Metadata-Version: 2.1
Name: AI4Water
Version: 1.0b4
Summary: Platform for developing data driven based models for sequential/tabular data
Home-page: https://github.com/AtrCheema/AI4Water
Author: Ather Abbas
Author-email: ather_abbas786@yahoo.com
License: UNKNOWN
Platform: UNKNOWN
Classifier: Development Status :: 4 - Beta
Classifier: Natural Language :: English
Classifier: Intended Audience :: Science/Research
Classifier: Intended Audience :: Developers
Classifier: Operating System :: Microsoft :: Windows
Classifier: Operating System :: POSIX :: Linux
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.5
Classifier: Programming Language :: Python :: 3.6
Classifier: Programming Language :: Python :: 3.7
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.8
Classifier: Programming Language :: Python :: 3.9
Description-Content-Type: text/markdown
Provides-Extra: all
Provides-Extra: hpo
Provides-Extra: post_process
Provides-Extra: exp
Provides-Extra: eda
Provides-Extra: tf
Provides-Extra: torch
Provides-Extra: tf_hpo
Provides-Extra: torch_hpo_requires
Provides-Extra: ml
Provides-Extra: ml_hpo
License-File: LICENCE

# AI4Water


[![Build Status](https://github.com/AtrCheema/AI4Water/workflows/tf/badge.svg)](https://github.com/AtrCheema/AI4Water/actions)
[![Documentation Status](https://readthedocs.org/projects/ai4water/badge/?version=latest)](https://ai4water.readthedocs.io/en/latest/?badge=latest)
[![DOI](https://zenodo.org/badge/DOI/10.5194/gmd-2021-139.svg)](https://doi.org/10.5194/gmd-2021-139)
[![Downloads](https://pepy.tech/badge/ai4water)](https://pepy.tech/project/ai4water)


A uniform and simplified framework for rapid experimentation with deep leanring and machine learning based models
for time series and tabular data. To put into Andrej Karapathy's [words](https://twitter.com/karpathy/status/1350503355299205120)

`Because deep learning is so empirical, success in it is to a large extent proportional to raw experimental throughput,
 the ability to babysit a large number of experiments at once, staring at plots and tweaking/re-launching what works. 
 This is necessary, but not sufficient.` 

The specific purposes of the repository are

-    compliment the functionality of `keras`/`pytorch`/`sklearn` by making pre and 
 post processing easeier for time-series prediction/classification problems (also holds
 true for any tabular data).
 
-    save, load/reload or build models from readable json file. This repository 
 provides a framework to build layered models using python dictionary and with 
 several helper tools which fasten the process of  modeling time-series forcasting.

-    provide a uniform interface for optimizing hyper-parameters for 
 [skopt](https://scikit-optimize.github.io/stable/index.html);
 [sklearn](https://scikit-learn.org/stable/modules/classes.html#hyper-parameter-optimizers) 
 based [grid](https://scikit-learn.org/stable/modules/generated/sklearn.model_selection.GridSearchCV.html) 
 and [random](https://scikit-learn.org/stable/modules/generated/sklearn.model_selection.RandomizedSearchCV.html);
  [hyperopt](http://hyperopt.github.io/hyperopt/) based 
  [tpe](https://papers.nips.cc/paper/2011/file/86e8f7ab32cfd12577bc2619bc635690-Paper.pdf), 
  [atpe](https://www.electricbrain.io/blog/learning-to-optimize) or 
  [optuna](https://optuna.readthedocs.io/en/stable/) based 
  [tpe](https://optuna.readthedocs.io/en/stable/reference/generated/optuna.samplers.TPESampler.html), 
  [cmaes](https://optuna.readthedocs.io/en/stable/reference/generated/optuna.samplers.CmaEsSampler.html) etc. 
  See [example](https://github.com/AtrCheema/AI4Water/blob/master/examples/hyper_para_opt.ipynb)  
  using its application.
 
-    cut short the time to write boiler plate code in developing machine learning 
 based models.

-    It should be possible to overwrite/customize any of the functionality of the AI4Water's `Model` 
 by subclassing the
 `Model`. So at the highest level you just need to initiate the `Model`, and then need `fit`, `predict` and 
 `view_model` methods of `Model` class but you can go as low as you could go with tensorflow/keras. 

-    All of the above functionalities should be available without complicating keras 
 implementation.


## Installation

An easy way to install ai4water is using pip

    pip install ai4water

You can also use github link

	python -m pip install git+https://github.com/AtrCheema/AI4Water.git

or using setup file, go to folder where repo is downloaded

    python setup.py install

The latest code however (possibly with less bugs and more features) can be insalled from `dev` branch instead

    python -m pip install git+https://github.com/AtrCheema/AI4Water.git@dev

To install the latest branch (`dev`) with all requirements use the following command

    python -m pip install "AI4Water[all] @ git+https://github.com/AtrCheema/AI4Water.git@dev"

### installation options
`all` keyword will install all the dependencies. You can choose the dependencies of particular sub-module
by using the specific keyword. Following keywords are available

 - `hpo` if you want hyperparameter optimization
 - `post_process` if you want postprocessing
 - `exp` for experiments sub-module

## How to use

Build a `Model` by providing all the arguments to initiate it.

```python
from ai4water import Model
from ai4water.datasets import busan_beach
data = busan_beach()
model = Model(
        model = {'layers': {"LSTM": 64,
                            'Dense': 1}},
        input_features=['tide_cm', 'wat_temp_c', 'sal_psu', 'air_temp_c', 'pcp_mm'],   # columns in csv file to be used as input
        output_features = ['tetx_coppml'],     # columns in csv file to be used as output
        ts_args={'lookback': 12}  # how much historical data we want to feed to model
)
```

Train the model by calling the `fit()` method
```python
history = model.fit(data=data)
```

Make predictions from it
```python
predicted = model.predict()
```

The model object returned from initiating AI4Wwater's `Model` is same as that of Keras' `Model`
We can verify it by checking its type
```python
import tensorflow as tf
isinstance(model, tf.keras.Model)  # True
``` 


## Using your own pre-processed data
You can use your own pre-processed data without using any of pre-processing tools of AI4Water. You will need to provide
input output paris to `data` argument to `fit` and/or `predict` methods.
```python
import numpy as np
from ai4water import Model  # import any of the above model

batch_size = 16
lookback = 15
inputs = ['dummy1', 'dummy2', 'dummy3', 'dumm4', 'dummy5']  # just dummy names for plotting and saving results.
outputs=['DummyTarget']

model = Model(
            model = {'layers': {"LSTM": 64,
                                'Dense': 1}},
            batch_size=batch_size,
            ts_args={'lookback':lookback},
            input_features=inputs,
            output_features=outputs,
            lr=0.001
              )
x = np.random.random((batch_size*10, lookback, len(inputs)))
y = np.random.random((batch_size*10, len(outputs)))

history = model.fit(x=x,y=y)

```

## using for `scikit-learn`/`xgboost`/`lgbm`/`catboost` based models
The repository can also be used for machine learning based models such as scikit-learn/xgboost based models for both
classification and regression problems by making use of `model` keyword arguments in `Model` function.
However, integration of ML based models is not complete yet.
```python
from ai4water import Model
from ai4water.datasets import busan_beach

data = busan_beach()  # path for data file

model = Model(
        input_features=['tide_cm', 'wat_temp_c', 'sal_psu', 'air_temp_c', 'pcp_mm'],   # columns in csv file to be used as input
        output_features = ['tetx_coppml'],  
        val_fraction=0.0,
        #  any regressor from https://scikit-learn.org/stable/modules/classes.html
        model={"RandomForestRegressor": {"n_estimators":1000}},  # set any of regressor's parameters. e.g. for RandomForestRegressor above used,
    # some of the paramters are https://scikit-learn.org/stable/modules/generated/sklearn.ensemble.RandomForestRegressor.html#sklearn.ensemble.RandomForestRegressor
              )

history = model.fit(data=data)

preds = model.predict()
```

# Hyperparameter optimization
For hyperparameter optimization, replace the actual values of hyperparameters
with the space.
```python
from ai4water import Model
from ai4water.datasets import busan_beach
from ai4water.hyperopt import Integer, Real
data = busan_beach()
model = Model(
        model = {'layers': {"LSTM": Integer(low=30, high=100,name="units"),
                            'Dense': 1}},
        input_features=['tide_cm', 'wat_temp_c', 'sal_psu', 'air_temp_c', 'pcp_mm'],   # columns in csv file to be used as input
        output_features = ['tetx_coppml'],     # columns in csv file to be used as output
        ts_args={'lookback': Integer(low=5, high=15, name="lookback")},
        lr=Real(low=0.00001, high=0.001, name="lr")
)
model.optimize_hyperparameters(data=data,
                               algorithm="bayes",  # choose between 'random', 'grid' or 'atpe' 
                               num_iterations=30
                               )
```


## Disclaimer
The library is still under development. Fundamental changes are expected without prior notice or
without regard of backward compatability.

#### Related

[sktime: A Unified Interface for Machine Learning with Time Series](https://github.com/alan-turing-institute/sktime)

[Seglearn: A Python Package for Learning Sequences and Time Series](https://github.com/dmbee/seglearn)

[Pastas: Open Source Software for the Analysis of Groundwater Time Series](https://github.com/pastas/pastas)

[Time Series FeatuRe Extraction on basis of Scalable Hypothesis tests (tsfresh -- A Python package)](https://github.com/blue-yonder/tsfresh)

[MLAir](https://gmd.copernicus.org/preprints/gmd-2020-332/)

[pyts: A Python Package for Time Series Classification](https://github.com/johannfaouzi/pyts)

[Tslearn, A Machine Learning Toolkit for Time Series Data](https://github.com/tslearn-team/tslearn)

[TSFEL: Time Series Feature Extraction Library](https://doi.org/10.1016/j.softx.2020.100456)

[catch22](https://github.com/chlubba/catch22)

[vest](https://github.com/vcerqueira/vest-python)

[pyunicorn (Unified Complex Network and RecurreNce analysis toolbox](https://github.com/pik-copan/pyunicorn)

[TSFuse Python package for automatically constructing features from multi-view time series data](https://github.com/arnedb/tsfuse)

[Catalyst](https://github.com/catalyst-team/catalyst)

[tsai - A state-of-the-art deep learning library for time series and sequential data](https://github.com/timeseriesAI/tsai)


