ai.nefesh/human-state

MCPcommunity
v4.0.0ai.nefeshUnknownUpdated 3mo agoGitHub

Fuses biometric signals into a stress score (0-100) for AI adaptation. MCP + A2A native.

A Model Context Protocol and Agent-to-Agent (A2A) server that gives AI agents real-time awareness of human physiological state. Send sensor data (heart rate, voice, facial expression, text sentiment), get back a unified state with a machine-readable action your agent can follow directly. Zero prompt engineering required. On the 2nd+ call, the response includes — telling your agent whether its…

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3mo agoLast update
Package
Authorai.nefesh
LicenseUnknown
Version4.0.0
Sourcemcp-registry
Trust Status
B
60/100Good
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StatusCommunity-indexed
PublisherUnverified
SignatureUnsigned
Domain
Provenance
DependenciesNot audited
Tool surface
Security scan✓ CleanvHEAD · 19d ago
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IndexedJun 13, 2026

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About

A Model Context Protocol and Agent-to-Agent (A2A) server that gives AI agents real-time awareness of human physiological state. Send sensor data (heart rate, voice, facial expression, text sentiment), get back a unified state with a machine-readable action your agent can follow directly. Zero prompt engineering required. On the 2nd+ call, the response includes — telling your agent whether its previous approach actually worked. A closed-loop feedback system for self-improving agents. Most APIs…

Keywords
mcp