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Introducing Lightweight, Customizable ML Runtimes in Cloudera Machine Learning

With the complexity of data growing across the enterprise and emerging approaches to machine learning and AI use cases, data scientists and machine learning engineers have needed more versatile and efficient ways of enabling data access, faster processing, and better, more customizable resource management across their machine learning projects.

What's new in BigQuery ML: non-linear model types and model export

We launched BigQuery ML, an integrated part of Google Cloud’s BigQuery data warehouse, in 2018 as a SQL interface for training and using linear models. Many customers with a large amount of data in BigQuery started using BigQuery ML to remove the need for data ETL, since it brought ML directly to their stored data. Due to ease of explainability, linear models worked quite well for many of our customers.

8 key considerations for choosing an Embedded Analytics solution

Historically, analytics has not always been a priority feature for software vendors. Many applications typically are built with analytics bolted-on later, as standalone tools. But the changing needs of today’s business users has accelerated the importance of providing in-built ways to monitor and explore their data while they use your software.

Turbocharge Your Application With Contextual Analytics Webinar - Yellowfin BI

Innovate your application and create highly valuable analytic experiences for your end-users with contextual analytics. Contextual analytics, as the next phase of embedded, brings dashboards, automated analysis and analytics directly into your application’s core workflows delivering data directly within the user interface and within the transaction flow. By seamlessly blending analytics and actions, improve both your app’s core functionality and enable opportunities for exciting new analytical experiences for your users - and improve the value of your application.