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A Rackio extension for AI models development

Project description

RackioAI

RackioAI is a Rackio extension for Artificial Intelligence (AI) models.

The project was started in 2020 by Carlos Rivero as a Leak Detection System and Virtual Analyzer project at Intelcon System C.A and MCL Control S.A respectively as a workaround to development and deployment Deep Learning models faster way.

Installation

Dependencies

RackioAI requieres:

  • Python (>=3.7)
  • scikit-learn
  • easy-deco
  • Pillow (8.0.0)
  • Rackio (1.0.2)

User installation

The easiest way to install RackioAI is using pip

pip install RackioAI


## User instantiation

To use it in any python project you can import it using:

```python
from rackio_AI import RackioAI

Now, you can get access to RackioAI methods and attributes.


Source code

You can check the latest sources with the command:

git clone https://github.com/crivero7/RackioAI.git


Documentation

The RackioAI documentation can be found in Read the Docs

Todo

  • Changelog
  • Contributing guide
  • Testing code

Project details


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