- 24 Aug, 2020 1 commit
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Sylvain Gugger authored
* Run new isort * More changes * Update CI, CONTRIBUTING and benchmarks
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- 20 Aug, 2020 1 commit
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Patrick von Platen authored
* fix distilbert * fix typo
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- 13 Aug, 2020 1 commit
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Stas Bekman authored
* cleanup torch unittests: part 2 * remove trailing comma added by isort, and which breaks flake * one more comma * revert odd balls * part 3: odd cases * more ["key"] -> .key refactoring * .numpy() is not needed * more unncessary .numpy() removed * more simplification
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- 04 Aug, 2020 1 commit
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Stas Bekman authored
* improve unit tests this is a sample of one test according to the request in https://github.com/huggingface/transformers/issues/5973 before I apply it to the rest * batch 1 * batch 2 * batch 3 * batch 4 * batch 5 * style * non-tf template * last deletion of check_loss_output
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- 31 Jul, 2020 1 commit
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Sylvain Gugger authored
* Use return_dict=True in all tests * Formatting
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- 18 Jul, 2020 3 commits
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Teven authored
Slightly breaking change, changes functionality for `use_cache` in XLNet: if use_cache is True and mem_len is 0 or None (which is the case in the base model config), the model behaves like GPT-2 and returns mems to be used as past in generation. At training time `use_cache` is overriden and always True.
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Teven authored
Slightly breaking change, changes functionality for `use_cache` in XLNet: if use_cache is True and mem_len is 0 or None (which is the case in the base model config), the model behaves like GPT-2 and returns mems to be used as past in generation. At training time `use_cache` is overriden and always True.
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- 17 Jul, 2020 2 commits
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Teven authored
Slightly breaking change, changes functionality for `use_cache` in XLNet: if use_cache is True and mem_len is 0 or None (which is the case in the base model config), the model behaves like GPT-2 and returns mems to be used as past in generation. At training time `use_cache` is overriden and always True.
- 10 Jul, 2020 1 commit
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Sylvain Gugger authored
* [WIP] Proposal for model outputs * All Bert models * Make CI green maybe? * Fix ONNX test * Isolate ModelOutput from pt and tf * Formatting * Add Electra models * Auto-generate docstrings from outputs * Add TF outputs * Add some BERT models * Revert TF side * Remove last traces of TF changes * Fail with a clear error message * Add Albert and work through Bart * Add CTRL and DistilBert * Formatting * Progress on Bart * Renames and finish Bart * Formatting * Fix last test * Add DPR * Finish Electra and add FlauBERT * Add GPT2 * Add Longformer * Add MMBT * Add MobileBert * Add GPT * Formatting * Add Reformer * Add Roberta * Add T5 * Add Transformer XL * Fix test * Add XLM + fix XLMForTokenClassification * Style + XLMRoberta * Add XLNet * Formatting * Add doc of return_tuple arg
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- 01 Jul, 2020 1 commit
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Sam Shleifer authored
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- 16 Jun, 2020 1 commit
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Amil Khare authored
Co-authored-by:Sam Shleifer <sshleifer@gmail.com>
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- 10 Jun, 2020 1 commit
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Sylvain Gugger authored
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- 09 Jun, 2020 1 commit
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Bharat Raghunathan authored
* DOC: Replace instances of ``config.output_attentions`` with function argument ``output_attentions`` * DOC: Apply Black Formatting * Fix errors where output_attentions was undefined * Remove output_attentions in classes per review * Fix regressions on tests having `output_attention` * Fix further regressions in tests relating to `output_attentions` Ensure proper propagation of `output_attentions` as a function parameter to all model subclasses * Fix more regressions in `test_output_attentions` * Fix issues with BertEncoder * Rename related variables to `output_attentions` * fix pytorch tests * fix bert and gpt2 tf * Fix most TF tests for `test_output_attentions` * Fix linter errors and more TF tests * fix conflicts * DOC: Apply Black Formatting * Fix errors where output_attentions was undefined * Remove output_attentions in classes per review * Fix regressions on tests having `output_attention` * fix conflicts * fix conflicts * fix conflicts * fix conflicts * fix pytorch tests * fix conflicts * fix conflicts * Fix linter errors and more TF tests * fix tf tests * make style * fix isort * improve output_attentions * improve tensorflow Co-authored-by:Patrick von Platen <patrick.v.platen@gmail.com>
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- 02 Jun, 2020 1 commit
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Julien Chaumond authored
* Kill model archive maps * Fixup * Also kill model_archive_map for MaskedBertPreTrainedModel * Unhook config_archive_map * Tokenizers: align with model id changes * make style && make quality * Fix CI
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- 27 May, 2020 1 commit
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Sam Shleifer authored
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- 19 May, 2020 2 commits
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Patrick von Platen authored
* fix gpu slow tests in pytorch * change model to device syntax
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Julien Chaumond authored
* Test case for #3936 * multigpu tests pass on pytorch 1.4.0 * Fixup * multigpu tests pass on pytorch 1.5.0 * Update src/transformers/modeling_utils.py * Update src/transformers/modeling_utils.py * rename multigpu to require_multigpu * mode doc
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- 01 May, 2020 1 commit
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Julien Chaumond authored
There's an inconsistency right now where: - we load some models into CACHE_DIR - and some models in the default cache - and often, in both for the same models When running the RUN_SLOW tests, this takes a lot of disk space, time, and bandwidth. I'd rather always use the default cache
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- 08 Mar, 2020 2 commits
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patrickvonplaten authored
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patrickvonplaten authored
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- 25 Feb, 2020 2 commits
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Patrick von Platen authored
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Patrick von Platen authored
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- 24 Feb, 2020 1 commit
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Patrick von Platen authored
* add slow generate lm_model tests * fix conflicts * merge conflicts * fix conflicts * add slow generate lm_model tests * make style * delete unused variable * fix conflicts * fix conflicts * fix conflicts * delete unused variable * fix conflicts * finished hard coded tests
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- 21 Feb, 2020 1 commit
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Patrick von Platen authored
* improving generation * finalized special token behaviour for no_beam_search generation * solved modeling_utils merge conflict * solve merge conflicts in modeling_utils.py * add run_generation improvements from PR #2749 * adapted language generation to not use hardcoded -1 if no padding token is available * remove the -1 removal as hard coded -1`s are not necessary anymore * add lightweight language generation testing for randomely initialized models - just checking whether no errors are thrown * add slow language generation tests for pretrained models using hardcoded output with pytorch seed * delete ipdb * check that all generated tokens are valid * renaming * renaming Generation -> Generate * make style * updated so that generate_beam_search has same token behavior than generate_no_beam_search * consistent return format for run_generation.py * deleted pretrain lm generate tests -> will be added in another PR * cleaning of unused if statements and renaming * run_generate will always return an iterable * make style * consistent renaming * improve naming, make sure generate function always returns the same tensor, add docstring * add slow tests for all lmhead models * make style and improve example comments modeling_utils * better naming and refactoring in modeling_utils * improving generation * finalized special token behaviour for no_beam_search generation * solved modeling_utils merge conflict * solve merge conflicts in modeling_utils.py * add run_generation improvements from PR #2749 * adapted language generation to not use hardcoded -1 if no padding token is available * remove the -1 removal as hard coded -1`s are not necessary anymore * add lightweight language generation testing for randomely initialized models - just checking whether no errors are thrown * add slow language generation tests for pretrained models using hardcoded output with pytorch seed * delete ipdb * check that all generated tokens are valid * renaming * renaming Generation -> Generate * make style * updated so that generate_beam_search has same token behavior than generate_no_beam_search * consistent return format for run_generation.py * deleted pretrain lm generate tests -> will be added in another PR * cleaning of unused if statements and renaming * run_generate will always return an iterable * make style * consistent renaming * improve naming, make sure generate function always returns the same tensor, add docstring * add slow tests for all lmhead models * make style and improve example comments modeling_utils * better naming and refactoring in modeling_utils * changed fast random lm generation testing design to more general one * delete in old testing design in gpt2 * correct old variable name * temporary fix for encoder_decoder lm generation tests - has to be updated when t5 is fixed * adapted all fast random generate tests to new design * better warning description in modeling_utils * better comment * better comment and error message Co-authored-by:Thomas Wolf <thomwolf@users.noreply.github.com>
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- 06 Jan, 2020 2 commits
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alberduris authored
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alberduris authored
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- 22 Dec, 2019 8 commits
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Aymeric Augustin authored
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Aymeric Augustin authored
I suspect the wrapper classes were created in order to prevent the abstract base class (TF)CommonModelTester from being included in test discovery and running, because that would fail. I solved this by replacing the abstract base class with a mixin. Code changes are just de-indenting and automatic reformattings performed by black to use the extra line space.
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Aymeric Augustin authored
This construct isn't used anymore these days. Running python tests/test_foo.py puts the tests/ directory on PYTHONPATH, which isn't representative of how we run tests. Use python -m unittest tests/test_foo.py instead.
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Aymeric Augustin authored
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Aymeric Augustin authored
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Aymeric Augustin authored
This change is mostly autogenerated with: $ python -m autoflake --in-place --recursive examples templates transformers utils hubconf.py setup.py I made minor changes in the generated diff. -
Aymeric Augustin authored
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Aymeric Augustin authored
This is the result of: $ isort --recursive examples templates transformers utils hubconf.py setup.py
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- 21 Dec, 2019 2 commits
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Aymeric Augustin authored
This is the result of: $ black --line-length 119 examples templates transformers utils hubconf.py setup.py There's a lot of fairly long lines in the project. As a consequence, I'm picking the longest widely accepted line length, 119 characters. This is also Thomas' preference, because it allows for explicit variable names, to make the code easier to understand. -
Aymeric Augustin authored
Caching models across test cases and across runs of the test suite makes slow tests somewhat more bearable. Use gettempdir() instead of /tmp in tests. This makes it easier to change the location of the cache with semi-standard TMPDIR/TEMP/TMP environment variables. Fix #2222.
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- 13 Dec, 2019 1 commit
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thomwolf authored
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- 06 Dec, 2019 1 commit
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Aymeric Augustin authored
* Switch to plain unittest for skipping slow tests. Add a RUN_SLOW environment variable for running them. * Switch to plain unittest for PyTorch dependency. * Switch to plain unittest for TensorFlow dependency. * Avoid leaking open files in the test suite. This prevents spurious warnings when running tests. * Fix unicode warning on Python 2 when running tests. The warning was: UnicodeWarning: Unicode equal comparison failed to convert both arguments to Unicode - interpreting them as being unequal * Support running PyTorch tests on a GPU. Reverts 27e015bd. * Tests no longer require pytest. * Make tests pass on cuda
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