MLOps Live

Join our webinar on Improving LLM Accuracy & Performance w/ Databricks - Tuesday 30th of April 2024 - 12 noon EST

Iguazio Launches the First Integrated Feature Store within its Data Science Platform to Accelerate Deployment of AI in Any Cloud Environment

Iguazio Launches the First Integrated Feature Store within its Data Science Platform to Accelerate Deployment of AI in Any Cloud Environment

  • The first production-ready integrated solution for enterprises to catalogue, store and share features centrally, and use them to develop, deploy and manage AI applications across hybrid multi-cloud environments
  • Iguazio’s feature store tackles one of the greatest challenges in machine learning operations (MLOps) today - feature engineering
  • The feature store is a key component in Iguazio’s data science platform, which is used by customers such as Payoneer, Quadient and Tulipan to deploy AI faster, and has just been selected by the Sheba Medical Center to deliver real-time AI for COVID-19 patient treatment optimization
  • Joint solutions with strategic partners Tredence, NetApp, MongoDB and others are already enabled by Iguazio’s feature store, offering reproducible real-time ML pipelines
Iguazio Founders left to right: Yaron Haviv, Yaron Segev, Orit Nissan-Messing, Asaf Somekh

NEW YORK, NY, December 16, 2020 --Iguazio, the Data Science Platform built for production and real-time machine learning (ML) applications, today announced that it has launched the first production-ready integrated feature store. The feature store, which sits at the heart of its data science platform, enables enterprises to catalogue, store and share features for development and deployment of AI in hybrid multi-cloud environments and is built to handle real-time use cases.

According to Gartner, one of the top barriers to AI implementation is the “complexity of AI solution(s) integrating with existing infrastructure”[1]. At the core of machine learning is the data, and operationalizing machine learning (MLOps) requires processing data at scale, building model-serving pipelines, and monitoring models for accuracy and drift. This is a long and resource-intensive effort.

Tech giants like Netflix, Twitter and Uber have already understood the inefficiency in this process and built their own feature stores to standardize the use of features across the organization and create a more efficient workflow. Iguazio is now bringing this capability to all enterprises, as a part of its platform.

“For companies that don’t have hundreds of data scientists and data engineers, building a feature store from scratch, in-house, is not feasible,” said Asaf Somekh, Co-Founder and CEO of Iguazio. “We wanted to bring this functionality to our customers, and provide them with an off-the-shelf solution for feature engineering across training, serving and monitoring in hybrid environments.”

Uniquely, the Iguazio unified online and offline feature store, integrated within its data science platform, provides next-level automation of model monitoring and drift detection, enables training at scale, and running continuous integration and continuous delivery (CI/CD) of machine learning (ML). It plugs seamlessly into the data ingestion, model training, model serving, and model monitoring components of the platform. The feature store is built on Iguazio’s open source MLOps framework, MLRun, enabling contributors to add data sources and contribute additional functionality.

Iguazio’s platform is used by customers such as Payoneer, Quadient and Tulipan for various use cases such as fraud prediction and real-time recommendations. Earlier today, Iguazio also announced that it has entered into a strategic agreement with the Sheba Medical Center, the largest medical facility in Israel and the Middle East and ranked amongst the Top 10 Hospitals in the World by Newsweek magazine, to facilitate Sheba’s transformation with AI.  Clinical and logistical use cases include predicting and mitigating COVID-19 patient deterioration and optimizing patient journey with smart mobility.

“Using Iguazio, we are revolutionizing the way we use data, by unifying real-time and historic data from different sources and rapidly deploying and monitoring complex AI models to improve patient outcomes and the City of Health’s efficiency”, said Nathalie Bloch, MD, Head of Big Data & AI at Sheba Medical Center’s ARC innovation complex

The solution has been embraced by Iguazio’s strategic partners, including Tredence, NetApp and MongoDB, and regarded as an important accelerator to making the MLOps process of developing and deploying AI much simpler.

Boris Bialek, Global Head of Enterprise Modernization at MongoDB commented: “With Iguazio’s feature store, MongoDB Atlas, our fully managed cloud database, can easily store features that are ready to use in machine and deep learning, making MLOps a reality. This refines the experience for both our advanced users, who are scaling AI, and those just starting out on their AI journey to innovate on top of an already powerful database.”

Iguazio’s feature store is now available for all customers of its data science platform.

About Iguazio

The Iguazio Data Science Platform enables enterprises to develop, deploy and manage AI applications at scale. With Iguazio, enterprises can run AI models in real time, deploy them anywhere (multi-cloud, on-prem or edge), and bring to life their most ambitious AI-driven strategies. Enterprises spanning a wide range of verticals, including financial services, manufacturing, smart mobility, telecoms and ad-tech use Iguazio to solve the complexities of MLOps and create business impact through a multitude of real-time use cases such as fraud prevention, predictive maintenance and real-time recommendations. Iguazio brings data science to life. Find out more on www.iguazio.com.

Press Contact

Rebecca Geller

press@iguazio.com


Quote Sheet

“At Tredence, we serve leading Fortune 500 clients, who always expect rapid business value. Iguazio’s MLOps solution and built-in feature store enables the rapid development, deployment and management of AI applications across the enterprise, providing a competitive edge to clients looking to deploy innovative AI solutions in today’s cutthroat market”.

- Sumit Mehra, CTP and CO-Founder at Tredence

“Joint customers of NetApp and Iguazio manage data at scale and run increasingly complex algorithms on that data. By making critical features available within their data science platform, adding ‘smart data’ with NetApp AI is simple. With easy access to features that are ready for use across the enterprise on any AI project, customers can develop and deploy these projects efficiently and accurately.”

- Hoseb Dermanilian, Head of Global AI and Analytics Business Development at NetApp

“With Iguazio’s feature store, MongoDB Atlas, our fully managed cloud database, can easily store features that are ready to use in machine and deep learning, making MLOps a reality. This refines the experience for both our advanced users, who are scaling AI, and those just starting out on their AI journey to innovate on top of an already powerful database.”

- Boris Bialek, Global Head of Enterprise Modernization at MongoDB

“At Tulipan, we use novel techniques to convert information into knowledge, taking a holistic approach to data. That’s why we were so happy when we came across Iguazio - Iguazio’s data science platform enables the unification of data from all types and sources, along with the development and rapid deployment of AI applications across use cases and environments. Now, Iguazio’s integrated feature store takes real-time data engineering to the next level of automation”

- Santiago Gutiérrez, CEO at Tulipan

“Using Iguazio, we are revolutionizing the way we use data, by unifying real-time and historic data from different sources and rapidly deploying and monitoring complex AI models to improve patient outcomes and the City of Health’s efficiency”

-Nathalie Bloch, MD, Head of Big Data & AI at Sheba Medical Center’s ARC innovation complex 

1]Gartner, “Innovation Insight for ModelOps”, Farhan Choudhary, Shubhangi Vashisth, Arun Chandrasekaran, Erick Brethenoux, 6 August 2020.