Give enterprise agents text lemmatization through the same data layer, reducing words to base forms to sharpen search and matching.
Have an agent run text through Text Lemmatization to translate, clean, or analyze it in a verifiable step, so downstream reasoning starts from consistent input.
Expose text lemmatization to your agents as a tool over the same MCP endpoint and key as every grounding source — no separate integration.
Because the transform runs through lemmatizer, the agent's output can point back to the exact operation that produced it.
Point your agent framework at the VerveContext endpoint. Every enabled source — this one included — becomes a tool the model can call. No per-source plumbing.
{
"mcpServers": {
"vervecontext": {
"url": "https://api.vervecontext.com/v1/mcp",
"headers": { "x-api-key": "vc_live_••••" }
}
}
}Each call returns structured fields your agent can read.
foundlemmasHow to ground an agent in it over MCP.