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par5-mcp

An MCP (Model Context Protocol) server that enables parallel execution of shell commands and AI coding agents across lists of items. Perfect for batch processing files, running linters across multiple targets, or delegating complex tasks to multiple AI agents simultaneously.

Features

  • List Management: Create, update, delete, and inspect lists of items (file paths, URLs, identifiers, etc.)

  • Parallel Shell Execution: Run shell commands across all items in a list with batched parallelism

  • Multi-Agent Orchestration: Spawn Claude, Gemini, or Codex agents in parallel to process items

  • Streaming Output: Results stream to files in real-time for monitoring progress

  • Batched Processing: Commands and agents run in batches of 10 to avoid overwhelming the system

Installation

npm install par5-mcp

Or install globally:

npm install -g par5-mcp

Usage

As an MCP Server

Add to your MCP client configuration:

{ "mcpServers": { "par5": { "command": "npx", "args": ["par5-mcp"] } } }

Or if installed globally:

{ "mcpServers": { "par5": { "command": "par5-mcp" } } }

Available Tools

List Management

create_list

Creates a named list of items for parallel processing.

Parameters:

  • items (string[]): Array of items to store in the list

Returns: A unique list ID to use with other tools

Example:

create_list(items: ["src/a.ts", "src/b.ts", "src/c.ts"]) // Returns: list_id = "abc-123-..."

get_list

Retrieves the items in an existing list by its ID.

Parameters:

  • list_id (string): The list ID returned by create_list

update_list

Updates an existing list by replacing its items with a new array.

Parameters:

  • list_id (string): The list ID to update

  • items (string[]): The new array of items

delete_list

Deletes an existing list by its ID.

Parameters:

  • list_id (string): The list ID to delete

list_all_lists

Lists all existing lists and their item counts.

Parameters: None


Parallel Execution

run_shell_across_list

Executes a shell command for each item in a list. Commands run in batches of 10 parallel processes.

Parameters:

  • list_id (string): The list ID to iterate over

  • command (string): Shell command with $item placeholder

Variable Substitution:

  • Use $item in your command - it will be replaced with each list item (properly shell-escaped)

Example:

run_shell_across_list( list_id: "abc-123", command: "wc -l $item" )

This runs wc -l 'src/a.ts', wc -l 'src/b.ts', etc. in parallel.

Output:

  • stdout and stderr are streamed to separate files per item

  • File paths are returned for you to read the results

run_agent_across_list

Spawns an AI coding agent for each item in a list. Agents run in batches of 10 with a 5-minute timeout per agent.

Parameters:

  • list_id (string): The list ID to iterate over

  • agent (enum): "claude", "gemini", or "codex"

  • prompt (string): Prompt with {{item}} placeholder

Available Agents:

Agent

CLI

Auto-Accept Flag

claude

Claude Code CLI

--dangerously-skip-permissions

gemini

Google Gemini CLI

--yolo

codex

OpenAI Codex CLI

--dangerously-bypass-approvals-and-sandbox

Variable Substitution:

  • Use {{item}} in your prompt - it will be replaced with each list item

Example:

run_agent_across_list( list_id: "abc-123", agent: "claude", prompt: "Review {{item}} for security vulnerabilities and suggest fixes" )

Output:

  • stdout and stderr are streamed to separate files per item

  • File paths are returned for you to read the agent outputs

Workflow Example

Here's a typical workflow for processing multiple files:

  1. Create a list of files to process:

    create_list(items: ["src/auth.ts", "src/api.ts", "src/utils.ts"])
  2. Run a shell command across all files:

    run_shell_across_list( list_id: "<returned-id>", command: "cat $item | grep -n 'TODO'" )
  3. Or delegate to AI agents:

    run_agent_across_list( list_id: "<returned-id>", agent: "claude", prompt: "Add comprehensive JSDoc comments to all exported functions in {{item}}" )
  4. Read the output files to check results

  5. Clean up:

    delete_list(list_id: "<returned-id>")

Configuration

The following environment variables can be used to configure par5-mcp:

Variable

Description

Default

PAR5_BATCH_SIZE

Number of parallel processes per batch

10

PAR5_AGENT_ARGS

Additional arguments passed to all agents

(none)

PAR5_CLAUDE_ARGS

Additional arguments passed to Claude CLI

(none)

PAR5_GEMINI_ARGS

Additional arguments passed to Gemini CLI

(none)

PAR5_CODEX_ARGS

Additional arguments passed to Codex CLI

(none)

PAR5_DISABLE_CLAUDE

Set to any value to disable the Claude agent

(none)

PAR5_DISABLE_GEMINI

Set to any value to disable the Gemini agent

(none)

PAR5_DISABLE_CODEX

Set to any value to disable the Codex agent

(none)

Example:

{ "mcpServers": { "par5": { "command": "npx", "args": ["par5-mcp"], "env": { "PAR5_BATCH_SIZE": "20", "PAR5_CLAUDE_ARGS": "--model claude-sonnet-4-20250514" } } } }

Output Files

Results are written to temporary files in the system temp directory under par5-mcp-results/:

/tmp/par5-mcp-results/<run-id>/ ├── auth.ts.stdout.txt ├── auth.ts.stderr.txt ├── api.ts.stdout.txt ├── api.ts.stderr.txt └── ...

File names are derived from the item value (sanitized for filesystem safety).

Development

Building from Source

git clone <repository-url> cd par5-mcp npm install npm run build

Running Locally

npm start

Requirements

License

ISC

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