Test Search Actor extracting relative dates & multiple questions

This commit is contained in:
Debanjum Singh Solanky 2023-03-16 14:49:35 -06:00
parent 45cb510421
commit 2600cc9d4d
2 changed files with 111 additions and 27 deletions

View file

@ -4,9 +4,10 @@ from datetime import datetime
# External Packages
import pytest
from freezegun import freeze_time
# Internal Packages
from khoj.processor.conversation.gpt import converse
from khoj.processor.conversation.gpt import converse, extract_questions
from khoj.processor.conversation.utils import message_to_log
@ -20,6 +21,91 @@ if api_key is None:
# Test
# ----------------------------------------------------------------------------------------------------
@pytest.mark.chatquality
@freeze_time("1984-04-02")
def test_extract_question_with_date_filter_from_relative_day():
# Act
response = extract_questions("Where did I go for dinner yesterday?")
# Assert
expected_responses = [
('dt="1984-04-01"', ""),
('dt>="1984-04-01"', 'dt<"1984-04-02"'),
('dt>"1984-03-31"', 'dt<"1984-04-02"'),
]
assert len(response) == 1
assert any([start in response[0] and end in response[0] for start, end in expected_responses]), (
"Expected date filter to limit to 1st April 1984 in response but got" + response[0]
)
# ----------------------------------------------------------------------------------------------------
@pytest.mark.chatquality
@freeze_time("1984-04-02")
def test_extract_question_with_date_filter_from_relative_month():
# Act
response = extract_questions("Which countries did I visit last month?")
# Assert
expected_responses = [('dt>="1984-03-01"', 'dt<"1984-04-01"'), ('dt>="1984-03-01"', 'dt<="1984-03-31"')]
assert len(response) == 1
assert any([start in response[0] and end in response[0] for start, end in expected_responses]), (
"Expected date filter to limit to March 1984 in response but got" + response[0]
)
# ----------------------------------------------------------------------------------------------------
@pytest.mark.chatquality
@freeze_time("1984-04-02")
def test_extract_question_with_date_filter_from_relative_year():
# Act
response = extract_questions("Where countries have I visited this year?")
# Assert
expected_responses = [
('dt>="1984-01-01"', ""),
('dt>="1984-01-01"', 'dt<"1985-01-01"'),
('dt>="1984-01-01"', 'dt<="1984-12-31"'),
]
assert len(response) == 1
assert any([start in response[0] and end in response[0] for start, end in expected_responses]), (
"Expected date filter to limit to 1984 in response but got" + response[0]
)
# ----------------------------------------------------------------------------------------------------
@pytest.mark.chatquality
def test_extract_multiple_explicit_questions_from_message():
# Act
response = extract_questions("What is the Sun? What is the Moon?")
# Assert
expected_responses = [
("sun", "moon"),
]
assert len(response) == 2
assert any([start in response[0].lower() and end in response[1].lower() for start, end in expected_responses]), (
"Expected two search queries in response but got" + response[0]
)
# ----------------------------------------------------------------------------------------------------
@pytest.mark.chatquality
def test_extract_multiple_implicit_questions_from_message():
# Act
response = extract_questions("Is Morpheus taller than Neo?")
# Assert
expected_responses = [
("morpheus", "neo"),
]
assert len(response) == 2
assert any([start in response[0].lower() and end in response[1].lower() for start, end in expected_responses]), (
"Expected two search queries in response but got" + response[0]
)
# ----------------------------------------------------------------------------------------------------
@pytest.mark.chatquality
def test_chat_with_no_chat_history_or_retrieved_content():
@ -42,20 +128,16 @@ def test_chat_with_no_chat_history_or_retrieved_content():
@pytest.mark.chatquality
def test_answer_from_chat_history_and_no_content():
# Arrange
conversation_log = {"chat": []}
message_list = [
("Hello, my name is Testatron. Who are you?", "Hi, I am Khoj, a personal assistant. How can I help?", ""),
("When was I born?", "You were born on 1st April 1984.", ""),
]
# Generate conversation logs
for user_message, gpt_message, _ in message_list:
conversation_log["chat"] += message_to_log(user_message, gpt_message)
# Act
response = converse(
text="", # Assume no context retrieved from notes for the user_query
user_query="What is my name?",
conversation_log=conversation_log,
conversation_log=populate_chat_history(message_list),
api_key=api_key,
)
@ -72,20 +154,16 @@ def test_answer_from_chat_history_and_no_content():
def test_answer_from_chat_history_and_previously_retrieved_content():
"Chat actor needs to use context in previous notes and chat history to answer question"
# Arrange
conversation_log = {"chat": []}
message_list = [
("Hello, my name is Testatron. Who are you?", "Hi, I am Khoj, a personal assistant. How can I help?", ""),
("When was I born?", "You were born on 1st April 1984.", "Testatron was born on 1st April 1984 in Testville."),
]
# Generate conversation logs
for user_message, gpt_message, context in message_list:
conversation_log["chat"] += message_to_log(user_message, gpt_message, {"context": context})
# Act
response = converse(
text="", # Assume no context retrieved from notes for the user_query
user_query="Where was I born?",
conversation_log=conversation_log,
conversation_log=populate_chat_history(message_list),
api_key=api_key,
)
@ -100,20 +178,16 @@ def test_answer_from_chat_history_and_previously_retrieved_content():
def test_answer_from_chat_history_and_currently_retrieved_content():
"Chat actor needs to use context across currently retrieved notes and chat history to answer question"
# Arrange
conversation_log = {"chat": []}
message_list = [
("Hello, my name is Testatron. Who are you?", "Hi, I am Khoj, a personal assistant. How can I help?", ""),
("When was I born?", "You were born on 1st April 1984.", ""),
]
# Generate conversation logs
for user_message, gpt_message, context in message_list:
conversation_log["chat"] += message_to_log(user_message, gpt_message, {"context": context})
# Act
response = converse(
text="Testatron was born on 1st April 1984 in Testville.", # Assume context retrieved from notes for the user_query
user_query="Where was I born?",
conversation_log=conversation_log,
conversation_log=populate_chat_history(message_list),
api_key=api_key,
)
@ -127,20 +201,16 @@ def test_answer_from_chat_history_and_currently_retrieved_content():
def test_no_answer_in_chat_history_or_retrieved_content():
"Chat actor should say don't know as not enough contexts in chat history or retrieved to answer question"
# Arrange
conversation_log = {"chat": []}
message_list = [
("Hello, my name is Testatron. Who are you?", "Hi, I am Khoj, a personal assistant. How can I help?", ""),
("When was I born?", "You were born on 1st April 1984.", ""),
]
# Generate conversation logs
for user_message, gpt_message, context in message_list:
conversation_log["chat"] += message_to_log(user_message, gpt_message, {"context": context})
# Act
response = converse(
text="", # Assume no context retrieved from notes for the user_query
user_query="Where was I born?",
conversation_log=conversation_log,
conversation_log=populate_chat_history(message_list),
api_key=api_key,
)
@ -222,21 +292,17 @@ def test_answer_requires_date_aware_aggregation_across_provided_notes():
def test_answer_general_question_not_in_chat_history_or_retrieved_content():
"Chat actor should be able to answer general questions not requiring looking at chat history or notes"
# Arrange
conversation_log = {"chat": []}
message_list = [
("Hello, my name is Testatron. Who are you?", "Hi, I am Khoj, a personal assistant. How can I help?", ""),
("When was I born?", "You were born on 1st April 1984.", ""),
("Where was I born?", "You were born Testville.", ""),
]
# Generate conversation logs
for user_message, gpt_message, context in message_list:
conversation_log["chat"] += message_to_log(user_message, gpt_message, {"context": context})
# Act
response = converse(
text="", # Assume no context retrieved from notes for the user_query
user_query="Write a haiku about unit testing",
conversation_log=conversation_log,
conversation_log=populate_chat_history(message_list),
api_key=api_key,
)
@ -277,3 +343,17 @@ def test_ask_for_clarification_if_not_enough_context_in_question():
assert any([expected_response in response for expected_response in expected_responses]), (
"Expected chat actor to ask for clarification in response, but got: " + response
)
# Helpers
# ----------------------------------------------------------------------------------------------------
def populate_chat_history(message_list):
# Generate conversation logs
conversation_log = {"chat": []}
for user_message, gpt_message, context in message_list:
conversation_log["chat"] += message_to_log(
user_message,
gpt_message,
{"context": context, "intent": {"query": user_message, "inferred-queries": f'["{user_message}"]'}},
)
return conversation_log

View file

@ -25,7 +25,11 @@ def populate_chat_history(message_list):
# Generate conversation logs
conversation_log = {"chat": []}
for user_message, gpt_message, context in message_list:
conversation_log["chat"] += message_to_log(user_message, gpt_message, {"context": context})
conversation_log["chat"] += message_to_log(
user_message,
gpt_message,
{"context": context, "intent": {"query": user_message, "inferred-queries": f'["{user_message}"]'}},
)
# Update Conversation Metadata Logs in Application State
state.processor_config.conversation.meta_log = conversation_log