Metadata-Version: 2.1
Name: ai-trainer
Version: 0.0.8
Summary: AI Trainer
Home-page: https://github.com/Telcrome/ai-trainer
Author: Raphael Schaefer
Author-email: raphaelschaefer1@outlook.com
License: UNKNOWN
Download-URL: https://github.com/Telcrome/ai-trainer/archive/0.0.3.tar.gz
Description: [Documentation](https://telcrome.github.io/ai-trainer/)
        
        # Installation for User
        
        Open anaconda powershell, activate an environment with anaconda, navigate into the trainer repo and execute the following to install trainer using pip, including its dependencies:
        
        ```bash
        pip install ai-trainer
        ```
        
        For Online Learning you have to install PyTorch:
        ```bash
        conda install pytorch torchvision cudatoolkit=10.1 -c pytorch
        ```
        
        AI-Trainer helps with building a data generator and it relies on imgaug for it:
        
        ```bash
        conda install imgaug -c conda-forge
        ```
        
        # Getting started with training models
        
        Trainer currently supports annotating images and videos.
        First, create a dataset using
        
        ```bash
        trainer init-ds
        cd YOUR_DATASET
        ```
        
        # Getting started with using trainer in python
        
        For using the annotated data, you can use trainer as a python package.
        After activating the environment containing the trainer and its dependencies,
        feel free to inspect some of the tutorials in ```./tutorials/```.
        
        # Development Setup
        
        Execute the user installation,
        but instead of using `pip install ai-trainer`,
        clone the repo locally.
        
        ```bash
        git clone https://github.com/Telcrome/ai-trainer
        ```
        
        Both vsc and pycharm are used for development with
        their configurations provided in ```.vscode``` and ```.idea```
        
        ## Recommended environments
        
        For development we recommend to install the conda environment into a subfolder of the repo.
        This allows for easier experimentation and the IDE expects it this way.
        
        ```bash
        conda env create --prefix ./envs -f environment.yml
        conda activate .\envs\.
        ```
        
        Now install a deep learning backend.
        PyTorch provides well-working [conda install commands](https://pytorch.org/get-started/locally/).
        
        For Tensorflow with GPU:
        ```bash
        conda install cudatoolkit=10.0 cudnn=7.6.0=cuda10.0_0
        pip install tensorflow-gpu
        ```
        
        ### Testing Development for pip and cli tools
        
        Installing the folder directly using pip does not work due to the large amount of files inside the local development folder,
        especially because in the local development setup the environment is expected to be a subfolder of the repo.
        ```bash
        pip install -e .
        ```
        
        # Using Docker
        
        Docker and the provided DOCKERFILE support is currently experimental as it proved to slow down the annotation GUI too much.
        When the transition to a web GUI is completed docker will be supported again.
        
        # Contribution
        
        ### Tutorials inside the repo
        
        - Do not use jupyter notebooks
Platform: UNKNOWN
Classifier: Programming Language :: Python :: 3
Classifier: License :: OSI Approved :: MIT License
Classifier: Operating System :: OS Independent
Requires-Python: >=3.7
Description-Content-Type: text/markdown
