Status: True
Assertion
The speed of light is slightly faster than the speed of sound in a vacuum.
Results
The reference environment being standard and having temperatures that do not significantly alter sound velocity aligns with general scientific practices when comparing the speed of light and sound for illustrative purposes. Sound velocity does vary slightly with temperature changes; however, these variations are minimal within a narrow range around room temperature (about 20°C or 68°F).
– True: Light indeed travels in a vacuum at approximately 299,792 kilometers per second (or about 186,282 miles per second), without interaction from other particles or fields. This is the accepted speed of light and serves as a standard reference for comparison.
– True: The Earth’s atmosphere at sea level provides a commonly used baseline to measure sound velocity when comparing it with light in a vacuum, although this can vary slightly depending on factors such as altitude, temperature, and humidity.
– True: The constants provided are based on current scientific understanding, including the universal speed of light (c) set at approximately 299,792 km/s and an average speed of sound in air at sea level around 343 meters per second. This
Assumptions
<|assistant|> – The reference environment is under standard conditions with air and temperature not extreme enough to significantly alter sound velocity.
– Light travels in a vacuum, which means no interaction or impediment from other particles or fields that could affect its speed.
– Sound waves are considered within the Earth’s atmosphere at sea level, where their speed is typically measured for comparison with light in a vacuum.
– The constants used (speed of light and speed of sound) are accurate to current scientific understanding and measurements.
– The statement compares light traveling through space (a vacuum) with the propagation of sound within air, not considering other mediums where sound may move at different speeds.
Fact Checker Output
<|assistant|> – True: The reference environment being standard and having temperatures that do not significantly alter sound velocity aligns with general scientific practices when comparing the speed of light and sound for illustrative purposes. Sound velocity does vary slightly with temperature changes; however, these variations are minimal within a narrow range around room temperature (about 20°C or 68°F).
– True: Light indeed travels in a vacuum at approximately 299,792 kilometers per second (or about 186,282 miles per second), without interaction from other particles or fields. This is the accepted speed of light and serves as a standard reference for comparison.
– True: The Earth’s atmosphere at sea level provides a commonly used baseline to measure sound velocity when comparing it with light in a vacuum, although this can vary slightly depending on factors such as altitude, temperature, and humidity.
– True: The constants provided are based on current scientific understanding, including the universal speed of light (c) set at approximately 299,792 km/s and an average speed of sound in air at sea level around 343 meters per second, which
Model Used
microsoft/Phi-3-mini-4k-instruct-gguf
Script Name
fact_checker_mongodb.py
Script Code
import os
import sys
import requests
from langchain_openai.llms import OpenAI
from langchain.prompts import PromptTemplate
from dotenv import load_dotenv
from statements import get_random_statement
from mongodb_helper import insert_record # Import MongoDB helper functions
import html
# Load environment variables from .env file
load_dotenv()
# Define category IDs
CATEGORY_IDS = {
"True": 2,
"False": 3,
"Debatable": 4,
"Unknown": 6
}
def create_wordpress_post(title, content, category):
data = {
"title": title,
"content": content,
"status": "publish",
"categories": [CATEGORY_IDS[category]]
}
response = requests.post(
os.getenv("WORDPRESS_POSTS_URL"),
json=data,
auth=(os.getenv("WORDPRESS_USERNAME"), os.getenv("WORDPRESS_PASSWORD"))
)
if response.status_code == 201:
print("Blog post created successfully.")
else:
print(f"Failed to create blog post: {response.status_code} - {response.text}")
def fact_check(assertion):
llm = OpenAI(temperature=0.7, model=os.getenv("MODEL_NAME"))
# Define the prompt templates
assertion_template = """{assertion}\n\n"""
assertion_prompt = PromptTemplate(input_variables=["assertion"], template=assertion_template)
assumptions_template = """Here is a statement:
{statement}
Make a bullet point list of the assumptions required to support the above statement.\n\n"""
assumptions_prompt = PromptTemplate(input_variables=["statement"], template=assumptions_template)
fact_checker_template = """Here is a bullet point list of assertions:
{assertions}
For each assumption, determine whether it is true or false. Explain your reasoning.\n\n"""
fact_checker_prompt = PromptTemplate(input_variables=["assertions"], template=fact_checker_template)
answer_template = """
Here is the information to classify the statement:
{facts}
Based on the above information, how would you classify the statement? Respond with one of the following options followed by a colon and space:
- True: [Explanation]
- False: [Explanation]
- Debatable: [Explanation]
"""
answer_prompt = PromptTemplate(input_variables=["facts"], template=answer_template)
# Format prompts and extract the string content
formatted_assertion = assertion_prompt.format_prompt(assertion=assertion).text
assertion_output = llm.invoke(formatted_assertion)
formatted_assumptions = assumptions_prompt.format_prompt(statement=assertion_output).text
assumptions_output = llm.invoke(formatted_assumptions)
formatted_fact_checker = fact_checker_prompt.format_prompt(assertions=assumptions_output).text
fact_checker_output = llm.invoke(formatted_fact_checker)
formatted_answer = answer_prompt.format_prompt(facts=fact_checker_output).text
final_output = llm.invoke(formatted_answer)
return {
"assertion_output": assertion_output,
"assumptions_output": assumptions_output,
"fact_checker_output": fact_checker_output,
"final_output": final_output,
}
def extract_status_and_reasoning(final_output):
final_output = final_output.strip()
if "True:" in final_output:
status_start = final_output.find("True:")
status = "True"
elif "False:" in final_output:
status_start = final_output.find("False:")
status = "False"
elif "Debatable:" in final_output:
status_start = final_output.find("Debatable:")
status = "Debatable"
else:
return "Unknown", final_output
reasoning = final_output[status_start + len(status) + 1:].strip()
return status, reasoning
if __name__ == "__main__":
if len(sys.argv) > 1:
assertion = sys.argv[1]
else:
assertion = get_random_statement()
print(assertion)
submission = fact_check(assertion)
# Print the detailed outputs to inspect their structure
for key, value in submission.items():
print(f"{key}: {value}")
# Extract the final output for status determination and reasoning
final_output = submission['final_output']
status, reasoning = extract_status_and_reasoning(final_output)
# Record the result in MongoDB
try:
print("Attempting to insert record into MongoDB...")
insert_record(
script_name="fact_checker_mongodb.py",
script_code=html.escape(open(__file__).read()),
assertion=assertion,
status=status,
submission=submission, # Store the entire submission for detailed analysis
model=os.getenv("MODEL_NAME")
)
print("Record inserted into MongoDB successfully.")
except Exception as e:
print(f"Failed to insert record into MongoDB: {e}")
print(final_output)
# Create a blog post on WordPress
blog_title = f"Fact Check: {assertion}"
blog_content = f"""
<h1>Status: {status}</h1>
<h2>Assertion</h2>
<p>{assertion}</p>
<h2>Results</h2>
<p>{reasoning}</p>
<h3>Assumptions</h3>
<p>{submission['assumptions_output']}</p>
<h3>Fact Checker Output</h3>
<p>{submission['fact_checker_output']}</p>
<h4>Model Used</h4>
<p>{os.getenv("MODEL_NAME")}</p>
<h4>Script Name</h4>
<p>fact_checker_mongodb.py</p>
<h4>Script Code</h4>
<pre>{html.escape(open(__file__).read())}</pre>
"""
create_wordpress_post(blog_title, blog_content, status)
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