Tutorial
5 min read

The 7 Most Popular Feature Stores In 2023

Feature Stores are becoming increasingly popular tools in the machine learning environment, serving to manage and share the features needed to build machine learning models. By centralizing and standardizing features, Feature Stores enable better management of the model creation process and facilitate collaboration among Data Science teams. In recent years, Feature Stores have become an integral part of many ML projects, and their popularity is continuing to grow. This article will look at the most popular solutions available, but first, let's define the Feature Store.

What is the Feature Store?

Features are the key information describing observations such as users, products, transactions, etc. They are critical in building machine learning models as they serve as inputs for the learning algorithms. The Feature Store is a central repository that stores, manages, monitors and shares features for machine learning models. It also enables teams to easily collaborate and share features, reducing duplication of effort and promoting knowledge sharing. So it allows Data Science teams to focus on delivering business value by building high-quality ML models instead of wasting time on preparing training data.

What are the most popular Feature Stores available on the market?

 

Feathr

Feathr is a Feature Store that allows you to define transformations, with extract features from raw data and share them across teams and the whole company. It provides a simple and scalable architecture. Feathr developed LinkedIn 6 years ago, and is now available to everyone. Moreover, unified data transformation API works in batch, streaming and online environments.

Hopsworks

The Hopsworks Feature Store is a managed service offered by the Hopsworks platform.  It provides a centralized location to store and manage features, which can be used for training and serving ML models. It supports features versioning, features serving and provides integration with many ML frameworks.

Databricks Feature Store

The Databricks Feature Store allows organizations to manage and share the features needed for building machine learning models. This tool enables the centralization and standardization of features, simplifying the process of creating models and facilitating collaboration among teams. The Databricks Feature Store also provides feature versioning, data exploration, dependency management and integration with tools for automating the model creation process. The tool is available as part of the Databricks platform.

Feast

Feast is an open-source Feature Store for machine learning. It is designed to allow data engineers and data scientists to easily store, retrieve and serve machine learning features for training and serving ML models. Moreover, Feast supports feature ingestion from Stream Sources like Kafka and Kinesis as well as processing Batch data from e.g. BigQuery and Redshift.

Vertex AI

The Vertex AI Feature Store is part of the GCP Vertex AI platform, which helps Data Scientists build, train and serve ML models. It allows you to easily store and share machine learning features in one place, making it simpler to manage and reuse them across multiple ML projects. It provides features such as versioning, data lineage and data discovery to help with feature data management and governance.

SageMaker

SageMaker Feature Store is a cloud-based data management platform provided by Amazon Web Services (AWS). It allows users to store, transform and manage features in a centralized location. The feature store provides a single source of truth for features, enabling organizations to reuse and share features across multiple machine learning projects. It also allows for efficient feature engineering, enabling users to transform and enrich their data to optimize model performance. Overall, the SageMaker Feature Store helps organizations streamline their machine learning workflow and improve the accuracy and efficiency of their models.

Tecton

Tecton is a feature store that is designed to manage, store and serve machine learning features in a scalable and reliable way. It is a central repository for storing, managing and serving the raw data and derived features used to train and serve machine learning models. Tecton's platform provides an end-to-end solution for feature engineering, enabling Data Scientists to focus on building ML models, instead of worrying about designing processes related to feature ingestions.

Feature Store Comparison

feature stores 2023

Summary

In summary, this blog discusses the most popular feature stores from 2023, highlighting their key features and benefits. These feature stores are central platforms that store, manage and serve machine learning features for use in model training and prediction, helping organizations to build and deploy ML models faster and more effectively. As organizations increasingly adopt machine learning and data-driven decision making, feature stores will play a critical role in simplifying and optimizing the ML workflow.

Interested in ML and MLOps solutions? How to improve ML processes and scale project deliverability? Watch our MLOps demo and sign up for a free consultation.

MLOps
ML
Feature Store comparison
Feature Store
Vertex AI Feature Store
FEAST Feature Store
Databricks Feature Store
4 May 2023

Want more? Check our articles

getindata adam goscicki terraform cloud infrastructure notext
Tutorial

Terraform your Cloud Infrastructure

So, you have an existing infrastructure in the cloud and want to wrap it up as code in a new, shiny IaC style? Splendid! Oh… it’s spanning through two…

Read more
getindata transfer pipelines to modern gitlab cicd small
Tutorial

How we helped our client to transfer legacy pipeline to modern one using GitLab's CI/CD - Part 1

This blog series is based on a project delivered for one of our clients. We splited the content in three parts, you can find a table of content below…

Read more
getindata cover nifi lego notext
Tutorial

NiFi Ingestion Blog Series. PART I - Advantages and Pitfalls of Lego Driven Development

Apache NiFi, big data processing engine with graphical WebUI, was created to give non-programmers the ability to swiftly and codelessly create data…

Read more
maximizing personalization11
Tutorial

Maximizing Personalization: Real-Time Context and Persona Drive Better-Suited Products and Customer Experiences

Have you ever searched for something that isn't typical for you? Maybe you were looking for a gift for your grandmother on Amazon or wanted to listen…

Read more
getindata running machine learning platform pipelines kedro kubeflow airflow mariusz strzelecki
Tutorial

Running Machine Learning Pipelines with Kedro, Kubeflow and Airflow

One of the biggest challenges of today’s Machine Learning world is the lack of standardization when it comes to models training. We all know that data…

Read more
power of big data ii obszar roboczy 1 3x 100
Tutorial

Power of Big Data: Healthcare

Welcome to another Power of Big Data series post. In the series, we present the possibilities offered by solutions related to the management, analysis…

Read more

Contact us

Interested in our solutions?
Contact us!

Together, we will select the best Big Data solutions for your organization and build a project that will have a real impact on your organization.


What did you find most impressive about GetInData?

They did a very good job in finding people that fitted in Acast both technically as well as culturally.
Type the form or send a e-mail: hello@getindata.com
The administrator of your personal data is GetInData Poland Sp. z o.o. with its registered seat in Warsaw (02-508), 39/20 Pulawska St. Your data is processed for the purpose of provision of electronic services in accordance with the Terms & Conditions. For more information on personal data processing and your rights please see Privacy Policy.

By submitting this form, you agree to our Terms & Conditions and Privacy Policy