Metadata-Version: 2.1
Name: datawig
Version: 0.1.7
Summary: Imputation for tables with missing values
Home-page: https://github.com/awslabs/datawig
Author: datawig-dev
Author-email: datawig-dev@amazon.com
Maintainer-email: datawig-dev@amazon.com
License: Apache License 2.0
Platform: UNKNOWN
Classifier: License :: OSI Approved :: Apache Software License
Classifier: Programming Language :: Python :: 3 :: Only
Requires-Python: >=3
Description-Content-Type: text/markdown
Requires-Dist: numpy (==1.15.0)
Requires-Dist: scikit-learn[alldeps] (==0.19.0)
Requires-Dist: typing (==3.6.6)
Requires-Dist: pandas (==0.22.0)
Requires-Dist: mxnet (==1.3.0.post0)

DataWig - Imputation for Tables
================================

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DataWig learns Machine Learning models to impute missing values in tables.

See our user-guide and extended documentation [here](https://datawig.readthedocs.io/en/latest).

## Installation

### CPU
```bash
pip3 install datawig
```

### GPU
If you want to run DataWig on a GPU you need to make sure your version of Apache MXNet Incubating contains the GPU bindings.
Depending on your version of CUDA, you can do this by running the following:

```bash
wget https://raw.githubusercontent.com/awslabs/datawig/master/requirements/requirements.gpu-cu${CUDA_VERSION}.txt
pip install datawig --no-deps -r requirements.gpu-cu${CUDA_VERSION}.txt
rm requirements.gpu-cu${CUDA_VERSION}.txt
```
where `${CUDA_VERSION}` can be `75` (7.5), `80` (8.0), `90` (9.0), or `91` (9.1).

## Running DataWig
The DataWig API expects your data as a [pandas DataFrame](https://pandas.pydata.org/pandas-docs/stable/generated/pandas.DataFrame.html). Here is an example of how the dataframe might look:

|Product Type | Description           | Size | Color |
|-------------|-----------------------|------|-------|
|   Shoe      | Ideal for Running     | 12UK | Black |
| SDCards     | Best SDCard ever ...  | 8GB  | Blue  |
| Dress       | This **yellow** dress | M    | **?** |

For most use cases, the `SimpleImputer` class is the best starting point. DataWig expects you to provide the column name of the column you would like to impute values for (called `output_column` below) and some column names that contain values that you deem useful for imputation (called `input_columns` below).

### Imputation of categorical columns

```python
import datawig

df = datawig.utils.generate_df_string(num_samples=200, data_column_name='sentences', label_column_name='label')
df_train, df_test = datawig.utils.random_split(df)

#Initialize a SimpleImputer model
imputer = datawig.SimpleImputer(
    input_columns=['sentences'], # column(s) containing information about the column we want to impute
    output_column='label', # the column we'd like to impute values for
    output_path = 'imputer_model' # stores model data and metrics
    )

#Fit an imputer model on the train data
imputer.fit(train_df=df_train)

#Impute missing values and return original dataframe with predictions
imputed = imputer.predict(df_test)
```

### Imputation of numerical columns

```python
import datawig

df = datawig.utils.generate_df_numeric(num_samples=200, data_column_name='x', label_column_name='y')         
df_train, df_test = datawig.utils.random_split(df)

#Initialize a SimpleImputer model
imputer = datawig.SimpleImputer(
    input_columns=['x'], # column(s) containing information about the column we want to impute
    output_column='y', # the column we'd like to impute values for
    output_path = 'imputer_model' # stores model data and metrics
    )

#Fit an imputer model on the train data
imputer.fit(train_df=df_train, num_epochs=50)

#Impute missing values and return original dataframe with predictions
imputed = imputer.predict(df_test)

```

In order to have more control over the types of models and preprocessings, the `Imputer` class allows directly specifying all relevant model features and parameters. 

For details on usage, refer to the provided [examples](./examples).

### Acknowledgments
Thanks to [David Greenberg](https://github.com/dgreenberg) for the package name.

### Building documentation

```bash
git clone git@github.com:awslabs/datawig.git
cd datawig/docs
make html
open _build/html/index.html
```


### Executing Tests

Clone the repository from git and set up virtualenv in the root dir of the package:

```
python3 -m venv venv
```

Install the package from local sources:

```
./venv/bin/pip install -e .
```

Run tests:

```
./venv/bin/pip install -r requirements/requirements.dev.txt
./venv/bin/python -m pytest
```

