LLM Data Automation for Construction
Overview
Based on DDC methodology (Chapter 2.3), this skill enables automation of construction data processing using Large Language Models (LLM). Instead of manually coding data transformations, you describe what you need in natural language, and the LLM generates the necessary Python/Pandas code.
Book Reference: "Pandas DataFrame и LLM ChatGPT" / "Pandas DataFrame and LLM ChatGPT"
"LLM-модели, такие как ChatGPT и LLaMA, позволяют специалистам без глубоких знаний программирования внести свой вклад в автоматизацию и улучшение бизнес-процессов компании." — DDC Book, Chapter 2.3
Quick Start
Option 1: Use ChatGPT/Claude Online
Simply describe your data processing task in natural language:
Prompt: "Write Python code to read an Excel file with construction materials,
filter rows where quantity > 100, and save to CSV."
Option 2: Run Local LLM (Ollama)
# Install Ollama from ollama.com
ollama pull mistral
# Run a query
ollama run mistral "Write Pandas code to calculate total cost from quantity * unit_price"
Option 3: Use LM Studio (GUI)
- Download from lmstudio.ai
- Install and select a model (e.g., Mistral, LLaMA)
- Start chatting with your local AI
Core Concepts
DataFrame as Universal Format
import pandas as pd
# Construction project as DataFrame
# Rows = elements, Columns = attributes
df = pd.DataFrame({
'element_id': ['W001', 'W002', 'C001'],
'category': ['Wall', 'Wall', 'Column'],
'material': ['Concrete', 'Brick', 'Steel'],
'volume_m3': [45.5, 32.0, 8.2],
'cost_per_m3': [150, 80, 450]
})
# Calculate total cost
df['total_cost'] = df['volume_m3'] * df['cost_per_m3']
print(df)
LLM Prompts for Construction Tasks
Data Import:
"Write code to import Excel file with construction schedule,
parse dates, and create a Pandas DataFrame"
Data Filtering:
"Filter construction elements where category is 'Structural'
and cost exceeds budget limit of 50000"
Data Aggregation:
"Group construction data by floor level,
calculate total volume and cost for each floor"
Report Generation:
"Create summary report with material quantities grouped by category,
export to Excel with formatting"
Common Use Cases
1. Extract Data from PDF Documents
# Prompt to ChatGPT:
# "Write code to extract tables from PDF and convert to DataFrame"
import pdfplumber
import pandas as pd
def pdf_to_dataframe(pdf_path):
"""Extract tables from PDF file"""
all_tables = []
with pdfplumber.open(pdf_path) as pdf:
for page in pdf.pages:
tables = page.extract_tables()
for table in tables:
if table:
df = pd.DataFrame(table[1:], columns=table[0])
all_tables.append(df)
if all_tables:
return pd.concat(all_tables, ignore_index=True)
return pd.DataFrame()
# Usage
df = pdf_to_dataframe("construction_spec.pdf")
df.to_excel("extracted_data.xlsx", index=False)
2. Process BIM Element Data
# Prompt: "Analyze BIM elements, group by category, calculate volumes"
import pandas as pd
def analyze_bim_elements(csv_path):
"""Analyze BIM element data from CSV export"""
df = pd.read_csv(csv_path)
# Group by category
summary = df.groupby('Category').agg({
'Volume': 'sum',
'Area': 'sum',
'ElementId': 'count'
}).rename(columns={'ElementId': 'Count'})
return summary
# Usage
summary = analyze_bim_elements("revit_export.csv")
print(summary)
3. Cost Estimation Pipeline
# Prompt: "Create cost estimation from quantities and unit prices"
import pandas as pd
def calculate_cost_estimate(quantities_df, prices_df):
"""
Calculate project cost estimate
Args:
quantities_df: DataFrame with columns [item_code, quantity]
prices_df: DataFrame with columns [item_code, unit_price, unit]
Returns:
DataFrame with cost calculations
"""
# Merge quantities with prices
result = quantities_df.merge(prices_df, on='item_code', how='left')
# Calculate costs
result['total_cost'] = result['quantity'] * result['unit_price']
# Add summary
result['cost_percentage'] = (result['total_cost'] /
result['total_cost'].sum() * 100).round(2)
return result
# Usage
quantities = pd.DataFrame({
'item_code': ['C001', 'S001', 'W001'],
'quantity': [150, 2000, 500]
})
prices = pd.DataFrame({
'item_code': ['C001', 'S001', 'W001'],
'unit_price': [120, 45, 85],
'unit': ['m3', 'kg', 'm2']
})
estimate = calculate_cost_estimate(quantities, prices)
print(estimate)
4. Schedule Data Processing
# Prompt: "Parse construction schedule, calculate durations, identify delays"
import pandas as pd
from datetime import datetime
def analyze_schedule(schedule_path):
"""Analyze construction schedule for delays"""
df = pd.read_excel(schedule_path)
# Parse dates
df['start_date'] = pd.to_datetime(df['start_date'])
df['end_date'] = pd.to_datetime(df['end_date'])
df['actual_end'] = pd.to_datetime(df['actual_end'])
# Calculate durations
df['planned_duration'] = (df['end_date'] - df['start_date']).dt.days
df['actual_duration'] = (df['actual_end'] - df['start_date']).dt.days
# Identify delays
df['delay_days'] = df['actual_duration'] - df['planned_duration']
df['is_delayed'] = df['delay_days'] > 0
return df
# Usage
schedule = analyze_schedule("project_schedule.xlsx")
delayed_tasks = schedule[schedule['is_delayed']]
print(f"Delayed tasks: {len(delayed_tasks)}")
Local LLM Setup (No Internet Required)
Using Ollama
# Install
curl -fsSL https://ollama.com/install.sh | sh
# Download models
ollama pull mistral # General purpose, 7B params
ollama pull codellama # Code-focused
ollama pull deepseek-coder # Best for coding tasks
# Run
ollama run mistral "Write Pandas code to merge two DataFrames on project_id"
Using LlamaIndex for Company Documents
# Load company documents into local LLM
from llama_index import SimpleDirectoryReader, VectorStoreIndex
# Read all PDFs from folder
reader = SimpleDirectoryReader("company_documents/")
documents = reader.load_data()
# Create searchable index
index = VectorStoreIndex.from_documents(documents)
# Query your documents
query_engine = index.as_query_engine()
response = query_engine.query(
"What are the standard concrete mix specifications?"
)
print(response)
IDE Recommendations
| IDE | Best For | Features |
|---|---|---|
| Jupyter Notebook | Learning, experiments | Interactive cells, visualizations |
| Google Colab | Free GPU, quick start | Cloud-based, pre-installed libs |
| VS Code | Professional development | Extensions, GitHub Copilot |
| PyCharm | Large projects | Advanced debugging, refactoring |
Quick Setup with Jupyter
pip install jupyter pandas openpyxl pdfplumber
jupyter notebook
Best Practices
- Start Simple: Begin with clear, specific prompts
- Iterate: Refine prompts based on results
- Validate: Always check generated code before running
- Document: Save working prompts for reuse
- Secure: Use local LLM for sensitive company data
Common Prompts Library
Data Import
- "Read Excel file and show first 10 rows"
- "Import CSV with custom delimiter and encoding"
- "Load multiple Excel sheets into dictionary of DataFrames"
Data Cleaning
- "Remove duplicate rows based on element_id"
- "Fill missing values with column mean"
- "Convert column to numeric, handling errors"
Data Analysis
- "Calculate descriptive statistics for numeric columns"
- "Find correlation between cost and duration"
- "Identify outliers using IQR method"
Data Export
- "Export to Excel with multiple sheets"
- "Save to CSV with specific encoding"
- "Generate formatted PDF report"
Resources
- Book: "Data-Driven Construction" by Artem Boiko, Chapter 2.3
- Website: https://datadrivenconstruction.io
- Pandas Documentation: https://pandas.pydata.org/docs/
- Ollama: https://ollama.com
- LM Studio: https://lmstudio.ai
- Google Colab: https://colab.research.google.com
Next Steps
- See
pandas-construction-analysisfor advanced Pandas operations - See
pdf-to-structuredfor document processing - See
etl-pipelinefor automated data pipelines - See
rag-constructionfor RAG implementation with construction documents