mcp-memory-service and memory-journal-mcp
These are complementary tools designed for different layers of agent memory architecture—one provides a general-purpose persistent memory service with REST API and knowledge graph consolidation for multiple agent frameworks, while the other specializes in session-aware project memory with GitHub integration and automatic context summarization for individual development workflows.
About mcp-memory-service
doobidoo/mcp-memory-service
Open-source persistent memory for AI agent pipelines (LangGraph, CrewAI, AutoGen) and Claude. REST API + knowledge graph + autonomous consolidation.
This service provides a shared, persistent memory for AI agents, allowing them to retain information and learn across different tasks and sessions. It takes in decisions and facts from various agents, organizing them into a knowledge graph. The output is fast, relevant context that helps agents make better decisions, suitable for anyone building or managing multi-agent AI systems, like AI solution architects or AI product managers.
About memory-journal-mcp
neverinfamous/memory-journal-mcp
MCP Server for AI Context + Project Intelligence. Overcome Disconnected AI Sessions with Persistent Project Memory, Automatic Session Briefing & Summation, Triple Search, Knowledge Graphs, GitHub Integration (Actions, Insights, Issues, Kanban, Milestones, and PRs), Automated Scheduling, 42 Tools, Tool Filtering, and HTTP/SSE & stdio Transport.
This tool helps project managers and team leads using AI assistants overcome the problem of AI 'forgetting' past project context. It ingests your project's activity and AI conversations, then provides a persistent, searchable memory and automatically briefs AI agents on relevant history for ongoing tasks. This is ideal for development teams and managers who rely on AI for support in complex, long-running software projects.
Related comparisons
Scores updated daily from GitHub, PyPI, and npm data. How scores work