python3-nltk-3.7-bp156.4.3.1<>,fjI%z )J7ӟR(R2MKXGR>i_+'iB@,t4,|yG-6-׃nZV%g*0*#T[O.~ `˽ٴ%dRm$n;0ȗc#,< +.z:j$t&5j=B<_3C$k n`,Έp~;(LMo/~o'hMXBZ 7 ٭z9by:FRh '4BE8o·UXHK¢b= 60.2(-'٨{9K`9׊+E?ظd  8  6BSY`` h ' :p Z _rP,   (&809|:>@FG,HIX8Y<\L]^~@bkcdefluvwx4y*z׌לנ > H lrشCpython3-nltk3.7bp156.4.3.1Natural Language ToolkitNLTK -- the Natural Language Toolkit -- is a suite of Python modules, data sets and tutorials supporting research and development in Natural Language Processing.fji03-ch2dFSUSE Linux Enterprise 15openSUSEApache-2.0http://bugs.opensuse.orgUnspecifiedhttp://nltk.org/linuxnoarch# python3_install_alternative: update-alternatives --quiet --install /usr/bin/nltk nltk /usr/bin/nltk-3.6 36# python3_uninstall_alternative: if [ ! -e "/usr/bin/nltk-3.6" ]; then update-alternatives --quiet --remove "nltk" "/usr/bin/nltk-3.6" fiki%   Z[::mmV%0%2211oo--XYmjmx==TTa*;99XhXh//eeUUyyX9Ha20aCH--22%y%yMM(x7C)&OO__pp 88%7 -WW$0$0EE+vS?**%%r/ ++'9'93) 02i  D D <%&*r !!'7\y:t;$$GsvK|K|$$&d&K#K#$7$7rr'l'lC*CSSj--h(@@;;66ss###a#a <<./#_#== XX+x+xA)AO Y[SS*#*Y)j)jL%% [e$ &/W+2  3$81??w |D@ 0 ! 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    /bin/sh/bin/sh/usr/bin/python3.6python(abi)python3-regexpython3-sixrpmlib(CompressedFileNames)rpmlib(FileDigests)rpmlib(PartialHardlinkSets)rpmlib(PayloadFilesHavePrefix)rpmlib(PayloadIsXz)update-alternatives3.63.0.4-14.6.0-14.0.4-14.0-15.2-14.14.3fb9@^@^l@]c@]x]6\@\`@\^\Z@ZZ1@Zp^@Z]@Z8@X+XU]Daniel Garcia Matej Cepl John Vandenberg Tomáš Chvátal Matej Cepl Tomáš Chvátal Tomáš Chvátal pgajdos@suse.comJohn Vandenberg John Vandenberg John Vandenberg jengelh@inai.debadshah400@gmail.comguigo.lourenco@gmail.comguigo.lourenco@gmail.combadshah400@gmail.comstephan.barth@suse.comtoddrme2178@gmail.comtoddrme2178@gmail.com- Add CVE-2024-39705.patch and restrict-wordnet-app-pickle.patch upstream patches to fix unsafe pickle usage. (CVE-2024-39705, gh#nltk/nltk#3266, bsc#1227174).- Update to 3.7 - Improve and update the NLTK team page on nltk.org (#2855, [#2941]) - Drop support for Python 3.6, support Python 3.10 (#2920) - Update to 3.6.7 - Resolve IndexError in `sent_tokenize` and `word_tokenize` (#2922) - Update to 3.6.6 - Refactor `gensim.doctest` to work for gensim 4.0.0 and up (#2914) - Add Precision, Recall, F-measure, Confusion Matrix to Taggers (#2862) - Added warnings if .zip files exist without any corresponding .csv files. (#2908) - Fix `FileNotFoundError` when the `download_dir` is a non-existing nested folder (#2910) - Rename omw to omw-1.4 (#2907) - Resolve ReDoS opportunity by fixing incorrectly specified regex (#2906, bsc#1191030, CVE-2021-3828). - Support OMW 1.4 (#2899) - Deprecate Tree get and set node methods (#2900) - Fix broken inaugural test case (#2903) - Use Multilingual Wordnet Data from OMW with newer Wordnet versions (#2889) - Keep NLTKs "tokenize" module working with pathlib (#2896) - Make prettyprinter to be more readable (#2893) - Update links to the nltk book (#2895) - Add `CITATION.cff` to nltk (#2880) - Resolve serious ReDoS in PunktSentenceTokenizer (#2869) - Delete old CI config files (#2881) - Improve Tokenize documentation + add TokenizerI as superclass for TweetTokenizer (#2878) - Fix expected value for BLEU score doctest after changes from [#2572] - Add multi Bleu functionality and tests (#2793) - Deprecate 'return_str' parameter in NLTKWordTokenizer and TreebankWordTokenizer (#2883) - Allow empty string in CFG's + more (#2888) - Partition `tree.py` module into `tree` package + pickle fix (#2863) - Fix several TreebankWordTokenizer and NLTKWordTokenizer bugs (#2877) - Rewind Wordnet data file after each lookup (#2868) - Correct __init__ call for SyntaxCorpusReader subclasses (#2872) - Documentation fixes (#2873) - Fix levenstein distance for duplicated letters (#2849) - Support alternative Wordnet versions (#2860) - Remove hundreds of formatting warnings for nltk.org (#2859) - Modernize `nltk.org/howto` pages (#2856) - Fix Bleu Score smoothing function from taking log(0) (#2839) - Update third party tools to newer versions and removing MaltParser fixed version (#2832) - Fix TypeError: _pretty() takes 1 positional argument but 2 were given in sem/drt.py (#2854) - Replace `http` with `https` in most URLs (#2852) - Update to 3.6.5 - modernised nltk.org website - addressed LGTM.com issues - support ZWJ sequences emoji and skin tone modifer emoji in TweetTokenizer - METEOR evaluation now requires pre-tokenized input - Code linting and type hinting - implement get_refs function for DrtLambdaExpression - Enable automated CoreNLP, Senna, Prover9/Mace4, Megam, MaltParser CI tests - specify minimum regex version that supports regex.Pattern - avoid re.Pattern and regex.Pattern which fail for Python 3.6, 3.7 - Update to 3.6.4 - deprecate `nltk.usage(obj)` in favor of `help(obj)` - resolve ReDoS vulnerability in Corpus Reader - solidify performance tests - improve phone number recognition in tweet tokenizer - refactored CISTEM stemmer for German - identify NLTK Team as the author - replace travis badge with github actions badge - add SECURITY.md - Update to 3.6.3 - Dropped support for Python 3.5 - Run CI tests on Windows, too - Moved from Travis CI to GitHub Actions - Code and comment cleanups - Visualize WordNet relation graphs using Graphviz - Fixed large error in METEOR score - Apply isort, pyupgrade, black, added as pre-commit hooks - Prevent debug_decisions in Punkt from throwing IndexError - Resolved ZeroDivisionError in RIBES with dissimilar sentences - Initialize WordNet IC total counts with smoothing value - Fixed AttributeError for Arabic ARLSTem2 stemmer - Many fixes and improvements to lm language model package - Fix bug in nltk.metrics.aline, C_skip = -10 - Improvements to TweetTokenizer - Optional show arg for FreqDist.plot, ConditionalFreqDist.plot - edit_distance now computes Damerau-Levenshtein edit-distance - Update to 3.6.2 - move test code to nltk/test - fix bug in NgramAssocMeasures (order preserving fix) - Update to 3.6 - add support for Python 3.9 - add Tree.fromlist - compute Minimum Spanning Tree of unweighted graph using BFS - fix bug with infinite loop in Wordnet closure and tree - fix bug in calculating BLEU using smoothing method 4 - Wordnet synset similarities work for all pos - new Arabic light stemmer (ARLSTem2) - new syllable tokenizer (LegalitySyllableTokenizer) - remove nose in favor of pytest- Update to v3.5 * add support for Python 3.8 * drop support for Python 2 * create NLTK's own Tokenizer class distinct from the Treebank reference tokeniser * update Vader sentiment analyser * fix JSON serialization of some PoS taggers * minor improvements in grammar.CFG, Vader, pl196x corpus reader, StringTokenizer * change implementation <= and >= for FreqDist so they are partial orders * make FreqDist iterable * correctly handle Penn Treebank trees with a unlabeled branching top node- Fix build without python2- Replace %fdupes -s with plain %fdupes; hardlinks are better.- Update to 3.4.5 (bsc#1146427, CVE-2019-14751): * Fixed security bug in downloader: Zip slip vulnerability - for the unlikely situation where a user configures their downloader to use a compromised server CVE-2019-14751- Update to 3.4.4: * fix bug in plot function (probability.py) * add improved PanLex Swadesh corpus reader * add Text.generate() * add QuadgramAssocMeasures * add SSP to tokenizers * return confidence of best tag from AveragedPerceptron * make plot methods return Axes objects * don't require list arguments to PositiveNaiveBayesClassifier.train * fix Tree classes to work with native Python copy library * fix inconsistency for NomBank * fix random seeding in LanguageModel.generate * fix ConditionalFreqDist mutation on tabulate/plot call * fix broken links in documentation * fix misc Wordnet issues * update installation instructions- version update to 3.4.1 * add chomsky_normal_form for CFGs * add meteor score * add minimum edit/Levenshtein distance based alignment function * allow access to collocation list via text.collocation_list() * support corenlp server options * drop support for Python 3.4 * other minor fixes- Remove Python 3 dependency on singledispatch- Update to v3.4 + Support Python 3.7 + New Language Modeling package + Cistem Stemmer for German + Support Russian National Corpus incl POS tag model + Krippendorf Alpha inter-rater reliability test + Comprehensive code clean-ups + Switch continuous integration from Jenkins to Travis - from v3.3 + Support Python 3.6 + New interface to CoreNLP + Support synset retrieval by sense key + Minor fixes to CoNLL Corpus Reader + AlignedSent + Fixed minor inconsistencies in APIs and API documentation + Better conformance to PEP8 + Drop Moses Tokenizer (incompatible license)- Add missing dependency six - Remove unnecessary build dependency six - Recommend all optional dependencies- Trim redundant wording from description.- Use \%license instead of \%doc to install License.txt.- Depend on the full python interpreter to fix sqlite3 import during %check- Depend on python-rpm-macros - Build for both Python2 and Python3- Update to version 3.2.5: * Arabic stemmers (ARLSTem, Snowball) * NIST MT evaluation metric and added NIST international_tokenize * Moses tokenizer * Document Russian tagger * Fix to Stanford segmenter * Improve treebank detokenizer, VerbNet, Vader * Misc code and documentation cleanups * Implement fixes suggested by LGTM - Convert specfile to python single-spec style. - Drop unneeded BuildRequires: python-PyYAML, python-xml, python-devel; not required for building. - Change existing Requires to Recommends: these are really needed for additional features, and not required for basic nltk usage. - Add new Recommends: python-scipy, python-matplotlib, python-pyparsing, and python-gensim; enables other optional features. - Run fdupes to link-up duplicate files. - Remove exec permissions for a file not intended to be executed (not in exec path, no hashbang, etc.) - Remove hashbangs from non-executable files. - Run tests following the suggestion from http://www.nltk.org/install.html.- update to version 3.2.2 Upstream changelog: Support for Aline, ChrF and GLEU MT evaluation metrics, Russian POS tagger model, Moses detokenizer, rewrite Porter Stemmer and FrameNet corpus reader, update FrameNet Corpus to version 1.7, fixes: stanford_segmenter.py, SentiText, CoNLL Corpus Reader, BLEU, naivebayes, Krippendorff’s alpha, Punkt, Moses tokenizer, TweetTokenizer, ToktokTokenizer; improvements to testing framework- Update to version 3.2.1 + No changelog available- Remove upstreamed nltk-2.0.4-dont-use-python-distribute.patch - Update to version 3.0.2 + No changelog available/bin/sh/bin/shi03-ch2d 1721985770  !"#$$&&()**,,./0123446688:;<<>?@AACCEFGGIIKKMMOOQQSTUVWXYZ[\]^_`abbddfghhjjlmnopqrstuvvxxzz||~~      !!##%%''))++--/01134567799;;==??ABCCEEGGIJKLMMOPQRSSUVWXYZ[\]^_`abcdefghijklmnopqrstuvwxyz{|}~       ""$%&&((**,,..0022446689:;<=>?@ABCDEFGHIJKLMNOOQRSTUUWXYY[\]^_`aacdefggiiklmnopqrstuvwxyz{|}~~     !"#$%&'()*+,-./0123456789:;<=>?@ABCDEFGHIJKLMNOPQRSTUUWXYZ[[]]__abcdefggiiklmmopqqstuvwxyy{|}}      !!##%%'')*+,-./0123456789:;<=>??ABCDEFGGIIKLMMOOQQSSUUWWYY[\]^__aaccefghijklmnopqrstuvwxyzz||~3.7-bp156.4.3.1    !!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!!! 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