D-Wave Launches New Hybrid Solver Plug-In for Feature Selection, A Key Component of Machine Learning
D-Wave Quantum has introduced a new hybrid solver plug-in for feature selection, enhancing machine learning workflows. This tool integrates with scikit-learn, allowing developers to easily implement quantum technology in their ML projects. The launch addresses the growing demand for AI and ML technologies, with 78% of organizations noting their significant impact on business outcomes, according to IDC. The plug-in simplifies the feature selection process, crucial for improving ML model training. Developers can start using the plug-in for free via the Leap quantum cloud service. D-Wave aims to drive faster business value through quantum solutions.
- Launch of a new hybrid solver plug-in for feature selection to enhance ML workflows.
- The plug-in integrates seamlessly with scikit-learn, facilitating easier adoption of quantum technology in ML applications.
- Addresses growing demand for AI/ML solutions, with 78% of organizations recognizing their business impact.
- None.
New tool applies power of quantum hybrid to further accelerate ML workflows
The launch comes at a time when companies are rapidly turning to technologies like AI and ML to navigate increasing complexity in the enterprise. According to IDC,
“Emerging AI/ML technology for feature discovery and reuse can facilitate faster time-to-business value, synthesizing information across the enterprise,” said
The new Ocean plug-in makes it easier to use D-Wave’s hybrid solvers for the feature selection piece of ML workflows. Feature selection – a key building block of machine learning – is the problem of determining a small set of the most representative characteristics to improve model training and performance in ML. With the new plug-in, ML developers need not be experts in optimization or hybrid solving to get the business and technical benefits of both. Developers creating feature selection applications can build a pipeline with scikit-learn and then embed D-Wave’s hybrid solvers into this workflow more easily and efficiently.
“We're hearing from customers that the combination of quantum hybrid solutions with feature selection in AI/ML model training is important for accelerating business impact,” said
By abstracting away the optimization formulations, the new plug-in helps developers to easily incorporate feature selection tools with less required development time or ramp up and faster time-to-value. Regardless of their familiarity with quantum technology, developers can get started today by signing up for the Leap™ quantum cloud service for free, installing the plug-in and viewing the demo and examples. Those seeking a more collaborative approach and assistance with building a production application can reach out to D-Wave directly and also explore the feature selection offering in
For more information about using the power of hybrid quantum in feature selection and machine learning workflows, register for our upcoming webinar on
About
D-Wave is a leader in the development and delivery of quantum computing systems, software, and services, and is the world’s first commercial supplier of quantum computers—and the only company building both annealing quantum computers and gate-model quantum computers. Our mission is to unlock the power of quantum computing today to benefit business and society. We do this by delivering customer value with practical quantum applications for problems as diverse as logistics, artificial intelligence, materials sciences, drug discovery, scheduling, cybersecurity, fault detection, and financial modeling. D-Wave’s technology is being used by some of the world’s most advanced organizations, including
1 IDC, Emerging AI/ML Feature Store Technology Bolsters Enterprise Intelligence Initiatives, Doc. #US50007823,
View source version on businesswire.com: https://www.businesswire.com/news/home/20230320005035/en/
Investor Contact:
ir@dwavesys.com
Media Contact:
AxiCom
media@dwavesys.com
Source:
FAQ
What is the new tool introduced by D-Wave Quantum Inc.?
How does the D-Wave plug-in improve machine learning processes?
What integration does the new hybrid solver plug-in have?
What percentage of organizations see significant impact from AI-driven projects?