RapidMiner announced the release of RapidMiner 8, a significant upgrade to the architecture of the RapidMiner data science platform.
RapidMiner 8.0 improves the reliability and scalability of the RapidMiner platform, enabling the production, deployment, and management of enterprise-scale data science projects. At the core of RapidMiner 8 is a new architecture based on containers and microservices.
Improvements include:
- Horizontal scalability. The new distributed architecture in RapidMiner Server enables deployment across any number of machines for execution of data and machine learning processes. The allows enterprises to fluidly scale as their data science teams grow and more models are put into production.
- Improved stability. RapidMiner Server now supports containerized job executions. Processes are sandboxed, and won’t affect the execution of other processes to create a highly stable environment.
- New user interface. RapidMiner Server introduces a new user interface designed to improve user productivity for common tasks.
- New and improved machine learning algorithms. RapidMiner Studio enhancements include regression trees, extremely randomized trees, a new fuzzy operator search, and improved operator documentation.
“RapidMiner 8 is a massive milestone in the evolution of RapidMiner as an enterprise-scale data science platform,” said Lars Bauerle, CPO at RapidMiner. “RapidMiner powers mission-critical predictive models for global enterprises, and we want to ensure that our largest customers can deploy RapidMiner in a highly scalable, reliable, and secure environment. RapidMiner 8 is just the beginning of an aggressive roadmap we have planned for our users.”
The Latest
In MEAN TIME TO INSIGHT Episode 11, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses Secure Access Service Edge (SASE) ...
On average, only 48% of digital initiatives enterprise-wide meet or exceed their business outcome targets according to Gartner's annual global survey of CIOs and technology executives ...
Artificial intelligence (AI) is rapidly reshaping industries around the world. From optimizing business processes to unlocking new levels of innovation, AI is a critical driver of success for modern enterprises. As a result, business leaders — from DevOps engineers to CTOs — are under pressure to incorporate AI into their workflows to stay competitive. But the question isn't whether AI should be adopted — it's how ...
The mobile app industry continues to grow in size, complexity, and competition. Also not slowing down? Consumer expectations are rising exponentially along with the use of mobile apps. To meet these expectations, mobile teams need to take a comprehensive, holistic approach to their app experience ...
Users have become digital hoarders, saving everything they handle, including outdated reports, duplicate files and irrelevant documents that make it difficult to find critical information, slowing down systems and productivity. In digital terms, they have simply shoved the mess off their desks and into the virtual storage bins ...
Today we could be witnessing the dawn of a new age in software development, transformed by Artificial Intelligence (AI). But is AI a gateway or a precipice? Is AI in software development transformative, just the latest helpful tool, or a bunch of hype? To help with this assessment, DEVOPSdigest invited experts across the industry to comment on how AI can support the SDLC. In this epic multi-part series to be posted over the next several weeks, DEVOPSdigest will explore the advantages and disadvantages; the current state of maturity and adoption; and how AI will impact the processes, the developers, and the future of software development ...
Half of all employees are using Shadow AI (i.e. non-company issued AI tools), according to a new report by Software AG ...
On their digital transformation journey, companies are migrating more workloads to the cloud, which can incur higher costs during the process due to the higher volume of cloud resources needed ... Here are four critical components of a cloud governance framework that can help keep cloud costs under control ...
Operational resilience is an organization's ability to predict, respond to, and prevent unplanned work to drive reliable customer experiences and protect revenue. This doesn't just apply to downtime; it also covers service degradation due to latency or other factors. But make no mistake — when things go sideways, the bottom line and the customer are impacted ...
Organizations continue to struggle to generate business value with AI. Despite increased investments in AI, only 34% of AI professionals feel fully equipped with the tools necessary to meet their organization's AI goals, according to The Unmet AI Needs Surveywas conducted by DataRobot ...