search using TopKDecoder)

* Checkpoint after batches not epochs (IBM#119)

* Pytorch 0.4 (IBM#134)

* add contiguous call to tensor (IBM#127)

when attention is turned off, pytorch (well, 0.4 at least) gets angry about calling view on a non-contiguous tensor

* Fixed shape documentation (IBM#131)

* Update to pytorch-0.4

* Remove pytorch manual install in travis.

* Allow using pre-trained embedding (IBM#135)

* updated docs
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

Successfully merging this pull request may close these issues.

None yet