Consensus APP
Consensus APP is a research search engine that uses AI to find, summarize, and synthesize answers from peer‑reviewed scientific papers.
Consensus APP is an AI-powered search engine designed to help users find and understand insights from peer-reviewed scientific research. Instead of returning web pages or opinion-based content, it focuses on extracting evidence directly from academic papers, making it easier to base decisions on high-quality, empirical data. The tool aims to bridge the gap between complex scientific literature and practical, accessible answers for non-experts and professionals alike.
Using natural language queries, Consensus searches a large corpus of published research and summarizes findings into clear, structured outputs. It highlights key conclusions, shows the strength and direction of evidence, and often aggregates results across multiple studies to present a consensus view where possible. Users can drill down into individual papers, review abstracts, and access citations to verify sources and explore details further. The platform also supports filtering by topic or domain, helping users quickly focus on relevant research in areas such as health, psychology, economics, and more.
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