harvard-artifacts-collection-data-engineering
End-to-end data engineering and analytics application for Harvard Art Museums API with ETL pipelines, SQL analytics, and Streamlit visualization
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npx skills add https://github.com/aradotso/data-skills --skill harvard-artifacts-collection-data-engineeringIs this agent skill safe to install?
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This skill provides a structured template for a museum data engineering project. It uses industry-standard libraries and demonstrates secure practices such as parameterizing SQL queries and using environment variables for sensitive configuration. No malicious behavior or security vulnerabilities were detected.
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What does this agent skill do?
Harvard Artifacts Collection Data Engineering
Skill by ara.so — Data Skills collection.
This project provides an end-to-end data engineering and analytics application built on the Harvard Art Museums API. It demonstrates real-world ETL pipelines, SQL database design, analytical queries, and interactive visualization using Streamlit. The architecture follows: API → ETL → SQL → Analytics → Visualization.
What This Project Does
- API Integration: Fetches artifact data from Harvard Art Museums API with pagination and rate limiting
- ETL Pipeline: Extracts, transforms, and loads nested JSON into relational database tables
- SQL Database: Stores structured data across
artifactmetadata,artifactmedia, andartifactcolorstables - Analytics: Executes 20+ predefined SQL queries for insights
- Visualization: Interactive dashboards using Plotly and Streamlit
Installation
# Clone the repository
git clone https://github.com/Manali0711/Harvard-Artifacts-Collection-Data-Engineering-Analytics-App.git
cd Harvard-Artifacts-Collection-Data-Engineering-Analytics-App
# Install dependencies
pip install -r requirements.txt
Required packages:
streamlit
pandas
requests
mysql-connector-python
plotly
Configuration
Environment Variables
Set up your configuration before running:
# Harvard Art Museums API Key (get from https://www.harvardartmuseums.org/collections/api)
export HARVARD_API_KEY="your_api_key_here"
# Database credentials
export DB_HOST="your_database_host"
export DB_PORT="3306"
export DB_USER="your_database_user"
export DB_PASSWORD="your_database_password"
export DB_NAME="harvard_artifacts"
Database Setup
Create the required tables:
CREATE DATABASE harvard_artifacts;
USE harvard_artifacts;
CREATE TABLE artifactmetadata (
id INT PRIMARY KEY,
title VARCHAR(500),
culture VARCHAR(255),
century VARCHAR(100),
classification VARCHAR(255),
division VARCHAR(255),
department VARCHAR(255),
technique VARCHAR(500),
period VARCHAR(255),
dated VARCHAR(255),
url TEXT,
lastupdate DATETIME
);
CREATE TABLE artifactmedia (
media_id INT AUTO_INCREMENT PRIMARY KEY,
artifact_id INT,
baseimageurl TEXT,
iiifbaseuri TEXT,
FOREIGN KEY (artifact_id) REFERENCES artifactmetadata(id)
);
CREATE TABLE artifactcolors (
color_id INT AUTO_INCREMENT PRIMARY KEY,
artifact_id INT,
color VARCHAR(50),
spectrum VARCHAR(50),
percentage FLOAT,
FOREIGN KEY (artifact_id) REFERENCES artifactmetadata(id)
);
Key Components and Usage
1. API Data Extraction
import requests
import os
class HarvardAPIClient:
def __init__(self):
self.api_key = os.getenv('HARVARD_API_KEY')
self.base_url = "https://api.harvardartmuseums.org/object"
def fetch_artifacts(self, page=1, size=100):
"""Fetch artifacts with pagination"""
params = {
'apikey': self.api_key,
'page': page,
'size': size,
'hasimage': 1 # Only artifacts with images
}
response = requests.get(self.base_url, params=params)
response.raise_for_status()
return response.json()
def fetch_multiple_pages(self, num_pages=10):
"""Fetch multiple pages of artifacts"""
all_artifacts = []
for page in range(1, num_pages + 1):
data = self.fetch_artifacts(page=page)
all_artifacts.extend(data.get('records', []))
return all_artifacts
2. ETL Pipeline Implementation
import pandas as pd
import mysql.connector
from typing import List, Dict
class ArtifactETL:
def __init__(self, db_config):
self.db_config = db_config
self.conn = None
def connect_db(self):
"""Establish database connection"""
self.conn = mysql.connector.connect(
host=self.db_config['host'],
port=self.db_config['port'],
user=self.db_config['user'],
password=self.db_config['password'],
database=self.db_config['database']
)
return self.conn
def transform_artifacts(self, raw_data: List[Dict]) -> pd.DataFrame:
"""Transform raw JSON to structured DataFrame"""
artifacts = []
for item in raw_data:
artifact = {
'id': item.get('id'),
'title': item.get('title', '')[:500],
'culture': item.get('culture', ''),
'century': item.get('century', ''),
'classification': item.get('classification', ''),
'division': item.get('division', ''),
'department': item.get('department', ''),
'technique': item.get('technique', ''),
'period': item.get('period', ''),
'dated': item.get('dated', ''),
'url': item.get('url', ''),
'lastupdate': item.get('lastupdate', '')
}
artifacts.append(artifact)
return pd.DataFrame(artifacts)
def transform_media(self, raw_data: List[Dict]) -> pd.DataFrame:
"""Extract media information"""
media_records = []
for item in raw_data:
artifact_id = item.get('id')
if 'primaryimageurl' in item:
media_records.append({
'artifact_id': artifact_id,
'baseimageurl': item.get('primaryimageurl', ''),
'iiifbaseuri': item.get('iiifbaseuri', '')
})
return pd.DataFrame(media_records)
def transform_colors(self, raw_data: List[Dict]) -> pd.DataFrame:
"""Extract color information"""
color_records = []
for item in raw_data:
artifact_id = item.get('id')
colors = item.get('colors', [])
for color in colors:
color_records.append({
'artifact_id': artifact_id,
'color': color.get('color', ''),
'spectrum': color.get('spectrum', ''),
'percentage': color.get('percent', 0)
})
return pd.DataFrame(color_records)
def load_data(self, df: pd.DataFrame, table_name: str):
"""Batch insert data into SQL table"""
cursor = self.conn.cursor()
# Prepare column names and placeholders
cols = ','.join(df.columns)
placeholders = ','.join(['%s'] * len(df.columns))
sql = f"INSERT INTO {table_name} ({cols}) VALUES ({placeholders})"
# Convert DataFrame to list of tuples
data = [tuple(row) for row in df.values]
# Execute batch insert
cursor.executemany(sql, data)
self.conn.commit()
cursor.close()
return len(data)
3. Complete ETL Workflow
def run_etl_pipeline():
"""Execute complete ETL pipeline"""
# Configuration
db_config = {
'host': os.getenv('DB_HOST'),
'port': int(os.getenv('DB_PORT', 3306)),
'user': os.getenv('DB_USER'),
'password': os.getenv('DB_PASSWORD'),
'database': os.getenv('DB_NAME')
}
# Initialize clients
api_client = HarvardAPIClient()
etl = ArtifactETL(db_config)
etl.connect_db()
# Extract
print("Extracting data from API...")
raw_artifacts = api_client.fetch_multiple_pages(num_pages=5)
print(f"Extracted {len(raw_artifacts)} artifacts")
# Transform
print("Transforming data...")
df_artifacts = etl.transform_artifacts(raw_artifacts)
df_media = etl.transform_media(raw_artifacts)
df_colors = etl.transform_colors(raw_artifacts)
# Load
print("Loading data to database...")
etl.load_data(df_artifacts, 'artifactmetadata')
etl.load_data(df_media, 'artifactmedia')
etl.load_data(df_colors, 'artifactcolors')
print("ETL pipeline completed successfully!")
etl.conn.close()
4. SQL Analytics Queries
class ArtifactAnalytics:
def __init__(self, db_config):
self.db_config = db_config
def execute_query(self, query: str) -> pd.DataFrame:
"""Execute SQL query and return DataFrame"""
conn = mysql.connector.connect(**self.db_config)
df = pd.read_sql(query, conn)
conn.close()
return df
def get_artifacts_by_culture(self):
"""Get artifact distribution by culture"""
query = """
SELECT culture, COUNT(*) as artifact_count
FROM artifactmetadata
WHERE culture IS NOT NULL AND culture != ''
GROUP BY culture
ORDER BY artifact_count DESC
LIMIT 20;
"""
return self.execute_query(query)
def get_artifacts_by_century(self):
"""Get artifact distribution by century"""
query = """
SELECT century, COUNT(*) as count
FROM artifactmetadata
WHERE century IS NOT NULL AND century != ''
GROUP BY century
ORDER BY count DESC;
"""
return self.execute_query(query)
def get_color_distribution(self):
"""Get color usage across artifacts"""
query = """
SELECT color, COUNT(*) as frequency, AVG(percentage) as avg_percentage
FROM artifactcolors
GROUP BY color
ORDER BY frequency DESC
LIMIT 15;
"""
return self.execute_query(query)
def get_artifacts_with_media(self):
"""Get artifacts with and without media"""
query = """
SELECT
CASE WHEN m.artifact_id IS NOT NULL THEN 'With Media' ELSE 'Without Media' END as media_status,
COUNT(*) as count
FROM artifactmetadata a
LEFT JOIN artifactmedia m ON a.id = m.artifact_id
GROUP BY media_status;
"""
return self.execute_query(query)
5. Streamlit Dashboard
import streamlit as st
import plotly.express as px
def create_dashboard():
st.title("Harvard Art Museums Analytics Dashboard")
# Sidebar for navigation
st.sidebar.header("Navigation")
option = st.sidebar.selectbox(
"Choose Analysis",
["Overview", "Culture Analysis", "Century Distribution", "Color Patterns", "Media Analysis"]
)
# Initialize analytics
db_config = {
'host': os.getenv('DB_HOST'),
'port': int(os.getenv('DB_PORT', 3306)),
'user': os.getenv('DB_USER'),
'password': os.getenv('DB_PASSWORD'),
'database': os.getenv('DB_NAME')
}
analytics = ArtifactAnalytics(db_config)
if option == "Culture Analysis":
st.header("Artifacts by Culture")
df = analytics.get_artifacts_by_culture()
# Display data table
st.dataframe(df)
# Create visualization
fig = px.bar(df, x='culture', y='artifact_count',
title='Top 20 Cultures by Artifact Count')
st.plotly_chart(fig)
elif option == "Century Distribution":
st.header("Artifacts by Century")
df = analytics.get_artifacts_by_century()
st.dataframe(df)
fig = px.bar(df, x='century', y='count',
title='Artifact Distribution Across Centuries')
st.plotly_chart(fig)
elif option == "Color Patterns":
st.header("Color Usage Analysis")
df = analytics.get_color_distribution()
st.dataframe(df)
fig = px.bar(df, x='color', y='frequency',
title='Most Common Colors in Artifacts')
st.plotly_chart(fig)
if __name__ == "__main__":
create_dashboard()
Running the Application
# Start the Streamlit dashboard
streamlit run app.py
# Run ETL pipeline separately (if needed)
python etl_pipeline.py
Common Patterns
Incremental Data Loading
def incremental_load(last_update_date):
"""Load only new or updated artifacts"""
query = f"""
SELECT id FROM artifactmetadata
WHERE lastupdate > '{last_update_date}'
"""
# Fetch only updated records from API
# Update existing records in database
Error Handling in ETL
def safe_etl_run():
try:
run_etl_pipeline()
except requests.HTTPError as e:
print(f"API Error: {e}")
except mysql.connector.Error as e:
print(f"Database Error: {e}")
except Exception as e:
print(f"Unexpected Error: {e}")
Troubleshooting
API Rate Limiting: Add delays between requests
import time
time.sleep(0.5) # 500ms delay between API calls
Database Connection Issues: Verify credentials and network access
# Test connection
try:
conn = mysql.connector.connect(**db_config)
print("Database connection successful")
conn.close()
except Exception as e:
print(f"Connection failed: {e}")
Missing Data Fields: Handle null values during transformation
artifact = {
'title': item.get('title', 'Unknown')[:500],
'culture': item.get('culture') or 'Not Specified'
}
Memory Issues with Large Datasets: Use chunking
chunk_size = 1000
for i in range(0, len(data), chunk_size):
chunk = data[i:i+chunk_size]
etl.load_data(pd.DataFrame(chunk), 'artifactmetadata')
How can the creator link this skill?
Add the canonical catalog link to the repository README so users can inspect current installs and available audits. The publishing guide covers the complete discovery path.
<a href="https://skillzs.dev/skills/aradotso/data-skills/harvard-artifacts-collection-data-engineering">View harvard-artifacts-collection-data-engineering on skillZs</a>