OpenWebResearcher acts as an autonomous web research assistant by orchestrating a pipeline of web crawling, data extraction, and AI-driven summarization. After configuration, the agent navigates target sites, identifies relevant content via heuristics or user-defined criteria, and retrieves structured data. It then employs large language models to analyze, filter, and distill key insights, generating bullet-point summaries or detailed reports. Users can customize scraping parameters, integrate custom plugins for specialized processing, and schedule recurring research tasks. The modular architecture lets developers extend capabilities with new parsers or output formats. Ideal for competitive intelligence, academic literature reviews, market analysis, and content monitoring, OpenWebResearcher reduces the time spent on manual data gathering and synthesis.