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Add a context manage nlp.memory_zone(), which will begin
memory_zone() blocks on the vocab, string store, and potentially
other components.
Example usage:
```
with nlp.memory_zone():
for text in nlp.pipe(texts):
do_something(doc)
# do_something(doc) <-- Invalid
```
Once the memory_zone() block expires, spaCy will free any shared
resources that were allocated for the text-processing that occurred
within the memory_zone. If you create Doc objects within a memory
zone, it's invalid to access them once the memory zone is expired.
The purpose of this is that spaCy creates and stores Lexeme objects
in the Vocab that can be shared between multiple Doc objects. It also
interns strings. Normally, spaCy can't know when all Doc objects using
a Lexeme are out-of-scope, so new Lexemes accumulate in the vocab,
causing memory pressure.
Memory zones solve this problem by telling spaCy "okay none of the
documents allocated within this block will be accessed again". This
lets spaCy free all new Lexeme objects and other data that were
created during the block.
The mechanism is general, so memory_zone() context managers can be
added to other components that could benefit from them, e.g. pipeline
components.
I experimented with adding memory zone support to the tokenizer as well,
for its cache. However, this seems unnecessarily complicated. It makes
more sense to just stick a limit on the cache size. This lets spaCy
benefit from the efficiency advantage of the cache better, because
we can maintain a (bounded) cache even if only small batches of
documents are being processed.
87 lines
2.2 KiB
Cython
87 lines
2.2 KiB
Cython
from cymem.cymem cimport Pool
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from libcpp.vector cimport vector
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from preshed.maps cimport PreshMap
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from .matcher.phrasematcher cimport PhraseMatcher
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from .strings cimport StringStore
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from .structs cimport LexemeC, SpanC, TokenC
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from .tokens.doc cimport Doc
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from .typedefs cimport hash_t
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from .vocab cimport LexemesOrTokens, Vocab, _Cached
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cdef class Tokenizer:
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cdef Pool mem
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cdef PreshMap _cache
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cdef PreshMap _specials
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cdef readonly Vocab vocab
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cdef object _token_match
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cdef object _url_match
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cdef object _prefix_search
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cdef object _suffix_search
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cdef object _infix_finditer
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cdef object _rules
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cdef PhraseMatcher _special_matcher
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# TODO convert to bool in v4
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cdef int _faster_heuristics
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cdef public int max_cache_size
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cdef Doc _tokenize_affixes(self, str string, bint with_special_cases)
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cdef int _apply_special_cases(self, Doc doc) except -1
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cdef void _filter_special_spans(
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self,
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vector[SpanC] &original,
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vector[SpanC] &filtered,
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int doc_len,
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) nogil
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cdef object _prepare_special_spans(
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self,
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Doc doc,
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vector[SpanC] &filtered,
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)
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cdef int _retokenize_special_spans(
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self,
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Doc doc,
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TokenC* tokens,
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object span_data,
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)
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cdef int _try_specials_and_cache(
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self,
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hash_t key,
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Doc tokens,
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int* has_special,
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bint with_special_cases,
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) except -1
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cdef int _tokenize(
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self,
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Doc tokens,
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str span,
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hash_t key,
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int* has_special,
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bint with_special_cases,
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) except -1
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cdef str _split_affixes(
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self,
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Pool mem,
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str string,
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vector[LexemeC*] *prefixes,
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vector[LexemeC*] *suffixes, int* has_special,
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bint with_special_cases,
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)
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cdef int _attach_tokens(
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self,
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Doc tokens,
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str string,
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vector[LexemeC*] *prefixes,
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vector[LexemeC*] *suffixes, int* has_special,
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bint with_special_cases,
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) except -1
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cdef int _save_cached(
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self,
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const TokenC* tokens,
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hash_t key,
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int* has_special,
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int n,
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) except -1
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