Metadata-Version: 2.4
Name: TINTOlib
Version: 1.0.5
Summary: Converting tabular data into images
Project-URL: Homepage, https://github.com/oeg-upm/TINTOlib-Documentation
Author-email: BorjaRei <borjareinoso@gmail.com>, manwestc <jcastillo@fi.upm.es>, DavidGonzalezFernandez <david.g.f.2@gmail.com>, JiayunLiu <jiayun.liu@upm.es>
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Description-Content-Type: text/markdown

## TINTOlib

[![License](https://img.shields.io/badge/license-Apache%202.0-blue)](https://github.com/oeg-upm/TINTOlib-Documentation/blob/main/LICENSE)
[![Python Version](https://img.shields.io/badge/Python-3.7%20%7C%203.8%20%7C%203.9%20%7C%203.10%20%7C%203.11-blue)](https://pypi.python.org/pypi/)
[![Documentation Status](https://readthedocs.org/projects/morph-kgc/badge/?version=latest)](https://tintolib.readthedocs.io/en/latest/)
[![Open In Colab-CNN](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/oeg-upm/TINTOlib-Crash_Course/blob/main/Notebooks/Challenge/Regression_CNN.ipynb)
[![Open In Colab-CNN+MLP](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/oeg-upm/TINTOlib-Crash_Course/blob/main/Notebooks/Challenge/Regression_CNN%2BMLP.ipynb)
[![Open In Colab-ViT](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/oeg-upm/TINTOlib-Crash_Course/blob/main/Notebooks/Challenge/Regression_ViT.ipynb)
[![Open In Colab-ViT+MLP](https://colab.research.google.com/assets/colab-badge.svg)](https://colab.research.google.com/github/oeg-upm/TINTOlib-Crash_Course/blob/main/Notebooks/Challenge/Regression_ViT%2BMLP.ipynb)

<div>
    <p align = "center">
    <img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/logo.svg" alt="TINTO Logo" width="150">
    </p>
</div>

**TINTOlib** is a state-of-the-art Python library that transforms **tidy data** (also known as tabular data) into **synthetic images**, enabling the application of advanced deep learning techniques, including **Vision Transformers (ViTs)** and **Convolutional Neural Networks (CNNs)**, to traditionally structured data. This transformation bridges the gap between tabular data and powerful vision-based machine learning models, unlocking new possibilities for tackling regression, classification, and other complex tasks.

**Citing TINTO**: If you used TINTO in your work, please cite the **[SoftwareX](https://doi.org/10.1016/j.softx.2023.101391)**:

```bib
@article{softwarex_TINTO,
    title = {TINTO: Converting Tidy Data into Image for Classification with 2-Dimensional Convolutional Neural Networks},
    journal = {SoftwareX},
    author = {Manuel Castillo-Cara and Reewos Talla-Chumpitaz and Raúl García-Castro and Luis Orozco-Barbosa},
    volume={22},
    pages={101391},
    year = {2023},
    issn = {2352-7110},
    doi = {https://doi.org/10.1016/j.softx.2023.101391}
}
```

And use-case developed in **[INFFUS Paper](https://doi.org/10.1016/j.inffus.2022.10.011)** 

```bib
@article{inffus_TINTO,
    title = {A novel deep learning approach using blurring image techniques for Bluetooth-based indoor localisation},
    journal = {Information Fusion},
    author = {Reewos Talla-Chumpitaz and Manuel Castillo-Cara and Luis Orozco-Barbosa and Raúl García-Castro},
    volume = {91},
    pages = {173-186},
    year = {2023},
    issn = {1566-2535},
    doi = {https://doi.org/10.1016/j.inffus.2022.10.011}
}
```

---

## Features
- Input data formats (2 options):
    - **Pandas Dataframe** 
    - **Files with the following format** 
        - **Tabular files**: The input data must be in **[CSV](https://en.wikipedia.org/wiki/Comma-separated_values)**, taking into account the **[Tidy Data](https://www.jstatsoft.org/article/view/v059i10)** format.
        - **Tidy Data**: The **target** (variable to be predicted) should be set as the last column of the dataset. Therefore, the first columns will be the features.
        - All data must be in numerical form.
        
- Runs on **Linux**, **Windows** and **macOS** systems.
- Compatible with **[Python](https://www.python.org/)** 3.7 or higher.

---

## Models
TINTOlib includes a variety of models for generating synthetic images. Below is a summary of the supported models and their hyperparameters:

| Models | Class | Hyperparameters |
|:----------------------------------------------------------------:|:------------:|:-------------------------------------------------------------------------------------------------------------------------------------------------------------------------------:|
| [TINTO](https://github.com/oeg-upm/TINTO) | `TINTO()` | `problem` `normalize` `verbose` `pixels` `algorithm` `blur` `submatrix` `amplification` `distance` `steps` `option` `times` `train_m` `zoom` `random_seed` |
| [IGTD](https://github.com/zhuyitan/igtd) | `IGTD()` | `problem` `normalize` `verbose` `scale` `fea_dist_method` `image_dist_method` `error` `max_step` `val_step` `switch_t` `min_gain` `zoom` `random_seed` |
| [REFINED](https://github.com/omidbazgirTTU/REFINED) | `REFINED()` | `problem` `normalize` `verbose` `hcIterations` `n_processors` `zoom` `random_seed` |
| [BarGraph](https://github.com/anuraganands/Non-image-data-classification-with-CNN/) | `BarGraph()` | `problem` `normalize` `verbose` `pixel_width` `gap` `zoom` |
| [DistanceMatrix](https://github.com/anuraganands/Non-image-data-classification-with-CNN/) | `DistanceMatrix()` | `problem` `normalize` `verbose` `zoom` |
| [Combination](https://github.com/anuraganands/Non-image-data-classification-with-CNN/) | `Combination()` | `problem` `normalize` `verbose` `zoom` |
| [SuperTML](https://github.com/GilesStrong/SuperTML_HiggsML_Test) | `SuperTML()` | `problem` `normalize` `verbose` `pixels` `feature_importance` `font_size` `random_seed` |
| [FeatureWrap](https://link.springer.com/chapter/10.1007/978-3-319-70139-4_87) | `FeatureWrap()` | `problem` `normalize` `verbose` `size` `bins` `zoom` |
| [BIE](https://ieeexplore.ieee.org/document/10278393) | `BIE()` | `problem` `normalize` `verbose` `precision` `zoom` |

---

## Getting Started

**You can install TINTOlib using [Pypi](https://pypi.org/project/TINTOlib/)**:

```
    pip install torchmetrics pytorch_lightning TINTOlib imblearn keras_preprocessing mpi4py
```


To import a specific model use 
``` python
    from TINTOlib.tinto import TINTO
```

Create the model. If you don't set any hyperparameter, the model will use the default values, refer to the **[Models Section](#models)** or the **[TINTO Documentation](https://tintolib.readthedocs.io/en/latest/)**.

``` python
    model = TINTO(blur=True)
```

### Generating Synthetic Images
To generate synthetic images, use the following workflow with the `fit`, `transform`, and `fit_transform` methods:

#### **Fitting the Model**
The `fit` method trains the model on the tabular data and prepares it for image generation.
```python
model.fit(data)
```
**Parameters**:
- **data**: A path to a CSV file or a Pandas DataFrame containing the features and targets.  
  - The target column must be the last column.

#### **Generating Synthetic Images**
The `transform` method generates and saves synthetic images in a specified folder. It requires the model to be fitted first.
```python
model.transform(data, folder)
```
**Parameters**:
- **data**: A path to a CSV file or a Pandas DataFrame containing the features and targets.
  - The target column must be the last column.
- **folder**: Path to the folder where the synthetic images will be saved.

#### **Combining Fit and Transform**
The `fit_transform` method combines the training and image generation steps. It fits the model to the data and generates synthetic images in one step.
```python
model.fit_transform(data, folder)
```
**Parameters**:
- **data**: A path to a CSV file or a Pandas DataFrame containing the features and targets.
  - The target column must be the last column.
- **folder**: Path to the folder where the synthetic images will be saved.

#### Notes:
- **The model must be fitted** before using the `transform` method. If the model isn't fitted, a `RuntimeError` will be raised.

---

## Documentation

For detailed usage, examples, and tutorials, visit the **[TINTOlib Documentation](https://tintolib.readthedocs.io/en/latest/)**.

## How to use TINTOlib - Google Colab crash course
To get started with **TINTOlib**, a dedicated **[crash course repository](https://github.com/oeg-upm/TINTOlib-Crash_Course)** is available. This repository provides a comprehensive guide to using TINTOlib for transforming tabular data into synthetic images and applying these images to machine learning tasks. It includes:

- **Slides and Jupyter notebooks** demonstrating how to:
  - Transform tabular data into images using **TINTOlib**.
  - Apply state-of-the-art vision models like **Vision Transformers (ViTs)** and **Convolutional Neural Networks (CNNs)** to classification and regression problems.

- Integration of **Hybrid Neural Networks (HyNNs)**, where:
  - **One branch** (MLP) processes the original tabular data.
  - **Another branch** (CNN or ViT) processes synthetic images.

This architecture leverages the strengths of both tabular and image-based data representations, enabling improved performance on complex machine learning tasks. The repository is ideal for those looking to integrate image-based deep learning techniques into tabular data workflows.
## Converting Tidy Data into image

For example, the following table shows a classic example of the [IRIS CSV dataset](https://archive.ics.uci.edu/ml/datasets/iris) as it should look like for the run:


| sepal length | sepal width | petal length | petal width | target |
|--------------|-------------|--------------|-------------|--------|
| 4.9 | 3.0 | 1.4 | 0.2 | 1 |
| 7.0 | 3.2 | 4.7 | 1.4 | 2 |
| 6.3 | 3.3 | 6.0 | 2.5 | 3 |


### Simple example without Blurring
The following example shows how to create 20x20 images with characteristic pixels, i.e. without blurring. 
Also, as no other parameters are indicated, you will choose the following parameters which are set by default:
- **Image size**: 20x20 pixels
- **Blurring**: No blurring will be used.
- **Seed**: with the seed set to 20.

<div>
<p align = "center">
<kbd><img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/characteristic.png" alt="TINTO characteristic pixel" width="250"></kbd>
</p>
</div>


### More specific example
The following example shows how to create with blurring with a more especific parameters.

The images are created with the following considerations regarding the parameters used:
- **Blurring (-B)**: Create the images with blurring technique.
- **Dimensional Reduction Algorithm (-alg)**: t-SNE is used.
- **Blurring option (-oB)**: Create de images with maximum value of overlaping pixel
- **Image size (-px)**: 30x30 pixels
- **Blurring steps (-sB)**: Expand 5 pixels the blurring.

<div>
<p align = "center">
<kbd><img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/blurring.png" alt="TINTO blurring" width="250"></kbd>
</p>
</div>

---

## License

TINTOlib is available under the **[Apache License 2.0](https://github.com/oeg-upm/TINTOlib-Documentation/blob/main/LICENSE)**.

## Authors
- **[Manuel Castillo-Cara](https://github.com/manwestc)**
- **[Raúl García-Castro](https://github.com/rgcmme)**
- **[Borja Reinoso](https://github.com/borjarei) -[borjareinoso@gmail.com](borjareinoso@gmail.com)**
- **[David González Fernández](https://github.com/DavidGonzalezFernandez)**
- **[Jiayun Liu](https://github.com/DCY1117)**


## Contributors

<div>
<p align = "center">
<kbd><img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/logo-oeg.png" alt="Ontology Engineering Group" width="150"></kbd> <kbd><img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/logo-upm.png" alt="Universidad Politécnica de Madrid" width="150"></kbd> <kbd><img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/logo-uned-.jpg" alt="Universidad Nacional de Educación a Distancia" width="231"></kbd> <kbd><img src="https://github.com/DCY1117/TEMP-Images/blob/main/TINTOlib-images/logo-uclm.png" alt="Universidad de Castilla-La Mancha" width="115"></kbd> 
</p>
</div>
