Mercurial > p > roundup > code
view website/issues/extensions/spambayes.py @ 5762:b76be13e027e
issue2551029: Jinja2 template install error.
Issue where template's config.ini not getting updated.
Change do_install in admin.py to load config_ini.ini from template
before writing tracker's config.ini. This generates an updated
config file for the user on install preserving values required tomake
tracker work.
Added config_ini.ini files to jinja2 and responsive templates to set
required values (template_engine and static_files; static_files
resp.).
Documented new file in doc/tracker_templates.txt and added tests for
new admin.py code.
| author | John Rouillard <rouilj@ieee.org> |
|---|---|
| date | Tue, 04 Jun 2019 18:42:05 -0400 |
| parents | e46ce04d5bbc |
| children |
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import re, math from roundup.cgi.actions import Action from roundup.cgi.exceptions import * from roundup.anypy import xmlrpc_ import socket REVPAT = re.compile(r'(r[0-9]+\b|rev(ision)? [0-9]+\b)') def extract_classinfo(db, classname, nodeid): node = db.getnode(classname, nodeid) authorage = node['creation'].timestamp() - \ db.getnode('user', node.get('author', node.get('creator')))['creation'].timestamp() authorid = node.get('author', node.get('creator')) content = db.getclass(classname).get(nodeid, 'content') tokens = ["klass:%s" % classname, "author:%s" % authorid, "authorage:%d" % int(math.log(authorage)), "hasrev:%s" % (REVPAT.search(content) is not None)] return (content, tokens) def train_spambayes(db, content, tokens, is_spam): spambayes_uri = db.config.detectors['SPAMBAYES_URI'] server = xmlrpc_.client.ServerProxy(spambayes_uri, verbose=False) try: server.train({'content':content}, tokens, {}, is_spam) return (True, None) except (socket.error, xmlrpc_.client.Error) as e: return (False, str(e)) class SpambayesClassify(Action): permissionType = 'SB: May Classify' def handle(self): (content, tokens) = extract_classinfo(self.db, self.classname, self.nodeid) if "trainspam" in self.form: is_spam = True elif "trainham" in self.form: is_spam = False (status, errmsg) = train_spambayes(self.db, content, tokens, is_spam) node = self.db.getnode(self.classname, self.nodeid) props = {} if status: if node.get('spambayes_misclassified', False): props['spambayes_misclassified'] = True props['spambayes_score'] = 1.0 s = " SPAM" if not is_spam: props['spambayes_score'] = 0.0 s = " HAM" self.client.add_ok_message(self._('Message classified as') + s) else: self.client.add_error_message(self._('Unable to classify message, got error:') + errmsg) klass = self.db.getclass(self.classname) klass.set(self.nodeid, **props) self.db.commit() def sb_is_spam(obj): cutoff_score = float(obj._db.config.detectors['SPAMBAYES_SPAM_CUTOFF']) try: score = obj['spambayes_score'] except KeyError: return False return score >= cutoff_score def init(instance): instance.registerAction("spambayes_classify", SpambayesClassify) instance.registerUtil('sb_is_spam', sb_is_spam)
