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Routes multi-tool workflows through MCP servers for large datasets and pipelines
---
name: mcp-code-execution
description: Routes multi-tool workflows through MCP servers for large datasets and pipelines
version: 1.9.8
triggers:
- Bash tool overhead is limiting throughput on data-heavy tasks
metadata: {"openclaw": {"homepage": "https://github.com/athola/claude-night-market/tree/master/plugins/conserve", "emoji": "\ud83e\udd9e"}}
source: claude-night-market
source_plugin: conserve
---
> **Night Market Skill** — ported from [claude-night-market/conserve](https://github.com/athola/claude-night-market/tree/master/plugins/conserve). For the full experience with agents, hooks, and commands, install the Claude Code plugin.
## Table of Contents
- [Quick Start](#quick-start)
- [When to Use](#when-to-use)
- [Core Hub Responsibilities](#core-hub-responsibilities)
- [Required TodoWrite Items](#required-todowrite-items)
- [Step 1 – Assess Workflow](#step-1-assess-workflow-mcp-code-executionassess-workflow)
- [Workflow Classification](#workflow-classification)
- [MECW Risk Assessment](#mecw-risk-assessment)
- [Step 2 – Route to Modules](#step-2-route-to-modules-mcp-code-executionroute-to-modules)
- [Module Orchestration](#module-orchestration)
- [Step 3 – Coordinate MECW](#step-3-coordinate-mecw-mcp-code-executioncoordinate-mecw)
- [Cross-Module MECW Management](#cross-module-mecw-management)
- [Step 4 – Synthesize Results](#step-4-synthesize-results-mcp-code-executionsynthesize-results)
- [Result Integration](#result-integration)
- [Module Integration](#module-integration)
- [With Context Optimization Hub](#with-context-optimization-hub)
- [Performance Skills Integration](#performance-skills-integration)
- [Emergency Protocols](#emergency-protocols)
- [Hub-Level Emergency Response](#hub-level-emergency-response)
- [Success Metrics](#success-metrics)
# MCP Code Execution Hub
## Quick Start
This skill is an orchestration hub, not a CLI. It activates
inside a Claude Code session when one of the trigger keywords
below appears, or when invoked explicitly:
```
Skill(conserve:mcp-code-execution)
```
The hub then routes to the relevant sub-skill modules
(`mcp-subagents`, `mcp-patterns`, `mcp-validation`) based on
the detected workflow shape. There is no separate install
step or CLI entry point.
## 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).
> **MCP Prompt Cache Fix (Claude Code 2.1.70+)**: MCP servers with
> instructions connecting after the first turn no longer bust the
> prompt cache. Previously, a late-connecting MCP server would
> invalidate cached prompt prefixes, increasing token costs for
> the rest of the session. On 2.1.70+, prompt cache reuse is
> preserved regardless of when MCP servers connect.
> **ToolSearch Reliability Fix (Claude Code 2.1.70+)**: Empty
> model responses after ToolSearch are fixed. The server was
> rendering tool schemas with system-prompt-style tags that could
> confuse models into stopping early. ToolSearch-heavy workflows
> (many deferred MCP tools) are now more reliable.
## 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
1. `mcp-code-execution:assess-workflow`
2. `mcp-code-execution:route-to-modules`
3. `mcp-code-execution:coordinate-mecw`
4. `mcp-code-execution:synthesize-results`
## Step 1 – Assess Workflow (`mcp-code-execution:assess-workflow`)
### Workflow Classification
```python
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
}
```
### MECW Risk Assessment
Delegate to mcp-validation module for detailed risk analysis:
```python
def delegate_mecw_assessment(workflow):
return mcp_validation_assess_mecw_risk(
workflow,
hub_allocated_tokens=self.token_budget * 0.5
)
```
## Step 2 – Route to Modules (`mcp-code-execution:route-to-modules`)
### Module Orchestration
```python
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)
```
## 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
```python
def synthesize_module_results(module_results):
"""Combine module results into a single status dict."""
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)
}
```
## 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:
1. Delegates immediately to mcp-validation for risk assessment
2. Route to mcp-subagents for further decomposition
3. Apply compression through mcp-patterns
4. 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
don't have the plugin yet? install it then click "run inline in claude" again.