Big Data News Hubb
Advertisement
  • Home
  • Big Data
  • News
  • Contact us
No Result
View All Result
  • Home
  • Big Data
  • News
  • Contact us
No Result
View All Result
Big Data News Hubb
No Result
View All Result
Home News

Teradata and Google Cloud Announce New Machine Learning Integration

admin by admin
May 8, 2023
in News


(Phonlamai Photo/Shutterstock)

A new integration for machine learning is available from Teradata and Google Cloud. Google Cloud’s Vertex AI platform is now generally available with Teradata VantageCloud and ClearScape analytics.

“With Teradata VantageCloud and ClearScape Analytics plus Vertex AI, organizations can move seamlessly from being AI experimenters to AI achievers,” Teradata said in a release.

Vertex AI is Google Cloud’s end-to-end machine learning platform introduced in 2021. Teradata says Vertex AI helps users take advantage of various cutting-edge algorithms to build high-quality AI models in less time and with minimal expertise. Teradata’s VantageCloud is the cloud version of the company’s long-standing data warehouse and comes in two editions: Enterprise, optimized for high-end production analytics workloads, and Lake, optimized for data science and exploratory analytics.

The Vertex AI MLOps cycle. (Source: Google Cloud)

ClearScape Analytics is a suite of in-database analytics and machine learning tools that can run on any Teradata environment and was designed to be used in conjunction with a data science notebook. ClearScape features MLOps capabilities to help data scientists automate the ML lifecycle, including capturing, training, deploying, and monitoring ML models in production.

The combination of these elements enables faster and more sophisticated AI models that can be scaled across an organization, according to Teradata. Customers using VantageCloud on Google Cloud can integrate disparate datasets from multiple environments, data lakes, and object stores to help streamline data preparation, while ClearScape Analytics can transform the data into reusable analytic datasets. These datasets can then be used to build and train ML models with Vertex AI. Vertex AI models can be operationalized at scale in VantageCloud to give customers direct, transparent, and real-time access to all their models, Teradata says.

“Our customers are investing in the power of AI to fuel their digital transformations and achieve tangible business outcomes that have a real-world impact on their businesses,” said Hillary Ashton, chief product officer at Teradata, in a release. “Our openness and scalability facilitate the operationalization of Vertex AI’s models across an organization and its mission-critical use cases – such as customer churn, fraud detection, predictive maintenance, and supply chain optimization. Customers are able to make bold business decisions, driven by data, that keep them ahead of the competition.”

“Vertex AI enables data scientists to build, deploy and scale machine learning models faster, with fully managed tools and services for use cases across industries. This capability, when combined with the vast and reliable analytics data sets prepared by Teradata, gives customers the ability to scale their AI/ML initiatives quickly and with confidence, speeding time to value,” said June Yang, VP, cloud AI and industry solutions at Google Cloud, in a release.

Teradata seems to be focused on bolstering its customers’ machine learning capabilities. The company also recently announced the general availability and integration of VantageCloud and ClearScape with the Microsoft Azure Machine Learning platform.

Shares in Teradata rose 6% on Monday after Wall Street analyst Howard Ma of Guggenheim Partners raised his rating on the company. Ma suggests that Teradata may be experiencing a positive turning point when it comes to customer retention. Though reports have said Teradata has been losing customers to other cloud competitors, Ma claims that recent conversations with Teradata partners may indicate an increased demand for staying with the company.

(Michael Vi/Shutterstock)

“What many thought was impossible may be starting to happen,” Ma told investment news outlet Seeking Alpha. “The complex workloads tied into core business logic are likely there to stay on Teradata in the near-and-mid-term, so the rate of decay in [the company’s] installed base will likely be slower going forward.”

Related Items:

The Cloud Is Great for Data, Except for Those Super High Costs

Teradata Unveils New Data Lake, Advanced Analytics Offerings

Google Cloud Overhauls AI with Vertex Launch



Source link

Previous Post

Home Theatre with Laser Projector: Enhancing Your Entertainment

Next Post

New scatter plot options in Amazon QuickSight to visualize your data

Next Post

New scatter plot options in Amazon QuickSight to visualize your data

Recommended

12 Times Faster Query Planning With Iceberg Manifest Caching in Impala

July 14, 2023

AI Empowers Microfinance: Revolutionizing Fraud Detection

June 2, 2023

SAP Datasphere is Here to Enable the Data Fabric of Our Lives

March 14, 2023

Don't miss it

News

Top 9 Mind Map Makers Online & Offline for Brainstorming

December 1, 2023
Big Data

Sam Altman returns as CEO, OpenAI has a new initial board

December 1, 2023
Big Data

Announcing General Availability of Model Registry

November 30, 2023
Big Data

Sophos Anticipates AI-Based Attack Techniques and Prepares Detections

November 30, 2023
Big Data

Automating Governance of PHI Data in Healthcare

November 30, 2023
News

How Eightfold AI implemented metadata security in a multi-tenant data analytics environment with Amazon Redshift

November 30, 2023
big-data-footer-white

© Big Data News Hubb All rights reserved.

Use of these names, logos, and brands does not imply endorsement unless specified. By using this site, you agree to the Privacy Policy and Terms & Conditions.

Navigate Site

  • Home
  • Big Data
  • News
  • Contact us

Newsletter Sign Up

No Result
View All Result
  • Home
  • Big Data
  • News
  • Contact us

© 2022 Big Data News Hubb All rights reserved.