Skip to main content

Advanced Python Tools for OpenDSS Powered by EPRI.

Project description

⚡ py-dss-toolkit: Advanced Python Tools for OpenDSS Powered by EPRI

PyPI Platform License AppVeyor PyPI Downloads

py-dss-toolkit is a Python package that builds on the capabilities of the py-dss-interface package to provide advanced functionalities for creating Python-OpenDSS solutions more efficiently. By combining the robust connection to OpenDSS provided by py-dss-interface with the feature-rich tools of py-dss-toolkit, users can streamline their workflows and gain powerful new capabilities for analyzing and manipulating OpenDSS models, simulations, and results.

Requires py-dss-interface (tested with 2.3.0). For more information about py-dss-interface, visit the GitHub repository.

🚨 Note: This project was previously known as py-dss-tools and the repository was named py_dss_tools. It has been renamed to avoid naming conflicts on PyPI.

📦 Installation

You can install py-dss-toolkit in two ways:

👤 User Installation

If you simply want to use the package:

pip install py-dss-toolkit

👨‍💻 Developer Installation

If you want to contribute or explore the source code:

git clone https://github.com/PauloRadatz/py_dss_toolkit.git
cd py_dss_toolkit
pip install -e .

📦 Quickstart Example

from py_dss_toolkit import CreateStudy

study = CreateStudy.snapshot("My Study", dss_file="path/to/model.dss")
study.run()
study.interactive_view.circuit_plot()

✨ Features

  • Retrieve, analyze, and visualize OpenDSS model data with ease.
  • Flexible simulation result access via dss_tools or structured workflows via CreateStudy.
  • Visualize circuit topology, voltage profiles, and time-series using DSSView, Plotly, or Matplotlib.
  • Extract Simulation results directly into pandas DataFrames.
  • Built on top of py-dss-interface.

🚀 What Can You Do With py-dss-toolkit?

🔍 1. Model Exploration and Manipulation

  • Access detailed model information via organized pandas DataFrames.
  • Modify models efficiently with built-in Pythonic tools.

📘 Example Notebook

📊 2. Exploring Simulation Results Capabilities

  • Retrieve SnapShot power flow results (voltages, currents, powers) via organized pandas DataFrames.
  • Extract QSTS simulation data including meters and monitors.

📘 Snapshot Results 📘 QSTS Results

📈 3. Visualize Simulation Results

py-dss-toolkit supports multiple methods to visualize:

  • Circuit topology
  • Voltage profiles
  • Time-series results

All three can be visualized using:

  • 🖥️ DSSView.exe — the native visualization tool for OpenDSS.
  • 🔍 Plotly (interactive) — browser-based interactive plots.
  • 🧾 Matplotlib (static) — publication-ready static charts.

📘 Circuit Interactive View 📘 Voltage Profile DSS View 📘 Voltage Profile Interactive View 📘 Voltage Profile Static View

🛠️ How to Use py-dss-toolkit?

🔧 1. Directly with the dss_tools Object

This approach is ideal when you want full flexibility to use py-dss-toolkit alongside your own custom logic or an existing py-dss-interface workflow. It allows you to:

  • Inject the active DSS object into py-dss-toolkit using update_dss()
  • Use any feature provided by py-dss-toolkit independently of the study type
  • Combine different simulation types, preprocessing, and postprocessing in a custom flow

Pros:

  • Full control and flexibility
  • Ideal for experienced users who want to mix tools freely
  • Easily integrates into existing scripts

⚠️ Cons:

  • No study-type validation (e.g., SnapShot vs QSTS restrictions)
  • Higher chance of calling functions that don’t match the simulation context
  • Slightly steeper learning curve for py-dss-interface beginners
import py_dss_interface
from py_dss_toolkit import dss_tools

dss = py_dss_interface.DSS()
dss.text("compile path/to/model.dss")
dss_tools.update_dss(dss)

dss.text("solve")

dss_tools.interactive_view.voltage_profile()

🧪 2. Using the CreateStudy Class

This approach is best when you want a clear, structured workflow that restricts available features based on the type of study you are performing (e.g., SnapShot, QSTS). It abstracts the setup and ensures that only relevant tools are available, helping avoid mistakes or invalid calls.

Pros:

  • Easier for beginners to follow and use safely
  • Prevents access to results or views that don’t apply to the selected study type
  • Provides a cleaner, study-oriented interface

⚠️ Cons:

  • Less flexible than using dss_tools directly
  • You are limited to workflows supported by the framework
  • More abstraction might make it harder to customize or mix multiple simulations
from py_dss_toolkit import CreateStudy

study = CreateStudy.snapshot("Snapshot Study", dss_file="path/to/model.dss")
study.run()

study.interactive_view.circuit_plot()

🧪 Running Tests

pytest tests/ -v --tb=short

🎓 Learn More

The best way to master py-dss-toolkit and py-dss-interface is through the official course:

👉 Try the first modules for free

🤝 Community and Support

Contributions and feedback are welcome! Open an issue or start a discussion on the GitHub Issues Page.

This project is under active development, and there are many additional features that could be included in the future. If you have ideas or specific needs, feel free to open a feature request, contribute directly, or reach out to me!

📚 How to Cite

If you use py-dss-toolkit in your academic work, please reference it as follows:

APA Style:

Radatz, P. (2026). py-dss-toolkit: Advanced Python Tools for OpenDSS powered by EPRI (Version 0.16.0) [Computer software]. GitHub. https://github.com/PauloRadatz/py_dss_toolkit

BibTeX Entry:

@software{radatz2026pydsstoolkit,
  author = {Paulo Radatz},
  title = {py-dss-toolkit: Advanced Python Tools for OpenDSS powered by EPRI},
  year = {2026},
  version = {0.16.0},
  url = {https://github.com/PauloRadatz/py_dss_toolkit}
}

🙏 Acknowledgements

Developed and maintained by Paulo Radatz, with support from the global OpenDSS community.

Special thanks to the OpenDSS community and all contributors and users who have provided feedback and inspiration. The development of py-dss-toolkit builds on the foundation laid by py-dss-interface.


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

py_dss_toolkit-0.16.0.tar.gz (175.4 kB view details)

Uploaded Source

Built Distribution

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

py_dss_toolkit-0.16.0-py3-none-any.whl (134.0 kB view details)

Uploaded Python 3

File details

Details for the file py_dss_toolkit-0.16.0.tar.gz.

File metadata

  • Download URL: py_dss_toolkit-0.16.0.tar.gz
  • Upload date:
  • Size: 175.4 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/6.1.0 CPython/3.12.7

File hashes

Hashes for py_dss_toolkit-0.16.0.tar.gz
Algorithm Hash digest
SHA256 5f506bab477631c09e19d5929fa9a28f4cbe48e0476f5356dac322e2be7af77d
MD5 7f153a4a8c0425b060596897a0711896
BLAKE2b-256 872712a4e2c92cacab45b075f84821ae41675c6e5a36c10c25be6243626c06d0

See more details on using hashes here.

File details

Details for the file py_dss_toolkit-0.16.0-py3-none-any.whl.

File metadata

File hashes

Hashes for py_dss_toolkit-0.16.0-py3-none-any.whl
Algorithm Hash digest
SHA256 8d7a079268aec7480e5785f011f21a6c6ae9ade9fc163620de805d7ce407eccc
MD5 4f55741d4bb35d85bbd8769616a9c332
BLAKE2b-256 418caaeeb9da4c539a7c23cf1099c233a50e145076f29258c478e148e6f0bade

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