mcp-code-execution

- Core Hub Responsibilities

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Install skill "mcp-code-execution" with this command: npx skills add athola/claude-night-market/athola-claude-night-market-mcp-code-execution

Table of Contents

  • Quick Start

  • When to Use

  • Core Hub Responsibilities

  • Required TodoWrite Items

  • Step 1 – Assess Workflow

  • Workflow Classification

  • MECW Risk Assessment

  • Step 2 – Route to Modules

  • Module Orchestration

  • Step 3 – Coordinate MECW

  • Cross-Module MECW Management

  • Step 4 – Synthesize Results

  • Result Integration

  • Module Integration

  • With Context Optimization Hub

  • Performance Skills Integration

  • Emergency Protocols

  • Hub-Level Emergency Response

  • Success Metrics

MCP Code Execution Hub

Quick Start

Basic Usage


Run the main command

python -m module_name

Show help

python -m module_name --help

Verification: Run with --help flag to confirm installation.

When To Use

  • Automatic: Keywords: code execution , MCP , tool chain , data pipeline , MECW

  • Tool Chains: >3 tools chained sequentially

  • Data Processing: Large datasets (>10k rows) or files (>50KB)

  • Context Pressure: Current usage >25% of total window (proactive context management)

MCP Tool Search (Claude Code 2.1.7+): When MCP tool descriptions exceed 10% of context, tools are automatically deferred and discovered via MCPSearch instead of being loaded upfront. This reduces token overhead by ~85% but means tools must be discovered on-demand. Haiku models do not support tool search. Configure threshold with ENABLE_TOOL_SEARCH=auto:N where N is the percentage.

Subagent MCP Access Fix (Claude Code 2.1.30+): SDK-provided MCP tools are now properly synced to subagents. Prior to 2.1.30, subagents could not access SDK-provided MCP tools — workflows delegating MCP tool usage to subagents were silently broken. No workarounds needed on 2.1.30+.

Claude.ai MCP Connectors (Claude Code 2.1.46+): Users logged into Claude Code with a claude.ai account may have additional MCP tools auto-loaded from claude.ai/settings/connectors. These tools contribute to the tool search threshold count. If workflows unexpectedly trigger tool search or context inflation, check /mcp for claude.ai-sourced connectors. Known reliability issue: connectors can silently disappear (GitHub #21817).

When NOT To Use

  • Simple tool calls that don't chain

  • Context pressure is low and tools are fast

Core Hub Responsibilities

  • Orchestrates MCP code execution workflow

  • Routes to appropriate specialized modules

  • Coordinates MECW compliance across submodules

  • Manages token budget allocation for submodules

Required TodoWrite Items

  • mcp-code-execution:assess-workflow

  • mcp-code-execution:route-to-modules

  • mcp-code-execution:coordinate-mecw

  • mcp-code-execution:synthesize-results

Step 1 – Assess Workflow (mcp-code-execution:assess-workflow )

Workflow Classification

def classify_workflow_for_mecw(workflow): """Determine appropriate MCP modules and MECW strategy"""

if has_tool_chains(workflow) and workflow.complexity == 'high':
    return {
        'modules': ['mcp-subagents', 'mcp-patterns'],
        'mecw_strategy': 'aggressive',
        'token_budget': 600
    }
elif workflow.data_size > '10k_rows':
    return {
        'modules': ['mcp-patterns', 'mcp-validation'],
        'mecw_strategy': 'moderate',
        'token_budget': 400
    }
else:
    return {
        'modules': ['mcp-patterns'],
        'mecw_strategy': 'conservative',
        'token_budget': 200
    }

Verification: Run the command with --help flag to verify availability.

MECW Risk Assessment

Delegate to mcp-validation module for detailed risk analysis:

def delegate_mecw_assessment(workflow): return mcp_validation_assess_mecw_risk( workflow, hub_allocated_tokens=self.token_budget * 0.5 )

Verification: Run the command with --help flag to verify availability.

Step 2 – Route to Modules (mcp-code-execution:route-to-modules )

Module Orchestration

class MCPExecutionHub: def init(self): self.modules = { 'mcp-subagents': MCPSubagentsModule(), 'mcp-patterns': MCPatternsModule(), 'mcp-validation': MCPValidationModule() }

def execute_workflow(self, workflow, classification):
    results = []

    # Execute modules in optimal order
    for module_name in classification['modules']:
        module = self.modules[module_name]
        result = module.execute(
            workflow,
            mecw_budget=classification['token_budget'] //
            len(classification['modules'])
        )
        results.append(result)

    return self.synthesize_results(results)

Verification: Run the command with --help flag to verify availability.

Step 3 – Coordinate MECW (mcp-code-execution:coordinate-mecw )

Cross-Module MECW Management

  • Monitor total context usage across all modules

  • Enforce 50% context rule globally

  • Coordinate external state management

  • Implement MECW emergency protocols

Step 4 – Synthesize Results (mcp-code-execution:synthesize-results )

Result Integration

def synthesize_module_results(module_results): """Combine results from MCP modules into structured output"""

return {
    'status': 'completed',
    'token_savings': calculate_savings(module_results),
    'mecw_compliance': verify_mecw_rules(module_results),
    'hallucination_risk': assess_hallucination_prevention(module_results),
    'results': consolidate_results(module_results)
}

Verification: Run the command with --help flag to verify availability.

Module Integration

Available Modules

  • See modules/mcp-coordination.md for cross-module orchestration

  • See modules/mcp-patterns.md for common MCP execution patterns

  • See modules/mcp-subagents.md for subagent delegation strategies

  • See modules/mcp-validation.md for MECW compliance validation

With Context Optimization Hub

  • Receives high-level MECW strategy from context-optimization

  • Returns detailed execution metrics and compliance data

  • Coordinates token budget allocation

Performance Skills Integration

  • uses python-performance-optimization through mcp-patterns

  • Aligns with cpu-gpu-performance for resource-aware execution

  • validates optimizations maintain MECW compliance

Emergency Protocols

Hub-Level Emergency Response

When MECW limits exceeded:

  • Delegates immediately to mcp-validation for risk assessment

  • Route to mcp-subagents for further decomposition

  • Apply compression through mcp-patterns

  • Return minimal summary to preserve context

Success Metrics

  • Workflow Success Rate: >95% successful module coordination

  • MECW Compliance: 100% adherence to 50% context rule

  • Token Efficiency: Maintain >80% savings vs traditional methods

  • Module Coordination: <5% overhead for hub orchestration

Troubleshooting

Common Issues

Command not found Ensure all dependencies are installed and in PATH

Permission errors Check file permissions and run with appropriate privileges

Unexpected behavior Enable verbose logging with --verbose flag

Source Transparency

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