技能详情(站内镜像,无评论)
许可证:MIT-0
MIT-0 ·免费使用、修改和重新分发。无需归因。
版本:v2.1.0
统计:⭐ 0 · 1k · 3 current installs · 3 all-time installs
⭐ 0
安装量(当前) 3
🛡 VirusTotal :良性 · OpenClaw :可疑
Package:datadrivenconstruction/bim-qto
安全扫描(ClawHub)
- VirusTotal :良性
- OpenClaw :可疑
OpenClaw 评估
The skill's stated purpose (BIM quantity takeoff) is coherent, but the runtime instructions and manifest omit important dependency and execution details (Python packages) and request filesystem access — these mismatches warrant caution before installing.
目的
Name/description, Windows-only restriction, and requirement of python3 align with a BIM QTO tool. Filesystem access in claw.json is reasonable for reading user-provided model exports.
说明范围
SKILL.md contains detailed Python code and instructs the agent to 'process data using methods described in SKILL.md' and to accept user file paths (CSV/Excel/JSON). That scope is appropriate for the task, but the instructions assume the agent will execute Python code without describing how to run it or how to obtain Python libraries.
安装机制
There is no install spec (instruction-only), which is low risk by itself, but the included Python code imports pandas/numpy (and likely other libraries for Excel handling) while the manifest only requires 'python3'. Missing declared Python package dependencies / install steps is an incoherence that will break runtime or force the agent to install packages on the fly.
证书
The skill requests no environment variables or external credentials. Filesystem permission is present in claw.json, which is proportional for a tool that reads user-provided files. No evidence of requests for unrelated secrets or external services.
持久
always is false and the skill is user-invocable. It does request filesystem access (manifest), but it does not request permanent inclusion or system-wide changes. No evidence it modifies other skills or system configs.
安装(复制给龙虾 AI)
将下方整段复制到龙虾中文库对话中,由龙虾按 SKILL.md 完成安装。
请把本段交给龙虾中文库(龙虾 AI)执行:为本机安装 OpenClaw 技能「Bim Qto」。简介:Extract quantities from BIM/CAD data for cost estimation. Group by type, level,…。
请 fetch 以下地址读取 SKILL.md 并按文档完成安装:https://raw.githubusercontent.com/openclaw/skills/refs/heads/main/skills/datadrivenconstruction/bim-qto/SKILL.md
(来源:yingzhi8.cn 技能库)
SKILL.md
---
name: "bim-qto"
description: "Extract quantities from BIM/CAD data for cost estimation. Group by type, level, zone. Generate QTO reports."
homepage: "https://datadrivenconstruction.io"
metadata: {"openclaw": {"emoji": "⚡", "os": ["win32"], "homepage": "https://datadrivenconstruction.io", "requires": {"bins": ["python3"]}}}
---
# BIM Quantity Takeoff
## Overview
Quantity Takeoff (QTO) extracts measurable quantities from BIM models. This skill processes BIM exports to generate grouped quantity reports for cost estimation.
## Python Implementation
```python
import pandas as pd
import numpy as np
from typing import Dict, Any, List, Optional, Tuple
from dataclasses import dataclass, field
from enum import Enum
class QTOUnit(Enum):
"""Quantity takeoff measurement units."""
COUNT = "ea"
LENGTH = "m"
AREA = "m2"
VOLUME = "m3"
WEIGHT = "kg"
LINEAR_FOOT = "lf"
SQUARE_FOOT = "sf"
CUBIC_YARD = "cy"
@dataclass
class QTOItem:
"""Single QTO line item."""
category: str
type_name: str
description: str
quantity: float
unit: str
level: Optional[str] = None
material: Optional[str] = None
element_count: int = 0
@dataclass
class QTOReport:
"""Complete QTO report."""
project_name: str
items: List[QTOItem]
total_elements: int
categories: int
generated_date: str
class BIMQuantityTakeoff:
"""Extract quantities from BIM data."""
# Column mappings for different BIM exports
COLUMN_MAPPINGS = {
'type': ['Type Name', 'TypeName', 'type_name', 'Family and Type', 'IfcType'],
'category': ['Category', 'category', 'IfcClass', 'Element Category'],
'level': ['Level', 'level', 'Building Storey', 'BuildingStorey', 'Floor'],
'volume': ['Volume', 'volume', 'Volume (m³)', 'Qty_Volume'],
'area': ['Area', 'area', 'Surface Area', 'Area (m²)', 'Qty_Area'],
'length': ['Length', 'length', 'Length (m)', 'Qty_Length'],
'count': ['Count', 'count', 'Quantity', 'ElementCount'],
'material': ['Material', 'material', 'Structural Material', 'MaterialName']
}
def __init__(self, df: pd.DataFrame):
"""Initialize with BIM data DataFrame."""
self.df = df
self.column_map = self._detect_columns()
def _detect_columns(self) -> Dict[str, str]:
"""Detect which columns exist in data."""
mapping = {}
for standard, variants in self.COLUMN_MAPPINGS.items():
for variant in variants:
if variant in self.df.columns:
mapping[standard] = variant
break
return mapping
def get_column(self, standard_name: str) -> Optional[str]:
"""Get actual column name from standard name."""
return self.column_map.get(standard_name)
def group_by_type(self, sum_column: str = 'volume') -> pd.DataFrame:
"""Group quantities by type name."""
type_col = self.get_column('type')
qty_col = self.get_column(sum_column)
if type_col is None:
raise ValueError("Type column not found")
if qty_col is None:
# Fall back to count
result = self.df.groupby(type_col).size().reset_index(name='count')
else:
result = self.df.groupby(type_col).agg({
qty_col: 'sum'
}).reset_index()
result['count'] = self.df.groupby(type_col).size().values
result.columns = ['Type', 'Quantity', 'Count'] if len(result.columns) == 3 else ['Type', 'Count']
return result.sort_values('Count', ascending=False)
def group_by_category(self, sum_column: str = 'volume') -> pd.DataFrame:
"""Group quantities by category."""
cat_col = self.get_column('category')
qty_col = self.get_column(sum_column)
if cat_col is None:
raise ValueError("Category column not found")
agg_dict = {}
if qty_col:
agg_dict[qty_col] = 'sum'
if agg_dict:
result = self.df.groupby(cat_col).agg(agg_dict).reset_index()
result['count'] = self.df.groupby(cat_col).size().values
else:
result = self.df.groupby(cat_col).size().reset_index(name='count')
return result.sort_values('count', ascending=False)
def group_by_level(self, sum_column: str = 'volume') -> pd.DataFrame:
"""Group quantities by building level."""
level_col = self.get_column('level')
qty_col = self.get_column(sum_column)
if level_col is None:
raise ValueError("Level column not found")
agg_dict = {}
if qty_col:
agg_dict[qty_col] = 'sum'
if agg_dict:
result = self.df.groupby(level_col).agg(agg_dict).reset_index()
result['count'] = self.df.groupby(level_col).size().values
else:
result = self.df.groupby(level_col).size().reset_index(name='count')
return result
def pivot_by_level_and_type(self) -> pd.DataFrame:
"""Create pivot table: levels as rows, types as columns."""
level_col = self.get_column('level')
type_col = self.get_column('type')
if level_col is None or type_col is None:
raise ValueError("Level or Type column not found")
pivot = pd.crosstab(
self.df[level_col],
self.df[type_col],
margins=True
)
return pivot
def filter_by_category(self, categories: List[str]) -> 'BIMQuantityTakeoff':
"""Filter to specific categories."""
cat_col = self.get_column('category')
if cat_col is None:
raise ValueError("Category column not found")
filtered_df = self.df[self.df[cat_col].isin(categories)]
return BIMQuantityTakeoff(filtered_df)
def filter_by_level(self, levels: List[str]) -> 'BIMQuantityTakeoff':
"""Filter to specific levels."""
level_col = self.get_column('level')
if level_col is None:
raise ValueError("Level column not found")
filtered_df = self.df[self.df[level_col].isin(levels)]
return BIMQuantityTakeoff(filtered_df)
def get_walls(self) -> pd.DataFrame:
"""Get wall quantities."""
cat_col = self.get_column('category')
if cat_col:
walls = self.df[self.df[cat_col].str.contains('Wall', case=False, na=False)]
return BIMQuantityTakeoff(walls).group_by_type()
return pd.DataFrame()
def get_floors(self) -> pd.DataFrame:
"""Get floor/slab quantities."""
cat_col = self.get_column('category')
if cat_col:
floors = self.df[self.df[cat_col].str.contains('Floor|Slab', case=False, na=False)]
return BIMQuantityTakeoff(floors).group_by_type()
return pd.DataFrame()
def get_doors(self) -> pd.DataFrame:
"""Get door quantities."""
cat_col = self.get_column('category')
if cat_col:
doors = self.df[self.df[cat_col].str.contains('Door', case=False, na=False)]
return BIMQuantityTakeoff(doors).group_by_type()
return pd.DataFrame()
def get_windows(self) -> pd.DataFrame:
"""Get window quantities."""
cat_col = self.get_column('category')
if cat_col:
windows = self.df[self.df[cat_col].str.contains('Window', case=False, na=False)]
return BIMQuantityTakeoff(windows).group_by_type()
return pd.DataFrame()
def generate_report(self, project_name: str = "Project") -> QTOReport:
"""Generate complete QTO report."""
from datetime import datetime
items = []
type_col = self.get_column('type')
cat_col = self.get_column('category')
level_col = self.get_column('level')
vol_col = self.get_column('volume')
area_col = self.get_column('area')
mat_col = self.get_column('material')
# Group by type
grouped = self.df.groupby(type_col if type_col else self.df.columns[0])
for type_name, group in grouped:
# Determine primary quantity
qty = 0
unit = QTOUnit.COUNT.value
if vol_col and vol_col in group.columns:
qty = group[vol_col].sum()
unit = QTOUnit.VOLUME.value
elif area_col and area_col in group.columns:
qty = group[area_col].sum()
unit = QTOUnit.AREA.value
else:
qty = len(group)
unit = QTOUnit.COUNT.value
# Get category and material
category = group[cat_col].iloc[0] if cat_col and cat_col in group.columns else ""
material = group[mat_col].iloc[0] if mat_col and mat_col in group.columns else ""
level = group[level_col].iloc[0] if level_col and level_col in group.columns else ""
items.append(QTOItem(
category=str(category),
type_name=str(type_name),
description=str(type_name),
quantity=round(qty, 2),
unit=unit,
level=str(level) if level else None,
material=str(material) if material else None,
element_count=len(group)
))
return QTOReport(
project_name=project_name,
items=items,
total_elements=len(self.df),
categories=self.df[cat_col].nunique() if cat_col else 0,
generated_date=datetime.now().isoformat()
)
def to_excel(self, output_path: str, project_name: str = "Project"):
"""Export QTO to Excel with multiple sheets."""
with pd.ExcelWriter(output_path, engine='openpyxl') as writer:
# Summary by category
self.group_by_category().to_excel(
writer, sheet_name='By Category', index=False)
# Summary by type
self.group_by_type().to_excel(
writer, sheet_name='By Type', index=False)
# Level breakdown
try:
self.pivot_by_level_and_type().to_excel(
writer, sheet_name='Level-Type Matrix')
except:
pass
# Walls
walls = self.get_walls()
if not walls.empty:
walls.to_excel(writer, sheet_name='Walls', index=False)
# Doors and Windows
doors = self.get_doors()
if not doors.empty:
doors.to_excel(writer, sheet_name='Doors', index=False)
windows = self.get_windows()
if not windows.empty:
windows.to_excel(writer, sheet_name='Windows', index=False)
return output_path
```
## Quick Start
```python
# Load BIM export
df = pd.read_excel("revit_export.xlsx")
# Initialize QTO
qto = BIMQuantityTakeoff(df)
# Get quantities by type
by_type = qto.group_by_type()
print(by_type.head(10))
# Get wall schedule
walls = qto.get_walls()
print(walls)
```
## Common Use Cases
### 1. Full QTO Report
```python
qto = BIMQuantityTakeoff(df)
report = qto.generate_report("Office Building")
print(f"Elements: {report.total_elements}")
for item in report.items[:5]:
print(f"{item.type_name}: {item.quantity} {item.unit}")
```
### 2. Level-by-Level Analysis
```python
pivot = qto.pivot_by_level_and_type()
print(pivot)
```
### 3. Export to Excel
```python
qto.to_excel("qto_report.xlsx", "My Project")
```
## Resources
- **DDC Book**: Chapter 3.2 - Quantity Take-Off