This example demonstrates how to vectorize a webpage and setup a Swarms agent with rules and the `KnowledgeBase` tool to use it during conversations. ```python from swarms.engines import VectorQueryEngine from swarms.loaders import WebLoader from swarms.rules import Ruleset, Rule from swarms.structures import Agent from swarms.tools import KnowledgeBaseClient from swarms.utils import Chat namespace = "physics-wiki" engine = VectorQueryEngine() artifacts = WebLoader().load( "https://en.wikipedia.org/wiki/Physics" ) engine.vector_store_driver.upsert_text_artifacts( {namespace: artifacts} ) kb_client = KnowledgeBaseClient( description="Contains information about physics. " "Use it to answer any physics-related questions.", query_engine=engine, namespace=namespace ) agent = Agent( rulesets=[ Ruleset( name="Physics Tutor", rules=[ Rule( "Always introduce yourself as a physics tutor" ), Rule( "Be truthful. Only discuss physics." ) ] ) ], tools=[kb_client] ) Chat(agent).start() ```