
VideoDB Director
An open-source agent toolkit that auto-syncs SDK versions, docs, and examples—built for seamless integration with LLMs, and AI agents ( MCP compatible).
VideoDB Agent Toolkit
AI Agent toolkit for VideoDB
llms.txt >>
llms-full.txt
MCP
VideoDB Agent Toolkit
The VideoDB Agent Toolkit exposes VideoDB context to LLMs and agents. It enables integration to AI-driven IDEs like Cursor, chat agents like Claude Code etc. This toolkit automates context generation, maintenance, and discoverability. It auto-syncs SDK versions, docs, and examples and is distributed through MCP and llms.txt
🚀 Quick Overview
The toolkit offers context files designed for use with LLMs, structured around key components:
llms-full.txt
— Comprehensive context for deep integration.
llms.txt
— Lightweight metadata for quick discovery.
MCP (Model Context Protocol)
— A standardized protocol.
These components leverage automated workflows to ensure your AI applications always operate with accurate, up-to-date context.
📦 Toolkit Components
1. llms-full.txt (View »)
llms-full.txt
consolidates everything your LLM agent needs, including:
-
Comprehensive VideoDB overview.
-
Complete SDK usage instructions and documentation.
-
Detailed integration examples and best practices.
Real-world Examples:
- VideoDB's Director
code-assistant
agent (View Implementation ) - VideoDB's Discord Bot to power customer support and community help (View Implementation )
- Integrate
llms-full.txt
directly into your LLM-powered workflows, agent systems, or AI coding environments.
2. llms.txt (View »)
A streamlined file following the Answer.AI llms.txt proposal. Ideal for quick metadata exposure and LLM discovery.
ℹ️ Recommendation: Use
llms.txt
for lightweight discovery and metadata integration. Usellms-full.txt
for complete functionality.
3. MCP (Model Context Protocol)
The VideoDB MCP Server connects with the Director backend framework, providing a single tool for many workflows. For development, it can be installed and used via uvx for isolated environments. For more details on MCPs, please visit here
Install uv
We need to install uv first.
For macOS/Linux:
curl -LsSf https://astral.sh/uv/install.sh | sh
For Windows:
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"
You can also visit the installation steps of uv
for more details here
Run the MCP Server
You can run the MCP server using uvx
using the following command
uvx videodb-director-mcp --api-key=VIDEODB_API_KEY
Update VideoDB Director MCP package
To ensure you're using the latest version of the MCP server with uvx
, start by clearing the cache:
uv cache clean
This command removes any outdated cached packages of videodb-director-mcp
, allowing uvx
to fetch the most recent version.
If you always want to use the latest version of the MCP server, update your command as follows:
uvx videodb-director-mcp@latest --api-key=<VIDEODB_API_KEY>
🧠 Anatomy of LLM Context Files
LLM context files in VideoDB are modular, automatically generated, and continuously updated from multiple sources:
🧩 Modular Structure:
-
Instructions — Best practices and prompt guidelines View »
-
SDK Context — SDK structure, classes, and interface definitions View »
-
Docs Context — Summarized product documentation View »
-
Examples Context — Real-world notebook examples View »
Automated Maintenance:
- Managed through GitHub Actions for automated updates.
- Triggered by changes to SDK repositories, documentation, or examples.
- Maintained centrally via a
config.yaml
file.
🛠️ Automation with GitHub Actions
Automatic context generation ensures your applications always have the latest information:
🔹 SDK Context Workflow (View)
- Automatically generates documentation from SDK repo updates.
- Uses Sphinx for Python SDKs.
🔹 Docs Context Workflow (View)
- Scrapes and summarizes documentation using FireCrawl and LLM-powered summarization.
🔹 Examples Context Workflow (View)
- Converts and summarizes notebooks into practical context examples.
🔹 Master Context Workflow (View)
- Combines all sub-components into unified
llms-full.txt
. - Generates standards-compliant
llms.txt
. - Updates documentation with token statistics for transparency.
🛠️ Customization via config.yaml
The config.yaml
file centralizes all configurations, allowing easy customization:
- Inclusion & Exclusion Patterns for documentation and notebook processing
- Custom LLM Prompts for precise summarization tailored to each document type
- Layout Configuration for combining context components seamlessly
config.yaml
> llms_full_txt_file
defines how llms-full.txt
is assembled:
llms_full_txt_file:
input_files:
- name: Instructions
file_path: "context/instructions/prompt.md"
- name: SDK Context
file_path: "context/sdk/context/index.md"
- name: Docs Context
file_path: "context/docs/docs_context.md"
- name: Examples Context
file_path: "context/examples/examples_context.md"
output_files:
- name: llms_full_txt
file_path: "context/llms-full.txt"
- name: llms_full_md
file_path: "context/llms-full.md"
layout: |
{{FILE1}}
{{FILE2}}
{{FILE3}}
{{FILE4}}
💡 Best Practices for Context-Driven Development
- Automate Context Updates: Leverage GitHub Actions to maintain accuracy.
- Tailored Summaries: Use custom LLM prompts to ensure context relevance.
- Seamless Integration: Continuously integrate with existing LLM agents or IDEs.
By following these practices, you ensure your AI applications have reliable, relevant, and up-to-date context—critical for effective agent performance and developer productivity.
🚀 Get Started
Clone the toolkit repository and follow the setup instructions in config.yaml
to start integrating VideoDB contexts into your LLM-powered applications today.
Explore further:
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