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March 11.2025
3 Minutes Read

How Synopsys Accelerates Software-Defined Product Development with Virtualizer Native Execution on Arm

Software-defined product development lifecycle diagram with pointing hand

Revolutionizing Software-Defined Product Development

In March 2025, Synopsys, a leader in electronic design automation, introduced its groundbreaking Virtualizer Native Execution on Arm hardware. This innovation is set to transform the way developers engage with software-defined products, particularly in key industries such as automotive, high-performance computing (HPC), and the Internet of Things (IoT). By leveraging Arm's architecture, which is prominent in both server and edge device environments, Synopsys aims to accelerate the product development lifecycle.

Understanding Software-Defined Products and Their Growing Importance

The rise of software-defined products marks a significant shift in the tech landscape. As Ravi Subramanian, Chief Product Management Officer at Synopsys, explains, the focus has evolved from hardware-centric designs to a more integrated approach that encompasses both hardware and software. This is particularly true in vehicles and smart devices where functionality increasingly relies on sophisticated software. The Virtualizer Native Execution solution offers developers the tools they need to navigate this shift effectively, enhancing agility and innovation.

Boosting Productivity with Native Execution Capabilities

One of the standout features of the Virtualizer Native Execution technology is its ability to run software binaries directly on Arm processor cores. This capability eliminates traditional translation overhead, resulting in significantly enhanced simulation speeds. Developers are reporting faster validation cycles and earlier debugging opportunities, which ultimately can lead to quicker time-to-market for new products. This performance leap is crucial as companies strive to keep pace with the growing complexity of software in their products.

Integration into CI/CD Methodologies: A Game Changer for Developers

Emphasizing the importance of seamless integration into existing workflows, Synopsys's innovative solution supports continuous integration and continuous deployment (CI/CD) practices. This means that developers can incorporate virtual prototyping into their automated testing pipelines, allowing for a more streamlined process in delivering high-quality software. Suraj Gajendra from Arm highlights how this synergy between hardware and software development leads to earlier integration opportunities, ultimately yielding time and cost savings for developers working in fast-paced environments.

A Comprehensive Ecosystem to Support Development

Having built on two decades of experience in virtual prototyping, Synopsys provides a comprehensive ecosystem that supports existing model libraries and standard frameworks, such as Synopsys Interface IP. The system is designed with flexibility in mind, compatible with various Arm-based infrastructures including AWS, Google Cloud, and Microsoft. This adaptability allows teams to optimize computing resources according to their workflows, balancing performance, power consumption, and costs dynamically.

The Future of Software Development: Emphasizing Digital Twins and Hybrid Approaches

As industries continue to push for more complexity and intelligence in their systems, the integration of hardware-assisted verification products, such as Synopsys's hardware-assisted verification (HAV) systems, become ever more essential. By establishing electronic digital twins through the Virtualizer Native Execution, developers can validate their systems comprehensively and earlier in the development process. This allows businesses to meet market demands without compromising on quality or innovation.

Conclusion: Why Embracing this Technology is Essential

The introduction of Synopsys Virtualizer Native Execution on Arm marks a pivotal development in software-defined product workflows. As companies face increasing pressure to deliver sophisticated solutions rapidly, this tool is critical for achieving higher productivity with lower risks. By adopting this technology, developers can navigate the evolving landscape of software complexity with confidence, setting the stage for future innovations in edge and IoT devices.

To explore how this technology can enhance your development process, visit Synopsys.com/virtualizer.

Agile-DevOps Synergy

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