Beispiel #1
0
    def _learn(self):
        """
        Begins the learning process.  Asks the user what
        part of speech the word is, and keeps track of the
        remaining words which we still need to learn about
        """
        name = self.name
        unknown_all = list(self.memory.pop("topic"))[1]
        if len(unknown_all) > 0:
            unknown = unknown_all[0]
            del unknown_all[0]
            pos = ["Noun", \
                   "Plural Noun", \
                   "Adjective", \
                   "Adverb", \
                   "Transitive Verb", \
                   "Intransitive Verb", \
                   "Preposition", \
                   "Other"]

            self.bot.send("Which of the following parts of speech is \'" + \
                     unknown + "\'?\n" + print_list(pos), name)
            self.memory.push("topic", unknown_all)
            self.memory.push("topic", unknown)
            self.memory.pop("status")
            self.memory.push("status", "pos_first")
            return None
        else:
            self.memory.pop("status")
            return "reset"
Beispiel #2
0
    def _learn(self):
        """
        Begins the learning process.  Asks the user what
        part of speech the word is, and keeps track of the
        remaining words which we still need to learn about
        """
        name = self.name
        unknown_all = list(self.memory.pop("topic"))[1]
        if len(unknown_all) > 0:
            unknown = unknown_all[0]
            del unknown_all[0]
            pos = ["Noun", \
                   "Plural Noun", \
                   "Adjective", \
                   "Adverb", \
                   "Transitive Verb", \
                   "Intransitive Verb", \
                   "Preposition", \
                   "Other"]

            self.bot.send("Which of the following parts of speech is \'" + \
                     unknown + "\'?\n" + print_list(pos), name)
            self.memory.push("topic", unknown_all)
            self.memory.push("topic", unknown)
            self.memory.pop("status")
            self.memory.push("status", "pos_first")
            return None
        else:
            self.memory.pop("status")
            return "reset"
Beispiel #3
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    def _topic(self, top, d=None, k=None, ques_word=None):
        if d == None: d = self.topics
        subtop = None

        nouns = set()
        n = find_noun(top)
        while n:
            noun = " ".join(n.leaves())
            nouns.add(noun)
            n = find_noun(top, nouns)

        nouns = list(nouns)
        if "me" in nouns: nouns.remove("me")
        if "you" in nouns: nouns.remove("you")
        print "Nouns: " + str(nouns)
        ans = None

        for topic in nouns:
            for subtopic in nouns:
                # check to see if topic is a key in the knowledge
                # dictionary, and that the the entry corresponding
                # to topic is also a dictionary
                if d.has_key(topic) and isinstance(d[topic], dict):

                    # if subtopic is a key in the entry corresponding
                    # to topic, then set the subtopic entry as the answer.
                    if d[topic].has_key(subtopic):
                        print "TOPIC:", topic
                        print "SUBTOPIC:", subtopic
                        ans = d[topic][subtopic]

                # check to see if the current topic stored in memory is
                # the same as the topic we found.
                elif topic == k:

                    # is the subtopic we found a key in the dictionary?
                    # if so, set it's entry as the anser.
                    if d.has_key(subtopic):
                        print "TOPIC:", topic
                        print "SUBTOPIC:", subtopic
                        ans = d[subtopic]

        if not ans:
            for topic in nouns:

                # if the topic is a key in the dictionary
                if d.has_key(topic):

                    # if the entry matching topic is a dictionary, then
                    # we should ask what subtopic they want to know about
                    if isinstance(d[topic], dict):
                        print "TOPIC:", topic
                        ans = d[topic]['default'] + "\n" + \
                            "Multiple keywords match your query.  " + \
                            "What did you mean to ask about?\n\n" + \
                            print_list(d[topic].keys())
                        self.memory.push("topic", topic)
                        self.memory.push("data", d[topic])

                    # otherwise, just give them the entry that corresponds
                    # to topic
                    else:
                        print "TOPIC:", topic
                        ans = d[topic]

                # if the topic we found is the same as the topic in
                # memory, then ask (again) which subtopic they
                # want to ask about
                elif topic == k:
                    print "TOPIC:", topic
                    ans = d['default'] + "\n" + \
                        "Multiple keywords match your query.  " + \
                        "What did you mean to ask about?\n\n" + \
                        print_list(d.keys())

        if not ans:
            if nouns == [] and ques_word == "what":
                print "TOPIC: knowledge"
                ans = "I know about:\n" + print_list(self.topics.keys())
            elif "what you know" in nouns or \
               "knowledge" in nouns:
                print "TOPIC: knowledge"
                ans = "I know about:\n" + print_list(self.topics.keys())
            else:
                l = nouns.pop(0)
                if len(nouns) > 0:
                    for n in xrange(len(nouns)-1):
                        l += ", " + nouns[n]

                    l += ", or " + nouns[-1]
                ans = "Sorry, I don't know about " + l + "."

        return ans
Beispiel #4
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    def _AI(self, mess, d = None, k = None):
        """
        Parses the message, and attempts to locate a topic.  If it is
        able to find a topic, it tells the user about the topic,
        otherwise it prints a message saying that it can't parse the 
        sentence, or it doesn't know about the topic.
        """

        # make sure the dictionary is set to something
        if d == None: d = self.topics

        # parse the sentence, and print the parse
        parse = self.parser.parse_sent(mess)
        print "PARSE:\n", parse
        ans = None

        # if the parse is returned as a tuple, then we know
        # that the parse failed.
        if isinstance(parse, tuple):

            # if the second value in the tuple is valid, then there were
            # words that were not in the grammar.  Tell the user about the
            # words, and then enter a function to learn the foreign words.
            if parse[1]:
                self.bot.send("Sorry, I don't understand the following words: " + \
                         ", ".join(parse[1]) + ".", self.name)
                self.memory.push("topic", list(parse[1]))
                return self._learn()

            # otherwise, we just couldn't parse the sentence
            else:
                parse = self.parser.parse_NP(mess)
                print "NP PARSE:\n", parse
                if parse:
                    ans = self._topic(parse, d=d, k=k)
                else:
                    ans = "Sorry, I couldn't parse what you just said."

        # otherwise, the parse succeeded
        else:
            # find the sentence type: STATEMENT, QUESTION, or COMMAND
            type = get_sentence_type(parse)
            print "TYPE: " + str(type)

            # based on the sentence type, find the topic of the sentence.
            # we don't yet know what the subtopic is, so just set it to
            # None.
            top = find_topic(parse, type)
            print top

            # if the sentence is a question and find_topic() found a
            # topic, then top is a tuple, and we need to store the
            # parts separately.
            ques_word = None
            if type == QUESTION and top:
                ques_word = top[1]
                top = top[0]

            # if a topic was found, then we want to look for a
            # prepositional phrase.  For example, we want to be able
            # to get TOPIC=emacs, SUBTOPIC=keys from "keys in emacs"
            if top:
                ans = self._topic(top, d=d, k=k, ques_word=ques_word)

            # otherwise, we couldn't find a topic from the sentence, so
            # tell them so
            else:
                if type == QUESTION and ques_word == "what":
                    print "TOPIC: knowledge"
                    ans = "I know about:\n" + print_list(self.topics.keys())
                else:
                    print "TOPIC: None found"
                    ans = "Sorry, I couldn't determine the topic of what you are asking me."

        # print the answer out to the terminal, and send the answer
        # to the user.
        print ans
        self.bot.send(ans, self.name)
Beispiel #5
0
            queue[r - 1] = cursor
            cursor = cursor.next

            if r == 0:
                for i in range(1, k):
                    queue[k - i].next = queue[k - i - 1]
                else:
                    if tail:
                        tail.next = queue[k - 1]
                    tail = queue[0]
            queue[r] = None

        else:
            if tail:
                tail.next = queue[0]

        return new_head


from helper import array_2_list
from helper import print_list

s = Solution()

raw = [1, 2, 3, 4, 5]
case = array_2_list(raw)

r = s.reverseKGroup(case, 3)
print_list(r)
Beispiel #6
0
    def _topic(self, top, d=None, k=None, ques_word=None):
        if d == None: d = self.topics
        subtop = None

        nouns = set()
        n = find_noun(top)
        while n:
            noun = " ".join(n.leaves())
            nouns.add(noun)
            n = find_noun(top, nouns)

        nouns = list(nouns)
        if "me" in nouns: nouns.remove("me")
        if "you" in nouns: nouns.remove("you")
        print "Nouns: " + str(nouns)
        ans = None

        for topic in nouns:
            for subtopic in nouns:
                # check to see if topic is a key in the knowledge
                # dictionary, and that the the entry corresponding
                # to topic is also a dictionary
                if d.has_key(topic) and isinstance(d[topic], dict):

                    # if subtopic is a key in the entry corresponding
                    # to topic, then set the subtopic entry as the answer.
                    if d[topic].has_key(subtopic):
                        print "TOPIC:", topic
                        print "SUBTOPIC:", subtopic
                        ans = d[topic][subtopic]

                # check to see if the current topic stored in memory is
                # the same as the topic we found.
                elif topic == k:

                    # is the subtopic we found a key in the dictionary?
                    # if so, set it's entry as the anser.
                    if d.has_key(subtopic):
                        print "TOPIC:", topic
                        print "SUBTOPIC:", subtopic
                        ans = d[subtopic]

        if not ans:
            for topic in nouns:

                # if the topic is a key in the dictionary
                if d.has_key(topic):

                    # if the entry matching topic is a dictionary, then
                    # we should ask what subtopic they want to know about
                    if isinstance(d[topic], dict):
                        print "TOPIC:", topic
                        ans = d[topic]['default'] + "\n" + \
                            "Multiple keywords match your query.  " + \
                            "What did you mean to ask about?\n\n" + \
                            print_list(d[topic].keys())
                        self.memory.push("topic", topic)
                        self.memory.push("data", d[topic])

                    # otherwise, just give them the entry that corresponds
                    # to topic
                    else:
                        print "TOPIC:", topic
                        ans = d[topic]

                # if the topic we found is the same as the topic in
                # memory, then ask (again) which subtopic they
                # want to ask about
                elif topic == k:
                    print "TOPIC:", topic
                    ans = d['default'] + "\n" + \
                        "Multiple keywords match your query.  " + \
                        "What did you mean to ask about?\n\n" + \
                        print_list(d.keys())

        if not ans:
            if nouns == [] and ques_word == "what":
                print "TOPIC: knowledge"
                ans = "I know about:\n" + print_list(self.topics.keys())
            elif "what you know" in nouns or \
               "knowledge" in nouns:
                print "TOPIC: knowledge"
                ans = "I know about:\n" + print_list(self.topics.keys())
            else:
                l = nouns.pop(0)
                if len(nouns) > 0:
                    for n in xrange(len(nouns) - 1):
                        l += ", " + nouns[n]

                    l += ", or " + nouns[-1]
                ans = "Sorry, I don't know about " + l + "."

        return ans
Beispiel #7
0
    def _AI(self, mess, d=None, k=None):
        """
        Parses the message, and attempts to locate a topic.  If it is
        able to find a topic, it tells the user about the topic,
        otherwise it prints a message saying that it can't parse the 
        sentence, or it doesn't know about the topic.
        """

        # make sure the dictionary is set to something
        if d == None: d = self.topics

        # parse the sentence, and print the parse
        parse = self.parser.parse_sent(mess)
        print "PARSE:\n", parse
        ans = None

        # if the parse is returned as a tuple, then we know
        # that the parse failed.
        if isinstance(parse, tuple):

            # if the second value in the tuple is valid, then there were
            # words that were not in the grammar.  Tell the user about the
            # words, and then enter a function to learn the foreign words.
            if parse[1]:
                self.bot.send("Sorry, I don't understand the following words: " + \
                         ", ".join(parse[1]) + ".", self.name)
                self.memory.push("topic", list(parse[1]))
                return self._learn()

            # otherwise, we just couldn't parse the sentence
            else:
                parse = self.parser.parse_NP(mess)
                print "NP PARSE:\n", parse
                if parse:
                    ans = self._topic(parse, d=d, k=k)
                else:
                    ans = "Sorry, I couldn't parse what you just said."

        # otherwise, the parse succeeded
        else:
            # find the sentence type: STATEMENT, QUESTION, or COMMAND
            type = get_sentence_type(parse)
            print "TYPE: " + str(type)

            # based on the sentence type, find the topic of the sentence.
            # we don't yet know what the subtopic is, so just set it to
            # None.
            top = find_topic(parse, type)
            print top

            # if the sentence is a question and find_topic() found a
            # topic, then top is a tuple, and we need to store the
            # parts separately.
            ques_word = None
            if type == QUESTION and top:
                ques_word = top[1]
                top = top[0]

            # if a topic was found, then we want to look for a
            # prepositional phrase.  For example, we want to be able
            # to get TOPIC=emacs, SUBTOPIC=keys from "keys in emacs"
            if top:
                ans = self._topic(top, d=d, k=k, ques_word=ques_word)

            # otherwise, we couldn't find a topic from the sentence, so
            # tell them so
            else:
                if type == QUESTION and ques_word == "what":
                    print "TOPIC: knowledge"
                    ans = "I know about:\n" + print_list(self.topics.keys())
                else:
                    print "TOPIC: None found"
                    ans = "Sorry, I couldn't determine the topic of what you are asking me."

        # print the answer out to the terminal, and send the answer
        # to the user.
        print ans
        self.bot.send(ans, self.name)