Skip to main content

A sophisticated SQL lineage visualization tool for Medallion Architectures.

Project description

SQL DAG Flow

"Static Data Lineage for Modern Data Engineers. No databases, just code."

SQL DAG Flow is a lightweight, open-source Python library designed to transform your SQL code into visual architecture.

Unlike traditional lineage tools that require active database connections or query log access, SQL DAG Flow performs static analysis (parsing) of your local .sql files. This allows for instant, secure dependency visualization, bottleneck identification, and Data Lineage documentation without leaving your development environment.

Specially optimized for the Medallion Architecture (Bronze, Silver, Gold) and modern stacks (DuckDB, BigQuery, Snowflake), it bridges the gap between the code you write and the architecture you design.

💡 Philosophy: Why this exists

  • Local-First & Zero-Config: You don't need to configure servers, cloud credentials, or Docker containers. If you have SQL files, you have a diagram.
  • Security by Design: By relying on static analysis, your code never leaves your machine and no access to sensitive production data is required.
  • Living Documentation: The diagram is generated from the code. If the code changes, the documentation updates, eliminating obsolete manually-drawn diagrams.

🎯 Objectives & Use Cases

  • 1. Legacy Code Audit & Refactoring:
    • The Problem: You join a new project with 200+ undocumented SQL scripts. Nobody knows what breaks what.
    • The Solution: Run sql-dag-flow to instantly map the "spaghetti" dependencies. Identify orphan tables, circular dependencies, and the impact of changing a Silver layer table.
    • The Solution: Generate interactive pipeline visualizations (ETL/ELT) to include in your Pull Requests, Wikis, or client deliverables.
  • 3. Medallion Architecture Validation:
    • The Problem: It's hard to verify if the logical separation of layers (Bronze → Silver → Gold) is being respected.
    • The Solution: The tool visually groups your scripts by folder structure, allowing you to validate that data flows correctly between quality layers without improper "jumps".
  • 4. Accelerated Onboarding:
    • The Problem: Explaining data flow to new engineers takes hours of whiteboard drawing.
    • The Solution: Deliver an interactive map where new team members can explore where data comes from, view associated SQL code, and understand business logic without reading thousands of lines of code.

🚀 Key Features

🔍 Visualization & Analysis

  • Automatic Parsing: Recursively scans .sql files to detect dependencies (FROM, JOIN, CTEs) using sqlglot.
  • Medallion Architecture Support: Automatically categorizes and colors nodes based on folder structure (Bronze, Silver, Gold).
  • Discovery Mode: Visualize "Ghost Nodes" (missing files or external tables) and create them with a click.
  • CTE Visualization: Detects internal Common Table Expressions and displays them as distinct Pink nodes.
  • Smart Layout (New 🧠):
    • Powered by ELK (Eclipse Layout Kernel).
    • Minimizes edge crossings and optimizes flow direction.
    • Intelligent "Port" handling for cleaner connections.

🎮 Interactive Graph

  • Smart Context Menu:
    • Focus Tree: Isolate a node and its lineage (ancestors + descendants) to declutter the view.
    • Select Tree: One-click selection of an entire dependency chain for easy movement.
    • Hide/Show: Toggle visibility of individual nodes or full branches.
  • Advanced Navigation:
    • Sidebar: Grouped list of nodes with toggle between By Layer and By Project/Dataset views.
    • SQL Content Search: Search inside SQL file content across all nodes — find WHERE clauses, JOINs, or any keyword.
    • Details Panel: View formatted SQL code, schema preview (DDL, CTAS, Views), and node configuration.

📝 Notes & Annotations

  • Center Placement: New notes spawn exactly in the center of your view.
  • Rich Styling:
    • Markdown Support: Write rich text notes.
    • Transparent & Borderless:Create clean, floating text labels without boxes.
    • Groups: Create visual containers to group related nodes.

📊 Discovery & Analysis Tools

  • Business Rule Extraction: Automatically detects and displays WHERE filters, CASE logic, HAVING clauses, and aggregations from each SQL model.
  • Complexity Scoring: Weighted metric per node (JOINs×3, CTEs×2, Subqueries×3, Filters×1, CASE×2, Aggregations×1, UNIONs×2) with color-coded badges (🟢 Low, 🟡 Medium, 🟠 High, 🔴 Very High). Toggleable via ⚡ button.
  • Statistics Panel: Centered popup with layer distribution bars, edge/source/sink/orphan counts, project/dataset tree, and architecture health validation.
  • Schema Preview: Extracts columns from DDL, CTAS (CREATE TABLE AS SELECT), and CREATE VIEW statements.

🎨 Linear-Inspired UI (New in v0.4.0 ✨)

  • Design Token System: ~80 CSS custom properties for consistent theming across all components.
  • Premium Dark Theme: Deep #0d0d0d canvas with warm white text (#e8e8e6), never pure white.
  • Refined Light Theme: Warm off-white #f7f6f3 backgrounds — never harsh pure white.
  • Glassmorphism Toolbars: backdrop-filter: blur(16px) on all floating panels.
  • Violet-Indigo Accent: Premium #7c6aef accent color replacing generic blues/greens.
  • Smooth Animations: fadeIn and slideUp micro-animations on popovers and modals.
  • Custom Scrollbars: Subtle, styled scrollbars matching the theme.
  • Focus Rings: Accessible focus indicators using the accent color.

⚙️ Customization

  • Premium UI:
    • Themes: Toggle between Light and Dark modes.
    • Palettes: Choose from Standard, Vivid, Pastel, or Linear (new — muted, LCH-inspired tones) color schemes.
    • Styles: Switch between "Full" (colored body) and "Minimal" (colored border) node styles.
  • Export: Save high-resolution PNG or vector SVG diagrams for documentation.

🎨 Visual Legend & Color Palettes

SQL DAG Flow uses distinct colors to identify node types. You can switch between these palettes in the Settings.

Node Type Layer / Meaning Standard Vivid Pastel Linear
Bronze Raw Ingestion 🟤 Brown (#8B4513) 🟠 Orange (#FF5722) 🟤 Pale Brown (#D7CCC8) 🟤 Muted (#B08968)
Silver Cleaned / Conformed ⚪ Gray (#708090) 🔵 Blue (#29B6F6) ⚪ Blue Grey (#CFD8DC) ⚪ Slate (#8E99A4)
Gold Business Aggregates 🟡 Gold (#DAA520) 🟡 Yellow (#FFEB3B) 🟡 Pale Yellow (#FFF9C4) 🟡 Warm (#D4A843)
External Missing / Ghost Node 🟠 Dark Orange (#D35400) 🟠 Neon Orange (#FF9800) 🟠 Peach (#FFE0B2) 🟠 Sand (#CC8B5E)
CTE Internal Common Table Expression 💖 Pink (#E91E63) 💗 Deep Pink (#F50057) 🌸 Light Pink (#F8BBD0) 💜 Mauve (#C77092)
Other Uncategorized 🔵 Teal (#4CA1AF) 💠 Cyan (#00BCD4) 🧊 Pale Cyan (#B2EBF2) 🔵 Ocean (#6B9DAD)

📦 Installation

Install easily via pip:

pip install sql-dag-flow

To update to the latest version (v0.4.0):

pip install --upgrade sql-dag-flow

▶️ Usage

1. Command Line Interface (CLI)

Run directly from your terminal:

# Analyze the current directory
sql-dag-flow

# Analyze a specific SQL project
sql-dag-flow /path/to/my/dbt_project

2. Python API

Integrate into your workflows:

from sql_dag_flow import start

# Start the server and open the browser
start(directory="./my_sql_project")

📂 Project Structure Expectations

SQL DAG Flow looks for standard Medallion Architecture naming conventions:

  • Bronze Layer: Folders named bronze, raw, landing, or staging.
  • Silver Layer: Folders named silver, intermediate, or conformed.
  • Gold Layer: Folders named gold, mart, serving, or presentation.
  • Other: Any other folder is categorized as "Other" (Teal).

🤝 Contributing

Contributions are welcome!

  1. Fork the repository.
  2. Create a feature branch.
  3. Submit a Pull Request.

Created by Flavio Sandoval

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

sql_dag_flow-0.4.1.tar.gz (881.2 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

sql_dag_flow-0.4.1-py3-none-any.whl (881.8 kB view details)

Uploaded Python 3

File details

Details for the file sql_dag_flow-0.4.1.tar.gz.

File metadata

  • Download URL: sql_dag_flow-0.4.1.tar.gz
  • Upload date:
  • Size: 881.2 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.7

File hashes

Hashes for sql_dag_flow-0.4.1.tar.gz
Algorithm Hash digest
SHA256 5b1516b0b7cca3cf6f007226179bc331cecfcaf3af15ac93147463690648217c
MD5 f89c64d5e951592ff285d555747e6f3b
BLAKE2b-256 152c3af6cf9070cc0becb30db9ac6a4159b4e49ce2a052f581a54b62ae4284dc

See more details on using hashes here.

File details

Details for the file sql_dag_flow-0.4.1-py3-none-any.whl.

File metadata

  • Download URL: sql_dag_flow-0.4.1-py3-none-any.whl
  • Upload date:
  • Size: 881.8 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.2.0 CPython/3.13.7

File hashes

Hashes for sql_dag_flow-0.4.1-py3-none-any.whl
Algorithm Hash digest
SHA256 6cec917562754b522cf7a28243394a6df7a677fe29dc5bda29ba602ea314626c
MD5 67142ba63d477e1b1bab052f6153a2e3
BLAKE2b-256 fcdafee42a6df816d6a65450395bebfc77e280250af7c2b6110e2f11a4d79c79

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page