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[FSTORE-1507] Add support for Python UDF's in Transformation Functions #409

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101 changes: 86 additions & 15 deletions docs/user_guides/fs/transformation_functions.md
Original file line number Diff line number Diff line change
Expand Up @@ -5,7 +5,11 @@ In AI systems, [transformation functions](https://www.hopsworks.ai/dictionary/tr

## Custom Transformation Function Creation

User-defined transformation functions can be created in Hopsworks using the [`@udf`](http://docs.hopsworks.ai/hopsworks-api/{{{hopsworks_version}}}/generated/api/udf/) decorator. These functions should be designed as Pandas functions, meaning they must take input features as a [Pandas Series](https://pandas.pydata.org/docs/reference/api/pandas.Series.html) and return either a Pandas Series or a [Pandas DataFrame](https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.html). Hopsworks automatically executes the defined transformation function as a [`pandas_udf`](https://spark.apache.org/docs/3.1.2/api/python/reference/api/pyspark.sql.functions.pandas_udf.html) in a PySpark application and as Pandas functions in Python clients.
User-defined transformation functions can be created in Hopsworks using the [`@udf`](http://docs.hopsworks.ai/hopsworks-api/{{{hopsworks_version}}}/generated/api/udf/) decorator. These functions can be either implemented as pure Python UDFs or Pandas UDFs (User-Defined Functions).

Hopsworks offers three execution modes to control the execution of transformation functions during training dataset creation, batch inference, and online inference. By default, Hopsworks executes transformation functions as Python UDFs for [feature vector retrieval](feature_view/feature-vectors.md) in online inference pipelines and as Pandas UDFs for both [batch data retrieval](feature_view/batch-data.md) in batch inference pipelines and [training dataset creation](feature_view/training-data.md) in training pipelines. Python UDFs are optimized for smaller data volumes, while Pandas UDFs provide better performance on larger datasets. This execution mode provides the optimal balance based on the data size across training dataset generations, batch inference, and online inference. Additionally, Hopsworks allows you to explicitly set the execution mode for a transformation function to `python` or `pandas`, forcing the transformation function to always run as either a Python or Pandas UDF as specified.

A Pandas UDF in Hopsworks accepts one or more Pandas Series as input and can return either one or more Series or a Pandas DataFrame. When integrated with PySpark applications, Hopsworks automatically executes Pandas UDFs using PySpark’s [`pandas_udf`](https://spark.apache.org/docs/3.4.1/api/python/reference/pyspark.sql/api/pyspark.sql.functions.pandas_udf.html), enabling the transformation functions to efficiently scale for large datasets.

!!! warning "Java/Scala support"

Expand All @@ -18,20 +22,27 @@ Transformation functions created in Hopsworks can be directly attached to featur
Definition transformation function within a Jupyter notebook is only supported in Python Kernel. In a PySpark Kernel transformation function have to defined as modules or added when starting a Jupyter notebook.


The `@udf` decorator in Hopsworks creates a metadata class called [`HopsworksUdf`](http://docs.hopsworks.ai/hopsworks-api/{{{hopsworks_version}}}/generated/api/hopsworks_udf/). This class manages the necessary operations to execute the transformation function. The decorator has two arguments `return_type` and `drop`. The `return_type` is a mandatory argument and denotes the data types of the features returned by the transformation function. It can be a single Python type if the transformation function returns a single transformed feature or a list of Python types if it returns multiple transformed features. The supported types include `str`, `int`, `float`, `bool`, `datetime.datetime`, `datetime.date`, and `datetime.time`. The `drop` argument is optional and specifies the input arguments to remove from the final output after all transformation functions are applied. By default, all input arguments are retained in the final transformed output. The supported python types that be used with the `return_type` argument are provided as a table below
The `@udf` decorator in Hopsworks creates a metadata class called [`HopsworksUdf`](http://docs.hopsworks.ai/hopsworks-api/{{{hopsworks_version}}}/generated/api/hopsworks_udf/). This class manages the necessary operations to execute the transformation function.

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Could you make the arguments a bulleted list?

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Updated to bullet list

The decorator accepts three parameters:

- **`return_type`** (required): Specifies the data type(s) of the features returned by the transformation function. It can be a single Python type if the function returns one transformed feature, or a list of Python types if it returns multiple transformed features. The supported Python types that be used with the `return_type` argument are provided in the table below:

| Supported Python Types |
|:----------------------------------:|
| str |
| int |
| float |
| bool |
| datetime.datetime |
| datetime.date |
| datetime.time |

| Supported Python Types |
|--------------------------|
| str |
| int |
| float |
| bool |
| datetime.datetime |
| datetime.date |
| datetime.time |
- **`drop`** (optional): Identifies input arguments to exclude from the output after transformations are applied. By default, all inputs are retained in the output. Further details on this argument can be found [below](#dropping-input-features).

- **`mode`** (optional): Determines the execution mode of the transformation function. The argument accepts three values: `default`, `python`, or `pandas`. By default, the `mode` is set to `default`. Further details on this argument can be found [below](#specifying-execution-modes).

Hopsworks supports four types of transformation functions:
Hopsworks supports four types of transformation functions across all execution modes:

1. One-to-one: Transforms one feature into one transformed feature.
2. One-to-many: Transforms one feature into multiple transformed features.
Expand Down Expand Up @@ -80,7 +91,7 @@ To create a one-to-many transformation function, the Hopsworks `@udf` decorato

@udf(return_type=[int, int])
def add_one_and_two(feature1):
return pd.DataFrame({"add_one":feature1 + 1, "add_two":feature1 + 2})
return feature1 + 1, feature1 + 2
```

### Many-to-many transformations
Expand All @@ -94,13 +105,73 @@ The creation of a many-to-many transformation function is similar to that of a o
import pandas as pd

@udf(return_type=[int, int, int])
def add_one_multiple(feature1, feature2, feature3):
return feature1 + 1, feature2 + 1, feature3 + 1
```

### Specifying execution modes

The `mode` parameter of the `@udf` decorator can be used to specify the execution mode of the transformation function. It accepts three possible values `default`, `python` and `pandas`. Each mode is explained in more detail below:

#### Default
This execution mode assumes that the transformation function can be executed as either a Pandas UDF or a Python UDF. It serves as the default mode used when the `mode` parameter is not specified. In this mode, the transformation function is executed as a Pandas UDF during training and in the batch inference pipeline, while it operates as a Python UDF during online inference.


=== "Python"
!!! example "Creating a many to many transformations function using the default execution mode"
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Can you explain about what gets dropped here?
What are the names of the input columns of the DF and the names of the output columns?

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Do you think that this explanation is clear enough or does it require more be more in detail?

```python
from hopsworks import udf
import pandas as pd

# "default" mode is used if the parameter `mode` is not explicitly set.
@udf(return_type=[int, int, int])
def add_one_multiple(feature1, feature2, feature3):
return feature1 + 1, feature2 + 1, feature3 + 1

@udf(return_type=[int, int, int], mode="default")
def add_two_multiple(feature1, feature2, feature3):
return feature1 + 2, feature2 + 2, feature3 + 2
```

#### Python
The transformation function can be configured to always execute as a Python UDF by setting the `mode` parameter of the `@udf` decorator to `python`.


=== "Python"
!!! example "Creating a many to many transformation function as a Python UDF"
```python
from hopsworks import udf
import pandas as pd

@udf(return_type=[int, int, int], mode = "python")
def add_one_multiple(feature1, feature2, feature3):
return feature1 + 1, feature2 + 1, feature3 + 1
```

#### Pandas
The transformation function can be configured to always execute as a Pandas UDF by setting the `mode` parameter of the `@udf` decorator to `pandas`.


=== "Python"
!!! example "Creating a many to many transformations function as a Pandas UDF"
```python
from hopsworks import udf
import pandas as pd

# A Pandas UDF returning a Pandas DataFrame
@udf(return_type=[int, int, int], mode = "pandas")
def add_one_multiple(feature1, feature2, feature3):
return pd.DataFrame({"add_one_feature1":feature1 + 1, "add_one_feature2":feature2 + 1, "add_one_feature3":feature3 + 1})

# A Pandas UDF returning multiple Pandas Series
@udf(return_type=[int, int, int], mode="pandas")
def add_two_multiple(feature1, feature2, feature3):
return feature1 + 2, feature2 + 2, feature3 + 2
```

### Dropping input features

The `drop` parameter of the `@udf` decorator is used to drop specific columns in the input DataFrame after transformation. If any argument of the transformation function is passed to the `drop` parameter, then the column mapped to the argument is dropped after the transformation functions are applied. In the example below, the columns mapped to the arguments `feature1` and `feature2` are dropped after the application of all transformation functions.
The `drop` parameter of the `@udf` decorator is used to drop specific columns in the input DataFrame after transformation. If any argument of the transformation function is passed to the `drop` parameter, then the column mapped to the argument is dropped after the transformation functions are applied. In the example below, the columns mapped to the arguments `feature1` and `feature3` are dropped after the application of all transformation functions.


=== "Python"
Expand All @@ -111,7 +182,7 @@ The `drop` parameter of the `@udf` decorator is used to drop specific column

@udf(return_type=[int, int, int], drop=["feature1", "feature3"])
def add_one_multiple(feature1, feature2, feature3):
return pd.DataFrame({"add_one_feature1":feature1 + 1, "add_one_feature2":feature2 + 1, "add_one_feature3":feature3 + 1})
return feature1 + 1, feature2 + 1, feature3 + 1
```

### Training dataset statistics
Expand Down