Smithery Logo
MCPsSkillsDocsPricing
Login
NewFlame, an assistant that learns and improves. Available onTelegramSlack
    datadrivenconstruction

    erp-integration-analysis

    datadrivenconstruction/erp-integration-analysis
    Business
    7

    About

    SKILL.md

    Install

    • Telegram
      Telegram
    • Slack
      Slack
    • Claude Code
      Claude Code
    • Codex
      Codex
    • OpenClaw
      OpenClaw
    • Cursor
      Cursor
    • Amp
      Amp
    • GitHub Copilot
      GitHub Copilot
    • Gemini CLI
      Gemini CLI
    • Kilo Code
      Kilo Code
    • Junie
      Junie
    • Replit
      Replit
    • Windsurf
      Windsurf
    • Cline
      Cline
    • Continue
      Continue
    • OpenCode
      OpenCode
    • OpenHands
      OpenHands
    • Roo Code
      Roo Code
    • Augment
      Augment
    • Goose
      Goose
    • Trae
      Trae
    • Zencoder
      Zencoder
    • Antigravity
      Antigravity
    • Download skill
    ├─
    ├─
    └─
    Smithery Logo

    Give agents more agency

    Resources

    DocumentationPrivacy PolicySystem Status

    Company

    PricingAboutBlog

    Connect

    © 2026 Smithery. All rights reserved.

    About

    Analyze ERP system integration for construction data flows. Map and optimize data flows between ERP modules

    SKILL.md

    ERP Integration Analysis

    Overview

    Based on DDC methodology (Chapter 1.2), this skill analyzes ERP system integration patterns in construction organizations, mapping data flows between modules and identifying optimization opportunities.

    Book Reference: "Технологии и системы управления в современном строительстве" / "Technologies and Management Systems in Modern Construction"

    Quick Start

    from dataclasses import dataclass, field
    from enum import Enum
    from typing import List, Dict, Optional, Set, Tuple
    from datetime import datetime
    import json
    
    class ERPModule(Enum):
        """Common ERP modules in construction"""
        FINANCE = "finance"
        PROJECT_MANAGEMENT = "project_management"
        PROCUREMENT = "procurement"
        INVENTORY = "inventory"
        HR = "human_resources"
        PAYROLL = "payroll"
        EQUIPMENT = "equipment"
        SUBCONTRACTS = "subcontracts"
        BILLING = "billing"
        COST_CONTROL = "cost_control"
        DOCUMENT_MANAGEMENT = "document_management"
        REPORTING = "reporting"
    
    class IntegrationMethod(Enum):
        """Types of integration methods"""
        API = "api"
        DATABASE = "database"
        FILE_EXPORT = "file_export"
        MANUAL = "manual"
        WEBHOOK = "webhook"
        MESSAGE_QUEUE = "message_queue"
        ETL = "etl"
    
    class DataFlowDirection(Enum):
        """Direction of data flow"""
        INBOUND = "inbound"
        OUTBOUND = "outbound"
        BIDIRECTIONAL = "bidirectional"
    
    @dataclass
    class DataFlow:
        """Represents a data flow between systems/modules"""
        source_module: str
        target_module: str
        data_type: str
        frequency: str  # real-time, hourly, daily, weekly, manual
        method: IntegrationMethod
        direction: DataFlowDirection
        volume: str  # low, medium, high
        critical: bool = False
        issues: List[str] = field(default_factory=list)
    
    @dataclass
    class ERPSystem:
        """ERP system definition"""
        name: str
        vendor: str
        version: str
        modules: List[ERPModule]
        database: str
        has_api: bool
        api_type: Optional[str] = None  # REST, SOAP, GraphQL
        custom_modules: List[str] = field(default_factory=list)
    
    @dataclass
    class IntegrationPoint:
        """Integration point between systems"""
        id: str
        source_system: str
        target_system: str
        method: IntegrationMethod
        endpoint: Optional[str] = None
        authentication: Optional[str] = None
        data_format: str = "json"
        status: str = "active"
        reliability_score: float = 1.0
        last_sync: Optional[datetime] = None
    
    @dataclass
    class IntegrationAnalysis:
        """Complete integration analysis results"""
        erp_system: ERPSystem
        external_systems: List[str]
        data_flows: List[DataFlow]
        integration_points: List[IntegrationPoint]
        integration_score: float
        bottlenecks: List[str]
        recommendations: List[str]
        data_flow_diagram: Dict
    
    
    class ERPIntegrationAnalyzer:
        """
        Analyze ERP system integration for construction data flows.
        Based on DDC methodology Chapter 1.2.
        """
    
        def __init__(self):
            self.module_dependencies = self._define_module_dependencies()
            self.critical_flows = self._define_critical_flows()
    
        def _define_module_dependencies(self) -> Dict[ERPModule, List[ERPModule]]:
            """Define typical module dependencies"""
            return {
                ERPModule.PROJECT_MANAGEMENT: [
                    ERPModule.COST_CONTROL,
                    ERPModule.PROCUREMENT,
                    ERPModule.HR,
                    ERPModule.DOCUMENT_MANAGEMENT
                ],
                ERPModule.COST_CONTROL: [
                    ERPModule.FINANCE,
                    ERPModule.PROJECT_MANAGEMENT,
                    ERPModule.BILLING
                ],
                ERPModule.PROCUREMENT: [
                    ERPModule.INVENTORY,
                    ERPModule.FINANCE,
                    ERPModule.SUBCONTRACTS
                ],
                ERPModule.BILLING: [
                    ERPModule.FINANCE,
                    ERPModule.PROJECT_MANAGEMENT,
                    ERPModule.COST_CONTROL
                ],
                ERPModule.PAYROLL: [
                    ERPModule.HR,
                    ERPModule.FINANCE,
                    ERPModule.PROJECT_MANAGEMENT
                ],
                ERPModule.INVENTORY: [
                    ERPModule.PROCUREMENT,
                    ERPModule.PROJECT_MANAGEMENT,
                    ERPModule.FINANCE
                ],
                ERPModule.EQUIPMENT: [
                    ERPModule.PROJECT_MANAGEMENT,
                    ERPModule.FINANCE,
                    ERPModule.INVENTORY
                ],
                ERPModule.SUBCONTRACTS: [
                    ERPModule.PROCUREMENT,
                    ERPModule.FINANCE,
                    ERPModule.PROJECT_MANAGEMENT
                ]
            }
    
        def _define_critical_flows(self) -> List[Tuple[str, str]]:
            """Define business-critical data flows"""
            return [
                ("project_management", "cost_control"),
                ("cost_control", "finance"),
                ("procurement", "inventory"),
                ("billing", "finance"),
                ("hr", "payroll"),
                ("project_management", "billing")
            ]
    
        def analyze_erp_integration(
            self,
            erp_system: ERPSystem,
            external_systems: List[Dict],
            integration_points: List[IntegrationPoint],
            transaction_logs: Optional[List[Dict]] = None
        ) -> IntegrationAnalysis:
            """
            Perform comprehensive ERP integration analysis.
    
            Args:
                erp_system: The ERP system to analyze
                external_systems: List of external systems
                integration_points: Defined integration points
                transaction_logs: Optional transaction logs for analysis
    
            Returns:
                Complete integration analysis
            """
            # Map all data flows
            data_flows = self._map_data_flows(
                erp_system, integration_points, transaction_logs
            )
    
            # Calculate integration score
            integration_score = self._calculate_integration_score(
                erp_system, data_flows, integration_points
            )
    
            # Identify bottlenecks
            bottlenecks = self._identify_bottlenecks(
                data_flows, integration_points
            )
    
            # Generate recommendations
            recommendations = self._generate_recommendations(
                erp_system, data_flows, bottlenecks
            )
    
            # Create data flow diagram
            diagram = self._create_flow_diagram(
                erp_system, external_systems, data_flows
            )
    
            return IntegrationAnalysis(
                erp_system=erp_system,
                external_systems=[s["name"] for s in external_systems],
                data_flows=data_flows,
                integration_points=integration_points,
                integration_score=integration_score,
                bottlenecks=bottlenecks,
                recommendations=recommendations,
                data_flow_diagram=diagram
            )
    
        def _map_data_flows(
            self,
            erp: ERPSystem,
            integration_points: List[IntegrationPoint],
            logs: Optional[List[Dict]]
        ) -> List[DataFlow]:
            """Map all data flows in the system"""
            flows = []
    
            # Internal module flows
            for module in erp.modules:
                dependencies = self.module_dependencies.get(module, [])
                for dep in dependencies:
                    if dep in erp.modules:
                        is_critical = (module.value, dep.value) in self.critical_flows
                        flows.append(DataFlow(
                            source_module=module.value,
                            target_module=dep.value,
                            data_type=self._get_data_type(module, dep),
                            frequency="real-time",
                            method=IntegrationMethod.DATABASE,
                            direction=DataFlowDirection.BIDIRECTIONAL,
                            volume="high" if is_critical else "medium",
                            critical=is_critical
                        ))
    
            # External integration flows
            for point in integration_points:
                if point.source_system == erp.name or point.target_system == erp.name:
                    flows.append(DataFlow(
                        source_module=point.source_system,
                        target_module=point.target_system,
                        data_type="mixed",
                        frequency=self._infer_frequency(point),
                        method=point.method,
                        direction=DataFlowDirection.BIDIRECTIONAL,
                        volume="medium",
                        critical=False
                    ))
    
            # Analyze logs if available
            if logs:
                flows = self._enhance_flows_from_logs(flows, logs)
    
            return flows
    
        def _get_data_type(
            self, source: ERPModule, target: ERPModule
        ) -> str:
            """Determine data type for module pair"""
            data_types = {
                (ERPModule.PROJECT_MANAGEMENT, ERPModule.COST_CONTROL): "costs_budgets",
                (ERPModule.COST_CONTROL, ERPModule.FINANCE): "financial_transactions",
                (ERPModule.PROCUREMENT, ERPModule.INVENTORY): "purchase_orders",
                (ERPModule.HR, ERPModule.PAYROLL): "employee_time",
                (ERPModule.BILLING, ERPModule.FINANCE): "invoices"
            }
            return data_types.get((source, target), "general_data")
    
        def _infer_frequency(self, point: IntegrationPoint) -> str:
            """Infer integration frequency from method"""
            if point.method == IntegrationMethod.WEBHOOK:
                return "real-time"
            elif point.method == IntegrationMethod.API:
                return "hourly"
            elif point.method == IntegrationMethod.ETL:
                return "daily"
            elif point.method == IntegrationMethod.FILE_EXPORT:
                return "daily"
            else:
                return "manual"
    
        def _enhance_flows_from_logs(
            self,
            flows: List[DataFlow],
            logs: List[Dict]
        ) -> List[DataFlow]:
            """Enhance flow information from transaction logs"""
            # Analyze log patterns
            flow_stats = {}
            for log in logs:
                key = (log.get("source"), log.get("target"))
                if key not in flow_stats:
                    flow_stats[key] = {"count": 0, "errors": 0}
                flow_stats[key]["count"] += 1
                if log.get("status") == "error":
                    flow_stats[key]["errors"] += 1
    
            # Update flows with statistics
            for flow in flows:
                key = (flow.source_module, flow.target_module)
                if key in flow_stats:
                    stats = flow_stats[key]
                    error_rate = stats["errors"] / stats["count"] if stats["count"] > 0 else 0
                    if error_rate > 0.1:
                        flow.issues.append(f"High error rate: {error_rate:.1%}")
                    if stats["count"] < 10:
                        flow.issues.append("Low transaction volume")
    
            return flows
    
        def _calculate_integration_score(
            self,
            erp: ERPSystem,
            flows: List[DataFlow],
            points: List[IntegrationPoint]
        ) -> float:
            """Calculate overall integration score (0-1)"""
            scores = []
    
            # API availability
            if erp.has_api:
                scores.append(1.0)
            else:
                scores.append(0.3)
    
            # Integration method quality
            method_scores = {
                IntegrationMethod.API: 1.0,
                IntegrationMethod.WEBHOOK: 1.0,
                IntegrationMethod.MESSAGE_QUEUE: 0.9,
                IntegrationMethod.ETL: 0.8,
                IntegrationMethod.DATABASE: 0.7,
                IntegrationMethod.FILE_EXPORT: 0.5,
                IntegrationMethod.MANUAL: 0.2
            }
    
            if points:
                avg_method_score = sum(
                    method_scores.get(p.method, 0.5) for p in points
                ) / len(points)
                scores.append(avg_method_score)
    
            # Critical flow coverage
            critical_covered = sum(1 for f in flows if f.critical) / len(self.critical_flows)
            scores.append(critical_covered)
    
            # Flow health (issues)
            flows_with_issues = sum(1 for f in flows if f.issues)
            flow_health = 1 - (flows_with_issues / len(flows)) if flows else 1
            scores.append(flow_health)
    
            return sum(scores) / len(scores)
    
        def _identify_bottlenecks(
            self,
            flows: List[DataFlow],
            points: List[IntegrationPoint]
        ) -> List[str]:
            """Identify integration bottlenecks"""
            bottlenecks = []
    
            # Manual integrations
            manual_flows = [f for f in flows if f.method == IntegrationMethod.MANUAL]
            if manual_flows:
                bottlenecks.append(
                    f"{len(manual_flows)} manual data flows requiring automation"
                )
    
            # File-based integrations
            file_flows = [f for f in flows if f.method == IntegrationMethod.FILE_EXPORT]
            if file_flows:
                bottlenecks.append(
                    f"{len(file_flows)} file-based integrations causing delays"
                )
    
            # Low reliability points
            low_reliability = [p for p in points if p.reliability_score < 0.8]
            if low_reliability:
                bottlenecks.append(
                    f"{len(low_reliability)} integration points with low reliability"
                )
    
            # Flows with issues
            problem_flows = [f for f in flows if f.issues]
            for flow in problem_flows:
                for issue in flow.issues:
                    bottlenecks.append(
                        f"{flow.source_module} → {flow.target_module}: {issue}"
                    )
    
            # Missing critical flows
            existing_critical = {
                (f.source_module, f.target_module) for f in flows if f.critical
            }
            for critical in self.critical_flows:
                if critical not in existing_critical:
                    bottlenecks.append(
                        f"Missing critical flow: {critical[0]} → {critical[1]}"
                    )
    
            return bottlenecks
    
        def _generate_recommendations(
            self,
            erp: ERPSystem,
            flows: List[DataFlow],
            bottlenecks: List[str]
        ) -> List[str]:
            """Generate integration improvement recommendations"""
            recommendations = []
    
            # API recommendations
            if not erp.has_api:
                recommendations.append(
                    "Enable API access for the ERP system to improve integration capabilities"
                )
    
            # Method upgrades
            manual_count = sum(1 for f in flows if f.method == IntegrationMethod.MANUAL)
            if manual_count > 0:
                recommendations.append(
                    f"Automate {manual_count} manual data flows using API or ETL"
                )
    
            file_count = sum(1 for f in flows if f.method == IntegrationMethod.FILE_EXPORT)
            if file_count > 2:
                recommendations.append(
                    "Replace file-based integrations with real-time API connections"
                )
    
            # Real-time integration
            non_realtime = sum(
                1 for f in flows
                if f.critical and f.frequency not in ["real-time", "hourly"]
            )
            if non_realtime > 0:
                recommendations.append(
                    f"Upgrade {non_realtime} critical flows to real-time synchronization"
                )
    
            # Data quality
            if any("error rate" in b.lower() for b in bottlenecks):
                recommendations.append(
                    "Implement data validation at integration points to reduce errors"
                )
    
            # Monitoring
            recommendations.append(
                "Implement integration monitoring dashboard for proactive issue detection"
            )
    
            return recommendations
    
        def _create_flow_diagram(
            self,
            erp: ERPSystem,
            external_systems: List[Dict],
            flows: List[DataFlow]
        ) -> Dict:
            """Create data flow diagram structure"""
            nodes = []
            edges = []
    
            # Add ERP modules as nodes
            for module in erp.modules:
                nodes.append({
                    "id": module.value,
                    "type": "erp_module",
                    "label": module.value.replace("_", " ").title(),
                    "system": erp.name
                })
    
            # Add external systems as nodes
            for system in external_systems:
                nodes.append({
                    "id": system["name"],
                    "type": "external",
                    "label": system["name"],
                    "system": "external"
                })
    
            # Add flows as edges
            for flow in flows:
                edges.append({
                    "source": flow.source_module,
                    "target": flow.target_module,
                    "method": flow.method.value,
                    "frequency": flow.frequency,
                    "critical": flow.critical,
                    "data_type": flow.data_type
                })
    
            return {
                "nodes": nodes,
                "edges": edges,
                "legend": {
                    "node_types": ["erp_module", "external"],
                    "edge_methods": [m.value for m in IntegrationMethod]
                }
            }
    
        def compare_integration_options(
            self,
            options: List[Dict]
        ) -> Dict:
            """Compare different integration approaches"""
            comparison = []
    
            for option in options:
                score = self._score_integration_option(option)
                comparison.append({
                    "name": option["name"],
                    "method": option.get("method", "unknown"),
                    "cost": option.get("cost", "unknown"),
                    "implementation_time": option.get("time", "unknown"),
                    "reliability": score["reliability"],
                    "scalability": score["scalability"],
                    "maintenance": score["maintenance"],
                    "total_score": score["total"]
                })
    
            # Sort by total score
            comparison.sort(key=lambda x: x["total_score"], reverse=True)
    
            return {
                "options": comparison,
                "recommendation": comparison[0]["name"] if comparison else None
            }
    
        def _score_integration_option(self, option: Dict) -> Dict:
            """Score an integration option"""
            method = option.get("method", "")
    
            # Base scores by method
            method_scores = {
                "api": {"reliability": 0.9, "scalability": 0.9, "maintenance": 0.8},
                "etl": {"reliability": 0.8, "scalability": 0.8, "maintenance": 0.7},
                "file": {"reliability": 0.6, "scalability": 0.5, "maintenance": 0.6},
                "manual": {"reliability": 0.4, "scalability": 0.2, "maintenance": 0.3}
            }
    
            scores = method_scores.get(method, {"reliability": 0.5, "scalability": 0.5, "maintenance": 0.5})
            scores["total"] = sum(scores.values()) / 3
    
            return scores
    
    
    class IntegrationHealthMonitor:
        """Monitor ERP integration health"""
    
        def __init__(self, integration_points: List[IntegrationPoint]):
            self.points = integration_points
            self.history: List[Dict] = []
    
        def check_health(self) -> Dict:
            """Check current integration health"""
            results = {
                "timestamp": datetime.now(),
                "overall_status": "healthy",
                "points_checked": len(self.points),
                "issues": []
            }
    
            for point in self.points:
                status = self._check_point(point)
                if status["status"] != "healthy":
                    results["issues"].append({
                        "point": point.id,
                        "status": status["status"],
                        "message": status["message"]
                    })
    
            if len(results["issues"]) > 0:
                results["overall_status"] = "degraded"
            if len(results["issues"]) > len(self.points) * 0.5:
                results["overall_status"] = "critical"
    
            self.history.append(results)
            return results
    
        def _check_point(self, point: IntegrationPoint) -> Dict:
            """Check individual integration point"""
            if point.status != "active":
                return {"status": "inactive", "message": "Integration point disabled"}
    
            if point.reliability_score < 0.5:
                return {"status": "degraded", "message": "Low reliability score"}
    
            if point.last_sync:
                hours_since_sync = (datetime.now() - point.last_sync).total_seconds() / 3600
                if hours_since_sync > 24:
                    return {"status": "stale", "message": f"No sync for {hours_since_sync:.0f} hours"}
    
            return {"status": "healthy", "message": "OK"}
    
        def get_health_report(self) -> str:
            """Generate health report"""
            current = self.check_health()
    
            report = f"""
    # ERP Integration Health Report
    Generated: {current['timestamp'].strftime('%Y-%m-%d %H:%M')}
    
    ## Overall Status: {current['overall_status'].upper()}
    
    ### Integration Points: {current['points_checked']}
    ### Active Issues: {len(current['issues'])}
    """
            if current['issues']:
                report += "\n### Issues:\n"
                for issue in current['issues']:
                    report += f"- **{issue['point']}**: {issue['status']} - {issue['message']}\n"
    
            return report
    

    Common Use Cases

    Analyze ERP Integration

    analyzer = ERPIntegrationAnalyzer()
    
    # Define ERP system
    erp = ERPSystem(
        name="SAP S/4HANA",
        vendor="SAP",
        version="2023",
        modules=[
            ERPModule.FINANCE,
            ERPModule.PROJECT_MANAGEMENT,
            ERPModule.PROCUREMENT,
            ERPModule.COST_CONTROL,
            ERPModule.HR,
            ERPModule.BILLING
        ],
        database="HANA",
        has_api=True,
        api_type="REST"
    )
    
    # Define external systems
    external = [
        {"name": "Procore", "type": "project_management"},
        {"name": "Revit", "type": "bim"},
        {"name": "Primavera", "type": "scheduling"}
    ]
    
    # Define integration points
    points = [
        IntegrationPoint(
            id="erp-procore",
            source_system="SAP S/4HANA",
            target_system="Procore",
            method=IntegrationMethod.API
        ),
        IntegrationPoint(
            id="erp-primavera",
            source_system="SAP S/4HANA",
            target_system="Primavera",
            method=IntegrationMethod.FILE_EXPORT
        )
    ]
    
    analysis = analyzer.analyze_erp_integration(
        erp_system=erp,
        external_systems=external,
        integration_points=points
    )
    
    print(f"Integration Score: {analysis.integration_score:.0%}")
    print(f"Bottlenecks: {len(analysis.bottlenecks)}")
    

    Monitor Integration Health

    monitor = IntegrationHealthMonitor(integration_points)
    
    health = monitor.check_health()
    print(f"Status: {health['overall_status']}")
    
    if health['issues']:
        for issue in health['issues']:
            print(f"  - {issue['point']}: {issue['message']}")
    
    # Generate report
    report = monitor.get_health_report()
    print(report)
    

    Compare Integration Options

    options = [
        {"name": "REST API Integration", "method": "api", "cost": 50000, "time": "3 months"},
        {"name": "ETL Pipeline", "method": "etl", "cost": 30000, "time": "2 months"},
        {"name": "File-based Export", "method": "file", "cost": 10000, "time": "1 month"}
    ]
    
    comparison = analyzer.compare_integration_options(options)
    print(f"Recommended: {comparison['recommendation']}")
    

    Quick Reference

    Component Purpose
    ERPIntegrationAnalyzer Main analysis engine
    ERPSystem ERP system definition
    ERPModule Standard ERP modules
    IntegrationPoint Integration connection
    DataFlow Data flow mapping
    IntegrationHealthMonitor Health monitoring

    Resources

    • Book: "Data-Driven Construction" by Artem Boiko, Chapter 1.2
    • Website: https://datadrivenconstruction.io

    Next Steps

    • Use data-silo-detection to identify isolated systems
    • Use etl-pipeline for data integration
    • Use interoperability-analyzer for standards compliance
    Recommended Servers
    SIMOSphere AI
    SIMOSphere AI
    The Local Intel
    The Local Intel
    ThinAir Data
    ThinAir Data
    Repository
    datadrivenconstruction/ddc_skills_for_ai_agents_in_construction
    Files