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Guidepost. An overview visualization for understanding supercomputer queue data.

Project description

Guidepost

Guidepost is a Python library designed for seamless integration into Jupyter notebooks to visualize High Performance Computing (HPC) job data. It simplifies the process of understanding HPC workloads by providing a single, interactive visualization that offers an intuitive overview of job performance, resource usage, and other critical metrics.


Features

  • Jupyter Notebook Integration: Designed for your existing workflow. Load and interact with the visualization directly in your Jupyter environment.
  • HPC Job Data Insights: Visualize key metrics, including job runtimes, resource usage, and queue performance.
  • Interactive Exploration: Export selections of specific jobs or groups of jobs for deeper analysis.
  • Lightweight and Easy to Use: Focused on simplicity and efficiency for HPC users.

Installation

Guidepost is available on PyPI. You can install it using pip:

pip install guidepost

Quick Start

1. Import and Initialize Guidepost

from guidepost import Guidepost
gp = Guidepost()

2. Load Your Data

Guidepost supports input data in CSV or Pandas DataFrame format. Ensure your data includes columns such as job IDs, runtime, and resource usage.

import pandas as pd

jobs_data = pd.read_parquet("data/jobs_data.parquet")

3. Configure Visualization

gp.vis_data = jobs_data
gp.vis_configs = {
        'x': 'queue_wait',
        'y': 'start_time',
        'color': 'nodes_req',
        'color_agg': 'avg',
        'categorical': 'user',
        'facet_by': 'partition'
}

4. Run Visualization

gp

Run the above command in a Jupyter notebook cell to load data.

4. Retrieve Selections from Visualization

gp.retrieve_selected_data()

Example Dataset

Below is an example of the kind of data Guidepost works with:

Job ID Runtime (hours) Nodes Used partition Status
12345 5.2 10 short Complete
12346 12.0 20 long Running

API Reference

vis_data

  • Description: Holds the vis data to passed to the visualization. Updates to this variable will automatically update the visualization.

vis_configs

  • Description: Holds the vis configurations to passed to the visualization. Updates to this variable will automatically update the visualization.

Vis configurations must be specified as a python dictonary with the following fields:

  • 'x': The column from the pandas dataframe which will be shown on the x axis. This can be a integer, float or datetime variable.
  • 'y': The column from the pandas dataframe which will be shown on the y axis of this visualization. This can be an integer or float.
  • 'color': The column from the pandas dataframe which will determine the color of squares in the main summary view. This can be an integer or float.
  • 'color_agg': This is a specification for what aggregation is used for the color variable. It can be: 'avg', 'variance', 'std', 'sum', or 'median'
  • 'categorical': A categorical variable from the dataset. The data column must be a string datatype. The visualization will show the top 10 instances of this variable.
  • 'facet_by': A categorical variable from the dataset. Automatically looks for 'queue' or 'partition' if this config is not specified.

retrieve_selected_data()

  • Description: Returns selected data back from the visualization.
  • Returns:
    • subselection (DataFrame or str): A Pandas DataFrame that contains subselected data specified from selections made to the visualization.

Contributing

Contributions to Guidepost are welcome! To contribute:

  1. Fork the repository.
  2. Create a new branch for your feature or bugfix.
  3. Submit a pull request with a detailed description of your changes.

License

Guidepost is licensed under the MIT License. See the LICENSE file for details.


Acknowledgments

Guidepost was developed under the auspices and with funding provided by the National Renewable Energy Laboratory (NREL).


Contact

For questions or feedback, please reach out to the maintainer at [cscullyallison@sci.utah.edu].

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