Contents

igneous-pipeline 4.22.1

0

Manage, Downsample, Mesh, Skeletonize, and Transform Neuroglancer Datasets

Manage, Downsample, Mesh, Skeletonize, and Transform Neuroglancer Datasets

Stars: 36, Watchers: 36, Forks: 14, Open Issues: 20

The seung-lab/igneous repo was created 6 years ago and the last code push was 4 weeks ago. The project is moderately popular with 36 github stars!

How to Install igneous-pipeline

You can install igneous-pipeline using pip

pip install igneous-pipeline

or add it to a project with poetry

poetry add igneous-pipeline

Package Details

Author
Ignacio Tartavull, William Silversmith, and others
License
License :: OSI Approved :: GNU General Public License v3 or later (GPLv3+)
Homepage
https://github.com/seung-lab/igneous/
PyPi:
https://pypi.org/project/igneous-pipeline/
GitHub Repo:
https://github.com/seung-lab/igneous

Classifiers

  • Scientific/Engineering/Image Processing
  • Utilities
No  igneous-pipeline  pypi packages just yet.

Errors

A list of common igneous-pipeline errors.

Code Examples

Here are some igneous-pipeline code examples and snippets.

GitHub Issues

The igneous-pipeline package has 20 open issues on GitHub

  • Allow explicit remapping of segment 0 during MeshTask
  • How do I export the resulting skeleton to a swc file?

See more issues on GitHub

Related Packages & Articles

cloud-volume 8.32.0

A serverless client for reading and writing Neuroglancer Precomputed volumes both locally and on cloud services.

cf_clearance 0.31.0

Purpose To make a cloudflare v2 challenge pass successfully, Can be use cf_clearance bypassed by cloudflare, However, with the cf_clearance, make sure you use the same IP and UA as when you got it.

jina 3.25.0

Multimodal AI services & pipelines with cloud-native stack: gRPC, Kubernetes, Docker, OpenTelemetry, Prometheus, Jaeger, etc.

PyWavefront 1.3.3

PyWavefront is a Python library designed for importing Wavefront 3D object files (.obj and .obj.gz) and material files (.mtl). It generates interleaved vertex data for each material, making it ready for rendering. The library supports Python 3.4+ and offers a simple optional visualization module for rendering the objects. PyWavefront supports positions, texture coordinates, normals, vertex color, material parsing, texture, and texture parameters. It's an ideal tool for Python developers working with 3D graphics and Wavefront files.

autoviz 0.1.808

Automatically Visualize any dataset, any size with a single line of code

mypy-boto3-sqs 1.34.0

Type annotations for boto3.SQS 1.34.0 service generated with mypy-boto3-builder 7.21.0