mirror of
https://github.com/hwchase17/langchain
synced 2024-11-10 01:10:59 +00:00
95dc90609e
Replaced `from langchain.prompts` with `from langchain_core.prompts` where it is appropriate. Most of the changes go to `langchain_experimental` Similar to #20348
555 lines
21 KiB
Python
555 lines
21 KiB
Python
"""Test CPAL chain."""
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import json
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import unittest
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from typing import Type
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from unittest import mock
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import pytest
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from langchain.output_parsers import PydanticOutputParser
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from langchain_community.llms import OpenAI
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from langchain_core.prompts.prompt import PromptTemplate
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from langchain_experimental import pydantic_v1 as pydantic
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from langchain_experimental.cpal.base import (
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CausalChain,
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CPALChain,
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InterventionChain,
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NarrativeChain,
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QueryChain,
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)
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from langchain_experimental.cpal.constants import Constant
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from langchain_experimental.cpal.models import (
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CausalModel,
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EntityModel,
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EntitySettingModel,
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InterventionModel,
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NarrativeModel,
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QueryModel,
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)
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from langchain_experimental.cpal.templates.univariate.causal import (
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template as causal_template,
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)
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from langchain_experimental.cpal.templates.univariate.intervention import (
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template as intervention_template,
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)
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from langchain_experimental.cpal.templates.univariate.narrative import (
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template as narrative_template,
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)
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from langchain_experimental.cpal.templates.univariate.query import (
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template as query_template,
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)
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from tests.unit_tests.fake_llm import FakeLLM
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class TestUnitCPALChain_MathWordProblems(unittest.TestCase):
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"""Unit Test the CPAL chain and its component chains on math word problems.
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These tests can't run in the standard unit test directory because of
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this issue, https://github.com/langchain-ai/langchain/issues/7451
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"""
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def setUp(self) -> None:
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self.fake_llm = self.make_fake_llm()
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def make_fake_llm(self) -> FakeLLM:
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"""
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Fake LLM service for testing CPAL chain and its components chains
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on univariate math examples.
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"""
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class LLMMockData(pydantic.BaseModel):
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question: str
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completion: str
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template: str
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data_model: Type[pydantic.BaseModel]
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@property
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def prompt(self) -> str:
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"""Create LLM prompt with the question."""
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prompt_template = PromptTemplate(
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input_variables=[Constant.narrative_input.value],
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template=self.template,
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partial_variables={
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"format_instructions": PydanticOutputParser(
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pydantic_object=self.data_model
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).get_format_instructions()
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},
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)
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prompt = prompt_template.format(narrative_input=self.question)
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return prompt
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narrative = LLMMockData(
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**{
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"question": (
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"jan has three times the number of pets as marcia. "
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"marcia has two more pets than cindy."
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"if cindy has ten pets, how many pets does jan have? "
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),
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"completion": json.dumps(
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{
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"story_outcome_question": "how many pets does jan have? ",
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"story_hypothetical": "if cindy has ten pets",
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"story_plot": "jan has three times the number of pets as marcia. marcia has two more pets than cindy.", # noqa: E501
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}
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),
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"template": narrative_template,
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"data_model": NarrativeModel,
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}
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)
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causal_model = LLMMockData(
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**{
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"question": (
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"jan has three times the number of pets as marcia. "
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"marcia has two more pets than cindy."
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),
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"completion": (
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"\n"
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"{\n"
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' "attribute": "pet_count",\n'
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' "entities": [\n'
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" {\n"
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' "name": "cindy",\n'
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' "value": 0,\n'
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' "depends_on": [],\n'
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' "code": "pass"\n'
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" },\n"
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" {\n"
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' "name": "marcia",\n'
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' "value": 0,\n'
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' "depends_on": ["cindy"],\n'
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' "code": "marcia.value = cindy.value + 2"\n'
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" },\n"
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" {\n"
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' "name": "jan",\n'
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' "value": 0,\n'
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' "depends_on": ["marcia"],\n'
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' "code": "jan.value = marcia.value * 3"\n'
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" }\n"
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" ]\n"
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"}"
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),
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"template": causal_template,
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"data_model": CausalModel,
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}
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)
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intervention = LLMMockData(
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**{
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"question": ("if cindy has ten pets"),
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"completion": (
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"{\n"
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' "entity_settings" : [\n'
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' { "name": "cindy", "attribute": "pet_count", "value": "10" }\n' # noqa: E501
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" ]\n"
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"}"
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),
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"template": intervention_template,
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"data_model": InterventionModel,
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}
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)
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query = LLMMockData(
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**{
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"question": ("how many pets does jan have? "),
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"completion": (
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"{\n"
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' "narrative_input": "how many pets does jan have? ",\n'
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' "llm_error_msg": "",\n'
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' "expression": "SELECT name, value FROM df WHERE name = \'jan\'"\n' # noqa: E501
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"}"
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),
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"template": query_template,
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"data_model": QueryModel,
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}
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)
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fake_llm = FakeLLM()
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fake_llm.queries = {}
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for mock_data in [narrative, causal_model, intervention, query]:
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fake_llm.queries.update({mock_data.prompt: mock_data.completion})
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return fake_llm
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def test_narrative_chain(self) -> None:
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"""Test narrative chain returns the three main elements of the causal
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narrative as a pydantic object.
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"""
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narrative_chain = NarrativeChain.from_univariate_prompt(llm=self.fake_llm)
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output = narrative_chain(
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(
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"jan has three times the number of pets as marcia. "
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"marcia has two more pets than cindy."
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"if cindy has ten pets, how many pets does jan have? "
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)
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)
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expected_output = {
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"chain_answer": None,
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"chain_data": NarrativeModel(
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story_outcome_question="how many pets does jan have? ",
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story_hypothetical="if cindy has ten pets",
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story_plot="jan has three times the number of pets as marcia. marcia has two more pets than cindy.", # noqa: E501
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),
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"narrative_input": "jan has three times the number of pets as marcia. marcia " # noqa: E501
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"has two more pets than cindy.if cindy has ten pets, how "
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"many pets does jan have? ",
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}
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assert output == expected_output
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def test_causal_chain(self) -> None:
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"""
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Test causal chain returns a DAG as a pydantic object.
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"""
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causal_chain = CausalChain.from_univariate_prompt(llm=self.fake_llm)
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output = causal_chain(
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(
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"jan has three times the number of pets as "
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"marcia. marcia has two more pets than cindy."
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)
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)
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expected_output = {
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"chain_answer": None,
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"chain_data": CausalModel(
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attribute="pet_count",
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entities=[
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EntityModel(name="cindy", code="pass", value=0.0, depends_on=[]),
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EntityModel(
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name="marcia",
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code="marcia.value = cindy.value + 2",
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value=0.0,
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depends_on=["cindy"],
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),
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EntityModel(
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name="jan",
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code="jan.value = marcia.value * 3",
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value=0.0,
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depends_on=["marcia"],
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),
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],
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),
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"narrative_input": "jan has three times the number of pets as marcia. marcia " # noqa: E501
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"has two more pets than cindy.",
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}
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assert output == expected_output
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def test_intervention_chain(self) -> None:
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"""
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Test intervention chain correctly transforms
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the LLM's text completion into a setting-like object.
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"""
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intervention_chain = InterventionChain.from_univariate_prompt(llm=self.fake_llm)
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output = intervention_chain("if cindy has ten pets")
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expected_output = {
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"chain_answer": None,
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"chain_data": InterventionModel(
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entity_settings=[
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EntitySettingModel(name="cindy", attribute="pet_count", value=10),
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]
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),
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"narrative_input": "if cindy has ten pets",
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}
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assert output == expected_output
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def test_query_chain(self) -> None:
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"""
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Test query chain correctly transforms
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the LLM's text completion into a query-like object.
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"""
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query_chain = QueryChain.from_univariate_prompt(llm=self.fake_llm)
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output = query_chain("how many pets does jan have? ")
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expected_output = {
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"chain_answer": None,
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"chain_data": QueryModel(
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narrative_input="how many pets does jan have? ",
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llm_error_msg="",
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expression="SELECT name, value FROM df WHERE name = 'jan'",
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),
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"narrative_input": "how many pets does jan have? ",
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}
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assert output == expected_output
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def test_cpal_chain(self) -> None:
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"""
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patch required since `networkx` package is not part of unit test environment
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"""
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with mock.patch(
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"langchain_experimental.cpal.models.NetworkxEntityGraph"
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) as mock_networkx:
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graph_instance = mock_networkx.return_value
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graph_instance.get_topological_sort.return_value = [
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"cindy",
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"marcia",
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"jan",
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]
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cpal_chain = CPALChain.from_univariate_prompt(
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llm=self.fake_llm, verbose=True
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)
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cpal_chain.run(
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(
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"jan has three times the number of pets as "
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"marcia. marcia has two more pets than cindy."
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"if cindy has ten pets, how many pets does jan have? "
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)
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)
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class TestCPALChain_MathWordProblems(unittest.TestCase):
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"""Test the CPAL chain and its component chains on math word problems."""
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def test_causal_chain(self) -> None:
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"""Test CausalChain can translate a narrative's plot into a causal model
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containing operations linked by a DAG."""
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llm = OpenAI(temperature=0, max_tokens=512)
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casual_chain = CausalChain.from_univariate_prompt(llm)
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narrative_plot = (
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"Jan has three times the number of pets as Marcia. "
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"Marcia has two more pets than Cindy. "
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)
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output = casual_chain(narrative_plot)
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expected_output = {
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"chain_answer": None,
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"chain_data": CausalModel(
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attribute="pet_count",
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entities=[
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EntityModel(name="cindy", code="pass", value=0.0, depends_on=[]),
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EntityModel(
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name="marcia",
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code="marcia.value = cindy.value + 2",
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value=0.0,
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depends_on=["cindy"],
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),
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EntityModel(
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name="jan",
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code="jan.value = marcia.value * 3",
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value=0.0,
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depends_on=["marcia"],
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),
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],
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),
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"narrative_input": "Jan has three times the number of pets as Marcia. Marcia " # noqa: E501
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"has two more pets than Cindy. ",
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}
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self.assertDictEqual(output, expected_output)
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self.assertEqual(
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isinstance(output[Constant.chain_data.value], CausalModel), True
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)
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def test_intervention_chain(self) -> None:
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"""Test InterventionChain translates a hypothetical into a new value setting."""
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llm = OpenAI(temperature=0, max_tokens=512)
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story_conditions_chain = InterventionChain.from_univariate_prompt(llm)
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question = "if cindy has ten pets"
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data = story_conditions_chain(question)[Constant.chain_data.value]
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self.assertEqual(type(data), InterventionModel)
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def test_intervention_chain_2(self) -> None:
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"""Test InterventionChain translates a hypothetical into a new value setting."""
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llm = OpenAI(temperature=0, max_tokens=512)
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story_conditions_chain = InterventionChain.from_univariate_prompt(llm)
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narrative_condition = "What if Cindy has ten pets and Boris has 5 pets? "
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data = story_conditions_chain(narrative_condition)[Constant.chain_data.value]
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self.assertEqual(type(data), InterventionModel)
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def test_query_chain(self) -> None:
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"""Test QueryChain translates a question into a query expression."""
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llm = OpenAI(temperature=0, max_tokens=512)
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query_chain = QueryChain.from_univariate_prompt(llm)
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narrative_question = "How many pets will Marcia end up with? "
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data = query_chain(narrative_question)[Constant.chain_data.value]
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self.assertEqual(type(data), QueryModel)
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def test_narrative_chain(self) -> None:
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"""Test NarrativeChain decomposes a human's narrative into three story elements:
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- causal model
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- intervention model
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- query model
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"""
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narrative = (
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"Jan has three times the number of pets as Marcia. "
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"Marcia has two more pets than Cindy. "
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"If Cindy has ten pets, how many pets does Jan have? "
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)
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llm = OpenAI(temperature=0, max_tokens=512)
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narrative_chain = NarrativeChain.from_univariate_prompt(llm)
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data = narrative_chain(narrative)[Constant.chain_data.value]
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self.assertEqual(type(data), NarrativeModel)
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out = narrative_chain(narrative)
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expected_narrative_out = {
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"chain_answer": None,
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"chain_data": NarrativeModel(
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story_outcome_question="how many pets does Jan have?",
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story_hypothetical="If Cindy has ten pets",
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story_plot="Jan has three times the number of pets as Marcia. Marcia has two more pets than Cindy.", # noqa: E501
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),
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"narrative_input": "Jan has three times the number of pets as Marcia. Marcia " # noqa: E501
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"has two more pets than Cindy. If Cindy has ten pets, how "
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"many pets does Jan have? ",
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}
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self.assertDictEqual(out, expected_narrative_out)
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def test_against_pal_chain_doc(self) -> None:
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"""
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Test CPAL chain against the first example in the PAL chain notebook doc:
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https://github.com/langchain-ai/langchain/blob/master/docs/extras/modules/chains/additional/pal.ipynb
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"""
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narrative_input = (
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"Jan has three times the number of pets as Marcia."
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" Marcia has two more pets than Cindy."
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" If Cindy has four pets, how many total pets do the three have?"
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)
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llm = OpenAI(temperature=0, max_tokens=512)
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cpal_chain = CPALChain.from_univariate_prompt(llm=llm, verbose=True)
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answer = cpal_chain.run(narrative_input)
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"""
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>>> story._outcome_table
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name code value depends_on
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0 cindy pass 4.0 []
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1 marcia marcia.value = cindy.value + 2 6.0 [cindy]
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2 jan jan.value = marcia.value * 3 18.0 [marcia]
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"""
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self.assertEqual(answer, 28.0)
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def test_simple(self) -> None:
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"""
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Given a simple math word problem here we are test and illustrate the
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the data structures that are produced by the CPAL chain.
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"""
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narrative_input = (
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"jan has three times the number of pets as marcia."
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"marcia has two more pets than cindy."
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"If cindy has ten pets, how many pets does jan have?"
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)
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llm = OpenAI(temperature=0, max_tokens=512)
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cpal_chain = CPALChain.from_univariate_prompt(llm=llm, verbose=True)
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output = cpal_chain(narrative_input)
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data = output[Constant.chain_data.value]
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expected_output = {
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"causal_operations": {
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"attribute": "pet_count",
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"entities": [
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{"code": "pass", "depends_on": [], "name": "cindy", "value": 10.0},
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{
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"code": "marcia.value = cindy.value + 2",
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"depends_on": ["cindy"],
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"name": "marcia",
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"value": 12.0,
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},
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{
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"code": "jan.value = marcia.value * 3",
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"depends_on": ["marcia"],
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"name": "jan",
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"value": 36.0,
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},
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],
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},
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"intervention": {
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"entity_settings": [
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{"attribute": "pet_count", "name": "cindy", "value": 10.0}
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],
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"system_settings": None,
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},
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"query": {
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"expression": "SELECT name, value FROM df WHERE name = 'jan'",
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"llm_error_msg": "",
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"question": "how many pets does jan have?",
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},
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}
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self.assertDictEqual(data.dict(), expected_output)
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"""
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Illustrate the query model's result table as a printed pandas dataframe
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>>> data._outcome_table
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name code value depends_on
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0 cindy pass 10.0 []
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1 marcia marcia.value = cindy.value + 2 12.0 [cindy]
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2 jan jan.value = marcia.value * 3 36.0 [marcia]
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"""
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expected_output = {
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"code": {
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0: "pass",
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1: "marcia.value = cindy.value + 2",
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2: "jan.value = marcia.value * 3",
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},
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"depends_on": {0: [], 1: ["cindy"], 2: ["marcia"]},
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"name": {0: "cindy", 1: "marcia", 2: "jan"},
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"value": {0: 10.0, 1: 12.0, 2: 36.0},
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}
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self.assertDictEqual(data._outcome_table.to_dict(), expected_output)
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expected_output = {"name": {0: "jan"}, "value": {0: 36.0}}
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self.assertDictEqual(data.query._result_table.to_dict(), expected_output)
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# TODO: use an LLM chain to translate numbers to words
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df = data.query._result_table
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expr = "name == 'jan'"
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answer = df.query(expr).iloc[0]["value"]
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self.assertEqual(float(answer), 36.0)
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|
|
|
def test_hallucinating(self) -> None:
|
|
"""
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|
Test CPAL approach does not hallucinate when given
|
|
an invalid entity in the question.
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|
|
|
The PAL chain would hallucinates here!
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|
"""
|
|
|
|
narrative_input = (
|
|
"Jan has three times the number of pets as Marcia."
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|
"Marcia has two more pets than Cindy."
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|
"If Cindy has ten pets, how many pets does Barak have?"
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|
)
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|
llm = OpenAI(temperature=0, max_tokens=512)
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|
cpal_chain = CPALChain.from_univariate_prompt(llm=llm, verbose=True)
|
|
with pytest.raises(Exception) as e_info:
|
|
print(e_info) # noqa: T201
|
|
cpal_chain.run(narrative_input)
|
|
|
|
def test_causal_mediator(self) -> None:
|
|
"""
|
|
Test CPAL approach on causal mediator.
|
|
"""
|
|
|
|
narrative_input = (
|
|
"jan has three times the number of pets as marcia."
|
|
"marcia has two more pets than cindy."
|
|
"If marcia has ten pets, how many pets does jan have?"
|
|
)
|
|
llm = OpenAI(temperature=0, max_tokens=512)
|
|
cpal_chain = CPALChain.from_univariate_prompt(llm=llm, verbose=True)
|
|
answer = cpal_chain.run(narrative_input)
|
|
self.assertEqual(answer, 30.0)
|
|
|
|
@pytest.mark.skip(reason="requires manual install of debian and py packages")
|
|
def test_draw(self) -> None:
|
|
"""
|
|
Test CPAL chain can draw its resulting DAG.
|
|
"""
|
|
import os
|
|
|
|
narrative_input = (
|
|
"Jan has three times the number of pets as Marcia."
|
|
"Marcia has two more pets than Cindy."
|
|
"If Marcia has ten pets, how many pets does Jan have?"
|
|
)
|
|
llm = OpenAI(temperature=0, max_tokens=512)
|
|
cpal_chain = CPALChain.from_univariate_prompt(llm=llm, verbose=True)
|
|
cpal_chain.run(narrative_input)
|
|
path = "graph.svg"
|
|
cpal_chain.draw(path=path)
|
|
self.assertTrue(os.path.exists(path))
|