Commit Graph

283 Commits

Author SHA1 Message Date
ines
f08c871adf Fix typo in Language.from_disk 2018-06-29 14:32:16 +02:00
Ines Montani
862da5e793 Support pipeline factories via entry points (#2348) 2018-05-22 18:29:45 +02:00
Matthew Honnibal
2c4a6d66fa Merge master into develop. Big merge, many conflicts -- need to review 2018-04-29 14:49:26 +02:00
Matthew Honnibal
a350be0601 Fix vector-name loading fix 2018-04-04 01:31:25 +02:00
Matthew Honnibal
81f4005f3d Fix loading models with pretrained vectors 2018-04-03 23:11:48 +02:00
ines
e5f47cd82d Update errors 2018-04-03 21:40:29 +02:00
Ines Montani
3141e04822
💫 New system for error messages and warnings (#2163)
* Add spacy.errors module

* Update deprecation and user warnings

* Replace errors and asserts with new error message system

* Remove redundant asserts

* Fix whitespace

* Add messages for print/util.prints statements

* Fix typo

* Fix typos

* Move CLI messages to spacy.cli._messages

* Add decorator to display error code with message

An implementation like this is nice because it only modifies the string when it's retrieved from the containing class – so we don't have to worry about manipulating tracebacks etc.

* Remove unused link in spacy.about

* Update errors for invalid pipeline components

* Improve error for unknown factories

* Add displaCy warnings

* Update formatting consistency

* Move error message to spacy.errors

* Update errors and check if doc returned by component is None
2018-04-03 15:50:31 +02:00
Matthew Honnibal
f3b7c5e537 Fix syntax error 2018-03-29 21:50:32 +02:00
Matthew Honnibal
23afa6429f Add input length error, to address #1826 2018-03-29 21:45:26 +02:00
Matthew Honnibal
a7c5ae2beb Avoid forcing a name on empty vectors, and remove print statement 2018-03-28 21:08:58 +02:00
Matthew Honnibal
95a9615221 Fix loading of multiple pre-trained vectors
This patch addresses #1660, which was caused by keying all pre-trained
vectors with the same ID when telling Thinc how to refer to them. This
meant that if multiple models were loaded that had pre-trained vectors,
errors or incorrect behaviour resulted.

The vectors class now includes a .name attribute, which defaults to:
{nlp.meta['lang']_nlp.meta['name']}.vectors
The vectors name is set in the cfg of the pipeline components under the
key pretrained_vectors. This replaces the previous cfg key
pretrained_dims.

In order to make existing models compatible with this change, we check
for the pretrained_dims key when loading models in from_disk and
from_bytes, and add the cfg key pretrained_vectors if we find it.
2018-03-28 16:02:59 +02:00
Matthew Honnibal
1f7229f40f Revert "Merge branch 'develop' of https://github.com/explosion/spaCy into develop"
This reverts commit c9ba3d3c2d, reversing
changes made to 92c26a35d4.
2018-03-27 19:23:02 +02:00
Matthew Honnibal
f57bfbccdc Fix non-projective label filtering 2018-03-27 13:41:33 +02:00
Matthew Honnibal
dd54511c4f Pass data as a function in begin_training methods 2018-03-27 09:39:59 +00:00
Matthew Honnibal
bede11b67c
Improve label management in parser and NER (#2108)
This patch does a few smallish things that tighten up the training workflow a little, and allow memory use during training to be reduced by letting the GoldCorpus stream data properly.

Previously, the parser and entity recognizer read and saved labels as lists, with extra labels noted separately. Lists were used becaue ordering is very important, to ensure that the label-to-class mapping is stable.

We now manage labels as nested dictionaries, first keyed by the action, and then keyed by the label. Values are frequencies. The trick is, how do we save new labels? We need to make sure we iterate over these in the same order they're added. Otherwise, we'll get different class IDs, and the model's predictions won't make sense.

To allow stable sorting, we map the new labels to negative values. If we have two new labels, they'll be noted as having "frequency" -1 and -2. The next new label will then have "frequency" -3. When we sort by (frequency, label), we then get a stable sort.

Storing frequencies then allows us to make the next nice improvement. Previously we had to iterate over the whole training set, to pre-process it for the deprojectivisation. This led to storing the whole training set in memory. This was most of the required memory during training.

To prevent this, we now store the frequencies as we stream in the data, and deprojectivize as we go. Once we've built the frequencies, we can then apply a frequency cut-off when we decide how many classes to make.

Finally, to allow proper data streaming, we also have to have some way of shuffling the iterator. This is awkward if the training files have multiple documents in them. To solve this, the GoldCorpus class now writes the training data to disk in msgpack files, one per document. We can then shuffle the data by shuffling the paths.

This is a squash merge, as I made a lot of very small commits. Individual commit messages below.

* Simplify label management for TransitionSystem and its subclasses

* Fix serialization for new label handling format in parser

* Simplify and improve GoldCorpus class. Reduce memory use, write to temp dir

* Set actions in transition system

* Require thinc 6.11.1.dev4

* Fix error in parser init

* Add unicode declaration

* Fix unicode declaration

* Update textcat test

* Try to get model training on less memory

* Print json loc for now

* Try rapidjson to reduce memory use

* Remove rapidjson requirement

* Try rapidjson for reduced mem usage

* Handle None heads when projectivising

* Stream json docs

* Fix train script

* Handle projectivity in GoldParse

* Fix projectivity handling

* Add minibatch_by_words util from ud_train

* Minibatch by number of words in spacy.cli.train

* Move minibatch_by_words util to spacy.util

* Fix label handling

* More hacking at label management in parser

* Fix encoding in msgpack serialization in GoldParse

* Adjust batch sizes in parser training

* Fix minibatch_by_words

* Add merge_subtokens function to pipeline.pyx

* Register merge_subtokens factory

* Restore use of msgpack tmp directory

* Use minibatch-by-words in train

* Handle retokenization in scorer

* Change back-off approach for missing labels. Use 'dep' label

* Update NER for new label management

* Set NER tags for over-segmented words

* Fix label alignment in gold

* Fix label back-off for infrequent labels

* Fix int type in labels dict key

* Fix int type in labels dict key

* Update feature definition for 8 feature set

* Update ud-train script for new label stuff

* Fix json streamer

* Print the line number if conll eval fails

* Update children and sentence boundaries after deprojectivisation

* Export set_children_from_heads from doc.pxd

* Render parses during UD training

* Remove print statement

* Require thinc 6.11.1.dev6. Try adding wheel as install_requires

* Set different dev version, to flush pip cache

* Update thinc version

* Update GoldCorpus docs

* Remove print statements

* Fix formatting and links [ci skip]
2018-03-19 02:58:08 +01:00
ines
f3f8bfc367 Add built-in factories for merge_entities and merge_noun_chunks
Allows adding those components to the pipeline out-of-the-box if they're defined in a model's meta.json. Also allows usage as nlp.add_pipe(nlp.create_pipe('merge_entities')).
2018-03-15 17:16:54 +01:00
ines
d854f69fe3 Add built-in factories for merge_entities and merge_noun_chunks
Allows adding those components to the pipeline out-of-the-box if they're defined in a model's meta.json. Also allows usage as nlp.add_pipe(nlp.create_pipe('merge_entities')).
2018-03-15 00:18:51 +01:00
Aaron Marquez
3765d84d57 Fix issue #1959 2018-02-15 12:51:49 -08:00
Claudiu-Vlad Ursache
e28de12cbd
Ensure files opened in from_disk are closed
Fixes [issue 1706](https://github.com/explosion/spaCy/issues/1706).
2018-02-13 20:49:43 +01:00
Motoki Wu
f4a7d1a423 make to sure pass in **cfg to each component when training 2018-01-30 18:29:54 -08:00
ines
4046823699 Only check component in factories if string (see #1911) 2018-01-30 16:29:07 +01:00
ines
ce10d320c4 Fix component check in self.factories (see #1911) 2018-01-30 16:09:37 +01:00
ines
8901814248 Improve error handling if pipeline component is not callable (resolves #1911)
Also add help message if user accidentally calls nlp.add_pipe() with a string of a built-in component name.
2018-01-30 15:43:03 +01:00
ines
a31506e060 Fix off-by-one error in nlp.add_pipe(after=name) (fixes #1654) 2017-11-28 20:37:55 +01:00
Ines Montani
6362024cf8
Merge pull request #1645 from GreenRiverRUS/fix_default_meta
Fixed spaCy version string in default meta
2017-11-27 11:58:02 +00:00
Vadim Mazaev
59f03ab1d7 Fixed spacy version string in default meta 2017-11-26 23:02:07 +03:00
Matthew Honnibal
8fec7268eb Move string cleanup under a setting flag 2017-11-23 12:19:18 +00:00
Matthew Honnibal
5949777b12 Fix misleading multi-threading docstring 2017-11-23 12:18:59 +00:00
Roman Domrachev
61d28d03e4 Try again to do selective remove cache 2017-11-15 19:11:12 +03:00
Roman Domrachev
505c6a2f2f Completely cleanup tokenizer cache
Tokenizer cache can have be different keys than string

That modification can slow down tokenizer and need to be measured
2017-11-15 17:55:48 +03:00
Roman Domrachev
a33d5a068d Try to hold origin data instead of restore it 2017-11-14 22:40:03 +03:00
Roman Domrachev
91e2fa6561 Clean all caches 2017-11-14 21:15:04 +03:00
Roman Domrachev
86ca434c93 Merge github.com:explosion/spaCy 2017-11-14 17:46:22 +03:00
Roman Domrachev
a2745b0e84 StringStore now actually cleaned
Do not lose docs in ref tracking
2017-11-14 17:45:50 +03:00
Matthew Honnibal
dd1678eab3
Edit comment 2017-11-11 18:37:08 +01:00
Roman Domrachev
ee60a52ee7 Fix test imports and last batch cleanup 2017-11-11 11:32:16 +03:00
Roman Domrachev
4a6b094e09 Remove unused import 2017-11-11 03:13:05 +03:00
Roman Domrachev
3c600adf23 Try to fix StringStore clean up (see #1506) 2017-11-11 03:11:27 +03:00
Matthew Honnibal
45e0617e61 Allow Language.update to take unicode text and dict objects 2017-11-06 22:07:38 +01:00
Matthew Honnibal
5c85bf3791 Fix missing import 2017-11-06 15:06:27 +01:00
Matthew Honnibal
465adfee94 Remove unused resume_training method, and pass optimizer through 2017-11-06 14:26:00 +01:00
Matthew Honnibal
38109a0e4a Register SentenceSegmenter in Language.factories 2017-11-05 18:45:57 +01:00
Matthew Honnibal
d185927998 Undo harmful pickling hacks on Language class 2017-11-04 23:07:03 +01:00
Matthew Honnibal
2bf21cbe29 Update model after optimising it instead of waiting 2017-11-03 20:20:01 +01:00
ines
5f661a1b3a Remove tensorizer from pre-set pipe_names 2017-11-01 19:48:33 +01:00
ines
bfe17b7df1 Fix begin_training if get_gold_tuples is None 2017-11-01 13:14:31 +01:00
ines
37e62ab0e2 Update vector meta in meta.json 2017-11-01 01:25:09 +01:00
ines
8e02294241 Add vectors to Language.meta 2017-10-30 18:39:48 +01:00
ines
d96e72f656 Tidy up rest 2017-10-27 21:07:59 +02:00
ines
91899d337b Tidy up language, lemmatizer and scorer 2017-10-27 14:40:14 +02:00