Click on "Install Server".
Wait a few minutes for the server to deploy. Once ready, it will show a "Started" state.
In the chat, type
@followed by the MCP server name and your instructions, e.g., "@Arcanna MCP Serverquery recent security events from the last hour"
That's it! The server will respond to your query, and you can continue using it as needed.
Here is a step-by-step guide with screenshots.
Arcanna MCP Server
The Arcanna MCP server allows user to interact with Arcanna's AI use cases through the Model Context Protocol (MCP).
Usage with Claude Desktop or other MCP Clients
Configuration
Add the following entry to the mcpServers section in your MCP client config file (claude_desktop_config.json for Claude
Desktop).
Use docker image (https://hub.docker.com/r/arcanna/arcanna-mcp-server) or PyPi package (https://pypi.org/project/arcanna-mcp-server/)
Building local image from this repository
Prerequisites
Docker - https://docs.docker.com/engine/install/
Configuration
Change directory to the directory where the Dockerfile is.
Run
docker build -t arcanna/arcanna-mcp-server . --progress=plain --no-cacheAdd the configuration bellow to your claude desktop/mcp client config.
Features
Resource Management: Create, update and retrieve Arcanna resources (jobs, integrations)
Python Coding: Code generation, execution and saving the code block as an Arcanna integration
Query Arcanna events: Query events processed by Arcanna
Job Management: Create, retrieve, start, stop, and train jobs
Feedback System: Provide feedback on decisions to improve model accuracy
Health Monitoring: Check server and API key status
Tools
Query Arcanna events
query_arcanna_events
Used to get events processed by Arcanna, multiple filters can be provided
get_filter_fields
used as a helper tool (retrieve Arcanna possible fields to apply filters on)
Resource Management
upsert_resources
Create/update Arcanna resources
get_resources
Retrieve Arcanna resources (jobs/integrations)
delete_resources
Delete Arcanna resources
integration_parameters_schema
used in this context as a helper tool
Python Coding
generate_code_agent
Used to generate code
execute_code
Used to execute the generated code
save_code
Use to save the code block in Arcanna pipeline as an integration
Job Management
start_job
Begin event ingestion for a job
stop_job
Stop event ingestion for a job
train_job
Train the job's AI model using the provided feedback
Feedback System
add_feedback_to_event
Provide feedback on AI decisions for model improvement
System Health
health_check
Verify server status and Management API key validity
Returns Management API key authorization status