eDiscovery AI Releases CaseBot for Conversational Legal Data Analysis
eDiscovery AI, a HaystackID company, announced in a press release the general availability of CaseBot, its conversational AI assistant for legal data analysis. The tool enables legal teams to ask unlimited questions of case data and receive answers traced to source documents within seconds.
CaseBot was in limited release with founding partners since January 2026 and is now available to all eDiscovery AI customers. The standalone version provides full access over supported matter data sets, direct integration within Relativity workspaces, natural language queries with history, and source-cited answers with document links. It also includes CSV export, automatic session purge, and governance-aligned controls.
The company stated that CaseBot addresses one of the most requested features from early users by offering standalone availability. Legal teams can use it across workflows such as early case assessment, relevance review, privilege and privacy checks, and multimedia analysis. The launch coincides with eDiscovery AI's participation at the CLOC Global Institute in Chicago from May 11 to 14, 2026.
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