SiFive and CEVA Partner to Bring Machine Learning Processors to Mainstream Markets – Design and Reuse
Joint silicon development through SiFive's DesignShare Program combines IP and design strengths of both companies to develop Edge AI SoCs for a range of high-volume end markets including smart home, automotive, robotics, security, augmented reality, industrial and IoT
SAN MATEO and MOUNTAIN VIEW, Calif., Jan. 7, 2020 -- SiFive, Inc., the leading provider of commercial RISC-V processor IP and silicon solutions and CEVA, Inc. (NASDAQ: CEVA), the leading licensor of wireless connectivity and smart sensing technologies, today announced a new partnership to enable the design and creation of ultra-low-power domain-specific Edge AI processors for a range of high-volume end markets. The partnership, as part of SiFive's DesignShare program, is centered around RISC-V CPUs, CEVA's DSP cores, AI processors and software, which will be designed into SoCs targeting an array of end markets where on-device neural networks inferencing supporting imaging, computer vision, speech recognition and sensor fusion applications is required. Initial end markets include smart home, automotive, robotics, security and surveillance, augmented reality, industrial and IoT.
Machine Learning Processing at the Edge
Domain-specific SoCs which can handle machine learning processing on-device are set to become mainstream, as the processing workloads of devices increasingly includes a mix of traditional software and efficient deep neural networks to maximize performance, battery life and to add new intelligent features. Cloud-based AI inference is not suitable for many of these devices due to security, privacy and latency concerns. SiFive and CEVA are directly addressing these challenges through the development of a range of domain-specific scalable edge AI processor designs, with the optimal balance of processing, power efficiency and cost.
The Edge AI SoCs are supported by CEVA's award-winning CDNN Deep Neural Network machine learning software compiler that creates fully-optimized runtime software for the CEVA-XM vision processors, CEVA-BX audio DSPs and NeuPro AI processors. Targeted for mass-market embedded devices, CDNN incorporates a broad range of network optimizations, advanced quantization algorithms, data flow management and fully-optimized compute CNN and RNN libraries into a holistic solution that enables cloud-trained AI models to be deployed on edge devices for inference processing. CEVA will also supply a full development platform for partners and developers based on the CEVA-XM and NeuPro architectures to enable the development of deep learning applications using the CDNN, targeting any advanced network, as well as DSP tools and libraries for audio and voice pre- and post-processing workloads.
SiFive DesignShare Program
The SiFive DesignShare IP program offers a streamlined process for companies seeking to partner with leading vendors to provide pre-integrated premium Silicon IP for bringing new SoCs to market. As part of SiFive's business model to license IP when ready for mass production, the flexibility and choice of the DesignShare IP program reduces the complexities of contract negotiation and licensing agreements to enable faster time to market through simpler prototyping, no legal red tape, and no upfront payment.
"CEVA's partnership with SiFive enables the creation of Edge AI SoCs that can be quickly and expertly tailored to the workloads, while also retaining the flexibility to support new innovations in machine learning," said Issachar Ohana, Executive Vice President, Worldwide Sales at CEVA. "Our market leading DSPs and AI processors, coupled with the CDNN machine learning software compiler, allow these AI SoCs to simplify the deployment of cloud-trained AI models in intelligent devices and provides a compelling offering for anyone looking to leverage the power of AI at the edge."
"Enabling future-proof, technology-leading processor designs is a key step in SiFive's mission to unlock technology roadmaps," said Dr. Naveed Sherwani, president and CEO, SiFive. "The rapid evolution of AI models combined with the requirements for low power, low latency, and high-performance demand a flexible and scalable approach to IP and SoC design that our joint CEVA / SiFive portfolio is superbly positioned to provide. The result is shorter time-to-market, while lowering the entry barriers for device manufacturers to create powerful, differentiated products."
Availability
SiFive's DesignShare program, including CEVA-BX Audio DSPs, CEVA-XM Vision DSPs and NeuPro AI processors, is available now. Visit http://www.sifive.com/designshare for more information.
About SiFive
SiFive is on a mission to free semiconductor roadmaps and declare silicon independence from the constraints of legacy ISAs and fragmented solutions. As the leading provider of market-ready processor core IP and silicon solutions based on the free and open RISC-V instruction set architecture SiFive helps SoC designers reduce time-to-market and realize cost savings with customized, open-architecture processor cores, and democratizes access to optimized silicon by enabling system designers in all markets to build customized RISC-V based semiconductors. Founded by the inventors of RISC-V, SiFive has 16 design centers worldwide, and has backing from Sutter Hill Ventures, Qualcomm Ventures, Spark Capital, Osage University Partners, Chengwei, Huami, SK Hynix, Intel Capital, and Western Digital. For more information, please visit http://www.sifive.com.
About CEVA, Inc.
CEVA is the leading licensor of wireless connectivity and smart sensing technologies. We offer Digital Signal Processors, AI processors, wireless platforms and complementary software for sensor fusion, image enhancement, computer vision, voice input and artificial intelligence, all of which are key enabling technologies for a smarter, connected world. We partner with semiconductor companies and OEMs worldwide to create power-efficient, intelligent and connected devices for a range of end markets, including mobile, consumer, automotive, robotics, industrial and IoT. Our ultra-low-power IPs include comprehensive DSP-based platforms for 5G baseband processing in mobile and infrastructure, advanced imaging and computer vision for any camera-enabled device and audio/voice/speech and ultra-low power always-on/sensing applications for multiple IoT markets. For sensor fusion, our Hillcrest Labs sensor processing technologies provide a broad range of sensor fusion software and IMU solutions for AR/VR, robotics, remote controls, and IoT. For artificial intelligence, we offer a family of AI processors capable of handling the complete gamut of neural network workloads, on-device. For wireless IoT, we offer the industry's most widely adopted IPs for Bluetooth (low energy and dual mode), Wi-Fi 4/5/6 (802.11n/ac/ax) and NB-IoT. Visit us at http://www.ceva-dsp.com
Read the original:
SiFive and CEVA Partner to Bring Machine Learning Processors to Mainstream Markets - Design and Reuse
- Muna Al-Khaifi: Detection of Breast Cancer Using Machine Learning and Explainable AI - Oncodaily - October 13th, 2025 [October 13th, 2025]
- Expedia Group Unveils Innovative AI and Machine Learning Solutions to Transform Partner Travel Experiences - Travel And Tour World - October 13th, 2025 [October 13th, 2025]
- Machine Learning-Guided Prediction of Formulation Performance in Inhalable CiprofloxacinBile Acid Dispersions with Antimicrobial and Toxicity... - October 13th, 2025 [October 13th, 2025]
- Machine Learning and BIG DATA workshop planned Oct. 14-15 - West Virginia University - October 11th, 2025 [October 11th, 2025]
- How Google enables third-party circularity by increasing recycling rates with Machine Learning - The World Business Council for Sustainable... - October 11th, 2025 [October 11th, 2025]
- Integrating Artificial Intelligence and Machine Learning in Hydroclimatic Research - A Promising Step Forward - University of Northern British... - October 11th, 2025 [October 11th, 2025]
- Semi-automatic detection of anteriorly displaced temporomandibular joint discs in magnetic resonance images using machine learning - BMC Oral Health - October 11th, 2025 [October 11th, 2025]
- AI and Machine Learning - Partnership to bring infrastructure intelligence to US public sector - Smart Cities World - October 11th, 2025 [October 11th, 2025]
- Between rain and snow, machine learning finds nine precipitation types - Phys.org - October 9th, 2025 [October 9th, 2025]
- Between rain and snow, machine learning finds 9 precipitation types - Michigan Engineering News - October 9th, 2025 [October 9th, 2025]
- Machine learning optimizes nanoparticle design for drug delivery to the brain - Physics World - October 9th, 2025 [October 9th, 2025]
- Development and validation of a machine learning-based prediction model for prolonged length of stay after laparoscopic gastrointestinal surgery: a... - October 9th, 2025 [October 9th, 2025]
- G Sachs: Stock Mkt Not in Bubble Yet; Machine Learning/ AI Expected to Spawn New Wave of Superstars - AASTOCKS.com - October 9th, 2025 [October 9th, 2025]
- AI and Machine Learning - See.Sense works with City of Sydney to develop AI dashboard - Smart Cities World - October 9th, 2025 [October 9th, 2025]
- Machine Learning Used to Predict Live Birth Outcomes in Fresh Embryo Transfers - geneonline.com - October 9th, 2025 [October 9th, 2025]
- RIT researchers use machine learning to better understand the pathways of disease - Rochester Institute of Technology - October 7th, 2025 [October 7th, 2025]
- Leveraging machine learning to predict mosquito bed net utilization among women of reproductive age in sub-Saharan Africa - Malaria Journal - October 7th, 2025 [October 7th, 2025]
- Machine learning-based radiomics using magnetic resonance images for prediction of clinical complete response to neoadjuvant chemotherapy in patients... - October 7th, 2025 [October 7th, 2025]
- Machine Learning Self Driving Cars: The Technology Driving the Future of Mobility - SpeedwayMedia.com - October 7th, 2025 [October 7th, 2025]
- Investigating the relationship between blood factors and HDL-C levels in the bloodstream using machine learning methods - Journal of Health,... - October 7th, 2025 [October 7th, 2025]
- AI in the fast lane: F1 teams Alpine, Audi use machine learning as force multiplier - The Business Times - October 7th, 2025 [October 7th, 2025]
- Future Scope of Machine Learning in Healthcare Market Set to Witness Significant Growth by 2025-2032 - openPR.com - October 7th, 2025 [October 7th, 2025]
- AI and Machine Learning - AI readiness and adoption toolkit launched - Smart Cities World - October 4th, 2025 [October 4th, 2025]
- Machine Learning Model UmamiPredict Developed to Forecast Savory Taste of Molecules and Peptides - geneonline.com - October 4th, 2025 [October 4th, 2025]
- Machine Learning Boosts Crop Yield Predictions in Senegal - Bioengineer.org - October 4th, 2025 [October 4th, 2025]
- Machine learning-driven stability analysis of eco-friendly superhydrophobic graphene-based coatings on copper substrate - Nature - October 4th, 2025 [October 4th, 2025]
- Integrated machine learning analysis of proteomic and transcriptomic data identifies healing associated targets in diabetic wound repair - Nature - October 4th, 2025 [October 4th, 2025]
- Development and evaluation of a machine learning prediction model for short-term mortality in patients with diabetes or hyperglycemia at emergency... - October 4th, 2025 [October 4th, 2025]
- Fast and robust mixed gas identification and recognition using tree-based machine learning and sensor array response - Nature - October 4th, 2025 [October 4th, 2025]
- Estimation of sexual dimorphism of adult human mandibles of South Indian origin using non-metric parameters and machine learning classification... - October 4th, 2025 [October 4th, 2025]
- Cloud-Based Machine Learning Platforms Technologies Market Growth and Future Prospects - Precedence Research - October 4th, 2025 [October 4th, 2025]
- Machine Learning Framework Developed to Optimize Phosphorus Recovery in Hydrothermal Treatment of Livestock Manure - geneonline.com - October 4th, 2025 [October 4th, 2025]
- Unifying machine learning and interpolation theory via interpolating neural networks - Nature - October 2nd, 2025 [October 2nd, 2025]
- Anna: an open-source platform for real-time integration of machine learning classifiers with veterinary electronic health records - BMC Veterinary... - October 2nd, 2025 [October 2nd, 2025]
- The Future of Liver Health: Can Human Models and Machine Learning Reduce Disease Rates? - Technology Networks - October 2nd, 2025 [October 2nd, 2025]
- Machine Learning Radiomics Predicts Pancreatic Cancer Invasion - Bioengineer.org - October 2nd, 2025 [October 2nd, 2025]
- Next-generation COVID-19 detection using a metasurface biosensor with machine learning-enhanced refractive index sensing - Nature - October 2nd, 2025 [October 2nd, 2025]
- Machine learning-based models for screening of anemia and leukemia using features of complete blood count reports - Nature - October 2nd, 2025 [October 2nd, 2025]
- Estimating the peak age of chess players through statistical and machine learning techniques - Nature - October 2nd, 2025 [October 2nd, 2025]
- Optimizing water quality index using machine learning: a six-year comparative study in riverine and reservoir systems - Nature - October 2nd, 2025 [October 2nd, 2025]
- Physics-informed machine learning-based real-time long-horizon temperature fields prediction in metallic additive manufacturing - Nature - October 2nd, 2025 [October 2nd, 2025]
- The Silicon Revolution: How AI and Machine Learning Are Forging the Future of Semiconductor Manufacturing - FinancialContent - October 2nd, 2025 [October 2nd, 2025]
- Machine learning model for differentiating Pneumocystis jirovecii pneumonia from colonization and analyzing mortality risk in non-HIV patients using... - October 2nd, 2025 [October 2nd, 2025]
- Radiomics and Machine Learning Applied to CECT Scans Show Potential in Predicting Perineural Invasion in Pancreatic Cancer - geneonline.com - October 2nd, 2025 [October 2nd, 2025]
- Machine learning and response surface optimization to enhance diesel engine performance using milk scum biodiesel with alumina nanoparticles - Nature - October 2nd, 2025 [October 2nd, 2025]
- Landmark Patent Appeal Decision Strengthens Protection for AI and Machine Learning Innovations - The National Law Review - October 2nd, 2025 [October 2nd, 2025]
- Machine learning researchers and industry leaders gathering at Santa Clara University - Stories - News & Events - Santa Clara University - September 30th, 2025 [September 30th, 2025]
- Building better batteries with amorphous materials and machine learning - Tech Xplore - September 30th, 2025 [September 30th, 2025]
- Machine Learning-Supported Fragment Hit Expansion in Absence of X-Ray Structures - Evotec - September 30th, 2025 [September 30th, 2025]
- Machine learning model predicts which radiotherapy patients are most vulnerable to adverse side effects - Health Imaging - September 30th, 2025 [September 30th, 2025]
- How AI and Machine Learning Are Revolutionizing Laser Welding - Downbeach - September 30th, 2025 [September 30th, 2025]
- What if A.I. Doesnt Get Much Better Than This? - Machine Learning Week 2025 - September 30th, 2025 [September 30th, 2025]
- Sex estimation from the sternum in Turkish population using various machine learning methods and deep neural networks - SpringerOpen - September 30th, 2025 [September 30th, 2025]
- Predictive AI Must Be Valuated But Rarely Is. Heres How To Do It - Machine Learning Week 2025 - September 30th, 2025 [September 30th, 2025]
- Interpretable machine learning incorporating major lithology for regional landslide warning in northern and eastern Guangdong - Nature - September 28th, 2025 [September 28th, 2025]
- Building Machine Learning Application with Django - KDnuggets - September 28th, 2025 [September 28th, 2025]
- Evaluating the use of body mass index change as a proxy for anorexia nervosa recovery: a machine learning perspective - Journal of Eating Disorders - September 28th, 2025 [September 28th, 2025]
- Prediction of cutting parameters and reduction of output parameters using machine learning in milling of Inconel 718 alloy - Nature - September 28th, 2025 [September 28th, 2025]
- How AI and machine learning are changing both retail and online casino experiences - Retail Technology Innovation Hub - September 28th, 2025 [September 28th, 2025]
- Machine learning and cell imaging combine to predict effectiveness of multiple sclerosis medication - Medical Xpress - September 25th, 2025 [September 25th, 2025]
- IC combines machine learning and analogue inferencing - Electronics Weekly - September 25th, 2025 [September 25th, 2025]
- ODU Awarded $2.3M NIH Grant to Improve Detection of Brain Tumor Recurrence with AI and Machine Learning - Old Dominion University - September 25th, 2025 [September 25th, 2025]
- Development of a machine learning-based depression risk identification tool for older adults with asthma - BMC Psychiatry - September 25th, 2025 [September 25th, 2025]
- AI and Machine Learning Uses in Neuroscience Drug Discovery, Upcoming Webinar Hosted by Xtalks - PR Newswire - September 25th, 2025 [September 25th, 2025]
- Error-controlled non-additive interaction discovery in machine learning models - Nature - September 23rd, 2025 [September 23rd, 2025]
- AI, Machine Learning Will Drive Market Data Consumption - Markets Media - September 23rd, 2025 [September 23rd, 2025]
- Machine Learning Model May Optimize Treatment Selection and Survival in HCC - Targeted Oncology - September 23rd, 2025 [September 23rd, 2025]
- From pixels to pumps: Machine learning and satellite imagery help map irrigation - Phys.org - September 23rd, 2025 [September 23rd, 2025]
- CMU physicist challenges what we know about particle physics with machine learning - The Tartan - September 23rd, 2025 [September 23rd, 2025]
- Hire Python Developers to Leverage the Power of Machine Learning & AI - WebWire - September 23rd, 2025 [September 23rd, 2025]
- AI-Powered Biology Careers in 2025: Opportunities with Machine Learning Skills - BioTecNika - September 23rd, 2025 [September 23rd, 2025]
- Machine learning and predictingstock price movements on NGX - Businessamlive - September 23rd, 2025 [September 23rd, 2025]
- Building a Hybrid Rule-Based and Machine Learning Framework to Detect and Defend Against Jailbreak Prompts in LLM Systems - MarkTechPost - September 21st, 2025 [September 21st, 2025]
- Development of a novel machine learning-based adaptive resampling algorithm for nuclear data processing - Nature - September 19th, 2025 [September 19th, 2025]
- Autobot platform uses machine learning to rapidly find best ways to make advanced materials - Tech Xplore - September 19th, 2025 [September 19th, 2025]
- 5 Key Takeaways | The Law of the Machine (Learning): Solving Complex AI Challenges - JD Supra - September 17th, 2025 [September 17th, 2025]
- Spectral and Machine Learning Approach Enhances Efficiency of Grape Embryo Rescue | Newswise - Newswise - September 17th, 2025 [September 17th, 2025]
- Helpful Reminders for Patent Eligibility of AI, Machine Learning, and Other Software-Related Inventions - JD Supra - September 17th, 2025 [September 17th, 2025]
- Opening the black box of machine learning-controlled plasma treatments - AIP.ORG - September 17th, 2025 [September 17th, 2025]
- Post-compilation Circuit Scaling for Quantum Machine Learning Models Reveals Resource Trends and Topology Impacts - Quantum Zeitgeist - September 17th, 2025 [September 17th, 2025]