Commit Graph

166 Commits

Author SHA1 Message Date
Umar Butler
8952effcc4
Fixed Typo in Warning (#5284)
* Fixed typo in cli warning

Fixed a typo in the warning for the provision of exactly two labels, which have not been designated as binary, to textcat.

* Create and signed contributor form
2020-04-09 15:46:15 +02:00
adrianeboyd
8d3563f1c4
Minor bugfixes for train CLI (#5186)
* Omit per_type scores from model-best calculations

The addition of per_type scores to the included metrics (#4911) causes
errors when they're compared while determining the best model, so omit
them for this `max()` comparison.

* Add default speed data for interrupted train CLI

Add better speed meta defaults so that an interrupted iteration still
produces a best model.

Co-authored-by: Ines Montani <ines@ines.io>
2020-03-26 10:46:50 +01:00
Ines Montani
828acffc12 Tidy up and auto-format 2020-03-25 12:28:12 +01:00
adrianeboyd
8c20dae6f7
Fix model-final/model-best meta from train CLI (#5093)
* Fix model-final/model-best meta

* include speed and accuracy from final iteration
* combine with speeds from base model if necessary

* Include token_acc metric for all components
2020-03-03 21:43:25 +01:00
adrianeboyd
ff184b7a9c
Add tag_map argument to CLI debug-data and train (#4750) (#5038)
Add an argument for a path to a JSON-formatted tag map, which is used to
update and extend the default language tag map.
2020-02-26 12:10:38 +01:00
Sofie Van Landeghem
2572460175
add tok2vec parameters to train script to facilitate init_tok2vec (#5021) 2020-02-16 17:16:41 +01:00
Sofie Van Landeghem
a27c77ce62
add message when cli train script throws exception (#5009)
* add message when cli train script throws exception

* fix formatting
2020-02-15 15:50:17 +01:00
adrianeboyd
99a543367d
Set GPU before loading any models in train CLI (#4989)
Set the GPU before loading any existing models in the train CLI so that
you can start with a base model and train on GPU.
2020-02-11 17:45:41 -05:00
adrianeboyd
90c52128dc Improve train CLI with base model (#4911)
Improve train CLI with a provided base model so that you can:

* add a new component
* extend an existing component
* replace an existing component

When the final model and best model are saved, reenable any disabled
components and merge the meta information to include the full pipeline
and accuracy information for all components in the base model plus the
newly added components if needed.
2020-01-16 01:58:51 +01:00
Sofie Van Landeghem
12158c1e3a Restore tqdm imports (#4804)
* set 4.38.0 to minimal version with color bug fix

* set imports back to proper place

* add upper range for tqdm
2019-12-16 13:12:19 +01:00
Ines Montani
cf4ec88b38 Use latest wasabi 2019-11-04 02:38:45 +01:00
Ines Montani
c5e41247e8 Tidy up and auto-format 2019-10-28 12:43:55 +01:00
Matthew Honnibal
f0ec7bcb79
Flag to ignore examples with mismatched raw/gold text (#4534)
* Flag to ignore examples with mismatched raw/gold text

After #4525, we're seeing some alignment failures on our OntoNotes data. I think we actually have fixes for most of these cases.

In general it's better to fix the data, but it seems good to allow the GoldCorpus class to just skip cases where the raw text doesn't
match up to the gold words. I think previously we were silently ignoring these cases.

* Try to fix test on Python 2.7
2019-10-28 11:40:12 +01:00
Ines Montani
d2da117114 Also support passing list to Language.disable_pipes (#4521)
* Also support passing list to Language.disable_pipes

* Adjust internals
2019-10-25 16:19:08 +02:00
Ines Montani
b6670bf0c2 Use consistent spelling 2019-10-02 10:37:39 +02:00
Ines Montani
f8d1e2f214 Update CLI docs [ci skip] 2019-09-28 13:12:30 +02:00
Matthew Honnibal
e34b4a38b0 Fix set labels meta 2019-09-19 00:56:07 +02:00
Ines Montani
00a8cbc306 Tidy up and auto-format 2019-09-18 20:27:03 +02:00
adrianeboyd
b5d999e510 Add textcat to train CLI (#4226)
* Add doc.cats to spacy.gold at the paragraph level

Support `doc.cats` as `"cats": [{"label": string, "value": number}]` in
the spacy JSON training format at the paragraph level.

* `spacy.gold.docs_to_json()` writes `docs.cats`

* `GoldCorpus` reads in cats in each `GoldParse`

* Update instances of gold_tuples to handle cats

Update iteration over gold_tuples / gold_parses to handle addition of
cats at the paragraph level.

* Add textcat to train CLI

* Add textcat options to train CLI
* Add textcat labels in `TextCategorizer.begin_training()`
* Add textcat evaluation to `Scorer`:
  * For binary exclusive classes with provided label: F1 for label
  * For 2+ exclusive classes: F1 macro average
  * For multilabel (not exclusive): ROC AUC macro average (currently
relying on sklearn)
* Provide user info on textcat evaluation settings, potential
incompatibilities
* Provide pipeline to Scorer in `Language.evaluate` for textcat config
* Customize train CLI output to include only metrics relevant to current
pipeline
* Add textcat evaluation to evaluate CLI

* Fix handling of unset arguments and config params

Fix handling of unset arguments and model confiug parameters in Scorer
initialization.

* Temporarily add sklearn requirement

* Remove sklearn version number

* Improve Scorer handling of models without textcats

* Fixing Scorer handling of models without textcats

* Update Scorer output for python 2.7

* Modify inf in Scorer for python 2.7

* Auto-format

Also make small adjustments to make auto-formatting with black easier and produce nicer results

* Move error message to Errors

* Update documentation

* Add cats to annotation JSON format [ci skip]

* Fix tpl flag and docs [ci skip]

* Switch to internal roc_auc_score

Switch to internal `roc_auc_score()` adapted from scikit-learn.

* Add AUCROCScore tests and improve errors/warnings

* Add tests for AUCROCScore and roc_auc_score
* Add missing error for only positive/negative values
* Remove unnecessary warnings and errors

* Make reduced roc_auc_score functions private

Because most of the checks and warnings have been stripped for the
internal functions and access is only intended through `ROCAUCScore`,
make the functions for roc_auc_score adapted from scikit-learn private.

* Check that data corresponds with multilabel flag

Check that the training instances correspond with the multilabel flag,
adding the multilabel flag if required.

* Add textcat score to early stopping check

* Add more checks to debug-data for textcat

* Add example training data for textcat

* Add more checks to textcat train CLI

* Check configuration when extending base model
* Fix typos

* Update textcat example data

* Provide licensing details and licenses for data
* Remove two labels with no positive instances from jigsaw-toxic-comment
data.


Co-authored-by: Ines Montani <ines@ines.io>
2019-09-15 22:31:31 +02:00
Ines Montani
af25323653 Tidy up and auto-format 2019-09-11 14:00:36 +02:00
Matthew Honnibal
7b858ba606 Update from master 2019-09-10 20:14:08 +02:00
Sofie Van Landeghem
482c7cd1b9 pulling tqdm imports in functions to avoid bug (tmp fix) (#4263) 2019-09-09 16:32:11 +02:00
Adriane Boyd
f3906950d3 Add separate noise vs orth level to train CLI 2019-08-29 09:10:35 +02:00
Matthew Honnibal
bc5ce49859 Fix 'noise_level' in train cmd 2019-08-28 17:55:38 +02:00
Matthew Honnibal
bb911e5f4e Fix #3830: 'subtok' label being added even if learn_tokens=False (#4188)
* Prevent subtok label if not learning tokens

The parser introduces the subtok label to mark tokens that should be
merged during post-processing. Previously this happened even if we did
not have the --learn-tokens flag set. This patch passes the config
through to the parser, to prevent the problem.

* Make merge_subtokens a parser post-process if learn_subtokens

* Fix train script

* Add test for 3830: subtok problem

* Fix handlign of non-subtok in parser training
2019-08-23 17:54:00 +02:00
Ines Montani
6b3a79ac96 Call rmtree and copytree with strings (closes #3713) 2019-05-11 15:48:35 +02:00
Ines Montani
e0f487f904 Rename early_stopping_iter to n_early_stopping 2019-04-22 14:31:25 +02:00
Ines Montani
9767427669 Auto-format 2019-04-22 14:31:11 +02:00
Krzysztof Kowalczyk
cc1516ec26 Improved training and evaluation (#3538)
* Add early stopping

* Add return_score option to evaluate

* Fix missing str to path conversion

* Fix import + old python compatibility

* Fix bad beam_width setting during cpu evaluation in spacy train with gpu option turned on
2019-04-15 12:04:36 +02:00
Ines Montani
0f8739c7cb Update train.py 2019-03-16 16:04:15 +01:00
Ines Montani
e7aa25d9b1 Fix beam width integration 2019-03-16 16:02:47 +01:00
Ines Montani
c94742ff64 Only add beam width if customised 2019-03-16 15:55:31 +01:00
Ines Montani
7a354761c7 Auto-format 2019-03-16 15:55:13 +01:00
Matthew Honnibal
daa8c3787a Add eval_beam_widths argument to spacy train 2019-03-16 15:02:39 +01:00
Matthew Honnibal
f762c36e61 Evaluate accuracy at multiple beam widths 2019-03-15 15:19:49 +01:00
Jari Bakken
0546135fba Set vectors.name when updating meta.json during training (#3100)
* Set vectors.name when updating meta.json during training

* add vectors name to meta in `spacy package`
2018-12-27 19:55:40 +01:00
Matthew Honnibal
1788bf1af7 Unbreak progress bar 2018-12-20 13:57:00 +01:00
Matthew Honnibal
92f4b9c8ea set max batch size to 1000 2018-12-17 23:15:39 +00:00
Matthew Honnibal
fb56028476 Remove b1 and b2 decay 2018-12-12 12:37:07 +01:00
Matthew Honnibal
83ac227bd3
💫 Better support for semi-supervised learning (#3035)
The new spacy pretrain command implemented BERT/ULMFit/etc-like transfer learning, using our Language Modelling with Approximate Outputs version of BERT's cloze task. Pretraining is convenient, but in some ways it's a bit of a strange solution. All we're doing is initialising the weights. At the same time, we're putting a lot of work into our optimisation so that it's less sensitive to initial conditions, and more likely to find good optima. I discuss this a bit in the pseudo-rehearsal blog post: https://explosion.ai/blog/pseudo-rehearsal-catastrophic-forgetting
Support semi-supervised learning in spacy train

One obvious way to improve these pretraining methods is to do multi-task learning, instead of just transfer learning. This has been shown to work very well: https://arxiv.org/pdf/1809.08370.pdf . This patch makes it easy to do this sort of thing.

    Add a new argument to spacy train, --raw-text. This takes a jsonl file with unlabelled data that can be used in arbitrary ways to do semi-supervised learning.

    Add a new method to the Language class and to pipeline components, .rehearse(). This is like .update(), but doesn't expect GoldParse objects. It takes a batch of Doc objects, and performs an update on some semi-supervised objective.

    Move the BERT-LMAO objective out from spacy/cli/pretrain.py into spacy/_ml.py, so we can create a new pipeline component, ClozeMultitask. This can be specified as a parser or NER multitask in the spacy train command. Example usage:

python -m spacy train en ./tmp ~/data/en-core-web/train/nw.json ~/data/en-core-web/dev/nw.json --pipeline parser --raw-textt ~/data/unlabelled/reddit-100k.jsonl --vectors en_vectors_web_lg --parser-multitasks cloze

Implement rehearsal methods for pipeline components

The new --raw-text argument and nlp.rehearse() method also gives us a good place to implement the the idea in the pseudo-rehearsal blog post in the parser. This works as follows:

    Add a new nlp.resume_training() method. This allocates copies of pre-trained models in the pipeline, setting things up for the rehearsal updates. It also returns an optimizer object. This also greatly reduces confusion around the nlp.begin_training() method, which randomises the weights, making it not suitable for adding new labels or otherwise fine-tuning a pre-trained model.

    Implement rehearsal updates on the Parser class, making it available for the dependency parser and NER. During rehearsal, the initial model is used to supervise the model being trained. The current model is asked to match the predictions of the initial model on some data. This minimises catastrophic forgetting, by keeping the model's predictions close to the original. See the blog post for details.

    Implement rehearsal updates for tagger

    Implement rehearsal updates for text categoriz
2018-12-10 16:25:33 +01:00
Matthew Honnibal
b1c8731b4d Make spacy train respect LOG_FRIENDLY 2018-12-10 09:46:53 +01:00
Matthew Honnibal
0994dc50d8 Merge branch 'develop' of https://github.com/explosion/spaCy into develop 2018-12-10 05:35:01 +00:00
Matthew Honnibal
24f2e9bc07 Tweak training params 2018-12-09 17:08:58 +00:00
Matthew Honnibal
1b1a1af193 Fix printing in spacy train 2018-12-09 06:03:49 +01:00
Matthew Honnibal
cb16b78b0d Set dropout rate to 0.2 2018-12-08 19:59:11 +01:00
Ines Montani
ffdd5e964f
Small CLI improvements (#3030)
* Add todo

* Auto-format

* Update wasabi pin

* Format training results with wasabi

* Remove loading animation from model saving

Currently behaves weirdly

* Inline messages

* Remove unnecessary path2str

Already taken care of by printer

* Inline messages in CLI

* Remove unused function

* Move loading indicator into loading function

* Check for invalid whitespace entities
2018-12-08 11:49:43 +01:00
Matthew Honnibal
b2bfd1e1c8 Move dropout and batch sizes out of global scope in train cmd 2018-12-07 20:54:35 +01:00
Ines Montani
f37863093a 💫 Replace ujson, msgpack and dill/pickle/cloudpickle with srsly (#3003)
Remove hacks and wrappers, keep code in sync across our libraries and move spaCy a few steps closer to only depending on packages with binary wheels 🎉

See here: https://github.com/explosion/srsly

    Serialization is hard, especially across Python versions and multiple platforms. After dealing with many subtle bugs over the years (encodings, locales, large files) our libraries like spaCy and Prodigy have steadily grown a number of utility functions to wrap the multiple serialization formats we need to support (especially json, msgpack and pickle). These wrapping functions ended up duplicated across our codebases, so we wanted to put them in one place.

    At the same time, we noticed that having a lot of small dependencies was making maintainence harder, and making installation slower. To solve this, we've made srsly standalone, by including the component packages directly within it. This way we can provide all the serialization utilities we need in a single binary wheel.

    srsly currently includes forks of the following packages:

        ujson
        msgpack
        msgpack-numpy
        cloudpickle



* WIP: replace json/ujson with srsly

* Replace ujson in examples

Use regular json instead of srsly to make code easier to read and follow

* Update requirements

* Fix imports

* Fix typos

* Replace msgpack with srsly

* Fix warning
2018-12-03 01:28:22 +01:00
Matthew Honnibal
d9d339186b Fix dropout and batch-size defaults 2018-12-01 13:42:35 +00:00
Matthew Honnibal
3139b020b5 Fix train script 2018-11-30 22:17:08 +00:00