Commit Graph

28 Commits

Author SHA1 Message Date
Adriane Boyd
86d01e9229 Tidy up with flake8: imports, comparisons, etc. 2021-06-28 12:08:15 +02:00
Adriane Boyd
5eeb25f043 Tidy up code 2021-06-28 12:08:15 +02:00
Adriane Boyd
95c0833656
Add training option to set annotations on update (#7767)
* Add training option to set annotations on update

Add a `[training]` option called `set_annotations_on_update` to specify
a list of components for which the predicted annotations should be set
on `example.predicted` immediately after that component has been
updated. The predicted annotations can be accessed by later components
in the pipeline during the processing of the batch in the same `update`
call.

* Rename to annotates / annotating_components

* Add test for `annotating_components` when training from config

* Add documentation
2021-04-26 16:53:53 +02:00
Adriane Boyd
ff84075839
Support large/infinite training corpora (#7208)
* Support infinite generators for training corpora

Support a training corpus with an infinite generator in the `spacy
train` training loop:

* Revert `create_train_batches` to the state where an infinite generator
can be used as the in the first epoch of exactly one epoch without
resulting in a memory leak (`max_epochs != 1` will still result in a
memory leak)
* Move the shuffling for the first epoch into the corpus reader,
renaming it to `spacy.Corpus.v2`.

* Switch to training option for shuffling in memory

Training loop:

* Add option `training.shuffle_train_corpus_in_memory` that controls
whether the corpus is loaded in memory once and shuffled in the training
loop
  * Revert changes to `create_train_batches` and rename to
`create_train_batches_with_shuffling` for use with `spacy.Corpus.v1` and
a corpus that should be loaded in memory
  * Add `create_train_batches_without_shuffling` for a corpus that
should not be shuffled in the training loop: the corpus is merely
batched during training

Corpus readers:

* Restore `spacy.Corpus.v1`
* Add `spacy.ShuffledCorpus.v1` for a corpus shuffled in memory in the
reader instead of the training loop
  * In combination with `shuffle_train_corpus_in_memory = False`, each
epoch could result in a different augmentation

* Refactor create_train_batches, validation

* Rename config setting to `training.shuffle_train_corpus`
* Refactor to use a single `create_train_batches` method with a
`shuffle` option
* Only validate `get_examples` in initialize step if:
  * labels are required
  * labels are not provided

* Switch back to max_epochs=-1 for streaming train corpus

* Use first 100 examples for stream train corpus init

* Always check validate_get_examples in initialize
2021-04-08 18:08:04 +10:00
Ayush Chaurasia
3c2ce41dd8
W&B integration: Optional support for dataset and model checkpoint logging and versioning (#7429)
* Add optional artifacts logging

* Update docs

* Update spacy/training/loggers.py

Co-authored-by: Sofie Van Landeghem <svlandeg@users.noreply.github.com>

* Update spacy/training/loggers.py

Co-authored-by: Sofie Van Landeghem <svlandeg@users.noreply.github.com>

* Update spacy/training/loggers.py

Co-authored-by: Sofie Van Landeghem <svlandeg@users.noreply.github.com>

* Bump WandbLogger Version

* Add documentation of v1 to legacy docs

* bump spacy-legacy to 3.0.2 (to be released)

Co-authored-by: Sofie Van Landeghem <svlandeg@users.noreply.github.com>
Co-authored-by: svlandeg <sofie.vanlandeghem@gmail.com>
2021-04-01 19:36:23 +02:00
Adriane Boyd
97bcf2ae3a
Fix patience for identical scores (#7250)
* Fix patience for identical scores

Fix training patience so that the earliest best step is chosen for
identical max scores.

* Restore break, remove print

* Explicitly define best_step for clarity
2021-03-06 18:42:14 +11:00
Ines Montani
c0926c9088
WIP: Various small training changes (#6818)
* Allow output_path to be None during training

* Fix cat scoring (?)

* Improve error message for weighted None score

* Improve messages

So we can call this in other places etc.

* FIx output path check

* Use latest wasabi

* Revert "Improve error message for weighted None score"

This reverts commit 7059926763.

* Exclude None scores from final score by default

It's otherwise very difficult to keep track of the score weights if we modify a config programmatically, source components etc.

* Update warnings and use logger.warning
2021-01-26 14:51:52 +11:00
Matthew Honnibal
c04bab6bae
Fix train loop to avoid swallowing tracebacks (#6693)
* Avoid swallowing tracebacks in train loop

* Format

* Handle first
2021-01-09 08:25:47 +08:00
Bruno
1a77607036
spaCy v3 is not saving the best version in training loop (#6629)
* Save best only if is the best and also respect the average config

* Create bratao.md

* Update loop.py

* Remove average check

* Keep before_to_disk
2021-01-06 12:51:30 +11:00
Adriane Boyd
b57be94c78
Fix memory issues in Language.evaluate (#6386)
* Fix memory issues in Language.evaluate

Reset annotation in predicted docs before evaluating and store all data
in `examples`.

* Minor refactor to docs generator init

* Fix generator expression

* Fix final generator check

* Refactor pipeline loop

* Handle examples generator in Language.evaluate

* Add test with generator

* Use make_doc
2020-12-31 10:45:50 +11:00
Ines Montani
6cfa66ed1c
Make training.loop return nlp object and path (#6520) 2020-12-08 14:55:55 +08:00
Ines Montani
ff4267d181 Fix success message [ci skip] 2020-10-15 14:42:08 +02:00
Ines Montani
8ac5f22253 Adjust error message 2020-10-09 18:00:16 +02:00
svlandeg
18dfb27985 Add custom error when evaluation throws a KeyError 2020-10-09 12:05:33 +02:00
Sofie Van Landeghem
d093d6343b
TrainablePipe (#6213)
* rename Pipe to TrainablePipe

* split functionality between Pipe and TrainablePipe

* remove unnecessary methods from certain components

* cleanup

* hasattr(component, "pipe") should be sufficient again

* remove serialization and vocab/cfg from Pipe

* unify _ensure_examples and validate_examples

* small fixes

* hasattr checks for self.cfg and self.vocab

* make is_resizable and is_trainable properties

* serialize strings.json instead of vocab

* fix KB IO + tests

* fix typos

* more typos

* _added_strings as a set

* few more tests specifically for _added_strings field

* bump to 3.0.0a36
2020-10-08 21:33:49 +02:00
Ines Montani
568e12215d
Merge pull request #6206 from svlandeg/fix/patterns-init 2020-10-06 10:27:23 +02:00
Ines Montani
be99f1e4de
Remove output dirs before training (#6204)
* Remove output dirs before training

* Re-raise error if cleaning fails
2020-10-05 20:11:16 +02:00
svlandeg
4e3ace4b8c is_trainable method 2020-10-05 17:43:42 +02:00
svlandeg
dc06912c76 prevent loss keyerror for non-trainable components 2020-10-05 16:33:28 +02:00
Matthew Honnibal
84ae197dd6 Fix logger 2020-10-04 14:16:53 +02:00
Matthew Honnibal
85ede32680 Format 2020-10-03 19:26:23 +02:00
Matthew Honnibal
b305f2ff5a Fix loggers 2020-10-03 19:26:10 +02:00
Ines Montani
3bc3c05fcc Tidy up and auto-format 2020-10-03 17:20:18 +02:00
Matthew Honnibal
db419f6b2f
Improve control of training progress and logging (#6184)
* Make logging and progress easier to control

* Update docs

* Cleanup errors

* Fix ConfigValidationError

* Pass stdout/stderr, not wasabi.Printer

* Fix type

* Upd logging example

* Fix logger example

* Fix type
2020-10-03 14:57:46 +02:00
Ines Montani
2be80379ec Fix small issues, resolve_dot_names and debug model 2020-09-29 20:38:35 +02:00
Ines Montani
63d1598137 Simplify config use in Language.initialize 2020-09-29 16:05:48 +02:00
Ines Montani
a139fe672b Fix typos and refactor CLI logging 2020-09-28 21:17:10 +02:00
Ines Montani
822ea4ef61 Refactor CLI 2020-09-28 15:09:59 +02:00