def run_weather_bot(serve_forever=True):
    interpreter = RasaNLUInterpreter(getData()["model_directory"] +
                                     '/default/' + getData()["model_name"])
    agent = Agent.load(getData()["dialogue"], interpreter=interpreter)

    if serve_forever == True:
        agent.handle_channel(ConsoleInputChannel())

    return agent
def train_dialogue():  #domain_file,model_path,training_data_file):
    utils.configure_colored_logging(loglevel='INFO')

    agent = Agent(getData()["domain"],
                  policies=[MemoizationPolicy(max_history=2),
                            KerasPolicy()])

    training_data = agent.load_data(getData()["stories"])
    agent.train(training_data,
                epochs=400,
                batch_size=100,
                validation_split=0.2)
    agent.persist(getData()["dialogue"])
    return agent
示例#3
0
文件: test.py 项目: kjana83/Rasabot
from config import getData

print(getData()["data"])
示例#4
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from rasa_core.policies.memoization import MemoizationPolicy
from rasa_core.interpreter import RasaNLUInterpreter

from config import getData


def run_weather_online(input_channel, interpreter, domain_file,
                       training_data_file):
    agent = Agent(domain_file,
                  policies=[MemoizationPolicy(max_history=3),
                            KerasPolicy()],
                  interpreter=interpreter)

    training_data = agent.load_data(training_data_file)

    agent.train_online(training_data,
                       input_channel=input_channel,
                       epochs=400,
                       batch_size=100,
                       validation_split=0.2)


if __name__ == '__main__':
    utils.configure_colored_logging(loglevel='INFO')
    nlu_interpretter = RasaNLUInterpreter(getData()["model_directory"] +
                                          '/default/' +
                                          getData()["model_name"])

    run_weather_online(ConsoleInputChannel(), nlu_interpretter,
                       getData()["domain"],
                       getData()["stories"])
示例#5
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from rasa_nlu import config
from rasa_nlu.model import Interpreter
import json
import sys
from config import getData


def run_nlu(model, spacy_config):
    interpreter = Interpreter.load(model)  #, config.load(spacy_config))
    result = interpreter.parse(sys.argv[1])
    print(json.dumps(result, indent=4, sort_keys=True))


if __name__ == '__main__':
    #train_nlu('./data/data.json','./config_spacy.json','./models/nlu')
    run_nlu(
        getData()["model_directory"] + '/default/' + getData()["model_name"],
        getData()["config_spacy"])
示例#6
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def doit(reqid,reqno,times,score,guess):
	post_url = 'http://qx8888cp.com/Servers/Game/pcdd/pcddsubmit.ashx?CaiID=15'
	params = config.getData(reqid,reqno,times,score,guess)
	print('期号:%s , 下注倍数:%d,下注钱数:%d' % (reqno,times,score) )
	post = requests.post(post_url,data=json.dumps(params),cookies=config.c_dict,headers=config.headers)
	print(post.text)
示例#7
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from rasa_core.channels import HttpInputChannel
from rasa_core.agent import Agent
from rasa_core.interpreter import RasaNLUInterpreter
from rasa_slack_connector import SlackInput

from config import getData

nlu_interpreter = RasaNLUInterpreter(getData()["model_directory"] +   '/default/' + getData()["model_name"])
agent = Agent.load(getData()["dialogue"],interpreter= nlu_interpreter)
input_channel = SlackInput(getData()["slack"]["oauth_access_token"],
    getData()["slack"]["user_oauth_access_token"],
    getData()["slack"]["verification_token"],True)

agent.handle_channel(HttpInputChannel(5004,'/',input_channel))
示例#8
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from __future__ import absolute_import,division,unicode_literals

from rasa_core import utils
from rasa_core.agent import Agent
from rasa_core.policies.keras_policy import KerasPolicy
from rasa_core.policies.memoization import MemoizationPolicy

from config import getData

if __name__ == '__main__':
    utils.configure_colored_logging(loglevel='INFO')

    domain = getData()["domain"]
    stories = getData()["stories"]
    dialogue=getData()["dialogue"]

    agent = Agent(domain,policies=[MemoizationPolicy(max_history=2)
    ,KerasPolicy()])

    training_data = agent.load_data(stories)
    agent.train(training_data,
            epochs=400,
            batch_size=100,
            validation_split=0.2
    )
    agent.persist(dialogue)
示例#9
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def train_nlu(data, spacy_config, model_dir):
    training_data = load_data(data)
    trainer = Trainer(config.load(spacy_config))
    trainer.train(training_data)
    model_directory = trainer.persist(model_dir,
                                      fixed_model_name=getData()["model_name"])
示例#10
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from rasa_nlu.training_data import load_data
from rasa_nlu import config
from rasa_nlu.model import Trainer, Interpreter, Metadata
from config import getData
import json


def train_nlu(data, spacy_config, model_dir):
    training_data = load_data(data)
    trainer = Trainer(config.load(spacy_config))
    trainer.train(training_data)
    model_directory = trainer.persist(model_dir,
                                      fixed_model_name=getData()["model_name"])


if __name__ == '__main__':
    train_nlu(getData()["data"],
              getData()["config_spacy"],
              getData()["model_directory"])