DIYer22/boxx
Tool-box for efficient build and debug in Python. Especially for Scientific Computing and Computer Vision.
This tool helps scientists, engineers, and researchers efficiently build and debug Python code, especially when working with numerical data or images. It allows users to quickly inspect variables, visualize matrices or tensors, and display images, making it easier to understand and troubleshoot complex scientific and computer vision workflows. Researchers and practitioners in fields requiring extensive data analysis and image processing will find this valuable.
516 stars. Used by 1 other package. No commits in the last 6 months. Available on PyPI.
Use this if you are a data scientist, computer vision engineer, or scientific researcher needing to quickly inspect variables, visualize data arrays, or display images directly within your Python development environment.
Not ideal if you are primarily developing web applications, general business logic, or don't frequently work with numerical arrays, tensors, or images.
Stars
516
Forks
40
Language
Python
License
—
Category
Last pushed
May 09, 2025
Commits (30d)
0
Dependencies
8
Reverse dependents
1
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