Greg Thompson
Update nlu endpoint to handle new mathtext features
64033b8
raw
history blame
No virus
3.52 kB
from mathtext_fastapi.logging import prepare_message_data_for_logging
from mathtext.sentiment import sentiment
from mathtext.text2int import text2int
import re
def build_nlu_response_object(type, data, confidence):
""" Turns nlu results into an object to send back to Turn.io
Inputs
- type: str - the type of nlu run (integer or sentiment-analysis)
- data: str - the student message
- confidence: - the nlu confidence score (sentiment) or '' (integer)
"""
return {'type': type, 'data': data, 'confidence': confidence}
def test_for_float_or_int(message_data, message_text):
nlu_response = {}
if type(message_text) == int or type(message_text) == float:
nlu_response = build_nlu_response_object('integer', message_text, '')
prepare_message_data_for_logging(message_data, nlu_response)
return nlu_response
def test_for_number_sequence(message_text_arr, message_data, message_text):
nlu_response = {}
if all(ele.isdigit() for ele in message_text_arr):
nlu_response = build_nlu_response_object(
'integer',
','.join(message_text_arr),
''
)
prepare_message_data_for_logging(message_data, nlu_response)
return nlu_response
def run_text2int_on_each_list_item(message_text_arr):
""" Attempts to convert each list item to an integer
Input
- message_text_arr: list - a set of text extracted from the student message
Output
- student_response_arr: list - a set of integers (32202 for error code)
"""
student_response_arr = []
for student_response in message_text_arr:
int_api_resp = text2int(student_response.lower())
student_response_arr.append(int_api_resp)
return student_response_arr
def run_sentiment_analysis(message_text):
# TODO: Add intent labelling here
# TODO: Add logic to determine whether intent labeling or sentiment analysis is more appropriate (probably default to intent labeling)
return sentiment(message_text)
def evaluate_message_with_nlu(message_data):
# Keeps system working with two different inputs - full and filtered @event object
try:
message_text = message_data['message_body']
except KeyError:
message_data = {
'author_id': message_data['message']['_vnd']['v1']['chat']['owner'],
'author_type': message_data['message']['_vnd']['v1']['author']['type'],
'contact_uuid': message_data['message']['_vnd']['v1']['chat']['contact_uuid'],
'message_body': message_data['message']['text']['body'],
'message_direction': message_data['message']['_vnd']['v1']['direction'],
'message_id': message_data['message']['id'],
'message_inserted_at': message_data['message']['_vnd']['v1']['chat']['inserted_at'],
'message_updated_at': message_data['message']['_vnd']['v1']['chat']['updated_at'],
}
message_text = message_data['message_body']
number_api_resp = text2int(message_text.lower())
if number_api_resp == 32202:
sentiment_api_resp = sentiment(message_text)
nlu_response = build_nlu_response_object(
'sentiment',
sentiment_api_resp[0]['label'],
sentiment_api_resp[0]['score']
)
else:
nlu_response = build_nlu_response_object(
'integer',
number_api_resp,
''
)
prepare_message_data_for_logging(message_data, nlu_response)
return nlu_response