Data Silo Detection
/install data-silo-detection
\r
Data Silo Detection\r
\r
Overview\r
\r Based on DDC methodology (Chapter 1.2), this skill detects and maps data silos in construction organizations, identifying disconnected data sources, duplicate data, and integration opportunities.\r \r Book Reference: "Технологии и системы управления в современном строительстве" / "Technologies and Management Systems in Modern Construction"\r \r
Quick Start\r
\r
from dataclasses import dataclass, field\r
from enum import Enum\r
from typing import List, Dict, Optional, Set, Tuple\r
from datetime import datetime\r
import json\r
from collections import defaultdict\r
\r
class DataDomain(Enum):\r
"""Construction data domains"""\r
DESIGN = "design"\r
COST = "cost"\r
SCHEDULE = "schedule"\r
QUALITY = "quality"\r
SAFETY = "safety"\r
PROCUREMENT = "procurement"\r
SITE = "site"\r
DOCUMENT = "document"\r
FINANCIAL = "financial"\r
HR = "hr"\r
\r
class SiloSeverity(Enum):\r
"""Severity level of data silo"""\r
CRITICAL = "critical" # Major business impact\r
HIGH = "high" # Significant inefficiency\r
MEDIUM = "medium" # Noticeable issues\r
LOW = "low" # Minor inconvenience\r
\r
class DataSourceType(Enum):\r
"""Types of data sources"""\r
DATABASE = "database"\r
SPREADSHEET = "spreadsheet"\r
FILE_SHARE = "file_share"\r
CLOUD_APP = "cloud_app"\r
DESKTOP_APP = "desktop_app"\r
PAPER = "paper"\r
EMAIL = "email"\r
PERSONAL = "personal"\r
\r
@dataclass\r
class DataSource:\r
"""Represents a data source in the organization"""\r
id: str\r
name: str\r
type: DataSourceType\r
domain: DataDomain\r
owner: str\r
department: str\r
users: List[str]\r
data_entities: List[str]\r
connections: List[str] = field(default_factory=list)\r
update_frequency: str = "unknown"\r
access_level: str = "department" # personal, department, organization\r
has_api: bool = False\r
last_modified: Optional[datetime] = None\r
\r
@dataclass\r
class DataSilo:\r
"""Detected data silo"""\r
id: str\r
sources: List[DataSource]\r
domain: DataDomain\r
severity: SiloSeverity\r
issue_type: str\r
description: str\r
impact: str\r
affected_users: int\r
affected_processes: List[str]\r
recommendations: List[str]\r
estimated_cost: Optional[float] = None\r
\r
@dataclass\r
class DuplicateData:\r
"""Detected duplicate data across sources"""\r
entity_name: str\r
sources: List[str]\r
discrepancy_rate: float # 0-1\r
master_source: Optional[str] = None\r
issues: List[str] = field(default_factory=list)\r
\r
@dataclass\r
class SiloAnalysis:\r
"""Complete silo analysis results"""\r
organization: str\r
analysis_date: datetime\r
total_sources: int\r
silos_detected: List[DataSilo]\r
duplicates: List[DuplicateData]\r
connectivity_score: float\r
data_flow_gaps: List[Dict]\r
priority_actions: List[str]\r
integration_roadmap: Dict\r
\r
\r
class DataSiloDetector:\r
"""\r
Detect and analyze data silos in construction organizations.\r
Based on DDC methodology Chapter 1.2.\r
"""\r
\r
def __init__(self):\r
self.domain_relationships = self._define_domain_relationships()\r
self.critical_entities = self._define_critical_entities()\r
\r
def _define_domain_relationships(self) -> Dict[DataDomain, List[DataDomain]]:\r
"""Define expected relationships between domains"""\r
return {\r
DataDomain.DESIGN: [\r
DataDomain.COST, DataDomain.SCHEDULE,\r
DataDomain.PROCUREMENT, DataDomain.QUALITY\r
],\r
DataDomain.COST: [\r
DataDomain.DESIGN, DataDomain.SCHEDULE,\r
DataDomain.FINANCIAL, DataDomain.PROCUREMENT\r
],\r
DataDomain.SCHEDULE: [\r
DataDomain.DESIGN, DataDomain.COST,\r
DataDomain.SITE, DataDomain.HR\r
],\r
DataDomain.PROCUREMENT: [\r
DataDomain.COST, DataDomain.DESIGN,\r
DataDomain.SITE, DataDomain.FINANCIAL\r
],\r
DataDomain.SITE: [\r
DataDomain.SCHEDULE, DataDomain.SAFETY,\r
DataDomain.QUALITY, DataDomain.HR\r
],\r
DataDomain.QUALITY: [\r
DataDomain.DESIGN, DataDomain.SITE,\r
DataDomain.DOCUMENT\r
],\r
DataDomain.SAFETY: [\r
DataDomain.SITE, DataDomain.HR,\r
DataDomain.DOCUMENT\r
],\r
DataDomain.FINANCIAL: [\r
DataDomain.COST, DataDomain.PROCUREMENT,\r
DataDomain.HR\r
]\r
}\r
\r
def _define_critical_entities(self) -> Dict[str, List[DataDomain]]:\r
"""Define entities that should be shared across domains"""\r
return {\r
"project": [DataDomain.DESIGN, DataDomain.COST, DataDomain.SCHEDULE],\r
"budget": [DataDomain.COST, DataDomain.FINANCIAL, DataDomain.PROCUREMENT],\r
"schedule": [DataDomain.SCHEDULE, DataDomain.SITE, DataDomain.PROCUREMENT],\r
"material": [DataDomain.DESIGN, DataDomain.COST, DataDomain.PROCUREMENT],\r
"labor": [DataDomain.HR, DataDomain.COST, DataDomain.SCHEDULE],\r
"subcontractor": [DataDomain.PROCUREMENT, DataDomain.COST, DataDomain.SCHEDULE],\r
"rfi": [DataDomain.DESIGN, DataDomain.DOCUMENT, DataDomain.SITE],\r
"change_order": [DataDomain.COST, DataDomain.DESIGN, DataDomain.SCHEDULE]\r
}\r
\r
def detect_silos(\r
self,\r
organization: str,\r
data_sources: List[DataSource],\r
process_flows: Optional[List[Dict]] = None\r
) -> SiloAnalysis:\r
"""\r
Detect data silos in the organization.\r
\r
Args:\r
organization: Organization name\r
data_sources: List of data sources to analyze\r
process_flows: Optional business process flows\r
\r
Returns:\r
Complete silo analysis\r
"""\r
# Build connectivity graph\r
connectivity = self._build_connectivity_graph(data_sources)\r
\r
# Detect isolated sources\r
isolated_silos = self._detect_isolated_sources(\r
data_sources, connectivity\r
)\r
\r
# Detect domain silos\r
domain_silos = self._detect_domain_silos(data_sources)\r
\r
# Detect duplicate data\r
duplicates = self._detect_duplicates(data_sources)\r
\r
# Detect data flow gaps\r
flow_gaps = self._detect_flow_gaps(\r
data_sources, process_flows\r
)\r
\r
# Calculate connectivity score\r
connectivity_score = self._calculate_connectivity_score(\r
data_sources, connectivity\r
)\r
\r
# Combine all silos\r
all_silos = isolated_silos + domain_silos\r
\r
# Prioritize silos\r
prioritized_silos = self._prioritize_silos(all_silos)\r
\r
# Generate priority actions\r
priority_actions = self._generate_priority_actions(\r
prioritized_silos, duplicates\r
)\r
\r
# Create integration roadmap\r
roadmap = self._create_integration_roadmap(\r
prioritized_silos, flow_gaps\r
)\r
\r
return SiloAnalysis(\r
organization=organization,\r
analysis_date=datetime.now(),\r
total_sources=len(data_sources),\r
silos_detected=prioritized_silos,\r
duplicates=duplicates,\r
connectivity_score=connectivity_score,\r
data_flow_gaps=flow_gaps,\r
priority_actions=priority_actions,\r
integration_roadmap=roadmap\r
)\r
\r
def _build_connectivity_graph(\r
self,\r
sources: List[DataSource]\r
) -> Dict[str, Set[str]]:\r
"""Build graph of source connections"""\r
graph = defaultdict(set)\r
\r
for source in sources:\r
for connection in source.connections:\r
graph[source.id].add(connection)\r
graph[connection].add(source.id)\r
\r
return graph\r
\r
def _detect_isolated_sources(\r
self,\r
sources: List[DataSource],\r
connectivity: Dict[str, Set[str]]\r
) -> List[DataSilo]:\r
"""Detect sources with no connections"""\r
silos = []\r
\r
for source in sources:\r
connections = len(connectivity.get(source.id, set()))\r
\r
if connections == 0:\r
severity = SiloSeverity.CRITICAL if source.domain in [\r
DataDomain.COST, DataDomain.SCHEDULE\r
] else SiloSeverity.HIGH\r
\r
silos.append(DataSilo(\r
id=f"isolated_{source.id}",\r
sources=[source],\r
domain=source.domain,\r
severity=severity,\r
issue_type="isolated_source",\r
description=f"{source.name} has no connections to other systems",\r
impact="Data must be manually transferred, risking errors and delays",\r
affected_users=len(source.users),\r
affected_processes=self._get_affected_processes(source.domain),\r
recommendations=[\r
f"Connect {source.name} via API or ETL to related systems",\r
"Establish data synchronization schedule",\r
"Define master data source for shared entities"\r
]\r
))\r
elif connections == 1 and source.access_level == "personal":\r
silos.append(DataSilo(\r
id=f"personal_{source.id}",\r
sources=[source],\r
domain=source.domain,\r
severity=SiloSeverity.MEDIUM,\r
issue_type="personal_silo",\r
description=f"{source.name} is a personal data store with limited access",\r
impact="Data not accessible to team, knowledge loss risk",\r
affected_users=1,\r
affected_processes=self._get_affected_processes(source.domain),\r
recommendations=[\r
"Move data to shared organizational repository",\r
"Implement access controls instead of isolation",\r
"Document data structure and usage"\r
]\r
))\r
\r
return silos\r
\r
def _detect_domain_silos(\r
self,\r
sources: List[DataSource]\r
) -> List[DataSilo]:\r
"""Detect silos between domains that should be connected"""\r
silos = []\r
\r
# Group sources by domain\r
domain_sources = defaultdict(list)\r
for source in sources:\r
domain_sources[source.domain].append(source)\r
\r
# Check for missing domain connections\r
for domain, related_domains in self.domain_relationships.items():\r
domain_srcs = domain_sources.get(domain, [])\r
\r
for related in related_domains:\r
related_srcs = domain_sources.get(related, [])\r
\r
if domain_srcs and related_srcs:\r
# Check if any connections exist between domains\r
has_connection = False\r
for src in domain_srcs:\r
for rel_src in related_srcs:\r
if rel_src.id in src.connections:\r
has_connection = True\r
break\r
\r
if not has_connection:\r
silos.append(DataSilo(\r
id=f"domain_gap_{domain.value}_{related.value}",\r
sources=domain_srcs + related_srcs,\r
domain=domain,\r
severity=SiloSeverity.HIGH,\r
issue_type="domain_disconnect",\r
description=f"No data flow between {domain.value} and {related.value}",\r
impact="Related information not synchronized, decision delays",\r
affected_users=sum(len(s.users) for s in domain_srcs + related_srcs),\r
affected_processes=self._get_affected_processes(domain) +\r
self._get_affected_processes(related),\r
recommendations=[\r
f"Establish integration between {domain.value} and {related.value} systems",\r
"Define shared data entities and master sources",\r
"Implement automated data synchronization"\r
]\r
))\r
\r
return silos\r
\r
def _detect_duplicates(\r
self,\r
sources: List[DataSource]\r
) -> List[DuplicateData]:\r
"""Detect duplicate data across sources"""\r
duplicates = []\r
\r
# Map entities to sources\r
entity_sources = defaultdict(list)\r
for source in sources:\r
for entity in source.data_entities:\r
entity_sources[entity].append(source.id)\r
\r
# Find duplicates\r
for entity, source_ids in entity_sources.items():\r
if len(source_ids) > 1:\r
# Check if it's a critical entity\r
is_critical = entity.lower() in self.critical_entities\r
\r
duplicate = DuplicateData(\r
entity_name=entity,\r
sources=source_ids,\r
discrepancy_rate=0.0, # Would need actual data to calculate\r
issues=[]\r
)\r
\r
if is_critical and len(source_ids) > 2:\r
duplicate.issues.append(\r
"Critical entity duplicated in multiple systems"\r
)\r
\r
if not any(s for s in sources if s.id in source_ids and "master" in s.name.lower()):\r
duplicate.issues.append("No clear master source defined")\r
\r
duplicates.append(duplicate)\r
\r
return duplicates\r
\r
def _detect_flow_gaps(\r
self,\r
sources: List[DataSource],\r
process_flows: Optional[List[Dict]]\r
) -> List[Dict]:\r
"""Detect gaps in expected data flows"""\r
gaps = []\r
\r
# Check critical entity coverage\r
for entity, required_domains in self.critical_entities.items():\r
entity_domains = set()\r
for source in sources:\r
if entity in [e.lower() for e in source.data_entities]:\r
entity_domains.add(source.domain)\r
\r
missing = set(required_domains) - entity_domains\r
if missing:\r
gaps.append({\r
"entity": entity,\r
"missing_domains": [d.value for d in missing],\r
"impact": f"{entity} data not available in {len(missing)} domains"\r
})\r
\r
return gaps\r
\r
def _calculate_connectivity_score(\r
self,\r
sources: List[DataSource],\r
connectivity: Dict[str, Set[str]]\r
) -> float:\r
"""Calculate overall connectivity score"""\r
if not sources:\r
return 0.0\r
\r
# Calculate average connections per source\r
total_connections = sum(len(conns) for conns in connectivity.values())\r
avg_connections = total_connections / len(sources)\r
\r
# Ideal connections per source\r
ideal_connections = 3\r
\r
# Score based on average connections\r
connection_score = min(1.0, avg_connections / ideal_connections)\r
\r
# Penalize for isolated sources\r
isolated = sum(1 for s in sources if s.id not in connectivity or not connectivity[s.id])\r
isolation_penalty = isolated / len(sources)\r
\r
# API availability bonus\r
api_count = sum(1 for s in sources if s.has_api)\r
api_bonus = (api_count / len(sources)) * 0.2\r
\r
return max(0, min(1.0, connection_score - isolation_penalty + api_bonus))\r
\r
def _get_affected_processes(self, domain: DataDomain) -> List[str]:\r
"""Get business processes affected by domain"""\r
process_map = {\r
DataDomain.DESIGN: ["Design Review", "RFI Processing", "Drawing Distribution"],\r
DataDomain.COST: ["Budgeting", "Cost Tracking", "Invoice Processing"],\r
DataDomain.SCHEDULE: ["Planning", "Progress Tracking", "Resource Allocation"],\r
DataDomain.PROCUREMENT: ["Vendor Selection", "Purchase Orders", "Material Tracking"],\r
DataDomain.SITE: ["Daily Reports", "Progress Photos", "Issue Management"],\r
DataDomain.QUALITY: ["Inspections", "Defect Tracking", "Compliance"],\r
DataDomain.SAFETY: ["Incident Reporting", "Safety Inspections", "Training"],\r
DataDomain.FINANCIAL: ["Billing", "Payments", "Financial Reporting"],\r
DataDomain.HR: ["Timekeeping", "Resource Management", "Certifications"]\r
}\r
return process_map.get(domain, [])\r
\r
def _prioritize_silos(\r
self,\r
silos: List[DataSilo]\r
) -> List[DataSilo]:\r
"""Prioritize silos by severity and impact"""\r
severity_order = {\r
SiloSeverity.CRITICAL: 0,\r
SiloSeverity.HIGH: 1,\r
SiloSeverity.MEDIUM: 2,\r
SiloSeverity.LOW: 3\r
}\r
\r
return sorted(\r
silos,\r
key=lambda s: (severity_order[s.severity], -s.affected_users)\r
)\r
\r
def _generate_priority_actions(\r
self,\r
silos: List[DataSilo],\r
duplicates: List[DuplicateData]\r
) -> List[str]:\r
"""Generate prioritized action items"""\r
actions = []\r
\r
# Critical silos first\r
critical_silos = [s for s in silos if s.severity == SiloSeverity.CRITICAL]\r
for silo in critical_silos[:3]:\r
actions.append(f"URGENT: {silo.recommendations[0]}")\r
\r
# Duplicate data issues\r
critical_dups = [d for d in duplicates if d.issues]\r
for dup in critical_dups[:2]:\r
actions.append(\r
f"Define master source for '{dup.entity_name}' "\r
f"(currently in {len(dup.sources)} sources)"\r
)\r
\r
# High priority silos\r
high_silos = [s for s in silos if s.severity == SiloSeverity.HIGH]\r
for silo in high_silos[:3]:\r
if silo.recommendations:\r
actions.append(silo.recommendations[0])\r
\r
return actions[:10]\r
\r
def _create_integration_roadmap(\r
self,\r
silos: List[DataSilo],\r
gaps: List[Dict]\r
) -> Dict:\r
"""Create phased integration roadmap"""\r
roadmap = {\r
"Phase 1 - Quick Wins (0-3 months)": [],\r
"Phase 2 - Core Integration (3-6 months)": [],\r
"Phase 3 - Advanced Integration (6-12 months)": [],\r
"Phase 4 - Optimization (12+ months)": []\r
}\r
\r
# Phase 1: Address personal silos and easy integrations\r
for silo in silos:\r
if silo.issue_type == "personal_silo":\r
roadmap["Phase 1 - Quick Wins (0-3 months)"].append(\r
f"Migrate {silo.sources[0].name} to shared repository"\r
)\r
\r
# Phase 2: Core domain integrations\r
domain_gaps = [s for s in silos if s.issue_type == "domain_disconnect"]\r
for silo in domain_gaps[:3]:\r
roadmap["Phase 2 - Core Integration (3-6 months)"].append(\r
silo.recommendations[0] if silo.recommendations else silo.description\r
)\r
\r
# Phase 3: Critical entity master data\r
roadmap["Phase 3 - Advanced Integration (6-12 months)"].extend([\r
"Implement master data management for shared entities",\r
"Deploy integration middleware/ESB",\r
"Establish data governance policies"\r
])\r
\r
# Phase 4: Optimization\r
roadmap["Phase 4 - Optimization (12+ months)"].extend([\r
"Implement real-time data synchronization",\r
"Deploy integration monitoring and alerting",\r
"Continuous improvement based on metrics"\r
])\r
\r
return roadmap\r
\r
def generate_report(self, analysis: SiloAnalysis) -> str:\r
"""Generate silo analysis report"""\r
report = f"""\r
# Data Silo Analysis Report\r
## {analysis.organization}\r
\r
**Analysis Date:** {analysis.analysis_date.strftime('%Y-%m-%d')}\r
**Data Sources Analyzed:** {analysis.total_sources}\r
**Connectivity Score:** {analysis.connectivity_score:.0%}\r
\r
## Executive Summary\r
\r
Detected **{len(analysis.silos_detected)}** data silos and **{len(analysis.duplicates)}** duplicate data issues.\r
\r
### Silos by Severity\r
"""\r
severity_counts = defaultdict(int)\r
for silo in analysis.silos_detected:\r
severity_counts[silo.severity.value] += 1\r
\r
for severity in ["critical", "high", "medium", "low"]:\r
count = severity_counts.get(severity, 0)\r
if count > 0:\r
report += f"- **{severity.title()}**: {count}\
"\r
\r
report += "\
## Priority Actions\
\
"\r
for i, action in enumerate(analysis.priority_actions, 1):\r
report += f"{i}. {action}\
"\r
\r
report += "\
## Detected Silos\
\
"\r
for silo in analysis.silos_detected[:5]:\r
report += f"""\r
### {silo.id}\r
- **Type:** {silo.issue_type}\r
- **Severity:** {silo.severity.value}\r
- **Impact:** {silo.impact}\r
- **Affected Users:** {silo.affected_users}\r
"""\r
\r
report += "\
## Integration Roadmap\
"\r
for phase, items in analysis.integration_roadmap.items():\r
report += f"\
### {phase}\
"\r
for item in items:\r
report += f"- {item}\
"\r
\r
return report\r
```\r
\r
## Common Use Cases\r
\r
### Detect Data Silos\r
\r
```python\r
detector = DataSiloDetector()\r
\r
# Define data sources\r
sources = [\r
DataSource(\r
id="revit",\r
name="Revit Models",\r
type=DataSourceType.DESKTOP_APP,\r
domain=DataDomain.DESIGN,\r
owner="Design Team",\r
department="Engineering",\r
users=["architect1", "engineer1", "engineer2"],\r
data_entities=["building_model", "drawings", "schedules"],\r
connections=["navisworks"],\r
has_api=True\r
),\r
DataSource(\r
id="excel_estimates",\r
name="Excel Cost Estimates",\r
type=DataSourceType.SPREADSHEET,\r
domain=DataDomain.COST,\r
owner="Estimator",\r
department="Pre-construction",\r
users=["estimator1"],\r
data_entities=["costs", "quantities", "labor_rates"],\r
connections=[], # No connections - silo!\r
access_level="personal"\r
),\r
DataSource(\r
id="procore",\r
name="Procore",\r
type=DataSourceType.CLOUD_APP,\r
domain=DataDomain.SITE,\r
owner="Project Manager",\r
department="Operations",\r
users=["pm1", "pm2", "super1"],\r
data_entities=["daily_reports", "photos", "punch_list"],\r
connections=["primavera"],\r
has_api=True\r
)\r
]\r
\r
analysis = detector.detect_silos(\r
organization="ABC Construction",\r
data_sources=sources\r
)\r
\r
print(f"Silos detected: {len(analysis.silos_detected)}")\r
print(f"Connectivity score: {analysis.connectivity_score:.0%}")\r
```\r
\r
### Generate Silo Report\r
\r
```python\r
report = detector.generate_report(analysis)\r
print(report)\r
\r
# Save to file\r
with open("silo_report.md", "w") as f:\r
f.write(report)\r
```\r
\r
### View Priority Actions\r
\r
```python\r
print("Priority Actions:")\r
for i, action in enumerate(analysis.priority_actions, 1):\r
print(f"{i}. {action}")\r
\r
print("\
Integration Roadmap:")\r
for phase, items in analysis.integration_roadmap.items():\r
print(f"\
{phase}:")\r
for item in items:\r
print(f" - {item}")\r
```\r
\r
## Quick Reference\r
\r
| Component | Purpose |\r
|-----------|---------|\r
| `DataSiloDetector` | Main detection engine |\r
| `DataSource` | Data source definition |\r
| `DataSilo` | Detected silo with details |\r
| `DuplicateData` | Duplicate data detection |\r
| `SiloAnalysis` | Complete analysis results |\r
| `SiloSeverity` | Severity classification |\r
\r
## Resources\r
\r
- **Book**: "Data-Driven Construction" by Artem Boiko, Chapter 1.2\r
- **Website**: https://datadrivenconstruction.io\r
\r
## Next Steps\r
\r
- Use [erp-integration-analysis](../erp-integration-analysis/SKILL.md) for system integration\r
- Use [data-evolution-analysis](../../Chapter-1.1/data-evolution-analysis/SKILL.md) for maturity assessment\r
- Use [etl-pipeline](../../Chapter-4.2/etl-pipeline/SKILL.md) to connect silos\r
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install data-silo-detection - 安装完成后,直接呼叫该 Skill 的名称或使用
/data-silo-detection触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Data Silo Detection 是什么?
Detect and map data silos in construction organizations. Identify disconnected data sources and integration opportunities. 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 1024 次。
如何安装 Data Silo Detection?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install data-silo-detection」即可一键安装,无需额外配置。
Data Silo Detection 是免费的吗?
是的,Data Silo Detection 完全免费(开源免费),可自由下载、安装和使用。
Data Silo Detection 支持哪些平台?
Data Silo Detection 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(win32)。
谁开发了 Data Silo Detection?
由 datadrivenconstruction(@datadrivenconstruction)开发并维护,当前版本 v2.1.0。