UltraSoC embedded analytics selected to support Wave Computing's TritonAI 64 IP platform
System-on-chip monitoring, testing and analytics platform supports fast development of intelligent heterogeneous IP designs
CAMBRIDGE, UK and DAC 2019, Las Vegas – June 3, 2019 -- UltraSoC today announced that Wave Computing has chosen the company’s embedded analytics and heterogeneous debug technology to test its new TritonAI 64 scalable IP platform for intelligent SoCs (systems on chip). Wave Computing’s use of UltraSoC’s platform will also serve as a reference design for customers needing to validate and debug heterogeneous IP designs.
Wave Computing is partnering with UltraSoC to create a reference architecture for testing, validating and reporting on the performance of SoCs based on the TritonAI 64 Platform. The platform contains three different types of processing engines—WaveFlow™, WaveTensor™ and WaveRT™ – all based on a single core, the MIPS 32 CPU. UltraSoC’s analytics and debug platform is perfectly suited to validate this type of system, given its ability to monitor individual processors and report on potential performance or feature issues that may be present in the wider SoC.
UltraSoC offers a complete integrated development environment that combines comprehensive debug, run control, and performance tuning for SoC designers. Having the ability to validate designs in this fashion is especially useful for demanding, high-speed security and public safety use cases leveraging AI, machine learning, automotive or enterprise applications, such as sporting stadiums, airports and train stations.
The expense of verifying and validating an SoC is a prime concern for semiconductor companies, particularly when the device is complex. In particular, over the past few years, chip designers have transitioned from multicore to many-core products, and even heterogeneous multicore SoCs, which integrate many different core processors. Designing complex SoCs by mixing and matching different semiconductor IP cores is hard enough, but testing and validating those designs can be even more difficult. Most semiconductor companies face challenges surrounding the expense and time it takes to validate these increasingly complex modern designs.
Steve Brightfield, senior director of Strategic Marketing for AI and CPU IP licensing at Wave Computing, said: “Given the scalable nature of our new TritonAI 64 platform, it’s essential customers can confidently test the multi-threaded, heterogeneous processor execution of the TritonAI 64 platform for correct operation within their wider system. This is especially important in SoC products that employ additional processor architectures or custom logic. UltraSoC’s embedded analytics technology provides a unified view of where in the chip updates need to be made in order to debug and optimize the system. We are positive UltraSoC’s embedded analytics technology will help our customers get even more out of the TritonAI platform for use in any application.”
Embedded SoC technologies present a challenge because of their complex designs and because it is often impossible to view or easily access many of the system components. UltraSoC is committed to overcoming the challenges of SoC designs with embedded monitoring, analytics and debug technology that provides insights into the system-level operation of any SoC. This ‘embedded intelligence’ enables developers to tackle issues related to complex and heterogeneous designs, where different CPU architectures are used within a single system. UltraSoC’s technology helps significantly ease system bring-up and debug functions, allowing customers to cut time-to-debug by up to 25 percent.
“We are excited Wave Computing selected our technology for use in its new TritonAI 64 platform, which has enormous potential for bringing AI to thousands of edge applications,” said Rupert Baines, CEO at UltraSoC. “As more intelligent technologies come to market with open CPU architectures, often combined with heterogeneous accelerators and other cores, it is important for developers to be able to see how all design elements interact. UltraSoC’s embedded analytics technology is designed from the ground up to be suitable for monitoring and reporting on both heterogeneous and homogeneous CPU architectures.”
For more information on Wave Computing’s TritonAI 64 platform and complete portfolio of IP and systems products visit www.wavecomp.ai. Additional details on UltraSoC’s embedded analytics and heterogeneous debug technology can be found at https://www.ultrasoc.com/.
About UltraSoC
UltraSoC is a pioneering developer of analytics and monitoring technology at the heart of the systems-on-chip (SoCs) that power today’s electronic products. The company’s embedded analytics technology allows product designers to add advanced cybersecurity, functional safety and performance tuning features; and it helps resolve critical issues such as increasing system complexity and ever-decreasing time-to-market. UltraSoC’s technology is delivered as semiconductor IP and software to customers in the consumer electronics, computing and communications industries. For more information visit www.ultrasoc.com
|
Related News
- SimpleMachines selects UltraSoC embedded analytics to support next-generation compute platform
- Megh Computing Selected by 5G Open Innovation Lab to Help Drive Early Adoption and Innovation of 5G Technology
- UltraSoC embedded analytics selected by Kraftway for solid state disk controller products
- UltraSoC embedded analytics and Imperas virtual platforms combine to enhance multicore development and debug
- UltraSoC and Percepio partner to offer first complete embedded analytics platform for real-time systems
Breaking News
- Jury is out in the Arm vs Qualcomm trial
- Ceva Seeks To Exploit Synergies in Portfolio with Nano NPU
- Synopsys Responds to U.K. Competition and Markets Authority's Phase 1 Announcement Regarding Ansys Acquisition
- Alphawave Semi Scales UCIe™ to 64 Gbps Enabling >20 Tbps/mm Bandwidth Density for Die-to-Die Chiplet Connectivity
- RaiderChip Hardware NPU adds Falcon-3 LLM to its supported AI models
Most Popular
E-mail This Article | Printer-Friendly Page |