Mood Tracker MCP MCP Connector for Claude
A+Analyze daily mood logs to identify emotional trends and weekly patterns.
The Mood Tracker MCP connects AI agents to your longitudinal mood data. Use get_weekly_summary to track if your emotional state is improving or declining over time. You can use identify_difficulty_peaks to pinpoint specific dates with low scores and analyze_weekday_patterns to discover if certain days of the week consistently impact your well-being.
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