AgentIndex icon
AgentIndex
ToolsCategoriesTrendingNewCompare
Submit Tool
ToolsCategoriesTrendingNewCompare
Home/
Compare/
ogham-mcp vs fastmcp
ogham-mcp logo
ogham-mcp
★ 105
vs
fastmcp logo
fastmcp
★ 25.4k

ogham-mcp vs fastmcp

ogham-mcp: Ogham MCP is a persistent, searchable shared memory system for AI coding agents that works across different clients and sessions. It stores memories as vector embeddings in PostgreSQL, enabling hybrid search combining semantic and full-text retrieval with high accuracy. Ogham supports multiple embedding providers, knowledge graph traversal, wiki compilation, and automatic memory management features like scoring, condensing, and novelty detection.; fastmcp: FastMCP is a standard framework for building Model Context Protocol (MCP) applications, which connect LLMs to tools and data. It simplifies the process by automatically generating schemas, validation, and documentation for tools, and managing transport negotiation and authentication for server connections. FastMCP offers a comprehensive solution for developing, deploying, and scaling MCP-powered systems.

01

TL;DR

ogham-mcp logoChoose ogham-mcp if…

Store and retrieve architectural decisions and coding context across sessions and different AI coding agents

fastmcp logoChoose fastmcp if…

Building LLM applications that interact with custom tools and data sources

02

Side-by-Side Comparison

Field
ogham-mcp logoogham-mcp
fastmcp logofastmcp
Category
Memory & Context
Dev Tooling
Stars
★ 105
★ 25.4k
License
MIT
Apache-2.0
Updated
4d ago
1d ago
Open Source
Yes
Yes
Website
↗ Visit
↗ Visit
GitHub
↗ GitHub
↗ GitHub
Tags
agent-memory, ai-memory, claude
agents, fastmcp, llms
03

Features

ogham-mcp logoogham-mcp
01Persistent shared memory across sessions and clients
02Hybrid search with Reciprocal Rank Fusion (semantic + full-text)
03Knowledge graph with entity linking, traversal, and contradiction detection
04Multi-provider embeddings (OpenAI, Ollama, Mistral, Voyage, Gemini, ONNX)
05Automatic condensing, scoring, novelty detection, and memory lifecycle management
fastmcp logofastmcp
01Automatic schema, validation, and documentation generation for tools
02Managed transport negotiation, authentication, and protocol lifecycle for server connections
03Wraps Python functions into MCP-compliant tools, resources, and prompts (Servers)
04Connects to any MCP server with full protocol support (Clients)
05Provides interactive UIs for tools rendered directly in conversations (Apps)
04

Use Cases

ogham-mcp logoogham-mcp
↳Store and retrieve architectural decisions and coding context across sessions and different AI coding agents
↳Provide consistent, context-aware assistance to AI coding agents by maintaining a shared knowledge base
↳Preserve project-specific information, preferences, and facts for long-term reference without repetition
fastmcp logofastmcp
↳Building LLM applications that interact with custom tools and data sources
↳Creating interactive conversational UIs for backend functionalities
↳Developing and deploying scalable MCP servers and clients
05

Best For

ogham-mcp logoogham-mcp
TrendingMemory & ContextDev Tooling
fastmcp logofastmcp
Most PopularDev ToolingLLM Infra
FAQ

FAQ

What is the difference between ogham-mcp and fastmcp?
Both ogham-mcp and fastmcp are in the Memory & Context category. ogham-mcp has 105 stars, while fastmcp has 25.4k stars.
Which is better, ogham-mcp or fastmcp?
The best choice depends on your use case. Choose ogham-mcp if Store and retrieve architectural decisions and coding context across sessions and different AI coding agents, and fastmcp if Building LLM applications that interact with custom tools and data sources.
Is ogham-mcp free or open source?
Yes, ogham-mcp is open source on GitHub (MIT).
Is fastmcp free or open source?
Yes, fastmcp is open source on GitHub (Apache-2.0).
→

Related

Alternatives to ogham-mcp →Alternatives to fastmcp →ogham-mcp details →fastmcp details →
© 2026 AgentIndex.app|Built by a 10-year iOS Developer.
QYSGitHubBuy me a coffee ☕

Browse by Category

Code AssistantWorkflow AutomationRAG / Knowledge BaseMulti-AgentBrowser AutomationLLM InfraDev ToolingObservability

Not affiliated with Anthropic, OpenAI or Microsoft.