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harvard-artifacts-etl-pipeline

Build ETL pipelines and analytics dashboards using the Harvard Art Museums API with Streamlit, SQL, and Plotly

How do I install this agent skill?

npx skills add https://github.com/aradotso/data-skills --skill harvard-artifacts-etl-pipeline
view source ↗

Is this agent skill safe to install?

  • Gen Agent Trust Hubpass

    This skill provides a legitimate template and tutorial for building an ETL pipeline and analytics dashboard using the Harvard Art Museums API. It follows standard data engineering practices, including the use of environment variables for secret management and parameterized SQL queries.

  • Socketpass

    No alerts

  • Snykpass

    Risk: LOW · No issues

What does this agent skill do?

Harvard Artifacts ETL Pipeline

Skill by ara.so — Data Skills collection.

This skill enables AI coding agents to help developers build end-to-end data engineering pipelines using the Harvard Art Museums API. The project demonstrates real-world ETL patterns, SQL database design, analytical queries, and interactive visualization using Streamlit.

What This Project Does

The Harvard Artifacts Collection application:

  • Fetches artifact data from Harvard Art Museums API with pagination
  • Transforms nested JSON into relational database tables
  • Loads data into MySQL/TiDB Cloud databases
  • Executes analytical SQL queries on artifact metadata, media, and colors
  • Visualizes results through interactive Plotly charts in Streamlit

Architecture: API → ETL → SQL → Analytics → Visualization

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
pip install streamlit pandas requests mysql-connector-python plotly python-dotenv

Configuration

Environment Variables

Create a .env file in the project root:

# Harvard API
HARVARD_API_KEY=your_api_key_here

# Database credentials
DB_HOST=gateway01.your-region.prod.aws.tidbcloud.com
DB_PORT=4000
DB_USER=your_username
DB_PASSWORD=your_password
DB_NAME=artifacts_db

Database Setup

import mysql.connector
from dotenv import load_dotenv
import os

load_dotenv()

# Create database connection
conn = mysql.connector.connect(
    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')
)

cursor = conn.cursor()

# Create tables
cursor.execute("""
CREATE TABLE IF NOT EXISTS artifactmetadata (
    id INT PRIMARY KEY,
    title VARCHAR(500),
    culture VARCHAR(200),
    century VARCHAR(100),
    department VARCHAR(200),
    classification VARCHAR(200),
    dated VARCHAR(200),
    url TEXT,
    totalpageviews INT,
    totaluniquepageviews INT
)
""")

cursor.execute("""
CREATE TABLE IF NOT EXISTS artifactmedia (
    id INT AUTO_INCREMENT PRIMARY KEY,
    artifact_id INT,
    baseimageurl VARCHAR(500),
    format VARCHAR(50),
    height INT,
    width INT,
    FOREIGN KEY (artifact_id) REFERENCES artifactmetadata(id)
)
""")

cursor.execute("""
CREATE TABLE IF NOT EXISTS artifactcolors (
    id INT AUTO_INCREMENT PRIMARY KEY,
    artifact_id INT,
    color VARCHAR(50),
    spectrum VARCHAR(50),
    hue VARCHAR(50),
    percent FLOAT,
    FOREIGN KEY (artifact_id) REFERENCES artifactmetadata(id)
)
""")

conn.commit()

Key API Patterns

Fetching Artifacts with Pagination

import requests
import os
from dotenv import load_dotenv

load_dotenv()

def fetch_artifacts(page=1, size=100):
    """Fetch artifacts from Harvard API with pagination"""
    api_key = os.getenv('HARVARD_API_KEY')
    base_url = "https://api.harvardartmuseums.org/object"
    
    params = {
        'apikey': api_key,
        'page': page,
        'size': size,
        'hasimage': 1  # Only artifacts with images
    }
    
    response = requests.get(base_url, params=params)
    
    if response.status_code == 200:
        data = response.json()
        return data['records'], data['info']
    else:
        raise Exception(f"API Error: {response.status_code}")

# Fetch multiple pages
def fetch_all_artifacts(max_pages=10):
    all_artifacts = []
    
    for page in range(1, max_pages + 1):
        artifacts, info = fetch_artifacts(page=page)
        all_artifacts.extend(artifacts)
        
        # Check if more pages exist
        if page >= info['pages']:
            break
    
    return all_artifacts

ETL Pipeline Implementation

import pandas as pd

def extract_metadata(artifacts):
    """Extract artifact metadata"""
    metadata = []
    
    for artifact in artifacts:
        metadata.append({
            'id': artifact.get('id'),
            'title': artifact.get('title', '')[:500],
            'culture': artifact.get('culture', '')[:200],
            'century': artifact.get('century', '')[:100],
            'department': artifact.get('department', '')[:200],
            'classification': artifact.get('classification', '')[:200],
            'dated': artifact.get('dated', '')[:200],
            'url': artifact.get('url', ''),
            'totalpageviews': artifact.get('totalpageviews', 0),
            'totaluniquepageviews': artifact.get('totaluniquepageviews', 0)
        })
    
    return pd.DataFrame(metadata)

def extract_media(artifacts):
    """Extract media information"""
    media = []
    
    for artifact in artifacts:
        artifact_id = artifact.get('id')
        primary_image = artifact.get('primaryimageurl')
        
        if primary_image:
            media.append({
                'artifact_id': artifact_id,
                'baseimageurl': primary_image,
                'format': 'image',
                'height': None,
                'width': None
            })
        
        # Extract images from images array
        for img in artifact.get('images', []):
            media.append({
                'artifact_id': artifact_id,
                'baseimageurl': img.get('baseimageurl', ''),
                'format': img.get('format', ''),
                'height': img.get('height'),
                'width': img.get('width')
            })
    
    return pd.DataFrame(media)

def extract_colors(artifacts):
    """Extract color information"""
    colors = []
    
    for artifact in artifacts:
        artifact_id = artifact.get('id')
        
        for color in artifact.get('colors', []):
            colors.append({
                'artifact_id': artifact_id,
                'color': color.get('color', ''),
                'spectrum': color.get('spectrum', ''),
                'hue': color.get('hue', ''),
                'percent': color.get('percent', 0.0)
            })
    
    return pd.DataFrame(colors)

Loading Data to SQL

def load_to_sql(df, table_name, conn):
    """Batch insert DataFrame into SQL table"""
    cursor = conn.cursor()
    
    if df.empty:
        return
    
    # Build INSERT statement
    columns = ', '.join(df.columns)
    placeholders = ', '.join(['%s'] * len(df.columns))
    
    insert_query = f"""
        INSERT INTO {table_name} ({columns})
        VALUES ({placeholders})
        ON DUPLICATE KEY UPDATE
        {', '.join([f"{col}=VALUES({col})" for col in df.columns if col != 'id'])}
    """
    
    # Convert DataFrame to list of tuples
    data = [tuple(row) for row in df.values]
    
    # Batch insert
    cursor.executemany(insert_query, data)
    conn.commit()
    
    print(f"Loaded {len(data)} records into {table_name}")

# Complete ETL process
def run_etl_pipeline(max_pages=5):
    artifacts = fetch_all_artifacts(max_pages=max_pages)
    
    # Extract
    metadata_df = extract_metadata(artifacts)
    media_df = extract_media(artifacts)
    colors_df = extract_colors(artifacts)
    
    # Load
    load_to_sql(metadata_df, 'artifactmetadata', conn)
    load_to_sql(media_df, 'artifactmedia', conn)
    load_to_sql(colors_df, 'artifactcolors', conn)

Streamlit Dashboard Implementation

import streamlit as st
import plotly.express as px

st.set_page_config(page_title="Harvard Artifacts Analytics", layout="wide")

st.title("🏛️ Harvard Art Museums Analytics")

# Sidebar for ETL operations
st.sidebar.header("Data Collection")
pages_to_fetch = st.sidebar.slider("Pages to fetch", 1, 50, 5)

if st.sidebar.button("Run ETL Pipeline"):
    with st.spinner("Fetching and processing data..."):
        run_etl_pipeline(max_pages=pages_to_fetch)
        st.success("ETL completed successfully!")

# Analytics queries
st.header("📊 Analytics Dashboard")

queries = {
    "Artifacts by Century": """
        SELECT century, COUNT(*) as count
        FROM artifactmetadata
        WHERE century IS NOT NULL AND century != ''
        GROUP BY century
        ORDER BY count DESC
        LIMIT 20
    """,
    "Artifacts by Culture": """
        SELECT culture, COUNT(*) as count
        FROM artifactmetadata
        WHERE culture IS NOT NULL AND culture != ''
        GROUP BY culture
        ORDER BY count DESC
        LIMIT 15
    """,
    "Color Distribution": """
        SELECT color, COUNT(*) as count, AVG(percent) as avg_percent
        FROM artifactcolors
        GROUP BY color
        ORDER BY count DESC
        LIMIT 10
    """,
    "Media Availability": """
        SELECT 
            CASE WHEN m.artifact_id IS NOT NULL THEN 'Has Media' ELSE 'No 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
    """,
    "Top Viewed Artifacts": """
        SELECT title, totalpageviews, culture, century
        FROM artifactmetadata
        WHERE totalpageviews > 0
        ORDER BY totalpageviews DESC
        LIMIT 10
    """
}

query_choice = st.selectbox("Select Analysis", list(queries.keys()))

if st.button("Run Query"):
    cursor = conn.cursor()
    cursor.execute(queries[query_choice])
    
    results = cursor.fetchall()
    columns = [desc[0] for desc in cursor.description]
    
    df = pd.DataFrame(results, columns=columns)
    
    st.subheader("Results")
    st.dataframe(df)
    
    # Auto-generate visualization
    if len(df.columns) >= 2:
        fig = px.bar(df, x=df.columns[0], y=df.columns[1],
                     title=query_choice)
        st.plotly_chart(fig, use_container_width=True)

Common Analytical Queries

# Query: Artifacts with most colors
"""
SELECT a.title, COUNT(c.id) as color_count
FROM artifactmetadata a
JOIN artifactcolors c ON a.id = c.artifact_id
GROUP BY a.id, a.title
ORDER BY color_count DESC
LIMIT 10
"""

# Query: Department breakdown
"""
SELECT department, COUNT(*) as count,
       AVG(totalpageviews) as avg_views
FROM artifactmetadata
WHERE department IS NOT NULL
GROUP BY department
ORDER BY count DESC
"""

# Query: Dominant color per culture
"""
SELECT culture, color, SUM(percent) as total_percent
FROM artifactmetadata a
JOIN artifactcolors c ON a.id = c.artifact_id
WHERE culture IS NOT NULL
GROUP BY culture, color
ORDER BY culture, total_percent DESC
"""

Troubleshooting

API Rate Limiting

import time

def fetch_with_retry(page, max_retries=3):
    for attempt in range(max_retries):
        try:
            return fetch_artifacts(page=page)
        except Exception as e:
            if "429" in str(e):  # Rate limit
                wait_time = 2 ** attempt
                time.sleep(wait_time)
            else:
                raise
    raise Exception("Max retries exceeded")

Database Connection Issues

def get_connection():
    """Create database connection with error handling"""
    try:
        conn = mysql.connector.connect(
            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'),
            connect_timeout=10
        )
        return conn
    except mysql.connector.Error as err:
        st.error(f"Database connection failed: {err}")
        return None

Handling Missing Data

def safe_extract(artifact, key, default=''):
    """Safely extract nested data"""
    value = artifact.get(key, default)
    return value if value is not None else default

# Use in extraction
metadata.append({
    'id': artifact.get('id'),
    'title': safe_extract(artifact, 'title', 'Unknown'),
    'culture': safe_extract(artifact, 'culture', 'Unknown'),
    # ...
})

Running the Application

# Start the Streamlit app
streamlit run app.py

# The app will open at http://localhost:8501

This skill provides comprehensive guidance for building ETL pipelines with museum APIs, implementing SQL analytics, and creating interactive dashboards with Streamlit.

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.

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