Rememberizer
Interact with Rememberizer's document and knowledge management API to search, retrieve, and manage documents.
MCP Server Rememberizer
A Model Context Protocol server for interacting with Rememberizer's document and knowledge management API. This server enables Large Language Models to search, retrieve, and manage documents and integrations through Rememberizer.
Please note that mcp-server-rememberizer is currently in development and the functionality may be subject to change.
Components
Resources
The server provides access to two types of resources: Documents or Slack discussions
Tools
-
retrieve_semantically_similar_internal_knowledge- Send a block of text and retrieve cosine similar matches from your connected Rememberizer personal/team internal knowledge and memory repository
- Input:
match_this(string): Up to a 400-word sentence for which you wish to find semantically similar chunks of knowledgen_results(integer, optional): Number of semantically similar chunks of text to return. Use 'n_results=3' for up to 5, and 'n_results=10' for more informationfrom_datetime_ISO8601(string, optional): Start date in ISO 8601 format with timezone (e.g., 2023-01-01T00:00:00Z). Use this to filter results from a specific dateto_datetime_ISO8601(string, optional): End date in ISO 8601 format with timezone (e.g., 2024-01-01T00:00:00Z). Use this to filter results until a specific date
- Returns: Search results as text output
-
smart_search_internal_knowledge- Search for documents in Rememberizer in its personal/team internal knowledge and memory repository using a simple query that returns the results of an agentic search. The search may include sources such as Slack discussions, Gmail, Dropbox documents, Google Drive documents, and uploaded files
- Input:
query(string): Up to a 400-word sentence for which you wish to find semantically similar chunks of knowledgeuser_context(string, optional): The additional context for the query. You might need to summarize the conversation up to this point for better context-awared resultsn_results(integer, optional): Number of semantically similar chunks of text to return. Use 'n_results=3' for up to 5, and 'n_results=10' for more informationfrom_datetime_ISO8601(string, optional): Start date in ISO 8601 format with timezone (e.g., 2023-01-01T00:00:00Z). Use this to filter results from a specific dateto_datetime_ISO8601(string, optional): End date in ISO 8601 format with timezone (e.g., 2024-01-01T00:00:00Z). Use this to filter results until a specific date
- Returns: Search results as text output
-
list_internal_knowledge_systems- List the sources of personal/team internal knowledge. These may include Slack discussions, Gmail, Dropbox documents, Google Drive documents, and uploaded files
- Input: None required
- Returns: List of available integrations
-
rememberizer_account_information- Get information about your Rememberizer.ai personal/team knowledge repository account. This includes account holder name and email address
- Input: None required
- Returns: Account information details
-
list_personal_team_knowledge_documents- Retrieves a paginated list of all documents in your personal/team knowledge system. Sources could include Slack discussions, Gmail, Dropbox documents, Google Drive documents, and uploaded files
- Input:
page(integer, optional): Page number for pagination, starts at 1 (default: 1)page_size(integer, optional): Number of documents per page, range 1-1000 (default: 100)
- Returns: List of documents
-
remember_this- Save a piece of text information in your Rememberizer.ai knowledge system so that it may be recalled in future through tools retrieve_semantically_similar_internal_knowledge or smart_search_internal_knowledge
- Input:
name(string): Name of the information. This is used to identify the information in the futurecontent(string): The information you wish to memorize
- Returns: Confirmation data
Installation
Manual Installation
uvx mcp-server-rememberizer
Via MseeP AI Helper App
If you have MseeP AI Helper app installed, you can search for "Rememberizer" and install the mcp-server-rememberizer.

Configuration
Environment Variables
The following environment variables are required:
REMEMBERIZER_API_TOKEN: Your Rememberizer API token
You can register an API key by creating your own Common Knowledge in Rememberizer.
Usage with Claude Desktop
Add this to your claude_desktop_config.json:
"mcpServers": {
"rememberizer": {
"command": "uvx",
"args": ["mcp-server-rememberizer"],
"env": {
"REMEMBERIZER_API_TOKEN": "your_rememberizer_api_token"
}
},
}
Usage with MseeP AI Helper App
Add the env REMEMBERIZER_API_TOKEN to mcp-server-rememberizer.

With support from the Rememberizer MCP server, you can now ask the following questions in your Claude Desktop app or SkyDeck AI GenStudio
-
What is my Rememberizer account?
-
List all documents that I have there.
-
Give me a quick summary about "..."
-
and so on...
To learn more about Rememberizer MCP Server: https://docs.rememberizer.ai/personal-use/integrations/rememberizer-mcp-servers
License
This project is licensed under the Apache License 2.0 - see the LICENSE file for details.
関連サーバー
Kone.vc
スポンサーMonetize your AI agent with contextual product recommendations
Breathe HR
Provides secure, read-write access to Breathe HR data for AI assistants.
MCP Data Analizer
Analyze and visualize data from .xlsx and .csv files using matplotlib and plotly.
Personal Finance MCP
Personal finance management with expense tracking, budget monitoring, and spending analysis
Notes MCP Server
An MCP server for interacting with Obsidian notes. Requires the OBSIDIAN_VAULT_PATH environment variable to be set.
Plus AI MCP
A Model Context Protocol (MCP) server for automatically generating professional PowerPoint and Google Slides presentations using the Plus AI presentation API
Rememberizer MCP Server for Common Knowledge
Access personal or team knowledge from internal repositories like documents and Slack discussions.
ClaudeKeep
Save and share AI conversations from Claude Desktop.
CV Forge MCP
Forge powerful, ATS-friendly CVs tailored to any job - an MCP server for intelligent CV generation
DalexorMI
Dalexor MI is an advanced project memory system designed to provide AI coding assistants with **Contextual Persistence**. Unlike standard RAG (Retrieval-Augmented Generation) systems that perform surface-level keyword searches, Dalexor MI maps the **logical evolution** of a codebase, tracking how symbols, dependencies, and architectural decisions shift over time.
llmconveyors-mcp
39 tools for the LLM Conveyors AI agent platform. Run Job Hunter, B2B Sales, ATS scoring, resume rendering, and more from any MCP client.
