text stringlengths 0 93.6k |
|---|
# "requests", |
# "beautifulsoup4", |
# "html2text", |
# "networkx", |
# "pyvis", |
# ] |
# /// |
""" |
Search Graph Generator Script |
This script takes a question as input and generates a knowledge graph by: |
1. Understanding the question and setting up assumptions |
2. Generating search queries |
3. Running searches and processing results |
4. Building and displaying a graph structure |
Usage: |
./search_graph.py -h |
./search_graph.py -q "What is machine learning?" -v # For INFO logging |
./search_graph.py -q "What is machine learning?" -vv # For DEBUG logging |
""" |
import logging |
import time |
from argparse import ArgumentParser, RawDescriptionHelpFormatter |
from concurrent.futures import ThreadPoolExecutor |
from threading import Lock |
from urllib.parse import quote_plus |
import networkx as nx |
import requests |
from bs4 import BeautifulSoup |
from html2text import HTML2Text |
from pyvis.network import Network |
class SearchGraph: |
def __init__(self, question): |
self.question = question |
self.graph = nx.Graph(title=question) |
self.search_queries = [] |
self.graph_lock = Lock() |
def generate_search_queries(self): |
"""Generate 10 search queries based on the input question""" |
logging.debug(f"Generating search queries for question: {self.question}") |
base_queries = [ |
self.question, |
f"how to {self.question}", |
f"what is {self.question}", |
f"explain {self.question}", |
f"{self.question} tutorial", |
f"{self.question} guide", |
f"{self.question} examples", |
f"{self.question} best practices", |
f"{self.question} overview", |
f"{self.question} detailed explanation", |
] |
self.search_queries = base_queries |
return base_queries |
def visualize_graph(self, output_file="search_graph.html"): |
""" |
Create an interactive visualization of the graph |
""" |
logging.info(f"Generating interactive visualization: {output_file}") |
net = Network( |
height="750px", |
width="100%", |
bgcolor="#ffffff", |
font_color="#000000", |
notebook=False, |
) |
net.force_atlas_2based( |
gravity=-50, |
central_gravity=0.01, |
spring_length=100, |
spring_strength=0.08, |
damping=0.4, |
overlap=0, |
) |
color_map = {"question": "#ff7675", "query": "#74b9ff", "result": "#55efc4"} |
net.add_node( |
self.question, |
label=self.question[:30] + "..." |
if len(self.question) > 30 |
else self.question, |
color=color_map["question"], |
size=20, |
title=self.question, |
) |
for node, data in self.graph.nodes(data=True): |
if node == self.question: |
continue |
Subsets and Splits
No community queries yet
The top public SQL queries from the community will appear here once available.