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Feathub

FeatHub - A stream-batch unified feature store for real-time machine learning

Install / Use

/learn @alibaba/Feathub

README

FeatHub is a stream-batch unified feature store that simplifies feature development, deployment, monitoring, and sharing for machine learning applications.

Introduction

FeatHub is an open-source feature store designed to simplify the development and deployment of machine learning models. It supports feature ETL and provides an easy-to-use Python SDK that abstracts away the complexities of point-in-time correctness needed to avoid training-serving skew. With FeatHub, data scientists can speed up the feature deployment process and optimize feature ETL by automatically compiling declarative feature definitions into performant distributed ETL jobs using state-of-the-art computation engines of their choice, such as Flink or Spark.

Checkout Documentation for guidance on compute engines, connectors, expression language, and more.

Core Benefits

Similar to other feature stores, FeatHub provides the following core benefits:

  • Simplified feature development: The Pythonic FeatHub SDK makes it easy to develop features without worrying about point-in-time correctness. This helps to avoid training-serving skew, which can negatively impact the accuracy of machine learning models.
  • Faster feature deployment: FeatHub automatically compiles user-specified declarative feature definitions into performant distributed ETL jobs using state-of-the-art computation engines, such as Flink or Spark. This speeds up the feature deployment process and eliminates the need for data engineers to re-write Python programs into distributed stream or batch processing jobs.
  • Performant feature generation: FeatHub offers a range of built-in optimizations that leverage commonly observed feature ETL job patterns. These optimizations are automatically applied to ETL jobs compiled from the declarative feature definitions, much like how SQL optimizations are applied.
  • Facilitated feature sharing: FeatHub allows developers to register and query feature definitions in a persistent feature registry. This capability reduces the duplication of data engineering efforts and the resource cost of feature generation by allowing developers in the organization to share and re-use existing feature definitions and datasets.

In addition to the above benefits, FeatHub provides several architectural benefits compared to other feature stores, including:

  • Real-time feature generation: FeatHub supports real-time feature generation using Apache Flink as the stream computation engine with milli-second latency. This provides better performance than other open-source feature stores that only support feature generation using Apache Spark.

  • Assisted feature monitoring: FeatHub provides built-in metrics to monitor the quality of features and alert users to issues such as feature drift. This helps to improve the accuracy and reliability of machine learning models.

  • Stream-batch unified computation: FeatHub allows for consistent feature computation across offline, nearline, and online stacks using Apache Flink for real-time features with low latency, Apache Spark for offline features with high throughput, and FeatureService for computing features online when the request is received.

  • Extensible framework: FeatHub's Python SDK is decoupled from the APIs of the underlying computation engines, providing flexibility and avoiding lock-in. This allows for the support of additional computation engines in the future. For example, FeatHub supports Local Processor that is implemented using Pandas library, in addition to its support for Apache Flink and Apache Spark.

Usability is a crucial factor that sets feature store projects apart. Our SDK is designed to be Pythonic, declarative, intuitive, and highly expressive to support all the necessary feature transformations. We understand that a feature store's success depends on its usability as it directly affects developers' productivity. Check out the FeatHub SDK Highlights section below to learn more about the exceptional usability of our SDK.

<!-- TODO: provide examples showing the advantage of python SDK over SQL. -->

What you can do with FeatHub

With FeatHub, you can:

  • Define new features: Define features as the result of applying expressions, aggregations, and cross-table joins on existing features, all with point-in-time correctness.
  • Read and write features data: Read and write feature data into a variety of offline, nearline, and online storage systems for both offline training and online serving.
  • Backfill features data: Process historical data with the given time range and/or keys to backfill feature data, whic
  • Run experiments: Run experiments on the local machine using LocalProcessor without connecting to Apache Flink or Apache Spark cluster. Then deploy the FeatHub program in a distributed Apache Flink or Apache Spark cluster by changing the program configuration.

Architecture Overview

The architecture of FeatHub and its key components are shown in the figure below.

<img src="docs/static/img/architecture_1.png" width="50%" height="auto">

The workflow of defining, computing, and serving features using FeatHub is illustrated in the figure below.

<img src="docs/static/img/architecture_2.png" width="70%" height="auto">

See Basic Concepts for more details about the key components in FeatHub.

Supported Compute Engines

FeatHub supports the following compute engines to execute feature ETL pipeline:

FeatHub SDK Highlights

The following examples demonstrate how to define a variety of features concisely using FeatHub SDK. See FeatHub SDK for more details.

See NYC Taxi Demo to learn more about how to define, generate and serve features using FeatHub SDK.

  • Define features via table joins with point-in-time correctness
f_price = Feature(
    name="price",
    transform=JoinTransform(
        table_name="price_update_events",
        feature_name="price"
    ),
    keys=["item_id"],
)
  • Define over-window aggregation features:
f_total_payment_last_two_minutes = Feature(
    name="total_payment_last_two_minutes",
    transform=OverWindowTransform(
        expr="item_count * price",
        agg_func="SUM",
        window_size=timedelta(minutes=2),
        group_by_keys=["user_id"]
    )
)
  • Define sliding-window aggregation features:
f_total_payment_last_two_minutes = Feature(
    name="total_payment_last_two_minutes",
    transform=SlidingWindowTransform(
        expr="item_count * price",
        agg_func="SUM",
        window_size=timedelta(minutes=2),
        step_size=timedelta(minutes=1),
        group_by_keys=["user_id"]
    )
)
  • Define features via built-in functions and the FeatHub expression language:
f_trip_time_duration = Feature(
    name="f_trip_time_duration",
    transform="UNIX_TIMESTAMP(taxi_dropoff_datetime) - UNIX_TIMESTAMP(taxi_pickup_datetime)",
)
  • Define a feature via Python UDF:
f_lower_case_name = Feature(
    name="lower_case_name",
    dtype=types.String,
    transform=PythonUdfTransform(lambda row: row["name"].lower()),
)
<!-- TODO: Add SqlFeatureView. -->

User Guide

Checkout Documentation for guidance on compute engines, connectors, expression language, and more.

Prerequisites

You need the following to run FeatHub installed using pip:

  • Unix-like operating system (e.g. Linux, Mac OS X)
  • Python 3.7/3.8/3.9

Install FeatHub Nightly Build

To install the nightly version of FeatHub and the corresponding extra requirements based on the compute engine you plan to use, run one of the following commands:

# Run the following command if you plan to run FeatHub using a local process
$ python -m pip install --upgrade feathub-nightly

# Run the following command if you plan to use Apache Flink cluster
$ python -m pip install --upgrade "feathub-nightly[flink]"

# Run the following command if you plan to use Apache Spark cluster, or to use
# Spark-supported storage in a local process. 
$ python -m pip install --upgrade "feathub-nightly[spark]"

Quickstart

Quickstart using Local Processor

Execute the following command to compute features defined in nyc_taxi.py in the given Python process.

$ python python/feathub/examples/nyc_taxi.py

Quickstart using Flink Processor

You can use the following quickstart guides to compute features in a Flink cluster with different deployment modes:

Quickstart using Spark Processor

You can use the following quickstart guides to compute feature

Related Skills

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GitHub Stars348
CategoryData
Updated15d ago
Forks60

Languages

Python

Security Score

100/100

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