Mercurial > p > roundup > code
view website/issues/extensions/spambayes.py @ 8286:6445e63bb423
feat(web) - Use native number type input for Number() and Integer().
When editing hyperdb.Number() or hyperdb.Integer() properties, use a
native number input.
For Number you can enter digits, +/-, . and e/E for exponent (1E2 =
100).
For integer we have the same keys as number, but also add step=1 to
the input. This stops submitting 23.5 suggesting 23 or 24. It does
allow 2E4 to be submitted that is rejected with an error from the
backend. However if the spinner is used with 2E4 it is turned into
20000, a pure integer and incremented/decremented by the spinner.
The upgrade happens automatically. Directions on going back to text
input provided. User guide updated to describe addition of spinner.
Tests added.
| author | John Rouillard <rouilj@ieee.org> |
|---|---|
| date | Sat, 18 Jan 2025 14:54:31 -0500 |
| parents | e46ce04d5bbc |
| children |
line wrap: on
line source
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)
